火必投票上币第一名,NFT算力赛道BBC增长潜力有多大?

MirrorPublicado em 2023-01-18Última atualização em 2023-01-26

Resumo

1月18日晚20:00,火必将上线第二期PrimeVote投票胜出的项目Bull BTC CLUB(BBC),他是做什么的?

1月18日晚20:00,火必将上线第二期PrimeVote投票胜出的项目Bull BTC CLUB(BBC),他是做什么的?

Bull BTC CLUB介绍

Bull BTC CLUB目前跨链部署在BSC/TRON/ETH/POLYGON。本质上,BBC是一个算力衍生品平台,使用算力预言机底层技术将用户、矿池、Defi借贷保证金制度有机结合,算力发行和交易上加入了NFT元素,让算力交易变得更加安全、更加有趣。简单来说,平台的公牛NFT代表着一定比特币算力,用户购买NFT即购买了一定比特币算力,获得NFT的同时还能享受挖矿收益。除了直接购买NFT,BBC还有算力盲盒的玩法。另外,BBC上还包括质押挖矿、借贷、机枪池等金融衍生品服务。

Bull BTC CLUB满足了什么市场需求

算力市场非常的庞大,每年有上百亿美元的规模。散户想参与挖矿不一定非要购买矿机,通过算力平台购买小额算力参与挖矿的方式很普遍。如果在购买算力的过程中,还能获得NFT,并且有概率获得代表更多算力的稀有NFT,这种有奖销售的方式自古以来就深得人心。在时间节点上,熊市是参与挖矿的最佳时机,BBC算力NFT的推出时间符合市场需求,也符合大家对牛市的守望。

NFT市场也早已达到百亿美元规模,站在NFT的角度,大多数NFT只有难以估量的艺术价值,并没有太多的实用性。虽然存在一夜暴富的情况,但绝大多数NFT最终只成为了纪念品。如果NFT锚定算力,价值波动区间明确,对NFT的交易流通会更加有利。就像纸币锚定黄金,带来的其实是双赢。

Bull BTC CLUB发展情况

BBC Labs成立于2021年底,经过1年左右的开发和设计,2022年Q3上线了第三方Bull BTC CLUB 算力NFT发行交易市场。2023年Q1开启了BBC的空投活动和节点治理。未来,BBC将上线自己的交易市场,开发更多的算力挖矿品种,上线更多的链,还将打造自己的算力元宇宙。

目前BBC的公牛NFT已经近3万的持有者,NFT总交易量超过500万美元。

Bull BTC CLUB影响力

BBC的影响力主要在海外,Twitter、Telegram、Discord三个渠道的粉丝量接近40万人,活跃度也不错。要知道,用户对于NFT类项目尤为重要,短时间做到这种程度说明其NFT产品已经得到了市场的认可。另外,通过谷歌搜索“Bull BTC CLUB”,有314万条结果,内容的铺设渠道已基本成型。

Bull BTC CLUB还与多家机构达成了合作,平台算力已接入矿池f2pool、AntPool等全球大型矿池,NFT交易市场Binance NFT、APENFT、element等,安全机构Certiek。生态内所需的大型机构均有涉及。

BBC代币分配

BBC的代币总量是210亿,其中30%用于NFT质押奖励,50%用于生态系统,10%归属团队,剩余10%为储备金。均为线性释放,不会全部立即投入市场。代币除了用于流动性激励,还可参与DAO的社区治理。当前BCC的市场价格是0.027美元。

小结

整体而言,Bull BTC CLUB看起来是一个小而美的NFT项目,但通过底层创新技术算力预言机驱动的算力+NFT+Defi的玩法,让BBC有了平台级的想象空间。短短一年多的时间,BBC在社群和机构合作上产生的影响力非常优秀,这对平台级的NFT项目很重要,火必PrimeVote投票第一的结果也证实了BBC的社群实力。接下来可主要关注平台产品迭代和社区治理情况。

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