I want to play with the OpenAI gyms in a notebook, with the gym being rendered inline.

Here's a basic example:

import matplotlib.pyplot as plt
import gym
from IPython import display
%matplotlib inline

env = gym.make('CartPole-v0')

for i in range(25):
   env.step(env.action_space.sample()) # take a random action


This works, and I get see the gym in the notebook:

gym in notebook

But! it also opens an interactive window that shows precisely the same thing. I don't want this window to be open:

interactive window

  • Same behavior if you restart your kernel and put %matplotlib inline after env.reset()? Not all that familiar with OpenAI gym, but env.reset() sounds like it could (potentially) be blasting over imports or something... – Matt Messersmith Oct 9 '18 at 19:50
  • @MattMessersmith nope, that doesn't change anything :-/ – MasterScrat Oct 9 '18 at 19:55
  • You're on macOS? I can test this out later today and see if I can reproduce the behavior. – Matt Messersmith Oct 9 '18 at 19:57
  • @MattMessersmith yes on macOS with Python 3.6.6 – MasterScrat Oct 9 '18 at 19:59

I made a working example here that you can fork: https://kyso.io/eoin/openai-gym-jupyter with two examples of rendering in Jupyter - one as an mp4, and another as a realtime gif.

The .mp4 example is quite simple.

import gym
from gym import wrappers

env = gym.make('SpaceInvaders-v0')
env = wrappers.Monitor(env, "./gym-results", force=True)
for _ in range(1000):
    action = env.action_space.sample()
    observation, reward, done, info = env.step(action)
    if done: break

Then in a new cell

import io
import base64
from IPython.display import HTML

video = io.open('./gym-results/openaigym.video.%s.video000000.mp4' % env.file_infix, 'r+b').read()
encoded = base64.b64encode(video)
    <video width="360" height="auto" alt="test" controls><source src="data:video/mp4;base64,{0}" type="video/mp4" /></video>'''
  • 3
    This doesn't work for me. Did you try with CartPole-v0? The window still opens for me. This problem doesn't occur with SpaceInvaders-v0, but that's not environment I want to use, so this is not relevant. – MasterScrat Aug 7 '19 at 11:10

This worked for me in Ubuntu 18.04 LTS, to render gym locally. But, I believe it will work even in remote Jupyter Notebook servers.

First, run the following installations in Terminal:

pip install gym
python -m pip install pyvirtualdisplay
pip3 install box2d
sudo apt-get install xvfb

That's just it. Use the following snippet to configure how your matplotlib should render :

import matplotlib.pyplot as plt
from pyvirtualdisplay import Display
display = Display(visible=0, size=(1400, 900))

is_ipython = 'inline' in plt.get_backend()
if is_ipython:
    from IPython import display


# Load the gym environment

import gym
import matplotlib.pyplot as plt
%matplotlib inline

env = gym.make('LunarLander-v2')

# Let's watch how an untrained agent moves around

state = env.reset()
img = plt.imshow(env.render(mode='rgb_array'))
for j in range(200):
#     action = agent.act(state)
    action = random.choice(range(4))
    state, reward, done, _ = env.step(action)
    if done:

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.