AI Engineering: Building Applications with Foundation Models
Author: Chip Huyen (Author)
Publisher finelybook 出版社: O’Reilly Media
Edition 版本: 1st edition
Publication Date 出版日期: 2025-01-7
Language 语言: English
Print Length 页数: 532 pages
ISBN-10: 1098166302
ISBN-13: 9781098166304
Book Description
Book Description
Review
“This book offers a comprehensive, well-structured guide to the essential aspects of building generative AI systems. A must-read for any professional looking to scale AI across the enterprise.”
– Vittorio Cretella, former global CIO at P&G and Mars
“Chip Huyen gets generative AI. She is a remarkable teacher and writer whose work has been instrumental in helping teams bring AI into production. Drawing on her deep expertise, AI Engineering is a comprehensive and holistic guide to building generative AI applications in production.”– Luke Metz, co-creator of ChatGPT
“Every AI engineer building real-world applications should read this book. It’s a vital guide to end-to-end AI system design, from model development and evaluation to large-scale deployment and operation.”– Andrei Lopatenko, Director Search and AI, Neuron7
“This book serves as an essential guide for building AI products that can scale. Unlike other books that focus on tools or current trends that are constantly changing, Chip delivers timeless foundational knowledge. Whether you’re a product manager or an engineer, this book effectively bridges the collaboration gap between cross-functional teams, making it a must-read for anyone involved in AI development.”– Aileen Bui, AI Product Operations Manager, Google
“This is the definitive segue into AI Engineering from one of the greats of ML Engineering! Chip has seen through successful projects and careers at every stage of a company and for the first time ever condensed her expertise for new AI Engineers entering the field.”– swyx, Curator, AI Engineer
About the Author
Chip Huyen works in the intersection of AI, data, and storytelling. Previously, she was with Snorkel AI and NVIDIA, founded an AI infrastructure startup (acquired), worked on GPU optimization for data processing, and taught Machine Learning Systems Design at Stanford. Her last book, Designing Machine Learning Systems, is an Amazon bestseller in AI and has been translated into over 10 languages.
下载地址
PDF, EPUB | 56 MB | 2024-12-30
相关推荐
- The Machine Learning Solutions Architect Handbook: Practical strategies and best practices on the ML lifecycle, system design, MLOps, and generative AI, 2nd Edition
- Hands-On Genetic Algorithms with Python: Apply genetic algorithms to solve real-world AI and machine learning problems, 2nd Edition
- Keap Cookbook: Over 75 effective recipes for CRM optimization, marketing automation, and workflow mastery
- In-Memory Analytics with Apache Arrow: Accelerate data analytics for efficient processing of flat and hierarchical data structures, 2nd Edition
- Introduction to Kali Purple: Harness the synergy of offensive and defensive cybersecurity strategies of Kali Linux
- IT Audit Field Manual: Strengthen your cyber defense through proactive IT auditing