layer_norm_kernel.cu.h 68.8 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

#ifdef __NVCC__
#include "cub/cub.cuh"
#endif
#ifdef __HIPCC__
#include <hipcub/hipcub.hpp>
namespace cub = hipcub;
#endif

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#include <iostream>

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#include "paddle/fluid/platform/device/gpu/gpu_device_function.h"
#include "paddle/fluid/platform/device/gpu/gpu_dnn.h"
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#include "paddle/phi/core/ddim.h"
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#include "paddle/phi/kernels/funcs/aligned_vector.h"
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namespace paddle {
namespace operators {

using Tensor = framework::Tensor;
template <typename T>
using CudnnDataType = platform::CudnnDataType<T>;
template <typename T>
using LayerNormParamType = typename CudnnDataType<T>::BatchNormParamType;

inline static int GetDesiredBlockDim(int64_t block_dim) {
#ifdef __HIPCC__
  const int kMaxBlockDim = 256;
  const int lwarpSize = 64;
#else
  const int kMaxBlockDim = 512;
  const int lwarpSize = 32;
#endif
  return block_dim >= kMaxBlockDim ? kMaxBlockDim : lwarpSize;
}

template <typename U>
static __forceinline__ __device__ U WarpReduceSum(U val) {
  unsigned mask = 0u;
  CREATE_SHFL_MASK(mask, true);
  for (int offset = warpSize / 2; offset > 0; offset /= 2) {
    val += paddle::platform::CudaShuffleDownSync(mask, val, offset);
  }
  return val;
}

template <typename U>
__forceinline__ __device__ U BlockReduceSum(U val, U *shared) {
  int lane = threadIdx.x % warpSize;
  int wid = threadIdx.x / warpSize;

  val = WarpReduceSum(val);  // Each warp performs partial reduction

  __syncthreads();
  if (lane == 0) shared[wid] = val;  // Write reduced value to shared memory

  __syncthreads();  // Wait for all partial reductions
  // read from shared memory only if that warp existed
  val =
      (threadIdx.x < blockDim.x / warpSize) ? shared[lane] : static_cast<U>(0);

  if (wid == 0) val = WarpReduceSum(val);  // Final reduce within first warp

  return val;
}

#define FIXED_BLOCK_DIM_CASE_BASE(log2_block_dim, ...)  \
  case (1 << (log2_block_dim)): {                       \
    constexpr auto kBlockDim = (1 << (log2_block_dim)); \
    __VA_ARGS__;                                        \
  } break

#define FIXED_BLOCK_DIM_CASE(...)              \
  FIXED_BLOCK_DIM_CASE_BASE(9, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(8, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(7, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(6, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(5, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(4, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(3, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(2, ##__VA_ARGS__); \
  FIXED_BLOCK_DIM_CASE_BASE(1, ##__VA_ARGS__)

#define FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                          \
    log2_block_dim, feature_size, kMaxBlockNum, ...)                        \
  case (1 << (log2_block_dim)): {                                           \
    for (int64_t i = 0; i < std::ceil(feature_size / (1.0 * kMaxBlockNum)); \
         i++) {                                                             \
      int64_t col_offset = i * static_cast<int64_t>(kMaxBlockNum);          \
      int block_num = static_cast<int>(std::min(                            \
          feature_size - col_offset, static_cast<int64_t>(kMaxBlockNum)));  \
      constexpr auto kBlockDim = (1 << (log2_block_dim));                   \
      __VA_ARGS__;                                                          \
    }                                                                       \
  } break

#define FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(feature_size, kMaxBlockNum, ...) \
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  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      9, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      8, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      7, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      6, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      5, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      4, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      3, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      2, feature_size, kMaxBlockNum, ##__VA_ARGS__);                          \
  FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE_BASE(                                  \
      1, feature_size, kMaxBlockNum, ##__VA_ARGS__)
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static __device__ __forceinline__ float real_sqrt(float x) { return sqrtf(x); }
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static __device__ __forceinline__ double real_sqrt(double x) {
  return ::sqrt(x);
}
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template <typename T>
struct PairForLayerNorm {
  __device__ __forceinline__ PairForLayerNorm() {}
  __device__ __forceinline__ PairForLayerNorm(const T &first, const T &second)
      : first_(first), second_(second) {}

  T first_;
  T second_;
};

template <typename T>
struct PairForLayerNormAddFunctor {
  __device__ __forceinline__ PairForLayerNorm<T> operator()(
      const PairForLayerNorm<T> &p1, const PairForLayerNorm<T> &p2) {
    return PairForLayerNorm<T>(p1.first_ + p2.first_, p1.second_ + p2.second_);
  }
};

template <typename T>
__inline__ __device__ T rsqrt_(const T val) {
  return static_cast<T>(1) / sqrt(val);
}

template <>
__inline__ __device__ float rsqrt_(const float val) {
  return rsqrtf(val);
}

template <>
__inline__ __device__ double rsqrt_(const double val) {
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  return ::rsqrt(val);
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}

#if CUDA_ARCH_FP16_SUPPORTED(__CUDA_ARCH__)
template <>
__inline__ __device__ half rsqrt_(const half val) {
  return hrsqrt(val);
}
#endif

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#ifdef PADDLE_WITH_CUDA
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template <typename T,
          typename U,
          typename ScaleT = U,
          int VecSize = 8,
          int WARPS_M = 4,
          int WARPS_N = 1,
          int BYTES_PER_LDG = 16,
          int ELTS_PER_ROW = 1024,
          int THREADS_PER_WARP = 32,
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          int THREADS_PER_ROW = WARPS_N *THREADS_PER_WARP,
          int THREADS_PER_CTA = WARPS_M *THREADS_PER_ROW,
          int ROWS_PER_CTA = WARPS_M,
          int ELTS_PER_ROW_PER_CTA = THREADS_PER_ROW *VecSize,
          int LDGS = ELTS_PER_ROW / ELTS_PER_ROW_PER_CTA>
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__global__ __launch_bounds__(THREADS_PER_CTA) void fast_ln_fwd_kernel(
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    int rows,
    int cols,
    const float epsilon,
    const T *__restrict__ x_ptr,
    const ScaleT *__restrict__ gamma_ptr,
    const ScaleT *__restrict__ beta_ptr,
    U *__restrict__ mean_out_ptr,
    U *__restrict__ var_out_ptr,
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    T *__restrict__ y_ptr) {
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  __shared__ U smem[WARPS_M * WARPS_N];
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  using Vec = phi::AlignedVector<T, VecSize>;
  using Vec_scale = phi::AlignedVector<ScaleT, VecSize>;
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  const int tidx = threadIdx.x;
  const int bidx = blockIdx.x;
  const int lane = tidx % THREADS_PER_WARP;  // 0, 1, ..., 31
  const int warp = tidx / THREADS_PER_WARP;  // 0, 1, 2, 3
  const int warp_n = warp % WARPS_N;         // 0
  const int warp_m = warp / WARPS_N;         // 0, 1, 2, 3

  const int c = warp_n * THREADS_PER_WARP + lane;  // lane
  const int r = bidx * ROWS_PER_CTA + warp_m;      // row id

  Vec_scale gamma[LDGS];
  Vec_scale beta[LDGS];
#pragma unroll
  for (int it = 0, col = c; it < LDGS; it++) {
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    phi::Load<ScaleT, VecSize>(gamma_ptr + col * VecSize, &gamma[it]);
    phi::Load<ScaleT, VecSize>(beta_ptr + col * VecSize, &beta[it]);
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    col += THREADS_PER_ROW;
  }

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  constexpr U rn = 1.f / U(ELTS_PER_ROW);
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  for (int row = r; row < rows; row += gridDim.x * ROWS_PER_CTA) {
    Vec x[LDGS];
#pragma unroll
    for (int it = 0, col = c; it < LDGS; it++) {
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      phi::Load<T, VecSize>(x_ptr + row * ELTS_PER_ROW + col * VecSize, &x[it]);
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      col += THREADS_PER_ROW;
    }
    U xf[LDGS * VecSize];

    U mu_local = 0.f;

#pragma unroll
    for (int it = 0; it < LDGS; it++) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        xf[it * VecSize + jt] = U(x[it][jt]);
        mu_local += xf[it * VecSize + jt];
      }
    }

#pragma unroll
    for (int it = 1; it < THREADS_PER_WARP; it *= 2) {
      mu_local += __shfl_xor_sync(uint32_t(-1), mu_local, it);
    }
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    if (WARPS_N > 1) {
      if (lane == 0) {
        smem[warp_m * WARPS_N + warp_n] = mu_local;
      }
      __syncthreads();
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      if (tidx % THREADS_PER_ROW == 0) {
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        mu_local = 0.f;
#pragma unroll
        for (int it = 0; it < WARPS_N; ++it) {
          mu_local += smem[warp_m * WARPS_N + it];
        }
        smem[warp_m] = mu_local;
      }
      __syncthreads();
      mu_local = smem[warp_m];
    }

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    mu_local *= rn;
    if (lane == 0) {
      mean_out_ptr[row] = mu_local;
    }
    U var_local = 0.f;

#pragma unroll
    for (int it = 0; it < LDGS; it++) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        U diff = xf[it * VecSize + jt] - mu_local;
        var_local += diff * diff;
      }
    }

#pragma unroll
    for (int it = 1; it < THREADS_PER_WARP; it *= 2) {
      var_local += __shfl_xor_sync(uint32_t(-1), var_local, it);
    }
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    if (WARPS_N > 1) {
      if (lane == 0) {
        smem[warp_m * WARPS_N + warp_n] = var_local;
      }
      __syncthreads();
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      if (tidx % THREADS_PER_ROW == 0) {
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        var_local = 0.f;
#pragma unroll
        for (int it = 0; it < WARPS_N; ++it) {
          var_local += smem[warp_m * WARPS_N + it];
        }
        smem[warp_m] = var_local;
      }
      __syncthreads();
      var_local = smem[warp_m];
    }

