eager_generator.cc 130.6 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 <algorithm>
#include <fstream>
#include <iostream>
#include <string>
#include <unordered_set>

#include "paddle/fluid/framework/op_info.h"
#include "paddle/fluid/framework/op_registry.h"
#include "paddle/fluid/framework/operator.h"
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#include "paddle/fluid/framework/program_desc.h"
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#include "paddle/fluid/framework/variable.h"
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#include "paddle/fluid/pybind/op_function_generator.h"
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#include "paddle/fluid/pybind/pybind.h"
#include "paddle/fluid/string/string_helper.h"

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// phi
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#include "paddle/phi/kernels/declarations.h"
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#define NUM_CREATED_DUP_INPUTS 4

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namespace paddle {
namespace framework {
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// To handle append_op at python-level
std::unordered_map<std::string, std::vector<std::string>>
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    core_ops_legacy_returns_info = {};
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std::unordered_map<std::string, std::vector<std::string>>
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    core_ops_legacy_args_info = {};
std::unordered_map<std::string, std::vector<std::string>>
    core_ops_legacy_args_type_info = {};
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/* --- Static maps to handle corner cases --- */
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static std::unordered_map<std::string, paddle::framework::AttributeMap>
    operators_with_attrs = {};

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static std::unordered_set<std::string> ops_to_fill_zero_for_empty_grads = {
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    "split", "rnn"};
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/* --- Black Ops list that's NO NEED to apply code generation --- */
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static std::unordered_set<std::string> black_ops_list = {"run_program",
                                                         "fused_gate_attention",
                                                         "fused_feedforward",
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                                                         "fused_attention",
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                                                         "fused_gemm_epilogue",
                                                         "sparse_divide_scalar",
                                                         "sparse_scale"};
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static std::string LegalizeVariableName(const std::string& var_name) {
  std::string ret = var_name;
  std::replace(ret.begin(), ret.end(), '-', '_');  // replace all '-' to '_'
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  std::replace(ret.begin(), ret.end(), '@', '_');  // replace all '-' to '_'
  return ret;
}

static std::string LegalizeVarName(const std::string& var_name) {
  std::string ret = var_name;
  std::replace(ret.begin(), ret.end(), '@', '_');  // replace all '-' to '_'
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  return ret;
}

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static std::string HandleDynamicGradAttributes(const std::string& fwd_op_type,
                                               const std::string& attrs_name) {
  std::string additional_grad_attrs_str = "";

  if (fwd_op_type == "sum") {
    const char* GRAD_ATTRS_TEMPLATE = "  %s[\"%s\"] = %s;\n";
    additional_grad_attrs_str = paddle::string::Sprintf(
        GRAD_ATTRS_TEMPLATE, attrs_name, "scale", "float(1.0)");
    additional_grad_attrs_str += paddle::string::Sprintf(
        GRAD_ATTRS_TEMPLATE, attrs_name, "bias", "float(0.0f)");
    additional_grad_attrs_str += paddle::string::Sprintf(
        GRAD_ATTRS_TEMPLATE, attrs_name, "bias_after_scale", "bool(true)");

  } else if (fwd_op_type == "scale") {
    const char* GRAD_ATTRS_TEMPLATE = "  %s[\"%s\"] = %s;\n";

    additional_grad_attrs_str += paddle::string::Sprintf(
        GRAD_ATTRS_TEMPLATE, attrs_name, "bias", "float(0.0f)");
    additional_grad_attrs_str += paddle::string::Sprintf(
        GRAD_ATTRS_TEMPLATE, attrs_name, "bias_after_scale", "bool(true)");
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  }

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  return additional_grad_attrs_str;
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}

static void PrepareAttrMapForOps() {
  // Handle "fused_elemwise_add_activation"
  std::vector<std::string> functor_list = {"a", "b"};
  operators_with_attrs["fused_elemwise_add_activation"] = {};
  operators_with_attrs["fused_elemwise_add_activation"]["functor_list"] =
      functor_list;

  // Handle "fused_elemwise_activation"
  operators_with_attrs["fused_elemwise_activation"] = {};
  operators_with_attrs["fused_elemwise_activation"]["functor_list"] =
      functor_list;

  // Handle "reverse"
  std::vector<int> axis = {0};
  operators_with_attrs["reverse"] = {};
  operators_with_attrs["reverse"]["axis"] = axis;

  // Handle "flip"
  operators_with_attrs["flip"] = {};
  operators_with_attrs["flip"]["axis"] = axis;

  // Handle "cast"
  operators_with_attrs["cast"] = {};
  operators_with_attrs["cast"]["out_dtype"] = 5;
  operators_with_attrs["cast"]["in_dtype"] = 5;

  // Handle "transfer_dtype"
  operators_with_attrs["transfer_dtype"] = {};
  operators_with_attrs["transfer_dtype"]["out_dtype"] = 5;
  operators_with_attrs["transfer_dtype"]["in_dtype"] = 5;

  // Handle "c_split"
  operators_with_attrs["c_split"] = {};
  operators_with_attrs["c_split"]["nranks"] = 1;
}

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/* --- Helper Objects --- */
class ForwardGenerationInfo {
 public:
  const std::string& GetOpType() const { return op_type_; }
  void SetOpType(const std::string& op_type) { op_type_ = op_type; }

  const std::unordered_map<std::string, size_t>& GetFwdInputsNamePosMap()
      const {
    return fwd_inputs_name_pos_map_;
  }
  std::unordered_map<std::string, size_t>* GetMutableFwdInputsNamePosMap() {
    return &fwd_inputs_name_pos_map_;
  }

  const std::unordered_map<std::string, size_t>& GetFwdOutputsNamePosMap()
      const {
    return fwd_outputs_name_pos_map_;
  }
  std::unordered_map<std::string, size_t>* GetMutableFwdOutputsNamePosMap() {
    return &fwd_outputs_name_pos_map_;
  }

  const std::vector<proto::OpProto::Var>& GetInVars() const { return in_vars_; }
  std::vector<proto::OpProto::Var>* GetMutableInVars() { return &in_vars_; }

  const std::vector<proto::OpProto::Var>& GetOutVars() const {
    return out_vars_;
  }
  std::vector<proto::OpProto::Var>* GetMutableOutVars() { return &out_vars_; }

 private:
  std::string op_type_;
  std::unordered_map<std::string, size_t> fwd_inputs_name_pos_map_;
  std::unordered_map<std::string, size_t> fwd_outputs_name_pos_map_;
  std::vector<proto::OpProto::Var> in_vars_;
  std::vector<proto::OpProto::Var> out_vars_;
};

class GradNodeGenerationInfo {
  class OpBaseGenerationInfo {
   public:
    const std::string& GetOpBaseType() const { return op_base_type_; }
    void SetOpBaseType(const std::string& op_type) { op_base_type_ = op_type; }

    const std::map<std::string, std::string>& GetGradOutsSlotnameMap() const {
      return grad_outs_slotname_map_;
    }
    std::map<std::string, std::string>* GetMutableGradOutsSlotnameMap() {
      return &grad_outs_slotname_map_;
    }

    const std::map<std::string, std::string>& GetGradInsFwdSlotnameMap() const {
      return grad_ins_fwd_slotname_map_;
    }
    std::map<std::string, std::string>* GetMutableGradInsFwdSlotnameMap() {
      return &grad_ins_fwd_slotname_map_;
    }

    const std::map<std::string, std::string>& GetGradInsGradSlotnameMap()
        const {
      return grad_ins_grad_slotname_map_;
    }
    std::map<std::string, std::string>* GetMutableGradInsGradSlotnameMap() {
      return &grad_ins_grad_slotname_map_;
    }

    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
    GetGradIns() const {
      return grad_ins_;
    }
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>*
    GetMutableGradIns() {
      return &grad_ins_;
    }

    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
    GetGradOuts() const {
      return grad_outs_;
    }
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>*
    GetMutableGradOuts() {
      return &grad_outs_;
    }

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    const paddle::framework::AttributeMap& GetGradAttrs() const {
      return grad_attrs_;
    }
    paddle::framework::AttributeMap* GetMutableGradAttrs() {
      return &grad_attrs_;
    }

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    const std::unordered_set<std::string>& GetNoNeedBufferInputs() const {
      return no_need_buffer_ins_;
    }
    std::unordered_set<std::string>* GetMutableNoNeedBufferInputs() {
      return &no_need_buffer_ins_;
    }

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    const std::unordered_map<std::string, std::string>& GetBackwardInplaceMap()
        const {
      return backward_inplace_map_;
    }
    std::unordered_map<std::string, std::string>*
    GetMutableBackwardInplaceMap() {
      return &backward_inplace_map_;
    }

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   private:
    std::string op_base_type_;
    std::map<std::string, std::string> grad_outs_slotname_map_;
    std::map<std::string, std::string> grad_ins_fwd_slotname_map_;
    std::map<std::string, std::string> grad_ins_grad_slotname_map_;
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>
        grad_ins_;
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>
        grad_outs_;
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    paddle::framework::AttributeMap grad_attrs_;
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    std::unordered_set<std::string> no_need_buffer_ins_;
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    std::unordered_map<std::string, std::string> backward_inplace_map_;
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  };

 public:
  const std::string& GetFwdOpType() const { return fwd_op_type_; }
  void SetFwdOpType(const std::string& op_type) { fwd_op_type_ = op_type; }

  bool GenerateForwardOnly() const { return generate_forward_only_; }
  void SetGenerateForwardOnly(bool generate_forward_only) {
    generate_forward_only_ = generate_forward_only;
  }

  const std::vector<OpBaseGenerationInfo>& GetOpBaseInfos() const {
    return op_base_infos_;
  }
  std::vector<OpBaseGenerationInfo>* GetMutableOpBaseInfos() {
    return &op_base_infos_;
  }

 private:
  std::string fwd_op_type_;
  bool generate_forward_only_ = false;
  std::vector<OpBaseGenerationInfo> op_base_infos_;
};

/* --- Helper Functions --- */
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static std::string AttrTypeToString(const proto::AttrType& type) {
  std::string ret;
  switch (type) {
    case (proto::AttrType::INT): {
      ret = "int";
      break;
    }
    case (proto::AttrType::FLOAT): {
      ret = "float";
      break;
    }
    case (proto::AttrType::STRING): {
      ret = "std::string&";
      break;
    }
    case (proto::AttrType::INTS): {
      ret = "std::vector<int>&";
      break;
    }
    case (proto::AttrType::FLOATS): {
      ret = "std::vector<float>&";
      break;
    }
    case (proto::AttrType::STRINGS): {
      ret = "std::vector<std::string>&";
      break;
    }
    case (proto::AttrType::BOOLEAN): {
      ret = "bool";
      break;
    }
    case (proto::AttrType::BOOLEANS): {
      ret = "std::vector<bool>&";
      break;
    }
    case (proto::AttrType::LONG): {
      ret = "int64_t";
      break;
    }
    case (proto::AttrType::LONGS): {
      ret = "std::vector<int64_t>&";
      break;
    }
    case (proto::AttrType::BLOCK): {
      ret = "paddle::framework::BlockDesc*";
      break;
    }
    case (proto::AttrType::BLOCKS): {
      ret = "std::vector<paddle::framework::BlockDesc*>&";
      break;
    }
    case (proto::AttrType::FLOAT64S): {
      ret = "std::vector<double>&";
      break;
    }
    default: {
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      PADDLE_THROW(platform::errors::Fatal(
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          "AttrType of type paddle::variant only supports specific data types."
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          "However, detected unrecognized AttrType: %d",
          type));
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    }
  }
  return ret;
}

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template <typename T, bool IsVector>
static typename std::enable_if<IsVector, std::string>::type GetAttrValue(
    const framework::Attribute& attr) {
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  std::string val = "";
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  val += "{";
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  for (auto x : PADDLE_GET_CONST(std::vector<T>, attr)) {
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    val += std::to_string(x) + ",";
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  }
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  if (val.size() > 1) val.pop_back();
  val += "}";
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  return val;
}

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template <typename T, bool IsVector>
static typename std::enable_if<!IsVector, std::string>::type GetAttrValue(
    const framework::Attribute& attr) {
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  return std::to_string(PADDLE_GET_CONST(T, attr));
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}

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static std::pair<std::string, std::string> GetAttrType(
    const framework::Attribute& attr, bool is_arg) {
  std::string ret = "";
  std::string val = "";
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  size_t variant_pos = attr.index();
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  switch (variant_pos) {
    case (1): {
      ret = "int";
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      val = GetAttrValue<int, false>(attr);
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      break;
    }
    case (2): {
      ret = "float";
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      val = GetAttrValue<float, false>(attr);
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      break;
    }
    case (3): {
      ret = "std::string";
      if (is_arg) ret += "&";
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      val = "\"" + PADDLE_GET_CONST(std::string, attr) + "\"";
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      break;
    }
    case (4): {
      ret = "std::vector<int>";
      if (is_arg) ret += "&";
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      val = GetAttrValue<int, true>(attr);
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      break;
    }
    case (5): {
      ret = "std::vector<float>";
      if (is_arg) ret += "&";
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      val = GetAttrValue<float, true>(attr);
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      break;
    }
    case (6): {
      ret = "std::vector<std::string>";
      if (is_arg) ret += "&";
      val += "{";
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      for (auto x : PADDLE_GET_CONST(std::vector<std::string>, attr)) {
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        val += "\"" + x + "\"" + ",";
      }
      if (val.size() > 1) val.pop_back();
      val += "};";
      break;
    }
    case (7): {
      ret = "bool";
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      val = GetAttrValue<bool, false>(attr);
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      break;
    }
    case (8): {
      ret = "std::vector<bool>";
      if (is_arg) ret += "&";
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      val = GetAttrValue<bool, true>(attr);
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      break;
    }
    case (9): {
      ret = "BlockDesc*";
      break;
    }
    case (10): {
      ret = "int64_t";
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      val = GetAttrValue<int64_t, false>(attr);
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      break;
    }
    case (11): {
      ret = "std::vector<BlockDesc*>";
      if (is_arg) ret += "&";
      break;
    }
    case (12): {
      ret = "std::vector<int64_t>";
      if (is_arg) ret += "&";
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      val = GetAttrValue<int64_t, true>(attr);
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      break;
    }
    case (13): {
      ret = "std::vector<double>";
      if (is_arg) ret += "&";
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      val = GetAttrValue<double, true>(attr);
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      break;
    }
    default: {
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      PADDLE_THROW(platform::errors::Fatal(
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          "AttrType of type paddle::variant only supports specific data types."
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          "However, detected unrecognized AttrType: %d",
          variant_pos));
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    }
  }
  return {ret, val};
}

static void SlotNameMatching(
    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
        grad_map,
    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
        fwd_ins,
    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
        fwd_outs,
    std::map<std::string, std::string>* grad_fwd_slotname_map_ptr,
    std::map<std::string, std::string>* grad_grad_slotname_map_ptr) {
  std::map<std::string, std::string>& grad_fwd_slotname_map =
      *grad_fwd_slotname_map_ptr;
  std::map<std::string, std::string>& grad_grad_slotname_map =
      *grad_grad_slotname_map_ptr;
  for (const auto& iter : grad_map) {
    const std::string& grad_slot_name = iter.first;
    const std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>&
        grad_vars = iter.second;

    // Find matching fwd_slot_name
    bool found_matching = false;
    for (const std::shared_ptr<paddle::imperative::VariableWrapper>& grad_var :
         grad_vars) {
      for (const auto& fwd_iter : fwd_ins) {
        const std::string& fwd_slot_name = fwd_iter.first;
        const std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>&
            fwd_vars = fwd_iter.second;
        for (const std::shared_ptr<paddle::imperative::VariableWrapper>&
                 fwd_var : fwd_vars) {
          if (grad_var == fwd_var) {
            if (grad_fwd_slotname_map.count(grad_slot_name) &&
                grad_fwd_slotname_map[grad_slot_name] != fwd_slot_name) {
              PADDLE_THROW(platform::errors::Fatal(
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                  "Detected mismatched slot names."
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                  "grad_slot_name %s matches both %s and %s fwd_slot_name",
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                  grad_slot_name,
                  grad_fwd_slotname_map[grad_slot_name],
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                  fwd_slot_name));
            }
            grad_fwd_slotname_map[grad_slot_name] = fwd_slot_name;
            found_matching = true;
          }

          if (fwd_var->GetGradVar() && grad_var == fwd_var->GetGradVar()) {
            if (grad_grad_slotname_map.count(grad_slot_name) &&
                grad_grad_slotname_map[grad_slot_name] != fwd_slot_name) {
              PADDLE_THROW(platform::errors::Fatal(
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                  "Detected mismatched slot names."
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                  "grad_slot_name %s matches both %s and %s fwd_slot_name",
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                  grad_slot_name,
                  grad_grad_slotname_map[grad_slot_name],
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                  fwd_slot_name));
            }
            grad_grad_slotname_map[grad_slot_name] = fwd_slot_name;
            found_matching = true;
          }
        }
      }
      for (const auto& fwd_iter : fwd_outs) {
        const std::string& fwd_slot_name = fwd_iter.first;
        const std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>&
            fwd_vars = fwd_iter.second;
        for (const std::shared_ptr<paddle::imperative::VariableWrapper>&
                 fwd_var : fwd_vars) {
          if (grad_var == fwd_var) {
            if (grad_fwd_slotname_map.count(grad_slot_name) &&
                grad_fwd_slotname_map[grad_slot_name] != fwd_slot_name) {
              PADDLE_THROW(platform::errors::Fatal(
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                  "Detected mismatched slot names"
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                  "grad_slot_name %s matches both %s and %s fwd_slot_name",
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                  grad_slot_name,
                  grad_fwd_slotname_map[grad_slot_name],
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                  fwd_slot_name));
            }
            grad_fwd_slotname_map[grad_slot_name] = fwd_slot_name;
            found_matching = true;
          }

          if (fwd_var->GetGradVar() && grad_var == fwd_var->GetGradVar()) {
            if (grad_grad_slotname_map.count(grad_slot_name) &&
                grad_grad_slotname_map[grad_slot_name] != fwd_slot_name) {
              PADDLE_THROW(platform::errors::Fatal(
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                  "Detected mismatched slot names."
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                  "grad_slot_name %s matches both %s and %s fwd_slot_name",
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                  grad_slot_name,
                  grad_grad_slotname_map[grad_slot_name],
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                  fwd_slot_name));
            }
            grad_grad_slotname_map[grad_slot_name] = fwd_slot_name;
            found_matching = true;
          }
        }
      }
    }

    if (!found_matching) {
      PADDLE_THROW(platform::errors::Fatal(
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          "Detected mismatched slot names."
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          "Found no matching fwd_slot_name for grad_slot_name: %s",
          grad_slot_name));

    } else {
      std::string fwd_slot_name = grad_grad_slotname_map.count(grad_slot_name)
                                      ? grad_grad_slotname_map[grad_slot_name]
                                      : grad_fwd_slotname_map[grad_slot_name];
      VLOG(6) << "Found matching fwd_slot_name: " << fwd_slot_name
              << " for grad_slot_name: " << grad_slot_name;
    }
  }
}

static bool CheckOpProto(proto::OpProto* op_proto) {
  if (op_proto == nullptr) {
    return false;
  }
  const std::string& op_type = op_proto->type();

