Crypto Insights: Инвестиционные фонды «демонстрируют криптооптимизм»

investing.ruPublicado em 2024-10-06Última atualização em 2024-10-06

В отчете Crypto Insights сказано, что 55% управляющих владеющих цифровыми активами фондов не переживают о результатах выборов президента США в ноябре. Но 45% внимательно следят за ситуацией, прежде чем внести коррективы в свои инвестиционные стратегии.

«Уровень уверенности управляющих сейчас находится на одном из самых высоких уровней в году, несмотря на политические риски и противоречивые макроэкономические сигналы», — говорится в отчете.

Отчет по числу рабочих мест в США, опубликованный 4 октября, поменял убеждение участников рынка — вероятность снижения ставки Федеральной резервной системой США (ФРС) на 25 базисных пунктов в ноябре теперь оценивается в 95%, отметили эксперты. По их словам, данные по рынку труда свидетельствует об устойчивости американской экономики, и в среднесрочной перспективе возможен дальнейший рост высокорисковых активов, включая криптовалюты.

Курс биткоина продолжает удерживаться выше уровня поддержки на отметке $60 000, что может стать сигналом к возобновлению роста, считают аналитики.

Ранее специалисты одного из крупнейших американских банков JPMorgan спрогнозировали повышение спроса на первую криптовалюту.

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