Barry Sternlicht Says U.S. Crypto Regulations Are Blocking Starwood’s Real Estate Tokenization Plans

TheNewsCryptoPublicado em 2026-02-19Última atualização em 2026-02-19

Resumo

Barry Sternlicht, founder and CEO of Starwood Capital, stated that his firm is prepared to tokenize real estate but is being blocked by unclear U.S. crypto regulations. Speaking at the World Liberty Forum, he described tokenization—converting physical asset ownership into digital tokens on a blockchain—as a "fantastic" innovation that represents the future of finance. It enables fractional ownership, improves liquidity, increases transparency, and allows smaller investors to participate. However, Sternlicht emphasized that regulatory uncertainty is the major obstacle preventing large firms from entering the market. Deloitte estimates that up to $4 trillion in real estate could be tokenized by 2035, signaling significant potential growth if clear regulations are established.

Barry Sternlicht, who was the founder and CEO of Starwood Capital, says his company is ready to tokenize real-world assets, but U.S. regulations are blocking it. His company manages more than $125 billion in assets. He shared his plans on RWA and made comments on the current U.S. rules on crypto at the World Liberty Forum in Florida.

What Tokenization means

Tokenization is a process of turning the ownership of physical assets into digital tokens in the blockchain. Instead of buying an entire building, an investor could buy a small portion in a digital share that can be traded more easily. Supporters say tokenization for the large firms could make it easier to raise money and allow small investors to participate. It also reduces the paperwork and improves transparency.

Currently, the U.S. has not fully adopted tokenization in real estate. Consulting firm Deloitte estimates that $4 trillion worth of real estate could be tokenized by 2035, and Proppy has also announced a plan to expand its blockchain-based real estate services. In 2024, less than $0.3 trillion of real estate was tokenized, which signals that the market could grow significantly over the next decade.

According to Sternlicht, he described tokenization as “fantastic” and said it represents the future of finance. He compared tokenization to artificial intelligence but said it is still at an early stage of development. He said the biggest challenge is the lack of clear U.S. regulation around digital assets and tokenized securities, which creates uncertainty for large financial firms.

Sternlich’s statement shows that the U.S. regulations are the major issue that blocks large firms from entering the real estate tokenization. If the U.S. lawmakers provide clear rules, then tokenized RWA could become a major market in the upcoming years.

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Perguntas relacionadas

QWhat is Barry Sternlicht's main concern regarding real estate tokenization in the U.S.?

ABarry Sternlicht's main concern is that the lack of clear U.S. regulations around digital assets and tokenized securities is blocking large financial firms, including his company Starwood Capital, from entering the real estate tokenization market.

QHow does tokenization work for real estate assets?

ATokenization is the process of converting ownership of physical real estate assets into digital tokens on a blockchain. This allows investors to buy small digital shares of a property rather than the entire building, making it easier to trade, raise funds, and enable participation from small investors while reducing paperwork and improving transparency.

QWhat is the estimated potential value of tokenized real estate by 2035 according to Deloitte?

AConsulting firm Deloitte estimates that up to $4 trillion worth of real estate could be tokenized by 2035.

QHow much real estate was tokenized in 2024, and what does this indicate?

AIn 2024, less than $0.3 trillion of real estate was tokenized, which indicates significant growth potential for the market over the next decade.

QWhat did Sternlicht compare tokenization to, and what stage of development did he say it is in?

ASternlicht compared tokenization to artificial intelligence (AI) but stated that it is still at an early stage of development.

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