opr_impl.cpp 29.2 KB
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/**
 * \file dnn/src/fallback/conv_bias/opr_impl.cpp
 * MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
 *
 * Copyright (c) 2014-2020 Megvii Inc. All rights reserved.
 *
 * Unless required by applicable law or agreed to in writing,
 * software distributed under the License is distributed on an
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 * "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or
 * implied.
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 */
#include "src/common/algo_chooser.h"
#include "src/common/metahelper.h"
#include "src/common/opr_delegate.h"
#include "src/common/utils.h"
#include "src/fallback/conv_bias/algos.h"
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#include "src/fallback/conv_bias/conv1x1/algos.h"
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#include "src/fallback/conv_bias/conv1x1/algos_conv1x1_gemv.h"
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#include "src/fallback/conv_bias/im2col/algos.h"
#include "src/fallback/conv_bias/opr_impl.h"
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#include "src/fallback/convolution/opr_impl.h"
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#include "src/naive/convolution/algorithms.h"
#include "src/naive/handle.h"

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#if MEGDNN_X86
#include "src/x86/conv_bias/opr_impl.h"
#elif MEGDNN_AARCH64
#include "src/aarch64/conv_bias/opr_impl.h"
#elif MEGDNN_ARMV7
#include "src/armv7/conv_bias/opr_impl.h"
#endif

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#include <cstring>

using namespace megdnn;
using namespace fallback;

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size_t megdnn::fallback::pack_size(param::ConvBias::Format format) {
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    switch (format) {
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        case param::ConvBias::Format::NCHW44:
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        case param::ConvBias::Format::NCHW44_DOT:
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        case param::ConvBias::Format::NCHW4:
            return 4_z;
        case param::ConvBias::Format::NCHW88:
            return 8_z;
        default:
            return 1_z;
    }
}

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namespace {
template <typename T>
void incr_ptr(T*& dst, ptrdiff_t delta) {
    dst = reinterpret_cast<T*>(reinterpret_cast<uintptr_t>(dst) + delta);
}

}  // namespace

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#if MEGDNN_X86
#define SKIP_GEMV()
//! As we haven't direct conv for int8x8x16 yet, if we disable gemv here, it may
//! fallback to naive implementation, which may cause performance very low, so
//! here we just enable im2col for gemv in x86 backend.
//! FIXME: remove it when we add direct conv support for int8x8x16
#else
#define SKIP_GEMV()                                                            \
    if (algo->algoset() == MatrixMulImpl::AlgoBase::AlgoSet::ALGO_TYPE_GEMV) { \
        continue;                                                              \
    }
#endif


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class ConvBiasImpl::AlgoPack : NonCopyableObj {
    AlgoNaive algo_naive;
    SmallVector<std::unique_ptr<AlgoBase>> refhold;
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    SmallVector<AlgoBase*> m_all_algos;
    AlgoBase::Mapper m_all_algos_map;
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public:
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    AlgoPack() {
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        refhold.emplace_back(new AlgoConv1x1Gemv());
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        m_all_algos.emplace_back(refhold.back().get());
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        static CpuOprDelegationStorage<> storage;
        auto matmul_opr = storage.get<MatrixMul>();
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        auto&& matmul_algos = static_cast<fallback::MatrixMulImpl*>(matmul_opr)
                                      ->get_all_packed_algo();
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        for (auto&& algo : matmul_algos) {
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#if MEGDNN_X86
//! As we haven't direct conv for int8x8x16 yet, if we disable gemv here, it may
//! fallback to naive implementation, which may cause performance very low, so
//! here we just enable im2col for gemv in x86 backend.
//! FIXME: remove it when we add direct conv support for int8x8x16
#else
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            if (algo->algoset() ==
                MatrixMulImpl::AlgoBase::AlgoSet::ALGO_TYPE_GEMV) {
                continue;
            }
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#endif

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//! As we haven't riscv64 postprocess yet, im2col and conv1x1 can not pass ci
//! test. so we just disable all im2col and conv1x1 in riscv64
//! FIXME: remove it when impl postprocess for riscv64
#if !MEGDNN_RISCV64
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            for (size_t ohw_tile_size : {192, 384, 96, 48, 24}) {
                refhold.emplace_back(new AlgoIm2col(
                        static_cast<MatrixMulImpl::AlgoBase*>(algo),
                        ohw_tile_size));
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                m_all_algos.emplace_back(refhold.back().get());
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            }
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            for (size_t oc_tile_size : {48, 24}) {
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                refhold.emplace_back(new AlgoConv1x1(
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                        static_cast<MatrixMulImpl::AlgoBase*>(algo),
                        oc_tile_size));
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                m_all_algos.emplace_back(refhold.back().get());
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            }
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#endif

