Is Machine Learning Ready for Traffic Engineering Optimization?

Guillermo Bernárdez, Jos'e Su'arez-Varela, Albert Lopez, Bo-Xi Wu, Shihan Xiao, Xiangle Cheng, P. Barlet-Ros, A. Cabellos-Aparicio
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引用次数: 23

Abstract

Traffic Engineering (TE) is a basic building block of the Internet. In this paper, we analyze whether modern Machine Learning (ML) methods are ready to be used for TE optimization. We address this open question through a comparative analysis between the state of the art in ML and the state of the art in TE. To this end, we first present a novel distributed system for TE that leverages the latest advancements in ML. Our system implements a novel architecture that combines Multi-Agent Reinforcement Learning (MARL) and Graph Neural Networks (GNN) to minimize network congestion. In our evaluation, we compare our MARL+GNN system with DEFO, a network optimizer based on Constraint Programming that represents the state of the art in TE. Our experimental results show that the proposed MARL+GNN solution achieves equivalent performance to DEFO in a wide variety of network scenarios including three real-world network topologies. At the same time, we show that MARL+GNN can achieve significant reductions in execution time (from the scale of minutes with DEFO to a few seconds with our solution).
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机器学习为交通工程优化做好准备了吗?
流量工程(TE)是互联网的基本组成部分。在本文中,我们分析了现代机器学习(ML)方法是否已经准备好用于TE优化。我们通过ML的最新技术和TE的最新技术之间的比较分析来解决这个开放性问题。为此,我们首先提出了一种利用机器学习最新进展的新型分布式TE系统。我们的系统实现了一种结合了多智能体强化学习(MARL)和图神经网络(GNN)的新型架构,以最大限度地减少网络拥塞。在我们的评估中,我们将MARL+GNN系统与DEFO进行了比较,DEFO是一种基于约束规划的网络优化器,代表了TE中最先进的技术。我们的实验结果表明,提出的MARL+GNN解决方案在包括三种真实网络拓扑在内的各种网络场景中实现了与DEFO相当的性能。同时,我们证明了MARL+GNN可以显著减少执行时间(从DEFO的几分钟到我们的解决方案的几秒钟)。
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