基于fpga的粒子物理射流标记优化图神经网络

Zhiqiang Que, Marcus Loo, Hongxiang Fan, M. Pierini, A. Tapper, W. Luk
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引用次数: 4

摘要

这项工作提出了一种新的可重构架构,用于减少JEDI-net的延迟,JEDI-net是一种基于图神经网络(GNN)的算法,用于粒子物理中的射流标记,达到了最先进的精度。加速JEDI-net是具有挑战性的,因为它需要低延迟来部署网络,以便在CERN大型强子对撞机上进行事件选择。针对基于gnn的JEDI-net,提出了一种基于外积的矩阵乘法方法,提高了数据的空间局部性,降低了设计延迟。利用稀疏模式和二进制邻接矩阵的强度降低的代码转换进一步增强了它,以提高硬件效率,同时减少延迟。此外,该架构的可定制模板已经设计并开源,这使得使用高级合成工具生成具有高效资源利用率的低延迟FPGA设计成为可能。评估结果表明,我们的FPGA实现比GPU实现快9.5倍,功耗低6.5倍。此外,我们的FPGA设计的吞吐量足够高,可以在亚微秒的实时对撞机触发系统中部署JEDI-net,从而使其受益于提高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Graph Neural Networks for Jet Tagging in Particle Physics on FPGAs
This work proposes a novel reconfigurable architecture for reducing the latency of JEDI-net, a Graph Neural Network (GNN) based algorithm for jet tagging in particle physics, which achieves state-of-the-art accuracy. Accelerating JEDI-net is challenging since it requires low latency to deploy the network for event selection at the CERN Large Hadron Collider. This paper proposes an outer-product based matrix multiplication approach customized for GNN-based JEDI-net, which increases data spatial locality and reduces design latency. It is further enhanced by code transformation with strength reduction which exploits sparsity patterns and binary adjacency matrices to increase hardware efficiency while reducing latency. In addition, a customizable template for this architecture has been designed and open-sourced, which enables the generation of low-latency FPGA designs with efficient resource utilization using high-level synthesis tools. Evaluation results show that our FPGA implementation is up to 9.5 times faster and consumes up to 6.5 times less power than a GPU implementation. Moreover, the throughput of our FPGA design is sufficiently high to enable deployment of JEDI-net in a sub-microsecond, real-time collider trigger system, enabling it to benefit from improved accuracy.
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