intel/intel-xai-tools
Explainable AI Tooling (XAI). XAI is used to discover and explain a model's prediction in a way that is interpretable to the user. Relevant information in the dataset, feature-set, and model's algorithms are exposed.
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39
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6
Language
Jupyter Notebook
License
Apache-2.0
Last pushed
Sep 22, 2025
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0
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