Python | Numpy numpy.ndarray.xor() (original) (raw)
Last Updated : 11 Mar, 2019
With the help of **Numpy numpy.ndarray.__xor__()**
method, we can get the elements that is XOR by the value that is provided as a parameter in numpy.ndarray.__xor__()
method.
Syntax: ndarray.__xor__($self, value, /)
Return: self^value
Example #1 :
In this example we can see that every element is xor by the value that is passed as a parameter in ndarray.__xor__()
method.
import
numpy as np
gfg
=
np.array([
1
,
2
,
3
,
4
,
5
])
print
(gfg.__xor__(
2
))
Example #2 :
import
numpy as np
gfg
=
np.array([[
1
,
2
,
3
,
4
,
5
],
`` [
6
,
5
,
4
,
3
,
2
]])
print
(gfg.__xor__(
1
))
Output:
[[0 3 2 5 4] [7 4 5 2 3]]
Similar Reads
- Python | Numpy numpy.ndarray.__sub__() With the help of Numpy numpy.ndarray.__sub__(), We can subtract a particular value that is provided as a parameter in the ndarray.__sub__() method. Value will be subtracted to each and every element in a numpy array. Syntax: ndarray.__sub__($self, value, /) Return: self-value Example #1 : In this ex 1 min read
- Python | Numpy numpy.ndarray.__or__() With the help of Numpy numpy.ndarray.__or__() method, we can get the elements that is OR by the value that is provided as a parameter in numpy.ndarray.__or__() method. Syntax: ndarray.__or__($self, value, /) Return: self|value Example #1 : In this example we can see that every element is or by the v 1 min read
- Python | Numpy numpy.ndarray.__mod__() With the help of Numpy numpy.ndarray.__mod__(), every element in an array is operated on binary operator i.e mod(%). Remember we can use any type of values in an array and value for mod is applied as the parameter in ndarray.__mod__(). Syntax: ndarray.__mod__($self, value, /) Return: self%value Exam 1 min read
- Python | Numpy numpy.ndarray.__add__() With the help of Numpy numpy.ndarray.__add__(), we can add a particular value that is provided as a parameter in the ndarray.__add__() method. Value will be added to each and every element in a numpy array. Syntax: ndarray.__add__($self, value, /) Return: self+value Example #1 : In this example we c 1 min read
- Python | Numpy numpy.ndarray.__and__() With the help of Numpy numpy.ndarray.__and__() method, we can get the elements that is anded by the value that is provided as a parameter in numpy.ndarray.__and__() method. Syntax: ndarray.__and__($self, value, /) Return: self&value Example #1 : In this example we can see that every element is a 1 min read
- Python | Numpy numpy.ndarray.__neg__() With the help of numpy.ndarray.__neg__() method of Numpy, one can multiply each and every element of an array with -1. Hence, the resultant array having values like positive values becomes negative and negative values become positive. Syntax: ndarray.__neg__($self, /) Return: -self Example #1 : In t 1 min read
- Python | Numpy numpy.ndarray.__pos__() With the help of numpy.ndarray.__pos__() method of Numpy, one can multiply each and every element of an array with 1. Hence, the resultant array having values same as original array. Syntax: ndarray.__pos__($self, /) Return: +self Example #1 : In this example we can see that after applying numpy.__p 1 min read
- Python | Numpy numpy.ndarray.__imul__() With the help of numpy.ndarray.__imul__() method, we can multiply a particular value that is provided as a parameter in the ndarray.__imul__() method. Value will be multiplied to every element in a numpy array. Syntax: ndarray.__imul__($self, value, /)Return: self*=value Example #1 : In this example 1 min read
- Python | Numpy numpy.ndarray.__isub__() With the help of numpy.ndarray.__isub__() method, we can subtract a particular value that is provided as a parameter in the ndarray.__isub__() method. Value will be subtracted to every element in a numpy array. Syntax: ndarray.__isub__($self, value, /) Return: self-=value Example #1 : In this exampl 1 min read
- Python | Numpy numpy.ndarray.__iadd__() With the help of numpy.ndarray.__iadd__() method, we can add a particular value that is provided as a parameter in the ndarray.__iadd__() method. Value will be added to every element in a numpy array. Syntax: ndarray.__iadd__($self, value, /) Return: self+=value Example #1 : In this example we can s 1 min read