#pragma once
#include <cuda.h>
#include "megdnn/dtype.h"
#include "megdnn/oprs.h"
#include "src/common/metahelper.h"
#include "src/common/utils.h"
#include "src/cuda/batched_matrix_mul/opr_impl.h"
#include "src/cuda/matrix_mul/cublasLt_wrapper.h"
#if CUDA_VERSION >= 10010
#include <cublasLt.h>
#endif
namespace megdnn {
namespace cuda {
class BatchedMatrixMulForwardImpl::AlgoBase : public Algorithm {
protected:
~AlgoBase() = default;
public:
enum class AlgoType : uint32_t {
CUDA_BRUTE_FORCE,
CUDA_CUBLAS,
CUDA_CUBLASLT,
CUDA_INT8X8X32,
};
using Mapper = std::unordered_map<AlgorithmDesc, AlgoBase*>;
AlgoBase() : Algorithm() { m_handle_type = Handle::HandleType::CUDA; }
struct SizeArgs {
BatchedMatrixMulForwardImpl* opr;
TensorLayout layout_a, layout_b, layout_c;
std::string to_string() const;
SizeArgs(
BatchedMatrixMulForwardImpl* o, const TensorLayout& A,
const TensorLayout& B, const TensorLayout& C);
bool can_be_treated_as_int8x8x32() const {
return layout_a.dtype.enumv() == layout_b.dtype.enumv() &&
(layout_a.dtype.enumv() == DTypeEnum::Int8 ||
layout_a.dtype.enumv() == DTypeEnum::QuantizedS8) &&
(layout_c.dtype.enumv() == DTypeEnum::Int32 ||
layout_c.dtype.enumv() == DTypeEnum::QuantizedS32) &&
opr->param().format == param::MatrixMul::Format::DEFAULT;
}
};
struct ExecArgs : public SizeArgs {
TensorND tensor_a, tensor_b, tensor_c;
Workspace workspace;
ExecArgs(
BatchedMatrixMulForwardImpl* o, _megdnn_tensor_in A,
_megdnn_tensor_in B, _megdnn_tensor_in C, _megdnn_workspace workspace);
};
virtual bool is_available(const SizeArgs& args) const = 0;
virtual size_t get_workspace_in_bytes(const SizeArgs& args) const = 0;
virtual void exec(const ExecArgs& args) const = 0;
virtual const char* name() const = 0;
bool is_available_wk(const SizeArgs& args, size_t limit) {
return is_available(args) && get_workspace_in_bytes(args) <= limit;
}
bool is_available_attribute(
const SizeArgs& args,
const AlgoAttribute& positive_attr = AlgoAttribute::REPRODUCIBLE,
const AlgoAttribute& negative_attr = AlgoAttribute::DEFAULT,
size_t limit = std::numeric_limits<size_t>::max()) {
return contain_attribute_all(positive_attr) &&
!contain_attribute_any(negative_attr) && is_available_wk(args, limit);
}
AlgoBase& check_workspace(const SizeArgs& args, const Workspace& workspace) {
auto req = get_workspace_in_bytes(args);
megdnn_assert(
req <= workspace.size,
"batched matrix mul fwd algo %s: required workspace %zu "
"bytes, got %zu",
name(), req, workspace.size);
return *this;
}
};
class BatchedMatrixMulForwardImpl::AlgoBruteForce final
: public BatchedMatrixMulForwardImpl::AlgoBase {
using Param = MatrixMulForward::Param;
private:
WorkspaceBundle get_workspace_bundle();
public:
bool is_available(const SizeArgs& args) const override;
size_t get_workspace_in_bytes(const SizeArgs& ) const override;
void exec(const ExecArgs& args) const final;
AlgoAttribute attribute() const override { return AlgoAttribute::REPRODUCIBLE; }
const char* name() const override { return "BRUTE_FORCE"; }
MEGDNN_DECL_ALGO_TYPE(CUDA_BRUTE_FORCE)
std::vector<SearchItem> get_subopr_list(
const TensorLayoutArray& layouts, const OperatorBase* opr) const override;
};
class BatchedMatrixMulForwardImpl::AlgoCublas final
: public BatchedMatrixMulForwardImpl::AlgoBase {
public:
AlgoCublas() = default;
bool is_available(const SizeArgs& args) const override;
size_t get_workspace_in_bytes(const SizeArgs& ) const override;
void exec(const ExecArgs& args) const final;
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::ACCURACY_DEPEND_ON_BATCH;
}
const char* name() const override { return "CUBLAS"; }
MEGDNN_DECL_ALGO_TYPE(CUDA_CUBLAS)
};
#if CUDA_VERSION >= 10010
class BatchedMatrixMulForwardImpl::AlgoCublasLt final : public AlgoBase {
public:
AlgoCublasLt() = default;
bool is_available(const SizeArgs& args) const override;
size_t get_workspace_in_bytes(const SizeArgs& ) const override;
void exec(const ExecArgs& args) const final;
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::ACCURACY_DEPEND_ON_BATCH;
}
const char* name() const override { return "CUBLAS_LT"; }
MEGDNN_DECL_ALGO_TYPE(CUDA_CUBLASLT)
};
#endif
class BatchedMatrixMulForwardImpl::AlgoInt8x8x32 final
: public BatchedMatrixMulForwardImpl::AlgoBase {
public:
AlgoInt8x8x32() = default;
bool is_available(const SizeArgs& args) const override;
size_t get_workspace_in_bytes(const SizeArgs& ) const override;
void exec(const ExecArgs& args) const final;
AlgoAttribute attribute() const override { return AlgoAttribute::REPRODUCIBLE; }
const char* name() const override { return "INT8x8x32"; }
MEGDNN_DECL_ALGO_TYPE(CUDA_INT8X8X32)
};
class BatchedMatrixMulForwardImpl::AlgoPack : NonCopyableObj {
private:
AlgoBase::Mapper m_all_algos_map;
MatrixMulForwardImpl::AlgoPack mm_pack;
public:
AlgoPack();
AlgoCublas cublas;
#if CUDA_VERSION >= 10010
AlgoCublasLt cublasLt;
#endif
AlgoInt8x8x32 int8x8x32;
std::vector<AlgoBase*> all_algos;
AlgoBruteForce brute_force;
const AlgoBase::Mapper& all_algos_map() const { return m_all_algos_map; }
};
} }