from ray import tune from ray.tune.registry import register_env from ray.rllib.env.wrappers.pettingzoo_env import PettingZooEnv from pettingzoo.sisl import waterworld_v3 # Based on code from github.com/parametersharingmadrl/parametersharingmadrl if __name__ == "__main__": # RDQN - Rainbow DQN # ADQN - Apex DQN register_env("waterworld", lambda _: PettingZooEnv(waterworld_v3.env())) tune.run( "APEX_DDPG", stop={"episodes_total": 60000}, checkpoint_freq=10, config={ # Enviroment specific. "env": "waterworld", # General "num_gpus": 1, "num_workers": 2, "num_envs_per_worker": 8, "learning_starts": 1000, "buffer_size": int(1e5), "compress_observations": True, "rollout_fragment_length": 20, "train_batch_size": 512, "gamma": .99, "n_step": 3, "lr": .0001, "prioritized_replay_alpha": 0.5, "final_prioritized_replay_beta": 1.0, "target_network_update_freq": 50000, "timesteps_per_iteration": 25000, # Method specific. "multiagent": { # We only have one policy (calling it "shared"). # Class, obs/act-spaces, and config will be derived # automatically. "policies": {"shared_policy"}, # Always use "shared" policy. "policy_mapping_fn": ( lambda agent_id, episode, **kwargs: "shared_policy"), }, }, )