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I want to iterate over a numpy array starting at the index of the highest value working through to the lowest value

import numpy as np #imports numpy package

elevation_array = np.random.rand(5,5) #creates a random array 5 by 5

print elevation_array # prints the array out

ravel_array = np.ravel(elevation_array)
sorted_array_x = np.argsort(ravel_array)
sorted_array_y = np.argsort(sorted_array_x)

sorted_array = sorted_array_y.reshape(elevation_array.shape)

for index, rank in np.ndenumerate(sorted_array):
    print index, rank

I want it to print out:

index of the highest value index of the next highest value index of the next highest value etc

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2 Answers 2

up vote 1 down vote accepted

Try this:

from operator import itemgetter

>>> a = np.array([[2, 7], [1, 4]])
array([[2, 7],
       [1, 4]])

>>> sorted(np.ndenumerate(a), key=itemgetter(1), reverse=True)
[((0, 1), 7), 
 ((1, 1), 4), 
 ((0, 0), 2), 
 ((1, 0), 1)]

you can iterate this list if you so wish. Essentially I am telling the function sorted to order the elements of np.ndenumerate(a) according to the key itemgetter(1). This function itemgetter gets the second (index 1) element from the tuples ((0, 1), 7), ((1, 1), 4), ... (i.e the values) generated by np.ndenumerate(a).

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+1 because you beat me for a sec :) –  dkar Jul 26 '13 at 22:04
    
Hi elyase and dkar thanks. I was wondering could you explain this a little bit for me? I am still very new to numpy and python. –  Nick Jones Jul 26 '13 at 22:07
    
@NickJones, Sure, I have just updated the answer. –  elyase Jul 26 '13 at 22:20
    
Thanks elyase thats great! –  Nick Jones Jul 26 '13 at 22:23

If you want numpy doing the heavy lifting, you can do something like this:

>>> a = np.random.rand(100, 100)
>>> sort_idx = np.argsort(a, axis=None)
>>> np.column_stack(np.unravel_index(sort_idx[::-1], a.shape))
array([[13, 62],
       [26, 77],
       [81,  4],
       ..., 
       [83, 40],
       [17, 34],
       [54, 91]], dtype=int64)

You first get an index that sorts the whole array, and then convert that flat index into pairs of indices with np.unravel_index. The call to np.column_stack simply joins the two arrays of coordinates into a single one, and could be replaced by the Python zip(*np.unravel_index(sort_idx[::-1], a.shape)) to get a list of tuples instead of an array.

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