  // Skip ooerator which is not inherit form OperatorWithKernel, like while,
  // since only OperatorWithKernel can run in dygraph mode.
  auto& all_kernels = paddle::framework::OperatorWithKernel::AllOpKernels();
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  if (!all_kernels.count(op_type) &&
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      !phi::KernelFactory::Instance().HasCompatiblePhiKernel(op_type)) {
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    return false;
  }

  // Only handle matmul_v2 for now
  VLOG(1) << "------ Analyzing Op ------: " << op_type;

  return true;
}

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static bool BeSameAsInput(const std::string& output_name,
                          const std::set<std::string>& input_names) {
  if (output_name.size() < 4) {
    return false;
  }

  if (output_name.substr(output_name.size() - 3, 3) == "Out") {
    if (input_names.count(output_name.substr(0, output_name.size() - 3))) {
      return true;
    }
  }

  return false;
}

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/* --------------------------------------- */
/* --------- Preprocess Ins/Outs --------- */
/* --------------------------------------- */
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static void PurifyForwardOpProto(const proto::OpProto& op_proto,
                                 ForwardGenerationInfo* fwd_info) {
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  // Op Name
  const std::string op_name = op_proto.type();

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  auto* in_vars = fwd_info->GetMutableInVars();
  auto* out_vars = fwd_info->GetMutableOutVars();
  auto* fwd_inputs_name_pos_map = fwd_info->GetMutableFwdInputsNamePosMap();
  auto* fwd_outputs_name_pos_map = fwd_info->GetMutableFwdOutputsNamePosMap();

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  // Handle dispensable inputs
  for (const proto::OpProto::Var& input : op_proto.inputs()) {
    std::string input_name = input.name();

    // Delete dispensable tensor unless specified in op_ins_map
    if (input.dispensable()) {
      if (!op_ins_map.count(op_name) ||
          !op_ins_map[op_name].count(input_name)) {
        VLOG(6) << "Removing Dispensable Input: " << input_name;

        // in_vars
        auto iter = in_vars->begin();
        for (iter = in_vars->begin(); iter != in_vars->end(); iter++) {
          if (iter->name() == input_name) {
            break;
          }
        }
        in_vars->erase(iter);
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      }
    }
  }

  for (const proto::OpProto::Var& output : op_proto.outputs()) {
    std::string output_name = output.name();

    // Delete dispensable tensor unless specified in op_outs_map
    if (output.dispensable()) {
      if (!op_outs_map.count(op_name) ||
          !op_outs_map[op_name].count(output_name)) {
        VLOG(6) << "Removing Dispensable Output: " << output_name;

        // out_vars
        auto iter = out_vars->begin();
        for (iter = out_vars->begin(); iter != out_vars->end(); iter++) {
          if (iter->name() == output_name) {
            break;
          }
        }
        out_vars->erase(iter);
      }
    }
  }

  /* ------ Maping forward slot name to fwd position ------ */
  size_t in_pos = 0;
  for (const auto& var : *in_vars) {
    VLOG(6) << "Mapping input tensor: " << var.name()
            << " To position: " << in_pos;
    (*fwd_inputs_name_pos_map)[var.name()] = in_pos;
    in_pos++;
  }

  size_t out_pos = 0;
  for (const auto& var : *out_vars) {
    VLOG(6) << "Mapping output tensor: " << var.name()
            << " To position: " << out_pos;
    (*fwd_outputs_name_pos_map)[var.name()] = out_pos;
    out_pos++;
  }
}

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static void PurifyGradNodeGenerationInfo(const proto::OpProto& op_proto,
                                         GradNodeGenerationInfo* bwd_info) {
  auto* op_base_infos = bwd_info->GetMutableOpBaseInfos();
  for (auto& iter : *op_base_infos) {
    std::map<std::string, std::string>* grad_outs_slotname_map =
        iter.GetMutableGradOutsSlotnameMap();
    std::map<std::string, std::string>* grad_ins_fwd_slotname_map =
        iter.GetMutableGradInsFwdSlotnameMap();
    std::map<std::string, std::string>* grad_ins_grad_slotname_map =
        iter.GetMutableGradInsGradSlotnameMap();
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>*
        grad_ins = iter.GetMutableGradIns();
    std::map<std::string,
             std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>*
        grad_outs = iter.GetMutableGradOuts();

    // Op Name
    const std::string op_name = op_proto.type();

    // Handle dispensable inputs
    for (const proto::OpProto::Var& input : op_proto.inputs()) {
      std::string input_name = input.name();

      // Delete dispensable tensor unless specified in op_ins_map
      if (input.dispensable()) {
        if (!op_ins_map.count(op_name) ||
            !op_ins_map[op_name].count(input_name)) {
          VLOG(6) << "Removing Dispensable Input: " << input_name;

          // grad_outs_slotname_map
          auto grad_outs_slotname_map_purified = *grad_outs_slotname_map;
          for (const auto& iter : *grad_outs_slotname_map) {
            const std::string& grad_output_name = iter.first;
            const std::string& matched_input_name = iter.second;
            if (matched_input_name == input_name) {
              grad_outs_slotname_map_purified.erase(grad_output_name);

              PADDLE_ENFORCE(
                  grad_outs->count(grad_output_name) > 0,
                  paddle::platform::errors::Fatal(
                      "Unable to find gradient output name in grad_outs."));
              // grad_outs
              grad_outs->erase(grad_output_name);
            }
          }
          *grad_outs_slotname_map = grad_outs_slotname_map_purified;

          // grad_ins_fwd_slotname_map: output as tensorwrapper
          if (grad_ins_fwd_slotname_map->count(input_name))
            grad_ins_fwd_slotname_map->erase(input_name);

          // grad_ins: output as tensorwrapper
          if (grad_ins->count(input_name)) grad_ins->erase(input_name);
        }
      }
    }

    for (const proto::OpProto::Var& output : op_proto.outputs()) {
      std::string output_name = output.name();

      // Delete dispensable tensor unless specified in op_outs_map
      if (output.dispensable()) {
        if (!op_outs_map.count(op_name) ||
            !op_outs_map[op_name].count(output_name)) {
          VLOG(6) << "Removing Dispensable Output: " << output_name;

          // grad_ins_grad_slotname_map
          auto grad_ins_grad_slotname_map_purified =
              *grad_ins_grad_slotname_map;
          for (const auto& iter : *grad_ins_grad_slotname_map) {
            const std::string& grad_input_name = iter.first;
            const std::string& matched_output_name = iter.second;
            if (matched_output_name == output_name) {
              grad_ins_grad_slotname_map_purified.erase(grad_input_name);

              PADDLE_ENFORCE(
                  grad_ins->count(grad_input_name) > 0,
                  paddle::platform::errors::Fatal(
                      "Unable to find gradient input name in grad_ins."));
              // grad_ins
              grad_ins->erase(grad_input_name);
            }
          }
          *grad_ins_grad_slotname_map = grad_ins_grad_slotname_map_purified;

          // grad_ins_fwd_slotname_map: output as tensorwrapper
          if (grad_ins_fwd_slotname_map->count(output_name))
            grad_ins_fwd_slotname_map->erase(output_name);

          // grad_ins: output as tensorwrapper
          if (grad_ins->count(output_name)) grad_ins->erase(output_name);
        }
      }
    }
  }
}

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/* -------------------------------- */
/* --------- Collect Info --------- */
/* -------------------------------- */
790
static void CollectForwardInformationFromOpInfo(
791
    const paddle::framework::OpInfo& op_info, ForwardGenerationInfo* fwd_info) {
792
  const proto::OpProto& op_proto = *op_info.proto_;
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  fwd_info->SetOpType(op_proto.type());

796
  for (const proto::OpProto::Var& input : op_proto.inputs()) {
797
    fwd_info->GetMutableInVars()->push_back(input);
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  }
  for (const proto::OpProto::Var& output : op_proto.outputs()) {
800
    fwd_info->GetMutableOutVars()->push_back(output);
801
  }
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}

static bool CollectGradInformationFromOpInfo(
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    const paddle::framework::OpInfo& op_info,
    GradNodeGenerationInfo* bwd_info) {
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  const proto::OpProto& op_proto = *op_info.proto_;
  const std::string& op_type = op_proto.type();
  std::vector<int64_t> dims = {1, 1, 1, 1};
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  /* ------ Prepare "ins" ------ */
  std::map<std::string,
           std::vector<std::shared_ptr<paddle::imperative::VarBase>>>
      ins;
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  if (op_proto.inputs().size() == 1 && op_proto.outputs().size() == 1 &&
      op_proto.inputs()[0].duplicable() &&
      !op_proto.outputs()[0].duplicable()) {
    VLOG(6) << "Handle op with special op_bases: " << op_type;
    // @special case (sum_op): for ops with single duplicable input and single
    // non-duplicable output
    //                         feed in NUM_CREATED_DUP_INPUTS inputs to detect a
    //                         special scenario.
    const std::string& in_name = op_proto.inputs()[0].name();
    ins[in_name] = {};
    for (size_t i = 0; i < NUM_CREATED_DUP_INPUTS; i++) {
      ins[in_name].emplace_back(std::shared_ptr<paddle::imperative::VarBase>(
          new paddle::imperative::VarBase("auto_" + in_name + "_" +
                                          std::to_string(i))));
      ins[in_name][i]->SetOverridedStopGradient(false);
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      ins[in_name][i]->MutableVar()->GetMutable<phi::DenseTensor>();
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    }
  } else {
    for (const proto::OpProto::Var& input : op_proto.inputs()) {
      const std::string& in_name = input.name();

      // Handle dispensable input:
      // 1. At python level, dispensable input will be detected at Python-C
      // interface and filled with an empty vector
      // 2. At C++ level, customers should always pass an empty vector for any
      // dispensable input
      // 3. During further lowering, there will always be a placeholder VarBase
      // in ins/outs no matter whether it's dispensable or not
      // As a result, we always create input VarBase regardless of its
      // dispensability.

      // Handle duplicable input: list(VarBase) or VarBase
      // We dont know the exact number of inputs expected,
      // but we only need to identify the slot name order,
      // therefore fill in 1 single input VarBase is enough in this scenario

      ins[in_name] = {std::shared_ptr<paddle::imperative::VarBase>(
          new paddle::imperative::VarBase("auto_" + in_name))};
      ins[in_name][0]->SetOverridedStopGradient(false);
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      ins[in_name][0]->MutableVar()->GetMutable<phi::DenseTensor>();
856
    }
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  }
  VLOG(6) << "Prepared Forward Ins Map, size = " << ins.size();

  /* ------ Prepare "outs" ------ */
  std::map<std::string,
           std::vector<std::shared_ptr<paddle::imperative::VarBase>>>
      outs;
  for (const proto::OpProto::Var& output : op_proto.outputs()) {
    const std::string& out_name = output.name();

    // We always create output VarBase regardless of its dispensability.
    // We dont know the exact number of outputs during code generation,
    // however, simply identifying the slot name order would be enough
    outs[out_name] = {std::shared_ptr<paddle::imperative::VarBase>(
        new paddle::imperative::VarBase("auto_" + out_name))};
    outs[out_name][0]->SetOverridedStopGradient(false);
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    outs[out_name][0]->MutableVar()->GetMutable<phi::DenseTensor>();
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  }
  VLOG(6) << "Prepared Forward Outs Map, size = " << outs.size();

  framework::AttributeMap attrs;
  paddle::framework::AttributeMap default_attrs;
  auto* attr_checker = op_info.Checker();
  if (attr_checker) {
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    VLOG(6) << "Checking AttributeMap Settings";
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    attr_checker->Check(&attrs, true, /*only_check_exist_value=*/true);
    default_attrs = attr_checker->GetDefaultAttrMap();
  } else {
    VLOG(6) << "Detected Null Attribute Checker, use empty default_attrs";
  }

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  if (operators_with_attrs.count(op_type)) {
    VLOG(6) << "Found operator " << op_type << " using special AttributeMap";
    attrs = operators_with_attrs[op_type];
  }

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  VLOG(6) << "Prepared Default Attributes Map, size = " << default_attrs.size();
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  for (const auto& iter : default_attrs) {
    VLOG(6) << iter.first;
  }
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  /* ---------------------------- */
  /* --------- Backward --------- */
  /* ---------------------------- */
  /* ------ Fwd paddle::imperative::VariableWrapper Map ------ */
  std::map<std::string,
           std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>
      fwd_ins;
  std::map<std::string,
           std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>
      fwd_outs;
  for (const auto& iter : ins) {
    fwd_ins[iter.first] = {};
    for (const std::shared_ptr<paddle::imperative::VarBase>& var_base :
         iter.second) {
      fwd_ins[iter.first].push_back(var_base->SharedVar());
    }
  }
  for (const auto& iter : outs) {
    fwd_outs[iter.first] = {};
    for (const std::shared_ptr<paddle::imperative::VarBase>& var_base :
         iter.second) {
      fwd_outs[iter.first].push_back(var_base->SharedVar());
    }
  }
  VLOG(6) << "Constructed Forward paddle::imperative::VariableWrapper Map";

  /* ------ Run GradOpMaker ------ */
  if (!op_info.dygraph_grad_op_maker_) {
926
    VLOG(6) << op_type << " has no GradOpMaker";
927
    bwd_info->SetGenerateForwardOnly(true);
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    return false;
  }

  std::shared_ptr<paddle::imperative::GradOpNode> grad_node =
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      op_info.dygraph_grad_op_maker_(
          op_type, ins, outs, attrs, default_attrs, {});
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  if (!grad_node) {
    VLOG(6) << "Got nullptr GradOpNode for " << op_type
937
            << " likely registered EmptyGradOpMaker";
938
    bwd_info->SetGenerateForwardOnly(true);
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    return false;
  }

  VLOG(6) << "Prepared GradOpNode";

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  /* ---- Collect OpBase's op_types ---- */
  bwd_info->SetFwdOpType(op_type);
  auto* op_base_infos = bwd_info->GetMutableOpBaseInfos();
  op_base_infos->resize(grad_node->size());
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  for (auto iter = grad_node->begin(); iter < grad_node->end(); iter++) {
    // Each OpBase
950
    int index = std::distance(grad_node->begin(), iter);
951
    paddle::imperative::OpBase& op_base = *iter;
952
    (*op_base_infos)[index].SetOpBaseType(op_base.Type());
953 954
  }

955
  /* ------ Get Grad ins/outs/attrs ---- */
956 957
  VLOG(6) << "In function size: " << grad_node->size();
  for (auto iter = grad_node->begin(); iter < grad_node->end(); iter++) {
958 959 960
    int index = std::distance(grad_node->begin(), iter);
    auto* op_base_grad_ins = (*op_base_infos)[index].GetMutableGradIns();
    auto* op_base_grad_outs = (*op_base_infos)[index].GetMutableGradOuts();
961
    auto* op_base_grad_attrs = (*op_base_infos)[index].GetMutableGradAttrs();
962

963 964 965 966 967 968
    const paddle::imperative::OpBase& op_base = *iter;
    const std::map<std::string, paddle::imperative::SavedVariableWrapperList>&
        g_ins = op_base.GetInsMap();
    const std::map<std::string, paddle::imperative::SavedVariableWrapperList>&
        g_outs = op_base.GetOutsMap();

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    *op_base_grad_attrs = op_base.Attrs();

971
    for (const auto& it : g_ins) {
972 973 974
      if (!op_base_grad_ins->count(it.first))
        (*op_base_grad_ins)[it.first] = {};

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      for (auto vw_iter = it.second.begin(); vw_iter != it.second.end();
           vw_iter++) {
        std::shared_ptr<paddle::imperative::VariableWrapper> vw = *vw_iter;
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        (*op_base_grad_ins)[it.first].push_back(vw);

        VLOG(6) << "GradIns Name: " << it.first;
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      }
    }

    for (const auto& it : g_outs) {
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      if (!op_base_grad_outs->count(it.first))
        (*op_base_grad_outs)[it.first] = {};

989 990 991
      for (auto vw_iter = it.second.begin(); vw_iter != it.second.end();
           vw_iter++) {
        std::shared_ptr<paddle::imperative::VariableWrapper> vw = *vw_iter;
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        (*op_base_grad_outs)[it.first].push_back(vw);

        VLOG(6) << "GradOuts Name: " << it.first;
996 997
      }
    }
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    auto& inferer = op_base.Info().NoNeedBufferVarsInferer();
    if (inferer && !special_no_need_buffer_op_set.count(op_type)) {
      *(*op_base_infos)[index].GetMutableNoNeedBufferInputs() =
          inferer(g_ins, g_outs, *op_base_grad_attrs);
    }
1004 1005 1006 1007 1008 1009

    auto& infer_backward_inplace = op_base.Info().infer_inplace_;
    if (infer_backward_inplace) {
      *(*op_base_infos)[index].GetMutableBackwardInplaceMap() =
          infer_backward_inplace(true);
    }
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  }

  /* ------ Slot Name Matching ---- */
1013 1014
  for (auto& iter : *op_base_infos) {
    // grad_ins -> fwd_ins, fwd_outs
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    SlotNameMatching(iter.GetGradIns(),
                     fwd_ins,
                     fwd_outs,
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                     iter.GetMutableGradInsFwdSlotnameMap(),
                     iter.GetMutableGradInsGradSlotnameMap());

    // grad_outs -> fwd_ins, fwd_outs
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    SlotNameMatching(iter.GetGradOuts(),
                     fwd_ins,
                     fwd_outs,
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                     iter.GetMutableGradOutsSlotnameMap(),
                     iter.GetMutableGradOutsSlotnameMap());
  }
  VLOG(6) << "Finished Slotname Matching";
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  return true;
}

/* --------------------------------------------------- */
/* --------- CodeGen: Forward GradNode Creation ------ */
/* --------------------------------------------------- */
static std::string GenerateGradNodeCreationContent(
1037
    const ForwardGenerationInfo& fwd_info,
1038 1039
    const GradNodeGenerationInfo& bwd_info,
    const std::string& trace_op_body_str,
1040
    std::map<std::string, std::string> forward_inplace_map = {}) {
1041 1042
  VLOG(6) << "Generating GradNode Creation codes";

1043 1044 1045 1046 1047 1048 1049 1050 1051 1052
  const std::string& op_type = fwd_info.GetOpType();
  const std::unordered_map<std::string, size_t>& fwd_inputs_name_pos_map =
      fwd_info.GetFwdInputsNamePosMap();
  const std::unordered_map<std::string, size_t>& fwd_outputs_name_pos_map =
      fwd_info.GetFwdOutputsNamePosMap();
  const std::vector<proto::OpProto::Var>& in_vars = fwd_info.GetInVars();
  const std::vector<proto::OpProto::Var>& out_vars = fwd_info.GetOutVars();

  const auto& op_base_infos = bwd_info.GetOpBaseInfos();

1053 1054 1055 1056 1057 1058
  // [Generation] Construct GradOpNode
  // Run ComputeRequiredGrad

