""" Helpers for dealing with vectorized environments. """ from collections import OrderedDict from typing import Any, Dict, List, Tuple import gym import numpy as np from stable_baselines3.common.vec_env.base_vec_env import VecEnvObs def copy_obs_dict(obs: Dict[str, np.ndarray]) -> Dict[str, np.ndarray]: """ Deep-copy a dict of numpy arrays. :param obs: a dict of numpy arrays. :return: a dict of copied numpy arrays. """ assert isinstance(obs, OrderedDict), f"unexpected type for observations '{type(obs)}'" return OrderedDict([(k, np.copy(v)) for k, v in obs.items()]) def dict_to_obs(space: gym.spaces.Space, obs_dict: Dict[Any, np.ndarray]) -> VecEnvObs: """ Convert an internal representation raw_obs into the appropriate type specified by space. :param space: an observation space. :param obs_dict: a dict of numpy arrays. :return: returns an observation of the same type as space. If space is Dict, function is identity; if space is Tuple, converts dict to Tuple; otherwise, space is unstructured and returns the value raw_obs[None]. """ if isinstance(space, gym.spaces.Dict): return obs_dict elif isinstance(space, gym.spaces.Tuple): assert len(obs_dict) == len(space.spaces), "size of observation does not match size of observation space" return tuple((obs_dict[i] for i in range(len(space.spaces)))) else: assert set(obs_dict.keys()) == {None}, "multiple observation keys for unstructured observation space" return obs_dict[None] def obs_space_info(obs_space: gym.spaces.Space) -> Tuple[List[str], Dict[Any, Tuple[int, ...]], Dict[Any, np.dtype]]: """ Get dict-structured information about a gym.Space. Dict spaces are represented directly by their dict of subspaces. Tuple spaces are converted into a dict with keys indexing into the tuple. Unstructured spaces are represented by {None: obs_space}. :param obs_space: an observation space :return: A tuple (keys, shapes, dtypes): keys: a list of dict keys. shapes: a dict mapping keys to shapes. dtypes: a dict mapping keys to dtypes. """ if isinstance(obs_space, gym.spaces.Dict): assert isinstance(obs_space.spaces, OrderedDict), "Dict space must have ordered subspaces" subspaces = obs_space.spaces elif isinstance(obs_space, gym.spaces.Tuple): subspaces = {i: space for i, space in enumerate(obs_space.spaces)} else: assert not hasattr(obs_space, "spaces"), f"Unsupported structured space '{type(obs_space)}'" subspaces = {None: obs_space} keys = [] shapes = {} dtypes = {} for key, box in subspaces.items(): keys.append(key) shapes[key] = box.shape dtypes[key] = box.dtype return keys, shapes, dtypes