基于mapreduce的数据预处理的5g边缘计算

I. Satoh
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引用次数: 1

摘要

边缘计算(包括雾计算)的概念是将处理传感系统生成的数据的任务从服务器端转移到网络边缘。由传感系统直接测量的数据往往包含噪声和损耗,并且是非规范表示。通常需要对这些数据进行预处理,以减少噪声并将数据转换为规范表示。MapReduce处理最初被设计为在高性能服务器集群上执行,对于预处理在网络边缘生成的数据也很有用。为了支持边缘计算,我们之前开发了一种方法,使嵌入式计算机能够通过有线或无线局域网以点对点的方式进行处理。本文的目的是扩展我们现有的方法,使其能够在5G网络上工作。扩展方法将边缘节点连接到基站,但不是直接连接节点。本文描述了该扩展及其性能。该扩展基于我们之前的方法,但与5G网络的其他嵌入式计算系统有几个共同的贡献。
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5G-enabled Edge Computing for MapReduce-based Data Pre-processing
The notion of edge computing, including fog computing, is to shift tasks to process data generated from sensing systems from the server-side to the network edge. Data directly measured by sensing systems tend to contain noise and loss and be in a non-canonical representation. Pre-processing for such data is often needed to reduce noise and to translate the data to a canonical representation. MapReduce processing, which was originally designed to be executed on a cluster of high-performance servers, is also useful for pre-processing data generated at the edge of a network. To support edge computing, we previously developed an approach to enable processing in embedded computers connected through wired or wireless local area networks in a peer-to-peer manner. The purpose of this paper is to extend our existing approach to give it the ability to work 5G networks. The extended approach connects nodes at the edge to base stations but not directly nodes. This paper describes the extension and its performance. The extension is based on our previous approach but has several contributions in common with other embedded computing systems for 5G networks.
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