- Outdated Rate Cards: Reliance on legacy assumptions that don't reflect current mortality/morbidity patterns.
- Information Silos: High-quality census and occupation class data remaining underutilized for dynamic pricing.
- Pricing Uncertainty: Slower response times and higher uncertainty when quoting for unfamiliar industry segments.
- Manual Audits: Lack of automated deviation alerts between tool-generated rates and actual experience.
We delivered a unified AI platform designed to augment actuarial rigor with machine learning precision:
- Data Lakehouse Integration: Centralized storage of inquiry history, census datasets, and claims archives on Databricks with real-time API communication.
- Dual-Rate Modeling: Simultaneous calculation of technical rates and experience-based rates with credibility weighting.
- Benchmarking Engine: Automated cohort analysis to identify similar historical groups based on industry, size, and OC distribution.
- AI Pricing Assistant: An LLM-integrated layer that provides real-time insights and captures user feedback for continuous model learning.
Technologies Used
- AI/ML: Experience-based Modeling, Similar-group Matching, LLM Pricing Assistant
- Data Engineering: Databricks, ETL Pipelines
- Integration: Real-time APIs, Side-by-side Comparison UI
- Increased Win Ratios: Real-time competitive benchmarking allows for more accurate and aggressive bidding.
- Portfolio Health: Immediate identification of underperforming segments and emerging loss patterns.
- Underwriter Confidence: Direct access to industry norms and benchmarks for all team members.
- Data-Forward Strategy: Successful transition from reactive pricing to a predictive, evidence-based model.










