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Home / Case / Data Warehouse System for a Development Financial Institution

Data Warehouse System for a Development Financial Institution

Client Background

The client aimed to build an enterprise-level data warehouse to store and consolidate data from multiple business systems. By adopting a subject-oriented and normalized design, the system implemented historical data retention strategies to provide a solid data foundation for applications across multiple domains.


The data warehouse needed to adapt to the current software and hardware environment, ensuring continuity of existing applications, supporting the migration of operational data applications, and enabling data marts for regulatory reporting, performance assessment, customer management, risk monitoring, and finance.


In addition, the project required the construction of a comprehensive, multi-layered reporting platform and management cockpit to serve decision-makers, fully integrated with the data warehouse core and its data marts.


Solution

Considering the client’s actual requirements, the data warehouse system was designed with a multi-layered, scalable framework. 

The core architecture comprised:

  • Data Sources

  • Integrated Data Area (Source Model Layer, Subject Model Layer, Common Processing Layer, Business Capability Layer)

  • Application Service Area (Service Layer, Application Layer, and User Access Layer)


The architecture also incorporated two essential components:

  • Data Warehouse Data Management (data quality management, metadata management, data lifecycle management)

  • Data Warehouse Security Management


These functions span across all core layers to ensure data integrity and security.

The platform mainly ingests data from ODS platforms connected to domestic and overseas business systems. Internally, it is structured into a Technical Staging Layer (temporary layer), Subject Model Layer (base layer), and Common Processing Layer (aggregation layer).


Results

Since going live, the data warehouse has continuously supported key applications such as unified reporting, regulatory submissions, risk management, financial supervision, and executive cockpit dashboards—establishing a solid digital foundation for the bank’s operations and long-term growth.


To date, nearly 30 systems have been integrated into the warehouse, including the core banking system, workflow system, commercial bill system, and general ledger system, covering the bank’s major business information.

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