$78 млрд в биткоине: резерв Strategy достиг уровня денежных запасов технологических гигантов

cryptonews.ru2025-05-07 tarihinde yayınlandı2025-10-08 tarihinde güncellendi

Компания Strategy, владеющая биткоинами на сумму около $78 млрд, приближается к корпоративным резервам таких технологических гигантов, как Amazon, Google и Microsoft. Причем Microsoft в прошлом году отказалась от предложения добавить биткоин к своим активам.

Strategy сообщила в соцсети X, что стоимость ее 640 031 биткоинов 6 октября ненадолго превысила $80 млрд. Это произошло после того, как биткоин достиг рекордной отметки в $126 080. Для сравнения: каждая из компаний — Amazon, Google и Microsoft — держит от $95 млрд до $97 млрд в денежных средствах или их эквивалентах.

Регулярные покупки биткоина компанией Strategy в сочетании с ростом его цены уже позволили превзойти по капиталу такие компании, как Nvidia, Apple и Meta*. Последняя, кстати, рассматривала предложение об использовании биткоина в качестве резервного актива, но в июне подавляющим большинством голосов совета акционеров отклонила его.

Самой богатой компанией остается Berkshire Hathaway — она владеет около $344 млрд. Tesla — вторая компания, владеющая биткоином, которая попала в топ-10 компаний с крупнейшими денежными резервами. Однако ее 11 509 BTC стоимостью около $1,4 млрд составляют лишь малую часть от $37 млрд активов.

На прошлой неделе аналитики JPMorgan назвали биткоин и золото «защитой от обесценивания». По их мнению, эти активы могут служить хеджированием против инфляции доллара США и растущего государственного долга Америки, который продолжает расти и приближается к $38 трлн.

Глава BlackRock Ларри Финк (Larry Fink), когда-то критиковавший биткоин, в январе заявил, что криптовалюта может достичь $700 000 на фоне опасений по поводу обесценивания валюты.

Предложения о покупке биткоина для Microsoft и Meta были поданы Итаном Пеком (Ethan Peck), заместителем директора консервативного аналитического центра National Center for Public Policy Research (NCPPR). Он утверждал, что биткоин лучше защитит прибыль компаний от обесценивания валюты.

Microsoft и Meta упустили крупный рост

Microsoft отклонила предложение NCPPR о биткоине, когда он торговался по $97 170, а Meta отвергла аналогичное предложение при цене $104 800. Одной из главных причин, повлиявших на решение акционеров Microsoft проголосовать против предложения, стала волатильность биткоина.

Пек, который также занимает должность одного из топ-менеджеров в компании по управлению активами Strive, рекомендовал Microsoft выделить от 1% до 5% своих денежных средств для покупки первой криптовалюты.

NCPPR внесла аналогичное предложение совету директоров Amazon в декабре прошлого года, однако с тех пор существенного прогресса не было.

Взрывной рост институциональных инвестиций в 2025 году

Несмотря на отказ технологических гигантов от предложений купить биткоин, более 200 публичных компаний теперь владеют первой криптовалютой. Для сравнения: в начале года их было менее 100.

При текущей цене биткоина, близкой к историческому максимуму, почти все компании получают прибыль от своих инвестиций в криптовалюту.

Strategy приобрела свои 640 031 биткоин по средней цене $73 981, что означает рост на 65%, или прибыль в размере $30,4 млрд от инвестиций в биткоин.

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