Перед инаугурацией Дональда Трампа состоится криптобал

cryptonews.ruОпубліковано о 2023-08-14Востаннє оновлено о 2025-01-14

  • 17 января сторонники Трампа и крупные игроки криптосферы соберутся на криптобал в Вашингтоне.
  • На мероприятии будет присутвовать так называемый криптоцарь Дэвид Сакс.
  • Участие самого Трампа пока что не было подтверждено официально.
  • Стоимость билетов стартует от $2500.

17 января 2025 года в лекционном зале Andrew W. Mellon Auditorium в Вашингтоне состоится мероприятие Crypto Ball. Стоимость билетов на ивент составляет $2500 и $5000.

Мероприятие организовано компанией BTC Inc. при участии альянса Stand With Crypto и таких контрагентов, как Exodus, Anchorage Digital и Kraken. Спонсорами ивента выступили крупнейшие игроки отрасли, например, Coinbase, Mysten Labs, Metamask, Solana, Metaplanet, MARA, Satoshi Action Fund, Microstrategy и другие.

Криптобал пройдет с 20:00 до 24:00 17 января 2025 года. По данным журналистки Fox Business Элеоноры Терретт, в рамках этого события также состоится VIP-встреча, организованная суперкомитетом MAGA Inc, при участии так называемого криптоцаря Дэвида Сакса.

Стоимость билетов на криптобал стартует с $2500, однако, судя по официальному сайту, они уже были распроданы. Остались только те, что с ценником в $5000.

Билет на встречу с Саксом обойдется в $100 000. Также, по словам Терретт, гости могут приобрести пакет из четырех билетов за $1 млн, что включает в себя также одно приглашение на ужин с Трампом, который состоится позднее.

Будет ли политик присутствовать непосредственно на криптобалу, на момент написания неизвестно.

Напомним, в мае 2024 года CEO издания Bitcoin Magazine Дэвид Бейли, который также участвует в организации Crypto Ball, заявил, что его команда разработала проект регулирования криптосферы вместе со штабом Трампа.

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