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What´s the most efficient, elegant and pythonic way of solving this problem?

Given a list (or set or whatever) of n elements, we want to get the k biggest ones. ( You can assume k<n/2 without loss of generality, I guess) For example, if the list were:

l = [9,1,6,4,2,8,3,7,5]

n = 9, and let's say k = 3. What's the most efficient algorithm for retrieving the 3 biggest ones? In this case we should get [9,8,7], in no particular order.

Thanks! Manuel

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+1 Now that basic purpose is served let there be CODE-GOLF? – Pratik Deoghare Feb 11 '10 at 10:41
up vote 28 down vote accepted

Use nlargest from heapq module

from heapq import nlargest
lst = [9,1,6,4,2,8,3,7,5]
nlargest(3, lst) # Gives [9,8,7]

You can also give a key to nlargest in case you wanna change your criteria:

from heapq import nlargest
tags = [ ("python", 30), ("ruby", 25), ("c++", 50), ("lisp", 20) ]
nlargest(2, tags, key=lambda e:e[1]) # Gives [ ("c++", 50), ("python", 30) ]
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+1: I didn know abt this module... thanks – mshsayem Feb 11 '10 at 9:55
Great language ranking :) ) – Paul Evans Jan 17 at 11:57
l = [9,1,6,4,2,8,3,7,5]

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That is nicer than mine) – Rorick Feb 11 '10 at 9:53
… but it does not work in the very specific case of k==0. :) – EOL Feb 11 '10 at 10:27

The simple, O(n log n) way is to sort the list then get the last k elements.

The proper way is to use a selection algorithm, which runs in O(n + k log k) time.

Also, heapq.nlargest takes O(n log k) time, which may or may not be good enough.

(If k = O(n), then all 3 algorithms have the same complexity (i.e. don't bother). If k = O(log n), then the selection algorithm as described in Wikipedia is O(n) and heapq.nlargest is O(n log log n), but double logarithm is "constant enough" for most practical n that it doesn't matter.)

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You can use the heapq module.

>>> from heapq import heapify, nlargest
>>> l = [9,1,6,4,2,8,3,7,5]
>>> heapify(l)
>>> nlargest(3, l)
[9, 8, 7]
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we don't need to heapify it here – garg10may Oct 13 '15 at 7:22
sorted(l, reverse=True)[:k]
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