mirror of
https://github.com/ROCm/composable_kernel.git
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745 lines
32 KiB
C++
745 lines
32 KiB
C++
// SPDX-License-Identifier: MIT
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// Copyright (c) 2018-2025, Advanced Micro Devices, Inc. All rights reserved.
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#pragma once
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#include <iostream>
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#include <string>
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#include "ck_tile/core.hpp"
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#include "ck_tile/ops/common.hpp"
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#include "ck_tile/host/concat.hpp"
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#include "ck_tile/core/utility/env.hpp"
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namespace ck_tile {
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/// @brief The GEMM problem definition.
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///
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/// @par Overview
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/// This structure defines the GEMM problem configuration by stating all required information
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/// like M,N,K sizes and respective strides.
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struct GemmProblem
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{
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CK_TILE_HOST GemmProblem() = default;
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CK_TILE_HOST GemmProblem(
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index_t M_, index_t N_, index_t K_, index_t stride_A_, index_t stride_B_, index_t stride_C_)
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: M(M_), N(N_), K(K_), stride_A(stride_A_), stride_B(stride_B_), stride_C(stride_C_)
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{
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}
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index_t M;
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index_t N;
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index_t K;
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index_t stride_A;
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index_t stride_B;
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index_t stride_C;
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};
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/// @brief The GEMM kernel host arguments.
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///
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/// @par Overview
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/// This structure is passed to @ref GemmKernel "GemmKernel" when creating kernel arguments
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/// object. It contain all necessary information required to build proper kernel argument
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/// and launch kernel on GPU.
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struct GemmHostArgs : public GemmProblem
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{
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CK_TILE_HOST GemmHostArgs() = default;
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CK_TILE_HOST GemmHostArgs(const void* a_ptr_,
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const void* b_ptr_,
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void* c_ptr_,
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index_t k_batch_,
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index_t M_,
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index_t N_,
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index_t K_,
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index_t stride_A_,
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index_t stride_B_,
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index_t stride_C_)
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: GemmProblem(M_, N_, K_, stride_A_, stride_B_, stride_C_),
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a_ptr(a_ptr_),
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b_ptr(b_ptr_),
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c_ptr(c_ptr_),
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k_batch(k_batch_)
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{
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}
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const void* a_ptr;
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const void* b_ptr;
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void* c_ptr;
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index_t k_batch;
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};
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/// @brief The GEMM kernel device arguments.
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struct GemmKernelArgs
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{
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/// @brief The A input tensor's pointer to device memory.
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const void* a_ptr;
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/// @brief The B input tensor's pointer to device memory.
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const void* b_ptr;
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/// @brief The C output tensor's pointer to device memory.
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void* c_ptr;
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/// @brief GEMM's M dimension size.
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index_t M;
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/// @brief GEMM's N dimension size.
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index_t N;
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/// @brief GEMM's K dimension size.
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index_t K;
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/// @brief The distance between consecutive elements of non-contiguous dimension
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/// (in memory) of A tensor.
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index_t stride_A;
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/// @brief The distance between consecutive elements of non-contiguous dimension
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/// (in memory) of B tensor.
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index_t stride_B;
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/// @brief The distance between consecutive elements of non-contiguous dimension
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/// (in memory) of C tensor.
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index_t stride_C;
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index_t k_batch;
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};
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/// @brief The GEMM kernel template.
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///
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/// @paragraph Overview Overview
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/// This class provides the generic matrix multiplication kernel template. By semantic
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/// division of GEMM algorithm into following parts we achieve flexible, versatile
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/// and robust kernel implementation.
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///
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/// @li @b Prolog - The start of GEMM kernel implementation in @ref operator()
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/// function call operator" which determines the work scope of each workgroup.
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/// @li @b GemmPipeline - The core part @a "heart" of matrix multiplication algorithm.
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/// This is the place where each workgroup is loading data from global memory and
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/// carrying out dot products.
