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|
Session-like object that handles initialization, restoring, and hooks.
tf.compat.v1.train.SingularMonitoredSession(
hooks=None, scaffold=None, master='', config=None, checkpoint_dir=None,
stop_grace_period_secs=120, checkpoint_filename_with_path=None
)
Please note that this utility is not recommended for distributed settings.
For distributed settings, please use tf.compat.v1.train.MonitoredSession.
The
differences between MonitoredSession and SingularMonitoredSession are:
MonitoredSessionhandlesAbortedErrorandUnavailableErrorfor distributed settings, butSingularMonitoredSessiondoes not.MonitoredSessioncan be created inchieforworkermodes.SingularMonitoredSessionis always created aschief.- You can access the raw
tf.compat.v1.Sessionobject used bySingularMonitoredSession, whereas in MonitoredSession the raw session is private. This can be used:- To
runwithout hooks. - To save and restore.
- To
- All other functionality is identical.
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:
- calls
hook.begin()for each given hook - finalizes the graph via
scaffold.finalize() - create session
- initializes the model via initialization ops provided by
Scaffold - restores variables if a checkpoint exists
- launches queue runners
Run: When run() is called, the hooked session does following things:
- calls
hook.before_run() - calls TensorFlow
session.run()with merged fetches and feed_dict - calls
hook.after_run() - returns result of
session.run()asked by user
Exit: At the close(), the hooked session does following things in order:
- calls
hook.end() - closes the queue runners and the session
- suppresses
OutOfRangeerror which indicates that all inputs have been processed if theSingularMonitoredSessionis used as a context.
Args | ||
|---|---|---|
hooks
|
An iterable of SessionRunHook' objects.
</td>
</tr><tr>
<td>scaffold</td>
<td>
AScaffoldused for gathering or building supportive ops. If
not specified a default one is created. It's used to finalize the graph.
</td>
</tr><tr>
<td>master</td>
<td>Stringrepresentation of the TensorFlow master to use.
</td>
</tr><tr>
<td>config</td>
<td>ConfigProtoproto used to configure the session.
</td>
</tr><tr>
<td>checkpoint_dir</td>
<td>
A string. Optional path to a directory where to restore
variables.
</td>
</tr><tr>
<td>stop_grace_period_secs</td>
<td>
Number of seconds given to threads to stop afterclose()has been called.
</td>
</tr><tr>
<td>checkpoint_filename_with_path`
|
A string. Optional path to a checkpoint file from which to restore variables. |
Attributes | |
|---|---|
graph
|
The graph that was launched in this session. |
Child Classes
Methods
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.
| Args | |
|---|---|
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().
|
| Returns | |
|---|---|
Same as tf.Session.run().
|
run_step_fn
run_step_fn(
step_fn
)
Run ops using a step function.
| Args | |
|---|---|
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:
Hooks interact with the |
| Returns | |
|---|---|
Returns the returned value of step_fn.
|
| Raises | |
|---|---|
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()
__enter__
__enter__()
__exit__
__exit__(
exception_type, exception_value, traceback
)
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