16 molecular-modeling-or-molecular-dynamic-simulation positions at University of Turku in Finland
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contract at the University of Turku Graduate School (UTUGS) , in the Turku Doctoral Programme in Molecular Medicine (TuDMM) , in the period 29.8.–12.9.2025. Please read the more specific instructions below
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The responsibilities of a Research Technician/Project Researcher include carrying out projects using mouse models at the TCDM and assisting with various cell and molecular biology analyses. Who we are looking
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to take initiative and independent approach to research Excellent skills in working with model organism/tissue culture (preferably zebrafish) cell and molecular techniques OR bioinformatics (RNA-seq, ATAC
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computing in medical research? Join our research group to explore how molecular factors influence diseases and how they can be used in developing new treatment strategies. Turku Bioscience Centre has an open
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coastal ecosystems. Understanding how environmental conditions affect plant species and communities at different scales is therefore key to modelling ecosystem function. This is especially important when
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resistance rises and treatment options remain limited. Despite its clinical significance, key aspects of its molecular biology remain poorly understood, posing a major challenge to identifying new drug targets
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microbiome work Molecular genetics of microbes Using evolutionary approaches Next-generation sequencing technologies A capacity for cross-disciplinary teamwork The Department of Biology has excellence in
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Chemistry » Inorganic chemistry Chemistry » Molecular chemistry Chemistry » Inorganic chemistry Chemistry » Physical chemistry Chemistry » Other Mathematics » Algebra Mathematics » Applied mathematics
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to the application form the following documents in English in PDF form (8 attachments): Copy of the Doctoral Certificate (if unavailable, a copy of the official confirmation of PhD completion). Curriculum Vitae
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developed will be based on pseudonymization, anonymization, and synthetic data generation. Using real health data as a source of information, we aim to create test datasets and statistical models