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 | 
Training helper that restores from checkpoint and creates session.
tf.compat.v1.train.SessionManager(
    local_init_op=None, ready_op=None, ready_for_local_init_op=None, graph=None,
    recovery_wait_secs=30, local_init_run_options=None, local_init_feed_dict=None
)
This class is a small wrapper that takes care of session creation and checkpoint recovery. It also provides functions that to facilitate coordination among multiple training threads or processes.
- Checkpointing trained variables as the training progresses.
 - Initializing variables on startup, restoring them from the most recent checkpoint after a crash, or wait for checkpoints to become available.
 
Usage:
with tf.Graph().as_default():
   ...add operations to the graph...
  # Create a SessionManager that will checkpoint the model in '/tmp/mydir'.
  sm = SessionManager()
  sess = sm.prepare_session(master, init_op, saver, checkpoint_dir)
  # Use the session to train the graph.
  while True:
    sess.run(<my_train_op>)
prepare_session() initializes or restores a model. It requires init_op
and saver as an argument.
A second process could wait for the model to be ready by doing the following:
with tf.Graph().as_default():
   ...add operations to the graph...
  # Create a SessionManager that will wait for the model to become ready.
  sm = SessionManager()
  sess = sm.wait_for_session(master)
  # Use the session to train the graph.
  while True:
    sess.run(<my_train_op>)
wait_for_session() waits for a model to be initialized by other processes.
Args | |
|---|---|
local_init_op
 | 
An Operation run immediately after session creation.
Usually used to initialize tables and local variables.
 | 
ready_op
 | 
An Operation to check if the model is initialized.
 | 
ready_for_local_init_op
 | 
An Operation to check if the model is ready
to run local_init_op.
 | 
graph
 | 
The Graph that the model will use.
 | 
recovery_wait_secs
 | 
Seconds between checks for the model to be ready. | 
local_init_run_options
 | 
RunOptions to be passed to session.run when executing the local_init_op. | 
local_init_feed_dict
 | 
Optional session feed dictionary to use when running the local_init_op. | 
Raises | |
|---|---|
ValueError
 | 
If ready_for_local_init_op is not None but local_init_op is None | 
Methods
prepare_session
prepare_session(
    master, init_op=None, saver=None, checkpoint_dir=None,
    checkpoint_filename_with_path=None, wait_for_checkpoint=False,
    max_wait_secs=7200, config=None, init_feed_dict=None, init_fn=None
)
Creates a Session. Makes sure the model is ready to be used.
Creates a Session on 'master'. If a saver object is passed in, and
checkpoint_dir points to a directory containing valid checkpoint
files, then it will try to recover the model from checkpoint. If
no checkpoint files are available, and wait_for_checkpoint is
True, then the process would check every recovery_wait_secs,
up to max_wait_secs, for recovery to succeed.
If the model cannot be recovered successfully then it is initialized by
running the init_op and calling init_fn if they are provided.
The local_init_op is also run after init_op and init_fn, regardless of
whether the model was recovered successfully, but only if
ready_for_local_init_op passes.
If the model is recovered from a checkpoint it is assumed that all
global variables have been initialized, in particular neither init_op
nor init_fn will be executed.
It is an error if the model cannot be recovered and no init_op
or init_fn or local_init_op are passed.
| Args | |
|---|---|
master
 | 
String representation of the TensorFlow master to use.
 | 
init_op
 | 
Optional Operation used to initialize the model.
 | 
saver
 | 
A Saver object used to restore a model.
 | 
checkpoint_dir
 | 
Path to the checkpoint files. The latest checkpoint in the dir will be used to restore. | 
checkpoint_filename_with_path
 | 
Full file name path to the checkpoint file. | 
wait_for_checkpoint
 | 
Whether to wait for checkpoint to become available. | 
max_wait_secs
 | 
Maximum time to wait for checkpoints to become available. | 
config
 | 
Optional ConfigProto proto used to configure the session.
 | 
init_feed_dict
 | 
Optional dictionary that maps Tensor objects to feed
values.  This feed dictionary is passed to the session run() call when
running the init op.
 | 
init_fn
 | 
Optional callable used to initialize the model. Called after the
optional init_op is called.  The callable must accept one argument,
the session being initialized.
 | 
| Returns | |
|---|---|
A Session object that can be used to drive the model.
 | 
| Raises | |
|---|---|
RuntimeError
 | 
If the model cannot be initialized or recovered. | 
ValueError
 | 
If both checkpoint_dir and checkpoint_filename_with_path are set. | 
recover_session
recover_session(
    master, saver=None, checkpoint_dir=None, checkpoint_filename_with_path=None,
    wait_for_checkpoint=False, max_wait_secs=7200, config=None
)
Creates a Session, recovering if possible.
Creates a new session on 'master'. If the session is not initialized and can be recovered from a checkpoint, recover it.
| Args | |
|---|---|
master
 | 
String representation of the TensorFlow master to use.
 | 
saver
 | 
A Saver object used to restore a model.
 | 
checkpoint_dir
 | 
Path to the checkpoint files. The latest checkpoint in the dir will be used to restore. | 
checkpoint_filename_with_path
 | 
Full file name path to the checkpoint file. | 
wait_for_checkpoint
 | 
Whether to wait for checkpoint to become available. | 
max_wait_secs
 | 
Maximum time to wait for checkpoints to become available. | 
config
 | 
Optional ConfigProto proto used to configure the session.
 | 
| Returns | |
|---|---|
A pair (sess, initialized) where 'initialized' is True if
the session could be recovered and initialized, False otherwise.
 | 
| Raises | |
|---|---|
ValueError
 | 
If both checkpoint_dir and checkpoint_filename_with_path are set. | 
wait_for_session
wait_for_session(
    master, config=None, max_wait_secs=float('Inf')
)
Creates a new Session and waits for model to be ready.
Creates a new Session on 'master'.  Waits for the model to be
initialized or recovered from a checkpoint.  It's expected that
another thread or process will make the model ready, and that this
is intended to be used by threads/processes that participate in a
distributed training configuration where a different thread/process
is responsible for initializing or recovering the model being trained.
NB: The amount of time this method waits for the session is bounded by max_wait_secs. By default, this function will wait indefinitely.
| Args | |
|---|---|
master
 | 
String representation of the TensorFlow master to use.
 | 
config
 | 
Optional ConfigProto proto used to configure the session. | 
max_wait_secs
 | 
Maximum time to wait for the session to become available. | 
| Returns | |
|---|---|
A Session. May be None if the operation exceeds the timeout
specified by config.operation_timeout_in_ms.
 | 
| Raises | |
|---|---|
tf.DeadlineExceededError
 | 
if the session is not available after max_wait_secs. | 
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