The Data Grid: A Multidisciplinary Guide to Building the Soft Infrastructure of the AI Era
暫譯: 數據網格:AI時代軟體基礎建設的多學科指南

Lee, Zhongyuan Thomas

  • 出版商: Springer
  • 出版日期: 2026-05-23
  • 售價: $2,430
  • 貴賓價: 9.8$2,381
  • 語言: 英文
  • 頁數: 126
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 303225003X
  • ISBN-13: 9783032250032
  • 相關分類: AI Coding
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

As industries transition from the automation focus of Industry 4.0 to the human-AI collaboration of Industry 5.0, artificial intelligence stands at the forefront. Yet the lasting capability of intelligent systems is rooted in a deeper layer: robust data infrastructures. The Data Grid argues that AI's true scalability and reliability hinge not just on algorithms, but on stable, governed, and semantically structured data systems. Across industries, fragmented and inconsistent data foundations constrain AI's potential. By redefining data as infrastructure' imbued with stability, scalability, and lifecycle continuity, this volume establishes the structural foundation for sustainable intelligence.

Drawing from systems engineering, industrial engineering, reliability theory, and risk management, this book offers a cross-disciplinary framework for building AI-native data infrastructures. While data engineering originates from computer and software engineering, in the infrastructure context, it is not and should not be confined to these disciplines. It shows how principles such as determinism, fault isolation, boundary control, and semantic layering can be adapted for enterprise-level data environments. Supported by engineering analysis and practical case studies, the book redefines data not as a static resource but as a continuously flowing soft infrastructure: an engineered backbone for resilient, long-term intelligent systems.

商品描述(中文翻譯)

隨著產業從以自動化為重心的工業4.0過渡到人類與人工智慧(AI)協作的工業5.0,人工智慧站在了最前沿。然而,智能系統的持久能力根植於更深層的基礎:穩健的數據基礎設施。《The Data Grid》主張,AI的真正可擴展性和可靠性不僅依賴於算法,還依賴於穩定、受管控且具語義結構的數據系統。在各行各業中,零散且不一致的數據基礎限制了AI的潛力。通過將數據重新定義為具備穩定性、可擴展性和生命周期連續性的基礎設施,本書為可持續智能建立了結構性基礎。

本書借鑒了系統工程、工業工程、可靠性理論和風險管理,提供了一個跨學科的框架,用於構建AI原生的數據基礎設施。雖然數據工程起源於計算機和軟體工程,但在基礎設施的背景下,它並不應該被限制於這些學科。它展示了如何將決定論、故障隔離、邊界控制和語義分層等原則調整為企業級數據環境的應用。通過工程分析和實際案例研究,本書重新定義數據,不再是靜態資源,而是持續流動的軟性基礎設施:一個為韌性和長期智能系統提供支撐的工程化骨幹。

作者簡介

Zhongyuan Thomas Lee (formerly Zhongyuan Li) is a doctoral researcher in Multidisciplinary Engineering at Texas A&M University. He also serves as a Staff Data Engineer at Compass, where he works on enterprise-scale data infrastructure. His research focuses on Industry 4.0/5.0 systems, digital twins, and AI-ready data infrastructures. He has published over twenty-five peer-reviewed papers in journals and conferences. With more than fifteen years of professional experience as a Data Engineer, he has worked across multiple industries including power grids, telecommunications, finance, and healthcare.

作者簡介(中文翻譯)

中原湯瑪斯·李(前名中原李)是德克薩斯農工大學多學科工程的博士研究員。他同時擔任Compass的數據工程師,負責企業級數據基礎設施的工作。他的研究重點在於工業4.0/5.0系統、數位雙胞胎以及人工智慧準備的數據基礎設施。他在期刊和會議上發表了超過二十五篇的同行評審論文。擁有超過十五年的數據工程專業經驗,他曾在電力網、電信、金融和醫療等多個行業工作。