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    // Note: to assure if it is right for double
    U rsigma = rsqrtf(var_local * rn + epsilon);
    if (lane == 0) {
      var_out_ptr[row] = var_local * rn;
    }

#pragma unroll
    for (int it = 0; it < LDGS; it++) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        // use fp16 to compute
        // ScaleT tmp = static_cast<ScaleT>(rsigma * (xf[it * VecSize + jt] -
        // mu_local));
        // x[it][jt] = gamma[it][jt] *  tmp + beta[it][jt];
        // cast to fp32 to compute
        U tmp = (rsigma * (static_cast<U>(xf[it * VecSize + jt]) - mu_local));
        x[it][jt] = static_cast<T>(static_cast<U>(gamma[it][jt]) * tmp +
                                   static_cast<U>(beta[it][jt]));
      }
    }

#pragma unroll
    for (int it = 0, col = c; it < LDGS; it++) {
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      phi::Store<T, VecSize>(x[it], y_ptr + row * ELTS_PER_ROW + col * VecSize);
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      col += THREADS_PER_ROW;
    }
  }
}
#endif

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template <typename T, typename U, bool ScaleBiasWithSameTypeX>
using LayerNormScaleBiasT =
    typename std::conditional<ScaleBiasWithSameTypeX, T, U>::type;

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template <typename T,
          typename U,
          int BlockDim,
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          bool ScaleBiasWithSameTypeX = false>
__global__ void LayerNormForward(
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    const T *x,
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *bias,
    T *y,
    U *mean,
    U *var,
    float epsilon,
    int64_t feature_size) {
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  __shared__ U mean_share;
  __shared__ U var_share;
  __shared__ U shared_mean[32];  // threadIdx.x / warpSize <= kMaxBlockDim /
                                 // warpSize <= 1024/32 = 32;
  __shared__ U shared_var[32];

  int64_t beg_idx = blockIdx.x * feature_size + threadIdx.x;
  int64_t end_idx = (blockIdx.x + 1) * feature_size;

  // Step 1: Reduce to calculate mean and var
  U mean_val = 0;
  U var_val = 0;
  for (int64_t i = beg_idx; i < end_idx; i += BlockDim) {
    U tmp = static_cast<U>(x[i]);
    mean_val += tmp;
    var_val += (tmp * tmp);
  }

  mean_val = BlockReduceSum<U>(mean_val, shared_mean);
  var_val = BlockReduceSum<U>(var_val, shared_var);

  if (threadIdx.x == 0) {
    auto scale = static_cast<float>(1.) / static_cast<float>(feature_size);
    auto tmp = mean_val * scale;
    mean[blockIdx.x] = mean_share = static_cast<U>(tmp);
    var_share = static_cast<U>(var_val * scale - mean_share * mean_share);
    var_share = var_share > U(0) ? var_share : U(0);
    var[blockIdx.x] = var_share;
  }
  __syncthreads();

  mean_val = mean_share;
  U invvar = rsqrt_<U>(var_share + static_cast<U>(epsilon));

  // Step 2: Calculate y
  if (scale != nullptr) {
    if (bias != nullptr) {
      for (int64_t i = beg_idx, j = threadIdx.x; i < end_idx;
           i += BlockDim, j += BlockDim) {
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        y[i] = static_cast<T>(static_cast<U>(scale[j]) *
                                  (static_cast<U>(x[i]) - mean_val) * invvar +
                              static_cast<U>(bias[j]));
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      }
    } else {
      for (int64_t i = beg_idx, j = threadIdx.x; i < end_idx;
           i += BlockDim, j += BlockDim) {
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        y[i] = static_cast<T>(static_cast<U>(scale[j]) *
                              (static_cast<U>(x[i]) - mean_val) * invvar);
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      }
    }
  } else {  // scale == nullptr
    if (bias != nullptr) {
      for (int64_t i = beg_idx, j = threadIdx.x; i < end_idx;
           i += BlockDim, j += BlockDim) {
        y[i] = static_cast<T>((static_cast<U>(x[i]) - mean_val) * invvar +
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                              static_cast<U>(bias[j]));
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      }
    } else {
      for (int64_t i = beg_idx, j = threadIdx.x; i < end_idx;
           i += BlockDim, j += BlockDim) {
        y[i] = static_cast<T>((static_cast<U>(x[i]) - mean_val) * invvar);
      }
    }
  }
}

template <typename T, typename U, int VPT>
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__inline__ __device__ void cuLoadAddStridedInputs(const int64_t i1_block,
                                                  const int thr_load_row_off,
                                                  const int thr_load_col_off,
                                                  const int i2_off,
                                                  const int row_stride,
                                                  U *warp_buf1,
                                                  U *warp_buf2,
                                                  const T *input,
                                                  const T *dout,
                                                  const int64_t i1_end,
                                                  const int64_t n2,
                                                  const U *__restrict__ mean,
                                                  const U *__restrict__ var,
                                                  const float epsilon) {
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  const int64_t i1 = i1_block + thr_load_row_off;
  if (i1 >= i1_end) return;
  U curr_mean = mean[i1];
  U curr_invvar = rsqrt_<U>(var[i1] + epsilon);
  for (int k = 0; k < VPT; ++k) {
    const int i2 = i2_off + k;
    const int64_t load_idx = i1 * n2 + i2;
    const int write_idx = thr_load_row_off * row_stride + thr_load_col_off + k;
    if (i2 < n2) {
      U curr_input = static_cast<U>(input[load_idx]);
      U curr_dout = static_cast<U>(dout[load_idx]);
      warp_buf1[write_idx] += curr_dout;
      warp_buf2[write_idx] +=
          curr_dout * (curr_input - curr_mean) * curr_invvar;
    }
  }
}

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#ifdef PADDLE_WITH_CUDA
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template <bool isFusedDropoutResidualLn,
          typename T,
          typename U,
          typename ScaleT = U,
          typename MaskType = uint8_t,
          int VecSize = 8,
          int WARPS_M = 4,
          int WARPS_N = 1,
          int BYTES_PER_LDG = 16,
          int ELTS_PER_ROW = 1024,
          int THREADS_PER_WARP = 32,
          int THREADS_PER_ROW = WARPS_N *THREADS_PER_WARP,
          int THREADS_PER_CTA = WARPS_M *THREADS_PER_ROW,
          int ROWS_PER_CTA = WARPS_M,
          int ELTS_PER_ROW_PER_CTA = THREADS_PER_ROW *VecSize,
          int LDGS = ELTS_PER_ROW / ELTS_PER_ROW_PER_CTA>
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__global__ __launch_bounds__(THREADS_PER_CTA) void fused_ln_bwd_fast_kernel(
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    const int rows,
    float epsilon,
    const T *__restrict__ x_ptr,
    const ScaleT *__restrict__ gamma_ptr,
    const U *__restrict__ mean_ptr,
    const U *__restrict__ var_ptr,
    const T *__restrict__ dout_ptr,
    U *__restrict__ dgamma_temp_ptr,
    U *__restrict__ dbeta_temp_ptr,
    T *__restrict__ dx_ptr,
    const MaskType *mask_ptr = nullptr,
    T factor = static_cast<T>(0),
    T *d_dropout_src_ptr = nullptr) {
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  using Vec = phi::AlignedVector<T, VecSize>;
  using Vec_scale = phi::AlignedVector<ScaleT, VecSize>;
  using MaskLoadT = phi::AlignedVector<MaskType, VecSize>;
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  const int tidx = threadIdx.x;
  const int bidx = blockIdx.x;
  const int lane = tidx % THREADS_PER_WARP;            // 0, 1, ..., 31
  const int warp = tidx / THREADS_PER_WARP;            // 0, 1, 2, 3
  const int warp_m = warp / WARPS_N;                   // 0, 1, 2, 3
  const int warp_n = warp % WARPS_N;                   // 0
  const int tid_r = warp_n * THREADS_PER_WARP + lane;  // 0, 1, ..., 31

  const int r = bidx * ROWS_PER_CTA + warp_m;
  const int c = warp_n * THREADS_PER_WARP + lane;

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  static_assert(ELTS_PER_ROW == THREADS_PER_ROW * LDGS * VecSize, "");
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  // smem for column reduction
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  __shared__ U smem_[ROWS_PER_CTA * ELTS_PER_ROW];
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  U dgamma_sum[LDGS * VecSize];
  U dbeta_sum[LDGS * VecSize];

  memset(dgamma_sum, 0, sizeof(U) * LDGS * VecSize);
  memset(dbeta_sum, 0, sizeof(U) * LDGS * VecSize);

  // Note: it is no use for WARP_N = 1
  __shared__ U smem_sum_loss1[ROWS_PER_CTA * WARPS_N];  // 4
  __shared__ U smem_sum_loss2[ROWS_PER_CTA * WARPS_N];  // 4
  U *sum_loss1_shared = &smem_sum_loss1[warp_m * WARPS_N];
  U *sum_loss2_shared = &smem_sum_loss2[warp_m * WARPS_N];

  // step-1: compute dx and local results of dscale and dbias
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  constexpr float rn = 1.f / static_cast<float>(ELTS_PER_ROW);
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  Vec_scale gamma[LDGS];
  int col = c;
#pragma unroll
  for (int it = 0; it < LDGS; it++) {
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    phi::Load<ScaleT, VecSize>(gamma_ptr + col * VecSize, &gamma[it]);
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    col += THREADS_PER_ROW;
  }

