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notebook_helpers.py
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notebook_helpers.py
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from torchvision.datasets.utils import download_url
from ldm.util import instantiate_from_config
import torch
import os
# todo ?
from google.colab import files
from IPython.display import Image as ipyimg
import ipywidgets as widgets
from PIL import Image
from numpy import asarray
from einops import rearrange, repeat
import torch, torchvision
from ldm.models.diffusion.ddim import DDIMSampler
from ldm.util import ismap
import time
from omegaconf import OmegaConf
def download_models(mode):
if mode == "superresolution":
# this is the small bsr light model
url_conf = 'https://heibox.uni-heidelberg.de/f/31a76b13ea27482981b4/?dl=1'
url_ckpt = 'https://heibox.uni-heidelberg.de/f/578df07c8fc04ffbadf3/?dl=1'
path_conf = 'logs/diffusion/superresolution_bsr/configs/project.yaml'
path_ckpt = 'logs/diffusion/superresolution_bsr/checkpoints/last.ckpt'
download_url(url_conf, path_conf)
download_url(url_ckpt, path_ckpt)
path_conf = path_conf + '/?dl=1' # fix it
path_ckpt = path_ckpt + '/?dl=1' # fix it
return path_conf, path_ckpt
else:
raise NotImplementedError
def load_model_from_config(config, ckpt):
print(f"Loading model from {ckpt}")
pl_sd = torch.load(ckpt, map_location="cpu")
global_step = pl_sd["global_step"]
sd = pl_sd["state_dict"]
model = instantiate_from_config(config.model)
m, u = model.load_state_dict(sd, strict=False)
model.cuda()
model.eval()
return {"model": model}, global_step
def get_model(mode):
path_conf, path_ckpt = download_models(mode)
config = OmegaConf.load(path_conf)
model, step = load_model_from_config(config, path_ckpt)
return model
def get_custom_cond(mode):
dest = "data/example_conditioning"
if mode == "superresolution":
uploaded_img = files.upload()
filename = next(iter(uploaded_img))
name, filetype = filename.split(".") # todo assumes just one dot in name !
os.rename(f"{filename}", f"{dest}/{mode}/custom_{name}.{filetype}")
elif mode == "text_conditional":
w = widgets.Text(value='A cake with cream!', disabled=True)
display(w)
with open(f"{dest}/{mode}/custom_{w.value[:20]}.txt", 'w') as f:
f.write(w.value)
elif mode == "class_conditional":
w = widgets.IntSlider(min=0, max=1000)
display(w)
with open(f"{dest}/{mode}/custom.txt", 'w') as f:
f.write(w.value)
else:
raise NotImplementedError(f"cond not implemented for mode{mode}")
def get_cond_options(mode):
path = "data/example_conditioning"
path = os.path.join(path, mode)
onlyfiles = [f for f in sorted(os.listdir(path))]
return path, onlyfiles
def select_cond_path(mode):
path = "data/example_conditioning" # todo
path = os.path.join(path, mode)
onlyfiles = [f for f in sorted(os.listdir(path))]
selected = widgets.RadioButtons(
options=onlyfiles,
description='Select conditioning:',
disabled=False
)
display(selected)
selected_path = os.path.join(path, selected.value)
return selected_path
def get_cond(mode, selected_path):
example = dict()
if mode == "superresolution":
up_f = 4
visualize_cond_img(selected_path)
c = Image.open(selected_path)
c = torch.unsqueeze(torchvision.transforms.ToTensor()(c), 0)
c_up = torchvision.transforms.functional.resize(c, size=[up_f * c.shape[2], up_f * c.shape[3]], antialias=True)
c_up = rearrange(c_up, '1 c h w -> 1 h w c')
c = rearrange(c, '1 c h w -> 1 h w c')
c = 2. * c - 1.
c = c.to(torch.device("cuda"))
example["LR_image"] = c
example["image"] = c_up
return example
def visualize_cond_img(path):
display(ipyimg(filename=path))
def run(model, selected_path, task, custom_steps, resize_enabled=False, classifier_ckpt=None, global_step=None):
example = get_cond(task, selected_path)
save_intermediate_vid = False
n_runs = 1
masked = False
guider = None
ckwargs = None
mode = 'ddim'
ddim_use_x0_pred = False
temperature = 1.
eta = 1.
