lynnlangit/learning-ethical-ai
Resources to learn how to implement ethical AI
This guide helps AI practitioners and developers build ethical and compliant AI systems, especially in generative AI and agentic AI. It provides tools, examples, and regulatory insights to ensure models are safe, transparent, and adhere to standards like the EU AI Act or HIPAA. You get practical guidance and code examples for auditing, implementing guardrails, and documenting AI systems.
Use this if you are developing or deploying AI systems and need to ensure they are ethical, safe, and compliant with current regulations.
Not ideal if you are looking for a conceptual overview of AI ethics without practical tools or regulatory guidance.
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Jupyter Notebook
License
Apache-2.0
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Last pushed
Mar 04, 2026
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