Криптo Rally сорвано отчетом Министерства юстиции США о расследовании Tether

cryptonews.ruPublicado em 2022-10-25Última atualização em 2024-10-25

Цены на Криптовалюта снизились после первоначальных успехов и в пятницу днем ​​в США в целом снизились после сообщения Wall Street Journal о том, что США расследуют деятельность эмитента стейблкоинов Tether на предмет нарушения санкций и правил борьбы с отмыванием денег.

Стейблкоины — это тип Криптовалюта , стоимость которой привязана к другому активу, обычно к доллару США. С рыночной капитализацией более 120 миллиардов долларов, Tether (USDT) на сегодняшний день является наиболее широко используемым стейблкоином.

Ранее в ходе сессии Курсы криптовалют росли, Bitcoin (BTC) приближался к уровню $69 000 и, возможно, готовился к испытанию конца дня или выходных, превысив $70 000 впервые за три месяца. В течение нескольких минут после новостей о Tether Bitcoin упал до минимума $66 500, снизившись почти на 2% за последние 24 часа, прежде чем скромно отскочить обратно до $66 800. Более широкий рыночный индикатор CoinDesk 20 Index снизился на 2,3% за тот же период времени.

Вскоре после этой истории главный Технологии директор Tether Паоло Ардоино заявил, что WSJ «пережевывает старый шум». Ардоино заявил, что нет никаких признаков того, что Tether находится под следствием.

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