Enterprise AI
This book provides perspectives and deliberations on the barriers and opportunities for Enterprise AI, as well as a range of state-of-the-art approaches that can facilitate AI adoption more widely. It aims to provide a comprehensive and authoritative resource on Enterprise AI so that students, researchers and practitioners have the benefit of accessing the full scope of the problems and approaches in one place, relating to the critical aspects of Enterprise AI projects.

The contributions by experts in multiple socio-technical disciplines have been accordingly structured in three parts: First, Scalable and Sustainable Practices for Enterprise AI explores emerging strategies that enable organizations to scale AI systems sustainably by maximizing performance while minimizing resource consumption. It offers a deep dive into three complementary approaches that address this challenge from different angles: data distillation, federated learning, and resource-efficient deployment. Next, Safe and Responsible Enterprise AI addresses the critical aspects of AI safety in the enterprise context. The four chapters provide a comprehensive set of resources for individuals and enterprises seeking to implement AI systems that are not only powerful but also principled. By addressing data quality, privacy, explainability, and human-AI collaboration, this part lays the groundwork for building AI systems that are safe, transparent, and aligned with human and organizational values. Eventually, Value Creation with Enterprise AI offers four chapters providing a multidimensional view of value creation with AI, that balances innovation with responsibility, and efficiency with trust. They provide a roadmap for enterprises seeking to harness AI not just as a tool for automation, but as a catalyst for meaningful, sustainable transformation.

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Enterprise AI
This book provides perspectives and deliberations on the barriers and opportunities for Enterprise AI, as well as a range of state-of-the-art approaches that can facilitate AI adoption more widely. It aims to provide a comprehensive and authoritative resource on Enterprise AI so that students, researchers and practitioners have the benefit of accessing the full scope of the problems and approaches in one place, relating to the critical aspects of Enterprise AI projects.

The contributions by experts in multiple socio-technical disciplines have been accordingly structured in three parts: First, Scalable and Sustainable Practices for Enterprise AI explores emerging strategies that enable organizations to scale AI systems sustainably by maximizing performance while minimizing resource consumption. It offers a deep dive into three complementary approaches that address this challenge from different angles: data distillation, federated learning, and resource-efficient deployment. Next, Safe and Responsible Enterprise AI addresses the critical aspects of AI safety in the enterprise context. The four chapters provide a comprehensive set of resources for individuals and enterprises seeking to implement AI systems that are not only powerful but also principled. By addressing data quality, privacy, explainability, and human-AI collaboration, this part lays the groundwork for building AI systems that are safe, transparent, and aligned with human and organizational values. Eventually, Value Creation with Enterprise AI offers four chapters providing a multidimensional view of value creation with AI, that balances innovation with responsibility, and efficiency with trust. They provide a roadmap for enterprises seeking to harness AI not just as a tool for automation, but as a catalyst for meaningful, sustainable transformation.

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Enterprise AI

Enterprise AI

Enterprise AI

Enterprise AI

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Overview

This book provides perspectives and deliberations on the barriers and opportunities for Enterprise AI, as well as a range of state-of-the-art approaches that can facilitate AI adoption more widely. It aims to provide a comprehensive and authoritative resource on Enterprise AI so that students, researchers and practitioners have the benefit of accessing the full scope of the problems and approaches in one place, relating to the critical aspects of Enterprise AI projects.

The contributions by experts in multiple socio-technical disciplines have been accordingly structured in three parts: First, Scalable and Sustainable Practices for Enterprise AI explores emerging strategies that enable organizations to scale AI systems sustainably by maximizing performance while minimizing resource consumption. It offers a deep dive into three complementary approaches that address this challenge from different angles: data distillation, federated learning, and resource-efficient deployment. Next, Safe and Responsible Enterprise AI addresses the critical aspects of AI safety in the enterprise context. The four chapters provide a comprehensive set of resources for individuals and enterprises seeking to implement AI systems that are not only powerful but also principled. By addressing data quality, privacy, explainability, and human-AI collaboration, this part lays the groundwork for building AI systems that are safe, transparent, and aligned with human and organizational values. Eventually, Value Creation with Enterprise AI offers four chapters providing a multidimensional view of value creation with AI, that balances innovation with responsibility, and efficiency with trust. They provide a roadmap for enterprises seeking to harness AI not just as a tool for automation, but as a catalyst for meaningful, sustainable transformation.


Product Details

ISBN-13: 9783032019394
Publisher: Springer Nature Switzerland
Publication date: 10/22/2025
Pages: 310
Product dimensions: 6.10(w) x 9.25(h) x (d)

About the Author

Shazia Sadiq is a globally recognized leader in data and process management, with a 25-year career as a researcher and educator focused on dismantling socio-technical barriers to technology-driven transformation. Her work has significantly advanced the fields of data quality management, scalable data curation, process modelling and compliance, and information resilience. She has published over 200 peer-reviewed publications and worked with industry and government on the development of responsible AI solutions. Shazia is a Fellow of the Australian Academy of Technological Sciences and Engineering, Director for the ARC Industry Transformation Training Centre for Information Resilience, and member of The Australian Research Council College of Experts.

Table of Contents

PART 1: Scalable and Sustainable Practices for Enterprise AI.- 1. Resource-efficient Model Deployment for Enterprise AI.- 2. Dataset Distillation for Enterprise Applications.-3. Federated Learning for Enterprise AI.- PART 2: Safe and Responsible Enterprise AI.- 4. Data Quality for Enterprise AI.- 5. Data Privacy in Enterprise AI.- 6. MAGIX: A Unified Framework for the Use of XAI in Enterprises.- 7. The Enterprising and Elusive Prospects of Human-AI Collaboration.- PART 3: Value Creation with Enterprise AI.- 8. Creating Value from Enterprise AI.- 9. The Rise of Enterprise Autonomization.- 10. Trust in AI: Evidence of Trust-supporting Mechanisms from 17 Countries.- 11. Insights into AI’s Influence on Enterprise Software and Systems: Lessons from Varied Contexts.

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