matmul_v2_mkldnn_op.cc 46.7 KB
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/* Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

    http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */
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#include "paddle/fluid/operators/mkldnn/matmul_mkldnn_op.h"
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namespace {
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using dnnl::memory;
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using paddle::framework::DataLayout;
using paddle::framework::ExecutionContext;
using paddle::platform::GetMKLDNNFormat;
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using paddle::platform::MatMulV2MKLDNNHandler;
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using paddle::platform::MKLDNNDeviceContext;
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using paddle::platform::MKLDNNFormatForSize;
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using paddle::platform::MKLDNNGetDataType;
using paddle::platform::to_void_cast;
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using phi::vectorize;
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using Tensor = paddle::framework::Tensor;
using paddle::framework::GradVarName;
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using phi::make_ddim;
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// Reshape a rank-3 tensor from P x M x N to (P * M) x N.
// Identity op if the tensor is not of rank 3.
static Tensor FoldOuterDims(const Tensor &input) {
  auto output = input;
  auto in_dims = input.dims();
  if (in_dims.size() == 3) {
    output.Resize({in_dims[0] * in_dims[1], in_dims[2]});
  }
  return output;
}

// Reshape a rank-3 tensor from P x M x N to M x (P * N).
// (Warning: This requires transposing data and writes into new memory.)
// Identity op if the tensor is not of rank 3.
template <typename T>
static Tensor FoldFirstAndLastDims(const MKLDNNDeviceContext &dev_ctx,
                                   const Tensor *input) {
  auto input_dims = vectorize(input->dims());
  if (input_dims.size() != 3) {
    return *input;
  }

  Tensor output;
  output.Resize({input_dims[1], input_dims[0], input_dims[2]});

  auto output_dims = vectorize(output.dims());

  memory::data_type input_type = paddle::framework::ToMKLDNNDataType(
      paddle::framework::TransToProtoVarType(input->dtype()));
  paddle::platform::ReorderMKLDNNHandler reorder_handler(
      output_dims,
      paddle::framework::TransToProtoVarType(input->dtype()),
      input_type,
      dev_ctx.GetEngine());

  auto reorder_src_memory_p = reorder_handler.AcquireSrcMemory(
      memory::format_tag::abc,
      paddle::platform::to_void_cast(input->data<T>()));
  auto reorder_dst_memory_p = reorder_handler.AcquireDstMemory(
      &output, memory::format_tag::bac, dev_ctx.GetPlace());
  auto reorder_p = reorder_handler.AcquireReorder(reorder_src_memory_p,
                                                  reorder_dst_memory_p);

  auto &astream = MKLDNNDeviceContext::tls().get_stream();
  reorder_p->execute(astream, *reorder_src_memory_p, *reorder_dst_memory_p);
  astream.wait();

  output.Resize({input_dims[1], input_dims[0] * input_dims[2]});
  return output;
}

template <typename T>
constexpr bool IsInt8() {
  return std::is_same<T, int8_t>::value || std::is_same<T, uint8_t>::value;
}

template <typename T>
constexpr bool IsBfloat16() {
  return std::is_same<T, paddle::platform::bfloat16>::value;
}
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// Get row matrix shape from a vector shape. If the rank of x_dim > 1, the
// original x_dim is returned.
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static paddle::framework::DDim RowMatrixDimsFromVector(
    const paddle::framework::DDim &x_dim) {
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  return x_dim.size() > 1 ? x_dim : phi::make_ddim({1, x_dim[0]});
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}

// Get column matrix shape from a vector shape. If the ran of y_dim > 1, the
// original y_dim is returned.
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static paddle::framework::DDim ColumnMatrixDimsFromVector(
    const paddle::framework::DDim &y_dim) {
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  return y_dim.size() > 1 ? y_dim : phi::make_ddim({y_dim[0], 1});
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}

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phi::DDim GetDimForInput(const ExecutionContext &ctx, std::string input_name) {
  auto shape = ctx.Attr<std::vector<int>>("fused_reshape_" + input_name);
  auto axis = ctx.Attr<std::vector<int>>("fused_transpose_" + input_name);
  auto input_dims = ctx.Input<Tensor>(input_name)->dims();
  if (!shape.empty() && !axis.empty()) {
    auto it_zero = std::find(shape.begin(), shape.end(), 0);
    if (it_zero != shape.end()) {
      for (uint64_t i = 0; i < shape.size(); i++) {
        if (shape[i] == 0) {
          PADDLE_ENFORCE_LT(i,
                            input_dims.size(),
                            paddle::platform::errors::InvalidArgument(
                                "The index of 0 in fused_reshape_%s ",
                                "should be less than output dim size, ",
                                "but the index is %d and output dim size is %d",
                                input_name,
                                i,
                                input_dims.size()));
          shape[i] = input_dims.at(i);
        }
      }
    }

    return input_dims.reshape(shape).transpose(axis);
  }
  return input_dims;
}

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template <typename XT, typename YT, typename OT>
class MatMulMKLDNNHandler
    : public paddle::platform::MKLDNNHandlerNoCachingT<XT, dnnl::matmul> {
 public:
  MatMulMKLDNNHandler(const dnnl::engine engine,
                      paddle::platform::Place cpu_place,
                      Tensor *x,
                      bool trans_x,
                      Tensor *y,
                      bool trans_y,
                      Tensor *out,
                      float scale)
      : paddle::platform::MKLDNNHandlerNoCachingT<XT, dnnl::matmul>(engine,
                                                                    cpu_place) {
    auto mat_dim_x = phi::funcs::CreateMatrixDescriptor(x->dims(), 0, trans_x);
    auto mat_dim_y = phi::funcs::CreateMatrixDescriptor(y->dims(), 0, trans_y);

    memory::dim x_bs = mat_dim_x.batch_size_;
    memory::dim y_bs = mat_dim_y.batch_size_;

    memory::dim out_bs = x_bs || y_bs ? std::max(x_bs, y_bs) : 1;
    const memory::dim M = mat_dim_x.height_;
    const memory::dim N = mat_dim_y.width_;
    const memory::dim K = mat_dim_x.width_;

    memory::dims x_dims = {x_bs > 0 ? x_bs : 1, M, K};
    memory::dims y_dims = {y_bs > 0 ? y_bs : 1, K, N};
    memory::dims out_dims = {out_bs, M, N};

    memory::dims x_strides =
        !trans_x ? memory::dims{M * K, K, 1} : memory::dims{M * K, 1, M};

