elementwise_op_function.h 109.4 KB
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/* Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved.
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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
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    http://www.apache.org/licenses/LICENSE-2.0
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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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#pragma once
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#include <glog/logging.h>
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#include <algorithm>
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#include <functional>  // for multiplies
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#include <iterator>
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#include <vector>
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#include "paddle/fluid/framework/eigen.h"
#include "paddle/fluid/framework/op_registry.h"
#include "paddle/fluid/framework/operator.h"
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#include "paddle/fluid/memory/malloc.h"
#include "paddle/fluid/operators/elementwise/elementwise_op_function.cu.h"
#include "paddle/fluid/platform/gpu_info.h"
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#include "paddle/fluid/platform/transform.h"
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#if defined(__NVCC__) || defined(__HIPCC__)
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#ifdef __NVCC__
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#include <cuda.h>
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#elif defined(__HIPCC__)
#include <hip/hip_runtime.h>
#endif
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#include <thrust/iterator/iterator_adaptor.h>
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#include "paddle/fluid/platform/cuda_device_function.h"
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#include "paddle/fluid/platform/cuda_primitives.h"
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#ifdef __HIPCC__
constexpr int ELEMWISE_MAX_BLOCK_DIM = 256;
#else
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constexpr int ELEMWISE_MAX_BLOCK_DIM = 1024;
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#endif
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#define BLOCK_X 32
#define BLOCK_Y 32
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#endif

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#include "paddle/fluid/operators/math/math_function.h"
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#include "paddle/fluid/platform/for_range.h"
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#define GetDivMod(dividend, divisor, div, mod) \
  do {                                         \
    const auto dividend_copy = dividend;       \
    *div = dividend_copy / divisor;            \
    *mod = dividend_copy % divisor;            \
  } while (0)
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namespace paddle {
namespace operators {

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/*
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*  Pack input and output tensors into respective vectors with
*  consideration of varible X`s class type.
*  Input variable X is supported to be whether LoDTensor or
*  SelectedRows class type in this package function, once X
*  was SelectedRows type, a valid pointer x_for_selectedrows
*  is excepted to be passed in from op kernel for acquisition
*  of the valid address of LoDTensor created ahead in the function.
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*/
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template <typename OutT>
int PackTensorsIntoVector(const framework::ExecutionContext &ctx,
                          std::vector<const framework::Tensor *> *ins,
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                          std::vector<framework::Tensor *> *outs,
                          framework::Tensor *x_for_selectedrows = nullptr) {
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  int axis = -1;
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  auto x_var = ctx.InputVar("X");
  PADDLE_ENFORCE_NOT_NULL(
      x_var, platform::errors::InvalidArgument(
                 "Unable to get input Variable X, Variable name is %s.\n",
                 ctx.InputName("X")));
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  auto *y = ctx.Input<framework::LoDTensor>("Y");
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  framework::Tensor *z;

  if (x_var->IsType<framework::LoDTensor>()) {
    auto *x = ctx.Input<framework::LoDTensor>("X");
    z = ctx.Output<framework::LoDTensor>("Out");
    ins->emplace_back(x);
  } else if (x_var->IsType<framework::SelectedRows>()) {
    PADDLE_ENFORCE_EQ(y->dims().size() == 1 && y->dims()[0] == 1, true,
                      platform::errors::InvalidArgument(
                          "For elementwise_op, if X is Sparse, Y must be "
                          "scalar. But reveived the size of Y = %d.",
                          y->dims().size()));
    PADDLE_ENFORCE_NOT_NULL(
        x_for_selectedrows,
        platform::errors::InvalidArgument(
            "The parameter x_for_selectedrows is excepted to "
            "be valid, once input varible X`s class type is "
            "SelectedRows.\n"));
    auto &x_sele = x_var->Get<framework::SelectedRows>();
    auto out_sele = ctx.Output<framework::SelectedRows>("Out");
    *x_for_selectedrows = x_sele.value();
    out_sele->set_rows(x_sele.rows());
    out_sele->set_height(x_sele.height());
    out_sele->mutable_value()->Resize(x_sele.value().dims());
    out_sele->mutable_value()->mutable_data(ctx.GetPlace(),
                                            x_for_selectedrows->type());
    z = ctx.Output<framework::SelectedRows>("Out")->mutable_value();
    ins->emplace_back(x_for_selectedrows);
  } else {
    PADDLE_THROW(platform::errors::InvalidArgument(
        "X's type[%s] is not supported by elementwise_op. X's type should be "
        "LoDTensor or SelectedRows.",
        framework::ToTypeName(x_var->Type())));
  }
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  z->mutable_data<OutT>(ctx.GetPlace());
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  outs->emplace_back(z);

  if (y != nullptr) {
    ins->emplace_back(y);
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    axis = ctx.HasAttr("axis") ? ctx.Attr<int>("axis") : -1;
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  }
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  return axis;
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}

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/*
 * Out = X ⊙ Y
 * If Y's shape does not match X' shape, they will be reshaped.
 * For example:
 * 1. shape(X) = (2, 3, 4, 5), shape(Y) = (3, 4), with axis=1
 *    pre=2, n=3*4, post=5
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 *    x.shape(2, 12, 5) * y.shape(1, 12, 1).broadcast(2, 12, 5)
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 * 2. shape(X) = (2, 3, 4, 5), shape(Y) = (4,5)
 *    pre=2*3, n=4*5, post=1
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 *    x.shape(6, 20, 1) * y.shape(1, 20, 1).broadcast(6, 20, 1)
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 *
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 * New parameter: *is_run_common_broadcast* is a flag to record whether to run
 * common broadcast code.
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 */
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inline void get_mid_dims(const framework::DDim &x_dims,
                         const framework::DDim &y_dims, const int axis,
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                         int *pre, int *n, int *post,
                         int *is_run_common_broadcast) {
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  *pre = 1;
  *n = 1;
  *post = 1;
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  *is_run_common_broadcast = 0;
  for (int i = 0; i < axis; ++i) {
    (*pre) *= x_dims[i];
  }
  for (int i = 0; i < y_dims.size(); ++i) {
    if (x_dims[i + axis] != y_dims[i]) {
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      PADDLE_ENFORCE_EQ(y_dims[i] == 1 || x_dims[i + axis] == 1, true,
                        platform::errors::InvalidArgument(
                            "Broadcast dimension mismatch. Operands "
                            "could not be broadcast together with the shape of "
                            "X = [%s] and the shape of Y = [%s]. Received [%d] "
                            "in X is not equal to [%d] in Y.",
                            x_dims, y_dims, x_dims[i + axis], y_dims[i]));
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      *is_run_common_broadcast = 1;
      return;
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    }
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    (*n) *= y_dims[i];
  }
  for (int i = axis + y_dims.size(); i < x_dims.size(); ++i) {
    (*post) *= x_dims[i];
  }
}
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inline int GetElementwiseIndex(const int *x_dims_array, const int max_dim,
                               const int *index_array) {
  int index_ = 0;
  for (int i = 0; i < max_dim; i++) {
    if (x_dims_array[i] > 1) {
      index_ = index_ * x_dims_array[i] + index_array[i];
    }
  }
  return index_;
}

inline void UpdateElementwiseIndexArray(const int *out_dims_array,
                                        const int max_dim, int *index_array) {
  for (int i = max_dim - 1; i >= 0; --i) {
    ++index_array[i];
    if (index_array[i] >= out_dims_array[i]) {
      index_array[i] -= out_dims_array[i];
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    } else {
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      break;
    }
  }
}

inline void GetBroadcastDimsArrays(const framework::DDim &x_dims,
                                   const framework::DDim &y_dims,
                                   int *x_dims_array, int *y_dims_array,
                                   int *out_dims_array, const int max_dim,
                                   const int axis) {
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  PADDLE_ENFORCE_GE(
      axis, 0,
      platform::errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis, max_dim,
                    platform::errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim, axis));
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  if (x_dims.size() > y_dims.size()) {
    std::fill(y_dims_array, y_dims_array + axis, 1);
    if (axis + y_dims.size() < max_dim) {
      std::fill(y_dims_array + axis + y_dims.size(), y_dims_array + max_dim, 1);
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    }
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    std::copy(x_dims.Get(), x_dims.Get() + x_dims.size(), x_dims_array);
    std::copy(y_dims.Get(), y_dims.Get() + y_dims.size(), y_dims_array + axis);
  } else {
    std::fill(x_dims_array, x_dims_array + axis, 1);
    if (axis + x_dims.size() < max_dim) {
      std::fill(x_dims_array + axis + x_dims.size(), x_dims_array + max_dim, 1);
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    }
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    std::copy(x_dims.Get(), x_dims.Get() + x_dims.size(), x_dims_array + axis);
    std::copy(y_dims.Get(), y_dims.Get() + y_dims.size(), y_dims_array);
  }
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  for (int i = 0; i < max_dim; i++) {
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    PADDLE_ENFORCE_EQ(
        x_dims_array[i] == y_dims_array[i] || x_dims_array[i] <= 1 ||
            y_dims_array[i] <= 1,
        true, platform::errors::InvalidArgument(
                  "Broadcast dimension mismatch. Operands could "
                  "not be broadcast together with the shape of X = [%s] and "
                  "the shape of Y = [%s]. Received [%d] in X is not equal to "
                  "[%d] in Y at i:%d.",
                  x_dims, y_dims, x_dims_array[i], y_dims_array[i], i));
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    if ((x_dims_array[i] > 1 || y_dims_array[i] > 1) ||
        (x_dims_array[i] == 1 && y_dims_array[i] == 1)) {
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      out_dims_array[i] = std::max(x_dims_array[i], y_dims_array[i]);
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    } else {
      out_dims_array[i] = -1;
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    }
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  }
}
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template <typename Functor, typename T, typename OutType = T>
void CommonForwardBroadcastCPU(const framework::Tensor *x,
                               const framework::Tensor *y, framework::Tensor *z,
                               int *x_dims_array, int *y_dims_array,
                               int *out_dims_array, int max_dim,
                               const platform::CPUDeviceContext &ctx,
                               Functor func,
                               const bool is_xsize_larger = true) {
  std::vector<int> index_array(max_dim, 0);
  const T *x_data = x->data<T>();
  const T *y_data = y->data<T>();
  OutType *out_data = z->mutable_data<OutType>(ctx.GetPlace());

  const int out_size = std::accumulate(out_dims_array, out_dims_array + max_dim,
                                       1, std::multiplies<int>());
  int x_index, y_index;
  for (int out_index = 0; out_index < out_size; ++out_index) {
    x_index = GetElementwiseIndex(x_dims_array, max_dim, index_array.data());
    y_index = GetElementwiseIndex(y_dims_array, max_dim, index_array.data());
    if (is_xsize_larger) {
      out_data[out_index] = func(x_data[x_index], y_data[y_index]);
    } else {
      out_data[out_index] = func(y_data[y_index], x_data[x_index]);
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    }
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    UpdateElementwiseIndexArray(out_dims_array, max_dim, index_array.data());
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  }
}

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#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename Functor, typename T, typename OutType>
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__global__ void ElementwiseKernel(const T *__restrict__ x_data,
                                  const T *__restrict__ y_data,
                                  OutType *__restrict__ out_data, int n,
                                  int post, const size_t total, Functor func) {
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  int tid = threadIdx.x + blockDim.x * blockIdx.x;
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  int stride = blockDim.x * gridDim.x;

  for (int i = tid; i < total; i += stride) {
    int idx = i / post % n;
    out_data[i] = func(x_data[i], y_data[idx]);
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  }
}

template <typename Functor, typename T, typename OutType>
void ComputeElementwiseCUDA(const framework::Tensor *x,
                            const framework::Tensor *y, framework::Tensor *z,
                            int pre, int n, int post,
                            const platform::CUDADeviceContext &ctx,
                            Functor func, const bool is_xsize_larger = true) {
  const T *x_data = x->data<T>();
  const T *y_data = y->data<T>();
  OutType *out_data = z->mutable_data<OutType>(ctx.GetPlace());

  int numel = pre * n * post;
  int threads = 256;
  int blocks = (numel + threads - 1) / threads;
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  if (is_xsize_larger) {
    ElementwiseKernel<Functor, T,
                      OutType><<<blocks, threads, 0, ctx.stream()>>>(
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        x_data, y_data, out_data, n, post, numel, func);

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  } else {
    ElementwiseKernel<Functor, T,
                      OutType><<<blocks, threads, 0, ctx.stream()>>>(
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        y_data, x_data, out_data, n, post, numel, func);
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  }
}

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template <typename Functor, typename T, typename OutType = T>
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__global__ void CommonForwardBroadcastCUDAKernel(
    const int *x_strides_array, const int *y_strides_array,
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    const int *out_dims_array, const T *x, const T *y, OutType *out,
    int out_size, int max_dim, Functor func, const bool is_xsize_larger) {
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  for (int out_index = blockIdx.x * blockDim.x + threadIdx.x;
       out_index < out_size; out_index += blockDim.x * gridDim.x) {
    int x_index = 0;
    int y_index = 0;
    int out_index_quotient = out_index;
    int remainder = 0;
#pragma unroll
    for (int i = max_dim - 1; i >= 0; --i) {
      GetDivMod(out_index_quotient, out_dims_array[i], &out_index_quotient,
                &remainder);
      x_index += remainder * x_strides_array[i];
      y_index += remainder * y_strides_array[i];
    }
    if (is_xsize_larger) {
      out[out_index] = func(x[x_index], y[y_index]);
    } else {
      out[out_index] = func(y[y_index], x[x_index]);
    }
  }
}

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template <typename Functor, typename T, typename OutType = T>
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void CommonForwardBroadcastCUDA(
    const framework::Tensor *x, const framework::Tensor *y,
    framework::Tensor *z, int *x_dims_array, int *y_dims_array,
    int *out_dims_array, int max_dim, const platform::CUDADeviceContext &ctx,
    Functor func, const bool is_xsize_larger = true) {
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  const auto gplace = BOOST_GET_CONST(platform::CUDAPlace, ctx.GetPlace());
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  auto cplace = platform::CPUPlace();
  const T *x_data = x->data<T>();
  const T *y_data = y->data<T>();
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  OutType *out_data = z->mutable_data<OutType>(ctx.GetPlace());
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  std::vector<int> x_strides_array(max_dim);
  std::vector<int> y_strides_array(max_dim);
  int x_stride = 1;
  int y_stride = 1;
  for (int i = max_dim - 1; i >= 0; i--) {
    x_strides_array[i] = x_dims_array[i] == 1 ? 0 : x_stride;
    y_strides_array[i] = y_dims_array[i] == 1 ? 0 : y_stride;
    x_stride *= x_dims_array[i];
    y_stride *= y_dims_array[i];
  }

  int bytes = max_dim * sizeof(int);
  auto x_strides_array_tmp = memory::Alloc(ctx, bytes);
  int *x_strides_array_gpu =
      reinterpret_cast<int *>(x_strides_array_tmp->ptr());
  memory::Copy(gplace, x_strides_array_gpu, cplace, x_strides_array.data(),
               bytes, ctx.stream());

  auto y_strides_array_tmp = memory::Alloc(ctx, bytes);
  int *y_strides_array_gpu =
      reinterpret_cast<int *>(y_strides_array_tmp->ptr());
  memory::Copy(gplace, y_strides_array_gpu, cplace, y_strides_array.data(),
               bytes, ctx.stream());

  auto out_dims_array_tmp = memory::Alloc(ctx, bytes);
  int *out_dims_array_gpu = reinterpret_cast<int *>(out_dims_array_tmp->ptr());
  memory::Copy(gplace, out_dims_array_gpu, cplace, out_dims_array, bytes,
               ctx.stream());

  const int out_size = std::accumulate(out_dims_array, out_dims_array + max_dim,
                                       1, std::multiplies<int>());
  dim3 gird_size = dim3(
      (out_size + PADDLE_CUDA_THREAD_SIZE - 1) / PADDLE_CUDA_THREAD_SIZE, 1);
  dim3 block_size = dim3(PADDLE_CUDA_THREAD_SIZE, 1);

