Advanced · Safety
Differential Privacy
Visual diagram · (in preparation) · Math · (in preparation) · Worked example · 3 difficulty levels.
TL;DR. A mathematical framework that bounds how much any single individual's data can affect a model or query result.
Technical Definition
A mathematical framework that bounds how much any single individual's data can affect a model or query result.
How it works
DP adds calibrated noise so that statistics — or trained models — are nearly identical whether a given person's data is included or not. Used by Apple, Google, and the U.S. Census. The privacy budget ε quantifies the trade-off with utility.
Related Concepts
- Federated Learning — Distributed training where models learn from data on many devices without the data ever leaving those devices.
- AI Safety & Alignment — The field ensuring AI systems behave as intended, remain under human control, and avoid unintended harm.
- Privacy — Protecting personal information that flows into or out of an AI system.