zoukankan      html  css  js  c++  java
  • Sqoop Import HDFS

    Sqoop import应用场景——密码访问

     注:测试用表为本地数据库中的表

    1.明码访问

    sqoop list-databases 
     --connect jdbc:mysql://202.193.60.117/dataweb 
     --username root 
     --password 20134997

     2.交互式密码

    sqoop list-databases 
    --connect jdbc:mysql://202.193.60.117/dataweb 
     --username root 
     --P

     

    3.文件授权密码

    sqoop list-databases 
     --connect jdbc:mysql://202.193.60.117/dataweb 
     --username root 
     --password-file /usr/hadoop/.password

       在运行之前先要在指定路径下创建.password文件。

    [hadoop@centpy ~]$ cd /usr/hadoop/
    [hadoop@centpy hadoop]$ ls
    flume  hadoop-2.6.0  sqoop
    [hadoop@centpy hadoop]$ echo -n "20134997" > .password
    [hadoop@centpy hadoop]$ ls -a
    .  ..  flume  hadoop-2.6.0  .password  sqoop
    [hadoop@centpy hadoop]$ more .password 
    20134997
    [hadoop@centpy hadoop]$ chmod 400 .password //根据官方文档说明赋予400权限

       测试运行之后一定会报以下错误:

    18/06/21 16:12:48 WARN tool.BaseSqoopTool: Failed to load password file
    java.io.IOException: The provided password file /usr/hadoop/.password does not exist!
        at org.apache.sqoop.util.password.FilePasswordLoader.verifyPath(FilePasswordLoader.java:51)
        at org.apache.sqoop.util.password.FilePasswordLoader.loadPassword(FilePasswordLoader.java:85)
        at org.apache.sqoop.util.CredentialsUtil.fetchPasswordFromLoader(CredentialsUtil.java:81)
        at org.apache.sqoop.util.CredentialsUtil.fetchPassword(CredentialsUtil.java:66)
        at org.apache.sqoop.tool.BaseSqoopTool.applyCredentialsOptions(BaseSqoopTool.java:1040)
        at org.apache.sqoop.tool.BaseSqoopTool.applyCommonOptions(BaseSqoopTool.java:995)
        at org.apache.sqoop.tool.ListDatabasesTool.applyOptions(ListDatabasesTool.java:76)
        at org.apache.sqoop.tool.SqoopTool.parseArguments(SqoopTool.java:435)
        at org.apache.sqoop.Sqoop.run(Sqoop.java:131)
        at org.apache.hadoop.util.ToolRunner.run(ToolRunner.java:70)
        at org.apache.sqoop.Sqoop.runSqoop(Sqoop.java:179)
        at org.apache.sqoop.Sqoop.runTool(Sqoop.java:218)
        at org.apache.sqoop.Sqoop.runTool(Sqoop.java:227)
        at org.apache.sqoop.Sqoop.main(Sqoop.java:236)
    Error while loading password file: The provided password file /usr/hadoop/.password does not exist!

      为了解决该错误,我们需要将.password文件放到HDFS上面去,这样就能找到该文件了。

    [hadoop@centpy hadoop]$ hdfs dfs -ls /
    Found 12 items
    drwxr-xr-x   - Zimo   supergroup          0 2018-05-12 10:57 /actor
    drwxr-xr-x   - Zimo   supergroup          0 2018-05-08 16:51 /counter
    drwxr-xr-x   - hadoop supergroup          0 2018-06-19 15:55 /flume
    drwxr-xr-x   - hadoop hadoop              0 2018-04-14 14:20 /hdfsOutput
    drwxr-xr-x   - Zimo   supergroup          0 2018-05-12 15:01 /join
    drwxr-xr-x   - hadoop supergroup          0 2018-04-25 10:43 /maven
    drwxr-xr-x   - Zimo   supergroup          0 2018-05-09 09:32 /mergeSmallFiles
    drwxrwxrwx   - hadoop supergroup          0 2018-04-13 22:10 /phone
    drwxr-xr-x   - hadoop hadoop              0 2018-04-14 14:43 /test
    drwx------   - hadoop hadoop              0 2018-04-13 22:10 /tmp
    drwxr-xr-x   - hadoop hadoop              0 2018-04-14 14:34 /weather
    drwxr-xr-x   - hadoop hadoop              0 2018-05-07 10:44 /weibo
    [hadoop@centpy hadoop]$ hdfs dfs -mkdir -p /user/hadoop
    [hadoop@centpy hadoop]$ hdfs dfs -put .password /user/hadoop
    [hadoop@centpy hadoop]$ hdfs dfs -chmod 400 /user/hadoop/.password

