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Sten is a caucasian male with cropped red hair and beard.

Sten Åstrand

Doctoral student

Sten is a caucasian male with cropped red hair and beard.

Perspective on machine learning for real-time analysis at the Large Hadron Collider experiments ALICE, ATLAS, CMS and LHCb

Author

  • S. Astrand
  • L. Boggia
  • M. Borsato
  • L. Bozianu
  • C. E. Cocha Toapaxi
  • F. I. Giasemis
  • J. Hansen
  • P. Inkaew
  • K. E. Iversen
  • P. Jawahar
  • H. Pineiro Monteagudo
  • M. Olocco
  • S. Schramm

Summary, in English

The field of high energy physics (HEPs) has seen a marked increase in the use of machine learning (ML) techniques in recent years. The proliferation of applications has revolutionised many aspects of the data processing pipeline at collider experiments including the Large Hadron Collider (LHC). In this whitepaper, we discuss the increasingly crucial role that ML plays in real-time analysis (RTA) at the LHC, namely in the context of the unique challenges posed by the trigger systems of the large LHC experiments. We describe a small selection of the ML applications in use at the large LHC experiments to demonstrate the breadth of use-cases. We continue by emphasising the importance of collaboration and engagement between the HEP community and industry, highlighting commonalities and synergies between the two. The mutual benefits are showcased in several interdisciplinary examples of RTA from industrial contexts. This whitepaper, compiled by the SMARTHEP network, does not provide an exhaustive review of ML at the LHC but rather offers a high-level overview of specific real-time use cases.

Department/s

  • Particle and nuclear physics

Publishing year

2026

Language

English

Publication/Series

Machine Learning: Science and Technology

Volume

7

Issue

1

Document type

Journal article

Publisher

IOP Publishing

Topic

  • Subatomic Physics

Keywords

  • LHC experiments
  • machine learning
  • real-time analysis

Status

Published

ISBN/ISSN/Other

  • ISSN: 2632-2153