mirror of
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286 lines
9.5 KiB
Plaintext
286 lines
9.5 KiB
Plaintext
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/*
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* Copyright (c) 2025, NVIDIA CORPORATION. All rights reserved.
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*
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* Licensed under the Apache License, Version 2.0 (the "License");
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* you may not use this file except in compliance with the License.
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* You may obtain a copy of the License at
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*
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* http://www.apache.org/licenses/LICENSE-2.0
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS,
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* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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* See the License for the specific language governing permissions and
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* limitations under the License.
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*/
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#pragma once
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#ifndef TRTLLM_MOETOPKFUNCS_CUH_H
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#define TRTLLM_MOETOPKFUNCS_CUH_H
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#include <cooperative_groups.h>
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#include <cooperative_groups/reduce.h>
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#include <cub/cub.cuh>
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#include "tensorrt_llm/kernels/archCondition.h"
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namespace tensorrt_llm::kernels
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{
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namespace reduce_topk
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{
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namespace cg = cooperative_groups;
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static constexpr int kWARP_SIZE = 32;
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static constexpr bool kTLLM_GEN_HAS_FAST_REDUX = tensorrt_llm::kernels::arch::is_major_v<10>;
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template <typename T_>
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struct TopKRedType
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{
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using T = T_;
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static_assert(std::is_same_v<T, float> || std::is_same_v<T, half> || std::is_same_v<T, __nv_bfloat16>
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|| std::is_same_v<T, int>,
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"Top K reduction only implemented for int, float, float16 and bfloat16");
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using TypeCmp = std::conditional_t<sizeof(T) == 4, uint64_t, uint32_t>;
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using IdxT = std::conditional_t<sizeof(T) == 4, int32_t, int16_t>;
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static constexpr int kMoveBits = (sizeof(T) == 4) ? 32 : 16;
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static constexpr int kMaxIdx = 65535;
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TypeCmp compValIdx;
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static __host__ __device__ inline TypeCmp makeCmpVal(T val, int32_t idx = 0)
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{
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auto valueBits = cub::Traits<T>::TwiddleIn(reinterpret_cast<typename cub::Traits<T>::UnsignedBits&>(val));
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TypeCmp compactTmp = valueBits;
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compactTmp = (compactTmp << kMoveBits) | (0xFFFF & (kMaxIdx - idx));
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// Use 65535 minus idx to give higher priority to elements with smaller indices.
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return compactTmp;
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}
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static __host__ __device__ void unpack(T& value, int32_t& index, TypeCmp cmp)
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{
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// Since “65535-idx” is always smaller than 65536 and positive, we can directly use it as the lower 16 bits
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index = kMaxIdx - static_cast<int32_t>((cmp & 0xFFFF));
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auto compactTmp = cmp >> kMoveBits;
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auto valueBits
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= cub::Traits<T>::TwiddleOut(reinterpret_cast<typename cub::Traits<T>::UnsignedBits&>(compactTmp));
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value = reinterpret_cast<T&>(valueBits);
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}
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__host__ __device__ TopKRedType() = default;
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__host__ __device__ TopKRedType(T val, int32_t idx)
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: compValIdx(makeCmpVal(val, idx))
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{
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}
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__host__ __device__ operator TypeCmp() const noexcept
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{
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return compValIdx;
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}
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__device__ inline TypeCmp reduce(cg::thread_block_tile<kWARP_SIZE> const& warp)
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{
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if constexpr (!kTLLM_GEN_HAS_FAST_REDUX || sizeof(TypeCmp) == 8)
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{
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return cg::reduce(warp, compValIdx, cg::greater<TypeCmp>{});
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}
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else
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{
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TypeCmp result;
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asm("redux.sync.max.u32 %0, %1, 0xffffffff;\n" : "=r"(result) : "r"(compValIdx));
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return result;
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}
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}
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};
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////////////////////////////////////////////////////////////////////////////////////////////////////
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template <int K_, bool Enable_>
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struct TopKIdx
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{
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// by default, empty
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};
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template <int K_>
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struct TopKIdx<K_, true>
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{
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static constexpr int K = K_;
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int32_t val[K];
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};
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////////////////////////////////////////////////////////////////////////////////////////////////////
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#define TOPK_SWAP(I, J) \
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{ \
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auto pairMin = min(topK[I].compValIdx, topK[J].compValIdx); \
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auto pairMax = max(topK[I].compValIdx, topK[J].compValIdx); \
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topK[I].compValIdx = pairMax; \
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topK[J].compValIdx = pairMin; \
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}
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template <int N, typename RedType>
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struct Sort;
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template <typename RedType>
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struct Sort<1, RedType>
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{
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static __device__ void run(RedType* topK) {}
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};
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template <typename RedType>
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struct Sort<2, RedType>
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{
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static __device__ void run(RedType* topK)
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{
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TOPK_SWAP(0, 1);
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}
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};
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template <typename RedType>
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struct Sort<3, RedType>
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{
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static __device__ void run(RedType* topK)
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{
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TOPK_SWAP(0, 1);
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TOPK_SWAP(1, 2);
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TOPK_SWAP(0, 1);
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}
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};
