Section 01
Introduction: 23 Notebooks to Build a Full-Stack Understanding of Modern LLMs from Scratch
A hands-on tutorial that implements core components of large models from scratch without using pre-built libraries, covering the complete tech stack from Tokenizer, Attention, MoE, RLHF to inference acceleration. Ideal for learners who want deep understanding rather than just knowing how to call APIs. The project uses 23 Jupyter Notebooks to help learners establish a full-stack understanding of modern LLMs.