tf.train.Checkpoint
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Groups trackable objects, saving and restoring them.
Inherits From: Checkpointable
tf.train.Checkpoint( **kwargs )
Checkpoint
's constructor accepts keyword arguments whose values are types that contain trackable state, such as tf.compat.v1.train.Optimizer
implementations, tf.Variable
, tf.keras.Layer
implementations, or tf.keras.Model
implementations. It saves these values with a checkpoint, and maintains a save_counter
for numbering checkpoints.
Example usage when graph building:
import tensorflow as tf import os checkpoint_directory = "/tmp/training_checkpoints" checkpoint_prefix = os.path.join(checkpoint_directory, "ckpt") checkpoint = tf.train.Checkpoint(optimizer=optimizer, model=model) status = checkpoint.restore(tf.train.latest_checkpoint(checkpoint_directory)) train_op = optimizer.minimize( ... ) status.assert_consumed() # Optional sanity checks. with tf.compat.v1.Session() as session: # Use the Session to restore variables, or initialize them if # tf.train.latest_checkpoint returned None. status.initialize_or_restore(session) for _ in range(num_training_steps): session.run(train_op) checkpoint.save(file_prefix=checkpoint_prefix)
Example usage with eager execution enabled:
import tensorflow as tf import os tf.compat.v1.enable_eager_execution() checkpoint_directory = "/tmp/training_checkpoints" checkpoint_prefix = os.path.join(checkpoint_directory, "ckpt") checkpoint = tf.train.Checkpoint(optimizer=optimizer, model=model) status = checkpoint.restore(tf.train.latest_checkpoint(checkpoint_directory)) for _ in range(num_training_steps): optimizer.minimize( ... ) # Variables will be restored on creation. status.assert_consumed() # Optional sanity checks. checkpoint.save(file_prefix=checkpoint_prefix)
Checkpoint.save
and Checkpoint.restore
write and read object-based checkpoints, in contrast to tf.compat.v1.train.Saver
which writes and reads variable.name
based checkpoints. Object-based checkpointing saves a graph of dependencies between Python objects (Layer
s, Optimizer
s, Variable
s, etc.) with named edges, and this graph is used to match variables when restoring a checkpoint. It can be more robust to changes in the Python program, and helps to support restore-on-create for variables when executing eagerly. Prefer tf.train.Checkpoint
over tf.compat.v1.train.Saver
for new code.
Checkpoint
objects have dependencies on the objects passed as keyword arguments to their constructors, and each dependency is given a name that is identical to the name of the keyword argument for which it was created. TensorFlow classes like Layer
s and Optimizer
s will automatically add dependencies on their variables (e.g. "kernel" and "bias" for tf.keras.layers.Dense
). Inheriting from tf.keras.Model
makes managing dependencies easy in user-defined classes, since Model
hooks into attribute assignment. For example:
class Regress(tf.keras.Model): def __init__(self): super(Regress, self).__init__() self.input_transform = tf.keras.layers.Dense(10) # ... def call(self, inputs): x = self.input_transform(inputs) # ...
This Model
has a dependency named "input_transform" on its Dense
layer, which in turn depends on its variables. As a result, saving an instance of Regress
using tf.train.Checkpoint
will also save all the variables created by the Dense
layer.
When variables are assigned to multiple workers, each worker writes its own section of the checkpoint. These sections are then merged/re-indexed to behave as a single checkpoint. This avoids copying all variables to one worker, but does require that all workers see a common filesystem.
While tf.keras.Model.save_weights
and tf.train.Checkpoint.save
save in the same format, note that the root of the resulting checkpoint is the object the save method is attached to. This means saving a tf.keras.Model
using save_weights
and loading into a tf.train.Checkpoint
with a Model
attached (or vice versa) will not match the Model
's variables. See the guide to training checkpoints for details. Prefer tf.train.Checkpoint
over tf.keras.Model.save_weights
for training checkpoints.
