We've captured the moments from FabCon & SQLCon that everyone is talking about, and we are bringing them to the community, live and on-demand. Starts on April 14th. Register now
Hi,
I was ready a bit older book that focuses more on Power Pivot/Power Query in Excel. It said it was quite a bit more efficient to create a custom column in Power Query, than to create a calculated column in Power Query (i.e. the table view in Power BI).
Is that still the case?
Thanks!
Solved! Go to Solution.
Hi @mmace1,
It said it was quite a bit more efficient to create a custom column in Power Query, than to create a calculated column in Power Query (i.e. the table view in Power BI).
For my understanding, the performance of calculated column and custom column are uncompariable, it depends on the requirements.They have their own advantages
We could take a look at the article below:
Calculated columns in Power BI Desktop, which explains the main difference between those two columns.
In addition, you could have a reference of this similar thread.
For further about the difference between M and Dax, you could have a good look at this article.
Best Regards,
Cherry
Hi @mmace1,
It said it was quite a bit more efficient to create a custom column in Power Query, than to create a calculated column in Power Query (i.e. the table view in Power BI).
For my understanding, the performance of calculated column and custom column are uncompariable, it depends on the requirements.They have their own advantages
We could take a look at the article below:
Calculated columns in Power BI Desktop, which explains the main difference between those two columns.
In addition, you could have a reference of this similar thread.
For further about the difference between M and Dax, you could have a good look at this article.
Best Regards,
Cherry
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 |
|---|---|
| 54 | |
| 39 | |
| 32 | |
| 17 | |
| 15 |
| User | Count |
|---|---|
| 64 | |
| 63 | |
| 37 | |
| 36 | |
| 22 |