  CommonForwardBroadcastCUDAKernel<
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      Functor, T, OutType><<<gird_size, block_size, 0, ctx.stream()>>>(
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      x_strides_array_gpu, y_strides_array_gpu, out_dims_array_gpu, x_data,
      y_data, out_data, out_size, max_dim, func, is_xsize_larger);
}

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#endif  // __NVCC__ or __HIPCC__
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template <typename T, typename DX_OP, typename DY_OP>
void CommonGradBroadcastCPU(
    const framework::Tensor &x, const framework::Tensor &y,
    const framework::Tensor &out, const framework::Tensor &dout,
    framework::Tensor *dx, framework::Tensor *dy, int *x_dims_array,
    int *y_dims_array, int *out_dims_array, int max_dim,
    const platform::CPUDeviceContext &ctx, DX_OP dx_op, DY_OP dy_op) {
  std::vector<int> index_array(max_dim, 0);
  const T *x_data = x.data<T>();
  const T *y_data = y.data<T>();
  const T *out_data = out.data<T>();
  const T *dout_data = dout.data<T>();
  T *dx_data = dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace());
  T *dy_data = dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace());
  if (dx_data != nullptr) {
    memset(dx_data, 0, dx->numel() * sizeof(T));
  }
  if (dy_data != nullptr) {
    memset(dy_data, 0, dy->numel() * sizeof(T));
  }
  const int out_size = std::accumulate(out_dims_array, out_dims_array + max_dim,
                                       1, std::multiplies<int>());
  int x_index, y_index;
  for (int out_index = 0; out_index < out_size; ++out_index) {
    x_index = GetElementwiseIndex(x_dims_array, max_dim, index_array.data());
    y_index = GetElementwiseIndex(y_dims_array, max_dim, index_array.data());
    if (dx_data != nullptr) {
      dx_data[x_index] += dx_op(x_data[x_index], y_data[y_index],
                                out_data[out_index], dout_data[out_index]);
    }
    if (dy_data != nullptr) {
      dy_data[y_index] += dy_op(x_data[x_index], y_data[y_index],
                                out_data[out_index], dout_data[out_index]);
    }

    UpdateElementwiseIndexArray(out_dims_array, max_dim, index_array.data());
  }
}

inline void ComputeBroadcastKernelSize(int *x_dims_array, int *out_dims_array,
                                       int *x_blocks, int *x_threads,
                                       int max_dim) {
  *x_blocks = 1;
  *x_threads = 1;
  for (int i = 0; i < max_dim; i++) {
    if (x_dims_array[i] == out_dims_array[i]) {
      *x_blocks *= x_dims_array[i];
    } else {
      *x_threads *= out_dims_array[i];
    }
  }
}

inline void ComputeBroadcastTranspositionArray(const int *x_one_indexs,
                                               int *x_trans_indexs,
                                               const int max_dim,
                                               const int x_one_size) {
  int diff = max_dim - x_one_size;
  std::copy_n(x_one_indexs, x_one_size, x_trans_indexs + diff);
  int p = 0;
  int q = diff;
  for (int i = 0; i < max_dim; ++i) {
    if (q < max_dim && i == x_trans_indexs[q]) {
      ++q;
    } else {
      x_trans_indexs[p++] = i;
    }
  }
}

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#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T, typename DX_OP, typename DY_OP>
static __global__ void ElemwiseGradBroadcast1CUDAKernel(
    const T *x, const T *y, const T *out, const T *dout, int h, int w,
    bool is_xsize_larger, DX_OP dx_op, DY_OP dy_op, T *dx, T *dy) {
  int j = blockIdx.x;
  int i = threadIdx.x;
  int tid = threadIdx.x;
  T val(0);
  if (is_xsize_larger) {
    do {
      int x_offset = i * w + j;
      if (dx) {
        dx[x_offset] = dx_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
      }
      if (dy) {
        val += dy_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
      }
      i += ELEMWISE_MAX_BLOCK_DIM;
    } while (i < h);

    if (dy) {
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
    }
  } else {  // x.dims < y.dims, broadcast for x.
    do {
      int y_offset = i * w + j;
      if (dy) {
        dy[y_offset] = dy_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
      }
      if (dx) {
        val += dx_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
      }
      i += ELEMWISE_MAX_BLOCK_DIM;
    } while (i < h);

    if (dx) {
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dx[j] = val;
      }
    }
  }
}

// suppose use 2D block is fast because more parallel
// and memory coalesced
template <typename T, typename DX_OP, typename DY_OP>
static __global__ void FastElemwiseGradBroadcast1CUDAKernel(
    const T *x, const T *y, const T *out, const T *dout, int h, int w,
    bool is_xsize_larger, DX_OP dx_op, DY_OP dy_op, T *dx, T *dy) {
  __shared__ T sdata[BLOCK_Y][BLOCK_X + 1];

  T val(0);
  size_t width_stride = gridDim.x * blockDim.x;
  size_t idx = threadIdx.x + blockDim.x * blockIdx.x;
  size_t full_width =
      (w & (~((uint64_t)(BLOCK_X - 1)))) + ((w & (BLOCK_X - 1)) ? BLOCK_X : 0);
  size_t full_height =
      (h & (~((uint64_t)(BLOCK_Y - 1)))) + ((h & (BLOCK_Y - 1)) ? BLOCK_Y : 0);
  if (is_xsize_larger) {
    for (int m = idx; m < full_width; m += width_stride) {
      sdata[threadIdx.y][threadIdx.x] = 0;
      for (int n = threadIdx.y; n < full_height; n += BLOCK_Y) {
        int x_offset = n * w + m;
        if (dx && m < w && n < h) {
          dx[x_offset] =
              dx_op(x[x_offset], y[m], out[x_offset], dout[x_offset]);
        }
        if (dy) {
          if (m < w && n < h) {
            T val = dy_op(x[x_offset], y[m], out[x_offset], dout[x_offset]);
            sdata[threadIdx.y][threadIdx.x] += val;
          }
          __syncthreads();
        }
      }
      if (dy) {
        T my_val = sdata[threadIdx.x][threadIdx.y];
        for (int i = warpSize >> 1; i > 0; i >>= 1)
          my_val += platform::CudaShuffleXorSync(0xFFFFFFFF, my_val, i);
        __syncthreads();
        if ((threadIdx.x == 0)) {
          sdata[0][threadIdx.y] = my_val;
        }
        __syncthreads();
        if (threadIdx.y == 0 && m < w) {
          dy[m] = sdata[0][threadIdx.x];
        }
      }
    }
  } else {  // x.dims < y.dims, broadcast for x.
    for (int m = idx; m < full_width; m += width_stride) {
      sdata[threadIdx.y][threadIdx.x] = 0;
      for (int n = threadIdx.y; n < full_height; n += BLOCK_Y) {
        int y_offset = n * w + m;
        if (dy && m < w && n < h) {
          dy[y_offset] =
              dy_op(x[m], y[y_offset], out[y_offset], dout[y_offset]);
        }
        if (dx) {
          if (m < w && n < h) {
            T val = dx_op(x[m], y[y_offset], out[y_offset], dout[y_offset]);
            sdata[threadIdx.y][threadIdx.x] += val;
          }
          __syncthreads();
        }
      }
      if (dx) {
        T my_val = sdata[threadIdx.x][threadIdx.y];
        for (int i = warpSize >> 1; i > 0; i >>= 1)
          my_val += platform::CudaShuffleXorSync(0xFFFFFFFF, my_val, i);
        __syncthreads();
        if ((threadIdx.x == 0)) {
          sdata[0][threadIdx.y] = my_val;
        }
        __syncthreads();
        if (threadIdx.y == 0 && m < w) {
          dx[m] = sdata[0][threadIdx.x];
        }
      }
    }
  }
}

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template <typename T, typename DX_OP>
__global__ void CommonGradBroadcastCUDAKernel(
    const int *x_strides_array, const int *y_strides_array,
    const int *out_dims_array, const int *y_strides_order,
    const int *y_dims_order, const T *x, const T *y, const T *out,
    const T *dout, T *dx, int out_size, int max_dim, int thread_num,
    DX_OP dx_op) {
  T val(0);
  int i = blockIdx.x;
  int tid = threadIdx.x;
  for (int j = tid; j < thread_num; j += blockDim.x) {
    const int X_index = i * thread_num + j;
    int out_index = X_index;
    int C_index = 0;
    int B_index = i * thread_num + j;
    int remainder = 0;
#pragma unroll
    for (int d = max_dim - 1; d >= 0; --d) {
      GetDivMod(B_index, y_dims_order[d], &B_index, &remainder);
      C_index += remainder * y_strides_order[d];
    }
    int x_index = 0;
    int y_index = 0;
    int C_index_val = C_index;
#pragma unroll
    for (int d = max_dim - 1; d >= 0; --d) {
      GetDivMod(C_index_val, out_dims_array[d], &C_index_val, &remainder);
      x_index += remainder * x_strides_array[d];
      y_index += remainder * y_strides_array[d];
    }
    out_index = C_index;
    val += dx_op(x[x_index], y[y_index], out[out_index], dout[out_index]);
  }
  val = paddle::platform::reduceSum(val, tid, thread_num);
  if (threadIdx.x == 0) {
    dx[i] = val;
  }
}

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template <typename T, typename DY_OP>
static __global__ void CommonGradBroadcast1CUDAKernelHeight(
    const T *x, const T *y, const T *out, const T *dout, int h, int w,
    DY_OP dy_op, T *dy, int x_h, int x_w, bool is_y) {
  int j = blockIdx.x;
  int i = threadIdx.x;
  int tid = threadIdx.x;
  T val(0);

  if (is_y) {
    do {
      int out_offset = i * w + j;
      int x_offset = (i % x_h) * x_w + j % x_w;
      if (dy) {
        val += dy_op(x[x_offset], y[j], out[out_offset], dout[out_offset]);
      }
      i += ELEMWISE_MAX_BLOCK_DIM;
    } while (i < h);

    if (dy) {
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
    }
  } else {
    do {
      int out_offset = i * w + j;
      int y_offset = (i % x_h) * x_w + j % x_w;
      if (dy) {
        val += dy_op(x[j], y[y_offset], out[out_offset], dout[out_offset]);
      }
      i += ELEMWISE_MAX_BLOCK_DIM;
    } while (i < h);

    if (dy) {
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
    }
  }
}

template <typename T, typename DY_OP>
static __global__ void FastCommonGradBroadcastCUDAKernelHeight(
    const T *x, const T *y, const T *out, const T *dout, int h, int w,
    DY_OP dy_op, T *dy, int x_h, int x_w, bool is_y) {
  __shared__ T sdata[BLOCK_Y][BLOCK_X + 1];

  T val(0);
  size_t width_stride = gridDim.x * blockDim.x;
  size_t idx = threadIdx.x + blockDim.x * blockIdx.x;
  size_t full_width =
      (w & (~((uint64_t)(BLOCK_X - 1)))) + ((w & (BLOCK_X - 1)) ? BLOCK_X : 0);
  size_t full_height =
      (h & (~((uint64_t)(BLOCK_Y - 1)))) + ((h & (BLOCK_Y - 1)) ? BLOCK_Y : 0);
  if (is_y) {
    for (int m = idx; m < full_width; m += width_stride) {
      sdata[threadIdx.y][threadIdx.x] = 0;
      for (int n = threadIdx.y; n < full_height; n += BLOCK_Y) {
        int out_offset = n * w + m;
        int x_offset = (n % x_h) * x_w + m % x_w;
        if (dy) {
          if (m < w && n < h) {
            T val = dy_op(x[x_offset], y[m], out[out_offset], dout[out_offset]);
            sdata[threadIdx.y][threadIdx.x] += val;
          }
          __syncthreads();
        }
      }
      if (dy) {
        T my_val = sdata[threadIdx.x][threadIdx.y];
        for (int i = warpSize >> 1; i > 0; i >>= 1) {
          my_val += platform::CudaShuffleXorSync(0xFFFFFFFF, my_val, i);
        }
        __syncthreads();
        if ((threadIdx.x == 0)) {
          sdata[0][threadIdx.y] = my_val;
        }
        __syncthreads();
        if (threadIdx.y == 0 && m < w) {
          dy[m] = sdata[0][threadIdx.x];
        }
      }
    }
  } else {
    for (int m = idx; m < full_width; m += width_stride) {
      sdata[threadIdx.y][threadIdx.x] = 0;
      for (int n = threadIdx.y; n < full_height; n += BLOCK_Y) {
        int out_offset = n * w + m;
        int y_offset = (n % x_h) * x_w + m % x_w;
        if (dy) {
          if (m < w && n < h) {
            T val = dy_op(x[m], y[y_offset], out[out_offset], dout[out_offset]);
            sdata[threadIdx.y][threadIdx.x] += val;
          }
          __syncthreads();
        }
      }
      if (dy) {
        T my_val = sdata[threadIdx.x][threadIdx.y];
        for (int i = warpSize >> 1; i > 0; i >>= 1) {
          my_val += platform::CudaShuffleXorSync(0xFFFFFFFF, my_val, i);
        }
        __syncthreads();
        if ((threadIdx.x == 0)) {
          sdata[0][threadIdx.y] = my_val;
        }
        __syncthreads();
        if (threadIdx.y == 0 && m < w) {
          dy[m] = sdata[0][threadIdx.x];
        }
      }
    }
  }
}

template <typename T, typename DY_OP, typename DX_OP>
static __global__ void FastCommonGradBroadcastAllCUDAKernel(
    const T *x, const T *y, const T *out, const T *dout, int pre, int n,
    int post, bool is_xsize_larger, DX_OP dx_op, DY_OP dy_op, T *dx, T *dy) {
  int tid = threadIdx.x;
  int bid = blockIdx.x;

