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I am still trying to wrap my brain around map reduce. I have a collection of articles, each of which belongs to one category, and each article has a set of keywords. Assuming that the document looks like this:

{
  author: "kris",
  category: "mongodb",
  content: "...",
  keywords: [ "keyword1", "keyword2", "keyword3" ],
  created_at: "..."
}

I want to essentially pull from all documents the keyword counts, in respect to the author, so I end up with something like:

{
  author: "kris",
  categories: {
    mongodb: { keyword1: 5, keyword2: 3, keyword3: 1 },
    ruby: { ... },
    python: { ... }
  }
}

Any input on this would be greatly appreciated.

Thanks!

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1 Answer 1

Oh, how thrilled I am by your question! This was actually part of my last assignment for my distributed systems class, so its quite fresh in my recently-graduated mind.

For the parsing details, I'd just google Apache's Hadoop tutorial, but I'll give you the general overview.

Basically, this problem requires two Map-Reduce Phases. In the first map, your input should be a list of <filename, {list of keywords}> key-value pairs (might have to do a lil preprocessing on your files, but no biggie). For each of these pairs, you output <keyword, 1> as the pair to be handed to the reducer (your basically saying every word should be counted once).

In the first reduce pass, the previous key-value pairs will conveniently be condensed so that each keyword has its own pair of the form <keyword, {1,1,1,1,1,1}>, with the number of 1s representing the number of times the word appears throughout all of the documents. So you just sum up the 1s and output <keyword, sum>.

The final map/reduce phase is just to sort the keywords by their value. Map: <keyword,sum> --> <sum,keyword> Reduce: <sum, {keywords}> --> <keyword,sum>. This exploits the fact that map-reduce sorts by key when passes to the reduce phase.

Now all of the keywords are next to their word count in sorted order!

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