揭示了图神经网络在SDN网络建模和优化方面的潜力

Krzysztof Rusek, J. Suárez-Varela, Albert Mestres, P. Barlet-Ros, A. Cabellos-Aparicio
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引用次数: 146

摘要

网络建模是构建自驾车软件定义网络的关键组成部分,特别是寻找满足管理员设定目标的最佳路由方案。然而,现有的建模技术不能满足对延迟和抖动等相关性能指标进行准确估计的要求。在本文中,我们提出了一种新的图神经网络(GNN)模型,该模型能够理解拓扑、路由和输入流量之间的复杂关系,从而准确估计每个源/目的地对的平均延迟和抖动。GNN专门用于学习和建模结构为图形的信息,因此,我们的模型能够在任意拓扑,路由方案和可变流量强度上进行推广。在本文中,我们展示了我们的模型在针对训练期间未见的拓扑、路由和流量进行测试时提供了准确的延迟和抖动估计(最坏情况R2 = 0.86)。此外,我们通过几个用例展示了该模型在网络运行中的潜力,这些用例显示了它在每源/目标对延迟/抖动路由优化中的有效使用,以及它通过在拓扑和路由方案中进行推理的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling the potential of Graph Neural Networks for network modeling and optimization in SDN
Network modeling is a critical component for building self-driving Software-Defined Networks, particularly to find optimal routing schemes that meet the goals set by administrators. However, existing modeling techniques do not meet the requirements to provide accurate estimations of relevant performance metrics such as delay and jitter. In this paper we propose a novel Graph Neural Network (GNN) model able to understand the complex relationship between topology, routing and input traffic to produce accurate estimates of the per-source/destination pair mean delay and jitter. GNN are tailored to learn and model information structured as graphs and as a result, our model is able to generalize over arbitrary topologies, routing schemes and variable traffic intensity. In the paper we show that our model provides accurate estimates of delay and jitter (worst case R2 = 0.86) when testing against topologies, routing and traffic not seen during training. In addition, we present the potential of the model for network operation by presenting several use-cases that show its effective use in per-source/destination pair delay/jitter routing optimization and its generalization capabilities by reasoning in topologies and routing schemes not seen during training.
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