# I have need the N minimum (index) values in a numpy array

Hi I have an array with X amount of values in it I would like to locate the indexs of the ten smallest values. In this link they calculated the maximum effectively, How to get indices of N maximum values in a numpy array? however I cant comment on links yet so I'm having to repost the question.

I'm not sure which indices i need to change to achieve the minimum and not the maximum values. This is their code

``````In [1]: import numpy as np

In [2]: arr = np.array([1, 3, 2, 4, 5])

In [3]: arr.argsort()[-3:][::-1]
Out[3]: array([4, 3, 1])
``````

If you call

``````arr.argsort()[:3]
``````

It will give you the indices of the 3 smallest elements.

``````array([0, 2, 1], dtype=int64)
``````

So, for `n`, you should call

``````arr.argsort()[:n]
``````

Since this question was posted, numpy has updated to include a faster way of selecting the smallest elements from an array using `argpartition`. It was first included in Numpy 1.8.

Using snarly's answer as inspiration, we can quickly find the `k=3` smallest elements:

``````In [1]: import numpy as np

In [2]: arr = np.array([1, 3, 2, 4, 5])

In [3]: k = 3

In [4]: ind = np.argpartition(arr, k)[:k]

In [5]: ind
Out[5]: array([0, 2, 1])

In [6]: arr[ind]
Out[6]: array([1, 2, 3])
``````

This will run in O(n) time because it does not need to do a full sort. If you need your answers sorted (Note: in this case the output array was in sorted order but that is not guaranteed) you can sort the output:

``````In [7]: sorted(arr[ind])
Out[7]: array([1, 2, 3])
``````

This runs on O(n + k log k) because the sorting takes place on the smaller output list.

I don't guarantee that this will be faster, but a better algorithm would rely on `heapq`.

``````import heapq
indices = heapq.nsmallest(10,np.nditer(arr),key=arr.__getitem__)
``````

This should work in approximately `O(N)` operations whereas using `argsort` would take `O(NlogN)` operations. However, the other is pushed into highly optimized C, so it might still perform better. To know for sure, you'd need to run some tests on your actual data.

• o yeah, this works as well. I tried to use it before but was missing some of it and it got a bit complicated, but it works now thanks :] Commented May 29, 2013 at 15:36
• Works for me as well. However, in my case it is about 20 times slower than the pure numpy solution Commented Jan 3, 2014 at 13:09

Just don't reverse the sort results.

``````In [164]: a = numpy.random.random(20)

In [165]: a
Out[165]:
array([ 0.63261763,  0.01718228,  0.42679479,  0.04449562,  0.19160089,
0.29653725,  0.93946388,  0.39915215,  0.56751034,  0.33210873,
0.17521395,  0.49573607,  0.84587652,  0.73638224,  0.36303797,
0.2150837 ,  0.51665416,  0.47111993,  0.79984964,  0.89231776])
``````

Sorted:

``````In [166]: a.argsort()
Out[166]:
array([ 1,  3, 10,  4, 15,  5,  9, 14,  7,  2, 17, 11, 16,  8,  0, 13, 18,
12, 19,  6])
``````

First ten:

``````In [168]: a.argsort()[:10]
Out[168]: array([ 1,  3, 10,  4, 15,  5,  9, 14,  7,  2])
``````

This code save 20 index of maximum element of `split_list` in `Twenty_Maximum`:

``````Twenty_Maximum = split_list.argsort()[-20:]
``````

against this code save 20 index of minimum element of `split_list` in `Twenty_Minimum`:

``````Twenty_Minimum = split_list.argsort()[:20]
``````