Comparative Analysis of FPGA and GPU Performance for Machine Learning-Based Track Reconstruction at LHCb
February 04, 2025 Β· Declared Dead Β· π IEEE International New Circuits and Systems Conference
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Authors
Fotis I. Giasemis, Vladimir LonΔar, Bertrand Granado, Vladimir Vava Gligorov
arXiv ID
2502.02304
Category
hep-ex
Cross-listed
cs.DC,
cs.LG,
physics.ins-det
Citations
5
Venue
IEEE International New Circuits and Systems Conference
Last Checked
3 months ago
Abstract
In high-energy physics, the increasing luminosity and detector granularity at the Large Hadron Collider are driving the need for more efficient data processing solutions. Machine Learning has emerged as a promising tool for reconstructing charged particle tracks, due to its potentially linear computational scaling with detector hits. The recent implementation of a graph neural network-based track reconstruction pipeline in the first level trigger of the LHCb experiment on GPUs serves as a platform for comparative studies between computational architectures in the context of high-energy physics. This paper presents a novel comparison of the throughput of ML model inference between FPGAs and GPUs, focusing on the first step of the track reconstruction pipeline$\unicode{x2013}$an implementation of a multilayer perceptron. Using HLS4ML for FPGA deployment, we benchmark its performance against the GPU implementation and demonstrate the potential of FPGAs for high-throughput, low-latency inference without the need for an expertise in FPGA development and while consuming significantly less power.
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