
Data Scientist
Centers for Medicare & Medicaid ServicesThis position is located in the Department of Health & Human Services (HHS), Centers for Medicare & Medicaid Services (CMS), Center for Program Integrity (CPI), Division of Investigative &Bus Analytics (DIBA). As a Data Scientist, GS-1560-13, you will serve as a senior advisor as well as lead a cross-functional teams composed of professionals skilled in policy analysis, information technology, data engineering, and project management disciplines, in order to develop data-driven solutions.Serves as a data advisor within the division, collecting and analyzing specialized data such as website analytics, marketing data, consumer research, demographics, and economic trendsIdentifies and uses internal and external data sources, manages the full systems development life-cycle (SDLC), and designs features that support data access, integration, and retention.Prepares and presents complex technical findings, reports, and recommendations both orally and in writing to diverse audiences, including senior officials and external stakeholders.Leads or supports cross-functional teams of federal staff and contractors (policy analysts, IT specialists, data engineers, project managers) to build data-driven solutions for CMS program and business challenges.
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