Protected: FPF Training Program 2024 – FPF Faculty Page
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Protected: FPF Training Program 2024 – Unlock the Power of NIST RMF in AI: Practical Insights from Real-World Applications Event
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Protected: FPF Training Program 2024 – Unpack the Executive Order on AI: Federal Actions and Future Directions Event
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Protected: FPF Training Program 2024 – Fundamentals of AI & Machine Learning (Topic Page)
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Protected: FPF Training Program 2024 – Master the Digital Landscape (Topic Page)
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Protected: FPF Training Program 2024 – Beyond the Basics of Online Advertising (Topic Page)
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Connecting Experts to Make Privacy-Enhancing Tech and AI Work for Everyone
The Future of Privacy Forum (FPF) launched its Research Coordination Network (RCN) for Privacy-Preserving Data Sharing and Analytics on Tuesday, July 9th. The RCN supports the Biden-Harris Administration’s commitments to privacy, equity, and safety articulated in the administration’s Executive Order on Artificial Intelligence (AI). Industry experts, policymakers, civil society, and academics met to discuss the […]
Reflections on California’s Age-Appropriate Design Code in Advance of Oral Arguments
Co-authored with Isaiah Hinton, Policy Intern for the Youth and Education Team Update: On Wednesday, July 17th, the U.S. 9th Circuit Court of Appeals heard oral arguments for an appeal of the District Court’s preliminary injunction of the California Age-Appropriate Design Code Act (AADC). Judges Milan Smith Jr., Mark Bennett, and Anthony Johnstone appeared interested […]
NEW FPF REPORT: Confidential Computing and Privacy: Policy Implications of Trusted Execution Environments
Written by Judy Wang, FPF Communications Intern Today, the Future of Privacy Forum (FPF) published a paper on confidential computing, a privacy-enhancing technology (PET) that marks a significant shift in the trustworthiness and verifiability of data processing for the use cases it supports, including training and use of AI models. Confidential computing leverages two key […]