TL;DR
This paper introduces ETX4VELO, a Graph Neural Network-based pipeline for track finding in the LHCb experiment's Vertex Locator, demonstrating improved accuracy and efficiency over traditional methods in a high-rate, GPU-based trigger system.
Contribution
The paper presents a novel GNN-based track-finding pipeline tailored for the LHCb Vertex Locator, with a triplet-based method that improves accuracy and reduces fake tracks.
Findings
Fake track rate reduced from over 2% to below 1%.
Improved efficiency in reconstructing electrons.
Comparable or better physics performance than traditional algorithms.
Abstract
Over the next decade, increases in instantaneous luminosity and detector granularity will amplify the amount of data that has to be analysed by high-energy physics experiments, whether in real time or offline, by an order of magnitude. The reconstruction of charged particle tracks, which has always been a crucial element of offline data processing pipelines, must increasingly be deployed from the very first stages of the real time processing to enable experiments to achieve their physics goals. Graph Neural Networks (GNNs) have received a great deal of attention in the community because their computational complexity scales nearly linearly with the number of hits in the detector, unlike conventional algorithms which often scale quadratically or worse. This paper presents ETX4VELO, a GNN-based track-finding pipeline tailored for the Run 3 LHCb experiment's Vertex Locator, in the context…
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