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Machine-Learning Based Congestion Estimation for Modern FPGAs

机译:现代FPGA的基于机器学习的拥塞估计

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Avoiding congestion for routing resources has become one of the most important placement objectives. In this paper, we present a machine-learning model for accurately and efficiently estimating congestion during FPGA placement. Compared with the state-of-the-art machine-learning congestion-estimation model, our results show a 25% improvement in prediction accuracy. This makes our model competitive with congestion estimates produced using a global router. However, our model runs, on average, 291x faster than the global router.
机译:避免路由资源的拥塞已成为最重要的放置目标之一。在本文中,我们提出了一种机器学习模型,可以准确有效地估计FPGA放置期间的拥塞情况。与最新的机器学习拥塞估计模型相比,我们的结果表明预测准确性提高了25%。这使我们的模型与使用全局路由器产生的拥塞估计相比具有竞争力。但是,我们的模型运行速度比全局路由器平均快291倍。

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