26 phd-studenship-in-computer-vision-and-machine-learning PhD positions at University of Twente in Netherlands
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require new mathematical machinery. LOGSMS will combine diverse tools from discrete mathematics, learning theory and machine learning, thus facilitating the design and analysis of such models. PhD position
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Vacancies 2x PhD positions in the Mathematical Foundations of Machine Learning on Graphs and Networks Key takeaways The Discrete Mathematics and Mathematical Programming (DMMP) group
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organized into 10 work packages (WPs): Six WPs focus on disciplinary perspectives in psychology, education, computer sciences, law, and philosophy. Four WPs address citizen-empowerment-scenarios (CES) in
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in terms of intelligence, interoperability, security and privacy. The mission of the SCS group is to realise the vision of meaningful computing within trusted digital environments by advancing
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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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Vacancies Academic staff Support staff UT Student Jobs UT as employer UT as employer Employment conditions Career and development Pre and onboarding Tenure Track PhD EngD Working as a UT student
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Vacancies PhD Candidate Satellite-based characterisation and modelling of human influences on wildfire dynamics Key takeaways Wildfires are powerful forces of nature that shape ecosystems, degrade
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Vacancies PhD Position on Designing and Managing Digital Work for Inclusion Key takeaways This fully-funded, 4-year PhD research position is part of the project "Don't Forget the Forgotten! Towards
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Vacancies Academic staff Support staff UT Student Jobs UT as employer UT as employer Employment conditions Career and development Pre and onboarding Tenure Track PhD EngD Working as a UT student
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research programme consists of 15 PhD projects which will contribute to the development of innovative methodologies, tools and design strategies that make AM a reliable, scalable and economically viable