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Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data

<!--HTML-->Machine learning algorithms are gaining ground in high energy physics for applications in particle and event identification, physics analysis, detector reconstruction, simulation and trigger. Currently, most data-analysis tasks at LHC experiments benefit from the use of machine lear...

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Detalles Bibliográficos
Autor principal: Di Croce, Davide
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2767065
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author Di Croce, Davide
author_facet Di Croce, Davide
author_sort Di Croce, Davide
collection CERN
description <!--HTML-->Machine learning algorithms are gaining ground in high energy physics for applications in particle and event identification, physics analysis, detector reconstruction, simulation and trigger. Currently, most data-analysis tasks at LHC experiments benefit from the use of machine learning. Incorporating these computational tools in the experimental framework presents new challenges. This paper reports on the implementation of the end-to-end deep learning with the CMS software framework and the scaling of the end-to-end deep learning with multiple GPUs. The end-to-end deep learning technique combines deep learning algorithms and low-level detector representation for particle and event identification. We demonstrate the end-to-end implementation on a top quark benchmark and perform studies with various hardware architectures including single and multiple GPUs and Google TPU.
id cern-2767065
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
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spelling cern-27670652022-11-02T22:25:41Zhttp://cds.cern.ch/record/2767065engDi Croce, DavideAccelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data25th International Conference on Computing in High Energy & Nuclear PhysicsConferences<!--HTML-->Machine learning algorithms are gaining ground in high energy physics for applications in particle and event identification, physics analysis, detector reconstruction, simulation and trigger. Currently, most data-analysis tasks at LHC experiments benefit from the use of machine learning. Incorporating these computational tools in the experimental framework presents new challenges. This paper reports on the implementation of the end-to-end deep learning with the CMS software framework and the scaling of the end-to-end deep learning with multiple GPUs. The end-to-end deep learning technique combines deep learning algorithms and low-level detector representation for particle and event identification. We demonstrate the end-to-end implementation on a top quark benchmark and perform studies with various hardware architectures including single and multiple GPUs and Google TPU.oai:cds.cern.ch:27670652021
spellingShingle Conferences
Di Croce, Davide
Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title_full Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title_fullStr Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title_full_unstemmed Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title_short Accelerating End-to-End Deep Learning for Particle Reconstruction using CMS open data
title_sort accelerating end-to-end deep learning for particle reconstruction using cms open data
topic Conferences
url http://cds.cern.ch/record/2767065
work_keys_str_mv AT dicrocedavide acceleratingendtoenddeeplearningforparticlereconstructionusingcmsopendata
AT dicrocedavide 25thinternationalconferenceoncomputinginhighenergynuclearphysics