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<Dr. Hong Joo Lee>

Dr. Hong Joo Lee, an alumnus of the School of Electrical Engineering at KAIST (Advisor: Prof. Yong Man Ro), has been appointed as an Assistant Professor in the Department of Applied Artificial Intelligence at Seoul National University of Science and Technology, effective March 1, 2026.

 

Dr. Lee earned his Ph.D. with a dissertation titled “Investigating Adversarial Robustness via Booster Signal.” During his doctoral studies, he participated in the Center for Applied Research in Artificial Intelligence (CARAI) for National Defense Research. His research has been widely recognized through numerous publications in top-tier conferences and journals, including CVPR, IEEE TIP, and IEEE TNNLS.

 

After receiving his doctorate in 2023, Dr. Lee served as a postdoctoral researcher at the Technical University of Munich (TUM) in Germany. His postdoctoral work focused on the reliability of AI models in the medical field, leading to further high-impact publications in ECCV, MICCAI, and AAAI.

 

In his new role as a professor, Dr. Lee plans to deepen his research on Reliable Intelligence Systems, focusing on the vulnerability, safety, and fairness of AI models.

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< (From back left) Dr. Juhyuk Park, Hyunsu Kim (Ph.D. student) (KAIST), (From front left) Haoli Bao, Chaeyeon Kim (Master’s students, KAIST), (From circle left) Professor Sanghyeon Kim (KAIST), Professor Dae-Myeong Geum (Inha University) >

From TVs and smartwatches to the recently highlighted VR/AR devices—micro-LED, the core technology of these screens, is a next-generation display where individual LEDs smaller than the thickness of a human hair emit light on their own. While Red, Green, and Blue (RGB) are essential for completing a display, highly quantum efficient red micro-LED technology is known to be the most difficult to implement. Professor Sanghyeon Kim of our department and his joint research team have overcome the limitations of existing technologies. They have developed a red micro-LED display technology that achieves ultra-high resolution while significantly reducing power consumption.

 

Through this, the research team successfully implemented a 1,700 PPI-level ultra-high-resolution micro-LED display. This technology can provide ‘real-life-like images’ rather than just high-resolution screens for VR/AR devices, offering approximately 3 to 4 times the resolution of current smartphone displays. *PPI (Pixel Per Inch): An index indicating how densely pixels, the smallest dots forming a screen, are arranged.

 

There were two main challenges in commercializing micro-LEDs. First was the efficiency degradation of red LEDs. Specifically, when implementing ‘red pixels,’ energy leakage occurs as the pixel size decreases, causing efficiency to drop sharply. Second was the limitation of the transfer process. The conventional method of picking and placing millions of microscopic LEDs individually makes ultra-high resolution difficult and leads to high defect rates.

 

The research team solved these problems simultaneously. First, by applying an AlInP/GaInP ‘double-quantum-well (DQW) structure’, they implemented high-efficiency red micro-LEDs that significantly reduce energy loss even as pixel sizes shrink. Simply put, the quantum well/barrier structure acts as an “energy barrier.” It confines electrons and holes within the quantum well layer, preventing carrier leakage. By adopting quantum wells with higher hole concentration, the research team effectively reduced energy loss as pixel sizes decreased, enabling brighter and more efficient red micro-LEDs

 

E 적색 마이크로 LED 성능 개선결과
< Improved performance results of red micro-LEDs >

 

Furthermore, instead of transferring LEDs individually, they applied ‘monolithic three-dimensional (M3D) integration’ technology. This involves stacking the LED layers directly onto the driving circuits. This method has the advantage of reducing alignment errors and defect rates, allowing for the stable production of ultra-high-resolution displays. During this process, the research team also secured low-temperature process technology to prevent damage to the underlying circuits.

 

E 모노리식 3D 마이크로LED on Si 디스플레이
< Concept of monolithic 3D integration technology >

 

This research, led by Dr. Juhyuk Park (KAIST) as the first author and Professor Sanghyeon Kim (KAIST) and Professor Dae-Myeong Geum (Inha University) as corresponding authors, was published in the world-renowned academic journal ‘Nature Electronics’ on January 20.

