Комиссия по ценным бумагам США отложила решение о запуске биткоин-эфир-ETF

investing.ruОпубліковано о 2024-08-12Востаннє оновлено о 2024-08-12

Продукт компании Hashdex, учитывающий изменения рыночной стоимости сразу двух флагманских криптоактивов, мог стать первым универсальным ETF на американском рынке. Однако квалификационная группа экспертов SEC посчитала запуск финансового продукта преждевременным и требующим дополнительного изучения.

«Комиссия считает целесообразным установить более длительный период для принятия регуляторных мер по предлагаемому изменению правил выпуска ETF, чтобы у иметь достаточно времени для рассмотрения последствий решения», — заявили в SEC.

На момент подачи заявления о согласовании выпуска универсального ETF компания Hashdex уведомила регулятора, что ее фонд будет отслеживать Индекс расчетных цен криптовалюты США (NCIUSS) на Nasdaq. А компании Coinbase (NASDAQ:COIN) Custody и BitGo будут держателями BTC и ETH.

Ранее руководитель отдела исследований цифровых активов VanEck Мэтью Сигел (Matthew Sigel) заявил, что в ближайшем времени инвесторам может быть предложен биржевой фонд, привязанный к криптовалюте Solana.

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