Депутат Гонконга призвал правительство включить биткоин в резервы

investing.ruОпубліковано о 2024-12-30Востаннє оновлено о 2024-12-30

GetBlock Magazine - Что произошло? Законодатель Гонконга Ву Цзе призвал правительство специального административного района КНР рассмотреть возможность включения биткоина в финансовые резервы. Он отметил, что интерес к BTC уже проявляют ведущие экономики мира, а ограниченное предложение криптовалюты позволяет ей конкурировать с традиционными активами, при этом предлагая защиту от инфляции.

Материал CryptoSlate

Что еще известно? Признавая волатильность биткоина, чиновник посоветовал правительствам и предприятиям выделять на этот актив лишь небольшой процент своих резервов. Он подчеркнул, что стратегическая интеграция актива может принести пользу финансовым системам, не подвергая их ненужному риску.

Дискуссию о возможности интеграции цифровых активов ранее в этом году начал законодатель Джонни Нга.

В своем отчете о финансовой стабильности за 2024 год ЦБ Китая высоко оценил достижения Гонконга в интеграции цифровых активов.

Признание материкового Китая подчеркивает значительные успехи Гонконга в развитии регулирования. В этом году Гонконг отдал приоритет регулированию стейблкоинов и криптобирж , что помогло закрепить его лидерство в экосистеме цифровых активов Азии.

Читайте оригинальную статью на сайте GetBlock Magazine

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