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to submitting your application, please review and update (if necessary) the information in your candidate profile as it will transfer to your application. Job Title: Statistics and Biostatistics Analyst 2
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) the information in your candidate profile as it will transfer to your application. Job Title: Open Search – All Research Areas – Statistics Department: Arts and Sciences | Statistics Tenure faculty (regardless
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, network neuroscience, control theory, graph theory, machine learning, artificial intelligence, and statistics applied to human cognition and neuropsychiatric conditions. Preferred candidates will also have
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requirements to develop analysis and data interpretation methodologies; works closely higher level biostatisticians to create datasets for analysis using statistical programming and analysis standards; conducts
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the application of Lean Six Sigma principles and tools, including value stream maps, root cause analyses, statistical analyses and visual management to support continuous process improvement (or Kaizen
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(e.g., Health Information Management, Statistics, Social Science, Library Science, Business, Economic, Computer Science, Engineering, or Marketing). Desirable skills/experience: data management, data
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; consults with study investigators to develop analysis and data interpretation methods; works closely with researchers to create datasets for analysis using statistical programming and analysis standards
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and sizes, potentially to include multivariate and spatial statistics, image analysis, and machine learning. Additional Information: The salary paid to an individual will vary based on multiple factors
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, and appropriate methodologies for management of data. Minimum Qualifications Bachelor’s degree in relevant field (e.g., Health Information Management, Statistics, Social Science, Library Science
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field (e.g., Health Information Management, Statistics, Social Science, Library Science, Business, Economic, Computer Science, Engineering, or Marketing) and 4 years of experience and/or training in data