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; 1) tracking the historical transformation in medical and cultural representations of benzodiazepines and related substances in Europe 2) digital trading practices among dealers through online markets
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HPC environments Good communication skills to interact with collaborators ranging from machine learning researchers to pathologists or medical students Knowledge of biology and medicine is a plus Highly
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testing dynamic equivalencing methods for power system dynamic simulations and integrating these into commercial simulation tools. Dynamic equivalents are simplified representations of complex power system
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category. It pursues this agenda in three Research Fields that will trace the ambivalences of enmity through studies dedicated to: (1) knowledge production (Research Field “Knowing the Enemy”), (2
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background with interests in issues surrounding gender identity, representation, and mediation. The PhD student will be expected to create an original research-led thesis which contextualises topics related
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and custom processors. Work description Investigate SSM representations compatible with spiking dynamics Investigate the usage of SSM along with sensor devices. Design digital/analog building blocks
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behavior of programs at a high level. Automata theory — to manipulate logical formulas and domain representations. Two-player games — to reason about strategies and synthesized programs. The work involves
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Computational Arts, Music, and Games within the DSAI division. About the research project This position is related to investigating learned cultural representations in data search spaces of generative AI models
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complex input. For instance, in physics-informed ML, in addition to data examples used by a standard ML setup, domain knowledge serves as an additional input. It can be in an explicit form of rigorous
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-resolution 3D microstructures from microscopy data Learn meaningful representations of complex material structures The work contributes to both scientific understanding and sustainable industrial innovation