Survey of Machine Learning for Software-assisted Hardware Design Verification: Past, Present, and Prospect

Author:

Wu Nan1ORCID,Li Yingjie2ORCID,Yang Hang3ORCID,Chen Hanqiu3ORCID,Dai Steve4ORCID,Hao Cong3ORCID,Yu Cunxi2ORCID,Xie Yuan5ORCID

Affiliation:

1. School of Engineering and Applied Science, The George Washington University, Washington, United States

2. University of Maryland at College Park, College Park, United States

3. Georgia Institute of Technology, Atlanta, United States

4. Nvidia Corporation, Santa Clara, United States

5. Electrical and Computer Engineering Department, The Hong Kong University of Science and Technology, Hong Kong, China

Abstract

With the ever-increasing hardware design complexity comes the realization that efforts required for hardware verification increase at an even faster rate. Driven by the push from the desired verification productivity boost and the pull from leap-ahead capabilities of machine learning (ML), recent years have witnessed the emergence of exploiting ML-based techniques to improve the efficiency of hardware verification. In this article, we present a panoramic view of how ML-based techniques are embraced in hardware design verification, from formal verification to simulation-based verification, from academia to industry, and from current progress to future prospects. We envision that the adoption of ML-based techniques will pave the road for more scalable, more intelligent, and more productive hardware verification.

Publisher

Association for Computing Machinery (ACM)

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