I've worked on several apps and talked to other developers who have had problems with several details of data warehousing.
The main issue I've seen is regarding Change Data Detection (CDC) in the operational data store. Updates and hard deletes obviously can be hard to detect in the operational data store.
Updates can be handled by inserting triggers on EVERY table that automatically update the updated_at column with the current timestamp. Deletes are harder though - one solution is to put a trigger in that updates an audit table with the id deleted, the table, and a timestamp.
Using triggers seems like the most reasonable way to do change data detection, but another option I've seen is to parse the database transaction log files, though that may make it harder to update the operational data store database.
My question is, how do people usually handle this issue? I've done a fair bit of research and it really seems like a lot of companies doing data warehousing are rolling their own sub-optimal solutions.
Another solution I've seen to avoid problems related to CDC is to simply rebuild the ENTIRE (or the portion related to the source data) data warehouse every once in a while, which will ensure that all the data is current and there is no bug in the code that does CDC on the operational data store.