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Application of LLMs to Multi-Robot Path Planning and Task Allocation (2507.07302v1)

Published 9 Jul 2025 in cs.AI and cs.RO

Abstract: Efficient exploration is a well known problem in deep reinforcement learning and this problem is exacerbated in multi-agent reinforcement learning due the intrinsic complexities of such algorithms. There are several approaches to efficiently explore an environment to learn to solve tasks by multi-agent operating in that environment, of which, the idea of expert exploration is investigated in this work. More specifically, this work investigates the application of large-LLMs as expert planners for efficient exploration in planning based tasks for multiple agents.

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