216 lines
7.8 KiB
C++
216 lines
7.8 KiB
C++
//
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// OpGrad.cpp
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// MNN
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//
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// Created by MNN on 2019/05/05.
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// Copyright © 2018, Alibaba Group Holding Limited
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//
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#include <mutex>
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#include "OpGrad.hpp"
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using namespace std;
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using namespace MNN::Express;
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//#define MNN_TRAIN_DEBUG
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namespace MNN {
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extern void registerGradOps();
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static std::map<int, OpGrad*>& getConverter() {
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static std::map<int, OpGrad*> gConverterMap;
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return gConverterMap;
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}
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OpGrad* OpGrad::get(int type) {
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auto& converterMap = getConverter();
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auto iter = converterMap.find(type);
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if (iter != converterMap.end()) {
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return iter->second;
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}
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return nullptr;
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}
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void OpGrad::insert(int type, OpGrad* converter) {
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auto& converterMap = getConverter();
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converterMap.insert(std::make_pair(type, converter));
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}
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std::vector<Express::VARP> OpGrad::gradLinear(Express::VARP loss, const std::vector<Express::VARP>& parameters, const std::vector<Express::VARP>& outputDiff, const std::vector<std::string> blockExpr) {
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std::map<EXPRP, std::vector<VARP>> backwardMap;
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auto outputSize = loss->expr().first->outputSize();
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if (outputSize != outputDiff.size()) {
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MNN_ERROR("The expr output %d, but diff size is %d\n", outputSize, (int)outputDiff.size());
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return {};
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}
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backwardMap[loss->expr().first] = outputDiff;
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std::set<VARP> parameterSet;
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for (auto p : parameters) {
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parameterSet.insert(p);
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}
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auto res = gradCommon({loss}, parameterSet, backwardMap, blockExpr);
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std::vector<VARP> linearRes(parameters.size(), nullptr);
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for (int i=0; i<parameters.size(); ++i) {
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auto iter = res.find(parameters[i]);
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if (iter != res.end()) {
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linearRes[i] = iter->second;
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}
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}
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return linearRes;
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}
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std::map<Express::VARP, Express::VARP> OpGrad::grad(VARP loss, const std::set<Express::VARP>& parameters, const std::vector<std::string> blockName) {
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std::map<EXPRP, std::vector<VARP>> backwardMap;
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{
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auto shape = loss->getInfo();
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MNN_ASSERT(shape->size == 1);
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auto init = _Const(1.0f, shape->dim, shape->order);
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backwardMap[loss->expr().first] = std::vector<VARP>{init};
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}
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return gradCommon({loss}, parameters, backwardMap, blockName);
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}
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Express::VARP OpGrad::divideAvoidZero(MNN::Express::VARP y, MNN::Express::VARP x) {
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auto p = MNN::Express::_Abs(x);
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auto sx = MNN::Express::_Sign(x);
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p = MNN::Express::_Maximum(p, MNN::Express::_Scalar<float>(0.000001f));
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return MNN::Express::_Divide(y, p) * sx;
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}
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static std::once_flag gInit;
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void OpGrad::init() {
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std::call_once(gInit, []() {
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registerGradOps();
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});
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}
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std::pair<std::vector<Express::VARP>, std::vector<Express::VARP>> OpGrad::gradCommon(std::vector<Express::VARP> outputs, std::vector<Express::VARP> outputDiff, std::vector<Express::VARP> parameters) {
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if (outputs.size() != outputDiff.size()) {
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MNN_ERROR("outputDiff size %d not equal output size %d\n", (int)outputs.size(), (int)outputDiff.size());
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return {};
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}
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std::map<EXPRP, std::vector<VARP>> backwardMap;
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for (int i=0; i<outputs.size(); ++i) {
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auto expr = outputs[i]->expr();
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if (backwardMap.find(expr.first) == backwardMap.end()) {
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std::vector<Express::VARP> res(expr.first->outputSize(), nullptr);
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backwardMap.insert(std::make_pair(expr.first, res));
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}
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auto iter = backwardMap.find(expr.first);
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if (nullptr == iter->second[expr.second]) {
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iter->second[expr.second] = outputDiff[i];
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} else {
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iter->second[expr.second] = iter->second[expr.second] + outputDiff[i];
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}
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}
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std::set<Express::VARP> parameterSets;
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for (auto p : parameters) {
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parameterSets.insert(p);
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}
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auto varmap = gradCommon(outputs, parameterSets, backwardMap);
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std::vector<Express::VARP> res;
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std::vector<Express::VARP> resDiff;
