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 dateJoin the OneLake & Platform Admin teams for an ask US anything on July 16th. Join now.
Hello Everyone,
Can you please suggest best practice for loading data from SQL/Oracle to snowflake using Microsoft Fabric data pipeline.
Case 1 : Multiple tables at a time with huge volume of data in each table
Case 2: Multiple tables at a time with less volume of data in each table
What is the recommended way for both performance and CU consumption
Regards,
Srisakthi
Solved! Go to Solution.
Hi @Srisakthi
Thank you for reaching out Microsoft Fabric Community Forum.
Hi @Srisakthi
1. Firstly a). you will create a config table where we will mention the start and end range of date that choose either full and incremental load based on your datasets.
b). The data format should be parquet with snappy compression that helps to optimized the data performance. data should be save into small chunk files.
c). If you are quite better in pyspark, so it would be better otherwise you will do it with the help of the copy activities in the pipleines
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @Srisakthi
We haven’t heard back since our last response and wanted to check if your query has been resolved. If not, please feel free to reach out for further assistance. If it has been resolved, kindly mark the helpful reply as the solution to make it easier for others to find. A kudos would also be greatly appreciated!
Thank you.
Hi @Srisakthi
Thank you for your patience. please let us know if anything was helpful to you, so that we can convert it into a formal answer. If so, we would appreciate it if you could Accept it as a solution and drop a 'Kudos' so other members can find it more easily.
Thank you.
Hi @Srisakthi
Thank you for reaching out Microsoft Fabric Community Forum.
This is your chance to engage directly with the engineering team behind Fabric and Power BI. Share your experiences and shape the future.
Check out the June 2025 Fabric update to learn about new features.