How To Build a Data Foundation for the AI Era
JUNE 17, 2025
By: Tyler Brown
More than half of respondents to a KPMG survey (54%) said their bank has “implemented” foundational data capabilities. But few claim data capabilities that are “fully developed and operational,” and in the age of AI, the last step is increasingly out of reach. As we’ve written, the more data banks have, and the more effectively they process and use data, the more competitive they will be. But some don’t even have basic capabilities designed to fix siloed, inconsistently formatted information.
To succeed in the long run, a bank’s leadership will need a clear vision of the future of data as it applies to their institution and the industry overall. And, to make that vision a reality, they will need a data strategy that’s linked to enabling technology and business practices. In our research, we’ve observed that successful data strategies follow three principles:
Applying these principles, banks can begin to think about infrastructure. Based on our research and experience, forward-thinking data strategies typically start with established tools and look ahead to the mainstreaming of AI across the bank. There are three main tiers to be aware of when building a data stack:
With this stack in mind, banks may adopt a roadmap for building out their data capabilities:
It’s important to remember that this is a long-term effort. The first step is to adopt the right mentality: to see data as a durable advantage and aim for decision-making driven by holistic, up-to-date insights. Tactical considerations regarding technology will follow and should be aligned strategically to the bank’s needs and resources.
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