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Python – tensorflow.raw_ops.Tan()

TensorFlow is open-source python library designed by Google to develop Machine Learning models and deep learning  neural networks. TensorFlow raw_ops provides low level access to all TensorFlow operations. Tan() is used to find element wise tangent of x.

Syntax: tf.raw_ops.Tan(x, name)

Parameters: 

  • x: It’s the input tensor. Allowed dtype for this tensor are bfloat16, half, float32, float64. 
  • name(optional): It defines the name for the operation.
     

Returns:  It returns a tensor of same dtype as x.
 

Note: It only takes keyword arguments.

Example 1:

Python3




# Importing the library
import tensorflow as tf
 
# Initializing the input tensor
a = tf.constant([1, 2, 3, 4, 5], dtype = tf.float64)
 
# Printing the input tensor
print('Input: ', a)
 
# Calculating tangent
res = tf.raw_ops.Tan(x = a)
 
# Printing the result
print('Result: ', res)


Output:

Input:  tf.Tensor([1. 2. 3. 4. 5.], shape=(5, ), dtype=float64)
Result:  tf.Tensor([ 1.55740772 -2.18503986 -0.14254654  1.15782128 -3.38051501], shape=(5, ), dtype=float64)

Example 2: Visualization

Python3




# importing the library
import tensorflow as tf
import matplotlib.pyplot as plt
 
# Initializing the input tensor
a = tf.constant([1, 2, 3, 4, 5], dtype = tf.float64)
 
# Calculating tangent
res = tf.raw_ops.Tan(x = a)
 
# Plotting the graph
plt.plot(a, res, color ='green')
plt.title('tensorflow.raw_ops.Tan')
plt.xlabel('Input')
plt.ylabel('Result')
plt.show()


Output:

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Dominichttp://wardslaus.com
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