Sort by
Refine Your Search
-
Listed
-
Employer
- Utrecht University
- Delft University of Technology (TU Delft)
- Eindhoven University of Technology (TU/e)
- Amsterdam UMC
- Delft University of Technology (TU Delft); Published 11 Nov ’25
- Delft University of Technology (TU Delft); yesterday published
- Eindhoven University of Technology (TU/e); Published 7 Nov ’25
- Naturalis
- Naturalis; yesterday published
- Radboud University
- Radboud University; 3 Oct ’25 published
- University of Amsterdam (UvA)
- University of Amsterdam (UvA); Published yesterday
- University of Twente (UT)
- University of Twente (UT); Enschede
- Utrecht University; Published 11 Nov ’25
- 6 more »
- « less
-
Field
-
(UvA) is recruiting a postdoctoral researcher in AI for fluid mechanics. This postdoc is part of an NWO-funded project on accelerating computational modelling of rarefied (i.e. highly dilute gases
-
machine learning and neuromorphic hardware is to utilise material platforms that exhibit multiwell behaviour. One challenge here is to understand and control the dynamic response of the system for complex
-
. Methodologically, you will explore advanced deep learning approaches, including convolutional and transformer-based architectures, as well as methods for modeling temporal dynamics in longitudinal imaging and omics
-
, chemistry, computational science, or a related field. Strong expertise in at least two of the following: density functional theory (DFT)/many-body methods, molecular dynamics (MD), machine learning (ML
-
project management and communication skills. You will be joining a dynamic department with broad interests in biotechnology and synthetic biology across all domains of life. For more information, please
-
. One challenge here is to understand and control the dynamic response of the system for complex input signals. Your goal will be to explore material systems that host novel types of correlated electron
-
recruiting a postdoctoral researcher in AI for fluid mechanics. This postdoc is part of an NWO-funded project on accelerating computational modelling of rarefied (i.e. highly dilute gases), which brings
-
convolutional and transformer-based architectures, as well as methods for modeling temporal dynamics in longitudinal imaging and omics data. You will also develop explainable AI (XAI) techniques to link imaging
-
. The successful candidate will work as part of the MODABAT project funded by the Joint Undertaking of Clean Aviation. The postdoc is expected to take a leadership role in research integration and coordination
-
. Validation of models by benchmarking with cell and system level measurements. The successful candidate will work as part of the MODABAT project funded by the Joint Undertaking of Clean Aviation. The postdoc is