Author:
Lazar Alina,Ju Xiangyang,Murnane Daniel,Calafiura Paolo,Farrell Steven,Xu Yaoyuan,Spiropulu Maria,Vlimant Jean-Roch,Cerati Giuseppe,Gray Lindsey,Klijnsma Thomas,Kowalkowski Jim,Atkinson Markus,Neubauer Mark,DeZoort Gage,Thais Savannah,Hsu Shih-Chieh,Aurisano Adam,Hewes Jeremy,Ballow Alexandra,Acharya Nirajan,Wang Chun-yi,Liu Emma,Lucas Alberto
Abstract
Abstract
Recently, graph neural networks (GNNs) have been successfully used for a variety of particle reconstruction problems in high energy physics, including particle tracking. The Exa.TrkX pipeline based on GNNs demonstrated promising performance in reconstructing particle tracks in dense environments. It includes five discrete steps: data encoding, graph building, edge filtering, GNN, and track labeling. All steps were written in Python and run on both GPUs and CPUs. In this work, we accelerate the Python implementation of the pipeline through customized and commercial GPU-enabled software libraries, and develop a C++ implementation for inferencing the pipeline. The implementation features an improved, CUDA-enabled fixed-radius nearest neighbor search for graph building and a weakly connected component graph algorithm for track labeling. GNNs and other trained deep learning models are converted to ONNX and inferenced via the ONNX Runtime C++ API. The complete C++ implementation of the pipeline allows integration with existing tracking software. We report the memory usage and average event latency tracking performance of our implementation applied to the TrackML benchmark dataset.
Subject
Computer Science Applications,History,Education
Cited by
6 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献