From 35df837bb42fcd938f921f317d544df8b478104d Mon Sep 17 00:00:00 2001 From: fjosw Date: Mon, 6 Jan 2025 09:47:33 +0000 Subject: [PATCH] Documentation updated --- docs/pyerrors.html | 60 +- docs/pyerrors/correlators.html | 440 ++++---- docs/pyerrors/covobs.html | 38 +- docs/pyerrors/dirac.html | 14 +- docs/pyerrors/fits.html | 182 ++-- docs/pyerrors/input.html | 16 +- docs/pyerrors/input/bdio.html | 44 +- docs/pyerrors/input/dobs.html | 80 +- docs/pyerrors/input/hadrons.html | 82 +- docs/pyerrors/input/json.html | 112 +- docs/pyerrors/input/misc.html | 28 +- docs/pyerrors/input/openQCD.html | 78 +- docs/pyerrors/input/pandas.html | 38 +- docs/pyerrors/input/sfcf.html | 1658 +++++++++++++++--------------- docs/pyerrors/input/utils.html | 18 +- docs/pyerrors/integrate.html | 16 +- docs/pyerrors/linalg.html | 104 +- docs/pyerrors/misc.html | 46 +- docs/pyerrors/mpm.html | 12 +- docs/pyerrors/obs.html | 552 +++++----- docs/pyerrors/roots.html | 20 +- docs/pyerrors/special.html | 271 +++-- docs/search.js | 2 +- 23 files changed, 1983 insertions(+), 1928 deletions(-) diff --git a/docs/pyerrors.html b/docs/pyerrors.html index 9598a9ac..0283701e 100644 --- a/docs/pyerrors.html +++ b/docs/pyerrors.html @@ -167,8 +167,8 @@

Installation

Basic example

-
import numpy as np
-import pyerrors as pe
+
import numpy as np
+import pyerrors as pe
 
 my_obs = pe.Obs([samples], ['ensemble_name']) # Initialize an Obs object
 my_new_obs = 2 * np.log(my_obs) / my_obs ** 2 # Construct derived Obs object
@@ -186,7 +186,7 @@ 

The Obs class

The second argument is a list containing the names of the respective Monte Carlo chains as strings. These strings uniquely identify a Monte Carlo chain/ensemble. It is crucial for the correct error propagation that observations from the same Monte Carlo history are labeled with the same name. See Multiple ensembles/replica for details.

-
import pyerrors as pe
+
import pyerrors as pe
 
 my_obs = pe.Obs([samples], ['ensemble_name'])
 
@@ -202,8 +202,8 @@

Error propagation

The Obs class is designed such that mathematical numpy functions can be used on Obs just as for regular floats.

-
import numpy as np
-import pyerrors as pe
+
import numpy as np
+import pyerrors as pe
 
 my_obs1 = pe.Obs([samples1], ['ensemble_name'])
 my_obs2 = pe.Obs([samples2], ['ensemble_name'])
@@ -232,7 +232,7 @@ 

Error estimation

> Result 1.70000000e+00 +/- 5.72046658e-01 +/- 7.56746598e-02 (33.650%) > t_int 2.71422900e+00 +/- 6.40320983e-01 S = 2.00 > 1000 samples in 1 ensemble: -> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000) +> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)
@@ -249,7 +249,7 @@

Error estimation

> Result 1.70000000e+00 +/- 6.30675201e-01 +/- 1.04585650e-01 (37.099%) > t_int 3.29909703e+00 +/- 9.77310102e-01 S = 3.00 > 1000 samples in 1 ensemble: -> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000) +> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)
@@ -268,7 +268,7 @@

Exponential tails

> Result 1.70000000e+00 +/- 6.28097762e-01 +/- 5.79077524e-02 (36.947%) > t_int 3.27218667e+00 +/- 7.99583654e-01 tau_exp = 7.20, N_sigma = 1 > 1000 samples in 1 ensemble: -> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000) +> · Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)
@@ -286,8 +286,8 @@

Multiple ensembles/replica

my_sum.details() > Result 2.00697958e+00 > 1500 samples in 2 ensembles: -> · Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000) -> · Ensemble 'ensemble2' : 500 configurations (from 1 to 500) +> · Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000) +> · Ensemble 'ensemble2' : 500 configurations (from 1 to 500) @@ -304,8 +304,8 @@

Multiple ensembles/replica

> Result 2.00697958e+00 > 1500 samples in 1 ensemble: > · Ensemble 'ensemble1' -> · Replicum 'r01' : 1000 configurations (from 1 to 1000) -> · Replicum 'r02' : 500 configurations (from 1 to 500) +> · Replicum 'r01' : 1000 configurations (from 1 to 1000) +> · Replicum 'r02' : 500 configurations (from 1 to 500) @@ -333,14 +333,14 @@

Irregular Monte Carlo chains

obs1.details() > Result 9.98319881e-01 > 500 samples in 1 ensemble: -> · Ensemble 'ensemble1' : 500 configurations (from 20 to 519) +> · Ensemble 'ensemble1' : 500 configurations (from 20 to 519) # Observable defined on every second configuration between 5 and 1003 obs2 = pe.Obs([samples2], ['ensemble1'], idl=[range(5, 1005, 2)]) obs2.details() > Result 9.99100712e-01 > 500 samples in 1 ensemble: -> · Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2) +> · Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2) # Observable defined on configurations 2, 9, 28, 29 and 501 obs3 = pe.Obs([samples3], ['ensemble1'], idl=[[2, 9, 28, 29, 501]]) @@ -459,7 +459,7 @@

The Covobs class

This concept is built into the definition of Covobs. In pyerrors, external input is defined by $M$ mean values, a $M\times M$ covariance matrix, where $M=1$ is permissible, and a name that uniquely identifies the covariance matrix. Below, we define the pion mass, based on its mean value and error, 134.9768(5). Note, that the square of the error enters cov_Obs, since the second argument of this function is the covariance matrix of the Covobs.

-
import pyerrors.obs as pe
+
import pyerrors.obs as pe
 
 mpi = pe.cov_Obs(134.9768, 0.0005**2, 'pi^0 mass')
 mpi.gamma_method()
@@ -504,9 +504,9 @@ 

Least squares fits

Fit functions have to be of the following form

-
import autograd.numpy as anp
+
import autograd.numpy as anp
 
-def func(a, x):
+def func(a, x):
     return a[1] * anp.exp(-a[0] * x)
 
@@ -547,7 +547,7 @@

Least squares fits

For fit functions with multiple independent variables the fit function can be of the form

-
def func(a, x):
+
def func(a, x):
     (x1, x2) = x
     return a[0] * x1 ** 2 + a[1] * x2
 
@@ -1151,19 +1151,19 @@

json.gz format specification

477 478Julia I/O routines for the json.gz format, compatible with [ADerrors.jl](https://gitlab.ift.uam-csic.es/alberto/aderrors.jl), can be found [here](https://github.com/fjosw/ADjson.jl). 479''' -480from .obs import * -481from .correlators import * -482from .fits import * -483from .misc import * -484from . import dirac as dirac -485from . import input as input -486from . import linalg as linalg -487from . import mpm as mpm -488from . import roots as roots -489from . import integrate as integrate -490from . import special as special +480from .obs import * +481from .correlators import * +482from .fits import * +483from .misc import * +484from . import dirac as dirac +485from . import input as input +486from . import linalg as linalg +487from . import mpm as mpm +488from . import roots as roots +489from . import integrate as integrate +490from . import special as special 491 -492from .version import __version__ as __version__ +492from .version import __version__ as __version__
diff --git a/docs/pyerrors/correlators.html b/docs/pyerrors/correlators.html index 602f733c..543600bd 100644 --- a/docs/pyerrors/correlators.html +++ b/docs/pyerrors/correlators.html @@ -241,20 +241,20 @@

-
   1import warnings
-   2from itertools import permutations
-   3import numpy as np
-   4import autograd.numpy as anp
-   5import matplotlib.pyplot as plt
-   6import scipy.linalg
-   7from .obs import Obs, reweight, correlate, CObs
-   8from .misc import dump_object, _assert_equal_properties
-   9from .fits import least_squares
-  10from .roots import find_root
-  11from . import linalg
+                        
   1import warnings
+   2from itertools import permutations
+   3import numpy as np
+   4import autograd.numpy as anp
+   5import matplotlib.pyplot as plt
+   6import scipy.linalg
+   7from .obs import Obs, reweight, correlate, CObs
+   8from .misc import dump_object, _assert_equal_properties
+   9from .fits import least_squares
+  10from .roots import find_root
+  11from . import linalg
   12
   13
-  14class Corr:
+  14class Corr:
   15    r"""The class for a correlator (time dependent sequence of pe.Obs).
   16
   17    Everything, this class does, can be achieved using lists or arrays of Obs.
@@ -285,7 +285,7 @@ 

42 43 __slots__ = ["content", "N", "T", "tag", "prange"] 44 - 45 def __init__(self, data_input, padding=[0, 0], prange=None): + 45 def __init__(self, data_input, padding=[0, 0], prange=None): 46 """ Initialize a Corr object. 47 48 Parameters @@ -362,7 +362,7 @@

119 self.T = len(self.content) 120 self.prange = prange 121 - 122 def __getitem__(self, idx): + 122 def __getitem__(self, idx): 123 """Return the content of timeslice idx""" 124 if self.content[idx] is None: 125 return None @@ -372,7 +372,7 @@

129 return self.content[idx] 130 131 @property - 132 def reweighted(self): + 132 def reweighted(self): 133 bool_array = np.array([list(map(lambda x: x.reweighted, o)) for o in [x for x in self.content if x is not None]]) 134 if np.all(bool_array == 1): 135 return True @@ -381,7 +381,7 @@

138 else: 139 raise Exception("Reweighting status of correlator corrupted.") 140 - 141 def gamma_method(self, **kwargs): + 141 def gamma_method(self, **kwargs): 142 """Apply the gamma method to the content of the Corr.""" 143 for item in self.content: 144 if item is not None: @@ -394,7 +394,7 @@

151 152 gm = gamma_method 153 - 154 def projected(self, vector_l=None, vector_r=None, normalize=False): + 154 def projected(self, vector_l=None, vector_r=None, normalize=False): 155 """We need to project the Correlator with a Vector to get a single value at each timeslice. 156 157 The method can use one or two vectors. @@ -433,7 +433,7 @@

190 newcontent = [None if (_check_for_none(self, self.content[t]) or vector_l[t] is None or vector_r[t] is None) else np.asarray([vector_l[t].T @ self.content[t] @ vector_r[t]]) for t in range(self.T)] 191 return Corr(newcontent) 192 - 193 def item(self, i, j): + 193 def item(self, i, j): 194 """Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice. 195 196 Parameters @@ -448,7 +448,7 @@

205 newcontent = [None if (item is None) else item[i, j] for item in self.content] 206 return Corr(newcontent) 207 - 208 def plottable(self): + 208 def plottable(self): 209 """Outputs the correlator in a plotable format. 210 211 Outputs three lists containing the timeslice index, the value on each @@ -462,7 +462,7 @@

219 220 return x_list, y_list, y_err_list 221 - 222 def symmetric(self): + 222 def symmetric(self): 223 """ Symmetrize the correlator around x0=0.""" 224 if self.N != 1: 225 raise ValueError('symmetric cannot be safely applied to multi-dimensional correlators.') @@ -483,7 +483,7 @@

240 raise ValueError("Corr could not be symmetrized: No redundant values") 241 return Corr(newcontent, prange=self.prange) 242 - 243 def anti_symmetric(self): + 243 def anti_symmetric(self): 244 """Anti-symmetrize the correlator around x0=0.""" 245 if self.N != 1: 246 raise TypeError('anti_symmetric cannot be safely applied to multi-dimensional correlators.') @@ -505,7 +505,7 @@

262 raise ValueError("Corr could not be symmetrized: No redundant values") 263 return Corr(newcontent, prange=self.prange) 264 - 265 def is_matrix_symmetric(self): + 265 def is_matrix_symmetric(self): 266 """Checks whether a correlator matrices is symmetric on every timeslice.""" 267 if self.N == 1: 268 raise TypeError("Only works for correlator matrices.") @@ -520,7 +520,7 @@

277 return False 278 return True 279 - 280 def trace(self): + 280 def trace(self): 281 """Calculates the per-timeslice trace of a correlator matrix.""" 282 if self.N == 1: 283 raise ValueError("Only works for correlator matrices.") @@ -532,7 +532,7 @@

289 newcontent.append(np.trace(self.content[t])) 290 return Corr(newcontent) 291 - 292 def matrix_symmetric(self): + 292 def matrix_symmetric(self): 293 """Symmetrizes the correlator matrices on every timeslice.""" 294 if self.N == 1: 295 raise ValueError("Trying to symmetrize a correlator matrix, that already has N=1.") @@ -542,7 +542,7 @@

299 transposed = [None if _check_for_none(self, G) else G.T for G in self.content] 300 return 0.5 * (Corr(transposed) + self) 301 - 302 def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs): + 302 def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs): 303 r'''Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors. 304 305 The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the @@ -593,7 +593,7 @@

350 else: 351 symmetric_corr = self.matrix_symmetric() 352 - 353 def _get_mat_at_t(t, vector_obs=vector_obs): + 353 def _get_mat_at_t(t, vector_obs=vector_obs): 354 if vector_obs: 355 return symmetric_corr[t] 356 else: @@ -648,7 +648,7 @@

405 else: 406 return reordered_vecs 407 - 408 def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs): + 408 def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs): 409 """Determines the eigenvalue of the GEVP by solving and projecting the correlator 410 411 Parameters @@ -661,7 +661,7 @@

418 vec = self.GEVP(t0, ts=ts, sort=sort, **kwargs)[state] 419 return self.projected(vec) 420 - 421 def Hankel(self, N, periodic=False): + 421 def Hankel(self, N, periodic=False): 422 """Constructs an NxN Hankel matrix 423 424 C(t) c(t+1) ... c(t+n-1) @@ -685,7 +685,7 @@

442 for t in range(self.T): 443 new_content.append(array.copy()) 444 - 445 def wrap(i): + 445 def wrap(i): 446 while i >= self.T: 447 i -= self.T 448 return i @@ -702,7 +702,7 @@

459 460 return Corr(new_content) 461 - 462 def roll(self, dt): + 462 def roll(self, dt): 463 """Periodically shift the correlator by dt timeslices 464 465 Parameters @@ -712,11 +712,11 @@

469 """ 470 return Corr(list(np.roll(np.array(self.content, dtype=object), dt, axis=0))) 471 - 472 def reverse(self): + 472 def reverse(self): 473 """Reverse the time ordering of the Corr""" 474 return Corr(self.content[:: -1]) 475 - 476 def thin(self, spacing=2, offset=0): + 476 def thin(self, spacing=2, offset=0): 477 """Thin out a correlator to suppress correlations 478 479 Parameters @@ -734,7 +734,7 @@

491 new_content.append(self.content[t]) 492 return Corr(new_content) 493 - 494 def correlate(self, partner): + 494 def correlate(self, partner): 495 """Correlate the correlator with another correlator or Obs 496 497 Parameters @@ -763,7 +763,7 @@

520 521 return Corr(new_content) 522 - 523 def reweight(self, weight, **kwargs): + 523 def reweight(self, weight, **kwargs): 524 """Reweight the correlator. 525 526 Parameters @@ -786,7 +786,7 @@

543 new_content.append(np.array(reweight(weight, t_slice, **kwargs))) 544 return Corr(new_content) 545 - 546 def T_symmetry(self, partner, parity=+1): + 546 def T_symmetry(self, partner, parity=+1): 547 """Return the time symmetry average of the correlator and its partner 548 549 Parameters @@ -816,7 +816,7 @@

573 574 return (self + T_partner) / 2 575 - 576 def deriv(self, variant="symmetric"): + 576 def deriv(self, variant="symmetric"): 577 """Return the first derivative of the correlator with respect to x0. 578 579 Parameters @@ -881,7 +881,7 @@

638 else: 639 raise ValueError("Unknown variant.") 640 - 641 def second_deriv(self, variant="symmetric"): + 641 def second_deriv(self, variant="symmetric"): 642 r"""Return the second derivative of the correlator with respect to x0. 643 644 Parameters @@ -944,7 +944,7 @@

701 else: 702 raise ValueError("Unknown variant.") 703 - 704 def m_eff(self, variant='log', guess=1.0): + 704 def m_eff(self, variant='log', guess=1.0): 705 """Returns the effective mass of the correlator as correlator object 706 707 Parameters @@ -995,7 +995,7 @@

752 else: 753 func = anp.sinh 754 - 755 def root_function(x, d): + 755 def root_function(x, d): 756 return func(x * (t - self.T / 2)) / func(x * (t + 1 - self.T / 2)) - d 757 758 newcontent = [] @@ -1028,7 +1028,7 @@

785 else: 786 raise ValueError('Unknown variant.') 787 - 788 def fit(self, function, fitrange=None, silent=False, **kwargs): + 788 def fit(self, function, fitrange=None, silent=False, **kwargs): 789 r'''Fits function to the data 790 791 Parameters @@ -1062,7 +1062,7 @@

819 result = least_squares(xs, ys, function, silent=silent, **kwargs) 820 return result 821 - 822 def plateau(self, plateau_range=None, method="fit", auto_gamma=False): + 822 def plateau(self, plateau_range=None, method="fit", auto_gamma=False): 823 """ Extract a plateau value from a Corr object 824 825 Parameters @@ -1089,7 +1089,7 @@

846 if auto_gamma: 847 self.gamma_method() 848 if method == "fit": - 849 def const_func(a, t): + 849 def const_func(a, t): 850 return a[0] 851 return self.fit(const_func, plateau_range)[0] 852 elif method in ["avg", "average", "mean"]: @@ -1099,7 +1099,7 @@

856 else: 857 raise ValueError("Unsupported plateau method: " + method) 858 - 859 def set_prange(self, prange): + 859 def set_prange(self, prange): 860 """Sets the attribute prange of the Corr object.""" 861 if not len(prange) == 2: 862 raise ValueError("prange must be a list or array with two values") @@ -1111,7 +1111,7 @@

868 self.prange = prange 869 return 870 - 871 def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None): + 871 def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None): 872 """Plots the correlator using the tag of the correlator as label if available. 873 874 Parameters @@ -1236,7 +1236,7 @@

993 else: 994 raise TypeError("'save' has to be a string.") 995 - 996 def spaghetti_plot(self, logscale=True): + 996 def spaghetti_plot(self, logscale=True): 997 """Produces a spaghetti plot of the correlator suited to monitor exceptional configurations. 998 999 Parameters @@ -1265,7 +1265,7 @@

1022 plt.title(name) 1023 plt.draw() 1024 -1025 def dump(self, filename, datatype="json.gz", **kwargs): +1025 def dump(self, filename, datatype="json.gz", **kwargs): 1026 """Dumps the Corr into a file of chosen type 1027 Parameters 1028 ---------- @@ -1278,7 +1278,7 @@

1035 specifies a custom path for the file (default '.') 1036 """ 1037 if datatype == "json.gz": -1038 from .input.json import dump_to_json +1038 from .input.json import dump_to_json 1039 if 'path' in kwargs: 1040 file_name = kwargs.get('path') + '/' + filename 1041 else: @@ -1289,10 +1289,10 @@

1046 else: 1047 raise ValueError("Unknown datatype " + str(datatype)) 1048 -1049 def print(self, print_range=None): +1049 def print(self, print_range=None): 1050 print(self.__repr__(print_range)) 1051 -1052 def __repr__(self, print_range=None): +1052 def __repr__(self, print_range=None): 1053 if print_range is None: 1054 print_range = [0, None] 1055 @@ -1317,7 +1317,7 @@

1074 content_string += '\n' 1075 return content_string 1076 -1077 def __str__(self): +1077 def __str__(self): 1078 return self.__repr__() 1079 1080 # We define the basic operations, that can be performed with correlators. @@ -1327,14 +1327,14 @@

1084 1085 __array_priority__ = 10000 1086 -1087 def __eq__(self, y): +1087 def __eq__(self, y): 1088 if isinstance(y, Corr): 1089 comp = np.asarray(y.content, dtype=object) 1090 else: 1091 comp = np.asarray(y) 1092 return np.asarray(self.content, dtype=object) == comp 1093 -1094 def __add__(self, y): +1094 def __add__(self, y): 1095 if isinstance(y, Corr): 1096 if ((self.N != y.N) or (self.T != y.T)): 1097 raise ValueError("Addition of Corrs with different shape") @@ -1362,7 +1362,7 @@

1119 else: 1120 raise TypeError("Corr + wrong type") 1121 -1122 def __mul__(self, y): +1122 def __mul__(self, y): 1123 if isinstance(y, Corr): 1124 if not ((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): 1125 raise ValueError("Multiplication of Corr object requires N=N or N=1 and T=T") @@ -1390,7 +1390,7 @@

1147 else: 1148 raise TypeError("Corr * wrong type") 1149 -1150 def __matmul__(self, y): +1150 def __matmul__(self, y): 1151 if isinstance(y, np.ndarray): 1152 if y.ndim != 2 or y.shape[0] != y.shape[1]: 1153 raise ValueError("Can only multiply correlators by square matrices.") @@ -1417,7 +1417,7 @@

1174 else: 1175 return NotImplemented 1176 -1177 def __rmatmul__(self, y): +1177 def __rmatmul__(self, y): 1178 if isinstance(y, np.ndarray): 1179 if y.ndim != 2 or y.shape[0] != y.shape[1]: 1180 raise ValueError("Can only multiply correlators by square matrices.") @@ -1433,7 +1433,7 @@

1190 else: 1191 return NotImplemented 1192 -1193 def __truediv__(self, y): +1193 def __truediv__(self, y): 1194 if isinstance(y, Corr): 1195 if not ((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): 1196 raise ValueError("Multiplication of Corr object requires N=N or N=1 and T=T") @@ -1487,37 +1487,37 @@

1244 else: 1245 raise TypeError('Corr / wrong type') 1246 -1247 def __neg__(self): +1247 def __neg__(self): 1248 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] 1249 return Corr(newcontent, prange=self.prange) 1250 -1251 def __sub__(self, y): +1251 def __sub__(self, y): 1252 return self + (-y) 1253 -1254 def __pow__(self, y): +1254 def __pow__(self, y): 1255 if isinstance(y, (Obs, int, float, CObs)): 1256 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] 1257 return Corr(newcontent, prange=self.prange) 1258 else: 1259 raise TypeError('Type of exponent not supported') 1260 -1261 def __abs__(self): +1261 def __abs__(self): 1262 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] 1263 return Corr(newcontent, prange=self.prange) 1264 1265 # The numpy functions: -1266 def sqrt(self): +1266 def sqrt(self): 1267 return self ** 0.5 1268 -1269 def log(self): +1269 def log(self): 1270 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] 1271 return Corr(newcontent, prange=self.prange) 1272 -1273 def exp(self): +1273 def exp(self): 1274 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] 1275 return Corr(newcontent, prange=self.prange) 1276 -1277 def _apply_func_to_corr(self, func): +1277 def _apply_func_to_corr(self, func): 1278 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] 1279 for t in range(self.T): 1280 if _check_for_none(self, newcontent[t]): @@ -1530,58 +1530,58 @@

1287 raise ValueError('Operation returns undefined correlator') 1288 return Corr(newcontent) 1289 -1290 def sin(self): +1290 def sin(self): 1291 return self._apply_func_to_corr(np.sin) 1292 -1293 def cos(self): +1293 def cos(self): 1294 return self._apply_func_to_corr(np.cos) 1295 -1296 def tan(self): +1296 def tan(self): 1297 return self._apply_func_to_corr(np.tan) 1298 -1299 def sinh(self): +1299 def sinh(self): 1300 return self._apply_func_to_corr(np.sinh) 1301 -1302 def cosh(self): +1302 def cosh(self): 1303 return self._apply_func_to_corr(np.cosh) 1304 -1305 def tanh(self): +1305 def tanh(self): 1306 return self._apply_func_to_corr(np.tanh) 1307 -1308 def arcsin(self): +1308 def arcsin(self): 1309 return self._apply_func_to_corr(np.arcsin) 1310 -1311 def arccos(self): +1311 def arccos(self): 1312 return self._apply_func_to_corr(np.arccos) 1313 -1314 def arctan(self): +1314 def arctan(self): 1315 return self._apply_func_to_corr(np.arctan) 1316 -1317 def arcsinh(self): +1317 def arcsinh(self): 1318 return self._apply_func_to_corr(np.arcsinh) 1319 -1320 def arccosh(self): +1320 def arccosh(self): 1321 return self._apply_func_to_corr(np.arccosh) 1322 -1323 def arctanh(self): +1323 def arctanh(self): 1324 return self._apply_func_to_corr(np.arctanh) 1325 1326 # Right hand side operations (require tweak in main module to work) -1327 def __radd__(self, y): +1327 def __radd__(self, y): 1328 return self + y 1329 -1330 def __rsub__(self, y): +1330 def __rsub__(self, y): 1331 return -self + y 1332 -1333 def __rmul__(self, y): +1333 def __rmul__(self, y): 1334 return self * y 1335 -1336 def __rtruediv__(self, y): +1336 def __rtruediv__(self, y): 1337 return (self / y) ** (-1) 1338 1339 @property -1340 def real(self): -1341 def return_real(obs_OR_cobs): +1340 def real(self): +1341 def return_real(obs_OR_cobs): 1342 if isinstance(obs_OR_cobs.flatten()[0], CObs): 1343 return np.vectorize(lambda x: x.real)(obs_OR_cobs) 1344 else: @@ -1590,8 +1590,8 @@

1347 return self._apply_func_to_corr(return_real) 1348 1349 @property -1350 def imag(self): -1351 def return_imag(obs_OR_cobs): +1350 def imag(self): +1351 def return_imag(obs_OR_cobs): 1352 if isinstance(obs_OR_cobs.flatten()[0], CObs): 1353 return np.vectorize(lambda x: x.imag)(obs_OR_cobs) 1354 else: @@ -1599,7 +1599,7 @@

1356 1357 return self._apply_func_to_corr(return_imag) 1358 -1359 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): +1359 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): 1360 r''' Project large correlation matrix to lowest states 1361 1362 This method can be used to reduce the size of an (N x N) correlation matrix @@ -1657,7 +1657,7 @@

1414 return Corr(newcontent) 1415 1416 -1417def _sort_vectors(vec_set_in, ts): +1417def _sort_vectors(vec_set_in, ts): 1418 """Helper function used to find a set of Eigenvectors consistent over all timeslices""" 1419 1420 if isinstance(vec_set_in[ts][0][0], Obs): @@ -1689,12 +1689,12 @@

1446 return sorted_vec_set 1447 1448 -1449def _check_for_none(corr, entry): +1449def _check_for_none(corr, entry): 1450 """Checks if entry for correlator corr is None""" 1451 return len(list(filter(None, np.asarray(entry).flatten()))) < corr.N ** 2 1452 1453 -1454def _GEVP_solver(Gt, G0, method='eigh', chol_inv=None): +1454def _GEVP_solver(Gt, G0, method='eigh', chol_inv=None): 1455 r"""Helper function for solving the GEVP and sorting the eigenvectors. 1456 1457 Solves $G(t)v_i=\lambda_i G(t_0)v_i$ and returns the eigenvectors v_i @@ -1732,10 +1732,10 @@

1489 cholesky = np.linalg.cholesky 1490 inv = np.linalg.inv 1491 -1492 def eigv(x, **kwargs): +1492 def eigv(x, **kwargs): 1493 return np.linalg.eigh(x)[1] 1494 -1495 def matmul(*operands): +1495 def matmul(*operands): 1496 return np.linalg.multi_dot(operands) 1497 N = Gt.shape[0] 1498 output = [[] for j in range(N)] @@ -1769,7 +1769,7 @@

-
  15class Corr:
+            
  15class Corr:
   16    r"""The class for a correlator (time dependent sequence of pe.Obs).
   17
   18    Everything, this class does, can be achieved using lists or arrays of Obs.
@@ -1800,7 +1800,7 @@ 

43 44 __slots__ = ["content", "N", "T", "tag", "prange"] 45 - 46 def __init__(self, data_input, padding=[0, 0], prange=None): + 46 def __init__(self, data_input, padding=[0, 0], prange=None): 47 """ Initialize a Corr object. 48 49 Parameters @@ -1877,7 +1877,7 @@

120 self.T = len(self.content) 121 self.prange = prange 122 - 123 def __getitem__(self, idx): + 123 def __getitem__(self, idx): 124 """Return the content of timeslice idx""" 125 if self.content[idx] is None: 126 return None @@ -1887,7 +1887,7 @@

130 return self.content[idx] 131 132 @property - 133 def reweighted(self): + 133 def reweighted(self): 134 bool_array = np.array([list(map(lambda x: x.reweighted, o)) for o in [x for x in self.content if x is not None]]) 135 if np.all(bool_array == 1): 136 return True @@ -1896,7 +1896,7 @@

139 else: 140 raise Exception("Reweighting status of correlator corrupted.") 141 - 142 def gamma_method(self, **kwargs): + 142 def gamma_method(self, **kwargs): 143 """Apply the gamma method to the content of the Corr.""" 144 for item in self.content: 145 if item is not None: @@ -1909,7 +1909,7 @@

152 153 gm = gamma_method 154 - 155 def projected(self, vector_l=None, vector_r=None, normalize=False): + 155 def projected(self, vector_l=None, vector_r=None, normalize=False): 156 """We need to project the Correlator with a Vector to get a single value at each timeslice. 157 158 The method can use one or two vectors. @@ -1948,7 +1948,7 @@

191 newcontent = [None if (_check_for_none(self, self.content[t]) or vector_l[t] is None or vector_r[t] is None) else np.asarray([vector_l[t].T @ self.content[t] @ vector_r[t]]) for t in range(self.T)] 192 return Corr(newcontent) 193 - 194 def item(self, i, j): + 194 def item(self, i, j): 195 """Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice. 196 197 Parameters @@ -1963,7 +1963,7 @@

206 newcontent = [None if (item is None) else item[i, j] for item in self.content] 207 return Corr(newcontent) 208 - 209 def plottable(self): + 209 def plottable(self): 210 """Outputs the correlator in a plotable format. 211 212 Outputs three lists containing the timeslice index, the value on each @@ -1977,7 +1977,7 @@

220 221 return x_list, y_list, y_err_list 222 - 223 def symmetric(self): + 223 def symmetric(self): 224 """ Symmetrize the correlator around x0=0.""" 225 if self.N != 1: 226 raise ValueError('symmetric cannot be safely applied to multi-dimensional correlators.') @@ -1998,7 +1998,7 @@

241 raise ValueError("Corr could not be symmetrized: No redundant values") 242 return Corr(newcontent, prange=self.prange) 243 - 244 def anti_symmetric(self): + 244 def anti_symmetric(self): 245 """Anti-symmetrize the correlator around x0=0.""" 246 if self.N != 1: 247 raise TypeError('anti_symmetric cannot be safely applied to multi-dimensional correlators.') @@ -2020,7 +2020,7 @@

263 raise ValueError("Corr could not be symmetrized: No redundant values") 264 return Corr(newcontent, prange=self.prange) 265 - 266 def is_matrix_symmetric(self): + 266 def is_matrix_symmetric(self): 267 """Checks whether a correlator matrices is symmetric on every timeslice.""" 268 if self.N == 1: 269 raise TypeError("Only works for correlator matrices.") @@ -2035,7 +2035,7 @@

278 return False 279 return True 280 - 281 def trace(self): + 281 def trace(self): 282 """Calculates the per-timeslice trace of a correlator matrix.""" 283 if self.N == 1: 284 raise ValueError("Only works for correlator matrices.") @@ -2047,7 +2047,7 @@

290 newcontent.append(np.trace(self.content[t])) 291 return Corr(newcontent) 292 - 293 def matrix_symmetric(self): + 293 def matrix_symmetric(self): 294 """Symmetrizes the correlator matrices on every timeslice.""" 295 if self.N == 1: 296 raise ValueError("Trying to symmetrize a correlator matrix, that already has N=1.") @@ -2057,7 +2057,7 @@

300 transposed = [None if _check_for_none(self, G) else G.T for G in self.content] 301 return 0.5 * (Corr(transposed) + self) 302 - 303 def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs): + 303 def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs): 304 r'''Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors. 305 306 The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the @@ -2108,7 +2108,7 @@

351 else: 352 symmetric_corr = self.matrix_symmetric() 353 - 354 def _get_mat_at_t(t, vector_obs=vector_obs): + 354 def _get_mat_at_t(t, vector_obs=vector_obs): 355 if vector_obs: 356 return symmetric_corr[t] 357 else: @@ -2163,7 +2163,7 @@

406 else: 407 return reordered_vecs 408 - 409 def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs): + 409 def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs): 410 """Determines the eigenvalue of the GEVP by solving and projecting the correlator 411 412 Parameters @@ -2176,7 +2176,7 @@

419 vec = self.GEVP(t0, ts=ts, sort=sort, **kwargs)[state] 420 return self.projected(vec) 421 - 422 def Hankel(self, N, periodic=False): + 422 def Hankel(self, N, periodic=False): 423 """Constructs an NxN Hankel matrix 424 425 C(t) c(t+1) ... c(t+n-1) @@ -2200,7 +2200,7 @@

443 for t in range(self.T): 444 new_content.append(array.copy()) 445 - 446 def wrap(i): + 446 def wrap(i): 447 while i >= self.T: 448 i -= self.T 449 return i @@ -2217,7 +2217,7 @@

460 461 return Corr(new_content) 462 - 463 def roll(self, dt): + 463 def roll(self, dt): 464 """Periodically shift the correlator by dt timeslices 465 466 Parameters @@ -2227,11 +2227,11 @@

470 """ 471 return Corr(list(np.roll(np.array(self.content, dtype=object), dt, axis=0))) 472 - 473 def reverse(self): + 473 def reverse(self): 474 """Reverse the time ordering of the Corr""" 475 return Corr(self.content[:: -1]) 476 - 477 def thin(self, spacing=2, offset=0): + 477 def thin(self, spacing=2, offset=0): 478 """Thin out a correlator to suppress correlations 479 480 Parameters @@ -2249,7 +2249,7 @@

492 new_content.append(self.content[t]) 493 return Corr(new_content) 494 - 495 def correlate(self, partner): + 495 def correlate(self, partner): 496 """Correlate the correlator with another correlator or Obs 497 498 Parameters @@ -2278,7 +2278,7 @@

521 522 return Corr(new_content) 523 - 524 def reweight(self, weight, **kwargs): + 524 def reweight(self, weight, **kwargs): 525 """Reweight the correlator. 526 527 Parameters @@ -2301,7 +2301,7 @@

544 new_content.append(np.array(reweight(weight, t_slice, **kwargs))) 545 return Corr(new_content) 546 - 547 def T_symmetry(self, partner, parity=+1): + 547 def T_symmetry(self, partner, parity=+1): 548 """Return the time symmetry average of the correlator and its partner 549 550 Parameters @@ -2331,7 +2331,7 @@

574 575 return (self + T_partner) / 2 576 - 577 def deriv(self, variant="symmetric"): + 577 def deriv(self, variant="symmetric"): 578 """Return the first derivative of the correlator with respect to x0. 579 580 Parameters @@ -2396,7 +2396,7 @@

639 else: 640 raise ValueError("Unknown variant.") 641 - 642 def second_deriv(self, variant="symmetric"): + 642 def second_deriv(self, variant="symmetric"): 643 r"""Return the second derivative of the correlator with respect to x0. 644 645 Parameters @@ -2459,7 +2459,7 @@

702 else: 703 raise ValueError("Unknown variant.") 704 - 705 def m_eff(self, variant='log', guess=1.0): + 705 def m_eff(self, variant='log', guess=1.0): 706 """Returns the effective mass of the correlator as correlator object 707 708 Parameters @@ -2510,7 +2510,7 @@

753 else: 754 func = anp.sinh 755 - 756 def root_function(x, d): + 756 def root_function(x, d): 757 return func(x * (t - self.T / 2)) / func(x * (t + 1 - self.T / 2)) - d 758 759 newcontent = [] @@ -2543,7 +2543,7 @@

786 else: 787 raise ValueError('Unknown variant.') 788 - 789 def fit(self, function, fitrange=None, silent=False, **kwargs): + 789 def fit(self, function, fitrange=None, silent=False, **kwargs): 790 r'''Fits function to the data 791 792 Parameters @@ -2577,7 +2577,7 @@

820 result = least_squares(xs, ys, function, silent=silent, **kwargs) 821 return result 822 - 823 def plateau(self, plateau_range=None, method="fit", auto_gamma=False): + 823 def plateau(self, plateau_range=None, method="fit", auto_gamma=False): 824 """ Extract a plateau value from a Corr object 825 826 Parameters @@ -2604,7 +2604,7 @@

847 if auto_gamma: 848 self.gamma_method() 849 if method == "fit": - 850 def const_func(a, t): + 850 def const_func(a, t): 851 return a[0] 852 return self.fit(const_func, plateau_range)[0] 853 elif method in ["avg", "average", "mean"]: @@ -2614,7 +2614,7 @@

857 else: 858 raise ValueError("Unsupported plateau method: " + method) 859 - 860 def set_prange(self, prange): + 860 def set_prange(self, prange): 861 """Sets the attribute prange of the Corr object.""" 862 if not len(prange) == 2: 863 raise ValueError("prange must be a list or array with two values") @@ -2626,7 +2626,7 @@

869 self.prange = prange 870 return 871 - 872 def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None): + 872 def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None): 873 """Plots the correlator using the tag of the correlator as label if available. 874 875 Parameters @@ -2751,7 +2751,7 @@

994 else: 995 raise TypeError("'save' has to be a string.") 996 - 997 def spaghetti_plot(self, logscale=True): + 997 def spaghetti_plot(self, logscale=True): 998 """Produces a spaghetti plot of the correlator suited to monitor exceptional configurations. 999 1000 Parameters @@ -2780,7 +2780,7 @@

1023 plt.title(name) 1024 plt.draw() 1025 -1026 def dump(self, filename, datatype="json.gz", **kwargs): +1026 def dump(self, filename, datatype="json.gz", **kwargs): 1027 """Dumps the Corr into a file of chosen type 1028 Parameters 1029 ---------- @@ -2793,7 +2793,7 @@

1036 specifies a custom path for the file (default '.') 1037 """ 1038 if datatype == "json.gz": -1039 from .input.json import dump_to_json +1039 from .input.json import dump_to_json 1040 if 'path' in kwargs: 1041 file_name = kwargs.get('path') + '/' + filename 1042 else: @@ -2804,10 +2804,10 @@

1047 else: 1048 raise ValueError("Unknown datatype " + str(datatype)) 1049 -1050 def print(self, print_range=None): +1050 def print(self, print_range=None): 1051 print(self.__repr__(print_range)) 1052 -1053 def __repr__(self, print_range=None): +1053 def __repr__(self, print_range=None): 1054 if print_range is None: 1055 print_range = [0, None] 1056 @@ -2832,7 +2832,7 @@

1075 content_string += '\n' 1076 return content_string 1077 -1078 def __str__(self): +1078 def __str__(self): 1079 return self.__repr__() 1080 1081 # We define the basic operations, that can be performed with correlators. @@ -2842,14 +2842,14 @@

1085 1086 __array_priority__ = 10000 1087 -1088 def __eq__(self, y): +1088 def __eq__(self, y): 1089 if isinstance(y, Corr): 1090 comp = np.asarray(y.content, dtype=object) 1091 else: 1092 comp = np.asarray(y) 1093 return np.asarray(self.content, dtype=object) == comp 1094 -1095 def __add__(self, y): +1095 def __add__(self, y): 1096 if isinstance(y, Corr): 1097 if ((self.N != y.N) or (self.T != y.T)): 1098 raise ValueError("Addition of Corrs with different shape") @@ -2877,7 +2877,7 @@

1120 else: 1121 raise TypeError("Corr + wrong type") 1122 -1123 def __mul__(self, y): +1123 def __mul__(self, y): 1124 if isinstance(y, Corr): 1125 if not ((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): 1126 raise ValueError("Multiplication of Corr object requires N=N or N=1 and T=T") @@ -2905,7 +2905,7 @@

1148 else: 1149 raise TypeError("Corr * wrong type") 1150 -1151 def __matmul__(self, y): +1151 def __matmul__(self, y): 1152 if isinstance(y, np.ndarray): 1153 if y.ndim != 2 or y.shape[0] != y.shape[1]: 1154 raise ValueError("Can only multiply correlators by square matrices.") @@ -2932,7 +2932,7 @@

1175 else: 1176 return NotImplemented 1177 -1178 def __rmatmul__(self, y): +1178 def __rmatmul__(self, y): 1179 if isinstance(y, np.ndarray): 1180 if y.ndim != 2 or y.shape[0] != y.shape[1]: 1181 raise ValueError("Can only multiply correlators by square matrices.") @@ -2948,7 +2948,7 @@

1191 else: 1192 return NotImplemented 1193 -1194 def __truediv__(self, y): +1194 def __truediv__(self, y): 1195 if isinstance(y, Corr): 1196 if not ((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): 1197 raise ValueError("Multiplication of Corr object requires N=N or N=1 and T=T") @@ -3002,37 +3002,37 @@

1245 else: 1246 raise TypeError('Corr / wrong type') 1247 -1248 def __neg__(self): +1248 def __neg__(self): 1249 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] 1250 return Corr(newcontent, prange=self.prange) 1251 -1252 def __sub__(self, y): +1252 def __sub__(self, y): 1253 return self + (-y) 1254 -1255 def __pow__(self, y): +1255 def __pow__(self, y): 1256 if isinstance(y, (Obs, int, float, CObs)): 1257 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] 1258 return Corr(newcontent, prange=self.prange) 1259 else: 1260 raise TypeError('Type of exponent not supported') 1261 -1262 def __abs__(self): +1262 def __abs__(self): 1263 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] 1264 return Corr(newcontent, prange=self.prange) 1265 1266 # The numpy functions: -1267 def sqrt(self): +1267 def sqrt(self): 1268 return self ** 0.5 1269 -1270 def log(self): +1270 def log(self): 1271 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] 1272 return Corr(newcontent, prange=self.prange) 1273 -1274 def exp(self): +1274 def exp(self): 1275 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] 1276 return Corr(newcontent, prange=self.prange) 1277 -1278 def _apply_func_to_corr(self, func): +1278 def _apply_func_to_corr(self, func): 1279 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] 1280 for t in range(self.T): 1281 if _check_for_none(self, newcontent[t]): @@ -3045,58 +3045,58 @@

1288 raise ValueError('Operation returns undefined correlator') 1289 return Corr(newcontent) 1290 -1291 def sin(self): +1291 def sin(self): 1292 return self._apply_func_to_corr(np.sin) 1293 -1294 def cos(self): +1294 def cos(self): 1295 return self._apply_func_to_corr(np.cos) 1296 -1297 def tan(self): +1297 def tan(self): 1298 return self._apply_func_to_corr(np.tan) 1299 -1300 def sinh(self): +1300 def sinh(self): 1301 return self._apply_func_to_corr(np.sinh) 1302 -1303 def cosh(self): +1303 def cosh(self): 1304 return self._apply_func_to_corr(np.cosh) 1305 -1306 def tanh(self): +1306 def tanh(self): 1307 return self._apply_func_to_corr(np.tanh) 1308 -1309 def arcsin(self): +1309 def arcsin(self): 1310 return self._apply_func_to_corr(np.arcsin) 1311 -1312 def arccos(self): +1312 def arccos(self): 1313 return self._apply_func_to_corr(np.arccos) 1314 -1315 def arctan(self): +1315 def arctan(self): 1316 return self._apply_func_to_corr(np.arctan) 1317 -1318 def arcsinh(self): +1318 def arcsinh(self): 1319 return self._apply_func_to_corr(np.arcsinh) 1320 -1321 def arccosh(self): +1321 def arccosh(self): 1322 return self._apply_func_to_corr(np.arccosh) 1323 -1324 def arctanh(self): +1324 def arctanh(self): 1325 return self._apply_func_to_corr(np.arctanh) 1326 1327 # Right hand side operations (require tweak in main module to work) -1328 def __radd__(self, y): +1328 def __radd__(self, y): 1329 return self + y 1330 -1331 def __rsub__(self, y): +1331 def __rsub__(self, y): 1332 return -self + y 1333 -1334 def __rmul__(self, y): +1334 def __rmul__(self, y): 1335 return self * y 1336 -1337 def __rtruediv__(self, y): +1337 def __rtruediv__(self, y): 1338 return (self / y) ** (-1) 1339 1340 @property -1341 def real(self): -1342 def return_real(obs_OR_cobs): +1341 def real(self): +1342 def return_real(obs_OR_cobs): 1343 if isinstance(obs_OR_cobs.flatten()[0], CObs): 1344 return np.vectorize(lambda x: x.real)(obs_OR_cobs) 1345 else: @@ -3105,8 +3105,8 @@

1348 return self._apply_func_to_corr(return_real) 1349 1350 @property -1351 def imag(self): -1352 def return_imag(obs_OR_cobs): +1351 def imag(self): +1352 def return_imag(obs_OR_cobs): 1353 if isinstance(obs_OR_cobs.flatten()[0], CObs): 1354 return np.vectorize(lambda x: x.imag)(obs_OR_cobs) 1355 else: @@ -3114,7 +3114,7 @@

1357 1358 return self._apply_func_to_corr(return_imag) 1359 -1360 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): +1360 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): 1361 r''' Project large correlation matrix to lowest states 1362 1363 This method can be used to reduce the size of an (N x N) correlation matrix @@ -3218,7 +3218,7 @@
Initialization

-
 46    def __init__(self, data_input, padding=[0, 0], prange=None):
+            
 46    def __init__(self, data_input, padding=[0, 0], prange=None):
  47        """ Initialize a Corr object.
  48
  49        Parameters
@@ -3370,7 +3370,7 @@ 
Parameters
132    @property
-133    def reweighted(self):
+133    def reweighted(self):
 134        bool_array = np.array([list(map(lambda x: x.reweighted, o)) for o in [x for x in self.content if x is not None]])
 135        if np.all(bool_array == 1):
 136            return True
@@ -3395,7 +3395,7 @@ 
Parameters
-
142    def gamma_method(self, **kwargs):
+            
142    def gamma_method(self, **kwargs):
 143        """Apply the gamma method to the content of the Corr."""
 144        for item in self.content:
 145            if item is not None:
@@ -3424,7 +3424,7 @@ 
Parameters
-
142    def gamma_method(self, **kwargs):
+            
142    def gamma_method(self, **kwargs):
 143        """Apply the gamma method to the content of the Corr."""
 144        for item in self.content:
 145            if item is not None:
@@ -3453,7 +3453,7 @@ 
Parameters
-
155    def projected(self, vector_l=None, vector_r=None, normalize=False):
+            
155    def projected(self, vector_l=None, vector_r=None, normalize=False):
 156        """We need to project the Correlator with a Vector to get a single value at each timeslice.
 157
 158        The method can use one or two vectors.
@@ -3514,7 +3514,7 @@ 
Parameters
-
194    def item(self, i, j):
+            
194    def item(self, i, j):
 195        """Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice.
 196
 197        Parameters
@@ -3556,7 +3556,7 @@ 
Parameters
-
209    def plottable(self):
+            
209    def plottable(self):
 210        """Outputs the correlator in a plotable format.
 211
 212        Outputs three lists containing the timeslice index, the value on each
@@ -3591,7 +3591,7 @@ 
Parameters
-
223    def symmetric(self):
+            
223    def symmetric(self):
 224        """ Symmetrize the correlator around x0=0."""
 225        if self.N != 1:
 226            raise ValueError('symmetric cannot be safely applied to multi-dimensional correlators.')
@@ -3630,7 +3630,7 @@ 
Parameters
-
244    def anti_symmetric(self):
+            
244    def anti_symmetric(self):
 245        """Anti-symmetrize the correlator around x0=0."""
 246        if self.N != 1:
 247            raise TypeError('anti_symmetric cannot be safely applied to multi-dimensional correlators.')
@@ -3670,7 +3670,7 @@ 
Parameters
-
266    def is_matrix_symmetric(self):
+            
266    def is_matrix_symmetric(self):
 267        """Checks whether a correlator matrices is symmetric on every timeslice."""
 268        if self.N == 1:
 269            raise TypeError("Only works for correlator matrices.")
@@ -3703,7 +3703,7 @@ 
Parameters
-
281    def trace(self):
+            
281    def trace(self):
 282        """Calculates the per-timeslice trace of a correlator matrix."""
 283        if self.N == 1:
 284            raise ValueError("Only works for correlator matrices.")
@@ -3733,7 +3733,7 @@ 
Parameters
-
293    def matrix_symmetric(self):
+            
293    def matrix_symmetric(self):
 294        """Symmetrizes the correlator matrices on every timeslice."""
 295        if self.N == 1:
 296            raise ValueError("Trying to symmetrize a correlator matrix, that already has N=1.")
@@ -3761,7 +3761,7 @@ 
Parameters
-
303    def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs):
+            
303    def GEVP(self, t0, ts=None, sort="Eigenvalue", vector_obs=False, **kwargs):
 304        r'''Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors.
 305
 306        The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the
@@ -3812,7 +3812,7 @@ 
Parameters
351 else: 352 symmetric_corr = self.matrix_symmetric() 353 -354 def _get_mat_at_t(t, vector_obs=vector_obs): +354 def _get_mat_at_t(t, vector_obs=vector_obs): 355 if vector_obs: 356 return symmetric_corr[t] 357 else: @@ -3927,7 +3927,7 @@
Other Parameters
-
409    def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs):
+            
409    def Eigenvalue(self, t0, ts=None, state=0, sort="Eigenvalue", **kwargs):
 410        """Determines the eigenvalue of the GEVP by solving and projecting the correlator
 411
 412        Parameters
@@ -3966,7 +3966,7 @@ 
Parameters
-
422    def Hankel(self, N, periodic=False):
+            
422    def Hankel(self, N, periodic=False):
 423        """Constructs an NxN Hankel matrix
 424
 425        C(t) c(t+1) ... c(t+n-1)
@@ -3990,7 +3990,7 @@ 
Parameters
443 for t in range(self.T): 444 new_content.append(array.copy()) 445 -446 def wrap(i): +446 def wrap(i): 447 while i >= self.T: 448 i -= self.T 449 return i @@ -4039,7 +4039,7 @@
Parameters
-
463    def roll(self, dt):
+            
463    def roll(self, dt):
 464        """Periodically shift the correlator by dt timeslices
 465
 466        Parameters
@@ -4074,7 +4074,7 @@ 
Parameters
-
473    def reverse(self):
+            
473    def reverse(self):
 474        """Reverse the time ordering of the Corr"""
 475        return Corr(self.content[:: -1])
 
@@ -4096,7 +4096,7 @@
Parameters
-
477    def thin(self, spacing=2, offset=0):
+            
477    def thin(self, spacing=2, offset=0):
 478        """Thin out a correlator to suppress correlations
 479
 480        Parameters
@@ -4141,7 +4141,7 @@ 
Parameters
-
495    def correlate(self, partner):
+            
495    def correlate(self, partner):
 496        """Correlate the correlator with another correlator or Obs
 497
 498        Parameters
@@ -4197,7 +4197,7 @@ 
Parameters
-
524    def reweight(self, weight, **kwargs):
+            
524    def reweight(self, weight, **kwargs):
 525        """Reweight the correlator.
 526
 527        Parameters
@@ -4250,7 +4250,7 @@ 
Parameters
-
547    def T_symmetry(self, partner, parity=+1):
+            
547    def T_symmetry(self, partner, parity=+1):
 548        """Return the time symmetry average of the correlator and its partner
 549
 550        Parameters
@@ -4307,7 +4307,7 @@ 
Parameters
-
577    def deriv(self, variant="symmetric"):
+            
577    def deriv(self, variant="symmetric"):
 578        """Return the first derivative of the correlator with respect to x0.
 579
 580        Parameters
@@ -4398,7 +4398,7 @@ 
Parameters
-
642    def second_deriv(self, variant="symmetric"):
+            
642    def second_deriv(self, variant="symmetric"):
 643        r"""Return the second derivative of the correlator with respect to x0.
 644
 645        Parameters
@@ -4495,7 +4495,7 @@ 
Parameters
-
705    def m_eff(self, variant='log', guess=1.0):
+            
705    def m_eff(self, variant='log', guess=1.0):
 706        """Returns the effective mass of the correlator as correlator object
 707
 708        Parameters
@@ -4546,7 +4546,7 @@ 
Parameters
753 else: 754 func = anp.sinh 755 -756 def root_function(x, d): +756 def root_function(x, d): 757 return func(x * (t - self.T / 2)) / func(x * (t + 1 - self.T / 2)) - d 758 759 newcontent = [] @@ -4611,7 +4611,7 @@
Parameters
-
789    def fit(self, function, fitrange=None, silent=False, **kwargs):
+            
789    def fit(self, function, fitrange=None, silent=False, **kwargs):
 790        r'''Fits function to the data
 791
 792        Parameters
@@ -4677,7 +4677,7 @@ 
Parameters
-
823    def plateau(self, plateau_range=None, method="fit", auto_gamma=False):
+            
823    def plateau(self, plateau_range=None, method="fit", auto_gamma=False):
 824        """ Extract a plateau value from a Corr object
 825
 826        Parameters
@@ -4704,7 +4704,7 @@ 
Parameters
847 if auto_gamma: 848 self.gamma_method() 849 if method == "fit": -850 def const_func(a, t): +850 def const_func(a, t): 851 return a[0] 852 return self.fit(const_func, plateau_range)[0] 853 elif method in ["avg", "average", "mean"]: @@ -4746,7 +4746,7 @@
Parameters
-
860    def set_prange(self, prange):
+            
860    def set_prange(self, prange):
 861        """Sets the attribute prange of the Corr object."""
 862        if not len(prange) == 2:
 863            raise ValueError("prange must be a list or array with two values")
@@ -4776,7 +4776,7 @@ 
Parameters
-
872    def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None):
+            
872    def show(self, x_range=None, comp=None, y_range=None, logscale=False, plateau=None, fit_res=None, fit_key=None, ylabel=None, save=None, auto_gamma=False, hide_sigma=None, references=None, title=None):
 873        """Plots the correlator using the tag of the correlator as label if available.
 874
 875        Parameters
@@ -4949,7 +4949,7 @@ 
Parameters
-
 997    def spaghetti_plot(self, logscale=True):
+            
 997    def spaghetti_plot(self, logscale=True):
  998        """Produces a spaghetti plot of the correlator suited to monitor exceptional configurations.
  999
 1000        Parameters
@@ -5003,7 +5003,7 @@ 
Parameters
-
1026    def dump(self, filename, datatype="json.gz", **kwargs):
+            
1026    def dump(self, filename, datatype="json.gz", **kwargs):
 1027        """Dumps the Corr into a file of chosen type
 1028        Parameters
 1029        ----------
@@ -5016,7 +5016,7 @@ 
Parameters
1036 specifies a custom path for the file (default '.') 1037 """ 1038 if datatype == "json.gz": -1039 from .input.json import dump_to_json +1039 from .input.json import dump_to_json 1040 if 'path' in kwargs: 1041 file_name = kwargs.get('path') + '/' + filename 1042 else: @@ -5057,7 +5057,7 @@
Parameters
-
1050    def print(self, print_range=None):
+            
1050    def print(self, print_range=None):
 1051        print(self.__repr__(print_range))
 
@@ -5076,7 +5076,7 @@
Parameters
-
1267    def sqrt(self):
+            
1267    def sqrt(self):
 1268        return self ** 0.5
 
@@ -5095,7 +5095,7 @@
Parameters
-
1270    def log(self):
+            
1270    def log(self):
 1271        newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content]
 1272        return Corr(newcontent, prange=self.prange)
 
@@ -5115,7 +5115,7 @@
Parameters
-
1274    def exp(self):
+            
1274    def exp(self):
 1275        newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content]
 1276        return Corr(newcontent, prange=self.prange)
 
@@ -5135,7 +5135,7 @@
Parameters
-
1291    def sin(self):
+            
1291    def sin(self):
 1292        return self._apply_func_to_corr(np.sin)
 
@@ -5154,7 +5154,7 @@
Parameters
-
1294    def cos(self):
+            
1294    def cos(self):
 1295        return self._apply_func_to_corr(np.cos)
 
@@ -5173,7 +5173,7 @@
Parameters
-
1297    def tan(self):
+            
1297    def tan(self):
 1298        return self._apply_func_to_corr(np.tan)
 
@@ -5192,7 +5192,7 @@
Parameters
-
1300    def sinh(self):
+            
1300    def sinh(self):
 1301        return self._apply_func_to_corr(np.sinh)
 
@@ -5211,7 +5211,7 @@
Parameters
-
1303    def cosh(self):
+            
1303    def cosh(self):
 1304        return self._apply_func_to_corr(np.cosh)
 
@@ -5230,7 +5230,7 @@
Parameters
-
1306    def tanh(self):
+            
1306    def tanh(self):
 1307        return self._apply_func_to_corr(np.tanh)
 
@@ -5249,7 +5249,7 @@
Parameters
-
1309    def arcsin(self):
+            
1309    def arcsin(self):
 1310        return self._apply_func_to_corr(np.arcsin)
 
@@ -5268,7 +5268,7 @@
Parameters
-
1312    def arccos(self):
+            
1312    def arccos(self):
 1313        return self._apply_func_to_corr(np.arccos)
 
@@ -5287,7 +5287,7 @@
Parameters
-
1315    def arctan(self):
+            
1315    def arctan(self):
 1316        return self._apply_func_to_corr(np.arctan)
 
@@ -5306,7 +5306,7 @@
Parameters
-
1318    def arcsinh(self):
+            
1318    def arcsinh(self):
 1319        return self._apply_func_to_corr(np.arcsinh)
 
@@ -5325,7 +5325,7 @@
Parameters
-
1321    def arccosh(self):
+            
1321    def arccosh(self):
 1322        return self._apply_func_to_corr(np.arccosh)
 
@@ -5344,7 +5344,7 @@
Parameters
-
1324    def arctanh(self):
+            
1324    def arctanh(self):
 1325        return self._apply_func_to_corr(np.arctanh)
 
@@ -5362,8 +5362,8 @@
Parameters
1340    @property
-1341    def real(self):
-1342        def return_real(obs_OR_cobs):
+1341    def real(self):
+1342        def return_real(obs_OR_cobs):
 1343            if isinstance(obs_OR_cobs.flatten()[0], CObs):
 1344                return np.vectorize(lambda x: x.real)(obs_OR_cobs)
 1345            else:
@@ -5386,8 +5386,8 @@ 
Parameters
1350    @property
-1351    def imag(self):
-1352        def return_imag(obs_OR_cobs):
+1351    def imag(self):
+1352        def return_imag(obs_OR_cobs):
 1353            if isinstance(obs_OR_cobs.flatten()[0], CObs):
 1354                return np.vectorize(lambda x: x.imag)(obs_OR_cobs)
 1355            else:
@@ -5411,7 +5411,7 @@ 
Parameters
-
1360    def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):
+            
1360    def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):
 1361        r''' Project large correlation matrix to lowest states
 1362
 1363        This method can be used to reduce the size of an (N x N) correlation matrix
diff --git a/docs/pyerrors/covobs.html b/docs/pyerrors/covobs.html
index 9b20b705..80a4ef5f 100644
--- a/docs/pyerrors/covobs.html
+++ b/docs/pyerrors/covobs.html
@@ -97,12 +97,12 @@ 

-
  1import numpy as np
+                        
  1import numpy as np
   2
   3
-  4class Covobs:
+  4class Covobs:
   5
-  6    def __init__(self, mean, cov, name, pos=None, grad=None):
+  6    def __init__(self, mean, cov, name, pos=None, grad=None):
   7        """ Initialize Covobs object.
   8
   9        Parameters
@@ -138,12 +138,12 @@ 

39 self._set_grad(grad) 40 self.value = mean 41 - 42 def errsq(self): + 42 def errsq(self): 43 """ Return the variance (= square of the error) of the Covobs 44 """ 45 return np.dot(np.transpose(self.grad), np.dot(self.cov, self.grad)).item() 46 - 47 def _set_cov(self, cov): + 47 def _set_cov(self, cov): 48 """ Set the covariance matrix of the covobs 49 50 Parameters @@ -178,7 +178,7 @@

79 if ev < 0: 80 raise Exception('Covariance matrix is not positive-semidefinite!') 81 - 82 def _set_grad(self, grad): + 82 def _set_grad(self, grad): 83 """ Set the gradient of the covobs 84 85 Parameters @@ -195,11 +195,11 @@

96 raise Exception('Invalid dimension of grad!') 97 98 @property - 99 def cov(self): + 99 def cov(self): 100 return self._cov 101 102 @property -103 def grad(self): +103 def grad(self): 104 return self._grad

@@ -216,9 +216,9 @@

-
  5class Covobs:
+            
  5class Covobs:
   6
-  7    def __init__(self, mean, cov, name, pos=None, grad=None):
+  7    def __init__(self, mean, cov, name, pos=None, grad=None):
   8        """ Initialize Covobs object.
   9
  10        Parameters
@@ -254,12 +254,12 @@ 

40 self._set_grad(grad) 41 self.value = mean 42 - 43 def errsq(self): + 43 def errsq(self): 44 """ Return the variance (= square of the error) of the Covobs 45 """ 46 return np.dot(np.transpose(self.grad), np.dot(self.cov, self.grad)).item() 47 - 48 def _set_cov(self, cov): + 48 def _set_cov(self, cov): 49 """ Set the covariance matrix of the covobs 50 51 Parameters @@ -294,7 +294,7 @@

80 if ev < 0: 81 raise Exception('Covariance matrix is not positive-semidefinite!') 82 - 83 def _set_grad(self, grad): + 83 def _set_grad(self, grad): 84 """ Set the gradient of the covobs 85 86 Parameters @@ -311,11 +311,11 @@

97 raise Exception('Invalid dimension of grad!') 98 99 @property -100 def cov(self): +100 def cov(self): 101 return self._cov 102 103 @property -104 def grad(self): +104 def grad(self): 105 return self._grad

@@ -332,7 +332,7 @@

-
 7    def __init__(self, mean, cov, name, pos=None, grad=None):
+            
 7    def __init__(self, mean, cov, name, pos=None, grad=None):
  8        """ Initialize Covobs object.
  9
 10        Parameters
@@ -424,7 +424,7 @@ 
Parameters
-
43    def errsq(self):
+            
43    def errsq(self):
 44        """ Return the variance (= square of the error) of the Covobs
 45        """
 46        return np.dot(np.transpose(self.grad), np.dot(self.cov, self.grad)).item()
@@ -446,7 +446,7 @@ 
Parameters
 99    @property
-100    def cov(self):
+100    def cov(self):
 101        return self._cov
 
@@ -464,7 +464,7 @@
Parameters
103    @property
-104    def grad(self):
+104    def grad(self):
 105        return self._grad
 
diff --git a/docs/pyerrors/dirac.html b/docs/pyerrors/dirac.html index 49b94a06..450c573a 100644 --- a/docs/pyerrors/dirac.html +++ b/docs/pyerrors/dirac.html @@ -103,7 +103,7 @@

-
 1import numpy as np
+                        
 1import numpy as np
  2
  3
  4gammaX = np.array(
@@ -127,7 +127,7 @@ 

22 dtype=complex) 23 24 -25def epsilon_tensor(i, j, k): +25def epsilon_tensor(i, j, k): 26 """Rank-3 epsilon tensor 27 28 Based on https://codegolf.stackexchange.com/a/160375 @@ -144,7 +144,7 @@

39 return (i - j) * (j - k) * (k - i) / 2 40 41 -42def epsilon_tensor_rank4(i, j, k, o): +42def epsilon_tensor_rank4(i, j, k, o): 43 """Rank-4 epsilon tensor 44 45 Extension of https://codegolf.stackexchange.com/a/160375 @@ -162,7 +162,7 @@

57 return (i - j) * (j - k) * (k - i) * (i - o) * (j - o) * (o - k) / 12 58 59 -60def Grid_gamma(gamma_tag): +60def Grid_gamma(gamma_tag): 61 """Returns gamma matrix in Grid labeling.""" 62 if gamma_tag == 'Identity': 63 g = identity @@ -341,7 +341,7 @@

-
26def epsilon_tensor(i, j, k):
+            
26def epsilon_tensor(i, j, k):
 27    """Rank-3 epsilon tensor
 28
 29    Based on https://codegolf.stackexchange.com/a/160375
@@ -384,7 +384,7 @@ 
Returns
-
43def epsilon_tensor_rank4(i, j, k, o):
+            
43def epsilon_tensor_rank4(i, j, k, o):
 44    """Rank-4 epsilon tensor
 45
 46    Extension of https://codegolf.stackexchange.com/a/160375
@@ -428,7 +428,7 @@ 
Returns
-
61def Grid_gamma(gamma_tag):
+            
61def Grid_gamma(gamma_tag):
 62    """Returns gamma matrix in Grid labeling."""
 63    if gamma_tag == 'Identity':
 64        g = identity
diff --git a/docs/pyerrors/fits.html b/docs/pyerrors/fits.html
index 21620dbb..63d7aae4 100644
--- a/docs/pyerrors/fits.html
+++ b/docs/pyerrors/fits.html
@@ -109,26 +109,26 @@ 

-
  1import gc
-  2from collections.abc import Sequence
-  3import warnings
-  4import numpy as np
-  5import autograd.numpy as anp
-  6import scipy.optimize
-  7import scipy.stats
-  8import matplotlib.pyplot as plt
-  9from matplotlib import gridspec
- 10from scipy.odr import ODR, Model, RealData
- 11import iminuit
- 12from autograd import jacobian as auto_jacobian
- 13from autograd import hessian as auto_hessian
- 14from autograd import elementwise_grad as egrad
- 15from numdifftools import Jacobian as num_jacobian
- 16from numdifftools import Hessian as num_hessian
- 17from .obs import Obs, derived_observable, covariance, cov_Obs, invert_corr_cov_cholesky
+                        
  1import gc
+  2from collections.abc import Sequence
+  3import warnings
+  4import numpy as np
+  5import autograd.numpy as anp
+  6import scipy.optimize
+  7import scipy.stats
+  8import matplotlib.pyplot as plt
+  9from matplotlib import gridspec
+ 10from scipy.odr import ODR, Model, RealData
+ 11import iminuit
+ 12from autograd import jacobian as auto_jacobian
+ 13from autograd import hessian as auto_hessian
+ 14from autograd import elementwise_grad as egrad
+ 15from numdifftools import Jacobian as num_jacobian
+ 16from numdifftools import Hessian as num_hessian
+ 17from .obs import Obs, derived_observable, covariance, cov_Obs, invert_corr_cov_cholesky
  18
  19
- 20class Fit_result(Sequence):
+ 20class Fit_result(Sequence):
  21    """Represents fit results.
  22
  23    Attributes
@@ -144,22 +144,22 @@ 

33 Hotelling t-squared p-value for correlated fits. 34 """ 35 - 36 def __init__(self): + 36 def __init__(self): 37 self.fit_parameters = None 38 - 39 def __getitem__(self, idx): + 39 def __getitem__(self, idx): 40 return self.fit_parameters[idx] 41 - 42 def __len__(self): + 42 def __len__(self): 43 return len(self.fit_parameters) 44 - 45 def gamma_method(self, **kwargs): + 45 def gamma_method(self, **kwargs): 46 """Apply the gamma method to all fit parameters""" 47 [o.gamma_method(**kwargs) for o in self.fit_parameters] 48 49 gm = gamma_method 50 - 51 def __str__(self): + 51 def __str__(self): 52 my_str = 'Goodness of fit:\n' 53 if hasattr(self, 'chisquare_by_dof'): 54 my_str += '\u03C7\u00b2/d.o.f. = ' + f'{self.chisquare_by_dof:2.6f}' + '\n' @@ -176,12 +176,12 @@

65 my_str += str(i_par) + '\t' + ' ' * int(par >= 0) + str(par).rjust(int(par < 0.0)) + '\n' 66 return my_str 67 - 68 def __repr__(self): + 68 def __repr__(self): 69 m = max(map(len, list(self.__dict__.keys()))) + 1 70 return '\n'.join([key.rjust(m) + ': ' + repr(value) for key, value in sorted(self.__dict__.items())]) 71 72 - 73def least_squares(x, y, func, priors=None, silent=False, **kwargs): + 73def least_squares(x, y, func, priors=None, silent=False, **kwargs): 74 r'''Performs a non-linear fit to y = func(x). 75 ``` 76 @@ -455,15 +455,15 @@

344 x0 = [0.1] * n_parms 345 346 if priors is None: -347 def general_chisqfunc_uncorr(p, ivars, pr): +347 def general_chisqfunc_uncorr(p, ivars, pr): 348 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 349 return (ivars - model) / dy_f 350 else: -351 def general_chisqfunc_uncorr(p, ivars, pr): +351 def general_chisqfunc_uncorr(p, ivars, pr): 352 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 353 return anp.concatenate(((ivars - model) / dy_f, (p[prior_mask] - pr) / dp_f)) 354 -355 def chisqfunc_uncorr(p): +355 def chisqfunc_uncorr(p): 356 return anp.sum(general_chisqfunc_uncorr(p, y_f, p_f) ** 2) 357 358 if kwargs.get('correlated_fit') is True: @@ -481,11 +481,11 @@

370 inverrdiag = np.diag(1 / np.asarray(dy_f)) 371 chol_inv = invert_corr_cov_cholesky(corr, inverrdiag) 372 -373 def general_chisqfunc(p, ivars, pr): +373 def general_chisqfunc(p, ivars, pr): 374 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 375 return anp.concatenate((anp.dot(chol_inv, (ivars - model)), (p[prior_mask] - pr) / dp_f)) 376 -377 def chisqfunc(p): +377 def chisqfunc(p): 378 return anp.sum(general_chisqfunc(p, y_f, p_f) ** 2) 379 else: 380 general_chisqfunc = general_chisqfunc_uncorr @@ -519,12 +519,12 @@

408 if 'tol' in kwargs: 409 print('tol cannot be set for Levenberg-Marquardt') 410 -411 def chisqfunc_residuals_uncorr(p): +411 def chisqfunc_residuals_uncorr(p): 412 return general_chisqfunc_uncorr(p, y_f, p_f) 413 414 fit_result = scipy.optimize.least_squares(chisqfunc_residuals_uncorr, x0, method='lm', ftol=1e-15, gtol=1e-15, xtol=1e-15) 415 if kwargs.get('correlated_fit') is True: -416 def chisqfunc_residuals(p): +416 def chisqfunc_residuals(p): 417 return general_chisqfunc(p, y_f, p_f) 418 419 fit_result = scipy.optimize.least_squares(chisqfunc_residuals, fit_result.x, method='lm', ftol=1e-15, gtol=1e-15, xtol=1e-15) @@ -551,7 +551,7 @@

440 print('chisquare/d.o.f.:', output.chisquare_by_dof) 441 print('fit parameters', fit_result.x) 442 -443 def prepare_hat_matrix(): +443 def prepare_hat_matrix(): 444 hat_vector = [] 445 for key in key_ls: 446 if (len(xd[key]) != 0): @@ -576,11 +576,11 @@

465 try: 466 hess = hessian(chisqfunc)(fitp) 467 except TypeError: -468 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None +468 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None 469 470 len_y = len(y_f) 471 -472 def chisqfunc_compact(d): +472 def chisqfunc_compact(d): 473 return anp.sum(general_chisqfunc(d[:n_parms], d[n_parms: n_parms + len_y], d[n_parms + len_y:]) ** 2) 474 475 jac_jac_y = hessian(chisqfunc_compact)(np.concatenate((fitp, y_f, p_f))) @@ -614,7 +614,7 @@

503 return output 504 505 -506def total_least_squares(x, y, func, silent=False, **kwargs): +506def total_least_squares(x, y, func, silent=False, **kwargs): 507 r'''Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters. 508 509 Parameters @@ -742,7 +742,7 @@

631 632 m = x_f.size 633 -634 def odr_chisquare(p): +634 def odr_chisquare(p): 635 model = func(p[:n_parms], p[n_parms:].reshape(x_shape)) 636 chisq = anp.sum(((y_f - model) / dy_f) ** 2) + anp.sum(((x_f - p[n_parms:].reshape(x_shape)) / dx_f) ** 2) 637 return chisq @@ -777,9 +777,9 @@

666 try: 667 hess = hessian(odr_chisquare)(np.concatenate((fitp, out.xplus.ravel()))) 668 except TypeError: -669 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None +669 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None 670 -671 def odr_chisquare_compact_x(d): +671 def odr_chisquare_compact_x(d): 672 model = func(d[:n_parms], d[n_parms:n_parms + m].reshape(x_shape)) 673 chisq = anp.sum(((y_f - model) / dy_f) ** 2) + anp.sum(((d[n_parms + m:].reshape(x_shape) - d[n_parms:n_parms + m].reshape(x_shape)) / dx_f) ** 2) 674 return chisq @@ -792,7 +792,7 @@

681 except np.linalg.LinAlgError: 682 raise Exception("Cannot invert hessian matrix.") 683 -684 def odr_chisquare_compact_y(d): +684 def odr_chisquare_compact_y(d): 685 model = func(d[:n_parms], d[n_parms:n_parms + m].reshape(x_shape)) 686 chisq = anp.sum(((d[n_parms + m:] - model) / dy_f) ** 2) + anp.sum(((x_f - d[n_parms:n_parms + m].reshape(x_shape)) / dx_f) ** 2) 687 return chisq @@ -818,7 +818,7 @@

707 return output 708 709 -710def fit_lin(x, y, **kwargs): +710def fit_lin(x, y, **kwargs): 711 """Performs a linear fit to y = n + m * x and returns two Obs n, m. 712 713 Parameters @@ -835,7 +835,7 @@

724 LIist of fitted observables. 725 """ 726 -727 def f(a, x): +727 def f(a, x): 728 y = a[0] + a[1] * x 729 return y 730 @@ -849,7 +849,7 @@

738 raise TypeError('Unsupported types for x') 739 740 -741def qqplot(x, o_y, func, p, title=""): +741def qqplot(x, o_y, func, p, title=""): 742 """Generates a quantile-quantile plot of the fit result which can be used to 743 check if the residuals of the fit are gaussian distributed. 744 @@ -879,7 +879,7 @@

768 plt.draw() 769 770 -771def residual_plot(x, y, func, fit_res, title=""): +771def residual_plot(x, y, func, fit_res, title=""): 772 """Generates a plot which compares the fit to the data and displays the corresponding residuals 773 774 For uncorrelated data the residuals are expected to be distributed ~N(0,1). @@ -916,7 +916,7 @@

805 plt.draw() 806 807 -808def error_band(x, func, beta): +808def error_band(x, func, beta): 809 """Calculate the error band for an array of sample values x, for given fit function func with optimized parameters beta. 810 811 Returns @@ -940,7 +940,7 @@

829 return err 830 831 -832def ks_test(objects=None): +832def ks_test(objects=None): 833 """Performs a Kolmogorov–Smirnov test for the p-values of all fit object. 834 835 Parameters @@ -984,7 +984,7 @@

873 print(scipy.stats.kstest(p_values, 'uniform')) 874 875 -876def _extract_val_and_dval(string): +876def _extract_val_and_dval(string): 877 split_string = string.split('(') 878 if '.' in split_string[0] and '.' not in split_string[1][:-1]: 879 factor = 10 ** -len(split_string[0].partition('.')[2]) @@ -993,7 +993,7 @@

882 return float(split_string[0]), float(split_string[1][:-1]) * factor 883 884 -885def _construct_prior_obs(i_prior, i_n): +885def _construct_prior_obs(i_prior, i_n): 886 if isinstance(i_prior, Obs): 887 return i_prior 888 elif isinstance(i_prior, str): @@ -1016,7 +1016,7 @@

-
21class Fit_result(Sequence):
+            
21class Fit_result(Sequence):
 22    """Represents fit results.
 23
 24    Attributes
@@ -1032,22 +1032,22 @@ 

34 Hotelling t-squared p-value for correlated fits. 35 """ 36 -37 def __init__(self): +37 def __init__(self): 38 self.fit_parameters = None 39 -40 def __getitem__(self, idx): +40 def __getitem__(self, idx): 41 return self.fit_parameters[idx] 42 -43 def __len__(self): +43 def __len__(self): 44 return len(self.fit_parameters) 45 -46 def gamma_method(self, **kwargs): +46 def gamma_method(self, **kwargs): 47 """Apply the gamma method to all fit parameters""" 48 [o.gamma_method(**kwargs) for o in self.fit_parameters] 49 50 gm = gamma_method 51 -52 def __str__(self): +52 def __str__(self): 53 my_str = 'Goodness of fit:\n' 54 if hasattr(self, 'chisquare_by_dof'): 55 my_str += '\u03C7\u00b2/d.o.f. = ' + f'{self.chisquare_by_dof:2.6f}' + '\n' @@ -1064,7 +1064,7 @@

66 my_str += str(i_par) + '\t' + ' ' * int(par >= 0) + str(par).rjust(int(par < 0.0)) + '\n' 67 return my_str 68 -69 def __repr__(self): +69 def __repr__(self): 70 m = max(map(len, list(self.__dict__.keys()))) + 1 71 return '\n'.join([key.rjust(m) + ': ' + repr(value) for key, value in sorted(self.__dict__.items())])

@@ -1110,7 +1110,7 @@
Attributes
-
46    def gamma_method(self, **kwargs):
+            
46    def gamma_method(self, **kwargs):
 47        """Apply the gamma method to all fit parameters"""
 48        [o.gamma_method(**kwargs) for o in self.fit_parameters]
 
@@ -1132,7 +1132,7 @@
Attributes
-
46    def gamma_method(self, **kwargs):
+            
46    def gamma_method(self, **kwargs):
 47        """Apply the gamma method to all fit parameters"""
 48        [o.gamma_method(**kwargs) for o in self.fit_parameters]
 
@@ -1155,7 +1155,7 @@
Attributes
-
 74def least_squares(x, y, func, priors=None, silent=False, **kwargs):
+            
 74def least_squares(x, y, func, priors=None, silent=False, **kwargs):
  75    r'''Performs a non-linear fit to y = func(x).
  76        ```
  77
@@ -1429,15 +1429,15 @@ 
Attributes
345 x0 = [0.1] * n_parms 346 347 if priors is None: -348 def general_chisqfunc_uncorr(p, ivars, pr): +348 def general_chisqfunc_uncorr(p, ivars, pr): 349 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 350 return (ivars - model) / dy_f 351 else: -352 def general_chisqfunc_uncorr(p, ivars, pr): +352 def general_chisqfunc_uncorr(p, ivars, pr): 353 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 354 return anp.concatenate(((ivars - model) / dy_f, (p[prior_mask] - pr) / dp_f)) 355 -356 def chisqfunc_uncorr(p): +356 def chisqfunc_uncorr(p): 357 return anp.sum(general_chisqfunc_uncorr(p, y_f, p_f) ** 2) 358 359 if kwargs.get('correlated_fit') is True: @@ -1455,11 +1455,11 @@
Attributes
371 inverrdiag = np.diag(1 / np.asarray(dy_f)) 372 chol_inv = invert_corr_cov_cholesky(corr, inverrdiag) 373 -374 def general_chisqfunc(p, ivars, pr): +374 def general_chisqfunc(p, ivars, pr): 375 model = anp.concatenate([anp.array(funcd[key](p, xd[key])).reshape(-1) for key in key_ls]) 376 return anp.concatenate((anp.dot(chol_inv, (ivars - model)), (p[prior_mask] - pr) / dp_f)) 377 -378 def chisqfunc(p): +378 def chisqfunc(p): 379 return anp.sum(general_chisqfunc(p, y_f, p_f) ** 2) 380 else: 381 general_chisqfunc = general_chisqfunc_uncorr @@ -1493,12 +1493,12 @@
Attributes
409 if 'tol' in kwargs: 410 print('tol cannot be set for Levenberg-Marquardt') 411 -412 def chisqfunc_residuals_uncorr(p): +412 def chisqfunc_residuals_uncorr(p): 413 return general_chisqfunc_uncorr(p, y_f, p_f) 414 415 fit_result = scipy.optimize.least_squares(chisqfunc_residuals_uncorr, x0, method='lm', ftol=1e-15, gtol=1e-15, xtol=1e-15) 416 if kwargs.get('correlated_fit') is True: -417 def chisqfunc_residuals(p): +417 def chisqfunc_residuals(p): 418 return general_chisqfunc(p, y_f, p_f) 419 420 fit_result = scipy.optimize.least_squares(chisqfunc_residuals, fit_result.x, method='lm', ftol=1e-15, gtol=1e-15, xtol=1e-15) @@ -1525,7 +1525,7 @@
Attributes
441 print('chisquare/d.o.f.:', output.chisquare_by_dof) 442 print('fit parameters', fit_result.x) 443 -444 def prepare_hat_matrix(): +444 def prepare_hat_matrix(): 445 hat_vector = [] 446 for key in key_ls: 447 if (len(xd[key]) != 0): @@ -1550,11 +1550,11 @@
Attributes
466 try: 467 hess = hessian(chisqfunc)(fitp) 468 except TypeError: -469 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None +469 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None 470 471 len_y = len(y_f) 472 -473 def chisqfunc_compact(d): +473 def chisqfunc_compact(d): 474 return anp.sum(general_chisqfunc(d[:n_parms], d[n_parms: n_parms + len_y], d[n_parms + len_y:]) ** 2) 475 476 jac_jac_y = hessian(chisqfunc_compact)(np.concatenate((fitp, y_f, p_f))) @@ -1604,9 +1604,9 @@
Parameters
fit function, has to be of the form

-
import autograd.numpy as anp
+
import autograd.numpy as anp
 
-def func(a, x):
+def func(a, x):
     return a[0] + a[1] * x + a[2] * anp.sinh(x)
 
@@ -1614,7 +1614,7 @@
Parameters

For multiple x values func can be of the form

-
def func(a, x):
+
def func(a, x):
     (x1, x2) = x
     return a[0] * x1 ** 2 + a[1] * x2
 
@@ -1698,10 +1698,10 @@
Examples
>>> # Example of a correlated (correlated_fit = True, inv_chol_cov_matrix handed over) combined fit, based on a randomly generated data set
->>> import numpy as np
->>> from scipy.stats import norm
->>> from scipy.linalg import cholesky
->>> import pyerrors as pe
+>>> import numpy as np
+>>> from scipy.stats import norm
+>>> from scipy.linalg import cholesky
+>>> import pyerrors as pe
 >>> # generating the random data set
 >>> num_samples = 400
 >>> N = 3
@@ -1734,9 +1734,9 @@ 
Examples
>>> chol_inv = pe.obs.invert_corr_cov_cholesky(corr, inverrdiag) # gives form of the inverse covariance matrix needed for the combined correlated fit below >>> y_dict = {'a': data[:3], 'b': data[3:]} >>> # common fit parameter p[0] in combined fit ->>> def fit1(p, x): +>>> def fit1(p, x): >>> return p[0] + p[1] * x ->>> def fit2(p, x): +>>> def fit2(p, x): >>> return p[0] + p[2] * x >>> fitf_dict = {'a': fit1, 'b':fit2} >>> fitp_inv_cov_combined_fit = pe.least_squares(x_dict,y_dict, fitf_dict, correlated_fit = True, inv_chol_cov_matrix = [chol_inv,['a','b']]) @@ -1762,7 +1762,7 @@
Examples
-
507def total_least_squares(x, y, func, silent=False, **kwargs):
+            
507def total_least_squares(x, y, func, silent=False, **kwargs):
 508    r'''Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters.
 509
 510    Parameters
@@ -1890,7 +1890,7 @@ 
Examples
632 633 m = x_f.size 634 -635 def odr_chisquare(p): +635 def odr_chisquare(p): 636 model = func(p[:n_parms], p[n_parms:].reshape(x_shape)) 637 chisq = anp.sum(((y_f - model) / dy_f) ** 2) + anp.sum(((x_f - p[n_parms:].reshape(x_shape)) / dx_f) ** 2) 638 return chisq @@ -1925,9 +1925,9 @@
Examples
667 try: 668 hess = hessian(odr_chisquare)(np.concatenate((fitp, out.xplus.ravel()))) 669 except TypeError: -670 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None +670 raise Exception("It is required to use autograd.numpy instead of numpy within fit functions, see the documentation for details.") from None 671 -672 def odr_chisquare_compact_x(d): +672 def odr_chisquare_compact_x(d): 673 model = func(d[:n_parms], d[n_parms:n_parms + m].reshape(x_shape)) 674 chisq = anp.sum(((y_f - model) / dy_f) ** 2) + anp.sum(((d[n_parms + m:].reshape(x_shape) - d[n_parms:n_parms + m].reshape(x_shape)) / dx_f) ** 2) 675 return chisq @@ -1940,7 +1940,7 @@
Examples
682 except np.linalg.LinAlgError: 683 raise Exception("Cannot invert hessian matrix.") 684 -685 def odr_chisquare_compact_y(d): +685 def odr_chisquare_compact_y(d): 686 model = func(d[:n_parms], d[n_parms:n_parms + m].reshape(x_shape)) 687 chisq = anp.sum(((d[n_parms + m:] - model) / dy_f) ** 2) + anp.sum(((x_f - d[n_parms:n_parms + m].reshape(x_shape)) / dx_f) ** 2) 688 return chisq @@ -1980,9 +1980,9 @@
Parameters
func has to be of the form

-
import autograd.numpy as anp
+
import autograd.numpy as anp
 
-def func(a, x):
+def func(a, x):
     return a[0] + a[1] * x + a[2] * anp.sinh(x)
 
@@ -1990,7 +1990,7 @@
Parameters

For multiple x values func can be of the form

-
def func(a, x):
+
def func(a, x):
     (x1, x2) = x
     return a[0] * x1 ** 2 + a[1] * x2
 
@@ -2037,7 +2037,7 @@
Returns
-
711def fit_lin(x, y, **kwargs):
+            
711def fit_lin(x, y, **kwargs):
 712    """Performs a linear fit to y = n + m * x and returns two Obs n, m.
 713
 714    Parameters
@@ -2054,7 +2054,7 @@ 
Returns
725 LIist of fitted observables. 726 """ 727 -728 def f(a, x): +728 def f(a, x): 729 y = a[0] + a[1] * x 730 return y 731 @@ -2102,7 +2102,7 @@
Returns
-
742def qqplot(x, o_y, func, p, title=""):
+            
742def qqplot(x, o_y, func, p, title=""):
 743    """Generates a quantile-quantile plot of the fit result which can be used to
 744       check if the residuals of the fit are gaussian distributed.
 745
@@ -2156,7 +2156,7 @@ 
Returns
-
772def residual_plot(x, y, func, fit_res, title=""):
+            
772def residual_plot(x, y, func, fit_res, title=""):
 773    """Generates a plot which compares the fit to the data and displays the corresponding residuals
 774
 775    For uncorrelated data the residuals are expected to be distributed ~N(0,1).
@@ -2218,7 +2218,7 @@ 
Returns
-
809def error_band(x, func, beta):
+            
809def error_band(x, func, beta):
 810    """Calculate the error band for an array of sample values x, for given fit function func with optimized parameters beta.
 811
 812    Returns
@@ -2266,7 +2266,7 @@ 
Returns
-
833def ks_test(objects=None):
+            
833def ks_test(objects=None):
 834    """Performs a Kolmogorov–Smirnov test for the p-values of all fit object.
 835
 836    Parameters
diff --git a/docs/pyerrors/input.html b/docs/pyerrors/input.html
index 966d6dfb..3fd783ff 100644
--- a/docs/pyerrors/input.html
+++ b/docs/pyerrors/input.html
@@ -100,14 +100,14 @@ 

Jackknife samples

5For comparison with other analysis workflows `pyerrors` can also generate jackknife samples from an `Obs` object or import jackknife samples into an `Obs` object. 6See `pyerrors.obs.Obs.export_jackknife` and `pyerrors.obs.import_jackknife` for details. 7''' - 8from . import bdio as bdio - 9from . import dobs as dobs -10from . import hadrons as hadrons -11from . import json as json -12from . import misc as misc -13from . import openQCD as openQCD -14from . import pandas as pandas -15from . import sfcf as sfcf + 8from . import bdio as bdio + 9from . import dobs as dobs +10from . import hadrons as hadrons +11from . import json as json +12from . import misc as misc +13from . import openQCD as openQCD +14from . import pandas as pandas +15from . import sfcf as sfcf
diff --git a/docs/pyerrors/input/bdio.html b/docs/pyerrors/input/bdio.html index 2a08f3b0..afaebcd8 100644 --- a/docs/pyerrors/input/bdio.html +++ b/docs/pyerrors/input/bdio.html @@ -85,13 +85,13 @@

