Concat
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Concatenates tensors along one dimension.
Public Methods
Output
<T>
|
asOutput
()
Returns the symbolic handle of a tensor.
|
static
<T, U extends Number>
Concat
<T>
|
create
(
Scope
scope, Iterable<
Operand
<T>> values,
Operand
<U> axis)
Factory method to create a class wrapping a new Concat operation.
|
Output
<T>
|
output
()
A `Tensor` with the concatenation of values stacked along the
`concat_dim` dimension.
|
Inherited Methods
From class
java.lang.Object
boolean
|
equals
(Object arg0)
|
final
Class<?>
|
getClass
()
|
int
|
hashCode
()
|
final
void
|
notify
()
|
final
void
|
notifyAll
()
|
String
|
toString
()
|
final
void
|
wait
(long arg0, int arg1)
|
final
void
|
wait
(long arg0)
|
final
void
|
wait
()
|
Public Methods
public
Output
<T>
asOutput
()
Returns the symbolic handle of a tensor.
Inputs to TensorFlow operations are outputs of another TensorFlow operation. This method is
used to obtain a symbolic handle that represents the computation of the input.
public
static
Concat
<T>
create
(
Scope
scope, Iterable<
Operand
<T>> values,
Operand
<U> axis)
Factory method to create a class wrapping a new Concat operation.
Parameters
scope
|
current scope
|
values
|
List of `N` Tensors to concatenate. Their ranks and types must match,
and their sizes must match in all dimensions except `concat_dim`.
|
axis
|
0-D. The dimension along which to concatenate. Must be in the
range [-rank(values), rank(values)).
|
public
Output
<T>
output
()
A `Tensor` with the concatenation of values stacked along the
`concat_dim` dimension. This tensor's shape matches that of `values` except
in `concat_dim` where it has the sum of the sizes.
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Last updated 2021-05-14 UTC.
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