import gym from gym.spaces import Box, Discrete import numpy as np class RepeatAfterMeEnv(gym.Env): """Env in which the observation at timestep minus n must be repeated.""" def __init__(self, config=None): config = config or {} if config.get("continuous"): self.observation_space = Box(-1.0, 1.0, (2, )) else: self.observation_space = Discrete(2) self.action_space = self.observation_space # Note: Set `repeat_delay` to 0 for simply repeating the seen # observation (no delay). self.delay = config.get("repeat_delay", 1) self.episode_len = config.get("episode_len", 100) self.history = [] def reset(self): self.history = [0] * self.delay return self._next_obs() def step(self, action): obs = self.history[-(1 + self.delay)] # Box: -abs(diff). if isinstance(self.action_space, Box): reward = -np.sum(np.abs(action - obs)) # Discrete: +1.0 if exact match, -1.0 otherwise. if isinstance(self.action_space, Discrete): reward = 1.0 if action == obs else -1.0 done = len(self.history) > self.episode_len return self._next_obs(), reward, done, {} def _next_obs(self): if isinstance(self.observation_space, Box): token = np.random.random(size=(2, )) else: token = np.random.choice([0, 1]) self.history.append(token) return token