Распродажа криптовалют на $510 млрд сводит на нет прибыль 50 лучших монет в 2024 году

cryptonews.ruPublished on 2021-05-07Last updated on 2024-08-07

Более половины из 50 крупнейших криптовалют по рыночной капитализации находятся в минусе после крупнейшей распродажи криптовалют за год.

Весь рынок криптовалют столкнулся с падением общей рыночной капитализации на $510 млрд.

После распродажи более 60% из 50 лучших криптовалют потеряли весь прирост, полученный в 2024 году, по словам автора CryptoQuant Binhdangg, который написал в сообщении от 6 августа:

«После Черного понедельника 60% монет из топ-50 убрали всю прибыль с начала 2024 года и даже понесли убытки».


50 лучших криптовалют, производительность. Источник: Binhdangg.

После распродажи Ethereum ненадолго опустился до пятимесячного минимума ниже $2200. Потеря этой психологической отметки может спровоцировать еще большую паническую распродажу и нисходящее давление на весь рынок.

Что вызвало распродажу на рынке криптовалют?

Жестокая распродажа на рынке криптовалют была вызвана сочетанием макроэкономических и отраслевых событий.

5 августа Банк Японии объявил о повышении процентной ставки с 0% до 0,25%.

Решение Японии оказало непосредственное влияние на фондовый рынок США и цену биткоина, поскольку трейдеры заняли японские иены по низким процентным ставкам, чтобы купить активы на рынке США.

Тем временем, пять ведущих маркет-мейкеров продали в общей сложности 130 000 ETH на сумму $290 млн по текущим ценам с 3 августа, в то время когда цена Ether упала с $3000 до уровня ниже $2200.

Среди маркетмейкеров Wintermute продал более 47 000 ETH, за ним следует Jump Trading с более чем 36 000 ETH и Flow Traders с 3 620 ETH, занявшие третье место.

Продажа эфира маркетмейкерами внесла значительный вклад в снижение цены ETH.

Мемкоины понесли наибольшие потери, во главе с WIF и PEPE

Если посмотреть на 50 крупнейших токенов по рыночной капитализации, то некоторые из самых популярных мемкоинов этого цикла понесли наибольшие потери.

На недельном графике мемкоин Dogwifhat (WIF) на блокчейне Solana (SOL) понес наибольшие потери, упав более чем на 41% за последнюю неделю и торговавшись на уровне $1,38 по состоянию на 8:37 UTC 6 августа.


WIF/USD, недельный график.

Мем-монета Pepe (PEPE) с лягушачьей тематикой показала вторую по величине недельную потерю, упав более чем на 34% до $0,057781, что на 53% ниже исторического максимума, зафиксированного в конце мая.

Поскольку мем-монеты не имеют внутренней стоимости, их рост в первую очередь обусловлен шумихой в социальных сетях и вниманием розничных инвесторов. В результате этого мем-токены часто сильнее всего страдают во время коррекции криптовалютного рынка.

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