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I have some different Map/Reduces functions that I use in my project. But one is a lot different than the others since it requires a loop in the map functionality. And for each count in the loop, I send an emit.

What I have is this scenario (in the user collection):

 "channels" : [
        "Channel 1",
        "Channel 2",
    ],

What I want to do is to count how many users each channel has. So for that I could use db.users.find({channels: "Channel 1"}).count() but unfortunately channels are dynamic which means I don't know all the possible channel names and it may well change in the future.

So I thought that a Map/Reduce job would sit just perfect. But the problem is that the first Reduce job I wrote calculated wrong. And the other where I used a query for each emit, would come to take forever (more than 3 hours before the ssh session shut down).

So now I'm stuck and I need help, preferably I would want to have a Map/Reduce job since it's more nice than a bunch of queries which is kind of slow to run in real time.

This is the latest Map and Reduce functions I wrote:

var map = function() {
    if(this.channels) {
            for(var i = 0, imax = this.channels.length; i<imax; i++) {
            emit(this.channels[i], 1);
        }   
    }
}

var reduce = function (key, values) {
    var result = 0;

    values.forEach(function (value) {
        // had this before: result += 1;
        result = db.users.find({'channels' : key}).count();
    });

    return result;
}

I knew that the reduce function was horrific but I just tried the best I could think of. I think my logic may seem wrong but I can't find a good solution. Now I'm thinking of just doing a bunch of queries on every page load, but it will be slow as hell.

Please help! :)

share|improve this question
    
All I can think of that would work for sure is creating a new collection with Map Reduce, and then for each channel calculate the right amount of users that have it. But I will continue to lab with trying to get a working Map/Reduce. – staticelf Aug 2 '12 at 8:54
up vote 1 down vote accepted

In your scenario the reduce function should look like this:

var reduce = function (key, values) {
    var result = 0;

    values.forEach(function (value) {
        result += value;
    });

    return result;
}

Let me know if it is still not working and if it does please give an example of input and (incorrect) output.

share|improve this answer
    
Running it now, it usually takes approx.. 2 min because of the collection size. – staticelf Aug 2 '12 at 8:56
    
It calculates wrong, I think I've event tested with your example before. Your reduce example produces this result (as an example): { "_id" : "Example", "value" : 557325 } . But when I uses this: db.users.find({channels: "Example"}).count() I get 557286 . Not such a big difference, but still a difference. I frankly don't understand why. Still up voted your answer since it was damn good. – staticelf Aug 2 '12 at 9:01
1  
It means that you have errors in DB, i.e. there are users which have multiple "Example" entries in channels list. Trying firing emit in map function only for unique keys (omit duplicates). – freakish Aug 2 '12 at 9:03
    
Ok, thanks for your answer. I've accepted it now. I don't think those multiple channels make such a big deal anyway. :) – staticelf Aug 2 '12 at 9:05

MR is sometimes a bit slow. So you might want to check out the new aggregation framework coming with 2.2 (which i think is s currently in release phase).

See: http://docs.mongodb.org/manual/applications/aggregation/

Additionally you might need to speed up the queries via using proper indices. Or adding a user count to the channels and increasing/decreasing when the user joining/leaving a channel. Depends on your app's use case of course.

share|improve this answer
    
Thanks, but it'll be fine with Map/Reduce for this instance. I'll just work on this project 'till friday. But nice link, I will for sure read about the new aggregation framework. – staticelf Aug 2 '12 at 11:10

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