Data management and selectivity in collaborative pervasive edge computing

IF 3.3 3区 计算机科学 Q2 COMPUTER SCIENCE, THEORY & METHODS Computing Pub Date : 2024-05-27 DOI:10.1007/s00607-024-01297-8
Dimitrios Papathanasiou, Kostas Kolomvatsos
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Abstract

Context-aware data management becomes the focus of several research efforts, which can be placed at the intersection between the Internet of Things (IoT) and Edge Computing (EC). Huge volumes of data captured by IoT devices are processed in EC environments. Even if edge nodes undertake the responsibility of data management tasks, they are characterized by limited storage and computational resources compared to Cloud. Apparently, this mobilises the introduction of intelligent data selection methods capable of deciding which of the collected data should be kept locally based on end users/applications requests. In this paper, we devise a mechanism where edge nodes learn their own data selection filters, and decide the distributed allocation of newly collected data to their peers and/or Cloud once these data are not conformed with the local data filters. Our mechanism intents to postpone final decisions on data transfer to Cloud (e.g., data centers) to pervasively keep relevant data as close and as long to end users/applications as possible. The proposed mechanism derives a data-selection map across edge nodes by learning specific data sub-spaces, which facilitate the placement of processing tasks (e.g., analytics queries). This is very critical when we target to support near real time decision making and would like to minimize all parts of the tasks allocation procedure. We evaluate and compare our approach against baselines and schemes found in the literature showcasing its applicability in pervasive edge computing environments.

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协作式普适边缘计算中的数据管理和选择性
情境感知数据管理已成为多项研究工作的重点,可将其置于物联网(IoT)和边缘计算(EC)之间的交叉点。物联网设备捕获的大量数据会在 EC 环境中进行处理。即使边缘节点承担了数据管理任务,但与云计算相比,它们的存储和计算资源有限。显然,这就需要引入智能数据选择方法,能够根据终端用户/应用程序的要求决定哪些收集到的数据应保存在本地。在本文中,我们设计了一种机制,让边缘节点学习自己的数据选择过滤器,并在新收集的数据不符合本地数据过滤器时,决定将这些数据分布式地分配给对等节点和/或云。我们的机制旨在推迟将数据传输到云(如数据中心)的最终决定,从而使相关数据尽可能接近终端用户/应用,并尽可能长时间地保存在终端用户/应用中。所提出的机制通过学习特定的数据子空间,在边缘节点上生成数据选择图,从而促进处理任务(如分析查询)的放置。当我们以支持近乎实时的决策为目标,并希望尽量减少任务分配过程中的所有环节时,这一点非常关键。我们评估并比较了我们的方法与文献中的基线和方案,展示了它在普适边缘计算环境中的适用性。
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来源期刊
Computing
Computing 工程技术-计算机:理论方法
CiteScore
8.20
自引率
2.70%
发文量
107
审稿时长
3 months
期刊介绍: Computing publishes original papers, short communications and surveys on all fields of computing. The contributions should be written in English and may be of theoretical or applied nature, the essential criteria are computational relevance and systematic foundation of results.
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