Ali-Alameer/AI_fairness
This GitHub repository offers resources to create fair and unbiased AI systems, including libraries, tools and tutorials on identifying and mitigating bias in machine learning models and implementing fairness in AI.
Building AI systems that are fair and unbiased is critical for many organizations. This project provides libraries, tools, and tutorials to help you identify and reduce bias in your machine learning models, ensuring more equitable outcomes. It's designed for AI developers and researchers who are responsible for the ethical implementation of AI.
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Use this if you are developing AI models and need practical guidance and tools to ensure they operate fairly and without unintentional bias.
Not ideal if you are a business leader looking for high-level policy recommendations on AI ethics, rather than hands-on technical solutions.
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14
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Language
Jupyter Notebook
License
MIT
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Last pushed
May 02, 2023
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