Future & RobotsFuture & Robots
Lunch Talk15min
BEGINNER

Deploying LLM on premise: let's review licenses and highlight true open source technologies

This talk demystifies the legal and licensing challenges of deploying Large Language Models on‑premise. It compares major model licenses, clarifies true open‑source options, explains “fair use” and “non‑commercial” pitfalls, and shows why Apache 2.0 and MIT licenses underpin reliable, compliant AI stacks for enterprise and edge environments.

talk.summaryAiDisclaimer

Antoine Thomas
Antoine ThomasHyland
talks.description
As AI adoption accelerates, many teams discover that deploying Large Language Models on‑premise isn’t just a technical challenge—it’s a legal one. Between “open” models that aren’t truly open, enterprise‑friendly licenses, and increasingly restrictive “fair use” or “non‑commercial” clauses, choosing the wrong component can quietly lock you out of production.

In this talk, we’ll decode the licensing landscape behind today’s most popular LLMs, inference engines, and AI tooling. We’ll compare model licenses side‑by‑side, highlight which ecosystems are genuinely open source (and which only look like it), and explain why Apache 2.0 and MIT have become the bedrock of trustworthy, production‑ready AI stacks. You’ll also learn how to navigate “fair use” and “non‑commercial” licenses—what they really allow, where the traps are, and how they affect on‑premise and edge deployments.

If you want to build AI solutions without giving your legal team a headache, this talk is for you.
compliance
licensing
opensource
deployment
talks.speakers
Antoine Thomas

Antoine Thomas

Hyland

France

Community manager, Open Source Products at Hyland. 25+ years of experience with open source and tech communities. I also teach and advise on open source, and write tutorials. Involved in various Open Source and Free Software projects and communities for many years. Ubuntu Studio co-founder.