Performance of a geometric deep learning pipeline for HL-LHC particle tracking

Jan 1, 2021·
Xiangyang Ju
,
Daniel Murnane
,
Paolo Calafiura
,
Nicholas Choma
,
Sean Conlon
,
Steve Farrell
,
Yaoyuan Xu
,
Maria Spiropulu
,
Jean Roch Vlimant
,
Adam Aurisano
,
V Hewes
,
Giuseppe Cerati
,
Lindsey Gray
,
Thomas Klijnsma
,
Jim Kowalkowski
,
Markus Atkinson
Mark Neubauer
Mark Neubauer
,
Gage Dezoort
,
Savannah Thais
,
Aditi Chauhan
,
Alex Schuy
,
Shih Chieh Hsu
,
Alex Ballow
,
Alina Lazar
· 1 min read
Abstract
The Exa.TrkX project has applied geometric learning concepts such as metric learning and graph neural networks to HEP particle tracking. this http URLs tracking pipeline groups detector measurements to form track candidates and filters them. The pipeline, originally developed using the TrackML dataset (a simulation of an LHC-inspired tracking detector), has been demonstrated on other detectors, including DUNE Liquid Argon TPC and CMS High-Granularity Calorimeter. This paper documents new developments needed to study the physics and computing performance of the Exa.TrkX pipeline on the full TrackML dataset, a first step towards validating the pipeline using ATLAS and CMS data. The pipeline achieves tracking efficiency and purity similar to production tracking algorithms. Crucially for future HEP applications, the pipeline benefits significantly from GPU acceleration, and its computational requirements scale close to linearly with the number of particles in the event.
Type
Publication
Eur. Phys. J. C

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Authors
Authors
Mark Neubauer
Authors
University of Illinois at Urbana-Champaign
I am a professor at the University of Illinois. My research is highly interdisciplinary at the intersection of particle physics, AI/ML, and quantum, aiming to understand the universe at its fundamental level and to accelerate scientific discovery through innovation.
Authors