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Fuzzy Clustering with Feature Weight Preferences for Load Balancing in Cloud

机译:具有功能权重首选项的模糊聚类,用于云中的负载平衡

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摘要

Load balancing, which redistributes dynamic workloads across computing nodes within cloud to improve resource utilization, is one of the main challenges in cloud computing system. Most existing rule-based load balancing algorithms failed to effectively fuse load data of multi-class system resources. The strategies they used for balancing loads were far from optimum since these methods were essentially performed in a combined way according to load state. In this work, a fuzzy clustering method with feature weight preferences is presented to overcome the load balancing problem for multi-class system resources and it can achieve an optimal balancing solution by load data fusion. Feature weight preferences are put forward to establish the relationship between prior knowledge of specific cloud scenario and load balancing procedure. Extensive experiments demonstrate that the proposed method can effectively balance loads consisting of multi-class system resources.
机译:负载平衡是云计算系统的主要挑战之一,负载平衡可在云中的计算节点之间重新分配动态工作负载以提高资源利用率。现有的大多数基于规则的负载均衡算法都无法有效融合多类系统资源的负载数据。他们用于平衡负载的策略远非最佳,因为这些方法基本上是根据负载状态以组合方式执行的。本文提出了一种具有特征权重偏好的模糊聚类方法,以克服多类系统资源的负载均衡问题,并通过负载数据融合实现最优的均衡解决方案。提出了特征权重偏好,以建立特定云场景的先验知识与负载平衡过程之间的关系。大量实验表明,该方法可以有效地平衡由多类系统资源组成的负载。

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