op_function_generator.cc 25.9 KB
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// Copyright (c) 2019 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.

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#include <algorithm>
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#include <fstream>
#include <iostream>
#include <string>
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#ifndef _WIN32
#include <unistd.h>
#endif
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#include "paddle/fluid/framework/op_info.h"
#include "paddle/fluid/framework/op_registry.h"
#include "paddle/fluid/framework/operator.h"
#include "paddle/fluid/framework/variable.h"
#include "paddle/fluid/pybind/pybind.h"
#include "paddle/fluid/string/string_helper.h"
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#ifdef PADDLE_WITH_ASCEND_CL
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#include "paddle/fluid/framework/fleet/ascend_wrapper.h"
#endif
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// NOTE(zhiqiu): Commonly, the inputs in auto-generated OP function are
// determined by the OP`s proto automatically, i.e., all the inputs registered
// in OpMaker.
// However, some OPs have dispensable inputs, which means the input can
// be none for some conditions. It is discovered that most dispensable inputs
// is not used in imperative mode, so we drop those inputs when generating OP
// functions. While, for very few OPs, the dispensable inputs are used, we
// need to manually specify them in this map.
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std::map<std::string, std::set<std::string>> op_ins_map = {
    {"layer_norm", {"X", "Scale", "Bias"}},
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    {"bincount", {"X", "Weights"}},
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    {"fused_attention",
     {"X", "LnScale", "LnBias", "QKVW", "QKVBias", "SrcMask", "OutLinearW",
      "OutLinearBias", "Ln2Scale", "Ln2Bias"}},
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    {"instance_norm", {"X", "Scale", "Bias"}},
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    {"gru_unit", {"Input", "HiddenPrev", "Weight", "Bias"}},
    {"label_smooth", {"X", "PriorDist"}},
    {"assign", {"X"}},
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    {"reshape2", {"X", "Shape"}},
    {"expand", {"X", "ExpandTimes"}},
    {"slice", {"Input", "StartsTensor", "EndsTensor"}},
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    {"fake_quantize_dequantize_moving_average_abs_max",
     {"X", "InScale", "InAccum", "InState"}},
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    {"nll_loss", {"X", "Label", "Weight"}},
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    {"bilinear_tensor_product", {"X", "Y", "Weight", "Bias"}},
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    {"gather", {"X", "Index", "Axis"}},
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    {"roi_pool", {"X", "ROIs", "RoisNum"}},
    {"roi_align", {"X", "ROIs", "RoisNum"}},
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    {"psroi_pool", {"X", "ROIs", "RoisNum"}},
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    {"collect_fpn_proposals",
     {"MultiLevelRois", "MultiLevelScores", "MultiLevelRoIsNum"}},
    {"distribute_fpn_proposals", {"FpnRois", "RoisNum"}},
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    {"warpctc", {"Logits", "Label", "LogitsLength", "LabelLength"}},
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    {"hierarchical_sigmoid",
     {"X", "W", "Label", "PathTable", "PathCode", "Bias"}},
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    {"moving_average_abs_max_scale", {"X", "InAccum", "InState"}},
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    {"multiclass_nms3", {"BBoxes", "Scores", "RoisNum"}},
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    {"box_coder", {"PriorBox", "PriorBoxVar", "TargetBox"}},
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    {"momentum", {"Param", "Grad", "Velocity", "LearningRate", "MasterParam"}},
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    {"sparse_momentum", {"Param", "Grad", "Velocity", "Index", "LearningRate"}},
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    {"rnn", {"Input", "PreState", "WeightList", "SequenceLength"}},
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    {"run_program", {"X", "Params"}},
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    {"fused_feedforward",
     {"Dropout1Seed", "Dropout2Seed", "Linear1Bias", "Linear2Bias", "Ln1Scale",
      "Ln1Bias", "Ln2Scale", "Ln2Bias"}},
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    {"faster_tokenizer", {"Text", "Vocab", "TextPair"}},
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    {"matrix_rank", {"X", "TolTensor"}},
    {"adam",
     {"Param", "Grad", "LearningRate", "Moment1", "Moment2", "Beta1Pow",
      "Beta2Pow", "MasterParam"}},
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    {"adamw",
     {"Param", "Grad", "LearningRate", "Moment1", "Moment2", "Beta1Pow",
      "Beta2Pow", "MasterParam"}},
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};
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// NOTE(zhiqiu): Like op_ins_map.
// Commonly, the outputs in auto-generated OP function are determined by the
// OP`s proto automatically, i.e., all the outputs registered in OpMaker.
// However, some OPs have dispensable outputs, which means the output can
// be none for some conditions. It is discovered that most dispensable outputs
// is not used in imperative mode, so we drop those outputs when generating OP
// functions. While, for very few OPs, the dispensable outputs are used, we
// need to manually specify them in this map.
std::map<std::string, std::set<std::string>> op_outs_map = {
    {"fake_quantize_dequantize_moving_average_abs_max",
     {"Out", "OutScale", "OutAccum", "OutState"}},
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    {"batch_norm",
     {"Y", "MeanOut", "VarianceOut", "SavedMean", "SavedVariance",
      "ReserveSpace"}},
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    {"fused_attention",
     {"LnMean", "LnVariance", "LnOut", "QKVOut", "QKVBiasOut", "TransposeOut2",
      "QKOut", "QKTVOut", "SoftmaxOut", "AttnDropoutMaskOut", "AttnDropoutOut",
      "SrcMaskOut", "FMHAOut", "OutLinearOut", "DropoutMaskOut", "Ln2Mean",
      "Ln2Variance", "BiasDropoutResidualOut", "Y"}},
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    {"sync_batch_norm",
     {"Y", "MeanOut", "VarianceOut", "SavedMean", "SavedVariance",
      "ReserveSpace"}},
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    {"unique", {"Out", "Index", "Indices", "Counts"}},
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    {"unique_consecutive", {"Out", "Index", "Counts"}},
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    {"generate_proposals", {"RpnRois", "RpnRoiProbs", "RpnRoisNum"}},
    {"collect_fpn_proposals", {"FpnRois", "RoisNum"}},
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    {"matrix_nms", {"Out", "Index", "RoisNum"}},
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    {"distribute_fpn_proposals",
     {"MultiFpnRois", "RestoreIndex", "MultiLevelRoIsNum"}},
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    {"moving_average_abs_max_scale",
     {"Out", "OutScale", "OutAccum", "OutState"}},
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    {"multiclass_nms3", {"Out", "NmsRoisNum"}},
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    {"generate_proposals_v2", {"RpnRois", "RpnRoiProbs", "RpnRoisNum"}},
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    {"momentum", {"ParamOut", "VelocityOut", "MasterParamOut"}},
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    {"sparse_momentum", {"ParamOut", "VelocityOut"}},
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    {"rnn", {"DropoutState", "Reserve", "Out", "State"}},
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    {"lamb",
     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut"}},
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    {"run_program", {"DOut"}},
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    {"adam",
     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut",
      "MasterParamOut"}},
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    {"adamw",
     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut",
      "MasterParamOut"}},
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};

