0

I am running a series of models, implemented as SparkML transformers, whose execution I like to monitor. Specifically, I like to monitor which version of the model is used in specific task executions.

I imagine recording the version of the transformer class during run-time execution for monitoring and possibly fetching a more up-to-date version - similar to the version information for AssemblyVersionAttribute in .Net. Such information is both important for model efficacy monitoring as well as for certain regulatory settings.

What is the most pythonic way to accomplish this?

I looked at inspect and related modules without finding a suitable method. I considered git-hooks to write version tags into my classes. However, the approach I found disrupts development workflow, makes commits cumbersome and I am not clear how to finally retrieve information at run-time. Also, I am aware that such version information can be retrieved for packaging but I wish to have version information at the class level.

EDIT: The version information should not need to be manually maintained but derived from other build artifacts, e.g., git, language features

1 Answer 1

1

You can hardcode it as an attribute of your class:

class MyCLass:
    version="1.1.1"

You will be able to bump the version when you update your class.

1
  • Thank you, but I am looking for a solution that derives the information from build artefacts.
    – RndmSymbl
    Oct 29, 2021 at 15:45

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.