ds_transformer_cuda.cpp 44.8 KB
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#include <torch/extension.h>

#include <cublas_v2.h>
#include <cuda_fp16.h>
#include <cuda_runtime.h>
#include <type_traits>
#include <unordered_map>
#include <vector>
#include "Timer.h"
#include "context.h"
#include "cublas_wrappers.h"
#include "custom_cuda_layers.h"
#include "ds_transformer_cuda.h"

static std::unordered_map<int, std::shared_ptr<void>> s_transformer_layers;

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const int init_seq_length = 128;

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// C++ interface

template <typename T>
size_t get_workspace_size(int maxBatchSize,
                          int seq_len,
                          int hidden_size,
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                          int intermediate_size,
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                          int heads,
                          bool training,
                          bool gelu_checkpoint)
{
    size_t workSpacesize = 4 * (size_t(maxBatchSize) * seq_len * hidden_size);
    if (training) {
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        workSpacesize += ((std::max)((size_t(maxBatchSize) * seq_len * intermediate_size),
                                     2 * (size_t(maxBatchSize) * heads * seq_len * seq_len)));
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        if (gelu_checkpoint) workSpacesize += 2 * (size_t(maxBatchSize) * seq_len * hidden_size);
    }
    return workSpacesize * sizeof(T);
}

// NOTE: AT_ASSERT has become AT_CHECK on master after 0.4.
#define CHECK_CUDA(x) AT_ASSERTM(x.type().is_cuda(), #x " must be a CUDA tensor")
#define CHECK_CONTIGUOUS(x) AT_ASSERTM(x.is_contiguous(), #x " must be contiguous")
#define CHECK_INPUT(x) \
    CHECK_CUDA(x);     \
    CHECK_CONTIGUOUS(x)

template <typename T>
BertTransformerLayer<T>::BertTransformerLayer(int layer_id,
                                              int batch_size,
                                              int hidden_size,
                                              int num_heads,
                                              int intermediate_size,
                                              int seq_length,
                                              float attn_prob_dropout_ratio,
                                              float hidden_output_dropout_ratio,
                                              bool pre_or_postLayerNorm,
                                              const std::vector<std::array<int, 3>>& gemm_algos,
                                              bool attn_dropout_checkpoint,
                                              bool normalize_invertible,
                                              bool gelu_checkpoint,
                                              bool stochastic_mode)
    : _layer_id(layer_id),
      _batch_size(batch_size),
      _hidden_size(hidden_size),
      _heads(num_heads),
      _intermediate_size(intermediate_size),
      _seq_length(seq_length),
      _training(true),
      _pre_or_postLayerNorm(pre_or_postLayerNorm),
      _attn_dropout_checkpoint(attn_dropout_checkpoint),
      _normalize_invertible(normalize_invertible),
      _gelu_checkpoint(gelu_checkpoint),
      _stochastic_mode(stochastic_mode),
      _stream(Context::Instance().GetCurrentStream()),
      _cublasHandle(Context::Instance().GetCublasHandle()),
      _qkv_linear(typename FeedForward<T>::Config(batch_size * seq_length,
                                                  3 * hidden_size,
                                                  hidden_size,
                                                  gemm_algos[0])),
      _attn_out_linear(typename FeedForward<T>::Config(batch_size * seq_length,
                                                       hidden_size,
                                                       hidden_size,
                                                       gemm_algos[0])),
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      _attn_layer_norm(typename Normalize_Layer<T>::Config(batch_size,
                                                           seq_length,
                                                           hidden_size,
                                                           true,
                                                           !normalize_invertible)),
      _layer_norm(typename Normalize_Layer<T>::Config(batch_size,
                                                      seq_length,
                                                      hidden_size,
                                                      true,
                                                      !normalize_invertible)),
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      _ff1(typename FeedForward<T>::Config(batch_size * seq_length,
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                                           _intermediate_size,
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                                           hidden_size,
                                           gemm_algos[1])),
      _ff2(typename FeedForward<T>::Config(batch_size * seq_length,
                                           hidden_size,
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                                           _intermediate_size,
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                                           gemm_algos[2])),
      _softmax(typename Softmax<T>::Config(batch_size, num_heads, seq_length)),
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      _gelu(typename Gelu<T>::Config(_intermediate_size)),
      _attn_prob_dropout(typename Dropout<T>::Config(attn_prob_dropout_ratio, _seq_length)),
      _attn_output_dropout(typename Dropout<T>::Config(hidden_output_dropout_ratio, _hidden_size)),
      _layer_output_dropout(typename Dropout<T>::Config(hidden_output_dropout_ratio, _hidden_size)),
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      _attn_scores(typename StridedBatchGemm<T>::Config(_batch_size * _heads,
                                                        _seq_length,
                                                        _seq_length,
                                                        _hidden_size / _heads,
                                                        (T(1.0) / T(sqrt(_hidden_size / _heads))),
                                                        T(0.0),
                                                        CUBLAS_OP_T,
                                                        CUBLAS_OP_N,
                                                        gemm_algos[3])),
      _attn_context(typename StridedBatchGemm<T>::Config(_batch_size * _heads,
                                                         _hidden_size / _heads,
                                                         _seq_length,
                                                         _seq_length,
                                                         T(1.0),
                                                         T(0.0),
                                                         CUBLAS_OP_N,
                                                         CUBLAS_OP_N,
                                                         gemm_algos[4]))
{
    assert(_hidden_size % _heads == 0);
    assert(_seq_length <= 1024);

