elementwise_base.h 29.9 KB
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/* Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.

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

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

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */

#pragma once

#include "paddle/fluid/platform/transform.h"
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#include "paddle/phi/backends/all_context.h"
#include "paddle/phi/core/dense_tensor.h"
#include "paddle/phi/kernels/empty_kernel.h"
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#include "paddle/phi/kernels/funcs/common_shape.h"
#include "paddle/phi/kernels/funcs/elementwise_utils.h"
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#include "paddle/phi/kernels/funcs/math_function.h"
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#if defined(__NVCC__) || defined(__HIPCC__) || defined(__xpu__)
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#include "paddle/fluid/platform/function_traits.h"
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#include "paddle/phi/backends/gpu/gpu_launch_config.h"
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#include "paddle/phi/kernels/funcs/aligned_vector.h"
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#include "paddle/phi/kernels/primitive/kernel_primitives.h"
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#define HOSTDEVICE __host__ __device__
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namespace kps = phi::kps;
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#endif

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namespace phi {
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enum ElementwiseType { kUnary = 1, kBinary = 2, kTernary = 3, kAny = -1 };
/* Packing scalar type T(float, int etc.) into Array<T, NumOuts> type
   for supporting multiple-output feature in elementwise system.*/
template <class T, int Num>
using ConditionalT =
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    typename std::conditional_t<Num == 1, T, phi::Array<T, Num>>;
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namespace funcs {
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using DDim = phi::DDim;
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template <typename T, typename DeviceContext>
class RowwiseTransformIterator;

template <typename T, typename DeviceContext>
class MidWiseTransformIterator;

// NOTE(dzhwinter): ptrdiff_t in iterator is deperecated in c++17
template <typename T>
class RowwiseTransformIterator<T, CPUContext>
    : public std::iterator<std::random_access_iterator_tag,
                           T,
                           std::ptrdiff_t,
                           T *,
                           T &> {
 public:
  RowwiseTransformIterator(const T *ptr, int n) : ptr_(ptr), i_(0), n_(n) {}

  RowwiseTransformIterator<T, CPUContext> &operator++() {
    ++i_;
    if (UNLIKELY(i_ == n_)) {
      i_ = 0;
    }
    return *this;
  }

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

    return *this;
  }

  bool operator==(const RowwiseTransformIterator<T, CPUContext> &rhs) const {
    return (ptr_ + i_) == &(*rhs);
  }

  bool operator!=(const RowwiseTransformIterator<T, CPUContext> &rhs) const {
    return (ptr_ + i_) != &(*rhs);
  }

  const T &operator*() { return ptr_[i_]; }

 private:
  const T *ptr_;
  int i_;
  int64_t n_;
};

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

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

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

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

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

  const T &operator*() { return ptr_[i_]; }

 private:
  const T *ptr_;
  int64_t i_;
  int64_t j_;
  int64_t n_;
  int64_t post_;
};

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

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

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

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

template <typename Functor,
          typename T,
          typename DeviceContext,
          typename OutType = T>
class TransformFunctor {
 public:
  TransformFunctor(const DenseTensor &x,
                   const DenseTensor &y,
                   DenseTensor *z,
                   const DeviceContext &ctx,
                   Functor func,
                   const bool is_xsize_larger = true)
      : x_(x.data<T>()),
        y_(y.data<T>()),
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        z_(ctx.template Alloc<OutType>(z)),
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        nx_(x.numel()),
        ctx_(ctx),
        func_(func),
        is_xsize_larger_(is_xsize_larger) {
    if (is_xsize_larger_ == false) {
      nx_ = y.numel();
    }
  }

  inline void Run() const {
    paddle::platform::Transform<DeviceContext> trans;
    trans(ctx_, x_, x_ + nx_, y_, z_, func_);
  }

  inline void RunRowWise(int n, int pre) const {
    paddle::platform::Transform<DeviceContext> trans;
    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_);
    }
  }

  inline void RunMidWise(int n, int pre, int post) const {
    paddle::platform::Transform<DeviceContext> trans;
    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_);
    }
  }

