32 master-in-health-informatics positions at Delft University of Technology (TU Delft)
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mastered the theory, you will build models, describing the natural phenomenon with mathematical precision. Beside deriving theory and collecting data of real-world epidemic spread to validate your model, you
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have the same underlying question that needs to be answered for the AI tools to become useful: How do we validate the generated code? The main focus of this PhD position is to answer this question. Note
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the local community (energy valley) stakeholders. The role of this postdoc is to establish the digital twin blueprint for energy valleys and implement it in a real-world setting. The main scientific challenge
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the laboratory, as well as on an international level. Requirements Specific Requirements Requirements: An excellent degree in systems & control, robotics, artificial intelligence, computer science, or a related
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within the laboratory, as well as on an international level. Requirements Specific Requirements Requirements: An excellent degree in robotics, artificial intelligence, computer science, or a related
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risk profiling. In partnership with RECENTRE (see https://www.4tu.nl/recentre/ ), a project dedicated to helping people take charge of their health, we're working on mathematical approaches to quantify
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. Fernando Kuipers (professor of computer science). You will be co-supervised by Jeroen van den Hoven (professor of ethics). Hence, you get to spar with two groups. In this highly interdisciplinary
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Delft Computer Science curriculum. See https://studyguide.tudelft.nl for more details. Supervising bachelor and master students in their graduation projects. Acquiring and managing externally funded
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solutions. Ideal candidates will be interested in mastering AI/ML algorithms (theory and testing), and deep-diving in 6G architecture and management solutions, including programmable networks. You’ll be
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computer vision methods. Design and set up experiments. Deploy your algorithms on machines. Write well-documented code. Prepare demonstrators. Write scientific papers. Guide Master's and/or PhD students