Reduced-Bandwidth Multithreaded Algorithms for Sparse Matrix-Vector Multiplication

A. Buluç, Samuel Williams, L. Oliker, J. Demmel
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引用次数: 115

Abstract

On multicore architectures, the ratio of peak memory bandwidth to peak floating-point performance (byte:flop ratio) is decreasing as core counts increase, further limiting the performance of bandwidth limited applications. Multiplying a sparse matrix (as well as its transpose in the unsymmetric case) with a dense vector is the core of sparse iterative methods. In this paper, we present a new multithreaded algorithm for the symmetric case which potentially cuts the bandwidth requirements in half while exposing lots of parallelism in practice. We also give a new data structure transformation, called bit masked register blocks, which promises significant reductions on bandwidth requirements by reducing the number of indexing elements without introducing additional fill-in zeros. Our work shows how to incorporate this transformation into existing parallel algorithms (both symmetric and unsymmetric) without limiting their parallel scalability. Experimental results indicate that the combined benefits of bit masked register blocks and the new symmetric algorithm can be as high as a factor of 3.5x in multicore performance over an already scalable parallel approach. We also provide a model that accurately predicts the performance of the new methods, showing that even larger performance gains are expected in future multicore systems as current trends (decreasing byte:flop ratio and larger sparse matrices) continue.
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稀疏矩阵向量乘法的减少带宽多线程算法
在多核架构中,随着核数的增加,峰值内存带宽与峰值浮点性能的比率(字节:翻频比)正在降低,这进一步限制了带宽有限的应用程序的性能。稀疏矩阵(以及它的转置在非对称情况下)与密集向量相乘是稀疏迭代方法的核心。在本文中,我们提出了一种新的对称情况下的多线程算法,该算法在实际应用中暴露了大量并行性的同时,可能会将带宽需求减少一半。我们还给出了一种新的数据结构转换,称为位掩码寄存器块,它承诺通过减少索引元素的数量而不引入额外的填充零来显著降低带宽需求。我们的工作展示了如何将这种转换合并到现有的并行算法(对称和非对称)中,而不限制它们的并行可伸缩性。实验结果表明,位掩码寄存器块和新的对称算法的综合优势可以在多核性能上达到3.5倍,而不是已经可扩展的并行方法。我们还提供了一个准确预测新方法性能的模型,表明随着当前趋势(减少字节:翻译率和更大的稀疏矩阵)的继续,未来的多核系统有望获得更大的性能提升。
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