/sort

Sorting routine implementations in "template" C

Primary LanguageCMIT LicenseMIT

sort.h

Overview

sort.h is an implementation of a ton of sorting algorithms in C with a user-defined type that is provided at include time.

This means you don't have to pay the function call overhead of using a standard library routine. This also gives us the power of higher-level language generics.

In addition, you don't have to link in a library: the entirety of this sorting library is contained in the sort.h header file.

You get the choice of many sorting routines, including:

  • Timsort (stable)
  • Quicksort
  • Merge sort (stable)
  • In-place merge sort (not stable)
  • Shellsort
  • Binary insertion sort
  • Heapsort

If you set SORT_EXTRA and have sort_extra.h available in the path, there are some additional, specialized sorting routines available:

If you don't know which one to use, you should probably use Timsort.

If you have a lot data that is semi-structured, then you should definitely use Timsort.

If you have data that is really and truly random, quicksort is probably fastest.

Usage

To use this library, you need to do three things:

  • #define SORT_TYPE to be the type of the elements of the array you want to sort. (For pointers, you should declare this like: #define SORT_TYPE int*)
  • #define SORT_NAME to be a unique name that will be prepended to all the routines, i.e., #define SORT_NAME mine would give you routines named mine_heap_sort, and so forth.
  • #include "sort.h". Make sure that sort.h is in your include path.

Then, enjoy using the sorting routines.

Quick example:

#define SORT_NAME int64
#define SORT_TYPE int64_t
#define SORT_CMP(x, y) ((x) - (y))
#include "sort.h"

You would now have access to int64_quick_sort, int64_tim_sort, etc., which you can use like

/* Assumes you have some int64_t *arr or int64_t arr[128]; */
int64_quick_sort(arr, 128);

See demo.c for a more detailed example usage.

If you are going to use your own custom type, you must redefine SORT_CMP(x, y) with your comparison function, so that it returns a value less than zero if x < y, equal to zero if x == y, and greater than 0 if x > y.

The default just uses the builtin < operators:

#define SORT_CMP(x, y)  ((x) < (y) ? -1 : ((y) < (x) ? 1 : 0))

It is often just fine to just subtract the arguments as well (though this can cause some stability problems with floating-point types):

#define SORT_CMP(x, y) ((x) - (y))

You can also redefine TIM_SORT_STACK_SIZE (default 128) to control the size of the tim sort stack (which can be used to reduce memory). Reducing it too far can cause tim sort to overflow the stack though.

You can specify definitions for all functions that are included in sort.h. Making sort functions static increases the likelihood a compiler will eliminate dead code.

#define SORT_DEF static

Speed of routines

The speed of each routine is highly dependent on your computer and the structure of your data.

If your data has a lot of partially sorted sequences, then Tim sort will beat the kilt off of anything else.

Timsort is not as good if memory movement is many orders of magnitude more expensive than comparisons (like, many more than for normal int and double). If so, then quick sort is probably your routine. On the other hand, Timsort does extremely well if the comparison operator is very expensive, since it strives hard to minimize comparisons.

Here is the output of demo.c, which will give you the timings for a run of 10,000 int64_ts on 2014-era MacBook Pro:

Running tests
stdlib qsort time:             1285.00 us per iteration
stdlib heapsort time:          2109.00 us per iteration
stdlib mergesort time:         1299.00 us per iteration
quick sort time:                579.00 us per iteration
selection sort time:         127176.00 us per iteration
merge sort time:                999.00 us per iteration
binary insertion sort time:   13443.00 us per iteration
heap sort time:                 592.00 us per iteration
shell sort time:               1054.00 us per iteration
tim sort time:                 1005.00 us per iteration
in-place merge sort time:       903.00 us per iteration
grail sort time:               1220.00 us per iteration
sqrt sort time:                1095.00 us per iteration

Quicksort is the winner here. Heapsort, in-place merge sort, and timsort also often tend to be quite fast.

Contributing

See CONTRIBUTING.md.

References

License

Available under the MIT License. See LICENSE.md for details.