// NOTE(zhiqiu): Commonly, the outputs in auto-generated OP function are
// generated in C++ automatically.
// However, some OPs need to pass the outputs from Python instead of generating
// them in C++. There are mainly 2 reasons for that,
// (1) Optimizer OPs need to update the input param in-place, like sgd.
//     So they need to pass the output which is same as input param.
// (2) Very few python APIs has out in their arguments, like fill_constant.
//     So they need to pass the python output to C++.
//     Actually, this is not a good design, since it may break the SSA graph,
//     especially in declarative mode.
// For those OPs, we need to manually specify the outs need to pass in this map.
std::map<std::string, std::set<std::string>> op_passing_outs_map = {
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    {"sgd", {"ParamOut"}},
    {"adam",
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     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut",
      "MasterParamOut"}},
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    {"adamw",
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     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut",
      "MasterParamOut"}},
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    {"average_accumulates",
     {"out_sum_1", "out_sum_2", "out_sum_3", "out_num_accumulates",
      "out_old_num_accumulates", "out_num_updates"}},
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    {"momentum", {"ParamOut", "VelocityOut", "MasterParamOut"}},
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    {"sparse_momentum", {"ParamOut", "VelocityOut"}},
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    {"batch_norm", {"MeanOut", "VarianceOut"}},
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    {"sync_batch_norm", {"MeanOut", "VarianceOut"}},
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    {"accuracy", {"Correct", "Total"}},
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    {"fill_constant", {"Out"}},
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    {"recv_v2", {"Out"}},
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    {"partial_recv", {"Out"}},
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    {"matmul", {"Out"}},
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    {"c_broadcast", {"Out"}},
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    {"c_sync_calc_stream", {"Out"}},
    {"c_sync_comm_stream", {"Out"}},
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    {"c_reduce_sum", {"Out"}},
    {"c_reduce_max", {"Out"}},
    {"c_reduce_min", {"Out"}},
    {"c_reduce_prod", {"Out"}},
    {"c_reduce", {"Out"}},
    {"c_scatter", {"Out"}},
    {"barrier", {"Out"}},
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    {"fake_quantize_dequantize_moving_average_abs_max",
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     {"Out", "OutScale", "OutAccum", "OutState"}},
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    {"fake_quantize_dequantize_abs_max", {"Out", "OutScale"}},
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    {"fake_channel_wise_quantize_dequantize_abs_max", {"Out", "OutScale"}},
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    {"check_finite_and_unscale", {"Out", "FoundInfinite"}},
    {"update_loss_scaling",
     {"Out", "LossScaling", "OutGoodSteps", "OutBadSteps"}},
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    {"moving_average_abs_max_scale",
     {"Out", "OutScale", "OutAccum", "OutState"}},
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    {"lamb",
     {"ParamOut", "Moment1Out", "Moment2Out", "Beta1PowOut", "Beta2PowOut"}},
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    {"rnn", {"DropoutState"}},
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    {"run_program", {"Out", "DOut", "OutScope"}},
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    {"clear_float_status", {"FloatStatusOut"}},
    {"get_float_status", {"FloatStatusOut"}},
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};
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// NOTE(pangyoki): Tensor View Strategy.
// In this case, a new output varbase will be created, and this varbase will
// reuse the input varbase's allocation.
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// It's a map. The key of outer map is the view op name, the value is
// a pair which implies the mapping relationship between the input and
// output varbase.
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std::map<std::string, std::pair<std::string, std::string>> view_op_map = {
    {"squeeze2", {"X", "Out"}},  // "X" -> "Out"
    {"unsqueeze2", {"X", "Out"}},
    {"reshape2", {"X", "Out"}},
    {"flatten_contiguous_range", {"X", "Out"}},
};

