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Jan Sellner

Jan Sellner

Jan Sellner

Position:

Ph.D. Student

Building:

REZ

Room:

F.00.002

Jan is a passionate computer scientist and PhD student at the German Cancer Research Center pushing the boundaries of deep learning since 2018. He is working towards autonomous robotic surgery through deep learning-based semantic segmentation of hyperspectral images (https://github.com/imsy-dkfz/htc). He held talks at international machine learning conferences (e.g. IPCAI2022, MICCAI2023), was a machine learning lecturer at Ulm University in 2018–2019 and contributed to open source projects (e.g. Kornia).

Expertise

  • Deep learning
  • Data science
  • Efficient computing
  • Medical imaging with a focus on hyperspectral imaging

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