• Quick start guide to large language models : strategies and best practices for using ChatGPT and other LLMs
  • 紀錄類型: 書目-語言資料,印刷品 : 單行本
    副題名: strategies and best practices for using ChatGPT and other LLMs
    作者: OzdemirSinan.,
    出版地: Hoboken, New Jersey
    出版者: Addison-Wesley;
    出版年: c2024.
    面頁冊數: xx, 251 p.ill. : 23 cm;
    集叢名: Addison-Wesley data & analytics series
    標題: Natural language generation (Computer science) -
    標題: Artificial intelligence - Computer programs -
    標題: Natural language processing (Computer science) -
    附註: Includes index
    摘要註: "The advancement of Large Language Models (LLMs) has revolutionized the field of Natural Language Processsing (NLP) in recent years. Models like BERT, T5, and ChatGPT have demonstrated unprecedented performance on a wide range of NLP tasks, from text classification to machine translation. Despite their impressive performance, the useof LLMs remains challenging for many practitioners. The sheer size of these models, combined with the lack of understanding of their inner workings, has made it difficult for practitioners to effectively use and optimize these models for their specific needs. This book is a practical guide to the use of LLMs in NLP. It provides an overview of the key concepts and techniques used in LLMs and explains how these models work and how they can be used for various NLP tasks. The book also covers advanced topics, such as fine-tuning, alignment, and information retrieval while providing practical tips and tricks for training and optimizing LLMs for specific NLP tasks. This book addresses a wide range of topics in the field of LLMs, including the basics, launching an application with proprietary models, fine-tuning GPT3 withcustom examples, prompt engineering, building a recommendation engine, combining Transformers, and deploying custom LLMs to the cloud. " --Provided by publisher
    ISBN: 9780138199197
    內容註: I.Introduction to large language models.Overview of large language models Semantic search with LLMs First steps with prompt engineering II.Getting the most out of LLMs.Optimizing LLMs with customized fine-tuning Advanced prompt engineering Customizing embeddings and model architectures III.Advanced LLM usage.Moving beyond foundation models Advanced open-source LLM fine-tuning Moving LLMs into production IV.Appendices: A.LLM FAQs B.LLM glossary C.LLM application archetypes
館藏地:  出版年:  卷號: 
館藏

期刊年代月份卷期操作說明(Help)
  • 1 筆 • 頁數 1 •
  • 1 筆 • 頁數 1 •
評論
建立或儲存個人書籤
書目轉出
取書館別
 
 
變更密碼
登入