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well as rich sources of highly diverse knowledge, that comes in form of tribal knowledge, expert knowledge, design knowledge, documentation and formal specification, and present in numerous different modalities
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for SSH research data, entity linking across datasets, interoperability in dataset annotation and transparent dataset search. An important part of the position is co-design of research and co-creation
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digital social innovations to improve consumer decision-making by addressing resistance to sustainability ideas and by designing interventions tailored to the heterogeneity in individual needs of vulnerable
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and improve your teaching skills. Possible research areas: design sustainable business models for the implementation of nature-based solutions among various stakeholder groups (with a focus on
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stakeholders across the Aurora ecosystem to continue collaboration, co-creation and innovation. In this postdoctoral research project, you will be part of the AURORA2030 project – Workpackage 4 which focuses
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) optional model for designing a personalized benefits package contribution to commuting expenses Additional comments Are you interested in this position and do you believe that your experience will contribute
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characterized in depth. This includes the evolution of food and pharma related microorganisms and eukaryotic cells, including microbial communities and host-phage co-evolution. Your duties design and carry out
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these algorithms on real-world data with applications to healthcare. you'll be at the forefront of an interdisciplinary research, driving innovation through your expertise in machine learning and reinforcement
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have been tested, in which populations, targets (youth directly, (professional) caregivers, educators), and settings, and using which research designs establish which practice elements are specific
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suitable for the pilot context. You will also, using user-centric design, develop specific services that are suitable for this context and its users. These include Explainable Machine Learning, data