SingularMonitoredSession
Defined in tensorflow/python/training/monitored_session.py
.
See the guide: Training > Distributed execution
Session-like object that handles initialization, restoring, and hooks.
Please note that this utility is not recommended for distributed settings. For distributed settings, please use tf.train.MonitoredSession
. The differences between MonitoredSession
and SingularMonitoredSession
are:
MonitoredSession
handles AbortedError
and UnavailableError
for distributed settings, but SingularMonitoredSession
does not.MonitoredSession
can be created in chief
or worker
modes. SingularMonitoredSession
is always created as chief
.tf.Session
object used by SingularMonitoredSession
, whereas in MonitoredSession the raw session is private. This can be used:run
without hooks.Example usage:
saver_hook = CheckpointSaverHook(...) summary_hook = SummarySaverHook(...) with SingularMonitoredSession(hooks=[saver_hook, summary_hook]) as sess: while not sess.should_stop(): sess.run(train_op)
Initialization: At creation time the hooked session does following things in given order:
hook.begin()
for each given hookscaffold.finalize()
Scaffold
Run: When run()
is called, the hooked session does following things:
hook.before_run()
session.run()
with merged fetches and feed_dicthook.after_run()
session.run()
asked by userExit: At the close()
, the hooked session does following things in order:
hook.end()
OutOfRange
error which indicates that all inputs have been processed if the SingularMonitoredSession
is used as a context.graph
The graph that was launched in this session.
__init__
__init__( hooks=None, scaffold=None, master='', config=None, checkpoint_dir=None, stop_grace_period_secs=120, checkpoint_filename_with_path=None )
Creates a SingularMonitoredSession.
hooks
: An iterable of `SessionRunHook' objects.scaffold
: A Scaffold
used for gathering or building supportive ops. If not specified a default one is created. It's used to finalize the graph.master
: String
representation of the TensorFlow master to use.config
: ConfigProto
proto used to configure the session.checkpoint_dir
: A string. Optional path to a directory where to restore variables.stop_grace_period_secs
: Number of seconds given to threads to stop after close()
has been called.checkpoint_filename_with_path
: A string. Optional path to a checkpoint file from which to restore variables.__enter__
__enter__()
__exit__
__exit__( exception_type, exception_value, traceback )
close
close()
raw_session
raw_session()
Returns underlying TensorFlow.Session
object.
run
run( fetches, feed_dict=None, options=None, run_metadata=None )
Run ops in the monitored session.
This method is completely compatible with the tf.Session.run()
method.
fetches
: Same as tf.Session.run()
.feed_dict
: Same as tf.Session.run()
.options
: Same as tf.Session.run()
.run_metadata
: Same as tf.Session.run()
.Same as tf.Session.run()
.
run_step_fn
run_step_fn(step_fn)
Run ops using a step function.
step_fn
: A function or a method with a single argument of type StepContext
. The function may use methods of the argument to perform computations with access to a raw session.
The returned value of the step_fn
will be returned from run_step_fn
, unless a stop is requested. In that case, the next should_stop
call will return True.
Example usage:
```python with tf.Graph().as_default(): c = tf.placeholder(dtypes.float32) v = tf.add(c, 4.0) w = tf.add(c, 0.5)
def step_fn(step_context): a = step_context.session.run(fetches=v, feed_dict={c: 0.5}) if a <= 4.5: step_context.request_stop() return step_context.run_with_hooks(fetches=w, feed_dict={c: 0.1}) with tf.MonitoredSession() as session: while not session.should_stop(): a = session.run_step_fn(step_fn)
```
Hooks interact with the run_with_hooks()
call inside the step_fn
as they do with a MonitoredSession.run
call.
Returns the returned value of step_fn
.
StopIteration
: if step_fn
has called request_stop()
. It may be caught by with tf.MonitoredSession()
to close the session.ValueError
: if step_fn
doesn't have a single argument called step_context
. It may also optionally have self
for cases when it belongs to an object.should_stop
should_stop()
© 2018 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/api_docs/python/tf/train/SingularMonitoredSession