PDF version:
Contact
•
Full Name: Jeonghyeon Gu (구정현)
•
Email: rnwjdgus96@gmail.com
Education
Seoul National University
•
Department of Chemical & Biological Engineering (2014~2016)
•
B.S. in Pharmacy (2016~2020)
•
M.S. in Interdisciplinary Program of Artificial Intelligence (2021~2023)
License
•
Pharmacist License, Ministry of Health and Welfare (Republic of Korea) (2020)
Awards
•
•
한빛사 논문 선정 (2023)
Publications
•
Gu, J.*, Bang, D.*, Yi, J.*, Lee, S., Kim, D. & Kim, S. (2023). A Model-agnostic Framework to Enhance Knowledge Graph-based Drug Combination Prediction with Drug-Drug Interaction Data and Supervised Contrastive Learning. Briefings in Bioinformatics
•
Lim, S., Kim, Y., Gu, J., Lee, S., Shin, W., & Kim, S. (2023). Supervised chemical graph mining improves drug-induced liver injury prediction. iScience
•
Bang, D.*, Gu, J.*, Park, J., Jeong, D., Koo, B., Yi, J., ... & Lee, S. (2022). A Survey on Computational Methods for Investigation on ncRNA-Disease Association through the Mode of Action Perspective. International Journal of Molecular Sciences
•
Lim, S., Lee, S., Piao, Y., Choi, M., Bang, D., Gu, J., & Kim, S. (2022). On modeling and utilizing chemical compound information with deep learning technologies: A task-oriented approach. Computational and Structural Biotechnology Journal
•
Bang Y., … Gu, J., .., Hasun Yu (2024). Accurate antibody loop structure prediction enables zero-shot design of target-specific antibodies. bioRxiv
Interests
•
Research topics & techniques
Currently (2023) interested in chemical graph generation, diffusion models, 3D geometric learning and chemical spectrometry (NMR, MS, IR, …) data.
•
Career
Interested in business development, communication, networking & governance.
•
Private life
Love delicious foods, wines and cooking.
Experience
•
•
A working research group of people interested in Deep Learning
Official Member (2021~)
President (2023~)
•
Scholarship
•
Merit based Scholarship (2015.03, 2015.09, 2016.03)
•
SNU AI Fellowship Scholarship (2022.03, 2022.09)
Skills
Python (fluent), Rust (beginner)
PyTorch, Pandas, Numpy, Matplotlib
Korean (native), English (fluent), Spanish (intermediate)