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make_predictions.py
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make_predictions.py
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# Copyright 2018 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
r"""Run massspec model on data and write out predictions.
Example usage:
blaze-bin/third_party/py/deep_molecular_massspec/make_predictions \
--alsologtostderr --input_file=testdata/test_14_record.gz \
--output_file=/tmp/models/output_predictions \
--model_checkpoint_path=/tmp/models/output/ \
--hparams=eval_batch_size=16
This saves a numpy archive to FLAGS.output_file that contains a dictionary
where the keys are inchikeys and values are 1D np arrays for spectra.
You should load this dict downstream using:
data_dict = np.load(data_file).item()
(Note that .item() is necessary because np.load returns a 0-D array,
where the first element is the desired dictionary.)
"""
from __future__ import print_function
import json
import os
import tempfile
import dataset_setup_constants as ds_constants
import feature_map_constants as fmap_constants
# Note that many FLAGS are inherited from molecule_estimator
import molecule_estimator
import molecule_predictors
import plot_spectra_utils
import util
import numpy as np
import tensorflow as tf
import matplotlib.pyplot as plt
FLAGS = tf.app.flags.FLAGS
tf.flags.DEFINE_string(
'input_file', None, 'Input TFRecord file or a '
'globble file pattern for TFRecord files')
tf.flags.DEFINE_string(
'model_checkpoint_path', None,
'Path to model checkpoint. If a directory, the most '
'recent model checkpoint in this directory will be used. If a file, it '
'should be of the form /.../name-of-the-file.ckpt-10000')
tf.flags.DEFINE_bool(
'save_spectra_plots', True,
'Make plots of true and predicted spectra for each query molecule.'
)
tf.flags.DEFINE_string('output_file', None,
'Location where outputs will be written.')
def _make_features_and_labels_from_tfrecord(input_file_pattern, hparams,
features_to_load):
"""Construct features and labels Tensors to be consumed by model_fn."""
def _make_tmp_dataset_config_file(input_filenames):
"""Construct a temporary config file that points to input_filename."""
_, tmp_file = tempfile.mkstemp()
dataset_config = {
ds_constants.SPECTRUM_PREDICTION_TRAIN_KEY: input_filenames
}
with tf.gfile.Open(tmp_file, 'w') as f:
json.dump(dataset_config, f)
return tmp_file
input_files = tf.gfile.Glob(input_file_pattern)
if not input_files:
raise ValueError('No files found matching %s' % input_file_pattern)
data_dir, _ = os.path.split(input_files[0])
data_basenames = [os.path.split(filename)[1] for filename in input_files]
dataset_config_file = _make_tmp_dataset_config_file(data_basenames)
mode = tf.estimator.ModeKeys.PREDICT
input_fn = molecule_estimator.make_input_fn(
dataset_config_file=dataset_config_file,
hparams=hparams,
mode=mode,
features_to_load=features_to_load,
data_dir=data_dir,
load_library_matching_data=False)
tf.gfile.Remove(dataset_config_file)
return input_fn()
def _make_features_labels_and_estimator(model_type, hparam_string, input_file):
"""Construct input ops and EstimatorSpec for massspec model."""
prediction_helper = molecule_predictors.get_prediction_helper(model_type)
hparams = prediction_helper.get_default_hparams()
hparams.parse(hparam_string)
model_fn = molecule_estimator.make_model_fn(
prediction_helper, dataset_config_file=None, model_dir=None)
features_to_load = prediction_helper.features_to_load(hparams)
features, labels = _make_features_and_labels_from_tfrecord(
input_file, hparams, features_to_load)
estimator_spec = model_fn(
features, labels, hparams, mode=tf.estimator.ModeKeys.PREDICT)
return features, labels, estimator_spec
def _save_plot_figure(key, prediction, true_spectrum, results_dir):
"""A helper function that makes and saves plots of true and predicted spectra."""
spectra_plot_file_name = plot_spectra_utils.name_plot_file(
plot_spectra_utils.PlotModeKeys.PREDICTED_SPECTRUM, key, file_type='png')
# Rescale the true/predicted spectra
true_spectrum = true_spectrum / true_spectrum.max() * plot_spectra_utils.MAX_VALUE_OF_TRUE_SPECTRA
prediction = prediction / prediction.max() * plot_spectra_utils.MAX_VALUE_OF_TRUE_SPECTRA
plot_spectra_utils.plot_true_and_predicted_spectra(
true_spectrum, prediction,
output_filename=os.path.join(results_dir,spectra_plot_file_name),
rescale_mz_axis=True
)
def main(_):
features, labels, estimator_spec = _make_features_labels_and_estimator(
FLAGS.model_type, FLAGS.hparams, FLAGS.input_file)
del labels # Unused
pred_op = estimator_spec.predictions
inchikey_op = features[fmap_constants.SPECTRUM_PREDICTION][
fmap_constants.INCHIKEY]
ops_to_fetch = [inchikey_op, pred_op]
if FLAGS.save_spectra_plots:
true_spectra_op = features[fmap_constants.SPECTRUM_PREDICTION][fmap_constants.DENSE_MASS_SPEC]
ops_to_fetch.append(true_spectra_op)
results = {}
results_dir = os.path.dirname(FLAGS.output_file)
tf.gfile.MakeDirs(results_dir)
def process_fetched_values_fn(fetched_values):
if FLAGS.save_spectra_plots:
keys, predictions, true_spectra = fetched_values
for key, prediction, true_spectrum in zip(keys, predictions, true_spectra):
# Dereference the singleton np string array to get the actual string.
key = key[0]
results[key] = prediction
_save_plot_figure(key, prediction, true_spectrum, results_dir)
else:
keys, predictions = fetched_values
for key, prediction in zip(keys, predictions):
# Dereference the singleton np string array to get the actual string.
key = key[0]
results[key] = prediction
util.run_graph_and_process_results(ops_to_fetch, FLAGS.model_checkpoint_path,
process_fetched_values_fn)
np.save(FLAGS.output_file, results)
if __name__ == '__main__':
for flag in ['input_file', 'model_checkpoint_path', 'output_file']:
tf.app.flags.mark_flag_as_required(flag)
tf.app.run(main)