    Initialize();
}

template <typename T>
BertTransformerLayer<T>::~BertTransformerLayer()
{
}

template <typename T>
void BertTransformerLayer<T>::Initialize()
{
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    Context::Instance().GenWorkSpace(get_workspace_size<T>(_batch_size,
                                                           _seq_length,
                                                           _hidden_size,
                                                           _intermediate_size,
                                                           _heads,
                                                           _training,
                                                           _gelu_checkpoint));
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    if (std::is_same<T, __half>::value) cublasSetMathMode(_cublasHandle, CUBLAS_TENSOR_OP_MATH);
}

template <typename T>
void BertTransformerLayer<T>::Forward(int bsz,
                                      const T* input_ptr,
                                      const T* input_mask_ptr,
                                      const T* attn_qkvw_ptr,
                                      const T* attn_qkvb_ptr,
                                      const T* attn_ow_ptr,
                                      const T* attn_ob_ptr,
                                      const T* attn_nw_ptr,
                                      const T* attn_nb_ptr,
                                      const T* inter_w_ptr,
                                      const T* inter_b_ptr,
                                      const T* output_w_ptr,
                                      const T* output_b_ptr,
                                      const T* norm_w_ptr,
                                      const T* norm_b_ptr,
                                      T* out_ptr,
                                      T* inp_norm_ptr,
                                      T* q_tf_ptr,
                                      T* k_tf_ptr,
                                      T* v_tf_ptr,
                                      T* soft_out_ptr,
                                      T* ctx_bufB_ptr,
                                      T* attn_o_inp_ptr,
                                      T* add_res_ptr,
                                      T* ff1_inp_ptr,
                                      T* gelu_inp_ptr,
                                      T* ff2_inp_ptr)
{
    cublasSetStream(_cublasHandle, _stream);

    if (!_stochastic_mode) cudaStreamSynchronize(_stream);

    T* workspace = static_cast<T*>(Context::Instance().GetWorkSpace());
    size_t small_buf_size = bsz * _seq_length * _hidden_size;
    T* buf_0 = workspace;
    T* buf_1 = buf_0 + small_buf_size;

    if (_normalize_invertible) add_res_ptr = buf_1 + 3 * small_buf_size;
    if (_attn_dropout_checkpoint) ctx_bufB_ptr = buf_1 + 4 * small_buf_size;

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    int bsz_seq = bsz * _seq_length;

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    if (_pre_or_postLayerNorm) {
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        if (_layer_norm.UseMean())
            _layer_norm.ForwardCheckpoint(
                bsz_seq, inp_norm_ptr, input_ptr, norm_w_ptr, norm_b_ptr, _stream, true);
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        else
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            _layer_norm.Forward(
                bsz_seq, inp_norm_ptr, input_ptr, norm_w_ptr, norm_b_ptr, _stream, true);
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    }

    if (_pre_or_postLayerNorm)
        _qkv_linear.Forward(bsz_seq, inp_norm_ptr, attn_qkvw_ptr, buf_0, _cublasHandle);
    else
        _qkv_linear.Forward(bsz_seq, input_ptr, attn_qkvw_ptr, buf_0, _cublasHandle);

    launch_bias_add_transform_0213<T>(
        q_tf_ptr, buf_0, attn_qkvb_ptr, bsz, _seq_length, _hidden_size, _heads, _stream, 3);

    int bsz_heads = bsz * _heads;

    // attention scores
    _attn_scores.Forward(bsz_heads, soft_out_ptr, k_tf_ptr, q_tf_ptr, _cublasHandle);

    // Softmax + Mask
    _softmax.Forward(bsz, soft_out_ptr, input_mask_ptr, _stream);

    // attn prob dropout.
    _attn_prob_dropout.Forward(bsz_heads * _seq_length, ctx_bufB_ptr, soft_out_ptr, _stream);

    // attention context
    _attn_context.Forward(bsz_heads, buf_1, v_tf_ptr, ctx_bufB_ptr, _cublasHandle);

    launch_transform4d_0213<T>(
        attn_o_inp_ptr, buf_1, bsz, _heads, _seq_length, _hidden_size, _stream, 1);

    if (_pre_or_postLayerNorm)
        _attn_out_linear.Forward(bsz_seq, attn_o_inp_ptr, attn_ow_ptr, buf_1, _cublasHandle);
    else
        _attn_out_linear.Forward(bsz_seq, attn_o_inp_ptr, attn_ow_ptr, ff1_inp_ptr, _cublasHandle);

    // attn output dropout.
    if (_pre_or_postLayerNorm)
        _attn_output_dropout.ForwardWithBias(
            bsz_seq, add_res_ptr, buf_1, input_ptr, attn_ob_ptr, _stream);
    else
        _attn_output_dropout.ForwardWithBias(
            bsz_seq, add_res_ptr, ff1_inp_ptr, input_ptr, attn_ob_ptr, _stream);

    if (_pre_or_postLayerNorm) {
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        if (_attn_layer_norm.UseMean())
            _attn_layer_norm.ForwardCheckpoint(
                bsz_seq, ff1_inp_ptr, add_res_ptr, attn_nw_ptr, attn_nb_ptr, _stream, true);
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        else
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            _attn_layer_norm.Forward(
                bsz_seq, ff1_inp_ptr, add_res_ptr, attn_nw_ptr, attn_nb_ptr, _stream, true);
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    } else {
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        if (_attn_layer_norm.UseMean())
            _attn_layer_norm.ForwardCheckpoint(
                bsz_seq, ff1_inp_ptr, add_res_ptr, attn_nw_ptr, attn_nb_ptr, _stream, true);
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        else
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            _attn_layer_norm.Forward(
                bsz_seq, ff1_inp_ptr, add_res_ptr, attn_nw_ptr, attn_nb_ptr, _stream, true);
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    }

