web服务器流量拥塞的可预测性

Y. Baryshnikov, E. Coffman, G. Pierre, D. Rubenstein, M. Squillante, T. Yimwadsana
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引用次数: 64

摘要

在互联网上,对内容需求的大幅波动是司空见惯的。但是,当出现流量热点时,在应用内容大量复制等措施之前会有一定的延迟。本文研究了预测热点的潜力,尽管很短,但提前足够远,以便在火锅发生之前采取预防措施。乍一看,执行准确的负载预测似乎是一项艰巨的挑战,但本文表明,当应用于web服务器页面请求流量时,即使是最基本的预测技术也可以具有惊人的预测能力。我们首先从原理上论证这种可预测性,然后通过对经验数据的分析来证实它,这些数据表明,大型服务器过载通常可以提前很好地看到。这样就可以采取措施,大大减少服务质量的下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictability of Web-server traffic congestion
Large swings in the demand for content are commonplace within the Internet. When a traffic hotspot happens, however, there is a delay before measures such as heavy replication of content can be applied. This paper investigates the potential for predicting hotspots sufficiently far, albeit shortly, in advance, so that preventive action can be taken before the hotpot takes place. Performing accurate load predictions appears to be a daunting challenge at first glance, but this paper shows that, when applied to Web-server page-request traffic, even elementary prediction techniques can have a surprising forecasting power. We first argue this predictability from principles, and then confirm it by the analysis of empirical data, which reveals that large server overloads can often be seen well in advance. This allows steps to be taken to reduce substantially the degradation of service quality.
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