-
  1import ctypes
-  2import hashlib
-  3import autograd.numpy as np  # Thinly-wrapped numpy
-  4from ..obs import Obs
+                        
  1import ctypes
+  2import hashlib
+  3import autograd.numpy as np  # Thinly-wrapped numpy
+  4from ..obs import Obs
   5
   6
-  7def read_ADerrors(file_path, bdio_path='./libbdio.so', **kwargs):
+  7def read_ADerrors(file_path, bdio_path='./libbdio.so', **kwargs):
   8    """ Extract generic MCMC data from a bdio file
   9
  10    read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by
@@ -166,7 +166,7 @@ 

79 break 80 bdio_get_rlen(fbdio) 81 - 82 def read_c_double(): + 82 def read_c_double(): 83 d_buf = ctypes.c_double 84 pd_buf = d_buf() 85 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) @@ -176,7 +176,7 @@

89 mean = read_c_double() 90 print('mean', mean) 91 - 92 def read_c_size_t(): + 92 def read_c_size_t(): 93 d_buf = ctypes.c_size_t 94 pd_buf = d_buf() 95 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) @@ -247,7 +247,7 @@

160 return return_list 161 162 -163def write_ADerrors(obs_list, file_path, bdio_path='./libbdio.so', **kwargs): +163def write_ADerrors(obs_list, file_path, bdio_path='./libbdio.so', **kwargs): 164 """ Write Obs to a bdio file according to ADerrors conventions 165 166 read_mesons requires bdio to be compiled into a shared library. This can be achieved by @@ -341,12 +341,12 @@

254 255 bdio_start_record(0x00, 8, fbdio) 256 -257 def write_c_double(double): +257 def write_c_double(double): 258 pd_buf = ctypes.c_double(double) 259 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) 260 bdio_write_f64(ppd_buf, ctypes.c_size_t(8), ctypes.c_void_p(fbdio)) 261 -262 def write_c_size_t(int32): +262 def write_c_size_t(int32): 263 pd_buf = ctypes.c_size_t(int32) 264 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) 265 bdio_write_int32(ppd_buf, ctypes.c_size_t(4), ctypes.c_void_p(fbdio)) @@ -377,15 +377,15 @@

290 return 0 291 292 -293def _get_kwd(string, key): +293def _get_kwd(string, key): 294 return (string.split(key, 1)[1]).split(" ", 1)[0] 295 296 -297def _get_corr_name(string, key): +297def _get_corr_name(string, key): 298 return (string.split(key, 1)[1]).split(' NDIM=', 1)[0] 299 300 -301def read_mesons(file_path, bdio_path='./libbdio.so', **kwargs): +301def read_mesons(file_path, bdio_path='./libbdio.so', **kwargs): 302 """ Extract mesons data from a bdio file and return it as a dictionary 303 304 The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2) @@ -600,7 +600,7 @@

513 return result 514 515 -516def read_dSdm(file_path, bdio_path='./libbdio.so', **kwargs): +516def read_dSdm(file_path, bdio_path='./libbdio.so', **kwargs): 517 """ Extract dSdm data from a bdio file and return it as a dictionary 518 519 The dictionary can be accessed with a tuple consisting of (type, kappa) @@ -794,7 +794,7 @@

-
  8def read_ADerrors(file_path, bdio_path='./libbdio.so', **kwargs):
+            
  8def read_ADerrors(file_path, bdio_path='./libbdio.so', **kwargs):
   9    """ Extract generic MCMC data from a bdio file
  10
  11    read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by
@@ -869,7 +869,7 @@ 

80 break 81 bdio_get_rlen(fbdio) 82 - 83 def read_c_double(): + 83 def read_c_double(): 84 d_buf = ctypes.c_double 85 pd_buf = d_buf() 86 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) @@ -879,7 +879,7 @@

90 mean = read_c_double() 91 print('mean', mean) 92 - 93 def read_c_size_t(): + 93 def read_c_size_t(): 94 d_buf = ctypes.c_size_t 95 pd_buf = d_buf() 96 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) @@ -988,7 +988,7 @@
Returns

-
164def write_ADerrors(obs_list, file_path, bdio_path='./libbdio.so', **kwargs):
+            
164def write_ADerrors(obs_list, file_path, bdio_path='./libbdio.so', **kwargs):
 165    """ Write Obs to a bdio file according to ADerrors conventions
 166
 167    read_mesons requires bdio to be compiled into a shared library. This can be achieved by
@@ -1082,12 +1082,12 @@ 
Returns
255 256 bdio_start_record(0x00, 8, fbdio) 257 -258 def write_c_double(double): +258 def write_c_double(double): 259 pd_buf = ctypes.c_double(double) 260 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) 261 bdio_write_f64(ppd_buf, ctypes.c_size_t(8), ctypes.c_void_p(fbdio)) 262 -263 def write_c_size_t(int32): +263 def write_c_size_t(int32): 264 pd_buf = ctypes.c_size_t(int32) 265 ppd_buf = ctypes.c_void_p(ctypes.addressof(pd_buf)) 266 bdio_write_int32(ppd_buf, ctypes.c_size_t(4), ctypes.c_void_p(fbdio)) @@ -1156,7 +1156,7 @@
Returns
-
302def read_mesons(file_path, bdio_path='./libbdio.so', **kwargs):
+            
302def read_mesons(file_path, bdio_path='./libbdio.so', **kwargs):
 303    """ Extract mesons data from a bdio file and return it as a dictionary
 304
 305    The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2)
@@ -1421,7 +1421,7 @@ 
Returns
-
517def read_dSdm(file_path, bdio_path='./libbdio.so', **kwargs):
+            
517def read_dSdm(file_path, bdio_path='./libbdio.so', **kwargs):
 518    """ Extract dSdm data from a bdio file and return it as a dictionary
 519
 520    The dictionary can be accessed with a tuple consisting of (type, kappa)
diff --git a/docs/pyerrors/input/dobs.html b/docs/pyerrors/input/dobs.html
index b2a872be..622f2963 100644
--- a/docs/pyerrors/input/dobs.html
+++ b/docs/pyerrors/input/dobs.html
@@ -94,23 +94,23 @@ 

-
  1from collections import defaultdict
-  2import gzip
-  3import lxml.etree as et
-  4import getpass
-  5import socket
-  6import datetime
-  7import json
-  8import warnings
-  9import numpy as np
- 10from ..obs import Obs
- 11from ..obs import _merge_idx
- 12from ..covobs import Covobs
- 13from .. import version as pyerrorsversion
+                        
  1from collections import defaultdict
+  2import gzip
+  3import lxml.etree as et
+  4import getpass
+  5import socket
+  6import datetime
+  7import json
+  8import warnings
+  9import numpy as np
+ 10from ..obs import Obs
+ 11from ..obs import _merge_idx
+ 12from ..covobs import Covobs
+ 13from .. import version as pyerrorsversion
  14
  15
  16# Based on https://stackoverflow.com/a/10076823
- 17def _etree_to_dict(t):
+ 17def _etree_to_dict(t):
  18    """ Convert the content of an XML file to a python dict"""
  19    d = {t.tag: {} if t.attrib else None}
  20    children = list(t)
@@ -134,7 +134,7 @@ 

38 return d 39 40 - 41def _dict_to_xmlstring(d): + 41def _dict_to_xmlstring(d): 42 if isinstance(d, dict): 43 iters = '' 44 for k in d: @@ -162,7 +162,7 @@

66 return iters 67 68 - 69def _dict_to_xmlstring_spaces(d, space=' '): + 69def _dict_to_xmlstring_spaces(d, space=' '): 70 s = _dict_to_xmlstring(d) 71 o = '' 72 c = 0 @@ -181,7 +181,7 @@

85 return o 86 87 - 88def create_pobs_string(obsl, name, spec='', origin='', symbol=[], enstag=None): + 88def create_pobs_string(obsl, name, spec='', origin='', symbol=[], enstag=None): 89 """Export a list of Obs or structures containing Obs to an xml string 90 according to the Zeuthen pobs format. 91 @@ -272,7 +272,7 @@

176 return rs 177 178 -179def write_pobs(obsl, fname, name, spec='', origin='', symbol=[], enstag=None, gz=True): +179def write_pobs(obsl, fname, name, spec='', origin='', symbol=[], enstag=None, gz=True): 180 """Export a list of Obs or structures containing Obs to a .xml.gz file 181 according to the Zeuthen pobs format. 182 @@ -319,30 +319,30 @@

223 fp.close() 224 225 -226def _import_data(string): +226def _import_data(string): 227 return json.loads("[" + ",".join(string.replace(' +', ' ').split()) + "]") 228 229 -230def _check(condition): +230def _check(condition): 231 if not condition: 232 raise Exception("XML file format not supported") 233 234 -235class _NoTagInDataError(Exception): +235class _NoTagInDataError(Exception): 236 """Raised when tag is not in data""" -237 def __init__(self, tag): +237 def __init__(self, tag): 238 self.tag = tag 239 super().__init__('Tag %s not in data!' % (self.tag)) 240 241 -242def _find_tag(dat, tag): +242def _find_tag(dat, tag): 243 for i in range(len(dat)): 244 if dat[i].tag == tag: 245 return i 246 raise _NoTagInDataError(tag) 247 248 -249def _import_array(arr): +249def _import_array(arr): 250 name = arr[_find_tag(arr, 'id')].text.strip() 251 index = _find_tag(arr, 'layout') 252 try: @@ -380,12 +380,12 @@

284 _check(False) 285 286 -287def _import_rdata(rd): +287def _import_rdata(rd): 288 name, idx, mask, deltas = _import_array(rd) 289 return deltas, name, idx 290 291 -292def _import_cdata(cd): +292def _import_cdata(cd): 293 _check(cd[0].tag == "id") 294 _check(cd[1][0].text.strip() == "cov") 295 cov = _import_array(cd[1]) @@ -393,7 +393,7 @@

297 return cd[0].text.strip(), cov, grad 298 299 -300def read_pobs(fname, full_output=False, gz=True, separator_insertion=None): +300def read_pobs(fname, full_output=False, gz=True, separator_insertion=None): 301 """Import a list of Obs from an xml.gz file in the Zeuthen pobs format. 302 303 Tags are not written or recovered automatically. @@ -493,7 +493,7 @@

397 398 399# this is based on Mattia Bruno's implementation at https://github.com/mbruno46/pyobs/blob/master/pyobs/IO/xml.py -400def import_dobs_string(content, full_output=False, separator_insertion=True): +400def import_dobs_string(content, full_output=False, separator_insertion=True): 401 """Import a list of Obs from a string in the Zeuthen dobs format. 402 403 Tags are not written or recovered automatically. @@ -667,7 +667,7 @@

571 return res 572 573 -574def read_dobs(fname, full_output=False, gz=True, separator_insertion=True): +574def read_dobs(fname, full_output=False, gz=True, separator_insertion=True): 575 """Import a list of Obs from an xml.gz file in the Zeuthen dobs format. 576 577 Tags are not written or recovered automatically. @@ -714,7 +714,7 @@

618 return import_dobs_string(content, full_output, separator_insertion=separator_insertion) 619 620 -621def _dobsdict_to_xmlstring(d): +621def _dobsdict_to_xmlstring(d): 622 if isinstance(d, dict): 623 iters = '' 624 for k in d: @@ -754,7 +754,7 @@

658 return iters 659 660 -661def _dobsdict_to_xmlstring_spaces(d, space=' '): +661def _dobsdict_to_xmlstring_spaces(d, space=' '): 662 s = _dobsdict_to_xmlstring(d) 663 o = '' 664 c = 0 @@ -773,7 +773,7 @@

677 return o 678 679 -680def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None): +680def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None): 681 """Generate the string for the export of a list of Obs or structures containing Obs 682 to a .xml.gz file according to the Zeuthen dobs format. 683 @@ -962,7 +962,7 @@

866 return rs 867 868 -869def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None, gz=True): +869def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None, gz=True): 870 """Export a list of Obs or structures containing Obs to a .xml.gz file 871 according to the Zeuthen dobs format. 872 @@ -1029,7 +1029,7 @@

-
 89def create_pobs_string(obsl, name, spec='', origin='', symbol=[], enstag=None):
+            
 89def create_pobs_string(obsl, name, spec='', origin='', symbol=[], enstag=None):
  90    """Export a list of Obs or structures containing Obs to an xml string
  91    according to the Zeuthen pobs format.
  92
@@ -1165,7 +1165,7 @@ 
Returns
-
180def write_pobs(obsl, fname, name, spec='', origin='', symbol=[], enstag=None, gz=True):
+            
180def write_pobs(obsl, fname, name, spec='', origin='', symbol=[], enstag=None, gz=True):
 181    """Export a list of Obs or structures containing Obs to a .xml.gz file
 182    according to the Zeuthen pobs format.
 183
@@ -1260,7 +1260,7 @@ 
Returns
-
301def read_pobs(fname, full_output=False, gz=True, separator_insertion=None):
+            
301def read_pobs(fname, full_output=False, gz=True, separator_insertion=None):
 302    """Import a list of Obs from an xml.gz file in the Zeuthen pobs format.
 303
 304    Tags are not written or recovered automatically.
@@ -1403,7 +1403,7 @@ 
Returns
-
401def import_dobs_string(content, full_output=False, separator_insertion=True):
+            
401def import_dobs_string(content, full_output=False, separator_insertion=True):
 402    """Import a list of Obs from a string in the Zeuthen dobs format.
 403
 404    Tags are not written or recovered automatically.
@@ -1623,7 +1623,7 @@ 
Returns
-
575def read_dobs(fname, full_output=False, gz=True, separator_insertion=True):
+            
575def read_dobs(fname, full_output=False, gz=True, separator_insertion=True):
 576    """Import a list of Obs from an xml.gz file in the Zeuthen dobs format.
 577
 578    Tags are not written or recovered automatically.
@@ -1718,7 +1718,7 @@ 
Returns
-
681def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None):
+            
681def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None):
 682    """Generate the string for the export of a list of Obs or structures containing Obs
 683    to a .xml.gz file according to the Zeuthen dobs format.
 684
@@ -1956,7 +1956,7 @@ 
Returns
-
870def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None, gz=True):
+            
870def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None, gz=True):
 871    """Export a list of Obs or structures containing Obs to a .xml.gz file
 872    according to the Zeuthen dobs format.
 873
diff --git a/docs/pyerrors/input/hadrons.html b/docs/pyerrors/input/hadrons.html
index 7512c1f8..fcd3dec1 100644
--- a/docs/pyerrors/input/hadrons.html
+++ b/docs/pyerrors/input/hadrons.html
@@ -103,18 +103,18 @@ 

-
  1import os
-  2from collections import Counter
-  3import h5py
-  4from pathlib import Path
-  5import numpy as np
-  6from ..obs import Obs, CObs
-  7from ..correlators import Corr
-  8from ..dirac import epsilon_tensor_rank4
-  9from .misc import fit_t0
+                        
  1import os
+  2from collections import Counter
+  3import h5py
+  4from pathlib import Path
+  5import numpy as np
+  6from ..obs import Obs, CObs
+  7from ..correlators import Corr
+  8from ..dirac import epsilon_tensor_rank4
+  9from .misc import fit_t0
  10
  11
- 12def _get_files(path, filestem, idl):
+ 12def _get_files(path, filestem, idl):
  13    ls = os.listdir(path)
  14
  15    # Clean up file list
@@ -123,7 +123,7 @@ 

18 if not files: 19 raise Exception('No files starting with', filestem, 'in folder', path) 20 - 21 def get_cnfg_number(n): + 21 def get_cnfg_number(n): 22 return int(n.replace(".h5", "")[len(filestem) + 1:]) # From python 3.9 onward the safer 'removesuffix' method can be used. 23 24 # Sort according to configuration number @@ -159,7 +159,7 @@

54 return filtered_files, idx 55 56 - 57def read_hd5(filestem, ens_id, group, attrs=None, idl=None, part="real"): + 57def read_hd5(filestem, ens_id, group, attrs=None, idl=None, part="real"): 58 r'''Read hadrons hdf5 file and extract entry based on attributes. 59 60 Parameters @@ -245,7 +245,7 @@

140 return corr 141 142 -143def read_meson_hd5(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None): +143def read_meson_hd5(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None): 144 r'''Read hadrons meson hdf5 file and extract the meson labeled 'meson' 145 146 Parameters @@ -284,7 +284,7 @@

179 part="real") 180 181 -182def _extract_real_arrays(path, files, tree, keys): +182def _extract_real_arrays(path, files, tree, keys): 183 corr_data = {} 184 for key in keys: 185 corr_data[key] = [] @@ -302,7 +302,7 @@

197 return corr_data 198 199 -200def extract_t0_hd5(path, filestem, ens_id, obs='Clover energy density', fit_range=5, idl=None, **kwargs): +200def extract_t0_hd5(path, filestem, ens_id, obs='Clover energy density', fit_range=5, idl=None, **kwargs): 201 r'''Read hadrons FlowObservables hdf5 file and extract t0 202 203 Parameters @@ -350,7 +350,7 @@

245 return fit_t0(t2E_dict, fit_range, plot_fit=kwargs.get('plot_fit')) 246 247 -248def read_DistillationContraction_hd5(path, ens_id, diagrams=["direct"], idl=None): +248def read_DistillationContraction_hd5(path, ens_id, diagrams=["direct"], idl=None): 249 """Read hadrons DistillationContraction hdf5 files in given directory structure 250 251 Parameters @@ -447,16 +447,16 @@

342 return res_dict 343 344 -345class Npr_matrix(np.ndarray): +345class Npr_matrix(np.ndarray): 346 -347 def __new__(cls, input_array, mom_in=None, mom_out=None): +347 def __new__(cls, input_array, mom_in=None, mom_out=None): 348 obj = np.asarray(input_array).view(cls) 349 obj.mom_in = mom_in 350 obj.mom_out = mom_out 351 return obj 352 353 @property -354 def g5H(self): +354 def g5H(self): 355 """Gamma_5 hermitean conjugate 356 357 Uses the fact that the propagator is gamma5 hermitean, so just the @@ -466,7 +466,7 @@

361 mom_in=self.mom_out, 362 mom_out=self.mom_in) 363 -364 def _propagate_mom(self, other, name): +364 def _propagate_mom(self, other, name): 365 s_mom = getattr(self, name, None) 366 o_mom = getattr(other, name, None) 367 if s_mom is not None and o_mom is not None: @@ -474,20 +474,20 @@

369 raise Exception(name + ' does not match.') 370 return o_mom if o_mom is not None else s_mom 371 -372 def __matmul__(self, other): +372 def __matmul__(self, other): 373 return self.__new__(Npr_matrix, 374 super().__matmul__(other), 375 self._propagate_mom(other, 'mom_in'), 376 self._propagate_mom(other, 'mom_out')) 377 -378 def __array_finalize__(self, obj): +378 def __array_finalize__(self, obj): 379 if obj is None: 380 return 381 self.mom_in = getattr(obj, 'mom_in', None) 382 self.mom_out = getattr(obj, 'mom_out', None) 383 384 -385def read_ExternalLeg_hd5(path, filestem, ens_id, idl=None): +385def read_ExternalLeg_hd5(path, filestem, ens_id, idl=None): 386 """Read hadrons ExternalLeg hdf5 file and output an array of CObs 387 388 Parameters @@ -532,7 +532,7 @@

427 return Npr_matrix(matrix, mom_in=mom) 428 429 -430def read_Bilinear_hd5(path, filestem, ens_id, idl=None): +430def read_Bilinear_hd5(path, filestem, ens_id, idl=None): 431 """Read hadrons Bilinear hdf5 file and output an array of CObs 432 433 Parameters @@ -591,7 +591,7 @@

486 return result_dict 487 488 -489def read_Fourquark_hd5(path, filestem, ens_id, idl=None, vertices=["VA", "AV"]): +489def read_Fourquark_hd5(path, filestem, ens_id, idl=None, vertices=["VA", "AV"]): 490 """Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs 491 492 Parameters @@ -677,7 +677,7 @@

572 return result_dict 573 574 -575def _get_lorentz_names(name): +575def _get_lorentz_names(name): 576 lorentz_index = ['X', 'Y', 'Z', 'T'] 577 578 res = [] @@ -733,7 +733,7 @@

-
 58def read_hd5(filestem, ens_id, group, attrs=None, idl=None, part="real"):
+            
 58def read_hd5(filestem, ens_id, group, attrs=None, idl=None, part="real"):
  59    r'''Read hadrons hdf5 file and extract entry based on attributes.
  60
  61    Parameters
@@ -871,7 +871,7 @@ 
Returns
-
144def read_meson_hd5(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None):
+            
144def read_meson_hd5(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None):
 145    r'''Read hadrons meson hdf5 file and extract the meson labeled 'meson'
 146
 147    Parameters
@@ -955,7 +955,7 @@ 
Returns
-
201def extract_t0_hd5(path, filestem, ens_id, obs='Clover energy density', fit_range=5, idl=None, **kwargs):
+            
201def extract_t0_hd5(path, filestem, ens_id, obs='Clover energy density', fit_range=5, idl=None, **kwargs):
 202    r'''Read hadrons FlowObservables hdf5 file and extract t0
 203
 204    Parameters
@@ -1041,7 +1041,7 @@ 
Parameters
-
249def read_DistillationContraction_hd5(path, ens_id, diagrams=["direct"], idl=None):
+            
249def read_DistillationContraction_hd5(path, ens_id, diagrams=["direct"], idl=None):
 250    """Read hadrons DistillationContraction hdf5 files in given directory structure
 251
 252    Parameters
@@ -1175,16 +1175,16 @@ 
Returns
-
346class Npr_matrix(np.ndarray):
+            
346class Npr_matrix(np.ndarray):
 347
-348    def __new__(cls, input_array, mom_in=None, mom_out=None):
+348    def __new__(cls, input_array, mom_in=None, mom_out=None):
 349        obj = np.asarray(input_array).view(cls)
 350        obj.mom_in = mom_in
 351        obj.mom_out = mom_out
 352        return obj
 353
 354    @property
-355    def g5H(self):
+355    def g5H(self):
 356        """Gamma_5 hermitean conjugate
 357
 358        Uses the fact that the propagator is gamma5 hermitean, so just the
@@ -1194,7 +1194,7 @@ 
Returns
362 mom_in=self.mom_out, 363 mom_out=self.mom_in) 364 -365 def _propagate_mom(self, other, name): +365 def _propagate_mom(self, other, name): 366 s_mom = getattr(self, name, None) 367 o_mom = getattr(other, name, None) 368 if s_mom is not None and o_mom is not None: @@ -1202,13 +1202,13 @@
Returns
370 raise Exception(name + ' does not match.') 371 return o_mom if o_mom is not None else s_mom 372 -373 def __matmul__(self, other): +373 def __matmul__(self, other): 374 return self.__new__(Npr_matrix, 375 super().__matmul__(other), 376 self._propagate_mom(other, 'mom_in'), 377 self._propagate_mom(other, 'mom_out')) 378 -379 def __array_finalize__(self, obj): +379 def __array_finalize__(self, obj): 380 if obj is None: 381 return 382 self.mom_in = getattr(obj, 'mom_in', None) @@ -1330,7 +1330,7 @@
Examples

First mode, buffer is None:

-
>>> import numpy as np
+
>>> import numpy as np
 >>> np.ndarray(shape=(2,2), dtype=float, order='F')
 array([[0.0e+000, 0.0e+000], # random
        [     nan, 2.5e-323]])
@@ -1359,7 +1359,7 @@ 
Examples
354    @property
-355    def g5H(self):
+355    def g5H(self):
 356        """Gamma_5 hermitean conjugate
 357
 358        Uses the fact that the propagator is gamma5 hermitean, so just the
@@ -1391,7 +1391,7 @@ 
Examples
-
386def read_ExternalLeg_hd5(path, filestem, ens_id, idl=None):
+            
386def read_ExternalLeg_hd5(path, filestem, ens_id, idl=None):
 387    """Read hadrons ExternalLeg hdf5 file and output an array of CObs
 388
 389    Parameters
@@ -1473,7 +1473,7 @@ 
Returns
-
431def read_Bilinear_hd5(path, filestem, ens_id, idl=None):
+            
431def read_Bilinear_hd5(path, filestem, ens_id, idl=None):
 432    """Read hadrons Bilinear hdf5 file and output an array of CObs
 433
 434    Parameters
@@ -1569,7 +1569,7 @@ 
Returns
-
490def read_Fourquark_hd5(path, filestem, ens_id, idl=None, vertices=["VA", "AV"]):
+            
490def read_Fourquark_hd5(path, filestem, ens_id, idl=None, vertices=["VA", "AV"]):
 491    """Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs
 492
 493    Parameters
diff --git a/docs/pyerrors/input/json.html b/docs/pyerrors/input/json.html
index f6677161..c6ad22a8 100644
--- a/docs/pyerrors/input/json.html
+++ b/docs/pyerrors/input/json.html
@@ -91,23 +91,23 @@ 

-
  1import rapidjson as json
-  2import gzip
-  3import getpass
-  4import socket
-  5import datetime
-  6import platform
-  7import warnings
-  8import re
-  9import numpy as np
- 10from ..obs import Obs
- 11from ..covobs import Covobs
- 12from ..correlators import Corr
- 13from ..misc import _assert_equal_properties
- 14from .. import version as pyerrorsversion
+                        
  1import rapidjson as json
+  2import gzip
+  3import getpass
+  4import socket
+  5import datetime
+  6import platform
+  7import warnings
+  8import re
+  9import numpy as np
+ 10from ..obs import Obs
+ 11from ..covobs import Covobs
+ 12from ..correlators import Corr
+ 13from ..misc import _assert_equal_properties
+ 14from .. import version as pyerrorsversion
  15
  16
- 17def create_json_string(ol, description='', indent=1):
+ 17def create_json_string(ol, description='', indent=1):
  18    """Generate the string for the export of a list of Obs or structures containing Obs
  19    to a .json(.gz) file
  20
@@ -129,7 +129,7 @@ 

36 String for export to .json(.gz) file 37 """ 38 - 39 def _gen_data_d_from_list(ol): + 39 def _gen_data_d_from_list(ol): 40 dl = [] 41 No = len(ol) 42 for name in ol[0].mc_names: @@ -149,7 +149,7 @@

56 dl.append(ed) 57 return dl 58 - 59 def _gen_cdata_d_from_list(ol): + 59 def _gen_cdata_d_from_list(ol): 60 dl = [] 61 for name in ol[0].cov_names: 62 ed = {} @@ -165,7 +165,7 @@

72 dl.append(ed) 73 return dl 74 - 75 def write_Obs_to_dict(o): + 75 def write_Obs_to_dict(o): 76 d = {} 77 d['type'] = 'Obs' 78 d['layout'] = '1' @@ -182,7 +182,7 @@

89 d['cdata'] = cdata 90 return d 91 - 92 def write_List_to_dict(ol): + 92 def write_List_to_dict(ol): 93 _assert_equal_properties(ol) 94 d = {} 95 d['type'] = 'List' @@ -201,7 +201,7 @@

108 d['cdata'] = cdata 109 return d 110 -111 def write_Array_to_dict(oa): +111 def write_Array_to_dict(oa): 112 ol = np.ravel(oa) 113 _assert_equal_properties(ol) 114 d = {} @@ -221,7 +221,7 @@

128 d['cdata'] = cdata 129 return d 130 -131 def _nan_Obs_like(obs): +131 def _nan_Obs_like(obs): 132 samples = [] 133 names = [] 134 idl = [] @@ -236,7 +236,7 @@

143 my_obs.reweighted = obs.reweighted 144 return my_obs 145 -146 def write_Corr_to_dict(my_corr): +146 def write_Corr_to_dict(my_corr): 147 first_not_none = next(i for i, j in enumerate(my_corr.content) if np.all(j)) 148 dummy_array = np.empty((my_corr.N, my_corr.N), dtype=object) 149 dummy_array[:] = _nan_Obs_like(my_corr.content[first_not_none].ravel()[0]) @@ -281,7 +281,7 @@

188 else: 189 raise Exception("Unkown datatype.") 190 -191 def _jsonifier(obj): +191 def _jsonifier(obj): 192 if isinstance(obj, dict): 193 result = {} 194 for key in obj: @@ -309,7 +309,7 @@

216 return json.dumps(d, indent=indent, ensure_ascii=False, default=_jsonifier, write_mode=json.WM_COMPACT) 217 218 -219def dump_to_json(ol, fname, description='', indent=1, gz=True): +219def dump_to_json(ol, fname, description='', indent=1, gz=True): 220 """Export a list of Obs or structures containing Obs to a .json(.gz) file. 221 Dict keys that are not JSON-serializable such as floats are converted to strings. 222 @@ -351,7 +351,7 @@

258 fp.close() 259 260 -261def _parse_json_dict(json_dict, verbose=True, full_output=False): +261def _parse_json_dict(json_dict, verbose=True, full_output=False): 262 """Reconstruct a list of Obs or structures containing Obs from a dict that 263 was built out of a json string. 264 @@ -380,7 +380,7 @@

287 if full_output=True 288 """ 289 -290 def _gen_obsd_from_datad(d): +290 def _gen_obsd_from_datad(d): 291 retd = {} 292 if d: 293 retd['names'] = [] @@ -399,7 +399,7 @@

306 retd['deltas'].append(np.array([di[1:] for di in rep['deltas']])) 307 return retd 308 -309 def _gen_covobsd_from_cdatad(d): +309 def _gen_covobsd_from_cdatad(d): 310 retd = {} 311 for ens in d: 312 retl = [] @@ -414,7 +414,7 @@

321 retd[name] = retl 322 return retd 323 -324 def get_Obs_from_dict(o): +324 def get_Obs_from_dict(o): 325 layouts = o.get('layout', '1').strip() 326 if layouts != '1': 327 raise Exception("layout is %s has to be 1 for type Obs." % (layouts), RuntimeWarning) @@ -438,7 +438,7 @@

345 ret.tag = o.get('tag', [None])[0] 346 return ret 347 -348 def get_List_from_dict(o): +348 def get_List_from_dict(o): 349 layouts = o.get('layout', '1').strip() 350 layout = int(layouts) 351 values = o['value'] @@ -464,7 +464,7 @@

371 ret[-1].tag = taglist[i] 372 return ret 373 -374 def get_Array_from_dict(o): +374 def get_Array_from_dict(o): 375 layouts = o.get('layout', '1').strip() 376 layout = [int(ls.strip()) for ls in layouts.split(',') if len(ls) > 0] 377 N = np.prod(layout) @@ -489,7 +489,7 @@

396 ret[-1].tag = taglist[i] 397 return np.reshape(ret, layout) 398 -399 def get_Corr_from_dict(o): +399 def get_Corr_from_dict(o): 400 if isinstance(o.get('tag'), list): # supports the old way 401 taglist = o.get('tag') # This had to be modified to get the taglist from the dictionary 402 temp_prange = None @@ -563,7 +563,7 @@

470 return ol 471 472 -473def import_json_string(json_string, verbose=True, full_output=False): +473def import_json_string(json_string, verbose=True, full_output=False): 474 """Reconstruct a list of Obs or structures containing Obs from a json string. 475 476 The following structures are supported: Obs, list, numpy.ndarray, Corr @@ -593,7 +593,7 @@

500 return _parse_json_dict(json.loads(json_string), verbose, full_output) 501 502 -503def load_json(fname, verbose=True, gz=True, full_output=False): +503def load_json(fname, verbose=True, gz=True, full_output=False): 504 """Import a list of Obs or structures containing Obs from a .json(.gz) file. 505 506 The following structures are supported: Obs, list, numpy.ndarray, Corr @@ -638,7 +638,7 @@

545 return _parse_json_dict(d, verbose, full_output) 546 547 -548def _ol_from_dict(ind, reps='DICTOBS'): +548def _ol_from_dict(ind, reps='DICTOBS'): 549 """Convert a dictionary of Obs objects to a list and a dictionary that contains 550 placeholders instead of the Obs objects. 551 @@ -659,7 +659,7 @@

566 ol = [] 567 counter = 0 568 -569 def dict_replace_obs(d): +569 def dict_replace_obs(d): 570 nonlocal ol 571 nonlocal counter 572 x = {} @@ -680,7 +680,7 @@

587 x[k] = v 588 return x 589 -590 def list_replace_obs(li): +590 def list_replace_obs(li): 591 nonlocal ol 592 nonlocal counter 593 x = [] @@ -701,7 +701,7 @@

608 x.append(e) 609 return x 610 -611 def obslist_replace_obs(li): +611 def obslist_replace_obs(li): 612 nonlocal ol 613 nonlocal counter 614 il = [] @@ -718,7 +718,7 @@

625 return ol, nd 626 627 -628def dump_dict_to_json(od, fname, description='', indent=1, reps='DICTOBS', gz=True): +628def dump_dict_to_json(od, fname, description='', indent=1, reps='DICTOBS', gz=True): 629 """Export a dict of Obs or structures containing Obs to a .json(.gz) file 630 631 Parameters @@ -758,7 +758,7 @@

665 dump_to_json(ol, fname, description=desc_dict, indent=indent, gz=gz) 666 667 -668def _od_from_list_and_dict(ol, ind, reps='DICTOBS'): +668def _od_from_list_and_dict(ol, ind, reps='DICTOBS'): 669 """Parse a list of Obs or structures containing Obs and an accompanying 670 dict, where the structures have been replaced by placeholders to a 671 dict that contains the structures. @@ -781,7 +781,7 @@

688 689 counter = 0 690 -691 def dict_replace_string(d): +691 def dict_replace_string(d): 692 nonlocal counter 693 nonlocal ol 694 x = {} @@ -797,7 +797,7 @@

704 x[k] = v 705 return x 706 -707 def list_replace_string(li): +707 def list_replace_string(li): 708 nonlocal counter 709 nonlocal ol 710 x = [] @@ -821,7 +821,7 @@

728 return nd 729 730 -731def load_json_dict(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'): +731def load_json_dict(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'): 732 """Import a dict of Obs or structures containing Obs from a .json(.gz) file. 733 734 The following structures are supported: Obs, list, numpy.ndarray, Corr @@ -875,7 +875,7 @@

-
 18def create_json_string(ol, description='', indent=1):
+            
 18def create_json_string(ol, description='', indent=1):
  19    """Generate the string for the export of a list of Obs or structures containing Obs
  20    to a .json(.gz) file
  21
@@ -897,7 +897,7 @@ 

37 String for export to .json(.gz) file 38 """ 39 - 40 def _gen_data_d_from_list(ol): + 40 def _gen_data_d_from_list(ol): 41 dl = [] 42 No = len(ol) 43 for name in ol[0].mc_names: @@ -917,7 +917,7 @@

57 dl.append(ed) 58 return dl 59 - 60 def _gen_cdata_d_from_list(ol): + 60 def _gen_cdata_d_from_list(ol): 61 dl = [] 62 for name in ol[0].cov_names: 63 ed = {} @@ -933,7 +933,7 @@

73 dl.append(ed) 74 return dl 75 - 76 def write_Obs_to_dict(o): + 76 def write_Obs_to_dict(o): 77 d = {} 78 d['type'] = 'Obs' 79 d['layout'] = '1' @@ -950,7 +950,7 @@

90 d['cdata'] = cdata 91 return d 92 - 93 def write_List_to_dict(ol): + 93 def write_List_to_dict(ol): 94 _assert_equal_properties(ol) 95 d = {} 96 d['type'] = 'List' @@ -969,7 +969,7 @@

109 d['cdata'] = cdata 110 return d 111 -112 def write_Array_to_dict(oa): +112 def write_Array_to_dict(oa): 113 ol = np.ravel(oa) 114 _assert_equal_properties(ol) 115 d = {} @@ -989,7 +989,7 @@

129 d['cdata'] = cdata 130 return d 131 -132 def _nan_Obs_like(obs): +132 def _nan_Obs_like(obs): 133 samples = [] 134 names = [] 135 idl = [] @@ -1004,7 +1004,7 @@

144 my_obs.reweighted = obs.reweighted 145 return my_obs 146 -147 def write_Corr_to_dict(my_corr): +147 def write_Corr_to_dict(my_corr): 148 first_not_none = next(i for i, j in enumerate(my_corr.content) if np.all(j)) 149 dummy_array = np.empty((my_corr.N, my_corr.N), dtype=object) 150 dummy_array[:] = _nan_Obs_like(my_corr.content[first_not_none].ravel()[0]) @@ -1049,7 +1049,7 @@

189 else: 190 raise Exception("Unkown datatype.") 191 -192 def _jsonifier(obj): +192 def _jsonifier(obj): 193 if isinstance(obj, dict): 194 result = {} 195 for key in obj: @@ -1116,7 +1116,7 @@
Returns

-
220def dump_to_json(ol, fname, description='', indent=1, gz=True):
+            
220def dump_to_json(ol, fname, description='', indent=1, gz=True):
 221    """Export a list of Obs or structures containing Obs to a .json(.gz) file.
 222    Dict keys that are not JSON-serializable such as floats are converted to strings.
 223
@@ -1200,7 +1200,7 @@ 
Returns
-
474def import_json_string(json_string, verbose=True, full_output=False):
+            
474def import_json_string(json_string, verbose=True, full_output=False):
 475    """Reconstruct a list of Obs or structures containing Obs from a json string.
 476
 477    The following structures are supported: Obs, list, numpy.ndarray, Corr
@@ -1275,7 +1275,7 @@ 
Returns
-
504def load_json(fname, verbose=True, gz=True, full_output=False):
+            
504def load_json(fname, verbose=True, gz=True, full_output=False):
 505    """Import a list of Obs or structures containing Obs from a .json(.gz) file.
 506
 507    The following structures are supported: Obs, list, numpy.ndarray, Corr
@@ -1367,7 +1367,7 @@ 
Returns
-
629def dump_dict_to_json(od, fname, description='', indent=1, reps='DICTOBS', gz=True):
+            
629def dump_dict_to_json(od, fname, description='', indent=1, reps='DICTOBS', gz=True):
 630    """Export a dict of Obs or structures containing Obs to a .json(.gz) file
 631
 632    Parameters
@@ -1450,7 +1450,7 @@ 
Returns
-
732def load_json_dict(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'):
+            
732def load_json_dict(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'):
 733    """Import a dict of Obs or structures containing Obs from a .json(.gz) file.
 734
 735    The following structures are supported: Obs, list, numpy.ndarray, Corr
diff --git a/docs/pyerrors/input/misc.html b/docs/pyerrors/input/misc.html
index 17992f64..125386cf 100644
--- a/docs/pyerrors/input/misc.html
+++ b/docs/pyerrors/input/misc.html
@@ -79,19 +79,19 @@ 

-
  1import os
-  2import fnmatch
-  3import re
-  4import struct
-  5import warnings
-  6import numpy as np  # Thinly-wrapped numpy
-  7import matplotlib.pyplot as plt
-  8from matplotlib import gridspec
-  9from ..obs import Obs
- 10from ..fits import fit_lin
+                        
  1import os
+  2import fnmatch
+  3import re
+  4import struct
+  5import warnings
+  6import numpy as np  # Thinly-wrapped numpy
+  7import matplotlib.pyplot as plt
+  8from matplotlib import gridspec
+  9from ..obs import Obs
+ 10from ..fits import fit_lin
  11
  12
- 13def fit_t0(t2E_dict, fit_range, plot_fit=False, observable='t0'):
+ 13def fit_t0(t2E_dict, fit_range, plot_fit=False, observable='t0'):
  14    """Compute the root of (flow-based) data based on a dictionary that contains
  15    the necessary information in key-value pairs a la (flow time: observable at flow time).
  16
@@ -178,7 +178,7 @@ 

97 return -fit_result[0] / fit_result[1] 98 99 -100def read_pbp(path, prefix, **kwargs): +100def read_pbp(path, prefix, **kwargs): 101 """Read pbp format from given folder structure. 102 103 Parameters @@ -312,7 +312,7 @@

-
14def fit_t0(t2E_dict, fit_range, plot_fit=False, observable='t0'):
+            
14def fit_t0(t2E_dict, fit_range, plot_fit=False, observable='t0'):
 15    """Compute the root of (flow-based) data based on a dictionary that contains
 16    the necessary information in key-value pairs a la (flow time: observable at flow time).
 17
@@ -447,7 +447,7 @@ 
Returns
-
101def read_pbp(path, prefix, **kwargs):
+            
101def read_pbp(path, prefix, **kwargs):
 102    """Read pbp format from given folder structure.
 103
 104    Parameters
diff --git a/docs/pyerrors/input/openQCD.html b/docs/pyerrors/input/openQCD.html
index 0a73c540..bb7a26d4 100644
--- a/docs/pyerrors/input/openQCD.html
+++ b/docs/pyerrors/input/openQCD.html
@@ -97,19 +97,19 @@ 

-
   1import os
-   2import fnmatch
-   3import struct
-   4import warnings
-   5import numpy as np  # Thinly-wrapped numpy
-   6from ..obs import Obs
-   7from ..obs import CObs
-   8from ..correlators import Corr
-   9from .misc import fit_t0
-  10from .utils import sort_names
+                        
   1import os
+   2import fnmatch
+   3import struct
+   4import warnings
+   5import numpy as np  # Thinly-wrapped numpy
+   6from ..obs import Obs
+   7from ..obs import CObs
+   8from ..correlators import Corr
+   9from .misc import fit_t0
+  10from .utils import sort_names
   11
   12
-  13def read_rwms(path, prefix, version='2.0', names=None, **kwargs):
+  13def read_rwms(path, prefix, version='2.0', names=None, **kwargs):
   14    """Read rwms format from given folder structure. Returns a list of length nrw
   15
   16    Parameters
@@ -299,7 +299,7 @@ 

200 r_start_index.append(configlist[-1].index(r_start[rep])) 201 except ValueError: 202 raise Exception('Config %d not in file with range [%d, %d]' % ( - 203 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None + 203 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None 204 205 if r_stop[rep] is None: 206 r_stop_index.append(len(configlist[-1]) - 1) @@ -308,7 +308,7 @@

209 r_stop_index.append(configlist[-1].index(r_stop[rep])) 210 except ValueError: 211 raise Exception('Config %d not in file with range [%d, %d]' % ( - 212 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None + 212 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None 213 214 for k in range(nrw): 215 deltas[k].append(tmp_array[k][r_start_index[rep]:r_stop_index[rep] + 1][::r_step]) @@ -328,7 +328,7 @@

229 return result 230 231 - 232def _extract_flowed_energy_density(path, prefix, dtr_read, xmin, spatial_extent, postfix='ms', **kwargs): + 232def _extract_flowed_energy_density(path, prefix, dtr_read, xmin, spatial_extent, postfix='ms', **kwargs): 233 """Extract a dictionary with the flowed Yang-Mills action density from given .ms.dat files. 234 Returns a dictionary with Obs as values and flow times as keys. 235 @@ -489,7 +489,7 @@

390 r_start_index.append(configlist[-1].index(r_start[rep])) 391 except ValueError: 392 raise Exception('Config %d not in file with range [%d, %d]' % ( - 393 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None + 393 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None 394 395 if r_stop[rep] is None: 396 r_stop_index.append(len(configlist[-1]) - 1) @@ -498,7 +498,7 @@

399 r_stop_index.append(configlist[-1].index(r_stop[rep])) 400 except ValueError: 401 raise Exception('Config %d not in file with range [%d, %d]' % ( - 402 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None + 402 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None 403 404 if np.any([len(np.unique(np.diff(cl))) != 1 for cl in configlist]): 405 raise Exception('Irregular spaced data in input file!', [len(np.unique(np.diff(cl))) for cl in configlist]) @@ -521,7 +521,7 @@

422 return E_dict 423 424 - 425def extract_t0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs): + 425def extract_t0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs): 426 """Extract t0/a^2 from given .ms.dat files. Returns t0 as Obs. 427 428 It is assumed that all boundary effects have @@ -594,7 +594,7 @@

495 return fit_t0(t2E_dict, fit_range, plot_fit=kwargs.get('plot_fit')) 496 497 - 498def extract_w0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs): + 498def extract_w0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs): 499 """Extract w0/a from given .ms.dat files. Returns w0 as Obs. 500 501 It is assumed that all boundary effects have @@ -676,7 +676,7 @@

577 return np.sqrt(fit_t0(tdtt2E_dict, fit_range, plot_fit=kwargs.get('plot_fit'), observable='w0')) 578 579 - 580def _parse_array_openQCD2(d, n, size, wa, quadrupel=False): + 580def _parse_array_openQCD2(d, n, size, wa, quadrupel=False): 581 arr = [] 582 if d == 2: 583 for i in range(n[0]): @@ -695,7 +695,7 @@

596 return arr 597 598 - 599def _find_files(path, prefix, postfix, ext, known_files=[]): + 599def _find_files(path, prefix, postfix, ext, known_files=[]): 600 found = [] 601 files = [] 602 @@ -735,7 +735,7 @@

636 return files 637 638 - 639def _read_array_openQCD2(fp): + 639def _read_array_openQCD2(fp): 640 t = fp.read(4) 641 d = struct.unpack('i', t)[0] 642 t = fp.read(4 * d) @@ -761,7 +761,7 @@

662 return {'d': d, 'n': n, 'size': size, 'arr': arr} 663 664 - 665def read_qtop(path, prefix, c, dtr_cnfg=1, version="openQCD", **kwargs): + 665def read_qtop(path, prefix, c, dtr_cnfg=1, version="openQCD", **kwargs): 666 """Read the topologial charge based on openQCD gradient flow measurements. 667 668 Parameters @@ -814,7 +814,7 @@

715 return _read_flow_obs(path, prefix, c, dtr_cnfg=dtr_cnfg, version=version, obspos=0, **kwargs) 716 717 - 718def read_gf_coupling(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs): + 718def read_gf_coupling(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs): 719 """Read the gradient flow coupling based on sfqcd gradient flow measurements. See 1607.06423 for details. 720 721 Note: The current implementation only works for c=0.3 and T=L. The definition of the coupling in 1607.06423 requires projection to topological charge zero which is not done within this function but has to be performed in a separate step. @@ -886,7 +886,7 @@

787 return t * t * (5 / 3 * plaq - 1 / 12 * C2x1) / normdict[L] 788 789 - 790def _read_flow_obs(path, prefix, c, dtr_cnfg=1, version="openQCD", obspos=0, sum_t=True, **kwargs): + 790def _read_flow_obs(path, prefix, c, dtr_cnfg=1, version="openQCD", obspos=0, sum_t=True, **kwargs): 791 """Read a flow observable based on openQCD gradient flow measurements. 792 793 Parameters @@ -1094,7 +1094,7 @@

995 r_start_index.append(configlist[-1].index(r_start[rep])) 996 except ValueError: 997 raise Exception('Config %d not in file with range [%d, %d]' % ( - 998 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None + 998 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None 999 1000 if r_stop[rep] is None: 1001 r_stop_index.append(len(configlist[-1]) - 1) @@ -1103,7 +1103,7 @@

1004 r_stop_index.append(configlist[-1].index(r_stop[rep])) 1005 except ValueError: 1006 raise Exception('Config %d not in file with range [%d, %d]' % ( -1007 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None +1007 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None 1008 1009 if version in ['sfqcd']: 1010 cstepsize = cmax / ncs @@ -1158,7 +1158,7 @@

1059 return result 1060 1061 -1062def qtop_projection(qtop, target=0): +1062def qtop_projection(qtop, target=0): 1063 """Returns the projection to the topological charge sector defined by target. 1064 1065 Parameters @@ -1184,7 +1184,7 @@

1085 return reto 1086 1087 -1088def read_qtop_sector(path, prefix, c, target=0, **kwargs): +1088def read_qtop_sector(path, prefix, c, target=0, **kwargs): 1089 """Constructs reweighting factors to a specified topological sector. 1090 1091 Parameters @@ -1242,7 +1242,7 @@

1143 return qtop_projection(qtop, target=target) 1144 1145 -1146def read_ms5_xsf(path, prefix, qc, corr, sep="r", **kwargs): +1146def read_ms5_xsf(path, prefix, qc, corr, sep="r", **kwargs): 1147 """ 1148 Read data from files in the specified directory with the specified prefix and quark combination extension, and return a `Corr` object containing the data. 1149 @@ -1423,7 +1423,7 @@

-
 14def read_rwms(path, prefix, version='2.0', names=None, **kwargs):
+            
 14def read_rwms(path, prefix, version='2.0', names=None, **kwargs):
  15    """Read rwms format from given folder structure. Returns a list of length nrw
  16
  17    Parameters
@@ -1613,7 +1613,7 @@ 

201 r_start_index.append(configlist[-1].index(r_start[rep])) 202 except ValueError: 203 raise Exception('Config %d not in file with range [%d, %d]' % ( -204 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None +204 r_start[rep], configlist[-1][0], configlist[-1][-1])) from None 205 206 if r_stop[rep] is None: 207 r_stop_index.append(len(configlist[-1]) - 1) @@ -1622,7 +1622,7 @@

210 r_stop_index.append(configlist[-1].index(r_stop[rep])) 211 except ValueError: 212 raise Exception('Config %d not in file with range [%d, %d]' % ( -213 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None +213 r_stop[rep], configlist[-1][0], configlist[-1][-1])) from None 214 215 for k in range(nrw): 216 deltas[k].append(tmp_array[k][r_start_index[rep]:r_stop_index[rep] + 1][::r_step]) @@ -1696,7 +1696,7 @@
Returns

-
426def extract_t0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs):
+            
426def extract_t0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs):
 427    """Extract t0/a^2 from given .ms.dat files. Returns t0 as Obs.
 428
 429    It is assumed that all boundary effects have
@@ -1851,7 +1851,7 @@ 
Returns
-
499def extract_w0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs):
+            
499def extract_w0(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, postfix='ms', c=0.3, **kwargs):
 500    """Extract w0/a from given .ms.dat files. Returns w0 as Obs.
 501
 502    It is assumed that all boundary effects have
@@ -2015,7 +2015,7 @@ 
Returns
-
666def read_qtop(path, prefix, c, dtr_cnfg=1, version="openQCD", **kwargs):
+            
666def read_qtop(path, prefix, c, dtr_cnfg=1, version="openQCD", **kwargs):
 667    """Read the topologial charge based on openQCD gradient flow measurements.
 668
 669    Parameters
@@ -2135,7 +2135,7 @@ 
Returns
-
719def read_gf_coupling(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs):
+            
719def read_gf_coupling(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs):
 720    """Read the gradient flow coupling based on sfqcd gradient flow measurements. See 1607.06423 for details.
 721
 722    Note: The current implementation only works for c=0.3 and T=L. The definition of the coupling in 1607.06423 requires projection to topological charge zero which is not done within this function but has to be performed in a separate step.
@@ -2260,7 +2260,7 @@ 
Parameters
-
1063def qtop_projection(qtop, target=0):
+            
1063def qtop_projection(qtop, target=0):
 1064    """Returns the projection to the topological charge sector defined by target.
 1065
 1066    Parameters
@@ -2319,7 +2319,7 @@ 
Returns
-
1089def read_qtop_sector(path, prefix, c, target=0, **kwargs):
+            
1089def read_qtop_sector(path, prefix, c, target=0, **kwargs):
 1090    """Constructs reweighting factors to a specified topological sector.
 1091
 1092    Parameters
@@ -2443,7 +2443,7 @@ 
Returns
-
1147def read_ms5_xsf(path, prefix, qc, corr, sep="r", **kwargs):
+            
1147def read_ms5_xsf(path, prefix, qc, corr, sep="r", **kwargs):
 1148    """
 1149    Read data from files in the specified directory with the specified prefix and quark combination extension, and return a `Corr` object containing the data.
 1150
diff --git a/docs/pyerrors/input/pandas.html b/docs/pyerrors/input/pandas.html
index 58741835..8221e9dd 100644
--- a/docs/pyerrors/input/pandas.html
+++ b/docs/pyerrors/input/pandas.html
@@ -85,17 +85,17 @@ 

-
  1import warnings
-  2import gzip
-  3import sqlite3
-  4import pandas as pd
-  5from ..obs import Obs
-  6from ..correlators import Corr
-  7from .json import create_json_string, import_json_string
-  8import numpy as np
+                        
  1import warnings
+  2import gzip
+  3import sqlite3
+  4import pandas as pd
+  5from ..obs import Obs
+  6from ..correlators import Corr
+  7from .json import create_json_string, import_json_string
+  8import numpy as np
   9
  10
- 11def to_sql(df, table_name, db, if_exists='fail', gz=True, **kwargs):
+ 11def to_sql(df, table_name, db, if_exists='fail', gz=True, **kwargs):
  12    """Write DataFrame including Obs or Corr valued columns to sqlite database.
  13
  14    Parameters
@@ -121,7 +121,7 @@ 

34 con.close() 35 36 - 37def read_sql(sql, db, auto_gamma=False, **kwargs): + 37def read_sql(sql, db, auto_gamma=False, **kwargs): 38 """Execute SQL query on sqlite database and obtain DataFrame including Obs or Corr valued columns. 39 40 Parameters @@ -145,7 +145,7 @@

58 return _deserialize_df(extract_df, auto_gamma=auto_gamma) 59 60 - 61def dump_df(df, fname, gz=True): + 61def dump_df(df, fname, gz=True): 62 """Exports a pandas DataFrame containing Obs valued columns to a (gzipped) csv file. 63 64 Before making use of pandas to_csv functionality Obs objects are serialized via the standardized @@ -184,7 +184,7 @@

97 out.to_csv(fname, index=False) 98 99 -100def load_df(fname, auto_gamma=False, gz=True): +100def load_df(fname, auto_gamma=False, gz=True): 101 """Imports a pandas DataFrame from a csv.(gz) file in which Obs objects are serialized as json strings. 102 103 Parameters @@ -218,7 +218,7 @@

131 return _deserialize_df(re_import, auto_gamma=auto_gamma) 132 133 -134def _serialize_df(df, gz=False): +134def _serialize_df(df, gz=False): 135 """Serializes all Obs or Corr valued columns into json strings according to the pyerrors json specification. 136 137 Parameters @@ -239,7 +239,7 @@

152 return out 153 154 -155def _deserialize_df(df, auto_gamma=False): +155def _deserialize_df(df, auto_gamma=False): 156 """Deserializes all pyerrors json strings into Obs or Corr objects according to the pyerrors json specification. 157 158 Parameters @@ -275,7 +275,7 @@

188 return df 189 190 -191def _need_to_serialize(col): +191def _need_to_serialize(col): 192 serialize = False 193 i = 0 194 while i < len(col) and col[i] is None: @@ -303,7 +303,7 @@

-
12def to_sql(df, table_name, db, if_exists='fail', gz=True, **kwargs):
+            
12def to_sql(df, table_name, db, if_exists='fail', gz=True, **kwargs):
 13    """Write DataFrame including Obs or Corr valued columns to sqlite database.
 14
 15    Parameters
@@ -367,7 +367,7 @@ 
Returns
-
38def read_sql(sql, db, auto_gamma=False, **kwargs):
+            
38def read_sql(sql, db, auto_gamma=False, **kwargs):
 39    """Execute SQL query on sqlite database and obtain DataFrame including Obs or Corr valued columns.
 40
 41    Parameters
@@ -427,7 +427,7 @@ 
Returns
-
62def dump_df(df, fname, gz=True):
+            
62def dump_df(df, fname, gz=True):
 63    """Exports a pandas DataFrame containing Obs valued columns to a (gzipped) csv file.
 64
 65    Before making use of pandas to_csv functionality Obs objects are serialized via the standardized
@@ -503,7 +503,7 @@ 
Returns
-
101def load_df(fname, auto_gamma=False, gz=True):
+            
101def load_df(fname, auto_gamma=False, gz=True):
 102    """Imports a pandas DataFrame from a csv.(gz) file in which Obs objects are serialized as json strings.
 103
 104    Parameters
diff --git a/docs/pyerrors/input/sfcf.html b/docs/pyerrors/input/sfcf.html
index 50cb7424..4219c5cd 100644
--- a/docs/pyerrors/input/sfcf.html
+++ b/docs/pyerrors/input/sfcf.html
@@ -82,19 +82,19 @@ 

-
  1import os
-  2import fnmatch
-  3import re
-  4import numpy as np  # Thinly-wrapped numpy
-  5from ..obs import Obs
-  6from .utils import sort_names, check_idl
-  7import itertools
+                        
  1import os
+  2import fnmatch
+  3import re
+  4import numpy as np  # Thinly-wrapped numpy
+  5from ..obs import Obs
+  6from .utils import sort_names, check_idl
+  7import itertools
   8
   9
  10sep = "/"
  11
  12
- 13def read_sfcf(path, prefix, name, quarks='.*', corr_type="bi", noffset=0, wf=0, wf2=0, version="1.0c", cfg_separator="n", silent=False, **kwargs):
+ 13def read_sfcf(path, prefix, name, quarks='.*', corr_type="bi", noffset=0, wf=0, wf2=0, version="1.0c", cfg_separator="n", silent=False, **kwargs):
  14    """Read sfcf files from given folder structure.
  15
  16    Parameters
@@ -159,7 +159,7 @@ 

75 return ret[name][quarks][str(noffset)][str(wf)][str(wf2)] 76 77 - 78def read_sfcf_multi(path, prefix, name_list, quarks_list=['.*'], corr_type_list=['bi'], noffset_list=[0], wf_list=[0], wf2_list=[0], version="1.0c", cfg_separator="n", silent=False, keyed_out=False, **kwargs): + 78def read_sfcf_multi(path, prefix, name_list, quarks_list=['.*'], corr_type_list=['bi'], noffset_list=[0], wf_list=[0], wf2_list=[0], version="1.0c", cfg_separator="n", silent=False, keyed_out=False, **kwargs): 79 """Read sfcf files from given folder structure. 80 81 Parameters @@ -211,558 +211,559 @@

127 check_configs: list[list[int]] 128 list of list of supposed configs, eg. [range(1,1000)] 129 for one replicum with 1000 configs -130 -131 Returns -132 ------- -133 result: dict[list[Obs]] -134 dict with one of the following properties: -135 if keyed_out: -136 dict[key] = list[Obs] -137 where key has the form name/quarks/offset/wf/wf2 -138 if not keyed_out: -139 dict[name][quarks][offset][wf][wf2] = list[Obs] -140 """ -141 -142 if kwargs.get('im'): -143 im = 1 -144 part = 'imaginary' -145 else: -146 im = 0 -147 part = 'real' -148 -149 known_versions = ["0.0", "1.0", "2.0", "1.0c", "2.0c", "1.0a", "2.0a"] -150 -151 if version not in known_versions: -152 raise Exception("This version is not known!") -153 if (version[-1] == "c"): -154 appended = False -155 compact = True -156 version = version[:-1] -157 elif (version[-1] == "a"): -158 appended = True -159 compact = False -160 version = version[:-1] -161 else: -162 compact = False -163 appended = False -164 ls = [] -165 if "replica" in kwargs: -166 ls = kwargs.get("replica") -167 else: -168 for (dirpath, dirnames, filenames) in os.walk(path): -169 if not appended: -170 ls.extend(dirnames) -171 else: -172 ls.extend(filenames) -173 break -174 if not ls: -175 raise Exception('Error, directory not found') -176 # Exclude folders with different names -177 for exc in ls: -178 if not fnmatch.fnmatch(exc, prefix + '*'): -179 ls = list(set(ls) - set([exc])) -180 -181 if not appended: -182 ls = sort_names(ls) -183 replica = len(ls) -184 -185 else: -186 replica = len([file.split(".")[-1] for file in ls]) // len(set([file.split(".")[-1] for file in ls])) -187 if replica == 0: -188 raise Exception('No replica found in directory') -189 if not silent: -190 print('Read', part, 'part of', name_list, 'from', prefix[:-1], ',', replica, 'replica') -191 -192 if 'names' in kwargs: -193 new_names = kwargs.get('names') -194 if len(new_names) != len(set(new_names)): -195 raise Exception("names are not unique!") -196 if len(new_names) != replica: -197 raise Exception('names should have the length', replica) -198 -199 else: -200 ens_name = kwargs.get("ens_name") -201 if not appended: -202 new_names = _get_rep_names(ls, ens_name) -203 else: -204 new_names = _get_appended_rep_names(ls, prefix, name_list[0], ens_name) -205 new_names = sort_names(new_names) -206 -207 idl = [] -208 -209 noffset_list = [str(x) for x in noffset_list] -210 wf_list = [str(x) for x in wf_list] -211 wf2_list = [str(x) for x in wf2_list] -212 -213 # setup dict structures -214 intern = {} -215 for name, corr_type in zip(name_list, corr_type_list): -216 intern[name] = {} -217 b2b, single = _extract_corr_type(corr_type) -218 intern[name]["b2b"] = b2b -219 intern[name]["single"] = single -220 intern[name]["spec"] = {} -221 for quarks in quarks_list: -222 intern[name]["spec"][quarks] = {} -223 for off in noffset_list: -224 intern[name]["spec"][quarks][off] = {} -225 for w in wf_list: -226 intern[name]["spec"][quarks][off][w] = {} -227 if b2b: -228 for w2 in wf2_list: -229 intern[name]["spec"][quarks][off][w][w2] = {} -230 intern[name]["spec"][quarks][off][w][w2]["pattern"] = _make_pattern(version, name, off, w, w2, intern[name]['b2b'], quarks) -231 else: -232 intern[name]["spec"][quarks][off][w]["0"] = {} -233 intern[name]["spec"][quarks][off][w]["0"]["pattern"] = _make_pattern(version, name, off, w, 0, intern[name]['b2b'], quarks) -234 -235 internal_ret_dict = {} -236 needed_keys = [] -237 for name, corr_type in zip(name_list, corr_type_list): -238 b2b, single = _extract_corr_type(corr_type) -239 if b2b: -240 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, wf2_list)) -241 else: -242 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, ["0"])) -243 -244 for key in needed_keys: -245 internal_ret_dict[key] = [] -246 -247 if not appended: -248 for i, item in enumerate(ls): -249 rep_path = path + '/' + item -250 if "files" in kwargs: -251 files = kwargs.get("files") -252 if isinstance(files, list): -253 if all(isinstance(f, list) for f in files): -254 files = files[i] -255 elif all(isinstance(f, str) for f in files): -256 files = files -257 else: -258 raise TypeError("files has to be of type list[list[str]] or list[str]!") -259 else: -260 raise TypeError("files has to be of type list[list[str]] or list[str]!") -261 -262 else: -263 files = [] -264 sub_ls = _find_files(rep_path, prefix, compact, files) -265 rep_idl = [] -266 no_cfg = len(sub_ls) -267 for cfg in sub_ls: -268 try: -269 if compact: -270 rep_idl.append(int(cfg.split(cfg_separator)[-1])) -271 else: -272 rep_idl.append(int(cfg[3:])) -273 except Exception: -274 raise Exception("Couldn't parse idl from directory, problem with file " + cfg) -275 rep_idl.sort() -276 # maybe there is a better way to print the idls -277 if not silent: -278 print(item, ':', no_cfg, ' configurations') -279 idl.append(rep_idl) -280 # here we have found all the files we need to look into. -281 if i == 0: -282 if version != "0.0" and compact: -283 file = path + '/' + item + '/' + sub_ls[0] -284 for name_index, name in enumerate(name_list): -285 if version == "0.0" or not compact: -286 file = path + '/' + item + '/' + sub_ls[0] + '/' + name -287 if corr_type_list[name_index] == 'bi': -288 name_keys = _lists2key(quarks_list, noffset_list, wf_list, ["0"]) -289 else: -290 name_keys = _lists2key(quarks_list, noffset_list, wf_list, wf2_list) -291 for key in name_keys: -292 specs = _key2specs(key) -293 quarks = specs[0] -294 off = specs[1] -295 w = specs[2] -296 w2 = specs[3] -297 # here, we want to find the place within the file, -298 # where the correlator we need is stored. -299 # to do so, the pattern needed is put together -300 # from the input values -301 start_read, T = _find_correlator(file, version, intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["pattern"], intern[name]['b2b'], silent=silent) -302 intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["start"] = start_read -303 intern[name]["T"] = T -304 # preparing the datastructure -305 # the correlators get parsed into... -306 deltas = [] -307 for j in range(intern[name]["T"]): -308 deltas.append([]) -309 internal_ret_dict[sep.join([name, key])] = deltas -310 -311 if compact: -312 rep_deltas = _read_compact_rep(path, item, sub_ls, intern, needed_keys, im) -313 for key in needed_keys: -314 name = _key2specs(key)[0] -315 for t in range(intern[name]["T"]): -316 internal_ret_dict[key][t].append(rep_deltas[key][t]) -317 else: -318 for key in needed_keys: -319 rep_data = [] -320 name = _key2specs(key)[0] -321 for subitem in sub_ls: -322 cfg_path = path + '/' + item + '/' + subitem -323 file_data = _read_o_file(cfg_path, name, needed_keys, intern, version, im) -324 rep_data.append(file_data) -325 for t in range(intern[name]["T"]): -326 internal_ret_dict[key][t].append([]) -327 for cfg in range(no_cfg): -328 internal_ret_dict[key][t][i].append(rep_data[cfg][key][t]) -329 else: -330 for key in needed_keys: -331 specs = _key2specs(key) -332 name = specs[0] -333 quarks = specs[1] -334 off = specs[2] -335 w = specs[3] -336 w2 = specs[4] -337 if "files" in kwargs: -338 if isinstance(kwargs.get("files"), list) and all(isinstance(f, str) for f in kwargs.get("files")): -339 name_ls = kwargs.get("files") -340 else: -341 raise TypeError("In append mode, files has to be of type list[str]!") -342 else: -343 name_ls = ls -344 for exc in name_ls: -345 if not fnmatch.fnmatch(exc, prefix + '*.' + name): -346 name_ls = list(set(name_ls) - set([exc])) -347 name_ls = sort_names(name_ls) -348 pattern = intern[name]['spec'][quarks][off][w][w2]['pattern'] -349 deltas = [] -350 for rep, file in enumerate(name_ls): -351 rep_idl = [] -352 filename = path + '/' + file -353 T, rep_idl, rep_data = _read_append_rep(filename, pattern, intern[name]['b2b'], cfg_separator, im, intern[name]['single']) -354 if rep == 0: -355 intern[name]['T'] = T -356 for t in range(intern[name]['T']): -357 deltas.append([]) -358 for t in range(intern[name]['T']): -359 deltas[t].append(rep_data[t]) -360 internal_ret_dict[key] = deltas -361 if name == name_list[0]: -362 idl.append(rep_idl) -363 -364 if kwargs.get("check_configs") is True: -365 if not silent: -366 print("Checking for missing configs...") -367 che = kwargs.get("check_configs") -368 if not (len(che) == len(idl)): -369 raise Exception("check_configs has to be the same length as replica!") -370 for r in range(len(idl)): -371 if not silent: -372 print("checking " + new_names[r]) -373 check_idl(idl[r], che[r]) -374 if not silent: -375 print("Done") -376 -377 result_dict = {} -378 if keyed_out: -379 for key in needed_keys: -380 name = _key2specs(key)[0] -381 result = [] -382 for t in range(intern[name]["T"]): -383 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -384 result_dict[key] = result -385 else: -386 for name, corr_type in zip(name_list, corr_type_list): -387 result_dict[name] = {} -388 for quarks in quarks_list: -389 result_dict[name][quarks] = {} -390 for off in noffset_list: -391 result_dict[name][quarks][off] = {} -392 for w in wf_list: -393 result_dict[name][quarks][off][w] = {} -394 if corr_type != 'bi': -395 for w2 in wf2_list: -396 key = _specs2key(name, quarks, off, w, w2) -397 result = [] -398 for t in range(intern[name]["T"]): -399 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -400 result_dict[name][quarks][str(off)][str(w)][str(w2)] = result -401 else: -402 key = _specs2key(name, quarks, off, w, "0") -403 result = [] -404 for t in range(intern[name]["T"]): -405 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -406 result_dict[name][quarks][str(off)][str(w)][str(0)] = result -407 return result_dict -408 +130 rep_string: str +131 Separator of ensemble name and replicum. Example: In "ensAr0", "r" would be the separator string. +132 Returns +133 ------- +134 result: dict[list[Obs]] +135 dict with one of the following properties: +136 if keyed_out: +137 dict[key] = list[Obs] +138 where key has the form name/quarks/offset/wf/wf2 +139 if not keyed_out: +140 dict[name][quarks][offset][wf][wf2] = list[Obs] +141 """ +142 +143 if kwargs.get('im'): +144 im = 1 +145 part = 'imaginary' +146 else: +147 im = 0 +148 part = 'real' +149 +150 known_versions = ["0.0", "1.0", "2.0", "1.0c", "2.0c", "1.0a", "2.0a"] +151 +152 if version not in known_versions: +153 raise Exception("This version is not known!") +154 if (version[-1] == "c"): +155 appended = False +156 compact = True +157 version = version[:-1] +158 elif (version[-1] == "a"): +159 appended = True +160 compact = False +161 version = version[:-1] +162 else: +163 compact = False +164 appended = False +165 ls = [] +166 if "replica" in kwargs: +167 ls = kwargs.get("replica") +168 else: +169 for (dirpath, dirnames, filenames) in os.walk(path): +170 if not appended: +171 ls.extend(dirnames) +172 else: +173 ls.extend(filenames) +174 break +175 if not ls: +176 raise Exception('Error, directory not found') +177 # Exclude folders with different names +178 for exc in ls: +179 if not fnmatch.fnmatch(exc, prefix + '*'): +180 ls = list(set(ls) - set([exc])) +181 +182 if not appended: +183 ls = sort_names(ls) +184 replica = len(ls) +185 +186 else: +187 replica = len([file.split(".")[-1] for file in ls]) // len(set([file.split(".")[-1] for file in ls])) +188 if replica == 0: +189 raise Exception('No replica found in directory') +190 if not silent: +191 print('Read', part, 'part of', name_list, 'from', prefix[:-1], ',', replica, 'replica') +192 +193 if 'names' in kwargs: +194 new_names = kwargs.get('names') +195 if len(new_names) != len(set(new_names)): +196 raise Exception("names are not unique!") +197 if len(new_names) != replica: +198 raise Exception('names should have the length', replica) +199 +200 else: +201 ens_name = kwargs.get("ens_name") +202 if not appended: +203 new_names = _get_rep_names(ls, ens_name, rep_sep=(kwargs.get('rep_string', 'r'))) +204 else: +205 new_names = _get_appended_rep_names(ls, prefix, name_list[0], ens_name, rep_sep=(kwargs.get('rep_string', 'r'))) +206 new_names = sort_names(new_names) +207 +208 idl = [] +209 +210 noffset_list = [str(x) for x in noffset_list] +211 wf_list = [str(x) for x in wf_list] +212 wf2_list = [str(x) for x in wf2_list] +213 +214 # setup dict structures +215 intern = {} +216 for name, corr_type in zip(name_list, corr_type_list): +217 intern[name] = {} +218 b2b, single = _extract_corr_type(corr_type) +219 intern[name]["b2b"] = b2b +220 intern[name]["single"] = single +221 intern[name]["spec"] = {} +222 for quarks in quarks_list: +223 intern[name]["spec"][quarks] = {} +224 for off in noffset_list: +225 intern[name]["spec"][quarks][off] = {} +226 for w in wf_list: +227 intern[name]["spec"][quarks][off][w] = {} +228 if b2b: +229 for w2 in wf2_list: +230 intern[name]["spec"][quarks][off][w][w2] = {} +231 intern[name]["spec"][quarks][off][w][w2]["pattern"] = _make_pattern(version, name, off, w, w2, intern[name]['b2b'], quarks) +232 else: +233 intern[name]["spec"][quarks][off][w]["0"] = {} +234 intern[name]["spec"][quarks][off][w]["0"]["pattern"] = _make_pattern(version, name, off, w, 0, intern[name]['b2b'], quarks) +235 +236 internal_ret_dict = {} +237 needed_keys = [] +238 for name, corr_type in zip(name_list, corr_type_list): +239 b2b, single = _extract_corr_type(corr_type) +240 if b2b: +241 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, wf2_list)) +242 else: +243 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, ["0"])) +244 +245 for key in needed_keys: +246 internal_ret_dict[key] = [] +247 +248 if not appended: +249 for i, item in enumerate(ls): +250 rep_path = path + '/' + item +251 if "files" in kwargs: +252 files = kwargs.get("files") +253 if isinstance(files, list): +254 if all(isinstance(f, list) for f in files): +255 files = files[i] +256 elif all(isinstance(f, str) for f in files): +257 files = files +258 else: +259 raise TypeError("files has to be of type list[list[str]] or list[str]!") +260 else: +261 raise TypeError("files has to be of type list[list[str]] or list[str]!") +262 +263 else: +264 files = [] +265 sub_ls = _find_files(rep_path, prefix, compact, files) +266 rep_idl = [] +267 no_cfg = len(sub_ls) +268 for cfg in sub_ls: +269 try: +270 if compact: +271 rep_idl.append(int(cfg.split(cfg_separator)[-1])) +272 else: +273 rep_idl.append(int(cfg[3:])) +274 except Exception: +275 raise Exception("Couldn't parse idl from directory, problem with file " + cfg) +276 rep_idl.sort() +277 # maybe there is a better way to print the idls +278 if not silent: +279 print(item, ':', no_cfg, ' configurations') +280 idl.append(rep_idl) +281 # here we have found all the files we need to look into. +282 if i == 0: +283 if version != "0.0" and compact: +284 file = path + '/' + item + '/' + sub_ls[0] +285 for name_index, name in enumerate(name_list): +286 if version == "0.0" or not compact: +287 file = path + '/' + item + '/' + sub_ls[0] + '/' + name +288 if corr_type_list[name_index] == 'bi': +289 name_keys = _lists2key(quarks_list, noffset_list, wf_list, ["0"]) +290 else: +291 name_keys = _lists2key(quarks_list, noffset_list, wf_list, wf2_list) +292 for key in name_keys: +293 specs = _key2specs(key) +294 quarks = specs[0] +295 off = specs[1] +296 w = specs[2] +297 w2 = specs[3] +298 # here, we want to find the place within the file, +299 # where the correlator we need is stored. +300 # to do so, the pattern needed is put together +301 # from the input values +302 start_read, T = _find_correlator(file, version, intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["pattern"], intern[name]['b2b'], silent=silent) +303 intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["start"] = start_read +304 intern[name]["T"] = T +305 # preparing the datastructure +306 # the correlators get parsed into... +307 deltas = [] +308 for j in range(intern[name]["T"]): +309 deltas.append([]) +310 internal_ret_dict[sep.join([name, key])] = deltas +311 +312 if compact: +313 rep_deltas = _read_compact_rep(path, item, sub_ls, intern, needed_keys, im) +314 for key in needed_keys: +315 name = _key2specs(key)[0] +316 for t in range(intern[name]["T"]): +317 internal_ret_dict[key][t].append(rep_deltas[key][t]) +318 else: +319 for key in needed_keys: +320 rep_data = [] +321 name = _key2specs(key)[0] +322 for subitem in sub_ls: +323 cfg_path = path + '/' + item + '/' + subitem +324 file_data = _read_o_file(cfg_path, name, needed_keys, intern, version, im) +325 rep_data.append(file_data) +326 for t in range(intern[name]["T"]): +327 internal_ret_dict[key][t].append([]) +328 for cfg in range(no_cfg): +329 internal_ret_dict[key][t][i].append(rep_data[cfg][key][t]) +330 else: +331 for key in needed_keys: +332 specs = _key2specs(key) +333 name = specs[0] +334 quarks = specs[1] +335 off = specs[2] +336 w = specs[3] +337 w2 = specs[4] +338 if "files" in kwargs: +339 if isinstance(kwargs.get("files"), list) and all(isinstance(f, str) for f in kwargs.get("files")): +340 name_ls = kwargs.get("files") +341 else: +342 raise TypeError("In append mode, files has to be of type list[str]!") +343 else: +344 name_ls = ls +345 for exc in name_ls: +346 if not fnmatch.fnmatch(exc, prefix + '*.' + name): +347 name_ls = list(set(name_ls) - set([exc])) +348 name_ls = sort_names(name_ls) +349 pattern = intern[name]['spec'][quarks][off][w][w2]['pattern'] +350 deltas = [] +351 for rep, file in enumerate(name_ls): +352 rep_idl = [] +353 filename = path + '/' + file +354 T, rep_idl, rep_data = _read_append_rep(filename, pattern, intern[name]['b2b'], cfg_separator, im, intern[name]['single']) +355 if rep == 0: +356 intern[name]['T'] = T +357 for t in range(intern[name]['T']): +358 deltas.append([]) +359 for t in range(intern[name]['T']): +360 deltas[t].append(rep_data[t]) +361 internal_ret_dict[key] = deltas +362 if name == name_list[0]: +363 idl.append(rep_idl) +364 +365 if kwargs.get("check_configs") is True: +366 if not silent: +367 print("Checking for missing configs...") +368 che = kwargs.get("check_configs") +369 if not (len(che) == len(idl)): +370 raise Exception("check_configs has to be the same length as replica!") +371 for r in range(len(idl)): +372 if not silent: +373 print("checking " + new_names[r]) +374 check_idl(idl[r], che[r]) +375 if not silent: +376 print("Done") +377 +378 result_dict = {} +379 if keyed_out: +380 for key in needed_keys: +381 name = _key2specs(key)[0] +382 result = [] +383 for t in range(intern[name]["T"]): +384 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +385 result_dict[key] = result +386 else: +387 for name, corr_type in zip(name_list, corr_type_list): +388 result_dict[name] = {} +389 for quarks in quarks_list: +390 result_dict[name][quarks] = {} +391 for off in noffset_list: +392 result_dict[name][quarks][off] = {} +393 for w in wf_list: +394 result_dict[name][quarks][off][w] = {} +395 if corr_type != 'bi': +396 for w2 in wf2_list: +397 key = _specs2key(name, quarks, off, w, w2) +398 result = [] +399 for t in range(intern[name]["T"]): +400 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +401 result_dict[name][quarks][str(off)][str(w)][str(w2)] = result +402 else: +403 key = _specs2key(name, quarks, off, w, "0") +404 result = [] +405 for t in range(intern[name]["T"]): +406 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +407 result_dict[name][quarks][str(off)][str(w)][str(0)] = result +408 return result_dict 409 -410def _lists2key(*lists): -411 keys = [] -412 for tup in itertools.product(*lists): -413 keys.append(sep.join(tup)) -414 return keys -415 +410 +411def _lists2key(*lists): +412 keys = [] +413 for tup in itertools.product(*lists): +414 keys.append(sep.join(tup)) +415 return keys 416 -417def _key2specs(key): -418 return key.split(sep) -419 +417 +418def _key2specs(key): +419 return key.split(sep) 420 -421def _specs2key(*specs): -422 return sep.join(specs) -423 +421 +422def _specs2key(*specs): +423 return sep.join(specs) 424 -425def _read_o_file(cfg_path, name, needed_keys, intern, version, im): -426 return_vals = {} -427 for key in needed_keys: -428 file = cfg_path + '/' + name -429 specs = _key2specs(key) -430 if specs[0] == name: -431 with open(file) as fp: -432 lines = fp.readlines() -433 quarks = specs[1] -434 off = specs[2] -435 w = specs[3] -436 w2 = specs[4] -437 T = intern[name]["T"] -438 start_read = intern[name]["spec"][quarks][off][w][w2]["start"] -439 deltas = [] -440 for line in lines[start_read:start_read + T]: -441 floats = list(map(float, line.split())) -442 if version == "0.0": -443 deltas.append(floats[im - intern[name]["single"]]) -444 else: -445 deltas.append(floats[1 + im - intern[name]["single"]]) -446 return_vals[key] = deltas -447 return return_vals -448 +425 +426def _read_o_file(cfg_path, name, needed_keys, intern, version, im): +427 return_vals = {} +428 for key in needed_keys: +429 file = cfg_path + '/' + name +430 specs = _key2specs(key) +431 if specs[0] == name: +432 with open(file) as fp: +433 lines = fp.readlines() +434 quarks = specs[1] +435 off = specs[2] +436 w = specs[3] +437 w2 = specs[4] +438 T = intern[name]["T"] +439 start_read = intern[name]["spec"][quarks][off][w][w2]["start"] +440 deltas = [] +441 for line in lines[start_read:start_read + T]: +442 floats = list(map(float, line.split())) +443 if version == "0.0": +444 deltas.append(floats[im - intern[name]["single"]]) +445 else: +446 deltas.append(floats[1 + im - intern[name]["single"]]) +447 return_vals[key] = deltas +448 return return_vals 449 -450def _extract_corr_type(corr_type): -451 if corr_type == 'bb': -452 b2b = True -453 single = True -454 elif corr_type == 'bib': -455 b2b = True -456 single = False -457 else: -458 b2b = False -459 single = False -460 return b2b, single -461 +450 +451def _extract_corr_type(corr_type): +452 if corr_type == 'bb': +453 b2b = True +454 single = True +455 elif corr_type == 'bib': +456 b2b = True +457 single = False +458 else: +459 b2b = False +460 single = False +461 return b2b, single 462 -463def _find_files(rep_path, prefix, compact, files=[]): -464 sub_ls = [] -465 if not files == []: -466 files.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) -467 else: -468 for (dirpath, dirnames, filenames) in os.walk(rep_path): -469 if compact: -470 sub_ls.extend(filenames) -471 else: -472 sub_ls.extend(dirnames) -473 break -474 if compact: -475 for exc in sub_ls: -476 if not fnmatch.fnmatch(exc, prefix + '*'): -477 sub_ls = list(set(sub_ls) - set([exc])) -478 sub_ls.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) -479 else: -480 for exc in sub_ls: -481 if not fnmatch.fnmatch(exc, 'cfg*'): -482 sub_ls = list(set(sub_ls) - set([exc])) -483 sub_ls.sort(key=lambda x: int(x[3:])) -484 files = sub_ls -485 if len(files) == 0: -486 raise FileNotFoundError("Did not find files in", rep_path, "with prefix", prefix, "and the given structure.") -487 return files -488 +463 +464def _find_files(rep_path, prefix, compact, files=[]): +465 sub_ls = [] +466 if not files == []: +467 files.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) +468 else: +469 for (dirpath, dirnames, filenames) in os.walk(rep_path): +470 if compact: +471 sub_ls.extend(filenames) +472 else: +473 sub_ls.extend(dirnames) +474 break +475 if compact: +476 for exc in sub_ls: +477 if not fnmatch.fnmatch(exc, prefix + '*'): +478 sub_ls = list(set(sub_ls) - set([exc])) +479 sub_ls.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) +480 else: +481 for exc in sub_ls: +482 if not fnmatch.fnmatch(exc, 'cfg*'): +483 sub_ls = list(set(sub_ls) - set([exc])) +484 sub_ls.sort(key=lambda x: int(x[3:])) +485 files = sub_ls +486 if len(files) == 0: +487 raise FileNotFoundError("Did not find files in", rep_path, "with prefix", prefix, "and the given structure.") +488 return files 489 -490def _make_pattern(version, name, noffset, wf, wf2, b2b, quarks): -491 if version == "0.0": -492 pattern = "# " + name + " : offset " + str(noffset) + ", wf " + str(wf) -493 if b2b: -494 pattern += ", wf_2 " + str(wf2) -495 qs = quarks.split(" ") -496 pattern += " : " + qs[0] + " - " + qs[1] -497 else: -498 pattern = 'name ' + name + '\nquarks ' + quarks + '\noffset ' + str(noffset) + '\nwf ' + str(wf) -499 if b2b: -500 pattern += '\nwf_2 ' + str(wf2) -501 return pattern -502 +490 +491def _make_pattern(version, name, noffset, wf, wf2, b2b, quarks): +492 if version == "0.0": +493 pattern = "# " + name + " : offset " + str(noffset) + ", wf " + str(wf) +494 if b2b: +495 pattern += ", wf_2 " + str(wf2) +496 qs = quarks.split(" ") +497 pattern += " : " + qs[0] + " - " + qs[1] +498 else: +499 pattern = 'name ' + name + '\nquarks ' + quarks + '\noffset ' + str(noffset) + '\nwf ' + str(wf) +500 if b2b: +501 pattern += '\nwf_2 ' + str(wf2) +502 return pattern 503 -504def _find_correlator(file_name, version, pattern, b2b, silent=False): -505 T = 0 -506 -507 with open(file_name, "r") as my_file: -508 -509 content = my_file.read() -510 match = re.search(pattern, content) -511 if match: -512 if version == "0.0": -513 start_read = content.count('\n', 0, match.start()) + 1 -514 T = content.count('\n', start_read) -515 else: -516 start_read = content.count('\n', 0, match.start()) + 5 + b2b -517 end_match = re.search(r'\n\s*\n', content[match.start():]) -518 T = content[match.start():].count('\n', 0, end_match.start()) - 4 - b2b -519 if not T > 0: -520 raise ValueError("Correlator with pattern\n" + pattern + "\nis empty!") -521 if not silent: -522 print(T, 'entries, starting to read in line', start_read) -523 -524 else: -525 raise ValueError('Correlator with pattern\n' + pattern + '\nnot found.') -526 -527 return start_read, T -528 +504 +505def _find_correlator(file_name, version, pattern, b2b, silent=False): +506 T = 0 +507 +508 with open(file_name, "r") as my_file: +509 +510 content = my_file.read() +511 match = re.search(pattern, content) +512 if match: +513 if version == "0.0": +514 start_read = content.count('\n', 0, match.start()) + 1 +515 T = content.count('\n', start_read) +516 else: +517 start_read = content.count('\n', 0, match.start()) + 5 + b2b +518 end_match = re.search(r'\n\s*\n', content[match.start():]) +519 T = content[match.start():].count('\n', 0, end_match.start()) - 4 - b2b +520 if not T > 0: +521 raise ValueError("Correlator with pattern\n" + pattern + "\nis empty!") +522 if not silent: +523 print(T, 'entries, starting to read in line', start_read) +524 +525 else: +526 raise ValueError('Correlator with pattern\n' + pattern + '\nnot found.') +527 +528 return start_read, T 529 -530def _read_compact_file(rep_path, cfg_file, intern, needed_keys, im): -531 return_vals = {} -532 with open(rep_path + cfg_file) as fp: -533 lines = fp.readlines() -534 for key in needed_keys: -535 keys = _key2specs(key) -536 name = keys[0] -537 quarks = keys[1] -538 off = keys[2] -539 w = keys[3] -540 w2 = keys[4] -541 -542 T = intern[name]["T"] -543 start_read = intern[name]["spec"][quarks][off][w][w2]["start"] -544 # check, if the correlator is in fact -545 # printed completely -546 if (start_read + T + 1 > len(lines)): -547 raise Exception("EOF before end of correlator data! Maybe " + rep_path + cfg_file + " is corrupted?") -548 corr_lines = lines[start_read - 6: start_read + T] -549 t_vals = [] -550 -551 if corr_lines[1 - intern[name]["b2b"]].strip() != 'name ' + name: -552 raise Exception('Wrong format in file', cfg_file) -553 -554 for k in range(6, T + 6): -555 floats = list(map(float, corr_lines[k].split())) -556 t_vals.append(floats[-2:][im]) -557 return_vals[key] = t_vals -558 return return_vals -559 +530 +531def _read_compact_file(rep_path, cfg_file, intern, needed_keys, im): +532 return_vals = {} +533 with open(rep_path + cfg_file) as fp: +534 lines = fp.readlines() +535 for key in needed_keys: +536 keys = _key2specs(key) +537 name = keys[0] +538 quarks = keys[1] +539 off = keys[2] +540 w = keys[3] +541 w2 = keys[4] +542 +543 T = intern[name]["T"] +544 start_read = intern[name]["spec"][quarks][off][w][w2]["start"] +545 # check, if the correlator is in fact +546 # printed completely +547 if (start_read + T + 1 > len(lines)): +548 raise Exception("EOF before end of correlator data! Maybe " + rep_path + cfg_file + " is corrupted?") +549 corr_lines = lines[start_read - 6: start_read + T] +550 t_vals = [] +551 +552 if corr_lines[1 - intern[name]["b2b"]].strip() != 'name ' + name: +553 raise Exception('Wrong format in file', cfg_file) +554 +555 for k in range(6, T + 6): +556 floats = list(map(float, corr_lines[k].split())) +557 t_vals.append(floats[-2:][im]) +558 return_vals[key] = t_vals +559 return return_vals 560 -561def _read_compact_rep(path, rep, sub_ls, intern, needed_keys, im): -562 rep_path = path + '/' + rep + '/' -563 no_cfg = len(sub_ls) -564 -565 return_vals = {} -566 for key in needed_keys: -567 name = _key2specs(key)[0] -568 deltas = [] -569 for t in range(intern[name]["T"]): -570 deltas.append(np.zeros(no_cfg)) -571 return_vals[key] = deltas -572 -573 for cfg in range(no_cfg): -574 cfg_file = sub_ls[cfg] -575 cfg_data = _read_compact_file(rep_path, cfg_file, intern, needed_keys, im) -576 for key in needed_keys: -577 name = _key2specs(key)[0] -578 for t in range(intern[name]["T"]): -579 return_vals[key][t][cfg] = cfg_data[key][t] -580 return return_vals -581 +561 +562def _read_compact_rep(path, rep, sub_ls, intern, needed_keys, im): +563 rep_path = path + '/' + rep + '/' +564 no_cfg = len(sub_ls) +565 +566 return_vals = {} +567 for key in needed_keys: +568 name = _key2specs(key)[0] +569 deltas = [] +570 for t in range(intern[name]["T"]): +571 deltas.append(np.zeros(no_cfg)) +572 return_vals[key] = deltas +573 +574 for cfg in range(no_cfg): +575 cfg_file = sub_ls[cfg] +576 cfg_data = _read_compact_file(rep_path, cfg_file, intern, needed_keys, im) +577 for key in needed_keys: +578 name = _key2specs(key)[0] +579 for t in range(intern[name]["T"]): +580 return_vals[key][t][cfg] = cfg_data[key][t] +581 return return_vals 582 -583def _read_chunk(chunk, gauge_line, cfg_sep, start_read, T, corr_line, b2b, pattern, im, single): -584 try: -585 idl = int(chunk[gauge_line].split(cfg_sep)[-1]) -586 except Exception: -587 raise Exception("Couldn't parse idl from directory, problem with chunk around line ", gauge_line) -588 -589 found_pat = "" -590 data = [] -591 for li in chunk[corr_line + 1:corr_line + 6 + b2b]: -592 found_pat += li -593 if re.search(pattern, found_pat): -594 for t, line in enumerate(chunk[start_read:start_read + T]): -595 floats = list(map(float, line.split())) -596 data.append(floats[im + 1 - single]) -597 return idl, data -598 +583 +584def _read_chunk(chunk, gauge_line, cfg_sep, start_read, T, corr_line, b2b, pattern, im, single): +585 try: +586 idl = int(chunk[gauge_line].split(cfg_sep)[-1]) +587 except Exception: +588 raise Exception("Couldn't parse idl from directory, problem with chunk around line ", gauge_line) +589 +590 found_pat = "" +591 data = [] +592 for li in chunk[corr_line + 1:corr_line + 6 + b2b]: +593 found_pat += li +594 if re.search(pattern, found_pat): +595 for t, line in enumerate(chunk[start_read:start_read + T]): +596 floats = list(map(float, line.split())) +597 data.append(floats[im + 1 - single]) +598 return idl, data 599 -600def _read_append_rep(filename, pattern, b2b, cfg_separator, im, single): -601 with open(filename, 'r') as fp: -602 content = fp.readlines() -603 data_starts = [] -604 for linenumber, line in enumerate(content): -605 if "[run]" in line: -606 data_starts.append(linenumber) -607 if len(set([data_starts[i] - data_starts[i - 1] for i in range(1, len(data_starts))])) > 1: -608 raise Exception("Irregularities in file structure found, not all runs have the same output length") -609 chunk = content[:data_starts[1]] -610 for linenumber, line in enumerate(chunk): -611 if line.startswith("gauge_name"): -612 gauge_line = linenumber -613 elif line.startswith("[correlator]"): -614 corr_line = linenumber -615 found_pat = "" -616 for li in chunk[corr_line + 1: corr_line + 6 + b2b]: -617 found_pat += li -618 if re.search(pattern, found_pat): -619 start_read = corr_line + 7 + b2b -620 break -621 else: -622 raise ValueError("Did not find pattern\n", pattern, "\nin\n", filename) -623 endline = corr_line + 6 + b2b -624 while not chunk[endline] == "\n": -625 endline += 1 -626 T = endline - start_read -627 -628 # all other chunks should follow the same structure -629 rep_idl = [] -630 rep_data = [] -631 -632 for cnfg in range(len(data_starts)): -633 start = data_starts[cnfg] -634 stop = start + data_starts[1] -635 chunk = content[start:stop] -636 idl, data = _read_chunk(chunk, gauge_line, cfg_separator, start_read, T, corr_line, b2b, pattern, im, single) -637 rep_idl.append(idl) -638 rep_data.append(data) -639 -640 data = [] -641 -642 for t in range(T): -643 data.append([]) -644 for c in range(len(rep_data)): -645 data[t].append(rep_data[c][t]) -646 return T, rep_idl, data -647 +600 +601def _read_append_rep(filename, pattern, b2b, cfg_separator, im, single): +602 with open(filename, 'r') as fp: +603 content = fp.readlines() +604 data_starts = [] +605 for linenumber, line in enumerate(content): +606 if "[run]" in line: +607 data_starts.append(linenumber) +608 if len(set([data_starts[i] - data_starts[i - 1] for i in range(1, len(data_starts))])) > 1: +609 raise Exception("Irregularities in file structure found, not all runs have the same output length") +610 chunk = content[:data_starts[1]] +611 for linenumber, line in enumerate(chunk): +612 if line.startswith("gauge_name"): +613 gauge_line = linenumber +614 elif line.startswith("[correlator]"): +615 corr_line = linenumber +616 found_pat = "" +617 for li in chunk[corr_line + 1: corr_line + 6 + b2b]: +618 found_pat += li +619 if re.search(pattern, found_pat): +620 start_read = corr_line + 7 + b2b +621 break +622 else: +623 raise ValueError("Did not find pattern\n", pattern, "\nin\n", filename) +624 endline = corr_line + 6 + b2b +625 while not chunk[endline] == "\n": +626 endline += 1 +627 T = endline - start_read +628 +629 # all other chunks should follow the same structure +630 rep_idl = [] +631 rep_data = [] +632 +633 for cnfg in range(len(data_starts)): +634 start = data_starts[cnfg] +635 stop = start + data_starts[1] +636 chunk = content[start:stop] +637 idl, data = _read_chunk(chunk, gauge_line, cfg_separator, start_read, T, corr_line, b2b, pattern, im, single) +638 rep_idl.append(idl) +639 rep_data.append(data) +640 +641 data = [] +642 +643 for t in range(T): +644 data.append([]) +645 for c in range(len(rep_data)): +646 data[t].append(rep_data[c][t]) +647 return T, rep_idl, data 648 -649def _get_rep_names(ls, ens_name=None): -650 new_names = [] -651 for entry in ls: -652 try: -653 idx = entry.index('r') -654 except Exception: -655 raise Exception("Automatic recognition of replicum failed, please enter the key word 'names'.") -656 -657 if ens_name: -658 new_names.append('ens_name' + '|' + entry[idx:]) -659 else: -660 new_names.append(entry[:idx] + '|' + entry[idx:]) -661 return new_names -662 +649 +650def _get_rep_names(ls, ens_name=None, rep_sep='r'): +651 new_names = [] +652 for entry in ls: +653 try: +654 idx = entry.index(rep_sep) +655 except Exception: +656 raise Exception("Automatic recognition of replicum failed, please enter the key word 'names'.") +657 +658 if ens_name: +659 new_names.append(ens_name + '|' + entry[idx:]) +660 else: +661 new_names.append(entry[:idx] + '|' + entry[idx:]) +662 return new_names 663 -664def _get_appended_rep_names(ls, prefix, name, ens_name=None): -665 new_names = [] -666 for exc in ls: -667 if not fnmatch.fnmatch(exc, prefix + '*.' + name): -668 ls = list(set(ls) - set([exc])) -669 ls.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) -670 for entry in ls: -671 myentry = entry[:-len(name) - 1] -672 try: -673 idx = myentry.index('r') -674 except Exception: -675 raise Exception("Automatic recognition of replicum failed, please enter the key word 'names'.") -676 -677 if ens_name: -678 new_names.append('ens_name' + '|' + entry[idx:]) -679 else: -680 new_names.append(myentry[:idx] + '|' + myentry[idx:]) -681 return new_names +664 +665def _get_appended_rep_names(ls, prefix, name, ens_name=None, rep_sep='r'): +666 new_names = [] +667 for exc in ls: +668 if not fnmatch.fnmatch(exc, prefix + '*.' + name): +669 ls = list(set(ls) - set([exc])) +670 ls.sort(key=lambda x: int(re.findall(r'\d+', x)[-1])) +671 for entry in ls: +672 myentry = entry[:-len(name) - 1] +673 try: +674 idx = myentry.index(rep_sep) +675 except Exception: +676 raise Exception("Automatic recognition of replicum failed, please enter the key word 'names'.") +677 +678 if ens_name: +679 new_names.append(ens_name + '|' + entry[idx:]) +680 else: +681 new_names.append(myentry[:idx] + '|' + myentry[idx:]) +682 return new_names