    _ff1.Forward(bsz_seq,
                 ff1_inp_ptr,
                 inter_w_ptr,
                 (_gelu_checkpoint ? ff2_inp_ptr : gelu_inp_ptr),
                 _cublasHandle);

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    _gelu.ForwardWithBiasAdd(bsz_seq,
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                             (_gelu_checkpoint ? ff2_inp_ptr : gelu_inp_ptr),
                             inter_b_ptr,
                             (_gelu_checkpoint ? ctx_bufB_ptr : ff2_inp_ptr),
                             _stream);

    _ff2.Forward(bsz_seq,
                 (_gelu_checkpoint ? ctx_bufB_ptr : ff2_inp_ptr),
                 output_w_ptr,
                 out_ptr,
                 _cublasHandle);

    // layer output dropout.
    if (_pre_or_postLayerNorm)
        _layer_output_dropout.ForwardWithBias(
            bsz_seq, out_ptr, out_ptr, add_res_ptr, output_b_ptr, _stream);
    else
        _layer_output_dropout.ForwardWithBias(
            bsz_seq, inp_norm_ptr, out_ptr, ff1_inp_ptr, output_b_ptr, _stream);

    if (!_pre_or_postLayerNorm) {
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        if (_layer_norm.UseMean())
            _layer_norm.ForwardCheckpoint(
                bsz_seq, out_ptr, inp_norm_ptr, norm_w_ptr, norm_b_ptr, _stream, true);
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        else
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            _layer_norm.Forward(
                bsz_seq, out_ptr, inp_norm_ptr, norm_w_ptr, norm_b_ptr, _stream, true);
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    }
}

template <typename T>
void BertTransformerLayer<T>::Backward(int bsz,
                                       const T* grad_output_ptr,
                                       const T* input_ptr,
                                       const T* output_ptr,
                                       const T* inp_norm_ptr,
                                       const T* q_tf_ptr,
                                       const T* k_tf_ptr,
                                       const T* v_tf_ptr,
                                       const T* soft_out_ptr,
                                       const T* ctx_bufB_ptr,
                                       const T* attn_o_inp_ptr,
                                       const T* add_res_ptr,
                                       const T* ff1_inp_ptr,
                                       const T* gelu_inp_ptr,
                                       const T* ff2_inp_ptr,
                                       const T* input_mask_ptr,
                                       const T* attn_qkvw_ptr,
                                       const T* attn_ow_ptr,
                                       const T* attn_nw_ptr,
                                       const T* attn_nb_ptr,
                                       const T* inter_w_ptr,
                                       const T* inter_b_ptr,
                                       const T* output_w_ptr,
                                       const T* norm_w_ptr,
                                       const T* norm_b_ptr,

                                       T* grad_input_ptr,
                                       T* grad_attn_qkvw_ptr,
                                       T* grad_attn_qkvb_ptr,
                                       T* grad_attn_ow_ptr,
                                       T* grad_attn_ob_ptr,
                                       T* grad_attn_nw_ptr,
                                       T* grad_attn_nb_ptr,
                                       T* grad_inter_w_ptr,
                                       T* grad_inter_b_ptr,
                                       T* grad_output_w_ptr,
                                       T* grad_output_b_ptr,
                                       T* grad_norm_w_ptr,
                                       T* grad_norm_b_ptr)
{
    cublasSetStream(_cublasHandle, _stream);

    if (!_stochastic_mode) cudaStreamSynchronize(_stream);

    T* workspace = static_cast<T*>(Context::Instance().GetWorkSpace());
    size_t small_buf_size = bsz * _seq_length * _hidden_size;
    T* buf_0 = workspace;
    T* buf_1 = buf_0 + small_buf_size;
    T* buf_2 = buf_1 + small_buf_size;
    T* buf_3 = buf_2 + small_buf_size;

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    T* ff2_buf = (_gelu_checkpoint ? buf_2 + (bsz * _seq_length * _intermediate_size)
                                   : buf_3 + small_buf_size);
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    T* ctx_bufB_ptr_recomp = ff2_buf + (_seq_length * _seq_length * bsz * _heads);

    cudaStream_t streams[2] = {_stream, _stream};

    int bsz_seq = bsz * _seq_length;
    int bsz_heads = bsz * _heads;

    if (!_pre_or_postLayerNorm) {
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        if (_layer_norm.UseMean())
            _layer_norm.Backward(bsz_seq,
                                 grad_output_ptr,
                                 norm_w_ptr,
                                 grad_norm_w_ptr,
                                 grad_norm_b_ptr,
                                 streams,
                                 buf_1,
                                 inp_norm_ptr);
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        else
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            _layer_norm.Backward(bsz_seq,
                                 grad_output_ptr,
                                 norm_w_ptr,
                                 norm_b_ptr,
                                 grad_norm_w_ptr,
                                 grad_norm_b_ptr,
                                 streams,
                                 buf_1,
                                 output_ptr);
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    }

    if (_pre_or_postLayerNorm)
        _layer_output_dropout.Backward(bsz_seq, buf_0, grad_output_ptr, _stream);
    else
        _layer_output_dropout.Backward(bsz_seq, buf_0, buf_1, _stream);

    const T* layer_dropout_buf = _layer_output_dropout.HasDropout()
                                     ? buf_0
                                     : (_pre_or_postLayerNorm ? grad_output_ptr : buf_1);

