MOCA代币认购最终募资2930万美元,共获得12倍超额认购

Odaily星球日报Pubblicato 2024-05-05Pubblicato ultima volta 2024-05-05

Introduzione

共有1.7万名完成KYC用户参与,87%的NFT Lots由Moca NFT持有者获得。

MOCA代币认购最终募资2930万美元,共获得12倍超额认购

社区型文化基金会和 MOCA 代币发行者 MOCA 基金会宣布 MOCA 代币认购正式结束,参与资金总额为 2930 万美元,共获得 12 倍超额认购(该数据根据可用票数计算,不包括保证分配额度)。MOCA 代币的最终发行将在全新 Launchpad 平台 MocaList 上进行,该平台由 Mocaverse 和 CoinList 联合推出。Moca ID 持有者后续将有资格通过各种活动激活来自 Mocaverse、Mocaverse 合作伙伴们以及 CoinList 上的精选社区分发的访问权限。

此次代币认购始于 2024 年 4 月 25 日凌晨 12 点(UTC 时间),不到 6 小时内便超出其 500 万美元的认购额度,这也标志着此次认购为 2024 年以来 CoinList 上最快的超额认购活动。MOCA 代币认购活动于 5 月 2 日正式结束,成为 2024 年目前为止 CoinList 上募资金额最多的认购项目,来自 123 个不同国家和地区的近 17, 000 名独立 KYC 用户参与了此次认购,同时也代表 Mocaverse 社区参与度创下历史新高。

MOCA 代币认购的最终分配结果预计将于 2024 年 5 月 7 日公布,代币正式发行或将于 2024 年 5 月 24 日左右进行。

关于 MOCA 代币认购

  • 共计 126, 984, 127 枚 MOCA 代币(占代币总供应量的 1.5% )以每枚 0.03938 美元的价格分配给 MOCA 代币认购。

  • MOCA 代币总量 FDV(完全摊薄价值)为 3.5 亿美元。

  • 就不同层面而言,MOCA 代币认购参与者获得了最佳优惠分配条款,TGE 代币发行事件解锁 5% 代币,悬崖期为 3 个月,后续 52 周线性释放将由 CoinList 平台提供支持 。

关于 MOCA 基金会

MOCA 基金会是社区共有型基金会,旨在增强 Mocaverse 在文化娱乐领域的网络效应,其使命为促进社区团结和共同协作,并力争在治理、文化和增长创新等方面建立领先地位。除此以外,其定位为由 MOCA 代币提供支持的 Web3 领域最大的文化经济交互型平台,后续还将支持 Moca DAO 的发展。Moca DAO 是即将推出的“ DAO 中之 DAO”,其成员将首先共创 MIPs 并通过独特的委托模式参与跨 DAO 组织赋权治理。

官方网站: https://www.moca.foundation

X 平台官方账号(原推特):https://twitter.com/MOCAFoundation

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