Exploiting locality of interest in online social networks

Mike P. Wittie, V. Pejović, Lara B. Deek, K. Almeroth, Ben Y. Zhao
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引用次数: 141

Abstract

Online Social Networks (OSN) are fun, popular, and socially significant. An integral part of their success is the immense size of their global user base. To provide a consistent service to all users, Facebook, the world's largest OSN, is heavily dependent on centralized U.S. data centers, which renders service outside of the U.S. sluggish and wasteful of Internet bandwidth. In this paper, we investigate the detailed causes of these two problems and identify mitigation opportunities. Because details of Facebook's service remain proprietary, we treat the OSN as a black box and reverse engineer its operation from publicly available traces. We find that contrary to current wisdom, OSN state is amenable to partitioning and that its fine grained distribution and processing can significantly improve performance without loss in service consistency. Through simulations of reconstructed Facebook traffic over measured Internet paths, we show that user requests can be processed 79% faster and use 91% less bandwidth. We conclude that the partitioning of OSN state is an attractive scaling strategy for Facebook and other OSN services.
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利用在线社交网络中的本地兴趣
在线社交网络(OSN)是有趣的、受欢迎的、具有社会意义的。他们成功的一个组成部分是他们庞大的全球用户基础。为了向所有用户提供一致的服务,Facebook作为世界上最大的OSN,严重依赖于美国的集中数据中心,这使得美国以外的服务变得缓慢,并且浪费了互联网带宽。在本文中,我们调查了这两个问题的详细原因,并确定了缓解机会。由于Facebook服务的细节仍然是专有的,我们将OSN视为一个黑盒子,并根据公开可用的痕迹对其操作进行逆向工程。我们发现,与目前的认知相反,OSN状态可以进行分区,其细粒度的分布和处理可以显著提高性能,而不会损失服务一致性。通过在测量的互联网路径上模拟重建的Facebook流量,我们表明用户请求的处理速度可以提高79%,使用的带宽减少91%。我们得出结论,OSN状态的分区对于Facebook和其他OSN服务来说是一个有吸引力的扩展策略。
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