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    if (_gelu_checkpoint)
        _gelu.ForwardWithBiasAdd(bsz_seq, ff2_inp_ptr, inter_b_ptr, buf_2, _stream);
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    _ff2.Backward(bsz_seq,
                  layer_dropout_buf,
                  (_gelu_checkpoint ? buf_2 : ff2_inp_ptr),
                  output_w_ptr,
                  grad_output_w_ptr,
                  grad_output_b_ptr,
                  _cublasHandle,
                  _stream,
                  ff2_buf);

    _gelu.Backward(
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        bsz_seq, ff2_buf, (_gelu_checkpoint ? ff2_inp_ptr : gelu_inp_ptr), inter_b_ptr, _stream);
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    _ff1.Backward(bsz_seq,
                  ff2_buf,
                  ff1_inp_ptr,
                  inter_w_ptr,
                  grad_inter_w_ptr,
                  grad_inter_b_ptr,
                  _cublasHandle,
                  _stream,
                  buf_3);

    if (!_pre_or_postLayerNorm)
        launch_fused_add2<T>(buf_2, buf_3, buf_1, bsz, _seq_length, _hidden_size, _stream);

    if (_pre_or_postLayerNorm) {
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        if (_attn_layer_norm.UseMean())
            _attn_layer_norm.BackwardFusedAdd(bsz_seq,
                                              buf_3,
                                              grad_output_ptr,
                                              attn_nw_ptr,
                                              grad_attn_nw_ptr,
                                              grad_attn_nb_ptr,
                                              streams,
                                              buf_0,
                                              add_res_ptr);
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        else
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            _attn_layer_norm.BackwardFusedAdd(bsz_seq,
                                              buf_3,
                                              grad_output_ptr,
                                              attn_nw_ptr,
                                              attn_nb_ptr,
                                              grad_attn_nw_ptr,
                                              grad_attn_nb_ptr,
                                              streams,
                                              buf_0,
                                              ff1_inp_ptr);
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    } else {
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        if (_attn_layer_norm.UseMean())
            _attn_layer_norm.Backward(bsz_seq,
                                      buf_2,
                                      attn_nw_ptr,
                                      grad_attn_nw_ptr,
                                      grad_attn_nb_ptr,
                                      streams,
                                      buf_0,
                                      add_res_ptr);
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        else
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            _attn_layer_norm.Backward(bsz_seq,
                                      buf_2,
                                      attn_nw_ptr,
                                      attn_nb_ptr,
                                      grad_attn_nw_ptr,
                                      grad_attn_nb_ptr,
                                      streams,
                                      buf_0,
                                      ff1_inp_ptr);
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    }

    _attn_output_dropout.Backward(bsz_seq, buf_2, buf_0, _stream);

    T* attn_output_dropout_buf = _attn_output_dropout.HasDropout() ? buf_2 : buf_0;

    _attn_out_linear.Backward(bsz_seq,
                              attn_output_dropout_buf,
                              attn_o_inp_ptr,
                              attn_ow_ptr,
                              grad_attn_ow_ptr,
                              grad_attn_ob_ptr,
                              _cublasHandle,
                              _stream,
                              buf_1);

    launch_transform_0213<T>(buf_2, buf_1, bsz, _seq_length, _hidden_size, _heads, _stream);

    if (_attn_prob_dropout.HasDropout()) {
        if (_attn_dropout_checkpoint)
            _attn_prob_dropout.Forward(
                bsz_heads * _seq_length, ctx_bufB_ptr_recomp, soft_out_ptr, _stream, true);

        _attn_context.Backward(bsz_heads,
                               buf_2,
                               v_tf_ptr,
                               (_attn_dropout_checkpoint ? ctx_bufB_ptr_recomp : ctx_bufB_ptr),
                               _cublasHandle,
                               buf_3,
                               ff2_buf);
    } else
        _attn_context.Backward(
            bsz_heads, buf_2, v_tf_ptr, soft_out_ptr, _cublasHandle, buf_3, ff2_buf);

    _attn_prob_dropout.Backward(bsz_heads * _seq_length, ff2_buf, _stream);

    _softmax.Backward(bsz, ff2_buf, soft_out_ptr, _stream);

    _attn_scores.Backward(bsz_heads, ff2_buf, k_tf_ptr, q_tf_ptr, _cublasHandle, buf_2, buf_1);

    launch_transform4d_0213(ff2_buf, buf_1, bsz, _heads, _seq_length, _hidden_size, _stream, 3);

    if (_pre_or_postLayerNorm)
        _qkv_linear.Backward(bsz_seq,
                             ff2_buf,
                             inp_norm_ptr,
                             attn_qkvw_ptr,
                             grad_attn_qkvw_ptr,
                             grad_attn_qkvb_ptr,
                             _cublasHandle,
                             _stream,
                             buf_2);
    else
        _qkv_linear.Backward(bsz_seq,
                             ff2_buf,
                             input_ptr,
                             attn_qkvw_ptr,
                             grad_attn_qkvw_ptr,
                             grad_attn_qkvb_ptr,
                             _cublasHandle,
                             _stream,
                             buf_2);

    if (_pre_or_postLayerNorm) {
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        if (_layer_norm.UseMean())
            _layer_norm.BackwardFusedAdd(bsz_seq,
                                         buf_2,
                                         buf_0,
                                         norm_w_ptr,
                                         grad_norm_w_ptr,
                                         grad_norm_b_ptr,
                                         streams,
                                         grad_input_ptr,
                                         input_ptr);
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        else
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            _layer_norm.BackwardFusedAdd(bsz_seq,
                                         buf_2,
                                         buf_0,
                                         norm_w_ptr,
                                         norm_b_ptr,
                                         grad_norm_w_ptr,
                                         grad_norm_b_ptr,
                                         streams,
                                         grad_input_ptr,
                                         inp_norm_ptr);
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    } else
        launch_fused_add2<T>(grad_input_ptr, buf_2, buf_0, bsz, _seq_length, _hidden_size, _stream);
}