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/// @li @b Epilogue - The @a "final" part of matrix multiplication implementation
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/// responsible for storing results to global memory. This is also the place where
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/// any additional operator fusion may take place.
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///
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/// Additionally both @ref GemmPipeline_ "GemmPipeline" and @ref EpiloguePipeline_
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/// "EpiloguePipeline" are parameterized with so called @a Policy which determines all
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/// internal details of those functional parts. You can think of it like both gemm and
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/// epilogue pipelines provides the control-flow logic controlled by policies. Moreover
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/// the policy is responsible for definition of all necessary data layouts and thread's
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/// work distribution.
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///
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/// @tparam TilePartitioner_ The type of class providing mapping of workgroup index into the
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/// output data tile to be calculated. It determines the workgroup to
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/// data relationship (or in other words - which data would be
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/// processed and calculated by which workgroup).
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/// @tparam GemmPipeline_ The type of class which provides the core part of matrix
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/// multiplication. This class should provide implementation of data
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/// loading from global memory and performing block-wise matrix
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/// multiplication. You can think of it as a work done by single
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/// workgroup point of view.
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/// @tparam EpiloguePipeline_ The type of class providing the final part of matrix
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/// multiplication implementation. It is responsible for storing
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/// results calculated by @ref GemmPipeline_ "GemmPipeline" to
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/// the output C tensor in global memory.
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template <typename TilePartitioner_, typename GemmPipeline_, typename EpiloguePipeline_>
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struct GemmKernel
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{
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using TilePartitioner = remove_cvref_t<TilePartitioner_>;
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using GemmPipeline = remove_cvref_t<GemmPipeline_>;
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using EpiloguePipeline = remove_cvref_t<EpiloguePipeline_>;
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using ALayout = remove_cvref_t<typename GemmPipeline::ALayout>;
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using BLayout = remove_cvref_t<typename GemmPipeline::BLayout>;
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using CLayout = remove_cvref_t<typename GemmPipeline::CLayout>;
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static constexpr index_t KernelBlockSize = GemmPipeline::BlockSize;
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using ADataType = remove_cvref_t<typename GemmPipeline::ADataType>;
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using BDataType = remove_cvref_t<typename GemmPipeline::BDataType>;
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// Below type is actually accumulation data type - the output of block GEMM.
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using CDataType = remove_cvref_t<typename EpiloguePipeline::ODataType>;
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static constexpr auto I0 = number<0>();
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static constexpr auto I1 = number<1>();
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static constexpr auto I2 = number<2>();
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[[nodiscard]] CK_TILE_HOST static const std::string GetName()
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{
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// clang-format off
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return concat('_', "gemm", gemm_prec_str<ADataType, BDataType>, GemmPipeline::GetName());
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// clang-format on
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}
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CK_TILE_HOST static constexpr auto GridSize(index_t M, index_t N, index_t KBatch)
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{
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return dim3(TilePartitioner::GridSize(M, N), 1, KBatch);
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}
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CK_TILE_HOST static constexpr auto BlockSize() { return dim3(KernelBlockSize); }
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CK_TILE_HOST static constexpr GemmKernelArgs MakeKernelArgs(const GemmHostArgs& hostArgs)
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{
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return GemmKernelArgs{hostArgs.a_ptr,
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hostArgs.b_ptr,
