Note sull'episodio
Building RAG agents usually means wrestling with vector databases and expensive embeddings. 𤯠Google just changed the game. We're revealing how to use Gemini's new File Search API to build a powerful RAG system in minutes for pennies.
Weâll talk about:
- A step-by-step guide to building a serverless RAG agent in n8n using Google's new File Search API.
- The Cost Breakdown: How Gemini's pricing ($0.15 per 1M tokens) makes it 10x cheaper than traditional Pinecone/OpenAI setups.
- The simple 4-step workflow: Create Store â Upload File â Import to Store â Query Agent.
- A real-world accuracy test: How the agent scored 4.5/5 when quizzed on 200 pages of diverse documents (Golf Rules, Nvidia Financials, Apple 10-K).
Parole chiave
n8nAI AutomationAI WorkflowRAGGoogle AI