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Deep Reinforcement Learning for NFV-based Service Function Chaining in Multi-Service Networks : Invited Paper

机译:多服务网络中基于NFV的服务功能链的深度强化学习:特邀论文

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With the advent of Network Function Virtualization (NFV) techniques, a subset of the Internet traffic will be treated by a chain of virtual network functions (VNFs) during their journeys while the rest of the background traffic will still be carried based on traditional routing protocols. Under such a multi-service network environment, we consider the co-existence of heterogeneous traffic control mechanisms, including flexible, dynamic service function chaining (SFC) traffic control and static, dummy IP routing for the aforementioned two types of traffic that share common network resources. Depending on the traffic patterns of the background traffic which is statically routed through the traditional IP routing platform, we aim to perform dynamic service function chaining for the foreground traffic requiring VNF treatments, so that both the end-to-end SFC performance and the overall network resource utilization can be optimized. Towards this end, we propose a deep reinforcement learning based scheme to enable intelligent SFC routing decision-making in dynamic network conditions. The proposed scheme is ready to be deployed on both hybrid SDN/IP platforms and future advanced IP environments. Based on the real GEANT network topology and its one-week traffic traces, our experiments show that the proposed scheme is able to significantly improve from the traditional routing paradigm and achieve close-to-optimal performances very fast while satisfying the end-to-end SFC requirements.
机译:随着网络功能虚拟化(NFV)技术的出现,一部分虚拟网络功能(VNF)会处理Internet流量的一部分,而其余的背景流量仍将基于传统的路由协议进行传输。在这种多服务网络环境下,我们考虑了异构流量控制机制的共存,包括灵活,动态的服务功能链(SFC)流量控制和上述共享公共网络的两种流量的静态,虚拟IP路由。资源。根据通过传统IP路由平台静态路由的后台流量的流量模式,我们旨在为需要VNF处理的前台流量执行动态服务功能链,从而实现端到端SFC性能和整体可以优化网络资源利用率。为此,我们提出了一种基于深度强化学习的方案,以在动态网络条件下实现智能SFC路由决策。拟议的方案已准备好部署在混合SDN / IP平台和未来的高级IP环境中。基于真实的GEANT网络拓扑及其一周的流量跟踪,我们的实验表明,该方案能够在改进传统路由范式的基础上进行显着改进,并在满足端到端的同时非常快速地实现接近最佳的性能。证监会的要求。

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