This post is just my opinion on the matter. I may be wrong in some or more parts.
I'll take a very, very shallow dip into what I think you're looking for; normalized and denormalized data:
- Reduces data redundancy (multiple copies of data in a single database which is hard to maintain)
- Easier data-to-schema mapping visualization
- Aids in a certain angle of Object Oriented Programming
- Improves performance of queries
- When you have static/persistent data, why not?
If you're just about to set up your database, consider immediately the purpose of your data. Not all data need to be normalized or denormalized; you can have a hybrid. Again, that is, where applicable.
The purpose of your data is also as important as how you get your data, at least when it comes to modeling. If you are working with a highly transactional database but need half-hourly (or even shorter interval) reports you'll also have to think of data source redundancy (this time I mean having backups or replicated databases for data security as well) --then you'll decide if you need a hybrid, normalized or denormalized model for your tables. If your client, for example, requires data to be sent to them not as reports but as structured data, you'll be able to work with their need of normalized data, but that may not necessarily mean that you'll have to normalize yours --ETL may come into play, but that's after careful review and testing of transformation or query speeds. When you simply load data, say from CMS servers, and only require the records for reporting, you can denormalize your data for accessibility. The speed of your queries for static data will be visible also if you decide to aggregate data during the loading process. There's also a matter of whether you're dealing with Slowly Changing Dimensions, where your data structure is affected by a need to 'group'..
Sorry, I may have rambled off... I would also like to emphasize again that this post is of my opinion. I don't present these as pure, unchanging facts.. These just happen to be some of the things I've been able to learn of. Many may/will disagree with what I've written here, but ultimately, I'm just sharing my own experiences when it comes to deciding how to model your data.