  T val(0);
  if (is_xsize_larger) {
    for (int i = tid; i < n; i += ELEMWISE_MAX_BLOCK_DIM) {
      int b_i = bid / post;
      int b_j = bid % post;
      int x_offset = b_i * n * post + i * post + b_j;
      int y_offset = b_i * post + b_j;
      if (dx) {
        dx[x_offset] =
            dx_op(x[x_offset], y[y_offset], out[x_offset], dout[x_offset]);
      }
      if (dy) {
        val += dy_op(x[x_offset], y[y_offset], out[x_offset], dout[x_offset]);
      }
    }
    if (dy) {
      int h = n > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : n;
      val = paddle::platform::reduceSum(val, tid, h);
      if (tid == 0) {
        dy[bid] = val;
      }
    }
  } else {
    for (int i = tid; i < n; i += ELEMWISE_MAX_BLOCK_DIM) {
      int b_i = bid / post;
      int b_j = bid % post;
      int y_offset = b_i * n * post + i * post + b_j;
      int x_offset = b_i * post + b_j;
      if (dy) {
        dy[y_offset] =
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            dy_op(x[x_offset], y[y_offset], out[y_offset], dout[y_offset]);
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      }
      if (dx) {
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        val += dx_op(x[x_offset], y[y_offset], out[y_offset], dout[y_offset]);
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      }
    }
    if (dx) {
      int h = n > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : n;
      val = paddle::platform::reduceSum(val, tid, h);
      if (tid == 0) {
        dx[bid] = val;
      }
    }
  }
}

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template <typename T, typename OP>
static __global__ void FastCommonGradBroadcastOneCUDAKernel(
    const T *x, const T *y, const T *out, const T *dout, int pre, int n,
    int post, int y_pre, int y_n, int y_post, bool is_xsize, OP op, T *dd) {
  int tid = threadIdx.x;
  int bid = blockIdx.x;

  T val(0);
  if (is_xsize) {
    // do reduce for x
    for (int i = tid; i < n; i += ELEMWISE_MAX_BLOCK_DIM) {
      int b_i = bid / post;
      int b_j = bid % post;
      int x_offset = b_i * n * post + b_j;
      int out_offset = b_i * n * post + i * post + b_j;

      // Get y pre rows id with x post and y_pre.
      int b_yi = bid / (post * y_pre);
      int b_yj = bid % y_post;
      int y_offset = b_yi * y_n + i * y_post + b_yj;

      if (dd) {
        val += op(x[x_offset], y[y_offset], out[out_offset], dout[out_offset]);
      }
    }
    if (dd) {
      int h = n > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : n;
      val = paddle::platform::reduceSum(val, tid, h);
      if (tid == 0) {
        dd[bid] = val;
      }
    }
  } else {
    // do reduce for y
    for (int i = tid; i < n; i += ELEMWISE_MAX_BLOCK_DIM) {
      int b_i = bid / post;
      int b_j = bid % post;
      int y_offset = b_i * n * post + b_j;
      int out_offset = b_i * n * post + i * post + b_j;

      int b_yi = bid / (post * y_pre);
      int b_yj = bid % y_post;
      int x_offset = b_yi * y_n + i * y_post + b_yj;

      if (dd) {
        val += op(x[x_offset], y[y_offset], out[out_offset], dout[out_offset]);
      }
    }
    if (dd) {
      int h = n > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : n;
      val = paddle::platform::reduceSum(val, tid, h);
      if (tid == 0) {
        dd[bid] = val;
      }
    }
  }
}

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// Check input can be split into 2 parts
static inline bool SplitDims(const std::vector<int> &y_broadcast_pos,
                             int max_dim) {
  bool can_split_dim2 = true;
  // must at start or end.
  if (y_broadcast_pos[0] != 0 &&
      y_broadcast_pos[y_broadcast_pos.size() - 1] != max_dim - 1) {
    can_split_dim2 = false;
  } else {
    for (int i = 1; i < y_broadcast_pos.size(); ++i) {
      // dim must be continue
      if (y_broadcast_pos[i] != y_broadcast_pos[i - 1] + 1) {
        can_split_dim2 = false;
        break;
      }
    }
  }
  return can_split_dim2;
}

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// Suppose only has contiguous dims
static inline bool CheckContiguousDims(const std::vector<int> &broadcast_pos) {
  for (int i = 1; i < broadcast_pos.size(); ++i) {
    if (broadcast_pos[i] != broadcast_pos[i - 1] + 1) {
      return false;
    }
  }
  return true;
}

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template <typename T, typename DX_OP, typename DY_OP>
void CommonGradBroadcastCUDA(
    const framework::Tensor &x, const framework::Tensor &y,
    const framework::Tensor &out, const framework::Tensor &dout,
    framework::Tensor *dx, framework::Tensor *dy, int *x_dims_array,
    int *y_dims_array, int *out_dims_array, int max_dim,
    const platform::CUDADeviceContext &ctx, DX_OP dx_op, DY_OP dy_op) {
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  const auto gplace = BOOST_GET_CONST(platform::CUDAPlace, ctx.GetPlace());
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  auto cplace = platform::CPUPlace();
  const T *x_data = x.data<T>();
  const T *y_data = y.data<T>();
  const T *out_data = out.data<T>();
  const T *dout_data = dout.data<T>();
  T *dx_data = dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace());
  T *dy_data = dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace());

  std::vector<int> x_one_indexs;
  std::vector<int> y_one_indexs;
  for (int i = 0; i < max_dim; i++) {
    if (x_dims_array[i] != y_dims_array[i]) {
      if (x_dims_array[i] == 1) {
        x_one_indexs.push_back(i);
      }
      if (y_dims_array[i] == 1) {
        y_one_indexs.push_back(i);
      }
    }
  }

  std::vector<int> x_trans_indexs(max_dim);
  std::vector<int> y_trans_indexs(max_dim);
  ComputeBroadcastTranspositionArray(x_one_indexs.data(), x_trans_indexs.data(),
                                     max_dim, x_one_indexs.size());
  ComputeBroadcastTranspositionArray(y_one_indexs.data(), y_trans_indexs.data(),
                                     max_dim, y_one_indexs.size());

  // compute array stride for cuda kernel;
  // e.g. x.dims=[2,3,4], x_stride=[12,4,1]
  std::vector<int> x_strides_array(max_dim);
  std::vector<int> y_strides_array(max_dim);
  std::vector<int> out_strides_array(max_dim);
  int x_stride = 1;
  int y_stride = 1;
  int z_stride = 1;
  for (int i = max_dim - 1; i >= 0; i--) {
    x_strides_array[i] = x_dims_array[i] == 1 ? 0 : x_stride;
    y_strides_array[i] = y_dims_array[i] == 1 ? 0 : y_stride;
    out_strides_array[i] = z_stride;
    x_stride *= x_dims_array[i];
    y_stride *= y_dims_array[i];
    z_stride *= out_dims_array[i];
  }

  std::vector<int> x_strides_order(max_dim);
  std::vector<int> y_strides_order(max_dim);
  std::vector<int> x_dims_order(max_dim);
  std::vector<int> y_dims_order(max_dim);
  for (int i = 0; i < max_dim; ++i) {
    x_strides_order[i] = out_strides_array[x_trans_indexs[i]];
    y_strides_order[i] = out_strides_array[y_trans_indexs[i]];
    x_dims_order[i] = out_dims_array[x_trans_indexs[i]];
    y_dims_order[i] = out_dims_array[y_trans_indexs[i]];
  }
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  std::vector<int> x_broadcast_pos;
  std::vector<int> y_broadcast_pos;

  int bytes = max_dim * sizeof(int);

  for (int i = 0; i < max_dim; ++i) {
    if (x_dims_array[i] != out_dims_array[i] && x_dims_array[i] == 1) {
      x_broadcast_pos.emplace_back(i);
    }
    if (y_dims_array[i] != out_dims_array[i] && y_dims_array[i] == 1) {
      y_broadcast_pos.emplace_back(i);
    }
  }
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  auto stream = ctx.stream();
  bool can_split_x = false;
  bool can_split_y = false;

  auto FastCommonCUDAF = [&](const std::vector<int> &broadcast_pos, bool is_y) {
    int h =
        std::accumulate(out_dims_array, out_dims_array + broadcast_pos.size(),
                        1, std::multiplies<int>());
    int w =
        std::accumulate(out_dims_array + broadcast_pos.size(),
                        out_dims_array + max_dim, 1, std::multiplies<int>());

    VLOG(3) << "FastCommonCUDAF elementwise w:" << w << " h:" << h
            << " is_y:" << is_y;

    int split_h;
    int split_w;
    int kh = h;
    int kw = w;

    if (is_y) {
      split_h =
          std::accumulate(x_dims_array, x_dims_array + broadcast_pos.size(), 1,
                          std::multiplies<int>());
      split_w =
          std::accumulate(x_dims_array + broadcast_pos.size(),
                          x_dims_array + max_dim, 1, std::multiplies<int>());

    } else {
      split_h =
          std::accumulate(y_dims_array, y_dims_array + broadcast_pos.size(), 1,
                          std::multiplies<int>());
      split_w =
          std::accumulate(y_dims_array + broadcast_pos.size(),
                          y_dims_array + max_dim, 1, std::multiplies<int>());
    }

    if (h > split_h) kh = split_h;
    if (w > split_w) kw = split_w;

    if (is_y) {
      if (w < 16 || h < 16) {
        int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
        int grid_size = w;
        CommonGradBroadcast1CUDAKernelHeight<<<grid_size, block_size, 0,
                                               stream>>>(
            x_data, y_data, out_data, dout_data, h, w, dy_op, dy_data, kh, kw,
            is_y);
      } else {
        dim3 block_size = dim3(BLOCK_X, BLOCK_Y);
        int grid_size = (w + BLOCK_X - 1) / BLOCK_X;
        FastCommonGradBroadcastCUDAKernelHeight<<<grid_size, block_size, 0,
                                                  stream>>>(
            x_data, y_data, out_data, dout_data, h, w, dy_op, dy_data, kh, kw,
            is_y);
      }
    } else {
      if (w < 16 || h < 16) {
        int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
        int grid_size = w;
        CommonGradBroadcast1CUDAKernelHeight<<<grid_size, block_size, 0,
                                               stream>>>(
            x_data, y_data, out_data, dout_data, h, w, dx_op, dx_data, kh, kw,
            is_y);
      } else {
        dim3 block_size = dim3(BLOCK_X, BLOCK_Y);
        int grid_size = (w + BLOCK_X - 1) / BLOCK_X;
        FastCommonGradBroadcastCUDAKernelHeight<<<grid_size, block_size, 0,
                                                  stream>>>(
            x_data, y_data, out_data, dout_data, h, w, dx_op, dx_data, kh, kw,
            is_y);
      }
    }
  };

  auto FastBroadCastHeightCUDAF = [&](const std::vector<int> &broadcast_pos,
                                      bool x_large) {
    int h =
        std::accumulate(out_dims_array, out_dims_array + broadcast_pos.size(),
                        1, std::multiplies<int>());
    int w =
        std::accumulate(out_dims_array + broadcast_pos.size(),
                        out_dims_array + max_dim, 1, std::multiplies<int>());

    VLOG(3) << "FastBroadCastHeightCUDAF w:" << w << " h:" << h;

    if (w < 16 || h < 16) {
      int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
      int grid_size = w;
      ElemwiseGradBroadcast1CUDAKernel<<<grid_size, block_size, 0, stream>>>(
          x_data, y_data, out_data, dout_data, h, w, x_large, dx_op, dy_op,
          dx_data, dy_data);
    } else {
      dim3 block_size = dim3(BLOCK_X, BLOCK_Y);
      int grid_size = (w + BLOCK_X - 1) / BLOCK_X;
      FastElemwiseGradBroadcast1CUDAKernel<<<grid_size, block_size, 0,
                                             stream>>>(
          x_data, y_data, out_data, dout_data, h, w, x_large, dx_op, dy_op,
          dx_data, dy_data);
    }
  };

  auto FastBroadCastAllCUDAF = [&](const std::vector<int> &broadcast_pos,
                                   int max_dim, bool is_x_large) {
    int axis = broadcast_pos[0];
    int pre = std::accumulate(out_dims_array, out_dims_array + axis, 1,
                              std::multiplies<int>());
1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093 1094
    int mid = 1;
    int post = 1;

    if (broadcast_pos.size() == 1) {
      mid = out_dims_array[axis];
      post =
          std::accumulate(out_dims_array + axis + 1, out_dims_array + max_dim,
                          1, std::multiplies<int>());
    } else {
      mid = std::accumulate(out_dims_array + axis,
                            out_dims_array + broadcast_pos.back() + 1, 1,
                            std::multiplies<int>());
      post =
          std::accumulate(out_dims_array + broadcast_pos.back() + 1,
                          out_dims_array + max_dim, 1, std::multiplies<int>());
    }
1095 1096 1097 1098 1099 1100 1101 1102 1103 1104 1105 1106

    VLOG(3) << "FastBroadCastAllCUDAF pre:" << pre << " mid:" << mid
            << " post:" << post;

    int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, mid);
    int grid_size = pre * post;

    FastCommonGradBroadcastAllCUDAKernel<<<grid_size, block_size, 0, stream>>>(
        x_data, y_data, out_data, dout_data, pre, mid, post, is_x_large, dx_op,
        dy_op, dx_data, dy_data);
  };

1107 1108 1109 1110 1111 1112 1113 1114 1115 1116 1117 1118 1119 1120 1121 1122 1123 1124 1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155
  auto FastBroadCastOneCUDAF = [&](const std::vector<int> &broadcast_pos,
                                   int max_dim, bool is_x) {
    int axis = broadcast_pos[0];
    int pre = std::accumulate(out_dims_array, out_dims_array + axis, 1,
                              std::multiplies<int>());
    int mid = out_dims_array[axis];
    int post =
        std::accumulate(out_dims_array + axis + 1, out_dims_array + max_dim, 1,
                        std::multiplies<int>());

    int k_pre;
    int k_mid;
    int k_post;

    if (is_x) {
      k_pre = std::accumulate(y_dims_array, y_dims_array + axis, 1,
                              std::multiplies<int>());
      k_mid = y_dims_array[axis];
      k_post = std::accumulate(y_dims_array + axis + 1, y_dims_array + max_dim,
                               1, std::multiplies<int>());
      int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, mid);
      int grid_size = pre * post;
      // we need to calc y offset with blockid, so do x_pre/y_pre to get left
      // size.
      if (k_pre != pre) k_pre = pre / k_pre;

      FastCommonGradBroadcastOneCUDAKernel<<<grid_size, block_size, 0,
                                             stream>>>(
          x_data, y_data, out_data, dout_data, pre, mid, post, k_pre, k_mid,
          k_post, true, dx_op, dx_data);
    } else {
      k_pre = std::accumulate(x_dims_array, x_dims_array + axis, 1,
                              std::multiplies<int>());
      k_mid = x_dims_array[axis];
      k_post = std::accumulate(x_dims_array + axis + 1, x_dims_array + max_dim,
                               1, std::multiplies<int>());
      int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, mid);
      int grid_size = pre * post;
      if (k_pre != pre) k_pre = pre / k_pre;

