CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program

The high-luminosity program has seen numerous extrapolations of its needed computing resources that each indicate the need for substantial changes if the desired HL-LHC physics program is to be supported within the current level of computing resource budgets. Drivers include large increases in event...

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Main Authors: Lange David, Bloom Kenneth, Boccali Tommaso, Gutsche Oliver, Vaandering Eric
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:EPJ Web of Conferences
Online Access:https://www.epj-conferences.org/articles/epjconf/pdf/2019/19/epjconf_chep2018_03055.pdf
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spelling doaj-416ecd51cd85497ba3af257302de59402021-08-02T13:15:50ZengEDP SciencesEPJ Web of Conferences2100-014X2019-01-012140305510.1051/epjconf/201921403055epjconf_chep2018_03055CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics programLange DavidBloom KennethBoccali TommasoGutsche OliverVaandering EricThe high-luminosity program has seen numerous extrapolations of its needed computing resources that each indicate the need for substantial changes if the desired HL-LHC physics program is to be supported within the current level of computing resource budgets. Drivers include large increases in event complexity (leading to increased processing time and analysis data size) and trigger rates needed (5-10 fold increases) for the HL-LHC program. The CMS experiment has recently undertaken an effort to merge the ideas behind short-term and long-term resource models in order to make easier and more reliable extrapolations to future needs. Near term computing resource estimation requirements depend on numerous parameters: LHC uptime and beam intensities; detector and online trigger performance; software performance; analysis data requirements; data access, management, and retention policies; site characteristics; and network performance. Longer term modeling is affected by the same characteristics, but with much larger uncertainties that must be considered to understand the most interesting handles for increasing the "physics per computing dollar" of the HL-LHC. In this presentation, we discuss the current status of long term modeling of the CMS computing resource needs for HL-LHC with emphasis on techniques for extrapolations, uncertainty quantification, and model results. We illustrate potential ways that high-luminosity CMS could accomplish its desired physics program within today's computing budgets.https://www.epj-conferences.org/articles/epjconf/pdf/2019/19/epjconf_chep2018_03055.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Lange David
Bloom Kenneth
Boccali Tommaso
Gutsche Oliver
Vaandering Eric
spellingShingle Lange David
Bloom Kenneth
Boccali Tommaso
Gutsche Oliver
Vaandering Eric
CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
EPJ Web of Conferences
author_facet Lange David
Bloom Kenneth
Boccali Tommaso
Gutsche Oliver
Vaandering Eric
author_sort Lange David
title CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
title_short CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
title_full CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
title_fullStr CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
title_full_unstemmed CMS Computing Resources: Meeting the demands of the high-luminosity LHC physics program
title_sort cms computing resources: meeting the demands of the high-luminosity lhc physics program
publisher EDP Sciences
series EPJ Web of Conferences
issn 2100-014X
publishDate 2019-01-01
description The high-luminosity program has seen numerous extrapolations of its needed computing resources that each indicate the need for substantial changes if the desired HL-LHC physics program is to be supported within the current level of computing resource budgets. Drivers include large increases in event complexity (leading to increased processing time and analysis data size) and trigger rates needed (5-10 fold increases) for the HL-LHC program. The CMS experiment has recently undertaken an effort to merge the ideas behind short-term and long-term resource models in order to make easier and more reliable extrapolations to future needs. Near term computing resource estimation requirements depend on numerous parameters: LHC uptime and beam intensities; detector and online trigger performance; software performance; analysis data requirements; data access, management, and retention policies; site characteristics; and network performance. Longer term modeling is affected by the same characteristics, but with much larger uncertainties that must be considered to understand the most interesting handles for increasing the "physics per computing dollar" of the HL-LHC. In this presentation, we discuss the current status of long term modeling of the CMS computing resource needs for HL-LHC with emphasis on techniques for extrapolations, uncertainty quantification, and model results. We illustrate potential ways that high-luminosity CMS could accomplish its desired physics program within today's computing budgets.
url https://www.epj-conferences.org/articles/epjconf/pdf/2019/19/epjconf_chep2018_03055.pdf
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