用于流量和位置估计的客户端聚类

Lisa Amini, H. Schulzrinne
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引用次数: 6

摘要

大规模、全局分布式网络服务的资源管理机制需要根据网络位置和这些客户端产生的预期负载将客户端组分配给服务器。目前的建议分别解决网络位置和交通建模。我们开发了一种新的聚类技术,解决了网络接近性和流量建模。我们的方法结合了网络感知聚类、位置推断和空间分析等技术。我们进行了一项基于测量的大型研究,以识别和评估Web流量集群。我们的研究将从两个世界范围的体育赛事网站收集的数百万个网络交易,以及数百万个网络延迟测量到数千个互联网地址集群联系起来。由于我们的技术同样适用于其他流量类型,因此它们在各种广域分布式计算优化以及Internet建模和仿真场景中都很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Client clustering for traffic and location estimation
Resource management mechanisms for large-scale, globally distributed network services need to assign groups of clients to servers according to network location and expected load generated by these clients. Current proposals address network location and traffic modeling separately. We develop a novel clustering technique that addresses both network proximity and traffic modeling. Our approach combines techniques from network-aware clustering, location inference, and spatial analysis. We conduct a large, measurement-based study to identify and evaluate Web traffic clusters. Our study links millions of Web transactions collected from two world-wide sporting event Websites, with millions of network delay measurements to thousands of Internet address clusters. Because our techniques are equally applicable to other traffic types, they are useful in a variety of wide-area distributed computing optimizations, and Internet modeling and simulation scenarios.
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