Bastion привлек $14,7 млн инвестиций от подразделений Sony, Samsung и a16z

cryptonews.ru2025-04-24 tarihinde yayınlandı2025-09-25 tarihinde güncellendi

  • Стартап Bastion закрыл раунд финансирования на $14,7 млн.
  • Проект предлагает инфраструктуру для запуска стейблкоинов.
  • Среди инвесторов — венчурные фонды Sony, Samsung, Andreessen Horowitz и Hashed.
  • В целом Bastion получил уже $39,6 млн инвестиций.

Стартап Bastion, который специализируется на создании инфраструктуры для запуска стейблкоинов, провел раунд финансирования на $14,7 млн. Участие в нем приняли венчурные подразделения Sony и Samsung, а также Andreessen Horowitz и Hashed. Об этом сообщило издание Fortune.

В заявлении сказано, что компания позволяет запускать стейблкоины, привязанные к фиатным валютам. Кроме того, клиенты могут создавать токены под собственным брендом, что, по словам инвесторов, значительно упрощает выход на рынок.

Bastion не раскрывает оценку, по которой состоялся последний раунд. Известно, что в 2023 году стартап привлек $25 млн посевного финансирования.

Старший директор по инвестициям венчурного фонда Sony Людовик Копере заявил:

«Мы считаем, что Bastion прекрасно позиционирован, чтобы стать своего рода “клеем” и двигателем для многих корпораций и организаций, которые стремятся запускать, управлять и эксплуатировать свои стейблкоины».

Известно, что Bastion предлагает не только эмиссию токенов, но и дополнительные сервисы — кошельки, механизмы конвертации в фиатные валюты и поддержку операций в более чем 70 странах.

СЕО компании Нассим Эдекьюак подчеркнул, что он «очень взволнован следующими, скажем, восемью-девятью месяцами развития компании».

Ранее мы сообщали, что финтех-компания RedotPay достигла статуса единорога после завершения раунда на $47 млн.

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