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// NOTE(pangyoki): Inplace OP with duplicable input.
// The set includes inplace ops that have duplicable input.
// The first Varbase in input needs to be specified for the inplace strategy
// and share Varbase with the output.
std::set<std::string> inplace_op_duplicable_ins_set = {
    "sum",
};

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// clang-format off
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const char* OUT_INITIALIZER_TEMPLATE =
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    R"({"%s", {std::shared_ptr<imperative::VarBase>(new imperative::VarBase("auto_"+std::to_string(VarBaseUniqueNameID++)+"_"))}})";
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const char* OUT_DUPLICABLE_INITIALIZER_TEMPLATE = R"({"%s", ConstructDuplicableOutput(%s)})";

const char* INPUT_INITIALIZER_TEMPLATE = R"({"%s", {%s}})";
const char* INPUT_LIST_INITIALIZER_TEMPLATE = R"({"%s", %s})";
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const char* INPUT_INITIALIZER_TEMPLATE_WITH_NULL = R"(
    if (%s != nullptr) {
      ins["%s"] = {%s};
    }
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)";
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const char* INPUT_INITIALIZER_TEMPLATE_WITH_NULL_LIST = R"(
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    if (%s.size() != 0) {
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      ins["%s"] = %s;
    }
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)";

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const char* OUTPUT_INITIALIZER_TEMPLATE_WITH_NULL = R"(
    outs["%s"] = {%s};
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)";

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const char* OUTPUT_INITIALIZER_TEMPLATE_WITH_NULL_LIST = R"(
    outs["%s"] = %s;
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)";
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// if inputs is list, no need {}
const char* ARG_OUT_NUM = R"(%sNum)";
const char* ARG_OUT_NUM_TYPE = R"(size_t )";

