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Status: Maintenance (expect bug fixes and minor updates)

OpenAI Gym

OpenAI Gym is a toolkit for developing and comparing reinforcement learning algorithms. This is the gym open-source library, which gives you access to a standardized set of environments.

See What's New section below

gym makes no assumptions about the structure of your agent, and is compatible with any numerical computation library, such as TensorFlow or Theano. You can use it from Python code, and soon from other languages.

If you're not sure where to start, we recommend beginning with the docs on our site. See also the FAQ.

A whitepaper for OpenAI Gym is available at, and here's a BibTeX entry that you can use to cite it in a publication:

  Author = {Greg Brockman and Vicki Cheung and Ludwig Pettersson and Jonas Schneider and John Schulman and Jie Tang and Wojciech Zaremba},
  Title = {OpenAI Gym},
  Year = {2016},
  Eprint = {arXiv:1606.01540},


There are two basic concepts in reinforcement learning: the environment (namely, the outside world) and the agent (namely, the algorithm you are writing). The agent sends actions to the environment, and the environment replies with observations and rewards (that is, a score).

The core gym interface is Env, which is the unified environment interface. There is no interface for agents; that part is left to you. The following are the Env methods you should know:

  • reset(self): Reset the environment's state. Returns observation.
  • step(self, action): Step the environment by one timestep. Returns observation, reward, done, info.
  • render(self, mode='human'): Render one frame of the environment. The default mode will do something human friendly, such as pop up a window.

Supported systems

We currently support Linux and OS X running Python 2.7 or 3.5 -- 3.7. Windows support is experimental - algorithmic, toy_text, classic_control and atari should work on Windows (see next section for installation instructions); nevertheless, proceed at your own risk.


You can perform a minimal install of gym with:

git clone
cd gym
pip install -e .

If you prefer, you can do a minimal install of the packaged version directly from PyPI:

pip install gym

You'll be able to run a few environments right away:

  • algorithmic
  • toy_text
  • classic_control (you'll need pyglet to render though)

We recommend playing with those environments at first, and then later installing the dependencies for the remaining environments.

Installing everything

To install the full set of environments, you'll need to have some system packages installed. We'll build out the list here over time; please let us know what you end up installing on your platform. Also, take a look at the docker files (py.Dockerfile) to see the composition of our CI-tested images.

On Ubuntu 16.04 and 18.04:

MuJoCo has a proprietary dependency we can't set up for you. Follow the instructions in the mujoco-py package for help.

Once you're ready to install everything, run pip install -e '.[all]' (or pip install 'gym[all]').

Pip version

To run pip install -e '.[all]', you'll need a semi-recent pip. Please make sure your pip is at least at version 1.5.0. You can upgrade using the following: pip install --ignore-installed pip. Alternatively, you can open and install the dependencies by hand.

Rendering on a server

If you're trying to render video on a server, you'll need to connect a fake display. The easiest way to do this is by running under xvfb-run (on Ubuntu, install the xvfb package):

xvfb-run -s "-screen 0 1400x900x24" bash

Installing dependencies for specific environments

If you'd like to install the dependencies for only specific environments, see We maintain the lists of dependencies on a per-environment group basis.


See List of Environments.

For information on creating your own environments, see Creating your own Environments.


See the examples directory.


We are using pytest for tests. You can run them via:


