Job Description

Job Title:  Research Fellow (Operations Research & Analytics)
University-Level Unit:  Inst of Operations Research & Analytics
Faculty/Department-Level Unit:  Inst of Operations Research & Analytics
Employee Category:  Research Staff
Location_ONB:  Kent Ridge Campus
Posting Start Date:  11/05/2026

About the Role

The Institute of Operations Research and Analytics is seeking a Research Fellow to conduct high-impact research at the intersection of data-driven decision making, robust control, and online learning, with a strong interest in real-world deployment and decision support. Experience in financial applications—including dynamic investment and portfolio choice problems—is desirable.

 

Key responsibilities

  • Conduct independent and collaborative research in areas including:
    • data-driven decision making and sequential decision problems
    • robust / distributionally robust optimization and robust control
    • online learning, bandits, and reinforcement learning for operations/finance
  • Develop theoretical models and algorithms, and validate them via simulation and/or real datasets.
  • Apply methodologies to financial decision-making problems (e.g., dynamic asset allocation, portfolio optimization, risk-sensitive control), where relevant.
  • Publish in top-tier journals and conferences; contribute to research proposals and reports.
  • Collaborate with faculty, research staff, and external stakeholders/industry partners.
  • Support mentoring of graduate students and contribute to the Institute’s research activities (seminars, reading groups, workshops).

Requirements

  • PhD (completed or near completion) in Operations Research, Industrial Engineering, Computer Science, Statistics, Applied Mathematics, Electrical Engineering, or a related field.
  • Demonstrated research capability in one or more of the following:
    • data-driven optimization / decision making
    • robust control / stochastic control
    • online learning / bandits / reinforcement learning
  • Strong foundations in optimization, probability, and statistical learning.
  • Solid programming skills (e.g., Python/Julia/Matlab; experience with ML/optimization libraries is a plus).
  • Track record (or strong potential) for high-quality publications and collaborative research.