Стартап Bee Maps привлек $32 млн для масштабирования децентрализованных карт на Solana

cryptonews.ruPublished on 2025-10-15Last updated on 2025-10-15

Разработчики децентрализованного картографического проекта Bee Maps, использующего инфраструктуру Hivemapper и блокчейн Solana, объявили о привлечении $32 млн инвестиций для глобального расширения сети и развития своей технологической базы. Раунд возглавили Pantera Capital, LDA Capital, Borderless Capital и Ajna Capital, что делает сделку одной из крупнейших в секторе децентрализованных физических сетей (DePin) за 2025 год.

Bee Maps построена на Hivemapper — экосистеме, которая объединяет тысячи водителей по всему миру, собирающих данные о дорогах с помощью AI-камер. Эти устройства фиксируют дорожные изменения в реальном времени, включая новые знаки, ремонтные зоны и перекрытия, что обеспечивает быстрое обновление цифровых карт. За сбор изображений участники получают вознаграждение в виде токенов HONEY, что стимулирует активное участие и расширяет покрытие сети.

Привлеченные средства Bee Maps направит на массовое распространение устройств, улучшение ИИ-моделей, обрабатывающих картографические данные, а также на повышение вознаграждений участников. По словам сооснователя Hivemapper Ариэля Сайдмана, спрос на такие решения превышает предложение, и цель проекта — ускорить рост глобальной инфраструктуры, способной конкурировать с традиционными сервисами карт.

Интерес инвесторов к Bee Maps усилился после интеграции проекта с платформами крупных компаний, включая Lyft и роботакси-программу Volkswagen. Эти партнерства показывают потенциал децентрализованных карт для коммерческого применения в навигации и беспилотных системах.

Новый инвестиционный раунд подчеркивает рост доверия к сектору DePin, где физическая инфраструктура создается сообществом и вознаграждается токенами. Аналитики отмечают, что децентрализованные сети данных становятся одним из самых быстрорастущих направлений в Web3 благодаря прозрачности и устойчивости к централизованному контролю.

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