/*************************************************************************************************** * Copyright (c) 2017 - 2025 NVIDIA CORPORATION & AFFILIATES. All rights reserved. * SPDX-License-Identifier: BSD-3-Clause * * Redistribution and use in source and binary forms, with or without * modification, are permitted provided that the following conditions are met: * * 1. Redistributions of source code must retain the above copyright notice, this * list of conditions and the following disclaimer. * * 2. Redistributions in binary form must reproduce the above copyright notice, * this list of conditions and the following disclaimer in the documentation * and/or other materials provided with the distribution. * * 3. Neither the name of the copyright holder nor the names of its * contributors may be used to endorse or promote products derived from * this software without specific prior written permission. * * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" * AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE * IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE * DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE * FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL * DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR * SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER * CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, * OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE * OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. * **************************************************************************************************/ /* \file \brief Template for device-level Implicit GEMM Convolution */ #pragma once #include #include "cutlass/cutlass.h" #include "cutlass/device_kernel.h" #include "cutlass/conv/convolution.h" #include "cutlass/cuda_host_adapter.hpp" ///////////////////////////////////////////////////////////////////////////////////////////////// namespace cutlass { namespace conv { namespace device { ///////////////////////////////////////////////////////////////////////////////////////////////// template class ImplicitGemmConvolution { public: using UnderlyingKernel = GetUnderlyingKernel_t; using ElementA = typename UnderlyingKernel::ElementA; using LayoutA = typename UnderlyingKernel::LayoutA; using ElementB = typename UnderlyingKernel::ElementB; using LayoutB = typename UnderlyingKernel::LayoutB; using ElementC = typename UnderlyingKernel::ElementC; using LayoutC = typename UnderlyingKernel::LayoutC; using ElementAccumulator = typename UnderlyingKernel::ElementAccumulator; using ElementCompute = typename UnderlyingKernel::ElementCompute; using OperatorClass = typename UnderlyingKernel::OperatorClass; using ArchTag = typename UnderlyingKernel::ArchTag; using ThreadblockShape = typename UnderlyingKernel::ThreadblockShape; using WarpShape = typename UnderlyingKernel::WarpShape; using InstructionShape = typename UnderlyingKernel::InstructionShape; using ThreadblockSwizzle = typename UnderlyingKernel::ThreadblockSwizzle; using EpilogueOutputOp = typename UnderlyingKernel::EpilogueOutputOp; static int const kStages = UnderlyingKernel::kStages; static int const kConvDim = UnderlyingKernel::kConvDim; using WarpMmaOperator = typename UnderlyingKernel::WarpMmaOperator; using ArchMmaOperator = typename UnderlyingKernel::ArchMmaOperator; using MathOperator = typename UnderlyingKernel::MathOperator; static cutlass::conv::Operator const kConvolutionalOperator = UnderlyingKernel::kConvolutionalOperator; static cutlass::conv::IteratorAlgorithm const kIteratorAlgorithm = UnderlyingKernel::kIteratorAlgorithm; static cutlass::conv::StrideSupport const kStrideSupport = UnderlyingKernel::kStrideSupport; static cutlass::conv::GroupMode const kGroupMode = UnderlyingKernel::kGroupMode; static bool const kEnableCudaHostAdapter = CUTLASS_ENABLE_CUDA_HOST_ADAPTER; static int const kWarpCount = (ThreadblockShape::kM / WarpShape::kM) * (ThreadblockShape::kN / WarpShape::kN) * (ThreadblockShape::kK / WarpShape::kK); /// Argument structure using Arguments = typename UnderlyingKernel::Arguments; private: /// Kernel parameters object typename UnderlyingKernel::Params params_; public: /// Constructs Implicit GEMM ImplicitGemmConvolution() { } /// Determines whether the Implicit GEMM can execute the given problem. static Status