Data Science
RAG Explained: Retrieval-Augmented Generation for Better LLMs
May 15, 2026
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Retrieval-Augmented Generation (RAG) has become the standard pattern for building reliable AI applications that need access to up-to-date or proprietary information.
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Jeena Sarma
@author-2Jeevan Shrestha is a web developer focused on building modern, scalable full-stack applications using React, TypeScript, and Supabase. He specializes in creating multi-author blogging platforms, authentication systems, and performance-oriented web apps with clean architecture and developer-friendly UX.
He is currently working on building production-ready SaaS-style products, exploring advanced backend patterns like role-based access control, row-level security, and database-driven design systems.Read More