80 phd-"Stanford-University" PhD positions at Eindhoven University of Technology in Netherlands
Sort by
Refine Your Search
-
Disruptive innovations are needed in managing and operating distribution grids. Are you our next PhD researchers in exploring disruptive innovations in managing and operating distribution grids
-
collaborating with advanced industries. Fundamental knowledge enables us to design solutions for the highly complex problems of today and tomorrow. Curious to hear more about what it’s like as a PhD candidate at
-
, food sharing platforms not only optimize resource use but also promote sustainable consumption patterns within the circular economy. This PhD position offers an exciting opportunity to explore
-
to collaborate with geophysics colleagues and to analyse field data? We are looking for two motivated PhD candidates that will advance the fundamental understanding on the physics of dense stabilized emulsions
-
what it’s like as a PhD candidate at TU/e? Please watch the video. Application We invite you to submit a complete application by using the apply button. The application should include a: Cover letter in
-
Disruptive innovations are needed in managing and operating distribution grids. Are you our next PhD researchers in exploring disruptive innovations in managing and operating distribution grids
-
of robustness, safety, trust, reliability, tractability, scalability, interpretability and explainability of AI. The UAI group is looking for a highly motivated and skilled PhD candidate to work in the area of
-
Disruptive innovations are needed in managing and operating distribution grids. Are you our next PhD researchers in exploring disruptive innovations in managing and operating distribution grids
-
Development Scientific Staff Vacancies PhD EngD Support staff Professional Development Support Staff Vacancies Why TU/e Compensation and benefits Application process Support for internationals Working at TU/e
-
motivated PhD candidates that, combining model-based (physics) and data-driven (machine-learning) approaches, will develop innovative, highly accurate and highly efficient solvers for rarefied gas flows