make_progrow = True
custom_shape = None
height, width = example["image"].shape[1:3]
split_input = height >= 128 and width >= 128
if split_input:
ks = 128
stride = 64
vqf = 4 #
model.split_input_params = {"ks": (ks, ks), "stride": (stride, stride),
"vqf": vqf,
"patch_distributed_vq": True,
"tie_braker": False,
"clip_max_weight": 0.5,
"clip_min_weight": 0.01,
"clip_max_tie_weight": 0.5,
"clip_min_tie_weight": 0.01}
else:
if hasattr(model, "split_input_params"):
delattr(model, "split_input_params")
invert_mask = False
x_T = None
for n in range(n_runs):
if custom_shape is not None:
x_T = torch.randn(1, custom_shape[1], custom_shape[2], custom_shape[3]).to(model.device)
x_T = repeat(x_T, '1 c h w -> b c h w', b=custom_shape[0])
logs = make_convolutional_sample(example, model,
mode=mode, custom_steps=custom_steps,
eta=eta, swap_mode=False , masked=masked,
invert_mask=invert_mask, quantize_x0=False,
custom_schedule=None, decode_interval=10,
resize_enabled=resize_enabled, custom_shape=custom_shape,
temperature=temperature, noise_dropout=0.,
corrector=guider, corrector_kwargs=ckwargs, x_T=x_T, save_intermediate_vid=save_intermediate_vid,
make_progrow=make_progrow,ddim_use_x0_pred=ddim_use_x0_pred
)
return logs
@torch.no_grad()
def convsample_ddim(model, cond, steps, shape, eta=1.0, callback=None, normals_sequence=None,
mask=None, x0=None, quantize_x0=False, img_callback=None,
temperature=1., noise_dropout=0., score_corrector=None,
corrector_kwargs=None, x_T=None, log_every_t=None
):
ddim = DDIMSampler(model)
bs = shape[0] # dont know where this comes from but wayne
shape = shape[1:] # cut batch dim
print(f"Sampling with eta = {eta}; steps: {steps}")
samples, intermediates = ddim.sample(steps, batch_size=bs, shape=shape, conditioning=cond, callback=callback,
normals_sequence=normals_sequence, quantize_x0=quantize_x0, eta=eta,
mask=mask, x0=x0, temperature=temperature, verbose=False,
score_corrector=score_corrector,
corrector_kwargs=corrector_kwargs, x_T=x_T)
return samples, intermediates
@torch.no_grad()
def make_convolutional_sample(batch, model, mode="vanilla", custom_steps=None, eta=1.0, swap_mode=False, masked=False,
invert_mask=True, quantize_x0=False, custom_schedule=None, decode_interval=1000,
resize_enabled=False, custom_shape=None, temperature=1., noise_dropout=0., corrector=None,
corrector_kwargs=None, x_T=None, save_intermediate_vid=False, make_progrow=True,ddim_use_x0_pred=False):
log = dict()
z, c, x, xrec, xc = model.get_input(batch, model.first_stage_key,
return_first_stage_outputs=True,
force_c_encode=not (hasattr(model, 'split_input_params')
and model.cond_stage_key == 'coordinates_bbox'),
return_original_cond=True)
log_every_t = 1 if save_intermediate_vid else None
if custom_shape is not None:
z = torch.randn(custom_shape)
print(f"Generating {custom_shape[0]} samples of shape {custom_shape[1:]}")
z0 = None
log["input"] = x
log["reconstruction"] = xrec
if ismap(xc):
log["original_conditioning"] = model.to_rgb(xc)
if hasattr(model, 'cond_stage_key'):
log[model.cond_stage_key] = model.to_rgb(xc)
else:
log["original_conditioning"] = xc if xc is not None else torch.zeros_like(x)
if model.cond_stage_model:
log[model.cond_stage_key] = xc if xc is not None else torch.zeros_like(x)
if model.cond_stage_key =='class_label':
log[model.cond_stage_key] = xc[model.cond_stage_key]
with model.ema_scope("Plotting"):
t0 = time.time()
img_cb = None
sample, intermediates = convsample_ddim(model, c, steps=custom_steps, shape=z.shape,
eta=eta,
quantize_x0=quantize_x0, img_callback=img_cb, mask=None, x0=z0,
temperature=temperature, noise_dropout=noise_dropout,
score_corrector=corrector, corrector_kwargs=corrector_kwargs,
x_T=x_T, log_every_t=log_every_t)
t1 = time.time()
if ddim_use_x0_pred:
sample = intermediates['pred_x0'][-1]
x_sample = model.decode_first_stage(sample)
try:
x_sample_noquant = model.decode_first_stage(sample, force_not_quantize=True)
log["sample_noquant"] = x_sample_noquant
log["sample_diff"] = torch.abs(x_sample_noquant - x_sample)
except:
pass
log["sample"] = x_sample
log["time"] = t1 - t0
return log