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Previous Job Job Title Post-Doctoral Associate - Computational Health Sciences Division Next Job Apply for Job Job ID 360487 Location Twin Cities Job Family Academic Full/Part Time Full-Time Regular
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-doctoral Associate will develop algorithms and theory for machine learning methods, as well as implement and apply ML methods to problems in domains such as computational biology and neuroscience. This is a
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computer science programs (Chemical Engineering, Civil and Environmental Engineering, Computer Science, Electrical and Computer Engineering, and Mechanical and Industrial Engineering). This two-year
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. 80 % Conduct and Design Experiments Independently conduct and design molecular, genetic engineering, biochemical and biophysical and computational experiments aimed at the creation & analysis
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Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job Aircraft measurements to characterize sources of atmospheric ammonia Join our team! The atmospheric chemistry group
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sponsorship. Updated on 11/05/2025. Qualifications Required Qualifications PhD in aerospace engineering or related field Two or more years of research training Excellent analytical and computer programming
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with with experts in biogeochemistry, ecohydrology, meteorology, soil science, and forestry; and dissemination of findings through professional meetings, workshops, conferences, and peer-reviewed journal
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tasks, in the Department of Civil, Environmental, and Geo- Engineering. The successful candidate will interact with, lead, and assist graduate and undergraduate students in the research group. 90
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organization, safety, and protocol management (10%). -Collaborate across multiple interdisciplinary teams within the ATP-Bio Engineering Research Center and affiliated labs (5%). This position is not eligible
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to uncover pathways involved in host resistance and pathogen virulence. (20%) Characterizing gene functions in plant pathogen interaction using microbial, microscopic, cell, and molecular biology techniques