Commit b30d416c authored by Jun Liu's avatar Jun Liu
Browse files

Merge branch 'develop' into amd-develop

parents 2fd6c6d4 94fbaac0
...@@ -6,3 +6,9 @@ add_gtest_executable(test_copy test_copy.cpp) ...@@ -6,3 +6,9 @@ add_gtest_executable(test_copy test_copy.cpp)
target_link_libraries(test_copy PRIVATE utility) target_link_libraries(test_copy PRIVATE utility)
add_gtest_executable(test_partition test_partition.cpp) add_gtest_executable(test_partition test_partition.cpp)
target_link_libraries(test_partition PRIVATE utility) target_link_libraries(test_partition PRIVATE utility)
if(GPU_TARGETS MATCHES "gfx908" OR GPU_TARGETS MATCHES "gfx90a" OR
GPU_TARGETS MATCHES "gfx940" OR GPU_TARGETS MATCHES "gfx941" OR
GPU_TARGETS MATCHES "gfx942")
add_gtest_executable(test_gemm test_gemm.cpp)
target_link_libraries(test_gemm PRIVATE utility)
endif()
// SPDX-License-Identifier: MIT
// Copyright (c) 2024, Advanced Micro Devices, Inc. All rights reserved.
#include <numeric>
#include <cstdlib>
#include <iostream>
#include <initializer_list>
#include <vector>
#include <gtest/gtest.h>
#include "ck/library/utility/host_tensor.hpp"
#include "ck/tensor_operation/gpu/element/element_wise_operation.hpp"
#include "ck/library/utility/host_tensor.hpp"
#include "ck/library/reference_tensor_operation/cpu/reference_gemm.hpp"
#include "ck/host_utility/kernel_launch.hpp"
#include "ck/library/utility/device_memory.hpp"
#include "ck/library/utility/check_err.hpp"
#include "ck/utility/common_header.hpp"
#include "ck/library/utility/fill.hpp"
#include "ck/wrapper/layout.hpp"
#include "ck/wrapper/tensor.hpp"
#include "ck/wrapper/operations/copy.hpp"
#include "ck/wrapper/operations/gemm.hpp"
template <typename DataType>
void CheckResult(const std::vector<DataType>& a_data,
const std::vector<DataType>& b_data,
std::vector<DataType>& c_m_n_device_result,
const ck::index_t M,
const ck::index_t N,
const ck::index_t K)
{
using PassThrough = ck::tensor_operation::element_wise::PassThrough;
using ReferenceGemmInstance = ck::tensor_operation::host::
ReferenceGemm<DataType, DataType, DataType, float, PassThrough, PassThrough, PassThrough>;
Tensor<DataType> a_m_k(HostTensorDescriptor({M, K}));
Tensor<DataType> b_k_n(HostTensorDescriptor({K, N}, {1, K}));
Tensor<DataType> c_m_n_host_result(HostTensorDescriptor({M, N}));
a_m_k.mData = a_data;
b_k_n.mData = b_data;
auto ref_op = ReferenceGemmInstance{};
auto ref_invoker = ref_op.MakeInvoker();
auto ref_argument = ref_op.MakeArgument(
a_m_k, b_k_n, c_m_n_host_result, PassThrough{}, PassThrough{}, PassThrough{});
ref_invoker.Run(ref_argument);
EXPECT_TRUE(ck::utils::check_err(c_m_n_device_result, c_m_n_host_result.mData));
}
template <typename DataType,
typename GemmTraits,
ck::index_t scalar_per_vector,
typename BlockShape,
typename ThreadLayoutShape>
__global__ void DeviceGemm(const void* p_a,
const void* p_b,
void* p_c,
const ck::index_t M,
const ck::index_t N,
const ck::index_t K,
const BlockShape tile_shape,
const ThreadLayoutShape thread_layout)
{
constexpr auto MPerBlock = ck::wrapper::size<0>(tile_shape);
constexpr auto NPerBlock = ck::wrapper::size<1>(tile_shape);
constexpr auto KPerBlock = ck::wrapper::size<2>(tile_shape);
const auto a_global_layout =
ck::wrapper::make_layout(ck::make_tuple(M, K), ck::make_tuple(K, 1));
const auto b_global_layout =
ck::wrapper::make_layout(ck::make_tuple(N, K), ck::make_tuple(K, 1));
const auto c_global_layout =
ck::wrapper::make_layout(ck::make_tuple(M, N), ck::make_tuple(N, 1));
constexpr auto a_tile_layout = ck::wrapper::make_layout(
ck::make_tuple(MPerBlock, KPerBlock), ck::make_tuple(KPerBlock, ck::Number<1>{}));
