OpenSpiel is a collection of environments and algorithms for research in general
reinforcement learning and search/planning in games. OpenSpiel supports n-player
(single- and multi- agent) zero-sum, cooperative and general-sum, one-shot and
sequential, strictly turn-taking and simultaneous-move, perfect and imperfect
information games, as well as traditional multiagent environments such as
(partially- and fully- observable) grid worlds and social dilemmas. OpenSpiel
also includes tools to analyze learning dynamics and other common evaluation
metrics. Games are represented as procedural extensive-form games, with some
natural extensions. The core API and games are implemented in C++ and exposed to
Python. Algorithms and tools are written both in C++ and Python. There is also a
branch of pure Swift in the swift
subdirectory.
To try OpenSpiel in Google Colaboratory, please refer to open_spiel/colabs
subdirectory or start here.
Please choose among the following options:
- Installing OpenSpiel
- Introduction to OpenSpiel
- API Overview and First Example
- Overview of Implemented Games
- Overview of Implemented Algorithms
- Developer Guide
- Guidelines and Contributing
- Swift OpenSpiel
- Authors
For a longer introduction to the core concepts, formalisms, and terminology, including an overview of the algorithms and some results, please see OpenSpiel: A Framework for Reinforcement Learning in Games.
If you use OpenSpiel in your research, please cite the paper using the following BibTeX:
@article{LanctotEtAl2019OpenSpiel,
title = {{OpenSpiel}: A Framework for Reinforcement Learning in Games},
author = {Marc Lanctot and Edward Lockhart and Jean-Baptiste Lespiau and
Vinicius Zambaldi and Satyaki Upadhyay and Julien P\'{e}rolat and
Sriram Srinivasan and Finbarr Timbers and Karl Tuyls and
Shayegan Omidshafiei and Daniel Hennes and Dustin Morrill and
Paul Muller and Timo Ewalds and Ryan Faulkner and J\'{a}nos Kram\'{a}r
and Bart De Vylder and Brennan Saeta and James Bradbury and David Ding
and Sebastian Borgeaud and Matthew Lai and Julian Schrittwieser and
Thomas Anthony and Edward Hughes and Ivo Danihelka and Jonah Ryan-Davis},
year = {2019},
eprint = {1908.09453},
archivePrefix = {arXiv},
primaryClass = {cs.LG},
journal = {CoRR},
volume = {abs/1908.09453},
url = {http://arxiv.org/abs/1908.09453},
}