Memory Mapping for Multi-die FPGAs

Nils Voss, Pablo Quintana, O. Mencer, W. Luk, G. Gaydadjiev
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引用次数: 12

Abstract

This paper proposes an algorithm for mapping logical to physical memory resources on FPGAs. Our greedy strategy based algorithm is specifically designed to facilitate timing closure on modern multi-die FPGAs for static-dataflow accelerators utilising most of the on-chip resources. The main objective of the proposed algorithm is to ensure that specific sub-parts of the design under consideration can fully reside within a single die to limit inter-die communication. The above is achieved by performing the memory mapping for each sub-part of the design separately while keeping allocation of the available physical resources balanced. As a result the number of inter-die connections is reduced on average by 50% compared to an algorithm targeting minimal area usage for real, complex applications using most of the on-chip's resources. Additionally, our algorithm is the only one out of the four evaluated approaches which successfully produces place and route results for all 33 applications and benchmarks.
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多芯片fpga的内存映射
本文提出了一种fpga逻辑内存资源到物理内存资源的映射算法。我们基于贪心策略的算法是专门设计来促进现代多模fpga的定时关闭,用于利用大部分片上资源的静态数据流加速器。提出的算法的主要目标是确保所考虑的设计的特定子部件可以完全驻留在单个模具内,以限制模具间的通信。通过分别为设计的每个子部分执行内存映射,同时保持可用物理资源分配的平衡,可以实现上述目标。因此,与使用大部分片上资源的实际复杂应用的最小面积使用算法相比,芯片间连接的数量平均减少了50%。此外,我们的算法是四种评估方法中唯一一种成功地为所有33个应用程序和基准测试产生位置和路线结果的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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