The Good Tech Companies - Why Zack Shooter Believes AI Agents Will Expose a Structural Fault Line in Financial Infrastructure
Episode Date: December 19, 2025This story was originally published on HackerNoon at: https://hackernoon.com/why-zack-shooter-believes-ai-agents-will-expose-a-structural-fault-line-in-financial-infrastructure. ... AI is ready for autonomous finance. But today’s financial infrastructure wasn’t built for software that moves money on its own. Check more stories related to finance at: https://hackernoon.com/c/finance. You can also check exclusive content about #fintech, #financial-technology, #ai-in-finance, #financial-infrastructure, #agentic-payment-systems, #ai-governance, #autonomous-ai-agents, #good-company, and more. This story was written by: @stevebeyatte. Learn more about this writer by checking @stevebeyatte's about page, and for more stories, please visit hackernoon.com. AI is becoming capable of initiating and managing financial operations, but legacy banking, fintech, and blockchain systems were never designed for autonomous actors—creating new risks around governance, accountability, and safety.
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Why Zach Shooter believes AI agents will expose a structural fault line in financial infrastructure
by Steve Byatt. Artificial intelligence is rapidly moving from experimentation into production.
Software systems are no longer just assisting humans. They are beginning to make decisions
independently. In finance, this shift introduces a unique set of challenges because money
movement is irreversible, regulated, and deeply intertwined with real-world systems.
According to fintech operator Zach Schueter, the next major bottleneck for AI adoption will not
be intelligence. It will be the financial infrastructure AI systems are expected to operate on.
Shooter spent five years helping build global financial infrastructure at deal,
supporting payments, compliance, and treasury operations across more than 100 countries.
That experience gave him early exposure to what happens when automation meets
real-world financial rails. As AI capabilities accelerated, he began to see a deeper structural
problem forming. Financial systems, he argues, were never designed for autonomous actors.
A financial stack built across three areas of technology. Modern financial infrastructure is not a
single system. It is a layered stack built over decades. Legacy banking rails still underpin
global money movement. Modern fintech platforms sit on top of those rails with APIs and centralized control.
Alongside them, blockchain systems introduce deterministic execution and irreversible settlement.
Each layer operates under different assumptions around trust, latency, reversibility, and human
oversight. We are asking AI systems to move money across infrastructure that spans decades of
technology paradigms, Shooter explains. None of it was designed with autonomous actors in mind,
and none of it shares a unified control model. Human operators have historically absorbed the
friction between these layers. I agents will not. Why today's fintech stack is not AI-ready.
Most financial systems assume humans are ultimately responsible for decisions.
Approvals, exception handling, and risk reviews are built around people being in the loop.
AI systems behave very differently. They operate continuously. They act faster than humans can
intervene. They make probabilistic decisions rather than deter ministic ones.
Financial infrastructure today is built around manual checkpoints and human intuition.
Shooter says.
AI does not pause for review.
It acts repeatedly and THAA exposes weaknesses that were previously manageable.
In human-driven workflows, delayed reporting or inconsistent error handling can often be corrected
manually.
Under autonomous operation, those same gaps compounded silently and at speed, the risk of
AI initiated financial operations.
Shooter expects AI agents to increasingly initiate payments, manage liquidity, route
transactions across providers, reconcile balances, and interact directly with banks, payment
processors, and on-chain systems. The problem is not whether AI can do these things. It is
whether existing systems can safely govern them. Today's financial infrastructure offers limited
real-time observability, fragmented authorization models, and little ability to explain
or reverse automated decisions. The failure modes change once software is allowed to move money
on its own, Shooter notes. Small gaps that humans can compensate for become systemic risks when
decisions happen continuously and at scale. Closed-loop agentic payment systems are only early
experiments. Shooter points to emerging systems like X-402 and other agentic payment frameworks
as important signals of where the industry is heading. These systems explore how autonomous
agents can transact with one another. However, they largely operate in closed-loop environments
designed for specific use cases and known counterparties.
They avoid much of the complexity involved in interacting with global banks, regulated payment
providers, and legacy financial rails.
Agentic payment systems like X-402 are valuable experiments, Shooter says.
But ye exist in controlled environments.
The real challenge begins when AI systems have to interact with banks, regulators,
PSPs, and legacy infrastructure all aitons.
Until AI-driven payments can operate safely and open.
open, regulated systems, the hardest problems remain unresolved. The identity and accountability
gap for AI agents. Beyond infrastructure and governance, Shooter sees a fundamental identity problem
emerging. Financial systems are built around accountable entities. Humans have legal identities,
companies have corporate identities, AI agents have neither. Existing KYC and KYB frameworks
depend on this structure. Without a clear link between an autonomous system and a responsible human
or organization, those frameworks cannot function as intended. Every financial action ultimately
needs to be attributable to someone, Shooter explains. Today, AI agents don't have a clear identity,
and financial systems don't have a way to understand who they represent or who is responsible
when something goes wrong. Shooter believes this will eventually require new attribution and delegation
models that explicitly bind AI systems to accountable entities, whether through delegated
authority frameworks, cryptographic credentials, or other verifiable mechanisms. Until that link
exists, autonomous financial systems will remain constrained by design. Preparing financial
infrastructure for autonomous actors, Shooter believes the next generation of financial infrastructure
must treat eye agents as first-class participants rather than edge cases. That means systems
designed with, real-time observability, unified governance across Web 1, Web 2, and Web 3. Clear
authorization boundaries for automation, explicit accountability and auditability, the companies that
succeed, he argues, will not be those that automate the fastest. They will be the ones that
invest in the foundations required to make autonomy safe. AI will change how financial systems
operate, Shooter concludes, but without the right infrastructure in place, it will expose
weaknesses that have been building for years. Thank you for listening to this Hackernoon story,
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