tensor_reformat.cpp 222.9 KB
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/**
 * \file src/gopt/impl/tensor_reformat.cpp
 * MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
 *
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 * Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
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 *
 * 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 "megbrain/gopt/basic_arith.h"
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#include "megbrain/gopt/gtrans.h"
#include "megbrain/gopt/inference.h"
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#include "megbrain/graph/event.h"
#include "megbrain/opr/basic_arith.h"
#include "megbrain/opr/blas.h"
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#include "megbrain/opr/dnn/batch_norm.h"
#include "megbrain/opr/dnn/convolution.h"
#include "megbrain/opr/dnn/local.h"
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#include "megbrain/opr/dnn/pooling.h"
#include "megbrain/opr/imgproc.h"
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#include "megbrain/opr/misc.h"
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#include "megbrain/opr/nn_int.h"
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#include "megbrain/opr/tensor_manip.h"
#include "megbrain/opr/utility.h"
#include "megbrain/serialization/opr_shallow_copy.h"
#include "megbrain/utils/shared_set.h"
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#include "megdnn/opr_param_defs.h"
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#include "megdnn/tensor_format.h"

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#include "megbrain/opr/internal/megdnn_opr_wrapper.h"

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#if MGB_ENABLE_TENSOR_RT
#include "megbrain/tensorrt/tensorrt_opr.h"
#endif

#include "megbrain/gopt/misc.h"
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#include "megbrain/utils/hash_ct.h"

#include "midout.h"

MIDOUT_DECL(megbrain_tensor_reformat)
#define MIDOUT_B(tag) \
    MIDOUT_BEGIN(megbrain_tensor_reformat, midout_iv(MGB_HASH_STR(tag))) {
#define MIDOUT_E \
    }            \
    MIDOUT_END();
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using namespace mgb;
using namespace gopt;

/* ================ TensorReformatPass =============== */
/*!
 * \brief relayout placeholder opr
 *
 * RelayoutPlaceholder oprs act as the placeholders of the ComputingGraph
 * during graph opt pass `TensorReformatPass`. These oprs are introduced
 * into a ComputingGraph for conveniently discovering further optimize
 * opportunities (such as fuse consecutive relayouts, translate into
 * optimized implementations). They are canonized to have a shape infer, so
 * the ouput's shape can be correctly deduced during the opt pass.
 *
 * Note that the oprs in the ComputingGraph are only used as intermediate
 * representations before being translated to MegBrain oprs, so the
 * oprs should not get involved in any actual computing.
 */
MGB_DEFINE_OPR_CLASS(TensorReformatPass::RelayoutPlaceholder,
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                           cg::SingleCNOperatorNodeBase) // {
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public:
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    //! relayout type of this opr
    enum class LayoutType {
        NCHW4_TO_NCHW32,              //!< from nchw4 layout to nchw32 layout
        NCHW32_TO_NCHW4,              //!< from nchw32 layout to nchw4 layout
        NCHW4_TO_CHWN4,               //!< from nchw4 layout to chwn4 layout
        CHWN4_TO_NCHW4,               //!< from chwn4 layout to nchw4 layout
        NCHW_TO_NCHW4,                //!< from nchw layout to nchw4 layout
        NCHW_TO_NCHW4_IC_SMALL_CONV,  ///< from nchw layout to nchw4 whose
                                      ///< channel size less than 4
        NCHW4_TO_NCHW,                //!< from nchw4 layout to nchw layout
        NCHW_TO_NCHW88,               //!< from nchw layout to nchw88 layout
        NCHW88_TO_NCHW,               //!< from nchw88 layout to nchw layout

        WEIGHT_NCHW_TO_NCHW4_DENSE,  //!< weight from nchw layout to nchw4
                                     //!< layout
        WEIGHT_NCHW_TO_NCHW4_GROUP,  //!< group weight from nchw layout to
                                     //!< nchw4 layout
        WEIGHT_NCHW_TO_NCHW4_DENSE_IC_SMALL_CONV,  //!< weight from nchw layout
                                                   //!< to nchw4 layout whose
                                                   //! channel size less than 4

        WEIGHT_NCHW_TO_NCHW88_DENSE,  //!< weight from nchw layout to nchw88
                                      //!< layout
        WEIGHT_NCHW_TO_NCHW88_GROUP,  //!< group weight from nchw layout to
                                      //!< nchw88 layout
        WEIGHT_NCHW_TO_NCHW88_CHAN,   //!< channel wise weight from nchw layout
                                      //!< to nchw88 layout
        //!< the weight layout of input is nchw output is nchw88, special for
        //!< shape weight in nchw like {64, 2, 3, 3} to {8, 3, 3, 2, 8}
        WEIGHT_HYBIRD_NCHW_NCHW88,

        WEIGHT_NCHW_TO_NCHW44_DENSE,  //!< weight from nchw layout to nchw44
                                      //!< layout
        WEIGHT_NCHW_TO_NCHW44_GROUP,  //!< group weight from nchw layout to
                                      //!< nchw44 layout
        WEIGHT_NCHW_TO_NCHW44_CHAN,   //!< channel wise weight from nchw layout
                                      //!< to nchw44 layout
        //!< the weight layout of input is nchw output is nchw44, special for
        //!< shape weight in nchw like {64, 2, 3, 3} to {16, 3, 3, 2, 4}
        WEIGHT_HYBIRD_NCHW_NCHW44,
        WEIGHT_NCHW_TO_NCHW44_DOT_DENSE,  //!< weight from NCHW44 layout to
                                          //!< NCHW44_DOT layout dense
        WEIGHT_NCHW_TO_NCHW44_DOT_GROUP,  //!< weight from NCHW44 layout to
                                          //!< NCHW44_DOT layout group
        NCHW32_TO_NCHW,                   //! <from nchw32 layout to nchw layout
        NCHW32_TO_NCHW64,  //! <from nchw32 layout to nchw64 layout
        NCHW64_TO_NCHW,    //! <from nchw64 layout to nchw layout
        NCHW64_TO_NCHW4,   //! <from nchw64 layout to nchw4 layout
        NCHW64_TO_NCHW32,  //! <from nchw64 layout to nchw32 layout
        NCHW_TO_NCHW64,    //! <from nchw layout to nchw64 layout
        NCHW_TO_NCHW32,    //! <from nchw layout to nchw64 layout
        NCHW4_TO_NCHW64,   //! <from nchw4 layout to nchw64 layout
    };
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    RelayoutPlaceholder(VarNode* src_var, LayoutType layout_type);
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    /*!
     * \param src_var the input var
     * \param layout_type tensor layout transform type of this relayout
     * placeholder as described in LayoutType
     */
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    static SymbolVar make(VarNode* src_var, LayoutType layout_type);
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    LayoutType layout_type() const { return m_layout_type; }
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private:
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    void init_output_static_infer_desc() override;
    void scn_do_execute() override;
    void init_output_comp_node() override;
    const LayoutType m_layout_type;
};
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MGB_DYN_TYPE_OBJ_FINAL_IMPL(TensorReformatPass::RelayoutPlaceholder);

TensorReformatPass::RelayoutPlaceholder::RelayoutPlaceholder(
        VarNode* src_var, LayoutType layout_type)
        : Super(src_var->owner_graph(), {}, "RelayoutPlaceholder", {src_var}),
          m_layout_type{layout_type} {
    add_input({src_var});
    add_equivalence_component<ScalarHash<LayoutType>>(m_layout_type);
    add_output(None)->dtype(src_var->dtype());
}

void TensorReformatPass::RelayoutPlaceholder::scn_do_execute() {
    mgb_throw(InternalError, "RelayoutPlaceholder opr can not be executed");
}

void TensorReformatPass::RelayoutPlaceholder::init_output_comp_node() {
    output(0)->comp_node(input(0)->comp_node());
}

void TensorReformatPass::RelayoutPlaceholder::init_output_static_infer_desc() {
    using namespace cg::static_infer;
    auto&& mgr = owner_graph()->static_infer_manager();
    DepVal deps;
    for (auto i : input())
        deps.push_back({i, DepType::SHAPE});
    auto infer_shape = [this](TensorShape& dst, const InpVal& inp) {
        TensorShape inp_shape = inp.val[0].shape();
        dst = inp_shape;
        if (layout_type() == RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW32) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4] * 8;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 32);
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4] / 8;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW4_TO_CHWN4) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst[0] = inp_shape[1];
            dst[1] = inp_shape[2];
            dst[2] = inp_shape[3];
            dst[3] = inp_shape[0];
            dst[4] = inp_shape[4];
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::CHWN4_TO_NCHW4) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst[0] = inp_shape[3];
            dst[1] = inp_shape[0];
            dst[2] = inp_shape[1];
            dst[3] = inp_shape[2];
            dst[4] = inp_shape[4];
        } else if (layout_type() ==
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                           RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW4 ||
                   layout_type() == RelayoutPlaceholder::LayoutType::
                                            NCHW_TO_NCHW4_IC_SMALL_CONV) {
            if (layout_type() ==
                RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW4) {
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                mgb_assert(inp_shape.ndim == 4 && inp_shape[1] % 4 == 0,
                           "src shape %s", inp_shape.to_string().c_str());
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            } else {
                mgb_assert(layout_type() ==
                           RelayoutPlaceholder::LayoutType::
                                   NCHW_TO_NCHW4_IC_SMALL_CONV);
                mgb_assert(inp_shape.ndim == 4 && inp_shape[1] < 4);
            }
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            dst.ndim = 5;
            dst[0] = inp_shape[0];
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            dst[1] = (inp_shape[1] + 4 - 1) / 4;
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            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 4;
        } else if (layout_type() ==
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                   RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW) {
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            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst.ndim = 4;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 4;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
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                                            WEIGHT_NCHW_TO_NCHW4_DENSE ||
                   layout_type() ==
                           RelayoutPlaceholder::LayoutType::
                                   WEIGHT_NCHW_TO_NCHW4_DENSE_IC_SMALL_CONV) {
            if (layout_type() ==
                RelayoutPlaceholder::LayoutType::WEIGHT_NCHW_TO_NCHW4_DENSE) {
                mgb_assert(inp_shape.ndim == 4 && inp_shape[1] % 4 == 0);
            } else {
                mgb_assert(layout_type() ==
                           RelayoutPlaceholder::LayoutType::
                                   WEIGHT_NCHW_TO_NCHW4_DENSE_IC_SMALL_CONV);
                mgb_assert(inp_shape.ndim == 4 && inp_shape[1] < 4);
            }

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            dst.ndim = 5;
            dst[0] = inp_shape[0];
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            dst[1] = (inp_shape[1] + 4 - 1) / 4;
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            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 4;
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW4_GROUP) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[2] % 4 == 0);
            dst.ndim = 6;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1];
            dst[2] = inp_shape[2] / 4;
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4];
            dst[5] = 4;
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        } else if (layout_type() ==
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                   RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW88) {
            mgb_assert(inp_shape.ndim == 4 && inp_shape[1] % 8 == 0);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 8;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW88_TO_NCHW) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 8);
            dst.ndim = 4;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW88_DENSE) {
            mgb_assert(inp_shape.ndim == 4 && inp_shape[0] % 8 == 0 &&
                       inp_shape[1] % 8 == 0);
            dst.ndim = 6;
            dst[0] = inp_shape[0] / 8;
            dst[1] = inp_shape[1] / 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 8;
            dst[5] = 8;
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW88_GROUP) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] % 8 == 0 &&
                       inp_shape[2] % 8 == 0);
            dst.ndim = 7;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 8;
            dst[2] = inp_shape[2] / 8;
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4];
            dst[5] = 8;
            dst[6] = 8;
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW88_CHAN) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] == 1 &&
                       inp_shape[2] == 1 && inp_shape[0] % 8 == 0);
            dst.ndim = 6;
            dst[0] = inp_shape[0] / 8;
            dst[1] = inp_shape[1];
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4];
            dst[5] = 8;
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        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::WEIGHT_HYBIRD_NCHW_NCHW88) {
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            mgb_assert(inp_shape.ndim == 4 && inp_shape[0] % 8 == 0);
            dst.ndim = 5;
            dst[0] = inp_shape[0] / 8;
            dst[1] = inp_shape[2];
            dst[2] = inp_shape[3];
            dst[3] = inp_shape[1];
            dst[4] = 8;
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        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
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                                            WEIGHT_NCHW_TO_NCHW44_DENSE ||
                   layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW44_DOT_DENSE) {
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            mgb_assert(inp_shape.ndim == 4 && inp_shape[0] % 4 == 0 &&
                       inp_shape[1] % 4 == 0);
            dst.ndim = 6;
            dst[0] = inp_shape[0] / 4;
            dst[1] = inp_shape[1] / 4;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 4;
            dst[5] = 4;
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
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                                            WEIGHT_NCHW_TO_NCHW44_GROUP ||
                   layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW44_DOT_GROUP) {
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            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] % 4 == 0 &&
                       inp_shape[2] % 4 == 0);
            dst.ndim = 7;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 4;
            dst[2] = inp_shape[2] / 4;
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4];
            dst[5] = 4;
            dst[6] = 4;
        } else if (layout_type() == RelayoutPlaceholder::LayoutType::
                                            WEIGHT_NCHW_TO_NCHW44_CHAN) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] == 1 &&
                       inp_shape[2] == 1 && inp_shape[0] % 4 == 0);
            dst.ndim = 6;
            dst[0] = inp_shape[0] / 4;
            dst[1] = inp_shape[1];
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4];
            dst[5] = 4;
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        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::WEIGHT_HYBIRD_NCHW_NCHW44) {
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            mgb_assert(inp_shape.ndim == 4 && inp_shape[0] % 4 == 0);
            dst.ndim = 5;
            dst[0] = inp_shape[0] / 4;
            dst[1] = inp_shape[2];
            dst[2] = inp_shape[3];
            dst[3] = inp_shape[1];
            dst[4] = 4;
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        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 32);
            dst.ndim = 4;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 32;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW64) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] % 2 == 0 &&
                       inp_shape[4] == 32);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 2;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 64;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 64);
            dst.ndim = 4;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 64;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW4) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 64);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 16;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 4;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW32) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 64);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 2;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 32;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW64) {
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            mgb_assert(inp_shape.ndim == 4 && inp_shape[1] % 64 == 0, "%s", inp_shape.to_string().c_str());
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            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 64;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 64;
        } else if (layout_type() ==
                   RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW32) {
            mgb_assert(inp_shape.ndim == 4 && inp_shape[1] % 32 == 0);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 32;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 32;
        } else {
            mgb_assert(layout_type() ==
                       RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW64);
            mgb_assert(inp_shape.ndim == 5 && inp_shape[1] % 16 == 0);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 16;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 64;
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        }
        return true;
    };
    mgr.register_shape_infer(output(0), {SourceType::DEP, deps, infer_shape});
}

SymbolVar TensorReformatPass::RelayoutPlaceholder::make(
        VarNode* src_var, LayoutType layout_type) {
    return src_var->owner_graph()
            ->insert_opr(
                    std::make_unique<RelayoutPlaceholder>(src_var, layout_type))
            ->output(0);
}

void TensorReformatPass::insert_pass(OptState& opt) const {
    opt.set_var_replace_check_flag(m_var_replace_check_flag);
    auto rewriter = opt.graph().make_rewriter();
    VarNodeArray new_inp_cache;
    auto on_opr = [this, &opt, &rewriter,
                   &new_inp_cache](OperatorNodeBase* opr) {
        auto it = m_opr_replace_func.find(opr->dyn_typeinfo());
        if (it != m_opr_replace_func.end()) {
            auto& new_inp = new_inp_cache;
            new_inp.clear();
            new_inp.reserve(opr->input().size());
            for (auto&& inp : opr->input()) {
                new_inp.push_back(rewriter.get_var(inp));
            }
            auto new_opr = (it->second)(opr, new_inp);
            auto &&out0 = opr->output(), &&out1 = new_opr->output();
            mgb_assert(out0.size() == out1.size(),
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                       "bad opr replace: src=%s{%s} dst=%s{%s}, "
                       "src.size=%zu "
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                       "dst.size=%zu",
                       opr->cname(), opr->dyn_typeinfo()->name,
                       new_opr->cname(), new_opr->dyn_typeinfo()->name,
                       out0.size(), out1.size());
            for (size_t i = 0; i < out0.size(); ++i) {
                if (!out0[i]->contain_flag(VarNode::Flag::VOLATILE_CONTENT)) {
                    mgb_assert(!out1[i]->contain_flag(
                            VarNode::Flag::VOLATILE_CONTENT));
                    auto src = out0[i];
                    auto dst = out1[i];
                    if (opt.graph().endpoint_contain(src)) {
                        // additional process on endpoint var node
                        dst = on_graph_endpoint_var(dst, src);
                    }
                    rewriter.replace_var(src, dst, nullptr);
                }
            }
        } else {
            rewriter.auto_replace_outputs(opr);
        }
    };
    opt.graph().iter(on_opr);
    rewriter.apply_inplace();
}

void TensorReformatPass::translate_pass(OptState& opt) const {
    ThinHashMap<RelayoutPlaceholder::LayoutType,
                thin_function<VarNode*(VarNode*)>>
            reformat;
    using LayoutType = RelayoutPlaceholder::LayoutType;
    reformat[LayoutType::NCHW4_TO_CHWN4] = [](VarNode* inp) -> VarNode* {
        megdnn::param::RelayoutFormat param;
        param.mode = megdnn::param::RelayoutFormat::Mode::NCHW4_CHWN4;
        auto reformat = opr::RelayoutFormat::make(inp, param);
        return reformat.node();
    };
    reformat[LayoutType::CHWN4_TO_NCHW4] = [](VarNode* inp) -> VarNode* {
        megdnn::param::RelayoutFormat param;
        param.mode = megdnn::param::RelayoutFormat::Mode::CHWN4_NCHW4;
        auto reformat = opr::RelayoutFormat::make(inp, param);
        return reformat.node();
    };
    reformat[LayoutType::NCHW4_TO_NCHW32] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 8, cv(8), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 8, sub(2), sub(3), sub(4) * 8}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::NCHW32_TO_NCHW4] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1), sub(2), sub(3), cv(8), sub(4) / 8}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) * 8, sub(2), sub(3), sub(4) / 8}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 4, 2, 3, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::NCHW_TO_NCHW4_IC_SMALL_CONV] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto y = opr::RelayoutFormat::make(
                x, megdnn::param::RelayoutFormat::Mode::NCHW_NCHW4_IC_SMALL);
        return y.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW4_DENSE_IC_SMALL_CONV] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto y = opr::RelayoutFormat::make(
                x, megdnn::param::RelayoutFormat::Mode::
                           NCHW_NCHW4_IC_SMALL_CONV_DENSE_WEIGHT);
        return y.node();
    };

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    reformat[LayoutType::NCHW_TO_NCHW4] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
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                {sub(0), sub(1) / 4, cv(4), sub(2), sub(3)}, 0);
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        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
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        return y1.node();
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    };
    reformat[LayoutType::NCHW4_TO_NCHW] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make({sub(0), sub(1) * 4, sub(2), sub(3)}, 0);
        auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
        auto y1 = opr::Reshape::make(y0, tshp0);
        return y1.node();
    };
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    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW4_DENSE] =
            [](VarNode* inp) -> VarNode* {
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        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 4, cv(4), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 4, sub(2), sub(3), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW4_GROUP] =
            [](VarNode* inp) -> VarNode* {
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        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1), sub(2) / 4, cv(4), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1), sub(2) / 4, sub(3), sub(4), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 2, 4, 5, 3});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::NCHW_TO_NCHW88] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 8, cv(8), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 8, sub(2), sub(3), cv(8)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::NCHW88_TO_NCHW] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make({sub(0), sub(1) * 8, sub(2), sub(3)}, 0);
        auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
        auto y1 = opr::Reshape::make(y0, tshp0);
        return y1.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW88_DENSE] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 8, cv(8), sub(1) / 8, cv(8), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 8, sub(1) / 8, sub(2), sub(3), cv(8), cv(8)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 2, 4, 5, 3, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW88_GROUP] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make({sub(0), sub(1) / 8, cv(8), sub(2) / 8,
                                        cv(8), sub(3), sub(4)},
                                       0),
             tshp1 = opr::Concat::make({sub(0), sub(1) / 8, sub(2) / 8, sub(3),
                                        sub(4), cv(8), cv(8)},
                                       0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 5, 6, 4, 2});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW88_CHAN] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 8, cv(8), sub(1), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 8, sub(1), sub(2), sub(3), sub(4), cv(8)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 2, 3, 4, 5, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_HYBIRD_NCHW_NCHW88] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 8, cv(8), sub(1), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 8, sub(2), sub(3), sub(1), cv(8)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 3, 4, 2, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW44_DENSE] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 4, cv(4), sub(1) / 4, cv(4), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 4, sub(1) / 4, sub(2), sub(3), cv(4), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 2, 4, 5, 3, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW44_GROUP] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make({sub(0), sub(1) / 4, cv(4), sub(2) / 4,
                                        cv(4), sub(3), sub(4)},
                                       0),
             tshp1 = opr::Concat::make({sub(0), sub(1) / 4, sub(2) / 4, sub(3),
                                        sub(4), cv(4), cv(4)},
                                       0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 5, 6, 4, 2});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW44_CHAN] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 4, cv(4), sub(1), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 4, sub(1), sub(2), sub(3), sub(4), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 2, 3, 4, 5, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_HYBIRD_NCHW_NCHW44] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 4, cv(4), sub(1), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 4, sub(2), sub(3), sub(1), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 3, 4, 2, 1});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW44_DOT_DENSE] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0) / 4, cv(4), sub(1) / 4, cv(4), sub(2), sub(3)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0) / 4, sub(1) / 4, sub(2), sub(3), cv(4), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 2, 4, 5, 1, 3});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::WEIGHT_NCHW_TO_NCHW44_DOT_GROUP] =
            [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make({sub(0), sub(1) / 4, cv(4), sub(2) / 4,
                                        cv(4), sub(3), sub(4)},
                                       0),
             tshp1 = opr::Concat::make({sub(0), sub(1) / 4, sub(2) / 4, sub(3),
                                        sub(4), cv(4), cv(4)},
                                       0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 5, 6, 2, 4});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    reformat[LayoutType::NCHW32_TO_NCHW] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 =
                opr::Concat::make({sub(0), sub(1) * 32, sub(2), sub(3)}, 0);
        auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
        auto y1 = opr::Reshape::make(y0, tshp0);
        return y1.node();
    };
    reformat[LayoutType::NCHW32_TO_NCHW64] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 2, cv(2), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 2, sub(2), sub(3), sub(4) * 2}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::NCHW64_TO_NCHW] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 =
                opr::Concat::make({sub(0), sub(1) * 64, sub(2), sub(3)}, 0);
        auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
        auto y1 = opr::Reshape::make(y0, tshp0);
        return y1.node();
    };
    reformat[LayoutType::NCHW64_TO_NCHW4] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1), sub(2), sub(3), sub(4) / 4, cv(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) * 16, sub(2), sub(3), cv(4)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 4, 2, 3, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::NCHW64_TO_NCHW32] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1), sub(2), sub(3), sub(4) / 32, cv(32)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) * 2, sub(2), sub(3), cv(32)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 4, 2, 3, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
    reformat[LayoutType::NCHW_TO_NCHW64] = [](VarNode* inp) -> VarNode* {
        megdnn::param::RelayoutFormat param;
        param.mode = megdnn::param::RelayoutFormat::Mode::NCHW_NCHW64;
        auto reformat = opr::RelayoutFormat::make(inp, param);
        return reformat.node();
    };
    reformat[LayoutType::NCHW_TO_NCHW32] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                {sub(0), sub(1) / 32, cv(32), sub(2), sub(3)}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
        return y1.node();
    };
    reformat[LayoutType::NCHW4_TO_NCHW64] = [](VarNode* inp) -> VarNode* {
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 16, cv(16), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 16, sub(2), sub(3), sub(4) * 16}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };
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    auto rewriter = opt.graph().make_rewriter();
    auto on_opr = [&reformat, &rewriter](OperatorNodeBase* opr) {
        if (opr->same_type<RelayoutPlaceholder>()) {
            auto ph = try_cast_as_op<RelayoutPlaceholder>(opr);
            auto new_inp = rewriter.get_var(opr->input(0));
            mgb_assert(reformat.count(ph->layout_type()),
                       "no replace rule can be found for layout_type(%u)",
                       static_cast<uint32_t>(ph->layout_type()));
            auto new_var = reformat[ph->layout_type()](new_inp);
            rewriter.replace_var(opr->output(0), new_var,
                                 mgb_cstr_log("replace relayout placeholder"));
            return;
        }
        rewriter.auto_replace_outputs(opr);
    };
    opt.graph().iter(on_opr);
    rewriter.apply_inplace();
}

void TensorReformatPass::apply(OptState& opt) const {
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    MIDOUT_B("TensorReformatPass::apply")
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    insert_pass(opt);
    translate_pass(opt);
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    MIDOUT_E
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}

