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, Political Science, Psychology and Sociology), Biological Sciences (Human Genetics, Medicine, and Public Health Sciences), the Harris School of Public Policy, and the Department of Statistics. They share
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. Build and analyze statistical models and reproducible data processing pipelines using knowledge of best practices in machine learning and statistical inference. Supervise contributions of specialized
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: Master’s degree in economics, statistics, computer science or related field. Experience: Coursework in statistics, econometrics, data science, and computer science. Strong background in applied statistics
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of geospatial data, which includes data from a range of different sources, such as statistical agencies, municipal governments, and the proprietary datasets. Works with partners and members of the research team
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qualifications include familiarity with Quatrics Multivariate statistics, modeling, and/or one or more computational approaches (e.g., machine learning, computerized text analysis, agent-based modeling) Experience
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well as from external sources. Designs and evaluates statistical models and reproducible data processing pipelines using expertise of best practices in machine learning and statistical inference. Provides
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sequencing, single cell RNA sequencing, ATAC sequencing, genotypes), statistical tool development and computational analyses. Manipulates publicly accessible, commercial, or proprietary genomic, proteomic
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members of the research team to propose and implement analytical approaches to solving specific research questions. Builds statistical models for a variety of research projects. Prepares results for memos
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required. Experience: Expertise using statistical program software (e.g. Stata, R, SPSS) to manage data is essential required. Strong data analytic skills and some prior data analysis experience required
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use agreement parameters and data security protocols, collaborating with University departments when necessary. Conducts and oversees data analysis, generating summary and descriptive statistics