13 computer-science-image-processing Postdoctoral positions at University of Minnesota
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(https://udall.umn.edu). The position will involve: (1) the collection, processing and analysis of data acquired from quantitative motor tasks (gait, gait initiation, bradykinesia, rigidity, etc.) using
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biology and biophysics. Training and/or experience in handling of purified proteins, computational analysis and modeling in MATLAB, tissue culture, confocal and TIRF microscopy of cells and biophysical
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and processing • Data collection, including in vivo behavioral experiments • Data analysis • Data interpretation • Data presentation, including the creation of figures and writing manuscripts. This may
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big-picture questions. Preferred Qualifications: Experience with computational topology software (e.g., GUDHI, Ripser, giotto-tda, or similar). Familiarity with natural language processing (NLP
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. Analyze complex imaging data using quantitative and computational approaches. Collaborate with a multidisciplinary team of neuroscientists, optical engineers, and data scientists. Present research findings
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://www.virology.umn.edu A robust career development program will be individually crafted for each postdoctoral researcher, which will emphasize not only research excellence, but also acquiring excellence in other skill
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troubleshoot each specific procedure as required • Assist and train other members of the laboratory, including undergraduate and graduate students, in proper experimental technique and in following protocols 15
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Previous Job Job Title Post-Doctoral Associate - Department of Integrative Biology and Physiology Next Job Apply for Job Job ID 372797 Location Twin Cities Job Family Academic Full/Part Time Full
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strains, imaging fungal growth and mineral dissolution processes, and analyzing chemical effluent and mineral weathering products. In addition, the postdoctoral researcher may have opportunities
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species where reference resources remain incomplete. ● Pathology and imaging integration: Develop computer vision approaches for histopathology and radiology, linking image-derived features with genomic and