Адреса, связанные с Libra, продолжают выводить средства

cryptonews.ruPublicado a 2025-04-17Actualizado a 2025-11-18

Кошельки, связанные с токеном Libra (LIBRA), продолжают выводить средства в крупном объеме, несмотря на судебные ограничения и расследования. По данным блокчейн-аналитиков Onchain Lens и Nansen, 2 адреса, связанных с проектом, вывели около $4 млн и направили средства на покупку Solana (SOL). Операции были совершены в период высокой волатильности на рынке, что привлекло внимание исследователей.

Сделки зафиксированы на 2 ключевых адресах — «Defcy», и «61yKS». На первом из них находилось $13 млн стейблкоине USDC. В середине ноября на втором кошельке было зафиксировано $44 млн в том же стейблкоине, часть которых была использована для приобретения Solana. Общие объемы покупок составили $61,5 млн при средней цене $135 за токен. Такая активность свидетельствует о переходе инвесторов от высокорисковых мем-токенов к более устойчивым альткоинам.

Ранее суд США наложил арест на $57,6 млн в рамках иска против криптовалютной компании Kelsier Ventures и ее соучредителей в лице Томаса и Хайдена Дэвиса. Их обвинили в том, что они целенаправленно вводили в заблуждение инвесторов, скрывая важные данные. Однако в августе блокировка была снята, поскольку не было доказано причинение «непоправимого вреда», а средства для компенсации были в распоряжении.

Однако действия владельцев кошелька выглядят подозрительно. В момент краха Libra восемь инсайдерских адресов вывели средства на сумму $107 млн, что спровоцировало обвал капитализации проекта почти на $4 млрд за несколько часов.

Аргентинский юрист Грегорио Дальбон направил запрос в Интерпол с просьбой объявить в розыск Хайдена Дэвиса, который был одним из ключевых участников проекта. По его мнению, субъект может скрыться или продолжить распоряжаться крупными суммами, что создает угрозу для расследования.

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