mlu_baseop.cc 223.9 KB
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/* Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.

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

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

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

#include "paddle/fluid/operators/mlu/mlu_baseop.h"
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#include "paddle/fluid/framework/convert_utils.h"
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#include "paddle/fluid/framework/data_type.h"
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#include "paddle/fluid/framework/framework.pb.h"
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#include "paddle/fluid/framework/operator.h"
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namespace paddle {
namespace operators {

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cnnlCastDataType_t GetCastDataType(const VT::Type& src_type,
                                   const VT::Type& dst_type) {
  cnnlCastDataType_t cast_type = CNNL_CAST_FLOAT_TO_HALF;
  for (auto it = MLU_SUPPORTED_CAST_TYPE.begin();
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       it != MLU_SUPPORTED_CAST_TYPE.end();
       ++it) {
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    if (it->first.first == src_type && it->first.second == dst_type) {
      cast_type = it->second;
      break;
    }
  }
  return cast_type;
}

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cnnlCastDataType_t GetCastDataType(const DataType& src_type,
                                   const DataType& dst_type) {
  return GetCastDataType(framework::TransToProtoVarType(src_type),
                         framework::TransToProtoVarType(dst_type));
}

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bool MLUSupportsCast(const VT::Type& src_type, const VT::Type& dst_type) {
  for (auto it = MLU_SUPPORTED_CAST_TYPE.begin();
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       it != MLU_SUPPORTED_CAST_TYPE.end();
       ++it) {
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    if (it->first.first == src_type && it->first.second == dst_type) {
      return true;
    }
  }
  return false;
}

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const std::shared_ptr<MLUCnnlRandomGeneratorDesc>& GetMLURandomGenerator(
    const ExecutionContext& ctx, const int64_t device_id, const int seed) {
  static int64_t num_mlu_devices = -1;
  static std::once_flag num_devices_init_flag;
  static std::deque<std::once_flag> mlu_device_flags;
  static std::vector<std::shared_ptr<MLUCnnlRandomGeneratorDesc>>
      mlu_rand_generators;

  std::call_once(num_devices_init_flag, []() {
    num_mlu_devices = paddle::platform::GetMLUDeviceCount();
    mlu_device_flags.resize(num_mlu_devices);
    mlu_rand_generators.resize(num_mlu_devices);
  });
  if (device_id < 0) {
    PADDLE_THROW(platform::errors::InvalidArgument(
        "mlu device id shoule be greater than 0"));
  }

  std::call_once(mlu_device_flags[device_id], [&]() {
    mlu_rand_generators[device_id].reset(
        new MLUCnnlRandomGeneratorDesc(ctx, seed));
    VLOG(4) << "device_id: " << device_id << ", initial seed: " << seed;
  });
  return mlu_rand_generators[device_id];
}

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class MLUCnnlTensorDescPool {
 public:
  cnnlTensorDescriptor_t Pop() {
    cnnlTensorDescriptor_t raw_desc;
    if (q_.try_dequeue(raw_desc)) {
      return raw_desc;
    } else {
      cnnlCreateTensorDescriptor(&raw_desc);
      return raw_desc;
    }
  }

  void Recycle(cnnlTensorDescriptor_t desc) {
    cnnlResetTensorDescriptor(desc);
    q_.enqueue(desc);
  }

  ~MLUCnnlTensorDescPool() {
    auto size = q_.size_approx();
    if (size > 0) {
      std::vector<cnnlTensorDescriptor_t> vec(size);
      q_.try_dequeue_bulk(vec.data(), size);
      for (auto desc : vec) {
        cnnlDestroyTensorDescriptor(desc);
      }
    }
  }

 private:
  moodycamel::ConcurrentQueue<cnnlTensorDescriptor_t> q_;
};

static MLUCnnlTensorDescPool g_cnnl_tensor_desc_pool;

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MLUCnnlTensorDesc& MLUCnnlTensorDesc::operator=(MLUCnnlTensorDesc&& rhs) {
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  if (raw_tensor_desc) {
    g_cnnl_tensor_desc_pool.Recycle(raw_tensor_desc);
  }
  raw_tensor_desc = rhs.raw_tensor_desc;
  rhs.raw_tensor_desc = nullptr;
  return *this;
}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int dim_sizes[],
                                     const cnnlDataType_t tensor_dtype) {
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(
      raw_tensor_desc, CNNL_LAYOUT_ARRAY, tensor_dtype, tensor_dim, dim_sizes));
}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int dim_sizes[],
                                     const cnnlDataType_t tensor_dtype,
                                     const cnnlTensorLayout_t layout) {
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(
      raw_tensor_desc, layout, tensor_dtype, tensor_dim, dim_sizes));
}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int dim_sizes[],
                                     const cnnlDataType_t tensor_dtype,
                                     int position)
    : MLUCnnlTensorDesc(tensor_dim, dim_sizes, tensor_dtype) {
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorPosition(raw_tensor_desc, position));
}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int64_t dim_sizes[],
                                     const cnnlDataType_t tensor_dtype) {
  std::vector<int> dim_sizes_int32(tensor_dim);
  std::vector<int64_t>::const_iterator int64_cbegin(dim_sizes);
  std::vector<int64_t>::const_iterator int64_cend(dim_sizes + tensor_dim);
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  std::transform(int64_cbegin,
                 int64_cend,
                 dim_sizes_int32.begin(),
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                 &CheckedNarrowing<int64_t, int>);
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(raw_tensor_desc,
                                                     CNNL_LAYOUT_ARRAY,
                                                     tensor_dtype,
                                                     tensor_dim,
                                                     dim_sizes_int32.data()));
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}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int64_t dim_sizes[],
                                     const cnnlDataType_t tensor_dtype,
                                     const cnnlTensorLayout_t layout) {
  std::vector<int> dim_sizes_int32(tensor_dim);
  std::vector<int64_t>::const_iterator int64_cbegin(dim_sizes);
  std::vector<int64_t>::const_iterator int64_cend(dim_sizes + tensor_dim);
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  std::transform(int64_cbegin,
                 int64_cend,
                 dim_sizes_int32.begin(),
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                 &CheckedNarrowing<int64_t, int>);
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(raw_tensor_desc,
                                                     layout,
                                                     tensor_dtype,
                                                     tensor_dim,
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                                                     dim_sizes_int32.data()));
}

MLUCnnlTensorDesc::MLUCnnlTensorDesc(const int tensor_dim,
                                     const int64_t dim_sizes[],
                                     const cnnlDataType_t tensor_dtype,
                                     int position) {
  std::vector<int> dim_sizes_int32(tensor_dim);
  std::vector<int64_t>::const_iterator int64_cbegin(dim_sizes);
  std::vector<int64_t>::const_iterator int64_cend(dim_sizes + tensor_dim);
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  std::transform(int64_cbegin,
                 int64_cend,
                 dim_sizes_int32.begin(),
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                 &CheckedNarrowing<int64_t, int>);
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(raw_tensor_desc,
                                                     CNNL_LAYOUT_ARRAY,
                                                     tensor_dtype,
                                                     tensor_dim,
                                                     dim_sizes_int32.data()));
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorPosition(raw_tensor_desc, position));
}

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MLUCnnlTensorDesc::MLUCnnlTensorDesc(const Tensor& tensor,
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                                     const cnnlTensorLayout_t layout,
                                     const cnnlDataType_t tensor_dtype) {
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  auto dims = phi::vectorize<int>(tensor.dims());
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  int tensor_dim = dims.size();
  raw_tensor_desc = g_cnnl_tensor_desc_pool.Pop();
  if (tensor_dim == 0) {
    int scalar_dims[1] = {1};
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptor(
        raw_tensor_desc, layout, tensor_dtype, 1, scalar_dims));
  } else {
    std::vector<int> tensor_dim_sizes_int(dims.begin(), dims.end());
    PADDLE_ENFORCE_MLU_SUCCESS(
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        cnnlSetTensorDescriptor(raw_tensor_desc,
                                layout,
                                tensor_dtype,
                                tensor_dim,
                                tensor_dim_sizes_int.data()));
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  }
}

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MLUCnnlTensorDesc::MLUCnnlTensorDesc(const Tensor& tensor)
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    : MLUCnnlTensorDesc(
          tensor, CNNL_LAYOUT_ARRAY, ToCnnlDataType(tensor.dtype())) {}
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MLUCnnlTensorDesc::MLUCnnlTensorDesc(const Tensor& tensor,
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                                     cnnlTensorLayout_t layout,
                                     const cnnlDataType_t tensor_dtype,
                                     int position)
    : MLUCnnlTensorDesc(tensor, layout, tensor_dtype) {
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorPosition(raw_tensor_desc, position));
}

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MLUCnnlTensorDesc::MLUCnnlTensorDesc(const Tensor& tensor,
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                                     cnnlTensorLayout_t layout,
                                     const cnnlDataType_t tensor_dtype,
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                                     int position,
                                     float scale)
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    : MLUCnnlTensorDesc(tensor, layout, tensor_dtype) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptorPositionAndScale(
      raw_tensor_desc, position, scale));
}

MLUCnnlTensorDesc::~MLUCnnlTensorDesc() {
  if (raw_tensor_desc) {
    g_cnnl_tensor_desc_pool.Recycle(raw_tensor_desc);
  }
}

MLUCnnlActivationDesc::MLUCnnlActivationDesc(
    const cnnlActivationMode_t act_mode, const float ceof) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateActivationDescriptor(&active_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetActivationDescriptor_v5(active_desc_,
                                     act_mode,
                                     CNNL_ACTIVATION_HIGH_PRECISION,
                                     CNNL_NOT_PROPAGATE_NAN,
                                     ceof,
                                     1.0f /*sliced_dim*/,
                                     1.67326319217681884765625 /*selu_alpha*/,
                                     1.05070102214813232421875 /*selu_lambda*/,
                                     false /*is_elu_mode*/));
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}

MLUCnnlActivationDesc::MLUCnnlActivationDesc(
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    const cnnlActivationMode_t act_mode,
    const float ceof,
    const float sliced_dim,
    const float selu_alpha,
    const float selu_lambda) {
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateActivationDescriptor(&active_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(
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      cnnlSetActivationDescriptor_v5(active_desc_,
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                                     act_mode,
                                     CNNL_ACTIVATION_HIGH_PRECISION,
                                     CNNL_NOT_PROPAGATE_NAN,
                                     ceof,
                                     sliced_dim,
                                     selu_alpha,
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                                     selu_lambda,
                                     false /*is_elu_mode*/));
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}

const cnnlActivationDescriptor_t MLUCnnlActivationDesc::get() const {
  return active_desc_;
}

MLUCnnlActivationDesc::~MLUCnnlActivationDesc() {
  if (active_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyActivationDescriptor(active_desc_));
  }
}

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MLUCnnlPoolingDesc::MLUCnnlPoolingDesc(
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    const cnnlPoolingMode_t mode,
    const cnnlNanPropagation_t maxpooling_nan_opt,
    int window_rows,
    int window_cols,
    int64_t pad_up,
    int64_t pad_down,
    int64_t pad_left,
    int64_t pad_right,
    int row_stride,
    int col_stride,
    int row_dilation,
    int col_dilation,
    bool ceil_mode) {
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreatePoolingDescriptor(&pooling_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetPooling2dDescriptor_v2(pooling_desc_,
                                                           mode,
                                                           maxpooling_nan_opt,
                                                           window_rows,
                                                           window_cols,
                                                           pad_up,
                                                           pad_down,
                                                           pad_left,
                                                           pad_right,
                                                           row_stride,
                                                           col_stride,
                                                           row_dilation,
                                                           col_dilation,
                                                           ceil_mode));
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}

MLUCnnlPoolingDesc::MLUCnnlPoolingDesc(
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    const cnnlPoolingMode_t mode,
    const cnnlNanPropagation_t maxpooling_nan_opt,
    const int tensor_rank,
    const std::vector<int>& window,
    const std::vector<int>& padding,
    const std::vector<int>& stride) {
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreatePoolingDescriptor(&pooling_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetPoolingNdDescriptor(pooling_desc_,
                                                        mode,
                                                        maxpooling_nan_opt,
                                                        tensor_rank,
                                                        window.data(),
                                                        padding.data(),
                                                        stride.data()));
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}

const cnnlPoolingDescriptor_t MLUCnnlPoolingDesc::get() const {
  return pooling_desc_;
}

MLUCnnlPoolingDesc::~MLUCnnlPoolingDesc() {
  if (pooling_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyPoolingDescriptor(pooling_desc_));
  }
}

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MLUCnnlRandomGeneratorDesc::MLUCnnlRandomGeneratorDesc(
    const ExecutionContext& ctx, const int seed) {
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRandCreateGenerator(&mlu_generator, CNNL_RAND_RNG_MTGP32));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRandSetPseudoRandomGeneratorSeed(mlu_generator, seed));
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRandGetMTGP32StateSize(mlu_generator, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  mlu_state = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* mlu_state_ptr = mlu_state.mutable_data(ctx.GetPlace());

  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRandMakeMTGP32KernelState(
      handle, mlu_state_ptr, nullptr, nullptr, seed));
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}

const cnnlRandGenerator_t MLUCnnlRandomGeneratorDesc::get() const {
  return mlu_generator;
}

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Tensor& MLUCnnlRandomGeneratorDesc::get_state() { return mlu_state; }

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MLUCnnlRandomGeneratorDesc::~MLUCnnlRandomGeneratorDesc() {
  if (mlu_generator) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlRandDestroyGenerator(mlu_generator));
  }
}

MLUCnnlNMSDesc::MLUCnnlNMSDesc(const cnnlNmsOutputMode_t mode,
                               const float iou_threshold,
                               const int max_output_size,
                               const float confidence_threshold,
                               const int input_layout) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateNmsDescriptor(&nms_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetNmsDescriptor_v2(nms_desc_,
                                                     mode,
                                                     iou_threshold,
                                                     max_output_size,
                                                     confidence_threshold,
                                                     input_layout));
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}

const cnnlNmsDescriptor_t MLUCnnlNMSDesc::get() const { return nms_desc_; }

MLUCnnlNMSDesc::~MLUCnnlNMSDesc() {
  if (nms_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyNmsDescriptor(nms_desc_));
  }
}

MLUCnnlReduceDesc::MLUCnnlReduceDesc(const std::vector<int>& axis_vec,
                                     const cnnlReduceOp_t reduce_op,
                                     const cnnlDataType_t data_type,
                                     const cnnlNanPropagation_t nan_propagation,
                                     const cnnlReduceIndices_t reduce_indices,
                                     const cnnlIndicesType_t indices_type) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateReduceDescriptor(&reduction_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetReduceDescriptor(reduction_desc_,
                              const_cast<int*>(axis_vec.data()),
                              axis_vec.size(),
                              reduce_op,
                              data_type,
                              nan_propagation,
                              reduce_indices,
                              indices_type));
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}

const cnnlReduceDescriptor_t MLUCnnlReduceDesc::get() const {
  return reduction_desc_;
}

MLUCnnlReduceDesc::~MLUCnnlReduceDesc() {
  if (reduction_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyReduceDescriptor(reduction_desc_));
  }
}

MLUCnnlOpTensorDesc::MLUCnnlOpTensorDesc(
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    cnnlOpTensorDesc_t op_tensor_op,
    cnnlDataType_t op_tensor_comp_type,
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    cnnlNanPropagation_t op_tensor_nan_opt) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateOpTensorDescriptor(&op_tensor_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetOpTensorDescriptor(
      op_tensor_desc_, op_tensor_op, op_tensor_comp_type, op_tensor_nan_opt));
}

const cnnlOpTensorDescriptor_t MLUCnnlOpTensorDesc::get() const {
  return op_tensor_desc_;
}

MLUCnnlOpTensorDesc::~MLUCnnlOpTensorDesc() {
  if (op_tensor_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyOpTensorDescriptor(op_tensor_desc_));
  }
}

MLUCnnlConvolutionDesc::MLUCnnlConvolutionDesc(
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    const int dims,
    const int pad[],
    const int stride[],
    const int dilation[],
    const int group_count,
    const cnnlDataType_t tensor_dtype) {
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateConvolutionDescriptor(&conv_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetConvolutionDescriptor(
      conv_desc_, dims, pad, stride, dilation, group_count, tensor_dtype));
}

MLUCnnlConvolutionDesc::MLUCnnlConvolutionDesc(
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    const int dims,
    const int64_t pad[],
    const int64_t stride[],
    const int64_t dilation[],
    const int group_count,
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    const cnnlDataType_t tensor_dtype) {
  const int spatial_dims = dims - 2;
  const int pad_dims = spatial_dims * 2;
  std::vector<int> pad_int32(pad_dims);
  std::vector<int> stride_int32(spatial_dims);
  std::vector<int> dilation_int32(spatial_dims);
  std::vector<int64_t>::const_iterator int64_pad_cbegin(pad);
  std::vector<int64_t>::const_iterator int64_pad_cend(pad + pad_dims);
  std::vector<int64_t>::const_iterator int64_stride_cbegin(stride);
  std::vector<int64_t>::const_iterator int64_stride_cend(stride + spatial_dims);
  std::vector<int64_t>::const_iterator int64_dilation_cbegin(dilation);
  std::vector<int64_t>::const_iterator int64_dilation_cend(dilation +
                                                           spatial_dims);
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  std::transform(int64_pad_cbegin,
                 int64_pad_cend,
                 pad_int32.begin(),
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                 &CheckedNarrowing<int64_t, int>);
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  std::transform(int64_stride_cbegin,
                 int64_stride_cend,
                 stride_int32.begin(),
                 &CheckedNarrowing<int64_t, int>);
  std::transform(int64_dilation_cbegin,
                 int64_dilation_cend,
                 dilation_int32.begin(),
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                 &CheckedNarrowing<int64_t, int>);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateConvolutionDescriptor(&conv_desc_));
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetConvolutionDescriptor(conv_desc_,
                                                          dims,
                                                          pad_int32.data(),
                                                          stride_int32.data(),
                                                          dilation_int32.data(),
                                                          group_count,
                                                          tensor_dtype));
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}

const cnnlConvolutionDescriptor_t MLUCnnlConvolutionDesc::get() const {
  return conv_desc_;
}

