A Common-Sense Guide to AI Engineering: Build Production-Ready LLM Applications (Paperback)
暫譯: 人工智慧工程的常識指南:構建生產就緒的 LLM 應用程式 (平裝本)
Wengrow, Jay, Dvorak, Katherine
- 出版商: Pragmatic Bookshelf
- 出版日期: 2026-05-26
- 售價: $2,490
- 貴賓價: 9.5 折 $2,365
- 語言: 英文
- 頁數: 340
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798888651933
- ISBN-13: 9798888651933
-
相關分類:
AI Coding
海外代購書籍(需單獨結帳)
買這商品的人也買了...
-
嵌入式系統設計實務-電路與驅動程式$250$225 -
Using SQLite (Paperback)$1,800$1,710 -
ASP.NET 本質論$520$442 -
$700Professional Scrum Development with Microsoft Visual Studio 2012 (Paperback) -
$474系統分析與設計 : 敏捷疊代方法 (原書第6版) -
IoT Solutions in Microsoft's Azure IoT Suite: Data Acquisition and Analysis in the Real World$3,380$3,211 -
$856深度學習 -
演算法之美:隱藏在資料結構背後的原理 (C++版)$650$507 -
$534JSON 實戰 -
$283大數據技術 -
手機攝影必學 BOOK:用OX帶你學會拍人物、食物、風景等情境照片$398$299 -
創意競擇:從賈伯斯黃金年代的軟體設計機密流程,窺見蘋果的創意方法、本質與卓越關鍵$460$391 -
Web 開發者一定要懂的駭客攻防術 (Web Security for Developers: Real Threats, Practical Defense)$420$357 -
資料科學的統計實務 : 探索資料本質、扎實解讀數據,才是機器學習成功建模的第一步$599$539 -
Martin Fowler 的企業級軟體架構模式:軟體重構教父傳授 51個模式,活用設計思考與架構決策 (Patterns of Enterprise Application Architecture)$800$624 -
我懂了!專案管理 (暢銷紀念版)$400$316 -
Designing Production-Grade and Large-Scale IoT Solutions: A comprehensive and practical guide to implementing end-to-end IoT solutions (Paperback)$1,810$1,719 -
電腦視覺機器學習實務|建立端到端的影像機器學習 (Practical Machine Learning for Computer Vision: End-To-End Machine Learning for Images)$780$616 -
Learning Blazor: Build Single-Page Apps with Webassembly and C# (Paperback)$2,185$2,070 -
ASP.NET Core Razor Pages in Action (Paperback)$2,160$2,052 -
超圖解 ESP32 應用實作$820$697 -
無瑕的程式碼 軟體工匠篇:程式設計師必須做到的紀律、標準與倫理 (Clean Craftsmanship: Disciplines, Standards, and Ethics)$720$561 -
從源頭就優化 - 動手開發自己的編譯器實戰$880$695 -
UX 商業價值實現之道|打造成功的數位產品服務 (UX for Business: How to Design Valuable Digital Companies)$780$616 -
建構可擴展系統|設計分散式架構 (Foundations of Scalable Systems: Designing Distributed Architectures)$780$616
相關主題
商品描述
Build robust LLM-powered apps, chatbots, and agents while mastering AI engineering principles that will help you outlast the tools and the hype.
Want to build an LLM-powered app but don't know where to begin? With this step-by-step guide, you can master the underlying principles of AI engineering by building an LLM-powered app from the ground up. Tame unpredictable models with prompt and context engineering. Use evals to keep them on track. Give chatbots the knowledge to answer anything a user wants to know. Equip agents with the tools and smarts to actually get the job done. By the end, you'll have the intuition and the confidence to build on top of LLMs in the real world.
Fragmented documentation, obsolete tutorials, and frameworks that deliver a prototype but flop in production can make AI engineering feel overwhelming. But it doesn't have to be that way. With real-world code and step-by-step instructions as your guide, you can learn to build robust LLM-powered apps from the ground up while mastering both the how and why of the most crucial underlying concepts.
Harness context engineering and retrieval systems to create AI assistants that understand your proprietary data. Create chatbots that answer organization-specific questions and help solve users' issues. Design agents that conduct research, make decisions, and take action in the real world. Level up your prompt engineering and get an LLM to do your bidding---not its own. Use automated evals to keep constant tabs on your app's quality while setting up guardrails to protect your users and organization. And implement observability systems that make it easy to debug your app when things do go wrong.
With a systematic approach grounded in the core principles of building AI apps for real users, you'll easily evolve and adapt even as the hype and tools come and go.
商品描述(中文翻譯)
建立強大的 LLM 驅動應用程式、聊天機器人和代理,同時掌握 AI 工程原則,幫助你超越工具和熱潮。
想要建立一個 LLM 驅動的應用程式,但不知道從何開始?透過這本逐步指南,你可以從零開始掌握 AI 工程的基本原則,建立一個 LLM 驅動的應用程式。利用提示和上下文工程來駕馭不可預測的模型。使用評估工具來保持它們的正確方向。讓聊天機器人具備回答用戶任何問題的知識。為代理提供工具和智慧,實際完成任務。到最後,你將擁有在現實世界中基於 LLM 建立應用的直覺和信心。
零散的文檔、過時的教程以及在生產環境中失敗的原型框架,可能會讓 AI 工程感到壓倒性。但事實上不必如此。透過真實的代碼和逐步的指導,你可以學會從零開始建立強大的 LLM 驅動應用程式,同時掌握最關鍵的基本概念的「如何」和「為什麼」。
利用上下文工程和檢索系統來創建理解你專有數據的 AI 助手。創建回答組織特定問題並幫助解決用戶問題的聊天機器人。設計能夠進行研究、做出決策並在現實世界中採取行動的代理。提升你的提示工程,讓 LLM 服從你的指令——而不是它自己的。使用自動化評估工具持續監控應用的質量,同時設置防護措施以保護你的用戶和組織。並實施可觀察性系統,使你在出現問題時能輕鬆調試應用。
透過以核心原則為基礎的系統化方法,你將能夠輕鬆演變和適應,即使熱潮和工具來來去去。
作者簡介
Jay Wengrow is an experienced educator and software engineer. He is the founder of Actualize, a software and AI engineering education company, and specializes in making advanced technical topics approachable for professionals across industries. He is also the author of the popular Common-Sense Guide to Data Structures and Algorithms book series.
作者簡介(中文翻譯)
Jay Wengrow 是一位經驗豐富的教育工作者和軟體工程師。他是 Actualize 的創辦人,這是一家專注於軟體和人工智慧工程教育的公司,並專門將高級技術主題變得易於接觸,適合各行各業的專業人士。他也是廣受歡迎的 常識數據結構與演算法指南 書系列的作者。