As data generation increasingly takes place on devices without a wired connection, machine learning (ML) related traffic will be ubiquitous in wireless networks. Many studies have shown that traditional wireless protocols are highly inefficient or unsustainable to support ML, which creates the need for new wireless communication methods. In this survey, we give an exhaustive review of the state-of-the-art wireless methods that are specifically designed to support ML services over distributed datasets. Currently, there are two clear themes within the literature, analog over-the-air computation and digital radio resource management optimized for ML. This survey gives a comprehensive introduction to these methods, reviews the most important works, highlights open problems, and discusses application scenarios.
翻译:由于数据生成越来越多地发生在没有有线连接的装置上,机器学习(ML)相关的通信在无线网络中将无处不在,许多研究表明,传统的无线协议效率极低或无法支持无线通信,这就产生了对无线通信新方法的需求。在这次调查中,我们详尽地审查了专门为支持分布式数据集的无线服务而设计的最先进的无线方法。目前,文献中有两个明确的主题,即模拟超空计算和为ML优化的数字无线电资源管理。这次调查全面介绍了这些方法,审查了最重要的工作,突出了尚未解决的问题,并讨论了应用方案。