5 Powerful Tips for Agentic RAG Implementation
5 Powerful Tips for Agentic RAG Implementation TL;DR: Traditional RAG breaks down on multi-hop queries that require iterative retrieval and reasoning. Google Research recently baked Agentic RAG into the Gemini Enterprise Agent Platform , introducing a Sufficient Context Agent that judges when it has gathered enough information. We’ve battle‑tested these patterns in production, and in this post I’ll walk through five ruthless implementation tips—complete with YAML, CLI commands, and war stories. Expect to learn how to build retrieval loops that actually know when to stop, slice latency with streaming, and run the whole thing on Kubernetes. I still remember the night we had to answer “Which VPN gateways connect our Frankfurt VPC to the London office, and what’s the latency SLA for each?” Our vanilla RAG pipeline retrieved three unrelated documents and hallucinated an SLA. We knew then that retrieval‑augmented generation needed agency . It needed an agent that could decompose t...