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function and learn why we do what we do. We connect perspectives and contribute to living together in society. Interested? Want to know more about this position or what it’s like to work at our university
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, field). You are eager to learn new techniques, whether in plant physiology, genomics, or high-throughput phenotyping, and you enjoy connecting detailed trait measurements to the bigger picture of crop
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perspective. The second PhD position within this work package will focus on ‘learning from nature’. Together, these complementary perspectives will contribute to an integrated, system-level approach
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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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, 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