DBA职业规划技术成长路线
转载请注明出处:http://blog.csdn.net/guoyjoe/article/details/42237127 DBA职业规划 一、Oracle DBA路线 课程规划: OracleDBA基础实战班 30课时 OracleOCP认证实战 72课时 OracleOCM认证实战 150课时 Oracle DSI核心技术实战 120课时 QTune系列I CBO内部
转载请注明出处:http://blog.csdn.net/guoyjoe/article/details/42237127
DBA职业规划
一、Oracle DBA路线

课程规划:
OracleDBA基础实战班 30课时
OracleOCP认证实战 72课时
OracleOCM认证实战 150课时
Oracle DSI核心技术实战 120课时
QTune系列I CBO内部算法 12课时
QTune系统IItransformaction 12课时
QTune系统III QTune案例实战 12课时
QTune系统IV各种丰富的调优工具 12课时
OracleRAC&ASM实战 48课时
DTrace&Mdb深入调试Oracle 48课时
二、MySQL DBA路线

课程规划:
MySQL I实战班 48课时
初级DBA(维护方向)
MySQL II实战班 48课时
中级DBA(优化方向)
MySQL III实战班 24课时
高级DBA(架构方向)
MySQL IV实战班 【本文来自鸿网互联 (http://www.68idc.cn)】 48课时
超级DBA (源码方向)
三、大数据工程师路线

课程规划:
实战Hadoop系列之基础入门 12课时
实战Hadoop系列之深入解析HDFS 12课时
实战Hadoop系列之深入解析MapReduce 16课时
实战Hadoop系列之Hadoop新特性和案例分析 12课时
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