Since you have not provided a sample document (object) format take this as a sample collection called 'stories'.
{ "_id" : ObjectId("4eafd693627b738f69f8f1e3"), "body" : "There was a king", "author" : "tom" }
{ "_id" : ObjectId("4eafd69c627b738f69f8f1e4"), "body" : "There was a queen", "author" : "tom" }
{ "_id" : ObjectId("4eafd72c627b738f69f8f1e5"), "body" : "There was a queen", "author" : "tom" }
{ "_id" : ObjectId("4eafd74e627b738f69f8f1e6"), "body" : "There was a jack", "author" : "tom" }
{ "_id" : ObjectId("4eafd785627b738f69f8f1e7"), "body" : "There was a humpty and dumpty . Humtpy was tall . Dumpty was short .", "author" : "jane" }
{ "_id" : ObjectId("4eafd7cc627b738f69f8f1e8"), "body" : "There was a cat called Mini . Mini was clever cat . ", "author" : "jane" }
For the given dataset, you can use the following javascript code to get to your solution. The collection "authors_unigrams" contains the result. All the code is supposed to be run using mongo console (http://www.mongodb.org/display/DOCS/mongo+-+The+Interactive+Shell).
First, we need to mark of all the new documents that have come afresh into the 'stories' collection. We do it using following command. It will add a new attribute called "mr_status" into each document and assign value "inprocess". Later, we will see that map-reduce operation will only take those documents in account which are having the value "inprocess" for the field "mr_status". This way, we can avoid reconsidering all the documents for map-reduce operation that have been already considered in any of the previous attempt, making the operation efficient as asked.
db.stories.update({mr_status:{$exists:false}},{$set:{mr_status:"inprocess"}},false,true);
Second, we define both map() and reduce() function.
var map = function() {
uniqueWords = function (words){
var arrWords = words.split(" ");
var arrNewWords = [];
var seenWords = {};
for(var i=0;i<arrWords.length;i++) {
if (!seenWords[arrWords[i]]) {
seenWords[arrWords[i]]=true;
arrNewWords.push(arrWords[i]);
}
}
return arrNewWords;
}
var unigrams = uniqueWords(this.body) ;
emit(this.author, {unigrams:unigrams});
};
var reduce = function(key,values){
Array.prototype.uniqueMerge = function( a ) {
for ( var nonDuplicates = [], i = 0, l = a.length; i<l; ++i ) {
if ( this.indexOf( a[i] ) === -1 ) {
nonDuplicates.push( a[i] );
}
}
return this.concat( nonDuplicates )
};
unigrams = [];
values.forEach(function(i){
unigrams = unigrams.uniqueMerge(i.unigrams);
});
return { unigrams:unigrams};
};
Third, we actually run the map-reduce function.
var result = db.stories.mapReduce( map,
reduce,
{query:{author:{$exists:true},mr_status:"inprocess"},
out: {reduce:"authors_unigrams"}
});
Fourth, we mark all the records that have been considered for map-reduce in last run as processed by setting "mr_status" as "processed".
db.stories.update({mr_status:"inprocess"},{$set:{mr_status:"processed"}},false,true);
Optionally, you can see the result collection "authors_unigrams" by firing following command.
db.authors_unigrams.find();