AI Law / Topic hub
AI Model Licensing
A legal framework for companies that train, license, distribute or build on AI models.
This page maps the key licensing questions, risk boundaries and contractual constraints
that define how a model can lawfully be used, modified and commercialised.
The licence attached to an AI model is not a formality. It defines what you can build,
how you can distribute it, and who bears the risk when something goes wrong.
Common model licences — risk at a glance
"Open" does not mean unrestricted. Most foundation models carry commercial or distribution limits.
Llama 3
MAU cap
700M MAU commercial restriction
Gemma 3
Restricted
Prohibited use categories, no distillation
Mistral
Apache 2.0
Commercial use permitted, check fine-tune terms
GPT-4 API
ToS
Output use restricted, no competing model training
Usage boundaries
Fine-tune rights
Output ownership
Distribution scope
Overview
Why AI model licensing is a distinct legal problem
AI models are not distributed under standard software or copyright logic. Foundation models,
open-weight releases and commercial APIs each carry terms that are often inconsistent
with how the model is actually used inside a product.
What makes AI model licensing legally distinct
- Models trained on third-party data carry chain-of-title questions separate from the model licence itself.
- "Open source" in AI does not mean the same as OSS — most open-weight licences include commercial restrictions, attribution requirements, and usage prohibitions.
- Fine-tuning, distillation and output use often trigger separate provisions the original developer did not anticipate.
- Deployer obligations — disclosure, documentation, access controls — can flow from the model licence into the product layer.
- Licence terms change across model versions: a permissive v1 may carry commercial restrictions at v3.
Chain-of-title
Permitted use
Fine-tune rights
Output ownership
Typical licensing triggers
- Building a product on top of an open-weight or API-based model and need to confirm commercial scope.
- Fine-tuned or distilled a foundation model and need to understand what is owned and what restrictions survive.
- Enterprise customer or investor asks for AI model licence compliance evidence in contracts.
- Scaling beyond original deployment size — volume or geography triggers new licence restrictions.
- Releasing your own model and need to choose and draft the outgoing licence framework.
This is a topic hub within AI Law & Synthetic Media.
It does not introduce standalone "AI licensing services".
Subtopics
Core lines inside AI Model Licensing
The clusters below cover the main licensing scenarios: using foundation models in a product,
open-weight licence risk, derivative models, and structuring your own model's outgoing licence.
⚙️
P1
Using foundation models in a product
Permitted uses, commercial restrictions, and deployment obligations for proprietary and open-weight models.
- API vs self-hosted deployment — legal differences
- MAU limits and scale-triggered restrictions
- Output ownership and downstream licensing
- Prohibited use categories and enforcement exposure
📂
P1
Open-weight and open-source AI licences
How OSS licensing logic differs from AI model licences, and why the gap creates enterprise risk.
- OSS vs AI-specific licences (RAIL, Community, bespoke)
- Copyleft-equivalent clauses in open-weight releases
- What "free for commercial use" actually means
- Llama 3, Gemma, Mistral — recurring risk patterns
🔧
P2
Fine-tuning, distillation and derivative models
What modifications are legally permissible, what restrictions survive, and how to document the chain.
- Licence inheritance on fine-tuned models
- Distillation and its ambiguous legal status
- Structuring derivatives to preserve commercial flexibility
- Chain-of-title documentation requirements
🚀
P2
Licensing your own AI model
How to structure outgoing licences for a model you develop — open release, commercial tiers, and API access.
- Choosing a licence framework (proprietary, RAIL-based, bespoke)
- Permitted use definitions and prohibited use carve-outs
- Monetisation structure: API, SaaS, white-label, resale
- Clauses that flow downstream to deployers and end users
Starting point: if you use an existing model (foundation or open-weight) in a product,
begin with Using foundation models. If you are building and releasing your own model,
start with Licensing your own AI model.
Risk map
Where AI model licensing failures concentrate
Most licensing disputes are not about core licence terms — they are about gaps between
how a model is actually used and what the licence permits.
Recurring risk patterns
- Deployment at scale that triggers commercial restrictions the team was unaware of (volume, geography, MAU).
- Fine-tuning treated as creating a clean derivative, when licence terms attach to the output.
- API wrapper products that technically redistribute model functionality outside permitted scope.
- Enterprise customer contracts that do not reflect the AI model's actual licence restrictions.
- Using a model version with permissive terms after the developer has updated licence terms on newer versions.
- No documentation of training data provenance, making it impossible to evidence chain-of-title later.
Scale triggers
Derivative limits
Distribution scope
Version tracking
What a defensible licensing posture looks like
- Confirmed licence read and documented compliance decision before building on any model.
- Deployment architecture aligned with permitted use scope (API, self-hosted, derivative).
- Customer and vendor contracts that reflect the model's actual usage and output restrictions.
- Version control — tracking which licence version applies to which deployment.
- Documented chain-of-title for fine-tuned or modified models.
Where licensing intersects IP ownership and corporate structure, see:
AI Structuring & Investments.
Insights
Analysis and practical notes
Published guides and case notes on AI model licensing — open-weight risk, fine-tuning boundaries,
monetisation structure, and enterprise compliance.
Founders guide
AI Model Licensing Guide for Founders
Read →
Explainer
How AI Models Are Actually Licensed
Read →
Comparison
OSS Licences vs AI Model Licences
Read →
Case analysis
Llama 3 Licence: The 700M MAU Limit Explained
Read →
Case analysis
Google Gemma Licence: Hidden Risks
Read →
Fine-tuning
What Licence Governs Your Fine-Tuned Model?
Read →
Monetisation
Monetising Open Source LLMs: Licensing Guide
Read →
Enterprise
Enterprise Risk from Open AI Models
Read →
Contracts
From Model Licence to Product ToS: What Flows Through
Read →
Related layers
Where AI model licensing connects to other work
Licensing questions typically connect to IP ownership, governance, corporate structure and compliance.
Links below are adjacent legal layers, not duplicate services.
Services
IT & Intellectual Property
Ownership documentation, IP transfer, and licensing structure for AI models and datasets.
Open →
Services
Regulatory & Compliance
Compliance frameworks for AI deployment obligations that flow from model licences.
Open →
Services
Corporate & Commercial Law
Contract architecture that reflects real AI model licensing constraints and risk allocation.
Open →
Hub
AI Governance & Risk
Where model licensing intersects with governance frameworks, accountability, and cross-border compliance.
Open →
Return to the main hub: AI Law & Synthetic Media.
Working with a model licence question?
Describe the use case: which model, how it is deployed (API, self-hosted, fine-tuned),
at what scale, and for what commercial purpose. We will help map the licensing boundaries,
identify gaps in your current contracts, and structure the arrangement correctly.
This is a topic hub. The purpose is orientation and risk mapping — not a service order.
Good starting points:
- "We build on an open-weight model — need to confirm what the licence allows."
- "We fine-tuned a foundation model — what do we own and what restrictions survive?"
- "We are releasing our own model and need to choose and draft the licence."
- "Our enterprise customer is asking about AI model licence compliance in the contract."
Where IP ownership and corporate structure are involved, see
AI Structuring & Investments.