基于图神经网络的业务功能链网络自动控制

DongNyeong Heo, Stanislav Lange, Heegon Kim, Heeyoul Choi
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引用次数: 15

摘要

软件定义网络(SDN)和网络功能虚拟化(NFV)通过降低支出,推动了基于软件的控制技术的巨大发展。业务功能链(SFC)是一种在网络服务器中寻找有效路径来处理所有请求的虚拟网络功能(VNF)的重要技术。然而,SFC具有挑战性,因为即使在复杂的情况下,它也必须保持高质量的服务(QoS)。虽然已经有一些工作是用深度神经网络(dnn)等高级智能模型进行的,但这些方法在利用网络的拓扑信息方面效率不高,并且由于它们的模型假设拓扑是固定的,因此无法应用于拓扑动态变化的网络。本文考虑网络拓扑结构的图结构特性,提出了一种基于图神经网络(GNN)的SFC神经网络结构。提出的SFC模型由一个编码器和一个解码器组成,其中编码器找到网络拓扑的表示,然后解码器估计邻域节点的概率及其概率来处理VNF。在实验中,我们提出的架构优于先前基于DNN的基线模型的性能。此外,基于GNN的模型可以应用于新的网络拓扑,无需重新设计和重新训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Neural Network based Service Function Chaining for Automatic Network Control
Software-defined networking (SDN) and the network function virtualization (NFV) led to great developments in software based control technology by decreasing expenditures. Service function chaining (SFC) is an important technology to find efficient paths in network servers to process all of the requested virtualized network functions (VNF). However, SFC is challenging since it has to maintain high Quality of Service (QoS) even for complicated situations. Although some works have been conducted for such tasks with high-level intelligent models like deep neural networks (DNNs), those approaches are not efficient in utilizing the topology information of networks and cannot be applied to networks with dynamically changing topology since their models assume that the topology is fixed. In this paper, we propose a new neural network architecture for SFC, which is based on graph neural network (GNN) considering the graph-structured properties of network topology. The proposed SFC model consists of an encoder and a decoder, where the encoder finds the representation of the network topology, and then the decoder estimates probabilities of neighborhood nodes and their probabilities to process a VNF. In the experiments, our proposed architecture outperformed previous performances of DNN based baseline model. Moreover, the GNN based model can be applied to a new network topology without re-designing and re-training.
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