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Standard names to use for graph collections.
The standard library uses various well-known names to collect and
retrieve values associated with a graph. For example, the
tf.Optimizer subclasses default to optimizing the variables
collected under tf.GraphKeys.TRAINABLE_VARIABLES if none is
specified, but it is also possible to pass an explicit list of
variables.
The following standard keys are defined:
GLOBAL_VARIABLES: the default collection ofVariableobjects, shared across distributed environment (model variables are subset of these). Seetf.compat.v1.global_variablesfor more details. Commonly, allTRAINABLE_VARIABLESvariables will be inMODEL_VARIABLES, and allMODEL_VARIABLESvariables will be inGLOBAL_VARIABLES.LOCAL_VARIABLES: the subset ofVariableobjects that are local to each machine. Usually used for temporarily variables, like counters. Note: usetf.contrib.framework.local_variableto add to this collection.MODEL_VARIABLES: the subset ofVariableobjects that are used in the model for inference (feed forward). Note: usetf.contrib.framework.model_variableto add to this collection.TRAINABLE_VARIABLES: the subset ofVariableobjects that will be trained by an optimizer. Seetf.compat.v1.trainable_variablesfor more details.SUMMARIES: the summaryTensorobjects that have been created in the graph. Seetf.compat.v1.summary.merge_allfor more details.QUEUE_RUNNERS: theQueueRunnerobjects that are used to produce input for a computation. Seetf.compat.v1.train.start_queue_runnersfor more details.MOVING_AVERAGE_VARIABLES: the subset ofVariableobjects that will also keep moving averages. Seetf.compat.v1.moving_average_variablesfor more details.REGULARIZATION_LOSSES: regularization losses collected during graph construction.
The following standard keys are defined, but their collections are not automatically populated as many of the others are:
WEIGHTSBIASESACTIVATIONS
Class Variables
ACTIVATIONS = 'activations'ASSET_FILEPATHS = 'asset_filepaths'BIASES = 'biases'CONCATENATED_VARIABLES = 'concatenated_variables'COND_CONTEXT = 'cond_context'EVAL_STEP = 'eval_step'GLOBAL_STEP = 'global_step'GLOBAL_VARIABLES = 'variables'INIT_OP = 'init_op'LOCAL_INIT_OP = 'local_init_op'LOCAL_RESOURCES = 'local_resources'LOCAL_VARIABLES = 'local_variables'LOSSES = 'losses'METRIC_VARIABLES = 'metric_variables'MODEL_VARIABLES = 'model_variables'MOVING_AVERAGE_VARIABLES = 'moving_average_variables'QUEUE_RUNNERS = 'queue_runners'READY_FOR_LOCAL_INIT_OP = 'ready_for_local_init_op'READY_OP = 'ready_op'REGULARIZATION_LOSSES = 'regularization_losses'RESOURCES = 'resources'SAVEABLE_OBJECTS = 'saveable_objects'SAVERS = 'savers'SUMMARIES = 'summaries'SUMMARY_OP = 'summary_op'TABLE_INITIALIZERS = 'table_initializer'TRAINABLE_RESOURCE_VARIABLES = 'trainable_resource_variables'TRAINABLE_VARIABLES = 'trainable_variables'TRAIN_OP = 'train_op'UPDATE_OPS = 'update_ops'VARIABLES = 'variables'WEIGHTS = 'weights'WHILE_CONTEXT = 'while_context'
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