PhD on Foundation Models, Graph and Geometric Deep Learning, Causal Modeling
We are looking for an outstanding and highly motivated PhD student to join our group and help develop next-generation AI and machine learning methods.
The position focuses on foundation models, graph neural networks, geometric deep learning, and causal learning, with applications in high-impact biomedical settings such as immune system modeling, neurodegenerative diseases, and related areas.
Our group works closely with international partners, including researchers at Stanford, MIT, McGill, and others, and connects methodological AI research with cutting-edge screening technologies and pressing biomedical challenges. This is an opportunity to pursue ambitious doctoral research at the interface of machine learning, biology, and medicine, with strong potential for scientific visibility and real-world impact.
- For more information and how to apply: Application portal
- Deadline: July 26th