Cargando…

Particle Flow Reconstruction on Heterogeneous Architecture for CMS

The higher instantaneous luminosity expected during the upcoming years of LHC Run 3 operations will impose challenges for CMS event reconstruction, and this will be amplified in the HL-LHC era, where luminosity and pileup rates are expected to be significantly higher. One of the approaches for CMS t...

Descripción completa

Detalles Bibliográficos
Autores principales: Bocci, Andrea, Das, Abhishek, Hatakeyama, Kenichi, Lorkowski, Florian, Missiroli, Marino, Pantaleo, Felice, Samudio, Jonathan Jacob, Saunders, Mark Douglas
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2856766
_version_ 1780977530299219968
author Bocci, Andrea
Das, Abhishek
Hatakeyama, Kenichi
Lorkowski, Florian
Missiroli, Marino
Pantaleo, Felice
Samudio, Jonathan Jacob
Saunders, Mark Douglas
author_facet Bocci, Andrea
Das, Abhishek
Hatakeyama, Kenichi
Lorkowski, Florian
Missiroli, Marino
Pantaleo, Felice
Samudio, Jonathan Jacob
Saunders, Mark Douglas
author_sort Bocci, Andrea
collection CERN
description The higher instantaneous luminosity expected during the upcoming years of LHC Run 3 operations will impose challenges for CMS event reconstruction, and this will be amplified in the HL-LHC era, where luminosity and pileup rates are expected to be significantly higher. One of the approaches for CMS to cope with this challenge is to utilize heterogeneous computing architectures in order to accelerate event reconstruction. In this presentation, we discuss an effort to utilize GPU accelerators for particle flow (PF) reconstruction. The PF algorithm, used for the vast majority of CMS data analyses for event reconstruction, provides a comprehensive list of final-state particle candidates and enables efficient identification and mitigation methods for simultaneous proton-proton collisions (pileup). The PF algorithm consists of multiple steps, and the clustering of calorimeter hits is one of its most time-consuming steps. As a first step toward accelerated PF reconstruction, a GPU version of PF clustering for hadronic showers has been developed. The cluster outputs and computational performance of the GPU-accelerated algorithm are compared to those of the CPU-based implementation.
id cern-2856766
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28567662023-04-25T18:45:58Zhttp://cds.cern.ch/record/2856766engBocci, AndreaDas, AbhishekHatakeyama, KenichiLorkowski, FlorianMissiroli, MarinoPantaleo, FeliceSamudio, Jonathan JacobSaunders, Mark DouglasParticle Flow Reconstruction on Heterogeneous Architecture for CMSDetectors and Experimental TechniquesThe higher instantaneous luminosity expected during the upcoming years of LHC Run 3 operations will impose challenges for CMS event reconstruction, and this will be amplified in the HL-LHC era, where luminosity and pileup rates are expected to be significantly higher. One of the approaches for CMS to cope with this challenge is to utilize heterogeneous computing architectures in order to accelerate event reconstruction. In this presentation, we discuss an effort to utilize GPU accelerators for particle flow (PF) reconstruction. The PF algorithm, used for the vast majority of CMS data analyses for event reconstruction, provides a comprehensive list of final-state particle candidates and enables efficient identification and mitigation methods for simultaneous proton-proton collisions (pileup). The PF algorithm consists of multiple steps, and the clustering of calorimeter hits is one of its most time-consuming steps. As a first step toward accelerated PF reconstruction, a GPU version of PF clustering for hadronic showers has been developed. The cluster outputs and computational performance of the GPU-accelerated algorithm are compared to those of the CPU-based implementation.CMS-CR-2023-043oai:cds.cern.ch:28567662023-03-21
spellingShingle Detectors and Experimental Techniques
Bocci, Andrea
Das, Abhishek
Hatakeyama, Kenichi
Lorkowski, Florian
Missiroli, Marino
Pantaleo, Felice
Samudio, Jonathan Jacob
Saunders, Mark Douglas
Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title_full Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title_fullStr Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title_full_unstemmed Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title_short Particle Flow Reconstruction on Heterogeneous Architecture for CMS
title_sort particle flow reconstruction on heterogeneous architecture for cms
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2856766
work_keys_str_mv AT bocciandrea particleflowreconstructiononheterogeneousarchitectureforcms
AT dasabhishek particleflowreconstructiononheterogeneousarchitectureforcms
AT hatakeyamakenichi particleflowreconstructiononheterogeneousarchitectureforcms
AT lorkowskiflorian particleflowreconstructiononheterogeneousarchitectureforcms
AT missirolimarino particleflowreconstructiononheterogeneousarchitectureforcms
AT pantaleofelice particleflowreconstructiononheterogeneousarchitectureforcms
AT samudiojonathanjacob particleflowreconstructiononheterogeneousarchitectureforcms
AT saundersmarkdouglas particleflowreconstructiononheterogeneousarchitectureforcms