rofunc.learning.RofuncRL.agents.online.a2c_agent#
1. Module Contents#
1.1. Classes#
Advantage Actor Critic (A2C) agent |
1.2. API#
- class rofunc.learning.RofuncRL.agents.online.a2c_agent.A2CAgent(cfg: omegaconf.DictConfig, observation_space: Optional[Union[int, Tuple[int], gym.Space, gymnasium.Space]], action_space: Optional[Union[int, Tuple[int], gym.Space, gymnasium.Space]], memory: Optional[Union[rofunc.learning.RofuncRL.utils.memory.Memory, Tuple[rofunc.learning.RofuncRL.utils.memory.Memory]]] = None, device: Optional[Union[str, torch.device]] = None, experiment_dir: Optional[str] = None, rofunc_logger: Optional[rofunc.logger.BeautyLogger] = None)#
Bases:
rofunc.learning.RofuncRL.agents.base_agent.BaseAgentAdvantage Actor Critic (A2C) agent
“Asynchronous Methods for Deep Reinforcement Learning”. Mnih et al. 2016. https://arxiv.org/abs/1602.01783
Rofunc documentation: https://rofunc.readthedocs.io/en/latest/lfd/RofuncRL/A2C.html
Initialization
- Parameters:
cfg – Configurations
observation_space – Observation space
action_space – Action space
memory – Memory for storing transitions
device – Device on which the torch tensor is allocated
experiment_dir – Directory for storing experiment data
rofunc_logger – Rofunc logger
- act(states: torch.Tensor, deterministic: bool = False)#
- store_transition(states: torch.Tensor, actions: torch.Tensor, next_states: torch.Tensor, rewards: torch.Tensor, terminated: torch.Tensor, truncated: torch.Tensor, infos: torch.Tensor)#
- update_net()#
Update the network