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Performance Modeling and Directives Optimization for High-Level Synthesis on FPGA

机译:绩效建模与指令优化对FPGA的高级合成

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High-level synthesis (HLS) relies on the use of synthesis directives to generate digital designs meeting a set of specifications. However, the selection of directives depends largely on designer experience and knowledge of the target architecture and digital design. Existing automated methods of directive selection are very limited in scope and capability to analyze complex design descriptions in high-level languages to be synthesized using HLS. This paper proposes a comprehensive model-based analysis (COMBA) framework which is capable of analyzing the effects of a multitude of directives related to functions, loops and arrays in the design description using pluggable analytical models, a recursive data collector and a metric-guided design space exploration (DSE) algorithm. COMBA reports a small average error in estimating performance when compared with HLS tools like Vivado HLS, and finds a high-performance configuration of synthesis directives within minutes. Given different resource constraints, COMBA finds configurations with higher speed-ups, compared with the state-of-the-art. Moreover, COMBA can guide the performance and area trade-off analysis. Experiments show that our DSE algorithm outperforms the conventional genetic algorithm, and COMBA efficiently finds a near-optimal configuration, which proves the efficiency of our tool for optimizing the practical HLS based designs.
机译:高级合成(HLS)依赖于使用综合指令来产生符合一套规格的数字设计。然而,指令的选择在很大程度上取决于设计者体验和目标架构和数字设计的知识。现有的指令选择方法的范围和能力非常有限,以分析使用HLS合成的高级语言的复杂设计描述。本文提出了基于全面的基于模型的分析(COMBA)框架,其能够分析使用可插拔分析模型,递归数据收集器和公制指导在设计描述中与功能,循环和阵列相关的众多指令的影响设计空间探索(DSE)算法。 COMBA在与Vivado HLS等HLS工具相比,在估计性能时报告小的平均误差,并在几分钟内找到综合指令的高性能配置。鉴于不同的资源限制,与最先进的速度相比,Comba找到具有更高速度UPS的配置。此外,COMBA可以指导性能和面积权衡分析。实验表明,我们的DSE算法优于传统的遗传算法,而Comba有效地找到近最佳配置,这证明了我们的工具优化基于HLS的设计的效率。

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