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const char* IN_VAR_TYPE = R"(py::handle)";
const char* IN_VAR_LIST_TYPE = R"(py::handle)";

const char* OUT_VAR_TYPE = R"(std::shared_ptr<imperative::VarBase>)";
const char* OUT_VAR_LIST_TYPE = R"(std::vector<std::shared_ptr<imperative::VarBase>>)";

const char* CAST_VAR_TEMPLATE = R"(
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    auto %s = GetVarBaseFromArgs("%s", "%s", args, %d, %s);)";
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const char* CAST_VAR_LIST_TEMPLATE = R"(
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    auto %s = GetVarBaseListFromArgs("%s", "%s", args, %d, %s);)";
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const char* CAST_SIZE_T_TEMPLATE = R"(
    auto %s = GetUnsignedLongFromArgs("%s", "%s", args, %d, %s);)";
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const char* ARG_TEMPLATE = R"(const %s& %s)";

const char* RETURN_TUPLE_TYPE = R"(std::tuple<%s>)";
const char* RETURN_TUPLE_TEMPLATE = R"(std::make_tuple(%s))";
const char* RETURN_LIST_TEMPLATE = R"(outs["%s"])";
const char* RETURN_TEMPLATE = R"(outs["%s"][0])";

const char* FUNCTION_ARGS = R"(%s, const py::args& args)";
const char* FUNCTION_ARGS_NO_INPUT = R"(const py::args& args)";
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const char* HANDLE_VIEW_BETWEEN_INPUT_AND_OUTPUT = R"(
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    if (ins.count("%s") && outs.count("%s")) {
      HandleViewBetweenInputAndOutput(ins["%s"][0], outs["%s"][0]);
    })";

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const char* INPLACE_DUPLICABLE_INPUT = R"([0])";

const char* INPLACE_LEAF_ERROR_MESSAGE = R"(Leaf Var (%s) that doesn't stop gradient can't use inplace strategy.)";

const char* INPLACE_STRATEGY_TEMPLATE =
R"(
    PADDLE_ENFORCE_EQ(
      %s->IsLeaf() && !%s->OverridedStopGradient(), false,
      platform::errors::InvalidArgument("%s", %s->Name()));
    %s->BumpInplaceVersion();
    VLOG(3) << "Var(" << %s->Name() << ") uses Inplace Strategy.";
)";

const char* INPLACE_MAPPING_TEMPLATE = R"({"%s", "%s"})";

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const char* OP_FUNCTION_TEMPLATE =
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R"(
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static PyObject * %s(PyObject *self, PyObject *args, PyObject *kwargs)
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{
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  PyThreadState *tstate = nullptr;
  try
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  {
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    %s
    framework::AttributeMap attrs;
    ConstructAttrMapFromPyArgs("%s", args, %d, PyTuple_GET_SIZE(args) , attrs);
    tstate = PyEval_SaveThread();
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    %s
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    imperative::NameVarBaseMap outs = %s;
    imperative::NameVarBaseMap ins = %s;
    %s
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    imperative::GetCurrentTracer()->TraceOp("%s", ins, outs, attrs, {%s});
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    PyEval_RestoreThread(tstate);
    tstate = nullptr;
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    %s
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  }
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  catch(...) {
    if (tstate) {
      PyEval_RestoreThread(tstate);
    }
    ThrowExceptionToPython(std::current_exception());
    return nullptr;
  }
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})";
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const char* PYBIND_ITEM_TEMPLATE = R"(  {"%s", (PyCFunction)(void(*)(void))%s, METH_VARARGS | METH_KEYWORDS, "C++ interface function for %s in dygraph."},)";
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// clang-format on
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static inline bool FindInsMap(const std::string& op_type,
                              const std::string& in_name) {
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  return op_ins_map[op_type].count(in_name);
}

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static inline bool FindOutsMap(const std::string& op_type,
                               const std::string& out_name) {
  return op_outs_map[op_type].count(out_name);
}

static inline bool FindPassingOutsMap(const std::string& op_type,
                                      const std::string& out_name) {
  return op_passing_outs_map[op_type].count(out_name);
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}
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static inline bool FindDuplicableInputInplaceOpSet(const std::string& op_type) {
  return inplace_op_duplicable_ins_set.count(op_type);
}

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static inline bool FindViewOpMap(const std::string& op_type) {
  return view_op_map.count(op_type);
}

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static inline std::string TempName(const std::string& name) {
  return name + '_';
}

