I know this question is asked multiple times in stackoverflow. I am posting this question to find out what will be the best choice in for my design. I have following schema for my job details.
_unique_key varchar(256) NULL _job_handle varchar(256) NULL _data varchar(1024) NULL _user_id int(11) NULL _server_ip varchar(39) NULL _app_version varchar(256) NULL _state int(11) NULL _is_set_stopped bool
What operation we are doing on this table:
- For each job we will be having one update and 10 select query on this table. So we need high frequency for read and write.
- There are many application which are manipulating this table by doing filter on:
- _data field size varies from 5KB to 1 MB based on type of application and user.
- Application can update selective attribute.
Solution we thought:
I think MySQL will not scale enough due to requirement on high read and write.
MySQL In Memory Table
Problem with this solution is that
- It doesn't support dynamic field size. MEMORY tables use a fixed-length row-storage format. Variable-length types such as VARCHAR are stored using a fixed length. Source http://dev.mysql.com/doc/refman/5.0/en/memory-storage-engine.html
- select for .... update it will lock a entire table. I don't know will it be a problem.
Redis look likes a good choice. But I think my table is not good for key value cache server.
- It support only very let's set of datatypes. I can store only string in list. I need to store fields as JSON or some other format.
- If clients want to update a particular attribute they need to download full value and then do parsing of object and repush to server. May be I am wrong is there a way to do that?
- Filtering based on value will not be possible. May be I am wrong is there a way to do that?
MySQL InnoDB on TMPFS file system
This look promising. But don't no will it scale enough similar to Redis or MySQL in memory table.