    memory::dims y_strides =
        !trans_y ? memory::dims{N * K, N, 1} : memory::dims{N * K, 1, K};
    memory::dims out_strides = memory::dims{M * N, N, 1};

    auto x_md = memory::desc(x_dims, MKLDNNGetDataType<XT>(), x_strides);
    auto y_md = memory::desc(y_dims, MKLDNNGetDataType<YT>(), y_strides);
    auto out_md = memory::desc(out_dims, MKLDNNGetDataType<OT>(), out_strides);

    dnnl::primitive_attr attrs;
    if (scale != 1.0f) attrs.set_output_scales(0, {scale});

    this->AcquireForwardPrimitiveDescriptor(attrs, x_md, y_md, out_md);
  }
  // Constructor for FWD MatMul
  MatMulMKLDNNHandler(const dnnl::engine engine, const ExecutionContext &ctx)
      : paddle::platform::MKLDNNHandlerNoCachingT<XT, dnnl::matmul>(
            engine, ctx.GetPlace()) {
    const dnnl::primitive_attr matmul_attrs = CreateMatmulAttrs(ctx);

    auto matmul_dims_ = GetMatmulDims(ctx);
    auto x_md = memory::desc(
        matmul_dims_.x_dims, MKLDNNGetDataType<XT>(), matmul_dims_.x_strides);
    auto y_md = memory::desc(
        matmul_dims_.y_dims, MKLDNNGetDataType<YT>(), matmul_dims_.y_strides);
    auto out_md = memory::desc(matmul_dims_.out_dims,
                               MKLDNNGetDataType<OT>(),
                               matmul_dims_.out_strides);
    this->AcquireForwardPrimitiveDescriptor(matmul_attrs, x_md, y_md, out_md);
  }

  std::shared_ptr<memory> AcquireWeightsMemory(const Tensor *input) {
    const YT *input_data = input->data<YT>();
    return this->AcquireMemoryFromPrimitive(this->fwd_pd_->weights_desc(),
                                            to_void_cast<YT>(input_data));
  }

 public:
  void Execute(const paddle::framework::Tensor *x,
               const paddle::framework::Tensor *y,
               paddle::framework::Tensor *out) {
    const auto src_memory_p = this->AcquireSrcMemory(x);
    const auto weights_memory_p = this->AcquireWeightsMemory(y);
    const auto dst_memory_p = this->AcquireDstMemory(out);

    auto matmul_p = this->AcquireForwardPrimitive();

    std::unordered_map<int, dnnl::memory> matmul_args = {
        {DNNL_ARG_SRC, *src_memory_p},
        {DNNL_ARG_WEIGHTS, *weights_memory_p},
        {DNNL_ARG_DST, *dst_memory_p}};

    auto &astream = paddle::platform::MKLDNNDeviceContext::tls().get_stream();

    // Simulate batch matmul by processing in loop
    void *x_ptr = src_memory_p->get_data_handle();
    void *y_ptr = weights_memory_p->get_data_handle();
    void *out_ptr = dst_memory_p->get_data_handle();
    auto offsets = this->GetOffsets();
    for (uint16_t i = 0; i < this->GetBatchSize(); ++i) {
      src_memory_p->set_data_handle(x_ptr);
      weights_memory_p->set_data_handle(y_ptr);
      dst_memory_p->set_data_handle(out_ptr);
      matmul_p->execute(astream,
                        {
                            {DNNL_ARG_SRC, *src_memory_p},
                            {DNNL_ARG_WEIGHTS, *weights_memory_p},
                            {DNNL_ARG_DST, *dst_memory_p},
                        });
      x_ptr = static_cast<char *>(x_ptr) + std::get<0>(offsets);
      y_ptr = static_cast<char *>(y_ptr) + std::get<1>(offsets);
      out_ptr = static_cast<char *>(out_ptr) + std::get<2>(offsets);
    }
    astream.wait();

    auto format =
        MKLDNNFormatForSize(out->dims().size(), dnnl::memory::format_tag::nchw);
    out->set_format(format);
    out->set_layout(DataLayout::kMKLDNN);
  }

  std::shared_ptr<dnnl::memory> AcquireDstMemory(
      paddle::framework::Tensor *output) {
    // We cannot use base AcquireDstMemory as it makes an allocation request
    // base on DST memory primitive size. This is fine in general, but in MatMul
    // we have primitive that covers only one batch of Data and then shift
    // pointer for every new batch. Hence Tensor size is bigger that dst memory
    // primitive size. So would we request less memory that is there and it
    // triggers an
    // assertion.  So as there is no 'any' format here we can leave default size
    // of Tensor as computed in ComputeInferShape
    OT *ptr = output->mutable_data<OT>(this->place_);
    return this->AcquireMemoryFromPrimitive(this->fwd_pd_->dst_desc(), ptr);
  }

 private:
  struct MatMulDims {
    const memory::dims x_dims, y_dims, out_dims, x_strides, y_strides,
        out_strides;
  };

  std::pair<phi::funcs::MatDescriptor, memory::dims> GetInputDimsAndStrides(
      const ExecutionContext &ctx, std::string input_name) {
    auto shape = ctx.Attr<std::vector<int>>("fused_reshape_" + input_name);
    auto axis = ctx.Attr<std::vector<int>>("fused_transpose_" + input_name);
    auto input_dims = ctx.Input<Tensor>(input_name)->dims();
    auto new_dims = input_dims;
    if (!shape.empty() && !axis.empty()) {
      auto it_zero = std::find(shape.begin(), shape.end(), 0);
      if (it_zero != shape.end()) {
        for (uint64_t i = 0; i < shape.size(); i++) {
          if (shape[i] == 0) {
            PADDLE_ENFORCE_LT(
                i,
                input_dims.size(),
                paddle::platform::errors::InvalidArgument(
                    "The index of 0 in fused_reshape_%s ",
                    "should be less than output dim size, ",
                    "but the index is %d and output dim size is %d",
                    input_name,
                    i,
                    input_dims.size()));
            shape[i] = input_dims.at(i);
          }
        }
      }

      new_dims = input_dims.reshape(shape).transpose(axis);
    }

    auto &MatrixDimsFromVector = input_name == "X" ? RowMatrixDimsFromVector
                                                   : ColumnMatrixDimsFromVector;
    phi::funcs::MatDescriptor mat_dim = phi::funcs::CreateMatrixDescriptor(
        MatrixDimsFromVector(new_dims),
        0,
        ctx.Attr<bool>("transpose_" + input_name));