#pragma unroll 1
  for (int row = r; row < rows; row += gridDim.x * ROWS_PER_CTA) {
    const U mean_cur_row = mean_ptr[row];
    const U var_cur_row = rsqrt_<U>(var_ptr[row] + epsilon);
    Vec dout[LDGS], x[LDGS];
    MaskLoadT mask_vec[LDGS];
    int col = c;
#pragma unroll
    for (int it = 0; it < LDGS; it++) {
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      phi::Load<T, VecSize>(dout_ptr + row * ELTS_PER_ROW + col * VecSize,
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                            &dout[it]);
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      phi::Load<T, VecSize>(x_ptr + row * ELTS_PER_ROW + col * VecSize, &x[it]);
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      if (isFusedDropoutResidualLn) {
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        phi::Load<MaskType, VecSize>(
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            mask_ptr + row * ELTS_PER_ROW + col * VecSize, &mask_vec[it]);
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      }

      col += THREADS_PER_ROW;
    }

    // local reductions
    U dy[LDGS * VecSize];
    U y[LDGS * VecSize];

    U sum_loss1 = 0.f;
    U sum_loss2 = 0.f;
#pragma unroll
    for (int it = 0; it < LDGS; it++) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
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        U x_tmp = static_cast<U>(x[it][jt]);
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        U y_tmp = var_cur_row * (x_tmp - mean_cur_row);
        U dy_tmp = static_cast<U>(gamma[it][jt]) *
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                   static_cast<U>(dout[it][jt]);    // scale * dy
        U dout_tmp = static_cast<U>(dout[it][jt]);  // dy
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        // used for get dx (row reduction)
        sum_loss1 += dy_tmp;          // scale * dy, sum_1
        sum_loss2 += dy_tmp * y_tmp;  // scale * dy * y, sum_2

        dy[it * VecSize + jt] = dy_tmp;  // scale * dy
        y[it * VecSize + jt] = y_tmp;    // y

        // used for get dscale and dbias (column reduction)
        dgamma_sum[it * VecSize + jt] += dout_tmp * y_tmp;  // dy * y
        dbeta_sum[it * VecSize + jt] += dout_tmp;           // dy
      }
    }

    // reduction across row for sum_loss1, sum_loss2
    if (WARPS_N == 1) {
#pragma unroll
      // row reduction among 32 threads.
      for (int it = 1; it < THREADS_PER_WARP; it *= 2) {
        sum_loss1 += __shfl_xor_sync(uint32_t(-1), sum_loss1, it);
        sum_loss2 += __shfl_xor_sync(uint32_t(-1), sum_loss2, it);
      }
      sum_loss1 *= rn;
      sum_loss2 *= rn;
    } else {
#pragma unroll
      for (int it = 16; it > 0; it /= 2) {
        sum_loss1 += __shfl_down_sync(uint32_t(-1), sum_loss1, it);
        sum_loss2 += __shfl_down_sync(uint32_t(-1), sum_loss2, it);
      }

      if (lane == 0) {
        sum_loss1_shared[warp_n] = sum_loss1;
        sum_loss2_shared[warp_n] = sum_loss2;
      }

      __syncthreads();
      if (warp_n == 0 && lane == 0) {
        sum_loss1 = 0.f;
        sum_loss2 = 0.f;
        for (int it = 0; it < WARPS_N; it++) {
          sum_loss1 += sum_loss1_shared[it];
          sum_loss2 += sum_loss2_shared[it];
        }
        sum_loss1_shared[0] = sum_loss1;
        sum_loss2_shared[0] = sum_loss2;
      }
      __syncthreads();

      sum_loss1 = sum_loss1_shared[0] * rn;
      sum_loss2 = sum_loss2_shared[0] * rn;
    }

#pragma unroll
    for (int it = 0; it < LDGS; it++) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        U dy_tmp = dy[it * VecSize + jt];  // scale * dy
        U y_tmp = y[it * VecSize + jt];    // y
        // dx = var * (scale * dy - sum_loss2 * y - sum_loss1)
        U dx_tmp = var_cur_row * (dy_tmp - sum_loss2 * y_tmp - sum_loss1);
        // Note: reuse x and dout vec register to store dx and d_dropout_src.
        x[it][jt] = static_cast<T>(dx_tmp);
        if (isFusedDropoutResidualLn) {
          dout[it][jt] = x[it][jt] * static_cast<T>(mask_vec[it][jt]) * factor;
        }
      }
    }

    // store dx to global memory
    col = c;
#pragma unroll
    for (int it = 0; it < LDGS; it++) {
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      phi::Store<T, VecSize>(x[it],
                             dx_ptr + row * ELTS_PER_ROW + col * VecSize);
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      if (isFusedDropoutResidualLn) {
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        phi::Store<T, VecSize>(
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            dout[it], d_dropout_src_ptr + row * ELTS_PER_ROW + col * VecSize);
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      }
      col += THREADS_PER_ROW;
    }
  }

  // step-2: column reduction of dscale and dbias for each thread block.
  // each block's sum: [4 * 1024] -> [1 * 1024]
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  enum { NUM_RES = ELTS_PER_ROW / THREADS_PER_CTA };  // 1024/128 = 8
  static_assert(NUM_RES * THREADS_PER_CTA == ELTS_PER_ROW, "");
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  U *smem_write;

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  smem_write = &smem_[warp_m * ELTS_PER_ROW + tid_r * VecSize];  // [4 * 1024]
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#pragma unroll
  for (int it = 0; it < LDGS; it++) {
#pragma unroll
    for (int jt = 0; jt < VecSize; jt++) {
      smem_write[jt] = dbeta_sum[it * VecSize + jt];
    }
    smem_write += THREADS_PER_ROW * VecSize;  // 32*8
  }
  __syncthreads();
  U cta_dbeta_sum[NUM_RES];
  memset(cta_dbeta_sum, 0, sizeof(U) * NUM_RES);
  // column reduction for elems in smem: 4*1024 -> 1*1024.
  for (int it = 0; it < ROWS_PER_CTA; it++) {
    for (int jt = 0; jt < NUM_RES; jt++) {
      cta_dbeta_sum[jt] +=
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          smem_[it * ELTS_PER_ROW + tidx + jt * THREADS_PER_CTA];
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    }
  }
  __syncthreads();

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  smem_write = &smem_[warp_m * ELTS_PER_ROW + tid_r * VecSize];
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#pragma unroll
  for (int it = 0; it < LDGS; it++) {
#pragma unroll
    for (int jt = 0; jt < VecSize; jt++) {
      smem_write[jt] = dgamma_sum[it * VecSize + jt];
    }
    smem_write += THREADS_PER_ROW * VecSize;
  }
  __syncthreads();
  U cta_dgamma_sum[NUM_RES];
  memset(cta_dgamma_sum, 0, sizeof(U) * NUM_RES);
  for (int it = 0; it < ROWS_PER_CTA; it++) {
    for (int jt = 0; jt < NUM_RES; jt++) {
      cta_dgamma_sum[jt] +=
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          smem_[it * ELTS_PER_ROW + tidx + jt * THREADS_PER_CTA];
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    }
  }

  // the shape of results:(#blocks, 1024)
  U *dgamma_part =
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      static_cast<U *>(dgamma_temp_ptr) + bidx * ELTS_PER_ROW + tidx;
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  for (int jt = 0; jt < NUM_RES; jt++) {
    *dgamma_part = cta_dgamma_sum[jt];
    dgamma_part += THREADS_PER_CTA;
  }

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  U *dbeta_part = static_cast<U *>(dbeta_temp_ptr) + bidx * ELTS_PER_ROW + tidx;
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  for (int jt = 0; jt < NUM_RES; jt++) {
    *dbeta_part = cta_dbeta_sum[jt];
    dbeta_part += THREADS_PER_CTA;
  }
}

/* This function carry out column reduction whose input is [rows, 1024] and
 * output is [1, 1024].
 * #blocks: 32
 * #threads: 512
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 */
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// todo(@limin29): to think if there are better impl strategies
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template <typename U,
          typename ScaleT = U,
          int VecSize = 1,
          int WARPS_M = 16,
          int WARPS_N = 1,
          int BYTES_PER_LDG = 4,
          int ELTS_PER_ROW = 1024,
          int THREADS_PER_WARP = 32,
          int THREADS_PER_ROW = WARPS_N *THREADS_PER_WARP,
          int THREADS_PER_CTA = WARPS_M *THREADS_PER_ROW,
          int ROWS_PER_CTA = WARPS_M,
          int ELTS_PER_ROW_PER_CTA = THREADS_PER_ROW *VecSize,
          int LDGS = ELTS_PER_ROW / ELTS_PER_ROW_PER_CTA,
          int VEC_COLS = ELTS_PER_ROW / VecSize>
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__global__ __launch_bounds__(THREADS_PER_CTA) void ln_bwd_fast_final_kernel(
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    const int rows,
    U *__restrict__ dg_part_,
    U *__restrict__ db_part_,
    ScaleT *__restrict__ dg_,
    ScaleT *__restrict__ db_) {
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  using Vec = phi::AlignedVector<U, VecSize>;
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  static_assert(VEC_COLS == ELTS_PER_ROW / VecSize, "");
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  const int tidx = threadIdx.x;
  const int bidx = blockIdx.x;
  const int lane = tidx % THREADS_PER_WARP;
  const int warp = tidx / THREADS_PER_WARP;
  const int warp_m = warp / WARPS_N;
  const int warp_n = warp % WARPS_N;
  const int tid_c = warp_n * THREADS_PER_WARP + lane;

  const int c = bidx * THREADS_PER_ROW + tid_c;
  const int r = warp_m;

