The Developer's Guide to AI: A Field Guide for the Working Developer (Paperback)
暫譯: 開發者的人工智慧指南:在職開發者的實用手冊 (平裝本)
Orshalick, Jacob, Reghunadh, Jerry M., Thompson, Danny
- 出版商: No Starch Press
- 出版日期: 2026-06-09
- 售價: $2,150
- 貴賓價: 9.5 折 $2,042
- 語言: 英文
- 頁數: 320
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1718504764
- ISBN-13: 9781718504769
-
相關分類:
Large language model
海外代購書籍(需單獨結帳)
買這商品的人也買了...
-
$700Professional Scrum Development with Microsoft Visual Studio 2012 (Paperback) -
Arduino 官方正版 Genuino 101$1,700$1,700 -
$856深度學習 -
Raspberry Pi 3 Model B+ (UK製)$1,720$1,685 -
$1,320Deep Learning with JavaScript: Neural Networks in Tensorflow.Js -
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 -
資安這條路:領航新手的 Web Security 指南,以自建漏洞環境學習網站安全(iT邦幫忙鐵人賽系列書)$680$530 -
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 -
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 -
OAuth 2.0 從入門到實戰:利用驗證和授權守護 API 的安全$600$450 -
JavaScript 設計模式學習手冊, 2/e (Learning JavaScript Design Patterns: A JavaScript and React Developer's Guide, 2/e)$580$458 -
超圖解 ESP32 應用實作$820$697 -
OpenTelemetry 入門指南:建立全面可觀測性架構(iThome鐵人賽系列書)【軟精裝】(封面有些許摺痕,不介意在下單)$750$495 -
資料庫內部原理|深入了解分散式資料系統的運作方式$780$616 -
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 -
AI 工程|從基礎模型建構應用 (AI Engineering : Building Applications with Foundation Models)$1,200$948 -
$2,160Beyond Vibe Coding: From Coder to Ai-Era Developer (Paperback) -
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 -
A Common-Sense Guide to AI Engineering: Build Production-Ready LLM Applications (Paperback)$2,530$2,403
相關主題
商品描述
A practical, accessible guide that shows working software developers how to integrate real AI features into the applications they already build--using JavaScript, Python, APIs, and modern cloud services, without needing a data-science background.
Most developers already know AI is powerful. What they don't know is how to actually use it in their own codebase without becoming a data scientist. Too often, AI features stall out at brittle prototypes, half-baked search functions, or "smart" features that collapse the moment requirements change. That's where this book comes in. We wrote this book with the everyday software developer in mind. The dev who works in a company and wants to grow their career by meeting the demands of the industry without losing time in the areas that might not be relevant to their current company or role.
Written by seasoned developers Jacob Orshalick, Jerry M. Reghunadh, and Danny Thompson, this book teaches you how to integrate and customize large language models (LLMs) and other pre-trained AI models to solve real-world problems.
Instead of drowning you in theory, this book gives you:
- Intelligent automation: Automate repetitive work by calling LLMs directly from your own applications and streaming intelligent responses to the UI.
- Practical Paths: Build production-ready AI features with tools you already know and some you don't.
- Clarity through the hype: Learn where AI actually makes sense in your applications (and where it doesn't).
- Fewer dead-ends: Avoid wasted cycles by understanding limitations, costs, and trade-offs before you build.
- Competitive edge: Discover how AI can help you improve search, personalization, automation, and more.
商品描述(中文翻譯)
一個實用且易於理解的指南,向在職軟體開發人員展示如何將真正的 AI 功能整合到他們已經構建的應用程式中——使用 JavaScript、Python、API 和現代雲服務,而無需具備資料科學背景。
大多數開發人員已經知道 AI 是強大的,但他們不知道如何在自己的程式碼庫中實際使用它,而不必成為資料科學家。AI 功能往往停留在脆弱的原型、半成品的搜尋功能或在需求變更時就崩潰的「智慧」功能上。這就是本書的用武之地。我們撰寫這本書是為了日常的軟體開發人員。這位開發人員在公司工作,想要通過滿足行業需求來提升自己的職業生涯,而不必在與當前公司或角色無關的領域浪費時間。
本書由經驗豐富的開發人員 Jacob Orshalick、Jerry M. Reghunadh 和 Danny Thompson 撰寫,教你如何整合和自訂大型語言模型(LLMs)及其他預訓練的 AI 模型,以解決現實世界中的問題。
本書不會讓你淹沒在理論中,而是提供:
- 智能自動化:通過直接從自己的應用程式調用 LLMs,自動化重複性工作,並將智能回應串流到用戶界面。
- 實用路徑:使用你已經熟悉的工具和一些你不熟悉的工具,構建生產就緒的 AI 功能。
- 清晰的熱潮:了解 AI 在你的應用程式中實際有意義的地方(以及不有意義的地方)。
- 減少死胡同:在構建之前,通過理解限制、成本和權衡來避免浪費的循環。
- 競爭優勢:發現 AI 如何幫助你改善搜尋、個性化、自動化等功能。
作者簡介
Jacob Orshalick has over 20 years in software development as an independent consultant for startups and Fortune 500 companies, leading high-impact projects and speaking regularly at conferences.
Jerry Mannel Reghunadh is a senior director with over 20 years in tech, spanning QA, product innovation, and solution architecture. He is known for mastering complex concepts and making them accessible.
Danny Thompson is a director of technology who works with Fortune 500 companies, teaches software developers worldwide, and hosts The Programming Podcast.
作者簡介(中文翻譯)
雅各·奧沙利克(Jacob Orshalick) 在軟體開發領域擁有超過 20 年的經驗,作為獨立顧問為初創公司和《財富》500 強企業提供服務,領導高影響力的專案,並定期在會議上發表演講。
傑瑞·曼內爾·瑞古納德(Jerry Mannel Reghunadh) 是一位高級總監,擁有超過 20 年的科技經驗,涵蓋品質保證、產品創新和解決方案架構。他以掌握複雜概念並使其易於理解而聞名。
丹尼·湯普森(Danny Thompson) 是一位技術總監,與《財富》500 強企業合作,並在全球教授軟體開發人員,同時主持 程式設計播客(The Programming Podcast)。