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to participate in our institute’s educational programmes. You communicate well with colleagues at all levels and like working in a team. You have an interest in communicating your science to wider society (e.g. in
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academic identity and community loyalty? Then join the Institute for Science in Society (ISiS) as one of two PhD candidates! The first PhD project mainly involves a quantitative social science study of how
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Employment 0.8 - 1.0 FTE Gross monthly salary € 4,332 - € 5,929 Required background PhD Organizational unit Faculty of Social Sciences Application deadline 29 May 2024 Apply now Do you want
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Employment 0.8 - 1.0 FTE Gross monthly salary € 2,770 - € 3,539 Required background Research University Degree Organizational unit Faculty of Social Sciences Application deadline 27 May 2024 Apply
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Employment 1.0 FTE Gross monthly salary € 2,770 - € 3,539 Required background Research University Degree Organizational unit Faculty of Science Application deadline 20 June 2024 Apply now Are you
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Employment 1.0 FTE Gross monthly salary € 2,770 - € 3,539 Required background Research University Degree Organizational unit Faculty of Social Sciences Application deadline 28 May 2024 Apply now Do
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science require good employment practices. Radboud University's primary and secondary employment conditions reflect this. You can make arrangements for the best possible work-life balance with flexible
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PhD Candidate: Neurocognitive Mechanisms of Alternative Thinking at the Donders Centre for Cognition
Employment 1.0 FTE Gross monthly salary € 2,770 - € 3,539 Required background Research University Degree Organizational unit Faculty of Social Sciences Application deadline 24 May 2024 Apply now Are
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-disciplinary research in the social sciences. You have an extensive knowledge of and experience with field research and a broad range of methodological procedures for research. You have an outstanding track
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that can be used at speeds that are orders of magnitude faster than current CMOS technology. In order to demonstrate the computational power of so-called synchronised stochasticity for approximate Bayesian