

[1] Radaideh, M. I., et al. "Physics-informed reinforcement learning optimization of nuclear assembly design." Nuclear Engineering and Design 372 (2021): 110966.
[2] Radaideh, M. I., Shirvan, K. (2021). Rule-based reinforcement learning methodology to inform evolutionary algorithms for constrained optimization of engineering applications. Knowledge-Based Systems, 217, 106836.
Majdi I. Radaideh has recently started his postdoctoral appointment at the Oak Ridge National Laboratory in November 2021, conducting research on autonomous control, anomaly detection, and uncertainty quantification to reduce mechanical/electrical system interruptions of the Spallation Neutron Source. Before that he was a postdoctoral associate and then research scientist at MIT. He completed his M.S. and Ph.D. in nuclear engineering from the University of Illinois at Urbana Champaign. Radaideh’s research focuses on the intersection between reactor design, nuclear Multiphysics modeling and simulation, advanced computational methods, and machine learning algorithms to drive the advanced reactor research and improve the sustainability of the current reactor fleet. Radaideh has extensive skills in the development and usage of nuclear codes, programming experience, parallel computing, software engineering, and data science platforms. Radaideh is the leading author of +25 journal articles, +50 research publications, has won +10 awards, and is holding minors in computational science and engineering and applied statistics. In free times, Majdi likes to play basketball, jogging, and watch NBA games; he is a loyal Miami Heat fan!