TRAM:一个开源的基于模板的可重构架构建模框架

Yunhui Qiu, Yuhang Cao, Yuan Dai, Wenbo Yin, Lingli Wang
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引用次数: 4

摘要

粗粒度可重构体系结构(CGRA)在安全、多媒体、数字信号处理、机器学习和高性能计算等计算或数据密集型应用领域具有高性能和高能效,是一种很有前途的加速器设计选择。CGRA由粗粒度处理元素(pe)和互连组成,它们决定了体系结构的灵活性,以支持不同的应用程序,同时也会显著影响性能和能效。虽然已经提出了多种类型的互连,但仍然缺乏一个参数化的统一模型。在本文中,我们提出了一个灵活且可扩展的CGRA模板,该模板具有新颖的互连模型,可以统一典型的邻居到邻居,基于交换机的互连和类似fpga的互连。此外,我们提出了TRAM,一个基于开源模板的可重构架构建模框架,它集成了基于chisel的CGRA建模、架构中间表示(IR)和Verilog生成、数据流图(DFG)映射、仿真和评估。映射流包含基于图的放置和路由、关键路径驱动的数据同步和基于模拟退火的优化。我们评估了丰富的设计参数的影响,证明了这种灵活的模板对促进结构优化的意义。与相关工作相比,TRAM可以实现8×8和16×16 CGRAs的DFG延迟缩短4.1倍,映射速度更快。此外,通过架构调优,TRAM能够实现平均94.4%的极高PE利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRAM: An Open-Source Template-based Reconfigurable Architecture Modeling Framework
Coarse-grained reconfigurable architecture (CGRA) is a promising accelerator design choice due to its high performance and power efficiency in the computation or data-intensive application domains, such as security, multimedia, digital signal processing, machine learning, and high-performance computing. CGRA consists of coarse-grained processing elements (PEs) and interconnects that determine the architecture flexibility to support different applications and also affect the performance and power efficiency significantly. Although multiple types of interconnects have been proposed, a parameterized unified model is still lacking. In this paper, we propose a flexible and scalable CGRA template with a novel interconnect model that can unify the typical neighbor-to-neighbor, switch-based, and FPGA-like interconnects. Furthermore, we present TRAM, an open-source template-based reconfigurable architecture modeling framework that integrates the Chisel-based CGRA modeling, architecture intermediate representation (IR) and Verilog generation, dataflow graph (DFG) mapping, simulation, and evaluation. The mapping flow contains graph-based placement and routing, critical-path-driven data synchronization, and simulated-annealing-based optimization. We evaluate the impacts of the rich design parameters, which demonstrate the significance of such a flexible template to facilitate architecture optimization. Compared with the related work, TRAM can achieve a 4.1× smaller DFG latency and a faster mapping speed for both the 8×8 and 16×16 CGRAs. Moreover, TRAM is able to attain an extremely high PE utilization of 94.4 % on average by architecture tuning.
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