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It is a known fact that hadoop works with MapReduce concept. But it is not logically possible to split a database into blocks of data. For this purpose we have Apache sqoop which imports the contents of a database table to HDFS.

My question is - Is it really that much advantageous to use sqoop with Hadoop? If Yes, can any one explain me with a real time example where hadoop has been implemented to work with MapReduce on databases?

It would be really good if I get to know how MapReduce is implemented in databases related processing.

Thanks in advance.

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3 Answers 3

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BigSQL combines PostgreSQL and Hadoop. MongoDB MapReduce is a pure MapReduce implamentation on "database".

Is that what you're asking?

Otherwise sqoop is great and is widely adopted. Examples: Manufacturing, Healthcare.

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Thanks for the examples. Will it be really efficient in using Hadoop for database processing? I thought it will be great only for processing files. –  Orochimaru Feb 27 '14 at 12:30
    
You don't actually process the data. Sqoop is mainly for import and export of the data. Import from DB to HDFS -> Process with MapReduce -> export back to DB. That's the main pattern. –  Viacheslav Rodionov Feb 27 '14 at 12:34
    
So it is better to use sqoop right? Also sqoop will have an upper hand over BigSQL and MongoDB right? –  Orochimaru Mar 5 '14 at 14:32
    
If you're going to use Big Data then definitely go with Sqoop. –  Viacheslav Rodionov Mar 5 '14 at 14:42

Sqoop brings in lot of simplification in terms of import and export data between Hadoop and MySQL. But if we look at the parallelism it supports with more than one map tasks, I would say it consumes a lot more time than the traditional import supported by each databases. (Ex - mysqldump ).

Because if we configure number of maps as 10 by -m 10, Sqoop does the job in two stages.

  1. Applies a query on the table(s) to find out the MIN and MAX values for the --split-by column. (Primary key, if nothing is configured)

  2. Once MIN and MAX values are calculated, depending upon the number of maps, it splits the query with particular small ranges that corresponds to each map task and then again goes to database to fetch the data and populate it in HDFS.

So I would say it consumes X+Y amount of time, where x is amount of time taken by the traditional query or the query ran as the result of first stage in sqoop.

Summary : Sqoop can be used for import and export of data between hadoop and rdbms in very simple way. But it will never help in achieving/completing the task in lesser time.

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Each chapter in sqoop documentation provides multiple examples on how to use it, for example : sqoop import example invocations

Generally speaking sqoop is the simplest way to import/export your data between HDFS using MapReduce and SQL databases.

This presentation provides very good introduction into Sqoop usage and internals.

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