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to develop many-body theory and its computational implementation for positron interactions with atoms, molecules and condensed matter, and helping to deliver the aims of the ERC Consolidator Grant "ANTIMATTER
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engine of Artificial Intelligence (AI). It is a fundamental force of technological progress in our increasingly digital, data-driven world. Researchers in Integreat develop theories, methods, models, and
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numerical literacy in developing computer code for simulation models and for data analysis and interpretation. About the project/work tasks: The first position is part of the research project Thermos
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requires a thorough understanding of marine ecology, the role of the environment, and the capabilities of marine organisms, but also good numerical literacy in developing computer code for simulation models
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20th July 2025 Languages English English English The Department of Mathematical Sciences has a vacancy for a Postdoctoral Fellow in Representation Theory Apply for this job See advertisement This is
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underway and involves developing the theoretical framework to apply narrative theory to AI-generated stories. The successful applicant will primarily work on Stage 2, where we develop hypotheses and
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narrative theory to AI-generated stories. The successful applicant will primarily work on Stage 2, where we develop hypotheses and experiments and test them by finetuning and prompting models and analysing
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theories to better understand and predict the role of fluid mixing as a driver for mineralization in porous media, a key knowledge gap for a wide range of environmental, engineering, and geological processes
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, for instance, those based on processes of storytelling, creative writing, cognitive science, narrative theory, and/or theories of creativity. The successful candidate will conduct collaborative as