Source code for xuance.torch.learners.qlearning_family.drqn_learner

"""
Deep Recurrent Q-Netwrk (DRQN)
Paper link: https://cdn.aaai.org/ocs/11673/11673-51288-1-PB.pdf
Implementation: Pytorch
"""
import torch
from torch import nn
from xuance.torch.learners import Learner
from argparse import Namespace


[docs] class DRQN_Learner(Learner): def __init__(self, config: Namespace, policy: nn.Module, callback): super(DRQN_Learner, self).__init__(config, policy, callback) self.optimizer = torch.optim.Adam(self.policy.parameters(), self.config.learning_rate, eps=1e-5) self.scheduler = torch.optim.lr_scheduler.LinearLR(self.optimizer, start_factor=1.0, end_factor=self.end_factor_lr_decay, total_iters=self.total_iters) self.gamma = config.gamma self.sync_frequency = config.sync_frequency self.mse_loss = nn.MSELoss() self.n_actions = self.policy.action_dim
[docs] def update(self, **samples): self.iterations += 1 obs_batch = torch.as_tensor(samples['obs'], device=self.device) act_batch = torch.as_tensor(samples['actions'], dtype=torch.int64, device=self.device) rew_batch = torch.as_tensor(samples['rewards'], device=self.device) ter_batch = torch.as_tensor(samples['terminals'], dtype=torch.float, device=self.device) batch_size = samples['batch_size'] info = self.callback.on_update_start(self.iterations, policy=self.policy, obs=obs_batch, act=act_batch, rew=rew_batch, termination=ter_batch, batch_size=batch_size) rnn_hidden = self.policy.init_hidden(batch_size) _, _, evalQ, _ = self.policy(obs_batch[:, 0:-1], *rnn_hidden) target_rnn_hidden = self.policy.init_hidden(batch_size) _, targetA, targetQ, _ = self.policy.target(obs_batch[:, 1:], *target_rnn_hidden) # targetQ = targetQ.max(dim=-1).values predictQ = evalQ.gather(-1, act_batch.unsqueeze(-1)).squeeze(-1) targetQ = targetQ.gather(-1, targetA.unsqueeze(-1)).squeeze(-1) targetQ = rew_batch + self.gamma * (1 - ter_batch) * targetQ loss = self.mse_loss(predictQ, targetQ.detach()) self.optimizer.zero_grad() loss.backward() if self.use_grad_clip: torch.nn.utils.clip_grad_norm_(self.policy.parameters(), self.grad_clip_norm) self.optimizer.step() if self.scheduler is not None: self.scheduler.step() # hard update for target network if self.iterations % self.sync_frequency == 0: self.policy.copy_target() lr = self.optimizer.state_dict()['param_groups'][0]['lr'] if self.distributed_training: info.update({ f"Qloss/rank_{self.rank}": loss.item(), f"learning_rate/rank_{self.rank}": lr, f"predictQ/rank_{self.rank}": predictQ.mean().item() }) else: info.update({ "Qloss": loss.item(), "learning_rate": lr, "predictQ": predictQ.mean().item() }) info.update(self.callback.on_update_end(self.iterations, policy=self.policy, info=info, evalQ=evalQ, predictQ=predictQ, targetA=targetA, targetQ=targetQ, loss=loss)) return info