TFluxSCC:通过数据流开发未来多核系统的性能

Andreas Diavastos, Giannos Stylianou, P. Trancoso
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引用次数: 4

摘要

当前处理器设计的趋势是增加内核数量以达到理想的性能。虽然在一个芯片上拥有大量的核心在硬件方面似乎是可行的,但能够利用这种并行性的软件开发是最大的挑战之一。本文提出了一种基于数据流的系统,可以有效地利用大规模多核处理器的并行性。我们提出的系统- TFlux SCC -是TFlux数据驱动多线程(DDM)的扩展,它发展到利用48核英特尔单芯片云计算(SCC)处理器的并行性。使用TFlux SCC,我们可以使用全局地址空间实现可扩展的性能,而不需要缓存一致性支持。我们的可扩展性研究表明,应用程序的性能可以扩展,在48核的情况下,加速结果可达到48倍。这项工作的发现提供了对多核架构的数据流实现需要什么和不需要什么来扩展性能的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TFluxSCC: Exploiting Performance on Future Many-Core Systems through Data-Flow
The current trend in processor design is to increase the number of cores as to achieve a desired performance. While having a large number of cores on a chip seems to be feasible in terms of the hardware, the development of the software that is able to exploit that parallelism is one of the biggest challenges. In this paper we propose a Data-Flow based system that can be used to exploit the parallelism in large-scale many-core processors in an effective and efficient way. Our proposed system - TFlux SCC - is an extension of the TFlux Data-Driven Multithreading (DDM), which evolved to exploit the parallelism of the 48-core Intel Single-chip Cloud Computing (SCC) processor. With TFlux SCC we achieve scalable performance using a global address space without the need of cache-coherency support. Our scalability study shows that application's performance can scale, with speedup results reaching up to 48x for 48 cores. The findings of this work provide insight towards what a Data-Flow implementation requires and what not from a many-core architecture in order to scale the performance.
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