Build a Large Language Model

Build a Large Language Model

  • Downloads:1020
  • Type:Epub+TxT+PDF+Mobi
  • Create Date:2024-10-30 01:20:27
  • Update Date:2025-09-07
  • Status:finish
  • Author:Sebastian Raschka
  • ISBN:B0DGQXVK62
  • Environment:PC/Android/iPhone/iPad/Kindle

Summary

Learn how to create, train, and tweak large language models (LLMs) by building one from the ground up!

In Build a Large Language Model (from Scratch) bestselling author Sebastian Raschka guides you step by step through creating your own LLM。 Each stage is explained with clear text, diagrams, and examples。 You’ll go from the initial design and creation, to pretraining on a general corpus, and on to fine-tuning for specific tasks。

Build a Large Language Model (from Scratch) teaches you how

• Plan and code all the parts of an LLM
• Prepare a dataset suitable for LLM training
• Fine-tune LLMs for text classification and with your own data
• Use human feedback to ensure your LLM follows instructions
• Load pretrained weights into an LLM

Build a Large Language Model (from Scratch) takes you inside the AI black box to tinker with the internal systems that power generative AI。 As you work through each key stage of LLM creation, you’ll develop an in-depth understanding of how LLMs work, their limitations, and their customization methods。 Your LLM can be developed on an ordinary laptop, and used as your own personal assistant。

About the technology

Physicist Richard P。 Feynman reportedly said, “I don’t understand anything I can’t build。” Based on this same powerful principle, bestselling author Sebastian Raschka guides you step by step as you build a GPT-style LLM that you can run on your laptop。 This is an engaging book that covers each stage of the process, from planning and coding to training and fine-tuning。

About the book

Build a Large Language Model (From Scratch) is a practical and eminently-satisfying hands-on journey into the foundations of generative AI。 Without relying on any existing LLM libraries, you’ll code a base model, evolve it into a text classifier, and ultimately create a chatbot that can follow your conversational instructions。 And you’ll really understand it because you built it yourself!

What's inside

• Plan and code an LLM comparable to GPT-2
• Load pretrained weights
• Construct a complete training pipeline
• Fine-tune your LLM for text classification
• Develop LLMs that follow human instructions

About the reader

Readers need intermediate Python skills and some knowledge of machine learning。 The LLM you create will run on any modern laptop and can optionally utilize GPUs。

About the author

Sebastian Raschka is a Staff Research Engineer at Lightning AI, where he works on LLM research and develops open-source software。

The technical editor on this book was David Caswell

Table of Contents

1 Understanding large language models
2 Working with text data
3 Coding attention mechanisms
4 Implementing a GPT model from scratch to generate text
5 Pretraining on unlabeled data
6 Fine-tuning for classification
7 Fine-tuning to follow instructions
A Introduction to PyTorch
B References and further reading
C Exercise solutions
D Adding bells and whistles to the training loop
E Parameter-efficient fine-tuning with LoRA

Download

Reviews

Piotr Gabrys

This book is fantastic。 Great resource for learning and finding blind spots in your knowledge。 The appendix is gold with tips and tricks on working with LLMs (like implementation of LoRa from scratch)。

Vishnu Valsalan

Absolutely brilliant

Siddharth Saha

Good in depth explanation, but needs an editor

Philippe

Very good practical book on how to build and train a LLM。 Worth read。

Filip Karlo Došilović

I cannot praise this book enough。 This one sets a new standard for in-depth, explanatory, technical books on complex topics。The author managed explain attention mechanism, Transformers, decoder-based LLMs, and the most important concepts that comprise the contemporary LLMs (self-supervised learning with next-token prediction, instruction and supervised based fine-tuning) in a single, few hundred page book, in an approachable language and code。Cant wait to go through it again (I bought the MEAP v I cannot praise this book enough。 This one sets a new standard for in-depth, explanatory, technical books on complex topics。The author managed explain attention mechanism, Transformers, decoder-based LLMs, and the most important concepts that comprise the contemporary LLMs (self-supervised learning with next-token prediction, instruction and supervised based fine-tuning) in a single, few hundred page book, in an approachable language and code。Cant wait to go through it again (I bought the MEAP version) once a physical copy arrives。 。。。more

Jagatheesan Jack

Excellent!

Tag

    build a large language model (from scratch) build a large language model (from scratch) pdf build a large language model (from scratch)中文版 build a large language model pdf build a large language model (from scratch) pdf 下载 build a large language model (from scratch) 下载 build a large language model 中文 build a large language model (from scratch) 中文 build a large language model (from scratch) pdf free build a large language model pdf下载