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Demonstration: Predicting Distributions of Service Metrics

机译:示范:预测服务度量的分布

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The ability to predict conditional distributions of service metrics is key to understanding end-to-end service behavior. From conditional distributions, other metrics can be derived, such as expected values and quantiles, which are essential for assessing SLA conformance. Our demonstrator predicts conditional distributions and derived metrics estimation in realtime, using infrastructure measurements. The distributions are modeled as Gaussian mixtures whose parameters are estimated using a mixture density network. The predictions are produced for a Video-on-Demand service that runs on a testbed at KTH.
机译:预测服务指标的条件分布的能力是了解端到端服务行为的关键。根据条件分布,可以导出其他度量,例如预期值和定量,这对于评估SLA一致性至关重要。我们的示威者使用基础架构测量预测实时的条件分布和派生度量估计。分布被建模为使用混合密度网络估计的参数的高斯混合。预测是为在KTH的测试平台上运行的视频点播服务而产生的预测。

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