3

I have a problem with a hadoop data set being split into too many data blocks.

  1. Given an already present hadoop data set, is there a way to combine its blocks into fewer but larger blocks?

  2. Is there a way to give pig or hadoop-streaming.jar (cloudera) an upper limit on the number of blocks they split the output into?

2 Answers 2

2
  1. If you want a higher block size, set the desired block size value on the corresponding job only on the pig script

    set dfs.block.size 134217728;

Alternatively you can also increase minimum split size, because the split size is calculated based on the formula

max(minsplitsize, min(maxsplitsize, blocksize))

set mapred.min.split.size 67108864
  1. Restricting the number of blocks created is not possible it has to be controlled by minsplitsize, maxsplitsize and blocksize parameters only.
1
  • yes, mappers are directly proportional to the input splits...don't forget to upvote :-)
    – Arun
    May 16, 2014 at 20:49
0

Another option for reducing the number of output files is to do a random grouping. You can look at the following sample Pig script (replacing original, original_fields and the arbitrarily chosen number 100 with their actual, sensible replacements):

with_rnd = FOREACH original GENERATE *, (int)(RANDOM() * 100) AS rnd;

grouped = GROUP with_rnd BY rnd;

flattened = FOREACH grouped GENERATE FLATTEN(with_rnd);

output = FOREACH flattened GENERATE original_fields;

Obviously, this is, technically, unnecessary work, but if your store function doesn't provide another way to do this it will work. Note also that this will not generate 100 files, but a reasonably chosen number for the grouping will reduce the amount considerably, especially if your original data was filtered heavily and had many small files.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.