constexpr auto b_tile_layout = ck::wrapper::make_layout(
ck::make_tuple(NPerBlock, KPerBlock), ck::make_tuple(KPerBlock, ck::Number<1>{}));
constexpr auto c_tile_layout = ck::wrapper::make_layout(
ck::make_tuple(MPerBlock, NPerBlock), ck::make_tuple(NPerBlock, ck::Number<1>{}));
auto a_global_tensor = ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Global>(
static_cast<const DataType*>(p_a), a_global_layout);
auto b_global_tensor = ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Global>(
static_cast<const DataType*>(p_b), b_global_layout);
auto c_global_tensor = ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Global>(
static_cast<DataType*>(p_c), c_global_layout);
auto a_padded_global_tensor = ck::wrapper::pad(a_global_tensor, shape(a_tile_layout));
auto b_padded_global_tensor = ck::wrapper::pad(b_global_tensor, shape(b_tile_layout));
auto c_padded_global_tensor = ck::wrapper::pad(c_global_tensor, shape(c_tile_layout));
__shared__ DataType lds_a[ck::wrapper::size(a_tile_layout)];
__shared__ DataType lds_b[ck::wrapper::size(b_tile_layout)];
auto a_lds_tensor = ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Lds>(
static_cast<DataType*>(lds_a), a_tile_layout);
auto b_lds_tensor = ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Lds>(
static_cast<DataType*>(lds_b), b_tile_layout);
const ck::index_t block_idx = static_cast<ck::index_t>(blockIdx.x);
using DimAccessOrder = ck::Tuple<ck::Number<0>, ck::Number<1>>;
constexpr ck::index_t vector_dim = 1;
auto c_global_local_tile = ck::wrapper::make_local_tile(
c_padded_global_tensor,
tile_shape,
block_idx,
make_tuple(ck::Number<1>{}, ck::Number<1>{}, ck::wrapper::slice(KPerBlock)));
auto c_global_local_partition =
ck::wrapper::make_blockwise_gemm_xdl_c_local_partition<DataType,
decltype(a_tile_layout),
decltype(b_tile_layout),
ck::wrapper::size(thread_layout),
GemmTraits>(c_global_local_tile);
auto c_vgpr_reg = ck::wrapper::make_blockwise_gemm_xdl_c_vgpr<DataType,
decltype(a_tile_layout),
decltype(b_tile_layout),
ck::wrapper::size(thread_layout),
GemmTraits>();
ck::wrapper::clear(c_vgpr_reg);
const ck::index_t num_loop = ck::math::integer_divide_ceil(K, KPerBlock);
ck::index_t i = 0;
do
{
const auto k_slice = ck::wrapper::slice(i * KPerBlock, (i + 1) * KPerBlock);
auto a_padded_global_tensor_k_slice = a_padded_global_tensor(ck::wrapper::slice(), k_slice);
auto b_padded_global_tensor_k_slice = b_padded_global_tensor(ck::wrapper::slice(), k_slice);
auto a_global_local_tile = ck::wrapper::make_local_tile(
a_padded_global_tensor_k_slice,
tile_shape,
block_idx,
make_tuple(ck::Number<1>{}, ck::wrapper::slice(N), ck::Number<1>{}));
auto b_global_local_tile = ck::wrapper::make_local_tile(
b_padded_global_tensor_k_slice,
tile_shape,
block_idx,
make_tuple(ck::wrapper::slice(M), ck::Number<1>{}, ck::Number<1>{}));
ck::wrapper::blockwise_copy<DimAccessOrder, vector_dim, scalar_per_vector>(
a_global_local_tile, a_lds_tensor, thread_layout);
ck::wrapper::blockwise_copy<DimAccessOrder, vector_dim, scalar_per_vector>(
b_global_local_tile, b_lds_tensor, thread_layout);
ck::block_sync_lds();
ck::wrapper::blockwise_gemm_xdl<DataType, ck::wrapper::size(thread_layout), GemmTraits>(
a_lds_tensor, b_lds_tensor, c_vgpr_reg);
++i;
} while(i < num_loop);
ck::wrapper::copy(c_vgpr_reg, c_global_local_partition);
}
template <typename DataType,
typename GemmTraits,
ck::index_t scalar_per_vector,
typename BlockShape,
typename ThreadLayoutShape>
void PerformGemm(const ck::index_t M,
const ck::index_t N,
const ck::index_t K,
const BlockShape& tile_shape,
const ThreadLayoutShape& thread_layout)
{
// Global memory buffers
