Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

fix(forest): use hparams in predict_proba #2181

Merged

Conversation

ahuber21
Copy link
Contributor

@ahuber21 ahuber21 commented Nov 22, 2024

Description

Use hparams in predict_proba. Not adding them in #1751 was an oversight


PR should start as a draft, then move to ready for review state after CI is passed and all applicable checkboxes are closed.
This approach ensures that reviewers don't spend extra time asking for regular requirements.

You can remove a checkbox as not applicable only if it doesn't relate to this PR in any way.
For example, PR with docs update doesn't require checkboxes for performance while PR with any change in actual code should have checkboxes and justify how this code change is expected to affect performance (or justification should be self-evident).

Checklist to comply with before moving PR from draft:

PR completeness and readability

  • I have reviewed my changes thoroughly before submitting this pull request.
  • I have commented my code, particularly in hard-to-understand areas.
  • I have updated the documentation to reflect the changes or created a separate PR with update and provided its number in the description, if necessary.
  • Git commit message contains an appropriate signed-off-by string (see CONTRIBUTING.md for details).
  • I have added a respective label(s) to PR if I have a permission for that.
  • I have resolved any merge conflicts that might occur with the base branch.

Testing

  • I have run it locally and tested the changes extensively.
  • All CI jobs are green or I have provided justification why they aren't.
  • I have extended testing suite if new functionality was introduced in this PR.

Performance

  • I have measured performance for affected algorithms using scikit-learn_bench and provided at least summary table with measured data, if performance change is expected.
  • I have provided justification why performance has changed or why changes are not expected.
  • I have provided justification why quality metrics have changed or why changes are not expected.
  • I have extended benchmarking suite and provided corresponding scikit-learn_bench PR if new measurable functionality was introduced in this PR.

@ahuber21 ahuber21 changed the title Use hparams in predict_proba fix(forest): use hparams in predict_proba Nov 22, 2024
@ahuber21
Copy link
Contributor Author

/intelci: run

@ahuber21 ahuber21 marked this pull request as ready for review November 22, 2024 19:02
@ahuber21 ahuber21 merged commit 3d135aa into intel:main Nov 22, 2024
29 of 39 checks passed
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

Successfully merging this pull request may close these issues.

2 participants