Scaling PageRank to 100 Billion Pages

S. Stergiou
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引用次数: 4

Abstract

Distributed graph processing frameworks formulate tasks as sequences of supersteps within which communication is performed asynchronously by sending messages over the graph edges. PageRank’s communication pattern is identical across all its supersteps since each vertex sends messages to all its edges. We exploit this pattern to develop a new communication paradigm that allows us to exchange messages that include only edge payloads, dramatically reducing bandwidth requirements. Experiments on a web graph of 38 billion vertices and 3.1 trillion edges yield execution times of 34.4 seconds per iteration, suggesting more than an order of magnitude improvement over the state-of-the-art.
将PageRank扩展到1000亿页
分布式图处理框架将任务制定为超步骤序列,其中通过在图边缘上发送消息来异步执行通信。PageRank的通信模式在其所有超步中都是相同的,因为每个顶点都向其所有边发送消息。我们利用这种模式开发了一种新的通信范例,它允许我们交换只包含边缘有效负载的消息,从而大大降低了带宽需求。在一个有380亿个顶点和3.1万亿个边的网络图上进行实验,每次迭代的执行时间为34.4秒,表明比最先进的技术提高了一个数量级以上。
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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