Privacy
Privacy practices in Responsible AI
involve the consideration of potential implications in using sensitive
data. This includes not only respecting legal and regulatory requirements, but
also considering social norms and typical individual expectations. For example,
what safeguards need to be put in place to ensure the privacy of individuals,
considering that ML models may remember or reveal aspects of the data that they
have been exposed to? What steps are needed to ensure users have adequate
transparency and control of their data?
Learn more about ML privacy through PAIR Explorables' interactive walkthroughs:
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Last updated 2025-02-25 UTC.
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