MLUCnnlConvolutionDesc::~MLUCnnlConvolutionDesc() {
  if (conv_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyConvolutionDescriptor(conv_desc_));
  }
}

MLUCnnlBatchSpaceDesc::MLUCnnlBatchSpaceDesc(uint32_t block_shape[],
                                             uint32_t paddings[],
                                             const uint32_t block_shape_size,
                                             const uint32_t paddings_size) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateSpaceBatchNdDescriptor(&op_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetSpaceBatchNdDescriptor(
      op_desc_, block_shape, block_shape_size, paddings, paddings_size));
}

void MLUCnnlBatchSpaceDesc::getSpace2batchNdextraInputSize(
    const ExecutionContext& ctx, const cnnlTensorDescriptor_t input_desc) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetSpace2batchNdExtraInputSize(
      handle, input_desc, op_desc_, &extra_input_size_));
}

void MLUCnnlBatchSpaceDesc::getBatch2spaceNdextraInputSize(
    const ExecutionContext& ctx, const cnnlTensorDescriptor_t input_desc) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBatch2spaceNdExtraInputSize(
      handle, input_desc, op_desc_, &extra_input_size_));
}

void MLUCnnlBatchSpaceDesc::initSpace2batchNdExtraInput(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
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    void* extra_host_input) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlInitSpace2batchNdExtraInput(
      handle, input_desc, op_desc_, extra_host_input));
}

void MLUCnnlBatchSpaceDesc::initBatch2spaceNdExtraInput(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
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    void* extra_host_input) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlInitBatch2spaceNdExtraInput(
      handle, input_desc, op_desc_, extra_host_input));
}

const cnnlSpaceBatchNdDescriptor_t MLUCnnlBatchSpaceDesc::get() const {
  return op_desc_;
}

size_t MLUCnnlBatchSpaceDesc::getExtraInputSize() const {
  return extra_input_size_;
}

MLUCnnlBatchSpaceDesc::~MLUCnnlBatchSpaceDesc() {
  if (op_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroySpaceBatchNdDescriptor(op_desc_));
  }
}

MLUCnnlTrigonDesc::MLUCnnlTrigonDesc(
    const cnnlTrigonFunctionMode_t trigon_function_mode) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateTrigonDescriptor(&trigon_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTrigonDescriptor(trigon_desc_, trigon_function_mode));
}

const cnnlTrigonDescriptor_t MLUCnnlTrigonDesc::get() const {
  return trigon_desc_;
}

MLUCnnlTrigonDesc::~MLUCnnlTrigonDesc() {
  if (trigon_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyTrigonDescriptor(trigon_desc_));
  }
}

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MLUCnnlDCNDesc::MLUCnnlDCNDesc(int dimNb,
                               const int* pad,
                               const int* stride,
                               const int* dilation,
                               int deformable_group,
                               int conv_group,
                               int im2col_step) {
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateDCNDescriptor(&dcn_desc_));
  const cnnlDataType_t compute_type = CNNL_DTYPE_FLOAT;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetDCNDescriptor(dcn_desc_,
                                                  dimNb,
                                                  pad,
                                                  stride,
                                                  dilation,
                                                  deformable_group,
                                                  conv_group,
                                                  im2col_step,
                                                  compute_type));
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}

const cnnlDCNDescriptor_t MLUCnnlDCNDesc::get() const { return dcn_desc_; }

MLUCnnlDCNDesc::~MLUCnnlDCNDesc() {
  if (dcn_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyDCNDescriptor(dcn_desc_));
  }
}

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MLUCnnlGridSampleDesc::MLUCnnlGridSampleDesc(
    const std::string& interp_mode_str,
    const std::string& padding_mode_str,
    bool align_corners) {
  cnnlInterpMode_t interp_mode = CNNL_INTERP_BILINEAR;
  cnnlGridSamplePaddingMode_t padding_mode = CNNL_GRIDSAMPLE_PADDING_ZEROS;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCreateGridSampleDescriptor(&grid_sample_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetGridSampleDescriptor(
      grid_sample_desc_, interp_mode, padding_mode, align_corners));
}

const cnnlGridSampleDescriptor_t MLUCnnlGridSampleDesc::get() const {
  return grid_sample_desc_;
}

MLUCnnlGridSampleDesc::~MLUCnnlGridSampleDesc() {
  if (grid_sample_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(
        cnnlDestroyGridSampleDescriptor(grid_sample_desc_));
  }
}

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MLUSeqDataDesc::MLUSeqDataDesc(cnnlSeqDataLayout_t layout,
                               cnnlDataType_t dtype,
                               int dimNb,
                               const int dimSize[],
                               int seqLengthArraySize,
                               const int seqLengthArray[],
                               void* paddingFill) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateSeqDataDescriptor(&seq_data_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetSeqDataDescriptor(seq_data_desc_,
                                                      layout,
                                                      dtype,
                                                      dimNb,
                                                      dimSize,
                                                      seqLengthArraySize,
                                                      seqLengthArray,
                                                      paddingFill));
}

const cnnlSeqDataDescriptor_t MLUSeqDataDesc::get() const {
  return seq_data_desc_;
}

MLUSeqDataDesc::~MLUSeqDataDesc() {
  if (seq_data_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroySeqDataDescriptor(seq_data_desc_));
  }
}

MLURNNDesc::MLURNNDesc(const int hidden_size,
                       const int num_layers,
                       const cnnlRNNInputMode_t input_mode,
                       const cnnlDirectionMode_t direction,
                       const cnnlRNNMode_t rnn_mode) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateRNNDescriptor(&rnn_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetRNNDescriptor(
      rnn_desc_, hidden_size, num_layers, input_mode, direction, rnn_mode));
}

MLURNNDesc::MLURNNDesc(cnnlRNNMode_t cell_mode,
                       cnnlRNNBiasMode_t bias_mode,
                       cnnlDirectionMode_t direction,
                       cnnlRNNInputMode_t input_mode,
                       cnnlDataType_t data_type,
                       cnnlDataType_t math_prec,
                       int input_size,
                       int hidden_size,
                       int proj_size,
                       int layer_num,
                       void* dropout_desc,
                       cnnlRNNPaddingMode_t padding_mode) {
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateRNNDescriptor(&rnn_desc_));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetRNNDescriptor_v2(rnn_desc_,
                                                     cell_mode,
                                                     bias_mode,
                                                     direction,
                                                     input_mode,
                                                     data_type,
                                                     math_prec,
                                                     input_size,
                                                     hidden_size,
                                                     proj_size,
                                                     layer_num,
                                                     dropout_desc,
                                                     padding_mode));
}

const cnnlRNNDescriptor_t MLURNNDesc::get() const { return rnn_desc_; }

MLURNNDesc::~MLURNNDesc() {
  if (rnn_desc_) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyRNNDescriptor(rnn_desc_));
  }
}

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/* static */ void MLUCnnl::Active(const ExecutionContext& ctx,
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                                  cnnlActivationDescriptor_t active_desc,
                                  const cnnlTensorDescriptor_t input_desc,
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                                  const void* input,
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                                  const cnnlTensorDescriptor_t output_desc,
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                                  void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlActivationForward(
      handle, active_desc, NULL, input_desc, input, NULL, output_desc, output));
}

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/* static */ void MLUCnnl::ActiveGrad(const ExecutionContext& ctx,
                                      cnnlActivationDescriptor_t active_desc,
                                      const void* alpha,
                                      const void* beta,
                                      const cnnlTensorDescriptor_t y_desc,
                                      const void* y,
                                      const cnnlTensorDescriptor_t diff_y_desc,
                                      const void* diff_y,
                                      const cnnlTensorDescriptor_t x_desc,
                                      const void* x,
                                      const cnnlTensorDescriptor_t diff_x_desc,
                                      void* diff_x) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlActivationBackward(handle,
                                                    active_desc,
                                                    alpha,
                                                    y_desc,
                                                    y,
                                                    diff_y_desc,
                                                    diff_y,
                                                    x_desc,
                                                    x,
                                                    beta,
                                                    diff_x_desc,
                                                    diff_x));
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}

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/* static */ void MLUCnnl::Concat(const ExecutionContext& ctx,
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                                  const int pack_num,
                                  const int axis,
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                                  const cnnlTensorDescriptor_t inputs_desc[],
                                  const void* const inputs[],
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConcatWorkspaceSize(handle, pack_num, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlConcat(handle,
                                        pack_num,
                                        axis,
                                        inputs_desc,
                                        inputs,
                                        workspace_ptr,
                                        workspace_size,
                                        output_desc,
                                        output));
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}

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/* static */ void MLUCnnl::Concat(const MLUDeviceContext& dev_ctx,
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                                  const int pack_num,
                                  const int axis,
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                                  const cnnlTensorDescriptor_t inputs_desc[],
                                  const void* const inputs[],
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
  cnnlHandle_t handle = dev_ctx.cnnl_handle();

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConcatWorkspaceSize(handle, pack_num, &workspace_size));

  Tensor workspace(paddle::experimental::DataType::INT8);
  workspace.Resize(framework::DDim({static_cast<int64_t>(workspace_size)}));
  void* workspace_ptr = workspace.mutable_data(dev_ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlConcat(handle,
                                        pack_num,
                                        axis,
                                        inputs_desc,
                                        inputs,
                                        workspace_ptr,
                                        workspace_size,
                                        output_desc,
                                        output));
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}

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/* static */ void MLUCnnl::Div(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t in0_desc,
                               const void* in0,
                               const cnnlTensorDescriptor_t in1_desc,
                               const void* in1,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetDivWorkspaceSize(
      handle, in0_desc, in1_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDiv_v2(handle,
                                        prefer,
                                        in0_desc,
                                        in0,
                                        in1_desc,
                                        in1,
                                        workspace_ptr,
                                        workspace_size,
                                        output_desc,
                                        output));
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}

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/* static */ void MLUCnnl::Fill(const ExecutionContext& ctx,
                                const cnnlPointerMode_t pointer_mode,
                                const void* value_ptr,
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                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlFill_v3(handle, pointer_mode, value_ptr, output_desc, output));
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}

/* static */ void MLUCnnl::QuantifyOffline(
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    const ExecutionContext& ctx,
    cnnlQuantizeMode_t mode,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlQuantizeV1(handle, mode, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::LRN(const ExecutionContext& ctx,
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                               const int local_size,
                               const double alpha,
                               const double beta,
                               const double k,
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                               const cnnlTensorDescriptor_t input_quant_desc,
                               const void* input_quant,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetLrnWorkspaceSize(
      handle, input_quant_desc, output_desc, local_size, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  const cnnlLrnMode_t mode = CNNL_LRN_CROSS_CHANNEL;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLrn(handle,
                                     mode,
                                     local_size,
                                     alpha,
                                     beta,
                                     k,
                                     workspace_ptr,
                                     workspace_size,
                                     input_quant_desc,
                                     const_cast<void*>(input_quant),
                                     output_desc,
                                     output));
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}

/* static */ void MLUCnnl::QuantifyOnline(
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    const ExecutionContext& ctx,
    const int bitwidth,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const bool compute_scale,
    void* position,
    void* scale,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQuantizeParamWorkspaceSize(handle, input_desc, &workspace_size));

  // use ctx allocate interface for profiling purpose
  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  const cnnlQuantizeMode_t mode =
      compute_scale ? CNNL_QUANTIZE_POSITION_SCALE : CNNL_QUANTIZE_POSITION;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQuantizeParam(handle,
                                               mode,
                                               input_desc,
                                               input,
                                               bitwidth,
                                               workspace_ptr,
                                               workspace_size,
                                               position,
                                               scale,
                                               nullptr));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQuantizeV2(handle,
                                            mode,
                                            input_desc,
                                            input,
                                            position,
                                            scale,
                                            nullptr,
                                            output_desc,
                                            output));
}

/* static */ void MLUCnnl::Range(const ExecutionContext& ctx,
                                 const void* start,
                                 const void* end,
                                 const void* step,
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                                 const cnnlDataType_t output_dtype,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlArange(handle, start, end, step, output_dtype, output));
}

/* static */ void MLUCnnl::Round(const ExecutionContext& ctx,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRound(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::SparseSoftmaxXentWithLogits(
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    const ExecutionContext& ctx,
    cnnlSoftmaxMode_t mode,
    const cnnlTensorDescriptor_t x_desc,
    const void* input,
    const cnnlTensorDescriptor_t label_desc,
    const void* label,
    const cnnlTensorDescriptor_t y_desc,
    void* output,
    const cnnlTensorDescriptor_t diff_y_desc,
    void* back_out) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  const cnnlComputationPreference_t prefer = CNNL_COMPUTATION_HIGH_PRECISION;
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSparseSoftmaxCrossEntropyWithLogits_v2(handle,
                                                 prefer,
                                                 mode,
                                                 x_desc,
                                                 input,
                                                 label_desc,
                                                 label,
                                                 y_desc,
                                                 output,
                                                 diff_y_desc,
                                                 back_out));
}

/* static */ void MLUCnnl::Cumsum(const ExecutionContext& ctx,
                                  const int axis,
                                  const bool exclusive,
                                  const bool reverse,
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                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
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                                  const cnnlTensorDescriptor_t output_desc,
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                                  void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // NAN propagation mode: Only support CNNL_NOT_PROPAGATE_NAN now.
  cnnlNanPropagation_t mode = CNNL_NOT_PROPAGATE_NAN;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCumsum(handle,
                                        input_desc,
                                        input,
                                        axis,
                                        exclusive,
                                        reverse,
                                        mode,
                                        output_desc,
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                                        output));
}

/* static */ void MLUCnnl::BroadcastTo(const ExecutionContext& ctx,
                                       const cnnlTensorDescriptor_t input_desc,
                                       const void* input,
                                       const cnnlTensorDescriptor_t output_desc,
                                       void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlExpand(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::AssignAdd(const ExecutionContext& ctx,
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                                     const void* alpha,
                                     const void* beta,
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                                     const cnnlTensorDescriptor_t update_desc,
                                     const void* update,
                                     const cnnlTensorDescriptor_t param_desc,
                                     void* param) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlAssignAdd(
      handle, alpha, update_desc, update, nullptr, 0, beta, param_desc, param));
}

/* static */ void MLUCnnl::AssignSub(const ExecutionContext& ctx,
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                                     const void* alpha,
                                     const void* beta,
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                                     const cnnlTensorDescriptor_t update_desc,
                                     const void* update,
                                     const cnnlTensorDescriptor_t param_desc,
                                     void* param) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlAssignSub(
      handle, alpha, update_desc, update, nullptr, 0, beta, param_desc, param));
}

/* static */ void MLUCnnl::Assign(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t update_desc,
                                  const void* update,
                                  const cnnlTensorDescriptor_t param_desc,
                                  void* param) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCopy(handle, update_desc, update, param_desc, param));
}

/* static */ void MLUCnnl::SGD(const ExecutionContext& ctx,
                               const cnnlTensorDescriptor_t grad_desc,
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                               const void* grad,
                               const void* lr,
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                               const cnnlTensorDescriptor_t var_desc,
                               void* var) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGradientDescent(handle, grad_desc, grad, lr, var_desc, var));
}

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/* static */ void MLUCnnl::ApplyAdaGrad(const ExecutionContext& ctx,
                                        const cnnlTensorDescriptor_t grad_desc,
                                        const void* grad,
                                        const cnnlTensorDescriptor_t accum_desc,
                                        void* accum,
                                        const cnnlTensorDescriptor_t var_desc,
                                        void* var,
                                        const void* lr,
                                        const bool update_slots) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlApplyAdaGrad(handle,
                                              grad_desc,
                                              grad,
                                              accum_desc,
                                              accum,
                                              var_desc,
                                              var,
                                              lr,
                                              update_slots));
}

/* static */ void MLUCnnl::ApplyRMSProp(const ExecutionContext& ctx,
                                        const cnnlTensorDescriptor_t grad_desc,
                                        const void* grad,
                                        const void* lr,
                                        const void* rho,
                                        const void* momentum,
                                        const void* epsilon,
                                        const cnnlTensorDescriptor_t var_desc,
                                        void* var,
                                        const cnnlTensorDescriptor_t ms_desc,
                                        void* ms,
                                        const cnnlTensorDescriptor_t mom_desc,
                                        void* mom) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRMSProp(handle,
                                         lr,
                                         rho,
                                         epsilon,
                                         momentum,
                                         grad_desc,
                                         grad,
                                         var_desc,
                                         var,
                                         ms_desc,
                                         ms,
                                         mom_desc,
                                         mom));
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}

/* static */ void MLUCnnl::ApplyCenterRMSProp(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t grad_desc,
    const void* grad,
    const void* lr,
    const void* rho,
    const void* momentum,
    const void* epsilon,
    const cnnlTensorDescriptor_t var_desc,
    void* var,
    const cnnlTensorDescriptor_t mg_desc,
    void* mg,
    const cnnlTensorDescriptor_t ms_desc,
    void* ms,
    const cnnlTensorDescriptor_t mom_desc,
    void* mom) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlApplyCenterRMSProp(handle,
                                                    var_desc,
                                                    var,
                                                    mg_desc,
                                                    mg,
                                                    ms_desc,
                                                    ms,
                                                    mom_desc,
                                                    mom,
                                                    grad_desc,
                                                    grad,
                                                    lr,
                                                    rho,
                                                    momentum,
                                                    epsilon));
}

