308 lines
9.9 KiB
C
308 lines
9.9 KiB
C
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//===- llvm/Support/Parallel.h - Parallel algorithms ----------------------===//
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//
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// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
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// See https://llvm.org/LICENSE.txt for license information.
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// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
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//
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//===----------------------------------------------------------------------===//
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#ifndef LLVM_SUPPORT_PARALLEL_H
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#define LLVM_SUPPORT_PARALLEL_H
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#include "llvm/ADT/STLExtras.h"
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#include "llvm/Config/llvm-config.h"
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#include "llvm/Support/Error.h"
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#include "llvm/Support/MathExtras.h"
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#include "llvm/Support/Threading.h"
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#include <algorithm>
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#include <condition_variable>
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#include <functional>
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#include <mutex>
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namespace llvm {
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namespace parallel {
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// Strategy for the default executor used by the parallel routines provided by
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// this file. It defaults to using all hardware threads and should be
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// initialized before the first use of parallel routines.
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extern ThreadPoolStrategy strategy;
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namespace detail {
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#if LLVM_ENABLE_THREADS
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class Latch {
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uint32_t Count;
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mutable std::mutex Mutex;
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mutable std::condition_variable Cond;
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public:
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explicit Latch(uint32_t Count = 0) : Count(Count) {}
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~Latch() { sync(); }
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void inc() {
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std::lock_guard<std::mutex> lock(Mutex);
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++Count;
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}
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void dec() {
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std::lock_guard<std::mutex> lock(Mutex);
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if (--Count == 0)
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Cond.notify_all();
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}
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void sync() const {
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std::unique_lock<std::mutex> lock(Mutex);
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Cond.wait(lock, [&] { return Count == 0; });
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}
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};
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class TaskGroup {
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Latch L;
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bool Parallel;
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public:
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TaskGroup();
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~TaskGroup();
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void spawn(std::function<void()> f);
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void sync() const { L.sync(); }
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};
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const ptrdiff_t MinParallelSize = 1024;
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/// Inclusive median.
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template <class RandomAccessIterator, class Comparator>
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RandomAccessIterator medianOf3(RandomAccessIterator Start,
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RandomAccessIterator End,
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const Comparator &Comp) {
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RandomAccessIterator Mid = Start + (std::distance(Start, End) / 2);
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return Comp(*Start, *(End - 1))
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? (Comp(*Mid, *(End - 1)) ? (Comp(*Start, *Mid) ? Mid : Start)
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: End - 1)
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: (Comp(*Mid, *Start) ? (Comp(*(End - 1), *Mid) ? Mid : End - 1)
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: Start);
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}
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template <class RandomAccessIterator, class Comparator>
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void parallel_quick_sort(RandomAccessIterator Start, RandomAccessIterator End,
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const Comparator &Comp, TaskGroup &TG, size_t Depth) {
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// Do a sequential sort for small inputs.
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if (std::distance(Start, End) < detail::MinParallelSize || Depth == 0) {
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llvm::sort(Start, End, Comp);
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return;
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}
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// Partition.
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auto Pivot = medianOf3(Start, End, Comp);
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// Move Pivot to End.
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std::swap(*(End - 1), *Pivot);
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Pivot = std::partition(Start, End - 1, [&Comp, End](decltype(*Start) V) {
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return Comp(V, *(End - 1));
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});
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// Move Pivot to middle of partition.
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std::swap(*Pivot, *(End - 1));
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// Recurse.
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TG.spawn([=, &Comp, &TG] {
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parallel_quick_sort(Start, Pivot, Comp, TG, Depth - 1);
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});
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parallel_quick_sort(Pivot + 1, End, Comp, TG, Depth - 1);
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}
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template <class RandomAccessIterator, class Comparator>
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void parallel_sort(RandomAccessIterator Start, RandomAccessIterator End,
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const Comparator &Comp) {
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TaskGroup TG;
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parallel_quick_sort(Start, End, Comp, TG,
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llvm::Log2_64(std::distance(Start, End)) + 1);
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}
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// TaskGroup has a relatively high overhead, so we want to reduce
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// the number of spawn() calls. We'll create up to 1024 tasks here.
