实现Hive数据同步更新的shell脚本
上一篇文章《Sqoop1.4.4 实现将 Oracle10g 中的增量数据导入 Hive0.13.1 ,并更新Hive中的主表》描述了增量更新Hive表的原理和Sq
引言:
上一篇文章《Sqoop1.4.4 实现将 Oracle10g 中的增量数据导入 Hive0.13.1 ,,并更新Hive中的主表
shell脚本
#!/bin/bash
#Please set the synchronize interval,unit is hour.
update_interval=24
#Please set the RDBMS connection params
rdbms_connstr="jdbc:oracle:thin:@192.168.0.147:1521:ORCLGBK"
rdbms_username="SP"
rdbms_pwd="fulong"
rdbms_table="OMP_SERVICE"
rdbms_columns="ID,SERVICE_NAME,SERVICE_PROCESS,CREATE_TIME,ENABLE_ORG,ENABLE_PLATFORM,IF_DEL"
#Please set the hive params
hive_increment_table="SERVICE_TMP"
hive_full_table="service_all"
#---------------------------------------------------------
#Import icrement data in RDBMS into Hive
enddate=$(date '+%Y/%m/%d %H:%M:%S')
startdate=$(date '+%Y/%m/%d %H:%M:%S' -d '-'+${update_interval}+' hours')
$SQOOP_HOME/bin/sqoop import --connect ${rdbms_connstr} --username ${rdbms_username} --password ${rdbms_pwd} --table ${rdbms_table} --columns "${rdbms_columns}" --where "CREATE_TIME > to_date('${startdate}','yyyy-mm-dd hh24:mi:ss') and CREATE_TIME
#---------------------------------------------------------
#Update the old full data table to latest status
$HIVE_HOME/bin/hive -e "insert overwrite table ${hive_full_table} select * from ${hive_increment_table} union all select a.* from ${hive_full_table} a left outer join ${hive_increment_table} b on a.service_code = b.service_code where b.service_code is null;"
注意:
在shell脚本中执行hive hql的命令格式是 hive -e "select ..."
Cron脚本
添加定时任务每天凌晨2点执行该脚本
0 2 * * * /home/fulong/shell/dataSync.sh
基于Hadoop集群的Hive安装
Hive内表和外表的区别
Hadoop + Hive + Map +reduce 集群安装部署
Hive本地独立模式安装
Hive学习之WordCount单词统计
Hive运行架构及配置部署
Hive 的详细介绍:请点这里
Hive 的下载地址:请点这里
本文永久更新链接地址:

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