基于集成模型的分布式数据集中的主动数据分配

T. Koukaras, Kostas Kolomvatsos
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摘要

物联网(IoT)的发展推动了将众多设备整合到一个可以提供各种服务的巨大基础设施中。设备位于靠近用户的位置,能够与用户及其环境进行交互以收集数据。收集到的数据通过边缘计算(EC)基础设施的“干预”传输到云端。EC中存在多个节点,这些节点可以承担保持一些处理活动接近最终用户的责任,从而最大限度地减少响应提供中的延迟。在本文中,我们详细介绍了一个模型,该模型支持有效的数据管理机制,以主动决定数据应该存储的位置。我们的目标是总结出一些数据集,显示出高准确性,因为它们的可靠性。在我们决定最终的分配之前,提出的方法处理收集到的数据和已经制定的数据集的相似性。任何决定都是在讨论数据集的概要上做出的,避免了处理大量数据。此外,我们还详细说明了将传入的观测和可用的概要相匹配的集合方案。通过相关的数值结果描述了所提方案的性能。
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Proactive Data Allocation in Distributed Datasets based on an Ensemble Model
The evolution of the Internet of Things (IoT) drives the incorporation of numerous devices into a huge infrastructure where various services can be provided. Devices are located close to users being capable to interact with them and their environment to collect data. The collected data are transferred to the Cloud through the ‘intervention’ of the Edge Computing (EC) infrastructure. Multiple nodes are present at the EC that can undertake the responsibility of keeping some processing activities close to end users, thus, minimizing the latency in the provision of responses. In this paper, we elaborate on a model that supports an efficient data management mechanism to proactively decide the location where data should be stored. We aim at concluding a number of datasets exhibiting a high accuracy as exposed by their solidity. The proposed approach deals with the similarity of the collected data and the already formulated datasets before we decide the final allocation. Any decision is made upon the synopses of the discussed datasets avoiding the processing of huge volumes of data. Additionally, we elaborate on an ensemble scheme for matching the incoming observations and the available synopses. The performance of the proposed scheme is depicted by the relevant numerical outcomes.
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