adadelta_optimizer.cc 2.2 KB
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#include "adadelta_optimizer.h"
#include <algorithm>
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#include <cmath>
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namespace paddle {
namespace optimizer {

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void AdadeltaOptimizer::Update(const Tensor* gradient) {
  num_sample_passed_ += 1;
  double learning_rate = lr_policy_->LearningRate(num_sample_passed_);
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  Tensor& param = *parameter_;
  const Tensor& grad = *gradient;
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  Tensor& accum_g = *accum_gradient_;
  Tensor& accum_d = *accum_delta_;
  Tensor& update_d = *update_delta_;
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  for (size_t i = 0; i < param.size(); ++i) {
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    accum_g[i] = rho_ * accum_g[i] + (1.0 - rho_) * grad[i] * grad[i];
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    update_d[i] = std::sqrt(accum_d[i] + epsilon_) /
                  std::sqrt(accum_g[i] + epsilon_) * grad[i];
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    accum_d[i] = rho_ * accum_d[i] + (1.0 - rho_) * update_d[i] * update_d[i];
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    param[i] -= learning_rate * update_d[i] + learning_rate * decay_ * param[i];
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  }
}
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const char* AdadeltaOptimizer::SerializeState(int* state_len) {
  OptimizerState state;
  state.set_learning_rate(lr_policy_->LearningRate(num_sample_passed_));
  state.set_num_sample_passed(num_sample_passed_);

  TensorToProto(*parameter_, state.mutable_parameter());
  TensorToProto(*accum_gradient_, state.mutable_accum_gradient());
  TensorToProto(*accum_delta_, state.mutable_accum_delta());
  TensorToProto(*update_delta_, state.mutable_update_delta());
  state.set_nesterov(epsilon_);
  state.set_momentum(rho_);
  state.set_decay(decay_);
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  // can be used when memory alignment to system
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  *state_len += CalStateSize(parameter_,
                             accum_gradient_,
                             accum_delta_,
                             update_delta_,
                             rho_,
                             epsilon_,
                             decay_);
  return state.SerializeAsString().c_str();
}

void AdadeltaOptimizer::DeSerializeState(const std::string& str) {
  OptimizerState state;
  state.ParseFromString(str);
  lr_policy_->set(state.learning_rate());
  num_sample_passed_ = state.num_sample_passed();

  ProtoToTensor(state.parameter(), parameter_);
  ProtoToTensor(state.accum_gradient(), accum_gradient_);
  ProtoToTensor(state.accum_delta(), accum_delta_);
  ProtoToTensor(state.update_delta(), update_delta_);

}  // namespace optimizer
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}  // namespace optimizer