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.
The Next Evolution of Code Agents is Coming

The Next Evolution of Code Agents is Coming

Comments
5 min read
LangChain4j in Action: Building an AI Assistant in Java

LangChain4j in Action: Building an AI Assistant in Java

Comments
11 min read
Cloud Migration Strategies: A Step-by-Step Guide to a Seamless Transition

Cloud Migration Strategies: A Step-by-Step Guide to a Seamless Transition

Comments
2 min read
Revolutionizing Data Pipelines: The Role of AI in Data Engineering

Revolutionizing Data Pipelines: The Role of AI in Data Engineering

Comments
2 min read
Snowflake vs BigQuery vs Redshift: The Ultimate Cloud Data Warehouse Showdown

Snowflake vs BigQuery vs Redshift: The Ultimate Cloud Data Warehouse Showdown

Comments
2 min read
Comprehensive Guide to Selecting the Right RAG Evaluation Platform

Comprehensive Guide to Selecting the Right RAG Evaluation Platform

1
Comments
7 min read
RAG vs MCP Made Simple: Expanding vs Structuring AI Knowledge

RAG vs MCP Made Simple: Expanding vs Structuring AI Knowledge

Comments
1 min read
Moving Your Vector Database from ChromaDB to Milvus

Moving Your Vector Database from ChromaDB to Milvus

4
Comments
10 min read
Q the Future: Enterprise Productivity with AWS Q Business

Q the Future: Enterprise Productivity with AWS Q Business

4
Comments
3 min read
The Cloud Revolution: Why Cloud Data Engineering is Growing

The Cloud Revolution: Why Cloud Data Engineering is Growing

Comments
2 min read
LLM's Functions, Use-cases & Architecture: Introduction

LLM's Functions, Use-cases & Architecture: Introduction

Comments
2 min read
The Great Debate: Open-Source LLMs vs Proprietary Models

The Great Debate: Open-Source LLMs vs Proprietary Models

Comments
2 min read
BuildingRetrieval-AugmentedGenerationRAGSystemonAmazonBedrock

BuildingRetrieval-AugmentedGenerationRAGSystemonAmazonBedrock

Comments
7 min read
Retrieval Augmented Generation (RAG) for Dummies

Retrieval Augmented Generation (RAG) for Dummies

Comments
2 min read
Unraveling the Mysteries of Data: A Beginner's Guide to Data Versioning & Lineage Explained

Unraveling the Mysteries of Data: A Beginner's Guide to Data Versioning & Lineage Explained

Comments
2 min read
Embracing the Sky: The Future of Cloud-Native Architectures

Embracing the Sky: The Future of Cloud-Native Architectures

Comments
2 min read
🔓 Unlocking Efficient Data Management: A Deep Dive into Data Partitioning Strategies

🔓 Unlocking Efficient Data Management: A Deep Dive into Data Partitioning Strategies

Comments
2 min read
Unlocking the Power of RAG: A Beginner's Guide to Retrieval-Augmented Generation

Unlocking the Power of RAG: A Beginner's Guide to Retrieval-Augmented Generation

Comments
2 min read
🎉 Completed AWS Generative AI Applications Specialization!

🎉 Completed AWS Generative AI Applications Specialization!

10
Comments
2 min read
From Brittle to Brilliant: A Developer's Guide to Building Trustworthy Graph RAG with Local LLMs

From Brittle to Brilliant: A Developer's Guide to Building Trustworthy Graph RAG with Local LLMs

Comments
3 min read
Taming the Data Tsunami: Handling Big Data in Real-Time

Taming the Data Tsunami: Handling Big Data in Real-Time

Comments
2 min read
RAG-based Presentation Generator built with Kiro

RAG-based Presentation Generator built with Kiro

11
Comments
6 min read
Cloud Cost Optimization: The Ultimate Guide to Saving You from Bill Shock

Cloud Cost Optimization: The Ultimate Guide to Saving You from Bill Shock

Comments
2 min read
Unlocking the Power of AI: What is Prompt Engineering?

Unlocking the Power of AI: What is Prompt Engineering?

Comments
3 min read
RAG-Powered Chat: OpenAI & ChromaDB Integration

RAG-Powered Chat: OpenAI & ChromaDB Integration

Comments
5 min read
loading...