DVMP:在数据中心的异构服务器上增加流量感知虚拟机位置

Dan Li, S. S. A. Rizvi, Fangxin Wang, Wu He
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引用次数: 2

摘要

随着云计算的迅猛发展,现代数据中心网络面临着处理虚拟机之间日益增长的流量需求的挑战。简单地增加交换机和链路可能会增加网络容量,但同时也会增加复杂性和基础设施成本。因此,提出了智能虚拟机放置来减少数据中心内的流量。先前的解决方案将流量感知的虚拟机放置问题建模为平衡最小k切问题(BMKP)。然而,在实际的数据中心中,“一次性”VM放置在具有相同VM插槽的物理服务器上的假设通常是不现实的,因此幼稚的BMKP模型可能导致次优的放置解决方案。在这项工作中,我们通过考虑服务器异质性来重新审视这个问题,并提出了一种增量流量感知VM放置算法。鉴于BMKP模型不能直接应用,我们进行了许多转换来重新建立模型。首先,通过在VM插槽较少的物理服务器上引入伪VM插槽,我们允许每个服务器的可用VM插槽数量不同。其次,在现有的虚拟机之间添加具有无限成本的伪边,因此以前部署在同一物理服务器上的虚拟机仍然会打包在一起。第三,对伪虚拟机插槽的数量进行更改,以便放置在不同物理服务器上的现有虚拟机仍将被分开。通过这种方式,我们将问题简化为一个新的BMKP问题,从而得到更好的解决方案。评估结果表明,与朴素BMKP模型、贪婪虚拟机放置模型和随机虚拟机放置模型相比,DVMP可以分别减少28%、39%和55%的流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DVMP: Incremental traffic-aware VM placement on heterogeneous servers in data centers
As the tremendous momentum cloud computing has grown, the modern data center networks are facing challenge to handle the increasing traffic demand among virtual machines (VMs). Simply adding more switches and links may increase network capacity but at the same time increase the complexity and infrastructure cost. Thus, intelligent VM placement has been proposed to reduce the intra-DC traffic. Prior solutions model the traffic-aware VM placement problem as a Balanced Minimum K-cut Problem (BMKP). However, the assumptions of “once-for-all” VM placement on physical servers with equal VM slots are often not realistic in practical data centers, and thus the naive BMKP model may lead to suboptimal placement solutions. In this work, we revisit the problem by considering the server heterogeneity and propose an incremental traffic-aware VM placement algorithm. Given that the BMKP model cannot be directly applied, we make a number of transformations to re-establish the model. First, by introducing pseudo VM slots on physical servers with less VM slots, we allow the number of available VM slots of each server to be different. Second, pseudo edges with infinite costs are added between existing VMs, and thus previously deployed VMs on the same physical server will still be packed together. Third, a change on the number of pseudo VM slots is applied, so that existing VMs placed on different physical servers will still be separated. In this way, we reduce the problem to a new BMKP problem, which results in a much better solution. The evaluation results show that DVMP can reduce up to 28%, 39% and 55% traffic compared with naive BMKP model, greedy VM placement and random VM placement, respectively.
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