I've got a service running that transforms data and writes the transformed (a couple of million rows) data to a SQL Server. The frontend reads from these tables.
Naturally, we've got an ambition to have this data written as fast as possible, but without sacrificing read performance.
My current approach is writing individual rows, one server call at a time. This seems to minimize locking, but the write speed is not optimal. Unthrottled we're achieving maybe a couple of thousands of rows per second.
I've also attempted to bulk load the data, but I run into deadlocks and timeouts. I'm assuming this is due to lock escalation when inserting/updating (i batch the commits in chunks of 256 rows).
Any ideas for a faster way to commit the records to database without sacrificing read performance?
- The transformed data resides in a number of different tables, all indexed to maximize read performance.
- I use a single, continually open, connection to write the data.