Optimal data layout for block-level random accesses to scratchpad

Shreyas G. Singapura, R. Kannan, V. Prasanna
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引用次数: 1

Abstract

3D memory is becoming an increasingly popular technology to overcome the performance gap between memory and processors. It has led to the development of new architectures with scratchpad memory, which offer high bandwidth and user-controlled access features. The ideal performance of this scratchpad memory is peak bandwidth for any random block access. However, 3D memories come with their constraints on the "ideal" access patterns for which high bandwidth is guaranteed and the actual bandwidth is significantly lower for other access patterns. In this paper, we address the challenge of achieving high bandwidth for random block accesses to 3D memory. We present optimal data layout which achieves maximum bandwidth for each vault irrespective of the block accessed in a vault. Our data layout expressed as a mapping function determined by the architecture parameters exploits inter-layer pipelining to map the elements of each block among various layers of a vault in a specific pattern. By doing so, our data layout can absorb the latency of accesses to banks in the same layer and more importantly, hide the latency of accesses to different rows in the same bank irrespective of the block being accessed. We compare the performance of our proposed data layout with existing data layout using PARSEC 2.0 benchmarks. Our experimental results demonstrate as high as 56% improvement in access time in comparison with the existing data layout across various workloads.
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块级随机访问刮板的最佳数据布局
3D存储器正在成为一种日益流行的技术,以克服存储器和处理器之间的性能差距。它导致了带有刮刮板存储器的新架构的发展,这些架构提供高带宽和用户控制的访问功能。这种刮刮板存储器的理想性能是任何随机块访问的峰值带宽。然而,3D存储器在保证高带宽的“理想”访问模式上受到限制,而其他访问模式的实际带宽要低得多。在本文中,我们解决了实现随机块访问3D存储器的高带宽的挑战。我们提出了最优的数据布局,实现了每个保险库的最大带宽,而不考虑在保险库中访问的块。我们的数据布局表示为由体系结构参数确定的映射函数,利用层间流水线以特定模式在保险库的各个层之间映射每个块的元素。通过这样做,我们的数据布局可以吸收访问同一层银行的延迟,更重要的是,隐藏访问同一银行中不同行的延迟,而不管访问的是哪个块。我们使用PARSEC 2.0基准测试比较了我们提出的数据布局与现有数据布局的性能。我们的实验结果表明,与跨各种工作负载的现有数据布局相比,访问时间提高了56%。
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