  __shared__ U smem_space[(WARPS_M - 1) * THREADS_PER_ROW * VecSize];

  for (int col = c; col < VEC_COLS; col += gridDim.x * THREADS_PER_ROW) {
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    const U *dg_part_ptr = (dg_part_) + r * ELTS_PER_ROW + col * VecSize;
    const U *db_part_ptr = (db_part_) + r * ELTS_PER_ROW + col * VecSize;
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    U dg_sum[VecSize];
    U db_sum[VecSize];
    memset(dg_sum, 0, sizeof(U) * VecSize);
    memset(db_sum, 0, sizeof(U) * VecSize);
#pragma unroll
    for (int row = r; row < rows; row += ROWS_PER_CTA) {
      Vec dg;
      Vec db;
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      phi::Load<U, VecSize>(dg_part_ptr, &dg);
      phi::Load<U, VecSize>(db_part_ptr, &db);
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      dg_part_ptr += ROWS_PER_CTA * ELTS_PER_ROW;
      db_part_ptr += ROWS_PER_CTA * ELTS_PER_ROW;
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#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        dg_sum[jt] += dg[jt];
        db_sum[jt] += db[jt];
      }
    }

    // reduction across rows of the thread block
    U *smem_write;
    smem_write = smem_space + (warp_m - 1) * THREADS_PER_ROW * VecSize + tid_c;

    if (warp_m > 0) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        *smem_write = dg_sum[jt];
        smem_write += THREADS_PER_ROW;
      }
    }
    __syncthreads();

    U *smem_read;
    smem_read = smem_space + tid_c;
    if (warp_m == 0) {
#pragma unroll
      for (int it = 0; it < WARPS_M - 1; it++) {
#pragma unroll
        for (int jt = 0; jt < VecSize; jt++) {
          dg_sum[jt] += *smem_read;
          smem_read += THREADS_PER_ROW;
        }
      }
    }

    __syncthreads();

    smem_write = smem_space + (warp_m - 1) * THREADS_PER_ROW * VecSize + tid_c;

    if (warp_m > 0) {
#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        *smem_write = db_sum[jt];
        smem_write += THREADS_PER_ROW;
      }
    }
    __syncthreads();

    smem_read = smem_space + tid_c;
    if (warp_m == 0) {
#pragma unroll
      for (int it = 0; it < WARPS_M - 1; it++) {
#pragma unroll
        for (int jt = 0; jt < VecSize; jt++) {
          db_sum[jt] += *smem_read;
          smem_read += THREADS_PER_ROW;
        }
      }

      union {
        ScaleT raw;
        ScaleT elt[VecSize];
      } dg_out, db_out;

#pragma unroll
      for (int jt = 0; jt < VecSize; jt++) {
        dg_out.elt[jt] = dg_sum[jt];
        db_out.elt[jt] = db_sum[jt];
      }
      ScaleT *dg_ptr = reinterpret_cast<ScaleT *>(dg_) + col;
      ScaleT *db_ptr = reinterpret_cast<ScaleT *>(db_) + col;
      *dg_ptr = dg_out.raw;
      *db_ptr = db_out.raw;
    }
  }
}

/* This function support two kinds of computations (only for float and fp16
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 * type):
 *
 * Case-1: compute layer_norm_grad for layernorm op by setting mask_ptr and
 * d_dropout_src_ptr to nullptr. Here, d_x_ptr returns the grad of layernorm
 * input.
 *
 * Case-2: compute layer_norm_grad + residual_grad + dropout_grad for
 * fused_dropout_residual_layernorm op. Here, dx_ptr returns residual_grad.
 *
 */
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template <typename T,
          typename U,
          typename ScaleT = U,
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          typename MaskType = uint8_t>
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void ln_bwd_fast_kernel_driver(const phi::GPUContext &dev_ctx,
                               const int rows,
                               const int cols,
                               float epsilon,
                               const T *x_ptr,
                               const ScaleT *scale_ptr,
                               const U *mean_ptr,
                               const U *var_ptr,
                               const T *dout_ptr,
                               T *dx_ptr,
                               ScaleT *dscale_ptr,
                               ScaleT *dbias_ptr,
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hong 已提交
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                               const MaskType *mask_ptr = nullptr,
                               T factor = static_cast<T>(0),
                               T *d_dropout_src_ptr = nullptr) {
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  auto stream = dev_ctx.stream();
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  if (cols == 1024 || cols == 384 || cols == 256) {
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    // step-1: compute dx and reduced part results of dscale and dbias.
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    const int WARPS_M = 4;  // how many rows delt in a cta.
    const int WARPS_N = 1;  // how many warps to deal with a row.
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    const int BYTES_PER_LDG = 16;
    const int VecSize = BYTES_PER_LDG / sizeof(T);

    const int THREADS_PER_WARP = 32;
    const int THREADS_PER_ROW = WARPS_N * THREADS_PER_WARP;
    const int THREADS_PER_CTA = WARPS_M * THREADS_PER_ROW;
    const int ROWS_PER_CTA = WARPS_M;

    // 4 * 1024 * 4
    const int SMEM_BYTES = ROWS_PER_CTA * cols * sizeof(U);

    // #blocks = 2 * #SM
    const int gridx = 2 * dev_ctx.GetSMCount();

    // get temp space for dscale and dbias.
    framework::Tensor dscale_temp;
    dscale_temp.Resize({gridx, cols});
    dscale_temp.mutable_data<U>(dev_ctx.GetPlace());
    U *dscale_temp_ptr = dscale_temp.data<U>();

    framework::Tensor dbias_temp;
    dbias_temp.Resize({gridx, cols});
    dbias_temp.mutable_data<U>(dev_ctx.GetPlace());
    U *dbias_temp_ptr = dbias_temp.data<U>();

    if (mask_ptr != nullptr) {
      if (d_dropout_src_ptr == nullptr) {
        PADDLE_THROW(platform::errors::InvalidArgument(
            "To compute fused_dropout_residual_ln grad, d_dropout_src_ptr "
            "can't be null"));
      }
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#define LAUNCH_MASK_FUSED_LN_BWD_FAST_KERNEL(vec_size, ele_per_row) \
  fused_ln_bwd_fast_kernel<true,                                    \
                           T,                                       \
                           U,                                       \
                           ScaleT,                                  \
                           MaskType,                                \
                           vec_size,                                \
                           WARPS_M,                                 \
                           WARPS_N,                                 \
                           BYTES_PER_LDG,                           \
                           ele_per_row>                             \
      <<<gridx, THREADS_PER_CTA, 0, stream>>>(rows,                 \
                                              epsilon,              \
                                              x_ptr,                \
                                              scale_ptr,            \
                                              mean_ptr,             \
                                              var_ptr,              \
                                              dout_ptr,             \
                                              dscale_temp_ptr,      \
                                              dbias_temp_ptr,       \
                                              dx_ptr,               \
                                              mask_ptr,             \
                                              factor,               \
                                              d_dropout_src_ptr);
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      if (cols == 1024) {
        LAUNCH_MASK_FUSED_LN_BWD_FAST_KERNEL(VecSize, 1024);
      } else {
        switch (cols) {
          case 384:
            LAUNCH_MASK_FUSED_LN_BWD_FAST_KERNEL(1, 384);
            break;
          case 256:
            LAUNCH_MASK_FUSED_LN_BWD_FAST_KERNEL(VecSize, 256);
            break;
        }
      }
#undef LAUNCH_MASK_FUSED_LN_BWD_FAST_KERNEL
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    } else {
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#define LAUNCH_FUSED_LN_BWD_FAST_KERNEL(vec_size, ele_per_row) \
  fused_ln_bwd_fast_kernel<false,                              \
                           T,                                  \
                           U,                                  \
                           ScaleT,                             \
                           MaskType,                           \
                           vec_size,                           \
                           WARPS_M,                            \
                           WARPS_N,                            \
                           BYTES_PER_LDG,                      \
                           ele_per_row>                        \
      <<<gridx, THREADS_PER_CTA, 0, stream>>>(rows,            \
                                              epsilon,         \
                                              x_ptr,           \
                                              scale_ptr,       \
                                              mean_ptr,        \
                                              var_ptr,         \
                                              dout_ptr,        \
                                              dscale_temp_ptr, \
                                              dbias_temp_ptr,  \
                                              dx_ptr);
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      if (cols == 1024) {
        LAUNCH_FUSED_LN_BWD_FAST_KERNEL(VecSize, 1024);
      } else {
        switch (cols) {
          case 384:
            LAUNCH_FUSED_LN_BWD_FAST_KERNEL(1, 384);
            break;
          case 256:
            LAUNCH_FUSED_LN_BWD_FAST_KERNEL(VecSize, 256);
            break;
        }
      }

#undef LAUNCH_FUSED_LN_BWD_FAST_KERNEL
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    }
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    const int WARPS_M_2 = 16;
    const int WARPS_N_2 = 1;
    const int BYTES_PER_LDG_2 = 4;
    const int VecSize_2 =
        std::max(1, static_cast<int>(BYTES_PER_LDG_2 / sizeof(U)));  // 1

    const int THREADS_PER_WARP_2 = 32;
    const int THREADS_PER_ROW_2 = WARPS_N_2 * THREADS_PER_WARP_2;  // 32
    const int THREADS_PER_CTA_2 =
        WARPS_M_2 * THREADS_PER_ROW_2;     // 16 * 32 = 512
    const int ROWS_PER_CTA_2 = WARPS_M_2;  // 16

    // #blocks: 32,#threads_per_block: 512
    // Note: it is not supported for double type.
    if (sizeof(U) > 4) {
      PADDLE_THROW(platform::errors::InvalidArgument(
          "Only support float and fp16 type"));
    } else {
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      int gridx_2 = 0;

