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familiarity with basic spreadsheets and statistical concepts and software Prepare figures and methods, bibliographies, and abstracts for use in posters, manuscripts, and grant application Present results at lab
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or academic knowledge of clinical ophthalmology, AI, image analysis, and statistics plus the ability to translate, adapt and apply this knowledge that is generally associated with a PhD or MD, or an equivalent
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, organize, and analyze data as their skills develop, and become familiar with basic spreadsheets and statistical concepts and software. Present research results at lab meetings and other internal and external
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Public Health or Related Field. Required Qualifications: Proficient in SAS or other analytical software package for data management, and statistical analysis graphics. Experience working with environmental
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, organize, and analyze data as their skills develop, and become familiar with basic spreadsheets and statistical concepts and software. Present research results at lab meetings and other internal and external
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should have a Ph.D. (or equivalent) in Applied Mathematics/Statistics, Computer Science, Electrical and Computer Engineering, or related fields. Required Qualifications: Candidate Requirements We
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annual crime statistics by contacting the Department of Public Safety at 319/335-5022. Education Requirement: JD, PhD or other advanced degree related to the area of the candidate’s scholarly work
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: Collect and curate relevant data related to crime and violence; criminal justice processing; and firearm ownership, storage, and use. Utilize statistical methods and software (such as R, SPSS, or Stata
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management, statistical analysis, graphics, and reproducible reporting. Demonstrated ability to prepare manuscripts, reports, and other documents of a technical and scientific nature. Good verbal and written
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such as antioxidant enzyme activities, intracellular redox status, intracellular glutathione, or similar techniques. Experience with statistical methods used for univariate or multivariate analysis