DWF Labs открыл офис в США и купил токены WLFI

cryptonews.ruPublished on 2025-02-16Last updated on 2025-04-16

Маркетмейкер DWF Labs открыл офис в Нью-Йорке в рамках выхода на рынок США. Одновременно с этим компания сообщила о покупке токенов DeFi-проекта семьи Трампов World Liberty Financial (WLFI) на $25 млн.

Новый офис позволит укрепить сотрудничество с институциональными партнерами, включая банки, инвестиционные компании и блокчейн-стартапы. DWF Labs также планирует расширить штат сотрудников в США и наладить взаимодействие с местными регуляторами.

Помимо этого, компания намерена участвовать в образовательных инициативах с американскими университетами. DWF Labs сосредоточится на развитии проектов, ориентированных на потребности традиционных финансов.

Покупка WLFI станет частью стратегического партнерства с World Liberty Financial.

Особый акцент сделан на поддержке стейблкоина USD1. DWF Labs предоставит ликвидность для «стабильной монеты», используя свои алгоритмические инструменты на централизованных и децентрализованных платформах.

Сооснователь WLF Зак Фолкман заявил, что сотрудничество с DWF Labs ускорит создание инфраструктуры для нового поколения децентрализованных финансовых услуг.

Напомним, 25 марта World Liberty Financial подтвердил планы по запуску USD1.

7 апреля представители проекта опубликовали консультативное предложение о распределении через аирдроп «небольшого» количества USD1 среди держателей токена WLFI.

DWF Labs запустила фонд на $250 млн для криптопроектов

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