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The Department of Digital Design and Information Studies within the School of Communication and Culture at Aarhus University invites applications for a postdoctoral position in practice-based
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laboratories, modern clinical facilities and advanced digital equipment throughout the department. Our degree programmes cover the orofacial team for societal healthcare services, divided into three professions
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initiatives focusing on: Next-generation energy storage systems Power converter design for Power-to-X (PtX) solutions Microgrid applications Quantum computing in power systems And other emerging technologies in
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or similar. Experience in handling dynamic modelling and control, experimental setup and testing, Digital Twin and Machine Learning Publication experience Collaboration and/or management skills Communication
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, which is a collaboration between the Department of Business Development and Technology and the Department of Digital Design and Information Studies. The project ‘Practice Resonant AI Ethics for the Public
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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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researchers. The selected candidates for these positions will join our team for further advances in this area. This includes phenotype definition, integrating novel genetically related traits using digital
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University, a dynamic and growing department committed to excellence in research, education, and innovation. Our research spans Internet of things, machine learning, signal processing, to digital twins, all
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reproductive politics and/or pharmaceutical innovation and regulation. Desirable criteria Demonstrated interest and expertise in abortion & contraception research. Demonstrated interest and expertise in
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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