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New approaches using machine learning for fast shower simulation in ATLAS

Modeling the detector response to collisions is one of the most CPU expensive and time-consuming aspects in the LHC. The current ATLAS baseline, GEANT4, is highly CPU intensive. With the large collision dataset expected in the future, CPU usage becomes critical. During the LHC Run-1, a fast calorime...

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Autores principales: Hasib, Ahmed, Schaarschmidt, Jana, Gadatsch, Stefan, Golling, Tobias, Salamani, Dalila, Ghosh, Aishik, Rousseau, David, Cranmer, Kyle, Stewart, Graeme, Louppe, Gilles Claude
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:http://cds.cern.ch/record/2628624
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author Hasib, Ahmed
Schaarschmidt, Jana
Gadatsch, Stefan
Golling, Tobias
Salamani, Dalila
Ghosh, Aishik
Rousseau, David
Cranmer, Kyle
Stewart, Graeme
Louppe, Gilles Claude
author_facet Hasib, Ahmed
Schaarschmidt, Jana
Gadatsch, Stefan
Golling, Tobias
Salamani, Dalila
Ghosh, Aishik
Rousseau, David
Cranmer, Kyle
Stewart, Graeme
Louppe, Gilles Claude
author_sort Hasib, Ahmed
collection CERN
description Modeling the detector response to collisions is one of the most CPU expensive and time-consuming aspects in the LHC. The current ATLAS baseline, GEANT4, is highly CPU intensive. With the large collision dataset expected in the future, CPU usage becomes critical. During the LHC Run-1, a fast calorimeter simulation (FastCaloSim) was successfully used by ATLAS. FastCaloSim parametrizes the energy response of particles in the calorimeter cells, accounting for the lateral shower profile and the correlation of the energy deposition among various calorimeter layers. It significantly speeds up the calorimeter simulation. An improved version of FastCaloSim is currently under development to reduce CPU and memory requirements and to improve the physics description. The new FastCaloSim implements machine learning techniques, such as principal component analysis and neural networks. Other new ideas being investigated include using deep generative models such as Variational Auto-Encoders (VAEs) and Generative Adversarial Networks (GANs). These models take into account the complex geometry of the ATLAS calorimeter and reproduce the shower characteristics. They are enhanced to handle different particle types and energy level variations simultaneously. This talk will describe these fast simulation methods, quantify the performance and discuss physics applications.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling cern-26286242019-09-30T06:29:59Zhttp://cds.cern.ch/record/2628624engHasib, AhmedSchaarschmidt, JanaGadatsch, StefanGolling, TobiasSalamani, DalilaGhosh, AishikRousseau, DavidCranmer, KyleStewart, GraemeLouppe, Gilles ClaudeNew approaches using machine learning for fast shower simulation in ATLASParticle Physics - ExperimentModeling the detector response to collisions is one of the most CPU expensive and time-consuming aspects in the LHC. The current ATLAS baseline, GEANT4, is highly CPU intensive. With the large collision dataset expected in the future, CPU usage becomes critical. During the LHC Run-1, a fast calorimeter simulation (FastCaloSim) was successfully used by ATLAS. FastCaloSim parametrizes the energy response of particles in the calorimeter cells, accounting for the lateral shower profile and the correlation of the energy deposition among various calorimeter layers. It significantly speeds up the calorimeter simulation. An improved version of FastCaloSim is currently under development to reduce CPU and memory requirements and to improve the physics description. The new FastCaloSim implements machine learning techniques, such as principal component analysis and neural networks. Other new ideas being investigated include using deep generative models such as Variational Auto-Encoders (VAEs) and Generative Adversarial Networks (GANs). These models take into account the complex geometry of the ATLAS calorimeter and reproduce the shower characteristics. They are enhanced to handle different particle types and energy level variations simultaneously. This talk will describe these fast simulation methods, quantify the performance and discuss physics applications.ATL-SOFT-SLIDE-2018-464oai:cds.cern.ch:26286242018-07-05
spellingShingle Particle Physics - Experiment
Hasib, Ahmed
Schaarschmidt, Jana
Gadatsch, Stefan
Golling, Tobias
Salamani, Dalila
Ghosh, Aishik
Rousseau, David
Cranmer, Kyle
Stewart, Graeme
Louppe, Gilles Claude
New approaches using machine learning for fast shower simulation in ATLAS
title New approaches using machine learning for fast shower simulation in ATLAS
title_full New approaches using machine learning for fast shower simulation in ATLAS
title_fullStr New approaches using machine learning for fast shower simulation in ATLAS
title_full_unstemmed New approaches using machine learning for fast shower simulation in ATLAS
title_short New approaches using machine learning for fast shower simulation in ATLAS
title_sort new approaches using machine learning for fast shower simulation in atlas
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2628624
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