向量寄存器加宽对序列对齐的影响

J. Daily, A. Kalyanaraman, S. Krishnamoorthy, Bin Ren
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引用次数: 2

摘要

矢量扩展,如SSE,自20世纪90年代以来一直是x86的一部分,在图形、信号处理和科学应用中都有应用。尽管许多算法和应用程序可以自然地从自动向量化技术中受益,但仍有许多算法和应用程序由于依赖于不规则的数据结构、密集的分支操作或数据依赖性而难以向量化。序列比对是生物信息学工作流程中最广泛使用的操作之一,其计算足迹具有复杂的数据依赖性。在本文中,我们证明了向量寄存器的扩大趋势对基于条纹数据布局的最先进的序列对齐算法产生不利影响。我们提出了一个实际有效的SIMD实现,基于并行扫描的序列对齐算法,可以更好地利用更广泛的SIMD单元。我们进行了全面的工作负载和用例分析,以表征条纹和扫描方法的相对行为,并根据输入长度和SIMD宽度确定算法的最佳选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Impact of Widening Vector Registers on Sequence Alignment
Vector extensions, such as SSE, have been part of the x86 since the 1990s, with applications in graphics, signal processing, and scientific applications. Although many algorithms and applications can naturally benefit from automatic vectorization techniques, there are still many that are difficult to vectorize due to their dependence on irregular data structures, dense branch operations, or data dependencies. Sequence alignment, one of the most widely used operations in bioinformatics workflows, has a computational footprint that features complex data dependencies. In this paper, we demonstrate that the trend of widening vector registers adversely affects the state-of-the-art sequence alignment algorithm based on striped data layouts. We present a practically efficient SIMD implementation of a parallel scan based sequence alignment algorithm that can better exploit wider SIMD units. We conduct comprehensive workload and use case analyses to characterize the relative behavior of the striped and scan approaches and identify the best choice of algorithm based on input length and SIMD width.
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