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.
What the Heck Are Hybrid Knowledge Bases? (And Why They Matter for LLM Apps)

What the Heck Are Hybrid Knowledge Bases? (And Why They Matter for LLM Apps)

1
Comments
2 min read
Implementing Simple RAG in local environment /w .NET (C#).

Implementing Simple RAG in local environment /w .NET (C#).

Comments
5 min read
Implement an end-to-end RAG solution with watsonx.ai and Elasticsearch SQL

Implement an end-to-end RAG solution with watsonx.ai and Elasticsearch SQL

2
Comments
2 min read
Beyond Keywords: Introducing MindsDB Knowledge Bases for RAG and Semantic Search

Beyond Keywords: Introducing MindsDB Knowledge Bases for RAG and Semantic Search

1
Comments
8 min read
Building a Local RAG System with MCP for VS Code AI Agents: A Technical Deep Dive

Building a Local RAG System with MCP for VS Code AI Agents: A Technical Deep Dive

23
Comments 3
17 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
Build the Smartest AI Bot You’ve Ever Seen — A 7B Model + Web Search, Right on Your Laptop

Build the Smartest AI Bot You’ve Ever Seen — A 7B Model + Web Search, Right on Your Laptop

Comments
5 min read
Couchbase Weekly Updates - May 2, 2025

Couchbase Weekly Updates - May 2, 2025

2
Comments
1 min read
Power up your RAG chatbot with Snowflake Cortex Search Boosts and Decays

Power up your RAG chatbot with Snowflake Cortex Search Boosts and Decays

2
Comments
7 min read
RAG - Retrieval-Augmented Generation, Making AI Smarter!

RAG - Retrieval-Augmented Generation, Making AI Smarter!

4
Comments 2
5 min read
The Magic Behind LLM...!!

The Magic Behind LLM...!!

3
Comments 2
3 min read
Vector Recall Reasoning

Vector Recall Reasoning

5
Comments
1 min read
DeepRAG: Thinking to Retrieval Step by Step for Large Language Models

DeepRAG: Thinking to Retrieval Step by Step for Large Language Models

Comments
2 min read
Vector Databases: their utility and functioning (RAG usage)

Vector Databases: their utility and functioning (RAG usage)

Comments
12 min read
Building a Smart Café Menu Ordering Agent ☕🤖: Natural Language to Structured JSON with RAG

Building a Smart Café Menu Ordering Agent ☕🤖: Natural Language to Structured JSON with RAG

Comments
6 min read
Retrieval-Augmented Generation (RAG): Giving AI a Supercharged Memory Boost

Retrieval-Augmented Generation (RAG): Giving AI a Supercharged Memory Boost

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

🧭 Part 3: Implementing Vector Search with Pinecone

Comments
2 min read
Improve Your Python Search Relevancy with Astra DB Hybrid Search

Improve Your Python Search Relevancy with Astra DB Hybrid Search

1
Comments
11 min read
Build Code-RAGent, an agent for your codebase

Build Code-RAGent, an agent for your codebase

6
Comments
5 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
How to train LLM faster

How to train LLM faster

4
Comments
3 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
loading...