      FastCommonGradBroadcastOneCUDAKernel<<<grid_size, block_size, 0,
                                             stream>>>(
          x_data, y_data, out_data, dout_data, pre, mid, post, k_pre, k_mid,
          k_post, false, dy_op, dy_data);
    }
    VLOG(3) << "FastBroadCastOneCUDAF pre:" << pre << " mid:" << mid
            << " post:" << post;
  };

1156 1157 1158 1159
  // do fast elementwise if: 1. only one input need to do broadcast, we can
  // fallback
  // to old fast path.
  // 2. if both x and y need broadcast, then do it one by one.
1160
  bool fast_broadcast = false;
1161 1162 1163 1164 1165 1166
  if (x_broadcast_pos.empty() && !y_broadcast_pos.empty()) {
    can_split_y = SplitDims(y_broadcast_pos, max_dim);
    if (can_split_y) {
      // only y need to do broadcast on h
      if (y_broadcast_pos[0] == 0) {
        FastBroadCastHeightCUDAF(y_broadcast_pos, true);
1167
        fast_broadcast = true;
1168
      }
1169 1170 1171
    } else if (y_broadcast_pos.size() == 1 ||
               CheckContiguousDims(y_broadcast_pos)) {  // for only one dim and
                                                        // contiguous broadcast.
1172 1173
      // If cannot split,  which means input has 3 parts
      FastBroadCastAllCUDAF(y_broadcast_pos, max_dim, true);
1174
      fast_broadcast = true;
1175 1176 1177 1178 1179 1180 1181
    }
  } else if (y_broadcast_pos.empty() && !x_broadcast_pos.empty()) {
    // only x need broadcast
    can_split_x = SplitDims(x_broadcast_pos, max_dim);
    if (can_split_x) {
      if (x_broadcast_pos[0] == 0) {
        FastBroadCastHeightCUDAF(x_broadcast_pos, false);
1182
        fast_broadcast = true;
1183
      }
1184 1185
    } else if (x_broadcast_pos.size() == 1 ||
               CheckContiguousDims(x_broadcast_pos)) {
1186
      FastBroadCastAllCUDAF(x_broadcast_pos, max_dim, false);
1187
      fast_broadcast = true;
1188 1189 1190 1191
    }
  } else if (!x_broadcast_pos.empty() && !y_broadcast_pos.empty()) {
    // do x and y broadcast each.
    can_split_y = SplitDims(y_broadcast_pos, max_dim);
1192 1193
    bool fast_broadcast_x = false;
    bool fast_broadcast_y = false;
1194 1195 1196 1197
    if (can_split_y) {
      // begin at start.
      if (y_broadcast_pos[0] == 0) {
        FastCommonCUDAF(y_broadcast_pos, true);
1198
        fast_broadcast_y = true;
1199
      }
1200 1201 1202
    } else if (y_broadcast_pos.size() == 1) {
      FastBroadCastOneCUDAF(y_broadcast_pos, max_dim, false);
      can_split_y = true;
1203
      fast_broadcast_y = true;
1204 1205 1206 1207 1208
    }
    can_split_x = SplitDims(x_broadcast_pos, max_dim);
    if (can_split_x) {
      if (x_broadcast_pos[0] == 0) {
        FastCommonCUDAF(x_broadcast_pos, false);
1209
        fast_broadcast_x = true;
1210
      }
1211 1212 1213
    } else if (x_broadcast_pos.size() == 1) {
      FastBroadCastOneCUDAF(x_broadcast_pos, max_dim, true);
      can_split_x = true;
1214
      fast_broadcast_x = true;
1215 1216 1217 1218
    }
    VLOG(3) << "CommonBroadcast can_split_y:" << can_split_y
            << " can_split_x:" << can_split_x;
    // if both x and y into fast path then return
1219 1220 1221 1222
    if (fast_broadcast_x && fast_broadcast_y) {
      fast_broadcast = true;
    }
    if (can_split_y && can_split_x && fast_broadcast) return;
1223
  }
1224

1225
  // Should remove memory copy, use reg instead.
1226 1227 1228
  if (fast_broadcast) {
    return;
  }
1229 1230 1231 1232 1233 1234 1235 1236 1237 1238 1239 1240 1241 1242 1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256 1257 1258
  int x_blocks = 0;
  int x_threads = 0;
  ComputeBroadcastKernelSize(x_dims_array, out_dims_array, &x_blocks,
                             &x_threads, max_dim);
  int y_blocks = 0;
  int y_threads = 0;
  ComputeBroadcastKernelSize(y_dims_array, out_dims_array, &y_blocks,
                             &y_threads, max_dim);

  auto x_strides_array_tmp = memory::Alloc(ctx, bytes);
  int *x_strides_array_gpu =
      reinterpret_cast<int *>(x_strides_array_tmp->ptr());
  memory::Copy(gplace, x_strides_array_gpu, cplace, x_strides_array.data(),
               bytes, ctx.stream());

  auto y_strides_array_tmp = memory::Alloc(ctx, bytes);
  int *y_strides_array_gpu =
      reinterpret_cast<int *>(y_strides_array_tmp->ptr());
  memory::Copy(gplace, y_strides_array_gpu, cplace, y_strides_array.data(),
               bytes, ctx.stream());

  auto out_dims_array_tmp = memory::Alloc(ctx, bytes);
  int *out_dims_array_gpu = reinterpret_cast<int *>(out_dims_array_tmp->ptr());
  memory::Copy(gplace, out_dims_array_gpu, cplace, out_dims_array, bytes,
               ctx.stream());

  const int out_size = std::accumulate(out_dims_array, out_dims_array + max_dim,
                                       1, std::multiplies<int>());
  int x_block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, x_threads);
  int y_block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, y_threads);
1259
  if (dx) {
1260 1261 1262 1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275
    auto x_strides_order_tmp = memory::Alloc(ctx, bytes);
    int *x_strides_order_gpu =
        reinterpret_cast<int *>(x_strides_order_tmp->ptr());
    memory::Copy(gplace, x_strides_order_gpu, cplace, x_strides_order.data(),
                 bytes, ctx.stream());

    auto x_dims_order_tmp = memory::Alloc(ctx, bytes);
    int *x_dims_order_gpu = reinterpret_cast<int *>(x_dims_order_tmp->ptr());
    memory::Copy(gplace, x_dims_order_gpu, cplace, x_dims_order.data(), bytes,
                 ctx.stream());
    CommonGradBroadcastCUDAKernel<
        T, DX_OP><<<x_blocks, x_block_size, 0, ctx.stream()>>>(
        x_strides_array_gpu, y_strides_array_gpu, out_dims_array_gpu,
        x_strides_order_gpu, x_dims_order_gpu, x_data, y_data, out_data,
        dout_data, dx_data, out_size, max_dim, x_threads, dx_op);
  }
1276
  if (dy) {
1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294
    auto y_strides_order_tmp = memory::Alloc(ctx, bytes);
    int *y_strides_order_gpu =
        reinterpret_cast<int *>(y_strides_order_tmp->ptr());
    memory::Copy(gplace, y_strides_order_gpu, cplace, y_strides_order.data(),
                 bytes, ctx.stream());

    auto y_dims_order_tmp = memory::Alloc(ctx, bytes);
    int *y_dims_order_gpu = reinterpret_cast<int *>(y_dims_order_tmp->ptr());
    memory::Copy(gplace, y_dims_order_gpu, cplace, y_dims_order.data(), bytes,
                 ctx.stream());
    CommonGradBroadcastCUDAKernel<
        T, DY_OP><<<y_blocks, y_block_size, 0, ctx.stream()>>>(
        x_strides_array_gpu, y_strides_array_gpu, out_dims_array_gpu,
        y_strides_order_gpu, y_dims_order_gpu, x_data, y_data, out_data,
        dout_data, dy_data, out_size, max_dim, y_threads, dy_op);
  }
}

1295
#endif  // __NVCC__ or __HIPCC__
1296

1297
inline framework::DDim trim_trailing_singular_dims(
1298
    const framework::DDim &dims) {
1299
  // Remove trailing dimensions of size 1 for y
1300
  auto actual_dims_size = dims.size();
1301
  for (; actual_dims_size != 0; --actual_dims_size) {
1302
    if (dims[actual_dims_size - 1] != 1) break;
1303
  }
1304
  if (actual_dims_size == dims.size()) return dims;
1305 1306 1307 1308
  std::vector<int> trim_dims;
  trim_dims.resize(actual_dims_size);
  for (int i = 0; i < actual_dims_size; ++i) {
    trim_dims[i] = dims[i];
1309
  }
1310 1311 1312
  if (trim_dims.size() == 0) {
    return framework::DDim(framework::make_dim());
  }
1313 1314
  framework::DDim actual_dims = framework::make_ddim(trim_dims);
  return actual_dims;
1315 1316
}

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template <typename T, typename DeviceContext>
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class RowwiseTransformIterator;
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template <typename T, typename DeviceContext>
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class MidWiseTransformIterator;
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// NOTE(dzhwinter): ptrdiff_t in iterator is deperecated in c++17
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template <typename T>
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class RowwiseTransformIterator<T, platform::CPUDeviceContext>
    : public std::iterator<std::random_access_iterator_tag, T, std::ptrdiff_t,
                           T *, T &> {
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 public:
1329
  RowwiseTransformIterator(const T *ptr, int n) : ptr_(ptr), i_(0), n_(n) {}
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  RowwiseTransformIterator<T, platform::CPUDeviceContext> &operator++() {
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    ++i_;
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    if (UNLIKELY(i_ == n_)) {
      i_ = 0;
    }
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    return *this;
  }

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  RowwiseTransformIterator<T, platform::CPUDeviceContext> &operator+(int n) {
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    while (n-- > 0) {
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      ++i_;
      if (UNLIKELY(i_ == n_)) {
        i_ = 0;
      }
    }

    return *this;
  }

1350 1351
  bool operator==(const RowwiseTransformIterator<T, platform::CPUDeviceContext>
                      &rhs) const {
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    return (ptr_ + i_) == &(*rhs);
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  }

1355 1356
  bool operator!=(const RowwiseTransformIterator<T, platform::CPUDeviceContext>
                      &rhs) const {
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    return (ptr_ + i_) != &(*rhs);
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  }

1360
  const T &operator*() { return ptr_[i_]; }
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 private:
1363
  const T *ptr_;
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  int i_;
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  int64_t n_;
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};

template <typename T>
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class MidWiseTransformIterator<T, platform::CPUDeviceContext>
    : public std::iterator<std::random_access_iterator_tag, T, std::ptrdiff_t,
                           T *, T &> {
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 public:
1373
  MidWiseTransformIterator(const T *ptr, int n, int post)
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      : ptr_(ptr), i_(0), j_(0), n_(n), post_(post) {}

1376
  MidWiseTransformIterator<T, platform::CPUDeviceContext> &operator++() {
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    ++j_;
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    if (UNLIKELY(j_ == post_)) {
      ++i_;
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      j_ = 0;
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      if (UNLIKELY(i_ == n_)) {
        i_ = 0;
      }
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    }
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    return *this;
  }

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  MidWiseTransformIterator<T, platform::CPUDeviceContext> &operator+(int n) {
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    while (n-- > 0) {
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      ++j_;
      if (UNLIKELY(j_ == post_)) {
        ++i_;
        j_ = 0;
        if (UNLIKELY(i_ == n_)) {
          i_ = 0;
        }
      }
    }
    return *this;
  }

1402 1403
  bool operator==(const MidWiseTransformIterator<T, platform::CPUDeviceContext>
                      &rhs) const {
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    return (ptr_ + i_) == &(*rhs);
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  }

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  bool operator!=(const MidWiseTransformIterator<T, platform::CPUDeviceContext>
                      &rhs) const {
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    return (ptr_ + i_) != &(*rhs);
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  }

1412
  const T &operator*() { return ptr_[i_]; }
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 private:
1415
  const T *ptr_;
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  int64_t i_;
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  int64_t j_;
  int64_t n_;
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  int64_t post_;
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};

1422
#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T>
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class RowwiseTransformIterator<T, platform::CUDADeviceContext>
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    : public thrust::iterator_adaptor<
1426
          RowwiseTransformIterator<T, platform::CUDADeviceContext>, const T *> {
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 public:
  typedef thrust::iterator_adaptor<
1429
      RowwiseTransformIterator<T, platform::CUDADeviceContext>, const T *>
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      super_t;
1431
  HOSTDEVICE RowwiseTransformIterator(const T *x, int n)
1432
      : super_t(x), begin_(x), n_(n) {}
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  friend class thrust::iterator_core_access;

 private:
  unsigned int n_;
1437
  const T *begin_;
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  HOSTDEVICE typename super_t::reference dereference() const {
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    return *(begin_ + (this->base() - begin_) % n_);
  }
};

template <typename T>
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class MidWiseTransformIterator<T, platform::CUDADeviceContext>
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    : public thrust::iterator_adaptor<
1446
          MidWiseTransformIterator<T, platform::CUDADeviceContext>, const T *> {
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 public:
  typedef thrust::iterator_adaptor<
1449
      MidWiseTransformIterator<T, platform::CUDADeviceContext>, const T *>
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      super_t;
1451
  HOSTDEVICE MidWiseTransformIterator(const T *x, int n, int post)
1452
      : super_t(x), begin_(x), n_(n), post_(post) {}
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  friend class thrust::iterator_core_access;

 private:
  unsigned int post_;
  unsigned int n_;
1458
  const T *begin_;
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  HOSTDEVICE typename super_t::reference dereference() const {
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    return *(begin_ + (((this->base() - begin_) / post_) % n_));
  }
};
#endif

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template <typename Functor, typename T, typename DeviceContext,
          typename OutType = T>
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class TransformFunctor {
 public:
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  TransformFunctor(const framework::Tensor *x, const framework::Tensor *y,
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                   framework::Tensor *z, const DeviceContext &ctx, Functor func,
                   const bool is_xsize_larger = true)
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      : x_(x->data<T>()),
        y_(y->data<T>()),
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        z_(z->mutable_data<OutType>(ctx.GetPlace())),
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        nx_(x->numel()),
        ctx_(ctx),
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        func_(func),
        is_xsize_larger_(is_xsize_larger) {
    if (is_xsize_larger_ == false) {
      nx_ = y->numel();
    }
  }
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  inline void Run() const {
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    platform::Transform<DeviceContext> trans;
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    trans(ctx_, x_, x_ + nx_, y_, z_, func_);
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  }

  inline void RunRowWise(int n, int pre) const {
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    platform::Transform<DeviceContext> trans;
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    if (is_xsize_larger_) {
      trans(ctx_, x_, x_ + nx_,
            RowwiseTransformIterator<T, DeviceContext>(y_, n), z_, func_);
    } else {
      trans(ctx_, y_, y_ + nx_,
            RowwiseTransformIterator<T, DeviceContext>(x_, n), z_, func_);
    }
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  }

  inline void RunMidWise(int n, int pre, int post) const {
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    platform::Transform<DeviceContext> trans;
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    if (is_xsize_larger_) {
      trans(ctx_, x_, x_ + nx_,
            MidWiseTransformIterator<T, DeviceContext>(y_, n, post), z_, func_);
    } else {
      trans(ctx_, y_, y_ + nx_,
            MidWiseTransformIterator<T, DeviceContext>(x_, n, post), z_, func_);
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    }
  }

