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investigate how machine-learning based algorithms can be used to personalize the user experience. The goal of this personalized user experience is to enable each individual user to discover their own
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classical antiquity to our contemporary world, and teach in programmes ranging from Classics and Book History to Modern Literature, International Studies and Art History. Strengthened by our diversity, LUCAS
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or geoinformatics) and the willingness to acquire the others during the first months of the project will suffice to be taken into consideration. Our offer We offer: a position for up to 34 months - the length
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on methods such as functional connectivity analysis, brain network analysis, or machine learning; Excellent scientific writing and communication skills in English; Ability to work independently while
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/ ) excels in teaching and research in the fields of human behaviour, thinking, learning, and how people live together. We work on societal issues and problems that people experience in daily life. Central to
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of human behaviour, thinking, learning, and how people live together. We work on societal issues and problems that people experience in daily life. Central to this is individual and societal resilience and
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closely with experienced faculty members to develop and deliver courses at the BSc and MSc levels. RSM has a dedicated Learning Innovation Team (LIT), which supports faculty members in the improvement and
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programming languages such as R (Experience with NetLogo is preferred but not essential). experience in the development and use of spatial microsimulation and a familiarity or willingness to learn agent-based
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energy-related projects or a strong motivation to learn and apply energy systems modeling and optimization. Are an excellent researcher and have the ambition to publish in leading scientific journals in
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develop a simplified model focusing on the leader stage. You will: Analyze experimental data and microscopic simulations Identify relevant physical features and parameters Apply machine learning techniques