# LLama3.3-RAG application This project build the fastest stack to build a RAG application to **chat with your docs**. We use: - SambaNova as the inference engine for Llama 3.3. - Llama index for orchestrating the RAG app. - Qdrant VectorDB for storing the embeddings. - Streamlit to build the UI. ## Installation and setup **Setup SambaNova**: Get an API key from [SambaNova](https://sambanova.ai/) and set it in the `.env` file as follows: ```bash SAMBANOVA_API_KEY= ``` **Setup Qdrant VectorDB** ```bash docker run -p 6333:6333 -p 6334:6334 \ -v $(pwd)/qdrant_storage:/qdrant/storage:z \ qdrant/qdrant ``` **Install Dependencies**: Ensure you have Python 3.11 or later installed. ```bash pip install streamlit llama-index-vector-stores-qdrant llama-index-llms-sambanovasystems sseclient-py ``` **Run the app**: Run the app by running the following command: ```bash streamlit run app.py ``` --- ## 📬 Stay Updated with Our Newsletter! **Get a FREE Data Science eBook** 📖 with 150+ essential lessons in Data Science when you subscribe to our newsletter! Stay in the loop with the latest tutorials, insights, and exclusive resources. [Subscribe now!](https://join.dailydoseofds.com) [![Daily Dose of Data Science Newsletter](https://github.com/patchy631/ai-engineering/blob/main/resources/join_ddods.png)](https://join.dailydoseofds.com) --- ## Contribution Contributions are welcome! Please fork the repository and submit a pull request with your improvements.