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OverviewArtificial intelligence and cloud computing are redefining modern enterprises-but they also redefine the threat landscape. As AI models process sensitive data and power autonomous decisions, the need for AI security, cloud compliance, and cyber resilience has never been greater. Google Cloud Platform (GCP) sits at the heart of this transformation, offering scalable infrastructure for machine learning, data science, and enterprise automation. This book explores how to build secure AI systems in GCP-where innovation meets protection, and intelligence operates safely within zero-trust architectures. Written with deep professional insight into cloud architecture, cybersecurity engineering, and AI governance, this book delivers authoritative, real-world knowledge grounded in industry best practices. Drawing on Google Cloud's native tools, NIST AI Risk frameworks, and modern MLOps security strategies, it combines clarity with credibility-making complex topics accessible without oversimplification. Security for AI Systems in GCP is a comprehensive guide that bridges artificial intelligence, cloud security, and responsible AI governance. Readers will master the principles of secure data pipelines, threat detection, model protection, and regulatory compliance while exploring cutting-edge trends such as confidential computing, federated learning, and AI risk assessment frameworks. From designing reference security blueprints to implementing security-first MLOps pipelines, this book delivers the knowledge required to build, scale, and defend AI systems confidently in the cloud. What's Inside Secure Architecture Blueprints: Learn how to design and deploy AI workloads using GCP's security stack-VPC Service Controls, IAM, Cloud Armor, and BeyondCorp Enterprise. AI Risk & Compliance: Explore GDPR, the EU AI Act, and NIST frameworks for managing bias, privacy, and fairness. Governance & Ethics: Implement AI governance models, ethical oversight committees, and responsible MLOps strategies. Threat Detection & Response: Use Chronicle SIEM, Vertex AI, and Autonomic Security Operations for intelligent defense. Scaling Secure AI: Discover best practices for federated learning, multi-region compliance, and automated policy enforcement. Future-Proofing: Prepare for quantum-safe encryption, AI-powered defense automation, and the next generation of AI threats. Ideal for cloud architects, data scientists, AI engineers, DevSecOps professionals, and technology leaders, this book empowers anyone working at the intersection of AI and cybersecurity. Students and early-career professionals will gain the confidence to navigate GCP securely, while seasoned experts will discover frameworks for scaling compliance and governance in enterprise AI environments. Whether you're advancing your AI security career or leading a digital transformation initiative, this guide meets you where you are-and takes you further. AI is evolving faster than regulation. Cyberattacks targeting machine learning models, supply chains, and cloud APIs are escalating across industries. Waiting to secure your AI systems means falling behind both technologically and defensively. The window to establish trustworthy, compliant, and resilient AI infrastructure is now. Learning to embed security within GCP's AI ecosystem ensures not just survival in the digital age-but leadership in it. Full Product DetailsAuthor: Michael S WilsonPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 17.80cm , Height: 1.70cm , Length: 25.40cm Weight: 0.553kg ISBN: 9798270312374Pages: 318 Publication Date: 17 October 2025 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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