AI-Powered Document Classification for Reinsurance Efficiency
Location: USA
Industry: Insurance
Project Summary
Our client, a leading US-based reinsurance company, struggled with manually sorting large volumes of claim documents, which was time-consuming and error-prone. They partnered with us to develop an AI-based document classification system to streamline classification, improve accuracy, and reduce manual effort.
Business Function:
- Reinsurance
Challenges
- The client received numerous unstructured & complex documents daily, making sorting into categories time-consuming.
- The manual classification process was slow and prone to errors, leading to costly delays and misclassifications.
- As the company grew, the rising document volume became harder to manage without a scalable solution.
- In the reinsurance industry, classification errors could have major financial impacts, making accuracy crucial.
Solutions
To address these challenges, we developed an AI-powered document classification solution that integrated seamlessly with the client’s existing systems.
- We built the solution using a robust tech stack, including .Net Core Web APIs for the backend, React for the front end, and Azure Language Service for AI-powered natural language processing (NLP). Azure Language Studio was instrumental in developing and fine-tuning the AI models.
- We implemented an AI model that automatically classifies incoming documents into categories such as property, casualty, and medical claims, leveraging NLP to accurately understand and sort the content.
- We developed a React-based web interface that allows employees to monitor classifications, review documents, and make adjustments.
- We implemented a system that manages growing document volumes and integrates with the client's database for accurate storage and retrieval.
- We optimized the AI model using Azure Language Studio, training it on the client's document types for high accuracy in real-world scenarios.
Results
- We achieved 98.72% accuracy in document classification with NLP, surpassing client expectations and reducing errors compared to manual processing.
- The system significantly cut classification time, freeing employees to focus on higher-value tasks.
- The solution was scalable and capable of handling the growing volume of documents as the company expanded its operations.
- By automating the classification process, the client realized substantial cost savings in terms of labor and operational efficiency.
Tech Stack
- React
- .Net Core Web APIs
- Azure Language Service (AI), Azure Language Studio
Keywords
- AI-powered document classification
- Reinsurance
- Natural language processing (NLP)
- .Net Core Web APIs
- Unstructured documents
- Automated solution
- Document categorization
- Database integration
- Operational efficiency
- Cost savings
- AI model optimization
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