Building RAG agents usually means wrestling with vector databases and expensive embeddings. 🤯 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.
We’ll 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 → Upload File → Import to Store → 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).
- The honest trade-offs: navigating privacy concerns (Google storage) and why it struggles with "holistic" summary questions.
Keywords: Gemini File Search, RAG, n8n, Vector Database, AI Agents, Google AI, No-Code AI, Low-Cost AI, API Integration, Document Processing
Links:
- Newsletter: Sign up for our FREE daily newsletter.
- Our Community: Get 3-level AI tutorials across industries.
- Join AI Fire Academy: 500+ advanced AI workflows ($14,500+ Value)
Our Socials:
- Facebook Group: Join 271K+ AI builders
- X (Twitter): Follow us for daily AI drops
- YouTube: Watch AI walkthroughs & tutorials
Thông Tin
- Chương trình
- Đã xuất bảnlúc 17:55 UTC 30 tháng 11, 2025
- Thời lượng13 phút
- Xếp hạngSạch
