How to Build and Fine‐Tune a Small Language Model: A Step-by-Step Guide for Beginners, Researchers, and Non-Programmers

$49.99
by Paul Liu

Shop Now
How to Build and Fine-Tune a Small Language Model A Step-by-Step Guide for Beginners, Researchers, and Non-Programmers Build your own AI—without a PhD, expensive hardware, or industry-level resources. Whether you’re a beginner, a student, a scientist, or a domain expert, this book shows you how to create, train, fine-tune, and deploy Small Language Models (SLMs) that truly understand your field. Most AI books explain what models are. This one teaches you to build them . You’ll go from zero to a working GPT-style model, then learn how to fine-tune, align, evaluate, and deploy it for real applications. 🔥 Why This Book Is Different This is a hands-on builder’s manual designed for real beginners and practical users. Everything is tested through university courses, workshops, and real production deployments. You will be able to: ✔ Build a GPT model from scratch - ✔ Train real models using free/low-cost Google Colab - ✔ Pretrain your own MiniMind SLM - ✔ Fine-tune with Supervised FT - ✔ Align with Direct Preference Optimization (DPO) - ✔ Deploy models privately and efficiently All chapters include ready-to-run Google Colab notebooks. 📚 Inside the Book Part I – Foundations (Ch. 1–3) Why SLMs matter - Build a complete GPT from scratch - Fine-tune GPT-2 in under 30 minutes - Learn tokenization, attention, batching, and training loops Part II – Training from Scratch (Ch. 4–7) Prepare real datasets - Configure architecture and size - Train 125M–350M parameter models - Evaluate with perplexity and benchmarks - Troubleshoot training issues Part III – MiniMind Pipeline (Ch. 8–10) A modern 3-stage workflow: Pretraining - Supervised Fine-Tuning (SFT) - Direct Preference Optimization (DPO) Part IV – Production & Ethics (Ch. 11–12) Quantization: INT8, 4-bit, GPTQ - Deploy on Mac, PC, server, or cloud - Cost breakdowns (from $0 to <$50) - Build three complete projects: Medical Q&A Assistant - Code Documentation Generator - Multilingual Support Bot - Learn safe and responsible deployment 🌟 Who This Book Is For Ideal for: Researchers and graduate students - Domain specialists in law, medicine, geology, humanities, and business - Developers and small business owners - Beginners and non-programmers wanting hands-on AI - Anyone wanting private, affordable, customizable AI No CS degree required—code is clear, copy-and-run, and fully explained. 💡 What Makes This Book Unique ✨ Beginner-friendly and classroom-tested - ✨ Fully practical with real datasets and runnable code - ✨ Works on free Google Colab or inexpensive hardware - ✨ Adaptable to any domain - ✨ Includes deployment guides and cost calculators - ✨ Covers the full pipeline: Build → Pretrain → Fine-Tune → Align → Deploy ⭐ From the Author This book grew from years of teaching students, researchers, and professionals who thought AI was out of reach. 🏁 Ready to Build Your Own Model? With step-by-step explanations and production-ready workflows, this book turns AI from a mysterious black box into something you can build, customize, and deploy yourself. Begin your journey from AI user to AI builder today.

Customer Reviews

No ratings. Be the first to rate

 customer ratings


How are ratings calculated?
To calculate the overall star rating and percentage breakdown by star, we don’t use a simple average. Instead, our system considers things like how recent a review is and if the reviewer bought the item on Amazon. It also analyzes reviews to verify trustworthiness.

Review This Product

Share your thoughts with other customers