// Copyright (c) Advanced Micro Devices, Inc., or its affiliates. // SPDX-License-Identifier: MIT #pragma once #include #include #include "ck_tile/core.hpp" #include "ck_tile/ops/common.hpp" #include "ck_tile/ops/gemm/pipeline/gemm_pipeline_ag_bg_cr_scheduler.hpp" namespace ck_tile { struct FlatmmProblem { CK_TILE_HOST FlatmmProblem() = default; CK_TILE_HOST FlatmmProblem( index_t M_, index_t N_, index_t K_, index_t stride_A_, index_t stride_B_, index_t stride_C_) : M(M_), N(N_), K(K_), stride_A(stride_A_), stride_B(stride_B_), stride_C(stride_C_) { } index_t M; index_t N; index_t K; index_t stride_A; index_t stride_B; index_t stride_C; }; template struct FlatmmScalePointer { static constexpr int GranularityMN = SharedGranularityMN; static constexpr int GranularityK = SharedGranularityK; const float* ptr; CK_TILE_HOST_DEVICE FlatmmScalePointer() = default; CK_TILE_HOST_DEVICE FlatmmScalePointer(const float* ptr_) : ptr(ptr_) {} CK_TILE_HOST_DEVICE FlatmmScalePointer(const float* ptr_, [[maybe_unused]] index_t length_) : ptr(ptr_) { } CK_TILE_HOST_DEVICE FlatmmScalePointer operator+(index_t offset) const { FlatmmScalePointer ret; if constexpr(GranularityMN == 0) { ret.ptr = ptr + offset / GranularityK; } else { ret.ptr = ptr + offset / GranularityMN / GranularityK; } return ret; } CK_TILE_HOST_DEVICE float operator[](index_t i) const = delete; }; template struct FlatmmScalePointer { static constexpr int GranularityMN = SharedGranularityMN; static constexpr int GranularityK = 0; static_assert(GranularityMN != 0); const float* ptr; index_t length; CK_TILE_HOST_DEVICE FlatmmScalePointer() = default; CK_TILE_HOST_DEVICE FlatmmScalePointer(const float* ptr_) : ptr(ptr_), length(1) {} CK_TILE_HOST_DEVICE FlatmmScalePointer(const float* ptr_, index_t length_) : ptr(ptr_), length(length_) { } CK_TILE_HOST_DEVICE FlatmmScalePointer operator+(index_t offset) const { FlatmmScalePointer ret; if constexpr(GranularityMN == 1) { ret.ptr = ptr + offset; ret.length = length - offset; } else { ret.ptr = ptr + offset / GranularityMN; ret.length = length - offset / GranularityMN; } return ret; } CK_TILE_HOST_DEVICE float operator[](index_t i) const { // with additional oob check if constexpr(GranularityMN == 1) return i < length ? ptr[i] : 0; else return i / GranularityMN < length ? ptr[i / GranularityMN] : 0; } }; // shared granularityMN = -1 means no scale template <> struct FlatmmScalePointer<-1, 0> { static constexpr int GranularityMN = -1; static constexpr int GranularityK = 0; const float* ptr = nullptr; CK_TILE_HOST_DEVICE constexpr FlatmmScalePointer() = default; CK_TILE_HOST_DEVICE constexpr FlatmmScalePointer(const float*) {} CK_TILE_HOST_DEVICE constexpr FlatmmScalePointer(const float*, index_t) {} CK_TILE_HOST_DEVICE constexpr FlatmmScalePointer operator+(index_t) const { return FlatmmScalePointer{}; } CK_TILE_HOST_DEVICE constexpr float operator[](index_t) const { return 1; // alway return 1, it doesn't change the result } }; template struct BaseFlatmmHostArgs { CK_TILE_HOST BaseFlatmmHostArgs() = default; CK_TILE_HOST BaseFlatmmHostArgs(const void* a_ptr_, const void* b_ptr_, const std::array& ds_ptr_, void* e_ptr_, index_t k_batch_, index_t M_, index_t N_, index_t K_, index_t stride_A_, index_t stride_B_, const std::array& stride_Ds_, index_t stride_E_) : a_ptr(a_ptr_), b_ptr(b_ptr_), ds_ptr(ds_ptr_), e_ptr(e_ptr_), M(M_), N(N_), K(K_), stride_A(stride_A_), stride_B(stride_B_), stride_Ds(stride_Ds_), stride_E(stride_E_), k_batch(k_batch_) { } const void* a_ptr; const void* b_ptr; const std::array