#define LAUNCH_LN_BWD_BETA_GAMMMA_KERNEL(vec_size, ele_per_row)         \
  gridx_2 = static_cast<int>(std::ceil(                                 \
      ele_per_row / static_cast<float>(THREADS_PER_ROW_2 * vec_size))); \
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  ln_bwd_fast_final_kernel<U,                                           \
                           ScaleT,                                      \
                           vec_size,                                    \
                           WARPS_M_2,                                   \
                           WARPS_N_2,                                   \
                           BYTES_PER_LDG_2,                             \
                           ele_per_row>                                 \
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      <<<gridx_2, THREADS_PER_CTA_2, 0, stream>>>(                      \
          gridx, dscale_temp_ptr, dbias_temp_ptr, dscale_ptr, dbias_ptr);

      if (cols == 1024) {
        LAUNCH_LN_BWD_BETA_GAMMMA_KERNEL(VecSize_2, 1024);
      } else {
        switch (cols) {
          case 384:
            LAUNCH_LN_BWD_BETA_GAMMMA_KERNEL(1, 384);
            break;
          case 256:
            LAUNCH_LN_BWD_BETA_GAMMMA_KERNEL(VecSize_2, 256);
            break;
        }
      }

#undef LAUNCH_LN_BWD_BETA_GAMMMA_KERNEL
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    }
  } else {
    PADDLE_THROW(platform::errors::InvalidArgument(
        "Fast layer_norm kernel is only used when feature_size is 1024"));
  }
}
#endif

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template <typename T, typename U, int BDIMX, int BDIMY, int VPTX>
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__global__ void LayerNormBackwardPartGradGammaBeta(const T *__restrict__ dout,
                                                   const T *__restrict__ input,
                                                   const int64_t n1,
                                                   const int64_t n2,
                                                   const U *__restrict__ mean,
                                                   const U *__restrict__ var,
                                                   float epsilon,
                                                   U *part_grad_gamma,
                                                   U *part_grad_beta) {
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  // VPTX -> value per thread.x, BDIMX -> blockDim.x, BDIMY -> blockDim.y, BDIMX
  // -> blockDim.x
  // template for compile time optimizations

  constexpr int row_stride = BDIMX + 1;
  const int thr_load_col_off = (threadIdx.x * VPTX) & (BDIMX - 1);
  const int thr_load_row_off =
      (threadIdx.x * VPTX) / BDIMX + threadIdx.y * BDIMY;
  const int i2_off = blockIdx.x * BDIMX + thr_load_col_off;

  constexpr int shared_cap = (BDIMX * BDIMY > 2 * VPTX * BDIMY * row_stride)
                                 ? BDIMX * BDIMY
                                 : 2 * VPTX * BDIMY * row_stride;
  __shared__ U buf[shared_cap];

  U *warp_buf1 = reinterpret_cast<U *>(buf);
  U *warp_buf2 = warp_buf1 + VPTX * BDIMY * row_stride;

  for (int idx = threadIdx.y * blockDim.x + threadIdx.x;
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       idx < 2 * VPTX * BDIMY * row_stride;
       idx += BDIMX * BDIMY) {
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    buf[idx] = U(0);
  }
  __syncthreads();

  for (int64_t i1_block = blockIdx.y * BDIMY * VPTX; i1_block < n1;
       i1_block += VPTX * BDIMY * gridDim.y) {
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    cuLoadAddStridedInputs<T, U, VPTX>(i1_block,
                                       thr_load_row_off,
                                       thr_load_col_off,
                                       i2_off,
                                       row_stride,
                                       warp_buf1,
                                       warp_buf2,
                                       input,
                                       dout,
                                       n1,
                                       n2,
                                       mean,
                                       var,
                                       epsilon);
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  }
  __syncthreads();

  // inter-warp reductions
  // sum within each warp
  U acc1 = U(0);
  U acc2 = U(0);
  for (int k = 0; k < VPTX; ++k) {
    int row1 = threadIdx.y + k * VPTX;
    int idx1 = row1 * row_stride + threadIdx.x;
    acc1 += warp_buf1[idx1];
    acc2 += warp_buf2[idx1];
  }
  warp_buf1[threadIdx.y * row_stride + threadIdx.x] = acc1;
  warp_buf2[threadIdx.y * row_stride + threadIdx.x] = acc2;
  __syncthreads();
  // sum all warps
  for (int offset = VPTX >> 1; offset > 1; offset >>= 1) {
    if (threadIdx.y < offset) {
      int row1 = threadIdx.y;
      int row2 = threadIdx.y + offset;
      int idx1 = row1 * row_stride + threadIdx.x;
      int idx2 = row2 * row_stride + threadIdx.x;
      warp_buf1[idx1] += warp_buf1[idx2];
      warp_buf2[idx1] += warp_buf2[idx2];
    }
    __syncthreads();
  }
  int64_t i2 = blockIdx.x * blockDim.x + threadIdx.x;
  if (threadIdx.y == 0 && i2 < n2) {
    int row1 = threadIdx.y;
    int row2 = threadIdx.y + 1;
    int idx1 = row1 * row_stride + threadIdx.x;
    int idx2 = row2 * row_stride + threadIdx.x;
    part_grad_beta[blockIdx.y * n2 + i2] = warp_buf1[idx1] + warp_buf1[idx2];
    part_grad_gamma[blockIdx.y * n2 + i2] = warp_buf2[idx1] + warp_buf2[idx2];
  }
}

1126
template <typename T, typename U, int BDIMX, int BDIMY, bool ScaleBiasSameTypeX>
1127
__global__ void LayerNormBackwardSumGradGammaBeta(
1128 1129 1130
    const U *part_grad_gamma,
    const U *part_grad_beta,
    const int part_size,
1131
    // const int n1, const int n2, T* grad_gamma, T* grad_beta) {
1132 1133
    const int n1,
    const int n2,
1134 1135
    LayerNormScaleBiasT<T, U, ScaleBiasSameTypeX> *grad_gamma,
    LayerNormScaleBiasT<T, U, ScaleBiasSameTypeX> *grad_beta) {
1136
  // sum partial gradients for gamma and beta
1137
  using ScaleBiasT = LayerNormScaleBiasT<T, U, ScaleBiasSameTypeX>;
1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155 1156 1157 1158 1159 1160 1161 1162 1163 1164 1165 1166 1167 1168 1169 1170 1171 1172 1173
  __shared__ U buf[BDIMX * BDIMY];
  int64_t i2 = blockIdx.x * BDIMX + threadIdx.x;
  if (i2 < n2) {
    // each warp does sequential reductions until reduced part_size is num_warps
    int num_warp_reductions = part_size / BDIMY;
    U sum_gamma = U(0);
    U sum_beta = U(0);
    const U *part_grad_gamma_ptr =
        part_grad_gamma + threadIdx.y * num_warp_reductions * n2 + i2;
    const U *part_grad_beta_ptr =
        part_grad_beta + threadIdx.y * num_warp_reductions * n2 + i2;
    for (int warp_offset = 0; warp_offset < num_warp_reductions;
         ++warp_offset) {
      sum_gamma += part_grad_gamma_ptr[warp_offset * n2];
      sum_beta += part_grad_beta_ptr[warp_offset * n2];
    }
    // inter-warp reductions
    constexpr int nbsize3 = BDIMX * BDIMY / 2;
    for (int offset = BDIMY / 2; offset >= 1; offset /= 2) {
      // top half write to shared memory
      if (threadIdx.y >= offset && threadIdx.y < 2 * offset) {
        const int write_idx = (threadIdx.y - offset) * blockDim.x + threadIdx.x;
        buf[write_idx] = sum_gamma;
        buf[write_idx + nbsize3] = sum_beta;
      }
      __syncthreads();
      // bottom half sums
      if (threadIdx.y < offset) {
        const int read_idx = threadIdx.y * BDIMX + threadIdx.x;
        sum_gamma += buf[read_idx];
        sum_beta += buf[read_idx + nbsize3];
      }
      __syncthreads();
    }
    // write out fully summed gradients
    if (threadIdx.y == 0) {
1174 1175
      grad_gamma[i2] = static_cast<ScaleBiasT>(sum_gamma);
      grad_beta[i2] = static_cast<ScaleBiasT>(sum_beta);
1176 1177 1178 1179
    }
  }
}

