Синергия 3-х ведущих AI-токенов не оправдала ожидания

cryptonews.ruPublished on 2022-01-19Last updated on 2024-08-19

Исследователи Kaiko заявили, что процесс объединения токенов 3-х ведущих ИИ-криптопроектов — Fetch.AI, SingularityNET и Ocean Protocol — в единый цифровой актив под названием Artificial Super Intelligence (ASI) оказался сложным и не оправдал ожиданий по привлечению интереса на рынке. Инициатива, придуманная в марте 2024 года и запущенная в в июле, нацелена на создание новой AI-платформы, предлагающей децентрализованную альтернативу существующим проектам, контролируемым крупными IT-компаниями.

Эксперты отметили, что, несмотря на первоначальные амбиции, объединение токенов столкнулось с рядом трудностей. С июля совокупная доля рынка токенов AGIX (SingularityNET), OCEAN (Ocean Protocol) и FET (Fetch.AI) выросла с 30% до 40%. Однако по данным аналитиков, этот показатель обусловлен увеличением объемов продаж, что свидетельствует о том, что трейдеры воспринимают слияние как рискованное событие.

Общий спрос на AI-токены резко снизился с начала 2-го квартала текущего года. Торговые объемы упали с рекордных $13 млрд в 1-м квартале до $2 млрд в начале августа. Интересно, что корреляция криптовалюты искусственного интеллекта с акциями Nvidia (NVDA), оказалась слабой, достигнув всего 0,1 — 0,2 в начале августа.

Это значительно ниже пикового значения в диапазоне 0,3 — 0,4 в марте. В то же время корреляция с биткоином остается высокой, находясь на отметках 0,5 — 0,7, что указывает на восприятие этих проектов как высокорисковых криптоактивов.

По мнению экспертов Kaiko, отсутствие значимого интереса к AI-токенам связано с недостаточной ясностью их реальной пользы и перспективности на фоне более традиционных криптовалют. «Несмотря на высокий потенциал, эти проекты нуждаются в дальнейшем развитии и адаптации к меняющимся условиям рынка», — отметили аналитики.

В ближайшей перспективе будущее AI-токенов зависит от того, смогут ли разработчики и команды проектов предложить уникальные решения, которые будут востребованы на рынке. В противном случае, интерес к этим криптовалют может продолжить снижаться

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