      现在测试运行一下,注意路径改为HDFS上的/user/hadoop。

    [hadoop@centpy hadoop-2.6.0]$ sqoop list-databases  --connect jdbc:mysql://202.193.60.117/dataweb  --username root  --password-file /user/hadoop/.password
    Warning: /usr/hadoop/sqoop/../hbase does not exist! HBase imports will fail.
    Please set $HBASE_HOME to the root of your HBase installation.
    Warning: /usr/hadoop/sqoop/../hcatalog does not exist! HCatalog jobs will fail.
    Please set $HCAT_HOME to the root of your HCatalog installation.
    Warning: /usr/hadoop/sqoop/../accumulo does not exist! Accumulo imports will fail.
    Please set $ACCUMULO_HOME to the root of your Accumulo installation.
    Warning: /usr/hadoop/sqoop/../zookeeper does not exist! Accumulo imports will fail.
    Please set $ZOOKEEPER_HOME to the root of your Zookeeper installation.
    18/06/21 16:22:12 INFO sqoop.Sqoop: Running Sqoop version: 1.4.6
    18/06/21 16:22:14 INFO manager.MySQLManager: Preparing to use a MySQL streaming resultset.
    information_schema
    dataweb
    mysql
    performance_schema
    test

      可以看到成功了。

     Sqoop import应用场景——导入全表

    1.不指定目录

    sqoop import 
     --connect jdbc:mysql://202.193.60.117/dataweb 
     --username root 
     --password-file /user/hadoop/.password 
    --table user_info

      运行过程如下

    18/06/21 16:36:20 INFO client.RMProxy: Connecting to ResourceManager at /0.0.0.0:8032
    18/06/21 16:36:24 INFO db.DBInputFormat: Using read commited transaction isolation
    18/06/21 16:36:24 INFO db.DataDrivenDBInputFormat: BoundingValsQuery: SELECT MIN(`id`), MAX(`id`) FROM `user_info`
    18/06/21 16:36:25 INFO mapreduce.JobSubmitter: number of splits:3
    18/06/21 16:36:25 INFO mapreduce.JobSubmitter: Submitting tokens for job: job_1529567189245_0001
    18/06/21 16:36:26 INFO impl.YarnClientImpl: Submitted application application_1529567189245_0001
    18/06/21 16:36:27 INFO mapreduce.Job: The url to track the job: http://centpy:8088/proxy/application_1529567189245_0001/
    18/06/21 16:36:27 INFO mapreduce.Job: Running job: job_1529567189245_0001
    18/06/21 16:36:45 INFO mapreduce.Job: Job job_1529567189245_0001 running in uber mode : false
    18/06/21 16:36:45 INFO mapreduce.Job:  map 0% reduce 0%
    18/06/21 16:37:11 INFO mapreduce.Job:  map 33% reduce 0%
    18/06/21 16:37:12 INFO mapreduce.Job:  map 67% reduce 0%
    18/06/21 16:37:13 INFO mapreduce.Job:  map 100% reduce 0%
    18/06/21 16:37:14 INFO mapreduce.Job: Job job_1529567189245_0001 completed successfully
    18/06/21 16:37:14 INFO mapreduce.Job: Counters: 30
        File System Counters
            FILE: Number of bytes read=0
            FILE: Number of bytes written=371994
            FILE: Number of read operations=0
            FILE: Number of large read operations=0
            FILE: Number of write operations=0
            HDFS: Number of bytes read=295
            HDFS: Number of bytes written=44
            HDFS: Number of read operations=12
            HDFS: Number of large read operations=0
            HDFS: Number of write operations=6
        Job Counters 
            Launched map tasks=3
            Other local map tasks=3
            Total time spent by all maps in occupied slots (ms)=70339
            Total time spent by all reduces in occupied slots (ms)=0
            Total time spent by all map tasks (ms)=70339
            Total vcore-seconds taken by all map tasks=70339
            Total megabyte-seconds taken by all map tasks=72027136
        Map-Reduce Framework
            Map input records=3
            Map output records=3
            Input split bytes=295
            Spilled Records=0
            Failed Shuffles=0
            Merged Map outputs=0
            GC time elapsed (ms)=2162
            CPU time spent (ms)=3930
            Physical memory (bytes) snapshot=303173632
            Virtual memory (bytes) snapshot=6191120384
            Total committed heap usage (bytes)=85327872
        File Input Format Counters 
            Bytes Read=0
        File Output Format Counters 
            Bytes Written=44
    18/06/21 16:37:14 INFO mapreduce.ImportJobBase: Transferred 44 bytes in 54.3141 seconds (0.8101 bytes/sec)
    18/06/21 16:37:14 INFO mapreduce.ImportJobBase: Retrieved 3 records.

       再查看一下HDFS下的运行结果

    [hadoop@centpy hadoop-2.6.0]$ hdfs dfs -cat /user/hadoop/user_info/part-m-*
    1,admin,123,1
    2,hello,456,0
    3,hahaha,haha,0

      运行结果和数据库内容匹配。

    以上就是博主为大家介绍的这一板块的主要内容,这都是博主自己的学习过程,希望能给大家带来一定的指导作用,有用的还望大家点个支持,如果对你没用也望包涵,有错误烦请指出。如有期待可关注博主以第一时间获取更新哦,谢谢!

  • 相关阅读:
    关于RAM的空间使用超过限度的时候报错
    (转载)关于stm32编译后的代码空间和ram占用
    PCB文件过大的解决方法
    AD15的破解
    AD2017破解步骤
    STM32下载报错invalid rom table
    (转载)关于FLASH寿命的读写方法
    步进电机的单双极驱动
    74系列芯片中的LVC,LS,HC等的含义
    DDR3 multi-controller on ML605
  • 原文地址:https://www.cnblogs.com/zimo-jing/p/9209820.html
Copyright © 2011-2022 走看看