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first 2-photon intravital imaging system for immunology. A novel, rapid AAV-mediated technology for generating transgenic mouse models. Comprehensive core facilities for advanced flow cytometry, genomics
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application process here . ... (Video unable to load from YouTube. Accept cookie and refresh page to watch video, or click here to open video) About the position We are seeking an enthusiastic and highly
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, The Rockefeller University, Scripps Research Institute, Karolinska Institute. Technology and Resources: Norway's first 2-photon intravital imaging system for immunology. A novel, rapid AAV-mediated technology for
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of the below will be considered an advantage: Deformation in porous clastic rocks. Microanalytical experience on carbonaceous material. Optical, SEM and Cathodoluminescence microscopy. Image analysis. Vitrinite
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the group's research on developing novel machine learning/computer vision methodology. The focus of this project will be on the development of deep learning methodology for spatio-temporal medical image
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the group's research on developing novel machine learning/computer vision methodology. The focus of this project will be on the development of deep learning methodology for spatio-temporal medical image
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for imaging Apply for this job See advertisement About the position Position as PhD Research Fellow in machine learning available at Department for Informatics with the research group Digital Signal Processing
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3 Oct 2025 Job Information Organisation/Company NTNU Norwegian University of Science and Technology Department Department of Language and Literature Research Field Language sciences » Linguistics
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landscape analyses using satellite images before field mapping. The time series will be based upon studies of sediments deposited in glacier-fed distal lakes analysed with ultra-high-resolution scanning
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national and international partners. The PhD project will focus on integrating advanced photogrammetric techniques applied to historical aerial imagery with modern deep learning-based image classification