# Text to Knowledge Graph > Transform unstructured text using LLM inference into interactive knowledge graphs with GPU-accelerated visualization ## Table of Contents - [Overview](#overview) - [Instructions](#instructions) --- ## Overview ## Basic Idea This playbook demonstrates how to build and deploy a comprehensive knowledge graph generation and visualization solution that serves as a reference for knowledge graph extraction. The unified memory architecture enables running larger, more accurate models that produce higher-quality knowledge graphs and deliver superior downstream GraphRAG performance. This txt2kg playbook transforms unstructured text documents into structured knowledge graphs using: - **Knowledge Triple Extraction**: Using Ollama with GPU acceleration for local LLM inference to extract subject-predicate-object relationships - **Graph Database Storage**: ArangoDB for storing and querying knowledge triples with relationship traversal - **Vector Embeddings**: Local SentenceTransformer models for entity embeddings and semantic search - **GPU-Accelerated Visualization**: Three.js WebGPU rendering for interactive 2D/3D graph exploration ## What you'll accomplish You will have a fully functional system capable of processing documents, generating and editing knowledge graphs, and providing querying, accessible through an interactive web interface. The setup includes: - **Local LLM Inference**: Ollama for GPU-accelerated LLM inference with no API keys required - **Graph Database**: ArangoDB for storing and querying triples with relationship traversal - **Vector Search**: Local Pinecone-compatible storage for entity embeddings and KNN search - **Interactive Visualization**: GPU-accelerated graph rendering with Three.js WebGPU - **Modern Web Interface**: Next.js frontend with document management and query interface - **Fully Containerized**: Reproducible deployment with Docker Compose and GPU support ## Prerequisites - DGX Spark with latest NVIDIA drivers - Docker installed and configured with NVIDIA Container Toolkit - Docker Compose ## Time & risk **Duration**: - 2-3 minutes for initial setup and container deployment - 5-10 minutes for Ollama model download (depending on model size) - Immediate document processing and knowledge graph generation **Risks**: - GPU memory requirements depend on chosen Ollama model size - Document processing time scales with document size and complexity **Rollback**: Stop and remove Docker containers, delete downloaded models if needed ## Instructions ## Step 1. Clone the repository In a terminal, clone the txt2kg repository and navigate to the project directory. ```bash git clone https://gitlab.com/nvidia/dgx-spark/temp-external-playbook-assets/dgx-spark-playbook-assets/-/blob/main txt2kg cd txt2kg ``` ## Step 2. Start the txt2kg services Use the provided start script to launch all required services. This will set up Ollama, ArangoDB, local Pinecone, and the Next.js frontend: ```bash ./start.sh ``` The script will automatically: - Check for GPU availability - Start Docker Compose services - Set up ArangoDB database - Initialize local Pinecone vector storage - Launch the web interface ## Step 3. Pull an Ollama model (optional) Download a language model for knowledge extraction. The default model loaded is Llama 3.1 8B: ```bash docker exec ollama-compose ollama pull ``` Browse available models at [https://ollama.com/search](https://ollama.com/search) > **Note**: The unified memory architecture enables running larger models like 70B parameters, which produce significantly more accurate knowledge triples and deliver superior GraphRAG performance. ## Step 4. Access the web interface Open your browser and navigate to: ``` http://localhost:3001 ``` You can also access individual services: - **ArangoDB Web Interface**: http://localhost:8529 - **Ollama API**: http://localhost:11434 - **Local Pinecone**: http://localhost:5081 ## Step 5. Upload documents and build knowledge graphs #### 5.1. Document Upload - Use the web interface to upload text documents (markdown, text, CSV supported) - Documents are automatically chunked and processed for triple extraction #### 5.2. Knowledge Graph Generation - The system extracts subject-predicate-object triples using Ollama - Triples are stored in ArangoDB for relationship querying - Entity embeddings are generated and stored in local Pinecone (optional) #### 5.3. Interactive Visualization - View your knowledge graph in 2D or 3D with GPU-accelerated rendering - Explore nodes and relationships interactively #### 5.4. Graph-based RAG Queries - Ask questions about your documents using the query interface - Graph traversal enhances context with entity relationships from ArangoDB - The system uses KNN search to find relevant entities in the vector database (optional) - LLM generates responses using the enriched graph context ## Step 6. Troubleshooting Common issues and solutions for txt2kg setup on DGX Spark. | Symptom | Cause | Fix | |---------|--------|-----| | Ollama performance issues | Suboptimal settings for DGX Spark | Set environment variables: `OLLAMA_FLASH_ATTENTION=1` (enables flash attention for better performance), `OLLAMA_KEEP_ALIVE=30m` (keeps model loaded for 30 minutes), `OLLAMA_MAX_LOADED_MODELS=1` (avoids VRAM contention), `OLLAMA_KV_CACHE_TYPE=q8_0` (reduces KV cache VRAM with minimal performance impact) | | VRAM exhausted or memory pressure (e.g. when switching between Ollama models) | Linux buffer cache consuming GPU memory | Flush buffer cache: `sudo sync; sudo sh -c 'echo 3 > /proc/sys/vm/drop_caches'` | | Slow triple extraction | Large model or large context window | Reduce document chunk size or use faster models | | ArangoDB connection refused | Service not fully started | Wait 30s after start.sh, verify with `docker ps` | ## Step 7. Cleanup and rollback Stop all services and optionally remove containers: ```bash ## Stop services docker compose down ## Remove containers and volumes (optional) docker compose down -v ## Remove downloaded models (optional) docker exec ollama-compose ollama rm llama3.1:8b ``` ## Step 8. Next steps - Experiment with different Ollama models for varied extraction quality - Customize triple extraction prompts for domain-specific knowledge - Explore advanced Graph-based RAG features