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Programme? Horizon Europe - MSCA Is the Job related to staff position within a Research Infrastructure? No Offer Description Project description. There are no accurate models for how trimeric autotransporters
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and have a PhD in a field related to mathematical modeling and experience in optimizing industrial processes, this might be something for you! We are looking for a postdoctoral researcher (“PostDoc”) to
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based on chemical synthesis and materials research. We have world class expertise in Atomic Layer Deposition (ALD), electrochemical materials, soft materials, and molecular modelling. The research in
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. Collaborate with ongoing efforts in interface characterization (X-ray based spectroscopy and microscopy) and engineering (e.g., atomic layer deposition, artificial interfaces) and advanced battery modeling
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and cognitive science, investigates the processes of AI-augmented scientific discovery. SCI-AI involves ethnographic fieldwork conducted in frontier AI labs, and cognitive modeling of problem-solving
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research interests encompass a broad range of topics, including discrete mathematics, finite model theory, and the complexity of logical systems, as well as the foundations of AI, explainability, and answer
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for modelling, control, and optimisation of next-generation energy conversion systems. You will also have opportunities to contribute to our open-source computational tools, teach master-level courses, and advise
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algebras, tensor categories, lattice models of statistical physics, conformally invariant random processes, formalization of mathematics (preferably in Lean). The working language of the group is English
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Doctoral Researcher in statistical signal processing. The Structured and Stochastic Modeling Group, headed by Prof. Filip Elvander, conducts research in statistical signal processing, ranging from
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Learning Lab. The successful deployment of statistical models and AI solutions relies heavily on the quality of underlying model assumptions and the learning algorithms they employ. The design of loss