Рыночная капитализация мемекоинов выросла на 29% в июле

cryptonews.ruPublished on 2025-02-17Last updated on 2025-07-18

С начала июля стоимость мемкоинов выросла почти на $17 млрд, достигнув $72 млрд по состоянию на четверг, что на 29% больше рыночной капитализации в $55 млрд на 30 июня.

Данные CoinMarketCap показали, что в июле объём торгов мемкоинами был выше, чем в предыдущем месяце. В четверг суточный объём торгов в секторе достиг пика в более чем $18 млрд. Второй по величине объём торгов за последние 30 дней составил $17,09 млрд в субботу.

Многие ведущие мемкоины, такие как Dogecoin (DOGE), Shiba Inu (SHIB) и Pepe (PEPE), продемонстрировали значительный рост за последние семь дней. Тем не менее, наибольший рост за неделю показали Floki (FLOKI) с ростом на 45%, токен Pudgy Penguins (PENGU) с ростом на 58% и Bonk (BONK) с наибольшим ростом на 72%.


Рыночная капитализация и объём торгов мемкоинов. Источник: CoinMarketCap.

LetsBonk удваивает 7-дневный доход Pump.fun

Взрывной рост Bonk можно объяснить популярностью поддерживаемой Bonk платформы LetsBonk для запуска мемкоинов на блокчейне Solana, .

7 июля LetsBonk превзошёл Pump.fun, лидера среди платформ для запуска мемов Solana, по объёму торгов за 24 часа, что значительно улучшило рейтинги платформы. Более свежие данные DefiLlama показывают, что за последние семь дней LetsBonk получил доход от протокола в размере $8,25 млн, превзойдя Pump.fun с его $4,91 млн.


Рейтинг выручки протоколов в сфере децентрализованных финансов. Источник: DefiLlama

Данные агрегатора децентрализованных бирж Jupiter показывают, что за последние 24 часа доля LetsBonk на рынке составила 51,9%, а у Pump.fun — 39,5%. Также видно, что объём торгов на стартовой площадке достиг $838 млн, превзойдя Pump.fun с $638 млн.

Хотя LetsBonk набирает популярность, Pump.fun сохраняет лидерство в других аспектах. Данные DefiLlama показывают, что платформа остаётся лидером по выручке протоколов за 30 дней, заработав почти $29 млн. Данные Jupiter (JUP) также показывают, что по количеству 24-часовых трейдеров Pump.fun остаётся лидером с 413 000 трейдеров против 275 000 у LetsBonк. Ликвидность Pump.fun была почти в 10 раз выше, достигнув $510 млн против $53 млн у LetsBonk.

Рост Ethereum перекинулся на мемкоины

Хотя активность на Solana повлияла на общий рост рынка мемкоинов, недавние максимумы Ethereum также могли способствовать росту их цен. На момент написания статьи цена Ethereum (ETH) превысила $3400, поднявшись более чем на 22% за последнюю неделю.

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