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and/or language skills Hands-on skills and programming experience Who we are The robot design and control team led by Xuping Zhang is dedicated to advancing robotic interaction and manipulation, with a
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framing of EQA’s work on quantum workforce needs, skills gaps, training provision, and talent pipeline development across Europe. Supporting the design and coordination of analyses and mapping activities
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protein engineering, characterization of protein interactions by various methods, de novo design of protein binders, integrative structural biology using NMR, SAXS and/or single molecule FRET. Your profile
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section Help design and pilot an outreach programme for Danish school classes linked to the monitoring work Help organise two workshops bringing together interdisciplinary expertise from within and beyond
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across the project’s two work packages, the postdoc is envisioned a leading role in designing, conducting and publishing the studies in the experimental philosophical part of the project (WP2). Accordingly
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/experimental design & analysis of complex research data. Honesty and integrity The ability to take individual responsibility for planning & undertaking own work, according to clinical and scientific deadlines
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design and scaling for electromethanogenesis. The position is based at the main campus at Aarhus University and is expected to begin on 1 May 2026, or as soon as possible thereafter. The postdoc will be
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Science including quantitative and qualitative consumer research methodologies, and experience in designing consumer studies in and out-side Denmark. Solid experience in statistical analysis are preferred
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relating to 19th-century science. Experience with archival work and/or knowledge of Scandinavian languages is an advantage, though not a requirement. Please include a research plan (max. 1000 words
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include: Developing deep learning models for spatiotemporal fusion of multi-sensor satellite data (e.g. SAR and SMAP), with soil moisture as a target variable. Designing and evaluating deep learning