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template <typename RedType>
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struct Sort<4, RedType>
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{
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static __device__ void run(RedType* topK)
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{
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TOPK_SWAP(0, 2);
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TOPK_SWAP(1, 3);
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TOPK_SWAP(0, 1);
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TOPK_SWAP(2, 3);
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TOPK_SWAP(1, 2);
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}
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};
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template <int K, typename Type>
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__forceinline__ __device__ void reduceTopK(cg::thread_block_tile<kWARP_SIZE> const& warp, Type (&out)[K],
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int32_t (&outIdx)[K], Type value, int32_t idx, Type const minValue, int actualK = K)
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{
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static_assert(K > 0, "Top K must have K > 0");
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static_assert(K < kWARP_SIZE, "Top K must have K < kWARP_SIZE");
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using RedType = TopKRedType<Type>;
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RedType topK{value, idx};
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typename RedType::TypeCmp packedMax{};
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#pragma unroll
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for (int kk = 0; kk < actualK; ++kk) //@todo: check if actualK is correct
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{
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topK = kk > 0 && packedMax == topK.compValIdx ? RedType{minValue, idx} : topK;
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// get the next largest value
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packedMax = topK.reduce(warp);
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RedType::unpack(out[kk], outIdx[kk], packedMax);
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}
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};
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template <int K, typename Type, int N, bool IsSorted = false>
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__device__ void reduceTopKFunc(cg::thread_block_tile<kWARP_SIZE> const& warp, Type (&out)[K], int32_t (&outIdx)[K],
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Type (&value)[N], int32_t (&idx)[N], Type minValue, int actualK = K)
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{
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static_assert(K > 0, "Top K must have K > 0");
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static_assert(K < kWARP_SIZE, "Top K must have K < kWARP_SIZE");
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static_assert(N > 0, "Top K must have N > 0");
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static_assert(N < 5, "Only support candidates number less than or equal to 128");
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using RedType = TopKRedType<Type>;
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RedType topK[N];
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#pragma unroll
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for (int nn = 0; nn < N; ++nn)
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{
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topK[nn] = RedType{value[nn], idx[nn]};
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}
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if constexpr (!IsSorted)
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{
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Sort<N, RedType>::run(topK);
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}
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typename RedType::TypeCmp packedMax{};
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#pragma unroll
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for (int kk = 0; kk < actualK; ++kk)
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{
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bool update = kk > 0 && packedMax == topK[0].compValIdx;
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#pragma unroll
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for (int nn = 0; nn < N; ++nn)
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{
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topK[nn] = update && nn == N - 1 ? RedType{minValue, idx[nn]} : update ? topK[nn + 1] : topK[nn];
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}
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// get the next largest value
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packedMax = topK[0].reduce(warp);
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RedType::unpack(out[kk], outIdx[kk], packedMax);
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}
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};
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template <int K, typename Type, int N>
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__forceinline__ __device__ void reduceTopK(cg::thread_block_tile<kWARP_SIZE> const& warp, Type (&out)[K],
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int32_t (&outIdx)[K], Type (&value)[N], int32_t (&idx)[N], Type const minValue, int actualK = K)
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{
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static_assert(K > 0, "Top K must have K > 0");
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static_assert(K < kWARP_SIZE, "Top K must have K < kWARP_SIZE");
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static_assert(N > 0, "Top K must have N > 0");
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static_assert(N <= 16, "Only support candidates number less than or equal to 16*32=512");
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static_assert(
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N <= 4 || N % 4 == 0, "Only support candidates number is a multiple of 4*32=128 or less than or equal to 4");
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using RedType = TopKRedType<Type>;
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if constexpr (N <= 4)
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{
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reduceTopKFunc<K, Type, N>(warp, out, outIdx, value, idx, minValue, actualK);
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}
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else
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{
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constexpr int numLoops = N / 4;
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constexpr int numResults = (numLoops * K - 1) / kWARP_SIZE + 1;
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Type topKBufferValue[numResults];
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int32_t topKBufferIdx[numResults];
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int32_t laneIdx = threadIdx.x % kWARP_SIZE;
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for (int ii = 0; ii < numResults; ++ii)
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{
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topKBufferValue[ii] = minValue;
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topKBufferIdx[ii] = ii * kWARP_SIZE - 1; //@todo: check if this is correct
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}
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for (int loop = 0; loop < numLoops; ++loop)
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{
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int start = loop * 4;
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Type topKValue[K];
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int32_t topKIdx[K];
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Type inValue[4];
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int32_t inIdx[4];
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for (int i = 0; i < 4; ++i)
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{
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inValue[i] = value[start + i];
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inIdx[i] = idx[start + i];
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}
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reduceTopKFunc<K, Type, 4>(warp, topKValue, topKIdx, inValue, inIdx, minValue, actualK);
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int inOffset = laneIdx % K;
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if (laneIdx >= loop * K && laneIdx < (loop + 1) * K)
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{
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topKBufferValue[0] = topKValue[inOffset];
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topKBufferIdx[0] = topKIdx[inOffset];
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}
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if (loop == numLoops - 1 && (laneIdx < (numLoops * K - kWARP_SIZE)))
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{
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topKBufferValue[1] = topKValue[inOffset];
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topKBufferIdx[1] = topKIdx[inOffset];
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}
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}
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reduceTopKFunc<K, Type, numResults>(warp, out, outIdx, topKBufferValue, topKBufferIdx, minValue, actualK);
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}
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};
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#undef TOPK_SWAP
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} // namespace reduce_topk
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} // namespace tensorrt_llm::kernels
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#endif // TRTLLM_MOETOPKFUNCS_CUH_H
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