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hostArgs.c_ptr,
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hostArgs.M,
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hostArgs.N,
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hostArgs.K,
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hostArgs.stride_A,
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hostArgs.stride_B,
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hostArgs.stride_C,
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hostArgs.k_batch};
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}
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CK_TILE_HOST_DEVICE static constexpr index_t GetSmemSize()
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{
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return max(GemmPipeline::GetSmemSize(), EpiloguePipeline::GetSmemSize());
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}
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struct SplitKBatchOffset
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{
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__device__ SplitKBatchOffset(const GemmKernelArgs& kargs,
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const std::size_t k_id = blockIdx.z)
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{
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constexpr auto K1 = TilePartitioner::BlockGemmShape::WarpTile::at(number<2>{});
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const index_t K_t = __builtin_amdgcn_readfirstlane(kargs.k_batch * K1);
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const index_t KRead = __builtin_amdgcn_readfirstlane((kargs.K + K_t - 1) / K_t * K1);
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if constexpr(std::is_same_v<tensor_layout::gemm::RowMajor, ALayout>)
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{
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a_k_split_offset = __builtin_amdgcn_readfirstlane(k_id * KRead);
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}
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else if constexpr(std::is_same_v<tensor_layout::gemm::ColumnMajor, ALayout>)
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{
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a_k_split_offset = __builtin_amdgcn_readfirstlane(k_id * KRead * kargs.stride_A);
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}
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if constexpr(std::is_same_v<tensor_layout::gemm::RowMajor, BLayout>)
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{
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b_k_split_offset = __builtin_amdgcn_readfirstlane(k_id * KRead * kargs.stride_B);
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}
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else if constexpr(std::is_same_v<tensor_layout::gemm::ColumnMajor, BLayout>)
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{
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b_k_split_offset = __builtin_amdgcn_readfirstlane(k_id * KRead);
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}
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if(k_id < static_cast<uint32_t>(kargs.k_batch - 1))
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{
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splitted_k = __builtin_amdgcn_readfirstlane(KRead);
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}
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else
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{
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splitted_k = __builtin_amdgcn_readfirstlane(kargs.K - KRead * (kargs.k_batch - 1));
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}
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}
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index_t a_k_split_offset;
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index_t b_k_split_offset;
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index_t splitted_k;
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};
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CK_TILE_HOST static bool IsSupportedArgument(const GemmKernelArgs& kargs)
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{
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if constexpr(EpiloguePipeline::GetVectorSizeC() % 2 != 0 &&
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is_any_of<CDataType, fp16_t, bf16_t>::value)
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{
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if(kargs.k_batch != 1)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("Conditions not met for Kbatch >1 !");
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}
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return false;
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}
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}
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if constexpr(std::is_same_v<ALayout, tensor_layout::gemm::RowMajor>)
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{
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if(kargs.K % (TilePartitioner::KPerBlock * kargs.k_batch) != 0 &&
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GemmPipeline::kPadK == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("Can't support K that is not a multiple of k_batch * KPerBlock "
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"without padding!");
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}
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return false;
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}
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if(kargs.K % GemmPipeline::GetVectorSizeA() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("K is not a multiple of vector load size for A tensor!");
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}
