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da1023fcc5
I did a bit of Profiling and made the quickselect and median algorithms use the best of option for the respective input size.
177 lines
7.4 KiB
C++
177 lines
7.4 KiB
C++
/*
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* Copyright (c) 2023, the SerenityOS developers.
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*
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* SPDX-License-Identifier: BSD-2-Clause
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*/
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#pragma once
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#include <AK/Math.h>
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#include <AK/Random.h>
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#include <AK/StdLibExtras.h>
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namespace AK {
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static constexpr int MEDIAN_OF_MEDIAN_CUTOFF = 4500;
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// FIXME: Stole and adapted these two functions from `Userland/Demos/Tubes/Tubes.cpp` we really need something like this in `AK/Random.h`
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static inline double random_double()
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{
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return get_random<u32>() / static_cast<double>(NumericLimits<u32>::max());
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}
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static inline size_t random_int(size_t min, size_t max)
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{
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return min + round_to<size_t>(random_double() * (max - min));
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}
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// Implementations of common pivot functions
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namespace PivotFunctions {
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// Just use the first element of the range as the pivot
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// Mainly used to debug the quick select algorithm
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// Good with random data since it has nearly no overhead
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// Attention: Turns the algorithm quadratic if used with already (partially) sorted data
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template<typename Collection, typename LessThan>
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size_t first_element([[maybe_unused]] Collection& collection, size_t left, [[maybe_unused]] size_t right, [[maybe_unused]] LessThan less_than)
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{
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return left;
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}
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// Just use the middle element of the range as the pivot
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// This is what is used in AK::single_pivot_quick_sort in quicksort.h
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// Works fairly well with random Data
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// Works incredibly well with sorted data since the pivot is always a perfect split
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template<typename Collection, typename LessThan>
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size_t middle_element([[maybe_unused]] Collection& collection, size_t left, size_t right, [[maybe_unused]] LessThan less_than)
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{
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return (left + right) / 2;
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}
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// Pick a random Pivot
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// This is the "Traditional" implementation of both quicksort and quick select
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// Performs fairly well both with random and sorted data
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template<typename Collection, typename LessThan>
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size_t random_element([[maybe_unused]] Collection& collection, size_t left, size_t right, [[maybe_unused]] LessThan less_than)
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{
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return random_int(left, right);
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}
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// Implementation detail of median_of_medians
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// Whilst this looks quadratic in runtime, it always gets called with 5 or fewer elements so can be considered constant runtime
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template<typename Collection, typename LessThan>
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size_t partition5(Collection& collection, size_t left, size_t right, LessThan less_than)
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{
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VERIFY((right - left) <= 5);
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for (size_t i = left + 1; i <= right; i++) {
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for (size_t j = i; j > left && less_than(collection.at(j), collection.at(j - 1)); j--) {
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swap(collection.at(j), collection.at(j - 1));
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}
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}
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return (left + right) / 2;
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}
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// https://en.wikipedia.org/wiki/Median_of_medians
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// Use the median of medians algorithm to pick a really good pivot
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// This makes quick select run in linear time but comes with a lot of overhead that only pays off with very large inputs
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template<typename Collection, typename LessThan>
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size_t median_of_medians(Collection& collection, size_t left, size_t right, LessThan less_than)
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{
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if ((right - left) < 5)
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return partition5(collection, left, right, less_than);
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for (size_t i = left; i <= right; i += 5) {
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size_t sub_right = i + 4;
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if (sub_right > right)
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sub_right = right;
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size_t median5 = partition5(collection, i, sub_right, less_than);
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swap(collection.at(median5), collection.at(left + (i - left) / 5));
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}
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size_t mid = (right - left) / 10 + left + 1;
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// We're using mutual recursion here, using quickselect_inplace to find the pivot for quickselect_inplace.
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// Whilst this achieves True linear Runtime, it is a lot of overhead, so use only this variant with very large inputs
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return quickselect_inplace(
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collection, left, left + ((right - left) / 5), mid, [](auto collection, size_t left, size_t right, auto less_than) { return AK::PivotFunctions::median_of_medians(collection, left, right, less_than); }, less_than);
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}
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}
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// This is the Lomuto Partition scheme which is simpler but less efficient than Hoare's partitioning scheme that is traditionally used with quicksort
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// https://en.wikipedia.org/wiki/Quicksort#Lomuto_partition_scheme
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template<typename Collection, typename PivotFn, typename LessThan>
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static size_t partition(Collection& collection, size_t left, size_t right, PivotFn pivot_fn, LessThan less_than)
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{
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auto pivot_index = pivot_fn(collection, left, right, less_than);
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auto pivot_value = collection.at(pivot_index);
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swap(collection.at(pivot_index), collection.at(right));
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auto store_index = left;
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for (size_t i = left; i < right; i++) {
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if (less_than(collection.at(i), pivot_value)) {
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swap(collection.at(store_index), collection.at(i));
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store_index++;
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}
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}
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swap(collection.at(right), collection.at(store_index));
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return store_index;
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}
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template<typename Collection, typename PivotFn, typename LessThan>
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size_t quickselect_inplace(Collection& collection, size_t left, size_t right, size_t k, PivotFn pivot_fn, LessThan less_than)
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{
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// Bail if left is somehow bigger than right and return default constructed result
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// FIXME: This can also occur when the collection is empty maybe propagate this error somehow?
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// returning 0 would be a really bad thing since this returns and index and that might lead to memory errors
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// returning in ErrorOr<size_t> here might be a good option but this is a very specific error that in nearly all circumstances should be considered a bug on the callers site
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VERIFY(left <= right);
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// If there's only one element, return that element
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if (left == right)
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return left;
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auto pivot_index = partition(collection, left, right, pivot_fn, less_than);
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// we found the thing we were searching for
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if (k == pivot_index)
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return k;
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// Recurse on the left side
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if (k < pivot_index)
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return quickselect_inplace(collection, left, pivot_index - 1, k, pivot_fn, less_than);
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// recurse on the right side
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return quickselect_inplace(collection, pivot_index + 1, right, k, pivot_fn, less_than);
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}
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//
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template<typename Collection, typename PivotFn, typename LessThan>
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size_t quickselect_inplace(Collection& collection, size_t k, PivotFn pivot_fn, LessThan less_than)
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{
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return quickselect_inplace(collection, 0, collection.size() - 1, k, pivot_fn, less_than);
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}
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template<typename Collection, typename PivotFn>
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size_t quickselect_inplace(Collection& collection, size_t k, PivotFn pivot_fn)
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{
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return quickselect_inplace(collection, 0, collection.size() - 1, k, pivot_fn, [](auto& a, auto& b) { return a < b; });
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}
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// All of these quick select implementation versions return the `index` of the resulting element, after the algorithm has run, not the element itself!
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// As Part of the Algorithm, they all modify the collection in place, partially sorting it in the process.
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template<typename Collection>
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size_t quickselect_inplace(Collection& collection, size_t k)
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{
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if (collection.size() >= MEDIAN_OF_MEDIAN_CUTOFF)
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return quickselect_inplace(
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collection, 0, collection.size() - 1, k, [](auto collection, size_t left, size_t right, auto less_than) { return PivotFunctions::median_of_medians(collection, left, right, less_than); }, [](auto& a, auto& b) { return a < b; });
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else
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return quickselect_inplace(
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collection, 0, collection.size() - 1, k, [](auto collection, size_t left, size_t right, auto less_than) { return PivotFunctions::random_element(collection, left, right, less_than); }, [](auto& a, auto& b) { return a < b; });
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}
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}
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