--- license: gemma language: - en base_model: - google/gemma-3-1b-it tags: - uncensored - text-generation - reasoning - instruction-tuned - lightweight --- # Gemma 3 – 1B IT GLM-4.7 Flash Heretic Uncensored Thinking This repository hosts Gemma 3 – 1B IT GLM-4.7 Flash Heretic Uncensored Thinking, a lightweight 1 billion–parameter instruction-tuned model derived from Google’s Gemma 3 1B IT base. This variant is optimized for fast inference, structured reasoning behavior, and minimal refusal patterns, while maintaining compatibility with Gemma’s native instruction format. --- ## Model Overview - **Model Name**: Gemma 3 – 1B IT GLM-4.7 Flash Heretic Uncensored Thinking - **Parameter Count**: 1 Billion (1B) - **Base Architecture**: Gemma 3 - **Base Model**: google/gemma-3-1b-it - **Model Type**: Instruction-Tuned Causal Language Model - **Context Length**: Inherits base model context window - **Primary Language**: English - **License**: Gemma License (inherits from base model) - **Maintainer / Publisher**: DavidAU --- ## What Is This Model? This model is a modified derivative of Gemma 3 – 1B IT, configured for: - Reduced refusal bias compared to default IT alignment - Enhanced direct-answer behavior - Stronger short-form reasoning output - Faster response latency due to compact parameter size - “Flash”-style concise and rapid generation The “Heretic Uncensored Thinking” configuration emphasizes: - Minimal conversational filtering - Direct completion behavior - Structured reasoning patterns when prompted No additional safety layers beyond those present in the base architecture are intentionally introduced. --- ## Key Features & Capabilities ### Core Strengths - Fast inference on consumer GPUs and CPUs - Low VRAM requirements - Instruction-following compatibility - Concise reasoning outputs - Suitable for lightweight agent pipelines ### Performance Characteristics - Optimized for short-to-medium generation tasks - Responsive in real-time assistant applications - Works well in tool-driven or chain-of-thought–style prompts - Practical for edge deployments and experimentation --- ## Intended Use Cases - Lightweight AI assistant - Prompt engineering experimentation - Tool-augmented agents - Rapid-response chat systems - Local inference environments - Educational or research workflows - Controlled “uncensored” deployment environments --- ## Chat Template & Prompt Format This model follows the Gemma instruction format. For best results: - Provide explicit system instructions - Use structured reasoning prompts when needed - Avoid mixing non-Gemma chat formats --- ## Hardware & Deployment Notes Due to its 1B parameter size: - Runs efficiently on 8GB GPUs - Suitable for CPU inference with quantization - Ideal for edge devices and low-resource setups - Compatible with common inference engines supporting Gemma architecture Quantized versions (GGUF, GPTQ, AWQ, etc.) may be used depending on deployment stack. --- ## Alignment & Safety Notice This is an “uncensored” derivative configuration. - Reduced refusal behavior compared to standard IT - Users are responsible for system prompt controls - Deployment should follow local laws and ethical guidelines - No additional alignment layers are added by this repository Use responsibly. --- ## License & Usage Notes This model inherits the **Gemma License** from its base model (*google/gemma-3-1b-it*). - The Gemma License is a custom license provided by Google - You must review and comply with the Gemma License terms - This repository does not change or replace the original licensing terms Users are responsible for ensuring compliance with all applicable regulations. --- ## Acknowledgements - Google for the Gemma 3 architecture and base model - The Hugging Face ecosystem - Open-source tooling communities supporting lightweight deployment --- ## Community & Support - Use the Hugging Face Discussions tab for issues and questions - Community experimentation and benchmarking feedback is welcome