Poster
in
Workshop: Machine Learning and the Physical Sciences
Normalizing Flows for Fragmentation and Hadronization
Ahmed Youssef · Philip Ilten · Tony Menzo · Jure Zupan · Manuel Szewc · Stephen Mrenna · Michael K. Wilkinson
Hadronization is an important step in Monte Carlo event generators, where quarks and gluons are bound into physically observable hadrons. Previous work has demonstrated first steps towards a machine-learning (ML) based simulation of the hadronization process. However, the presented architectures are limited to producing only pions as hadron emissions. In this work we use normalizing flows to overcome this limitation. We use masked autoregressive flows as a generator for the kinematic distributions in the hadronization pipeline. We condition NFs on different hadron masses and initial configuration energies, which allows for the emission of hadrons with arbitrary masses. The NF generated kinematic distributions match the Pythia generated ones well. In this paper we present our preliminary results.