# MySQL architecture for n * (n - 1) / 2 algorithm

I'm currently developing a website where users can search for other users based on attributes (age, height, town, education, etc.). I now want to implement some kind of rating between user profiles. The rating is calculated via its own algorithm based on similiarity between the 2 given profiles. User A has a rating "match rating" of 85 with User B and 79 with User C for example. B and C have a rating of 94 and so on....

The user should be able to search for certain attributes and filter the results by rating.

Since the rating differs from profile to profile and also depends on the user doing the search, I can't simply add a field to my users table and use ORDER BY. So far I came up with 2 solutions:

• My first solution was to have a nightly batch job, that calculates the rating for every possible user combination and stores it in a separate table (user1, user2, rating). I then can join this table with the user table and order the result by rating. After doing some math I figured that this solution doesn't scale that well.

Based on the formula n * (n - 1) / 2 there are 45 possible combination for 10 users. For 1.000 users I suddenly have to insert 499.500 rating combinations into my rating table.

• The second solution was to leave MySQL be and just calculate the rating on the fly within my application. This also doesn't scale well. Let's say the search should only return 100 results to the UI (with the highest rated on top). If I have 10.000 users and I want to do a search for every user living in New York sorted by rating, I have to load EVERY user that is living in NY into my app (let's say 3.000), apply the algorithm and then return only the top 100 to the user. This way I have loaded 2.900 useless user objects from the DB and wasted CPU on the algorithm without ever doing anything with it.

Any ideas how I can design this in my MySQL db or web app so that a user can have an individual rating with every other user in a way that the system scales beyond a couple thousand users?

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It's `n*(n-1)/2` and I don't like the title, but the question is interesting. –  Patrick Oct 1 '12 at 19:51
thanks, I fixed the formula. I'm open for title suggestions .. didn't really know how else to phrase it :-) –  black666 Oct 1 '12 at 19:56
at first step, isn't it possible to leave the worst matches in the database (e.g. a simpler algorithm that scales well in mysql), so that you only have to load - let's say 500 matches in your app, so that you can bring up a result that is not complete, but almost perfect? –  RomanKonz Oct 1 '12 at 20:03

If you have to match every user against every other user, the algorithm is O(N^2), whatever you do.

If you can exploit some sort of 1-dimensional "metric", then you can try and associate each user with a single synthetic value. But that's awkward and could be impossible.

But what you can do is to note which users require a change in their profiles (whenever any of the parameters on which the matching is based, changes). At that point you can batch-recalculate the table for those users only, thus working in O(N): if you have 10000 users and only 10 require recalculation, you have to examine 100,000 records instead of 100,000,000.

Other strategies would be to only run the main algorithm for records which have the greater chance of being compared: in your example, "same city". Or when updating records (but this would require to store (user_1, user_2, ranking, last_calculated), only recalculate those records with high ranking, very old, or never calculated. Lowest ranked matches aren't likely to change so much that they float to the top in a short time.

UPDATE

The problem is also operating with O(N^2) storage space.

How to reduce this space? I think I can see two approaches. One is to not put some information in the match table at all. The "match" function makes the more sense the more it is rigid and steep; having ten thousand "good matches" would mean that matching means very little. So we would still need lotsa recalculations when User1 changes some key data, in case it brings some of User1's "no-no" matches back into the "maybe" zone. But we would keep a smaller clique of active matches for each user.

Storage would still grow quadratically, but less steeply.

Another strategy would be to recalculate the match, and then we would need to develop some method for quickly selecting which users are likely to have a good match (thus limiting the number of rows retrieved by the JOIN), and some method to quickly calculate a match; which could entail somehow rewriting the match between User1 and User2 to a very simple function of a subset of DataUser1, DataUser2 (maybe using ancillary columns).

The challenge would be to leverage MySQL capabilities and offload some calculations the the MySQL engine.

To this purpose you might perhaps "map" some data, at input time (therefore in O(k)), to spatial information, or to strings and employ Levenshtein distance.

The storage for a single user would grow, but it would grow linearly, not quadratically, and MySQL `SPATIAL` indexes are very efficient.

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I like the solution for only re-calculating the rating for users that actually need recalculation. But I'm still required to have 500.000 entries in my ratings table for 1.000 users in the system.And once I hit 10.000 users, the ratings table has grown to 50 million entries. I've never operated with that many entries in a single table, so I'm curious if MySQL is still able to do a join on such a table in a reasonable amount of time? –  black666 Oct 1 '12 at 20:39
You would need to employ some trick instead of `matches` table. I tried to come up with some suggestions. –  lserni Oct 1 '12 at 21:07

I agree with everything @Iserni says.

If you have a web app and users need to "login", then you might have an opportunity to create that user's rankings at that time and stash them into a temporary table (or rows in an existing table).

This will work in a reasonable amount of time (a few seconds) if all the data needed for the calculation fits into memory. The database engine should then be doing a full table scan and creating all the ratings.

This should work reasonably well for one user logging in. Passably for two . . . but it is not going to scale very well if you have, say, a dozen users logging in within one second.

Fundamentally, though, your rating does not scale well. You have to do a comparison of all users to all users to get the results. Whether this is batch (at night) or real-time (when someone has a query) doesn't change the nature of the problem. It is going to use a lot of computing resources, and multiple users making requests at the same time will be a bottleneck.

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