Abstract
In recent days, a primary challenge faced by healthcare insurance organizations is the reliance on a large number of files to process insurance claims and make coverage decisions. With the gradual increase in medical insurance in India, the number of people buying medical insurance plans is rising. Document processing plays a pivotal role in the efficient management of health insurance policies and claims. This proposed study presents an innovative approach to document template matching specifically tailored for the health insurance domain, implemented using the Python Flask web framework. Integration with Python Flask offers scalability, flexibility, and ease of deployment, making it suitable for a wide range of insurance applications. This solution represents a significant advancement in document processing technology, empowering health insurance professionals with a comprehensive tool to effectively manage and analyze documents.
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