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return false;
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}
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}
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else
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{
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if(kargs.M % TilePartitioner::MPerBlock != 0 && GemmPipeline::kPadM == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR(
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"Can't support M that is not a multiple of MPerBlock without padding!");
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}
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return false;
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}
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if(kargs.M % GemmPipeline::GetVectorSizeA() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("M is not a multiple of vector load size for A tensor!");
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}
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return false;
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}
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}
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if constexpr(std::is_same_v<BLayout, tensor_layout::gemm::RowMajor>)
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{
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if(kargs.N % TilePartitioner::NPerBlock != 0 && GemmPipeline::kPadN == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR(
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"Can't support N that is not a multiple of NPerBlock without padding!");
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}
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return false;
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}
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if(kargs.N % GemmPipeline::GetVectorSizeB() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("N is not a multiple of vector load size for B tensor!");
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}
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return false;
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}
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}
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else
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{
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if(kargs.K % (TilePartitioner::KPerBlock * kargs.k_batch) != 0 &&
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GemmPipeline::kPadK == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("Can't support K that is not a multiple of k_batch * KPerBlock "
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"without padding!");
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}
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return false;
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}
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if(kargs.K % GemmPipeline::GetVectorSizeB() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("K is not a multiple of vector load size for B tensor!");
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}
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return false;
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}
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}
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if constexpr(std::is_same_v<CLayout, tensor_layout::gemm::RowMajor>)
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{
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if(kargs.N % TilePartitioner::NPerBlock != 0 && GemmPipeline::kPadN == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR(
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"Can't support N that is not a multiple of NPerBlock without padding!");
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}
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return false;
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}
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if(kargs.N % EpiloguePipeline::GetVectorSizeC() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("N is not a multiple of vector load size for C tensor!");
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}
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return false;
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}
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}
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else
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{
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if(kargs.M % TilePartitioner::MPerBlock != 0 && GemmPipeline::kPadM == false)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR(
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"Can't support M that is not a multiple of MPerBlock without padding!");
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}
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return false;
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}
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if(kargs.M % EpiloguePipeline::GetVectorSizeC() != 0)
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{
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if(ck_tile::EnvIsEnabled(CK_TILE_ENV(CK_TILE_LOGGING)))
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{
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CK_TILE_ERROR("M is not a multiple of vector load size for C tensor!");
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}
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return false;
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}
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}
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return true;
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}
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template <memory_operation_enum DstInMemOp = memory_operation_enum::set>
