绕过服务器瓶颈:间接大规模P2P数据收集

Di Niu, Baochun Li
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引用次数: 7

摘要

在大多数大规模点对点(P2P)应用程序中,有必要从多达数百万个点收集重要统计数据(有时称为日志)。传统的解决方案涉及将大量此类数据发送到集中式日志服务器,这是不可扩展的。此外,它们可能无法从动态对等系统中离开的对等节点检索统计数据。在本文中,我们通过一种间接收集机制解决了这一困境,该机制使用随机网络编码在网络上分发数据,服务器主动从中提取此类统计数据。通过仅使用一小部分对等资源以分散的方式缓冲数据,我们表明,我们的新机制提供了一个“缓冲”区域和一个“平滑”因子来收集大量统计数据,并具有适当的对等动态弹性和对大量对等人口的可扩展性。
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Circumventing Server Bottlenecks: Indirect Large-Scale P2P Data Collection
In most large-scale peer-to-peer (P2P) applications, it is necessary to collect vital statistics data - sometimes referred to as logs - from up to millions of peers. Traditional solutions involve sending large volumes of such data to centralized logging servers, which are not scalable. In addition, they may not be able to retrieve statistics data from departed peers in dynamic peer-to-peer systems. In this paper, we solve this dilemma through an indirect collection mechanism that distributes data using random network coding across the network, from which servers proactively pull such statistics. By buffering data in a decentralized fashion with only a small portion of peer resources, we show that our new mechanism provides a "buffering" zone and a "smoothing" factor to collect large volumes of statistics, with appropriate resilience to peer dynamics and scalability to a large peer population.
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