泰国推出加密服务测试沙盒

币界网Опубліковано о 2024-08-13Востаннє оновлено о 2024-08-13

币界网报道:

泰国证券交易委员会(SEC)正在推出数字资产监管沙盒,旨在促进发展和促进创新,改善数字资产相关服务。

符合条件的数字资产相关服务包括数字资产交易所、数字资产经纪商、数字资产交易商、数字资产基金经理、数字资产顾问和数字资产托管钱包提供商。

然而,根据其网站上的帖子,参与者必须将他们的创新纳入泰国资本市场,或参与货币市场监管机构提供的沙盒。

鼓励敏锐的公司申请,美国证券交易委员会将根据资本充足率、管理结构和工作系统等几个因素对其申请进行评估。

参与者还应说明他们在沙盒期间的具体服务范围,以降低可能出现的任何传染风险。

此前,泰国最近批准了该国首个比特币交易所交易基金(ETF),只允许合格投资者通过投资11个主要的全球比特币基金来获得比特币敞口

鉴于美国证券交易委员会最近在发现金融不稳定和管理缺陷后撤销了Zipmex的许可证,泰国似乎对加密货币市场仍然持谨慎态度。尽管如此,这对该国拥抱数字资产仍然是一个积极的因素。

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