82 evolution "https:" "https:" "https:" "https:" "UNIVERSITY OF MACAU" positions at University of Lund
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the POLLCLIM project that focuses on the ecology and evolution of generalized pollination systems. The project assistants will assist with field studies of plants and pollinators in southern Sweden, preparation
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who wish to use the MAX IV facilities. The User Office works in close collaboration with the entire MAX IV organisation to continuously supports the development of the MAX IV offering, from new access
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experiments. Experience in automating and standardizing BioSAXS workflows, including the development of data-collection pipelines and user-friendly graphical interfaces. Proficiency in interpreting BioSAXS data
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structural mass spectrometry and protein design for the development of enzymes with new functions. The group consists of senior researchers, postdocs, and doctoral students with expertise in clinical medicine
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technology development to biomedical studies. The main research areas include sensitization, immuno-oncology, and biomarkers. The modern facilities are located at Medicon Village, where academic research is
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designing and building research environments, particularly those supporting data-intensive workflows A documented significant contribution to the development of a scientific software during the last three
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. The position is a career development post, and its purpose is to act as an initial step on a career path by providing the opportunity to to deepen and broaden your research expertise. The position also includes
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in food systems, and agricultural development is meritorious. Application materials to be submitted: - Cover letter (2 pages): Include a short motivation, connection with the position, and how
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the genomic landscape of breast cancer using large scale tumor sequencing data. You can read more about the project on our website https://portal.research.lu.se/sv/persons/staaf-johan/. The research team is
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particular, the candidate will work on the development of novel deep-learning reconstruction algorithms to retrieve 3D and 4D (3D+time) imaging acquired by advanced X-ray imaging techniques. Such developments