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Saves and restores variables.
tf.compat.v1.train.Saver(
var_list=None, reshape=False, sharded=False, max_to_keep=5,
keep_checkpoint_every_n_hours=10000.0, name=None, restore_sequentially=False,
saver_def=None, builder=None, defer_build=False, allow_empty=False,
write_version=tf.train.SaverDef.V2, pad_step_number=False,
save_relative_paths=False, filename=None
)
See Variables for an overview of variables, saving and restoring.
The Saver
class adds ops to save and restore variables to and from
checkpoints. It also provides convenience methods to run these ops.
Checkpoints are binary files in a proprietary format which map variable names
to tensor values. The best way to examine the contents of a checkpoint is to
load it using a Saver
.
Savers can automatically number checkpoint filenames with a provided counter. This lets you keep multiple checkpoints at different steps while training a model. For example you can number the checkpoint filenames with the training step number. To avoid filling up disks, savers manage checkpoint files automatically. For example, they can keep only the N most recent files, or one checkpoint for every N hours of training.
You number checkpoint filenames by passing a value to the optional
global_step
argument to save()
:
saver.save(sess, 'my-model', global_step=0) ==> filename: 'my-model-0'
...
saver.save(sess, 'my-model', global_step=1000) ==> filename: 'my-model-1000'
Additionally, optional arguments to the Saver()
constructor let you control
the proliferation of checkpoint files on disk:
max_to_keep
indicates the maximum number of recent checkpoint files to keep. As new files are created, older files are deleted. If None or 0, no checkpoints are deleted from the filesystem but only the last one is kept in thecheckpoint
file. Defaults to 5 (that is, the 5 most recent checkpoint files are kept.)keep_checkpoint_every_n_hours
: In addition to keeping the most recentmax_to_keep
checkpoint files, you might want to keep one checkpoint file for every N hours of training. This can be useful if you want to later analyze how a model progressed during a long training session. For example, passingkeep_checkpoint_every_n_hours=2
ensures that you keep one checkpoint file for every 2 hours of training. The default value of 10,000 hours effectively disables the feature.
Note that you still have to call the save()
method to save the model.
Passing these arguments to the constructor will not save variables
automatically for you.
A training program that saves regularly looks like:
...
# Create a saver.
saver = tf.compat.v1.train.Saver(...variables...)
# Launch the graph and train, saving the model every 1,000 steps.
sess = tf.compat.v1.Session()
for step in xrange(1000000):
sess.run(..training_op..)
if step % 1000 == 0:
# Append the step number to the checkpoint name:
saver.save(sess, 'my-model', global_step=step)
In addition to checkpoint files, savers keep a protocol buffer on disk with
the list of recent checkpoints. This is used to manage numbered checkpoint
files and by latest_checkpoint()
, which makes it easy to discover the path
to the most recent checkpoint. That protocol buffer is stored in a file named
'checkpoint' next to the checkpoint files.
If you create several savers, you can specify a different filename for the
protocol buffer file in the call to save()
.
Args | |
---|---|
var_list
|
A list of Variable /SaveableObject , or a dictionary mapping
names to SaveableObject s. If None , defaults to the list of all
saveable objects.
|
reshape
|
If True , allows restoring parameters from a checkpoint where
the variables have a different shape.
|
sharded
|
If True , shard the checkpoints, one per device.
|
max_to_keep
|
Maximum number of recent checkpoints to keep. Defaults to 5. |
keep_checkpoint_every_n_hours
|
How often to keep checkpoints. Defaults to 10,000 hours. |
name
|
String. Optional name to use as a prefix when adding operations. |
restore_sequentially
|
A Bool , which if true, causes restore of different
variables to happen sequentially within each device. This can lower
memory usage when restoring very large models.
|
saver_def
|
Optional SaverDef proto to use instead of running the
builder. This is only useful for specialty code that wants to recreate a
Saver object for a previously built Graph that had a Saver . The
saver_def proto should be the one returned by the as_saver_def()
call of the Saver that was created for that Graph .
|
builder
|
Optional SaverBuilder to use if a saver_def was not provided.
Defaults to BulkSaverBuilder() .
|
defer_build
|
If True , defer adding the save and restore ops to the
build() call. In that case build() should be called before
finalizing the graph or using the saver.
|
allow_empty
|
If False (default) raise an error if there are no variables
in the graph. Otherwise, construct the saver anyway and make it a no-op.
|
write_version
|
controls what format to use when saving checkpoints. It also affects certain filepath matching logic. The V2 format is the recommended choice: it is much more optimized than V1 in terms of memory required and latency incurred during restore. Regardless of this flag, the Saver is able to restore from both V2 and V1 checkpoints. |
pad_step_number
|
if True, pads the global step number in the checkpoint filepaths to some fixed width (8 by default). This is turned off by default. |
save_relative_paths
|
If True , will write relative paths to the
checkpoint state file. This is needed if the user wants to copy the
checkpoint directory and reload from the copied directory.
|
filename
|
If known at graph construction time, filename used for variable loading/saving. |
Raises | |
---|---|
TypeError
|
If var_list is invalid.
|
ValueError
|
If any of the keys or values in var_list are not unique.
|
RuntimeError
|
If eager execution is enabled andvar_list does not specify
a list of variables to save.
|
Attributes | |
---|---|
last_checkpoints
|
List of not-yet-deleted checkpoint filenames.
You can pass any of the returned values to |
Methods
as_saver_def
as_saver_def()
Generates a SaverDef
representation of this saver.
