LGDCJul 22, 2021

A Proactive Management Scheme for Data Synopses at the Edge

arXiv:2107.10558v11 citations
Originality Incremental advance
AI Analysis

This addresses network stability and performance issues for IoT and edge computing applications by enabling efficient data knowledge sharing between distributed nodes.

The paper tackles the problem of network strain from transferring large IoT data volumes between edge nodes by proposing to exchange data synopses instead, using a continuous reasoning model with unsupervised machine learning to create temporal similarity maps for decisions like data migration. The result is a system that reveals dataset differences and supports processing activities, validated through extensive experiments.

The combination of the infrastructure provided by the Internet of Things (IoT) with numerous processing nodes present at the Edge Computing (EC) ecosystem opens up new pathways to support intelligent applications. Such applications can be provided upon humongous volumes of data collected by IoT devices being transferred to the edge nodes through the network. Various processing activities can be performed on the discussed data and multiple collaborative opportunities between EC nodes can facilitate the execution of the desired tasks. In order to support an effective interaction between edge nodes, the knowledge about the geographically distributed data should be shared. Obviously, the migration of large amounts of data will harm the stability of the network stability and its performance. In this paper, we recommend the exchange of data synopses than real data between EC nodes to provide them with the necessary knowledge about peer nodes owning similar data. This knowledge can be valuable when considering decisions such as data/service migration and tasks offloading. We describe an continuous reasoning model that builds a temporal similarity map of the available datasets to get nodes understanding the evolution of data in their peers. We support the proposed decision making mechanism through an intelligent similarity extraction scheme based on an unsupervised machine learning model, and, at the same time, combine it with a statistical measure that represents the trend of the so-called discrepancy quantum. Our model can reveal the differences in the exchanged synopses and provide a datasets similarity map which becomes the appropriate knowledge base to support the desired processing activities. We present the problem under consideration and suggest a solution for that, while, at the same time, we reveal its advantages and disadvantages through a large number of experiments.

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