# Fastest way to sort in Python

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What is the fastest way to sort an array of whole integers bigger than 0 and less than 100000 in Python? But not using the built in functions like sort.

Im looking at the possibility to combine 2 sport functions depending on input size.

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Why not use built in functions? – MattH Oct 4 '10 at 13:17
what's the fastest way to get to down the road but not driving that souped up Porsche? – aaronasterling Oct 4 '10 at 13:17
What's the largest size the array might be? – Daniel Stutzbach Oct 4 '10 at 13:17
@Anders: Don't reinvent the wheel. The built in sort() should suffice for your case. – user225312 Oct 4 '10 at 13:19
I'm curious: why do you need to implement your own sorting routine? It smells like a homework assignment to me :-) – Rob Vermeulen Oct 4 '10 at 13:31

Since you know the range of numbers, you can use Counting Sort which will be linear in time.

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@Downvoter: Care to explain ? – codaddict Oct 4 '10 at 13:26
(I did not downvote). Note that this is not a good algorithm if the array of integers is significantly smaller than 100000, as it will waste memory (and thus time) to construct the 100000 element list. – Brian Oct 4 '10 at 13:59

If you are interested in asymptotic time, then counting sort or radix sort provide good performance.

However, if you are interested in wall clock time you will need to compare performance between different algorithms using your particular data sets, as different algorithms perform differently with different datasets. In that case, its always worth trying quicksort:

def qsort(inlist):
if inlist == []:
return []
else:
pivot = inlist[0]
lesser = qsort([x for x in inlist[1:] if x < pivot])
greater = qsort([x for x in inlist[1:] if x >= pivot])
return lesser + [pivot] + greater
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Good advice, except choice of variable list, which can cause nice errors. I post other, faster version. – Tony Veijalainen Oct 4 '10 at 13:57
Running the list comprehension twice over the same set of variables is probably also less than optimal. – Paul McMillan Oct 4 '10 at 23:16
@Tony Veijalainen “There are only two hard things in Computer Science: cache invalidation and naming things” -- I've changed the variable name – fmark Oct 5 '10 at 0:42

Early versions of Python used a hybrid of samplesort (a variant of quicksort with large sample size) and binary insertion sort as the built-in sorting algorithm. This proved to be somewhat unstable. S0, from python 2.3 onward uses adaptive mergesort algorithm.

Order of mergesort (average) = O(nlogn). Order of mergesort (worst) = O(nlogn). But Order of quick sort (worst) = n*2

if you uses list=[ .............. ]

list.sort() uses mergesort algorithm.

For comparison between sorting algorithm you can read wiki

For detail comparison comp

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it's timsort which is more adaptive than mergesort – aaronasterling Oct 4 '10 at 13:29
Timsort is an adaptive, stable, natural mergesort. – Tauquir Oct 4 '10 at 13:39

Radix sort theoretically runs in linear time (sort time grows roughly in direct proportion to array size ), but in practice Quicksort is probably more suited, unless you're sorting absolutely massive arrays.

If you want to make quicksort a bit faster, you can use insertion sort] when the array size becomes small.

It would probably be helpful to understand the concepts of algorithmic complexity and Big-O notation too.

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 When you say the array size becomes small do you mean less than 64 in size? – Anders Oct 5 '10 at 0:23 I'd say more about less than 10, but there's no right answer; the best idea is to experiment with different values and see which ends up faster. – Magnus Oct 5 '10 at 16:27

We can use count sort using a dictionary to minimize the additional space usage, and keep the running time low as well. The count sort is much slower for small sizes of the input array because of the python vs C implementation overhead. The count sort starts to overtake the regular sort when the size of the array (COUNT) is about 1 million.

If you really want huge speedups for smaller size inputs, implement the count sort in C and call it from Python.

(Fixed a bug which Aaron (+1) helped catch ...) The python only implementation below compares the 2 approaches...

import random
import time

COUNT = 3000000

array = [random.randint(1,100000) for i in range(COUNT)]
random.shuffle(array)

array1 = array[:]

start = time.time()
array1.sort()
end = time.time()
time1 = (end-start)
print 'Time to sort = ', time1*1000, 'ms'

array2 = array[:]

start = time.time()
ardict = {}
for a in array2:
try:
ardict[a] += 1
except:
ardict[a] = 1

indx = 0
for a in sorted(ardict.keys()):
b = ardict[a]
array2[indx:indx+b] = [a for i in xrange(b)]
indx += b

end = time.time()
time2 = (end-start)
print 'Time to count sort = ', time2*1000, 'ms'

print 'Ratio =', time2/time1
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+1 Ratio = 1.16710428623 on my machine. clever use of a dict. It's worth noting though that changing the dict construction phase from try: ardict[a] += 1; except: ardict[a] = 1 to if a in ardict: ardict[a] += 1; else: ardict[a] = 1 drops the ratio to Ratio = 0.696179723863 Sometimes (often) it is better to look before you leap. I knew to do this because try is only cheaper than if if the exception rarely occurs. An actual exception is still very expensive. – aaronasterling Oct 4 '10 at 21:16
unfortunately this algorithm is wrong. Try array = [1,10, 100, 1000, 10000, 100000, 1000000]. The dangers of skating on undocumented implementation details strike again. – aaronasterling Oct 4 '10 at 21:53
Thanks aaron - fixed the bug of not sorting the dict keys. That should slow it down a bit. However, it will preserve its almost O(n) nature if number of distinct elements compared to the array size is low. I would love to see a 3D plot of distinct elements, array length as x and y dimensions and ratio of running time and the 3rd dimension. Maybe I will do it in a day or 2. – Rajan Oct 4 '10 at 22:29
@Aaron: On my comp, the (try, except) works better. I coded it the (if then else) way first and switched to the (try, except) to speed up things. Also, the version with the bug removed runs faster than the previous one - because of the underlying C sort being used in sorting keys. Thats free beer right there. :-) – Rajan Oct 4 '10 at 22:34
For me the except solution was also faster, little faster generation was by using tuple with generator if list is not necessary to produce (as it is mutable): array2=tuple(a for a in sorted(ardict) for i in xrange(ardict[a])) – Tony Veijalainen Oct 5 '10 at 10:29
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The built in functions are best, but since you can't use them have a look at this:

http://en.wikipedia.org/wiki/Quicksort

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