ENGLISH
您所在的位置: 首页» 新闻中心» 讲座预告

【明理讲堂2025年第13期】6-5 香港科技大学商学院吕国栋助理教授 : Supply Chain Visibility: Impact and Value of Real-time Resource Allocation

报告题目:Supply Chain Visibility: Impact and Value of Real-time Resource Allocation

时间:2025年6月5日13:30- 15:00       

地点:中关村主楼418

报告人:吕国栋

报告人国籍:中国

报告人政治面貌: 中共党员

报告人职称:助理教授

报告人工作单位:香港科技大学商学院

报告人简介:

Dr. Guodong Lyu is an Assistant Professor at HKUST Business School, The Hong Kong University of Science and Technology. He has been honored as the Star Faculty at HKUST. He is broadly interested in data-driven decision-making with applications in supply chains, urban transportation, logistics, and public sector issues. Methodologically, his focus lies in online optimization, distributionally robust optimization, and machine learning. His research has been published in journals including Management Science, Operations Research, and Manufacturing & Service Operations Management. His research achievements have been recognized through paper awards such as Finalist in the 2019 INFORMS George B. Dantzig Dissertation Award Competition, 2024 Outstanding Paper Award from the Urban SIG of the INFORMS TSL Society, and Finalist in the 2024 Best Student Paper Competition from the College of SCM of the POMS.

报告内容简介:

In recent years, we have seen a surge of interest in supply chain visibility. Under this paradigm, decision-makers are able to trace the real-time data (e.g., stock level, resource allocation flow) along the entire supply chain so that they can identify the decision-making bottlenecks and take actions more efficiently. Motivated by the Gaze Heuristic, we propose a target-based online planning framework to deal with real-time resource allocation problems in both stationary and nonstationary environments. Leveraging on the Blackwell's Approachability Theorem and Online Convex Optimization tools, we characterize the near-optimal performance guarantee of our online solution in comparison with the offline optimal solution, and explore the properties of different allocation policies. We use synthetic and real-world data from various industries, from supply chain planning in manufacturing, to resource deployment in ride-sharing markets, to examine the impact and value of these real-time solutions in practice.

(承办:管理工程系、科研与学术交流中心)

TOP