/* static */ void MLUCnnl::ApplyAdam(const ExecutionContext& ctx,
                                     const cnnlTensorDescriptor_t var_desc,
                                     void* var,
                                     const cnnlTensorDescriptor_t m_desc,
                                     void* m,
                                     const cnnlTensorDescriptor_t v_desc,
                                     void* v,
                                     const cnnlTensorDescriptor_t grad_desc,
                                     const void* grad,
                                     const void* lr,
                                     const void* beta1,
                                     const void* beta2,
                                     const void* beta1_power,
                                     const void* beta2_power,
                                     const void* epsilon,
                                     const bool use_nesterov) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlApplyAdam(handle,
                                           var_desc,
                                           var,
                                           m_desc,
                                           m,
                                           v_desc,
                                           v,
                                           grad_desc,
                                           grad,
                                           lr,
                                           beta1,
                                           beta2,
                                           beta1_power,
                                           beta2_power,
                                           epsilon,
                                           use_nesterov));
}

/* static */ void MLUCnnl::ApplyAdaMax(const ExecutionContext& ctx,
                                       const cnnlTensorDescriptor_t grad_desc,
                                       const cnnlTensorDescriptor_t var_desc,
                                       void* var,
                                       const cnnlTensorDescriptor_t m_desc,
                                       void* m,
                                       const cnnlTensorDescriptor_t v_desc,
                                       void* v,
                                       const void* diff,
                                       const void* lr,
                                       const void* beta1,
                                       const void* beta2,
                                       const void* beta1_power,
                                       const void* epsilon) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlApplyAdaMax(handle,
                                             var_desc,
                                             var,
                                             m_desc,
                                             m,
                                             v_desc,
                                             v,
                                             grad_desc,
                                             diff,
                                             lr,
                                             beta1,
                                             beta2,
                                             beta1_power,
                                             epsilon));
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}

/* static */ void MLUCnnl::ApplyMomentum(const ExecutionContext& ctx,
                                         const cnnlTensorDescriptor_t grad_desc,
                                         const void* grad,
                                         const bool use_nesterov,
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                                         const void* lr,
                                         const void* momentum,
                                         void* var,
                                         void* accum) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMomentum(handle,
                                          grad_desc,
                                          var,
                                          grad_desc,
                                          accum,
                                          grad_desc,
                                          grad,
                                          lr,
                                          momentum,
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                                          use_nesterov));
}

/* static */ void MLUCnnl::ApplyKerasMomentum(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t grad_desc,
    const void* grad,
    const bool use_nesterov,
    const void* lr,
    const void* momentum,
    void* var,
    void* accum) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlKerasMomentum(handle,
                                               grad_desc,
                                               var,
                                               grad_desc,
                                               accum,
                                               grad_desc,
                                               grad,
                                               lr,
                                               momentum,
                                               use_nesterov));
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}

/* static */ void MLUCnnl::ApplyAdadelta(const ExecutionContext& ctx,
                                         const cnnlTensorDescriptor_t grad_desc,
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                                         const void* diff,
                                         const void* lr,
                                         const void* rho,
                                         const void* epsilon,
                                         void* var,
                                         void* accum,
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                                         void* accum_update) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlApplyAdadelta(handle,
                                               grad_desc,
                                               var,
                                               grad_desc,
                                               accum,
                                               grad_desc,
                                               accum_update,
                                               grad_desc,
                                               diff,
                                               lr,
                                               rho,
                                               epsilon));
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}

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/* static */ void MLUCnnl::Scale(const ExecutionContext& ctx,
                                 const int axis,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t alpha_desc,
                                 const void* alpha,
                                 const cnnlTensorDescriptor_t beta_desc,
                                 const void* beta,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlScale(handle,
                                       axis,
                                       input_desc,
                                       input,
                                       alpha_desc,
                                       alpha,
                                       beta_desc,
                                       beta,
                                       output_desc,
                                       output));
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}

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/* static */ void MLUCnnl::AddN(const ExecutionContext& ctx,
                                uint32_t input_num,
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                                const cnnlTensorDescriptor_t inputs_desc[],
                                const void* inputs[],
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlAddN(handle, inputs_desc, inputs, input_num, output_desc, output));
}

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/* static */ void MLUCnnl::Log(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               cnnlLogBase_t log_base,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLog_v2(
      handle, prefer, log_base, input_desc, input, output_desc, output));
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}

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/* static */ void MLUCnnl::Matmul(const ExecutionContext& ctx,
                                  const bool transpose_a,
                                  const bool transpose_b,
                                  const cnnlTensorDescriptor_t in0_desc,
                                  const void* in0,
                                  const cnnlTensorDescriptor_t in1_desc,
                                  const void* in1,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  float alpha = 1.0f;
  float beta = 0.0f;

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatMul(handle,
                                        transpose_a,
                                        transpose_b,
                                        reinterpret_cast<void*>(&alpha),
                                        in0_desc,
                                        in0,
                                        in1_desc,
                                        in1,
                                        reinterpret_cast<void*>(&beta),
                                        output_desc,
                                        output));
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}

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/* static */ void MLUCnnl::BatchMatmul(const ExecutionContext& ctx,
                                       const bool transpose_a,
                                       const bool transpose_b,
                                       const cnnlTensorDescriptor_t in0_desc,
                                       const void* in0,
                                       const cnnlTensorDescriptor_t in1_desc,
                                       const void* in1,
                                       const cnnlTensorDescriptor_t output_desc,
                                       void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBatchMatMulBCastWorkspaceSize(
      handle, in0_desc, in1_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulBCast(handle,
                                                  transpose_a,
                                                  transpose_b,
                                                  in0_desc,
                                                  in0,
                                                  in1_desc,
                                                  in1,
                                                  workspace_ptr,
                                                  workspace_size,
                                                  output_desc,
                                                  output));
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}

/* static */ void MLUCnnl::OpTensor(
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    const ExecutionContext& ctx,
    const cnnlOpTensorDescriptor_t op_tensor_desc,
    const cnnlTensorDescriptor_t a_desc,
    const void* a,
    const cnnlTensorDescriptor_t b_desc,
    const void* b,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
    const cnnlDataType_t dtype,
    const float alpha1_float,
    const float alpha2_float,
    const float beta_float) {
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  const int alpha1_int = static_cast<const int>(alpha1_float);
  const int alpha2_int = static_cast<const int>(alpha2_float);
  const int beta_int = static_cast<const int>(beta_float);
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  const void* alpha1_ptr = static_cast<const void*>(&alpha1_float);
  const void* alpha2_ptr = static_cast<const void*>(&alpha2_float);
  const void* beta_ptr = static_cast<const void*>(&beta_float);

  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;

  bool is_dt_float = (dtype == CNNL_DTYPE_FLOAT || dtype == CNNL_DTYPE_HALF);

  //  if datatype is not float, we set alpha and beta to be int
  if (!is_dt_float) {
    alpha1_ptr = static_cast<const void*>(&alpha1_int);
    alpha2_ptr = static_cast<const void*>(&alpha2_int);
    beta_ptr = static_cast<const void*>(&beta_int);
  }

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetOpTensorWorkspaceSize(
      handle, a_desc, b_desc, output_desc, &workspace_size));
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  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlOpTensor(handle,
                                          op_tensor_desc,
                                          alpha1_ptr,
                                          a_desc,
                                          a,
                                          alpha2_ptr,
                                          b_desc,
                                          b,
                                          workspace_ptr,
                                          workspace_size,
                                          beta_ptr,
                                          output_desc,
                                          output));
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}

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/* static */ void MLUCnnl::MulAx(const ExecutionContext& ctx,
                                 const cnnlTensorDescriptor_t alpha_desc,
                                 const void* alpha,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetAxWorkspaceSize(handle, alpha_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlAx_v2(handle,
                                       alpha_desc,
                                       alpha,
                                       output_desc,
                                       output,
                                       workspace_ptr,
                                       workspace_size));
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}

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/* static */ void MLUCnnl::BiasAddGrad(
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    const ExecutionContext& ctx,
    const int axis,
    const cnnlTensorDescriptor_t out_backprop_desc,
    const void* out_backprop,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBiasAddBackward(
      handle, out_backprop_desc, out_backprop, axis, output_desc, output));
}

/* static */ void MLUCnnl::RandomUniform(
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    const ExecutionContext& ctx,
    const int num,
    const cnnlDataType_t data_type,
    const cnnlRandGenerator_t mlu_generator,
    void* mlu_state,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRandGenerateUniform(
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      handle, mlu_generator, data_type, mlu_state, num, 0, 1, output));
}

/* static */ void MLUCnnl::FusedDropout(
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    const ExecutionContext& ctx,
    const cnnlRandGenerator_t generator,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const float p,
    void* state,
    const cnnlTensorDescriptor_t mask_desc,
    const void* mask,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlFusedDropout_v2(handle,
                                                 generator,
                                                 input_desc,
                                                 input,
                                                 p,
                                                 state,
                                                 mask_desc,
                                                 mask,
                                                 output_desc,
                                                 output));
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}

/* static */ void MLUCnnl::TopK(
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    const ExecutionContext& ctx,
    const int k,
    const int dim,
    const bool largest,
    const bool sorted,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t values_output_desc,
    void* values_out,
    const cnnlTensorDescriptor_t indices_output_desc,
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    void* indices_out) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlTopKTensor(handle,
                                            input_desc,
                                            input,
                                            k,
                                            dim,
                                            largest,
                                            sorted,
                                            values_output_desc,
                                            values_out,
                                            indices_output_desc,
                                            indices_out));
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}

/* static */ void MLUCnnl::StridedSlice(
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    const ExecutionContext& ctx,
    const int begin[],
    const int end[],
    const int strides[],
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlStridedSlice(
      handle, input_desc, input, begin, end, strides, output_desc, output));
}

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/* static */ void MLUCnnl::Split(const ExecutionContext& ctx,
                                 int split_num,
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                                 int axis,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input_ptr,
                                 const cnnlTensorDescriptor_t output_descs[],
                                 void* output_ptrs[]) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetSplitWorkspaceSize(handle, split_num, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSplit(handle,
                                       split_num,
                                       axis,
                                       input_desc,
                                       input_ptr,
                                       workspace_ptr,
                                       workspace_size,
                                       output_descs,
                                       output_ptrs));
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}

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/* static */ void MLUCnnl::Split(const MLUDeviceContext& dev_ctx,
                                 int split_num,
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                                 int axis,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input_ptr,
                                 const cnnlTensorDescriptor_t output_descs[],
                                 void* output_ptrs[]) {
  cnnlHandle_t handle = dev_ctx.cnnl_handle();

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetSplitWorkspaceSize(handle, split_num, &workspace_size));

  Tensor workspace(paddle::experimental::DataType::INT8);
  workspace.Resize(framework::DDim({static_cast<int64_t>(workspace_size)}));
  void* workspace_ptr = workspace.mutable_data(dev_ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSplit(handle,
                                       split_num,
                                       axis,
                                       input_desc,
                                       input_ptr,
                                       workspace_ptr,
                                       workspace_size,
                                       output_descs,
                                       output_ptrs));
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}

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/* static */ void MLUCnnl::GatherFunctor(
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    const ExecutionContext& ctx,
    const int axis,
    const int batch_dims,
    const cnnlTensorDescriptor_t params_desc,
    const void* params,
    const cnnlTensorDescriptor_t indices_desc,
    const void* indices,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchGatherV2(handle,
                                               axis,
                                               batch_dims,
                                               params_desc,
                                               params,
                                               indices_desc,
                                               indices,
                                               output_desc,
                                               output));
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}

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/* static */ void MLUCnnl::ScatterRefFunctor(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t params_desc,
    const void* params,
    const cnnlTensorDescriptor_t updates_desc,
    const void* updates,
    const cnnlTensorDescriptor_t indices_desc,
    const void* indices,
    const cnnlScatterRefMode_t mode) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlScatterRef(handle,
                                            params_desc,
                                            params,
                                            indices_desc,
                                            indices,
                                            updates_desc,
                                            updates,
                                            0,
                                            mode));
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}

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/* static */ void MLUCnnl::ScatterFunctor(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t params_desc,
    void* params,
    const cnnlTensorDescriptor_t updates_desc,
    const void* updates,
    const cnnlTensorDescriptor_t indices_desc,
    const void* indices,
    const int dim,
    const cnnlScatterMode_t mode) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlScatter(handle,
                  dim,
                  params_desc,
                  params,
                  indices_desc,
                  indices,
                  updates_desc,
                  updates,
                  params_desc,
                  params, /* output_desc, output, same with params*/
                  mode));
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}

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/* static */ void MLUCnnl::StridedSliceGrad(
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    const ExecutionContext& ctx,
    const int begin[],
    const int end[],
    const int strides[],
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlStridedSliceBackward(
      handle, begin, end, strides, input_desc, input, output_desc, output));
}

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/* static */ void MLUCnnl::Logic(const ExecutionContext& ctx,
                                 const cnnlLogicOp_t log_method,
                                 const cnnlTensorDescriptor_t input1_desc,
                                 const void* input1,
                                 const cnnlTensorDescriptor_t input2_desc,
                                 const void* input2,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetLogicOpWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLogicOp(handle,
                                         log_method,
                                         input1_desc,
                                         input1,
                                         input2_desc,
                                         input2,
                                         workspace_ptr,
                                         workspace_size,
                                         output_desc,
                                         output));
}

/* static */ void MLUCnnl::Select(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t condition_desc,
                                  const void* condition_ptr,
                                  const cnnlTensorDescriptor_t then_desc,
                                  const void* then_ptr,
                                  const cnnlTensorDescriptor_t else_desc,
                                  const void* else_ptr,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output_ptr) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetSelectV2WorkspaceSize(
      handle, condition_desc, then_desc, else_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSelectV2(handle,
                                          condition_desc,
                                          condition_ptr,
                                          then_desc,
                                          then_ptr,
                                          else_desc,
                                          else_ptr,
                                          workspace_ptr,
                                          workspace_size,
                                          output_desc,
                                          output_ptr));
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}

/*static */ void MLUCnnl::GatherNd(const ExecutionContext& ctx,
                                   const cnnlTensorDescriptor_t params_desc,
                                   const void* params,
                                   const cnnlTensorDescriptor_t indices_desc,
                                   const void* indices,
                                   const cnnlTensorDescriptor_t output_desc,
                                   void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGatherNd(
      handle, params_desc, params, indices_desc, indices, output_desc, output));
}

/* static */ void MLUCnnl::BatchToSpace(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
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    const cnnlSpaceBatchParam_t param) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBatch2spaceWorkspaceSize(
      handle, input_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatch2space(handle,
                                             input_desc,
                                             input,
                                             output_desc,
                                             output,
                                             param,
                                             workspace_ptr,
                                             workspace_size));
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}

/* static */ void MLUCnnl::BatchToSpaceNd(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    cnnlSpaceBatchNdDescriptor_t param,
    void* extra_device_input,
    size_t extra_input_size,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
1851 1852
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

1853 1854 1855 1856 1857 1858 1859 1860
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatch2spaceNd_v2(handle,
                                                  input_desc,
                                                  input,
                                                  output_desc,
                                                  output,
                                                  param,
                                                  extra_device_input,
                                                  extra_input_size));
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}

/* static */ void MLUCnnl::SoftmaxForward(
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    const ExecutionContext& ctx,
    cnnlSoftmaxAlgorithm_t algorithm,
    cnnlSoftmaxMode_t mode,
    const void* alpha,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const void* beta,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSoftmaxForward(handle,
                                                algorithm,
                                                mode,
                                                alpha,
                                                input_desc,
                                                input,
                                                beta,
                                                output_desc,
                                                output));
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}

1886
/* static */ void MLUCnnl::SoftmaxBackward(
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    const ExecutionContext& ctx,
    cnnlSoftmaxAlgorithm_t algorithm,
    cnnlSoftmaxMode_t mode,
    const cnnlTensorDescriptor_t y_desc,
    const void* y,
    const cnnlTensorDescriptor_t diff_y_desc,
    const void* diff_y,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSoftmaxBackward(handle,
                                                 algorithm,
                                                 mode,
                                                 nullptr,
                                                 y_desc,
                                                 y,
                                                 diff_y_desc,
                                                 diff_y,
                                                 nullptr,
                                                 diff_x_desc,
                                                 diff_x));
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}

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/* static */ void MLUCnnl::Softplus(const ExecutionContext& ctx,
                                    const cnnlTensorDescriptor_t features_desc,
                                    const void* features,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  const int beta = 1;
  const int threshold = 20;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSoftplusForward(
      handle, features_desc, features, output_desc, output, beta, threshold));
}

/* static */ void MLUCnnl::SoftplusGrad(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t gradients_desc,
    const void* gradients,
    const cnnlTensorDescriptor_t features_desc,
    const void* features,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  int beta = 1;
  int threshold = 20;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSoftplusBackward(handle,
                                                  features_desc,
                                                  features,
                                                  gradients_desc,
                                                  gradients,
                                                  output_desc,
                                                  output,
                                                  beta,
                                                  threshold));
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}

/* static */ void MLUCnnl::PoolingForward(
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    const ExecutionContext& ctx,
    cnnlPoolingMode_t pool_mode,
    int64_t output_h,
    int64_t output_w,
    const cnnlPoolingDescriptor_t pooling_desc,
    const void* alpha,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const void* beta,
    const void* extra_input_ptr,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetPoolingWorkspaceSize(
1964
      handle, pool_mode, output_w, output_h, &workspace_size));
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  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlPoolingForward_v2(handle,
                                                   pooling_desc,
                                                   alpha,
                                                   input_desc,
                                                   input,
                                                   beta,
                                                   extra_input_ptr,
                                                   output_desc,
                                                   output,
                                                   workspace_ptr,
                                                   workspace_size));
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}

