Graph Neural Network Acceleration on FPGAs for Fast Inference in Future Muon Triggers at HL-LHC

Martino Errico, Davide Fiacco, Stefano Giagu, Giuliano Gustavino, Valerio Ippolito, Graziella Russo

Published: 2025/9/30

Abstract

The High-Luminosity LHC (HL-LHC) will reach luminosities up to 7 times higher than the previous run, yielding denser events and larger occupancies. Next generation trigger algorithms must retain reliable selection within a strict latency budget. This work explores machine-learning approaches for future muon triggers, using the ATLAS Muon Spectrometer as a benchmark. A Convolutional Neural Network (CNN) is used as a reference, while a Graph Neural Network (GNN) is introduced as a natural model for sparse detector data. Preliminary single-track studies show that GNNs achieve high efficiency with compact architectures, an encouraging result in view of FPGA deployment.

Graph Neural Network Acceleration on FPGAs for Fast Inference in Future Muon Triggers at HL-LHC | SummarXiv | SummarXiv