17 phd-cognitive-neuroscience Postdoctoral positions at University of Helsinki in Finland
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POST-DOCTORAL RESEARCHER IN HUMAN COMPUTATION AND/OR KNOWLEDGE REPRESENTATION for a fixed-term period of 36 months, starting in May 2024 or as agreed. This position is based at the newly founded
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12 Apr 2024 Job Information Organisation/Company University of Helsinki Department Faculty of Medicine Research Field Neurosciences Researcher Profile Recognised Researcher (R2) Country Finland
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, expertise and/or qualifications • PhD degree in computational biology, bioinformatics, biostatistics, computer science, or a related field • Strong publication record • Proficiency in programming
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are ambitious, goal-oriented, collegial and motivated to tackle challenging new projects • Have PhD degree in (or in final stages to submit) in protein biochemistry/molecular biology/molecular
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are ambitious, goal-oriented, collegial and motivated to tackle challenging new projects • Have PhD degree in (or in final stages to submit) in protein biochemistry/molecular biology/molecular
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journal articles as a foundation for a PhD thesis co-authoring and/or editing academic work with the project PI and collaborators research within law, political sciences, and other relevant disciplines
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candidate to have a PhD degree from a relevant field with skills and experience in image analysis and machine learning. Familiarity with the volumetric microscopy image data and statistical methods
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University, and the Finnish Meteorological Institute. A total of 100 new PhD students will start soon related to FAME, out of which 17 at University of Helsinki. See http://www.fameflagship.fi for more
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applicant has at least two first authorship publications and a doctoral degree in neuroscience, biology, chronobiology, pharmacology, sleep medicine or other related discipline. The degree requirement must be
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expect a successful candidate to have a PhD degree from a relevant field with skills and experience in computational genomics and machine learning. Familiarity with the above-mentioned data types is an