TrackFormers: In Search of Transformer-Based Particle Tracking for the High-Luminosity LHC Era
High-Energy Physics experiments are facing a multi-fold data increase with every new iteration. This is certainly the case for the upcoming High-Luminosity LHC upgrade. Such increased data processing requirements forces revisions to almost every step of the data processing pipeline. One such step in...
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Zusammenfassung: | High-Energy Physics experiments are facing a multi-fold data increase with
every new iteration. This is certainly the case for the upcoming
High-Luminosity LHC upgrade. Such increased data processing requirements forces
revisions to almost every step of the data processing pipeline. One such step
in need of an overhaul is the task of particle track reconstruction, a.k.a.,
tracking. A Machine Learning-assisted solution is expected to provide
significant improvements, since the most time-consuming step in tracking is the
assignment of hits to particles or track candidates. This is the topic of this
paper.
We take inspiration from large language models. As such, we consider two
approaches: the prediction of the next word in a sentence (next hit point in a
track), as well as the one-shot prediction of all hits within an event. In an
extensive design effort, we have experimented with three models based on the
Transformer architecture and one model based on the U-Net architecture,
performing track association predictions for collision event hit points. In our
evaluation, we consider a spectrum of simple to complex representations of the
problem, eliminating designs with lower metrics early on. We report extensive
results, covering both prediction accuracy (score) and computational
performance. We have made use of the REDVID simulation framework, as well as
reductions applied to the TrackML data set, to compose five data sets from
simple to complex, for our experiments. The results highlight distinct
advantages among different designs in terms of prediction accuracy and
computational performance, demonstrating the efficiency of our methodology.
Most importantly, the results show the viability of a one-shot
encoder-classifier based Transformer solution as a practical approach for the
task of tracking. |
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DOI: | 10.48550/arxiv.2407.07179 |