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humans-AI collaboration and symbiosis, which will lead to productive and sustainable embeddedness of AI technologies that are aligned with societal and cultural values. This particular PhD fellowship will
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lead to productive and sustainable embeddedness of AI technologies that are aligned with societal and cultural values. This particular PhD fellowship will focus on exploring how learners and teachers
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Additional Skills and Experience Experience utilising and integrating multiple methods and multiple kinds of data in their research Proven ability to implement research projects on time and to a high quality
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references Additional relevant documentation of professional knowledge (for example, list of scientific works). If it is difficult to judge the applicant’s contribution for publications with multiple authors
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the applicant’s contribution for publications with multiple authors, a short description of the applicant’s contribution must be included. About The Faculty of Environmental Sciences and Natural Resource Management
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applying for a PhD position with open-ended PhD projects , you will need to develop and attach a 4-6 page project description according to our guidelines and template . Your PhD project must align
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unpublished works). A publication list (if applicable). Include a brief description of your contributions if you have publications with multiple authors. A manuscript (article) derived from your master’s thesis
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questions and perspectives aligned with ComDisp’s objectives. To prepare a strong application, candidates are encouraged to review the full project description, which is available upon request. Qualifications
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research proposal that outlines relevant research questions and perspectives aligned with ComDisp’s objectives. To prepare a strong application, candidates are encouraged to review the full project
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”, led by Associate Professor Valeria Vitelli. Successful candidates will work on Bayesian models for unsupervised learning when multiple data sources are available, mostly tailored to the case