* make fileds with empty Batch rather than None after reset * dummy code * remove dummy * add reward_length argument for collector * Improve Batch (#126) * make sure the key type of Batch is string, and add unit tests * add is_empty() function and unit tests * enable cat of mixing dict and Batch, just like stack * bugfix for reward_length * add get_final_reward_fn argument to collector to deal with marl * minor polish * remove multibuf * minor polish * improve and implement Batch.cat_ * bugfix for buffer.sample with field impt_weight * restore the usage of a.cat_(b) * fix 2 bugs in batch and add corresponding unittest * code fix for update * update is_empty to recognize empty over empty; bugfix for len * bugfix for update and add testcase * add testcase of update * make fileds with empty Batch rather than None after reset * dummy code * remove dummy * add reward_length argument for collector * bugfix for reward_length * add get_final_reward_fn argument to collector to deal with marl * make sure the key type of Batch is string, and add unit tests * add is_empty() function and unit tests * enable cat of mixing dict and Batch, just like stack * dummy code * remove dummy * add multi-agent example: tic-tac-toe * move TicTacToeEnv to a separate file * remove dummy MANet * code refactor * move tic-tac-toe example to test * update doc with marl-example * fix docs * reduce the threshold * revert * update player id to start from 1 and change player to agent; keep coding * add reward_length argument for collector * Improve Batch (#128) * minor polish * improve and implement Batch.cat_ * bugfix for buffer.sample with field impt_weight * restore the usage of a.cat_(b) * fix 2 bugs in batch and add corresponding unittest * code fix for update * update is_empty to recognize empty over empty; bugfix for len * bugfix for update and add testcase * add testcase of update * fix docs * fix docs * fix docs [ci skip] * fix docs [ci skip] Co-authored-by: Trinkle23897 <463003665@qq.com> * refact * re-implement Batch.stack and add testcases * add doc for Batch.stack * reward_metric * modify flag * minor fix * reuse _create_values and refactor stack_ & cat_ * fix pep8 * fix reward stat in collector * fix stat of collector, simplify test/base/env.py * fix docs * minor fix * raise exception for stacking with partial keys and axis!=0 * minor fix * minor fix * minor fix * marl-examples * add condense; bugfix for torch.Tensor; code refactor * marl example can run now * enable tic tac toe with larger board size and win-size * add test dependency * Fix padding of inconsistent keys with Batch.stack and Batch.cat (#130) * re-implement Batch.stack and add testcases * add doc for Batch.stack * reuse _create_values and refactor stack_ & cat_ * fix pep8 * fix docs * raise exception for stacking with partial keys and axis!=0 * minor fix * minor fix Co-authored-by: Trinkle23897 <463003665@qq.com> * stash * let agent learn to play as agent 2 which is harder * code refactor * Improve collector (#125) * remove multibuf * reward_metric * make fileds with empty Batch rather than None after reset * many fixes and refactor Co-authored-by: Trinkle23897 <463003665@qq.com> * marl for tic-tac-toe and general gomoku * update default gamma to 0.1 for tic tac toe to win earlier * fix name typo; change default game config; add rew_norm option * fix pep8 * test commit * mv test dir name * add rew flag * fix torch.optim import error and madqn rew_norm * remove useless kwargs * Vector env enable select worker (#132) * Enable selecting worker for vector env step method. * Update collector to match new vecenv selective worker behavior. * Bug fix. * Fix rebase Co-authored-by: Alexis Duburcq <alexis.duburcq@wandercraft.eu> * show the last move of tictactoe by capital letters * add multi-agent tutorial * fix link * Standardized behavior of Batch.cat and misc code refactor (#137) * code refactor; remove unused kwargs; add reward_normalization for dqn * bugfix for __setitem__ with torch.Tensor; add Batch.condense * minor fix * support cat with empty Batch * remove the dependency of is_empty on len; specify the semantic of empty Batch by test cases * support stack with empty Batch * remove condense * refactor code to reflect the shared / partial / reserved categories of keys * add is_empty(recursive=False) * doc fix * docfix and bugfix for _is_batch_set * add doc for key reservation * bugfix for algebra operators * fix cat with lens hint * code refactor * bugfix for storing None * use ValueError instead of exception * hide lens away from users * add comment for __cat * move the computation of the initial value of lens in cat_ itself. * change the place of doc string * doc fix for Batch doc string * change recursive to recurse * doc string fix * minor fix for batch doc * write tutorials to specify the standard of Batch (#142) * add doc for len exceptions * doc move; unify is_scalar_value function * remove some issubclass check * bugfix for shape of Batch(a=1) * keep moving doc * keep writing batch tutorial * draft version of Batch tutorial done * improving doc * keep improving doc * batch tutorial done * rename _is_number * rename _is_scalar * shape property do not raise exception * restore some doc string * grammarly [ci skip] * grammarly + fix warning of building docs * polish docs * trim and re-arrange batch tutorial * go straight to the point * minor fix for batch doc * add shape / len in basic usage * keep improving tutorial * unify _to_array_with_correct_type to remove duplicate code * delegate type convertion to Batch.