AgentOdyssey: Open-Ended Long-Horizon Text Game Generation for Test-Time Continual Learning Agents
Abstract
AgentOdyssey evaluates test-time continual learning agents through procedurally generated text games, measuring learning, memory, exploration, and planning capabilities in continuous, long-horizon settings.
For agents to learn continuously from interaction with the world at test time, they must be able to explore effectively, acquire new world knowledge and skills, retain relevant episodic experiences, and plan over long horizons. To evaluate these key abilities of test-time continual learning agents, we introduce AgentOdyssey, a novel evaluation framework that procedurally generates open-ended text games with rich entities, world dynamics, and long-horizon tasks. Critically, AgentOdyssey goes beyond the conventional machine learning assumption that learning does not occur at test time by placing agents in a continuous, long-horizon setting that interleaves learning and inference throughout deployment. We further propose a multifaceted evaluation methodology that measures not only game progress but also offers diagnostic tests on world knowledge acquisition, episodic memory, object and action exploration, action diversity, and model cost. We evaluate diverse agent paradigms in the generated games. Our experimental results reveal critical limits in agents' key abilities, as well as factors that influence their meaningful horizon. Although performance scales with stronger base models, even the top agent remains far below human performance, leaving substantial headroom for improvement. Among agent mechanisms, we find that short-term memory benefits multiple agent paradigms and is an important component of agent test-time training.
Community
This paper introduces AgentOdyssey, an evaluation framework for test-time continual learning agents in open-ended, long-horizon text games. It is relevant to the Hugging Face community because it provides diagnostic evaluations of agent exploration, episodic memory, world knowledge acquisition, skill learning, and long-horizon planning. The findings highlight key limitations of current LLM-based agents and open challenges in continual learning at deployment time.
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