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arxiv: 2012.01563 · v1 · pith:FPN35VVBnew · submitted 2020-11-30 · ⚛️ physics.ins-det · cs.LG· hep-ex· physics.comp-ph

Accelerated Charged Particle Tracking with Graph Neural Networks on FPGAs

classification ⚛️ physics.ins-det cs.LGhep-exphysics.comp-ph
keywords neuraltrackingalgorithmschargedfpgagraphimplementationsnetworks
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We develop and study FPGA implementations of algorithms for charged particle tracking based on graph neural networks. The two complementary FPGA designs are based on OpenCL, a framework for writing programs that execute across heterogeneous platforms, and hls4ml, a high-level-synthesis-based compiler for neural network to firmware conversion. We evaluate and compare the resource usage, latency, and tracking performance of our implementations based on a benchmark dataset. We find a considerable speedup over CPU-based execution is possible, potentially enabling such algorithms to be used effectively in future computing workflows and the FPGA-based Level-1 trigger at the CERN Large Hadron Collider.

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