/* ================ EnableTensorCorePass =============== */
VarNode* EnableTensorCorePass::on_graph_endpoint_var(VarNode* new_var,
                                                     VarNode* orig_var) const {
    if (!orig_var->shape().eq_shape(new_var->shape())) {
        return RelayoutPlaceholder::make(
                       new_var,
                       RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4)
                .node();
    }
    return new_var;
}

std::unique_ptr<EnableTensorCorePass>
EnableTensorCorePass::make_tensorcore_converter() {
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    MIDOUT_B("EnableTensorCorePass::make")
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    // replace rule for conv bias opr
    auto replace_conv_bias_opr = [](OperatorNodeBase* opr,
                                    const VarNodeArray& new_inp) {
        using Param = megdnn::param::ConvBias;
        using Format = Param::Format;
        using Sparse = Param::Sparse;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
        if (conv_bias.param().format != Format::NCHW4 ||
            conv_bias.output(0)->dtype().enumv() != DTypeEnum::QuantizedS8) {
            size_t nr_inps = opr->input().size();
            bool shape_has_changed = false;
            for (size_t i = 0; i < nr_inps; ++i) {
                if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                    shape_has_changed = true;
                }
            }
            MGB_MARK_USED_VAR(shape_has_changed);
            mgb_assert(
                    !shape_has_changed,
                    "EnableTensorCorePass assumes that the shape of inputs of"
                    "ConvBias operators whose output dtype is not QuantizedS8 "
                    "can not be changed in this opt pass");
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
        mgb_assert(opr->input(1)->shape().eq_shape(new_inp[1]->shape()),
                   "EnableTensorCorePass assumes that filter tensor of "
                   "conv_bias operator can not be changed by other operators");
        VarNode* orig_filter = opr->input(1);
        auto is_nchw4 = [](TensorShape shape) -> bool {
            return shape.ndim == 5 && shape[4] == 4;
        };
        auto is_nchw32 = [](TensorShape shape) -> bool {
            return shape.ndim == 5 && shape[4] == 32;
        };
        bool can_replace_nchw32 = false;
        VarNode *src = nullptr, *weight = nullptr, *bias = nullptr,
                *z_inp = nullptr;
        // process src tensor
        if (is_nchw4(new_inp[0]->shape())) {  // new input is NCHW4 layout
            size_t group = 1, icpg, ocpg;
            if (conv_bias.param().sparse == Sparse::DENSE) {
                icpg = orig_filter->shape()[1] * 4;
                ocpg = orig_filter->shape()[0];
            } else {
                mgb_assert(conv_bias.param().sparse == Sparse::GROUP);
                group = orig_filter->shape()[0];
                icpg = orig_filter->shape()[2];
                ocpg = orig_filter->shape()[1];
                if (icpg == 1 && ocpg == 1) {  // channel wise conv
                    group *= 4;
                } else {
                    icpg *= 4;
                }
            }
            // nchw32 layout need that input width and height are larger than 3
            size_t ih = new_inp[0]->shape()[2], iw = new_inp[0]->shape()[3];
            if (group == 1 && ocpg % 32 == 0 && icpg % 32 == 0 && ih >= 3 &&
                iw >= 3) {
                auto symvar = RelayoutPlaceholder::make(
                        new_inp[0],
                        RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW32);
                src = symvar.node();
                can_replace_nchw32 = true;
            } else {
                src = new_inp[0];
            }
        } else {  // new input is NCHW32 layout
            mgb_assert(is_nchw32(new_inp[0]->shape()));
            size_t group = 1, ocpg;
            if (conv_bias.param().sparse == Sparse::DENSE) {
                ocpg = orig_filter->shape()[0];
            } else {
                mgb_assert(conv_bias.param().sparse == Sparse::GROUP);
                size_t icpg = orig_filter->shape()[2];
                ocpg = orig_filter->shape()[1];
                if (icpg == 1 && ocpg == 1) {
                    group *= 4;
                } else {
                    icpg *= 4;
                }
            }
            size_t ih = new_inp[0]->shape()[2], iw = new_inp[0]->shape()[3];
            if (group == 1 && ocpg % 32 == 0 && ih >= 3 && iw >= 3) {
                can_replace_nchw32 = true;
                src = new_inp[0];
            } else {
                auto symvar = RelayoutPlaceholder::make(
                        new_inp[0],
                        RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4);
                src = symvar.node();
            }
        }
        // process filter tensor
        if (can_replace_nchw32) {
            auto symvar = RelayoutPlaceholder::make(
                    new_inp[1],
                    RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW32);
            weight = symvar.node();
        } else {
            weight = new_inp[1];
        }
        if (new_inp.size() == 2) {
            if (can_replace_nchw32) {
                auto param = conv_bias.param();
                param.format = Format::NCHW32;
                auto new_opr = opr::ConvBiasForward::make(
                        src, weight, param, conv_bias.execution_policy(),
                        conv_bias.config());
                return new_opr.node()->owner_opr();
            } else {
                VarNodeArray inps{src, weight};
                auto new_opr = serialization::copy_opr_shallow(*opr, inps,
                                                               opr->config());
                return new_opr;
            }
        }
        auto process_inp = [&](VarNode* inp) -> VarNode* {
            if (can_replace_nchw32) {
                if (is_nchw4(inp->shape())) {
                    auto symvar = RelayoutPlaceholder::make(
                            inp,
                            RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW32);
                    return symvar.node();
                } else {
                    mgb_assert(is_nchw32(inp->shape()));
                    return inp;
                }
            } else {
                if (is_nchw4(inp->shape())) {
                    return inp;
                } else {
                    mgb_assert(is_nchw32(inp->shape()));
                    auto symvar = RelayoutPlaceholder::make(
                            inp,
                            RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4);
                    return symvar.node();
                }
            }
        };
        // process bias tensor
        bias = process_inp(new_inp[2]);
        if (new_inp.size() == 3) {
            if (can_replace_nchw32) {
                auto param = conv_bias.param();
                param.format = Format::NCHW32;
                auto new_opr = opr::ConvBiasForward::make(
                        src, weight, bias, param, conv_bias.execution_policy(),
                        conv_bias.config());
                return new_opr.node()->owner_opr();
            } else {
                VarNodeArray inps{src, weight, bias};
                auto new_opr = serialization::copy_opr_shallow(*opr, inps,
                                                               opr->config());
                return new_opr;
            }
        }
        // process z_inp tensor
        z_inp = process_inp(new_inp[3]);
        if (can_replace_nchw32) {
            auto param = conv_bias.param();
            param.format = Format::NCHW32;
            auto new_opr = opr::ConvBiasForward::make(
                    src, weight, bias, z_inp, param,
                    conv_bias.execution_policy(), conv_bias.config());
            return new_opr.node()->owner_opr();
        }
        VarNodeArray inps{src, weight, bias, z_inp};
        auto new_opr =
                serialization::copy_opr_shallow(*opr, inps, opr->config());
        return new_opr;
    };
    // replace rule for elemwise like opr
    // for oprs support NCHW4 and NCHW32 layout
    auto replace_elemwise_like_opr = [](OperatorNodeBase* opr,
                                        const VarNodeArray new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        size_t nr_inps = new_inp.size();
        size_t nr_shape_changed = 0;
        for (size_t i = 0; i < nr_inps; ++i) {
            if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                nr_shape_changed++;
            }
        }
        if (nr_shape_changed) {
            auto inps = new_inp;
            if (nr_shape_changed >=
                nr_inps / 2) {  // NCHW32 > NCHW4 -> use NCHW32
                for (size_t i = 0; i < nr_inps; ++i) {
                    if (opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                        auto symvar = RelayoutPlaceholder::make(
                                new_inp[i], RelayoutPlaceholder::LayoutType::
                                                    NCHW4_TO_NCHW32);
                        inps[i] = symvar.node();
                    }
                }
            } else {  // NCHW32 < NCHW4 -> use NCHW4
                for (size_t i = 0; i < nr_inps; ++i) {
                    if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                        auto symvar = RelayoutPlaceholder::make(
                                new_inp[i], RelayoutPlaceholder::LayoutType::
                                                    NCHW32_TO_NCHW4);
                        inps[i] = symvar.node();
                    }
                }
            }
            return serialization::copy_opr_shallow(*opr, inps, opr->config());
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    // for oprs only supports NCHW4 layout
    auto replace_inps_to_nchw4 = [](OperatorNodeBase* opr,
                                    const VarNodeArray new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        VarNodeArray inps = new_inp;
        for (size_t i = 0; i < opr->input().size(); ++i) {
            if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                mgb_assert(opr->input(i)->shape().ndim == 5 &&
                           opr->input(i)->shape()[4] == 4);
                mgb_assert(new_inp[i]->shape().ndim == 5 &&
                           new_inp[i]->shape()[4] == 32);
                auto symvar = RelayoutPlaceholder::make(
                        new_inp[i],
                        RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4);
                inps[i] = symvar.node();
            }
        }
        auto new_opr =
                serialization::copy_opr_shallow(*opr, inps, opr->config());
        return new_opr;
    };
    auto replace_non_nchw4_opr = [](OperatorNodeBase* opr,
                                    const VarNodeArray new_inp) {
        size_t nr_inps = opr->input().size();
        bool shape_has_changed = false;
        for (size_t i = 0; i < nr_inps; ++i) {
            if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                shape_has_changed = true;
            }
        }
        mgb_assert(!shape_has_changed,
                   "EnableTensorCorePass assumes that inputs' shape of "
                   "non-nchw4 operators "
                   "can not be changed in this opt "
                   "pass");
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    auto replace_warp_affine_opr =
            [replace_inps_to_nchw4, replace_non_nchw4_opr](
                    OperatorNodeBase* opr, const VarNodeArray new_inp) {
                using Param = opr::WarpAffineForward::Param;
                using Format = Param::Format;
                mgb_assert(opr->input().size() == new_inp.size());
                auto& warp = opr->cast_final_safe<opr::WarpAffineForward>();
                if (warp.param().format != Format::NCHW4) {
                    return replace_non_nchw4_opr(opr, new_inp);
                }
                return replace_inps_to_nchw4(opr, new_inp);
            };
    auto replace_warp_perspective_opr =
            [replace_inps_to_nchw4, replace_non_nchw4_opr](
                    OperatorNodeBase* opr, const VarNodeArray new_inp) {
                using Param = opr::WarpPerspectiveForward::Param;
                using Format = Param::Format;
                mgb_assert(opr->input().size() == new_inp.size());
                auto& warp =
                        opr->cast_final_safe<opr::WarpPerspectiveForward>();
                if (warp.param().format != Format::NCHW4) {
                    return replace_non_nchw4_opr(opr, new_inp);
                }
                return replace_inps_to_nchw4(opr, new_inp);
            };
    auto replace_resize_opr = [replace_inps_to_nchw4, replace_non_nchw4_opr](
                                      OperatorNodeBase* opr,
                                      const VarNodeArray new_inp) {
        using Param = opr::ResizeForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& resize = opr->cast_final_safe<opr::ResizeForward>();
        if (resize.param().format != Format::NCHW4) {
            return replace_non_nchw4_opr(opr, new_inp);
        }
        return replace_inps_to_nchw4(opr, new_inp);
    };
    auto replace_pooling_opr = [replace_non_nchw4_opr](
                                       OperatorNodeBase* opr,
                                       const VarNodeArray new_inp) {
        using Param = opr::PoolingForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& pooling = opr->cast_final_safe<opr::PoolingForward>();
        if (pooling.param().format != Format::NCHW4) {
            return replace_non_nchw4_opr(opr, new_inp);
        }
        size_t nr_inps = opr->input().size();
        MGB_MARK_USED_VAR(nr_inps);
        mgb_assert(nr_inps == 1);
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        size_t nr_channels = opr->input(0)->shape()[1] * 4;
        if (nr_channels % 32 == 0) {  // use nchw32 format
            VarNode* new_inp_var = new_inp[0];
            if (opr->input(0)->shape().eq_shape(new_inp[0]->shape())) {
                new_inp_var =
                        RelayoutPlaceholder::make(
                                new_inp[0], RelayoutPlaceholder::LayoutType::
                                                    NCHW4_TO_NCHW32)
                                .node();
            } else {
                mgb_assert(opr->input(0)->shape().ndim == 5 &&
                           opr->input(0)->shape()[4] == 4);
                mgb_assert(new_inp[0]->shape().ndim == 5 &&
                           new_inp[0]->shape()[4] == 32);
            }
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            auto new_param = pooling.param();
            new_param.format = Format::NCHW32;
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            auto new_pooling = opr::PoolingForward::make(new_inp_var, new_param,
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                                                         opr->config());
            return new_pooling.node()->owner_opr();
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    auto ret = std::make_unique<EnableTensorCorePass>();
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::NOCHECK);
    auto&& replace_func = ret->m_opr_replace_func;
    replace_func[opr::ConvBiasForward::typeinfo()] = replace_conv_bias_opr;

    // elemwise like
    replace_func[opr::Elemwise::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::TypeCvt::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::ElemwiseMultiType::typeinfo()] =
            replace_elemwise_like_opr;
    replace_func[opr::PowC::typeinfo()] = replace_elemwise_like_opr;

    // format aware
    replace_func[opr::PoolingForward::typeinfo()] = replace_pooling_opr;
    replace_func[opr::WarpAffineForward::typeinfo()] = replace_warp_affine_opr;
    replace_func[opr::WarpPerspectiveForward::typeinfo()] =
            replace_warp_perspective_opr;
    replace_func[opr::ResizeForward::typeinfo()] = replace_resize_opr;

    // to nchw4
    replace_func[opr::Reduce::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Concat::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Reshape::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::GetVarShape::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Dimshuffle::typeinfo()] = replace_inps_to_nchw4;
    return ret;
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}

/* ================ EnableCHWN4Pass =============== */
VarNode* EnableCHWN4Pass::on_graph_endpoint_var(VarNode* new_var,
                                                VarNode* /* orig_var */) const {
    if (m_varshape_changed.count(new_var)) {
        return RelayoutPlaceholder::make(
                       new_var, RelayoutPlaceholder::LayoutType::CHWN4_TO_NCHW4)
                .node();
    }
    return new_var;
}

std::unique_ptr<EnableCHWN4Pass> EnableCHWN4Pass::make_chwn4_converter() {
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    auto ret = std::make_unique<EnableCHWN4Pass>();
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::NOCHECK);
    auto&& replace_func = ret->m_opr_replace_func;
    auto&& varshape_changed = ret->m_varshape_changed;
    // replace rule for conv bias opr
    auto replace_conv_bias_opr = [&varshape_changed](
                                         OperatorNodeBase* opr,
                                         const VarNodeArray& new_inp) {
        using Param = megdnn::param::ConvBias;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
        if (conv_bias.param().format != Format::NCHW4 ||
            conv_bias.output(0)->dtype().enumv() != DTypeEnum::QuantizedS8) {
            size_t nr_inps = new_inp.size();
            bool shape_has_changed = false;
            for (size_t i = 0; i < nr_inps; ++i) {
                if (varshape_changed.count(new_inp[i])) {
                    shape_has_changed = true;
                    break;
                }
            }
            mgb_assert(
                    !shape_has_changed,
                    "EnableCHWN4Pass assumes that the shape of inputs of"
                    "ConvBias operators whose output dtype is not QuantizedS8 "
                    "can not be changed in this opt pass");
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
        mgb_assert(varshape_changed.count(new_inp[1]) == 0,
                   "EnableCHWN4Pass assumes that filter tensor of "
                   "conv_bias operator can not be changed by other operators");
        VarNode *src = nullptr, *weight = nullptr, *bias = nullptr,
                *z_inp = nullptr;
        // process src tensor
        if (varshape_changed.count(new_inp[0]) ==
            0) {  // new input is NCHW4 layout
            // currently not support group conv
            auto symvar = RelayoutPlaceholder::make(
                    new_inp[0],
                    RelayoutPlaceholder::LayoutType::NCHW4_TO_CHWN4);
            src = symvar.node();
        } else {  // new input is NCHW32 layout
            src = new_inp[0];
        }
        // process weight tensor
        {
            auto symvar = RelayoutPlaceholder::make(
                    new_inp[1],
                    RelayoutPlaceholder::LayoutType::NCHW4_TO_CHWN4);
            weight = symvar.node();
        }
        if (new_inp.size() == 2) {
            auto param = conv_bias.param();
            param.format = Format::CHWN4;
            auto new_opr = opr::ConvBiasForward::make(
                    src, weight, param, conv_bias.execution_policy(),
                    conv_bias.config());
            varshape_changed.insert(new_opr.node());
            return new_opr.node()->owner_opr();
        }
        auto process_inp = [&](VarNode* inp) -> VarNode* {
            if (varshape_changed.count(inp) == 0) {
                auto symvar = RelayoutPlaceholder::make(
                        inp, RelayoutPlaceholder::LayoutType::NCHW4_TO_CHWN4);
                return symvar.node();
            } else {
                return inp;
            }
        };
        // process bias tensor
        bias = process_inp(new_inp[2]);
        if (new_inp.size() == 3) {
            auto param = conv_bias.param();
            param.format = Format::CHWN4;
            auto new_opr = opr::ConvBiasForward::make(
                    src, weight, bias, param, conv_bias.execution_policy(),
                    conv_bias.config());
            varshape_changed.insert(new_opr.node());
            return new_opr.node()->owner_opr();
        }
        // process z_inp tensor
        z_inp = process_inp(new_inp[3]);
        auto param = conv_bias.param();
        param.format = Format::CHWN4;
        auto new_opr = opr::ConvBiasForward::make(
                src, weight, bias, z_inp, param, conv_bias.execution_policy(),
                conv_bias.config());
        varshape_changed.insert(new_opr.node());
        return new_opr.node()->owner_opr();
    };
    // replace rule for elemwise like opr
    // for oprs support NCHW4 and CHWN4 layout
    auto replace_elemwise_like_opr = [&varshape_changed](
                                             OperatorNodeBase* opr,
                                             const VarNodeArray new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        size_t nr_inps = new_inp.size();
        size_t nr_shape_changed = 0;
        for (size_t i = 0; i < nr_inps; ++i) {
            if (varshape_changed.count(new_inp[i])) {
                nr_shape_changed++;
            }
        }
        if (nr_shape_changed) {
            auto inps = new_inp;
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            if (nr_shape_changed >=
                nr_inps / 2) {  // CHWN4 > NCHW4 -> use CHWN4
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                for (size_t i = 0; i < nr_inps; ++i) {
                    if (varshape_changed.count(new_inp[i]) == 0) {
                        auto symvar = RelayoutPlaceholder::make(
                                new_inp[i], RelayoutPlaceholder::LayoutType::
                                                    NCHW4_TO_CHWN4);
                        inps[i] = symvar.node();
                    }
                }
                auto new_opr = serialization::copy_opr_shallow(*opr, inps,
                                                               opr->config());
                varshape_changed.insert(new_opr->output(0));
                return new_opr;
            } else {  // CHWN4 < NCHW4 -> use NCHW4
                for (size_t i = 0; i < nr_inps; ++i) {
                    if (varshape_changed.count(new_inp[i])) {
                        auto symvar = RelayoutPlaceholder::make(
                                new_inp[i], RelayoutPlaceholder::LayoutType::
                                                    CHWN4_TO_NCHW4);
                        inps[i] = symvar.node();
                    }
                }
                return serialization::copy_opr_shallow(*opr, inps,
                                                       opr->config());
            }
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    // for oprs only supports NCHW4 layout
    auto replace_inps_to_nchw4 = [&varshape_changed](
                                         OperatorNodeBase* opr,
                                         const VarNodeArray new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        VarNodeArray inps = new_inp;
        for (size_t i = 0; i < opr->input().size(); ++i) {
            if (varshape_changed.count(new_inp[i])) {
                auto symvar = RelayoutPlaceholder::make(
                        new_inp[i],
                        RelayoutPlaceholder::LayoutType::CHWN4_TO_NCHW4);
                inps[i] = symvar.node();
            }
        }
        auto new_opr =
                serialization::copy_opr_shallow(*opr, inps, opr->config());
        return new_opr;
    };
    auto replace_non_nchw4_opr = [&varshape_changed](
                                         OperatorNodeBase* opr,
                                         const VarNodeArray new_inp) {
        size_t nr_inps = opr->input().size();
        bool shape_has_changed = false;
        for (size_t i = 0; i < nr_inps; ++i) {
            if (varshape_changed.count(new_inp[i])) {
                shape_has_changed = true;
            }
        }
        mgb_assert(!shape_has_changed,
                   "EnableCHWN4Pass assumes that inputs' shape of "
                   "non-nchw4 operators "
                   "can not be changed in this opt "
                   "pass");
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    // capture by copy to avoid use after return
    auto replace_warp_affine_opr =
            [replace_inps_to_nchw4, replace_non_nchw4_opr](
                    OperatorNodeBase* opr, const VarNodeArray new_inp) {
                using Param = opr::WarpAffineForward::Param;
                using Format = Param::Format;
                mgb_assert(opr->input().size() == new_inp.size());
                auto& warp = opr->cast_final_safe<opr::WarpAffineForward>();
                if (warp.param().format != Format::NCHW4) {
                    return replace_non_nchw4_opr(opr, new_inp);
                }
                return replace_inps_to_nchw4(opr, new_inp);
            };
    auto replace_warp_perspective_opr =
            [replace_inps_to_nchw4, replace_non_nchw4_opr](
                    OperatorNodeBase* opr, const VarNodeArray new_inp) {
                using Param = opr::WarpPerspectiveForward::Param;
                using Format = Param::Format;
                mgb_assert(opr->input().size() == new_inp.size());
                auto& warp =
                        opr->cast_final_safe<opr::WarpPerspectiveForward>();
                if (warp.param().format != Format::NCHW4) {
                    return replace_non_nchw4_opr(opr, new_inp);
                }
                return replace_inps_to_nchw4(opr, new_inp);
            };
    auto replace_resize_opr = [replace_inps_to_nchw4, replace_non_nchw4_opr](
                                      OperatorNodeBase* opr,
                                      const VarNodeArray new_inp) {
        using Param = opr::ResizeForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& resize = opr->cast_final_safe<opr::ResizeForward>();
        if (resize.param().format != Format::NCHW4) {
            return replace_non_nchw4_opr(opr, new_inp);
        }
        return replace_inps_to_nchw4(opr, new_inp);
    };
    auto replace_pooling_opr = [&varshape_changed, replace_non_nchw4_opr](
                                       OperatorNodeBase* opr,
                                       const VarNodeArray new_inp) {
        using Param = opr::PoolingForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& pooling = opr->cast_final_safe<opr::PoolingForward>();
        if (pooling.param().format != Format::NCHW4) {
            return replace_non_nchw4_opr(opr, new_inp);
        }
        size_t nr_inps = opr->input().size();
        MGB_MARK_USED_VAR(nr_inps);
        mgb_assert(nr_inps == 1);
        if (varshape_changed.count(new_inp[0])) {
            auto new_param = pooling.param();
            new_param.format = Format::CHWN4;
            auto new_pooling = opr::PoolingForward::make(new_inp[0], new_param,
                                                         opr->config());
            varshape_changed.insert(new_pooling.node());
            return new_pooling.node()->owner_opr();
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    replace_func[opr::ConvBiasForward::typeinfo()] = replace_conv_bias_opr;