1984
/* static */ void MLUCnnl::AdaptivePoolingForward(
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    const ExecutionContext& ctx,
    cnnlPoolingMode_t pool_mode,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
    const cnnlTensorDescriptor_t index_desc,
    void* index) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlAdaptivePoolingForward(handle,
                                                        input_desc,
                                                        input,
                                                        pool_mode,
                                                        output_desc,
                                                        output,
                                                        index_desc,
                                                        index));
}

/* static */ void MLUCnnl::Pool3D(const ExecutionContext& ctx,
                                  cnnlPoolingMode_t pool_mode,
                                  const std::vector<int64_t>& output_shape,
                                  const cnnlPoolingDescriptor_t pooling_desc,
                                  const void* alpha,
                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
                                  const void* beta,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetPoolingWorkspaceSize(
      handle, pool_mode, output_shape[2], output_shape[1], &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlPoolingForward(handle,
                                                pooling_desc,
                                                alpha,
                                                input_desc,
                                                input,
                                                beta,
                                                output_desc,
                                                output,
                                                workspace_ptr,
                                                workspace_size));
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}

/* static */ void MLUCnnl::RsqrtGrad(const ExecutionContext& ctx,
                                     const cnnlTensorDescriptor_t data_desc,
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                                     const void* y,
                                     const void* diff_y,
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                                     void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRsqrtBackward(handle, data_desc, y, diff_y, output));
}

/* static */ void MLUCnnl::SqrtGrad(const ExecutionContext& ctx,
                                    const cnnlTensorDescriptor_t data_desc,
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                                    const void* y,
                                    const void* diff_y,
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                                    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSqrtBackward(handle, data_desc, y, diff_y, output));
}

/* static */ void MLUCnnl::UnsortedSegmentSum(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t data_desc,
    const void* data,
    const cnnlTensorDescriptor_t ids_desc,
    const int* segment_ids,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetUnsortedSegmentSumWorkspaceSize(
      handle, data_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlUnsortedSegmentSum(handle,
                                                    data_desc,
                                                    data,
                                                    ids_desc,
                                                    segment_ids,
                                                    workspace_ptr,
                                                    workspace_size,
                                                    output_desc,
                                                    output));
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}

/* static */ void MLUCnnl::Pad(const ExecutionContext& ctx,
                               const cnnlTensorDescriptor_t input_desc,
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                               const void* input,
                               const void* paddings,
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                               const void* padding_value,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlPad(
      handle, input_desc, input, paddings, padding_value, output_desc, output));
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}

/* static */ void MLUCnnl::OneHot(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t desc_indices,
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                                  const void* indices,
                                  const int depth,
                                  const void* on_value,
                                  const void* off_value,
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                                  const int axis,
                                  cnnlDataType_t output_data_type,
                                  void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlOneHot(handle,
                                        desc_indices,
                                        indices,
                                        depth,
                                        on_value,
                                        off_value,
                                        axis,
                                        output_data_type,
                                        output));
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}

/* static */ void MLUCnnl::ConvolutionForward(
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    const ExecutionContext& ctx,
    cnnlConvolutionDescriptor_t conv_desc,
    const void* alpha,
    const void* beta,
    const cnnlTensorDescriptor_t bias_desc,
    const void* bias_ptr,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t filtet_desc,
    const void* filter,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // cnnl: select best algorithm for convolution compution.
  cnnlConvolutionForwardAlgo_t algo;
  cnnlConvolutionFwdPreference_t preference = CNNL_CONVOLUTION_FWD_FASTEST;
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  cnnlGetConvolutionForwardAlgorithm(handle,
                                     conv_desc,
                                     input_desc,
                                     filtet_desc,
                                     output_desc,
                                     preference,
                                     &algo);
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  // get workspace size
  size_t workspace_size = 0;
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionForwardWorkspaceSize(handle,
                                             input_desc,
                                             filtet_desc,
                                             output_desc,
                                             bias_desc,
                                             conv_desc,
                                             algo,
                                             &workspace_size));
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  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlConvolutionForward(handle,
                                                    conv_desc,
                                                    algo,
                                                    alpha,
                                                    input_desc,
                                                    input,
                                                    filtet_desc,
                                                    filter,
                                                    bias_desc,
                                                    bias_ptr,
                                                    workspace_ptr,
                                                    workspace_size,
                                                    beta,
                                                    output_desc,
                                                    output));
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}

/* static */ void MLUCnnl::Tile(const ExecutionContext& ctx,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlTile(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::SoftmaxCrossEntropyWithLogits(
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    const ExecutionContext& ctx,
    cnnlSoftmaxMode_t mode,
    cnnlComputationPreference_t prefer,
    const cnnlTensorDescriptor_t input_desc,
    const void* logits_in,
    const cnnlTensorDescriptor_t label_desc,
    const void* labels_in,
    const cnnlTensorDescriptor_t loss_out_desc,
    void* loss_out,
    const cnnlTensorDescriptor_t back_out_desc,
2207 2208 2209
    void* back_out) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSoftmaxCrossEntropyWithLogits_v2(handle,
                                                                  mode,
                                                                  prefer,
                                                                  input_desc,
                                                                  logits_in,
                                                                  label_desc,
                                                                  labels_in,
                                                                  loss_out_desc,
                                                                  loss_out,
                                                                  back_out_desc,
                                                                  back_out));
2221 2222
}

2223 2224 2225 2226 2227 2228 2229 2230 2231 2232 2233
/* static */ void MLUCnnl::Reduce(const ExecutionContext& ctx,
                                  const bool need_workspace,
                                  const cnnlReduceDescriptor_t reduction_desc,
                                  const void* alpha,
                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
                                  const size_t indices_size,
                                  void* indices,
                                  const void* beta,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
2234 2235 2236 2237 2238 2239 2240 2241 2242 2243 2244 2245 2246 2247 2248 2249
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
  void* workspace_ptr = nullptr;
  Tensor workspace;
  if (need_workspace) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetReduceOpWorkspaceSize(
        handle, input_desc, output_desc, reduction_desc, &workspace_size));

    auto& dev_ctx = GetDevCtxFromCTX(ctx);
    workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
        {static_cast<int64_t>(workspace_size)}, dev_ctx);

    workspace_ptr = workspace.mutable_data(ctx.GetPlace());
  }

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlReduce(handle,
                                        reduction_desc,
                                        workspace_ptr,
                                        workspace_size,
                                        alpha,
                                        input_desc,
                                        input,
                                        indices_size,
                                        indices,
                                        beta,
                                        output_desc,
                                        output));
2262 2263
}

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/* static */ void MLUCnnl::FloorDiv(const ExecutionContext& ctx,
                                    cnnlComputationPreference_t prefer,
                                    const cnnlTensorDescriptor_t input1_desc,
                                    const void* input1,
                                    const cnnlTensorDescriptor_t input2_desc,
                                    const void* input2,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
2272 2273 2274 2275 2276 2277 2278 2279 2280 2281
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetFloorDivWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlFloorDiv_v2(handle,
                                             prefer,
                                             input1_desc,
                                             input1,
                                             input2_desc,
                                             input2,
                                             output_desc,
                                             output,
                                             workspace_ptr,
                                             workspace_size));
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}

/* static */ void MLUCnnl::FloorMod(const ExecutionContext& ctx,
                                    const cnnlTensorDescriptor_t input1_desc,
                                    const void* input1,
                                    const cnnlTensorDescriptor_t input2_desc,
                                    const void* input2,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetFloorModWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlFloorMod(handle,
                                          input1_desc,
                                          input1,
                                          input2_desc,
                                          input2,
                                          output_desc,
                                          output,
                                          workspace_ptr,
                                          workspace_size));
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}

/* static */ void MLUCnnl::Maximum(const ExecutionContext& ctx,
                                   const cnnlTensorDescriptor_t input1_desc,
                                   const void* input1,
                                   const cnnlTensorDescriptor_t input2_desc,
                                   const void* input2,
                                   const cnnlTensorDescriptor_t output_desc,
                                   void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetMaximumWorkspaceSize(handle, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMaximum(handle,
                                         input1_desc,
                                         input1,
                                         input2_desc,
                                         input2,
                                         output_desc,
                                         output,
                                         workspace_ptr,
                                         workspace_size));
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}

/* static */ void MLUCnnl::Minimum(const ExecutionContext& ctx,
                                   const cnnlTensorDescriptor_t input1_desc,
                                   const void* input1,
                                   const cnnlTensorDescriptor_t input2_desc,
                                   const void* input2,
                                   const cnnlTensorDescriptor_t output_desc,
                                   void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetMinimumWorkspaceSize(handle, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMinimum(handle,
                                         input1_desc,
                                         input1,
                                         input2_desc,
                                         input2,
                                         output_desc,
                                         output,
                                         workspace_ptr,
                                         workspace_size));
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}

Q
qipengh 已提交
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/* static */ void MLUCnnl::Pow(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t input1_desc,
                               const void* input1,
                               const cnnlTensorDescriptor_t input2_desc,
                               const void* input2,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetPowWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlPow(handle,
                                     prefer,
                                     input1_desc,
                                     input1,
                                     input2_desc,
                                     input2,
                                     workspace_ptr,
                                     workspace_size,
                                     output_desc,
                                     output));
}

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/* static */ void MLUCnnl::PowR(const ExecutionContext& ctx,
                                cnnlComputationPreference_t prefer,
                                const cnnlTensorDescriptor_t input1_desc,
                                const void* input1,
                                const cnnlTensorDescriptor_t input2_desc,
                                const void* input2,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetPowRWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlPowR_v2(handle,
                                         prefer,
                                         input1_desc,
                                         input1,
                                         input2_desc,
                                         input2,
                                         workspace_ptr,
                                         workspace_size,
                                         output_desc,
                                         output));
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}

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/* static */ void MLUCnnl::DivNoNan(const ExecutionContext& ctx,
                                    cnnlComputationPreference_t prefer,
                                    const cnnlTensorDescriptor_t input1_desc,
                                    const void* input1,
                                    const cnnlTensorDescriptor_t input2_desc,
                                    const void* input2,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetDivNoNanWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDivNoNan_v2(handle,
                                             prefer,
                                             input1_desc,
                                             input1,
                                             input2_desc,
                                             input2,
                                             workspace_ptr,
                                             workspace_size,
                                             output_desc,
                                             output));
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}

/* static */ void MLUCnnl::SquaredDifference(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input1_desc,
    const void* input1,
    const cnnlTensorDescriptor_t input2_desc,
    const void* input2,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetSquaredDifferenceWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSquaredDifference(handle,
                                                   input1_desc,
                                                   input1,
                                                   input2_desc,
                                                   input2,
                                                   output_desc,
                                                   output,
                                                   workspace_ptr,
                                                   workspace_size));
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}

/* static */ void MLUCnnl::L2Loss(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t input_desc,
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                                  const void* input,
                                  void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlL2Loss(handle, input_desc, input, output));
}

/* static */ void MLUCnnl::Abs(const ExecutionContext& ctx,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlAbs(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Neg(const ExecutionContext& ctx,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlNegTensor(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Floor(const ExecutionContext& ctx,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlFloor(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Ceil(const ExecutionContext& ctx,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCeil(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::IsNan(const ExecutionContext& ctx,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlIsNan(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Square(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSquare(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Sqrt(const ExecutionContext& ctx,
                                cnnlComputationPreference_t prefer,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSqrt_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Rsqrt(const ExecutionContext& ctx,
                                 cnnlComputationPreference_t prefer,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlRsqrt_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Cos(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCos_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Sin(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSin_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::TrigonForward(
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    const ExecutionContext& ctx,
    const cnnlTrigonDescriptor_t trigon_desc,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlTrigonForward(
      handle, trigon_desc, input_desc, input, output_desc, output));
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}

/* static */ void MLUCnnl::Exp(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlExp_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Sign(const ExecutionContext& ctx,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSign(handle, input_desc, input, output_desc, output));
}

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/* static */ void MLUCnnl::IndexSelect(const ExecutionContext& ctx,
                                       const int dim,
                                       cnnlTensorDescriptor_t input_desc,
                                       const void* input,
                                       const cnnlTensorDescriptor_t index_desc,
                                       const void* index,
                                       const cnnlTensorDescriptor_t output_desc,
                                       void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlIndexSelect(
      handle, dim, input_desc, input, index_desc, index, output_desc, output));
}

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/* static */ void MLUCnnl::IsFinite(const ExecutionContext& ctx,
                                    const cnnlTensorDescriptor_t input_desc,
                                    const void* input,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlIsFinite(handle, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::IsNanInf(const ExecutionContext& ctx,
                                    const cnnlTensorDescriptor_t input_desc,
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                                    const void* input,
                                    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // TODO(CTR-3849): output type should be void*, but now bool*.
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlNanInf(handle, input_desc, input, reinterpret_cast<bool*>(output)));
}

/* static */ void MLUCnnl::Erf(const ExecutionContext& ctx,
                               cnnlComputationPreference_t prefer,
                               const cnnlTensorDescriptor_t input_desc,
                               const void* input,
                               const cnnlTensorDescriptor_t output_desc,
                               void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlErf_v2(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::Log1p(const ExecutionContext& ctx,
                                 cnnlComputationPreference_t prefer,
                                 const cnnlTensorDescriptor_t input_desc,
                                 const void* input,
                                 const cnnlTensorDescriptor_t output_desc,
                                 void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlLog1p(handle, prefer, input_desc, input, output_desc, output));
}

/* static */ void MLUCnnl::LogicalNot(const ExecutionContext& ctx,
                                      const cnnlTensorDescriptor_t input_desc,
                                      const void* input,
                                      const cnnlTensorDescriptor_t output_desc,
                                      void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLogicOp(handle,
                                         CNNL_LOGIC_OP_NOT,
                                         input_desc,
                                         input,
                                         input_desc,
                                         input,
                                         nullptr,
                                         0,
                                         output_desc,
                                         output));
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}

/* static */ void MLUCnnl::DynamicStitch(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t* indices_desc,
    const int** indices,
    const cnnlTensorDescriptor_t* data_desc,
    const void** data,
    const int size,
    int* indices_dims,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetDynamicStitchWorkspaceSize(handle, size, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDynamicStitch(handle,
                                               indices_desc,
                                               indices,
                                               data_desc,
                                               data,
                                               size,
                                               indices_dims,
                                               workspace_ptr,
                                               workspace_size,
                                               output_desc,
                                               output));
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}

/* static */ void MLUCnnl::CropAndResize(
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    const ExecutionContext& ctx,
    const std::string method_name,
    const float extrapolation_value,
    const cnnlTensorDescriptor_t image_desc,
    const void* image,
    const cnnlTensorDescriptor_t boxes_desc,
    const void* boxes,
    const cnnlTensorDescriptor_t box_index_desc,
    const void* box_index,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  cnnlCropAndResizeMode_t mode = CNNL_CROP_AND_RESIZE_BILINEAR;
  if (method_name == "nearest") {
    mode = CNNL_CROP_AND_RESIZE_NEAREST;
  }

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCropAndResize(handle,
                                               image_desc,
                                               image,
                                               boxes_desc,
                                               boxes,
                                               box_index_desc,
                                               box_index,
                                               mode,
                                               extrapolation_value,
                                               output_desc,
                                               output));
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}

/* static */ void MLUCnnl::CropAndResizeBackwardImage(
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    const ExecutionContext& ctx,
    const std::string method_name,
    const cnnlTensorDescriptor_t grads_desc,
    const void* grads,
    const cnnlTensorDescriptor_t boxes_desc,
    const void* boxes,
    const cnnlTensorDescriptor_t box_idx_desc,
    const void* box_idx,
    const cnnlTensorDescriptor_t grads_image_desc,
    void* grads_image) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  cnnlCropAndResizeMode_t mode = CNNL_CROP_AND_RESIZE_BILINEAR;
  if (method_name == "nearest") {
    mode = CNNL_CROP_AND_RESIZE_NEAREST;
  }

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCropAndResizeBackwardImage(handle,
                                                            grads_desc,
                                                            grads,
                                                            boxes_desc,
                                                            boxes,
                                                            box_idx_desc,
                                                            box_idx,
                                                            mode,
                                                            grads_image_desc,
                                                            grads_image));
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}

/* static */ void MLUCnnl::CropAndResizeBackwardBoxes(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t image_desc,
    const void* image,
    const cnnlTensorDescriptor_t boxes_desc,
    const void* boxes,
    const cnnlTensorDescriptor_t box_idx_desc,
    const void* box_idx,
    const cnnlTensorDescriptor_t output_desc,
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    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  cnnlCropAndResizeMode_t mode = CNNL_CROP_AND_RESIZE_BILINEAR;

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCropAndResizeBackwardBoxes(handle,
                                                            input_desc,
                                                            input,
                                                            image_desc,
                                                            image,
                                                            boxes_desc,
                                                            boxes,
                                                            box_idx_desc,
                                                            box_idx,
                                                            output_desc,
                                                            output,
                                                            mode));
}

/* static */ void MLUCnnl::Interp(const ExecutionContext& ctx,
                                  const cnnlInterpMode_t mode,
                                  const bool align_corners,
                                  const bool half_pixel_centers,
                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlInterp_v2(handle,
                                           align_corners,
                                           half_pixel_centers,
                                           mode,
                                           NULL,
                                           true,
                                           input_desc,
                                           input,
                                           output_desc,
                                           output));
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}

/* static */ void MLUCnnl::InterpBackward(
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    const ExecutionContext& ctx,
    const cnnlInterpBackwardMode_t mode,
    const bool align_corners,
    const bool half_pixel_centers,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlInterpBackward_v2(handle,
                                                   align_corners,
                                                   half_pixel_centers,
                                                   mode,
                                                   NULL,
                                                   true,
                                                   input_desc,
                                                   input,
                                                   output_desc,
                                                   output));
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}

