Improving FPGA-Based Logic Emulation Systems through Machine Learning

Anthony Agnesina, S. Lim, E. Lepercq, Jose Escobedo Del Cid
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引用次数: 1

Abstract

We present a machine learning (ML) framework to improve the use of computing resources in the FPGA compilation step of a commercial FPGA-based logic emulation flow. Our ML models enable highly accurate predictability of the final place and route design qualities, runtime, and optimal mapping parameters. We identify key compilation features that may require aggressive compilation efforts using our ML models. Experiments based on our large-scale database from an industry’s emulation system show that our ML models help reduce the total number of jobs required for a given netlist by 33%. Moreover, our job scheduling algorithm based on our ML model reduces the overall time to completion of concurrent compilation runs by 24%. In addition, we propose a new method to compute “recommendations” from our ML model to perform re-partitioning of difficult partitions. Tested on a large-scale industry system on chip design, our recommendation flow provides additional 15% compile time savings for the entire system on chip. To exploit our ML model inside the time-critical multi-FPGA partitioning step, we implement it in an optimized multi-threaded representation.
利用机器学习改进fpga逻辑仿真系统
我们提出了一个机器学习(ML)框架,以改善基于商业FPGA的逻辑仿真流的FPGA编译步骤中计算资源的使用。我们的机器学习模型能够高度准确地预测最终地点和路线设计质量、运行时间和最佳映射参数。我们确定了可能需要使用我们的ML模型进行积极编译工作的关键编译特性。基于行业仿真系统的大规模数据库的实验表明,我们的ML模型有助于将给定网络列表所需的工作总数减少33%。此外,我们基于ML模型的作业调度算法将完成并发编译运行的总时间减少了24%。此外,我们提出了一种新的方法来从我们的ML模型中计算“推荐”,以执行困难分区的重新分区。经过大规模工业系统芯片设计测试,我们的推荐流程为整个系统芯片提供了额外15%的编译时间节省。为了在时间关键的多fpga分区步骤中利用我们的ML模型,我们在优化的多线程表示中实现了它。
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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