
Stephen Batifol
Developer Advocate at Black Forest Labs, where he works on developer relations and education for BFL’s FLUX visual AI models, including FLUX.2 [klein]. He previously appeared publicly as a developer advocate in the AI/vector database ecosystem and is listed as a contributor/author on Black Forest Labs FLUX materials.
Hackathon Caps Models at 32B Parameters to Reward Tinkerable AI Apps
Build Small is a Hugging Face and Gradio hackathon organized around a hard constraint: every model used must be under 32 billion parameters. Yuvraj Sharma framed the rule as a way to move AI building away from dependence on giant hosted models and back toward systems that participants can inspect, fine-tune, run locally, and ship as working Gradio Spaces. Sponsor presentations from Black Forest Labs, OpenBMB, OpenAI, NVIDIA, Modal, JetBrains, and Cohere largely reinforced that premise, offering small models, credits, tools, and prize categories meant to turn the constraint into runnable projects rather than demos in name only.
BFL Is Moving FLUX From Image Generation Toward Physical AI
Stephen Batifol of Black Forest Labs argues that FLUX is no longer just an image-generation line but the start of a broader push toward visual intelligence: models that can generate, edit, understand, and eventually act across images, video, audio, and physical environments. In the talk, he presents FLUX.1, Kontext, FLUX.2, and FLUX.2 Klein as product steps toward that goal, while BFL’s Self-Flow research is framed as the mechanism for moving representation learning inside multimodal generative models rather than relying on external encoders.