  // If single output slotname and not duplicable,
  // then generate: "egr::AutogradMeta* p_autograd_out =
  // egr::EagerUtils::autograd_meta("op_proto->outputs()[0].name()")"
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  std::string get_input_autograd_meta_str = "  // Prepare Autograd Meta\n";
1060
  std::string get_output_autograd_meta_str = "";
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  // If single output slotname and not duplicable,
  // then generate: "egr::AutogradMeta* p_autograd_out =
  // egr::EagerUtils::autograd_meta("op_proto.outputs()[0].name()")"
  for (const proto::OpProto::Var& output : out_vars) {
    const std::string& output_name = output.name();
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    const std::string& output_autograd_name =
        "p_autograd_" + LegalizeVarName(output_name);
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1069
    // output autograd_meta should be got after running TraceOP.
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    if (output.duplicable()) {
      const char* GET_MULTI_AUTOGRAD_META_TEMPLATE =
1072
          "    std::vector<egr::AutogradMeta*> %s = "
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          "egr::EagerUtils::autograd_meta(&%s);\n";
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      get_output_autograd_meta_str +=
          paddle::string::Sprintf(GET_MULTI_AUTOGRAD_META_TEMPLATE,
                                  output_autograd_name,
                                  LegalizeVarName(output_name));
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    } else {
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      // In inplace op, the case where output is duplicable is not considered.
      // Replace output directly with input in inplace op.
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      if (!forward_inplace_map.empty() &&
          forward_inplace_map.count(output_name)) {
        auto inplace_input_name =
            LegalizeVarName(forward_inplace_map[output_name]);
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        const std::string& inplace_input_autograd_name =
            "p_autograd_" + inplace_input_name;
        const char* GET_SINGLE_AUTOGRAD_META_TEMPLATE =
            "    %s = egr::EagerUtils::autograd_meta(&%s);\n";
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        get_output_autograd_meta_str +=
            paddle::string::Sprintf(GET_SINGLE_AUTOGRAD_META_TEMPLATE,
                                    inplace_input_autograd_name,
                                    inplace_input_name);
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      } else {
        const char* GET_SINGLE_AUTOGRAD_META_TEMPLATE =
            "    egr::AutogradMeta* %s = "
            "egr::EagerUtils::autograd_meta(&%s);\n";
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        get_output_autograd_meta_str +=
            paddle::string::Sprintf(GET_SINGLE_AUTOGRAD_META_TEMPLATE,
                                    output_autograd_name,
                                    LegalizeVarName(output_name));
1101
      }
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    }
  }
  VLOG(6) << "Generated outputs autograd_meta";

1106 1107
  // input autograd_meta should be got before running TraceOP (for checking
  // inplace).
1108
  for (const proto::OpProto::Var& input : in_vars) {
1109
    const std::string& input_name = input.name();
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    const std::string& input_autograd_name =
        "p_autograd_" + LegalizeVarName(input_name);
1112 1113 1114 1115

    if (input.duplicable()) {
      const char* GET_MULTI_AUTOGRAD_META_TEMPLATE =
          "  std::vector<egr::AutogradMeta*> %s = "
1116
          "egr::EagerUtils::nullable_autograd_meta(%s);\n";
1117 1118 1119 1120
      get_input_autograd_meta_str +=
          paddle::string::Sprintf(GET_MULTI_AUTOGRAD_META_TEMPLATE,
                                  input_autograd_name,
                                  LegalizeVarName(input_name));
1121

1122 1123 1124 1125
    } else if (input.dispensable()) {
      const char* GET_SINGLE_AUTOGRAD_META_TEMPLATE =
          "  egr::AutogradMeta* %s = "
          "egr::EagerUtils::nullable_autograd_meta(%s);\n";
1126 1127 1128 1129
      get_input_autograd_meta_str +=
          paddle::string::Sprintf(GET_SINGLE_AUTOGRAD_META_TEMPLATE,
                                  input_autograd_name,
                                  LegalizeVarName(input_name));
1130

1131 1132
    } else {
      const char* GET_SINGLE_AUTOGRAD_META_TEMPLATE =
1133 1134
          "  egr::AutogradMeta* %s = "
          "egr::EagerUtils::nullable_autograd_meta(%s);\n";
1135 1136 1137 1138
      get_input_autograd_meta_str +=
          paddle::string::Sprintf(GET_SINGLE_AUTOGRAD_META_TEMPLATE,
                                  input_autograd_name,
                                  LegalizeVarName(input_name));
1139 1140 1141 1142
    }
  }
  VLOG(6) << "Generated inputs autograd_meta";

1143 1144 1145
  // check inplace input to avoid inplace operations on leaf nodes with
  // stop_gradient=False.
  std::string check_inplace_str = "";
1146
  if (!forward_inplace_map.empty()) {
1147 1148 1149 1150
    const char* CHECKING_INPLACE_TEMPLATE =
        "  // Check Inplace\n"
        "  egr::EagerUtils::CheckInplace(%s, p_autograd_%s, "
        "require_any_grad);\n";
1151
    for (auto& inplace_pair : forward_inplace_map) {
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      std::string inplace_name = LegalizeVarName(inplace_pair.second);
1153 1154
      check_inplace_str += paddle::string::Sprintf(
          CHECKING_INPLACE_TEMPLATE, inplace_name, inplace_name);
1155 1156 1157 1158
    }
    VLOG(6) << "Check Inplace Input";
  }

1159
  std::string prepare_autograd_meta_str = "";
1160 1161 1162
  // only generate input autograd_meta in temporary.
  // output autograd_meta will be generated after running TraceOP.
  prepare_autograd_meta_str += get_input_autograd_meta_str;
1163 1164 1165 1166 1167 1168 1169 1170 1171 1172 1173
  prepare_autograd_meta_str += "\n";

  // [GradOpNode] GetTraceBackward
  std::string trace_backward_str =
      "  bool trace_backward = egr::Controller::Instance().HasGrad();\n";
  prepare_autograd_meta_str += trace_backward_str;
  prepare_autograd_meta_str += "\n";

  // [GradOpNode] Generation
  std::string grad_node_creation_str = "";

1174 1175
  size_t bwd_in_slot_num = out_vars.size();
  size_t bwd_out_slot_num = in_vars.size();
1176
  const char* GRAD_OP_NODE_TEMPLATE =
1177 1178
      "      auto grad_node = std::shared_ptr<%sGradNodeCompat>(new "
      "%sGradNodeCompat(%d, "
1179
      "%d));\n";
1180
  grad_node_creation_str += "    // Create GradOpNode\n";
1181 1182 1183 1184 1185
  grad_node_creation_str += paddle::string::Sprintf(GRAD_OP_NODE_TEMPLATE,
                                                    op_type,
                                                    op_type,
                                                    bwd_in_slot_num,
                                                    bwd_out_slot_num);
1186 1187 1188 1189 1190
  grad_node_creation_str += "\n";

  VLOG(6) << "Generated GradOpNode construction";

  // [GradOpNode] Set Attrs
1191 1192
  grad_node_creation_str += "      // Set Attributes\n";
  grad_node_creation_str += "      grad_node->SetAttrMap(std::move(attrs));\n";
1193
  grad_node_creation_str +=
1194
      "      grad_node->SetDefaultAttrMap(std::move(default_attrs));\n";
1195 1196 1197
  grad_node_creation_str += "\n";

  // [GradOpNode] Set TensorWrappers
1198
  grad_node_creation_str += "      // Set Tensor Wrappers\n";
1199 1200 1201 1202 1203 1204
  for (const auto& iter : op_base_infos) {
    const std::map<std::string, std::string>& grad_ins_fwd_slotname_map =
        iter.GetGradInsFwdSlotnameMap();
    for (auto& kv : grad_ins_fwd_slotname_map) {
      const std::string& tensor_wrapper_name = kv.second;
      const char* SET_TENSOR_WRAPPER_TEMPLATE =
1205
          "      grad_node->SetTensorWrapper%s(%s);\n";
1206
      // Replace output directly with input in inplace op.
1207 1208 1209
      if (!forward_inplace_map.empty() &&
          forward_inplace_map.count(tensor_wrapper_name)) {
        auto inplace_input_name = forward_inplace_map[tensor_wrapper_name];
1210 1211 1212 1213
        grad_node_creation_str +=
            paddle::string::Sprintf(SET_TENSOR_WRAPPER_TEMPLATE,
                                    LegalizeVarName(tensor_wrapper_name),
                                    LegalizeVarName(inplace_input_name));
1214
      } else {
1215 1216 1217 1218
        grad_node_creation_str +=
            paddle::string::Sprintf(SET_TENSOR_WRAPPER_TEMPLATE,
                                    LegalizeVarName(tensor_wrapper_name),
                                    LegalizeVarName(tensor_wrapper_name));
1219
      }
1220
    }
1221 1222 1223 1224 1225 1226 1227
  }
  grad_node_creation_str += "\n";
  VLOG(6) << "Generated SetTensorWrapper";

  // [GradOpNode] SetGradOutMeta
  // [GradOpNode] Add Edges
  std::string compute_require_grad_args = "trace_backward";
1228
  for (const proto::OpProto::Var& input : in_vars) {
1229
    const std::string& input_name = input.name();
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    const std::string& input_autograd_name =
        "p_autograd_" + LegalizeVarName(input_name);
1232

1233
    if (!input.duplicable()) {
1234 1235
      compute_require_grad_args += ", " + input_autograd_name;
      size_t input_position = fwd_inputs_name_pos_map.at(input_name);
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      bool found_target_name = false;
      for (const auto& iter : op_base_infos) {
        const auto& grad_outs_slot_map = iter.GetGradOutsSlotnameMap();
        for (auto iter : grad_outs_slot_map) {
          if ((!found_target_name) && (input_name == iter.second)) {
            const char* SET_GRAD_OUT_META_TEMPLATE =
                "      grad_node->SetGradOutMeta(%s, %d);\n";
1243 1244 1245 1246
            grad_node_creation_str +=
                paddle::string::Sprintf(SET_GRAD_OUT_META_TEMPLATE,
                                        LegalizeVarName(input_name),
                                        input_position);
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            found_target_name = true;
          }
        }
      }
1251 1252 1253
    } else {
      compute_require_grad_args += ", &" + input_autograd_name;
      size_t input_position = fwd_inputs_name_pos_map.at(input_name);
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      bool found_target_name = false;
      for (const auto& iter : op_base_infos) {
        const auto& grad_outs_slot_map = iter.GetGradOutsSlotnameMap();
        for (auto iter : grad_outs_slot_map) {
          if ((!found_target_name) && (input_name == iter.second)) {
            const char* SET_GRAD_OUT_META_TEMPLATE =
                "      grad_node->SetGradOutMeta(%s, %d);\n";
1261 1262 1263 1264
            grad_node_creation_str +=
                paddle::string::Sprintf(SET_GRAD_OUT_META_TEMPLATE,
                                        LegalizeVarName(input_name),
                                        input_position);
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            found_target_name = true;
          }
        }
      }
1269
    }
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  }

  // [GradOpNode] SetGradInMeta
  // [AutogradMeta] SetOutRank
  // [AutogradMeta] SetHistory
  std::string pass_stop_gradient_args = "false";
1276
  for (const proto::OpProto::Var& output : out_vars) {
1277
    const std::string& output_name = output.name();
1278
    // Replace output directly with input in inplace op.
1279 1280 1281
    if (!forward_inplace_map.empty() &&
        forward_inplace_map.count(output_name)) {
      auto inplace_input_name = forward_inplace_map[output_name];
1282
      const std::string& inplace_input_autograd_name =
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          "p_autograd_" + LegalizeVarName(inplace_input_name);
1284 1285 1286 1287
      size_t output_position = fwd_outputs_name_pos_map.at(output_name);

      // Intermediate Tensor does not require SetHistory, nor RetainGrad
      pass_stop_gradient_args += ", " + inplace_input_autograd_name;
1288
      const char* SET_OUT_RANK_TEMPLATE =
1289
          "      egr::EagerUtils::SetOutRankWithSlot(%s, %d);\n";
1290
      grad_node_creation_str += paddle::string::Sprintf(
1291
          SET_OUT_RANK_TEMPLATE, inplace_input_autograd_name, output_position);
1292

1293 1294 1295
      // Intermediate Tensor does not require SetHistory
      if (!output.intermediate()) {
        const char* SET_HISTORY_TEMPLATE =
1296 1297 1298
            "      egr::EagerUtils::SetHistory(%s, grad_node);\n";
        grad_node_creation_str += paddle::string::Sprintf(
            SET_HISTORY_TEMPLATE, inplace_input_autograd_name);
1299
      }
1300
      const char* SET_GRAD_IN_META_TEMPLATE =
1301
          "      grad_node->SetGradInMeta(%s, %d);\n";
1302 1303 1304 1305
      grad_node_creation_str +=
          paddle::string::Sprintf(SET_GRAD_IN_META_TEMPLATE,
                                  LegalizeVarName(inplace_input_name),
                                  output_position);
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1307 1308 1309 1310 1311
      // Intermediate Tensor does not require CheckAndRetainGrad
      if (!output.intermediate()) {
        VLOG(6) << "Generated Call RetainGradForTensor";
        const char* RETAIN_GRAD_TEMPLATE =
            "      egr::EagerUtils::CheckAndRetainGrad(%s);\n";
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        grad_node_creation_str += paddle::string::Sprintf(
            RETAIN_GRAD_TEMPLATE, LegalizeVarName(inplace_input_name));
1314
      }
1315
    } else {
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      const std::string& output_autograd_name =
          "p_autograd_" + LegalizeVarName(output_name);
1318
      size_t output_position = fwd_outputs_name_pos_map.at(output_name);
1319

1320 1321 1322 1323 1324 1325 1326 1327 1328 1329 1330 1331 1332 1333 1334 1335 1336 1337
      // Intermediate Tensor does not require SetHistory, nor RetainGrad

      if (output.duplicable()) {
        pass_stop_gradient_args += ", &" + output_autograd_name;
        const char* SET_OUT_RANK_TEMPLATE =
            "      egr::EagerUtils::SetOutRankWithSlot(&%s, %d);\n";
        grad_node_creation_str += paddle::string::Sprintf(
            SET_OUT_RANK_TEMPLATE, output_autograd_name, output_position);

        // Intermediate Tensor does not require SetHistory
        if (!output.intermediate()) {
          const char* SET_HISTORY_TEMPLATE =
              "      egr::EagerUtils::SetHistory(&%s, grad_node);\n";
          grad_node_creation_str += paddle::string::Sprintf(
              SET_HISTORY_TEMPLATE, output_autograd_name);
        }
        const char* SET_GRAD_IN_META_TEMPLATE =
            "      grad_node->SetGradInMeta(%s, %d);\n";
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        grad_node_creation_str +=
            paddle::string::Sprintf(SET_GRAD_IN_META_TEMPLATE,
                                    LegalizeVarName(output_name),
                                    output_position);
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      } else {
        pass_stop_gradient_args += ", " + output_autograd_name;
        const char* SET_OUT_RANK_TEMPLATE =
            "      egr::EagerUtils::SetOutRankWithSlot(%s, %d);\n";
        grad_node_creation_str += paddle::string::Sprintf(
            SET_OUT_RANK_TEMPLATE, output_autograd_name, output_position);

        // Intermediate Tensor does not require SetHistory
        if (!output.intermediate()) {
          const char* SET_HISTORY_TEMPLATE =
              "      egr::EagerUtils::SetHistory(%s, grad_node);\n";
          grad_node_creation_str += paddle::string::Sprintf(
              SET_HISTORY_TEMPLATE, output_autograd_name);
        }
        const char* SET_GRAD_IN_META_TEMPLATE =
            "      grad_node->SetGradInMeta(%s, %d);\n";
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        grad_node_creation_str +=
            paddle::string::Sprintf(SET_GRAD_IN_META_TEMPLATE,
                                    LegalizeVarName(output_name),
                                    output_position);
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      }

      // Intermediate Tensor does not require CheckAndRetainGrad
1366
      if (!output.intermediate()) {
1367 1368 1369
        VLOG(6) << "Generated Call RetainGradForTensor";
        const char* RETAIN_GRAD_TEMPLATE =
            "      egr::EagerUtils::CheckAndRetainGrad(%s);\n";
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        grad_node_creation_str += paddle::string::Sprintf(
            RETAIN_GRAD_TEMPLATE, LegalizeVarName(output_name));
1372
      }
1373
    }
1374 1375 1376 1377
  }
  VLOG(6) << "Generated SetGradIn/OutMeta";

  // [Generation] GradNode Creation
1378 1379 1380 1381 1382 1383 1384
  // After getting require_any_grad, firstly use CheckInplace method for inplace
  // op.
  // Then execute TraceOp and generate output autograd_meta.
  // Finally, Construct GradNode. (Replace output directly with input in inplace
  // op.)
  // Add event record
  std::string event_name = op_type + " node_creation";
1385
  const char* GRAD_NODE_CREATION_TEMPLATE =
1386
      "%s"
1387
      "  bool require_any_grad = egr::EagerUtils::ComputeRequireGrad(%s);\n"
1388 1389 1390 1391
      "%s\n"
      "%s"
      "  {\n"
      "    paddle::platform::RecordEvent node_creation_record_event(\"%s\", "
1392
      "paddle::platform::TracerEventType::OperatorInner, 1);\n"
1393 1394
      "%s"
      "    if(require_any_grad) {\n"
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      "      VLOG(6) << \" Construct Grad for %s \";\n"
1396 1397 1398 1399
      "      egr::EagerUtils::PassStopGradient(%s);\n"
      "  %s\n"
      "    }\n"
      "  }";
1400 1401 1402 1403 1404 1405 1406 1407 1408 1409 1410
  std::string grad_node_creation_body_str =
      paddle::string::Sprintf(GRAD_NODE_CREATION_TEMPLATE,
                              prepare_autograd_meta_str,
                              compute_require_grad_args,
                              check_inplace_str,
                              trace_op_body_str,
                              event_name,
                              get_output_autograd_meta_str,
                              op_type,
                              pass_stop_gradient_args,
                              grad_node_creation_str);
1411 1412 1413 1414

  return grad_node_creation_body_str;
}

1415 1416 1417 1418
/* -------------------------------- */
/* --------- CodeGen: Forward ----- */
/* -------------------------------- */
static std::pair<std::string, std::string> GenerateForwardFunctionContents(
1419
    const ForwardGenerationInfo& fwd_info,
1420
    const GradNodeGenerationInfo& bwd_info,
1421
    std::map<std::string, std::string> forward_inplace_map = {}) {
1422 1423 1424 1425 1426 1427 1428 1429 1430
  /* --- Process Forward Info ---*/
  const std::string& op_type = fwd_info.GetOpType();
  const std::unordered_map<std::string, size_t>& fwd_inputs_name_pos_map =
      fwd_info.GetFwdInputsNamePosMap();
  const std::unordered_map<std::string, size_t>& fwd_outputs_name_pos_map =
      fwd_info.GetFwdOutputsNamePosMap();
  const std::vector<proto::OpProto::Var>& in_vars = fwd_info.GetInVars();
  const std::vector<proto::OpProto::Var>& out_vars = fwd_info.GetOutVars();