    // elemwise like
    replace_func[opr::Elemwise::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::TypeCvt::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::ElemwiseMultiType::typeinfo()] =
            replace_elemwise_like_opr;
    replace_func[opr::PowC::typeinfo()] = replace_elemwise_like_opr;

    // format aware
    replace_func[opr::PoolingForward::typeinfo()] = replace_pooling_opr;
    replace_func[opr::WarpAffineForward::typeinfo()] = replace_warp_affine_opr;
    replace_func[opr::WarpPerspectiveForward::typeinfo()] =
            replace_warp_perspective_opr;
    replace_func[opr::ResizeForward::typeinfo()] = replace_resize_opr;

    // to nchw4
    replace_func[opr::Reduce::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Concat::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Reshape::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::GetVarShape::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::Dimshuffle::typeinfo()] = replace_inps_to_nchw4;
    replace_func[opr::BatchConvBias::typeinfo()] = replace_inps_to_nchw4;
    return ret;
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}

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/* ================ EnableNCHW4Pass ================ */
VarNode* EnableNCHW4Pass::on_graph_endpoint_var(VarNode* new_var,
                                                VarNode* orig_var) const {
    if (!orig_var->shape().eq_shape(new_var->shape())) {
        return RelayoutPlaceholder::make(
                       new_var, RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW)
                .node();
    }
    return new_var;
}

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//! FIXME: All float oprs do not support NCHW4. Supports it in the future plz.
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std::unique_ptr<EnableNCHW4Pass> EnableNCHW4Pass::make_nchw4_converter() {
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    MIDOUT_B("EnableNCHW4Pass::make")
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    auto ret = std::make_unique<EnableNCHW4Pass>();
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::NOCHECK);
    using RelayoutMode = RelayoutPlaceholder::LayoutType;
    megdnn::param::Convolution::Format conv_format =
            megdnn::param::Convolution::Format::NCHW4;
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    megdnn::param::ConvBias::Format conv_bias_format =
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            megdnn::param::ConvBias::Format::NCHW4;
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    megdnn::param::ConvBias::Format conv_bias_format_nchw4_nchw =
            megdnn::param::ConvBias::Format::NCHW4_NCHW;
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    megdnn::param::BatchConvBias::Format batch_conv_bias_format =
            megdnn::param::BatchConvBias::Format::NCHW4;
    RelayoutMode src_to_nchw4_mode = RelayoutMode::NCHW_TO_NCHW4;
    RelayoutMode src_to_nchw_mode = RelayoutMode::NCHW4_TO_NCHW;
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    RelayoutMode weight_to_nchw4_mode_dense =
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            RelayoutMode::WEIGHT_NCHW_TO_NCHW4_DENSE;
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    RelayoutMode weight_to_nchw4_mode_group =
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            RelayoutMode::WEIGHT_NCHW_TO_NCHW4_GROUP;
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    struct ConvMode {
        RelayoutMode weight;
        RelayoutMode src;
    };

    auto trans_nchw4 =
            [weight_to_nchw4_mode_dense, weight_to_nchw4_mode_group,
             src_to_nchw4_mode](
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                    const megdnn::param::Convolution::Sparse conv_mode,
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                    const VarNode* filter) -> ConvMode {
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        if (conv_mode == megdnn::param::Convolution::Sparse::DENSE) {
            mgb_assert(filter->shape().ndim == 4,
                       "The origin filter is not NCHW mode");
            size_t IC = filter->shape()[1];
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            if (IC < 4) {
                return {RelayoutMode::WEIGHT_NCHW_TO_NCHW4_DENSE_IC_SMALL_CONV,
                        RelayoutMode::NCHW_TO_NCHW4_IC_SMALL_CONV};
            } else {
                return {weight_to_nchw4_mode_dense, src_to_nchw4_mode};
            }
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        } else {
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            mgb_throw_if(conv_mode != megdnn::param::Convolution::Sparse::GROUP,
                         MegBrainError, "mode error");
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            mgb_assert(filter->shape().ndim == 5,
                       "The origin filter if not NCHW mode");
            size_t IC = filter->shape()[2];
            mgb_assert(IC % 4 == 0,
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                       "The input channel should be divisible by 4 for group "
                       "conv");
            return {weight_to_nchw4_mode_group, src_to_nchw4_mode};
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        }
    };
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    auto replace_conv_opr = [trans_nchw4, conv_format](
                                    OperatorNodeBase* opr,
                                    const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_opr = opr->cast_final_safe<opr::ConvolutionForward>();
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        if (conv_opr.param().format !=
            megdnn::param::Convolution::Format::NCHW) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        auto conv_mode = trans_nchw4(conv_opr.param().sparse, new_inp[1]);
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        VarNode *conv_src = new_inp[0], *conv_filter = new_inp[1];
        // src: NCHW --> NCWH4
        if (new_inp[0]->shape().ndim != 5) {
            mgb_assert(new_inp[0]->shape().ndim == 4);
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            auto new_src = RelayoutPlaceholder::make(new_inp[0], conv_mode.src);
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            conv_src = new_src.node();
        }
        // weight: NCHW --> NCHW4
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        auto new_filter =
                RelayoutPlaceholder::make(new_inp[1], conv_mode.weight);
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        conv_filter = new_filter.node();
        // format: NCHW --> NCHW4
        auto new_param = conv_opr.param();
        new_param.format = conv_format;
        // dst
        auto new_conv_opr = opr::Convolution::make(
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                conv_src, conv_filter, new_param, conv_opr.execution_policy(),
                conv_opr.config());
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        OperatorNodeBase* new_opr = new_conv_opr.node()->owner_opr();
        mgb_assert(new_conv_opr.shape().ndim == 5,
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                   "The conv dst dim is not trans to nchw4");
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        return new_opr;
    };

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    auto replace_deconv_opr = [trans_nchw4, conv_format](
                                    OperatorNodeBase* opr,
                                    const VarNodeArray& new_inp) {
        if (new_inp[1]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
        mgb_assert(opr->input().size() == new_inp.size());
        auto& deconv_opr = opr->cast_final_safe<opr::ConvolutionBackwardData>();
        if ((deconv_opr.param().format !=
             megdnn::param::Convolution::Format::NCHW) ||
            (deconv_opr.param().sparse !=
             megdnn::param::Convolution::Sparse::DENSE)) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
        VarNode *deconv_src = new_inp[1], *deconv_filter = new_inp[0];
        auto deconv_mode = trans_nchw4(deconv_opr.param().sparse, deconv_filter);
        // src: NCHW --> NCWH4
        if (deconv_src->shape().ndim != 5) {
            mgb_assert(deconv_src->shape().ndim == 4);
            auto new_src =
                    RelayoutPlaceholder::make(deconv_src, deconv_mode.src);
            deconv_src = new_src.node();
        }
        // weight: NCHW --> NCHW4
        auto new_filter =
                RelayoutPlaceholder::make(deconv_filter, deconv_mode.weight);
        deconv_filter = new_filter.node();
        // format: NCHW --> NCHW4
        auto new_param = deconv_opr.param();
        new_param.format = conv_format;
        // dst
        auto new_deconv_opr = opr::ConvolutionBackwardData::make_deconv(
                deconv_src, deconv_filter, new_param,
                deconv_opr.execution_policy(), deconv_opr.config());
        OperatorNodeBase* new_opr = new_deconv_opr.node()->owner_opr();
        return new_opr;
    };

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    auto replace_batch_conv_bias_opr = [batch_conv_bias_format,
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                                        src_to_nchw4_mode](
                                               OperatorNodeBase* opr,
                                               const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        mgb_assert(opr->input().size() == new_inp.size());
        auto& batch_conv_bias_opr =
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                opr->cast_final_safe<opr::BatchConvBiasForward>();
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        if (batch_conv_bias_opr.param().format !=
            megdnn::param::BatchConvBias::Format::NCHW) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }

        mgb_assert(batch_conv_bias_opr.param().format ==
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                           megdnn::param::BatchConvBias::Format::NCHW,
                   "ConvertFormat Pass only support converting NCHW to NCHW4");
        // what should be converted: src, weight
        VarNode *src = new_inp[0], *filter = new_inp[1];
        // src: NCHW --> NCHW4
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        if (new_inp[0]->shape().ndim != 5) {
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            mgb_assert(new_inp[0]->shape().ndim == 4);
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            auto new_src =
                    RelayoutPlaceholder::make(new_inp[0], src_to_nchw4_mode);
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            src = new_src.node();
        }
        // weight: BNCHW --> BNCHW4
        // only support dense mode, which is similar with conv->group.
        auto weight_mode =
                RelayoutPlaceholder::LayoutType::WEIGHT_NCHW_TO_NCHW4_GROUP;
        auto new_filter = RelayoutPlaceholder::make(new_inp[1], weight_mode);
        filter = new_filter.node();
        // format: NCHW --> NCHW4
        auto new_param = batch_conv_bias_opr.param();
        new_param.format = batch_conv_bias_format;
        if (new_inp.size() == 2) {
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            auto dst = opr::BatchConvBias::make(
                    src, filter, new_param,
                    batch_conv_bias_opr.execution_policy(),
                    batch_conv_bias_opr.config());
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            OperatorNodeBase* new_opr = dst.node()->owner_opr();
            mgb_assert(dst.shape().ndim == 5,
                       "The conv_bias dst dim is not trans to nchw4");
            return new_opr;
        }
        // bias: NCHW --> NCHW4
        VarNode* bias = new_inp[2];
        if (new_inp[2]->shape().ndim == 4) {
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            auto new_bias =
                    RelayoutPlaceholder::make(new_inp[2], src_to_nchw4_mode);
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            bias = new_bias.node();
        }
        if (new_inp.size() == 3) {
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            auto dst = opr::BatchConvBias::make(
                    src, filter, bias, new_param,
                    batch_conv_bias_opr.execution_policy(),
                    batch_conv_bias_opr.config());
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            OperatorNodeBase* new_opr = dst.node()->owner_opr();
            mgb_assert(dst.shape().ndim == 5,
                       "The conv_bias dst dim is not trans to nchw4");
            return new_opr;
        }
        // z_inp: NCHW --> NCHW4
        VarNode* z_inp = new_inp[3];
        if (new_inp[3]->shape().ndim == 4) {
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            auto new_z =
                    RelayoutPlaceholder::make(new_inp[3], src_to_nchw4_mode);
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            z_inp = new_z.node();
        }
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        auto dst =
                opr::BatchConvBias::make(src, filter, bias, z_inp, new_param,
                                         batch_conv_bias_opr.execution_policy(),
                                         batch_conv_bias_opr.config());
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        OperatorNodeBase* new_opr = dst.node()->owner_opr();
        mgb_assert(dst.shape().ndim == 5,
                   "The conv_bias dst dim is not trans to nchw4");
        return new_opr;
    };
    auto replace_conv_bias_opr = [trans_nchw4, conv_bias_format,
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                                  conv_bias_format_nchw4_nchw,
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                                  src_to_nchw4_mode](
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                                         OperatorNodeBase* opr,
                                         const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_bias_opr = opr->cast_final_safe<opr::ConvBiasForward>();
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        if (conv_bias_opr.param().format !=
            megdnn::param::Convolution::Format::NCHW) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }

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        // what should be converted: src, weight
        VarNode *conv_bias_src = new_inp[0], *conv_bias_filter = new_inp[1];
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        auto conv_mode = trans_nchw4(conv_bias_opr.param().sparse, new_inp[1]);
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        // src: NCHW --> NCHW4
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        if (new_inp[0]->shape().ndim != 5) {
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            mgb_assert(new_inp[0]->shape().ndim == 4);
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            auto new_src = RelayoutPlaceholder::make(new_inp[0], conv_mode.src);
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            conv_bias_src = new_src.node();
        }
        // weight: NCHW --> NCHW4 or GNCHW --> GNCHW4
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        auto new_filter =
                RelayoutPlaceholder::make(new_inp[1], conv_mode.weight);
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        conv_bias_filter = new_filter.node();
        // format: NCHW --> NCHW4
        auto new_param = conv_bias_opr.param();
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        if (conv_bias_opr.output().size() > 0 &&
            conv_bias_opr.output(0)->dtype().enumv() == DTypeEnum::Float32) {
            new_param.format = conv_bias_format_nchw4_nchw;
        } else {
            new_param.format = conv_bias_format;
        }
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        if (new_inp.size() == 2) {
            auto new_conv_bias_opr = opr::ConvBias::make(
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                    conv_bias_src, conv_bias_filter, new_param,
                    conv_bias_opr.execution_policy(), conv_bias_opr.config());
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            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
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            mgb_assert(
                new_conv_bias_opr.node()->dtype().enumv() == DTypeEnum::Float32 ||
                new_conv_bias_opr.shape().ndim == 5,
                "The conv_bias dst dim is not trans to nchw4");
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            return new_opr;
        }
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        // bias: NCHW --> NCHW4 when bias_dtype is not Float32
1875
        VarNode* conv_bias_bias = new_inp[2];
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        if (new_inp[2]->dtype().enumv() != DTypeEnum::Float32 &&
            new_inp[2]->shape().ndim == 4) {
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            auto new_bias =
                    RelayoutPlaceholder::make(new_inp[2], src_to_nchw4_mode);
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            conv_bias_bias = new_bias.node();
        }
        if (new_inp.size() == 3) {
            auto new_conv_bias_opr = opr::ConvBias::make(
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                    conv_bias_src, conv_bias_filter, conv_bias_bias, new_param,
                    conv_bias_opr.execution_policy(), conv_bias_opr.config());
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            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
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            mgb_assert(
                new_conv_bias_opr.node()->dtype().enumv() == DTypeEnum::Float32 ||
                new_conv_bias_opr.shape().ndim == 5,
                "The conv_bias dst dim is not trans to nchw4");
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            return new_opr;
        }
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        // z_inp: NCHW --> NCHW4 when bias_dtype is not Float32
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        VarNode* z_inp = new_inp[3];
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        if (new_inp[3]->dtype().enumv() != DTypeEnum::Float32 &&
            new_inp[3]->shape().ndim == 4) {
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            auto new_z =
                    RelayoutPlaceholder::make(new_inp[3], src_to_nchw4_mode);
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            z_inp = new_z.node();
        }
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        auto new_conv_bias_opr = opr::ConvBias::make(
                conv_bias_src, conv_bias_filter, conv_bias_bias, z_inp,
                new_param, conv_bias_opr.execution_policy(),
                conv_bias_opr.config());
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        OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
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        mgb_assert(
            new_conv_bias_opr.node()->dtype().enumv() == DTypeEnum::Float32 ||
            new_conv_bias_opr.shape().ndim == 5,
            "The conv_bias dst dim is not trans to nchw4");
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        return new_opr;
    };
    auto replace_elemwise_opr = [=](OperatorNodeBase* opr,
                                    const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        bool has_inp_changed = false;
        for (size_t i = 0; i < opr->input().size(); i++) {
            if (new_inp[i]->shape().ndim == 5) {
                has_inp_changed = true;
                break;
            }
        }
        if (has_inp_changed) {
            auto temp_inp = new_inp;
            for (size_t i = 0; i < opr->input().size(); i++) {
                if (new_inp[i]->shape().ndim == 4) {
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                    auto new_var = RelayoutPlaceholder::make(new_inp[i],
                                                             src_to_nchw4_mode);
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                    temp_inp[i] = new_var.node();
                } else {
                    mgb_assert((new_inp[i]->shape().ndim == 5) ||
                               new_inp[i]->shape().is_scalar());
                }
            }
            return serialization::copy_opr_shallow(*opr, temp_inp,
                                                   opr->config());
        } else {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };
    auto relayout_inp_to_nchw = [=](OperatorNodeBase* opr,
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                                    const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
        VarNodeArray temp_inp = new_inp;
        for (size_t i = 0; i < opr->input().size(); i++) {
            if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                mgb_assert(opr->input(i)->shape().ndim == 4);
                mgb_assert(new_inp[i]->shape().ndim == 5);
                auto new_var =
                        RelayoutPlaceholder::make(new_inp[i], src_to_nchw_mode);
                temp_inp[i] = new_var.node();
            }
        }
        return serialization::copy_opr_shallow(*opr, temp_inp, opr->config());
    };
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    auto replace_pooling_opr = [](OperatorNodeBase* opr,
                                  const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        using Param = opr::PoolingForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& pooling = opr->cast_final_safe<opr::PoolingForward>();
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        if (pooling.param().format != Format::NCHW) {
            return opr;
        }
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        if (new_inp[0]->shape().ndim == 5) {
            mgb_assert(new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8);
            auto new_param = pooling.param();
            new_param.format = Format::NCHW4;
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            auto new_pooling = opr::PoolingForward::make(new_inp[0], new_param,
                                                         opr->config());
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            mgb_assert(new_pooling.shape().ndim == 5,
                       "out var of Pooling opr after transform must be 5 (got: "
                       "%zu).",
                       new_pooling.shape().ndim);
            return new_pooling.node()->owner_opr();
        }
        auto new_opr =
                serialization::copy_opr_shallow(*opr, new_inp, opr->config());
        return new_opr;
    };
    auto replace_resize_opr = [](OperatorNodeBase* opr,
                                 const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        using Param = opr::ResizeForward::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& resize = opr->cast_final_safe<opr::ResizeForward>();
        if (new_inp[0]->shape().ndim == 5) {
            mgb_assert(new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8);
            auto new_param = resize.param();
            new_param.format = Format::NCHW4;
            auto new_resize = opr::ResizeForward::make(
                    new_inp[0], new_inp[1], new_param, opr->config());
            mgb_assert(new_resize.shape().ndim == 5,
                       "out var of Resize opr after transform must be 5 (got: "
                       "%zu).",
                       new_resize.shape().ndim);
            return new_resize.node()->owner_opr();
        }
        auto new_opr =
                serialization::copy_opr_shallow(*opr, new_inp, opr->config());
        return new_opr;
    };
    auto replace_warp_perspective_opr = [](OperatorNodeBase* opr,
                                           const VarNodeArray& new_inp) {
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        if (new_inp[0]->dtype().enumv() == DTypeEnum::Float32) {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
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        using Param = opr::WarpPerspective::Param;
        using Format = Param::Format;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& warp = opr->cast_final_safe<opr::WarpPerspectiveForward>();
        if (new_inp[0]->shape().ndim == 5) {
            mgb_assert(new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8);
            auto new_param = warp.param();
            new_param.format = Format::NCHW4;
            SymbolVar new_warp;
            if (new_inp.size() == 3) {
                new_warp = opr::WarpPerspectiveForward::make(
                        new_inp[0], new_inp[1], nullptr, new_inp[2], new_param,
                        opr->config());
            } else {
                mgb_assert(new_inp.size() == 4);
                new_warp = opr::WarpPerspectiveForward::make(
                        new_inp[0], new_inp[1], new_inp[2], new_inp[3],
                        new_param, opr->config());
            }
            mgb_assert(new_warp.shape().ndim == 5,
                       "out var of WarpPerspective opr after transform must be "
                       "5 (got: "
                       "%zu).",
                       new_warp.shape().ndim);
            return new_warp.node()->owner_opr();
        }
        auto new_opr =
                serialization::copy_opr_shallow(*opr, new_inp, opr->config());
        return new_opr;
    };
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    auto&& replace_func = ret->m_opr_replace_func;
    //! supportted nchw4
    replace_func[opr::Convolution::typeinfo()] = replace_conv_opr;
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    replace_func[opr::ConvolutionBackwardData::typeinfo()] =
            replace_deconv_opr;
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    replace_func[opr::ConvBias::typeinfo()] = replace_conv_bias_opr;
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    replace_func[opr::BatchConvBias::typeinfo()] = replace_batch_conv_bias_opr;
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    replace_func[opr::PoolingForward::typeinfo()] = replace_pooling_opr;
    replace_func[opr::ResizeForward::typeinfo()] = replace_resize_opr;
    replace_func[opr::WarpPerspectiveForward::typeinfo()] =
            replace_warp_perspective_opr;
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    replace_func[opr::Elemwise::typeinfo()] = replace_elemwise_opr;
    replace_func[opr::TypeCvt::typeinfo()] = replace_elemwise_opr;
    replace_func[opr::ElemwiseMultiType::typeinfo()] = replace_elemwise_opr;
    replace_func[opr::PowC::typeinfo()] = replace_elemwise_opr;
    //! not supported nchw4
    replace_func[opr::Concat::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Subtensor::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::GetVarShape::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Dimshuffle::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Reduce::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::AssertEqual::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::IncrSubtensor::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::WarpAffineForward::typeinfo()] = relayout_inp_to_nchw;
    return ret;
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}

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/* ================ EnableNchwxxPass =============== */
VarNode* EnableNchwxxPass::on_graph_endpoint_var(VarNode* new_var,
                                                 VarNode* orig_var) const {
    if (!orig_var->shape().eq_shape(new_var->shape())) {
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        if (m_pack_c_size == 8) {
            return RelayoutPlaceholder::make(
                           new_var,
                           RelayoutPlaceholder::LayoutType::NCHW88_TO_NCHW)
                    .node();
        } else if (m_pack_c_size == 4) {
            return RelayoutPlaceholder::make(
                           new_var,
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                           RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW)
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                    .node();
        }
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    }
    return new_var;
}
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static inline TensorShape nchwxx_shape_2_nchw_shape(
        const TensorShape& origin_shape) {
    mgb_assert(origin_shape.ndim == 5);
    TensorShape result = origin_shape;
    result[1] *= result[4];
    result.ndim = 4;
    return result;
}

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template <typename OprType>
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static inline bool nchw_nchwxx_valid(
        const OprType& opr, const VarNodeArray& new_inp, const size_t pack_size,
        megdnn::param::ConvBias::NonlineMode nonline_mode =
                megdnn::param::ConvBias::NonlineMode::IDENTITY,
        bool is_dot = false) {
    auto& src_node = new_inp[0];
    auto& filter_node = new_inp[1];
    auto dst_node = opr.output(0);
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    //! already transformed or have fuse Z
    if (filter_node->shape().ndim != 4 || new_inp.size() == 4) {
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        return false;
    }
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    megdnn::ConvolutionBase<megdnn::param::Convolution>::CanonizedFilterMeta fm;
    fm.format = megdnn::param::Convolution::Format::NCHW;
    fm.should_flip =
            opr.param().mode == megdnn::ConvBiasForward::Mode::CONVOLUTION;
    fm.group = 1;
    fm.spatial_ndim = 2;
    fm.ocpg = filter_node->shape()[0];
    fm.icpg = filter_node->shape()[1];
    fm.spatial[0] = filter_node->shape()[2];
    fm.spatial[1] = filter_node->shape()[3];
    fm.stride[0] = opr.param().stride_h;
    fm.stride[1] = opr.param().stride_w;
    fm.padding[0] = opr.param().pad_h;
    fm.padding[1] = opr.param().pad_w;
    fm.dilation[0] = opr.param().dilate_h;
    fm.dilation[1] = opr.param().dilate_w;

    megdnn::ConvBiasForward::BiasMode bias_mode =
            megdnn::ConvBiasForward::BiasMode::NO_BIAS;
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    if (std::is_same<OprType, opr::ConvBiasForward>::value &&
        new_inp.size() > 2) {
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        TensorShape bias_shape = new_inp[2]->shape();
        if (bias_shape.ndim == 5) {
            bias_shape = nchwxx_shape_2_nchw_shape(bias_shape);
        }
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        if (bias_shape.ndim == 0) {
            bias_mode = megdnn::ConvBiasForward::BiasMode::NO_BIAS;
        } else if (bias_shape.eq_shape(dst_node->shape())) {
            bias_mode = megdnn::ConvBiasForward::BiasMode::BIAS;
        } else {
            //! just check the ndim, the detail shape check is in check_exec
            mgb_assert(bias_shape.ndim == dst_node->shape().ndim);
            bias_mode =
                    megdnn::ConvBiasForward::BiasMode::BROADCAST_CHANNEL_BIAS;
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        }
    }