    memory::dims strides;
    if (!shape.empty()) {
      auto shape2 = input_dims.reshape(shape);
      strides.push_back(1);
      for (auto i = shape2.size() - 1; i > 0; --i) {
        strides.insert(strides.begin(), strides.front() * shape2[i]);
      }
      strides = Transpose(strides, axis);
      if (shape.size() == 4)
        strides.erase(strides.begin());
      else if (shape.size() == 2)
        strides.insert(strides.begin(), shape[0] * shape[1]);
      mat_dim.stride_ = strides[0];
      if (mat_dim.trans_) std::swap(*strides.rbegin(), *(++strides.rbegin()));
    }
    return std::make_pair(mat_dim, strides);
  }

  float ComputeOutputScale(const ExecutionContext &ctx) {
    float scale_x = ctx.Attr<float>("Scale_x");
    float scale_y = ctx.Attr<float>("Scale_y");
    bool force_fp32_out = ctx.Attr<bool>("force_fp32_output");
    float scale_out = force_fp32_out ? 1.f : ctx.Attr<float>("Scale_out");
    float alpha = ctx.Attr<float>("alpha");
    return alpha * scale_out / (scale_x * scale_y);
  }

  bool IsInputFused(const ExecutionContext &ctx) const {
    return !(ctx.Attr<std::vector<int>>("fused_reshape_X").empty() &&
             ctx.Attr<std::vector<int>>("fused_reshape_Y").empty());
  }

  bool IsOutputFused(const ExecutionContext &ctx) const {
    auto &fused_reshape_Out = ctx.Attr<std::vector<int>>("fused_reshape_Out");
    auto &fused_transpose_Out =
        ctx.Attr<std::vector<int>>("fused_transpose_Out");
    return !fused_reshape_Out.empty() && !fused_transpose_Out.empty();
  }

  MatMulDims GetMatmulDims(const ExecutionContext &ctx) {
    phi::funcs::MatDescriptor mat_dim_x;
    memory::dims strides_x;
    std::tie(mat_dim_x, strides_x) = GetInputDimsAndStrides(ctx, "X");
    phi::funcs::MatDescriptor mat_dim_y;
    memory::dims strides_y;
    std::tie(mat_dim_y, strides_y) = GetInputDimsAndStrides(ctx, "Y");

    auto x_bs = mat_dim_x.batch_size_;
    auto y_bs = mat_dim_y.batch_size_;
    PADDLE_ENFORCE_EQ(x_bs > 0 && y_bs > 0 && x_bs != y_bs,
                      false,
                      paddle::platform::errors::InvalidArgument(
                          "If batch sizes of X and Y are positive,"
                          "they have to be equal."));

    memory::dim out_bs = x_bs || y_bs ? std::max(x_bs, y_bs) : 1;
    const memory::dim M = mat_dim_x.height_;
    const memory::dim N = mat_dim_y.width_;
    const memory::dim K = mat_dim_x.width_;

    batch_size_ = 1;
    if (out_bs > 1 && (IsOutputFused(ctx) || IsInputFused(ctx))) {
      auto x_dims = GetDimForInput(ctx, "X");
      auto y_dims = GetDimForInput(ctx, "Y");
      batch_size_ = x_bs > y_bs ? x_dims[0] : y_dims[0];
      x_bs /= batch_size_;
      y_bs /= batch_size_;
      out_bs /= batch_size_;
    }
    memory::dims x_dims = {x_bs > 0 ? x_bs : 1, M, K};
    memory::dims y_dims = {y_bs > 0 ? y_bs : 1, K, N};
    memory::dims out_dims = {out_bs, M, N};

    x_offset_ = x_bs * M * K * sizeof(XT);
    y_offset_ = y_bs * K * N * sizeof(YT);
    out_offset_ = out_bs * M * N * sizeof(OT);

    // Translate transA and transB
    if (strides_x.empty())
      strides_x = !ctx.Attr<bool>("transpose_X") ? memory::dims{M * K, K, 1}
                                                 : memory::dims{M * K, 1, M};
    if (strides_y.empty())
      strides_y = !ctx.Attr<bool>("transpose_Y") ? memory::dims{N * K, N, 1}
                                                 : memory::dims{N * K, 1, K};
    memory::dims out_strides = memory::dims{M * N, N, 1};

    CorrectStridesWhenFloatOutputFused(ctx, N, out_bs, &out_strides);

    return {x_dims, y_dims, out_dims, strides_x, strides_y, out_strides};
  }

  std::vector<int64_t> Transpose(const std::vector<int64_t> &x,
                                 const std::vector<int> &axis) {
    size_t in_rank = x.size();
    size_t axis_size = axis.size();

    auto axis_set = std::set<int>(axis.begin(), axis.end());
    PADDLE_ENFORCE_EQ(axis_set.size(),
                      axis_size,
                      paddle::platform::errors::InvalidArgument(
                          "In an axis array, elements must be unique."));

    PADDLE_ENFORCE_EQ(in_rank,
                      axis_size,
                      paddle::platform::errors::InvalidArgument(
                          "The input dimension's size "
                          "should be equal to the axis's size. "
                          "But received dimension is %d, "
                          "axis's size is %d",
                          in_rank,
                          axis_size));

    PADDLE_ENFORCE_LT(*std::max_element(axis.begin(), axis.end()),
                      axis_size,
                      paddle::platform::errors::InvalidArgument(
                          "Axis values must be ranging from 0 to (dims - 1)."));

    std::vector<int64_t> new_x(x.size());
    for (size_t i = 0; i < x.size(); i++) {
      new_x[i] = x[axis[i]];
    }
    return new_x;
  }

  void CorrectStridesWhenFloatOutputFused(const ExecutionContext &ctx,
                                          const memory::dim N,
                                          memory::dim b,
                                          memory::dims *out_strides) const {
    if (!IsInt8<OT>() && !IsBfloat16<OT>() && IsOutputFused(ctx)) {
      *out_strides = {N, b * N, 1};
    }
  }

  uint16_t GetBatchSize(void) const { return batch_size_; }

  std::tuple<uint32_t, uint32_t, uint32_t> GetOffsets() const {
    return std::make_tuple(x_offset_, y_offset_, out_offset_);
  }

  dnnl::primitive_attr CreateMatmulAttrs(const ExecutionContext &ctx) {
    dnnl::primitive_attr matmul_attrs;
    dnnl::post_ops post_operations;

    float scale_out = ComputeOutputScale(ctx);
    if (scale_out != 1.0f) {
      matmul_attrs.set_output_scales(0, {scale_out});
    }
    paddle::platform::AppendActivation(ctx, post_operations);

    matmul_attrs.set_post_ops(post_operations);
    return matmul_attrs;
  }

 private:
  uint32_t x_offset_;
  uint32_t y_offset_;
  uint32_t out_offset_;
  uint16_t batch_size_;
};

