Don't miss your chance to take the Fabric Data Engineer (DP-600) exam for FREE! Find out how by attending the DP-600 session on April 23rd (pacific time), live or on-demand.
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
Good afternoon! Here's my situation: I've developed a large tabular model with TE3. The intention is to implement incremental refresh on the model. The model will be deployed from DEV to QC and eventually PROD via DevOps pipeline. My concern is all the partitions that incremental refresh creates. I don't want to deploy the partitions...I'd rather let the Power BI service recreate them every time deployment happens.
Does anyone know of any resources where I can learn more about DevOps pipelines excluding partitions during deployment? I would appreciate any direction anyone could provide! 🙂
Thank you!
@parry2k @Greg_Deckler @mahoneypat @AllisonKennedy
Solved! Go to Solution.
Hi @v-jialluo-msft ! I found this article. It explains that during the initial refresh of a model, it will reconfigure partitions to whatever it determines is "best". So it doesn't matter what partitions get deployed by a pipeline.
But thank you!
Hi @littlemojopuppy ,
Refer to the following links to see if this helps:
How to Incrementally Load Tabular Models - 1400+ Compatibility Level - (sqlitybi.com)
Best Regards,
Gallen Luo
Hi @v-jialluo-msft ! I found this article. It explains that during the initial refresh of a model, it will reconfigure partitions to whatever it determines is "best". So it doesn't matter what partitions get deployed by a pipeline.
But thank you!
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 |
|---|---|
| 11 | |
| 11 | |
| 9 | |
| 8 | |
| 8 |