共和党代表呼吁CrowdStrike首席执行官George Kurtz作证

币界网Publicado a 2024-07-22Actualizado a 2024-07-22

币界网报道:
周一,共和党代表呼吁CrowdStrike首席执行官乔治·库尔茨在众议院国土安全委员会面前作证。几天前,该公司发布了一个有缺陷的软件更新,导致数百万台微软Windows设备崩溃。根据周一的一封信,国土安全委员会主席田纳西州共和党众议员Mark Green和网络安全和基础设施保护小组委员会主席纽约州共和党众众议员Andrew Garbarino表示,这一事件是对“与网络依赖相关的国家安全风险的广泛警告”。议员们表示,停电造成了全球经济“关键职能”的中断,包括银行、航空、医疗保健、紧急服务和媒体。美国数千架航班被延误和取消,全国许多卫生系统不得不重新安排预约和非紧急程序。CrowdStrike的股价周一收盘下跌超过13%。格林和加巴里诺写道:“认识到美国人无疑会感受到这一事件的持久现实后果,他们应该详细了解这一事件是如何发生的,以及CrowdStrike正在采取的缓解措施。”。Kurtz周五表示,停电不是网络攻击或安全事件,CrowdStrike当天部署了修复程序。即便如此,议员们表示,该国需要从周五的破坏中吸取教训,确保“不再发生”。格林和加巴里诺要求CrowdStrike最迟在周三与网络安全和基础设施保护小组委员会举行听证会。CrowdStrike和微软没有立即回应CNBC的置评请求。
不要错过CNBC PRO的这些见解。分析师表示,伯克希尔哈撒韦公司已经淘汰了10%的已发行股票,因为巴菲特重视回购的持久力量。美国银行策略师表示,现在是时候看跌了。摩根士丹利正在为包括苹果在内的这些股票出牌,因为如果拜登退出竞选,“特朗普交易”可能会停滞不前

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