首页> 外文会议>International Conference on Combinatorial Optimization and Applications(COCOA 2007); 20070814-16; Xi'an(CN) >A Grid Resource Discovery Method Based on Adaptive k-Nearest Neighbors Clustering
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A Grid Resource Discovery Method Based on Adaptive k-Nearest Neighbors Clustering

机译:基于自适应k最近邻聚类的网格资源发现方法

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Several features of today's grid are based on centralized or hierarchical services. However, as the grid size increasing, some of their functions especially resource discovery should be decentralized to avoid performance bottlenecks and guarantee scalability. A novel grid resource discovery method based on adaptive k-Nearest Neighbors clustering is presented in this paper. A class is formed by a collection of nodes with some similarities in their characteristics, each class is managed by a leader and consists of members that serve as workers. Resource requests are ideally forwarded to an appropriate class leader that would then direct it to one of its workers. This method can handle resource requests by searching a small subset out of a large number of nodes by resource clustering which can improve the resource query efficiency; on the other hand, it also achieves well scalability by managing grid resources with adaptive mechanism. It is shown from a series of experiments that the method presented in this paper achieves more scalability and efficient lookup performance than other existing methods.
机译:当今网格的一些功能基于集中式或分层服务。但是,随着网格大小的增加,应分散其某些功能(尤其是资源发现),以避免性能瓶颈并保证可伸缩性。提出了一种基于自适应k最近邻聚类的网格资源发现新方法。一个类是由节点的集合组成的,这些节点在特性上有一些相似之处,每个类都由一个领导者管理,并由充当工作者的成员组成。理想情况下,将资源请求转发给适当的班级负责人,该负责人然后将其定向给其一名工人。该方法可以通过资源聚类从大量节点中搜索一小部分子集来处理资源请求,可以提高资源查询效率。另一方面,通过使用自适应机制管理网格资源,它也实现了很好的可伸缩性。通过一系列实验表明,本文提出的方法比其他现有方法具有更高的可伸缩性和有效的查找性能。

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