 

※ Paper Title: A monolithic three-dimensional integrated red micro-LED display on silicon using AlInP/GaInP epilayers)

※ URL: https://www.nature.com/articles/s41928-025-01546-4

 

The research was conducted in collaboration with Professor Dae-Myeong Geum of Inha University. The team also partnered with QSI (CEO Chung-dae Lee), a compound semiconductor manufacturer, and RAONTECH (CEO Seung-tak Yi), a micro-display and semiconductor SoC design company. This work was supported by the National Research Foundation of Korea (NRF) Basic Research Program (2019) and the Display Strategy Research Laboratory project (currently ongoing). It also received support from the Samsung Science and Technology Foundation (2020–2023).

 

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< Professor Seulki Lee>

We are pleased to announce that Professor Seulki Lee has joined the School of Electrical Engineering as of February 4, 2026. We warmly welcome him to our school.

 

Professor Lee’s office is located in Kim Beang-Ho KIM Sam-Youl ITC B/D (N1). Professor Lee’s research focuses on Embedded AI (On-device AI), real-time, mobile, and sensing systems, AIoT (AI + IoT), intelligent edge systems, and deep learning compilers. He conducts research with the goal of advancing embedded artificial intelligence technologies. His work addresses the challenges of limited memory, computation, and power in embedded environments, with an emphasis on efficient deep learning optimization, on-device neural architecture search, and real-time AI system design.

 

For more detailed information about Professor Lee’s research, please visit his website below.

Website: https://sites.google.com/view/embeddedai

 

< Academic and Professional Profile>

 

Major Field

  • Embedded AI (On-device AI)
  • Real-time, Mobile and Sensing Systems
  • AIoT (AI + IoT) and Intelligent Edge
  • Deep Learning Compilers

Educational Background

  • Bachelor Degree, 2009, University of Seoul
  • Master Degree, 2018, UNC Chapel Hill
  • Doctoral Degree, 2021, UNC Chapel Hill

Career

  • Aug. 2021 – Aug. 2025: Assistant Professor, UNIST
  • Sep. 2025 – Feb. 2026: Associate Professor, UNIST

Publications

  • “Bayesian Code Diffusion for Efficient Automatic Deep Learning Program Optimization,”
    USENIX Symposium on Operating Systems Design and Implementation (OSDI), 2025
  • “AliO: Output Alignment Matters in Long-Term Time Series Forecasting,”
    Annual Conference on Neural Information Processing Systems (NeurIPS), 2025
  • “SMMF: Square-Matricized Momentum Factorization for Memory-Efficient Optimization,”
    Annual AAAI Conference on Artificial Intelligence (AAAI), 2025
  • “CAFO: Feature-Centric Explanation on Time Series Classification,”
    SIGKDD Conference on Knowledge Discovery and Data Mining (KDD), 2024
  • “On-NAS: On-Device Neural Architecture Search on Memory-Constrained Intelligent Embedded Systems,”
    ACM Conference on Embedded Networked Sensor Systems (SenSys), 2023

Assigned Curricular Plan

  • EE.40015 Operating Systems and System Programming for Electrical Engineering
  • EE.40014 Embedded Systems
  • EE.30031 Introduction to Machine Learning
  • EE.30012 Introduction to Computer Architecture
  • EE.50016 Embedded Software
  • EE.50038 Neural Networks

Vision

We make resource-constrained real-time and embedded sensing systems capable of learning, adapting, and evolving, with the aim of enabling Embedded Artificial Intelligence (Embedded AI or On-Device AI).

 

Research Plan

  • We pursue excellence in research on EE, CSE, and AI.
  • We make the world a better place by making real impacts with our research.
  • We collaborate with and learn from each other when solving challenging problems.
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<(From left) Ji-Hoon Kim and Hyeonggon Ryu, Ph.D. candidates>

Ji-Hoon Kim and Hyeonggon Ryu have been appointed as assistant professors at leading universities in Korea. They are Ph.D. candidates from Prof. Joon Son Chung’s Multimodal AI Lab in the School of Electrical Engineering, KAIST, and will receive their Ph.D. degrees in February 2026.

