Стейблкоины меняют финансовый сектор с объемом $35 трлн

cryptonews.ruPublicado em 2024-11-18Última atualização em 2025-03-18

Стабильные монеты кардинально меняют финансовый мир в 2025 году. Новый отчет Dune «Состояние стейблкоинов 2025», показывает стремительный рост сектора. К февралю 2025 года общий объем индустрии достиг $214 млрд. Это делает их ключевым элементом криптовалютного рынка.

Объем транзакций стейблкоинов поразил многих исследователей. За год были проведены транзакции на $35 трлн, что вдвое больше годового объема Visa. Количество активных адресов выросло на 53% и достигло 30 млн.

Стейблкоины USDC и USDT остаются лидерами рынка. Первый удвоил свою капитализацию до $56 млрд благодаря соблюдению регуляторных правил, включая MiCA и DIFC. Суммарное предложение USDT выросло до $146 млрд, но потеряло долю среди институциональных инвесторов, с большим ориентиром на P2P-переводы.

Децентрализованные стабильные монеты тоже набирают популярность. USDe от Ethena Labs вырос в капитализации с $146 млн до $6,2 млрд, став 3-м по величине стейблкоином. MakerDAO переименовался в Sky Ecosystem и запустил USDS на $2,6 млрд, соблюдая регуляторные нормы и правила, что привлекает на рынок новых участников.

Стейблкоины распределяются по разным блокчейнам. Ethereum удерживает 55% их объема, но Base и Solana лидируют по сумме транзакций. Это связано с популярностью секторов DeFi и мем-токенов, где нужны быстрые расчеты. TRON остается важной цепочкой для P2P-переводов в развивающихся странах.

Большая часть ликвидности стейблкоинов хранится на централизованных биржах. Но DEX-площадки, а также платформы кредитования и фарминга, обеспечивают основной объем транзакций. Эксперты назвали стабильные монеты «кровеносной системой» криптоиндустрии. Этот рынок продолжает расти. Специалисты отмечают, что стейблкоины открывают новые возможности. Они помогают людям переводить деньги за границу быстрее и удобнее, чем традиционные инструменты.

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