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This is a conceptual question involving Hadoop/HDFS. Lets say you have a file containing 1 billion lines. And for the sake of simplicity, lets consider that each line is of the form <k,v> where k is the offset of the line from the beginning and value is the content of the line.

Now, when we say that we want to run N map tasks, does the framework split the input file into N splits and run each map task on that split? or do we have to write a partitioning function that does the N splits and run each map task on the split generated?

All i want to know is, whether the splits are done internally or do we have to split the data manually?

More specifically, each time the map() function is called what are its Key key and Value val parameters?

Thanks, Deepak

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6 Answers 6

up vote 10 down vote accepted

The InputFormat is responsible to provide the splits.

In general, if you have n nodes, the HDFS will distribute the file over all these n nodes. If you start a job, there will be n mappers by default. Thanks to Hadoop, the mapper on a machine will process the part of the data that is stored on this node. I think this is called Rack awareness.

So to make a long story short: Upload the data in the HDFS and start a MR Job. Hadoop will care for the optimised execution.

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Does the mapper on a machine access the data on other machines too or just processes the data on its machine? –  Deepak May 14 '10 at 13:50
The default word count example on the Hadoop site, doesn't use InputFormat. What happens if i call n map tasks on that example. Each map task accesses all the content in the file? Thanks, again. –  Deepak May 14 '10 at 13:57
First of all, thanks for the vote :-) --- The wordcount example uses TextInputFormat, which should be a subclass of InputFormat. --- Since the number of splits matches the number of mappers, each mapper will process most likely the data that is nearest to it. Of course he would be able to access other machines, but this is avoided because of its costs. –  Peter Wippermann May 16 '10 at 14:58

Files are split into HDFS blocks and the blocks are replicated. Hadoop assigns a node for a split based on data locality principle. Hadoop will try to execute the mapper on the nodes where the block resides. Because of replication, there are multiple such nodes hosting the same block.

In case the nodes are not available, Hadoop will try to pick a a node that is closest to the node that hosts the data block. It could pick another node in the same rack, for example. A node may not be available for various reasons; all the map slots may be under use or the node may simply be down.

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For a better understanding of how InputSplits work in hadoop I would recommend reading the article written by hadoop for dummies. It is really helpful.

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The short answer is the InputFormat take care of the split of the file.

The way that I approach this question is by looking at its default TextInputFormat class:

All InputFormat classes are subclass of FileInputFormat, which take care of the split.

Specifically, FileInputFormat's getSplit function generate a List of InputSplit, from the List of files defined in JobContext. The split is based on the size of bytes, whose Min and Max could be defined arbitrarily in project xml file.

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FileInputFormat is the abstract class which defines how the input files are read and spilt up. FileInputFormat provides following functionalites: 1. select files/objects that should be used as input 2. Defines inputsplits that breaks a file into task.

As per hadoopp basic functionality, if there are n splits then there will be n mapper.

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There is a seperate map reduce job that splits the files into blocks. Use FileInputFormat for large files and CombineFileInput Format for smaller ones. You can also check the whether the input can be split into blocks by issplittable method. Each block is then fed to a data node where a map reduce job runs for further analysis. the size of a block would depend on the size that you have mentioned in mapred.max.split.size parameter.

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