apache为何不能解析php
apache为什么不能解析php
我们的php文件都是有apache 调用php服务器来解析的,那为什么apache自己不能解析呢,求大家帮忙讨论一下
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分工协作不是很好吗?干嘛要一个人大包大揽
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非要一个搞定的话
你可以用nginx,支持直接c开发业务
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各司其职,这样才更专业
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是php解析器,不是服务器。分工解耦合不是更好么?
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任务分工,一个是解释语言,一个是服务工具。
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这个语言不只是一个 PHP 你做底层服务的 你只为金三盘服务吗?那是朝鲜...

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