Pandey / Patel | Next-Generation Technologies in Cloud Computing | Buch | 978-1-394-38245-3 | www.sack.de

Buch, Englisch, 464 Seiten, Format (B × H): 152 mm x 229 mm, Gewicht: 790 g

Pandey / Patel

Next-Generation Technologies in Cloud Computing


1. Auflage 2026
ISBN: 978-1-394-38245-3
Verlag: John Wiley & Sons

Buch, Englisch, 464 Seiten, Format (B × H): 152 mm x 229 mm, Gewicht: 790 g

ISBN: 978-1-394-38245-3
Verlag: John Wiley & Sons


Comprehensive exploration of emerging cloud computing technologies, focusing on generative AI, cloud security, sustainable computing practices, and edge computing

Next-Generation Technologies in Cloud Computing delves into the development and future of cloud ecosystems, highlighting key technological milestones. Unlike traditional cloud computing books, this volume uniquely integrates AI, cybersecurity, sustainability, and edge computing into a single comprehensive resource. It explores the latest advancements, from generative AI and quantum computing to zero-trust security and green cloud practices, making it a forward-looking guide for readers of all backgrounds.

The book bridges theory and practice by including case studies from industries like healthcare, finance, and IoT, showcasing how cloud innovations are transforming real-world applications. Contributions from leading academics, researchers, and industry experts provide valuable perspectives on deploying next-generation cloud solutions.

Rather than focusing solely on performance and scalability, this volume emphasizes eco-friendly cloud solutions and the ethical implications of AI-driven cloud systems. It highlights strategies for achieving carbon-neutral cloud infrastructures and securing AI applications responsibly, addressing the growing demand for sustainable and ethical technology practices.

Next-Generation Technologies in Cloud Computing includes information on: - Machine Learning as a Service (MLaaS) and its advantages for businesses and developers, emphasizing multi-cloud optimization
- Edge computing’s role in enhancing real-time data processing, particularly in IoT and 5G networks
- Eco-friendly cybersecurity and AI-powered threat detection
- Privacy-preserving techniques, innovations in IoT platforms, and cost optimization for cloud AI
- Regulatory frameworks including the EU AI Act, the NIST AI Risk Management Framework, OECD AI Principles, and U.S. Executive Orders on AI

Next-Generation Technologies in Cloud Computing is an essential resource on the subject for cloud professionals, cybersecurity experts, AI researchers, students, educators, policymakers, and anyone interested in understanding the future of cloud technology.

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Weitere Infos & Material


About the Editors xxv

List of Contributors xxvii

Preface xxix

Acknowledgments xxxi

1 Introduction: Reimagining Cloud Computing in the Age of AI and Sustainability 1
Karan Alang and Anant Kumar

1.1 Introduction 1

1.2 The Evolution of Cloud Computing: From Mainframes to AI-Powered Everything 1

1.3 The Sustainability Imperative 7

1.4 Challenges and Opportunities 9

1.5 Conclusion 11

1.6 Future Scope 11

References 12

2 The Evolution of Cloud Computing: From Virtual Machines to Serverless 15
Anuj Ashok Potdar and Pronnoy Goswami

2.1 Introduction 15

2.2 The Definition of Cloud Computing 16

2.3 Historical Context and Significance 17

2.4 Evolution Timeline Overview 18

2.5 The Foundations: Virtual Machines and Early Virtualization 20

2.6 The Birth of Modern Cloud Computing 23

2.7 The Serverless Paradigm 26

2.8 Conclusion 27

References 27

3 Exploring Cloud-Native Microservices Architectures and Design Patterns 31
Prashanthi Matam and Venkata Naga Kartik Pidatala

3.1 Introduction 31

3.2 Fundamentals of Cloud-Native Computing 33

3.3 Microservices Architecture (MSA) Overview 36

3.4 Cloud-Native Migration Strategies to Microservices 38

3.5 Core Design Patterns in Microservices 39

3.6 Data Management Patterns 40

3.7 Event-Driven Architectures and Microservices 42

3.8 Practical Considerations and Best Practices 43

3.9 Emerging Trends and Future Directions 45

3.10 Case Studies and Real-World Applications 49

3.11 Conclusion 51

References 51

4 Multicloud and Hybrid Cloud Strategies for Resilient Infrastructure: An Observability-Driven Framework for Modern Distributed Systems 55
Aditya Gupta and Pronnoy Goswami

