基于神经网络的共享Web缓存系统热点预测算法

S. Yoo, K. Chong
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引用次数: 4

摘要

随着Web人口的增长,万维网上的网络流量也在增加,这对网络的利用率产生了很大的影响。在WWW上,有无数的对象,流行的和不流行的,其中经常被用户请求的对象被称为“热点”。热点通常会给缓存服务器和原始服务器带来过大的负载,导致系统陷入瘫痪状态。针对热点问题,提出了一种基于神经网络的热点预测算法。在预测后,将在代理服务器中预取近期请求的热点。因此,可以更快地响应用户的请求,提高代理服务器的效率。利用神经网络方法对访问日志文件进行分析,得到热点。为了验证所建议的算法的性能,使用PERL语言开发了一个模拟器,通过该模拟器提高了命中率,并且共享代理服务器之间的请求得到了很好的负载平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hot Spot Prediction Algorithm for Shared Web Caching System Using NN
As the population of Web grows, network traffic on the World Wide Web increases, which has a great impact on the network utilization. On WWW, there are innumerable objects, popular and unpopular of which the frequently requested object by users is called 'hot spot'. Often hot spot brings an excessive load to the cache server and original server, resulting in a swamped state in the system. In this paper, a hot spot prediction algorithm based on neural network has been suggested to solve the problems induced by hot spots. The hot spot to be requested in the near future will be prefetched into the proxy servers after predicting. Therefore, a faster responding to the users' requests and a higher efficiency of the proxy server can be achieved. Hot spots can be obtained by analyzing the access logs file using the neural network method. A simulator has been developed by using the PERL language in order to validate the performance of the suggested algorithm, through which the hit rate improves and the requests among the shared proxy servers are well load-balanced.
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