I know there are other threads around this topic but they're not quite as specific as my needs (that I can so far find).
I have csv files for import into an SQL Server database I manage. They are put together by humans and so may have errors like too many columns, incorrect data types, corrupt headers and so on.
I have a web form that can receive files from users to a directory on the server and then it reads a line in as a string, parses it cell by cell and does things like checking the correct cell count exists, then moves onto the next line.
Now onto validating the data type and ranges, which I am unclear on the best method. Doing things like manual range checks for numeric types seems a bit archaic.
Is there a better way? A few things;
I have SQL Server types like "numeric" but also nvarchar.
The files can be as small as a few kilobytes or as large as over a gigabyte.
I need to report each specific row and column where an error exists, not just row x failed.
I thought maybe trying to convert/cast the cell value to the expected type, catching exceptions and splitting the data into chunks and spawn threads to do checks in parallel?
Thanks in advance.