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# 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.

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Ingesting documents using .NET to build a simple Retrieval Augmented Generation (RAG) system

Ingesting documents using .NET to build a simple Retrieval Augmented Generation (RAG) system

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6 min read
R.I.P. RAG? Gemini Flash 2.0 Might Just Have Revolutionized AI (Again) - Is Retrieval Augmented Generation Obsolete?

R.I.P. RAG? Gemini Flash 2.0 Might Just Have Revolutionized AI (Again) - Is Retrieval Augmented Generation Obsolete?

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5 min read
Let’s Build HealthIQ AI — A Vertical AI Agent System

Let’s Build HealthIQ AI — A Vertical AI Agent System

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2 min read
Announcing Kreuzberg v2.0: A Lightweight, Modern Python Text Extraction library

Announcing Kreuzberg v2.0: A Lightweight, Modern Python Text Extraction library

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2 min read
Corrective Retrieval-Augmented Generation: Enhancing Robustness in AI Language Models

Corrective Retrieval-Augmented Generation: Enhancing Robustness in AI Language Models

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2 min read
Evaluate your LLM! Ok, but what's next? 🤔

Evaluate your LLM! Ok, but what's next? 🤔

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1 min read
DO NOT use these LLM Metrics â›” And what to do instead!

DO NOT use these LLM Metrics â›” And what to do instead!

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1 min read
Building a Simple RAG System in Spring Boot with Ollama

Building a Simple RAG System in Spring Boot with Ollama

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1 min read
Create Your Own AI Assistant, Coco AI v0.1.0 Released

Create Your Own AI Assistant, Coco AI v0.1.0 Released

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2 min read
Connect external data (RAG) to AI agent in minutes

Connect external data (RAG) to AI agent in minutes

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2 min read
Data Preparation Toolkit

Data Preparation Toolkit

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1 min read
LLM Distillation: Optimizing Large Language Models for Efficiency

LLM Distillation: Optimizing Large Language Models for Efficiency

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3 min read
Building a RAG-Powered Support Chatbot in 24 Hours of Hackathon

Building a RAG-Powered Support Chatbot in 24 Hours of Hackathon

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9 min read
Building Smart AI Agents: Designing a Multi-Functional RAG System

Building Smart AI Agents: Designing a Multi-Functional RAG System

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3 min read
Chunking your data for RAG

Chunking your data for RAG

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26 min read
The Evolution of Knowledge Work: A Comprehensive Guide to Agentic Retrieval-Augmented Generation (RAG)

The Evolution of Knowledge Work: A Comprehensive Guide to Agentic Retrieval-Augmented Generation (RAG)

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2 min read
Build a RAG-Enabled Helpdesk Chatbot in 10 Minutes with MongoDB

Build a RAG-Enabled Helpdesk Chatbot in 10 Minutes with MongoDB

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6 min read
Como passar na certificação AI Practitioner - AWS

Como passar na certificação AI Practitioner - AWS

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26 min read
Alternativa a Bedrock Knowledge Base

Alternativa a Bedrock Knowledge Base

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3 min read
Leveraging AI/ML for Finance and Trading: A Journey from ML Models to a 23% Gain

Leveraging AI/ML for Finance and Trading: A Journey from ML Models to a 23% Gain

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5 min read
Error Analysis 🔧 Stop Guessing, Start Fixing AI Models

Error Analysis 🔧 Stop Guessing, Start Fixing AI Models

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2 min read
LLM Re-ranking: Enhancing Search and Retrieval with AI

LLM Re-ranking: Enhancing Search and Retrieval with AI

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5 min read
My Building Of Trading Order Management System Using AI Agents

My Building Of Trading Order Management System Using AI Agents

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2 min read
Is DeepSeek Really a Game Changer in 2025? Unpacking the AI Revolution

Is DeepSeek Really a Game Changer in 2025? Unpacking the AI Revolution

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3 min read
Deploy Open Source SLMs (Small Language Models) locally - DeepSeek R1 Distilled .

Deploy Open Source SLMs (Small Language Models) locally - DeepSeek R1 Distilled .

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2 min read
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