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#if 0
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        //! As these algos maybe very slow, it will make fastrun search slow, so
        //! we disable it, but for the test of strategyhelper, we just keep it.
        //! FIXME: I do not know a better way to do it.
            refhold.emplace_back(new AlgoWinogradF32(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
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            m_all_algos.emplace_back(refhold.back().get());
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            refhold.emplace_back(new AlgoWinogradF32_4x4(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
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            m_all_algos.emplace_back(refhold.back().get());
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            refhold.emplace_back(new AlgoWinogradQS8(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
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            m_all_algos.emplace_back(refhold.back().get());
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            refhold.emplace_back(new AlgoWinogradQS8_8x8(
                    static_cast<MatrixMulImpl::AlgoBase*>(algo)));
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            m_all_algos.emplace_back(refhold.back().get());
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#endif
        }
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        m_all_algos.emplace_back(&algo_naive);

        for (auto&& algo : m_all_algos) {
            m_all_algos_map.emplace(algo->info().desc, algo);
        }
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    }
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    const SmallVector<AlgoBase*>& all_algos() const { return m_all_algos; }
    const AlgoBase::Mapper& all_algos_map() const { return m_all_algos_map; }
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};

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const ConvBiasImpl::AlgoPack& ConvBiasImpl::algo_pack() {
    static AlgoPack algo_pack;
    return algo_pack;
}

SmallVector<ConvBiasImpl::AlgoBase*> ConvBiasImpl::get_all_packed_algo() {
    return algo_pack().all_algos();
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}
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SmallVector<ConvBiasImpl::AlgoBase*> ConvBiasImpl::select_algo_type(
        ConvAlgoTypePack target_type) {
    megdnn_assert(nr_type_contain(target_type.data_type),
                  "ConvBias algo selection only support one type");
    SmallVector<ConvBiasImpl::AlgoBase*> algos;
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    for (auto&& algo : get_all_packed_algo()) {
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        auto algo_type = algo->get_algo_type();
        if (contain_data_type(algo_type.data_type, target_type.data_type) &&
            algo_type.algo_category == target_type.algo_category) {
            algos.push_back(algo);
        }
    }
    return algos;
}

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bool ConvBiasImpl::is_naive_algo(ConvBiasImpl::Algorithm* algo) {
    return algo == nullptr || strcmp(algo->name(), "DEFAULT") == 0;
}
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#define NCB_ALGO_FUNC(name, algo, param) \
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    static_cast<AlgoBase*>(algo)->name(param)
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void ConvBiasImpl::exec(_megdnn_tensor_in src, _megdnn_tensor_in filter,
                        _megdnn_tensor_in bias, _megdnn_tensor_in z,
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                        _megdnn_tensor_out dst,
                        const PreprocessedFilter* preprocessed_filter,
                        _megdnn_workspace workspace) {
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    check_exec(src.layout, filter.layout, bias.layout, z.layout, dst.layout,
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               workspace.size, preprocessed_filter);
    auto fparam = make_ncb_kern_param(src, filter, bias, dst, workspace,
                                      preprocessed_filter);
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    auto&& algo = get_algorithm(fparam, workspace.size);
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    if (!is_naive_algo(algo) &&
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        NCB_ALGO_FUNC(get_workspace, algo, fparam) <= workspace.size) {
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        exec_with_ncb_kern(fparam, algo);
    } else {
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        naive::ConvBiasForwardImpl::exec(src, filter, bias, z, dst,
                                         preprocessed_filter, workspace);
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    }
}

