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spacecraft and associated data governance challenges; obsolescence of traditional ways to deploy and sustain ground segment systems; new forms of space communications, such as optical and quantum technologies
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servants, and citizen collectives, ensuring your research has real societal impact Build an international academic network across several universities and research groups, building on the wide international
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plus and will help you engage effectively with local communities and operational partners. Where, how, and with whom you’ll work You will join the Geoscience and Remote Sensing department at TU Delft
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, electronicis and communication. The main aim of this project is to detect lithium in sweat. However, other ions will be considered at a later stage of the project. You will furthermore integrate these yarns in a
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communication skills. You will be joining a dynamic department with broad interests in biotechnology and synthetic biology across all domains of life. The research is funded as part of the NWO Open Technology
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networks, risk analysis or uncertainty quantification (preferred). Knowledge of data science in general as well as practical experience with conducting data science analyses with good programming skills
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), and physiological parameters in the study of animal behaviour; a strong background in data analysis using R, preferably experience with Bayesian statistics and social network analysis; lab experience
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disciplines and work with uncertainty; excellent written and verbal communication skills in English; a proactive, connecting working style and the ability to collaborate effectively with diverse stakeholders
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(“overparameterized”) machine learning models, like probabilistic graphical models, deep neural networks, diffusion models, transformers, e.g. large language models, etc. SLT is based on the geometrical understanding
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Moderna. PRAYER sets out to conduct the first large-scale investigation of this unique corpus by introducing a new approach – network philology – that studies all aspects of vernacular prayer books in