RL-Studio: A System for Multi-Phase Reinforcement Learning Experimentation

Authors

  • Whiyoung Jung LG AI Research
  • Sunghoon Hong LG AI Research
  • Deunsol Yoon LG AI Research
  • Jeonghye Kim KAIST
  • Yongjae Shin KAIST
  • Suhyun Jung LG AI Research
  • Hyundam Yoo LG AI Research
  • Youngjin Kim LG AI Research
  • Chanwoo Moon LG AI Research
  • Woohyung Lim LG AI Research
  • Soonyoung Lee LG AI Research
  • Kanghoon Lee LG AI Research

DOI:

https://doi.org/10.1609/aaai.v40i48.42358

Abstract

Reinforcement learning (RL) has evolved beyond monolithic training, yet existing frameworks remain limited to single algorithms or simple offline-to-online transitions. We present multi-phase RL, a framework that orchestrates multiple learning phases for continual policy improvement. It enables efficient fine-tuning of pretrained policies with new data and smooth adaptation from simulation to real-world environments. To support this paradigm, we introduce RL-Studio, a platform that addresses key implementation barriers, including neural architecture mismatches, parameter transfer complexities, and experiment management overhead. It provides phase orchestration, transition-point monitoring, and full experiment lineage tracking. We demonstrate the effectiveness of multi-phase RL through representative scenarios and highlight RL-Studio’s capabilities.

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Published

2026-03-14

How to Cite

Jung, W., Hong, S., Yoon, D., Kim, J., Shin, Y., Jung, S., … Lee, K. (2026). RL-Studio: A System for Multi-Phase Reinforcement Learning Experimentation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(48), 41616–41618. https://doi.org/10.1609/aaai.v40i48.42358