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I have an online game currently using MySQL. I have a Player table looking like this:

create table player (
    id integer primary key,
    name varchar(50),
    score integer
);

I have an index on "score" column and display the rankings like this:

select id, name, score from player order by score desc limit 100

I'd like to migrate my system to Redis (or, if some other NoSQL is more applicable to this kind of problem, please tell). So I wonder what is the way to display this kind of rankings table efficiently?

AFAICT, this could be a Map/Reduce job? I know next to nothing about Map/Reduce although I read some docs I still don't quite understand as I haven't been able to find any real-life examples.

Can someone please give me a rought example how to do the above query in Redis?

share|improve this question
    
you could consider orientDB (a noSQL derivat, quite nicely designed) code.google.com/p/orient/wiki/SQLQuery . They offer a LIMIT command – Najzero Sep 11 '12 at 7:18
up vote 3 down vote accepted

In redis you can use Sorted sets ( http://redis.io/commands#sorted_set ) When you have scored items in sorted set you can get top N by invoke ZRANGE players 0 N

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Looks good. One question: If I need to have multiple rankings (say: score and monthly_score), would I need to create two sets? – Milan Babuškov Sep 11 '12 at 8:07
    
yes, for each score. Or if monthly_score depends from score, I think you can use list for each player to star his score history – atomAltera Sep 11 '12 at 8:30

Good question - In MongoDB you would have to use the group() function to return this type of query:

select id, name, score from player order by score desc limit 100

Might look something like this:

db.player.group(
           {key: { id:true, name:true },
            reduce: function(obj,prev) { if(prev.cmax<obj.score) prev.cmax = obj.score; },
            initial: { cmax: 0 } // some initial value
            });

Using a MapReduce based approach is probably best, see:

share|improve this answer
    
Thanks. How efficient would such function be? I have about 10 million records in that Player table. Will it have to traverse all records in Map process? – Milan Babuškov Sep 11 '12 at 7:39
    
Well, yes in this case it does have to traverse the entire dataset. I think that the best solution might be to filter your dataset first before MapReduce - for example, start with all players with a score over "50" or something. Otherwise, the 'efficiency' will always be the same, but the speed depends on the system you are using - if you have your NoSQL distributed across multiple machines, the Map and Reduce can take place across the various servers on the network. – Michael Manoochehri Sep 11 '12 at 9:01

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