Publication | Closed Access
Automated diagnostic of virtualized service performance degradation
10
Citations
8
References
2018
Year
Unknown Venue
Software MaintenanceCluster ComputingService Quality PredictionMachine LearningEngineeringService AssuranceService MonitoringFault ForecastingCloud ApplicationsSoftware AnalysisCloud Resource ManagementAutomated DiagnosticData ScienceData MiningHardware VirtualizationSystems EngineeringCloud Quality ManagementVirtualizationPredictive AnalyticsKnowledge DiscoveryComputer EngineeringVirtualization SupportComputer ScienceCloud Service AdaptationSoftware TestingCloud ComputingVirtualization ToolBig Data
Service assurance for cloud applications is a challenging task and is an active area of research for academia and industry. One promising approach is to utilize machine learning for service quality prediction and fault detection so that suitable mitigation actions can be executed. In our previous work, we have shown how to predict service-level metrics in real-time just from operational data gathered at the server side. This gives the service provider early indications on whether the platform can support the current load demand. This paper provides the logical next step where we extend our work by proposing an automated detection and diagnostic capability for the performance faults manifesting themselves in cloud and datacenter environments. This is a crucial task to maintain the smooth operation of running services and minimizing downtime. We demonstrate the effectiveness of our approach which exploits the interpretative capabilities of Self- Organizing Maps (SOMs) to automatically detect and localize different performance faults for cloud services.
| Year | Citations | |
|---|---|---|
Page 1
Page 1