论文标题
数据概要管理基于深度学习模型
Data Synopses Management based on a Deep Learning Model
论文作者
论文摘要
普遍的计算涉及接近最终用户的处理服务以支持智能应用程序。随着物联网(IoT)和Edge Computing(EC)的出现,人们可以在上述基础架构互连时找到服务的空间。重要的是收集数据的处理。与IoT设备相比,可以在表现出更高的计算能力的EC节点上实现此类处理。在EC上创建了一个智能节点的生态系统,从而有机会支持合作模型。节点成为由IoT设备报告制定的地理分布数据集的主机。在数据集上,可以执行许多查询/任务。出于绩效原因,可以将查询/任务卸载。但是,应仔细设计的卸载操作与托管节点的数据始终对齐。在本文中,我们提出了一个模型,以支持EC基础架构中的合作方面。我们争辩说,将数据概要的传递到EC节点,使它们能够采取与同行中存在的数据完全一致的卸载决策。节点交换数据概要以告知他们的同龄人。我们提出了一个方案,该方案检测出适当的时间分发摘要,试图避免网络过载,尤其是由于IoT设备向EC节点报告数据的较高速率,因此经常提取介绍。我们的方法涉及一个深度学习模型,用于学习计算出的概要的分布并估计未来趋势。在这些趋势上,我们能够找到适当的时间向同伴节点传达概要。我们提供了建议的机制的描述,并根据实际数据集对其进行评估。在各种情况下进行了广泛的实验,通过给出数值结果来揭示了该方法的利弊。
Pervasive computing involves the placement of processing services close to end users to support intelligent applications. With the advent of the Internet of Things (IoT) and the Edge Computing (EC), one can find room for placing services at various points in the interconnection of the aforementioned infrastructures. Of significant importance is the processing of the collected data. Such a processing can be realized upon the EC nodes that exhibit increased computational capabilities compared to IoT devices. An ecosystem of intelligent nodes is created at the EC giving the opportunity to support cooperative models. Nodes become the hosts of geo-distributed datasets formulated by the IoT devices reports. Upon the datasets, a number of queries/tasks can be executed. Queries/tasks can be offloaded for performance reasons. However, an offloading action should be carefully designed being always aligned with the data present to the hosting node. In this paper, we present a model to support the cooperative aspect in the EC infrastructure. We argue on the delivery of data synopses to EC nodes making them capable to take offloading decisions fully aligned with data present at peers. Nodes exchange data synopses to inform their peers. We propose a scheme that detects the appropriate time to distribute synopses trying to avoid the network overloading especially when synopses are frequently extracted due to the high rates at which IoT devices report data to EC nodes. Our approach involves a Deep Learning model for learning the distribution of calculated synopses and estimate future trends. Upon these trends, we are able to find the appropriate time to deliver synopses to peer nodes. We provide the description of the proposed mechanism and evaluate it based on real datasets. An extensive experimentation upon various scenarios reveals the pros and cons of the approach by giving numerical results.