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implicit_gemm_pipelined.h
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implicit_gemm_pipelined.h
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/***************************************************************************************************
* Copyright (c) 2017 - 2024 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 a double-buffered threadblock-scoped GEMM kernel.
*/
#pragma once
#include "cutlass/cutlass.h"
#include "cutlass/array.h"
#include "cutlass/aligned_buffer.h"
#include "cutlass/numeric_conversion.h"
#include "cutlass/numeric_types.h"
#include "cutlass/matrix_shape.h"
#include "cutlass/gemm/gemm.h"
#include "cutlass/gemm/threadblock/mma_base.h"
/////////////////////////////////////////////////////////////////////////////////////////////////
namespace cutlass {
namespace conv {
namespace threadblock {
/////////////////////////////////////////////////////////////////////////////////////////////////
/// Structure to compute the matrix product targeting CUDA cores and SIMT math instructions.
template <
/// Size of the Gemm problem - concept: gemm::GemmShape<>
typename Shape_,
/// Iterates over tiles of A operand in global memory
// (concept: ReadableTileIterator | ForwardTileIterator | MaskedTileIterator)
typename IteratorA_,
/// Iterates over tiles of A operand in shared memory
/// (concept: WriteableTileIterator | RandomAccessTileIterator)
typename SmemIteratorA_,
/// Iterates over tiles of B operand in global memory
// (concept: ReadableTileIterator | ForwardTileIterator | MaskedTileIterator)
typename IteratorB_,
/// Iterates over tiles of B operand in shared memory
/// (concept: WriteableTileIterator | RandomAccessTileIterator)
typename SmemIteratorB_,
/// Data type of accumulator matrix
typename ElementC_,
/// Data type of accumulator matrix
typename LayoutC_,
/// Policy describing tuning details (concept: MmaPolicy)
typename Policy_,
/// Transformation applied to A operand
typename TransformA_ = NumericArrayConverter<
typename SmemIteratorA_::Element,
typename IteratorA_::Element,
IteratorA_::Fragment::kElements>,
///
/// Transformation applied to A operand
typename TransformB_ = NumericArrayConverter<
typename SmemIteratorB_::Element,
typename IteratorB_::Element,
IteratorB_::Fragment::kElements>,
/// Used for partial specialization
typename Enable = bool
>
class ImplicitGemmPipelined : public gemm::threadblock::MmaBase<Shape_, Policy_, 2> {
public:
///< Base class
using Base = gemm::threadblock::MmaBase<Shape_, Policy_, 2>;
using Shape = Shape_; ///< Size of the Gemm problem - concept: gemm::GemmShape<>
using IteratorA = IteratorA_; ///< Iterates over tiles of A operand in global memory
using IteratorB = IteratorB_; ///< Iterates over tiles of B operand in global memory
using ElementC = ElementC_; ///< Data type of accumulator matrix
using LayoutC = LayoutC_; ///< Layout of accumulator matrix
using Policy = Policy_; ///< Policy describing tuning details
using SmemIteratorA = SmemIteratorA_;
using SmemIteratorB = SmemIteratorB_;
using TransformA = TransformA_;
using TransformB = TransformB_;
//
// Dependent types
//
/// Fragment of operand A loaded from global memory
using FragmentA = typename IteratorA::Fragment;
/// Fragment of operand B loaded from global memory
using FragmentB = typename IteratorB::Fragment;
/// Fragment of accumulator tile
using FragmentC = typename Policy::Operator::FragmentC;
/// Warp-level Mma
using Operator = typename Policy::Operator;
/// Obtain the arch tag from the warp-level operator
using ArchTag = typename Policy::Operator::ArchTag;
/// Complex transform on A operand
static ComplexTransform const kTransformA = Operator::kTransformA;
/// Complex transform on B operand
static ComplexTransform const kTransformB = Operator::kTransformB;
// staticaly assert kStages for MmaPipelined is two (Double-buffered pipeline)
static_assert((Base::kStages==2), "MmaPipelined requires kStages set to value 2");
private:
using WarpFragmentA = typename Operator::FragmentA;
using WarpFragmentB = typename Operator::FragmentB;
protected:
/// Iterator to write threadblock-scoped tile of A operand to shared memory
SmemIteratorA smem_iterator_A_;
/// Iterator to write threadblock-scoped tile of B operand to shared memory
SmemIteratorB smem_iterator_B_;
public:
/// Construct from tensor references
CUTLASS_DEVICE
ImplicitGemmPipelined(
typename Base::SharedStorage &shared_storage, ///< Shared storage needed for internal use by threadblock-scoped GEMM
int thread_idx, ///< ID within the threadblock
int warp_idx, ///< ID of warp
int lane_idx ///< ID of each thread within a warp
):
Base(shared_storage, thread_idx, warp_idx, lane_idx),
