68 econometrics-big-data Postdoctoral positions at Technical University of Denmark in Denmark
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processing quantum information. The memories must be optically active so distant nodes in a network can be entangled via single photons emitted by the memories. Erbium in silicon is currently subject to
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. Further information Further information may be obtained from Navid Ranjbar, e-mail naran@dtu.dk . You can read more about the Department of Civil and Mechanical Engineering at www.construct.dtu.dk . If you
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fabrication methods (robotics) while integrating real-time lifecycle data into decision-making that substantially reduces the construction phase’s environmental impact. The selected candidate will work on DTs
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analytical chemistry and with a preference to a strong background in chemistry. Candidates with practical experience in non-target analysis and data analysis workflows, gas chromatography of very volatile
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. You can read more about career paths at DTU here . Further information For more information, please contact Thomas Christensen (thomas@dtu.dk , tel.: +45 5030 6552). You can read more about DTU Electro
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. You can read more about career paths at DTU here . Further information Further information may be obtained from Professor Anker Degn Jensen: +45 2217 1723, e-mail aj@kt.dtu.dk . If you are applying from
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at the intersection of digital building technologies, data science, and energy systems. By joining our forward-thinking section Digital Building Technologies at DTU Construct, you will gain hands-on experience in
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process modelling, experimental data, model parameters and modelling approaches in order to optimize design, analysis and operation of complete capture processes. The goal of the project is to develop
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design to testing, programming neural interfaces, neural data analysis. We offer DTU is a leading technical university globally recognized for the excellence of its research, education, innovation and
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, protocols, and data standards across collaborating institutions and scales. This collaboration will support the generation of coherent, high-quality datasets and enable the development of predictive models