Aug 17 – 23, 2025
California Institute of Technology
US/Pacific timezone

Comparative Analysis of FPGA and GPU Performance for Machine Learning-Based Track Reconstruction at LHCb

Aug 19, 2025, 12:10 PM
20m
Broad 100

Broad 100

Chen Neuroscience Research Building

Speaker

Fotis Giasemis (Centre National de la Recherche Scientifique (FR))

Description

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---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.

Authors

Bertrand Granado (sorbonne universite) Fotis Giasemis (Centre National de la Recherche Scientifique (FR)) Vava Gligorov (Centre National de la Recherche Scientifique (FR)) Vladimir Loncar (CERN)

Presentation materials