MEET48的MEME2.0生态空投新玩法

深潮Published on 2024-07-24Last updated on 2024-07-24

未来,MEET48将不断拓展其内容生态系统,推动Web3.0和AI技术的深度融合。

7月17日,MEET48发布了其WEB3.0孵化生态的第一个TON生态空投产品“CoinFish”。8月8日,MEET48将发布第二个TON生态空投产品“CoinIdols”。MEET48计划在年内以每个季度一款的节奏陆续孵化并发布CoinIdols、CoinGarden等不同定位和不同玩法的TON生态化空投系列新产品,其中尤其值得关注的是被称为“MEME2.0”的MEET48生态化空投的创新玩法:

TON生态和全链空投的多样化小游戏产品将以TON生态为依托,兼顾全网全链的产品投放模式,覆盖更多更广的用户群体。产品形态将涵盖TON小程序、PC、移动端等,实现多端同步上线。

不仅如此,每个空投产品还将链接一个MEET48内容生态矩阵中内容相通的AIUGC、GameFi或P2E产品。例如,CoinFish将生态连接到Web3.0捕鱼游戏“CoinFishing”,CoinIdols将生态连接到P2E产品“PICK 48”等。

此外,MEME文化包装和社区建设将在空投产品发布时启动游戏内character的文化和IP包装和运营,利用AIGC(Animation,Idol, Game, Comics)文化运营方面的长期内容运营能力,通过图片、视频和直播等方式为产品营造良好文化氛围。

总的来说,MEET48将会作为整个生态的中心,参与MEME2.0和TON生态化空投进入的用户,最终都将由MEET48内容生态矩阵产品导入MEET48的智能社交元宇宙社区。未来,MEET48将不断拓展其内容生态系统,推动Web3.0和AI技术的深度融合。

值得一提的是,MEET48目前拥有500人规模的技术和研发团队,覆盖新加坡、香港、台北、东京、首尔和迪拜的区域运营网络,是目前全球规模最大的Web3应用项目团队之一。MEET48希望用聚焦于AIGC(Animation,IDOL、GAME和Comics)Z世代潮流娱乐内容的AI UGC内容生态及图形化、智能化的元宇宙社交基座,实现Web3技术的社会化大规模应用(Mass Adoption)。

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