Leveraging run time knowledge about event rates to improve memory utilization in wide area data stream filtering

Beth Plale
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引用次数: 19

Abstract

The dQUOB system conceptualization of data streams as database and its SQL interface to data streams is an intuitive way for users to think about their data needs in a large scale application containing hundreds if not thousands of data streams. Experience with dQUOB has shown the need for more aggressive memory management to achieve the scalability we desire. This paper addresses the problem with a two-fold solution. The first one is replacement of the existing first-come first-served scheduling algorithm with an earliest job first algorithm which we demonstrate to yield better average service time. The second one is an introspection algorithm that sets and adapts the sizes of join windows in response to the knowledge acquired at runtime about event rates. In addition to the potential for significant improvements in memory utilization, the algorithm presented here also provides a means by which the user can reason about join window sizes. Wide area measurements demonstrate the adaptive capability required by the introspection technique.
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利用有关事件率的运行时知识来提高广域数据流过滤中的内存利用率
dQUOB系统将数据流概念化为数据库,它与数据流的SQL接口是用户在包含数百甚至数千个数据流的大型应用程序中考虑数据需求的一种直观方式。使用dQUOB的经验表明,需要更积极的内存管理来实现我们想要的可伸缩性。本文用一个双重解决方案来解决这个问题。第一个是用最早的作业优先算法取代现有的先到先得调度算法,并证明该算法可以获得更好的平均服务时间。第二种是自省算法,它根据在运行时获得的关于事件率的知识来设置和调整连接窗口的大小。除了可能显著提高内存利用率之外,这里介绍的算法还提供了一种方法,用户可以通过这种方法推断连接窗口的大小。广域测量证明了自省技术所需的自适应能力。
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