template <typename T>
void BertTransformerLayer<T>::SetTrainingMode(bool training)
{
    // Dropout will be skipped when not in training model.
    _attn_prob_dropout.SetTrainingMode(training);
    _attn_output_dropout.SetTrainingMode(training);
    _layer_output_dropout.SetTrainingMode(training);
}

template <typename T>
void BertTransformerLayer<T>::SetIntermediateBuffers(uint8_t* attn_prob_dropout_mask_ptr,
                                                     uint8_t* attn_output_dropout_mask_ptr,
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                                                     uint8_t* layer_output_dropout_mask_ptr,
                                                     T* attn_layer_norm_var,
                                                     T* attn_layer_norm_mean,
                                                     T* layer_norm_var,
                                                     T* layer_norm_mean)
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{
    _attn_prob_dropout.SetMask(attn_prob_dropout_mask_ptr);
    _attn_output_dropout.SetMask(attn_output_dropout_mask_ptr);
    _layer_output_dropout.SetMask(layer_output_dropout_mask_ptr);
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    _attn_layer_norm.SetVar(attn_layer_norm_var);
    _attn_layer_norm.SetMean(attn_layer_norm_mean);
    _layer_norm.SetVar(layer_norm_var);
    _layer_norm.SetMean(layer_norm_mean);
}

template <typename T>
void BertTransformerLayer<T>::SetSeqLength(int seq_len, int bsz)
{
    _seq_length = seq_len;

    _softmax.SetSeqLength(_seq_length);
    _attn_prob_dropout.SetDimension(_seq_length);
    _attn_scores.SetConfig(_seq_length, _seq_length, _hidden_size / _heads);
    _attn_context.SetConfig(_hidden_size / _heads, _seq_length, _seq_length);

    Context::Instance().GenWorkSpace(get_workspace_size<T>(
        bsz, _seq_length, _hidden_size, _intermediate_size, _heads, _training, _gelu_checkpoint));
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}

template <typename T>
int create_transformer_layer(int layer_id,
                             int batch_size,
                             int hidden_dim,
                             int num_heads,
                             int intermediate_size,
                             float attn_dropout_ratio,
                             float hidden_dropout_ratio,
                             int seed,
                             bool pre_or_postLayerNorm,
                             bool test_gemm,
                             bool attn_dropout_checkpoint,
                             bool normalize_invertible,
                             bool gelu_checkpoint,
                             bool stochastic_mode)
{
    Context::Instance().SetSeed(seed);
    Context::Instance().TestGemmFP16(
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        test_gemm, batch_size, init_seq_length, num_heads, hidden_dim / num_heads);
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    auto layer = std::make_shared<BertTransformerLayer<T>>(layer_id,
                                                           batch_size,
                                                           hidden_dim,
                                                           num_heads,
                                                           intermediate_size,
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                                                           init_seq_length,
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                                                           attn_dropout_ratio,
                                                           hidden_dropout_ratio,
                                                           pre_or_postLayerNorm,
                                                           Context::Instance().GetGemmAlgos(),
                                                           attn_dropout_checkpoint,
                                                           normalize_invertible,
                                                           gelu_checkpoint,
                                                           stochastic_mode);

    s_transformer_layers[layer_id] = layer;

    std::string dtype = (std::is_same<T, __half>::value) ? "half" : "float";

    std::cout << "layer #" << layer_id << " is created with date type [" << dtype << "]."
              << std::endl;

    return 0;
}

template <typename T>
std::vector<torch::Tensor> ds_transformer_forward(int layer_id,
                                                  const torch::Tensor& input,
                                                  const torch::Tensor& input_mask,
                                                  const torch::Tensor& attn_qkvw,
                                                  const torch::Tensor& attn_qkvb,
                                                  const torch::Tensor& attn_ow,
                                                  const torch::Tensor& attn_ob,
                                                  const torch::Tensor& attn_nw,
                                                  const torch::Tensor& attn_nb,
                                                  const torch::Tensor& inter_w,
                                                  const torch::Tensor& inter_b,
                                                  const torch::Tensor& output_w,
                                                  const torch::Tensor& output_b,
                                                  const torch::Tensor& norm_w,
                                                  const torch::Tensor& norm_b,
                                                  bool training_mode,
                                                  bool prelayernorm,
                                                  bool attn_dropout_checkpoint,
                                                  bool normalize_invertible,
                                                  bool gelu_checkpoint)
{
    CHECK_INPUT(input);
    CHECK_INPUT(input_mask);
    CHECK_INPUT(attn_qkvw);
    CHECK_INPUT(attn_qkvb);
    CHECK_INPUT(attn_ow);
    CHECK_INPUT(attn_ob);
    CHECK_INPUT(attn_nw);
    CHECK_INPUT(attn_nb);
    CHECK_INPUT(inter_w);
    CHECK_INPUT(inter_b);
    CHECK_INPUT(output_w);
    CHECK_INPUT(output_b);
    CHECK_INPUT(norm_w);
    CHECK_INPUT(norm_b);

    int bsz = input.size(0);

