NFV-Based Distributed Service Function Chaining with Imperfect Information

M. Alikhani, Marzieh Sheikhi, Vesal Hakami
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Abstract

Software-defined networking (SDN) and network function virtualization (NFV) technologies have emerged as promising paradigms in recent innovations for deploying users' demanded services. In this context, service function chaining (SFC) helps telecommunication operators to provide complex network services and improve their performance. This paper first addresses the service function chain deployment problem as an integer linear programming (ILP) problem under an impractical non-causal assumption about the network information for which we provide a solution in a centralized fashion. However, in real-life networks, distributed schemes are more scalable. Also, some parameters, such as the latency of the links, fluctuate over time because of the sharing nature of cloud datacenters, and their probabilistic distributions are unknown prior to deployment. Therefore, we re-formulate the NFV -based SFC deployment problem as a noisy weighted congestion game and rely only on the actually experienced delay samples on each of the links to configure SFCs in a near-optimal fashion. In particular, we propose a multi-agent learning based algorithm using which each agent decides its VNF -based service chain only based on its own history of adopted actions and realized costs. By changing the network configuration, simulation results show that our proposed algorithm is at most 18% worse than the optimal solution, and in some situations, it behaves exactly the same as optimal results.
基于nfv的不完全信息分布式业务功能链
软件定义网络(SDN)和网络功能虚拟化(NFV)技术在最近部署用户所需服务的创新中已经成为有前途的范例。在这种背景下,业务功能链(SFC)技术可以帮助电信运营商提供复杂的网络业务,提高业务性能。本文首先将业务功能链部署问题作为一个整数线性规划(ILP)问题来解决,该问题基于对网络信息的不切实际的非因果假设,我们以集中的方式提供了解决方案。然而,在现实网络中,分布式方案更具可扩展性。此外,由于云数据中心的共享性质,一些参数(如链接的延迟时间)会随时间波动,而且它们的概率分布在部署之前是未知的。因此,我们将基于NFV的SFC部署问题重新表述为噪声加权拥塞博弈,并仅依赖于每个链路上实际经历的延迟样本以接近最优的方式配置SFC。特别地,我们提出了一种基于多智能体学习的算法,使用该算法,每个智能体仅根据自己采取的行动历史和实现的成本来决定其基于VNF的服务链。通过改变网络配置,仿真结果表明,我们提出的算法比最优解差不超过18%,在某些情况下,它的行为与最优结果完全相同。
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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