Loseto Giuseppe, Scioscia Floriano, Ruta Michele, Gramegna Filippo, Ieva Saverio, Fasciano Corrado, Bilenchi Ivano, Loconte Davide
Department of Management, Finance and Technology, LUM University "Giuseppe Degennaro", Strada Statale 100 km 18, I-70010 Casamassima, Italy.
Department of Electrical and Information Engineering, Polytechnic University of Bari, Via E. Orabona 4, I-70125 Bari, Italy.
Sensors (Basel). 2022 Mar 10;22(6):2166. doi: 10.3390/s22062166.
Artificial Intelligence (AI) in Cyber-Physical Systems allows machine learning inference on acquired data with ever greater accuracy, thanks to models trained with massive amounts of information generated by Internet of Things devices. Edge Intelligence is increasingly adopted to execute inference on data at the border of local networks, exploiting models trained in the Cloud. However, the training tasks on Edge nodes are not supported yet with flexible dynamic migration between Edge and Cloud. This paper proposes a Cloud-Edge AI microservice architecture, based on Osmotic Computing principles. Notable features include: (i) containerized architecture enabling training and inference on the Edge, Cloud, or both, exploiting computational resources opportunistically to reach the best prediction accuracy; and (ii) microservice encapsulation of each architectural module, allowing a direct mapping with Commercial-Off-The-Shelf (COTS) components. Grounding on the proposed architecture: (i) a prototype has been realized with commodity hardware leveraging open-source software technologies; and (ii) it has been then used in a small-scale intelligent manufacturing case study, carrying out experiments. The obtained results validate the feasibility and key benefits of the approach.
网络物理系统中的人工智能(AI)借助物联网设备生成的大量信息训练的模型,可对采集到的数据进行机器学习推理,且准确性越来越高。边缘智能越来越多地被用于在本地网络边界对数据执行推理,利用在云端训练的模型。然而,边缘节点上的训练任务目前还不支持在边缘和云端之间进行灵活的动态迁移。本文基于渗透计算原理提出了一种云边缘AI微服务架构。显著特点包括:(i)容器化架构允许在边缘、云端或两者上进行训练和推理,机会性地利用计算资源以达到最佳预测精度;(ii)每个架构模块的微服务封装,允许与商用现货(COTS)组件直接映射。基于所提出的架构:(i)利用开源软件技术,用商用硬件实现了一个原型;(ii)然后将其用于一个小规模智能制造案例研究并进行实验。所获得的结果验证了该方法的可行性和主要优势。