numpy.ma.MaskedArray class
is a subclass of ndarray designed to manipulate numerical arrays with missing data. With the help of Numpy MaskedArray.__rdivmod__ we will get two arrays one is having elements that is divided by value that is provided in numpy.ma.__rdivmod__() method and second is having elements that perform mod operation with same value as provided in numpy.ma.__rdivmod__() method.
Syntax: numpy.MaskedArray.__rdivmod__
Return: Return divmod( value, self).
Example #1 :
In this example we can see that by using MaskedArray.__rdivmod__() method we get two arrays. One is with divided with value that is passed as parameter and other with mod values.
# import the important module in python import numpy as np # make an array with numpy gfg = np.ma.array([ 1 , 2 , 3 , 4 , 5 ]) # applying MaskedArray.__rdivmod__() method print (gfg.__rdivmod__( 3 )) |
(masked_array(data = [3 1 1 0 0], mask = [False False False False False], fill_value = 999999), masked_array(data = [0 1 0 3 3], mask = [False False False False False], fill_value = 999999) )
Example #2:
# import the important module in python import numpy as np # make an array with numpy gfg = np.ma.array([[ 1 , 2 , 3 , 4 , 5 ], [ 6 , 5 , 4 , 3 , 2 ]]) # applying MaskedArray.__rdivmod__() method print (gfg.__rdivmod__( 3 )) |
(masked_array(data = [[3 1 1 0 0] [0 0 0 1 1]], mask = [[False False False False False] [False False False False False]], fill_value = 999999), masked_array(data = [[0 1 0 3 3] [3 3 3 0 1]], mask = [[False False False False False] [False False False False False]], fill_value = 999999) )