稳定币最终将达到10万亿美元市值的10个原因

深潮TechFlowPubblicato 2022-08-09Pubblicato ultima volta 2022-08-09

Introduzione

稳定币在未来 5-10 年内会有巨大的采用增长的经济/社会原因以及使用案例。

稳定币在未来 5-10 年内会有巨大的采用增长的经济/社会原因以及使用案例。

我十分看好稳定币的市场前景,并认为它们在未来 5-10 年内会有巨大的采用增长,这篇文章是我论点背后的经济/社会原因以及使用案例。

一:与 Tradfi 银行相比,它们是一种非常优越的技术

作为一个同时使用 Tradfi 平台和链上稳定币操作在线业务的人,我可以证明,后者毫无疑问是更好的。

如果你想使用美国银行或富国银行或类似的银行进行国际交易,你将感受到高昂的货币兑换费。如果你想使用 PayPal 或 Payoneer 或 Wise,你可以在技术上避免这种费用/收费,但是当你的转账被冻结/丢失等时,你绝对无法规避需要与他们的支持团队进行数不清的交流,浪费人工时长。

这也不是他们的错,而是不合时宜的传统交易系统。

而有了稳定币,你可以在各种区块链上以不到一分钱的价格发送 USDC 或 DAI,并通过 Etherscan 或 DeBankDeFi 实时确认你的转账已经到达。同时,你也可以进行任何数量和组合的转账,且拥有 100%的会计透明度,等等。

二:对于像阿根廷这样的地方的人来说,其价值非常明显

想象一下,如果你生活在一个货币正在迅速贬值的国家,你只能通过昂贵的灰色市场交易所获得美元,但持有大量的实物现金可能还是危险的。

在这种情况下,以更稳定的货币或资产计价的无需许可、自我托管的的稳定币的效用是显而易见的。

三:新兴市场的汇款和可靠的转账通道

对全球许多移民工人来说,汇款费用是非常可怕的,而在许多新兴市场,汇款的通道是低效和腐败的。

四:链上外汇市场的超效率

支持链上稳定币的技术在各个方面都远远优于 Tradfi, 虽然它目前仍然处于早期阶段,但稳定币迟早会吃掉 Tradfi 的大量市场份额。

五:普通人的货币对冲

同样,如果你生活在货币贬值的地方,那么拥有与美元/黄金/瑞士法郎挂钩的稳定币的能力是非常有价值的。在欧洲,以美元获得报酬的年轻人们就是这方面的完美代表。

六:向持有人提供收益的能力

如上所述,您可以通过稳定币获得(真实的、有机的)收益。到目前为止,其主要采取了提供流动性的形式(您通过向去中心化交易所/外汇市场提供流动性来赚取收益)。

“收益”来自于此,也来自于链上 DeFi 的效率是 Tradfi 的 100 倍。链上协议可以只通过几个开发人员完成 Tradfi 机构需要数千名员工的工作。因此,所有这些节省的钱都可以作为收益转给流动性提供者和代币持有人。还有就是类似于 USDC 式的稳定币,可以将持有的国库券收益传递给持有人,以及其他各种有趣的可能性。

七:防御政府/银行黑天鹅

如果你读过历史,你就会知道像 Cyprus 救助和所有其他此类令人讨厌的事情这样的事情往往会一次又一次地发生在我们平民身上。最近,加拿大卡车司机的事情又引起了相关情绪。

虽然这很复杂的(例如 Tornado Cash),但将你的一些流动资本放在一个只有你能访问的钱包里,其价值应该是显而易见的。

八:防范个人层面的黑天鹅

对于全球许多人来说,被错误逮捕/起诉/勒索/冻结银行账户的威胁是真正的个人层面黑天鹅,

这也这说明了加密货币本身与稳定币的价值——与其把钱放在某个银行不如自己持有货币/私钥放在个人钱包。

九:作为机构的货币工具

就像在线公司和年轻人越来越多地使用链上稳定币一样,传统机构也将越来越多地采用它们。我们已经看到,像 MapleFinance 这样以机构为中心的复杂协议,以及 MakerDAO 采用现实世界资产作为其稳定币 $DAI 抵押品的各种案例。

十:作为现有欧洲美元体系的逻辑产物

解释下,“欧洲美元”与欧元无关,该术语基本上是指完全存在于美国体系之外的美元。

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CDP 稳定币如 $DAI、$FRAX 和 $MAI 基本上等于欧洲美元(即以美元计价的贷款/抵押品/交易单位,存在于美国官方系统之外)。

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