* TQC support for multienv * Add optional layer norm for TQC * Add layer nprm for all policies * Revert "Add layer nprm for all policies" This reverts commit 1306c3c64eb12613464982c66cb416a3bbc66285. * Revert "Add optional layer norm for TQC" This reverts commit 200222e3a8878007aa6032d540ae74274a4d0788. * Add experimental support to train off-policy algorithms with multiple envs * Bump version * Update version |
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README.md
Stable-Baselines3 - Contrib (SB3-Contrib)
Contrib package for Stable-Baselines3 - Experimental reinforcement learning (RL) code. "sb3-contrib" for short.
What is SB3-Contrib?
A place for RL algorithms and tools that are considered experimental, e.g. implementations of the latest publications. Goal is to keep the simplicity, documentation and style of stable-baselines3 but for less matured implementations.
Why create this repository?
Over the span of stable-baselines and stable-baselines3, the community has been eager to contribute in form of better logging utilities, environment wrappers, extended support (e.g. different action spaces) and learning algorithms.
However sometimes these utilities were too niche to be considered for stable-baselines or proved to be too difficult to integrate well into the existing code without creating a mess. sb3-contrib aims to fix this by not requiring the neatest code integration with existing code and not setting limits on what is too niche: almost everything remotely useful goes! We hope this allows us to provide reliable implementations following stable-baselines usual standards (consistent style, documentation, etc) beyond the relatively small scope of utilities in the main repository.
Features
See documentation for the full list of included features.
RL Algorithms:
- Truncated Quantile Critics (TQC)
- Quantile Regression DQN (QR-DQN)
- PPO with invalid action masking (MaskablePPO)
Gym Wrappers:
Documentation
Documentation is available online: https://sb3-contrib.readthedocs.io/
Installation
To install Stable Baselines3 contrib with pip, execute:
pip install sb3-contrib
We recommend to use the master version of Stable Baselines3.
To install Stable Baselines3 master version:
pip install git+https://github.com/DLR-RM/stable-baselines3
To install Stable Baselines3 contrib master version:
pip install git+https://github.com/Stable-Baselines-Team/stable-baselines3-contrib
How To Contribute
If you want to contribute, please read CONTRIBUTING.md guide first.
Citing the Project
To cite this repository in publications (please cite SB3 directly):
@article{stable-baselines3,
author = {Antonin Raffin and Ashley Hill and Adam Gleave and Anssi Kanervisto and Maximilian Ernestus and Noah Dormann},
title = {Stable-Baselines3: Reliable Reinforcement Learning Implementations},
journal = {Journal of Machine Learning Research},
year = {2021},
volume = {22},
number = {268},
pages = {1-8},
url = {http://jmlr.org/papers/v22/20-1364.html}
}