 

Ji-Hoon Kim has been appointed as an Assistant Professor at the Graduate School of Advanced Imaging Science, Multimedia & Film at Chung-Ang University, effective March 1, 2026. During his doctoral studies, he conducted research on human-centric multimodal artificial intelligence and published research papers in venues such as IEEE Transactions on Audio, Speech and Language Processing (TASLP), IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), and the AAAI Conference on Artificial Intelligence (AAAI). He plans to continue his research on multimodal AI technologies for natural interaction between humans and artificial intelligence.

 

Hyeonggon Ryu has been appointed as an Assistant Professor in the Department of Language & AI at Hankuk University of Foreign Studies, effective March 1, 2026. His research focused on audio-visual multimodal artificial intelligence, and he has published research papers in IEEE Transactions on Pattern Analysis and Machine Intelligence (TPAMI), IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), and the CVF International Conference on Computer Vision (ICCV). He plans to pursue further research on audio-visual multimodal AI, contributing to both academic and industrial developments.

 

These appointments reflect the outcomes of Prof. Joon Son Chung’s lab, which fosters an environment that encourages independent research and active participation in international academic activities in the field of multimodal artificial intelligence.

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<Dr. Sunjae Yoon>

Dr. Sunjae Yoon, a Ph.D. graduate of the Artificial Intelligence & Machine Learning Lab. (U-AIM) at the School of Electrical Engineering, KAIST (Advisor: Professor Chang Dong Yoo), has been appointed as a tenure-track Assistant Professor in the Department of Artificial Intelligence, College of Software, Chung-Ang University, effective March 1, 2026.

 

Dr. Yoon received his Ph.D. degree from the School of Electrical Engineering, KAIST in February 2025 and is currently serving as a Postdoctoral Researcher at the KAIST Institute for Information Technology Convergence.

 

His primary research focus is Generative Artificial Intelligence, particularly in diffusion model-based video editing. His doctoral dissertation, titled “Diffusion Model-based Video Editing,” was recognized with the Outstanding Ph.D. Dissertation Award. He has also published multiple research papers at leading international conferences in artificial intelligence, including NeurIPS, ICML, and ICCV.

 

The research group led by Professor Chang Dong Yoo has conducted extensive research on generative artificial intelligence across diverse modalities such as image, video, audio, and natural language. Building on these research achievements, the lab has successfully produced outstanding scholars who have joined various academic institutions, including Seoul National University, Korea University, Ulsan National Institute of Science and Technology (UNIST), Chung-Ang University, Gangneung-Wonju National University, and Pai Chai University.

 

The School of Electrical Engineering, KAIST congratulates Dr. Yoon on this significant achievement and looks forward to his continued success and contributions to the field of artificial intelligence

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Award
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< (From left) Professor Youngsoo Shin and Ph.D. candidate Shilong Zhang >

Shilong Zhang, Ph.D. Candidate, Professor Youngsoo Shin’s Research Lab (DT Lab), Winner of the First Place Photronics Best Student Presentation Award at SPIE Photomask Technology 2025

 

Shilong Zhang, a Ph.D. candidate from Professor Youngsoo Shin’s research group (KAIST DT Lab) in the School of Electrical Engineering, has won the First Place Photronics Best Student Presentation Award at SPIE Photomask Technology + EUV Lithography 2025, held from September 22 to 26 in Monterey, California, USA.

 

SPIE Photomask Technology + EUV Lithography is a premier international symposium where professionals and academics from the semiconductor industry gather to present and discuss the latest advancements in photolithography mask technology. The Photronics Best Student Presentation Award, sponsored by Photronics, Inc., is established to encourage students working in fields related to photomasks and EUV lithography. The first place winner receives a $1,500 prize.

 

Zhang’s award-winning paper, titled “Integrated Curvilinear OPC and SRAF Optimization through Reinforcement Learning,” proposes a reinforcement learning-based method to co-optimize curvilinear sub-resolution assist features (SRAFs) and curvilinear main patterns for advanced semiconductor lithography. The proposed method reduces maximum vertex placement error (VPE) by 7.6% and maximum process variation band (PVB) width by 23.0% compared to conventional curvilinear OPC with fixed SRAFs, demonstrating significant improvements in both pattern fidelity and process window robustness.