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 private:
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  const T *x_;
  const T *y_;
  OutType *z_;
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  int64_t nx_;
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  const DeviceContext &ctx_;
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  Functor func_;
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  bool is_xsize_larger_;
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};

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template <typename T, typename DX_OP, typename DY_OP>
struct ElemwiseGradNoBroadcast {
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  const T *x_;
  const T *y_;
  const T *out_;
  const T *dout_;
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  HOSTDEVICE void operator()(size_t i) {
    if (dx_ != nullptr) {
      dx_[i] = dx_op_(x_[i], y_[i], out_[i], dout_[i]);
    }
    if (dy_ != nullptr) {
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      dy_[i] = dy_op_(x_[i], y_[i], out_[i], dout_[i]);
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    }
  }

  DX_OP dx_op_;
  DY_OP dy_op_;
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  T *dx_;
  T *dy_;
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};

template <typename T, typename DX_OP, typename DY_OP>
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static void ElemwiseGradBroadcast1CPU(const T *x, const T *y, const T *out,
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                                      const T *dout, int h, int w,
                                      bool is_xsize_larger, DX_OP dx_op,
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                                      DY_OP dy_op, T *dx, T *dy) {
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  if (is_xsize_larger) {
    for (int i = 0; i < h; ++i) {
      for (int j = 0; j < w; ++j) {
        int x_offset = i * w + j;
        if (dx != nullptr) {
          dx[x_offset] =
              dx_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
        }
        if (dy != nullptr) {
          T tmp = dy_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
          if (i == 0) {
            dy[j] = tmp;
          } else {
            dy[j] += tmp;
          }
        }
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      }
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    }
  } else {  // x.dims < y.dims, broadcast for x.
    for (int i = 0; i < h; ++i) {
      for (int j = 0; j < w; ++j) {
        int y_offset = i * w + j;
        if (dy != nullptr) {
          dy[y_offset] =
              dy_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
        }
        if (dx != nullptr) {
          T tmp = dx_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
          if (i == 0) {
            dx[j] = tmp;
          } else {
            dx[j] += tmp;
          }
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        }
      }
    }
  }
}
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#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T, typename DX_OP, typename DY_OP>
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static void ElemwiseGradBroadcast1CUDA(gpuStream_t stream, const T *x,
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                                       const T *y, const T *out, const T *dout,
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                                       int h, int w, bool is_xsize_larger,
                                       DX_OP dx_op, DY_OP dy_op, T *dx, T *dy) {
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  // For small case use 1D block
  constexpr int half_walf = 16;
  if (w < half_walf || h < half_walf) {
    int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
    int gird_size = w;
    ElemwiseGradBroadcast1CUDAKernel<<<gird_size, block_size, 0, stream>>>(
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        x, y, out, dout, h, w, is_xsize_larger, dx_op, dy_op, dx, dy);
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  } else {
    // suppose perfoemance improves with h increased.
    dim3 block_size = dim3(BLOCK_X, BLOCK_Y);
    int grid_size = (w + BLOCK_X - 1) / BLOCK_X;
    FastElemwiseGradBroadcast1CUDAKernel<<<grid_size, block_size, 0, stream>>>(
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        x, y, out, dout, h, w, is_xsize_larger, dx_op, dy_op, dx, dy);
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  }
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}

#endif

template <typename T, typename DX_OP, typename DY_OP>
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static void ElemwiseGradBroadcast2CPU(const T *x, const T *y, const T *out,
                                      const T *dout, int pre, int n, int post,
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                                      bool is_xsize_larger, DX_OP dx_op,
                                      DY_OP dy_op, T *dx, T *dy) {
  if (is_xsize_larger) {
    for (int i = 0; i < pre; ++i) {
      for (int j = 0; j < n; ++j) {
        for (int k = 0; k < post; ++k) {
          int x_offset = i * n * post + j * post + k;
          if (dx != nullptr) {
            dx[x_offset] =
                dx_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
          }
          if (dy != nullptr) {
            T tmp = dy_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
            if (i == 0 && k == 0) {
              dy[j] = tmp;
            } else {
              dy[j] += tmp;
            }
          }
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        }
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      }
    }
  } else {  // x.dims < y.dims, broadcast for x.
    for (int i = 0; i < pre; ++i) {
      for (int j = 0; j < n; ++j) {
        for (int k = 0; k < post; ++k) {
          int y_offset = i * n * post + j * post + k;
          if (dy != nullptr) {
            dy[y_offset] =
                dy_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
          }
          if (dx != nullptr) {
            T tmp = dx_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
            if (i == 0 && k == 0) {
              dx[j] = tmp;
            } else {
              dx[j] += tmp;
            }
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          }
        }
      }
    }
  }
}

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#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T, typename DX_OP, typename DY_OP>
static __global__ void ElemwiseGradBroadcast2CUDAKernel(
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    const T *x, const T *y, const T *out, const T *dout, int pre, int n,
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    int post, bool is_xsize_larger, DX_OP dx_op, DY_OP dy_op, T *dx, T *dy) {
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  int tid = threadIdx.x;
  int j = blockIdx.x;

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  T val(0);
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  int ttid = tid;

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  if (is_xsize_larger) {
    while (true) {
      int i = ttid / post;
      int k = ttid % post;
      if (i >= pre) break;
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      int x_offset = i * n * post + j * post + k;
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      if (dx != nullptr) {
        dx[x_offset] = dx_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
      }

      if (dy != nullptr) {
        val += dy_op(x[x_offset], y[j], out[x_offset], dout[x_offset]);
      }

      ttid += ELEMWISE_MAX_BLOCK_DIM;
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    }

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    if (dy) {
      int h = pre * post;
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
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    }
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  } else {  // x.dims < y.dims, broadcast for x.
    while (true) {
      int i = ttid / post;
      int k = ttid % post;
      if (i >= pre) break;
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      int y_offset = i * n * post + j * post + k;
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      if (dy != nullptr) {
        dy[y_offset] = dy_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
      }

      if (dx != nullptr) {
        val += dx_op(x[j], y[y_offset], out[y_offset], dout[y_offset]);
      }

      ttid += ELEMWISE_MAX_BLOCK_DIM;
    }

    if (dx) {
      int h = pre * post;
      h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dx[j] = val;
      }
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    }
  }
}

template <typename T, typename DX_OP, typename DY_OP>
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static void ElemwiseGradBroadcast2CUDA(gpuStream_t stream, const T *x,
1730
                                       const T *y, const T *out, const T *dout,
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                                       int pre, int n, int post,
                                       bool is_xsize_larger, DX_OP dx_op,
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                                       DY_OP dy_op, T *dx, T *dy) {
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  int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, pre * post);
  int gird_size = n;
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  ElemwiseGradBroadcast2CUDAKernel<<<gird_size, block_size, 0, stream>>>(
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      x, y, out, dout, pre, n, post, is_xsize_larger, dx_op, dy_op, dx, dy);
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}

#endif

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template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP>
void CommonElementwiseBroadcastBackward(
    const framework::ExecutionContext &ctx, const framework::DDim &x_dims,
    const framework::DDim &y_dims, const framework::Tensor &x,
    const framework::Tensor &y, const framework::Tensor &out,
    const framework::Tensor &dout, int axis, framework::Tensor *dx,
    framework::Tensor *dy, DX_OP dx_op, DY_OP dy_op) {
  int max_dim = std::max(x_dims.size(), y_dims.size());
  axis = (axis == -1 ? std::abs(x_dims.size() - y_dims.size()) : axis);
  std::vector<int> x_dims_array(max_dim);
  std::vector<int> y_dims_array(max_dim);
  std::vector<int> out_dims_array(max_dim);
  GetBroadcastDimsArrays(x_dims, y_dims, x_dims_array.data(),
                         y_dims_array.data(), out_dims_array.data(), max_dim,
                         axis);
  // for inplace strategy. memset will make dx and dout clear and get wrong
  // result.
1759
  if (dx && dx->IsSharedBufferWith(dout)) {
1760 1761
    dx->clear();
    dx->mutable_data<T>(x_dims, ctx.GetPlace());
1762 1763
  }

1764 1765 1766 1767
  VLOG(3) << "CommonElementwiseBroadcastBackward xdims:"
          << framework::make_ddim(x_dims_array)
          << " ydim:" << framework::make_ddim(y_dims_array);

1768
  if (platform::is_gpu_place(ctx.GetPlace())) {
1769
#if defined(__NVCC__) || defined(__HIPCC__)
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    CommonGradBroadcastCUDA<T, DX_OP, DY_OP>(
        x, y, out, dout, dx, dy, x_dims_array.data(), y_dims_array.data(),
        out_dims_array.data(), max_dim,
        ctx.template device_context<platform::CUDADeviceContext>(), dx_op,
        dy_op);
#endif
  } else {
    CommonGradBroadcastCPU<T, DX_OP, DY_OP>(
        x, y, out, dout, dx, dy, x_dims_array.data(), y_dims_array.data(),
        out_dims_array.data(), max_dim,
        ctx.template device_context<platform::CPUDeviceContext>(), dx_op,
        dy_op);
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  }
}

1785 1786
template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP>
void ElemwiseGradComputeNoBroadcast(
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    const framework::ExecutionContext &ctx, const framework::DDim &x_dim,
    const framework::DDim &y_dim, const framework::Tensor &x,
    const framework::Tensor &y, const framework::Tensor &out,
    const framework::Tensor &dout, int axis, framework::Tensor *dx,
    framework::Tensor *dy, DX_OP dx_op, DY_OP dy_op) {
1792
  size_t N = static_cast<size_t>(framework::product(x_dim));
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#if !defined(_WIN32)
1794 1795
  platform::ForRange<DeviceContext> for_range(
      ctx.template device_context<DeviceContext>(), N);
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#else
  platform::ForRange<DeviceContext> for_range(
      ctx.device_context<DeviceContext>(), N);
#endif  // !_WIN32
1800 1801 1802 1803 1804 1805 1806 1807
  for_range(ElemwiseGradNoBroadcast<T, DX_OP, DY_OP>{
      x.data<T>(), y.data<T>(), out.data<T>(), dout.data<T>(), dx_op, dy_op,
      dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
      dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace())});
}

template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP>
void ElemwiseGradComputeWithBroadcast(
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    const framework::ExecutionContext &ctx, const framework::DDim &x_dims,
    const framework::DDim &y_dims, const framework::Tensor &x,
1810 1811 1812
    const framework::Tensor &y, const framework::Tensor &out,
    const framework::Tensor &dout, int axis, framework::Tensor *dx,
    framework::Tensor *dy, DX_OP dx_op, DY_OP dy_op) {
1813
  bool is_xsize_larger = true;
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  int max_dim = x_dims.size();
  if (x_dims.size() < y_dims.size()) {
    is_xsize_larger = false;
    max_dim = y_dims.size();
  }
1820

1821
  axis = (axis == -1 ? std::abs(x_dims.size() - y_dims.size()) : axis);
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  PADDLE_ENFORCE_GE(
      axis, 0,
      platform::errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis, max_dim,
                    platform::errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim, axis));
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  int pre, n, post, is_run_common_broadcast, axis_trim = 0;
  if (is_xsize_larger) {
    auto y_dims_trimed = trim_trailing_singular_dims(y_dims);
    axis_trim = (y_dims_trimed.size() == 0) ? x_dims.size() : axis;
    get_mid_dims(x_dims, y_dims_trimed, axis_trim, &pre, &n, &post,
                 &is_run_common_broadcast);
  } else {
    auto x_dims_trimed = trim_trailing_singular_dims(x_dims);
    axis_trim = (x_dims_trimed.size() == 0) ? y_dims.size() : axis;
    get_mid_dims(y_dims, x_dims_trimed, axis_trim, &pre, &n, &post,
                 &is_run_common_broadcast);
  }
  // special case for common backward implementation.
  if (is_run_common_broadcast) {
    CommonElementwiseBroadcastBackward<DeviceContext, T, DX_OP, DY_OP>(
        ctx, x_dims, y_dims, x, y, out, dout, axis, dx, dy, dx_op, dy_op);
    return;
  }
  if (post == 1) {
1851
    if (platform::is_gpu_place(ctx.GetPlace())) {
1852
#if defined(__NVCC__) || defined(__HIPCC__)
1853 1854
      ElemwiseGradBroadcast1CUDA(
          ctx.template device_context<DeviceContext>().stream(), x.data<T>(),
1855 1856
          y.data<T>(), out.data<T>(), dout.data<T>(), pre, n, is_xsize_larger,
          dx_op, dy_op,
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          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()));
#endif
    } else {
      ElemwiseGradBroadcast1CPU(
1862
          x.data<T>(), y.data<T>(), out.data<T>(), dout.data<T>(), pre, n,
1863
          is_xsize_larger, dx_op, dy_op,
1864
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
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          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()));
    }
  } else {
    if (platform::is_gpu_place(ctx.GetPlace())) {
1869
#if defined(__NVCC__) || defined(__HIPCC__)
1870 1871
      ElemwiseGradBroadcast2CUDA(
          ctx.template device_context<DeviceContext>().stream(), x.data<T>(),
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          y.data<T>(), out.data<T>(), dout.data<T>(), pre, n, post,
          is_xsize_larger, dx_op, dy_op,
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
1875 1876 1877 1878 1879
          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()));
#endif
    } else {
      ElemwiseGradBroadcast2CPU(
          x.data<T>(), y.data<T>(), out.data<T>(), dout.data<T>(), pre, n, post,
1880
          is_xsize_larger, dx_op, dy_op,
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          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()));
    }
  }
}

