CEO GoQuant рассказал о пути от трейдинга в 9 лет до $1 млрд ежедневно на собственной платформе

cryptonews.ruPublished on 2025-11-25Last updated on 2025-11-30

  • CEO GoQuant дал интервью CoinDesk, в котором сообщил о достижении криптоплатформы в более чем $1 млрд суточного оборота.
  • Дариотис начал заниматься трейдингом в девять лет и имеет такой результат в свои 22.
  • Он стремится сделать GoQuant «центром движения стоимости» в криптоэкономике.

22-летний основатель и руководитель GoQuant Деник Дариотис в интервью CoinDesk рассказал, как создал крипторейдинговую инфраструктуру с суточным оборотом более $1 млрд — путь, который он начал в девятилетнем возрасте.

Дариотис отметил, что активный трейдинг совмещал с учебой еще в третьем классе:

«Я помню, как просил учителей дать мне 10 минут, чтобы проверить свой портфель, когда рынок открывается и закрывается».

По его словам, он даже отказал учителю, когда тот попросил показать монитор:

«Нет, боюсь, это личное».

Со временем Дариотис переключился на программирование, освоил Python и C и начал автоматизировать собственные стратегии. В 15 лет он впервые лицензировал свои алгоритмы крупному канадскому банку и консультировал нескольких инвестменеджеров.

На конференции в Нью-Йорке один из хеджфондов пытался нанять его, пока не узнал, что ему только 15.

Примерно в этот период он начал исследовать крипторынки, где обнаружил фрагментированную ликвидность и задержки обновления ордербуков. Это, по словам Дариотиса, и стало основанием строить полноценную инфраструктуру для институциональных трейдеров.

В 2025 году GoQuant привлекла $7 млн в предпосевном и посевном раундах с участием GSR. Сейчас компания обрабатывает более $1 млрд ежедневного торгового объема и имеет около 80 сотрудников в США, Европе, Индии, на Филиппинах и в Марокко. К новым продуктам относятся даркпул GoDark и кредитная платформа GoCredit, которая имеет «около половины миллиарда долларов криптокредитов в пайплайне».

Дариотис заявил, что GoQuant стремится стать базовой технологической платформой для рынков цифровых активов:

«Мы хотим быть в центре того, как движется стоимость […] все становится рынком: рынки предсказаний, “перпификация” активов, токенизация. Все становится торгуемым».

Напомним, что в начале 2025 года CryptoQuant сообщила, что более 60% криптоинвесторов – люди в возрасте до 45 лет, а большинство вкладывает в цифровые активы менее $10 000.

Отдельно издание Forbes подсчитало, что криптоактивы остаются драйвером роста капиталов молодежи, в частности, 19-летний Беррон Трамп увеличил состояние до $150 млн и владеет 2,3 млрд токенов WLFI.

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