A connectionist approach to dynamic resource management for virtualised network functions

Rashid Mijumbi, Sidhant Hasija, S. Davy, A. Davy, B. Jennings, R. Boutaba
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引用次数: 43

Abstract

Network Functions Virtualisation (NFV) continues to gain attention as a paradigm shift in the way telecommunications services are deployed and managed. By separating Network Functions (NFs) from traditional middleboxes, NFV is expected to lead to reduced CAPEX and OPEX, and to more agile services. However, one of the main challenges to achieving these objectives is on how physical resources can be efficiently, autonomously, and dynamically allocated to Virtualised Network Functions (VNFs) whose resource requirements ebb and flow. In this paper, we propose a Graph Neural Network (GNN)-based algorithm which exploits Virtual Network Function Forwarding Graph (VNF-FG) topology information to predict future resource requirements for each Virtual Network Function Component (VNFC). The topology information of each VNFC is derived from combining its past resource utilisation as well as the modelled effect on the same from VNFCs in its neighbourhood. Our proposal has been evaluated using a deployment of a virtualised IP Multimedia Subsystem (IMS), and real VoIP traffic traces, with results showing an average prediction accuracy of 90%. Moreover, compared to a scenario where resources are allocated manually and/or statically, our proposal reduces the average number of dropped calls by at least 27% and improves call setup latency by over 29%.
虚拟网络功能动态资源管理的连接主义方法
网络功能虚拟化(NFV)作为电信服务部署和管理方式的一种范式转变,不断受到关注。通过将网络功能(NFs)与传统的中间件分离,NFV有望降低CAPEX和OPEX,并提供更灵活的服务。然而,实现这些目标的主要挑战之一是如何有效、自主和动态地将物理资源分配给资源需求起伏不定的虚拟化网络功能(VNFs)。本文提出了一种基于图神经网络(GNN)的算法,该算法利用虚拟网络功能转发图(VNF-FG)拓扑信息来预测每个虚拟网络功能组件(VNFC)未来的资源需求。每个VNFC的拓扑信息是通过结合其过去的资源利用情况以及其邻近VNFC对其的建模影响而得到的。我们的建议已经使用虚拟IP多媒体子系统(IMS)的部署和真实的VoIP流量跟踪进行了评估,结果显示平均预测准确率为90%。此外,与手动和/或静态分配资源的场景相比,我们的建议将呼叫丢失的平均数量减少了至少27%,并将呼叫建立延迟提高了29%以上。
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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