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* Add support for python 3.6 * Add support for python 3.6 * Added check for python 3.6 to not install mujoco as no version exists * Fixed the install groups for python 3.6 * Re-added python 3.6 support for gym * black * Added support for dataclasses through dataclasses module in setup that backports the module * Fixed install requirements * Re-added dummy env spec with dataclasses * Changed type for compatability for python 3.6 * Added a python 3.6 warning * Fixed python 3.6 typing issue * Removed __future__ import annotation for python 3.6 support * Fixed python 3.6 typing
354 lines
12 KiB
Python
354 lines
12 KiB
Python
"""Base class for vectorized environments."""
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from typing import Any, List, Optional, Union
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import numpy as np
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import gym
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from gym.logger import deprecation
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from gym.vector.utils.spaces import batch_space
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__all__ = ["VectorEnv"]
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class VectorEnv(gym.Env):
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"""Base class for vectorized environments. Runs multiple independent copies of the same environment in parallel.
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This is not the same as 1 environment that has multiple subcomponents, but it is many copies of the same base env.
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Each observation returned from vectorized environment is a batch of observations for each parallel environment.
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And :meth:`step` is also expected to receive a batch of actions for each parallel environment.
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Notes:
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All parallel environments should share the identical observation and action spaces.
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In other words, a vector of multiple different environments is not supported.
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"""
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def __init__(
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self, num_envs: int, observation_space: gym.Space, action_space: gym.Space
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):
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"""Base class for vectorized environments.
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Args:
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num_envs: Number of environments in the vectorized environment.
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observation_space: Observation space of a single environment.
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action_space: Action space of a single environment.
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"""
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self.num_envs = num_envs
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self.is_vector_env = True
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self.observation_space = batch_space(observation_space, n=num_envs)
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self.action_space = batch_space(action_space, n=num_envs)
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self.closed = False
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self.viewer = None
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# The observation and action spaces of a single environment are
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# kept in separate properties
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self.single_observation_space = observation_space
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self.single_action_space = action_space
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def reset_async(
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self,
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seed: Optional[Union[int, List[int]]] = None,
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return_info: bool = False,
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options: Optional[dict] = None,
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):
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"""Reset the sub-environments asynchronously.
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This method will return ``None``. A call to :meth:`reset_async` should be followed
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by a call to :meth:`reset_wait` to retrieve the results.
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Args:
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seed: The reset seed
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return_info: If to return info
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options: Reset options
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"""
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pass
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def reset_wait(
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self,
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seed: Optional[Union[int, List[int]]] = None,
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return_info: bool = False,
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options: Optional[dict] = None,
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):
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"""Retrieves the results of a :meth:`reset_async` call.
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A call to this method must always be preceded by a call to :meth:`reset_async`.
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Args:
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seed: The reset seed
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return_info: If to return info
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options: Reset options
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Returns:
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The results from :meth:`reset_async`
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Raises:
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NotImplementedError: VectorEnv does not implement function
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"""
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def reset(
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self,
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*,
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seed: Optional[Union[int, List[int]]] = None,
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return_info: bool = False,
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options: Optional[dict] = None,
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):
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"""Reset all parallel environments and return a batch of initial observations.
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Args:
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seed: The environment reset seeds
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return_info: If to return the info
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options: If to return the options
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Returns:
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A batch of observations from the vectorized environment.
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"""
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self.reset_async(seed=seed, return_info=return_info, options=options)
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return self.reset_wait(seed=seed, return_info=return_info, options=options)
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def step_async(self, actions):
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"""Asynchronously performs steps in the sub-environments.
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The results can be retrieved via a call to :meth:`step_wait`.
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Args:
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actions: The actions to take asynchronously
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"""
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def step_wait(self, **kwargs):
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"""Retrieves the results of a :meth:`step_async` call.
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A call to this method must always be preceded by a call to :meth:`step_async`.
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Args:
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**kwargs: Additional keywords for vector implementation
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Returns:
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The results from the :meth:`step_async` call
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"""
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def step(self, actions):
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"""Take an action for each parallel environment.
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Args:
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actions: element of :attr:`action_space` Batch of actions.
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Returns:
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Batch of observations, rewards, done and infos
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"""
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self.step_async(actions)
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return self.step_wait()
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def call_async(self, name, *args, **kwargs):
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"""Calls a method name for each parallel environment asynchronously."""
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def call_wait(self, **kwargs) -> List[Any]:
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"""After calling a method in :meth:`call_async`, this function collects the results."""
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def call(self, name: str, *args, **kwargs) -> List[Any]:
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"""Call a method, or get a property, from each parallel environment.
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Args:
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name (str): Name of the method or property to call.
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*args: Arguments to apply to the method call.
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**kwargs: Keyword arguments to apply to the method call.
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Returns:
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List of the results of the individual calls to the method or property for each environment.
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"""
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self.call_async(name, *args, **kwargs)
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return self.call_wait()
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def get_attr(self, name: str):
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"""Get a property from each parallel environment.
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Args:
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name (str): Name of the property to be get from each individual environment.
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Returns:
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The property with name
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"""
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return self.call(name)
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def set_attr(self, name: str, values: Union[list, tuple, object]):
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"""Set a property in each sub-environment.
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Args:
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name (str): Name of the property to be set in each individual environment.
