You have two obvious options:
Have two MapReduce jobs:
- WordCount: counts all the words (pretty much the example exactly)
- TopN: A MapReduce job that finds the top N of something (here are some examples: source code, blog post)
Have the output of WordCount write to HDFS. Then, have TopN read that output. This is called job chaining and there are a number of ways to solve this problem: oozie, bash scripts, firing two jobs from your driver, etc.
The reason you need two jobs is you are doing two aggregations: one is word count, and the second is topN. Typically in MapReduce each aggregation requires its own MapReduce job.
First, have your WordCount job run on the data. Then, use some bash to pull the top N out.
hadoop fs -cat /output/of/wordcount/part* | sort -n -k2 -r | head -n20
sort -n -k2 -r says "sort numerically by column #2, in descending order".
head -n20 pulls the top twenty.
This is the better option for WordCount, just because WordCount will probably only output on the order of thousands or tens of thousands of lines and you don't need a MapReduce job for that. Remember that just because you have hadoop around doesn't mean you should solve all your problems with Hadoop.
One non-obvious version, which is tricky but a mix of both of the above...
Write a WordCount MapReduce job, but in the Reducer do something like in the TopN MapReduce jobs I showed you earlier. Then, have each reducer output only the TopN results from that reducer.
So, if you are doing Top 10, each reducer will output 10 results. Let's say you have 30 reducers, you'll output 300 results.
Then, do the same thing as in option #2 with bash:
hadoop fs -cat /output/of/wordcount/part* | sort -n -k2 -r | head -n10
This should be faster because you are only postprocessing a fraction of the results.
This is the fastest way I can think of doing this, but it's probably not worth the effort.