Дейв Портной назвал количество купленных на спаде цены криптовалют

cryptonews.ruPublished on 2025-01-19Last updated on 2025-11-20

Основатель цифровой медиакомпании Barstool Sports Дэйв Портной (Dave Portnoy) рассказал своим 3,7 млн подписчикам в соцсети X, какие криптовалюты он купил на днях, воспользовавшись спадом на крипторынке.

Трейдер рассказал, что в понедельник, 17 ноября, он купил биткоины на $750 000, XRP на $500 000, а также эфир на $400 000. Спустя некоторое время Портной решил добавить в свой криптопортфель больше XRP, докупив этих монет еще на $500 000. Криптоэнтузиаст назвал падение рынка привлекательной возможностью для покупки цифровых активов а себя — неспособным упустить подобный момент.

Объясняя агрессивную стратегию инвестиций, Портной сравнил себя с хищником, набросившимся на ослабевшие активы, чтобы проглотить их по низкой цене. Когда паника на рынке утихнет, купленные монеты обязательно вырастут, надеется основатель Barstool Sports.

«Я купил криптовалюту на сумму более $2 млн. На улицах льется кровь, и я как большая белая акула», — похвалился Портной.

Заявление бизнесмена привлекли внимание сына президента США Эрика Трампа, назвавшего действия Портного умной сделкой. Эрик Трамп часто призывает трейдеров покупать криптовалюты во время рыночных спадов.

Недавно сын Трампа предположил, что в ближайшие годы курс биткоина обязательно достигнет $1 млн. Сооснователь майнинговой компании American Bitcoin объяснил свой прогноз тем, что криптовалюту скупают крупные компании из списка Fortune 500, и это повышает ценность биткоина.

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