Community-led AI Audits: Methodology for Placing Communities at the Center of AI Accountability
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FaceNet’s errors reveal AI’s potential for misidentification, highlighting cases where even prominent figures were incorrectly flagged. This article discusses the implications for privacy and security in facial recognition technology
Lawmaker or Lawbreaker? How FaceNet Got It Wrong
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FaceNet’s errors reveal AI’s potential for misidentification, highlighting cases where even prominent figures were incorrectly flagged. This article discusses the implications for privacy and security in facial recognition technology
Name Your Bias: AI’s Fairness Challenge in Hiring
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Exploring AI’s role in hiring, this article delves into bias challenges within automated recruitment tools and the impact on fair hiring practices
FemTech: My body, my data, their rules
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Exploring the privacy risks in femtech, this article reveals how personal health data in menstrual and fertility tracking apps is often exploited, raising concerns over data ownership, consent, and regulatory gaps.
BadData: The High Cost of Poor Data Quality
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Uncovering the hidden risks of flawed data—showing how errors, biases, and outdated information can twist decision-making, fueling predictions that may shape lives in unexpected and sometimes irreversible ways.