ತಕ್ಷಣ ಉತ್ತರ: A RAG Engineer builds intelligent systems that combine retrieval and generation, architecting vector databases and embedding pipelines that let LLMs reason over custom data without fine-tuning. Roles at Indian SaaS startups and AI teams typically pay ₹45K–₹6.7L/mo and demand expertise in Pinecone, Weaviate, or Qdrant.
Your morning might involve debugging why your retrieval pipeline is returning irrelevant documents — you'll profile the embedding model, experiment with different distance metrics in Pinecone or Weaviate, and A/B test ranking strategies. You'll collaborate with ML engineers on prompt engineering and with backend engineers on latency optimization. Your afternoon could be spent designing a chunk-size experiment for a new customer dataset, or architecting a multi-hop reasoning pipeline where the LLM refines its retrieval query based on intermediate results.
In India, RAG Engineer roles span startups (OpenAI-compatible API wrappers, content platforms), product companies (Flipkart, Amazon adding RAG to recommendation/search), and consulting firms (building bespoke AI solutions). Senior RAG Engineers often move into AI Architect or Head of AI roles, designing entire generative AI product strategies. Early-career engineers typically start in adjacent roles — junior ML engineer, data engineer, or Python backend developer — and specialize into RAG over 2–3 years as the field matures.
ಈ Career Path ಲೆಕ್ಕ AIshala-ತೋಷ್ಠೆದ ಉಚಿತ Courses. ಒಟ್ಟು ಸಮಯ: 6 ವಾರ.