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// (Note that 1024 is an arbitrary number. This code probably needs
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// improving to take the number of available cores into account.)
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enum { MaxTasksPerGroup = 1024 };
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template <class IterTy, class FuncTy>
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void parallel_for_each(IterTy Begin, IterTy End, FuncTy Fn) {
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// Limit the number of tasks to MaxTasksPerGroup to limit job scheduling
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// overhead on large inputs.
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ptrdiff_t TaskSize = std::distance(Begin, End) / MaxTasksPerGroup;
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if (TaskSize == 0)
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TaskSize = 1;
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TaskGroup TG;
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while (TaskSize < std::distance(Begin, End)) {
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TG.spawn([=, &Fn] { std::for_each(Begin, Begin + TaskSize, Fn); });
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Begin += TaskSize;
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}
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std::for_each(Begin, End, Fn);
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}
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template <class IndexTy, class FuncTy>
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void parallel_for_each_n(IndexTy Begin, IndexTy End, FuncTy Fn) {
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// Limit the number of tasks to MaxTasksPerGroup to limit job scheduling
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// overhead on large inputs.
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ptrdiff_t TaskSize = (End - Begin) / MaxTasksPerGroup;
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if (TaskSize == 0)
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TaskSize = 1;
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TaskGroup TG;
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IndexTy I = Begin;
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for (; I + TaskSize < End; I += TaskSize) {
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TG.spawn([=, &Fn] {
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for (IndexTy J = I, E = I + TaskSize; J != E; ++J)
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Fn(J);
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});
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}
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for (IndexTy J = I; J < End; ++J)
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Fn(J);
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}
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template <class IterTy, class ResultTy, class ReduceFuncTy,
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class TransformFuncTy>
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ResultTy parallel_transform_reduce(IterTy Begin, IterTy End, ResultTy Init,
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ReduceFuncTy Reduce,
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TransformFuncTy Transform) {
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// Limit the number of tasks to MaxTasksPerGroup to limit job scheduling
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// overhead on large inputs.
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size_t NumInputs = std::distance(Begin, End);
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if (NumInputs == 0)
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return std::move(Init);
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size_t NumTasks = std::min(static_cast<size_t>(MaxTasksPerGroup), NumInputs);
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std::vector<ResultTy> Results(NumTasks, Init);
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{
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// Each task processes either TaskSize or TaskSize+1 inputs. Any inputs
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// remaining after dividing them equally amongst tasks are distributed as
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// one extra input over the first tasks.
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TaskGroup TG;
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size_t TaskSize = NumInputs / NumTasks;
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size_t RemainingInputs = NumInputs % NumTasks;
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IterTy TBegin = Begin;
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for (size_t TaskId = 0; TaskId < NumTasks; ++TaskId) {
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IterTy TEnd = TBegin + TaskSize + (TaskId < RemainingInputs ? 1 : 0);
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TG.spawn([=, &Transform, &Reduce, &Results] {
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// Reduce the result of transformation eagerly within each task.
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ResultTy R = Init;
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for (IterTy It = TBegin; It != TEnd; ++It)
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R = Reduce(R, Transform(*It));
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Results[TaskId] = R;
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});
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TBegin = TEnd;
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}
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assert(TBegin == End);
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}
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// Do a final reduction. There are at most 1024 tasks, so this only adds
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// constant single-threaded overhead for large inputs. Hopefully most
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// reductions are cheaper than the transformation.
