Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Utrecht University
- Delft University of Technology (TU Delft)
- University of Amsterdam (UvA)
- Wageningen University & Research
- Erasmus University Rotterdam
- Maastricht University (UM)
- University of Twente
- Eindhoven University of Technology (TU/e)
- Radboud University
- Vrije Universiteit Amsterdam (VU)
- KNAW
- Leiden University
- Wetsus - European centre of excellence for sustainable water technology
- ;
- Amsterdam UMC
- Erasmus University Rotterdam (EUR)
- Radboud University Medical Center (Radboudumc)
- University of Twente (UT)
- DIFFER
- Delft University of Technology
- Eindhoven University of Technology
- NIOZ Royal Netherlands Institute for Sea Research
- NLR
- RiboPro B.V.
- Tilburg University
- University Medical Centre Groningen (UMCG)
- 16 more »
- « less
-
Field
-
, they have acquired the knowledge, insight and skills to make important and inspiring contributions to an increasingly international society in which diversity plays a major role. The faculty offers three
-
curiosity to expand fundamental knowledge and to look beyond the borders of their own discipline. The research carried out at the Faculty of Science is diverse, ranging from artificial intelligence
-
, translating knowledge into practice; Strong support network: Benefit from experienced supervisors, peer mentoring, and a dedicated coordination team; Societal engagement: Present your work to practitioners
-
adaptation research, or urban resilience is considered an advantage, but is not required. Knowledge of Mandarin Chinese is considered an asset, but is not mandatory. What we offer We offer a full-time (1.0 FTE
-
a safe and inclusive environment in which everyone can flourish and contribute. Knowledge security screening can be part of the selection procedures of academic staff. We do this, among other things
-
are educated in a stimulating learning environment. Upon graduation, they have acquired the knowledge, insight and skills to make important and inspiring contributions to an increasingly international society in
-
). The field of Machine Learning on Graphs aims to extract knowledge from graph-structured and network data through powerful machine learning models. Designing provably powerful learning models for graphs will
-
to develop (i) new theoretical insights on sheltered digital work as a ‘nascent occupation’ as well as (ii) actionable knowledge that supports social enterprises to organize and manage novel forms of sheltered
-
with an excellent knowledge of the Middle Dutch and Middle Low German language, literature and culture. Knowledge of High German and Middle French will be considered an advantage. You are a communicative
-
complexity of the project prior knowledge in Materials Science is required. Ideally, you have a proven background in thermophysical and x-ray diffraction measurement methods. We encourage candidates with