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

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template <typename Functor, typename T, typename OutType = T>
void CommonForwardBroadcastCPU(const DenseTensor &x,
                               const DenseTensor &y,
                               DenseTensor *z,
                               int *x_dims_array,
                               int *y_dims_array,
                               int *out_dims_array,
                               int max_dim,
                               const CPUContext &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>();
  PADDLE_ENFORCE_NOT_NULL(
      x_data, errors::InvalidArgument("The input X should not be empty."));
  PADDLE_ENFORCE_NOT_NULL(
      y_data, errors::InvalidArgument("The input Y should not be empty."));
  OutType *out_data = ctx.Alloc<OutType>(z);

  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]);
    }

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

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template <typename Functor, typename T, typename OutType = T>
void CommonElementwiseBroadcastForward(const CPUContext &dev_ctx,
                                       const DenseTensor &x,
                                       const DenseTensor &y,
                                       DenseTensor *z,
                                       const DDim &x_dims,
                                       const 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);
  PADDLE_ENFORCE_GE(
      axis,
      0,
      phi::errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis,
                    max_dim,
                    phi::errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim,
                        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);

  CommonForwardBroadcastCPU<Functor, T, OutType>(x,
                                                 y,
                                                 z,
                                                 x_dims_array.data(),
                                                 y_dims_array.data(),
                                                 out_dims_array.data(),
                                                 max_dim,
                                                 dev_ctx,
                                                 func,
                                                 is_xsize_larger);
}

// It is a common CPU implementation to compute binary calculation with the
// support of broadcast. Note:
// 1. CPU implementation cannot support the case when x needs broadcast, thus
//    this function need to be called with XxxFunctor and XxxInverseFunctor,
//    like AddFunctor and InverseAddFunctor.
// 2. The corresponding GPU implementation supports all the broadcast cases,
//    thus there is no need to define and call with XxxInverseFunctor.
// TODO(liuyiqun): optimize the CPU implementation to support all broadcast
// cases and avoid the need of XxxInverseFunctor.
template <typename Functor, typename T, typename OutType = T>
void ElementwiseCompute(const CPUContext &dev_ctx,
                        const DenseTensor &x,
                        const DenseTensor &y,
                        int axis,
                        Functor func,
                        DenseTensor *z) {
  dev_ctx.Alloc<OutType>(z);
  auto x_dims = x.dims();
  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, CPUContext, OutType> functor(
      x, y, z, dev_ctx, func, is_xsize_larger);
  if (x_dims == y_dims) {
    functor.Run();
    return;
  }

  axis = (axis == -1 ? std::abs(x_dims.size() - y_dims.size()) : axis);
  PADDLE_ENFORCE_GE(
      axis,
      0,
      errors::InvalidArgument(
          "Axis should be great than or equal to 0, but received axis is %d.",
          axis));
  PADDLE_ENFORCE_LT(axis,
                    max_dim,
                    errors::InvalidArgument(
                        "Axis should be less than %d, but received axis is %d.",
                        max_dim,
                        axis));

  int pre, n, post, is_run_common_broadcast, axis_trim = 0;
  if (is_xsize_larger) {
    auto y_dims_trimed = TrimTrailingSingularDims(y_dims);
    axis_trim = (y_dims_trimed.size() == 0) ? x_dims.size() : axis;
    GetMidDims(x_dims,
               y_dims_trimed,
               axis_trim,
               &pre,
               &n,
               &post,
               &is_run_common_broadcast);
  } else {
    auto x_dims_trimed = TrimTrailingSingularDims(x_dims);
    axis_trim = (x_dims_trimed.size() == 0) ? y_dims.size() : axis;
    GetMidDims(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, T, OutType>(
        dev_ctx, x, y, z, x_dims, y_dims, func, axis, is_xsize_larger);
    return;
  }

  if (post == 1) {
    functor.RunRowWise(n, pre);
    return;
  } else {
    functor.RunMidWise(n, pre, post);
    return;
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  }
}