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    if (pack_size == 4) {
        if (is_dot && filter_node->dtype().enumv() == DTypeEnum::QuantizedS8) {
            fm.format = megdnn::param::Convolution::Format::NCHW44_DOT;
        } else {
            fm.format = megdnn::param::Convolution::Format::NCHW44;
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        }
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    } else if (pack_size == 8) {
        fm.format = megdnn::param::Convolution::Format::NCHW88;
    } else {
        mgb_assert(0, "only support nchw44 nchw88");
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    }

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    return megdnn::ConvBiasForward::is_nchw_nchwxx_optimized(
            src_node->dtype().enumv(), filter_node->dtype().enumv(),
            dst_node->dtype().enumv(), fm, bias_mode, nonline_mode);
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}
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void EnableNchwxxPass::fill_opr_convert_fun(size_t pack_c_size) {
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    using RelayoutMode = RelayoutPlaceholder::LayoutType;
    using TestFilterResult = std::pair<TransType, RelayoutMode>;
    RelayoutMode weight_to_nchwxx_mode_dense =
            RelayoutMode::WEIGHT_NCHW_TO_NCHW88_DENSE;
    RelayoutMode weight_to_nchwxx_mode_group =
            RelayoutMode::WEIGHT_NCHW_TO_NCHW88_GROUP;
    RelayoutMode weight_to_nchwxx_mode_chan =
            RelayoutMode::WEIGHT_NCHW_TO_NCHW88_CHAN;
    RelayoutMode hybrid_nchw_nchwxx = RelayoutMode::WEIGHT_HYBIRD_NCHW_NCHW88;
    RelayoutMode src_to_nchwxx_mode = RelayoutMode::NCHW_TO_NCHW88;
    RelayoutMode src_to_nchw_mode = RelayoutMode::NCHW88_TO_NCHW;
    megdnn::param::ConvBias::Format conv_bias_format =
            megdnn::param::ConvBias::Format::NCHW88;
    megdnn::param::Convolution::Format conv_format =
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            megdnn::param::Convolution::Format::NCHW88;
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    megdnn::param::Pooling::Format pooling_format =
            megdnn::param::Pooling::Format::NCHW88;
    std::string convter_pass_name = "conv_format_nchw88";
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    if (pack_c_size == 4) {
        weight_to_nchwxx_mode_dense = RelayoutMode::WEIGHT_NCHW_TO_NCHW44_DENSE;
        weight_to_nchwxx_mode_group = RelayoutMode::WEIGHT_NCHW_TO_NCHW44_GROUP;
        weight_to_nchwxx_mode_chan = RelayoutMode::WEIGHT_NCHW_TO_NCHW44_CHAN;
        hybrid_nchw_nchwxx = RelayoutMode::WEIGHT_HYBIRD_NCHW_NCHW44;
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        src_to_nchwxx_mode = RelayoutMode::NCHW_TO_NCHW4;
        src_to_nchw_mode = RelayoutMode::NCHW4_TO_NCHW;
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        conv_bias_format = megdnn::param::ConvBias::Format::NCHW44;
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        conv_format = megdnn::param::Convolution::Format::NCHW44;
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        pooling_format = megdnn::param::Pooling::Format::NCHW44;
        convter_pass_name = "conv_format_nchw44";
    }
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    auto test_trans_nchwxx =
            [pack_c_size, weight_to_nchwxx_mode_dense,
             weight_to_nchwxx_mode_group, weight_to_nchwxx_mode_chan,
             hybrid_nchw_nchwxx](
                    const megdnn::param::Convolution::Sparse conv_mode,
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                    const VarNode* filter, const size_t stride_h,
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                    const size_t stride_w,
                    bool valid_nchw_nchw44) -> TestFilterResult {
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        TestFilterResult ret{TransType::TRANS_NONE, {}};
        if (conv_mode == megdnn::param::Convolution::Sparse::DENSE) {
            size_t OC = filter->shape()[0];
2213
            size_t IC = filter->shape()[1];
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            if ((IC % pack_c_size == 0) && (OC % pack_c_size == 0)) {
                ret.first = TransType::TRANS_PURE_NCHWXX;
                ret.second = weight_to_nchwxx_mode_dense;
2217
            } else if (valid_nchw_nchw44) {
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                ret.first = TransType::TRANS_HYBIRD_NCHWXX;
                ret.second = hybrid_nchw_nchwxx;
            }
        } else {
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            mgb_throw_if(conv_mode != megdnn::param::Convolution::Sparse::GROUP,
                         MegBrainError, "mode error");
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            size_t group = filter->shape()[0];
            size_t ocpg = filter->shape()[1];
            size_t icpg = filter->shape()[2];
            if (icpg == 1 && ocpg == 1 && (group % pack_c_size == 0)) {
                ret.first = TransType::TRANS_PURE_NCHWXX;
                ret.second = weight_to_nchwxx_mode_chan;
            } else if ((icpg % pack_c_size == 0) && (ocpg % pack_c_size == 0)) {
                ret.first = TransType::TRANS_PURE_NCHWXX;
                ret.second = weight_to_nchwxx_mode_group;
            }
        }
        return ret;
    };
    auto replace_conv_opr = [test_trans_nchwxx, conv_format, src_to_nchwxx_mode,
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                             src_to_nchw_mode,
                             pack_c_size](OperatorNodeBase* opr,
                                          const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_opr = opr->cast_final_safe<opr::ConvolutionForward>();
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        mgb_throw_if(
                conv_opr.param().format !=
                        megdnn::param::Convolution::Format::NCHW,
                MegBrainError,
                "ConvertFormat Pass only support converting NCHW to NCHWXX");
2248
        bool valid_nchw_nchw44 =
2249
                nchw_nchwxx_valid(conv_opr, new_inp, pack_c_size);
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        auto is_trans = test_trans_nchwxx(
                conv_opr.param().sparse, new_inp[1], conv_opr.param().stride_h,
                conv_opr.param().stride_w, valid_nchw_nchw44);
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        //! can not trans to nchwxx
        if (is_trans.first == TransType::TRANS_NONE) {
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNodeArray temp_inp = new_inp;
            //! if src is nchwxx, should RelayoutPlaceholder to nchw
            if (temp_inp[0]->shape().ndim == 5) {
                auto new_src =
                        RelayoutPlaceholder::make(new_inp[0], src_to_nchw_mode);
                temp_inp[0] = new_src.node();
            }
            auto new_opr = serialization::copy_opr_shallow(*opr, temp_inp,
                                                           opr->config());
            return new_opr;
        } else if (is_trans.first == TransType::TRANS_PURE_NCHWXX) {
            //! filter trans to nchwxx mode
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNode *conv_src = new_inp[0], *conv_filter = new_inp[1];
            auto new_filter =
                    RelayoutPlaceholder::make(new_inp[1], is_trans.second);
            conv_filter = new_filter.node();
            //! src trans to nchwxx mode
            if (new_inp[0]->shape().ndim != 5) {
                mgb_assert(new_inp[0]->shape().ndim == 4);
                auto new_src = RelayoutPlaceholder::make(new_inp[0],
                                                         src_to_nchwxx_mode);
                conv_src = new_src.node();
            }
            auto new_param = conv_opr.param();
            new_param.format = conv_format;
            mgb_assert(conv_src->shape().ndim == 5 &&
                               conv_filter->shape().ndim >= 6,
                       "The conv src dim is not trans to nchwxx");
            auto new_conv_opr = opr::Convolution::make(
                    conv_src, conv_filter, new_param,
                    conv_opr.execution_policy(), conv_opr.config());
            OperatorNodeBase* new_opr = new_conv_opr.node()->owner_opr();
            mgb_assert(new_conv_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        } else {
            mgb_assert(is_trans.first == TransType::TRANS_HYBIRD_NCHWXX);
            VarNode *conv_src = new_inp[0], *conv_filter = new_inp[1];
            auto new_filter =
                    RelayoutPlaceholder::make(new_inp[1], is_trans.second);
            conv_filter = new_filter.node();
            mgb_assert(conv_src->shape().ndim == 4 &&
                               conv_filter->shape().ndim == 5,
                       "The src and filter is OK");
            auto new_param = conv_opr.param();
            new_param.format = conv_format;
            auto new_conv_opr = opr::Convolution::make(
                    conv_src, conv_filter, new_param,
                    conv_opr.execution_policy(), conv_opr.config());
            OperatorNodeBase* new_opr = new_conv_opr.node()->owner_opr();
            mgb_assert(new_conv_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        }
    };

    auto replace_conv_bias_opr = [test_trans_nchwxx, conv_bias_format,
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                                  src_to_nchwxx_mode, src_to_nchw_mode,
                                  pack_c_size](OperatorNodeBase* opr,
                                               const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
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        mgb_assert(opr->input().size() <= 3,
                   "nchwxx does not support conv_bias fuse Z right now");
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        auto& conv_bias_opr = opr->cast_final_safe<opr::ConvBiasForward>();
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        mgb_throw_if(
                conv_bias_opr.param().format !=
                        megdnn::param::ConvBias::Format::NCHW,
                MegBrainError,
                "ConvertFormat Pass only support converting NCHW to NCHWXX");
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        bool valid_nchw_nchw44 =
                nchw_nchwxx_valid(conv_bias_opr, new_inp, pack_c_size,
                                  conv_bias_opr.param().nonlineMode);
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        auto is_trans = test_trans_nchwxx(
                conv_bias_opr.param().sparse, new_inp[1],
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                conv_bias_opr.param().stride_h, conv_bias_opr.param().stride_w,
                valid_nchw_nchw44);

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        //! can not trans to nchwxx
        if (is_trans.first == TransType::TRANS_NONE) {
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNodeArray temp_inp = new_inp;
            //! if src is nchwxx, should RelayoutPlaceholder to nchw
            if (temp_inp[0]->shape().ndim == 5) {
                auto new_src =
                        RelayoutPlaceholder::make(new_inp[0], src_to_nchw_mode);
                temp_inp[0] = new_src.node();
            }
            //! the bias is nchwxx
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            if (new_inp.size() > 2 && temp_inp[2]->shape().ndim == 5) {
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                auto new_bias =
                        RelayoutPlaceholder::make(new_inp[2], src_to_nchw_mode);
                temp_inp[2] = new_bias.node();
            }
            auto new_opr = serialization::copy_opr_shallow(*opr, temp_inp,
                                                           opr->config());
            return new_opr;
        } else if (is_trans.first == TransType::TRANS_PURE_NCHWXX) {
            VarNode *conv_bias_src = new_inp[0], *conv_bias_filter = new_inp[1],
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                    *conv_bias_bias = nullptr;
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            //! filter trans to nchwxx mode
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            auto new_filter =
                    RelayoutPlaceholder::make(new_inp[1], is_trans.second);
            conv_bias_filter = new_filter.node();
            //! src trans to nchwxx mode
            if (new_inp[0]->shape().ndim != 5) {
                mgb_assert(new_inp[0]->shape().ndim == 4);
                auto new_src = RelayoutPlaceholder::make(new_inp[0],
                                                         src_to_nchwxx_mode);
                conv_bias_src = new_src.node();
            }
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            //! bias trans to nchwxx mode
            if (new_inp.size() > 2) {
                if (new_inp[2]->shape().ndim == 4) {
                    auto new_bias = RelayoutPlaceholder::make(
                            new_inp[2], src_to_nchwxx_mode);
                    conv_bias_bias = new_bias.node();
                } else {
                    mgb_assert(new_inp[2]->shape().ndim == 5);
                    conv_bias_bias = new_inp[2];
                }
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            }
            auto new_param = conv_bias_opr.param();
            new_param.format = conv_bias_format;
            mgb_assert(conv_bias_src->shape().ndim == 5 &&
                               conv_bias_filter->shape().ndim >= 6,
                       "The conv_bias src dim is not trans to nchwxx");
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            SymbolVar new_conv_bias_opr;
            if (conv_bias_bias) {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, conv_bias_bias,
                        new_param, conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            } else {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, new_param,
                        conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            }
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            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
            mgb_assert(new_conv_bias_opr.shape().ndim == 5,
                       "The conv_bias dst dim is not trans to nchwxx");
            return new_opr;
        } else {
            mgb_assert(is_trans.first == TransType::TRANS_HYBIRD_NCHWXX);
            VarNode *conv_bias_src = new_inp[0], *conv_bias_filter = new_inp[1],
2411
                    *conv_bias_bias = nullptr;
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            auto new_filter =
                    RelayoutPlaceholder::make(new_inp[1], is_trans.second);
            conv_bias_filter = new_filter.node();
            //! bias trans to nchwxx mode, bias may be scale
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            if (new_inp.size() > 2) {
                if (new_inp[2]->shape().ndim == 4) {
                    auto new_bias = RelayoutPlaceholder::make(
                            new_inp[2], src_to_nchwxx_mode);
                    conv_bias_bias = new_bias.node();
                } else {
                    mgb_assert(new_inp[2]->shape().ndim == 5);
                    conv_bias_bias = new_inp[2];
                }
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            }
            mgb_assert(conv_bias_src->shape().ndim == 4 &&
                       conv_bias_filter->shape().ndim == 5);
            auto new_param = conv_bias_opr.param();
            new_param.format = conv_bias_format;
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            SymbolVar new_conv_bias_opr;
            if (conv_bias_bias) {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, conv_bias_bias,
                        new_param, conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            } else {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, new_param,
                        conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            }
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            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
            mgb_assert(new_conv_bias_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        }
    };

    auto replace_pooling_opr = [=](OperatorNodeBase* opr,
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                                   const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
        auto& pooling_opr = opr->cast_final_safe<opr::PoolingForward>();
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        mgb_throw_if(
                pooling_opr.param().format !=
                        megdnn::param::Pooling::Format::NCHW,
                MegBrainError,
                "ConvertFormat Pass only support converting NCHW to NCHWxx");
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        VarNode* inp = new_inp[0];
        //! if input is nchwxx
        if (inp->shape().ndim == 5) {
            auto new_param = pooling_opr.param();
            new_param.format = pooling_format;
            auto new_pooling_opr =
                    opr::PoolingForward::make(inp, new_param, opr->config());
            mgb_assert(new_pooling_opr.shape().ndim == 5,
                       "The pooling dst dim is not trans to nchwxx");
            return new_pooling_opr.node()->owner_opr();
        } else {
            auto new_opr = serialization::copy_opr_shallow(*opr, new_inp,
                                                           opr->config());
            return new_opr;
        }
    };
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    //! When input change and all input can convert to nchwxx, this opr will run
    //! in nchwxx mode, else it will run in nchw mode, for example concat and
    //! elemwise opr
    auto replace_multi_inp_opr = [=](OperatorNodeBase* opr,
                                     const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
        bool has_inp_changed = false;
        bool can_exec_ncwxx = true;
        for (size_t i = 0; i < opr->input().size(); i++) {
            if (new_inp[i]->shape().ndim == 5) {
                has_inp_changed = true;
            } else if (new_inp[i]->shape().ndim == 4) {
                if (new_inp[i]->shape()[1] % pack_c_size != 0) {
                    can_exec_ncwxx = false;
                }
2489 2490
            } else if (!new_inp[i]->shape().is_scalar()) {
                can_exec_ncwxx = false;
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            }
        }
        if (has_inp_changed) {
            auto temp_inp = new_inp;
            if (can_exec_ncwxx) {
                for (size_t i = 0; i < opr->input().size(); i++) {
                    if (new_inp[i]->shape().ndim == 4) {
                        auto new_var = RelayoutPlaceholder::make(
                                new_inp[i], src_to_nchwxx_mode);
                        temp_inp[i] = new_var.node();
                    } else {
                        mgb_assert((new_inp[i]->shape().ndim == 5) ||
                                   new_inp[i]->shape().is_scalar());
                    }
                }
            } else {
                for (size_t i = 0; i < opr->input().size(); i++) {
                    if (new_inp[i]->shape().ndim == 5) {
                        auto new_var = RelayoutPlaceholder::make(
                                new_inp[i], src_to_nchw_mode);
                        temp_inp[i] = new_var.node();
                    }
                }
            }
            return serialization::copy_opr_shallow(*opr, temp_inp,
                                                   opr->config());
        } else {
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };

2523
    auto relayout_inp_to_nchw = [=](OperatorNodeBase* opr,
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                                    const VarNodeArray& new_inp) {
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        mgb_assert(opr->input().size() == new_inp.size());
        VarNodeArray temp_inp = new_inp;
        for (size_t i = 0; i < opr->input().size(); i++) {
            if (!opr->input(i)->shape().eq_shape(new_inp[i]->shape())) {
                mgb_assert(opr->input(i)->shape().ndim == 4);
                mgb_assert(new_inp[i]->shape().ndim == 5);
                auto new_var =
                        RelayoutPlaceholder::make(new_inp[i], src_to_nchw_mode);
                temp_inp[i] = new_var.node();
            }
        }
        return serialization::copy_opr_shallow(*opr, temp_inp, opr->config());
    };

2539
    auto&& replace_func = m_opr_replace_func;
2540 2541 2542 2543
    //! supportted nchwxx
    replace_func[opr::Convolution::typeinfo()] = replace_conv_opr;
    replace_func[opr::ConvBias::typeinfo()] = replace_conv_bias_opr;
    replace_func[opr::PoolingForward::typeinfo()] = replace_pooling_opr;
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    replace_func[opr::Concat::typeinfo()] = replace_multi_inp_opr;
    replace_func[opr::Elemwise::typeinfo()] = replace_multi_inp_opr;
    replace_func[opr::TypeCvt::typeinfo()] = replace_multi_inp_opr;
    replace_func[opr::ElemwiseMultiType::typeinfo()] = replace_multi_inp_opr;
    replace_func[opr::PowC::typeinfo()] = replace_multi_inp_opr;
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    //! not support yet
    replace_func[opr::ConvolutionBackwardData::typeinfo()] =
            relayout_inp_to_nchw;
    replace_func[opr::Subtensor::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::GetVarShape::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Dimshuffle::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Reduce::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::AssertEqual::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::IncrSubtensor::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::ResizeForward::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::WarpPerspectiveForward::typeinfo()] =
            relayout_inp_to_nchw;
    replace_func[opr::WarpAffineForward::typeinfo()] = relayout_inp_to_nchw;
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    replace_func[opr::Reshape::typeinfo()] = relayout_inp_to_nchw;
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    replace_func[opr::AxisAddRemove::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Argmax::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::Broadcast::typeinfo()] = relayout_inp_to_nchw;
    replace_func[opr::ImmutableTensor::typeinfo()] = relayout_inp_to_nchw;
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}

std::unique_ptr<EnableNchwxxPass> EnableNchwxxPass::make_nchwxx_converter(
        size_t pack_c_size) {
2571
    MIDOUT_B("EnableNchwxxPass::make")
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    auto ret = std::make_unique<EnableNchwxxPass>(pack_c_size);
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::NOCHECK);
    std::string convter_pass_name = "conv_format_nchw88";
    if (pack_c_size == 4) {
        convter_pass_name = "conv_format_nchw44";
    }
    ret->fill_opr_convert_fun(pack_c_size);
    ret->set_name(convter_pass_name);
    return ret;
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    MIDOUT_E
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}

/* ================ EnableNchw44DotPass =============== */
VarNode* EnableNchw44DotPass::on_graph_endpoint_var(VarNode* new_var,
                                                    VarNode* orig_var) const {
    if (!orig_var->shape().eq_shape(new_var->shape())) {
        return RelayoutPlaceholder::make(
                       new_var, RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW)
                .node();
    }
    return new_var;
}

std::unique_ptr<EnableNchw44DotPass>
EnableNchw44DotPass::make_nchw44_dot_converter() {
2597
    MIDOUT_B("EnableNchw44DotPass::make")
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    auto ret = std::make_unique<EnableNchw44DotPass>();
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::NOCHECK);
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    //! First is whether the conv can trans to nchwxx, second is the filter
    //! trans mode
2602

