- Step1: Install Rags with pip install rags
- Step2: Configure your vector store (FAISS, Pinecone, etc.)
- Step3: Define prompt templates and memory settings
- Step4: Instantiate the Rags pipeline with your chosen LLM
- Step5: Load documents into the retriever and index
- Step6: Call pipeline.generate(query) to get retrieval-augmented responses
- Step7: Evaluate responses and adjust prompts or retriever parameters
- Step8: Deploy the pipeline as a service or integrate into applications