遗传算法在数据库客户端聚类中的应用

Je-Ho Park, V. Kanitkar, A. Delis, R. Uma
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引用次数: 2

摘要

在传统的两层客户机-服务器数据库中,客户机访问和修改驻留在公共服务器中的共享数据。随着客户机数量的增加,集中式数据库服务器可能成为性能瓶颈。为了克服这种可伸缩性问题,提出了一种三层客户机-服务器配置,其特点是将客户机划分为逻辑集群。这里的目标是最大化每个集群中的客户机之间的数据共享。我们提出了一种遗传算法来创建这样的客户端集群,并评估了用于生成初始解种群的两种不同技术。我们比较了两层和三层配置在事务周转时间和对象响应时间方面的性能。我们的实验结果表明,与两层架构相比,集群架构可以提供更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the use of genetic algorithms in database client clustering
In conventional two-tier client-server databases, clients access and modify shared data resident in a common server. As the number of clients increases, the centralized database server can become a performance bottleneck. In order to overcome this scalability problem, a three-tier client-server configuration has been proposed that features the partitioning of clients into logical clusters. Here, the objective is to maximize the data sharing among the clients in each cluster. We propose a genetic algorithm to create such client clusters and evaluate two different techniques for generating the initial solution populations. We compare the performance of the two-tier and three-tier configurations with respect to the transaction turnaround times and object response times. Our experimental results indicate that the clustered architecture can offer improved performance over its two-tier counterpart.
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