case study

Gen AI-assisted Contract Comparison for an Actuarial Firm

Insurance Banking & Financial Services

Business Impacts

60%

Enhancement in task automation

75%

Improvement in summarization

Customer Key Facts

  • Country : US
  • Industry : BFSI

Problem Context

The customer, an international actuarial and consulting firm based in Seattle, aimed to streamline their insurance policy drafting process for efficiency.

The customer partnered with Quantiphi to develop a retrieval-augmented generation (RAG) pipeline, customizing it for their insurance policy drafting needs. This pipeline facilitates the identification and synthesis of pertinent legal data from state statutes, integrating input from the firm’s legal team.

Challenges

  • Filing process usually takes 6 to 12 months
  • Involves multiple review cycles between the customer and regulatory body

Technologies Used

Vertex AI

Vertex AI

Firebase

Firebase

Cloud Run

Cloud Run

Cloud Storage

Cloud Storage

Vector Search

Vector Search

Cloud Function

Cloud Function

Solution

  • Developed an LLM-based chatbot to address insurance-related queries for actuaries associated with the customer
  • Established a continuous integration and continuous deployment (CI/CD) pipeline to automate data ingestion
  • Improved user interaction through functionalities like multi-state response generation, user authentication, and a metrics analysis dashboard

Results

  • The LLM-based AI assistant tracks user chat history, allowing easy access during sessions
  • The admin page displays KPIs for cost and query count, and lets users save feedback on responses

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