结合边缘和云计算的移动分析:海报摘要

Ikechukwu Maduako, Hung Cao, Lilian Hernandez, M. Wachowicz
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引用次数: 1

摘要

使用移动物联网(IoMT)生成的数据进行移动性分析面临着许多挑战,其中包括从大量雾节点和IoMT设备获取数据流,到避免因无用的大量数据流而导致云溢出,从而引发瓶颈[1]。管理数据流正在成为IoMT的重要组成部分,因为它将决定未来应该在哪个平台上运行分析任务。数据流通常是具有高数据输入率的乱序元组序列,而移动性分析需要两个方向的实时数据流,从边缘到云,反之亦然。在将数据流拉到云端之前,需要对边缘数据流进行处理,检测缺失、破碎、重复的元组,识别到达时间无序的元组。数据过滤、数据清理和低级数据上下文化等分析任务可以在网络边缘执行。相比之下,更复杂的分析任务(如图形处理)可以部署在云中,特别查询和流图分析的结果可以根据用户应用程序的需要推送到边缘。图是移动分析中使用的有效表示,因为它们统一了移动事物之间的连接、接近和交互的知识。
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Combining edge and cloud computing for mobility analytics: poster abstract
Mobility analytics using data generated from the Internet of Mobile Things (IoMT) is facing many challenges which range from the ingestion of data streams coming from a vast number of fog nodes and IoMT devices to avoiding overflowing the cloud with useless massive data streams that can trigger bottlenecks [1]. Managing data flow is becoming an important part of the IoMT because it will dictate in which platform analytical tasks should run in the future. Data flows are usually a sequence of out-of-order tuples with a high data input rate, and mobility analytics requires a real-time flow of data in both directions, from the edge to the cloud, and vice-versa. Before pulling the data streams to the cloud, edge data stream processing is needed for detecting missing, broken, and duplicated tuples in addition to recognize tuples whose arrival time is out of order. Analytical tasks such as data filtering, data cleaning and low-level data contextualization can be executed at the edge of a network. In contrast, more complex analytical tasks such as graph processing can be deployed in the cloud, and the results of ad-hoc queries and streaming graph analytics can be pushed to the edge as needed by a user application. Graphs are efficient representations used in mobility analytics because they unify knowledge about connectivity, proximity and interaction among moving things.
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