Research Fields
Particle and Nuclear Physics, Machine Learning, AI for Science
Appointment History
2024/03/01 - 2025/03/31Research Scientist, RIKEN Interdisciplinary Theoretical and Mathematical Sciences Program (iTHEMS)
2025/04/01 - Research Scientist, Division of Fundamental Mathematical Science, RIKEN Center for Interdisciplinary Theoretical and Mathematical Sciences (iTHEMS)
Other Affiliations
Assistant Professor, Institute for Physics of Intelligence, Graduate School of Science, The University of Tokyo

Self-introduction

Hello everyone! My name is Lingxiao Wang (王 凌霄). My research ambitiously bridges the fields of machine learning and physics, with a particular focus on using deep learning techniques, such as deep neural networks (DNNs) and generative AI, to explore QCD matter with physics models and lattice calculations. Beyond traditional boundaries, my work extends to pioneering applications of AI for Science, such as the automating scientific discovery, medical AI, and the analysis of collective behavior.

My academic journey in physics commenced with a Ph.D. at Tsinghua University, China(2015-2020), where I investigated quark matter under extreme conditions. Concurrently, I was a visiting Ph.D. student at the University of Tokyo, Japan(2018-2019), focusing on chiral matter. During my postdoctoral position at the Frankfurt Institute for Advanced Studies(FIAS), Germany(2020-2023), I honed my expertise in applying machine learning to physical sciences, and simultaneously held a joint position as a Research Assistant at Insitute of Physics in Goethe University(2021-2023), where I applied machine learning to THz physics. I was also a Visiting Scholar at the Institute of Modern Physics, Fudan University(2023), working on machine learning applications in particle and nuclear physics.

For many years, I have organized a series of "Machine Learning Physics" seminars and learning clubs, providing an inclusive space for scientists interested in AI. I am especially enthusiastic about knowledge sharing and discussions that pave the way for interdisciplinary topics. My door (Main Building 249) is always open for anyone who wants to drink a cup of coffee/tea with me!

Related Events

Generative Models for Statistical Field Theories

June 25 (Wed) 15:00 - 16:00, 2025 Seminar DEEP-IN Seminar

Identifying Lightning Structures and Predicting Cloud Properties

June 18 (Wed) 15:00 - 16:00, 2025 Seminar DEEP-IN Seminar

Collective Behaviors and Deep Learning Applications

June 11 (Wed) 15:00 - 16:00, 2025 Seminar DEEP-IN Seminar

Solving Inverse Problems with Physics-Driven Deep Learning

June 4 (Wed) 15:00 - 16:00, 2025 Seminar DEEP-IN Seminar

Related News