The post Is Trump-Saudi Tokenization the Next Big Power Play? appeared on BitcoinEthereumNews.com. Saudi Arabia is rapidly emerging as a global leader in blockchain technology, particularly in real estate tokenization. The Kingdom recorded over 4,000 commercial blockchain company registrations in 2025, marking 51% year-over-year growth. Recent partnerships span from tokenized hotel developments to digital currency frameworks under Vision 2030. Trump-Saudi Alliance Pioneers Tokenized Hotel Project The Trump Organization and Saudi Arabia’s Dar Global announced the world’s first tokenized hotel development in the Maldives. The project stands out by tokenizing the development phase rather than finished assets, letting investors participate early in the project. The luxury resort will offer around 80 exclusive beach and overwater villas, aiming to open by the end of 2028. This will be the Trump brand’s first Maldives venture, setting a new model for hospitality project financing. Sponsored Sponsored Real estate tokenization breaks ownership into digital tokens on a blockchain. This allows fractional investment in high-value assets while offering more liquidity, lower transaction costs, and transparent digital records. Access to premium real estate, once limited to institutions and large investors, becomes more open to a broader base. Eric Trump, executive vice president of the Trump Organization, highlighted the project’s transformative potential for global real estate investment. The partnership with London-listed Dar Global expands the international reach of both firms and integrates advanced financial technology into hospitality investment. The announcement coincided with Crown Prince Mohammed bin Salman’s visit to Washington, where he raised Saudi Arabia’s US investment commitment from $600 billion to $1 trillion at the US-Saudi Investment Forum. President Trump spoke at the Kennedy Center event, emphasizing the deepening economic partnership. Yet, the timing has heightened scrutiny over potential overlap between Trump family business interests and US foreign policy. Saudi Arabia Accelerates Blockchain Technology and Investment Saudi Arabia’s blockchain ambitions extend well beyond its US ties. In a significant step,… The post Is Trump-Saudi Tokenization the Next Big Power Play? appeared on BitcoinEthereumNews.com. Saudi Arabia is rapidly emerging as a global leader in blockchain technology, particularly in real estate tokenization. The Kingdom recorded over 4,000 commercial blockchain company registrations in 2025, marking 51% year-over-year growth. Recent partnerships span from tokenized hotel developments to digital currency frameworks under Vision 2030. Trump-Saudi Alliance Pioneers Tokenized Hotel Project The Trump Organization and Saudi Arabia’s Dar Global announced the world’s first tokenized hotel development in the Maldives. The project stands out by tokenizing the development phase rather than finished assets, letting investors participate early in the project. The luxury resort will offer around 80 exclusive beach and overwater villas, aiming to open by the end of 2028. This will be the Trump brand’s first Maldives venture, setting a new model for hospitality project financing. Sponsored Sponsored Real estate tokenization breaks ownership into digital tokens on a blockchain. This allows fractional investment in high-value assets while offering more liquidity, lower transaction costs, and transparent digital records. Access to premium real estate, once limited to institutions and large investors, becomes more open to a broader base. Eric Trump, executive vice president of the Trump Organization, highlighted the project’s transformative potential for global real estate investment. The partnership with London-listed Dar Global expands the international reach of both firms and integrates advanced financial technology into hospitality investment. The announcement coincided with Crown Prince Mohammed bin Salman’s visit to Washington, where he raised Saudi Arabia’s US investment commitment from $600 billion to $1 trillion at the US-Saudi Investment Forum. President Trump spoke at the Kennedy Center event, emphasizing the deepening economic partnership. Yet, the timing has heightened scrutiny over potential overlap between Trump family business interests and US foreign policy. Saudi Arabia Accelerates Blockchain Technology and Investment Saudi Arabia’s blockchain ambitions extend well beyond its US ties. In a significant step,…

Is Trump-Saudi Tokenization the Next Big Power Play?

