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.

Each line in the data comes in the following format:

UserId, Sex, Age

We need to answer the following 2 questions:

1) How many Male & how many Females.

2) How many over 50 years & how many under 50 years.

Is there a way to answer both these in a single Map Reduce job? I know I can easily do this in 2 separate MR jobs, but would like to avoid reading the same file twice. How can I do this in only one MR job?

share|improve this question

3 Answers 3

In the map phase you can either for every record output 2 keys:

  • young/old
  • male/female

with count 1 as value and sum in the reduce phase which will give you the 4 values you are looking for, or alternatively output 1 key with combined information:

  • youngmale/oldmale/youngfemale/oldfemale

with count 1 to be summed in the reduce phase giving you 4 combined values which you can use to get the answers you want by adding pairs of counts.

share|improve this answer

suppose the output of your mapper to the reducer is like context.write(CONSTANT_KEY, VALUE); where key is a CONSTANT while VALUE is a concatenated string "X,Y". X can hold 1 value either {1,0} where 1 stands for male & 0 stands female. Y can hold 1 value either {1,0} where 1 stands for age>50 & 0 stands age<50. Now in the Reducer class, you can easily count the number of 1s and 0s for field X & Y using StringTokenizer class. the only shortcoming is that, there will be only one reducer since the KEY is CONSTANT.

share|improve this answer
    
Sending all output with a constant key is not a good idea. You can't combine intermediate k,v pairs, meaning your bandwidth usage is much larger, and all keys go to the same Reducer, meaning you're overloading a single node instead of splitting the work between available nodes. –  HypnoticSheep Sep 12 '12 at 22:52
up vote 0 down vote accepted

I think I answered my own question. The following would work, right?

Mapper:

if (Male)
  emit("Male", 1)
else
  emit("Female", 1)

if (Age > 50)
  emit("Over 50", 1)
else
  emit("Under 50", 1)

Now these will go to 4 different reducers with 4 different keys: "Male", "Female", "Over 50" & "Under 50" and there's my answer, right?

share|improve this answer
    
Yes, that's the first option I described, it has as drawback to the second option that you have to emit 2 keys for every input record. –  rsp Sep 12 '12 at 14:20
    
I would suggest using @rsp 's second option to save bandwidth. If you're going to be doing a large amount of processing on the data in the Reducer though, I'd suggest the first option. It's a problem of balancing bandwidth usage with processing time, pick whichever works best for you job. –  HypnoticSheep Sep 12 '12 at 22:50
    
Got it! Thanks @rsp & HypnoticSheep –  DilTeam Sep 13 '12 at 5:52

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.