做一个好邻居:描述xen虚拟化环境下虚拟机的性能干扰

Ruiqing Chi, Zhuzhong Qian, Sanglu Lu
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引用次数: 11

摘要

近年来,随着虚拟化技术的飞速发展,现代数据中心进入了云计算的新时代。尽管具有资源利用率高、服务可伸缩性快等诸多优势,但当前的虚拟化技术并不能保证共享物理机的虚拟机之间实现完美的性能隔离,这可能导致云中用户感知到的应用程序性能不稳定且不可预测。因此,理解和建模并发应用程序之间的性能干扰是至关重要的。但是,管理程序和客户机操作系统通常运行独立的资源调度器,并且彼此不可见,因此,准确地描述性能干扰是一项非常重要的工作。在本文中,我们首先对不同基准组合的性能干扰进行了全面的实验研究,观察到多个物理CPU之间的虚拟CPU浮动开销和VMEXITs,即hypervisor和vm之间的控制转换,构成了性能干扰的主要来源。为了描述性能干扰的影响,我们测量了并发应用程序的应用层和虚拟机层的特性,然后构建了一个基于核典型相关分析的干扰预测框架。我们的评价首先证明了KCCA在寻找可靠相关性方面的实用性,进一步证实了我们的干扰模型具有较高的准确度和适用性,预测误差不超过7.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Be a good neighbour: Characterizing performance interference of virtual machines under xen virtualization environments
With the rapid development of virtualization techniques, modern data centers move into a new era of cloud in recent years. Despite numerous advantages such as high resource utilization and rapid service scalability, current virtualization techniques don't guarantee perfect performance isolation among virtual machines sharing the physical machine, which may lead to unstable and unpredictable user-perceived application performance in clouds. Therefore, understanding and modeling performance interference among collocated applications is of utmost importance. However, the hypervisor and guest OSes usually run independent resource schedulers and are invisible into each other, thereby making accurately characterizing performance interference a non-trivial work. In this paper, we first present a comprehensive experimental study on performance interference of different combinations of benchmarks, observing that virtual CPU floating overhead between multiple physical CPUs, and VMEXITs, i.e., the control transitions between the hypervisor and VMs, constitute the key source of performance interference. In order to characterize the performance interference effects, we measure both the application-level and VM-level characteristics from the collocated applications and then build a novel interference prediction framework based on kernel canonical correlation analysis. Our evaluations first show the practicability of KCCA in finding reliable correlation, and further confirm the high accuracy and great applicability of our interference model with a low prediction error of no more than 7.9%.
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