--- title: FDAM AI Pipeline emoji: "\U0001F525" colorFrom: red colorTo: yellow sdk: gradio sdk_version: "6.3.0" app_file: app.py pinned: false suggested_hardware: l4x4 --- # FDAM AI Pipeline **Fire Damage Assessment Methodology v4.0.1** - An AI-powered system that generates professional Cleaning Specifications / Scope of Work documents for fire damage restoration. ## Features - **AI-Powered Image Analysis**: Uses Qwen3-VL vision model to detect fire damage zones, conditions, and materials - **FDAM Compliant**: Implements Fire Damage Assessment Methodology v4.0.1 standards - **Automated Calculations**: Air filtration, sample density, labor estimates per FDAM formulas - **Professional PDF Output**: Generates ready-to-use Scope of Work documents - **Session Persistence**: Save and resume assessments via browser localStorage ## How to Use 1. **Project Info**: Enter project details, facility classification, and assessor information 2. **Building/Rooms**: Add rooms with dimensions (length, width, ceiling height) 3. **Images**: Upload fire damage photos and associate with rooms 4. **Observations**: Record qualitative observations (odor, soot, char, etc.) 5. **Generate**: Click "Generate Assessment" to run AI analysis and produce documents ## Technical Details ### Model Stack (~38-43GB VRAM) - **Vision**: Qwen3-VL-30B-A3B-Thinking-FP8 (~30-35GB) - Reasoning-enhanced analysis with structured JSON output - **Embeddings**: Qwen3-VL-Embedding-2B (~4GB) - **Reranker**: Qwen3-VL-Reranker-2B (~4GB) ### Zone Classifications - **Burn Zone**: Direct fire involvement, structural damage - **Near-Field**: Adjacent to burn zone, heavy smoke/heat exposure - **Far-Field**: Smoke migration only, light deposits ### Condition Levels - **Background**: No visible contamination - **Light**: Faint discoloration, minimal deposits - **Moderate**: Visible film/deposits - **Heavy**: Thick deposits, surface texture obscured - **Structural Damage**: Physical damage requiring repair ## Development ```bash # Local development (mock models) MOCK_MODELS=true python app.py # Run tests pytest tests/ -v ``` ## Requirements - Python 3.10+ - 96GB GPU memory for real model inference (4x L4 or equivalent) - See `requirements.txt` for full dependencies ## License Proprietary - For authorized use only.