软件定义数据中心环境中以用户为中心的网络配置

Taimur Bakhshi, B. Ghita
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引用次数: 1

摘要

目前的数据中心(DC)网络供应方案主要利用传统的负载平衡技术,提供单个应用程序性能改进。但是,应用程序使用的多样性使得孤立的应用程序优先级对于具有不同应用程序趋势的用户来说是一个性能警告。本文提出了一种基于通用流量测量(NetFlow)的用户分析方法来捕获应用趋势,并使用提取的配置文件来创建数据中心流量转发策略。该方案允许运营商根据提取的配置文件定义全局配置文件和应用程序层次结构,以优先考虑各个用户类的流量。通过从实际企业网络中提取用户配置文件,对所提出的设计进行了测试,并使用软件定义网络范式对数据中心流量进行了动态管理仿真。与传统的流量管理方案相比,我们设计的帧交付率和有效吞吐量对于高优先级的南北用户流量以及服务器间的东西应用流量都显着更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User-Centric Network Provisioning in Software Defined Data Center Environment
Present data center (DC) network provisioning schemes primarily utilize conventional load-balancing technologies, offering individual application performance improvement. Diversity in application usage however, makes isolated application prioritization a performance caveat for users with varying application trends. The present paper proposes a user profiling approach to capture application trends based on generic flow measurements (NetFlow) and employs the extracted profiles to create DC traffic forwarding policies. The scheme allows operators to define a global profile and application hierarchy based on extracted profiles to prioritize traffic for individual user classes. The proposed design was tested by extracting user profiles from a realistic enterprise network, and further simulated to dynamically manage DC traffic using the software defined networking paradigm. Compared to conventional traffic management schemes, the frame delivery ratio and effective throughput of our design was significantly higher for high priority north-south user traffic as well as the inter-server east-west application traffic.
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