/* static */ void MLUCnnl::Cast(const ExecutionContext& ctx,
                                cnnlCastDataType_t cast_type,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCastDataType(
      handle, input_desc, input, cast_type, output_desc, output));
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}

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/*static*/ void MLUCnnl::Clip(const ExecutionContext& ctx,
                              const cnnlTensorDescriptor_t x_desc,
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                              const void* x,
                              const void* min,
                              const void* max,
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                              void* y) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlClip(handle, x_desc, x, min, max, y));
}

/*static*/ void MLUCnnl::HardtanhBackward(
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    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t diff_y_desc,
    const void* diff_y,
    const float max_val,
    const float min_val,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlHardtanhBackward(handle,
                                                  x_desc,
                                                  x,
                                                  diff_y_desc,
                                                  diff_y,
                                                  max_val,
                                                  min_val,
                                                  diff_x_desc,
                                                  diff_x));
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}

2946
/* static */ void MLUCnnl::PoolingBackward(
2947 2948 2949 2950 2951 2952 2953 2954 2955 2956 2957 2958
    const ExecutionContext& ctx,
    const cnnlPoolingDescriptor_t pooling_desc,
    const void* alpha,
    const cnnlTensorDescriptor_t y_desc,
    const void* y,
    const cnnlTensorDescriptor_t diff_y_desc,
    const void* diff_y,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const void* beta,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x) {
2959 2960
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

2961 2962 2963 2964 2965 2966 2967 2968 2969 2970 2971 2972 2973
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlPoolingBackward(handle,
                          const_cast<cnnlPoolingDescriptor_t>(pooling_desc),
                          alpha,
                          y_desc,
                          y,
                          diff_y_desc,
                          diff_y,
                          x_desc,
                          x,
                          beta,
                          diff_x_desc,
                          diff_x));
2974 2975
}

2976
/* static */ void MLUCnnl::AdaptivePoolingBackward(
2977 2978 2979 2980 2981 2982 2983 2984
    const ExecutionContext& ctx,
    const cnnlPoolingMode_t pool_mode,
    const cnnlTensorDescriptor_t y_desc,
    const void* y,
    const cnnlTensorDescriptor_t index_desc,
    const void* index,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x) {
2985 2986 2987 2988 2989 2990
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlAdaptivePoolingBackward(
      handle, y_desc, y, index_desc, index, pool_mode, diff_x_desc, diff_x));
}

2991
/* static */ void MLUCnnl::NonMaxSuppression(
2992 2993 2994 2995 2996 2997 2998 2999 3000
    const ExecutionContext& ctx,
    const cnnlNmsDescriptor_t nms_desc,
    const cnnlTensorDescriptor_t boxes_desc,
    const void* boxes,
    const cnnlTensorDescriptor_t confidence_desc,
    const void* confidence,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
    void* output_size) {
3001 3002 3003 3004 3005 3006 3007 3008 3009 3010 3011
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetNmsWorkspaceSize_v2(handle, confidence_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3012 3013 3014 3015 3016 3017 3018 3019 3020 3021 3022
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlNms_v2(handle,
                                        nms_desc,
                                        boxes_desc,
                                        boxes,
                                        confidence_desc,
                                        confidence,
                                        workspace_ptr,
                                        workspace_size,
                                        output_desc,
                                        output,
                                        output_size));
3023 3024 3025
}

/* static */ void MLUCnnl::PoolingIndex(
3026 3027 3028 3029 3030 3031
    const ExecutionContext& ctx,
    const cnnlPoolingDescriptor_t pooling_desc,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t y_desc,
    void* y) {
3032 3033
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

3034 3035 3036 3037 3038 3039 3040
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlPoolingIndex(handle,
                       const_cast<cnnlPoolingDescriptor_t>(pooling_desc),
                       x_desc,
                       x,
                       y_desc,
                       y));
3041 3042 3043
}

/* static */ void MLUCnnl::SpaceToBatch(
3044 3045 3046 3047 3048
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
3049 3050 3051 3052 3053 3054 3055 3056 3057 3058 3059 3060 3061 3062
    const int64_t block_shape[]) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetSpace2batchWorkspaceSize(
      handle, input_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  cnnlSpaceBatchParam_t param = {static_cast<uint32_t>(block_shape[0]),
                                 static_cast<uint32_t>(block_shape[1])};
3063 3064 3065 3066 3067 3068 3069 3070
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSpace2batch(handle,
                                             input_desc,
                                             input,
                                             output_desc,
                                             output,
                                             param,
                                             workspace_ptr,
                                             workspace_size));
3071 3072 3073
}

/* static */ void MLUCnnl::SpaceToBatchNd(
3074 3075 3076 3077 3078 3079 3080 3081
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    cnnlSpaceBatchNdDescriptor_t param,
    void* extra_device_input,
    size_t extra_host_input,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
3082 3083
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

3084 3085 3086 3087 3088 3089 3090 3091
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSpace2batchNd_v2(handle,
                                                  input_desc,
                                                  input,
                                                  output_desc,
                                                  output,
                                                  param,
                                                  extra_device_input,
                                                  extra_host_input));
3092 3093 3094
}

/* static */ void MLUCnnl::FusedBatchNorm(
3095 3096 3097 3098 3099 3100 3101 3102 3103 3104 3105 3106 3107 3108 3109 3110 3111
    const ExecutionContext& ctx,
    const bool is_training,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t scale_desc,
    const void* scale,
    const void* offset,
    const void* running_mean_input,
    const void* running_variance_input,
    float epsilon,
    float momentum,
    const cnnlTensorDescriptor_t output_desc,
    void* output,
    void* running_mean_output,
    void* running_var_output,
    void* saved_batch_mean_output,
    void* saved_batch_var_output) {
3112 3113 3114 3115
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  if (is_training) {
    /*
3116
     *  In Paddle, running_mean_output = momentum * runnning_mean_input +
3117 3118 3119 3120
     *  (1 - momentum) * batch_mean. However, In CNNL,
     *  running_mean_output = (1 - momentum) * running_mean_input +
     *  momentum * batch_mean. So we pass (1.0 - momentum) to momentum param.
     */
3121 3122 3123 3124 3125 3126 3127 3128 3129 3130 3131 3132 3133 3134 3135 3136 3137
    PADDLE_ENFORCE_MLU_SUCCESS(
        cnnlBatchNormForwardTraining(handle,
                                     NULL,
                                     NULL,
                                     x_desc,
                                     x,
                                     scale_desc,
                                     scale,
                                     offset,
                                     running_mean_output,
                                     running_var_output,
                                     epsilon,
                                     1.0 - momentum,
                                     output_desc,
                                     output,
                                     saved_batch_mean_output,
                                     saved_batch_var_output));
3138
  } else {
3139 3140 3141 3142 3143 3144 3145 3146 3147 3148 3149 3150 3151 3152
    PADDLE_ENFORCE_MLU_SUCCESS(
        cnnlBatchNormForwardInference(handle,
                                      NULL,
                                      NULL,
                                      x_desc,
                                      x,
                                      scale_desc,
                                      scale,
                                      offset,
                                      running_mean_input,
                                      running_variance_input,
                                      epsilon,
                                      output_desc,
                                      output));
3153 3154 3155 3156
  }
}

/* static */ void MLUCnnl::FusedBatchNormGrad(
3157 3158 3159 3160 3161 3162 3163 3164 3165 3166 3167 3168 3169 3170 3171
    const ExecutionContext& ctx,
    const bool is_training,
    const cnnlTensorDescriptor_t y_backprop_desc,
    const void* y_backprop,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t scale_desc,
    const void* scale,
    const void* saved_mean,
    const void* saved_var,
    float epsilon,
    const cnnlTensorDescriptor_t x_backprop_desc,
    void* x_backprop,
    void* scale_backprop,
    void* offset_backprop) {
3172 3173 3174
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  if (is_training) {
3175 3176 3177 3178 3179 3180 3181 3182 3183 3184 3185 3186 3187 3188 3189 3190 3191 3192
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchNormBackward(handle,
                                                     NULL,
                                                     NULL,
                                                     NULL,
                                                     NULL,
                                                     x_desc,
                                                     x,
                                                     y_backprop_desc,
                                                     y_backprop,
                                                     scale_desc,
                                                     scale,
                                                     saved_mean,
                                                     saved_var,
                                                     epsilon,
                                                     x_backprop_desc,
                                                     x_backprop,
                                                     scale_backprop,
                                                     offset_backprop));
3193
  } else {
3194 3195 3196 3197 3198 3199 3200 3201 3202 3203 3204 3205 3206 3207
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlFrozenBatchNormBackward(handle,
                                                           x_desc,
                                                           x,
                                                           y_backprop_desc,
                                                           y_backprop,
                                                           scale_desc,
                                                           scale,
                                                           saved_mean,
                                                           saved_var,
                                                           epsilon,
                                                           x_backprop_desc,
                                                           x_backprop,
                                                           scale_backprop,
                                                           offset_backprop));
3208 3209 3210
  }
}

3211
/* static */ void MLUCnnl::LayerNormForward(
3212 3213 3214 3215 3216 3217 3218 3219 3220 3221 3222 3223
    const ExecutionContext& ctx,
    int axis,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t weight_bias_desc,
    const void* weight,
    const void* bias,
    float eps,
    const cnnlTensorDescriptor_t y_desc,
    void* y,
    const cnnlTensorDescriptor_t mean_rstd_desc,
    void* saved_mean,
3224 3225 3226 3227 3228 3229 3230 3231 3232 3233 3234 3235
    void* saved_rstd) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetLayerNormOpWorkspaceSize(handle, axis, x_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3236 3237 3238 3239 3240 3241 3242 3243 3244 3245 3246 3247 3248 3249 3250
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLayerNormForward(handle,
                                                  x_desc,
                                                  x,
                                                  axis,
                                                  weight_bias_desc,
                                                  weight,
                                                  bias,
                                                  eps,
                                                  workspace_ptr,
                                                  workspace_size,
                                                  y_desc,
                                                  y,
                                                  mean_rstd_desc,
                                                  saved_mean,
                                                  saved_rstd));
3251 3252 3253
}

/* static */ void MLUCnnl::LayerNormBackward(
3254 3255 3256 3257 3258 3259 3260 3261 3262 3263 3264 3265 3266 3267 3268 3269 3270 3271 3272 3273 3274 3275 3276 3277 3278 3279 3280 3281 3282 3283 3284 3285
    const ExecutionContext& ctx,
    int axis,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t diff_z_desc,
    const void* diff_z,
    const cnnlTensorDescriptor_t weight_bias_desc,
    const void* weight,
    const cnnlTensorDescriptor_t mean_rstd_desc,
    const void* saved_mean,
    const void* saved_rstd,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x,
    void* diff_weight,
    void* diff_bias) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlLayerNormBackward(handle,
                                                   x_desc,
                                                   x,
                                                   axis,
                                                   diff_z_desc,
                                                   diff_z,
                                                   weight_bias_desc,
                                                   weight,
                                                   mean_rstd_desc,
                                                   saved_mean,
                                                   saved_rstd,
                                                   diff_x_desc,
                                                   diff_x,
                                                   diff_weight,
                                                   diff_bias));
3286 3287
}

3288
/* static */ void MLUCnnl::QuantizeParam(
3289 3290 3291 3292 3293 3294 3295 3296
    const ExecutionContext& ctx,
    const cnnlQuantizeMode_t mode,
    const int bitwidth,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    void* position,
    void* scale,
    void* offset) {
3297 3298 3299 3300 3301 3302 3303 3304 3305 3306 3307
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQuantizeParamWorkspaceSize(handle, input_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3308 3309 3310 3311 3312 3313 3314 3315 3316 3317 3318 3319 3320 3321 3322 3323 3324 3325 3326 3327 3328 3329 3330 3331 3332 3333 3334 3335 3336 3337
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQuantizeParam(handle,
                                               mode,
                                               input_desc,
                                               input,
                                               bitwidth,
                                               workspace_ptr,
                                               workspace_size,
                                               position,
                                               scale,
                                               offset));
}

/* static */ void MLUCnnl::Conv2D(const ExecutionContext& ctx,
                                  const cnnlConvolutionDescriptor_t conv_desc,
                                  const cnnlDataType_t tensor_dtype,
                                  const cnnlDataType_t dt_onchip,
                                  const void* input_position,
                                  const void* input_scale,
                                  const void* input_offset,
                                  const void* filter_position,
                                  const void* filter_scale,
                                  const void* filter_offset,
                                  const cnnlTensorDescriptor_t input_desc,
                                  const void* input,
                                  const cnnlTensorDescriptor_t filter_desc,
                                  const void* filter,
                                  const cnnlTensorDescriptor_t bias_desc,
                                  const void* bias,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
3338 3339 3340 3341 3342 3343 3344 3345 3346 3347 3348 3349
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(input_desc, dt_onchip));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(filter_desc, dt_onchip));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(output_desc, tensor_dtype));

  cnnlConvolutionForwardAlgo_t algo;
  const cnnlConvolutionFwdPreference_t preference =
      CNNL_CONVOLUTION_FWD_FASTEST;
3350 3351 3352 3353 3354 3355 3356
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetConvolutionForwardAlgorithm(handle,
                                                                conv_desc,
                                                                input_desc,
                                                                filter_desc,
                                                                output_desc,
                                                                preference,
                                                                &algo));
3357 3358

  size_t workspace_size = 0;
3359 3360 3361 3362 3363 3364 3365 3366 3367
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionForwardWorkspaceSize(handle,
                                             input_desc,
                                             filter_desc,
                                             output_desc,
                                             bias_desc,
                                             conv_desc,
                                             algo,
                                             &workspace_size));
3368 3369 3370 3371 3372 3373

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3374 3375 3376 3377 3378 3379 3380 3381 3382 3383 3384 3385 3386 3387 3388 3389 3390 3391 3392 3393 3394
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQuantizeConvolutionForward(handle,
                                                            conv_desc,
                                                            algo,
                                                            nullptr /*alpha*/,
                                                            input_desc,
                                                            input,
                                                            input_position,
                                                            input_scale,
                                                            input_offset,
                                                            filter_desc,
                                                            filter,
                                                            filter_position,
                                                            filter_scale,
                                                            filter_offset,
                                                            bias_desc,
                                                            bias,
                                                            workspace_ptr,
                                                            workspace_size,
                                                            nullptr /*beta*/,
                                                            output_desc,
                                                            output));
3395 3396 3397
}

/* static */ void MLUCnnl::FusedConvBNQuantify(
3398 3399 3400 3401 3402 3403 3404 3405 3406 3407 3408 3409 3410 3411 3412 3413 3414 3415 3416 3417 3418 3419
    const ExecutionContext& ctx,
    cnnlConvolutionDescriptor_t conv_desc,
    const void* epsilon_ptr,
    const int fused_ops_number,
    const cnnlDataType_t tensor_dtype,
    const int input_position,
    const float input_scale,
    const int filter_position,
    const float filter_scale,
    const cnnlTensorDescriptor_t scale_desc,
    const void* scale_ptr,
    const cnnlTensorDescriptor_t offset_desc,
    const void* offset_ptr,
    const cnnlTensorDescriptor_t mean_desc,
    const void* mean_ptr,
    const cnnlTensorDescriptor_t variance_desc,
    const void* variance_ptr,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t filter_desc,
    const void* filter,
    const cnnlTensorDescriptor_t output_desc,
3420 3421 3422 3423 3424 3425 3426 3427 3428 3429 3430 3431 3432 3433 3434 3435 3436 3437 3438 3439 3440 3441 3442
    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(input_desc, CNNL_DTYPE_INT16));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(filter_desc, CNNL_DTYPE_INT16));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(output_desc, tensor_dtype));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptorPositionAndScale(
      input_desc, input_position, input_scale));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptorPositionAndScale(
      filter_desc, filter_position, filter_scale));

  cnnlFusedOpsPlan_t fusion_plan = nullptr;
  cnnlActivationDescriptor_t active_desc = nullptr;
  cnnlFusedOpsConstParamPack_t cparam_pack = nullptr;
  cnnlFusedOpsVariantParamPack_t vparam_pack = nullptr;
  cnnlConvolutionForwardAlgo_t algo;
  cnnlFusedOps_t fusion_type = CNNL_CONV_SCALE_BN_ACTIVATION;
  cnnlConvolutionCastMode_t cast_mode = CNNL_OFFLINE_SYMMETRIC_QUANTIZE;
  cnnlConvolutionFwdPreference_t preference = CNNL_CONVOLUTION_FWD_FASTEST;

3443 3444 3445 3446 3447 3448 3449
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetConvolutionForwardAlgorithm(handle,
                                                                conv_desc,
                                                                input_desc,
                                                                filter_desc,
                                                                output_desc,
                                                                preference,
                                                                &algo));
3450 3451 3452 3453 3454 3455 3456 3457 3458 3459 3460 3461 3462 3463 3464 3465 3466 3467 3468 3469 3470 3471 3472 3473 3474 3475 3476 3477 3478 3479 3480 3481 3482 3483 3484 3485 3486 3487 3488 3489 3490 3491 3492 3493 3494 3495 3496 3497 3498 3499 3500 3501 3502 3503 3504 3505 3506 3507 3508 3509 3510 3511 3512 3513 3514 3515 3516 3517 3518 3519 3520 3521 3522 3523 3524 3525 3526 3527 3528 3529 3530 3531 3532 3533 3534 3535 3536 3537 3538 3539 3540 3541 3542 3543 3544
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateFusedOpsPlan(&fusion_plan, fusion_type));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCreateFusedOpsConstParamPack(&cparam_pack, fusion_type));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlCreateFusedOpsVariantParamPack(&vparam_pack, fusion_type));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_XDESC, input_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetFusedOpsVariantParamPackAttribute(vparam_pack, CNNL_PTR_X, input));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_WDESC, filter_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_W, filter));

  if (fused_ops_number > 1) {
    cnnlCreateActivationDescriptor(&active_desc);
    cnnlNanPropagation_t nan_opt = CNNL_NOT_PROPAGATE_NAN;
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetActivationDescriptor(
        active_desc, CNNL_ACTIVATION_RELU, nan_opt, 0.0));
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
        cparam_pack, CNNL_ACTIVATION_DESC, active_desc));
  }
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_BN_WEIGHT_BIAS_MEAN_VAR_DESC, scale_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_BN_WEIGHT, scale_ptr));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_BN_WEIGHT_BIAS_MEAN_VAR_DESC, offset_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_BN_BIAS, offset_ptr));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_BN_WEIGHT_BIAS_MEAN_VAR_DESC, mean_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_BN_MEAN, mean_ptr));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_BN_WEIGHT_BIAS_MEAN_VAR_DESC, variance_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_BN_VAR, variance_ptr));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_CONV_DESC, conv_desc));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_SCALAR_CONV_FWD_ALGO, &algo));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_SCALAR_CONV_FWD_CAST_MODE, &cast_mode));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_SCALAR_BN_EPSILON, epsilon_ptr));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsConstParamPackAttribute(
      cparam_pack, CNNL_YDESC, output_desc));

