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When calling sort() on a list in Python, passing cmp=f slows down the sort. Does passing reverse=True affect the efficiency of the sort in any way (or is it identical to sorting without reversing)?

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+0.75 for an interesting and useful question, and +0.25 for proper use of the word affect. – Justin ᚅᚔᚈᚄᚒᚔ Jan 30 '12 at 19:13

From my benchmarks, there appears to be a small difference:

import timeit

setup = """
import random
l = range(10000)

run1 = """

run2 = """
sorted(l, reverse=True)

n1 = timeit.timeit(run1, setup, number=10000)
n2 = timeit.timeit(run2, setup, number=10000)

print n1, n2
print (n2/n1 - 1)*100,"%"

Results in (on my machine):

38.8531708717 41.2889549732
6.26920286513 %

The same run, but for a list of 1000 elements:

2.80148005486 2.74061703682
-2.17253083528 %

# ...another round...
2.90553498268 2.86594104767
-1.36270722083 %
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Sorting the same list every time doesn't prove a difference, because the sort time will depend on the data distribution. – Mark Ransom Jan 30 '12 at 19:37

I would guess that there is no slow down due to reverse=True since the result could simply be built with reversed decisions along the way. When benchmarked correctly (thanks to Duncan), this guess is borne out:

In [18]: import random

In [57]: x = range(1000)

In [58]: random.shuffle(x)

In [59]: %timeit sorted(x)
1000 loops, best of 3: 341 us per loop

In [54]: x = range(1000)

In [55]: random.shuffle(x)

In [56]: %timeit sorted(x, reverse = True)
1000 loops, best of 3: 344 us per loop

I've repeated this test a few times and with different sized lists (N = 10**3, 10**4, 10**5) and received consistent results.

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I think your benchmark is broken. You should try timing sorted(x) otherwise it sorts it once and then just times how long it takes to sort or reverse sort a sorted list. When I try a benchmark with sorted(x) I get 4.41mS per loop and no difference for reverse against 249uS/262uS for x.sort() – Duncan Jan 30 '12 at 19:25
Thank you, @Duncan, you are right. Editing... – unutbu Jan 30 '12 at 19:27

The sort() method is native, i.e. it's implemented in the host language rather than in Python. Passing a function in the cmp argument forces the native implementation to call that function and execute Python code on each iteration. That's where the performance hit comes from.

On the other hand, passing True in the reverse argument only instructs the native algorithm to sort the items in reverse. If cmp is not set, only native code will be involved, so the performance should be comparable to plain sort().

Of course, benchmarking would tell for sure.

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Surprisingly, it takes longer to reverse-sort a list. The other answers have already shown this with nice benchmarks. I looked into the source and found the explanation in listobject.c:

/* Reverse sort stability achieved by initially reversing the list,
applying a stable forward sort, then reversing the final result. */
if (reverse) {
    if (keys != NULL)
        reverse_slice(&keys[0], &keys[saved_ob_size]);
    reverse_slice(&saved_ob_item[0], &saved_ob_item[saved_ob_size]);

So, to get a sorted output, the list is reversed before sorting, then sorted, and finally reversed again. Reversing a list is a O(n) operation, so you'll pay more and more for this, the longer the list.

This suggests that if you're building a custom key function anyway, then you can save time for big lists by negating it directly:

very_long_list.sort(key=lambda x, y: -cmp(x, y))

instead of using reversed=True:

very_long_list.sort(key=lambda x, y: cmp(x, y), reverse=True)

In this case, you can of course pass key=cmp directly in the second case and so save the extra call through the lambda function. But if you have a bigger expression, then this might pay off.

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Note that if you simply negate the comparison function the reversed sort will no longer be stable. That's why Python does the reverse/sort/reverse shuffle to maintain stability. – Duncan Jan 30 '12 at 19:44
+1 for doing the code exploration. I was still downloading the tar ball… ;-) – GaretJax Jan 30 '12 at 19:52
@Duncan: Are you sure? I don't think that's true: by definition sort(key=f) is stable for any f, including the case when f is a negated comparison function. It looks like the cpython code does the double-reverse so that it does not have to negate the results of the comparison function out of performance reasons, but it could do and be correct. What would be incorrect is stable sorting by normal key and then reversing (without reversing before sorting). – sdcvvc Jul 26 '14 at 12:53
@sdcvvc Not, I'm not sure. – Duncan Jul 26 '14 at 13:06

Note that the cmp arg to list.sort and the sorted built-in function are deprecated in Python 2.x and no longer allowed in 3.x, because of the poor performance they give, as you have noticed. Instead, you are supposed to use the key arg to define a custom sorting order.

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Really, deprecated in all of 2.x? I have a book from 2.3 and 2.4 days and it's explained and encouraged. – jrdioko Feb 1 '12 at 2:40
Fine, stick to 2.3/2.4 then. – Lawrence D'Oliveiro Feb 2 '12 at 23:01

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