Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a bunch of small files in an HDFS directory. Although the volume of files are relatively small, the amount of processing time per file is huge. That is, a 64mb file, which is the default split size for TextInputFormat, would take even several hours to be processed. What I need to do, is to reduce the split size, so that I can utilize even more nodes for a job. So the question is, how is it possible to split the files by let's say 10kb? Do I need to implement my own InputFormat and RecordReader for this, or is there any parameter to set? Thanks.

share|improve this question
add comment

4 Answers

up vote 13 down vote accepted

The parameter "mapred.max.split.size" which can be set per job individually is what you looking for. Don't change "dfs.block.size" because this is global for HDFS and can lead to problems.

share|improve this answer
7  
dfs.block.size isn't necessarily global; you can set specific files to have a different block size than the default for your filesystem. I agree that mapred.max.split.size is probably the way to go in this case, though. –  ajduff574 Mar 13 '12 at 16:12
add comment

Hadoop the Definitive Guide, page 203 "The maximum split size defaults to the maximum value that can be represented by a Java long type. It has an effect only when it is less than the block size, forcing splits to be smaller than a block. The split size is calculated by the formula:

max(minimumSize, min(maximumSize, blockSize))

by default

minimumSize < blockSize < maximumSize

so the split size is blockSize

For example,

Minimum Split Size 1
Maximum Split Size 32mb
Block Size  64mb
Split Size  32mb

Hadoop Works better with a small number of large files than a large number of small files. One reason for this is that FileInputFormat generates splits in such a way that each split is all or part of a single file. If the file is very small ("small" means significantly smaller than an HDFS block) and there are a lot of them, then each map task will process very little input, and there will be a lot of them (one per file), each of which imposes extra bookkeeping overhead. Compare a 1gb file broken into sixteen 64mb blocks, and 10.000 or so 100kb files. The 10.000 files use one map each, and the job time can be tens or hundreds of times slower than the equivalent one with a single input file and 16 map tasks.


share|improve this answer
add comment

Write a custom input format which extends combinefileinputformat[has its own pros nad cons base don the hadoop distribution]. which combines the input splits into the value specified in mapred.max.split.size

share|improve this answer
add comment

"Hadoop: The Definitive Guide", p. 202:

Given a set of files, how does FileInputFormat turn them into splits? FileInputFormat splits only large files. Here “large” means larger than an HDFS block. The split size is normally the size of an HDFS block.

So you should change size of HDFS block, but this is wrong way. Maybe you should try to review architecture of your MapReduce application.

share|improve this answer
    
since it says "normally", not "always", I think there should be a way around. –  Ahmedov Mar 19 '12 at 10:57
2  
Try set "mapreduce.input.fileinputformat.split.maxsize" and "mapreduce.input.fileinputformat.split.minsize" options. FileInputFormat.computeSplitSize() returns Math.max(minSize, Math.min(maxSize, blockSize)). So split size can be lower than block size (according to FileInputFormat class sources). –  Roland Taverner Mar 19 '12 at 14:39
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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