Vega всё?

cryptonews.ruОпубліковано о 2022-05-02Востаннє оновлено о 2024-09-02

Команда разработчиков объявила о прекращении поддержки сети Vega и токена $VEGA. Так проект, собравший в 2021 году на Coinlist порядка $48М с ритейла, завершает свою работу.

С другой стороны, авторы проекта комментируют подобное следующим образом:

сосредоточиться на разработке и продвижении программного обеспечения с открытым исходным кодом на основе протокола Vega

Команда представила проект Nebula - розничная DEX с гарантированной ликвидностью, созданная с помощью протокола Vega. Этому проекту Vega выделила финансирование в размере $300к. У Nebula будет собственный токен $NEB, а держателям токенов $VEGA предлагается обменять токены на $NEB. Обменять $VEGA на $NEB можно здесь

Курс обмена составит приблизительно 30 $NEB за $VEGA. Период обмена заканчивается 26 сентября 2024 года.

Все токены $NEB будут полностью заблокированы и не подлежат передаче до момента разблокировки командой Nebula в следующем году. Токены, заработанные в течение периода блокировки, можно будет использовать для стейкинга и участия в управлении.

Ожидается, что сеть Nebula будет запущена в конце сентября.

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