以色列银行用新的识别码将Revolut集成到支付系统中

币界网Publicado a 2024-08-20Actualizado a 2024-08-20

币界网报道:

以色列银行授予Revolut一个唯一的识别码,标志着该公司正式进入该国受监管的支付系统。此次整合是该行将全球金融科技公司整合到本地支付领域战略的一部分。

全球金融科技一体化

以色列银行今天(星期二)提到,以色列银行向Revolut发放唯一识别码的举措与其将全球金融科技公司整合到当地支付系统的更广泛战略相一致。识别码78允许像Revolut这样的金融科技公司分配支付账号,并促进系统内的无缝识别。

Revolut成功获得识别码反映了以色列银行对向非银行实体开放支付系统的承诺。此举是该行“国际纲要”的一部分,该纲要为符合特定条件的外国持牌公司提供了便利。

以色列银行支付和结算系统部主任Oded Salomy表示:“以色列银行领导的步骤为全球金融科技公司和来自不同领域的公司在以色列的支付领域创造了机会,并在整个准入过程中提供了监管指导。”

“这些措施将促进金融体系的竞争,并将有助于改善服务和降低成本。以色列银行将继续发展以色列支付市场,并努力向非银行参与者开放受控支付系统。”

Eying多元化金融解决方案

据报道,该框架旨在通过引入创新参与者和多样化的金融解决方案来加强以色列的支付系统。作为第二家获得此类ID代码的全球金融科技公司,Revolut加入了一个独家集团,该集团有望从以色列银行现代化和扩大当地金融市场的努力中受益。

Revolut还与其他公司建立了重要的合作伙伴关系。就在最近,这家金融科技公司整合了Ledger Live,这是一个管理数字资产的流行平台。此次合作承诺将使加密货币购买变得更容易、更快、更安全。

这种合作关系允许Revolut的用户直接通过Ledger Live应用程序购买加密货币。它还旨在使数字资产管理变得可访问。据报道,该应用程序使用户能够将法定货币转换为加密货币,绕过额外的身份检查和多重验证。

在新加坡,Revolut首次推出了企业对企业(B2B)服务Revolut business。该公司还在其母国英国获得了银行牌照。

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