Author:
Holmberg Daniel,Golubovic Dejan,Kirschenmann Henning
Abstract
AbstractPrecise 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.
Funder
Academy of Finland
University of Helsinki including Helsinki University Central Hospital
Publisher
Springer Science and Business Media LLC
Subject
Nuclear and High Energy Physics,Computer Science (miscellaneous),Software
Cited by
1 articles.
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1. Utilization of Kubeflow for Deploying Machine Learning Models Across Several Cloud Providers;2023 3rd International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON);2023-12-29