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// for broadcast backwards
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static inline std::vector<int> GetReduceDim(const DDim &in,
                                            const DDim &out,
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                                            int axis) {
  axis =
      (axis == -1 ? std::abs(static_cast<int>(out.size() - in.size())) : axis);
  std::vector<int> dims;
  for (int i = 0; i < axis; ++i) {
    dims.push_back(i);
  }
  for (int i = 0; i < in.size(); ++i) {
    if (out[i + axis] != in[i]) {
      dims.push_back(i + axis);
    }
  }
  for (int i = axis + in.size(); i < out.size(); ++i) {
    dims.push_back(i);
  }
  return dims;
}

template <typename DeviceContext, typename T>
static inline void GetDoubleGradSafeTensor(const DeviceContext &dev_ctx,
                                           const DenseTensor &x,
                                           const DenseTensor *ddx,
                                           DenseTensor *ddx_safe) {
  if (ddx) {
    *ddx_safe = *ddx;
  } else {
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    auto meta = phi::DenseTensorMeta(x.dtype(), x.dims(), x.layout());
    *ddx_safe = phi::Empty(dev_ctx, std::move(meta));
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    ddx_safe->mutable_data(dev_ctx.GetPlace());
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    SetConstant<DeviceContext, T> set_zero;
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    set_zero(dev_ctx, ddx_safe, static_cast<T>(0));
  }
}

inline void ElementwiseGradPreProcess(const DenseTensor &dout,
                                      DenseTensor *dx) {
  if (dx != nullptr) {
    dx->set_lod(dout.lod());
  }
}

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#if defined(__NVCC__) || defined(__HIPCC__) || defined(__xpu__)
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// static unroller
template <template <int Index, int VecSize> typename Func,
          int VecSize,
          int End,
          int Begin = 0>
struct Unroller {
  template <typename... Args>
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  static HOSTDEVICE inline void step(Args &&...args) {
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    Func<Begin, VecSize>::Apply(std::forward<Args>(args)...);
    Unroller<Func, VecSize, End, Begin + 1>::step(args...);
  }
};

template <template <int Index, int VecSize> typename Func, int VecSize, int End>
struct Unroller<Func, VecSize, End, End> {
  template <typename... Args>
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  static HOSTDEVICE inline void step(Args &&...args) {}
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};

template <int Index, int VecSize>
struct Loader {
  template <typename Array, typename ArgsT>
  static __device__ void Apply(const Array &in,
                               ArgsT *args,
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                               kps::IndexType offset,
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                               int num,
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                               int read_lens,
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                               bool is_boundary) {
    using Type = std::tuple_element_t<Index, ArgsT>;
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    kps::Init<Type, ArgsT, Index, VecSize>(
        args, static_cast<Type>(1.0f), read_lens);
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    if (is_boundary) {
      kps::ReadData<Type, VecSize, 1, 1, ArgsT, Index, true>(
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          args,
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          reinterpret_cast<const _ptr_ Type *>(in[Index]) + offset,
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          num,
          read_lens);
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    } else {
      kps::ReadData<Type, VecSize, 1, 1, ArgsT, Index, false>(
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          args,
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          reinterpret_cast<const _ptr_ Type *>(in[Index]) + offset,
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          num,
          read_lens);
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    }
  }
};

template <int Index, int VecSize>
struct InputSetter {
  template <typename Array>
  static HOSTDEVICE void Apply(
      const std::vector<const DenseTensor *> &ins_tensor, Array *ins_data) {
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    (*ins_data)[Index] = (const _ptr_ char *)(ins_tensor[Index]->data());
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  }
};

template <int Index, int VecSize>
struct VecSizeGetter {
  template <typename ArgsT>
  static HOSTDEVICE void Apply(const std::vector<const DenseTensor *> &ins,
                               const ArgsT &args,
                               int *vec_size) {
    using Type = std::tuple_element_t<Index, ArgsT>;
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    *vec_size = std::min<int>(*vec_size,
                              phi::GetVectorizedSize(ins[Index]->data<Type>()));
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  }
};

template <typename OutT, typename Functor>
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int GetVectorizedSizeForTensors(const std::vector<const DenseTensor *> &ins,
                                const std::vector<DenseTensor *> &outs) {
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  using Traits = paddle::platform::FunctionTraits<Functor>;
  using ArgsT = typename Traits::ArgsTuple;
  const int Arity = Traits::arity;
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  int vec_size = 4;
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  ArgsT arg;
  // The Arg VecSize=1 is to match the Unroller template.
  Unroller<VecSizeGetter, 1, Arity>::step(ins, arg, &vec_size);
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  for (auto iter = outs.begin(); iter != outs.end(); ++iter) {
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    vec_size =
        std::min<int>(vec_size, phi::GetVectorizedSize((*iter)->data<OutT>()));
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  }
  return vec_size;
}

