# How big is the performance gap between std::sort and std::stable_sort in practice?

Both should run in O(n log n), but in general sort is faster than stable_sort. How big is the performance gap in practice? Do you have some experience about that?

I want to sort a very large number of structs that have a size of about 20 bytes. The stability of the result would be nice in my case, but it is not a must. At the moment the underlying container is a plain array, perhaps it could be changed to a std::deque later on.

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`std::stable_sort` performs NlogN comparisons when sufficient memory is available. When insufficient memory is available, it degrades to N((logN)^2) comparisons. Therefore it is roughly of the same efficiency as `std::sort` (which performs O(NlogN) comparisons in both average and worst case) when memory is available.

For those interested, sort() uses an introsort (quicksort which switches to heapsort when the recursion reaches a certain depth) and stable_sort() uses a merge sort.

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LogN^2 ususually does not mean log(N^2) but (log N)^2, and especially so if it occurs in big-O notation. This commonly happens with algorithms that take O(N log N) steps with O(log N) work per step and vice versa. So, no, it's not a constant 2. –  MSalters May 1 '09 at 13:35
You're right, changed my answer considerably as a result. –  marcog May 1 '09 at 14:58
You say `std::sort (which performs O(NlogN) comparisons in both average and worst case)`. But the link to std::sort says: O(N·log(N)) in all cases only since C++11. Before C++11 there was no requiment O(Nlog(N)) for the worst case. –  skwllsp Dec 5 '13 at 11:31

Sometimes std::stable_sort() is needed because it maintains order of elements that are equal.

And the conventional advice is that, if maintaining order is not important, you should use std::sort() instead.

However, its context dependant. There is plenty of data that is best sorted with stable sort even if you don't need to maintain order:

Quicksort quickly becomes worst-case performance if the data has consistently poor pivot points.

The Burrows-Wheeler Transform is an algorithm used as part of data compression, e.g. bzip2. It requires sorting all the rotations of the text. For the majority of text data, merge sort (as often used by std::stable_sort()) is substantially faster than quicksort (as usually used by std::sort()).

bbb is a BWT implementation that notes the advantages of std::stable_sort() over sort() for this application.

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Big enough to warrant a separate function that does stable sort and not have `std::sort()` do it transparently.

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HAHAH. Okay, so maybe not the most technically detailed answer, but certainly my favorite. –  Peter M Jun 21 '13 at 18:15

As it is trivial to replace one algorithm with the other, why don't you try them both and time the results?

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You are right, this would be very reasonable. But one run takes a long time in my environment and tests only one input instance. I was interested in experiences of other people. Perhaps there is someone who made some systematic experiments about that. –  SebastianK May 1 '09 at 10:59

How big is the performance gap in practice? Do you have some experience about that?

Yes, but it didn't go the way you would expect.

I took a C implementation of the Burrows-Wheeler Transform and C++-ified it. Turned out a lot slower than the C code (though the code was cleaner). So I put timing instrumentation in there and it appeared that the qsort was performing faster than the std::sort. This was running in VC6. It was then recompiled with stable_sort and the tests ran faster than the C version. Other optimisations managed to push the C++ version ~25% quicker than the C version. I think it was possible to eke more speed but the clarity of the code was disappearing.

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Basically what I am trying to say is try both ways. –  graham.reeds May 1 '09 at 13:56

If you are sorting a large number of structs, the IO speed of your memory/disk starts to become more important than the asymptotic running time. Furthermore, memory usage should also be taken into consideration.

I tried std::stable_sort on 2Gb of data (64B structs), not knowing that std::stable_sort creates an internal copy of the data. The swap trashing that followed almost locked up my pc.

Using the unstable std::sort reduces memory usage by a factor of 2, which is useful when sorting large arrays. I terminated the std::stable_sort, so I cannot determine how much slower it was. However, if stable sort is not required, then I think it is better to use the unstable std::sort.

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