Optimized Service Chain Mapping and reduced flow processing with Application-Awareness

D. Anantha, B. Ramamurthy, B. Bockelman, D. Swanson
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引用次数: 3

Abstract

Network Function Virtualization (NFV) brings a new set of challenges when deploying virtualized services on commercial-off-the-shelf (COTS) hardware. Network functions can be dynamically managed to provide the necessary services on-demand and further, services can be chained together to form a larger composite. In this paper, we address an important technical problem of mapping service function chains (SFCs) across different data centers with the objective of reducing the flow processing costs. We develop an integer linear programming (ILP) formulation to optimally map service function chains to multiple data centers while adhering to the data center's capacity constraints. We propose a novel application-aware flow reduction (AAFR) algorithm to simplify the SFC-ILP to significantly reduce the number of flows processed by the SFCs. We perform a thorough study of the SFC mapping problem for multiple data centers and evaluate the performance of our proposed approach with respect to three parameters: i) impact of number of SFCs and SFC length on flow processing cost, ii) capacitated/uncapacitated flow processing cost gains, and iii) balancing flow-to-SFC mappings across data centers. Our evaluations show that our proposed AAFR algorithm reduces flow-processing costs by 70% for the capacitated-SFC mapping case over the SFC-ILP. In addition, our uncapacitated AAFR (AAFR-U) algorithm provides a further 4.1% cost-gain over its capacitated counterpart (AAFR-C).
利用应用感知优化了服务链映射,减少了流程处理
当在商用现货(COTS)硬件上部署虚拟化服务时,网络功能虚拟化(NFV)带来了一系列新的挑战。可以对网络功能进行动态管理,以按需提供必要的服务,此外,还可以将服务链接在一起,形成更大的组合。在本文中,我们解决了跨不同数据中心映射服务功能链(sfc)的一个重要技术问题,目的是降低流处理成本。我们开发了一个整数线性规划(ILP)公式来优化映射服务功能链到多个数据中心,同时坚持数据中心的容量限制。我们提出了一种新的应用感知流减少(AAFR)算法来简化SFC-ILP,以显着减少sfc处理的流数量。我们对多个数据中心的SFC映射问题进行了深入的研究,并根据以下三个参数评估了我们提出的方法的性能:i) SFC数量和SFC长度对流处理成本的影响,ii)有能力/无能力的流处理成本收益,以及iii)平衡数据中心之间的流到SFC映射。我们的评估表明,我们提出的AAFR算法在SFC-ILP的容能sfc映射情况下将流处理成本降低了70%。此外,我们的无容量AAFR (AAFR- u)算法比其有容量AAFR- c算法提供了4.1%的成本收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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