template <typename InT,
          typename OutT,
          int VecSize,
          typename Functor,
          int Arity,
          bool CallElementwiseAny = false>
struct ElementwisePrimitiveCaller {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens);
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};

template <typename InT, typename OutT, int VecSize, typename Functor, int Arity>
struct ElementwisePrimitiveCaller<InT, OutT, VecSize, Functor, Arity, true> {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens) {
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    kps::ElementwiseAny<InT, OutT, VecSize, 1, 1, Arity, Functor>(
        result, args, func);
  }
};

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template <typename InT, typename OutT, int VecSize, typename Functor>
struct ElementwisePrimitiveCaller<InT, OutT, VecSize, Functor, 0, false> {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens) {
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    kps::ElementwiseConstant<InT, OutT, VecSize, 1, 1, Functor>(result, func);
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  }
};

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template <typename InT, typename OutT, int VecSize, typename Functor>
struct ElementwisePrimitiveCaller<InT, OutT, VecSize, Functor, 1, false> {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens) {
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    kps::ElementwiseUnary<InT, OutT, VecSize, 1, 1, Functor>(
        result, args[0], func);
  }
};

template <typename InT, typename OutT, int VecSize, typename Functor>
struct ElementwisePrimitiveCaller<InT, OutT, VecSize, Functor, 2, false> {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens) {
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    kps::ElementwiseBinary<InT, OutT, VecSize, 1, 1, Functor>(
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        result, args[0], args[1], func, read_lens);
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  }
};

template <typename InT, typename OutT, int VecSize, typename Functor>
struct ElementwisePrimitiveCaller<InT, OutT, VecSize, Functor, 3, false> {
  __device__ inline void operator()(Functor func,
                                    InT (*args)[VecSize],
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                                    OutT *result,
                                    int read_lens) {
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    kps::ElementwiseTernary<InT, OutT, VecSize, 1, 1, Functor>(
        result, args[0], args[1], args[2], func);
  }
};

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namespace detail {
template <class F, class Tuple, std::size_t... Index>
// GCC/Clang need the decltype() return type
HOSTDEVICE constexpr decltype(auto) ApplyImpl(F &&f,
                                              Tuple &&t,
                                              std::index_sequence<Index...>) {
  return std::forward<F>(f)(std::get<Index>(std::forward<Tuple>(t))...);
}
}  // namespace detail

template <class F, class Tuple>
HOSTDEVICE constexpr decltype(auto) Apply(F &&f, Tuple &&t) {
  return detail::ApplyImpl(
      std::forward<F>(f),
      std::forward<Tuple>(t),
      std::make_index_sequence<
          std::tuple_size<std::remove_reference_t<Tuple>>::value>{});
}

template <typename OutT,
          int VecSize,
          typename Functor,
          typename ArgsT,
          int Arity>
struct SameDimsElementwisePrimitiveCaller {
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  __device__ inline void operator()(Functor func,
                                    ArgsT *args,
                                    OutT *result,
                                    int read_lens) {
#ifdef PADDLE_WITH_XPU_KP
    for (int idx = 0; idx < read_lens; ++idx) {
      result[idx] = static_cast<OutT>(Apply(func, args[idx]));
    }
#else
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#pragma unroll
    for (int idx = 0; idx < VecSize; ++idx) {
      result[idx] = static_cast<OutT>(Apply(func, args[idx]));
    }
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#endif
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  }
};

