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Return true if the forward compatibility window has expired.
tf.compat.forward_compatible( year, month, day )
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:
def add(inputs, name=None): return gen_math_ops.add(inputs, name)
to:
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). Must be an int . |
month | A month (1 <= month <= 12) in year. Must be an int . |
day | A day (1 <= day <= 31, or 30, or 29, or 28) in month. Must be an int . |
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). |
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r1.15/api_docs/python/tf/compat/forward_compatible