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also expected that the post-doc ill support in the management of on-going research projects, for which previous experience is highly valuable. Co-supervision of PhD students is also foreseen
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. The research subject Structural Engineering is now seeking a highly motivated postdoctoral researcher contributing towards science and technology in condition assessment. In our department we strive
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without inducing unacceptable hot spots in healthy tissues. Parallel to developing the clinical prototype of the device, it is essential to assess the safety of the therapy by systematically investigating
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management. Data from case studies (inspections, monitoring, and experimental tests) are used for model updating, calibration of safety formats, and prediction of future performance and remaining service life
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prototype of the device, it is essential to assess the safety of the therapy by systematically investigating the pathophysiological effects associated with intracranial heating. Although these effects
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at the department, together with three PhD students. The successful candidate will work with Senior Associate Professor Olaf Hartig who is a leading researcher in the field of Semantic Web and Knowledge Graph
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,” available at https://www.bth.se/english/about-bth/work-at-bth/vacancies . The position requires authorization to work with classified data. Security screening may be conducted on the selected candidate
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values rest on credibility, trust and security. By having the courage to think freely and innovate, our actions together, large and small, contribute to a better world. We look forward to receiving your
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addition to the research, the applicant is expected to participate in the supervision of master's and PhD students. Qualifications Requirements A doctoral degree or an equivalent foreign degree. This eligibility requirement
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at: https://www.umu.se/en/department-of-computing-science/ Project description and working tasks The project will develop privacy-aware machine learning (ML) models. We are interested in data driven models