I'm developing a project to gather ebanking transactions which is not online with .NET. It means that I'll get some text files containing the transactions for previous day. In total, it contains about 2,000,000 rows per day.
I want to have great performance in searching on the last month transactions (maximum 3 seconds), but I want to be able to search in the older transactions (maximum 30 seconds). Archive searching is based on
TransactionDate. I mean the archive search scenario is static and we don't want to search on the other columns or get any kind of reports.
I'm thinking of archiving strategy.
There are some options:
Tuning and optimizing indexes on the main table.
Partitioning the main table.
Moving old transactions to another database, nightly.
Moving old transactions to a text file, every hour (TextFile, XmlSerialization, BinarySerialization) and then search in memory.
Using other open source NON-RDBMS databases (like Lucene engine in text search).
First of all, I want to know which strategy is the best matching one for this scenario?
Also, how many records supported by known database engines (like SQL Server 2008, Oracle, Sqlite, MySql,...)? When should we think of Table Partitioning?