@@ -790,7 +791,7 @@

-
14def read_sfcf(path, prefix, name, quarks='.*', corr_type="bi", noffset=0, wf=0, wf2=0, version="1.0c", cfg_separator="n", silent=False, **kwargs):
+            
14def read_sfcf(path, prefix, name, quarks='.*', corr_type="bi", noffset=0, wf=0, wf2=0, version="1.0c", cfg_separator="n", silent=False, **kwargs):
 15    """Read sfcf files from given folder structure.
 16
 17    Parameters
@@ -934,7 +935,7 @@ 
Returns
-
 79def read_sfcf_multi(path, prefix, name_list, quarks_list=['.*'], corr_type_list=['bi'], noffset_list=[0], wf_list=[0], wf2_list=[0], version="1.0c", cfg_separator="n", silent=False, keyed_out=False, **kwargs):
+            
 79def read_sfcf_multi(path, prefix, name_list, quarks_list=['.*'], corr_type_list=['bi'], noffset_list=[0], wf_list=[0], wf2_list=[0], version="1.0c", cfg_separator="n", silent=False, keyed_out=False, **kwargs):
  80    """Read sfcf files from given folder structure.
  81
  82    Parameters
@@ -986,284 +987,285 @@ 
Returns
128 check_configs: list[list[int]] 129 list of list of supposed configs, eg. [range(1,1000)] 130 for one replicum with 1000 configs -131 -132 Returns -133 ------- -134 result: dict[list[Obs]] -135 dict with one of the following properties: -136 if keyed_out: -137 dict[key] = list[Obs] -138 where key has the form name/quarks/offset/wf/wf2 -139 if not keyed_out: -140 dict[name][quarks][offset][wf][wf2] = list[Obs] -141 """ -142 -143 if kwargs.get('im'): -144 im = 1 -145 part = 'imaginary' -146 else: -147 im = 0 -148 part = 'real' -149 -150 known_versions = ["0.0", "1.0", "2.0", "1.0c", "2.0c", "1.0a", "2.0a"] -151 -152 if version not in known_versions: -153 raise Exception("This version is not known!") -154 if (version[-1] == "c"): -155 appended = False -156 compact = True -157 version = version[:-1] -158 elif (version[-1] == "a"): -159 appended = True -160 compact = False -161 version = version[:-1] -162 else: -163 compact = False -164 appended = False -165 ls = [] -166 if "replica" in kwargs: -167 ls = kwargs.get("replica") -168 else: -169 for (dirpath, dirnames, filenames) in os.walk(path): -170 if not appended: -171 ls.extend(dirnames) -172 else: -173 ls.extend(filenames) -174 break -175 if not ls: -176 raise Exception('Error, directory not found') -177 # Exclude folders with different names -178 for exc in ls: -179 if not fnmatch.fnmatch(exc, prefix + '*'): -180 ls = list(set(ls) - set([exc])) -181 -182 if not appended: -183 ls = sort_names(ls) -184 replica = len(ls) -185 -186 else: -187 replica = len([file.split(".")[-1] for file in ls]) // len(set([file.split(".")[-1] for file in ls])) -188 if replica == 0: -189 raise Exception('No replica found in directory') -190 if not silent: -191 print('Read', part, 'part of', name_list, 'from', prefix[:-1], ',', replica, 'replica') -192 -193 if 'names' in kwargs: -194 new_names = kwargs.get('names') -195 if len(new_names) != len(set(new_names)): -196 raise Exception("names are not unique!") -197 if len(new_names) != replica: -198 raise Exception('names should have the length', replica) -199 -200 else: -201 ens_name = kwargs.get("ens_name") -202 if not appended: -203 new_names = _get_rep_names(ls, ens_name) -204 else: -205 new_names = _get_appended_rep_names(ls, prefix, name_list[0], ens_name) -206 new_names = sort_names(new_names) -207 -208 idl = [] -209 -210 noffset_list = [str(x) for x in noffset_list] -211 wf_list = [str(x) for x in wf_list] -212 wf2_list = [str(x) for x in wf2_list] -213 -214 # setup dict structures -215 intern = {} -216 for name, corr_type in zip(name_list, corr_type_list): -217 intern[name] = {} -218 b2b, single = _extract_corr_type(corr_type) -219 intern[name]["b2b"] = b2b -220 intern[name]["single"] = single -221 intern[name]["spec"] = {} -222 for quarks in quarks_list: -223 intern[name]["spec"][quarks] = {} -224 for off in noffset_list: -225 intern[name]["spec"][quarks][off] = {} -226 for w in wf_list: -227 intern[name]["spec"][quarks][off][w] = {} -228 if b2b: -229 for w2 in wf2_list: -230 intern[name]["spec"][quarks][off][w][w2] = {} -231 intern[name]["spec"][quarks][off][w][w2]["pattern"] = _make_pattern(version, name, off, w, w2, intern[name]['b2b'], quarks) -232 else: -233 intern[name]["spec"][quarks][off][w]["0"] = {} -234 intern[name]["spec"][quarks][off][w]["0"]["pattern"] = _make_pattern(version, name, off, w, 0, intern[name]['b2b'], quarks) -235 -236 internal_ret_dict = {} -237 needed_keys = [] -238 for name, corr_type in zip(name_list, corr_type_list): -239 b2b, single = _extract_corr_type(corr_type) -240 if b2b: -241 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, wf2_list)) -242 else: -243 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, ["0"])) -244 -245 for key in needed_keys: -246 internal_ret_dict[key] = [] -247 -248 if not appended: -249 for i, item in enumerate(ls): -250 rep_path = path + '/' + item -251 if "files" in kwargs: -252 files = kwargs.get("files") -253 if isinstance(files, list): -254 if all(isinstance(f, list) for f in files): -255 files = files[i] -256 elif all(isinstance(f, str) for f in files): -257 files = files -258 else: -259 raise TypeError("files has to be of type list[list[str]] or list[str]!") -260 else: -261 raise TypeError("files has to be of type list[list[str]] or list[str]!") -262 -263 else: -264 files = [] -265 sub_ls = _find_files(rep_path, prefix, compact, files) -266 rep_idl = [] -267 no_cfg = len(sub_ls) -268 for cfg in sub_ls: -269 try: -270 if compact: -271 rep_idl.append(int(cfg.split(cfg_separator)[-1])) -272 else: -273 rep_idl.append(int(cfg[3:])) -274 except Exception: -275 raise Exception("Couldn't parse idl from directory, problem with file " + cfg) -276 rep_idl.sort() -277 # maybe there is a better way to print the idls -278 if not silent: -279 print(item, ':', no_cfg, ' configurations') -280 idl.append(rep_idl) -281 # here we have found all the files we need to look into. -282 if i == 0: -283 if version != "0.0" and compact: -284 file = path + '/' + item + '/' + sub_ls[0] -285 for name_index, name in enumerate(name_list): -286 if version == "0.0" or not compact: -287 file = path + '/' + item + '/' + sub_ls[0] + '/' + name -288 if corr_type_list[name_index] == 'bi': -289 name_keys = _lists2key(quarks_list, noffset_list, wf_list, ["0"]) -290 else: -291 name_keys = _lists2key(quarks_list, noffset_list, wf_list, wf2_list) -292 for key in name_keys: -293 specs = _key2specs(key) -294 quarks = specs[0] -295 off = specs[1] -296 w = specs[2] -297 w2 = specs[3] -298 # here, we want to find the place within the file, -299 # where the correlator we need is stored. -300 # to do so, the pattern needed is put together -301 # from the input values -302 start_read, T = _find_correlator(file, version, intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["pattern"], intern[name]['b2b'], silent=silent) -303 intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["start"] = start_read -304 intern[name]["T"] = T -305 # preparing the datastructure -306 # the correlators get parsed into... -307 deltas = [] -308 for j in range(intern[name]["T"]): -309 deltas.append([]) -310 internal_ret_dict[sep.join([name, key])] = deltas -311 -312 if compact: -313 rep_deltas = _read_compact_rep(path, item, sub_ls, intern, needed_keys, im) -314 for key in needed_keys: -315 name = _key2specs(key)[0] -316 for t in range(intern[name]["T"]): -317 internal_ret_dict[key][t].append(rep_deltas[key][t]) -318 else: -319 for key in needed_keys: -320 rep_data = [] -321 name = _key2specs(key)[0] -322 for subitem in sub_ls: -323 cfg_path = path + '/' + item + '/' + subitem -324 file_data = _read_o_file(cfg_path, name, needed_keys, intern, version, im) -325 rep_data.append(file_data) -326 for t in range(intern[name]["T"]): -327 internal_ret_dict[key][t].append([]) -328 for cfg in range(no_cfg): -329 internal_ret_dict[key][t][i].append(rep_data[cfg][key][t]) -330 else: -331 for key in needed_keys: -332 specs = _key2specs(key) -333 name = specs[0] -334 quarks = specs[1] -335 off = specs[2] -336 w = specs[3] -337 w2 = specs[4] -338 if "files" in kwargs: -339 if isinstance(kwargs.get("files"), list) and all(isinstance(f, str) for f in kwargs.get("files")): -340 name_ls = kwargs.get("files") -341 else: -342 raise TypeError("In append mode, files has to be of type list[str]!") -343 else: -344 name_ls = ls -345 for exc in name_ls: -346 if not fnmatch.fnmatch(exc, prefix + '*.' + name): -347 name_ls = list(set(name_ls) - set([exc])) -348 name_ls = sort_names(name_ls) -349 pattern = intern[name]['spec'][quarks][off][w][w2]['pattern'] -350 deltas = [] -351 for rep, file in enumerate(name_ls): -352 rep_idl = [] -353 filename = path + '/' + file -354 T, rep_idl, rep_data = _read_append_rep(filename, pattern, intern[name]['b2b'], cfg_separator, im, intern[name]['single']) -355 if rep == 0: -356 intern[name]['T'] = T -357 for t in range(intern[name]['T']): -358 deltas.append([]) -359 for t in range(intern[name]['T']): -360 deltas[t].append(rep_data[t]) -361 internal_ret_dict[key] = deltas -362 if name == name_list[0]: -363 idl.append(rep_idl) -364 -365 if kwargs.get("check_configs") is True: -366 if not silent: -367 print("Checking for missing configs...") -368 che = kwargs.get("check_configs") -369 if not (len(che) == len(idl)): -370 raise Exception("check_configs has to be the same length as replica!") -371 for r in range(len(idl)): -372 if not silent: -373 print("checking " + new_names[r]) -374 check_idl(idl[r], che[r]) -375 if not silent: -376 print("Done") -377 -378 result_dict = {} -379 if keyed_out: -380 for key in needed_keys: -381 name = _key2specs(key)[0] -382 result = [] -383 for t in range(intern[name]["T"]): -384 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -385 result_dict[key] = result -386 else: -387 for name, corr_type in zip(name_list, corr_type_list): -388 result_dict[name] = {} -389 for quarks in quarks_list: -390 result_dict[name][quarks] = {} -391 for off in noffset_list: -392 result_dict[name][quarks][off] = {} -393 for w in wf_list: -394 result_dict[name][quarks][off][w] = {} -395 if corr_type != 'bi': -396 for w2 in wf2_list: -397 key = _specs2key(name, quarks, off, w, w2) -398 result = [] -399 for t in range(intern[name]["T"]): -400 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -401 result_dict[name][quarks][str(off)][str(w)][str(w2)] = result -402 else: -403 key = _specs2key(name, quarks, off, w, "0") -404 result = [] -405 for t in range(intern[name]["T"]): -406 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) -407 result_dict[name][quarks][str(off)][str(w)][str(0)] = result -408 return result_dict +131 rep_string: str +132 Separator of ensemble name and replicum. Example: In "ensAr0", "r" would be the separator string. +133 Returns +134 ------- +135 result: dict[list[Obs]] +136 dict with one of the following properties: +137 if keyed_out: +138 dict[key] = list[Obs] +139 where key has the form name/quarks/offset/wf/wf2 +140 if not keyed_out: +141 dict[name][quarks][offset][wf][wf2] = list[Obs] +142 """ +143 +144 if kwargs.get('im'): +145 im = 1 +146 part = 'imaginary' +147 else: +148 im = 0 +149 part = 'real' +150 +151 known_versions = ["0.0", "1.0", "2.0", "1.0c", "2.0c", "1.0a", "2.0a"] +152 +153 if version not in known_versions: +154 raise Exception("This version is not known!") +155 if (version[-1] == "c"): +156 appended = False +157 compact = True +158 version = version[:-1] +159 elif (version[-1] == "a"): +160 appended = True +161 compact = False +162 version = version[:-1] +163 else: +164 compact = False +165 appended = False +166 ls = [] +167 if "replica" in kwargs: +168 ls = kwargs.get("replica") +169 else: +170 for (dirpath, dirnames, filenames) in os.walk(path): +171 if not appended: +172 ls.extend(dirnames) +173 else: +174 ls.extend(filenames) +175 break +176 if not ls: +177 raise Exception('Error, directory not found') +178 # Exclude folders with different names +179 for exc in ls: +180 if not fnmatch.fnmatch(exc, prefix + '*'): +181 ls = list(set(ls) - set([exc])) +182 +183 if not appended: +184 ls = sort_names(ls) +185 replica = len(ls) +186 +187 else: +188 replica = len([file.split(".")[-1] for file in ls]) // len(set([file.split(".")[-1] for file in ls])) +189 if replica == 0: +190 raise Exception('No replica found in directory') +191 if not silent: +192 print('Read', part, 'part of', name_list, 'from', prefix[:-1], ',', replica, 'replica') +193 +194 if 'names' in kwargs: +195 new_names = kwargs.get('names') +196 if len(new_names) != len(set(new_names)): +197 raise Exception("names are not unique!") +198 if len(new_names) != replica: +199 raise Exception('names should have the length', replica) +200 +201 else: +202 ens_name = kwargs.get("ens_name") +203 if not appended: +204 new_names = _get_rep_names(ls, ens_name, rep_sep=(kwargs.get('rep_string', 'r'))) +205 else: +206 new_names = _get_appended_rep_names(ls, prefix, name_list[0], ens_name, rep_sep=(kwargs.get('rep_string', 'r'))) +207 new_names = sort_names(new_names) +208 +209 idl = [] +210 +211 noffset_list = [str(x) for x in noffset_list] +212 wf_list = [str(x) for x in wf_list] +213 wf2_list = [str(x) for x in wf2_list] +214 +215 # setup dict structures +216 intern = {} +217 for name, corr_type in zip(name_list, corr_type_list): +218 intern[name] = {} +219 b2b, single = _extract_corr_type(corr_type) +220 intern[name]["b2b"] = b2b +221 intern[name]["single"] = single +222 intern[name]["spec"] = {} +223 for quarks in quarks_list: +224 intern[name]["spec"][quarks] = {} +225 for off in noffset_list: +226 intern[name]["spec"][quarks][off] = {} +227 for w in wf_list: +228 intern[name]["spec"][quarks][off][w] = {} +229 if b2b: +230 for w2 in wf2_list: +231 intern[name]["spec"][quarks][off][w][w2] = {} +232 intern[name]["spec"][quarks][off][w][w2]["pattern"] = _make_pattern(version, name, off, w, w2, intern[name]['b2b'], quarks) +233 else: +234 intern[name]["spec"][quarks][off][w]["0"] = {} +235 intern[name]["spec"][quarks][off][w]["0"]["pattern"] = _make_pattern(version, name, off, w, 0, intern[name]['b2b'], quarks) +236 +237 internal_ret_dict = {} +238 needed_keys = [] +239 for name, corr_type in zip(name_list, corr_type_list): +240 b2b, single = _extract_corr_type(corr_type) +241 if b2b: +242 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, wf2_list)) +243 else: +244 needed_keys.extend(_lists2key([name], quarks_list, noffset_list, wf_list, ["0"])) +245 +246 for key in needed_keys: +247 internal_ret_dict[key] = [] +248 +249 if not appended: +250 for i, item in enumerate(ls): +251 rep_path = path + '/' + item +252 if "files" in kwargs: +253 files = kwargs.get("files") +254 if isinstance(files, list): +255 if all(isinstance(f, list) for f in files): +256 files = files[i] +257 elif all(isinstance(f, str) for f in files): +258 files = files +259 else: +260 raise TypeError("files has to be of type list[list[str]] or list[str]!") +261 else: +262 raise TypeError("files has to be of type list[list[str]] or list[str]!") +263 +264 else: +265 files = [] +266 sub_ls = _find_files(rep_path, prefix, compact, files) +267 rep_idl = [] +268 no_cfg = len(sub_ls) +269 for cfg in sub_ls: +270 try: +271 if compact: +272 rep_idl.append(int(cfg.split(cfg_separator)[-1])) +273 else: +274 rep_idl.append(int(cfg[3:])) +275 except Exception: +276 raise Exception("Couldn't parse idl from directory, problem with file " + cfg) +277 rep_idl.sort() +278 # maybe there is a better way to print the idls +279 if not silent: +280 print(item, ':', no_cfg, ' configurations') +281 idl.append(rep_idl) +282 # here we have found all the files we need to look into. +283 if i == 0: +284 if version != "0.0" and compact: +285 file = path + '/' + item + '/' + sub_ls[0] +286 for name_index, name in enumerate(name_list): +287 if version == "0.0" or not compact: +288 file = path + '/' + item + '/' + sub_ls[0] + '/' + name +289 if corr_type_list[name_index] == 'bi': +290 name_keys = _lists2key(quarks_list, noffset_list, wf_list, ["0"]) +291 else: +292 name_keys = _lists2key(quarks_list, noffset_list, wf_list, wf2_list) +293 for key in name_keys: +294 specs = _key2specs(key) +295 quarks = specs[0] +296 off = specs[1] +297 w = specs[2] +298 w2 = specs[3] +299 # here, we want to find the place within the file, +300 # where the correlator we need is stored. +301 # to do so, the pattern needed is put together +302 # from the input values +303 start_read, T = _find_correlator(file, version, intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["pattern"], intern[name]['b2b'], silent=silent) +304 intern[name]["spec"][quarks][str(off)][str(w)][str(w2)]["start"] = start_read +305 intern[name]["T"] = T +306 # preparing the datastructure +307 # the correlators get parsed into... +308 deltas = [] +309 for j in range(intern[name]["T"]): +310 deltas.append([]) +311 internal_ret_dict[sep.join([name, key])] = deltas +312 +313 if compact: +314 rep_deltas = _read_compact_rep(path, item, sub_ls, intern, needed_keys, im) +315 for key in needed_keys: +316 name = _key2specs(key)[0] +317 for t in range(intern[name]["T"]): +318 internal_ret_dict[key][t].append(rep_deltas[key][t]) +319 else: +320 for key in needed_keys: +321 rep_data = [] +322 name = _key2specs(key)[0] +323 for subitem in sub_ls: +324 cfg_path = path + '/' + item + '/' + subitem +325 file_data = _read_o_file(cfg_path, name, needed_keys, intern, version, im) +326 rep_data.append(file_data) +327 for t in range(intern[name]["T"]): +328 internal_ret_dict[key][t].append([]) +329 for cfg in range(no_cfg): +330 internal_ret_dict[key][t][i].append(rep_data[cfg][key][t]) +331 else: +332 for key in needed_keys: +333 specs = _key2specs(key) +334 name = specs[0] +335 quarks = specs[1] +336 off = specs[2] +337 w = specs[3] +338 w2 = specs[4] +339 if "files" in kwargs: +340 if isinstance(kwargs.get("files"), list) and all(isinstance(f, str) for f in kwargs.get("files")): +341 name_ls = kwargs.get("files") +342 else: +343 raise TypeError("In append mode, files has to be of type list[str]!") +344 else: +345 name_ls = ls +346 for exc in name_ls: +347 if not fnmatch.fnmatch(exc, prefix + '*.' + name): +348 name_ls = list(set(name_ls) - set([exc])) +349 name_ls = sort_names(name_ls) +350 pattern = intern[name]['spec'][quarks][off][w][w2]['pattern'] +351 deltas = [] +352 for rep, file in enumerate(name_ls): +353 rep_idl = [] +354 filename = path + '/' + file +355 T, rep_idl, rep_data = _read_append_rep(filename, pattern, intern[name]['b2b'], cfg_separator, im, intern[name]['single']) +356 if rep == 0: +357 intern[name]['T'] = T +358 for t in range(intern[name]['T']): +359 deltas.append([]) +360 for t in range(intern[name]['T']): +361 deltas[t].append(rep_data[t]) +362 internal_ret_dict[key] = deltas +363 if name == name_list[0]: +364 idl.append(rep_idl) +365 +366 if kwargs.get("check_configs") is True: +367 if not silent: +368 print("Checking for missing configs...") +369 che = kwargs.get("check_configs") +370 if not (len(che) == len(idl)): +371 raise Exception("check_configs has to be the same length as replica!") +372 for r in range(len(idl)): +373 if not silent: +374 print("checking " + new_names[r]) +375 check_idl(idl[r], che[r]) +376 if not silent: +377 print("Done") +378 +379 result_dict = {} +380 if keyed_out: +381 for key in needed_keys: +382 name = _key2specs(key)[0] +383 result = [] +384 for t in range(intern[name]["T"]): +385 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +386 result_dict[key] = result +387 else: +388 for name, corr_type in zip(name_list, corr_type_list): +389 result_dict[name] = {} +390 for quarks in quarks_list: +391 result_dict[name][quarks] = {} +392 for off in noffset_list: +393 result_dict[name][quarks][off] = {} +394 for w in wf_list: +395 result_dict[name][quarks][off][w] = {} +396 if corr_type != 'bi': +397 for w2 in wf2_list: +398 key = _specs2key(name, quarks, off, w, w2) +399 result = [] +400 for t in range(intern[name]["T"]): +401 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +402 result_dict[name][quarks][str(off)][str(w)][str(w2)] = result +403 else: +404 key = _specs2key(name, quarks, off, w, "0") +405 result = [] +406 for t in range(intern[name]["T"]): +407 result.append(Obs(internal_ret_dict[key][t], new_names, idl=idl)) +408 result_dict[name][quarks][str(off)][str(w)][str(0)] = result +409 return result_dict
@@ -1321,6 +1323,8 @@
Parameters
  • check_configs (list[list[int]]): list of list of supposed configs, eg. [range(1,1000)] for one replicum with 1000 configs
  • +
  • rep_string (str): +Separator of ensemble name and replicum. Example: In "ensAr0", "r" would be the separator string.
  • Returns
    diff --git a/docs/pyerrors/input/utils.html b/docs/pyerrors/input/utils.html index c43bdbb0..9ef2d497 100644 --- a/docs/pyerrors/input/utils.html +++ b/docs/pyerrors/input/utils.html @@ -86,12 +86,12 @@

      1"""Utilities for the input"""
       2
    -  3import re
    -  4import fnmatch
    -  5import os
    +  3import re
    +  4import fnmatch
    +  5import os
       6
       7
    -  8def sort_names(ll):
    +  8def sort_names(ll):
       9    """Sorts a list of names of replika with searches for `r` and `id` in the replikum string.
      10    If this search fails, a fallback method is used,
      11    where the strings are simply compared and the first diffeing numeral is used for differentiation.
    @@ -138,7 +138,7 @@ 

    52 return ll 53 54 - 55def check_idl(idl, che): + 55def check_idl(idl, che): 56 """Checks if list of configurations is contained in an idl 57 58 Parameters @@ -168,7 +168,7 @@

    82 return miss_str 83 84 - 85def check_params(path, param_hash, prefix, param_prefix="parameters_"): + 85def check_params(path, param_hash, prefix, param_prefix="parameters_"): 86 """ 87 Check if, for sfcf, the parameter hashes at the end of the parameter files are in fact the expected one. 88 @@ -243,7 +243,7 @@

    -
     9def sort_names(ll):
    +            
     9def sort_names(ll):
     10    """Sorts a list of names of replika with searches for `r` and `id` in the replikum string.
     11    If this search fails, a fallback method is used,
     12    where the strings are simply compared and the first diffeing numeral is used for differentiation.
    @@ -323,7 +323,7 @@ 
    Returns
    -
    56def check_idl(idl, che):
    +            
    56def check_idl(idl, che):
     57    """Checks if list of configurations is contained in an idl
     58
     59    Parameters
    @@ -386,7 +386,7 @@ 
    Returns
    -
     86def check_params(path, param_hash, prefix, param_prefix="parameters_"):
    +            
     86def check_params(path, param_hash, prefix, param_prefix="parameters_"):
      87    """
      88    Check if, for sfcf, the parameter hashes at the end of the parameter files are in fact the expected one.
      89
    diff --git a/docs/pyerrors/integrate.html b/docs/pyerrors/integrate.html
    index 3962ac47..02cd8ba7 100644
    --- a/docs/pyerrors/integrate.html
    +++ b/docs/pyerrors/integrate.html
    @@ -76,13 +76,13 @@ 

    -
     1import numpy as np
    - 2from .obs import derived_observable, Obs
    - 3from autograd import jacobian
    - 4from scipy.integrate import quad as squad
    +                        
     1import numpy as np
    + 2from .obs import derived_observable, Obs
    + 3from autograd import jacobian
    + 4from scipy.integrate import quad as squad
      5
      6
    - 7def quad(func, p, a, b, **kwargs):
    + 7def quad(func, p, a, b, **kwargs):
      8    '''Performs a (one-dimensional) numeric integration of f(p, x) from a to b.
      9
     10    The integration is performed using scipy.integrate.quad().
    @@ -178,7 +178,7 @@ 

    -
     8def quad(func, p, a, b, **kwargs):
    +            
     8def quad(func, p, a, b, **kwargs):
      9    '''Performs a (one-dimensional) numeric integration of f(p, x) from a to b.
     10
     11    The integration is performed using scipy.integrate.quad().
    @@ -275,9 +275,9 @@ 
    Parameters
    function to integrate, has to be of the form

    -
    import autograd.numpy as anp
    +
    import autograd.numpy as anp
     
    -def func(p, x):
    +def func(p, x):
         return p[0] + p[1] * x + p[2] * anp.sinh(x)
     
    diff --git a/docs/pyerrors/linalg.html b/docs/pyerrors/linalg.html index 9a3966d0..d4d856a8 100644 --- a/docs/pyerrors/linalg.html +++ b/docs/pyerrors/linalg.html @@ -106,12 +106,12 @@

    -
      1import numpy as np
    -  2import autograd.numpy as anp  # Thinly-wrapped numpy
    -  3from .obs import derived_observable, CObs, Obs, import_jackknife
    +                        
      1import numpy as np
    +  2import autograd.numpy as anp  # Thinly-wrapped numpy
    +  3from .obs import derived_observable, CObs, Obs, import_jackknife
       4
       5
    -  6def matmul(*operands):
    +  6def matmul(*operands):
       7    """Matrix multiply all operands.
       8
       9    Parameters
    @@ -129,7 +129,7 @@ 

    21 extended_operands.append(tmp[0]) 22 extended_operands.append(tmp[1]) 23 - 24 def multi_dot(operands, part): + 24 def multi_dot(operands, part): 25 stack_r = operands[0] 26 stack_i = operands[1] 27 for op_r, op_i in zip(operands[2::2], operands[3::2]): @@ -144,10 +144,10 @@

    36 else: 37 return stack_i 38 - 39 def multi_dot_r(operands): + 39 def multi_dot_r(operands): 40 return multi_dot(operands, 'Real') 41 - 42 def multi_dot_i(operands): + 42 def multi_dot_i(operands): 43 return multi_dot(operands, 'Imag') 44 45 Nr = derived_observable(multi_dot_r, extended_operands, array_mode=True) @@ -159,7 +159,7 @@

    51 52 return res 53 else: - 54 def multi_dot(operands): + 54 def multi_dot(operands): 55 stack = operands[0] 56 for op in operands[1:]: 57 stack = stack @ op @@ -167,7 +167,7 @@

    59 return derived_observable(multi_dot, operands, array_mode=True) 60 61 - 62def jack_matmul(*operands): + 62def jack_matmul(*operands): 63 """Matrix multiply both operands making use of the jackknife approximation. 64 65 Parameters @@ -179,25 +179,25 @@

    71 For large matrices this is considerably faster compared to matmul. 72 """ 73 - 74 def _exp_to_jack(matrix): + 74 def _exp_to_jack(matrix): 75 base_matrix = np.empty_like(matrix) 76 for index, entry in np.ndenumerate(matrix): 77 base_matrix[index] = entry.export_jackknife() 78 return base_matrix 79 - 80 def _imp_from_jack(matrix, name, idl): + 80 def _imp_from_jack(matrix, name, idl): 81 base_matrix = np.empty_like(matrix) 82 for index, entry in np.ndenumerate(matrix): 83 base_matrix[index] = import_jackknife(entry, name, [idl]) 84 return base_matrix 85 - 86 def _exp_to_jack_c(matrix): + 86 def _exp_to_jack_c(matrix): 87 base_matrix = np.empty_like(matrix) 88 for index, entry in np.ndenumerate(matrix): 89 base_matrix[index] = entry.real.export_jackknife() + 1j * entry.imag.export_jackknife() 90 return base_matrix 91 - 92 def _imp_from_jack_c(matrix, name, idl): + 92 def _imp_from_jack_c(matrix, name, idl): 93 base_matrix = np.empty_like(matrix) 94 for index, entry in np.ndenumerate(matrix): 95 base_matrix[index] = CObs(import_jackknife(entry.real, name, [idl]), @@ -228,7 +228,7 @@

    120 return _imp_from_jack(r, name, idl) 121 122 -123def einsum(subscripts, *operands): +123def einsum(subscripts, *operands): 124 """Wrapper for numpy.einsum 125 126 Parameters @@ -240,25 +240,25 @@

    132 Obs valued. 133 """ 134 -135 def _exp_to_jack(matrix): +135 def _exp_to_jack(matrix): 136 base_matrix = [] 137 for index, entry in np.ndenumerate(matrix): 138 base_matrix.append(entry.export_jackknife()) 139 return np.asarray(base_matrix).reshape(matrix.shape + base_matrix[0].shape) 140 -141 def _exp_to_jack_c(matrix): +141 def _exp_to_jack_c(matrix): 142 base_matrix = [] 143 for index, entry in np.ndenumerate(matrix): 144 base_matrix.append(entry.real.export_jackknife() + 1j * entry.imag.export_jackknife()) 145 return np.asarray(base_matrix).reshape(matrix.shape + base_matrix[0].shape) 146 -147 def _imp_from_jack(matrix, name, idl): +147 def _imp_from_jack(matrix, name, idl): 148 base_matrix = np.empty(shape=matrix.shape[:-1], dtype=object) 149 for index in np.ndindex(matrix.shape[:-1]): 150 base_matrix[index] = import_jackknife(matrix[index], name, [idl]) 151 return base_matrix 152 -153 def _imp_from_jack_c(matrix, name, idl): +153 def _imp_from_jack_c(matrix, name, idl): 154 base_matrix = np.empty(shape=matrix.shape[:-1], dtype=object) 155 for index in np.ndindex(matrix.shape[:-1]): 156 base_matrix[index] = CObs(import_jackknife(matrix[index].real, name, [idl]), @@ -302,26 +302,26 @@

    194 return result 195 196 -197def inv(x): +197def inv(x): 198 """Inverse of Obs or CObs valued matrices.""" 199 return _mat_mat_op(anp.linalg.inv, x) 200 201 -202def cholesky(x): +202def cholesky(x): 203 """Cholesky decomposition of Obs valued matrices.""" 204 if any(isinstance(o, CObs) for o in x.ravel()): 205 raise Exception("Cholesky decomposition is not implemented for CObs.") 206 return _mat_mat_op(anp.linalg.cholesky, x) 207 208 -209def det(x): +209def det(x): 210 """Determinant of Obs valued matrices.""" 211 return _scalar_mat_op(anp.linalg.det, x) 212 213 -214def _scalar_mat_op(op, obs, **kwargs): +214def _scalar_mat_op(op, obs, **kwargs): 215 """Computes the matrix to scalar operation op to a given matrix of Obs.""" -216 def _mat(x, **kwargs): +216 def _mat(x, **kwargs): 217 dim = int(np.sqrt(len(x))) 218 219 mat = [] @@ -340,7 +340,7 @@

    232 return derived_observable(_mat, raveled_obs, **kwargs) 233 234 -235def _mat_mat_op(op, obs, **kwargs): +235def _mat_mat_op(op, obs, **kwargs): 236 """Computes the matrix to matrix operation op to a given matrix of Obs.""" 237 # Use real representation to calculate matrix operations for complex matrices 238 if any(isinstance(o, CObs) for o in obs.ravel()): @@ -366,31 +366,31 @@

    258 return derived_observable(lambda x, **kwargs: op(x), [obs], array_mode=True)[0] 259 260 -261def eigh(obs, **kwargs): +261def eigh(obs, **kwargs): 262 """Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.""" 263 w = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[0], obs) 264 v = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[1], obs) 265 return w, v 266 267 -268def eig(obs, **kwargs): +268def eig(obs, **kwargs): 269 """Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig.""" 270 w = derived_observable(lambda x, **kwargs: anp.real(anp.linalg.eig(x)[0]), obs) 271 return w 272 273 -274def eigv(obs, **kwargs): +274def eigv(obs, **kwargs): 275 """Computes the eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.""" 276 v = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[1], obs) 277 return v 278 279 -280def pinv(obs, **kwargs): +280def pinv(obs, **kwargs): 281 """Computes the Moore-Penrose pseudoinverse of a matrix of Obs.""" 282 return derived_observable(lambda x, **kwargs: anp.linalg.pinv(x), obs) 283 284 -285def svd(obs, **kwargs): +285def svd(obs, **kwargs): 286 """Computes the singular value decomposition of a matrix of Obs.""" 287 u = derived_observable(lambda x, **kwargs: anp.linalg.svd(x, full_matrices=False)[0], obs) 288 s = derived_observable(lambda x, **kwargs: anp.linalg.svd(x, full_matrices=False)[1], obs) @@ -411,7 +411,7 @@

    -
     7def matmul(*operands):
    +            
     7def matmul(*operands):
      8    """Matrix multiply all operands.
      9
     10    Parameters
    @@ -429,7 +429,7 @@ 

    22 extended_operands.append(tmp[0]) 23 extended_operands.append(tmp[1]) 24 -25 def multi_dot(operands, part): +25 def multi_dot(operands, part): 26 stack_r = operands[0] 27 stack_i = operands[1] 28 for op_r, op_i in zip(operands[2::2], operands[3::2]): @@ -444,10 +444,10 @@

    37 else: 38 return stack_i 39 -40 def multi_dot_r(operands): +40 def multi_dot_r(operands): 41 return multi_dot(operands, 'Real') 42 -43 def multi_dot_i(operands): +43 def multi_dot_i(operands): 44 return multi_dot(operands, 'Imag') 45 46 Nr = derived_observable(multi_dot_r, extended_operands, array_mode=True) @@ -459,7 +459,7 @@

    52 53 return res 54 else: -55 def multi_dot(operands): +55 def multi_dot(operands): 56 stack = operands[0] 57 for op in operands[1:]: 58 stack = stack @ op @@ -493,7 +493,7 @@
    Parameters

    -
     63def jack_matmul(*operands):
    +            
     63def jack_matmul(*operands):
      64    """Matrix multiply both operands making use of the jackknife approximation.
      65
      66    Parameters
    @@ -505,25 +505,25 @@ 
    Parameters
    72 For large matrices this is considerably faster compared to matmul. 73 """ 74 - 75 def _exp_to_jack(matrix): + 75 def _exp_to_jack(matrix): 76 base_matrix = np.empty_like(matrix) 77 for index, entry in np.ndenumerate(matrix): 78 base_matrix[index] = entry.export_jackknife() 79 return base_matrix 80 - 81 def _imp_from_jack(matrix, name, idl): + 81 def _imp_from_jack(matrix, name, idl): 82 base_matrix = np.empty_like(matrix) 83 for index, entry in np.ndenumerate(matrix): 84 base_matrix[index] = import_jackknife(entry, name, [idl]) 85 return base_matrix 86 - 87 def _exp_to_jack_c(matrix): + 87 def _exp_to_jack_c(matrix): 88 base_matrix = np.empty_like(matrix) 89 for index, entry in np.ndenumerate(matrix): 90 base_matrix[index] = entry.real.export_jackknife() + 1j * entry.imag.export_jackknife() 91 return base_matrix 92 - 93 def _imp_from_jack_c(matrix, name, idl): + 93 def _imp_from_jack_c(matrix, name, idl): 94 base_matrix = np.empty_like(matrix) 95 for index, entry in np.ndenumerate(matrix): 96 base_matrix[index] = CObs(import_jackknife(entry.real, name, [idl]), @@ -580,7 +580,7 @@
    Parameters
    -
    124def einsum(subscripts, *operands):
    +            
    124def einsum(subscripts, *operands):
     125    """Wrapper for numpy.einsum
     126
     127    Parameters
    @@ -592,25 +592,25 @@ 
    Parameters
    133 Obs valued. 134 """ 135 -136 def _exp_to_jack(matrix): +136 def _exp_to_jack(matrix): 137 base_matrix = [] 138 for index, entry in np.ndenumerate(matrix): 139 base_matrix.append(entry.export_jackknife()) 140 return np.asarray(base_matrix).reshape(matrix.shape + base_matrix[0].shape) 141 -142 def _exp_to_jack_c(matrix): +142 def _exp_to_jack_c(matrix): 143 base_matrix = [] 144 for index, entry in np.ndenumerate(matrix): 145 base_matrix.append(entry.real.export_jackknife() + 1j * entry.imag.export_jackknife()) 146 return np.asarray(base_matrix).reshape(matrix.shape + base_matrix[0].shape) 147 -148 def _imp_from_jack(matrix, name, idl): +148 def _imp_from_jack(matrix, name, idl): 149 base_matrix = np.empty(shape=matrix.shape[:-1], dtype=object) 150 for index in np.ndindex(matrix.shape[:-1]): 151 base_matrix[index] = import_jackknife(matrix[index], name, [idl]) 152 return base_matrix 153 -154 def _imp_from_jack_c(matrix, name, idl): +154 def _imp_from_jack_c(matrix, name, idl): 155 base_matrix = np.empty(shape=matrix.shape[:-1], dtype=object) 156 for index in np.ndindex(matrix.shape[:-1]): 157 base_matrix[index] = CObs(import_jackknife(matrix[index].real, name, [idl]), @@ -681,7 +681,7 @@
    Parameters
    -
    198def inv(x):
    +            
    198def inv(x):
     199    """Inverse of Obs or CObs valued matrices."""
     200    return _mat_mat_op(anp.linalg.inv, x)
     
    @@ -703,7 +703,7 @@
    Parameters
    -
    203def cholesky(x):
    +            
    203def cholesky(x):
     204    """Cholesky decomposition of Obs valued matrices."""
     205    if any(isinstance(o, CObs) for o in x.ravel()):
     206        raise Exception("Cholesky decomposition is not implemented for CObs.")
    @@ -727,7 +727,7 @@ 
    Parameters
    -
    210def det(x):
    +            
    210def det(x):
     211    """Determinant of Obs valued matrices."""
     212    return _scalar_mat_op(anp.linalg.det, x)
     
    @@ -749,7 +749,7 @@
    Parameters
    -
    262def eigh(obs, **kwargs):
    +            
    262def eigh(obs, **kwargs):
     263    """Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh."""
     264    w = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[0], obs)
     265    v = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[1], obs)
    @@ -773,7 +773,7 @@ 
    Parameters
    -
    269def eig(obs, **kwargs):
    +            
    269def eig(obs, **kwargs):
     270    """Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig."""
     271    w = derived_observable(lambda x, **kwargs: anp.real(anp.linalg.eig(x)[0]), obs)
     272    return w
    @@ -796,7 +796,7 @@ 
    Parameters
    -
    275def eigv(obs, **kwargs):
    +            
    275def eigv(obs, **kwargs):
     276    """Computes the eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh."""
     277    v = derived_observable(lambda x, **kwargs: anp.linalg.eigh(x)[1], obs)
     278    return v
    @@ -819,7 +819,7 @@ 
    Parameters
    -
    281def pinv(obs, **kwargs):
    +            
    281def pinv(obs, **kwargs):
     282    """Computes the Moore-Penrose pseudoinverse of a matrix of Obs."""
     283    return derived_observable(lambda x, **kwargs: anp.linalg.pinv(x), obs)
     
    @@ -841,7 +841,7 @@
    Parameters
    -
    286def svd(obs, **kwargs):
    +            
    286def svd(obs, **kwargs):
     287    """Computes the singular value decomposition of a matrix of Obs."""
     288    u = derived_observable(lambda x, **kwargs: anp.linalg.svd(x, full_matrices=False)[0], obs)
     289    s = derived_observable(lambda x, **kwargs: anp.linalg.svd(x, full_matrices=False)[1], obs)
    diff --git a/docs/pyerrors/misc.html b/docs/pyerrors/misc.html
    index 3dbc5e50..668a9ac8 100644
    --- a/docs/pyerrors/misc.html
    +++ b/docs/pyerrors/misc.html
    @@ -91,18 +91,18 @@ 

    -
      1import platform
    -  2import numpy as np
    -  3import scipy
    -  4import matplotlib
    -  5import matplotlib.pyplot as plt
    -  6import pandas as pd
    -  7import pickle
    -  8from .obs import Obs
    -  9from .version import __version__
    +                        
      1import platform
    +  2import numpy as np
    +  3import scipy
    +  4import matplotlib
    +  5import matplotlib.pyplot as plt
    +  6import pandas as pd
    +  7import pickle
    +  8from .obs import Obs
    +  9from .version import __version__
      10
      11
    - 12def print_config():
    + 12def print_config():
      13    """Print information about version of python, pyerrors and dependencies."""
      14    config = {"system": platform.system(),
      15              "python": platform.python_version(),
    @@ -116,7 +116,7 @@ 

    23 print(f"{key: <10}\t {value}") 24 25 - 26def errorbar(x, y, axes=plt, **kwargs): + 26def errorbar(x, y, axes=plt, **kwargs): 27 """pyerrors wrapper for the errorbars method of matplotlib 28 29 Parameters @@ -147,7 +147,7 @@

    54 axes.errorbar(val["x"], val["y"], xerr=err["x"], yerr=err["y"], **kwargs) 55 56 - 57def dump_object(obj, name, **kwargs): + 57def dump_object(obj, name, **kwargs): 58 """Dump object into pickle file. 59 60 Parameters @@ -171,7 +171,7 @@

    78 pickle.dump(obj, fb) 79 80 - 81def load_object(path): + 81def load_object(path): 82 """Load object from pickle file. 83 84 Parameters @@ -188,7 +188,7 @@

    95 return pickle.load(file) 96 97 - 98def pseudo_Obs(value, dvalue, name, samples=1000): + 98def pseudo_Obs(value, dvalue, name, samples=1000): 99 """Generate an Obs object with given value, dvalue and name for test purposes 100 101 Parameters @@ -225,7 +225,7 @@

    132 return res 133 134 -135def gen_correlated_data(means, cov, name, tau=0.5, samples=1000): +135def gen_correlated_data(means, cov, name, tau=0.5, samples=1000): 136 """ Generate observables with given covariance and autocorrelation times. 137 138 Parameters @@ -267,7 +267,7 @@

    174 return [Obs([dat], [name]) for dat in corr_data.T] 175 176 -177def _assert_equal_properties(ol, otype=Obs): +177def _assert_equal_properties(ol, otype=Obs): 178 otype = type(ol[0]) 179 for o in ol[1:]: 180 if not isinstance(o, otype): @@ -291,7 +291,7 @@

    -
    13def print_config():
    +            
    13def print_config():
     14    """Print information about version of python, pyerrors and dependencies."""
     15    config = {"system": platform.system(),
     16              "python": platform.python_version(),
    @@ -316,13 +316,13 @@ 

    def - errorbar( x, y, axes=<module 'matplotlib.pyplot' from '/opt/hostedtoolcache/Python/3.10.15/x64/lib/python3.10/site-packages/matplotlib/pyplot.py'>, **kwargs): + errorbar( x, y, axes=<module 'matplotlib.pyplot' from '/opt/hostedtoolcache/Python/3.10.15/x64/lib/python3.10/site-packages/matplotlib/pyplot.py'>, **kwargs):
    -
    27def errorbar(x, y, axes=plt, **kwargs):
    +            
    27def errorbar(x, y, axes=plt, **kwargs):
     28    """pyerrors wrapper for the errorbars method of matplotlib
     29
     30    Parameters
    @@ -381,7 +381,7 @@ 
    Parameters
    -
    58def dump_object(obj, name, **kwargs):
    +            
    58def dump_object(obj, name, **kwargs):
     59    """Dump object into pickle file.
     60
     61    Parameters
    @@ -439,7 +439,7 @@ 
    Returns
    -
    82def load_object(path):
    +            
    82def load_object(path):
     83    """Load object from pickle file.
     84
     85    Parameters
    @@ -487,7 +487,7 @@ 
    Returns
    -
     99def pseudo_Obs(value, dvalue, name, samples=1000):
    +            
     99def pseudo_Obs(value, dvalue, name, samples=1000):
     100    """Generate an Obs object with given value, dvalue and name for test purposes
     101
     102    Parameters
    @@ -561,7 +561,7 @@ 
    Returns
    -
    136def gen_correlated_data(means, cov, name, tau=0.5, samples=1000):
    +            
    136def gen_correlated_data(means, cov, name, tau=0.5, samples=1000):
     137    """ Generate observables with given covariance and autocorrelation times.
     138
     139    Parameters
    diff --git a/docs/pyerrors/mpm.html b/docs/pyerrors/mpm.html
    index 1d034251..61928057 100644
    --- a/docs/pyerrors/mpm.html
    +++ b/docs/pyerrors/mpm.html
    @@ -76,13 +76,13 @@ 

    -
     1import numpy as np
    - 2import scipy.linalg
    - 3from .obs import Obs
    - 4from .linalg import svd, eig
    +                        
     1import numpy as np
    + 2import scipy.linalg
    + 3from .obs import Obs
    + 4from .linalg import svd, eig
      5
      6
    - 7def matrix_pencil_method(corrs, k=1, p=None, **kwargs):
    + 7def matrix_pencil_method(corrs, k=1, p=None, **kwargs):
      8    """Matrix pencil method to extract k energy levels from data
      9
     10    Implementation of the matrix pencil method based on
    @@ -154,7 +154,7 @@ 

    -
     8def matrix_pencil_method(corrs, k=1, p=None, **kwargs):
    +            
     8def matrix_pencil_method(corrs, k=1, p=None, **kwargs):
      9    """Matrix pencil method to extract k energy levels from data
     10
     11    Implementation of the matrix pencil method based on
    diff --git a/docs/pyerrors/obs.html b/docs/pyerrors/obs.html
    index cebdb983..5bfeabaf 100644
    --- a/docs/pyerrors/obs.html
    +++ b/docs/pyerrors/obs.html
    @@ -334,24 +334,24 @@ 

    -
       1import warnings
    -   2import hashlib
    -   3import pickle
    -   4import numpy as np
    -   5import autograd.numpy as anp  # Thinly-wrapped numpy
    -   6import scipy
    -   7from autograd import jacobian
    -   8import matplotlib.pyplot as plt
    -   9from scipy.stats import skew, skewtest, kurtosis, kurtosistest
    -  10import numdifftools as nd
    -  11from itertools import groupby
    -  12from .covobs import Covobs
    +                        
       1import warnings
    +   2import hashlib
    +   3import pickle
    +   4import numpy as np
    +   5import autograd.numpy as anp  # Thinly-wrapped numpy
    +   6import scipy
    +   7from autograd import jacobian
    +   8import matplotlib.pyplot as plt
    +   9from scipy.stats import skew, skewtest, kurtosis, kurtosistest
    +  10import numdifftools as nd
    +  11from itertools import groupby
    +  12from .covobs import Covobs
       13
       14# Improve print output of numpy.ndarrays containing Obs objects.
       15np.set_printoptions(formatter={'object': lambda x: str(x)})
       16
       17
    -  18class Obs:
    +  18class Obs:
       19    """Class for a general observable.
       20
       21    Instances of Obs are the basic objects of a pyerrors error analysis.
    @@ -393,7 +393,7 @@ 

    57 N_sigma_global = 1.0 58 N_sigma_dict = {} 59 - 60 def __init__(self, samples, names, idl=None, **kwargs): + 60 def __init__(self, samples, names, idl=None, **kwargs): 61 """ Initialize Obs object. 62 63 Parameters @@ -477,27 +477,27 @@

    141 self.tag = None 142 143 @property - 144 def value(self): + 144 def value(self): 145 return self._value 146 147 @property - 148 def dvalue(self): + 148 def dvalue(self): 149 return self._dvalue 150 151 @property - 152 def e_names(self): + 152 def e_names(self): 153 return sorted(set([o.split('|')[0] for o in self.names])) 154 155 @property - 156 def cov_names(self): + 156 def cov_names(self): 157 return sorted(set([o for o in self.covobs.keys()])) 158 159 @property - 160 def mc_names(self): + 160 def mc_names(self): 161 return sorted(set([o.split('|')[0] for o in self.names if o not in self.cov_names])) 162 163 @property - 164 def e_content(self): + 164 def e_content(self): 165 res = {} 166 for e, e_name in enumerate(self.e_names): 167 res[e_name] = sorted(filter(lambda x: x.startswith(e_name + '|'), self.names)) @@ -506,10 +506,10 @@

    170 return res 171 172 @property - 173 def covobs(self): + 173 def covobs(self): 174 return self._covobs 175 - 176 def gamma_method(self, **kwargs): + 176 def gamma_method(self, **kwargs): 177 """Estimate the error and related properties of the Obs. 178 179 Parameters @@ -553,7 +553,7 @@

    217 else: 218 fft = True 219 - 220 def _parse_kwarg(kwarg_name): + 220 def _parse_kwarg(kwarg_name): 221 if kwarg_name in kwargs: 222 tmp = kwargs.get(kwarg_name) 223 if isinstance(tmp, (int, float)): @@ -615,7 +615,7 @@

    279 self.e_n_dtauint[e_name] = self.e_n_tauint[e_name] * 2 * np.sqrt(np.abs(np.arange(w_max) + 0.5 - self.e_n_tauint[e_name]) / e_N) 280 self.e_n_dtauint[e_name][0] = 0.0 281 - 282 def _compute_drho(i): + 282 def _compute_drho(i): 283 tmp = (self.e_rho[e_name][i + 1:w_max] 284 + np.concatenate([self.e_rho[e_name][i - 1:None if i - (w_max - 1) // 2 <= 0 else (2 * i - (2 * w_max) // 2):-1], 285 self.e_rho[e_name][1:max(1, w_max - 2 * i)]]) @@ -677,7 +677,7 @@

    341 342 gm = gamma_method 343 - 344 def _calc_gamma(self, deltas, idx, shape, w_max, fft, gapsize): + 344 def _calc_gamma(self, deltas, idx, shape, w_max, fft, gapsize): 345 """Calculate Gamma_{AA} from the deltas, which are defined on idx. 346 idx is assumed to be a contiguous range (possibly with a stepsize != 1) 347 @@ -713,7 +713,7 @@

    377 378 return gamma 379 - 380 def details(self, ens_content=True): + 380 def details(self, ens_content=True): 381 """Output detailed properties of the Obs. 382 383 Parameters @@ -782,7 +782,7 @@

    446 my_string_list.append(my_string) 447 print('\n'.join(my_string_list)) 448 - 449 def reweight(self, weight): + 449 def reweight(self, weight): 450 """Reweight the obs with given rewighting factors. 451 452 Parameters @@ -797,7 +797,7 @@

    461 """ 462 return reweight(weight, [self])[0] 463 - 464 def is_zero_within_error(self, sigma=1): + 464 def is_zero_within_error(self, sigma=1): 465 """Checks whether the observable is zero within 'sigma' standard errors. 466 467 Parameters @@ -809,7 +809,7 @@

    473 """ 474 return self.is_zero() or np.abs(self.value) <= sigma * self._dvalue 475 - 476 def is_zero(self, atol=1e-10): + 476 def is_zero(self, atol=1e-10): 477 """Checks whether the observable is zero within a given tolerance. 478 479 Parameters @@ -819,7 +819,7 @@

    483 """ 484 return np.isclose(0.0, self.value, 1e-14, atol) and all(np.allclose(0.0, delta, 1e-14, atol) for delta in self.deltas.values()) and all(np.allclose(0.0, delta.errsq(), 1e-14, atol) for delta in self.covobs.values()) 485 - 486 def plot_tauint(self, save=None): + 486 def plot_tauint(self, save=None): 487 """Plot integrated autocorrelation time for each ensemble. 488 489 Parameters @@ -859,7 +859,7 @@

    523 if save: 524 fig.savefig(save + "_" + str(e)) 525 - 526 def plot_rho(self, save=None): + 526 def plot_rho(self, save=None): 527 """Plot normalized autocorrelation function time for each ensemble. 528 529 Parameters @@ -890,7 +890,7 @@

    554 if save: 555 fig.savefig(save + "_" + str(e)) 556 - 557 def plot_rep_dist(self): + 557 def plot_rep_dist(self): 558 """Plot replica distribution for each ensemble with more than one replicum.""" 559 if not hasattr(self, 'e_dvalue'): 560 raise Exception('Run the gamma method first.') @@ -912,7 +912,7 @@

    576 plt.title('Replica distribution' + e_name + ' (mean=0, var=1)') 577 plt.draw() 578 - 579 def plot_history(self, expand=True): + 579 def plot_history(self, expand=True): 580 """Plot derived Monte Carlo history for each ensemble 581 582 Parameters @@ -944,7 +944,7 @@

    608 plt.title(e_name + f'\nskew: {skew(y_test):.3f} (p={skewtest(y_test).pvalue:.3f}), kurtosis: {kurtosis(y_test):.3f} (p={kurtosistest(y_test).pvalue:.3f})') 609 plt.draw() 610 - 611 def plot_piechart(self, save=None): + 611 def plot_piechart(self, save=None): 612 """Plot piechart which shows the fractional contribution of each 613 ensemble to the error and returns a dictionary containing the fractions. 614 @@ -968,7 +968,7 @@

    632 633 return dict(zip(labels, sizes)) 634 - 635 def dump(self, filename, datatype="json.gz", description="", **kwargs): + 635 def dump(self, filename, datatype="json.gz", description="", **kwargs): 636 """Dump the Obs to a file 'name' of chosen format. 637 638 Parameters @@ -989,7 +989,7 @@

    653 file_name = filename 654 655 if datatype == "json.gz": - 656 from .input.json import dump_to_json + 656 from .input.json import dump_to_json 657 dump_to_json([self], file_name, description=description) 658 elif datatype == "pickle": 659 with open(file_name + '.p', 'wb') as fb: @@ -997,7 +997,7 @@

    661 else: 662 raise TypeError("Unknown datatype " + str(datatype)) 663 - 664 def export_jackknife(self): + 664 def export_jackknife(self): 665 """Export jackknife samples from the Obs 666 667 Returns @@ -1023,7 +1023,7 @@

    687 tmp_jacks[1:] = (n * mean - full_data) / (n - 1) 688 return tmp_jacks 689 - 690 def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None): + 690 def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None): 691 """Export bootstrap samples from the Obs 692 693 Parameters @@ -1066,16 +1066,16 @@

    730 ret[1:] = proj @ (self.deltas[name] + self.r_values[name]) 731 return ret 732 - 733 def __float__(self): + 733 def __float__(self): 734 return float(self.value) 735 - 736 def __repr__(self): + 736 def __repr__(self): 737 return 'Obs[' + str(self) + ']' 738 - 739 def __str__(self): + 739 def __str__(self): 740 return _format_uncertainty(self.value, self._dvalue) 741 - 742 def __format__(self, format_type): + 742 def __format__(self, format_type): 743 if format_type == "": 744 significance = 2 745 else: @@ -1088,7 +1088,7 @@

    752 my_str = char + my_str 753 return my_str 754 - 755 def __hash__(self): + 755 def __hash__(self): 756 hash_tuple = (np.array([self.value]).astype(np.float32).data.tobytes(),) 757 hash_tuple += tuple([o.astype(np.float32).data.tobytes() for o in self.deltas.values()]) 758 hash_tuple += tuple([np.array([o.errsq()]).astype(np.float32).data.tobytes() for o in self.covobs.values()]) @@ -1098,25 +1098,25 @@

    762 return int(m.hexdigest(), 16) & 0xFFFFFFFF 763 764 # Overload comparisons - 765 def __lt__(self, other): + 765 def __lt__(self, other): 766 return self.value < other 767 - 768 def __le__(self, other): + 768 def __le__(self, other): 769 return self.value <= other 770 - 771 def __gt__(self, other): + 771 def __gt__(self, other): 772 return self.value > other 773 - 774 def __ge__(self, other): + 774 def __ge__(self, other): 775 return self.value >= other 776 - 777 def __eq__(self, other): + 777 def __eq__(self, other): 778 if other is None: 779 return False 780 return (self - other).is_zero() 781 782 # Overload math operations - 783 def __add__(self, y): + 783 def __add__(self, y): 784 if isinstance(y, Obs): 785 return derived_observable(lambda x, **kwargs: x[0] + x[1], [self, y], man_grad=[1, 1]) 786 else: @@ -1129,10 +1129,10 @@

    793 else: 794 return derived_observable(lambda x, **kwargs: x[0] + y, [self], man_grad=[1]) 795 - 796 def __radd__(self, y): + 796 def __radd__(self, y): 797 return self + y 798 - 799 def __mul__(self, y): + 799 def __mul__(self, y): 800 if isinstance(y, Obs): 801 return derived_observable(lambda x, **kwargs: x[0] * x[1], [self, y], man_grad=[y.value, self.value]) 802 else: @@ -1145,10 +1145,10 @@

    809 else: 810 return derived_observable(lambda x, **kwargs: x[0] * y, [self], man_grad=[y]) 811 - 812 def __rmul__(self, y): + 812 def __rmul__(self, y): 813 return self * y 814 - 815 def __sub__(self, y): + 815 def __sub__(self, y): 816 if isinstance(y, Obs): 817 return derived_observable(lambda x, **kwargs: x[0] - x[1], [self, y], man_grad=[1, -1]) 818 else: @@ -1159,16 +1159,16 @@

    823 else: 824 return derived_observable(lambda x, **kwargs: x[0] - y, [self], man_grad=[1]) 825 - 826 def __rsub__(self, y): + 826 def __rsub__(self, y): 827 return -1 * (self - y) 828 - 829 def __pos__(self): + 829 def __pos__(self): 830 return self 831 - 832 def __neg__(self): + 832 def __neg__(self): 833 return -1 * self 834 - 835 def __truediv__(self, y): + 835 def __truediv__(self, y): 836 if isinstance(y, Obs): 837 return derived_observable(lambda x, **kwargs: x[0] / x[1], [self, y], man_grad=[1 / y.value, - self.value / y.value ** 2]) 838 else: @@ -1179,7 +1179,7 @@

    843 else: 844 return derived_observable(lambda x, **kwargs: x[0] / y, [self], man_grad=[1 / y]) 845 - 846 def __rtruediv__(self, y): + 846 def __rtruediv__(self, y): 847 if isinstance(y, Obs): 848 return derived_observable(lambda x, **kwargs: x[0] / x[1], [y, self], man_grad=[1 / self.value, - y.value / self.value ** 2]) 849 else: @@ -1190,97 +1190,97 @@

    854 else: 855 return derived_observable(lambda x, **kwargs: y / x[0], [self], man_grad=[-y / self.value ** 2]) 856 - 857 def __pow__(self, y): + 857 def __pow__(self, y): 858 if isinstance(y, Obs): 859 return derived_observable(lambda x, **kwargs: x[0] ** x[1], [self, y], man_grad=[y.value * self.value ** (y.value - 1), self.value ** y.value * np.log(self.value)]) 860 else: 861 return derived_observable(lambda x, **kwargs: x[0] ** y, [self], man_grad=[y * self.value ** (y - 1)]) 862 - 863 def __rpow__(self, y): + 863 def __rpow__(self, y): 864 return derived_observable(lambda x, **kwargs: y ** x[0], [self], man_grad=[y ** self.value * np.log(y)]) 865 - 866 def __abs__(self): + 866 def __abs__(self): 867 return derived_observable(lambda x: anp.abs(x[0]), [self]) 868 869 # Overload numpy functions - 870 def sqrt(self): + 870 def sqrt(self): 871 return derived_observable(lambda x, **kwargs: np.sqrt(x[0]), [self], man_grad=[1 / 2 / np.sqrt(self.value)]) 872 - 873 def log(self): + 873 def log(self): 874 return derived_observable(lambda x, **kwargs: np.log(x[0]), [self], man_grad=[1 / self.value]) 875 - 876 def exp(self): + 876 def exp(self): 877 return derived_observable(lambda x, **kwargs: np.exp(x[0]), [self], man_grad=[np.exp(self.value)]) 878 - 879 def sin(self): + 879 def sin(self): 880 return derived_observable(lambda x, **kwargs: np.sin(x[0]), [self], man_grad=[np.cos(self.value)]) 881 - 882 def cos(self): + 882 def cos(self): 883 return derived_observable(lambda x, **kwargs: np.cos(x[0]), [self], man_grad=[-np.sin(self.value)]) 884 - 885 def tan(self): + 885 def tan(self): 886 return derived_observable(lambda x, **kwargs: np.tan(x[0]), [self], man_grad=[1 / np.cos(self.value) ** 2]) 887 - 888 def arcsin(self): + 888 def arcsin(self): 889 return derived_observable(lambda x: anp.arcsin(x[0]), [self]) 890 - 891 def arccos(self): + 891 def arccos(self): 892 return derived_observable(lambda x: anp.arccos(x[0]), [self]) 893 - 894 def arctan(self): + 894 def arctan(self): 895 return derived_observable(lambda x: anp.arctan(x[0]), [self]) 896 - 897 def sinh(self): + 897 def sinh(self): 898 return derived_observable(lambda x, **kwargs: np.sinh(x[0]), [self], man_grad=[np.cosh(self.value)]) 899 - 900 def cosh(self): + 900 def cosh(self): 901 return derived_observable(lambda x, **kwargs: np.cosh(x[0]), [self], man_grad=[np.sinh(self.value)]) 902 - 903 def tanh(self): + 903 def tanh(self): 904 return derived_observable(lambda x, **kwargs: np.tanh(x[0]), [self], man_grad=[1 / np.cosh(self.value) ** 2]) 905 - 906 def arcsinh(self): + 906 def arcsinh(self): 907 return derived_observable(lambda x: anp.arcsinh(x[0]), [self]) 908 - 909 def arccosh(self): + 909 def arccosh(self): 910 return derived_observable(lambda x: anp.arccosh(x[0]), [self]) 911 - 912 def arctanh(self): + 912 def arctanh(self): 913 return derived_observable(lambda x: anp.arctanh(x[0]), [self]) 914 915 - 916class CObs: + 916class CObs: 917 """Class for a complex valued observable.""" 918 __slots__ = ['_real', '_imag', 'tag'] 919 - 920 def __init__(self, real, imag=0.0): + 920 def __init__(self, real, imag=0.0): 921 self._real = real 922 self._imag = imag 923 self.tag = None 924 925 @property - 926 def real(self): + 926 def real(self): 927 return self._real 928 929 @property - 930 def imag(self): + 930 def imag(self): 931 return self._imag 932 - 933 def gamma_method(self, **kwargs): + 933 def gamma_method(self, **kwargs): 934 """Executes the gamma_method for the real and the imaginary part.""" 935 if isinstance(self.real, Obs): 936 self.real.gamma_method(**kwargs) 937 if isinstance(self.imag, Obs): 938 self.imag.gamma_method(**kwargs) 939 - 940 def is_zero(self): + 940 def is_zero(self): 941 """Checks whether both real and imaginary part are zero within machine precision.""" 942 return self.real == 0.0 and self.imag == 0.0 943 - 944 def conjugate(self): + 944 def conjugate(self): 945 return CObs(self.real, -self.imag) 946 - 947 def __add__(self, other): + 947 def __add__(self, other): 948 if isinstance(other, np.ndarray): 949 return other + self 950 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -1289,10 +1289,10 @@

    953 else: 954 return CObs(self.real + other, self.imag) 955 - 956 def __radd__(self, y): + 956 def __radd__(self, y): 957 return self + y 958 - 959 def __sub__(self, other): + 959 def __sub__(self, other): 960 if isinstance(other, np.ndarray): 961 return -1 * (other - self) 962 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -1300,10 +1300,10 @@

    964 else: 965 return CObs(self.real - other, self.imag) 966 - 967 def __rsub__(self, other): + 967 def __rsub__(self, other): 968 return -1 * (self - other) 969 - 970 def __mul__(self, other): + 970 def __mul__(self, other): 971 if isinstance(other, np.ndarray): 972 return other * self 973 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -1322,10 +1322,10 @@

    986 else: 987 return CObs(self.real * other, self.imag * other) 988 - 989 def __rmul__(self, other): + 989 def __rmul__(self, other): 990 return self * other 991 - 992 def __truediv__(self, other): + 992 def __truediv__(self, other): 993 if isinstance(other, np.ndarray): 994 return 1 / (other / self) 995 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -1334,32 +1334,32 @@

    998 else: 999 return CObs(self.real / other, self.imag / other) 1000 -1001 def __rtruediv__(self, other): +1001 def __rtruediv__(self, other): 1002 r = self.real ** 2 + self.imag ** 2 1003 if hasattr(other, 'real') and hasattr(other, 'imag'): 1004 return CObs((self.real * other.real + self.imag * other.imag) / r, (self.real * other.imag - self.imag * other.real) / r) 1005 else: 1006 return CObs(self.real * other / r, -self.imag * other / r) 1007 -1008 def __abs__(self): +1008 def __abs__(self): 1009 return np.sqrt(self.real**2 + self.imag**2) 1010 -1011 def __pos__(self): +1011 def __pos__(self): 1012 return self 1013 -1014 def __neg__(self): +1014 def __neg__(self): 1015 return -1 * self 1016 -1017 def __eq__(self, other): +1017 def __eq__(self, other): 1018 return self.real == other.real and self.imag == other.imag 1019 -1020 def __str__(self): +1020 def __str__(self): 1021 return '(' + str(self.real) + int(self.imag >= 0.0) * '+' + str(self.imag) + 'j)' 1022 -1023 def __repr__(self): +1023 def __repr__(self): 1024 return 'CObs[' + str(self) + ']' 1025 -1026 def __format__(self, format_type): +1026 def __format__(self, format_type): 1027 if format_type == "": 1028 significance = 2 1029 format_type = "2" @@ -1368,7 +1368,7 @@

    1032 return f"({self.real:{format_type}}{self.imag:+{significance}}j)" 1033 1034 -1035def gamma_method(x, **kwargs): +1035def gamma_method(x, **kwargs): 1036 """Vectorized version of the gamma_method applicable to lists or arrays of Obs. 1037 1038 See docstring of pe.Obs.gamma_method for details. @@ -1379,7 +1379,7 @@

    1043gm = gamma_method 1044 1045 -1046def _format_uncertainty(value, dvalue, significance=2): +1046def _format_uncertainty(value, dvalue, significance=2): 1047 """Creates a string of a value and its error in paranthesis notation, e.g., 13.02(45)""" 1048 if dvalue == 0.0 or (not np.isfinite(dvalue)): 1049 return str(value) @@ -1396,7 +1396,7 @@

    1060 return f"{value:.{max(0, int(significance - fexp - 1))}f}({dvalue:2.{max(0, int(significance - fexp - 1))}f})" 1061 1062 -1063def _expand_deltas(deltas, idx, shape, gapsize): +1063def _expand_deltas(deltas, idx, shape, gapsize): 1064 """Expand deltas defined on idx to a regular range with spacing gapsize between two 1065 configurations and where holes are filled by 0. 1066 If idx is of type range, the deltas are not changed if the idx.step == gapsize. @@ -1422,7 +1422,7 @@

    1086 return ret 1087 1088 -1089def _merge_idx(idl): +1089def _merge_idx(idl): 1090 """Returns the union of all lists in idl as range or sorted list 1091 1092 Parameters @@ -1445,7 +1445,7 @@

    1109 return idunion 1110 1111 -1112def _intersection_idx(idl): +1112def _intersection_idx(idl): 1113 """Returns the intersection of all lists in idl as range or sorted list 1114 1115 Parameters @@ -1471,7 +1471,7 @@

    1135 return idinter 1136 1137 -1138def _expand_deltas_for_merge(deltas, idx, shape, new_idx, scalefactor): +1138def _expand_deltas_for_merge(deltas, idx, shape, new_idx, scalefactor): 1139 """Expand deltas defined on idx to the list of configs that is defined by new_idx. 1140 New, empty entries are filled by 0. If idx and new_idx are of type range, the smallest 1141 common divisor of the step sizes is used as new step size. @@ -1503,7 +1503,7 @@

    1167 return np.array([ret[new_idx[i] - new_idx[0]] for i in range(len(new_idx))]) * len(new_idx) / len(idx) * scalefactor 1168 1169 -1170def derived_observable(func, data, array_mode=False, **kwargs): +1170def derived_observable(func, data, array_mode=False, **kwargs): 1171 """Construct a derived Obs according to func(data, **kwargs) using automatic differentiation. 1172 1173 Parameters @@ -1581,7 +1581,7 @@

    1245 new_r_values[name] = func(tmp_values, **kwargs) 1246 new_idl_d[name] = _merge_idx(idl) 1247 -1248 def _compute_scalefactor_missing_rep(obs): +1248 def _compute_scalefactor_missing_rep(obs): 1249 """ 1250 Computes the scale factor that is to be multiplied with the deltas 1251 in the case where Obs with different subsets of replica are merged. @@ -1626,8 +1626,8 @@

    1290 1291 if array_mode is True: 1292 -1293 class _Zero_grad(): -1294 def __init__(self, N): +1293 class _Zero_grad(): +1294 def __init__(self, N): 1295 self.grad = np.zeros((N, 1)) 1296 1297 new_covobs_lengths = dict(set([y for x in [[(n, o.covobs[n].N) for n in o.cov_names] for o in raveled_data] for y in x])) @@ -1693,7 +1693,7 @@

    1357 return final_result 1358 1359 -1360def _reduce_deltas(deltas, idx_old, idx_new): +1360def _reduce_deltas(deltas, idx_old, idx_new): 1361 """Extract deltas defined on idx_old on all configs of idx_new. 1362 1363 Assumes, that idx_old and idx_new are correctly defined idl, i.e., they @@ -1722,7 +1722,7 @@

    1386 return np.array(deltas)[indices] 1387 1388 -1389def reweight(weight, obs, **kwargs): +1389def reweight(weight, obs, **kwargs): 1390 """Reweight a list of observables. 1391 1392 Parameters @@ -1764,7 +1764,7 @@

    1428 return result 1429 1430 -1431def correlate(obs_a, obs_b): +1431def correlate(obs_a, obs_b): 1432 """Correlate two observables. 1433 1434 Parameters @@ -1807,7 +1807,7 @@

    1471 return o 1472 1473 -1474def covariance(obs, visualize=False, correlation=False, smooth=None, **kwargs): +1474def covariance(obs, visualize=False, correlation=False, smooth=None, **kwargs): 1475 r'''Calculates the error covariance matrix of a set of observables. 1476 1477 WARNING: This function should be used with care, especially for observables with support on multiple @@ -1877,7 +1877,7 @@

    1541 return cov 1542 1543 -1544def invert_corr_cov_cholesky(corr, inverrdiag): +1544def invert_corr_cov_cholesky(corr, inverrdiag): 1545 """Constructs a lower triangular matrix `chol` via the Cholesky decomposition of the correlation matrix `corr` 1546 and then returns the inverse covariance matrix `chol_inv` as a lower triangular matrix by solving `chol * x = inverrdiag`. 1547 @@ -1900,7 +1900,7 @@

    1564 return chol_inv 1565 1566 -1567def sort_corr(corr, kl, yd): +1567def sort_corr(corr, kl, yd): 1568 """ Reorders a correlation matrix to match the alphabetical order of its underlying y data. 1569 1570 The ordering of the input correlation matrix `corr` is given by the list of keys `kl`. @@ -1963,7 +1963,7 @@

    1627 return corr_sorted 1628 1629 -1630def _smooth_eigenvalues(corr, E): +1630def _smooth_eigenvalues(corr, E): 1631 """Eigenvalue smoothing as described in hep-lat/9412087 1632 1633 corr : np.ndarray @@ -1980,10 +1980,10 @@

    1644 return vec @ np.diag(vals) @ vec.T 1645 1646 -1647def _covariance_element(obs1, obs2): +1647def _covariance_element(obs1, obs2): 1648 """Estimates the covariance of two Obs objects, neglecting autocorrelations.""" 1649 -1650 def calc_gamma(deltas1, deltas2, idx1, idx2, new_idx): +1650 def calc_gamma(deltas1, deltas2, idx1, idx2, new_idx): 1651 deltas1 = _reduce_deltas(deltas1, idx1, new_idx) 1652 deltas2 = _reduce_deltas(deltas2, idx2, new_idx) 1653 return np.sum(deltas1 * deltas2) @@ -2040,7 +2040,7 @@

    1704 return dvalue 1705 1706 -1707def import_jackknife(jacks, name, idl=None): +1707def import_jackknife(jacks, name, idl=None): 1708 """Imports jackknife samples and returns an Obs 1709 1710 Parameters @@ -2060,7 +2060,7 @@

    1724 return new_obs 1725 1726 -1727def import_bootstrap(boots, name, random_numbers): +1727def import_bootstrap(boots, name, random_numbers): 1728 """Imports bootstrap samples and returns an Obs 1729 1730 Parameters @@ -2090,7 +2090,7 @@

    1754 return ret 1755 1756 -1757def merge_obs(list_of_obs): +1757def merge_obs(list_of_obs): 1758 """Combine all observables in list_of_obs into one new observable 1759 1760 Parameters @@ -2120,7 +2120,7 @@

    1784 return o 1785 1786 -1787def cov_Obs(means, cov, name, grad=None): +1787def cov_Obs(means, cov, name, grad=None): 1788 """Create an Obs based on mean(s) and a covariance matrix 1789 1790 Parameters @@ -2135,7 +2135,7 @@

    1799 Gradient of the Covobs wrt. the means belonging to cov. 1800 """ 1801 -1802 def covobs_to_obs(co): +1802 def covobs_to_obs(co): 1803 """Make an Obs out of a Covobs 1804 1805 Parameters @@ -2163,7 +2163,7 @@

    1827 return ol 1828 1829 -1830def _determine_gap(o, e_content, e_name): +1830def _determine_gap(o, e_content, e_name): 1831 gaps = [] 1832 for r_name in e_content[e_name]: 1833 if isinstance(o.idl[r_name], range): @@ -2178,7 +2178,7 @@

    1842 return gap 1843 1844 -1845def _check_lists_equal(idl): +1845def _check_lists_equal(idl): 1846 ''' 1847 Use groupby to efficiently check whether all elements of idl are identical. 1848 Returns True if all elements are equal, otherwise False. @@ -2206,7 +2206,7 @@

    -
     19class Obs:
    +            
     19class Obs:
      20    """Class for a general observable.
      21
      22    Instances of Obs are the basic objects of a pyerrors error analysis.
    @@ -2248,7 +2248,7 @@ 

    58 N_sigma_global = 1.0 59 N_sigma_dict = {} 60 - 61 def __init__(self, samples, names, idl=None, **kwargs): + 61 def __init__(self, samples, names, idl=None, **kwargs): 62 """ Initialize Obs object. 63 64 Parameters @@ -2332,27 +2332,27 @@

    142 self.tag = None 143 144 @property -145 def value(self): +145 def value(self): 146 return self._value 147 148 @property -149 def dvalue(self): +149 def dvalue(self): 150 return self._dvalue 151 152 @property -153 def e_names(self): +153 def e_names(self): 154 return sorted(set([o.split('|')[0] for o in self.names])) 155 156 @property -157 def cov_names(self): +157 def cov_names(self): 158 return sorted(set([o for o in self.covobs.keys()])) 159 160 @property -161 def mc_names(self): +161 def mc_names(self): 162 return sorted(set([o.split('|')[0] for o in self.names if o not in self.cov_names])) 163 164 @property -165 def e_content(self): +165 def e_content(self): 166 res = {} 167 for e, e_name in enumerate(self.e_names): 168 res[e_name] = sorted(filter(lambda x: x.startswith(e_name + '|'), self.names)) @@ -2361,10 +2361,10 @@

    171 return res 172 173 @property -174 def covobs(self): +174 def covobs(self): 175 return self._covobs 176 -177 def gamma_method(self, **kwargs): +177 def gamma_method(self, **kwargs): 178 """Estimate the error and related properties of the Obs. 179 180 Parameters @@ -2408,7 +2408,7 @@

    218 else: 219 fft = True 220 -221 def _parse_kwarg(kwarg_name): +221 def _parse_kwarg(kwarg_name): 222 if kwarg_name in kwargs: 223 tmp = kwargs.get(kwarg_name) 224 if isinstance(tmp, (int, float)): @@ -2470,7 +2470,7 @@

    280 self.e_n_dtauint[e_name] = self.e_n_tauint[e_name] * 2 * np.sqrt(np.abs(np.arange(w_max) + 0.5 - self.e_n_tauint[e_name]) / e_N) 281 self.e_n_dtauint[e_name][0] = 0.0 282 -283 def _compute_drho(i): +283 def _compute_drho(i): 284 tmp = (self.e_rho[e_name][i + 1:w_max] 285 + np.concatenate([self.e_rho[e_name][i - 1:None if i - (w_max - 1) // 2 <= 0 else (2 * i - (2 * w_max) // 2):-1], 286 self.e_rho[e_name][1:max(1, w_max - 2 * i)]]) @@ -2532,7 +2532,7 @@

    342 343 gm = gamma_method 344 -345 def _calc_gamma(self, deltas, idx, shape, w_max, fft, gapsize): +345 def _calc_gamma(self, deltas, idx, shape, w_max, fft, gapsize): 346 """Calculate Gamma_{AA} from the deltas, which are defined on idx. 347 idx is assumed to be a contiguous range (possibly with a stepsize != 1) 348 @@ -2568,7 +2568,7 @@

    378 379 return gamma 380 -381 def details(self, ens_content=True): +381 def details(self, ens_content=True): 382 """Output detailed properties of the Obs. 383 384 Parameters @@ -2637,7 +2637,7 @@

    447 my_string_list.append(my_string) 448 print('\n'.join(my_string_list)) 449 -450 def reweight(self, weight): +450 def reweight(self, weight): 451 """Reweight the obs with given rewighting factors. 452 453 Parameters @@ -2652,7 +2652,7 @@

    462 """ 463 return reweight(weight, [self])[0] 464 -465 def is_zero_within_error(self, sigma=1): +465 def is_zero_within_error(self, sigma=1): 466 """Checks whether the observable is zero within 'sigma' standard errors. 467 468 Parameters @@ -2664,7 +2664,7 @@

    474 """ 475 return self.is_zero() or np.abs(self.value) <= sigma * self._dvalue 476 -477 def is_zero(self, atol=1e-10): +477 def is_zero(self, atol=1e-10): 478 """Checks whether the observable is zero within a given tolerance. 479 480 Parameters @@ -2674,7 +2674,7 @@

    484 """ 485 return np.isclose(0.0, self.value, 1e-14, atol) and all(np.allclose(0.0, delta, 1e-14, atol) for delta in self.deltas.values()) and all(np.allclose(0.0, delta.errsq(), 1e-14, atol) for delta in self.covobs.values()) 486 -487 def plot_tauint(self, save=None): +487 def plot_tauint(self, save=None): 488 """Plot integrated autocorrelation time for each ensemble. 489 490 Parameters @@ -2714,7 +2714,7 @@

    524 if save: 525 fig.savefig(save + "_" + str(e)) 526 -527 def plot_rho(self, save=None): +527 def plot_rho(self, save=None): 528 """Plot normalized autocorrelation function time for each ensemble. 529 530 Parameters @@ -2745,7 +2745,7 @@

    555 if save: 556 fig.savefig(save + "_" + str(e)) 557 -558 def plot_rep_dist(self): +558 def plot_rep_dist(self): 559 """Plot replica distribution for each ensemble with more than one replicum.""" 560 if not hasattr(self, 'e_dvalue'): 561 raise Exception('Run the gamma method first.') @@ -2767,7 +2767,7 @@

