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ground-breaking results. Your key responsibilities are to: Project 1: Explore the generation and manipulation of 3D cluster states and their potential for fault-tolerant quantum computing. Project 2
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postdoctoral position of three-year duration in atmospheric characterization of terrestrial, super-Earth, and sub-Neptune type exoplanets. The postdoc will work with data from the James Webb Space Telescope
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to be fluent in at least one of these languages, and in time are expected to master both. You will be assessed against the responsibilities and qualifications stated above and the following general
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for this position will be: Solid modeling and design of high-performance integrated photonic devices Process development of low-loss photonic integrated circuits on different material platforms Heterogeneous
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the responsibilities and qualifications stated above and the following general criteria: Documented experience and quality of teaching and curriculum development Research impact and experience, funding track record and
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Positions Country Denmark Application Deadline 19 Dec 2025 - 23:59 (Europe/Copenhagen) Type of Contract Temporary Job Status Full-time Hours Per Week 37 Offer Starting Date 1 Mar 2026 Is the job funded
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25 Nov 2025 Job Information Organisation/Company COPENHAGEN BUSINESS SCHOOL Research Field Economics Researcher Profile Leading Researcher (R4) Country Denmark Application Deadline 19 Dec 2025 - 00
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for this position will be: Solid modeling and design of high-performance integrated photonic devices Process development of low-loss photonic integrated circuits on different material platforms Heterogeneous
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about the recruitment process at https://employment.ku.dk/faculty/recruitment-process/ . The applicant will be assessed according to the Ministerial Order no. 242 of 13 March 2012 on the Appointment
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of Aalborg University. Job Description This position is part of the cross-disciplinary DK-Future project – Probabilistic Geospatial Machine Learning for Predicting Future Danish Land Use under Compound Climate