Власти Китая выдали ZA Bank первую в истории Гонконга криптолицензию

cryptonews.ruPublicado em 2022-12-31Última atualização em 2024-09-30

Цифровой банк ZA Bank получил одобрение Комиссии по регулированию ценных бумаг Китая, позволяющее этой кредитно-финансовой организации выполнять операций с виртуальными активами.

Представитель ZA Bank заявил, что компания станет первым цифровым банком Гонконга, особой административно-экономической зоны КНР, которому будет разрешено совершать операции с криптовалютами. Решение, которое позволило банку выйти на рынок цифровых активов Гонконга, было принято после годового обсуждения правил и условий обслуживания с государственными регуляторами материкового Китая и Комиссией по ценным бумагам и фьючерсам Гонконга (SFC).

«Банк планирует развивать услуги криптовалютного инвестиционного фонда и действовать в соответствии с правилами регулирования рынка цифровых активов, установленными финансовыми регуляторами Китая и Гонконга», — заявили в ZA Bank.

ZA Bank стал одним из первых банков Гонконга, полностью работающих в онлайн-формате. Банк принадлежит крупнейшему оператору онлайн-страхования ZhongAn Technologies International Group, созданному в 2013 году усилиями интернет-гигантов Alibaba, Tencent и Ping An Insurance. В рекламе ZA Bank позиционируется как банк для молодого поколения, предлагающий услуги в том числе в области криптовалют и цифровых финансов.

Ранее ZA Bank заявил, что после получения лицензии Денежно-кредитного управления Гонконга (HKMA) он будет готов к обслуживанию компаний, выпускающих собственные стейблкоины, и открытию счетов доверительного хранения криптоактивов.

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