#include "adadelta_optimizer.h" #include #include namespace paddle { namespace optimizer { void AdadeltaOptimizer::Update(const Tensor* gradient) { num_sample_passed_ += 1; double learning_rate = lr_policy_->LearningRate(num_sample_passed_); Tensor& param = *parameter_; const Tensor& grad = *gradient; Tensor& accum_g = *accum_gradient_; Tensor& accum_d = *accum_delta_; Tensor& update_d = *update_delta_; for (size_t i = 0; i < param.size(); ++i) { accum_g[i] = rho_ * accum_g[i] + (1.0 - rho_) * grad[i] * grad[i]; update_d[i] = std::sqrt(accum_d[i] + epsilon_) / std::sqrt(accum_g[i] + epsilon_) * grad[i]; accum_d[i] = rho_ * accum_d[i] + (1.0 - rho_) * update_d[i] * update_d[i]; param[i] -= learning_rate * update_d[i] + learning_rate * decay_ * param[i]; } } std::string AdadeltaOptimizer::SerializeState() { AdadeltaOptimizerState state; state.set_num_sample_passed(num_sample_passed_); std::string lr_str = this->lr_policy_->SerializeState(); state.mutable_lr_state()->ParseFromString(lr_str); 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()); return state.SerializeAsString(); } void AdadeltaOptimizer::DeserializeState(const std::string& str) { AdadeltaOptimizerState state; state.ParseFromString(str); auto lr_state = state.lr_state(); this->lr_policy_->DeserializeState(lr_state.SerializeAsString()); 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 } // namespace paddle