Иван Чебесков: В реестр майнеров включено около 30% участников отрасли

cryptonews.ruPublished on 2025-10-14Last updated on 2025-10-14

Замминистра финансов Иван Чебесков в рамках форума «Цифровые финансы: новая экономическая реальность» заявил, что пока в реестр майнеров включено около 30% участников отрасли и прорабатываются меры для увеличения этого показателя.

По словам Чебескова, совместно с Федеральной таможенной службой обсуждается амнистия для оборудования, завезенного по параллельному импорту. Одновременно разрабатывается законопроект, предлагающий установить ответственность за незаконный майнинг криптовалют.

«Мы ориентируемся на запросы рынка. Он зачастую лучше знает, в каком направлении развиваться. Нужна своя инфраструктура, в том числе для майнинга и всего, что связано с криптовалютами. Поэтому мы начали такую инфраструктуру развивать совместно с Банком России в рамках запущенных экспериментальных правовых режимов (ЭПР)», — уточнил чиновник.

Он подчеркнул, что важная составляющая такой инфраструктуры — возможность участия в организованных торгах — уже заложена в законе о майнинге. Сейчас она реализуется в рамках ЭПР, однако для работы с виртуальными активами необходимо создание полноценной инфраструктуры.

«Под полноценной инфраструктурой мы понимаем четкие правила игры. Это возможности конвертации криптовалюты в фиатные деньги, более активное использование криптовалюты для расчетов и в инвестиционных целях. Постепенно мы движемся к этой цели», — сообщил Чебесков.

В министерстве финансов рассчитывают, что внедрение правовых механизмов и развитие экспериментальных режимов создадут условия для легальной работы участников отрасли и усилят доверие к российскому криптовалютному рынку, резюмировал Чебесков.

Ранее директор департамента развития электроэнергетики Минэнерго Андрей Максимов заявил, что в ведомстве пока не ожидают появления новых ограничений на майнинг криптовалют.

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