分布式连续查询系统的动态负载管理

Yongluan Zhou, B. Ooi, K. Tan
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引用次数: 26

摘要

分布式流处理系统必须适应环境参数和服务器负载的变化。我们认为动态负载管理方案对于系统的可扩展性是必不可少的。特别是,我们期望诸如运行时期间的查询操作符迁移之类的激进方法能够带来长期的好处(特别是对于长时间运行的连续查询),尽管它们可能会产生一些短期开销。然而,迄今为止,针对这一问题提出的完整和实用的解决方案很少。本文提出了解决这一问题的方法。更具体地说,我们做出了以下贡献:我们正式定义了一个新的度量,性能比率(PR),用于度量每个查询的相对性能和整个系统的目标。通过建立一个新的成本模型,我们确定了可用于实现目标的启发式方法。我们提出了一个完整而实用的分布式负载管理方案,其中包括一个用于新发起查询的静态初始放置方案以及一个运行时动态方案。我们进行了广泛的实验研究,证明了我们技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic load management for distributed continuous query systems
A distributed stream processing system must adapt to changes in environment parameters and servers' load. We believe a dynamic load management scheme is indispensable for the system to be scalable. In particular, we expect aggressive methods such as query operator migration during runtime to bring long term benefit (especially for long running continuous queries) even though they may incur some short term overhead. However, to date few complete and practical solutions have been proposed for this problem. In this paper, we offer our solution to the problem. More specifically we make the following contributions: We formally define a new metric, performance ratio (PR), to measure the relative performance of each query and the objective for the whole system. By building a new cost model, we identify the heuristics that can be used to approach the objective. We propose a complete and practical distributed load management scheme, which includes a static initial placement scheme for newly, initiated queries as well as a runtime dynamic scheme. We conducted an extensive experimental study that shows the effectiveness of our technique.
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