cancel
Showing results for 
Search instead for 
Did you mean: 
Machine Learning
cancel
Showing results for 
Search instead for 
Did you mean: 

Is it wise to use a more recent MLFlow Python package version or is the DB Runtime compatibility matrix strict about MLFlow versions?

fermin_vicente
New Contributor III

More concretely, should we fix the dependency version at MAJOR, MINOR or PATCH?

For example, MLFlow 1.30.0 is available and latest DBR 11.3 LTS is compatible with 1.29.0

My question comes from the fact that installing our own libraries that use MLFlow, dependency resolution might try to get the latest version if we don't properly pin it.

Thanks!

2 REPLIES 2

Debayan
Esteemed Contributor III
Esteemed Contributor III

fermin_vicente
New Contributor III

Hi! thanks for the reply, although maybe you didn't notice that I linked to the same url, so we're aware of the matrix.

The question is, is it compatible solely with 1.29.0? We want to know which dependency should we use in all our projects that might be running against/in the platform:

  • mlflow==1.29.0
  • mlflow==1.29.*
  • mlflow==1.*

Hope this is clearer! thanks

Welcome to Databricks Community: Lets learn, network and celebrate together

Join our fast-growing data practitioner and expert community of 80K+ members, ready to discover, help and collaborate together while making meaningful connections. 

Click here to register and join today! 

Engage in exciting technical discussions, join a group with your peers and meet our Featured Members.