Large circuit models: opportunities and challenges

Nov 1, 2024·
Lei Chen
,
Yiqi Chen
,
Zhufei Chu
Wenji Fang
Wenji Fang
,
Tsung-Yi Ho
,
Ru Huang
,
Sadaf Khan
,
Min Li
,
Xingquan Li
,
Yu Li
,
Yun Liang
,
Jinwei Liu
,
Yi Liu
,
Yibo Lin
,
Guojie Luo
,
Hongyang Pan
,
Zhengyuan Shi
,
Guangyu Sun
,
Dimitrios Tsaras
,
Runsheng Wang
,
Ziyi Wang
,
Xinming Wei
,
Zhiyao Xie
,
Qiang Xu
,
Chenhao Xue
,
Junchi Yan
,
Jun Yang
,
Bei Yu
,
Mingxuan Yuan
,
Evangeline F.Y. Young
,
Xuan Zeng
,
Haoyi Zhang
,
Zuodong Zhang
,
Yuxiang Zhao
,
Hui-Ling Zhen
,
Ziyang Zheng
,
Binwu Zhu
,
Keren Zhu
,
Sunan Zou
· 2 min read
PDF
publication

Within the electronic design automation (EDA) domain, artificial intelligence (AI)-driven solutions have emerged as formidable tools, yet they typically augment rather than redefine existing methodologies. These solutions often repurpose deep learning models from other domains, such as vision, text, and graph analytics, applying them to circuit design without tailoring to the unique complexities of electronic circuits. Such an “AI4EDA” approach falls short of achieving a holistic design synthesis and understanding, overlooking the intricate interplay of electrical, logical, and physical facets of circuit data. This study argues for a paradigm shift from AI4EDA towards AI-rooted EDA from the ground up, integrating AI at the core of the design process. Pivotal to this vision is the development of a multimodal circuit representation learning technique, poised to provide a comprehensive understanding by harmonizing and extracting insights from varied data sources, such as functional specifications, register-transfer level (RTL) designs, circuit netlists, and physical layouts. We champion the creation of large circuit models (LCMs) that are inherently multimodal, crafted to decode and express the rich semantics and structures of circuit data, thus fostering more resilient, efficient, and inventive design methodologies. Embracing this AI-rooted philosophy, we foresee a trajectory that transcends the current innovation plateau in EDA, igniting a profound “shift-left” in electronic design methodology. The envisioned advancements herald not just an evolution of existing EDA tools but a revolution, giving rise to novel instruments of design-tools that promise to radically enhance design productivity and inaugurate a new epoch where the optimization of circuit performance, power, and area (PPA) is achieved not incrementally, but through leaps that redefine the benchmarks of electronic systems’ capabilities.

Wenji Fang
Authors
PhD Candidate

Hi! I’m Wenji Fang (方闻绩), a Ph.D. candidate at the Electronic and Computer Engineering Department of the Hong Kong University of Science and Technology, advised by Prof. Zhiyao Xie. Previously, I received my M.Phil in microelectronics from the Hong Kong University of Science and Technology (Guangzhou), advised by Prof. Hongce Zhang & Prof. Zhiyao Xie, and my B.Eng in electrical engineering from Nanjing University of Aeronautics and Astronautics.

My research focuses on AI for Electronic Design Automation (EDA), with the goal of advancing AI-driven paradigms for VLSI design and verification. I have published 10+ first-author papers in leading EDA and AI venues, including DAC, ICCAD, ASP-DAC, TCAD, and ICLR.

I received the inaugural LLM-Aided Design Fellowship and the 2nd Place Award in the ACM SIGDA Student Research Competition. Beyond academia, I have gained industry experience through my internship at NVIDIA Research and Peng Cheng Laboratory.