1887 1888 1889 1890 1891 1892 1893 1894 1895
template <typename Functor, typename DeviceContext, typename T,
          typename OutType = T>
void CommonElementwiseBroadcastForward(
    const framework::ExecutionContext &ctx, const framework::Tensor *x,
    const framework::Tensor *y, framework::Tensor *z,
    const framework::DDim &x_dims, const framework::DDim &y_dims, Functor func,
    int axis, const bool is_xsize_larger = true) {
  int max_dim = std::max(x_dims.size(), y_dims.size());
  axis = (axis == -1 ? std::abs(x_dims.size() - y_dims.size()) : axis);
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  PADDLE_ENFORCE_GE(
      axis, 0,
      platform::errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis, max_dim,
                    platform::errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim, axis));
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  std::vector<int> x_dims_array(max_dim);
  std::vector<int> y_dims_array(max_dim);
  std::vector<int> out_dims_array(max_dim);
  GetBroadcastDimsArrays(x_dims, y_dims, x_dims_array.data(),
                         y_dims_array.data(), out_dims_array.data(), max_dim,
                         axis);

  if (platform::is_gpu_place(ctx.GetPlace())) {
1913
#if defined(__NVCC__) || defined(__HIPCC__)
1914
    CommonForwardBroadcastCUDA<Functor, T, OutType>(
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        x, y, z, x_dims_array.data(), y_dims_array.data(),
        out_dims_array.data(), max_dim,
        ctx.template device_context<platform::CUDADeviceContext>(), func,
        is_xsize_larger);
#endif
  } else {
    CommonForwardBroadcastCPU<Functor, T, OutType>(
        x, y, z, x_dims_array.data(), y_dims_array.data(),
        out_dims_array.data(), max_dim,
        ctx.template device_context<platform::CPUDeviceContext>(), func,
        is_xsize_larger);
  }
}

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template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP>
1930 1931 1932 1933 1934
void ElemwiseGradCompute(const framework::ExecutionContext &ctx,
                         const framework::Tensor &x, const framework::Tensor &y,
                         const framework::Tensor &out,
                         const framework::Tensor &dout, int axis,
                         framework::Tensor *dx, framework::Tensor *dy,
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                         DX_OP dx_op, DY_OP dy_op) {
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  const framework::DDim &x_dim = x.dims();
  const framework::DDim &y_dim = y.dims();
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  if (x.dims() == y.dims()) {
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    ElemwiseGradComputeNoBroadcast<DeviceContext, T, DX_OP, DY_OP>(
        ctx, x_dim, y_dim, x, y, out, dout, axis, dx, dy, dx_op, dy_op);
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  } else {
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    ElemwiseGradComputeWithBroadcast<DeviceContext, T, DX_OP, DY_OP>(
        ctx, x_dim, y_dim, x, y, out, dout, axis, dx, dy, dx_op, dy_op);
  }
}

// NOTE(dzhwinter): Only used in elementwise_add, elementwise_sub.
// explicit gradient can cut off X, Y, Out from gradient op
// In elementwise_add, elementwise_sub, we use dout as fake X, Y, Out to reuse
// elementwise code.
template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP>
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void ElemwiseExplicitGradCompute(const framework::ExecutionContext &ctx,
                                 const framework::Tensor &x,
                                 const framework::Tensor &y,
                                 const framework::Tensor &out,
                                 const framework::Tensor &dout, int axis,
                                 framework::Tensor *dx, framework::Tensor *dy,
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                                 DX_OP dx_op, DY_OP dy_op) {
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  const framework::DDim &x_dim = x.dims();
  const framework::DDim &y_dim = y.dims();
  if (x.dims() == y.dims()) {
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    ElemwiseGradComputeNoBroadcast<DeviceContext, T, DX_OP, DY_OP>(
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        ctx, x_dim, y_dim, dout, dout, out, dout, axis, dx, dy, dx_op, dy_op);
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  } else {
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    ElemwiseGradComputeWithBroadcast<DeviceContext, T, DX_OP, DY_OP>(
        ctx, x_dim, y_dim, dout, dout, out, dout, axis, dx, dy, dx_op, dy_op);
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  }
}
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template <typename Functor, typename DeviceContext, typename T,
          typename OutType = T>
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void ElementwiseComputeEx(const framework::ExecutionContext &ctx,
                          const framework::Tensor *x,
                          const framework::Tensor *y, int axis, Functor func,
                          framework::Tensor *z) {
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  auto x_dims = x->dims();
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  auto y_dims = y->dims();
  bool is_xsize_larger = true;
  int max_dim = x_dims.size();
  if (x_dims.size() < y_dims.size()) {
    is_xsize_larger = false;
    max_dim = y_dims.size();
  }
  TransformFunctor<Functor, T, DeviceContext, OutType> functor(
      x, y, z, ctx.template device_context<DeviceContext>(), func,
      is_xsize_larger);
  if (x_dims == y_dims) {
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    functor.Run();
    return;
  }

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  axis = (axis == -1 ? std::abs(x_dims.size() - y_dims.size()) : axis);
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  PADDLE_ENFORCE_GE(
      axis, 0,
      platform::errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis, max_dim,
                    platform::errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim, axis));
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  int pre, n, post, is_run_common_broadcast, axis_trim = 0;
  if (is_xsize_larger) {
    auto y_dims_trimed = trim_trailing_singular_dims(y_dims);
    axis_trim = (y_dims_trimed.size() == 0) ? x_dims.size() : axis;
    get_mid_dims(x_dims, y_dims_trimed, axis_trim, &pre, &n, &post,
                 &is_run_common_broadcast);
  } else {
    auto x_dims_trimed = trim_trailing_singular_dims(x_dims);
    axis_trim = (x_dims_trimed.size() == 0) ? y_dims.size() : axis;
    get_mid_dims(y_dims, x_dims_trimed, axis_trim, &pre, &n, &post,
                 &is_run_common_broadcast);
  }
  // special case for common implementation.
  // case 1: x=[2,3,1,5], y=[2,1,4,1]
  // case 2: x=[2,3,4], y=[1,1,4]
  if (is_run_common_broadcast == 1) {
    CommonElementwiseBroadcastForward<Functor, DeviceContext, T, OutType>(
        ctx, x, y, z, x_dims, y_dims, func, axis, is_xsize_larger);
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    return;
  }
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  if (platform::is_gpu_place(ctx.GetPlace())) {
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#if defined(__NVCC__) || defined(__HIPCC__)
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    ComputeElementwiseCUDA<Functor, T, OutType>(
        x, y, z, pre, n, post,
        ctx.template device_context<platform::CUDADeviceContext>(), func,
        is_xsize_larger);
#endif
    return;
  }
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  if (post == 1) {
    functor.RunRowWise(n, pre);
    return;
  } else {
    functor.RunMidWise(n, pre, post);
    return;
  }
}

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// FusedElemwiseAndAct
// --- forward
template <typename T, typename CompoundFunctor, bool KeepIntermediateOut>
struct FusedElemwiseAndActNoBroadcast {
  HOSTDEVICE void operator()(size_t i) {
    T y_val = y_[i];
    T x_val = x_[i];
    if (KeepIntermediateOut) {
      T intermeidiate_out = compound_functor_.GetIntermediateOut(x_val, y_val);
      intermediate_out_[i] = intermeidiate_out;
      out_[i] =
          compound_functor_.GetOutUseIntermediateOut(x_val, intermeidiate_out);
    } else {
      out_[i] = compound_functor_.GetOut(x_val, y_val);
    }
  }

  const T *x_;
  const T *y_;
  CompoundFunctor compound_functor_;
  T *out_;
  T *intermediate_out_;
};

// FusedElemwiseAndActBroadcast1:
// In this case, X and Y can be reshaped to a matrix.
// For example shape(X) = (2, 3, 4, 5), shape(Y) = (4, 5) and axis = -1 or 2,
// X can be reshaped to (6, 20) and Y can be reshaped to (1, 20)
template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
static void FusedElemwiseAndActBroadcast1CPU(const T *x, const T *y,
                                             CompoundFunctor compound_functor,
                                             int h, int w, T *out,
                                             T *intermediate_out) {
  for (int i = 0; i < h; ++i) {
    for (int j = 0; j < w; ++j) {
      int offset = i * w + j;

      T y_val = BcastY ? y[j] : y[offset];
      T x_val = BcastY ? x[offset] : x[j];
      int64_t intermediate_out_offset;
      if (KeepIntermediateOut) {
        T intermeidiate_out = compound_functor.GetIntermediateOut(x_val, y_val);

        if (SameShapeOfIntermediateOutAndOut) {
          // for the case of f1(f2(x, y))
          intermediate_out_offset = offset;
        } else if (BcastY) {
          intermediate_out_offset = j;
        } else {
          intermediate_out_offset = offset;
        }

        intermediate_out[intermediate_out_offset] = intermeidiate_out;
        out[offset] =
            compound_functor.GetOutUseIntermediateOut(x_val, intermeidiate_out);
      } else {
        out[offset] = compound_functor.GetOut(x_val, y_val);
      }
    }
  }
}

// FusedElemwiseAndActBroadcast2
// In this case, X and Y can be reshaped to a matrix.
// For example shape(X) = (2, 3, 4, 5), shape(Y) = (3, 4) and axis = 1,
// X can be reshaped to (2, 12, 5) and Y can be reshaped to (1, 12, 1)
// pre = 2, n = 12, post = 5
template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
static void FusedElemwiseAndActBroadcast2CPU(const T *x, const T *y, int pre,
                                             int n, int post,
                                             CompoundFunctor compound_functor,
                                             T *out, T *intermediate_out) {
  for (int i = 0; i < pre; ++i) {
    for (int j = 0; j < n; ++j) {
      for (int k = 0; k < post; ++k) {
        int offset = i * n * post + j * post + k;

        T y_val = BcastY ? y[j] : y[offset];
        T x_val = BcastY ? x[offset] : x[j];
        int64_t intermediate_out_offset;

        if (KeepIntermediateOut) {
          T intermeidiate_out =
              compound_functor.GetIntermediateOut(x_val, y_val);

          if (SameShapeOfIntermediateOutAndOut) {
            // for the case of f1(f2(x, y))
            intermediate_out_offset = offset;
          } else if (BcastY) {
            intermediate_out_offset = j;
          } else {
            intermediate_out_offset = offset;
          }

          intermediate_out[intermediate_out_offset] = intermeidiate_out;
          out[offset] = compound_functor.GetOutUseIntermediateOut(
              x_val, intermeidiate_out);
        } else {
          out[offset] = compound_functor.GetOut(x_val, y_val);
        }
      }
    }
  }
}

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#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
static __global__ void FusedElemwiseAndActBroadcast1CUDAKernel(
    const T *x, const T *y, int h, int w, CompoundFunctor compound_functor,
    T *out, T *intermediate_out) {
  int j = blockIdx.x;
  int i = threadIdx.x;

  while (i < h) {
    int offset = i * w + j;

    T y_val = BcastY ? y[j] : y[offset];
    T x_val = BcastY ? x[offset] : x[j];
    int64_t intermediate_out_offset;

    if (KeepIntermediateOut) {
      T intermeidiate_out = compound_functor.GetIntermediateOut(x_val, y_val);

      if (SameShapeOfIntermediateOutAndOut) {
        // for the case of f1(f2(x, y))
        intermediate_out_offset = offset;
      } else if (BcastY) {
        intermediate_out_offset = j;
      } else {
        intermediate_out_offset = offset;
      }

      intermediate_out[intermediate_out_offset] = intermeidiate_out;
      out[offset] =
          compound_functor.GetOutUseIntermediateOut(x_val, intermeidiate_out);
    } else {
      out[offset] = compound_functor.GetOut(x_val, y_val);
    }

    i += ELEMWISE_MAX_BLOCK_DIM;
  }
}

template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
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static void FusedElemwiseAndActBroadcast1CUDA(gpuStream_t stream, const T *x,
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                                              const T *y,
                                              CompoundFunctor compound_functor,
                                              int h, int w, T *out,
                                              T *intermediate_out) {
  int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
  int gird_size = w;
  FusedElemwiseAndActBroadcast1CUDAKernel<
      T, CompoundFunctor, BcastY, KeepIntermediateOut,
      SameShapeOfIntermediateOutAndOut><<<gird_size, block_size, 0, stream>>>(
      x, y, h, w, compound_functor, out, intermediate_out);
}

template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
static __global__ void FusedElemwiseAndActBroadcast2CUDAKernel(
    const T *x, const T *y, CompoundFunctor compound_functor, int pre, int n,
    int post, T *out, T *intermediate_out) {
  int tid = threadIdx.x;
  int j = blockIdx.x;

  while (true) {
    int i = tid / post;
    int k = tid % post;
    if (i >= pre) break;

    int offset = i * n * post + j * post + k;

    T y_val = BcastY ? y[j] : y[offset];
    T x_val = BcastY ? x[offset] : x[j];
    int64_t intermediate_out_offset;

    if (KeepIntermediateOut) {
      T intermeidiate_out = compound_functor.GetIntermediateOut(x_val, y_val);

      if (SameShapeOfIntermediateOutAndOut) {
        // for the case of f1(f2(x, y))
        intermediate_out_offset = offset;
      } else if (BcastY) {
        intermediate_out_offset = j;
      } else {
        intermediate_out_offset = offset;
      }

      intermediate_out[intermediate_out_offset] = intermeidiate_out;
      out[offset] =
          compound_functor.GetOutUseIntermediateOut(x_val, intermeidiate_out);
    } else {
      out[offset] = compound_functor.GetOut(x_val, y_val);
    }

    tid += ELEMWISE_MAX_BLOCK_DIM;
  }
}

template <typename T, typename CompoundFunctor, bool BcastY,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
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static void FusedElemwiseAndActBroadcast2CUDA(gpuStream_t stream, const T *x,
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                                              const T *y, int pre, int n,
                                              int post,
                                              CompoundFunctor compound_functor,
                                              T *out, T *intermediate_out) {
  int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, pre * post);
  int gird_size = n;

  FusedElemwiseAndActBroadcast2CUDAKernel<
      T, CompoundFunctor, BcastY, KeepIntermediateOut,
      SameShapeOfIntermediateOutAndOut><<<gird_size, block_size, 0, stream>>>(
      x, y, compound_functor, pre, n, post, out, intermediate_out);
}

#endif

template <typename DeviceContext, typename T, typename CompoundFunctor,
          bool KeepIntermediateOut>
void FusedElemwiseAndActComputeNoBroadcast(
    const framework::ExecutionContext &ctx, const framework::DDim &x_dim,
    const framework::Tensor &x, const framework::Tensor &y,
    CompoundFunctor compound_functor, framework::Tensor *out,
    framework::Tensor *intermediate_out) {
  size_t N = static_cast<size_t>(framework::product(x_dim));

  platform::ForRange<DeviceContext> for_range(
      ctx.template device_context<DeviceContext>(), N);

  for_range(
      FusedElemwiseAndActNoBroadcast<T, CompoundFunctor, KeepIntermediateOut>{
          x.data<T>(), y.data<T>(), compound_functor,
          out->mutable_data<T>(ctx.GetPlace()),
          intermediate_out == nullptr
              ? nullptr
              : intermediate_out->mutable_data<T>(ctx.GetPlace())});
}

template <typename DeviceContext, typename T, typename CompoundFunctor,
          bool BcastY, bool KeepIntermediateOut,
          bool SameShapeOfIntermediateOutAndOut>
void FusedElemwiseAndActComputeWithBroadcast(
    const framework::ExecutionContext &ctx, const framework::DDim &x_dim,
    const framework::DDim &y_dim_untrimed, const framework::Tensor &x,
    const framework::Tensor &y, CompoundFunctor compound_functor, int axis,
    framework::Tensor *out, framework::Tensor *intermediate_out) {
  axis = (axis == -1 ? x_dim.size() - y_dim_untrimed.size() : axis);
  auto y_dim = trim_trailing_singular_dims(y_dim_untrimed);
  axis = (y_dim.size() == 0) ? x_dim.size() : axis;

