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Example of (key,value) in the mapper : (User,(logincount,commentcount))

public void map(LongWritable key, Text value, Context context)
                throws IOException, InterruptedException {

            String tempString = value.toString();
            String[] stringData = tempString.split(",");

            String user = stringData[2];
            String activity = stringData[1];

            if (activity.matches("login")) {
            if (activity.matches("comment")) {


            context.write(outUserID, outCount);


I count the logins & comments of a user. Now i want to change the count: Count every login & look if the user wrote a comment. How can i achieve that my mapper or reducer just search for one comment of the user and "ignores" all other comments (of this user)?



2013-01-01T05:20:44.044+0100,comment,User14133,somedata,somedata,{text: "something here"}
2013-01-01T05:24:44.044+0100,comment,User14133,somedata,somedata,{text: "something here"}

Output at the moment:

User14133   Logins: 2   Comments: 2
User76892   Logins: 1   Comments: 0


Mapper<LongWritable, Text, Text, UserCount>
Reducer<Text, UserCount, Text, UserCount>

public static class UserCount implements Writable {
        public UserCountTuple() {
            set(new IntWritable(0), new IntWritable(0));

My mapreduce counts every login and every comment of a user and sum them up. What i want to achieve is something like this -> Output:

User14133   Logins: 2      Comments: 0 or 1 (Did User wrote one comment?)*

 * In Mapper or Reducer (?)
 for every line in the log{
   if (user wrote comment){
     return 1;
     ignore all other comments from same user in this log;
   } else if (user didn't write anything) return 0;
share|improve this question
What are your output key and output value types? And if you could provide a set of input values and the kind of output values you expect, then maybe we can help you better. –  aa8y Mar 4 '13 at 12:21
what do you mean by 'Count every login' ? Also as asked above, if you can just provide sample input and corresponding sample output it would be great... –  Amar Mar 4 '13 at 15:12
I edited my Question, i hope now you understand what i mean :) –  JustTheAverageGirl Mar 4 '13 at 16:40

1 Answer 1

If I understand correctly, you just want to get the total number of unique users who logged in, along with the total number of comments?

I recommend using the "aggregate" reducer in Hadoop.

In your mapper, output lines that look like this:

UniqValueCount:unique_users      User14133
LongValueSum:comments            1
UniqValueCount:unique_users      User14133
LongValueSum:comments            1
UniqValueCount:unique_users      User14133
LongValueSum:comments            1
UniqValueCount:unique_users      User14133
LongValueSum:comments            1
UniqValueCount:unique_users      User76892
LongValueSum:comments            1

And then run the "aggregate" reducer on this, you should get an output that looks like:

unique_users    2
comments        5

I'm assuming this is what you want?

share|improve this answer
My final idea is to get the number of unique users, who logged in and then compare how many of those user did wrote a comment. Something like: Total Logins of Unique User: 234 Total Comments: 20. –  JustTheAverageGirl Mar 5 '13 at 9:36
Updated my answer. –  Suman Mar 5 '13 at 16:51

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