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Anapuru chetana
Mid-level Business Data Analyst specializing in healthcare analytics
Johnson & JohnsonGovernors State UniversityUSA6 Years ExperienceMid LevelWorks On-Site
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Analytics-focused candidate with strong SQL, Excel, Python, and Tableau skills who supports payroll-, compensation-, and finance-adjacent processes through rigorous data validation and reconciliation. Stands out for uncovering a duplicate-record mapping issue that exposed roughly $250K in revenue leakage and for building repeatable controls, dashboards, and automated checks to improve reporting accuracy.
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