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megMolecular Explanation Generator
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m-phateMultislice PHATE for tensor embeddings
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redunet paperOfficial NumPy Implementation of Deep Networks from the Principle of Rate Reduction (2021)
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graspEssential NLP & ML, short & fast pure Python code
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XAIatERUM2020Workshop: Explanation and exploration of machine learning models with R and DALEX at eRum 2020
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datafsmMachine Learning Finite State Machine Models from Data with Genetic Algorithms
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InterpretFit interpretable models. Explain blackbox machine learning.
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ml-fairness-frameworkFairPut - Machine Learning Fairness Framework with LightGBM — Explainability, Robustness, Fairness (by @firmai)
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global-attribution-mappingGAM (Global Attribution Mapping) explains the landscape of neural network predictions across subpopulations
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CARLACARLA: A Python Library to Benchmark Algorithmic Recourse and Counterfactual Explanation Algorithms
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