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values (list, tuple, or object): Values of the property to be set to. If `values` is a list or
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tuple, then it corresponds to the values for each individual environment, otherwise a single value
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is set for all environments.
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"""
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def close_extras(self, **kwargs):
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"""Clean up the extra resources e.g. beyond what's in this base class."""
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pass
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def close(self, **kwargs):
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"""Close all parallel environments and release resources.
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It also closes all the existing image viewers, then calls :meth:`close_extras` and set
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:attr:`closed` as ``True``.
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Warnings:
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This function itself does not close the environments, it should be handled
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in :meth:`close_extras`. This is generic for both synchronous and asynchronous
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vectorized environments.
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Notes:
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This will be automatically called when garbage collected or program exited.
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Args:
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**kwargs: Keyword arguments passed to :meth:`close_extras`
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"""
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if self.closed:
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return
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if self.viewer is not None:
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self.viewer.close()
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self.close_extras(**kwargs)
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self.closed = True
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def seed(self, seed=None):
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"""Set the random seed in all parallel environments.
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Args:
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seed: Random seed for each parallel environment. If ``seed`` is a list of
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length ``num_envs``, then the items of the list are chosen as random
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seeds. If ``seed`` is an int, then each parallel environment uses the random
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seed ``seed + n``, where ``n`` is the index of the parallel environment
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(between ``0`` and ``num_envs - 1``).
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"""
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deprecation(
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"Function `env.seed(seed)` is marked as deprecated and will be removed in the future. "
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"Please use `env.reset(seed=seed) instead in VectorEnvs."
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)
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def _add_info(self, infos: dict, info: dict, env_num: int) -> dict:
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"""Add env info to the info dictionary of the vectorized environment.
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Given the `info` of a single environment add it to the `infos` dictionary
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which represents all the infos of the vectorized environment.
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Every `key` of `info` is paired with a boolean mask `_key` representing
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whether or not the i-indexed environment has this `info`.
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Args:
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infos (dict): the infos of the vectorized environment
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info (dict): the info coming from the single environment
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env_num (int): the index of the single environment
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Returns:
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infos (dict): the (updated) infos of the vectorized environment
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"""
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for k in info.keys():
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if k not in infos:
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info_array, array_mask = self._init_info_arrays(type(info[k]))
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else:
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info_array, array_mask = infos[k], infos[f"_{k}"]
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info_array[env_num], array_mask[env_num] = info[k], True
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infos[k], infos[f"_{k}"] = info_array, array_mask
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return infos
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def _init_info_arrays(self, dtype: type) -> np.ndarray:
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"""Initialize the info array.
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Initialize the info array. If the dtype is numeric
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the info array will have the same dtype, otherwise
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will be an array of `None`. Also, a boolean array
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of the same length is returned. It will be used for
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assessing which environment has info data.
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Args:
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dtype (type): data type of the info coming from the env.
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Returns:
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array (np.ndarray): the initialized info array.
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array_mask (np.ndarray): the initialized boolean array.
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"""
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if dtype in [int, float, bool] or issubclass(dtype, np.number):
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array = np.zeros(self.num_envs, dtype=dtype)
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else:
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array = np.zeros(self.num_envs, dtype=object)
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array[:] = None
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array_mask = np.zeros(self.num_envs, dtype=bool)
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return array, array_mask
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def __del__(self):
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"""Closes the vector environment."""
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if not getattr(self, "closed", True):
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self.close()
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def __repr__(self) -> str:
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"""Returns a string representation of the vector environment.
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Returns:
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A string containing the class name, number of environments and environment spec id
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"""
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if self.spec is None:
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return f"{self.__class__.__name__}({self.num_envs})"
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else:
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return f"{self.__class__.__name__}({self.spec.id}, {self.num_envs})"
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class VectorEnvWrapper(VectorEnv):
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"""Wraps the vectorized environment to allow a modular transformation.
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This class is the base class for all wrappers for vectorized environments. The subclass
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could override some methods to change the behavior of the original vectorized environment
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without touching the original code.
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Notes:
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Don't forget to call ``super().__init__(env)`` if the subclass overrides :meth:`__init__`.
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"""
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def __init__(self, env: VectorEnv):
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assert isinstance(env, VectorEnv)
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self.env = env
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# explicitly forward the methods defined in VectorEnv
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# to self.env (instead of the base class)
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def reset_async(self, **kwargs):
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return self.env.reset_async(**kwargs)
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def reset_wait(self, **kwargs):
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return self.env.reset_wait(**kwargs)
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def step_async(self, actions):
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return self.env.step_async(actions)
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def step_wait(self):
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return self.env.step_wait()
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def close(self, **kwargs):
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return self.env.close(**kwargs)
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def close_extras(self, **kwargs):
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return self.env.close_extras(**kwargs)
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def seed(self, seed=None):
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return self.env.seed(seed)
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def call(self, name, *args, **kwargs):
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return self.env.call(name, *args, **kwargs)
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def set_attr(self, name, values):
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return self.env.set_attr(name, values)
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# implicitly forward all other methods and attributes to self.env
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def __getattr__(self, name):
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if name.startswith("_"):
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raise AttributeError(f"attempted to get missing private attribute '{name}'")
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return getattr(self.env, name)
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@property
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def unwrapped(self):
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return self.env.unwrapped
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def __repr__(self):
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return f"<{self.__class__.__name__}, {self.env}>"
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def __del__(self):
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self.env.__del__()
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