Publication | Closed Access
A service‐agnostic method for predicting service metrics in real time
17
Citations
31
References
2017
Year
Cluster ComputingEngineeringMachine LearningService MonitoringSystem MetricStreaming DataCloud Resource ManagementCloud TestbedReal-time AnalyticsData ScienceData MiningSystems EngineeringVideo StreamingService MetricsQuantitative ManagementPerformance MetricPredictive AnalyticsStreaming EngineKnowledge DiscoveryComputer SciencePerformance MetricsForecastingCloud ComputingBusinessBig Data
Summary We predict performance metrics of cloud services using statistical learning, whereby the behaviour of a system is learned from observations. Specifically, we collect device and network statistics from a cloud testbed and apply regression methods to predict, in real‐time, client‐side service metrics for video streaming and key‐value store services. Results from intensive evaluation on our testbed indicate that our method accurately predicts service metrics in real time (mean absolute error below 16% for video frame rate and read latency, for instance). Further, our method is service agnostic in the sense that it takes as input operating systems and network statistics instead of service‐specific metrics. We show that feature set reduction significantly improves the prediction accuracy in our case, while simultaneously reducing model computation time. We find that the prediction accuracy decreases when, instead of a single service, both services run on the same testbed simultaneously or when the network quality on the path between the server cluster and the client deteriorates. Finally, we discuss the design and implementation of a real‐time analytics engine, which processes streams of device statistics and service metrics from testbed sensors and produces model predictions through online learning.
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