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, where relevant, PhD level, typically within areas related to wireless communication. This includes course teaching, supervision of project and thesis work, and involvement in the continuous development
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, 2026, or soon hereafter. The position is a full-time position for 1 year. Your work tasks The research will focus on the development of digital twin models for heating networks, real-time simulation, and
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large research application for the European Research Council (ERC). The project proposal, which is still under development, aims to contribute to the sociology of sustainable energy transition in
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evidence-based decision-making. Core expertise across the two positions includes the development and advancement of life-cycle–based environmental impact assessment methods; the integration of absolute
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that can support the development and implementation of robots that meaningfully support everyday work in healthcare. The successful candidate will conduct empirical research and collect data through
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international journals and conferences, contribute to the development of new research proposals and external funding applications, and participate in teaching and supervision activities within the Techno
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digitally, we also focus on responsible technology development, addressing real-life challenges. Our problem-oriented approach and close collaboration with businesses and public organisations form
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-year employment is funded by the Energy Technology Development and Demonstration Programme (EUDP) and aims to deliver a standardised, robust, and scalable subsea electrode unit for HVDC systems. The PhD
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(CAM) . CLINDA aims to conduct independent research in the development, application, and implementation of data infrastructures for AI-based decision support tools and is rapidly growing with currently
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prediction outputs. The first PhD will work on data fusion, feature extraction, and model development ranging from baseline approaches (e.g., gradient boosting) to deep learning architectures. The work also