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numpy.matrix() in Python
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Python | Numpy numpy.matrix.A()

Last Updated : 08 Apr, 2019
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With the help of Numpy numpy.matrix.A() method, we can get the same matrix as self. It means through this method we can get the identical matrix.

Syntax : numpy.matrix.A()

Return : Return self matrix

Example #1 :
In this example we can see that with the help of matrix.A() method, we are able to get the self matrix.




# import the important module in python
import numpy as np
          
# make a matrix with numpy
gfg = np.matrix('[1, 2, 3, 4]')
          
# applying matrix.A() method
geeks = gfg.getA()
    
print(geeks)
 
 
Output:
  [[1 2 3 4]]  

Example #2 :




# import the important module in python
import numpy as np
          
# make a matrix with numpy
gfg = np.matrix('[1, 2, 3; 4, 5, 6; 7, 8, 9]')
          
# applying matrix.A() method
geeks = gfg.getA()
    
print(geeks)
 
 
Output:
  [[1 2 3]   [4 5 6]   [7 8 9]]  


Next Article
numpy.matrix() in Python

J

Jitender_1998
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Article Tags :
  • Python
  • Python numpy-Matrix Function
  • Python-numpy
Practice Tags :
  • python

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