smem_iterator_A_(shared_storage.operand_A_ref(), thread_idx),
smem_iterator_B_(shared_storage.operand_B_ref(), thread_idx) {
// Compute warp location within threadblock tile by mapping the warp_id to
// three coordinates:
// _m: the warp's position within the threadblock along the M dimension
// _n: the warp's position within the threadblock along the N dimension
// _k: the warp's position within the threadblock along the K dimension
int warp_idx_mn = warp_idx % (Base::WarpCount::kM * Base::WarpCount::kN);
int warp_idx_k = warp_idx / (Base::WarpCount::kM * Base::WarpCount::kN);
int warp_idx_m = warp_idx_mn % Base::WarpCount::kM;
int warp_idx_n = warp_idx_mn / Base::WarpCount::kM;
// Add per-warp offsets in units of warp-level tiles
this->warp_tile_iterator_A_.add_tile_offset({warp_idx_m, Base::kWarpGemmIterations * warp_idx_k});
this->warp_tile_iterator_B_.add_tile_offset({Base::kWarpGemmIterations * warp_idx_k, warp_idx_n});
}
/// Perform a threadblock-scoped matrix multiply-accumulate
CUTLASS_DEVICE
void operator()(
int gemm_k_iterations, ///< number of iterations of the mainloop
FragmentC &accum, ///< destination accumulator tile
IteratorA iterator_A, ///< iterator over A operand in global memory
IteratorB iterator_B, ///< iterator over B operand in global memory
FragmentC const &src_accum, ///< source accumulator tile
int gemm_k_iterations_per_channel = 0, ///< number of iterations per channel
TransformA transform_A = TransformA(), ///< transformation applied to A fragment
TransformB transform_B = TransformB()) { ///< transformation applied to B fragment
//
// Prologue
//
// Perform accumulation in the 'd' output operand
accum = src_accum;
FragmentA tb_frag_A;
FragmentB tb_frag_B;
tb_frag_A.clear();
tb_frag_B.clear();
// The last kblock is loaded in the prolog
iterator_A.load(tb_frag_A);
iterator_B.load(tb_frag_B);
++iterator_A;
++iterator_B;
this->smem_iterator_A_.store(transform_A(tb_frag_A));
this->smem_iterator_B_.store(transform_B(tb_frag_B));
++this->smem_iterator_A_;
++this->smem_iterator_B_;
__syncthreads();
// Pair of fragments used to overlap shared memory loads and math instructions
WarpFragmentA warp_frag_A[2];
WarpFragmentB warp_frag_B[2];
this->warp_tile_iterator_A_.set_kgroup_index(0);
this->warp_tile_iterator_B_.set_kgroup_index(0);
this->warp_tile_iterator_A_.load(warp_frag_A[0]);
this->warp_tile_iterator_B_.load(warp_frag_B[0]);
++this->warp_tile_iterator_A_;
++this->warp_tile_iterator_B_;
Operator warp_mma;
int smem_write_stage_idx = 1;
// Issue loads during the first warp-level matrix multiply-add *AFTER* issuing
// shared memory loads (which have the tightest latency requirement).
//
// Mainloop
//
// Note: The main loop does not support Base::kWarpGemmIterations == 2.
CUTLASS_GEMM_LOOP
for (; gemm_k_iterations > 0; --gemm_k_iterations) {
//
// Loop over GEMM K dimension
//
CUTLASS_PRAGMA_UNROLL
for (int warp_mma_k = 0; warp_mma_k < Base::kWarpGemmIterations; ++warp_mma_k) {
// Load warp-level tiles from shared memory, wrapping to k offset if this is the last group
// as the case may be.
if (warp_mma_k == Base::kWarpGemmIterations - 1) {
// Write fragments to shared memory
this->smem_iterator_A_.store(transform_A(tb_frag_A));
this->smem_iterator_B_.store(transform_B(tb_frag_B));
__syncthreads();
++this->smem_iterator_A_;
++this->smem_iterator_B_;
// Add negative offsets to return iterators to the 'start' of the circular buffer in shared memory
if (smem_write_stage_idx == 1) {
this->smem_iterator_A_.add_tile_offset({0, -Base::kStages});
this->smem_iterator_B_.add_tile_offset({-Base::kStages, 0});
}
else {
this->warp_tile_iterator_A_.add_tile_offset(
{0, -Base::kStages * Policy::kPartitionsK * Base::kWarpGemmIterations});
this->warp_tile_iterator_B_.add_tile_offset(
{-Base::kStages * Policy::kPartitionsK * Base::kWarpGemmIterations,
0});
}
smem_write_stage_idx ^= 1;
}
this->warp_tile_iterator_A_.set_kgroup_index((warp_mma_k + 1) % Base::kWarpGemmIterations);
this->warp_tile_iterator_B_.set_kgroup_index((warp_mma_k + 1) % Base::kWarpGemmIterations);
this->warp_tile_iterator_A_.load(warp_frag_A[(warp_mma_k + 1) % 2]);
this->warp_tile_iterator_B_.load(warp_frag_B[(warp_mma_k + 1) % 2]);
++this->warp_tile_iterator_A_;
++this->warp_tile_iterator_B_;
if (warp_mma_k == 0) {
iterator_A.load(tb_frag_A);
iterator_B.load(tb_frag_B);
++iterator_A;
++iterator_B;
}
warp_mma(accum, warp_frag_A[warp_mma_k % 2],
warp_frag_B[warp_mma_k % 2], accum);
}
}
}
};
/////////////////////////////////////////////////////////////////////////////////////////////////
} // namespace threadblock
} // namespace gemm
} // namespace cutlass
/////////////////////////////////////////////////////////////////////////////////////////////////