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Opportunities in Machine Learning for Particle Accelerators
Machine learning (ML) is a subfield of artificial intelligence. The term applies broadly to a collection of computational algorithms and techniques that train systems from raw data rather than a priori models. ML techniques are now technologically mature enough to be applied to particle accelerators...
Autores principales: | , , , , , , , , , , , , |
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Lenguaje: | eng |
Publicado: |
2018
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Materias: | |
Acceso en línea: | http://cds.cern.ch/record/2650219 |
_version_ | 1780960786800181248 |
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author | Edelen, A. Mayes, C. Bowring, D. Ratner, D. Adelmann, A. Ischebeck, R. Snuverink, J. Agapov, I. Kammering, R. Edelen, J. Bazarov, I. Valentino, G. Wenninger, J. |
author_facet | Edelen, A. Mayes, C. Bowring, D. Ratner, D. Adelmann, A. Ischebeck, R. Snuverink, J. Agapov, I. Kammering, R. Edelen, J. Bazarov, I. Valentino, G. Wenninger, J. |
author_sort | Edelen, A. |
collection | CERN |
description | Machine learning (ML) is a subfield of artificial intelligence. The term applies broadly to a collection of computational algorithms and techniques that train systems from raw data rather than a priori models. ML techniques are now technologically mature enough to be applied to particle accelerators, and we expect that ML will become an increasingly valuable tool to meet new demands for beam energy, brightness, and stability. The intent of this white paper is to provide a high-level introduction to problems in accelerator science and operation where incorporating ML-based approaches may provide significant benefit. We review ML techniques currently being investigated at particle accelerator facilities, and we place specific emphasis on active research efforts and promising exploratory results. We also identify new applications and discuss their feasibility, along with the required data and infrastructure strategies. We conclude with a set of guidelines and recommendations for laboratory managers and administrators, emphasizing the logistical and technological requirements for successfully adopting this technology. This white paper also serves as a summary of the discussion from a recent workshop held at SLAC on ML for particle accelerators. |
id | cern-2650219 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2018 |
record_format | invenio |
spelling | cern-26502192021-09-19T13:44:29Zhttp://cds.cern.ch/record/2650219engEdelen, A.Mayes, C.Bowring, D.Ratner, D.Adelmann, A.Ischebeck, R.Snuverink, J.Agapov, I.Kammering, R.Edelen, J.Bazarov, I.Valentino, G.Wenninger, J.Opportunities in Machine Learning for Particle Acceleratorsphysics.acc-phAccelerators and Storage RingsMachine learning (ML) is a subfield of artificial intelligence. The term applies broadly to a collection of computational algorithms and techniques that train systems from raw data rather than a priori models. ML techniques are now technologically mature enough to be applied to particle accelerators, and we expect that ML will become an increasingly valuable tool to meet new demands for beam energy, brightness, and stability. The intent of this white paper is to provide a high-level introduction to problems in accelerator science and operation where incorporating ML-based approaches may provide significant benefit. We review ML techniques currently being investigated at particle accelerator facilities, and we place specific emphasis on active research efforts and promising exploratory results. We also identify new applications and discuss their feasibility, along with the required data and infrastructure strategies. We conclude with a set of guidelines and recommendations for laboratory managers and administrators, emphasizing the logistical and technological requirements for successfully adopting this technology. This white paper also serves as a summary of the discussion from a recent workshop held at SLAC on ML for particle accelerators.arXiv:1811.03172FERMILAB-PUB-19-017-ADoai:cds.cern.ch:26502192018 |
spellingShingle | physics.acc-ph Accelerators and Storage Rings Edelen, A. Mayes, C. Bowring, D. Ratner, D. Adelmann, A. Ischebeck, R. Snuverink, J. Agapov, I. Kammering, R. Edelen, J. Bazarov, I. Valentino, G. Wenninger, J. Opportunities in Machine Learning for Particle Accelerators |
title | Opportunities in Machine Learning for Particle Accelerators |
title_full | Opportunities in Machine Learning for Particle Accelerators |
title_fullStr | Opportunities in Machine Learning for Particle Accelerators |
title_full_unstemmed | Opportunities in Machine Learning for Particle Accelerators |
title_short | Opportunities in Machine Learning for Particle Accelerators |
title_sort | opportunities in machine learning for particle accelerators |
topic | physics.acc-ph Accelerators and Storage Rings |
url | http://cds.cern.ch/record/2650219 |
work_keys_str_mv | AT edelena opportunitiesinmachinelearningforparticleaccelerators AT mayesc opportunitiesinmachinelearningforparticleaccelerators AT bowringd opportunitiesinmachinelearningforparticleaccelerators AT ratnerd opportunitiesinmachinelearningforparticleaccelerators AT adelmanna opportunitiesinmachinelearningforparticleaccelerators AT ischebeckr opportunitiesinmachinelearningforparticleaccelerators AT snuverinkj opportunitiesinmachinelearningforparticleaccelerators AT agapovi opportunitiesinmachinelearningforparticleaccelerators AT kammeringr opportunitiesinmachinelearningforparticleaccelerators AT edelenj opportunitiesinmachinelearningforparticleaccelerators AT bazarovi opportunitiesinmachinelearningforparticleaccelerators AT valentinog opportunitiesinmachinelearningforparticleaccelerators AT wenningerj opportunitiesinmachinelearningforparticleaccelerators |