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Scalable Processing of Massive Uncertain Graph Data: A Simultaneous Processing Approach

机译:海量不确定图形数据的可扩展处理:一种同时处理方法

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This paper studies a novel approach to processing massive uncertain graph data. In this approach, we propose a new framework to simultaneously process a query on a set of randomly sampled possible worlds of an uncertain graph. Based on this framework, we develop a series of algorithms to analyze massive uncertain graphs, including breadth-first search, shortest distance queries, triangle counting, and core decomposition. We implement this approach based on GraphLab, one of the stateof-the-art graph processing frameworks. By sharing fine-grained internal processing steps on common substructures of sampled possible worlds, the new approach achieves tens to hundreds of times speedup in execution time on a cluster of 20 servers.
机译:本文研究了一种处理大量不确定图数据的新颖方法。在这种方法中,我们提出了一个新的框架来同时处理对不确定图的一组随机采样的可能世界的查询。基于此框架,我们开发了一系列算法来分析大量不确定图,包括广度优先搜索,最短距离查询,三角形计数和核心分解。我们基于GraphLab(最先进的图形处理框架之一)实施此方法。通过在可能的采样世界的通用子结构上共享细粒度的内部处理步骤,该新方法可在20台服务器的群集上实现数十至数百倍的执行时间加速。

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