胶子:分布式异构图形分析的通信优化基板

Q1 Computer Science ACM Sigplan Notices Pub Date : 2018-06-11 DOI:10.1145/3296979.3192404
Roshan Dathathri, G. Gill, Loc Hoang, Hoang-Vu Dang, Alex Brooks, Nikoli Dryden, M. Snir, K. Pingali
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引用次数: 121

摘要

本文介绍了一种构建分布式内存图形分析系统的新方法,该方法利用处理器类型(CPU和GPU)、分区策略和编程模型的异质性。这种方法的关键是Gluon,一种通信优化基板。程序员在他们选择的共享内存编程系统中编写应用程序,并使用轻量级API将这些应用程序与Gluon连接起来。Gluon使这些程序能够在异构集群上运行,并通过利用图分区策略的结构和时间不变量以一种新颖的方式优化通信。为了证明Gluon支持不同编程模型的能力,我们将Gluon与Galois和Ligra共享内存图形分析系统连接起来,分别生成了这些系统的分布式内存版本,分别命名为D-Galois和D-Ligra。为了证明Gluon支持异构处理器的能力,我们将Gluon与IrGL(一种用于图形分析的最先进的单gpu系统)连接起来,产生了D-IrGL,这是第一个多gpu分布式内存图形分析系统。我们的实验是在多达256个主机和大约70,000个线程的CPU集群和多达64个gpu的多gpu集群上完成的。Gluon中的通信优化平均将端到端应用程序的执行时间提高了约2.6倍。D-Galois和D-IrGL具有良好的可扩展性,并且比最先进的分布式CPU图形分析系统Gemini的平均速度分别提高了~ 3.9倍和~ 4.9倍。
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Gluon: a communication-optimizing substrate for distributed heterogeneous graph analytics
This paper introduces a new approach to building distributed-memory graph analytics systems that exploits heterogeneity in processor types (CPU and GPU), partitioning policies, and programming models. The key to this approach is Gluon, a communication-optimizing substrate. Programmers write applications in a shared-memory programming system of their choice and interface these applications with Gluon using a lightweight API. Gluon enables these programs to run on heterogeneous clusters and optimizes communication in a novel way by exploiting structural and temporal invariants of graph partitioning policies. To demonstrate Gluon’s ability to support different programming models, we interfaced Gluon with the Galois and Ligra shared-memory graph analytics systems to produce distributed-memory versions of these systems named D-Galois and D-Ligra, respectively. To demonstrate Gluon’s ability to support heterogeneous processors, we interfaced Gluon with IrGL, a state-of-the-art single-GPU system for graph analytics, to produce D-IrGL, the first multi-GPU distributed-memory graph analytics system. Our experiments were done on CPU clusters with up to 256 hosts and roughly 70,000 threads and on multi-GPU clusters with up to 64 GPUs. The communication optimizations in Gluon improve end-to-end application execution time by ∼2.6× on the average. D-Galois and D-IrGL scale well and are faster than Gemini, the state-of-the-art distributed CPU graph analytics system, by factors of ∼3.9× and ∼4.9×, respectively, on the average.
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来源期刊
ACM Sigplan Notices
ACM Sigplan Notices 工程技术-计算机:软件工程
CiteScore
4.90
自引率
0.00%
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0
审稿时长
2-4 weeks
期刊介绍: The ACM Special Interest Group on Programming Languages explores programming language concepts and tools, focusing on design, implementation, practice, and theory. Its members are programming language developers, educators, implementers, researchers, theoreticians, and users. SIGPLAN sponsors several major annual conferences, including the Symposium on Principles of Programming Languages (POPL), the Symposium on Principles and Practice of Parallel Programming (PPoPP), the Conference on Programming Language Design and Implementation (PLDI), the International Conference on Functional Programming (ICFP), the International Conference on Object-Oriented Programming, Systems, Languages, and Applications (OOPSLA), as well as more than a dozen other events of either smaller size or in-cooperation with other SIGs. The monthly "ACM SIGPLAN Notices" publishes proceedings of selected sponsored events and an annual report on SIGPLAN activities. Members receive discounts on conference registrations and free access to ACM SIGPLAN publications in the ACM Digital Library. SIGPLAN recognizes significant research and service contributions of individuals with a variety of awards, supports current members through the Professional Activities Committee, and encourages future programming language enthusiasts with frequent Programming Languages Mentoring Workshops (PLMW).
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