LARRI: Learning-based Adaptive Range Routing for Highly Dynamic Traffic in WANs

Minghao Ye, Junjie Zhang, Zehua Guo, H. J. Chao
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Abstract

Traffic Engineering (TE) has been widely used by network operators to improve network performance and provide better service quality to users. One major challenge for TE is how to generate good routing strategies adaptive to highly dynamic future traffic scenarios. Unfortunately, existing works could either experience severe performance degradation under unexpected traffic fluctuations or sacrifice performance optimality for guaranteeing the worst-case performance when traffic is relatively stable. In this paper, we propose LARRI, a learning-based TE to predict adaptive routing strategies for future unknown traffic scenarios. By learning and predicting a routing to handle an appropriate range of future possible traffic matrices, LARRI can effectively realize a trade-off between performance optimality and worst-case performance guarantee. This is done by integrating the prediction of future demand range and the imitation of optimal range routing into one step. Moreover, LARRI employs a scalable graph neural network architecture to greatly facilitate training and inference. Extensive simulation results on six real-world network topologies and traffic traces show that LARRI achieves near-optimal load balancing performance in future traffic scenarios with up to 43.3% worst-case performance improvement over state-of-the-art baselines, and also provides the lowest end-to-end delay under dynamic traffic fluctuations.
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广域网中基于学习的高动态流量自适应范围路由
流量工程(Traffic Engineering, TE)技术被网络运营商广泛应用于提高网络性能,为用户提供更好的服务质量。TE面临的一个主要挑战是如何生成适合未来高度动态流量场景的良好路由策略。不幸的是,在意外的流量波动下,现有的工作可能会出现严重的性能下降,或者在流量相对稳定时,为了保证最坏情况的性能而牺牲性能最优性。在本文中,我们提出了LARRI,一种基于学习的TE来预测未来未知流量场景的自适应路由策略。通过学习和预测路由来处理适当范围的未来可能的流量矩阵,LARRI可以有效地实现性能最优性和最坏情况性能保证之间的权衡。这是通过将未来需求范围的预测和最优范围路由的模仿整合到一个步骤来实现的。此外,LARRI采用可扩展的图神经网络架构,大大方便了训练和推理。对六种真实网络拓扑和流量轨迹的广泛模拟结果表明,LARRI在未来的流量场景中实现了近乎最佳的负载平衡性能,与最先进的基线相比,最坏情况下的性能提高了43.3%,并且在动态流量波动下提供了最低的端到端延迟。
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