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std::string GenerateOpFunctionsBody(
    const paddle::framework::proto::OpProto* op_proto, std::string func_name,
    bool use_inplace_strategy = false,
    std::map<std::string, std::string> inplace_map = {}) {
  auto& op_type = op_proto->type();
  std::string input_args = "";
  std::string ins_initializer = "{";
  std::string ins_initializer_with_null = "";
  std::string py_arg = "";
  int arg_idx = 0;
  int input_args_num = 0;
  std::string ins_cast_str = "";
  std::string view_strategy_str = "";
  std::string inplace_strategy_str = "";
  for (auto& input : op_proto->inputs()) {
    auto& in_name = input.name();
    // skip those dispensable inputs, like ResidualData in conv2d
    if (input.dispensable() && !FindInsMap(op_type, in_name)) {
      continue;
    }
    const auto in_type = input.duplicable() ? IN_VAR_LIST_TYPE : IN_VAR_TYPE;
    auto input_arg =
        paddle::string::Sprintf(ARG_TEMPLATE, in_type, TempName(in_name));
    input_args += input_arg;
    input_args += ",";
    input_args_num++;
    const auto in_cast_type =
        input.duplicable() ? CAST_VAR_LIST_TEMPLATE : CAST_VAR_TEMPLATE;
    auto dispensable = input.dispensable() ? "true" : "false";
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    ins_cast_str += paddle::string::Sprintf(in_cast_type, in_name, op_type,
                                            in_name, arg_idx++, dispensable);
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    if (input.dispensable()) {
      const auto in_template = input.duplicable()
                                   ? INPUT_INITIALIZER_TEMPLATE_WITH_NULL_LIST
                                   : INPUT_INITIALIZER_TEMPLATE_WITH_NULL;
      ins_initializer_with_null +=
          paddle::string::Sprintf(in_template, in_name, in_name, in_name);
    } else {
      const auto in_template = input.duplicable()
                                   ? INPUT_LIST_INITIALIZER_TEMPLATE
                                   : INPUT_INITIALIZER_TEMPLATE;
      ins_initializer += paddle::string::Sprintf(in_template, in_name, in_name);
      ins_initializer += ",";
    }
  }
  if (ins_initializer.back() == ',') {
    ins_initializer.pop_back();
  }
  ins_initializer += "}";

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  if (!input_args.empty() && input_args.back() == ',') {
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    input_args.pop_back();
  }

  // Generate outs initializer
  std::string outs_initializer = "{";
  std::string outs_initializer_with_null = "";
  std::string inplace_mapping_str = "";
  std::string return_str = "";

  int outs_num = 0;
  for (auto& output : op_proto->outputs()) {
    auto& out_name = output.name();
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    // skip those dispensable oututs
    if (output.dispensable() && !FindOutsMap(op_type, out_name)) {
      continue;
    }
    const auto out_type =
        output.duplicable() ? OUT_VAR_LIST_TYPE : OUT_VAR_TYPE;
    const auto return_template =
        output.duplicable() ? RETURN_LIST_TEMPLATE : RETURN_TEMPLATE;

    if (FindPassingOutsMap(op_type, out_name)) {
      if (input_args != "") {
        input_args += ",";
      }
      input_args += out_type;
      input_args += out_name;
      input_args_num++;

      if (output.dispensable()) {
        const auto out_template =
            output.duplicable() ? OUTPUT_INITIALIZER_TEMPLATE_WITH_NULL_LIST
                                : OUTPUT_INITIALIZER_TEMPLATE_WITH_NULL;
        outs_initializer_with_null +=
            paddle::string::Sprintf(out_template, out_name, out_name);
      } else {
        const auto out_template = output.duplicable()
                                      ? INPUT_LIST_INITIALIZER_TEMPLATE
                                      : INPUT_INITIALIZER_TEMPLATE;
        outs_initializer +=
            paddle::string::Sprintf(out_template, out_name, out_name);
        outs_initializer += ",";
      }
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      const auto in_cast_type =
          output.duplicable() ? CAST_VAR_LIST_TEMPLATE : CAST_VAR_TEMPLATE;
      auto dispensable = output.dispensable() ? "true" : "false";
      ins_cast_str += paddle::string::Sprintf(in_cast_type, out_name, op_type,
                                              out_name, arg_idx++, dispensable);
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    } else if (use_inplace_strategy && inplace_map.count(out_name)) {
      PADDLE_ENFORCE_NE(
          inplace_map[out_name], "",
          paddle::platform::errors::InvalidArgument(
              "Inplace op %s has no input corresponding to output %s.", op_type,
              out_name));

      // TODO(pangyoki): Inplace op don't have duplicable output in temporary,
      // so don't support duplicable output now.
      const auto out_template = INPUT_INITIALIZER_TEMPLATE;

      auto inplace_input_name = inplace_map[out_name];
      inplace_mapping_str += paddle::string::Sprintf(
          INPLACE_MAPPING_TEMPLATE, inplace_input_name, out_name);
      inplace_mapping_str += ",";