DeviceMem a_mem(M * K * sizeof(DataType));
DeviceMem b_mem(K * N * sizeof(DataType));
DeviceMem c_mem(M * N * sizeof(DataType));
std::vector<DataType> a_data(M * K);
std::vector<DataType> b_data(K * N);
ck::utils::FillUniformDistributionIntegerValue<DataType>{-5.f, 5.f}(a_data);
ck::utils::FillUniformDistributionIntegerValue<DataType>{-5.f, 5.f}(b_data);
a_mem.ToDevice(a_data.data());
b_mem.ToDevice(b_data.data());
c_mem.SetZero();
const ck::index_t grid_size =
ck::math::integer_divide_ceil(M, ck::wrapper::size<0>(tile_shape)) *
ck::math::integer_divide_ceil(N, ck::wrapper::size<1>(tile_shape));
const auto kernel =
DeviceGemm<DataType, GemmTraits, scalar_per_vector, BlockShape, ThreadLayoutShape>;
launch_and_time_kernel(StreamConfig{nullptr},
kernel,
dim3(grid_size),
dim3(ck::wrapper::size(thread_layout)),
0,
a_mem.GetDeviceBuffer(),
b_mem.GetDeviceBuffer(),
c_mem.GetDeviceBuffer(),
M,
N,
K,
tile_shape,
thread_layout);
std::vector<DataType> c_data(M * N);
c_mem.FromDevice(c_data.data());
CheckResult<DataType>(a_data, b_data, c_data, M, N, K);
}
TEST(TestGemm, Float)
{
using DataType = float;
const auto thread_layout = ck::make_tuple(ck::Number<16>{}, ck::Number<16>{});
const auto tile_shape = ck::make_tuple(ck::Number<128>{}, ck::Number<128>{}, ck::Number<64>{});
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_4K1, 4>(
512, 512, 128, tile_shape, thread_layout);
// Irregular case
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_4K1, 1>(
129, 129, 67, tile_shape, thread_layout);
}
TEST(TestGemm, Int8)
{
using DataType = int8_t;
const auto thread_layout = ck::make_tuple(ck::Number<64>{}, ck::Number<4>{});
const auto tile_shape = ck::make_tuple(ck::Number<128>{}, ck::Number<128>{}, ck::Number<64>{});
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_16K1, 16>(
512, 512, 128, tile_shape, thread_layout);
// Irregular case
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_16K1, 1>(
129, 129, 67, tile_shape, thread_layout);
}
TEST(TestGemm, Half)
{
using DataType = ck::half_t;
const auto thread_layout = ck::make_tuple(ck::Number<32>{}, ck::Number<8>{});
const auto tile_shape = ck::make_tuple(ck::Number<128>{}, ck::Number<128>{}, ck::Number<64>{});
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_8K1, 8>(
512, 512, 128, tile_shape, thread_layout);
// Irregular case
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x2XdlPerWave_8K1, 1>(
129, 129, 67, tile_shape, thread_layout);
}
TEST(TestGemm, Float_2x4_4x2_XdlPerWave)
{
using DataType = float;
const auto thread_layout_4x2_xdl_per_wave = ck::make_tuple(ck::Number<16>{}, ck::Number<8>{});
const auto thread_layout_2x4_xdl_per_wave = ck::make_tuple(ck::Number<8>{}, ck::Number<16>{});
const auto tile_shape = ck::make_tuple(ck::Number<128>{}, ck::Number<128>{}, ck::Number<64>{});
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_4x2XdlPerWave_4K1, 4>(
512, 512, 128, tile_shape, thread_layout_4x2_xdl_per_wave);
PerformGemm<DataType, ck::wrapper::BlockwisGemmXdlTraits_32x32Xdl_2x4XdlPerWave_4K1, 4>(
512, 512, 128, tile_shape, thread_layout_2x4_xdl_per_wave);
}
...@@ -29,17 +29,24 @@ TEST(TestPartition, LocalPartition) ...@@ -29,17 +29,24 @@ TEST(TestPartition, LocalPartition)
const auto tensor = const auto tensor =
ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Generic>(data.data(), layout); ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Generic>(data.data(), layout);
const auto thread_steps = ck::make_tuple(ck::Number<8>{}, ck::Number<1>{}); const auto thread_steps = ck::make_tuple(ck::Number<1>{}, ck::Number<8>{}, ck::Number<1>{});
