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NovelGym: A Flexible Ecosystem for Hybrid Planning and Learning Agents Designed for Open Worlds

Authors :
Goel, Shivam
Wei, Yichen
Lymperopoulos, Panagiotis
Chura, Klara
Scheutz, Matthias
Sinapov, Jivko
Publication Year :
2024

Abstract

As AI agents leave the lab and venture into the real world as autonomous vehicles, delivery robots, and cooking robots, it is increasingly necessary to design and comprehensively evaluate algorithms that tackle the ``open-world''. To this end, we introduce NovelGym, a flexible and adaptable ecosystem designed to simulate gridworld environments, serving as a robust platform for benchmarking reinforcement learning (RL) and hybrid planning and learning agents in open-world contexts. The modular architecture of NovelGym facilitates rapid creation and modification of task environments, including multi-agent scenarios, with multiple environment transformations, thus providing a dynamic testbed for researchers to develop open-world AI agents.<br />Comment: Accepted at AAMAS-2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.03546
Document Type :
Working Paper