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of Law, department Law & Markets, is looking for a PhD researcher in Digitalisation, AI-technology and LGBTQ+ Rights (4,5 years, with 20% teaching tasks). Job description The selected candidate will be
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PhD Position: Activating Heritage as a Mediator for Dialogue and Belonging in an Era of Polarization
relationships and co-creating dialog tools with local partners. The position is embedded in the vibrant environment of the faculty of Campus Fryslân, where research connects academic rigor with real-world
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the research groups of prof. Ben Feringa (University of Groningen) and prof. Willem Kegel (Utrecht University). The experimental work will be embedded within the Stratingh Institute for Chemistry, which is part
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materials. For the second challenge, achieving cooperative effects by the controlled organisation of a large collection of molecular motors, one approach involves embedding molecular rotary motors in
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chain management in a short research proposal. Organisation The PhD position is embedded in the research programme Opera of FEB’s Research Institute. The project will be supervised by dr. Chengyong Xiao
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the page about working as a PhD candidate . Profile You have a MSc degree in Chemistry, Chemical Engineering or a related discipline – affinity with physical chemistry is a strong plus. You are motivated by
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are eager to answer these questions during a four-year PhD project, check out this opportunity! Why boys perform less well in education than girls in most Western countries is a hotly contended question
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, analysing the data, developing prognostic and simulation models and writing scientific articles. The PhD position is embedded in the research programme Operations of FEB’s Research Institute, while building
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theory and real-world policy design. The PhD position is embedded in the Economics, Econometrics, and Finance research programme of FEB’s Research Institute. The project will be supervised by Dr Viktor
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Vacancies PhD position on Dependability Driven on Device Learning Algorithms for Embedded Neuromorphic Architectures Key takeaways Edge devices that can learn autonomously while guaranteeing