Tackling Deployability Challenges in ML-Powered Networks

Q4 Computer Science
Noga H. Rotman
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引用次数: 0

Abstract

Following the success of Machine Learning (ML) in various fields such as natural language processing, computer vision and computational biology, there has been a growing interest in incorporating ML into the networking domain [5, 6, 14, 4, 9]. Today, ML-based algorithms for prominent networking problems such as congestion control, resource management and routing, perform very well when their training environment is faithful to the operational environment, achieving state-of-the-art results when compared to traditional algorithms. However, the adaptation of these algorithms to function in production environments has not been straightforward, as real-world networks may differ greatly from the data used for training, leading to a drop in performance when unleashed into the wild.
解决机器学习驱动网络中的可部署性挑战
随着机器学习(ML)在自然语言处理、计算机视觉和计算生物学等各个领域的成功,人们对将ML纳入网络领域的兴趣越来越大[5,6,14,4,9]。今天,基于机器学习的算法用于解决诸如拥塞控制、资源管理和路由等突出的网络问题,当它们的训练环境忠实于操作环境时,表现非常好,与传统算法相比,可以获得最先进的结果。然而,将这些算法应用到生产环境中并不是那么简单,因为现实世界的网络可能与用于训练的数据有很大的不同,从而导致在实际环境中性能下降。
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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来源期刊
Performance Evaluation Review
Performance Evaluation Review Computer Science-Computer Networks and Communications
CiteScore
1.00
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0.00%
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193
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