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-resolution Ultrasound Real-time imaging using. Erythrocytes (SURE). The approach can non-invasively visualize the microvascular structures in the human body for vessel diameters down to 28 µm from data
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. Expertise in some of the following areas is expected: Expertise in quantum information processing, quantum optics, or related fields. Strong experimental skills and solid theoretical understanding of quantum
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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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paths at DTU here . Further information Further information may be obtained from Alex Toftgaard Nielsen (atn@biosustain.dtu.dk ) You can read more about DTU Biosustain at www.biosustain.dtu.dk If you are
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information Further information may be obtained from Professor Simon Ivar Andersen, simand@dtu.dk , DTU Offshore. You can read more about DTU Offshore at www.offshore.dtu.dk If you are applying from abroad, you
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computer architecture. Responsibilities and qualifications You are expected to conduct independent research in collaboration with and under the guidance of experienced colleagues. Additionally, you will be
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. As an employee in the Turbine Response section, you are expected to be fluent in aeroelastic simulations, data science and analytics and have a solid knowledge of turbulence-turbine interactions
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adjustment and plate tectonics. The analysis will encompass both network wide and local analysis using data from Greenland GNSS Network (GNET). You will target specific regions where there can be an unresolved
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data at both the action potential and local field potential levels. As a formal qualification, you must hold a PhD degree (or equivalent). We offer DTU is a leading technical university globally
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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