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template <typename OutT, int VecSize, bool IsBoundary, int NumOuts>
struct ElementwiseWriteDataCallerBc {
  __device__ __forceinline__ void operator()(
      phi::Array<_ptr_ OutT *, NumOuts> outs,
      ConditionalT<OutT, NumOuts> src[VecSize],
689
      kps::IndexType block_offset,
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      int num,
      int read_lens) {
    OutT dst[NumOuts][VecSize];
#pragma unroll
    for (int i = 0; i < read_lens; ++i) {
#pragma unroll
      for (int j = 0; j < NumOuts; ++j) {
        dst[j][i] = (src[i])[j];
      }
    }
#pragma unroll
    for (int i = 0; i < NumOuts; ++i) {
      kps::WriteData<OutT, VecSize, 1, 1, IsBoundary>(
          outs[i] + block_offset, dst[i], num, read_lens);
    }
  }
};

template <typename OutT, int VecSize, bool IsBoundary>
struct ElementwiseWriteDataCallerBc<OutT, VecSize, IsBoundary, 1> {
  __device__ __forceinline__ void operator()(phi::Array<_ptr_ OutT *, 1> outs,
                                             OutT src[VecSize],
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                                             kps::IndexType block_offset,
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                                             int num,
                                             int read_lens) {
    kps::WriteData<OutT, VecSize, 1, 1, IsBoundary>(
        outs[0] + block_offset, src, num, read_lens);
  }
};

720
template <typename OutT,
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          typename Functor,
          int Arity,
          int NumOuts,
          int VecSize,
          bool IsBoundary>
__device__ void VectorizedElementwiseKernelImpl(
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    const phi::Array<const _ptr_ char *__restrict__, Arity> &in,
    phi::Array<_ptr_ OutT *, NumOuts> outs,
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    kps::IndexType offset,
730
    int num,
731
    int read_lens,
732
    Functor func) {
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  using Traits = paddle::platform::FunctionTraits<Functor>;
  using ArgsT = typename Traits::ArgsTuple;
  ArgsT args[VecSize];
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  ConditionalT<OutT, NumOuts> result[VecSize];

738
  Unroller<Loader, VecSize, Arity>::step(
739
      in, args, offset, num, read_lens, IsBoundary);
740

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  SameDimsElementwisePrimitiveCaller<ConditionalT<OutT, NumOuts>,
                                     VecSize,
                                     Functor,
                                     ArgsT,
745
                                     Arity>()(func, args, result, read_lens);
746

747
  ElementwiseWriteDataCallerBc<OutT, VecSize, IsBoundary, NumOuts>()(
748
      outs, result, offset, num, read_lens);
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}

751
template <typename OutT, typename Functor, int Arity, int NumOuts, int VecSize>
752
__global__ void VectorizedElementwiseKernel(
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    phi::Array<const _ptr_ char *__restrict__, Arity> ins,
    phi::Array<_ptr_ OutT *, NumOuts> outs,
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    kps::IndexType numel,
    kps::IndexType main_offset,
757
    int read_lens,
758
    Functor func) {
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  kps::IndexType data_offset = BLOCK_ID_X * BLOCK_NUM_X * read_lens;
  kps::IndexType stride = BLOCK_NUM_X * GRID_NUM_X * read_lens;
761
  for (; data_offset < main_offset; data_offset += stride) {
762
    VectorizedElementwiseKernelImpl<OutT,
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                                    Functor,
                                    Arity,
                                    NumOuts,
                                    VecSize,
                                    false>(
768
        ins, outs, data_offset, read_lens * BLOCK_NUM_X, read_lens, func);
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  }

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  int remain = numel - data_offset;
  if (remain > 0) {
773
    VectorizedElementwiseKernelImpl<OutT,
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                                    Functor,
                                    Arity,
                                    NumOuts,
                                    VecSize,
778
                                    true>(
779
        ins, outs, data_offset, remain, read_lens, func);
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  }
}

783
template <typename OutT, typename Functor, int Arity, int NumOuts, int VecSize>
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void LaunchElementwiseCudaKernel(const KPDevice &ctx,
                                 const std::vector<const DenseTensor *> &ins,
                                 std::vector<DenseTensor *> *outs,
                                 int read_lens,
                                 Functor func) {
  // There are at least 1 output, but maybe 0 input (ins.size() == 0).
  // For large tensor numel * sizeof(T) > 2^31, we must use int64_t as index
  // type.
  int64_t numel = (*outs)[0]->numel();
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  phi::Array<const _ptr_ char *__restrict__, Arity> ins_data;
  phi::Array<_ptr_ OutT *, NumOuts> outs_data;
795

