Section 01
[Introduction] LLM-Driven Optimization of Insurance Policy Engine Testing: Exploring Paths for AI to Reshape Core System Testing
This article focuses on the application of Large Language Models (LLM) in insurance policy engine testing, aiming to address pain points of traditional testing such as reliance on manual experience, incomplete boundary coverage, and high regression costs. By analyzing the technical paths and practical experiences of automated test generation, intelligent boundary case identification, and test coverage optimization, it provides feasible solutions for LLM-driven testing optimization in the insurance technology field.