Returns | |
---|---|
A SaverDef proto.
|
build
build()
export_meta_graph
export_meta_graph(
filename=None, collection_list=None, as_text=False, export_scope=None,
clear_devices=False, clear_extraneous_savers=False, strip_default_attrs=False,
save_debug_info=False
)
Writes MetaGraphDef
to save_path/filename.
Args | |
---|---|
filename
|
Optional meta_graph filename including the path. |
collection_list
|
List of string keys to collect. |
as_text
|
If True , writes the meta_graph as an ASCII proto.
|
export_scope
|
Optional string . Name scope to remove.
|
clear_devices
|
Whether or not to clear the device field for an Operation
or Tensor during export.
|
clear_extraneous_savers
|
Remove any Saver-related information from the graph (both Save/Restore ops and SaverDefs) that are not associated with this Saver. |
strip_default_attrs
|
Boolean. If True , default-valued attributes will be
removed from the NodeDefs. For a detailed guide, see
Stripping Default-Valued
Attributes.
|
save_debug_info
|
If True , save the GraphDebugInfo to a separate file,
which in the same directory of filename and with _debug added before
the file extension.
|
Returns | |
---|---|
A MetaGraphDef proto.
|
from_proto
@staticmethod
from_proto( saver_def, import_scope=None )
Returns a Saver
object created from saver_def
.
Args | |
---|---|
saver_def
|
a SaverDef protocol buffer.
|
import_scope
|
Optional string . Name scope to use.
|
Returns | |
---|---|
A Saver built from saver_def.
|
recover_last_checkpoints
recover_last_checkpoints(
checkpoint_paths
)
Recovers the internal saver state after a crash.
This method is useful for recovering the "self._last_checkpoints" state.
Globs for the checkpoints pointed to by checkpoint_paths
. If the files
exist, use their mtime as the checkpoint timestamp.
Args | |
---|---|
checkpoint_paths
|
a list of checkpoint paths. |
restore
restore(
sess, save_path
)
Restores previously saved variables.
This method runs the ops added by the constructor for restoring variables. It requires a session in which the graph was launched. The variables to restore do not have to have been initialized, as restoring is itself a way to initialize variables.
The save_path
argument is typically a value previously returned from a
save()
call, or a call to latest_checkpoint()
.
Args | |
---|---|
sess
|
A Session to use to restore the parameters. None in eager mode.
|
save_path
|
Path where parameters were previously saved. |
Raises | |
---|---|
ValueError
|
If save_path is None or not a valid checkpoint. |
save
save(
sess, save_path, global_step=None, latest_filename=None,
meta_graph_suffix='meta', write_meta_graph=True, write_state=True,
strip_default_attrs=False, save_debug_info=False
)
Saves variables.
This method runs the ops added by the constructor for saving variables. It requires a session in which the graph was launched. The variables to save must also have been initialized.
The method returns the path prefix of the newly created checkpoint files.
This string can be passed directly to a call to restore()
.
Args | |
---|---|
sess
|
A Session to use to save the variables. |
save_path
|
String. Prefix of filenames created for the checkpoint. |
global_step
|
If provided the global step number is appended to save_path
to create the checkpoint filenames. The optional argument can be a
Tensor , a Tensor name or an integer.
|
latest_filename
|
Optional name for the protocol buffer file that will contains the list of most recent checkpoints. That file, kept in the same directory as the checkpoint files, is automatically managed by the saver to keep track of recent checkpoints. Defaults to 'checkpoint'. |
meta_graph_suffix
|
Suffix for MetaGraphDef file. Defaults to 'meta'.
|
write_meta_graph
|
Boolean indicating whether or not to write the meta
graph file.
|
write_state
|
Boolean indicating whether or not to write the
CheckpointStateProto .
|
strip_default_attrs
|
Boolean. If True , default-valued attributes will be
removed from the NodeDefs. For a detailed guide, see
Stripping Default-Valued
Attributes.
|
save_debug_info
|
If True , save the GraphDebugInfo to a separate file,
which in the same directory of save_path and with _debug added before
the file extension. This is only enabled when write_meta_graph is
True
|
Returns | |
---|---|
A string: path prefix used for the checkpoint files. If the saver is sharded, this string ends with: '-?????-of-nnnnn' where 'nnnnn' is the number of shards created. If the saver is empty, returns None. |
Raises | |
---|---|
TypeError
|
If sess is not a Session .
|
ValueError
|
If latest_filename contains path components, or if it
collides with save_path .
|
RuntimeError
|
If save and restore ops weren't built. |
set_last_checkpoints
set_last_checkpoints(
last_checkpoints
)
DEPRECATED: Use set_last_checkpoints_with_time.
Sets the list of old checkpoint filenames.
Args | |
---|---|
last_checkpoints
|
A list of checkpoint filenames. |
Raises | |
---|---|
AssertionError
|
If last_checkpoints is not a list. |
set_last_checkpoints_with_time
set_last_checkpoints_with_time(
last_checkpoints_with_time
)
Sets the list of old checkpoint filenames and timestamps.
Args | |
---|---|
last_checkpoints_with_time
|
A list of tuples of checkpoint filenames and timestamps. |
Raises | |
---|---|
AssertionError
|
If last_checkpoints_with_time is not a list. |
to_proto
to_proto(
export_scope=None
)
Converts this Saver
to a SaverDef
protocol buffer.
Args | |
---|---|
export_scope
|
Optional string . Name scope to remove.
|
Returns | |
---|---|
A SaverDef protocol buffer.
|