Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
contribution to addressing the major societal challenges of the future. The research carried out at the Faculty of Science is very diverse, ranging from mathematics, information science, astronomy, physics
-
students? This participatory PhD project might be your chance! As a PhD you will be involved in a 4 year NRO (Nederlands Regieorgaan Onderwijsonderzoek) funded project that is contextualised in the Learning
-
compartments, using a combination of chemical, physical, and analytical techniques. The PhD will be supervised by prof. Nathalie Katsonis, and carried out in close collaboration with prof. Ben Feringa
-
internationally. • Participate in the Faculty of Science PhD training program. • Participate in the department’s educational programs, assisting in teaching and supervision of undergraduate or Master students
-
PhD Position on Sea Ice in the Arctic Climate System Faculty: Faculty of Science Department: Department of Physics Hours per week: 36 to 40 Application deadline: 28 August 2025 Apply now Join
-
understanding of the decision-making process of street-level workers. This PhD project ‘ICONIC’ (‘International Comparative research Of street-level decisions in superdiverse Neighbourhoods In Context’) funded by
-
. This demands renewed understanding of the decision-making process of street-level workers. This PhD project ‘ICONIC’ (‘International Comparative research Of street-level decisions in superdiverse Neighbourhoods
-
communication skills are encouraged to apply. A MSc degree (or equivalent) in Mechanical Engineering, Computational Physics, Materials Science or a related discipline is required, with experience in atomistic
-
within the next three years is to be expected. A university PhD training programme is part of the agreement and the candidate will be enrolled in the Graduate School of Science and Engineering. The
-
ownership, making it hard to evaluate how physical risks translate into financial vulnerabilities at the institutional level. This PhD research aims to develop a holistic modelling framework for assessing