I though that I have a simple problem but I am struggling with it for the last few days. To make a long story short, here is a description of it:
- I have about 1 mil new records daily, each record consists of
record_name(string, about 20 characters),
value, the records are stored for about two years (~700mil records in database);
- most of the
record_namesare repeating every day;
- I need to have the ability to find the biggest value gains between the given dates, while preserving the ability to filter the results by wildcarding the
- the software running this needs to work on Windows XP.
- the most important thing is the execution time of each query.
So far I had tried MySQL database and Cassandra. While the MySQL has rather acceptable performance on Linux (by acceptable I mean that my not-so-high skills were sufficient to program something which works), it is very slow on Windows. The same thing is with Cassandra.
The data which are inserted to those databases are being imported from .csv files. First import takes about 5 mins to MySQL and 20 mins to Cassandra, the latter ones are taking more time. I suspect that maybe I mis-configured something, but to be honest - I didn't changed anything performance-related in the config files.
The question is: what is the best solution for working with this kind of data having performance in mind. The programming language is not important, almost any will work, as the queries are simple and implementing them in any of the languages will not take big amounts of time.
Thank you very much for interest in helping.