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Microsoft Responsible AI
webCredibility Rating
4/5
High(4)High quality. Established institution or organization with editorial oversight and accountability.
Rating inherited from publication venue: Microsoft
This is Microsoft's corporate responsible AI portal, useful as a reference for how a leading AI deployer operationalizes safety and governance principles at an industry scale.
Metadata
Importance: 45/100homepage
Summary
Microsoft's official Responsible AI hub outlines the company's principles, practices, and tools for developing AI systems that are fair, reliable, safe, private, inclusive, transparent, and accountable. It serves as a central resource for Microsoft's governance frameworks, responsible AI standards, and deployment guidelines across its products and research.
Key Points
- •Describes Microsoft's six core responsible AI principles: fairness, reliability & safety, privacy & security, inclusiveness, transparency, and accountability.
- •Provides access to Microsoft's Responsible AI Standard, a framework guiding internal AI development and deployment decisions.
- •Highlights tools and resources such as fairness assessment, interpretability, and differential privacy tools available to developers.
- •Represents a major tech company's public commitment to AI governance and safety at scale across commercial products.
- •Links to research, case studies, and policy positions on responsible AI deployment in real-world applications.
Cited by 1 page
| Page | Type | Quality |
|---|---|---|
| AI Safety Solution Cruxes | Crux | 65.0 |
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Responsible AI: Ethical policies and practices | Microsoft AI This is the Trace Id: 7cb6f63eb3c7cb8fd4d956bcc917c560
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At Microsoft we're committed to responsibly designing, building, and releasing AI technologies—keeping humans at the center and guided by our principles. We’ve distilled our commitment into six core values: Fairness
Reliability and safety
Privacy and security
Transparency
Accountability
Inclusiveness
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