79 postdoc-in-thermal-network-of-the-physical-building Postdoctoral positions at University of Minnesota
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between neuromodulation and fMRI. The postdoc will work on the network level perturbation of neurocircuits using high-definition neuromodulation. This postdoc will lead scientific discovery in developing
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for Magnetic Resonance Research (CMRR), including ultra- high resolution 7T imaging. Our group is strongly committed to professional development and personalizing the postdoc experience. We encourage
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Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job Duties/Responsibilities: The postdoc will engage in projects related to generation of stem-cell derived neural populations
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committed to antiracism and anti-oppression and welcomes you to join us in our pursuit of building equity and driving justice. We particularly encourage applications from those who belong to groups that have
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. Annual Salary: Based on NIH NRSA postdoctoral stipend levels . ● Postdoc No Experience: $62,232 ● Postdoc 1 year of Experience: $62,652 ● Postdoc 2 years of Experience: $63,120 Work Arrangements: The
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, Ph.D. This position is designed to recruit two highly motivated postdocs with a strong background in molecular biology or virology to support studies on Epstein-Barr virus (EBV) oncology. Individuals
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. The postdoc will process and analyze data, prepare manuscripts, and assist with MRI data collection. The CNS Lab has collected MRI data from samples of typically developing infants, infants who develop autism
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Institute (https://cse.umn.edu/aiclimate). The role involves building knowledge-guided machine learning (KGML) models for sustainable agricultural practices, developing AI-ready benchmark datasets, and