Supporting ad-hoc ranking aggregates

Chengkai Li, K. Chang, I. Ilyas
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引用次数: 77

Abstract

This paper presents a principled framework for efficient processing of ad-hoc top-k (ranking) aggregate queries, which provide the k groups with the highest aggregates as results. Essential support of such queries is lacking in current systems, which process the queries in a naïve materialize-group-sort scheme that can be prohibitively inefficient. Our framework is based on three fundamental principles. The Upper-Bound Principle dictates the requirements of early pruning, and the Group-Ranking and Tuple-Ranking Principles dictate group-ordering and tuple-ordering requirements. They together guide the query processor toward a provably optimal tuple schedule for aggregate query processing. We propose a new execution framework to apply the principles and requirements. We address the challenges in realizing the framework and implementing new query operators, enabling efficient group-aware and rank-aware query plans. The experimental study validates our framework by demonstrating orders of magnitude performance improvement in the new query plans, compared with the traditional plans.
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支持临时排序聚合
本文提出了一个有效处理ad-hoc top-k(排序)聚合查询的原则框架,该框架为k组提供最高聚合的结果。当前系统缺乏对此类查询的基本支持,它们以naïve materialize-group-sort模式处理查询,这种模式的效率非常低。我们的框架以三项基本原则为基础。上界原则规定了早期剪枝的要求,组排序原则和元排序原则规定了组排序原则和元排序原则。它们共同引导查询处理器朝着可证明的最优元组调度进行聚合查询处理。我们提出了一个新的执行框架来应用这些原则和要求。我们解决了在实现框架和实现新的查询操作符方面的挑战,实现了高效的组感知和排名感知查询计划。实验研究验证了我们的框架,与传统的查询计划相比,新查询计划的性能有了数量级的提高。
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