/**
 * Reshape a tensor to 3-D or 2-D tensor by matrix descriptor.
 *
 * The shape would be [BatchSize, H, W] or [H, W].
 * If transposed, `H,W` will be swapped.
 */
static void ReshapeTensorToMatrixSequence(
    Tensor *x, const phi::funcs::MatDescriptor &descriptor) {
  int64_t h, w;
  h = descriptor.height_;
  w = descriptor.width_;
  if (descriptor.trans_) {
    std::swap(w, h);
  }
  if (descriptor.batch_size_) {
    x->Resize({descriptor.batch_size_, h, w});
  } else {
    x->Resize({h, w});
  }
}

/**
 * Reshape the x,y,out tensor to 3-D or 2-D tensor by matrix descriptor
 * Out = matmul(x, y)
 *
 * This method will first calculate X,Y matrix sequence, and then calculate
 * the out shape.
 *
 * Assume X = [BatchSize, H1, W1], Y = [BatchSize, H2, W2]
 * The out = [BatchSize, H1, W2]
 *
 * If there is no batch size in `X` and `Y`, the out will be [H1, W2]
 * If any of `X` and `Y` has batch size BatchSize, the out will have the
 * BatchSize.
 */
static void ReshapeXYOutToMatrixSequence(
    Tensor *x, Tensor *y, Tensor *out, bool trans_x, bool trans_y) {
  auto x_dim = RowMatrixDimsFromVector(x->dims());
  auto y_dim = ColumnMatrixDimsFromVector(y->dims());
  auto mat_dim_x = phi::funcs::CreateMatrixDescriptor(x_dim, 0, trans_x);
  auto mat_dim_y = phi::funcs::CreateMatrixDescriptor(y_dim, 0, trans_y);
  if (mat_dim_x.batch_size_ == 0 && mat_dim_y.batch_size_ == 0) {
    out->Resize({mat_dim_x.height_, mat_dim_y.width_});
  } else {
    out->Resize({std::max(mat_dim_x.batch_size_, mat_dim_y.batch_size_),
                 mat_dim_x.height_,
                 mat_dim_y.width_});
  }

  ReshapeTensorToMatrixSequence(x, mat_dim_x);
  ReshapeTensorToMatrixSequence(y, mat_dim_y);
}

// Choose appropriate Handler instances based on inferred
// output type (uint8, int8 or float).
template <typename XT, typename YT>
static void ExecuteMatMul(const ExecutionContext &ctx) {
  constexpr bool is_int8 = IsInt8<XT>();
  constexpr bool is_bfloat16 = IsBfloat16<XT>();
  const bool force_fp32_output = ctx.Attr<bool>("force_fp32_output");
  constexpr bool fuse_relu = false;  // TODO(intel): Enable eltwise fuses
  auto *x = ctx.Input<Tensor>("X");
  auto *y = ctx.Input<Tensor>("Y");
  auto *out = ctx.Output<Tensor>("Out");
  const auto &dev_ctx =
      ctx.template device_context<paddle::platform::MKLDNNDeviceContext>();
  const auto &onednn_engine = dev_ctx.GetEngine();

  if (force_fp32_output || ((!is_int8) && (!is_bfloat16))) {
    MatMulMKLDNNHandler<XT, YT, float>(onednn_engine, ctx).Execute(x, y, out);
  } else if (is_bfloat16) {
    MatMulMKLDNNHandler<XT, YT, paddle::platform::bfloat16>(onednn_engine, ctx)
        .Execute(x, y, out);
  } else if (fuse_relu) {
    MatMulMKLDNNHandler<XT, YT, uint8_t>(onednn_engine, ctx).Execute(x, y, out);
  } else {
    MatMulMKLDNNHandler<XT, YT, int8_t>(onednn_engine, ctx).Execute(x, y, out);
  }
}

template <typename T>
class MatMulMKLDNNKernel : public paddle::framework::OpKernel<T> {
 public:
  void Compute(const ExecutionContext &ctx) const override {
    if (ctx.HasAttr("head_number")) {
      PADDLE_ENFORCE_EQ(
          ctx.Attr<int>("head_number"),
          1,
          paddle::platform::errors::Unimplemented(
              "oneDNN matmul doesn't support multiple heads. Expected "
              "head_number=1. But received `head_number` is %d",
              ctx.Attr<int>("head_number")));
    }
    ExecuteMatMul<T, T>(ctx);
  }
};

static std::vector<int64_t> Transpose(const std::vector<int64_t> &x,
                                      const std::vector<int> &axis) {
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  size_t in_rank = x.size();
  size_t axis_size = axis.size();

  auto axis_set = std::set<int>(axis.begin(), axis.end());
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  PADDLE_ENFORCE_EQ(axis_set.size(),
                    axis_size,
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                    paddle::platform::errors::InvalidArgument(
                        "In an axis array, elements must be unique."));

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  PADDLE_ENFORCE_EQ(in_rank,
                    axis_size,
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                    paddle::platform::errors::InvalidArgument(
                        "The input dimension's size "
                        "should be equal to the axis's size. "
                        "But received dimension is %d, "
                        "axis's size is %d",
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                        in_rank,
                        axis_size));
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  PADDLE_ENFORCE_LT(*std::max_element(axis.begin(), axis.end()),
                    axis_size,
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                    paddle::platform::errors::InvalidArgument(
                        "Axis values must be ranging from 0 to (dims - 1)."));

  std::vector<int64_t> new_x(x.size());
  for (size_t i = 0; i < x.size(); i++) {
    new_x[i] = x[axis[i]];
  }
  return new_x;
}

