一种利用海量异构数据源实时检测事件的体系结构

G. Valkanas, D. Gunopulos, Ioannis Boutsis, V. Kalogeraki
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引用次数: 9

摘要

如今唾手可得的丰富信息使研究人员和实践者能够开发技术和应用程序来监控和应对各种情况:从网络拥堵到自然灾害。因此,问题不再是能否做到这一点,而是如何实时做到这一点,如果可能的话,如何主动做到这一点。因此,有必要开发一个平台,它将聚集所有必要的信息,并以最好的方式对其进行编排,以实现这些目标。在这种情况下出现的一个主要问题是输入数据的高度多样性,这些数据来自非常不同的来源,如传感器、智能手机、GPS信号和社交网络。大量的输入数据是确保高质量输出的礼物,但也是一种诅咒,因为需要更高的计算资源。在本文中,我们提出了一个框架的架构,该框架旨在收集、汇总和处理来自不同来源的各种感官输入。我们框架的一个显著特点是公民的积极参与。我们通过两个指示性用例指导框架如何满足需求的描述。
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An architecture for detecting events in real-time using massive heterogeneous data sources
The wealth of information that is readily available nowadays grants researchers and practitioners the ability to develop techniques and applications that monitor and react to all sorts of circumstances: from network congestions to natural catastrophies. Therefore, it is no longer a question of whether this can be done, but how to do it in real-time, and if possible proactively. Consequently, it becomes a necessity to develop a platform that will aggregate all the necessary information and will orchestrate it in the best way possible, towards meeting these goals. A main problem that arises in such a setting is the high diversity of the incoming data, obtained from very different sources such as sensors, smart phones, GPS signals and social networks. The large volume of the incoming data is a gift that ensures high quality of the produced output, but also a curse, because higher computational resources are needed. In this paper, we present the architecture of a framework designed to gather, aggregate and process a wide range of sensory input coming from very different sources. A distinctive characteristic of our framework is the active involvement of citizens. We guide the description of how our framework meets our requirements through two indicative use cases.
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