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The Section for Electrical Energy Technology under the Department of Electrical and Computer Engineering (ECE) at Aarhus University invites applicants for a two-year postdoctoral position, offering
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Dublin. Responsibilities and qualifications a PhD degree in computer science with a background in visual computing, VR, AR, XR or a related field OR equivalent industrial experience strong interest in
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industry. The candidate will support several of these activities jointly with other researchers. Qualification requirements Possession of a Ph.D. in engineering, computer science, or related field
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computational empowerment in Danish K-12 education. The postdoc position is affiliated with the National Research Center for Technology Comprehension. The postdoc position is a full time and two-year fixed-term
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that provide vehicle safety by adapting appropriate sensing technologies, computing and perception pipelines, for various application areas, such as grassland, lawn/turf, orchards/vineyards. This work promotes
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ecosystems” carried out at the Department of Civil and Mechanical Engineering at the Technical University of Denmark. The position focuses on developing accurate numerical simulations and multi-scale models
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× Similar Jobs PhD Scholarships in computational biology and single-cell analysis - DTU Bioengineering Kgs. Lyngby, Denmark Posted on 05/31/2024 The lab of Prof. Kedar Natarajan at DTU Bioengineering invites
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“Scaling high-value steel recycling through digitalized Spray Forming and local closed-loop ecosystems” carried out at the Department of Civil and Mechanical Engineering at the Technical University
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Skip to main content. Profile Sign Out View More Jobs Postdoc in Pectin Extraction at Pilot Plant – DTU Chemical and Biochemical Engineering Kgs. Lyngby, Denmark Be the First to Apply Job
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expertise in the fields of chemical impact assessment with special focus on toxicity and ecotoxicity characterization and computational data science. Expertise in developing data-based prediction models using