Gameplay Galaxy получила от инвесторов сумму $11,2 млн

cryptonews.ruPublished on 2022-05-27Last updated on 2024-08-27

Студия по разработке игр на основе Web3 Gameplay Galaxy, основанная создателями популярной серии игр Trial Xtreme, достигла оценки в $71 млн после привлечения $11,17 млн в рамках дополнительного раунда посевного финансирования. Данный этап по сбору средств возглавили Blockchain Capital и Merit Circle. Кроме того в нем приняли участие несколько анонимных инвесторов. Об этом сообщил основатель и генеральный директор стартапа Дорон Каган.

Раунд финансирования был начат в мае и завершился в прошлом месяце. Как отметил Каган, он был структурирован как стадия продажи доли капитала с опционом на токены. С учетом нового раунда общее финансирование Gameplay Galaxy теперь составляет $24 млн, включая $12,8 млн, привлеченные в сентябре 2022 года.

Компания основана Каганом в 2022 году на базе Deemedya. Организация, запущенная в 2010 году, реализовала несколько успешных мобильных игр для Web2, таких как Trial Xtreme, Rope Escape и другие. В общей сложности они собрали более 300 млн загрузок и принесли доходы в десятки миллионов долларов США .

На данный момент Gameplay Galaxy разрабатывает первую игру на основе технологии Web3 под названием Trial Xtreme Freedom. Подход студии заключается в том, чтобы интегрировать элементы индустрии децентрализованного Интернета, избегая при этом платных барьеров или сложных механизмов. «Геймерам предоставляется возможность использовать все на добровольной основе, что позволяет им адаптироваться к новому опыту в собственном темпе и повышать ценность процесса», — отметил Каган.

В Trial Xtreme Freedom геймеры получают возможность владения собственными трассами, что позволяет им проводить турниры и события. Кроме того, игроки могут создавать, модернизировать мотоциклы, зарабатывая токены в процессе игры. Продукт находится на стадии технического предварительного запуска, а полный релизн запланирован на 1-й квартал следующего года.

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