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Saudi Arabia is rapidly emerging as a global leader in blockchain technology, particularly in real estate tokenization. The Kingdom recorded over 4,000 commercial blockchain company registrations in 2025, marking 51% year-over-year growth.

Recent partnerships span from tokenized hotel developments to digital currency frameworks under Vision 2030.

Trump-Saudi Alliance Pioneers Tokenized Hotel Project

The Trump Organization and Saudi Arabia’s Dar Global announced the world’s first tokenized hotel development in the Maldives. The project stands out by tokenizing the development phase rather than finished assets, letting investors participate early in the project. The luxury resort will offer around 80 exclusive beach and overwater villas, aiming to open by the end of 2028. This will be the Trump brand’s first Maldives venture, setting a new model for hospitality project financing.

Sponsored

Sponsored

Real estate tokenization breaks ownership into digital tokens on a blockchain. This allows fractional investment in high-value assets while offering more liquidity, lower transaction costs, and transparent digital records. Access to premium real estate, once limited to institutions and large investors, becomes more open to a broader base.

Eric Trump, executive vice president of the Trump Organization, highlighted the project’s transformative potential for global real estate investment. The partnership with London-listed Dar Global expands the international reach of both firms and integrates advanced financial technology into hospitality investment.

The announcement coincided with Crown Prince Mohammed bin Salman’s visit to Washington, where he raised Saudi Arabia’s US investment commitment from $600 billion to $1 trillion at the US-Saudi Investment Forum. President Trump spoke at the Kennedy Center event, emphasizing the deepening economic partnership. Yet, the timing has heightened scrutiny over potential overlap between Trump family business interests and US foreign policy.

Saudi Arabia Accelerates Blockchain Technology and Investment

Saudi Arabia’s blockchain ambitions extend well beyond its US ties. In a significant step, WhiteBIT, Europe’s top cryptocurrency exchange by traffic, joined royal-backed Durrah AlFodah Holding to build blockchain, digital currency, and data infrastructure in support of Vision 2030. The project will tokenize the Saudi stock market, design a digital currency framework, and grow national data processing centers.

More than 4,000 commercial blockchain companies were registered in 2025, representing 51% year-over-year growth. Saudi Arabia’s digital economy reached SAR495 billion in 2025, accounting for 15% of GDP, according to the Ministry of Communications and Information Technology. Data center capacity increased by 42% in 2023, reaching 290.5 megawatts to meet expanding digital needs.

WhiteBIT serves 8 million users and handled $2.7 trillion in trading during 2024. The partnership positions Saudi Arabia as a regional blockchain leader and shows its commitment to linking crypto technology with traditional finance. The Vision 2030 FinTech Strategy lists blockchain integration and tokenization among its main modernization pillars.

In June, Saudi developer RAFAL partnered with US Web3 firm droppRWA for a real estate tokenization pilot in Riyadh. This allows Saudis to buy shares in premium properties with as little as 1 riyal, or about $0.27. The move aims to democratize access to high-value real estate and bring in foreign institutional investment. Saudi Arabia now hosts 3 million active crypto investors and has seen $48 billion in crypto transactions between July 2023 and June 2024.

Regional Competition Heats Up

Saudi Arabia is not alone in pursuing blockchain leadership in the region. The UAE has already established itself as a crypto hub, with Dubai hosting major exchanges and Abu Dhabi developing its own regulatory framework. The Abu Dhabi royal family is estimated to hold over $700 million in Bitcoin via a state mining operation. This regional competition could accelerate innovation but also fragment standards across Gulf markets.

The Kingdom’s success may hinge on attracting global talent and expertise. Unlike the UAE’s expatriate-driven model, Saudi Arabia faces challenges in building a domestic blockchain workforce. How quickly the Kingdom can develop local expertise will determine whether these ambitious projects deliver lasting results.

Source: https://beincrypto.com/trump-saudi-tokenized-real-estate-investment/

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