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I have a MapReduce task that has the following input file

File1    value1
File1    value2
File2    value3
File2    value4

The Mapper will access the file name and search for the specific value in it.

Question: I would like to have an optimization technique to optimize the disk access for these files. I need to assign the same file id to the same mapper. So I can make sure the file will be access by only one task at a time.

Example: Required

Mapper 1: File1 (value1), File1 (value2)
Mapper 2: File2 (value3), File2 (value4)

Not required:

Mapper 1: File1 (value1), File2 (value3)
Mapper 2: File1 (value2), File2 (value4)

Any help?

4 Answers 4

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I suppose this

 File1    value1
 File1    value2
 File2    value3
 File2    value4

is written to an existing file

The way to ensure what you want is to sort this input file by the first column(and to store it sorted)

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I don't think it's possible to send specific data to the map tasks without partitioning the input data. Partition the input data as required and use the TextFileInputFormar.isSplittable().

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May I humbly suggest that you use the reducer for achieving the effect you want.

Getting all the values for a key into the same task is the very definition of "reduce".

If there is further reduction needed, run another job on the outputs of the first one.

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With 2 files in picture, you would definitly have a minimum of 2 map with default TextInputFormat as the hadoop input format.

All you have to do is to create a custom InputFormat extending TextInputFormat and override the isSplittable() method to return false. In this scenario, one file would be proccessed fully by one mapper and the next file fully by the other.

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