A Cloud-Edge Artificial Intelligence Framework for Sensor Networks

G. Loseto, F. Scioscia, M. Ruta, F. Gramegna, S. Ieva, Corrado Fasciano, Ivano Bilenchi, Davide Loconte, E. Sciascio
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引用次数: 1

Abstract

Internet of Things devices allow building increasingly large-scale sensor networks for gathering heterogeneous high-volume data streams. Artificial Intelligence (AI) applications typically collect them into centralized cloud infrastructures to run computationally intensive Machine Learning (ML) tasks. According to the emerging edge computing paradigm, instead, data preprocessing, model training and inference can be distributed among devices at the border of the local network, exploiting data locality to improve response latency, bandwidth usage and privacy, at the cost of suboptimal model accuracy due to smaller training sets. The paper proposes a cloud-edge framework for sensor-based AI applications, enabling a dynamic trade-off between edge and cloud layers by means of: (i) a novel containerized microservice architecture, allowing the execution of both model training and prediction either on edge or on cloud nodes; (ii) flexible automatic migration of tasks between the edge and the cloud, based on opportunistic management of resources and workloads. In order to facilitate implementations, a scouting of compatible device platforms for field sensing and edge computing nodes has been carried out, as well as a selection of suitable open-source off-the-shelf software tools. Early experiments validate the feasibility and core benefits of the proposal.
传感器网络的云边缘人工智能框架
物联网设备允许构建越来越大规模的传感器网络,以收集异构的大容量数据流。人工智能(AI)应用程序通常将它们收集到集中式云基础设施中,以运行计算密集型机器学习(ML)任务。根据新兴的边缘计算范式,数据预处理、模型训练和推理可以分布在本地网络边界的设备之间,利用数据局部性来改善响应延迟、带宽使用和隐私,但代价是由于训练集较小而导致模型精度不理想。本文为基于传感器的人工智能应用提出了一个云边缘框架,通过以下方式实现边缘和云层之间的动态权衡:(i)一种新颖的容器化微服务架构,允许在边缘或云节点上执行模型训练和预测;(ii)基于对资源和工作负载的机会管理,在边缘和云之间灵活地自动迁移任务。为了便于实现,我们为现场传感和边缘计算节点寻找兼容的设备平台,并选择了合适的开源现成软件工具。前期实验验证了该方案的可行性和核心效益。
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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