Tether заблокировал счета Garantex на 2,5 млрд рублей: что происходит?

cryptonews.ruPublicado em 2024-05-06Última atualização em 2025-03-06

Криптовалютная биржа Garantex столкнулась с серьезными ограничениями: сервис Tether заморозил кошельки площадки на сумму более 2,5 млрд рублей. В связи с этим биржа объявила о временной приостановке всех услуг, включая вывод криптовалют, пока команда ищет пути решения проблемы.

«Мы боремся и не сдадимся!» — заявили представители Garantex, отметив, что действия Tether угрожают всему российскому крипторынку, а USDT на российских кошельках сейчас находится под риском блокировки.

Этот шаг стал новым ударом по Garantex, который ранее уже сталкивался с санкциями. В апреле 2022 года биржу внесли в санкционные списки США, а в феврале 2025 года — в санкционный список ЕС за якобы «связь с российскими банками». Тем не менее тогда представители площадки заверили пользователей, что сервисы продолжат работать в обычном режиме.

Нынешние ограничения от Tether ставят под вопрос дальнейшую работу Garantex, однако команда платформы заявляет, что предпринимает все возможные меры для выхода из кризисной ситуации.

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