796
  Unroller<InputSetter, VecSize, Arity>::step(ins, &ins_data);
797
  for (int i = 0; i < NumOuts; ++i) {
798
    outs_data[i] = (_ptr_ OutT *)(ctx.Alloc<OutT>((*outs)[i]));
799
  }
800
#ifdef PADDLE_WITH_XPU_KP
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  int block_size = 64;
  int grid_size = 8;
  auto stream = ctx.x_context()->xpu_stream;
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  int64_t main_offset =
      (numel / (read_lens * block_size)) * read_lens * block_size;
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  VectorizedElementwiseKernel<OutT, Functor, Arity, NumOuts, VecSize>
      <<<grid_size, block_size, 0, stream>>>(
808
          ins_data, outs_data, numel, main_offset, read_lens, func);
809
#else
W
Wilber 已提交
810
  auto gpu_config =
811
      phi::backends::gpu::GetGpuLaunchConfig1D(ctx, numel, VecSize);
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  int64_t main_offset = (numel / (VecSize * gpu_config.GetBlockSize())) *
                        VecSize * gpu_config.GetBlockSize();
814
  auto stream = ctx.stream();
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  VectorizedElementwiseKernel<OutT, Functor, Arity, NumOuts, VecSize>
      <<<gpu_config.block_per_grid, gpu_config.thread_per_block, 0, stream>>>(
817
          ins_data, outs_data, numel, main_offset, VecSize, func);
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#endif
}

821
template <typename OutT, typename Functor, int NumOuts = 1>
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void ElementwiseKernel(const KPDevice &ctx,
                       const std::vector<const DenseTensor *> &ins,
                       std::vector<DenseTensor *> *outs,
                       Functor func) {
826
  using Traits = paddle::platform::FunctionTraits<Functor>;
827
  const int kArity = Traits::arity;
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  PADDLE_ENFORCE_EQ(ins.size(),
                    kArity,
830
                    phi::errors::InvalidArgument(
831
                        "The number of inputs is expected to be equal to the "
832
                        "arity of functor. But received: the number of inputs "
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                        "is %d, the arity of functor is %d.",
                        ins.size(),
                        kArity));
  PADDLE_ENFORCE_EQ(outs->size(),
                    NumOuts,
838
                    phi::errors::InvalidArgument(
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                        "Number of outputs shall equal to number of functions, "
                        "but number of outputs is %d, of functions is %d.",
                        outs->size(),
                        NumOuts));

  if (NumOuts > 1) {
    for (int i = 1; i < NumOuts; ++i) {
      PADDLE_ENFORCE_EQ(
          (*outs)[i]->dims(),
          (*outs)[0]->dims(),
849
          phi::errors::InvalidArgument(
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              "The shape of each output tensor shall be identical yet, "
              "but %dth output tensor`s shape is not.",
              i));
    }
  }

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#ifdef PADDLE_WITH_XPU_KP
  const int buf_size = 256;
  int numel = (*outs)[0]->numel();
  int block_size = 64;
  int grid_size = 8;
  int nthreads = block_size * grid_size;
  int read_lens =
      std::min(buf_size, kps::details::RoundUpDiv(numel, 32 * nthreads) * 32);
  int vec_size = buf_size;
#else
866
  // calculate the max vec_size for all ins and outs
867
  int vec_size = GetVectorizedSizeForTensors<OutT, Functor>(ins, *outs);
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  int read_lens = vec_size;
#endif
870
  switch (vec_size) {
871
    case VecSizeL:
872
      LaunchElementwiseCudaKernel<OutT, Functor, kArity, NumOuts, VecSizeL>(
873
          ctx, ins, outs, read_lens, func);
874
      break;
875
    case VecSizeM:
876
      LaunchElementwiseCudaKernel<OutT, Functor, kArity, NumOuts, VecSizeM>(
877
          ctx, ins, outs, read_lens, func);
878
      break;
879
    case VecSizeS:
880
      LaunchElementwiseCudaKernel<OutT, Functor, kArity, NumOuts, VecSizeS>(
881
          ctx, ins, outs, read_lens, func);
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      break;
    default: {
884
      PADDLE_THROW(phi::errors::Unimplemented(
885 886 887 888 889
          "Unsupported vectorized size: %d !", vec_size));
      break;
    }
  }
}
890

891 892
#endif

893
}  // namespace funcs
894
}  // namespace phi