【比推周末重点新闻回顾】灰度申请 Dogecoin ETF,拟以“GDOG”代码上市;Gemini IPO 申请披露:上半年净亏损 2.825 亿美元,计划在纳斯达克上市;美国财政部考虑在 DeFi 协议中嵌入数字身份验证机制

比推Publicado a 2025-08-17Actualizado a 2025-08-17

比推周末重点新闻回顾:

【灰度申请 Dogecoin ETF,拟以“GDOG”代码上市】

比推消息,据 The Block 报道,Grayscale 于 8 月 15 日向美国证券交易委员会(SEC)提交申请,计划将其Dogecoin 信托基金转型为 ETF。根据申请文件显示,该ETF将在纽约证券交易所 Arca 平台上市,交易代码为“GDOG”。

目前包括 Rex-Osprey 和 Bitwise 在内的多家机构也提交了类似申请。

【Gemini IPO 申请披露:上半年净亏损 2.825 亿美元,计划在纳斯达克上市】

比推消息,据 The Block 报道,加密货币交易所 Gemini 的公开 S-1 文件于 8 月 15 日发布,披露该公司计划在纳斯达克上市,股票代码为 GEMI。文件显示,Gemini 2025 年上半年净亏损 2.825 亿美元,而 2024 年同期亏损仅为 4130 万美元。此外,Gemini 与 Ripple 于 2025 年 7 月达成了一项信贷协议,价值高达 7500 万美元,以 Ripple 的 RLUSD 稳定币支付。

【消息人士:OpenAI 成功融资逾 80 亿美元,认购需求旺盛】

比推消息,据金十数据报道,一位了解交易情况的人士透露,OpenAI 已在总额 400 亿美元的融资计划中,成功获得 83 亿美元的新一轮资金。此次融资正值该公司业务加速发展之际。该人士透露,OpenAI 的年化经常性收入已从 6 月的 100 亿美元攀升至 130 亿美元,并预计到今年年底将突破 200 亿美元。此外,ChatGPT 的付费企业用户数量也从数月前的 300 万迅速增长至 500 万。本轮募资已提前完成,认购需求旺盛,超额认购达五倍之多。

【香港证监会要求虚拟资产平台实施更严格的托管规定】

比推消息,据 Cointelegraph 报道,香港证监会(SFC)要求虚拟资产平台实施更严格的托管规定。

【标普道琼斯指数公司 S&P DJI 计划推出代币化指数产品】

比推消息,据 Cointelegraph 报道,标普道琼斯指数公司(S&P DJI)正在与主流交易所及 DeFi 协议洽谈合作,拟推出基于区块链的代币化指数产品。公司高管表示,首批产品可能包括标普 500 指数和道琼斯工业平均指数的代币化版本。

该公司此前已与 Centrifuge 合作推出基于标普 500 的链上指数基金。数据显示,截至 7 月底,代币化金融产品总市值已达 3.7 亿美元。

【美国财政部考虑在 DeFi 协议中嵌入数字身份验证机制】

比推消息,据 Cointelegraph 报道,美国财政部根据《GENIUS 法案》启动公众咨询,拟探索在 DeFi 智能合约中集成数字身份验证工具以打击非法金融活动。提案包括通过 API 接口在链上自动执行 KYC/AML 检查,同时采用生物识别等技术降低合规成本。

银行业团体警告称,若稳定币利息支付监管存在漏洞,可能导致 6.6 万亿美元银行存款外流。公众咨询将持续至 2025 年 10 月 17 日,后续财政部将向国会提交报告并可能出台新规。


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