#pragma once
#include "megdnn/thin/small_vector.h"
#include "src/fallback/conv_bias/opr_impl.h"
#include "src/fallback/matrix_mul/opr_impl.h"
namespace megdnn {
namespace fallback {
class ConvBiasImpl::AlgoNaive final : public AlgoBase {
public:
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::NAIVE;
}
const char* name() const override { return "FALLBACK_NAIVE"; }
bool usable(
const NCBKernSizeParam& param,
AlgoSelectionStrategy algo_selection_strategy) const override;
size_t get_workspace(const NCBKernSizeParam& param) const override;
SmallVector<NCBKern> dispatch_kerns(const NCBKernSizeParam&) const override;
ConvAlgoTypePack get_algo_type() const override {
auto support_data_type = static_cast<AlgoDataType>(
static_cast<uint32_t>(AlgoDataType::FLOAT16) |
static_cast<uint32_t>(AlgoDataType::FLOAT32) |
static_cast<uint32_t>(AlgoDataType::INT8X8X16) |
static_cast<uint32_t>(AlgoDataType::QINT8X8X32) |
static_cast<uint32_t>(AlgoDataType::QUINT8X8X32));
return {support_data_type, AlgoCategory::NAIVE};
}
MEGDNN_DECL_ALGO_TYPE(FB_NAIVE)
};
class ConvBiasImpl::AlgoWinogradF32 final : public AlgoBase {
public:
AlgoWinogradF32(MatrixMulImpl::AlgoBase* matmul_algo)
: m_matmul_algo{matmul_algo} {}
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::NAIVE;
}
const char* name() const override {
if (m_name.empty()) {
m_name = ConvBiasImpl::algo_name<ConvBias::WinogradParam>(
ssprintf("FALLBACK_WINOGRAD_F32-%s", m_matmul_algo->name()),
{1, 2, UNIT_TILE_SIZE});
}
return m_name.c_str();
}
bool usable(
const NCBKernSizeParam& param,
AlgoSelectionStrategy algo_selection_strategy) const override;
size_t get_workspace(const NCBKernSizeParam& param) const override;
SmallVector<NCBKern> dispatch_kerns(const NCBKernSizeParam&) const override;
ConvAlgoTypePack get_algo_type() const override {
return {AlgoDataType::FLOAT32, AlgoCategory::WINOGRAD};
}
MEGDNN_DECL_ALGO_TYPE(FB_WINOGRAD_F32)
private:
MatrixMulImpl::AlgoBase* m_matmul_algo;
mutable std::string m_name;
constexpr size_t static UNIT_TILE_SIZE = 32;
};
class ConvBiasImpl::AlgoWinogradF32_4x4 final : public AlgoBase {
public:
AlgoWinogradF32_4x4(MatrixMulImpl::AlgoBase* matmul_algo)
: m_matmul_algo{matmul_algo} {}
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::NAIVE;
}
const char* name() const override {
if (m_name.empty()) {
m_name = ConvBiasImpl::algo_name<ConvBias::WinogradParam>(
ssprintf("FALLBACK_WINOGRAD_F32-%s", m_matmul_algo->name()),
{4, 2, UNIT_TILE_SIZE});
}
return m_name.c_str();
}
bool usable(
const NCBKernSizeParam& param,
AlgoSelectionStrategy algo_selection_strategy) const override;
size_t get_workspace(const NCBKernSizeParam& param) const override;
SmallVector<NCBKern> dispatch_kerns(const NCBKernSizeParam&) const override;
ConvAlgoTypePack get_algo_type() const override {
return {AlgoDataType::FLOAT32, AlgoCategory::WINOGRAD};
}
MEGDNN_DECL_ALGO_TYPE(FB_WINOGRAD_4X4_F32)
private:
MatrixMulImpl::AlgoBase* m_matmul_algo;
mutable std::string m_name;
constexpr size_t static UNIT_TILE_SIZE = 32;
};
class ConvBiasImpl::AlgoWinogradQS8 final : public AlgoBase {
public:
AlgoWinogradQS8(MatrixMulImpl::AlgoBase* matmul_algo)
: m_matmul_algo{matmul_algo} {}
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::NAIVE;
}
const char* name() const override {
if (m_name.empty()) {
m_name = ConvBiasImpl::algo_name<ConvBias::WinogradParam>(
ssprintf("FALLBACK_WINOGRAD_QS8-%s", m_matmul_algo->name()),
{1, 2, UNIT_TILE_SIZE});
}
return m_name.c_str();
}
bool usable(
const NCBKernSizeParam& param,
AlgoSelectionStrategy algo_selection_strategy) const override;
size_t get_workspace(const NCBKernSizeParam& param) const override;
SmallVector<NCBKern> dispatch_kerns(const NCBKernSizeParam&) const override;
ConvAlgoTypePack get_algo_type() const override {
return {AlgoDataType::QINT8X8X32, AlgoCategory::WINOGRAD};
}
MEGDNN_DECL_ALGO_TYPE(FB_WINOGRAD_QS8)
private:
MatrixMulImpl::AlgoBase* m_matmul_algo;
mutable std::string m_name;
constexpr size_t static UNIT_TILE_SIZE = 32;
};
class ConvBiasImpl::AlgoWinogradQS8_8x8 final : public AlgoBase {
public:
AlgoWinogradQS8_8x8(MatrixMulImpl::AlgoBase* matmul_algo)
: m_matmul_algo{matmul_algo} {}
AlgoAttribute attribute() const override {
return AlgoAttribute::REPRODUCIBLE | AlgoAttribute::NAIVE;
}
const char* name() const override {
if (m_name.empty()) {
m_name = ConvBiasImpl::algo_name<ConvBias::WinogradParam>(
ssprintf("FALLBACK_WINOGRAD_QS8-%s", m_matmul_algo->name()),
{8, 2, UNIT_TILE_SIZE});
}
return m_name.c_str();
}
bool usable(
const NCBKernSizeParam& param,
AlgoSelectionStrategy algo_selection_strategy) const override;
size_t get_workspace(const NCBKernSizeParam& param) const override;
SmallVector<NCBKern> dispatch_kerns(const NCBKernSizeParam&) const override;
ConvAlgoTypePack get_algo_type() const override {
return {AlgoDataType::QINT8X8X32, AlgoCategory::WINOGRAD};
}
MEGDNN_DECL_ALGO_TYPE(FB_WINOGRAD_8X8_QS8)
private:
MatrixMulImpl::AlgoBase* m_matmul_algo;
mutable std::string m_name;
constexpr size_t static UNIT_TILE_SIZE = 32;
};
} }