19–25 Oct 2024
Europe/Zurich timezone

Refining FastSim with Machine Learning

THU 30
24 Oct 2024, 15:18
57m
Exhibition Hall

Exhibition Hall

Poster Track 5 - Simulation and analysis tools Poster session

Speakers

Acelya Deniz Gungordu (Istanbul Technical University (TR)) Dorukhan Boncukcu (Istanbul Technical University (TR))

Description

A growing reliance on the fast Monte Carlo (FastSim) will accompany the high luminosity and detector granularity expected in Phase 2. FastSim is roughly 10 times faster than equivalent GEANT4-based full simulation (FullSim). However, reduced accuracy of the FastSim affects some analysis variables and collections. To improve its accuracy, FastSim is refined using regression-based neural networks trained with ML. The status of FastSim refinement is presented. The results show improved agreement with the FullSim output and an improvement in correlations among output observables and external parameters.

Primary authors

Acelya Deniz Gungordu (Istanbul Technical University (TR)) CMS Collaboration Dorukhan Boncukcu (Istanbul Technical University (TR))

Presentation materials