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首页> 外文期刊>International Journal of Database Management Systems >Delivering QOS in XML Data Stream Processing Using Load Shedding
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Delivering QOS in XML Data Stream Processing Using Load Shedding

机译:使用负载分担在XML数据流处理中交付QOS

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In recent years, we have witnessed the emergence of new types of systems that deal with large volumes of streaming data. Examples include financial data analysis on feeds of stock tickers, sensorbased environmental monitoring, network track monitoring and click stream analysis to push customized advertisements or intrusion detection. Traditional database management systems (DBMS), which are very good at managing large volumes of stored data, are not suitable for this, as streaming needs low-latency processing on live data from push-based sources. Data Stream Management Systems (DSMS) are fast emerging to address this new type of data, but faces challenging issues, such as unpredictable data arrival rate. On bursty mode, processing need surpasses available system capacity affecting the Quality of Service (QoS) adversely. The system overloading is even more acute in XML data streams compared to relational streams due to its extra resource requirements for data preparation and result construction. The main focus of this paper is to find out suitable ways to process this high volume of data streams dealing with the spikes in data arrival gracefully, under limited or fixed system resources in the XML stream context.
机译:近年来,我们目睹了处理大量流数据的新型系统的出现。示例包括股票行情自动收录的财务数据分析,基于传感器的环境监控,网络跟踪监控以及点击流分析以推送定制广告或入侵检测。传统的数据库管理系统(DBMS)非常擅长管理大量存储的数据,因此不适合此操作,因为流技术需要对基于推送的源中的实时数据进行低延迟处理。数据流管理系统(DSMS)迅速出现,可以处理这种新型数据,但面临着挑战性的问题,例如不可预测的数据到达率。在突发模式下,处理需要超过可用的系统容量,从而不利地影响服务质量(QoS)。与关系流相比,XML数据流中的系统过载甚至更为严重,这是由于其对数据准备和结果构造的额外资源需求。本文的主要重点是在XML流上下文中,在有限或固定的系统资源下,找到合适的方法来处理大量数据流,从而优雅地处理数据到达的峰值。

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