tf.contrib.training.evaluate_repeatedly( checkpoint_dir, master='', scaffold=None, eval_ops=None, feed_dict=None, final_ops=None, final_ops_feed_dict=None, eval_interval_secs=60, hooks=None, config=None, max_number_of_evaluations=None, timeout=None, timeout_fn=None )
Defined in tensorflow/contrib/training/python/training/evaluation.py
.
Repeatedly searches for a checkpoint in checkpoint_dir
and evaluates it.
During a single evaluation, the eval_ops
is run until the session is interrupted or requested to finish. This is typically requested via a tf.contrib.training.StopAfterNEvalsHook
which results in eval_ops
running the requested number of times.
Optionally, a user can pass in final_ops
, a single Tensor
, a list of Tensors
or a dictionary from names to Tensors
. The final_ops
is evaluated a single time after eval_ops
has finished running and the fetched values of final_ops
are returned. If final_ops
is left as None
, then None
is returned.
One may also consider using a tf.contrib.training.SummaryAtEndHook
to record summaries after the eval_ops
have run. If eval_ops
is None
, the summaries run immediately after the model checkpoint has been restored.
Note that evaluate_once
creates a local variable used to track the number of evaluations run via tf.contrib.training.get_or_create_eval_step
. Consequently, if a custom local init op is provided via a scaffold
, the caller should ensure that the local init op also initializes the eval step.
checkpoint_dir
: The directory where checkpoints are stored.master
: The address of the TensorFlow master.scaffold
: An tf.train.Scaffold instance for initializing variables and restoring variables. Note that scaffold.init_fn
is used by the function to restore the checkpoint. If you supply a custom init_fn, then it must also take care of restoring the model from its checkpoint.eval_ops
: A single Tensor
, a list of Tensors
or a dictionary of names to Tensors
, which is run until the session is requested to stop, commonly done by a tf.contrib.training.StopAfterNEvalsHook
.feed_dict
: The feed dictionary to use when executing the eval_ops
.final_ops
: A single Tensor
, a list of Tensors
or a dictionary of names to Tensors
.final_ops_feed_dict
: A feed dictionary to use when evaluating final_ops
.eval_interval_secs
: The minimum number of seconds between evaluations.hooks
: List of tf.train.SessionRunHook
callbacks which are run inside the evaluation loop.config
: An instance of tf.ConfigProto
that will be used to configure the Session
. If left as None
, the default will be used.max_number_of_evaluations
: The maximum times to run the evaluation. If left as None
, then evaluation runs indefinitely.timeout
: The maximum amount of time to wait between checkpoints. If left as None
, then the process will wait indefinitely.timeout_fn
: Optional function to call after a timeout. If the function returns True, then it means that no new checkpoints will be generated and the iterator will exit. The function is called with no arguments.The fetched values of final_ops
or None
if final_ops
is None
.
© 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/contrib/training/evaluate_repeatedly