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Compute Bitwise AND of Two 2D Arrays Element-wise in NumPy
To compute the bit-wise AND of two 2D arrays element-wise, use the numpy.bitwise_and() method in Python Numpy. Computes the bit-wise AND of the underlying binary representation of the integers in the input arrays. This ufunc implements the C/Python operator &.
The 1st and 2nd parameter are the arrays, only integer and boolean types are handled. If x1.shape != x2.shape, they must be broadcastable to a common shape.
The where parameter is the condition broadcast over the input. At locations where the condition is True, the out array will be set to the ufunc result. Elsewhere, the out array will retain its original value. Note that if an uninitialized out array is created via the default out=None, locations within it where the condition is False will remain uninitialized.
Steps
At first, import the required library −
import numpy as np
Creating two 2D numpy arrays using the array() method. We have inserted elements of int type −
arr1 = np.array([[49, 6, 61], [82, 69, 29]]) arr2 = np.array([[40, 60, 61], [81, 55, 32]])
Display the arrays −
print("Array 1...
", arr1) print("
Array 2...
", arr2)
Get the type of the arrays −
print("
Our Array 1 type...
", arr1.dtype) print("
Our Array 2 type...
", arr2.dtype)
Get the dimensions of the Arrays −
print("
Our Array 1 Dimensions...
",arr1.ndim) print("
Our Array 2 Dimensions...
",arr2.ndim)
Get the shape of the Arrays −
print("
Our Array 1 Shape...
",arr1.shape) print("
Our Array 2 Shape...
",arr2.shape)
To compute the bit-wise AND of two 2D arrays element-wise, use the numpy.bitwise_and() method −
print("
Result...
",np.bitwise_and(arr1, arr2))
Example
import numpy as np # Creating two 2D numpy arrays using the array() method # We have inserted elements of int type arr1 = np.array([[49, 6, 61], [82, 69, 29]]) arr2 = np.array([[40, 60, 61], [81, 55, 32]]) # Display the arrays print("Array 1...
", arr1) print("
Array 2...
", arr2) # Get the type of the arrays print("
Our Array 1 type...
", arr1.dtype) print("
Our Array 2 type...
", arr2.dtype) # Get the dimensions of the Arrays print("
Our Array 1 Dimensions...
",arr1.ndim) print("
Our Array 2 Dimensions...
",arr2.ndim) # Get the shape of the Arrays print("
Our Array 1 Shape...
",arr1.shape) print("
Our Array 2 Shape...
",arr2.shape) # To compute the bit-wise AND of two arrays element-wise, use the numpy.bitwise_and() method in Python Numpy print("
Result...
",np.bitwise_and(arr1, arr2))
Output
Array 1... [[49 6 61] [82 69 29]] Array 2... [[40 60 61] [81 55 32]] Our Array 1 type... int64 Our Array 2 type... int64 Our Array 1 Dimensions... 2 Our Array 2 Dimensions... 2 Our Array 1 Shape... (2, 3) Our Array 2 Shape... (2, 3) Result... [[32 4 61] [80 5 0]]