网络宣言(第二部分):少傲慢,多谦逊

Q4 Computer Science Performance Evaluation Review Pub Date : 2023-09-28 DOI:10.1145/3626570.3626610
Walter Willinger, Arpit Gupta, Roman Beltiukov, Wenbo Guo
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引用次数: 2

摘要

应用人工智能(AI)和机器学习(ML)的最新技术来改进和自动化解决现实世界网络安全和性能问题(简称NetAI)所需的决策,这在网络研究人员中引起了极大的兴奋。然而,网络运营商在其生产网络中部署基于netai的解决方案时仍然非常不情愿。在本宣言的第一部分中,我们认为,为了获得运营商的信任,研究人员必须对NetAI采取比过去更科学的方法,努力开发可解释和可推广的学习模型。在这篇论文中,我们更进一步,假设这种“NetAI研究的开放”将要求对NetAI的大部分自信的傲慢让位给健康的谦逊。与其继续颂扬黑盒模型的优点和“魔力”,而黑盒模型在很大程度上混淆了在训练这些模型时所使用的数据所起的关键作用,不如协同研究工作来设计netai驱动的代理或系统,这些代理或系统在部署于生产环境时可以预期表现良好,并且在面对模棱两可的情况和现实世界的不确定性时也需要表现出强大的鲁棒性。我们描述了一个这样的努力,旨在开发一个新的ML管道,用于生成努力满足这些期望和要求的训练模型。
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A NetAI Manifesto (Part II): Less Hubris, more Humility
The application of the latest techniques from artificial intelligence (AI) and machine learning (ML) to improve and automate the decision-making required for solving real-world network security and performance problems (NetAI, for short) has generated great excitement among networking researchers. However, network operators have remained very reluctant when it comes to deploying NetAIbased solutions in their production networks. In Part I of this manifesto, we argue that to gain the operators' trust, researchers will have to pursue a more scientific approach towards NetAI than in the past that endeavors the development of explainable and generalizable learning models. In this paper, we go one step further and posit that this "opening up of NetAI research" will require that the largely self-assured hubris about NetAI gives way to a healthy dose humility. Rather than continuing to extol the virtues and "magic" of black-box models that largely obfuscate the critical role of the utilized data play in training these models, concerted research efforts will be needed to design NetAI-driven agents or systems that can be expected to perform well when deployed in production settings and are also required to exhibit strong robustness properties when faced with ambiguous situations and real-world uncertainties. We describe one such effort that is aimed at developing a new ML pipeline for generating trained models that strive to meet these expectations and requirements.
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来源期刊
Performance Evaluation Review
Performance Evaluation Review Computer Science-Computer Networks and Communications
CiteScore
1.00
自引率
0.00%
发文量
193
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