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I'm looking at building a Rails application which will have some pretty large tables with upwards of 500 million rows. To keep things snappy I'm currently looking into how a large table can be split to more manageable chunks. I see that as of MySQL 5.1 there is a partitioning option and that's a possible option but I don't like the way the column that determines the partitioning has to be part of the primary key on the table.

What I'd really like to do is split the table that a AR model writes to based upon the values written but as far as I am aware there is no way to do this - does anyone have any suggestions as to how I might implement this or any alternative strategies?

Thanks

Arfon

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4 Answers 4

up vote 5 down vote accepted

Partition columns in MySQL are not limited to primary keys. In fact, a partition column does not have to be a key at all (though one will be created for it transparently). You can partition by RANGE, HASH, KEY and LIST (which is similar to RANGE only that it is a set of discrete values). Read the MySQL manual for an overview of partioning types.

There are alternative solutions such as HScale - a middleware plug-in that transparently partitions tables based on certain criteria. HiveDB is an open-source framework for horizontal partioning for MySQL.

In addition to sharding and partioning you should employ some sort of clustering. The simplest setup is a replication based setup that helps you spread the load over several physical servers. You should also consider more advanced clustering solutions such as MySQL cluster (probably not an option due to the size of your database) and clustering middleware such as Sequioa.

I actually asked a relevant question regarding scaling with MySQL here on stack-overflow some time ago, which I ended up answering myself several days later after collecting a lot of information on the subject. Might be relevant for you as well.

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If you want to split your datas by time, the following solution may fit to your need. You can probably use MERGE tables;

Let's assume your table is called MyTable and that you need one table per week

  1. Your app always logs in the same table
  2. A weekly job atomically renames your table and recreates an empty one: MyTable is renamed to MyTable-Year-WeekNumber, and a fresh empty MyTable is created
  3. Merge tables are dropped and recreated.

If you want to get all the datas of the past three months, you create a merge table which will include only the tables from the last 3 months. Create as many merge tables as you need different periods. If you can not include the table in which datas are currently inserted (MyTable in our example), you'll be even more happy, as you won't have any read / write concurrency

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You can handle this entirely in Active Record using DataFabric.

It's not that complicated to implement similar behavior yourself if that's not suitable. Google sharding for a lot of discussion on the architectural pattern of handling table partitioning within the app tier. It has the advantages of avoiding middleware or depending on db vender specific features. On the other hand it is more code in your app that you're responsible for.

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Thanks for your answer and the link to the scaling with MySQL thread a while back. I'd already been planning some kind of clustering/replication to spread the load.

To clarify my point about the primary keys, it is my understanding that if you have a primary key field then that must be included in the partitioning expression:

Partitioning Keys, Primary Keys, and Unique Keys

I don't really want to have a primary key based upon any of the partitioning columns. This is the syntax that I was trying to use to create the table:

print("CREATE TABLE `annotations` 
    (	`id` int(11) DEFAULT NULL auto_increment PRIMARY KEY,
     	`value` varchar(255), 
    	`task_id` int(11), 
    	`project_id` int(11), 
    	`user_id` int(11), 
    	`created_at` datetime, 
    	`updated_at` datetime) ENGINE=InnoDB
    	PARTITION BY RANGE(task_id)(
    	PARTITION low VALUES LESS THAN (10),
    	PARTITION high VALUES LESS THAN (20)
    	)")

Thanks

Arfon

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Where version of MySQL are you running? –  Eran Galperin Nov 27 '08 at 17:16
    
5.1.29-rc at the moment –  arfon Nov 27 '08 at 17:19
    
As far as I can tell, the queries are good. Notice though that it's two separate queries, in case you were trying to run them as one –  Eran Galperin Nov 27 '08 at 19:35

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