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ResultTy FinalResult = std::move(Results.front());
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for (ResultTy &PartialResult :
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makeMutableArrayRef(Results.data() + 1, Results.size() - 1))
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FinalResult = Reduce(FinalResult, std::move(PartialResult));
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return std::move(FinalResult);
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}
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#endif
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} // namespace detail
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} // namespace parallel
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template <class RandomAccessIterator,
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class Comparator = std::less<
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typename std::iterator_traits<RandomAccessIterator>::value_type>>
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void parallelSort(RandomAccessIterator Start, RandomAccessIterator End,
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const Comparator &Comp = Comparator()) {
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#if LLVM_ENABLE_THREADS
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if (parallel::strategy.ThreadsRequested != 1) {
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parallel::detail::parallel_sort(Start, End, Comp);
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return;
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}
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#endif
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llvm::sort(Start, End, Comp);
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}
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template <class IterTy, class FuncTy>
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void parallelForEach(IterTy Begin, IterTy End, FuncTy Fn) {
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#if LLVM_ENABLE_THREADS
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if (parallel::strategy.ThreadsRequested != 1) {
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parallel::detail::parallel_for_each(Begin, End, Fn);
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return;
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}
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#endif
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std::for_each(Begin, End, Fn);
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}
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template <class FuncTy>
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void parallelForEachN(size_t Begin, size_t End, FuncTy Fn) {
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#if LLVM_ENABLE_THREADS
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if (parallel::strategy.ThreadsRequested != 1) {
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parallel::detail::parallel_for_each_n(Begin, End, Fn);
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return;
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}
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#endif
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for (size_t I = Begin; I != End; ++I)
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Fn(I);
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}
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template <class IterTy, class ResultTy, class ReduceFuncTy,
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class TransformFuncTy>
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ResultTy parallelTransformReduce(IterTy Begin, IterTy End, ResultTy Init,
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ReduceFuncTy Reduce,
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TransformFuncTy Transform) {
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#if LLVM_ENABLE_THREADS
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if (parallel::strategy.ThreadsRequested != 1) {
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return parallel::detail::parallel_transform_reduce(Begin, End, Init, Reduce,
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Transform);
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}
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#endif
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for (IterTy I = Begin; I != End; ++I)
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Init = Reduce(std::move(Init), Transform(*I));
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return std::move(Init);
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}
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// Range wrappers.
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template <class RangeTy,
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class Comparator = std::less<decltype(*std::begin(RangeTy()))>>
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void parallelSort(RangeTy &&R, const Comparator &Comp = Comparator()) {
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parallelSort(std::begin(R), std::end(R), Comp);
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}
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template <class RangeTy, class FuncTy>
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void parallelForEach(RangeTy &&R, FuncTy Fn) {
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parallelForEach(std::begin(R), std::end(R), Fn);
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}
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template <class RangeTy, class ResultTy, class ReduceFuncTy,
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class TransformFuncTy>
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ResultTy parallelTransformReduce(RangeTy &&R, ResultTy Init,
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ReduceFuncTy Reduce,
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TransformFuncTy Transform) {
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return parallelTransformReduce(std::begin(R), std::end(R), Init, Reduce,
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Transform);
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}
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// Parallel for-each, but with error handling.
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template <class RangeTy, class FuncTy>
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Error parallelForEachError(RangeTy &&R, FuncTy Fn) {
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// The transform_reduce algorithm requires that the initial value be copyable.
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// Error objects are uncopyable. We only need to copy initial success values,
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// so work around this mismatch via the C API. The C API represents success
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// values with a null pointer. The joinErrors discards null values and joins
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// multiple errors into an ErrorList.
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return unwrap(parallelTransformReduce(
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std::begin(R), std::end(R), wrap(Error::success()),
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[](LLVMErrorRef Lhs, LLVMErrorRef Rhs) {
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return wrap(joinErrors(unwrap(Lhs), unwrap(Rhs)));
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},
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[&Fn](auto &&V) { return wrap(Fn(V)); }));
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}
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} // namespace llvm
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#endif // LLVM_SUPPORT_PARALLEL_H
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