__init__ * further delegate type convertion to Batch.__init__ * bugfix for setattr * add a _parse_value function * remove dummy function call * polish docs Co-authored-by: Trinkle23897 <463003665@qq.com> * bugfix for mapolicy * pretty code * remove debug code; remove condense * doc fix * check before get_agents in tutorials/tictactoe * tutorial * fix * minor fix for batch doc * minor polish * faster test_ttt * improve tic-tac-toe environment * change default epoch and step-per-epoch for tic-tac-toe * fix mapolicy * minor polish for mapolicy * 90% to 80% (need to change the tutorial) * win rate * show step number at board * simplify mapolicy * minor polish for mapolicy * remove MADQN * fix pep8 * change legal_actions to mask (need to update docs) * simplify maenv * fix typo * move basevecenv to single file * separate RandomAgent * update docs * grammarly * fix pep8 * win rate typo * format in cheatsheet * use bool mask directly * update doc for boolean mask Co-authored-by: Trinkle23897 <463003665@qq.com> Co-authored-by: Alexis DUBURCQ <alexis.duburcq@gmail.com> Co-authored-by: Alexis Duburcq <alexis.duburcq@wandercraft.eu>
174 lines
6.5 KiB
Python
174 lines
6.5 KiB
Python
import torch
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import numpy as np
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from copy import deepcopy
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import torch.nn.functional as F
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from typing import Dict, Union, Optional
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from tianshou.policy import BasePolicy
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from tianshou.data import Batch, ReplayBuffer, PrioritizedReplayBuffer, \
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to_torch_as, to_numpy
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class DQNPolicy(BasePolicy):
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"""Implementation of Deep Q Network. arXiv:1312.5602
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Implementation of Double Q-Learning. arXiv:1509.06461
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:param torch.nn.Module model: a model following the rules in
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:class:`~tianshou.policy.BasePolicy`. (s -> logits)
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:param torch.optim.Optimizer optim: a torch.optim for optimizing the model.
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:param float discount_factor: in [0, 1].
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:param int estimation_step: greater than 1, the number of steps to look
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ahead.
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:param int target_update_freq: the target network update frequency (``0``
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if you do not use the target network).
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:param bool reward_normalization: normalize the reward to Normal(0, 1),
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defaults to ``False``.
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.. seealso::
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Please refer to :class:`~tianshou.policy.BasePolicy` for more detailed
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explanation.
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"""
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def __init__(self,
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model: torch.nn.Module,
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optim: torch.optim.Optimizer,
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discount_factor: float = 0.99,
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estimation_step: int = 1,
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target_update_freq: Optional[int] = 0,
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reward_normalization: bool = False,
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**kwargs) -> None:
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super().__init__(**kwargs)
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self.model = model
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self.optim = optim
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self.eps = 0
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assert 0 <= discount_factor <= 1, 'discount_factor should in [0, 1]'
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self._gamma = discount_factor
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assert estimation_step > 0, 'estimation_step should greater than 0'
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self._n_step = estimation_step
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self._target = target_update_freq > 0
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self._freq = target_update_freq
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self._cnt = 0
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if self._target:
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self.model_old = deepcopy(self.model)
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self.model_old.eval()
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self._rew_norm = reward_normalization
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def set_eps(self, eps: float) -> None:
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"""Set the eps for epsilon-greedy exploration."""