      // If inplace op has duplicable input, the first Varbase in input will
      // share Varbase with output.
      if (FindDuplicableInputInplaceOpSet(op_type)) {
        inplace_input_name += INPLACE_DUPLICABLE_INPUT;
      }

      // Leaf Var that doesn't stop gradient can't use inplace strategy.
      // Increase inplace_version.
      inplace_strategy_str += paddle::string::Sprintf(
          INPLACE_STRATEGY_TEMPLATE, inplace_input_name, inplace_input_name,
          INPLACE_LEAF_ERROR_MESSAGE, inplace_input_name, inplace_input_name,
          inplace_input_name);
      outs_initializer +=
          paddle::string::Sprintf(out_template, out_name, inplace_input_name);
      outs_initializer += ",";
    } else {
      // There are few Operators that have duplicable output, like `Out` in
      // split op. We need to specify the number of variables for the
      // duplicable output, as the argument OutNum;
      if (output.duplicable()) {
        if (input_args != "") {
          input_args += ",";
        }
        auto out_num_str = paddle::string::Sprintf(ARG_OUT_NUM, out_name);
        input_args += ARG_OUT_NUM_TYPE;
        input_args += out_num_str;
        input_args_num++;
        outs_initializer += paddle::string::Sprintf(
            OUT_DUPLICABLE_INITIALIZER_TEMPLATE, out_name, out_num_str);
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        auto dispensable = output.dispensable() ? "true" : "false";
        ins_cast_str +=
            paddle::string::Sprintf(CAST_SIZE_T_TEMPLATE, out_num_str, op_type,
                                    out_num_str, arg_idx++, dispensable);
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      } else {
        outs_initializer +=
            paddle::string::Sprintf(OUT_INITIALIZER_TEMPLATE, out_name);
      }
      outs_initializer += ",";
    }

    return_str += paddle::string::Sprintf(return_template, out_name);
    return_str += ",";
    outs_num += 1;
  }
  if (outs_initializer.back() == ',') {
    outs_initializer.pop_back();
    return_str.pop_back();
  }
  outs_initializer += "}";
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  if (!inplace_mapping_str.empty() && inplace_mapping_str.back() == ',') {
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    inplace_mapping_str.pop_back();
  }
  if (!use_inplace_strategy && FindViewOpMap(op_type)) {
    std::string viwe_input_name = view_op_map[op_type].first;
    std::string viwe_output_name = view_op_map[op_type].second;
    view_strategy_str += paddle::string::Sprintf(
        HANDLE_VIEW_BETWEEN_INPUT_AND_OUTPUT, viwe_input_name, viwe_output_name,
        viwe_input_name, viwe_output_name);
  }
  if (outs_num == 0) {
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    return_str = "Py_INCREF(Py_None);\n    return Py_None;";
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  } else if (outs_num == 1) {
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    return_str = "return MakeReturnPyObject(" + return_str + ");";
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  } else {
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    return_str = "return MakeReturnPyObject(" +
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                 paddle::string::Sprintf(RETURN_TUPLE_TEMPLATE, return_str) +
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                 ");";
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  }
  std::string function_args = "";
  if (input_args == "") {
    function_args = FUNCTION_ARGS_NO_INPUT;
  } else {
    function_args = paddle::string::Sprintf(FUNCTION_ARGS, input_args);
  }

  // generate op funtcion body
  auto op_function_str = paddle::string::Sprintf(
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      OP_FUNCTION_TEMPLATE, func_name, ins_cast_str, op_type, input_args_num,
      inplace_strategy_str, outs_initializer, ins_initializer,
      ins_initializer_with_null + outs_initializer_with_null +
          view_strategy_str,
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      op_type, inplace_mapping_str, return_str);

  return op_function_str;
}

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static std::tuple<std::vector<std::string>, std::vector<std::string>>
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GenerateOpFunctions() {
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  auto& op_info_map = paddle::framework::OpInfoMap::Instance().map();

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  std::vector<std::string> op_function_list, bind_function_list;
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  auto& all_kernels = paddle::framework::OperatorWithKernel::AllOpKernels();

