Hands-On Large Language Models

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Hands-On Large Language Models

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ISBN: 9781098150969
author: Jay Alammar / Maarten Grootendorst
translator: Maarten Grootendorst
book format: Paperback
other title: Hands-On Large Language Models: Language Understanding and Generation
publishing house: O'Reilly Media
publication date: 2024 -10
language: English
binding: Paperback
price: USD 61.09
number of pages: 425

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Language Understanding and Generation

Jay Alammar / Maarten Grootendorst    translator: Maarten Grootendorst

overview

AI has acquired startling new language capabilities in just the past few years. Driven by the rapid advances in deep learning, language AI systems are able to write and understand text better than ever before. This trend enables the rise of new features, products, and entire industries. With this book, Python developers will learn the practical tools and concepts they need to use these capabilities today.
You'll learn how to use the power of pre-trained large language models for use cases like copywriting and summarization; create semantic search systems that go beyond keyword matching; build systems that classify and cluster text to enable scalable understanding of large amounts of text documents; and use existing libraries and pre-trained models for text classification, search, and clusterings.
This book also shows you how to:
Build advanced LLM pipelines to cluster text documents and explore the topics they belong to
Build semantic search engines that go beyond keyword search with methods like dense retrieval and rerankers
Learn various use cases where these models can provide value
Understand the architecture of underlying Transformer models like BERT and GPT
Get a deeper understanding of how LLMs are trained
Understanding how different methods of fine-tuning optimize LLMs for specific applications (generative model fine-tuning, contrastive fine-tuning, in-context learning, etc.)
Optimize LLMs for specific applications with methods such as generative model fine-tuning, contrastive fine-tuning, and in-context learning

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