 

For details, refer to the link below:

https://spie.org/conferences-and-exhibitions/photomask-technology-and-extreme-ultraviolet-lithography/program/conferences/awards

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<(From left) Professors Young-Ik Sohn, Joonwoo Bae, and Wanyeong Jung of the School of Electrical Engineering, and Donguk Nam of the Department of Mechanical Engineering>

A group research project from the Quantum Device Lab at the School of Electrical Engineering, KAIST, led by Professor Young-Ik Sohn, has been selected as a new 2025 project under the Quantum Science and Technology Flagship Program. The project is titled “All-Photonic Quantum Repeaters Based on Chip-Scale Fusion Multiplexing and Quantum-Dot-Based Deterministic Linear Cluster States.”

 

This research aims to develop quantum repeaters, a core enabling system essential for long-distance quantum communication. In particular, it distinguishes itself from conventional approaches by pursuing an all-photonic quantum repeater, which relies exclusively on photonic qubits without employing matter-based qubits such as electron spins. The all-photonic quantum repeater is an emerging research paradigm whose theoretical foundation has only recently been established, and it is gaining significant attention as a key candidate technology for next-generation quantum networks.

 

The conceptual architecture of an all-photonic quantum repeater consists of repeated units composed of a Repeater Graph State (RGS) node, which generates entangled photons, and a measurement node.

 

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<An overview of the all-photonic quantum repeater. The system is composed of repeated units, each consisting of one Repeater Graph State (RGS) node for entangled photon generation and one measurement node.>

By eliminating matter-based qubits, this novel approach offers a crucial advantage: the potential for large-scale manufacturing using only existing semiconductor fabrication technologies. As a result, the proposed technology is considered to possess strong potential to evolve into an industry-standard quantum repeater platform in the future.

 

To achieve these ambitious research objectives, an industry–academia consortium has been formed, led by KAIST and joined by domestic component companies Fiberpro and Quad. In addition, an international collaborative research team has been established with Quandela, a world-leading French photonic quantum computing company. The Quandela research team will closely collaborate to apply their state-of-the-art entangled photon generation technology as a key component of the quantum repeater system.

 

The realization of quantum repeaters requires not only quantum photonic chip technologies, but also system-level operational design, application-specific integrated circuits (ASICs) for high-speed multiplexing, and ultra-low-loss packaging technologies, necessitating highly interdisciplinary research efforts. Accordingly, Professor Joonwoo Bae and Professor Wanyeong Jung from the School of Electrical Engineering, KAIST, along with Professor Donguk Nam from the Department of Mechanical Engineering, are participating as co-investigators, contributing their expertise across these domains.

 

This project is conducted as part of the Quantum Science and Technology Flagship Program, a national quantum initiative led by the Ministry of Science and ICT of Korea. The program will be carried out over approximately eight years through 2032, with a total budget of KRW 645.4 billion, pursuing mission-oriented research and development across three major areas: quantum computing, quantum communication, and quantum sensing. The KAIST research team has been selected for one of the five core projects in the quantum communication domain and will receive approximately KRW 12.8 billion in research funding.

 

If the quantum repeater is successfully realized through this research, it is expected to extend current quantum key distribution (QKD) technologies—currently limited to distances of around 100 km—to a global scale, thereby making a decisive contribution toward the realization of the quantum internet.

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<조혜상 박사>

Dr. Hyesang Cho, a graduate of the Intelligent Communication Systems Lab. (ICL) in the School of Electrical Engineering (Advisor: Prof. Junil Choi), has been appointed as an Assistant Professor in the Dept. of Electrical and Electronic Engineering at Inha University, effective March 1, 2026.

 

Dr. Hyesang Cho received a Ph.D. degree from the School of Electrical Engineering at KAIST in February 2024, and has since served as a postdoctoral researcher at the Institute of Information Electronics, KAIST.

 

His main research focuses on the development of next-generation wireless communication systems. He has published numerous papers in top-tier journals such as IEEE Transactions on Wireless Communications and IEEE Transactions on Communications, and has received multiple best paper awards, demonstrating the excellence of his research.

 

Moving forward, he will continue to concentrate on advancing next-generation wireless communication systems and contribute to both academic and industrial development.

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