16. From RAG to Graph RAG | Production AI Engineering
Learn how to deploy machine learning and AI applications from a Jupyter Notebook to a production-ready system. This complete 18-part AI Production Engineering course covers every stage of the deployment pipeline, including MLflow experiment tracking, model registry, FastAPI APIs, Gradio interfaces, ONNX optimization, vLLM inference, embeddings, FAISS vector search, Weaviate, Retrieval-Augmented Generation (RAG), and Graph RAG. Every lesson is built from real, executable Python code with reproducible outputs. You'll learn not only how each technology works, but also how they connect together to build scalable AI systems used in modern production environments. By the end of the course, you'll build a complete end-to-end AI application that starts with a trained machine learning model and finishes with a production-ready Graph RAG system capable of semantic search and knowledge-aware retrieval. Course Notebook https://github.com/kader-xai/ml-cours... If you enjoy this course, these playlists are a great next step: Machine Learning Series • Machine Learning Series Scikit-Learn Series • SciKit Learn Series Machine Learning from Scratch • Machine Learning from Scratch Data Science with Python • Data Science with Python AI Agents with LangGraph • AI Agents with LangGraph XGBoost for CyberDefense • XGBoost for CyberDefense Neural Network Optimization • Neural Network Optimization Hugging Face Transformers • Hugging Face Transformers PyTorch: Build Your Own GPT • Pytorch : Build your own GPT TensorFlow from Scratch • Tensor Flow from scratch Course Structure PACKAGE 01. From Notebook to Service 02. The Model Artifact 03. MLflow Experiment Tracking 04. MLflow Model Registry SERVE 05. FastAPI Model Serving 06. FastAPI Advanced APIs 07. Building AI Interfaces with Gradio OPTIMIZE 08. Exporting Models to ONNX 09. ONNX Runtime Optimization 10. High-Performance Inference with vLLM RETRIEVE 11. Embeddings Explained 12. Vector Search with FAISS 13. Scaling FAISS 14. Weaviate Vector Database GRAPH RAG 15. Retrieval-Augmented Generation (RAG) 16. From RAG to Graph RAG 17. Graph RAG Retrieval Pipeline 18. End-to-End AI Production Capstone Subscribe for more AI Engineering, Machine Learning, Deep Learning, LLM, and Data Science courses.

17. Graph RAG Retrieval Pipeline | Production AI Engineering

Is RAG Still Needed? Choosing the Best Approach for LLMs

GraphRAG: Building a Smarter AI System (full walkthrough)

18. End-to-End AI Production Capstone | Production AI Engineering

Harness Engineering Masterclass: Technical Deep Dive on how to build Agentic Systems

Complete RAG Crash Course With Langchain In 2 Hours

TV ART SLIDESHOW | Abstract Art for your TV | Jené Stephaniuk | 1hour of 4K HD Paintings

Godfather Of AI: We Don't Even Know We're Near The END - Geoffrey Hinton

Unbelievable Smart Worker & Hilarious Fails | Construction Compilation #7 #adamrose #smartworkers

Anthropic is Completely F*cked.

Funny Football Moments That Actually Happened 😂

Island Blue Wallpaper Screensaver

People Who Messed With The Royal Guard and Regretted It!

Karpathy's LLM Wiki - Full Beginner Setup Guide

MIT Just Revealed the AI Bubble's Fatal Flaw

Rowan Atkinson's Brilliant Humor Leaves Celebrities in Tears!

Stop Prompting Claude. Use Karpathy's Method Instead.

RAG Crash Course for Beginners

Full Walkthrough: Workflow for AI Coding — Matt Pocock

