Last week, AiVantage hosted an in-person roundtable that brought together leaders from credit unions, banks, managed service providers and fintechs to have a forward-looking conversation on artificial intelligence. The discussion spanned practical applications, regulatory hurdles, and short- and long-term global trends —offering a window into how financial services organizations are preparing for the next wave of digital transformation.
Here are the expanded key discussion areas and takeaways:
1. AI Requires Human Context and Culture Readiness
AI is often seen as a silver bullet, but participants emphasized that success depends on people as much as technology. Without human oversight, accountability, and cultural acceptance, even the best tools fall short. Leaders spoke about the importance of change management—helping employees understand AI’s role in their day-to-day work—and upskilling programs that build confidence rather than fear. Creating an AI-first culture is not about replacing human intelligence, but about enabling staff to make better, faster decisions with AI as a partner. The keynote speaker noted that today many credit unions still “scale with humans and care with tech,” but the future requires flipping that to “scale with tech and care with humans.” Leaders agreed this mindset shift—focusing less on self-preservation and more on innovation – is at the heart of building a truly AI-first culture.
2. Data Quality, Governance, and Architecture Are Foundational
One theme surfaced repeatedly: AI is only as good as the data it learns from. Participants pointed out that many institutions still wrestle with siloed data, inconsistent definitions, and outdated systems. Establishing trusted data pipelines, strong governance frameworks, and modern architecture is essential. Without these foundations, innovation stalls, and the “garbage in, garbage out” problem derails even the most ambitious projects. Democratizing access to clean, structured data empowers more teams across the organization to experiment and deliver value. Several participants observed that while data challenges remain, the long-promised era of “Big Data” still hasn’t fully arrived. Without broad, trusted access, executives and CEOs often rely on AI tools to piece together a view of what is happening around them—an indication that data democratization remains unfinished business.
3. Practical Use Cases Driving Value
Beyond theory, real-world applications of AI are already reshaping operations. Call centers see productivity double with AI-driven chatbots and agent-assist tools. Member outreach is becoming more personalized at scale, with AI tailoring messages to individual needs and behaviors. Lending and onboarding processes are being streamlined to improve both speed and experience. The group highlighted rapid testing and Retrieval-Augmented Generation (RAG) as emerging norms—lightweight, cost-effective ways to experiment, validate, and prove value before scaling.
4. Balancing Innovation, Risk, and Regulation
As one participant noted, “AI is moving faster than the rulebook.” With nearly 95% of AI projects failing to launch or sustain impact, the group stressed the need for continuous testing with real end users. Regulatory uncertainty looms large, especially as many regulators themselves lack deep AI literacy. This gap can create friction, slowing adoption and complicating compliance. Interestingly, participants noted that the U.S. government is beginning to shift from heavy-handed regulation toward encouraging AI adoption—a subtle but important pivot that could accelerate industry experimentation while still demanding responsible frameworks. Financial institutions need to get ahead by investing in risk frameworks, transparent practices, and ongoing dialogue with regulators to ensure innovation doesn’t outpace accountability.
5. The Broader Industry Landscape
Zooming out, the group reflected on how different regions are approaching AI adoption. The U.S. is primarily leaning toward a cautious, safety-first model, requiring institutions to prove outcomes before scaling. China, by contrast, has adopted a more aggressive “all in” approach, pushing rapid deployment across industries. For U.S. credit unions and banks, the lesson is clear: agility matters. Looking beyond large institutions, many predicted that AI would fuel a wave of entrepreneurship. As creativity begins to outpace coding and technical functions, new job varieties will emerge, and a small-business boom could reshape the financial ecosystem itself. Leveraging frameworks like NIST for risk management, while embedding ethical guardrails into AI strategies, will allow institutions to remain competitive in a rapidly globalizing race.
6. AI as the Fourth Industrial Revolution
The keynote address framed AI as nothing less than the Fourth Industrial Revolution—a transformative force unlike anything that has come before. While past revolutions mechanized labor or digitized workflows, AI reshapes the very nature of both skilled and unskilled work. From orchestrating complex processes to generating creative solutions within narrow domains, AI represents a step-change moment for financial services. Leaders agreed that this is more than just a technology upgrade—it’s a paradigm shift in how institutions will operate, compete, and serve their members.
The roundtable has reinforced a critical truth: AI’s success in financial services isn’t just about algorithms and models. It’s about people, data, governance, and a willingness to adapt. Institutions that balance innovation with responsibility—while embracing an AI-first culture—will not only stay relevant but thrive in the years ahead. At AiVantage, we are proud to create forums where industry leaders come together to exchange ideas, challenge assumptions, and shape the responsible future of AI in financial services. Stay tuned for more insights as we continue to break barriers through innovation.