视频1 视频21 视频41 视频61 视频文章1 视频文章21 视频文章41 视频文章61 推荐1 推荐3 推荐5 推荐7 推荐9 推荐11 推荐13 推荐15 推荐17 推荐19 推荐21 推荐23 推荐25 推荐27 推荐29 推荐31 推荐33 推荐35 推荐37 推荐39 推荐41 推荐43 推荐45 推荐47 推荐49 关键词1 关键词101 关键词201 关键词301 关键词401 关键词501 关键词601 关键词701 关键词801 关键词901 关键词1001 关键词1101 关键词1201 关键词1301 关键词1401 关键词1501 关键词1601 关键词1701 关键词1801 关键词1901 视频扩展1 视频扩展6 视频扩展11 视频扩展16 文章1 文章201 文章401 文章601 文章801 文章1001 资讯1 资讯501 资讯1001 资讯1501 标签1 标签501 标签1001 关键词1 关键词501 关键词1001 关键词1501 专题2001
使用sqoop将mysql数据导入到hadoop_MySQL
2020-11-09 19:47:21 责编:小采
文档
hadoop的安装配置这里就不讲了。

Sqoop的安装也很简单。 完成sqoop的安装后,可以这样测试是否可以连接到mysql(注意:mysql的jar包要放到 SQOOP_HOME/lib 下): sqoop list-databases --connect jdbc:mysql://192.168.1.109:3306/ --username root --password 191231 结果如下 即说明sqoop已经可以正常使用了。 下面,要将mysql中的数据导入到hadoop中。 我准备的是一个300万条数据的身份证数据表: 先启动hive(使用命令行:hive 即可启动) 然后使用sqoop导入数据到hive: sqoop import --connect jdbc:mysql://192.168.1.109:3306/hadoop --username root --password 191231 --table test_sfz --hive-import sqoop 会启动job来完成导入工作。 完成导入用了2分20秒,还是不错的。 在hive中可以看到刚刚导入的数据表: 我们来一句sql测试一下数据: select * from test_sfz where id < 10; 可以看到,hive完成这个任务用了将近25秒,确实是挺慢的(在mysql中几乎是不费时间),但是要考虑到hive是创建了job在hadoop中跑,时间当然多。
接下来,我们会对这些数据进行复杂查询的测试: 我机子的配置如下: hadoop 是运行在虚拟机上的伪分布式,虚拟机OS是ubuntu12.04 位,配置如下:

TEST 1 计算平均年龄

测试数据:300.8 W 1. 计算广东的平均年龄 mysql:select (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz where address like '广东%'; 用时: 0.877s hive:select (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz where address like '广东%'; 用时:25.012s 2. 对每个城市的的平均年龄进行从高到低的排序 mysql:select address, (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz GROUP BY address order by ageAvge desc; 用时:2.949s hive:select address, (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz GROUP BY address order by ageAvge desc; 用时:51.29s 可以看到,在耗时上面,hive的增长速度较mysql慢。

TEST 2

测试数据:1200W mysql 引擎: MyISAM(为了加快查询速度) 导入到hive: 1. 计算广东的平均年龄 mysql:select (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 where address like '广东%'; 用时: 5.2s hive:select (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 where address like '广东%'; 用时:168.259s 2. 对每个城市的的平均年龄进行从高到低的排序 mysql:select address, (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 GROUP BY address order by ageAvge desc; 用时:11.9s hive:select address, (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 GROUP BY address order by ageAvge desc; 用时:311.714s

TEST 3

测试数据:2000W mysql 引擎: MyISAM(为了加快查询速度) 导入到hive: (这次用的时间很短!可能是因为TEST2中的导入时,我的主机在做其他耗资源的工作..) 1. 计算广东的平均年龄 mysql:select (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 where address like '广东%'; 用时: 6.605s hive:select (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 where address like '广东%'; 用时:188.206s 2. 对每个城市的的平均年龄进行从高到低的排序 mysql:select address, (sum(year(NOW()) - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 GROUP BY address order by ageAvge desc; 用时:19.926s hive:select address, (sum(year('2014-10-01') - SUBSTRING(borth,1,4))/count(*)) as ageAvge from test_sfz2 GROUP BY address order by ageAvge desc; 用时:411.816s

下载本文
显示全文
专题