    const T* input_ptr = (const T*)input.data_ptr();
    const T* input_mask_ptr = (const T*)input_mask.data_ptr();
    const T* attn_qkvw_ptr = (const T*)attn_qkvw.data_ptr();
    const T* attn_qkvb_ptr = (const T*)attn_qkvb.data_ptr();
    const T* attn_ow_ptr = (const T*)attn_ow.data_ptr();
    const T* attn_ob_ptr = (const T*)attn_ob.data_ptr();
    const T* attn_nw_ptr = (const T*)attn_nw.data_ptr();
    const T* attn_nb_ptr = (const T*)attn_nb.data_ptr();
    const T* inter_w_ptr = (const T*)inter_w.data_ptr();
    const T* inter_b_ptr = (const T*)inter_b.data_ptr();
    const T* output_w_ptr = (const T*)output_w.data_ptr();
    const T* output_b_ptr = (const T*)output_b.data_ptr();
    const T* norm_w_ptr = (const T*)norm_w.data_ptr();
    const T* norm_b_ptr = (const T*)norm_b.data_ptr();

    auto output = torch::empty_like(input);
    T* out_ptr = (T*)output.data_ptr();

    auto options = torch::TensorOptions()
                       .dtype(input.options().dtype())
                       .layout(torch::kStrided)
                       .device(torch::kCUDA)
                       .requires_grad(true);

    auto uint8_options = torch::TensorOptions()
                             .dtype(torch::kInt8)
                             .layout(torch::kStrided)
                             .device(torch::kCUDA)
                             .requires_grad(false);

    std::shared_ptr<BertTransformerLayer<T>> layer =
        std::static_pointer_cast<BertTransformerLayer<T>>(s_transformer_layers[layer_id]);

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    int seq_len = layer->GetSeqLength();
    if (input.size(1) != seq_len) {
        seq_len = input.size(1);
        layer->SetSeqLength(seq_len, bsz);
    }

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    auto inp_norm = ((prelayernorm || !normalize_invertible) ? torch::empty_like(input) : output);
    auto add_res = (normalize_invertible ? inp_norm : torch::empty_like(input));
    auto attn_o_inp = torch::empty_like(input);
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    auto qkv_tf = torch::empty({(bsz * seq_len), output_w.size(0) * 3}, options);
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    auto attn_prob_dropout_mask =
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        torch::empty({(bsz * layer->GetNumHeads() * seq_len), seq_len}, uint8_options);
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    auto attn_output_dropout_mask =
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        torch::empty({(bsz * seq_len), layer->GetHiddenSize()}, uint8_options);
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    auto layer_output_dropout_mask =
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        torch::empty({(bsz * seq_len), layer->GetHiddenSize()}, uint8_options);

    auto attn_layer_norm_var = torch::empty({(bsz * seq_len)}, options);
    auto attn_layer_norm_mean = torch::empty({(bsz * seq_len)}, options);
    auto layer_norm_var = torch::empty({(bsz * seq_len)}, options);
    auto layer_norm_mean = torch::empty({(bsz * seq_len)}, options);
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    T* inp_norm_ptr = (T*)inp_norm.data_ptr();
    T* add_res_ptr = (T*)add_res.data_ptr();
    T* q_tf_ptr = (T*)qkv_tf.data_ptr();
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    T* k_tf_ptr = q_tf_ptr + (bsz * seq_len * output_w.size(0));  //(T*)k_tf.data_ptr();
    T* v_tf_ptr = k_tf_ptr + (bsz * seq_len * output_w.size(0));  //(T*)v_tf.data_ptr();
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    T* attn_o_inp_ptr = (T*)attn_o_inp.data_ptr();

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    torch::Tensor ff2_inp = torch::empty({(bsz * seq_len), output_w.size(1)}, options);
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    torch::Tensor gelu_inp =
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        (gelu_checkpoint ? ff2_inp : torch::empty({(bsz * seq_len), output_w.size(1)}, options));
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    auto ff1_inp = torch::empty_like(input);
    T* ff2_inp_ptr = (T*)ff2_inp.data_ptr();
    T* gelu_inp_ptr = (T*)gelu_inp.data_ptr();
    T* ff1_inp_ptr = (T*)ff1_inp.data_ptr();

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    torch::Tensor soft_out =
        torch::empty({(bsz * layer->GetNumHeads() * seq_len), seq_len}, options);
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    torch::Tensor ctx_bufB =
        (attn_dropout_checkpoint
             ? soft_out
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             : torch::empty({(bsz * layer->GetNumHeads() * seq_len), seq_len}, options));
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    T* soft_out_ptr = (T*)soft_out.data_ptr();
    T* ctx_bufB_ptr = (T*)ctx_bufB.data_ptr();

    layer->SetTrainingMode(training_mode);
    layer->SetIntermediateBuffers((uint8_t*)attn_prob_dropout_mask.data_ptr(),
                                  (uint8_t*)attn_output_dropout_mask.data_ptr(),
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                                  (uint8_t*)layer_output_dropout_mask.data_ptr(),
                                  (T*)attn_layer_norm_var.data_ptr(),
                                  (T*)attn_layer_norm_mean.data_ptr(),
                                  (T*)layer_norm_var.data_ptr(),
                                  (T*)layer_norm_mean.data_ptr());
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    layer->Forward(bsz,
                   input_ptr,
                   input_mask_ptr,
                   attn_qkvw_ptr,
                   attn_qkvb_ptr,
                   attn_ow_ptr,
                   attn_ob_ptr,
                   attn_nw_ptr,
                   attn_nb_ptr,
                   inter_w_ptr,
                   inter_b_ptr,
                   output_w_ptr,
                   output_b_ptr,
                   norm_w_ptr,
                   norm_b_ptr,
                   out_ptr,
                   inp_norm_ptr,
                   q_tf_ptr,
                   k_tf_ptr,
                   v_tf_ptr,
                   soft_out_ptr,
                   ctx_bufB_ptr,
                   attn_o_inp_ptr,
                   add_res_ptr,
                   ff1_inp_ptr,
                   gelu_inp_ptr,
                   ff2_inp_ptr);