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CK_TILE_DEVICE static auto MakeGemmTensorViews(const ADataType* a_ptr,
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const BDataType* b_ptr,
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CDataType* c_ptr,
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const GemmKernelArgs& kargs,
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const SplitKBatchOffset& splitk_batch_offset)
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{
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static_assert(!TilePartitioner::BlockGemmShape::PermuteA, "Not implemented!");
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const auto& a_tensor_view = [&]() {
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if constexpr(std::is_same_v<ALayout, tensor_layout::gemm::RowMajor>)
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{
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return make_naive_tensor_view<address_space_enum::global>(
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a_ptr,
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make_tuple(kargs.M, splitk_batch_offset.splitted_k),
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make_tuple(kargs.stride_A, 1),
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number<GemmPipeline::GetVectorSizeA()>{},
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number<1>{});
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}
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else
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{
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return make_naive_tensor_view<address_space_enum::global>(
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a_ptr,
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make_tuple(splitk_batch_offset.splitted_k, kargs.M),
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make_tuple(kargs.stride_A, 1),
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number<GemmPipeline::GetVectorSizeA()>{},
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number<1>{});
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}
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}();
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const auto& b_tensor_view = [&]() {
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if constexpr(std::is_same_v<BLayout, tensor_layout::gemm::RowMajor>)
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{
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if constexpr(TilePartitioner::BlockGemmShape::PermuteB)
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{
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constexpr index_t K1 = GemmPipeline::GetSmemPackB();
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const index_t K0 = splitk_batch_offset.splitted_k / K1;
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constexpr index_t VectorSizeB = std::min(K1, GemmPipeline::GetVectorSizeB());
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const auto b_k0_n_k1_desc =
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make_naive_tensor_descriptor(make_tuple(K0, kargs.N, K1),
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make_tuple(kargs.N * K1, K1, I1),
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number<VectorSizeB>{},
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number<1>{});
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const auto b_n_k_desc = transform_tensor_descriptor(
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b_k0_n_k1_desc,
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make_tuple(make_merge_transform(make_tuple(K0, K1)),
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make_pass_through_transform(kargs.N)),
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make_tuple(sequence<0, 2>{}, sequence<1>{}),
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make_tuple(sequence<0>{}, sequence<1>{}));
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return make_tensor_view<address_space_enum::global>(b_ptr, b_n_k_desc);
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}
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else
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{
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return make_naive_tensor_view<address_space_enum::global>(
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b_ptr,
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make_tuple(splitk_batch_offset.splitted_k, kargs.N),
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make_tuple(kargs.stride_B, 1),
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number<GemmPipeline::GetVectorSizeB()>{},
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number<1>{});
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}
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}
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else
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{
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if constexpr(TilePartitioner::BlockGemmShape::PermuteB)
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{
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constexpr index_t K1 = GemmPipeline::GetSmemPackB();
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const index_t K0 = splitk_batch_offset.splitted_k / K1;
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constexpr index_t VectorSizeB = std::min(K1, GemmPipeline::GetVectorSizeB());
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const auto b_k0_n_k1_desc =
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make_naive_tensor_descriptor(make_tuple(K0, kargs.N, K1),
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make_tuple(kargs.N * K1, K1, I1),
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number<VectorSizeB>{},
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number<1>{});
