Optimizing OLAP heterogeneous computing based on Rabin-Karp Algorithm

Haytham Alzeini, S. Hameed, M. H. Habaebi
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引用次数: 4

Abstract

The enormous amount of data has been boundlessly growing over the last few decades and expected to exponentially do so in the future. However, a substantial size of this accumulated amount is discarded anyhow. The processing capabilities have been considered as one of the major barriers in the way of exploiting this priceless mine. Therefore, the issue has absorbed considerable part of researchers' concentration. OLAP has been considered as a powerful method for analysing excessive size of data that works closely to intelligent business, medical fields. Yet, such a method will always need increasing processing resources. Numerous enhancements have been suggested in order to improve OLAP performance, part of them has gone to the processing capabilities whereby parallel processing has occupied a sizeable space. A heterogeneous computing is a relatively recent approach that is being under examination. In this paper, through experimental results and based on Rabin-Karp Algorithm; we propose an optimized heterogeneous solution that takes into account the benefits and the boundaries in order to achieve a better OLAP performance in terms of response time with three times gain. In the light of our results; we present the achieved gain and possible future trends.
基于Rabin-Karp算法的OLAP异构计算优化
在过去的几十年里,巨大的数据量一直在无限增长,并且预计在未来会呈指数级增长。然而,无论如何,这些累积金额的很大一部分被丢弃了。加工能力一直被认为是开发这一无价之宝的主要障碍之一。因此,这一问题占据了研究人员相当一部分的注意力。OLAP被认为是分析与智能商业、医疗领域密切相关的超大规模数据的强大方法。然而,这种方法总是需要不断增加的处理资源。为了提高OLAP性能,已经提出了许多增强建议,其中一部分增强了处理能力,其中并行处理占据了相当大的空间。异构计算是一种相对较新的方法,目前正在研究中。本文通过实验结果,基于Rabin-Karp算法;我们提出了一种优化的异构解决方案,该解决方案考虑了优势和边界,以便在响应时间方面实现更好的OLAP性能,并获得三倍的增益。根据我们的结果;我们提出了已取得的成果和可能的未来趋势。
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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