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I have a system where I get images (jpg) from some module. I get images for 10 objects (1000 images for single object) at a time (total 10000 images at a time). I need to do some processing on these images using Hadoop cluster.

I am wondering how should I go about this. Like how should I form the input. I would like to process one object (and its images = 1000) completely in one mapper or reducer. For ex: first object in first mapper, second object in second mapper etc.

Some of the approaches that come to my mind are: 1. For each object create a directory and place all its images in that. Then tar, compress the directory and this will go as one input to a single mapper.

  1. Do the same thing as mentioned above, but just tar the file (dont compress). Implement InputFormat interface and make "isSplittable()" return false.

  2. Create sequencefile for each object. Sequensfile would contain a key - value pair for each object image. Here I am not sure how to tell MapReduce to give the sequencefile to just one mapper.

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one more option is: 3. Create sequencefile for each object. Sequensfile would contain a key - value pair for each object image. Here I am not sure how to tell MapReduce to give the sequencefile to just one mapper. –  sunillp Jan 12 '12 at 9:31

1 Answer 1

Here I am not sure how to tell MapReduce to give the sequencefile to just one mapper.

FileInputFormat#isSplitable is your friend here for all the file input formats. SequenceFileInputFormat extends FileInputFormat.

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Will this method isSplitable() work, in cases where size of my files is small say 10MB (which is smaller than HDFS block size). Even in such cases I would like each file to be processed by one mapper and would not want a mapper to process multiple files (as there is possibility of one of the file getting split, for ex: if SplitSize = HDFS Size = 64MB, then one mapper could get 6 files of 10MB each and some portion of 7th file, other portin of 7th file may go to some other mapper). Will isSplitable() help here? –  sunillp Jan 13 '12 at 14:47
    
Irrespective of file/hdfs size each mappers would processes data from a single file only unless CombineFileInputFormat is used. Would suggest to buy Hadoop - The Definitive Guide book. –  Praveen Sripati Jan 13 '12 at 15:00
    
Thanks for clearing my doubt. I would definitely buy Hadoop book. One more small question. Suppose I have a directory with 100 files to process each of 5MB. I know that there are only 20 mapper slots available (assume that my program uses only mappers, no reducers). Then for scheduling 100 files on 20 mappers do I need to do any special thing, like ensure that 5 files are processes by one mapper OR will hadoop MR take care of this scheduling part and make sure that all 100 files are processed eventually using 20 mappers. –  sunillp Jan 13 '12 at 15:11
    
If there are 100 files of 5 MB (< HDFS block size) and 20 map slots, nothing different needs to be done. 100 map tasks will be spawned by the Hadoop framework, 20 map tasks at a time. Note than some map tasks can complete quickly than other map tasks and those map slots can take up processing more files. Note that each map slot need not process the files evenly, some less and some more. –  Praveen Sripati Jan 13 '12 at 16:51

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