xai

Bias analysis tool

An eXplainability toolbox for machine learning that enables data analysis and model evaluation to mitigate biases and improve performance

XAI - An eXplainability toolbox for machine learning

GitHub

1k stars
43 watching
174 forks
Language: Python
last commit: about 3 years ago
Linked from 2 awesome lists

aiartificial-intelligencebiasbias-evaluationdownsamplingevaluationexplainabilityexplainable-aiexplainable-mlfeature-importanceimbalanceinterpretabilitymachine-learningmachine-learning-explainabilitymlupsamplingxaixai-library

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
trusted-ai/aix360 A toolkit for explaining complex AI models and data-driven insights 1,633
pbiecek/xai_resources A collection of resources and papers related to Explainable Artificial Intelligence (XAI) for machine learning model interpretability. 822
h2oai/mli-resources Provides tools and techniques for interpreting machine learning models 484
responsiblyai/responsibly A toolkit for auditing and mitigating bias in machine learning systems 94
deel-ai/xplique An Explainable AI toolbox that provides various methods and tools to understand and interpret the behavior of neural networks 644
interpretml/dice Provides counterfactual explanations for machine learning models to facilitate interpretability and understanding. 1,364
andreysharapov/xaience An online repository providing resources and information on explainable AI, algorithmic fairness, ML security, and related topics 107
jphall663/interpretable_machine_learning_with_python Teaching software developers how to build transparent and explainable machine learning models using Python 673
dssg/aequitas Toolkit to audit and mitigate biases in machine learning models 694
cloud-cv/evalai A platform for comparing and evaluating AI and machine learning algorithms at scale 1,771
guildai/guildai Automates and optimizes machine learning experiments to capture run results and improve models 870
allenai/document-qa Tools and codebase for training neural question answering models on multiple paragraphs of text data 434
h2oai/article-information-2019 A framework for building and evaluating machine learning systems with high accuracy and interpretability, particularly in human-centered applications. 13
understandable-machine-intelligence-lab/quantus An eXplainable AI toolkit for evaluating and interpreting neural network explanations in various deep learning frameworks. 556
i-gallegos/fair-llm-benchmark Compiles bias evaluation datasets and provides access to original data sources for large language models 110