Highly Scalable Large-Scale Asynchronous Graph Processing using Actors

Youssef Elmougy, Akihiro Hayashi, Vivek Sarkar
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Abstract

With the accelerating growth of Big Data, real-world graph processing applications now need to tackle graphs with billions of vertices and trillions of edges, thereby increasing the demand for effective solutions to application scalability. Unfortunately, current approaches to implementing these applications on modern HPC systems exhibit poor scale-out performance with increasing numbers of nodes. The scalability challenges for these applications are driven by large data sizes, synchronization overheads, and fine-grained communications with irregular data accesses and poor locality. This paper presents the scalability of a novel Actor-based programming system, which provides a lightweight runtime that supports fine-grained asynchronous execution and automatic message aggregation atop a Partitioned Global Address Space (PGAS) communication layer. Evaluations of the Jaccard Index and PageRank applications on the NERSC Perlmutter system demonstrate nearly perfect scaling up to 1,000 nodes and 64K cores (one-third of the targeted 3000-nodes for Perlmutter). In addition, our Actor-based implementations of Jaccard Index and PageRank executed with parallel efficiencies of 85.7% and 63.4% for the largest run of 64K cores. This performance represents a 29.6 × speedup relative to UPC and OpenSHMEM versions of PageRank.
使用actor的高可伸缩大规模异步图形处理
随着大数据的加速发展,现实世界的图形处理应用需要处理数十亿个顶点和数万亿条边的图形,从而增加了对应用可扩展性有效解决方案的需求。不幸的是,当前在现代HPC系统上实现这些应用程序的方法随着节点数量的增加而表现出较差的横向扩展性能。这些应用程序的可伸缩性挑战是由大数据量、同步开销以及具有不规则数据访问和糟糕局部性的细粒度通信所驱动的。本文介绍了一种新的基于actor的编程系统的可伸缩性,该系统提供了一个轻量级运行时,支持细粒度异步执行和在分区全局地址空间(PGAS)通信层上的自动消息聚合。对NERSC Perlmutter系统上的Jaccard Index和PageRank应用程序的评估表明,扩展到1,000个节点和64K核(Perlmutter目标3,000个节点的三分之一)几乎是完美的。此外,我们基于actor的Jaccard Index和PageRank实现在最大64K核运行时的并行效率分别为85.7%和63.4%。相对于UPC和OpenSHMEM版本的PageRank,这个性能代表了29.6倍的加速。
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