Vietnam is preparing to restrict foreign crypto exchanges while launching licensed local platforms to tighten control over its rapidly growing digital asset marketVietnam is preparing to restrict foreign crypto exchanges while launching licensed local platforms to tighten control over its rapidly growing digital asset market

Vietnam Tightens Crypto Rules with Ban on Foreign Exchanges

2026/03/18 20:07
4 min read
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Vietnam is preparing to restrict foreign crypto exchanges while launching licensed local platforms to tighten control over its rapidly growing digital asset market.

Key Takeaways

  • Vietnam plans to block foreign crypto exchanges and require users to trade on licensed local platforms.
  • Five companies cleared initial screening for domestic exchange pilot program.
  • Government aims to improve taxation, transparency, and capital flow control.
  • Restrictions could push some users toward decentralized platforms.

What Happened?

Vietnam is moving to ban access to foreign cryptocurrency exchanges while fast tracking a pilot program for locally licensed platforms. The initiative reflects growing concern among officials about capital outflows and lack of oversight in the country’s booming crypto market.

Government Moves to Restrict Foreign Platforms

Vietnam’s Ministry of Finance is drafting rules that could block access to overseas exchanges such as Binance and OKX. The move is part of a broader strategy to tighten control over digital asset trading and align crypto activity with existing restrictions on cross border capital flows.

Authorities are increasingly concerned that widespread use of crypto and stablecoins could undermine financial stability and weaken monetary control. Vietnam already maintains strict rules on money leaving the country, and crypto has emerged as a workaround for many users.

The government also wants to improve tax enforcement and transaction monitoring, ensuring that all trading activity can be tracked within regulated systems. A proposal under discussion includes a 0.1 percent tax on each crypto trade or transfer conducted on licensed platforms.

Pilot Program to Launch Local Crypto Exchanges

To support this shift, Vietnam is preparing to roll out a pilot program for domestic cryptocurrency exchanges, potentially as early as March. The initiative follows a government resolution issued in February aimed at building a regulated and locally controlled crypto ecosystem.

Five firms have already passed an initial screening round. These include affiliates linked to Techcombank, VPBank, and LPBank, along with VIX Securities and the Sun Group conglomerate.

The goal is to keep transaction fees within the country, strengthen local financial infrastructure, and encourage innovation under government supervision. Regulated exchanges will be expected to meet standards for compliance, taxation, and risk management.

Vietnam had already taken a major step last year by officially recognizing digital and crypto assets under a new legal framework, signaling its intention to both regulate and support the sector.

Rapid Growth Raises Regulatory Concerns

Vietnam has emerged as one of the most active crypto markets globally. According to Chainalysis, the country ranks fourth in the Global Crypto Adoption Index, with users moving an estimated 200 billion dollars in crypto transactions in the year through June 2025.

Limited domestic investment options have played a key role in this growth. Many households turn to crypto, gold, and real estate as alternative stores of value. This trend has also contributed to rising gold prices above global levels and increased housing speculation.

Officials now see the need to bring this fast growing market under tighter control before risks escalate further.

Risk of Shift Toward Decentralized Platforms

While the government aims to channel trading into regulated local platforms, experts warn that restricting foreign exchanges may not reduce crypto activity. Instead, users could shift toward decentralized exchanges, peer-to-peer networks, and non-custodial wallets.

Similar trends have been observed in other countries where strict controls pushed traders to alternative systems that are harder to monitor.

Phan Duc Trung, chairman of the Vietnam Blockchain and Digital Assets Association, noted that while regulated platforms can support the economy, the legal framework still needs further development, especially around taxation and compliance.

CoinLaw’s Takeaway

In my experience, this looks like a classic balancing act between control and innovation. Vietnam clearly does not want to shut down crypto, but it wants to own the rails on which it runs. I found this approach practical, especially for a country already seeing massive adoption.

That said, I strongly believe users will not simply stop using global platforms. If restrictions become too tight, many will move to decentralized options, making enforcement even harder. The success of this strategy will depend on how attractive and user friendly local exchanges actually become.

The post Vietnam Tightens Crypto Rules with Ban on Foreign Exchanges appeared first on CoinLaw.

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