Using AI and IoT at the Edge of the network

Sanaa Lakrouni, Marouane Sebgui, Slimane Bah
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Abstract

In recent years, IoT devices have been widely used in a variety of sectors such as industry, smart farming, and smart homes. Its application requires performing high computational analysis in real-time. The research era of Artificial Intelligence has witnessed an intense development conducted by millions of research and applications that extend from systems recommendation to video/audio surveillance. AI algorithms have been deployed to IoT data to bring intelligent decisions for IoT applications. These numerous data increase the time of the data transition to the cloud, which becomes the bottleneck of the cloud-based architecture. The edge computing technology brings the AI algorithms to the Edge of the network to improve latency, bandwidth, and data privacy, and guarantee the high accuracy of the AI algorithms. Recently Federated learning (FL) is a machine learning technique that distributes the training among edge devices near to the data source in light of increasing privacy and leveraging from the massive data distributed among numerous edge devices. Therefore, in this paper, we introduce recent research that demonstrates the effectiveness of this approach and present the architectures, models, and methods that implement FL with IoT devices.
在网络边缘使用人工智能和物联网
近年来,物联网设备已广泛应用于工业、智能农业、智能家居等各个领域。它的应用需要进行实时的高计算分析。人工智能的研究时代见证了数以百万计的研究和应用的激烈发展,从系统推荐到视频/音频监控。人工智能算法已经部署到物联网数据中,为物联网应用带来智能决策。这些大量的数据增加了数据向云传输的时间,成为基于云的架构的瓶颈。边缘计算技术将人工智能算法带到网络边缘,提高时延、带宽和数据隐私性,保证人工智能算法的高精度。最近,联邦学习(FL)是一种机器学习技术,它将训练分布在靠近数据源的边缘设备上,以提高隐私性并利用分布在众多边缘设备上的大量数据。因此,在本文中,我们介绍了最近的研究,证明了这种方法的有效性,并介绍了用物联网设备实现FL的架构、模型和方法。
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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