Проект WLFI добавил поддержку рестейкинга для стейблкоина USD1

cryptonews.ruPublicado em 2024-12-29Última atualização em 2025-05-29

Связанный с Трампом проект WLFI сделал USD1 первым стейблкоином для рестейкинга

Проект WLFI, поддерживаемый семьей Дональда Трампа, анонсировал интеграцию своего стейблкоина с Kernel DAO. Это стало первым случаем, когда USD1 применяется для обеспечения безопасности сторонних децентрализованных приложений.

Теперь пользователи могут не просто держать стейблкоин, но и отправлять его в рестейкинг — то есть делегировать для участия в механизмах безопасности Kernel DAO. При этом актив продолжает приносить доходность, а сеть получает дополнительный уровень защиты.

Новая роль для стейблкоинов

USD1 — это стабильный токен, обеспеченный казначейскими облигациями США. Интеграция с Kernel DAO превращает его из пассивного средства сбережения в активный инструмент валидации в блокчейн-инфраструктуре.

Это особенно важно на фоне тренда на рестейкинг — концепции, в рамках которой не только ETH, но и другие активы могут использоваться для обеспечения безопасности протоколов. Kernel DAO как раз специализируется на модульной безопасности, позволяя различным активам участвовать в консенсусе.

Читать также: Норвежская K33 добавила биткоин в казначейство: компания купит BTC на $6,2 млн

От политического бренда к реальной DeFi-инфраструктуре

WLFI начинался как политически заряженный проект, тесно связанный с фигурой Дональда Трампа. Однако недавние шаги проекта — запуск собственного stablecoin USD1, выход на рынок децентрализованных финансов и теперь интеграция с Kernel DAO — демонстрируют переход к более технологичному позиционированию.

Интеграция открывает новые источники дохода для держателей USD1, укрепляет доверие к активу и поднимает WLFI на новый уровень в экономике рестейкинга.

Что дальше?

Если тренд на рестейкинг продолжит набирать обороты, такие активы, как USD1, могут стать ключевыми элементами новой финансовой инфраструктуры. А WLFI — занять прочную позицию в пересечении политики, Web3 и DeFi.

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