1431 1432 1433 1434 1435 1436 1437 1438 1439
  /*
    // Forward Function Example:
  std::tuple<vector<Tensor>, Tensor, vector<Tensor>>
  kernel_function(vector<Tensor>& X, Tensor& Y, const paddle::AttributeMap&
  attr_map, size_t
  Out0Num, size_t Out1Num) {

        // Forward Function Body
        // According to fwd_inputs_name_pos_map
1440
        std::map<std::string, std::vector<std::shared_ptr<egr::EagerVariable>>>
1441
  ins =
1442
                { {"X" , TrySyncToVars(X)}, { "Y" , TrySyncToVars(Y)} };
1443

1444
        std::map<std::string, std::vector<std::shared_ptr<egr::EagerVariable>>>
1445 1446
  outs =
  {
1447 1448
          {"Out0" , CreateVars(Out0Num)}, {"Out1"
  ,CreateVars(Out1Num)} };
1449 1450

        // According to op_proto->attrs()
1451

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        Controller.Instance().GetCurrentTracer()->TraceOp("op_type", ins, outs,
  attr_map,
1454 1455 1456
  Controller.Instance().GetExpectedPlace(), {});

        // According to fwd_outputs_names
1457 1458 1459 1460 1461
        std::vector<paddle::experimental::Tensor> Out0 =
  GetOutputs(outs["Out0"]);
        paddle::experimental::Tensor Out1 = GetOutputs(outs["Out1"][0]);
        std::vector<paddle::experimental::Tensor> Out2 =
  GetOutputs(outs["Out2"]);
1462 1463 1464 1465 1466 1467 1468 1469 1470

        // Grad Node Generation Codes
        ...

        return std::make_tuple(Out0, Out1, Out2);
    }
  */
  VLOG(6) << "Generating Dygraph Forward Function";

1471 1472 1473 1474 1475
  const char* FORWARD_FUNCTION_TEMPLATE =
      "  VLOG(3) << \"Running Eager Forward Op: %s\";\n";
  std::string generated_function_body =
      paddle::string::Sprintf(FORWARD_FUNCTION_TEMPLATE, op_type);

1476
  std::string dygraph_function_args_str = "";
1477
  std::string amp_function_call_args_str = "";
1478 1479 1480 1481
  core_ops_legacy_args_info[op_type] = {};
  core_ops_legacy_args_type_info[op_type] = {};
  core_ops_legacy_args_info[op_type].resize(in_vars.size());
  core_ops_legacy_args_type_info[op_type].resize(in_vars.size());
1482 1483 1484 1485 1486 1487 1488

  /* ------ Dygraph forward function generation ------ */
  generated_function_body += "  // Dygraph Forward Pass\n";
  generated_function_body += "\n";

  // [Generation] Get Ins Map
  std::string ins_contents_str = "";
1489
  std::vector<std::string> input_args_str_list(in_vars.size());
1490 1491 1492
  std::vector<std::string> amp_function_call_args_str_list(in_vars.size());
  std::string amp_tensors_vector_str = "";
  std::string amp_auto_cast_str = "";
1493
  for (const proto::OpProto::Var& input : in_vars) {
1494 1495
    const std::string& input_name = input.name();
    size_t input_position = fwd_inputs_name_pos_map.at(input_name);
1496

1497 1498
    if (input.duplicable()) {
      const char* FWD_INS_ARG_TEMPLATE =
1499
          "const std::vector<paddle::experimental::Tensor>& %s";
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      input_args_str_list[input_position] = paddle::string::Sprintf(
          FWD_INS_ARG_TEMPLATE, LegalizeVarName(input_name));
      amp_function_call_args_str_list[input_position] =
          " NEW_" + LegalizeVarName(input_name);
1504

1505
      core_ops_legacy_args_type_info[op_type][input_position] = "list";
1506
    } else {
1507 1508 1509
      // inplace tensor can't be const
      const char* FWD_INS_ARG_TEMPLATE;
      bool flag_find_input_name = false;
1510 1511
      if (!forward_inplace_map.empty()) {
        for (auto& inplace_pair : forward_inplace_map) {
1512 1513 1514 1515 1516 1517 1518 1519 1520 1521
          if (inplace_pair.second == input_name) {
            flag_find_input_name = true;
            FWD_INS_ARG_TEMPLATE = "paddle::experimental::Tensor& %s";
            break;
          }
        }
      }
      if (!flag_find_input_name) {
        FWD_INS_ARG_TEMPLATE = "const paddle::experimental::Tensor& %s";
      }
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      input_args_str_list[input_position] = paddle::string::Sprintf(
          FWD_INS_ARG_TEMPLATE, LegalizeVarName(input_name));
      amp_function_call_args_str_list[input_position] =
          " NEW_" + LegalizeVarName(input_name);
1526

1527
      core_ops_legacy_args_type_info[op_type][input_position] = "tensor";
1528
    }
1529
    core_ops_legacy_args_info[op_type][input_position] = input_name;
1530 1531 1532

    if (input.dispensable()) continue;

1533
    const char* FWD_INS_CONTENT_TEMPLATE =
1534
        "{ \"%s\", egr::EagerUtils::TrySyncToVars(%s) },";
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    ins_contents_str += paddle::string::Sprintf(
        FWD_INS_CONTENT_TEMPLATE, input_name, LegalizeVarName(input_name));
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    if (input.duplicable()) {
      const char* AMP_TENSORS_VECTOR_TEMPLATE = "%s,";
      amp_tensors_vector_str +=
          paddle::string::Sprintf(AMP_TENSORS_VECTOR_TEMPLATE, input_name);
      const char* AMP_AUTO_CAST_TEMPLATE =
          "    auto NEW_%s = egr::AmpAutoCasts(\"%s\", %s, amp_dst_dtype, "
          "\"%s\");\n";
1544 1545 1546 1547 1548
      amp_auto_cast_str += paddle::string::Sprintf(AMP_AUTO_CAST_TEMPLATE,
                                                   LegalizeVarName(input_name),
                                                   input_name,
                                                   LegalizeVarName(input_name),
                                                   op_type);
1549 1550
    } else {
      const char* AMP_TENSORS_VECTOR_TEMPLATE = "{%s},";
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      amp_tensors_vector_str += paddle::string::Sprintf(
          AMP_TENSORS_VECTOR_TEMPLATE, LegalizeVarName(input_name));
1553 1554 1555
      const char* AMP_AUTO_CAST_TEMPLATE =
          "    auto NEW_%s = egr::AmpAutoCast(\"%s\", %s, amp_dst_dtype, "
          "\"%s\");\n";
1556 1557 1558 1559 1560
      amp_auto_cast_str += paddle::string::Sprintf(AMP_AUTO_CAST_TEMPLATE,
                                                   LegalizeVarName(input_name),
                                                   input_name,
                                                   LegalizeVarName(input_name),
                                                   op_type);
1561
    }
1562 1563 1564 1565
  }
  if (ins_contents_str.size() > 0)
    ins_contents_str.pop_back();  // // Remove trailing ","

1566 1567
  if (amp_tensors_vector_str.size() > 0) amp_tensors_vector_str.pop_back();

1568 1569 1570 1571 1572 1573 1574
  for (const std::string& arg : input_args_str_list) {
    dygraph_function_args_str += arg;
    dygraph_function_args_str += ",";
  }
  if (dygraph_function_args_str.size() > 0)
    dygraph_function_args_str.pop_back();

1575 1576 1577 1578 1579 1580
  for (const std::string& arg : amp_function_call_args_str_list) {
    amp_function_call_args_str += arg;
    amp_function_call_args_str += ",";
  }
  if (amp_function_call_args_str.size() > 0)
    amp_function_call_args_str.pop_back();
1581

1582
  // Handle Dispensable Inputs
1583 1584 1585
  std::string dispensable_ins_contents_str = "";
  std::string dispensable_amp_tensors_vector_str = "";
  std::string dispensable_amp_auto_cast_str = "";
1586
  std::set<std::string> input_names;
1587 1588
  for (const proto::OpProto::Var& input : in_vars) {
    const std::string& input_name = input.name();
1589
    input_names.insert(input_name);
1590 1591 1592 1593
    if (input.dispensable()) {
      if (input.duplicable()) {
        const char* FWD_INS_CONTENT_TEMPLATE =
            "  if(%s.size() > 0) "
1594
            "ins[\"%s\"] = egr::EagerUtils::TrySyncToVars(%s);\n";
1595 1596 1597 1598 1599
        dispensable_ins_contents_str +=
            paddle::string::Sprintf(FWD_INS_CONTENT_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    input_name,
                                    LegalizeVarName(input_name));
1600 1601 1602
        const char* FWD_AMP_TENSORS_VECTOR_TEMPLATE =
            "    if(%s.size() > 0) "
            "amp_tensors_vector.push_back(%s);\n";
1603 1604 1605 1606
        dispensable_amp_tensors_vector_str +=
            paddle::string::Sprintf(FWD_AMP_TENSORS_VECTOR_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    LegalizeVarName(input_name));
1607 1608 1609
        const char* DISPENSABLE_AMP_AUTO_CAST_TEMPLATE =
            "    auto NEW_%s = ((%s.size() > 0) ? egr::AmpAutoCasts(\"%s\", "
            "%s, amp_dst_dtype, \"%s\") : %s);\n";
1610 1611 1612 1613 1614 1615 1616 1617
        dispensable_amp_auto_cast_str +=
            paddle::string::Sprintf(DISPENSABLE_AMP_AUTO_CAST_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    LegalizeVarName(input_name),
                                    input_name,
                                    LegalizeVarName(input_name),
                                    op_type,
                                    LegalizeVarName(input_name));
1618 1619
      } else {
        const char* FWD_INS_CONTENT_TEMPLATE =
1620
            "  if(%s.initialized()) "
1621
            "ins[\"%s\"] = egr::EagerUtils::TrySyncToVars(%s);\n";
1622 1623 1624 1625 1626
        dispensable_ins_contents_str +=
            paddle::string::Sprintf(FWD_INS_CONTENT_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    input_name,
                                    LegalizeVarName(input_name));
1627 1628 1629
        const char* FWD_AMP_TENSORS_VECTOR_TEMPLATE =
            "    if(%s.initialized()) "
            "amp_tensors_vector.push_back({ %s });\n";
1630 1631 1632 1633
        dispensable_amp_tensors_vector_str +=
            paddle::string::Sprintf(FWD_AMP_TENSORS_VECTOR_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    LegalizeVarName(input_name));
1634 1635 1636
        const char* DISPENSABLE_AMP_AUTO_CAST_TEMPLATE =
            "    auto NEW_%s = ((%s.initialized()) ? egr::AmpAutoCast(\"%s\", "
            "%s, amp_dst_dtype, \"%s\") : %s);\n";
1637 1638 1639 1640 1641 1642 1643 1644
        dispensable_amp_auto_cast_str +=
            paddle::string::Sprintf(DISPENSABLE_AMP_AUTO_CAST_TEMPLATE,
                                    LegalizeVarName(input_name),
                                    LegalizeVarName(input_name),
                                    input_name,
                                    LegalizeVarName(input_name),
                                    op_type,
                                    LegalizeVarName(input_name));
1645 1646 1647 1648
      }
    }
  }

1649 1650 1651 1652
  VLOG(6) << "Generated Ins Map";

  // [Generation] Get Outs Map
  std::string outs_contents_str = "";
1653
  std::string inplace_mapping_str = "";
1654
  for (const proto::OpProto::Var& output : out_vars) {
1655 1656
    const std::string& output_name = output.name();
    std::string outnum = "1";
1657 1658 1659
    if (op_passing_outs_map[op_type].count(output_name)) {
      const std::string output_var_name = output_name + "Var";

1660 1661 1662
      // Pass Output from function
      // argument(EagerVariable*/vector<EagerVariable*>&),
      // in form of shared_ptr<EagerVariable>/vector<shared_ptr<EagerVariable>>
1663 1664
      if (output.duplicable()) {
        const char* FWD_NUM_ARG_TEMPLATE =
1665
            ", std::vector<paddle::experimental::Tensor*>& %s";
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        std::string arg_str = paddle::string::Sprintf(
            FWD_NUM_ARG_TEMPLATE, LegalizeVarName(output_var_name));
1668
        dygraph_function_args_str += arg_str;
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        amp_function_call_args_str += (", " + LegalizeVarName(output_var_name));
1670

1671
        core_ops_legacy_args_type_info[op_type].push_back("list");
1672
      } else {
1673
        const char* FWD_NUM_ARG_TEMPLATE = ", paddle::experimental::Tensor* %s";
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        std::string arg_str = paddle::string::Sprintf(
            FWD_NUM_ARG_TEMPLATE, LegalizeVarName(output_var_name));
1676
        dygraph_function_args_str += arg_str;
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        amp_function_call_args_str += (", " + LegalizeVarName(output_var_name));
1678

1679
        core_ops_legacy_args_type_info[op_type].push_back("tensor");
1680 1681
      }

1682 1683 1684 1685 1686 1687 1688 1689 1690 1691 1692
      if (BeSameAsInput(output_name, input_names)) {
        if (!output.dispensable()) {
          std::string input_name =
              output_name.substr(0, output_name.size() - 3);
          const char* FWD_OUTS_CONTENT_TEMPLATE = "{ \"%s\", ins[\"%s\"] },";
          outs_contents_str += paddle::string::Sprintf(
              FWD_OUTS_CONTENT_TEMPLATE, output_name, input_name);
        }
      } else {
        const char* FWD_OUTS_CONTENT_TEMPLATE =
            "{ \"%s\", egr::EagerUtils::TrySyncToVars(%s) },";
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        outs_contents_str +=
1694 1695
            paddle::string::Sprintf(FWD_OUTS_CONTENT_TEMPLATE,
                                    output_name,
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                                    LegalizeVarName(output_var_name));
1697
      }
1698
      core_ops_legacy_args_info[op_type].push_back(output_name);
1699

1700 1701
    } else if (!forward_inplace_map.empty() &&
               forward_inplace_map.count(output_name)) {
1702 1703
      // In inplace op, replace the output with the input directly.
      PADDLE_ENFORCE_NE(
1704 1705
          forward_inplace_map[output_name],
          "",
1706
          paddle::platform::errors::InvalidArgument(
1707 1708
              "Inplace op %s has no input corresponding to output %s.",
              op_type,
1709 1710
              output_name));
      const char* FWD_OUTS_CONTENT_TEMPLATE = "{ \"%s\", ins[\"%s\"] },";
1711
      auto inplace_input_name = forward_inplace_map[output_name];
1712 1713 1714 1715 1716 1717 1718
      outs_contents_str += paddle::string::Sprintf(
          FWD_OUTS_CONTENT_TEMPLATE, output_name, inplace_input_name);

      // inplace_map used in TraceOp.
      const char* INPLACE_MAPPING_TEMPLATE = R"({"%s", "%s"},)";
      inplace_mapping_str += paddle::string::Sprintf(
          INPLACE_MAPPING_TEMPLATE, inplace_input_name, output_name);
1719
    } else {
1720 1721 1722 1723 1724 1725 1726
      if (output.duplicable()) {
        outnum = output_name + "Num";

        const char* FWD_NUM_ARG_TEMPLATE = ", size_t %s";
        std::string arg_str =
            paddle::string::Sprintf(FWD_NUM_ARG_TEMPLATE, outnum);
        dygraph_function_args_str += arg_str;
1727
        amp_function_call_args_str += (", " + outnum);
1728
        const char* FWD_OUTS_CONTENT_TEMPLATE =
1729
            "{ \"%s\", egr::EagerUtils::CreateVars(%s) },";
1730 1731
        outs_contents_str += paddle::string::Sprintf(
            FWD_OUTS_CONTENT_TEMPLATE, output_name, outnum);
1732 1733
        core_ops_legacy_args_info[op_type].push_back(outnum);
        core_ops_legacy_args_type_info[op_type].push_back("int");
1734 1735 1736
      } else {
        const char* FWD_OUTS_CONTENT_TEMPLATE =
            "{ \"%s\", "
1737
            "{std::make_shared<egr::EagerVariable>(egr::Controller::Instance()."
1738 1739 1740 1741
            "GenerateUniqueName())}},";
        outs_contents_str +=
            paddle::string::Sprintf(FWD_OUTS_CONTENT_TEMPLATE, output_name);
      }
1742 1743 1744 1745
    }
  }
  if (outs_contents_str.size() > 0)
    outs_contents_str.pop_back();  // Remove trailing ","
1746 1747
  if (inplace_mapping_str.size() > 0)
    inplace_mapping_str.pop_back();  // Remove trailing ","
1748

1749
  if ((op_type != "cast") && (forward_inplace_map.empty())) {
1750 1751 1752 1753 1754
    VLOG(6) << "Generating Dygraph Forward AMP";
    const char* AMP_LOGIC_CONTEXT =
        "  if (egr::Controller::Instance().GetAMPLevel() != "
        "paddle::imperative::AmpLevel::O0) {\n"
        "    VLOG(5) << \"Check and Prepare For AMP\";\n"
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        " \n"
1756 1757 1758 1759 1760
        "%s\n"
        "  }\n";
    std::string amp_logic_str = "";
    if (in_vars.size() != 0) {
      const char* AMP_TENSORS_VECTOR_TEMPLATE =
1761 1762
          "    paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
          "egr::kSlotSmallVectorSize> "
1763 1764 1765 1766 1767 1768 1769 1770 1771 1772 1773 1774 1775 1776 1777 1778 1779 1780 1781 1782 1783 1784 1785 1786 1787 1788 1789 1790 1791 1792 1793 1794 1795 1796 1797 1798 1799 1800 1801
          "amp_tensors_vector = { "
          "%s };\n";
      std::string amp_tensors_vector = paddle::string::Sprintf(
          AMP_TENSORS_VECTOR_TEMPLATE, amp_tensors_vector_str);
      amp_tensors_vector += dispensable_amp_tensors_vector_str;
      amp_logic_str += amp_tensors_vector;
      amp_logic_str += "\n";
      const char* GET_AMP_GET_DST_DTYPE_CONTEXT =
          "    auto amp_dst_dtype = "
          "egr::GetAmpDestDtype(\"%s\", "
          "amp_tensors_vector);\n";
      amp_logic_str +=
          paddle::string::Sprintf(GET_AMP_GET_DST_DTYPE_CONTEXT, op_type);
      amp_logic_str += "\n";
      amp_logic_str += amp_auto_cast_str;
      amp_logic_str += dispensable_amp_auto_cast_str;
      amp_logic_str += "\n";
    }
    const char* CALL_BACK_TEMPLATE =
        "    {\n"
        "      paddle::imperative::AutoCastGuard "
        "guard(egr::Controller::Instance().GetCurrentTracer(), "
        "paddle::imperative::AmpLevel::O0);\n"
        "      return %s_dygraph_function(%s);\n"
        "    }";
    amp_function_call_args_str += ", attr_map ";
    if (amp_function_call_args_str.size() > 0) {
      auto iter = amp_function_call_args_str.begin();
      if ((*iter) == ',') amp_function_call_args_str.erase(iter);
    }
    std::string call_back_str = paddle::string::Sprintf(
        CALL_BACK_TEMPLATE, op_type, amp_function_call_args_str);
    amp_logic_str += call_back_str;
    amp_logic_str += "\n";
    std::string amp_context =
        paddle::string::Sprintf(AMP_LOGIC_CONTEXT, amp_logic_str);
    generated_function_body += amp_context;
    generated_function_body += "\n";
  }
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  if (!forward_inplace_map.empty()) {
    generated_function_body +=
        "  auto current_level = egr::Controller::Instance().GetAMPLevel();\n";
    generated_function_body +=
        "  "
        "egr::Controller::Instance().SetAMPLevel(paddle::imperative::AmpLevel::"
        "O0);\n";
  }
1811 1812 1813 1814 1815 1816 1817 1818 1819 1820 1821
  // forward ins insert
  const char* FWD_INS_MAP_TEMPLATE =
      "  std::map<std::string, "
      "std::vector<std::shared_ptr<egr::EagerVariable>>> ins = { "
      "%s };\n";
  std::string ins_map_str =
      paddle::string::Sprintf(FWD_INS_MAP_TEMPLATE, ins_contents_str);
  ins_map_str += dispensable_ins_contents_str;
  generated_function_body += ins_map_str;
  generated_function_body += "\n";
  // forward outs insert
1822 1823
  const char* FWD_OUTS_MAP_TEMPLATE =
      "  std::map<std::string, "
1824
      "std::vector<std::shared_ptr<egr::EagerVariable>>> outs = { "
1825 1826 1827 1828 1829 1830
      "%s };\n";
  std::string outs_map_str =
      paddle::string::Sprintf(FWD_OUTS_MAP_TEMPLATE, outs_contents_str);
  generated_function_body += outs_map_str;
  generated_function_body += "\n";

