Downtime Minimization for Real-time AI Service on Intelligent Edge Nodes: Micro-Renewal Method

Seungjun Hong, Seung-Jin Lee, Inhun Choi, E. Huh
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Abstract

As the innovation of computing infrastructure evolves to edge computing via cloud computing, intelligent devices such as robots, drones, and autonomous vehicles, which are mobile edge nodes, also surged. Since the edge nodes have limited resources, artificial intelligence services are provided based on lightweight containers. In addition, as intelligent edge node users increase and the categories of users become vast, in order to provide artificial intelligence services according to the situations of all users, data on each situation is collected, and it is necessary to continuously update the learning model. However, if the service is being provided, downtime is inevitable for the updated model to be applied to the service. Therefore, in this paper, we propose a micro-renewal method that minimizes the interruption of the service provided to users in real time when the learning model in the service is updated.
基于智能边缘节点的实时AI服务停机时间最小化:微更新方法
随着计算基础设施的革新通过云计算向边缘计算发展,作为移动边缘节点的机器人、无人机、自动驾驶汽车等智能设备也出现了激增。由于边缘节点资源有限,因此基于轻量级容器提供人工智能服务。此外,随着智能边缘节点用户的增加和用户类别的庞大,为了根据所有用户的情况提供人工智能服务,需要收集每种情况的数据,需要不断更新学习模型。但是,如果正在提供服务,则将更新的模型应用于服务的停机时间是不可避免的。因此,在本文中,我们提出了一种微更新方法,当服务中的学习模型更新时,将实时提供给用户的服务中断最小化。
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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