65 algorithm-development-"University-of-Surrey" Postdoctoral positions at University of Minnesota
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methods for grant proposals. ● Maintain meticulous experimental records and assist in the development of Standard Operating Procedures (SOPs). Project Management & Collaboration (20%) ● Oversee day-to-day
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. The incumbent will be responsible for development of gene mapping populations, pathogen inoculation and phenotyping, marker design and genetic mapping, DNA cloning, and functional characterization of candidate
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Responsibilities: Lead Independent Research (80%): • Design, plan, and conduct independent research projects with guidance from the Principal Investigator. • Develop and optimize new experimental techniques and
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an important role in supervising junior trainees. Job Duties/Responsibilities: 80% Experimental Research • Development, design, and implementation of experiments related to ongoing projects in the laboratory
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Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job Research Description: Position will require the development and application of numerical codes modeling the nonlinear
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focuses on developing and applying back trajectory modeling to explain PFAS deposition patterns and sources in a multi-year, regional PFAS precipitation dataset. The position is funded for one year, with
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Class Acad Prof and Admin Add to My Favorite Jobs Email this Job About the Job Essential responsibilities: Develop and in vitro characterize recombinant viral vector-based vaccines Evaluate immune
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Dr. Shen Cheng and his internal/external collaborators. The research will primarily focus on implementing and developing innovative pharmacometric modeling approaches for pharmacokinetic
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opportunities for development of an independent research program. Qualifications Required Qualifications (must be mentioned on resume): Ph.D. Prospective candidates are expected to have research experience in
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, and publication of major results from the experiment. They will also lead the development of predictive distribution models that incorporate data from the experiment. The project is funded by the USGS C