The post X News: X Corp. Set to Roll Out X Money Public Access in April appeared on BitcoinEthereumNews.com. Key Insights: Elon Musk confirmed X News that X MoneyThe post X News: X Corp. Set to Roll Out X Money Public Access in April appeared on BitcoinEthereumNews.com. Key Insights: Elon Musk confirmed X News that X Money

X News: X Corp. Set to Roll Out X Money Public Access in April

For feedback or concerns regarding this content, please contact us at crypto.news@mexc.com

Key Insights:

  • Elon Musk confirmed X News that X Money is expected to roll out public access in April.
  • The announcement highlights X’s push into digital finance, aligning with Musk’s long-term vision of turning the platform into an “everything app.”
  • The launch could expand peer-to-peer payments and digital wallet adoption on X.

In X news, Elon Musk announced that “X Money” is moving from internal beta to a broader rollout. The social media post on March 10, 2026, states: “X Money… will enter early public access next month.”

This implies the platform’s digital wallet feature will be publicly accessible in April 2026. Musk’s statement came as he pushes to transform X into a one-stop app for communication and payments.

The near-term market reaction includes renewed interest in crypto integration, especially Dogecoin speculation and scrutiny over how X’s payments will monetize its large user base.

X News: Elon Musk Fuels Optimism

Elon Musk’s comments confirm a phased rollout schedule. According to reports, as of early 2026, X Money was in closed beta among employees.

On February 11, 2026, he said on an internal all-hands call that X Money would go into “limited external beta” in the next month or two, then worldwide.

Elon Musk Reveals X Money News | Source: X

On March 10, Elon Musk confirmed in a post on X (formerly Twitter) that broader access to X Money is expected in early April.

The rollout now appears to follow a staged approach. A closed beta likely ran through January and February. A small group of outside users appears to have joined in March. Full public access is expected in April 2026.

Key milestones in the rollout:

  • January 2025: X Corp. announced payment infrastructure partnerships, including a deal with Visa to support its financial services expansion.
  • February 11, 2026: Musk said X Money had entered a closed beta phase and would soon expand to a limited group of external testers.
  • Mar 10, 2026: Musk tweets X Money, “Early public access will launch next month.”
  • Apr 2026: Expected broad rollout of X Money public access (per Musk’s timeline)

The feature is often described as the “central source of all monetary transactions” on X. It will allow peer-to-peer transfers and wallet management directly in the X app.

In addition, X’s upcoming Smart Cashtags system (ticker-linked trading) will tie into X Money as a backend wallet. These pieces suggest X Money could be used for everything from paying friends to in-app tipping and content subscriptions, much like China’s WeChat ecosystem.

Regulatory, Banking Partners and Compliance

X Payments LLC, a subsidiary of X Corp., has prepared the regulatory groundwork. The New York Senate noted in May 2025 that X’s website shows X Payments LLC holds money-transmitter licenses in 40 U.S. states plus Washington, D.C.

The payments unit is also registered with the Financial Crimes Enforcement Network. In January 2025, X announced a global tie-up with Visa to route payments over Visa’s network.

However, not all hurdles are cleared. One notable omission: the state of New York was not listed among the licensed jurisdictions.

Notably, New York State was not among the initial licensed states. New York’s Department of Financial Services has expressed concern about licensing, given Musk’s other roles (as detailed in the letter).

X News in Focus

X is working to secure all needed state licenses. The phased launch suggests compliance teams are ensuring safeguards before expanding.

X news coverage notes that clear guidelines on transfers, KYC/AML procedures, and data privacy will be crucial once X Money goes public.

Meanwhile, news of the imminent rollout of X Money has drawn attention from both finance and crypto markets. Some analysts see X’s integration of payments as bullish for digital currencies, especially given Musk’s history with Dogecoin and crypto technology.

In related X news, the rollout accompanies other platform enhancements. In mid-February, X said its Smart Cashtags trading feature is launching soon.

Meanwhile, these combined updates reinforce X’s pivot from social media into fintech. Market watchers have interpreted Musk’s statement as a signal that X is serious about payments.

The limited beta phase should iron out technical issues before a full launch. Historically, major app rollouts can move markets, which has sparked further discussions in the market.

Source: https://www.thecoinrepublic.com/2026/03/11/x-news-x-corp-set-to-roll-out-x-money-public-access-in-april/

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