BiFinance 完成 1000 万美元A轮融资,携上市企业加速 Web3 金融革新

链捕手Pubblicato 2024-08-21Pubblicato ultima volta 2024-08-21

近日,BiFinance宣布成功完成1000万美元的A轮融资。本轮融资由 Sunfund Fortuna Global Opportunities(东皓亚洲旗下基金)领投,鼎亿集团投资(HK:0508)、SDM教育(HK:8363)、TigerVCDAO等多家知名港股上市公司机构跟投。

BiFinance将与这些战略合作伙伴在区块链技术、现实世界资产(RWA)、数字身份和数字资产等领域展开深度合作,推动传统金融资产向数字资产的转型,加速Web3生态系统的建设。

在与媒体链捕手联合举办的space上,BiFinance CEO Bob分享了公司未来发展战略规划与A轮融资用途:

技术创新和资产数字化

BiFinance将利用这笔资金加速传统金融资产的数字化进程,包括股票、债券、基金等。通过资产支撑代币(RWA/STO)服务,公司将为企业提供创新的资产管理和交易解决方案,实现传统金融与Web3生态系统的深度融合。

扩展全生态Web3服务

融资将支持BiFinance扩展平台功能,包括交易、质押和支付等服务,提升用户体验,建立一个更全面、更高效的数字金融生态系统。

国际化战略

资金将助力BiFinance拓展国际市场,通过与SDM教育集团等战略伙伴的合作,加速全球业务布局,提供本地化服务,提升全球市场影响力。

推动技术创新

BiFinance计划加大对区块链技术的研发投入,增强平台的安全性和功能性,进一步推动加密货币与传统金融市场的紧密连接。

此次融资space还通过链捕手等知名媒体平台的联合举办,汇集了业内专家、KOL及广大用户,共同探讨了加密货币市场的未来发展和BiFinance的战略方向,BiFinance表示将继续致力于推动web3金融行业的变革,为全球用户创造更多机会和价值。

关于BiFinance

BiFinance是一家领先的数字资产交易平台,致力于通过创新的区块链技术和加密货币解决方案,推动传统金融市场与Web3生态系统的深度融合。公司提供全面的数字金融服务,包括资产管理、交易、质押和支付,为全球用户提供优质的投资机会和融资服务。

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