2603
    using RelayoutMode = RelayoutPlaceholder::LayoutType;
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    struct TestTransResult {
        TransType trans_type;
        RelayoutMode relayout_mod;
2607
        megdnn::param::Convolution::Format conv_format;
2608
    };
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    constexpr size_t pack_c_size = 4_z;
    auto test_trans_nchw44_dot =
            [](const megdnn::param::Convolution::Sparse conv_mode,
2612
               const VarNode* filter, const size_t stride_h,
2613 2614
               const size_t stride_w,
               const bool valid_nchw_nchw44) -> TestTransResult {
2615
        TestTransResult ret{TransType::TRANS_NONE, {}, {}};
2616 2617
        bool is_int8 = filter->dtype().enumv() == DTypeEnum::QuantizedS8 ||
                       filter->dtype().enumv() == DTypeEnum::Int8;
2618 2619
        if (conv_mode == megdnn::param::Convolution::Sparse::DENSE) {
            size_t OC = filter->shape()[0];
2620
            size_t IC = filter->shape()[1];
2621
            if ((IC % pack_c_size == 0) && (OC % pack_c_size == 0)) {
2622
                ret.trans_type = TransType::TRANS_PURE_NCHWXX;
2623 2624 2625 2626 2627 2628 2629 2630 2631 2632 2633
                if (is_int8) {
                    ret.relayout_mod =
                            RelayoutMode::WEIGHT_NCHW_TO_NCHW44_DOT_DENSE;
                    ret.conv_format =
                            megdnn::param::ConvBias::Format::NCHW44_DOT;
                } else {
                    ret.relayout_mod =
                            RelayoutMode::WEIGHT_NCHW_TO_NCHW44_DENSE;
                    ret.conv_format = megdnn::param::ConvBias::Format::NCHW44;
                }
            } else if (valid_nchw_nchw44) {
2634 2635
                ret.trans_type = TransType::TRANS_HYBIRD_NCHWXX;
                ret.relayout_mod = RelayoutMode::WEIGHT_HYBIRD_NCHW_NCHW44;
2636 2637 2638 2639 2640 2641
                if (is_int8) {
                    ret.conv_format =
                            megdnn::param::ConvBias::Format::NCHW44_DOT;
                } else {
                    ret.conv_format = megdnn::param::ConvBias::Format::NCHW44;
                }
2642 2643
            }
        } else {
2644 2645
            mgb_throw_if(conv_mode != megdnn::param::Convolution::Sparse::GROUP,
                         MegBrainError, "mode error");
2646 2647 2648 2649
            size_t group = filter->shape()[0];
            size_t ocpg = filter->shape()[1];
            size_t icpg = filter->shape()[2];
            if (icpg == 1 && ocpg == 1 && (group % pack_c_size == 0)) {
2650 2651 2652
                ret.trans_type = TransType::TRANS_PURE_NCHWXX;
                ret.relayout_mod = RelayoutMode::WEIGHT_NCHW_TO_NCHW44_CHAN;
                ret.conv_format = megdnn::param::ConvBias::Format::NCHW44;
2653
            } else if ((icpg % pack_c_size == 0) && (ocpg % pack_c_size == 0)) {
2654
                ret.trans_type = TransType::TRANS_PURE_NCHWXX;
2655 2656 2657 2658 2659 2660 2661 2662 2663 2664
                if (is_int8) {
                    ret.relayout_mod =
                            RelayoutMode::WEIGHT_NCHW_TO_NCHW44_DOT_GROUP;
                    ret.conv_format =
                            megdnn::param::ConvBias::Format::NCHW44_DOT;
                } else {
                    ret.relayout_mod =
                            RelayoutMode::WEIGHT_NCHW_TO_NCHW44_GROUP;
                    ret.conv_format = megdnn::param::ConvBias::Format::NCHW44;
                }
2665 2666 2667 2668
            }
        }
        return ret;
    };
2669
    auto replace_conv_opr = [test_trans_nchw44_dot](
2670 2671 2672 2673
                                    OperatorNodeBase* opr,
                                    const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_opr = opr->cast_final_safe<opr::ConvolutionForward>();
2674 2675 2676 2677 2678
        mgb_throw_if(conv_opr.param().format !=
                             megdnn::param::Convolution::Format::NCHW,
                     MegBrainError,
                     "ConvertFormat Pass only support converting NCHW to "
                     "NCHW44_DOT");
2679 2680 2681
        bool valid_nchw_nchw44 = nchw_nchwxx_valid(
                conv_opr, new_inp, pack_c_size,
                megdnn::param::ConvBias::NonlineMode::IDENTITY, true);
2682 2683
        auto is_trans = test_trans_nchw44_dot(
                conv_opr.param().sparse, new_inp[1], conv_opr.param().stride_h,
2684
                conv_opr.param().stride_w, valid_nchw_nchw44);
2685
        //! can not trans to nchwxx
2686
        if (is_trans.trans_type == TransType::TRANS_NONE) {
2687 2688 2689 2690 2691 2692 2693 2694 2695 2696 2697 2698 2699
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNodeArray temp_inp = new_inp;
            //! if src is nchwxx, should RelayoutPlaceholder to nchw
            if (temp_inp[0]->shape().ndim == 5) {
                auto new_src = RelayoutPlaceholder::make(
                        new_inp[0], RelayoutMode::NCHW4_TO_NCHW);
                temp_inp[0] = new_src.node();
            }
            auto new_opr = serialization::copy_opr_shallow(*opr, temp_inp,
                                                           opr->config());
            return new_opr;
2700
        } else if (is_trans.trans_type == TransType::TRANS_PURE_NCHWXX) {
2701 2702 2703 2704 2705
            //! filter trans to nchwxx mode
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNode *conv_src = new_inp[0], *conv_filter = new_inp[1];
2706 2707
            auto new_filter = RelayoutPlaceholder::make(new_inp[1],
                                                        is_trans.relayout_mod);
2708 2709 2710 2711 2712 2713 2714 2715 2716
            conv_filter = new_filter.node();
            //! src trans to nchwxx mode
            if (new_inp[0]->shape().ndim != 5) {
                mgb_assert(new_inp[0]->shape().ndim == 4);
                auto new_src = RelayoutPlaceholder::make(
                        new_inp[0], RelayoutMode::NCHW_TO_NCHW4);
                conv_src = new_src.node();
            }
            auto new_param = conv_opr.param();
2717
            new_param.format = is_trans.conv_format;
2718 2719 2720 2721 2722 2723 2724 2725 2726 2727 2728
            mgb_assert(conv_src->shape().ndim == 5 &&
                               conv_filter->shape().ndim >= 6,
                       "The conv src dim is not trans to nchwxx");
            auto new_conv_opr = opr::Convolution::make(
                    conv_src, conv_filter, new_param,
                    conv_opr.execution_policy(), conv_opr.config());
            OperatorNodeBase* new_opr = new_conv_opr.node()->owner_opr();
            mgb_assert(new_conv_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        } else {
2729
            mgb_assert(is_trans.trans_type == TransType::TRANS_HYBIRD_NCHWXX);
2730
            VarNode *conv_src = new_inp[0], *conv_filter = new_inp[1];
2731 2732
            auto new_filter = RelayoutPlaceholder::make(new_inp[1],
                                                        is_trans.relayout_mod);
2733 2734 2735 2736 2737
            conv_filter = new_filter.node();
            mgb_assert(conv_src->shape().ndim == 4 &&
                               conv_filter->shape().ndim == 5,
                       "The src and filter is OK");
            auto new_param = conv_opr.param();
2738
            new_param.format = is_trans.conv_format;
2739 2740 2741 2742 2743 2744 2745 2746 2747 2748
            auto new_conv_opr = opr::Convolution::make(
                    conv_src, conv_filter, new_param,
                    conv_opr.execution_policy(), conv_opr.config());
            OperatorNodeBase* new_opr = new_conv_opr.node()->owner_opr();
            mgb_assert(new_conv_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        }
    };

2749
    auto replace_conv_bias_opr = [test_trans_nchw44_dot](
2750 2751 2752
                                         OperatorNodeBase* opr,
                                         const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
2753 2754
        mgb_assert(opr->input().size() <= 3,
                   "nchwxx-dot does not support conv_bias fuse Z right now");
2755
        auto& conv_bias_opr = opr->cast_final_safe<opr::ConvBiasForward>();
2756 2757 2758 2759 2760
        mgb_throw_if(
                conv_bias_opr.param().format !=
                        megdnn::param::ConvBias::Format::NCHW,
                MegBrainError,
                "ConvertFormat Pass only support converting NCHW to NCHWXX");
2761 2762 2763
        bool valid_nchw_nchw44 =
                nchw_nchwxx_valid(conv_bias_opr, new_inp, pack_c_size,
                                  conv_bias_opr.param().nonlineMode, true);
2764 2765
        auto is_trans = test_trans_nchw44_dot(
                conv_bias_opr.param().sparse, new_inp[1],
2766 2767 2768 2769 2770 2771 2772
                conv_bias_opr.param().stride_h, conv_bias_opr.param().stride_w,
                valid_nchw_nchw44);
        auto megdnn_conv =
                opr::intl::get_megdnn_handle(conv_bias_opr.comp_node())
                        ->create_operator<megdnn::ConvBiasForward>();
        SmallVector<TensorLayout> layouts;

2773
        //! can not trans to nchwxx
2774
        if (is_trans.trans_type == TransType::TRANS_NONE) {
2775 2776 2777 2778 2779 2780 2781 2782 2783 2784
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
            VarNodeArray temp_inp = new_inp;
            //! if src is nchwxx, should RelayoutPlaceholder to nchw
            if (temp_inp[0]->shape().ndim == 5) {
                auto new_src = RelayoutPlaceholder::make(
                        new_inp[0], RelayoutMode::NCHW4_TO_NCHW);
                temp_inp[0] = new_src.node();
            }
2785

2786
            //! the bias is nchwxx
2787
            if (new_inp.size() > 2 && temp_inp[2]->shape().ndim == 5) {
2788 2789 2790 2791 2792 2793 2794
                auto new_bias = RelayoutPlaceholder::make(
                        new_inp[2], RelayoutMode::NCHW4_TO_NCHW);
                temp_inp[2] = new_bias.node();
            }
            auto new_opr = serialization::copy_opr_shallow(*opr, temp_inp,
                                                           opr->config());
            return new_opr;
2795
        } else if (is_trans.trans_type == TransType::TRANS_PURE_NCHWXX) {
2796
            VarNode *conv_bias_src = new_inp[0], *conv_bias_filter = new_inp[1],
2797
                    *conv_bias_bias = nullptr;
2798 2799 2800 2801
            //! filter trans to nchwxx mode
            mgb_assert(new_inp[1]->shape().ndim == 4 ||
                               new_inp[1]->shape().ndim == 5,
                       "The origin filter is not NCHW mode");
2802 2803
            auto new_filter = RelayoutPlaceholder::make(new_inp[1],
                                                        is_trans.relayout_mod);
2804 2805 2806 2807 2808 2809 2810 2811
            conv_bias_filter = new_filter.node();
            //! src trans to nchwxx mode
            if (new_inp[0]->shape().ndim != 5) {
                mgb_assert(new_inp[0]->shape().ndim == 4);
                auto new_src = RelayoutPlaceholder::make(
                        new_inp[0], RelayoutMode::NCHW_TO_NCHW4);
                conv_bias_src = new_src.node();
            }
2812 2813 2814 2815 2816 2817 2818 2819 2820 2821
            //! bias trans to nchwxx mode
            if (new_inp.size() > 2) {
                if (new_inp[2]->shape().ndim == 4) {
                    auto new_bias = RelayoutPlaceholder::make(
                            new_inp[2], RelayoutMode::NCHW_TO_NCHW4);
                    conv_bias_bias = new_bias.node();
                } else {
                    mgb_assert(new_inp[2]->shape().ndim == 5);
                    conv_bias_bias = new_inp[2];
                }
2822 2823
            }
            auto new_param = conv_bias_opr.param();
2824
            new_param.format = is_trans.conv_format;
2825 2826 2827
            mgb_assert(conv_bias_src->shape().ndim == 5 &&
                               conv_bias_filter->shape().ndim >= 6,
                       "The conv_bias src dim is not trans to nchwxx");
2828 2829 2830 2831 2832 2833 2834 2835 2836 2837 2838 2839
            SymbolVar new_conv_bias_opr;
            if (conv_bias_bias) {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, conv_bias_bias,
                        new_param, conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            } else {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, new_param,
                        conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            }
2840 2841 2842 2843 2844
            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
            mgb_assert(new_conv_bias_opr.shape().ndim == 5,
                       "The conv_bias dst dim is not trans to nchwxx");
            return new_opr;
        } else {
2845
            mgb_assert(is_trans.trans_type == TransType::TRANS_HYBIRD_NCHWXX);
2846
            VarNode *conv_bias_src = new_inp[0], *conv_bias_filter = new_inp[1],
2847
                    *conv_bias_bias = nullptr;
2848 2849
            auto new_filter = RelayoutPlaceholder::make(new_inp[1],
                                                        is_trans.relayout_mod);
2850 2851
            conv_bias_filter = new_filter.node();
            //! bias trans to nchwxx mode, bias may be scale
2852 2853 2854 2855 2856 2857 2858 2859 2860
            if (new_inp.size() > 2) {
                if (new_inp[2]->shape().ndim == 4) {
                    auto new_bias = RelayoutPlaceholder::make(
                            new_inp[2], RelayoutMode::NCHW_TO_NCHW4);
                    conv_bias_bias = new_bias.node();
                } else {
                    mgb_assert(new_inp[2]->shape().ndim == 5);
                    conv_bias_bias = new_inp[2];
                }
2861 2862 2863 2864
            }
            mgb_assert(conv_bias_src->shape().ndim == 4 &&
                       conv_bias_filter->shape().ndim == 5);
            auto new_param = conv_bias_opr.param();
2865
            new_param.format = is_trans.conv_format;
2866 2867 2868 2869 2870 2871 2872 2873 2874 2875 2876 2877
            SymbolVar new_conv_bias_opr;
            if (conv_bias_bias) {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, conv_bias_bias,
                        new_param, conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            } else {
                new_conv_bias_opr = opr::ConvBias::make(
                        conv_bias_src, conv_bias_filter, new_param,
                        conv_bias_opr.execution_policy(),
                        conv_bias_opr.config());
            }
2878 2879 2880 2881 2882 2883 2884 2885 2886 2887 2888
            OperatorNodeBase* new_opr = new_conv_bias_opr.node()->owner_opr();
            mgb_assert(new_conv_bias_opr.shape().ndim == 5,
                       "The conv dst dim is not trans to nchwxx");
            return new_opr;
        }
    };
    ret->fill_opr_convert_fun(4);
    auto&& replace_func = ret->m_opr_replace_func;
    //! supportted nchwxx
    replace_func[opr::Convolution::typeinfo()] = replace_conv_opr;
    replace_func[opr::ConvBias::typeinfo()] = replace_conv_bias_opr;
2889
    return ret;
2890
    MIDOUT_E
2891 2892 2893 2894 2895 2896 2897 2898 2899 2900 2901 2902 2903 2904 2905 2906 2907 2908 2909 2910 2911 2912 2913 2914 2915 2916 2917 2918 2919 2920 2921 2922 2923 2924 2925 2926 2927 2928 2929 2930 2931 2932 2933 2934 2935 2936 2937 2938 2939 2940 2941 2942 2943 2944 2945 2946 2947 2948 2949 2950 2951 2952 2953 2954 2955 2956 2957 2958 2959 2960 2961 2962 2963 2964 2965 2966 2967 2968 2969 2970 2971 2972 2973 2974 2975 2976 2977 2978 2979 2980 2981 2982 2983 2984 2985 2986 2987 2988 2989 2990 2991 2992 2993 2994 2995 2996 2997 2998 2999 3000 3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011 3012 3013 3014 3015 3016 3017 3018 3019 3020 3021 3022 3023
}

/* ==================== ShuffleShuffleRemovePass ================= */
class ShuffleShuffleRemovePass::Impl {
    using TensorFormat = opr::ConvBias::Param::Format;

    OptState& m_opt_state;
    ThinHashMap<std::pair<TensorFormat, TensorFormat>,
                thin_function<VarNode*(VarNode*)>>
            m_reformat;

    class AbstractShuffleOpr;

    void detect_shuffle_operations();
    void do_replace();

public:
    Impl(OptState& opt_state) : m_opt_state{opt_state} {
        m_reformat[std::make_pair(TensorFormat::NCHW, TensorFormat::NCHW4)] =
                [](VarNode* inp) -> VarNode* {
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp = opr::Concat::make(
                    {sub(0), sub(1) / 4, cv(4), sub(2), sub(3)}, 0);
            auto y0 = opr::Reshape::make(x, tshp);
            auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
            return y1.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW, TensorFormat::NCHW32)] =
                [](VarNode* inp) -> VarNode* {
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp = opr::Concat::make(
                    {sub(0), sub(1) / 32, cv(32), sub(2), sub(3)}, 0);
            auto y0 = opr::Reshape::make(x, tshp);
            auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2});
            return y1.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW4, TensorFormat::NCHW)] =
                [](VarNode* inp) -> VarNode* {
            mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 4);
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp =
                    opr::Concat::make({sub(0), sub(1) * 4, sub(2), sub(3)}, 0);
            auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
            auto y1 = opr::Reshape::make(y0, tshp);
            return y1.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW32, TensorFormat::NCHW)] =
                [](VarNode* inp) -> VarNode* {
            mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 32);
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp =
                    opr::Concat::make({sub(0), sub(1) * 32, sub(2), sub(3)}, 0);
            auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
            auto y1 = opr::Reshape::make(y0, tshp);
            return y1.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW4, TensorFormat::NCHW32)] =
                [](VarNode* inp) -> VarNode* {
            mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 4);
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp0 = opr::Concat::make(
                         {sub(0), sub(1) / 8, cv(8), sub(2), sub(3), sub(4)},
                         0),
                 tshp1 = opr::Concat::make(
                         {sub(0), sub(1) / 8, sub(2), sub(3), sub(4) * 8}, 0);
            auto y0 = opr::Reshape::make(x, tshp0);
            auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2, 5});
            auto y2 = opr::Reshape::make(y1, tshp1);
            return y2.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW32, TensorFormat::NCHW4)] =
                [](VarNode* inp) -> VarNode* {
            mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 32);
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp0 = opr::Concat::make(
                         {sub(0), sub(1), sub(2), sub(3), cv(8), sub(4) / 8},
                         0),
                 tshp1 = opr::Concat::make(
                         {sub(0), sub(1) * 8, sub(2), sub(3), sub(4) / 8}, 0);
            auto y0 = opr::Reshape::make(x, tshp0);
            auto y1 = opr::Dimshuffle::make(y0, {0, 1, 4, 2, 3, 5});
            auto y2 = opr::Reshape::make(y1, tshp1);
            return y2.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW4, TensorFormat::CHWN4)] =
                [](VarNode* inp) -> VarNode* {
            megdnn::param::RelayoutFormat param;
            param.mode = megdnn::param::RelayoutFormat::Mode::NCHW4_CHWN4;
            auto reformat = opr::RelayoutFormat::make(inp, param);
            return reformat.node();
        };
3024

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        m_reformat[std::make_pair(TensorFormat::CHWN4, TensorFormat::NCHW4)] =
                [](VarNode* inp) -> VarNode* {
            megdnn::param::RelayoutFormat param;
            param.mode = megdnn::param::RelayoutFormat::Mode::CHWN4_NCHW4;
            auto reformat = opr::RelayoutFormat::make(inp, param);
            return reformat.node();
        };

        m_reformat[std::make_pair(TensorFormat::NCHW, TensorFormat::CHWN4)] =
                [](VarNode* inp) -> VarNode* {
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp = opr::Concat::make(
                    {sub(0), sub(1) / 4, cv(4), sub(2), sub(3)}, 0);
            auto y0 = opr::Reshape::make(x, tshp);
            auto y1 = opr::Dimshuffle::make(y0, {1, 3, 4, 0, 2});
            return y1.node();
        };

        m_reformat[std::make_pair(TensorFormat::CHWN4, TensorFormat::NCHW)] =
                [](VarNode* inp) -> VarNode* {
            mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 4);
            auto x = SymbolVar(inp);
            auto xshp = opr::GetVarShape::make(x);

            auto cv = [&x](int v) { return x.make_scalar(v); };
            auto sub = [&xshp, &cv](int idx) {
                return opr::IndexAt::make(xshp, {{0, cv(idx)}});
            };
            auto tshp =
                    opr::Concat::make({sub(3), sub(0) * 4, sub(1), sub(2)}, 0);
            auto y0 = opr::Dimshuffle::make(x, {3, 0, 4, 1, 2});
            auto y1 = opr::Reshape::make(y0, tshp);
            return y1.node();
        };
        detect_shuffle_operations();
        do_replace();
    }
};

/*!
 * \brief abstract operator representation of shuffle operation
 */
MGB_DEFINE_OPR_CLASS(ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr,
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                     cg::SingleCNOperatorNodeBase)  // {
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public:
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    AbstractShuffleOpr(VarNode* inpvar, TensorFormat inp_format,
                       TensorFormat out_format);
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    static SymbolVar make(VarNode* inpvar, TensorFormat inp_format,
                          TensorFormat out_format);
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    TensorFormat inp_format() const {
        return m_inp_format;
    }
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    TensorFormat out_format() const {
        return m_out_format;
    }
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private:
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    void init_output_static_infer_desc() override;
    void scn_do_execute() override;
    const TensorFormat m_inp_format;
    const TensorFormat m_out_format;
};
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MGB_DYN_TYPE_OBJ_FINAL_IMPL(ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr);

void ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr::scn_do_execute() {
    mgb_throw(InternalError, "AbstractShuffleOpr cannot be executed");
}

void ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr::
        init_output_static_infer_desc() {
    using namespace cg::static_infer;
    auto&& mgr = owner_graph()->static_infer_manager();
    DepVal deps;
    for (auto i : input())
        deps.push_back({i, DepType::SHAPE});
    auto infer_shape = [this](TensorShape& dst, const InpVal& inp) {
        TensorShape inp_shape = inp.val[0].shape();
        if (m_inp_format == TensorFormat::NCHW4 &&
            m_out_format == TensorFormat::NCHW32) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst = inp_shape;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4] * 8;
        } else if (m_inp_format == TensorFormat::NCHW32 &&
                   m_out_format == TensorFormat::NCHW4) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 32);
            dst = inp_shape;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 8;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = inp_shape[4] / 8;
        } else if (m_inp_format == TensorFormat::NCHW &&
                   m_out_format == TensorFormat::NCHW4) {
            mgb_assert(inp_shape.ndim == 4);
            dst.ndim = 5;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] / 4;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
            dst[4] = 4;
        } else if (m_inp_format == TensorFormat::NCHW4 &&
                   m_out_format == TensorFormat::NCHW) {
            mgb_assert(inp_shape.ndim == 5 && inp_shape[4] == 4);
            dst.ndim = 4;
            dst[0] = inp_shape[0];
            dst[1] = inp_shape[1] * 4;
            dst[2] = inp_shape[2];
            dst[3] = inp_shape[3];
        } else if (m_inp_format == TensorFormat::NCHW4 &&
                   m_out_format == TensorFormat::CHWN4) {
            dst.ndim = 5;
            dst[0] = inp_shape[1];
            dst[1] = inp_shape[2];
            dst[2] = inp_shape[3];
            dst[3] = inp_shape[0];
            dst[4] = inp_shape[4];
        } else if (m_inp_format == TensorFormat::CHWN4 &&
                   m_out_format == TensorFormat::NCHW4) {
            dst.ndim = 5;
            dst[0] = inp_shape[3];
            dst[1] = inp_shape[0];
            dst[2] = inp_shape[1];
            dst[3] = inp_shape[2];
            dst[4] = inp_shape[4];
        } else {
            mgb_throw(InternalError,
                      "Unsupported input format and output format.");
        }
        return true;
    };
    mgr.register_shape_infer(output(0), {SourceType::DEP, deps, infer_shape});
}

ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr::AbstractShuffleOpr(
        VarNode* inpvar, TensorFormat inp_format, TensorFormat out_format)
        : Super(inpvar->owner_graph(), {}, "AbstractShuffleOpr", {inpvar}),
          m_inp_format{inp_format},
          m_out_format{out_format} {
    add_input({inpvar});
    add_equivalence_component<ScalarHash<TensorFormat>>(m_inp_format);
    add_equivalence_component<ScalarHash<TensorFormat>>(m_out_format);
    add_output(None)->dtype(inpvar->dtype());
}

SymbolVar ShuffleShuffleRemovePass::Impl::AbstractShuffleOpr::make(
        VarNode* inpvar, TensorFormat inp_format, TensorFormat out_format) {
    return inpvar->owner_graph()
            ->insert_opr(std::make_unique<AbstractShuffleOpr>(
                    inpvar, inp_format, out_format))
            ->output(0);
}

void ShuffleShuffleRemovePass::Impl::detect_shuffle_operations() {
    auto rewriter = m_opt_state.graph().make_rewriter();
    auto uniq_reader_check = UniqReaderCheck{m_opt_state.graph()};
    auto try_reshape_shuffle = [&rewriter,
                                &uniq_reader_check](OperatorNodeBase* opr) {
        // check shuffle
        auto shuffle = try_cast_as_op<opr::Dimshuffle>(opr);
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 5)
            return false;
        bool is_nchw2nchw4 = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                             param.pattern[2] == 3 && param.pattern[3] == 4 &&
                             param.pattern[4] == 2 &&
                             opr->output(0)->shape()[4] == 4;
        if (!is_nchw2nchw4)
            return false;
        if (!uniq_reader_check(shuffle->input(0)))
            return false;

        // check reshape
        auto reshape = try_cast_as_op<opr::Reshape>(opr->input(0)->owner_opr());
        if (reshape == nullptr)
            return false;
        auto inp_var = rewriter.get_var(reshape->input(0));
        auto abstract_shuffle = AbstractShuffleOpr::make(
                inp_var, TensorFormat::NCHW, TensorFormat::NCHW4);
        rewriter.replace_var(
                opr->output(0), abstract_shuffle.node(),
                mgb_cstr_log("replace reformat(nchw -> nchw4) to "
                             "AbstractShuffleOpr(nchw -> nchw4)."));
        return true;
    };

    auto try_reshape_shuffle_reshape = [&rewriter, &uniq_reader_check](
                                               OperatorNodeBase* opr) {
        // check reshape
        auto reshape1 = try_cast_as_op<opr::Reshape>(opr);
        if (reshape1 == nullptr)
            return false;
        if (!uniq_reader_check(reshape1->input(0)))
            return false;