1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846
  for (const proto::OpProto::Var& output : out_vars) {
    const std::string& output_name = output.name();
    if (op_passing_outs_map[op_type].count(output_name)) {
      if (BeSameAsInput(output_name, input_names)) {
        if (output.dispensable()) {
          std::string input_name =
              output_name.substr(0, output_name.size() - 3);
          const char* FWD_OUTS_CONTENT_TEMPLATE =
              "  if (ins.count(\"%s\")) outs[\"%s\"] = ins[\"%s\"];\n";
          generated_function_body += paddle::string::Sprintf(
              FWD_OUTS_CONTENT_TEMPLATE, input_name, output_name, input_name);
        }
      }
    }
  }

1847 1848
  VLOG(6) << "Generated Outs Map";

1849
  // [Generation] Apply View Strategy (Tensor)
1850
  if (forward_inplace_map.empty() && view_op_map.count(op_type)) {
1851 1852 1853 1854 1855 1856 1857 1858 1859
    const char* HANDLE_VIEW_BETWEEN_INPUT_AND_OUTPUT =
        "  if (ins.count(\"%s\") && outs.count(\"%s\")) {\n"
        "    egr::EagerUtils::HandleViewBetweenInputAndOutput(ins[\"%s\"][0], "
        "outs[\"%s\"][0]);\n"
        "  };\n";

    std::string view_strategy_str = "";
    std::string viwe_input_name = view_op_map[op_type].first;
    std::string viwe_output_name = view_op_map[op_type].second;
1860 1861 1862 1863 1864 1865
    view_strategy_str +=
        paddle::string::Sprintf(HANDLE_VIEW_BETWEEN_INPUT_AND_OUTPUT,
                                viwe_input_name,
                                viwe_output_name,
                                viwe_input_name,
                                viwe_output_name);
1866 1867 1868 1869 1870 1871 1872 1873

    generated_function_body += view_strategy_str;
    generated_function_body += "\n";

    VLOG(6) << "Generated View Strategy";
  }
  generated_function_body += "\n";

1874 1875 1876 1877
  // [Generation] Get Attrs
  dygraph_function_args_str +=
      ", const paddle::framework::AttributeMap& attr_map";

1878 1879 1880 1881 1882 1883
  /* --------- Generate TraceOp ----- */
  // TraceOp should be run after compute require_any_grad. (for checking
  // inplace)
  // `trace_op_body_str` will be passed as a parameter to
  // `GenerateGradNodeCreationContent`.
  std::string trace_op_body_str = "";
1884 1885 1886 1887
  // [Generation] Get TraceOp
  const char* FWD_TRACE_OP_TEMPLATE =
      "  paddle::framework::AttributeMap attrs = attr_map;\n"
      "  paddle::framework::AttributeMap default_attrs;\n"
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      "  egr::Controller::Instance().GetCurrentTracer()->TraceOp(\"%s\", ins, "
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      "outs, attrs,\n"
1890
      "     egr::Controller::Instance().GetExpectedPlace(),\n"
1891 1892 1893 1894 1895 1896
      "     &default_attrs, true, {%s});\n";
  std::string trace_op_str = paddle::string::Sprintf(
      FWD_TRACE_OP_TEMPLATE, op_type, inplace_mapping_str);

  trace_op_body_str += trace_op_str;
  trace_op_body_str += "\n";
1897 1898 1899 1900

  VLOG(6) << "Generated AttrMap & TraceOp";

  // [Generation] Convert output VarBase to Vector/Tensor
1901
  size_t output_size = out_vars.size();
1902 1903
  std::vector<std::string> return_contents(output_size);
  std::vector<std::string> return_types(output_size);
1904
  for (const proto::OpProto::Var& output : out_vars) {
1905
    const std::string& output_name = output.name();
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    const std::string output_var_args_name =
        LegalizeVariableName(output_name + "Var");
1908 1909
    std::string out_tensor_str;
    size_t return_position = fwd_outputs_name_pos_map.at(output_name);
1910
    std::string output_varname = LegalizeVariableName(output_name);
1911 1912

    if (output.duplicable()) {
1913 1914 1915 1916 1917 1918 1919
      if (op_passing_outs_map[op_type].count(output_name)) {
        if (output.dispensable()) {
          const char* FWD_OUT_TENSORS_TEMPLATE =
              "  std::vector<paddle::experimental::Tensor> %s;\n"
              "  if (outs.count(\"%s\"))  "
              "egr::EagerUtils::GetOutputs(outs[\"%s\"], %s);\n"
              "  egr::EagerUtils::Output2Result(%s, &%s);\n";
1920 1921 1922 1923 1924 1925 1926
          out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSORS_TEMPLATE,
                                                   output_varname,
                                                   output_name,
                                                   output_name,
                                                   output_var_args_name,
                                                   output_var_args_name,
                                                   output_varname);
1927 1928 1929 1930 1931
        } else {
          const char* FWD_OUT_TENSORS_TEMPLATE =
              "  std::vector<paddle::experimental::Tensor> %s;\n"
              "  egr::EagerUtils::GetOutputs(outs[\"%s\"], %s);\n"
              "  egr::EagerUtils::Output2Result(%s, &%s);\n";
1932 1933 1934 1935 1936 1937
          out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSORS_TEMPLATE,
                                                   output_varname,
                                                   output_name,
                                                   output_var_args_name,
                                                   output_var_args_name,
                                                   output_varname);
1938 1939 1940 1941 1942
        }
      } else {
        const char* FWD_OUT_TENSORS_TEMPLATE =
            "  std::vector<paddle::experimental::Tensor> %s;\n"
            "  egr::EagerUtils::GetOutputs(outs[\"%s\"], &%s);\n";
1943 1944 1945 1946
        out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSORS_TEMPLATE,
                                                 output_varname,
                                                 output_name,
                                                 output_varname);
1947
      }
1948 1949
      return_types[return_position] =
          "std::vector<paddle::experimental::Tensor>";
1950
    } else {
1951 1952 1953 1954 1955 1956
      if (op_passing_outs_map[op_type].count(output_name)) {
        if (output.dispensable()) {
          const char* FWD_OUT_TENSOR_TEMPLATE =
              "  if (outs.count(\"%s\"))  "
              "egr::EagerUtils::GetOutput(outs[\"%s\"][0], %s);\n"
              "  paddle::experimental::Tensor& %s = *%s;\n";
1957 1958 1959 1960 1961 1962
          out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSOR_TEMPLATE,
                                                   output_name,
                                                   output_name,
                                                   output_var_args_name,
                                                   output_varname,
                                                   output_var_args_name);
1963 1964 1965 1966
        } else {
          const char* FWD_OUT_TENSOR_TEMPLATE =
              "  egr::EagerUtils::GetOutput(outs[\"%s\"][0], %s);\n"
              "  paddle::experimental::Tensor& %s = *%s;\n";
1967 1968 1969 1970 1971
          out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSOR_TEMPLATE,
                                                   output_name,
                                                   output_var_args_name,
                                                   output_varname,
                                                   output_var_args_name);
1972 1973
        }
      } else {
1974 1975
        if (!forward_inplace_map.empty() &&
            forward_inplace_map.count(output_name)) {
1976 1977
          // Modify meta info of inplace tensor.
          // Bump inplace version of inplace tensor.
1978
          auto inplace_input_name = forward_inplace_map[output_name];
1979
          const char* FWD_OUT_TENSOR_TEMPLATE =
1980
              "  egr::EagerUtils::GetOutput(outs[\"%s\"][0], &%s);\n"
1981 1982 1983
              "  %s.bump_inplace_version();\n"
              "  VLOG(3) << \"Tensor(\" << %s.name() << \") uses Inplace "
              "Strategy.\";\n";
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          out_tensor_str =
1985 1986
              paddle::string::Sprintf(FWD_OUT_TENSOR_TEMPLATE,
                                      output_name,
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                                      LegalizeVarName(inplace_input_name),
                                      LegalizeVarName(inplace_input_name),
                                      LegalizeVarName(inplace_input_name));
1990 1991 1992 1993
        } else {
          const char* FWD_OUT_TENSOR_TEMPLATE =
              "  paddle::experimental::Tensor %s;\n"
              "  egr::EagerUtils::GetOutput(outs[\"%s\"][0], &%s);\n";
1994 1995 1996 1997
          out_tensor_str = paddle::string::Sprintf(FWD_OUT_TENSOR_TEMPLATE,
                                                   output_varname,
                                                   output_name,
                                                   output_varname);
1998
        }
1999 2000
      }
      return_types[return_position] = "paddle::experimental::Tensor";
2001 2002
    }

2003 2004
    if (!forward_inplace_map.empty() &&
        forward_inplace_map.count(output_name)) {
2005
      // Replace output directly with input in inplace op.
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      return_contents[return_position] =
2007
          LegalizeVarName(forward_inplace_map[output_name]);
2008 2009 2010 2011
    } else {
      return_contents[return_position] = output_varname;
    }
    trace_op_body_str += out_tensor_str;
2012
  }
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  if (!forward_inplace_map.empty()) {
    trace_op_body_str +=
        "  egr::Controller::Instance().SetAMPLevel(current_level);\n";
  }
2017
  trace_op_body_str += "\n";
2018
  VLOG(6) << "Converted Output VarBase to EagerVariable(s)";
2019
  /* ------ END Generate TraceOp ----- */
2020

2021 2022 2023 2024 2025
  // [Generation] Handle core_ops_legacy_returns_info
  // avoid inplace op changing core_ops_legacy_returns_info
  if (core_ops_legacy_returns_info.empty() ||
      !core_ops_legacy_returns_info.count(op_type)) {
    core_ops_legacy_returns_info[op_type] = return_contents;
2026
  }
2027

2028
  // [Generation] ComputeRequireGrad -> GradNodeCreation
2029

2030
  if (!bwd_info.GenerateForwardOnly()) {
2031 2032 2033
    // If GradNode needs to be generated, pass `trace_op_body_str`
    // into `GenerateGradNodeCreationContent`.
    std::string grad_node_creation_body_str = GenerateGradNodeCreationContent(
2034
        fwd_info, bwd_info, trace_op_body_str, forward_inplace_map);
2035

2036 2037
    generated_function_body += grad_node_creation_body_str;
    generated_function_body += "\n";
2038

2039
    // [Generation] Call RetainGradForTensor
2040
    VLOG(6) << "Generated GradNode Creation codes";
2041 2042 2043
  } else {
    // If GradNode doesn't need to be generated, generate TraceOP directly.
    generated_function_body += trace_op_body_str;
2044
  }
2045 2046 2047

  // [Generation] Handle return: Tuple/Vector/Tensor
  generated_function_body += "\n";
2048
  std::string return_str = "";
2049 2050 2051 2052 2053 2054 2055 2056 2057 2058 2059 2060 2061 2062 2063 2064 2065 2066 2067 2068 2069 2070
  std::string return_type_str = "";
  std::string function_proto_return_type_str = "";
  if (return_contents.size() > 1) {
    // Return tuple
    std::string return_content_str = "";
    for (const std::string& s : return_contents) {
      return_content_str += s + ",";
    }
    return_content_str.pop_back();  // Remove trailing ","

    for (const std::string& s : return_types) {
      return_type_str += s + ",";
    }
    return_type_str.pop_back();  // Remove trailing ","

    const char* FWD_TUPLE_RETURN_TEMPLATE = "  return std::make_tuple(%s);";
    return_str =
        paddle::string::Sprintf(FWD_TUPLE_RETURN_TEMPLATE, return_content_str);

    const char* FWD_FUNCTION_PROTO_RETURN_TEMPLATE = "std::tuple<%s>";
    function_proto_return_type_str = paddle::string::Sprintf(
        FWD_FUNCTION_PROTO_RETURN_TEMPLATE, return_type_str);
2071 2072

  } else if (return_contents.size() == 1) {
2073 2074 2075 2076 2077 2078
    // Return vector<Tensor> or Tensor
    return_type_str = return_types[0];
    const char* FWD_TENSOR_RETURN_TEMPLATE = "  return %s;";
    return_str =
        paddle::string::Sprintf(FWD_TENSOR_RETURN_TEMPLATE, return_contents[0]);
    function_proto_return_type_str = return_type_str;
2079 2080 2081 2082

  } else {
    return_str = "return nullptr;";
    function_proto_return_type_str = "void*";
2083
  }
2084

2085 2086 2087 2088 2089
  generated_function_body += return_str;
  generated_function_body += "\n";
  VLOG(6) << "Generated return codes";

  // [Generation] Get Full Function
2090
  std::string function_name;
2091
  if (forward_inplace_map.empty()) {
2092 2093 2094 2095 2096
    function_name = op_type + "_dygraph_function";
  } else {
    // change function_name for inplace op.
    function_name = op_type + "__dygraph_function";
  }
2097

2098 2099 2100 2101 2102
  if (dygraph_function_args_str.size() > 0) {
    auto iter = dygraph_function_args_str.begin();
    if ((*iter) == ',') dygraph_function_args_str.erase(iter);
  }

2103
  const char* DYGRAPH_FUNCTION_EVENT_RECORD_FUNCTION_TEMPLATE =
2104
      "  paddle::platform::RecordEvent dygraph_entrance_record_event(\"%s\", "
2105 2106 2107 2108 2109 2110
      "paddle::platform::TracerEventType::Operator, 1);";
  std::string event_name = op_type + " dygraph";
  std::string fwd_record_event_str = paddle::string::Sprintf(
      DYGRAPH_FUNCTION_EVENT_RECORD_FUNCTION_TEMPLATE, event_name);
  const char* FWD_FUNCTION_TEMPLATE =
      "%s %s(%s) {\n\n"
2111 2112
      "%s\n"
      "%s\n"
2113
      "}\n\n";
2114 2115 2116 2117 2118 2119 2120
  std::string fwd_function_str =
      paddle::string::Sprintf(FWD_FUNCTION_TEMPLATE,
                              function_proto_return_type_str,
                              function_name,
                              dygraph_function_args_str,
                              fwd_record_event_str,
                              generated_function_body);
2121 2122 2123

  // [Generation] Generate forward functions header
  const char* FWD_HEADER_TEMPLATE = "%s %s(%s);\n";
2124 2125 2126 2127 2128
  std::string dygraph_function_declaration_str =
      paddle::string::Sprintf(FWD_HEADER_TEMPLATE,
                              function_proto_return_type_str,
                              function_name,
                              dygraph_function_args_str);
2129 2130 2131 2132

  return {fwd_function_str, dygraph_function_declaration_str};
}

2133
static std::string GenerateSingleOpBase(
2134 2135
    const std::string& fwd_op_type,
    const std::string& op_base_type,
2136 2137 2138 2139 2140 2141 2142 2143 2144 2145 2146 2147 2148 2149 2150
    const std::unordered_map<std::string, size_t>& fwd_inputs_name_pos_map,
    const std::unordered_map<std::string, size_t>& fwd_outputs_name_pos_map,
    const std::vector<proto::OpProto::Var>& in_vars,
    const std::map<std::string, std::string>& grad_ins_fwd_slotname_map,
    const std::map<std::string, std::string>& grad_ins_grad_slotname_map,
    const std::map<std::string, std::string>& grad_outs_slotname_map,
    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
        grad_ins,
    const std::map<
        std::string,
        std::vector<std::shared_ptr<paddle::imperative::VariableWrapper>>>&
        grad_outs,
    const paddle::framework::AttributeMap& grad_attrs,
2151
    const std::unordered_map<std::string, std::string>& backward_inplace_map,
2152 2153
    bool is_op_base_per_duplicable_input,
    size_t* outs_size) {
2154 2155 2156 2157 2158
  std::string generated_grad_function_body = "";

  const std::string& ins_name = "ins" + std::to_string(*outs_size);
  const std::string& outs_name = "outs" + std::to_string(*outs_size);
  const std::string& attrs_name = "attrs_map" + std::to_string(*outs_size);
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2159 2160 2161 2162 2163 2164 2165 2166 2167 2168 2169
  const std::string& hooked_grads = "hooked_grads" + std::to_string(*outs_size);

  // [Generation] Get Full Zero
  std::string fill_zero_str = "";
  if (ops_to_fill_zero_for_empty_grads.count(fwd_op_type)) {
    for (auto iter : grad_ins) {
      const std::string& grad_input_name = iter.first;
      if (grad_ins_grad_slotname_map.count(grad_input_name)) {
        size_t fwd_output_position = fwd_outputs_name_pos_map.at(
            grad_ins_grad_slotname_map.at(grad_input_name));
        const char* FILL_ZERO_TEMPLATE =
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            "  egr::EagerUtils::FillZeroForEmptyOptionalGradInput(&grads[%d], "
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2171 2172 2173 2174 2175 2176 2177 2178 2179 2180
            "this->InputMeta()[%d]);\n";
        fill_zero_str += paddle::string::Sprintf(
            FILL_ZERO_TEMPLATE, fwd_output_position, fwd_output_position);
      }
    }
  }
  generated_grad_function_body += fill_zero_str;
  generated_grad_function_body +=
      "  paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize> " +
2181 2182
      hooked_grads + " = " + fwd_op_type +
      "GradNodeCompat::ApplyGradientHooks(grads);\n";
2183 2184

