Project Details
Ultra-Fast Event Generation using Modern Neural Networks
Applicant
Professor Dr. Tilman Plehn
Subject Area
Nuclear and Elementary Particle Physics, Quantum Mechanics, Relativity, Fields
Term
since 2024
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 536076313
Particle physics is undergoing a rapid transformation driven by contemporary data science, including modern machine learning (ML) techniques. Applications of such methods are driven by a unique combination of fundamental physics questions with fast first-principle simulations, vast datasets, and full uncertainty control. The keystone in this development and the goal of this proposal are ML-based simulation and analysis tools, combining event generators with simulation-based inference methods. Our ambition is to build the first ML- based matrix-element event generator, opening the era of ultra-fast event generation in high-energy physics, with a vast range of possible applications in phenomenology, data analysis, and interpretation.
DFG Programme
Research Grants
International Connection
Belgium
Cooperation Partners
Professor Gilles Louppe, Ph.D.; Professor Dr. Fabio Maltoni