Operation
Defined in tensorflow/python/framework/ops.py
.
See the guide: Building Graphs > Core graph data structures
Represents a graph node that performs computation on tensors.
An Operation
is a node in a TensorFlow Graph
that takes zero or more Tensor
objects as input, and produces zero or more Tensor
objects as output. Objects of type Operation
are created by calling a Python op constructor (such as tf.matmul
) or tf.Graph.create_op
.
For example c = tf.matmul(a, b)
creates an Operation
of type "MatMul" that takes tensors a
and b
as input, and produces c
as output.
After the graph has been launched in a session, an Operation
can be executed by passing it to tf.Session.run
. op.run()
is a shortcut for calling tf.get_default_session().run(op)
.
control_inputs
The Operation
objects on which this op has a control dependency.
Before this op is executed, TensorFlow will ensure that the operations in self.control_inputs
have finished executing. This mechanism can be used to run ops sequentially for performance reasons, or to ensure that the side effects of an op are observed in the correct order.
A list of Operation
objects.
device
The name of the device to which this op has been assigned, if any.
The string name of the device to which this op has been assigned, or an empty string if it has not been assigned to a device.
graph
The Graph
that contains this operation.
inputs
The list of Tensor
objects representing the data inputs of this op.
name
The full name of this operation.
node_def
Returns the NodeDef
representation of this operation.
A NodeDef
protocol buffer.
op_def
Returns the OpDef
proto that represents the type of this op.
An OpDef
protocol buffer.
outputs
The list of Tensor
objects representing the outputs of this op.
traceback
Returns the call stack from when this operation was constructed.
traceback_with_start_lines
Same as traceback but includes start line of function definition.
A list of 5-tuples (filename, lineno, name, code, func_start_lineno).
type
The type of the op (e.g. "MatMul"
).
__init__
__init__( node_def, g, inputs=None, output_types=None, control_inputs=None, input_types=None, original_op=None, op_def=None )
Creates an Operation
.
NOTE: This constructor validates the name of the Operation
(passed as node_def.name
). Valid Operation
names match the following regular expression:
[A-Za-z0-9.][A-Za-z0-9_.\\-/]*
node_def
: node_def_pb2.NodeDef
. NodeDef
for the Operation
. Used for attributes of node_def_pb2.NodeDef
, typically name
, op
, and device
. The input
attribute is irrelevant here as it will be computed when generating the model.g
: Graph
. The parent graph.inputs
: list of Tensor
objects. The inputs to this Operation
.output_types
: list of DType
objects. List of the types of the Tensors
computed by this operation. The length of this list indicates the number of output endpoints of the Operation
.control_inputs
: list of operations or tensors from which to have a control dependency.input_types
: List of DType
objects representing the types of the tensors accepted by the Operation
. By default uses [x.dtype.base_dtype for x in inputs]
. Operations that expect reference-typed inputs must specify these explicitly.original_op
: Optional. Used to associate the new Operation
with an existing Operation
(for example, a replica with the op that was replicated).op_def
: Optional. The op_def_pb2.OpDef
proto that describes the op type that this Operation
represents.TypeError
: if control inputs are not Operations or Tensors, or if node_def
is not a NodeDef
, or if g
is not a Graph
, or if inputs
are not tensors, or if inputs
and input_types
are incompatible.ValueError
: if the node_def
name is not valid.colocation_groups
colocation_groups()
Returns the list of colocation groups of the op.
get_attr
get_attr(name)
Returns the value of the attr of this op with the given name
.
name
: The name of the attr to fetch.The value of the attr, as a Python object.
ValueError
: If this op does not have an attr with the given name
.run
run( feed_dict=None, session=None )
Runs this operation in a Session
.
Calling this method will execute all preceding operations that produce the inputs needed for this operation.
N.B. Before invoking Operation.run()
, its graph must have been launched in a session, and either a default session must be available, or session
must be specified explicitly.
feed_dict
: A dictionary that maps Tensor
objects to feed values. See tf.Session.run
for a description of the valid feed values.session
: (Optional.) The Session
to be used to run to this operation. If none, the default session will be used.values
values()
DEPRECATED: Use outputs.
© 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/Operation