Memory-constrained aggregate computation over data streams

K. Naidu, R. Rastogi, Scott Satkin, A. Srinivasan
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引用次数: 14

Abstract

In this paper, we study the problem of efficiently computing multiple aggregation queries over a data stream. In order to share computation, prior proposals have suggested instantiating certain intermediate aggregates which are then used to generate the final answers for input queries. In this work, we make a number of important contributions aimed at improving the execution and generation of query plans containing intermediate aggregates. These include: (1) a different hashing model, which has low eviction rates, and also allows us to accurately estimate the number of evictions, (2) a comprehensive query execution cost model based on these estimates, (3) an efficient greedy heuristic for constructing good low-cost query plans, (4) provably near-optimal and optimal algorithms for allocating the available memory to aggregates in the query plan when the input data distribution is Zipf-like and Uniform, respectively, and (5) a detailed performance study with real-life IP flow data sets, which show that our multiple aggregates computation techniques consistently outperform the best-known approach.
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数据流上内存受限的聚合计算
在本文中,我们研究了在一个数据流上高效计算多个聚合查询的问题。为了共享计算,之前的建议建议实例化某些中间聚合,然后使用它们为输入查询生成最终答案。在这项工作中,我们做出了许多重要的贡献,旨在改进包含中间聚合的查询计划的执行和生成。这些包括:(1)不同的哈希模型,该模型具有较低的驱逐率,并允许我们准确地估计驱逐次数;(2)基于这些估计的综合查询执行成本模型;(3)用于构建良好的低成本查询计划的高效贪婪启发式算法;(4)当输入数据分布分别为Zipf-like和Uniform时,用于将可用内存分配给查询计划中的聚合的可证明的近最优和最优算法。(5)对真实IP流数据集进行了详细的性能研究,结果表明我们的多聚合计算技术始终优于最知名的方法。
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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