Sun:不会关闭任何源代码 MySQL永远开源_MySQL
上周MySQL Conference and Expo会议上SUN曾表示要关闭部分Mysql源代码,此举立即激起了开源社区的愤怒。目前,SUN前CEO Marten Mickos出面澄清,MySQL永远都是开源软件。
该争议的中心在于报导说SUN计划关闭MySQL 6.0版本中的备份功能源代码,仅有付费的企业版用户才可以修改这部分代码。
Mickos澄清,SUN不会减少或关闭任何社区版MySQL的功能.无论社区版或是企业版的用户都可以拥有核心备份功能和备份API.但是针对付费的企业用户,SUN计划专门开发高级加载项功能,例如加密和压缩功能。
Mickos认为,这也就是之前误解的渊源,SUN不会关闭任何MySQL的源代码,MySQL基于GPL软件发布许可,并会继续受到GPL的保护.任何用户都可能通过API建立他自己的加载项或是修改其中的内容。

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