MetaMask与万事达卡合作在欧洲推出支付卡

币界网Publicado em 2024-08-15Última atualização em 2024-08-15

币界网报道:

MetaMask宣布通过与万事达卡和Baanx的合作,试行推出MetaMask卡。

根据其网站上的一篇帖子,该合作伙伴关系推出了世界上第一张万事达卡支付卡,允许用户在接受万事达卡的任何地方从他们的MetaMask钱包直接购买。

自我保管钱包用户在尝试在加密货币世界之外消费资金时会遇到重大障碍,因为他们通常在将加密货币资产转移到交易所后必须转入传统银行账户。这一过程使得加密货币作为一种支付方式很难成为主流。

Consensys高级产品经理Lorenzo Santos表示:“这给了人们更多的自由来消费他们的资产,MetaMask Card代表了消除区块链和传统支付之间存在的摩擦的重要一步。这是一种范式转变,可以两全其美。”。

使用新的MetaMask卡,用户可以使用其MetaMask钱包中的资金进行购买,并且使用万事达卡的全球商家网络通过Apple Pay或Google Pay付款后,加密货币会立即转换为法定货币。

万事达卡区块链和数字资产执行副总裁Raj Dhamodharan在Metamask母公司Consensys的一篇帖子中表示:“万事达卡在商业中心的地位为我们提供了一个独特的有利位置,可以为他们识别现实世界的挑战和机遇。”。

用户必须将资金存放在同样由Consensys推出的Linea Network上,并在MetaMask上设置卡的支出上限。目前符合条件的货币包括USDC、USDT和WETH。

Baanx首席商务官Simon Jones表示:“我们很高兴与web3领先的钱包MetaMask合作,通过使用户成为自己的银行来推动金融革命。”

试点阶段正在欧盟(EU)和英国(UK)开始,目前仅对几千名用户开放。用户可以通过转到他们的MetaMask投资组合并检查“卡”选项卡来检查他们的资格。

展望未来,MetaMask卡正在为更广泛的可用性做准备,并计划将其业务扩展到更多地区。未来的更新将是加密货币爱好者应该注意的事情。

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