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at UiO! Apply for a fully-funded dual PhD position in Social Anthropology. PhD Research fellows in Anthropology of health and environment in Africa and Europe Apply for this job See advertisement About the
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research. The student will be part of an international research environment with co-supervision across statistics and machine learning, and will be encouraged to publish in top-tier venues both in machine
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environment of the HEMI project. This includes participating in project workshops, meetings, and presentations, as well as engaging in collaborative activities with other project partners. The PhD candidate
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. The successful applicant will join the research group Statistical learning in molecular medicine and the high-dimensional statistics environment at OCBE, and be part of a multi-disciplinary research consortium
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thesis by the end of the three-year employment period. In addition to conducting research, the PhD candidate will actively contribute to the broader research environment of the HEMI project. This includes
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learning in molecular medicine and the high-dimensional statistics environment at OCBE, and be part of a multi-disciplinary research consortium called T-PRESS: Trustworthy Personalized Evidence to Support
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). Opportunities for national and international collaborations. A friendly, ambitious and international working environment. Attractive welfare benefits and a generous pension agreement, in addition to Oslo’s family
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, and clinical covariates. Apply these methods to spatial transcriptomics and fluorescence imaging data to gain a more precise understanding of complex biological systems. Research Environment
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complex biological systems. Research Environment & Collaboration The successful candidate will work at the interface of machine learning and biostatistics, developing new theory, algorithms, and scalable
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Norway. About the position The candidate will be part of the UiO:Life Science convergence environment “UiO:Real-World Evidence: Capitalizing on Norwegian Health Data for Rapid Generation of Real-World