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the MSuS and AOT groups, allowing extensive collaboration and knowledge exchange. As part of the PhD program, you would have the opportunity to receive further education within the Twente Graduate School and
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takeaways HyFINE is a national project uniting a consortium of knowledge institutes and businesses to make chemicals greener and affordable. We are shifting from fossil feedstocks like oils and gas
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data, adding a critical artistic dimension to current academic debates around the politics of knowledge co-production and scientific research. You will develop multi-sensory ways of encountering and
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more-than-human voices, including those often marginalised. To this end, you will develop an approach to engage humans and more-than-humans as actors, participants, stake- and knowledge holders (e.g., rivers
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visibility and impact, and we can guide you toward becoming a top researcher and boosting your CV. Besides, during the PhD, you will have the opportunity to broaden your knowledge and network by joining
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, where we apply, share and facilitate the effective use of geo-information and earth observation knowledge and tools for tackling global wicked problems. Our purpose is to enable our many partners around
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program: North Sea Renewable Energy: Gaining the Required Ecological Knowledge for the Transition, which studies the ecological and socio-economic impacts of large-scale offshore windfarms in the North Sea
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to develop (i) new theoretical insights on sheltered digital work as a ‘nascent occupation’ as well as (ii) actionable knowledge that supports social enterprises to organize and manage novel forms of sheltered
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). The field of Machine Learning on Graphs aims to extract knowledge from graph-structured and network data through powerful machine learning models. Designing provably powerful learning models for graphs will
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). The field of Machine Learning on Graphs aims to extract knowledge from graph-structured and network data through powerful machine learning models. Designing provably powerful learning models for graphs will