Amazon
▶ 2nd Laptop I use
Published: February 26, 2026
Video Description
In this video, I review "AI Engineering: Building Applications with Foundation Models" by Chip Huyen, one of the best books for learning how to build real-world AI applications using LLMs, RAG & foundation models.This is not a theoretical machine learning book. This is a practical guide to AI Engineering - covering prompt engineering, retrieval-augmented generation (RAG), model evaluation, fine-tuning, deployment, latency optimization, and production AI systems. If you are a Software engineer transitioning to AI, Machine learning engineer, Data scientist, Student preparing for AI careers, Developer building LLM apps.
📚 What You’ll Learn in This Video :
▶ What AI Engineering really means
▶ Difference between ML Engineering vs AI Engineering
▶ How foundation models like GPT are used in production
▶ How to build LLM applications
▶ RAG (Retrieval-Augmented Generation) explained
▶ Prompt engineering best practices
▶ Evaluating and scaling AI systems
▶ Why this book is different from other AI books
Who Should Watch This?
If you are serious about : Becoming an AI Engineer, Building AI startups, Understanding how ChatGPT-like systems are built, Learning practical AI system design, This video will help you decide whether this book is worth your time.
📖 Book Details:
Title: AI Engineering: Building Applications with Foundation Models
Author: Chip Huyen
Publisher: O’Reilly
▶ Sponsor me on GitHub : https://github.com/sponsors/bhattbhavesh91/
▶ Join this channel to get access to perks: https://bit.ly/BhaveshBhattJoin
▶ Join the Telegram channel for regular updates: https://t.me/bhattbhavesh91
▶ If you like my work, you can buy me a coffee : https://bit.ly/BuyBhaveshCoffee
*I use affiliate links on the products that I recommend. These give me a small portion of the sales price at no cost to you. I appreciate the proceeds and they help me to improve my channel!
▶ Best Book for Python : https://amzn.to/3qYThqu
▶ Best Book for PyTorch & Machine Learning : https://amzn.to/3PyUkdy
▶ Best Book for Statistics : https://amzn.to/3vzvHEn
▶ Best Book for BERT: https://amzn.to/3lpX0fz
▶ Best Book for Machine Learning : https://amzn.to/2P6aZuT
▶ Best Book for Deep Learning : https://amzn.to/30UMTGl
▶ Best Intro Book for MLOps : https://amzn.to/3AoPZmM
Equipments I use for recording the videos:
▶ 1st Laptop I use : https://amzn.to/3AqI8Fp
▶ 2nd Laptop I use : https://amzn.to/3KAiYsB
▶ Microphone : https://amzn.to/3qUPxtz
▶ Camera : https://amzn.to/3rKQsM2
▶ Mobile Phone : https://amzn.to/3nRHP1f
▶ Ring Light : https://amzn.to/33LedM5
▶ RGB Light : https://amzn.to/3KzLgmS
▶ Bag I use : https://amzn.to/3AsM3RZ
If you do have any questions with what we covered in this video then feel free to ask in the comment section below & I'll do my best to answer those.
If you enjoy these tutorials & would like to support them then the easiest way is to simply like the video & give it a thumbs up & also it's a huge help to share these videos with anyone who you think would find them useful.
Please consider clicking the SUBSCRIBE button to be notified for future videos & thank you all for watching.
You can find me on:
▶ Blog - https://bhattbhavesh91.github.io
▶ Twitter - https://twitter.com/_bhaveshbhatt
▶ GitHub - https://github.com/bhattbhavesh91
▶ Medium - https://medium.com/@bhattbhavesh91
▶ About.me - https://about.me/bhattbhavesh91
▶ Linktree - https://linktr.ee/bhattbhavesh91
▶ DEV Community - https://dev.to/bhattbhavesh91
▶ Telegram - https://t.me/bhattbhavesh91
#aiengineering #llm