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’ academic career with publications in high-profile journals. Required qualifications: • A PhD-degree (or documented skills equivalent to a Norwegian PhD degree) in the interface between biology (ecology
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Crustal Processes. We host now a third in the line of three Centre of Excellences: PHAB – Centre for Planetary Habitability, and have a Norwegian Research School for PhD students (Research School
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other qualifying activity) Copy of PhD Diploma or documentation of thesis submission. Applicants who have not yet defended their PhD dissertation need to include an advisor's letter confirming specific
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: PHAB – Centre for Planetary Habitability, and have a Norwegian Research School for PhD students (Research School for Dynamics and Evolution of Earth and Planets, DEEP). The Department aims to contribute
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) or the research group leader, Professor Marius T. Mjaaland (marium@uio.no ). Qualifications and personal skills A PhD or equivalent degree in a field relevant to the project. Applicants who have not yet completed
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. Qualification requirements Formal qualifications Applicants must hold a degree equivalent to a Norwegian doctoral degree (PhD) in Political Science or a closely related discipline before taking up the post. For
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, Environmental geosciences. and Crustal Processes. We host now a third in the line of three Centre of Excellences: PHAB – Centre for Planetary Habitability, and have a Norwegian Research School for PhD students
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that will, at the same time, benefit society and advance the candidates’ academic career with publications in high-profile journals. Required qualifications: • A PhD-degree (or documented skills equivalent
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Earth, (2) Modern Earth and (3) Exo-Earths. The centre was established in 2023 and will consist of approximately 70 full time and part time professors and researchers, PhD Research Fellows and
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/english/research/projects/activate/index.html The researcher will be part of a growing team of researchers, postdocs and PhD students working on intelligent observing systems using machine learning and data