Proactive hot spot avoidance for Web server dependability

P. Felber, T. Kaldewey, S. Weiss
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引用次数: 20

Abstract

Flash crowds, which result from the sudden increase in popularity of some online content, are among the most important problems that plague today's Internet. Affected servers are overloaded with requests and quickly become "hot spots." They usually suffer from severe performance failures or stop providing service altogether, as there are scarcely any effective techniques to scalably deliver content under hot spot conditions to all requesting clients. In this paper, we propose and evaluate collaborative techniques to detect and proactively avoid the occurrence of hot spots. Using our mechanisms, groups of small- to medium-sized Web servers can team up to withstand unexpected surges of requests in a cost-effective manner. Once a Web server detects a sudden increase in request traffic, it replicates on-the-fly the affected content on other Web servers; subsequent requests are transparently redirected to the copies to offload the primary server. Each server acts both as a primary source for its own content, and as a secondary source for other servers' content in the event of a flash-crowd; scalability and dependability are therefore achieved in a peer-to-peer fashion, with each peer contributing to, and benefiting from, the service. Our proactive hot spot avoidance techniques are implemented as a module for the popular Apache Web server. We have conducted a comprehensive experimental evaluation, which demonstrates that our techniques are effective at dealing with flash crowds and scaling to very high request loads.
针对Web服务器可靠性的主动热点避免
“闪人”是困扰当今互联网的最重要问题之一,它是由于某些在线内容的突然流行而导致的。受影响的服务器被请求过载,并迅速成为“热点”。它们通常遭受严重的性能故障或完全停止提供服务,因为几乎没有任何有效的技术可以在热点条件下可伸缩地向所有请求客户机交付内容。在本文中,我们提出并评估了用于检测和主动避免热点发生的协作技术。使用我们的机制,一组小型到中型的Web服务器可以组队以经济有效的方式承受意外的请求激增。一旦Web服务器检测到请求流量突然增加,它就会在其他Web服务器上实时复制受影响的内容;随后的请求被透明地重定向到副本,以卸载主服务器。每个服务器既作为自己内容的主要来源,又作为其他服务器内容的次要来源。因此,可伸缩性和可靠性是以点对点的方式实现的,每个点都对服务做出贡献并从中受益。我们的主动热点避免技术是作为流行的Apache Web服务器的模块实现的。我们已经进行了全面的实验评估,这表明我们的技术在处理快闪人群和扩展到非常高的请求负载方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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