-
simulation models and enriched by operational equipment performance data. To this end, physics informed machine learning techniques will be used to bring model data and real data together in a Digital Twin
-
Join us on our quest to overcome a long-standing research challenge in soft tissue biomechanics through the combination of multi-modal experimental tissue testing data, machine learning and physics
-
research fellow driven to advance the safety, sustainability and reliability of nuclear energy. You will develop theoretical knowledge of nuclear reactor physics and apply this in modern numerical methods
-
Challenge: Generating realistic bathymetric maps at a large scale using satellite images and advanced machine learning methods. Change: Incorporating physics into satellite-derived bathymetry
-
bioprocesses still have. This effort includes quantifying the impact of various process routes as well as creating micro-organisms (or consortia thereof) that can deal with new feed stocks or produce more
-
A leader who brings people together in creating a strategic vision and shape the future of our research department. That’s the challenging role you will have as Head of Department Imaging Physics
-
the Innovation for Delft Engineering Education (IDEE) initiative, on the theme “Students taking responsibility for their own learning process”. For this post-doc position, you will investigate how learning in
-
, urban planning, building technology, social sciences, process management, and geo-information science. The faculty works closely with other faculties, universities, private parties, and the public sector
-
performance, we will pioneer novel physics-informed machine learning algorithms to formulate an optical link performance map. This groundbreaking project comprises two PhD positions and one postdoc position
-
Sustainable Process & Energy Technology The Department of Process and Energy (P&E) of Delft University of Technology (TU Delft), The Netherlands, announces an open position for an Assistant