Майкл Сэйлор намекает на следующую покупку биткоинов после продажи акций на $1 млрд

cryptonews.ruPublished on 2025-05-09Last updated on 2025-06-09

Соучредитель и председатель правления Strategy Майкл Сэйлор опубликовал график запасов биткоинов компании 8 июня, сигнализируя о возможном предстоящем приобретении.

8 июня Сэйлор опубликовал на X очередной «загадочный» пост со словами: «Отправьте больше Апельсинов».

Загадочные посты Сэйлора часто предшествуют объявлениям о новых покупках биткоина. Если Strategy последует за постом еще одной покупкой BTC, это будет означать девятую неделю последовательных покупок биткоинов компанией.

Пост появился вскоре после того, как компания приобрела еще 705 BTC в период с 26 мая по 1 июня примерно за $75 млн по средней цене $106 495 за монету, в результате чего общий запас биткоинов компании достиг 580 955 BTC, что в настоящее время оценивается примерно в $61,4 млрд.

Данные SaylorTracker показывают, что компания выросла примерно на 50% по сравнению со своими инвестициями, что составляет около 20,6 млрд долларов нереализованной прибыли.


История приобретения биткоинов компанией Strategy. Источник: SaylorTracker

Strategy предлагает акции на 1 млрд долларов, чтобы купить больше биткоина

Пост Сэйлора на X последовал за объявлением Strategy о размещении акций на 1 млрд долларов, что в четыре раза превышает ранее объявленное привлечение 250 млн долларов. Компания заявила, что направит полученные средства на финансирование дополнительных покупок биткоина и общих корпоративных расходов.

Предложение включает 11,76 млн акций ее 10%-ных привилегированных акций серии A Perpetual Stride по цене 85 долларов за акцию. Strategy ожидает привлечь около 979 млн долларов после вычета расходов на андеррайтинг и других взносов.

В отличие от прошлых методов финансирования, привилегированные акции предлагают некумулятивные дивиденды в размере 10%. Это привлекает институциональных и профессиональных инвесторов, которые гонятся за доходностью. Компания стремится предложить инвесторам более предсказуемую прибыль, продолжая при этом следовать своей агрессивной стратегии накопления биткоинов.

Strategy остается крупнейшим известным держателем биткоинов

Данные по казначейским облигациям биткоина показывают, что активы компании делают ее крупнейшим известным держателем биткоинов, затмевая количество биткоинов, удерживаемых Соединенными Штатами и Китаем вместе взятыми. Активы Strategy также почти в 12 раз больше, чем у второго по величине держателя биткоина, майнера биткоинов Mara Holdings.

Strategy стала тесно связана с биткоином, и многие инвесторы рассматривают компанию как корпоративную обертку для опосредованной позиции в биткоине.

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