Modern Artificial Intelligence (AI) technologies, led by Machine Learning (ML), have gained unprecedented momentum over the past decade. Following this wave of ``AI summer", the network research community has also embraced AI/ML algorithms to address many problems related to network operations and management. However, compared to their counterparts in other domains, most ML-based solutions have yet to receive large-scale deployment due to insufficient maturity for production settings. This paper concentrates on the practical issues of developing and operating ML-based solutions in real networks. Specifically, we enumerate the key factors hindering the integration of AI/ML in real networks and review existing solutions to uncover the missing considerations. We also highlight two potential directions, i.e., MLOps and Causal ML, that can close the gap. We believe this paper spotlights the system-related considerations on implementing \& maintaining ML-based solutions and invigorate their full adoption in future networks.
翻译:过去十年来,由机器学习(ML)领导的现代人工智能(AI)技术取得了前所未有的势头。在“AI 夏季”浪潮之后,网络研究界也采用AI/ML算法来解决与网络运作和管理有关的许多问题,然而,与其他领域的对应方相比,大多数基于ML的解决方案由于生产环境的成熟程度不够,尚未得到大规模部署。本文件集中讨论了在实际网络中开发和操作基于ML的解决方案的实际问题。具体地说,我们列举了妨碍AI/ML融入实际网络和审查现有解决方案以发现缺失的考虑因素的关键因素。我们还强调了两个潜在方向,即MLops和Causal ML,这两个方向可以弥合差距。我们认为,这份文件突出了与系统有关的考虑,即实施基于ML的解决方案,并在未来的网络中予以充分利用。</s>