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of Minnesota is seeking two postdoctoral research associates to join a team working on multiple research projects in the field of health data science, artificial intelligence and natural language process
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project within the lab's broader focus areas of metabolism and mitochondrial bioenergetics. The fellow will be responsible for designing and executing experiments, analyzing and interpreting data, and
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, perform imaging on Krios and/or Glacios microscopes, perform data processing and refinement for structure determination. Required skills include expert protein expression and purification skills and
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notebook; perform statistical analyses of data obtained from experiments and render interpretations of the data. -Analyze data and present findings/progress in individual meetings and at lab meeting, when
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/pharmacodynamic data analysis in the presence of high-dimensional covariates for the improved model-informed decision making. The initial duration of this position is 1 year, but may be extended or a second and/or
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). Prior experience in medical imaging & analysis and/or computer vision algorithm development using high performance computing (HPC). Publications in peer-reviewed technical/clinical journals or machine
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. Participate in the design, implementation, and evaluation of a research project. Prepare and present data to study investigators. Author, co-author, and otherwise collaborate on reports, conference papers and
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Immunology 60% Execute experiments 20% Design experiments 20% Analyze data, write grants and papers Qualifications Required Qualifications: PhD in Biology, Chemistry, or related Biomedical Sciences Project
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of the Minnesota Population Center (MPC), in the Institute for Social Research and Data Innovation (ISRDI), at the University of Minnesota. RESPONSIBILITIES Specific responsibilities include conducting empirical
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analysis of data including measures of pupil dilation, microsaccades, and behavioral measures of speech perception. Experience with data collection and statistical modeling of time-series data are essential