RWA Inc., a Real World Asset (RWA) tokenization company, has announced its landmark partnership with Farhan Qadir, Founder and CEO of Nexus Worldwide Group. FarhanRWA Inc., a Real World Asset (RWA) tokenization company, has announced its landmark partnership with Farhan Qadir, Founder and CEO of Nexus Worldwide Group. Farhan

RWA Inc. Unlocks a Global Door for OnChain Assets in the UAE

2026/01/28 10:00
2 min read
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RWA Inc., a Real World Asset (RWA) tokenization company, has announced its landmark partnership with Farhan Qadir, Founder and CEO of Nexus Worldwide Group. Farhan Qadir is also a famous former CEO of Color Star Technology (NASDAQ) and a recognized leader in cross-border collaboration. The main purpose behind this high-level partnership is to officially functionalize the utility of real-world assets (RWA) for the nomination of property in Dubai.

Farhan Qadir has earned a good reputation in different domains, by practically proven to be a valuable asset for Dubai. In addition, he is also a strategic advisor and trusted partner to Sheikh Awad Mohammed Bin Sheikh Mujrin, supporting direct engagement with senior government officials of the UAE. RWA Inc. has released this news through its official social media X account.

Farhan Qadir Brings Licensed UAE Expertise to Advance RWA Adoption

Farhan Qadir also has a great experience in the field of global investments and has been fully supported by the issuance of a UAE license for international partnerships. This collaboration basically empowers the strong position of RWA in Dubai after getting official approval form government. Furthermore, this partnership is also beneficial for both partners, giving a new experience to elite royal and government access.

Sheikh Awad Mohammad Bin Sheikh Mujrin’s step toward RWA adoption worked as a source of inspiration for Farhan Qadir. Dubai has become a business hub for every field of life and is also known as one of the most fascinating spots for tourists, which plays a vital role in the development of the UAE. There is a favorite place for a huge number of royal families.

RWA Inc. and Dubai: Shaping the Future of Institutional Crypto Adoption

The collaboration of RWA Inc. and the UAE is entirely based on a much more advanced level and is successfully able to fill the gap between traditional global capital and the future of on-chain assets. On the other hand, it is a global gateway for the RWA Inc. ecosystem and plays an important role in the development of institutional leadership.

In short, both strategic partners are going to make Dubai the most advanced place, along with the adoption of current cryptocurrencies. RWA is excessively used in the entire world as a token of wealth and improved the traditional way of holding assets in this advanced world. Gradually, RWA Inc. is getting a strong position in the market with modern features.

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