Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
-
Field
-
At the Faculty of Engineering and Science, Department of Mathematical Sciences, one or more PhD stipends/Integrated PhD stipends in inference and modeling of Quantum transduction processes
-
will initially primarily involve research-based regulatory advisory services and communication to authorities, industry, and society within the field of pesticides. In the beginning there will be a lot
-
If you are motivated by finding sustainable energy solutions for society, especially for arctic communities that want to develop industry and welfare where infrastructure is limited, you could be the PhD
-
, robust, and trustworthy robotic technologies. Your research will span core challenges such as robot control, decision-making under uncertainty, multimodal information fusion, and foundational models
-
to produce and process plant-based foods with enhanced concentration of micronutrients as an integrative part of sustainable and healthy diets. Development of analytical methods, digestion models, dietary
-
, innovation, psychology, data science, or a related social science discipline). Documented interest in innovation research, also from a consumer perspective. Strong analytical skills; experience with
-
to reflect the diversity of society and encourages all qualified candidates to apply regardless of personal background. Where to apply Website https://candidate.hr-manager.net/ApplicationForm
-
, digestion models, dietary modelling, and conducting consumer surveys will form part of the Doctoral Network’s tasks. The 12 PhD candidates will be based across seven different universities in Europe: four in
-
learning, optimisation, system modelling, or related quantitative methods, as acquired through master’s level coursework and project work. Familiarity with data driven modelling approaches relevant to energy
-
safer, more reliable, and more sustainable renewable energy systems. You are driven by scientific curiosity, enjoy working with complex multi-physics models, and are eager to advance probabilistic methods