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| title: ArabicLAWLLM | |
| emoji: 🐢 | |
| colorFrom: gray | |
| colorTo: pink | |
| sdk: gradio | |
| sdk_version: 5.29.0 | |
| app_file: app.py | |
| pinned: false | |
| license: mit | |
| short_description: Arabic LAW RAG custom | |
| Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference | |
| Arabic Legal Demo: NER & RAG | |
| A rough client demo for Arabic law, extracting legal entities and generating insights using NAMAA-Space/gliner_arabic-v2.1 and Qwen/QwQ-32B in a Retrieval-Augmented Generation (RAG) pipeline. Deployed as a Gradio app in a Hugging Face Space, optimized for NVIDIA H200 GPU. | |
| Features | |
| NER: Extracts entities (e.g., person, law) from Arabic legal texts using GLiNER. | |
| RAG: Retrieves relevant legal context from a mock corpus using FAISS and generates insights with QwQ-32B. | |
| UI: Gradio interface for inputting text, specifying entity types, and viewing entities, context, and insights. | |
| Setup | |
| Hardware: NVIDIA H200 GPU (141GB VRAM) in a custom/enterprise Hugging Face Space. | |
| Files: | |
| app.py: Gradio app with RAG pipeline. | |
| requirements.txt: Dependencies. | |
| legal_corpus.json: Mock legal corpus (replace with real data). | |
| Run: Push files to a Hugging Face Space and deploy. | |
| Usage | |
| Enter Arabic legal text (e.g., "المادة ١٠١ من نظام العمل..."). | |
| Specify entity types (e.g., "person,law"). | |
| Click "Analyze" to see extracted entities, retrieved context, and legal insight. | |
| Notes | |
| Replace legal_corpus.json with a real legal dataset (e.g., MoJ). | |
| QwQ-32B uses 4-bit AWQ quantization for H200 efficiency. | |
| For non-H200 Spaces (e.g., T4), disable QwQ-32B or use heavier quantization. | |