    577 plt.title('Replica distribution' + e_name + ' (mean=0, var=1)') 578 plt.draw() 579 -580 def plot_history(self, expand=True): +580 def plot_history(self, expand=True): 581 """Plot derived Monte Carlo history for each ensemble 582 583 Parameters @@ -2799,7 +2799,7 @@

    609 plt.title(e_name + f'\nskew: {skew(y_test):.3f} (p={skewtest(y_test).pvalue:.3f}), kurtosis: {kurtosis(y_test):.3f} (p={kurtosistest(y_test).pvalue:.3f})') 610 plt.draw() 611 -612 def plot_piechart(self, save=None): +612 def plot_piechart(self, save=None): 613 """Plot piechart which shows the fractional contribution of each 614 ensemble to the error and returns a dictionary containing the fractions. 615 @@ -2823,7 +2823,7 @@

    633 634 return dict(zip(labels, sizes)) 635 -636 def dump(self, filename, datatype="json.gz", description="", **kwargs): +636 def dump(self, filename, datatype="json.gz", description="", **kwargs): 637 """Dump the Obs to a file 'name' of chosen format. 638 639 Parameters @@ -2844,7 +2844,7 @@

    654 file_name = filename 655 656 if datatype == "json.gz": -657 from .input.json import dump_to_json +657 from .input.json import dump_to_json 658 dump_to_json([self], file_name, description=description) 659 elif datatype == "pickle": 660 with open(file_name + '.p', 'wb') as fb: @@ -2852,7 +2852,7 @@

    662 else: 663 raise TypeError("Unknown datatype " + str(datatype)) 664 -665 def export_jackknife(self): +665 def export_jackknife(self): 666 """Export jackknife samples from the Obs 667 668 Returns @@ -2878,7 +2878,7 @@

    688 tmp_jacks[1:] = (n * mean - full_data) / (n - 1) 689 return tmp_jacks 690 -691 def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None): +691 def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None): 692 """Export bootstrap samples from the Obs 693 694 Parameters @@ -2921,16 +2921,16 @@

    731 ret[1:] = proj @ (self.deltas[name] + self.r_values[name]) 732 return ret 733 -734 def __float__(self): +734 def __float__(self): 735 return float(self.value) 736 -737 def __repr__(self): +737 def __repr__(self): 738 return 'Obs[' + str(self) + ']' 739 -740 def __str__(self): +740 def __str__(self): 741 return _format_uncertainty(self.value, self._dvalue) 742 -743 def __format__(self, format_type): +743 def __format__(self, format_type): 744 if format_type == "": 745 significance = 2 746 else: @@ -2943,7 +2943,7 @@

    753 my_str = char + my_str 754 return my_str 755 -756 def __hash__(self): +756 def __hash__(self): 757 hash_tuple = (np.array([self.value]).astype(np.float32).data.tobytes(),) 758 hash_tuple += tuple([o.astype(np.float32).data.tobytes() for o in self.deltas.values()]) 759 hash_tuple += tuple([np.array([o.errsq()]).astype(np.float32).data.tobytes() for o in self.covobs.values()]) @@ -2953,25 +2953,25 @@

    763 return int(m.hexdigest(), 16) & 0xFFFFFFFF 764 765 # Overload comparisons -766 def __lt__(self, other): +766 def __lt__(self, other): 767 return self.value < other 768 -769 def __le__(self, other): +769 def __le__(self, other): 770 return self.value <= other 771 -772 def __gt__(self, other): +772 def __gt__(self, other): 773 return self.value > other 774 -775 def __ge__(self, other): +775 def __ge__(self, other): 776 return self.value >= other 777 -778 def __eq__(self, other): +778 def __eq__(self, other): 779 if other is None: 780 return False 781 return (self - other).is_zero() 782 783 # Overload math operations -784 def __add__(self, y): +784 def __add__(self, y): 785 if isinstance(y, Obs): 786 return derived_observable(lambda x, **kwargs: x[0] + x[1], [self, y], man_grad=[1, 1]) 787 else: @@ -2984,10 +2984,10 @@

    794 else: 795 return derived_observable(lambda x, **kwargs: x[0] + y, [self], man_grad=[1]) 796 -797 def __radd__(self, y): +797 def __radd__(self, y): 798 return self + y 799 -800 def __mul__(self, y): +800 def __mul__(self, y): 801 if isinstance(y, Obs): 802 return derived_observable(lambda x, **kwargs: x[0] * x[1], [self, y], man_grad=[y.value, self.value]) 803 else: @@ -3000,10 +3000,10 @@

    810 else: 811 return derived_observable(lambda x, **kwargs: x[0] * y, [self], man_grad=[y]) 812 -813 def __rmul__(self, y): +813 def __rmul__(self, y): 814 return self * y 815 -816 def __sub__(self, y): +816 def __sub__(self, y): 817 if isinstance(y, Obs): 818 return derived_observable(lambda x, **kwargs: x[0] - x[1], [self, y], man_grad=[1, -1]) 819 else: @@ -3014,16 +3014,16 @@

    824 else: 825 return derived_observable(lambda x, **kwargs: x[0] - y, [self], man_grad=[1]) 826 -827 def __rsub__(self, y): +827 def __rsub__(self, y): 828 return -1 * (self - y) 829 -830 def __pos__(self): +830 def __pos__(self): 831 return self 832 -833 def __neg__(self): +833 def __neg__(self): 834 return -1 * self 835 -836 def __truediv__(self, y): +836 def __truediv__(self, y): 837 if isinstance(y, Obs): 838 return derived_observable(lambda x, **kwargs: x[0] / x[1], [self, y], man_grad=[1 / y.value, - self.value / y.value ** 2]) 839 else: @@ -3034,7 +3034,7 @@

    844 else: 845 return derived_observable(lambda x, **kwargs: x[0] / y, [self], man_grad=[1 / y]) 846 -847 def __rtruediv__(self, y): +847 def __rtruediv__(self, y): 848 if isinstance(y, Obs): 849 return derived_observable(lambda x, **kwargs: x[0] / x[1], [y, self], man_grad=[1 / self.value, - y.value / self.value ** 2]) 850 else: @@ -3045,62 +3045,62 @@

    855 else: 856 return derived_observable(lambda x, **kwargs: y / x[0], [self], man_grad=[-y / self.value ** 2]) 857 -858 def __pow__(self, y): +858 def __pow__(self, y): 859 if isinstance(y, Obs): 860 return derived_observable(lambda x, **kwargs: x[0] ** x[1], [self, y], man_grad=[y.value * self.value ** (y.value - 1), self.value ** y.value * np.log(self.value)]) 861 else: 862 return derived_observable(lambda x, **kwargs: x[0] ** y, [self], man_grad=[y * self.value ** (y - 1)]) 863 -864 def __rpow__(self, y): +864 def __rpow__(self, y): 865 return derived_observable(lambda x, **kwargs: y ** x[0], [self], man_grad=[y ** self.value * np.log(y)]) 866 -867 def __abs__(self): +867 def __abs__(self): 868 return derived_observable(lambda x: anp.abs(x[0]), [self]) 869 870 # Overload numpy functions -871 def sqrt(self): +871 def sqrt(self): 872 return derived_observable(lambda x, **kwargs: np.sqrt(x[0]), [self], man_grad=[1 / 2 / np.sqrt(self.value)]) 873 -874 def log(self): +874 def log(self): 875 return derived_observable(lambda x, **kwargs: np.log(x[0]), [self], man_grad=[1 / self.value]) 876 -877 def exp(self): +877 def exp(self): 878 return derived_observable(lambda x, **kwargs: np.exp(x[0]), [self], man_grad=[np.exp(self.value)]) 879 -880 def sin(self): +880 def sin(self): 881 return derived_observable(lambda x, **kwargs: np.sin(x[0]), [self], man_grad=[np.cos(self.value)]) 882 -883 def cos(self): +883 def cos(self): 884 return derived_observable(lambda x, **kwargs: np.cos(x[0]), [self], man_grad=[-np.sin(self.value)]) 885 -886 def tan(self): +886 def tan(self): 887 return derived_observable(lambda x, **kwargs: np.tan(x[0]), [self], man_grad=[1 / np.cos(self.value) ** 2]) 888 -889 def arcsin(self): +889 def arcsin(self): 890 return derived_observable(lambda x: anp.arcsin(x[0]), [self]) 891 -892 def arccos(self): +892 def arccos(self): 893 return derived_observable(lambda x: anp.arccos(x[0]), [self]) 894 -895 def arctan(self): +895 def arctan(self): 896 return derived_observable(lambda x: anp.arctan(x[0]), [self]) 897 -898 def sinh(self): +898 def sinh(self): 899 return derived_observable(lambda x, **kwargs: np.sinh(x[0]), [self], man_grad=[np.cosh(self.value)]) 900 -901 def cosh(self): +901 def cosh(self): 902 return derived_observable(lambda x, **kwargs: np.cosh(x[0]), [self], man_grad=[np.sinh(self.value)]) 903 -904 def tanh(self): +904 def tanh(self): 905 return derived_observable(lambda x, **kwargs: np.tanh(x[0]), [self], man_grad=[1 / np.cosh(self.value) ** 2]) 906 -907 def arcsinh(self): +907 def arcsinh(self): 908 return derived_observable(lambda x: anp.arcsinh(x[0]), [self]) 909 -910 def arccosh(self): +910 def arccosh(self): 911 return derived_observable(lambda x: anp.arccosh(x[0]), [self]) 912 -913 def arctanh(self): +913 def arctanh(self): 914 return derived_observable(lambda x: anp.arctanh(x[0]), [self])

    @@ -3147,7 +3147,7 @@
    Attributes
    -
     61    def __init__(self, samples, names, idl=None, **kwargs):
    +            
     61    def __init__(self, samples, names, idl=None, **kwargs):
      62        """ Initialize Obs object.
      63
      64        Parameters
    @@ -3429,7 +3429,7 @@ 
    Parameters
    144    @property
    -145    def value(self):
    +145    def value(self):
     146        return self._value
     
    @@ -3447,7 +3447,7 @@
    Parameters
    148    @property
    -149    def dvalue(self):
    +149    def dvalue(self):
     150        return self._dvalue
     
    @@ -3465,7 +3465,7 @@
    Parameters
    152    @property
    -153    def e_names(self):
    +153    def e_names(self):
     154        return sorted(set([o.split('|')[0] for o in self.names]))
     
    @@ -3483,7 +3483,7 @@

    Parameters
    156    @property
    -157    def cov_names(self):
    +157    def cov_names(self):
     158        return sorted(set([o for o in self.covobs.keys()]))
     
    @@ -3501,7 +3501,7 @@
    Parameters
    160    @property
    -161    def mc_names(self):
    +161    def mc_names(self):
     162        return sorted(set([o.split('|')[0] for o in self.names if o not in self.cov_names]))
     
    @@ -3519,7 +3519,7 @@
    Parameters
    164    @property
    -165    def e_content(self):
    +165    def e_content(self):
     166        res = {}
     167        for e, e_name in enumerate(self.e_names):
     168            res[e_name] = sorted(filter(lambda x: x.startswith(e_name + '|'), self.names))
    @@ -3542,7 +3542,7 @@ 
    Parameters
    173    @property
    -174    def covobs(self):
    +174    def covobs(self):
     175        return self._covobs
     
    @@ -3561,7 +3561,7 @@

    Parameters
    -
    177    def gamma_method(self, **kwargs):
    +            
    177    def gamma_method(self, **kwargs):
     178        """Estimate the error and related properties of the Obs.
     179
     180        Parameters
    @@ -3605,7 +3605,7 @@ 
    Parameters
    218 else: 219 fft = True 220 -221 def _parse_kwarg(kwarg_name): +221 def _parse_kwarg(kwarg_name): 222 if kwarg_name in kwargs: 223 tmp = kwargs.get(kwarg_name) 224 if isinstance(tmp, (int, float)): @@ -3667,7 +3667,7 @@
    Parameters
    280 self.e_n_dtauint[e_name] = self.e_n_tauint[e_name] * 2 * np.sqrt(np.abs(np.arange(w_max) + 0.5 - self.e_n_tauint[e_name]) / e_N) 281 self.e_n_dtauint[e_name][0] = 0.0 282 -283 def _compute_drho(i): +283 def _compute_drho(i): 284 tmp = (self.e_rho[e_name][i + 1:w_max] 285 + np.concatenate([self.e_rho[e_name][i - 1:None if i - (w_max - 1) // 2 <= 0 else (2 * i - (2 * w_max) // 2):-1], 286 self.e_rho[e_name][1:max(1, w_max - 2 * i)]]) @@ -3764,7 +3764,7 @@
    Parameters
    -
    177    def gamma_method(self, **kwargs):
    +            
    177    def gamma_method(self, **kwargs):
     178        """Estimate the error and related properties of the Obs.
     179
     180        Parameters
    @@ -3808,7 +3808,7 @@ 
    Parameters
    218 else: 219 fft = True 220 -221 def _parse_kwarg(kwarg_name): +221 def _parse_kwarg(kwarg_name): 222 if kwarg_name in kwargs: 223 tmp = kwargs.get(kwarg_name) 224 if isinstance(tmp, (int, float)): @@ -3870,7 +3870,7 @@
    Parameters
    280 self.e_n_dtauint[e_name] = self.e_n_tauint[e_name] * 2 * np.sqrt(np.abs(np.arange(w_max) + 0.5 - self.e_n_tauint[e_name]) / e_N) 281 self.e_n_dtauint[e_name][0] = 0.0 282 -283 def _compute_drho(i): +283 def _compute_drho(i): 284 tmp = (self.e_rho[e_name][i + 1:w_max] 285 + np.concatenate([self.e_rho[e_name][i - 1:None if i - (w_max - 1) // 2 <= 0 else (2 * i - (2 * w_max) // 2):-1], 286 self.e_rho[e_name][1:max(1, w_max - 2 * i)]]) @@ -3967,7 +3967,7 @@
    Parameters
    -
    381    def details(self, ens_content=True):
    +            
    381    def details(self, ens_content=True):
     382        """Output detailed properties of the Obs.
     383
     384        Parameters
    @@ -4061,7 +4061,7 @@ 
    Parameters
    -
    450    def reweight(self, weight):
    +            
    450    def reweight(self, weight):
     451        """Reweight the obs with given rewighting factors.
     452
     453        Parameters
    @@ -4106,7 +4106,7 @@ 
    Parameters
    -
    465    def is_zero_within_error(self, sigma=1):
    +            
    465    def is_zero_within_error(self, sigma=1):
     466        """Checks whether the observable is zero within 'sigma' standard errors.
     467
     468        Parameters
    @@ -4144,7 +4144,7 @@ 
    Parameters
    -
    477    def is_zero(self, atol=1e-10):
    +            
    477    def is_zero(self, atol=1e-10):
     478        """Checks whether the observable is zero within a given tolerance.
     479
     480        Parameters
    @@ -4179,7 +4179,7 @@ 
    Parameters
    -
    487    def plot_tauint(self, save=None):
    +            
    487    def plot_tauint(self, save=None):
     488        """Plot integrated autocorrelation time for each ensemble.
     489
     490        Parameters
    @@ -4244,7 +4244,7 @@ 
    Parameters
    -
    527    def plot_rho(self, save=None):
    +            
    527    def plot_rho(self, save=None):
     528        """Plot normalized autocorrelation function time for each ensemble.
     529
     530        Parameters
    @@ -4300,7 +4300,7 @@ 
    Parameters
    -
    558    def plot_rep_dist(self):
    +            
    558    def plot_rep_dist(self):
     559        """Plot replica distribution for each ensemble with more than one replicum."""
     560        if not hasattr(self, 'e_dvalue'):
     561            raise Exception('Run the gamma method first.')
    @@ -4340,7 +4340,7 @@ 
    Parameters
    -
    580    def plot_history(self, expand=True):
    +            
    580    def plot_history(self, expand=True):
     581        """Plot derived Monte Carlo history for each ensemble
     582
     583        Parameters
    @@ -4397,7 +4397,7 @@ 
    Parameters
    -
    612    def plot_piechart(self, save=None):
    +            
    612    def plot_piechart(self, save=None):
     613        """Plot piechart which shows the fractional contribution of each
     614        ensemble to the error and returns a dictionary containing the fractions.
     615
    @@ -4447,7 +4447,7 @@ 
    Parameters
    -
    636    def dump(self, filename, datatype="json.gz", description="", **kwargs):
    +            
    636    def dump(self, filename, datatype="json.gz", description="", **kwargs):
     637        """Dump the Obs to a file 'name' of chosen format.
     638
     639        Parameters
    @@ -4468,7 +4468,7 @@ 
    Parameters
    654 file_name = filename 655 656 if datatype == "json.gz": -657 from .input.json import dump_to_json +657 from .input.json import dump_to_json 658 dump_to_json([self], file_name, description=description) 659 elif datatype == "pickle": 660 with open(file_name + '.p', 'wb') as fb: @@ -4508,7 +4508,7 @@
    Parameters
    -
    665    def export_jackknife(self):
    +            
    665    def export_jackknife(self):
     666        """Export jackknife samples from the Obs
     667
     668        Returns
    @@ -4563,7 +4563,7 @@ 
    Returns
    -
    691    def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None):
    +            
    691    def export_bootstrap(self, samples=500, random_numbers=None, save_rng=None):
     692        """Export bootstrap samples from the Obs
     693
     694        Parameters
    @@ -4647,7 +4647,7 @@ 
    Returns
    -
    871    def sqrt(self):
    +            
    871    def sqrt(self):
     872        return derived_observable(lambda x, **kwargs: np.sqrt(x[0]), [self], man_grad=[1 / 2 / np.sqrt(self.value)])
     
    @@ -4666,7 +4666,7 @@
    Returns
    -
    874    def log(self):
    +            
    874    def log(self):
     875        return derived_observable(lambda x, **kwargs: np.log(x[0]), [self], man_grad=[1 / self.value])
     
    @@ -4685,7 +4685,7 @@
    Returns
    -
    877    def exp(self):
    +            
    877    def exp(self):
     878        return derived_observable(lambda x, **kwargs: np.exp(x[0]), [self], man_grad=[np.exp(self.value)])
     
    @@ -4704,7 +4704,7 @@
    Returns
    -
    880    def sin(self):
    +            
    880    def sin(self):
     881        return derived_observable(lambda x, **kwargs: np.sin(x[0]), [self], man_grad=[np.cos(self.value)])
     
    @@ -4723,7 +4723,7 @@
    Returns
    -
    883    def cos(self):
    +            
    883    def cos(self):
     884        return derived_observable(lambda x, **kwargs: np.cos(x[0]), [self], man_grad=[-np.sin(self.value)])
     
    @@ -4742,7 +4742,7 @@
    Returns
    -
    886    def tan(self):
    +            
    886    def tan(self):
     887        return derived_observable(lambda x, **kwargs: np.tan(x[0]), [self], man_grad=[1 / np.cos(self.value) ** 2])
     
    @@ -4761,7 +4761,7 @@
    Returns
    -
    889    def arcsin(self):
    +            
    889    def arcsin(self):
     890        return derived_observable(lambda x: anp.arcsin(x[0]), [self])
     
    @@ -4780,7 +4780,7 @@
    Returns
    -
    892    def arccos(self):
    +            
    892    def arccos(self):
     893        return derived_observable(lambda x: anp.arccos(x[0]), [self])
     
    @@ -4799,7 +4799,7 @@
    Returns
    -
    895    def arctan(self):
    +            
    895    def arctan(self):
     896        return derived_observable(lambda x: anp.arctan(x[0]), [self])
     
    @@ -4818,7 +4818,7 @@
    Returns
    -
    898    def sinh(self):
    +            
    898    def sinh(self):
     899        return derived_observable(lambda x, **kwargs: np.sinh(x[0]), [self], man_grad=[np.cosh(self.value)])
     
    @@ -4837,7 +4837,7 @@
    Returns
    -
    901    def cosh(self):
    +            
    901    def cosh(self):
     902        return derived_observable(lambda x, **kwargs: np.cosh(x[0]), [self], man_grad=[np.sinh(self.value)])
     
    @@ -4856,7 +4856,7 @@
    Returns
    -
    904    def tanh(self):
    +            
    904    def tanh(self):
     905        return derived_observable(lambda x, **kwargs: np.tanh(x[0]), [self], man_grad=[1 / np.cosh(self.value) ** 2])
     
    @@ -4875,7 +4875,7 @@
    Returns
    -
    907    def arcsinh(self):
    +            
    907    def arcsinh(self):
     908        return derived_observable(lambda x: anp.arcsinh(x[0]), [self])
     
    @@ -4894,7 +4894,7 @@
    Returns
    -
    910    def arccosh(self):
    +            
    910    def arccosh(self):
     911        return derived_observable(lambda x: anp.arccosh(x[0]), [self])
     
    @@ -4913,7 +4913,7 @@
    Returns
    -
    913    def arctanh(self):
    +            
    913    def arctanh(self):
     914        return derived_observable(lambda x: anp.arctanh(x[0]), [self])
     
    @@ -5065,38 +5065,38 @@
    Returns
    -
     917class CObs:
    +            
     917class CObs:
      918    """Class for a complex valued observable."""
      919    __slots__ = ['_real', '_imag', 'tag']
      920
    - 921    def __init__(self, real, imag=0.0):
    + 921    def __init__(self, real, imag=0.0):
      922        self._real = real
      923        self._imag = imag
      924        self.tag = None
      925
      926    @property
    - 927    def real(self):
    + 927    def real(self):
      928        return self._real
      929
      930    @property
    - 931    def imag(self):
    + 931    def imag(self):
      932        return self._imag
      933
    - 934    def gamma_method(self, **kwargs):
    + 934    def gamma_method(self, **kwargs):
      935        """Executes the gamma_method for the real and the imaginary part."""
      936        if isinstance(self.real, Obs):
      937            self.real.gamma_method(**kwargs)
      938        if isinstance(self.imag, Obs):
      939            self.imag.gamma_method(**kwargs)
      940
    - 941    def is_zero(self):
    + 941    def is_zero(self):
      942        """Checks whether both real and imaginary part are zero within machine precision."""
      943        return self.real == 0.0 and self.imag == 0.0
      944
    - 945    def conjugate(self):
    + 945    def conjugate(self):
      946        return CObs(self.real, -self.imag)
      947
    - 948    def __add__(self, other):
    + 948    def __add__(self, other):
      949        if isinstance(other, np.ndarray):
      950            return other + self
      951        elif hasattr(other, 'real') and hasattr(other, 'imag'):
    @@ -5105,10 +5105,10 @@ 
    Returns
    954 else: 955 return CObs(self.real + other, self.imag) 956 - 957 def __radd__(self, y): + 957 def __radd__(self, y): 958 return self + y 959 - 960 def __sub__(self, other): + 960 def __sub__(self, other): 961 if isinstance(other, np.ndarray): 962 return -1 * (other - self) 963 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -5116,10 +5116,10 @@
    Returns
    965 else: 966 return CObs(self.real - other, self.imag) 967 - 968 def __rsub__(self, other): + 968 def __rsub__(self, other): 969 return -1 * (self - other) 970 - 971 def __mul__(self, other): + 971 def __mul__(self, other): 972 if isinstance(other, np.ndarray): 973 return other * self 974 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -5138,10 +5138,10 @@
    Returns
    987 else: 988 return CObs(self.real * other, self.imag * other) 989 - 990 def __rmul__(self, other): + 990 def __rmul__(self, other): 991 return self * other 992 - 993 def __truediv__(self, other): + 993 def __truediv__(self, other): 994 if isinstance(other, np.ndarray): 995 return 1 / (other / self) 996 elif hasattr(other, 'real') and hasattr(other, 'imag'): @@ -5150,32 +5150,32 @@
    Returns
    999 else: 1000 return CObs(self.real / other, self.imag / other) 1001 -1002 def __rtruediv__(self, other): +1002 def __rtruediv__(self, other): 1003 r = self.real ** 2 + self.imag ** 2 1004 if hasattr(other, 'real') and hasattr(other, 'imag'): 1005 return CObs((self.real * other.real + self.imag * other.imag) / r, (self.real * other.imag - self.imag * other.real) / r) 1006 else: 1007 return CObs(self.real * other / r, -self.imag * other / r) 1008 -1009 def __abs__(self): +1009 def __abs__(self): 1010 return np.sqrt(self.real**2 + self.imag**2) 1011 -1012 def __pos__(self): +1012 def __pos__(self): 1013 return self 1014 -1015 def __neg__(self): +1015 def __neg__(self): 1016 return -1 * self 1017 -1018 def __eq__(self, other): +1018 def __eq__(self, other): 1019 return self.real == other.real and self.imag == other.imag 1020 -1021 def __str__(self): +1021 def __str__(self): 1022 return '(' + str(self.real) + int(self.imag >= 0.0) * '+' + str(self.imag) + 'j)' 1023 -1024 def __repr__(self): +1024 def __repr__(self): 1025 return 'CObs[' + str(self) + ']' 1026 -1027 def __format__(self, format_type): +1027 def __format__(self, format_type): 1028 if format_type == "": 1029 significance = 2 1030 format_type = "2" @@ -5199,7 +5199,7 @@
    Returns
    -
    921    def __init__(self, real, imag=0.0):
    +            
    921    def __init__(self, real, imag=0.0):
     922        self._real = real
     923        self._imag = imag
     924        self.tag = None
    @@ -5230,7 +5230,7 @@ 
    Returns
    926    @property
    -927    def real(self):
    +927    def real(self):
     928        return self._real
     
    @@ -5248,7 +5248,7 @@
    Returns
    930    @property
    -931    def imag(self):
    +931    def imag(self):
     932        return self._imag
     
    @@ -5267,7 +5267,7 @@
    Returns
    -
    934    def gamma_method(self, **kwargs):
    +            
    934    def gamma_method(self, **kwargs):
     935        """Executes the gamma_method for the real and the imaginary part."""
     936        if isinstance(self.real, Obs):
     937            self.real.gamma_method(**kwargs)
    @@ -5292,7 +5292,7 @@ 
    Returns
    -
    941    def is_zero(self):
    +            
    941    def is_zero(self):
     942        """Checks whether both real and imaginary part are zero within machine precision."""
     943        return self.real == 0.0 and self.imag == 0.0
     
    @@ -5314,7 +5314,7 @@
    Returns
    -
    945    def conjugate(self):
    +            
    945    def conjugate(self):
     946        return CObs(self.real, -self.imag)
     
    @@ -5334,7 +5334,7 @@
    Returns
    -
    1036def gamma_method(x, **kwargs):
    +            
    1036def gamma_method(x, **kwargs):
     1037    """Vectorized version of the gamma_method applicable to lists or arrays of Obs.
     1038
     1039    See docstring of pe.Obs.gamma_method for details.
    @@ -5361,7 +5361,7 @@ 
    Returns
    -
    1036def gamma_method(x, **kwargs):
    +            
    1036def gamma_method(x, **kwargs):
     1037    """Vectorized version of the gamma_method applicable to lists or arrays of Obs.
     1038
     1039    See docstring of pe.Obs.gamma_method for details.
    @@ -5388,7 +5388,7 @@ 
    Returns
    -
    1171def derived_observable(func, data, array_mode=False, **kwargs):
    +            
    1171def derived_observable(func, data, array_mode=False, **kwargs):
     1172    """Construct a derived Obs according to func(data, **kwargs) using automatic differentiation.
     1173
     1174    Parameters
    @@ -5466,7 +5466,7 @@ 
    Returns
    1246 new_r_values[name] = func(tmp_values, **kwargs) 1247 new_idl_d[name] = _merge_idx(idl) 1248 -1249 def _compute_scalefactor_missing_rep(obs): +1249 def _compute_scalefactor_missing_rep(obs): 1250 """ 1251 Computes the scale factor that is to be multiplied with the deltas 1252 in the case where Obs with different subsets of replica are merged. @@ -5511,8 +5511,8 @@
    Returns
    1291 1292 if array_mode is True: 1293 -1294 class _Zero_grad(): -1295 def __init__(self, N): +1294 class _Zero_grad(): +1295 def __init__(self, N): 1296 self.grad = np.zeros((N, 1)) 1297 1298 new_covobs_lengths = dict(set([y for x in [[(n, o.covobs[n].N) for n in o.cov_names] for o in raveled_data] for y in x])) @@ -5622,7 +5622,7 @@
    Notes
    -
    1390def reweight(weight, obs, **kwargs):
    +            
    1390def reweight(weight, obs, **kwargs):
     1391    """Reweight a list of observables.
     1392
     1393    Parameters
    @@ -5695,7 +5695,7 @@ 
    Parameters
    -
    1432def correlate(obs_a, obs_b):
    +            
    1432def correlate(obs_a, obs_b):
     1433    """Correlate two observables.
     1434
     1435    Parameters
    @@ -5770,7 +5770,7 @@ 
    Notes
    -
    1475def covariance(obs, visualize=False, correlation=False, smooth=None, **kwargs):
    +            
    1475def covariance(obs, visualize=False, correlation=False, smooth=None, **kwargs):
     1476    r'''Calculates the error covariance matrix of a set of observables.
     1477
     1478    WARNING: This function should be used with care, especially for observables with support on multiple
    @@ -5889,7 +5889,7 @@ 
    Notes
    -
    1545def invert_corr_cov_cholesky(corr, inverrdiag):
    +            
    1545def invert_corr_cov_cholesky(corr, inverrdiag):
     1546    """Constructs a lower triangular matrix `chol` via the Cholesky decomposition of the correlation matrix `corr`
     1547       and then returns the inverse covariance matrix `chol_inv` as a lower triangular matrix by solving `chol * x = inverrdiag`.
     1548
    @@ -5939,7 +5939,7 @@ 
    Parameters
    -
    1568def sort_corr(corr, kl, yd):
    +            
    1568def sort_corr(corr, kl, yd):
     1569    """ Reorders a correlation matrix to match the alphabetical order of its underlying y data.
     1570
     1571    The ordering of the input correlation matrix `corr` is given by the list of keys `kl`.
    @@ -6036,8 +6036,8 @@ 
    Returns
    Example
    -
    >>> import numpy as np
    ->>> import pyerrors as pe
    +
    >>> import numpy as np
    +>>> import pyerrors as pe
     >>> corr = np.array([[1, 0.2, 0.3], [0.2, 1, 0.4], [0.3, 0.4, 1]])
     >>> kl = ['b', 'a']
     >>> yd = {'a': [1, 2], 'b': [3]}
    @@ -6063,7 +6063,7 @@ 
    Example
    -
    1708def import_jackknife(jacks, name, idl=None):
    +            
    1708def import_jackknife(jacks, name, idl=None):
     1709    """Imports jackknife samples and returns an Obs
     1710
     1711    Parameters
    @@ -6110,7 +6110,7 @@ 
    Parameters
    -
    1728def import_bootstrap(boots, name, random_numbers):
    +            
    1728def import_bootstrap(boots, name, random_numbers):
     1729    """Imports bootstrap samples and returns an Obs
     1730
     1731    Parameters
    @@ -6171,7 +6171,7 @@ 
    Parameters
    -
    1758def merge_obs(list_of_obs):
    +            
    1758def merge_obs(list_of_obs):
     1759    """Combine all observables in list_of_obs into one new observable
     1760
     1761    Parameters
    @@ -6229,7 +6229,7 @@ 
    Notes
    -
    1788def cov_Obs(means, cov, name, grad=None):
    +            
    1788def cov_Obs(means, cov, name, grad=None):
     1789    """Create an Obs based on mean(s) and a covariance matrix
     1790
     1791    Parameters
    @@ -6244,7 +6244,7 @@ 
    Notes
    1800 Gradient of the Covobs wrt. the means belonging to cov. 1801 """ 1802 -1803 def covobs_to_obs(co): +1803 def covobs_to_obs(co): 1804 """Make an Obs out of a Covobs 1805 1806 Parameters diff --git a/docs/pyerrors/roots.html b/docs/pyerrors/roots.html index 5766c7bc..61335386 100644 --- a/docs/pyerrors/roots.html +++ b/docs/pyerrors/roots.html @@ -76,13 +76,13 @@

    -
     1import numpy as np
    - 2import scipy.optimize
    - 3from autograd import jacobian
    - 4from .obs import derived_observable
    +                        
     1import numpy as np
    + 2import scipy.optimize
    + 3from autograd import jacobian
    + 4from .obs import derived_observable
      5
      6
    - 7def find_root(d, func, guess=1.0, **kwargs):
    + 7def find_root(d, func, guess=1.0, **kwargs):
      8    r'''Finds the root of the function func(x, d) where d is an `Obs`.
      9
     10    Parameters
    @@ -114,7 +114,7 @@ 

    36 try: 37 da = jacobian(lambda u, v: func(v, u))(d_val, root[0]) 38 except TypeError: -39 raise Exception("It is required to use autograd.numpy instead of numpy within root functions, see the documentation for details.") from None +39 raise Exception("It is required to use autograd.numpy instead of numpy within root functions, see the documentation for details.") from None 40 deriv = - da / dx 41 res = derived_observable(lambda x, **kwargs: (x[0] + np.finfo(np.float64).eps) / (np.array(d).reshape(-1)[0].value + np.finfo(np.float64).eps) * root[0], 42 np.array(d).reshape(-1), man_grad=np.array(deriv).reshape(-1)) @@ -134,7 +134,7 @@

    -
     8def find_root(d, func, guess=1.0, **kwargs):
    +            
     8def find_root(d, func, guess=1.0, **kwargs):
      9    r'''Finds the root of the function func(x, d) where d is an `Obs`.
     10
     11    Parameters
    @@ -166,7 +166,7 @@ 

    37 try: 38 da = jacobian(lambda u, v: func(v, u))(d_val, root[0]) 39 except TypeError: -40 raise Exception("It is required to use autograd.numpy instead of numpy within root functions, see the documentation for details.") from None +40 raise Exception("It is required to use autograd.numpy instead of numpy within root functions, see the documentation for details.") from None 41 deriv = - da / dx 42 res = derived_observable(lambda x, **kwargs: (x[0] + np.finfo(np.float64).eps) / (np.array(d).reshape(-1)[0].value + np.finfo(np.float64).eps) * root[0], 43 np.array(d).reshape(-1), man_grad=np.array(deriv).reshape(-1)) @@ -186,8 +186,8 @@
    Parameters
    Example:

    -
    import autograd.numpy as anp
    -def root_func(x, d):
    +
    import autograd.numpy as anp
    +def root_func(x, d):
         return anp.exp(-x ** 2) - d
     
    diff --git a/docs/pyerrors/special.html b/docs/pyerrors/special.html index ac8b3a35..4641cd83 100644 --- a/docs/pyerrors/special.html +++ b/docs/pyerrors/special.html @@ -166,12 +166,12 @@

    -
     1import scipy
    - 2import numpy as np
    - 3from autograd.extend import primitive, defvjp
    - 4from autograd.scipy.special import j0, y0, j1, y1, jn, yn, i0, i1, iv, ive, beta, betainc, betaln
    - 5from autograd.scipy.special import polygamma, psi, digamma, gamma, gammaln, gammainc, gammaincc, gammasgn, rgamma, multigammaln
    - 6from autograd.scipy.special import erf, erfc, erfinv, erfcinv, logit, expit, logsumexp
    +                        
     1import scipy
    + 2import numpy as np
    + 3from autograd.extend import primitive, defvjp
    + 4from autograd.scipy.special import j0, y0, j1, y1, jn, yn, i0, i1, iv, ive, beta, betainc, betaln
    + 5from autograd.scipy.special import polygamma, psi, digamma, gamma, gammaln, gammainc, gammaincc, gammasgn, rgamma, multigammaln
    + 6from autograd.scipy.special import erf, erfc, erfinv, erfcinv, logit, expit, logsumexp
      7
      8
      9__all__ = ["beta", "betainc", "betaln",
    @@ -181,7 +181,7 @@ 

    13 14 15@primitive -16def kn(n, x): +16def kn(n, x): 17 """Modified Bessel function of the second kind of integer order n""" 18 if int(n) != n: 19 raise TypeError("The order 'n' needs to be an integer.") @@ -206,7 +206,7 @@

    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -262,7 +262,7 @@ 
    References
    Examples
    -
    >>> import scipy.special as sc
    +
    >>> import scipy.special as sc
     
    @@ -322,7 +322,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -390,6 +390,9 @@ 
    Notes
    function by multiplying the result of betainc(a, b, x) by beta(a, b).

    +

    This function wraps the ibeta routine from the +Boost Math C++ library 2.

    +
    References
    Examples
    @@ -397,7 +400,7 @@
    Examples

    Let \( B(a, b) \) be the beta function.

    -
    >>> import scipy.special as sc
    +
    >>> import scipy.special as sc
     
    @@ -443,6 +446,10 @@
    Examples

    NIST Digital Library of Mathematical Functions https://dlmf.nist.gov/8.17 

    + +
  • +

    The Boost Developers. "Boost C++ Libraries". https://www.boost.org/

    +
  • @@ -462,7 +469,7 @@
    Examples

    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -510,8 +517,8 @@ 
    See Also
    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import betaln, beta
    +
    >>> import numpy as np
    +>>> from scipy.special import betaln, beta
     
    @@ -565,7 +572,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -614,7 +621,7 @@ 
    References
    Examples
    -
    >>> from scipy import special
    +
    >>> from scipy import special
     >>> x = [2, 3, 25.5]
     >>> special.polygamma(1, x)
     array([ 0.64493407,  0.39493407,  0.03999467])
    @@ -639,7 +646,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -700,7 +707,7 @@ 
    References
    Examples
    -
    >>> from scipy.special import psi
    +
    >>> from scipy.special import psi
     >>> z = 3 + 4j
     >>> psi(z)
     (1.55035981733341+1.0105022091860445j)
    @@ -757,7 +764,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -818,7 +825,7 @@ 
    References
    Examples
    -
    >>> from scipy.special import psi
    +
    >>> from scipy.special import psi
     >>> z = 3 + 4j
     >>> psi(z)
     (1.55035981733341+1.0105022091860445j)
    @@ -875,7 +882,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -928,16 +935,41 @@ 
    Notes
    which, combined with the fact that \( \Gamma(1) = 1 \), implies the above identity for \( z = n \).

    +

    The gamma function has poles at non-negative integers and the sign +of infinity as z approaches each pole depends upon the direction in +which the pole is approached. For this reason, the consistent thing +is for gamma(z) to return NaN at negative integers, and to return +-inf when x = -0.0 and +inf when x = 0.0, using the signbit of zero +to signify the direction in which the origin is being approached. This +is for instance what is recommended for the gamma function in annex F +entry 9.5.4 of the Iso C 99 standard [isoc99]_.

    + +

    Prior to SciPy version 1.15, scipy.special.gamma(z) returned +inf +at each pole. This was fixed in version 1.15, but with the following +consequence. Expressions where gamma appears in the denominator +such as

    + +

    gamma(u) * gamma(v) / (gamma(w) * gamma(x))

    + +

    no longer evaluate to 0 if the numerator is well defined but there is a +pole in the denominator. Instead such expressions evaluate to NaN. We +recommend instead using the function rgamma for the reciprocal gamma +function in such cases. The above expression could for instance be written +as

    + +

    gamma(u) * gamma(v) * (rgamma(w) * rgamma(x))

    +
    References

    .. [dlmf] NIST Digital Library of Mathematical Functions - https://dlmf.nist.gov/5.2#E1

    + https://dlmf.nist.gov/5.2#E1 +.. [isoc99] https://www.open-std.org/jtc1/sc22/wg14/www/docs/n1256.pdf

    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import gamma, factorial
    +
    >>> import numpy as np
    +>>> from scipy.special import gamma, factorial
     
    @@ -972,7 +1004,7 @@
    Examples
    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> plt.plot(x, y, 'b', alpha=0.6, label='gamma(x)')
     >>> k = np.arange(1, 7)
     >>> plt.plot(k, factorial(k-1), 'k*', alpha=0.6,
    @@ -1002,7 +1034,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1071,8 +1103,8 @@ 
    References
    Examples
    -
    >>> import numpy as np
    ->>> import scipy.special as sc
    +
    >>> import numpy as np
    +>>> import scipy.special as sc
     
    @@ -1119,7 +1151,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1188,7 +1220,7 @@ 
    References
    Examples
    -
    >>> import scipy.special as sc
    +
    >>> import scipy.special as sc
     
    @@ -1228,7 +1260,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1297,7 +1329,7 @@ 
    References
    Examples
    -
    >>> import scipy.special as sc
    +
    >>> import scipy.special as sc
     
    @@ -1338,7 +1370,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1406,8 +1438,8 @@ 
    References
    Examples
    -
    >>> import numpy as np
    ->>> import scipy.special as sc
    +
    >>> import numpy as np
    +>>> import scipy.special as sc
     
    @@ -1454,7 +1486,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1513,7 +1545,7 @@ 
    References
    Examples
    -
    >>> import scipy.special as sc
    +
    >>> import scipy.special as sc
     
    @@ -1559,7 +1591,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1618,8 +1650,8 @@ 
    References
    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import multigammaln, gammaln
    +
    >>> import numpy as np
    +>>> from scipy.special import multigammaln, gammaln
     >>> a = 23.5
     >>> d = 10
     >>> multigammaln(a, d)
    @@ -1652,7 +1684,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1686,7 +1718,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1754,7 +1786,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import j0
    +
    >>> from scipy.special import j0
     >>> j0(1.)
     0.7651976865579665
     
    @@ -1763,7 +1795,7 @@
    Examples

    Calculate the function at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> j0(np.array([-2., 0., 4.]))
     array([ 0.22389078,  1.        , -0.39714981])
     
    @@ -1772,7 +1804,7 @@
    Examples

    Plot the function from -20 to 20.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-20., 20., 1000)
     >>> y = j0(x)
    @@ -1807,7 +1839,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1872,7 +1904,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import y0
    +
    >>> from scipy.special import y0
     >>> y0(1.)
     0.08825696421567697
     
    @@ -1881,7 +1913,7 @@
    Examples

    Calculate at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> y0(np.array([0.5, 2., 3.]))
     array([-0.44451873,  0.51037567,  0.37685001])
     
    @@ -1890,7 +1922,7 @@
    Examples

    Plot the function from 0 to 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(0., 10., 1000)
     >>> y = y0(x)
    @@ -1925,7 +1957,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -1986,7 +2018,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import j1
    +
    >>> from scipy.special import j1
     >>> j1(1.)
     0.44005058574493355
     
    @@ -1995,7 +2027,7 @@
    Examples

    Calculate the function at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> j1(np.array([-2., 0., 4.]))
     array([-0.57672481,  0.        , -0.06604333])
     
    @@ -2004,7 +2036,7 @@
    Examples

    Plot the function from -20 to 20.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-20., 20., 1000)
     >>> y = j1(x)
    @@ -2039,7 +2071,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2100,7 +2132,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import y1
    +
    >>> from scipy.special import y1
     >>> y1(1.)
     -0.7812128213002888
     
    @@ -2109,7 +2141,7 @@
    Examples

    Calculate at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> y1(np.array([0.5, 2., 3.]))
     array([-1.47147239, -0.10703243,  0.32467442])
     
    @@ -2118,7 +2150,7 @@
    Examples

    Plot the function from 0 to 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(0., 10., 1000)
     >>> y = y1(x)
    @@ -2153,7 +2185,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2228,7 +2260,7 @@ 
    Examples

    Evaluate the function of order 0 at one point.

    -
    >>> from scipy.special import jv
    +
    >>> from scipy.special import jv
     >>> jv(0, 1.)
     0.7651976865579666
     
    @@ -2255,7 +2287,7 @@
    Examples
    array for z.

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> points = np.array([-2., 0., 3.])
     >>> jv(0, points)
     array([ 0.22389078,  1.        , -0.26005195])
    @@ -2283,7 +2315,7 @@ 
    Examples

    Plot the functions of order 0 to 3 from -10 to 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-10., 10., 1000)
     >>> for i in range(4):
    @@ -2320,7 +2352,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2381,7 +2413,7 @@ 
    Examples

    Evaluate the function of order 0 at one point.

    -
    >>> from scipy.special import yn
    +
    >>> from scipy.special import yn
     >>> yn(0, 1.)
     0.08825696421567697
     
    @@ -2408,7 +2440,7 @@
    Examples
    array for z.

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> points = np.array([0.5, 3., 8.])
     >>> yn(0, points)
     array([-0.44451873,  0.37685001,  0.22352149])
    @@ -2436,7 +2468,7 @@ 
    Examples

    Plot the functions of order 0 to 3 from 0 to 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(0., 10., 1000)
     >>> for i in range(4):
    @@ -2473,7 +2505,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2536,7 +2568,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import i0
    +
    >>> from scipy.special import i0
     >>> i0(1.)
     1.2660658777520082
     
    @@ -2545,7 +2577,7 @@
    Examples

    Calculate at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> i0(np.array([-2., 0., 3.5]))
     array([2.2795853 , 1.        , 7.37820343])
     
    @@ -2554,7 +2586,7 @@
    Examples

    Plot the function from -10 to 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-10., 10., 1000)
     >>> y = i0(x)
    @@ -2589,7 +2621,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2653,7 +2685,7 @@ 
    Examples

    Calculate the function at one point:

    -
    >>> from scipy.special import i1
    +
    >>> from scipy.special import i1
     >>> i1(1.)
     0.5651591039924851
     
    @@ -2662,7 +2694,7 @@
    Examples

    Calculate the function at several points:

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> i1(np.array([-2., 0., 6.]))
     array([-1.59063685,  0.        , 61.34193678])
     
    @@ -2671,7 +2703,7 @@
    Examples

    Plot the function between -10 and 10.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-10., 10., 1000)
     >>> y = i1(x)
    @@ -2706,7 +2738,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2786,7 +2818,7 @@ 
    Examples

    Evaluate the function of order 0 at one point.

    -
    >>> from scipy.special import iv
    +
    >>> from scipy.special import iv
     >>> iv(0, 1.)
     1.2660658777520084
     
    @@ -2813,7 +2845,7 @@
    Examples
    array for z.

    -
    >>> import numpy as np
    +
    >>> import numpy as np
     >>> points = np.array([-2., 0., 3.])
     >>> iv(0, points)
     array([2.2795853 , 1.        , 4.88079259])
    @@ -2841,7 +2873,7 @@ 
    Examples

    Plot the functions of order 0 to 3 from -5 to 5.

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> fig, ax = plt.subplots()
     >>> x = np.linspace(-5., 5., 1000)
     >>> for i in range(4):
    @@ -2882,7 +2914,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -2969,9 +3001,9 @@ 
    Examples
    a finite number.

    -
    >>> from scipy.special import iv, ive
    ->>> import numpy as np
    ->>> import matplotlib.pyplot as plt
    +
    >>> from scipy.special import iv, ive
    +>>> import numpy as np
    +>>> import matplotlib.pyplot as plt
     >>> iv(3, 1000.), ive(3, 1000.)
     (inf, 0.01256056218254712)
     
    @@ -3049,7 +3081,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3103,9 +3135,9 @@ 
    References
    Examples
    -
    >>> import numpy as np
    ->>> from scipy import special
    ->>> import matplotlib.pyplot as plt
    +
    >>> import numpy as np
    +>>> from scipy import special
    +>>> import matplotlib.pyplot as plt
     >>> x = np.linspace(-3, 3)
     >>> plt.plot(x, special.erf(x))
     >>> plt.xlabel('$x$')
    @@ -3136,7 +3168,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3182,9 +3214,9 @@ 
    References
    Examples
    -
    >>> import numpy as np
    ->>> from scipy import special
    ->>> import matplotlib.pyplot as plt
    +
    >>> import numpy as np
    +>>> from scipy import special
    +>>> import matplotlib.pyplot as plt
     >>> x = np.linspace(-3, 3)
     >>> plt.plot(x, special.erfc(x))
     >>> plt.xlabel('$x$')
    @@ -3215,7 +3247,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3266,12 +3298,19 @@ 
    See Also
    erfc: Complementary error function, 1 - erf(x)
    erfcinv: Inverse of the complementary error function

    +
    Notes
    + +

    This function wraps the erf_inv routine from the +Boost Math C++ library 1.

    + +
    References
    +
    Examples
    -
    >>> import numpy as np
    ->>> import matplotlib.pyplot as plt
    ->>> from scipy.special import erfinv, erf
    +
    >>> import numpy as np
    +>>> import matplotlib.pyplot as plt
    +>>> from scipy.special import erfinv, erf
     
    @@ -3310,6 +3349,15 @@
    Examples
    >>> plt.show()
    + +
    +
    +
      +
    1. +

      The Boost Developers. "Boost C++ Libraries". https://www.boost.org/

      +
    2. +
    +
    @@ -3327,7 +3375,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3383,9 +3431,9 @@ 
    See Also
    Examples
    -
    >>> import numpy as np
    ->>> import matplotlib.pyplot as plt
    ->>> from scipy.special import erfcinv
    +
    >>> import numpy as np
    +>>> import matplotlib.pyplot as plt
    +>>> from scipy.special import erfcinv
     
    @@ -3433,7 +3481,7 @@
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3451,8 +3499,7 @@ 
    Examples

    logit(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    -

    """ -logit(x, out=None)

    +

    logit(x, out=None)

    Logit ufunc for ndarrays.

    @@ -3491,8 +3538,8 @@
    Notes
    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import logit, expit
    +
    >>> import numpy as np
    +>>> from scipy.special import logit, expit
     
    @@ -3513,7 +3560,7 @@
    Examples

    Plot logit(x) for x in [0, 1]:

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> x = np.linspace(0, 1, 501)
     >>> y = logit(x)
     >>> plt.plot(x, y)
    @@ -3541,7 +3588,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3598,8 +3645,8 @@ 
    Notes
    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import expit, logit
    +
    >>> import numpy as np
    +>>> from scipy.special import expit, logit
     
    @@ -3620,7 +3667,7 @@
    Examples

    Plot expit(x) for x in [-6, 6]:

    -
    >>> import matplotlib.pyplot as plt
    +
    >>> import matplotlib.pyplot as plt
     >>> x = np.linspace(-6, 6, 121)
     >>> y = expit(x)
     >>> plt.plot(x, y)
    @@ -3648,7 +3695,7 @@ 
    Examples
    36    @wraps(f_raw)
    -37    def f_wrapped(*args, **kwargs):
    +37    def f_wrapped(*args, **kwargs):
     38        boxed_args, trace, node_constructor = find_top_boxed_args(args)
     39        if boxed_args:
     40            argvals = subvals(args, [(argnum, box._value) for argnum, box in boxed_args])
    @@ -3722,11 +3769,15 @@ 
    Notes
    only handles two arguments. logaddexp.reduce is similar to this function, but may be less stable.

    +

    The logarithm is a multivalued function: for each \( x \) there is an +infinite number of \( z \) such that \( exp(z) = x \). The convention +is to return the \( z \) whose imaginary part lies in \( (-pi, pi] \).

    +
    Examples
    -
    >>> import numpy as np
    ->>> from scipy.special import logsumexp
    +
    >>> import numpy as np
    +>>> from scipy.special import logsumexp
     >>> a = np.arange(10)
     >>> logsumexp(a)
     9.4586297444267107
    diff --git a/docs/search.js b/docs/search.js
    index 01dc94a6..88de728b 100644
    --- a/docs/search.js
    +++ b/docs/search.js
    @@ -1,6 +1,6 @@
     window.pdocSearch = (function(){
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configuration"),this.buildDefaultConfig(n)}},t.Configuration.prototype.buildDefaultConfig=function(e){this.reset(),e.forEach(function(e){this.config[e]={boost:1,bool:"OR",expand:!1}},this)},t.Configuration.prototype.buildUserConfig=function(e,n){var i="OR",o=!1;if(this.reset(),"bool"in e&&(i=e.bool||i),"expand"in e&&(o=e.expand||o),"fields"in e)for(var r in e.fields)if(n.indexOf(r)>-1){var s=e.fields[r],u=o;void 0!=s.expand&&(u=s.expand),this.config[r]={boost:s.boost||0===s.boost?s.boost:1,bool:s.bool||i,expand:u}}else t.utils.warn("field name in user configuration not found in index instance fields");else this.addAllFields2UserConfig(i,o,n)},t.Configuration.prototype.addAllFields2UserConfig=function(e,t,n){n.forEach(function(n){this.config[n]={boost:1,bool:e,expand:t}},this)},t.Configuration.prototype.get=function(){return this.config},t.Configuration.prototype.reset=function(){this.config={}},lunr.SortedSet=function(){this.length=0,this.elements=[]},lunr.SortedSet.load=function(e){var t=new this;return t.elements=e,t.length=e.length,t},lunr.SortedSet.prototype.add=function(){var e,t;for(e=0;e1;){if(r===e)return o;e>r&&(t=o),r>e&&(n=o),i=n-t,o=t+Math.floor(i/2),r=this.elements[o]}return r===e?o:-1},lunr.SortedSet.prototype.locationFor=function(e){for(var t=0,n=this.elements.length,i=n-t,o=t+Math.floor(i/2),r=this.elements[o];i>1;)e>r&&(t=o),r>e&&(n=o),i=n-t,o=t+Math.floor(i/2),r=this.elements[o];return r>e?o:e>r?o+1:void 0},lunr.SortedSet.prototype.intersect=function(e){for(var t=new lunr.SortedSet,n=0,i=0,o=this.length,r=e.length,s=this.elements,u=e.elements;;){if(n>o-1||i>r-1)break;s[n]!==u[i]?s[n]u[i]&&i++:(t.add(s[n]),n++,i++)}return t},lunr.SortedSet.prototype.clone=function(){var e=new lunr.SortedSet;return e.elements=this.toArray(),e.length=e.elements.length,e},lunr.SortedSet.prototype.union=function(e){var t,n,i;this.length>=e.length?(t=this,n=e):(t=e,n=this),i=t.clone();for(var o=0,r=n.toArray();oWhat is pyerrors?

    \n\n

    pyerrors is a python package for error computation and propagation of Markov chain Monte Carlo data.\nIt is based on the gamma method arXiv:hep-lat/0306017. Some of its features are:

    \n\n
      \n
    • automatic differentiation for exact linear error propagation as suggested in arXiv:1809.01289 (partly based on the autograd package).
    • \n
    • treatment of slow modes in the simulation as suggested in arXiv:1009.5228.
    • \n
    • coherent error propagation for data from different Markov chains.
    • \n
    • non-linear fits with x- and y-errors and exact linear error propagation based on automatic differentiation as introduced in arXiv:1809.01289.
    • \n
    • real and complex matrix operations and their error propagation based on automatic differentiation (Matrix inverse, Cholesky decomposition, calculation of eigenvalues and eigenvectors, singular value decomposition...).
    • \n
    \n\n

    More detailed examples can found in the GitHub repository \"badge\".

    \n\n

    If you use pyerrors for research that leads to a publication please consider citing:

    \n\n
      \n
    • Fabian Joswig, Simon Kuberski, Justus T. Kuhlmann, Jan Neuendorf, pyerrors: a python framework for error analysis of Monte Carlo data. Comput.Phys.Commun. 288 (2023) 108750.
    • \n
    • Ulli Wolff, Monte Carlo errors with less errors. Comput.Phys.Commun. 156 (2004) 143-153, Comput.Phys.Commun. 176 (2007) 383 (erratum).
    • \n
    • Alberto Ramos, Automatic differentiation for error analysis of Monte Carlo data. Comput.Phys.Commun. 238 (2019) 19-35.
    • \n
    \n\n

    and

    \n\n
      \n
    • Stefan Schaefer, Rainer Sommer, Francesco Virotta, Critical slowing down and error analysis in lattice QCD simulations. Nucl.Phys.B 845 (2011) 93-119.
    • \n
    \n\n

    where applicable.

    \n\n

    There exist similar publicly available implementations of gamma method error analysis suites in Fortran, Julia and Python.

    \n\n

    Installation

    \n\n

    Install the most recent release using pip and pypi:

    \n\n
    \n
    python -m pip install pyerrors     # Fresh install\npython -m pip install -U pyerrors  # Update\n
    \n
    \n\n

    Install the most recent release using conda and conda-forge:

    \n\n
    \n
    conda install -c conda-forge pyerrors  # Fresh install\nconda update -c conda-forge pyerrors   # Update\n
    \n
    \n\n

    Install the current develop version:

    \n\n
    \n
    python -m pip install -U --no-deps --force-reinstall git+https://github.com/fjosw/pyerrors.git@develop\n
    \n
    \n\n

    (Also works for any feature branch).

    \n\n

    Basic example

    \n\n
    \n
    import numpy as np\nimport pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name']) # Initialize an Obs object\nmy_new_obs = 2 * np.log(my_obs) / my_obs ** 2 # Construct derived Obs object\nmy_new_obs.gamma_method()                     # Estimate the statistical error\nprint(my_new_obs)                             # Print the result to stdout\n> 0.31498(72)\n
    \n
    \n\n

    The Obs class

    \n\n

    pyerrors introduces a new datatype, Obs, which simplifies error propagation and estimation for auto- and cross-correlated data.\nAn Obs object can be initialized with two arguments, the first is a list containing the samples for an observable from a Monte Carlo chain.\nThe samples can either be provided as python list or as numpy array.\nThe second argument is a list containing the names of the respective Monte Carlo chains as strings. These strings uniquely identify a Monte Carlo chain/ensemble. It is crucial for the correct error propagation that observations from the same Monte Carlo history are labeled with the same name. See Multiple ensembles/replica for details.

    \n\n
    \n
    import pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name'])\n
    \n
    \n\n

    Error propagation

    \n\n

    When performing mathematical operations on Obs objects the correct error propagation is intrinsically taken care of using a first order Taylor expansion\n$$\\delta_f^i=\\sum_\\alpha \\bar{f}_\\alpha \\delta_\\alpha^i\\,,\\quad \\delta_\\alpha^i=a_\\alpha^i-\\bar{a}_\\alpha\\,,$$\nas introduced in arXiv:hep-lat/0306017.\nThe required derivatives $\\bar{f}_\\alpha$ are evaluated up to machine precision via automatic differentiation as suggested in arXiv:1809.01289.

    \n\n

    The Obs class is designed such that mathematical numpy functions can be used on Obs just as for regular floats.

    \n\n
    \n
    import numpy as np\nimport pyerrors as pe\n\nmy_obs1 = pe.Obs([samples1], ['ensemble_name'])\nmy_obs2 = pe.Obs([samples2], ['ensemble_name'])\n\nmy_sum = my_obs1 + my_obs2\n\nmy_m_eff = np.log(my_obs1 / my_obs2)\n\niamzero = my_m_eff - my_m_eff\n# Check that value and fluctuations are zero within machine precision\nprint(iamzero == 0.0)\n> True\n
    \n
    \n\n

    Error estimation

    \n\n

    The error estimation within pyerrors is based on the gamma method introduced in arXiv:hep-lat/0306017.\nAfter having arrived at the derived quantity of interest the gamma_method can be called as detailed in the following example.

    \n\n
    \n
    my_sum.gamma_method()\nprint(my_sum)\n> 1.70(57)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 5.72046658e-01 +/- 7.56746598e-02 (33.650%)\n>  t_int         2.71422900e+00 +/- 6.40320983e-01 S = 2.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    The gamma_method is not automatically called after every intermediate step in order to prevent computational overhead.

    \n\n

    We use the following definition of the integrated autocorrelation time established in Madras & Sokal 1988\n$$\\tau_\\mathrm{int}=\\frac{1}{2}+\\sum_{t=1}^{W}\\rho(t)\\geq \\frac{1}{2}\\,.$$\nThe window $W$ is determined via the automatic windowing procedure described in arXiv:hep-lat/0306017.\nThe standard value for the parameter $S$ of this automatic windowing procedure is $S=2$. Other values for $S$ can be passed to the gamma_method as parameter.

    \n\n
    \n
    my_sum.gamma_method(S=3.0)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.30675201e-01 +/- 1.04585650e-01 (37.099%)\n>  t_int         3.29909703e+00 +/- 9.77310102e-01 S = 3.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    The integrated autocorrelation time $\\tau_\\mathrm{int}$ and the autocorrelation function $\\rho(W)$ can be monitored via the methods pyerrors.obs.Obs.plot_tauint and pyerrors.obs.Obs.plot_rho.

    \n\n

    If the parameter $S$ is set to zero it is assumed that the dataset does not exhibit any autocorrelation and the window size is chosen to be zero.\nIn this case the error estimate is identical to the sample standard error.

    \n\n

    Exponential tails

    \n\n

    Slow modes in the Monte Carlo history can be accounted for by attaching an exponential tail to the autocorrelation function $\\rho$ as suggested in arXiv:1009.5228. The longest autocorrelation time in the history, $\\tau_\\mathrm{exp}$, can be passed to the gamma_method as parameter. In this case the automatic windowing procedure is vacated and the parameter $S$ does not affect the error estimate.

    \n\n
    \n
    my_sum.gamma_method(tau_exp=7.2)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.28097762e-01 +/- 5.79077524e-02 (36.947%)\n>  t_int         3.27218667e+00 +/- 7.99583654e-01 tau_exp = 7.20,  N_sigma = 1\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    For the full API see pyerrors.obs.Obs.gamma_method.

    \n\n

    Multiple ensembles/replica

    \n\n

    Error propagation for multiple ensembles (Markov chains with different simulation parameters) is handled automatically. Ensembles are uniquely identified by their name.

    \n\n
    \n
    obs1 = pe.Obs([samples1], ['ensemble1'])\nobs2 = pe.Obs([samples2], ['ensemble2'])\n\nmy_sum = obs1 + obs2\nmy_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 2 ensembles:\n>   \u00b7 Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000)\n>   \u00b7 Ensemble 'ensemble2' : 500 configurations (from 1 to 500)\n
    \n
    \n\n

    Observables from the same Monte Carlo chain have to be initialized with the same name for correct error propagation. If different names were used in this case the data would be treated as statistically independent resulting in loss of relevant information and a potential over or under estimate of the statistical error.

    \n\n

    pyerrors identifies multiple replica (independent Markov chains with identical simulation parameters) by the vertical bar | in the name of the data set.

    \n\n
    \n
    obs1 = pe.Obs([samples1], ['ensemble1|r01'])\nobs2 = pe.Obs([samples2], ['ensemble1|r02'])\n\n> my_sum = obs1 + obs2\n> my_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1'\n>     \u00b7 Replicum 'r01' : 1000 configurations (from 1 to 1000)\n>     \u00b7 Replicum 'r02' : 500 configurations (from 1 to 500)\n
    \n
    \n\n

    Error estimation for multiple ensembles

    \n\n

    In order to keep track of different error analysis parameters for different ensembles one can make use of global dictionaries as detailed in the following example.

    \n\n
    \n
    pe.Obs.S_dict['ensemble1'] = 2.5\npe.Obs.tau_exp_dict['ensemble2'] = 8.0\npe.Obs.tau_exp_dict['ensemble3'] = 2.0\n
    \n
    \n\n

    In case the gamma_method is called without any parameters it will use the values specified in the dictionaries for the respective ensembles.\nPassing arguments to the gamma_method still dominates over the dictionaries.

    \n\n

    Irregular Monte Carlo chains

    \n\n

    Obs objects defined on irregular Monte Carlo chains can be initialized with the parameter idl.

    \n\n
    \n
    # Observable defined on configurations 20 to 519\nobs1 = pe.Obs([samples1], ['ensemble1'], idl=[range(20, 520)])\nobs1.details()\n> Result         9.98319881e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 20 to 519)\n\n# Observable defined on every second configuration between 5 and 1003\nobs2 = pe.Obs([samples2], ['ensemble1'], idl=[range(5, 1005, 2)])\nobs2.details()\n> Result         9.99100712e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2)\n\n# Observable defined on configurations 2, 9, 28, 29 and 501\nobs3 = pe.Obs([samples3], ['ensemble1'], idl=[[2, 9, 28, 29, 501]])\nobs3.details()\n> Result         1.01718064e+00\n> 5 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 5 configurations (irregular range)\n
    \n
    \n\n

    Obs objects defined on regular and irregular histories of the same ensemble can be combined with each other and the correct error propagation and estimation is automatically taken care of.

    \n\n

    Warning: Irregular Monte Carlo chains can result in odd patterns in the autocorrelation functions.\nMake sure to check the autocorrelation time with e.g. pyerrors.obs.Obs.plot_rho or pyerrors.obs.Obs.plot_tauint.

    \n\n

    For the full API see pyerrors.obs.Obs.

    \n\n

    Correlators

    \n\n

    When one is not interested in single observables but correlation functions, pyerrors offers the Corr class which simplifies the corresponding error propagation and provides the user with a set of standard methods. In order to initialize a Corr objects one needs to arrange the data as a list of Obs

    \n\n
    \n
    my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0      0.7957(80)\n> 1      0.5156(51)\n> 2      0.3227(33)\n> 3      0.2041(21)\n
    \n
    \n\n

    In case the correlation functions are not defined on the outermost timeslices, for example because of fixed boundary conditions, a padding can be introduced.

    \n\n
    \n
    my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3], padding=[1, 1])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0\n> 1      0.7957(80)\n> 2      0.5156(51)\n> 3      0.3227(33)\n> 4      0.2041(21)\n> 5\n
    \n
    \n\n

    The individual entries of a correlator can be accessed via slicing

    \n\n
    \n
    print(my_corr[3])\n> 0.3227(33)\n
    \n
    \n\n

    Error propagation with the Corr class works very similar to Obs objects. Mathematical operations are overloaded and Corr objects can be computed together with other Corr objects, Obs objects or real numbers and integers.

    \n\n
    \n
    my_new_corr = 0.3 * my_corr[2] * my_corr * my_corr + 12 / my_corr\n
    \n
    \n\n

    pyerrors provides the user with a set of regularly used methods for the manipulation of correlator objects:

    \n\n
      \n
    • Corr.gamma_method applies the gamma method to all entries of the correlator.
    • \n
    • Corr.m_eff to construct effective masses. Various variants for periodic and fixed temporal boundary conditions are available.
    • \n
    • Corr.deriv returns the first derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
    • \n
    • Corr.second_deriv returns the second derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
    • \n
    • Corr.symmetric symmetrizes parity even correlations functions, assuming periodic boundary conditions.
    • \n
    • Corr.anti_symmetric anti-symmetrizes parity odd correlations functions, assuming periodic boundary conditions.
    • \n
    • Corr.T_symmetry averages a correlator with its time symmetry partner, assuming fixed boundary conditions.
    • \n
    • Corr.plateau extracts a plateau value from the correlator in a given range.
    • \n
    • Corr.roll periodically shifts the correlator.
    • \n
    • Corr.reverse reverses the time ordering of the correlator.
    • \n
    • Corr.correlate constructs a disconnected correlation function from the correlator and another Corr or Obs object.
    • \n
    • Corr.reweight reweights the correlator.
    • \n
    \n\n

    pyerrors can also handle matrices of correlation functions and extract energy states from these matrices via a generalized eigenvalue problem (see pyerrors.correlators.Corr.GEVP).

    \n\n

    For the full API see pyerrors.correlators.Corr.

    \n\n

    Complex valued observables

    \n\n

    pyerrors can handle complex valued observables via the class pyerrors.obs.CObs.\nCObs are initialized with a real and an imaginary part which both can be Obs valued.

    \n\n
    \n
    my_real_part = pe.Obs([samples1], ['ensemble1'])\nmy_imag_part = pe.Obs([samples2], ['ensemble1'])\n\nmy_cobs = pe.CObs(my_real_part, my_imag_part)\nmy_cobs.gamma_method()\nprint(my_cobs)\n> (0.9959(91)+0.659(28)j)\n
    \n
    \n\n

    Elementary mathematical operations are overloaded and samples are properly propagated as for the Obs class.

    \n\n
    \n
    my_derived_cobs = (my_cobs + my_cobs.conjugate()) / np.abs(my_cobs)\nmy_derived_cobs.gamma_method()\nprint(my_derived_cobs)\n> (1.668(23)+0.0j)\n
    \n
    \n\n

    The Covobs class

    \n\n

    In many projects, auxiliary data that is not based on Monte Carlo chains enters. Examples are experimentally determined mesons masses which are used to set the scale or renormalization constants. These numbers come with an error that has to be propagated through the analysis. The Covobs class allows to define such quantities in pyerrors. Furthermore, external input might consist of correlated quantities. An example are the parameters of an interpolation formula, which are defined via mean values and a covariance matrix between all parameters. The contribution of the interpolation formula to the error of a derived quantity therefore might depend on the complete covariance matrix.

    \n\n

    This concept is built into the definition of Covobs. In pyerrors, external input is defined by $M$ mean values, a $M\\times M$ covariance matrix, where $M=1$ is permissible, and a name that uniquely identifies the covariance matrix. Below, we define the pion mass, based on its mean value and error, 134.9768(5). Note, that the square of the error enters cov_Obs, since the second argument of this function is the covariance matrix of the Covobs.

    \n\n
    \n
    import pyerrors.obs as pe\n\nmpi = pe.cov_Obs(134.9768, 0.0005**2, 'pi^0 mass')\nmpi.gamma_method()\nmpi.details()\n> Result         1.34976800e+02 +/- 5.00000000e-04 +/- 0.00000000e+00 (0.000%)\n>  pi^0 mass     5.00000000e-04\n> 0 samples in 1 ensemble:\n>   \u00b7 Covobs   'pi^0 mass'\n
    \n
    \n\n

    The resulting object mpi is an Obs that contains a Covobs. In the following, it may be handled as any other Obs. The contribution of the covariance matrix to the error of an Obs is determined from the $M \\times M$ covariance matrix $\\Sigma$ and the gradient of the Obs with respect to the external quantities, which is the $1\\times M$ Jacobian matrix $J$, via\n$$s = \\sqrt{J^T \\Sigma J}\\,,$$\nwhere the Jacobian is computed for each derived quantity via automatic differentiation.

    \n\n

    Correlated auxiliary data is defined similarly to above, e.g., via

    \n\n
    \n
    RAP = pe.cov_Obs([16.7457, -19.0475], [[3.49591, -6.07560], [-6.07560, 10.5834]], 'R_AP, 1906.03445, (5.3a)')\nprint(RAP)\n> [Obs[16.7(1.9)], Obs[-19.0(3.3)]]\n
    \n
    \n\n

    where RAP now is a list of two Obs that contains the two correlated parameters.

    \n\n

    Since the gradient of a derived observable with respect to an external covariance matrix is propagated through the entire analysis, the Covobs class allows to quote the derivative of a result with respect to the external quantities. If these derivatives are published together with the result, small shifts in the definition of external quantities, e.g., the definition of the physical point, can be performed a posteriori based on the published information. This may help to compare results of different groups. The gradient of an Obs o with respect to a covariance matrix with the identifying string k may be accessed via

    \n\n
    \n
    o.covobs[k].grad\n
    \n
    \n\n

    Error propagation in iterative algorithms

    \n\n

    pyerrors supports exact linear error propagation for iterative algorithms like various variants of non-linear least squares fits or root finding. The derivatives required for the error propagation are calculated as described in arXiv:1809.01289.

    \n\n

    Least squares fits

    \n\n

    Standard non-linear least square fits with errors on the dependent but not the independent variables can be performed with pyerrors.fits.least_squares. As default solver the Levenberg-Marquardt algorithm implemented in scipy is used.

    \n\n

    Fit functions have to be of the following form

    \n\n
    \n
    import autograd.numpy as anp\n\ndef func(a, x):\n    return a[1] * anp.exp(-a[0] * x)\n
    \n
    \n\n

    It is important that numerical functions refer to autograd.numpy instead of numpy for the automatic differentiation in iterative algorithms to work properly.

    \n\n

    Fits can then be performed via

    \n\n
    \n
    fit_result = pe.fits.least_squares(x, y, func)\nprint("\\n", fit_result)\n> Fit with 2 parameters\n> Method: Levenberg-Marquardt\n> `ftol` termination condition is satisfied.\n> chisquare/d.o.f.: 0.9593035785160936\n\n>  Goodness of fit:\n> \u03c7\u00b2/d.o.f. = 0.959304\n> p-value   = 0.5673\n> Fit parameters:\n> 0      0.0548(28)\n> 1      1.933(64)\n
    \n
    \n\n

    where x is a list or numpy.array of floats and y is a list or numpy.array of Obs.

    \n\n

    Data stored in Corr objects can be fitted directly using the Corr.fit method.

    \n\n
    \n
    my_corr = pe.Corr(y)\nfit_result = my_corr.fit(func, fitrange=[12, 25])\n
    \n
    \n\n

    this can simplify working with absolute fit ranges and takes care of gaps in the data automatically.

    \n\n

    For fit functions with multiple independent variables the fit function can be of the form

    \n\n
    \n
    def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
    \n
    \n\n

    pyerrors also supports correlated fits which can be triggered via the parameter correlated_fit=True.\nDetails about how the required covariance matrix is estimated can be found in pyerrors.obs.covariance.\nDirect visualizations of the performed fits can be triggered via resplot=True or qqplot=True.

    \n\n

    For all available options including combined fits to multiple datasets see pyerrors.fits.least_squares.

    \n\n

    Total least squares fits

    \n\n

    pyerrors can also fit data with errors on both the dependent and independent variables using the total least squares method also referred to as orthogonal distance regression as implemented in scipy, see pyerrors.fits.least_squares. The syntax is identical to the standard least squares case, the only difference being that x also has to be a list or numpy.array of Obs.

    \n\n

    For the full API see pyerrors.fits for fits and pyerrors.roots for finding roots of functions.

    \n\n

    Matrix operations

    \n\n

    pyerrors provides wrappers for Obs- and CObs-valued matrix operations based on numpy.linalg. The supported functions include:

    \n\n
      \n
    • inv for the matrix inverse.
    • \n
    • cholseky for the Cholesky decomposition.
    • \n
    • det for the matrix determinant.
    • \n
    • eigh for eigenvalues and eigenvectors of hermitean matrices.
    • \n
    • eig for eigenvalues of general matrices.
    • \n
    • pinv for the Moore-Penrose pseudoinverse.
    • \n
    • svd for the singular-value-decomposition.
    • \n
    \n\n

    For the full API see pyerrors.linalg.

    \n\n

    Export data

    \n\n

    \n\n

    The preferred exported file format within pyerrors is json.gz. Files written to this format are valid JSON files that have been compressed using gzip. The structure of the content is inspired by the dobs format of the ALPHA collaboration. The aim of the format is to facilitate the storage of data in a self-contained way such that, even years after the creation of the file, it is possible to extract all necessary information:

    \n\n
      \n
    • What observables are stored? Possibly: How exactly are they defined.
    • \n
    • How does each single ensemble or external quantity contribute to the error of the observable?
    • \n
    • Who did write the file when and on which machine?
    • \n
    \n\n

    This can be achieved by storing all information in one single file. The export routines of pyerrors are written such that as much information as possible is written automatically as described in the following example

    \n\n
    \n
    my_obs = pe.Obs([samples], ["test_ensemble"])\nmy_obs.tag = "My observable"\n\npe.input.json.dump_to_json(my_obs, "test_output_file", description="This file contains a test observable")\n# For a single observable one can equivalently use the class method dump\nmy_obs.dump("test_output_file", description="This file contains a test observable")\n\ncheck = pe.input.json.load_json("test_output_file")\n\nprint(my_obs == check)\n> True\n
    \n
    \n\n

    The format also allows to directly write out the content of Corr objects or lists and arrays of Obs objects by passing the desired data to pyerrors.input.json.dump_to_json.

    \n\n

    json.gz format specification

    \n\n

    The first entries of the file provide optional auxiliary information:

    \n\n
      \n
    • program is a string that indicates which program was used to write the file.
    • \n
    • version is a string that specifies the version of the format.
    • \n
    • who is a string that specifies the user name of the creator of the file.
    • \n
    • date is a string and contains the creation date of the file.
    • \n
    • host is a string and contains the hostname of the machine where the file has been written.
    • \n
    • description contains information on the content of the file. This field is not filled automatically in pyerrors. The user is advised to provide as detailed information as possible in this field. Examples are: Input files of measurements or simulations, LaTeX formulae or references to publications to specify how the observables have been computed, details on the analysis strategy, ... This field may be any valid JSON type. Strings, arrays or objects (equivalent to dicts in python) are well suited to provide information.
    • \n
    \n\n

    The only necessary entry of the file is the field\n-obsdata, an array that contains the actual data.

    \n\n

    Each entry of the array belongs to a single structure of observables. Currently, these structures can be either of Obs, list, numpy.ndarray, Corr. All Obs inside a structure (with dimension > 0) have to be defined on the same set of configurations. Different structures, that are represented by entries of the array obsdata, are treated independently. Each entry of the array obsdata has the following required entries:

    \n\n
      \n
    • type is a string that specifies the type of the structure. This allows to parse the content to the correct form after reading the file. It is always possible to interpret the content as list of Obs.
    • \n
    • value is an array that contains the mean values of the Obs inside the structure.\nThe following entries are optional:
    • \n
    • layout is a string that specifies the layout of multi-dimensional structures. Examples are \"2, 2\" for a 2x2 dimensional matrix or \"64, 4, 4\" for a Corr with $T=64$ and 4x4 matrices on each time slices. \"1\" denotes a single Obs. Multi-dimensional structures are stored in row-major format (see below).
    • \n
    • tag is any JSON type. It contains additional information concerning the structure. The tag of an Obs in pyerrors is written here.
    • \n
    • reweighted is a Bool that may be used to specify, whether the Obs in the structure have been reweighted.
    • \n
    • data is an array that contains the data from MC chains. We will define it below.
    • \n
    • cdata is an array that contains the data from external quantities with an error (Covobs in pyerrors). We will define it below.
    • \n
    \n\n

    The array data contains the data from MC chains. Each entry of the array corresponds to one ensemble and contains:

    \n\n
      \n
    • id, a string that contains the name of the ensemble
    • \n
    • replica, an array that contains an entry per replica of the ensemble.
    • \n
    \n\n

    Each entry of replica contains\nname, a string that contains the name of the replica\ndeltas, an array that contains the actual data.

    \n\n

    Each entry in deltas corresponds to one configuration of the replica and has $1+N$ many entries. The first entry is an integer that specifies the configuration number that, together with ensemble and replica name, may be used to uniquely identify the configuration on which the data has been obtained. The following N entries specify the deltas, i.e., the deviation of the observable from the mean value on this configuration, of each Obs inside the structure. Multi-dimensional structures are stored in a row-major format. For primary observables, such as correlation functions, $value + delta_i$ matches the primary data obtained on the configuration.

    \n\n

    The array cdata contains information about the contribution of auxiliary observables, represented by Covobs in pyerrors, to the total error of the observables. Each entry of the array belongs to one auxiliary covariance matrix and contains:

    \n\n
      \n
    • id, a string that identifies the covariance matrix
    • \n
    • layout, a string that defines the dimensions of the $M\\times M$ covariance matrix (has to be \"M, M\" or \"1\").
    • \n
    • cov, an array that contains the $M\\times M$ many entries of the covariance matrix, stored in row-major format.
    • \n
    • grad, an array that contains N entries, one for each Obs inside the structure. Each entry itself is an array, that contains the M gradients of the Nth observable with respect to the quantity that corresponds to the Mth diagonal entry of the covariance matrix.
    • \n
    \n\n

    A JSON schema that may be used to verify the correctness of a file with respect to the format definition is stored in ./examples/json_schema.json. The schema is a self-descriptive format definition and contains an exemplary file.

    \n\n

    Julia I/O routines for the json.gz format, compatible with ADerrors.jl, can be found here.

    \n"}, "pyerrors.correlators": {"fullname": "pyerrors.correlators", "modulename": "pyerrors.correlators", "kind": "module", "doc": "

    \n"}, "pyerrors.correlators.Corr": {"fullname": "pyerrors.correlators.Corr", "modulename": "pyerrors.correlators", "qualname": "Corr", "kind": "class", "doc": "

    The class for a correlator (time dependent sequence of pe.Obs).

    \n\n

    Everything, this class does, can be achieved using lists or arrays of Obs.\nBut it is simply more convenient to have a dedicated object for correlators.\nOne often wants to add or multiply correlators of the same length at every timeslice and it is inconvenient\nto iterate over all timeslices for every operation. This is especially true, when dealing with matrices.

    \n\n

    The correlator can have two types of content: An Obs at every timeslice OR a matrix at every timeslice.\nOther dependency (eg. spatial) are not supported.

    \n\n

    The Corr class can also deal with missing measurements or paddings for fixed boundary conditions.\nThe missing entries are represented via the None object.

    \n\n
    Initialization
    \n\n

    A simple correlator can be initialized with a list or a one-dimensional array of Obs or Cobs

    \n\n
    \n
    corr11 = pe.Corr([obs1, obs2])\ncorr11 = pe.Corr(np.array([obs1, obs2]))\n
    \n
    \n\n

    A matrix-valued correlator can either be initialized via a two-dimensional array of Corr objects

    \n\n
    \n
    matrix_corr = pe.Corr(np.array([[corr11, corr12], [corr21, corr22]]))\n
    \n
    \n\n

    or alternatively via a three-dimensional array of Obs or CObs of shape (T, N, N) where T is\nthe temporal extent of the correlator and N is the dimension of the matrix.

    \n"}, "pyerrors.correlators.Corr.__init__": {"fullname": "pyerrors.correlators.Corr.__init__", "modulename": "pyerrors.correlators", "qualname": "Corr.__init__", "kind": "function", "doc": "

    Initialize a Corr object.

    \n\n
    Parameters
    \n\n
      \n
    • data_input (list or array):\nlist of Obs or list of arrays of Obs or array of Corrs (see class docstring for details).
    • \n
    • padding (list, optional):\nList with two entries where the first labels the padding\nat the front of the correlator and the second the padding\nat the back.
    • \n
    • prange (list, optional):\nList containing the first and last timeslice of the plateau\nregion identified for this correlator.
    • \n
    \n", "signature": "(data_input, padding=[0, 0], prange=None)"}, "pyerrors.correlators.Corr.tag": {"fullname": "pyerrors.correlators.Corr.tag", "modulename": "pyerrors.correlators", "qualname": "Corr.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.content": {"fullname": "pyerrors.correlators.Corr.content", "modulename": "pyerrors.correlators", "qualname": "Corr.content", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.T": {"fullname": "pyerrors.correlators.Corr.T", "modulename": "pyerrors.correlators", "qualname": "Corr.T", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.prange": {"fullname": "pyerrors.correlators.Corr.prange", "modulename": "pyerrors.correlators", "qualname": "Corr.prange", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.reweighted": {"fullname": "pyerrors.correlators.Corr.reweighted", "modulename": "pyerrors.correlators", "qualname": "Corr.reweighted", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.gamma_method": {"fullname": "pyerrors.correlators.Corr.gamma_method", "modulename": "pyerrors.correlators", "qualname": "Corr.gamma_method", "kind": "function", "doc": "

    Apply the gamma method to the content of the Corr.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.gm": {"fullname": "pyerrors.correlators.Corr.gm", "modulename": "pyerrors.correlators", "qualname": "Corr.gm", "kind": "function", "doc": "

    Apply the gamma method to the content of the Corr.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.projected": {"fullname": "pyerrors.correlators.Corr.projected", "modulename": "pyerrors.correlators", "qualname": "Corr.projected", "kind": "function", "doc": "

    We need to project the Correlator with a Vector to get a single value at each timeslice.

    \n\n

    The method can use one or two vectors.\nIf two are specified it returns v1@G@v2 (the order might be very important.)\nBy default it will return the lowest source, which usually means unsmeared-unsmeared (0,0), but it does not have to

    \n", "signature": "(self, vector_l=None, vector_r=None, normalize=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.item": {"fullname": "pyerrors.correlators.Corr.item", "modulename": "pyerrors.correlators", "qualname": "Corr.item", "kind": "function", "doc": "

    Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice.

    \n\n
    Parameters
    \n\n
      \n
    • i (int):\nFirst index to be picked.
    • \n
    • j (int):\nSecond index to be picked.
    • \n
    \n", "signature": "(self, i, j):", "funcdef": "def"}, "pyerrors.correlators.Corr.plottable": {"fullname": "pyerrors.correlators.Corr.plottable", "modulename": "pyerrors.correlators", "qualname": "Corr.plottable", "kind": "function", "doc": "

    Outputs the correlator in a plotable format.

    \n\n

    Outputs three lists containing the timeslice index, the value on each\ntimeslice and the error on each timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.symmetric": {"fullname": "pyerrors.correlators.Corr.symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.symmetric", "kind": "function", "doc": "

    Symmetrize the correlator around x0=0.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.anti_symmetric": {"fullname": "pyerrors.correlators.Corr.anti_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.anti_symmetric", "kind": "function", "doc": "

    Anti-symmetrize the correlator around x0=0.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.is_matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.is_matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.is_matrix_symmetric", "kind": "function", "doc": "

    Checks whether a correlator matrices is symmetric on every timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.trace": {"fullname": "pyerrors.correlators.Corr.trace", "modulename": "pyerrors.correlators", "qualname": "Corr.trace", "kind": "function", "doc": "

    Calculates the per-timeslice trace of a correlator matrix.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.matrix_symmetric", "kind": "function", "doc": "

    Symmetrizes the correlator matrices on every timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.GEVP": {"fullname": "pyerrors.correlators.Corr.GEVP", "modulename": "pyerrors.correlators", "qualname": "Corr.GEVP", "kind": "function", "doc": "

    Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors.

    \n\n

    The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the\nlargest eigenvalue(s). The eigenvector(s) for the individual states can be accessed via slicing

    \n\n
    \n
    C.GEVP(t0=2)[0]  # Ground state vector(s)\nC.GEVP(t0=2)[:3]  # Vectors for the lowest three states\n
    \n
    \n\n
    Parameters
    \n\n
      \n
    • t0 (int):\nThe time t0 for the right hand side of the GEVP according to $G(t)v_i=\\lambda_i G(t_0)v_i$
    • \n
    • ts (int):\nfixed time $G(t_s)v_i=\\lambda_i G(t_0)v_i$ if sort=None.\nIf sort=\"Eigenvector\" it gives a reference point for the sorting method.
    • \n
    • sort (string):\nIf this argument is set, a list of self.T vectors per state is returned. If it is set to None, only one vector is returned.\n
        \n
      • \"Eigenvalue\": The eigenvector is chosen according to which eigenvalue it belongs individually on every timeslice. (default)
      • \n
      • \"Eigenvector\": Use the method described in arXiv:2004.10472 to find the set of v(t) belonging to the state.\nThe reference state is identified by its eigenvalue at $t=t_s$.
      • \n
      • None: The GEVP is solved only at ts, no sorting is necessary
      • \n
    • \n
    • vector_obs (bool):\nIf True, uncertainties are propagated in the eigenvector computation (default False).
    • \n
    \n\n
    Other Parameters
    \n\n
      \n
    • state (int):\nReturns only the vector(s) for a specified state. The lowest state is zero.
    • \n
    • method (str):\nMethod used to solve the GEVP.\n
        \n
      • \"eigh\": Use scipy.linalg.eigh to solve the GEVP. (default for vector_obs=False)
      • \n
      • \"cholesky\": Use manually implemented solution via the Cholesky decomposition. Automatically chosen if vector_obs==True.
      • \n
    • \n
    \n", "signature": "(self, t0, ts=None, sort='Eigenvalue', vector_obs=False, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.Eigenvalue": {"fullname": "pyerrors.correlators.Corr.Eigenvalue", "modulename": "pyerrors.correlators", "qualname": "Corr.Eigenvalue", "kind": "function", "doc": "

    Determines the eigenvalue of the GEVP by solving and projecting the correlator

    \n\n
    Parameters
    \n\n
      \n
    • state (int):\nThe state one is interested in ordered by energy. The lowest state is zero.
    • \n
    • All other parameters are identical to the ones of Corr.GEVP.
    • \n
    \n", "signature": "(self, t0, ts=None, state=0, sort='Eigenvalue', **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.Hankel": {"fullname": "pyerrors.correlators.Corr.Hankel", "modulename": "pyerrors.correlators", "qualname": "Corr.Hankel", "kind": "function", "doc": "

    Constructs an NxN Hankel matrix

    \n\n

    C(t) c(t+1) ... c(t+n-1)\nC(t+1) c(t+2) ... c(t+n)\n.................\nC(t+(n-1)) c(t+n) ... c(t+2(n-1))

    \n\n
    Parameters
    \n\n
      \n
    • N (int):\nDimension of the Hankel matrix
    • \n
    • periodic (bool, optional):\ndetermines whether the matrix is extended periodically
    • \n
    \n", "signature": "(self, N, periodic=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.roll": {"fullname": "pyerrors.correlators.Corr.roll", "modulename": "pyerrors.correlators", "qualname": "Corr.roll", "kind": "function", "doc": "

    Periodically shift the correlator by dt timeslices

    \n\n
    Parameters
    \n\n
      \n
    • dt (int):\nnumber of timeslices
    • \n
    \n", "signature": "(self, dt):", "funcdef": "def"}, "pyerrors.correlators.Corr.reverse": {"fullname": "pyerrors.correlators.Corr.reverse", "modulename": "pyerrors.correlators", "qualname": "Corr.reverse", "kind": "function", "doc": "

    Reverse the time ordering of the Corr

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.thin": {"fullname": "pyerrors.correlators.Corr.thin", "modulename": "pyerrors.correlators", "qualname": "Corr.thin", "kind": "function", "doc": "

    Thin out a correlator to suppress correlations

    \n\n
    Parameters
    \n\n
      \n
    • spacing (int):\nKeep only every 'spacing'th entry of the correlator
    • \n
    • offset (int):\nOffset the equal spacing
    • \n
    \n", "signature": "(self, spacing=2, offset=0):", "funcdef": "def"}, "pyerrors.correlators.Corr.correlate": {"fullname": "pyerrors.correlators.Corr.correlate", "modulename": "pyerrors.correlators", "qualname": "Corr.correlate", "kind": "function", "doc": "

    Correlate the correlator with another correlator or Obs

    \n\n
    Parameters
    \n\n
      \n
    • partner (Obs or Corr):\npartner to correlate the correlator with.\nCan either be an Obs which is correlated with all entries of the\ncorrelator or a Corr of same length.
    • \n
    \n", "signature": "(self, partner):", "funcdef": "def"}, "pyerrors.correlators.Corr.reweight": {"fullname": "pyerrors.correlators.Corr.reweight", "modulename": "pyerrors.correlators", "qualname": "Corr.reweight", "kind": "function", "doc": "

    Reweight the correlator.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
    • \n
    \n", "signature": "(self, weight, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.T_symmetry": {"fullname": "pyerrors.correlators.Corr.T_symmetry", "modulename": "pyerrors.correlators", "qualname": "Corr.T_symmetry", "kind": "function", "doc": "

    Return the time symmetry average of the correlator and its partner

    \n\n
    Parameters
    \n\n
      \n
    • partner (Corr):\nTime symmetry partner of the Corr
    • \n
    • parity (int):\nParity quantum number of the correlator, can be +1 or -1
    • \n
    \n", "signature": "(self, partner, parity=1):", "funcdef": "def"}, "pyerrors.correlators.Corr.deriv": {"fullname": "pyerrors.correlators.Corr.deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.deriv", "kind": "function", "doc": "

    Return the first derivative of the correlator with respect to x0.