1180
template <typename T, typename U, int BDIMX, int BDIMY, bool ScaleBiasSameTypeX>
1181
__global__ void LayerNormBackwardComputeGradInput(
1182 1183 1184 1185 1186 1187
    const T *__restrict__ dout,
    const T *__restrict__ input,
    const int n1,
    const int n2,
    const U *__restrict__ mean,
    const U *__restrict__ var,
1188
    const float epsilon,
1189 1190
    const LayerNormScaleBiasT<T, U, ScaleBiasSameTypeX> *gamma,
    T *grad_input) {
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#ifdef __HIPCC__
  for (auto i1 = hipBlockIdx_x; i1 < n1; i1 += hipGridDim_x) {
#else
  for (auto i1 = blockIdx.x; i1 < n1; i1 += gridDim.x) {
#endif
    U sum_loss1 = U(0);
    U sum_loss2 = U(0);
    const U c_mean = mean[i1];
    const U c_invvar = rsqrt_<U>(var[i1] + epsilon);
    const T *k_input = input + i1 * n2;
    const T *k_dout = dout + i1 * n2;
    constexpr int numx = BDIMX * BDIMY;
    const int thrx = threadIdx.x + threadIdx.y * BDIMX;
    if (gamma != NULL) {
      int l = 4 * thrx;
      for (; l + 3 < n2; l += 4 * numx) {
        for (int k = 0; k < 4; ++k) {
          const U c_h = static_cast<U>(k_input[l + k]);
          const U c_loss = static_cast<U>(k_dout[l + k]);
1210 1211 1212
          sum_loss1 += c_loss * static_cast<U>(gamma[l + k]);
          sum_loss2 +=
              c_loss * static_cast<U>(gamma[l + k]) * (c_h - c_mean) * c_invvar;
1213 1214 1215 1216 1217
        }
      }
      for (; l < n2; ++l) {
        const U c_h = static_cast<U>(k_input[l]);
        const U c_loss = static_cast<U>(k_dout[l]);
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        sum_loss1 += c_loss * static_cast<U>(gamma[l]);
        sum_loss2 +=
            c_loss * static_cast<U>(gamma[l]) * (c_h - c_mean) * c_invvar;
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      }
    } else {
      int l = 4 * thrx;
      for (; l + 3 < n2; l += 4 * numx) {
        for (int k = 0; k < 4; ++k) {
          const U c_h = static_cast<U>(k_input[l + k]);
          const U c_loss = static_cast<U>(k_dout[l + k]);
          sum_loss1 += c_loss;
          sum_loss2 += c_loss * (c_h - c_mean) * c_invvar;
        }
      }
      for (; l < n2; ++l) {
        const U c_h = static_cast<U>(k_input[l]);
        const U c_loss = static_cast<U>(k_dout[l]);
        sum_loss1 += c_loss;
        sum_loss2 += c_loss * (c_h - c_mean) * c_invvar;
      }
    }
    // intra-warp reductions
    for (int mask = BDIMX / 2; mask > 0; mask /= 2) {
#ifdef PADDLE_WITH_HIP
1242 1243
      sum_loss1 += __shfl_xor(sum_loss1,
                              mask,
1244
                              warpSize);  // WARP_SHFL_XOR(sum_loss1, mask);
1245 1246
      sum_loss2 += __shfl_xor(sum_loss2,
                              mask,
1247 1248 1249
                              warpSize);  // WARP_SHFL_XOR(sum_loss2, mask);
#else
      sum_loss1 +=
1250 1251 1252
          __shfl_xor_sync(0xffffffff,
                          sum_loss1,
                          mask,
1253 1254
                          warpSize);  // WARP_SHFL_XOR(sum_loss1, mask);
      sum_loss2 +=
1255 1256 1257
          __shfl_xor_sync(0xffffffff,
                          sum_loss2,
                          mask,
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                          warpSize);  // WARP_SHFL_XOR(sum_loss2, mask);
#endif
    }
    // inter-warp reductions
    if (BDIMY > 1) {
      __shared__ U buf[BDIMX * BDIMY];
      for (int offset = BDIMY / 2; offset > 0; offset /= 2) {
        // upper half of warps write to shared
        if (threadIdx.y >= offset && threadIdx.y < 2 * offset) {
          const int wrt_i = (threadIdx.y - offset) * BDIMX + threadIdx.x;
          buf[2 * wrt_i] = sum_loss1;
          buf[2 * wrt_i + 1] = sum_loss2;
        }
        __syncthreads();
        // lower half merges
        if (threadIdx.y < offset) {
          const int read_i = threadIdx.y * blockDim.x + threadIdx.x;
          sum_loss1 += buf[2 * read_i];
          sum_loss2 += buf[2 * read_i + 1];
        }
        __syncthreads();
      }
      if (threadIdx.y == 0) {
        buf[2 * threadIdx.x] = sum_loss1;
        buf[2 * threadIdx.x + 1] = sum_loss2;
      }
      __syncthreads();
      if (threadIdx.y != 0) {
        sum_loss1 = buf[2 * threadIdx.x];
        sum_loss2 = buf[2 * threadIdx.x + 1];
      }
    }
    // all threads now have the two sums over l
    U fH = (U)n2;
    U term1 = (U(1) / fH) * c_invvar;
    T *k_grad_input = grad_input + i1 * n2;
    if (gamma != NULL) {
      for (int l = thrx; l < n2; l += numx) {
        const U c_h = static_cast<U>(k_input[l]);
        const U c_loss = static_cast<U>(k_dout[l]);
1298
        U f_grad_input = fH * c_loss * static_cast<U>(gamma[l]);
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        f_grad_input -= sum_loss1;
        f_grad_input -= (c_h - c_mean) * c_invvar * sum_loss2;
        f_grad_input *= term1;
        k_grad_input[l] = static_cast<T>(f_grad_input);
      }
    } else {
      for (int l = thrx; l < n2; l += numx) {
        const U c_h = static_cast<U>(k_input[l]);
        const U c_loss = static_cast<U>(k_dout[l]);
        U f_grad_input = fH * c_loss;
        f_grad_input -= sum_loss1;
        f_grad_input -= (c_h - c_mean) * c_invvar * sum_loss2;
        f_grad_input *= term1;
        k_grad_input[l] = static_cast<T>(f_grad_input);
      }
    }
  }
}

// Make sure that d_scale != nullptr && d_bias != nullptr
// Since d_scale != nullptr, scale would not be nullptr
1320 1321 1322 1323
template <typename T,
          typename U,
          int BlockDim,
          bool HasDx,
1324
          bool ScaleBiasWithSameTypeX>
1325
__global__ void LayerNormBackwardGradientAll(
1326 1327
    const T *x,
    const T *d_y,
1328
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_scale,
1329 1330 1331 1332
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_bias,
    T *d_x,
    const U *mean,
    const U *var,
1333
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
1334 1335 1336
    float epsilon,
    int64_t batch_size,
    int64_t feature_size,
1337 1338
    int64_t col_offset) {
  using ScaleBiasT = LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX>;
1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352
  int64_t beg_idx = threadIdx.x * feature_size + (blockIdx.x + col_offset);
  int64_t end_idx = batch_size * feature_size + (blockIdx.x + col_offset);
  int64_t stride = BlockDim * feature_size;

  U d_scale_partial = static_cast<U>(0), d_bias_partial = static_cast<U>(0);

  for (int64_t i = beg_idx; i < end_idx; i += stride) {
    int row_idx = i / feature_size;
    auto var_val = real_sqrt(static_cast<U>(var[row_idx]) + epsilon);
    d_scale_partial += static_cast<U>(d_y[i]) *
                       (static_cast<U>(x[i]) - mean[row_idx]) / var_val;
    d_bias_partial += static_cast<U>(d_y[i]);
    if (HasDx) {
      d_x[i] = static_cast<T>(static_cast<U>(d_y[i]) *
1353 1354
                              static_cast<U>(scale[blockIdx.x + col_offset]) /
                              var_val);
1355 1356 1357 1358 1359 1360 1361 1362 1363 1364
    }
  }

  __shared__ U shared_scale[32];  // threadIdx.x / warpSize <= kMaxBlockDim /
                                  // warpSize <= 1024/32 = 32;
  __shared__ U shared_bias[32];
  d_scale_partial = BlockReduceSum<U>(d_scale_partial, shared_scale);
  d_bias_partial = BlockReduceSum<U>(d_bias_partial, shared_bias);

  if (threadIdx.x == 0) {
1365 1366
    d_scale[blockIdx.x + col_offset] = static_cast<ScaleBiasT>(d_scale_partial);
    d_bias[blockIdx.x + col_offset] = static_cast<ScaleBiasT>(d_bias_partial);
1367 1368 1369 1370 1371 1372
  }
}

// Make sure that there is only one true expression: d_scale != nullptr
// or d_bias != nullptr
// Notice: scale may be nullptr
1373 1374 1375 1376 1377
template <typename T,
          typename U,
          int BlockDim,
          bool HasDx,
          bool HasDScale,
1378
          bool ScaleBiasWithSameTypeX>
1379
__global__ void LayerNormBackwardGradientScaleOrBias(
1380 1381
    const T *x,
    const T *d_y,
1382
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_scale,
1383 1384 1385 1386
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_bias,
    T *d_x,
    const U *mean,
    const U *var,
1387
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
1388 1389 1390 1391
    float epsilon,
    int64_t batch_size,
    int64_t feature_size,
    int col_offset) {
1392
  using ScaleBiasT = LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX>;
1393 1394 1395 1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406 1407 1408 1409 1410 1411 1412 1413 1414
  using BlockReduce = cub::BlockReduce<U, BlockDim>;
  __shared__ typename BlockReduce::TempStorage temp_storage;
  int64_t beg_idx = threadIdx.x * feature_size + blockIdx.x + col_offset;
  int64_t end_idx = batch_size * feature_size + blockIdx.x + col_offset;
  int stride = BlockDim * feature_size;
  U d_scale_or_d_bias_partial = static_cast<U>(0);

  for (int64_t i = beg_idx; i < end_idx; i += stride) {
    int row_idx = i / feature_size;
    auto var_val =
        static_cast<U>(real_sqrt(static_cast<float>(var[row_idx]) + epsilon));
    if (HasDScale) {
      d_scale_or_d_bias_partial += static_cast<U>(d_y[i]) *
                                   (static_cast<U>(x[i]) - mean[row_idx]) /
                                   var_val;
    } else {  // d_bias != nullptr
      d_scale_or_d_bias_partial += static_cast<U>(d_y[i]);
    }

    if (HasDx) {
      if (scale != nullptr) {
        d_x[i] = static_cast<T>(static_cast<U>(d_y[i]) *
1415 1416
                                static_cast<U>(scale[blockIdx.x + col_offset]) /
                                var_val);
1417 1418 1419 1420 1421 1422 1423 1424 1425 1426 1427
      } else {
        d_x[i] = static_cast<T>(static_cast<U>(d_y[i]) / var_val);
      }
    }
  }

  d_scale_or_d_bias_partial =
      BlockReduce(temp_storage).Reduce(d_scale_or_d_bias_partial, cub::Sum());

  if (threadIdx.x == 0) {
    if (HasDScale) {
1428 1429
      d_scale[blockIdx.x + col_offset] =
          static_cast<ScaleBiasT>(d_scale_or_d_bias_partial);
1430
    } else {
1431 1432
      d_bias[blockIdx.x + col_offset] =
          static_cast<ScaleBiasT>(d_scale_or_d_bias_partial);
1433 1434 1435 1436 1437 1438
    }
  }
}

template <typename T, typename U, int BlockDim>
__global__ void LayerNormBackwardPostProcessToCalculateDX(
1439 1440 1441 1442 1443
    const T *x,
    T *d_x,
    const U *mean,
    const U *var,
    float epsilon,
1444 1445 1446 1447 1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461 1462 1463 1464 1465 1466 1467 1468 1469 1470 1471 1472 1473 1474 1475 1476 1477 1478 1479 1480 1481 1482 1483
    int64_t feature_size) {
  using BlockReduce = cub::BlockReduce<PairForLayerNorm<U>, BlockDim>;
  __shared__ typename BlockReduce::TempStorage temp_storage;
  __shared__ U d_x_reduce_tmp[2];

  int64_t beg_idx = blockIdx.x * feature_size + threadIdx.x;
  int64_t end_idx = (blockIdx.x + 1) * feature_size;

