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DOI: 10.1109/fpl60245.2023.00050
OpenAccess: Closed
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Low Latency Edge Classification GNN for Particle Trajectory Tracking on FPGAs

Shi‐Yu Huang,Yi Yang,Yu-Chia Su,Bo‐Cheng Lai,Javier Duarte,Scott Hauck,Shih-Chieh Hsu,Jin-Xuan Hu,Mark Neubauer

Field-programmable gate array
Computer science
Scalability
2023
In-time particle trajectory reconstruction in the Large Hadron Collider is challenging due to the high collision rate and numerous particle hits. Using GNN (Graph Neural Network) on FPGA has enabled superior accuracy with flexible trajectory classification. However, existing GNN architectures have inefficient resource usage and insufficient parallelism for edge classification. This paper introduces a resource-efficient GNN architecture on FPGAs for low latency particle tracking. The modular architecture facilitates design scalability to support large graphs. Leveraging the geometric properties of hit detectors further reduces graph complexity and resource usage. Our results on Xilinx UltraScale+ VU9P demonstrate 1625x and 1574x performance improvement over CPU and GPU respectively.
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    Low Latency Edge Classification GNN for Particle Trajectory Tracking on FPGAs” is a paper by Shi‐Yu Huang Yi Yang Yu-Chia Su Bo‐Cheng Lai Javier Duarte Scott Hauck Shih-Chieh Hsu Jin-Xuan Hu Mark Neubauer published in 2023. It has an Open Access status of “closed”. You can read and download a PDF Full Text of this paper here.