ds_ptr; union { void* e_ptr; void* c_ptr; }; index_t M; index_t N; index_t K; index_t stride_A; index_t stride_B; const std::array stride_Ds; union { index_t stride_E; index_t stride_C; }; index_t k_batch; }; template , class ScaleN = FlatmmScalePointer<-1>, index_t NumDTensor = 0> struct ScaleFlatmmHostArgs : public BaseFlatmmHostArgs<> { CK_TILE_HOST ScaleFlatmmHostArgs() = default; CK_TILE_HOST ScaleFlatmmHostArgs(const void* a_ptr_, const void* b_shuffle_ptr_, const std::array& ds_ptr_, void* c_ptr_, index_t k_batch_, index_t M_, index_t N_, index_t K_, index_t stride_A_, index_t stride_B_, const std::array& stride_Ds_, index_t stride_C_, ScaleM scale_m_ = nullptr, ScaleN scale_n_ = nullptr) : BaseFlatmmHostArgs(a_ptr_, b_shuffle_ptr_, ds_ptr_, c_ptr_, k_batch_, M_, N_, K_, stride_A_, stride_B_, stride_Ds_, stride_C_), scale_m(scale_m_), scale_n(scale_n_) { } ScaleM scale_m = nullptr; ScaleN scale_n = nullptr; }; template using FlatmmHostArgs = ScaleFlatmmHostArgs, FlatmmScalePointer<-1>, NumberTensor>; template struct FlatmmKernelArgs { const void* a_ptr; // const void* b_shuffle_ptr; const void* b_ptr; const std::array ds_ptr; void* e_ptr; index_t M; index_t N; index_t K; index_t stride_A; index_t stride_B; std::array stride_Ds; index_t stride_E; index_t k_batch; ScaleM scale_m_ptr = nullptr; ScaleN scale_n_ptr = nullptr; }; template struct FlatmmKernel { using TilePartitioner = remove_cvref_t; using FlatmmPipeline = remove_cvref_t; using BlockGemmShape = remove_cvref_t; // TileFlatmmShape using EpiloguePipeline = remove_cvref_t; using ALayout = remove_cvref_t; using BLayout = remove_cvref_t; using ELayout = remove_cvref_t; using DsLayout = remove_cvref_t; using DsDataType = remove_cvref_t; static constexpr index_t kBlockSize = FlatmmPipeline::BlockSize; static constexpr bool UsePersistentKernel = FlatmmPipeline::UsePersistentKernel; using ADataType = remove_cvref_t; using BDataType = remove_cvref_t; // Below type is actually accumulation data type - the output of block GEMM. using EDataType = remove_cvref_t; static constexpr index_t NumDTensor = DsDataType::size(); static constexpr auto I0 = number<0>(); static constexpr auto I1 = number<1>(); static constexpr auto I2 = number<2>(); static constexpr auto I3 = number<3>(); static_assert(DsLayout::size() == DsDataType::size(), "The size of DsLayout and DsDataType should be the same"); // using KernelArgs = FlatmmKernelArgs; [[nodiscard]] CK_TILE_HOST static const std::string GetName() { // clang-format off return concat('_', "gemm", gemm_prec_str, FlatmmPipeline::GetName()); // clang-format on } CK_TILE_HOST static constexpr auto GridSize(index_t M, index_t N, index_t KBatch) { assert(!UsePersistentKernel); return dim3(TilePartitioner::GridSize(M, N), 1, KBatch); } template CK_TILE_HOST static constexpr auto GridSize(const FlatmmKernelArgs& kargs) { if constexpr(UsePersistentKernel) { hipDeviceProp_t prop; int deviceId = 0; // default device constexpr int block_size = FlatmmKernel::BlockSize().x; int dync_smem_size = 0; int maxActiveBlocksPerCU = 0; [[maybe_unused]] auto e = hipGetDeviceProperties(&prop, deviceId); e = hipOccupancyMaxActiveBlocksPerMultiprocessor( &maxActiveBlocksPerCU, reinterpret_cast( kentry<1, FlatmmKernel, FlatmmKernelArgs>), block_size, dync_smem_size); const int persistent_block_size = prop.multiProcessorCount * maxActiveBlocksPerCU; const int total_work_tile_cnt = TilePartitioner::GridSize(kargs.M, kargs.N); // std::cout << "maxActiveBlocksPerCU: " << maxActiveBlocksPerCU // << ", persistent_block_size: " << persistent_block_size // << ", total_work_tile_cnt: " << total_work_tile_cnt << std::endl; assert(kargs.k_batch == 1); return dim3(min(persistent_block_size, total_work_tile_cnt), 1, kargs.k_batch); } else { return dim3(TilePartitioner::GridSize(kargs.M, kargs.N), 1, kargs.k_batch); } } CK_TILE_HOST static constexpr auto BlockSize() { return dim3(kBlockSize); } template CK_TILE_HOST static constexpr FlatmmKernelArgs MakeKernelArgs(const ScaleFlatmmHostArgs& hostArgs) { return {hostArgs.a_ptr, hostArgs.b_ptr, hostArgs.ds_ptr, hostArgs.e_ptr, hostArgs.M, hostArgs.N, hostArgs.K, hostArgs.stride_A, hostArgs.stride_B, hostArgs.stride_Ds, hostArgs.stride_E, hostArgs.k_batch, hostArgs.scale_m, hostArgs.scale_n}; } CK_TILE_HOST_DEVICE static constexpr index_t GetSmemPingSize() { return max(FlatmmPipeline::GetSmemSize(), EpiloguePipeline::GetSmemSize()); } CK_TILE_HOST_DEVICE static constexpr index_t GetSmemPongSize() { return FlatmmPipeline::GetSmemSize(); } struct SplitKBatchOffset { template __device__ SplitKBatchOffset(const KernelArgs& kargs, const std::size_t k_id = blockIdx.z) { constexpr auto N1 = BlockGemmShape::WarpTile::at(number<1>{}); constexpr auto K1 = BlockGemmShape::WarpTile::at(number<2>{}); const index_t K_t = kargs.k_batch * K1; const index_t KRead = (kargs.K + K_t - 1) / K_t * K1; if constexpr(std::is_same_v) { a_k_split_offset = k_id * KRead; } else if constexpr(std::is_same_v) { a_k_split_offset = k_id * KRead * kargs.stride_A; } if constexpr(std::is_same_v) { b_k_split_offset = k_id * KRead * kargs.stride_B * N1; } else if constexpr(std::is_same_v) { b_k_split_offset = k_id * KRead * N1; } if(k_id < static_cast(kargs.k_batch - 1)) { splitted_k = KRead; } else { splitted_k = kargs.K - KRead * (kargs.k_batch - 1); } } index_t a_k_split_offset; index_t b_k_split_offset; index_t splitted_k; }; template CK_TILE_HOST static bool IsSupportedArgument(const KernelArgs& kargs) { if constexpr(EpiloguePipeline::GetVectorSizeC() % 2 != 0 && is_any_of::value) { if(kargs.k_batch != 1) { std::cerr << "Conditions not met for Kbatch >1 !" << std::endl; return false; } } if constexpr(UsePersistentKernel) { if(kargs.k_batch != 1) { std::cerr << "Persistent mode doesn't support Kbatch >1 !" << std::endl; return false; } } if constexpr(std::is_same_v) { if(kargs.K % TilePartitioner::KPerBlock != 0 && FlatmmPipeline::kPadK == false) { std::cerr << "Can't support K that is not a multiple of KPerBlock" " without padding!" << std::endl; return false; } if(kargs.K % FlatmmPipeline::GetVectorSizeA() != 0) { std::cerr << "K is not a multiple of vector load size for A tensor!" << std::endl; return false; } } else { if(kargs.M % TilePartitioner::MPerBlock != 0 && FlatmmPipeline::kPadM == false) { std::cerr << "Can't support M that is not a multiple of MPerBlock" " without padding!" << std::endl; return false; } if(kargs.M % FlatmmPipeline::GetVectorSizeA() != 0) { std::cerr << "M is not a multiple of vector load size for A tensor!" << std::endl; return false; } } if constexpr(std::is_same_v) { if(kargs.N % TilePartitioner::NPerBlock != 0 && FlatmmPipeline::kPadN == false) { std::cerr << "Can't support N that is not a multiple of NPerBlock" " without padding!" << std::endl; return false; } if(kargs.N % FlatmmPipeline::GetVectorSizeB() != 0) { std::cerr << "N is not a multiple of vector load size for B tensor!" << std::endl; return false; } } else { if(kargs.K % TilePartitioner::KPerBlock != 0 && FlatmmPipeline::kPadK == false) { std::cerr << "Can't support K that is not a multiple of KPerBlock" " without