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std::vector<int64_t> GetInputStrides(const ExecutionContext &ctx,
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                                     const std::string input_name) {
  auto shape = ctx.Attr<std::vector<int>>("fused_reshape_" + input_name);
  auto axis = ctx.Attr<std::vector<int>>("fused_transpose_" + input_name);
  auto input_dims = ctx.Input<Tensor>(input_name)->dims();
  auto new_dims = input_dims;
  if (!shape.empty() && !axis.empty()) {
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    auto it_zero = std::find(shape.begin(), shape.end(), 0);
    if (it_zero != shape.end()) {
      for (uint64_t i = 0; i < shape.size(); i++) {
        if (shape[i] == 0) {
          PADDLE_ENFORCE_LT(i,
                            input_dims.size(),
                            paddle::platform::errors::InvalidArgument(
                                "The index of 0 in fused_reshape_%s ",
                                "should be less than output dim size, ",
                                "but the index is %d and output dim size is %d",
                                input_name,
                                i,
                                input_dims.size()));
          shape[i] = input_dims.at(i);
        }
      }
    }
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    new_dims = input_dims.reshape(shape).transpose(axis);
  }

619
  auto &MatrixDimsFromVector =
620
      input_name == "X" ? RowMatrixDimsFromVector : ColumnMatrixDimsFromVector;
621
  phi::funcs::MatDescriptor mat_dim = phi::funcs::CreateMatrixDescriptor(
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      MatrixDimsFromVector(new_dims),
      0,
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      ctx.HasAttr("trans_x")
          ? ctx.Attr<bool>(std::string("trans_") +
                           static_cast<char>(std::tolower(input_name[0])))
          : ctx.Attr<bool>(std::string("transpose_") + input_name[0]));
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  std::vector<int64_t> strides;
  if (!shape.empty()) {
    auto shape2 = input_dims.reshape(shape);
    strides.push_back(1);
    for (auto i = shape2.size() - 1; i > 0; --i) {
      strides.insert(strides.begin(),
                     strides.front() * static_cast<int64_t>(shape2[i]));
    }
    strides = Transpose(strides, axis);
    if (shape.size() == 2)
      strides.insert(strides.begin(),
                     static_cast<int64_t>(shape[0] * shape[1]));
    mat_dim.stride_ = strides[0];
    if (mat_dim.trans_) std::swap(*strides.rbegin(), *(++strides.rbegin()));
  }
  return strides;
}

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bool IsOutputFused(const ExecutionContext &ctx) {
  auto &fused_reshape_Out = ctx.Attr<std::vector<int>>("fused_reshape_Out");
  auto &fused_transpose_Out = ctx.Attr<std::vector<int>>("fused_transpose_Out");
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  return !fused_reshape_Out.empty() && !fused_transpose_Out.empty();
}

653
float ComputeOutputScale(const ExecutionContext &ctx) {
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  float scale_x = ctx.Attr<float>("Scale_x");
  float scale_y = ctx.Attr<float>("Scale_y");
  bool force_fp32_out = ctx.Attr<bool>("force_fp32_output");
  float scale_out = force_fp32_out ? 1.f : ctx.Attr<float>("Scale_out");
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  float alpha = ctx.HasAttr("alpha") ? ctx.Attr<float>("alpha") : 1.0f;
  return alpha * scale_out / (scale_x * scale_y);
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}
661

662
template <typename T>
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void ExecuteMatMulV2(const ExecutionContext &ctx,
                     const MKLDNNDeviceContext &dev_ctx,
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                     const dnnl::engine onednn_engine,
666
                     paddle::platform::Place cpu_place,
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                     const Tensor *x,
                     const std::vector<int64_t> &x_dims,
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                     bool trans_x,
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                     const Tensor *y,
                     const std::vector<int64_t> &y_dims,
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                     bool trans_y,
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                     Tensor *out,
                     const std::vector<int64_t> &out_dims,
675
                     int execution_number = 0) {
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  std::vector<int64_t> x_strides_override = GetInputStrides(ctx, "X");
  std::vector<int64_t> y_strides_override = GetInputStrides(ctx, "Y");
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  MatMulV2MKLDNNHandler<T> handler(ctx,
                                   onednn_engine,
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                                   ctx.GetPlace(),
                                   x_dims,
                                   trans_x,
                                   y_dims,
                                   trans_y,
                                   IsOutputFused(ctx),
                                   x_strides_override,
                                   y_strides_override);
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  const auto src_memory_p = handler.AcquireSrcMemory(x);
  const auto weights_memory_p = handler.AcquireWeightsMemory(y);
  const auto dst_memory_p = handler.AcquireDstMemory(out);
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693
  auto matmul_p = handler.AcquireForwardPrimitive();
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  std::unordered_map<int, memory> matmul_args = {
      {DNNL_ARG_SRC, *src_memory_p},
      {DNNL_ARG_WEIGHTS, *weights_memory_p},
      {DNNL_ARG_DST, *dst_memory_p}};
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  if (ctx.HasInput("ResidualData")) {
    auto *residual_data = ctx.Input<Tensor>("ResidualData");
    const auto residual_data_memory_p = handler.AcquireSrcMemory(residual_data);
    matmul_args.insert({DNNL_ARG_ATTR_MULTIPLE_POST_OP(0) | DNNL_ARG_SRC_1,
                        *residual_data_memory_p});
  }

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  auto &astream = MKLDNNDeviceContext::tls().get_stream();
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  matmul_p->execute(astream, matmul_args);
  astream.wait();
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  auto format = paddle::platform::MKLDNNFormatForSize(
      out->dims().size(), dnnl::memory::format_tag::nchw);
  out->set_layout(paddle::framework::DataLayout::kMKLDNN);
  out->set_format(format);
}

template <typename T>
class MatMulV2MKLDNNKernel : public paddle::framework::OpKernel<T> {
 public:
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  void Compute(const ExecutionContext &ctx) const override { RunKernel(ctx); }
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 private:
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  void CalculateMatrixDims(const ExecutionContext &ctx,
                           const std::vector<int64_t> &x_dims,
                           const std::vector<int64_t> &y_dims,
                           std::vector<int64_t> *x_bd_dims,
                           std::vector<int64_t> *y_bd_dims,
                           std::vector<int64_t> *out_dims,
                           Tensor *out) const {
730
    if (x_dims.size() == 1) {
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      (*x_bd_dims)[(*x_bd_dims).size() - 1] = x_dims[0];
732
    } else if (x_dims.size() == 2) {
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      (*x_bd_dims)[(*x_bd_dims).size() - 1] = x_dims[1];
      (*x_bd_dims)[(*x_bd_dims).size() - 2] = x_dims[0];
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    } else {
      for (size_t i = 0; i < x_dims.size(); ++i) {
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        (*x_bd_dims)[(*x_bd_dims).size() - x_dims.size() + i] = x_dims[i];
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      }
    }
    if (y_dims.size() == 1) {
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      (*y_bd_dims)[(*x_bd_dims).size() - 2] = y_dims[0];
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    } else if (y_dims.size() == 2) {
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      (*y_bd_dims)[(*y_bd_dims).size() - 1] = y_dims[1];
      (*y_bd_dims)[(*y_bd_dims).size() - 2] = y_dims[0];
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    } else {
      for (size_t i = 0; i < y_dims.size(); ++i) {
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        (*y_bd_dims)[(*y_bd_dims).size() - y_dims.size() + i] = y_dims[i];
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      }
    }