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  int pre, n, post, is_run_common_broadcast;
  get_mid_dims(x_dim, y_dim, axis, &pre, &n, &post, &is_run_common_broadcast);
2298 2299 2300 2301
  if (post == 1) {
    int h = pre;
    int w = n;
    if (platform::is_gpu_place(ctx.GetPlace())) {
2302
#if defined(__NVCC__) || defined(__HIPCC__)
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      FusedElemwiseAndActBroadcast1CUDA<T, CompoundFunctor, BcastY,
                                        KeepIntermediateOut,
                                        SameShapeOfIntermediateOutAndOut>(
          ctx.template device_context<DeviceContext>().stream(), x.data<T>(),
          y.data<T>(), compound_functor, h, w,
          out->mutable_data<T>(ctx.GetPlace()),
          intermediate_out == nullptr
              ? nullptr
              : intermediate_out->mutable_data<T>(ctx.GetPlace()));
#endif
    } else {
      FusedElemwiseAndActBroadcast1CPU<T, CompoundFunctor, BcastY,
                                       KeepIntermediateOut,
                                       SameShapeOfIntermediateOutAndOut>(
          x.data<T>(), y.data<T>(), compound_functor, h, w,
          out->mutable_data<T>(ctx.GetPlace()),
          intermediate_out == nullptr
              ? nullptr
              : intermediate_out->mutable_data<T>(ctx.GetPlace()));
    }
  } else {
    if (platform::is_gpu_place(ctx.GetPlace())) {
2325
#if defined(__NVCC__) || defined(__HIPCC__)
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      FusedElemwiseAndActBroadcast2CUDA<T, CompoundFunctor, BcastY,
                                        KeepIntermediateOut,
                                        SameShapeOfIntermediateOutAndOut>(
          ctx.template device_context<DeviceContext>().stream(), x.data<T>(),
          y.data<T>(), pre, n, post, compound_functor,
          out->mutable_data<T>(ctx.GetPlace()),
          intermediate_out == nullptr
              ? nullptr
              : intermediate_out->mutable_data<T>(ctx.GetPlace()));
#endif
    } else {
      FusedElemwiseAndActBroadcast2CPU<T, CompoundFunctor, BcastY,
                                       KeepIntermediateOut,
                                       SameShapeOfIntermediateOutAndOut>(
          x.data<T>(), y.data<T>(), pre, n, post, compound_functor,
          out->mutable_data<T>(ctx.GetPlace()),
          intermediate_out == nullptr
              ? nullptr
              : intermediate_out->mutable_data<T>(ctx.GetPlace()));
    }
  }
}

// --- backward
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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut>
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struct FusedElemwiseAndActGradNoBroadcast {
  HOSTDEVICE void operator()(size_t i) {
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    T zero = static_cast<T>(0);
    T x_val = (x_ == nullptr) ? zero : x_[i];
    T y_val = (y_ == nullptr) ? zero : y_[i];
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    T out_val = out_[i];
    T dout_val = dout_[i];
    T intermediate_out_val = UseIntermediateOut
                                 ? intermediate_out_[i]
                                 : dx_op_.GetIntermediateOut(x_val, y_val);
2362
    if (dx_ != nullptr) {
2363 2364
      dx_[i] = dx_op_.UseIntermediateOut(x_val, y_val, intermediate_out_val,
                                         out_val, dout_val);
2365 2366
    }
    if (dy_ != nullptr) {
2367 2368
      dy_[i] = dy_op_.UseIntermediateOut(x_val, y_val, intermediate_out_val,
                                         out_val, dout_val);
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    }
    if (dintermediate_ != nullptr) {
2371 2372
      dintermediate_[i] = dintermediate_op_.UseIntermediateOut(
          x_val, intermediate_out_val, out_val, dout_val);
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    }
  }

  const T *x_;
  const T *y_;
  const T *intermediate_out_;
  const T *out_;
  const T *dout_;
  DX_OP dx_op_;
  DY_OP dy_op_;
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  DIntermediate_OP dintermediate_op_;
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  T *dx_;
  T *dy_;
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  T *dintermediate_;
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};

template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP,
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          typename DIntermediate_OP, bool UseIntermediateOut>
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void FusedElemwiseAndActGradComputeNoBroadcast(
    const framework::ExecutionContext &ctx, const framework::DDim &x_dim,
    const framework::DDim &y_dim, const framework::Tensor *x,
    const framework::Tensor *y, const framework::Tensor *intermediate_out,
    const framework::Tensor *out, const framework::Tensor *dout, int axis,
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    framework::Tensor *dx, framework::Tensor *dy,
    framework::Tensor *dintermediate, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op) {
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  size_t N = static_cast<size_t>(framework::product(x_dim));
  platform::ForRange<DeviceContext> for_range(
      ctx.template device_context<DeviceContext>(), N);
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  const T *x_data = nullptr;
  const T *y_data = nullptr;
  if (x->IsInitialized()) x_data = x->data<T>();
  if (y->IsInitialized()) y_data = y->data<T>();

  for_range(FusedElemwiseAndActGradNoBroadcast<
            T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut>{
      x_data, y_data, intermediate_out ? intermediate_out->data<T>() : nullptr,
      out->data<T>(), dout->data<T>(), dx_op, dy_op, dintermediate_op,
      dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
      dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()),
      dintermediate == nullptr ? nullptr : dintermediate->mutable_data<T>(
                                               ctx.GetPlace())});
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}

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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
static void FusedElemwiseAndActGradBroadcast1CPU(
    const T *x, const T *y, const T *intermediate_out, const T *out,
    const T *dout, int h, int w, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op, T *dx, T *dy, T *d_intermediate) {
2424
  int64_t tmp_out_idx, x_idx, y_idx;
2425
  T zero = static_cast<T>(0);
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  for (int i = 0; i < h; ++i) {
    for (int j = 0; j < w; ++j) {
      int offset = i * w + j;

      tmp_out_idx = BcastY ? j : offset;
      y_idx = BcastY ? j : offset;
      x_idx = BcastY ? offset : j;
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      T x_val = (x == nullptr) ? zero : x[x_idx];
      T y_val = (y == nullptr) ? zero : y[y_idx];
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      if (SameShapeOfIntermediateOutAndOut) {
        tmp_out_idx = offset;
      }

      if (dx != nullptr) {
        T tmp = UseIntermediateOut
2442
                    ? dx_op.UseIntermediateOut(x_val, y_val,
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                                               intermediate_out[tmp_out_idx],
                                               out[offset], dout[offset])
2445
                    : dx_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2446 2447 2448 2449 2450 2451 2452 2453 2454 2455 2456 2457 2458

        if (BcastY) {
          dx[x_idx] = tmp;
        } else {
          if (i == 0) {
            dx[x_idx] = tmp;
          } else {
            dx[x_idx] += tmp;
          }
        }
      }
      if (dy != nullptr) {
        T tmp = UseIntermediateOut
2459
                    ? dy_op.UseIntermediateOut(x_val, y_val,
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                                               intermediate_out[tmp_out_idx],
                                               out[offset], dout[offset])
2462
                    : dy_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2463 2464 2465 2466 2467 2468 2469 2470 2471 2472
        if (BcastY) {
          if (i == 0) {
            dy[y_idx] = tmp;
          } else {
            dy[y_idx] += tmp;
          }
        } else {
          dy[y_idx] = tmp;
        }
      }
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      if (d_intermediate != nullptr) {
        T tmp = UseIntermediateOut
                    ? dintermediate_op.UseIntermediateOut(
2476
                          x_val, intermediate_out[tmp_out_idx], out[offset],
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                          dout[offset])
2478 2479
                    : dintermediate_op.Recompute(x_val, y_val, out[offset],
                                                 dout[i]);
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        if (SameShapeOfIntermediateOutAndOut) {
          d_intermediate[tmp_out_idx] = tmp;
        } else {
          if (i == 0) {
            d_intermediate[tmp_out_idx] = tmp;
          } else {
            d_intermediate[tmp_out_idx] += tmp;
          }
        }
      }
2490 2491 2492 2493
    }
  }
}

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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
static void FusedElemwiseAndActGradBroadcast2CPU(
    const T *x, const T *y, const T *intermediate_out, const T *out,
    const T *dout, int pre, int n, int post, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op, T *dx, T *dy, T *d_intermediate) {
2501
  int64_t tmp_out_idx, x_idx, y_idx;
2502
  T zero = static_cast<T>(0);
2503 2504 2505 2506 2507 2508 2509 2510 2511
  for (int i = 0; i < pre; ++i) {
    for (int j = 0; j < n; ++j) {
      for (int k = 0; k < post; ++k) {
        int offset = i * n * post + j * post + k;

        tmp_out_idx = BcastY ? j : offset;
        y_idx = BcastY ? j : offset;
        x_idx = BcastY ? offset : j;

2512 2513 2514
        T x_val = (x == nullptr) ? zero : x[x_idx];
        T y_val = (y == nullptr) ? zero : y[y_idx];

2515 2516 2517 2518 2519
        if (SameShapeOfIntermediateOutAndOut) {
          tmp_out_idx = offset;
        }

        if (dx != nullptr) {
2520 2521 2522 2523 2524 2525
          T tmp =
              UseIntermediateOut
                  ? dx_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dx_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2526 2527 2528 2529 2530 2531 2532 2533 2534 2535 2536 2537

          if (BcastY) {
            dx[x_idx] = tmp;
          } else {
            if (i == 0 && k == 0) {
              dx[x_idx] = tmp;
            } else {
              dx[x_idx] += tmp;
            }
          }
        }
        if (dy != nullptr) {
2538 2539 2540 2541 2542 2543
          T tmp =
              UseIntermediateOut
                  ? dy_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dy_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2544 2545 2546 2547 2548 2549 2550 2551 2552 2553
          if (BcastY) {
            if (i == 0 && k == 0) {
              dy[y_idx] = tmp;
            } else {
              dy[y_idx] += tmp;
            }
          } else {
            dy[y_idx] = tmp;
          }
        }
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        if (d_intermediate != nullptr) {
          T tmp = UseIntermediateOut
                      ? dintermediate_op.UseIntermediateOut(
2557 2558 2559 2560
                            x_val, intermediate_out[tmp_out_idx], out[offset],
                            dout[offset])
                      : dintermediate_op.Recompute(x_val, y_val, out[offset],
                                                   dout[i]);
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          if (SameShapeOfIntermediateOutAndOut) {
            d_intermediate[tmp_out_idx] = tmp;
          } else {
            if (i == 0) {
              d_intermediate[tmp_out_idx] = tmp;
            } else {
              d_intermediate[tmp_out_idx] += tmp;
            }
          }
        }
2571 2572 2573 2574 2575
      }
    }
  }
}

2576
#if defined(__NVCC__) || defined(__HIPCC__)
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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
2580 2581
static __global__ void FusedElemwiseAndActGradBroadcast1CUDAKernel(
    const T *x, const T *y, const T *intermediate_out, const T *out,
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    const T *dout, int h, int w, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op, T *dx, T *dy, T *d_intermediate) {
2584 2585 2586
  int j = blockIdx.x;
  int i = threadIdx.x;
  int tid = threadIdx.x;
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  T val(0), inter_val(0);
2588
  int64_t tmp_out_idx, x_idx, y_idx;
2589
  T zero = static_cast<T>(0);
2590 2591 2592 2593 2594 2595 2596

  do {
    int offset = i * w + j;

    tmp_out_idx = BcastY ? j : offset;
    y_idx = BcastY ? j : offset;
    x_idx = BcastY ? offset : j;
2597 2598
    T x_val = (x == nullptr) ? zero : x[x_idx];
    T y_val = (y == nullptr) ? zero : y[y_idx];
2599 2600 2601 2602 2603 2604

    if (SameShapeOfIntermediateOutAndOut) {
      tmp_out_idx = offset;
    }

    if (dx != nullptr) {
2605 2606 2607 2608 2609
      T tmp = UseIntermediateOut
                  ? dx_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dx_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2610 2611 2612 2613 2614 2615 2616 2617

      if (BcastY) {
        dx[x_idx] = tmp;
      } else {
        val += tmp;
      }
    }
    if (dy != nullptr) {
2618 2619 2620 2621 2622
      T tmp = UseIntermediateOut
                  ? dy_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dy_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2623 2624 2625 2626 2627 2628
      if (BcastY) {
        val += tmp;
      } else {
        dy[y_idx] = tmp;
      }
    }
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    if (d_intermediate != nullptr) {
      T tmp = UseIntermediateOut
                  ? dintermediate_op.UseIntermediateOut(
                        y[y_idx], intermediate_out[tmp_out_idx], out[offset],
                        dout[offset])
2634
                  : dintermediate_op.Recompute(x_val, y_val, out[offset],
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                                               dout[offset]);
      if (SameShapeOfIntermediateOutAndOut) {
        d_intermediate[tmp_out_idx] = tmp;
      } else {
        inter_val += tmp;
      }
    }
2642 2643 2644 2645

    i += ELEMWISE_MAX_BLOCK_DIM;
  } while (i < h);

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  h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
2647 2648 2649 2650 2651 2652 2653 2654 2655 2656 2657 2658 2659 2660 2661
  if (BcastY) {
    if (dy) {
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
    }
  } else {
    if (dx) {
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dx[j] = val;
      }
    }
  }
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  if (!SameShapeOfIntermediateOutAndOut) {
    if (d_intermediate) {
      inter_val = paddle::platform::reduceSum(inter_val, tid, h);
      if (threadIdx.x == 0) {
        d_intermediate[j] = inter_val;
      }
    }
  }
2670 2671
}

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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
static void FusedElemwiseAndActGradBroadcast1CUDA(
2676
    gpuStream_t stream, const T *x, const T *y, const T *intermediate_out,
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    const T *out, const T *dout, int h, int w, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op, T *dx, T *dy, T *d_intermediate) {
2679 2680 2681
  int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, h);
  int gird_size = w;
  FusedElemwiseAndActGradBroadcast1CUDAKernel<
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      T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut, BcastY,
2683
      SameShapeOfIntermediateOutAndOut><<<gird_size, block_size, 0, stream>>>(
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      x, y, intermediate_out, out, dout, h, w, dx_op, dy_op, dintermediate_op,
      dx, dy, d_intermediate);
2686 2687
}

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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
2691 2692
static __global__ void FusedElemwiseAndActGradBroadcast2CUDAKernel(
    const T *x, const T *y, const T *intermediate_out, const T *out,
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    const T *dout, int pre, int n, int post, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op, T *dx, T *dy, T *d_intermediate) {
2695 2696 2697
  int tid = threadIdx.x;
  int j = blockIdx.x;