  U block_mean = mean[blockIdx.x];
  U block_var = var[blockIdx.x];
  U d_x_mean_partial = static_cast<U>(0), d_x_var_partial = static_cast<U>(0);
  for (int64_t i = beg_idx; i < end_idx; i += BlockDim) {
    d_x_mean_partial += static_cast<U>(d_x[i]);
    d_x_var_partial +=
        static_cast<U>(d_x[i]) * (static_cast<U>(x[i]) - block_mean);
  }

  auto pair =
      BlockReduce(temp_storage)
          .Reduce(PairForLayerNorm<U>(d_x_mean_partial, d_x_var_partial),
                  PairForLayerNormAddFunctor<U>());

  if (threadIdx.x == 0) {
    d_x_reduce_tmp[0] = static_cast<float>(pair.first_) / feature_size;
    d_x_reduce_tmp[1] =
        static_cast<float>(pair.second_) /
        (feature_size * (static_cast<float>(block_var) + epsilon));
  }
  __syncthreads();

  d_x_mean_partial = d_x_reduce_tmp[0];
  d_x_var_partial = d_x_reduce_tmp[1];
  for (int64_t i = beg_idx; i < end_idx; i += BlockDim) {
    d_x[i] -= static_cast<T>(d_x_mean_partial);
    d_x[i] -=
        static_cast<T>((static_cast<U>(x[i]) - block_mean) * d_x_var_partial);
  }
}

// Here, we only calculate d_x
1484 1485
template <typename T, typename U, int BlockDim, bool ScaleBiasWithSameTypeX>
__global__ void LayerNormBackwardGradientOnlyDX(
1486 1487 1488 1489 1490
    const T *x,
    const T *d_y,
    T *d_x,
    const U *mean,
    const U *var,
1491
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
1492 1493
    float epsilon,
    int64_t feature_size) {
1494
  using ScaleBiasT = LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX>;
1495 1496 1497 1498 1499 1500 1501 1502 1503 1504 1505 1506 1507 1508
  using BlockReduce = cub::BlockReduce<PairForLayerNorm<U>, BlockDim>;
  __shared__ typename BlockReduce::TempStorage temp_storage;
  __shared__ U d_x_reduce_tmp[2];

  int64_t beg_idx = blockIdx.x * feature_size + threadIdx.x;
  int64_t end_idx = (blockIdx.x + 1) * feature_size;

  U block_mean = mean[blockIdx.x], block_var = var[blockIdx.x];
  U d_x_mean_partial = static_cast<U>(0), d_x_var_partial = static_cast<U>(0);
  for (int64_t i = beg_idx; i < end_idx; i += BlockDim) {
    auto var_val =
        static_cast<U>(real_sqrt(static_cast<float>(block_var) + epsilon));
    if (scale != nullptr) {
      int col_idx = i % feature_size;
1509 1510
      d_x[i] = static_cast<T>(static_cast<U>(d_y[i]) *
                              static_cast<U>(scale[col_idx]) / var_val);
1511 1512 1513 1514 1515 1516 1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527 1528 1529 1530 1531 1532 1533 1534 1535 1536 1537 1538 1539 1540
    } else {
      d_x[i] = static_cast<T>(static_cast<U>(d_y[i]) / var_val);
    }
    d_x_mean_partial += static_cast<U>(d_x[i]);
    d_x_var_partial +=
        static_cast<U>(d_x[i]) * (static_cast<U>(x[i]) - block_mean);
  }

  auto pair =
      BlockReduce(temp_storage)
          .Reduce(PairForLayerNorm<U>(d_x_mean_partial, d_x_var_partial),
                  PairForLayerNormAddFunctor<U>());

  if (threadIdx.x == 0) {
    d_x_reduce_tmp[0] = static_cast<float>(pair.first_) / feature_size;
    d_x_reduce_tmp[1] =
        static_cast<float>(pair.second_) /
        (feature_size * (static_cast<float>(block_var) + epsilon));
  }
  __syncthreads();

  d_x_mean_partial = d_x_reduce_tmp[0];
  d_x_var_partial = d_x_reduce_tmp[1];
  for (int64_t i = beg_idx; i < end_idx; i += BlockDim) {
    d_x[i] -= static_cast<T>(d_x_mean_partial);
    d_x[i] -=
        static_cast<T>((static_cast<U>(x[i]) - block_mean) * d_x_var_partial);
  }
}

1541
template <typename T, typename U, bool ScaleBiasWithSameTypeX>
1542
__global__ void LayerNormBackwardWhenBatchSizeIsOne(
1543 1544 1545
    const T *x,
    const T *d_y,
    T *d_x,
1546
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_scale,
1547 1548
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_bias,
    const U *mean,
1549 1550
    const U *var,
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
1551 1552
    float epsilon,
    int64_t feature_size) {
1553
  int64_t idx = threadIdx.x + blockIdx.x * blockDim.x;
1554
  using ScaleBiasT = LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX>;
1555 1556
  if (idx < feature_size) {
    auto var_val =
1557
        static_cast<U>(real_sqrt(static_cast<float>(var[0]) + epsilon));
1558 1559 1560 1561
    if (d_x != nullptr) {
      if (d_scale == nullptr) {
        d_x[idx] = static_cast<T>(static_cast<U>(d_y[idx]) / var_val);
      } else {
1562 1563
        d_x[idx] = static_cast<T>(static_cast<U>(d_y[idx]) *
                                  static_cast<U>(scale[idx]) / var_val);
1564 1565 1566 1567
      }
    }

    if (d_scale != nullptr) {
1568 1569 1570
      d_scale[idx] =
          static_cast<ScaleBiasT>(static_cast<U>(d_y[idx]) *
                                  (static_cast<U>(x[idx]) - mean[0]) / var_val);
1571 1572
    }

1573 1574 1575
    if (d_bias != nullptr) {
      d_bias[idx] = static_cast<ScaleBiasT>(d_y[idx]);
    }
1576 1577 1578
  }
}

1579 1580
template <typename T, typename U, bool ScaleBiasWithSameTypeX = false>
static void LayerNormBackward(
1581 1582
    const T *x,
    const T *d_y,
1583
    const LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *scale,
1584 1585 1586
    const U *mean,
    const U *var,
    T *d_x,
1587
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_scale,
1588 1589 1590 1591 1592
    LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX> *d_bias,
    float epsilon,
    int64_t batch_size,
    int64_t feature_size,
    const phi::GPUContext &dev_ctx) {
1593 1594 1595 1596 1597 1598 1599 1600 1601 1602 1603 1604 1605
  auto stream = dev_ctx.stream();
#ifdef __HIPCC__
  const int kMaxBlockDim = 256;
#else
  const int kMaxBlockDim = 512;
#endif
  const int kMaxBlockNum = 128;
  int gradient_flag = ((d_x != nullptr ? 1 : 0) << 2) |
                      ((d_scale != nullptr ? 1 : 0) << 1) |
                      ((d_bias != nullptr ? 1 : 0));
  if (gradient_flag == 0) return;

  if (batch_size == 1) {
1606
    LayerNormBackwardWhenBatchSizeIsOne<T, U, ScaleBiasWithSameTypeX>
1607 1608 1609 1610 1611 1612 1613 1614 1615 1616 1617 1618
        <<<(feature_size + kMaxBlockDim - 1) / kMaxBlockDim,
           kMaxBlockDim,
           0,
           stream>>>(x,
                     d_y,
                     d_x,
                     d_scale,
                     d_bias,
                     mean,
                     var,
                     scale,
                     epsilon,
1619
                     feature_size);
1620 1621 1622

    if (d_x != nullptr) {
      switch (GetDesiredBlockDim(feature_size)) {
1623 1624
        FIXED_BLOCK_DIM_CASE(
            LayerNormBackwardPostProcessToCalculateDX<T, U, kBlockDim>
1625 1626
            <<<1, kBlockDim, 0, stream>>>(
                x, d_x, mean, var, epsilon, feature_size));
1627 1628 1629 1630 1631 1632 1633 1634 1635 1636
      }
    }
    return;
  }

