TensorFlow is open-source Python library designed by Google to develop Machine Learning models and deep learning neural networks.
clip_by_value() is used to clip a Tensor values to a specified min and max.
Syntax: tensorflow.clip_by_value( t, clip_value_min, clip_value_max, name )
Parameter:
- t: It is input Tensor.
- clip_value_min: It defines the minimum clip value.
- clip_value_max: It defines the maximum clip value.
- name(optional): It defines the name for the operation.
Returns:
It returns a clipped Tensor.
Example 1:
Python3
# Importing the library import tensorflow as tf
# Initializing the input tensor t = tf.constant([ 1 , 2 , 3 , 4 ], dtype = tf.float64)
clip_value_min = 2
clip_value_max = 5
# Printing the input tensor print ( 't: ' , t)
print ( 'clip_min: ' , clip_value_min)
print ( 'clip_max: ' , clip_value_max)
# Calculating result res = tf.clip_by_value(t, clip_min, clip_max)
# Printing the result print ( 'Result: ' , res)
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Output:
t: tf.Tensor([1. 2. 3. 4.], shape=(4, ), dtype=float64) clip_min: 2 clip_max: 5 Result: tf.Tensor([2. 2. 3. 4.], shape=(4, ), dtype=float64)
Example 2:
Python3
# Importing the library import tensorflow as tf
# Initializing the input tensor t = tf.constant([[ 1 , 2 ], [ 3 , 4 ]], dtype = tf.float64)
clip_value_min = [ 2 , 3 ]
clip_value_max = [ 5 , 7 ]
# Printing the input tensor print ( 't: ' , t)
print ( 'clip_min: ' , clip_value_min)
print ( 'clip_max: ' , clip_value_max)
# Calculating result res = tf.clip_by_value(t, clip_value_min, clip_value_max)
# Printing the result print ( 'Result: ' , res)
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Output:
t: tf.Tensor( [[1. 2.] [3. 4.]], shape=(2, 2), dtype=float64) clip_min: [2, 3] clip_max: [5, 7] Result: tf.Tensor( [[2. 3.] [3. 4.]], shape=(2, 2), dtype=float64)
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