使用机器学习模型加速CORDIC设计的功能覆盖闭合

M. A. E. Ghany, Khaled A. Ismail
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引用次数: 1

摘要

本文提出了用于加速覆盖关闭的精确机器学习ML模型。不同的机器学习模型:人工神经网络ANN,深度神经网络DNN,支持向量回归SVR和决策树DT进行训练,以约束坐标旋转数字计算机CORDIC设计输入值的随机性,以击中计划覆盖项目。使用的ML模型在评估指标方面进行比较,例如:均方误差MSE和R2评分。还考虑了每个模型的训练时间开销。经过测试的ML模型表明,与传统的开环随机化方法相比,达到完全覆盖关闭所需的事务数量提高了55%。对比分析表明,DT模型训练时间开销小,预测精度高,是CORDIC功能验证环境中最有效的ML模型。
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Speed Up Functional Coverage Closure of CORDIC Designs Using Machine Learning Models
Accurate Machine Learning ML models used for speeding up coverage closure are presented in this paper. Different ML models: Artificial Neural Network ANN, Deep Neural Network DNN, Support Vector Regression SVR and Decision Trees DT are trained to constrain the randomization of a Coordinate Rotation Digital Computer CORDIC design input values to hit the planned coverage items. Used ML models are compared in terms of evaluation metrics such as: Mean Squared Error MSE and R2 score. Training time overhead for each model is also considered. Tested ML models demonstrate an improvement of 55% in the number of transactions required to reach complete coverage closure when compared to traditional open-loop randomization method. Comparative analysis shows that DT is the most effective ML model to be incorporated in a CORDIC functional verification environment, due to its low training time overhead and high prediction accuracy.
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