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arxiv 2210.13708 v4 pith:T27X6MSG submitted 2022-10-11 cs.LG cs.AIcs.MA

MARLlib: A Scalable and Efficient Multi-agent Reinforcement Learning Library

classification cs.LG cs.AIcs.MA
keywords marllibmulti-agentlibraryalgorithmlearningchallengegithubmechanisms
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A significant challenge facing researchers in the area of multi-agent reinforcement learning (MARL) pertains to the identification of a library that can offer fast and compatible development for multi-agent tasks and algorithm combinations, while obviating the need to consider compatibility issues. In this paper, we present MARLlib, a library designed to address the aforementioned challenge by leveraging three key mechanisms: 1) a standardized multi-agent environment wrapper, 2) an agent-level algorithm implementation, and 3) a flexible policy mapping strategy. By utilizing these mechanisms, MARLlib can effectively disentangle the intertwined nature of the multi-agent task and the learning process of the algorithm, with the ability to automatically alter the training strategy based on the current task's attributes. The MARLlib library's source code is publicly accessible on GitHub: \url{https://github.com/Replicable-MARL/MARLlib}.

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