DL Holdings to Tokenize Animoca Brands SPVs on XRP Ledger

TheCryptoTimesPublicado em 2025-10-09Última atualização em 2025-10-09

DL Holdings Group Limited, a Hong Kong-listed company, is advancing its plans to tokenize private equity interests in Animoca Brands through a limited partnership fund (LPF).

As per the announcement, the program will use the XRP Ledger and has been approved under Hong Kong’s Cyberport “Blockchain & Digital Asset Pilot Subsidy Scheme” as of September 2025.

DL Holdings has invested approximately $5.7 million in several technology companies, including ByteDance, Kraken, and eSelf AI, through special investment vehicles.

The group holds an indirect stake of around $2 million in ByteDance. It also invested about $3 million in Kraken, a global cryptocurrency exchange, and $0.7 million in eSelf AI, a company developing AI-driven video assistants and digital avatars.

The firm intends to tokenize these stakes in the future using special investment funds, so the ownership structure can be digitally represented on the blockchain. No decisions have been made yet on whether these tokens will be distributed to investors.

Tokenization of DL Tower 

In addition to these tech investments, DL Holdings is also progressing with tokenizing its limited partnership interests in DL Tower, a commercial property in Central, Hong Kong. 

The company’s subsidiaries have submitted updated business plans and supporting documentation to the Hong Kong Securities and Futures Commission (SFC) for regulatory approval.

The filing indicates that the group “anticipates progressing the DL Tower LPF RWA tokenisation to the implementation phase of tokenization technology deployment and compliance procedures within the fourth quarter of 2025, with a view to commencing token distribution and platform operations in early 2026.”

DL Holdings emphasized that these tokenization initiatives are still in the early stages. Owning the tokens does not mean direct ownership of the underlying assets. There may also not be an active market to trade the tokens at this stage. All projects are still pending regulatory approvals and licensing.

Also Read: XRP faces Technical Breakdown Pressure As Liquidation Surges 4335%


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