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.
Simba: Unleash the Power of Your Knowledge with this Open-Source KMS

Simba: Unleash the Power of Your Knowledge with this Open-Source KMS

Comments
3 min read
🎉 8,215+ downloads in just 30 days!

🎉 8,215+ downloads in just 30 days!

Comments
1 min read
Beyond Basic RAG: Measuring Embedding and Generation Performance with RAGAS

Beyond Basic RAG: Measuring Embedding and Generation Performance with RAGAS

Comments
13 min read
When Your AI Agent Lies to You: Tackling Real-World LLM Hallucinations

When Your AI Agent Lies to You: Tackling Real-World LLM Hallucinations

3
Comments
16 min read
How Retrieval-Augmented Generation Is Changing the AI Game

How Retrieval-Augmented Generation Is Changing the AI Game

Comments
2 min read
My Kaggle Project - Making Huge Manuals Talk with Gen AI! (The Deep Dive)

My Kaggle Project - Making Huge Manuals Talk with Gen AI! (The Deep Dive)

3
Comments
7 min read
My Kaggle Project - Making Huge Manuals Talk with Gen AI! (The Deep Dive)

My Kaggle Project - Making Huge Manuals Talk with Gen AI! (The Deep Dive)

1
Comments
7 min read
How to move beyond Vibe Checking

How to move beyond Vibe Checking

18
Comments
3 min read
Visual Grounding from Docling!

Visual Grounding from Docling!

Comments
6 min read
Fixing the Agent Handoff Problem in LlamaIndex's AgentWorkflow System

Fixing the Agent Handoff Problem in LlamaIndex's AgentWorkflow System

1
Comments
14 min read
All Data and AI Weekly #184 - April 07, 2025

All Data and AI Weekly #184 - April 07, 2025

5
Comments
2 min read
Processing data with “Data Prep Kit” (part 2)

Processing data with “Data Prep Kit” (part 2)

Comments
8 min read
Beyond Basic Practice: Creating the JobSage AI Interview Simulator with Gemini & Embeddings

Beyond Basic Practice: Creating the JobSage AI Interview Simulator with Gemini & Embeddings

Comments
5 min read
Part 2: AI Agent Truly Intelligent?

Part 2: AI Agent Truly Intelligent?

Comments
2 min read
Crawling web sites using “Data Prep Kit”

Crawling web sites using “Data Prep Kit”

Comments
4 min read
RAG vs. Fine tuning: Which AI strategy should you choose?

RAG vs. Fine tuning: Which AI strategy should you choose?

2
Comments
4 min read
Embeddings Demystified: Math, Meaning & Machines

Embeddings Demystified: Math, Meaning & Machines

Comments
3 min read
[Feedback wanted] Connect user data to AI with PersonalAgentKit for LangGraph

[Feedback wanted] Connect user data to AI with PersonalAgentKit for LangGraph

Comments
1 min read
Vector Database Indexing: A Comprehensive Guide

Vector Database Indexing: A Comprehensive Guide

Comments
7 min read
Building Custom Kendra Connectors and Managing Data Sources with IaC

Building Custom Kendra Connectors and Managing Data Sources with IaC

Comments
15 min read
Relevance Feedback in Informational Retrieval

Relevance Feedback in Informational Retrieval

6
Comments
11 min read
RAG Search with AWS Lambda and Bedrock

RAG Search with AWS Lambda and Bedrock

9
Comments 1
4 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
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
Building a RAG System for Video Content Search and Analysis

Building a RAG System for Video Content Search and Analysis

14
Comments
7 min read
loading...