What's new

  • 2019-10-09 (v0.15.3)
    • VectorEnv modifications - unified the VectorEnv api (added reset_async, reset_wait, step_async, step_wait methods to SyncVectorEnv); more flexibility in AsyncVectorEnv workers
  • 2019-08-23 (v0.15.2)
    • More Wrappers - AtariPreprocessing, FrameStack, GrayScaleObservation, FilterObservation, FlattenDictObservationsWrapper, PixelObservationWrapper, TransformReward (thanks @zuoxingdong, @hartikainen)
    • Remove rgb_rendering_tracking logic from mujoco environments (default behavior stays the same for the -v3 environments, rgb rendering returns a view from tracking camera)
    • Velocity goal constraint for MountainCar (thanks @abhinavsagar)
    • Taxi-v2 -> Taxi-v3 (add missing wall in the map to replicate env as describe in the original paper, thanks @kobotics)
  • 2019-07-26 (v0.14.0)
    • Wrapper cleanup
    • Spec-related bug fixes
    • VectorEnv fixes
  • 2019-06-21 (v0.13.1)
    • Bug fix for ALE 0.6 difficulty modes
    • Use narrow range for pyglet versions
  • 2019-06-21 (v0.13.0)
    • Upgrade to ALE 0.6 (atari-py 0.2.0) (thanks @JesseFarebro!)
  • 2019-06-21 (v0.12.6)
    • Added vectorized environments (thanks @tristandeleu!). Vectorized environment runs multiple copies of an environment in parallel. To create a vectorized version of an environment, use gym.vector.make(env_id, num_envs, **kwargs), for instance, gym.vector.make('Pong-v4',16).
  • 2019-05-28 (v0.12.5)
    • fixed Fetch-slide environment to be solvable.
  • 2019-05-24 (v0.12.4)
    • remove pyopengl dependency and use more narrow atari-py and box2d-py versions
  • 2019-03-25 (v0.12.1)
    • rgb rendering in MuJoCo locomotion -v3 environments now comes from tracking camera (so that agent does not run away from the field of view). The old behaviour can be restored by passing rgb_rendering_tracking=False kwarg. Also, a potentially breaking change!!! Wrapper class now forwards methods and attributes to wrapped env.
  • 2019-02-26 (v0.12.0)
    • release mujoco environments v3 with support for gym.make kwargs such as xml_file, ctrl_cost_weight, reset_noise_scale etc
  • 2019-02-06 (v0.11.0)
    • remove gym.spaces.np_random common PRNG; use per-instance PRNG instead.
    • support for kwargs in gym.make
    • lots of bugfixes
  • 2018-02-28: Release of a set of new robotics environments.

  • 2018-01-25: Made some aesthetic improvements and removed unmaintained parts of gym. This may seem like a downgrade in functionality, but it is actually a long-needed cleanup in preparation for some great new things that will be released in the next month.

    • Now your Env and Wrapper subclasses should define step, reset, render, close, seed rather than underscored method names.
    • Removed the board_game, debugging, safety, parameter_tuning environments since they're not being maintained by us at OpenAI. We encourage authors and users to create new repositories for these environments.
    • Changed MultiDiscrete action space to range from [0, ..., n-1] rather than [a, ..., b-1].
    • No more render(close=True), use env-specific methods to close the rendering.
    • Removed scoreboard directory, since site doesn't exist anymore.
    • Moved gym/monitoring to gym/wrappers/monitoring
    • Add dtype to Space.
    • Not using python's built-in module anymore, using gym.logger
  • 2018-01-24: All continuous control environments now use mujoco_py >= 1.50. Versions have been updated accordingly to -v2, e.g. HalfCheetah-v2. Performance should be similar (see openai#834) but there are likely some differences due to changes in MuJoCo.

  • 2017-06-16: Make env.spec into a property to fix a bug that occurs when you try to print out an unregistered Env.

  • 2017-05-13: BACKWARDS INCOMPATIBILITY: The Atari environments are now at v4. To keep using the old v3 environments, keep gym <= 0.8.2 and atari-py <= 0.0.21. Note that the v4 environments will not give identical results to existing v3 results, although differences are minor. The v4 environments incorporate the latest Arcade Learning Environment (ALE), including several ROM fixes, and now handle loading and saving of the emulator state. While seeds still ensure determinism, the effect of any given seed is not preserved across this upgrade because the random number generator in ALE has changed. The *NoFrameSkip-v4 environments should be considered the canonical Atari environments from now on.

  • 2017-03-05: BACKWARDS INCOMPATIBILITY: The configure method has been removed from Env. configure was not used by gym, but was used by some dependent libraries including universe. These libraries will migrate away from the configure method by using wrappers instead. This change is on master and will be released with 0.8.0.

  • 2016-12-27: BACKWARDS INCOMPATIBILITY: The gym monitor is now a wrapper. Rather than starting monitoring as env.monitor.start(directory), envs are now wrapped as follows: env = wrappers.Monitor(env, directory). This change is on master and will be released with 0.7.0.

  • 2016-11-1: Several experimental changes to how a running monitor interacts with environments. The monitor will now raise an error if reset() is called when the env has not returned done=True. The monitor will only record complete episodes where done=True. Finally, the monitor no longer calls seed() on the underlying env, nor does it record or upload seed information.

  • 2016-10-31: We're experimentally expanding the environment ID format to include an optional username.

  • 2016-09-21: Switch the Gym automated logger setup to configure the root logger rather than just the 'gym' logger.

  • 2016-08-17: Calling close on an env will also close the monitor and any rendering windows.

  • 2016-08-17: The monitor will no longer write manifest files in real-time, unless write_upon_reset=True is passed.

  • 2016-05-28: For controlled reproducibility, envs now support seeding (cf #91 and #135). The monitor records which seeds are used. We will soon add seed information to the display on the scoreboard.


A toolkit for developing and comparing reinforcement learning algorithms.







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