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const auto b_n_k_desc = transform_tensor_descriptor(
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b_k0_n_k1_desc,
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make_tuple(make_merge_transform(make_tuple(K0, K1)),
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make_pass_through_transform(kargs.N)),
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make_tuple(sequence<0, 2>{}, sequence<1>{}),
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make_tuple(sequence<1>{}, sequence<0>{}));
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return make_tensor_view<address_space_enum::global>(b_ptr, b_n_k_desc);
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}
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else
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{
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return make_naive_tensor_view<address_space_enum::global>(
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b_ptr,
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make_tuple(kargs.N, splitk_batch_offset.splitted_k),
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make_tuple(kargs.stride_B, 1),
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number<GemmPipeline::GetVectorSizeB()>{},
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number<1>{});
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}
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}
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}();
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// TODO: enable vector write for C in ColMajor
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const auto& c_tensor_view = [&]() {
|
|
if constexpr(std::is_same_v<CLayout, tensor_layout::gemm::RowMajor>)
|
|
{
|
|
return make_naive_tensor_view<address_space_enum::global, DstInMemOp>(
|
|
c_ptr,
|
|
make_tuple(kargs.M, kargs.N),
|
|
make_tuple(kargs.stride_C, 1),
|
|
number<EpiloguePipeline::GetVectorSizeC()>{},
|
|
number<1>{});
|
|
}
|
|
else
|
|
{
|
|
return make_naive_tensor_view<address_space_enum::global, DstInMemOp>(
|
|
c_ptr,
|
|
make_tuple(kargs.M, kargs.N),
|
|
make_tuple(1, kargs.stride_C),
|
|
number<1>{},
|
|
number<1>{});
|
|
}
|
|
}();
|
|
|
|
return make_tuple(a_tensor_view, b_tensor_view, c_tensor_view);
|
|
}
|
|
|
|
template <typename TensorView>
|
|
CK_TILE_DEVICE static auto MakeGemmPadViews(const TensorView& views)
|
|
{
|
|
const auto& a_pad_view = [&]() {
|
|
const auto& a_tensor_view = views.at(I0);
|
|
if constexpr(std::is_same_v<ALayout, tensor_layout::gemm::RowMajor>)
|
|
{
|
|
return pad_tensor_view(a_tensor_view,
|
|
make_tuple(number<TilePartitioner::MPerBlock>{},
|
|
number<TilePartitioner::KPerBlock>{}),
|
|
sequence<false, GemmPipeline::kPadK>{});
|
|
}
|
|
else
|
|
{
|
|
return pad_tensor_view(a_tensor_view,
|
|
make_tuple(number<TilePartitioner::KPerBlock>{},
|
|
number<TilePartitioner::MPerBlock>{}),
|
|
sequence<false, GemmPipeline::kPadM>{});
|
|
}
|
|
}();
|
|
|
|
const auto& b_pad_view = [&]() {
|
|
const auto& b_tensor_view = views.at(I1);
|
|
if constexpr(std::is_same_v<BLayout, tensor_layout::gemm::ColumnMajor>)
|
|
{
|
|
return pad_tensor_view(b_tensor_view,
|
|
make_tuple(number<TilePartitioner::NPerBlock>{},
|
|
number<TilePartitioner::KPerBlock>{}),
|
|
sequence<false, GemmPipeline::kPadK>{});
|
|
}
|
|
else
|
|
{
|
|
return pad_tensor_view(b_tensor_view,
|
|
make_tuple(number<TilePartitioner::KPerBlock>{},
|
|
number<TilePartitioner::NPerBlock>{}),
|
|
sequence<false, GemmPipeline::kPadN>{});
|
|
}
|
|
}();
|
|
|
|
// TODO vector write in for C in ColMajor
|
|
const auto& c_pad_view = [&]() {
|
|
const auto& c_tensor_view = views.at(I2);
|
|
if constexpr(std::is_same_v<CLayout, tensor_layout::gemm::RowMajor>)
|
|
{
|
|
return pad_tensor_view(c_tensor_view,
|
|
make_tuple(number<TilePartitioner::MPerBlock>{},
|
|
number<TilePartitioner::NPerBlock>{}),
|
|
sequence<false, GemmPipeline::kPadN>{});
|
|
}
|
|
else
|
|
{
|
|
return pad_tensor_view(c_tensor_view,
|
|
make_tuple(number<TilePartitioner::MPerBlock>{},
|
|
number<TilePartitioner::NPerBlock>{}),
|
|
sequence<GemmPipeline::kPadM, false>{});
|
|
}
|
|
}();
|
|
|
|
return make_tuple(a_pad_view, b_pad_view, c_pad_view);
|
|
}
|
|
|
|
template <typename PadView>
|
|
CK_TILE_DEVICE static auto
|
|
MakeGemmTileWindows(const PadView& views, const index_t i_m, const index_t i_n)
|
|
{
|
|
const auto& a_pad_view = views.at(I0);
|
|
const auto& b_pad_view = views.at(I1);
|
|
const auto& c_pad_view = views.at(I2);
|
|
|
|
const auto& a_block_window = [&]() {
|
|
if constexpr(std::is_same_v<ALayout, tensor_layout::gemm::RowMajor>)
|
|
{
|
|
return make_tile_window(a_pad_view,
|
|
make_tuple(number<TilePartitioner::MPerBlock>{},
|
|
number<TilePartitioner::KPerBlock>{}),
|
|
{i_m, 0});
|
|
}
|
|
else
|
|
{
|
|
return make_tile_window(a_pad_view,
|
|
make_tuple(number<TilePartitioner::KPerBlock>{},
|
|
number<TilePartitioner::MPerBlock>{}),
|
|
{0, i_m});
|
|
}
|
|
}();
|
|
|
|
const auto& b_block_window = [&]() {
|
|
if constexpr(std::is_same_v<BLayout, tensor_layout::gemm::ColumnMajor>)
|
|
{
|
|
return make_tile_window(b_pad_view,
|
|
make_tuple(number<TilePartitioner::NPerBlock>{},
|
|
number<TilePartitioner::KPerBlock>{}),
|
|
{i_n, 0});
|
|
}
|
|
else
|
|
{
|
|
return make_tile_window(b_pad_view,
|
|
make_tuple(number<TilePartitioner::KPerBlock>{},
|
|
number<TilePartitioner::NPerBlock>{}),
|
|
{0, i_n});
|
|
}
|
|
}();
|
|
|
|
auto c_block_window = make_tile_window(
|
|
c_pad_view,
|
|
make_tuple(number<TilePartitioner::MPerBlock>{}, number<TilePartitioner::NPerBlock>{}),
|
|
{i_m, i_n});
|
|
|
|
return make_tuple(a_block_window, b_block_window, c_block_window);
|
|
}
|
|
|
|
/**
|
|
* @brief Runs single GEMM problem cooperatively by whole workgroup.
|
|
*
|
|
* @param a_ptr input A pointer
|
|
* @param b_ptr input B pointer
|
|
* @param c_ptr output C pointer
|
|
* @param smem_ptr_0 The start memory pointer of the shared memory block.
