Learning to Route

Asaf Valadarsky, Michael Schapira, Dafna Shahaf, Aviv Tamar
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引用次数: 156

Abstract

Recently, much attention has been devoted to the question of whether/when traditional network protocol design, which relies on the application of algorithmic insights by human experts, can be replaced by a data-driven (i.e., machine learning) approach. We explore this question in the context of the arguably most fundamental networking task: routing. Can ideas and techniques from machine learning (ML) be leveraged to automatically generate "good" routing configurations? We focus on the classical setting of intradomain traffic engineering. We observe that this context poses significant challenges for data-driven protocol design. Our preliminary results regarding the power of data-driven routing suggest that applying ML (specifically, deep reinforcement learning) to this context yields high performance and is a promising direction for further research. We outline a research agenda for ML-guided routing.
学习路由
最近,人们非常关注依赖于人类专家算法见解应用的传统网络协议设计是否/何时可以被数据驱动(即机器学习)方法所取代的问题。我们在最基本的网络任务:路由的背景下探讨这个问题。机器学习(ML)的思想和技术能否被用来自动生成“好的”路由配置?我们关注域内流量工程的经典设置。我们观察到,这种情况对数据驱动的协议设计提出了重大挑战。我们关于数据驱动路由能力的初步结果表明,将ML(特别是深度强化学习)应用于这种情况可以产生高性能,并且是进一步研究的有希望的方向。我们概述了机器学习引导路由的研究议程。
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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