- Notifications
You must be signed in to change notification settings - Fork133
Releases: SelfExplainML/PiML-Toolbox
Releases · SelfExplainML/PiML-Toolbox
V0.6.0
- Support data loading by Spark
- Support H2O model registration
- Support data-dependent model interpretation and explanation
- Add Friedman’s H-statistic to post hoc explanation
- Add data integrity check and more outlier detection methods
- Add log loss and Brier score to binary classification metrics
- Add segmented performance diagnostics
- Add hyperparameter tuning by grid and randomized search
- Pipeline optimization, code cleanup, and bug fixes
Assets17
- 9.24 MB
2024-03-01T02:17:33Z - 8.78 MB
2024-03-01T02:35:01Z - 11.6 MB
2024-03-01T02:34:38Z - 7.38 MB
2024-03-01T02:34:53Z - 9.92 MB
2024-03-01T02:17:25Z - 12.1 MB
2024-03-01T02:34:20Z - 7.16 MB
2024-03-01T02:34:50Z - 10.2 MB
2024-03-01T02:17:29Z - 9.17 MB
2024-03-01T02:34:57Z - 11.6 MB
2024-03-01T02:34:33Z 2023-11-16T17:56:51Z 2023-11-16T17:56:51Z - Loading
Uh oh!
There was an error while loading.Please reload this page.
V0.5.1
- Add model-free diagnostics test APIs.
- Add support for a wider range of computing environments, including Mac ARM.
- Enhance overfit diagnostic module to support AUC metric.
- Add sliced 1D plot as alternatives of 2D heatmap.
- Code refactorization and bug fixes.
Assets17
Uh oh!
There was an error while loading.Please reload this page.
V0.5.0
- Release of PiML user guide.
- Add data quality module.
- Add interpretable XGB1 model.
- Add train-test split methods in data_prepare.
- Improve binning search in model_fairness.
- Some bug fixes and miscellaneous changes.
Assets14
Uh oh!
There was an error while loading.Please reload this page.