The numpy.compress() function returns selected slices of an array along mentioned axis, that satisfies an axis.
Syntax: numpy.compress(condition, array, axis = None, out = None)
Parameters :
condition : [array_like]Condition on the basis of which user extract elements.
Applying condition on input_array, if we print condition, it will return an arra
filled with either True or False. Array elements are extracted from the Indices having
True value.
array : Input array. User apply conditions on input_array elements
axis : [optional, int]Indicating which slice to select.
By Default, work on flattened array[1-D]
out : [optional, ndarray]Output_array with elements of input_array,
that satisfies condition
Return :
Copy of array with elements of input_array,
that satisfies condition and along given axis
import numpy as geek
array = geek.arange(10).reshape(5, 2)
print("Original array : \n", array)
a = geek.compress([0, 1], array, axis=0)
print("\nSliced array : \n", a)
a = geek.compress([False, True], array, axis=0)
print("\nSliced array : \n", a)
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Output :
Original array :
[[0 1]
[2 3]
[4 5]
[6 7]
[8 9]]
Sliced array :
[[2 3]]
Sliced array :
[[2 3]]
References :
https://docs.scipy.org/doc/numpy-dev/reference/generated/numpy.compress.html
Note :
This codes won’t run on online-ID. Please run them on your systems to explore the working.
.
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Last Updated :
22 Oct, 2020
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