The Neural MMO Platform for Massively Multiagent Research
- URL: http://arxiv.org/abs/2110.07594v1
- Date: Thu, 14 Oct 2021 17:54:49 GMT
- Title: The Neural MMO Platform for Massively Multiagent Research
- Authors: Joseph Suarez, Yilun Du, Clare Zhu, Igor Mordatch, Phillip Isola
- Abstract summary: Neural MMO is a research platform that combines large agent populations, long time horizons, open-ended tasks, and modular game systems.
We present Neural MMO as free and open source software with active support, ongoing development, documentation, and additional training, logging, and visualization tools.
- Score: 49.51549968445566
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Neural MMO is a computationally accessible research platform that combines
large agent populations, long time horizons, open-ended tasks, and modular game
systems. Existing environments feature subsets of these properties, but Neural
MMO is the first to combine them all. We present Neural MMO as free and open
source software with active support, ongoing development, documentation, and
additional training, logging, and visualization tools to help users adapt to
this new setting. Initial baselines on the platform demonstrate that agents
trained in large populations explore more and learn a progression of skills. We
raise other more difficult problems such as many-team cooperation as open
research questions which Neural MMO is well-suited to answer. Finally, we
discuss current limitations of the platform, potential mitigations, and plans
for continued development.
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