Fantasy.top 宣布获得来自 Dragonfly 和 Manifold Ventures 的 425 万美元种子资金

tokeninsight_newsPublished on 2024-12-13Last updated on 2024-12-16

Abstract

由 Blast 驱动的去中心化交易卡牌游戏 Fantasy(也称为 Fantasy.top)宣布了其平台的第二个版本 Fantasy V2,并同时完成了 425 万美元的种子融资。

据《The Block》报道:Fantasy.top 宣布了平台的第二个版本,Fantasy V2。同时,它还完成了一轮由 Dragonfly 领投、Manifold Ventures 支持的 425 万美元种子融资。


这款由 Blast 驱动的去中心化交易卡牌游戏 Fantasy(也称为 Fantasy.top)宣布了其平台的第二个版本 Fantasy V2,并同时完成了 425 万美元的种子融资。


这笔新资金将用于提升 Fantasy 的主要产品:交易卡牌游戏和幻想投注。增强内容将包括更精细的产品、扩展的每日投注名人阵容、新类别(如 Solana 对 Ethereum 影响者和左右曲线影响者)以及增加的奖池——每日奖励高达 100,000 美元,周赛奖励超过 350,000 美元。


“我们很荣幸在这一轮融资中有 Dragonfly 作为领投者,他们是支持诸如 Ethena 和 MegaETH 等类别定义项目的领先风险投资公司,”Fantasy 联合创始人 Travis Bickle 表示,并补充说团队“同样感谢 Manifold Ventures 在我们旅程中的持续信任和合作。”


据报道,这笔资金还将推动 Fantasy 进入更广泛的社交媒体领域,包括推出 Fantasy X,团队将其描述为“一个动态的替代内容消费、与志同道合用户连接和发现信息的平台。”


Fantasy X 已在 V2 上线,计划推出的原生移动应用旨在成为传统“加密 Twitter”的新中心。
“目前已有超过 100,000 名用户注册,我们的目标是扩展到数百万,使 Fantasy X 成为在加密 Twitter 生态系统中导航和蓬勃发展的终极目的地,”Bickle 说。


最后,Fantasy 计划重新审视其去中心化金融的起源,探索用户获取“加密 Twitter”趋势的新方式——例如“实时交易体验,以捕捉追逐 memecoin 的兴奋感,重新构想社交媒体动态。”

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