面向知识发现算法的内存处理技术

Jafar Adibi, T. Barrett, Spundun Bhatt, Hans Chalupsky, Jacqueline Chame, Mary W. Hall
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引用次数: 7

摘要

这项工作的目标是深入了解是否可以使用内存中处理(PIM)技术来加速链接发现算法的性能,链接发现算法代表了一类重要的新兴知识发现技术。PIM芯片将处理器逻辑集成到存储设备中,为弥合处理器和内存速度之间日益增长的差距提供了新的机会,特别是对于具有高内存带宽要求的应用程序。由于LD算法是数据密集型且高度并行的,涉及对大型数据集的只读查询,因此与数据非常接近(物理上)的并行计算能力具有提供显著计算速度的潜力。出于这个原因,我们评估了LD算法到内存中处理(PIM)工作站级架构的映射,即USC/ISI开发的DIVA/Godiva硬件测试平台。考虑到时钟速度和数据扩展的差异,我们的分析显示单个PIM的性能有所提高,使用多个PIM时可能会有更大的改进。在两个额外的带宽基准测试中显示了8倍的测量速度,尽管Itanium-2的时钟速率快了6倍。
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Processing-in-memory technology for knowledge discovery algorithms
The goal of this work is to gain insight into whether processing-in-memory (PIM) technology can be used to accelerate the performance of link discovery algorithms, which represent an important class of emerging knowledge discovery techniques. PIM chips that integrate processor logic into memory devices offer a new opportunity for bridging the growing gap between processor and memory speeds, especially for applications with high memory-bandwidth requirements. As LD algorithms are data-intensive and highly parallel, involving read-only queries over large data sets, parallel computing power extremely close (physically) to the data has the potential of providing dramatic computing speedups. For this reason, we evaluated the mapping of LD algorithms to a processing-in-memory (PIM) workstation-class architecture, the DIVA/Godiva hardware testbeds developed by USC/ISI. Accounting for differences in clock speed and data scaling, our analysis shows a performance gain on a single PIM, with the potential for greater improvement when multiple PIMs are used. Measured speedups of 8x are shown on two additional bandwidth benchmarks, even though the Itanium-2 has a clock rate 6X faster.
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