English

Machine Learning for Particle Flow Reconstruction at CMS

Data Analysis, Statistics and Probability 2023-02-20 v1 Machine Learning High Energy Physics - Experiment Instrumentation and Detectors Machine Learning

Abstract

We provide details on the implementation of a machine-learning based particle flow algorithm for CMS. The standard particle flow algorithm reconstructs stable particles based on calorimeter clusters and tracks to provide a global event reconstruction that exploits the combined information of multiple detector subsystems, leading to strong improvements for quantities such as jets and missing transverse energy. We have studied a possible evolution of particle flow towards heterogeneous computing platforms such as GPUs using a graph neural network. The machine-learned PF model reconstructs particle candidates based on the full list of tracks and calorimeter clusters in the event. For validation, we determine the physics performance directly in the CMS software framework when the proposed algorithm is interfaced with the offline reconstruction of jets and missing transverse energy. We also report the computational performance of the algorithm, which scales approximately linearly in runtime and memory usage with the input size.

Keywords

Cite

@article{arxiv.2203.00330,
  title  = {Machine Learning for Particle Flow Reconstruction at CMS},
  author = {Joosep Pata and Javier Duarte and Farouk Mokhtar and Eric Wulff and Jieun Yoo and Jean-Roch Vlimant and Maurizio Pierini and Maria Girone},
  journal= {arXiv preprint arXiv:2203.00330},
  year   = {2023}
}

Comments

12 pages, 6 figures. Presented at the ACAT 2021: 20th International Workshop on Advanced Computing and Analysis Techniques in Physics Research, Daejeon, Kr, 29 Nov - 3 Dec 2021

R2 v1 2026-06-24T09:57:36.538Z