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void ConvBiasImpl::exec_preprocess(const TensorLayout& src_layout,
                                   _megdnn_tensor_in filter,
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                                   _megdnn_tensor_in bias,
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                                   const TensorLayout& z_layout,
                                   const TensorLayout& dst_layout,
                                   PreprocessedFilter* preprocessed_filter,
                                   _megdnn_workspace workspace) {
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    //! exec_preprocess currently only support preprocess weights and bias
    //! before exec, src/dst/z will be ignored, just set to nullptr
    TensorND src{nullptr, src_layout}, dst{nullptr, dst_layout};
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    auto fparam = make_ncb_kern_param(src, filter, bias, dst, workspace,
                                      preprocessed_filter);
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    //! should not pass workspace_size limit otherwise can not find match algo
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    auto&& algo = get_algorithm(fparam);
    if (!is_naive_algo(algo) &&
        NCB_ALGO_FUNC(get_preprocess_workspace, algo, fparam) <=
                workspace.size) {
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        exec_preprocess_with_ncb_kern(fparam, algo);
    } else {
        naive::ConvBiasForwardImpl::exec_preprocess(
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                src_layout, filter, bias, z_layout, dst_layout,
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                preprocessed_filter, workspace);
    }
}

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size_t ConvBiasImpl::get_workspace_in_bytes(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst,
        const PreprocessedFilter* preprocessed_filter) {
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    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst,
                                           preprocessed_filter);
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    auto&& algo = get_algorithm(fparam);
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    if (is_naive_algo(algo)) {
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        return naive::ConvBiasForwardImpl::get_workspace_in_bytes(
                src, filter, bias, z, dst, preprocessed_filter);
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    } else {
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        return NCB_ALGO_FUNC(get_workspace, algo, fparam);
    }
}

size_t ConvBiasImpl::get_preprocess_workspace_in_bytes(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
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    auto&& algo = get_algorithm(fparam);
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    if (is_naive_algo(algo)) {
        return naive::ConvBiasForwardImpl::get_preprocess_workspace_in_bytes(
                src, filter, bias, z, dst);
    } else {
        return NCB_ALGO_FUNC(get_preprocess_workspace, algo, fparam);
    }
}

SmallVector<TensorLayout> ConvBiasImpl::deduce_preprocessed_filter_layout(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
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    auto&& algo = get_algorithm(fparam);
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    if (is_naive_algo(algo)) {
        return naive::ConvBiasForwardImpl::deduce_preprocessed_filter_layout(
                src, filter, bias, z, dst);
    } else {
        return NCB_ALGO_FUNC(deduce_preprocessed_filter_layout, algo, fparam);
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    }
}

std::vector<ConvBiasImpl::Algorithm*> ConvBiasImpl::get_all_algorithms(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst) {
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    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
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    auto ret = get_all_algorithms_with_ncb(fparam);
    if (ret.empty()) {
        return naive::ConvBiasForwardImpl::get_all_algorithms(src, filter, bias,
                                                              z, dst);
    }
    return ret;
}

ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm_heuristic(
        const TensorLayout& src, const TensorLayout& filter,
        const TensorLayout& bias, const TensorLayout& z,
        const TensorLayout& dst, size_t workspace_limit_in_bytes,
        bool reproducible) {
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    auto fparam = make_ncb_kern_size_param(src, filter, bias, dst, nullptr);
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    auto result = get_algorithm_heuristic_with_ncb(
            fparam, workspace_limit_in_bytes, reproducible);
    if (result == nullptr) {
        result = naive::ConvBiasForwardImpl::get_algorithm_heuristic(
                src, filter, bias, z, dst, workspace_limit_in_bytes,
                reproducible);
    }
    return result;
}

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ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm_heuristic_with_ncb(
        const NCBKernSizeParam& param, size_t workspace_limit_in_bytes,
        bool reproducible) {
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    auto algo_data_type = param.deduce_algo_data_type();
    auto suggest_category_order = suggest_algo_category_order(param);
    for (auto category : suggest_category_order) {
        auto&& origin_algos = select_algo_type({algo_data_type, category});
        ConvBiasImpl::Algorithm* heuristic_algo = nullptr;
        for (auto i : origin_algos) {
            bool usable_reproducible =
                    static_cast<AlgoBase*>(i)->usable_reproducible(
                            param, AlgoSelectionStrategy::HEURISTIC,
                            reproducible);
            if (usable_reproducible &&
                static_cast<AlgoBase*>(i)->get_workspace(param) <=
                        workspace_limit_in_bytes) {
                //! store the first usable algo if no prefer algo, choose it as
                //! the target algo
                if (!heuristic_algo) {
                    heuristic_algo = i;
                }
                //! choose the first prefer algo
                if (i->is_preferred(param)) {
                    return i;
                }
            }
        }
        if (heuristic_algo) {
            return heuristic_algo;
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        }
    }
    return nullptr;
}

