Graph Algorithms in PGAS: Chapel and UPC++

Louis Jenkins, J. Firoz, Marcin Zalewski, C. Joslyn, Mark Raugas
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引用次数: 4

Abstract

The Partitioned Global Address Space (PGAS) programming model can be implemented either with programming language features or with runtime library APIs, each implementation favoring different aspects (e.g., productivity, abstraction, flexibility, or performance). Certain language and runtime features, such as collectives, explicit and asynchronous communication primitives, and constructs facilitating overlap of communication and computation (such as futures and conjoined futures) can enable better performance and scaling for irregular applications, in particular for distributed graph analytics. We compare graph algorithms in one of each of these environments: the Chapel PGAS programming language and the the UPC++ PGAS runtime library. We implement algorithms for breadth-first search and triangle counting graph kernels in both environments. We discuss the code in each of the environments, and compile performance data on a Cray Aries and an Infiniband platform. Our results show that the library-based approach of UPC++ currently provides strong performance while Chapel provides a high-level abstraction that, harder to optimize, still provides comparable performance.
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PGAS中的图算法:Chapel和upc++
分区全局地址空间(PGAS)编程模型既可以用编程语言特性实现,也可以用运行时库api实现,每种实现都倾向于不同的方面(例如,生产力、抽象、灵活性或性能)。某些语言和运行时特性,如集合、显式和异步通信原语,以及促进通信和计算重叠的构造(如期货和联合期货),可以为不规则应用程序提供更好的性能和可伸缩性,特别是对于分布式图分析。我们比较了这些环境中的图形算法:Chapel PGAS编程语言和upc++ PGAS运行库。我们在这两种环境中实现了宽度优先搜索和三角形计数图核的算法。我们讨论了每个环境中的代码,并在Cray Aries和Infiniband平台上编译性能数据。我们的结果表明,基于库的upc++方法目前提供了强大的性能,而Chapel提供了一个高级抽象,更难优化,仍然提供了相当的性能。
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