Cargando…

Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics

ATLAS is the largest experiment at the LHC. It generates vast volumes of scientific data accompanied with auxiliary metadata, representing all stages of data processing, Monte-Carlo simulation, and characteristics of computing environment. Terabytes of metadata was accumulated by the workflow and da...

Descripción completa

Detalles Bibliográficos
Autores principales: Grigoryeva, Maria, Korchuganova, Tatiana, Titov, Mikhail, Alekseev, Aleksandr
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:http://cds.cern.ch/record/2644304
_version_ 1780960372590641152
author Grigoryeva, Maria
Korchuganova, Tatiana
Titov, Mikhail
Alekseev, Aleksandr
author_facet Grigoryeva, Maria
Korchuganova, Tatiana
Titov, Mikhail
Alekseev, Aleksandr
author_sort Grigoryeva, Maria
collection CERN
description ATLAS is the largest experiment at the LHC. It generates vast volumes of scientific data accompanied with auxiliary metadata, representing all stages of data processing, Monte-Carlo simulation, and characteristics of computing environment. Terabytes of metadata was accumulated by the workflow and data management, and metadata archiving systems. These metadata can help physicists carrying out studies to evaluate in advance the duration of their analysis jobs. As these jobs are executed in a heterogeneous distributed and dynamically changing infrastructure, their duration varies across computing centers and depends on many factors. Ensuring the uniformity in jobs execution requires searching for anomalies and analyzing the reasons of non-trivial jobs execution behavior to predict and avoid the recurrence in future. Detailed analysis of large volume of jobs execution benefits from application of machine learning and visual analysis methods. The approach of visual analytics technique was demonstrated on the analysis of jobs archive. Proposed method allowed to figure out computing sites having non-trivial jobs execution process, and the visual cluster analysis showed parameters affecting or indicating possible time delays. Further work will concentrate on increasing of the amount of analyzed jobs and the development of interactive visual models, facilitating the interpretation of analysis results.
id cern-2644304
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling cern-26443042019-09-30T06:29:59Zhttp://cds.cern.ch/record/2644304engGrigoryeva, MariaKorchuganova, TatianaTitov, MikhailAlekseev, AleksandrSearch for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual AnalyticsParticle Physics - ExperimentATLAS is the largest experiment at the LHC. It generates vast volumes of scientific data accompanied with auxiliary metadata, representing all stages of data processing, Monte-Carlo simulation, and characteristics of computing environment. Terabytes of metadata was accumulated by the workflow and data management, and metadata archiving systems. These metadata can help physicists carrying out studies to evaluate in advance the duration of their analysis jobs. As these jobs are executed in a heterogeneous distributed and dynamically changing infrastructure, their duration varies across computing centers and depends on many factors. Ensuring the uniformity in jobs execution requires searching for anomalies and analyzing the reasons of non-trivial jobs execution behavior to predict and avoid the recurrence in future. Detailed analysis of large volume of jobs execution benefits from application of machine learning and visual analysis methods. The approach of visual analytics technique was demonstrated on the analysis of jobs archive. Proposed method allowed to figure out computing sites having non-trivial jobs execution process, and the visual cluster analysis showed parameters affecting or indicating possible time delays. Further work will concentrate on increasing of the amount of analyzed jobs and the development of interactive visual models, facilitating the interpretation of analysis results.ATL-SOFT-PROC-2018-008oai:cds.cern.ch:26443042018-10-20
spellingShingle Particle Physics - Experiment
Grigoryeva, Maria
Korchuganova, Tatiana
Titov, Mikhail
Alekseev, Aleksandr
Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title_full Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title_fullStr Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title_full_unstemmed Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title_short Search for Anomalies in the Computational Jobs of the ATLAS Experiment with the Application of Visual Analytics
title_sort search for anomalies in the computational jobs of the atlas experiment with the application of visual analytics
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2644304
work_keys_str_mv AT grigoryevamaria searchforanomaliesinthecomputationaljobsoftheatlasexperimentwiththeapplicationofvisualanalytics
AT korchuganovatatiana searchforanomaliesinthecomputationaljobsoftheatlasexperimentwiththeapplicationofvisualanalytics
AT titovmikhail searchforanomaliesinthecomputationaljobsoftheatlasexperimentwiththeapplicationofvisualanalytics
AT alekseevaleksandr searchforanomaliesinthecomputationaljobsoftheatlasexperimentwiththeapplicationofvisualanalytics