c++的PGAS扩展

Yili Zheng, A. Kamil, Michael B. Driscoll, H. Shan, K. Yelick
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引用次数: 175

摘要

分区全局地址空间(PGAS)语言对于表达具有大量随机访问数据的算法非常方便,并且它们已被证明可以通过轻量级的单侧通信和局域控制提供高性能和可伸缩性。虽然对于在系统中移动数据非常方便,但PGAS语言对计算模型有不同的看法,静态的单程序多数据(SPMD)模型提供了最佳的可伸缩性。在本文中,我们介绍了upc++,一个c++的PGAS扩展,它有三个主要目标:1)在流行的c++语言环境中提供面向对象的PGAS编程模型;2)添加UPC中不可用的有用的并行编程习惯,如异步远程函数调用和多维数组,以支持复杂的科学应用;3)通过与其他现有并行编程系统(例如MPI, OpenMP, CUDA)的互操作性,为PGAS编程提供一个简单的入口。我们使用c++模板和运行时库以“无编译器”的方式实现upc++。我们大量借鉴了以前的PGAS语言,并描述了导致这一特定语言特性集的设计决策,提供了比UPC更强的表达性,具有非常相似的性能特征。我们在两台具有代表性的超级计算机上使用五个基准测试来评估upc++的可编程性和性能,证明upc++可以在高达32K核的大规模下提供出色的性能,同时为c++应用程序提供PGAS生产力功能。
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UPC++: A PGAS Extension for C++
Partitioned Global Address Space (PGAS) languages are convenient for expressing algorithms with large, random-access data, and they have proven to provide high performance and scalability through lightweight one-sided communication and locality control. While very convenient for moving data around the system, PGAS languages have taken different views on the model of computation, with the static Single Program Multiple Data (SPMD) model providing the best scalability. In this paper we present UPC++, a PGAS extension for C++ that has three main objectives: 1) to provide an object-oriented PGAS programming model in the context of the popular C++ language, 2) to add useful parallel programming idioms unavailable in UPC, such as asynchronous remote function invocation and multidimensional arrays, to support complex scientific applications, 3) to offer an easy on-ramp to PGAS programming through interoperability with other existing parallel programming systems (e.g., MPI, OpenMP, CUDA). We implement UPC++ with a "compiler-free" approach using C++ templates and runtime libraries. We borrow heavily from previous PGAS languages and describe the design decisions that led to this particular set of language features, providing significantly more expressiveness than UPC with very similar performance characteristics. We evaluate the programmability and performance of UPC++ using five benchmarks on two representative supercomputers, demonstrating that UPC++ can deliver excellent performance at large scale up to 32K cores while offering PGAS productivity features to C++ applications.
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