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
      vparam_pack, CNNL_PTR_Y, output));

  // get workspace size
  size_t workspace_size = 0;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlMakeFusedOpsPlan(handle, fusion_plan, cparam_pack, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  if (workspace_size > 0) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
        vparam_pack, CNNL_PTR_WORKSPACE, workspace_ptr));
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetFusedOpsVariantParamPackAttribute(
        vparam_pack, CNNL_SCALAR_WORKSPACE_SIZE, &workspace_size));
  }
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlFusedOpsExecute(handle, fusion_plan, vparam_pack));

  if (active_desc) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyActivationDescriptor(active_desc));
  }

  if (cparam_pack) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyFusedOpsConstParamPack(cparam_pack));
  }

  if (vparam_pack) {
    PADDLE_ENFORCE_MLU_SUCCESS(
        cnnlDestroyFusedOpsVariantParamPack(vparam_pack));
  }

  if (fusion_plan) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyFusedOpsPlan(fusion_plan));
  }
}

/* static */ void MLUCnnl::ConvBackpropInput(
3545 3546 3547 3548 3549 3550 3551 3552
    const ExecutionContext& ctx,
    const cnnlConvolutionDescriptor_t conv_desc,
    const cnnlTensorDescriptor_t filter_desc,
    const void* filter,
    const cnnlTensorDescriptor_t out_backprop_desc,
    const void* out_backprop,
    const cnnlTensorDescriptor_t in_backprop_desc,
    void* in_backprop) {
3553 3554 3555 3556 3557
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  cnnlConvolutionBwdDataAlgo_t algo;
  const cnnlConvolutionBwdDataPreference_t preference =
      CNNL_CONVOLUTION_BWD_DATA_FASTEST;
3558 3559 3560 3561 3562 3563 3564 3565
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardDataAlgorithm(handle,
                                              filter_desc,
                                              out_backprop_desc,
                                              conv_desc,
                                              in_backprop_desc,
                                              preference,
                                              &algo));
3566 3567

  size_t workspace_size = 0;
3568 3569 3570 3571 3572 3573 3574 3575
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardDataWorkspaceSize(handle,
                                                  filter_desc,
                                                  out_backprop_desc,
                                                  conv_desc,
                                                  in_backprop_desc,
                                                  algo,
                                                  &workspace_size));
3576 3577 3578 3579 3580 3581

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3582 3583 3584 3585 3586 3587 3588 3589 3590 3591 3592 3593 3594
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlConvolutionBackwardData(handle,
                                                         nullptr /*alpha*/,
                                                         filter_desc,
                                                         filter,
                                                         out_backprop_desc,
                                                         out_backprop,
                                                         conv_desc,
                                                         algo,
                                                         workspace_ptr,
                                                         workspace_size,
                                                         nullptr /*beta*/,
                                                         in_backprop_desc,
                                                         in_backprop));
3595 3596 3597
}

/* static */ void MLUCnnl::QuantizeConvBackpropInput(
3598 3599 3600 3601 3602 3603 3604 3605 3606 3607 3608 3609 3610 3611 3612 3613
    const ExecutionContext& ctx,
    const cnnlConvolutionDescriptor_t conv_desc,
    const cnnlDataType_t tensor_dtype,
    const cnnlDataType_t dt_onchip,
    const void* filter_position,
    const void* filter_scale,
    const void* filter_offset,
    const void* out_backprop_position,
    const void* out_backprop_scale,
    const void* out_backprop_offset,
    const cnnlTensorDescriptor_t filter_desc,
    const void* filter,
    const cnnlTensorDescriptor_t out_backprop_desc,
    const void* out_backprop,
    const cnnlTensorDescriptor_t in_backprop_desc,
    void* in_backprop) {
3614 3615 3616 3617 3618 3619 3620 3621 3622 3623
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(filter_desc, dt_onchip));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(out_backprop_desc, dt_onchip));

  cnnlConvolutionBwdDataAlgo_t algo;
  const cnnlConvolutionBwdDataPreference_t preference =
      CNNL_CONVOLUTION_BWD_DATA_FASTEST;
3624 3625 3626 3627 3628 3629 3630 3631
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardDataAlgorithm(handle,
                                              filter_desc,
                                              out_backprop_desc,
                                              conv_desc,
                                              in_backprop_desc,
                                              preference,
                                              &algo));
3632 3633

  size_t workspace_size = 0;
3634 3635 3636 3637 3638 3639 3640 3641
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardDataWorkspaceSize(handle,
                                                  filter_desc,
                                                  out_backprop_desc,
                                                  conv_desc,
                                                  in_backprop_desc,
                                                  algo,
                                                  &workspace_size));
3642 3643 3644 3645 3646 3647

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3648 3649 3650 3651 3652 3653 3654 3655 3656 3657 3658 3659 3660 3661 3662 3663 3664 3665 3666 3667
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlQuantizeConvolutionBackwardData(handle,
                                          nullptr /*alpha*/,
                                          filter_desc,
                                          filter,
                                          filter_position,
                                          filter_scale,
                                          filter_offset,
                                          out_backprop_desc,
                                          out_backprop,
                                          out_backprop_position,
                                          out_backprop_scale,
                                          out_backprop_offset,
                                          conv_desc,
                                          algo,
                                          workspace_ptr,
                                          workspace_size,
                                          nullptr /*beta*/,
                                          in_backprop_desc,
                                          in_backprop));
3668 3669 3670
}

/* static */ void MLUCnnl::ConvBackpropFilter(
3671 3672 3673 3674 3675 3676 3677 3678
    const ExecutionContext& ctx,
    const cnnlConvolutionDescriptor_t conv_desc,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t out_backprop_desc,
    const void* out_backprop,
    const cnnlTensorDescriptor_t filter_backprop_desc,
    void* filter_backprop) {
3679 3680 3681 3682 3683
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  cnnlConvolutionBwdFilterAlgo_t algo;
  const cnnlConvolutionBwdFilterPreference_t preference =
      CNNL_CONVOLUTION_BWD_FILTER_FASTEST;
3684 3685 3686 3687 3688 3689 3690 3691
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardFilterAlgorithm(handle,
                                                conv_desc,
                                                input_desc,
                                                out_backprop_desc,
                                                filter_backprop_desc,
                                                preference,
                                                &algo));
3692 3693

  size_t workspace_size = 0;
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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardFilterWorkspaceSize(handle,
                                                    input_desc,
                                                    out_backprop_desc,
                                                    filter_backprop_desc,
                                                    conv_desc,
                                                    algo,
                                                    &workspace_size));
3702 3703 3704 3705 3706 3707

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlConvolutionBackwardFilter(handle,
                                                           nullptr /*alpha*/,
                                                           input_desc,
                                                           input,
                                                           out_backprop_desc,
                                                           out_backprop,
                                                           conv_desc,
                                                           algo,
                                                           workspace_ptr,
                                                           workspace_size,
                                                           nullptr /*beta*/,
                                                           filter_backprop_desc,
                                                           filter_backprop));
3721 3722 3723
}

/* static */ void MLUCnnl::QuantizeConvBackpropFilter(
3724 3725 3726 3727 3728 3729 3730 3731 3732 3733 3734 3735 3736 3737 3738 3739
    const ExecutionContext& ctx,
    const cnnlConvolutionDescriptor_t conv_desc,
    const cnnlDataType_t tensor_dtype,
    const cnnlDataType_t dt_onchip,
    const void* input_position,
    const void* input_scale,
    const void* input_offset,
    const void* out_backprop_position,
    const void* out_backprop_scale,
    const void* out_backprop_offset,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t out_backprop_desc,
    const void* out_backprop,
    const cnnlTensorDescriptor_t filter_backprop_desc,
    void* filter_backprop) {
3740 3741 3742 3743 3744 3745 3746 3747 3748 3749 3750 3751
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(input_desc, dt_onchip));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTensorDescriptorOnchipDataType(out_backprop_desc, dt_onchip));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetTensorDescriptorOnchipDataType(
      filter_backprop_desc, tensor_dtype));

  cnnlConvolutionBwdFilterAlgo_t algo;
  const cnnlConvolutionBwdFilterPreference_t preference =
      CNNL_CONVOLUTION_BWD_FILTER_FASTEST;
3752 3753 3754 3755 3756 3757 3758 3759
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardFilterAlgorithm(handle,
                                                conv_desc,
                                                input_desc,
                                                out_backprop_desc,
                                                filter_backprop_desc,
                                                preference,
                                                &algo));
3760 3761

  size_t workspace_size = 0;
3762 3763 3764 3765 3766 3767 3768 3769
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetConvolutionBackwardFilterWorkspaceSize(handle,
                                                    input_desc,
                                                    out_backprop_desc,
                                                    filter_backprop_desc,
                                                    conv_desc,
                                                    algo,
                                                    &workspace_size));
3770 3771 3772 3773 3774 3775

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlQuantizeConvolutionBackwardFilter(handle,
                                            nullptr /*alpha*/,
                                            input_desc,
                                            input,
                                            input_position,
                                            input_scale,
                                            input_offset,
                                            out_backprop_desc,
                                            out_backprop,
                                            out_backprop_position,
                                            out_backprop_scale,
                                            out_backprop_offset,
                                            conv_desc,
                                            algo,
                                            workspace_ptr,
                                            workspace_size,
                                            nullptr /*beta*/,
                                            filter_backprop_desc,
                                            filter_backprop));
}

/* static */ void MLUCnnl::DCNForward(const ExecutionContext& ctx,
                                      const cnnlDCNDescriptor_t dcn_desc,
                                      const cnnlTensorDescriptor_t input_desc,
                                      const void* input,
                                      const cnnlTensorDescriptor_t offset_desc,
                                      const void* offset,
                                      const cnnlTensorDescriptor_t mask_desc,
                                      const void* mask,
                                      const cnnlTensorDescriptor_t weight_desc,
                                      const void* weight,
                                      const cnnlTensorDescriptor_t bias_desc,
                                      const void* bias,
                                      const cnnlTensorDescriptor_t output_desc,
                                      void* output) {
3812 3813 3814
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
3815 3816 3817 3818 3819 3820 3821 3822 3823
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetDCNForwardWorkspaceSize(handle,
                                                            dcn_desc,
                                                            input_desc,
                                                            offset_desc,
                                                            mask_desc,
                                                            weight_desc,
                                                            bias_desc,
                                                            output_desc,
                                                            &workspace_size));
3824 3825 3826 3827 3828 3829

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3830 3831 3832 3833 3834 3835 3836 3837 3838 3839 3840 3841 3842 3843 3844 3845
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDCNForward(handle,
                                            dcn_desc,
                                            input_desc,
                                            input,
                                            offset_desc,
                                            offset,
                                            mask_desc,
                                            mask,
                                            weight_desc,
                                            weight,
                                            bias_desc,
                                            bias,
                                            workspace_ptr,
                                            workspace_size,
                                            output_desc,
                                            output));
3846 3847 3848
}

/* static */ void MLUCnnl::DCNBackwardData(
3849 3850 3851 3852 3853 3854 3855 3856 3857 3858 3859 3860 3861 3862 3863 3864 3865 3866
    const ExecutionContext& ctx,
    const cnnlDCNDescriptor_t dcn_desc,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t offset_desc,
    const void* offset,
    const cnnlTensorDescriptor_t mask_desc,
    const void* mask,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t grad_output_desc,
    const void* grad_output,
    const cnnlTensorDescriptor_t grad_input_desc,
    void* grad_input,
    const cnnlTensorDescriptor_t grad_offset_desc,
    void* grad_offset,
    const cnnlTensorDescriptor_t grad_mask_desc,
    void* grad_mask) {
3867 3868 3869
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
3870 3871 3872 3873 3874 3875 3876 3877 3878 3879 3880 3881
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetDCNBakcwardDataWorkspaceSize(handle,
                                          dcn_desc,
                                          input_desc,
                                          offset_desc,
                                          mask_desc,
                                          weight_desc,
                                          grad_output_desc,
                                          grad_input_desc,
                                          grad_offset_desc,
                                          grad_mask_desc,
                                          &workspace_size));
3882 3883 3884 3885 3886 3887

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3888 3889 3890 3891 3892 3893 3894 3895 3896 3897 3898 3899 3900 3901 3902 3903 3904 3905 3906 3907
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDCNBackwardData(handle,
                                                 dcn_desc,
                                                 input_desc,
                                                 input,
                                                 offset_desc,
                                                 offset,
                                                 mask_desc,
                                                 mask,
                                                 weight_desc,
                                                 weight,
                                                 grad_output_desc,
                                                 grad_output,
                                                 workspace_ptr,
                                                 workspace_size,
                                                 grad_input_desc,
                                                 grad_input,
                                                 grad_offset_desc,
                                                 grad_offset,
                                                 grad_mask_desc,
                                                 grad_mask));
3908 3909 3910
}

/* static */ void MLUCnnl::DCNBackwardWeight(
3911 3912 3913 3914 3915 3916 3917 3918 3919 3920 3921 3922 3923 3924
    const ExecutionContext& ctx,
    const cnnlDCNDescriptor_t dcn_desc,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t offset_desc,
    const void* offset,
    const cnnlTensorDescriptor_t mask_desc,
    const void* mask,
    const cnnlTensorDescriptor_t grad_output_desc,
    const void* grad_output,
    const cnnlTensorDescriptor_t grad_weight_desc,
    void* grad_weight,
    const cnnlTensorDescriptor_t grad_bias_desc,
    void* grad_bias) {
3925 3926 3927
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size = 0;
3928 3929 3930 3931 3932 3933 3934 3935 3936 3937
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetDCNBackwardWeightWorkspaceSize(handle,
                                            dcn_desc,
                                            input_desc,
                                            offset_desc,
                                            mask_desc,
                                            grad_output_desc,
                                            grad_weight_desc,
                                            grad_bias_desc,
                                            &workspace_size));
3938 3939 3940 3941 3942 3943

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

3944 3945 3946 3947 3948 3949 3950 3951 3952 3953 3954 3955 3956 3957 3958 3959
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDCNBackwardWeight(handle,
                                                   dcn_desc,
                                                   input_desc,
                                                   input,
                                                   offset_desc,
                                                   offset,
                                                   mask_desc,
                                                   mask,
                                                   grad_output_desc,
                                                   grad_output,
                                                   workspace_ptr,
                                                   workspace_size,
                                                   grad_weight_desc,
                                                   grad_weight,
                                                   grad_bias_desc,
                                                   grad_bias));
3960 3961
}

3962
/* static */ void MLUCnnl::QuantizeMatMul(
3963 3964 3965 3966 3967 3968 3969 3970 3971 3972 3973 3974 3975 3976 3977 3978
    const ExecutionContext& ctx,
    const bool transpose_a,
    const bool transpose_b,
    const cnnlTensorDescriptor_t a_desc,
    const void* a,
    const void* a_position,
    const void* a_scale,
    const void* a_offset,
    const cnnlTensorDescriptor_t b_desc,
    const void* b,
    const void* b_position,
    const void* b_scale,
    const void* b_offset,
    const cnnlDataType_t quant_type,
    const cnnlDataType_t data_type,
    const cnnlTensorDescriptor_t output_desc,
3979 3980 3981 3982 3983 3984 3985 3986 3987 3988 3989 3990 3991 3992 3993 3994 3995 3996 3997 3998 3999 4000 4001 4002 4003 4004 4005 4006 4007 4008 4009 4010 4011 4012 4013 4014 4015 4016 4017 4018
    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // Set onchip data type
  cnnlSetTensorDescriptorOnchipDataType(a_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(b_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(output_desc, data_type);

  // Create and set matmul descriptor
  cnnlMatMulDescriptor_t matmul_desc;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatMulDescCreate(&matmul_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetMatMulDescAttr(
      matmul_desc, CNNL_MATMUL_DESC_COMPUTE_TYPE, &data_type, sizeof(int)));
  int transpose_a_int = static_cast<int>(transpose_a);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetMatMulDescAttr(
      matmul_desc, CNNL_MATMUL_DESC_TRANSA, &(transpose_a_int), sizeof(int)));
  int transpose_b_int = static_cast<int>(transpose_b);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetMatMulDescAttr(
      matmul_desc, CNNL_MATMUL_DESC_TRANSB, &(transpose_b_int), sizeof(int)));

  // Create and get matmul algorithim
  cnnlMatMulAlgo_t algo;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatMulAlgoCreate(&algo));
  const cnnlMatMulPreference_t preference = CNNL_MATMUL_FASTEST;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetQuantizeMatMulAlgorithm(
      handle, matmul_desc, a_desc, b_desc, output_desc, preference, &algo));

