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https://issues.apache.org/jira/browse/MAPREDUCE-2841?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=14124766#comment-14124766
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Hadoop QA commented on MAPREDUCE-2841:
--------------------------------------

{color:red}-1 overall{color}.  Here are the results of testing the latest 
attachment 
  http://issues.apache.org/jira/secure/attachment/12666986/mr-2841-merge-3.patch
  against trunk revision d1fa582.

    {color:red}-1 patch{color}.  The patch command could not apply the patch.

Console output: 
https://builds.apache.org/job/PreCommit-MAPREDUCE-Build/4861//console

This message is automatically generated.

> Task level native optimization
> ------------------------------
>
>                 Key: MAPREDUCE-2841
>                 URL: https://issues.apache.org/jira/browse/MAPREDUCE-2841
>             Project: Hadoop Map/Reduce
>          Issue Type: Improvement
>          Components: task
>         Environment: x86-64 Linux/Unix
>            Reporter: Binglin Chang
>            Assignee: Sean Zhong
>         Attachments: DESIGN.html, MAPREDUCE-2841.v1.patch, 
> MAPREDUCE-2841.v2.patch, MR-2841benchmarks.pdf, dualpivot-0.patch, 
> dualpivotv20-0.patch, fb-shuffle.patch, 
> hadoop-3.0-mapreduce-2841-2014-7-17.patch, micro-benchmark.txt, 
> mr-2841-merge-2.txt, mr-2841-merge-3.patch, mr-2841-merge.txt
>
>
> I'm recently working on native optimization for MapTask based on JNI. 
> The basic idea is that, add a NativeMapOutputCollector to handle k/v pairs 
> emitted by mapper, therefore sort, spill, IFile serialization can all be done 
> in native code, preliminary test(on Xeon E5410, jdk6u24) showed promising 
> results:
> 1. Sort is about 3x-10x as fast as java(only binary string compare is 
> supported)
> 2. IFile serialization speed is about 3x of java, about 500MB/s, if hardware 
> CRC32C is used, things can get much faster(1G/
> 3. Merge code is not completed yet, so the test use enough io.sort.mb to 
> prevent mid-spill
> This leads to a total speed up of 2x~3x for the whole MapTask, if 
> IdentityMapper(mapper does nothing) is used
> There are limitations of course, currently only Text and BytesWritable is 
> supported, and I have not think through many things right now, such as how to 
> support map side combine. I had some discussion with somebody familiar with 
> hive, it seems that these limitations won't be much problem for Hive to 
> benefit from those optimizations, at least. Advices or discussions about 
> improving compatibility are most welcome:) 
> Currently NativeMapOutputCollector has a static method called canEnable(), 
> which checks if key/value type, comparator type, combiner are all compatible, 
> then MapTask can choose to enable NativeMapOutputCollector.
> This is only a preliminary test, more work need to be done. I expect better 
> final results, and I believe similar optimization can be adopt to reduce task 
> and shuffle too. 



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