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for (int i=0; i<parameters.size(); ++i) {
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auto iter = varmap.find(parameters[i]);
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if (iter != varmap.end()) {
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res.push_back(iter->first);
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resDiff.push_back(iter->second);
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}
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}
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return std::make_pair(res, resDiff);
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}
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std::map<Express::VARP, Express::VARP> OpGrad::gradCommon(std::vector<Express::VARP> outputs, const std::set<Express::VARP>& parameters, std::map<EXPRP, std::vector<VARP>>& backwardMap, const std::vector<std::string> blockName) {
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init();
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auto executeOrder = Variable::getExecuteOrder(outputs);
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for (auto iter = executeOrder.rbegin(); iter != executeOrder.rend(); iter++) {
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auto expr = *iter;
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auto& inputs = expr->inputs();
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if (backwardMap.find(expr) == backwardMap.end()) {
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continue;
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}
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if (nullptr == expr->get()) {
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continue;
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}
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auto grad = OpGrad::get(expr->get()->type());
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#ifdef MNN_TRAIN_DEBUG
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MNN_PRINT("Grad for %s, %s\n", expr->name().c_str(), MNN::EnumNameOpType(expr->get()->type()));
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#endif
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if (nullptr == grad) {
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#ifdef MNN_TRAIN_DEBUG
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MNN_PRINT("Can't grad for %s, %s\n", expr->name().c_str(), MNN::EnumNameOpType(expr->get()->type()));
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#endif
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continue;
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}
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auto inputGrad = grad->onGrad(expr, backwardMap[expr]);
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if (!expr->name().empty()) {
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for (int v=0; v<inputGrad.size(); ++v) {
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if (inputGrad[v].get() != nullptr) {
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inputGrad[v]->setName("grad::" + expr->name() + std::to_string(v));
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}
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}
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}
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auto empty = true;
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for (auto grad : inputGrad) {
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if (nullptr != grad) {
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empty = false;
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break;
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}
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}
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if (empty) {
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#ifdef MNN_TRAIN_DEBUG
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MNN_PRINT("Can't grad for %s, %d\n", expr->name().c_str(), expr->get()->type());
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#endif
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continue;
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}
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if (!blockName.empty()) {
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if (std::find(blockName.begin(), blockName.end(), expr->name()) != blockName.end()) {
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for (int ii = 0; ii <inputGrad.size(); ii++) {
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inputGrad[ii] = nullptr;
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}
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continue;
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}
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}
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#ifdef MNN_TRAIN_DEBUG
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for (int i = 0; i < inputGrad.size(); ++i) {
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if (nullptr == inputGrad[i]) {
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continue;
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}
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auto info = inputGrad[i]->getInfo();
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if (nullptr == info) {
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MNN_ERROR("Grad error for %s, %d\n", expr->name().c_str(), expr->get()->type());
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break;
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}
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}
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#endif
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MNN_ASSERT(inputGrad.size() <= inputs.size());
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for (int i = 0; i < inputGrad.size(); ++i) {
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auto inputExpr = inputs[i]->expr().first;
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auto index = inputs[i]->expr().second;
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auto backward = inputGrad[i];
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if (nullptr == backward) {
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continue;
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}
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if (backwardMap.find(inputExpr) == backwardMap.end()) {
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backwardMap.insert(std::make_pair(inputExpr, std::vector<VARP>(inputExpr->outputSize())));
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}
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auto& inputVarMap = backwardMap[inputExpr];
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if (nullptr == inputVarMap[index]) {
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inputVarMap[index] = backward;
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} else {
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inputVarMap[index] = _Add(inputVarMap[index], backward);
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}
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}
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}
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std::map<Express::VARP, Express::VARP> grads;
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std::map<Expr*, VARP> parametersExpr;
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for (auto p : parameters) {
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parametersExpr.insert(std::make_pair(p->expr().first.get(), p));
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}
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for (auto iter : backwardMap) {
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auto expr = iter.first.get();
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if (parametersExpr.find(expr) != parametersExpr.end()) {
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auto parameter = parametersExpr[expr];
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grads[parameter] = iter.second[parameter->expr().second];
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}
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}
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// MNN_PRINT("Grad: %d <- %d\n", grads.size(), parameters.size());
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return grads;
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}
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} // namespace MNN
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