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will be based at DTU Nanolab, where we conduct cross-disciplinary research and apply micro- and nanotechnology to a wide range of scientific disciplines and applications. The Biomaterial Microsystems
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Space we seek candidates with a strong interest in glaciology for a PhD position in “Understanding the recent behaviour of two major outlet glaciers in Greenland”. You will break new ground at
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. Research Project You will conduct a research project with the aim to understand the molecular mechanism that allows the transition zone (TZ), a conserved protein complex with unknown molecular structure
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teaching, conduct an external research stay, and disseminate your research through publications. Qualifications You must have a two-year master's degree (120 ECTS points) or a similar degree with an academic
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areas, based on data from an existing survey that will explore their workload, job satisfaction, family dynamics, work-life balance and challenges faced in providing care. Key Responsibilities: Conduct
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focus on the impact of nutrition on health and disease prevention in specific lifestages, including pregnancy, infancy, childhood and adults with obesity. We conduct randomized controlled trials with
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Description of the offer : At the Technical University of Denmark, Department of Energy Conversion and Storage (DTU Energy) we are looking for a PhD-student to conduct research on modeling of ideal
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properties of skeletal muscle during static and dynamic contractions. The student will also participate in early-stage algorithmic work to model muscle architecture and behavior across contraction types. In
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the microstructure from the AM process to the fatigue behavior. The position will involve active collaboration with international research groups working on the simulation of corrosion of metal AM, as well as close
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for behavioural and security properties; efficient algorithms for model checking, learning and synthesis; improved explainability and safety of machine learning models, e.g. by integrating neural and symbolic