can_implement(Arguments const &args) { // dispatch to iterators Status status = UnderlyingKernel::Mma::IteratorA::can_implement(args.problem_size); if (Status::kSuccess != status) { return status; } status = UnderlyingKernel::Mma::IteratorB::can_implement(args.problem_size); if (Status::kSuccess != status) { return status; } // Check that tensor sizes don't exceed maximum supported size if (kConvolutionalOperator == conv::Operator::kFprop) { if (args.problem_size.activation_size() * sizeof(ElementA) >= (1ull << 31) || args.problem_size.filter_size() * sizeof(ElementB) >= (1ull << 31) || args.problem_size.output_size() * sizeof(ElementC) >= (1ull << 31)) { return Status::kErrorInvalidProblem; } } else if (kConvolutionalOperator == conv::Operator::kDgrad || kConvolutionalOperator == conv::Operator::kDeconv) { if (args.problem_size.activation_size() * sizeof(ElementC) >= (1ull << 31) || args.problem_size.filter_size() * sizeof(ElementB) >= (1ull << 31) || args.problem_size.output_size() * sizeof(ElementA) >= (1ull << 31)) { return Status::kErrorInvalidProblem; } } else if (kConvolutionalOperator == conv::Operator::kWgrad) { if (args.problem_size.activation_size() * sizeof(ElementB) >= (1ull << 31) || args.problem_size.filter_size() * sizeof(ElementC) >= (1ull << 31) || args.problem_size.output_size() * sizeof(ElementA) >= (1ull << 31)) { return Status::kErrorInvalidProblem; } } // check group conv constraint if (args.problem_size.groups != 1) { if (kGroupMode == conv::GroupMode::kNone) { return Status::kErrorInvalidProblem; } // C and K should be multiple of groups if (args.problem_size.K % args.problem_size.groups || args.problem_size.C % args.problem_size.groups) { return Status::kErrorInvalidProblem; } // split-k is not supported if (args.problem_size.split_k_slices != 1) { return Status::kErrorInvalidProblem; } int k_per_group = args.problem_size.K / args.problem_size.groups; // k_per_group should be multiple of ThreadblockShape N, one CTA calculate one group if (kGroupMode == conv::GroupMode::kSingleGroup && k_per_group % ThreadblockShape::kN) { return Status::kErrorInvalidProblem; } // ThreadblockShape::kN should be divisible by k_per_group, one CTA calculate multiple groups if (kGroupMode == conv::GroupMode::kMultipleGroup && ThreadblockShape::kN % k_per_group) { return Status::kErrorInvalidProblem; } // current optimized iterator algo only supports SingleGroup mode if (kIteratorAlgorithm == IteratorAlgorithm::kOptimized && kGroupMode != conv::GroupMode::kSingleGroup) { return Status::kErrorInvalidProblem; } } static int const kAlignmentC = UnderlyingKernel::Epilogue::OutputTileIterator::kElementsPerAccess; if (kConvolutionalOperator == conv::Operator::kFprop) { if (args.problem_size.K % kAlignmentC) return Status::kErrorMisalignedOperand; } else if (kConvolutionalOperator == conv::Operator::kDgrad || kConvolutionalOperator == conv::Operator::kDeconv) { if (args.problem_size.C % kAlignmentC) return Status::kErrorMisalignedOperand; } else if (kConvolutionalOperator == conv::Operator::kWgrad) { if (args.problem_size.C % kAlignmentC) return Status::kErrorMisalignedOperand; } // check for unsupported problem sizes for strided dgrad / deconv implementation if ((kConvolutionalOperator == conv::Operator::kDgrad || kConvolutionalOperator == conv::Operator::kDeconv) && kStrideSupport == conv::StrideSupport::kStrided) { // split-k (serial or parallel) is not supported for strided dgrad / deconv if(args.problem_size.split_k_slices > 1 && (args.problem_size.stride().at(args.problem_size.stride().max_dim_index()) > 1)) { return Status::kErrorNotSupported; } // dilation > {1x1} is not supported for strided dgrad / deconv if(args.problem_size.dilation_h > 1 || args.problem_size.dilation_w > 1) { return Status::kErrorNotSupported; } } // Determine grid shape ThreadblockSwizzle threadblock_swizzle; dim3 grid = threadblock_swizzle.get_grid_shape( threadblock_swizzle.get_tiled_shape( kConvolutionalOperator, args.problem_size, {ThreadblockShape::kM, ThreadblockShape::kN, ThreadblockShape::kK}, args.problem_size.split_k_slices)); if (!