Deep Learning for Non-Perturbative Quantum Chromodynamics
- Date
- December 4 (Wed) at 15:00 - 16:30, 2024 (JST)
- Speaker
-
- Fu-Peng Li (PhD Candidate, Key Laboratory of Quark and Lepton Physics (MOE) and Institute of Particle Physics, Central China Normal University, China)
- Venue
- Language
- English
- Host
- Lingxiao Wang
Machine learning, particularly deep learning, is revolutionizing research across diverse disciplines, including physics. In this seminar, we explore the application of deep learning techniques to tackle challenges in non-perturbative Quantum Chromodynamics (QCD), one of the most complex areas in fundmental physics. I will present our preliminary explorations in this interdisciplinary field, focusing on: (i) identifying the equations of state for nuclear matter, (ii) developing a neural network-based quasi-particle model for QCD equations of state, (iii) extracting parton fragmentation functions, and (iv) determining heavy quark interaction potentials.
Fu-Peng Li s a Ph.D. candidate in Theoretical Physics at Central China Normal University(CCNU) with an expected graduation in June 2025. His research interests lie at the intersection of nuclear physics and machine learning, with a focus on auto-differentiation, physics-informed neural networks (PINNs) for inverse problems, and the application of machine learning to non-perturbative Quantum Chromodynamics (QCD).
References
- Ou-Yang Luo, Xun Chen, Fu-Peng Li, Xiao-Hua Li, Kai Zhou, Neural Network Modeling of Heavy-Quark Potential from Holography, arXiv: 2408.03784
- Fu-Peng Li, Hong-Liang Lü, Long-Gang Pang, Guang-You Qin, Deep-learning quasi-particle masses from QCD equation of state, Phys. Lett. B. 844,138088 (2023), doi: 10.1016/j.physletb.2023.138088, arXiv: 2211.07994
- Yongjia Wang, Fupeng Li, Qingfeng Li, Hongliang Lyu, Kai Zhou, Finding signatures of the nuclear symmetry energy in heavy-ion collisions with deep learning, Phys.Lett.B 822, 136669 (2021), doi: 10.1016/j.physletb.2021.136669, arXiv: 2107.11012
This is a closed event for scientists. Non-scientists are not allowed to attend. If you are not a member or related person and would like to attend, please contact us using the inquiry form. Please note that the event organizer or speaker must authorize your request to attend.