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So, I'm tinkering with MongoDB, and I'm trying to get the count() aggregation querying to scale properly, to allow me to easily calculate the percentage of occurrence of certain values in the document across the collection.

I have a document with a structure like:

{
    foo : 'bar',
    moo : 'cow',
    values : {
        alpha : true,
        beta : false,
        gamma : false,
        delta : true ... (many more)
    }
}

Now, I have several thousand of these documents, and I want to efficiently calculate the percentage of true (or the percentage of false) of all the values in the values object (and in my case, there are ~50). ie, what percentage of the time alpha is true, beta is true, etc.

I started naively with count(), but it seems like it only allows one query at a time, so that led me to do this (using the PHP Mongo class, but its basically just a regular count() function:

 $array_of_keys = array('alpha', 'beta', 'gamma', 'delta'...);
 for($i=0;$i<count($array_of_keys);$i++){
    $array_of_keys = [...]
    for($i=0;$i<count($array_of_keys);$i++){

$false  = intval($collection->count(array($array_of_keys[$i]=>false)));
$true  = intval($collection->count(array($array_of_keys[$i]=>true)));
}

But even with a very small number of records (around 100), this took 9 seconds.

What's the best approach for this?

share|improve this question

1 Answer 1

up vote 4 down vote accepted

Here is a simple MapReduce that will do what you want:

map = function() {
    for (var key in this.values){
        emit(key, {count:1, trues: (this.values[key] ? 1 : 0)});
    }
}

reduce = function(key, values){
    var out = values[0];
    for (var i=1; i < values.length; i++){
        out.count += values[i].count;
        out.trues += values[i].trues;
    }
    return out;
}

finalize = function(key, value){
    value.ratio = value.trues / value.count;
    return value;
}

db.runCommand({mapReduce:'collection',
               map:map,
               reduce:reduce,
               finalize:finalize,
               out:'counts'
               })

db.counts.findOne({_id:'alpha'})
{_id: 'alpha', value: {count: 100, trues: 52, ratio: 0.52}}

You could also do an upsert like this when you insert into your main collection which will give you a real-time view into your data:

for (var key in this.values){
    db.counts.update({_id:key},
                     {$inc:{count:1, trues: (this.values[key] ? 1 : 0)}},
                     true);
}

In fact, you could even combine these methods. Do a one-time MapReduce batch job to populate the counts collection and then use upserts to keep it up to date.

share|improve this answer
    
Thanks! Will check this out. I was worried for a bit that this post would be a Tumbleweed. :) –  Yahel Jan 27 '11 at 5:34
1  
@msteam definitely has the right idea with using a map-reduce. Please not though that (in general) map-reduce is not intended to be used for "real-time" queries. If you're just counting true, then keeping a "count" column is easy way to do this. But if you want larger or more complex "roll-ups", the normal way to do this is to run a scheduled map-reduce. –  Gates VP Jan 27 '11 at 7:31
    
@Gates VP Oh, definitely; this is for scheduled processes, not for user requests. But 9 seconds for a few dozen records meant that there literally would be enough time in the day for all of the processing I need. –  Yahel Jan 27 '11 at 13:17

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