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Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline

Precise measurements of the energy of jets emerging from particle collisions at the LHC are essential for a vast majority of physics searches at the CMS experiment. In this study, we leverage well-established deep learning models for point clouds and CMS open data to improve the energy calibration o...

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Detalles Bibliográficos
Autores principales: Holmberg, Daniel, Golubovic, Dejan, Kirschenmann, Henning
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:https://dx.doi.org/10.1007/s41781-023-00103-y
http://cds.cern.ch/record/2869501
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author Holmberg, Daniel
Golubovic, Dejan
Kirschenmann, Henning
author_facet Holmberg, Daniel
Golubovic, Dejan
Kirschenmann, Henning
author_sort Holmberg, Daniel
collection CERN
description Precise measurements of the energy of jets emerging from particle collisions at the LHC are essential for a vast majority of physics searches at the CMS experiment. In this study, we leverage well-established deep learning models for point clouds and CMS open data to improve the energy calibration of particle jets. To enable production-ready machine learning based jet energy calibration an end-to-end pipeline is built on the Kubeflow cloud platform. The pipeline allowed us to scale up our hyperparameter tuning experiments on cloud resources, and serve optimal models as REST endpoints. We present the results of the parameter tuning process and analyze the performance of the served models in terms of inference time and overhead, providing insights for future work in this direction. The study also demonstrates improvements in both flavor dependence and resolution of the energy response when compared to the standard jet energy corrections baseline.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28695012023-10-03T15:51:10Zdoi:10.1007/s41781-023-00103-yhttp://cds.cern.ch/record/2869501engHolmberg, DanielGolubovic, DejanKirschenmann, HenningJet Energy Calibration with Deep Learning as a Kubeflow Pipelinephysics.data-anOther Fields of Physicshep-phParticle Physics - Phenomenologyhep-exParticle Physics - ExperimentPrecise measurements of the energy of jets emerging from particle collisions at the LHC are essential for a vast majority of physics searches at the CMS experiment. In this study, we leverage well-established deep learning models for point clouds and CMS open data to improve the energy calibration of particle jets. To enable production-ready machine learning based jet energy calibration an end-to-end pipeline is built on the Kubeflow cloud platform. The pipeline allowed us to scale up our hyperparameter tuning experiments on cloud resources, and serve optimal models as REST endpoints. We present the results of the parameter tuning process and analyze the performance of the served models in terms of inference time and overhead, providing insights for future work in this direction. The study also demonstrates improvements in both flavor dependence and resolution of the energy response when compared to the standard jet energy corrections baseline.Precise measurements of the energy of jets emerging from particle collisions at the LHC are essential for a vast majority of physics searches at the CMS experiment. In this study, we leverage well-established deep learning models for point clouds and CMS open data to improve the energy calibration of particle jets. To enable production-ready machine learning based jet energy calibration an end-to-end pipeline is built on the Kubeflow cloud platform. The pipeline allowed us to scale up our hyperparameter tuning experiments on cloud resources, and serve optimal models as REST endpoints. We present the results of the parameter tuning process and analyze the performance of the served models in terms of inference time and overhead, providing insights for future work in this direction. The study also demonstrates improvements in both flavor dependence and resolution of the energy response when compared to the standard jet energy corrections baseline.arXiv:2308.12724oai:cds.cern.ch:28695012023-08-24
spellingShingle physics.data-an
Other Fields of Physics
hep-ph
Particle Physics - Phenomenology
hep-ex
Particle Physics - Experiment
Holmberg, Daniel
Golubovic, Dejan
Kirschenmann, Henning
Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title_full Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title_fullStr Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title_full_unstemmed Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title_short Jet Energy Calibration with Deep Learning as a Kubeflow Pipeline
title_sort jet energy calibration with deep learning as a kubeflow pipeline
topic physics.data-an
Other Fields of Physics
hep-ph
Particle Physics - Phenomenology
hep-ex
Particle Physics - Experiment
url https://dx.doi.org/10.1007/s41781-023-00103-y
http://cds.cern.ch/record/2869501
work_keys_str_mv AT holmbergdaniel jetenergycalibrationwithdeeplearningasakubeflowpipeline
AT golubovicdejan jetenergycalibrationwithdeeplearningasakubeflowpipeline
AT kirschenmannhenning jetenergycalibrationwithdeeplearningasakubeflowpipeline