Research Intern β PhD @ IST Austria (Bronstein Group) Geometric deep learning for structural biology β generative models guided by experimental data.
Protein structure and dynamics through graph neural networks, diffusion models, and inference-time guidance with experimental constraints. I like problems where the math is clean but the biology is messy.
Previously:
- π§² QuantCo / Virdx β MRI denoising for prostate cancer diagnosis
- 𧬠IBS Korea β protein engineering & antibody design
- π Earlier β computer vision and representation learning
- π΅ Electronic music β techno, melodic house, ambient
- π₯Ύ Long hikes and weekend trips in the Austrian Alps
- πΎ Tennis β always down for a match
- π°π· Years spent in Korea β still miss the food, the late nights, the people
- π Communications Chair @ LoG Conference β Learning on Graphs
- β Coffee chats welcome
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