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![]() * Remove worker Wait() call due to SIGCHLD being ignored * Port _pid_alive to Windows * Show PID as well as TID in glog * Update TensorFlow version for Python 3.8 on Windows * Handle missing Pillow on Windows * Work around dm-tree PermissionError on Windows * Fix some lint errors on Windows with Python 3.8 * Simplify torch requirements * Quiet git clean * Handle finalizer issues * Exit with the signal number * Get rid of wget * Fix some Windows compatibility issues with tests Co-authored-by: Mehrdad <noreply@github.com> |
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train.py |
RLlib: Scalable Reinforcement Learning
RLlib is an open-source library for reinforcement learning that offers both high scalability and a unified API for a variety of applications.
For an overview of RLlib, see the documentation.
If you've found RLlib useful for your research, you can cite the paper as follows:
@inproceedings{liang2018rllib,
Author = {Eric Liang and
Richard Liaw and
Robert Nishihara and
Philipp Moritz and
Roy Fox and
Ken Goldberg and
Joseph E. Gonzalez and
Michael I. Jordan and
Ion Stoica},
Title = {{RLlib}: Abstractions for Distributed Reinforcement Learning},
Booktitle = {International Conference on Machine Learning ({ICML})},
Year = {2018}
}
Development Install
You can develop RLlib locally without needing to compile Ray by using the setup-dev.py script. This sets up links between the rllib
dir in your git repo and the one bundled with the ray
package. When using this script, make sure that your git branch is in sync with the installed Ray binaries (i.e., you are up-to-date on master and have the latest wheel installed.)