epicmajorman/Gemma4-Biomedical-E4B-gguf

Actively maintainedby epicmajorman2435updated 1 month ago

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

  • HuggingFaceepicmajorman/Gemma4-Biomedical-E4B-gguf

Related resources

Welcome to the repository for Nidum-Limitless-Gemma-2B-GGUF, an advanced language model that provides unrestricted and versatile responses across a wide range of topics. This version is designed for maximum flexibility, allowing you to run it on both CPU and GPU.

1.5K1 year ago

### Model Overview TabPFN-2.5 is a transformer-based foundation model that uses in-context-learning to solve tabular prediction problems in a forward pass. Inference code can be found at https://github.com/PriorLabs/tabPFN.

24.1K2 months ago

### Model Overview TabPFN-2.6 is a transformer-based foundation model that uses in-context-learning to solve tabular prediction problems in a forward pass. Inference code can be found at https://github.com/PriorLabs/tabPFN.

11.3K1 month ago

### Model Overview TabPFN-3 is a transformer-based foundation model that uses in-context-learning to solve tabular prediction problems in a forward pass. Inference code can be found at https://github.com/PriorLabs/TabPFN. More details can be found in the Model Report.

8K2 weeks ago

Abstract:

8752 years ago
Python

In recent years, pre-trained language models (PLMs) achieve the best performance on a wide range of natural language processing (NLP) tasks. While the first models were trained on general domain data, specialized ones have emerged to more effectively treat specific domains.

02 years ago
Python