Args | |
---|---|
**kwargs | Keyword arguments are set as attributes of this object, and are saved with the checkpoint. Values must be trackable objects. |
Raises | |
---|---|
ValueError | If objects in kwargs are not trackable. |
Attributes | |
---|---|
save_counter | Incremented when save() is called. Used to number checkpoints. |
Methods
restore
restore( save_path )
Restore a training checkpoint.
Restores this Checkpoint
and any objects it depends on.
When executing eagerly, either assigns values immediately if variables to restore have been created already, or defers restoration until the variables are created. Dependencies added after this call will be matched if they have a corresponding object in the checkpoint (the restore request will queue in any trackable object waiting for the expected dependency to be added).
When graph building, restoration ops are added to the graph but not run immediately.
To ensure that loading is complete and no more assignments will take place, use the assert_consumed()
method of the status object returned by restore
:
checkpoint = tf.train.Checkpoint( ... ) checkpoint.restore(path).assert_consumed()
An exception will be raised if any Python objects in the dependency graph were not found in the checkpoint, or if any checkpointed values do not have a matching Python object.
When graph building, assert_consumed()
indicates that all of the restore ops that will be created for this checkpoint have been created. They can be run via the run_restore_ops()
method of the status object:
checkpoint.restore(path).assert_consumed().run_restore_ops()
If the checkpoint has not been consumed completely, then the list of restore ops will grow as more objects are added to the dependency graph.
Name-based tf.compat.v1.train.Saver
checkpoints can be loaded using this method. Names are used to match variables. No restore ops are created/run until run_restore_ops()
or initialize_or_restore()
are called on the returned status object when graph building, but there is restore-on-creation when executing eagerly. Re-encode name-based checkpoints using tf.train.Checkpoint.save
as soon as possible.
Args | |
---|---|
save_path | The path to the checkpoint, as returned by save or tf.train.latest_checkpoint . If None (as when there is no latest checkpoint for tf.train.latest_checkpoint to return), returns an object which may run initializers for objects in the dependency graph. If the checkpoint was written by the name-based tf.compat.v1.train.Saver , names are used to match variables. |
Returns | |
---|---|
A load status object, which can be used to make assertions about the status of a checkpoint restoration and run initialization/restore ops. The returned status object has the following methods:
|
save
save( file_prefix, session=None )
Saves a training checkpoint and provides basic checkpoint management.
The saved checkpoint includes variables created by this object and any trackable objects it depends on at the time Checkpoint.save()
is called.
save
is a basic convenience wrapper around the write
method, sequentially numbering checkpoints using save_counter
and updating the metadata used by tf.train.latest_checkpoint
. More advanced checkpoint management, for example garbage collection and custom numbering, may be provided by other utilities which also wrap write
(tf.contrib.checkpoint.CheckpointManager
for example).
Args | |
---|---|
file_prefix | A prefix to use for the checkpoint filenames (/path/to/directory/and_a_prefix). Names are generated based on this prefix and Checkpoint.save_counter . |
session | The session to evaluate variables in. Ignored when executing eagerly. If not provided when graph building, the default session is used. |
Returns | |
---|---|
The full path to the checkpoint. |
write
write( file_prefix, session=None )
Writes a training checkpoint.
The checkpoint includes variables created by this object and any trackable objects it depends on at the time Checkpoint.write()
is called.
write
does not number checkpoints, increment save_counter
, or update the metadata used by tf.train.latest_checkpoint
. It is primarily intended for use by higher level checkpoint management utilities. save
provides a very basic implementation of these features.
Args | |
---|---|
file_prefix | A prefix to use for the checkpoint filenames (/path/to/directory/and_a_prefix). |
session | The session to evaluate variables in. Ignored when executing eagerly. If not provided when graph building, the default session is used. |
Returns | |
---|---|
The full path to the checkpoint (i.e. file_prefix ). |
© 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/train/Checkpoint