  // [Generation] Get Ins Map
2185 2186 2187 2188 2189 2190 2191 2192
  std::unordered_set<std::string> dispensable_input_name_set;
  for (const auto& in : in_vars) {
    if (in.dispensable()) dispensable_input_name_set.insert(in.name());
  }
  std::unordered_set<std::string> duplicable_input_name_set;
  for (const auto& in : in_vars) {
    if (in.duplicable()) duplicable_input_name_set.insert(in.name());
  }
2193 2194 2195 2196 2197 2198 2199 2200 2201 2202 2203 2204 2205 2206 2207 2208 2209
  const char* CHECK_BACKWARD_INPLACE_TEMPLATE =
      "  // Check backward inplace info\n"
      "  bool %s = false;\n"
      "  %s\n"
      "  if (%s.initialized()) {\n"
      "    VLOG(10) << %s.name() << \"(%s) use_count: \" << "
      "%s.impl().use_count();\n"
      "    if (%s.impl().use_count() == 1 || (%s.impl().use_count() == 2 && "
      "%s.impl().get() == %s.impl().get())) {\n"
      "      %s = true;\n"
      "    }\n"
      "  }\n";
  const std::string& can_be_inplaced_name =
      "can_be_inplaced" + std::to_string(*outs_size);
  const std::string& bwd_inplace_input_name =
      "backward_inplace_tensor" + std::to_string(*outs_size);
  bool process_backward_inplace = false;
2210 2211 2212 2213 2214 2215
  std::string ins_contents_str = "";
  for (auto iter : grad_ins) {
    const std::string& grad_input_name = iter.first;

    if (grad_ins_fwd_slotname_map.count(grad_input_name)) {
      // Fwd Tensor
2216 2217 2218 2219 2220
      const std::string& fwd_name =
          grad_ins_fwd_slotname_map.at(grad_input_name);
      if (dispensable_input_name_set.count(fwd_name)) {
        continue;
      }
2221 2222 2223 2224
      std::string struct_fwd_input_name =
          grad_ins_fwd_slotname_map.at(grad_input_name) + "_";
      const char* GRAD_INS_FWD_CONTENT_TEMPLATE =
          "{ \"%s\", "
2225 2226
          "egr::EagerUtils::TrySyncToVars(egr::EagerUtils::"
          "RecoverTensorWrapper("
2227
          "&"
2228
          "this->%s)) },";
2229 2230 2231
      ins_contents_str += paddle::string::Sprintf(GRAD_INS_FWD_CONTENT_TEMPLATE,
                                                  grad_input_name,
                                                  struct_fwd_input_name);
2232 2233 2234 2235 2236
      if (!backward_inplace_map.empty() &&
          backward_inplace_map.count(grad_input_name)) {
        process_backward_inplace = true;
        const char* GRAD_INS_FWD_TENSOR_WRAPPER_TEMPLATE =
            "auto %s = egr::EagerUtils::RecoverTensorWrapper(&this->%s);";
2237 2238 2239 2240
        std::string tensor_wrapper_str =
            paddle::string::Sprintf(GRAD_INS_FWD_TENSOR_WRAPPER_TEMPLATE,
                                    bwd_inplace_input_name,
                                    struct_fwd_input_name);
2241 2242 2243 2244 2245
        const char* GRAD_INS_FWD_TENSOR_TEMPLATE =
            "(&this->%s)->get_intermidiate_tensor()";
        std::string tensor_wrapper_intermidiate_tensor_str =
            paddle::string::Sprintf(GRAD_INS_FWD_TENSOR_TEMPLATE,
                                    struct_fwd_input_name);
2246 2247 2248 2249 2250 2251 2252 2253 2254 2255 2256 2257 2258
        generated_grad_function_body +=
            paddle::string::Sprintf(CHECK_BACKWARD_INPLACE_TEMPLATE,
                                    can_be_inplaced_name,
                                    tensor_wrapper_str,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    grad_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    tensor_wrapper_intermidiate_tensor_str,
                                    can_be_inplaced_name);
2259
      }
2260 2261 2262 2263 2264
    } else if (grad_ins_grad_slotname_map.count(grad_input_name)) {
      // Fwd Tensor's Grad
      size_t fwd_output_position = fwd_outputs_name_pos_map.at(
          grad_ins_grad_slotname_map.at(grad_input_name));
      const char* GRAD_INS_GRAD_CONTENT_TEMPLATE =
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2265
          "{ \"%s\", egr::EagerUtils::TrySyncToVars(%s[%d]) },";
2266 2267 2268 2269 2270
      ins_contents_str +=
          paddle::string::Sprintf(GRAD_INS_GRAD_CONTENT_TEMPLATE,
                                  grad_input_name,
                                  hooked_grads,
                                  fwd_output_position);
2271 2272 2273
      if (!backward_inplace_map.empty() &&
          backward_inplace_map.count(grad_input_name)) {
        process_backward_inplace = true;
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2274
        const char* GRAD_INS_HOOKED_GRAD_TEMPLATE = "auto& %s = %s[%d][0];";
2275 2276 2277 2278 2279
        std::string hooked_grads_tensor_str =
            paddle::string::Sprintf(GRAD_INS_HOOKED_GRAD_TEMPLATE,
                                    bwd_inplace_input_name,
                                    hooked_grads,
                                    fwd_output_position);
2280 2281 2282
        const char* GRAD_INS_GRAD_TENSOR_TEMPLATE = "grads[%d][0]";
        std::string grads_tensor_str = paddle::string::Sprintf(
            GRAD_INS_GRAD_TENSOR_TEMPLATE, fwd_output_position);
2283 2284 2285 2286 2287 2288 2289 2290 2291 2292 2293 2294 2295
        generated_grad_function_body +=
            paddle::string::Sprintf(CHECK_BACKWARD_INPLACE_TEMPLATE,
                                    can_be_inplaced_name,
                                    hooked_grads_tensor_str,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    grad_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    bwd_inplace_input_name,
                                    grads_tensor_str,
                                    can_be_inplaced_name);
2296
      }
2297 2298 2299 2300 2301 2302 2303 2304 2305 2306 2307 2308
    } else {
      PADDLE_THROW(platform::errors::Fatal(
          "Detected mismatched slot names."
          "Unable to find forward slot name that matches %s",
          grad_input_name));
    }
  }
  if (ins_contents_str.size() > 0)
    ins_contents_str.pop_back();  // // Remove trailing ","

  const char* BWD_INS_MAP_TEMPLATE =
      "  std::map<std::string, "
2309
      "std::vector<std::shared_ptr<egr::EagerVariable>>> %s = { "
2310 2311 2312 2313 2314
      "%s };\n";
  std::string ins_map_str =
      paddle::string::Sprintf(BWD_INS_MAP_TEMPLATE, ins_name, ins_contents_str);
  generated_grad_function_body += ins_map_str;

2315 2316
  for (auto iter : grad_ins) {
    const std::string& grad_input_name = iter.first;
2317

2318 2319 2320 2321 2322 2323 2324 2325 2326 2327 2328
    if (grad_ins_fwd_slotname_map.count(grad_input_name)) {
      // Fwd Tensor
      const std::string& fwd_name =
          grad_ins_fwd_slotname_map.at(grad_input_name);
      if (dispensable_input_name_set.count(fwd_name)) {
        std::string struct_fwd_input_name =
            grad_ins_fwd_slotname_map.at(grad_input_name) + "_";
        if (duplicable_input_name_set.count(fwd_name)) {
          const char* DISPENSABLE_GRAD_INS_FWD_CONTENT_TEMPLATE =
              "  if(this->%s.size() > 0) %s[\"%s\"] = "
              "egr::EagerUtils::TrySyncToVars(egr::EagerUtils::"
2329
              "RecoverTensorWrapper(&this->%s));\n";
2330 2331 2332 2333 2334 2335
          generated_grad_function_body +=
              paddle::string::Sprintf(DISPENSABLE_GRAD_INS_FWD_CONTENT_TEMPLATE,
                                      struct_fwd_input_name,
                                      ins_name,
                                      grad_input_name,
                                      struct_fwd_input_name);
2336 2337
        } else {
          const char* DISPENSABLE_GRAD_INS_FWD_CONTENT_TEMPLATE =
2338
              "  auto %s = egr::EagerUtils::RecoverTensorWrapper(&this->%s);\n"
2339
              "  if(%s.defined()) %s[\"%s\"] = "
2340
              "     egr::EagerUtils::TrySyncToVars(%s);\n";
2341 2342 2343 2344 2345 2346 2347 2348
          generated_grad_function_body +=
              paddle::string::Sprintf(DISPENSABLE_GRAD_INS_FWD_CONTENT_TEMPLATE,
                                      grad_input_name,
                                      struct_fwd_input_name,
                                      grad_input_name,
                                      ins_name,
                                      grad_input_name,
                                      grad_input_name);
2349 2350 2351
        }
      }
    }
2352 2353
  }

2354 2355
  VLOG(6) << "Generated Ins Map";
  // [Generation] Get Outs Map
2356 2357 2358 2359 2360 2361 2362 2363 2364 2365 2366 2367 2368 2369 2370 2371 2372 2373 2374 2375 2376 2377 2378 2379 2380 2381 2382 2383 2384 2385 2386 2387 2388 2389 2390 2391 2392 2393 2394 2395 2396 2397 2398 2399 2400 2401 2402
  std::string outs_contents_str = "";
  for (auto iter : grad_outs) {
    const std::string& grad_output_name = iter.first;

    if (grad_outs_slotname_map.count(grad_output_name)) {
      // Fwd Tensor
      const std::string& fwd_name = grad_outs_slotname_map.at(grad_output_name);

      /* Handle Special Case: "PullSparseOp", etc

          Forward:

             Ids  W
              |   |
           PullSparseOp
                |
               Out

          Backward:

             Ids  GradOut  W
              |      |     |
             PullSparseGradOp
                     |
                  GradOut

          Its grad output "GradOut" corresponds to forward output "Out",
          where there is a hiden inplace involved. So we find "GradOut"'s
         index
         in
          grads, and perform the inplace operation by constructing outs =
         {{"Out", grads[i]}}

          GradOut -> Out -> fwd_output_pos -> grads position -> grads[i]
          outs = {{"Out", grads[i]}}

          For returns, append "GradOut" to the very end of return list.
      */
      if (!fwd_inputs_name_pos_map.count(fwd_name)) {
        PADDLE_ENFORCE(fwd_outputs_name_pos_map.count(fwd_name),
                       paddle::platform::errors::Fatal(
                           "fwd_name not found in fwd_inputs_name_pos_map nor "
                           "fwd_outputs_name_pos_map"));

        size_t grads_position = fwd_outputs_name_pos_map.at(fwd_name);

        const char* GRAD_OUTS_CONTENT_TEMPLATE =
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2403 2404 2405
            "  if((!out_metas[%d].empty()) && "
            "(!(out_metas[%d][0].IsStopGradient()))){ %s.insert({ \"%s\", "
            "egr::EagerUtils::TrySyncToVars(%s[%d])});}\n";
2406 2407 2408 2409 2410 2411 2412
        outs_contents_str += paddle::string::Sprintf(GRAD_OUTS_CONTENT_TEMPLATE,
                                                     grads_position,
                                                     grads_position,
                                                     outs_name,
                                                     grad_output_name,
                                                     hooked_grads,
                                                     grads_position);
2413 2414

      } else {
2415 2416 2417 2418
        if (dispensable_input_name_set.count(fwd_name) &&
            grad_ins_fwd_slotname_map.count(fwd_name)) {
          continue;
        }
2419 2420 2421 2422
        size_t fwd_input_position = fwd_inputs_name_pos_map.at(fwd_name);
        if (duplicable_input_name_set.count(fwd_name) &&
            !is_op_base_per_duplicable_input) {
          const char* GRAD_OUTS_CONTENT_TEMPLATE =
2423
              " if(!out_metas[%d].empty()){ %s.insert({ \"%s\", "
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2424
              "egr::EagerUtils::CreateVars(out_metas[%d].size())});}\n";
2425 2426 2427 2428 2429 2430
          outs_contents_str +=
              paddle::string::Sprintf(GRAD_OUTS_CONTENT_TEMPLATE,
                                      fwd_input_position,
                                      outs_name,
                                      grad_output_name,
                                      fwd_input_position);
2431 2432
        } else {
          const char* GRAD_OUTS_CONTENT_TEMPLATE =
W
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2433
              "  if((!out_metas[%d].empty()) && "
2434
              "(!(out_metas[%d][0].IsStopGradient()))){ %s.insert({ \"%s\", "
2435
              "{std::make_shared<egr::EagerVariable>(egr::Controller::Instance("
W
wanghuancoder 已提交
2436
              ").GenerateUniqueName())}});}\n";
2437 2438 2439 2440 2441 2442
          outs_contents_str +=
              paddle::string::Sprintf(GRAD_OUTS_CONTENT_TEMPLATE,
                                      fwd_input_position,
                                      fwd_input_position,
                                      outs_name,
                                      grad_output_name);
2443 2444 2445 2446 2447 2448 2449 2450 2451 2452 2453 2454
        }
      }
    } else {
      PADDLE_THROW(platform::errors::Fatal(
          "Detected mismatched slot names."
          "Unable to find forward slot name that matches %s",
          grad_output_name));
    }
  }

  const char* BWD_OUTS_MAP_TEMPLATE =
      "  std::map<std::string, "
2455 2456 2457 2458
      "std::vector<std::shared_ptr<egr::EagerVariable>>> %s;\n";
  std::string outs_map_str =
      paddle::string::Sprintf(BWD_OUTS_MAP_TEMPLATE, outs_name);

2459
  generated_grad_function_body += outs_map_str;
2460
  generated_grad_function_body += outs_contents_str;
2461
  generated_grad_function_body += "\n";
2462 2463 2464 2465 2466 2467 2468 2469 2470 2471 2472 2473 2474
  for (auto iter : grad_outs) {
    const std::string& grad_output_name = iter.first;

    if (grad_outs_slotname_map.count(grad_output_name)) {
      // Fwd Tensor
      const std::string& fwd_name = grad_outs_slotname_map.at(grad_output_name);
      if (fwd_inputs_name_pos_map.count(fwd_name)) {
        if (dispensable_input_name_set.count(fwd_name) &&
            grad_ins_fwd_slotname_map.count(fwd_name)) {
          if (duplicable_input_name_set.count(fwd_name) &&
              !is_op_base_per_duplicable_input) {
            size_t fwd_input_position = fwd_inputs_name_pos_map.at(fwd_name);
            const char* DISPENSABLE_GRAD_OUTS_FWD_CONTENT_TEMPLATE =
2475 2476 2477 2478
                "  if((%s.size() > 0) && (!out_metas[%d].empty()) && "
                "(!out_metas[%d][0].IsStopGradient())) %s[\"%s\"] = "
                "egr::EagerUtils::CreateVars( "
                "out_metas[%d].size() );\n";
2479
            generated_grad_function_body += paddle::string::Sprintf(
2480 2481 2482 2483 2484
                DISPENSABLE_GRAD_OUTS_FWD_CONTENT_TEMPLATE,
                fwd_name,
                outs_name,
                grad_output_name,
                fwd_input_position);
2485
          } else {
2486
            size_t fwd_input_position = fwd_inputs_name_pos_map.at(fwd_name);
2487
            const char* DISPENSABLE_GRAD_OUTS_FWD_CONTENT_TEMPLATE =
2488 2489
                "  if(%s.defined() && (!out_metas[%d].empty()) && "
                "(!out_metas[%d][0].IsStopGradient())) %s[\"%s\"] = "
2490 2491 2492
                "{std::make_shared<egr::EagerVariable>(egr::Controller::"
                "Instance().GenerateUniqueName())};\n";
            generated_grad_function_body += paddle::string::Sprintf(
2493 2494 2495 2496 2497
                DISPENSABLE_GRAD_OUTS_FWD_CONTENT_TEMPLATE,
                fwd_name,
                fwd_input_position,
                fwd_input_position,
                outs_name,
2498 2499 2500 2501 2502 2503 2504 2505 2506 2507 2508
                grad_output_name);
          }
        }
      }
    } else {
      PADDLE_THROW(platform::errors::Fatal(
          "Detected mismatched slot names."
          "Unable to find forward slot name that matches %s",
          grad_output_name));
    }
  }
2509 2510 2511

  VLOG(6) << "Generated Outs Map";

2512 2513 2514 2515 2516 2517 2518 2519 2520 2521 2522 2523 2524
  // [Generation] Process Backward Inplace
  if (process_backward_inplace) {
    const char* HANDLE_BACKWARD_INPLACE_BETWEEN_INPUT_AND_OUTPUT =
        "  if (%s && %s.count(\"%s\") && %s.count(\"%s\")) {\n"
        "    egr::EagerUtils::HandleViewBetweenInputAndOutput(%s[\"%s\"][0], "
        "%s[\"%s\"][0]);\n"
        "  };\n";
    std::string backward_inplace_map_str = "";
    for (auto iter : backward_inplace_map) {
      std::string backward_inplace_input_name = iter.first;
      std::string backward_inplace_output_name = iter.second;
      backward_inplace_map_str += paddle::string::Sprintf(
          HANDLE_BACKWARD_INPLACE_BETWEEN_INPUT_AND_OUTPUT,
2525 2526 2527 2528 2529 2530 2531 2532 2533
          can_be_inplaced_name,
          ins_name,
          backward_inplace_input_name,
          outs_name,
          backward_inplace_output_name,
          ins_name,
          backward_inplace_input_name,
          outs_name,
          backward_inplace_output_name);
2534 2535 2536 2537 2538
    }
    generated_grad_function_body += backward_inplace_map_str;
    VLOG(6) << "Process Backward Inplace";
  }

2539
  // [Generation] Get Attrs Map
2540
  const char* ATTRS_TEMPLATE = "  auto& %s = this->attr_map_;\n";
2541 2542
  std::string grad_attrs_str =
      paddle::string::Sprintf(ATTRS_TEMPLATE, attrs_name);
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  if (fwd_op_type == "cast") {
    // swtich in out dtype
    const char* CAST_GRAD =
        "  auto temp_type = %s[\"in_dtype\"];\n"
        "  %s[\"in_dtype\"] = %s[\"out_dtype\"];\n"
        "  %s[\"out_dtype\"] = temp_type;\n";
2549 2550
    grad_attrs_str += paddle::string::Sprintf(
        CAST_GRAD, attrs_name, attrs_name, attrs_name, attrs_name);
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2551
  }
2552

2553 2554
  // Handle dynamic grad attributes
  grad_attrs_str += HandleDynamicGradAttributes(fwd_op_type, attrs_name);
2555 2556 2557 2558 2559 2560
  generated_grad_function_body += grad_attrs_str;

  const char* TRACE_OP_TEMPLATE =
      "  // Pass the entire attribute map to TraceOp\n"
      "  // The underlying kernel will pickup whatever attribute they need "
      "at runtime\n"
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2561 2562
      "  egr::Controller::Instance().GetCurrentTracer()->TraceOp(\"%s\", %s, "
      "%s, %s,\n"
2563 2564 2565 2566 2567 2568 2569 2570 2571 2572 2573 2574 2575 2576 2577 2578 2579 2580 2581 2582
      "      egr::Controller::Instance().GetExpectedPlace(),\n"
      "      &this->default_attr_map_, false, {});\n";
  std::string trace_opbase_str = paddle::string::Sprintf(
      TRACE_OP_TEMPLATE, op_base_type, ins_name, outs_name, attrs_name);

  generated_grad_function_body += trace_opbase_str;