        // check shuffle
        auto shuffle =
                try_cast_as_op<opr::Dimshuffle>(opr->input(0)->owner_opr());
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 6)
            return false;
        bool is_nchw42nchw32 = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                               param.pattern[2] == 3 && param.pattern[3] == 4 &&
                               param.pattern[4] == 2 && param.pattern[5] == 5 &&
                               shuffle->input(0)->shape()[5] == 4 &&
                               shuffle->input(0)->shape()[2] == 8;
        bool is_nchw322nchw4 = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                               param.pattern[2] == 4 && param.pattern[3] == 2 &&
                               param.pattern[4] == 3 && param.pattern[5] == 5 &&
                               shuffle->input(0)->shape()[4] == 8 &&
                               shuffle->input(0)->shape()[5] == 4;
        if (!is_nchw42nchw32 && !is_nchw322nchw4)
            return false;
        if (!uniq_reader_check(shuffle->input(0)))
            return false;

        // check reshape
        auto reshape2 =
                try_cast_as_op<opr::Reshape>(shuffle->input(0)->owner_opr());
        if (reshape2 == nullptr)
            return false;
        auto inp_var = rewriter.get_var(reshape2->input(0));
        TensorFormat inp_format = is_nchw42nchw32 ? TensorFormat::NCHW4
                                                  : TensorFormat::NCHW32,
                     out_format = is_nchw42nchw32 ? TensorFormat::NCHW32
                                                  : TensorFormat::NCHW4;
        auto abstract_shuffle =
                AbstractShuffleOpr::make(inp_var, inp_format, out_format);
        std::string reformat_type =
                is_nchw42nchw32 ? "nchw4 -> nchw32" : "nchw32 -> nchw4";
        rewriter.replace_var(opr->output(0), abstract_shuffle.node(),
                             mgb_cstr_log(ssprintf("replace reformat(%s) to "
                                                   "AbstractShuffleOpr(%s).",
                                                   reformat_type.c_str(),
                                                   reformat_type.c_str())
                                                  .c_str()));
        return true;
    };

    auto try_shuffle_reshape = [&rewriter,
                                &uniq_reader_check](OperatorNodeBase* opr) {
        // check reshape
        auto reshape = try_cast_as_op<opr::Reshape>(opr);
        if (reshape == nullptr)
            return false;
        if (!uniq_reader_check(reshape->input(0)))
            return false;

        // check shuffle
        auto shuffle =
                try_cast_as_op<opr::Dimshuffle>(opr->input(0)->owner_opr());
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 5)
            return false;
        bool is_nchw42nchw = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                             param.pattern[2] == 4 && param.pattern[3] == 2 &&
                             param.pattern[4] == 3 &&
                             shuffle->input(0)->shape()[4] == 4;
        if (!is_nchw42nchw)
            return false;
        auto inp_var = rewriter.get_var(shuffle->input(0));
        auto abstract_shuffle = AbstractShuffleOpr::make(
                inp_var, TensorFormat::NCHW4, TensorFormat::NCHW);
        rewriter.replace_var(
                opr->output(0), abstract_shuffle.node(),
                mgb_cstr_log("replace reformat(nchw4 -> nchw) to "
                             "AbstractShuffleOpr(nchw4 -> nchw)."));
        return true;
    };

    auto try_relayout_format = [&rewriter](OperatorNodeBase* opr) {
        // check relayout format
        auto reformat = try_cast_as_op<opr::RelayoutFormat>(opr);
        if (reformat == nullptr)
            return false;
        auto&& param = reformat->param();
        if (param.mode != opr::RelayoutFormat::Param::Mode::CHWN4_NCHW4 &&
            param.mode != opr::RelayoutFormat::Param::Mode::NCHW4_CHWN4)
            return false;
        auto inp_var = rewriter.get_var(reformat->input(0));
        cg::SymbolVar abstract_shuffle;
        if (param.mode == opr::RelayoutFormat::Param::Mode::NCHW4_CHWN4) {
            abstract_shuffle = AbstractShuffleOpr::make(
                    inp_var, TensorFormat::NCHW4, TensorFormat::CHWN4);
        } else {
            abstract_shuffle = AbstractShuffleOpr::make(
                    inp_var, TensorFormat::CHWN4, TensorFormat::NCHW4);
        }
        rewriter.replace_var(
                opr->output(0), abstract_shuffle.node(),
                mgb_cstr_log("replace reformat(nchw4 -> nchw) to "
                             "AbstractShuffleOpr(nchw4 -> nchw)."));
        return true;
    };

    auto on_opr = [&try_reshape_shuffle, &try_shuffle_reshape,
                   &try_reshape_shuffle_reshape, &try_relayout_format,
                   &rewriter, &uniq_reader_check](OperatorNodeBase* opr) {
        if (!try_reshape_shuffle_reshape(opr) && !try_reshape_shuffle(opr) &&
            !try_shuffle_reshape(opr) && !try_relayout_format(opr)) {
            auto new_opr = rewriter.auto_replace_outputs(opr);
            uniq_reader_check.update_on_opr_auto_replace(opr, new_opr);
        }
    };
    m_opt_state.graph().iter(on_opr);
    rewriter.apply_inplace();
}

void ShuffleShuffleRemovePass::Impl::do_replace() {
    auto rewriter = m_opt_state.graph().make_rewriter();
    auto uniq_reader_check = UniqReaderCheck{m_opt_state.graph()};
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    ThinHashSet<OperatorNodeBase*> writers;
    ThinHashSet<OperatorNodeBase*> root;
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    ThinHashSet<VarNode*> trt_opr_inps;
    SmallVector<OperatorNodeBase*> topo_order;

    auto cb = [&topo_order, &trt_opr_inps](OperatorNodeBase* opr) {
        topo_order.push_back(opr);
        MGB_MARK_USED_VAR(trt_opr_inps);
#if MGB_ENABLE_TENSOR_RT
        if (opr->same_type<opr::TensorRTOpr>()) {
            for (auto&& inp : opr->input())
                trt_opr_inps.insert(inp);
        }
#endif
    };
    m_opt_state.graph().iter(cb);

    for (auto&& opr : reverse_adaptor(topo_order)) {
        if (opr->same_type<opr::TypeCvt>() ||
            opr->same_type<AbstractShuffleOpr>()) {
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            writers.insert(opr->input(0)->owner_opr());
            if (writers.count(opr) > 0) {
                if (!uniq_reader_check(opr->output(0))) {
                    root.insert(opr);
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                }
            } else {
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                root.insert(opr);
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            }
        }
    }

    auto on_opr = [this, &rewriter, &uniq_reader_check, &trt_opr_inps,
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                   &root](OperatorNodeBase* opr) {
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        MGB_MARK_USED_VAR(trt_opr_inps);
        bool cond_opr = opr->same_type<opr::TypeCvt>() ||
                        opr->same_type<AbstractShuffleOpr>();
        if (cond_opr) {
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            bool cond_endpoint = root.count(opr) > 0;
            if (!cond_endpoint) {
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                return;
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            }
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            auto cur = opr;
            auto var = opr->output(0), inp_var = opr->input(0);
            bool force_folding_typecvt = false;
            bool first_shuffle = false;
            // initialize inp_format and out_format
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            TensorFormat out_format = TensorFormat::NCHW,
                         inp_format = out_format;
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            megdnn::DType inp_dtype = cur->input(0)->dtype(),
                          out_dtype = cur->output(0)->dtype();
            SmallVector<megdnn::DType> out_dtype_vec;
            while (cond_opr) {
                if (cur->same_type<AbstractShuffleOpr>()) {
                    auto shuffle = try_cast_as_op<AbstractShuffleOpr>(cur);
                    inp_format = shuffle->inp_format();
                    if (!first_shuffle) {
                        out_format = shuffle->out_format();
                        first_shuffle = true;
                    }
                } else {
                    mgb_assert(cur->same_type<opr::TypeCvt>());
                    out_dtype_vec.push_back(cur->output(0)->dtype());
                }
                inp_var = cur->input(0);
                bool cond_reader = uniq_reader_check(inp_var);
                if (!cond_reader)
                    break;
                cur = cur->input(0)->owner_opr();
                cond_opr = cur->same_type<opr::TypeCvt>() ||
                           cur->same_type<AbstractShuffleOpr>();
            }
            std::reverse(out_dtype_vec.begin(), out_dtype_vec.end());
#if MGB_ENABLE_TENSOR_RT
            force_folding_typecvt =
                    inp_var->owner_opr()->same_type<opr::TensorRTOpr>() ||
                    trt_opr_inps.count(var);
#endif
            auto new_var = rewriter.get_var(inp_var);
            if (inp_format != out_format) {
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                mgb_assert(m_reformat.find(std::make_pair(
                                   inp_format, out_format)) != m_reformat.end(),
                           "Unsupported shuffle shuffle remove pass");
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                new_var = m_reformat[std::make_pair(inp_format, out_format)](
                        new_var);
            }
            if (force_folding_typecvt) {
                inp_dtype = inp_var->dtype();
                if (inp_dtype != out_dtype) {
                    auto type_cvt = opr::TypeCvt::make(new_var, out_dtype);
                    new_var = type_cvt.node();
                }
            } else {
                if (out_dtype_vec.back() != var->dtype())
                    out_dtype_vec.push_back(var->dtype());
                for (auto&& dtype : out_dtype_vec) {
                    auto type_cvt = opr::TypeCvt::make(new_var, dtype);
                    new_var = type_cvt.node();
                }
            }
            rewriter.replace_var(
                    var, new_var,
                    mgb_cstr_log("replace Dimshuffle and TypeCvt chain"));
        } else {
            auto new_opr = rewriter.auto_replace_outputs(opr);
            uniq_reader_check.update_on_opr_auto_replace(opr, new_opr);
        }
    };
    m_opt_state.graph().iter(on_opr);
    rewriter.apply_inplace();
}

const char* ShuffleShuffleRemovePass::name() const {
    return mgb_cstr_log("shuffle shuffle remove pass");
}

void ShuffleShuffleRemovePass::apply(OptState& opt) const {
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    MIDOUT_B("ShuffleShuffleRemovePass::apply")
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    opt.set_var_replace_check_flag(VarReplaceCheckFlag::CHECK_SHAPE |
                                   VarReplaceCheckFlag::CHECK_DTYPE);
    Impl{opt};
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    MIDOUT_E
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}

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/* ==================== FoldingConvBiasDimshufflePass ================= */
const char* FoldingConvBiasDimshufflePass::name() const {
    return mgb_cstr_log("folding conv bias dimshuffle pass");
}

void FoldingConvBiasDimshufflePass::apply(OptState& opt) const {
    MIDOUT_B("FoldingConvBiasDimshufflePass::apply");
    using DepType = cg::OperatorNodeProp::DepType;
    ThinHashMap<OperatorNodeBase*,
                SmallVector<std::pair<OperatorNodeBase*, DepType>>>
            readers;
    static const ThinHashSet<Typeinfo*> opr_type_list = {
            opr::TypeCvt::typeinfo(), opr::Dimshuffle::typeinfo(),
            opr::Reshape::typeinfo(), opr::ConvBias::typeinfo()};
    opt.graph().iter([&readers](OperatorNodeBase* opr) {
        for (auto&& i : opr->node_prop().dep_map()) {
            if (opr_type_list.count(i.first->owner_opr()->dyn_typeinfo())) {
                readers[i.first->owner_opr()].emplace_back(opr, i.second);
            }
        }
    });

    auto rewriter = opt.graph().make_rewriter();
    auto nchw42nchw = [](VarNode* inp) -> VarNode* {
        mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 4);
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);

        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp = opr::Concat::make({sub(0), sub(1) * 4, sub(2), sub(3)}, 0);
        auto y0 = opr::Dimshuffle::make(x, {0, 1, 4, 2, 3});
        auto y1 = opr::Reshape::make(y0, tshp);
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        auto y2 = opr::TypeCvt::make(y1, dtype::Float32());
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        return y2.node();
    };

    auto nchw42nchw32 = [](VarNode* inp) -> VarNode* {
        mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 4);
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1) / 8, cv(8), sub(2), sub(3), sub(4)}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) / 8, sub(2), sub(3), sub(4) * 8}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 3, 4, 2, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };

    auto nchw322nchw4 = [](VarNode* inp) -> VarNode* {
        mgb_assert(inp->shape().ndim == 5 && inp->shape()[4] == 32);
        auto x = SymbolVar(inp);
        auto xshp = opr::GetVarShape::make(x);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        auto sub = [&xshp, &cv](int idx) {
            return opr::IndexAt::make(xshp, {{0, cv(idx)}});
        };
        auto tshp0 = opr::Concat::make(
                     {sub(0), sub(1), sub(2), sub(3), cv(8), sub(4) / 8}, 0),
             tshp1 = opr::Concat::make(
                     {sub(0), sub(1) * 8, sub(2), sub(3), sub(4) / 8}, 0);
        auto y0 = opr::Reshape::make(x, tshp0);
        auto y1 = opr::Dimshuffle::make(y0, {0, 1, 4, 2, 3, 5});
        auto y2 = opr::Reshape::make(y1, tshp1);
        return y2.node();
    };

    auto try_conv_dimshuffle_reshape_typecvt = [&rewriter, &readers,
                                                &nchw42nchw](
                                                       OperatorNodeBase* opr) {
        ThinHashSet<OperatorNodeBase*> opr_set;
        ThinHashSet<OperatorNodeBase*> reader_set;
        // check typecvt
        auto typecvt = try_cast_as_op<opr::TypeCvt>(opr);
        if (typecvt == nullptr)
            return false;
        auto inp_dtype = typecvt->input(0)->dtype(),
             out_dtype = typecvt->output(0)->dtype();
        bool is_s82f32 = inp_dtype.enumv() == DTypeEnum::QuantizedS8 &&
                         out_dtype.enumv() == DTypeEnum::Float32;
        if (!is_s82f32)
            return false;
        opr_set.insert(opr);

        // check reshape
        auto reshape =
                try_cast_as_op<opr::Reshape>(typecvt->input(0)->owner_opr());
        if (reshape == nullptr)
            return false;
        opr_set.insert(reshape);
        for (auto&& i : readers[reshape]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }

        // check shuffle
        auto shuffle =
                try_cast_as_op<opr::Dimshuffle>(reshape->input(0)->owner_opr());
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 5)
            return false;
        bool is_nchw42nchw = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                             param.pattern[2] == 4 && param.pattern[3] == 2 &&
                             param.pattern[4] == 3 &&
                             shuffle->input(0)->shape()[4] == 4;
        if (!is_nchw42nchw)
            return false;
        opr_set.insert(shuffle);
        for (auto&& i : readers[shuffle]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }

        // check conv bias
        auto conv_bias =
                try_cast_as_op<opr::ConvBias>(shuffle->input(0)->owner_opr());
        if (conv_bias == nullptr)
            return false;
        inp_dtype = conv_bias->input(0)->dtype();
        bool is_s8nchw4 = inp_dtype.enumv() == DTypeEnum::QuantizedS8 &&
                          conv_bias->param().format ==
                                  megdnn::param::ConvBias::Format::NCHW4;
        if (!is_s8nchw4)
            return false;
        if (conv_bias->input().size() != 3)
            return false;
        opr_set.insert(conv_bias);
        for (auto&& i : readers[conv_bias]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        for (auto reader : reader_set) {
            if (opr_set.count(reader) <= 0) {
                return false;
            }
        }
        auto src = rewriter.get_var(conv_bias->input(0)),
             filter = rewriter.get_var(conv_bias->input(1)),
             bias = rewriter.get_var(conv_bias->input(2));
        auto new_bias = nchw42nchw(bias);
        auto new_param = conv_bias->param();
        new_param.format = megdnn::param::ConvBias::Format::NCHW4_NCHW;
        auto conv_bias_shuffle = opr::ConvBias::make(
                src, filter, new_bias, new_param, conv_bias->execution_policy(),
                OperatorNodeConfig{dtype::Float32()});
        rewriter.replace_var(opr->output(0), conv_bias_shuffle.node(),
                             mgb_cstr_log("replace conv_bias + typecvt + "
                                          "dimshuffle + "
                                          "reshape to conv_bias(NCHW4_NCHW)"));
        return true;
    };

    auto try_conv_reformat_nchw42nchw32 = [&rewriter, &nchw42nchw32,
                                           &readers](OperatorNodeBase* opr) {
        ThinHashSet<OperatorNodeBase*> opr_set;
        ThinHashSet<OperatorNodeBase*> reader_set;
        // check reshape
        auto reshape1 = try_cast_as_op<opr::Reshape>(opr);
        if (reshape1 == nullptr)
            return false;
        opr_set.insert(opr);
        // check dimshuffle
        auto shuffle = try_cast_as_op<opr::Dimshuffle>(
                reshape1->input(0)->owner_opr());
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 6)
            return false;
        bool is_nchw42nchw32 = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                               param.pattern[2] == 3 && param.pattern[3] == 4 &&
                               param.pattern[4] == 2 && param.pattern[5] == 5 &&
                               shuffle->output(0)->shape()[5] == 4 &&
                               shuffle->output(0)->shape()[4] == 8;
        if (!is_nchw42nchw32)
            return false;
        opr_set.insert(shuffle);
        for (auto&& i : readers[shuffle]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        // check reshape
        auto reshape2 =
                try_cast_as_op<opr::Reshape>(shuffle->input(0)->owner_opr());
        if (reshape2 == nullptr)
            return false;
        opr_set.insert(reshape2);
        for (auto&& i : readers[reshape2]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        // check conv bias
        auto conv_bias =
                try_cast_as_op<opr::ConvBias>(reshape2->input(0)->owner_opr());
        if (conv_bias == nullptr)
            return false;
        auto inp_dtype = conv_bias->input(0)->dtype();
        bool is_s8nchw4 = inp_dtype.enumv() == DTypeEnum::QuantizedS8 &&
                          conv_bias->param().format ==
                                  megdnn::param::ConvBias::Format::NCHW4;
        if (!is_s8nchw4)
            return false;
        if (conv_bias->input().size() != 3)
            return false;
        opr_set.insert(conv_bias);
        for (auto&& i : readers[conv_bias]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        for (auto reader : reader_set) {
            if (opr_set.count(reader) <= 0) {
                return false;
            }
        }
        auto src = rewriter.get_var(conv_bias->input(0)),
             filter = rewriter.get_var(conv_bias->input(1)),
             bias = rewriter.get_var(conv_bias->input(2));
        auto new_bias = nchw42nchw32(bias);
        auto new_param = conv_bias->param();
        new_param.format = megdnn::param::ConvBias::Format::NCHW4_NCHW32;
        auto conv_bias_shuffle = opr::ConvBias::make(
                src, filter, new_bias, new_param, conv_bias->execution_policy(),
                conv_bias->config());
        rewriter.replace_var(
                opr->output(0), conv_bias_shuffle.node(),
                mgb_cstr_log("replace conv_bias + "
                             "reformat to conv_bias(NCHW4_NCHW32)"));
        return true;
    };

    auto try_conv_reformat_nchw322nchw4 = [&rewriter, &readers, &nchw322nchw4](
                                                  OperatorNodeBase* opr) {
        ThinHashSet<OperatorNodeBase*> opr_set;
        ThinHashSet<OperatorNodeBase*> reader_set;
        // check reshape
        auto reshape1 = try_cast_as_op<opr::Reshape>(opr);
        if (reshape1 == nullptr)
            return false;
        opr_set.insert(opr);
        // check dimshuffle
        auto shuffle = try_cast_as_op<opr::Dimshuffle>(
                reshape1->input(0)->owner_opr());
        if (shuffle == nullptr)
            return false;
        auto&& param = shuffle->param();
        if (param.pattern_len != 6)
            return false;
        bool is_nchw322nchw4 = param.pattern[0] == 0 && param.pattern[1] == 1 &&
                               param.pattern[2] == 4 && param.pattern[3] == 2 &&
                               param.pattern[4] == 3 && param.pattern[5] == 5 &&
                               shuffle->input(0)->shape()[5] == 4 &&
                               shuffle->input(0)->shape()[4] == 8;
        if (!is_nchw322nchw4)
            return false;
        opr_set.insert(shuffle);
        for (auto&& i : readers[shuffle]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        // check reshape
        auto reshape2 =
                try_cast_as_op<opr::Reshape>(shuffle->input(0)->owner_opr());
        if (reshape2 == nullptr)
            return false;
        opr_set.insert(reshape2);
        for (auto&& i : readers[reshape2]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        // check conv bias
        auto conv_bias =
                try_cast_as_op<opr::ConvBias>(reshape2->input(0)->owner_opr());
        if (conv_bias == nullptr)
            return false;
        auto inp_dtype = conv_bias->input(0)->dtype();
        bool is_s8nchw32 = inp_dtype.enumv() == DTypeEnum::QuantizedS8 &&
                          conv_bias->param().format ==
                                  megdnn::param::ConvBias::Format::NCHW32;
        if (!is_s8nchw32)
            return false;
        if (conv_bias->input().size() != 3)
            return false;
        opr_set.insert(conv_bias);
        for (auto&& i : readers[conv_bias]) {
            if (i.second & DepType::DEV_VALUE) {
                reader_set.insert(i.first);
            }
        }
        for (auto reader : reader_set) {
            if (opr_set.count(reader) <= 0) {
                return false;
            }
        }
        auto src = rewriter.get_var(conv_bias->input(0)),
             filter = rewriter.get_var(conv_bias->input(1)),
             bias = rewriter.get_var(conv_bias->input(2));
        auto new_bias = nchw322nchw4(bias);
        auto new_param = conv_bias->param();
        new_param.format = megdnn::param::ConvBias::Format::NCHW32_NCHW4;
        auto conv_bias_shuffle = opr::ConvBias::make(
                src, filter, new_bias, new_param, conv_bias->execution_policy(),
                conv_bias->config());
        rewriter.replace_var(
                opr->output(0), conv_bias_shuffle.node(),
                mgb_cstr_log("replace conv_bias + "
                             "reformat to conv_bias(NCHW32_NCHW4)"));
        return true;
    };
    MGB_MARK_USED_VAR(try_conv_reformat_nchw322nchw4);

    auto on_opr = [&try_conv_dimshuffle_reshape_typecvt,
                   &try_conv_reformat_nchw42nchw32,
#if CUDA_VERSION >= 10020
                   &try_conv_reformat_nchw322nchw4,
#endif
                   &rewriter](OperatorNodeBase* opr) {
        if (!try_conv_dimshuffle_reshape_typecvt(opr) &&
            !try_conv_reformat_nchw42nchw32(opr)
#if CUDA_VERSION >= 10020
            && !try_conv_reformat_nchw322nchw4(opr)
#endif
        ) {
            rewriter.auto_replace_outputs(opr);
        }
    };
    opt.graph().iter(on_opr);
    rewriter.apply_inplace();

    MIDOUT_E
}

3827
/* ==================== PaddingChannelPass ================= */
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const char* PaddingChannelPass::name() const {
    return mgb_cstr_log("padding output channel to multiple of 4/32");
}

void PaddingChannelPass::apply(OptState& opt) const {
3833
    MIDOUT_B("PaddingChannelPass::apply");
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    // do not check shape
    opt.set_var_replace_check_flag(VarReplaceCheckFlag::CHECK_ALL ^
                                   VarReplaceCheckFlag::CHECK_SHAPE);

