microsoft/responsible-ai-workshop
Responsible AI Workshop: a series of tutorials & walkthroughs to illustrate how put responsible AI into practice
This workshop provides practical guidance and resources for building and deploying AI systems responsibly, covering both traditional and generative AI. It helps organizations assess and mitigate risks, ensuring ethical and compliant AI use throughout its lifecycle. AI project managers, MLOps engineers, and AI practitioners can use this to integrate responsible AI practices into their development workflows.
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Use this if you are developing AI systems and need practical, hands-on guidance to address ethical concerns, risks, and compliance requirements from ideation to deployment.
Not ideal if you are looking for a conceptual overview of AI ethics without practical implementation steps or if you are not involved in the development or governance of AI systems.
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Jupyter Notebook
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CC-BY-4.0
Last pushed
Feb 27, 2025
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