Zivoe将推出现实世界资产信贷协议,使信贷获取民主化

币界网Pubblicato 2024-07-18Pubblicato ultima volta 2024-07-18

币界网报道:

开曼群岛乔治敦,2024年7月18日,Chainwire


Zivoe是一家真实世界资产(RWA)信贷协议公司,很高兴宣布其即将推出,目标推出日期为7月31日。这一事件标志着利用区块链技术实现信贷民主化的一个重要里程碑。

Zivoe旨在通过将链上流动性与现实世界的借款人联系起来,扩大信贷渠道。最初,Zivoe将向一个战略贷款合作伙伴发放链上贷款,然后该合作伙伴将利用这笔资金为消费者提供更实惠的法定贷款。从长远来看,Zivoe计划直接与消费者互动,进一步弥合链上金融和传统金融(TradFi)系统之间的差距。

此次发行恰逢Zivoe的首次发行(ITO),这是一种独特的流动性引导机制,旨在吸引初始总价值锁定(TVL)。流动性提供者(LP)可以将稳定币存入Zivoe的高级或初级部分,并获得部分代币作为回报。这些代币旨在为Zivoe的贷款组合提供风险分层敞口,该贷款组合由消费贷款现金流支持的特殊目的工具(SPV)担保,可以抵押以获得收益。

ITO参与者还将有资格获得ZVE,这是该平台的原生治理和公用事业代币,将在ITO完成后空投。ITO计划于7月31日开始,为期30天。

Zivoe由一个在TradFi消费贷款和去中心化金融(DeFi)方面拥有丰富经验的团队领导,在Andrew Keys、Iceberg Capital、Concave等知名投资者的一轮融资中成功筹集了835万美元。

Zivoe创始人兼总法律顾问Kristal Gruevski表示:“我们很感激能达到这一重要里程碑,并很幸运能为传统贷款行业引入创新解决方案。”。“我们的ITO将为DeFi用户(仅限美国认证投资者和非美国人)提供前所未有的进入消费信贷市场的机会。这只是区块链技术和现实世界贷款融合的新时代的开始。我们非常高兴能帮助全球数百万得不到充分服务的个人,同时为DeFi带来新的RWA产品。”

免责声明:仅适用于非美国人和美国合格投资者。提供流动性涉及风险,包括完全损失风险。请查看条款和条件,并根据需要咨询专业顾问。

有关Zivoe及其即将进行的首次发行的更多信息,请访问https://www.zivoe.com/.

关于Zivoe:

Zivoe是一项现实世界资产信贷协议,旨在扰乱数十亿美元的高息消费贷款市场。通过将全球DeFi流动性与私人信贷市场联系起来,Zivoe旨在将急需的资本引入服务不足的地区,使每个人都能更容易地获得和负担得起信贷。此外,Zivoe寻求在DeFi市场引入消费贷款作为真实世界资产的新来源,通过真实经济活动带来的收益机会丰富生态系统。


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克里斯托·格鲁埃夫斯基[email protected]

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