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Meta AI (FAIR)

Frontier AI Lab
Founded Dec 2013 (12 years old)HQ: Menlo Park, CAai.meta.com

Also known as: Meta, Meta AI, FAIR, Facebook AI Research, Meta Fundamental AI Research

Grades from external scorecards. We mirror published grades only; per-source methodology lives at the link in each panel header. See the scorecards directory for cross-org comparison.

FLI AI Safety Index

by Future of Life InstitutePublished 2025-12-02Source ↗
Overall:D
Current Harms
D+
Existential Safety
F
Governance & Accountability
D
Information Sharing
D-
Risk Assessment
D
Safety Frameworks
D+
Grade trajectory (3 waves)
Winter 2025latest
D
Summer 2025
D
December 2024
F

SaferAI Ratings

by SaferAIPublished 2025-10-01Source ↗
Overall:Very Weak
Risk Analysis and Evaluation
Weak
Risk Governance
Very Weak
Risk Identification
Very Weak
Risk Treatment
Very Weak

AI Lab Watch

by Zach Stein-PerlmanPublished 2025-09-01Source ↗
Overall:Very Weak
Risk info sharing
Very Weak
Misuse prevention
Very Weak
Planning
Very Weak
Risk assessment
Very Weak
Boosting safety research
Weak
Scheming risk prevention
Very Weak
Prep for extreme security
Very Weak

Foundation Model Transparency Index

by Stanford CRFMPublished 2025-12-01Source ↗
Overall:31
Agent Protocols
0
AI bug bounty
100
Amount of usage
0
AUP enforcement frequency
0
AUP enforcement process
0
Basic model properties
100
Benchmarked inference
0
Benefits Assessment
100
Capabilities evaluation
100
Capabilities taxonomy
100
Carbon emissions for final training run
100
Change log
100
Classification of usage data
0
Code access
0
Compute hardware for final training run
0
Compute provider
100
Compute usage for final training run
0
Compute usage including R&D
0
Consumer/enterprise usage
0
Crawling
100
Data acquisition methods
100
Data domain composition
0
Data laborer practices
0
Data language composition
0
Data processing methods
0
Data processing purpose
0
Data processing techniques
0
Data replicability
0
Data retention and deletion policy
0
Data size
100
Deeper model properties
100
Detection of machine-generated content
100
Development duration for final training run
0
Distribution channels with usage data
0
Documentation for responsible use
100
Downstream
33.3
Acceptable use policy
40
Accountability
0
Downstream mitigations
80
Impact
14.3
Model Behavior Policy
75
Post-deployment monitoring
28.6
Usage data
0
Energy usage for final training run
0
Enterprise mitigations
100
Enterprise users
0
External data access
0
External developer mitigations
100
External products and services
0
External reproducibility of capabilities evaluation
0
External reproducibility of mitigations evaluation
0
External reproducibility of risks evaluation
0
External risk evaluation
0
Feedback mechanisms
0
Foundation model roadmap
0
Geographic statistics
0
Government commitments
0
Government use
0
Instructions for data generation
0
Intermediate tokens
100
Internal compute allocation
0
Internal product and service mitigations
0
Internal products and services
0
Licensed data compensation
0
Licensed data sources
0
Misuse incident reporting protocol
0
Mitigations efficacy
0
Mitigations taxonomy
0
Mitigations taxonomy mapped to risk taxonomy
0
Model
40
Capabilities
50
Model cost
0
Model dependencies
100
Model access
50
Model information
75
Model Mitigations
0
Model objectives
0
Release
50
Model response characteristics
100
Risks
20
Model stages
0
Model theft prevention measures
0
New human-generated data sources
0
Notice of usage data used in training
100
Open weights
100
Organization chart
0
Oversight mechanism
0
Permitted and prohibited users
100
Permitted, restricted, and prohibited model behaviors
0
Permitted, restricted, and prohibited uses
100
Post-deployment coordination with government
0
Pre-deployment risk evaluation
0
Public datasets
0
Quantization
100
Regional policy variations
0
Release stages
0
Researcher credits
100
Responsible disclosure policy
100
Risks evaluation
0
Risks taxonomy
100
Risk thresholds
100
Safe harbor
0
Security incident reporting protocol
0
Specialized access
0
Synthetic data purpose
0
Synthetic data sources
0
System prompt
100
Terms of use
100
Top distribution channels
0
Train-test overlap
0
Upstream
20.6
Compute
22.2
Data Acquisition
33.3
Data Processing
0
Data Properties
20
Methods
0
Other resources
0
Usage data used in training
100
Users of internal products and services
0
Versioning protocol
0
Water usage for final training run
0
Whistleblower protection
0
Grade trajectory (3 waves)
v1.2 December 2025latest
31
v1.1 May 2024
118.8
v1.0 October 2023
54