Комиссия по ценным бумагам отозвала апелляцию по делу Ripple

investing.ruPublicado em 2025-03-20Última atualização em 2025-03-20

Речь об апелляции на решение суда 2023 года, согласно которому выпускаемые компанией и продаваемые на вторичном рынке монеты XRP не являются ценными бумагами.

Генеральный директор Ripple Брэд Гарлингхаус (Brad Garlinghouse) назвал отзыв жалобы позитивным событием для всей криптоиндустрии и личной победой, поскольку в иске регулятора фигурировал и он сам. По словам бизнесмена, теперь компания обдумывает, стоит ли отзывать свою апелляцию.

Речь об административном штрафе на сумму $125 млн, который власти наложили на Ripple за продажи XRP институциональным инвесторам. Сумма остается на эскроу-счете, пока компания обдумывает дальнейшие шаги. Гарлингхаус заявил, что Ripple была бы не прочь вернуть эти деньги, отметив, что штраф связан с продажами, совершенными в 2015 и 2016 годах. Он считает, что в деле не говорилось о каком-либо ущербе для инвесторов, поэтому на компанию не должен был налагаться штраф.

«Мы переходим от статуса ответчика к статусу истца. Подумаем, стоит ли отзывать апелляцию. Намного лучше быть в нападении, чем в защите», — сказал Гарлингхаус.

По его словам, за последние четыре года Ripple потратила на судебные издержки более $150 млн. Он верит, что с нынешней администрацией Белого дома «нормативный климат» в стране изменился к лучшему.

«При администрации Джо Байдена мы не могли встретиться с чиновниками в Белом доме. Теперь нас там приветствуют, и это колоссальные изменения. Новая администрация стремится вернуть криптоиндустрию в США, а не вытеснять ее за границу», — доволен Гарлингхаус.

В прошлом году Департамент финансовых услуг Нью-Йорка (NYDFS) одобрил запуск торгов стейблкоином RLUSD. Аналогично XRP, выпускаемый Ripple RLUSD должен использоваться для международных транзакций, объяснил Гарлингхаус.

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