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testing, and basic data analysis (dependent on project needs and proficiency with data analysis software, including Excel, creation of charts and graphs, calculating basic descriptive statistics, etc
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Excellence (OhioRISE) evaluation sponsored by the Ohio Department of Medicaid. Responsibilities of this position include: statistical analysis and reporting of multi-source data including administrative and
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of Biostatistics and Population Health (BPH, https://medicine.osu.edu/departments/biomedical-informatics/divisions/division-of-biostatistics-and-population-health ) in the Department of Biomedical Informatics (BMI
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plotting data; can apply statistical tests. Preferred: Can perform Gene Set Enrichment Analyses, curve-fitting and IC50 analysis using GraphPad Prism. Lab Management Required: Collaborates well with others
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, calculating basic descriptive statistics, etc.). Minimum Education Required Bachelor’s degree in a relevant field or equivalent is required. Required Qualifications A minimum of four years of relevant
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of Medicaid data projects; coordinating the research and administrative efforts of project team members, including teams of statistical programmers and data scientists; assisting in reviewing and
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scholarships. Maintains scholarship donor accounts via the scholarship database to ensure information is current and accessible. Maintains statistical data for reporting and research. Researches and
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of quantitative analyses (including statistical analysis). Demonstrated proficiency with SAS, Stata, or R for data analysis and statistical programming.. Demonstrated proficiency with data visualization (such as R
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for in-person and online students to be determined, 7) advising support for online courses, 8) monitoring and reporting program statistics, and 9) assisting in other efforts as needed to support the MSW
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is required. Selected candidate may be asked to complete a pre-employment physical including a drug screen. Strongly Preferred Qualifications: Demonstrable experience with the R statistical computing