使用Sqoop实现Hive与MySQL数据库间数据迁移时报错
使用Sqoop实现Hive与MySQL数据库间数据迁移的时报错
执行 ./sqoop create-hive-table --connect jdbc:mysql://192.168.1.10:3306/ekp_11 --table job_log --username root --password 123456 --hive-table job_log
准备将关系型数据的表结构复制到hive中。但是提示如下一堆错误信息:
Warning: /usr/lib/hbase does not exist! HBase imports will fail.
Please set $HBASE_HOME to the root of your HBase installation.
Warning: /usr/lib/hcatalog does not exist! HCatalog jobs will fail.
Please set $HCAT_HOME to the root of your HCatalog installation.
15/08/02 02:04:14 WARN tool.BaseSqoopTool: Setting your password on the command-line is insecure. Consider using -P instead.
15/08/02 02:04:14 INFO tool.BaseSqoopTool: Using Hive-specific delimiters for output. You can override
15/08/02 02:04:14 INFO tool.BaseSqoopTool: delimiters with --fields-terminated-by, etc.
15/08/02 02:04:14 INFO manager.MySQLManager: Preparing to use a MySQL streaming resultset.
15/08/02 02:04:14 INFO manager.SqlManager: Executing SQL statement: SELECT t.* FROM `job_log` AS t LIMIT 1
15/08/02 02:04:14 INFO manager.SqlManager: Executing SQL statement: SELECT t.* FROM `job_log` AS t LIMIT 1
15/08/02 02:04:14 WARN hive.TableDefWriter: Column fd_start_time had to be cast to a less precise type in Hive
15/08/02 02:04:14 WARN hive.TableDefWriter: Column fd_end_time had to be cast to a less precise type in Hive
Java HotSpot(TM) 64-Bit Server VM warning: You have loaded library /cloud/Hadoop-2.2.0/lib/native/libhadoop.so which might have disabled stack guard. The VM will try to fix the stack guard now.
It's highly recommended that you fix the library with 'execstack -c
15/08/02 02:04:16 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable
15/08/02 02:04:17 INFO hive.HiveImport: Loading uploaded data into Hive
15/08/02 02:04:17 ERROR tool.CreateHiveTableTool: Encountered IOException running create table job: java.io.IOException: Cannot run program "hive": error=2, No such file or directory
at java.lang.ProcessBuilder.start(ProcessBuilder.java:1047)
at java.lang.Runtime.exec(Runtime.java:617)
at java.lang.Runtime.exec(Runtime.java:528)
at org.apache.sqoop.util.Executor.exec(Executor.java:76)
at org.apache.sqoop.hive.HiveImport.executeExternalHiveScript(HiveImport.java:382)
at org.apache.sqoop.hive.HiveImport.executeScript(HiveImport.java:335)
at org.apache.sqoop.hive.HiveImport.importTable(HiveImport.java:239)
at org.apache.sqoop.tool.CreateHiveTableTool.run(CreateHiveTableTool.java:58)
at org.apache.sqoop.Sqoop.run(Sqoop.java:145)
at org.apache.hadoop.util.ToolRunner.run(ToolRunner.java:70)
at org.apache.sqoop.Sqoop.runSqoop(Sqoop.java:181)
at org.apache.sqoop.Sqoop.runTool(Sqoop.java:220)
at org.apache.sqoop.Sqoop.runTool(Sqoop.java:229)
at org.apache.sqoop.Sqoop.main(Sqoop.java:238)
Caused by: java.io.IOException: error=2, No such file or directory
at java.lang.UNIXProcess.forkAndExec(Native Method)
at java.lang.UNIXProcess.
at java.lang.ProcessImpl.start(ProcessImpl.java:130)
at java.lang.ProcessBuilder.start(ProcessBuilder.java:1028)
... 13 more
惯性思维作祟,以为sqoop能智能到自己去找到本机的hive。
解决方案:为sqoop配置你使用的hive环境
具体步骤如下:
1、找到/sqoop-1.4.4/conf下的sqoop-env-template.sh 文件,将这个文件重命名为sqoop-env.sh ;
2、编辑sqoop-env.sh 文件,,将你的hive的安装目录配上就OK。
如:export HIVE_HOME=/cloud/apache-hive-1.2.1-bin
相关阅读:
通过Sqoop实现Mysql / Oracle 与HDFS / Hbase互导数据
[Hadoop] Sqoop安装过程详解
用Sqoop进行MySQL和HDFS系统间的数据互导
Hadoop Oozie学习笔记 Oozie不支持Sqoop问题解决
Hadoop生态系统搭建(hadoop hive hbase zookeeper oozie Sqoop)
Hadoop学习全程记录——使用Sqoop将MySQL中数据导入到Hive中
Sqoop 的详细介绍:请点这里
Sqoop 的下载地址:请点这里
本文永久更新链接地址:

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



InnoDB's full-text search capabilities are very powerful, which can significantly improve database query efficiency and ability to process large amounts of text data. 1) InnoDB implements full-text search through inverted indexing, supporting basic and advanced search queries. 2) Use MATCH and AGAINST keywords to search, support Boolean mode and phrase search. 3) Optimization methods include using word segmentation technology, periodic rebuilding of indexes and adjusting cache size to improve performance and accuracy.

The article discusses using MySQL's ALTER TABLE statement to modify tables, including adding/dropping columns, renaming tables/columns, and changing column data types.

Full table scanning may be faster in MySQL than using indexes. Specific cases include: 1) the data volume is small; 2) when the query returns a large amount of data; 3) when the index column is not highly selective; 4) when the complex query. By analyzing query plans, optimizing indexes, avoiding over-index and regularly maintaining tables, you can make the best choices in practical applications.

Yes, MySQL can be installed on Windows 7, and although Microsoft has stopped supporting Windows 7, MySQL is still compatible with it. However, the following points should be noted during the installation process: Download the MySQL installer for Windows. Select the appropriate version of MySQL (community or enterprise). Select the appropriate installation directory and character set during the installation process. Set the root user password and keep it properly. Connect to the database for testing. Note the compatibility and security issues on Windows 7, and it is recommended to upgrade to a supported operating system.

The difference between clustered index and non-clustered index is: 1. Clustered index stores data rows in the index structure, which is suitable for querying by primary key and range. 2. The non-clustered index stores index key values and pointers to data rows, and is suitable for non-primary key column queries.

Article discusses popular MySQL GUI tools like MySQL Workbench and phpMyAdmin, comparing their features and suitability for beginners and advanced users.[159 characters]

Article discusses strategies for handling large datasets in MySQL, including partitioning, sharding, indexing, and query optimization.

The article discusses dropping tables in MySQL using the DROP TABLE statement, emphasizing precautions and risks. It highlights that the action is irreversible without backups, detailing recovery methods and potential production environment hazards.