padding!" << std::endl; return false; } if(kargs.K % FlatmmPipeline::GetVectorSizeB() != 0) { std::cerr << "K is not a multiple of vector load size for B tensor!" << std::endl; return false; } } bool DTesnorIsValid = {true}; static_for<0, NumDTensor, 1>{}([&](auto index) { using DiLayout = remove_cvref_t>; if(std::is_same_v == false) { DTesnorIsValid = false; } if constexpr(std::is_same_v) { if(kargs.N % TilePartitioner::NPerBlock != 0 && FlatmmPipeline::kPadN == false) { CK_TILE_ERROR("Can't support N for tensor D that is not a multiple of " "NPerBlock without padding!"); DTesnorIsValid = false; } if(kargs.N % EpiloguePipeline::GetVectorSizeD(index) != 0) { CK_TILE_ERROR("N is not a multiple of vector load size for D tensor!"); DTesnorIsValid = false; } } else { if(kargs.M % TilePartitioner::MPerBlock != 0 && FlatmmPipeline::kPadM == false) { CK_TILE_ERROR("Can't support M for tensor D that is not a multiple of " "MPerBlock without padding!"); DTesnorIsValid = false; } if(kargs.M % EpiloguePipeline::GetVectorSizeD(index) != 0) { CK_TILE_ERROR("M is not a multiple of vector load size for D tensor!"); DTesnorIsValid = false; } } }); if constexpr(std::is_same_v) { if(kargs.N % TilePartitioner::NPerBlock != 0 && FlatmmPipeline::kPadN == false) { std::cerr << "Can't support N that is not a multiple of NPerBlock" " without padding!" << std::endl; return false; } if(kargs.N % EpiloguePipeline::GetVectorSizeC() != 0) { std::cerr << "N is not a multiple of vector load size for C tensor!" << std::endl; return false; } } else { if(kargs.M % TilePartitioner::MPerBlock != 0 && FlatmmPipeline::kPadM == false) { std::cerr << "Can't support M that is not a multiple of MPerBlock" " without padding!" << std::endl; return false; } if(kargs.M % EpiloguePipeline::GetVectorSizeC() != 0) { std::cerr << "M is not a multiple of vector load size for C tensor!" << std::endl; return false; } } return DTesnorIsValid; } template CK_TILE_DEVICE static auto MakeGemmTensorViews(const ADataType* a_ptr, const BDataType* b_flat_ptr, const std::array& ds_ptr, EDataType* e_ptr, const KernelArgs& kargs, const SplitKBatchOffset& splitk_batch_offset) { const auto& a_tensor_view = [&]() { if constexpr(std::is_same_v) { return make_naive_tensor_view( a_ptr, make_tuple(kargs.M, splitk_batch_offset.splitted_k), make_tuple(kargs.stride_A, 1), number{}, number<1>{}); } else { return make_naive_tensor_view( a_ptr, make_tuple(splitk_batch_offset.splitted_k, kargs.M), make_tuple(kargs.stride_A, 1), number{}, number<1>{}); } }(); index_t kFlatK = FlatmmPipeline::flatKPerWarp * (kargs.K / BlockGemmShape::WarpTile::at(I2)); index_t kFlatN = kargs.N * kargs.K / kFlatK; const auto& b_flat_tensor_view = [&]() { return make_naive_tensor_view( b_flat_ptr, make_tuple(kFlatN, kFlatK), make_tuple(kFlatK, 1), number{}, number<1>{}); }(); const auto& ds_tensor_view = generate_tuple( [&](auto i) { using DiLayout = remove_cvref_t>; using DDataType_ = remove_cvref_t>; if constexpr(std::is_same_v) { return make_naive_tensor_view( static_cast(ds_ptr[i]), make_tuple(kargs.M, kargs.N), make_tuple(kargs.stride_Ds[i], 1), number{}, number<1>{}); } else { return make_naive_tensor_view( static_cast(ds_ptr[i]), make_tuple(kargs.N, kargs.M), make_tuple(kargs.stride_Ds[i], 1), number{}, number<1>{}); } }, number{}); // TODO: enable vector write for C in ColMajor const auto& e_tensor_view = [&]() { if constexpr(std::is_same_v) { return make_naive_tensor_view( e_ptr, make_tuple(kargs.M, kargs.N), make_tuple(kargs.stride_E, 1), number{}, number<1>{}); } else { return make_naive_tensor_view( e_ptr, make_tuple(kargs.N, kargs.M), make_tuple(kargs.stride_E, 1), number<1>{}, number<1>{}); } }(); constexpr int ScaleGranularityM = decltype(kargs.scale_m_ptr)::GranularityMN; constexpr int ScaleGranularityN = decltype(kargs.scale_n_ptr)::GranularityMN; constexpr int ScaleGranularityKA = decltype(kargs.scale_m_ptr)::GranularityK; constexpr int ScaleGranularityKB = decltype(kargs.scale_n_ptr)::GranularityK; auto scale_stride_m = ScaleGranularityM == 0 ? 