渣打银行、Animoca等金管局稳定币沙盒新参与者

币界网Опубліковано о 2024-07-19Востаннє оновлено о 2024-07-19

币界网报道:

香港金融管理局(HKMA)宣布其稳定币沙箱的五个新参与者,包括渣打银行(香港)和Animoca Brands。

其他三家实体是京东币联科技香港、研发创新科技和香港电信(HKT)。

公告指出:“在评估过程中,这些机构能够通过合理的商业计划证明他们对在香港发展稳定币发行业务的真正兴趣,并且他们在沙盒安排下的拟议业务将在有限的范围内以可控风险的方式进行。”。

现阶段,这些实体将无法处理公众资金,也无法向公众募集资金,但金管局表示,未来不排除这种可能性。新参与者也可能在稍后加入该计划。

监管机构还警告公众“对声称与沙盒有关的潜在骗局保持警惕”

金管局宣布这一消息的前一天,该监管机构透露正在处理其稳定币发行商沙盒的申请。

金管局的通知称:“申请人应真正有兴趣在香港发展稳定币发行业务,并制定合理的商业计划,而他们在沙盒安排下的拟议业务将在有限的范围内以可控风险的方式进行。”。

此外,根据金管局的新规定,追踪法定货币的稳定币发行人将需要获得监管机构的许可证。

此举是其关于稳定币咨询结论的一部分。在今年2月结束的为期两个月的公众咨询期内,收到了来自市场参与者、行业协会、商业和专业组织以及其他利益相关者的108份意见书。

在本月早些时候的议会质询会上,财政部长许表示,HMKA和证监会正在审查有关数字资产的法规。

许表示,金管局和证监会将“密切关注市场发展,并酌情审查对退伍军人事务相关活动的要求”。

许是在回应一位议员质疑监管机构是否会加快加密货币许可证的审查程序时发表上述言论的。

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