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institutional use cases that demonstrate the strategic value of administrative data, such as student success analytics, learning and advising tools, and research projects that rely on operational
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Be You. Introduction: The Office of Information Technology at Duke University is seeking a Data Analytics Fellow to join our team. This 12-month program is available exclusively to 2026 graduates
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methodologically driven research environment. The position emphasizes the development and application of advanced analytical approaches to address fundamental questions in cancer disparities, while building a strong
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LMS**), blended learning models, and virtual technologies (Zoom, Microsoft Teams, SharePoint Online). Strong analytical, critical thinking, innovative problem-solving, leadership, project management
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that support patient safety, quality improvement, and organizational learning. This role oversees program operations, data analysis, reporting, and cross-functional collaboration to drive continuous improvement
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effective reports and dashboards. Learn and apply best practices in data modeling and ETL processes to ensure data integrity and accuracy. Collaborate with senior team members to refine and optimize reporting
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available. Duties and Responsibilities of this Level Project Coordination / Reporting and Analytics (50%) Monitors and evaluates disease-based program key performance indicators for effectiveness
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analytical, communications and organizational skills generally acquired through completion of a bachelor's degree program. Experience Work requires one year of experience in program administration or involving
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offers the opportunity to make a visible impact on daily campus operations. Minimum Requirements Bachelor’s degree in a relevant field, demonstrating strong organizational, analytical, and communication
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Associate in Research The role involves developing and optimizing machine learning models to predict infectious diseases using multimodal health data. Responsibilities include analyzing correlations between