Рыночная капитализация токенизированных казначейских фондов превысила 2 млрд долларов на фоне взрывного роста BlackRock

cryptonews.ruPublicado em 2020-06-26Última atualização em 2024-08-26

  • Рыночная капитализация токенизированных казначейских облигаций превысила 2 млрд долларов США после быстрого роста BUIDL от Blackrock и других эмитентов.
  • Это произошло всего через пять месяцев после того, как в марте объем средств достиг отметки в 1 миллиард долларов.

По данным RWA.xyz , менее чем через пять месяцев после достижения рыночной капитализации в 1 миллиард долларов размер токенизированных казначейских облигаций снова удвоился, преодолев в субботу отметку в 2 миллиарда долларов.

Токенизированные казначейские облигации — это цифровые представления государственных облигаций США, которые могут торговаться как токены на таких блокчейнах, как Ethereum, Stellar, Solana, Mantle и других. Хотя 2 миллиарда долларов — это впечатляющая веха для недавно запущенных фондов, потенциал гораздо больше, учитывая огромный размер рынка казначейских облигаций в 27 триллионов долларов.

Самый крупный из ONE, BlackRock's USD Institutional Digital Liquidity Fund (BUIDL), является важным фактором в стремительном росте рыночной капитализации в этом году. UST через шесть недель после запуска в конце марта BUIDL стал крупнейшим токенизированным казначейским фондом с рыночной капитализацией в $375 млн. Активы сейчас составляют $503 млн . Конкурентами являются Franklin Templeton's OnChain US Government Money Fund (FOBXX) и Ondo's US Dollar Yield (USDY), оба из которых также продемонстрировали взрывной рост.

Однако, по данным rwa.xyz , большая часть недавнего роста пришлась на более мелких эмитентов. Предложение Hashnote выросло почти на 50%, достигнув $218 млн за последний месяц. Между тем, продукты OpenEden и Superstate выросли на 37% и 18% соответственно за тот же период, приблизившись к рыночной капитализации в $100 млн.

Токенизированные казначейские фонды стали популярным инвестиционным инструментом для Криптo , желающих диверсифицировать свои активы и воспользоваться быстрым ростом доходности казначейских облигаций за последние несколько лет, а также иметь возможность совершать сделки в любое время.

Доходность 10-летних облигаций США в настоящее время составляет 3,81% против 1,5% четыре года назад. Аналогично, доходность 2-летних облигаций выросла до 3,92% с NEAR нулевых уровней в 2020 и 2021 годах.

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