The Multi-Agent Reinforcement Learning in MalmÖ (MARLÖ) Competition
Diego Perez-Liebana
Katja Hofmann
Sharada Mohanty
Noburu Kuno
André Kramer
Sam Devlin
Raluca D. Gaina
Daniel Ionita

Abstract
Learning in multi-agent scenarios is a fruitful research direction, but current approaches still show scalability problems in multiple games with general reward settings and different opponent types. The Multi-Agent Reinforcement Learning in MalmÖ (MARLÖ) competition is a new challenge that proposes research in this domain using multiple 3D games. The goal of this contest is to foster research in general agents that can learn across different games and opponent types, proposing a challenge as a milestone in the direction of Artificial General Intelligence.
View on arXiv@article{perez-liebana2025_1901.08129, title={ The Multi-Agent Reinforcement Learning in MalmÖ (MARLÖ) Competition }, author={ Diego Perez-Liebana and Katja Hofmann and Sharada Prasanna Mohanty and Noboru Kuno and Andre Kramer and Sam Devlin and Raluca D. Gaina and Daniel Ionita }, journal={arXiv preprint arXiv:1901.08129}, year={ 2025 } }
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