Soft vector processors with streaming pipelines

Aaron Severance, Joe Edwards, Hossein Omidian, G. Lemieux
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引用次数: 37

Abstract

Soft vector processors (SVPs) achieve significant performance gains through the use of parallel ALUs. However, since ALUs are used in a time-multiplexed fashion, this does not exploit a key strength of FPGA performance: pipeline parallelism. This paper shows how streaming pipelines can be integrated into the datapath of a SVP to achieve dramatic speedups. The SVP plays an important role in supplying the pipeline with high-bandwidth input data and storing its results using on-chip memory. However, the SVP must also perform the housekeeping tasks necessary to keep the pipeline busy. In particular, it orchestrates data movement between on-chip memory and external DRAM, it pre- or post-processes the data using its own ALUs, and it controls the overall sequence of execution. Since the SVP is programmed in C, these tasks are easier to develop and debug than using a traditional HDL approach. Using the N-body problem as a case study, this paper illustrates how custom streaming pipelines are integrated into the SVP datapath and multiple techniques for generating them. Using a custom pipeline, we demonstrate speedups over 7,000 times and performance-per-ALM over 100 times better than Nios II/f. The custom pipeline is also 50 times faster than a naive Intel Core i7 processor implementation.
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带有流管道的软矢量处理器
软矢量处理器(svp)通过使用并行alu实现了显著的性能提升。然而,由于alu是以时间复用的方式使用的,这并没有利用FPGA性能的一个关键优势:管道并行性。本文展示了如何将流管道集成到SVP的数据路径中以实现显着的速度提升。SVP在为管道提供高带宽输入数据和使用片上存储器存储其结果方面发挥着重要作用。然而,SVP还必须执行保持管道繁忙所需的内务管理任务。特别是,它协调片上存储器和外部DRAM之间的数据移动,它使用自己的alu对数据进行预处理或后处理,并控制整个执行顺序。由于SVP是用C编程的,因此这些任务比使用传统的HDL方法更容易开发和调试。本文以n体问题为例,说明了如何将自定义流管道集成到SVP数据路径中,以及生成它们的多种技术。使用自定义管道,我们演示了比Nios II/f提高7000倍以上的速度和100倍以上的性能。自定义管道的速度也比单纯的英特尔酷睿i7处理器快50倍。
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