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https://issues.apache.org/jira/browse/MAHOUT-1615?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=14150688#comment-14150688
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ASF GitHub Bot commented on MAHOUT-1615:
----------------------------------------

Github user dlyubimov commented on the pull request:

    https://github.com/apache/mahout/pull/52#issuecomment-57060869
  
    exactly :), or, rather, i didn't want to do anything with hadoop directly
    .. :) "let someone else do it" -- and in our case it's Spark... bummer.
    
    
    On Sat, Sep 27, 2014 at 11:00 AM, Andrew Palumbo <[email protected]>
    wrote:
    
    > cool- thx. Am begining to understand why you didn't want to go down the
    > road of supporting multiple hadoop version for i/o..
    >
    > —
    > Reply to this email directly or view it on GitHub
    > <https://github.com/apache/mahout/pull/52#issuecomment-57060645>.
    >


> SparkEngine drmFromHDFS returning the same Key for all Key,Vec Pairs for 
> Text-Keyed SequenceFiles
> -------------------------------------------------------------------------------------------------
>
>                 Key: MAHOUT-1615
>                 URL: https://issues.apache.org/jira/browse/MAHOUT-1615
>             Project: Mahout
>          Issue Type: Bug
>            Reporter: Andrew Palumbo
>            Assignee: Andrew Palumbo
>             Fix For: 1.0
>
>
> When reading in seq2sparse output from HDFS in the spark-shell of form 
> <Text,VectorWriteable>  SparkEngine's drmFromHDFS method is creating rdds 
> with the same Key for all Pairs:  
> {code}
> mahout> val drmTFIDF= drmFromHDFS( path = 
> "/tmp/mahout-work-andy/20news-test-vectors/part-r-00000")
> {code}
> Has keys:
> {...} 
>     key: /talk.religion.misc/84570
>     key: /talk.religion.misc/84570
>     key: /talk.religion.misc/84570
> {...}
> for the entire set.  This is the last Key in the set.
> The problem can be traced to the first line of drmFromHDFS(...) in 
> SparkEngine.scala: 
> {code}
>  val rdd = sc.sequenceFile(path, classOf[Writable], classOf[VectorWritable], 
> minPartitions = parMin)
>         // Get rid of VectorWritable
>         .map(t => (t._1, t._2.get()))
> {code}
> which gives the same key for all t._1.
>   



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