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Mistral AI

Frontier AI Lab
Founded Apr 2023 (3 years old)HQ: Paris, Francemistral.ai

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.

Foundation Model Transparency Index

by Stanford CRFMPublished 2025-12-01Source ↗
Overall:18
Agent Protocols
100
AI bug bounty
100
Amount of usage
0
AUP enforcement frequency
0
AUP enforcement process
100
Basic model properties
0
Benchmarked inference
0
Benefits Assessment
0
Capabilities evaluation
100
Capabilities taxonomy
0
Carbon emissions for final training run
0
Change log
100
Classification of usage data
0
Code access
0
Compute hardware for final training run
0
Compute provider
0
Compute usage for final training run
0
Compute usage including R&D
0
Consumer/enterprise usage
0
Crawling
0
Data acquisition methods
0
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
0
Deeper model properties
0
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
60
Accountability
33.3
Downstream mitigations
80
Impact
14.3
Model Behavior Policy
0
Post-deployment monitoring
42.9
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
100
Geographic statistics
0
Government commitments
100
Government use
0
Instructions for data generation
0
Intermediate tokens
0
Internal compute allocation
0
Internal product and service mitigations
0
Internal products and services
100
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
20
Capabilities
25
Model cost
0
Model dependencies
0
Model access
25
Model information
0
Model Mitigations
20
Model objectives
0
Release
37.5
Model response characteristics
0
Risks
0
Model stages
0
Model theft prevention measures
100
New human-generated data sources
0
Notice of usage data used in training
0
Open weights
0
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
0
Regional policy variations
0
Release stages
0
Researcher credits
0
Responsible disclosure policy
100
Risks evaluation
0
Risks taxonomy
0
Risk thresholds
0
Safe harbor
100
Security incident reporting protocol
0
Specialized access
0
Synthetic data purpose
0
Synthetic data sources
0
System prompt
0
Terms of use
100
Top distribution channels
0
Train-test overlap
0
Upstream
0
Compute
0
Data Acquisition
0
Data Processing
0
Data Properties
0
Methods
0
Other resources
0
Usage data used in training
0
Users of internal products and services
0
Versioning protocol
0
Water usage for final training run
0
Whistleblower protection
0
Grade trajectory (2 waves)
v1.2 December 2025latest
18
v1.1 May 2024
108.9