增强以间隔为中心的分布式计算以支持增量图

Varad Kulkarni, Ruchi Bhoot, Animesh Baranawal, Yogesh L. Simmhan
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引用次数: 0

摘要

现实世界的图形,如社交网络、金融科技交易和万维网(WWW),本质上是动态的,并且有顶点和边的添加和删除。提出了区间中心模型(ICM),用于直观地设计和执行在顶点、边及其属性上具有生命周期的时间图上的分布式算法。时间图是先验的。窗口ICM (WICM)模型通过避免在内存中加载整个时间图进一步优化了其性能。在这里,我们扩展了WICM模型,对顶点和边缘随时间更新的动态图进行增量操作。我们通过解耦时间图更新的接收和应用,以及使用3种策略(JITM, DITM和AITM)对图进行计算来实现这一点。我们将我们的结果与本地WICM和strawman基线进行比较。我们在Reddit图表上的评估显示,在不影响正确性的情况下,性能提高了约40%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Interval-centric Distributed Computing to Support Incremental Graphs
Real-world graphs like social networks, fintech transactions and the World Wide Web (WWW) are dynamic in nature, and have addition and deletion of vertices and edges. The Interval-centric model (ICM) was proposed to intuitively design and execute distributed algorithms over temporal graphs having a lifespan on vertices, edges and their attributes. The temporal graphs are available a priori. The Windowed ICM (WICM) model further optimized its performance by avoiding the loading of the entire temporal graph in-memory. Here, we extend the WICM model to incrementally operate on dynamic graphs whose vertex and edge updates arrive over time. We achieve this by decoupling the receipt and application of updates to the temporal graph, and the computation on the graph using 3 strategies – JITM, DITM and AITM. We compare our results with the native WICM and strawman baseline. Our evaluation on the Reddit graph shows $\approx 40$% better performance without compromising on correctness
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