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首页> 外文期刊>IEEE Transactions on Parallel and Distributed Systems >Chameleon: A Hybrid, Proactive Auto-Scaling Mechanism on a Level-Playing Field
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Chameleon: A Hybrid, Proactive Auto-Scaling Mechanism on a Level-Playing Field

机译:变色龙:在公平竞争的环境中的混合,主动自动缩放机制

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Auto-scalers for clouds promise stable service quality at low costs when facing changing workload intensity. The major public cloud providers provide trigger-based auto-scalers based on thresholds. However, trigger-based auto-scaling has reaction times in the order of minutes. Novel auto-scalers from literature try to overcome the limitations of reactive mechanisms by employing proactive prediction methods. However, the adoption of proactive auto-scalers in production is still very low due to the high risk of relying on a single proactive method. This paper tackles the challenge of reducing this risk by proposing a new hybrid auto-scaling mechanism, called Chameleon, combining multiple different proactive methods coupled with a reactive fallback mechanism. Chameleon employs on-demand, automated time series-based forecasting methods to predict the arriving load intensity in combination with run-time service demand estimation to calculate the required resource consumption per work unit without the need for application instrumentation. We benchmark Chameleon against five different state-of-the-art proactive and reactive auto-scalers one in three different private and public cloud environments. We generate five different representative workloads each taken from different real-world system traces. Overall, Chameleon achieves the best scaling behavior based on user and elasticity performance metrics, analyzing the results from 400 hours aggregated experiment time.
机译:面对不断变化的工作负载强度时,用于云的自动缩放器可以以低成本保证稳定的服务质量。主要的公共云提供商根据阈值提供基于触发器的自动缩放器。但是,基于触发器的自动缩放具有大约几分钟的反应时间。来自文献的新型自动定标器试图通过采用主动预测方法来克服反应机制的局限性。但是,由于依赖单一主动方法的高风险,生产中主动自动定标器的采用率仍然很低。本文提出了一种名为Chameleon的新型混合自动缩放机制,将多种不同的主动方法与被动回退机制相结合,从而解决了降低风险的挑战。 Chameleon使用基于需求的,基于时间序列的自动化预测方法来预测到达的负载强度,并结合运行时服务需求估计来计算每个工作单元所需的资源消耗,而无需使用应用程序工具。我们在三种不同的私有和公共云环境中,针对五种不同的最新主动和被动自动缩放器对Chameleon进行了基准测试。我们生成五个不同的代表性工作负载,每个工作负载均来自不同的实际系统跟踪。总体而言,Chameleon可以根据用户和弹性性能指标实现最佳缩放效果,并分析400小时汇总实验时间的结果。

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