751
    if (!IsOutputFused(ctx) && x_dims.size() > 2 && y_dims.size() > 2) {
752
      for (size_t i = 0; i < (*x_bd_dims).size() - 2; ++i) {
753
        PADDLE_ENFORCE_EQ(
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            (*x_bd_dims)[i] == (*y_bd_dims)[i] || (*x_bd_dims)[i] == 1 ||
                (*y_bd_dims)[i] == 1,
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            true,
            paddle::platform::errors::InvalidArgument(
                "Tensor dimensions are incorrect for broadcasting."
                "Dimensions in X and Y must be same or equal to 1, but "
                "received x_dim[%d]=%d and y_dims[%d]= %d",
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                i,
                (*x_bd_dims)[i],
                i,
                (*y_bd_dims)[i]));
        (*out_dims)[i] = std::max((*x_bd_dims)[i], (*y_bd_dims)[i]);
766
      }
767
      out->Resize(phi::make_ddim((*out_dims)));
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    }
  }

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  void RunKernel(const ExecutionContext &ctx) const {
    const auto &dev_ctx = ctx.template device_context<MKLDNNDeviceContext>();
    const auto &onednn_engine = dev_ctx.GetEngine();
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    auto *x = ctx.Input<Tensor>("X");
    auto *y = ctx.Input<Tensor>("Y");
    auto *out = ctx.Output<Tensor>("Out");
    bool trans_x = ctx.HasAttr("trans_x") ? ctx.Attr<bool>("trans_x")
                                          : ctx.Attr<bool>("transpose_X");
    bool trans_y = ctx.HasAttr("trans_y") ? ctx.Attr<bool>("trans_y")
                                          : ctx.Attr<bool>("transpose_Y");
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    auto x_dims = vectorize(GetDimForInput(ctx, "X"));
    auto y_dims = vectorize(GetDimForInput(ctx, "Y"));
785
    auto out_dims = vectorize(out->dims());
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787
    int ndims = std::max(x_dims.size(), y_dims.size());
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    ndims = std::max(ndims, 3);

    std::vector<int64_t> x_bd_dims(ndims, 1);
    std::vector<int64_t> y_bd_dims(ndims, 1);

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    CalculateMatrixDims(
        ctx, x_dims, y_dims, &x_bd_dims, &y_bd_dims, &out_dims, out);

    ExecuteMatMulV2<T>(ctx,
                       dev_ctx,
                       onednn_engine,
                       ctx.GetPlace(),
                       x,
                       x_bd_dims,
                       trans_x,
                       y,
                       y_bd_dims,
                       trans_y,
                       out,
807
                       out_dims);
808 809
  }
};
810

811
template <typename T>
812
class MatMulV2GradMKLDNNKernel : public paddle::framework::OpKernel<T> {
813
 public:
814
  void Compute(const ExecutionContext &ctx) const override { RunKernel(ctx); }
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816
 private:
817 818 819 820 821 822 823
  void CalculateGradMatrixDims(const ExecutionContext &ctx,
                               Tensor *dx_tmp,
                               Tensor *dy_tmp,
                               const std::vector<int64_t> &dx_dims,
                               const std::vector<int64_t> &dy_dims,
                               std::vector<int64_t> *dx_bd_dims,
                               std::vector<int64_t> *dy_bd_dims) const {
824 825 826
    for (size_t i = 0; i < dx_dims.size() - 2; ++i) {
      if (dx_dims[i] != dy_dims[i]) {
        if (dx_dims[i] == 1) {
827
          (*dx_bd_dims)[i] = dy_dims[i];
828
        } else {
829
          (*dy_bd_dims)[i] = dx_dims[i];
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        }
      }
    }
833

834
    dx_tmp->Resize(phi::make_ddim((*dx_bd_dims)));
835
    dx_tmp->mutable_data<T>(ctx.GetPlace());
836
    dy_tmp->Resize(phi::make_ddim((*dy_bd_dims)));
837 838 839
    dy_tmp->mutable_data<T>(ctx.GetPlace());
  }

840
  void ReduceSumForMatmulGradOutput(
841 842
      const ExecutionContext &ctx,
      const MKLDNNDeviceContext &dev_ctx,
843
      const dnnl::engine onednn_engine,
844 845 846 847
      const Tensor *dx_tmp,
      Tensor *dx,
      const std::vector<int64_t> &dx_dims,
      const std::vector<int64_t> &squeezed_dims) const {
848
    paddle::platform::ReductionMKLDNNHandler<T> handler(
849 850 851 852 853 854 855 856
        dnnl::algorithm::reduction_sum,
        0.0f,
        0.0f,
        onednn_engine,
        ctx.GetPlace(),
        dx_tmp,
        dx,
        dx_dims);
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    auto src_memory_p = handler.AcquireSrcMemory(dx_tmp);
    auto dst_memory_p = handler.AcquireDstMemory(dx);

    std::unordered_map<int, dnnl::memory> reduction_args = {
        {DNNL_ARG_SRC, *src_memory_p}, {DNNL_ARG_DST, *dst_memory_p}};
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864
    auto &astream = MKLDNNDeviceContext::tls().get_stream();
865 866 867
    auto reduction_p = handler.AcquireForwardPrimitive();

    reduction_p->execute(astream, reduction_args);
868
    astream.wait();
869 870 871 872 873

    dx->set_format(paddle::platform::GetMKLDNNFormat(
        dst_memory_p->get_desc().reshape(squeezed_dims)));
  }

