Author:
Rovere Marco,Chen Ziheng,Di Pilato Antonio,Pantaleo Felice,Seez Chris
Abstract
One of the challenges of high granularity calorimeters, such as that to be built to cover the endcap region in the CMS Phase-2 Upgrade for HL-LHC, is that the large number of channels causes a surge in the computing load when clustering numerous digitized energy deposits (hits) in the reconstruction stage. In this article, we propose a fast and fully parallelizable density-based clustering algorithm, optimized for high-occupancy scenarios, where the number of clusters is much larger than the average number of hits in a cluster. The algorithm uses a grid spatial index for fast querying of neighbors and its timing scales linearly with the number of hits within the range considered. We also show a comparison of the performance on CPU and GPU implementations, demonstrating the power of algorithmic parallelization in the coming era of heterogeneous computing in high-energy physics.
Funder
U.S. Department of Energy
Ministero dell’Istruzione, dell’Università e della Ricerca
Subject
Artificial Intelligence,Information Systems,Computer Science (miscellaneous)
Cited by
16 articles.
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