    ThinHashSet<OperatorNodeBase*> padding_oprs;
    ThinHashMap<Typeinfo*, thin_function<OperatorNodeBase*(
                                   OperatorNodeBase*, const VarNodeArray&)>>
            opr_replace_funcs;

    auto rewriter = opt.graph().make_rewriter();
    auto pad_in_channels = [](VarNode* inp, size_t pad_channels) -> VarNode* {
        mgb_assert(inp->shape().ndim == 4);
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        mgb_assert(inp->dtype().enumv() == DTypeEnum::QuantizedS4 ||
                   inp->dtype().enumv() == DTypeEnum::Quantized4Asymm ||
                   inp->dtype().enumv() == DTypeEnum::QuantizedS8 ||
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                   inp->dtype().enumv() == DTypeEnum::QuantizedS32);
        TensorShape shape{inp->shape()[0], pad_channels, inp->shape()[2],
                          inp->shape()[3]};
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        std::shared_ptr<HostTensorND> host_val =
                std::make_shared<HostTensorND>(inp->comp_node(), inp->dtype());
        host_val->resize(shape);
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        auto ptr = host_val->raw_ptr();
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        size_t size_bytes =
                TensorLayout{shape, inp->dtype()}.span().dist_byte();
        std::memset(ptr, 0, size_bytes);
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        auto padding =
                opr::ImmutableTensor::make(*inp->owner_graph(), *host_val);
        auto out = opr::Concat::make({inp, padding}, 1);
        return out.node();
    };

    auto pad_out_channels = [](VarNode* inp, size_t pad_channels) -> VarNode* {
        mgb_assert(inp->shape().ndim == 4);
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        mgb_assert(inp->dtype().enumv() == DTypeEnum::QuantizedS4 ||
                   inp->dtype().enumv() == DTypeEnum::Quantized4Asymm ||
                   inp->dtype().enumv() == DTypeEnum::QuantizedS8 ||
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                   inp->dtype().enumv() == DTypeEnum::QuantizedS32);
        TensorShape shape{pad_channels, inp->shape()[1], inp->shape()[2],
                          inp->shape()[3]};
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        std::shared_ptr<HostTensorND> host_val =
                std::make_shared<HostTensorND>(inp->comp_node(), inp->dtype());
        host_val->resize(shape);
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        auto ptr = host_val->raw_ptr();
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        size_t size_bytes =
                TensorLayout{shape, inp->dtype()}.span().dist_byte();
        std::memset(ptr, 0, size_bytes);
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        auto padding =
                opr::ImmutableTensor::make(*inp->owner_graph(), *host_val);
        auto out = opr::Concat::make({inp, padding}, 0);
        return out.node();
    };

    auto extract_subtensor = [](VarNode* inp,
3887
                                const TensorShape& orig_shape) -> VarNode* {
3888
        mgb_assert(inp->shape().ndim == 4);
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        mgb_assert(inp->shape()[0] == orig_shape[0]);
        mgb_assert(inp->shape()[2] == orig_shape[2]);
        mgb_assert(inp->shape()[3] == orig_shape[3]);
        size_t orig_channels = orig_shape[1];
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        auto x = SymbolVar(inp);
        auto cv = [&x](int v) { return x.make_scalar(v); };
        using AIdx = opr::Subtensor::AxisIndexer;
        auto sub = opr::Subtensor::make(
                x, {AIdx::make_interval(0, None, None, cv(1)),
                    AIdx::make_interval(1, None, cv(orig_channels), None),
                    AIdx::make_interval(2, None, None, cv(1)),
                    AIdx::make_interval(3, None, None, cv(1))});
        return sub.node();
    };

    // padding policy for conv bias with data type qint8
    auto padding_policy_qint8 = [&padding_oprs, &pad_in_channels,
                                 &pad_out_channels](
                                        OperatorNodeBase* opr,
                                        const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        mgb_assert(new_inp.size() == 3);
        mgb_assert(opr->input(1)->shape().eq_shape(new_inp[1]->shape()));
        auto inps = new_inp;
        size_t out_channels = opr->input(1)->shape()[0];
        size_t in_channels = opr->input(1)->shape()[1];
        size_t new_in_channels = new_inp[0]->shape()[1];
        // pad input channels
        if (padding_oprs.count(opr->input(0)->owner_opr())) {
            size_t pad_channels = new_in_channels - in_channels;
            inps[1] = pad_in_channels(new_inp[1], pad_channels);
        } else {
            size_t pad_channels = 0;
            mgb_assert(new_in_channels == in_channels);
            if (in_channels <= 16) {
                if (in_channels % 4)
                    pad_channels = 4 - (in_channels % 4);  // pad to use dp4a
            } else {
                if (in_channels % 32)
                    pad_channels =
                            32 - (in_channels % 32);  // pad to use tensorcore
            }
            if (pad_channels > 0) {
                inps[0] = pad_in_channels(new_inp[0], pad_channels);
                inps[1] = pad_in_channels(new_inp[1], pad_channels);
            }
        }
        out_channels = inps[1]->shape()[0];
        in_channels = inps[1]->shape()[1];
        size_t pad_channels = 0;
3939
        if (out_channels <= 16) {
3940 3941 3942
            if (out_channels % 4)
                pad_channels = 4 - (out_channels % 4);
        } else {
3943 3944
            if (out_channels % 32)
                pad_channels = 32 - (out_channels % 32);
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        }
        if (pad_channels > 0) {
            inps[1] = pad_out_channels(inps[1], pad_channels);
            inps[2] = pad_in_channels(inps[2], pad_channels);
            padding_oprs.insert(opr);
        }
        return serialization::copy_opr_shallow(*opr, inps, opr->config());
    };

    // padding policy for conv bias with data type qint4 and quint4
    auto padding_policy_int4 = [&padding_oprs, &pad_in_channels,
                                &pad_out_channels](
                                       OperatorNodeBase* opr,
                                       const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        mgb_assert(new_inp.size() == 3);
        mgb_assert(opr->input(1)->shape().eq_shape(new_inp[1]->shape()));
        auto inps = new_inp;
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        size_t out_channels = opr->input(1)->shape()[0];
        size_t in_channels = opr->input(1)->shape()[1];
        size_t new_in_channels = new_inp[0]->shape()[1];
        // pad input channels
        if (padding_oprs.count(opr->input(0)->owner_opr())) {
            if (new_in_channels % 64 == 0) {
                size_t pad_channels = new_in_channels - in_channels;
                inps[1] = pad_in_channels(new_inp[1], pad_channels);
            } else {
                size_t pad_channels_0 = 64 - (new_in_channels % 64);
                size_t pad_channels_1 = 64 - (in_channels % 64);
                inps[0] = pad_in_channels(new_inp[0], pad_channels_0);
                inps[1] = pad_in_channels(new_inp[1], pad_channels_1);
            }
        } else {
            size_t pad_channels = 0;
            mgb_assert(new_in_channels == in_channels);
            if (in_channels % 64)
                pad_channels = 64 - (in_channels % 64);
            if (pad_channels > 0) {
                inps[0] = pad_in_channels(new_inp[0], pad_channels);
                inps[1] = pad_in_channels(new_inp[1], pad_channels);
            }
        }
        out_channels = inps[1]->shape()[0];
        in_channels = inps[1]->shape()[1];
        size_t pad_channels = 0;
        if (out_channels % 64)
            pad_channels = 64 - (out_channels % 64);
        if (pad_channels > 0) {
            inps[1] = pad_out_channels(inps[1], pad_channels);
            inps[2] = pad_in_channels(inps[2], pad_channels);
            padding_oprs.insert(opr);
        }
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        return serialization::copy_opr_shallow(*opr, inps, opr->config());
    };

    opr_replace_funcs[opr::ConvBiasForward::typeinfo()] =
            [&padding_oprs, &padding_policy_qint8, &padding_policy_int4](
                    OperatorNodeBase* opr, const VarNodeArray& new_inp) {
                if (opr->input(0)->dtype().enumv() == DTypeEnum::QuantizedS8) {
                    return padding_policy_qint8(opr, new_inp);
                } else if (opr->input(0)->dtype().enumv() ==
                                   DTypeEnum::QuantizedS4 ||
                           opr->input(0)->dtype().enumv() ==
                                   DTypeEnum::Quantized4Asymm) {
                    return padding_policy_int4(opr, new_inp);
                } else {
                    mgb_assert(
                            padding_oprs.count(opr->input(0)->owner_opr()) == 0,
                            "conv bias operator for data type(%s) cannot be "
                            "padded channel. "
                            "consumer(%s), producer(%s)",
                            opr->input(0)->dtype().name(), opr->cname(),
                            opr->input(0)->owner_opr()->cname());
                    return serialization::copy_opr_shallow(*opr, new_inp,
                                                           opr->config());
                }
            };
    opr_replace_funcs[opr::ConvolutionBackwardData::typeinfo()] =
            [&padding_oprs, &pad_in_channels, &pad_out_channels](
                    OperatorNodeBase* opr, const VarNodeArray& new_inp) {
                if (opr->input(1)->dtype().enumv() != DTypeEnum::QuantizedS8) {
                    mgb_assert(
                            padding_oprs.count(opr->input(0)->owner_opr()) == 0,
                            "conv bwd data operator for data type(%s) cannot "
                            "be "
                            "padded channel. "
                            "consumer(%s), producer(%s)",
                            opr->input(0)->dtype().name(), opr->cname(),
                            opr->input(0)->owner_opr()->cname());
                    return serialization::copy_opr_shallow(*opr, new_inp,
                                                           opr->config());
                }
                mgb_assert(opr->input().size() == new_inp.size());
                mgb_assert(new_inp.size() == 2,
                           "deconv (conv bwd data) operator for inference can "
                           "only have 2 input vars(got:%zu)",
                           new_inp.size());
                mgb_assert(
                        opr->input(0)->shape().eq_shape(new_inp[0]->shape()));
                auto inps = new_inp;
                size_t out_channels = opr->input(0)->shape()[0];
                size_t in_channels = opr->input(0)->shape()[1];
                size_t new_out_channels = new_inp[1]->shape()[1];
                // pad output channels
                if (padding_oprs.count(opr->input(1)->owner_opr())) {
                    size_t pad_channels = new_out_channels - out_channels;
                    inps[0] = pad_out_channels(new_inp[0], pad_channels);
                } else {
                    size_t pad_channels = 0;
                    if (out_channels % 4)
                        pad_channels = 4 - (out_channels % 4);
                    if (pad_channels > 0) {
                        inps[0] = pad_out_channels(new_inp[0], pad_channels);
                        inps[1] = pad_in_channels(new_inp[1], pad_channels);
                    }
                }
                out_channels = inps[0]->shape()[0];
                in_channels = inps[0]->shape()[1];
                // pad input channels
                size_t pad_channels = 0;
                if (in_channels % 4)
                    pad_channels = 4 - (in_channels % 4);
                if (pad_channels > 0) {
                    inps[0] = pad_in_channels(inps[0], pad_channels);
                    padding_oprs.insert(opr);
                }
                return serialization::copy_opr_shallow(*opr, inps,
                                                       opr->config());
            };
    auto replace_format_aware_opr = [&padding_oprs](
                                            OperatorNodeBase* opr,
                                            const VarNodeArray& new_inp) {
        if (opr->input(0)->dtype().enumv() != DTypeEnum::QuantizedS8 &&
            opr->input(0)->dtype().enumv() != DTypeEnum::QuantizedS4 &&
            opr->input(0)->dtype().enumv() != DTypeEnum::Quantized4Asymm) {
            mgb_assert(padding_oprs.count(opr->input(0)->owner_opr()) == 0,
                       "operator(type:%s,name:%s) for data type(%s) cannot be "
                       "padded channel. extra info:"
                       "consumer(%s), producer(%s)",
                       opr->dyn_typeinfo()->name, opr->cname(),
                       opr->input(0)->dtype().name(), opr->cname(),
                       opr->input(0)->owner_opr()->cname());
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
        mgb_assert(opr->input().size() == new_inp.size());
        if (padding_oprs.count(opr->input(0)->owner_opr())) {
            padding_oprs.insert(opr);
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    opr_replace_funcs[opr::PoolingForward::typeinfo()] =
            replace_format_aware_opr;
    opr_replace_funcs[opr::WarpPerspectiveForward::typeinfo()] =
            replace_format_aware_opr;

    auto replace_elemwise_like_opr = [&padding_oprs, &extract_subtensor](
                                             OperatorNodeBase* opr,
                                             const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        bool have_padding_inp = false;
        bool padding_all_inps = true;
        bool same_padding = true;
        size_t channels_after_padding = 0;
4109
        size_t i = 0;
4110 4111 4112 4113 4114 4115
        for (auto&& cur_inp : opr->input()) {
            bool padding_cur_inp = padding_oprs.count(cur_inp->owner_opr()) > 0;
            if (padding_cur_inp) {
                if (!have_padding_inp)
                    have_padding_inp = true;
                if (channels_after_padding == 0) {
4116
                    channels_after_padding = new_inp[i]->shape()[1];
4117 4118
                } else {
                    same_padding =
4119
                            channels_after_padding == new_inp[i]->shape()[1];
4120 4121 4122 4123
                }
            }
            if (padding_all_inps && (!padding_cur_inp || !same_padding))
                padding_all_inps = false;
4124
            ++i;
4125 4126 4127 4128 4129 4130 4131 4132
        }
        if (have_padding_inp && !padding_all_inps) {
            auto inps = new_inp;
            for (size_t i = 0; i < new_inp.size(); ++i) {
                auto cur_inp = opr->input(i);
                bool padding_cur_inp =
                        padding_oprs.count(cur_inp->owner_opr()) > 0;
                if (padding_cur_inp) {
4133
                    inps[i] = extract_subtensor(inps[i], cur_inp->shape());
4134 4135 4136 4137 4138 4139 4140 4141 4142 4143 4144 4145 4146 4147 4148 4149 4150 4151 4152 4153 4154 4155 4156
                }
            }
            return serialization::copy_opr_shallow(*opr, inps, opr->config());
        }
        if (padding_all_inps) {
            padding_oprs.insert(opr);
        }
        return serialization::copy_opr_shallow(*opr, new_inp, opr->config());
    };
    opr_replace_funcs[opr::ElemwiseMultiType::typeinfo()] =
            replace_elemwise_like_opr;
    opr_replace_funcs[opr::Elemwise::typeinfo()] = replace_elemwise_like_opr;
    opr_replace_funcs[opr::TypeCvt::typeinfo()] = replace_elemwise_like_opr;

    auto replace_nonpadding_oprs = [&padding_oprs, &extract_subtensor](
                                           OperatorNodeBase* opr,
                                           const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        auto inps = new_inp;
        for (size_t i = 0; i < new_inp.size(); ++i) {
            auto cur_inp = opr->input(i);
            bool padding_cur_inp = padding_oprs.count(cur_inp->owner_opr()) > 0;
            if (padding_cur_inp) {
4157
                inps[i] = extract_subtensor(inps[i], cur_inp->shape());
4158 4159 4160 4161 4162 4163 4164
            }
        }
        return serialization::copy_opr_shallow(*opr, inps, opr->config());
    };
    opr_replace_funcs[opr::Reshape::typeinfo()] = replace_nonpadding_oprs;
    opr_replace_funcs[opr::GetVarShape::typeinfo()] = replace_nonpadding_oprs;
    opr_replace_funcs[opr::Concat::typeinfo()] = replace_nonpadding_oprs;
4165 4166
    opr_replace_funcs[opr::Reduce::typeinfo()] = replace_nonpadding_oprs;
    opr_replace_funcs[opr::Subtensor::typeinfo()] = replace_nonpadding_oprs;
4167 4168 4169 4170 4171 4172 4173 4174 4175 4176 4177 4178 4179 4180 4181 4182 4183 4184 4185 4186 4187 4188 4189 4190 4191 4192 4193

    auto on_opr = [&opt, &rewriter, &opr_replace_funcs,
                   &extract_subtensor](OperatorNodeBase* opr) {
        auto it = opr_replace_funcs.find(opr->dyn_typeinfo());
        if (it != opr_replace_funcs.end()) {
            VarNodeArray new_inp;
            new_inp.reserve(opr->input().size());
            for (auto&& inp : opr->input()) {
                new_inp.push_back(rewriter.get_var(inp));
            }
            auto new_opr = (it->second)(opr, new_inp);
            auto &&out0 = opr->output(), &&out1 = new_opr->output();
            mgb_assert(out0.size() == out1.size(),
                       "bad opr replace: src=%s{%s} dst=%s{%s}, "
                       "src.size=%zu "
                       "dst.size=%zu",
                       opr->cname(), opr->dyn_typeinfo()->name,
                       new_opr->cname(), new_opr->dyn_typeinfo()->name,
                       out0.size(), out1.size());
            for (size_t i = 0; i < out0.size(); ++i) {
                if (!out0[i]->contain_flag(VarNode::Flag::VOLATILE_CONTENT)) {
                    mgb_assert(!out1[i]->contain_flag(
                            VarNode::Flag::VOLATILE_CONTENT));
                    auto src = out0[i];
                    auto dst = out1[i];
                    if (opt.graph().endpoint_contain(src) &&
                        !src->shape().eq_shape(dst->shape())) {
4194
                        dst = extract_subtensor(dst, src->shape());
4195 4196 4197 4198 4199 4200 4201 4202 4203 4204 4205 4206 4207
                    }
                    rewriter.replace_var(src, dst, nullptr);
                }
            }
        } else {
            rewriter.auto_replace_outputs(opr);
        }
    };
    opt.graph().iter(on_opr);
    rewriter.apply_inplace();

    MIDOUT_E
}
4208 4209 4210 4211 4212

/* ================ EnableNCHW64Pass =============== */
VarNode* EnableNCHW64Pass::on_graph_endpoint_var(VarNode* new_var,
                                               VarNode* orig_var) const {
    if (!orig_var->shape().eq_shape(new_var->shape())) {
4213
        auto iter = m_opr_format_map.find(new_var->owner_opr());
4214 4215 4216
        mgb_assert(iter != m_opr_format_map.end(),
                   "cannot find opr(type:%s,name:%s) information, related "
                   "output var node(name:%s)",
4217 4218
                   new_var->owner_opr()->dyn_typeinfo()->name,
                   new_var->owner_opr()->cname(), new_var->cname());
4219 4220 4221 4222 4223 4224 4225 4226 4227 4228 4229 4230 4231 4232 4233 4234 4235 4236 4237 4238 4239 4240 4241 4242 4243 4244 4245 4246 4247 4248 4249 4250 4251 4252 4253 4254 4255 4256 4257 4258 4259 4260 4261 4262 4263 4264 4265 4266 4267 4268 4269 4270 4271 4272 4273 4274
        const auto& fmt = iter->second;
        using LayoutType = RelayoutPlaceholder::LayoutType;
        LayoutType type;
        switch (fmt) {
            case Format::NCHW4:
                type = LayoutType::NCHW4_TO_NCHW;
                break;
            case Format::NCHW32:
                type = LayoutType::NCHW32_TO_NCHW;
                break;
            case Format::NCHW64:
                type = LayoutType::NCHW64_TO_NCHW;
                break;
            default:
                mgb_throw(AssertionError,
                          "format(%d) is not supported, related var "
                          "node(name:%s)",
                          static_cast<int>(fmt), orig_var->cname());
        };
        return RelayoutPlaceholder::make(new_var, type).node();
    }
    return new_var;
}

std::unique_ptr<EnableNCHW64Pass>
EnableNCHW64Pass::make_nchw64_converter() {
    MIDOUT_B("EnableNCHW64Pass::make")
    auto ret = std::make_unique<EnableNCHW64Pass>();
    ret->set_var_replace_check_flag(VarReplaceCheckFlag::CHECK_ALL ^
                                    VarReplaceCheckFlag::CHECK_SHAPE);
    auto& replace_func = ret->m_opr_replace_func;
    auto& format_map = ret->m_opr_format_map;
    auto make_new_conv = [](const VarNodeArray& inps,
                            const opr::ConvBiasForward* orig_conv,
                            Format format) {
        auto param = orig_conv->param();
        // change format
        param.format = format;
        if (inps.size() == 2) {
            auto new_conv = opr::ConvBiasForward::make(
                    inps[0], inps[1], param, orig_conv->execution_policy(),
                    orig_conv->config());
            return new_conv.node();
        } else if (inps.size() == 3) {
            auto new_conv = opr::ConvBiasForward::make(
                    inps[0], inps[1], inps[2], param,
                    orig_conv->execution_policy(), orig_conv->config());
            return new_conv.node();
        } else {
            mgb_assert(inps.size() == 4);
            auto new_conv = opr::ConvBiasForward::make(
                    inps[0], inps[1], inps[2], inps[3], param,
                    orig_conv->execution_policy(), orig_conv->config());
            return new_conv.node();
        }
    };
4275 4276 4277 4278 4279 4280 4281 4282 4283 4284 4285 4286 4287 4288 4289 4290 4291 4292 4293 4294 4295 4296 4297 4298 4299 4300 4301 4302 4303 4304 4305 4306 4307 4308 4309 4310 4311 4312 4313 4314 4315 4316 4317 4318 4319 4320 4321 4322 4323
     auto try_transform_to_nchw =
            [&format_map](
                    OperatorNodeBase* opr,
                    const VarNodeArray& new_inp) -> VarNode* {
                        mgb_assert(opr->input().size()==new_inp.size());
        bool check_dtype =
                new_inp[0]->dtype().enumv() == DTypeEnum::Float32 &&
                new_inp[1]->dtype().enumv() == DTypeEnum::Float32;
        if (opr->input().size() >= 3)
            check_dtype &=
                    new_inp[2]->dtype().enumv() == DTypeEnum::Float32;
        if (opr->input().size() >= 4)
            check_dtype &=
                    new_inp[3]->dtype().enumv() == DTypeEnum::Float32;
        if (!check_dtype)
            return nullptr;
        auto inps = new_inp;
        auto process = [&](size_t i) -> VarNode* {
            auto iter = format_map.find(new_inp[i]->owner_opr());
            if (iter == format_map.end()) {
                return inps[i];
            } else {
                const auto& fmt = iter->second;
                if (fmt == Format::NCHW32) {
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW);
                    return ovar.node();
                } else if (fmt == Format::NCHW4) {
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW);
                    return ovar.node();
                } else {
                    mgb_assert(fmt == Format::NCHW64);
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW);
                    return ovar.node();
                }
            }
        };
        for (size_t i = 0; i < inps.size(); ++i) {
            inps[i] = process(i);
        }
        auto ret = serialization::copy_opr_shallow(*opr, inps, opr->config());
        return ret->output()[0];
    };

