Building Resilient Data Ecosystems: Optimizing Dashboards and Analytics for Value-Based Programs
DOI:
https://doi.org/10.47941/jts.3445Keywords:
Value-Based Care, Data Ecosystem, AWS, Dashboards, Analytics, Healthcare Data Management, Medicare, MedicaidAbstract
The transition from fee-for-service to value-based care (VBC) models has redefined healthcare delivery, emphasizing outcomes, cost efficiency, and quality improvement. This paper explores strategies for developing resilient healthcare data ecosystems that enhance dashboards and analytics, with a focus on Medicare and Medicaid value-based programs. Through cloud-based infrastructures, advanced analytics, and user-centric dashboard designs, healthcare organizations can achieve operational agility and accountability. The discussion highlights the benefits of deploying Snowflake on AWS, the advantages of migrating from legacy systems like Teradata, and the measurable outcomes of optimized dashboards in improving efficiency, reducing costs, and advancing patient care.
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Copyright (c) 2026 Sravanthi K

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