AI Book Club: The Hundred-Page Language Models Book: hands-on with PyTorch | June 2025
Join events live: https://lu.ma/ai-builders-and-learners June's book is "The Hundred-Page Language Models Book: hands-on with PyTorch"! This is a casual-style event. Not a structured presentation on topics. Sometimes, the discussion even drifts away from the chapters, but feel free to grab the mic to help steer it back. Feel free to join the discussion even if you have not read the book chapters! :) Want to discuss the contents during the reading month? Join the Flyte MLOps Slack group and search for the "ai-reading-club" channel. https://slack.flyte.org/ ------------------------------------------------- About the book: Title: The Hundred-Page Language Models Book: hands-on with PyTorch Authors: Andriy Burkov Published: January 15, 2025 https://thelmbook.com/ Chapters: Chapter 1. Machine Learning Basics Chapter 2. Language Modeling Basics Chapter 3. Recurrent Neural Network Chapter 4. Transformer Chapter 5. Large Language Model Chapter 6. Further Reading Book Description Large language models (LLMs) have fundamentally transformed how machines process and generate information. They are reshaping white-collar jobs at a pace comparable only to the revolutionary impact of personal computers. Understanding the mathematical foundations and inner workings of language models has become crucial for maintaining relevance and competitiveness in an increasingly automated workforce. This book guides you through the evolution of language models, starting from machine learning fundamentals. Rather presenting transformers right away, which can feel overwhelming, we build understanding of language models step by step—from simple count-based methods through recurrent neural networks to modern architectures. Each concept is grounded in clear mathematical foundations and illustrated with working Python code. In the largest chapter on large language models, you'll learn both effective prompt engineering techniques and how to finetune these models to follow arbitrary instructions. Through hands-on experience, you'll master proven strategies for getting consistent outputs and adapting models to your needs. Learn more about the book here: https://thelmbook.com/

AI Book Club: Hands-On Machine Learning with Scikit-Learn and PyTorch

AI Agents in Action - AI Book Club: April 2025

Attention in transformers, step-by-step | Deep Learning Chapter 6

Yann LeCun's $1B Bet Against LLMs

Chip Huyen: AI Engineering - Part 1

Learn Machine Learning Like a GENIUS and Not Waste Time

The Local AI Hardware Mistake Everyone Makes

Ex-Google Recruiter Explains Why "Lying" Gets You Hired

Transformers, the tech behind LLMs | Deep Learning Chapter 5

Professor Jiang: I Predicted This War. Here Is Exactly What Happens Next.

Is AI Hiding Its Full Power? With Geoffrey Hinton

How To Master Google Gemini in 2026 (Free Course)

Train Your Brain to Never Forget (5 Feynman Habits)

How does AI actually work? Transformers explained

Why AI Agents are either the best or worst thing we’ve ever built

NVIDIA CEO Jensen Huang's Vision for the Future

All Machine Learning Models Clearly Explained!

MIT 6.S191: AI for Science

I Hacked This Temu Router. What I Found Should Be Illegal.

