Talk at PIMIKO 15

Nov 11, 2023 Β· 0 min read
Abstract
Hadronization, a crucial component of event generation, is traditionally simulated using finely-tuned empirical models. While current phenomenological models have achieved significant success in simulating this process, there remain areas where they fall short in accurately describing the underlying physics. In this talk, I will introduce MLHAD, an alternative approach that supplants the empirical model with a surrogate machine learning-based method, thereby facilitating data-trainability. I will delve into the current stage of its development and explore potential future direction.
Date
Nov 11, 2023 12:00 AM
Event
Location

Indiana University