ProjectFONDA – Foundations of Workflows for Large-Scale Scientific Data Analysis - A5: Workflows for Annotation-Efficient…
Basic data
Acronym:
FONDA
Title:
Foundations of Workflows for Large-Scale Scientific Data Analysis - A5: Workflows for Annotation-Efficient Machine Learning in Biomedical Imaging Research
Duration:
01/01/2024 to 01/01/2028
Abstract / short description:
We aim to refine machine learning workflows in biomedicine by enhancing annotation efficiency. Currently, the lack of high-quality training data and time-consuming manual annotations hinder progress. To address this, we will explore self-supervised representation learning, which utilizes unlabeled data, potentially reducing the need for manual annotations. A5 will focus on creating efficient frameworks to train, explore, and benchmark such representation learning approaches.
Involved staff
Managers
Faculty of Medicine
University of Tübingen
University of Tübingen
Other staff
Faculty of Medicine
University of Tübingen
University of Tübingen
Local organizational units
Hertie Institute for Artificial Intelligence in Brain Health (HIAI)
Non-clinical institutes
Faculty of Medicine
Faculty of Medicine
Funders
Bonn, Nordrhein-Westfalen, Germany