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I want to use Hadoop on multiple files (actually 2 files) as a input files.

For example:

File input 1:

user1 italy
user2 spain
user3 italy

File input 2:

user1 trackname1
user2 trackname2
user3 trackname1

I need the number of users per country, then for each country the most popular tracks in (file 2). And finally the number of occurrences of the most popular tracks.

I Would like to have as outputs, something like:

Popular track (italy):
trackname1 (occurrences)

Popular track (spain):


Actually i've tried to use 2 mappers and 1 reducer. But I don't know how to make the "join" between the two input files on the user field. What could be the best solution for that?

Any advice?


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up vote 1 down vote accepted

I think you 're going to need a chain of three jobs (maybe I use too many jobs, but this will give you the intuition and you can later optimize it):

  • Job 1 (the join)

    • Map of file1
      output key: userid
      output value: country (you can put a special prefix to know it's a country and not a track)

    • Map of file2
      output key: userid
      output value: track

    • Reduce (userid, < country, track >)
      output key: (country-track)
      output value: 1

  • Job 2 (the counting)

    • Map: Identity Mapper
    • Reduce (country-track, < 1,1,1,... >)
      sum up the 1's for each (country-track)
      output key: country
      output value: (track, count) pair

  • Job 3 (the sorting)

    • Map: Identity Mapper
    • Reduce
      keep from the values the track with the maximum count and output:
      output key: country
      output value: track

Jobs 2 and 3 can use a combiner, similar (but not identical) to their reducer. I repeat that this is not the best solution and much can be done to optimize it (especially Jobs 2 and 3). For example, you could output from Job 1 a country as a key and a (track, 1) as a value and then finish at Job 2.

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Thanks for reply! two questions: What do you mean with "Identify Mapper"? How can i pass the output of Job 1 to Job 2 and so on? – Rocco Musolino May 20 '14 at 16:06
If this is one of your first MapReduce programs, perhaps you should start with more typical (1-job) programs. Moving on to your questions: An Identity Mapper, is one that does nothing! It simply forwards its input to the reduce phase. So, you don't have to implement it, just set as Map class IdentityMapper.class. Then, to "chain" two MapReduce jobs, I recommend reading this post: . A simple case, however, is to just put as input of one job the output folder of the other. A tricky part can be the Input & Output Format. – vefthym May 20 '14 at 18:14
But if i'm gonna use a IdentityMapper.class, how the Reducer (of the job 2, for example) can read the job 1 output? Maybe i gotta specify this "temp" input (that's the output for the job 1) in the Driver class? That's tricky, and i didn't find anything on the web.. – Rocco Musolino May 20 '14 at 19:40
Yes, specify as input in the Driver class of job 2, the output path of job 1. See the tutorial that I sent you – vefthym May 21 '14 at 6:56

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