用多线程技术改进连续k近邻查询的通达性

Liao Wei, Wu Xiaoping, Zhang Qi, Zhong Zhinong
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引用次数: 4

摘要

传统的运动目标数据库面临着现代CMP处理器的快速发展。为了评估针对移动对象的大规模并发连续查询,需要开发适应内存层次结构和多核架构的并行处理技术和缓存意识算法,以最大限度地提高处理器的计算能力。本文介绍了一种高性能、适应性执行大规模并发连续查询处理的多级引擎(MSE),该引擎利用流水线策略,将连续查询处理分为预处理、执行和调度三个并行阶段,利用多线程技术提高并行性。基于MSE框架和运动对象网格索引,提出了一种大规模连续k近邻查询处理的多线程算法(MT-CNN)。MT-CNN算法使用线程工作负载并行性和缓存敏感的执行重组策略来提高空间和时间局部性。在双核平台上的实验评估和分析表明,MT-CNN算法比现有的传统优化算法实现了性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving throughout of continuous k-nearest neighbor queries with multi-threaded techniques
Traditional moving objects database has faced the rapid evolution of modern CMP processor. To evaluate massive concurrent continuous queries towards moving objects, parallel processing techniques and cache-conscious algorithms adapting to memory hierarchy and multi-core architecture should be developed to maximize the processor computation abilities. This paper introduces a multi-staged engine (MSE) for high performance and adaptable execution of massive concurrent continuous queries processing, which exploits pipeline strategy and departs the continuous query processing into three simultaneous stages: preprocessing, executing and dispatching modules to improve the parallelism with multi-threaded technology. Based on MSE framework and grid index for moving objects, we present a multi-threaded algorithm (MT-CNN) for massive continuous k nearest neighbor queries processing. MT-CNN algorithm uses threaded workload parallelism and cache-conscious execution reorganization strategies to improve the spatial and temporal locality. Experimental evaluation on a dual-core platform and analysis show that MT-CNN algorithm achieves a performance improvement over the existing traditional optimization counterparts.
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