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an open 2-year postdoc position in relation EUROfusion; specifically, on remote maintenance of fusion power plants. The project is on modelling and controller design for the transporter robot for extracting
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experience in scientific writing and publication in peer-reviewed scientific journals Research experience in some of the areas of process-based crop modeling, uncertainty characterization, digital agronomy
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to oncogenic enhancers. You will integrate loss- and gain-of-function tools (e.g., CRISPR/Cas and degron systems) with a range of advanced omics approaches in pre-clinical model systems such as cell lines and
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transcriptomics and bioimaging to study human liver biopsies and advanced, preclinical models. A combination of wet-lab and computational biology, close ties to the clinic, and a wonderful team of early career
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potential for exploiting temperature gradients for producing electricity and predict their long-term performance under real operating conditions. The project also includes modeling of heat transfer and
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engineering, control engineering, or similar) Experience in power electronics Experience in control and modelling Experience with hardware-in-the-loop (HIL) emulators such as dSPACE, OPAL-RT, and Speedgoat
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will be at the absolute forefront of combining GNSS and modeling the different contributions that courses solid Earth deformation where the main contributors are elastic deformation, glacial isostatic
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interest in information processing in humans and computers, and a particular focus on the signals they exchange, and the opportunities these signals offer for modelling and engineering of cognitive systems
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immunology, neuroscience and development of novel nutritional interventions for newborn piglets. The candidate should preferably have a veterinary background or research experience in animal models
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create multi-fidelity predictive models that integrate data from quantum simulations and experiments, using techniques such as equivariant graph neural networks with tensor embeddings. We aim to train