주제주제

Changwook Jeong
1:55 PM - 2:15 PM
, June 8
June 8

Machine learning (ML) and deep learning (DL) have been pivotal in solving complex problems across physics, chemistry, and engineering. In semiconductor process and device design, the integration of domain-specific knowledge into ML/DL models is essential due to the limited availability of data, bridging the gap between theoretical simulations and practical applications. ML and DL have driven significant advancements in semiconductor manufacturing. Applications include real-time prediction of doping profiles and current-voltage characteristics in MOSFETs, full-chip stress analysis using hybrid frameworks, and compact modeling for scalable device designs. These innovations not only enhance alignment with experimental results but also optimize device performance under constrained conditions. Strategies such as transfer learning, which employs pre-trained models to fine-tune tasks with limited data, further address challenges posed by data scarcity, expanding the scope of ML/DL applications in semiconductor engineering

About the speaker

Changwook Jeong

Changwook Jeong

Associate Professor at the Graduate School of Semiconductor Materials and Devices Engineering at UNIST, with joint appointments in the School of Materials Science and Engineering and the Graduate School of Artificial Intelligence. He received his B.S. and M.S. degrees in Materials Science and Engineering from Seoul National University, and his Ph.D. in Electrical and Computer Engineering from Purdue University.He has extensive industry experience, having worked at Samsung Electronics—first in memory technology development (2003–2007) and later at the Samsung Advanced Institute of Technology (2012–2022), where he led research in advanced logic devices and the integration of AI techniques with physical simulations.Professor Jeong is a leading expert in combining semiconductor physics with AI methodologies. His research focuses on end-to-end modeling approaches that span from atomistic materials to system-level circuits, with the goal of optimizing next-generation semiconductor design. He has published numerous high-impact papers in this interdisciplinary field, contributing significantly to the advancement of AI-driven semiconductor innovation.

Associate Professor at the Graduate School of Semiconductor Materials and Devices Engineering at UNIST, with joint appointments in the School of Materials Science and Engineering and the Graduate School of Artificial Intelligence. He received his B.S. and M.S. degrees in Materials Science and Engineering from Seoul National University, and his Ph.D. in Electrical and Computer Engineering from Purdue University.He has extensive industry experience, having worked at Samsung Electronics—first in memory technology development (2003–2007) and later at the Samsung Advanced Institute of Technology (2012–2022), where he led research in advanced logic devices and the integration of AI techniques with physical simulations.Professor Jeong is a leading expert in combining semiconductor physics with AI methodologies. His research focuses on end-to-end modeling approaches that span from atomistic materials to system-level circuits, with the goal of optimizing next-generation semiconductor design. He has published numerous high-impact papers in this interdisciplinary field, contributing significantly to the advancement of AI-driven semiconductor innovation.

Chagwook Jeong
Chagwook Jeong
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© 2025 VLSI Workshop Science Meets AI
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© 2025 VLSI Workshop Science Meets AI
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© 2025 VLSI Workshop Science Meets AI