  // Get workspace
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetQuantizeMatMulWorkspaceSize(
      handle, matmul_desc, a_desc, b_desc, output_desc, algo, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  // Compute
  float alpha = 1.0;
  float beta = 0.0;
4019 4020 4021 4022 4023 4024 4025 4026 4027 4028 4029 4030 4031 4032 4033 4034 4035 4036 4037
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQuantizeMatMul(handle,
                                                matmul_desc,
                                                reinterpret_cast<void*>(&alpha),
                                                a_desc,
                                                a,
                                                a_position,
                                                a_scale,
                                                a_offset,
                                                b_desc,
                                                b,
                                                b_position,
                                                b_scale,
                                                b_offset,
                                                reinterpret_cast<void*>(&beta),
                                                output_desc,
                                                output,
                                                algo,
                                                workspace_ptr,
                                                workspace_size));
4038 4039 4040 4041 4042 4043 4044

  // Destroy matmul descriptor and algorithim
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatMulDescDestroy(matmul_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatMulAlgoDestroy(algo));
}

/* static */ void MLUCnnl::QuantizeBatchMatMul(
4045 4046 4047 4048 4049 4050 4051 4052 4053 4054 4055 4056 4057 4058 4059 4060 4061
    const ExecutionContext& ctx,
    const bool adj_x,
    const bool adj_y,
    const cnnlTensorDescriptor_t in0_desc,
    const void* in0,
    const void* in0_position,
    const void* in0_scale,
    const void* in0_offset,
    const cnnlTensorDescriptor_t in1_desc,
    const void* in1,
    const void* in1_position,
    const void* in1_scale,
    const void* in1_offset,
    const cnnlDataType_t quant_type,
    const cnnlDataType_t data_type,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
4062 4063 4064 4065 4066 4067 4068 4069 4070 4071 4072 4073 4074 4075 4076 4077 4078 4079 4080 4081 4082 4083 4084 4085 4086 4087 4088 4089
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // Set onchip data type
  cnnlSetTensorDescriptorOnchipDataType(in0_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(in1_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(output_desc, data_type);

  // Create and set batch matmul descriptor
  cnnlBatchMatMulDescriptor_t bmm_desc;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulDescCreate(&bmm_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetBatchMatMulDescAttr(
      bmm_desc, CNNL_BMM_DESC_COMPUTE_TYPE, &data_type, sizeof(int)));
  int transpose_a_int = static_cast<int>(adj_x);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetBatchMatMulDescAttr(
      bmm_desc, CNNL_BMM_DESC_TRANSA, &(transpose_a_int), sizeof(int)));
  int transpose_b_int = static_cast<int>(adj_y);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetBatchMatMulDescAttr(
      bmm_desc, CNNL_BMM_DESC_TRANSB, &(transpose_b_int), sizeof(int)));

  // Create and get batch matmul algorithim
  cnnlBatchMatMulAlgo_t algo;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulAlgoCreate(&algo));
  const cnnlBatchMatMulPreference_t preference = CNNL_BMM_FASTEST;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetQuantizeBatchMatMulAlgorithm(
      handle, bmm_desc, in0_desc, in1_desc, output_desc, preference, &algo));

  // Get workspace
  size_t workspace_size;
4090 4091 4092 4093 4094 4095 4096 4097
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQuantizeBatchMatMulWorkspaceSize(handle,
                                              bmm_desc,
                                              in0_desc,
                                              in1_desc,
                                              output_desc,
                                              algo,
                                              &workspace_size));
4098 4099 4100 4101 4102 4103 4104 4105 4106

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  // Compute
  float alpha = 1.0;
  float beta = 0.0;
4107 4108 4109 4110 4111 4112 4113 4114 4115 4116 4117 4118 4119 4120 4121 4122 4123 4124 4125 4126
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlQuantizeBatchMatMul(handle,
                              bmm_desc,
                              reinterpret_cast<void*>(&alpha),
                              in0_desc,
                              in0,
                              in0_position,
                              in0_scale,
                              in0_offset,
                              in1_desc,
                              in1,
                              in1_position,
                              in1_scale,
                              in1_offset,
                              reinterpret_cast<void*>(&beta),
                              output_desc,
                              output,
                              algo,
                              workspace_ptr,
                              workspace_size));
4127 4128 4129 4130 4131 4132 4133

  // Destroy matmul descriptor and algorithim
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulDescDestroy(bmm_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulAlgoDestroy(algo));
}

/* static */ void MLUCnnl::QuantizeBatchMatMulBCast(
4134 4135 4136 4137 4138 4139 4140 4141 4142 4143 4144 4145 4146 4147 4148 4149 4150
    const ExecutionContext& ctx,
    const bool adj_x,
    const bool adj_y,
    const cnnlTensorDescriptor_t in0_desc,
    const void* in0,
    const void* in0_position,
    const void* in0_scale,
    const void* in0_offset,
    const cnnlTensorDescriptor_t in1_desc,
    const void* in1,
    const void* in1_position,
    const void* in1_scale,
    const void* in1_offset,
    const cnnlDataType_t quant_type,
    const cnnlDataType_t data_type,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
4151 4152 4153 4154 4155 4156 4157 4158 4159 4160
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  // Set onchip data type
  cnnlSetTensorDescriptorOnchipDataType(in0_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(in1_desc, quant_type);
  cnnlSetTensorDescriptorOnchipDataType(output_desc, data_type);

  // Create and set batch matmul descriptor
  cnnlBatchMatMulBCastDescriptor_t bmm_bcast_desc;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulBCastDescCreate(&bmm_bcast_desc));
4161 4162 4163 4164 4165
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetBatchMatMulBCastDescAttr(bmm_bcast_desc,
                                      CNNL_BMM_BCAST_DESC_COMPUTE_TYPE,
                                      &data_type,
                                      sizeof(int)));
4166
  int transpose_a_int = static_cast<int>(adj_x);
4167 4168 4169 4170 4171
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetBatchMatMulBCastDescAttr(bmm_bcast_desc,
                                      CNNL_BMM_BCAST_DESC_TRANSA,
                                      &(transpose_a_int),
                                      sizeof(int)));
4172
  int transpose_b_int = static_cast<int>(adj_y);
4173 4174 4175 4176 4177
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetBatchMatMulBCastDescAttr(bmm_bcast_desc,
                                      CNNL_BMM_BCAST_DESC_TRANSB,
                                      &(transpose_b_int),
                                      sizeof(int)));
4178 4179 4180 4181 4182

  // Create and get batch matmul algorithim
  cnnlBatchMatMulBCastAlgo_t algo;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulBCastAlgoCreate(&algo));
  const cnnlBatchMatMulBCastPreference_t preference = CNNL_BMM_BCAST_FASTEST;
4183 4184 4185 4186 4187 4188 4189 4190
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQuantizeBatchMatMulBCastAlgorithm(handle,
                                               bmm_bcast_desc,
                                               in0_desc,
                                               in1_desc,
                                               output_desc,
                                               preference,
                                               &algo));
4191 4192 4193

  // Get workspace
  size_t workspace_size;
4194 4195 4196 4197 4198 4199 4200 4201
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQuantizeBatchMatMulBCastWorkspaceSize(handle,
                                                   bmm_bcast_desc,
                                                   in0_desc,
                                                   in1_desc,
                                                   output_desc,
                                                   algo,
                                                   &workspace_size));
4202 4203 4204 4205 4206 4207 4208 4209 4210

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  // Compute
  float alpha = 1.0;
  float beta = 0.0;
4211 4212 4213 4214 4215 4216 4217 4218 4219 4220 4221 4222 4223 4224 4225 4226 4227 4228 4229 4230
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlQuantizeBatchMatMulBCast(handle,
                                   bmm_bcast_desc,
                                   reinterpret_cast<void*>(&alpha),
                                   in0_desc,
                                   in0,
                                   in0_position,
                                   in0_scale,
                                   in0_offset,
                                   in1_desc,
                                   in1,
                                   in1_position,
                                   in1_scale,
                                   in1_offset,
                                   reinterpret_cast<void*>(&beta),
                                   output_desc,
                                   output,
                                   algo,
                                   workspace_ptr,
                                   workspace_size));
4231 4232 4233 4234 4235 4236

  // Destroy matmul descriptor and algorithim
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulBCastDescDestroy(bmm_bcast_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBatchMatMulBCastAlgoDestroy(algo));
}

4237 4238 4239 4240 4241 4242 4243
/* static */ void MLUCnnl::Transpose(const ExecutionContext& ctx,
                                     const std::vector<int> perm,
                                     const int input_dim,
                                     const cnnlTensorDescriptor_t input_desc,
                                     const void* input,
                                     const cnnlTensorDescriptor_t output_desc,
                                     void* output) {
4244 4245 4246 4247 4248 4249 4250 4251 4252 4253 4254 4255 4256 4257 4258
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  cnnlTransposeDescriptor_t perm_desc;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateTransposeDescriptor(&perm_desc));
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSetTransposeDescriptor(perm_desc, input_dim, perm.data()));

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetTransposeWorkspaceSize(
      handle, input_desc, perm_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4259 4260 4261 4262 4263 4264 4265 4266
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlTranspose_v2(handle,
                                              perm_desc,
                                              input_desc,
                                              input,
                                              output_desc,
                                              output,
                                              workspace_ptr,
                                              workspace_size));
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  if (perm_desc) {
    PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyTransposeDescriptor(perm_desc));
  }
}

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/* static */ void MLUCnnl::TrilTriu(const ExecutionContext& ctx,
                                    const int diagonal_k,
                                    const bool tri_up_mode,
                                    const cnnlTensorDescriptor_t input_desc,
                                    const void* input,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
4279
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
4280 4281
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlTri(
      handle, diagonal_k, tri_up_mode, input_desc, input, output_desc, output));
4282 4283
}

4284
/* static */ void MLUCnnl::MatrixBandPart(
4285 4286 4287 4288 4289 4290
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t data_desc,
    const void* input,
    const int num_lower,
    const int num_upper,
    void* output) {
4291 4292
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

4293 4294
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMatrixBandPart(
      handle, data_desc, input, num_lower, num_upper, output));
4295 4296 4297 4298
}

/* static */ void MLUCnnl::NumTrue(const ExecutionContext& ctx,
                                   const cnnlTensorDescriptor_t x_desc,
4299
                                   const void* x,
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fwenguang 已提交
4300 4301
                                   const cnnlTensorDescriptor_t num_true_desc,
                                   void* num_true) {
4302 4303 4304
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
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fwenguang 已提交
4305
      cnnlNumTrue_v2(handle, x_desc, x, num_true_desc, num_true));
4306 4307 4308 4309
}

/* static */ void MLUCnnl::Where(const ExecutionContext& ctx,
                                 const cnnlTensorDescriptor_t x_desc,
4310
                                 const void* x,
4311 4312 4313
                                 const cnnlTensorDescriptor_t num_true_desc,
                                 const void* num_true,
                                 const bool as_tuple,
4314
                                 const cnnlTensorDescriptor_t y_desc,
4315
                                 void* y) {
4316
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
4317
  size_t workspace_size;
4318
  PADDLE_ENFORCE_MLU_SUCCESS(
4319 4320 4321 4322 4323 4324 4325 4326 4327 4328 4329 4330 4331 4332 4333 4334 4335
      cnnlGetWhereWorkspaceSize(handle, num_true_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlWhere_v2(handle,
                                          x_desc,
                                          x,
                                          num_true_desc,
                                          num_true,
                                          as_tuple,
                                          workspace_ptr,
                                          workspace_size,
                                          y_desc,
                                          y));
4336 4337
}

4338 4339 4340 4341 4342 4343 4344 4345 4346 4347
/* static */ void MLUCnnl::InTopK(const ExecutionContext& ctx,
                                  const cnnlTensorDescriptor_t predictions_desc,
                                  const void* predictions,
                                  const cnnlTensorDescriptor_t targets_desc,
                                  const void* targets,
                                  const cnnlTensorDescriptor_t k_desc,
                                  const void* k,
                                  const int k_int,
                                  const cnnlTensorDescriptor_t output_desc,
                                  void* output) {
4348
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
4349 4350 4351 4352 4353 4354 4355 4356 4357 4358
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlInTopK(handle,
                                        predictions_desc,
                                        predictions,
                                        targets_desc,
                                        targets,
                                        k_desc,
                                        k,
                                        k_int,
                                        output_desc,
                                        output));
4359 4360
}

4361 4362 4363 4364 4365 4366 4367 4368 4369 4370
/* static */ void MLUCnnl::ScatterNd(const ExecutionContext& ctx,
                                     cnnlScatterNdMode_t mode,
                                     const cnnlTensorDescriptor_t indices_desc,
                                     const void* indices,
                                     const cnnlTensorDescriptor_t updates_desc,
                                     const void* updates,
                                     const cnnlTensorDescriptor_t input_desc,
                                     const void* input,
                                     const cnnlTensorDescriptor_t output_desc,
                                     void* output) {
4371
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
4372 4373 4374 4375 4376 4377 4378 4379 4380 4381
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlScatterNd_v2(handle,
                                              mode,
                                              indices_desc,
                                              indices,
                                              updates_desc,
                                              updates,
                                              input_desc,
                                              input,
                                              output_desc,
                                              output));
4382 4383
}

4384 4385 4386 4387 4388 4389 4390 4391
/* static */ void MLUCnnl::BitWise(const ExecutionContext& ctx,
                                   const cnnlBitComputeOp_t optype,
                                   const cnnlTensorDescriptor_t input1_desc,
                                   const void* input1,
                                   const cnnlTensorDescriptor_t input2_desc,
                                   const void* input2,
                                   const cnnlTensorDescriptor_t output_desc,
                                   void* output) {
4392 4393 4394 4395 4396 4397 4398 4399 4400 4401
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBitComputeWorkspaceSize(
      handle, input1_desc, input2_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4402 4403 4404 4405 4406 4407 4408 4409 4410 4411
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBitCompute_v2(handle,
                                               optype,
                                               input1_desc,
                                               input1,
                                               input2_desc,
                                               input2,
                                               output_desc,
                                               output,
                                               workspace_ptr,
                                               workspace_size));
4412 4413 4414 4415 4416
}

/* static */ void MLUCnnl::QR(const ExecutionContext& ctx,
                              const cnnlTensorDescriptor_t a_desc,
                              const void* a,
4417 4418 4419 4420
                              const cnnlTensorDescriptor_t q_desc,
                              void* q,
                              const cnnlTensorDescriptor_t r_desc,
                              void* r,
4421 4422 4423 4424 4425 4426 4427 4428 4429 4430 4431
                              const bool some) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlGetQRWorkspaceSize(handle, a_desc, some, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4432 4433 4434 4435 4436 4437 4438 4439 4440 4441
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlQR(handle,
                                    a_desc,
                                    a,
                                    q_desc,
                                    q,
                                    r_desc,
                                    r,
                                    workspace_ptr,
                                    workspace_size,
                                    some));
4442 4443 4444 4445 4446 4447 4448 4449 4450 4451 4452
}

/* static */ void MLUCnnl::Reciprocal(const ExecutionContext& ctx,
                                      const cnnlTensorDescriptor_t input_desc,
                                      const void* input,
                                      const cnnlTensorDescriptor_t output_desc,
                                      void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlReciprocal(handle, input_desc, input, output_desc, output));
4453 4454
}

4455 4456 4457 4458 4459 4460 4461 4462 4463 4464
/* static */ void MLUCnnl::BceLoss(const ExecutionContext& ctx,
                                   const cnnlBceLossReduction_t reduction,
                                   const cnnlTensorDescriptor_t input_desc,
                                   const void* input,
                                   const cnnlTensorDescriptor_t target_desc,
                                   const void* target,
                                   const cnnlTensorDescriptor_t weight_desc,
                                   const void* weight,
                                   const cnnlTensorDescriptor_t output_desc,
                                   void* output) {
4465 4466 4467 4468 4469 4470 4471 4472 4473 4474 4475
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBceLossWorkspaceSize(
      handle, input_desc, weight_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4476 4477 4478 4479 4480 4481 4482 4483 4484 4485 4486 4487
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBceLoss(handle,
                                         input_desc,
                                         input,
                                         target_desc,
                                         target,
                                         weight_desc,
                                         weight,
                                         reduction,
                                         workspace_ptr,
                                         workspace_size,
                                         output_desc,
                                         output));
4488 4489 4490
}

/* static */ void MLUCnnl::BceLossBackward(
4491 4492 4493 4494 4495 4496 4497 4498 4499 4500 4501 4502
    const ExecutionContext& ctx,
    const cnnlBceLossReduction_t reduction,
    const cnnlTensorDescriptor_t grad_desc,
    const void* grad,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t target_desc,
    const void* target,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
4503 4504 4505 4506 4507 4508 4509 4510 4511 4512 4513
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBceLossBackwardWorkspaceSize(
      handle, target_desc, weight_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4514 4515 4516 4517 4518 4519 4520 4521 4522 4523 4524 4525 4526 4527
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBceLossBackward(handle,
                                                 grad_desc,
                                                 grad,
                                                 input_desc,
                                                 input,
                                                 target_desc,
                                                 target,
                                                 weight_desc,
                                                 weight,
                                                 reduction,
                                                 workspace_ptr,
                                                 workspace_size,
                                                 output_desc,
                                                 output));
4528 4529
}

4530
/* static */ void MLUCnnl::EmbeddingForward(
4531 4532 4533 4534 4535 4536 4537 4538
    const ExecutionContext& ctx,
    const int padding_idx,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t indices_desc,
    const int* indices,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
4539 4540
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

