TensorFlow 2 version | View source on GitHub |
Represents a graph node that performs computation on tensors.
tf.Operation(
node_def, g, inputs=None, output_types=None, control_inputs=None,
input_types=None, original_op=None, op_def=None
)
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.compat.v1.get_default_session().run(op)
.
Args | |
---|---|
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.
|
Raises | |
---|---|
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.
|
Attributes | |
---|---|
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 |
device
|
The name of the device to which this op has been assigned, if any. |
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.
|
op_def
|
Returns the OpDef proto that represents the type of this op.
|
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. |
type
|
The type of the op (e.g. "MatMul" ).
|
Methods
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
.
Args | |
---|---|
name
|
The name of the attr to fetch. |
Returns | |
---|---|
The value of the attr, as a Python object. |
Raises | |
---|---|
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.
Args | |
---|---|
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.