|
|
* @param kargs GEMM kernel arguments
|
|
* @param splitk_batch_offset splitk_batch_offset Utility structure used to calculate k batch.
|
|
* @param block_idx_m The GEMM's output M dimension tile index processed by this workgroup.
|
|
* @param block_idx_n The GEMM's output N dimension tile index processed by this workgroup.
|
|
*
|
|
*/
|
|
CK_TILE_DEVICE static void RunGemm(const ADataType* a_ptr,
|
|
const BDataType* b_ptr,
|
|
CDataType* c_ptr,
|
|
void* smem_ptr_0,
|
|
const GemmKernelArgs& kargs,
|
|
const SplitKBatchOffset& splitk_batch_offset,
|
|
const index_t block_idx_m,
|
|
const index_t block_idx_n)
|
|
{
|
|
// Create Gemm tensor views, pad views and tile windows
|
|
const auto& gemm_tensor_views_tuple =
|
|
MakeGemmTensorViews<EpiloguePipeline::MemoryOperation>(
|
|
a_ptr, b_ptr, c_ptr, kargs, splitk_batch_offset);
|
|
|
|
const auto& gemm_pad_views = MakeGemmPadViews(gemm_tensor_views_tuple);
|
|
auto gemm_tile_windows = MakeGemmTileWindows(gemm_pad_views, block_idx_m, block_idx_n);
|
|
|
|
const index_t num_loop = __builtin_amdgcn_readfirstlane(
|
|
TilePartitioner::GetLoopNum(splitk_batch_offset.splitted_k));
|
|
|
|
// Run GEMM cooperatively by whole workgroup.
|
|
const auto& a_block_window = gemm_tile_windows.at(I0);
|
|
const auto& b_block_window = gemm_tile_windows.at(I1);
|
|
|
|
const auto& c_block_tile = GemmPipeline{}.template operator()(
|
|
a_block_window, b_block_window, num_loop, smem_ptr_0);
|
|
|
|
// Run Epilogue Pipeline
|
|
auto& c_block_window = gemm_tile_windows.at(I2);
|
|
|
|
EpiloguePipeline{}.template operator()<decltype(c_block_window), decltype(c_block_tile)>(
|
|
c_block_window, c_block_tile, smem_ptr_0);
|
|
}
|
|
|
|
/**
|
|
* @brief Runs single GEMM problem cooperatively by whole workgroup.
|
|
*
|
|
* @note RunGEMM2LDS in with two shared memory buffers using the ping pong buffer mechanism.
|
|
*
|
|
* @param a_ptr input A pointer
|
|
* @param b_ptr input B pointer
|
|
* @param c_ptr output C pointer
|
|
* @param smem_ptr_0 The starting pointer of 1st shared memory block.
|
|
* @param smem_ptr_1 The starting pointer of 2nd shared memory block.
|
|
* @param kargs GEMM kernel arguments
|
|
* @param splitk_batch_offset Utility structure used to calculate k batch.
|
|
* @param block_idx_m The GEMM's output M dimension tile index processed by this workgroup.
|
|
* @param block_idx_n The GEMM's output N dimension tile index processed by this workgroup.
|
|
*
|
|
*/
|
|
CK_TILE_DEVICE static void RunGemm2LDS(const ADataType* a_ptr,
|
|
const BDataType* b_ptr,
|
|
CDataType* c_ptr,
|
|
void* __restrict__ smem_ptr_0,
|
|
void* __restrict__ smem_ptr_1,
|
|
const GemmKernelArgs& kargs,
|
|
const SplitKBatchOffset& splitk_batch_offset,
|
|
const index_t block_idx_m,
|
|
const index_t block_idx_n)
|
|
{
|
|
// Create Gemm tensor views, pad views and tile windows
|
|
const auto& gemm_tensor_views_tuple =
|
|
MakeGemmTensorViews<EpiloguePipeline::MemoryOperation>(
|
|
a_ptr, b_ptr, c_ptr, kargs, splitk_batch_offset);
|
|
const auto& gemm_pad_views = MakeGemmPadViews(gemm_tensor_views_tuple);
|
|
auto gemm_tile_windows = MakeGemmTileWindows(gemm_pad_views, block_idx_m, block_idx_n);
|
|
|
|
const index_t num_loop = __builtin_amdgcn_readfirstlane(
|
|
TilePartitioner::GetLoopNum(splitk_batch_offset.splitted_k));
|
|
|
|
// Run GEMM cooperatively by whole workgroup.
