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project with many project partners and farmers Experience with or interest in quantitative research methods Being a team player Speak or willing to learn Dutch within the first year of the PhD You will work
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University. Requirements A master’s degree in (applied) mathematics (or related), with a strong background in computational methods, preferably also using computational frameworks for machine learning in
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collection and sharing, education, and practical applications in agriculture and plant breeding. Learn more about CropXR at here . This vacancy is for two PhD positions that are part of the Translator work
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(Professor of Sociology and Technology at Maastricht University, PhD supervisor). You will also collaborate with Mieke van Houtte (Professor of Sociology, Ghent University). Would you like to learn more about
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-based, tailored interventions and to aid efforts to reduce the violence burden on society. As a Group, we teach a range of courses in the minor Violence Studies and in the CSM Track Governance of Violence
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of local languages, culture, agricultural practices and landscapes of Senegal or in West Africa is an advantage. A driving license. Willingness to learn new analytical and scientific skills. Willingness
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languages, culture, agricultural practices and landscapes of Senegal is an advantage. A driving license. Willingness to learn new analytical and scientific skills. Willingness to communicate and interact with
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. CML distinguishes itself for its attention to professional development in coordination with the interests of its scientists. As such, there are plenty of opportunities to learn new skills, expand your
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challenges and to have interactions with stakeholders; excellent English oral and writing skills and willingness to learn Dutch. Our offer A position for one year, with an extension to a total of four years
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. Legal systems worldwide—and particularly within the European Union (EU)—are facing urgent challenges in addressing the ethical and societal impacts of AI-driven applications and machine-learning