i am developing an application that will use three tables. 1 - 1 million rows of products. 2 - 500 million rows of users. 3 - 10 billion rows of products that the users like. the tables will grow with the time but will stay around those numbers. i want to choose the right method for this kind of DB. i really don't know much about sharding, clustering or partitioning but if some of you can tell me the best solution for this problem i will focus on it and its will be a huge help. i want only methods that support mysql and if i need multiple servers for this kind of DB? thanks.
2 Answers
You can shard this data set pretty easily but you might not have to depending on the type of analysis you are trying to do. If this is simply a history of what each user likes, then you can probably use database partitioning to partition the data by range on date, and then sub-partition on the user_id.
If you will frequently update the date (users can "unlike" things) then you probably need to look at sharding. There is an example sharding implementation here: Shard-Key-Mapper. You can execute distributed parallel queries over the dataset (like map/reduce for SQL) here: Shard-Query.
If you shard, I should suggest sharding by user_id and keeping the products table as the "shared" table which is duplicated on each shard. You should use a directory based sharding method that allows you to move a user between shards. All the information about a single user, and the information about what they like will be stored together on one shard.
I think if you really don't want a noSQL solution like Hadoop, you can't avoid to get multiple database (here: MySQL) servers. And a MySQL replication doesn't provide in my opinion enough scalability for this kind of data, because the master will become the bottleneck. I'm also not a scalability professional, but I am currently also thinking of a nice solution for a similar problem on my side. I think I will go with a sharding solution where I partition my data over multiple nodes. I am just thinking about an intelligent way to create the mapping from data to shard. But this depends on your application how you want to make it. I think your 'product liking' data is a good candidate for partitioning, because it's so huge.
BTW: An interesting article against sharding: http://37signals.com/svn/posts/1509-mr-moore-gets-to-punt-on-sharding