4.1 Introduction 55

4.2 Related Work and Theoretical Foundations 56

4.3 Multicloud Observability Architecture Framework 58

4.4 Distributed Tracing Implementation Strategy 61

4.5 Multimodal Data Fusion and Analytics 63

4.6 Cross-Cloud Security and Compliance Observability 65

4.7 Implementation Guidelines and Best Practices 67

4.8 Performance Evaluation and Verification 68

4.9 Future Directions and Emerging Technological Developments 70

4.10 Conclusion 72

References 72

5 Machine Learning as a Service (MLaaS): Enabling Scalable AI 75
Raghuram Katakam and Ashwin Prakash Nalwade

5.1 Introduction 75

5.2 The Evolution of Machine Learning 76

5.3 Frameworks and Tools in MLaaS 77

5.4 Challenges and Future Outlook 86

5.5 Conclusion 87

References 88

6 Cloud Cost Optimization and the Rise of FinOps 91
Dhivya Nagasubramanian

6.1 Introduction: Cloud Cost Complexity and the Capital Expenditures (CapEx)-to-Operating Expenditures (OpEx) Shift 91

6.2 From CapEx Comfort to OpEx Chaos 91

6.3 The Rise of FinOps: Making Cloud Spending Make Sense 92

6.4 You’re Not Alone—The Data Tells the Story 92

6.5 ANewMindsetforaNewEra 92

6.6 The Emergence and Evolution of FinOps 94

6.7 Core FinOps Principles and Lifecycle 95

6.8 Holistic Cost Management Framework 98

6.9 Beyond Single-Workload Optimization 98

6.10 Cost-Aware Architecture and Operations 99

6.11 AI/ML for Predictive Cloud Cost Management 100

6.12 FinOps in Action: Real-World Case Studies 101

6.13 The Future of FinOps: Sustainability, Cross-Cloud Arbitrage, and Decentralized Models 104

6.14 Agentic AI Orchestration: The Next Frontier in FinOps 108

6.15 Conclusion 109

References 110

7 FinOps for AI Workloads 113
Anaranya Bagchi

7.1 Introduction 113

7.2 Types of AI Workloads and Cost Drivers 114

7.3 FinOps Principles Applied to AI 117

7.4 Challenges in FinOps for AI Workloads 125

7.5 Conclusion 126

References 127

8 AI-Driven Cloud Services and Intelligence Automation 129
Prashanthi Matam and Venkata Naga Kartik Pidatala

8.1 Introduction 129

8.2 Evolution of Cloud Computing: From Virtualization to Cloud-Native Architectures 132

8.3 Intelligent Automation in Cloud Operations 137

8.4 Emerging Paradigms: Generative and Agentic AI in Cloud Services 143

8.5 Foundations of Multimodal AI 145

8.6 Future Trends and Opportunities 147

8.7 Conclusion 148

References 148

9 AIOps: Intelligent Cloud Observability and Incident Management 151
Milankumar Rana and Jyoti Kunal Shah

9.1 Introduction 151

9.2 Background and Evolution of AIOps 152

9.3 Cloud Observability Fundamentals 154

9.4 Architecture of AIOps Platforms 156

9.5 Data Pipelines and Telemetry Management 161

9.6 AI/ML Techniques for Intelligent Observability 165

9.7 Anomaly Detection and Root Cause Analysis 169

9.8 Incident Management Workflow 172

9.9 Case Studies and Industry Implementations 175

9.10 Best Practices for AIOps Adoption 179

9.11 Challenges and Limitations 182

9.12 Future Directions in AIOps 183

9.13 Conclusion 185

References 186

10 Cloud-Native DevSecOps and Shift-Left Security Practices 187
Jay Shah and Garima Bajpai

10.1 Introduction 187

10.2 State of DevSecOps and Shift-Left Security 188

10.3 Adoption of DevSecOps 192

10.4 Implementing DevSecOps with Frameworks 192

10.5 What Is a Maturity Model? 193

10.6 Best Practices 194

10.7 Challenges and Future Outlook 196

10.8 Conclusion 197

References 197

11 Autonomous Cloud Infrastructure and Self-Healing Systems 199
Vinod Goje and Manoj Ravi

11.1 Introduction 199

11.2 Background and Context 203

11.3 Self-Healing Mechanisms and Implementation Strategies 210

11.4 Case Study: Netflix’s Implementation 214

11.5 Conclusion 215

References 216

12 Serverless Computing and Event-Driven Cloud Architectures 219
Jyoti Shah and Milankumar Rana

12.1 Introduction 219

12.2 Background and Related Work 220

12.3 Challenges 224

12.4 Proposed Framework 226

12.5 Architecture Overview 229

12.6 Implementation Considerations 232

12.7 Case Study 235

12.8 Challenges and Limitations 239

12.9 Future Work 241

12.10 Conclusions 243

References 245

13 Zero Trust Architecture in Cloud Environments 247
Aparna Achanta and Vinod Goje

13.1 Introduction 247

13.2 Zero Trust in the Cloud 249

13.3 Threat Actors in the Cloud 250

13.4 How the Cloud Embraces Zero Trust 250

13.5 Zero Trust Governance for IAM 252

13.6 Micro-Segmentation for Network Control 253

13.7 Zero Trust Network Access (ZTNA) 254

13.8 How Micro-Segmentation Prevents Lateral Movement 255

13.9 The Role of Unified Endpoint Management (UEM) 255

13.10 Continuous Authentication and Session Monitoring 256

13.11 SaaS-Specific Zero Trust Strategies 257

13.12 PaaS Security Controls 257

13.13 Visibility, Logging, and Threat Detection 258

13.14 Centralized Log Aggregation Architecture 258

13.15 SIEM/SOAR Integration for Zero Trust 259

13.16 Cloud-Native Threat Detection Services 260

13.17 Data-Centric Security 260

13.18 Conclusions 261

13.19 Future Work 262

References 262

14 Predictive Risk Intelligence and Governance Framework in Multicloud Environments 265
Priya Ranjani Mohan and Yugandhar Suthari

