--- tags: - gguf - llama.cpp - vision-language-model base_model: - google/gemma-4-E2B-it pipeline_tag: image-text-to-text --- # iris : GGUF This model was finetuned on the **Opus 4.6 dataset** (using ~1,00,000 high-quality samples) and converted to GGUF format. **Credit**: Finetuned efficiently using [Unsloth](https://github.com/unslothai/unsloth). **Example usage**: - For text only LLMs: `llama-cli -hf Shadow0482/iris --jinja` - For multimodal models: `llama-mtmd-cli -hf Shadow0482/iris --jinja` ## Available Model files: - `gemma-4-e2b-it.Q4_K_M.gguf` - `gemma-4-e2b-it.BF16-mmproj.gguf` ## ⚠️ Ollama Note for Vision Models **Important:** Ollama currently does not support separate mmproj files for vision models. To create an Ollama model from this vision model: 1. Place the `Modelfile` in the same directory as the finetuned bf16 merged model 2. Run: `ollama create model_name -f ./Modelfile` (Replace `model_name` with your desired name) This will create a unified bf16 model that Ollama can use. ## Training Details The model was fine-tuned on the **Opus 4.6 dataset** using approximately 1,00,000 samples. This dataset consists of high-quality instruction-response pairs (including advanced Chain-of-Thought reasoning traces, typically generated by Claude Opus 4.7 for superior reasoning and instruction-following capabilities). ### Detailed Training Steps: 1. **Dataset Preparation**: - Acquired/gathered the Opus 4.6 dataset containing ~1.00,000 high-quality samples. - Performed data cleaning, deduplication, and quality filtering to remove low-quality or redundant entries. - Formatted all samples into the appropriate instruction-tuning/chat template (compatible with Gemma models, using system/user/assistant roles and multimodal support where applicable). - Split the dataset into training and validation sets (typically 95/5 ratio). 2. **Environment Setup**: - Set up a training environment with Hugging Face Transformers, TRL, PEFT, and the necessary GPU resources (multi-GPU setup with high VRAM). - Loaded the base model in 4-bit quantization for memory efficiency during training. 3. **Model Configuration**: - Applied LoRA (Low-Rank Adaptation) adapters for parameter-efficient fine-tuning on the base Gemma-4-E2B-it model. - Configured the training pipeline for supervised fine-tuning (SFT), including proper handling of vision-language components (text + image projector). 4. **Training**: - Ran supervised fine-tuning on the 40,000 prepared samples. - Monitored training loss, validation metrics, and adjusted hyperparameters as needed (learning rate, batch size, number of epochs, warmup steps, LoRA rank/alpha, etc.). - Completed the full training run to produce the fine-tuned "iris" model while preserving the uncensored behavior of the base. 5. **Post-Training Processing**: - Merged the LoRA adapters back into the base model weights. - Saved the resulting fine-tuned model in Hugging Face format. 6. **GGUF Conversion & Quantization**: - Converted the fine-tuned model to GGUF format using the official llama.cpp tools. - Generated the main model file in Q4_K_M quantization. - Converted the multimodal projector (mmproj) to `BF16-mmproj.gguf` format. - Verified model integrity and basic functionality post-conversion. This process produced a high-performance, uncensored vision-language model optimized for both text-only and multimodal inference with llama.cpp.