I embarked on something I thought would be straight-forward: Sequentially (row by row) read, calculate some values and update the same row before going on to the next for the entire table.
The context: one single flat table, 26 million records, composite PK (4 numeric values). Physical table size 1.3 GB. The order in which the records are processed is irrelevant. This will be done once only for the foreseeable future. The calculation it too complex to be done in SQL (for me at least :-)
What is the recommended, efficient way to do this?
What I tried: Using
ADO.NET (which hasn't got the good old VB6 resultset any longer which would have been so much simpler). Combining that with an update statement (statement.ExecuteNonQuery) within each
reader.Read() loop was tricky as ADO.NET doesn't like that on the same connection. So I had to open 2 connections. (The update query uses the composite PK in the WHERE clause, which should potentially be fast, but still strikes me as inefficient since the cursor is already at the record I'm about to update.)
This approach sort of works but not with a reader based on
SELECT * FROM MyTable query. I had to use
LIMIT to read chunks of a few thousand rows at a time to avoid timeout errors. From early experiments I estimated the process to take 9 hours for the 26 million records. I set it up to run overnight, when I came back it had timed out again somewhere one third through the process. After re-starting I discovered that the LIMIT clause slows the
SELECT query once the offset becomes bigger. My new estimates for the remaining 65% are in excess of another 20 hours, possibly longer as the LIMIT offset increases.
There must be a better way!?
(I also tried the EF which was elegant but timed out of course :-)