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VCONF: A Reinforcement Learning Approach to Virtual Machines Auto-configuration

机译:VCONF:虚拟机自动配置的强化学习方法

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Virtual machine (VM) technology enables multiple VMs to share resources on the same host. Resources allocated to the VMs should be re-configured dynamically in response to the change of application demands or resource supply. Because VM execution involves privileged domain and VM monitor, this causes uncertainties in VMs' resource to performance mapping and poses challenges in online determination of appropriate VM configurations. In this paper, we propose a reinforcement learning (RL) based approach, namely VCONF, to automate the VM configuration process. VCONF employs model-based RL algorithms to address the scalability and adaptability issues in applying RL in systems management. Experimental results on both controlled environments and a testbed of clouds with Xen VMs and representative server workloads demonstrate the effectiveness of VCONF. The approach is able to find optimal (near optimal) configurations in small scale systems and shows good adaptability and scalability.
机译:虚拟机(VM)技术使多个VM可以共享同一主机上的资源。应根据应用程序需求或资源供应的变化动态地重新配置分配给VM的资源。由于虚拟机执行涉及特权域和虚拟机监控器,因此这会导致虚拟机资源到性能映射的不确定性,并在联机确定适当的虚拟机配置时带来挑战。在本文中,我们提出了一种基于强化学习(RL)的方法,即VCONF,以使VM配置过程自动化。 VCONF使用基于模型的RL算法来解决将RL应用于系统管理中的可伸缩性和适应性问题。在受控环境以及具有Xen VM和代表性服务器工作负载的云测试平台上的实验结果证明了VCONF的有效性。该方法能够在小型系统中找到最佳(接近最佳)配置,并显示出良好的适应性和可伸缩性。

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