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Stig Brøndbo 15th May 2024 Languages English English English Faculty of Science and Technology PhD Fellow in knowledge-driven machine learning Apply for this job See advertisement The position Join
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Norwegian centre of excellence with a community of ambitious researchers from the fields of machine learning, statistics, logic, language technology, and ethics. Integreat, the Norwegian centre for knowledge
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Excellence, funded by the Research Council of Norway. Integreat aims to shape the new field of knowledge-driven machine learning in Norway. Our research makes machine learning more sustainable, accurate
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of Norway. Integreat aims to shape the new field of knowledge-driven machine learning in Norway. Our research makes machine learning more sustainable, accurate, trustworthy, and ethical. Unlike the current
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The successful candidates will work at the machine learning group at UiT and will formally be affiliated with the Department of Mathematics and Statistics and collaborate closely with researchers at the Department
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machine learning and with strong programming skills, and with an interest in working in close collaboration with industry. Working environment: The project will be done in an interdisciplinary team
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machine learning and with strong programming skills, and with an interest in working in close collaboration with industry. Working environment: The project will be done in an interdisciplinary team
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for feature extraction, which can serve as parameters in simulation. Alternatively, machine learning methods can be employed for comparison with the primary analysis-based approach. The objectives of this PhD
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for feature extraction, which can serve as parameters in simulation. Alternatively, machine learning methods can be employed for comparison with the primary analysis-based approach. The objectives of this PhD
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responsibilities of the candidate: Developing innovative approaches: You will be responsible for developing machine learning and algorithms to manage and analyze next-generation sequencing data to understand its