Arrow Research search

Author name cluster

Hyundam Yoo

Possible papers associated with this exact author name in Arrow. This page groups case-insensitive exact name matches and is not a full identity disambiguation profile.

2 papers
1 author row

Possible papers

2

AAAI Conference 2026 System Paper

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

  • Whiyoung Jung
  • Sunghoon Hong
  • Deunsol Yoon
  • Jeonghye Kim
  • Yongjae Shin
  • Suhyun Jung
  • Hyundam Yoo
  • Youngjin Kim

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.

AAMAS Conference 2024 Conference Paper

Naphtha Cracking Center Scheduling Optimization using Multi-Agent Reinforcement Learning

  • Sunghoon Hong
  • Deunsol Yoon
  • Whiyoung Jung
  • Jinsang Lee
  • Hyundam Yoo
  • Jiwon Ham
  • Suhyun Jung
  • Chanwoo Moon

The Naphtha Cracking Center (NCC) is central to petrochemical feedstock production through the intricate process. It consists of receipt stage for unloading naphtha, blending stage for mixing naphtha, and furnace stage for producing marketable products. It is crucial to make an optimal schedule for NCC for profitability and efficiency. Traditionally managed by human experts, challenges arise in predicting complex chemical reactions and navigating real-world complexities. To address these issues, this paper aims to develop autonomous NCC operation using multi-agent reinforcement learning, where each agent is responsible for each stage and collaborates to achieve common objectives, while adhering to real-world constraints. We developed an online web service to allow the staff in LG Chem Daesan NCC facility to obtain an NCC schedule in real-time, and the staff are now operating the facility based on the schedules generated by the online web service.