Project Summary
AXA, a global insurance leader with operations in over 50 countries, initiated “Data for the Future” in 2020, an enterprise-wide analytics and AI transformation. Facing threats from insurtech startups and changing customer expectations, AXA aimed to evolve from a reactive insurance provider to a proactive risk partner through data-driven decision making and AI-powered customer experiences.
Solutions Adopted
AXA implemented a multi-layered analytics and AI ecosystem:
- Google Cloud Platform is the primary cloud provider for AI/ML workloads.
- TensorFlow and PyTorch for deep learning model development.
- DataRobot and H2O.ai for automated machine learning.
- Dataiku for data science collaboration and model management.
- BigQuery for cloud data warehousing.
- Looker for enterprise analytics and dashboards.
- Computer vision systems for claims assessment automation.
- Natural Language Processing for Policy Document Analysis.
- Reinforcement learning for dynamic pricing optimisation.
- Explainable AI frameworks ensuring regulatory compliance.
- Enterprise knowledge graph for entity relationship mapping.
Implementation Costs
- Cloud infrastructure and platform: €48 million.
- Data science and AI tools: €24 million.
- Custom model development: €32 million.
- Data engineering and integration: €30 million.
- Talent acquisition and upskilling: €22 million.
- External expertise and consulting: €18 million.
- Change management and adoption: €14 million.
- Governance and ethics frameworks: €7 million.
- Total investment: Approximately €195 million.
Implementation Duration
- Strategy and planning: 5 months (January-May 2020)
- Platform and foundation building: 7 months (June-December 2020)
- Centre of Excellence establishment: 4 months (October 2020-January 2021)
- Use case implementation phases:
- Claims optimisation: 9 months (November 2020-July 2021)
- Pricing sophistication: 11 months (February-December 2021)
- Fraud detection: 6 months (May-October 2021)
- Customer churn prediction: 5 months (August-December 2021)
- Risk assessment: 8 months (January-August 2022)
- Customer experience personalisation: 10 months (March-December 2022)
- Scaled enterprise adoption: Ongoing (2022-present)
- Total initial implementation: 3 years (January 2020-December 2022)
Savings and Benefits
- Claims processing costs reduced by 28% through automation, saving €145 million annually.
- Fraud detection improved by 42%, preventing €85 million in fraudulent claims.
- Customer churn reduced by 18%, retaining €210 million in annual premiums.
- Underwriting accuracy improved by 31%, optimising risk assessment.
- 22% reduction in claims settlement time (from 18 days to 14 days average).
- Dynamic pricing optimisation increasing policy profitability by 8.5%.
- Customer satisfaction scores improved by 26 points for digital interactions.
- Predictive maintenance models for commercial property clients reducing claims by 24%.
- AI-powered health coaching reducing health claims by 15% for participating customers.
- Total annual value creation: Approximately €560 million.
- ROI achieved within 22 months of initial investment.