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I have a number of Hive jobs that run during a day. The job is outputting data to Amazon S3. The Hive job uses dynamic partitioning.

The problem is that when different jobs need to write to the same dynamic partitioned, they will each generate one file.

What I would like is for the subsequent jobs to load the existing data and merge it with the new data.

I should mention that the query that actually outputs to S3 is an INSERT INTO TABLE query.

2 Answers 2

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Without rewriting all of the data every time, this certainly isn't possible in Hadoop 1.x, and would be very difficult in 2.0.

Fundamentally, hadoop 1.x does not support file appends. If a new process comes along and wants to write to a directory, it must create new files; it's impossible to append to already-existing ones.

Even if it were possible to append (as in 2.0), there would be many race conditions and other things for hive to worry about. It's a very difficult problem.

However, this is a common issue. The typical solution is to let your process add the new files, and periodically run a "compaction" job that just does something like:

insert overwrite table my_table partition (foo='bar')
select * from my_table where foo = 'bar'
distribute by foo;

This should force just one file to be created. However, again you should worry about race conditions. Either make sure you have locking enabled, or only compact partitions that you are sure are not being written to.

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  • Not the answer I hoped for, but I apparently everyone leads me into this direction :) Commented Jan 29, 2014 at 23:11
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I think you can try INSERT OVERWRITE TABLE

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  • I that case I would loose my existing data or I would have to preselect the data in the first place. Both of these are not really good options for me. Commented Jan 29, 2014 at 7:08
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    Okay, I misunderstand your demand. I think it is no problem that you have many files in a folder. If you wanna merge them, you can use another program to archive it.
    – pensz
    Commented Jan 29, 2014 at 7:44

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