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are conducted in parallel in close collaboration with industry, public authorities, and international partners. The successful candidate is expected to contribute to the development of the research, including
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. Through our disease-focused clinics we offer an inter-disciplinarily approach to patient care that provides access to the most current therapies and to the resources of the University. In parallel with our
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/Anders Lien 8th April 2026 Languages English English English PhD Fellowship in RNA modification in Early Embryo Development Apply for this job See advertisement About the position A PhD Fellowship in RNA
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will be formulated for integration into a turbine-scale simulation framework developed in a parallel PhD project within RenewHydro. This position is financed through the Research Council of Norway and
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of multiple medicines across cellular mechanisms in parallel, ensuring accelerated assessment of existing and new therapies. Improving our understanding of the cellular basis of disease will help bridge the gap
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. We develop and apply both experimental and computational approaches, including in vivo Massively Parallel Reporter Assays (MPRAs), to define the sequence basis and functional consequences of enhancer
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) Counterterrorism and Forensic Science Research Unit (CFSRU) is currently seeking qualified individuals who have earned their Bachelor’s, Master’s, or PhD degree within the last five years to join the FBI Visiting
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Qualifications Essential Qualifications: PhD degree in Neuroscience, Physics, Electrical Engineering or other related field. At least 4 years hands-on experience in an EM laboratory Ability to organize and execute
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opportunities for better design. AI-driven optimisation offers a promising parallel route forward. Techniques such as Bayesian optimisation have already proven successful in related contexts, such as optimising
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: Large‑scale optimization and machine learning: Stochastic and/or (non‑)convex optimization methods, first‑order methods, variance reduction, distributed and parallel optimization, federated learning