Guilty Verdict for Woman Accused of Laundering Bitcoin Tied to Alleged $6B China Fraud: Bloomberg

CoinDeskPolicyОпубліковано о 2024-03-19Востаннє оновлено о 2024-03-20

Анотація

Police in the U.K. seized over 1.7 billion pounds ($2.2 billion) worth of related bitcoin in 2018.

  • Jian Wen was found guilty of money laundering by a London jury that couldn't reach a decision on two other charges.
  • Jian, who denied the allegations, was previously acquitted of other money laundering charges at a separate trial.

A U.K. citizen was found guilty of laundering huge amounts of bitcoin (BTC) for a Chinese fugitive tied to an alleged $6 billion investment fraud, Bloomberg reported on Wednesday.

Jian Wen, who denied the allegations, helped her former employer launder the funds between 2017 and 2022, a London jury found. The jury couldn't reach a decision on two other charges. The 42-year-old had previously been acquitted of other money laundering charges at a separate trial.

Police in the U.K. seized over 1.7 billion pounds ($2.2 billion) worth of bitcoin related to the alleged fraud in a 2018 operation. Jian Wen was accused of laundering BTC on behalf of her former employer, Yadi Zhang, whose real name is Zhimin Qian.

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Zhimian is said to have duped around 130,000 investors in China in an investment scam that prosecutors estimated brought in almost $6 billion.

Jian will be sentenced on May 10.

Edited by Sheldon Reback.





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