虚拟机迁移成本估算

W. Dargie
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引用次数: 36

摘要

在虚拟化/云环境中实现能源效率的机制之一是将工作负载整合到最佳数量的服务器上,并关闭空闲或未充分利用的服务器。这种方法的核心是在运行时迁移虚拟机。本文研究了虚拟机迁移的成本(迁移时间)。我们将表明,随着可用网络带宽的减少,迁移时间呈指数增长;迁移时间随着虚拟机RAM大小的增加而线性增加。此外,对于固定的网络带宽,无论虚拟机大小如何,目标服务器和源服务器的功耗基本上保持相同。有趣的是,对于相同的虚拟机组合,不同的迁移顺序会导致不同的迁移时间。我们观察到,首先迁移资源密集型虚拟机会产生最短的迁移时间。一般来说,迁移时间应该建模为一个随机变量,因为影响它的因素除了在概率意义上是未知的。因此,我们提出了一种概率方法来量化虚拟机迁移的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of the cost of VM migration
One of the mechanisms to achieve energy efficiency in virtualized/cloud environments is consolidation of workloads on an optimal number of servers and switching-off of idle or underutilized servers. Central to this approach is the migration of virtual machines at runtime. In this paper we investigate the cost (migration time) of virtual machines migration. We shall show that migration time exponentially increases as the available network bandwidth decreases; migration time linearly increases as the RAM size of a virtual machine increases. Furthermore, the power consumption of both the destination and the source servers remain by and large the same for a fixed network bandwidth, regardless of the VM size. Interestingly, for the same combination of virtual machines, different orders of migrations resulted in different migration time. We observed that migrating resource intensive virtual machines first yields the shortest migration time. In general, the migration time should be modeled as a random variable since the factors that affect it cannot be known except in a probabilistic sense. Therefore, we propose a probabilistic approach to quantify the cost of virtual machines migration.
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