Publication | Closed Access
Performance prediction in production environments
80
Citations
9
References
2002
Year
Unknown Venue
Cluster ComputingDistributed Sor ApplicationEngineeringComputer ArchitectureSoftware EngineeringProduction EnvironmentsAccurate Performance PredictionsSystems EngineeringParallel ComputingPerformance EngineeringQuantitative ManagementPerformance PredictionPredictive AnalyticsComputer EngineeringDistributed SystemsComputer ScienceForecastingPerformance Analysis ToolCloud ComputingPerformance ModelingParallel ProgrammingProduction ForecastingSystem Performance AnalysisIndustrial InformaticsSystem SoftwareTechnical Performance
Accurate performance predictions are difficult to achieve for parallel applications executing on production distributed systems. Conventional point-valued performance parameters and prediction models are often inaccurate since they can only represent one point in a range of possible behaviors. The authors address this problem by allowing characteristic application and system data to be represented by a set of possible values and their probabilities, which they call stochastic values. They give a practical methodology for using stochastic values as parameters to adaptable performance prediction models. They demonstrate their usefulness for a distributed SOR application, showing stochastic values to be more effective than single (point) values in predicting the range of application behavior that can occur during execution in production environments.
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