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research school. Data driven life science (DDLS) uses data, computational methods and artificial intelligence to study biological systems and processes at all levels, from molecular structures and cellular
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provide user training on EM methods. Work assignments include, operation and maintenance of instruments and computer systems, as well as assisting researchers in preparation of EM samples, data collection
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on EM methods. Work assignments include, operation and maintenance of instruments and computer systems, as well as assisting researchers in preparation of EM samples, data collection, and image analysis
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; significant practical experience in 3D image analysis or computer vision; knowledge and experience in scientific programming (python (preferred), Matlab or other relevant language) with application to image
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cancer biology who will work within the Integrative Pancreatic Cancer Research (iPanCare ) Lab. We are a part of the SciLifeLab & Wallenberg National Program for Data-Driven Life Science (DDLS ). iPanCare
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evacuation scenarios. Qualifications Requirements for employment are: A Master degree in the Engineering domain (e.g., Virtual Reality or Computer Science) or equivalent. Research experience in the domain
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to have the abilities necessary for successfully completing the third cycle programme. Terms of employment Only those admitted to third cycle studies may be appointed to a doctoral studentship. Doctoral
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closely with a co-supervisor at the Division of Material and Computational Mechanics. The NEST-WISE project offers a vibrant collaborative environment and close interaction with academic and industrial
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challenges, and we are currently moving the code to a new python based High Performance Computing enabled modelling framework. This is an exciting opportunity to contribute to a high-impact scientific codebase
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science, nutrition and food science, pharmacy, and teacher education, as well as the MSc program in chemistry. Our research spans chemistry and biomedical sciences, with a particular emphasis on organic