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An Effective FPGA Placement Flow Selection Framework using Machine Learning

机译:使用机器学习的有效FPGA布局流程选择框架

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One of the most time consuming steps in the FPGA CAD flow is the placement problem which directly impacts the completion of the design flow. Accordingly, a routability driven FPGA placement contest was organized by Xilinx in ISPD 2016 to address this problem. Due to variations in the ISPD benchmark characteristics and heterogeneity of the FPGA architectures, as well as the different optimization strategies employed by different participating placers, placement algorithms that performed well on some circuits performed poorly on others. In this paper we propose a Machine-Learning (ML) framework that is capable of recommending the best FPGA placement algorithm within the CAD flow. Results obtained indicate that the ML framework is capable of selecting the correct flow with an 83% accuracy.
机译:FPGA CAD流程中最耗时的步骤之一是布局问题,它直接影响设计流程的完成。因此,赛灵思在ISPD 2016上组织了一个以布线能力为驱动因素的FPGA放置竞赛,以解决该问题。由于ISPD基准特性和FPGA体系结构的异质性的差异以及不同参与布局器采用的不同优化策略,在某些电路上性能良好的布局算法在其他电路上的性能较差。在本文中,我们提出了一种机器学习(ML)框架,该框架能够在CAD流程中推荐最佳的FPGA放置算法。获得的结果表明,ML框架能够以83%的精度选择正确的流程。

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