I have created a custom environment, as per the OpenAI Gym framework; containing step, reset, action, and reward functions. I aim to run OpenAI baselines on this custom environment. But prior to this, the environment has to be registered on OpenAI gym. I would like to know how the custom environment could be registered on OpenAI gym? Also, Should I be modifying the OpenAI baseline codes to incorporate this?


You do not need to modify baselines repo.

Here is a minimal example. Say you have myenv.py, with all the needed functions (step, reset, ...). The name of the class environment is MyEnv, and you want to add it to the classic_control folder. You have to

  • Place myenv.py file in gym/gym/envs/classic_control
  • Add to __init__.py (located in the same folder)

    from gym.envs.classic_control.myenv import MyEnv

  • Register the environment in gym/gym/envs/__init__.py by adding


At registration, you can also add reward_threshold and kwargs (if your class takes some arguments).
You can also directly register the environment in the script you will run (TRPO, PPO, or whatever) instead of doing it in gym/gym/envs/__init__.py.


This is a minimal example to create the LQR environment.

Save the code below in lqr_env.py and place it in the classic_control folder of gym.

import gym
from gym import spaces
from gym.utils import seeding
import numpy as np

class LqrEnv(gym.Env):

    def __init__(self, size, init_state, state_bound):
        self.init_state = init_state
        self.size = size 
        self.action_space = spaces.Box(low=-state_bound, high=state_bound, shape=(size,))
        self.observation_space = spaces.Box(low=-state_bound, high=state_bound, shape=(size,))

    def _seed(self, seed=None):
        self.np_random, seed = seeding.np_random(seed)
        return [seed]

    def _step(self,u):
        costs = np.sum(u**2) + np.sum(self.state**2)
        self.state = np.clip(self.state + u, self.observation_space.low, self.observation_space.high)
        return self._get_obs(), -costs, False, {}

    def _reset(self):
        high = self.init_state*np.ones((self.size,))
        self.state = self.np_random.uniform(low=-high, high=high)
        self.last_u = None
        return self._get_obs()

    def _get_obs(self):
        return self.state

Add from gym.envs.classic_control.lqr_env import LqrEnv to __init__.py (also in classic_control).

In your script, when you create the environment, do

     kwargs={'size' : 1, 'init_state' : 10., 'state_bound' : np.inf},
env = gym.make('Lqr-v0')
  • do you have a tip or example on how to register the environment in the script ((TRPO, PPO, or whatever) instead of doing it in )... – HenryHub Dec 5 '18 at 21:18
  • Im trying to follow all of the steps above but I get an error, gym.error.Error: Attempted to look up malformed environment ID: b'hvac_Env'. (Currently all IDs must be of the form ^(?:[\w:-]+\/)?([\w:.-]+)-v(\d+)$.) – HenryHub Dec 5 '18 at 21:18
  • @HenryHub I never had your error. I have added a minimal example, hope that helps. – Simon Dec 5 '18 at 22:22
  • Thanks for Sharing this @Simon... It worked. The LQR seems quite interesting too, would you ever be able to share some contact info to collaborate? Else I can give you mine.. I am attempting to use this custom Gym env for controlling valve in a piping system to a temperature sensor. I have contact info at the bottom of this blog post about my side project:medium.com/getting-reinforcement-learning-into-the-bas – HenryHub Dec 6 '18 at 15:09

Environment registration process can be found here.

Please go through this example custom environment if you have any more issues.

Refer to this stackoverflow issue for further information.

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