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Faculty of Science The Department of Mathematics at Radboud University is part of the Institute for Mathematics, Astrophysics and Particle Physics in the Faculty of Science. Several activities

An outstanding, highly motivated PhD candidate to perform research in mathematical general relativity and in the broader context, on hyperbolic partial differential equations and geometric analysis

2021 We are looking for An outstanding, highly motivated PhD candidate to perform research in mathematical general relativity and in the broader context, on hyperbolic partial differential equations and

Applications are invited for a 3year postdoctoral researcher position in the field of HISCORE: Development of Advanced High Sensitivity NMR Detection. This position is embedded at the Institute for Molecules and Materials. You are a postdoctoral researcher who likes to work in an international...

Applications are invited for a 4 or 5year PhD position in the field of HISCORE: Development of Advanced High Sensitivity NMR Detection. This position is embedded at the Institute for Molecules and Materials. Two PhD candidates who like to work in an international environment and are able to...

, astronomy, chemistry, biology, mathematics and computer sciences. FNWI encompasses seven research institutes, one of them being the Institute for Science in Society. Both in research and education, ISiS is

Faculty of Science The Department of Mathematics at Radboud University is part of the Institute for Mathematics, Astrophysics and Particle Physics in the Faculty of Science. Several activities

, technology, engineering and mathematics are particularly encouraged to apply.

that are underrepresented in science, technology, engineering and mathematics are particularly encouraged to apply. We ask You hold a Master's degree in Mathematics, or you are on track to obtain one before the start of

. This work entails a theoretical (mathematical) development of stateoftheart biologically plausible learning rules and reinforcement learning strategies alongside implementation/testing of these algorithms