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, forward, backward, improved, log, default: symmetric
    • \n
    \n", "signature": "(self, variant='symmetric'):", "funcdef": "def"}, "pyerrors.correlators.Corr.second_deriv": {"fullname": "pyerrors.correlators.Corr.second_deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.second_deriv", "kind": "function", "doc": "

    Return the second derivative of the correlator with respect to x0.

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice:\n - symmetric (default)\n $$\\tilde{\\partial}^2_0 f(x_0) = f(x_0+1)-2f(x_0)+f(x_0-1)$$\n - big_symmetric\n $$\\partial^2_0 f(x_0) = \\frac{f(x_0+2)-2f(x_0)+f(x_0-2)}{4}$$\n - improved\n $$\\partial^2_0 f(x_0) = \\frac{-f(x_0+2) + 16 * f(x_0+1) - 30 * f(x_0) + 16 * f(x_0-1) - f(x_0-2)}{12}$$\n - log\n $$f(x) = \\tilde{\\partial}^2_0 log(f(x_0))+(\\tilde{\\partial}_0 log(f(x_0)))^2$$
    • \n
    \n", "signature": "(self, variant='symmetric'):", "funcdef": "def"}, "pyerrors.correlators.Corr.m_eff": {"fullname": "pyerrors.correlators.Corr.m_eff", "modulename": "pyerrors.correlators", "qualname": "Corr.m_eff", "kind": "function", "doc": "

    Returns the effective mass of the correlator as correlator object

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\nlog : uses the standard effective mass log(C(t) / C(t+1))\ncosh, periodic : Use periodicity of the correlator by solving C(t) / C(t+1) = cosh(m * (t - T/2)) / cosh(m * (t + 1 - T/2)) for m.\nsinh : Use anti-periodicity of the correlator by solving C(t) / C(t+1) = sinh(m * (t - T/2)) / sinh(m * (t + 1 - T/2)) for m.\nSee, e.g., arXiv:1205.5380\narccosh : Uses the explicit form of the symmetrized correlator (not recommended)\nlogsym: uses the symmetric effective mass log(C(t-1) / C(t+1))/2
    • \n
    • guess (float):\nguess for the root finder, only relevant for the root variant
    • \n
    \n", "signature": "(self, variant='log', guess=1.0):", "funcdef": "def"}, "pyerrors.correlators.Corr.fit": {"fullname": "pyerrors.correlators.Corr.fit", "modulename": "pyerrors.correlators", "qualname": "Corr.fit", "kind": "function", "doc": "

    Fits function to the data

    \n\n
    Parameters
    \n\n
      \n
    • function (obj):\nfunction to fit to the data. See fits.least_squares for details.
    • \n
    • fitrange (list):\nTwo element list containing the timeslices on which the fit is supposed to start and stop.\nCaution: This range is inclusive as opposed to standard python indexing.\nfitrange=[4, 6] corresponds to the three entries 4, 5 and 6.\nIf not specified, self.prange or all timeslices are used.
    • \n
    • silent (bool):\nDecides whether output is printed to the standard output.
    • \n
    \n", "signature": "(self, function, fitrange=None, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.plateau": {"fullname": "pyerrors.correlators.Corr.plateau", "modulename": "pyerrors.correlators", "qualname": "Corr.plateau", "kind": "function", "doc": "

    Extract a plateau value from a Corr object

    \n\n
    Parameters
    \n\n
      \n
    • plateau_range (list):\nlist with two entries, indicating the first and the last timeslice\nof the plateau region.
    • \n
    • method (str):\nmethod to extract the plateau.\n 'fit' fits a constant to the plateau region\n 'avg', 'average' or 'mean' just average over the given timeslices.
    • \n
    • auto_gamma (bool):\napply gamma_method with default parameters to the Corr. Defaults to None
    • \n
    \n", "signature": "(self, plateau_range=None, method='fit', auto_gamma=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.set_prange": {"fullname": "pyerrors.correlators.Corr.set_prange", "modulename": "pyerrors.correlators", "qualname": "Corr.set_prange", "kind": "function", "doc": "

    Sets the attribute prange of the Corr object.

    \n", "signature": "(self, prange):", "funcdef": "def"}, "pyerrors.correlators.Corr.show": {"fullname": "pyerrors.correlators.Corr.show", "modulename": "pyerrors.correlators", "qualname": "Corr.show", "kind": "function", "doc": "

    Plots the correlator using the tag of the correlator as label if available.

    \n\n
    Parameters
    \n\n
      \n
    • x_range (list):\nlist of two values, determining the range of the x-axis e.g. [4, 8].
    • \n
    • comp (Corr or list of Corr):\nCorrelator or list of correlators which are plotted for comparison.\nThe tags of these correlators are used as labels if available.
    • \n
    • logscale (bool):\nSets y-axis to logscale.
    • \n
    • plateau (Obs):\nPlateau value to be visualized in the figure.
    • \n
    • fit_res (Fit_result):\nFit_result object to be visualized.
    • \n
    • fit_key (str):\nKey for the fit function in Fit_result.fit_function (for combined fits).
    • \n
    • ylabel (str):\nLabel for the y-axis.
    • \n
    • save (str):\npath to file in which the figure should be saved.
    • \n
    • auto_gamma (bool):\nApply the gamma method with standard parameters to all correlators and plateau values before plotting.
    • \n
    • hide_sigma (float):\nHides data points from the first value on which is consistent with zero within 'hide_sigma' standard errors.
    • \n
    • references (list):\nList of floating point values that are displayed as horizontal lines for reference.
    • \n
    • title (string):\nOptional title of the figure.
    • \n
    \n", "signature": "(\tself,\tx_range=None,\tcomp=None,\ty_range=None,\tlogscale=False,\tplateau=None,\tfit_res=None,\tfit_key=None,\tylabel=None,\tsave=None,\tauto_gamma=False,\thide_sigma=None,\treferences=None,\ttitle=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.spaghetti_plot": {"fullname": "pyerrors.correlators.Corr.spaghetti_plot", "modulename": "pyerrors.correlators", "qualname": "Corr.spaghetti_plot", "kind": "function", "doc": "

    Produces a spaghetti plot of the correlator suited to monitor exceptional configurations.

    \n\n
    Parameters
    \n\n
      \n
    • logscale (bool):\nDetermines whether the scale of the y-axis is logarithmic or standard.
    • \n
    \n", "signature": "(self, logscale=True):", "funcdef": "def"}, "pyerrors.correlators.Corr.dump": {"fullname": "pyerrors.correlators.Corr.dump", "modulename": "pyerrors.correlators", "qualname": "Corr.dump", "kind": "function", "doc": "

    Dumps the Corr into a file of chosen type

    \n\n
    Parameters
    \n\n
      \n
    • filename (str):\nName of the file to be saved.
    • \n
    • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n", "signature": "(self, filename, datatype='json.gz', **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.print": {"fullname": "pyerrors.correlators.Corr.print", "modulename": "pyerrors.correlators", "qualname": "Corr.print", "kind": "function", "doc": "

    \n", "signature": "(self, print_range=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.sqrt": {"fullname": "pyerrors.correlators.Corr.sqrt", "modulename": "pyerrors.correlators", "qualname": "Corr.sqrt", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.log": {"fullname": "pyerrors.correlators.Corr.log", "modulename": "pyerrors.correlators", "qualname": "Corr.log", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.exp": {"fullname": "pyerrors.correlators.Corr.exp", "modulename": "pyerrors.correlators", "qualname": "Corr.exp", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.sin": {"fullname": "pyerrors.correlators.Corr.sin", "modulename": "pyerrors.correlators", "qualname": "Corr.sin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.cos": {"fullname": "pyerrors.correlators.Corr.cos", "modulename": "pyerrors.correlators", "qualname": "Corr.cos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.tan": {"fullname": "pyerrors.correlators.Corr.tan", "modulename": "pyerrors.correlators", "qualname": "Corr.tan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.sinh": {"fullname": "pyerrors.correlators.Corr.sinh", "modulename": "pyerrors.correlators", "qualname": "Corr.sinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.cosh": {"fullname": "pyerrors.correlators.Corr.cosh", "modulename": "pyerrors.correlators", "qualname": "Corr.cosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.tanh": {"fullname": "pyerrors.correlators.Corr.tanh", "modulename": "pyerrors.correlators", "qualname": "Corr.tanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsin": {"fullname": "pyerrors.correlators.Corr.arcsin", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arccos": {"fullname": "pyerrors.correlators.Corr.arccos", "modulename": "pyerrors.correlators", "qualname": "Corr.arccos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arctan": {"fullname": "pyerrors.correlators.Corr.arctan", "modulename": "pyerrors.correlators", "qualname": "Corr.arctan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsinh": {"fullname": "pyerrors.correlators.Corr.arcsinh", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arccosh": {"fullname": "pyerrors.correlators.Corr.arccosh", "modulename": "pyerrors.correlators", "qualname": "Corr.arccosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arctanh": {"fullname": "pyerrors.correlators.Corr.arctanh", "modulename": "pyerrors.correlators", "qualname": "Corr.arctanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.real": {"fullname": "pyerrors.correlators.Corr.real", "modulename": "pyerrors.correlators", "qualname": "Corr.real", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.imag": {"fullname": "pyerrors.correlators.Corr.imag", "modulename": "pyerrors.correlators", "qualname": "Corr.imag", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.prune": {"fullname": "pyerrors.correlators.Corr.prune", "modulename": "pyerrors.correlators", "qualname": "Corr.prune", "kind": "function", "doc": "

    Project large correlation matrix to lowest states

    \n\n

    This method can be used to reduce the size of an (N x N) correlation matrix\nto (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise\nis still small.

    \n\n
    Parameters
    \n\n
      \n
    • Ntrunc (int):\nRank of the target matrix.
    • \n
    • tproj (int):\nTime where the eigenvectors are evaluated, corresponds to ts in the GEVP method.\nThe default value is 3.
    • \n
    • t0proj (int):\nTime where the correlation matrix is inverted. Choosing t0proj=1 is strongly\ndiscouraged for O(a) improved theories, since the correctness of the procedure\ncannot be granted in this case. The default value is 2.
    • \n
    • basematrix (Corr):\nCorrelation matrix that is used to determine the eigenvectors of the\nlowest states based on a GEVP. basematrix is taken to be the Corr itself if\nis is not specified.
    • \n
    \n\n
    Notes
    \n\n

    We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving\nthe GEVP $$C(t) v_n(t, t_0) = \\lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \\equiv t_\\mathrm{proj}$\nand $t_0 \\equiv t_{0, \\mathrm{proj}}$. The target matrix is projected onto the subspace of the\nresulting eigenvectors $v_n, n=1,\\dots,N_\\mathrm{trunc}$ via\n$$G^\\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large\ncorrelation matrix and to remove some noise that is added by irrelevant operators.\nThis may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated\nbound $t_0 \\leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.

    \n", "signature": "(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.N": {"fullname": "pyerrors.correlators.Corr.N", "modulename": "pyerrors.correlators", "qualname": "Corr.N", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs": {"fullname": "pyerrors.covobs", "modulename": "pyerrors.covobs", "kind": "module", "doc": "

    \n"}, "pyerrors.covobs.Covobs": {"fullname": "pyerrors.covobs.Covobs", "modulename": "pyerrors.covobs", "qualname": "Covobs", "kind": "class", "doc": "

    \n"}, "pyerrors.covobs.Covobs.__init__": {"fullname": "pyerrors.covobs.Covobs.__init__", "modulename": "pyerrors.covobs", "qualname": "Covobs.__init__", "kind": "function", "doc": "

    Initialize Covobs object.

    \n\n
    Parameters
    \n\n
      \n
    • mean (float):\nMean value of the new Obs
    • \n
    • cov (list or array):\n2d Covariance matrix or 1d diagonal entries
    • \n
    • name (str):\nidentifier for the covariance matrix
    • \n
    • pos (int):\nPosition of the variance belonging to mean in cov.\nIs taken to be 1 if cov is 0-dimensional
    • \n
    • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
    • \n
    \n", "signature": "(mean, cov, name, pos=None, grad=None)"}, "pyerrors.covobs.Covobs.name": {"fullname": "pyerrors.covobs.Covobs.name", "modulename": "pyerrors.covobs", "qualname": "Covobs.name", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.value": {"fullname": "pyerrors.covobs.Covobs.value", "modulename": "pyerrors.covobs", "qualname": "Covobs.value", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.errsq": {"fullname": "pyerrors.covobs.Covobs.errsq", "modulename": "pyerrors.covobs", "qualname": "Covobs.errsq", "kind": "function", "doc": "

    Return the variance (= square of the error) of the Covobs

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.covobs.Covobs.cov": {"fullname": "pyerrors.covobs.Covobs.cov", "modulename": "pyerrors.covobs", "qualname": "Covobs.cov", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.grad": {"fullname": "pyerrors.covobs.Covobs.grad", "modulename": "pyerrors.covobs", "qualname": "Covobs.grad", "kind": "variable", "doc": "

    \n"}, "pyerrors.dirac": {"fullname": "pyerrors.dirac", "modulename": "pyerrors.dirac", "kind": "module", "doc": "

    \n"}, "pyerrors.dirac.gammaX": {"fullname": "pyerrors.dirac.gammaX", "modulename": "pyerrors.dirac", "qualname": "gammaX", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+0.j, 0.+1.j],\n [ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, -0.-1.j, 0.+0.j, 0.+0.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaY": {"fullname": "pyerrors.dirac.gammaY", "modulename": "pyerrors.dirac", "qualname": "gammaY", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j],\n [ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [-1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaZ": {"fullname": "pyerrors.dirac.gammaZ", "modulename": "pyerrors.dirac", "qualname": "gammaZ", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -0.-1.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+1.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaT": {"fullname": "pyerrors.dirac.gammaT", "modulename": "pyerrors.dirac", "qualname": "gammaT", "kind": "variable", "doc": "

    \n", "default_value": "array([[0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j],\n [1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gamma": {"fullname": "pyerrors.dirac.gamma", "modulename": "pyerrors.dirac", "qualname": "gamma", "kind": "variable", "doc": "

    \n", "default_value": "array([[[ 0.+0.j, 0.+0.j, 0.+0.j, 0.+1.j],\n [ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, -0.-1.j, 0.+0.j, 0.+0.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j],\n [ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [-1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -0.-1.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+1.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j],\n [ 1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j]]])"}, "pyerrors.dirac.gamma5": {"fullname": "pyerrors.dirac.gamma5", "modulename": "pyerrors.dirac", "qualname": "gamma5", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, -1.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j]])"}, "pyerrors.dirac.identity": {"fullname": "pyerrors.dirac.identity", "modulename": "pyerrors.dirac", "qualname": "identity", "kind": "variable", "doc": "

    \n", "default_value": "array([[1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j]])"}, "pyerrors.dirac.epsilon_tensor": {"fullname": "pyerrors.dirac.epsilon_tensor", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor", "kind": "function", "doc": "

    Rank-3 epsilon tensor

    \n\n

    Based on https://codegolf.stackexchange.com/a/160375

    \n\n
    Returns
    \n\n
      \n
    • elem (int):\nElement (i,j,k) of the epsilon tensor of rank 3
    • \n
    \n", "signature": "(i, j, k):", "funcdef": "def"}, "pyerrors.dirac.epsilon_tensor_rank4": {"fullname": "pyerrors.dirac.epsilon_tensor_rank4", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor_rank4", "kind": "function", "doc": "

    Rank-4 epsilon tensor

    \n\n

    Extension of https://codegolf.stackexchange.com/a/160375

    \n\n
    Returns
    \n\n
      \n
    • elem (int):\nElement (i,j,k,o) of the epsilon tensor of rank 4
    • \n
    \n", "signature": "(i, j, k, o):", "funcdef": "def"}, "pyerrors.dirac.Grid_gamma": {"fullname": "pyerrors.dirac.Grid_gamma", "modulename": "pyerrors.dirac", "qualname": "Grid_gamma", "kind": "function", "doc": "

    Returns gamma matrix in Grid labeling.

    \n", "signature": "(gamma_tag):", "funcdef": "def"}, "pyerrors.fits": {"fullname": "pyerrors.fits", "modulename": "pyerrors.fits", "kind": "module", "doc": "

    \n"}, "pyerrors.fits.Fit_result": {"fullname": "pyerrors.fits.Fit_result", "modulename": "pyerrors.fits", "qualname": "Fit_result", "kind": "class", "doc": "

    Represents fit results.

    \n\n
    Attributes
    \n\n
      \n
    • fit_parameters (list):\nresults for the individual fit parameters,\nalso accessible via indices.
    • \n
    • chisquare_by_dof (float):\nreduced chisquare.
    • \n
    • p_value (float):\np-value of the fit
    • \n
    • t2_p_value (float):\nHotelling t-squared p-value for correlated fits.
    • \n
    \n", "bases": "collections.abc.Sequence"}, "pyerrors.fits.Fit_result.fit_parameters": {"fullname": "pyerrors.fits.Fit_result.fit_parameters", "modulename": "pyerrors.fits", "qualname": "Fit_result.fit_parameters", "kind": "variable", "doc": "

    \n"}, "pyerrors.fits.Fit_result.gamma_method": {"fullname": "pyerrors.fits.Fit_result.gamma_method", "modulename": "pyerrors.fits", "qualname": "Fit_result.gamma_method", "kind": "function", "doc": "

    Apply the gamma method to all fit parameters

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.fits.Fit_result.gm": {"fullname": "pyerrors.fits.Fit_result.gm", "modulename": "pyerrors.fits", "qualname": "Fit_result.gm", "kind": "function", "doc": "

    Apply the gamma method to all fit parameters

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.fits.least_squares": {"fullname": "pyerrors.fits.least_squares", "modulename": "pyerrors.fits", "qualname": "least_squares", "kind": "function", "doc": "

    Performs a non-linear fit to y = func(x).\n ```

    \n\n
    Parameters
    \n\n
      \n
    • For an uncombined fit:
    • \n
    • x (list):\nlist of floats.
    • \n
    • y (list):\nlist of Obs.
    • \n
    • func (object):\nfit function, has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(a, x):\n    return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
      \n
      \n\n

      For multiple x values func can be of the form

      \n\n
      \n
      def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
      \n
      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • OR For a combined fit:
    • \n
    • x (dict):\ndict of lists.
    • \n
    • y (dict):\ndict of lists of Obs.
    • \n
    • funcs (dict):\ndict of objects\nfit functions have to be of the form (here a[0] is the common fit parameter)\n```python\nimport autograd.numpy as anp\nfuncs = {\"a\": func_a,\n \"b\": func_b}

      \n\n

      def func_a(a, x):\n return a[1] * anp.exp(-a[0] * x)

      \n\n

      def func_b(a, x):\n return a[2] * anp.exp(-a[0] * x)

      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • priors (dict or list, optional):\npriors can either be a dictionary with integer keys and the corresponding priors as values or\na list with an entry for every parameter in the fit. The entries can either be\nObs (e.g. results from a previous fit) or strings containing a value and an error formatted like\n0.548(23), 500(40) or 0.5(0.4)
    • \n
    • silent (bool, optional):\nIf true all output to the console is omitted (default False).
    • \n
    • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for\nnon-linear fits with many parameters. In case of correlated fits the guess is used to perform\nan uncorrelated fit which then serves as guess for the correlated fit.
    • \n
    • method (str, optional):\ncan be used to choose an alternative method for the minimization of chisquare.\nThe possible methods are the ones which can be used for scipy.optimize.minimize and\nmigrad of iminuit. If no method is specified, Levenberg-Marquard is used.\nReliable alternatives are migrad, Powell and Nelder-Mead.
    • \n
    • tol (float, optional):\ncan be used (only for combined fits and methods other than Levenberg-Marquard) to set the tolerance for convergence\nto a different value to either speed up convergence at the cost of a larger error on the fitted parameters (and possibly\ninvalid estimates for parameter uncertainties) or smaller values to get more accurate parameter values\nThe stopping criterion depends on the method, e.g. migrad: edm_max = 0.002 * tol * errordef (EDM criterion: edm < edm_max)
    • \n
    • correlated_fit (bool):\nIf True, use the full inverse covariance matrix in the definition of the chisquare cost function.\nFor details about how the covariance matrix is estimated see pyerrors.obs.covariance.\nIn practice the correlation matrix is Cholesky decomposed and inverted (instead of the covariance matrix).\nThis procedure should be numerically more stable as the correlation matrix is typically better conditioned (Jacobi preconditioning).
    • \n
    • inv_chol_cov_matrix [array,list], optional: array: shape = (no of y values) X (no of y values)\nlist: for an uncombined fit: [\"\"]\nfor a combined fit: list of keys belonging to the corr_matrix saved in the array, must be the same as the keys of the y dict in alphabetical order\nIf correlated_fit=True is set as well, can provide an inverse covariance matrix (y errors, dy_f included!) of your own choosing for a correlated fit.\nThe matrix must be a lower triangular matrix constructed from a Cholesky decomposition: The function invert_corr_cov_cholesky(corr, inverrdiag) can be\nused to construct it from a correlation matrix (corr) and the errors dy_f of the data points (inverrdiag = np.diag(1 / np.asarray(dy_f))). For the correct\nordering the correlation matrix (corr) can be sorted via the function sort_corr(corr, kl, yd) where kl is the list of keys and yd the y dict.
    • \n
    • expected_chisquare (bool):\nIf True estimates the expected chisquare which is\ncorrected by effects caused by correlated input data (default False).
    • \n
    • resplot (bool):\nIf True, a plot which displays fit, data and residuals is generated (default False).
    • \n
    • qqplot (bool):\nIf True, a quantile-quantile plot of the fit result is generated (default False).
    • \n
    • num_grad (bool):\nUse numerical differentation instead of automatic differentiation to perform the error propagation (default False).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • output (Fit_result):\nParameters and information on the fitted result.
    • \n
    \n\n
    Examples
    \n\n
    \n
    >>> # Example of a correlated (correlated_fit = True, inv_chol_cov_matrix handed over) combined fit, based on a randomly generated data set\n>>> import numpy as np\n>>> from scipy.stats import norm\n>>> from scipy.linalg import cholesky\n>>> import pyerrors as pe\n>>> # generating the random data set\n>>> num_samples = 400\n>>> N = 3\n>>> x = np.arange(N)\n>>> x1 = norm.rvs(size=(N, num_samples)) # generate random numbers\n>>> x2 = norm.rvs(size=(N, num_samples)) # generate random numbers\n>>> r = r1 = r2 = np.zeros((N, N))\n>>> y = {}\n>>> for i in range(N):\n>>>    for j in range(N):\n>>>        r[i, j] = np.exp(-0.8 * np.fabs(i - j)) # element in correlation matrix\n>>> errl = np.sqrt([3.4, 2.5, 3.6]) # set y errors\n>>> for i in range(N):\n>>>    for j in range(N):\n>>>        r[i, j] *= errl[i] * errl[j] # element in covariance matrix\n>>> c = cholesky(r, lower=True)\n>>> y = {'a': np.dot(c, x1), 'b': np.dot(c, x2)} # generate y data with the covariance matrix defined\n>>> # random data set has been generated, now the dictionaries and the inverse covariance matrix to be handed over are built\n>>> x_dict = {}\n>>> y_dict = {}\n>>> chol_inv_dict = {}\n>>> data = []\n>>> for key in y.keys():\n>>>    x_dict[key] = x\n>>>    for i in range(N):\n>>>        data.append(pe.Obs([[i + 1 + o for o in y[key][i]]], ['ens'])) # generate y Obs from the y data\n>>>    [o.gamma_method() for o in data]\n>>>    corr = pe.covariance(data, correlation=True)\n>>>    inverrdiag = np.diag(1 / np.asarray([o.dvalue for o in data]))\n>>>    chol_inv = pe.obs.invert_corr_cov_cholesky(corr, inverrdiag) # gives form of the inverse covariance matrix needed for the combined correlated fit below\n>>> y_dict = {'a': data[:3], 'b': data[3:]}\n>>> # common fit parameter p[0] in combined fit\n>>> def fit1(p, x):\n>>>    return p[0] + p[1] * x\n>>> def fit2(p, x):\n>>>    return p[0] + p[2] * x\n>>> fitf_dict = {'a': fit1, 'b':fit2}\n>>> fitp_inv_cov_combined_fit = pe.least_squares(x_dict,y_dict, fitf_dict, correlated_fit = True, inv_chol_cov_matrix = [chol_inv,['a','b']])\nFit with 3 parameters\nMethod: Levenberg-Marquardt\n`ftol` termination condition is satisfied.\nchisquare/d.o.f.: 0.5388013574561786 # random\nfit parameters [1.11897846 0.96361162 0.92325319] # random\n
    \n
    \n", "signature": "(x, y, func, priors=None, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.fits.total_least_squares": {"fullname": "pyerrors.fits.total_least_squares", "modulename": "pyerrors.fits", "qualname": "total_least_squares", "kind": "function", "doc": "

    Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters.

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nlist of Obs, or a tuple of lists of Obs
    • \n
    • y (list):\nlist of Obs. The dvalues of the Obs are used as x- and yerror for the fit.
    • \n
    • func (object):\nfunc has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(a, x):\n    return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
      \n
      \n\n

      For multiple x values func can be of the form

      \n\n
      \n
      def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
      \n
      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • silent (bool, optional):\nIf true all output to the console is omitted (default False).
    • \n
    • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for non-linear\nfits with many parameters.
    • \n
    • expected_chisquare (bool):\nIf true prints the expected chisquare which is\ncorrected by effects caused by correlated input data.\nThis can take a while as the full correlation matrix\nhas to be calculated (default False).
    • \n
    • num_grad (bool):\nUse numerical differentation instead of automatic differentiation to perform the error propagation (default False).
    • \n
    \n\n
    Notes
    \n\n

    Based on the orthogonal distance regression module of scipy.

    \n\n
    Returns
    \n\n
      \n
    • output (Fit_result):\nParameters and information on the fitted result.
    • \n
    \n", "signature": "(x, y, func, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.fits.fit_lin": {"fullname": "pyerrors.fits.fit_lin", "modulename": "pyerrors.fits", "qualname": "fit_lin", "kind": "function", "doc": "

    Performs a linear fit to y = n + m * x and returns two Obs n, m.

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nCan either be a list of floats in which case no xerror is assumed, or\na list of Obs, where the dvalues of the Obs are used as xerror for the fit.
    • \n
    • y (list):\nList of Obs, the dvalues of the Obs are used as yerror for the fit.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • fit_parameters (list[Obs]):\nLIist of fitted observables.
    • \n
    \n", "signature": "(x, y, **kwargs):", "funcdef": "def"}, "pyerrors.fits.qqplot": {"fullname": "pyerrors.fits.qqplot", "modulename": "pyerrors.fits", "qualname": "qqplot", "kind": "function", "doc": "

    Generates a quantile-quantile plot of the fit result which can be used to\n check if the residuals of the fit are gaussian distributed.

    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(x, o_y, func, p, title=''):", "funcdef": "def"}, "pyerrors.fits.residual_plot": {"fullname": "pyerrors.fits.residual_plot", "modulename": "pyerrors.fits", "qualname": "residual_plot", "kind": "function", "doc": "

    Generates a plot which compares the fit to the data and displays the corresponding residuals

    \n\n

    For uncorrelated data the residuals are expected to be distributed ~N(0,1).

    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(x, y, func, fit_res, title=''):", "funcdef": "def"}, "pyerrors.fits.error_band": {"fullname": "pyerrors.fits.error_band", "modulename": "pyerrors.fits", "qualname": "error_band", "kind": "function", "doc": "

    Calculate the error band for an array of sample values x, for given fit function func with optimized parameters beta.

    \n\n
    Returns
    \n\n
      \n
    • err (np.array(Obs)):\nError band for an array of sample values x
    • \n
    \n", "signature": "(x, func, beta):", "funcdef": "def"}, "pyerrors.fits.ks_test": {"fullname": "pyerrors.fits.ks_test", "modulename": "pyerrors.fits", "qualname": "ks_test", "kind": "function", "doc": "

    Performs a Kolmogorov\u2013Smirnov test for the p-values of all fit object.

    \n\n
    Parameters
    \n\n
      \n
    • objects (list):\nList of fit results to include in the analysis (optional).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(objects=None):", "funcdef": "def"}, "pyerrors.input": {"fullname": "pyerrors.input", "modulename": "pyerrors.input", "kind": "module", "doc": "

    pyerrors includes an input submodule in which input routines and parsers for the output of various numerical programs are contained.

    \n\n

    Jackknife samples

    \n\n

    For comparison with other analysis workflows pyerrors can also generate jackknife samples from an Obs object or import jackknife samples into an Obs object.\nSee pyerrors.obs.Obs.export_jackknife and pyerrors.obs.import_jackknife for details.

    \n"}, "pyerrors.input.bdio": {"fullname": "pyerrors.input.bdio", "modulename": "pyerrors.input.bdio", "kind": "module", "doc": "

    \n"}, "pyerrors.input.bdio.read_ADerrors": {"fullname": "pyerrors.input.bdio.read_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "read_ADerrors", "kind": "function", "doc": "

    Extract generic MCMC data from a bdio file

    \n\n

    read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path -- path to the bdio file
    • \n
    • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (List[Obs]):\nExtracted data
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.write_ADerrors": {"fullname": "pyerrors.input.bdio.write_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "write_ADerrors", "kind": "function", "doc": "

    Write Obs to a bdio file according to ADerrors conventions

    \n\n

    read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path -- path to the bdio file
    • \n
    • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • success (int):\nreturns 0 is successful
    • \n
    \n", "signature": "(obs_list, file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.read_mesons": {"fullname": "pyerrors.input.bdio.read_mesons", "modulename": "pyerrors.input.bdio", "qualname": "read_mesons", "kind": "function", "doc": "

    Extract mesons data from a bdio file and return it as a dictionary

    \n\n

    The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2)

    \n\n

    read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path (str):\npath to the bdio file
    • \n
    • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    • start (int):\nThe first configuration to be read (default 1)
    • \n
    • stop (int):\nThe last configuration to be read (default None)
    • \n
    • step (int):\nFixed step size between two measurements (default 1)
    • \n
    • alternative_ensemble_name (str):\nManually overwrite ensemble name
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (dict):\nExtracted meson data
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.read_dSdm": {"fullname": "pyerrors.input.bdio.read_dSdm", "modulename": "pyerrors.input.bdio", "qualname": "read_dSdm", "kind": "function", "doc": "

    Extract dSdm data from a bdio file and return it as a dictionary

    \n\n

    The dictionary can be accessed with a tuple consisting of (type, kappa)

    \n\n

    read_dSdm requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path (str):\npath to the bdio file
    • \n
    • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    • start (int):\nThe first configuration to be read (default 1)
    • \n
    • stop (int):\nThe last configuration to be read (default None)
    • \n
    • step (int):\nFixed step size between two measurements (default 1)
    • \n
    • alternative_ensemble_name (str):\nManually overwrite ensemble name
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.dobs": {"fullname": "pyerrors.input.dobs", "modulename": "pyerrors.input.dobs", "kind": "module", "doc": "

    \n"}, "pyerrors.input.dobs.create_pobs_string": {"fullname": "pyerrors.input.dobs.create_pobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_pobs_string", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to an xml string\naccording to the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • xml_str (str):\nXML formatted string of the input data
    • \n
    \n", "signature": "(obsl, name, spec='', origin='', symbol=[], enstag=None):", "funcdef": "def"}, "pyerrors.input.dobs.write_pobs": {"fullname": "pyerrors.input.dobs.write_pobs", "modulename": "pyerrors.input.dobs", "qualname": "write_pobs", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
    • \n
    • gz (bool):\nIf True, the output is a gzipped xml. If False, the output is an xml file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(\tobsl,\tfname,\tname,\tspec='',\torigin='',\tsymbol=[],\tenstag=None,\tgz=True):", "funcdef": "def"}, "pyerrors.input.dobs.read_pobs": {"fullname": "pyerrors.input.dobs.read_pobs", "modulename": "pyerrors.input.dobs", "qualname": "read_pobs", "kind": "function", "doc": "

    Import a list of Obs from an xml.gz file in the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • separatior_insertion (str or int):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nNone (default): Replica names remain unchanged.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(fname, full_output=False, gz=True, separator_insertion=None):", "funcdef": "def"}, "pyerrors.input.dobs.import_dobs_string": {"fullname": "pyerrors.input.dobs.import_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "import_dobs_string", "kind": "function", "doc": "

    Import a list of Obs from a string in the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • content (str):\nXML string containing the data
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(content, full_output=False, separator_insertion=True):", "funcdef": "def"}, "pyerrors.input.dobs.read_dobs": {"fullname": "pyerrors.input.dobs.read_dobs", "modulename": "pyerrors.input.dobs", "qualname": "read_dobs", "kind": "function", "doc": "

    Import a list of Obs from an xml.gz file in the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes XML file.
    • \n
    • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(fname, full_output=False, gz=True, separator_insertion=True):", "funcdef": "def"}, "pyerrors.input.dobs.create_dobs_string": {"fullname": "pyerrors.input.dobs.create_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_dobs_string", "kind": "function", "doc": "

    Generate the string for the export of a list of Obs or structures containing Obs\nto a .xml.gz file according to the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically. The separator |is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • who (str):\nProvide the name of the person that exports the data.
    • \n
    • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • xml_str (str):\nXML string generated from the data
    • \n
    \n", "signature": "(\tobsl,\tname,\tspec='dobs v1.0',\torigin='',\tsymbol=[],\twho=None,\tenstags=None):", "funcdef": "def"}, "pyerrors.input.dobs.write_dobs": {"fullname": "pyerrors.input.dobs.write_dobs", "modulename": "pyerrors.input.dobs", "qualname": "write_dobs", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • who (str):\nProvide the name of the person that exports the data.
    • \n
    • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
    • \n
    • gz (bool):\nIf True, the output is a gzipped XML. If False, the output is a XML file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(\tobsl,\tfname,\tname,\tspec='dobs v1.0',\torigin='',\tsymbol=[],\twho=None,\tenstags=None,\tgz=True):", "funcdef": "def"}, "pyerrors.input.hadrons": {"fullname": "pyerrors.input.hadrons", "modulename": "pyerrors.input.hadrons", "kind": "module", "doc": "

    \n"}, "pyerrors.input.hadrons.read_hd5": {"fullname": "pyerrors.input.hadrons.read_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_hd5", "kind": "function", "doc": "

    Read hadrons hdf5 file and extract entry based on attributes.

    \n\n
    Parameters
    \n\n
      \n
    • filestem (str):\nFull namestem of the files to read, including the full path.
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • group (str):\nlabel of the group to be extracted.
    • \n
    • attrs (dict or int):\nDictionary containing the attributes. For example

      \n\n
      \n
      attrs = {"gamma_snk": "Gamma5",\n         "gamma_src": "Gamma5"}\n
      \n
      \n\n

      Alternatively an integer can be specified to identify the sub group.\nThis is discouraged as the order in the file is not guaranteed.

    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • part (str):\nstring specifying whether to extract the real part ('real'),\nthe imaginary part ('imag') or a complex correlator ('complex').\nDefault 'real'.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr (Corr):\nCorrelator of the source sink combination in question.
    • \n
    \n", "signature": "(filestem, ens_id, group, attrs=None, idl=None, part='real'):", "funcdef": "def"}, "pyerrors.input.hadrons.read_meson_hd5": {"fullname": "pyerrors.input.hadrons.read_meson_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_meson_hd5", "kind": "function", "doc": "

    Read hadrons meson hdf5 file and extract the meson labeled 'meson'

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • meson (str):\nlabel of the meson to be extracted, standard value meson_0 which\ncorresponds to the pseudoscalar pseudoscalar two-point function.
    • \n
    • gammas (tuple of strings):\nInstrad of a meson label one can also provide a tuple of two strings\nindicating the gamma matrices at sink and source (gamma_snk, gamma_src).\n(\"Gamma5\", \"Gamma5\") corresponds to the pseudoscalar pseudoscalar\ntwo-point function. The gammas argument dominateds over meson.
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr (Corr):\nCorrelator of the source sink combination in question.
    • \n
    \n", "signature": "(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None):", "funcdef": "def"}, "pyerrors.input.hadrons.extract_t0_hd5": {"fullname": "pyerrors.input.hadrons.extract_t0_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "extract_t0_hd5", "kind": "function", "doc": "

    Read hadrons FlowObservables hdf5 file and extract t0

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • obs (str):\nlabel of the observable from which t0 should be extracted.\nOptions: 'Clover energy density' and 'Plaquette energy density'
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
    • \n
    \n", "signature": "(\tpath,\tfilestem,\tens_id,\tobs='Clover energy density',\tfit_range=5,\tidl=None,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.hadrons.read_DistillationContraction_hd5": {"fullname": "pyerrors.input.hadrons.read_DistillationContraction_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_DistillationContraction_hd5", "kind": "function", "doc": "

    Read hadrons DistillationContraction hdf5 files in given directory structure

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the directories to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • diagrams (list):\nList of strings of the diagrams to extract, e.g. [\"direct\", \"box\", \"cross\"].
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (dict):\nextracted DistillationContration data
    • \n
    \n", "signature": "(path, ens_id, diagrams=['direct'], idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix": {"fullname": "pyerrors.input.hadrons.Npr_matrix", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix", "kind": "class", "doc": "

    ndarray(shape, dtype=float, buffer=None, offset=0,\n strides=None, order=None)

    \n\n

    An array object represents a multidimensional, homogeneous array\nof fixed-size items. An associated data-type object describes the\nformat of each element in the array (its byte-order, how many bytes it\noccupies in memory, whether it is an integer, a floating point number,\nor something else, etc.)

    \n\n

    Arrays should be constructed using array, zeros or empty (refer\nto the See Also section below). The parameters given here refer to\na low-level method (ndarray(...)) for instantiating an array.

    \n\n

    For more information, refer to the numpy module and examine the\nmethods and attributes of an array.

    \n\n
    Parameters
    \n\n
      \n
    • (for the __new__ method; see Notes below)
    • \n
    • shape (tuple of ints):\nShape of created array.
    • \n
    • dtype (data-type, optional):\nAny object that can be interpreted as a numpy data type.
    • \n
    • buffer (object exposing buffer interface, optional):\nUsed to fill the array with data.
    • \n
    • offset (int, optional):\nOffset of array data in buffer.
    • \n
    • strides (tuple of ints, optional):\nStrides of data in memory.
    • \n
    • order ({'C', 'F'}, optional):\nRow-major (C-style) or column-major (Fortran-style) order.
    • \n
    \n\n
    Attributes
    \n\n
      \n
    • T (ndarray):\nTranspose of the array.
    • \n
    • data (buffer):\nThe array's elements, in memory.
    • \n
    • dtype (dtype object):\nDescribes the format of the elements in the array.
    • \n
    • flags (dict):\nDictionary containing information related to memory use, e.g.,\n'C_CONTIGUOUS', 'OWNDATA', 'WRITEABLE', etc.
    • \n
    • flat (numpy.flatiter object):\nFlattened version of the array as an iterator. The iterator\nallows assignments, e.g., x.flat = 3 (See ndarray.flat for\nassignment examples; TODO).
    • \n
    • imag (ndarray):\nImaginary part of the array.
    • \n
    • real (ndarray):\nReal part of the array.
    • \n
    • size (int):\nNumber of elements in the array.
    • \n
    • itemsize (int):\nThe memory use of each array element in bytes.
    • \n
    • nbytes (int):\nThe total number of bytes required to store the array data,\ni.e., itemsize * size.
    • \n
    • ndim (int):\nThe array's number of dimensions.
    • \n
    • shape (tuple of ints):\nShape of the array.
    • \n
    • strides (tuple of ints):\nThe step-size required to move from one element to the next in\nmemory. For example, a contiguous (3, 4) array of type\nint16 in C-order has strides (8, 2). This implies that\nto move from element to element in memory requires jumps of 2 bytes.\nTo move from row-to-row, one needs to jump 8 bytes at a time\n(2 * 4).
    • \n
    • ctypes (ctypes object):\nClass containing properties of the array needed for interaction\nwith ctypes.
    • \n
    • base (ndarray):\nIf the array is a view into another array, that array is its base\n(unless that array is also a view). The base array is where the\narray data is actually stored.
    • \n
    \n\n
    See Also
    \n\n

    array: Construct an array.
    \nzeros: Create an array, each element of which is zero.
    \nempty: Create an array, but leave its allocated memory unchanged (i.e.,\nit contains \"garbage\").
    \ndtype: Create a data-type.
    \nnumpy.typing.NDArray: An ndarray alias :term:generic <generic type>\nw.r.t. its dtype.type <numpy.dtype.type>.

    \n\n
    Notes
    \n\n

    There are two modes of creating an array using __new__:

    \n\n
      \n
    1. If buffer is None, then only shape, dtype, and order\nare used.
    2. \n
    3. If buffer is an object exposing the buffer interface, then\nall keywords are interpreted.
    4. \n
    \n\n

    No __init__ method is needed because the array is fully initialized\nafter the __new__ method.

    \n\n
    Examples
    \n\n

    These examples illustrate the low-level ndarray constructor. Refer\nto the See Also section above for easier ways of constructing an\nndarray.

    \n\n

    First mode, buffer is None:

    \n\n
    \n
    >>> import numpy as np\n>>> np.ndarray(shape=(2,2), dtype=float, order='F')\narray([[0.0e+000, 0.0e+000], # random\n       [     nan, 2.5e-323]])\n
    \n
    \n\n

    Second mode:

    \n\n
    \n
    >>> np.ndarray((2,), buffer=np.array([1,2,3]),\n...            offset=np.int_().itemsize,\n...            dtype=int) # offset = 1*itemsize, i.e. skip first element\narray([2, 3])\n
    \n
    \n", "bases": "numpy.ndarray"}, "pyerrors.input.hadrons.Npr_matrix.g5H": {"fullname": "pyerrors.input.hadrons.Npr_matrix.g5H", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.g5H", "kind": "variable", "doc": "

    Gamma_5 hermitean conjugate

    \n\n

    Uses the fact that the propagator is gamma5 hermitean, so just the\nin and out momenta of the propagator are exchanged.

    \n"}, "pyerrors.input.hadrons.read_ExternalLeg_hd5": {"fullname": "pyerrors.input.hadrons.read_ExternalLeg_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_ExternalLeg_hd5", "kind": "function", "doc": "

    Read hadrons ExternalLeg hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (Npr_matrix):\nread Cobs-matrix
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.read_Bilinear_hd5": {"fullname": "pyerrors.input.hadrons.read_Bilinear_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Bilinear_hd5", "kind": "function", "doc": "

    Read hadrons Bilinear hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result_dict (dict[Npr_matrix]):\nextracted Bilinears
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.read_Fourquark_hd5": {"fullname": "pyerrors.input.hadrons.read_Fourquark_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Fourquark_hd5", "kind": "function", "doc": "

    Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • vertices (list):\nVertex functions to be extracted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result_dict (dict):\nextracted fourquark matrizes
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None, vertices=['VA', 'AV']):", "funcdef": "def"}, "pyerrors.input.json": {"fullname": "pyerrors.input.json", "modulename": "pyerrors.input.json", "kind": "module", "doc": "

    \n"}, "pyerrors.input.json.create_json_string": {"fullname": "pyerrors.input.json.create_json_string", "modulename": "pyerrors.input.json", "qualname": "create_json_string", "kind": "function", "doc": "

    Generate the string for the export of a list of Obs or structures containing Obs\nto a .json(.gz) file

    \n\n
    Parameters
    \n\n
      \n
    • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • json_string (str):\nString for export to .json(.gz) file
    • \n
    \n", "signature": "(ol, description='', indent=1):", "funcdef": "def"}, "pyerrors.input.json.dump_to_json": {"fullname": "pyerrors.input.json.dump_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_to_json", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .json(.gz) file.\nDict keys that are not JSON-serializable such as floats are converted to strings.

    \n\n
    Parameters
    \n\n
      \n
    • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Null
    • \n
    \n", "signature": "(ol, fname, description='', indent=1, gz=True):", "funcdef": "def"}, "pyerrors.input.json.import_json_string": {"fullname": "pyerrors.input.json.import_json_string", "modulename": "pyerrors.input.json", "qualname": "import_json_string", "kind": "function", "doc": "

    Reconstruct a list of Obs or structures containing Obs from a json string.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

    \n\n
    Parameters
    \n\n
      \n
    • json_string (str):\njson string containing the data.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nreconstructed list of observables from the json string
    • \n
    • or
    • \n
    • result (Obs):\nonly one observable if the list only has one entry
    • \n
    • or
    • \n
    • result (dict):\nif full_output=True
    • \n
    \n", "signature": "(json_string, verbose=True, full_output=False):", "funcdef": "def"}, "pyerrors.input.json.load_json": {"fullname": "pyerrors.input.json.load_json", "modulename": "pyerrors.input.json", "qualname": "load_json", "kind": "function", "doc": "

    Import a list of Obs or structures containing Obs from a .json(.gz) file.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nreconstructed list of observables from the json string
    • \n
    • or
    • \n
    • result (Obs):\nonly one observable if the list only has one entry
    • \n
    • or
    • \n
    • result (dict):\nif full_output=True
    • \n
    \n", "signature": "(fname, verbose=True, gz=True, full_output=False):", "funcdef": "def"}, "pyerrors.input.json.dump_dict_to_json": {"fullname": "pyerrors.input.json.dump_dict_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_dict_to_json", "kind": "function", "doc": "

    Export a dict of Obs or structures containing Obs to a .json(.gz) file

    \n\n
    Parameters
    \n\n
      \n
    • od (dict):\nDict of JSON valid structures and objects that will be exported.\nAt the moment, these objects can be either of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    • reps (str):\nSpecify the structure of the placeholder in exported dict to be reps[0-9]+.
    • \n
    • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(od, fname, description='', indent=1, reps='DICTOBS', gz=True):", "funcdef": "def"}, "pyerrors.input.json.load_json_dict": {"fullname": "pyerrors.input.json.load_json_dict", "modulename": "pyerrors.input.json", "qualname": "load_json_dict", "kind": "function", "doc": "

    Import a dict of Obs or structures containing Obs from a .json(.gz) file.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    • reps (str):\nSpecify the structure of the placeholder in imported dict to be reps[0-9]+.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (Obs / list / Corr):\nRead data
    • \n
    • or
    • \n
    • data (dict):\nRead data and meta-data
    • \n
    \n", "signature": "(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'):", "funcdef": "def"}, "pyerrors.input.misc": {"fullname": "pyerrors.input.misc", "modulename": "pyerrors.input.misc", "kind": "module", "doc": "

    \n"}, "pyerrors.input.misc.fit_t0": {"fullname": "pyerrors.input.misc.fit_t0", "modulename": "pyerrors.input.misc", "qualname": "fit_t0", "kind": "function", "doc": "

    Compute the root of (flow-based) data based on a dictionary that contains\nthe necessary information in key-value pairs a la (flow time: observable at flow time).

    \n\n

    It is assumed that the data is monotonically increasing and passes zero from below.\nNo exception is thrown if this is not the case (several roots, no monotonic increase).\nAn exception is thrown if no root can be found in the data.

    \n\n

    A linear fit in the vicinity of the root is performed to exctract the root from the\ntwo fit parameters.

    \n\n
    Parameters
    \n\n
      \n
    • t2E_dict (dict):\nDictionary with pairs of (flow time: observable at flow time) where the flow times\nare of type float and the observables of type Obs.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data. (Default: False)
    • \n
    • observable (str):\nKeyword to identify the observable to print the correct ylabel (if plot_fit is True)\nfor the observables 't0' and 'w0'. No y label is printed otherwise. (Default: 't0')
    • \n
    \n\n
    Returns
    \n\n
      \n
    • root (Obs):\nThe root of the data series.
    • \n
    \n", "signature": "(t2E_dict, fit_range, plot_fit=False, observable='t0'):", "funcdef": "def"}, "pyerrors.input.misc.read_pbp": {"fullname": "pyerrors.input.misc.read_pbp", "modulename": "pyerrors.input.misc", "qualname": "read_pbp", "kind": "function", "doc": "

    Read pbp format from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • r_start (list):\nlist which contains the first config to be read for each replicum
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nlist of observables read
    • \n
    \n", "signature": "(path, prefix, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD": {"fullname": "pyerrors.input.openQCD", "modulename": "pyerrors.input.openQCD", "kind": "module", "doc": "

    \n"}, "pyerrors.input.openQCD.read_rwms": {"fullname": "pyerrors.input.openQCD.read_rwms", "modulename": "pyerrors.input.openQCD", "qualname": "read_rwms", "kind": "function", "doc": "

    Read rwms format from given folder structure. Returns a list of length nrw

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath that contains the data files
    • \n
    • prefix (str):\nall files in path that start with prefix are considered as input files.\nMay be used together postfix to consider only special file endings.\nPrefix is ignored, if the keyword 'files' is used.
    • \n
    • version (str):\nversion of openQCD, default 2.0
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.ms1' for openQCD-files
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • print_err (bool):\nPrint additional information that is useful for debugging.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • rwms (Obs):\nReweighting factors read
    • \n
    \n", "signature": "(path, prefix, version='2.0', names=None, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.extract_t0": {"fullname": "pyerrors.input.openQCD.extract_t0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_t0", "kind": "function", "doc": "

    Extract t0/a^2 from given .ms.dat files. Returns t0 as Obs.

    \n\n

    It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t^2 - c (where c=0.3 by default)\nis fitted with a linear function\nfrom which the exact root is extracted.

    \n\n

    It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to .ms.dat files
    • \n
    • prefix (str):\nEnsemble prefix
    • \n
    • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
    • \n
    • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
    • \n
    • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • postfix (str):\nPostfix of measurement file (Default: ms)
    • \n
    • c (float):\nConstant that defines the flow scale. Default 0.3 for t_0, choose 2./3 for t_1.
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • plaquette (bool):\nIf true extract the plaquette estimate of t0 instead.
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
    • \n
    • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
    • \n
    \n\n
    Returns
    \n\n
      \n
    • t0 (Obs):\nExtracted t0
    • \n
    \n", "signature": "(\tpath,\tprefix,\tdtr_read,\txmin,\tspatial_extent,\tfit_range=5,\tpostfix='ms',\tc=0.3,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.extract_w0": {"fullname": "pyerrors.input.openQCD.extract_w0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_w0", "kind": "function", "doc": "

    Extract w0/a from given .ms.dat files. Returns w0 as Obs.

    \n\n

    It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t d(t^2)/dt - (where c=0.3 by default)\nis fitted with a linear function\nfrom which the exact root is extracted.

    \n\n

    It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to .ms.dat files
    • \n
    • prefix (str):\nEnsemble prefix
    • \n
    • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
    • \n
    • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
    • \n
    • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • postfix (str):\nPostfix of measurement file (Default: ms)
    • \n
    • c (float):\nConstant that defines the flow scale. Default 0.3 for w_0, choose 2./3 for w_1.
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • plaquette (bool):\nIf true extract the plaquette estimate of w0 instead.
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of w0 is shown together with the data.
    • \n
    • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
    • \n
    \n\n
    Returns
    \n\n
      \n
    • w0 (Obs):\nExtracted w0
    • \n
    \n", "signature": "(\tpath,\tprefix,\tdtr_read,\txmin,\tspatial_extent,\tfit_range=5,\tpostfix='ms',\tc=0.3,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop": {"fullname": "pyerrors.input.openQCD.read_qtop", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop", "kind": "function", "doc": "

    Read the topologial charge based on openQCD gradient flow measurements.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • version (str):\nEither openQCD or sfqcd, depending on the data.
    • \n
    • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.gfms.dat' for openQCD-files
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
    • \n
    • integer_charge (bool):\nIf True, the charge is rounded towards the nearest integer on each config.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (Obs):\nRead topological charge
    • \n
    \n", "signature": "(path, prefix, c, dtr_cnfg=1, version='openQCD', **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_gf_coupling": {"fullname": "pyerrors.input.openQCD.read_gf_coupling", "modulename": "pyerrors.input.openQCD", "qualname": "read_gf_coupling", "kind": "function", "doc": "

    Read the gradient flow coupling based on sfqcd gradient flow measurements. See 1607.06423 for details.

    \n\n

    Note: The current implementation only works for c=0.3 and T=L. The definition of the coupling in 1607.06423 requires projection to topological charge zero which is not done within this function but has to be performed in a separate step.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.gfms.dat' for openQCD-files
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for the coupling. If False, the Wilson flow is used.
    • \n
    \n", "signature": "(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.qtop_projection": {"fullname": "pyerrors.input.openQCD.qtop_projection", "modulename": "pyerrors.input.openQCD", "qualname": "qtop_projection", "kind": "function", "doc": "

    Returns the projection to the topological charge sector defined by target.

    \n\n
    Parameters
    \n\n
      \n
    • path (Obs):\nTopological charge.
    • \n
    • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • reto (Obs):\nprojection to the topological charge sector defined by target
    • \n
    \n", "signature": "(qtop, target=0):", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop_sector": {"fullname": "pyerrors.input.openQCD.read_qtop_sector", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop_sector", "kind": "function", "doc": "

    Constructs reweighting factors to a specified topological sector.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L
    • \n
    • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of trajectories\nbetween two configs.\nif it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • version (str):\nversion string of the openQCD (sfqcd) version used to create\nthe ensemble. Default is 2.0. May also be set to sfqcd.
    • \n
    • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
    • \n
    • r_start (list):\noffset of the first ensemble, making it easier to match\nlater on with other Obs
    • \n
    • r_stop (list):\nlast configurations that need to be read (per replicum)
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • reto (Obs):\nprojection to the topological charge sector defined by target
    • \n
    \n", "signature": "(path, prefix, c, target=0, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_ms5_xsf": {"fullname": "pyerrors.input.openQCD.read_ms5_xsf", "modulename": "pyerrors.input.openQCD", "qualname": "read_ms5_xsf", "kind": "function", "doc": "

    Read data from files in the specified directory with the specified prefix and quark combination extension, and return a Corr object containing the data.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nThe directory to search for the files in.
    • \n
    • prefix (str):\nThe prefix to match the files against.
    • \n
    • qc (str):\nThe quark combination extension to match the files against.
    • \n
    • corr (str):\nThe correlator to extract data for.
    • \n
    • sep (str, optional):\nThe separator to use when parsing the replika names.
    • \n
    • **kwargs: Additional keyword arguments. The following keyword arguments are recognized:

      \n\n
        \n
      • names (List[str]): A list of names to use for the replicas.
      • \n
      • files (List[str]): A list of files to read data from.
      • \n
      • idl (List[List[int]]): A list of idls per replicum, resticting data to the idls given.
      • \n
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Corr: A complex valued Corr object containing the data read from the files. In case of boudary to bulk correlators.
    • \n
    • or
    • \n
    • CObs: A complex valued CObs object containing the data read from the files. In case of boudary to boundary correlators.
    • \n
    \n\n
    Raises
    \n\n
      \n
    • FileNotFoundError: If no files matching the specified prefix and quark combination extension are found in the specified directory.
    • \n
    • IOError: If there is an error reading a file.
    • \n
    • struct.error: If there is an error unpacking binary data.
    • \n
    \n", "signature": "(path, prefix, qc, corr, sep='r', **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas": {"fullname": "pyerrors.input.pandas", "modulename": "pyerrors.input.pandas", "kind": "module", "doc": "

    \n"}, "pyerrors.input.pandas.to_sql": {"fullname": "pyerrors.input.pandas.to_sql", "modulename": "pyerrors.input.pandas", "qualname": "to_sql", "kind": "function", "doc": "

    Write DataFrame including Obs or Corr valued columns to sqlite database.

    \n\n
    Parameters
    \n\n
      \n
    • df (pandas.DataFrame):\nDataframe to be written to the database.
    • \n
    • table_name (str):\nName of the table in the database.
    • \n
    • db (str):\nPath to the sqlite database.
    • \n
    • if exists (str):\nHow to behave if table already exists. Options 'fail', 'replace', 'append'.
    • \n
    • gz (bool):\nIf True the json strings are gzipped.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(df, table_name, db, if_exists='fail', gz=True, **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas.read_sql": {"fullname": "pyerrors.input.pandas.read_sql", "modulename": "pyerrors.input.pandas", "qualname": "read_sql", "kind": "function", "doc": "

    Execute SQL query on sqlite database and obtain DataFrame including Obs or Corr valued columns.

    \n\n
    Parameters
    \n\n
      \n
    • sql (str):\nSQL query to be executed.
    • \n
    • db (str):\nPath to the sqlite database.
    • \n
    • auto_gamma (bool):\nIf True applies the gamma_method to all imported Obs objects with the default parameters for\nthe error analysis. Default False.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (pandas.DataFrame):\nDataframe with the content of the sqlite database.
    • \n
    \n", "signature": "(sql, db, auto_gamma=False, **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas.dump_df": {"fullname": "pyerrors.input.pandas.dump_df", "modulename": "pyerrors.input.pandas", "qualname": "dump_df", "kind": "function", "doc": "

    Exports a pandas DataFrame containing Obs valued columns to a (gzipped) csv file.

    \n\n

    Before making use of pandas to_csv functionality Obs objects are serialized via the standardized\njson format of pyerrors.

    \n\n
    Parameters
    \n\n
      \n
    • df (pandas.DataFrame):\nDataframe to be dumped to a file.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • gz (bool):\nIf True, the output is a gzipped csv file. If False, the output is a csv file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(df, fname, gz=True):", "funcdef": "def"}, "pyerrors.input.pandas.load_df": {"fullname": "pyerrors.input.pandas.load_df", "modulename": "pyerrors.input.pandas", "qualname": "load_df", "kind": "function", "doc": "

    Imports a pandas DataFrame from a csv.(gz) file in which Obs objects are serialized as json strings.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • auto_gamma (bool):\nIf True applies the gamma_method to all imported Obs objects with the default parameters for\nthe error analysis. Default False.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (pandas.DataFrame):\nDataframe with the content of the sqlite database.
    • \n
    \n", "signature": "(fname, auto_gamma=False, gz=True):", "funcdef": "def"}, "pyerrors.input.sfcf": {"fullname": "pyerrors.input.sfcf", "modulename": "pyerrors.input.sfcf", "kind": "module", "doc": "

    \n"}, "pyerrors.input.sfcf.sep": {"fullname": "pyerrors.input.sfcf.sep", "modulename": "pyerrors.input.sfcf", "qualname": "sep", "kind": "variable", "doc": "

    \n", "default_value": "'/'"}, "pyerrors.input.sfcf.read_sfcf": {"fullname": "pyerrors.input.sfcf.read_sfcf", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf", "kind": "function", "doc": "

    Read sfcf files from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to the sfcf files.
    • \n
    • prefix (str):\nPrefix of the sfcf files.
    • \n
    • name (str):\nName of the correlation function to read.
    • \n
    • quarks (str):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
    • \n
    • corr_type (str):\nType of correlation function to read. Can be\n
        \n
      • 'bi' for boundary-inner
      • \n
      • 'bb' for boundary-boundary
      • \n
      • 'bib' for boundary-inner-boundary
      • \n
    • \n
    • noffset (int):\nOffset of the source (only relevant when wavefunctions are used)
    • \n
    • wf (int):\nID of wave function
    • \n
    • wf2 (int):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
    • \n
    • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • ens_name (str):\nreplaces the name of the ensemble
    • \n
    • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
    • \n
    • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
    • \n
    • replica (list):\nlist of replica to be read, default is all
    • \n
    • files (list):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
    • \n
    • check_configs (list[list[int]]):\nlist of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nlist of Observables with length T, observable per timeslice.\nbb-type correlators have length 1.
    • \n
    \n", "signature": "(\tpath,\tprefix,\tname,\tquarks='.*',\tcorr_type='bi',\tnoffset=0,\twf=0,\twf2=0,\tversion='1.0c',\tcfg_separator='n',\tsilent=False,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.sfcf.read_sfcf_multi": {"fullname": "pyerrors.input.sfcf.read_sfcf_multi", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf_multi", "kind": "function", "doc": "

    Read sfcf files from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to the sfcf files.
    • \n
    • prefix (str):\nPrefix of the sfcf files.
    • \n
    • name (str):\nName of the correlation function to read.
    • \n
    • quarks_list (list[str]):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
    • \n
    • corr_type_list (list[str]):\nType of correlation function to read. Can be\n
        \n
      • 'bi' for boundary-inner
      • \n
      • 'bb' for boundary-boundary
      • \n
      • 'bib' for boundary-inner-boundary
      • \n
    • \n
    • noffset_list (list[int]):\nOffset of the source (only relevant when wavefunctions are used)
    • \n
    • wf_list (int):\nID of wave function
    • \n
    • wf2_list (list[int]):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
    • \n
    • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • ens_name (str):\nreplaces the name of the ensemble
    • \n
    • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
    • \n
    • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
    • \n
    • replica (list):\nlist of replica to be read, default is all
    • \n
    • files (list[list[int]]):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
    • \n
    • check_configs (list[list[int]]):\nlist of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (dict[list[Obs]]):\ndict with one of the following properties:\nif keyed_out:\n dict[key] = list[Obs]\n where key has the form name/quarks/offset/wf/wf2\nif not keyed_out:\n dict[name][quarks][offset][wf][wf2] = list[Obs]
    • \n
    \n", "signature": "(\tpath,\tprefix,\tname_list,\tquarks_list=['.*'],\tcorr_type_list=['bi'],\tnoffset_list=[0],\twf_list=[0],\twf2_list=[0],\tversion='1.0c',\tcfg_separator='n',\tsilent=False,\tkeyed_out=False,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.utils": {"fullname": "pyerrors.input.utils", "modulename": "pyerrors.input.utils", "kind": "module", "doc": "

    Utilities for the input

    \n"}, "pyerrors.input.utils.sort_names": {"fullname": "pyerrors.input.utils.sort_names", "modulename": "pyerrors.input.utils", "qualname": "sort_names", "kind": "function", "doc": "

    Sorts a list of names of replika with searches for r and id in the replikum string.\nIf this search fails, a fallback method is used,\nwhere the strings are simply compared and the first diffeing numeral is used for differentiation.

    \n\n
    Parameters
    \n\n
      \n
    • ll (list):\nlist to sort
    • \n
    \n\n
    Returns
    \n\n
      \n
    • ll (list):\nsorted list
    • \n
    \n", "signature": "(ll):", "funcdef": "def"}, "pyerrors.input.utils.check_idl": {"fullname": "pyerrors.input.utils.check_idl", "modulename": "pyerrors.input.utils", "qualname": "check_idl", "kind": "function", "doc": "

    Checks if list of configurations is contained in an idl

    \n\n
    Parameters
    \n\n
      \n
    • idl (range or list):\nidl of the current replicum
    • \n
    • che (list):\nlist of configurations to be checked against
    • \n
    \n\n
    Returns
    \n\n
      \n
    • miss_str (str):\nstring with integers of which idls are missing
    • \n
    \n", "signature": "(idl, che):", "funcdef": "def"}, "pyerrors.input.utils.check_params": {"fullname": "pyerrors.input.utils.check_params", "modulename": "pyerrors.input.utils", "qualname": "check_params", "kind": "function", "doc": "

    Check if, for sfcf, the parameter hashes at the end of the parameter files are in fact the expected one.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nmeasurement path, same as for sfcf read method
    • \n
    • param_hash (str):\nexpected parameter hash
    • \n
    • prefix (str):\ndata prefix to find the appropriate replicum folders in path
    • \n
    • param_prefix (str):\nprefix of the parameter file. Defaults to 'parameters_'
    • \n
    \n\n
    Returns
    \n\n
      \n
    • nums (dict):\ndictionary of faulty parameter files sorted by the replica paths
    • \n
    \n", "signature": "(path, param_hash, prefix, param_prefix='parameters_'):", "funcdef": "def"}, "pyerrors.integrate": {"fullname": "pyerrors.integrate", "modulename": "pyerrors.integrate", "kind": "module", "doc": "

    \n"}, "pyerrors.integrate.quad": {"fullname": "pyerrors.integrate.quad", "modulename": "pyerrors.integrate", "qualname": "quad", "kind": "function", "doc": "

    Performs a (one-dimensional) numeric integration of f(p, x) from a to b.

    \n\n

    The integration is performed using scipy.integrate.quad().\nAll parameters that can be passed to scipy.integrate.quad may also be passed to this function.\nThe output is the same as for scipy.integrate.quad, the first element being an Obs.

    \n\n
    Parameters
    \n\n
      \n
    • func (object):\nfunction to integrate, has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(p, x):\n    return p[0] + p[1] * x + p[2] * anp.sinh(x)\n
      \n
      \n\n

      where x is the integration variable.

    • \n
    • p (list of floats or Obs):\nparameters of the function func.
    • \n
    • a (float or Obs):\nLower limit of integration (use -numpy.inf for -infinity).
    • \n
    • b (float or Obs):\nUpper limit of integration (use -numpy.inf for -infinity).
    • \n
    • All parameters of scipy.integrate.quad
    • \n
    \n\n
    Returns
    \n\n
      \n
    • y (Obs):\nThe integral of func from a to b.
    • \n
    • abserr (float):\nAn estimate of the absolute error in the result.
    • \n
    • infodict (dict):\nA dictionary containing additional information.\nRun scipy.integrate.quad_explain() for more information.
    • \n
    • message: A convergence message.
    • \n
    • explain: Appended only with 'cos' or 'sin' weighting and infinite\nintegration limits, it contains an explanation of the codes in\ninfodict['ierlst']
    • \n
    \n", "signature": "(func, p, a, b, **kwargs):", "funcdef": "def"}, "pyerrors.linalg": {"fullname": "pyerrors.linalg", "modulename": "pyerrors.linalg", "kind": "module", "doc": "

    \n"}, "pyerrors.linalg.matmul": {"fullname": "pyerrors.linalg.matmul", "modulename": "pyerrors.linalg", "qualname": "matmul", "kind": "function", "doc": "

    Matrix multiply all operands.

    \n\n
    Parameters
    \n\n
      \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    • This implementation is faster compared to standard multiplication via the @ operator.
    • \n
    \n", "signature": "(*operands):", "funcdef": "def"}, "pyerrors.linalg.jack_matmul": {"fullname": "pyerrors.linalg.jack_matmul", "modulename": "pyerrors.linalg", "qualname": "jack_matmul", "kind": "function", "doc": "

    Matrix multiply both operands making use of the jackknife approximation.

    \n\n
    Parameters
    \n\n
      \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    • For large matrices this is considerably faster compared to matmul.
    • \n
    \n", "signature": "(*operands):", "funcdef": "def"}, "pyerrors.linalg.einsum": {"fullname": "pyerrors.linalg.einsum", "modulename": "pyerrors.linalg", "qualname": "einsum", "kind": "function", "doc": "

    Wrapper for numpy.einsum

    \n\n
    Parameters
    \n\n
      \n
    • subscripts (str):\nSubscripts for summation (see numpy documentation for details)
    • \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    \n", "signature": "(subscripts, *operands):", "funcdef": "def"}, "pyerrors.linalg.inv": {"fullname": "pyerrors.linalg.inv", "modulename": "pyerrors.linalg", "qualname": "inv", "kind": "function", "doc": "

    Inverse of Obs or CObs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.cholesky": {"fullname": "pyerrors.linalg.cholesky", "modulename": "pyerrors.linalg", "qualname": "cholesky", "kind": "function", "doc": "

    Cholesky decomposition of Obs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.det": {"fullname": "pyerrors.linalg.det", "modulename": "pyerrors.linalg", "qualname": "det", "kind": "function", "doc": "

    Determinant of Obs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.eigh": {"fullname": "pyerrors.linalg.eigh", "modulename": "pyerrors.linalg", "qualname": "eigh", "kind": "function", "doc": "

    Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.eig": {"fullname": "pyerrors.linalg.eig", "modulename": "pyerrors.linalg", "qualname": "eig", "kind": "function", "doc": "

    Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.eigv": {"fullname": "pyerrors.linalg.eigv", "modulename": "pyerrors.linalg", "qualname": "eigv", "kind": "function", "doc": "

    Computes the eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.pinv": {"fullname": "pyerrors.linalg.pinv", "modulename": "pyerrors.linalg", "qualname": "pinv", "kind": "function", "doc": "

    Computes the Moore-Penrose pseudoinverse of a matrix of Obs.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.svd": {"fullname": "pyerrors.linalg.svd", "modulename": "pyerrors.linalg", "qualname": "svd", "kind": "function", "doc": "

    Computes the singular value decomposition of a matrix of Obs.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.misc": {"fullname": "pyerrors.misc", "modulename": "pyerrors.misc", "kind": "module", "doc": "

    \n"}, "pyerrors.misc.print_config": {"fullname": "pyerrors.misc.print_config", "modulename": "pyerrors.misc", "qualname": "print_config", "kind": "function", "doc": "

    Print information about version of python, pyerrors and dependencies.

    \n", "signature": "():", "funcdef": "def"}, "pyerrors.misc.errorbar": {"fullname": "pyerrors.misc.errorbar", "modulename": "pyerrors.misc", "qualname": "errorbar", "kind": "function", "doc": "

    pyerrors wrapper for the errorbars method of matplotlib

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nA list of x-values which can be Obs.
    • \n
    • y (list):\nA list of y-values which can be Obs.
    • \n
    • axes ((matplotlib.pyplot.axes)):\nThe axes to plot on. default is plt.
    • \n
    \n", "signature": "(\tx,\ty,\taxes=<module 'matplotlib.pyplot' from '/opt/hostedtoolcache/Python/3.10.15/x64/lib/python3.10/site-packages/matplotlib/pyplot.py'>,\t**kwargs):", "funcdef": "def"}, "pyerrors.misc.dump_object": {"fullname": "pyerrors.misc.dump_object", "modulename": "pyerrors.misc", "qualname": "dump_object", "kind": "function", "doc": "

    Dump object into pickle file.

    \n\n
    Parameters
    \n\n
      \n
    • obj (object):\nobject to be saved in the pickle file
    • \n
    • name (str):\nname of the file
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(obj, name, **kwargs):", "funcdef": "def"}, "pyerrors.misc.load_object": {"fullname": "pyerrors.misc.load_object", "modulename": "pyerrors.misc", "qualname": "load_object", "kind": "function", "doc": "

    Load object from pickle file.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the file
    • \n
    \n\n
    Returns
    \n\n
      \n
    • object (Obs):\nLoaded Object
    • \n
    \n", "signature": "(path):", "funcdef": "def"}, "pyerrors.misc.pseudo_Obs": {"fullname": "pyerrors.misc.pseudo_Obs", "modulename": "pyerrors.misc", "qualname": "pseudo_Obs", "kind": "function", "doc": "

    Generate an Obs object with given value, dvalue and name for test purposes

    \n\n
    Parameters
    \n\n
      \n
    • value (float):\ncentral value of the Obs to be generated.
    • \n
    • dvalue (float):\nerror of the Obs to be generated.
    • \n
    • name (str):\nname of the ensemble for which the Obs is to be generated.
    • \n
    • samples (int):\nnumber of samples for the Obs (default 1000).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (Obs):\nGenerated Observable
    • \n
    \n", "signature": "(value, dvalue, name, samples=1000):", "funcdef": "def"}, "pyerrors.misc.gen_correlated_data": {"fullname": "pyerrors.misc.gen_correlated_data", "modulename": "pyerrors.misc", "qualname": "gen_correlated_data", "kind": "function", "doc": "

    Generate observables with given covariance and autocorrelation times.

    \n\n
    Parameters
    \n\n
      \n
    • means (list):\nlist containing the mean value of each observable.
    • \n
    • cov (numpy.ndarray):\ncovariance matrix for the data to be generated.
    • \n
    • name (str):\nensemble name for the data to be geneated.
    • \n
    • tau (float or list):\ncan either be a real number or a list with an entry for\nevery dataset.
    • \n
    • samples (int):\nnumber of samples to be generated for each observable.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr_obs (list[Obs]):\nGenerated observable list
    • \n
    \n", "signature": "(means, cov, name, tau=0.5, samples=1000):", "funcdef": "def"}, "pyerrors.mpm": {"fullname": "pyerrors.mpm", "modulename": "pyerrors.mpm", "kind": "module", "doc": "

    \n"}, "pyerrors.mpm.matrix_pencil_method": {"fullname": "pyerrors.mpm.matrix_pencil_method", "modulename": "pyerrors.mpm", "qualname": "matrix_pencil_method", "kind": "function", "doc": "

    Matrix pencil method to extract k energy levels from data

    \n\n

    Implementation of the matrix pencil method based on\neq. (2.17) of Y. Hua, T. K. Sarkar, IEEE Trans. Acoust. 38, 814-824 (1990)

    \n\n
    Parameters
    \n\n
      \n
    • data (list):\ncan be a list of Obs for the analysis of a single correlator, or a list of lists\nof Obs if several correlators are to analyzed at once.
    • \n
    • k (int):\nNumber of states to extract (default 1).
    • \n
    • p (int):\nmatrix pencil parameter which filters noise. The optimal value is expected between\nlen(data)/3 and 2*len(data)/3. The computation is more expensive the closer p is\nto len(data)/2 but could possibly suppress more noise (default len(data)//2).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • energy_levels (list[Obs]):\nExtracted energy levels
    • \n
    \n", "signature": "(corrs, k=1, p=None, **kwargs):", "funcdef": "def"}, "pyerrors.obs": {"fullname": "pyerrors.obs", "modulename": "pyerrors.obs", "kind": "module", "doc": "

    \n"}, "pyerrors.obs.Obs": {"fullname": "pyerrors.obs.Obs", "modulename": "pyerrors.obs", "qualname": "Obs", "kind": "class", "doc": "

    Class for a general observable.

    \n\n

    Instances of Obs are the basic objects of a pyerrors error analysis.\nThey are initialized with a list which contains arrays of samples for\ndifferent ensembles/replica and another list of same length which contains\nthe names of the ensembles/replica. Mathematical operations can be\nperformed on instances. The result is another instance of Obs. The error of\nan instance can be computed with the gamma_method. Also contains additional\nmethods for output and visualization of the error calculation.

    \n\n
    Attributes
    \n\n
      \n
    • S_global (float):\nStandard value for S (default 2.0)
    • \n
    • S_dict (dict):\nDictionary for S values. If an entry for a given ensemble\nexists this overwrites the standard value for that ensemble.
    • \n
    • tau_exp_global (float):\nStandard value for tau_exp (default 0.0)
    • \n
    • tau_exp_dict (dict):\nDictionary for tau_exp values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
    • \n
    • N_sigma_global (float):\nStandard value for N_sigma (default 1.0)
    • \n
    • N_sigma_dict (dict):\nDictionary for N_sigma values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
    • \n
    \n"}, "pyerrors.obs.Obs.__init__": {"fullname": "pyerrors.obs.Obs.__init__", "modulename": "pyerrors.obs", "qualname": "Obs.__init__", "kind": "function", "doc": "

    Initialize Obs object.

    \n\n
    Parameters
    \n\n
      \n
    • samples (list):\nlist of numpy arrays containing the Monte Carlo samples
    • \n
    • names (list):\nlist of strings labeling the individual samples
    • \n
    • idl (list, optional):\nlist of ranges or lists on which the samples are defined
    • \n
    \n", "signature": "(samples, names, idl=None, **kwargs)"}, "pyerrors.obs.Obs.S_global": {"fullname": "pyerrors.obs.Obs.S_global", "modulename": "pyerrors.obs", "qualname": "Obs.S_global", "kind": "variable", "doc": "

    \n", "default_value": "2.0"}, "pyerrors.obs.Obs.S_dict": {"fullname": "pyerrors.obs.Obs.S_dict", "modulename": "pyerrors.obs", "qualname": "Obs.S_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.tau_exp_global": {"fullname": "pyerrors.obs.Obs.tau_exp_global", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_global", "kind": "variable", "doc": "

    \n", "default_value": "0.0"}, "pyerrors.obs.Obs.tau_exp_dict": {"fullname": "pyerrors.obs.Obs.tau_exp_dict", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.N_sigma_global": {"fullname": "pyerrors.obs.Obs.N_sigma_global", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_global", "kind": "variable", "doc": "

    \n", "default_value": "1.0"}, "pyerrors.obs.Obs.N_sigma_dict": {"fullname": "pyerrors.obs.Obs.N_sigma_dict", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.names": {"fullname": "pyerrors.obs.Obs.names", "modulename": "pyerrors.obs", "qualname": "Obs.names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.shape": {"fullname": "pyerrors.obs.Obs.shape", "modulename": "pyerrors.obs", "qualname": "Obs.shape", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.r_values": {"fullname": "pyerrors.obs.Obs.r_values", "modulename": "pyerrors.obs", "qualname": "Obs.r_values", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.deltas": {"fullname": "pyerrors.obs.Obs.deltas", "modulename": "pyerrors.obs", "qualname": "Obs.deltas", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.N": {"fullname": "pyerrors.obs.Obs.N", "modulename": "pyerrors.obs", "qualname": "Obs.N", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.idl": {"fullname": "pyerrors.obs.Obs.idl", "modulename": "pyerrors.obs", "qualname": "Obs.idl", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.ddvalue": {"fullname": "pyerrors.obs.Obs.ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.ddvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.reweighted": {"fullname": "pyerrors.obs.Obs.reweighted", "modulename": "pyerrors.obs", "qualname": "Obs.reweighted", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.tag": {"fullname": "pyerrors.obs.Obs.tag", "modulename": "pyerrors.obs", "qualname": "Obs.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.value": {"fullname": "pyerrors.obs.Obs.value", "modulename": "pyerrors.obs", "qualname": "Obs.value", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.dvalue": {"fullname": "pyerrors.obs.Obs.dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.dvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_names": {"fullname": "pyerrors.obs.Obs.e_names", "modulename": "pyerrors.obs", "qualname": "Obs.e_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.cov_names": {"fullname": "pyerrors.obs.Obs.cov_names", "modulename": "pyerrors.obs", "qualname": "Obs.cov_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.mc_names": {"fullname": "pyerrors.obs.Obs.mc_names", "modulename": "pyerrors.obs", "qualname": "Obs.mc_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_content": {"fullname": "pyerrors.obs.Obs.e_content", "modulename": "pyerrors.obs", "qualname": "Obs.e_content", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.covobs": {"fullname": "pyerrors.obs.Obs.covobs", "modulename": "pyerrors.obs", "qualname": "Obs.covobs", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.gamma_method": {"fullname": "pyerrors.obs.Obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "Obs.gamma_method", "kind": "function", "doc": "

    Estimate the error and related properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
    • \n
    • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
    • \n
    • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
    • \n
    • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
    • \n
    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.gm": {"fullname": "pyerrors.obs.Obs.gm", "modulename": "pyerrors.obs", "qualname": "Obs.gm", "kind": "function", "doc": "

    Estimate the error and related properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
    • \n
    • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
    • \n
    • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
    • \n
    • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
    • \n
    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.details": {"fullname": "pyerrors.obs.Obs.details", "modulename": "pyerrors.obs", "qualname": "Obs.details", "kind": "function", "doc": "

    Output detailed properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • ens_content (bool):\nprint details about the ensembles and replica if true.
    • \n
    \n", "signature": "(self, ens_content=True):", "funcdef": "def"}, "pyerrors.obs.Obs.reweight": {"fullname": "pyerrors.obs.Obs.reweight", "modulename": "pyerrors.obs", "qualname": "Obs.reweight", "kind": "function", "doc": "

    Reweight the obs with given rewighting factors.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl. Default False.
    • \n
    \n", "signature": "(self, weight):", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero_within_error": {"fullname": "pyerrors.obs.Obs.is_zero_within_error", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero_within_error", "kind": "function", "doc": "

    Checks whether the observable is zero within 'sigma' standard errors.

    \n\n
    Parameters
    \n\n
      \n
    • sigma (int):\nNumber of standard errors used for the check.
    • \n
    • Works only properly when the gamma method was run.
    • \n
    \n", "signature": "(self, sigma=1):", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero": {"fullname": "pyerrors.obs.Obs.is_zero", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero", "kind": "function", "doc": "

    Checks whether the observable is zero within a given tolerance.

    \n\n
    Parameters
    \n\n
      \n
    • atol (float):\nAbsolute tolerance (for details see numpy documentation).
    • \n
    \n", "signature": "(self, atol=1e-10):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_tauint": {"fullname": "pyerrors.obs.Obs.plot_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.plot_tauint", "kind": "function", "doc": "

    Plot integrated autocorrelation time for each ensemble.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rho": {"fullname": "pyerrors.obs.Obs.plot_rho", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rho", "kind": "function", "doc": "

    Plot normalized autocorrelation function time for each ensemble.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rep_dist": {"fullname": "pyerrors.obs.Obs.plot_rep_dist", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rep_dist", "kind": "function", "doc": "

    Plot replica distribution for each ensemble with more than one replicum.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_history": {"fullname": "pyerrors.obs.Obs.plot_history", "modulename": "pyerrors.obs", "qualname": "Obs.plot_history", "kind": "function", "doc": "

    Plot derived Monte Carlo history for each ensemble

    \n\n
    Parameters
    \n\n
      \n
    • expand (bool):\nshow expanded history for irregular Monte Carlo chains (default: True).
    • \n
    \n", "signature": "(self, expand=True):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_piechart": {"fullname": "pyerrors.obs.Obs.plot_piechart", "modulename": "pyerrors.obs", "qualname": "Obs.plot_piechart", "kind": "function", "doc": "

    Plot piechart which shows the fractional contribution of each\nensemble to the error and returns a dictionary containing the fractions.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.dump": {"fullname": "pyerrors.obs.Obs.dump", "modulename": "pyerrors.obs", "qualname": "Obs.dump", "kind": "function", "doc": "

    Dump the Obs to a file 'name' of chosen format.

    \n\n
    Parameters
    \n\n
      \n
    • filename (str):\nname of the file to be saved.
    • \n
    • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
    • \n
    • description (str):\nDescription for output file, only relevant for json.gz format.
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n", "signature": "(self, filename, datatype='json.gz', description='', **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.export_jackknife": {"fullname": "pyerrors.obs.Obs.export_jackknife", "modulename": "pyerrors.obs", "qualname": "Obs.export_jackknife", "kind": "function", "doc": "

    Export jackknife samples from the Obs

    \n\n
    Returns
    \n\n
      \n
    • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N jackknife samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived jackknife samples\nshould agree with samples from a full jackknife analysis up to O(1/N).
    • \n
    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.export_bootstrap": {"fullname": "pyerrors.obs.Obs.export_bootstrap", "modulename": "pyerrors.obs", "qualname": "Obs.export_bootstrap", "kind": "function", "doc": "

    Export bootstrap samples from the Obs

    \n\n
    Parameters
    \n\n
      \n
    • samples (int):\nNumber of bootstrap samples to generate.
    • \n
    • random_numbers (np.ndarray):\nArray of shape (samples, length) containing the random numbers to generate the bootstrap samples.\nIf not provided the bootstrap samples are generated bashed on the md5 hash of the enesmble name.
    • \n
    • save_rng (str):\nSave the random numbers to a file if a path is specified.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N import_bootstrap samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived bootstrap samples\nshould agree with samples from a full bootstrap analysis up to O(1/N).
    • \n
    \n", "signature": "(self, samples=500, random_numbers=None, save_rng=None):", "funcdef": "def"}, "pyerrors.obs.Obs.sqrt": {"fullname": "pyerrors.obs.Obs.sqrt", "modulename": "pyerrors.obs", "qualname": "Obs.sqrt", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.log": {"fullname": "pyerrors.obs.Obs.log", "modulename": "pyerrors.obs", "qualname": "Obs.log", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.exp": {"fullname": "pyerrors.obs.Obs.exp", "modulename": "pyerrors.obs", "qualname": "Obs.exp", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.sin": {"fullname": "pyerrors.obs.Obs.sin", "modulename": "pyerrors.obs", "qualname": "Obs.sin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.cos": {"fullname": "pyerrors.obs.Obs.cos", "modulename": "pyerrors.obs", "qualname": "Obs.cos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.tan": {"fullname": "pyerrors.obs.Obs.tan", "modulename": "pyerrors.obs", "qualname": "Obs.tan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arcsin": {"fullname": "pyerrors.obs.Obs.arcsin", "modulename": "pyerrors.obs", "qualname": "Obs.arcsin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arccos": {"fullname": "pyerrors.obs.Obs.arccos", "modulename": "pyerrors.obs", "qualname": "Obs.arccos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arctan": {"fullname": "pyerrors.obs.Obs.arctan", "modulename": "pyerrors.obs", "qualname": "Obs.arctan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.sinh": {"fullname": "pyerrors.obs.Obs.sinh", "modulename": "pyerrors.obs", "qualname": "Obs.sinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.cosh": {"fullname": "pyerrors.obs.Obs.cosh", "modulename": "pyerrors.obs", "qualname": "Obs.cosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.tanh": {"fullname": "pyerrors.obs.Obs.tanh", "modulename": "pyerrors.obs", "qualname": "Obs.tanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arcsinh": {"fullname": "pyerrors.obs.Obs.arcsinh", "modulename": "pyerrors.obs", "qualname": "Obs.arcsinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arccosh": {"fullname": "pyerrors.obs.Obs.arccosh", "modulename": "pyerrors.obs", "qualname": "Obs.arccosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arctanh": {"fullname": "pyerrors.obs.Obs.arctanh", "modulename": "pyerrors.obs", "qualname": "Obs.arctanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.N_sigma": {"fullname": "pyerrors.obs.Obs.N_sigma", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.S": {"fullname": "pyerrors.obs.Obs.S", "modulename": "pyerrors.obs", "qualname": "Obs.S", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_ddvalue": {"fullname": "pyerrors.obs.Obs.e_ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_ddvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_drho": {"fullname": "pyerrors.obs.Obs.e_drho", "modulename": "pyerrors.obs", "qualname": "Obs.e_drho", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_dtauint": {"fullname": "pyerrors.obs.Obs.e_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_dtauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_dvalue": {"fullname": "pyerrors.obs.Obs.e_dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_dvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_n_dtauint": {"fullname": "pyerrors.obs.Obs.e_n_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_dtauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_n_tauint": {"fullname": "pyerrors.obs.Obs.e_n_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_tauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_rho": {"fullname": "pyerrors.obs.Obs.e_rho", "modulename": "pyerrors.obs", "qualname": "Obs.e_rho", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_tauint": {"fullname": "pyerrors.obs.Obs.e_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_tauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_windowsize": {"fullname": "pyerrors.obs.Obs.e_windowsize", "modulename": "pyerrors.obs", "qualname": "Obs.e_windowsize", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.tau_exp": {"fullname": "pyerrors.obs.Obs.tau_exp", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs": {"fullname": "pyerrors.obs.CObs", "modulename": "pyerrors.obs", "qualname": "CObs", "kind": "class", "doc": "

    Class for a complex valued observable.

