If the incoming values from the CSV file are always formatted like
MM/DD/YYYY), then you don't have to perform any type casting. You just have to configure the flat file connection manager to treat the values in the file as
date data type.
Let's assume that your CSV file looks something like this with a single column containing dates in .
In the SSIS package, create a flat file connection manager to read the CSV file. I stored the CSV in the path
Advanced section, you will notice that the flat file connection manager named the first column as
Column1 and the DataType property is set to
string [DT_STR]. However, the values in the file are actually dates. Either you can manually configure the data types or click on the
Suggest Types... button.
On the Suggest Column Types, leave the default values and click OK. This will read the first 100 rows of the file and will determine the column type according to the data available in the file.
Once you click
OK on the Suggest Column Types dialog, you will notice that the data type on the flat file connection manager for the
Column 0 has been changed to
date [DT_Date]. Click OK to configure the flat file connection manager. You can also rename the column according to your requirements (say InvoiceDate or OrderDate etc.)
Now that you have the flat file connection manager configured, you can use it inside a Flat file source within a data flow task to read the data and populate your database. So, there is no need to manipulate values using a derived column transformation.
However, if your incoming file values are in string like
120420 (YYMMDD), these values cannot be configured as date data types. In these scenarios, you need to use Derived Column transformation as suggested in this answer.
Hope that helps.