Д. Трамп назначил сторонника биткоина Мэтта Гетца генпрокурором

cryptonews.ruPublished on 2022-05-14Last updated on 2024-11-14

Дональд Трамп решил назначить конгрессмена из штата Флорида Мэтта Гетца, ярого сторонника биткоина, новым генеральным прокурором США.

Трамп подчеркнул, что новый генеральный прокурор искоренит системную коррупцию в Министерстве юстиции и вернёт министерство к его истинной миссии, которая заключается в борьбе с преступностью и защите демократии и Конституции.

Ранее Гетц выступал за дерегулирование криптовалютной индустрии, выступая против превышения полномочий федеральных органов власти в отношении крипторынка.

Летом Мэтт Гетц представил законопроект, позволяющий американцам платить федеральные налоги с помощью биткоинов. Законопроект направлен на внесение поправок в Налоговый кодекс 1986 года, что позволит налоговой службе принимать биткоины для уплаты налогов и заключать контракты на сопутствующие услуги.

Союзники Трампа в Сенате настаивают на скорейшем утверждении нового генпрокурора, заявляя, что реформаторская программа Гетца имеет очень важное значение для пересмотра подхода Министерства юстиции к регулированию криптовалют.

Выдвижение Гетца произошло после успеха республиканцев на выборах, где кандидаты, выступающие за криптовалюту, получили большинство как в Палате представителей, так и в Сенате.

Однако объявление о его выдвижении было встречено с удивлением на закрытом заседании республиканцев Палаты представителей, и ряд сенаторов выразили скептицизм относительно его готовности занять эту должность из-за недостаточного юридического опыта.

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