74cms 骑士人才系统源码,74cms骑士人才源码
74cms 骑士人才系统源码,74cms骑士人才源码
骑士cms人才系统是一项基于PHP+MYSQL为核心开发的一套免费 + 开源专业人才网站系统。软件具执行效率高、模板自由切换、后台管理功能方便等诸多优秀特点。全部代码都为骑士网络原创,有着完全的知识产权。凭借骑士网络的不断创新精神和认真的工作态度,骑士人才系统已成国内同类软件中的最好用的人才系统。
骑士cms人才系统 v3.5 bulid2014.10.08 更新内容:
修正 猎头职位搜索bug
修正 职位订阅条件匹配bug
修正 微商圈页面缺失微简历选项卡问题
修正 采集接口职位分类匹配问题
修正 面试邀请、申请职位、申请课程无法发送邮件短信bug
增强 安全过滤
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下载附件 保存到相册
详细说明:http://php.662p.com/thread-514-1-1.html
骑士cms人才系统,是一项基于PHP+MYSQL为核心开发的一套免费 + 开源专业人才系统。
百度 骑士cms人才系统
嘉缘人才系统不管哪个版本都可以对前台进行二次修改及开发,骑士的应该也可以修改吧

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