    \n"}, "pyerrors.obs.CObs.__init__": {"fullname": "pyerrors.obs.CObs.__init__", "modulename": "pyerrors.obs", "qualname": "CObs.__init__", "kind": "function", "doc": "

    \n", "signature": "(real, imag=0.0)"}, "pyerrors.obs.CObs.tag": {"fullname": "pyerrors.obs.CObs.tag", "modulename": "pyerrors.obs", "qualname": "CObs.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.real": {"fullname": "pyerrors.obs.CObs.real", "modulename": "pyerrors.obs", "qualname": "CObs.real", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.imag": {"fullname": "pyerrors.obs.CObs.imag", "modulename": "pyerrors.obs", "qualname": "CObs.imag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.gamma_method": {"fullname": "pyerrors.obs.CObs.gamma_method", "modulename": "pyerrors.obs", "qualname": "CObs.gamma_method", "kind": "function", "doc": "

    Executes the gamma_method for the real and the imaginary part.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.CObs.is_zero": {"fullname": "pyerrors.obs.CObs.is_zero", "modulename": "pyerrors.obs", "qualname": "CObs.is_zero", "kind": "function", "doc": "

    Checks whether both real and imaginary part are zero within machine precision.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.CObs.conjugate": {"fullname": "pyerrors.obs.CObs.conjugate", "modulename": "pyerrors.obs", "qualname": "CObs.conjugate", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.gamma_method": {"fullname": "pyerrors.obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "gamma_method", "kind": "function", "doc": "

    Vectorized version of the gamma_method applicable to lists or arrays of Obs.

    \n\n

    See docstring of pe.Obs.gamma_method for details.

    \n", "signature": "(x, **kwargs):", "funcdef": "def"}, "pyerrors.obs.gm": {"fullname": "pyerrors.obs.gm", "modulename": "pyerrors.obs", "qualname": "gm", "kind": "function", "doc": "

    Vectorized version of the gamma_method applicable to lists or arrays of Obs.

    \n\n

    See docstring of pe.Obs.gamma_method for details.

    \n", "signature": "(x, **kwargs):", "funcdef": "def"}, "pyerrors.obs.derived_observable": {"fullname": "pyerrors.obs.derived_observable", "modulename": "pyerrors.obs", "qualname": "derived_observable", "kind": "function", "doc": "

    Construct a derived Obs according to func(data, **kwargs) using automatic differentiation.

    \n\n
    Parameters
    \n\n
      \n
    • func (object):\narbitrary function of the form func(data, **kwargs). For the\nautomatic differentiation to work, all numpy functions have to have\nthe autograd wrapper (use 'import autograd.numpy as anp').
    • \n
    • data (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
    • \n
    • num_grad (bool):\nif True, numerical derivatives are used instead of autograd\n(default False). To control the numerical differentiation the\nkwargs of numdifftools.step_generators.MaxStepGenerator\ncan be used.
    • \n
    • man_grad (list):\nmanually supply a list or an array which contains the jacobian\nof func. Use cautiously, supplying the wrong derivative will\nnot be intercepted.
    • \n
    \n\n
    Notes
    \n\n

    For simple mathematical operations it can be practical to use anonymous\nfunctions. For the ratio of two observables one can e.g. use

    \n\n

    new_obs = derived_observable(lambda x: x[0] / x[1], [obs1, obs2])

    \n", "signature": "(func, data, array_mode=False, **kwargs):", "funcdef": "def"}, "pyerrors.obs.reweight": {"fullname": "pyerrors.obs.reweight", "modulename": "pyerrors.obs", "qualname": "reweight", "kind": "function", "doc": "

    Reweight a list of observables.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • obs (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl. Default False.
    • \n
    \n", "signature": "(weight, obs, **kwargs):", "funcdef": "def"}, "pyerrors.obs.correlate": {"fullname": "pyerrors.obs.correlate", "modulename": "pyerrors.obs", "qualname": "correlate", "kind": "function", "doc": "

    Correlate two observables.

    \n\n
    Parameters
    \n\n
      \n
    • obs_a (Obs):\nFirst observable
    • \n
    • obs_b (Obs):\nSecond observable
    • \n
    \n\n
    Notes
    \n\n

    Keep in mind to only correlate primary observables which have not been reweighted\nyet. The reweighting has to be applied after correlating the observables.\nCurrently only works if ensembles are identical (this is not strictly necessary).

    \n", "signature": "(obs_a, obs_b):", "funcdef": "def"}, "pyerrors.obs.covariance": {"fullname": "pyerrors.obs.covariance", "modulename": "pyerrors.obs", "qualname": "covariance", "kind": "function", "doc": "

    Calculates the error covariance matrix of a set of observables.

    \n\n

    WARNING: This function should be used with care, especially for observables with support on multiple\n ensembles with differing autocorrelations. See the notes below for details.

    \n\n

    The gamma method has to be applied first to all observables.

    \n\n
    Parameters
    \n\n
      \n
    • obs (list or numpy.ndarray):\nList or one dimensional array of Obs
    • \n
    • visualize (bool):\nIf True plots the corresponding normalized correlation matrix (default False).
    • \n
    • correlation (bool):\nIf True the correlation matrix instead of the error covariance matrix is returned (default False).
    • \n
    • smooth (None or int):\nIf smooth is an integer 'E' between 2 and the dimension of the matrix minus 1 the eigenvalue\nsmoothing procedure of hep-lat/9412087 is applied to the correlation matrix which leaves the\nlargest E eigenvalues essentially unchanged and smoothes the smaller eigenvalues to avoid extremely\nsmall ones.
    • \n
    \n\n
    Notes
    \n\n

    The error covariance is defined such that it agrees with the squared standard error for two identical observables\n$$\\operatorname{cov}(a,a)=\\sum_{s=1}^N\\delta_a^s\\delta_a^s/N^2=\\Gamma_{aa}(0)/N=\\operatorname{var}(a)/N=\\sigma_a^2$$\nin the absence of autocorrelation.\nThe error covariance is estimated by calculating the correlation matrix assuming no autocorrelation and then rescaling the correlation matrix by the full errors including the previous gamma method estimate for the autocorrelation of the observables. The covariance at windowsize 0 is guaranteed to be positive semi-definite\n$$\\sum_{i,j}v_i\\Gamma_{ij}(0)v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i,j}v_i\\delta_i^s\\delta_j^s v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i}|v_i\\delta_i^s|^2\\geq 0\\,,$$ for every $v\\in\\mathbb{R}^M$, while such an identity does not hold for larger windows/lags.\nFor observables defined on a single ensemble our approximation is equivalent to assuming that the integrated autocorrelation time of an off-diagonal element is equal to the geometric mean of the integrated autocorrelation times of the corresponding diagonal elements.\n$$\\tau_{\\mathrm{int}, ij}=\\sqrt{\\tau_{\\mathrm{int}, i}\\times \\tau_{\\mathrm{int}, j}}$$\nThis construction ensures that the estimated covariance matrix is positive semi-definite (up to numerical rounding errors).

    \n", "signature": "(obs, visualize=False, correlation=False, smooth=None, **kwargs):", "funcdef": "def"}, "pyerrors.obs.invert_corr_cov_cholesky": {"fullname": "pyerrors.obs.invert_corr_cov_cholesky", "modulename": "pyerrors.obs", "qualname": "invert_corr_cov_cholesky", "kind": "function", "doc": "

    Constructs a lower triangular matrix chol via the Cholesky decomposition of the correlation matrix corr\n and then returns the inverse covariance matrix chol_inv as a lower triangular matrix by solving chol * x = inverrdiag.

    \n\n
    Parameters
    \n\n
      \n
    • corr (np.ndarray):\ncorrelation matrix
    • \n
    • inverrdiag (np.ndarray):\ndiagonal matrix, the entries are the inverse errors of the data points considered
    • \n
    \n", "signature": "(corr, inverrdiag):", "funcdef": "def"}, "pyerrors.obs.sort_corr": {"fullname": "pyerrors.obs.sort_corr", "modulename": "pyerrors.obs", "qualname": "sort_corr", "kind": "function", "doc": "

    Reorders a correlation matrix to match the alphabetical order of its underlying y data.

    \n\n

    The ordering of the input correlation matrix corr is given by the list of keys kl.\nThe input dictionary yd (with the same keys kl) must contain the corresponding y data\nthat the correlation matrix is based on.\nThis function sorts the list of keys kl alphabetically and sorts the matrix corr\naccording to this alphabetical order such that the sorted matrix corr_sorted corresponds\nto the y data yd when arranged in an alphabetical order by its keys.

    \n\n
    Parameters
    \n\n
      \n
    • corr (np.ndarray):\nA square correlation matrix constructed using the order of the y data specified by kl.\nThe dimensions of corr should match the total number of y data points in yd combined.
    • \n
    • kl (list of str):\nA list of keys that denotes the order in which the y data from yd was used to build the\ninput correlation matrix corr.
    • \n
    • yd (dict of list):\nA dictionary where each key corresponds to a unique identifier, and its value is a list of\ny data points. The total number of y data points across all keys must match the dimensions\nof corr. The lists in the dictionary can be lists of Obs.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • np.ndarray: A new, sorted correlation matrix that corresponds to the y data from yd when arranged alphabetically by its keys.
    • \n
    \n\n
    Example
    \n\n
    \n
    >>> import numpy as np\n>>> import pyerrors as pe\n>>> corr = np.array([[1, 0.2, 0.3], [0.2, 1, 0.4], [0.3, 0.4, 1]])\n>>> kl = ['b', 'a']\n>>> yd = {'a': [1, 2], 'b': [3]}\n>>> sorted_corr = pe.obs.sort_corr(corr, kl, yd)\n>>> print(sorted_corr)\narray([[1. , 0.3, 0.4],\n       [0.3, 1. , 0.2],\n       [0.4, 0.2, 1. ]])\n
    \n
    \n", "signature": "(corr, kl, yd):", "funcdef": "def"}, "pyerrors.obs.import_jackknife": {"fullname": "pyerrors.obs.import_jackknife", "modulename": "pyerrors.obs", "qualname": "import_jackknife", "kind": "function", "doc": "

    Imports jackknife samples and returns an Obs

    \n\n
    Parameters
    \n\n
      \n
    • jacks (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N jackknife samples as first to Nth entry.
    • \n
    • name (str):\nname of the ensemble the samples are defined on.
    • \n
    \n", "signature": "(jacks, name, idl=None):", "funcdef": "def"}, "pyerrors.obs.import_bootstrap": {"fullname": "pyerrors.obs.import_bootstrap", "modulename": "pyerrors.obs", "qualname": "import_bootstrap", "kind": "function", "doc": "

    Imports bootstrap samples and returns an Obs

    \n\n
    Parameters
    \n\n
      \n
    • boots (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N bootstrap samples as first to Nth entry.
    • \n
    • name (str):\nname of the ensemble the samples are defined on.
    • \n
    • random_numbers (np.ndarray):\nArray of shape (samples, length) containing the random numbers to generate the bootstrap samples,\nwhere samples is the number of bootstrap samples and length is the length of the original Monte Carlo\nchain to be reconstructed.
    • \n
    \n", "signature": "(boots, name, random_numbers):", "funcdef": "def"}, "pyerrors.obs.merge_obs": {"fullname": "pyerrors.obs.merge_obs", "modulename": "pyerrors.obs", "qualname": "merge_obs", "kind": "function", "doc": "

    Combine all observables in list_of_obs into one new observable

    \n\n
    Parameters
    \n\n
      \n
    • list_of_obs (list):\nlist of the Obs object to be combined
    • \n
    \n\n
    Notes
    \n\n

    It is not possible to combine obs which are based on the same replicum

    \n", "signature": "(list_of_obs):", "funcdef": "def"}, "pyerrors.obs.cov_Obs": {"fullname": "pyerrors.obs.cov_Obs", "modulename": "pyerrors.obs", "qualname": "cov_Obs", "kind": "function", "doc": "

    Create an Obs based on mean(s) and a covariance matrix

    \n\n
    Parameters
    \n\n
      \n
    • mean (list of floats or float):\nN mean value(s) of the new Obs
    • \n
    • cov (list or array):\n2d (NxN) Covariance matrix, 1d diagonal entries or 0d covariance
    • \n
    • name (str):\nidentifier for the covariance matrix
    • \n
    • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
    • \n
    \n", "signature": "(means, cov, name, grad=None):", "funcdef": "def"}, "pyerrors.roots": {"fullname": "pyerrors.roots", "modulename": "pyerrors.roots", "kind": "module", "doc": "

    \n"}, "pyerrors.roots.find_root": {"fullname": "pyerrors.roots.find_root", "modulename": "pyerrors.roots", "qualname": "find_root", "kind": "function", "doc": "

    Finds the root of the function func(x, d) where d is an Obs.

    \n\n
    Parameters
    \n\n
      \n
    • d (Obs):\nObs passed to the function.
    • \n
    • func (object):\nFunction to be minimized. Any numpy functions have to use the autograd.numpy wrapper.\nExample:

      \n\n
      \n
      import autograd.numpy as anp\ndef root_func(x, d):\n    return anp.exp(-x ** 2) - d\n
      \n
    • \n
    • guess (float):\nInitial guess for the minimization.

    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (Obs):\nObs valued root of the function.
    • \n
    \n", "signature": "(d, func, guess=1.0, **kwargs):", "funcdef": "def"}, "pyerrors.special": {"fullname": "pyerrors.special", "modulename": "pyerrors.special", "kind": "module", "doc": "

    \n"}, "pyerrors.special.beta": {"fullname": "pyerrors.special.beta", "modulename": "pyerrors.special", "qualname": "beta", "kind": "function", "doc": "

    beta(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    beta(a, b, out=None)

    \n\n

    Beta function.

    \n\n

    This function is defined in 1 as

    \n\n

    $$B(a, b) = \\int_0^1 t^{a-1}(1-t)^{b-1}dt\n = \\frac{\\Gamma(a)\\Gamma(b)}{\\Gamma(a+b)},$$

    \n\n

    where \\( \\Gamma \\) is the gamma function.

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nReal-valued arguments
    • \n
    • out (ndarray, optional):\nOptional output array for the function result
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the beta function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \nbetainc: the regularized incomplete beta function
    \nbetaln: the natural logarithm of the absolute\nvalue of the beta function

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    The beta function relates to the gamma function by the\ndefinition given above:

    \n\n
    \n
    >>> sc.beta(2, 3)\n0.08333333333333333\n>>> sc.gamma(2)*sc.gamma(3)/sc.gamma(2 + 3)\n0.08333333333333333\n
    \n
    \n\n

    As this relationship demonstrates, the beta function\nis symmetric:

    \n\n
    \n
    >>> sc.beta(1.7, 2.4)\n0.16567527689031739\n>>> sc.beta(2.4, 1.7)\n0.16567527689031739\n
    \n
    \n\n

    This function satisfies \\( B(1, b) = 1/b \\):

    \n\n
    \n
    >>> sc.beta(1, 4)\n0.25\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions,\nEq. 5.12.1. https://dlmf.nist.gov/5.12 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.betainc": {"fullname": "pyerrors.special.betainc", "modulename": "pyerrors.special", "qualname": "betainc", "kind": "function", "doc": "

    betainc(x1, x2, x3, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    betainc(a, b, x, out=None)

    \n\n

    Regularized incomplete beta function.

    \n\n

    Computes the regularized incomplete beta function, defined as 1:

    \n\n

    $$I_x(a, b) = \\frac{\\Gamma(a+b)}{\\Gamma(a)\\Gamma(b)} \\int_0^x\nt^{a-1}(1-t)^{b-1}dt,$$

    \n\n

    for \\( 0 \\leq x \\leq 1 \\).

    \n\n

    This function is the cumulative distribution function for the beta\ndistribution; its range is [0, 1].

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nPositive, real-valued parameters
    • \n
    • x (array_like):\nReal-valued such that \\( 0 \\leq x \\leq 1 \\),\nthe upper limit of integration
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the regularized incomplete beta function
    • \n
    \n\n
    See Also
    \n\n

    beta: beta function
    \nbetaincinv: inverse of the regularized incomplete beta function
    \nbetaincc: complement of the regularized incomplete beta function
    \nscipy.stats.beta: beta distribution

    \n\n
    Notes
    \n\n

    The term regularized in the name of this function refers to the\nscaling of the function by the gamma function terms shown in the\nformula. When not qualified as regularized, the name incomplete\nbeta function often refers to just the integral expression,\nwithout the gamma terms. One can use the function beta from\nscipy.special to get this \"nonregularized\" incomplete beta\nfunction by multiplying the result of betainc(a, b, x) by\nbeta(a, b).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Let \\( B(a, b) \\) be the beta function.

    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    The coefficient in terms of gamma is equal to\n\\( 1/B(a, b) \\). Also, when \\( x=1 \\)\nthe integral is equal to \\( B(a, b) \\).\nTherefore, \\( I_{x=1}(a, b) = 1 \\) for any \\( a, b \\).

    \n\n
    \n
    >>> sc.betainc(0.2, 3.5, 1.0)\n1.0\n
    \n
    \n\n

    It satisfies\n\\( I_x(a, b) = x^a F(a, 1-b, a+1, x)/ (aB(a, b)) \\),\nwhere \\( F \\) is the hypergeometric function hyp2f1:

    \n\n
    \n
    >>> a, b, x = 1.4, 3.1, 0.5\n>>> x**a * sc.hyp2f1(a, 1 - b, a + 1, x)/(a * sc.beta(a, b))\n0.8148904036225295\n>>> sc.betainc(a, b, x)\n0.8148904036225296\n
    \n
    \n\n

    This functions satisfies the relationship\n\\( I_x(a, b) = 1 - I_{1-x}(b, a) \\):

    \n\n
    \n
    >>> sc.betainc(2.2, 3.1, 0.4)\n0.49339638807619446\n>>> 1 - sc.betainc(3.1, 2.2, 1 - 0.4)\n0.49339638807619446\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/8.17 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.betaln": {"fullname": "pyerrors.special.betaln", "modulename": "pyerrors.special", "qualname": "betaln", "kind": "function", "doc": "

    betaln(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    betaln(a, b, out=None)

    \n\n

    Natural logarithm of absolute value of beta function.

    \n\n

    Computes ln(abs(beta(a, b))).

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nPositive, real-valued parameters
    • \n
    • out (ndarray, optional):\nOptional output array for function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the betaln function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \nbetainc: the regularized incomplete beta function
    \nbeta: the beta function

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import betaln, beta\n
    \n
    \n\n

    Verify that, for moderate values of a and b, betaln(a, b)\nis the same as log(beta(a, b)):

    \n\n
    \n
    >>> betaln(3, 4)\n-4.0943445622221\n
    \n
    \n\n
    \n
    >>> np.log(beta(3, 4))\n-4.0943445622221\n
    \n
    \n\n

    In the following beta(a, b) underflows to 0, so we can't compute\nthe logarithm of the actual value.

    \n\n
    \n
    >>> a = 400\n>>> b = 900\n>>> beta(a, b)\n0.0\n
    \n
    \n\n

    We can compute the logarithm of beta(a, b) by using betaln:

    \n\n
    \n
    >>> betaln(a, b)\n-804.3069951764146\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.polygamma": {"fullname": "pyerrors.special.polygamma", "modulename": "pyerrors.special", "qualname": "polygamma", "kind": "function", "doc": "

    Polygamma functions.

    \n\n

    Defined as \\( \\psi^{(n)}(x) \\) where \\( \\psi \\) is the\ndigamma function. See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • n (array_like):\nThe order of the derivative of the digamma function; must be\nintegral
    • \n
    • x (array_like):\nReal valued input
    • \n
    \n\n
    Returns
    \n\n
      \n
    • ndarray: Function results
    • \n
    \n\n
    See Also
    \n\n

    digamma

    \n\n
    References
    \n\n

    .. [dlmf] NIST, Digital Library of Mathematical Functions,\n https://dlmf.nist.gov/5.15

    \n\n
    Examples
    \n\n
    \n
    >>> from scipy import special\n>>> x = [2, 3, 25.5]\n>>> special.polygamma(1, x)\narray([ 0.64493407,  0.39493407,  0.03999467])\n>>> special.polygamma(0, x) == special.psi(x)\narray([ True,  True,  True], dtype=bool)\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.psi": {"fullname": "pyerrors.special.psi", "modulename": "pyerrors.special", "qualname": "psi", "kind": "function", "doc": "

    psi(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    psi(z, out=None)

    \n\n

    The digamma function.

    \n\n

    The logarithmic derivative of the gamma function evaluated at z.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex argument.
    • \n
    • out (ndarray, optional):\nArray for the computed values of psi.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • digamma (scalar or ndarray):\nComputed values of psi.
    • \n
    \n\n
    Notes
    \n\n

    For large values not close to the negative real axis, psi is\ncomputed using the asymptotic series (5.11.2) from 1. For small\narguments not close to the negative real axis, the recurrence\nrelation (5.5.2) from 2 is used until the argument is large\nenough to use the asymptotic series. For values close to the\nnegative real axis, the reflection formula (5.5.4) from 3 is\nused first. Note that psi has a family of zeros on the\nnegative real axis which occur between the poles at nonpositive\nintegers. Around the zeros the reflection formula suffers from\ncancellation and the implementation loses precision. The sole\npositive zero and the first negative zero, however, are handled\nseparately by precomputing series expansions using 4, so the\nfunction should maintain full accuracy around the origin.

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> from scipy.special import psi\n>>> z = 3 + 4j\n>>> psi(z)\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n

    Verify psi(z) = psi(z + 1) - 1/z:

    \n\n
    \n
    >>> psi(z + 1) - 1/z\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    2. \n\n
    3. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    4. \n\n
    5. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    6. \n\n
    7. \n

      Fredrik Johansson and others.\n\"mpmath: a Python library for arbitrary-precision floating-point arithmetic\"\n(Version 0.19) http://mpmath.org/ 

      \n
    8. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.digamma": {"fullname": "pyerrors.special.digamma", "modulename": "pyerrors.special", "qualname": "digamma", "kind": "function", "doc": "

    psi(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    psi(z, out=None)

    \n\n

    The digamma function.

    \n\n

    The logarithmic derivative of the gamma function evaluated at z.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex argument.
    • \n
    • out (ndarray, optional):\nArray for the computed values of psi.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • digamma (scalar or ndarray):\nComputed values of psi.
    • \n
    \n\n
    Notes
    \n\n

    For large values not close to the negative real axis, psi is\ncomputed using the asymptotic series (5.11.2) from 1. For small\narguments not close to the negative real axis, the recurrence\nrelation (5.5.2) from 2 is used until the argument is large\nenough to use the asymptotic series. For values close to the\nnegative real axis, the reflection formula (5.5.4) from 3 is\nused first. Note that psi has a family of zeros on the\nnegative real axis which occur between the poles at nonpositive\nintegers. Around the zeros the reflection formula suffers from\ncancellation and the implementation loses precision. The sole\npositive zero and the first negative zero, however, are handled\nseparately by precomputing series expansions using 4, so the\nfunction should maintain full accuracy around the origin.

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> from scipy.special import psi\n>>> z = 3 + 4j\n>>> psi(z)\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n

    Verify psi(z) = psi(z + 1) - 1/z:

    \n\n
    \n
    >>> psi(z + 1) - 1/z\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    2. \n\n
    3. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    4. \n\n
    5. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    6. \n\n
    7. \n

      Fredrik Johansson and others.\n\"mpmath: a Python library for arbitrary-precision floating-point arithmetic\"\n(Version 0.19) http://mpmath.org/ 

      \n
    8. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gamma": {"fullname": "pyerrors.special.gamma", "modulename": "pyerrors.special", "qualname": "gamma", "kind": "function", "doc": "

    gamma(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gamma(z, out=None)

    \n\n

    gamma function.

    \n\n

    The gamma function is defined as

    \n\n

    $$\\Gamma(z) = \\int_0^\\infty t^{z-1} e^{-t} dt$$

    \n\n

    for \\( \\Re(z) > 0 \\) and is extended to the rest of the complex\nplane by analytic continuation. See [dlmf]_ for more details.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex valued argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the gamma function
    • \n
    \n\n
    Notes
    \n\n

    The gamma function is often referred to as the generalized\nfactorial since \\( \\Gamma(n + 1) = n! \\) for natural numbers\n\\( n \\). More generally it satisfies the recurrence relation\n\\( \\Gamma(z + 1) = z \\cdot \\Gamma(z) \\) for complex \\( z \\),\nwhich, combined with the fact that \\( \\Gamma(1) = 1 \\), implies\nthe above identity for \\( z = n \\).

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5.2#E1

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import gamma, factorial\n
    \n
    \n\n
    \n
    >>> gamma([0, 0.5, 1, 5])\narray([         inf,   1.77245385,   1.        ,  24.        ])\n
    \n
    \n\n
    \n
    >>> z = 2.5 + 1j\n>>> gamma(z)\n(0.77476210455108352+0.70763120437959293j)\n>>> gamma(z+1), z*gamma(z)  # Recurrence property\n((1.2292740569981171+2.5438401155000685j),\n (1.2292740569981158+2.5438401155000658j))\n
    \n
    \n\n
    \n
    >>> gamma(0.5)**2  # gamma(0.5) = sqrt(pi)\n3.1415926535897927\n
    \n
    \n\n

    Plot gamma(x) for real x

    \n\n
    \n
    >>> x = np.linspace(-3.5, 5.5, 2251)\n>>> y = gamma(x)\n
    \n
    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> plt.plot(x, y, 'b', alpha=0.6, label='gamma(x)')\n>>> k = np.arange(1, 7)\n>>> plt.plot(k, factorial(k-1), 'k*', alpha=0.6,\n...          label='(x-1)!, x = 1, 2, ...')\n>>> plt.xlim(-3.5, 5.5)\n>>> plt.ylim(-10, 25)\n>>> plt.grid()\n>>> plt.xlabel('x')\n>>> plt.legend(loc='lower right')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammaln": {"fullname": "pyerrors.special.gammaln", "modulename": "pyerrors.special", "qualname": "gammaln", "kind": "function", "doc": "

    gammaln(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammaln(x, out=None)

    \n\n

    Logarithm of the absolute value of the gamma function.

    \n\n

    Defined as

    \n\n

    $$\\ln(\\lvert\\Gamma(x)\\rvert)$$

    \n\n

    where \\( \\Gamma \\) is the gamma function. For more details on\nthe gamma function, see [dlmf]_.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the log of the absolute value of gamma
    • \n
    \n\n
    See Also
    \n\n

    gammasgn: sign of the gamma function
    \nloggamma: principal branch of the logarithm of the gamma function

    \n\n
    Notes
    \n\n

    It is the same function as the Python standard library function\nmath.lgamma().

    \n\n

    When used in conjunction with gammasgn, this function is useful\nfor working in logspace on the real axis without having to deal\nwith complex numbers via the relation exp(gammaln(x)) =\ngammasgn(x) * gamma(x).

    \n\n

    For complex-valued log-gamma, use loggamma instead of gammaln.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import scipy.special as sc\n
    \n
    \n\n

    It has two positive zeros.

    \n\n
    \n
    >>> sc.gammaln([1, 2])\narray([0., 0.])\n
    \n
    \n\n

    It has poles at nonpositive integers.

    \n\n
    \n
    >>> sc.gammaln([0, -1, -2, -3, -4])\narray([inf, inf, inf, inf, inf])\n
    \n
    \n\n

    It asymptotically approaches x * log(x) (Stirling's formula).

    \n\n
    \n
    >>> x = np.array([1e10, 1e20, 1e40, 1e80])\n>>> sc.gammaln(x)\narray([2.20258509e+11, 4.50517019e+21, 9.11034037e+41, 1.83206807e+82])\n>>> x * np.log(x)\narray([2.30258509e+11, 4.60517019e+21, 9.21034037e+41, 1.84206807e+82])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammainc": {"fullname": "pyerrors.special.gammainc", "modulename": "pyerrors.special", "qualname": "gammainc", "kind": "function", "doc": "

    gammainc(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammainc(a, x, out=None)

    \n\n

    Regularized lower incomplete gamma function.

    \n\n

    It is defined as

    \n\n

    $$P(a, x) = \\frac{1}{\\Gamma(a)} \\int_0^x t^{a - 1}e^{-t} dt$$

    \n\n

    for \\( a > 0 \\) and \\( x \\geq 0 \\). See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nPositive parameter
    • \n
    • x (array_like):\nNonnegative argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the lower incomplete gamma function
    • \n
    \n\n
    See Also
    \n\n

    gammaincc: regularized upper incomplete gamma function
    \ngammaincinv: inverse of the regularized lower incomplete gamma function
    \ngammainccinv: inverse of the regularized upper incomplete gamma function

    \n\n
    Notes
    \n\n

    The function satisfies the relation gammainc(a, x) +\ngammaincc(a, x) = 1 where gammaincc is the regularized upper\nincomplete gamma function.

    \n\n

    The implementation largely follows that of [boost]_.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical functions\n https://dlmf.nist.gov/8.2#E4\n.. [boost] Maddock et. al., \"Incomplete Gamma Functions\",\n https://www.boost.org/doc/libs/1_61_0/libs/math/doc/html/math_toolkit/sf_gamma/igamma.html

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the CDF of the gamma distribution, so it starts at 0 and\nmonotonically increases to 1.

    \n\n
    \n
    >>> sc.gammainc(0.5, [0, 1, 10, 100])\narray([0.        , 0.84270079, 0.99999226, 1.        ])\n
    \n
    \n\n

    It is equal to one minus the upper incomplete gamma function.

    \n\n
    \n
    >>> a, x = 0.5, 0.4\n>>> sc.gammainc(a, x)\n0.6289066304773024\n>>> 1 - sc.gammaincc(a, x)\n0.6289066304773024\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammaincc": {"fullname": "pyerrors.special.gammaincc", "modulename": "pyerrors.special", "qualname": "gammaincc", "kind": "function", "doc": "

    gammaincc(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammaincc(a, x, out=None)

    \n\n

    Regularized upper incomplete gamma function.

    \n\n

    It is defined as

    \n\n

    $$Q(a, x) = \\frac{1}{\\Gamma(a)} \\int_x^\\infty t^{a - 1}e^{-t} dt$$

    \n\n

    for \\( a > 0 \\) and \\( x \\geq 0 \\). See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nPositive parameter
    • \n
    • x (array_like):\nNonnegative argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the upper incomplete gamma function
    • \n
    \n\n
    See Also
    \n\n

    gammainc: regularized lower incomplete gamma function
    \ngammaincinv: inverse of the regularized lower incomplete gamma function
    \ngammainccinv: inverse of the regularized upper incomplete gamma function

    \n\n
    Notes
    \n\n

    The function satisfies the relation gammainc(a, x) +\ngammaincc(a, x) = 1 where gammainc is the regularized lower\nincomplete gamma function.

    \n\n

    The implementation largely follows that of [boost]_.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical functions\n https://dlmf.nist.gov/8.2#E4\n.. [boost] Maddock et. al., \"Incomplete Gamma Functions\",\n https://www.boost.org/doc/libs/1_61_0/libs/math/doc/html/math_toolkit/sf_gamma/igamma.html

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the survival function of the gamma distribution, so it\nstarts at 1 and monotonically decreases to 0.

    \n\n
    \n
    >>> sc.gammaincc(0.5, [0, 1, 10, 100, 1000])\narray([1.00000000e+00, 1.57299207e-01, 7.74421643e-06, 2.08848758e-45,\n       0.00000000e+00])\n
    \n
    \n\n

    It is equal to one minus the lower incomplete gamma function.

    \n\n
    \n
    >>> a, x = 0.5, 0.4\n>>> sc.gammaincc(a, x)\n0.37109336952269756\n>>> 1 - sc.gammainc(a, x)\n0.37109336952269756\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammasgn": {"fullname": "pyerrors.special.gammasgn", "modulename": "pyerrors.special", "qualname": "gammasgn", "kind": "function", "doc": "

    gammasgn(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammasgn(x, out=None)

    \n\n

    Sign of the gamma function.

    \n\n

    It is defined as

    \n\n

    $$\\text{gammasgn}(x) =\n\\begin{cases}\n +1 & \\Gamma(x) > 0 \\\n -1 & \\Gamma(x) < 0\n\\end{cases}$$

    \n\n

    where \\( \\Gamma \\) is the gamma function; see gamma. This\ndefinition is complete since the gamma function is never zero;\nsee the discussion after [dlmf]_.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Sign of the gamma function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \ngammaln: log of the absolute value of the gamma function
    \nloggamma: analytic continuation of the log of the gamma function

    \n\n
    Notes
    \n\n

    The gamma function can be computed as gammasgn(x) *\nnp.exp(gammaln(x)).

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5.2#E1

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import scipy.special as sc\n
    \n
    \n\n

    It is 1 for x > 0.

    \n\n
    \n
    >>> sc.gammasgn([1, 2, 3, 4])\narray([1., 1., 1., 1.])\n
    \n
    \n\n

    It alternates between -1 and 1 for negative integers.

    \n\n
    \n
    >>> sc.gammasgn([-0.5, -1.5, -2.5, -3.5])\narray([-1.,  1., -1.,  1.])\n
    \n
    \n\n

    It can be used to compute the gamma function.

    \n\n
    \n
    >>> x = [1.5, 0.5, -0.5, -1.5]\n>>> sc.gammasgn(x) * np.exp(sc.gammaln(x))\narray([ 0.88622693,  1.77245385, -3.5449077 ,  2.3632718 ])\n>>> sc.gamma(x)\narray([ 0.88622693,  1.77245385, -3.5449077 ,  2.3632718 ])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.rgamma": {"fullname": "pyerrors.special.rgamma", "modulename": "pyerrors.special", "qualname": "rgamma", "kind": "function", "doc": "

    rgamma(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    rgamma(z, out=None)

    \n\n

    Reciprocal of the gamma function.

    \n\n

    Defined as \\( 1 / \\Gamma(z) \\), where \\( \\Gamma \\) is the\ngamma function. For more on the gamma function see gamma.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex valued input
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Function results
    • \n
    \n\n
    See Also
    \n\n

    gamma,, gammaln,, loggamma

    \n\n
    Notes
    \n\n

    The gamma function has no zeros and has simple poles at\nnonpositive integers, so rgamma is an entire function with zeros\nat the nonpositive integers. See the discussion in [dlmf]_ for\nmore details.

    \n\n
    References
    \n\n

    .. [dlmf] Nist, Digital Library of Mathematical functions,\n https://dlmf.nist.gov/5.2#i

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the reciprocal of the gamma function.

    \n\n
    \n
    >>> sc.rgamma([1, 2, 3, 4])\narray([1.        , 1.        , 0.5       , 0.16666667])\n>>> 1 / sc.gamma([1, 2, 3, 4])\narray([1.        , 1.        , 0.5       , 0.16666667])\n
    \n
    \n\n

    It is zero at nonpositive integers.

    \n\n
    \n
    >>> sc.rgamma([0, -1, -2, -3])\narray([0., 0., 0., 0.])\n
    \n
    \n\n

    It rapidly underflows to zero along the positive real axis.

    \n\n
    \n
    >>> sc.rgamma([10, 100, 179])\narray([2.75573192e-006, 1.07151029e-156, 0.00000000e+000])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.multigammaln": {"fullname": "pyerrors.special.multigammaln", "modulename": "pyerrors.special", "qualname": "multigammaln", "kind": "function", "doc": "

    Returns the log of multivariate gamma, also sometimes called the\ngeneralized gamma.

    \n\n
    Parameters
    \n\n
      \n
    • a (ndarray):\nThe multivariate gamma is computed for each item of a.
    • \n
    • d (int):\nThe dimension of the space of integration.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (ndarray):\nThe values of the log multivariate gamma at the given points a.
    • \n
    \n\n
    Notes
    \n\n

    The formal definition of the multivariate gamma of dimension d for a real\na is

    \n\n

    $$\\Gamma_d(a) = \\int_{A>0} e^{-tr(A)} |A|^{a - (d+1)/2} dA$$

    \n\n

    with the condition \\( a > (d-1)/2 \\), and \\( A > 0 \\) being the set of\nall the positive definite matrices of dimension d. Note that a is a\nscalar: the integrand only is multivariate, the argument is not (the\nfunction is defined over a subset of the real set).

    \n\n

    This can be proven to be equal to the much friendlier equation

    \n\n

    $$\\Gamma_d(a) = \\pi^{d(d-1)/4} \\prod_{i=1}^{d} \\Gamma(a - (i-1)/2).$$

    \n\n
    References
    \n\n

    R. J. Muirhead, Aspects of multivariate statistical theory (Wiley Series in\nprobability and mathematical statistics).

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import multigammaln, gammaln\n>>> a = 23.5\n>>> d = 10\n>>> multigammaln(a, d)\n454.1488605074416\n
    \n
    \n\n

    Verify that the result agrees with the logarithm of the equation\nshown above:

    \n\n
    \n
    >>> d*(d-1)/4*np.log(np.pi) + gammaln(a - 0.5*np.arange(0, d)).sum()\n454.1488605074416\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.kn": {"fullname": "pyerrors.special.kn", "modulename": "pyerrors.special", "qualname": "kn", "kind": "function", "doc": "

    Modified Bessel function of the second kind of integer order n

    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.j0": {"fullname": "pyerrors.special.j0", "modulename": "pyerrors.special", "qualname": "j0", "kind": "function", "doc": "

    j0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    j0(x, out=None)

    \n\n

    Bessel function of the first kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function of the first kind of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    jv: Bessel function of real order and complex argument.
    \nspherical_jn: spherical Bessel functions.

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 5] and (5, infinity). In the\nfirst interval the following rational approximation is used:

    \n\n

    $$J_0(x) \\approx (w - r_1^2)(w - r_2^2) \\frac{P_3(w)}{Q_8(w)},$$

    \n\n

    where \\( w = x^2 \\) and \\( r_1 \\), \\( r_2 \\) are the zeros of\n\\( J_0 \\), and \\( P_3 \\) and \\( Q_8 \\) are polynomials of degrees 3\nand 8, respectively.

    \n\n

    In the second interval, the Hankel asymptotic expansion is employed with\ntwo rational functions of degree 6/6 and 7/7.

    \n\n

    This function is a wrapper for the Cephes 1 routine j0.\nIt should not be confused with the spherical Bessel functions (see\nspherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import j0\n>>> j0(1.)\n0.7651976865579665\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> j0(np.array([-2., 0., 4.]))\narray([ 0.22389078,  1.        , -0.39714981])\n
    \n
    \n\n

    Plot the function from -20 to 20.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-20., 20., 1000)\n>>> y = j0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.y0": {"fullname": "pyerrors.special.y0", "modulename": "pyerrors.special", "qualname": "y0", "kind": "function", "doc": "

    y0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    y0(x, out=None)

    \n\n

    Bessel function of the second kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function of the second kind of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    j0: Bessel function of the first kind of order 0
    \nyv: Bessel function of the first kind

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 5] and (5, infinity). In the\nfirst interval a rational approximation \\( R(x) \\) is employed to\ncompute,

    \n\n

    $$Y_0(x) = R(x) + \\frac{2 \\log(x) J_0(x)}{\\pi},$$

    \n\n

    where \\( J_0 \\) is the Bessel function of the first kind of order 0.

    \n\n

    In the second interval, the Hankel asymptotic expansion is employed with\ntwo rational functions of degree 6/6 and 7/7.

    \n\n

    This function is a wrapper for the Cephes 1 routine y0.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import y0\n>>> y0(1.)\n0.08825696421567697\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> y0(np.array([0.5, 2., 3.]))\narray([-0.44451873,  0.51037567,  0.37685001])\n
    \n
    \n\n

    Plot the function from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> y = y0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.j1": {"fullname": "pyerrors.special.j1", "modulename": "pyerrors.special", "qualname": "j1", "kind": "function", "doc": "

    j1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    j1(x, out=None)

    \n\n

    Bessel function of the first kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function of the first kind of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    jv: Bessel function of the first kind
    \nspherical_jn: spherical Bessel functions.

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 8] and (8, infinity). In the\nfirst interval a 24 term Chebyshev expansion is used. In the second, the\nasymptotic trigonometric representation is employed using two rational\nfunctions of degree 5/5.

    \n\n

    This function is a wrapper for the Cephes 1 routine j1.\nIt should not be confused with the spherical Bessel functions (see\nspherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import j1\n>>> j1(1.)\n0.44005058574493355\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> j1(np.array([-2., 0., 4.]))\narray([-0.57672481,  0.        , -0.06604333])\n
    \n
    \n\n

    Plot the function from -20 to 20.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-20., 20., 1000)\n>>> y = j1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.y1": {"fullname": "pyerrors.special.y1", "modulename": "pyerrors.special", "qualname": "y1", "kind": "function", "doc": "

    y1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    y1(x, out=None)

    \n\n

    Bessel function of the second kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function of the second kind of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    j1: Bessel function of the first kind of order 1
    \nyn: Bessel function of the second kind
    \nyv: Bessel function of the second kind

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 8] and (8, infinity). In the\nfirst interval a 25 term Chebyshev expansion is used, and computing\n\\( J_1 \\) (the Bessel function of the first kind) is required. In the\nsecond, the asymptotic trigonometric representation is employed using two\nrational functions of degree 5/5.

    \n\n

    This function is a wrapper for the Cephes 1 routine y1.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import y1\n>>> y1(1.)\n-0.7812128213002888\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> y1(np.array([0.5, 2., 3.]))\narray([-1.47147239, -0.10703243,  0.32467442])\n
    \n
    \n\n

    Plot the function from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> y = y1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.jn": {"fullname": "pyerrors.special.jn", "modulename": "pyerrors.special", "qualname": "jn", "kind": "function", "doc": "

    jv(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    jv(v, z, out=None)

    \n\n

    Bessel function of the first kind of real order and complex argument.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like):\nOrder (float).
    • \n
    • z (array_like):\nArgument (float or complex).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function, \\( J_v(z) \\).
    • \n
    \n\n
    See Also
    \n\n

    jve: \\( J_v \\) with leading exponential behavior stripped off.
    \nspherical_jn: spherical Bessel functions.
    \nj0: faster version of this function for order 0.
    \nj1: faster version of this function for order 1.

    \n\n
    Notes
    \n\n

    For positive v values, the computation is carried out using the AMOS\n1 zbesj routine, which exploits the connection to the modified\nBessel function \\( I_v \\),

    \n\n

    $$J_v(z) = \\exp(v\\pi\\imath/2) I_v(-\\imath z)\\qquad (\\Im z > 0)

    \n\n

    J_v(z) = \\exp(-v\\pi\\imath/2) I_v(\\imath z)\\qquad (\\Im z < 0)$$

    \n\n

    For negative v values the formula,

    \n\n

    $$J_{-v}(z) = J_v(z) \\cos(\\pi v) - Y_v(z) \\sin(\\pi v)$$

    \n\n

    is used, where \\( Y_v(z) \\) is the Bessel function of the second\nkind, computed using the AMOS routine zbesy. Note that the second\nterm is exactly zero for integer v; to improve accuracy the second\nterm is explicitly omitted for v values such that v = floor(v).

    \n\n

    Not to be confused with the spherical Bessel functions (see spherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import jv\n>>> jv(0, 1.)\n0.7651976865579666\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> jv(0, 1.), jv(1, 1.), jv(1.5, 1.)\n(0.7651976865579666, 0.44005058574493355, 0.24029783912342725)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> jv([0, 1, 1.5], 1.)\narray([0.76519769, 0.44005059, 0.24029784])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([-2., 0., 3.])\n>>> jv(0, points)\narray([ 0.22389078,  1.        , -0.26005195])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> jv(orders, points)\narray([[ 0.22389078,  1.        , -0.26005195],\n       [-0.57672481,  0.        ,  0.33905896]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -10 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> for i in range(4):\n...     ax.plot(x, jv(i, x), label=f'$J_{i!r}$')\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.yn": {"fullname": "pyerrors.special.yn", "modulename": "pyerrors.special", "qualname": "yn", "kind": "function", "doc": "

    yn(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    yn(n, x, out=None)

    \n\n

    Bessel function of the second kind of integer order and real argument.

    \n\n
    Parameters
    \n\n
      \n
    • n (array_like):\nOrder (integer).
    • \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function, \\( Y_n(x) \\).
    • \n
    \n\n
    See Also
    \n\n

    yv: For real order and real or complex argument.
    \ny0: faster implementation of this function for order 0
    \ny1: faster implementation of this function for order 1

    \n\n
    Notes
    \n\n

    Wrapper for the Cephes 1 routine yn.

    \n\n

    The function is evaluated by forward recurrence on n, starting with\nvalues computed by the Cephes routines y0 and y1. If n = 0 or 1,\nthe routine for y0 or y1 is called directly.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import yn\n>>> yn(0, 1.)\n0.08825696421567697\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> yn(0, 1.), yn(1, 1.), yn(2, 1.)\n(0.08825696421567697, -0.7812128213002888, -1.6506826068162546)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> yn([0, 1, 2], 1.)\narray([ 0.08825696, -0.78121282, -1.65068261])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([0.5, 3., 8.])\n>>> yn(0, points)\narray([-0.44451873,  0.37685001,  0.22352149])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> yn(orders, points)\narray([[-0.44451873,  0.37685001,  0.22352149],\n       [-1.47147239,  0.32467442, -0.15806046]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> for i in range(4):\n...     ax.plot(x, yn(i, x), label=f'$Y_{i!r}$')\n>>> ax.set_ylim(-3, 1)\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.i0": {"fullname": "pyerrors.special.i0", "modulename": "pyerrors.special", "qualname": "i0", "kind": "function", "doc": "

    i0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    i0(x, out=None)

    \n\n

    Modified Bessel function of order 0.

    \n\n

    Defined as,

    \n\n

    $$I_0(x) = \\sum_{k=0}^\\infty \\frac{(x^2/4)^k}{(k!)^2} = J_0(\\imath x),$$

    \n\n

    where \\( J_0 \\) is the Bessel function of the first kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float)
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • I (scalar or ndarray):\nValue of the modified Bessel function of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of any order
    \ni0e: Exponentially scaled modified Bessel function of order 0

    \n\n
    Notes
    \n\n

    The range is partitioned into the two intervals [0, 8] and (8, infinity).\nChebyshev polynomial expansions are employed in each interval.

    \n\n

    This function is a wrapper for the Cephes 1 routine i0.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import i0\n>>> i0(1.)\n1.2660658777520082\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> i0(np.array([-2., 0., 3.5]))\narray([2.2795853 , 1.        , 7.37820343])\n
    \n
    \n\n

    Plot the function from -10 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> y = i0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.i1": {"fullname": "pyerrors.special.i1", "modulename": "pyerrors.special", "qualname": "i1", "kind": "function", "doc": "

    i1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    i1(x, out=None)

    \n\n

    Modified Bessel function of order 1.

    \n\n

    Defined as,

    \n\n

    $$I_1(x) = \\frac{1}{2}x \\sum_{k=0}^\\infty \\frac{(x^2/4)^k}{k! (k + 1)!}\n = -\\imath J_1(\\imath x),$$

    \n\n

    where \\( J_1 \\) is the Bessel function of the first kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float)
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • I (scalar or ndarray):\nValue of the modified Bessel function of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of the first kind
    \ni1e: Exponentially scaled modified Bessel function of order 1

    \n\n
    Notes
    \n\n

    The range is partitioned into the two intervals [0, 8] and (8, infinity).\nChebyshev polynomial expansions are employed in each interval.

    \n\n

    This function is a wrapper for the Cephes 1 routine i1.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import i1\n>>> i1(1.)\n0.5651591039924851\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> i1(np.array([-2., 0., 6.]))\narray([-1.59063685,  0.        , 61.34193678])\n
    \n
    \n\n

    Plot the function between -10 and 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> y = i1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.iv": {"fullname": "pyerrors.special.iv", "modulename": "pyerrors.special", "qualname": "iv", "kind": "function", "doc": "

    iv(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    iv(v, z, out=None)

    \n\n

    Modified Bessel function of the first kind of real order.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like):\nOrder. If z is of real type and negative, v must be integer\nvalued.
    • \n
    • z (array_like of float or complex):\nArgument.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the modified Bessel function.
    • \n
    \n\n
    See Also
    \n\n

    ive: This function with leading exponential behavior stripped off.
    \ni0: Faster version of this function for order 0.
    \ni1: Faster version of this function for order 1.

    \n\n
    Notes
    \n\n

    For real z and \\( v \\in [-50, 50] \\), the evaluation is carried out\nusing Temme's method 1. For larger orders, uniform asymptotic\nexpansions are applied.

    \n\n

    For complex z and positive v, the AMOS 2 zbesi routine is\ncalled. It uses a power series for small z, the asymptotic expansion\nfor large abs(z), the Miller algorithm normalized by the Wronskian\nand a Neumann series for intermediate magnitudes, and the uniform\nasymptotic expansions for \\( I_v(z) \\) and \\( J_v(z) \\) for large\norders. Backward recurrence is used to generate sequences or reduce\norders when necessary.

    \n\n

    The calculations above are done in the right half plane and continued\ninto the left half plane by the formula,

    \n\n

    $$I_v(z \\exp(\\pm\\imath\\pi)) = \\exp(\\pm\\pi v) I_v(z)$$

    \n\n

    (valid when the real part of z is positive). For negative v, the\nformula

    \n\n

    $$I_{-v}(z) = I_v(z) + \\frac{2}{\\pi} \\sin(\\pi v) K_v(z)$$

    \n\n

    is used, where \\( K_v(z) \\) is the modified Bessel function of the\nsecond kind, evaluated using the AMOS routine zbesk.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import iv\n>>> iv(0, 1.)\n1.2660658777520084\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> iv(0, 1.), iv(1, 1.), iv(1.5, 1.)\n(1.2660658777520084, 0.565159103992485, 0.2935253263474798)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> iv([0, 1, 1.5], 1.)\narray([1.26606588, 0.5651591 , 0.29352533])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([-2., 0., 3.])\n>>> iv(0, points)\narray([2.2795853 , 1.        , 4.88079259])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> iv(orders, points)\narray([[ 2.2795853 ,  1.        ,  4.88079259],\n       [-1.59063685,  0.        ,  3.95337022]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -5 to 5.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-5., 5., 1000)\n>>> for i in range(4):\n...     ax.plot(x, iv(i, x), label=f'$I_{i!r}$')\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Temme, Journal of Computational Physics, vol 21, 343 (1976) 

      \n
    2. \n\n
    3. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    4. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.ive": {"fullname": "pyerrors.special.ive", "modulename": "pyerrors.special", "qualname": "ive", "kind": "function", "doc": "

    ive(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    ive(v, z, out=None)

    \n\n

    Exponentially scaled modified Bessel function of the first kind.

    \n\n

    Defined as::

    \n\n
    ive(v, z) = iv(v, z) * exp(-abs(z.real))\n
    \n\n

    For imaginary numbers without a real part, returns the unscaled\nBessel function of the first kind iv.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like of float):\nOrder.
    • \n
    • z (array_like of float or complex):\nArgument.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the exponentially scaled modified Bessel function.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of the first kind
    \ni0e: Faster implementation of this function for order 0
    \ni1e: Faster implementation of this function for order 1

    \n\n
    Notes
    \n\n

    For positive v, the AMOS 1 zbesi routine is called. It uses a\npower series for small z, the asymptotic expansion for large\nabs(z), the Miller algorithm normalized by the Wronskian and a\nNeumann series for intermediate magnitudes, and the uniform asymptotic\nexpansions for \\( I_v(z) \\) and \\( J_v(z) \\) for large orders.\nBackward recurrence is used to generate sequences or reduce orders when\nnecessary.

    \n\n

    The calculations above are done in the right half plane and continued\ninto the left half plane by the formula,

    \n\n

    $$I_v(z \\exp(\\pm\\imath\\pi)) = \\exp(\\pm\\pi v) I_v(z)$$

    \n\n

    (valid when the real part of z is positive). For negative v, the\nformula

    \n\n

    $$I_{-v}(z) = I_v(z) + \\frac{2}{\\pi} \\sin(\\pi v) K_v(z)$$

    \n\n

    is used, where \\( K_v(z) \\) is the modified Bessel function of the\nsecond kind, evaluated using the AMOS routine zbesk.

    \n\n

    ive is useful for large arguments z: for these, iv easily overflows,\nwhile ive does not due to the exponential scaling.

    \n\n
    References
    \n\n
    Examples
    \n\n

    In the following example iv returns infinity whereas ive still returns\na finite number.

    \n\n
    \n
    >>> from scipy.special import iv, ive\n>>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> iv(3, 1000.), ive(3, 1000.)\n(inf, 0.01256056218254712)\n
    \n
    \n\n

    Evaluate the function at one point for different orders by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> ive([0, 1, 1.5], 1.)\narray([0.46575961, 0.20791042, 0.10798193])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> points = np.array([-2., 0., 3.])\n>>> ive(0, points)\narray([0.30850832, 1.        , 0.24300035])\n
    \n
    \n\n

    Evaluate the function at several points for different orders by\nproviding arrays for both v for z. Both arrays have to be\nbroadcastable to the correct shape. To calculate the orders 0, 1\nand 2 for a 1D array of points:

    \n\n
    \n
    >>> ive([[0], [1], [2]], points)\narray([[ 0.30850832,  1.        ,  0.24300035],\n       [-0.21526929,  0.        ,  0.19682671],\n       [ 0.09323903,  0.        ,  0.11178255]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -5 to 5.

    \n\n
    \n
    >>> fig, ax = plt.subplots()\n>>> x = np.linspace(-5., 5., 1000)\n>>> for i in range(4):\n...     ax.plot(x, ive(i, x), label=fr'$I_{i!r}(z)\\cdot e^{{-|z|}}$')\n>>> ax.legend()\n>>> ax.set_xlabel(r"$z$")\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erf": {"fullname": "pyerrors.special.erf", "modulename": "pyerrors.special", "qualname": "erf", "kind": "function", "doc": "

    erf(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erf(z, out=None)

    \n\n

    Returns the error function of complex argument.

    \n\n

    It is defined as 2/sqrt(pi)*integral(exp(-t**2), t=0..z).

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nInput array.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (scalar or ndarray):\nThe values of the error function at the given points x.
    • \n
    \n\n
    See Also
    \n\n

    erfc,, erfinv,, erfcinv,, wofz,, erfcx,, erfi

    \n\n
    Notes
    \n\n

    The cumulative of the unit normal distribution is given by\nPhi(z) = 1/2[1 + erf(z/sqrt(2))].

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy import special\n>>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-3, 3)\n>>> plt.plot(x, special.erf(x))\n>>> plt.xlabel('$x$')\n>>> plt.ylabel('$erf(x)$')\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfc": {"fullname": "pyerrors.special.erfc", "modulename": "pyerrors.special", "qualname": "erfc", "kind": "function", "doc": "

    erfc(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfc(x, out=None)

    \n\n

    Complementary error function, 1 - erf(x).

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal or complex valued argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the complementary error function
    • \n
    \n\n
    See Also
    \n\n

    erf,, erfi,, erfcx,, dawsn,, wofz

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy import special\n>>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-3, 3)\n>>> plt.plot(x, special.erfc(x))\n>>> plt.xlabel('$x$')\n>>> plt.ylabel('$erfc(x)$')\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfinv": {"fullname": "pyerrors.special.erfinv", "modulename": "pyerrors.special", "qualname": "erfinv", "kind": "function", "doc": "

    erfinv(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfinv(y, out=None)

    \n\n

    Inverse of the error function.

    \n\n

    Computes the inverse of the error function.

    \n\n

    In the complex domain, there is no unique complex number w satisfying\nerf(w)=z. This indicates a true inverse function would be multivalued.\nWhen the domain restricts to the real, -1 < x < 1, there is a unique real\nnumber satisfying erf(erfinv(x)) = x.

    \n\n
    Parameters
    \n\n
      \n
    • y (ndarray):\nArgument at which to evaluate. Domain: [-1, 1]
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • erfinv (scalar or ndarray):\nThe inverse of erf of y, element-wise
    • \n
    \n\n
    See Also
    \n\n

    erf: Error function of a complex argument
    \nerfc: Complementary error function, 1 - erf(x)
    \nerfcinv: Inverse of the complementary error function

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> from scipy.special import erfinv, erf\n
    \n
    \n\n
    \n
    >>> erfinv(0.5)\n0.4769362762044699\n
    \n
    \n\n
    \n
    >>> y = np.linspace(-1.0, 1.0, num=9)\n>>> x = erfinv(y)\n>>> x\narray([       -inf, -0.81341985, -0.47693628, -0.22531206,  0.        ,\n        0.22531206,  0.47693628,  0.81341985,         inf])\n
    \n
    \n\n

    Verify that erf(erfinv(y)) is y.

    \n\n
    \n
    >>> erf(x)\narray([-1.  , -0.75, -0.5 , -0.25,  0.  ,  0.25,  0.5 ,  0.75,  1.  ])\n
    \n
    \n\n

    Plot the function:

    \n\n
    \n
    >>> y = np.linspace(-1, 1, 200)\n>>> fig, ax = plt.subplots()\n>>> ax.plot(y, erfinv(y))\n>>> ax.grid(True)\n>>> ax.set_xlabel('y')\n>>> ax.set_title('erfinv(y)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfcinv": {"fullname": "pyerrors.special.erfcinv", "modulename": "pyerrors.special", "qualname": "erfcinv", "kind": "function", "doc": "

    erfcinv(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfcinv(y, out=None)

    \n\n

    Inverse of the complementary error function.

    \n\n

    Computes the inverse of the complementary error function.

    \n\n

    In the complex domain, there is no unique complex number w satisfying\nerfc(w)=z. This indicates a true inverse function would be multivalued.\nWhen the domain restricts to the real, 0 < x < 2, there is a unique real\nnumber satisfying erfc(erfcinv(x)) = erfcinv(erfc(x)).

    \n\n

    It is related to inverse of the error function by erfcinv(1-x) = erfinv(x)

    \n\n
    Parameters
    \n\n
      \n
    • y (ndarray):\nArgument at which to evaluate. Domain: [0, 2]
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • erfcinv (scalar or ndarray):\nThe inverse of erfc of y, element-wise
    • \n
    \n\n
    See Also
    \n\n

    erf: Error function of a complex argument
    \nerfc: Complementary error function, 1 - erf(x)
    \nerfinv: Inverse of the error function

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> from scipy.special import erfcinv\n
    \n
    \n\n
    \n
    >>> erfcinv(0.5)\n0.4769362762044699\n
    \n
    \n\n
    \n
    >>> y = np.linspace(0.0, 2.0, num=11)\n>>> erfcinv(y)\narray([        inf,  0.9061938 ,  0.59511608,  0.37080716,  0.17914345,\n       -0.        , -0.17914345, -0.37080716, -0.59511608, -0.9061938 ,\n              -inf])\n
    \n
    \n\n

    Plot the function:

    \n\n
    \n
    >>> y = np.linspace(0, 2, 200)\n>>> fig, ax = plt.subplots()\n>>> ax.plot(y, erfcinv(y))\n>>> ax.grid(True)\n>>> ax.set_xlabel('y')\n>>> ax.set_title('erfcinv(y)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.logit": {"fullname": "pyerrors.special.logit", "modulename": "pyerrors.special", "qualname": "logit", "kind": "function", "doc": "

    logit(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    \"\"\"\nlogit(x, out=None)

    \n\n

    Logit ufunc for ndarrays.

    \n\n

    The logit function is defined as logit(p) = log(p/(1-p)).\nNote that logit(0) = -inf, logit(1) = inf, and logit(p)\nfor p<0 or p>1 yields nan.

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nThe ndarray to apply logit to element-wise.
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: An ndarray of the same shape as x. Its entries\nare logit of the corresponding entry of x.
    • \n
    \n\n
    See Also
    \n\n

    expit

    \n\n
    Notes
    \n\n

    As a ufunc logit takes a number of optional\nkeyword arguments. For more information\nsee ufuncs

    \n\n

    New in version 0.10.0.

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import logit, expit\n
    \n
    \n\n
    \n
    >>> logit([0, 0.25, 0.5, 0.75, 1])\narray([       -inf, -1.09861229,  0.        ,  1.09861229,         inf])\n
    \n
    \n\n

    expit is the inverse of logit:

    \n\n
    \n
    >>> expit(logit([0.1, 0.75, 0.999]))\narray([ 0.1  ,  0.75 ,  0.999])\n
    \n
    \n\n

    Plot logit(x) for x in [0, 1]:

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> x = np.linspace(0, 1, 501)\n>>> y = logit(x)\n>>> plt.plot(x, y)\n>>> plt.grid()\n>>> plt.ylim(-6, 6)\n>>> plt.xlabel('x')\n>>> plt.title('logit(x)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.expit": {"fullname": "pyerrors.special.expit", "modulename": "pyerrors.special", "qualname": "expit", "kind": "function", "doc": "

    expit(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    expit(x, out=None)

    \n\n

    Expit (a.k.a. logistic sigmoid) ufunc for ndarrays.

    \n\n

    The expit function, also known as the logistic sigmoid function, is\ndefined as expit(x) = 1/(1+exp(-x)). It is the inverse of the\nlogit function.

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nThe ndarray to apply expit to element-wise.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: An ndarray of the same shape as x. Its entries\nare expit of the corresponding entry of x.
    • \n
    \n\n
    See Also
    \n\n

    logit

    \n\n
    Notes
    \n\n

    As a ufunc expit takes a number of optional\nkeyword arguments. For more information\nsee ufuncs

    \n\n

    New in version 0.10.0.

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import expit, logit\n
    \n
    \n\n
    \n
    >>> expit([-np.inf, -1.5, 0, 1.5, np.inf])\narray([ 0.        ,  0.18242552,  0.5       ,  0.81757448,  1.        ])\n
    \n
    \n\n

    logit is the inverse of expit:

    \n\n
    \n
    >>> logit(expit([-2.5, 0, 3.1, 5.0]))\narray([-2.5,  0. ,  3.1,  5. ])\n
    \n
    \n\n

    Plot expit(x) for x in [-6, 6]:

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-6, 6, 121)\n>>> y = expit(x)\n>>> plt.plot(x, y)\n>>> plt.grid()\n>>> plt.xlim(-6, 6)\n>>> plt.xlabel('x')\n>>> plt.title('expit(x)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.logsumexp": {"fullname": "pyerrors.special.logsumexp", "modulename": "pyerrors.special", "qualname": "logsumexp", "kind": "function", "doc": "

    Compute the log of the sum of exponentials of input elements.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nInput array.
    • \n
    • axis (None or int or tuple of ints, optional):\nAxis or axes over which the sum is taken. By default axis is None,\nand all elements are summed.

      \n\n

      New in version 0.11.0.

    • \n
    • b (array-like, optional):\nScaling factor for exp(a) must be of the same shape as a or\nbroadcastable to a. These values may be negative in order to\nimplement subtraction.

      \n\n

      New in version 0.12.0.

    • \n
    • keepdims (bool, optional):\nIf this is set to True, the axes which are reduced are left in the\nresult as dimensions with size one. With this option, the result\nwill broadcast correctly against the original array.

      \n\n

      New in version 0.15.0.

    • \n
    • return_sign (bool, optional):\nIf this is set to True, the result will be a pair containing sign\ninformation; if False, results that are negative will be returned\nas NaN. Default is False (no sign information).

      \n\n

      New in version 0.16.0.

    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (ndarray):\nThe result, np.log(np.sum(np.exp(a))) calculated in a numerically\nmore stable way. If b is given then np.log(np.sum(b*np.exp(a)))\nis returned. If return_sign is True, res contains the log of\nthe absolute value of the argument.
    • \n
    • sgn (ndarray):\nIf return_sign is True, this will be an array of floating-point\nnumbers matching res containing +1, 0, -1 (for real-valued inputs)\nor a complex phase (for complex inputs). This gives the sign of the\nargument of the logarithm in res.\nIf return_sign is False, only one result is returned.
    • \n
    \n\n
    See Also
    \n\n

    numpy.logaddexp,, numpy.logaddexp2

    \n\n
    Notes
    \n\n

    NumPy has a logaddexp function which is very similar to logsumexp, but\nonly handles two arguments. logaddexp.reduce is similar to this\nfunction, but may be less stable.

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import logsumexp\n>>> a = np.arange(10)\n>>> logsumexp(a)\n9.4586297444267107\n>>> np.log(np.sum(np.exp(a)))\n9.4586297444267107\n
    \n
    \n\n

    With weights

    \n\n
    \n
    >>> a = np.arange(10)\n>>> b = np.arange(10, 0, -1)\n>>> logsumexp(a, b=b)\n9.9170178533034665\n>>> np.log(np.sum(b*np.exp(a)))\n9.9170178533034647\n
    \n
    \n\n

    Returning a sign flag

    \n\n
    \n
    >>> logsumexp([1,2],b=[1,-1],return_sign=True)\n(1.5413248546129181, -1.0)\n
    \n
    \n\n

    Notice that logsumexp does not directly support masked arrays. To use it\non a masked array, convert the mask into zero weights:

    \n\n
    \n
    >>> a = np.ma.array([np.log(2), 2, np.log(3)],\n...                  mask=[False, True, False])\n>>> b = (~a.mask).astype(int)\n>>> logsumexp(a.data, b=b), np.log(5)\n1.6094379124341005, 1.6094379124341005\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.version": {"fullname": "pyerrors.version", "modulename": "pyerrors.version", "kind": "module", "doc": "

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    What is pyerrors?

    \n\n

    pyerrors is a python package for error computation and propagation of Markov chain Monte Carlo data.\nIt is based on the gamma method arXiv:hep-lat/0306017. Some of its features are:

    \n\n
      \n
    • automatic differentiation for exact linear error propagation as suggested in arXiv:1809.01289 (partly based on the autograd package).
    • \n
    • treatment of slow modes in the simulation as suggested in arXiv:1009.5228.
    • \n
    • coherent error propagation for data from different Markov chains.
    • \n
    • non-linear fits with x- and y-errors and exact linear error propagation based on automatic differentiation as introduced in arXiv:1809.01289.
    • \n
    • real and complex matrix operations and their error propagation based on automatic differentiation (Matrix inverse, Cholesky decomposition, calculation of eigenvalues and eigenvectors, singular value decomposition...).
    • \n
    \n\n

    More detailed examples can found in the GitHub repository \"badge\".

    \n\n

    If you use pyerrors for research that leads to a publication please consider citing:

    \n\n
      \n
    • Fabian Joswig, Simon Kuberski, Justus T. Kuhlmann, Jan Neuendorf, pyerrors: a python framework for error analysis of Monte Carlo data. Comput.Phys.Commun. 288 (2023) 108750.
    • \n
    • Ulli Wolff, Monte Carlo errors with less errors. Comput.Phys.Commun. 156 (2004) 143-153, Comput.Phys.Commun. 176 (2007) 383 (erratum).
    • \n
    • Alberto Ramos, Automatic differentiation for error analysis of Monte Carlo data. Comput.Phys.Commun. 238 (2019) 19-35.
    • \n
    \n\n

    and

    \n\n
      \n
    • Stefan Schaefer, Rainer Sommer, Francesco Virotta, Critical slowing down and error analysis in lattice QCD simulations. Nucl.Phys.B 845 (2011) 93-119.
    • \n
    \n\n

    where applicable.

    \n\n

    There exist similar publicly available implementations of gamma method error analysis suites in Fortran, Julia and Python.

    \n\n

    Installation

    \n\n

    Install the most recent release using pip and pypi:

    \n\n
    \n
    python -m pip install pyerrors     # Fresh install\npython -m pip install -U pyerrors  # Update\n
    \n
    \n\n

    Install the most recent release using conda and conda-forge:

    \n\n
    \n
    conda install -c conda-forge pyerrors  # Fresh install\nconda update -c conda-forge pyerrors   # Update\n
    \n
    \n\n

    Install the current develop version:

    \n\n
    \n
    python -m pip install -U --no-deps --force-reinstall git+https://github.com/fjosw/pyerrors.git@develop\n
    \n
    \n\n

    (Also works for any feature branch).

    \n\n

    Basic example

    \n\n
    \n
    import numpy as np\nimport pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name']) # Initialize an Obs object\nmy_new_obs = 2 * np.log(my_obs) / my_obs ** 2 # Construct derived Obs object\nmy_new_obs.gamma_method()                     # Estimate the statistical error\nprint(my_new_obs)                             # Print the result to stdout\n> 0.31498(72)\n
    \n
    \n\n

    The Obs class

    \n\n

    pyerrors introduces a new datatype, Obs, which simplifies error propagation and estimation for auto- and cross-correlated data.\nAn Obs object can be initialized with two arguments, the first is a list containing the samples for an observable from a Monte Carlo chain.\nThe samples can either be provided as python list or as numpy array.\nThe second argument is a list containing the names of the respective Monte Carlo chains as strings. These strings uniquely identify a Monte Carlo chain/ensemble. It is crucial for the correct error propagation that observations from the same Monte Carlo history are labeled with the same name. See Multiple ensembles/replica for details.

    \n\n
    \n
    import pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name'])\n
    \n
    \n\n

    Error propagation

    \n\n

    When performing mathematical operations on Obs objects the correct error propagation is intrinsically taken care of using a first order Taylor expansion\n$$\\delta_f^i=\\sum_\\alpha \\bar{f}_\\alpha \\delta_\\alpha^i\\,,\\quad \\delta_\\alpha^i=a_\\alpha^i-\\bar{a}_\\alpha\\,,$$\nas introduced in arXiv:hep-lat/0306017.\nThe required derivatives $\\bar{f}_\\alpha$ are evaluated up to machine precision via automatic differentiation as suggested in arXiv:1809.01289.

    \n\n

    The Obs class is designed such that mathematical numpy functions can be used on Obs just as for regular floats.

    \n\n
    \n
    import numpy as np\nimport pyerrors as pe\n\nmy_obs1 = pe.Obs([samples1], ['ensemble_name'])\nmy_obs2 = pe.Obs([samples2], ['ensemble_name'])\n\nmy_sum = my_obs1 + my_obs2\n\nmy_m_eff = np.log(my_obs1 / my_obs2)\n\niamzero = my_m_eff - my_m_eff\n# Check that value and fluctuations are zero within machine precision\nprint(iamzero == 0.0)\n> True\n
    \n
    \n\n

    Error estimation

    \n\n

    The error estimation within pyerrors is based on the gamma method introduced in arXiv:hep-lat/0306017.\nAfter having arrived at the derived quantity of interest the gamma_method can be called as detailed in the following example.

    \n\n
    \n
    my_sum.gamma_method()\nprint(my_sum)\n> 1.70(57)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 5.72046658e-01 +/- 7.56746598e-02 (33.650%)\n>  t_int         2.71422900e+00 +/- 6.40320983e-01 S = 2.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    The gamma_method is not automatically called after every intermediate step in order to prevent computational overhead.

    \n\n

    We use the following definition of the integrated autocorrelation time established in Madras & Sokal 1988\n$$\\tau_\\mathrm{int}=\\frac{1}{2}+\\sum_{t=1}^{W}\\rho(t)\\geq \\frac{1}{2}\\,.$$\nThe window $W$ is determined via the automatic windowing procedure described in arXiv:hep-lat/0306017.\nThe standard value for the parameter $S$ of this automatic windowing procedure is $S=2$. Other values for $S$ can be passed to the gamma_method as parameter.

    \n\n
    \n
    my_sum.gamma_method(S=3.0)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.30675201e-01 +/- 1.04585650e-01 (37.099%)\n>  t_int         3.29909703e+00 +/- 9.77310102e-01 S = 3.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    The integrated autocorrelation time $\\tau_\\mathrm{int}$ and the autocorrelation function $\\rho(W)$ can be monitored via the methods pyerrors.obs.Obs.plot_tauint and pyerrors.obs.Obs.plot_rho.

    \n\n

    If the parameter $S$ is set to zero it is assumed that the dataset does not exhibit any autocorrelation and the window size is chosen to be zero.\nIn this case the error estimate is identical to the sample standard error.

    \n\n

    Exponential tails

    \n\n

    Slow modes in the Monte Carlo history can be accounted for by attaching an exponential tail to the autocorrelation function $\\rho$ as suggested in arXiv:1009.5228. The longest autocorrelation time in the history, $\\tau_\\mathrm{exp}$, can be passed to the gamma_method as parameter. In this case the automatic windowing procedure is vacated and the parameter $S$ does not affect the error estimate.

    \n\n
    \n
    my_sum.gamma_method(tau_exp=7.2)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.28097762e-01 +/- 5.79077524e-02 (36.947%)\n>  t_int         3.27218667e+00 +/- 7.99583654e-01 tau_exp = 7.20,  N_sigma = 1\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
    \n
    \n\n

    For the full API see pyerrors.obs.Obs.gamma_method.

    \n\n

    Multiple ensembles/replica

    \n\n

    Error propagation for multiple ensembles (Markov chains with different simulation parameters) is handled automatically. Ensembles are uniquely identified by their name.

    \n\n
    \n
    obs1 = pe.Obs([samples1], ['ensemble1'])\nobs2 = pe.Obs([samples2], ['ensemble2'])\n\nmy_sum = obs1 + obs2\nmy_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 2 ensembles:\n>   \u00b7 Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000)\n>   \u00b7 Ensemble 'ensemble2' : 500 configurations (from 1 to 500)\n
    \n
    \n\n

    Observables from the same Monte Carlo chain have to be initialized with the same name for correct error propagation. If different names were used in this case the data would be treated as statistically independent resulting in loss of relevant information and a potential over or under estimate of the statistical error.

    \n\n

    pyerrors identifies multiple replica (independent Markov chains with identical simulation parameters) by the vertical bar | in the name of the data set.

    \n\n
    \n
    obs1 = pe.Obs([samples1], ['ensemble1|r01'])\nobs2 = pe.Obs([samples2], ['ensemble1|r02'])\n\n> my_sum = obs1 + obs2\n> my_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1'\n>     \u00b7 Replicum 'r01' : 1000 configurations (from 1 to 1000)\n>     \u00b7 Replicum 'r02' : 500 configurations (from 1 to 500)\n
    \n
    \n\n

    Error estimation for multiple ensembles

    \n\n

    In order to keep track of different error analysis parameters for different ensembles one can make use of global dictionaries as detailed in the following example.

    \n\n
    \n
    pe.Obs.S_dict['ensemble1'] = 2.5\npe.Obs.tau_exp_dict['ensemble2'] = 8.0\npe.Obs.tau_exp_dict['ensemble3'] = 2.0\n
    \n
    \n\n

    In case the gamma_method is called without any parameters it will use the values specified in the dictionaries for the respective ensembles.\nPassing arguments to the gamma_method still dominates over the dictionaries.

    \n\n

    Irregular Monte Carlo chains

    \n\n

    Obs objects defined on irregular Monte Carlo chains can be initialized with the parameter idl.

    \n\n
    \n
    # Observable defined on configurations 20 to 519\nobs1 = pe.Obs([samples1], ['ensemble1'], idl=[range(20, 520)])\nobs1.details()\n> Result         9.98319881e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 20 to 519)\n\n# Observable defined on every second configuration between 5 and 1003\nobs2 = pe.Obs([samples2], ['ensemble1'], idl=[range(5, 1005, 2)])\nobs2.details()\n> Result         9.99100712e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2)\n\n# Observable defined on configurations 2, 9, 28, 29 and 501\nobs3 = pe.Obs([samples3], ['ensemble1'], idl=[[2, 9, 28, 29, 501]])\nobs3.details()\n> Result         1.01718064e+00\n> 5 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 5 configurations (irregular range)\n
    \n
    \n\n

    Obs objects defined on regular and irregular histories of the same ensemble can be combined with each other and the correct error propagation and estimation is automatically taken care of.

    \n\n

    Warning: Irregular Monte Carlo chains can result in odd patterns in the autocorrelation functions.\nMake sure to check the autocorrelation time with e.g. pyerrors.obs.Obs.plot_rho or pyerrors.obs.Obs.plot_tauint.

    \n\n

    For the full API see pyerrors.obs.Obs.

    \n\n

    Correlators

    \n\n

    When one is not interested in single observables but correlation functions, pyerrors offers the Corr class which simplifies the corresponding error propagation and provides the user with a set of standard methods. In order to initialize a Corr objects one needs to arrange the data as a list of Obs

    \n\n
    \n
    my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0      0.7957(80)\n> 1      0.5156(51)\n> 2      0.3227(33)\n> 3      0.2041(21)\n
    \n
    \n\n

    In case the correlation functions are not defined on the outermost timeslices, for example because of fixed boundary conditions, a padding can be introduced.

    \n\n
    \n
    my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3], padding=[1, 1])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0\n> 1      0.7957(80)\n> 2      0.5156(51)\n> 3      0.3227(33)\n> 4      0.2041(21)\n> 5\n
    \n
    \n\n

    The individual entries of a correlator can be accessed via slicing

    \n\n
    \n
    print(my_corr[3])\n> 0.3227(33)\n
    \n
    \n\n

    Error propagation with the Corr class works very similar to Obs objects. Mathematical operations are overloaded and Corr objects can be computed together with other Corr objects, Obs objects or real numbers and integers.

    \n\n
    \n
    my_new_corr = 0.3 * my_corr[2] * my_corr * my_corr + 12 / my_corr\n
    \n
    \n\n

    pyerrors provides the user with a set of regularly used methods for the manipulation of correlator objects:

    \n\n
      \n
    • Corr.gamma_method applies the gamma method to all entries of the correlator.
    • \n
    • Corr.m_eff to construct effective masses. Various variants for periodic and fixed temporal boundary conditions are available.
    • \n
    • Corr.deriv returns the first derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
    • \n
    • Corr.second_deriv returns the second derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
    • \n
    • Corr.symmetric symmetrizes parity even correlations functions, assuming periodic boundary conditions.
    • \n
    • Corr.anti_symmetric anti-symmetrizes parity odd correlations functions, assuming periodic boundary conditions.
    • \n
    • Corr.T_symmetry averages a correlator with its time symmetry partner, assuming fixed boundary conditions.
    • \n
    • Corr.plateau extracts a plateau value from the correlator in a given range.
    • \n
    • Corr.roll periodically shifts the correlator.
    • \n
    • Corr.reverse reverses the time ordering of the correlator.
    • \n
    • Corr.correlate constructs a disconnected correlation function from the correlator and another Corr or Obs object.
    • \n
    • Corr.reweight reweights the correlator.
    • \n
    \n\n

    pyerrors can also handle matrices of correlation functions and extract energy states from these matrices via a generalized eigenvalue problem (see pyerrors.correlators.Corr.GEVP).

    \n\n

    For the full API see pyerrors.correlators.Corr.

    \n\n

    Complex valued observables

    \n\n

    pyerrors can handle complex valued observables via the class pyerrors.obs.CObs.\nCObs are initialized with a real and an imaginary part which both can be Obs valued.

    \n\n
    \n
    my_real_part = pe.Obs([samples1], ['ensemble1'])\nmy_imag_part = pe.Obs([samples2], ['ensemble1'])\n\nmy_cobs = pe.CObs(my_real_part, my_imag_part)\nmy_cobs.gamma_method()\nprint(my_cobs)\n> (0.9959(91)+0.659(28)j)\n
    \n
    \n\n

    Elementary mathematical operations are overloaded and samples are properly propagated as for the Obs class.

    \n\n
    \n
    my_derived_cobs = (my_cobs + my_cobs.conjugate()) / np.abs(my_cobs)\nmy_derived_cobs.gamma_method()\nprint(my_derived_cobs)\n> (1.668(23)+0.0j)\n
    \n
    \n\n

    The Covobs class

    \n\n

    In many projects, auxiliary data that is not based on Monte Carlo chains enters. Examples are experimentally determined mesons masses which are used to set the scale or renormalization constants. These numbers come with an error that has to be propagated through the analysis. The Covobs class allows to define such quantities in pyerrors. Furthermore, external input might consist of correlated quantities. An example are the parameters of an interpolation formula, which are defined via mean values and a covariance matrix between all parameters. The contribution of the interpolation formula to the error of a derived quantity therefore might depend on the complete covariance matrix.

    \n\n

    This concept is built into the definition of Covobs. In pyerrors, external input is defined by $M$ mean values, a $M\\times M$ covariance matrix, where $M=1$ is permissible, and a name that uniquely identifies the covariance matrix. Below, we define the pion mass, based on its mean value and error, 134.9768(5). Note, that the square of the error enters cov_Obs, since the second argument of this function is the covariance matrix of the Covobs.

    \n\n
    \n
    import pyerrors.obs as pe\n\nmpi = pe.cov_Obs(134.9768, 0.0005**2, 'pi^0 mass')\nmpi.gamma_method()\nmpi.details()\n> Result         1.34976800e+02 +/- 5.00000000e-04 +/- 0.00000000e+00 (0.000%)\n>  pi^0 mass     5.00000000e-04\n> 0 samples in 1 ensemble:\n>   \u00b7 Covobs   'pi^0 mass'\n
    \n
    \n\n

    The resulting object mpi is an Obs that contains a Covobs. In the following, it may be handled as any other Obs. The contribution of the covariance matrix to the error of an Obs is determined from the $M \\times M$ covariance matrix $\\Sigma$ and the gradient of the Obs with respect to the external quantities, which is the $1\\times M$ Jacobian matrix $J$, via\n$$s = \\sqrt{J^T \\Sigma J}\\,,$$\nwhere the Jacobian is computed for each derived quantity via automatic differentiation.

    \n\n

    Correlated auxiliary data is defined similarly to above, e.g., via

    \n\n
    \n
    RAP = pe.cov_Obs([16.7457, -19.0475], [[3.49591, -6.07560], [-6.07560, 10.5834]], 'R_AP, 1906.03445, (5.3a)')\nprint(RAP)\n> [Obs[16.7(1.9)], Obs[-19.0(3.3)]]\n
    \n
    \n\n

    where RAP now is a list of two Obs that contains the two correlated parameters.

    \n\n

    Since the gradient of a derived observable with respect to an external covariance matrix is propagated through the entire analysis, the Covobs class allows to quote the derivative of a result with respect to the external quantities. If these derivatives are published together with the result, small shifts in the definition of external quantities, e.g., the definition of the physical point, can be performed a posteriori based on the published information. This may help to compare results of different groups. The gradient of an Obs o with respect to a covariance matrix with the identifying string k may be accessed via

    \n\n
    \n
    o.covobs[k].grad\n
    \n
    \n\n

    Error propagation in iterative algorithms

    \n\n

    pyerrors supports exact linear error propagation for iterative algorithms like various variants of non-linear least squares fits or root finding. The derivatives required for the error propagation are calculated as described in arXiv:1809.01289.

    \n\n

    Least squares fits

    \n\n

    Standard non-linear least square fits with errors on the dependent but not the independent variables can be performed with pyerrors.fits.least_squares. As default solver the Levenberg-Marquardt algorithm implemented in scipy is used.

    \n\n

    Fit functions have to be of the following form

    \n\n
    \n
    import autograd.numpy as anp\n\ndef func(a, x):\n    return a[1] * anp.exp(-a[0] * x)\n
    \n
    \n\n

    It is important that numerical functions refer to autograd.numpy instead of numpy for the automatic differentiation in iterative algorithms to work properly.

    \n\n

    Fits can then be performed via

    \n\n
    \n
    fit_result = pe.fits.least_squares(x, y, func)\nprint("\\n", fit_result)\n> Fit with 2 parameters\n> Method: Levenberg-Marquardt\n> `ftol` termination condition is satisfied.\n> chisquare/d.o.f.: 0.9593035785160936\n\n>  Goodness of fit:\n> \u03c7\u00b2/d.o.f. = 0.959304\n> p-value   = 0.5673\n> Fit parameters:\n> 0      0.0548(28)\n> 1      1.933(64)\n
    \n
    \n\n

    where x is a list or numpy.array of floats and y is a list or numpy.array of Obs.

    \n\n

    Data stored in Corr objects can be fitted directly using the Corr.fit method.

    \n\n
    \n
    my_corr = pe.Corr(y)\nfit_result = my_corr.fit(func, fitrange=[12, 25])\n
    \n
    \n\n

    this can simplify working with absolute fit ranges and takes care of gaps in the data automatically.

    \n\n

    For fit functions with multiple independent variables the fit function can be of the form

    \n\n
    \n
    def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
    \n
    \n\n

    pyerrors also supports correlated fits which can be triggered via the parameter correlated_fit=True.\nDetails about how the required covariance matrix is estimated can be found in pyerrors.obs.covariance.\nDirect visualizations of the performed fits can be triggered via resplot=True or qqplot=True.

    \n\n

    For all available options including combined fits to multiple datasets see pyerrors.fits.least_squares.

    \n\n

    Total least squares fits

    \n\n

    pyerrors can also fit data with errors on both the dependent and independent variables using the total least squares method also referred to as orthogonal distance regression as implemented in scipy, see pyerrors.fits.least_squares. The syntax is identical to the standard least squares case, the only difference being that x also has to be a list or numpy.array of Obs.

    \n\n

    For the full API see pyerrors.fits for fits and pyerrors.roots for finding roots of functions.

    \n\n

    Matrix operations

    \n\n

    pyerrors provides wrappers for Obs- and CObs-valued matrix operations based on numpy.linalg. The supported functions include:

    \n\n
      \n
    • inv for the matrix inverse.
    • \n
    • cholseky for the Cholesky decomposition.
    • \n
    • det for the matrix determinant.
    • \n
    • eigh for eigenvalues and eigenvectors of hermitean matrices.
    • \n
    • eig for eigenvalues of general matrices.
    • \n
    • pinv for the Moore-Penrose pseudoinverse.
    • \n
    • svd for the singular-value-decomposition.
    • \n
    \n\n

    For the full API see pyerrors.linalg.

    \n\n

    Export data

    \n\n

    \n\n

    The preferred exported file format within pyerrors is json.gz. Files written to this format are valid JSON files that have been compressed using gzip. The structure of the content is inspired by the dobs format of the ALPHA collaboration. The aim of the format is to facilitate the storage of data in a self-contained way such that, even years after the creation of the file, it is possible to extract all necessary information:

    \n\n
      \n
    • What observables are stored? Possibly: How exactly are they defined.
    • \n
    • How does each single ensemble or external quantity contribute to the error of the observable?
    • \n
    • Who did write the file when and on which machine?
    • \n
    \n\n

    This can be achieved by storing all information in one single file. The export routines of pyerrors are written such that as much information as possible is written automatically as described in the following example

    \n\n
    \n
    my_obs = pe.Obs([samples], ["test_ensemble"])\nmy_obs.tag = "My observable"\n\npe.input.json.dump_to_json(my_obs, "test_output_file", description="This file contains a test observable")\n# For a single observable one can equivalently use the class method dump\nmy_obs.dump("test_output_file", description="This file contains a test observable")\n\ncheck = pe.input.json.load_json("test_output_file")\n\nprint(my_obs == check)\n> True\n
    \n
    \n\n

    The format also allows to directly write out the content of Corr objects or lists and arrays of Obs objects by passing the desired data to pyerrors.input.json.dump_to_json.

    \n\n

    json.gz format specification

    \n\n

    The first entries of the file provide optional auxiliary information:

    \n\n
      \n
    • program is a string that indicates which program was used to write the file.
    • \n
    • version is a string that specifies the version of the format.
    • \n
    • who is a string that specifies the user name of the creator of the file.
    • \n
    • date is a string and contains the creation date of the file.
    • \n
    • host is a string and contains the hostname of the machine where the file has been written.
    • \n
    • description contains information on the content of the file. This field is not filled automatically in pyerrors. The user is advised to provide as detailed information as possible in this field. Examples are: Input files of measurements or simulations, LaTeX formulae or references to publications to specify how the observables have been computed, details on the analysis strategy, ... This field may be any valid JSON type. Strings, arrays or objects (equivalent to dicts in python) are well suited to provide information.
    • \n
    \n\n

    The only necessary entry of the file is the field\n-obsdata, an array that contains the actual data.

