Join us for an expert-led overview of the tools and concepts you'll need to pass exam PL-300. The first session starts on June 11th. See you there!
Get registeredPower BI is turning 10! Let’s celebrate together with dataviz contests, interactive sessions, and giveaways. Register now.
Happy New Year all,
Based on the subject topics, I have a few questions.
Background - I would like to create a BI dashboard and the source of data is to retrieve it from SQL Server.
Scenario A - I noticed the schema table I am going to import into Power BI required further data cleansing and transformation.
Scenario B - I noticed that the data modelling in the data warehouse does not fit my requirements.
Scenario C - I notice that I only need a subset of data records in a few tables in the data warehouse based on business requirements
There are many seasonal and data engineers (note - I am more of a business acumen not technical and I create the visual based on the Excel spreadsheet provided) who proposed that Power BI should only focus on visualisation scope (i.e., DAX) but activities related to backend transformation like the three scenarios above should always take place in SQL Server before you import the data into the Power BI. I think I want to know from the season Power BI pro how they normally do in those situations. Thank You.
Regards,
Aiyo
Hi @ANNING
Your questions are very right to the point.
Answers:
Sorry but Not true. Power BI is no longer just a visualisation tool espacially with Fabric on the horizon. Power Query is an ETL, Modeling and DAX and the semantic model you build can be a Data warehouse itself. Exemple : Building a Semantic model (Dataset), Publish it to the service and give access to developpers to reuse it from Power BI desktop via AAS to also build other semantic models on top of it...
Regards
Amine Jerbi
If I answered your question, please mark this thread as accepted
and you can follow me on
My Website, LinkedIn and Facebook
User | Count |
---|---|
84 | |
79 | |
71 | |
48 | |
42 |
User | Count |
---|---|
111 | |
54 | |
50 | |
40 | |
40 |