21 natural-language-processing-intern PhD positions at University of Groningen in Netherlands
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Senegal River Delta and the more traditional Casamance region of Senegal. By comparing these contrasting contexts, the research aims to identify and test nature-friendly farming strategies that can
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on the interplay between natural wetlands and agricultural landscapes. By employing a comparative framework across sites with varying levels of human and climate change pressures, this research will elucidate how
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trade-offs of upscaling Offshore Wind Farms (OWFs) in the context of climate change and the ongoing food and nature transitions in the North Sea. The project has an interdisciplinary consortium of world
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the Netherlands, offering diverse programs across various disciplines. Located in the lively and historic provincial capital, the university has a vibrant international community, with students and staff from all
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, natural language processing, computational cognitive modelling, neural language models, etc. Ability to code in Python and/or other programming languages. Knowledge of languages other than English would be
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fields. Demonstrable skills in at least some of the following: computational linguistics, natural language processing, computational cognitive modelling, neural language models, etc. Ability to code in
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interdisciplinary approach, combining diverse expertise to generate new insights into the conditions and processes that gave rise to life. As part of this initiative, we offer 15 exciting PhD research projects
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single mirror image forms is often denoted as “A Signature of Life”. Homochirality is essential for, e.g., molecular recognition and information processing, enzyme functioning and cell replication. However
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governance, the multi-scalar nature of its organisation and implementation, and its effects on society and international politics. For example, when considering theories of power, the candidate must be
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on polycentricity, the approach must be sensitive to the heterogeneous and diffuse nature of AI governance, the multi-scalar nature of its organisation and implementation, and its effects on society and international