Sort by
Refine Your Search
-
. You have a background in machine learning for spatial data (e.g., random forest, neural networks) or are open acquiring these skills. You have experience with handling large geospatial datasets and
-
position of 1.0 FTE for 30 months or 0.8 FTE for 37 months; access to computational resources (HPC), GIS/data infrastructure, and datasets via collaborative networks; a supportive, interdisciplinary research
-
, seven European universities from the Coimbra network, and partner universities from across the globe to explore further how we can effectively decolonise university heritage. Through analyses
-
. These technologies are highly novel and one-of-a-kind, and the project is expected to result in several highly impactful publications. You will coordinate your work within an (inter)national network of collaborators