Machine learning systems (MLSys) are emerging in the Internet of Things (IoT) to provision edge intelligence, which is paving our way towards the vision of ubiquitous intelligence. However, despite the maturity of machine learning systems and the IoT, we are facing severe challenges when integrating MLSys and IoT in practical context. For instance, many machine learning systems have been developed for large-scale production (e.g., cloud environments), but IoT introduces additional demands due to heterogeneous and resource-constrained devices and decentralized operation environment. To shed light on this convergence of MLSys and IoT, this paper analyzes the trade-offs by covering the latest developments (up to 2020) on scaling and distributing ML across cloud, edge, and IoT devices. We position machine learning systems as a component of the IoT, and edge intelligence as a socio-technical system. On the challenges of designing trustworthy edge intelligence, we advocate a holistic design approach that takes multi-stakeholder concerns, design requirements and trade-offs into consideration, and highlight the future research opportunities in edge intelligence.
翻译:机械学习系统(MLSys)在物联网中正在出现,以提供前沿情报,这为我们实现无处不在的智能愿景铺平了道路;然而,尽管机器学习系统和IOT已经成熟,但我们在将MLSys和IOT结合到实际操作中时正面临严峻挑战;例如,许多机器学习系统是为大规模生产(如云层环境)开发的,但IOT由于各种和资源受限制的装置和分散作业环境而带来额外需求;为了揭示MLSys和IOT的这种趋同,本文通过涵盖(到2020年)在云层、边缘和IOT装置之间扩大和传播ML的最新发展动态(截至2020年)来分析权衡取舍。我们把机器学习系统作为IOT的组成部分,边缘情报作为社会技术系统。关于设计可信赖的边缘情报的挑战,我们提倡一种整体设计方法,考虑到多方利益攸关方的关切、设计要求和交易,并突出前沿情报的未来研究机会。