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Streaming MASSIF: Cascading Reasoning for Efficient Processing of IoT Data Streams

机译:流式MASSIF:物联网数据流高效处理的级联推理

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摘要

In the Internet of Things (IoT), multiple sensors and devices are generating heterogeneous streams of data. To perform meaningful analysis over multiple of these streams, stream processing needs to support expressive reasoning capabilities to infer implicit facts and temporal reasoning to capture temporal dependencies. However, current approaches cannot perform the required reasoning expressivity while detecting time dependencies over high frequency data streams. There is still a mismatch between the complexity of processing and the rate data is produced in volatile domains. Therefore, we introduce Streaming MASSIF, a Cascading Reasoning approach performing expressive reasoning and complex event processing over high velocity streams. Cascading Reasoning is a vision that solves the problem of expressive reasoning over high frequency streams by introducing a hierarchical approach consisting of multiple layers. Each layer minimizes the processed data and increases the complexity of the data processing. Cascading Reasoning is a vision that has not been fully realized. Streaming MASSIF is a layered approach allowing IoT service to subscribe to high-level and temporal dependent concepts in volatile data streams. We show that Streaming MASSIF is able to handle high velocity streams up to hundreds of events per second, in combination with expressive reasoning and complex event processing. Streaming MASSIF realizes the Cascading Reasoning vision and is able to combine high expressive reasoning with high throughput of processing. Furthermore, we formalize semantically how the different layers in our Cascading Reasoning Approach collaborate.
机译:在物联网(IoT)中,多个传感器和设备正在生成异构数据流。为了对这些流中的多个执行有意义的分析,流处理需要支持表达推理功能以推断隐式事实和时间推理以捕获时间依赖性。但是,当前的方法无法在检测高频数据流上的时间依赖性时执行所需的推理表达。处理的复杂性与速率数据在易失域中产生之间仍然存在不匹配。因此,我们介绍了Streaming MASSIF,这是一种在高速流上执行表达性推理和复杂事件处理的级联推理方法。级联推理是一种愿景,它通过引入由多层组成的分层方法来解决高频流中的表达推理问题。每一层都将处理的数据最小化,并增加了数据处理的复杂性。级联推理是一种尚未完全实现的愿景。流式MASSIF是一种分层方法,允许IoT服务在易失性数据流中订阅高层和时间相关的概念。我们展示了Streaming MASSIF能够结合表达推理和复杂事件处理功能,每秒处理多达数百个事件的高速流。流MASSIF实现了级联推理的愿景,并且能够将高表达推理与高处理吞吐量相结合。此外,我们在语义上形式化了级联推理方法中不同层之间的协作方式。

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