Перечень криптовалютных новостей за ночь 17 апреля 2025 года

cryptonews.ruОпубліковано о 2025-02-17Востаннє оновлено о 2025-04-17

На рынке цифровых монет наконец-то активизировались покупатели. Это позволило многим основным криптовалютам укрепить позиции. Однако нужно соблюдать осторожность, поскольку обстановка на макроэкономическом поприще остается нестабильной. И, судя по всему, она будет сохраняться до того момента, когда торговая конфронтация между США и Китаем не устранится.

  1. Руководство ФРС об определенных послаблениях криптоограничений для банков
  2. Злоумышленники взломали страницу британской чиновницы в социальных сетях
  3. Правительство Китая распродает конфискованные криптоактивы

Руководство ФРС об определенных послаблениях криптоограничений для банков

Глава Федрезерва Джером Пауэлл отметил, что в перспективе для финансовых учреждений могут ослабить ограничения, связанные с цифровыми монетами. По словам специалиста, американские регуляторы готовы поддерживать инновационные решения в области финансов, но не подвергать рядовых пользователей повышенным рискам. Еще в начале года администрация Дональда Трампа сформировала инициативную группу, которая работает над созданием нормативной базы для регулирования сегментов цифровых активов и стейблкоинов.

Злоумышленники взломали страницу британской чиновницы в социальных сетях

Появилась информация, что хакеры атаковали аккаунт в X депутата парламента Англии Люси Пауэлл. Это было сделано для продвижения мошеннического токена House of Commons Coin. Представители чиновницы сообщили, что были предприняты оперативные меры для ограничения доступа сторонних лиц к аккаунту, а также рекламные посты подверглись удалению. Словом, токен House of Commons Coin не вызвал особого интереса в сообществе, поскольку на пике его капитализация не превысила $24 000.

Правительство Китая распродает конфискованные криптоактивы

По словам журналистов Reuters, руководство КНР реализует ранее конфискованные цифровые монеты через частные корпорации. Ряд юристов выражают опасения, что непоследовательность и непрозрачность подхода к реализации могут способствовать развитию различных коррупционных схем. На текущий момент власти Китая располагают криптоактивами на сумму около $1,4 млрд.

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