重新考虑了宽simd的缩减算子

Luc Waeijen, Dongrui She, H. Corporaal, Yifan He
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引用次数: 2

摘要

研究表明,宽单指令多数据架构(wide- simd)可以实现高能效,特别是在图像和视觉处理等领域。在这些和各种其他应用领域中,简化是一个经常遇到的操作,其中需要通过关联操作(例如加法或乘法)将多个输入元素组合为单个元素。有许多应用需要约简,例如:部分直方图合并,矩阵乘法和最小/最大查找。wide - simd包含大量的处理元件(pe),出于可伸缩性的原因,这些处理元件通常通过最小形式的互连连接。为了以最小的互连有效地支持宽simd上的约简操作,我们引入了两种新的约简算法,它们不依赖于复杂的通信网络或任何专用硬件。在性能、面积和能耗方面,将所提出的方法与专用硬件和其他软件解决方案进行了比较。实例研究表明,该方法具有较好的通用性和灵活性,且不增加硬件成本。与专用硬件加法器树相比,所提出的软件方法节省了6.8%的面积,而性能损失仅为6.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduction operator for wide-SIMDs reconsidered
It has been shown that wide Single Instruction Multiple Data architectures (wide-SIMDs) can achieve high energy efficiency, especially in domains such as image and vision processing. In these and various other application domains, reduction is a frequently encountered operation, where multiple input elements need to be combined into a single element by an associative operation, e.g. addition or multiplication. There are many applications that require reduction such as: partial histogram merging, matrix multiplication and min/max-finding. Wide-SIMDs contain a large number of processing elements (PEs), which in general are connected by a minimal form of interconnect for scalability reasons. To efficiently support reduction operations on wide-SIMDs with such a minimal interconnect, we introduce two novel reduction algorithms which do not rely on complex communication networks or any dedicated hardware. The proposed approaches are compared with both dedicated hardware and other software solutions in terms of performance, area, and energy consumption. A practical case study demonstrates that the proposed software approach has much better generality, flexibility and no additional hardware cost. Compared to a dedicated hardware adder tree, the proposed software approach saves 6.8% area with a performance penalty of only 6.5%.
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