Matt White
The Open Future of AI: Beyond Open Weights
#1about 3 minutes
The growing influence and economic value of open source AI
Open source AI is rapidly gaining traction and disrupting the market, mirroring the massive economic value created by traditional open source software.
#2about 2 minutes
How the Linux Foundation supports the end-to-end AI stack
The Linux Foundation provides a comprehensive stack for AI development, from the Linux kernel and Kubernetes to PyTorch, open standards like C2PA, and the AITA protocol for agent collaboration.
#3about 4 minutes
Navigating the challenges of defining open source AI
The rapid growth of open models, exemplified by platforms like Hugging Face, highlights challenges such as inconsistent definitions of "open" and widespread confusion around license compliance.
#4about 4 minutes
A framework for classifying AI model openness and completeness
The Model Openness Framework (MOF) distinguishes between openness and completeness, providing a classification system with three tiers to clarify what components are needed for different use cases.
#5about 4 minutes
Creating the OpenMDW license for permissive AI models
To solve the complexity of multi-license frameworks, the OpenMDW license was created as a single, permissive license specifically for machine learning models, covering components like data and weights.
#6about 1 minute
How the OpenMDW license compares to other options
The OpenMDW license provides more comprehensive coverage for all model components compared to restrictive licenses like OpenRAIL or traditional software licenses like MIT and Apache 2.0.
#7about 2 minutes
Key strategies for building successful open source AI projects
Successful open source AI projects require solving a real problem, building a strong community, choosing the right license, maintaining a public roadmap, and prioritizing ethics and documentation.
#8about 2 minutes
Using an open source approach for AI standards development
Adopting an agile, open source methodology for developing standards and protocols allows for community-driven, iterative progress, and it is better to contribute to existing standards than to fork them.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
21:08 MIN
The future of open source licensing and incentives
Open Source: The Engine of Innovation in the Digital Age
18:42 MIN
Open source models ensure a competitive AI ecosystem
Decoding Trends: Strategies for Success in the Evolving Digital Domain
20:54 MIN
The impact of open source models like DeepSeek
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
04:28 MIN
Defining the different categories of open source AI
Open Source AI, To Foundation Models and Beyond
20:31 MIN
Navigating AI regulation and open source
The AI Hype Filter: What’s Real, What’s Investable, What’s Noise?
25:09 MIN
Debunking common myths about open source AI
Open Source AI, To Foundation Models and Beyond
13:36 MIN
How open source models accelerate AI innovation
Open Source AI, To Foundation Models and Beyond
32:29 MIN
Future outlook on AI agents and open standards
Exploring AI: Opportunities and Risks in Development
Featured Partners
Related Videos
Open Source AI, To Foundation Models and Beyond
Ankit Patel, Matt White, Philipp Schmid, Lucie-Aimée Kaffee & Andreas Blattmann
Open Source: The Engine of Innovation in the Digital Age
Maxim Fateev, Jo Franchetti, Ankit Patel & Ivan Burazin
How AI Models Get Smarter
Ankit Patel
From Model to Metal: An Open Source Stack for Accelerating Intelligence
Andrew Wafaa
What Makes Open Source Work: Licensing and Beyond
Peter Zaitsev
The State of GenAI & Machine Learning in 2025
Alejandro Saucedo
Kettle and Pot or Peas in a Pod? A Debate on Open-Source and Proprietary Software
Kevin & Roxana Crisan
AI & Ethics
PJ Hagerty
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.

AI Systems and MLOps Engineer for Earth Observation
Forschungszentrum Jülich GmbH
Jülich, Germany
Intermediate
Senior
Linux
Docker
AI Frameworks
Machine Learning


Student project: Optimizing Open-set Recognition Methods for Reliable Real-world AI Systems
Imec
Azure
Python
PyTorch
TensorFlow
Computer Vision
+1


AI Model Training & Refinement Specialist - AI
FDTech GmbH
Boldecker Land, Germany
R
GIT
Python
A/B testing
Machine Learning
+1


AI & Embedded ML Engineer (Real-Time Edge Optimization)
autonomous-teaming
Canton of Toulouse-5, France
Remote
C++
GIT
Linux
Python
+1

AI & Embedded ML Engineer (Real-Time Edge Optimization)
autonomous-teaming
München, Germany
Remote
C++
GIT
Linux
Python
+1

Machine Learning (ML) Engineer Expert - frameworks MLOps / Python / Orchestration/Pipelines
ASFOTEC
Canton de Lille-6, France
Senior
GIT
Bash
DevOps
Python
Gitlab
+6