11 phd-studenship-in-computer-vision-and-machine-learning Postdoctoral positions at University of Oslo in Norway
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conduct a dissertation according to the standards of the Faculty of Social Sciences at UiO . The candidate will be part of the PhD education and program at TIK and the Faculty and will be supported and
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expected to develop and conduct a dissertation according to the standards of the Faculty of Social Sciences at UiO . The candidate will be part of the PhD education and program at TIK and the Faculty and
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Develop and apply machine learning techniques and statistical analyses, including digital twin methodology, to fit and validate prediction model. Perform quality control and imputation of genotype and
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Ratio arkitekter 15th August 2025 Languages English English English Postdoctoral/Researcher position in Molecular and Systems Neuroscience through the NORPOD program Apply for this job See
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data, MRI data, and other types of data. Contribute to projects at LCBC with data analysis, development, and implementation of advanced machine learning models. Write and publish scientific articles
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must have submitted their PhD thesis for evaluation by the closing date of this announcement. Strong experience in using MRI to study brain structure. Extensive experience with machine learning in image
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studies. Proficiency in relevant computational tools and statistical methods. Experience with machine learning in large datasets. Interest and motivation to work in a multidisciplinary team. Ability to work
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the SFF Integreat, The Norwegian Centre for Knowledge-driven Machine Learning (ML) , a centre of excellence funded by RCN and in operation until 2033. The project PI and team are also in close collaboration
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. Your main tasks will be Develop and apply machine learning techniques and statistical analyses, including novel methodology for analysis of complex polygenic traits and prediction tools for precision