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Sowmya Mogireddy
Mid-level Data Analyst specializing in analytics, BI, and predictive modeling
Travelish IncSacred Heart UniversityCT, USA6 Years ExperienceMid LevelWorks On-Site
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About
Analytics professional with cross-domain experience spanning healthcare claims, logistics optimization, and customer booking funnels. They combine strong SQL/Python execution with stakeholder alignment and operational adoption, and can point to measurable impact including 18% healthcare cost optimization and 24% logistics savings.
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