Американская таможня пресекла импорт ASIC-майнеров от Bitmain

cryptonews.ruPublicado em 2024-07-13Última atualização em 2025-02-13

Погранично-таможенная служба США (CBP) задерживает устройства для добычи биткоина при ввозе на территорию страны по запросу Федеральной комиссии по связи (FCC). Об этом сообщает Blockspace.

Конфискации импортируемых ASIC-майнеров Antminer S21 и T21 от Bitmain начались еще осенью 2024 года. Предположительно, это связано с использованием в установках ИИ-чипов китайской компании Sophgo, попавшей под торговые ограничения.

Согласно документам CBP и источникам издания, теперь таможенники начали задерживать также биткоин-майнеры производства MicroBT и Canaan.

Один из пострадавших предпринимателей рассказал Blockspace, что у его фирмы изъяли оборудование на $5 млн в порту Сан-Франциско. В полученном им уведомлении от CBP говорится о задержании партии в 200 единиц Antminer S21 Pro.

Майнеры «изъяты и подлежат конфискации» в соответствии с требованиями раздела 19 USC 1595a(c)(2)(A) юридического кодекса США, говорится в письме. Процитированные нормативные положения касаются несанкционированного коммуникационного оборудования, а также устройств, вызывающих радиочастотные помехи и не получивших одобрение FCC.

Соучредитель и CEO Synteq Digital Тарас Кулик подтвердил, что «практически каждый азиатский производитель ASIC-майнеров сталкивается с проблемами таможенного оформления».

Напомним, в декабре Bitmain анонсировала запуск производственной линии в США. MicroBT также собирает часть своих майнеров на территории страны.

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