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  T val(0), inter_val(0);
2699 2700
  int ttid = tid;
  int64_t tmp_out_idx, x_idx, y_idx;
2701
  T zero = static_cast<T>(0);
2702 2703 2704 2705 2706 2707 2708 2709 2710 2711
  while (true) {
    int i = ttid / post;
    int k = ttid % post;
    if (i >= pre) break;

    int offset = i * n * post + j * post + k;

    tmp_out_idx = BcastY ? j : offset;
    y_idx = BcastY ? j : offset;
    x_idx = BcastY ? offset : j;
2712 2713
    T x_val = (x == nullptr) ? zero : x[x_idx];
    T y_val = (y == nullptr) ? zero : y[y_idx];
2714 2715 2716 2717 2718 2719

    if (SameShapeOfIntermediateOutAndOut) {
      tmp_out_idx = offset;
    }

    if (dx != nullptr) {
2720 2721 2722 2723 2724
      T tmp = UseIntermediateOut
                  ? dx_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dx_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2725 2726 2727 2728 2729 2730 2731 2732

      if (BcastY) {
        dx[x_idx] = tmp;
      } else {
        val += tmp;
      }
    }
    if (dy != nullptr) {
2733 2734 2735 2736 2737
      T tmp = UseIntermediateOut
                  ? dy_op.UseIntermediateOut(x_val, y_val,
                                             intermediate_out[tmp_out_idx],
                                             out[offset], dout[offset])
                  : dy_op.Recompute(x_val, y_val, out[offset], dout[offset]);
2738 2739 2740 2741 2742 2743
      if (BcastY) {
        val += tmp;
      } else {
        dy[y_idx] = tmp;
      }
    }
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    if (d_intermediate != nullptr) {
      T tmp = UseIntermediateOut
                  ? dintermediate_op.UseIntermediateOut(
2747
                        y_val, intermediate_out[tmp_out_idx], out[offset],
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                        dout[offset])
2749
                  : dintermediate_op.Recompute(x_val, y_val, out[offset],
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                                               dout[offset]);
      if (SameShapeOfIntermediateOutAndOut) {
        d_intermediate[tmp_out_idx] = tmp;
      } else {
        inter_val += tmp;
      }
    }
2757 2758 2759
    ttid += ELEMWISE_MAX_BLOCK_DIM;
  }

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  int h = pre * post;
  h = h > ELEMWISE_MAX_BLOCK_DIM ? ELEMWISE_MAX_BLOCK_DIM : h;
2762 2763 2764 2765 2766 2767 2768 2769 2770 2771 2772 2773 2774 2775 2776
  if (BcastY) {
    if (dy) {
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dy[j] = val;
      }
    }
  } else {
    if (dx) {
      val = paddle::platform::reduceSum(val, tid, h);
      if (threadIdx.x == 0) {
        dx[j] = val;
      }
    }
  }
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  if (!SameShapeOfIntermediateOutAndOut) {
    if (d_intermediate) {
      inter_val = paddle::platform::reduceSum(inter_val, tid, h);
      if (threadIdx.x == 0) {
        d_intermediate[j] = inter_val;
      }
    }
  }
2785 2786
}

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template <typename T, typename DX_OP, typename DY_OP, typename DIntermediate_OP,
          bool UseIntermediateOut, bool BcastY,
          bool SameShapeOfIntermediateOutAndOut>
2790
static void FusedElemwiseAndActGradBroadcast2CUDA(
2791
    gpuStream_t stream, const T *x, const T *y, const T *intermediate_out,
2792
    const T *out, const T *dout, int pre, int n, int post, DX_OP dx_op,
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    DY_OP dy_op, DIntermediate_OP dintermediate_op, T *dx, T *dy,
    T *dintermediate) {
2795 2796 2797
  int block_size = std::min(ELEMWISE_MAX_BLOCK_DIM, pre * post);
  int gird_size = n;
  FusedElemwiseAndActGradBroadcast2CUDAKernel<
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      T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut, BcastY,
2799
      SameShapeOfIntermediateOutAndOut><<<gird_size, block_size, 0, stream>>>(
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      x, y, intermediate_out, out, dout, pre, n, post, dx_op, dy_op,
      dintermediate_op, dx, dy, dintermediate);
2802 2803 2804 2805
}
#endif

template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP,
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          typename DIntermediate_OP, bool UseIntermediateOut, bool BcastY,
2807 2808 2809 2810 2811 2812
          bool SameShapeOfIntermediateOutAndOut>
void FusedElemwiseAndActGradComputeWithBroadcast(
    const framework::ExecutionContext &ctx, const framework::DDim &x_dim,
    const framework::DDim &y_dim_untrimed, const framework::Tensor *x,
    const framework::Tensor *y, const framework::Tensor *intermediate_out,
    const framework::Tensor *out, const framework::Tensor *dout, int axis,
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    framework::Tensor *dx, framework::Tensor *dy,
    framework::Tensor *dintermediate, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op) {
2816 2817 2818 2819
  axis = (axis == -1 ? x_dim.size() - y_dim_untrimed.size() : axis);
  auto y_dim = trim_trailing_singular_dims(y_dim_untrimed);
  axis = (y_dim.size() == 0) ? x_dim.size() : axis;

2820 2821
  int pre, n, post, is_run_common_broadcast;
  get_mid_dims(x_dim, y_dim, axis, &pre, &n, &post, &is_run_common_broadcast);
2822 2823 2824 2825
  const T *x_data = nullptr;
  const T *y_data = nullptr;
  if (x->IsInitialized()) x_data = x->data<T>();
  if (y->IsInitialized()) y_data = y->data<T>();
2826 2827 2828
  if (post == 1) {
    int h = pre;
    int w = n;
2829

2830
    if (platform::is_gpu_place(ctx.GetPlace())) {
2831
#if defined(__NVCC__) || defined(__HIPCC__)
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      FusedElemwiseAndActGradBroadcast1CUDA<T, DX_OP, DY_OP, DIntermediate_OP,
                                            UseIntermediateOut, BcastY,
2834
                                            SameShapeOfIntermediateOutAndOut>(
2835
          ctx.template device_context<DeviceContext>().stream(), x_data, y_data,
2836
          intermediate_out == nullptr ? nullptr : intermediate_out->data<T>(),
C
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          out->data<T>(), dout->data<T>(), h, w, dx_op, dy_op, dintermediate_op,
2838
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
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          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()),
          dintermediate == nullptr ? nullptr : dintermediate->mutable_data<T>(
                                                   ctx.GetPlace()));
2842 2843
#endif
    } else {
C
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      FusedElemwiseAndActGradBroadcast1CPU<T, DX_OP, DY_OP, DIntermediate_OP,
                                           UseIntermediateOut, BcastY,
2846
                                           SameShapeOfIntermediateOutAndOut>(
2847
          x_data, y_data,
2848
          intermediate_out == nullptr ? nullptr : intermediate_out->data<T>(),
C
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          out->data<T>(), dout->data<T>(), h, w, dx_op, dy_op, dintermediate_op,
2850
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
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          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()),
          dintermediate == nullptr ? nullptr : dintermediate->mutable_data<T>(
                                                   ctx.GetPlace()));
2854 2855 2856
    }
  } else {
    if (platform::is_gpu_place(ctx.GetPlace())) {
2857
#if defined(__NVCC__) || defined(__HIPCC__)
C
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      FusedElemwiseAndActGradBroadcast2CUDA<T, DX_OP, DY_OP, DIntermediate_OP,
                                            UseIntermediateOut, BcastY,
2860
                                            SameShapeOfIntermediateOutAndOut>(
2861
          ctx.template device_context<DeviceContext>().stream(), x_data, y_data,
2862 2863
          intermediate_out == nullptr ? nullptr : intermediate_out->data<T>(),
          out->data<T>(), dout->data<T>(), pre, n, post, dx_op, dy_op,
C
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          dintermediate_op,
2865
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
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          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()),
          dintermediate == nullptr ? nullptr : dintermediate->mutable_data<T>(
                                                   ctx.GetPlace()));
2869 2870
#endif
    } else {
C
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      FusedElemwiseAndActGradBroadcast2CPU<T, DX_OP, DY_OP, DIntermediate_OP,
                                           UseIntermediateOut, BcastY,
2873
                                           SameShapeOfIntermediateOutAndOut>(
2874
          x_data, y_data,
2875 2876
          intermediate_out == nullptr ? nullptr : intermediate_out->data<T>(),
          out->data<T>(), dout->data<T>(), pre, n, post, dx_op, dy_op,
C
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          dintermediate_op,
2878
          dx == nullptr ? nullptr : dx->mutable_data<T>(ctx.GetPlace()),
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          dy == nullptr ? nullptr : dy->mutable_data<T>(ctx.GetPlace()),
          dintermediate == nullptr ? nullptr : dintermediate->mutable_data<T>(
                                                   ctx.GetPlace()));
2882 2883 2884 2885 2886
    }
  }
}

template <typename DeviceContext, typename T, typename DX_OP, typename DY_OP,
C
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          typename DIntermediate_OP, bool UseIntermediateOut,
          bool SameShapeOfIntermediateOutAndOut>
2889 2890 2891 2892
void FusedElemwiseAndActGradComputeEx(
    const framework::ExecutionContext &ctx, const framework::Tensor *x,
    const framework::Tensor *y, const framework::Tensor *out,
    const framework::Tensor *intermediate_out, const framework::Tensor *dout,
C
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    int axis, framework::Tensor *dx, framework::Tensor *dy,
    framework::Tensor *dintermediate, DX_OP dx_op, DY_OP dy_op,
    DIntermediate_OP dintermediate_op) {
2896 2897 2898
  const framework::DDim &x_dim = x->dims();
  const framework::DDim &y_dim = y->dims();
  if (UseIntermediateOut) {
2899 2900 2901
    PADDLE_ENFORCE_NOT_NULL(
        intermediate_out,
        platform::errors::InvalidArgument("Intermediate out is null pointer."));
2902 2903
  }
  if (x_dim == y_dim) {
C
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    FusedElemwiseAndActGradComputeNoBroadcast<
        DeviceContext, T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut>(
2906
        ctx, x_dim, y_dim, x, y, intermediate_out, out, dout, axis, dx, dy,
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        dintermediate, dx_op, dy_op, dintermediate_op);
2908 2909 2910 2911 2912 2913 2914 2915 2916 2917 2918 2919 2920 2921 2922
  } else {  // Y is a scalar
    bool bcast_y = x_dim.size() >= y_dim.size();
    if (x_dim.size() == y_dim.size()) {
      for (int i = 0; i < x_dim.size(); ++i) {
        if (x_dim[i] < y_dim[i]) {
          bcast_y = false;
          break;
        }
      }
    }

    // z = f1(x, f2(y))
    // z = f1(f2(x, y))
    if (bcast_y) {  // Y should be broadcast.
      FusedElemwiseAndActGradComputeWithBroadcast<
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          DeviceContext, T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut,
          true /*BcastY*/, SameShapeOfIntermediateOutAndOut>(
          ctx, x_dim, y_dim, x, y, intermediate_out, out, dout, axis, dx, dy,
          dintermediate, dx_op, dy_op, dintermediate_op);
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    } else {
      FusedElemwiseAndActGradComputeWithBroadcast<
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          DeviceContext, T, DX_OP, DY_OP, DIntermediate_OP, UseIntermediateOut,
          false /*BcastY*/, SameShapeOfIntermediateOutAndOut>(
          ctx, y_dim, x_dim, x, y, intermediate_out, out, dout, axis, dx, dy,
          dintermediate, dx_op, dy_op, dintermediate_op);
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    }
  }
}

template <typename DeviceContext, typename T, typename CompoundFunctor,
          bool KeepIntermediateOut, bool SameShapeOfIntermediateOutAndOut>
void FusedElemwiseAndActComputeEx(const framework::ExecutionContext &ctx,
                                  const framework::Tensor &x,
                                  const framework::Tensor &y, int axis,
                                  CompoundFunctor compound_functor,
                                  framework::Tensor *out,
                                  framework::Tensor *intermediate_out) {
  if (KeepIntermediateOut) {
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    PADDLE_ENFORCE_NOT_NULL(
        intermediate_out,
        platform::errors::InvalidArgument(
            "The save_intermediate_out is opened, intermediate "
            "out is null pointer."));
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  }

  const framework::DDim &x_dim = x.dims();
  const framework::DDim &y_dim = y.dims();
  if (x.dims() == y.dims()) {
    FusedElemwiseAndActComputeNoBroadcast<DeviceContext, T, CompoundFunctor,
                                          KeepIntermediateOut>(
        ctx, x_dim, x, y, compound_functor, out, intermediate_out);
  } else {
    // Whether the shape of Y is a continuous subsequence of X,
    // For more information please refer to the op's introduction.
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    bool bcast_y = x.numel() >= y.numel();
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    // z = f1(x, f2(y))
    // z = f1(f2(x, y))
    if (bcast_y) {  // Y should be broadcast.
      // In this case,
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      // for 'f2(y)', the shape of intermediate_out should be equal to the
      // shape
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      // of Y.
      // for 'f2(x, y)', the shape of intermediate_out should be equal to the
      // shape of Out.
      // the shape of Out should be equal to the shape of X.
      FusedElemwiseAndActComputeWithBroadcast<
          DeviceContext, T, CompoundFunctor, true /*BcastY*/,
          KeepIntermediateOut, SameShapeOfIntermediateOutAndOut>(
          ctx, x_dim /*OutShape*/, y_dim, x, y, compound_functor, axis, out,
          intermediate_out);
    } else {
      // In this case,
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      // for 'f2(y)', the shape of intermediate_out should be equal to the
      // shape
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      // of Out.
      // for 'f2(x, y)', the shape of intermediate_out should be equal to the
      // shape of Out.
      // the shape of Out should be equal to the shape of Y.
      FusedElemwiseAndActComputeWithBroadcast<
          DeviceContext, T, CompoundFunctor, false /*BcastY*/,
          KeepIntermediateOut, SameShapeOfIntermediateOutAndOut>(
          ctx, y_dim /*OutShape*/, x_dim, x, y, compound_functor, axis, out,
          intermediate_out);
    }
  }
}
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template <typename DeviceContext, typename T>
static inline void GetDoubleGradSafeTensor(
    const framework::ExecutionContext &ctx, const framework::Tensor *x,
    const framework::Tensor *ddx, framework::Tensor *ddx_safe) {
  if (ddx) {
    *ddx_safe = *ddx;
  } else {
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    auto &dev_ctx = ctx.template device_context<DeviceContext>();
    *ddx_safe = ctx.AllocateTmpTensor<T, DeviceContext>(x->dims(), dev_ctx);
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    math::SetConstant<DeviceContext, T> set_zero;
    set_zero(ctx.template device_context<DeviceContext>(), ddx_safe,
             static_cast<T>(0));
  }
}

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}  // namespace operators
}  // namespace paddle