  auto block_dim = GetDesiredBlockDim(batch_size);
  switch (gradient_flag) {
    case 1:  // d_x == nulptr, d_scale == nullptr, d_bias != nullptr
      switch (block_dim) {
        FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(
1637 1638 1639 1640 1641 1642 1643
            feature_size,
            kMaxBlockNum,
            LayerNormBackwardGradientScaleOrBias<T,
                                                 U,
                                                 kBlockDim,
                                                 false,
                                                 false,
1644
                                                 ScaleBiasWithSameTypeX>
1645 1646 1647 1648 1649 1650 1651 1652 1653 1654 1655 1656
            <<<block_num, kBlockDim, 0, stream>>>(x,
                                                  d_y,
                                                  d_scale,
                                                  d_bias,
                                                  d_x,
                                                  mean,
                                                  var,
                                                  scale,
                                                  epsilon,
                                                  batch_size,
                                                  feature_size,
                                                  col_offset));
1657 1658 1659 1660 1661
      }
      break;
    case 2:  // d_x == nullptr, d_scale != nullptr, d_bias == nullptr
      switch (block_dim) {
        FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(
1662 1663 1664 1665 1666 1667 1668
            feature_size,
            kMaxBlockNum,
            LayerNormBackwardGradientScaleOrBias<T,
                                                 U,
                                                 kBlockDim,
                                                 false,
                                                 true,
1669
                                                 ScaleBiasWithSameTypeX>
1670 1671 1672 1673 1674 1675 1676 1677 1678 1679 1680 1681
            <<<block_num, kBlockDim, 0, stream>>>(x,
                                                  d_y,
                                                  d_scale,
                                                  d_bias,
                                                  d_x,
                                                  mean,
                                                  var,
                                                  scale,
                                                  epsilon,
                                                  batch_size,
                                                  feature_size,
                                                  col_offset));
1682 1683 1684 1685 1686
      }
      break;
    case 3:  // d_x == nullptr, d_scale != nulptr, d_bias != nullptr
      switch (block_dim) {
        FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(
1687 1688 1689 1690 1691 1692
            feature_size,
            kMaxBlockNum,
            LayerNormBackwardGradientAll<T,
                                         U,
                                         kBlockDim,
                                         false,
1693
                                         ScaleBiasWithSameTypeX>
1694 1695 1696 1697 1698 1699 1700 1701 1702 1703 1704 1705
            <<<block_num, kBlockDim, 0, stream>>>(x,
                                                  d_y,
                                                  d_scale,
                                                  d_bias,
                                                  d_x,
                                                  mean,
                                                  var,
                                                  scale,
                                                  epsilon,
                                                  batch_size,
                                                  feature_size,
                                                  col_offset));
1706 1707 1708 1709 1710
      }
      break;
    case 4:  // d_x != nullptr, d_scale == nullptr, d_bias == nullptr
      switch (GetDesiredBlockDim(feature_size)) {
        FIXED_BLOCK_DIM_CASE(
1711 1712 1713
            LayerNormBackwardGradientOnlyDX<T,
                                            U,
                                            kBlockDim,
1714 1715
                                            ScaleBiasWithSameTypeX>
            <<<batch_size, kBlockDim, 0, stream>>>(
1716 1717 1718 1719 1720 1721
                x, d_y, d_x, mean, var, scale, epsilon, feature_size));
      }
      break;
    case 5:  // d_x != nulptr, d_scale == nullptr, d_bias != nullptr
      switch (block_dim) {
        FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(
1722 1723 1724 1725 1726 1727 1728
            feature_size,
            kMaxBlockNum,
            LayerNormBackwardGradientScaleOrBias<T,
                                                 U,
                                                 kBlockDim,
                                                 true,
                                                 false,
1729
                                                 ScaleBiasWithSameTypeX>
1730 1731 1732 1733 1734 1735 1736 1737 1738 1739 1740 1741
            <<<block_num, kBlockDim, 0, stream>>>(x,
                                                  d_y,
                                                  d_scale,
                                                  d_bias,
                                                  d_x,
                                                  mean,
                                                  var,
                                                  scale,
                                                  epsilon,
                                                  batch_size,
                                                  feature_size,
                                                  col_offset));
1742 1743 1744
      }
      switch (GetDesiredBlockDim(feature_size)) {
        FIXED_BLOCK_DIM_CASE(
1745
            LayerNormBackwardPostProcessToCalculateDX<T, U, kBlockDim>
1746 1747
            <<<batch_size, kBlockDim, 0, stream>>>(
                x, d_x, mean, var, epsilon, feature_size));
1748 1749 1750 1751 1752
      }
      break;
    case 6:  // d_x != nullptr, d_scale != nullptr, d_bias == nullptr
      switch (block_dim) {
        FIXED_BLOCK_DIM_FIXED_BLOCK_NUM_CASE(
1753 1754 1755 1756 1757 1758 1759
            feature_size,
            kMaxBlockNum,
            LayerNormBackwardGradientScaleOrBias<T,
                                                 U,
                                                 kBlockDim,
                                                 true,
                                                 true,
1760
                                                 ScaleBiasWithSameTypeX>
1761 1762 1763 1764 1765 1766 1767 1768 1769 1770 1771 1772
            <<<block_num, kBlockDim, 0, stream>>>(x,
                                                  d_y,
                                                  d_scale,
                                                  d_bias,
                                                  d_x,
                                                  mean,
                                                  var,
                                                  scale,
                                                  epsilon,
                                                  batch_size,
                                                  feature_size,
                                                  col_offset));
1773 1774 1775
      }
      switch (GetDesiredBlockDim(feature_size)) {
        FIXED_BLOCK_DIM_CASE(
1776
            LayerNormBackwardPostProcessToCalculateDX<T, U, kBlockDim>
1777 1778
            <<<batch_size, kBlockDim, 0, stream>>>(
                x, d_x, mean, var, epsilon, feature_size));
1779 1780 1781 1782
      }
      break;
    case 7:  // d_x != nullptr, d_scale != nullptr, d_bias != nullptr
    {
1783
#ifdef PADDLE_WITH_CUDA
1784
      bool can_call_fast_kernel = false;
1785
      // todo: rule out double type.
1786 1787 1788 1789
      if ((feature_size == 1024 || feature_size == 384 ||
           feature_size == 256) &&
          sizeof(T) <= 4) {
        can_call_fast_kernel = true;
1790 1791
      }

1792 1793 1794
      VLOG(6) << "can_call_fast_kernel = " << can_call_fast_kernel;
      if (can_call_fast_kernel) {
        ln_bwd_fast_kernel_driver<
1795 1796 1797 1798 1799 1800 1801 1802 1803 1804 1805 1806 1807 1808
            T,
            U,
            LayerNormScaleBiasT<T, U, ScaleBiasWithSameTypeX>>(dev_ctx,
                                                               batch_size,
                                                               feature_size,
                                                               epsilon,
                                                               x,
                                                               scale,
                                                               mean,
                                                               var,
                                                               d_y,
                                                               d_x,
                                                               d_scale,
                                                               d_bias);
1809 1810 1811 1812 1813 1814 1815 1816 1817 1818 1819 1820 1821 1822 1823 1824
      } else {
#endif
        constexpr int VPT = 4;
        constexpr int BDIMX2 = 32;
        constexpr int BDIMY2 = 4;
        dim3 threads2(BDIMX2, BDIMY2, 1);
        constexpr int part_size = BDIMY2 * VPT;
        const dim3 blocks2((feature_size + BDIMX2 - 1) / BDIMX2, part_size, 1);

        auto part_grad_gamma_ptr =
            memory::Alloc(dev_ctx, part_size * feature_size * sizeof(U));
        auto part_grad_beta_ptr =
            memory::Alloc(dev_ctx, part_size * feature_size * sizeof(U));
        U *part_grad_gamma = reinterpret_cast<U *>(part_grad_gamma_ptr->ptr());
        U *part_grad_beta = reinterpret_cast<U *>(part_grad_beta_ptr->ptr());

1825 1826
        LayerNormBackwardPartGradGammaBeta<T, U, BDIMX2, BDIMY2, VPT>
            <<<blocks2, threads2, 0, stream>>>(
1827 1828 1829 1830 1831 1832 1833
                d_y,
                x,
                batch_size,
                feature_size,
                mean,
                var,
                epsilon,
1834 1835
                part_grad_gamma,
                part_grad_beta);  // compute part_grad_gamma, beta
1836 1837 1838 1839 1840

        constexpr int BDIMX3 = 32;
        constexpr int BDIMY3 = 8;
        dim3 threads3(BDIMX3, BDIMY3, 1);
        const dim3 blocks3((feature_size + BDIMX2 - 1) / BDIMX2, 1, 1);
1841 1842 1843 1844
        LayerNormBackwardSumGradGammaBeta<T,
                                          U,
                                          BDIMX3,
                                          BDIMY3,
1845
                                          ScaleBiasWithSameTypeX>
1846 1847 1848 1849 1850 1851 1852
            <<<blocks3, threads3, 0, stream>>>(part_grad_gamma,
                                               part_grad_beta,
                                               part_size,
                                               batch_size,
                                               feature_size,
                                               d_scale,
                                               d_bias);
1853 1854 1855 1856

        constexpr int BDIMX1 = 32;
        constexpr int BDIMY1 = 4;
        dim3 threads1(BDIMX1, BDIMY1, 1);
1857 1858 1859 1860
        LayerNormBackwardComputeGradInput<T,
                                          U,
                                          BDIMX1,
                                          BDIMY1,
1861
                                          ScaleBiasWithSameTypeX>
1862 1863 1864 1865 1866 1867 1868 1869 1870
            <<<batch_size, threads1, 0, stream>>>(d_y,
                                                  x,
                                                  batch_size,
                                                  feature_size,
                                                  mean,
                                                  var,
                                                  epsilon,
                                                  scale,
                                                  d_x);
1871 1872 1873 1874
#ifdef PADDLE_WITH_CUDA
      }
#endif

1875 1876 1877 1878 1879 1880 1881 1882 1883
      break;
    }
    default:
      break;
  }
}

}  // namespace operators
}  // namespace paddle