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Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment

The simulations used in the field of high energy physics are compute intensive and exhibit a high level of data parallelism. These features make such simulations ideal candidates for Grid computing. We are taking as an example the GEANT4 detector simulation used for physics studies within the ATLAS...

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Autores principales: Gilbert, Laura, Celebioglu, O, Cobban, M, Iqbal, Saima, Jenwei, Hsieh, Newman, R, Pepper, R, Tseng, Jeffrey
Lenguaje:eng
Publicado: 2005
Materias:
Acceso en línea:http://cds.cern.ch/record/913878
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author Gilbert, Laura
Celebioglu, O
Cobban, M
Iqbal, Saima
Jenwei, Hsieh
Newman, R
Pepper, R
Tseng, Jeffrey
author_facet Gilbert, Laura
Celebioglu, O
Cobban, M
Iqbal, Saima
Jenwei, Hsieh
Newman, R
Pepper, R
Tseng, Jeffrey
author_sort Gilbert, Laura
collection CERN
description The simulations used in the field of high energy physics are compute intensive and exhibit a high level of data parallelism. These features make such simulations ideal candidates for Grid computing. We are taking as an example the GEANT4 detector simulation used for physics studies within the ATLAS experiment at CERN. One key issue in Grid computing is that of network and system security, which can potentially inhibit the wide spread use of such simulations. Virtualization provides a feasible solution because it allows the creation of virtual compute nodes in both local and remote compute clusters, thus providing an insulating layer which can play an important role in satisfying the security concerns of all parties involved. However, it has performance implications. This study provides quantitative estimates of the virtualization and hyper- threading overhead for GEANT on commodity clusters. Results show that virtualization has less than 15% run-time overhead, and that the best run time (with the non-SMP licence of ESX VMware) is achieved by using one virtual machine per CPU. We also observe that hyper- threading does not provide an advantage in this application. Finally, the effect of virtualization on run-time, throughput, mean response time and utilization is estimated using simulations.
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institution Organización Europea para la Investigación Nuclear
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publishDate 2005
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spelling cern-9138782019-09-30T06:29:59Zhttp://cds.cern.ch/record/913878engGilbert, LauraCelebioglu, OCobban, MIqbal, SaimaJenwei, HsiehNewman, RPepper, RTseng, JeffreyPerformance implications of virtualization and hyper-threading on high energy physics applications in a Grid environmentComputing and ComputersThe simulations used in the field of high energy physics are compute intensive and exhibit a high level of data parallelism. These features make such simulations ideal candidates for Grid computing. We are taking as an example the GEANT4 detector simulation used for physics studies within the ATLAS experiment at CERN. One key issue in Grid computing is that of network and system security, which can potentially inhibit the wide spread use of such simulations. Virtualization provides a feasible solution because it allows the creation of virtual compute nodes in both local and remote compute clusters, thus providing an insulating layer which can play an important role in satisfying the security concerns of all parties involved. However, it has performance implications. This study provides quantitative estimates of the virtualization and hyper- threading overhead for GEANT on commodity clusters. Results show that virtualization has less than 15% run-time overhead, and that the best run time (with the non-SMP licence of ESX VMware) is achieved by using one virtual machine per CPU. We also observe that hyper- threading does not provide an advantage in this application. Finally, the effect of virtualization on run-time, throughput, mean response time and utilization is estimated using simulations.oai:cds.cern.ch:9138782005
spellingShingle Computing and Computers
Gilbert, Laura
Celebioglu, O
Cobban, M
Iqbal, Saima
Jenwei, Hsieh
Newman, R
Pepper, R
Tseng, Jeffrey
Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title_full Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title_fullStr Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title_full_unstemmed Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title_short Performance implications of virtualization and hyper-threading on high energy physics applications in a Grid environment
title_sort performance implications of virtualization and hyper-threading on high energy physics applications in a grid environment
topic Computing and Computers
url http://cds.cern.ch/record/913878
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