由人口不足集群组成的内容分发网络的混合负载调度

D. Sarkar, N. Rakesh
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引用次数: 1

摘要

以高可用性、高效率和最小延迟的方式向全球分布式客户机提供内容是当今虚拟世界面临的主要挑战。内容交付网络(CDN)的发展目标是在客户端家门口以几乎零延迟发送数据。CDN在部署到客户端附近的各种边缘服务器上传播内容。但是定位部署位置和在服务器之间分担负载是CDN的两个主要关注点。本文考虑了无监督k -均值聚类来选择服务器部署的位置,该聚类还考虑了基于称为总体阈值的参数的未填充集群。本文介绍了一种混合负载分担模型,该模型主要考虑来自人口小于阈值的集群的流量。研究结果表明,这种混合方法提高了网络中部署的代理的服务器利用率,同时最小化了服务器维护和成本开销。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Load Scheduling in Content Delivery Network Comprising of Under Populated Clusters
Serving content to the worldwide distributed clients with high availability, high efficiency and minimum delay is the primary challenge for today's virtual world. Content delivery network (CDN) was evolved with the aim to send the data at the client's doorstep with almost zero latency. CDN disseminates the content at various edge servers deployed to the client's close proximity. But locating the positions for deployment and also sharing the load among the servers are two major concerns for CDN. In this paper, unsupervised K-means clustering is considered for selecting the locations for server deployment which also considers the under populated clusters based on a parameter called population threshold. This paper introduces a hybrid load sharing model which is mainly concerned about the traffic coming from the clusters with population lesser than the threshold. The result of the study shows that this hybrid approach enhances the server utilization factors of the surrogates deployed in the network while minimizes the server maintenance and cost overhead.
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