About a-team Marketing Services
The knowledge platform for the financial technology industry
The knowledge platform for the financial technology industry

A-Team Insight Blogs

AI In Financial Services: Where The Real Challenges Are Starting to Emerge

Subscribe to our newsletter

By Joe Norburn, chief executive of TCC and Recordsure.

Across financial services, AI is now embedded in day?to?day activities, from fraud detection and onboarding to credit assessment and customer interaction. The UK Treasury Select Committee’s recent inquiry reflects just how widespread that adoption has become, especially among larger institutions.

What stands out is not that firms are using AI, but how uneven governance approaches remain. Many are applying control frameworks originally designed for more deterministic systems – where decision paths could be traced, explained and challenged relatively easily. As AI becomes more embedded, particularly in complex or automated processes, doing so becomes harder, even where controls exist.

That does not make existing frameworks irrelevant. Consumer Duty, the Senior Managers and Certification Regime (SM&CR) and operational resilience remain central. But it does shift the emphasis from whether those regimes apply, to how they are applied when decisions are less visible, and outcomes are shaped by increasingly complex systems.

This raises a more immediate question. If firms are already making judgements about AI risk and control in practice, how are regulators responding?

Regulators Are Engaging, and Expectations Are Sharpening

There has been extensive commentary on how regulators are approaching AI. The FCA’s engagement with industry has been deliberate and increasingly aligned with its wider aim of becoming a smarter, more responsive regulator. The Mills Review is a good example, examining whether existing regimes remain fit for purpose as AI becomes more embedded, rather than seeking to redraw the rulebook entirely.

Supervisory approaches are also evolving. Greater use of testing environments and closer dialogue with firms point to a more hands?on model, while initiatives such as the Critical Third Parties regime reflect a growing focus on risks across the wider technology ecosystem.

The overall direction of travel is becoming clearer. Regulators are not asking firms to pause innovation, but they are increasingly focused on how outcomes are evidenced, how risks are identified and mitigated, and how accountability is maintained once AI is operating at scale.

Where the Pressure Really Starts to Show

The more difficult questions rarely arise at the point of adoption. They tend to surface later, once systems are live, scaled and embedded into business critical processes.

Questions around fairness, oversight and accountability move quickly from theory into day?to?day reality. Firms need to demonstrate how outcomes are monitored when decisions are made in milliseconds, what effective oversight looks like when models are complex, and where accountability sits when multiple teams, suppliers and systems are involved.

It’s not just about identifying the risk. It is demonstrating, consistently and credibly, that it is being managed.

This is where the real gap sits. As firms move beyond experimentation and try to operationalise AI, a more fundamental constraint becomes clear. In most cases, the limiting factor is not AI capability, but the combination of generative AI (GenAI) tools and the quality, consistency and reliability of the underlying data.

Mainstream GenAI and LLM?based tools are highly effective at text extraction, summarisation and surface?level pattern recognition. They can turn large volumes of content into something more digestible. However, they are not designed to support regulated decision making. They do not inherently understand what financial advice data represents, how values relate to one another, or why one data point should be trusted over another.

Critically, these models often struggle to provide the explainability, traceability and auditability that regulators expect. They can silently resolve conflicts, obscure data lineage, and produce outputs that sound confident even when they are incomplete or wrong. As a result, firms frequently end up increasing human oversight rather than reducing it – spending more time validating outputs, resolving inconsistencies and evidencing compliance.

By contrast, purpose?built AI models for analytics and prediction are designed around structured, trusted data. They are trained to understand how advice data is created, how it changes over time, and when it must be corrected rather than inferred. This enables predictive analysis, consistent MI, and defensible insights that can be traced back to source and explained to regulators.

The more reliable, explainable and auditable the data foundation becomes, the more safely AI can be applied. In regulated environments, value does not come from applying GenAI and LLM models to unstructured data, but from combining selective GenAI capabilities with predictive AI operating on trusted, regulator?ready data. That is what allows automation to scale – and risk to come down.

Inside Firms, the Conversation is Shifting

Earlier discussions around AI focused heavily on opportunity. Those conversations have not disappeared, but they now sit alongside more practical concerns about control, governance and accountability.

Risk and compliance teams are becoming more deeply involved, while senior managers are being asked more searching questions about systems they may not have built themselves. In many cases, AI is exposing weaknesses that were already present – unclear data ownership, inconsistent documentation, or fragile oversight models – and making them harder to defend once decisions are made at speed and scale.

There Is Still a Window to Act

The environment has not fully settled, and regulators continue to shape their approach based on what they are seeing in practice. That creates a window.

Firms that invest now in strengthening data foundations, governance and evidencing mechanisms are likely to be better positioned as expectations become more defined. In practice, that tends to matter far more than trying to predict exactly where regulation will land.

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: Navigating a Complex World: Best Data Practices in Sanctions Screening

As rising geopolitical uncertainty prompts an intensification in the complexity and volume of global economic and financial sanctions, banks and financial institutions are faced with a daunting set of new compliance challenges. The risk of inadvertently engaging with sanctioned securities has never been higher and the penalties for doing so are harsh. Traditional sanctions screening...

BLOG

Theta Lake Touts First-of-its-Kind ISO Certification for AI Comms Data Trust

Data security specialist Theta Lake has been awarded trust certification for its artificial intelligence-powered compliance communications services. The designation was conferred as the company prepares to release a report that shows IT teams in financial services and other industries are facing challenges with their AI governance and security. Santa Barbara, California-based Theta Lake achieved ISO...

EVENT

RegTech Summit London

Now in its 9th year, the RegTech Summit in London will bring together the RegTech ecosystem to explore how the European capital markets financial industry can leverage technology to drive innovation, cut costs and support regulatory change.

GUIDE

Risk & Compliance

The current financial climate has meant that risk management and compliance requirements are never far from the minds of the boards of financial institutions. In order to meet the slew of regulations on the horizon, firms are being compelled to invest in their systems in order to cope with the new requirements. Data management is...