  VLOG(6) << "Generated Attrs Map";

  // [Generation] Get Return
  std::string outputs_str = "";
  size_t num_appended_outputs = 0;
  for (auto iter : grad_outs) {
    const std::string& grad_out_name = iter.first;
    const std::string& fwd_name = grad_outs_slotname_map.at(grad_out_name);

    if (fwd_inputs_name_pos_map.count(fwd_name)) {
      size_t fwd_input_position = fwd_inputs_name_pos_map.at(fwd_name);
      if (!is_op_base_per_duplicable_input) {
        const char* BWD_OUTPUT_TEMPLATE =
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            "  if (%s.find(\"%s\") != %s.end()) { outputs[%d] = "
2584
            "egr::EagerUtils::GetOutputs(%s[\"%s\"]); }\n";
2585 2586 2587 2588 2589 2590 2591
        outputs_str += paddle::string::Sprintf(BWD_OUTPUT_TEMPLATE,
                                               outs_name,
                                               grad_out_name,
                                               outs_name,
                                               fwd_input_position,
                                               outs_name,
                                               grad_out_name);
2592 2593 2594
      } else {
        const char* BWD_OUTPUT_TEMPLATE =
            "  "
2595
            "if (%s.find(\"%s\") != %s.end()) { "
2596
            "outputs[0].emplace_back(egr::EagerUtils::GetOutputs(%s[\"%s\"])[0]"
2597
            "); }\n";
2598 2599 2600 2601 2602 2603
        outputs_str += paddle::string::Sprintf(BWD_OUTPUT_TEMPLATE,
                                               outs_name,
                                               grad_out_name,
                                               outs_name,
                                               outs_name,
                                               grad_out_name);
2604 2605 2606 2607 2608 2609 2610 2611 2612 2613 2614 2615 2616 2617 2618 2619 2620 2621
      }
      num_appended_outputs++;
    } else {
      PADDLE_ENFORCE(fwd_outputs_name_pos_map.count(fwd_name),
                     paddle::platform::errors::Fatal(
                         "fwd_name not found in fwd_inputs_name_pos_map nor "
                         "fwd_outputs_name_pos_map"));
    }
  }

  /* Handle Special Case: "PullSparseOp", etc
     For returns, append "GradOut" to the very end of return list. */
  for (auto iter : grad_outs) {
    const std::string& grad_out_name = iter.first;
    const std::string& fwd_name = grad_outs_slotname_map.at(grad_out_name);

    if (fwd_outputs_name_pos_map.count(fwd_name)) {
      const char* BWD_OUTPUT_TEMPLATE =
2622 2623
          "  if (%s.find(\"%s\") != %s.end()) { outputs[%d] = "
          "egr::EagerUtils::GetOutputs(%s[\"%s\"]); }\n";
2624 2625 2626 2627 2628 2629 2630
      outputs_str += paddle::string::Sprintf(BWD_OUTPUT_TEMPLATE,
                                             outs_name,
                                             grad_out_name,
                                             outs_name,
                                             num_appended_outputs,
                                             outs_name,
                                             grad_out_name);
2631 2632 2633 2634 2635 2636 2637 2638 2639 2640 2641 2642
      num_appended_outputs++;
    }
  }

  generated_grad_function_body += outputs_str;
  generated_grad_function_body += "\n";

  *outs_size += grad_outs.size();

  return generated_grad_function_body;
}

2643 2644 2645 2646
/* ---------------------------------------------- */
/* --------- CodeGen: GradNode::operator() ------ */
/* ---------------------------------------------- */
static std::string GenerateGradNodeCCContents(
2647 2648 2649 2650 2651 2652 2653 2654 2655
    const ForwardGenerationInfo& fwd_info,
    const GradNodeGenerationInfo& bwd_info) {
  /* --- Process Forward Info --- */
  const std::string& fwd_op_type = fwd_info.GetOpType();
  const std::unordered_map<std::string, size_t>& fwd_inputs_name_pos_map =
      fwd_info.GetFwdInputsNamePosMap();
  const std::unordered_map<std::string, size_t>& fwd_outputs_name_pos_map =
      fwd_info.GetFwdOutputsNamePosMap();
  const std::vector<proto::OpProto::Var>& in_vars = fwd_info.GetInVars();
2656
  const std::vector<proto::OpProto::Var>& out_vars = fwd_info.GetOutVars();
2657

2658 2659 2660 2661 2662 2663 2664 2665 2666 2667 2668 2669 2670 2671
  VLOG(6) << "Generating Grad Node CC";

  /* [Outline]

  vector<vector<Tensor>> GradNodeXXX::operator()(vector<vector<Tensor>>& grads)
  {

    const std::shared_ptr<Tracer>& tracer = imperative::GetCurrentTracer();

    // Comes from "grad_ins"
    std::map<std::string, std::vector<std::shared_ptr<VarBase>>> ins =
            {
            "X" : this->"X", "Y" : this->"Y",
            "Out0@Grad":
2672
  TrySyncToVars(hooked_grads["fwd_outputs_name_pos_map[grad_ins_grad_slotname_map["Out0@Grad"]]"]),
2673
            "Out1@Grad":
2674
  TensorsToVarBases(hooked_grads["fwd_outputs_name_pos_map[grad_ins_grad_slotname_map["Out1@Grad"]]"])
2675 2676 2677 2678 2679 2680
             };

    // Comes from "grad_outs"
    std::map<std::string, std::vector<std::shared_ptr<VarBase>>> outs =
            {
            "X@Grad" :
2681
  CreateVars(this->OutputMeta()["fwd_inputs_name_pos_map[grad_outs_slotname_map["X@Grad"]]"].Size()),
2682
            "Y@Grad" :
2683
  CreateVars(this->OutputMeta()["fwd_inputs_name_pos_map[grad_outs_slotname_map["Y@Grad"]]"].Size())
2684 2685 2686 2687 2688
             };

    // Visit each OpBase
    for(auto iter = "grad_node->begin()"; iter < "grad_node->end()"; iter++) {
        // Simply pass entire attribute map to kernels
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        Controller.Instance().GetCurrentTracer()->TraceOp("iter->Type()", ins,
  outs, this->attr_map_,
2691 2692 2693
            egr::Controller::Instance().ExpectedPlace(), false, {});
    }

2694
    vector<vector<paddle::experimental::Tensor>> outputs(outs.size());
2695 2696 2697 2698 2699 2700 2701 2702 2703
    for(auto& kv : outs) {
        outputs["fwd_inputs_name_pos_map[grad_outs_slotname_map[kv.first]]"] =
  GetOutputs(outs["kv.first"]);
    }

    return outputs;
  }
  */

2704
  const char* EAGER_LOG_TEMPLATE =
2705
      "  VLOG(3) << \"Running Eager Backward Node: %sGradNodeCompat\";\n";
2706 2707 2708
  std::string generated_grad_function_body =
      paddle::string::Sprintf(EAGER_LOG_TEMPLATE, fwd_op_type);

2709 2710 2711 2712 2713 2714 2715 2716 2717 2718 2719 2720 2721 2722 2723 2724 2725 2726
  // This is a Copy
  auto op_base_infos = bwd_info.GetOpBaseInfos();

  /* Special Case: ops such as sum_grad_op is implemented abnormaly,
                   where it unpacked duplicable GradX and created one OpBase
                   corresponds to each member of GradX[i]
     */
  bool is_op_base_per_duplicable_input = false;
  if (in_vars.size() == 1 && out_vars.size() == 1 && in_vars[0].duplicable() &&
      !out_vars[0].duplicable() &&
      op_base_infos.size() == NUM_CREATED_DUP_INPUTS) {
    is_op_base_per_duplicable_input = true;
    // Only keep the first op_base
    auto op_base_info = op_base_infos[0];
    op_base_infos.clear();
    op_base_infos.emplace_back(std::move(op_base_info));
  }

2727 2728 2729 2730 2731 2732 2733 2734 2735 2736 2737
  size_t outs_size = 0;
  for (size_t i = 0; i < op_base_infos.size(); i++) {
    const auto& op_base_info = op_base_infos[i];

    const auto& grad_ins_fwd_slotname_map =
        op_base_info.GetGradInsFwdSlotnameMap();
    const auto& grad_ins_grad_slotname_map =
        op_base_info.GetGradInsGradSlotnameMap();
    const auto& grad_outs_slotname_map = op_base_info.GetGradOutsSlotnameMap();
    const auto& grad_ins = op_base_info.GetGradIns();
    const auto& grad_outs = op_base_info.GetGradOuts();
2738
    const auto& grad_attrs = op_base_info.GetGradAttrs();
2739
    const auto& backward_inplace_map = op_base_info.GetBackwardInplaceMap();
2740 2741

    const std::string& op_base_type = op_base_info.GetOpBaseType();
2742 2743 2744 2745 2746 2747 2748 2749 2750 2751 2752 2753 2754 2755 2756
    generated_grad_function_body +=
        GenerateSingleOpBase(fwd_op_type,
                             op_base_type,
                             fwd_inputs_name_pos_map,
                             fwd_outputs_name_pos_map,
                             in_vars,
                             grad_ins_fwd_slotname_map,
                             grad_ins_grad_slotname_map,
                             grad_outs_slotname_map,
                             grad_ins,
                             grad_outs,
                             grad_attrs,
                             backward_inplace_map,
                             is_op_base_per_duplicable_input,
                             &outs_size);
2757
  }
2758

2759 2760
  if (is_op_base_per_duplicable_input) {
    const char* OP_BASE_PER_DUP_INPUT_TEMPLATE =
2761
        "  for(size_t i = 0; i < this->OutputMeta()[0].size(); i++) {\n"
2762 2763 2764 2765
        "    %s\n"
        "  }\n";
    generated_grad_function_body = paddle::string::Sprintf(
        OP_BASE_PER_DUP_INPUT_TEMPLATE, generated_grad_function_body);
2766 2767 2768
  }

  const char* BWD_RETURN_TEMPLATE =
2769
      "  const auto& out_metas = OutputMeta();\n"
2770 2771
      "  paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize> outputs(%d);\n"
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2772
      "%s\n"
2773 2774
      "  if(NeedComplexToRealConversion()) "
      "HandleComplexGradToRealGrad(&outputs);\n"
2775
      "  return outputs;\n";
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2776 2777
  generated_grad_function_body = paddle::string::Sprintf(
      BWD_RETURN_TEMPLATE, in_vars.size(), generated_grad_function_body);
2778 2779 2780

  // [Generation] Get Full Grad Function
  const char* GRAD_FUNCTION_TEMPLATE =
2781 2782
      "paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize> "
2783
      "%sGradNodeCompat::operator()("
2784 2785
      "paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize>& grads, bool "
2786
      "create_graph, bool is_new_grad) {\n"
2787 2788
      "%s"
      "\n}";
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2789 2790
  std::string grad_function_str = paddle::string::Sprintf(
      GRAD_FUNCTION_TEMPLATE, fwd_op_type, generated_grad_function_body);
2791 2792 2793 2794 2795 2796 2797 2798 2799 2800

  VLOG(6) << "Generated returns";

  return grad_function_str;
}

/* ----------------------------------------- */
/* --------- CodeGen: GradNode Header ------ */
/* ----------------------------------------- */
static std::string GenerateGradNodeHeaderContents(
2801 2802 2803 2804 2805 2806 2807 2808
    const ForwardGenerationInfo& fwd_info,
    const GradNodeGenerationInfo& bwd_info) {
  const std::string& op_type = fwd_info.GetOpType();
  const std::vector<proto::OpProto::Var>& in_vars = fwd_info.GetInVars();
  const std::vector<proto::OpProto::Var>& out_vars = fwd_info.GetOutVars();

  const auto& op_base_infos = bwd_info.GetOpBaseInfos();

2809 2810 2811
  VLOG(6) << "Generating Grad Node Header";

  const char* GRAD_NODE_TEMPLATE =
2812
      "class %sGradNodeCompat : public egr::GradNodeBase {\n"
2813
      " public:\n"
2814 2815 2816
      "  %sGradNodeCompat() : egr::GradNodeBase() { VLOG(7) << \" Construct "
      "%sGradNodeCompat \"; }\n"
      "  %sGradNodeCompat(size_t bwd_in_slot_num, size_t bwd_out_slot_num) : "
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2817
      "egr::GradNodeBase(bwd_in_slot_num, bwd_out_slot_num) { VLOG(7) << \" "
2818 2819 2820
      "Construct %sGradNodeCompat \"; }\n"
      "  ~%sGradNodeCompat() override { VLOG(6) << \" Destruct "
      "%sGradNodeCompat \"; }\n"
2821
      "\n"
2822 2823 2824
      "  virtual "
      "paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize> "
2825
      "operator()("
2826 2827
      "paddle::small_vector<std::vector<paddle::experimental::Tensor>, "
      "egr::kSlotSmallVectorSize>& grads, bool "
2828
      "create_graph = false, bool is_new_grad = false) "
2829 2830
      "override;\n"
      "\n"
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2831
      "  void ClearTensorWrappers() override {\n"
2832
      "%s\n"
2833
      "    SetIsTensorWrappersCleared(true);\n"
2834
      "  }\n"
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2835
      "  std::string name() override { return \"%sGradNodeCompat\"; }\n"
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2836
      "\n"
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2837
      "std::shared_ptr<GradNodeBase> Copy() const override {{\n"
2838
      "    auto copied_node = std::shared_ptr<%sGradNodeCompat>(new "
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2839 2840 2841
      "%sGradNodeCompat(*this));\n"
      "    return copied_node;\n"
      "}}\n"
2842
      "\n"
2843 2844 2845 2846 2847 2848 2849 2850 2851 2852 2853 2854 2855
      "  // SetX, SetY, ...\n"
      "%s\n"
      "  // SetAttrMap\n"
      "%s\n"
      " private:\n"
      "   // TensorWrappers\n"
      "%s\n"
      "   // Attribute Map\n"
      "%s\n"
      "};";

  // [Generation] Handle Attributes
  std::string set_attr_map_str =
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2856 2857
      "   void SetAttrMap(paddle::framework::AttributeMap&& attr_map) {\n    "
      "attr_map_ = std::move(attr_map);\n  }\n";
2858 2859
  set_attr_map_str +=
      "   void SetDefaultAttrMap(paddle::framework::AttributeMap&& "
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2860 2861
      "default_attr_map) {\n    default_attr_map_ = "
      "std::move(default_attr_map);\n  }\n";
2862 2863 2864 2865 2866 2867 2868 2869
  std::string attr_members_str =
      "   paddle::framework::AttributeMap attr_map_;\n";
  attr_members_str += "   paddle::framework::AttributeMap default_attr_map_;";

  VLOG(6) << "Generated SetAttr";

  // [Generation] Handle TensorWrappers
  std::unordered_set<std::string> duplicable_tensors;
2870
  for (const proto::OpProto::Var& input : in_vars) {
2871 2872 2873 2874
    if (input.duplicable()) {
      duplicable_tensors.insert(input.name());
    }
  }
2875
  for (const proto::OpProto::Var& output : out_vars) {
2876 2877 2878 2879 2880 2881 2882
    if (output.duplicable()) {
      duplicable_tensors.insert(output.name());
    }
  }

  std::string set_tensor_wrappers_str = "";
  std::string tensor_wrapper_members_str = "";
2883
  std::string clear_tensor_wrappers_str = "";
2884 2885 2886
  for (const auto& iter : op_base_infos) {
    const std::map<std::string, std::string>& grad_ins_fwd_slotname_map =
        iter.GetGradInsFwdSlotnameMap();
2887 2888
    const std::unordered_set<std::string>& no_need_buffer_ins =
        iter.GetNoNeedBufferInputs();
2889 2890 2891 2892 2893 2894 2895

    for (const auto& kv : grad_ins_fwd_slotname_map) {
      const std::string& tensor_wrapper_name = kv.second;
      const std::string& struct_tensor_wrapper_name = kv.second + "_";

      std::string tensor_wrapper_arg_str;
      std::string tensor_wrapper_body_str;
2896 2897 2898 2899
      std::string no_need_buffer_str = "false";
      if (no_need_buffer_ins.count(tensor_wrapper_name)) {
        no_need_buffer_str = "true";
      }
2900 2901
      if (duplicable_tensors.count(tensor_wrapper_name)) {
        const char* ATTR_TENSOR_WRAPPER_ARG_TEMPLATE =
2902
            "const std::vector<paddle::experimental::Tensor>& %s";
2903 2904 2905 2906 2907 2908 2909 2910 2911 2912
        tensor_wrapper_arg_str = paddle::string::Sprintf(
            ATTR_TENSOR_WRAPPER_ARG_TEMPLATE, tensor_wrapper_name);

        const char* TENSOR_WRAPPER_MEMBER_TEMPLATE =
            "   std::vector<egr::TensorWrapper> %s;\n";
        tensor_wrapper_members_str += paddle::string::Sprintf(
            TENSOR_WRAPPER_MEMBER_TEMPLATE, struct_tensor_wrapper_name);

        const char* SET_TENSOR_WRAPPER_BODY_TEMPLATE =
            "for(const auto& eager_tensor : %s) {\n"
2913 2914
            "          %s.emplace_back( egr::TensorWrapper(eager_tensor "
            ", %s) );\n"
2915
            "      }\n";
2916 2917 2918 2919 2920
        tensor_wrapper_body_str =
            paddle::string::Sprintf(SET_TENSOR_WRAPPER_BODY_TEMPLATE,
                                    tensor_wrapper_name,
                                    struct_tensor_wrapper_name,
                                    no_need_buffer_str);
2921

2922 2923 2924 2925 2926 2927 2928
        const char* CLEAR_TENSOR_WRAPPER_TEMPLATE =
            "for (auto tw: %s)   {\n"
            "       tw.clear();\n"
            "     }\n";
        clear_tensor_wrappers_str += paddle::string::Sprintf(
            CLEAR_TENSOR_WRAPPER_TEMPLATE, struct_tensor_wrapper_name);

