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here . Further information Further information may be obtained from Associate Professor Yang Hu (yanhu@dtu.dk) You can read more about DTU Energy at www.energy.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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well as abroad. Your primary tasks will be to: Using automotive lidars for detection of wind turbine blade deflection Development of efficient ways to analyze the automotive lidar data Develop the technology to
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agreed upon with the relevant union. The period of employment is 2 year. Starting date as soon as possible in the new year. You can read more about career paths at DTU here . Further information Further
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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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about career paths at DTU here . Further information Further information may be obtained from Professor Yi Sun (suyi@dtu.dk ). You can read more about DTU Health Tech at www.healthtech.dtu.dk . If you are
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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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. Further information Further information may be obtained from Professor Wei Yan, tel.: +45 2245 0662, email: weya@kemi.dtu.dk . You can read more about Department of Chemistry on www.kemi.dtu.dk If you are
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of single indistinguishable photons for photonic quantum information technology. Single-photon sources play an important role in photonic quantum information applications, which generally require near-unity
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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