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Preprint
Report number arXiv:2304.05853
Title Speeding up the CMS track reconstruction with a parallelized and vectorized Kalman-filter-based algorithm during the LHC Run 3
Author(s)

Berkman, Sophie ; Cerati, Giuseppe ; Elmer, Peter (Princeton U.) ; Gartung, Patrick ; Giannini, Leonardo (UC, San Diego (main)) ; Gravelle, Brian (Oregon U. ; CERN) ; Hall, Allison R. (Naval Academy, Annapolis) ; Kortelainen, Matti ; Krutelyov, Vyacheslav ; Lantz, Steve R. (Cornell U.) ; Masciovecchio, Mario (UC, San Diego (main)) ; McDermott, Kevin ; Norris, Boyana ; Reid, Michael (Cornell U.) ; Riley, Daniel S. (Cornell U.) ; Tadel, Matevž (UC, San Diego (main)) ; Vourliotis, Emmanouil (UC, San Diego (main)) ; Wang, Bei ; Wittich, Peter (Cornell U.) ; Yagil, Avraham (UC, San Diego (main))

Imprint 2023-04-12
Note Contribution to the ACAT 2022
Presented at 21st International Workshop on Advanced Computing and Analysis Techniques in Physics Research, Bari, It, 24 - 28 Oct 2022, pp.
Subject category physics.ins-det ; Detectors and Experimental Techniques ; hep-ex ; Particle Physics - Experiment
Abstract One of the most challenging computational problems in the Run 3 of the Large Hadron Collider (LHC) and more so in the High-Luminosity LHC (HL-LHC) is expected to be finding and fitting charged-particle tracks during event reconstruction. The methods used so far at the LHC and in particular at the CMS experiment are based on the Kalman filter technique. Such methods have shown to be robust and to provide good physics performance, both in the trigger and offline. In order to improve computational performance, we explored Kalman-filter-based methods for track finding and fitting, adapted for many-core SIMD architectures. This adapted Kalman-filter-based software, called "mkFit", was shown to provide a significant speedup compared to the traditional algorithm, thanks to its parallelized and vectorized implementation. The mkFit software was recently integrated into the offline CMS software framework, in view of its exploitation during the Run 3 of the LHC. At the start of the LHC Run 3, mkFit will be used for track finding in a subset of the CMS offline track reconstruction iterations, allowing for significant improvements over the existing framework in terms of computational performance, while retaining comparable physics performance. The performance of the CMS track reconstruction using mkFit at the start of the LHC Run 3 is presented, together with prospects of further improvement in the upcoming years of data taking.
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Copyright/License preprint: (License: arXiv nonexclusive-distrib 1.0)



 


 Record created 2023-05-05, last modified 2023-05-06


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