За сутки секторы спотовых биткоин- и Ethereum-ETF привлекли более $655 млн

cryptonews.ruPublished on 2024-12-29Last updated on 2025-04-29

  • Сектор спотовых биткоин-ETF зафиксировал приток средств в размере $591,29 млн.
  • В спотовые Ethereum-ETF инвесторы вложили $64,12 млн.

28 апреля 2025 года спотовые биткоин-ETF зафиксировали приток капитала на сумму $591,29 млн, согласно данным SoSoValue. Положительная динамика наблюдается уже седьмой торговый день подряд.

Динамика притока капитала в спотовые биткоин-ETF США. Данные: SoSoValue.

По данным платформы, благодаря ІВІТ от BlackRock сегмент имел поступление средств в размере $970,93, тогда как в шести биржевых фондах движение средств отсутствует.

Из пяти спотовых биткоин-ETF, распределение которых выглядит следующим образом, изъяли капитал:

  • ARKB — $226,3 млн;
  • FBTC — $86,87 млн;
  • GBTC — $42,66 млн;
  • ВІТВ — $21,13 млн;
  • HODL — $2,68 млн.
Приток/отток капитала в секторе спотовых биткоин-ETF США. Источник: SoSoValue.

Приток капитала в спотовые Ethereum-ETF составил $64,12 млн. Для сектора это уже третий торговый день «в плюсе».

Динамика притока капитала в спотовые Ethereum-ETF США. Данные: SoSoValue.

Из ETHW от Bitwise изъяли $3,35 млн, а ETHA от BlackRock, напротив, привлек инвестиции на сумму $67,47 млн. Остальные фонды не получали средства под управление.

Приток/отток капитала в секторе спотовых Ethereum-ETF США. Источник: SoSoValue.

О том, что такое Ethereum-ETF, мы рассказывали в отдельном материале:

Напомним, что за прошедшую неделю в биржевые фонды на базе биткоина поступили $3,06 млрд, что стало рекордным показателем с ноября 2024 года.

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