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I need to access the counters from my mapper in my reducer. Is this possible? If so how is it done?

As an example: my mapper is:

public class CounterMapper extends Mapper<Text,Text,Text,Text> {

    static enum TestCounters { TEST }

    @Override
    protected void map(Text key, Text value, Context context)
                    throws IOException, InterruptedException {
        context.getCounter(TestCounters.TEST).increment(1);
        context.write(key, value);
    }
}

My reducer is

public class CounterReducer extends Reducer<Text,Text,Text,LongWritable> {

    @Override
    protected void reduce(Text key, Iterable<Text> values, Context context)
                        throws IOException, InterruptedException {
        Counter counter = context.getCounter(CounterMapper.TestCounters.TEST);
        long counterValue = counter.getValue();
        context.write(key, new LongWritable(counterValue));
    }
}

counterValue is always 0. Am I doing something wrong or is this just not possible?

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3 Answers

In the Reducer's configure(JobConf), you can use the JobConf object to look up the reducer's own job id. With that, your reducer can create its own JobClient -- i.e. a connection to the jobtracker -- and query the counters for this job (or any job for that matter).

// in the Reducer class...
private long mapperCounter;

@Override
public void configure(JobConf conf) {
    JobClient client = new JobClient(conf);
    RunningJob parentJob = 
        client.getJob(JobID.forName( conf.get("mapred.job.id") ));
    mapperCounter = parentJob.getCounters().getCounter(MAP_COUNTER_NAME);
}

Now you can use mapperCounter inside the reduce() method itself.

You actually need a try-catch here. I'm using the old API, but it shouldn't be hard to adapt for the new API.

Note that mappers' counters should all be finalized before any reducer starts, so contrary to Justin Thomas's comment, I believe you should get accurate values (as long as the reducers aren't incrementing the same counter!)

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It may seem counter-intuitive that counters from mappers are not available in reducers, but in Hadoop reducers can start execution earlier than all the mappers finish. In that event the value of a counter could be read different at different times in reducers. To know more about how can reducers be started earlier than the time mappers finish execution, visit this post: stackoverflow.com/questions/11672676/… –  abhinavkulkarni Oct 10 '13 at 19:09
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The whole point of map/reduce is to parallelize the jobs. There will be many unique mappers/reducers so the value wouldn't be correct anyway except for that run of the map/reduce pair.

They have a word count example:

http://wiki.apache.org/hadoop/WordCount

You could change the context.write(word,one) to context.write(line,one)

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The global counter values are never broadcast back to each mapper or reducer. If you want the # of mapper records to be available to the reducer, you'll need to rely on some external mechanism to do this.

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The Jobtracker keeps track of the counters. –  Thomas Jungblut Mar 28 '11 at 4:26
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