Platform Engineering for Artificial Intelligence: Designing scalable infrastructure, data pipelines, and model lifecycle management for generative AI
暫譯: 人工智慧平台工程:為生成式 AI 設計可擴展基礎設施、數據管道及模型生命週期管理

V. Nguyen, Duy

  • 出版商: BPB Publications
  • 出版日期: 2026-02-13
  • 售價: $1,630
  • 貴賓價: 9.5$1,548
  • 語言: 英文
  • 頁數: 392
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 9365897432
  • ISBN-13: 9789365897432
  • 相關分類: AI Coding
  • 海外代購書籍(需單獨結帳)

商品描述

Artificial intelligence is reshaping modern industries, but building scalable and reliable AI systems requires more than models, rather it needs strong platforms, automation, and data-driven insights. This book addresses that critical gap by exploring the AI ecosystem through foundational architecture and infrastructure automation.

This book provides an in-depth knowledge of designing and building operating platforms that supportAI initiatives, covering data pipelines, model lifecycle management, infrastructure engineering, and operational best practices. Each chapter integrates core technical concepts and introduces generative AI, LLMs, and agentic protocols, backed by real-world case studies in healthcare and content moderation, supporting secure and cost-aware AI systems.

After reading this book, readers will gain the knowledge and foundational skills to design and build AI platforms that optimize development workflows and embrace automation. This expertise prepares the readers to lead AI-driven initiatives and deliver measurable business impact in any modern organization.

What you will learn

● Fundamentals of platform engineering, with a focus on how they apply to AI systems.

● Design scalable data pipeline architectures.

● Optimize cloud costs using FinOps.

● Design, build, and operate secure, high-performance, and scalable ML pipelines.

● Engineer platforms to support generative AI and LLMs.

● Apply IaC and FinOps principles to manage resources and optimize costs.

● Build, scale, and lead high-performing platform engineering teams.

Who this book is for

This book is for platform engineers, MLOps professionals, data scientists, and cloud developers who pursue designing and building scalable, efficient AI platforms. Readers should possess intermediate AI/ML knowledge and basic experience with cloud technologies, and is valuable for leaders overseeing AI platform initiatives.

Table of Contents

1. Need for Platform Engineering in AI

2. Core Concepts of AI Platforms

3. Developing Plan for Data Pipelines

4. Architecting Data Pipelines

5. Building Modular Machine Learning Pipelines

6. Governance and Security in AI Platforms

7. Infrastructure as Code for AI Platforms

8. Financial Management in Platform Engineering

9. Operationalizing Machine Learning Models

10. Observability and Monitoring

11. Building High-performing Platform Teams

12. Managing and Scaling Platform Team

13. Scaling Platforms for Enterprise AI

14. Platform Engineering For Generative AI

15. Real-world Use Cases

16. Emerging Trends in AI Platforms

商品描述(中文翻譯)

人工智慧正在重塑現代產業,但建立可擴展且可靠的 AI 系統不僅僅需要模型,還需要強大的平台、自動化和數據驅動的洞察。本書針對這一關鍵缺口,通過基礎架構和基礎設施自動化來探索 AI 生態系統。

本書深入介紹設計和構建支持 AI 項目的運行平台的知識,涵蓋數據管道、模型生命周期管理、基礎設施工程和運營最佳實踐。每一章都整合了核心技術概念,並介紹生成式 AI、LLMs 和代理協議,並以醫療保健和內容審核的真實案例研究為支持,促進安全且具成本意識的 AI 系統。

閱讀本書後,讀者將獲得設計和構建優化開發工作流程並擁抱自動化的 AI 平台所需的知識和基礎技能。這種專業知識使讀者能夠領導以 AI 驅動的項目,並在任何現代組織中實現可衡量的商業影響。

您將學到的內容:
● 平台工程的基本原則,重點在於它們如何應用於 AI 系統。
● 設計可擴展的數據管道架構。
● 使用 FinOps 優化雲端成本。
● 設計、構建和運營安全、高效能且可擴展的機器學習管道。
● 工程平台以支持生成式 AI 和 LLMs。
● 應用 IaC 和 FinOps 原則來管理資源和優化成本。
● 建立、擴展和領導高效能的平台工程團隊。

本書的讀者對象:
本書適合平台工程師、MLOps 專業人士、數據科學家和雲端開發者,這些人追求設計和構建可擴展、高效的 AI 平台。讀者應具備中級的 AI/ML 知識和基本的雲端技術經驗,對於負責 AI 平台項目的領導者也具有價值。

目錄:
1. AI 中平台工程的必要性
2. AI 平台的核心概念
3. 數據管道的開發計劃
4. 數據管道的架構設計
5. 構建模組化的機器學習管道
6. AI 平台中的治理與安全
7. AI 平台的基礎設施即代碼
8. 平台工程中的財務管理
9. 機器學習模型的運營化
10. 可觀察性與監控
11. 建立高效能的平台團隊
12. 管理與擴展平台團隊
13. 企業 AI 的平台擴展
14. 生成式 AI 的平台工程
15. 真實世界的使用案例
16. AI 平台中的新興趨勢