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ConvBiasImpl::NCBKernSizeParam ConvBiasImpl::make_ncb_kern_size_param(
        const TensorLayout& src, const TensorLayout& filter,
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        const TensorLayout& bias, const TensorLayout& dst,
        const PreprocessedFilter* preprocessed_filter) {
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    auto safe_u32 = [](size_t v) -> uint32_t {
        megdnn_assert(v <= std::numeric_limits<uint32_t>::max(),
                      "value too large: %zu", v);
        return v;
    };
    size_t spatial_pos;
    if (param().format == Param::Format::NCHW88 ||
        param().format == Param::Format::NCHW8 ||
        param().format == Param::Format::NCHW4 ||
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        param().format == Param::Format::NCHW44 ||
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        param().format == Param::Format::NCHW44_DOT ||
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        param().format == Param::Format::NCHW ||
        param().format == Param::Format::NCHW_WINOGRAD ||
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        param().format == Param::Format::NCHW88_WINOGRAD ||
        param().format == Param::Format::NCHW44_WINOGRAD) {
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        spatial_pos = 2;
    } else if (param().format == Param::Format::NHWC) {
        spatial_pos = 1;
    } else {
        megdnn_assert(0, "invalid conv format %d",
                      static_cast<int>(param().format));
    }
    BiasMode bias_mode;
    if (bias.ndim == 0) {
        bias_mode = BiasMode::NO_BIAS;
    } else if (bias.eq_shape(dst)) {
        bias_mode = BiasMode::BIAS;
    } else {
        //! just check the ndim, the detail shape check is in check_exec
        megdnn_assert(bias.ndim == dst.ndim);
        bias_mode = BiasMode::BROADCAST_CHANNEL_BIAS;
    }

    static_assert(sizeof(CanonizedFilterMeta) ==
                          sizeof(ConvolutionImpl::CanonizedFilterMeta),
                  "sizeof CanonizedFilterMeta in convolution and conv_bias "
                  "should be equal");
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    auto&& fm = check_layout_fwd(src, filter, dst);
    auto& conv_fm = reinterpret_cast<ConvolutionImpl::CanonizedFilterMeta&>(fm);
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    param::MatrixMul::Format format = param::MatrixMul::Format::DEFAULT;
    if (param().format == Param::Format::NCHW_WINOGRAD ||
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        param().format == Param::Format::NCHW88_WINOGRAD ||
        param().format == Param::Format::NCHW44_WINOGRAD) {
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        size_t flt_start = 0;
        if (param().sparse == Param::Sparse::GROUP) {
            flt_start = 1;
        }

        if (filter.ndim == 6 + flt_start) {
            if (filter[5] == 4) {
                format = param::MatrixMul::Format::MK4;
            } else {
                megdnn_assert(filter[5] == 8);
                format = param::MatrixMul::Format::MK8;
            }
        }
    }
    size_t nr_threads = static_cast<naive::HandleImpl*>(handle())
                                ->megcore_dispatcher()
                                ->nr_threads();
    return {{safe_u32(src[0]),
             {{safe_u32(src[spatial_pos]), safe_u32(src[spatial_pos + 1])}},
             {{safe_u32(dst[spatial_pos]), safe_u32(dst[spatial_pos + 1])}},
             conv_fm,
             src.dtype,
             filter.dtype,
             dst.dtype,
             src.stride[0],
             dst.stride[0],
             {src.stride[0], src.stride[1], src.stride[2], src.stride[3]},
             {dst.stride[0], dst.stride[1], dst.stride[2], dst.stride[3]},
             param().compute_mode,
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             nr_threads,
             reinterpret_cast<const ConvolutionForward::PreprocessedFilter*>(
                     preprocessed_filter)},
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            param().output_block_size,
            format,
            bias.dtype,
            bias.stride[0],
            bias_mode,
            param().nonlineMode};
}

