Чемпион NBA запустит платформу для токенизации стоимости баскетболистов

cryptonews.ruPubblicato 2025-02-18Pubblicato ultima volta 2025-09-19

  • Чемпион NBA представит в октябре проект basketball.fun на базе Somnia.
  • Платформа позволит болельщикам делать ставки на игроков и получать вознаграждения.
  • Проект дистанцируется от нативных токенов, делая упор на инфраструктуру и геймификацию.

Чемпион Национальной баскетбольной ассоциации (NBA) в сезоне 2015/2016 Тристан Томпсон объявил о запуске нового проекта basketball.fun. Он начнет работу в октябре 2025 года, совпав с началом сезона лиги.

Платформа создается в партнерстве с генеральным директором Improbable Германом Нарулой и предпринимателем Хади Тегерани. Ее целью станет вовлечение болельщиков в игру через цифровую токенизацию спортсменов.

Working on something new that brings fantasy basketball on-chain in a way that actually makes sense for fans.

Built on @Somnia_Network.

Follow @bsktballdotfun for updates. Be ready for launch on opening night. 🏀 https://t.co/FrMXMYwLcm pic.twitter.com/k6EAOAxxbr

— Tristan Thompson (@RealTristan13) September 17, 2025

В отличие от традиционных фэнтези-платформ, basketball.fun будет выпускать токены, отражающие ценность игроков НБА в реальном времени в зависимости от их результатов и общественных настроений. Пользователи смогут составлять составы команд, поддерживать перспективных спортсменов и получать вознаграждения на основе своих прогнозов.

По словам Тегерани, проект стремится дать фанатам больше влияния на восприятие игроков, чем владельцам клубов и аналитикам СМИ. Разработчики отказались от запуска собственного токена, сделав акцент на внутриигровой ценности и системе вознаграждений, не зависящих от волатильности рынка.

Платформа строится на блокчейне Somnia, который позиционируется его командой как самая быстрая EVM-совместимая сеть. По словам представителя L1-решения, за первую половину сентября сеть обработала миллиарды транзакций, подключила десятки валидаторов, включая Google Cloud, и интегрировалась с ключевыми протоколами.

Тегерани подчеркнул, что именно надежность и масштабируемость Somnia стали решающим фактором выбора.

По словам Томпсона, проект нацелен на создание нового формата участия болельщиков.

«Мы создаем для фанатов нечто большее, чем просто игра, — ваше присутствие и страсть действительно имеют значение», — отметил он.

Первая презентация basketball.fun пройдет 23 сентября в Сеуле на мероприятии Somnia House в рамках Korea Blockchain Week. Команда планирует сделать доступ к платформе максимально простым как для криптоэнтузиастов, так и для широкой аудитории поклонников спорта.

Напомним, мы писали, что китайский девелопер Seazen Group Ltd токенизирует долг и запустит собственную RWA-платформу.

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