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Virtual machine auto-configuration for web application

机译:Web应用程序的虚拟机自动配置

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摘要

With the booming trend of cloud computing, on-demand resource management is overwhelming static and dedicated strategy. The increasing demands introduce multiple challenges including energy efficiency, performance enhancement, and fault tolerance. Virtualized computing environment decouples OS and applications with hardware to best facilitate these on-demand cloud services. In this paper, we propose an online learning approach for resource auto-configuration of distributed virtual machines to support multilayer web applications. Based on performance metrics from host OS, virtual machine, and application server, the approach is able to adjust resource configuration and direct virtual machine migration corresponding to service demand variations. Support vector regression is applied to control reconfiguration and migration. The approach will be evaluated by using TPC-E benchmark on multi-layer web applications deployed on networked virtual machines. Our approach will guide systems with proactive changes to improve dependability, efficiency, and reduce the power consumption.
机译:随着云计算的蓬勃发展趋势,按需资源管理正压倒了静态和专用策略。不断增长的需求带来了多种挑战,包括能效,性能增强和容错能力。虚拟化计算环境使操作系统和应用程序与硬件脱钩,从而最好地促进了这些按需云服务。在本文中,我们提出了一种在线学习方法,用于分布式虚拟机的资源自动配置,以支持多层Web应用程序。基于来自主机操作系统,虚拟机和应用程序服务器的性能指标,该方法能够调整资源配置并根据服务需求变化直接指导虚拟机迁移。支持向量回归应用于控制重新配置和迁移。将通过在联网的虚拟机上部署的多层Web应用程序上使用TPC-E基准对这种方法进行评估。我们的方法将指导系统进行前瞻性更改,以提高可靠性,效率并减少功耗。

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