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IA Responsable : Outils techniques
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- Seaborn: statistical data visualization
- Facets
- Dataiku
- Glue: multi-dimensional linked-data exploration
- SGMAP-AGD anonymisation
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- Scikit-learn.org
- Craft.ai
- Interpreting machine learning
- Marcotcr/lime
- Slundberg/shap
- Awesome machine earning interpretability
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[/accordion_item][accordion_item icon_fontawesome=”fa fa-angle-down” parent_id=”” title=”Valider que les résultats ne stigmatisent pas certaines catégories” id=”” class=”” style=””]
- Fairtest
- Fairlearn
- Machine leaning interpretation anonymisation cryptage privacy
- Pymetrics
- What if tool
[/accordion_item][accordion_item icon_fontawesome=”fa fa-angle-down” parent_id=”” title=”Valider la robustesse des modèles” id=”” class=”” style=””]
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