DEV Community

# rag

Retrieval augmented generation, or RAG, is an architectural approach that can improve the efficacy of large language model (LLM) applications by leveraging custom data.

Posts

👋 Sign in for the ability to sort posts by relevant, latest, or top.
Building Custom Kendra Connectors and Managing Data Sources with IaC

Building Custom Kendra Connectors and Managing Data Sources with IaC

Comments
15 min read
Beyond the Black Box: Unpacking CoT, RAG, and RAT for Smarter AI

Beyond the Black Box: Unpacking CoT, RAG, and RAT for Smarter AI

Comments
3 min read
Efficiently process large files for RAG

Efficiently process large files for RAG

Comments
3 min read
I Built an LLM Framework in just 100 Lines — Here is Why

I Built an LLM Framework in just 100 Lines — Here is Why

5
Comments
8 min read
Figure Export from Docling — Exporting PDF to image

Figure Export from Docling — Exporting PDF to image

1
Comments
3 min read
🧭 Part 3: Implementing Vector Search with Pinecone

🧭 Part 3: Implementing Vector Search with Pinecone

Comments
2 min read
Building an E-Commerce Support Chatbot: Part 2 - Building the Knowledge Base

Building an E-Commerce Support Chatbot: Part 2 - Building the Knowledge Base

Comments
2 min read
Multilevel RAG

Multilevel RAG

Comments
4 min read
An overview of rules based ingestion in DataBridge

An overview of rules based ingestion in DataBridge

1
Comments
6 min read
Integrating LlamaIndex and DeepSeek-R1 for reasoning_content and Function Call Features

Integrating LlamaIndex and DeepSeek-R1 for reasoning_content and Function Call Features

Comments
10 min read
Building a RAG System With Claude, PostgreSQL & Python on AWS

Building a RAG System With Claude, PostgreSQL & Python on AWS

Comments
9 min read
Google Vertex RAG Engine with C# .Net

Google Vertex RAG Engine with C# .Net

Comments
6 min read
Introduction to branched RAG

Introduction to branched RAG

2
Comments
3 min read
AI’s Hidden Superpower: Why Retrieval-Augmented Generation (RAG) is Game-Changing

AI’s Hidden Superpower: Why Retrieval-Augmented Generation (RAG) is Game-Changing

Comments
3 min read
Generic RAG Frameworks: Why They Can’t Catch On

Generic RAG Frameworks: Why They Can’t Catch On

17
Comments
5 min read
Common Use Cases for CAMEL-AI

Common Use Cases for CAMEL-AI

Comments
2 min read
What if scaling context windows isn’t the answer to higher accuracy?

What if scaling context windows isn’t the answer to higher accuracy?

5
Comments
1 min read
Overview: "OWASP Top 10 for LLM Applications 2025: A Comprehensive Guide"

Overview: "OWASP Top 10 for LLM Applications 2025: A Comprehensive Guide"

Comments
8 min read
Docling's new “SmolDocling-256M” Rocks

Docling's new “SmolDocling-256M” Rocks

Comments
9 min read
Enhancing Retrieval-Augmented Generation with SurrealDB

Enhancing Retrieval-Augmented Generation with SurrealDB

2
Comments
22 min read
Overview: "Understanding LLMs: From Training to Inference"

Overview: "Understanding LLMs: From Training to Inference"

Comments
4 min read
Adding RAG and ML to AI files reorganization CLI (messy-folder-reorganizer-ai)

Adding RAG and ML to AI files reorganization CLI (messy-folder-reorganizer-ai)

1
Comments
3 min read
Understanding CAG (Cache Augmented Generation): AI's Conversation Memory With APIpie.ai

Understanding CAG (Cache Augmented Generation): AI's Conversation Memory With APIpie.ai

Comments
8 min read
Build RAG Chatbot 🤖 with LangChain, Milvus, Mistral AI Pixtral, and NVIDIA bge-m3

Build RAG Chatbot 🤖 with LangChain, Milvus, Mistral AI Pixtral, and NVIDIA bge-m3

Comments
8 min read
¿Quieres aprender sobre agentes en español? 🎥

¿Quieres aprender sobre agentes en español? 🎥

Comments
1 min read
loading...