To install and use ML-Agents, you need to install Unity, clone this repository and install Python with additional dependencies. Each of the subsections below overviews each step, in addition to a Docker set-up.
Download and install Unity. If you would like to use our Docker set-up (introduced later), make sure to select the Linux Build Support component when installing Unity.
For setting up your environment on Windows, we have created a detailed guide to setting up your env. For Mac and Linux, continue with this guide.
Once installed, you will want to clone the ML-Agents Toolkit GitHub repository.
git clone https://github.com/Unity-Technologies/ml-agents.git
The UnitySDK
subdirectory contains the Unity Assets to add to your projects.
It also contains many example environments
to help you get started.
The ml-agents
subdirectory contains a Python package which provides deep reinforcement
learning trainers to use with Unity environments.
The ml-agents-envs
subdirectory contains a Python API to interface with Unity, which
the ml-agents
package depends on.
The gym-unity
subdirectory contains a package to interface with OpenAI Gym.
In order to use ML-Agents toolkit, you need Python 3.6 along with the dependencies listed in the setup.py file. Some of the primary dependencies include:
- TensorFlow (Requires a CPU w/ AVX support)
- Jupyter
Download and install Python 3.6 if you do not already have it.
If your Python environment doesn't include pip3
, see these
instructions
on installing it.
To install the dependencies and mlagents
Python package, run from the command line:
pip3 install mlagents
Note that this will install ml-agents
from PyPi, not from the cloned repo.
If you installed this correctly, you should be able to run
mlagents-learn --help
, after which you will see the Unity logo and the command line
parameters you can use with mlagents-learn
.
Notes:
- We do not currently support Python 3.7 or Python 3.5.
- If you are using Anaconda and are having trouble with TensorFlow, please see the following link on how to install TensorFlow in an Anaconda environment.
If you intend to make modifications to ml-agents
or ml-agents-envs
, you should install
the packages from the cloned repo rather than from PyPi. To do this, you will need to install
ml-agents
and ml-agents-envs
separately. From the repo's root directory, run:
cd ml-agents-envs
pip3 install -e ./
cd ..
cd ml-agents
pip3 install -e ./
Running pip with the -e
flag will let you make changes to the Python files directly and have those
reflected when you run mlagents-learn
. It is important to install these packages in this order as the
mlagents
package depends on mlagents_envs
, and installing it in the other
order will download mlagents_envs
from PyPi.
If you'd like to use Docker for ML-Agents, please follow this guide.
The Basic Guide page contains several short tutorials on setting up the ML-Agents toolkit within Unity, running a pre-trained model, in addition to building and training environments.
If you run into any problems regarding ML-Agents, refer to our FAQ and our Limitations pages. If you can't find anything please submit an issue and make sure to cite relevant information on OS, Python version, and exact error message (whenever possible).