4541 4542 4543 4544 4545 4546 4547 4548 4549 4550
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlEmbeddingForward_v2(handle,
                                                     weight_desc,
                                                     weight,
                                                     indices_desc,
                                                     indices,
                                                     padding_idx,
                                                     nullptr /*max_norm*/,
                                                     nullptr /*norm_type*/,
                                                     output_desc,
                                                     output));
4551 4552
}

4553
/* static */ void MLUCnnl::Transform(const ExecutionContext& ctx,
4554 4555
                                     const void* alpha,
                                     const void* beta,
4556 4557 4558 4559 4560 4561 4562
                                     const cnnlTensorDescriptor_t input_desc,
                                     const void* input,
                                     const cnnlTensorDescriptor_t output_desc,
                                     void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  const cnnlPointerMode_t pointer_mode = CNNL_POINTER_MODE_HOST;
4563 4564 4565 4566 4567 4568 4569 4570
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlTransform_v2(handle,
                                              pointer_mode,
                                              alpha,
                                              input_desc,
                                              input,
                                              beta,
                                              output_desc,
                                              output));
4571 4572
}

4573
/* static */ void MLUCnnl::EmbeddingBackward(
4574 4575 4576 4577 4578 4579 4580 4581 4582
    const ExecutionContext& ctx,
    int padding_idx,
    bool scale_grad_by_freq,
    const cnnlTensorDescriptor_t indices_desc,
    const void* indices,
    const cnnlTensorDescriptor_t diff_desc,
    const void* diff,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
4583 4584 4585 4586 4587 4588 4589 4590 4591 4592 4593
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetEmbeddingBackwardWorkspaceSize(
      handle, diff_desc, output_desc, scale_grad_by_freq, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

4594 4595 4596 4597 4598 4599 4600 4601 4602 4603 4604
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlEmbeddingBackward(handle,
                                                   padding_idx,
                                                   scale_grad_by_freq,
                                                   indices_desc,
                                                   indices,
                                                   diff_desc,
                                                   diff,
                                                   workspace_ptr,
                                                   workspace_size,
                                                   output_desc,
                                                   output));
4605 4606
}

4607 4608 4609 4610 4611 4612 4613 4614 4615 4616 4617 4618 4619 4620 4621 4622 4623 4624 4625 4626 4627 4628 4629 4630 4631 4632 4633 4634 4635 4636 4637 4638 4639 4640 4641 4642 4643 4644 4645 4646 4647 4648 4649 4650 4651 4652 4653 4654 4655 4656 4657
/* static */ void MLUCnnl::RNNForward(const ExecutionContext& ctx,
                                      const cnnlRNNDescriptor_t rnn_desc,
                                      const int dev_seq_lengths[],
                                      const void* weight_param_ptr,
                                      size_t weightspace_size,
                                      const cnnlSeqDataDescriptor_t x_desc,
                                      const void* x,
                                      const cnnlSeqDataDescriptor_t y_desc,
                                      void* y,
                                      const cnnlTensorDescriptor_t h_desc,
                                      const void* hx,
                                      void* hy,
                                      const cnnlTensorDescriptor_t c_desc,
                                      const void* cx,
                                      void* cy,
                                      void* reservespace_ptr) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  // make sure 1. cnnlSetRNNDescriptor_v2 is invoked
  //           2. x_desc is not NULL
  PADDLE_ENFORCE_NOT_NULL(
      rnn_desc,
      paddle::platform::errors::Fatal(
          "MLU RNNForward failed. rnn_desc initializing failed."));
  PADDLE_ENFORCE_NOT_NULL(
      x_desc,
      paddle::platform::errors::Fatal(
          "MLU RNNForward failed. x_desc initializing failed."));
  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  size_t workspace_size, reservespace_size;
  Tensor workspace;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetRNNTempSizes(
      handle, rnn_desc, x_desc, &workspace_size, &reservespace_size));
  workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);

  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRNNForwardTraining(handle,
                                                    rnn_desc,
                                                    dev_seq_lengths,
                                                    x_desc,
                                                    x,
                                                    y_desc,
                                                    y,
                                                    h_desc,
                                                    hx,
                                                    hy,
                                                    c_desc,
                                                    cx,
                                                    cy,
                                                    weight_param_ptr,
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                                                    weightspace_size,
                                                    workspace_ptr,
                                                    workspace_size,
                                                    reservespace_ptr,
                                                    reservespace_size));
}

/* static */ void MLUCnnl::RNNBackward(const ExecutionContext& ctx,
                                       const cnnlRNNDescriptor_t rnn_desc,
                                       cnnlWgradMode_t add_grad,
                                       const int dev_seq_lengths[],
                                       const void* weight_param_ptr,
                                       void* dweight_param_ptr,
                                       size_t weightspace_size,
                                       const cnnlSeqDataDescriptor_t x_desc,
                                       const void* x,
                                       void* dx,
                                       const cnnlSeqDataDescriptor_t y_desc,
                                       const void* y,
                                       const void* dy,
                                       const cnnlTensorDescriptor_t hx_desc,
                                       const void* hx,
                                       const void* dhy,
                                       void* dhx,
                                       const cnnlTensorDescriptor_t cx_desc,
                                       const void* cx,
                                       const void* dcy,
                                       void* dcx,
                                       void* reservespace_ptr,
                                       size_t reservespace_size) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_NOT_NULL(
      rnn_desc,
      paddle::platform::errors::Fatal(
          "MLU RNNForward failed. rnn_desc initializing failed."));
  PADDLE_ENFORCE_NOT_NULL(
      x_desc,
      paddle::platform::errors::Fatal(
          "MLU RNNForward failed. x_desc initializing failed."));
  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  size_t workspace_size;
  Tensor workspace;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetRNNTempSizes(
      handle, rnn_desc, x_desc, &workspace_size, &reservespace_size));
  workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRNNBackwardData(handle,
                                                 rnn_desc,
                                                 dev_seq_lengths,
                                                 y_desc,
                                                 y,
                                                 dy,
                                                 x_desc,
                                                 dx,
                                                 hx_desc,
                                                 hx,
                                                 dhy,
                                                 dhx,
                                                 cx_desc,
                                                 cx,
                                                 dcy,
                                                 dcx,
                                                 weight_param_ptr,
                                                 weightspace_size,
                                                 workspace_ptr,
                                                 workspace_size,
                                                 reservespace_ptr,
                                                 reservespace_size));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRNNBackwardWeights(handle,
                                                    rnn_desc,
                                                    add_grad,
                                                    dev_seq_lengths,
                                                    x_desc,
                                                    x,
                                                    hx_desc,
                                                    hx,
                                                    y_desc,
                                                    y,
                                                    dweight_param_ptr,
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                                                    weightspace_size,
                                                    workspace_ptr,
                                                    workspace_size,
                                                    reservespace_ptr,
                                                    reservespace_size));
}

/* static */ void MLUCnnl::Mask(const ExecutionContext& ctx,
                                cnnlMaskedOp_t masked_mode,
                                const cnnlTensorDescriptor_t input_desc,
                                const void* input,
                                const cnnlTensorDescriptor_t masked_desc,
                                const void* masked,
                                const cnnlTensorDescriptor_t value_desc,
                                const void* value,
                                const cnnlTensorDescriptor_t output_desc,
                                void* output,
                                uint32_t* number) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  size_t workspace_size;
  Tensor workspace;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetMaskedWorkspaceSize(handle,
                                                        masked_mode,
                                                        input_desc,
                                                        masked_desc,
                                                        value_desc,
                                                        output_desc,
                                                        &workspace_size));
  workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlMasked_v3(handle,
                                           masked_mode,
                                           input_desc,
                                           input,
                                           masked_desc,
                                           masked,
                                           value_desc,
                                           value,
                                           workspace_ptr,
                                           workspace_size,
                                           output_desc,
                                           output,
                                           number));
}

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/* static */ void MLUCnnl::BceWithLogits(
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    const ExecutionContext& ctx,
    cnnlBceWithLogitsReduction_t reduction,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t target_desc,
    const void* target,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t pos_weight_desc,
    const void* pos_weight,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBceWithLogitsWorkspaceSize(
      handle, input_desc, weight_desc, pos_weight_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  const cnnlComputationPreference_t prefer = CNNL_COMPUTATION_HIGH_PRECISION;
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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBceWithLogits_v2(handle,
                                                  prefer,
                                                  input_desc,
                                                  input,
                                                  target_desc,
                                                  target,
                                                  weight_desc,
                                                  weight,
                                                  pos_weight_desc,
                                                  pos_weight,
                                                  reduction,
                                                  workspace_ptr,
                                                  workspace_size,
                                                  output_desc,
                                                  output));
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}

/* static */ void MLUCnnl::BceWithLogitsBackward(
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    const ExecutionContext& ctx,
    cnnlBceWithLogitsReduction_t reduction,
    const cnnlTensorDescriptor_t grad_desc,
    const void* grad,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t target_desc,
    const void* target,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t pos_weight_desc,
    const void* pos_weight,
    const cnnlTensorDescriptor_t diff_input_desc,
    void* diff_input) {
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  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetBceWithLogitsBackwardWorkspaceSize(
      handle, target_desc, weight_desc, pos_weight_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

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  PADDLE_ENFORCE_MLU_SUCCESS(cnnlBceWithLogitsBackward(handle,
                                                       grad_desc,
                                                       grad,
                                                       input_desc,
                                                       input,
                                                       target_desc,
                                                       target,
                                                       weight_desc,
                                                       weight,
                                                       pos_weight_desc,
                                                       pos_weight,
                                                       reduction,
                                                       workspace_ptr,
                                                       workspace_size,
                                                       diff_input_desc,
                                                       diff_input));
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}

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/* static */ void MLUCnnl::RoiAlign(const ExecutionContext& ctx,
                                    const int pooled_height,
                                    const int pooled_width,
                                    const int sampling_ratio,
                                    const float spatial_scale,
                                    const bool aligned,
                                    const cnnlTensorDescriptor_t input_desc,
                                    const void* input,
                                    const cnnlTensorDescriptor_t boxes_desc,
                                    const void* boxes,
                                    const cnnlTensorDescriptor_t output_desc,
                                    void* output) {
  cnnlRoiAlignDescriptor_t roialign_desc;

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlCreateRoiAlignDescriptor(&roialign_desc));
  const int pool_mode = 1;  // average pooling mode
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSetRoiAlignDescriptor_v2(roialign_desc,
                                                          pooled_height,
                                                          pooled_width,
                                                          sampling_ratio,
                                                          spatial_scale,
                                                          pool_mode,
                                                          aligned));

  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRoiAlign_v2(handle,
                                             roialign_desc,
                                             input_desc,
                                             input,
                                             boxes_desc,
                                             boxes,
                                             output_desc,
                                             output,
                                             nullptr,
                                             nullptr,
                                             nullptr,
                                             nullptr));
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlDestroyRoiAlignDescriptor(roialign_desc));
}

/* static */ void MLUCnnl::RoiAlignBackward(
    const ExecutionContext& ctx,
    const int sampling_ratio,
    const float spatial_scale,
    const bool aligned,
    const cnnlTensorDescriptor_t grads_desc,
    const void* grads,
    const cnnlTensorDescriptor_t boxes_desc,
    const void* boxes,
    const cnnlTensorDescriptor_t grads_image_desc,
    void* grads_image) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);
  const int pool_mode = 1;  // average pooling mode
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlRoiAlignBackward_v2(handle,
                                                     grads_desc,
                                                     grads,
                                                     boxes_desc,
                                                     boxes,
                                                     nullptr,
                                                     nullptr,
                                                     nullptr,
                                                     nullptr,
                                                     spatial_scale,
                                                     sampling_ratio,
                                                     aligned,
                                                     pool_mode,
                                                     grads_image_desc,
                                                     grads_image));
}

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/* static */ void MLUCnnl::GridSample(
    const ExecutionContext& ctx,
    const cnnlGridSampleDescriptor_t grid_sample_desc,
    const cnnlTensorDescriptor_t input_desc,
    const void* input,
    const cnnlTensorDescriptor_t grid_desc,
    const void* grid,
    const cnnlTensorDescriptor_t output_desc,
    void* output) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  size_t workspace_size;
  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGetGridSampleForwardWorkspaceSize(
      handle, input_desc, grid_desc, output_desc, &workspace_size));

  auto& dev_ctx = GetDevCtxFromCTX(ctx);
  Tensor workspace = ctx.AllocateTmpTensor<int8_t, MLUDeviceContext>(
      {static_cast<int64_t>(workspace_size)}, dev_ctx);
  void* workspace_ptr = workspace.mutable_data(ctx.GetPlace());

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlGridSampleForward(handle,
                                                   grid_sample_desc,
                                                   input_desc,
                                                   input,
                                                   grid_desc,
                                                   grid,
                                                   output_desc,
                                                   output,
                                                   workspace_ptr,
                                                   workspace_size));
}

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/* static */ void MLUCnnl::SyncBatchNormStats(
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const float eps,
    const cnnlTensorDescriptor_t mean_desc,
    void* mean,
    const cnnlTensorDescriptor_t invstd_desc,
    void* invstd) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSyncBatchNormStats(
      handle, x_desc, x, eps, mean_desc, mean, invstd_desc, invstd));
}

/* static */ void MLUCnnl::SyncBatchNormGatherStatsWithCounts(
    const ExecutionContext& ctx,
    float momentum,
    float eps,
    const cnnlTensorDescriptor_t mean_all_desc,
    const void* mean_all,
    const cnnlTensorDescriptor_t invstd_all_desc,
    const void* invstd_all,
    const cnnlTensorDescriptor_t moving_mean_desc,
    void* moving_mean,
    const cnnlTensorDescriptor_t moving_var_desc,
    void* moving_var,
    const cnnlTensorDescriptor_t count_all_desc,
    const void* count_all,
    const cnnlTensorDescriptor_t mean_desc,
    void* mean,
    const cnnlTensorDescriptor_t invstd_desc,
    void* invstd) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSyncBatchNormGatherStatsWithCounts(handle,
                                             mean_all_desc,
                                             mean_all,
                                             invstd_all_desc,
                                             invstd_all,
                                             moving_mean_desc,
                                             moving_mean,
                                             moving_var_desc,
                                             moving_var,
                                             momentum,
                                             eps,
                                             count_all_desc,
                                             count_all,
                                             mean_desc,
                                             mean,
                                             invstd_desc,
                                             invstd));
}

/* static */ void MLUCnnl::SyncBatchNormElemt(
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t mean_desc,
    const void* mean,
    const cnnlTensorDescriptor_t invstd_desc,
    const void* invstd,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t bias_desc,
    const void* bias,
    const cnnlTensorDescriptor_t y_desc,
    void* y) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSyncBatchNormElemt(handle,
                                                    x_desc,
                                                    x,
                                                    mean_desc,
                                                    mean,
                                                    invstd_desc,
                                                    invstd,
                                                    weight_desc,
                                                    weight,
                                                    bias_desc,
                                                    bias,
                                                    y_desc,
                                                    y));
}

/* static */ void MLUCnnl::SyncBatchnormBackwardReduce(
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t desc_dz,
    const void* dz,
    const cnnlTensorDescriptor_t desc_x,
    const void* x,
    const cnnlTensorDescriptor_t desc_mean,
    const void* mean,
    const cnnlTensorDescriptor_t desc_invstd,
    const void* invstd,
    const cnnlTensorDescriptor_t desc_dweight,
    void* dweight,
    const cnnlTensorDescriptor_t desc_dbias,
    void* dbias,
    const cnnlTensorDescriptor_t desc_sum_dy,
    void* sum_dy,
    const cnnlTensorDescriptor_t desc_sum_dy_xmu,
    void* sum_dy_xmu,
    const bool needs_input_grad0,
    const bool needs_input_grad1,
    const bool needs_input_grad2) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(
      cnnlSyncBatchnormBackwardReduce(handle,
                                      desc_dz,
                                      dz,
                                      desc_x,
                                      x,
                                      desc_mean,
                                      mean,
                                      desc_invstd,
                                      invstd,
                                      desc_dweight,
                                      dweight,
                                      desc_dbias,
                                      dbias,
                                      desc_sum_dy,
                                      sum_dy,
                                      desc_sum_dy_xmu,
                                      sum_dy_xmu,
                                      needs_input_grad0,
                                      needs_input_grad1,
                                      needs_input_grad2));
}

/* static */ void MLUCnnl::SyncBatchNormBackwardElemt(
    const ExecutionContext& ctx,
    const cnnlTensorDescriptor_t diff_y_desc,
    const void* diff_y,
    const cnnlTensorDescriptor_t x_desc,
    const void* x,
    const cnnlTensorDescriptor_t mean_desc,
    const void* mean,
    const cnnlTensorDescriptor_t invstd_desc,
    const void* invstd,
    const cnnlTensorDescriptor_t weight_desc,
    const void* weight,
    const cnnlTensorDescriptor_t sum_dy_desc,
    const void* sum_dy,
    const cnnlTensorDescriptor_t sum_dy_xmu_desc,
    const void* sum_dy_xmu,
    const cnnlTensorDescriptor_t count_desc,
    const void* count,
    const cnnlTensorDescriptor_t diff_x_desc,
    void* diff_x) {
  cnnlHandle_t handle = GetHandleFromCTX(ctx);

  PADDLE_ENFORCE_MLU_SUCCESS(cnnlSyncBatchNormBackwardElemtV2(handle,
                                                              diff_y_desc,
                                                              diff_y,
                                                              x_desc,
                                                              x,
                                                              mean_desc,
                                                              mean,
                                                              invstd_desc,
                                                              invstd,
                                                              weight_desc,
                                                              weight,
                                                              sum_dy_desc,
                                                              sum_dy,
                                                              sum_dy_xmu_desc,
                                                              sum_dy_xmu,
                                                              count_desc,
                                                              count,
                                                              diff_x_desc,
                                                              diff_x));
}

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}  // namespace operators
}  // namespace paddle