1.Sqoop1与Sqoop2的优缺点
比较
Sqoop1
Sqoop2
架构
仅仅使用一个Sqoop客户端
引入了Sqoop server集中化管理connector,以及rest api,web,UI,并引入权限安全机制
部署
部署简单,安装需要root权限,connector必须符合JDBC模型
架构稍复杂,配置部署更繁琐
使用
命令行方式容易出错,格式紧耦合,无法支持所有数据类型,安全机制不够完善,例如密码暴漏
多种交互方式,命令行,web UI,rest API,conncetor集中化管理,所有的链接安装在Sqoop server上,完善权限管理机制,connector规范化,仅仅负责数据的读写
5.Sqoop的安装部署
5.0 安装环境
hadoop:hadoop-1.0.4
sqoop:sqoop-1.4.5.bin__hadoop-1.0.0
5.1 下载安装包及解压
tar -zxvf sqoop-1.4.5.bin__hadoop-1.0.0.tar.gz
ln -s ./package/sqoop-1.4.5.bin__hadoop-1.0.0/ sqoop
5.2 配置环境变量和配置文件
cd sqoop/conf/
mv sqoop-env-template.sh sqoop-env.sh
vi sqoop-env.sh
在sqoop-env.sh中添加如下代码
view sourceprint?01.#Set path to where bin/hadoop is available
02.export HADOOP_COMMON_HOME=/home/hadoop/hadoop
03.
04.#Set path to where hadoop-*-core.jar is available
05.export HADOOP_MAPRED_HOME=/home/hadoop/hadoop
06.
07.#set the path to where bin/hbase is available
08.export HBASE_HOME=/home/hadoop/hbase
09.
10.#Set the path to where bin/hive is available
11.export HIVE_HOME=/home/hadoop/hive
12.
13.#Set the path for where zookeper config dir is
14.export ZOOCF<A class=keylink href="http://www.it165.net/pro/" target=_blank>GDI</A>R=/home/hadoop/zookeeper
(如果数据读取不设计hbase和hive,那么相关hbase和hive的配置可以不加,如果集群有独立的zookeeper集群,那么配置zookeeper,反之,不用配置)。
5.3 copy需要的lib包到Sqoop/lib
所需的包:hadoop-core包、Oracle的jdbc包、mysql的jdbc包(由于我的项目只用到Oracle,因此只用了oracle的jar包:ojdbc6.jar)
cp ~/hadoop/hadoop-core-1.0.4.jar ~/sqoop/lib/
cp ojdbc6.jar ~/sqoop/lib/
5.4 添加环境变量
vi ~/.bash_profile
添加如下内容
view sourceprint?1.#Sqoop
2.export SQOOP_HOME=/home/hadoop/sqoop
3.export PATH=$PATH:$SQOOP_HOME/bin
source ~/.bash_profile
5.5 测试oracle数据库的连接使用
①连接oracle数据库,列出所有的数据库
[hadoop@eb179 sqoop]$sqoop list-databases --connect jdbc:oracle:thin:@10.1.69.173:1521:ORCLBI --username huangq -P
或者sqoop list-databases --connect jdbc:oracle:thin:@10.1.69.173:1521:ORCLBI --username huangq --password 123456
Warning: /home/hadoop/sqoop/../hcatalog does not exist! HCatalog jobs will fail.
Please set $HCAT_HOME to the root of your HCatalog installation.
Warning: /home/hadoop/sqoop/../accumulo does not exist! Accumulo imports will fail.
Please set $ACCUMULO_HOME to the root of your Accumulo installation.
Warning: $HADOOP_HOME is deprecated.
14/08/17 11:59:24 INFO sqoop.Sqoop: Running Sqoop version: 1.4.5
Enter password:
14/08/17 11:59:27 INFO oracle.OraOopManagerFactory: Data Connector for Oracle and Hadoop is disabled.
14/08/17 11:59:27 INFO manager.SqlManager: Using default fetchSize of 1000
14/08/17 11:59:51 INFO manager.OracleManager: Time zone has been set to GMT
MRDRP
MKFOW_QH
②Oracle数据库的表导入到HDFS
注意:
默认情况下会使用4个map任务,每个任务都会将其所导入的数据写到一个单独的文件中,4个文件位于同一目录,本例中 -m1表示只使用一个map任务文本文件不能保存为二进制字段,并且不能区分null值和字符串值"null" 执行下面的命令后会生成一个ENTERPRISE.java文件,可以通过ls ENTERPRISE.java查看,代码生成是sqoop导入过程的必要部分,sqoop在将源数据库中的数据写到HDFS前,首先会用生成的代码将其进行反序列化
[hadoop@eb179 ~]$ sqoop import --connect jdbc:oracle:thin:@10.1.69.173:1521:ORCLBI --username huangq --password 123456 --table ORD_UV -m 1 --target-dir /user/sqoop/test --direct-split-size 67108864
Warning: /home/hadoop/sqoop/../hcatalog does not exist! HCatalog jobs will fail.