ConvBiasImpl::NCBKernParam ConvBiasImpl::make_ncb_kern_param(
        _megdnn_tensor_in src, _megdnn_tensor_in filter, _megdnn_tensor_in bias,
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        _megdnn_tensor_out dst, _megdnn_workspace workspace,
        const PreprocessedFilter* preprocessed_filter) {
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    NCBKernParam ret;
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    static_cast<NCBKernSizeParam&>(ret) =
            make_ncb_kern_size_param(src.layout, filter.layout, bias.layout,
                                     dst.layout, preprocessed_filter);
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    ret.src_ptr = src.raw_ptr;
    ret.filter_ptr = filter.raw_ptr;
    ret.bias_ptr = bias.raw_ptr;
    ret.dst_ptr = dst.raw_ptr;
    ret.workspace_ptr = workspace.raw_ptr;
    ret.workspace_size = workspace.size;
    return ret;
}

void ConvBiasImpl::exec_with_ncb_kern(const NCBKernParam& param,
                                      ConvBiasImpl::Algorithm* algo) {
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    auto&& ncb_kerns = NCB_ALGO_FUNC(dispatch_kerns, algo, param);
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    for (auto&& kernel : ncb_kerns) {
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        auto run = [kernel, param](size_t index, size_t thread_id) {
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            CpuNDRange ndrange_id(kernel.global_size, index);
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            kernel.kern(param, {thread_id, ndrange_id});
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        };
        static_cast<naive::HandleImpl*>(handle())->dispatch_kern(
                run, kernel.global_size.total_size());
    }
}

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void ConvBiasImpl::exec_preprocess_with_ncb_kern(
        const NCBKernParam& param, ConvBiasImpl::Algorithm* algo) {
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    auto&& ncb_kerns = NCB_ALGO_FUNC(dispatch_preprocess_kerns, algo, param);
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    for (auto&& kernel : ncb_kerns) {
        auto run = [kernel, param](size_t index, size_t thread_id) {
            CpuNDRange ndrange_id(kernel.global_size, index);
            kernel.kern(param, {thread_id, ndrange_id});
        };
        static_cast<naive::HandleImpl*>(handle())->dispatch_kern(
                run, kernel.global_size.total_size());
    }
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}

std::vector<ConvBiasImpl::Algorithm*> ConvBiasImpl::get_all_algorithms_with_ncb(
        const NCBKernSizeParam& param) {
    MEGDNN_MARK_USED_VAR(param);
    std::vector<Algorithm*> algos;
    std::vector<Algorithm*> prefer_algos;
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    for (auto&& algo : get_all_packed_algo()) {
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        if (algo->usable(param, AlgoSelectionStrategy::FULL_RUN)) {
            if (algo->is_preferred(param)) {
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                prefer_algos.push_back(algo);
            } else {
                algos.push_back(algo);
            }
        }
    }
    //! Prefer algo inserted from begin
    algos.insert(algos.begin(), prefer_algos.begin(), prefer_algos.end());
    return algos;
}

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ConvBiasImpl::Algorithm* ConvBiasImpl::get_algo_from_desc(
        const AlgorithmDesc& desc) const {
    if (!desc.valid()) {
        return nullptr;
    } else {
        switch (desc.handle_type) {
            case Handle::HandleType::FALLBACK: {
                const auto& map = algo_pack().all_algos_map();
                megdnn_assert(map.find(desc) != map.end());
                return map.at(desc);
            };

#if MEGDNN_X86
            case Handle::HandleType::X86:
                return x86::ConvBiasImpl::get_algo_from_desc(desc);
#elif MEGDNN_AARCH64 || MEGDNN_ARMV7
            case Handle::HandleType::ARM_COMMON:
                return arm_common::ConvBiasImpl::get_algo_from_desc(desc);
#if MEGDNN_AARCH64
            case Handle::HandleType::AARCH64:
                return aarch64::ConvBiasImpl::get_algo_from_desc(desc);
#else
            case Handle::HandleType::ARMV7:
                return armv7::ConvBiasImpl::get_algo_from_desc(desc);
#endif
#endif
            case Handle::HandleType::NAIVE: {
                auto algo = static_cast<naive::HandleImpl*>(handle())
                                    ->default_conv_bias_fwd_algo();
                megdnn_assert(algo->info().desc == desc);
                return algo;
            }
            default:
                megdnn_throw("Unknown handle type");
                return nullptr;
        }
    }
}

