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Multi-core Processor Simulation Vector Learning Optimization Based on S~2LS-SVM

机译:基于S〜2LS-SVM的多核处理器仿真向量优化

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With the revolutionary progress of the EDA industry, the verification of microprocessor becomes more and more difficult. It is a big problem to optimize the huge verification stimuli. Verification stimuli efficiency problem is researched in our paper and multi-core processor verification vector learning method based on S~2LS-SVM is put forward. First, verification stimuli are generated according to coverage information, the simulation vectors feature selection and extraction is conducted by transition probability matrix. Initial S~2LS-SVM classifier is trained on the labeled training set, area labeling principle is used for unlabeled samples tagging, dynamic adjustment of centralized "inconsistent" semi-labeled samples; then, train a classifier with the label sample and semi-labeled samples, classifier predict the new stimuli vector is a redundancy or not, if it is redundant, it will not need to do the simulation. Effective label sample provides SMT Solver feedback to the classifier for incremental updates. Experimental results show that this method of training is fast, the simulation vectors can be reduced significantly and rapid verification closure is achieved. It also has important reference value for the future multi-core processors simulation.
机译:随着EDA行业的革命性进展,微处理器的验证变得越来越困难。优化巨大的验证刺激是一个很大的问题。验证刺激效率问题在我们的纸质和基于S〜2LS-SVM的多核处理器验证载体学习方法中进行了研究。首先,根据覆盖信息生成验证刺激,通过转换概率矩阵进行仿真向量特征选择和提取。初始S〜2LS-SVM分类器培训在标记的训练集上,区域标签原理用于未标记的样本标记,动态调整集中式“不一致”半标记样本;然后,用标签样本和半标记样本训练分类器,分类器预测新的刺激矢量是冗余,如果它是冗余的,则不需要进行模拟。有效的标签样本为分类器提供SMT求解器反馈,以增量更新。实验结果表明,这种训练方法快速,可以显着降低仿真向量,实现了快速的验证闭合。它对未来的多核处理器模拟也具有重要的参考价值。

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