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  for (auto& pair : op_info_map) {
    auto& op_info = pair.second;
    auto op_proto = op_info.proto_;
    if (op_proto == nullptr) {
      continue;
    }
    auto& op_type = op_proto->type();
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    // Skip ooerator which is not inherit form OperatorWithKernel, like while,
    // since only OperatorWithKernel can run in dygraph mode.
    if (!all_kernels.count(op_type)) {
      continue;
    }
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    // NOTE(pangyoki): Inplace Strategy.
    // In this case, output will reuse input varbase.
    // Dygraph mode needs to be aligned with the in-place strategy in static
    // mode, and the mapping relationships between output and input that have
    // been defined in static mode should be used in dygraph mode.
    // Find which ops need to use Inplace strategy in static mode, and get the
    // mapping relationship between Inplace output and input.
    auto& infer_inplace =
        paddle::framework::OpInfoMap::Instance().Get(op_type).infer_inplace_;
    std::map<std::string, std::string> inplace_map;
    if (infer_inplace) {
      auto in_to_outs = infer_inplace(true);
      for (auto& inplace_pair : in_to_outs) {
        inplace_map[inplace_pair.second] = inplace_pair.first;
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      }
    }
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    std::string func_name = "imperative_" + op_type;
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    std::string op_function_str = GenerateOpFunctionsBody(op_proto, func_name);
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    // generate pybind item
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    auto bind_function_str = paddle::string::Sprintf(
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        PYBIND_ITEM_TEMPLATE, op_type, func_name, op_type);
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    op_function_list.emplace_back(std::move(op_function_str));
    bind_function_list.emplace_back(std::move(bind_function_str));
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    if (infer_inplace) {
      // Reuse Varbase Inplace OP: op_type_.
      // The inplace OP needs a new implementation method.
      std::string inplace_op_type = op_type + "_";
      std::string inplace_func_name = "imperative_" + inplace_op_type;
      std::string inplace_op_function_str = GenerateOpFunctionsBody(
          op_proto, inplace_func_name, true, inplace_map);

      // generate pybind item
      auto inplace_bind_function_str =
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          paddle::string::Sprintf(PYBIND_ITEM_TEMPLATE, inplace_op_type,
                                  inplace_func_name, inplace_op_type);
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      op_function_list.emplace_back(std::move(inplace_op_function_str));
      bind_function_list.emplace_back(std::move(inplace_bind_function_str));
    }
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  }
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  return std::make_tuple(op_function_list, bind_function_list);
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}

int main(int argc, char* argv[]) {
  if (argc != 2) {
    std::cerr << "argc must be 2" << std::endl;
    return -1;
  }

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#ifdef PADDLE_WITH_ASCEND_CL
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  auto ascend_ptr = paddle::framework::AscendInstance::GetInstance();
  ascend_ptr->InitGEForUT();
#endif

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  std::vector<std::string> headers{"\"paddle/fluid/imperative/tracer.h\"",
                                   "\"pybind11/detail/common.h\"",
                                   "<Python.h>"};
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  std::ofstream out(argv[1], std::ios::out);

  out << "#pragma once\n\n";

  for (auto& header : headers) {
    out << "#include  " + header + "\n";
  }

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  out << "\n\n";

  auto op_funcs = GenerateOpFunctions();
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  out << "namespace paddle {\n"
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      << "namespace pybind {\n\n";
  out << "std::atomic<int> VarBaseUniqueNameID{0};\n";
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  out << paddle::string::join_strings(std::get<0>(op_funcs), '\n');
  out << "\n\n";
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  out << "static PyMethodDef ExtestMethods[] = {\n"
      << paddle::string::join_strings(std::get<1>(op_funcs), '\n')
      << "\n  {nullptr,nullptr,0,nullptr}"
      << "};\n\n";
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  out << "inline void BindOpFunctions(pybind11::module *module) {\n"
      << "  auto m = module->def_submodule(\"ops\");\n"
      << "  if (PyModule_AddFunctions(m.ptr(), ExtestMethods) < 0) {\n"
      << "    PADDLE_THROW(platform::errors::Fatal (\"Add functions to "
         "core.ops failed!\"));\n"
      << "  }\n\n"
      << "  InitOpsAttrTypeMap();"
      << "}\n\n"
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      << "} // namespace pybind\n"
      << "} // namespace paddle\n";

  out.close();
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#ifdef PADDLE_WITH_ASCEND_CL
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  ge::GEFinalize();
#endif
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  return 0;
}