Nothing Special   »   [go: up one dir, main page]

CERN Accelerating science

ATLAS Slides
Report number ATL-SOFT-SLIDE-2024-471
Title AtlFast3: Fast Simulation in ATLAS for LHC Run 3 and beyond
Author(s) Corchia, Federico Andrea (Universita e INFN, Bologna (IT)) ; Zhang, Rui (University of Wisconsin Madison (US)) ; Beirer, Joshua Falco (CERN) ; Bandieramonte, Marilena (University of Pittsburgh (US)) ; Schaarschmidt, Jana (University of Washington (US))
Corporate author(s) The ATLAS collaboration
Collaboration ATLAS Collaboration
Submitted to 27th International Conference on Computing in High Energy & Nuclear Physics, Kraków, Pl, 19 - 25 Oct 2024
Submitted by corchia@bo.infn.it on 25 Oct 2024
Subject category Particle Physics - Experiment
Accelerator/Facility, Experiment CERN LHC ; ATLAS
Abstract As we are approaching the high-luminosity era of the LHC, the computational requirements of the ATLAS experiment are expected to increase significantly in the coming years. In particular, the simulation of MC events is immensely computationally demanding, and their limited availability is one of the major sources of systematic uncertainties in many physics analyses. The main bottleneck in the detector simulation is the detailed simulation of electromagnetic and hadronic showers in the ATLAS calorimeter system using Geant4. In order to increase the MC statistics and to leverage the available CPU resources for LHC Run 3, the ATLAS collaboration has recently put into production a refined and significantly improved version of its state-of-the-art fast simulation tool AtlFast3. AtlFast3 uses classical parametric and machine learning based approaches such as Generative Adversarial Networks (GANs) for the fast simulation of LHC events in the ATLAS detector. This talk will present the newly improved version of AtlFast3 that is currently in production for the simulation of Run 3 samples. In addition, ideas and plans for the future of fast simulation in ATLAS will also be discussed.



 记录创建於2024-10-25,最後更新在2024-10-25