4324 4325 4326 4327 4328

    auto try_transform_to_nchw4 =
            [make_new_conv, &format_map](
                    OperatorNodeBase* opr,
                    const VarNodeArray& new_inp) -> VarNode* {
4329
                        mgb_assert(opr->input().size()==new_inp.size());
4330
        bool check_dtype =
4331 4332
                new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8 &&
                new_inp[1]->dtype().enumv() == DTypeEnum::QuantizedS8;
4333 4334
        if (opr->input().size() >= 3)
            check_dtype &=
4335
                    new_inp[2]->dtype().enumv() == DTypeEnum::QuantizedS32;
4336 4337
        if (opr->input().size() >= 4)
            check_dtype &=
4338
                    new_inp[3]->dtype().enumv() == DTypeEnum::QuantizedS8;
4339 4340 4341 4342 4343 4344 4345 4346 4347 4348
        if (!check_dtype)
            return nullptr;
        size_t out_channels = opr->input(1)->shape()[0];
        size_t in_channels = opr->input(1)->shape()[1];
        bool check_channels = out_channels % 4 == 0 && in_channels % 4 == 0;
        mgb_assert(check_channels,
                   "invalid quantize conv bias opr(name:%s,oc:%zu,ic:%zu)",
                   opr->cname(), out_channels, in_channels);
        auto inps = new_inp;
        auto process = [&](size_t i) -> VarNode* {
4349
            auto iter = format_map.find(new_inp[i]->owner_opr());
4350 4351 4352 4353 4354 4355 4356 4357 4358 4359 4360 4361 4362 4363 4364 4365 4366 4367 4368 4369 4370 4371 4372 4373 4374 4375 4376
            if (iter == format_map.end()) {
                auto ovar = RelayoutPlaceholder::make(
                        inps[i],
                        RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW4);
                return ovar.node();
            } else {
                const auto& fmt = iter->second;
                if (fmt == Format::NCHW4) {
                    return inps[i];
                } else if (fmt == Format::NCHW32) {
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW4);
                    return ovar.node();
                } else {
                    mgb_assert(fmt == Format::NCHW64);
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW4);
                    return ovar.node();
                }
            }
        };
        for (size_t i = 0; i < inps.size(); ++i) {
            inps[i] = process(i);
        }
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
4377 4378 4379
        auto ret = make_new_conv(inps, &conv_bias, Format::NCHW4);
        format_map.insert(std::make_pair(ret->owner_opr(), Format::NCHW4));
        return ret;
4380 4381 4382 4383 4384 4385
    };

    auto try_transform_to_nchw32 =
            [make_new_conv, &format_map](
                    OperatorNodeBase* opr,
                    const VarNodeArray& new_inp) -> VarNode* {
4386
        mgb_assert(opr->input().size()==new_inp.size());
4387
        bool check_dtype =
4388 4389
                new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8 &&
                new_inp[1]->dtype().enumv() == DTypeEnum::QuantizedS8;
4390 4391
        if (opr->input().size() >= 3)
            check_dtype &=
4392
                    new_inp[2]->dtype().enumv() == DTypeEnum::QuantizedS32;
4393 4394
        if (opr->input().size() >= 4)
            check_dtype &=
4395
                    new_inp[3]->dtype().enumv() == DTypeEnum::QuantizedS8;
4396 4397 4398 4399 4400 4401 4402 4403 4404
        if (!check_dtype)
            return nullptr;
        size_t out_channels = opr->input(1)->shape()[0];
        size_t in_channels = opr->input(1)->shape()[1];
        bool check_channels = out_channels % 32 == 0 && in_channels % 32 == 0;
        if (!check_channels)
            return nullptr;
        auto inps = new_inp;
        auto process = [&](size_t i) -> VarNode* {
4405
            auto iter = format_map.find(new_inp[i]->owner_opr());
4406 4407 4408 4409 4410 4411 4412 4413 4414 4415 4416 4417 4418 4419 4420 4421 4422 4423 4424 4425 4426 4427 4428 4429 4430 4431 4432
            if (iter == format_map.end()) {
                auto ovar = RelayoutPlaceholder::make(
                        inps[i],
                        RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW32);
                return ovar.node();
            } else {
                const auto& fmt = iter->second;
                if (fmt == Format::NCHW32) {
                    return inps[i];
                } else if (fmt == Format::NCHW4) {
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW32);
                    return ovar.node();
                } else {
                    mgb_assert(fmt == Format::NCHW64);
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW64_TO_NCHW32);
                    return ovar.node();
                }
            }
        };
        for (size_t i = 0; i < inps.size(); ++i) {
            inps[i] = process(i);
        }
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
4433 4434 4435
        auto ret = make_new_conv(inps, &conv_bias, Format::NCHW32);
        format_map.insert(std::make_pair(ret->owner_opr(), Format::NCHW32));
        return ret;
4436 4437 4438 4439 4440 4441 4442
    };

    auto try_transform_to_nchw64 =
            [make_new_conv, &format_map](
                    OperatorNodeBase* opr,
                    const VarNodeArray& new_inp) -> VarNode* {
        // fint4XWint4 and fuint4XWint4
4443
        mgb_assert(opr->input().size()==new_inp.size());
4444
        bool check_dtype =
4445 4446
                (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS4 ||
                 new_inp[0]->dtype().enumv() ==
4447
                         DTypeEnum::Quantized4Asymm) &&
4448
                new_inp[1]->dtype().enumv() == DTypeEnum::QuantizedS4;
4449 4450
        if (opr->input().size() >= 3)
            check_dtype &=
4451
                    new_inp[2]->dtype().enumv() == DTypeEnum::QuantizedS32;
4452
        if (opr->input().size() >= 4)
4453 4454
            check_dtype &= new_inp[3]->dtype().enumv() ==
                           new_inp[0]->dtype().enumv();
4455 4456 4457 4458 4459 4460 4461 4462 4463
        if (!check_dtype)
            return nullptr;
        size_t out_channels = opr->input(1)->shape()[0];
        size_t in_channels = opr->input(1)->shape()[1];
        bool check_channels = out_channels % 64 == 0 && in_channels % 64 == 0;
        if (!check_channels)
            return nullptr;
        auto inps = new_inp;
        auto process = [&](size_t i) -> VarNode* {
4464
            auto iter = format_map.find(new_inp[i]->owner_opr());
4465 4466 4467 4468 4469 4470 4471 4472 4473 4474 4475 4476 4477 4478 4479 4480 4481 4482 4483 4484 4485 4486 4487 4488 4489 4490 4491
            if (iter == format_map.end()) {
                auto ovar = RelayoutPlaceholder::make(
                        inps[i],
                        RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW64);
                return ovar.node();
            } else {
                const auto& fmt = iter->second;
                if (fmt == Format::NCHW64) {
                    return inps[i];
                } else if (fmt == Format::NCHW4) {
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW4_TO_NCHW64);
                    return ovar.node();
                } else {
                    mgb_assert(fmt == Format::NCHW32);
                    auto ovar = RelayoutPlaceholder::make(
                            inps[i],
                            RelayoutPlaceholder::LayoutType::NCHW32_TO_NCHW64);
                    return ovar.node();
                }
            }
        };
        for (size_t i = 0; i < inps.size(); ++i) {
            inps[i] = process(i);
        }
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
4492 4493 4494
        auto ret = make_new_conv(inps, &conv_bias, Format::NCHW64);
        format_map.insert(std::make_pair(ret->owner_opr(), Format::NCHW64));
        return ret;
4495 4496 4497 4498 4499
    };

    // replace rule for conv bias opr
    auto replace_conv_bias_opr = [&format_map, try_transform_to_nchw4,
                                  try_transform_to_nchw32,
4500
                                  try_transform_to_nchw64, try_transform_to_nchw](
4501 4502 4503 4504 4505 4506 4507 4508 4509 4510 4511
                                         OperatorNodeBase* opr,
                                         const VarNodeArray& new_inp) {
        using Param = megdnn::param::ConvBias;
        using Sparse = Param::Sparse;
        mgb_assert(opr->input().size() == new_inp.size());
        auto& conv_bias = opr->cast_final_safe<opr::ConvBiasForward>();
        mgb_assert(conv_bias.param().sparse == Sparse::DENSE,
                   "only support dense conv now");
        VarNode* new_var = nullptr;
        if ((new_var = try_transform_to_nchw32(opr, new_inp)) ||
            (new_var = try_transform_to_nchw4(opr, new_inp)) ||
4512 4513
            (new_var = try_transform_to_nchw64(opr, new_inp))||
            (new_var = try_transform_to_nchw(opr, new_inp))) {
4514 4515 4516
            return new_var->owner_opr();
        } else {
            mgb_assert(
4517 4518
                    new_inp[0]->dtype().enumv() != DTypeEnum::QuantizedS8 &&
                            new_inp[0]->dtype().enumv() !=
4519
                                    DTypeEnum::QuantizedS4 &&
4520 4521 4522 4523
                            new_inp[0]->dtype().enumv() !=
                                    DTypeEnum::Quantized4Asymm &&
                            new_inp[0]->dtype().enumv() != DTypeEnum::Float32,
                    "invalid data type(%s)", new_inp[0]->dtype().name());
4524 4525 4526 4527 4528 4529 4530 4531 4532 4533 4534 4535 4536 4537 4538 4539 4540 4541 4542 4543 4544 4545 4546 4547 4548 4549
            bool shape_changed = false;
            for (const auto& i : new_inp) {
                if (format_map.count(i->owner_opr()) > 0) {
                    shape_changed = true;
                    break;
                }
            }
            mgb_assert(!shape_changed,
                       "EnableNCHW64Pass won't change format of output tensor "
                       "of non quantized conv bias operator(name:%s)",
                       opr->cname());
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };
    replace_func[opr::ConvBiasForward::typeinfo()] = replace_conv_bias_opr;
    replace_func[opr::ConvolutionBackwardData::
                         typeinfo()] = [&format_map](OperatorNodeBase* opr,
                                                     const VarNodeArray&
                                                             new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        mgb_assert(new_inp.size() == 2,
                   "deconv (conv bwd data) operator for inference can "
                   "only have 2 input vars(got:%zu)",
                   new_inp.size());
        auto& deconv = opr->cast_final_safe<opr::ConvolutionBackwardData>();
4550
        if (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8) {
4551
            Format cur;
4552
            auto iter = format_map.find(new_inp[1]->owner_opr());
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            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
            auto inps = new_inp;
            inps[0] = RelayoutPlaceholder::make(
                              inps[0],
                              RelayoutPlaceholder::LayoutType::NCHW_TO_NCHW4)
                              .node();
            switch (cur) {
                case Format::NCHW:
                    inps[1] = RelayoutPlaceholder::make(
                                      inps[1], RelayoutPlaceholder::LayoutType::
                                                       NCHW_TO_NCHW4)
                                      .node();
                    break;
                case Format::NCHW32:
                    inps[1] = RelayoutPlaceholder::make(
                                      inps[1], RelayoutPlaceholder::LayoutType::
                                                       NCHW32_TO_NCHW4)
                                      .node();
                    break;
                case Format::NCHW64:
                    inps[1] = RelayoutPlaceholder::make(
                                      inps[1], RelayoutPlaceholder::LayoutType::
                                                       NCHW64_TO_NCHW4)
                                      .node();
                    break;
                default:
                    mgb_assert(cur == Format::NCHW4);
            }
4585
            
4586 4587 4588 4589 4590
            auto param = deconv.param();
            param.format = Format::NCHW4;
            auto new_deconv = opr::ConvolutionBackwardData::make(
                    inps[0], inps[1], param, deconv.execution_policy(),
                    deconv.config());
4591 4592 4593
            auto ret = new_deconv.node()->owner_opr();
            format_map.insert(std::make_pair(ret, Format::NCHW4));
            return ret;
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        } else {
            bool shape_changed = false;
            for (const auto& i : new_inp) {
                if (format_map.count(i->owner_opr()) > 0) {
                    shape_changed = true;
                    break;
                }
            }
            mgb_assert(!shape_changed, 
                       "EnableNCHW64Pass won't change format of output tensor "
                       "of non quantized deconv operator(name:%s)",
                       opr->cname());
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };

    // replace rule for elemwise like opr
    auto replace_elemwise_like_opr = [&format_map](OperatorNodeBase* opr,
                                        const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        ThinHashMap<Format, size_t> format_size;
        bool same_format = true;
        bool first_touch = false;
4618
        Format format(Format::NCHW);
4619
        for (const auto& i : new_inp) {
4620 4621 4622 4623 4624 4625 4626 4627 4628 4629 4630 4631 4632 4633 4634 4635 4636 4637
            Format cur;
            auto iter = format_map.find(i->owner_opr());
            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
            auto& size = format_size[cur];
            size += i->shape().total_nr_elems();
            if (!first_touch) {
                first_touch = true;
                format = cur;
            } else {
                if (format != cur)
                    same_format = false;
            }
        }
        if (same_format) {
4638 4639
            auto ret = serialization::copy_opr_shallow(*opr, new_inp,
                                                       opr->config());
4640
            if (format != Format::NCHW)
4641 4642
                format_map.insert(std::make_pair(ret, format));
            return ret;
4643 4644
        }

4645
        Format max_format(Format::NCHW);
4646 4647 4648 4649 4650 4651 4652 4653 4654 4655 4656 4657 4658 4659 4660 4661 4662 4663 4664 4665 4666 4667 4668 4669 4670 4671 4672 4673
        size_t max_size = std::numeric_limits<size_t>::min();
        for (const auto& item : format_size) {
            if (item.second > max_size) {
                max_format = item.first;
                max_size = item.second;
            }
        }
        static const ThinHashMap<std::pair<Format, Format>,
                                 thin_function<VarNode*(VarNode*)>>
                map = {
#define cb(_fmt1, _fmt2)                                                 \
    {                                                                    \
        std::make_pair(Format::_fmt1, Format::_fmt2),                    \
                [](VarNode* in) -> VarNode* {                            \
                    return RelayoutPlaceholder::make(                    \
                                   in, RelayoutPlaceholder::LayoutType:: \
                                               _fmt1##_TO_##_fmt2)       \
                            .node();                                     \
                }                                                        \
    }
                        cb(NCHW, NCHW4),  cb(NCHW, NCHW32),  cb(NCHW, NCHW64),
                        cb(NCHW4, NCHW),  cb(NCHW4, NCHW32), cb(NCHW4, NCHW64),
                        cb(NCHW32, NCHW), cb(NCHW32, NCHW4), cb(NCHW32, NCHW64),
                        cb(NCHW32, NCHW), cb(NCHW32, NCHW4), cb(NCHW32, NCHW64),
#undef cb
                };
        auto inps = new_inp;
        for (size_t i = 0; i < opr->input().size(); ++i) {
4674
            auto iter = format_map.find(new_inp[i]->owner_opr());
4675 4676 4677 4678 4679 4680 4681 4682 4683 4684
            Format cur;
            if (iter != format_map.end()) {
                cur = iter->second;
            } else {
                cur = Format::NCHW;
            }
            if (cur != max_format) {
                inps[i] = map.at(std::make_pair(cur, max_format))(inps[i]); 
            }
        }
4685
        auto ret = serialization::copy_opr_shallow(*opr, inps, opr->config());
4686
        if (max_format != Format::NCHW)
4687 4688
            format_map.insert(std::make_pair(ret, max_format));
        return ret;
4689 4690 4691 4692 4693 4694 4695 4696 4697 4698 4699 4700 4701
    };
    // elemwise like
    replace_func[opr::Elemwise::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::TypeCvt::typeinfo()] = replace_elemwise_like_opr;
    replace_func[opr::ElemwiseMultiType::typeinfo()] =
            replace_elemwise_like_opr;
    replace_func[opr::PowC::typeinfo()] = replace_elemwise_like_opr;

    auto replace_warp_perspective_opr = [&format_map](
                                                OperatorNodeBase* opr,
                                                const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        auto& warp = opr->cast_final_safe<opr::WarpPerspectiveForward>();
4702 4703
        if (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS4 ||
            new_inp[0]->dtype().enumv() == DTypeEnum::Quantized4Asymm) {
4704
            Format cur;
4705
            auto iter = format_map.find(new_inp[0]->owner_opr());
4706 4707 4708 4709 4710 4711 4712 4713 4714 4715 4716 4717 4718 4719 4720 4721 4722 4723 4724 4725 4726 4727 4728 4729 4730 4731 4732 4733 4734 4735 4736 4737 4738 4739 4740 4741 4742 4743 4744 4745 4746
            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
            auto inps = new_inp;
            switch (cur) {
                case Format::NCHW:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW_TO_NCHW64)
                                      .node();
                    break;
                case Format::NCHW4:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW4_TO_NCHW64)
                                      .node();
                    break;
                case Format::NCHW32:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW32_TO_NCHW64)
                                      .node();
                    break;
                default:
                    mgb_assert(cur == Format::NCHW64);
            }
            auto param = warp.param();
            param.format = Format::NCHW64;
            SymbolVar new_warp;
            if (inps.size() == 3) {
                new_warp = opr::WarpPerspectiveForward::make(
                        inps[0], inps[1], inps[2], param,
                        warp.config());
            } else {
                mgb_assert(inps.size() == 4);
                new_warp = opr::WarpPerspectiveForward::make(
                        inps[0], inps[1], inps[2], inps[3], param,
                        warp.config());
            }
4747 4748 4749 4750
            auto ret = new_warp.node()->owner_opr();
            format_map.insert(std::make_pair(ret, Format::NCHW64));
            return ret;
        } else if (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8) {
4751
            Format cur;
4752
            auto iter = format_map.find(new_inp[0]->owner_opr());
4753 4754 4755 4756 4757 4758 4759 4760 4761 4762 4763 4764 4765 4766 4767 4768 4769 4770 4771 4772 4773 4774 4775 4776 4777 4778 4779 4780
            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
            auto inps = new_inp;
            switch (cur) {
                case Format::NCHW:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW_TO_NCHW4)
                                      .node();
                    break;
                case Format::NCHW32:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW32_TO_NCHW4)
                                      .node();
                    break;
                case Format::NCHW64:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW64_TO_NCHW4)
                                      .node();
                    break;
                default:
                    mgb_assert(cur == Format::NCHW4);
            }
4781
            
4782 4783 4784 4785 4786 4787 4788 4789 4790 4791 4792 4793 4794
            auto param = warp.param();
            param.format = Format::NCHW4;
            SymbolVar new_warp;
            if (inps.size() == 3) {
                new_warp = opr::WarpPerspectiveForward::make(
                        inps[0], inps[1], inps[2], param,
                        warp.config());
            } else {
                mgb_assert(inps.size() == 4);
                new_warp = opr::WarpPerspectiveForward::make(
                        inps[0], inps[1], inps[2], inps[3], param,
                        warp.config());
            }
4795 4796 4797
            auto ret = new_warp.node()->owner_opr();
            format_map.insert(std::make_pair(ret, Format::NCHW4));
            return ret;
4798 4799 4800 4801 4802 4803 4804 4805 4806 4807 4808 4809 4810 4811 4812 4813 4814 4815 4816 4817 4818
        } else {
            bool shape_changed = false;
            for (const auto& i : new_inp) {
                if (format_map.count(i->owner_opr()) > 0) {
                    shape_changed = true;
                    break;
                }
            }
            mgb_assert(!shape_changed, 
                       "EnableNCHW64Pass won't change format of output tensor "
                       "of non quantized warp perspective operator(name:%s)",
                       opr->cname());
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };
    auto replace_pooling_opr = [&format_map](
                                       OperatorNodeBase* opr,
                                       const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        auto& pooling = opr->cast_final_safe<opr::PoolingForward>();
4819 4820
        if (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS4 ||
            new_inp[0]->dtype().enumv() == DTypeEnum::Quantized4Asymm) {
4821
            Format cur;
4822
            auto iter = format_map.find(new_inp[0]->owner_opr());
4823 4824 4825 4826 4827 4828 4829 4830 4831 4832 4833 4834 4835 4836 4837 4838 4839 4840 4841 4842 4843 4844 4845 4846 4847 4848 4849 4850
            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
            auto inps = new_inp;
            switch (cur) {
                case Format::NCHW:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW_TO_NCHW64)
                                      .node();
                    break;
                case Format::NCHW4:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW4_TO_NCHW64)
                                      .node();
                    break;
                case Format::NCHW32:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW32_TO_NCHW64)
                                      .node();
                    break;
                default:
                    mgb_assert(cur == Format::NCHW64);
            }
4851
            
4852 4853 4854 4855
            auto param = pooling.param();
            param.format = Format::NCHW64;
            auto new_pool =
                    opr::PoolingForward::make(inps[0], param, pooling.config());
4856 4857 4858 4859
            auto ret = new_pool.node()->owner_opr();
            format_map.insert(std::make_pair(ret, Format::NCHW64));
            return ret;
        } else if (new_inp[0]->dtype().enumv() == DTypeEnum::QuantizedS8) {
4860
            Format cur;
4861
            auto iter = format_map.find(new_inp[0]->owner_opr());
4862 4863 4864 4865 4866
            if (iter == format_map.end()) {
                cur = Format::NCHW;
            } else {
                cur = iter->second;
            }
4867
            size_t in_channels = new_inp[0]->shape()[1];
4868 4869 4870 4871 4872 4873 4874 4875 4876 4877 4878 4879 4880 4881 4882 4883 4884 4885 4886 4887 4888 4889 4890 4891 4892
            bool use_nchw32 = false;
            auto inps = new_inp;
            using LayoutType = RelayoutPlaceholder::LayoutType;
            switch (cur) {
                case Format::NCHW: {
                    use_nchw32 = in_channels % 32 == 0;
                    auto layout_type = use_nchw32 ? LayoutType::NCHW_TO_NCHW32
                                                  : LayoutType::NCHW_TO_NCHW4;
                    inps[0] = RelayoutPlaceholder::make(inps[0], layout_type)
                                      .node();
                    break;
                }
                case Format::NCHW64:
                    inps[0] = RelayoutPlaceholder::make(
                                      inps[0], RelayoutPlaceholder::LayoutType::
                                                       NCHW64_TO_NCHW32)
                                      .node();
                    break;
                case Format::NCHW32:
                    use_nchw32 = true;
                    break;
                default:
                    mgb_assert(cur == Format::NCHW4);
            }
            Format out_format = use_nchw32 ? Format::NCHW32 : Format::NCHW4;
4893
            
4894 4895 4896 4897
            auto param = pooling.param();
            param.format = out_format;
            auto new_pool =
                    opr::PoolingForward::make(inps[0], param, pooling.config());
4898 4899 4900
            auto ret = new_pool.node()->owner_opr();
            format_map.insert(std::make_pair(ret, out_format));
            return ret;
4901 4902 4903 4904 4905 4906 4907 4908 4909 4910 4911 4912 4913 4914 4915 4916 4917 4918 4919 4920 4921 4922 4923 4924 4925 4926 4927
        } else {
            bool shape_changed = false;
            for (const auto& i : new_inp) {
                if (format_map.count(i->owner_opr()) > 0) {
                    shape_changed = true;
                    break;
                }
            }
            mgb_assert(!shape_changed,
                       "EnableNCHW64Pass won't change format of output tensor "
                       "of non quantized pooling operator(name:%s)",
                       opr->cname());
            return serialization::copy_opr_shallow(*opr, new_inp,
                                                   opr->config());
        }
    };
    // format aware
    replace_func[opr::WarpPerspectiveForward::typeinfo()] =
            replace_warp_perspective_opr;
    replace_func[opr::PoolingForward::typeinfo()] = replace_pooling_opr;

    // to nchw
    auto replace_inps_to_nchw = [&format_map](OperatorNodeBase* opr,
                                              const VarNodeArray& new_inp) {
        mgb_assert(opr->input().size() == new_inp.size());
        auto inps = new_inp;
        for (size_t i = 0; i < opr->input().size(); ++i) {
4928 4929
            auto iter = format_map.find(new_inp[i]->owner_opr());
            auto fmt = iter != format_map.end()?iter->second:Format::NCHW;
4930 4931 4932 4933 4934 4935 4936 4937 4938 4939 4940 4941 4942 4943 4944 4945 4946 4947 4948 4949 4950 4951 4952 4953 4954 4955 4956
            if (iter != format_map.end()) {
                switch (fmt) {
                    case Format::NCHW4:
                        inps[i] = RelayoutPlaceholder::make(
                                          inps[i],
                                          RelayoutPlaceholder::LayoutType::
                                                  NCHW4_TO_NCHW)
                                          .node();
                        break;
                    case Format::NCHW32:
                        inps[i] = RelayoutPlaceholder::make(
                                          inps[i],
                                          RelayoutPlaceholder::LayoutType::
                                                  NCHW32_TO_NCHW)
                                          .node();
                        break;
                    default:
                        mgb_assert(fmt == Format::NCHW64);
                        inps[i] = RelayoutPlaceholder::make(
                                          inps[i],
                                          RelayoutPlaceholder::LayoutType::
                                                  NCHW64_TO_NCHW)
                                          .node();
                        break;
                }
            }
        }
4957 4958
        auto ret = serialization::copy_opr_shallow(*opr, inps, opr->config());
        return ret;
4959 4960 4961 4962 4963 4964 4965 4966 4967 4968 4969
    };

    replace_func[opr::Reduce::typeinfo()] = replace_inps_to_nchw;
    replace_func[opr::Concat::typeinfo()] = replace_inps_to_nchw;
    replace_func[opr::Reshape::typeinfo()] = replace_inps_to_nchw;
    replace_func[opr::GetVarShape::typeinfo()] = replace_inps_to_nchw;
    replace_func[opr::Dimshuffle::typeinfo()] = replace_inps_to_nchw;
    replace_func[opr::Subtensor::typeinfo()] = replace_inps_to_nchw;
    return ret;
    MIDOUT_E
}
4970
// vim: syntax=cpp.doxygen foldmethod=marker foldmarker=f{{{,f}}}