    return {output,
            inp_norm,
            qkv_tf,
            soft_out,
            ctx_bufB,
            attn_o_inp,
            add_res,
            ff1_inp,
            gelu_inp,
            ff2_inp,
            attn_prob_dropout_mask,
            attn_output_dropout_mask,
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            layer_output_dropout_mask,
            attn_layer_norm_var,
            attn_layer_norm_mean,
            layer_norm_var,
            layer_norm_mean};
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}

template <typename T>
std::vector<torch::Tensor> ds_transformer_backward(int layer_id,
                                                   const torch::Tensor& grad_output,
                                                   const torch::Tensor& output,
                                                   const torch::Tensor& inp_norm,
                                                   const torch::Tensor& qkv_tf,
                                                   const torch::Tensor& soft_out,
                                                   const torch::Tensor& ctx_bufB,
                                                   const torch::Tensor& attn_o_inp,
                                                   const torch::Tensor& add_res,
                                                   const torch::Tensor& ff1_inp,
                                                   const torch::Tensor& gelu_inp,
                                                   const torch::Tensor& ff2_inp,
                                                   const torch::Tensor& attn_prob_dropout_mask,
                                                   const torch::Tensor& attn_output_dropout_mask,
                                                   const torch::Tensor& layer_output_dropout_mask,
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                                                   const torch::Tensor& attn_layer_norm_var,
                                                   const torch::Tensor& attn_layer_norm_mean,
                                                   const torch::Tensor& layer_norm_var,
                                                   const torch::Tensor& layer_norm_mean,
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                                                   const torch::Tensor& input,
                                                   const torch::Tensor& input_mask,
                                                   const torch::Tensor& attn_qkvw,
                                                   const torch::Tensor& attn_qkvb,
                                                   const torch::Tensor& attn_ow,
                                                   const torch::Tensor& attn_ob,
                                                   const torch::Tensor& attn_nw,
                                                   const torch::Tensor& attn_nb,
                                                   const torch::Tensor& inter_w,
                                                   const torch::Tensor& inter_b,
                                                   const torch::Tensor& output_w,
                                                   const torch::Tensor& output_b,
                                                   const torch::Tensor& norm_w,
                                                   const torch::Tensor& norm_b)
{
    auto g_output = grad_output.contiguous();
    CHECK_INPUT(g_output);
    CHECK_INPUT(output);
    CHECK_INPUT(inp_norm);
    CHECK_INPUT(qkv_tf);
    CHECK_INPUT(add_res);
    CHECK_INPUT(soft_out);
    CHECK_INPUT(ctx_bufB);
    CHECK_INPUT(attn_o_inp);
    CHECK_INPUT(ff1_inp);
    CHECK_INPUT(gelu_inp);
    CHECK_INPUT(ff2_inp);
    CHECK_INPUT(input);
    CHECK_INPUT(input_mask);
    CHECK_INPUT(attn_qkvw);
    CHECK_INPUT(attn_qkvb);
    CHECK_INPUT(attn_ow);
    CHECK_INPUT(attn_ob);
    CHECK_INPUT(attn_nw);
    CHECK_INPUT(attn_nb);
    CHECK_INPUT(inter_w);
    CHECK_INPUT(inter_b);
    CHECK_INPUT(output_w);
    CHECK_INPUT(output_b);
    CHECK_INPUT(norm_w);
    CHECK_INPUT(norm_b);

    int bsz = g_output.size(0);
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    std::shared_ptr<BertTransformerLayer<T>> layer =
        std::static_pointer_cast<BertTransformerLayer<T>>(s_transformer_layers[layer_id]);

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    int seq_len = layer->GetSeqLength();
    if (g_output.size(1) != seq_len) {
        seq_len = g_output.size(1);
        layer->SetSeqLength(seq_len, bsz);
    }

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    auto grad_input = torch::empty_like(input);
    auto grad_attn_qkvw = torch::empty_like(attn_qkvw);
    auto grad_attn_qkvb = torch::empty_like(attn_qkvb);
    auto grad_attn_ow = torch::empty_like(attn_ow);
    auto grad_attn_ob = torch::empty_like(attn_ob);
    auto grad_attn_nw = torch::empty_like(attn_nw);
    auto grad_attn_nb = torch::empty_like(attn_nb);
    auto grad_inter_w = torch::empty_like(inter_w);
    auto grad_inter_b = torch::empty_like(inter_b);
    auto grad_output_w = torch::empty_like(output_w);
    auto grad_output_b = torch::empty_like(output_b);
    auto grad_norm_w = torch::empty_like(norm_w);
    auto grad_norm_b = torch::empty_like(norm_b);