    \n\n

    Each entry of the array belongs to a single structure of observables. Currently, these structures can be either of Obs, list, numpy.ndarray, Corr. All Obs inside a structure (with dimension > 0) have to be defined on the same set of configurations. Different structures, that are represented by entries of the array obsdata, are treated independently. Each entry of the array obsdata has the following required entries:

    \n\n
      \n
    • type is a string that specifies the type of the structure. This allows to parse the content to the correct form after reading the file. It is always possible to interpret the content as list of Obs.
    • \n
    • value is an array that contains the mean values of the Obs inside the structure.\nThe following entries are optional:
    • \n
    • layout is a string that specifies the layout of multi-dimensional structures. Examples are \"2, 2\" for a 2x2 dimensional matrix or \"64, 4, 4\" for a Corr with $T=64$ and 4x4 matrices on each time slices. \"1\" denotes a single Obs. Multi-dimensional structures are stored in row-major format (see below).
    • \n
    • tag is any JSON type. It contains additional information concerning the structure. The tag of an Obs in pyerrors is written here.
    • \n
    • reweighted is a Bool that may be used to specify, whether the Obs in the structure have been reweighted.
    • \n
    • data is an array that contains the data from MC chains. We will define it below.
    • \n
    • cdata is an array that contains the data from external quantities with an error (Covobs in pyerrors). We will define it below.
    • \n
    \n\n

    The array data contains the data from MC chains. Each entry of the array corresponds to one ensemble and contains:

    \n\n
      \n
    • id, a string that contains the name of the ensemble
    • \n
    • replica, an array that contains an entry per replica of the ensemble.
    • \n
    \n\n

    Each entry of replica contains\nname, a string that contains the name of the replica\ndeltas, an array that contains the actual data.

    \n\n

    Each entry in deltas corresponds to one configuration of the replica and has $1+N$ many entries. The first entry is an integer that specifies the configuration number that, together with ensemble and replica name, may be used to uniquely identify the configuration on which the data has been obtained. The following N entries specify the deltas, i.e., the deviation of the observable from the mean value on this configuration, of each Obs inside the structure. Multi-dimensional structures are stored in a row-major format. For primary observables, such as correlation functions, $value + delta_i$ matches the primary data obtained on the configuration.

    \n\n

    The array cdata contains information about the contribution of auxiliary observables, represented by Covobs in pyerrors, to the total error of the observables. Each entry of the array belongs to one auxiliary covariance matrix and contains:

    \n\n
      \n
    • id, a string that identifies the covariance matrix
    • \n
    • layout, a string that defines the dimensions of the $M\\times M$ covariance matrix (has to be \"M, M\" or \"1\").
    • \n
    • cov, an array that contains the $M\\times M$ many entries of the covariance matrix, stored in row-major format.
    • \n
    • grad, an array that contains N entries, one for each Obs inside the structure. Each entry itself is an array, that contains the M gradients of the Nth observable with respect to the quantity that corresponds to the Mth diagonal entry of the covariance matrix.
    • \n
    \n\n

    A JSON schema that may be used to verify the correctness of a file with respect to the format definition is stored in ./examples/json_schema.json. The schema is a self-descriptive format definition and contains an exemplary file.

    \n\n

    Julia I/O routines for the json.gz format, compatible with ADerrors.jl, can be found here.

    \n"}, "pyerrors.correlators": {"fullname": "pyerrors.correlators", "modulename": "pyerrors.correlators", "kind": "module", "doc": "

    \n"}, "pyerrors.correlators.Corr": {"fullname": "pyerrors.correlators.Corr", "modulename": "pyerrors.correlators", "qualname": "Corr", "kind": "class", "doc": "

    The class for a correlator (time dependent sequence of pe.Obs).

    \n\n

    Everything, this class does, can be achieved using lists or arrays of Obs.\nBut it is simply more convenient to have a dedicated object for correlators.\nOne often wants to add or multiply correlators of the same length at every timeslice and it is inconvenient\nto iterate over all timeslices for every operation. This is especially true, when dealing with matrices.

    \n\n

    The correlator can have two types of content: An Obs at every timeslice OR a matrix at every timeslice.\nOther dependency (eg. spatial) are not supported.

    \n\n

    The Corr class can also deal with missing measurements or paddings for fixed boundary conditions.\nThe missing entries are represented via the None object.

    \n\n
    Initialization
    \n\n

    A simple correlator can be initialized with a list or a one-dimensional array of Obs or Cobs

    \n\n
    \n
    corr11 = pe.Corr([obs1, obs2])\ncorr11 = pe.Corr(np.array([obs1, obs2]))\n
    \n
    \n\n

    A matrix-valued correlator can either be initialized via a two-dimensional array of Corr objects

    \n\n
    \n
    matrix_corr = pe.Corr(np.array([[corr11, corr12], [corr21, corr22]]))\n
    \n
    \n\n

    or alternatively via a three-dimensional array of Obs or CObs of shape (T, N, N) where T is\nthe temporal extent of the correlator and N is the dimension of the matrix.

    \n"}, "pyerrors.correlators.Corr.__init__": {"fullname": "pyerrors.correlators.Corr.__init__", "modulename": "pyerrors.correlators", "qualname": "Corr.__init__", "kind": "function", "doc": "

    Initialize a Corr object.

    \n\n
    Parameters
    \n\n
      \n
    • data_input (list or array):\nlist of Obs or list of arrays of Obs or array of Corrs (see class docstring for details).
    • \n
    • padding (list, optional):\nList with two entries where the first labels the padding\nat the front of the correlator and the second the padding\nat the back.
    • \n
    • prange (list, optional):\nList containing the first and last timeslice of the plateau\nregion identified for this correlator.
    • \n
    \n", "signature": "(data_input, padding=[0, 0], prange=None)"}, "pyerrors.correlators.Corr.tag": {"fullname": "pyerrors.correlators.Corr.tag", "modulename": "pyerrors.correlators", "qualname": "Corr.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.content": {"fullname": "pyerrors.correlators.Corr.content", "modulename": "pyerrors.correlators", "qualname": "Corr.content", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.T": {"fullname": "pyerrors.correlators.Corr.T", "modulename": "pyerrors.correlators", "qualname": "Corr.T", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.prange": {"fullname": "pyerrors.correlators.Corr.prange", "modulename": "pyerrors.correlators", "qualname": "Corr.prange", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.reweighted": {"fullname": "pyerrors.correlators.Corr.reweighted", "modulename": "pyerrors.correlators", "qualname": "Corr.reweighted", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.gamma_method": {"fullname": "pyerrors.correlators.Corr.gamma_method", "modulename": "pyerrors.correlators", "qualname": "Corr.gamma_method", "kind": "function", "doc": "

    Apply the gamma method to the content of the Corr.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.gm": {"fullname": "pyerrors.correlators.Corr.gm", "modulename": "pyerrors.correlators", "qualname": "Corr.gm", "kind": "function", "doc": "

    Apply the gamma method to the content of the Corr.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.projected": {"fullname": "pyerrors.correlators.Corr.projected", "modulename": "pyerrors.correlators", "qualname": "Corr.projected", "kind": "function", "doc": "

    We need to project the Correlator with a Vector to get a single value at each timeslice.

    \n\n

    The method can use one or two vectors.\nIf two are specified it returns v1@G@v2 (the order might be very important.)\nBy default it will return the lowest source, which usually means unsmeared-unsmeared (0,0), but it does not have to

    \n", "signature": "(self, vector_l=None, vector_r=None, normalize=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.item": {"fullname": "pyerrors.correlators.Corr.item", "modulename": "pyerrors.correlators", "qualname": "Corr.item", "kind": "function", "doc": "

    Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice.

    \n\n
    Parameters
    \n\n
      \n
    • i (int):\nFirst index to be picked.
    • \n
    • j (int):\nSecond index to be picked.
    • \n
    \n", "signature": "(self, i, j):", "funcdef": "def"}, "pyerrors.correlators.Corr.plottable": {"fullname": "pyerrors.correlators.Corr.plottable", "modulename": "pyerrors.correlators", "qualname": "Corr.plottable", "kind": "function", "doc": "

    Outputs the correlator in a plotable format.

    \n\n

    Outputs three lists containing the timeslice index, the value on each\ntimeslice and the error on each timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.symmetric": {"fullname": "pyerrors.correlators.Corr.symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.symmetric", "kind": "function", "doc": "

    Symmetrize the correlator around x0=0.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.anti_symmetric": {"fullname": "pyerrors.correlators.Corr.anti_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.anti_symmetric", "kind": "function", "doc": "

    Anti-symmetrize the correlator around x0=0.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.is_matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.is_matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.is_matrix_symmetric", "kind": "function", "doc": "

    Checks whether a correlator matrices is symmetric on every timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.trace": {"fullname": "pyerrors.correlators.Corr.trace", "modulename": "pyerrors.correlators", "qualname": "Corr.trace", "kind": "function", "doc": "

    Calculates the per-timeslice trace of a correlator matrix.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.matrix_symmetric", "kind": "function", "doc": "

    Symmetrizes the correlator matrices on every timeslice.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.GEVP": {"fullname": "pyerrors.correlators.Corr.GEVP", "modulename": "pyerrors.correlators", "qualname": "Corr.GEVP", "kind": "function", "doc": "

    Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors.

    \n\n

    The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the\nlargest eigenvalue(s). The eigenvector(s) for the individual states can be accessed via slicing

    \n\n
    \n
    C.GEVP(t0=2)[0]  # Ground state vector(s)\nC.GEVP(t0=2)[:3]  # Vectors for the lowest three states\n
    \n
    \n\n
    Parameters
    \n\n
      \n
    • t0 (int):\nThe time t0 for the right hand side of the GEVP according to $G(t)v_i=\\lambda_i G(t_0)v_i$
    • \n
    • ts (int):\nfixed time $G(t_s)v_i=\\lambda_i G(t_0)v_i$ if sort=None.\nIf sort=\"Eigenvector\" it gives a reference point for the sorting method.
    • \n
    • sort (string):\nIf this argument is set, a list of self.T vectors per state is returned. If it is set to None, only one vector is returned.\n
        \n
      • \"Eigenvalue\": The eigenvector is chosen according to which eigenvalue it belongs individually on every timeslice. (default)
      • \n
      • \"Eigenvector\": Use the method described in arXiv:2004.10472 to find the set of v(t) belonging to the state.\nThe reference state is identified by its eigenvalue at $t=t_s$.
      • \n
      • None: The GEVP is solved only at ts, no sorting is necessary
      • \n
    • \n
    • vector_obs (bool):\nIf True, uncertainties are propagated in the eigenvector computation (default False).
    • \n
    \n\n
    Other Parameters
    \n\n
      \n
    • state (int):\nReturns only the vector(s) for a specified state. The lowest state is zero.
    • \n
    • method (str):\nMethod used to solve the GEVP.\n
        \n
      • \"eigh\": Use scipy.linalg.eigh to solve the GEVP. (default for vector_obs=False)
      • \n
      • \"cholesky\": Use manually implemented solution via the Cholesky decomposition. Automatically chosen if vector_obs==True.
      • \n
    • \n
    \n", "signature": "(self, t0, ts=None, sort='Eigenvalue', vector_obs=False, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.Eigenvalue": {"fullname": "pyerrors.correlators.Corr.Eigenvalue", "modulename": "pyerrors.correlators", "qualname": "Corr.Eigenvalue", "kind": "function", "doc": "

    Determines the eigenvalue of the GEVP by solving and projecting the correlator

    \n\n
    Parameters
    \n\n
      \n
    • state (int):\nThe state one is interested in ordered by energy. The lowest state is zero.
    • \n
    • All other parameters are identical to the ones of Corr.GEVP.
    • \n
    \n", "signature": "(self, t0, ts=None, state=0, sort='Eigenvalue', **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.Hankel": {"fullname": "pyerrors.correlators.Corr.Hankel", "modulename": "pyerrors.correlators", "qualname": "Corr.Hankel", "kind": "function", "doc": "

    Constructs an NxN Hankel matrix

    \n\n

    C(t) c(t+1) ... c(t+n-1)\nC(t+1) c(t+2) ... c(t+n)\n.................\nC(t+(n-1)) c(t+n) ... c(t+2(n-1))

    \n\n
    Parameters
    \n\n
      \n
    • N (int):\nDimension of the Hankel matrix
    • \n
    • periodic (bool, optional):\ndetermines whether the matrix is extended periodically
    • \n
    \n", "signature": "(self, N, periodic=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.roll": {"fullname": "pyerrors.correlators.Corr.roll", "modulename": "pyerrors.correlators", "qualname": "Corr.roll", "kind": "function", "doc": "

    Periodically shift the correlator by dt timeslices

    \n\n
    Parameters
    \n\n
      \n
    • dt (int):\nnumber of timeslices
    • \n
    \n", "signature": "(self, dt):", "funcdef": "def"}, "pyerrors.correlators.Corr.reverse": {"fullname": "pyerrors.correlators.Corr.reverse", "modulename": "pyerrors.correlators", "qualname": "Corr.reverse", "kind": "function", "doc": "

    Reverse the time ordering of the Corr

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.thin": {"fullname": "pyerrors.correlators.Corr.thin", "modulename": "pyerrors.correlators", "qualname": "Corr.thin", "kind": "function", "doc": "

    Thin out a correlator to suppress correlations

    \n\n
    Parameters
    \n\n
      \n
    • spacing (int):\nKeep only every 'spacing'th entry of the correlator
    • \n
    • offset (int):\nOffset the equal spacing
    • \n
    \n", "signature": "(self, spacing=2, offset=0):", "funcdef": "def"}, "pyerrors.correlators.Corr.correlate": {"fullname": "pyerrors.correlators.Corr.correlate", "modulename": "pyerrors.correlators", "qualname": "Corr.correlate", "kind": "function", "doc": "

    Correlate the correlator with another correlator or Obs

    \n\n
    Parameters
    \n\n
      \n
    • partner (Obs or Corr):\npartner to correlate the correlator with.\nCan either be an Obs which is correlated with all entries of the\ncorrelator or a Corr of same length.
    • \n
    \n", "signature": "(self, partner):", "funcdef": "def"}, "pyerrors.correlators.Corr.reweight": {"fullname": "pyerrors.correlators.Corr.reweight", "modulename": "pyerrors.correlators", "qualname": "Corr.reweight", "kind": "function", "doc": "

    Reweight the correlator.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
    • \n
    \n", "signature": "(self, weight, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.T_symmetry": {"fullname": "pyerrors.correlators.Corr.T_symmetry", "modulename": "pyerrors.correlators", "qualname": "Corr.T_symmetry", "kind": "function", "doc": "

    Return the time symmetry average of the correlator and its partner

    \n\n
    Parameters
    \n\n
      \n
    • partner (Corr):\nTime symmetry partner of the Corr
    • \n
    • parity (int):\nParity quantum number of the correlator, can be +1 or -1
    • \n
    \n", "signature": "(self, partner, parity=1):", "funcdef": "def"}, "pyerrors.correlators.Corr.deriv": {"fullname": "pyerrors.correlators.Corr.deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.deriv", "kind": "function", "doc": "

    Return the first derivative of the correlator with respect to x0.

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, forward, backward, improved, log, default: symmetric
    • \n
    \n", "signature": "(self, variant='symmetric'):", "funcdef": "def"}, "pyerrors.correlators.Corr.second_deriv": {"fullname": "pyerrors.correlators.Corr.second_deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.second_deriv", "kind": "function", "doc": "

    Return the second derivative of the correlator with respect to x0.

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice:\n - symmetric (default)\n $$\\tilde{\\partial}^2_0 f(x_0) = f(x_0+1)-2f(x_0)+f(x_0-1)$$\n - big_symmetric\n $$\\partial^2_0 f(x_0) = \\frac{f(x_0+2)-2f(x_0)+f(x_0-2)}{4}$$\n - improved\n $$\\partial^2_0 f(x_0) = \\frac{-f(x_0+2) + 16 * f(x_0+1) - 30 * f(x_0) + 16 * f(x_0-1) - f(x_0-2)}{12}$$\n - log\n $$f(x) = \\tilde{\\partial}^2_0 log(f(x_0))+(\\tilde{\\partial}_0 log(f(x_0)))^2$$
    • \n
    \n", "signature": "(self, variant='symmetric'):", "funcdef": "def"}, "pyerrors.correlators.Corr.m_eff": {"fullname": "pyerrors.correlators.Corr.m_eff", "modulename": "pyerrors.correlators", "qualname": "Corr.m_eff", "kind": "function", "doc": "

    Returns the effective mass of the correlator as correlator object

    \n\n
    Parameters
    \n\n
      \n
    • variant (str):\nlog : uses the standard effective mass log(C(t) / C(t+1))\ncosh, periodic : Use periodicity of the correlator by solving C(t) / C(t+1) = cosh(m * (t - T/2)) / cosh(m * (t + 1 - T/2)) for m.\nsinh : Use anti-periodicity of the correlator by solving C(t) / C(t+1) = sinh(m * (t - T/2)) / sinh(m * (t + 1 - T/2)) for m.\nSee, e.g., arXiv:1205.5380\narccosh : Uses the explicit form of the symmetrized correlator (not recommended)\nlogsym: uses the symmetric effective mass log(C(t-1) / C(t+1))/2
    • \n
    • guess (float):\nguess for the root finder, only relevant for the root variant
    • \n
    \n", "signature": "(self, variant='log', guess=1.0):", "funcdef": "def"}, "pyerrors.correlators.Corr.fit": {"fullname": "pyerrors.correlators.Corr.fit", "modulename": "pyerrors.correlators", "qualname": "Corr.fit", "kind": "function", "doc": "

    Fits function to the data

    \n\n
    Parameters
    \n\n
      \n
    • function (obj):\nfunction to fit to the data. See fits.least_squares for details.
    • \n
    • fitrange (list):\nTwo element list containing the timeslices on which the fit is supposed to start and stop.\nCaution: This range is inclusive as opposed to standard python indexing.\nfitrange=[4, 6] corresponds to the three entries 4, 5 and 6.\nIf not specified, self.prange or all timeslices are used.
    • \n
    • silent (bool):\nDecides whether output is printed to the standard output.
    • \n
    \n", "signature": "(self, function, fitrange=None, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.plateau": {"fullname": "pyerrors.correlators.Corr.plateau", "modulename": "pyerrors.correlators", "qualname": "Corr.plateau", "kind": "function", "doc": "

    Extract a plateau value from a Corr object

    \n\n
    Parameters
    \n\n
      \n
    • plateau_range (list):\nlist with two entries, indicating the first and the last timeslice\nof the plateau region.
    • \n
    • method (str):\nmethod to extract the plateau.\n 'fit' fits a constant to the plateau region\n 'avg', 'average' or 'mean' just average over the given timeslices.
    • \n
    • auto_gamma (bool):\napply gamma_method with default parameters to the Corr. Defaults to None
    • \n
    \n", "signature": "(self, plateau_range=None, method='fit', auto_gamma=False):", "funcdef": "def"}, "pyerrors.correlators.Corr.set_prange": {"fullname": "pyerrors.correlators.Corr.set_prange", "modulename": "pyerrors.correlators", "qualname": "Corr.set_prange", "kind": "function", "doc": "

    Sets the attribute prange of the Corr object.

    \n", "signature": "(self, prange):", "funcdef": "def"}, "pyerrors.correlators.Corr.show": {"fullname": "pyerrors.correlators.Corr.show", "modulename": "pyerrors.correlators", "qualname": "Corr.show", "kind": "function", "doc": "

    Plots the correlator using the tag of the correlator as label if available.

    \n\n
    Parameters
    \n\n
      \n
    • x_range (list):\nlist of two values, determining the range of the x-axis e.g. [4, 8].
    • \n
    • comp (Corr or list of Corr):\nCorrelator or list of correlators which are plotted for comparison.\nThe tags of these correlators are used as labels if available.
    • \n
    • logscale (bool):\nSets y-axis to logscale.
    • \n
    • plateau (Obs):\nPlateau value to be visualized in the figure.
    • \n
    • fit_res (Fit_result):\nFit_result object to be visualized.
    • \n
    • fit_key (str):\nKey for the fit function in Fit_result.fit_function (for combined fits).
    • \n
    • ylabel (str):\nLabel for the y-axis.
    • \n
    • save (str):\npath to file in which the figure should be saved.
    • \n
    • auto_gamma (bool):\nApply the gamma method with standard parameters to all correlators and plateau values before plotting.
    • \n
    • hide_sigma (float):\nHides data points from the first value on which is consistent with zero within 'hide_sigma' standard errors.
    • \n
    • references (list):\nList of floating point values that are displayed as horizontal lines for reference.
    • \n
    • title (string):\nOptional title of the figure.
    • \n
    \n", "signature": "(\tself,\tx_range=None,\tcomp=None,\ty_range=None,\tlogscale=False,\tplateau=None,\tfit_res=None,\tfit_key=None,\tylabel=None,\tsave=None,\tauto_gamma=False,\thide_sigma=None,\treferences=None,\ttitle=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.spaghetti_plot": {"fullname": "pyerrors.correlators.Corr.spaghetti_plot", "modulename": "pyerrors.correlators", "qualname": "Corr.spaghetti_plot", "kind": "function", "doc": "

    Produces a spaghetti plot of the correlator suited to monitor exceptional configurations.

    \n\n
    Parameters
    \n\n
      \n
    • logscale (bool):\nDetermines whether the scale of the y-axis is logarithmic or standard.
    • \n
    \n", "signature": "(self, logscale=True):", "funcdef": "def"}, "pyerrors.correlators.Corr.dump": {"fullname": "pyerrors.correlators.Corr.dump", "modulename": "pyerrors.correlators", "qualname": "Corr.dump", "kind": "function", "doc": "

    Dumps the Corr into a file of chosen type

    \n\n
    Parameters
    \n\n
      \n
    • filename (str):\nName of the file to be saved.
    • \n
    • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n", "signature": "(self, filename, datatype='json.gz', **kwargs):", "funcdef": "def"}, "pyerrors.correlators.Corr.print": {"fullname": "pyerrors.correlators.Corr.print", "modulename": "pyerrors.correlators", "qualname": "Corr.print", "kind": "function", "doc": "

    \n", "signature": "(self, print_range=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.sqrt": {"fullname": "pyerrors.correlators.Corr.sqrt", "modulename": "pyerrors.correlators", "qualname": "Corr.sqrt", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.log": {"fullname": "pyerrors.correlators.Corr.log", "modulename": "pyerrors.correlators", "qualname": "Corr.log", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.exp": {"fullname": "pyerrors.correlators.Corr.exp", "modulename": "pyerrors.correlators", "qualname": "Corr.exp", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.sin": {"fullname": "pyerrors.correlators.Corr.sin", "modulename": "pyerrors.correlators", "qualname": "Corr.sin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.cos": {"fullname": "pyerrors.correlators.Corr.cos", "modulename": "pyerrors.correlators", "qualname": "Corr.cos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.tan": {"fullname": "pyerrors.correlators.Corr.tan", "modulename": "pyerrors.correlators", "qualname": "Corr.tan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.sinh": {"fullname": "pyerrors.correlators.Corr.sinh", "modulename": "pyerrors.correlators", "qualname": "Corr.sinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.cosh": {"fullname": "pyerrors.correlators.Corr.cosh", "modulename": "pyerrors.correlators", "qualname": "Corr.cosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.tanh": {"fullname": "pyerrors.correlators.Corr.tanh", "modulename": "pyerrors.correlators", "qualname": "Corr.tanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsin": {"fullname": "pyerrors.correlators.Corr.arcsin", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arccos": {"fullname": "pyerrors.correlators.Corr.arccos", "modulename": "pyerrors.correlators", "qualname": "Corr.arccos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arctan": {"fullname": "pyerrors.correlators.Corr.arctan", "modulename": "pyerrors.correlators", "qualname": "Corr.arctan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsinh": {"fullname": "pyerrors.correlators.Corr.arcsinh", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arccosh": {"fullname": "pyerrors.correlators.Corr.arccosh", "modulename": "pyerrors.correlators", "qualname": "Corr.arccosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.arctanh": {"fullname": "pyerrors.correlators.Corr.arctanh", "modulename": "pyerrors.correlators", "qualname": "Corr.arctanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.correlators.Corr.real": {"fullname": "pyerrors.correlators.Corr.real", "modulename": "pyerrors.correlators", "qualname": "Corr.real", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.imag": {"fullname": "pyerrors.correlators.Corr.imag", "modulename": "pyerrors.correlators", "qualname": "Corr.imag", "kind": "variable", "doc": "

    \n"}, "pyerrors.correlators.Corr.prune": {"fullname": "pyerrors.correlators.Corr.prune", "modulename": "pyerrors.correlators", "qualname": "Corr.prune", "kind": "function", "doc": "

    Project large correlation matrix to lowest states

    \n\n

    This method can be used to reduce the size of an (N x N) correlation matrix\nto (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise\nis still small.

    \n\n
    Parameters
    \n\n
      \n
    • Ntrunc (int):\nRank of the target matrix.
    • \n
    • tproj (int):\nTime where the eigenvectors are evaluated, corresponds to ts in the GEVP method.\nThe default value is 3.
    • \n
    • t0proj (int):\nTime where the correlation matrix is inverted. Choosing t0proj=1 is strongly\ndiscouraged for O(a) improved theories, since the correctness of the procedure\ncannot be granted in this case. The default value is 2.
    • \n
    • basematrix (Corr):\nCorrelation matrix that is used to determine the eigenvectors of the\nlowest states based on a GEVP. basematrix is taken to be the Corr itself if\nis is not specified.
    • \n
    \n\n
    Notes
    \n\n

    We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving\nthe GEVP $$C(t) v_n(t, t_0) = \\lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \\equiv t_\\mathrm{proj}$\nand $t_0 \\equiv t_{0, \\mathrm{proj}}$. The target matrix is projected onto the subspace of the\nresulting eigenvectors $v_n, n=1,\\dots,N_\\mathrm{trunc}$ via\n$$G^\\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large\ncorrelation matrix and to remove some noise that is added by irrelevant operators.\nThis may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated\nbound $t_0 \\leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.

    \n", "signature": "(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):", "funcdef": "def"}, "pyerrors.correlators.Corr.N": {"fullname": "pyerrors.correlators.Corr.N", "modulename": "pyerrors.correlators", "qualname": "Corr.N", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs": {"fullname": "pyerrors.covobs", "modulename": "pyerrors.covobs", "kind": "module", "doc": "

    \n"}, "pyerrors.covobs.Covobs": {"fullname": "pyerrors.covobs.Covobs", "modulename": "pyerrors.covobs", "qualname": "Covobs", "kind": "class", "doc": "

    \n"}, "pyerrors.covobs.Covobs.__init__": {"fullname": "pyerrors.covobs.Covobs.__init__", "modulename": "pyerrors.covobs", "qualname": "Covobs.__init__", "kind": "function", "doc": "

    Initialize Covobs object.

    \n\n
    Parameters
    \n\n
      \n
    • mean (float):\nMean value of the new Obs
    • \n
    • cov (list or array):\n2d Covariance matrix or 1d diagonal entries
    • \n
    • name (str):\nidentifier for the covariance matrix
    • \n
    • pos (int):\nPosition of the variance belonging to mean in cov.\nIs taken to be 1 if cov is 0-dimensional
    • \n
    • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
    • \n
    \n", "signature": "(mean, cov, name, pos=None, grad=None)"}, "pyerrors.covobs.Covobs.name": {"fullname": "pyerrors.covobs.Covobs.name", "modulename": "pyerrors.covobs", "qualname": "Covobs.name", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.value": {"fullname": "pyerrors.covobs.Covobs.value", "modulename": "pyerrors.covobs", "qualname": "Covobs.value", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.errsq": {"fullname": "pyerrors.covobs.Covobs.errsq", "modulename": "pyerrors.covobs", "qualname": "Covobs.errsq", "kind": "function", "doc": "

    Return the variance (= square of the error) of the Covobs

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.covobs.Covobs.cov": {"fullname": "pyerrors.covobs.Covobs.cov", "modulename": "pyerrors.covobs", "qualname": "Covobs.cov", "kind": "variable", "doc": "

    \n"}, "pyerrors.covobs.Covobs.grad": {"fullname": "pyerrors.covobs.Covobs.grad", "modulename": "pyerrors.covobs", "qualname": "Covobs.grad", "kind": "variable", "doc": "

    \n"}, "pyerrors.dirac": {"fullname": "pyerrors.dirac", "modulename": "pyerrors.dirac", "kind": "module", "doc": "

    \n"}, "pyerrors.dirac.gammaX": {"fullname": "pyerrors.dirac.gammaX", "modulename": "pyerrors.dirac", "qualname": "gammaX", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+0.j, 0.+1.j],\n [ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, -0.-1.j, 0.+0.j, 0.+0.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaY": {"fullname": "pyerrors.dirac.gammaY", "modulename": "pyerrors.dirac", "qualname": "gammaY", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j],\n [ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [-1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaZ": {"fullname": "pyerrors.dirac.gammaZ", "modulename": "pyerrors.dirac", "qualname": "gammaZ", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -0.-1.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+1.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gammaT": {"fullname": "pyerrors.dirac.gammaT", "modulename": "pyerrors.dirac", "qualname": "gammaT", "kind": "variable", "doc": "

    \n", "default_value": "array([[0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j],\n [1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j]])"}, "pyerrors.dirac.gamma": {"fullname": "pyerrors.dirac.gamma", "modulename": "pyerrors.dirac", "qualname": "gamma", "kind": "variable", "doc": "

    \n", "default_value": "array([[[ 0.+0.j, 0.+0.j, 0.+0.j, 0.+1.j],\n [ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, -0.-1.j, 0.+0.j, 0.+0.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j],\n [ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [-1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 0.+1.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -0.-1.j],\n [-0.-1.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+1.j, 0.+0.j, 0.+0.j]],\n\n [[ 0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j],\n [ 1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j]]])"}, "pyerrors.dirac.gamma5": {"fullname": "pyerrors.dirac.gamma5", "modulename": "pyerrors.dirac", "qualname": "gamma5", "kind": "variable", "doc": "

    \n", "default_value": "array([[ 1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, -1.+0.j, 0.+0.j],\n [ 0.+0.j, 0.+0.j, 0.+0.j, -1.+0.j]])"}, "pyerrors.dirac.identity": {"fullname": "pyerrors.dirac.identity", "modulename": "pyerrors.dirac", "qualname": "identity", "kind": "variable", "doc": "

    \n", "default_value": "array([[1.+0.j, 0.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 1.+0.j, 0.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 1.+0.j, 0.+0.j],\n [0.+0.j, 0.+0.j, 0.+0.j, 1.+0.j]])"}, "pyerrors.dirac.epsilon_tensor": {"fullname": "pyerrors.dirac.epsilon_tensor", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor", "kind": "function", "doc": "

    Rank-3 epsilon tensor

    \n\n

    Based on https://codegolf.stackexchange.com/a/160375

    \n\n
    Returns
    \n\n
      \n
    • elem (int):\nElement (i,j,k) of the epsilon tensor of rank 3
    • \n
    \n", "signature": "(i, j, k):", "funcdef": "def"}, "pyerrors.dirac.epsilon_tensor_rank4": {"fullname": "pyerrors.dirac.epsilon_tensor_rank4", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor_rank4", "kind": "function", "doc": "

    Rank-4 epsilon tensor

    \n\n

    Extension of https://codegolf.stackexchange.com/a/160375

    \n\n
    Returns
    \n\n
      \n
    • elem (int):\nElement (i,j,k,o) of the epsilon tensor of rank 4
    • \n
    \n", "signature": "(i, j, k, o):", "funcdef": "def"}, "pyerrors.dirac.Grid_gamma": {"fullname": "pyerrors.dirac.Grid_gamma", "modulename": "pyerrors.dirac", "qualname": "Grid_gamma", "kind": "function", "doc": "

    Returns gamma matrix in Grid labeling.

    \n", "signature": "(gamma_tag):", "funcdef": "def"}, "pyerrors.fits": {"fullname": "pyerrors.fits", "modulename": "pyerrors.fits", "kind": "module", "doc": "

    \n"}, "pyerrors.fits.Fit_result": {"fullname": "pyerrors.fits.Fit_result", "modulename": "pyerrors.fits", "qualname": "Fit_result", "kind": "class", "doc": "

    Represents fit results.

    \n\n
    Attributes
    \n\n
      \n
    • fit_parameters (list):\nresults for the individual fit parameters,\nalso accessible via indices.
    • \n
    • chisquare_by_dof (float):\nreduced chisquare.
    • \n
    • p_value (float):\np-value of the fit
    • \n
    • t2_p_value (float):\nHotelling t-squared p-value for correlated fits.
    • \n
    \n", "bases": "collections.abc.Sequence"}, "pyerrors.fits.Fit_result.fit_parameters": {"fullname": "pyerrors.fits.Fit_result.fit_parameters", "modulename": "pyerrors.fits", "qualname": "Fit_result.fit_parameters", "kind": "variable", "doc": "

    \n"}, "pyerrors.fits.Fit_result.gamma_method": {"fullname": "pyerrors.fits.Fit_result.gamma_method", "modulename": "pyerrors.fits", "qualname": "Fit_result.gamma_method", "kind": "function", "doc": "

    Apply the gamma method to all fit parameters

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.fits.Fit_result.gm": {"fullname": "pyerrors.fits.Fit_result.gm", "modulename": "pyerrors.fits", "qualname": "Fit_result.gm", "kind": "function", "doc": "

    Apply the gamma method to all fit parameters

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.fits.least_squares": {"fullname": "pyerrors.fits.least_squares", "modulename": "pyerrors.fits", "qualname": "least_squares", "kind": "function", "doc": "

    Performs a non-linear fit to y = func(x).\n ```

    \n\n
    Parameters
    \n\n
      \n
    • For an uncombined fit:
    • \n
    • x (list):\nlist of floats.
    • \n
    • y (list):\nlist of Obs.
    • \n
    • func (object):\nfit function, has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(a, x):\n    return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
      \n
      \n\n

      For multiple x values func can be of the form

      \n\n
      \n
      def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
      \n
      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • OR For a combined fit:
    • \n
    • x (dict):\ndict of lists.
    • \n
    • y (dict):\ndict of lists of Obs.
    • \n
    • funcs (dict):\ndict of objects\nfit functions have to be of the form (here a[0] is the common fit parameter)\n```python\nimport autograd.numpy as anp\nfuncs = {\"a\": func_a,\n \"b\": func_b}

      \n\n

      def func_a(a, x):\n return a[1] * anp.exp(-a[0] * x)

      \n\n

      def func_b(a, x):\n return a[2] * anp.exp(-a[0] * x)

      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • priors (dict or list, optional):\npriors can either be a dictionary with integer keys and the corresponding priors as values or\na list with an entry for every parameter in the fit. The entries can either be\nObs (e.g. results from a previous fit) or strings containing a value and an error formatted like\n0.548(23), 500(40) or 0.5(0.4)
    • \n
    • silent (bool, optional):\nIf true all output to the console is omitted (default False).
    • \n
    • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for\nnon-linear fits with many parameters. In case of correlated fits the guess is used to perform\nan uncorrelated fit which then serves as guess for the correlated fit.
    • \n
    • method (str, optional):\ncan be used to choose an alternative method for the minimization of chisquare.\nThe possible methods are the ones which can be used for scipy.optimize.minimize and\nmigrad of iminuit. If no method is specified, Levenberg-Marquard is used.\nReliable alternatives are migrad, Powell and Nelder-Mead.
    • \n
    • tol (float, optional):\ncan be used (only for combined fits and methods other than Levenberg-Marquard) to set the tolerance for convergence\nto a different value to either speed up convergence at the cost of a larger error on the fitted parameters (and possibly\ninvalid estimates for parameter uncertainties) or smaller values to get more accurate parameter values\nThe stopping criterion depends on the method, e.g. migrad: edm_max = 0.002 * tol * errordef (EDM criterion: edm < edm_max)
    • \n
    • correlated_fit (bool):\nIf True, use the full inverse covariance matrix in the definition of the chisquare cost function.\nFor details about how the covariance matrix is estimated see pyerrors.obs.covariance.\nIn practice the correlation matrix is Cholesky decomposed and inverted (instead of the covariance matrix).\nThis procedure should be numerically more stable as the correlation matrix is typically better conditioned (Jacobi preconditioning).
    • \n
    • inv_chol_cov_matrix [array,list], optional: array: shape = (no of y values) X (no of y values)\nlist: for an uncombined fit: [\"\"]\nfor a combined fit: list of keys belonging to the corr_matrix saved in the array, must be the same as the keys of the y dict in alphabetical order\nIf correlated_fit=True is set as well, can provide an inverse covariance matrix (y errors, dy_f included!) of your own choosing for a correlated fit.\nThe matrix must be a lower triangular matrix constructed from a Cholesky decomposition: The function invert_corr_cov_cholesky(corr, inverrdiag) can be\nused to construct it from a correlation matrix (corr) and the errors dy_f of the data points (inverrdiag = np.diag(1 / np.asarray(dy_f))). For the correct\nordering the correlation matrix (corr) can be sorted via the function sort_corr(corr, kl, yd) where kl is the list of keys and yd the y dict.
    • \n
    • expected_chisquare (bool):\nIf True estimates the expected chisquare which is\ncorrected by effects caused by correlated input data (default False).
    • \n
    • resplot (bool):\nIf True, a plot which displays fit, data and residuals is generated (default False).
    • \n
    • qqplot (bool):\nIf True, a quantile-quantile plot of the fit result is generated (default False).
    • \n
    • num_grad (bool):\nUse numerical differentation instead of automatic differentiation to perform the error propagation (default False).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • output (Fit_result):\nParameters and information on the fitted result.
    • \n
    \n\n
    Examples
    \n\n
    \n
    >>> # Example of a correlated (correlated_fit = True, inv_chol_cov_matrix handed over) combined fit, based on a randomly generated data set\n>>> import numpy as np\n>>> from scipy.stats import norm\n>>> from scipy.linalg import cholesky\n>>> import pyerrors as pe\n>>> # generating the random data set\n>>> num_samples = 400\n>>> N = 3\n>>> x = np.arange(N)\n>>> x1 = norm.rvs(size=(N, num_samples)) # generate random numbers\n>>> x2 = norm.rvs(size=(N, num_samples)) # generate random numbers\n>>> r = r1 = r2 = np.zeros((N, N))\n>>> y = {}\n>>> for i in range(N):\n>>>    for j in range(N):\n>>>        r[i, j] = np.exp(-0.8 * np.fabs(i - j)) # element in correlation matrix\n>>> errl = np.sqrt([3.4, 2.5, 3.6]) # set y errors\n>>> for i in range(N):\n>>>    for j in range(N):\n>>>        r[i, j] *= errl[i] * errl[j] # element in covariance matrix\n>>> c = cholesky(r, lower=True)\n>>> y = {'a': np.dot(c, x1), 'b': np.dot(c, x2)} # generate y data with the covariance matrix defined\n>>> # random data set has been generated, now the dictionaries and the inverse covariance matrix to be handed over are built\n>>> x_dict = {}\n>>> y_dict = {}\n>>> chol_inv_dict = {}\n>>> data = []\n>>> for key in y.keys():\n>>>    x_dict[key] = x\n>>>    for i in range(N):\n>>>        data.append(pe.Obs([[i + 1 + o for o in y[key][i]]], ['ens'])) # generate y Obs from the y data\n>>>    [o.gamma_method() for o in data]\n>>>    corr = pe.covariance(data, correlation=True)\n>>>    inverrdiag = np.diag(1 / np.asarray([o.dvalue for o in data]))\n>>>    chol_inv = pe.obs.invert_corr_cov_cholesky(corr, inverrdiag) # gives form of the inverse covariance matrix needed for the combined correlated fit below\n>>> y_dict = {'a': data[:3], 'b': data[3:]}\n>>> # common fit parameter p[0] in combined fit\n>>> def fit1(p, x):\n>>>    return p[0] + p[1] * x\n>>> def fit2(p, x):\n>>>    return p[0] + p[2] * x\n>>> fitf_dict = {'a': fit1, 'b':fit2}\n>>> fitp_inv_cov_combined_fit = pe.least_squares(x_dict,y_dict, fitf_dict, correlated_fit = True, inv_chol_cov_matrix = [chol_inv,['a','b']])\nFit with 3 parameters\nMethod: Levenberg-Marquardt\n`ftol` termination condition is satisfied.\nchisquare/d.o.f.: 0.5388013574561786 # random\nfit parameters [1.11897846 0.96361162 0.92325319] # random\n
    \n
    \n", "signature": "(x, y, func, priors=None, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.fits.total_least_squares": {"fullname": "pyerrors.fits.total_least_squares", "modulename": "pyerrors.fits", "qualname": "total_least_squares", "kind": "function", "doc": "

    Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters.

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nlist of Obs, or a tuple of lists of Obs
    • \n
    • y (list):\nlist of Obs. The dvalues of the Obs are used as x- and yerror for the fit.
    • \n
    • func (object):\nfunc has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(a, x):\n    return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
      \n
      \n\n

      For multiple x values func can be of the form

      \n\n
      \n
      def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
      \n
      \n\n

      It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

    • \n
    • silent (bool, optional):\nIf true all output to the console is omitted (default False).
    • \n
    • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for non-linear\nfits with many parameters.
    • \n
    • expected_chisquare (bool):\nIf true prints the expected chisquare which is\ncorrected by effects caused by correlated input data.\nThis can take a while as the full correlation matrix\nhas to be calculated (default False).
    • \n
    • num_grad (bool):\nUse numerical differentation instead of automatic differentiation to perform the error propagation (default False).
    • \n
    \n\n
    Notes
    \n\n

    Based on the orthogonal distance regression module of scipy.

    \n\n
    Returns
    \n\n
      \n
    • output (Fit_result):\nParameters and information on the fitted result.
    • \n
    \n", "signature": "(x, y, func, silent=False, **kwargs):", "funcdef": "def"}, "pyerrors.fits.fit_lin": {"fullname": "pyerrors.fits.fit_lin", "modulename": "pyerrors.fits", "qualname": "fit_lin", "kind": "function", "doc": "

    Performs a linear fit to y = n + m * x and returns two Obs n, m.

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nCan either be a list of floats in which case no xerror is assumed, or\na list of Obs, where the dvalues of the Obs are used as xerror for the fit.
    • \n
    • y (list):\nList of Obs, the dvalues of the Obs are used as yerror for the fit.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • fit_parameters (list[Obs]):\nLIist of fitted observables.
    • \n
    \n", "signature": "(x, y, **kwargs):", "funcdef": "def"}, "pyerrors.fits.qqplot": {"fullname": "pyerrors.fits.qqplot", "modulename": "pyerrors.fits", "qualname": "qqplot", "kind": "function", "doc": "

    Generates a quantile-quantile plot of the fit result which can be used to\n check if the residuals of the fit are gaussian distributed.

    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(x, o_y, func, p, title=''):", "funcdef": "def"}, "pyerrors.fits.residual_plot": {"fullname": "pyerrors.fits.residual_plot", "modulename": "pyerrors.fits", "qualname": "residual_plot", "kind": "function", "doc": "

    Generates a plot which compares the fit to the data and displays the corresponding residuals

    \n\n

    For uncorrelated data the residuals are expected to be distributed ~N(0,1).

    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(x, y, func, fit_res, title=''):", "funcdef": "def"}, "pyerrors.fits.error_band": {"fullname": "pyerrors.fits.error_band", "modulename": "pyerrors.fits", "qualname": "error_band", "kind": "function", "doc": "

    Calculate the error band for an array of sample values x, for given fit function func with optimized parameters beta.

    \n\n
    Returns
    \n\n
      \n
    • err (np.array(Obs)):\nError band for an array of sample values x
    • \n
    \n", "signature": "(x, func, beta):", "funcdef": "def"}, "pyerrors.fits.ks_test": {"fullname": "pyerrors.fits.ks_test", "modulename": "pyerrors.fits", "qualname": "ks_test", "kind": "function", "doc": "

    Performs a Kolmogorov\u2013Smirnov test for the p-values of all fit object.

    \n\n
    Parameters
    \n\n
      \n
    • objects (list):\nList of fit results to include in the analysis (optional).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(objects=None):", "funcdef": "def"}, "pyerrors.input": {"fullname": "pyerrors.input", "modulename": "pyerrors.input", "kind": "module", "doc": "

    pyerrors includes an input submodule in which input routines and parsers for the output of various numerical programs are contained.

    \n\n

    Jackknife samples

    \n\n

    For comparison with other analysis workflows pyerrors can also generate jackknife samples from an Obs object or import jackknife samples into an Obs object.\nSee pyerrors.obs.Obs.export_jackknife and pyerrors.obs.import_jackknife for details.

    \n"}, "pyerrors.input.bdio": {"fullname": "pyerrors.input.bdio", "modulename": "pyerrors.input.bdio", "kind": "module", "doc": "

    \n"}, "pyerrors.input.bdio.read_ADerrors": {"fullname": "pyerrors.input.bdio.read_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "read_ADerrors", "kind": "function", "doc": "

    Extract generic MCMC data from a bdio file

    \n\n

    read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path -- path to the bdio file
    • \n
    • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (List[Obs]):\nExtracted data
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.write_ADerrors": {"fullname": "pyerrors.input.bdio.write_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "write_ADerrors", "kind": "function", "doc": "

    Write Obs to a bdio file according to ADerrors conventions

    \n\n

    read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path -- path to the bdio file
    • \n
    • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • success (int):\nreturns 0 is successful
    • \n
    \n", "signature": "(obs_list, file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.read_mesons": {"fullname": "pyerrors.input.bdio.read_mesons", "modulename": "pyerrors.input.bdio", "qualname": "read_mesons", "kind": "function", "doc": "

    Extract mesons data from a bdio file and return it as a dictionary

    \n\n

    The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2)

    \n\n

    read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path (str):\npath to the bdio file
    • \n
    • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    • start (int):\nThe first configuration to be read (default 1)
    • \n
    • stop (int):\nThe last configuration to be read (default None)
    • \n
    • step (int):\nFixed step size between two measurements (default 1)
    • \n
    • alternative_ensemble_name (str):\nManually overwrite ensemble name
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (dict):\nExtracted meson data
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.bdio.read_dSdm": {"fullname": "pyerrors.input.bdio.read_dSdm", "modulename": "pyerrors.input.bdio", "qualname": "read_dSdm", "kind": "function", "doc": "

    Extract dSdm data from a bdio file and return it as a dictionary

    \n\n

    The dictionary can be accessed with a tuple consisting of (type, kappa)

    \n\n

    read_dSdm requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

    \n\n

    all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

    \n\n
    Parameters
    \n\n
      \n
    • file_path (str):\npath to the bdio file
    • \n
    • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
    • \n
    • start (int):\nThe first configuration to be read (default 1)
    • \n
    • stop (int):\nThe last configuration to be read (default None)
    • \n
    • step (int):\nFixed step size between two measurements (default 1)
    • \n
    • alternative_ensemble_name (str):\nManually overwrite ensemble name
    • \n
    \n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs):", "funcdef": "def"}, "pyerrors.input.dobs": {"fullname": "pyerrors.input.dobs", "modulename": "pyerrors.input.dobs", "kind": "module", "doc": "

    \n"}, "pyerrors.input.dobs.create_pobs_string": {"fullname": "pyerrors.input.dobs.create_pobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_pobs_string", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to an xml string\naccording to the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • xml_str (str):\nXML formatted string of the input data
    • \n
    \n", "signature": "(obsl, name, spec='', origin='', symbol=[], enstag=None):", "funcdef": "def"}, "pyerrors.input.dobs.write_pobs": {"fullname": "pyerrors.input.dobs.write_pobs", "modulename": "pyerrors.input.dobs", "qualname": "write_pobs", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
    • \n
    • gz (bool):\nIf True, the output is a gzipped xml. If False, the output is an xml file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(\tobsl,\tfname,\tname,\tspec='',\torigin='',\tsymbol=[],\tenstag=None,\tgz=True):", "funcdef": "def"}, "pyerrors.input.dobs.read_pobs": {"fullname": "pyerrors.input.dobs.read_pobs", "modulename": "pyerrors.input.dobs", "qualname": "read_pobs", "kind": "function", "doc": "

    Import a list of Obs from an xml.gz file in the Zeuthen pobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • separatior_insertion (str or int):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nNone (default): Replica names remain unchanged.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(fname, full_output=False, gz=True, separator_insertion=None):", "funcdef": "def"}, "pyerrors.input.dobs.import_dobs_string": {"fullname": "pyerrors.input.dobs.import_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "import_dobs_string", "kind": "function", "doc": "

    Import a list of Obs from a string in the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • content (str):\nXML string containing the data
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(content, full_output=False, separator_insertion=True):", "funcdef": "def"}, "pyerrors.input.dobs.read_dobs": {"fullname": "pyerrors.input.dobs.read_dobs", "modulename": "pyerrors.input.dobs", "qualname": "read_dobs", "kind": "function", "doc": "

    Import a list of Obs from an xml.gz file in the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes XML file.
    • \n
    • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (list[Obs]):\nImported data
    • \n
    • or
    • \n
    • res (dict):\nImported data and meta-data
    • \n
    \n", "signature": "(fname, full_output=False, gz=True, separator_insertion=True):", "funcdef": "def"}, "pyerrors.input.dobs.create_dobs_string": {"fullname": "pyerrors.input.dobs.create_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_dobs_string", "kind": "function", "doc": "

    Generate the string for the export of a list of Obs or structures containing Obs\nto a .xml.gz file according to the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically. The separator |is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • who (str):\nProvide the name of the person that exports the data.
    • \n
    • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • xml_str (str):\nXML string generated from the data
    • \n
    \n", "signature": "(\tobsl,\tname,\tspec='dobs v1.0',\torigin='',\tsymbol=[],\twho=None,\tenstags=None):", "funcdef": "def"}, "pyerrors.input.dobs.write_dobs": {"fullname": "pyerrors.input.dobs.write_dobs", "modulename": "pyerrors.input.dobs", "qualname": "write_dobs", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen dobs format.

    \n\n

    Tags are not written or recovered automatically. The separator | is removed from the replica names.

    \n\n
    Parameters
    \n\n
      \n
    • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • name (str):\nThe name of the observable.
    • \n
    • spec (str):\nOptional string that describes the contents of the file.
    • \n
    • origin (str):\nSpecify where the data has its origin.
    • \n
    • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
    • \n
    • who (str):\nProvide the name of the person that exports the data.
    • \n
    • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
    • \n
    • gz (bool):\nIf True, the output is a gzipped XML. If False, the output is a XML file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(\tobsl,\tfname,\tname,\tspec='dobs v1.0',\torigin='',\tsymbol=[],\twho=None,\tenstags=None,\tgz=True):", "funcdef": "def"}, "pyerrors.input.hadrons": {"fullname": "pyerrors.input.hadrons", "modulename": "pyerrors.input.hadrons", "kind": "module", "doc": "

    \n"}, "pyerrors.input.hadrons.read_hd5": {"fullname": "pyerrors.input.hadrons.read_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_hd5", "kind": "function", "doc": "

    Read hadrons hdf5 file and extract entry based on attributes.

    \n\n
    Parameters
    \n\n
      \n
    • filestem (str):\nFull namestem of the files to read, including the full path.
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • group (str):\nlabel of the group to be extracted.
    • \n
    • attrs (dict or int):\nDictionary containing the attributes. For example

      \n\n
      \n
      attrs = {"gamma_snk": "Gamma5",\n         "gamma_src": "Gamma5"}\n
      \n
      \n\n

      Alternatively an integer can be specified to identify the sub group.\nThis is discouraged as the order in the file is not guaranteed.

    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • part (str):\nstring specifying whether to extract the real part ('real'),\nthe imaginary part ('imag') or a complex correlator ('complex').\nDefault 'real'.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr (Corr):\nCorrelator of the source sink combination in question.
    • \n
    \n", "signature": "(filestem, ens_id, group, attrs=None, idl=None, part='real'):", "funcdef": "def"}, "pyerrors.input.hadrons.read_meson_hd5": {"fullname": "pyerrors.input.hadrons.read_meson_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_meson_hd5", "kind": "function", "doc": "

    Read hadrons meson hdf5 file and extract the meson labeled 'meson'

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • meson (str):\nlabel of the meson to be extracted, standard value meson_0 which\ncorresponds to the pseudoscalar pseudoscalar two-point function.
    • \n
    • gammas (tuple of strings):\nInstrad of a meson label one can also provide a tuple of two strings\nindicating the gamma matrices at sink and source (gamma_snk, gamma_src).\n(\"Gamma5\", \"Gamma5\") corresponds to the pseudoscalar pseudoscalar\ntwo-point function. The gammas argument dominateds over meson.
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr (Corr):\nCorrelator of the source sink combination in question.
    • \n
    \n", "signature": "(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None):", "funcdef": "def"}, "pyerrors.input.hadrons.extract_t0_hd5": {"fullname": "pyerrors.input.hadrons.extract_t0_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "extract_t0_hd5", "kind": "function", "doc": "

    Read hadrons FlowObservables hdf5 file and extract t0

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • obs (str):\nlabel of the observable from which t0 should be extracted.\nOptions: 'Clover energy density' and 'Plaquette energy density'
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
    • \n
    \n", "signature": "(\tpath,\tfilestem,\tens_id,\tobs='Clover energy density',\tfit_range=5,\tidl=None,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.hadrons.read_DistillationContraction_hd5": {"fullname": "pyerrors.input.hadrons.read_DistillationContraction_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_DistillationContraction_hd5", "kind": "function", "doc": "

    Read hadrons DistillationContraction hdf5 files in given directory structure

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the directories to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • diagrams (list):\nList of strings of the diagrams to extract, e.g. [\"direct\", \"box\", \"cross\"].
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (dict):\nextracted DistillationContration data
    • \n
    \n", "signature": "(path, ens_id, diagrams=['direct'], idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix": {"fullname": "pyerrors.input.hadrons.Npr_matrix", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix", "kind": "class", "doc": "

    ndarray(shape, dtype=float, buffer=None, offset=0,\n strides=None, order=None)

    \n\n

    An array object represents a multidimensional, homogeneous array\nof fixed-size items. An associated data-type object describes the\nformat of each element in the array (its byte-order, how many bytes it\noccupies in memory, whether it is an integer, a floating point number,\nor something else, etc.)

    \n\n

    Arrays should be constructed using array, zeros or empty (refer\nto the See Also section below). The parameters given here refer to\na low-level method (ndarray(...)) for instantiating an array.

    \n\n

    For more information, refer to the numpy module and examine the\nmethods and attributes of an array.

    \n\n
    Parameters
    \n\n
      \n
    • (for the __new__ method; see Notes below)
    • \n
    • shape (tuple of ints):\nShape of created array.
    • \n
    • dtype (data-type, optional):\nAny object that can be interpreted as a numpy data type.
    • \n
    • buffer (object exposing buffer interface, optional):\nUsed to fill the array with data.
    • \n
    • offset (int, optional):\nOffset of array data in buffer.
    • \n
    • strides (tuple of ints, optional):\nStrides of data in memory.
    • \n
    • order ({'C', 'F'}, optional):\nRow-major (C-style) or column-major (Fortran-style) order.
    • \n
    \n\n
    Attributes
    \n\n
      \n
    • T (ndarray):\nTranspose of the array.
    • \n
    • data (buffer):\nThe array's elements, in memory.
    • \n
    • dtype (dtype object):\nDescribes the format of the elements in the array.
    • \n
    • flags (dict):\nDictionary containing information related to memory use, e.g.,\n'C_CONTIGUOUS', 'OWNDATA', 'WRITEABLE', etc.
    • \n
    • flat (numpy.flatiter object):\nFlattened version of the array as an iterator. The iterator\nallows assignments, e.g., x.flat = 3 (See ndarray.flat for\nassignment examples; TODO).
    • \n
    • imag (ndarray):\nImaginary part of the array.
    • \n
    • real (ndarray):\nReal part of the array.
    • \n
    • size (int):\nNumber of elements in the array.
    • \n
    • itemsize (int):\nThe memory use of each array element in bytes.
    • \n
    • nbytes (int):\nThe total number of bytes required to store the array data,\ni.e., itemsize * size.
    • \n
    • ndim (int):\nThe array's number of dimensions.
    • \n
    • shape (tuple of ints):\nShape of the array.
    • \n
    • strides (tuple of ints):\nThe step-size required to move from one element to the next in\nmemory. For example, a contiguous (3, 4) array of type\nint16 in C-order has strides (8, 2). This implies that\nto move from element to element in memory requires jumps of 2 bytes.\nTo move from row-to-row, one needs to jump 8 bytes at a time\n(2 * 4).
    • \n
    • ctypes (ctypes object):\nClass containing properties of the array needed for interaction\nwith ctypes.
    • \n
    • base (ndarray):\nIf the array is a view into another array, that array is its base\n(unless that array is also a view). The base array is where the\narray data is actually stored.
    • \n
    \n\n
    See Also
    \n\n

    array: Construct an array.
    \nzeros: Create an array, each element of which is zero.
    \nempty: Create an array, but leave its allocated memory unchanged (i.e.,\nit contains \"garbage\").
    \ndtype: Create a data-type.
    \nnumpy.typing.NDArray: An ndarray alias :term:generic <generic type>\nw.r.t. its dtype.type <numpy.dtype.type>.

    \n\n
    Notes
    \n\n

    There are two modes of creating an array using __new__:

    \n\n
      \n
    1. If buffer is None, then only shape, dtype, and order\nare used.
    2. \n
    3. If buffer is an object exposing the buffer interface, then\nall keywords are interpreted.
    4. \n
    \n\n

    No __init__ method is needed because the array is fully initialized\nafter the __new__ method.

    \n\n
    Examples
    \n\n

    These examples illustrate the low-level ndarray constructor. Refer\nto the See Also section above for easier ways of constructing an\nndarray.

    \n\n

    First mode, buffer is None:

    \n\n
    \n
    >>> import numpy as np\n>>> np.ndarray(shape=(2,2), dtype=float, order='F')\narray([[0.0e+000, 0.0e+000], # random\n       [     nan, 2.5e-323]])\n
    \n
    \n\n

    Second mode:

    \n\n
    \n
    >>> np.ndarray((2,), buffer=np.array([1,2,3]),\n...            offset=np.int_().itemsize,\n...            dtype=int) # offset = 1*itemsize, i.e. skip first element\narray([2, 3])\n
    \n
    \n", "bases": "numpy.ndarray"}, "pyerrors.input.hadrons.Npr_matrix.g5H": {"fullname": "pyerrors.input.hadrons.Npr_matrix.g5H", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.g5H", "kind": "variable", "doc": "

    Gamma_5 hermitean conjugate

    \n\n

    Uses the fact that the propagator is gamma5 hermitean, so just the\nin and out momenta of the propagator are exchanged.

    \n"}, "pyerrors.input.hadrons.read_ExternalLeg_hd5": {"fullname": "pyerrors.input.hadrons.read_ExternalLeg_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_ExternalLeg_hd5", "kind": "function", "doc": "

    Read hadrons ExternalLeg hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (Npr_matrix):\nread Cobs-matrix
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.read_Bilinear_hd5": {"fullname": "pyerrors.input.hadrons.read_Bilinear_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Bilinear_hd5", "kind": "function", "doc": "

    Read hadrons Bilinear hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result_dict (dict[Npr_matrix]):\nextracted Bilinears
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None):", "funcdef": "def"}, "pyerrors.input.hadrons.read_Fourquark_hd5": {"fullname": "pyerrors.input.hadrons.read_Fourquark_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Fourquark_hd5", "kind": "function", "doc": "

    Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the files to read
    • \n
    • filestem (str):\nnamestem of the files to read
    • \n
    • ens_id (str):\nname of the ensemble, required for internal bookkeeping
    • \n
    • idl (range):\nIf specified only configurations in the given range are read in.
    • \n
    • vertices (list):\nVertex functions to be extracted.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result_dict (dict):\nextracted fourquark matrizes
    • \n
    \n", "signature": "(path, filestem, ens_id, idl=None, vertices=['VA', 'AV']):", "funcdef": "def"}, "pyerrors.input.json": {"fullname": "pyerrors.input.json", "modulename": "pyerrors.input.json", "kind": "module", "doc": "

    \n"}, "pyerrors.input.json.create_json_string": {"fullname": "pyerrors.input.json.create_json_string", "modulename": "pyerrors.input.json", "qualname": "create_json_string", "kind": "function", "doc": "

    Generate the string for the export of a list of Obs or structures containing Obs\nto a .json(.gz) file

    \n\n
    Parameters
    \n\n
      \n
    • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • json_string (str):\nString for export to .json(.gz) file
    • \n
    \n", "signature": "(ol, description='', indent=1):", "funcdef": "def"}, "pyerrors.input.json.dump_to_json": {"fullname": "pyerrors.input.json.dump_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_to_json", "kind": "function", "doc": "

    Export a list of Obs or structures containing Obs to a .json(.gz) file.\nDict keys that are not JSON-serializable such as floats are converted to strings.

    \n\n
    Parameters
    \n\n
      \n
    • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Null
    • \n
    \n", "signature": "(ol, fname, description='', indent=1, gz=True):", "funcdef": "def"}, "pyerrors.input.json.import_json_string": {"fullname": "pyerrors.input.json.import_json_string", "modulename": "pyerrors.input.json", "qualname": "import_json_string", "kind": "function", "doc": "

    Reconstruct a list of Obs or structures containing Obs from a json string.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

    \n\n
    Parameters
    \n\n
      \n
    • json_string (str):\njson string containing the data.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nreconstructed list of observables from the json string
    • \n
    • or
    • \n
    • result (Obs):\nonly one observable if the list only has one entry
    • \n
    • or
    • \n
    • result (dict):\nif full_output=True
    • \n
    \n", "signature": "(json_string, verbose=True, full_output=False):", "funcdef": "def"}, "pyerrors.input.json.load_json": {"fullname": "pyerrors.input.json.load_json", "modulename": "pyerrors.input.json", "qualname": "load_json", "kind": "function", "doc": "

    Import a list of Obs or structures containing Obs from a .json(.gz) file.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nreconstructed list of observables from the json string
    • \n
    • or
    • \n
    • result (Obs):\nonly one observable if the list only has one entry
    • \n
    • or
    • \n
    • result (dict):\nif full_output=True
    • \n
    \n", "signature": "(fname, verbose=True, gz=True, full_output=False):", "funcdef": "def"}, "pyerrors.input.json.dump_dict_to_json": {"fullname": "pyerrors.input.json.dump_dict_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_dict_to_json", "kind": "function", "doc": "

    Export a dict of Obs or structures containing Obs to a .json(.gz) file

    \n\n
    Parameters
    \n\n
      \n
    • od (dict):\nDict of JSON valid structures and objects that will be exported.\nAt the moment, these objects can be either of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • description (str):\nOptional string that describes the contents of the json file.
    • \n
    • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
    • \n
    • reps (str):\nSpecify the structure of the placeholder in exported dict to be reps[0-9]+.
    • \n
    • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(od, fname, description='', indent=1, reps='DICTOBS', gz=True):", "funcdef": "def"}, "pyerrors.input.json.load_json_dict": {"fullname": "pyerrors.input.json.load_json_dict", "modulename": "pyerrors.input.json", "qualname": "load_json_dict", "kind": "function", "doc": "

    Import a dict of Obs or structures containing Obs from a .json(.gz) file.

    \n\n

    The following structures are supported: Obs, list, numpy.ndarray, Corr

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • verbose (bool):\nPrint additional information that was written to the file.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
    • \n
    • reps (str):\nSpecify the structure of the placeholder in imported dict to be reps[0-9]+.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (Obs / list / Corr):\nRead data
    • \n
    • or
    • \n
    • data (dict):\nRead data and meta-data
    • \n
    \n", "signature": "(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS'):", "funcdef": "def"}, "pyerrors.input.misc": {"fullname": "pyerrors.input.misc", "modulename": "pyerrors.input.misc", "kind": "module", "doc": "

    \n"}, "pyerrors.input.misc.fit_t0": {"fullname": "pyerrors.input.misc.fit_t0", "modulename": "pyerrors.input.misc", "qualname": "fit_t0", "kind": "function", "doc": "

    Compute the root of (flow-based) data based on a dictionary that contains\nthe necessary information in key-value pairs a la (flow time: observable at flow time).

    \n\n

    It is assumed that the data is monotonically increasing and passes zero from below.\nNo exception is thrown if this is not the case (several roots, no monotonic increase).\nAn exception is thrown if no root can be found in the data.

    \n\n

    A linear fit in the vicinity of the root is performed to exctract the root from the\ntwo fit parameters.

    \n\n
    Parameters
    \n\n
      \n
    • t2E_dict (dict):\nDictionary with pairs of (flow time: observable at flow time) where the flow times\nare of type float and the observables of type Obs.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data. (Default: False)
    • \n
    • observable (str):\nKeyword to identify the observable to print the correct ylabel (if plot_fit is True)\nfor the observables 't0' and 'w0'. No y label is printed otherwise. (Default: 't0')
    • \n
    \n\n
    Returns
    \n\n
      \n
    • root (Obs):\nThe root of the data series.
    • \n
    \n", "signature": "(t2E_dict, fit_range, plot_fit=False, observable='t0'):", "funcdef": "def"}, "pyerrors.input.misc.read_pbp": {"fullname": "pyerrors.input.misc.read_pbp", "modulename": "pyerrors.input.misc", "qualname": "read_pbp", "kind": "function", "doc": "

    Read pbp format from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • r_start (list):\nlist which contains the first config to be read for each replicum
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nlist of observables read
    • \n
    \n", "signature": "(path, prefix, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD": {"fullname": "pyerrors.input.openQCD", "modulename": "pyerrors.input.openQCD", "kind": "module", "doc": "

    \n"}, "pyerrors.input.openQCD.read_rwms": {"fullname": "pyerrors.input.openQCD.read_rwms", "modulename": "pyerrors.input.openQCD", "qualname": "read_rwms", "kind": "function", "doc": "

    Read rwms format from given folder structure. Returns a list of length nrw

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath that contains the data files
    • \n
    • prefix (str):\nall files in path that start with prefix are considered as input files.\nMay be used together postfix to consider only special file endings.\nPrefix is ignored, if the keyword 'files' is used.
    • \n
    • version (str):\nversion of openQCD, default 2.0
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.ms1' for openQCD-files
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • print_err (bool):\nPrint additional information that is useful for debugging.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • rwms (Obs):\nReweighting factors read
    • \n
    \n", "signature": "(path, prefix, version='2.0', names=None, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.extract_t0": {"fullname": "pyerrors.input.openQCD.extract_t0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_t0", "kind": "function", "doc": "

    Extract t0/a^2 from given .ms.dat files. Returns t0 as Obs.

    \n\n

    It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t^2 - c (where c=0.3 by default)\nis fitted with a linear function\nfrom which the exact root is extracted.

    \n\n

    It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to .ms.dat files
    • \n
    • prefix (str):\nEnsemble prefix
    • \n
    • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
    • \n
    • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
    • \n
    • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • postfix (str):\nPostfix of measurement file (Default: ms)
    • \n
    • c (float):\nConstant that defines the flow scale. Default 0.3 for t_0, choose 2./3 for t_1.
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • plaquette (bool):\nIf true extract the plaquette estimate of t0 instead.
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
    • \n
    • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
    • \n
    \n\n
    Returns
    \n\n
      \n
    • t0 (Obs):\nExtracted t0
    • \n
    \n", "signature": "(\tpath,\tprefix,\tdtr_read,\txmin,\tspatial_extent,\tfit_range=5,\tpostfix='ms',\tc=0.3,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.extract_w0": {"fullname": "pyerrors.input.openQCD.extract_w0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_w0", "kind": "function", "doc": "

    Extract w0/a from given .ms.dat files. Returns w0 as Obs.

    \n\n

    It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t d(t^2)/dt - (where c=0.3 by default)\nis fitted with a linear function\nfrom which the exact root is extracted.

    \n\n

    It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to .ms.dat files
    • \n
    • prefix (str):\nEnsemble prefix
    • \n
    • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
    • \n
    • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
    • \n
    • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
    • \n
    • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
    • \n
    • postfix (str):\nPostfix of measurement file (Default: ms)
    • \n
    • c (float):\nConstant that defines the flow scale. Default 0.3 for w_0, choose 2./3 for w_1.
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
    • \n
    • plaquette (bool):\nIf true extract the plaquette estimate of w0 instead.
    • \n
    • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
    • \n
    • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
    • \n
    • plot_fit (bool):\nIf true, the fit for the extraction of w0 is shown together with the data.
    • \n
    • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
    • \n
    \n\n
    Returns
    \n\n
      \n
    • w0 (Obs):\nExtracted w0
    • \n
    \n", "signature": "(\tpath,\tprefix,\tdtr_read,\txmin,\tspatial_extent,\tfit_range=5,\tpostfix='ms',\tc=0.3,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop": {"fullname": "pyerrors.input.openQCD.read_qtop", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop", "kind": "function", "doc": "

    Read the topologial charge based on openQCD gradient flow measurements.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • version (str):\nEither openQCD or sfqcd, depending on the data.
    • \n
    • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.gfms.dat' for openQCD-files
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
    • \n
    • integer_charge (bool):\nIf True, the charge is rounded towards the nearest integer on each config.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (Obs):\nRead topological charge
    • \n
    \n", "signature": "(path, prefix, c, dtr_cnfg=1, version='openQCD', **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_gf_coupling": {"fullname": "pyerrors.input.openQCD.read_gf_coupling", "modulename": "pyerrors.input.openQCD", "qualname": "read_gf_coupling", "kind": "function", "doc": "

    Read the gradient flow coupling based on sfqcd gradient flow measurements. See 1607.06423 for details.

    \n\n

    Note: The current implementation only works for c=0.3 and T=L. The definition of the coupling in 1607.06423 requires projection to topological charge zero which is not done within this function but has to be performed in a separate step.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • r_start (list):\nlist which contains the first config to be read for each replicum.
    • \n
    • r_stop (list):\nlist which contains the last config to be read for each replicum.
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
    • \n
    • postfix (str):\npostfix of the file to read, e.g. '.gfms.dat' for openQCD-files
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for the coupling. If False, the Wilson flow is used.
    • \n
    \n", "signature": "(path, prefix, c, dtr_cnfg=1, Zeuthen_flow=True, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.qtop_projection": {"fullname": "pyerrors.input.openQCD.qtop_projection", "modulename": "pyerrors.input.openQCD", "qualname": "qtop_projection", "kind": "function", "doc": "

    Returns the projection to the topological charge sector defined by target.

    \n\n
    Parameters
    \n\n
      \n
    • path (Obs):\nTopological charge.
    • \n
    • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
    • \n
    \n\n
    Returns
    \n\n
      \n
    • reto (Obs):\nprojection to the topological charge sector defined by target
    • \n
    \n", "signature": "(qtop, target=0):", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop_sector": {"fullname": "pyerrors.input.openQCD.read_qtop_sector", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop_sector", "kind": "function", "doc": "

    Constructs reweighting factors to a specified topological sector.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath of the measurement files
    • \n
    • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat
    • \n
    • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L
    • \n
    • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
    • \n
    • dtr_cnfg (int):\n(optional) parameter that specifies the number of trajectories\nbetween two configs.\nif it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
    • \n
    • steps (int):\n(optional) Distance between two configurations in units of trajectories /\n cycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
    • \n
    • version (str):\nversion string of the openQCD (sfqcd) version used to create\nthe ensemble. Default is 2.0. May also be set to sfqcd.
    • \n
    • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
    • \n
    • r_start (list):\noffset of the first ensemble, making it easier to match\nlater on with other Obs
    • \n
    • r_stop (list):\nlast configurations that need to be read (per replicum)
    • \n
    • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • reto (Obs):\nprojection to the topological charge sector defined by target
    • \n
    \n", "signature": "(path, prefix, c, target=0, **kwargs):", "funcdef": "def"}, "pyerrors.input.openQCD.read_ms5_xsf": {"fullname": "pyerrors.input.openQCD.read_ms5_xsf", "modulename": "pyerrors.input.openQCD", "qualname": "read_ms5_xsf", "kind": "function", "doc": "

    Read data from files in the specified directory with the specified prefix and quark combination extension, and return a Corr object containing the data.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nThe directory to search for the files in.
    • \n
    • prefix (str):\nThe prefix to match the files against.
    • \n
    • qc (str):\nThe quark combination extension to match the files against.
    • \n
    • corr (str):\nThe correlator to extract data for.
    • \n
    • sep (str, optional):\nThe separator to use when parsing the replika names.
    • \n
    • **kwargs: Additional keyword arguments. The following keyword arguments are recognized:

      \n\n
        \n
      • names (List[str]): A list of names to use for the replicas.
      • \n
      • files (List[str]): A list of files to read data from.
      • \n
      • idl (List[List[int]]): A list of idls per replicum, resticting data to the idls given.
      • \n
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Corr: A complex valued Corr object containing the data read from the files. In case of boudary to bulk correlators.
    • \n
    • or
    • \n
    • CObs: A complex valued CObs object containing the data read from the files. In case of boudary to boundary correlators.
    • \n
    \n\n
    Raises
    \n\n
      \n
    • FileNotFoundError: If no files matching the specified prefix and quark combination extension are found in the specified directory.
    • \n
    • IOError: If there is an error reading a file.
    • \n
    • struct.error: If there is an error unpacking binary data.
    • \n
    \n", "signature": "(path, prefix, qc, corr, sep='r', **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas": {"fullname": "pyerrors.input.pandas", "modulename": "pyerrors.input.pandas", "kind": "module", "doc": "

    \n"}, "pyerrors.input.pandas.to_sql": {"fullname": "pyerrors.input.pandas.to_sql", "modulename": "pyerrors.input.pandas", "qualname": "to_sql", "kind": "function", "doc": "

    Write DataFrame including Obs or Corr valued columns to sqlite database.

    \n\n
    Parameters
    \n\n
      \n
    • df (pandas.DataFrame):\nDataframe to be written to the database.
    • \n
    • table_name (str):\nName of the table in the database.
    • \n
    • db (str):\nPath to the sqlite database.
    • \n
    • if exists (str):\nHow to behave if table already exists. Options 'fail', 'replace', 'append'.
    • \n
    • gz (bool):\nIf True the json strings are gzipped.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(df, table_name, db, if_exists='fail', gz=True, **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas.read_sql": {"fullname": "pyerrors.input.pandas.read_sql", "modulename": "pyerrors.input.pandas", "qualname": "read_sql", "kind": "function", "doc": "

    Execute SQL query on sqlite database and obtain DataFrame including Obs or Corr valued columns.

    \n\n
    Parameters
    \n\n
      \n
    • sql (str):\nSQL query to be executed.
    • \n
    • db (str):\nPath to the sqlite database.
    • \n
    • auto_gamma (bool):\nIf True applies the gamma_method to all imported Obs objects with the default parameters for\nthe error analysis. Default False.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (pandas.DataFrame):\nDataframe with the content of the sqlite database.
    • \n
    \n", "signature": "(sql, db, auto_gamma=False, **kwargs):", "funcdef": "def"}, "pyerrors.input.pandas.dump_df": {"fullname": "pyerrors.input.pandas.dump_df", "modulename": "pyerrors.input.pandas", "qualname": "dump_df", "kind": "function", "doc": "

    Exports a pandas DataFrame containing Obs valued columns to a (gzipped) csv file.

    \n\n

    Before making use of pandas to_csv functionality Obs objects are serialized via the standardized\njson format of pyerrors.

    \n\n
    Parameters
    \n\n
      \n
    • df (pandas.DataFrame):\nDataframe to be dumped to a file.
    • \n
    • fname (str):\nFilename of the output file.
    • \n
    • gz (bool):\nIf True, the output is a gzipped csv file. If False, the output is a csv file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(df, fname, gz=True):", "funcdef": "def"}, "pyerrors.input.pandas.load_df": {"fullname": "pyerrors.input.pandas.load_df", "modulename": "pyerrors.input.pandas", "qualname": "load_df", "kind": "function", "doc": "

    Imports a pandas DataFrame from a csv.(gz) file in which Obs objects are serialized as json strings.

    \n\n
    Parameters
    \n\n
      \n
    • fname (str):\nFilename of the input file.
    • \n
    • auto_gamma (bool):\nIf True applies the gamma_method to all imported Obs objects with the default parameters for\nthe error analysis. Default False.
    • \n
    • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • data (pandas.DataFrame):\nDataframe with the content of the sqlite database.
    • \n
    \n", "signature": "(fname, auto_gamma=False, gz=True):", "funcdef": "def"}, "pyerrors.input.sfcf": {"fullname": "pyerrors.input.sfcf", "modulename": "pyerrors.input.sfcf", "kind": "module", "doc": "

    \n"}, "pyerrors.input.sfcf.sep": {"fullname": "pyerrors.input.sfcf.sep", "modulename": "pyerrors.input.sfcf", "qualname": "sep", "kind": "variable", "doc": "

    \n", "default_value": "'/'"}, "pyerrors.input.sfcf.read_sfcf": {"fullname": "pyerrors.input.sfcf.read_sfcf", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf", "kind": "function", "doc": "

    Read sfcf files from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to the sfcf files.
    • \n
    • prefix (str):\nPrefix of the sfcf files.
    • \n
    • name (str):\nName of the correlation function to read.
    • \n
    • quarks (str):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
    • \n
    • corr_type (str):\nType of correlation function to read. Can be\n
        \n
      • 'bi' for boundary-inner
      • \n
      • 'bb' for boundary-boundary
      • \n
      • 'bib' for boundary-inner-boundary
      • \n
    • \n
    • noffset (int):\nOffset of the source (only relevant when wavefunctions are used)
    • \n
    • wf (int):\nID of wave function
    • \n
    • wf2 (int):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
    • \n
    • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • ens_name (str):\nreplaces the name of the ensemble
    • \n
    • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
    • \n
    • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
    • \n
    • replica (list):\nlist of replica to be read, default is all
    • \n
    • files (list):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
    • \n
    • check_configs (list[list[int]]):\nlist of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (list[Obs]):\nlist of Observables with length T, observable per timeslice.\nbb-type correlators have length 1.
    • \n
    \n", "signature": "(\tpath,\tprefix,\tname,\tquarks='.*',\tcorr_type='bi',\tnoffset=0,\twf=0,\twf2=0,\tversion='1.0c',\tcfg_separator='n',\tsilent=False,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.sfcf.read_sfcf_multi": {"fullname": "pyerrors.input.sfcf.read_sfcf_multi", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf_multi", "kind": "function", "doc": "

    Read sfcf files from given folder structure.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nPath to the sfcf files.
    • \n
    • prefix (str):\nPrefix of the sfcf files.
    • \n
    • name (str):\nName of the correlation function to read.
    • \n
    • quarks_list (list[str]):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
    • \n
    • corr_type_list (list[str]):\nType of correlation function to read. Can be\n
        \n
      • 'bi' for boundary-inner
      • \n
      • 'bb' for boundary-boundary
      • \n
      • 'bib' for boundary-inner-boundary
      • \n
    • \n
    • noffset_list (list[int]):\nOffset of the source (only relevant when wavefunctions are used)
    • \n
    • wf_list (int):\nID of wave function
    • \n
    • wf2_list (list[int]):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
    • \n
    • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
    • \n
    • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
    • \n
    • ens_name (str):\nreplaces the name of the ensemble
    • \n
    • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
    • \n
    • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
    • \n
    • replica (list):\nlist of replica to be read, default is all
    • \n
    • files (list[list[int]]):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
    • \n
    • check_configs (list[list[int]]):\nlist of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
    • \n
    • rep_string (str):\nSeparator of ensemble name and replicum. Example: In \"ensAr0\", \"r\" would be the separator string.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • result (dict[list[Obs]]):\ndict with one of the following properties:\nif keyed_out:\n dict[key] = list[Obs]\n where key has the form name/quarks/offset/wf/wf2\nif not keyed_out:\n dict[name][quarks][offset][wf][wf2] = list[Obs]
    • \n
    \n", "signature": "(\tpath,\tprefix,\tname_list,\tquarks_list=['.*'],\tcorr_type_list=['bi'],\tnoffset_list=[0],\twf_list=[0],\twf2_list=[0],\tversion='1.0c',\tcfg_separator='n',\tsilent=False,\tkeyed_out=False,\t**kwargs):", "funcdef": "def"}, "pyerrors.input.utils": {"fullname": "pyerrors.input.utils", "modulename": "pyerrors.input.utils", "kind": "module", "doc": "

    Utilities for the input

    \n"}, "pyerrors.input.utils.sort_names": {"fullname": "pyerrors.input.utils.sort_names", "modulename": "pyerrors.input.utils", "qualname": "sort_names", "kind": "function", "doc": "

    Sorts a list of names of replika with searches for r and id in the replikum string.\nIf this search fails, a fallback method is used,\nwhere the strings are simply compared and the first diffeing numeral is used for differentiation.

    \n\n
    Parameters
    \n\n
      \n
    • ll (list):\nlist to sort
    • \n
    \n\n
    Returns
    \n\n
      \n
    • ll (list):\nsorted list
    • \n
    \n", "signature": "(ll):", "funcdef": "def"}, "pyerrors.input.utils.check_idl": {"fullname": "pyerrors.input.utils.check_idl", "modulename": "pyerrors.input.utils", "qualname": "check_idl", "kind": "function", "doc": "

    Checks if list of configurations is contained in an idl

    \n\n
    Parameters
    \n\n
      \n
    • idl (range or list):\nidl of the current replicum
    • \n
    • che (list):\nlist of configurations to be checked against
    • \n
    \n\n
    Returns
    \n\n
      \n
    • miss_str (str):\nstring with integers of which idls are missing
    • \n
    \n", "signature": "(idl, che):", "funcdef": "def"}, "pyerrors.input.utils.check_params": {"fullname": "pyerrors.input.utils.check_params", "modulename": "pyerrors.input.utils", "qualname": "check_params", "kind": "function", "doc": "

    Check if, for sfcf, the parameter hashes at the end of the parameter files are in fact the expected one.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\nmeasurement path, same as for sfcf read method
    • \n
    • param_hash (str):\nexpected parameter hash
    • \n
    • prefix (str):\ndata prefix to find the appropriate replicum folders in path
    • \n
    • param_prefix (str):\nprefix of the parameter file. Defaults to 'parameters_'
    • \n
    \n\n
    Returns
    \n\n
      \n
    • nums (dict):\ndictionary of faulty parameter files sorted by the replica paths
    • \n
    \n", "signature": "(path, param_hash, prefix, param_prefix='parameters_'):", "funcdef": "def"}, "pyerrors.integrate": {"fullname": "pyerrors.integrate", "modulename": "pyerrors.integrate", "kind": "module", "doc": "

    \n"}, "pyerrors.integrate.quad": {"fullname": "pyerrors.integrate.quad", "modulename": "pyerrors.integrate", "qualname": "quad", "kind": "function", "doc": "

    Performs a (one-dimensional) numeric integration of f(p, x) from a to b.

    \n\n

    The integration is performed using scipy.integrate.quad().\nAll parameters that can be passed to scipy.integrate.quad may also be passed to this function.\nThe output is the same as for scipy.integrate.quad, the first element being an Obs.

    \n\n
    Parameters
    \n\n
      \n
    • func (object):\nfunction to integrate, has to be of the form

      \n\n
      \n
      import autograd.numpy as anp\n\ndef func(p, x):\n    return p[0] + p[1] * x + p[2] * anp.sinh(x)\n
      \n
      \n\n

      where x is the integration variable.

    • \n
    • p (list of floats or Obs):\nparameters of the function func.
    • \n
    • a (float or Obs):\nLower limit of integration (use -numpy.inf for -infinity).
    • \n
    • b (float or Obs):\nUpper limit of integration (use -numpy.inf for -infinity).
    • \n
    • All parameters of scipy.integrate.quad
    • \n
    \n\n
    Returns
    \n\n
      \n
    • y (Obs):\nThe integral of func from a to b.
    • \n
    • abserr (float):\nAn estimate of the absolute error in the result.
    • \n
    • infodict (dict):\nA dictionary containing additional information.\nRun scipy.integrate.quad_explain() for more information.
    • \n
    • message: A convergence message.
    • \n
    • explain: Appended only with 'cos' or 'sin' weighting and infinite\nintegration limits, it contains an explanation of the codes in\ninfodict['ierlst']
    • \n
    \n", "signature": "(func, p, a, b, **kwargs):", "funcdef": "def"}, "pyerrors.linalg": {"fullname": "pyerrors.linalg", "modulename": "pyerrors.linalg", "kind": "module", "doc": "

    \n"}, "pyerrors.linalg.matmul": {"fullname": "pyerrors.linalg.matmul", "modulename": "pyerrors.linalg", "qualname": "matmul", "kind": "function", "doc": "

    Matrix multiply all operands.

    \n\n
    Parameters
    \n\n
      \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    • This implementation is faster compared to standard multiplication via the @ operator.
    • \n
    \n", "signature": "(*operands):", "funcdef": "def"}, "pyerrors.linalg.jack_matmul": {"fullname": "pyerrors.linalg.jack_matmul", "modulename": "pyerrors.linalg", "qualname": "jack_matmul", "kind": "function", "doc": "

    Matrix multiply both operands making use of the jackknife approximation.

    \n\n
    Parameters
    \n\n
      \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    • For large matrices this is considerably faster compared to matmul.
    • \n
    \n", "signature": "(*operands):", "funcdef": "def"}, "pyerrors.linalg.einsum": {"fullname": "pyerrors.linalg.einsum", "modulename": "pyerrors.linalg", "qualname": "einsum", "kind": "function", "doc": "

    Wrapper for numpy.einsum

    \n\n
    Parameters
    \n\n
      \n
    • subscripts (str):\nSubscripts for summation (see numpy documentation for details)
    • \n
    • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
    • \n
    \n", "signature": "(subscripts, *operands):", "funcdef": "def"}, "pyerrors.linalg.inv": {"fullname": "pyerrors.linalg.inv", "modulename": "pyerrors.linalg", "qualname": "inv", "kind": "function", "doc": "

    Inverse of Obs or CObs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.cholesky": {"fullname": "pyerrors.linalg.cholesky", "modulename": "pyerrors.linalg", "qualname": "cholesky", "kind": "function", "doc": "

    Cholesky decomposition of Obs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.det": {"fullname": "pyerrors.linalg.det", "modulename": "pyerrors.linalg", "qualname": "det", "kind": "function", "doc": "

    Determinant of Obs valued matrices.

    \n", "signature": "(x):", "funcdef": "def"}, "pyerrors.linalg.eigh": {"fullname": "pyerrors.linalg.eigh", "modulename": "pyerrors.linalg", "qualname": "eigh", "kind": "function", "doc": "

    Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.eig": {"fullname": "pyerrors.linalg.eig", "modulename": "pyerrors.linalg", "qualname": "eig", "kind": "function", "doc": "

    Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.eigv": {"fullname": "pyerrors.linalg.eigv", "modulename": "pyerrors.linalg", "qualname": "eigv", "kind": "function", "doc": "

    Computes the eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.pinv": {"fullname": "pyerrors.linalg.pinv", "modulename": "pyerrors.linalg", "qualname": "pinv", "kind": "function", "doc": "

    Computes the Moore-Penrose pseudoinverse of a matrix of Obs.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.linalg.svd": {"fullname": "pyerrors.linalg.svd", "modulename": "pyerrors.linalg", "qualname": "svd", "kind": "function", "doc": "

    Computes the singular value decomposition of a matrix of Obs.

    \n", "signature": "(obs, **kwargs):", "funcdef": "def"}, "pyerrors.misc": {"fullname": "pyerrors.misc", "modulename": "pyerrors.misc", "kind": "module", "doc": "

    \n"}, "pyerrors.misc.print_config": {"fullname": "pyerrors.misc.print_config", "modulename": "pyerrors.misc", "qualname": "print_config", "kind": "function", "doc": "

    Print information about version of python, pyerrors and dependencies.

    \n", "signature": "():", "funcdef": "def"}, "pyerrors.misc.errorbar": {"fullname": "pyerrors.misc.errorbar", "modulename": "pyerrors.misc", "qualname": "errorbar", "kind": "function", "doc": "

    pyerrors wrapper for the errorbars method of matplotlib

    \n\n
    Parameters
    \n\n
      \n
    • x (list):\nA list of x-values which can be Obs.
    • \n
    • y (list):\nA list of y-values which can be Obs.
    • \n
    • axes ((matplotlib.pyplot.axes)):\nThe axes to plot on. default is plt.
    • \n
    \n", "signature": "(\tx,\ty,\taxes=<module 'matplotlib.pyplot' from '/opt/hostedtoolcache/Python/3.10.15/x64/lib/python3.10/site-packages/matplotlib/pyplot.py'>,\t**kwargs):", "funcdef": "def"}, "pyerrors.misc.dump_object": {"fullname": "pyerrors.misc.dump_object", "modulename": "pyerrors.misc", "qualname": "dump_object", "kind": "function", "doc": "

    Dump object into pickle file.

    \n\n
    Parameters
    \n\n
      \n
    • obj (object):\nobject to be saved in the pickle file
    • \n
    • name (str):\nname of the file
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n\n
    Returns
    \n\n
      \n
    • None
    • \n
    \n", "signature": "(obj, name, **kwargs):", "funcdef": "def"}, "pyerrors.misc.load_object": {"fullname": "pyerrors.misc.load_object", "modulename": "pyerrors.misc", "qualname": "load_object", "kind": "function", "doc": "

    Load object from pickle file.