Please set $HCAT_HOME to the root of your HCatalog installation.
Warning: /home/hadoop/sqoop/../accumulo does not exist! Accumulo imports will fail.
Please set $ACCUMULO_HOME to the root of your Accumulo installation.
Warning: $HADOOP_HOME is deprecated.
14/08/17 15:21:34 INFO sqoop.Sqoop: Running Sqoop version: 1.4.5
14/08/17 15:21:34 WARN tool.BaseSqoopTool: Setting your password on the command-line is insecure. Consider using -P instead.
14/08/17 15:21:34 INFO oracle.OraOopManagerFactory: Data Connector for Oracle and Hadoop is disabled.
14/08/17 15:21:34 INFO manager.SqlManager: Using default fetchSize of 1000
14/08/17 15:21:34 INFO tool.CodeGenTool: Beginning code generation
14/08/17 15:21:46 INFO manager.OracleManager: Time zone has been set to GMT
14/08/17 15:21:46 INFO manager.SqlManager: Executing SQL statement: SELECT t.* FROM ORD_UV t WHERE 1=0
14/08/17 15:21:46 INFO orm.CompilationManager: HADOOP_MAPRED_HOME is /home/hadoop/hadoop
Note: /tmp/sqoop-hadoop/compile/328657d577512bd2c61e07d66aaa9bb7/ORD_UV.java uses or overrides a deprecated API.
Note: Recompile with -Xlint:deprecation for details.
14/08/17 15:21:47 INFO orm.CompilationManager: Writing jar file: /tmp/sqoop-hadoop/compile/328657d577512bd2c61e07d66aaa9bb7/ORD_UV.jar
14/08/17 15:21:47 INFO manager.OracleManager: Time zone has been set to GMT
14/08/17 15:21:47 INFO manager.OracleManager: Time zone has been set to GMT
14/08/17 15:21:47 INFO mapreduce.ImportJobBase: Beginning import of ORD_UV
14/08/17 15:21:47 INFO manager.OracleManager: Time zone has been set to GMT
14/08/17 15:21:49 INFO db.DBInputFormat: Using read commited transaction isolation
14/08/17 15:21:49 INFO mapred.JobClient: Running job: job_201408151734_0027
14/08/17 15:21:50 INFO mapred.JobClient: map 0% reduce 0%
14/08/17 15:22:12 INFO mapred.JobClient: map 100% reduce 0%
14/08/17 15:22:17 INFO mapred.JobClient: Job complete: job_201408151734_0027
14/08/17 15:22:17 INFO mapred.JobClient: Counters: 18
14/08/17 15:22:17 INFO mapred.JobClient: Job Counters
14/08/17 15:22:17 INFO mapred.JobClient: SLOTS_MILLIS_MAPS=15862
14/08/17 15:22:17 INFO mapred.JobClient: Total time spent by all reduces waiting after reserving slots (ms)=0
14/08/17 15:22:17 INFO mapred.JobClient: Total time spent by all maps waiting after reserving slots (ms)=0
14/08/17 15:22:17 INFO mapred.JobClient: Launched map tasks=1
14/08/17 15:22:17 INFO mapred.JobClient: SLOTS_MILLIS_REDUCES=0
14/08/17 15:22:17 INFO mapred.JobClient: File Output Format Counters
14/08/17 15:22:17 INFO mapred.JobClient: Bytes Written=1472
14/08/17 15:22:17 INFO mapred.JobClient: FileSystemCounters
14/08/17 15:22:17 INFO mapred.JobClient: HDFS_BYTES_READ=87
14/08/17 15:22:17 INFO mapred.JobClient: FILE_BYTES_WRITTEN=33755
14/08/17 15:22:17 INFO mapred.JobClient: HDFS_BYTES_WRITTEN=1472
14/08/17 15:22:17 INFO mapred.JobClient: File Input Format Counters
14/08/17 15:22:17 INFO mapred.JobClient: Bytes Read=0
14/08/17 15:22:17 INFO mapred.JobClient: Map-Reduce Framework
14/08/17 15:22:17 INFO mapred.JobClient: Map input records=81
14/08/17 15:22:17 INFO mapred.JobClient: Physical memory (bytes) snapshot=192405504
14/08/17 15:22:17 INFO mapred.JobClient: Spilled Records=0
14/08/17 15:22:17 INFO mapred.JobClient: CPU time spent (ms)=1540
14/08/17 15:22:17 INFO mapred.JobClient: Total committed heap usage (bytes)=503775232
14/08/17 15:22:17 INFO mapred.JobClient: Virtual memory (bytes) snapshot=2699571200
14/08/17 15:22:17 INFO mapred.JobClient: Map output records=81
14/08/17 15:22:17 INFO mapred.JobClient: SPLIT_RAW_BYTES=87
14/08/17 15:22:17 INFO mapreduce.ImportJobBase: Transferred 1.4375 KB in 29.3443 seconds (50.1631 bytes/sec)
14/08/17 15:22:17 INFO mapreduce.ImportJobBase: Retrieved 81 records.
