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AnalyticsCreator Congress 2021 data warehouse automation at a big German insurer

This session explains how a large German insurer implemented a modern enterprise data warehouse with AnalyticsCreator for group controlling and reporting. The presentation covers insurance business structures, KPI requirements, Data Vault-inspired modelling, historization, Azure deployment, repository scaling, and how AnalyticsCreator supported the implementation of more than 3,000 data warehouse objects.
Duration: 37:04 Updated: Nov 2021 Level: advanced Platform: AnalyticsCreator, Microsoft Azure, SQL Server, Power BI, SAS For: Insurance Companies, Data Warehouse Architects, BI Teams, Enterprise Data Engineers

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Questions

  • How was AnalyticsCreator used in a large insurance data warehouse project?
  • How do insurance companies structure contracts and product hierarchies?
  • Why is historization important for insurance contract data?
  • How was the enterprise data warehouse architecture organised?
  • How did AnalyticsCreator help manage more than 3,000 objects?
  • Why were AnalyticsCreator repositories separated into multiple modules?
Platform shown AnalyticsCreator
Related tooling Microsoft Azure, Power BI, SAS, SQL Server, Data Vault

Key Takeaways

  • The project was implemented for a large German insurer focused on group controlling and reporting.
  • Insurance products were structured hierarchically into business lines, insurance types, products, and tariffs.
  • Main insurance domains included life insurance, health insurance, legal protection, and composite insurance.
  • The controlling department required KPI analysis by product, sales area, broker, premium, and insured amount.
  • The target architecture replaced multiple heterogeneous data warehouses with one central enterprise warehouse.
  • The architecture used staging, integration, and business layers.
  • Sensitive personal data was separated into dedicated schemas because of European data protection requirements.
  • The modelling approach used Data Vault-inspired linked structures between contracts, partners, finance, and process data.
  • Historization was critical because insurance contracts change over long periods of time.
  • AnalyticsCreator supported SCD1, SCD2, source historization, and process-table historization.
  • The implementation included more than 600 tables, 2,200 views, and 520 procedures.
  • Repository separation improved synchronization speed, deployment performance, and parallel developer work.
  • Power BI and SAS were the primary reporting and analytics tools.

Transcript

The next session is presented by Amir Nasirai from D5. This session focuses on a data warehouse implementation with AnalyticsCreator at a large German insurance company for internal group controlling.

The first part explains how insurance business structures influence the data model, including products, sales channels, brokers, consumers, and controlling requirements.