    \n\n
    Parameters
    \n\n
      \n
    • path (str):\npath to the file
    • \n
    \n\n
    Returns
    \n\n
      \n
    • object (Obs):\nLoaded Object
    • \n
    \n", "signature": "(path):", "funcdef": "def"}, "pyerrors.misc.pseudo_Obs": {"fullname": "pyerrors.misc.pseudo_Obs", "modulename": "pyerrors.misc", "qualname": "pseudo_Obs", "kind": "function", "doc": "

    Generate an Obs object with given value, dvalue and name for test purposes

    \n\n
    Parameters
    \n\n
      \n
    • value (float):\ncentral value of the Obs to be generated.
    • \n
    • dvalue (float):\nerror of the Obs to be generated.
    • \n
    • name (str):\nname of the ensemble for which the Obs is to be generated.
    • \n
    • samples (int):\nnumber of samples for the Obs (default 1000).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (Obs):\nGenerated Observable
    • \n
    \n", "signature": "(value, dvalue, name, samples=1000):", "funcdef": "def"}, "pyerrors.misc.gen_correlated_data": {"fullname": "pyerrors.misc.gen_correlated_data", "modulename": "pyerrors.misc", "qualname": "gen_correlated_data", "kind": "function", "doc": "

    Generate observables with given covariance and autocorrelation times.

    \n\n
    Parameters
    \n\n
      \n
    • means (list):\nlist containing the mean value of each observable.
    • \n
    • cov (numpy.ndarray):\ncovariance matrix for the data to be generated.
    • \n
    • name (str):\nensemble name for the data to be geneated.
    • \n
    • tau (float or list):\ncan either be a real number or a list with an entry for\nevery dataset.
    • \n
    • samples (int):\nnumber of samples to be generated for each observable.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • corr_obs (list[Obs]):\nGenerated observable list
    • \n
    \n", "signature": "(means, cov, name, tau=0.5, samples=1000):", "funcdef": "def"}, "pyerrors.mpm": {"fullname": "pyerrors.mpm", "modulename": "pyerrors.mpm", "kind": "module", "doc": "

    \n"}, "pyerrors.mpm.matrix_pencil_method": {"fullname": "pyerrors.mpm.matrix_pencil_method", "modulename": "pyerrors.mpm", "qualname": "matrix_pencil_method", "kind": "function", "doc": "

    Matrix pencil method to extract k energy levels from data

    \n\n

    Implementation of the matrix pencil method based on\neq. (2.17) of Y. Hua, T. K. Sarkar, IEEE Trans. Acoust. 38, 814-824 (1990)

    \n\n
    Parameters
    \n\n
      \n
    • data (list):\ncan be a list of Obs for the analysis of a single correlator, or a list of lists\nof Obs if several correlators are to analyzed at once.
    • \n
    • k (int):\nNumber of states to extract (default 1).
    • \n
    • p (int):\nmatrix pencil parameter which filters noise. The optimal value is expected between\nlen(data)/3 and 2*len(data)/3. The computation is more expensive the closer p is\nto len(data)/2 but could possibly suppress more noise (default len(data)//2).
    • \n
    \n\n
    Returns
    \n\n
      \n
    • energy_levels (list[Obs]):\nExtracted energy levels
    • \n
    \n", "signature": "(corrs, k=1, p=None, **kwargs):", "funcdef": "def"}, "pyerrors.obs": {"fullname": "pyerrors.obs", "modulename": "pyerrors.obs", "kind": "module", "doc": "

    \n"}, "pyerrors.obs.Obs": {"fullname": "pyerrors.obs.Obs", "modulename": "pyerrors.obs", "qualname": "Obs", "kind": "class", "doc": "

    Class for a general observable.

    \n\n

    Instances of Obs are the basic objects of a pyerrors error analysis.\nThey are initialized with a list which contains arrays of samples for\ndifferent ensembles/replica and another list of same length which contains\nthe names of the ensembles/replica. Mathematical operations can be\nperformed on instances. The result is another instance of Obs. The error of\nan instance can be computed with the gamma_method. Also contains additional\nmethods for output and visualization of the error calculation.

    \n\n
    Attributes
    \n\n
      \n
    • S_global (float):\nStandard value for S (default 2.0)
    • \n
    • S_dict (dict):\nDictionary for S values. If an entry for a given ensemble\nexists this overwrites the standard value for that ensemble.
    • \n
    • tau_exp_global (float):\nStandard value for tau_exp (default 0.0)
    • \n
    • tau_exp_dict (dict):\nDictionary for tau_exp values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
    • \n
    • N_sigma_global (float):\nStandard value for N_sigma (default 1.0)
    • \n
    • N_sigma_dict (dict):\nDictionary for N_sigma values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
    • \n
    \n"}, "pyerrors.obs.Obs.__init__": {"fullname": "pyerrors.obs.Obs.__init__", "modulename": "pyerrors.obs", "qualname": "Obs.__init__", "kind": "function", "doc": "

    Initialize Obs object.

    \n\n
    Parameters
    \n\n
      \n
    • samples (list):\nlist of numpy arrays containing the Monte Carlo samples
    • \n
    • names (list):\nlist of strings labeling the individual samples
    • \n
    • idl (list, optional):\nlist of ranges or lists on which the samples are defined
    • \n
    \n", "signature": "(samples, names, idl=None, **kwargs)"}, "pyerrors.obs.Obs.S_global": {"fullname": "pyerrors.obs.Obs.S_global", "modulename": "pyerrors.obs", "qualname": "Obs.S_global", "kind": "variable", "doc": "

    \n", "default_value": "2.0"}, "pyerrors.obs.Obs.S_dict": {"fullname": "pyerrors.obs.Obs.S_dict", "modulename": "pyerrors.obs", "qualname": "Obs.S_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.tau_exp_global": {"fullname": "pyerrors.obs.Obs.tau_exp_global", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_global", "kind": "variable", "doc": "

    \n", "default_value": "0.0"}, "pyerrors.obs.Obs.tau_exp_dict": {"fullname": "pyerrors.obs.Obs.tau_exp_dict", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.N_sigma_global": {"fullname": "pyerrors.obs.Obs.N_sigma_global", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_global", "kind": "variable", "doc": "

    \n", "default_value": "1.0"}, "pyerrors.obs.Obs.N_sigma_dict": {"fullname": "pyerrors.obs.Obs.N_sigma_dict", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_dict", "kind": "variable", "doc": "

    \n", "default_value": "{}"}, "pyerrors.obs.Obs.names": {"fullname": "pyerrors.obs.Obs.names", "modulename": "pyerrors.obs", "qualname": "Obs.names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.shape": {"fullname": "pyerrors.obs.Obs.shape", "modulename": "pyerrors.obs", "qualname": "Obs.shape", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.r_values": {"fullname": "pyerrors.obs.Obs.r_values", "modulename": "pyerrors.obs", "qualname": "Obs.r_values", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.deltas": {"fullname": "pyerrors.obs.Obs.deltas", "modulename": "pyerrors.obs", "qualname": "Obs.deltas", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.N": {"fullname": "pyerrors.obs.Obs.N", "modulename": "pyerrors.obs", "qualname": "Obs.N", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.idl": {"fullname": "pyerrors.obs.Obs.idl", "modulename": "pyerrors.obs", "qualname": "Obs.idl", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.ddvalue": {"fullname": "pyerrors.obs.Obs.ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.ddvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.reweighted": {"fullname": "pyerrors.obs.Obs.reweighted", "modulename": "pyerrors.obs", "qualname": "Obs.reweighted", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.tag": {"fullname": "pyerrors.obs.Obs.tag", "modulename": "pyerrors.obs", "qualname": "Obs.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.value": {"fullname": "pyerrors.obs.Obs.value", "modulename": "pyerrors.obs", "qualname": "Obs.value", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.dvalue": {"fullname": "pyerrors.obs.Obs.dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.dvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_names": {"fullname": "pyerrors.obs.Obs.e_names", "modulename": "pyerrors.obs", "qualname": "Obs.e_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.cov_names": {"fullname": "pyerrors.obs.Obs.cov_names", "modulename": "pyerrors.obs", "qualname": "Obs.cov_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.mc_names": {"fullname": "pyerrors.obs.Obs.mc_names", "modulename": "pyerrors.obs", "qualname": "Obs.mc_names", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_content": {"fullname": "pyerrors.obs.Obs.e_content", "modulename": "pyerrors.obs", "qualname": "Obs.e_content", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.covobs": {"fullname": "pyerrors.obs.Obs.covobs", "modulename": "pyerrors.obs", "qualname": "Obs.covobs", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.gamma_method": {"fullname": "pyerrors.obs.Obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "Obs.gamma_method", "kind": "function", "doc": "

    Estimate the error and related properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
    • \n
    • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
    • \n
    • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
    • \n
    • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
    • \n
    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.gm": {"fullname": "pyerrors.obs.Obs.gm", "modulename": "pyerrors.obs", "qualname": "Obs.gm", "kind": "function", "doc": "

    Estimate the error and related properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
    • \n
    • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
    • \n
    • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
    • \n
    • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
    • \n
    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.details": {"fullname": "pyerrors.obs.Obs.details", "modulename": "pyerrors.obs", "qualname": "Obs.details", "kind": "function", "doc": "

    Output detailed properties of the Obs.

    \n\n
    Parameters
    \n\n
      \n
    • ens_content (bool):\nprint details about the ensembles and replica if true.
    • \n
    \n", "signature": "(self, ens_content=True):", "funcdef": "def"}, "pyerrors.obs.Obs.reweight": {"fullname": "pyerrors.obs.Obs.reweight", "modulename": "pyerrors.obs", "qualname": "Obs.reweight", "kind": "function", "doc": "

    Reweight the obs with given rewighting factors.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl. Default False.
    • \n
    \n", "signature": "(self, weight):", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero_within_error": {"fullname": "pyerrors.obs.Obs.is_zero_within_error", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero_within_error", "kind": "function", "doc": "

    Checks whether the observable is zero within 'sigma' standard errors.

    \n\n
    Parameters
    \n\n
      \n
    • sigma (int):\nNumber of standard errors used for the check.
    • \n
    • Works only properly when the gamma method was run.
    • \n
    \n", "signature": "(self, sigma=1):", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero": {"fullname": "pyerrors.obs.Obs.is_zero", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero", "kind": "function", "doc": "

    Checks whether the observable is zero within a given tolerance.

    \n\n
    Parameters
    \n\n
      \n
    • atol (float):\nAbsolute tolerance (for details see numpy documentation).
    • \n
    \n", "signature": "(self, atol=1e-10):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_tauint": {"fullname": "pyerrors.obs.Obs.plot_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.plot_tauint", "kind": "function", "doc": "

    Plot integrated autocorrelation time for each ensemble.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rho": {"fullname": "pyerrors.obs.Obs.plot_rho", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rho", "kind": "function", "doc": "

    Plot normalized autocorrelation function time for each ensemble.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rep_dist": {"fullname": "pyerrors.obs.Obs.plot_rep_dist", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rep_dist", "kind": "function", "doc": "

    Plot replica distribution for each ensemble with more than one replicum.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_history": {"fullname": "pyerrors.obs.Obs.plot_history", "modulename": "pyerrors.obs", "qualname": "Obs.plot_history", "kind": "function", "doc": "

    Plot derived Monte Carlo history for each ensemble

    \n\n
    Parameters
    \n\n
      \n
    • expand (bool):\nshow expanded history for irregular Monte Carlo chains (default: True).
    • \n
    \n", "signature": "(self, expand=True):", "funcdef": "def"}, "pyerrors.obs.Obs.plot_piechart": {"fullname": "pyerrors.obs.Obs.plot_piechart", "modulename": "pyerrors.obs", "qualname": "Obs.plot_piechart", "kind": "function", "doc": "

    Plot piechart which shows the fractional contribution of each\nensemble to the error and returns a dictionary containing the fractions.

    \n\n
    Parameters
    \n\n
      \n
    • save (str):\nsaves the figure to a file named 'save' if.
    • \n
    \n", "signature": "(self, save=None):", "funcdef": "def"}, "pyerrors.obs.Obs.dump": {"fullname": "pyerrors.obs.Obs.dump", "modulename": "pyerrors.obs", "qualname": "Obs.dump", "kind": "function", "doc": "

    Dump the Obs to a file 'name' of chosen format.

    \n\n
    Parameters
    \n\n
      \n
    • filename (str):\nname of the file to be saved.
    • \n
    • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
    • \n
    • description (str):\nDescription for output file, only relevant for json.gz format.
    • \n
    • path (str):\nspecifies a custom path for the file (default '.')
    • \n
    \n", "signature": "(self, filename, datatype='json.gz', description='', **kwargs):", "funcdef": "def"}, "pyerrors.obs.Obs.export_jackknife": {"fullname": "pyerrors.obs.Obs.export_jackknife", "modulename": "pyerrors.obs", "qualname": "Obs.export_jackknife", "kind": "function", "doc": "

    Export jackknife samples from the Obs

    \n\n
    Returns
    \n\n
      \n
    • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N jackknife samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived jackknife samples\nshould agree with samples from a full jackknife analysis up to O(1/N).
    • \n
    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.export_bootstrap": {"fullname": "pyerrors.obs.Obs.export_bootstrap", "modulename": "pyerrors.obs", "qualname": "Obs.export_bootstrap", "kind": "function", "doc": "

    Export bootstrap samples from the Obs

    \n\n
    Parameters
    \n\n
      \n
    • samples (int):\nNumber of bootstrap samples to generate.
    • \n
    • random_numbers (np.ndarray):\nArray of shape (samples, length) containing the random numbers to generate the bootstrap samples.\nIf not provided the bootstrap samples are generated bashed on the md5 hash of the enesmble name.
    • \n
    • save_rng (str):\nSave the random numbers to a file if a path is specified.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N import_bootstrap samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived bootstrap samples\nshould agree with samples from a full bootstrap analysis up to O(1/N).
    • \n
    \n", "signature": "(self, samples=500, random_numbers=None, save_rng=None):", "funcdef": "def"}, "pyerrors.obs.Obs.sqrt": {"fullname": "pyerrors.obs.Obs.sqrt", "modulename": "pyerrors.obs", "qualname": "Obs.sqrt", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.log": {"fullname": "pyerrors.obs.Obs.log", "modulename": "pyerrors.obs", "qualname": "Obs.log", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.exp": {"fullname": "pyerrors.obs.Obs.exp", "modulename": "pyerrors.obs", "qualname": "Obs.exp", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.sin": {"fullname": "pyerrors.obs.Obs.sin", "modulename": "pyerrors.obs", "qualname": "Obs.sin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.cos": {"fullname": "pyerrors.obs.Obs.cos", "modulename": "pyerrors.obs", "qualname": "Obs.cos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.tan": {"fullname": "pyerrors.obs.Obs.tan", "modulename": "pyerrors.obs", "qualname": "Obs.tan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arcsin": {"fullname": "pyerrors.obs.Obs.arcsin", "modulename": "pyerrors.obs", "qualname": "Obs.arcsin", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arccos": {"fullname": "pyerrors.obs.Obs.arccos", "modulename": "pyerrors.obs", "qualname": "Obs.arccos", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arctan": {"fullname": "pyerrors.obs.Obs.arctan", "modulename": "pyerrors.obs", "qualname": "Obs.arctan", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.sinh": {"fullname": "pyerrors.obs.Obs.sinh", "modulename": "pyerrors.obs", "qualname": "Obs.sinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.cosh": {"fullname": "pyerrors.obs.Obs.cosh", "modulename": "pyerrors.obs", "qualname": "Obs.cosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.tanh": {"fullname": "pyerrors.obs.Obs.tanh", "modulename": "pyerrors.obs", "qualname": "Obs.tanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arcsinh": {"fullname": "pyerrors.obs.Obs.arcsinh", "modulename": "pyerrors.obs", "qualname": "Obs.arcsinh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arccosh": {"fullname": "pyerrors.obs.Obs.arccosh", "modulename": "pyerrors.obs", "qualname": "Obs.arccosh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.arctanh": {"fullname": "pyerrors.obs.Obs.arctanh", "modulename": "pyerrors.obs", "qualname": "Obs.arctanh", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.Obs.N_sigma": {"fullname": "pyerrors.obs.Obs.N_sigma", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.S": {"fullname": "pyerrors.obs.Obs.S", "modulename": "pyerrors.obs", "qualname": "Obs.S", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_ddvalue": {"fullname": "pyerrors.obs.Obs.e_ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_ddvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_drho": {"fullname": "pyerrors.obs.Obs.e_drho", "modulename": "pyerrors.obs", "qualname": "Obs.e_drho", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_dtauint": {"fullname": "pyerrors.obs.Obs.e_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_dtauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_dvalue": {"fullname": "pyerrors.obs.Obs.e_dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_dvalue", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_n_dtauint": {"fullname": "pyerrors.obs.Obs.e_n_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_dtauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_n_tauint": {"fullname": "pyerrors.obs.Obs.e_n_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_tauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_rho": {"fullname": "pyerrors.obs.Obs.e_rho", "modulename": "pyerrors.obs", "qualname": "Obs.e_rho", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_tauint": {"fullname": "pyerrors.obs.Obs.e_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_tauint", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.e_windowsize": {"fullname": "pyerrors.obs.Obs.e_windowsize", "modulename": "pyerrors.obs", "qualname": "Obs.e_windowsize", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.Obs.tau_exp": {"fullname": "pyerrors.obs.Obs.tau_exp", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs": {"fullname": "pyerrors.obs.CObs", "modulename": "pyerrors.obs", "qualname": "CObs", "kind": "class", "doc": "

    Class for a complex valued observable.

    \n"}, "pyerrors.obs.CObs.__init__": {"fullname": "pyerrors.obs.CObs.__init__", "modulename": "pyerrors.obs", "qualname": "CObs.__init__", "kind": "function", "doc": "

    \n", "signature": "(real, imag=0.0)"}, "pyerrors.obs.CObs.tag": {"fullname": "pyerrors.obs.CObs.tag", "modulename": "pyerrors.obs", "qualname": "CObs.tag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.real": {"fullname": "pyerrors.obs.CObs.real", "modulename": "pyerrors.obs", "qualname": "CObs.real", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.imag": {"fullname": "pyerrors.obs.CObs.imag", "modulename": "pyerrors.obs", "qualname": "CObs.imag", "kind": "variable", "doc": "

    \n"}, "pyerrors.obs.CObs.gamma_method": {"fullname": "pyerrors.obs.CObs.gamma_method", "modulename": "pyerrors.obs", "qualname": "CObs.gamma_method", "kind": "function", "doc": "

    Executes the gamma_method for the real and the imaginary part.

    \n", "signature": "(self, **kwargs):", "funcdef": "def"}, "pyerrors.obs.CObs.is_zero": {"fullname": "pyerrors.obs.CObs.is_zero", "modulename": "pyerrors.obs", "qualname": "CObs.is_zero", "kind": "function", "doc": "

    Checks whether both real and imaginary part are zero within machine precision.

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.CObs.conjugate": {"fullname": "pyerrors.obs.CObs.conjugate", "modulename": "pyerrors.obs", "qualname": "CObs.conjugate", "kind": "function", "doc": "

    \n", "signature": "(self):", "funcdef": "def"}, "pyerrors.obs.gamma_method": {"fullname": "pyerrors.obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "gamma_method", "kind": "function", "doc": "

    Vectorized version of the gamma_method applicable to lists or arrays of Obs.

    \n\n

    See docstring of pe.Obs.gamma_method for details.

    \n", "signature": "(x, **kwargs):", "funcdef": "def"}, "pyerrors.obs.gm": {"fullname": "pyerrors.obs.gm", "modulename": "pyerrors.obs", "qualname": "gm", "kind": "function", "doc": "

    Vectorized version of the gamma_method applicable to lists or arrays of Obs.

    \n\n

    See docstring of pe.Obs.gamma_method for details.

    \n", "signature": "(x, **kwargs):", "funcdef": "def"}, "pyerrors.obs.derived_observable": {"fullname": "pyerrors.obs.derived_observable", "modulename": "pyerrors.obs", "qualname": "derived_observable", "kind": "function", "doc": "

    Construct a derived Obs according to func(data, **kwargs) using automatic differentiation.

    \n\n
    Parameters
    \n\n
      \n
    • func (object):\narbitrary function of the form func(data, **kwargs). For the\nautomatic differentiation to work, all numpy functions have to have\nthe autograd wrapper (use 'import autograd.numpy as anp').
    • \n
    • data (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
    • \n
    • num_grad (bool):\nif True, numerical derivatives are used instead of autograd\n(default False). To control the numerical differentiation the\nkwargs of numdifftools.step_generators.MaxStepGenerator\ncan be used.
    • \n
    • man_grad (list):\nmanually supply a list or an array which contains the jacobian\nof func. Use cautiously, supplying the wrong derivative will\nnot be intercepted.
    • \n
    \n\n
    Notes
    \n\n

    For simple mathematical operations it can be practical to use anonymous\nfunctions. For the ratio of two observables one can e.g. use

    \n\n

    new_obs = derived_observable(lambda x: x[0] / x[1], [obs1, obs2])

    \n", "signature": "(func, data, array_mode=False, **kwargs):", "funcdef": "def"}, "pyerrors.obs.reweight": {"fullname": "pyerrors.obs.reweight", "modulename": "pyerrors.obs", "qualname": "reweight", "kind": "function", "doc": "

    Reweight a list of observables.

    \n\n
    Parameters
    \n\n
      \n
    • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
    • \n
    • obs (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
    • \n
    • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl. Default False.
    • \n
    \n", "signature": "(weight, obs, **kwargs):", "funcdef": "def"}, "pyerrors.obs.correlate": {"fullname": "pyerrors.obs.correlate", "modulename": "pyerrors.obs", "qualname": "correlate", "kind": "function", "doc": "

    Correlate two observables.

    \n\n
    Parameters
    \n\n
      \n
    • obs_a (Obs):\nFirst observable
    • \n
    • obs_b (Obs):\nSecond observable
    • \n
    \n\n
    Notes
    \n\n

    Keep in mind to only correlate primary observables which have not been reweighted\nyet. The reweighting has to be applied after correlating the observables.\nCurrently only works if ensembles are identical (this is not strictly necessary).

    \n", "signature": "(obs_a, obs_b):", "funcdef": "def"}, "pyerrors.obs.covariance": {"fullname": "pyerrors.obs.covariance", "modulename": "pyerrors.obs", "qualname": "covariance", "kind": "function", "doc": "

    Calculates the error covariance matrix of a set of observables.

    \n\n

    WARNING: This function should be used with care, especially for observables with support on multiple\n ensembles with differing autocorrelations. See the notes below for details.

    \n\n

    The gamma method has to be applied first to all observables.

    \n\n
    Parameters
    \n\n
      \n
    • obs (list or numpy.ndarray):\nList or one dimensional array of Obs
    • \n
    • visualize (bool):\nIf True plots the corresponding normalized correlation matrix (default False).
    • \n
    • correlation (bool):\nIf True the correlation matrix instead of the error covariance matrix is returned (default False).
    • \n
    • smooth (None or int):\nIf smooth is an integer 'E' between 2 and the dimension of the matrix minus 1 the eigenvalue\nsmoothing procedure of hep-lat/9412087 is applied to the correlation matrix which leaves the\nlargest E eigenvalues essentially unchanged and smoothes the smaller eigenvalues to avoid extremely\nsmall ones.
    • \n
    \n\n
    Notes
    \n\n

    The error covariance is defined such that it agrees with the squared standard error for two identical observables\n$$\\operatorname{cov}(a,a)=\\sum_{s=1}^N\\delta_a^s\\delta_a^s/N^2=\\Gamma_{aa}(0)/N=\\operatorname{var}(a)/N=\\sigma_a^2$$\nin the absence of autocorrelation.\nThe error covariance is estimated by calculating the correlation matrix assuming no autocorrelation and then rescaling the correlation matrix by the full errors including the previous gamma method estimate for the autocorrelation of the observables. The covariance at windowsize 0 is guaranteed to be positive semi-definite\n$$\\sum_{i,j}v_i\\Gamma_{ij}(0)v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i,j}v_i\\delta_i^s\\delta_j^s v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i}|v_i\\delta_i^s|^2\\geq 0\\,,$$ for every $v\\in\\mathbb{R}^M$, while such an identity does not hold for larger windows/lags.\nFor observables defined on a single ensemble our approximation is equivalent to assuming that the integrated autocorrelation time of an off-diagonal element is equal to the geometric mean of the integrated autocorrelation times of the corresponding diagonal elements.\n$$\\tau_{\\mathrm{int}, ij}=\\sqrt{\\tau_{\\mathrm{int}, i}\\times \\tau_{\\mathrm{int}, j}}$$\nThis construction ensures that the estimated covariance matrix is positive semi-definite (up to numerical rounding errors).

    \n", "signature": "(obs, visualize=False, correlation=False, smooth=None, **kwargs):", "funcdef": "def"}, "pyerrors.obs.invert_corr_cov_cholesky": {"fullname": "pyerrors.obs.invert_corr_cov_cholesky", "modulename": "pyerrors.obs", "qualname": "invert_corr_cov_cholesky", "kind": "function", "doc": "

    Constructs a lower triangular matrix chol via the Cholesky decomposition of the correlation matrix corr\n and then returns the inverse covariance matrix chol_inv as a lower triangular matrix by solving chol * x = inverrdiag.

    \n\n
    Parameters
    \n\n
      \n
    • corr (np.ndarray):\ncorrelation matrix
    • \n
    • inverrdiag (np.ndarray):\ndiagonal matrix, the entries are the inverse errors of the data points considered
    • \n
    \n", "signature": "(corr, inverrdiag):", "funcdef": "def"}, "pyerrors.obs.sort_corr": {"fullname": "pyerrors.obs.sort_corr", "modulename": "pyerrors.obs", "qualname": "sort_corr", "kind": "function", "doc": "

    Reorders a correlation matrix to match the alphabetical order of its underlying y data.

    \n\n

    The ordering of the input correlation matrix corr is given by the list of keys kl.\nThe input dictionary yd (with the same keys kl) must contain the corresponding y data\nthat the correlation matrix is based on.\nThis function sorts the list of keys kl alphabetically and sorts the matrix corr\naccording to this alphabetical order such that the sorted matrix corr_sorted corresponds\nto the y data yd when arranged in an alphabetical order by its keys.

    \n\n
    Parameters
    \n\n
      \n
    • corr (np.ndarray):\nA square correlation matrix constructed using the order of the y data specified by kl.\nThe dimensions of corr should match the total number of y data points in yd combined.
    • \n
    • kl (list of str):\nA list of keys that denotes the order in which the y data from yd was used to build the\ninput correlation matrix corr.
    • \n
    • yd (dict of list):\nA dictionary where each key corresponds to a unique identifier, and its value is a list of\ny data points. The total number of y data points across all keys must match the dimensions\nof corr. The lists in the dictionary can be lists of Obs.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • np.ndarray: A new, sorted correlation matrix that corresponds to the y data from yd when arranged alphabetically by its keys.
    • \n
    \n\n
    Example
    \n\n
    \n
    >>> import numpy as np\n>>> import pyerrors as pe\n>>> corr = np.array([[1, 0.2, 0.3], [0.2, 1, 0.4], [0.3, 0.4, 1]])\n>>> kl = ['b', 'a']\n>>> yd = {'a': [1, 2], 'b': [3]}\n>>> sorted_corr = pe.obs.sort_corr(corr, kl, yd)\n>>> print(sorted_corr)\narray([[1. , 0.3, 0.4],\n       [0.3, 1. , 0.2],\n       [0.4, 0.2, 1. ]])\n
    \n
    \n", "signature": "(corr, kl, yd):", "funcdef": "def"}, "pyerrors.obs.import_jackknife": {"fullname": "pyerrors.obs.import_jackknife", "modulename": "pyerrors.obs", "qualname": "import_jackknife", "kind": "function", "doc": "

    Imports jackknife samples and returns an Obs

    \n\n
    Parameters
    \n\n
      \n
    • jacks (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N jackknife samples as first to Nth entry.
    • \n
    • name (str):\nname of the ensemble the samples are defined on.
    • \n
    \n", "signature": "(jacks, name, idl=None):", "funcdef": "def"}, "pyerrors.obs.import_bootstrap": {"fullname": "pyerrors.obs.import_bootstrap", "modulename": "pyerrors.obs", "qualname": "import_bootstrap", "kind": "function", "doc": "

    Imports bootstrap samples and returns an Obs

    \n\n
    Parameters
    \n\n
      \n
    • boots (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N bootstrap samples as first to Nth entry.
    • \n
    • name (str):\nname of the ensemble the samples are defined on.
    • \n
    • random_numbers (np.ndarray):\nArray of shape (samples, length) containing the random numbers to generate the bootstrap samples,\nwhere samples is the number of bootstrap samples and length is the length of the original Monte Carlo\nchain to be reconstructed.
    • \n
    \n", "signature": "(boots, name, random_numbers):", "funcdef": "def"}, "pyerrors.obs.merge_obs": {"fullname": "pyerrors.obs.merge_obs", "modulename": "pyerrors.obs", "qualname": "merge_obs", "kind": "function", "doc": "

    Combine all observables in list_of_obs into one new observable

    \n\n
    Parameters
    \n\n
      \n
    • list_of_obs (list):\nlist of the Obs object to be combined
    • \n
    \n\n
    Notes
    \n\n

    It is not possible to combine obs which are based on the same replicum

    \n", "signature": "(list_of_obs):", "funcdef": "def"}, "pyerrors.obs.cov_Obs": {"fullname": "pyerrors.obs.cov_Obs", "modulename": "pyerrors.obs", "qualname": "cov_Obs", "kind": "function", "doc": "

    Create an Obs based on mean(s) and a covariance matrix

    \n\n
    Parameters
    \n\n
      \n
    • mean (list of floats or float):\nN mean value(s) of the new Obs
    • \n
    • cov (list or array):\n2d (NxN) Covariance matrix, 1d diagonal entries or 0d covariance
    • \n
    • name (str):\nidentifier for the covariance matrix
    • \n
    • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
    • \n
    \n", "signature": "(means, cov, name, grad=None):", "funcdef": "def"}, "pyerrors.roots": {"fullname": "pyerrors.roots", "modulename": "pyerrors.roots", "kind": "module", "doc": "

    \n"}, "pyerrors.roots.find_root": {"fullname": "pyerrors.roots.find_root", "modulename": "pyerrors.roots", "qualname": "find_root", "kind": "function", "doc": "

    Finds the root of the function func(x, d) where d is an Obs.

    \n\n
    Parameters
    \n\n
      \n
    • d (Obs):\nObs passed to the function.
    • \n
    • func (object):\nFunction to be minimized. Any numpy functions have to use the autograd.numpy wrapper.\nExample:

      \n\n
      \n
      import autograd.numpy as anp\ndef root_func(x, d):\n    return anp.exp(-x ** 2) - d\n
      \n
    • \n
    • guess (float):\nInitial guess for the minimization.

    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (Obs):\nObs valued root of the function.
    • \n
    \n", "signature": "(d, func, guess=1.0, **kwargs):", "funcdef": "def"}, "pyerrors.special": {"fullname": "pyerrors.special", "modulename": "pyerrors.special", "kind": "module", "doc": "

    \n"}, "pyerrors.special.beta": {"fullname": "pyerrors.special.beta", "modulename": "pyerrors.special", "qualname": "beta", "kind": "function", "doc": "

    beta(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    beta(a, b, out=None)

    \n\n

    Beta function.

    \n\n

    This function is defined in 1 as

    \n\n

    $$B(a, b) = \\int_0^1 t^{a-1}(1-t)^{b-1}dt\n = \\frac{\\Gamma(a)\\Gamma(b)}{\\Gamma(a+b)},$$

    \n\n

    where \\( \\Gamma \\) is the gamma function.

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nReal-valued arguments
    • \n
    • out (ndarray, optional):\nOptional output array for the function result
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the beta function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \nbetainc: the regularized incomplete beta function
    \nbetaln: the natural logarithm of the absolute\nvalue of the beta function

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    The beta function relates to the gamma function by the\ndefinition given above:

    \n\n
    \n
    >>> sc.beta(2, 3)\n0.08333333333333333\n>>> sc.gamma(2)*sc.gamma(3)/sc.gamma(2 + 3)\n0.08333333333333333\n
    \n
    \n\n

    As this relationship demonstrates, the beta function\nis symmetric:

    \n\n
    \n
    >>> sc.beta(1.7, 2.4)\n0.16567527689031739\n>>> sc.beta(2.4, 1.7)\n0.16567527689031739\n
    \n
    \n\n

    This function satisfies \\( B(1, b) = 1/b \\):

    \n\n
    \n
    >>> sc.beta(1, 4)\n0.25\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions,\nEq. 5.12.1. https://dlmf.nist.gov/5.12 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.betainc": {"fullname": "pyerrors.special.betainc", "modulename": "pyerrors.special", "qualname": "betainc", "kind": "function", "doc": "

    betainc(x1, x2, x3, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    betainc(a, b, x, out=None)

    \n\n

    Regularized incomplete beta function.

    \n\n

    Computes the regularized incomplete beta function, defined as 1:

    \n\n

    $$I_x(a, b) = \\frac{\\Gamma(a+b)}{\\Gamma(a)\\Gamma(b)} \\int_0^x\nt^{a-1}(1-t)^{b-1}dt,$$

    \n\n

    for \\( 0 \\leq x \\leq 1 \\).

    \n\n

    This function is the cumulative distribution function for the beta\ndistribution; its range is [0, 1].

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nPositive, real-valued parameters
    • \n
    • x (array_like):\nReal-valued such that \\( 0 \\leq x \\leq 1 \\),\nthe upper limit of integration
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the regularized incomplete beta function
    • \n
    \n\n
    See Also
    \n\n

    beta: beta function
    \nbetaincinv: inverse of the regularized incomplete beta function
    \nbetaincc: complement of the regularized incomplete beta function
    \nscipy.stats.beta: beta distribution

    \n\n
    Notes
    \n\n

    The term regularized in the name of this function refers to the\nscaling of the function by the gamma function terms shown in the\nformula. When not qualified as regularized, the name incomplete\nbeta function often refers to just the integral expression,\nwithout the gamma terms. One can use the function beta from\nscipy.special to get this \"nonregularized\" incomplete beta\nfunction by multiplying the result of betainc(a, b, x) by\nbeta(a, b).

    \n\n

    This function wraps the ibeta routine from the\nBoost Math C++ library 2.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Let \\( B(a, b) \\) be the beta function.

    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    The coefficient in terms of gamma is equal to\n\\( 1/B(a, b) \\). Also, when \\( x=1 \\)\nthe integral is equal to \\( B(a, b) \\).\nTherefore, \\( I_{x=1}(a, b) = 1 \\) for any \\( a, b \\).

    \n\n
    \n
    >>> sc.betainc(0.2, 3.5, 1.0)\n1.0\n
    \n
    \n\n

    It satisfies\n\\( I_x(a, b) = x^a F(a, 1-b, a+1, x)/ (aB(a, b)) \\),\nwhere \\( F \\) is the hypergeometric function hyp2f1:

    \n\n
    \n
    >>> a, b, x = 1.4, 3.1, 0.5\n>>> x**a * sc.hyp2f1(a, 1 - b, a + 1, x)/(a * sc.beta(a, b))\n0.8148904036225295\n>>> sc.betainc(a, b, x)\n0.8148904036225296\n
    \n
    \n\n

    This functions satisfies the relationship\n\\( I_x(a, b) = 1 - I_{1-x}(b, a) \\):

    \n\n
    \n
    >>> sc.betainc(2.2, 3.1, 0.4)\n0.49339638807619446\n>>> 1 - sc.betainc(3.1, 2.2, 1 - 0.4)\n0.49339638807619446\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/8.17 

      \n
    2. \n\n
    3. \n

      The Boost Developers. \"Boost C++ Libraries\". https://www.boost.org/

      \n
    4. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.betaln": {"fullname": "pyerrors.special.betaln", "modulename": "pyerrors.special", "qualname": "betaln", "kind": "function", "doc": "

    betaln(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    betaln(a, b, out=None)

    \n\n

    Natural logarithm of absolute value of beta function.

    \n\n

    Computes ln(abs(beta(a, b))).

    \n\n
    Parameters
    \n\n
      \n
    • a, b (array_like):\nPositive, real-valued parameters
    • \n
    • out (ndarray, optional):\nOptional output array for function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Value of the betaln function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \nbetainc: the regularized incomplete beta function
    \nbeta: the beta function

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import betaln, beta\n
    \n
    \n\n

    Verify that, for moderate values of a and b, betaln(a, b)\nis the same as log(beta(a, b)):

    \n\n
    \n
    >>> betaln(3, 4)\n-4.0943445622221\n
    \n
    \n\n
    \n
    >>> np.log(beta(3, 4))\n-4.0943445622221\n
    \n
    \n\n

    In the following beta(a, b) underflows to 0, so we can't compute\nthe logarithm of the actual value.

    \n\n
    \n
    >>> a = 400\n>>> b = 900\n>>> beta(a, b)\n0.0\n
    \n
    \n\n

    We can compute the logarithm of beta(a, b) by using betaln:

    \n\n
    \n
    >>> betaln(a, b)\n-804.3069951764146\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.polygamma": {"fullname": "pyerrors.special.polygamma", "modulename": "pyerrors.special", "qualname": "polygamma", "kind": "function", "doc": "

    Polygamma functions.

    \n\n

    Defined as \\( \\psi^{(n)}(x) \\) where \\( \\psi \\) is the\ndigamma function. See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • n (array_like):\nThe order of the derivative of the digamma function; must be\nintegral
    • \n
    • x (array_like):\nReal valued input
    • \n
    \n\n
    Returns
    \n\n
      \n
    • ndarray: Function results
    • \n
    \n\n
    See Also
    \n\n

    digamma

    \n\n
    References
    \n\n

    .. [dlmf] NIST, Digital Library of Mathematical Functions,\n https://dlmf.nist.gov/5.15

    \n\n
    Examples
    \n\n
    \n
    >>> from scipy import special\n>>> x = [2, 3, 25.5]\n>>> special.polygamma(1, x)\narray([ 0.64493407,  0.39493407,  0.03999467])\n>>> special.polygamma(0, x) == special.psi(x)\narray([ True,  True,  True], dtype=bool)\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.psi": {"fullname": "pyerrors.special.psi", "modulename": "pyerrors.special", "qualname": "psi", "kind": "function", "doc": "

    psi(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    psi(z, out=None)

    \n\n

    The digamma function.

    \n\n

    The logarithmic derivative of the gamma function evaluated at z.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex argument.
    • \n
    • out (ndarray, optional):\nArray for the computed values of psi.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • digamma (scalar or ndarray):\nComputed values of psi.
    • \n
    \n\n
    Notes
    \n\n

    For large values not close to the negative real axis, psi is\ncomputed using the asymptotic series (5.11.2) from 1. For small\narguments not close to the negative real axis, the recurrence\nrelation (5.5.2) from 2 is used until the argument is large\nenough to use the asymptotic series. For values close to the\nnegative real axis, the reflection formula (5.5.4) from 3 is\nused first. Note that psi has a family of zeros on the\nnegative real axis which occur between the poles at nonpositive\nintegers. Around the zeros the reflection formula suffers from\ncancellation and the implementation loses precision. The sole\npositive zero and the first negative zero, however, are handled\nseparately by precomputing series expansions using 4, so the\nfunction should maintain full accuracy around the origin.

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> from scipy.special import psi\n>>> z = 3 + 4j\n>>> psi(z)\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n

    Verify psi(z) = psi(z + 1) - 1/z:

    \n\n
    \n
    >>> psi(z + 1) - 1/z\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    2. \n\n
    3. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    4. \n\n
    5. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    6. \n\n
    7. \n

      Fredrik Johansson and others.\n\"mpmath: a Python library for arbitrary-precision floating-point arithmetic\"\n(Version 0.19) http://mpmath.org/ 

      \n
    8. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.digamma": {"fullname": "pyerrors.special.digamma", "modulename": "pyerrors.special", "qualname": "digamma", "kind": "function", "doc": "

    psi(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    psi(z, out=None)

    \n\n

    The digamma function.

    \n\n

    The logarithmic derivative of the gamma function evaluated at z.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex argument.
    • \n
    • out (ndarray, optional):\nArray for the computed values of psi.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • digamma (scalar or ndarray):\nComputed values of psi.
    • \n
    \n\n
    Notes
    \n\n

    For large values not close to the negative real axis, psi is\ncomputed using the asymptotic series (5.11.2) from 1. For small\narguments not close to the negative real axis, the recurrence\nrelation (5.5.2) from 2 is used until the argument is large\nenough to use the asymptotic series. For values close to the\nnegative real axis, the reflection formula (5.5.4) from 3 is\nused first. Note that psi has a family of zeros on the\nnegative real axis which occur between the poles at nonpositive\nintegers. Around the zeros the reflection formula suffers from\ncancellation and the implementation loses precision. The sole\npositive zero and the first negative zero, however, are handled\nseparately by precomputing series expansions using 4, so the\nfunction should maintain full accuracy around the origin.

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> from scipy.special import psi\n>>> z = 3 + 4j\n>>> psi(z)\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n

    Verify psi(z) = psi(z + 1) - 1/z:

    \n\n
    \n
    >>> psi(z + 1) - 1/z\n(1.55035981733341+1.0105022091860445j)\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    2. \n\n
    3. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    4. \n\n
    5. \n

      NIST Digital Library of Mathematical Functions\nhttps://dlmf.nist.gov/5 

      \n
    6. \n\n
    7. \n

      Fredrik Johansson and others.\n\"mpmath: a Python library for arbitrary-precision floating-point arithmetic\"\n(Version 0.19) http://mpmath.org/ 

      \n
    8. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gamma": {"fullname": "pyerrors.special.gamma", "modulename": "pyerrors.special", "qualname": "gamma", "kind": "function", "doc": "

    gamma(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gamma(z, out=None)

    \n\n

    gamma function.

    \n\n

    The gamma function is defined as

    \n\n

    $$\\Gamma(z) = \\int_0^\\infty t^{z-1} e^{-t} dt$$

    \n\n

    for \\( \\Re(z) > 0 \\) and is extended to the rest of the complex\nplane by analytic continuation. See [dlmf]_ for more details.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex valued argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the gamma function
    • \n
    \n\n
    Notes
    \n\n

    The gamma function is often referred to as the generalized\nfactorial since \\( \\Gamma(n + 1) = n! \\) for natural numbers\n\\( n \\). More generally it satisfies the recurrence relation\n\\( \\Gamma(z + 1) = z \\cdot \\Gamma(z) \\) for complex \\( z \\),\nwhich, combined with the fact that \\( \\Gamma(1) = 1 \\), implies\nthe above identity for \\( z = n \\).

    \n\n

    The gamma function has poles at non-negative integers and the sign\nof infinity as z approaches each pole depends upon the direction in\nwhich the pole is approached. For this reason, the consistent thing\nis for gamma(z) to return NaN at negative integers, and to return\n-inf when x = -0.0 and +inf when x = 0.0, using the signbit of zero\nto signify the direction in which the origin is being approached. This\nis for instance what is recommended for the gamma function in annex F\nentry 9.5.4 of the Iso C 99 standard [isoc99]_.

    \n\n

    Prior to SciPy version 1.15, scipy.special.gamma(z) returned +inf\nat each pole. This was fixed in version 1.15, but with the following\nconsequence. Expressions where gamma appears in the denominator\nsuch as

    \n\n

    gamma(u) * gamma(v) / (gamma(w) * gamma(x))

    \n\n

    no longer evaluate to 0 if the numerator is well defined but there is a\npole in the denominator. Instead such expressions evaluate to NaN. We\nrecommend instead using the function rgamma for the reciprocal gamma\nfunction in such cases. The above expression could for instance be written\nas

    \n\n

    gamma(u) * gamma(v) * (rgamma(w) * rgamma(x))

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5.2#E1\n.. [isoc99] https://www.open-std.org/jtc1/sc22/wg14/www/docs/n1256.pdf

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import gamma, factorial\n
    \n
    \n\n
    \n
    >>> gamma([0, 0.5, 1, 5])\narray([         inf,   1.77245385,   1.        ,  24.        ])\n
    \n
    \n\n
    \n
    >>> z = 2.5 + 1j\n>>> gamma(z)\n(0.77476210455108352+0.70763120437959293j)\n>>> gamma(z+1), z*gamma(z)  # Recurrence property\n((1.2292740569981171+2.5438401155000685j),\n (1.2292740569981158+2.5438401155000658j))\n
    \n
    \n\n
    \n
    >>> gamma(0.5)**2  # gamma(0.5) = sqrt(pi)\n3.1415926535897927\n
    \n
    \n\n

    Plot gamma(x) for real x

    \n\n
    \n
    >>> x = np.linspace(-3.5, 5.5, 2251)\n>>> y = gamma(x)\n
    \n
    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> plt.plot(x, y, 'b', alpha=0.6, label='gamma(x)')\n>>> k = np.arange(1, 7)\n>>> plt.plot(k, factorial(k-1), 'k*', alpha=0.6,\n...          label='(x-1)!, x = 1, 2, ...')\n>>> plt.xlim(-3.5, 5.5)\n>>> plt.ylim(-10, 25)\n>>> plt.grid()\n>>> plt.xlabel('x')\n>>> plt.legend(loc='lower right')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammaln": {"fullname": "pyerrors.special.gammaln", "modulename": "pyerrors.special", "qualname": "gammaln", "kind": "function", "doc": "

    gammaln(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammaln(x, out=None)

    \n\n

    Logarithm of the absolute value of the gamma function.

    \n\n

    Defined as

    \n\n

    $$\\ln(\\lvert\\Gamma(x)\\rvert)$$

    \n\n

    where \\( \\Gamma \\) is the gamma function. For more details on\nthe gamma function, see [dlmf]_.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the log of the absolute value of gamma
    • \n
    \n\n
    See Also
    \n\n

    gammasgn: sign of the gamma function
    \nloggamma: principal branch of the logarithm of the gamma function

    \n\n
    Notes
    \n\n

    It is the same function as the Python standard library function\nmath.lgamma().

    \n\n

    When used in conjunction with gammasgn, this function is useful\nfor working in logspace on the real axis without having to deal\nwith complex numbers via the relation exp(gammaln(x)) =\ngammasgn(x) * gamma(x).

    \n\n

    For complex-valued log-gamma, use loggamma instead of gammaln.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import scipy.special as sc\n
    \n
    \n\n

    It has two positive zeros.

    \n\n
    \n
    >>> sc.gammaln([1, 2])\narray([0., 0.])\n
    \n
    \n\n

    It has poles at nonpositive integers.

    \n\n
    \n
    >>> sc.gammaln([0, -1, -2, -3, -4])\narray([inf, inf, inf, inf, inf])\n
    \n
    \n\n

    It asymptotically approaches x * log(x) (Stirling's formula).

    \n\n
    \n
    >>> x = np.array([1e10, 1e20, 1e40, 1e80])\n>>> sc.gammaln(x)\narray([2.20258509e+11, 4.50517019e+21, 9.11034037e+41, 1.83206807e+82])\n>>> x * np.log(x)\narray([2.30258509e+11, 4.60517019e+21, 9.21034037e+41, 1.84206807e+82])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammainc": {"fullname": "pyerrors.special.gammainc", "modulename": "pyerrors.special", "qualname": "gammainc", "kind": "function", "doc": "

    gammainc(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammainc(a, x, out=None)

    \n\n

    Regularized lower incomplete gamma function.

    \n\n

    It is defined as

    \n\n

    $$P(a, x) = \\frac{1}{\\Gamma(a)} \\int_0^x t^{a - 1}e^{-t} dt$$

    \n\n

    for \\( a > 0 \\) and \\( x \\geq 0 \\). See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nPositive parameter
    • \n
    • x (array_like):\nNonnegative argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the lower incomplete gamma function
    • \n
    \n\n
    See Also
    \n\n

    gammaincc: regularized upper incomplete gamma function
    \ngammaincinv: inverse of the regularized lower incomplete gamma function
    \ngammainccinv: inverse of the regularized upper incomplete gamma function

    \n\n
    Notes
    \n\n

    The function satisfies the relation gammainc(a, x) +\ngammaincc(a, x) = 1 where gammaincc is the regularized upper\nincomplete gamma function.

    \n\n

    The implementation largely follows that of [boost]_.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical functions\n https://dlmf.nist.gov/8.2#E4\n.. [boost] Maddock et. al., \"Incomplete Gamma Functions\",\n https://www.boost.org/doc/libs/1_61_0/libs/math/doc/html/math_toolkit/sf_gamma/igamma.html

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the CDF of the gamma distribution, so it starts at 0 and\nmonotonically increases to 1.

    \n\n
    \n
    >>> sc.gammainc(0.5, [0, 1, 10, 100])\narray([0.        , 0.84270079, 0.99999226, 1.        ])\n
    \n
    \n\n

    It is equal to one minus the upper incomplete gamma function.

    \n\n
    \n
    >>> a, x = 0.5, 0.4\n>>> sc.gammainc(a, x)\n0.6289066304773024\n>>> 1 - sc.gammaincc(a, x)\n0.6289066304773024\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammaincc": {"fullname": "pyerrors.special.gammaincc", "modulename": "pyerrors.special", "qualname": "gammaincc", "kind": "function", "doc": "

    gammaincc(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammaincc(a, x, out=None)

    \n\n

    Regularized upper incomplete gamma function.

    \n\n

    It is defined as

    \n\n

    $$Q(a, x) = \\frac{1}{\\Gamma(a)} \\int_x^\\infty t^{a - 1}e^{-t} dt$$

    \n\n

    for \\( a > 0 \\) and \\( x \\geq 0 \\). See [dlmf]_ for details.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nPositive parameter
    • \n
    • x (array_like):\nNonnegative argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the upper incomplete gamma function
    • \n
    \n\n
    See Also
    \n\n

    gammainc: regularized lower incomplete gamma function
    \ngammaincinv: inverse of the regularized lower incomplete gamma function
    \ngammainccinv: inverse of the regularized upper incomplete gamma function

    \n\n
    Notes
    \n\n

    The function satisfies the relation gammainc(a, x) +\ngammaincc(a, x) = 1 where gammainc is the regularized lower\nincomplete gamma function.

    \n\n

    The implementation largely follows that of [boost]_.

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical functions\n https://dlmf.nist.gov/8.2#E4\n.. [boost] Maddock et. al., \"Incomplete Gamma Functions\",\n https://www.boost.org/doc/libs/1_61_0/libs/math/doc/html/math_toolkit/sf_gamma/igamma.html

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the survival function of the gamma distribution, so it\nstarts at 1 and monotonically decreases to 0.

    \n\n
    \n
    >>> sc.gammaincc(0.5, [0, 1, 10, 100, 1000])\narray([1.00000000e+00, 1.57299207e-01, 7.74421643e-06, 2.08848758e-45,\n       0.00000000e+00])\n
    \n
    \n\n

    It is equal to one minus the lower incomplete gamma function.

    \n\n
    \n
    >>> a, x = 0.5, 0.4\n>>> sc.gammaincc(a, x)\n0.37109336952269756\n>>> 1 - sc.gammainc(a, x)\n0.37109336952269756\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.gammasgn": {"fullname": "pyerrors.special.gammasgn", "modulename": "pyerrors.special", "qualname": "gammasgn", "kind": "function", "doc": "

    gammasgn(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    gammasgn(x, out=None)

    \n\n

    Sign of the gamma function.

    \n\n

    It is defined as

    \n\n

    $$\\text{gammasgn}(x) =\n\\begin{cases}\n +1 & \\Gamma(x) > 0 \\\n -1 & \\Gamma(x) < 0\n\\end{cases}$$

    \n\n

    where \\( \\Gamma \\) is the gamma function; see gamma. This\ndefinition is complete since the gamma function is never zero;\nsee the discussion after [dlmf]_.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Sign of the gamma function
    • \n
    \n\n
    See Also
    \n\n

    gamma: the gamma function
    \ngammaln: log of the absolute value of the gamma function
    \nloggamma: analytic continuation of the log of the gamma function

    \n\n
    Notes
    \n\n

    The gamma function can be computed as gammasgn(x) *\nnp.exp(gammaln(x)).

    \n\n
    References
    \n\n

    .. [dlmf] NIST Digital Library of Mathematical Functions\n https://dlmf.nist.gov/5.2#E1

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import scipy.special as sc\n
    \n
    \n\n

    It is 1 for x > 0.

    \n\n
    \n
    >>> sc.gammasgn([1, 2, 3, 4])\narray([1., 1., 1., 1.])\n
    \n
    \n\n

    It alternates between -1 and 1 for negative integers.

    \n\n
    \n
    >>> sc.gammasgn([-0.5, -1.5, -2.5, -3.5])\narray([-1.,  1., -1.,  1.])\n
    \n
    \n\n

    It can be used to compute the gamma function.

    \n\n
    \n
    >>> x = [1.5, 0.5, -0.5, -1.5]\n>>> sc.gammasgn(x) * np.exp(sc.gammaln(x))\narray([ 0.88622693,  1.77245385, -3.5449077 ,  2.3632718 ])\n>>> sc.gamma(x)\narray([ 0.88622693,  1.77245385, -3.5449077 ,  2.3632718 ])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.rgamma": {"fullname": "pyerrors.special.rgamma", "modulename": "pyerrors.special", "qualname": "rgamma", "kind": "function", "doc": "

    rgamma(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    rgamma(z, out=None)

    \n\n

    Reciprocal of the gamma function.

    \n\n

    Defined as \\( 1 / \\Gamma(z) \\), where \\( \\Gamma \\) is the\ngamma function. For more on the gamma function see gamma.

    \n\n
    Parameters
    \n\n
      \n
    • z (array_like):\nReal or complex valued input
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Function results
    • \n
    \n\n
    See Also
    \n\n

    gamma,, gammaln,, loggamma

    \n\n
    Notes
    \n\n

    The gamma function has no zeros and has simple poles at\nnonpositive integers, so rgamma is an entire function with zeros\nat the nonpositive integers. See the discussion in [dlmf]_ for\nmore details.

    \n\n
    References
    \n\n

    .. [dlmf] Nist, Digital Library of Mathematical functions,\n https://dlmf.nist.gov/5.2#i

    \n\n
    Examples
    \n\n
    \n
    >>> import scipy.special as sc\n
    \n
    \n\n

    It is the reciprocal of the gamma function.

    \n\n
    \n
    >>> sc.rgamma([1, 2, 3, 4])\narray([1.        , 1.        , 0.5       , 0.16666667])\n>>> 1 / sc.gamma([1, 2, 3, 4])\narray([1.        , 1.        , 0.5       , 0.16666667])\n
    \n
    \n\n

    It is zero at nonpositive integers.

    \n\n
    \n
    >>> sc.rgamma([0, -1, -2, -3])\narray([0., 0., 0., 0.])\n
    \n
    \n\n

    It rapidly underflows to zero along the positive real axis.

    \n\n
    \n
    >>> sc.rgamma([10, 100, 179])\narray([2.75573192e-006, 1.07151029e-156, 0.00000000e+000])\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.multigammaln": {"fullname": "pyerrors.special.multigammaln", "modulename": "pyerrors.special", "qualname": "multigammaln", "kind": "function", "doc": "

    Returns the log of multivariate gamma, also sometimes called the\ngeneralized gamma.

    \n\n
    Parameters
    \n\n
      \n
    • a (ndarray):\nThe multivariate gamma is computed for each item of a.
    • \n
    • d (int):\nThe dimension of the space of integration.
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (ndarray):\nThe values of the log multivariate gamma at the given points a.
    • \n
    \n\n
    Notes
    \n\n

    The formal definition of the multivariate gamma of dimension d for a real\na is

    \n\n

    $$\\Gamma_d(a) = \\int_{A>0} e^{-tr(A)} |A|^{a - (d+1)/2} dA$$

    \n\n

    with the condition \\( a > (d-1)/2 \\), and \\( A > 0 \\) being the set of\nall the positive definite matrices of dimension d. Note that a is a\nscalar: the integrand only is multivariate, the argument is not (the\nfunction is defined over a subset of the real set).

    \n\n

    This can be proven to be equal to the much friendlier equation

    \n\n

    $$\\Gamma_d(a) = \\pi^{d(d-1)/4} \\prod_{i=1}^{d} \\Gamma(a - (i-1)/2).$$

    \n\n
    References
    \n\n

    R. J. Muirhead, Aspects of multivariate statistical theory (Wiley Series in\nprobability and mathematical statistics).

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import multigammaln, gammaln\n>>> a = 23.5\n>>> d = 10\n>>> multigammaln(a, d)\n454.1488605074416\n
    \n
    \n\n

    Verify that the result agrees with the logarithm of the equation\nshown above:

    \n\n
    \n
    >>> d*(d-1)/4*np.log(np.pi) + gammaln(a - 0.5*np.arange(0, d)).sum()\n454.1488605074416\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.kn": {"fullname": "pyerrors.special.kn", "modulename": "pyerrors.special", "qualname": "kn", "kind": "function", "doc": "

    Modified Bessel function of the second kind of integer order n

    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.j0": {"fullname": "pyerrors.special.j0", "modulename": "pyerrors.special", "qualname": "j0", "kind": "function", "doc": "

    j0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    j0(x, out=None)

    \n\n

    Bessel function of the first kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function of the first kind of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    jv: Bessel function of real order and complex argument.
    \nspherical_jn: spherical Bessel functions.

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 5] and (5, infinity). In the\nfirst interval the following rational approximation is used:

    \n\n

    $$J_0(x) \\approx (w - r_1^2)(w - r_2^2) \\frac{P_3(w)}{Q_8(w)},$$

    \n\n

    where \\( w = x^2 \\) and \\( r_1 \\), \\( r_2 \\) are the zeros of\n\\( J_0 \\), and \\( P_3 \\) and \\( Q_8 \\) are polynomials of degrees 3\nand 8, respectively.

    \n\n

    In the second interval, the Hankel asymptotic expansion is employed with\ntwo rational functions of degree 6/6 and 7/7.

    \n\n

    This function is a wrapper for the Cephes 1 routine j0.\nIt should not be confused with the spherical Bessel functions (see\nspherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import j0\n>>> j0(1.)\n0.7651976865579665\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> j0(np.array([-2., 0., 4.]))\narray([ 0.22389078,  1.        , -0.39714981])\n
    \n
    \n\n

    Plot the function from -20 to 20.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-20., 20., 1000)\n>>> y = j0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.y0": {"fullname": "pyerrors.special.y0", "modulename": "pyerrors.special", "qualname": "y0", "kind": "function", "doc": "

    y0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    y0(x, out=None)

    \n\n

    Bessel function of the second kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function of the second kind of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    j0: Bessel function of the first kind of order 0
    \nyv: Bessel function of the first kind

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 5] and (5, infinity). In the\nfirst interval a rational approximation \\( R(x) \\) is employed to\ncompute,

    \n\n

    $$Y_0(x) = R(x) + \\frac{2 \\log(x) J_0(x)}{\\pi},$$

    \n\n

    where \\( J_0 \\) is the Bessel function of the first kind of order 0.

    \n\n

    In the second interval, the Hankel asymptotic expansion is employed with\ntwo rational functions of degree 6/6 and 7/7.

    \n\n

    This function is a wrapper for the Cephes 1 routine y0.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import y0\n>>> y0(1.)\n0.08825696421567697\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> y0(np.array([0.5, 2., 3.]))\narray([-0.44451873,  0.51037567,  0.37685001])\n
    \n
    \n\n

    Plot the function from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> y = y0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.j1": {"fullname": "pyerrors.special.j1", "modulename": "pyerrors.special", "qualname": "j1", "kind": "function", "doc": "

    j1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    j1(x, out=None)

    \n\n

    Bessel function of the first kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function of the first kind of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    jv: Bessel function of the first kind
    \nspherical_jn: spherical Bessel functions.

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 8] and (8, infinity). In the\nfirst interval a 24 term Chebyshev expansion is used. In the second, the\nasymptotic trigonometric representation is employed using two rational\nfunctions of degree 5/5.

    \n\n

    This function is a wrapper for the Cephes 1 routine j1.\nIt should not be confused with the spherical Bessel functions (see\nspherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import j1\n>>> j1(1.)\n0.44005058574493355\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> j1(np.array([-2., 0., 4.]))\narray([-0.57672481,  0.        , -0.06604333])\n
    \n
    \n\n

    Plot the function from -20 to 20.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-20., 20., 1000)\n>>> y = j1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.y1": {"fullname": "pyerrors.special.y1", "modulename": "pyerrors.special", "qualname": "y1", "kind": "function", "doc": "

    y1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    y1(x, out=None)

    \n\n

    Bessel function of the second kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function of the second kind of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    j1: Bessel function of the first kind of order 1
    \nyn: Bessel function of the second kind
    \nyv: Bessel function of the second kind

    \n\n
    Notes
    \n\n

    The domain is divided into the intervals [0, 8] and (8, infinity). In the\nfirst interval a 25 term Chebyshev expansion is used, and computing\n\\( J_1 \\) (the Bessel function of the first kind) is required. In the\nsecond, the asymptotic trigonometric representation is employed using two\nrational functions of degree 5/5.

    \n\n

    This function is a wrapper for the Cephes 1 routine y1.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import y1\n>>> y1(1.)\n-0.7812128213002888\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> y1(np.array([0.5, 2., 3.]))\narray([-1.47147239, -0.10703243,  0.32467442])\n
    \n
    \n\n

    Plot the function from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> y = y1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.jn": {"fullname": "pyerrors.special.jn", "modulename": "pyerrors.special", "qualname": "jn", "kind": "function", "doc": "

    jv(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    jv(v, z, out=None)

    \n\n

    Bessel function of the first kind of real order and complex argument.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like):\nOrder (float).
    • \n
    • z (array_like):\nArgument (float or complex).
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • J (scalar or ndarray):\nValue of the Bessel function, \\( J_v(z) \\).
    • \n
    \n\n
    See Also
    \n\n

    jve: \\( J_v \\) with leading exponential behavior stripped off.
    \nspherical_jn: spherical Bessel functions.
    \nj0: faster version of this function for order 0.
    \nj1: faster version of this function for order 1.

    \n\n
    Notes
    \n\n

    For positive v values, the computation is carried out using the AMOS\n1 zbesj routine, which exploits the connection to the modified\nBessel function \\( I_v \\),

    \n\n

    $$J_v(z) = \\exp(v\\pi\\imath/2) I_v(-\\imath z)\\qquad (\\Im z > 0)

    \n\n

    J_v(z) = \\exp(-v\\pi\\imath/2) I_v(\\imath z)\\qquad (\\Im z < 0)$$

    \n\n

    For negative v values the formula,

    \n\n

    $$J_{-v}(z) = J_v(z) \\cos(\\pi v) - Y_v(z) \\sin(\\pi v)$$

    \n\n

    is used, where \\( Y_v(z) \\) is the Bessel function of the second\nkind, computed using the AMOS routine zbesy. Note that the second\nterm is exactly zero for integer v; to improve accuracy the second\nterm is explicitly omitted for v values such that v = floor(v).

    \n\n

    Not to be confused with the spherical Bessel functions (see spherical_jn).

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import jv\n>>> jv(0, 1.)\n0.7651976865579666\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> jv(0, 1.), jv(1, 1.), jv(1.5, 1.)\n(0.7651976865579666, 0.44005058574493355, 0.24029783912342725)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> jv([0, 1, 1.5], 1.)\narray([0.76519769, 0.44005059, 0.24029784])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([-2., 0., 3.])\n>>> jv(0, points)\narray([ 0.22389078,  1.        , -0.26005195])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> jv(orders, points)\narray([[ 0.22389078,  1.        , -0.26005195],\n       [-0.57672481,  0.        ,  0.33905896]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -10 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> for i in range(4):\n...     ax.plot(x, jv(i, x), label=f'$J_{i!r}$')\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.yn": {"fullname": "pyerrors.special.yn", "modulename": "pyerrors.special", "qualname": "yn", "kind": "function", "doc": "

    yn(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    yn(n, x, out=None)

    \n\n

    Bessel function of the second kind of integer order and real argument.

    \n\n
    Parameters
    \n\n
      \n
    • n (array_like):\nOrder (integer).
    • \n
    • x (array_like):\nArgument (float).
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • Y (scalar or ndarray):\nValue of the Bessel function, \\( Y_n(x) \\).
    • \n
    \n\n
    See Also
    \n\n

    yv: For real order and real or complex argument.
    \ny0: faster implementation of this function for order 0
    \ny1: faster implementation of this function for order 1

    \n\n
    Notes
    \n\n

    Wrapper for the Cephes 1 routine yn.

    \n\n

    The function is evaluated by forward recurrence on n, starting with\nvalues computed by the Cephes routines y0 and y1. If n = 0 or 1,\nthe routine for y0 or y1 is called directly.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import yn\n>>> yn(0, 1.)\n0.08825696421567697\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> yn(0, 1.), yn(1, 1.), yn(2, 1.)\n(0.08825696421567697, -0.7812128213002888, -1.6506826068162546)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> yn([0, 1, 2], 1.)\narray([ 0.08825696, -0.78121282, -1.65068261])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([0.5, 3., 8.])\n>>> yn(0, points)\narray([-0.44451873,  0.37685001,  0.22352149])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> yn(orders, points)\narray([[-0.44451873,  0.37685001,  0.22352149],\n       [-1.47147239,  0.32467442, -0.15806046]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from 0 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(0., 10., 1000)\n>>> for i in range(4):\n...     ax.plot(x, yn(i, x), label=f'$Y_{i!r}$')\n>>> ax.set_ylim(-3, 1)\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.i0": {"fullname": "pyerrors.special.i0", "modulename": "pyerrors.special", "qualname": "i0", "kind": "function", "doc": "

    i0(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    i0(x, out=None)

    \n\n

    Modified Bessel function of order 0.

    \n\n

    Defined as,

    \n\n

    $$I_0(x) = \\sum_{k=0}^\\infty \\frac{(x^2/4)^k}{(k!)^2} = J_0(\\imath x),$$

    \n\n

    where \\( J_0 \\) is the Bessel function of the first kind of order 0.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float)
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • I (scalar or ndarray):\nValue of the modified Bessel function of order 0 at x.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of any order
    \ni0e: Exponentially scaled modified Bessel function of order 0

    \n\n
    Notes
    \n\n

    The range is partitioned into the two intervals [0, 8] and (8, infinity).\nChebyshev polynomial expansions are employed in each interval.

    \n\n

    This function is a wrapper for the Cephes 1 routine i0.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import i0\n>>> i0(1.)\n1.2660658777520082\n
    \n
    \n\n

    Calculate at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> i0(np.array([-2., 0., 3.5]))\narray([2.2795853 , 1.        , 7.37820343])\n
    \n
    \n\n

    Plot the function from -10 to 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> y = i0(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.i1": {"fullname": "pyerrors.special.i1", "modulename": "pyerrors.special", "qualname": "i1", "kind": "function", "doc": "

    i1(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    i1(x, out=None)

    \n\n

    Modified Bessel function of order 1.

    \n\n

    Defined as,

    \n\n

    $$I_1(x) = \\frac{1}{2}x \\sum_{k=0}^\\infty \\frac{(x^2/4)^k}{k! (k + 1)!}\n = -\\imath J_1(\\imath x),$$

    \n\n

    where \\( J_1 \\) is the Bessel function of the first kind of order 1.

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nArgument (float)
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • I (scalar or ndarray):\nValue of the modified Bessel function of order 1 at x.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of the first kind
    \ni1e: Exponentially scaled modified Bessel function of order 1

    \n\n
    Notes
    \n\n

    The range is partitioned into the two intervals [0, 8] and (8, infinity).\nChebyshev polynomial expansions are employed in each interval.

    \n\n

    This function is a wrapper for the Cephes 1 routine i1.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Calculate the function at one point:

    \n\n
    \n
    >>> from scipy.special import i1\n>>> i1(1.)\n0.5651591039924851\n
    \n
    \n\n

    Calculate the function at several points:

    \n\n
    \n
    >>> import numpy as np\n>>> i1(np.array([-2., 0., 6.]))\narray([-1.59063685,  0.        , 61.34193678])\n
    \n
    \n\n

    Plot the function between -10 and 10.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-10., 10., 1000)\n>>> y = i1(x)\n>>> ax.plot(x, y)\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Cephes Mathematical Functions Library,\nhttp://www.netlib.org/cephes/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.iv": {"fullname": "pyerrors.special.iv", "modulename": "pyerrors.special", "qualname": "iv", "kind": "function", "doc": "

    iv(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    iv(v, z, out=None)

    \n\n

    Modified Bessel function of the first kind of real order.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like):\nOrder. If z is of real type and negative, v must be integer\nvalued.
    • \n
    • z (array_like of float or complex):\nArgument.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the modified Bessel function.
    • \n
    \n\n
    See Also
    \n\n

    ive: This function with leading exponential behavior stripped off.
    \ni0: Faster version of this function for order 0.
    \ni1: Faster version of this function for order 1.

    \n\n
    Notes
    \n\n

    For real z and \\( v \\in [-50, 50] \\), the evaluation is carried out\nusing Temme's method 1. For larger orders, uniform asymptotic\nexpansions are applied.

    \n\n

    For complex z and positive v, the AMOS 2 zbesi routine is\ncalled. It uses a power series for small z, the asymptotic expansion\nfor large abs(z), the Miller algorithm normalized by the Wronskian\nand a Neumann series for intermediate magnitudes, and the uniform\nasymptotic expansions for \\( I_v(z) \\) and \\( J_v(z) \\) for large\norders. Backward recurrence is used to generate sequences or reduce\norders when necessary.

    \n\n

    The calculations above are done in the right half plane and continued\ninto the left half plane by the formula,

    \n\n

    $$I_v(z \\exp(\\pm\\imath\\pi)) = \\exp(\\pm\\pi v) I_v(z)$$

    \n\n

    (valid when the real part of z is positive). For negative v, the\nformula

    \n\n

    $$I_{-v}(z) = I_v(z) + \\frac{2}{\\pi} \\sin(\\pi v) K_v(z)$$

    \n\n

    is used, where \\( K_v(z) \\) is the modified Bessel function of the\nsecond kind, evaluated using the AMOS routine zbesk.

    \n\n
    References
    \n\n
    Examples
    \n\n

    Evaluate the function of order 0 at one point.

    \n\n
    \n
    >>> from scipy.special import iv\n>>> iv(0, 1.)\n1.2660658777520084\n
    \n
    \n\n

    Evaluate the function at one point for different orders.

    \n\n
    \n
    >>> iv(0, 1.), iv(1, 1.), iv(1.5, 1.)\n(1.2660658777520084, 0.565159103992485, 0.2935253263474798)\n
    \n
    \n\n

    The evaluation for different orders can be carried out in one call by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> iv([0, 1, 1.5], 1.)\narray([1.26606588, 0.5651591 , 0.29352533])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> import numpy as np\n>>> points = np.array([-2., 0., 3.])\n>>> iv(0, points)\narray([2.2795853 , 1.        , 4.88079259])\n
    \n
    \n\n

    If z is an array, the order parameter v must be broadcastable to\nthe correct shape if different orders shall be computed in one call.\nTo calculate the orders 0 and 1 for an 1D array:

    \n\n
    \n
    >>> orders = np.array([[0], [1]])\n>>> orders.shape\n(2, 1)\n
    \n
    \n\n
    \n
    >>> iv(orders, points)\narray([[ 2.2795853 ,  1.        ,  4.88079259],\n       [-1.59063685,  0.        ,  3.95337022]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -5 to 5.

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> fig, ax = plt.subplots()\n>>> x = np.linspace(-5., 5., 1000)\n>>> for i in range(4):\n...     ax.plot(x, iv(i, x), label=f'$I_{i!r}$')\n>>> ax.legend()\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Temme, Journal of Computational Physics, vol 21, 343 (1976) 

      \n
    2. \n\n
    3. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    4. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.ive": {"fullname": "pyerrors.special.ive", "modulename": "pyerrors.special", "qualname": "ive", "kind": "function", "doc": "

    ive(x1, x2, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    ive(v, z, out=None)

    \n\n

    Exponentially scaled modified Bessel function of the first kind.

    \n\n

    Defined as::

    \n\n
    ive(v, z) = iv(v, z) * exp(-abs(z.real))\n
    \n\n

    For imaginary numbers without a real part, returns the unscaled\nBessel function of the first kind iv.

    \n\n
    Parameters
    \n\n
      \n
    • v (array_like of float):\nOrder.
    • \n
    • z (array_like of float or complex):\nArgument.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the exponentially scaled modified Bessel function.
    • \n
    \n\n
    See Also
    \n\n

    iv: Modified Bessel function of the first kind
    \ni0e: Faster implementation of this function for order 0
    \ni1e: Faster implementation of this function for order 1

    \n\n
    Notes
    \n\n

    For positive v, the AMOS 1 zbesi routine is called. It uses a\npower series for small z, the asymptotic expansion for large\nabs(z), the Miller algorithm normalized by the Wronskian and a\nNeumann series for intermediate magnitudes, and the uniform asymptotic\nexpansions for \\( I_v(z) \\) and \\( J_v(z) \\) for large orders.\nBackward recurrence is used to generate sequences or reduce orders when\nnecessary.

    \n\n

    The calculations above are done in the right half plane and continued\ninto the left half plane by the formula,

    \n\n

    $$I_v(z \\exp(\\pm\\imath\\pi)) = \\exp(\\pm\\pi v) I_v(z)$$

    \n\n

    (valid when the real part of z is positive). For negative v, the\nformula

    \n\n

    $$I_{-v}(z) = I_v(z) + \\frac{2}{\\pi} \\sin(\\pi v) K_v(z)$$

    \n\n

    is used, where \\( K_v(z) \\) is the modified Bessel function of the\nsecond kind, evaluated using the AMOS routine zbesk.

    \n\n

    ive is useful for large arguments z: for these, iv easily overflows,\nwhile ive does not due to the exponential scaling.

    \n\n
    References
    \n\n
    Examples
    \n\n

    In the following example iv returns infinity whereas ive still returns\na finite number.

    \n\n
    \n
    >>> from scipy.special import iv, ive\n>>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> iv(3, 1000.), ive(3, 1000.)\n(inf, 0.01256056218254712)\n
    \n
    \n\n

    Evaluate the function at one point for different orders by\nproviding a list or NumPy array as argument for the v parameter:

    \n\n
    \n
    >>> ive([0, 1, 1.5], 1.)\narray([0.46575961, 0.20791042, 0.10798193])\n
    \n
    \n\n

    Evaluate the function at several points for order 0 by providing an\narray for z.

    \n\n
    \n
    >>> points = np.array([-2., 0., 3.])\n>>> ive(0, points)\narray([0.30850832, 1.        , 0.24300035])\n
    \n
    \n\n

    Evaluate the function at several points for different orders by\nproviding arrays for both v for z. Both arrays have to be\nbroadcastable to the correct shape. To calculate the orders 0, 1\nand 2 for a 1D array of points:

    \n\n
    \n
    >>> ive([[0], [1], [2]], points)\narray([[ 0.30850832,  1.        ,  0.24300035],\n       [-0.21526929,  0.        ,  0.19682671],\n       [ 0.09323903,  0.        ,  0.11178255]])\n
    \n
    \n\n

    Plot the functions of order 0 to 3 from -5 to 5.

    \n\n
    \n
    >>> fig, ax = plt.subplots()\n>>> x = np.linspace(-5., 5., 1000)\n>>> for i in range(4):\n...     ax.plot(x, ive(i, x), label=fr'$I_{i!r}(z)\\cdot e^{{-|z|}}$')\n>>> ax.legend()\n>>> ax.set_xlabel(r"$z$")\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      Donald E. Amos, \"AMOS, A Portable Package for Bessel Functions\nof a Complex Argument and Nonnegative Order\",\nhttp://netlib.org/amos/ 

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erf": {"fullname": "pyerrors.special.erf", "modulename": "pyerrors.special", "qualname": "erf", "kind": "function", "doc": "

    erf(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erf(z, out=None)

    \n\n

    Returns the error function of complex argument.

    \n\n

    It is defined as 2/sqrt(pi)*integral(exp(-t**2), t=0..z).

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nInput array.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (scalar or ndarray):\nThe values of the error function at the given points x.
    • \n
    \n\n
    See Also
    \n\n

    erfc,, erfinv,, erfcinv,, wofz,, erfcx,, erfi

    \n\n
    Notes
    \n\n

    The cumulative of the unit normal distribution is given by\nPhi(z) = 1/2[1 + erf(z/sqrt(2))].

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy import special\n>>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-3, 3)\n>>> plt.plot(x, special.erf(x))\n>>> plt.xlabel('$x$')\n>>> plt.ylabel('$erf(x)$')\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfc": {"fullname": "pyerrors.special.erfc", "modulename": "pyerrors.special", "qualname": "erfc", "kind": "function", "doc": "

    erfc(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfc(x, out=None)

    \n\n

    Complementary error function, 1 - erf(x).

    \n\n
    Parameters
    \n\n
      \n
    • x (array_like):\nReal or complex valued argument
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: Values of the complementary error function
    • \n
    \n\n
    See Also
    \n\n

    erf,, erfi,, erfcx,, dawsn,, wofz

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy import special\n>>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-3, 3)\n>>> plt.plot(x, special.erfc(x))\n>>> plt.xlabel('$x$')\n>>> plt.ylabel('$erfc(x)$')\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfinv": {"fullname": "pyerrors.special.erfinv", "modulename": "pyerrors.special", "qualname": "erfinv", "kind": "function", "doc": "

    erfinv(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfinv(y, out=None)

    \n\n

    Inverse of the error function.

    \n\n

    Computes the inverse of the error function.

    \n\n

    In the complex domain, there is no unique complex number w satisfying\nerf(w)=z. This indicates a true inverse function would be multivalued.\nWhen the domain restricts to the real, -1 < x < 1, there is a unique real\nnumber satisfying erf(erfinv(x)) = x.

    \n\n
    Parameters
    \n\n
      \n
    • y (ndarray):\nArgument at which to evaluate. Domain: [-1, 1]
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • erfinv (scalar or ndarray):\nThe inverse of erf of y, element-wise
    • \n
    \n\n
    See Also
    \n\n

    erf: Error function of a complex argument
    \nerfc: Complementary error function, 1 - erf(x)
    \nerfcinv: Inverse of the complementary error function

    \n\n
    Notes
    \n\n

    This function wraps the erf_inv routine from the\nBoost Math C++ library 1.

    \n\n
    References
    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> from scipy.special import erfinv, erf\n
    \n
    \n\n
    \n
    >>> erfinv(0.5)\n0.4769362762044699\n
    \n
    \n\n
    \n
    >>> y = np.linspace(-1.0, 1.0, num=9)\n>>> x = erfinv(y)\n>>> x\narray([       -inf, -0.81341985, -0.47693628, -0.22531206,  0.        ,\n        0.22531206,  0.47693628,  0.81341985,         inf])\n
    \n
    \n\n

    Verify that erf(erfinv(y)) is y.

    \n\n
    \n
    >>> erf(x)\narray([-1.  , -0.75, -0.5 , -0.25,  0.  ,  0.25,  0.5 ,  0.75,  1.  ])\n
    \n
    \n\n

    Plot the function:

    \n\n
    \n
    >>> y = np.linspace(-1, 1, 200)\n>>> fig, ax = plt.subplots()\n>>> ax.plot(y, erfinv(y))\n>>> ax.grid(True)\n>>> ax.set_xlabel('y')\n>>> ax.set_title('erfinv(y)')\n>>> plt.show()\n
    \n
    \n\n
    \n
    \n
      \n
    1. \n

      The Boost Developers. \"Boost C++ Libraries\". https://www.boost.org/

      \n
    2. \n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.erfcinv": {"fullname": "pyerrors.special.erfcinv", "modulename": "pyerrors.special", "qualname": "erfcinv", "kind": "function", "doc": "

    erfcinv(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    erfcinv(y, out=None)

    \n\n

    Inverse of the complementary error function.

    \n\n

    Computes the inverse of the complementary error function.

    \n\n

    In the complex domain, there is no unique complex number w satisfying\nerfc(w)=z. This indicates a true inverse function would be multivalued.\nWhen the domain restricts to the real, 0 < x < 2, there is a unique real\nnumber satisfying erfc(erfcinv(x)) = erfcinv(erfc(x)).

    \n\n

    It is related to inverse of the error function by erfcinv(1-x) = erfinv(x)

    \n\n
    Parameters
    \n\n
      \n
    • y (ndarray):\nArgument at which to evaluate. Domain: [0, 2]
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • erfcinv (scalar or ndarray):\nThe inverse of erfc of y, element-wise
    • \n
    \n\n
    See Also
    \n\n

    erf: Error function of a complex argument
    \nerfc: Complementary error function, 1 - erf(x)
    \nerfinv: Inverse of the error function

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> import matplotlib.pyplot as plt\n>>> from scipy.special import erfcinv\n
    \n
    \n\n
    \n
    >>> erfcinv(0.5)\n0.4769362762044699\n
    \n
    \n\n
    \n
    >>> y = np.linspace(0.0, 2.0, num=11)\n>>> erfcinv(y)\narray([        inf,  0.9061938 ,  0.59511608,  0.37080716,  0.17914345,\n       -0.        , -0.17914345, -0.37080716, -0.59511608, -0.9061938 ,\n              -inf])\n
    \n
    \n\n

    Plot the function:

    \n\n
    \n
    >>> y = np.linspace(0, 2, 200)\n>>> fig, ax = plt.subplots()\n>>> ax.plot(y, erfcinv(y))\n>>> ax.grid(True)\n>>> ax.set_xlabel('y')\n>>> ax.set_title('erfcinv(y)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.logit": {"fullname": "pyerrors.special.logit", "modulename": "pyerrors.special", "qualname": "logit", "kind": "function", "doc": "

    logit(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    logit(x, out=None)

    \n\n

    Logit ufunc for ndarrays.

    \n\n

    The logit function is defined as logit(p) = log(p/(1-p)).\nNote that logit(0) = -inf, logit(1) = inf, and logit(p)\nfor p<0 or p>1 yields nan.

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nThe ndarray to apply logit to element-wise.
    • \n
    • out (ndarray, optional):\nOptional output array for the function results
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: An ndarray of the same shape as x. Its entries\nare logit of the corresponding entry of x.
    • \n
    \n\n
    See Also
    \n\n

    expit

    \n\n
    Notes
    \n\n

    As a ufunc logit takes a number of optional\nkeyword arguments. For more information\nsee ufuncs

    \n\n

    New in version 0.10.0.

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import logit, expit\n
    \n
    \n\n
    \n
    >>> logit([0, 0.25, 0.5, 0.75, 1])\narray([       -inf, -1.09861229,  0.        ,  1.09861229,         inf])\n
    \n
    \n\n

    expit is the inverse of logit:

    \n\n
    \n
    >>> expit(logit([0.1, 0.75, 0.999]))\narray([ 0.1  ,  0.75 ,  0.999])\n
    \n
    \n\n

    Plot logit(x) for x in [0, 1]:

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> x = np.linspace(0, 1, 501)\n>>> y = logit(x)\n>>> plt.plot(x, y)\n>>> plt.grid()\n>>> plt.ylim(-6, 6)\n>>> plt.xlabel('x')\n>>> plt.title('logit(x)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.expit": {"fullname": "pyerrors.special.expit", "modulename": "pyerrors.special", "qualname": "expit", "kind": "function", "doc": "

    expit(x, /, out=None, *, where=True, casting='same_kind', order='K', dtype=None, subok=True[, signature])

    \n\n

    expit(x, out=None)

    \n\n

    Expit (a.k.a. logistic sigmoid) ufunc for ndarrays.

    \n\n

    The expit function, also known as the logistic sigmoid function, is\ndefined as expit(x) = 1/(1+exp(-x)). It is the inverse of the\nlogit function.

    \n\n
    Parameters
    \n\n
      \n
    • x (ndarray):\nThe ndarray to apply expit to element-wise.
    • \n
    • out (ndarray, optional):\nOptional output array for the function values
    • \n
    \n\n
    Returns
    \n\n
      \n
    • scalar or ndarray: An ndarray of the same shape as x. Its entries\nare expit of the corresponding entry of x.
    • \n
    \n\n
    See Also
    \n\n

    logit

    \n\n
    Notes
    \n\n

    As a ufunc expit takes a number of optional\nkeyword arguments. For more information\nsee ufuncs

    \n\n

    New in version 0.10.0.

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import expit, logit\n
    \n
    \n\n
    \n
    >>> expit([-np.inf, -1.5, 0, 1.5, np.inf])\narray([ 0.        ,  0.18242552,  0.5       ,  0.81757448,  1.        ])\n
    \n
    \n\n

    logit is the inverse of expit:

    \n\n
    \n
    >>> logit(expit([-2.5, 0, 3.1, 5.0]))\narray([-2.5,  0. ,  3.1,  5. ])\n
    \n
    \n\n

    Plot expit(x) for x in [-6, 6]:

    \n\n
    \n
    >>> import matplotlib.pyplot as plt\n>>> x = np.linspace(-6, 6, 121)\n>>> y = expit(x)\n>>> plt.plot(x, y)\n>>> plt.grid()\n>>> plt.xlim(-6, 6)\n>>> plt.xlabel('x')\n>>> plt.title('expit(x)')\n>>> plt.show()\n
    \n
    \n", "signature": "(*args, **kwargs):", "funcdef": "def"}, "pyerrors.special.logsumexp": {"fullname": "pyerrors.special.logsumexp", "modulename": "pyerrors.special", "qualname": "logsumexp", "kind": "function", "doc": "

    Compute the log of the sum of exponentials of input elements.

    \n\n
    Parameters
    \n\n
      \n
    • a (array_like):\nInput array.
    • \n
    • axis (None or int or tuple of ints, optional):\nAxis or axes over which the sum is taken. By default axis is None,\nand all elements are summed.

      \n\n

      New in version 0.11.0.

    • \n
    • b (array-like, optional):\nScaling factor for exp(a) must be of the same shape as a or\nbroadcastable to a. These values may be negative in order to\nimplement subtraction.

      \n\n

      New in version 0.12.0.

    • \n
    • keepdims (bool, optional):\nIf this is set to True, the axes which are reduced are left in the\nresult as dimensions with size one. With this option, the result\nwill broadcast correctly against the original array.

      \n\n

      New in version 0.15.0.

    • \n
    • return_sign (bool, optional):\nIf this is set to True, the result will be a pair containing sign\ninformation; if False, results that are negative will be returned\nas NaN. Default is False (no sign information).

      \n\n

      New in version 0.16.0.

    • \n
    \n\n
    Returns
    \n\n
      \n
    • res (ndarray):\nThe result, np.log(np.sum(np.exp(a))) calculated in a numerically\nmore stable way. If b is given then np.log(np.sum(b*np.exp(a)))\nis returned. If return_sign is True, res contains the log of\nthe absolute value of the argument.
    • \n
    • sgn (ndarray):\nIf return_sign is True, this will be an array of floating-point\nnumbers matching res containing +1, 0, -1 (for real-valued inputs)\nor a complex phase (for complex inputs). This gives the sign of the\nargument of the logarithm in res.\nIf return_sign is False, only one result is returned.
    • \n
    \n\n
    See Also
    \n\n

    numpy.logaddexp,, numpy.logaddexp2

    \n\n
    Notes
    \n\n

    NumPy has a logaddexp function which is very similar to logsumexp, but\nonly handles two arguments. logaddexp.reduce is similar to this\nfunction, but may be less stable.

    \n\n

    The logarithm is a multivalued function: for each \\( x \\) there is an\ninfinite number of \\( z \\) such that \\( exp(z) = x \\). The convention\nis to return the \\( z \\) whose imaginary part lies in \\( (-pi, pi] \\).

    \n\n
    Examples
    \n\n
    \n
    >>> import numpy as np\n>>> from scipy.special import logsumexp\n>>> a = np.arange(10)\n>>> logsumexp(a)\n9.4586297444267107\n>>> np.log(np.sum(np.exp(a)))\n9.4586297444267107\n
    \n
    \n\n

    With weights

    \n\n
    \n
    >>> a = np.arange(10)\n>>> b = np.arange(10, 0, -1)\n>>> logsumexp(a, b=b)\n9.9170178533034665\n>>> np.log(np.sum(b*np.exp(a)))\n9.9170178533034647\n
    \n
    \n\n

    Returning a sign flag

    \n\n
    \n
    >>> logsumexp([1,2],b=[1,-1],return_sign=True)\n(1.5413248546129181, -1.0)\n
    \n
    \n\n

    Notice that logsumexp does not directly support masked arrays. To use it\non a masked array, convert the mask into zero weights:

    \n\n
    \n
    >>> a = np.ma.array([np.log(2), 2, np.log(3)],\n...                  mask=[False, True, False])\n>>> b = (~a.mask).astype(int)\n>>> logsumexp(a.data, b=b), np.log(5)\n1.6094379124341005, 1.6094379124341005\n
    \n
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