$500M UAE Funds In Trump-Linked Project Draw Congressional Inquiry

bitcoinistPublicado a 2026-02-05Actualizado a 2026-02-05

Resumen

Congressman Ro Khanna has initiated a congressional inquiry into a $500 million investment from an Abu Dhabi-linked group into World Liberty Financial, a cryptocurrency venture connected to the Trump family. As ranking member of the House Select Committee on Strategic Competition, Khanna is demanding extensive records to trace the flow of funds, determine ownership structures, and investigate whether any payments reached Trump-linked entities. He raised national security concerns, noting the investment's timing coincided with U.S. policy shifts approving advanced AI chip exports to the UAE. President Trump has denied awareness of the deal, stating his sons handle such business matters. The investigation focuses on potential foreign influence on policy and the financial transparency of the transaction.

United States Rep. Ro Khanna has opened a focused inquiry into a reported $500 million investment by an Abu Dhabi-linked group in World Liberty Financial, a crypto venture tied to the Trump family.

Reports say Khanna has asked the company for a wide set of records and is pressing for clarity about who owns what, how money moved, and whether any of it flowed to entities tied to US President Donald Trump’s family.

Trump Deal: Khanna Seeks Records And Payment Trails

In a formal letter to World Liberty Financial co-founders, Khanna demanded ownership documents, capitalization records, bank transfer data, board materials and internal communications related to the deal.

The letter sets a compliance timeline and tells the firm to preserve relevant materials while investigators review. The request makes clear the committee wants to trace any payments linked to the deal.

Khanna Leads The Push On National Security Questions

Khanna, as the ranking member of the House Select Committee on Strategic Competition, framed the inquiry as more than bookkeeping.

He linked the timing of the investment to policy moves involving exports of advanced AI chips to the UAE and said that raises national security questions.

The lawmaker wants to know whether foreign money had any influence on policy choices that affect US strategic competition.

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Link To AI Chip Exports Questioned

Reports note that the UAE-linked deal was struck shortly before a notable change in US export approvals for certain AI semiconductors, and Khanna asked officials to explain any overlap between the transaction and those policy shifts.

He also flagged concerns about the role of WLFI’s USD1 stablecoin in large crypto transactions and whether such flows had other downstream effects. Those lines of inquiry aim to connect financial moves to policy outcomes.

Trump Denies Knowledge Of Deal

US President Donald Trump has said he was not aware of the deal and that his family’s businesses operate separately, according to recent media coverage.

World Liberty Financial has described the transaction as a private business matter. Media outlets reporting on the story have highlighted the reported size of the stake — roughly a near-half ownership — and the fact that the payment was disclosed only after press reports surfaced.

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Preguntas relacionadas

QWhat is the main focus of Congressman Ro Khanna's inquiry?

ACongressman Ro Khanna's inquiry focuses on a reported $500 million investment by an Abu Dhabi-linked group in World Liberty Financial, a crypto venture connected to the Trump family. He is seeking records to trace the money flow and determine if any funds went to entities tied to President Trump's family.

QWhat specific documents did Rep. Khanna demand from World Liberty Financial?

ARep. Khanna demanded ownership documents, capitalization records, bank transfer data, board materials, and internal communications related to the deal from World Liberty Financial co-founders.

QHow did Rep. Khanna link this financial deal to national security concerns?

AKhanna linked the investment's timing to U.S. policy moves involving exports of advanced AI chips to the UAE, raising questions about whether foreign money influenced policy choices affecting U.S. strategic competition.

QWhat was President Trump's response to the reported investment?

APresident Trump stated that he was not aware of the deal and mentioned that his family's businesses operate separately, suggesting his sons were handling the investments.

QWhat additional concern did Khanna raise about World Liberty Financial's operations?

AKhanna raised concerns about the role of WLFI's USD1 stablecoin in large cryptocurrency transactions and questioned whether such financial moves had downstream impact on policy outcomes.

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