Forem

# 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.
How I Built ‘University Course Finder’ Using RAG
Cover image for How I Built ‘University Course Finder’ Using RAG

How I Built ‘University Course Finder’ Using RAG

2
Comments
2 min read
RAGEval: Scenario-specific RAG evaluation dataset generation framework
Cover image for RAGEval: Scenario-specific RAG evaluation dataset generation framework

RAGEval: Scenario-specific RAG evaluation dataset generation framework

1
Comments
8 min read
Rag Architecture Easy Explained
Cover image for Rag Architecture Easy Explained

Rag Architecture Easy Explained

13
Comments 2
3 min read
From Notebook to Serverless: Creating a Multimodal Search Engine with Amazon Bedrock and PostgreSQL
Cover image for From Notebook to Serverless: Creating a Multimodal Search Engine with Amazon Bedrock and PostgreSQL

From Notebook to Serverless: Creating a Multimodal Search Engine with Amazon Bedrock and PostgreSQL

5
Comments
3 min read
Context Caching: Is It the End of Retrieval-Augmented Generation (RAG)? đŸ€”
Cover image for Context Caching: Is It the End of Retrieval-Augmented Generation (RAG)? đŸ€”

Context Caching: Is It the End of Retrieval-Augmented Generation (RAG)? đŸ€”

7
Comments
3 min read
Desplegando una AplicaciĂłn de Embeddings Serverless con AWS CDK, Lambda y Amazon Aurora PostgreSQL
Cover image for Desplegando una AplicaciĂłn de Embeddings Serverless con AWS CDK, Lambda y Amazon Aurora PostgreSQL

Desplegando una AplicaciĂłn de Embeddings Serverless con AWS CDK, Lambda y Amazon Aurora PostgreSQL

5
Comments
6 min read
How OpenAI o1 works in a simple way and why it matters for RAG and Agentic đŸ€Ż

How OpenAI o1 works in a simple way and why it matters for RAG and Agentic đŸ€Ż

Comments
6 min read
Dockerize Local RAG with Models

Dockerize Local RAG with Models

12
Comments
3 min read
AI-Powered Bot using Vectorized knowledge Architecture

AI-Powered Bot using Vectorized knowledge Architecture

1
Comments
4 min read
Construyendo un Motor de BĂșsqueda Multimodal con Amazon Titan Embeddings, Aurora Serveless PostgreSQL y LangChain
Cover image for Construyendo un Motor de BĂșsqueda Multimodal con Amazon Titan Embeddings, Aurora Serveless PostgreSQL y LangChain

Construyendo un Motor de BĂșsqueda Multimodal con Amazon Titan Embeddings, Aurora Serveless PostgreSQL y LangChain

2
Comments
4 min read
De Notebook a Serverless: Creando un Motor de BĂșsqueda Multimodal con Amazon Bedrock y PostgreSQL
Cover image for De Notebook a Serverless: Creando un Motor de BĂșsqueda Multimodal con Amazon Bedrock y PostgreSQL

De Notebook a Serverless: Creando un Motor de BĂșsqueda Multimodal con Amazon Bedrock y PostgreSQL

1
Comments
4 min read
Deploying Serverless Embedding App with AWS CDK, Lambda and Amazon Aurora PostgreSQL
Cover image for Deploying Serverless Embedding App with AWS CDK, Lambda and Amazon Aurora PostgreSQL

Deploying Serverless Embedding App with AWS CDK, Lambda and Amazon Aurora PostgreSQL

2
Comments
6 min read
Building a Multimodal Search Engine with Amazon Titan Embeddings, Aurora Serveless PostgreSQL and LangChain
Cover image for Building a Multimodal Search Engine with Amazon Titan Embeddings, Aurora Serveless PostgreSQL and LangChain

Building a Multimodal Search Engine with Amazon Titan Embeddings, Aurora Serveless PostgreSQL and LangChain

1
Comments
4 min read
RAG Simplified!! 🐣
Cover image for RAG Simplified!! 🐣

RAG Simplified!! 🐣

71
Comments 30
6 min read
đŸ€–100 Days of Generative AI - Understanding Retrieval-Augmented Generation (RAG) in Simple Terms - Day 7đŸ€–
Cover image for đŸ€–100 Days of Generative AI - Understanding Retrieval-Augmented Generation (RAG) in Simple Terms - Day 7đŸ€–

đŸ€–100 Days of Generative AI - Understanding Retrieval-Augmented Generation (RAG) in Simple Terms - Day 7đŸ€–

Comments
1 min read
👋 Sign in for the ability to sort posts by relevant, latest, or top.