2. Intelligent Credit Underwriting
In credit underwriting workflows—i.e. mortgages, auto, and small business loans—AI agents automatically gather and normalize applicant financial data, from bureau reports to bank balances and alternative payment histories. They apply credit policy rules to calculate a risk score, approve eligible applications, and generate targeted exception summaries for complex or high-risk submissions.
Amazon Web Services just launched an agent for this specific purpose powered by their Bedrock Agents AI solution. It handles the entire end-to-end mortgage approval process without requiring human intervention and with full capabilities to reliably verify documents and make data-driven loan decisions.
3. Proactive Wealth Management
Wealth management advisors balance evolving client goals with market volatility and regulatory constraints. Agents simplify and enhance this management process by continuously assessing portfolio performance against strategic targets and a range of impact factors—risk-adjusted returns, ESG mandates, interest rate shifts, and sector rotations to name a few examples.
In addition, when portfolios drift past predefined thresholds or new opportunities emerge, agents automatically generate rebalancing recommendations or execute low-impact trades, ensuring alignment with each client’s objectives.
And while wealth management is often considered one place where AI is more unwelcome than other areas, all signs point to a future where Gen Z and younger generations embrace AI support in this space.
Forbes reports that while nearly half of Boomers say they don't trust AI to manage their portfolios, just one in five Gen-Zers say the same. We can expect that growing tolerance for agents in portfolio management will also mean accelerated adoption of agentic (and other AI-powered) solutions for investment firms.
4. Automated Regulatory Compliance
AI agents enforce AML and KYC compliance rules across processing stages by validating customer information against watchlists, flagging discrepancies, and logging every action into audit trails. They automatically generate compliance reports ready for regulator submission.
In a recent article, Greenlite AI CEO Will Lawrence told PYMNTS that we're in the "Agentic era of compliance," where agents are slicing away at the 85% of work time (according to a study Lawrence cited) they're spending on non-analytic work.
Looking to the future, agents shouldn’t be built to replace existing compliance infrastructure but layer on top of it, streamlining the process and eliminating labor-intensive review processes that bottleneck timely compliance processing workflows.
5. Personalized, Responsive Customer Support
AI agents orchestrate key aspects of the customer service journey by integrating with core banking systems and handling multi-step workflows. They support authentication and identity verification at session start, interpret customer intents, execute multi‑step transactions (i.e. payments, transfers, dispute submissions), provide proactive status updates and follow‑up reminders, and escalate complex issues to human advisors.
Commonwealth Bank of Australia, for example, uses an AI agent to streamline its card dispute workflow. Rather than navigating multiple menus and screens, customers describe the issue conversationally to the agent, which interprets their request, prompts for missing details, and drives quick time-to-resolution.