Efficient Sequence Generation for Hardware Verification Using Machine Learning

Muhammad Gad, Mostafa AboelMaged, M. Mashaly, M. A. E. Ghany
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引用次数: 1

Abstract

With the doubling in the number of transistors approximately every two years, modern systems' complexity is growing exponentially. As the complexity of systems increases, the amounts of data generated during functional verification becomes huge. Debugging this huge amount of data becomes very time-consuming and a bottleneck in the design flow. Thus, comes the importance of using machine learning in verification to analyze this huge amount of data, automate and accelerate the process of verification. In this paper, two methods for improving sequential circuits' simulation-based verification techniques are presented. First, a graph-based method with adaptive neural network is proposed. The proposed method overcomes the problem of sensitivity of learning algorithms to the size and quality of the initial training set. Simulations show that the proposed method always achieves full coverage closure irrespective of the initial training set while the other methods quality decreases drastically with decreasing training set size. For the second method, a new way of choosing graph weights is proposed. Results show that new graph weights introduce at least 10% improvement in total number of instructions and 40% improvement in total time.
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基于机器学习的硬件验证高效序列生成
随着晶体管数量大约每两年翻一番,现代系统的复杂性呈指数级增长。随着系统复杂性的增加,在功能验证过程中产生的数据量变得巨大。调试这些庞大的数据变得非常耗时,并且成为设计流程中的瓶颈。因此,在验证中使用机器学习来分析大量数据,自动化和加速验证过程的重要性就来了。本文提出了两种改进顺序电路仿真验证技术的方法。首先,提出了一种基于图的自适应神经网络方法。该方法克服了学习算法对初始训练集的大小和质量的敏感性问题。仿真结果表明,该方法与初始训练集大小无关,总能实现全覆盖封闭,而其他方法的质量随着训练集大小的减小而急剧下降。对于第二种方法,提出了一种选择图权值的新方法。结果表明,新的图权可以使总指令数至少提高10%,总时间至少提高40%。
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