Baconian [beˈkonin] is a toolbox for model-based reinforcement learning with user-friendly experiment setting-up, logging and visualization modules developed by CAP. We aim to develop a flexible, re-usable and modularized framework that can allow the users to easily set-up their model-based RL experiments by reusing modules we provide.
You can easily install by (with python 3.5/3.6/3.7, Ubuntu 16.04/18.04):
# install tensorflow with/without GPU based on your machine
pip install tensorflow-gpu==1.15.2
# or
pip install tensorflow==1.15.2
pip install baconian
For more advance usage like using Mujoco environment, please refer to our documentation page.
- 2020.04.29 v0.2.2 Fix some memory issues in SampleData module, and simplify some APIs.
- 2020.02.10 We are including external reward & terminal function of Gym/mujoco tasks with well-written documents.
- 2020.01.30 Update some dependent packages versions, and release some preliminary benchmark results with hyper-parameters.
For previous news, please go here
We support python 3.5, 3.6, and 3.7 with Ubuntu 16.04 or 18.04. Documentation is available at http://baconian-public.readthedocs.io/
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Thanks to the following open-source projects:
- garage: https://github.com/rlworkgroup/garage
- rllab: https://github.com/rll/rllab
- baselines: https://github.com/openai/baselines
- gym: https://github.com/openai/gym
- trpo: https://github.com/pat-coady/trpo
If you find Baconian is useful for your research, please consider cite our demo paper here:
@article{
linsen2019baconian,
title={Baconian: A Unified Opensource Framework for Model-Based Reinforcement Learning},
author={Linsen, Dong and Guanyu, Gao and Yuanlong, Li and Yonggang, Wen},
journal={arXiv preprint arXiv:1904.10762},
year={2019}
}
If you find any bugs on issues, please open an issue or send an email to me ([email protected]) with detailed information. I appreciate your help!