9–13 May 2022
CERN
Europe/Zurich timezone

Towards a Deep Learning Model for Hadronization

12 May 2022, 11:40
25m
500/1-001 - Main Auditorium (CERN)

500/1-001 - Main Auditorium

CERN

400
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Regular talk Workshop

Speaker

Andrzej Konrad Siodmok (Jagiellonian University (PL))

Description

Hadronization is a complex quantum process whereby quarks and gluons become hadrons. The widely-used models of hadronization in event generators are based on physically-inspired phenomenological models with many free parameters. We propose an alternative approach whereby neural networks are used instead. Deep generative models are highly flexible, differentiable, and compatible with Graphical Processing Unit (GPUs). We make the first step towards a data-driven machine learning-based hadronization model by replacing a compont of the hadronization model within the Herwig event generator (cluster model) with a Generative Adversarial Network (GAN). We show that a GAN is capable of reproducing the kinematic properties of cluster decays. Furthermore, we integrate this model into Herwig to generate entire events that can be compared with the output of the public Herwig simulator as well as with e+e− data.

Based on: https://arxiv.org/abs/2203.12660

Primary authors

Aishik Ghosh (University of California Irvine (US)) Andrzej Konrad Siodmok (Jagiellonian University (PL)) Ben Nachman (Lawrence Berkeley National Lab. (US)) Xiangyang Ju (Lawrence Berkeley National Lab. (US))

Presentation materials