Celsius Network хочет отсудить у Tether как минимум $3,6 млрд

investing.ruОпубліковано о 2024-08-11Востаннє оновлено о 2024-08-11

Happycoin.club - Закрывшаяся криптовалютная компания Celsius Network планиурет отсудить у эмитента стейблкоинов Tether (USDT) компании Tether как минимум $3,6 млрд.

9 августа Celsius Network подала иск в суд в американском штате Нью-Йорк, в котором обвинила Tether в нарушении договора. Как утверждают истцы, во время процедуры банкротства Tether выдала Celsius Network кредит в USDT под залог 39 542,42 BTC.

Из-за последовавшего падения курса биткоина Celsius Network должна была увеличить размер залога, чтобы избежать ликвидации криптовалюты. Однако сотрудники Tether якобы продали биткоины для покрытия задолженности, не дав Celsius Network время на перевод дополнительных монет.

Представители Tether считают себя невиновными, потому что, по их словам, работники Celsius Network сами попросили избавиться от биткоинов. Дескать, они не перевели BTC, как того требовали условия соглашения, и предложили продать залоговые цифровые активы в счёт погашения займа.

На сайте Tether указано, что Celsius Network просит взыскать с ответчика $2,4 млрд. Однако в исковом заявлении говорится о том, что истцы требуют вернуть им в общей сложности 57 428,64 BTC стоимостью $3,5 млрд по текущему курсу. Кроме того, они хотят, чтобы Tether покрыла ущерб на сумму не менее $100 млн и юридические расходы.

Сотрудники Tether поспешили успокоить владельцев стейблкоинов и сообщили, что даже в случае крайне маловероятного поражения в суде против Celsius Network, клиенты компании не пострадают. Очевидно, они имеют в виду, что курс USDT не отвяжется от «законного» $1, если фирме предпишут выплатить деньги истцам.

Читайте оригинальную статью на сайте Happycoin.club

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