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Institutes). An appointment at NIOZ as a PhD candidate means working and learning simultaneously conform the NIOZ PhD policy. 338 annualized holiday hours for a full-time 40-hour work week. Pension scheme via
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transdisciplinary research, participatory research, and climate adaptation/resilience; Willingness to acquire new skills as required for the required study of the PhD project; Experience in publishing, as lead author
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NExTWORKx, the strategic partnership between the telecom and ICT service provider KPN and Delft University of Technology. Curious to learn more about the project? Feel free to visit our website , where you’ll
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Ultracold Atom Quantum Sensing Testbed , which will allow you to learn about many interesting projects related to your PhD, such as creating a European optical time and frequency distribution network
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about everyone’s research project and try to help and learn from each other’s problems to boost our scientific and personal growth. We also enjoy many team-building activities and events where you will
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curiosity driven, and have strong analytical and problem-solving skills. You are eager to learn new skills to combine different microbiological disciplines, and thrive in an independent as
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annual vacation pay of 8%. High-quality training programs and other support to grow into a self-aware, autonomous scientific researcher. At TU/e we challenge you to take charge of your own learning process
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, including abstract geospatial workflows; design AI- and machine-learning-based methods that automatically describe and model geodata sources using textual metadata (NLP) and the geodata itself; contribute