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AI Regulation Is Here: Why Financial Institutions Must Future-Proof Data Governance

By Errol Rodericks, EMEA & LATAM Product & Solutions Marketing Director, Denodo

For financial institutions, AI has moved from being an experimental technology to an operational necessity, driven by the need for real-time decision-making,ย automationย and cost efficiency pressures. A recentย 2025 MIT Technology Review Surveyย found that around 70% of banking institutions are using agentic AI to some degree, with 56% of executives using it for fraud detection and 51% for security.ย ย 

In light ofย the increased implementation of AI across functions, more regulation is being brought in to safeguard its use. Frameworks such as theย EU AI Actย classify financial services as โ€œhigh-riskโ€,ย therefore imposing stricter requirements for transparency, documentation,ย monitoringย and data-quality controls. These obligations are further reinforced by audits,ย penaltiesย and accountability structures already in place. Similar frameworks such as DORA and Model Risk Management (MRM 2.0) standards highlight that compliance is no longer optional. Financial organisations must reassess AI deployments with particular focus on data integrity to meet these regulatoryย expectations.ย ย 

The struggle with vast dataย ย 

For organisations to remain compliant with these regulations, data needs to be well-governed and readily accessible. In banks, data can be scattered across legacy systems, creating challenges such as dark data, data latency, copy sprawl and transient data โ€“ all of which undermine transparency and compliance efforts. These issues make it harder to audit and explain the data flows behind AI-driven decisions, which regulators increasingly expect. Compliance hinges on whether the data is consistently governed –ย without this, institutions risk falling out of alignment with stringent regulations and losing business value.ย 

With the escalating threat of cyberattacks and the growing adoption of AI, financial institutions are subject to increasingly stringent regulatory requirements that elevate data access and management to a strategic priority. Organisations can meet these demands with an integrated platform that provides comprehensive audit trails andย facilitatesย transparent AI governance.ย ย 

Getting data regulation-readyย ย ย 

A logical data management platform can provide a solution by virtually connecting data sources without requiring centralised storage. With a logical data management platform in place, organisations can quicklyย demonstrateย compliance as the regulatory bar continues to rise. This is accomplished by establishing a single point of control for managing data governance policies that not only saves time, which would normally be spent managing such policies at each and every data source, but also provides both operational teams and regulatory officers with visibility over all of the available data. By unifying access to disparate data sources, logical data management platforms enableย consolidatedย reporting for all stakeholders and external regulatory bodies, while alsoย facilitatingย data privacy reporting. Such reports can include data lineage and usage tracking information, all the way back to the original source systems, forย additionalย support.ย ย 

Explainability is also a crucial business imperative. Modern regulatory frameworks demand not only access to data but also clear documentation of how data is integrated and used to reach critical decisions. By automatically cataloguing data assets and tracking lineage, logical data platforms support transparent audit trails that meet evolving regulatory requirements.ย ย 

Unlike traditional approaches such as data warehouses and data lakes โ€“ which rely on centralising and copying data โ€“ a logical data management platform enables real-time access to distributed data, applies zero-copyย governanceย and uses semantic integration to ensure consistency without duplication. With these features, a logical data management approach delivers the transparency which regulators increasingly expect.ย ย 

This was the key solution forย St. Jamesโ€™s Place, a British wealth management company that needed a modern data integration platform toย comply withย rapidly changing EU and UK financial regulations.ย ย The firm needed to meet the demands of a European legislative framework that aimed at regulating financial markets, strengthening data protection for investors โ€“ requirements that legacy, siloes data methods could not meet efficiently. To that end, the firm implemented a logical data management platform that streamlined regulatory governance and enabled the firm to develop accounting reports in one day that previously took five. This is due to the platformโ€™s ability toย establishย a unified semantic layer between the different data sources and the reporting environment. This approach enabled work to be completed seamlessly whileย maintainingย compliance.ย ย 

Preparing for the next wave of AI regulationย ย 

For financial institutions, adopting proactive data governanceย representsย a step ahead in the face of regulations. Firms that invest in making their data accessible, explainable, and governed not only reduce risks but also unlock new business value from AI initiatives. They can then accelerate AI application development and position themselves as leaders in responsible data and AI management.ย ย 

As AI regulation matures, so too must strategies for data governance. Regulators are increasingly shifting their attention from the models to theย data behind the models,ย meaning compliance will depend on explainability, traceability, data minimisation, and accountable automation.ย A logical data management platform provides the necessary scalability to meet regulatory demands – acting as theย operating system for compliant AI.ย They enable every relevant data point to be both discoverable and governed, regardless of where it is stored – whether on-premises, in the cloud, in a data warehouse, or across third-party systems. By making data accessible andย explainable at every juncture, institutions can meet regulatory requirements while aiming for the next wave of innovation, including Agentic AI.ย ย 

Forward-thinking financial organisations understand that data is not just a compliance risk but a strategic asset. Those who treat data governance as a foundation for operational excellence will set the pace in an ever-intensifying regulatory landscape.ย ย 

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