|
|
const auto& a_block_window = gemm_tile_windows.at(I0);
|
|
const auto& b_block_window = gemm_tile_windows.at(I1);
|
|
|
|
const auto& c_block_tile = GemmPipeline{}.template operator()(
|
|
a_block_window, b_block_window, num_loop, smem_ptr_0, smem_ptr_1);
|
|
|
|
// Run Epilogue Pipeline
|
|
auto& c_block_window = gemm_tile_windows.at(I2);
|
|
|
|
EpiloguePipeline{}.template operator()<decltype(c_block_window), decltype(c_block_tile)>(
|
|
c_block_window, c_block_tile, smem_ptr_0);
|
|
}
|
|
|
|
CK_TILE_DEVICE void operator()(GemmKernelArgs kargs) const
|
|
{
|
|
const auto blockId = __builtin_amdgcn_readfirstlane(blockIdx.x);
|
|
const auto [iM, iN] = TilePartitioner{kargs.M, kargs.N}.GetOutputTileIndex(blockId);
|
|
const index_t i_m = __builtin_amdgcn_readfirstlane(iM * TilePartitioner::MPerBlock);
|
|
const index_t i_n = __builtin_amdgcn_readfirstlane(iN * TilePartitioner::NPerBlock);
|
|
|
|
const SplitKBatchOffset splitk_batch_offset(kargs);
|
|
// options
|
|
const ADataType* a_ptr =
|
|
static_cast<const ADataType*>(kargs.a_ptr) + splitk_batch_offset.a_k_split_offset;
|
|
const BDataType* b_ptr =
|
|
static_cast<const BDataType*>(kargs.b_ptr) + splitk_batch_offset.b_k_split_offset;
|
|
CDataType* c_ptr = static_cast<CDataType*>(kargs.c_ptr);
|
|
|
|
// allocate LDS
|
|
__shared__ char smem_ptr_0[GetSmemSize()];
|
|
|
|
if constexpr(GemmPipeline::DoubleSmemBuffer == true)
|
|
{
|
|
__shared__ char smem_ptr_1[GetSmemSize()];
|
|
if constexpr(!(EpiloguePipeline::MemoryOperation == memory_operation_enum::atomic_add &&
|
|
EpiloguePipeline::GetVectorSizeC() % 2 != 0 &&
|
|
is_any_of<CDataType, fp16_t, bf16_t>::value))
|
|
{
|
|
RunGemm2LDS(a_ptr,
|
|
b_ptr,
|
|
c_ptr,
|
|
smem_ptr_0,
|
|
smem_ptr_1,
|
|
kargs,
|
|
splitk_batch_offset,
|
|
i_m,
|
|
i_n);
|
|
}
|
|
}
|
|
else
|
|
{
|
|
if constexpr(!(EpiloguePipeline::MemoryOperation == memory_operation_enum::atomic_add &&
|
|
EpiloguePipeline::GetVectorSizeC() % 2 != 0 &&
|
|
is_any_of<CDataType, fp16_t, bf16_t>::value))
|
|
{
|
|
RunGemm(a_ptr, b_ptr, c_ptr, smem_ptr_0, kargs, splitk_batch_offset, i_m, i_n);
|
|
}
|
|
}
|
|
}
|
|
};
|
|
|
|
} // namespace ck_tile
|