A few lessons

This commit is contained in:
counterweight 2023-10-18 22:26:08 +02:00
parent ec0e91f454
commit 2a76bdb73f
Signed by: counterweight
GPG key ID: 883EDBAA726BD96C
2 changed files with 40 additions and 0 deletions

Binary file not shown.

After

Width:  |  Height:  |  Size: 130 KiB

View file

@ -58,3 +58,43 @@ Just use both. A data lake with some DWH layer on top. Pretty much, a swamp of f
## The modern data stack
Cheaper storage -> We don't mind duplicating data more.
Faster networking -> We can spread work across more machines and decouple things like storage and processing. We can distribute workloads with distributed storage and compute.
![img.png](../images/example_of_modern_datastack.png)
dbt makes sense nowadays because the modern data stack makes transformations within the datawarehouse.
## Slowly Changing Dimensions
- The issue comes when a dimension changes in a way that would break referential integrity.
- Sometimes, old data can be thrown away. Sometimes, not.
- There are 4 SCD types.
- SCD 0 - Retain original
- Do not update data in the DWH. Source data and DWH gets out of sync.
- You do this when you don't care about the dimension truly.
- Example: Fax numbers when fax is not used anymore.
- SCD 1 - Overwrite
- Overwrite new values in DWH. Old values go away.
- We only care about the new state. We don't need the history.
- SCD 2 - Add new row
- Add new raw with `start_date` and `end_date` fields to indicate which values should be looked at depending on time.
- Used when full historical view is important.
- Increases amount of data stored.
- SCD 3 - Add new attribute
- Keep current attribute value and previous value
- It only keeps the previous type at most
- Intermediate approach between SCD2 and SCD1
## dbtw overview
- dbt takes care of the T in ETL/ELT.
- dbt works within the datawarehouse and with SQL.
- Why not use raw SQL and that's it? Because dbt brings good software practices like modularity, version control, reusability, testing, documentation and such to SQL swamps.
## Case
- ELT in Airbnb.
- Data from insideairbnb.com/berlin/
- The project will use snowflake as a DWH and preset (managed superset) as a BI tool