Broadcast an array for a compatible shape.
tf.broadcast_to(
input: _atypes.TensorFuzzingAnnotation[TV_BroadcastTo_T],
shape: _atypes.TensorFuzzingAnnotation[TV_BroadcastTo_Tidx],
name=None
) -> _atypes.TensorFuzzingAnnotation[TV_BroadcastTo_T]
Broadcasting is the process of making arrays to have compatible shapes for arithmetic operations. Two shapes are compatible if for each dimension pair they are either equal or one of them is one.
For example:
x = tf.constant([[1, 2, 3]]) # Shape (1, 3,)
y = tf.broadcast_to(x, [2, 3])
print(y)
tf.Tensor(
[[1 2 3]
[1 2 3]], shape=(2, 3), dtype=int32)
In the above example, the input Tensor with the shape of [1, 3]
is broadcasted to output Tensor with shape of [2, 3]
.
When broadcasting, if a tensor has fewer axes than necessary its shape is padded on the left with ones. So this gives the same result as the previous example:
x = tf.constant([1, 2, 3]) # Shape (3,)
y = tf.broadcast_to(x, [2, 3])
When doing broadcasted operations such as multiplying a tensor by a scalar, broadcasting (usually) confers some time or space benefit, as the broadcasted tensor is never materialized.
However, broadcast_to
does not carry with it any such benefits.
The newly-created tensor takes the full memory of the broadcasted
shape. (In a graph context, broadcast_to
might be fused to
subsequent operation and then be optimized away, however.)
Returns | |
---|---|
A Tensor . Has the same type as input .
|