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I have started working in hadoop recently and I have just learned some basic theoretical knowledge about it. I am trying to solve a task where the input shall be be given in a text file, for example input.txt (1 10 37 5 4 98 100 etc)

I need to find the largest integer in the given inputs (ie. integer type). I am trying to pass the inputs in the arraylist, so that I can compare the first integer with the rest of all the integers (using for-loop).

1)Is it possible to find the solution in this way? if yes, I could not create an arraylist here in hadoop and need some tips :-)

2)Can we print only 'key' instead of key-value pairs? If so please help me. I tried to code in reduce function for not printing it but I am getting some errors.

Please guide me with some tips by which I can move forward. Thank you

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2 Answers 2

up vote 0 down vote accepted

For this you shall better have a single reducer.

In order to ensure that all the numbers get to the same reducer, you have to do 2 things:

  1. Emit same key for all the input values in the mapper
  2. Set reduce tasks to zero.

You map() method may look something like following:

@Override
public void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException {
          context.write(new Text("MyAwesomeKey"), key); // assuming that your number is being read in the key
           }

In your Reduce class, have a property max, something like: Long max

And the reduce() method may look something like following:

@Override
public void reduce(Text key, Iterable<LongWritable> values, Context context) throws IOException, InterruptedException {
          context.write(new Text("MyAwesomeKey"), key); // assuming that your number is being read in the key
           }

Then override the run() too as we override reduce() :

 public void run(Context context) throws IOException, InterruptedException {
    setup(context);
    while (context.nextKey()) {
      reduce(context.getCurrentKey(), context.getValues(), context);
    }
    context.write(new LongWritable(max),new Text("")); // write the max value
    cleanup(context);
  }

To set reduce tasks to one, do the following in your job's run(), note that this is different from the above described run():

job.setNumReduceTasks(1);

Note: All above code follows the new mapreduce API and I believe that using old mapred API we will not be able to have a single point of hook after the reducer has done it's job, as we are able to do by overriding the run() of Reducer.

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Thank you so much for your kind reply. I will work on it and i will let you know. Thank you. –  user2085189 Feb 20 '13 at 0:48

In your map step, you could map all the numbers to a single key. Then in your reduce step, you can just take the max. The reduce step will be passed an iterable collection of values for a given key -- no need to create your own ArrayList.

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Thank you so much for your kind reply. I will work on it and i will let you know. Thank you. –  user2085189 Feb 20 '13 at 0:49

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