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ConvBiasImpl::Algorithm* ConvBiasImpl::get_algorithm(
        const NCBKernSizeParam& param, size_t workspace_size) {
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    if (auto algo = get_algo_from_desc(execution_policy().algo.desc)) {
        return algo;
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    }
    if (!m_prev_selected_algo ||
        memcmp(&m_prev_selected_algo_sizep, &param, sizeof(NCBKernSizeParam))) {
        m_prev_selected_algo =
                get_algorithm_heuristic_with_ncb(param, workspace_size);
        m_prev_selected_algo_sizep = param;
    }
    return m_prev_selected_algo;
}

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SmallVector<AlgoCategory> ConvBiasImpl::suggest_algo_category_order(
        const NCBKernSizeParam& param) const {
    auto IC = param.filter_meta.icpg;
    auto OC = param.filter_meta.ocpg;
    auto FH = param.filter_meta.spatial[0];
    auto FW = param.filter_meta.spatial[1];
    //! TODO: now winograd only support in fast-run
    if (param.filter_meta.format == param::ConvBias::Format::NCHW_WINOGRAD ||
        param.filter_meta.format == param::ConvBias::Format::NCHW44_WINOGRAD ||
        param.filter_meta.format == param::ConvBias::Format::NCHW88_WINOGRAD) {
        return {AlgoCategory::WINOGRAD};
    }
    //! im2col + matmul
    bool im2col_prefer = (IC >= 32 || OC >= 32);
    //! quantized algo use matmul when direct algo is unusable
    if (param.src_type.category() == DTypeCategory::QUANTIZED) {
        im2col_prefer = is_matmul_quantized_prefer(param);
    }
    //! conv1x1
    im2col_prefer |= (FH == 1 && FW == 1);
    if (im2col_prefer) {
        return {AlgoCategory::IM2COL, AlgoCategory::DIRECT,
                AlgoCategory::NAIVE};
    } else {
        return {AlgoCategory::DIRECT, AlgoCategory::IM2COL,
                AlgoCategory::NAIVE};
    }
}

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const char* ConvBiasImpl::get_algorithm_set_name() const {
    // fallback version 0
    return "F0";
}

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namespace megdnn {
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namespace fallback {
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template <typename T>
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const T* ConvBiasImpl::NCBKernParam::src(size_t batch_id, size_t group_pack_id,
                                         size_t channel_pack_id,
                                         size_t group_pack_size,
                                         size_t channel_pack_size) const {
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    size_t batch_offset = batch_id * inp_bs * src_type.size();
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    size_t group_offset = group_pack_size * group_pack_id * filter_meta.icpg *
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                          isz[0] * isz[1] * src_type.size();
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    size_t channel_offset = channel_pack_size * channel_pack_id * isz[0] *
                            isz[1] * src_type.size();
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    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(src_ptr) +
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                                batch_offset + group_offset + channel_offset);
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}

template <typename T>
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const T* ConvBiasImpl::NCBKernParam::filter(size_t group_pack_id,
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                                            size_t pack_group_size) const {
    size_t group_offset = 0_z;
    switch (filter_meta.format) {
        case Param::Format::NCHW: {
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            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
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                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();
            break;
        }
        case Param::Format::NCHW88: {
            size_t group = filter_meta.group;
            size_t icpg = filter_meta.icpg;
            size_t ocpg = filter_meta.ocpg;
            //! four format of weight layout
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            //! 1. {oc/8, ic/8, fh, fw, 8, 8},
            //! 2. {g, oc/8, ic/8, fh, fw, 8, 8},
            //! 3. {g/8, fh, fw, 1, 1, 8}, 4. {oc/8, fh, fw, ic, 8}
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            megdnn_assert((icpg % 8 == 0 && ocpg % 8 == 0) ||
                                  (group % 8 == 0 && icpg == 1 && ocpg == 1 &&
                                   pack_group_size > 1) ||
                                  (group == 1 && ocpg % 8 == 0),
                          "The filter shepe is not right of nchw88");
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            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();

