import numpy as np from multiprocessing import Process, Pipe from src.common.vec_env import VecEnv def worker(remote, env_fn_wrapper): env = env_fn_wrapper.x() while True: cmd, data = remote.recv() if cmd == 'step': ob, reward, done, info = env.step(data) if done: ob = env.reset() remote.send((ob, reward, done, info)) elif cmd == 'reset': ob = env.reset() remote.send(ob) elif cmd == 'close': remote.close() break elif cmd == 'get_spaces': remote.send((env.action_space, env.observation_space)) else: raise NotImplementedError class CloudpickleWrapper(object): """ Uses cloudpickle to serialize contents (otherwise multiprocessing tries to use pickle) """ def __init__(self, x): self.x = x def __getstate__(self): import cloudpickle return cloudpickle.dumps(self.x) def __setstate__(self, ob): import pickle self.x = pickle.loads(ob) class SubprocVecEnv(VecEnv): def __init__(self, env_fns): """ envs: list of gym environments to run in subprocesses """ nenvs = len(env_fns) self.remotes, self.work_remotes = zip(*[Pipe() for _ in range(nenvs)]) self.ps = [Process(target=worker, args=(work_remote, CloudpickleWrapper(env_fn))) for (work_remote, env_fn) in zip(self.work_remotes, env_fns)] for p in self.ps: p.start() self.remotes[0].send(('get_spaces', None)) self.action_space, self.observation_space = self.remotes[0].recv() def step(self, actions): for remote, action in zip(self.remotes, actions): remote.send(('step', action)) results = [remote.recv() for remote in self.remotes] obs, rews, dones, infos = zip(*results) return np.stack(obs), np.stack(rews), np.stack(dones), infos def reset(self): for remote in self.remotes: remote.send(('reset', None)) return np.stack([remote.recv() for remote in self.remotes]) def close(self): for remote in self.remotes: remote.send(('close', None)) for p in self.ps: p.join() @property def num_envs(self): return len(self.remotes)