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I have two separate java classes for doing two different mapreduce jobs. I can run them independently. The input files on which they are operating are the same for both of the jobs. So my question is whether it is possible to define two mappers and two reducers in one java class like


and then like


Do these set Methods actually override the previous ones or add the new ones? I tried the code, but it executes the only latest given classes which brings me thinking that it overrides. But there must be a way of doing this right?

The reason why I am asking this is I can read the input files only once (one I/O) and then process two map reduce jobs. I also would like to know how I can write the output files into two different folders. At the moment, both jobs are separate and require an input and an output directory.


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3 Answers 3

You can have multiple mappers, but in one job, you can only have one reducer. And the features you need are MultipleInput, MultipleOutput and GenericWritable.

Using MultipleInput, you can set the mapper and the corresponding inputFormat. Here is my post about how to use it.

Using GenericWritable, you can separate different input classes in the reducer. Here is my post about how to use it.

Using MultipleOutput, you can output different classes in the same reducer.

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Thx for your comment! I will try them out. – Bob Jun 21 '12 at 11:08

You can use the MultipleInputs and MultipleOutputs classes for this, but the output of both mappers will go to both reducers. If the data flows for the two mapper/reducer pairs really are independent of one another then keep them as two separate jobs. By the way, MultipleInputs will run your mappers with out change, but the reducers would have to be modified in order to use MultipleOutputs

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+1 This makes sense. – pyfunc Jun 20 '12 at 15:59
@Chris Both pair of MR share the same input, which made me think of being able to read the input only once. The mappers work with different keys. This means that the keys for one mapper will be different from the ones for the other mapper. The reason why I am thinking is that I can read the input files only once to process them in two different pairs of MRs which work indepedently. – Bob Jun 20 '12 at 16:00

As per my understanding, which comes from using map-reduce with Hadoop streaming, you can chain multiple mappers and reducers where one consumes the output of another

But you should not be able to run different mappers and reducers simultaneously. Mappers themselves are dependent on no of blocks to be processed. Mapper should be instantiated based on that decision and not the variety of mapper available for the job.

[Edit: Based on your comment]

I don't think that is possible. You can chain (where reducers will receive all inputs from mappers. You can sequence them but you can not exclusively run independent sets of mapper and reducers.

I think what you can do is, even though you receive both the inputs from the mappers into both of your reducers, you can make mappers output (K,V) is such a way that you could distinguish in your reducers as to which mapper was the origin of (K,V). This way both reducers can process on selective (K,V) pairs.

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@Bob: I have edited my answer based on your comment – pyfunc Jun 20 '12 at 16:46
Cool, did not think of it as a possibility. But how can I separate the output files, say that I can handle it in my reducer implementation, I need to somehow then specify which keys are written to where. – Bob Jun 20 '12 at 20:12
No Bob: You can't do that. What you can do in map1, map2 is submit K,V as K, (map1, V) so that in reducer you know where data is coming from. Each reducer creates it's own file in job output so that your output is already segregated. – pyfunc Jun 20 '12 at 20:17

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