874
  std::vector<int64_t> ExtendDimsWithOnes(const std::vector<int64_t> &dims,
875 876 877 878 879 880 881
                                          int new_size) const {
    std::vector<int64_t> new_dims(new_size, 1);
    for (size_t i = 0; i < dims.size(); ++i) {
      new_dims[new_size - dims.size() + i] = dims[i];
    }

    return new_dims;
882
  }
883

884 885 886
  void RunKernel(const ExecutionContext &ctx) const {
    const auto &dev_ctx = ctx.template device_context<MKLDNNDeviceContext>();
    const auto &onednn_engine = dev_ctx.GetEngine();
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888 889
    auto *x = ctx.Input<Tensor>("X");
    auto *y = ctx.Input<Tensor>("Y");
890 891 892 893 894 895 896 897 898 899

    auto x_dims = vectorize(x->dims());
    auto y_dims = vectorize(y->dims());

    bool is_broadcast = true;
    if (x_dims.size() <= 2 || y_dims.size() <= 2) {
      is_broadcast = false;
    } else if (x_dims.size() != y_dims.size()) {
      is_broadcast = true;
    } else {
900 901 902
      is_broadcast = !std::equal(x_dims.cbegin(),
                                 x_dims.cbegin() + x_dims.size() - 2,
                                 y_dims.cbegin());
903 904 905 906 907
    }

    // if no broadcasting is needed, we can simply use matmul's grad and avoid
    // using reduce_sum
    if (!is_broadcast) {
908
      matmul_v1_grad_mkldnn_kernel.Compute(ctx);
909 910 911
      return;
    }

912 913 914
    auto *dout = ctx.Input<Tensor>(GradVarName("Out"));
    auto *dx = ctx.Output<Tensor>(GradVarName("X"));
    auto *dy = ctx.Output<Tensor>(GradVarName("Y"));
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916 917 918 919
    bool trans_x = ctx.HasAttr("trans_x") ? ctx.Attr<bool>("trans_x")
                                          : ctx.Attr<bool>("transpose_X");
    bool trans_y = ctx.HasAttr("trans_y") ? ctx.Attr<bool>("trans_y")
                                          : ctx.Attr<bool>("transpose_Y");
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    auto dout_dims = vectorize(dout->dims());

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    size_t ndims = std::max(x->dims().size(), y->dims().size());
    ndims = std::max<size_t>(ndims, 3);

    if (x_dims.size() != ndims) {
      x_dims = ExtendDimsWithOnes(x_dims, ndims);
    } else if (y_dims.size() != ndims) {
      y_dims = ExtendDimsWithOnes(y_dims, ndims);
    }
930 931 932 933 934 935 936 937

    // in broadcasting scenario new memory is required because
    // reduce sum must be calculated upon broadcasted dims
    Tensor dx_tmp, dy_tmp;

    std::vector<int64_t> dx_bd_dims(x_dims);
    std::vector<int64_t> dy_bd_dims(y_dims);

938 939
    CalculateGradMatrixDims(
        ctx, &dx_tmp, &dy_tmp, x_dims, y_dims, &dx_bd_dims, &dy_bd_dims);
940 941

    if (trans_x && trans_y) {
942 943 944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         y,
                         y_dims,
                         true,
                         dout,
                         dout_dims,
                         true,
                         &dx_tmp,
                         dx_bd_dims,
                         1);
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         dout,
                         dout_dims,
                         true,
                         x,
                         x_dims,
                         true,
                         &dy_tmp,
                         dy_bd_dims,
967
                         2);
968
    } else if (trans_x) {
969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         y,
                         y_dims,
                         false,
                         dout,
                         dout_dims,
                         true,
                         &dx_tmp,
                         dx_bd_dims,
                         1);
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         x,
                         x_dims,
                         false,
                         dout,
                         dout_dims,
                         false,
                         &dy_tmp,
                         dy_bd_dims,
                         2);
995
    } else if (trans_y) {
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      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         dout,
                         dout_dims,
                         false,
                         y,
                         y_dims,
                         false,
                         &dx_tmp,
                         dx_bd_dims,
                         1);
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         dout,
                         dout_dims,
                         true,
                         x,
                         x_dims,
                         false,
                         &dy_tmp,
                         dy_bd_dims,
1021
                         2);
1022
    } else {
1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         dout,
                         dout_dims,
                         false,
                         y,
                         y_dims,
                         true,
                         &dx_tmp,
                         dx_bd_dims,
1035
                         1);
1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048
      ExecuteMatMulV2<T>(ctx,
                         dev_ctx,
                         onednn_engine,
                         ctx.GetPlace(),
                         x,
                         x_dims,
                         true,
                         dout,
                         dout_dims,
                         false,
                         &dy_tmp,
                         dy_bd_dims,
                         2);
1049 1050 1051
    }

    if (x_dims != dx_bd_dims) {
1052 1053 1054 1055 1056 1057 1058
      ReduceSumForMatmulGradOutput(ctx,
                                   dev_ctx,
                                   onednn_engine,
                                   &dx_tmp,
                                   dx,
                                   x_dims,
                                   phi::vectorize(x->dims()));
1059 1060 1061 1062
    } else {
      *dx = std::move(dx_tmp);
    }
    if (y_dims != dy_bd_dims) {
1063 1064 1065 1066 1067 1068 1069
      ReduceSumForMatmulGradOutput(ctx,
                                   dev_ctx,
                                   onednn_engine,
                                   &dy_tmp,
                                   dy,
                                   y_dims,
                                   phi::vectorize(y->dims()));
1070 1071 1072 1073
    } else {
      *dy = std::move(dy_tmp);
    }

1074 1075
    dx->Resize(x->dims());
    dy->Resize(y->dims());
1076
  }
1077 1078 1079

 private:
  paddle::operators::MatMulGradMKLDNNKernel<T> matmul_v1_grad_mkldnn_kernel;
1080
};
1081
}  // anonymous namespace
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namespace paddle {
namespace operators {

template <typename T>
void MatMulGradMKLDNNKernel<T>::Compute(const ExecutionContext &ctx) const {
  if (ctx.HasAttr("head_number")) {
    PADDLE_ENFORCE_EQ(
        ctx.Attr<int>("head_number"),
        1,
        platform::errors::Unimplemented(
            "oneDNN matmul doesn't support multiple heads. Expected "
            "head_number=1. But received `head_number` is %d",
            ctx.Attr<int>("head_number")));
  }
  RunKernel(ctx);
}

template <typename T>
void MatMulGradMKLDNNKernel<T>::ExecuteMatMulGrad(
    const ExecutionContext &ctx,
    const MKLDNNDeviceContext &dev_ctx,
    const dnnl::engine &engine,
    Tensor *x,
    bool trans_x,
    bool is_fold_init_dims_x,
    Tensor *y,
    bool trans_y,
    bool is_fold_init_dims_y,
    Tensor *out) const {
  // gradient is calculated in a different way when broadcasting is used
  bool need_combine = (x->dims().size() == 3 || y->dims().size() == 3) &&
                      out->dims().size() == 2;