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self.eps = eps
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def train(self, mode=True) -> torch.nn.Module:
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"""Set the module in training mode, except for the target network."""
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self.training = mode
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self.model.train(mode)
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return self
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def sync_weight(self) -> None:
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"""Synchronize the weight for the target network."""
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self.model_old.load_state_dict(self.model.state_dict())
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def _target_q(self, buffer: ReplayBuffer,
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indice: np.ndarray) -> torch.Tensor:
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batch = buffer[indice] # batch.obs_next: s_{t+n}
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if self._target:
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# target_Q = Q_old(s_, argmax(Q_new(s_, *)))
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a = self(batch, input='obs_next', eps=0).act
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with torch.no_grad():
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target_q = self(
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batch, model='model_old', input='obs_next').logits
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target_q = target_q[np.arange(len(a)), a]
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else:
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with torch.no_grad():
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target_q = self(batch, input='obs_next').logits.max(dim=1)[0]
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return target_q
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def process_fn(self, batch: Batch, buffer: ReplayBuffer,
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indice: np.ndarray) -> Batch:
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"""Compute the n-step return for Q-learning targets. More details can
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be found at :meth:`~tianshou.policy.BasePolicy.compute_nstep_return`.
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"""
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batch = self.compute_nstep_return(
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batch, buffer, indice, self._target_q,
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self._gamma, self._n_step, self._rew_norm)
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if isinstance(buffer, PrioritizedReplayBuffer):
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batch.update_weight = buffer.update_weight
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batch.indice = indice
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return batch
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def forward(self, batch: Batch,
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state: Optional[Union[dict, Batch, np.ndarray]] = None,
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model: str = 'model',
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input: str = 'obs',
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eps: Optional[float] = None,
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**kwargs) -> Batch:
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"""Compute action over the given batch data. If you need to mask the
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action, please add a "mask" into batch.obs, for example, if we have an
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environment that has "0/1/2" three actions:
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::
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batch == Batch(
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obs=Batch(
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obs="original obs, with batch_size=1 for demonstration",
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mask=np.array([[False, True, False]]),
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# action 1 is available
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# action 0 and 2 are unavailable
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),
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...
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)
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:param float eps: in [0, 1], for epsilon-greedy exploration method.
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:return: A :class:`~tianshou.data.Batch` which has 3 keys:
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* ``act`` the action.
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* ``logits`` the network's raw output.
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* ``state`` the hidden state.
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.. seealso::
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Please refer to :meth:`~tianshou.policy.BasePolicy.forward` for
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more detailed explanation.
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"""
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model = getattr(self, model)
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obs = getattr(batch, input)
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obs_ = obs.obs if hasattr(obs, 'obs') else obs
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q, h = model(obs_, state=state, info=batch.info)
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act = to_numpy(q.max(dim=1)[1])
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has_mask = hasattr(obs, 'mask')
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if has_mask:
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# some of actions are masked, they cannot be selected
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q_ = to_numpy(q)
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q_[~obs.mask] = -np.inf
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act = q_.argmax(axis=1)
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# add eps to act
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if eps is None:
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eps = self.eps
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if not np.isclose(eps, 0):
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for i in range(len(q)):
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if np.random.rand() < eps:
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q_ = np.random.rand(*q[i].shape)
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if has_mask:
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q_[~obs.mask[i]] = -np.inf
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act[i] = q_.argmax()
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return Batch(logits=q, act=act, state=h)
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def learn(self, batch: Batch, **kwargs) -> Dict[str, float]:
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if self._target and self._cnt % self._freq == 0:
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self.sync_weight()
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self.optim.zero_grad()
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q = self(batch).logits
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q = q[np.arange(len(q)), batch.act]
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r = to_torch_as(batch.returns, q)
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if hasattr(batch, 'update_weight'):
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td = r - q
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batch.update_weight(batch.indice, to_numpy(td))
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impt_weight = to_torch_as(batch.impt_weight, q)
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loss = (td.pow(2) * impt_weight).mean()
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else:
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loss = F.mse_loss(q, r)
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loss.backward()
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self.optim.step()
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self._cnt += 1
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return {'loss': loss.item()}
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