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Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger

The large increase in luminosity planned for the High Luminosity LHC gives rise to many challenges for the trigger and data acquisition system. Due to the unprecedented number of particle hits in the tracker system, ATLAS is putting effort to include multithread computation devices in the trigger ar...

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Autor principal: Soflau, Alina-Mariana
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2873556
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author Soflau, Alina-Mariana
author_facet Soflau, Alina-Mariana
author_sort Soflau, Alina-Mariana
collection CERN
description The large increase in luminosity planned for the High Luminosity LHC gives rise to many challenges for the trigger and data acquisition system. Due to the unprecedented number of particle hits in the tracker system, ATLAS is putting effort to include multithread computation devices in the trigger architecture. Moreover, track reconstruction algorithms must have stable perfor- mance with respect to pileup, in order to ensure the computing requirements of the experiment. In this note a study of the performance of a fast track reconstruction algorithm with the new ATLAS Inner Traker geometry is presented.
id cern-2873556
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28735562023-10-03T21:22:42Zhttp://cds.cern.ch/record/2873556engSoflau, Alina-MarianaUtilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level TriggerParticle Physics - ExperimentThe large increase in luminosity planned for the High Luminosity LHC gives rise to many challenges for the trigger and data acquisition system. Due to the unprecedented number of particle hits in the tracker system, ATLAS is putting effort to include multithread computation devices in the trigger architecture. Moreover, track reconstruction algorithms must have stable perfor- mance with respect to pileup, in order to ensure the computing requirements of the experiment. In this note a study of the performance of a fast track reconstruction algorithm with the new ATLAS Inner Traker geometry is presented.CERN-STUDENTS-Note-2023-179oai:cds.cern.ch:28735562023-10-03
spellingShingle Particle Physics - Experiment
Soflau, Alina-Mariana
Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title_full Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title_fullStr Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title_full_unstemmed Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title_short Utilisation of GPUs for the ATLAS trigger software and implementation of machine-learning algorithms for muon reconstruction in the ATLAS High-Level Trigger
title_sort utilisation of gpus for the atlas trigger software and implementation of machine-learning algorithms for muon reconstruction in the atlas high-level trigger
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2873556
work_keys_str_mv AT soflaualinamariana utilisationofgpusfortheatlastriggersoftwareandimplementationofmachinelearningalgorithmsformuonreconstructionintheatlashighleveltrigger