To 4,000 compute nodes and beyond: network-aware vertex placement in large-scale graph processing systems

Karim Awara, H. Jamjoom, Panos Kalnis
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引用次数: 2

Abstract

The explosive growth of "big data" is giving rise to a new breed of large scale graph systems, such as Pregel. This poster describes our ongoing work in characterizing and minimizing the communication cost of Bulk Synchronous Parallel (BSP) graph mining systems, like Pregel, when scaling to 4,096 compute nodes. Existing implementations generally assume a fixed communication cost. This is sufficient in small deployments as the BSP programming model (i.e., overlapping computation and communication) masks small variations in the underlying network. In large scale deployments, such variations can dominate the overall runtime characteristics. In this poster, we first quantify the impact of network communication on the total compute time of a Pregel system. We then propose an efficient vertex placement strategy that subsamples highly connected vertices and applies the Reverse Cuthill-McKee (RCM) algorithm to efficiently partition the input graph and place partitions closer to each other based on their expected communication patterns. We finally describe a vertex replication strategy to further reduce communication overhead.
到4000计算节点及以上:大规模图形处理系统中的网络感知顶点放置
“大数据”的爆炸式增长正在催生一种新型的大规模图形系统,比如Pregel。这张海报描述了我们在扩展到4,096个计算节点时,在描述和最小化批量同步并行(BSP)图挖掘系统(如Pregel)的通信成本方面正在进行的工作。现有的实现通常假定一个固定的通信成本。这在小型部署中是足够的,因为BSP编程模型(即,重叠计算和通信)掩盖了底层网络中的小变化。在大规模部署中,这些变化可能会支配整个运行时特征。在这张海报中,我们首先量化了网络通信对Pregel系统总计算时间的影响。然后,我们提出了一种高效的顶点放置策略,该策略对高度连接的顶点进行子采样,并应用反向Cuthill-McKee (RCM)算法对输入图进行有效分区,并根据其期望的通信模式将分区放置在彼此更靠近的位置。最后,我们描述了一种顶点复制策略,以进一步减少通信开销。
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