const auto thread_layout = ck::make_tuple(ck::Number<8>{}, ck::Number<1>{}); const auto thread_layout = ck::make_tuple(ck::Number<4>{}, ck::Number<8>{}, ck::Number<1>{});
// 3d partition on 2d shape (calculate partition on 3d thread layout, and then skip first dim)
const auto thread_projection =
ck::make_tuple(ck::wrapper::slice(4), ck::Number<1>{}, ck::Number<1>{});
constexpr ck::index_t projection_thread_length = ck::Number<4>{};
for(ck::index_t thread_id = 0; thread_id < ck::wrapper::size(thread_layout); thread_id++) for(ck::index_t thread_id = 0;
thread_id < ck::wrapper::size(thread_layout) / projection_thread_length;
thread_id++)
{ {
const auto packed_partition = const auto packed_partition =
ck::wrapper::make_local_partition(tensor, thread_layout, thread_id); ck::wrapper::make_local_partition(tensor, thread_layout, thread_id, thread_projection);
const auto expected_partition_size = const auto expected_partition_size =
ck::wrapper::size(tensor) / ck::wrapper::size(thread_layout); ck::wrapper::size(tensor) /
const auto expected_partition_first_val = thread_id * ck::wrapper::size<0>(thread_steps); (ck::wrapper::size(thread_layout) / projection_thread_length);
const auto expected_partition_first_val = thread_id * ck::wrapper::size<1>(thread_steps);
const auto expected_partition_second_val = expected_partition_first_val + 1; const auto expected_partition_second_val = expected_partition_first_val + 1;
EXPECT_EQ(ck::wrapper::size(packed_partition), expected_partition_size); EXPECT_EQ(ck::wrapper::size(packed_partition), expected_partition_size);
EXPECT_EQ(packed_partition(0), expected_partition_first_val); EXPECT_EQ(packed_partition(0), expected_partition_first_val);
...@@ -58,8 +65,12 @@ TEST(TestPartition, LocalTile) ...@@ -58,8 +65,12 @@ TEST(TestPartition, LocalTile)
const auto tensor = const auto tensor =
ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Generic>(data.data(), layout); ck::wrapper::make_tensor<ck::wrapper::MemoryTypeEnum::Generic>(data.data(), layout);
// 4d tile partitioning on 3d shape (calculate tile on 4d tile layout, and then skip last dim)
const auto block_shape = ck::make_tuple(ck::Number<2>{}, ck::Number<4>{}, ck::Number<2>{}); const auto block_shape =
ck::make_tuple(ck::Number<2>{}, ck::Number<4>{}, ck::Number<2>{}, ck::Number<2>{});
const auto block_projection =
ck::make_tuple(ck::Number<1>{}, ck::Number<1>{}, ck::Number<1>{}, ck::wrapper::slice(2));
constexpr ck::index_t projection_block_dim = ck::Number<2>{};
const auto num_blocks = const auto num_blocks =
ck::make_tuple(ck::wrapper::size<0>(shape) / ck::wrapper::size<0>(block_shape), ck::make_tuple(ck::wrapper::size<0>(shape) / ck::wrapper::size<0>(block_shape),
ck::wrapper::size<1>(shape) / ck::wrapper::size<1>(block_shape), ck::wrapper::size<1>(shape) / ck::wrapper::size<1>(block_shape),
...@@ -69,9 +80,10 @@ TEST(TestPartition, LocalTile) ...@@ -69,9 +80,10 @@ TEST(TestPartition, LocalTile)
for(auto block_idx : block_idxs) for(auto block_idx : block_idxs)
{ {
const auto packed_tile = ck::wrapper::make_local_tile(tensor, block_shape, block_idx); const auto packed_tile =
ck::wrapper::make_local_tile(tensor, block_shape, block_idx, block_projection);
const auto expected_tile_size = ck::wrapper::size(block_shape); const auto expected_tile_size = ck::wrapper::size(block_shape) / projection_block_dim;
auto expected_tile_first_val = (block_idx % ck::wrapper::size<2>(num_blocks)) * auto expected_tile_first_val = (block_idx % ck::wrapper::size<2>(num_blocks)) *
ck::wrapper::size<2>(block_shape) * ck::wrapper::size<2>(block_shape) *
ck::wrapper::size<2>(strides); ck::wrapper::size<2>(strides);
......
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