As financial institutions modernize, legacy enterprise data warehouses such as Teradata, Oracle, Netezza, SQL Server, and mainframe-based systems are increasingly challenged by modern scale, cost, and agility requirements. While these platforms have evolved over time, their architectural foundations and licensing models make it difficult to efficiently support real-time analytics, large-scale data science, and AI-driven use cases in a cloud-native world.
Modern BFSI institutions require cloud-native Lakehouse architectures that reduce the total cost of ownership, support advanced analytics and AI, and meet growing regulatory, security, and operational demands.
KPI Partners helps BFSI clients transition from aging EDWs to scalable and cost-efficient platforms built on the Databricks Lakehouse, enabling improved agility, governed analytics, and innovation while maintaining regulatory confidence.
Banks are facing rapidly increasing data volumes driven by digital payments, mobile banking, cybersecurity telemetry, regulatory reporting, and omnichannel customer interactions. Traditional EDWs were primarily designed for structured, batch-oriented reporting workloads, which makes it increasingly difficult to support today’s data diversity and velocity at scale.
Common pain points include:
These challenges directly impact a bank’s ability to respond quickly to regulatory change, deliver timely insights, and operationalize AI at scale.
The Databricks Lakehouse architecture combines the data reliability and governance of a warehouse with the scalability and flexibility of a data lake, built on open standards and cloud-native services. This enables BFSI organizations to simplify their data landscape while supporting both traditional analytics and advanced use cases on a single platform.
Key cost and operational benefits include:
By standardizing open data formats and centralized governance, the Databricks Lakehouse enables banks to modernize analytics incrementally while maintaining auditability, security, and compliance.