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Study of scalable declustering algorithms for parallel grid files

机译:对并行网格文件可扩展性崩溃算法的研究

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The efficient storage and retrieval of large multidimensional datasets is an important concern for large-scale scientific computations, such as long-running time-dependent simulations which periodically generate snapshots of the state. The main challenge for efficiently handling such datasets is to minimize response time for multidimensional range queries. The grid file is one of the well known access methods for multidimensional and spatial data. We investigate effective and scalable declustering techniques for grid files with the primary goal of minimizing response time and the secondary goal of maximizing the fairness of data distribution. The main contributions of this paper are (1) the analytic and experimental evaluation of existing index-based declustering techniques and their extensions for grid files; and (2) the development of a proximity-based declustering algorithm called 'minimax', which is experimentally shown to scale and to consistently achieve better response time compared to available algorithms while maintaining perfect disk distribution.
机译:大型多维数据集的有效存储和检索是大规模科学计算的重要关注,例如长期运行的时间相关模拟,这些模拟周期性地生成状态的快照。有效处理此类数据集的主要挑战是最小化多维范围查询的响应时间。网格文件是多维和空间数据的众所周知的访问方法之一。我们调查网格文件的有效和可扩展的降调技术,具有最小化响应时间和最大化数据分布公平性的主要目标。本文的主要贡献是(1)对基于指数的索引的分析和实验评估,并对网格档案的扩展; (2)在实验上示出的基于近距离的降差算法的开发,其与可用算法相比,在实验上显示并始终如一地达到更好的响应时间,同时保持完美的磁盘分布。

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