--- license: bigscience-openrail-m language: - yo base_model: - Jacaranda/YorubaLlama metrics: - cer --- # YORI-LLaMA-Quantized **YORI-LLaMA-Quantized** is a **Yoruba large language model** specialized in **text generation** and **AI-based assistance** in Yoruba. It was **quantized** from its base model , [`Jacaranda/yorubaLLaMA`](https://huggingface.co/Jacaranda/yorubaLLaMA), to achieve lighter memory usage and faster inference while maintaining strong linguistic performance. --- ## 💬 Description YORI-LLaMA-Quantized is trained to **generate and understand natural Yoruba text** with contextual fluency and syntactic awareness. It can be used for: - Yoruba **AI assistants** - **fine-tuned for Chatbot** - **Text completion**, storytelling, and creative generation - **Language preservation** and computational linguistics research ![yori](https://cdn-uploads.huggingface.co/production/uploads/684c3d70f57a8cc5970ae3a9/-cf7gcdMjYd-j11XLIyEg.png) ## ⚠️ Limitations - **Code-switching weakness:** The model struggles when Yoruba and English are mixed, leading to misinterpretations or incorrect tokens. - **Numerical inaccuracies:** Occasionally produces factual errors, e.g., reporting *mẹ́ẹ̀dógún (15)* instead of *mẹ́rìndínlógójì (36)* for the number of Nigerian states. - **Ambiguous prompts:** May output irrelevant or nonsensical responses when the query lacks clarity. These limitations suggest the need for **more diverse and updated training data** across dialects and domains. --- ## ⚙️ Inference Notice A key consideration when running inference is **model precision**. YORI was quantized for efficiency, but inference should be performed in **FP16 precision** for stability and performance. Example snippet: ![FP16 Snippet](https://cdn-uploads.huggingface.co/production/uploads/684c3d70f57a8cc5970ae3a9/kbqyQzQ3zhYRmjR0Ha1xz.png) --- ## 🧩 Intended Use This model is intended for: - **Academic and research purposes** - **Educational AI assistants** - **Yoruba language technology development** Do not use this model for: - Disinformation or impersonation - Generating offensive or harmful content - Applications violating user consent or privacy ---