Designing Event-Driven Data Pipelines for Monitoring CHIP Eligibility in Real-Time
DOI:
https://doi.org/10.63282/3050-922X.IJERET-V4I3P103Keywords:
Event-Driven Architecture, Real-Time Data Processing, CHIP Eligibility, Data Pipelines, Healthcare Analytics, Streaming Data, Kafka, Cloud Computing, ETL, Eligibility Verification, Data Ingestion, Transformation, Storage Solutions, Real-Time Monitoring, Alerting Mechanisms, Compliance, Regulatory Considerations, System Architecture, AI-Driven Decision-Making, Blockchain For Eligibility VerificationAbstract
For millions of economically underprivileged children, the Children's Health Insurance Program (CHIP) provides vital healthcare coverage, therefore ensuring access to necessary medical treatments. Variations in income levels, policy changes & their administrative processes make actual time monitoring of CHIP eligibility somewhat difficult. Conventional batch processing methods create inefficiencies in their service delivery & generate delays, therefore leaving families unsure about their coverage status. Event-driven data pipelines encourage fast decision- making & provide a good way for actual time monitoring of eligibility changes. These pipelines provide the quick processing of eligibility changes upon the availability of latest information by means of modern data streaming technology, automated procedures & actual time analytics. This approach minimizes the administrative headaches, closes coverage gaps & enhances their running efficiency. Emphasizing basic components like event generators, message queues, stream processing engines & their storage alternatives, the study investigates the design of event-driven data pipelines. It also looks at how best to anticipate their eligibility trends & spot anomalies using AI and ML algorithms. Moreover, practical case studies show how real-time monitoring helps to improve healthcare accessibility and maximize regulatory compliance. From reactive to proactive eligibility management helps legislators, healthcare providers, and beneficiaries to obtain accurate and timely information. Using event-driven data pipelines marks a significant progress in CHIP management as it ensures that children get continuous healthcare coverage at vital moments
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