Evaluating stream predicates over dynamic fields

J. Whittier, Qinghan Liang, Silvia Nittel
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引用次数: 4

Abstract

Technological advances have created an unprecedented availability of inexpensive sensors able to stream environmental data in real-time. However, we still seek appropriate data management technology capable of handling this onslaught of sampling in previously unavailable spatial and temporal density. Data stream engines (DSEs) are state of the art data management tools that have update throughput rates of up to 500k tuples/s. In previous work we have shown that DSEs can be extended to generate smooth representations of continuous spatio-temporal fields sampled by up to 250K sensors on-the-fly in near real-time, creating a new representation every second. In this paper we investigate a spatio-temporal stream operator framework that can efficiently execute predicate operators over such spatio-temporal fields. Typical predicates are e.g. "find all sub-areas in a field that are below or above a certain threshold value". We present the requirements, the approach taken, and our results along with a performance evaluation.
评估动态字段上的流谓词
技术进步创造了前所未有的廉价传感器,能够实时传输环境数据。然而,我们仍然寻求适当的数据管理技术,能够在以前不可用的空间和时间密度中处理这种采样冲击。数据流引擎(DSEs)是最先进的数据管理工具,其更新吞吐率高达500k元组/s。在之前的工作中,我们已经证明,DSEs可以扩展到生成连续时空场的平滑表示,由多达250K个传感器实时采样,每秒创建一个新的表示。在本文中,我们研究了一个时空流算子框架,它可以有效地在这些时空域上执行谓词算子。典型的谓语有e.g.。“查找字段中低于或高于某个阈值的所有子区域”。我们提出了需求、采取的方法和我们的结果以及性能评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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