
Large Language Models: The Hard Parts: Open Source AI Solutions for Common Pitfalls
Author(s): Thársis T. P. Souza (Author), Jonathan K. Regenstein Jr. (Author)
- Publisher Finelybook 出版社: O’Reilly Media
- Publication Date 出版日期: June 16, 2026
- Edition 版本: 1st
- Language 语言: English
- Print length 页数: 338 pages
- ASIN: B0FVF4L84C
- ISBN-13: 9798341622524
Book Description
Large language models (LLMs) have transformed natural language processing, but deploying them in applications introduces numerous technical challenges. Large Language Models: The Hard Parts offers a clear, practical examination of the limitations developers and AI engineers face when building LLM-based applications. With a focus on implementation pitfalls (not just capabilities), this book provides actionable strategies supported by reproducible Python code and open source tools.
Readers will learn how to navigate key obstacles in application evaluation, input management, testing, and safety. Designed for builders and technical product leads, this guide emphasizes practical solutions to real-world problems and promotes a grounded understanding of LLM constraints and trade-offs.
- Design testing and evaluation strategies for nondeterministic systems
- Manage context, RAG, and long-context retrieval
- Address output inconsistency and structural unreliability
- Implement safety and content moderation frameworks
- Explore alignment challenges and mitigation techniques
- Leverage open source models locally
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About the Author
Jonathan K. Regenstein, Jr., has spent his career working at the intersection of data, machine learning, technology, and asset management. He is a research affiliate at Georgia Tech’s Financial Services Innovation Lab and an advisor to early-stage AI companies. He holds a B.A. from Harvard University and a J.D. from NYU School of Law. He lives in Atlanta, Georgia, with his wife, three daughters, and three dogs.
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