本文整理匯總了Python中tensorflow.python.ops.gen_math_ops._pow方法的典型用法代碼示例。如果您正苦於以下問題:Python gen_math_ops._pow方法的具體用法?Python gen_math_ops._pow怎麽用?Python gen_math_ops._pow使用的例子?那麽, 這裏精選的方法代碼示例或許可以為您提供幫助。您也可以進一步了解該方法所在類tensorflow.python.ops.gen_math_ops
的用法示例。
在下文中一共展示了gen_math_ops._pow方法的4個代碼示例,這些例子默認根據受歡迎程度排序。您可以為喜歡或者感覺有用的代碼點讚,您的評價將有助於係統推薦出更棒的Python代碼示例。
示例1: pow
# 需要導入模塊: from tensorflow.python.ops import gen_math_ops [as 別名]
# 或者: from tensorflow.python.ops.gen_math_ops import _pow [as 別名]
def pow(x, y, name=None):
"""Computes the power of one value to another.
Given a tensor `x` and a tensor `y`, this operation computes \\\\(x^y\\\\) for
corresponding elements in `x` and `y`. For example:
```
# tensor 'x' is [[2, 2], [3, 3]]
# tensor 'y' is [[8, 16], [2, 3]]
tf.pow(x, y) ==> [[256, 65536], [9, 27]]
```
Args:
x: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
y: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
name: A name for the operation (optional).
Returns:
A `Tensor`.
"""
with ops.name_scope(name, "Pow", [x]) as name:
return gen_math_ops._pow(x, y, name=name)
示例2: pow
# 需要導入模塊: from tensorflow.python.ops import gen_math_ops [as 別名]
# 或者: from tensorflow.python.ops.gen_math_ops import _pow [as 別名]
def pow(x, y, name=None):
r"""Computes the power of one value to another.
Given a tensor `x` and a tensor `y`, this operation computes \\\\(x^y\\\\) for
corresponding elements in `x` and `y`. For example:
```
# tensor 'x' is [[2, 2], [3, 3]]
# tensor 'y' is [[8, 16], [2, 3]]
tf.pow(x, y) ==> [[256, 65536], [9, 27]]
```
Args:
x: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
y: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
name: A name for the operation (optional).
Returns:
A `Tensor`.
"""
with ops.name_scope(name, "Pow", [x]) as name:
return gen_math_ops._pow(x, y, name=name)
# pylint: disable=redefined-builtin,redefined-outer-name
示例3: pow
# 需要導入模塊: from tensorflow.python.ops import gen_math_ops [as 別名]
# 或者: from tensorflow.python.ops.gen_math_ops import _pow [as 別名]
def pow(x, y, name=None):
"""Computes the power of one value to another.
Given a tensor `x` and a tensor `y`, this operation computes \\\\(x^y\\\\) for
corresponding elements in `x` and `y`. For example:
```
# tensor 'x' is [[2, 2], [3, 3]]
# tensor 'y' is [[8, 16], [2, 3]]
tf.pow(x, y) ==> [[256, 65536], [9, 27]]
```
Args:
x: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
y: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
name: A name for the operation (optional).
Returns:
A `Tensor`.
"""
with ops.name_scope(name, "Pow", [x]) as name:
return gen_math_ops._pow(x, y, name=name)
# pylint: disable=redefined-builtin,redefined-outer-name
示例4: pow
# 需要導入模塊: from tensorflow.python.ops import gen_math_ops [as 別名]
# 或者: from tensorflow.python.ops.gen_math_ops import _pow [as 別名]
def pow(x, y, name=None):
r"""Computes the power of one value to another.
Given a tensor `x` and a tensor `y`, this operation computes \\(x^y\\) for
corresponding elements in `x` and `y`. For example:
```python
x = tf.constant([[2, 2], [3, 3]])
y = tf.constant([[8, 16], [2, 3]])
tf.pow(x, y) # [[256, 65536], [9, 27]]
```
Args:
x: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
y: A `Tensor` of type `float32`, `float64`, `int32`, `int64`, `complex64`,
or `complex128`.
name: A name for the operation (optional).
Returns:
A `Tensor`.
"""
with ops.name_scope(name, "Pow", [x]) as name:
return gen_math_ops._pow(x, y, name=name)
# pylint: disable=redefined-builtin,redefined-outer-name
開發者ID:PacktPublishing,項目名稱:Serverless-Deep-Learning-with-TensorFlow-and-AWS-Lambda,代碼行數:29,代碼來源:math_ops.py