# Copyright 2020 The TensorFlow Authors. All Rights Reserved. # # 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. # ============================================================================== """This module customizes `test_combinations` for `tf.keras` related tests.""" import functools from tensorflow.python import tf2 from tensorflow.python.framework import combinations from tensorflow.python.framework import test_combinations from tensorflow.python.keras import testing_utils KERAS_MODEL_TYPES = ['functional', 'subclass', 'sequential'] def keras_mode_combinations(mode=None, run_eagerly=None): """Returns the default test combinations for tf.keras tests. Note that if tf2 is enabled, then v1 session test will be skipped. Args: mode: List of modes to run the tests. The valid options are 'graph' and 'eager'. Default to ['graph', 'eager'] if not specified. If a empty list is provide, then the test will run under the context based on tf's version, eg graph for v1 and eager for v2. run_eagerly: List of `run_eagerly` value to be run with the tests. Default to [True, False] if not specified. Note that for `graph` mode, run_eagerly value will only be False. Returns: A list contains all the combinations to be used to generate test cases. """ if mode is None: mode = ['eager'] if tf2.enabled() else ['graph', 'eager'] if run_eagerly is None: run_eagerly = [True, False] result = [] if 'eager' in mode: result += combinations.combine(mode=['eager'], run_eagerly=run_eagerly) if 'graph' in mode: result += combinations.combine(mode=['graph'], run_eagerly=[False]) return result def keras_model_type_combinations(): return combinations.combine(model_type=KERAS_MODEL_TYPES) class KerasModeCombination(test_combinations.TestCombination): """Combination for Keras test mode. It by default includes v1_session, v2_eager and v2_tf_function. """ def context_managers(self, kwargs): run_eagerly = kwargs.pop('run_eagerly', None) if run_eagerly is not None: return [testing_utils.run_eagerly_scope(run_eagerly)] else: return [] def parameter_modifiers(self): return [test_combinations.OptionalParameter('run_eagerly')] class KerasModelTypeCombination(test_combinations.TestCombination): """Combination for Keras model types when doing model test. It by default includes 'functional', 'subclass', 'sequential'. Various methods in `testing_utils` to get models will auto-generate a model of the currently active Keras model type. This allows unittests to confirm the equivalence between different Keras models. """ def context_managers(self, kwargs): model_type = kwargs.pop('model_type', None) if model_type in KERAS_MODEL_TYPES: return [testing_utils.model_type_scope(model_type)] else: return [] def parameter_modifiers(self): return [test_combinations.OptionalParameter('model_type')] _defaults = combinations.generate.keywords['test_combinations'] generate = functools.partial( combinations.generate, test_combinations=_defaults + (KerasModeCombination(), KerasModelTypeCombination())) combine = test_combinations.combine times = test_combinations.times NamedObject = test_combinations.NamedObject