NumPy hsplit() Function:
Numpy hsplit: The hsplit() function of the Numpy module is used to split an array into multiple sub-arrays horizontally (column-wise).
hsplit is equivalent to split with axis=1, and regardless of the array dimension, the array is always split along the second axis.
Syntax:
numpy.hsplit(array, indices_or_sections)
Parameters
array: This is required. It is the input array to be split into multiple sub-arrays.
indices_or_sections: This is required. It specifies the indices or sections as an int or a 1-D array.
- If indices_or_sections is an integer, N, the array will be divided horizontally into N equal arrays. An error is raised if such a split is not possible.
- If indices_or_sections is a one-dimensional(1D) array of sorted integers, the entries indicate where the array is split horizontally.
- If an index exceeds the horizontal dimension of the array, an empty sub-array is returned correspondingly.
Return Value:
Hssplit: A list of sub-arrays as views into the given array is returned.
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NumPy hsplit() Function in Python
Example1
Approach:
- Import numpy module using the import keyword.
- Pass some random list(multi-dimensional) as an argument to the array() function to create an array.
- Store it in a variable.
- Print the above-given array.
- Pass the given array, indices value(here it is 3) as an argument to the hsplit() function to horizontally split the array.
- Store it in another variable.
- Print the above horizontally split Array.
- The Exit of the Program.
Below is the implementation:
# Import numpy module using the import keyword
import numpy as np
# Pass some random list(multi-dimensional) as an argument to the array() function to
# create an array.
# Store it in a variable.
gvn_arry = np.array([[1, 2, 3],
[4, 5, 6],
[7, 8, 9]])
# Print the above given array.
print("The above given array is:")
print(gvn_arry)
# Pass the given array, indices value(here it is 3) as an argument to the hsplit()function to
# horizontally split the array
# Store it in another variable.
splt_arry = np.hsplit(gvn_arry, 3)
# Print the above horizontally split Array
print("The above horizontally split Array is:")
print(splt_arry)
Output:
The above given array is:
[[1 2 3]
[4 5 6]
[7 8 9]]
The above horizontally split Array is:
[array([[1],
[4],
[7]]), array([[2],
[5],
[8]]), array([[3],
[6],
[9]])]
Example2
Hsplit: When indices_or_sections is given as a 1-dimensional array of sorted integers, the elements indicate where the array is split horizontally.
# Import numpy module using the import keyword
import numpy as np
# Pass some random list(multi-dimensional) as an argument to the array() function to
# create an array.
# Store it in a variable.
gvn_arry = np.array([[11, 12, 13, 14],
[15, 16, 17, 18],
[19, 20, 21, 22]])
# Print the above given array.
print("The above given array is:")
print(gvn_arry)
# Pass the given array, indices value as 1D array as an argument to the hsplit() to
# horizontally split the array
# Store it in another variable.
splt_arry = np.hsplit(gvn_arry, [1,2])
# Print the above horizontally split Array
print("The above horizontally split Array is:")
print(splt_arry)
Output:
The above given array is:
[[11 12 13 14]
[15 16 17 18]
[19 20 21 22]]
The above horizontally split Array is:
[array([[11],
[15],
[19]]), array([[12],
[16],
[20]]), array([[13, 14],
[17, 18],
[21, 22]])]