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postdocs representing a breadth of disciplines in the biological, physical, social, and managerial sciences. The Department hosts B.S., M.S., and Ph.D. programs, supports many nationally and internationally
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on Accreditation in Clinical Chemistry (COMACC). This is a two-year program for postdocs or one-year program for MDs. The Program’s principal objective is to educate, train, and prepare clinical chemists to provide
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presentation at local and national meetings. ● 10% Training and mentoring of students → The postdoc will work with undergraduate and graduate students in the lab and is expected to foster the development
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Pay Range: $62,232 - $65,000: Pay is determined by NIH Postdoc levels of education and experience Please visit the Benefits for Postdoctoral Candidates website for more information regarding benefit
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locations in MN as well as nationally) as well as the lab (meso- and microcosm experiments tracking microbial population and community dynamics as well as ecosystem function) settings. The postdoc will be
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participating in the joint weekly colloquium series with the History of Science, Technology, and Medicine Program, as well as special events (e.g., academic workshops). Additionally, in consultation with
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postdocs, staff, and students) in the above Research administration and compliance (15%) • Assist in data storage, entry, and verification for ongoing research efforts using paper and electronic records
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together behaviorists, electrophysiologists, and computational neuroscientists, and includes the world leading Center for Magnetic Resonance Research. UMN is an excellent training environment for postdocs
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Code 9546 Employee Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job About the Job: Position available in the laboratory and research program of Dr. Lin Yee Chen
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on applying, developing and implementing novel statistical and computational methods for integrative data analysis, causal inference, and machine/deep learning with GWAS/sequencing data and other types of omic