Search by triplet: An efficient local track reconstruction algorithm for parallel architectures
Daniel Hugo C\'ampora P\'erez, Niko Neufeld, Agust\'in Riscos, N\'u\~nez

TL;DR
This paper introduces Search by triplet, a highly efficient parallel algorithm for real-time track reconstruction in high data rate physics experiments, demonstrating state-of-the-art performance on SIMT architectures.
Contribution
The paper presents an improved, scalable track reconstruction algorithm optimized for parallel architectures, advancing real-time processing capabilities at CERN's LHCb detector.
Findings
Achieves efficient real-time track reconstruction at high data rates.
Demonstrates superior scalability and performance on GPU architectures.
Qualifies as the current state-of-the-art in VELO track reconstruction.
Abstract
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…
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