# Copyright 2018 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. # ============================================================================== """Utilities for API compatibility between TensorFlow release versions. See [Version Compatibility](https://tensorflow.org/guide/version_compat#backward_forward) """ from __future__ import absolute_import from __future__ import division from __future__ import print_function import datetime from tensorflow.python.util import tf_contextlib from tensorflow.python.util.tf_export import tf_export _FORWARD_COMPATIBILITY_HORIZON = datetime.date(2018, 10, 10) @tf_export("compat.forward_compatible") def forward_compatible(year, month, day): """Return true if the forward compatibility window has expired. See [Version compatibility](https://tensorflow.org/guide/version_compat#backward_forward). Forward-compatibility refers to scenarios where the producer of a TensorFlow model (a GraphDef or SavedModel) is compiled against a version of the TensorFlow library newer than what the consumer was compiled against. The "producer" is typically a Python program that constructs and trains a model while the "consumer" is typically another program that loads and serves the model. TensorFlow has been supporting a 3 week forward-compatibility window for programs compiled from source at HEAD. For example, consider the case where a new operation `MyNewAwesomeAdd` is created with the intent of replacing the implementation of an existing Python wrapper - `tf.add`. The Python wrapper implementation should change from something like: ```python def add(inputs, name=None): return gen_math_ops.add(inputs, name) ``` to: ```python from tensorflow.python.compat import compat def add(inputs, name=None): if compat.forward_compatible(year, month, day): # Can use the awesome new implementation. return gen_math_ops.my_new_awesome_add(inputs, name) # To maintain forward compatibiltiy, use the old implementation. return gen_math_ops.add(inputs, name) ``` Where `year`, `month`, and `day` specify the date beyond which binaries that consume a model are expected to have been updated to include the new operations. This date is typically at least 3 weeks beyond the date the code that adds the new operation is committed. Args: year: A year (e.g., 2018). month: A month (1 <= month <= 12) in year. day: A day (1 <= day <= 31, or 30, or 29, or 28) in month. Returns: True if the caller can expect that serialized TensorFlow graphs produced can be consumed by programs that are compiled with the TensorFlow library source code after (year, month, day). """ return _FORWARD_COMPATIBILITY_HORIZON > datetime.date(year, month, day) @tf_export("compat.forward_compatibility_horizon") @tf_contextlib.contextmanager def forward_compatibility_horizon(year, month, day): """Context manager for testing forward compatibility of generated graphs. See [Version compatibility](https://tensorflow.org/guide/version_compat#backward_forward). To ensure forward compatibility of generated graphs (see `forward_compatible`) with older binaries, new features can be gated with: ```python if compat.forward_compatible(year=2018, month=08, date=01): generate_graph_with_new_features() else: generate_graph_so_older_binaries_can_consume_it() ``` However, when adding new features, one may want to unittest it before the forward compatibility window expires. This context manager enables such tests. For example: ```python from tensorflow.python.compat import compat def testMyNewFeature(self): with compat.forward_compatibility_horizon(2018, 08, 02): # Test that generate_graph_with_new_features() has an effect ``` Args : year: A year (e.g. 2018). month: A month (1 <= month <= 12) in year. day: A day (1 <= day <= 31, or 30, or 29, or 28) in month. Yields: Nothing. """ global _FORWARD_COMPATIBILITY_HORIZON try: old_compat_date = _FORWARD_COMPATIBILITY_HORIZON _FORWARD_COMPATIBILITY_HORIZON = datetime.date(year, month, day) yield finally: _FORWARD_COMPATIBILITY_HORIZON = old_compat_date