epicmajorman/Gemma4-Biomedical-E4B-gguf
A specialized biomedical AI assistant created by Major Grant, built on Google's Gemma 4 E4B foundation with OpenMed training data. GGUF format for efficient local inference.
README
license: apache-2.0 basemodel: google/gemma-4-E4B-it tags: chemistry biology legal medical compliance biomedical gemma gemma 4 major grant Gemma 4 Biomedical Assistant - GGUF A specialized biomedical AI assistant created by Major Grant, built on Google's Gemma 4 E4B foundation with OpenMed training data. GGUF format for efficient local inference. ⚠️ Important: Abliterated Model This model has been abliterated to remove refusal constraints. It will not refuse requests related to: Chemical…
Source attribution
- HuggingFace — epicmajorman/Gemma4-Biomedical-E4B-gguf
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