Sony подала заявку на получение банковской лицензии в США

cryptonews.ruPublished on 2025-05-15Last updated on 2025-10-16

  • Дочерняя организация Sony Bank подала заявку на получение лицензии трастового банка в OCC.
  • Среди прочего, Connectia Trust планирует выпустить собственный стейблкоин с привязкой к американскому доллару.
  • Это не первая компания, которая хочет получить статус трастового банка.

Компания Connectia Trust, дочернее подразделение Sony Bank, подала в Управление валютного контроллера (OCC) заявку на получение банковской лицензии (National Trust Charter), по данным Law360. Среди прочего, фирма намерена выпустить собственный стейблкоин.

Судя по официальному сайту OCC, заявка была получена 7 октября 2025 года. Сбор комментариев от регулятора продлится до 7 ноября. В случае получения лицензии фирма сможет предоставлять различные финансовые услуги, но планирует сконцентрироваться на криптовалютных.

«К ним относятся выпуск стейблкоинов, привязанных к доллару, и поддержание соответствующих резервных активов, предоставление услуг по нефидуциарному хранению цифровых активов и предоставление услуг по управлению активами в качестве фидуциария определенным аффилированным лицам».

Sony Bank принадлежит Sony Group, международному конгломерату, куда входят множество других компаний. На момент написания ни контрагент, ни OCC никак не прокомментировали ситуацию.

Пока что единственной организацией, которая получила лицензию Управления, является Anchorage Digital Bank. Контрагент прошел регистрацию еще в 2021 году, но в 2022 году получил от OCC приказ о прекращении деятельности. Его сняли только в августе 2025 года.

Помимо Sony, еще ряд компаний подали заявки на получение лицензии трастового банка. Это, в частности, биржа Coinbase и Ripple Labs, разработчик XRP Ledger.

Обе компании не намерены вести банковскую деятельность, а соответствующая лицензия нужна для внедрения новых продуктов, упрощения взаиморасчетов и оптимизации деятельности в регуляторном поле США.

Несмотря на это, Американская банковская ассоциация выступила против этой практики, призвав OCC ответить отказом на соответствующие заявки. В организации отметили, что криптокомпании не соответствуют жестким требованиям для получения такой лицензии.

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