14.1 Introduction: From Reactive to Predictive 265

14.2 Core Challenges in Multicloud Governance 266

14.3 PRIG Framework Architecture and Components 268

14.4 Building Your Organization’s PRIG Infrastructure 270

14.5 Out-of-the-Box Tools for Predictive Decisions 271

14.6 Building Custom ML Models and Risk Prediction 273

14.7 Making Predictive Decisions and Taking Action 274

14.8 The Glue That Holds It Together 276

14.9 Considerations for Potential Issues When Implementing PRIG Framework 277

14.10 Real-World Case Studies 277

14.11 Outlook and Recommendations 279

14.12 Conclusion 281

References 281

15 Security and Compliance for Cloud-Native Applications 283
Vaishnavi Gudur and Ashish Kattamuri

15.1 Introduction 283

15.2 Background/Context 284

15.3 Core Content 287

15.4 Challenges 292

15.5 Future Outlook 294

15.6 Conclusion 296

References 297

16 Data Privacy, Sovereignty, and Cloud Localization Laws 299
Dhivya Nagasubramanian and Kiran Kumar Reddy Puram

16.1 Introduction: When the Cloud Hits the Ground 299

16.2 Global Trends in Data Privacy and Localization 300

16.3 Regional Regulatory Landscape 301

16.4 Industry Case Studies: Impact of Sovereignty Requirements 306

16.5 Architecting for Compliance: Technical Approaches to Sovereignty 309

16.6 Evolution and Future Outlook 313

16.7 Conclusion 315

References 316

17 Sustainable Cloud Computing and Carbon-Aware Architectures 319
Vamsi Alla and Ashish Kattamuri

17.1 Introduction 319

17.2 Evolution of Cloud Computing: The Foundation for Sustainability 321

17.3 Principles of Sustainable Cloud Computing 322

17.4 Core Frameworks for Sustainable Cloud Computing 325

17.5 Use Cases and Industry Relevance 332

17.6 Difficulties and Future Vision 334

17.7 Sustainable Cloud Computing’s Prospect 337

17.8 Conclusion 338

References 339

18 Quantum Computing in the Cloud: Opportunities and Challenges 341
Ashwin Prakash Nalwade and Khan Shariya Hasan Upoma

18.1 Introduction 341

18.2 Background 342

18.3 Quantum Computing in the Cloud 345

18.4 Quantum Computing—Key Strengths 350

18.5 Challenges and the Future 351

18.6 Conclusion 353

References 353

19 Cloud Platforms for Scientific Research and HPC Workloads 355
Anant Kumar

19.1 Introduction 355

19.2 Background and Context 356

19.3 Core Content: Frameworks, Use Cases, and Technical Depth 358

19.4 Container Orchestration for Scientific Workloads 360

19.5 Workflow Management Systems 361

19.6 Challenges and Future Outlook 365

19.7 Emerging Trends 366

19.8 Conclusion 369

References 370

20 Ethics, Bias, and Responsible AI in Cloud Environments 373
Sreekanth B. Narayan and Karan Alang

20.1 Introduction 373

20.2 Key Ethical Principles 375

20.3 Bias in AI 377

20.4 Responsible AI Practices 379

20.5 Implementation Considerations and Good Practices 382

20.6 Cloud Environments and AI 383

20.7 Case Studies 385

20.8 Future Directions 388

References 390

21 Conclusion—The Future Cloud: Ethical, Autonomous, and Planet-Aware 393
Pronnoy Goswami and Aditya Gupta

21.1 Introduction 393

21.2 The Enduring Arc of Abstraction and Its Unseen Costs 394

21.3 From Monitoring Silos to Multicloud Operational Resilience 395

21.4 The Challenge of Governance-Aware Autonomy 397

21.5 From Optimization to Obligation: The Rise of Ethical and Planet-Aware Architectures 398

21.6 Redefining the Economics: Financial Operations, Sovereignty, and Zero Trust 400

21.7 Synthesis and a Forward-Looking Research Agenda 402

21.8 Conclusion and Future Scope 403

References 403

Glossary 405

Index 407


Bishwajeet Pandey, PhD, is a Professor in the Department of Computer Application at GL Bajaj Institute of Technology and Management, Greater Noida, Uttar Pradesh, India. He is also a Senior Member of the IEEE and a Life Member of the Computer Society of India (CSI), India.

Advait Patel is a Senior Site Reliability Engineer at Broadcom Inc., United States. He is a Conference Chair for the IEEE Chicago section.



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