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Evaluation of cloud autoscaling strategies under different incoming workload patterns

机译:不同传入工作量模式下云自动造型策略的评估

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摘要

Cloud computing provides cost-effective solutions for deploying services and applications. Although resources can be provisioned on demand, they need to adapt quickly and in a seamless way to the workload intensity and characteristics and satisfy at the same time the desired performance levels. In this paper, we evaluate the effects exercised by different incoming workload patterns on cloud autoscaling strategies. More specifically, we focus on workloads characterized by periodic, continuously growing, diurnal and unpredictable arrival patterns. To test these workloads, we simulate a realistic cloud infrastructure using customized extensions of the CloudSim simulation toolkit. The simulation experiments allow us to evaluate the cloud performance under different workload conditions and assess the benefits of autoscaling policies as well as the effects of their configuration settings.
机译:云计算为部署服务和应用程序提供了经济高效的解决方案。虽然可以按需提供资源,但他们需要快速,以无缝方式适应工作负载强度和特性,并同时满足所需的性能水平。在本文中,我们评估了不同传入工作量模式对云自动造型策略进行的影响。更具体地,我们专注于以周期性,不断增长,昼夜和不可预测的到达模式为特征的工作负载。要测试这些工作负载,我们使用CloudSim仿真工具包的自定义扩展来模拟逼真的云基础架构。仿真实验允许我们在不同的工作负载条件下评估云性能,并评估自动造型策略的好处以及其配置设置的影响。

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