Don't miss your chance to take the Fabric Data Engineer (DP-700) exam on us!
Learn moreNext up in the FabCon + SQLCon recap series: The roadmap for Microsoft SQL and Maximizing Developer experiences in Fabric. All sessions are available on-demand after the live show. Register now
Hi,
I am using PBI Desktop to create PBIX files which I later upload to Power BI Embedded (PaaS solution). The PBIX gets data from Azure SQL server in Direct Query mode. I want to increase the efficiency of queries that Power BI Embedded sends to SQL for getting my data.
Please advice if the following options will help me increase the efficiency of queries, thus reducing the time taken by the pbix to load: -
1. Using Advanced Options in the Get Data dialog box : Inserting a SQL statement here will get only specific data instead of the entire table. This will reduce the data I see in PBI Desktop, but will it really increase the efficiency of queries sent to SQL for the creation of charts? Eg: Say PBIX needs to create a join between two tables. If I use the advanced options, will the Join be done on reduced data?
2. Using Filters to filter out unwanted rows of the table : Again like above option, this will reduce the data I see in PBI Desktop, but will it really increase the efficiency of queries sent to SQL for the creation of charts? Eg: If I use filters, will the Join be done on reduced data?
Please redirect this to appropriate forums as necessary
Hi @aviku,
Based on my understanding both the options above will help increase the efficiency of queries, as all queries sent to the source database will run against only specific data instead of the entire table in this scenario, thus reducing the time that back-end source takes to respond.![]()
Regards
If you have recently started exploring Fabric, we'd love to hear how it's going. Your feedback can help with product improvements.
A new Power BI DataViz World Championship is coming this June! Don't miss out on submitting your entry.
Share feedback directly with Fabric product managers, participate in targeted research studies and influence the Fabric roadmap.
| User | Count |
|---|---|
| 50 | |
| 44 | |
| 41 | |
| 18 | |
| 18 |
| User | Count |
|---|---|
| 69 | |
| 68 | |
| 32 | |
| 32 | |
| 32 |