I have a ndarray. From this array I need to choose the list of N numbers with biggest values. I found
heapq.nlargest to find the N largest entries, but I need to extract the indexes.
I want to build a new array where only the N rows with the largest weights in the first column will survive. The rest of the rows will be replaced by random values
import numpy as np import heapq # For choosing list of max values a = [[1.1,2.1,3.1], [2.1,3.1,4.1], [5.1,0.1,7.1],[0.1,1.1,1.1],[4.1,3.1,9.1]] a = np.asarray(a) maxVal = heapq.nlargest(2,a[:,0]) if __name__ == '__main__': print a print maxVal
The output I have is:
[[ 1.1 2.1 3.1] [ 2.1 3.1 4.1] [ 5.1 0.1 7.1] [ 0.1 1.1 1.1] [ 4.1 3.1 9.1]] [5.0999999999999996, 4.0999999999999996]
but what I need is
[2,4] as the indexes to build a new array. The indexes are the rows so if in this example I want to replace the rest by 0 I need to finish with:
[[0.0 0.0 0.0] [ 0.0 0.0 0.0] [ 5.1 0.1 7.1] [ 0.0 0.0 0.0] [ 4.1 3.1 9.1]]
I am stuck in the point where I need indexes. The original array has 1000 rows and 100 columns. The weights are normalized floating points and I don't want to do something like
if a[:,1] == maxVal: because sometimes I have the weights very close and can finish with more values
maxVal than my original N.
Is there any simple way to extract indexes on this setup to replace the rest of the array?