Publication | Closed Access
Online parameter optimization for elastic data stream processing
72
Citations
24
References
2015
Year
Unknown Venue
Cluster ComputingEngineeringWorkload CharacteristicsCloud Load BalancingData Streaming ArchitectureOnline Parameter OptimizationData ScienceSystems EngineeringPerformance TuningParallel ComputingUnexpected Load PeaksData ManagementElastic ScalingAuto-scalingStreaming EngineComputer ScienceData Stream ManagementScalable ComputingPerformance ScalabilityCloud ComputingBig Data
Elastic scaling allows data stream processing systems to dynamically scale in and out to react to workload changes. As a consequence, unexpected load peaks can be handled and the extent of the overprovisioning can be reduced. However, the strategies used for elastic scaling of such systems need to be tuned manually by the user. This is an error prone and cumbersome task, because it requires a detailed knowledge of the underlying system and workload characteristics. In addition, the resulting quality of service for a specific scaling strategy is unknown a priori and can be measured only during runtime.
| Year | Citations | |
|---|---|---|
Page 1
Page 1