    // inputs.
    const T* grad_output_ptr = (const T*)g_output.data_ptr();
    const T* input_ptr = (const T*)input.data_ptr();
    const T* output_ptr = (const T*)output.data_ptr();
    const T* inp_norm_ptr = (const T*)inp_norm.data_ptr();
    const T* q_tf_ptr = (const T*)qkv_tf.data_ptr();
    const T* add_res_ptr = (const T*)add_res.data_ptr();
    const T* k_tf_ptr =
        q_tf_ptr + (bsz * layer->GetSeqLength() * output_w.size(0));  //(const T*)k_tf.data_ptr();
    const T* v_tf_ptr =
        k_tf_ptr + (bsz * layer->GetSeqLength() * output_w.size(0));  //(const T*)v_tf.data_ptr();
    const T* ff1_inp_ptr = (const T*)ff1_inp.data_ptr();
    const T* gelu_inp_ptr = (const T*)gelu_inp.data_ptr();
    const T* ff2_inp_ptr = (const T*)ff2_inp.data_ptr();
    const T* ctx_bufB_ptr = (const T*)ctx_bufB.data_ptr();
    const T* soft_out_ptr = (const T*)soft_out.data_ptr();
    const T* attn_o_inp_ptr = (const T*)attn_o_inp.data_ptr();
    const T* input_mask_ptr = (const T*)input_mask.data_ptr();
    const T* attn_qkvw_ptr = (const T*)attn_qkvw.data_ptr();
    const T* attn_ow_ptr = (const T*)attn_ow.data_ptr();
    const T* attn_nw_ptr = (const T*)attn_nw.data_ptr();
    const T* attn_nb_ptr = (const T*)attn_nb.data_ptr();
    const T* inter_w_ptr = (const T*)inter_w.data_ptr();
    const T* inter_b_ptr = (const T*)inter_b.data_ptr();
    const T* output_w_ptr = (const T*)output_w.data_ptr();
    const T* norm_w_ptr = (const T*)norm_w.data_ptr();
    const T* norm_b_ptr = (const T*)norm_b.data_ptr();

    // outputs.
    T* grad_input_ptr = (T*)grad_input.data_ptr();
    T* grad_attn_qkvw_ptr = (T*)grad_attn_qkvw.data_ptr();
    T* grad_attn_qkvb_ptr = (T*)grad_attn_qkvb.data_ptr();
    T* grad_attn_ow_ptr = (T*)grad_attn_ow.data_ptr();
    T* grad_attn_ob_ptr = (T*)grad_attn_ob.data_ptr();
    T* grad_attn_nw_ptr = (T*)grad_attn_nw.data_ptr();
    T* grad_attn_nb_ptr = (T*)grad_attn_nb.data_ptr();
    T* grad_inter_w_ptr = (T*)grad_inter_w.data_ptr();
    T* grad_inter_b_ptr = (T*)grad_inter_b.data_ptr();
    T* grad_output_w_ptr = (T*)grad_output_w.data_ptr();
    T* grad_output_b_ptr = (T*)grad_output_b.data_ptr();
    T* grad_norm_w_ptr = (T*)grad_norm_w.data_ptr();
    T* grad_norm_b_ptr = (T*)grad_norm_b.data_ptr();

    layer->SetIntermediateBuffers((uint8_t*)attn_prob_dropout_mask.data_ptr(),
                                  (uint8_t*)attn_output_dropout_mask.data_ptr(),
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                                  (uint8_t*)layer_output_dropout_mask.data_ptr(),
                                  (T*)attn_layer_norm_var.data_ptr(),
                                  (T*)attn_layer_norm_mean.data_ptr(),
                                  (T*)layer_norm_var.data_ptr(),
                                  (T*)layer_norm_mean.data_ptr());
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    layer->Backward(bsz,
                    grad_output_ptr,
                    input_ptr,
                    output_ptr,
                    inp_norm_ptr,
                    q_tf_ptr,
                    k_tf_ptr,
                    v_tf_ptr,
                    soft_out_ptr,
                    ctx_bufB_ptr,
                    attn_o_inp_ptr,
                    add_res_ptr,
                    ff1_inp_ptr,
                    gelu_inp_ptr,
                    ff2_inp_ptr,
                    input_mask_ptr,
                    attn_qkvw_ptr,
                    attn_ow_ptr,
                    attn_nw_ptr,
                    attn_nb_ptr,
                    inter_w_ptr,
                    inter_b_ptr,
                    output_w_ptr,
                    norm_w_ptr,
                    norm_b_ptr,

                    grad_input_ptr,
                    grad_attn_qkvw_ptr,
                    grad_attn_qkvb_ptr,
                    grad_attn_ow_ptr,
                    grad_attn_ob_ptr,
                    grad_attn_nw_ptr,
                    grad_attn_nb_ptr,
                    grad_inter_w_ptr,
                    grad_inter_b_ptr,
                    grad_output_w_ptr,
                    grad_output_b_ptr,
                    grad_norm_w_ptr,
                    grad_norm_b_ptr);

    return {grad_input,
            grad_attn_qkvw,
            grad_attn_qkvb,
            grad_attn_ow,
            grad_attn_ob,
            grad_attn_nw,
            grad_attn_nb,
            grad_inter_w,
            grad_inter_b,
            grad_output_w,
            grad_output_b,
            grad_norm_w,
            grad_norm_b};
}

PYBIND11_MODULE(TORCH_EXTENSION_NAME, m)
{
    m.def("forward_fp32",
          &ds_transformer_forward<float>,
          "DeepSpeed Transformer forward with fp32 (CUDA)");
    m.def("forward_fp16",
          &ds_transformer_forward<__half>,
          "DeepSpeed Transformer forward with fp16 (CUDA)");
    m.def("backward_fp32",
          &ds_transformer_backward<float>,
          "DeepSpeed Transformer backward with fp32 (CUDA)");
    m.def("backward_fp16",
          &ds_transformer_backward<__half>,
          "DeepSpeed Transformer backward with fp16 (CUDA)");
    m.def("create_transformer_layer_fp32",
          &create_transformer_layer<float>,
          "Create DeepSpeed Transformer Transformer Layer with fp32 (CUDA)");
    m.def("create_transformer_layer_fp16",
          &create_transformer_layer<__half>,
          "Create DeepSpeed Transformer Transformer Layer with fp16 (CUDA)");
}