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Andreas Wagner
Andreas Wagner
@anwagnerdreas@hcommons.social  ·  activity timestamp 4 days ago

Der Workshop "LLMs unter Kontrolle. Offene Modelle in Forschung und Praxis" von @spinfocl , Kai Niebes, @SarahOberbichler und mir ist gut besucht und gut gestartet. Genügend Plätze und Steckdosen vorhanden (Seminarraum 1), die TN haben im Großen und Ganzen die Vorbereitungen durchführen können, also los geht's!

#DHD2026 #LLM #Workshop #OpenLLM #OpenSourceAI

Andreas Wagner
Andreas Wagner
@anwagnerdreas@hcommons.social  ·  activity timestamp 4 days ago

Gerade diskutiert @spinfocl die verschiedenen Aspekte von Offenheit bei LLMs: Gewichte, Inferencing Code, Trainingsdaten, Trainingslogik.

https://opensource.org/ai/open-source-ai-definition
https://isitopen.ai/
https://doi.org/10.48550/arXiv.2405.15802
https://doi.org/10.1145/3630106.3659005

#OpenLLM #OpenSourceAI
#OSI #OAID #MOF #OpenWashing #DHd2026

Rethinking open source generative AI: open washing and the EU AI Act

arXiv.org

Towards a Framework for Openness in Foundation Models: Proceedings from the Columbia Convening on Openness in Artificial Intelligence

Over the past year, there has been a robust debate about the benefits and risks of open sourcing foundation models. However, this discussion has often taken place at a high level of generality or with a narrow focus on specific technical attributes. In part, this is because defining open source for foundation models has proven tricky, given its significant differences from traditional software development. In order to inform more practical and nuanced decisions about opening AI systems, including foundation models, this paper presents a framework for grappling with openness across the AI stack. It summarizes previous work on this topic, analyzes the various potential reasons to pursue openness, and outlines how openness varies in different parts of the AI stack, both at the model and at the system level. In doing so, its authors hope to provide a common descriptive framework to deepen a nuanced and rigorous understanding of openness in AI and enable further work around definitions of openness and safety in AI.
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