В Santiment заявили о подготовке трейдеров к покупке криптовалют

cryptonews.ruPublished on 2024-03-13Last updated on 2025-03-13

  • Эксперты Santiment отметили рост активности со стейблкоином USDT.
  • По их данным, 11 марта 143 000 кошельков переводили USDT.
  • Это свидетельствует о подготовке трейдеров к покупке криптовалют, отметили аналитики.

Ончейн-активность со стейблкоином USDT стремительно растет, заявили в Santiment, добавив, что только 11 марта 2025 года более 143 000 кошельков осуществили переводы «стабильных монет. Эксперты отметили, что это максимум за последние шесть месяцев.

💸 Tether's on-chain activity has been rapidly rising, with over 143K wallets making transfers yesterday alone (a 6-month high). When $USDT & other stablecoin activity spikes during price drops, traders are preparing to buy. Added buy pressure aids in crypto prices recovering. pic.twitter.com/siFOR7vSf7

— Santiment (@santimentfeed) March 12, 2025

«Когда активность с USDT и другими стейблкоинами растет во время падения цен, это свидетельствует о подготовке трейдеров к покупке криптоактивов. Дополнительное покупательское давление способствует восстановлению цен на криптовалюты», — говорится в заявлении.

Отметим, по данным Whale Alert, 13 марта на криптовалютную биржу Coinbase перевели более 1,3 млрд USDC.

Ранее эксперты аналитической компании CryptoQuant заявили о значительном притоке стейблкоинов на криптобиржи.

Кроме того, в начале февраля 2025 года мы сообщали, что компании Tether и Circle выпустили стейблкоинов на $8,5 млрд с начала года. В частности, Circle авторизовала к выпуску 6,5 млрд USDC, а Tether — 2 млрд USDT.

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