2929 2930
      } else {
        const char* ATTR_TENSOR_WRAPPER_ARG_TEMPLATE =
2931
            "const paddle::experimental::Tensor& %s";
2932 2933 2934 2935 2936 2937 2938 2939 2940
        tensor_wrapper_arg_str = paddle::string::Sprintf(
            ATTR_TENSOR_WRAPPER_ARG_TEMPLATE, tensor_wrapper_name);

        const char* TENSOR_WRAPPER_MEMBER_TEMPLATE =
            "   egr::TensorWrapper %s;\n";
        tensor_wrapper_members_str += paddle::string::Sprintf(
            TENSOR_WRAPPER_MEMBER_TEMPLATE, struct_tensor_wrapper_name);

        const char* SET_TENSOR_WRAPPER_BODY_TEMPLATE =
2941
            "%s = egr::TensorWrapper(%s, %s);\n";
2942 2943 2944 2945 2946
        tensor_wrapper_body_str =
            paddle::string::Sprintf(SET_TENSOR_WRAPPER_BODY_TEMPLATE,
                                    struct_tensor_wrapper_name,
                                    tensor_wrapper_name,
                                    no_need_buffer_str);
2947 2948 2949 2950

        const char* CLEAR_TENSOR_WRAPPER_TEMPLATE = "   %s.clear();\n";
        clear_tensor_wrappers_str += paddle::string::Sprintf(
            CLEAR_TENSOR_WRAPPER_TEMPLATE, struct_tensor_wrapper_name);
2951 2952
      }
      const char* SET_TENSOR_WRAPPER_TEMPLATE =
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2953
          "   void SetTensorWrapper%s(%s) {\n    %s\n  }\n";
2954 2955 2956 2957 2958
      set_tensor_wrappers_str +=
          paddle::string::Sprintf(SET_TENSOR_WRAPPER_TEMPLATE,
                                  tensor_wrapper_name,
                                  tensor_wrapper_arg_str,
                                  tensor_wrapper_body_str);
2959
    }
2960 2961 2962
  }
  VLOG(6) << "Generated TensorWrapper";

2963 2964 2965 2966 2967 2968 2969 2970 2971 2972 2973 2974 2975 2976 2977 2978 2979
  std::string grad_node_str =
      paddle::string::Sprintf(GRAD_NODE_TEMPLATE,
                              op_type,
                              op_type,
                              op_type,
                              op_type,
                              op_type,
                              op_type,
                              op_type,
                              clear_tensor_wrappers_str,
                              op_type,
                              op_type,
                              op_type,
                              set_tensor_wrappers_str,
                              set_attr_map_str,
                              tensor_wrapper_members_str,
                              attr_members_str);
2980 2981 2982 2983 2984 2985 2986

  return grad_node_str;
}

/* --------------------------------- */
/* --------- FileGeneration --------- */
/* ---------------------------------- */
2987 2988 2989 2990 2991
static std::string GenerateDygraphHFileIncludes() {
  std::string dygraph_forward_api_includes_str =
      "#pragma once\n"
      "#include \"glog/logging.h\"\n"
      "#include \"paddle/fluid/eager/autograd_meta.h\"\n"
2992
      "#include \"paddle/phi/api/all.h\"\n"
2993
      "#include \"paddle/fluid/eager/utils.h\"\n"
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      "#include \"paddle/fluid/imperative/tracer.h\"\n"
2995 2996 2997 2998
      "#include \"paddle/fluid/framework/op_registry.h\"\n"
      "#include "
      "\"paddle/fluid/eager/api/manual/fluid_manual/"
      "dygraph_forward_api.h\"\n\n";
2999 3000 3001

  dygraph_forward_api_includes_str +=
      "extern std::unordered_map<std::string, std::vector<std::string>> "
3002
      "core_ops_legacy_args_info;\n";
3003 3004
  dygraph_forward_api_includes_str +=
      "extern std::unordered_map<std::string, std::vector<std::string>> "
3005
      "core_ops_legacy_args_type_info;\n";
3006 3007
  dygraph_forward_api_includes_str +=
      "extern std::unordered_map<std::string, std::vector<std::string>> "
3008
      "core_ops_legacy_returns_info;\n\n";
3009 3010 3011 3012

  return dygraph_forward_api_includes_str;
}

3013
static void GenerateForwardHFile(const std::string& dygraph_forward_api_path,
3014 3015 3016 3017 3018 3019
                                 const std::string& dygraph_forward_api_str) {
  std::ofstream forward_header_stream(dygraph_forward_api_path, std::ios::out);
  forward_header_stream << dygraph_forward_api_str;
  forward_header_stream.close();
}

3020
static void GenerateForwardDygraphFile(const std::string& forward_cc_path,
3021 3022 3023 3024 3025 3026
                                       const std::string& fwd_function_str) {
  const char* FORWARD_INCLUDE_TEMPLATE =
      "#include "
      "\"paddle/fluid/eager/api/generated/fluid_generated/"
      "dygraph_forward_api.h\"\n"
      "#include "
3027 3028
      "\"paddle/fluid/eager/api/generated/fluid_generated/nodes/nodes.h\"\n"
      "#include \"paddle/fluid/eager/api/utils/global_utils.h\"\n"
3029
      "#include \"paddle/fluid/eager/amp_utils.h\"\n"
3030
      "#include \"paddle/fluid/eager/amp_auto_cast.h\"\n"
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      "#include \"paddle/fluid/platform/profiler/event_tracing.h\"\n"
      "#pragma GCC diagnostic ignored \"-Wunused-variable\"\n\n";
3033
  std::string forward_cc_include_str =
3034
      paddle::string::Sprintf(FORWARD_INCLUDE_TEMPLATE);
3035 3036 3037 3038 3039 3040
  std::ofstream forward_cc_stream(forward_cc_path, std::ios::out);
  forward_cc_stream << forward_cc_include_str;
  forward_cc_stream << fwd_function_str;
  forward_cc_stream.close();
}

3041
static void GenerateNodeHFile(const std::string& node_h_path,
3042 3043 3044 3045
                              const std::string& grad_node_str) {
  std::string node_h_include_str =
      "#pragma once\n"
      "#include \"paddle/fluid/eager/tensor_wrapper.h\"\n"
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      "#include \"paddle/fluid/imperative/tracer.h\"\n"
3047 3048 3049 3050
      "#include \"paddle/fluid/eager/grad_node_info.h\"\n"
      "#include "
      "\"paddle/fluid/eager/api/manual/fluid_manual/nodes/nodes.h\"\n\n";

3051 3052 3053 3054 3055 3056
  std::ofstream node_h_stream(node_h_path, std::ios::out);
  node_h_stream << node_h_include_str;
  node_h_stream << grad_node_str;
  node_h_stream.close();
}

3057
static void GenerateNodeCCFile(const std::string& node_cc_path,
3058 3059 3060
                               const std::string& grad_function_str) {
  const char* NODE_CC_INCLUDE_TEMPLATE =
      "#include \"glog/logging.h\"\n"
3061
      "#include \"paddle/phi/api/all.h\"\n"
3062 3063 3064 3065 3066
      "#include \"paddle/fluid/imperative/tracer.h\"\n"
      "#include \"paddle/fluid/framework/op_registry.h\"\n"
      "#include \"paddle/fluid/eager/utils.h\"\n"
      "#include \"paddle/fluid/eager/api/utils/global_utils.h\"\n"
      "#include "
3067
      "\"paddle/fluid/eager/api/generated/fluid_generated/nodes/nodes.h\"\n\n";
3068
  std::string node_cc_include_str =
3069
      paddle::string::Sprintf(NODE_CC_INCLUDE_TEMPLATE);
3070 3071 3072 3073 3074 3075
  std::ofstream node_cc_stream(node_cc_path, std::ios::out);
  node_cc_stream << node_cc_include_str;
  node_cc_stream << grad_function_str;
  node_cc_stream.close();
}

3076 3077 3078
static std::string ConvertCoreOpsInfosToString(
    const std::unordered_map<std::string, std::vector<std::string>>&
        core_ops_info) {
3079
  std::string core_ops_legacy_returns_info_init_str = "";
3080 3081 3082
  for (const auto& iter : core_ops_info) {
    const char* Core_Ops_Returns_TEMPLATE = "{ \"%s\", { %s } },\n";
    const std::string& op_type = iter.first;
3083

3084 3085 3086 3087 3088 3089 3090 3091 3092
    std::string returns_str = "";
    for (const auto& vector_iter : iter.second) {
      returns_str += "\"" + vector_iter + "\" ,";
    }

    // Remove trailing ','
    if (returns_str.size() > 0) returns_str.pop_back();
    std::string op_type_init_str = paddle::string::Sprintf(
        Core_Ops_Returns_TEMPLATE, op_type, returns_str);
3093
    core_ops_legacy_returns_info_init_str += op_type_init_str;
3094 3095 3096
  }

  // Remove trailing ','
3097 3098
  if (core_ops_legacy_returns_info_init_str.size() > 0)
    core_ops_legacy_returns_info_init_str.pop_back();
3099

3100
  return core_ops_legacy_returns_info_init_str;
3101 3102
}

3103
static std::string GenerateCoreOpsArgsInfo() {
3104 3105
  const char* Core_Ops_Returns_MAP_TEMPLATE =
      "std::unordered_map<std::string, std::vector<std::string>> "
3106
      "core_ops_legacy_args_info = { %s };\n";
3107 3108

  std::string core_ops_args_info_init_str =
3109
      ConvertCoreOpsInfosToString(core_ops_legacy_args_info);
3110 3111 3112 3113 3114 3115 3116 3117 3118 3119

  std::string core_ops_info_str = paddle::string::Sprintf(
      Core_Ops_Returns_MAP_TEMPLATE, core_ops_args_info_init_str);

  return core_ops_info_str;
}

static std::string GenerateCoreOpsArgsTypeInfo() {
  const char* Core_Ops_Returns_MAP_TEMPLATE =
      "std::unordered_map<std::string, std::vector<std::string>> "
3120
      "core_ops_legacy_args_type_info = { %s };\n";
3121

3122
  std::string core_ops_args_type_info_init_str =
3123
      ConvertCoreOpsInfosToString(core_ops_legacy_args_type_info);
3124 3125 3126 3127 3128 3129 3130 3131 3132 3133

  std::string core_ops_info_str = paddle::string::Sprintf(
      Core_Ops_Returns_MAP_TEMPLATE, core_ops_args_type_info_init_str);

  return core_ops_info_str;
}

static std::string GenerateCoreOpsReturnsInfo() {
  const char* Core_Ops_Returns_MAP_TEMPLATE =
      "std::unordered_map<std::string, std::vector<std::string>> "
3134
      "core_ops_legacy_returns_info = { %s };\n";
3135

3136 3137
  std::string core_ops_legacy_returns_info_init_str =
      ConvertCoreOpsInfosToString(core_ops_legacy_returns_info);
3138

3139
  std::string core_ops_info_str = paddle::string::Sprintf(
3140
      Core_Ops_Returns_MAP_TEMPLATE, core_ops_legacy_returns_info_init_str);
3141 3142

  return core_ops_info_str;
3143 3144
}

3145 3146
static void DygraphCodeGeneration(const std::string& output_dir,
                                  int split_count) {
3147
  std::string dygraph_forward_api_str = GenerateDygraphHFileIncludes();
3148 3149 3150
  std::string fwd_function_str = "";
  std::string grad_node_h_str = "";
  std::string grad_node_cc_str = "";
3151 3152 3153

  auto& op_info_map = paddle::framework::OpInfoMap::Instance().map();

3154 3155
  paddle::flat_hash_map<std::string, OpInfo> op_info_map_need_gen;

3156 3157 3158 3159 3160 3161
  for (auto& pair : op_info_map) {
    const OpInfo& op_info = pair.second;
    proto::OpProto* op_proto = op_info.proto_;

    if (!CheckOpProto(op_proto)) continue;
    const std::string& op_type = op_proto->type();
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    if (black_ops_list.count(op_type)) {
      continue;
    }
3165

3166 3167 3168 3169 3170 3171
    // Skip the sparse op
    if (op_type.compare(0, 7, "sparse_") == 0 && op_type != "sparse_momentum" &&
        op_type != "sparse_attention") {
      continue;
    }

3172 3173 3174 3175 3176 3177 3178 3179 3180 3181 3182 3183 3184 3185 3186 3187 3188 3189 3190 3191 3192 3193 3194 3195 3196
    GradNodeGenerationInfo bwd_info;

    bool is_available = CollectGradInformationFromOpInfo(op_info, &bwd_info);

    if (!is_available && !bwd_info.GenerateForwardOnly()) {
      VLOG(6) << "Skipped operator: " << op_type;
      continue;
    }

    op_info_map_need_gen.emplace(pair);
  }

  int each_cc_file_api_size = op_info_map_need_gen.size() / split_count;
  if (op_info_map_need_gen.size() % split_count != 0) {
    each_cc_file_api_size++;
  }
  int api_index = 0;
  int file_index = 0;

  for (auto& pair : op_info_map_need_gen) {
    const OpInfo& op_info = pair.second;
    proto::OpProto* op_proto = op_info.proto_;

    const std::string& op_type = op_proto->type();

3197 3198 3199
    /* ----------------------------- */
    /* ---- Collect Information ---- */
    /* ----------------------------- */
3200 3201 3202

    ForwardGenerationInfo fwd_info;
    GradNodeGenerationInfo bwd_info;
3203 3204 3205

    VLOG(6) << "-------- CollectInformationFromOpInfo -------";

3206
    CollectForwardInformationFromOpInfo(op_info, &fwd_info);
3207

3208
    CollectGradInformationFromOpInfo(op_info, &bwd_info);
3209

3210
    VLOG(6) << "-------- PurifyOpProto -------";
3211 3212 3213
    PurifyForwardOpProto(*op_proto, &fwd_info);
    if (!bwd_info.GenerateForwardOnly()) {
      PurifyGradNodeGenerationInfo(*op_proto, &bwd_info);
3214
    }
3215

3216 3217 3218 3219 3220
    /* --------------------------- */
    /* --------- CodeGen --------- */
    /* --------------------------- */
    VLOG(6) << "-------- GenerateForwardFunctionContents -------";
    std::pair<std::string, std::string> body_and_declaration =
3221
        GenerateForwardFunctionContents(fwd_info, bwd_info, {});
3222

3223
    fwd_function_str += body_and_declaration.first + "\n";
3224

3225
    VLOG(6) << "-------- GenerateDygraphForwardAPIContents -------";
3226 3227 3228
    std::string fwd_function_declare_str = body_and_declaration.second;
    dygraph_forward_api_str += fwd_function_declare_str;

3229 3230
    auto& infer_inplace =
        paddle::framework::OpInfoMap::Instance().Get(op_type).infer_inplace_;
3231
    std::map<std::string, std::string> forward_inplace_map;
3232 3233 3234
    // Inplace Function Generator.
    // `sum` op has duplicate input. Don't consider adding inplace strategy
    // for `sum` in temporary.
3235
    if (infer_inplace && !special_inplace_op_set.count(op_type)) {
3236 3237
      auto in_to_outs = infer_inplace(true);
      for (auto& inplace_pair : in_to_outs) {
3238
        forward_inplace_map[inplace_pair.second] = inplace_pair.first;
3239 3240 3241 3242
      }

      VLOG(6) << "-------- GenerateInplaceForwardFunctionContents -------";
      std::pair<std::string, std::string> inplace_body_and_declaration =
3243 3244
          GenerateForwardFunctionContents(
              fwd_info, bwd_info, forward_inplace_map);
3245 3246 3247 3248 3249 3250 3251 3252 3253

      fwd_function_str += inplace_body_and_declaration.first + "\n";

      VLOG(6) << "-------- GenerateInplaceDygraphForwardAPIContents -------";
      std::string inplace_fwd_function_declare_str =
          inplace_body_and_declaration.second;
      dygraph_forward_api_str += inplace_fwd_function_declare_str;
    }

3254 3255 3256 3257
    if (!bwd_info.GenerateForwardOnly()) {
      VLOG(6) << "-------- GenerateGradNodeHeaderContents -------";
      grad_node_h_str += GenerateGradNodeHeaderContents(fwd_info, bwd_info);
      grad_node_h_str += "\n";
3258

3259 3260 3261 3262
      VLOG(6) << "-------- GenerateGradNodeCCContents -------";
      grad_node_cc_str += GenerateGradNodeCCContents(fwd_info, bwd_info);
      grad_node_cc_str += "\n";
    }
3263 3264

    VLOG(6) << op_type << ": Finished Generating Op: " << op_type;
3265 3266 3267 3268 3269 3270 3271 3272 3273 3274 3275 3276 3277 3278 3279 3280 3281 3282

    api_index++;
    if (api_index / each_cc_file_api_size > file_index) {
      file_index++;
      VLOG(6) << "-------- GenerateDygraphForwardCCFile -------";
      std::string forward_cc_path = output_dir +
                                    "/forwards/dygraph_forward_functions" +
                                    std::to_string(file_index) + ".tmp.cc";
      fwd_function_str += "\n";
      GenerateForwardDygraphFile(forward_cc_path, fwd_function_str);
      fwd_function_str = "";

      VLOG(6) << "-------- GenerateNodeCCFile -------";
      std::string node_cc_path =
          output_dir + "/nodes/nodes" + std::to_string(file_index) + ".tmp.cc";
      GenerateNodeCCFile(node_cc_path, grad_node_cc_str);
      grad_node_cc_str = "";
    }
3283
  }
3284

3285
  file_index++;
3286
  VLOG(6) << "-------- GenerateDygraphForwardCCFile -------";
3287 3288 3289
  std::string forward_cc_path = output_dir +
                                "/forwards/dygraph_forward_functions" +
                                std::to_string(file_index) + ".tmp.cc";
3290
  GenerateForwardDygraphFile(forward_cc_path, fwd_function_str);
3291 3292 3293 3294
  fwd_function_str = "";

  GenerateForwardDygraphFile(
      output_dir + "/forwards/dygraph_forward_functions_args_info.tmp.cc",
3295 3296 3297 3298 3299 3300
      GenerateCoreOpsArgsInfo());
  GenerateForwardDygraphFile(
      output_dir + "/forwards/dygraph_forward_functions_args_type_info.tmp.cc",
      GenerateCoreOpsArgsTypeInfo());
  GenerateForwardDygraphFile(
      output_dir + "/forwards/dygraph_forward_functions_returns_info.tmp.cc",
3301 3302 3303 3304 3305 3306 3307
      GenerateCoreOpsReturnsInfo());

  VLOG(6) << "-------- GenerateNodeCCFile -------";
  std::string node_cc_path =
      output_dir + "/nodes/nodes" + std::to_string(file_index) + ".tmp.cc";
  GenerateNodeCCFile(node_cc_path, grad_node_cc_str);
  grad_node_cc_str = "";
3308 3309

  VLOG(6) << "-------- GenerateForwardHFile -------";
3310 3311 3312
  std::string dygraph_forward_api_path =
      output_dir + "/dygraph_forward_api.tmp.h";
  GenerateForwardHFile(dygraph_forward_api_path, dygraph_forward_api_str);
3313 3314

  VLOG(6) << "-------- GenerateNodeHFile -------";
3315 3316
  std::string node_h_path = output_dir + "/nodes/nodes.tmp.h";
  GenerateNodeHFile(node_h_path, grad_node_h_str);
3317 3318
}

3319 3320 3321
}  // namespace framework
}  // namespace paddle

3322
int main(int argc, char* argv[]) {
3323 3324
  if (argc != 3) {
    std::cerr << "argc must be 3" << std::endl;
3325 3326 3327 3328
    return -1;
  }

  std::string eager_root = argv[1];
3329
  int split_count = atoi(argv[2]);
3330

3331
  paddle::framework::PrepareAttrMapForOps();
3332

3333
  paddle::framework::DygraphCodeGeneration(eager_root, split_count);
3334 3335 3336

  return 0;
}