0 // per-tensor scale : 1; // per-token scale auto scale_stride_n = ScaleGranularityN == 0 ? 0 // per-tensor scale : 1; // per-channel scale static_assert(ScaleGranularityM == 0 || ScaleGranularityM == 1 || ScaleGranularityM == -1, "only support per-tensor or per-row scaling"); static_assert(ScaleGranularityN == 0 || ScaleGranularityN == 1 || ScaleGranularityN == -1, "only support per-tensor or per-column scaling"); const auto scale_m_view = make_naive_tensor_view( kargs.scale_m_ptr.ptr, make_tuple(kargs.M / ScaleGranularityM, ScaleGranularityKA == 0 ? 1 : splitk_batch_offset.splitted_k / (ScaleGranularityKA != 0 ? ScaleGranularityKA : 1)), make_tuple(scale_stride_m, 0), number < ScaleGranularityM == 1 ? FlatmmPipeline::GetVectorSizeA() : 1 > {}, number<1>{}); const auto scale_n_view = make_naive_tensor_view( kargs.scale_n_ptr.ptr, make_tuple(ScaleGranularityKB == 0 ? 1 : (splitk_batch_offset.splitted_k / (ScaleGranularityKB != 0 ? ScaleGranularityKB : 1)), kargs.N / ScaleGranularityN), make_tuple(0, scale_stride_n), number < ScaleGranularityN == 1 ? FlatmmPipeline::GetVectorSizeB() : 1 > {}, number<1>{}); return make_tuple(a_tensor_view, b_flat_tensor_view, ds_tensor_view, e_tensor_view, scale_m_view, scale_n_view); } template 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) { return pad_tensor_view(a_tensor_view, make_tuple(number{}, number{}), sequence{}); } else { return pad_tensor_view(a_tensor_view, make_tuple(number{}, number{}), sequence{}); } }(); const auto& b_flat_tensor_view = views.at(I1); const auto& ds_pad_view = generate_tuple( [&](auto i) { const auto& d_tensor_view = views.at(I2); using DiLayout = remove_cvref_t>; if constexpr(std::is_same_v) { return pad_tensor_view(d_tensor_view[i], make_tuple(number{}, number{}), sequence{}); } else { return pad_tensor_view(d_tensor_view[i], make_tuple(number{}, number{}), sequence{}); } }, number{}); // TODO vector write in for C in ColMajor const auto& e_pad_view = [&]() { const auto& e_tensor_view = views.at(I3); if constexpr(std::is_same_v) { return pad_tensor_view(e_tensor_view, make_tuple(number{}, number{}), sequence{}); } else { return pad_tensor_view(e_tensor_view, make_tuple(number{}, number{}), sequence{}); } }(); return make_tuple(a_pad_view, b_flat_tensor_view, ds_pad_view, e_pad_view, views.at(number<4>{}), views.at(number<5>{})); } template 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_flat_pad_view = views.at(I1); const auto& ds_pad_view = views.at(I2); const auto& e_pad_view = views.at(I3); const auto& a_block_window = [&]() { if constexpr(std::is_same_v) { return make_tile_window(a_pad_view, make_tuple(number{}, number{}), {i_m, 0}); } else { return make_tile_window(a_pad_view, make_tuple(number{}, number{}), {0, i_m}); } }(); const auto& b_flat_block_window = make_tile_window(b_flat_pad_view, make_tuple(number{}, number{}), {static_cast(i_n / BlockGemmShape::WarpTile::at(I1)), 0}); const auto ds_block_window = generate_tuple( [&](auto i) { using DiLayout = remove_cvref_t>; if constexpr(std::is_same_v) { return