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I have a map-reduce java program in which I try to only compress the mapper output but not the reducer output. I thought that this would be possible by setting the following properties in the Configuration instance as listed below. However, when I run my job, the generated output by the reducer still is compressed since the file generated is: part-r-00000.gz. Has anyone successfully just compressed the mapper data but not the reducer? Is that even possible?

//Compress mapper output

conf.setBoolean("mapred.output.compress", true);
conf.set("mapred.output.compression.type", CompressionType.BLOCK.toString());
conf.setClass("mapred.output.compression.codec", GzipCodec.class, CompressionCodec.class);
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6 Answers 6

up vote 10 down vote accepted

With MR2, now we should set

conf.set("mapreduce.map.output.compress", true)
conf.set("mapreduce.output.fileoutputformat.compress", false)

For more details, refer: http://hadoop.apache.org/docs/stable/hadoop-mapreduce-client/hadoop-mapreduce-client-core/mapred-default.xml

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In case somebody is interested how this works for avro, since avro supports only snappy and deflate, this configuration is the best. The final reduced file names won't change, however you will observe that the file sizes change due to compression on internal block level. More details here: quora.com/Can-avro-data-files-be-lzop-compressed-in-Hadoop –  Ravindranath Akila Nov 26 '14 at 7:49

mapred.compress.map.output: Is the compression of data between the mapper and the reducer. If you use snappy codec this will most likely increase read write speed and reduce network overhead. Don't worry about spitting here. These files are not stored in hdfs. They are temp files that exist only for the map reduce job.

mapred.map.output.compression.codec: I would use snappy

mapred.output.compress: This boolean flag will define is the whole map/reduce job will output compressed data. I would always set this to true also. Faster read/write speeds and less disk spaced used.

mapred.output.compression.type: I use block. This will make the compression slittable even for all compression formats (gzip, snappy, and bzip2) just make sure your using a splitable file format like sequence, RCFile, or Avro.

mapred.output.compression.codec: this is the compression codec for the map/reduce job. I mostly use one of the three: Snappy (Fastest r/w 2x-3x compression), gzip (normal r fast w 5x-8x compression), bzip2 (slow r/w 8x-12x compression)

Also remember when compression mapred output, that because of splitting compression will differ base on your sorting order. The close like data is together the better the compression.

:)

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4  
How do I know if the map output actually got compressed? By comparing the "Map output bytes" without compression and with compression? I see that my map output bytes is around 91 GB. Is it a good candidate for map output compression? In general, how would I find good candidates for map output compression. Is the "map output bytes" a good indicator? –  Venk K Aug 29 '13 at 19:50
    
hadoop 2.* version now uses mapreduce.*.*, read my answer below –  fengyun May 19 '14 at 8:56

"output compression" will compress your final output. To compress map-outputs only, use something like this:

  conf.set("mapred.compress.map.output", "true")
  conf.set("mapred.output.compression.type", "BLOCK"); 
  conf.set("mapred.map.output.compression.codec", "org.apache.hadoop.io.compress.GzipCodec"); 
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Using gzip as compressor is not such a good idea. The main problem is that it is not splittable. –  Niels Basjes Apr 7 '11 at 15:31
5  
Why? I thought that mapper output does not get split, only if using the reducer or identity reducer the output may get split. –  Marcin Apr 7 '11 at 17:59
    
My understanding is using GZIP to compress the input data is not a good idea. and the reason is that it is not splittable. There is no problem for using gzip for map output. –  root1982 Apr 18 '12 at 19:37
    
Gzip's just a bit slower than other algorithms like LZO and Snappy, but you do get better compression with Gzip. For what it's worth, AWS's EMR defaults to Snappy –  Dolan Antenucci Dec 10 '14 at 3:03
  1. You need to set "mapred.compress.map.output" to true.
  2. Optionally you can choose your compression codec by setting "mapred.map.output.compression.codec". NOTE1: mapred output compression should never be BLOCK. See the following JIRA for detail: https://issues.apache.org/jira/browse/HADOOP-1194 NOTE2: GZIP and BZ2 are CPU intensive. If you have slow network and GZIP or BZ2 gives better compression ratio, it may justify the spending of CPU cycles. Otherwise, consider LZO or Snappy codec.
    NOTE3: if you want to use map output compression, consider install the native codec which is invoked via JNI and gives you better performance.
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Further to it, can we just compress the mapper values and not the keys? –  Piyush Kansal Apr 12 '12 at 19:21
    
That is not an option. –  root1982 Apr 18 '12 at 19:38

If you use MapR's distribution for Hadoop, you can get the benefits of compression without all the folderol with the codecs.

MapR compresses natively at the file system level so that the application doesn't need to know or care. Compression can be turned on or off at the directory level so you can compress inputs, but not outputs or whatever you like. Generally, the compression is so fast (it uses an algorithm similar to snappy by default) that most applications see a performance boost when using native compression. If your files are already compressed, that is detected very quickly and compression is turned off automatically so you don't see a penalty there, either.

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You need to set some properties as mentioned by others

and index the file using following

lzop -c "input.txt" | hadoop fs -put _ input.lzo

and

hadoop jar /path-to-jar/hadoop-lzo.jar \ com.hadoop.compression.lzo.DistributedLzoIndexer input.lzo

you can also follow this post

http://lets-do-something-big.blogspot.in/2015/07/using-lzo-compression-codec-in-hadoop.html

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