约束随机处理器验证中的仿真知识提取与重用

Wen Chen, Li-C. Wang, J. Bhadra, M. Abadir
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引用次数: 25

摘要

本文提出了一种从约束随机仿真数据中提取知识的方法。采用基于特征的分析方法提取符合特殊条件的新型装配程序的独特特性的规则。学习到的知识可以被重用,以指导约束随机测试生成到未覆盖的角。实验是基于商业处理器设计的验证环境进行的,与正在进行的验证工作并行。实验结果表明,通过利用从约束随机模拟中提取的知识,我们可以改进测试模板来激活断言,否则通过广泛的模拟很难激活断言。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation knowledge extraction and reuse in constrained random processor verification
This work proposes a methodology of knowledge extraction from constrained-random simulation data. Feature-based analysis is employed to extract rules describing the unique properties of novel assembly programs hitting special conditions. The knowledge learned can be reused to guide constrained-random test generation towards uncovered corners. The experiments are conducted based on the verification environment of a commercial processor design, in parallel with the on-going verification efforts. The experimental results show that by leveraging the knowledge extracted from constrained-random simulation, we can improve the test templates to activate the assertions that otherwise are difficult to activate by extensive simulation.
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