  Tensor x_combined, y_combined;
  if (!need_combine) {
    x_combined = *x;
    y_combined = *y;
  } else {
    x_combined = is_fold_init_dims_x ? FoldOuterDims(*x)
                                     : FoldFirstAndLastDims<T>(dev_ctx, x);
    y_combined = is_fold_init_dims_y ? FoldOuterDims(*y)
                                     : FoldFirstAndLastDims<T>(dev_ctx, y);
  }

  float alpha = ctx.HasAttr("alpha") ? ctx.Attr<float>("alpha") : 1.0f;

  MatMulMKLDNNHandler<T, T, T> handler(engine,
                                       ctx.GetPlace(),
                                       &x_combined,
                                       trans_x,
                                       &y_combined,
                                       trans_y,
                                       out,
                                       alpha);

  const auto src_memory_p = handler.AcquireSrcMemory(&x_combined);
  const auto weights_memory_p = handler.AcquireWeightsMemory(&y_combined);
  const auto dst_memory_p = handler.AcquireDstMemory(out);

  auto matmul_p = handler.AcquireForwardPrimitive();

  std::unordered_map<int, dnnl::memory> matmul_args = {
      {DNNL_ARG_SRC, *src_memory_p},
      {DNNL_ARG_WEIGHTS, *weights_memory_p},
      {DNNL_ARG_DST, *dst_memory_p}};

  auto &astream = platform::MKLDNNDeviceContext::tls().get_stream();
  matmul_p->execute(astream, matmul_args);
  astream.wait();

  out->set_layout(framework::DataLayout::kMKLDNN);
  out->set_format(platform::GetMKLDNNFormat(
      dst_memory_p->get_desc().reshape(vectorize<int64_t>(out->dims()))));
}

template <typename T>
void MatMulGradMKLDNNKernel<T>::RunKernel(const ExecutionContext &ctx) const {
  const auto &dev_ctx =
      ctx.template device_context<platform::MKLDNNDeviceContext>();
  const auto &onednn_engine = dev_ctx.GetEngine();

  auto x = *ctx.Input<Tensor>("X");
  auto y = *ctx.Input<Tensor>("Y");
  auto dout = *ctx.Input<Tensor>(framework::GradVarName("Out"));
  auto *dx = ctx.Output<Tensor>(framework::GradVarName("X"));
  auto *dy = ctx.Output<Tensor>(framework::GradVarName("Y"));

  bool transpose_x = ctx.HasAttr("transpose_X") ? ctx.Attr<bool>("transpose_X")
                                                : ctx.Attr<bool>("trans_x");
  bool transpose_y = ctx.HasAttr("transpose_Y") ? ctx.Attr<bool>("transpose_Y")
                                                : ctx.Attr<bool>("trans_y");

  ReshapeXYOutToMatrixSequence(&x, &y, &dout, transpose_x, transpose_y);

  framework::DDim dx_dims;
  if (dx) {
    dx_dims = dx->dims();
    if (dx_dims != x.dims()) {
      dx->Resize(x.dims());
    }
  }

  framework::DDim dy_dims;
  if (dy) {
    dy_dims = dy->dims();
    if (dy_dims != y.dims()) {
      dy->Resize(y.dims());
    }
  }

  if (transpose_x && transpose_y) {
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &y, true, true, &dout, true, false, dx);
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &dout, true, true, &x, true, false, dy);
  } else if (transpose_x) {
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &y, false, false, &dout, true, false, dx);
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &x, false, false, &dout, false, true, dy);
  } else if (transpose_y) {
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &dout, false, false, &y, false, true, dx);
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &dout, true, true, &x, false, true, dy);
  } else {
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &dout, false, false, &y, true, false, dx);
    this->ExecuteMatMulGrad(
        ctx, dev_ctx, onednn_engine, &x, true, true, &dout, false, true, dy);
  }

  if (dx) {
    if (dx_dims != x.dims()) {
      dx->Resize(dx_dims);
      dx->set_format(x.format());
    }
  }
  if (dy) {
    if (dy_dims != y.dims()) {
      dy->Resize(dy_dims);
      dy->set_format(y.format());
    }
  }
}

template class MatMulGradMKLDNNKernel<float>;
template class MatMulGradMKLDNNKernel<paddle::platform::bfloat16>;

}  // namespace operators
}  // namespace paddle

namespace ops = paddle::operators;

REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(matmul,
                                    MKLDNN,
                                    ::paddle::platform::CPUPlace,
                                    S8,
                                    0,
                                    MatMulMKLDNNKernel<int8_t>);

REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(matmul,
                                    MKLDNN,
                                    ::paddle::platform::CPUPlace,
                                    U8,
                                    0,
                                    MatMulMKLDNNKernel<uint8_t>);

REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(matmul,
                                    MKLDNN,
                                    ::paddle::platform::CPUPlace,
                                    FP32,
                                    0,
                                    MatMulV2MKLDNNKernel<float>);

REGISTER_OP_KERNEL_WITH_CUSTOM_TYPE(
    matmul,
    MKLDNN,
    ::paddle::platform::CPUPlace,
    BF16,
    0,
    MatMulV2MKLDNNKernel<paddle::platform::bfloat16>);

REGISTER_OP_KERNEL(matmul_grad,
                   MKLDNN,
                   ::paddle::platform::CPUPlace,
                   ops::MatMulGradMKLDNNKernel<float>,
                   ops::MatMulGradMKLDNNKernel<paddle::platform::bfloat16>);

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REGISTER_OP_KERNEL(matmul_v2,
                   MKLDNN,
                   ::paddle::platform::CPUPlace,
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                   MatMulV2MKLDNNKernel<float>,
                   MatMulV2MKLDNNKernel<paddle::platform::bfloat16>);
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REGISTER_OP_KERNEL(matmul_v2_grad,
                   MKLDNN,
                   ::paddle::platform::CPUPlace,
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                   MatMulV2GradMKLDNNKernel<float>,
                   MatMulV2GradMKLDNNKernel<paddle::platform::bfloat16>);