Tether made a significant regulatory announcement regarding the approval in the Abu Dhabi Global Market of USD₮ as a valid fiat value-backed token. This approval applies to well-known blockchain platforms such as Aptos, Celo, Cosmos, Kaia, Near, Polkadot, Tezos, TON, and the TRON platform. This implies that the respective individual has the right to perform […]Tether made a significant regulatory announcement regarding the approval in the Abu Dhabi Global Market of USD₮ as a valid fiat value-backed token. This approval applies to well-known blockchain platforms such as Aptos, Celo, Cosmos, Kaia, Near, Polkadot, Tezos, TON, and the TRON platform. This implies that the respective individual has the right to perform […]

Tether’s USD₮ Approved by ADGM for Use Across Several Major Blockchains

  • ADGM recognizes USD₮ on several new blockchains as an accepted fiat-referenced token.
  • The approval expands regulated access for financial institutions in Abu Dhabi.
  • Tether strengthens its role in the UAE’s fast-growing digital-asset ecosystem.

Tether made a significant regulatory announcement regarding the approval in the Abu Dhabi Global Market of USD₮ as a valid fiat value-backed token. This approval applies to well-known blockchain platforms such as Aptos, Celo, Cosmos, Kaia, Near, Polkadot, Tezos, TON, and the TRON platform. This implies that the respective individual has the right to perform a regulated activity through USD₮ with these platforms.

The move comes after several months of consultation and engagement between Tether and the FSRA. Tether has emphasized its commitment to resilience and reporting transparency throughout the review period.

This has contributed significantly to the wider acceptance of the stablecoin in one of the most favorable digital asset regulatory regimes in the world. This means that the ADGM institutions will be able to leverage the wider blockchain environment through the stablecoin regulatory framework in place.

Also Read: CoinShares Counters Tether Solvency Fears With Fresh Reserve Data

Reinforcing Abu Dhabi’s Position in Digital Finance

The approval is a further move in ADGM’s plan to establish Abu Dhabi as a center for compliant activity in digital assets worldwide. The UAE is pressing ahead to establish regulatory certainty, and this development gives a further boost to the process.

For Tether, the accomplishment is in keeping with the long-term aim of Tether to improve financial inclusion and blockchain usability. The company cited the importance of stablecoins in the current state of finance and the improvement in usability options now that the stablecoins are available across multiple chains.

The approval also builds upon the previously existing regulatory acknowledgment of the stablecoin USD₮ upon the Ethereum, Solana, and Avalanche chains. The ADGM has created an identical basis for the stablecoin USD₮ across the various chains through the latest approval, thus bringing the stablecoin’s regulatory existence close to each of the supported chains.

Strengthening Interoperability and Market Confidence

The inclusion enhances the usability of the USD₮ instrument in a broad spectrum of ecosystems. The interoperability is enhanced for decentralized applications, trading platforms, and institutional service providers. The networks that are approved satisfy the AFRT to ensure standardized monitoring and security measures are applied to the supported blockchain networks.

This is a result of the increased coordination between innovators and regulators in the region. ADGM is committed to aligning the development of technology with high levels of compliance. The involvement of Tether enhances this process by providing infrastructure for the facilitation of value transfer across chains in a safe and liquid manner.

The presence of USD₮ within the ADGM-regulated ecosystem aligns with the UAE’s plans to embrace blockchain in the financial sector. It gives the UAE access to more tools to be used in the digital asset sector, thus promoting growth in the sector.

Also Read: Tether CEO Slams S&P Downgrade, Says USDT Stronger Than Critics Claim

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