甲骨文与MySQL谈判 收购矛头开始指向开源_MySQL
甲骨文
【赛迪网讯】2月17日消息,甲骨文周三宣布收购瑞典电信基础构架软件商HotSip,但未公布具体的交易额。由此不难看出,甲骨文的疯狂并购远远没有结束。据国外杂志《红鲱鱼》报道,收购HotSip公司将进一步巩固甲骨文在电信市场的地位,从容应对此前已进入该市场的BEA系统公司的竞争威胁。与此同时,甲骨文还与开源数据库服务商MySQL展开谈判,但MySQL公司CEO马丁-米库斯表示,MySQL已拒绝了甲骨文的收购 要约,因为该公司希望保持独立。本周早些时候,甲骨文宣布建立1850万的风险资本基金。甲骨文一位发言人不愿对收购MySQL事宜发表评论。
本周初,甲骨文收购了位于加州的开源数据库提供商Sleepycat。近期的一系列举动表明,甲骨文已准备拥抱开源商业模式,与传统的商业软件不同,开源软件大多是免费的,厂商的收入主要来自维护和技术支持服务,然而到目前为止,商业软件仍然是甲骨文的主要收入来源。
甲骨文的最新战略显然与其CEO拉里-埃利森去年九月份的声明不相符合,埃利森当时表示,经过一年的突击收购之后,甲骨文将放缓收购步伐。甲骨文的新战略显然已有所变化,与以往专注于商务应用不同,现在更加倾向于开源及商务智能领域。(n102)
作者:啸风

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