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Operator-aware approach for boosting performance in RDF stream processing

机译:提升RDF流处理性能的操作员感知方法

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To enable efficiency in stream processing, the evaluation of a query is usually performed over bounded parts of (potentially) unbounded streams, i.e., processing windows "slide'' over the streams. To avoid inefficient re-evaluations of already evaluated parts of a stream in respect to a query, incremental evaluation strategies are applied, i.e., the query results are obtained incrementally from the result set of the preceding processing state without having to re-evaluate all input buffers. This method is highly efficient but it comes at the cost of having to maintain processing state, which is not trivial, and may defeat performance advantages of the incremental evaluation strategy. In the context of RDF streams the problem is further aggravated by the hard-to-predict evolution of the structure of RDF graphs over time and the application of sub-optimal implementation approaches, e.g., using relational technologies for storing data and processing states which incur significant performance drawbacks for graph-based query patterns. To address these performance problems, this paper proposes a set of novel operator-aware data structures coupled with incremental evaluation algorithms which outperform the counterparts of relational stream processing systems. This claim is demonstrated through extensive experimental results on both simulated and real datasets. (C) 2016 Elsevier B.V. All rights reserved.
机译:为了提高流处理的效率,通常对(可能)无边界流的有界部分执行查询评估,即处理窗口在流上“滑动”,以避免对流中已评估部分的低效率重新评估。对于查询,应用增量评估策略,即从先前处理状态的结果集中增量获取查询结果,而不必重新评估所有输入缓冲区,这种方法非常高效,但要付出代价必须保持处理状态的重要性,这是不平凡的,并且可能无法克服增量评估策略的性能优势在RDF流的情况下,RDF图的结构随着时间的推移难以预测的演变进一步加剧了这一问题以及次最佳实现方法的应用,例如,使用关系技术来存储数据和处理状态,这些状态会导致明显的性能基于图的查询模式的缺点。为了解决这些性能问题,本文提出了一套新颖的操作员感知数据结构,并结合了优于关系流处理系统同类产品的增量评估算法。通过在模拟和真实数据集上的大量实验结果证明了这一主张。 (C)2016 Elsevier B.V.保留所有权利。

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