Optimize Delete operation – Dataverse / Dynamics 365


Recently we had to delete records for one of our entities, and we tried out different combinations of batch sizes and the number of threads with 25000 records as a sample to find the optimum setting.

Below is our sample SSIS Package (uses KingswaySoft Dynamics 365 Tool Kit), it retrieves 25000 record’s GUID (Contact table / entity) and then distributes it equally among 3 different CRM Destination Component running under different users (CRM Connection Managers).

How to – improve data migration performance – SSIS & Azure Data Factory (Dataverse / Dynamics 365)

Below is our Premium Derived Column where we have added a new column with expression IncrementValue()

In Conditional Split component, we are then using this new column added to distrubute the output across three CRM Destination Component, each using a different CRM Connection Managers running under different application users.

We first started with 10 batch size and 20 thread followed by different combinations after that à

Below were our findings ->

Records Count Batch Size Thread Parallel Users Elapsed Time
25000 10 20 3 00:15:58.578
25000 10 15 3 00:14:43.734
25000 10 10 3 00:16:06.438
25000 10 5 3 00:23:52.094
25000 10 15 2 00:18.55.012
25000 10 15 1 00:39:15.828
25000 20 30 1 00:39:12.781

As we can see the Batch size 10 and thread around 15 gave us the best performance. However, evert environment / conditions will would be different so we should try out different combinations before finalizing.

SSIS and Microsoft Dynamics 365

Hope it helps..

Advertisements

Author: Nishant Rana

I love working in and sharing everything about Microsoft.NET technology !

3 thoughts on “Optimize Delete operation – Dataverse / Dynamics 365”

Please share your thoughts

Fill in your details below or click an icon to log in:

WordPress.com Logo

You are commenting using your WordPress.com account. Log Out /  Change )

Google photo

You are commenting using your Google account. Log Out /  Change )

Twitter picture

You are commenting using your Twitter account. Log Out /  Change )

Facebook photo

You are commenting using your Facebook account. Log Out /  Change )

Connecting to %s

This site uses Akismet to reduce spam. Learn how your comment data is processed.