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.
Hello,
I have consulted the online documentation to learn how to build a model in Power BI
(https://docs.microsoft.com/en-us/power-bi/service-tutorial-build-machine-learning-model)
However, the last step make reference to using the scored output from the model in a Power BI report.
To use the scored output from your machine learning model you can connect to your dataflow from the Power BI desktop, using the Dataflows connector. The Online Visitors enriched Purchase Intent Prediction entity can now be used to incorporate the predictions from your model in Power BI reports.
Does someone could explain me what's the purpose of using the enriched data set in Power BI report as I don't know how is calculated the prediction scores.
Solved! Go to Solution.
HI @Anonymous ,
>>Does someone could explain me what's the purpose of using the enriched data set in Power BI report as I don't know how is calculated the prediction scores.
Maybe you can take a look at the following document about machine learning training:
Automated Machine Learning in Power BI#ml model training
For detailed machine process logic, you can contact Azure machine learning support to know more about it.
Regards,
Xiaoxin Sheng
HI @Anonymous ,
>>Does someone could explain me what's the purpose of using the enriched data set in Power BI report as I don't know how is calculated the prediction scores.
Maybe you can take a look at the following document about machine learning training:
Automated Machine Learning in Power BI#ml model training
For detailed machine process logic, you can contact Azure machine learning support to know more about it.
Regards,
Xiaoxin Sheng
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 |
---|---|
71 | |
70 | |
43 | |
31 | |
26 |
User | Count |
---|---|
89 | |
49 | |
44 | |
38 | |
37 |