            break;
        }
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        case Param::Format::NCHW44_DOT:
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        case Param::Format::NCHW44: {
            size_t group = filter_meta.group;
            size_t icpg = filter_meta.icpg;
            size_t ocpg = filter_meta.ocpg;
            //! four format of weight layout
            //! 1. {oc/4, ic/4, fh, fw, 4, 4},
            //! 2. {g, oc/4, ic/4, fh, fw, 4, 4},
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            //! 3. {g/4, fh, fw, 1, 1, 4},
            //! 4. {oc/4, fh, fw, ic, 4}
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            megdnn_assert((icpg % 4 == 0 && ocpg % 4 == 0) ||
                                  (group % 4 == 0 && icpg == 1 && ocpg == 1 &&
                                   pack_group_size > 1) ||
                                  (group == 1 && ocpg % 4 == 0),
                          "The filter shepe is not right of nchw44");
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            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
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                           filter_meta.ocpg * filter_meta.spatial[0] *
                           filter_meta.spatial[1] * filter_type.size();

            break;
        }
        case ConvBiasImpl::Param::Format::NCHW_WINOGRAD:
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        case ConvBiasImpl::Param::Format::NCHW44_WINOGRAD:
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        case ConvBiasImpl::Param::Format::NCHW88_WINOGRAD: {
            //! four format of weight layout
            //! 1. {g, alpha, alpha, ocpg/8, icpg/8, 8, 8}
            //! 2. {alpha, alpha, ocpg/8, icpg/8, 8, 8}
            //! 3. {g, alpha, alpha, oc, ic, 8, 8}
            //! 4. {alpha, alpha, oc, ic}
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            group_offset = pack_group_size * group_pack_id * filter_meta.icpg *
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                           filter_meta.ocpg *
                           (filter_meta.spatial[0] + output_block_size - 1) *
                           (filter_meta.spatial[1] + output_block_size - 1) *
                           filter_type.size();
            break;
        }
        default:
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            megdnn_assert(0, "other filter format is not support yet");
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    }
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(filter_ptr) +
                                group_offset);
}

template <typename T>
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const T* ConvBiasImpl::NCBKernParam::bias(size_t batch_id, size_t group_pack_id,
                                          size_t channel_pack_id,
                                          size_t group_pack_size,
                                          size_t channel_pack_size) const {
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    size_t batch_offset = 0_z;
    size_t group_offset = 0_z;
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    size_t channel_offset = 0_z;
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    if (bias_mode == BiasMode::BIAS) {
        batch_offset = batch_id * bias_bs * bias_type.size();
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        group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
                       osz[0] * osz[1] * bias_type.size();
        channel_offset = channel_pack_size * channel_pack_id * osz[0] * osz[1] *
                         bias_type.size();
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    } else if (bias_mode == BiasMode::BROADCAST_CHANNEL_BIAS) {
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        group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
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                       bias_type.size();
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        channel_offset = channel_pack_size * channel_pack_id * bias_type.size();
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    }
    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(bias_ptr) +
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                                batch_offset + group_offset + channel_offset);
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}

template <typename T>
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T* ConvBiasImpl::NCBKernParam::dst(size_t batch_id, size_t group_pack_id,
                                   size_t channel_pack_id,
                                   size_t group_pack_size,
                                   size_t channel_pack_size) const {
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    size_t batch_offset = batch_id * out_bs * dst_type.size();
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    size_t group_offset = group_pack_size * group_pack_id * filter_meta.ocpg *
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                          osz[0] * osz[1] * dst_type.size();
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    size_t channel_offset = channel_pack_size * channel_pack_id * osz[0] *
                            osz[1] * dst_type.size();
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    return reinterpret_cast<T*>(reinterpret_cast<ptrdiff_t>(dst_ptr) +
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                                batch_offset + group_offset + channel_offset);
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}

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#define INST(T)                                                      \
    template const T* ConvBiasImpl::NCBKernParam::src<T>(            \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const; \
    template const T* ConvBiasImpl::NCBKernParam::bias<T>(           \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const; \
    template const T* ConvBiasImpl::NCBKernParam::filter<T>(         \
            size_t group_id, size_t group_pack_size) const;          \
    template T* ConvBiasImpl::NCBKernParam::dst<T>(                  \
            size_t batch_id, size_t group_id, size_t channel_id,     \
            size_t group_pack_size, size_t channel_pack_size) const;
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#define INST_DT(d) INST(DTypeTrait<d>::ctype)

MEGDNN_FOREACH_COMPUTING_DTYPE(INST_DT)
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INST(void)
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#undef INST
#undef INST_DT
}  // namespace fallback
}  // namespace megdnn

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// vim: syntax=cpp.doxygen