用基础模型重新思考数据驱动的网络:挑战与机遇

Franck Le, M. Srivatsa, R. Ganti, V. Sekar
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引用次数: 6

摘要

基础模型已经引起了人工智能(AI)系统构建方式的范式转变。它们在自然语言处理(NLP)和其他几个领域产生了重大影响,不仅减少了所需标记数据的数量,甚至消除了对它的需求,而且还显著提高了各种任务的性能。我们认为基础模型可以对网络流量分析和管理产生类似的深远影响。更具体地说,我们表明网络数据共享语言学基础模型成功背后的几个属性。例如,网络数据包含丰富的语义内容,并且一些网络任务(例如,流量分类,从规范文本生成协议实现,异常检测)可以在NLP中找到类似的对应项(例如,情感分析,从自然语言到代码的翻译,分布外)。然而,网络环境也呈现出独特的特征和必须克服的挑战。我们的贡献在于突出基金会模式和网络交叉的机遇和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rethinking data-driven networking with foundation models: challenges and opportunities
Foundational models have caused a paradigm shift in the way artificial intelligence (AI) systems are built. They have had a major impact in natural language processing (NLP), and several other domains, not only reducing the amount of required labeled data or even eliminating the need for it, but also significantly improving performance on a wide range of tasks. We argue foundation models can have a similar profound impact on network traffic analysis, and management. More specifically, we show that network data shares several of the properties that are behind the success of foundational models in linguistics. For example, network data contains rich semantic content, and several of the networking tasks (e.g., traffic classification, generation of protocol implementations from specification text, anomaly detection) can find similar counterparts in NLP (e.g., sentiment analysis, translation from natural language to code, out-of-distribution). However, network settings also present unique characteristics and challenges that must be overcome. Our contribution is in highlighting the opportunities and challenges at the intersection of foundation models and networking.
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