[ 
https://issues.apache.org/jira/browse/MAPREDUCE-5018?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=13583302#comment-13583302
 ] 

Hadoop QA commented on MAPREDUCE-5018:
--------------------------------------

{color:red}-1 overall{color}.  Here are the results of testing the latest 
attachment 
  http://issues.apache.org/jira/secure/attachment/12570317/MAPREDUCE-5018.patch
  against trunk revision .

    {color:green}+1 @author{color}.  The patch does not contain any @author 
tags.

    {color:red}-1 tests included{color}.  The patch doesn't appear to include 
any new or modified tests.
                        Please justify why no new tests are needed for this 
patch.
                        Also please list what manual steps were performed to 
verify this patch.

    {color:red}-1 javac{color:red}.  The patch appears to cause the build to 
fail.

Console output: 
https://builds.apache.org/job/PreCommit-MAPREDUCE-Build/3352//console

This message is automatically generated.
                
> Support raw binary data with Hadoop streaming
> ---------------------------------------------
>
>                 Key: MAPREDUCE-5018
>                 URL: https://issues.apache.org/jira/browse/MAPREDUCE-5018
>             Project: Hadoop Map/Reduce
>          Issue Type: New Feature
>          Components: contrib/streaming
>            Reporter: Jay Hacker
>            Priority: Minor
>         Attachments: MAPREDUCE-5018.patch
>
>
> People often have a need to run older programs over many files, and turn to 
> Hadoop streaming as a reliable, performant batch system.  There are good 
> reasons for this:
> 1. Hadoop is convenient: they may already be using it for mapreduce jobs, and 
> it is easy to spin up a cluster in the cloud.
> 2. It is reliable: HDFS replicates data and the scheduler retries failed jobs.
> 3. It is reasonably performant: it moves the code to the data, maintaining 
> locality, and scales with the number of nodes.
> Historically Hadoop is of course oriented toward processing key/value pairs, 
> and so needs to interpret the data passing through it.  Unfortunately, this 
> makes it difficult to use Hadoop streaming with programs that don't deal in 
> key/value pairs, or with binary data in general.  For example, something as 
> simple as running md5sum to verify the integrity of files will not give the 
> correct result, due to Hadoop's interpretation of the data.  
> There have been several attempts at binary serialization schemes for Hadoop 
> streaming, such as TypedBytes (HADOOP-1722); however, these are still aimed 
> at efficiently encoding key/value pairs, and not passing data through 
> unmodified.  Even the "RawBytes" serialization scheme adds length fields to 
> the data, rendering it not-so-raw.
> I often have a need to run a Unix filter on files stored in HDFS; currently, 
> the only way I can do this on the raw data is to copy the data out and run 
> the filter on one machine, which is inconvenient, slow, and unreliable.  It 
> would be very convenient to run the filter as a map-only job, allowing me to 
> build on existing (well-tested!) building blocks in the Unix tradition 
> instead of reimplementing them as mapreduce programs.
> However, most existing tools don't know about file splits, and so want to 
> process whole files; and of course many expect raw binary input and output.  
> The solution is to run a map-only job with an InputFormat and OutputFormat 
> that just pass raw bytes and don't split.  It turns out to be a little more 
> complicated with streaming; I have attached a patch with the simplest 
> solution I could come up with.  I call the format "JustBytes" (as "RawBytes" 
> was already taken), and it should be usable with most recent versions of 
> Hadoop.

--
This message is automatically generated by JIRA.
If you think it was sent incorrectly, please contact your JIRA administrators
For more information on JIRA, see: http://www.atlassian.com/software/jira

Reply via email to