Суточный оборот кастомных рынков Hyperliquid превысил $500 млн

cryptonews.ru2025-09-25 tarihinde yayınlandı2025-11-26 tarihinde güncellendi

Децентрализованная биржа Hyperliquid запустила пользовательские рынки бессрочных контрактов в рамках обновления HIP-3. Суточный объем торгов превысил $500 млн, свидетельствуют данные платформы.

Источник: Hyperliquid.

В рамках апгрейда независимые разработчики запустили три сегмента:

  1. xyz (trade.xyz от команды Hyperunit/Unit) — сфокусирован на основных фондовых индексах и акциях с высоким объемом торгов. Ключевой токен — XYZ100, который отслеживает топ-100 американских нефинансовых компаний с плечом до 20x. Представленные активы включают NVDA, GOOGL, TSLA, PLTR, META, AMZN, AAPL, MSFT и COIN. Механизм платформы использует ончейн-стакан заявок Hyperliquid, трейдеры работают через депозиты в USDC. Для стимулирования ликвидности применяется «режим роста», снижающий комиссии тейкеров на 90%.
  2. flx (Felix Protocol от Redstone) — нацелен на акции и экспериментальные активы. Для скорости и надежности использует оракул HyperStone, который обновляет цены каждые три секунды. Среди токенов: CRCL, TSLA и COIN с плечом до 3x. Протокол реализует механизм haltTrading для экстренного закрытия позиций по расчетной цене.
  3. vnti (Ventuals) — позволяет торговать с плечом акциями, не котирующимися на бирже, до IPO. Новый и инновационный сегмент, который выводит частные рынки в блокчейн. Список конкретных токенов еще формируется. Пока здесь работают: OPENAI, SPACEX и ANTHROPIC.

Наибольшую активность показали токенизированные активы на базе акций. Лидером по объему стал XYZ100 с показателем $316 млн. Синтетические активы NVDA и GOOGL привлекли $65 млн и $42 млн соответственно.

Сегменты запущены на базе HyperCore. Для релиза разработчикам было необходимо застейкать 500 000 HYPE.

Обновление HIP-3 вышло в октябре и позволило создавать рынки бессрочных фьючерсов без необходимости получения разрешений на уровне протокола.

Технологическая основа гарантирует высокую скорость обработки — низкие задержки и пропускную способность в миллионы ордеров в секунду. Создатели рынков могут самостоятельно определять ключевые параметры, лимиты кредитного плеча и механизмы расчета ставок финансирования.

Взамен разработчики получают до 50% от суммы генерируемых торговых комиссий.

Для защиты Hyperliquid и пользователей в HIP-3 встроены механизмы безопасности вроде слэшинга валидаторов и лимитов на открытый интерес.

Показатели Hyperliquid

На момент написания TVL децентрализованной биржи составляет $4,3 млрд — на пике в сентябре показатель превышал $6 млрд. Активность просела на фоне обострившейся конкуренции в секторе perp-DEX.

Источник: DefiLlama.

С начала ноября объем торгов бессрочными контрактами на Hyperliquid достиг $220,9 млрд. По суточному показателю площадка находится на втором месте рейтинга DefiLlama — $7,9 млрд. Ее опережает Lighter — $9,3 млрд.

Источник: DefiLlama.

Прежде топ возглавляла Aster на BNB Chain, но к моменту написания платформа опустилась на третье место с показателем $6,4 млрд.

Напомним, в начале ноября площадка объявила о запуске ориентированного на приватность блокчейна.

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