make_tile_window(ds_pad_view[i], make_tuple(number{}, number{}), {i_m, i_n}); } else { return make_tile_window(ds_pad_view[i], make_tuple(number{}, number{}), {i_n, i_m}); } }, number{}); auto e_block_window = make_tile_window( e_pad_view, make_tuple(number{}, number{}), {i_m, i_n}); constexpr int ScaleGranularityKA = 0; // decltype(kargs.scale_m_ptr)::GranularityK; constexpr int ScaleGranularityKB = 0; // decltype(kargs.scale_n_ptr)::GranularityK; auto scale_m_window = make_tile_window(views.at(number<4>{}), make_tuple(number{}, number < ScaleGranularityKA == 0 ? TilePartitioner::NPerBlock : TilePartitioner::KPerBlock > {}), {i_m, 0}); auto scale_n_window = make_tile_window(views.at(number<5>{}), make_tuple(number < ScaleGranularityKB == 0 ? TilePartitioner::MPerBlock : TilePartitioner::KPerBlock > {}, number{}), {0, i_n}); return make_tuple(a_block_window, b_flat_block_window, ds_block_window, e_block_window, scale_m_window, scale_n_window); } template CK_TILE_DEVICE static void RunFlatmm(const ADataType* a_ptr, const BDataType* b_flat_ptr, const std::array& ds_ptr, EDataType* e_ptr, void* smem_ptr_ping, void* smem_ptr_pong, const FlatmmKernelArgs& 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( a_ptr, b_flat_ptr, ds_ptr, e_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 = 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_flat_block_window = gemm_tile_windows.at(I1); const auto& d_block_window = gemm_tile_windows.at(I2); const auto& c_block_tile = FlatmmPipeline{}.template operator()( a_block_window, b_flat_block_window, num_loop, smem_ptr_ping, smem_ptr_pong); auto scale_m_window = gemm_tile_windows.at(number<4>{}); auto scale_n_window = gemm_tile_windows.at(number<5>{}); // Run Epilogue Pipeline if constexpr(ScaleM::GranularityMN != -1 || ScaleN::GranularityMN != -1) { auto& c_block_window = gemm_tile_windows.at(I3); EpiloguePipeline{}.template operator()( c_block_window, c_block_tile, d_block_window, smem_ptr_ping, scale_m_window, scale_n_window); } else if(UseDefaultScheduler || (get_warp_id() == 0)) { // Run Epilogue Pipeline auto& c_block_window = gemm_tile_windows.at(I3); EpiloguePipeline{}.template operator()( c_block_window, c_block_tile, d_block_window, smem_ptr_ping); } } template CK_TILE_DEVICE void operator()(FlatmmKernelArgs kargs, int partition_idx = blockIdx.x) const { int total_work_tile_cnt = TilePartitioner::GridSize(kargs.M, kargs.N); do { const auto [iM, iN] = TilePartitioner{kargs.M, kargs.N}.GetOutputTileIndex(partition_idx); const index_t i_m = amd_wave_read_first_lane(iM * TilePartitioner::MPerBlock); const index_t i_n = amd_wave_read_first_lane(iN * TilePartitioner::NPerBlock); const SplitKBatchOffset splitk_batch_offset(kargs); // options const ADataType* a_ptr = static_cast(kargs.a_ptr) + splitk_batch_offset.a_k_split_offset; const BDataType* b_flat_ptr = static_cast(kargs.b_ptr) + splitk_batch_offset.b_k_split_offset; EDataType* e_ptr = static_cast(kargs.e_ptr); // allocate LDS __shared__ char smem_ptr_ping[GetSmemPingSize()]; __shared__ char smem_ptr_pong[GetSmemPongSize()]; if constexpr(!(EpiloguePipeline::MemoryOperation == memory_operation_enum::atomic_add && EpiloguePipeline::GetVectorSizeC() % 2 != 0 && is_any_of::value)) { constexpr auto scheduler_type = (FlatmmPipeline::NumWaveGroups == 1); RunFlatmm(a_ptr, b_flat_ptr, kargs.ds_ptr, e_ptr, smem_ptr_ping, smem_ptr_pong, kargs, splitk_batch_offset, i_m, i_n); } partition_idx += gridDim.x; } while(UsePersistentKernel && partition_idx < total_work_tile_cnt); } }; } // namespace ck_tile