JPMorgan CEO Jamie Dimon Changes Tune as Banks Embrace Stablecoins

ccn.comPublicado em 2025-07-16Última atualização em 2025-07-17

Key Takeaways

  • Despite past criticism of crypto, JPMorgan CEO Jamie Dimon says the bank must engage with stablecoins to remain competitive.
  • Citigroup and Bank of America are also exploring stablecoin issuance and seeing potential in tokenized deposits, crypto custody, and faster cross-border payments.
  • Stablecoins are edging closer to institutional legitimacy and widespread use in the financial system.

Once wary of crypto, Wall Street’s biggest names are now edging closer to a digital future built on stablecoins.

It’s not about belief anymore; it’s about strategy.

With payment rivals circling and Washington warming to regulation, banks like JPMorgan, Citigroup, and Bank of America are shifting from skeptics to stakeholders in one of finance’s most disruptive arenas.

Dimon Embraces Stablecoins as JPMorgan Tests Its Own

JPMorgan Chase CEO Jamie Dimon says he’s still not convinced about the utility of stablecoins—but that isn’t stopping him from jumping in.

Speaking during the bank’s earnings call , Dimon said JPMorgan plans to engage in both its internal JPMorgan deposit coin (JPMD) and broader stablecoin initiatives to better understand the technology and compete in the evolving payments space.

“I think they’re real,” Dimon said, “but I don’t know why you’d want to use a stablecoin instead of just payment.”

Still, he admitted the bank can’t ignore the technology, especially as competitors innovate quickly.

JPMorgan, which moves nearly $10 trillion daily, is piloting JPMD—a permissioned digital deposit token—with institutional clients for cross-border and on-chain settlements.

Wall Street Banks Join the Stablecoin Race, Eye Collaboration

JPMorgan isn’t alone. Citigroup CEO Jane Fraser said Tuesday the bank is “looking at the issuance of a Citi stablecoin,” while Bank of America is also exploring entry into the market.

Executives across top banks highlighted opportunities in tokenized deposits, custody services, and faster cross-border payments.

One potential path is collaboration. Banks could follow the Zelle model—jointly created by traditional institutions to compete with PayPal and Cash App—via Early Warning Services, their shared fintech infrastructure.

Pressed on whether JPMorgan would participate in such a joint stablecoin effort, Dimon remained cryptic: “That’s a great question, and we’ll leave it remaining as a question.”

Regulation Advances, But Politics Could Delay Crypto’s Next Big Leap

Meanwhile, a stablecoin regulatory framework has already passed the U.S. Senate, offering issuance, oversight, and reserve requirements guidelines.

It would allow companies to issue dollar-backed stablecoins—so long as they hold reserves in cash or Treasuries, are regularly audited, and don’t pay interest, unlike money market funds.

However, political tensions slowed progress in the House this week as Republicans debated whether to pass crypto-related bills separately or as a package.

Despite the stall, Wall Street is preparing for what appears to be inevitable regulation and broader stablecoin adoption.

Big Tech is also paying attention. Both Amazon and Walmart are reportedly exploring stablecoin applications, which could potentially reshape retail payments and pressurize traditional card networks like Visa and Mastercard.

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