Files
openharmony-mlx/gpt_oss/metal/test/matmul-kernel-tester.hpp
Dominik Kundel 243a1b0276 Initial commit
Co-authored-by: Zhuohan Li <zhuohan@openai.com>
Co-authored-by: Maratyszcza <marat@openai.com>
Co-authored-by: Volodymyr Kyrylov <vol@wilab.org.ua>
2025-08-05 08:19:49 -07:00

165 lines
5.7 KiB
C++

#pragma once
#include <gtest/gtest.h>
#include <cmath>
#include <cstddef>
#include <cstdint>
#include <internal/datatype.hpp>
#include <internal/metal.hpp>
#include <internal/metal-kernels.h>
namespace gptoss {
class MatMulKernelTester {
public:
MatMulKernelTester() { }
MatMulKernelTester(const MatMulKernelTester&) = delete;
MatMulKernelTester(MatMulKernelTester&&) = delete;
MatMulKernelTester& operator=(const MatMulKernelTester&) = delete;
MatMulKernelTester& operator=(MatMulKernelTester&&) = delete;
[[nodiscard]]
MatMulKernelTester& num_rows(std::uint32_t num_rows) {
num_rows_ = num_rows;
return *this;
}
std::uint32_t num_rows() const {
return num_rows_;
}
[[nodiscard]]
MatMulKernelTester& num_cols(std::uint32_t num_cols) {
num_cols_ = num_cols;
return *this;
}
std::uint32_t num_cols() const {
return num_cols_;
}
[[nodiscard]]
MatMulKernelTester& num_tokens(std::uint32_t num_tokens) {
num_tokens_ = num_tokens;
return *this;
}
std::uint32_t num_tokens() const {
return num_tokens_;
}
[[nodiscard]]
MatMulKernelTester& threadgroup_size(std::size_t threadgroup_size) {
threadgroup_size_ = threadgroup_size;
return *this;
}
std::size_t threadgroup_size() const {
return threadgroup_size_;
}
void Validate(std::uint32_t vec_size) const {
ASSERT_NE(num_rows(), 0);
ASSERT_NE(num_cols(), 0);
ASSERT_EQ(num_cols() % vec_size, 0);
ASSERT_NE(num_tokens(), 0);
ASSERT_NE(threadgroup_size(), 0);
}
void TestF32_BF16W() const {
Validate(/*vec_size=*/4);
metal::CommandBuffer command_buffer{command_queue_};
metal::Buffer input_buffer{device_, num_tokens() * num_cols() * sizeof(float)};
metal::Buffer weight_buffer{device_, num_rows() * num_cols() * sizeof(gptoss_bfloat16)};
metal::Buffer bias_buffer{device_, num_rows() * sizeof(gptoss_bfloat16)};
metal::Buffer output_buffer{device_, num_tokens() * num_rows() * sizeof(float)};
command_buffer.encode_launch_f32_fill_random(
f32_fill_random_fn_,
/*threadgroup_size=*/0,
/*max_threadgroups=*/kFillRandomMaxThreadgroups,
/*output_buffer=*/input_buffer,
/*output_offset=*/0,
num_tokens() * num_cols(), kSeed, /*offset=*/0, /*min=*/-1.0f, /*max=*/1.0);
command_buffer.encode_launch_bf16_fill_random(
bf16_fill_random_fn_,
/*threadgroup_size=*/0,
/*max_threadgroups=*/kFillRandomMaxThreadgroups,
/*output_buffer=*/weight_buffer,
/*output_offset=*/0,
num_rows() * num_cols(), kSeed + 1, /*offset=*/0, /*min=*/-1.0f, /*max=*/1.0);
command_buffer.encode_launch_bf16_fill_random(
bf16_fill_random_fn_,
/*threadgroup_size=*/0,
/*max_threadgroups=*/kFillRandomMaxThreadgroups,
/*output_buffer=*/bias_buffer,
/*output_offset=*/0,
num_rows(), kSeed + 2, /*offset=*/0, /*min=*/-1.0f, /*max=*/1.0);
Check(gptoss_metal_command_buffer_encode_launch_f32_bf16w_matmul(
command_buffer.handle(),
f32_bf16w_matmul_fn_.handle(),
/*threadgroup_size=*/threadgroup_size(),
input_buffer.handle(),
/*input_offset=*/0,
weight_buffer.handle(),
/*weight_offset=*/0,
bias_buffer.handle(),
/*bias_offset=*/0,
output_buffer.handle(),
/*output_offset=*/0,
num_tokens(),
num_cols(),
num_rows()),
"gptoss_metal_command_buffer_encode_launch_f32_bf16w_matmul");
command_buffer.commit();
command_buffer.wait_completion();
const float* input_ptr = static_cast<const float*>(input_buffer.ptr());
const gptoss_bfloat16* weight_ptr = static_cast<const gptoss_bfloat16*>(weight_buffer.ptr());
const gptoss_bfloat16* bias_ptr = static_cast<const gptoss_bfloat16*>(bias_buffer.ptr());
const float* output_ptr = static_cast<const float*>(output_buffer.ptr());
for (size_t t = 0; t < num_tokens(); t++) {
for (size_t r = 0; r < num_rows(); r++) {
double ref_sum = upcast<double>(bias_ptr[r]);
for (size_t c = 0; c < num_cols(); c++) {
const double ref_weight = upcast<double>(weight_ptr[r * num_cols() + c]);
const double input_value = upcast<double>(input_ptr[t * num_cols() + c]);
ref_sum = std::fma(input_value, ref_weight, ref_sum);
}
ASSERT_NEAR(upcast<double>(output_ptr[t * num_rows() + r]), ref_sum, std::abs(ref_sum) * 1.0e-5)
<< "token " << t;
}
}
}
private:
static constexpr std::uint64_t kSeed{UINT64_C(1019827666124465388)};
static constexpr std::size_t kFillRandomMaxThreadgroups = 10;
static constexpr float fp4e2m1_to_fp32[16] = {
+0.0f, +0.5f, +1.0f, +1.5f, +2.0f, +3.0f, +4.0f, +6.0f,
-0.0f, -0.5f, -1.0f, -1.5f, -2.0f, -3.0f, -4.0f, -6.0f,
};
metal::Device device_{};
metal::CommandQueue command_queue_{device_};
metal::Library library_{device_};
metal::Function f32_fill_random_fn_{library_, "gptoss_f32_fill_random"};
metal::Function bf16_fill_random_fn_{library_, "gptoss_bf16_fill_random"};
metal::Function f32_bf16w_matmul_fn_{library_, "gptoss_f32_bf16w_matmul"};
std::uint32_t num_tokens_{1};
std::uint32_t num_rows_{1};
std::uint32_t num_cols_{32};
std::size_t threadgroup_size_{32};
};
} // namespace gptoss