(grid.y <= std::numeric_limits::max() && grid.z <= std::numeric_limits::max())) { return Status::kErrorInvalidProblem; } return Status::kSuccess; } /// Gets the workspace size static size_t get_workspace_size(Arguments const &args) { size_t workspace_bytes = 0; // Determine grid shape ThreadblockSwizzle threadblock_swizzle; cutlass::gemm::GemmCoord grid_tiled_shape = threadblock_swizzle.get_tiled_shape( kConvolutionalOperator, args.problem_size, {ThreadblockShape::kM, ThreadblockShape::kN, ThreadblockShape::kK}, args.problem_size.split_k_slices); if(args.split_k_mode == SplitKMode::kParallel) { // Split-K parallel: CTAs in k-dimension write the partial results in a temporary workspace. // The user needs to call a reduction operator to optain the final output tensor workspace_bytes = sizeof(ElementAccumulator) * size_t(cutlass::conv::implicit_gemm_tensor_c_size(kConvolutionalOperator, args.problem_size)) * size_t(grid_tiled_shape.k()); } else if(args.split_k_mode == SplitKMode::kSerial && args.problem_size.split_k_slices > 1) { // Split-K serial: The user workspace is used to store semaphore and serialize writing the // final reduced output to user's output tensor workspace_bytes = sizeof(int) * size_t(grid_tiled_shape.m()) * size_t(grid_tiled_shape.n()); } return workspace_bytes; } /// Initializes GEMM state from arguments. Status initialize( Arguments const &args, void *workspace = nullptr, cudaStream_t stream = nullptr, CudaHostAdapter *cuda_adapter = nullptr) { if (args.problem_size.split_k_slices > 1) { if (!workspace) { return Status::kErrorWorkspaceNull; } cudaError_t status = cudaMemsetAsync(workspace, 0, get_workspace_size(args), stream); if (status != cudaSuccess) { return Status::kErrorInternal; } } // initialize the params structure from the arguments params_ = typename UnderlyingKernel::Params( args, static_cast(workspace) ); if constexpr (kEnableCudaHostAdapter) { CUTLASS_ASSERT(cuda_adapter); return Status::kSuccess; } else { int smem_size = int(sizeof(typename UnderlyingKernel::SharedStorage)); if (smem_size >= (48 << 10)) { cudaError_t result = cudaFuncSetAttribute(cutlass::Kernel, cudaFuncAttributeMaxDynamicSharedMemorySize, smem_size); if (result != cudaSuccess) { return Status::kErrorInternal; } } } return Status::kSuccess; } /// Initializes GEMM state from arguments. Status update(Arguments const &args, void *workspace = nullptr) { // update the params structure from the arguments params_.ptr_A = args.ref_A.data(); params_.ptr_B = args.ref_B.data(); params_.ptr_C = args.ref_C.data(); params_.ptr_D = args.ref_D.data(); params_.output_op = args.output_op; params_.semaphore = static_cast(workspace); return Status::kSuccess; } /// Runs the kernel using initialized state. Status run(cudaStream_t stream = nullptr, CudaHostAdapter *cuda_adapter = nullptr, int32_t kernel_index = 0) { ThreadblockSwizzle threadblock_swizzle; dim3 grid = threadblock_swizzle.get_grid_shape(params_.grid_tiled_shape); dim3 block(32 * kWarpCount, 1, 1); int smem_size = int(sizeof(typename UnderlyingKernel::SharedStorage)); cutlass::Status launch_result = cutlass::Status::kSuccess ; if constexpr (kEnableCudaHostAdapter) { // // Use the cuda host adapter // CUTLASS_ASSERT(cuda_adapter); if (cuda_adapter) { void* kernel_params[] = {¶ms_}; launch_result = cuda_adapter->launch( grid, dim3(1,1,1), block, smem_size, stream, kernel_params, kernel_index ); } else { launch_result = Status::kErrorInternal; } } else { cutlass::arch::synclog_setup(); cutlass::Kernel<<>>(params_); } cudaError_t result = cudaGetLastError(); if (cudaSuccess == result && Status::kSuccess == launch_result) { return Status::kSuccess; } else { CUTLASS_TRACE_HOST(" Kernel launch failed. Reason: " << result); return Status::kErrorInternal; } } /// Runs the kernel using initialized state. Status operator()(cudaStream_t stream = nullptr, CudaHostAdapter *cuda_adapter = nullptr, int32_t kernel_index = 0) { return run(stream, cuda_adapter, kernel_index); } /// Runs the kernel using initialized state. Status operator()( Arguments const &args, void *workspace = nullptr, cudaStream_t stream = nullptr, CudaHostAdapter *cuda_adapter = nullptr, int32_t kernel_index = 0) { Status status = initialize(args, workspace, stream, cuda_adapter); if (status == Status::kSuccess) { status = run(stream, cuda_adapter, kernel_index); } return status; } }; ///////////////////////////////////////////////////////////////////////////////////////////////// } } } /////////////////////////////////////////////////////////////////////////////////////////////////