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Search by triplet: An efficient local track reconstruction algorithm for parallel architectures

Millions of particles are collided every second at the LHCb detector placed inside the Large Hadron Collider at CERN. The particles produced as a result of these collisions pass through various detecting devices which will produce a combined raw data rate of up to 40 Tbps by 2021. These data will be...

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Autores principales: Cámpora Pérez, Daniel Hugo, Neufeld, Niko, Riscos Núñez, Agustín
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1016/j.jocs.2021.101422
http://cds.cern.ch/record/2809707
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author Cámpora Pérez, Daniel Hugo
Neufeld, Niko
Riscos Núñez, Agustín
author_facet Cámpora Pérez, Daniel Hugo
Neufeld, Niko
Riscos Núñez, Agustín
author_sort Cámpora Pérez, Daniel Hugo
collection CERN
description Millions of particles are collided every second at the LHCb detector placed inside the Large Hadron Collider at CERN. The particles produced as a result of these collisions pass through various detecting devices which will produce a combined raw data rate of up to 40 Tbps by 2021. These data will be fed through a data acquisition system which reconstructs individual particles and filters the collision events in real time. This process will occur in a heterogeneous farm employing exclusively off-the-shelf CPU and GPU hardware, in a two stage process known as High Level Trigger. The reconstruction of charged particle trajectories in physics detectors, also referred to as track reconstruction or tracking, determines the position, charge and momentum of particles as they pass through detectors. The Vertex Locator subdetector (VELO) is the closest such detector to the beamline, placed outside of the region where the LHCb magnet produces a sizable magnetic field. It is used to reconstruct straight particle trajectories which serve as seeds for reconstruction of other subdetectors and to locate collision vertices. The VELO subdetector will detect up to $10^9$ particles every second, which need to be reconstructed in real time in the High Level Trigger. We present Search by triplet, an efficient track reconstruction algorithm. Our algorithm is designed to run efficiently across parallel architectures. We extend on previous work and explain the algorithm evolution since its inception. We show the scaling of our algorithm under various situations, and analyse its amortized time in terms of complexity for each of its constituent parts and profile its performance. Our algorithm is the current state-of-the-art in VELO track reconstruction on SIMT architectures, and we qualify its improvements over previous results.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28097072023-06-29T04:25:44Zdoi:10.1016/j.jocs.2021.101422http://cds.cern.ch/record/2809707engCámpora Pérez, Daniel HugoNeufeld, NikoRiscos Núñez, AgustínSearch by triplet: An efficient local track reconstruction algorithm for parallel architecturesDetectors and Experimental TechniquesComputing and ComputersParticle Physics - ExperimentMillions of particles are collided every second at the LHCb detector placed inside the Large Hadron Collider at CERN. The particles produced as a result of these collisions pass through various detecting devices which will produce a combined raw data rate of up to 40 Tbps by 2021. These data will be fed through a data acquisition system which reconstructs individual particles and filters the collision events in real time. This process will occur in a heterogeneous farm employing exclusively off-the-shelf CPU and GPU hardware, in a two stage process known as High Level Trigger. The reconstruction of charged particle trajectories in physics detectors, also referred to as track reconstruction or tracking, determines the position, charge and momentum of particles as they pass through detectors. The Vertex Locator subdetector (VELO) is the closest such detector to the beamline, placed outside of the region where the LHCb magnet produces a sizable magnetic field. It is used to reconstruct straight particle trajectories which serve as seeds for reconstruction of other subdetectors and to locate collision vertices. The VELO subdetector will detect up to $10^9$ particles every second, which need to be reconstructed in real time in the High Level Trigger. We present Search by triplet, an efficient track reconstruction algorithm. Our algorithm is designed to run efficiently across parallel architectures. We extend on previous work and explain the algorithm evolution since its inception. We show the scaling of our algorithm under various situations, and analyse its amortized time in terms of complexity for each of its constituent parts and profile its performance. Our algorithm is the current state-of-the-art in VELO track reconstruction on SIMT architectures, and we qualify its improvements over previous results.Millions of particles are collided every second at the LHCb detector placed inside the Large Hadron Collider at CERN. The particles produced as a result of these collisions pass through various detecting devices which will produce a combined raw data rate of up to 40 Tbps by 2021. These data will be fed through a data acquisition system which reconstructs individual particles and filters the collision events in real time. This process will occur in a heterogeneous farm employing exclusively off-the-shelf CPU and GPU hardware, in a two stage process known as High Level Trigger. The reconstruction of charged particle trajectories in physics detectors, also referred to as track reconstruction or tracking, determines the position, charge and momentum of particles as they pass through detectors. The Vertex Locator subdetector (VELO) is the closest such detector to the beamline, placed outside of the region where the LHCb magnet produces a sizable magnetic field. It is used to reconstruct straight particle trajectories which serve as seeds for reconstruction of other subdetectors and to locate collision vertices. The VELO subdetector will detect up to 1000 million particles every second, which need to be reconstructed in real time in the High Level Trigger. We present Search by triplet, an efficient track reconstruction algorithm. Our algorithm is designed to run efficiently across parallel architectures. We extend on previous work and explain the algorithm evolution since its inception. We show the scaling of our algorithm under various situations, and analyze its amortized time in terms of complexity for each of its constituent parts and profile its performance. Our algorithm is the current state-of-the-art in VELO track reconstruction on SIMT architectures, and we qualify its improvements over previous results.arXiv:2207.03936oai:cds.cern.ch:28097072022-07-08
spellingShingle Detectors and Experimental Techniques
Computing and Computers
Particle Physics - Experiment
Cámpora Pérez, Daniel Hugo
Neufeld, Niko
Riscos Núñez, Agustín
Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title_full Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title_fullStr Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title_full_unstemmed Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title_short Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
title_sort search by triplet: an efficient local track reconstruction algorithm for parallel architectures
topic Detectors and Experimental Techniques
Computing and Computers
Particle Physics - Experiment
url https://dx.doi.org/10.1016/j.jocs.2021.101422
http://cds.cern.ch/record/2809707
work_keys_str_mv AT camporaperezdanielhugo searchbytripletanefficientlocaltrackreconstructionalgorithmforparallelarchitectures
AT neufeldniko searchbytripletanefficientlocaltrackreconstructionalgorithmforparallelarchitectures
AT riscosnunezagustin searchbytripletanefficientlocaltrackreconstructionalgorithmforparallelarchitectures