Floki发文回应香港证监会质疑:高APY源于将TokenFi大部分供应分配给Floki质押者 

Odaily星球日报Publicado a 2024-02-02Actualizado a 2024-02-02

Resumen

Floki认为,与监管机构的合作不是对抗性的,而是合作性的,无论是在精神上还是在实践中。

Floki 已注意到香港证券及期货事务监察委员会(SFC)于 2024 年 1 月 26 日将 Floki 和 TokenFi 质押项目列入 “可疑 ”名单,原因在于这两个项目的年利率过高。

造成这种情况的原因是对 Floki 质押年利率的计算方法以及 Floki 如何保持可持续的高回报的误解。Floki 致力于维护合规性,并重视与监管机构的关系。

Floki 概述了为符合监管机构的期望而采取的几个步骤,并解释了其高年利率的运作方式。

Floki 在其网站上发布了免责声明,警告香港公民在与监管机构的问题得到解决之前,没有办法参与质押计划;还采取了技术措施,禁止香港 IP 地址访问质押服务。此外,该辖区内的线下促销活动也于 2023 年 12 月中旬暂停。

为何年收益率过高?

证监会关注的核心问题是 Floki 和 TokenFi 质押计划所提供的明显较高的年收益率(APY)。

与传统的增加供应或从有限的代币池中提供边际回报的模型相反,Floki 计划在一个独特的前提下运行。它向参与者奖励 $TOKEN,即其代币化项目 TokenFi 的原生代币。   

TokenFi 并不是一个普通的平台,而是新兴的代币化行业中的一个开创性项目,预计到 2030 年,该行业的规模将达到 16 万亿美元。资产管理公司贝莱德(BlackRock)的首席执行官 Larry Fink 称代币化是市场的未来,并认为它比比特币 ETF 更大。

Floki 质押项目的 APY 如此之高,是因为 TokenFi 的大部分供应都分配给了 Floki 质押者。Floki 将大部分 TokenFi 供应分配给了 Floki 的质押者。这确保了 APY 的可持续高水平,也确保了项目的真正支持者获得大部分代币,而不仅仅是风险投资人或早期买家。

可持续性和权力下放

高回报自然会产生可持续性问题。虽然 APY 确实受市场条件和 $TOKEN 潜在需求的影响,但它的设计是可以自我调整的。

奖励以市值为前提,而对于 TokenFi 来说,由于市场认为它是一个极具潜力的项目,因此自成立以来,市值经历了大幅增长。

Floki 和 TokenFi 质押系统在区块链上独立运行,这意味着即使团队不在,它们也能继续运行,用户也能继续掌管。同样的规则适用于所有人,显示出对公平和去中心化的高度重视。

重要的是,$TOKEN 的价值来自 TokenFi 的增长和人们对它的信任。因此,年利率会随着代币市值的变化而变化。简单地说,质押带来的奖励展示的是社区对 TokenFi 的热情,而不是代币的不稳定性。

参与监管

尽管面临监管方面的挑战,但 Floki 团队强调,他们致力于与监管机构合作,以消除监管机构的顾虑。

Floki 认为,与监管机构的合作不是对抗性的,而是合作性的,无论是在精神上还是在实践中。“我们的做法是在创新金融产品与负责任地参与数字资产领域监管之间取得平衡。”

关于 TokenFi

TokenFi 是 Floki 的姊妹代币和一体化代币化平台,使用户可以轻松推出代币或将真实世界资产(RWA)代币化。TokenFi 致力于通过提供无需编程专业知识的用户友好界面,改变价值万亿美元的代币化行业。

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