③数据导出Oracle和HBase
使用export可将hdfs中数据导入到远程数据库中
export --connect jdbc:oracle:thin:@192.168.**.**:**:**--username **--password=** -m1table VEHICLE--export-dir /user/root/VEHICLE
向Hbase导入数据
sqoop import --connect jdbc:oracle:thin:@192.168.**.**:**:**--username**--password=**--m 1 --table VEHICLE --hbase-create-table --hbase-table VEHICLE--hbase-row-key ID --column-family VEHICLEINFO --split-by ID
5.6 测试Mysql数据库的使用
前提:导入mysql jdbc的jar包
①测试数据库连接
sqoop list-databases –connect jdbc:mysql://192.168.10.63 –username root–password 123456
②Sqoop的使用
以下所有的命令每行之后都存在一个空格,不要忘记
(以下6中命令都没有进行过成功测试)
<1>mysql–>hdfs
sqoop export –connect
jdbc:mysql://192.168.10.63/ipj
–username root
–password 123456
–table ipj_flow_user
–export-dir hdfs://192.168.10.63:8020/user/flow/part-m-00000
前提:
(1)hdfs中目录/user/flow/part-m-00000必须存在
(2)如果集群设置了压缩方式lzo,那么本机必须得安装且配置成功lzo
(3)hadoop集群中每个节点都要有对mysql的操作权限
<2>hdfs–>mysql
sqoop import –connect
jdbc:mysql://192.168.10.63/ipj
–table ipj_flow_user
<3>mysql–>hbase
sqoop import –connect
jdbc:mysql://192.168.10.63/ipj
–table ipj_flow_user
–hbase-table ipj_statics_test
–hbase-create-table
–hbase-row-key id
–column-family imei
<4>hbase–>mysql
关于将Hbase的数据导入到mysql里,Sqoop并不是直接支持的,一般采用如下3种方法:
第一种:将Hbase数据扁平化成HDFS文件,然后再由Sqoop导入.
第二种:将Hbase数据导入Hive表中,然后再导入mysql。
第三种:直接使用Hbase的Java API读取表数据,直接向mysql导入
不需要使用Sqoop。
<5>mysql–>hive
sqoop import –connect
jdbc:mysql://192.168.10.63/ipj
–table hive_table_test
–hive-import
–hive-table hive_test_table 或–create-hive-table hive_test_table
<6>hive–>mysql
sqoop export –connect
jdbc:mysql://192.168.10.63/ipj
–username hive
–password 123456
–table target_table
–export-dir /user/hive/warehouse/uv/dt=mytable
前提:mysql中表必须存在
③Sqoop其他操作
<1>列出mysql中的所有数据库
sqoop list-databases –connect jdbc:mysql://192.168.10.63:3306/ –usernameroot –password 123456
<2>列出mysql中某个库下所有表
sqoop list-tables –connect jdbc:mysql://192.168.10.63:3306/ipj –usernameroot –password 123456
6 Sqoop1的性能
测试数据:
表名:tb_keywords
行数:11628209
数据文件大小:1.4G
测试结果:
HDFS--->DB
HDFS<---DB
Sqoop
428s
166s
HDFS<->FILE<->DB
209s
105s
从结果上来看,以FILE作为中转方式性能是要高于SQOOP的,原因如下:
本质上SQOOP使用的是JDBC,效率不会比MYSQL自带的导入\导出工具效率高以导入数据到DB为例,SQOOP的设计思想是分阶段提交,也就是说假设一个表有1K行,那么它会先读出100行(默认值),然后插入,提交,再读取100行……如此往复
即便如此,SQOOP也是有优势的,比如说使用的便利性,任务执行的容错性等。在一些测试环境中如果需要的话可以考虑把它拿来作为一个工具使用。