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FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework

We developed a first prototype of an end-to-end machine learning based simulation framework for arbitrary analysis ntuples at the CMS experiment. Such a framework, called FlashSim, was capable of simulating a wide variety of physical objects with good performance on 1d distributions, correlations an...

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Autor principal: Vaselli, Francesco
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2869306
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author Vaselli, Francesco
author_facet Vaselli, Francesco
author_sort Vaselli, Francesco
collection CERN
description We developed a first prototype of an end-to-end machine learning based simulation framework for arbitrary analysis ntuples at the CMS experiment. Such a framework, called FlashSim, was capable of simulating a wide variety of physical objects with good performance on 1d distributions, correlations and desired physical content when compared to the current state-of-the-art simulation. Current methods are based on MC techniques, computationally expensive and requiring a long time to compute. Our prototype was trained to replicate the samples from state-of-the-art methods through the use of the Normalizing Flows algorithm. It showed compatible results with a speedup of several orders of magnitude. This type of approach opens the way to general, analysis agnostic simulation frameworks which may be able to tackle the challenges of the simulation needs for HL-LHC and future collaborations.
id cern-2869306
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28693062023-09-04T20:30:53Zhttp://cds.cern.ch/record/2869306engVaselli, FrancescoFlashSim: accelerating HEP simulation with an end-to-end Machine Learning frameworkDetectors and Experimental TechniquesWe developed a first prototype of an end-to-end machine learning based simulation framework for arbitrary analysis ntuples at the CMS experiment. Such a framework, called FlashSim, was capable of simulating a wide variety of physical objects with good performance on 1d distributions, correlations and desired physical content when compared to the current state-of-the-art simulation. Current methods are based on MC techniques, computationally expensive and requiring a long time to compute. Our prototype was trained to replicate the samples from state-of-the-art methods through the use of the Normalizing Flows algorithm. It showed compatible results with a speedup of several orders of magnitude. This type of approach opens the way to general, analysis agnostic simulation frameworks which may be able to tackle the challenges of the simulation needs for HL-LHC and future collaborations.CMS-CR-2023-090oai:cds.cern.ch:28693062023-07-17
spellingShingle Detectors and Experimental Techniques
Vaselli, Francesco
FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title_full FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title_fullStr FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title_full_unstemmed FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title_short FlashSim: accelerating HEP simulation with an end-to-end Machine Learning framework
title_sort flashsim: accelerating hep simulation with an end-to-end machine learning framework
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2869306
work_keys_str_mv AT vasellifrancesco flashsimacceleratinghepsimulationwithanendtoendmachinelearningframework