Minseok Ryu | Energy and Sustainability | Best Researcher Award
Assist Prof Dr Minseok Ryu, Arizona State University, United States
Dr. Minseok Ryu is an Assistant Professor at Arizona State Universityβs School of Computing and Augmented Intelligence since August 2023 π¨βπ«. He earned his Ph.D. in Industrial and Operations Engineering from the University of Michigan in 2020 π. His research focuses on optimization and machine learning applications in power systems and privacy-preserving federated learning πβ‘. Dr. Ryu has held positions at Argonne National Laboratory and Los Alamos National Laboratory π’. He has received numerous awards, including the 2024 Alliance Fellowship at Mayo Clinic and ASU and multiple research highlights from the DOE-ASCR π.
Publication profile
Education
Research focus
Minseok Ryu’s research primarily focuses on data-driven optimization and privacy-preserving techniques, particularly in federated learning and power systems. His work spans several areas, including robust optimization under uncertainty, privacy-preserving distributed control, and federated learning frameworks. Key applications include improving nurse staffing models, optimizing electric grids against geomagnetic disturbances, and developing secure frameworks for federated learning in biomedical research. Ryu’s contributions are significant in ensuring privacy and robustness in distributed systems and optimization problems. π§ ππ‘ππ©ββοΈ
Publication top notes
Data-Driven Distributionally Robust Appointment Scheduling over Wasserstein Balls
APPFL: Open-Source Software Framework for Privacy-Preserving Federated Learning
A Privacy-Preserving Distributed Control of Optimal Power Flow
An extended formulation of the convex recoloring problem on a tree
Nurse Staffing under Absenteeism: A Distributionally Robust Optimization Approach
Differentially private federated learning via inexact ADMM with multiple local updates
Algorithms for Mitigating the Effect of Uncertain Geomagnetic Disturbances in Electric Grids
Development of an Engineering Education Framework for Aerodynamic Shape Optimization