elsciRL: Integrating Language Solutions into Reinforcement Learning Problem Settings
elsciRL: Integrating Language Solutions into Reinforcement Learning Problem Settings
We present elsciRL, an open-source Python library to facilitate the application of language solutions on reinforcement learning problems. We demonstrate the potential of our software by extending the Language Adapter with Self-Completing Instruction framework defined in (Osborne, 2024) with the use of LLMs. Our approach can be re-applied to new applications with minimal setup requirements. We provide a novel GUI that allows a user to provide text input for an LLM to generate instructions which it can then self-complete. Empirical results indicate that these instructions \textit{can} improve a reinforcement learning agent's performance. Therefore, we present this work to accelerate the evaluation of language solutions on reward based environments to enable new opportunities for scientific discovery.
Philip Osborne、Danilo S. Carvalho、André Freitas
计算技术、计算机技术
Philip Osborne,Danilo S. Carvalho,André Freitas.elsciRL: Integrating Language Solutions into Reinforcement Learning Problem Settings[EB/OL].(2025-07-11)[2025-07-25].https://arxiv.org/abs/2507.08705.点此复制
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