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.
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