Erratic server behavior detection using machine learning on streams of monitoring data
With the explosion of the number of distributed applications, a new dynamic server environment emerged grouping servers into clusters, utilization of which depends on the current demand for the application. To provide reliable and smooth services it is crucial to detect and fix possible erratic beha...
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EDP Sciences
2020-01-01
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Series: | EPJ Web of Conferences |
Online Access: | https://www.epj-conferences.org/articles/epjconf/pdf/2020/21/epjconf_chep2020_07002.pdf |
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doaj-6ccf437bfe904b76af3f47841893b4a12021-08-02T17:49:54ZengEDP SciencesEPJ Web of Conferences2100-014X2020-01-012450700210.1051/epjconf/202024507002epjconf_chep2020_07002Erratic server behavior detection using machine learning on streams of monitoring dataAdam MartinMagnoni Luca0Pilát Martin1Adamová Dagmar2CERN, European Organization for Nuclear Research (CH)Charles University, Faculty of Mathematics and Physics (CZ)Academy of Sciences of the Czech Republic (CZ)With the explosion of the number of distributed applications, a new dynamic server environment emerged grouping servers into clusters, utilization of which depends on the current demand for the application. To provide reliable and smooth services it is crucial to detect and fix possible erratic behavior of individual servers in these clusters. Use of standard techniques for this purpose requires manual work and delivers sub-optimal results. Using only application agnostic monitoring metrics our machine learning based method analyzes the recent performance of the inspected server as well as the state of the rest of the cluster, thus checking not only the behavior of the single server, but the load on the whole distributed application as well. We have implemented our method in a Spark job running in the CERN MONIT infrastructure. In this contribution we present results of testing multiple machine learning algorithms and pre-processing techniques to identify the servers erratic behavior. We also discuss the challenges of deploying our new method into production.https://www.epj-conferences.org/articles/epjconf/pdf/2020/21/epjconf_chep2020_07002.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Adam Martin Magnoni Luca Pilát Martin Adamová Dagmar |
spellingShingle |
Adam Martin Magnoni Luca Pilát Martin Adamová Dagmar Erratic server behavior detection using machine learning on streams of monitoring data EPJ Web of Conferences |
author_facet |
Adam Martin Magnoni Luca Pilát Martin Adamová Dagmar |
author_sort |
Adam Martin |
title |
Erratic server behavior detection using machine learning on streams of monitoring data |
title_short |
Erratic server behavior detection using machine learning on streams of monitoring data |
title_full |
Erratic server behavior detection using machine learning on streams of monitoring data |
title_fullStr |
Erratic server behavior detection using machine learning on streams of monitoring data |
title_full_unstemmed |
Erratic server behavior detection using machine learning on streams of monitoring data |
title_sort |
erratic server behavior detection using machine learning on streams of monitoring data |
publisher |
EDP Sciences |
series |
EPJ Web of Conferences |
issn |
2100-014X |
publishDate |
2020-01-01 |
description |
With the explosion of the number of distributed applications, a new dynamic server environment emerged grouping servers into clusters, utilization of which depends on the current demand for the application. To provide reliable and smooth services it is crucial to detect and fix possible erratic behavior of individual servers in these clusters. Use of standard techniques for this purpose requires manual work and delivers sub-optimal results. Using only application agnostic monitoring metrics our machine learning based method analyzes the recent performance of the inspected server as well as the state of the rest of the cluster, thus checking not only the behavior of the single server, but the load on the whole distributed application as well. We have implemented our method in a Spark job running in the CERN MONIT infrastructure. In this contribution we present results of testing multiple machine learning algorithms and pre-processing techniques to identify the servers erratic behavior. We also discuss the challenges of deploying our new method into production. |
url |
https://www.epj-conferences.org/articles/epjconf/pdf/2020/21/epjconf_chep2020_07002.pdf |
work_keys_str_mv |
AT adammartin erraticserverbehaviordetectionusingmachinelearningonstreamsofmonitoringdata AT magnoniluca erraticserverbehaviordetectionusingmachinelearningonstreamsofmonitoringdata AT pilatmartin erraticserverbehaviordetectionusingmachinelearningonstreamsofmonitoringdata AT adamovadagmar erraticserverbehaviordetectionusingmachinelearningonstreamsofmonitoringdata |
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