CERN Accelerating science

Article
Report number arXiv:2407.12119
Title Graph Neural Network-Based Track Finding in the LHCb Vertex Detector
Author(s) Correia, Anthony (LPNHE, Paris) ; Giasemis, Fotis I. (LPNHE, Paris ; LIP6, Paris) ; Garroum, Nabil (LPNHE, Paris) ; Gligorov, Vladimir Vava (LPNHE, Paris ; CERN) ; Granado, Bertrand (LIP6, Paris)
Publication 2024-12-17
Imprint 2024-07-16
Number of pages 17
In: JINST 19 (2024) P12022
DOI 10.1088/1748-0221/19/12/P12022
Subject category physics.data-an ; Other Fields of Physics ; hep-ex ; Particle Physics - Experiment ; physics.ins-det ; Detectors and Experimental Techniques
Accelerator/Facility, Experiment CERN HL LHC
Abstract The next decade will see an order of magnitude increase in data collected by high-energy physics experiments, driven by the High-Luminosity LHC (HL-LHC). The reconstruction of charged particle trajectories (tracks) has always been a critical part of offline data processing pipelines. The complexity of HL-LHC data will however increasingly mandate track finding in all stages of an experiment's real-time processing. This paper presents a GNN-based track-finding pipeline tailored for the Run 3 LHCb experiment's vertex detector and benchmarks its physics performance and computational cost against existing classical algorithms on GPU architectures. A novelty of our work compared to existing GNN tracking pipelines is batched execution, in which the GPU evaluates the pipeline on hundreds of events in parallel. We evaluate the impact of neural-network quantisation on physics and computational performance, and comment on the outlook for GNN tracking algorithms for other parts of the LHCb track-finding pipeline.
Copyright/License preprint: (License: CC BY 4.0)



Corresponding record in: Inspire


 Datensatz erzeugt am 2024-12-11, letzte Änderung am 2024-12-20


Volltext:
2407.12119 - Volltext herunterladenPDF
document - Volltext herunterladenPDF