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Apply now The Faculty of Science and the Leiden Institute of Advanced Computer Science (LIACS) are looking for a: PhD Candidate in AI for Network Analysis (1.0 FTE, 4 years) About this position
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who has made an outstanding contribution to the humanities or social sciences. The prize consists of a monetary award of EUR 25,000, intended to help finance a research project at the prizewinner’s
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of knowledge production and dissemination. Responsibilities Designing and conducting fieldwork in selected border region(s), using a combination of ethnographic and creative methodologies. This may include
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, Industrial Engineering, Computer Science, or Machine Learning. Solid experience with quantitative optimization methods, including (but not limited to) mathematical programming and stochastic dynamic
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consortium comes in. PRELIFE unites experts across a wide range of disciplines from astronomy, biology, chemistry, computer science, earth and planetary sciences, education, mathematics, to physics. Together
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at the very frontiers of knowledge on climate change, Earth’s climate system and climate feedbacks. Within its 10-year research programme, funded by NWO , EMBRACER brings together a wide range of world
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longitudinal project on violent youth radicalization and conspiracy belief, conducted by an interdisciplinary team spanning forensic youth care sciences, developmental psychology, sociology, and criminology
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models. Requirements The successful applicants will have: A solid computational background, an interest in cognitive neuroscience a and strong deep learning programming skills. Ability to work in an
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decarbonization of industry? How can industrial climate policies promote the energy transition? What does the economically efficient design of future energy systems look like? And what role—if any—can technologies
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widely used co-catalysts in asymmetric catalysis. However, the synthesis of systematic libraries based on chiral bidentate ligands can be laborious, rendering data-driven bidentate ligand design