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statistical modelling, Solid skills in computer programming for data science (e.g. R, Python), Experience with real-world data analysis tasks, Good communication skills in English, both verbal and written
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The Fagerholm and Harjunpää groups at the Molecular and Integrative Bioscience (MIBS) Research programme, Faculty of Bio- and Environmental Sciences, University of Helsinki are inviting applications
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physics, with expertise spanning both observational studies and theoretical or computational modeling. It offers an international and collaborative work environment that values equality, diversity
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behaves and how it is produced in complex health care processes. Statistical modelling: Depending on your previous competence, building advanced statistical, causal, and predictive models describing disease
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Pipsa Saharinen’s research group at the Translational Cancer Medicine Research Program at the Faculty of Medicine, University of Helsinki and Wihuri Research Institute invites applications
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and Integrative Biosciences Research Programme. The successful candidate should have a strong track record for their career stage in the field of genetics and be committed to excellence in research and
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(FIMM) , University of Helsinki, is currently seeking a highly-motivated postdoctoral researcher to join our interdisciplinary team. Project overview This project aims to develop machine learning models
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using unique novel mouse models, spatial technologies and analytical methods. Postdoctoral Researcher in Functional Cancer Microbiome through the NORPOD program NORPOD is a collaborative postdoctoral
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investigation and will develop an advanced computer modeling framework. By simulating processes at various scales, from the atomistic to continuum, we aim to reveal how temperature and saturation fluctuations
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emission and its underlying processes. The lack of continuous observations of CH4 turnover hinders our understanding of CH4 emission variability and the predictability of mechanistic CH4 models. We aim