Skip to main content
cancel
Showing results for 
Search instead for 
Did you mean: 

View all the Fabric Data Days sessions on demand. View schedule

Reply
Anonymous
Not applicable

large datasets performance problems with 400+colums tables

hello everyone,

now I have a tabular model in powerbi desktop with star schema. several dim_tables and one fact_table. this fact table is very big with 400+columns(most columns are kpis ),one quarter data size is 3 milion rows. we plan load one year data with import mode. then the size of pbix file is more than 1GB. these columns cannot be delete and performance must be quick. DQ is very slow. so , in order to keep good performance , we choose import mode. but I wonder is it ok with model performance ? I mean P2 OR P3 premium capacity can keep good performance for large datasets with 400+columns talbes.

1 ACCEPTED SOLUTION
arvindsingh802
Super User
Super User

Yes even P1 would be able to handel 1GB dataset easily.

Please make sure keeping all your DAX optimised and incremental refresh in place to get best performance


If this post helps, then please consider Accept it as the solution, Appreciate your Kudos!!
Proud to be a Super User!!

View solution in original post

1 REPLY 1
arvindsingh802
Super User
Super User

Yes even P1 would be able to handel 1GB dataset easily.

Please make sure keeping all your DAX optimised and incremental refresh in place to get best performance


If this post helps, then please consider Accept it as the solution, Appreciate your Kudos!!
Proud to be a Super User!!

Helpful resources

Announcements
November Power BI Update Carousel

Power BI Monthly Update - November 2025

Check out the November 2025 Power BI update to learn about new features.

Fabric Data Days Carousel

Fabric Data Days

Advance your Data & AI career with 50 days of live learning, contests, hands-on challenges, study groups & certifications and more!

FabCon Atlanta 2026 carousel

FabCon Atlanta 2026

Join us at FabCon Atlanta, March 16-20, for the ultimate Fabric, Power BI, AI and SQL community-led event. Save $200 with code FABCOMM.