# RAG Agent with Cohere ⌘R A RAG Agentic system built with Cohere's new model Command-r7b-12-2024, Qdrant for vector storage, Langchain for RAG and LangGraph for orchestration. This application allows users to upload documents, ask questions about them, and get AI-powered responses with fallback to web search when needed. ## Features - **Document Processing** - PDF document upload and processing - Automatic text chunking and embedding - Vector storage in Qdrant cloud - **Intelligent Querying** - RAG-based document retrieval - Similarity search with threshold filtering - Automatic fallback to web search when no relevant documents found - Source attribution for answers - **Advanced Capabilities** - DuckDuckGo web search integration - LangGraph agent for web research - Context-aware response generation - Long answer summarization - **Model Specific Features** - Command-r7b-12-2024 model for Chat and RAG - cohere embed-english-v3.0 model for embeddings - create_react_agent function from langgraph - DuckDuckGoSearchRun tool for web search ## Prerequisites ### 1. Cohere API Key 1. Go to [Cohere Platform](https://dashboard.cohere.ai/api-keys) 2. Sign up or log in to your account 3. Navigate to API Keys section 4. Create a new API key ### 2. Qdrant Cloud Setup 1. Visit [Qdrant Cloud](https://cloud.qdrant.io/) 2. Create an account or sign in 3. Create a new cluster 4. Get your credentials: - Qdrant API Key: Found in API Keys section - Qdrant URL: Your cluster URL (format: `https://xxx-xxx.aws.cloud.qdrant.io`) ## How to Run 1. Clone the repository: ```bash git clone https://github.com/Shubhamsaboo/awesome-llm-apps.git cd rag_tutorials/rag_agent_cohere ``` 2. Install dependencies: ```bash pip install -r requirements.txt ``` ```bash streamlit run rag_agent_cohere.py ```