Large Language Models: The Hard Parts: Open Source AI Solutions for Common Pitfalls
暫譯: 大型語言模型:艱難之處:開源AI解決方案應對常見陷阱
Souza, Thársis T. P., Regenstein, Jonathan K., Jr.
- 出版商: O'Reilly
- 出版日期: 2026-06-16
- 售價: $2,700
- 貴賓價: 9.8 折 $2,646
- 語言: 英文
- 頁數: 338
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798341622524
- ISBN-13: 9798341622524
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相關分類:
Large language model
海外代購書籍(需單獨結帳)
商品描述
Large language models (LLMs) have transformed natural language processing, but deploying them in applications introduces numerous technical challenges. Large Language Models: The Hard Partsoffers a clear, practical examination of the limitations developers and ML engineers face when building LLM-powered 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 system integration, input management, testing, safety, and cost control. Designed for engineers 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 strategies for nondeterministic systems
- Manage input formatting 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 and optimize costs
商品描述(中文翻譯)
大型語言模型(LLMs)已經改變了自然語言處理,但在應用中部署它們會帶來許多技術挑戰。《大型語言模型:艱難的部分》提供了對開發人員和機器學習工程師在構建基於LLM的應用時所面臨的限制的清晰、實用的檢視。這本書專注於實施中的陷阱(不僅僅是能力),提供了可行的策略,並附有可重現的Python代碼和開源工具。
讀者將學習如何應對系統整合、輸入管理、測試、安全性和成本控制等關鍵障礙。這本指南專為工程師和技術產品負責人設計,強調針對現實問題的實用解決方案,並促進對LLM限制和權衡的深入理解。
- 設計針對非確定性系統的測試策略
- 管理輸入格式和長上下文檢索
- 解決輸出不一致性和結構不可靠性
- 實施安全性和內容審核框架
- 探索對齊挑戰和緩解技術
- 利用開源模型並優化成本