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publications with links to the publications if open access a plan for advancing research and teaching in the field and a vision for the development of the applicant’s research and the research field in general
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/about-us/careers/academic-careers/university-helsinki-tenure-track . Why us The Faculty of Veterinary Medicine at the University of Helsinki is the only institution of higher education in Finland to train
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plan and research proposal. For the doctoral researcher’s position, the appointee must enroll as a PhD student at the University of Helsinki. The appointee should either already have the right to pursue
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the research group of Professor Klaus Nordhausen in the project “Signal recovery in noisy spatial data”. The research group develops modern and efficient multivariate statistical methods tailored
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comprehensive services to its employees, including occupational health care and health insurance, sports facilities, and opportunities for professional development. The doctoral researcher will also benefit from
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and Environment Research Programme The position is for a fixed term period for 2 years and available from September 2025 onwards (or as agreed). The position is based in the Ecology and Environment
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manipulation of developing mouse organs. The project will focus on how signaling pathways operate at the intersection of growth control and branching morphogenesis in the developing mammary gland and will use
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production with their techno-functional performance in food applications, ultimately supporting the development of sustainable food ingredients. We will employ fermentation-based bioprocessing to modify
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to the development of reproducible analysis workflows and pipelines. You have a PhD in bioinformatics, computational biology, data science, computer science, genetics or other relevant field. You have successfully
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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