Power BI is turning 10! Tune in for a special live episode on July 24 with behind-the-scenes stories, product evolution highlights, and a sneak peek at what’s in store for the future.
Save the dateEnhance your career with this limited time 50% discount on Fabric and Power BI exams. Ends August 31st. Request your voucher.
Hi all,
I’m working on a report that is connected to a shared Outlook mailbox via Microsoft Exchange Online data connector. I only need this year's mailings, from a couple of senders, but there is no option to filter upon loading to Query Editor. As the mailbox contains thousands of mails the ETL process & scheduled refreshes are running VERY slowly. Do you have any tips to improve query & refresh performance? For example query folding or some kind of SQL statement upon loading?
Solved! Go to Solution.
Hi @BalazsNy ,
Based on your description, here are some tips to help enhance query and refresh performance:
1. Utilize query folding
2. Configure incremental refresh
3. Using Native SQL Queries
For more details, you can refer to below document:
Query folding guidance in Power BI Desktop - Power BI | Microsoft Learn
Incremental refresh for semantic models and real-time data in Power BI - Power BI | Microsoft Learn
Best Regards,
Adamk Kong
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @BalazsNy ,
Based on your description, here are some tips to help enhance query and refresh performance:
1. Utilize query folding
2. Configure incremental refresh
3. Using Native SQL Queries
For more details, you can refer to below document:
Query folding guidance in Power BI Desktop - Power BI | Microsoft Learn
Incremental refresh for semantic models and real-time data in Power BI - Power BI | Microsoft Learn
Best Regards,
Adamk Kong
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Check out the July 2025 Power BI update to learn about new features.
This is your chance to engage directly with the engineering team behind Fabric and Power BI. Share your experiences and shape the future.
User | Count |
---|---|
69 | |
68 | |
40 | |
29 | |
26 |
User | Count |
---|---|
88 | |
49 | |
45 | |
38 | |
37 |