Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I've decided to use Amazon RDS MySQL in my ASP.NET application. In order to support large database capacity in the future, I've decided to use sharding, but in a simple implementation. I will work on a single database, when Id reach increment id above 1,000,0000 , I will work with a second database, and so on.

Each database will have the same DB schema. Now, I will create a variable that holds the number of Amazon RDS servers that I am working on parallel. I will write my queries using UNION ALL. Those queries will be created dynamically and will take the number of servers into consideration to create a UNION ALL query that utilizes the whole servers to join the data. Then I will query that data again.

I will use this technique only for the tables that I expect to grow large. The application will know to which server send the delete and update sql queries based on the maximum id that I've setup per server (ie. server 1, up to 1,000,000). For insert statements, I will of course insert the data to the last server. I don't need to worry about replication, restore and backup functionality, Amazon RDS takes care of that.

My questions to you are:

  1. is this a good way to build my own sharding architecture that is cheaper to implement that choosing more expensive solutions
  2. What about Join queries, can I still can make them in visual studio if I have the connection strings for the different servers?
  3. how good this solution is in terms of performance, are their any gotaches I need to know about?

In general I wanted an easy solution that will allow me to start with one server and easily scale when I need too. Most of today's solutions are very complicated and if not, very expensive.


share|improve this question
1 million records isn't all that much. You should base your sharding decisions on how how much of your indexes can fit into each server's key caches. –  Marc B May 14 '12 at 3:44
can your please explain more about indexes fit into each server's key caches. How can I calculate that and what's the recommendation for size considering X bytes of data per row? - 1M rows with 500KB is approx. 470MB, so sure, I can have more per server. –  Idan Shechter May 14 '12 at 3:48
when an index can't fit into memory anymore, a query will force the db engine to hit disk to retrieve the overflow parts of the index. hitting disk is SLOW. that's when you start sharding dbs, to keep your indexes small enough that they can be kept in memory caches. The size of the data is irrelevant - it's the indexes that count. –  Marc B May 14 '12 at 3:49
Also, using sequential numbers as your shard key is not the brightest sharding policy, especially if your application is write intensive and you wish to spread the load between several machines. Why not use something like id % num_of_db_machines? This is a very application specific matter tho (sharding), so without understanding your application logic, any of the responses here are going to be very generic. –  Lior Cohen May 14 '12 at 3:50
id % num_of_db_machine will give me the server that should the insert command should get too (% you mean modulu right?). Furthermore, by using smaller databases (although amazon can go up to 1TB), t will be faster to backup and restore the data for each DB instance in case of data corruption in that specific server. –  Idan Shechter May 14 '12 at 3:58

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.