Identifying and Mitigating the Security Risks of Generative AI

Identifying and Mitigating the Security Risks of Generative AI
Title Identifying and Mitigating the Security Risks of Generative AI PDF eBook
Author Clark Barrett
Publisher
Pages 0
Release 2024
Genre Computers
ISBN 9781638283126

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This monograph reports the findings of a workshop held at Google (co-organized by Stanford University and the University of Wisconsin-Madison) on the dual-use dilemma posed by GenAI.

Utilizing Generative AI for Cyber Defense Strategies

Utilizing Generative AI for Cyber Defense Strategies
Title Utilizing Generative AI for Cyber Defense Strategies PDF eBook
Author Jhanjhi, Noor Zaman
Publisher IGI Global
Pages 546
Release 2024-09-12
Genre Computers
ISBN

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As cyber threats become increasingly sophisticated, the need for innovative defense strategies becomes urgent. Generative artificial intelligence (AI) offers a revolutionary approach to enhance cybersecurity. By utilizing advanced algorithms, data analysis, and machine learning, generative AI can simulate complex attack scenarios, identify vulnerabilities, and develop proactive defense mechanisms while adapting to modern-day cyber-attacks. AI strengthens current organizational security while offering quick, effective responses to emerging threats. Decisive strategies are needed to integrate generative AI into businesses defense strategies and protect organizations from attacks, secure digital data, and ensure safe business processes. Utilizing Generative AI for Cyber Defense Strategies explores the utilization of generative AI tools in organizational cyber security and defense. Strategies for effective threat detection and mitigation are presented, with an emphasis on deep learning, artificial intelligence, and Internet of Things (IoT) technology. This book covers topics such as cyber security, threat intelligence, and behavior analysis, and is a useful resource for computer engineers, security professionals, business owners, government officials, data analysts, academicians, scientists, and researchers.

The Generative AI Risk Management Handbook

The Generative AI Risk Management Handbook
Title The Generative AI Risk Management Handbook PDF eBook
Author Anand Vemula
Publisher Independently Published
Pages 0
Release 2024-06-02
Genre Computers
ISBN

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"The Generative AI Risk Management Handbook" is a comprehensive guide for navigating the complex terrain of generative artificial intelligence (AI) and mitigating associated risks. Generative AI, which generates new content resembling existing data, holds immense potential across various industries but also poses ethical, security, and operational challenges. This handbook serves as a practical resource for individuals and organizations seeking to harness the power of generative AI responsibly. Through clear explanations, case studies, and actionable strategies, readers are equipped with the knowledge and tools needed to address key issues in generative AI risk management. The handbook begins by providing a foundational understanding of generative AI, exploring its applications, including text generation, image synthesis, and data augmentation. It then delves into the potential risks associated with generative AI, such as bias and fairness, data privacy concerns, and security vulnerabilities. Central to the handbook is a detailed examination of risk management strategies tailored specifically to generative AI. Readers learn how to identify biases in AI-generated content, implement privacy-preserving techniques, fortify AI systems against security threats, and ensure the reliability and robustness of generative models. Moreover, the handbook offers insights into regulatory compliance and ethical considerations, guiding readers through the evolving landscape of AI governance. Through collaborative approaches to risk management and engagement with stakeholders and policymakers, readers are empowered to navigate the ethical and legal complexities of working with generative AI. Whether you are a data scientist, AI researcher, business leader, or policymaker, "The Generative AI Risk Management Handbook" provides invaluable guidance for fostering responsible AI innovation. With its practical insights and actionable strategies, this handbook equips readers with the tools needed to navigate the challenges and opportunities of generative AI while upholding ethical standards and ensuring security and reliability.

Artificial Intelligence (AI) Governance and Cyber-Security

Artificial Intelligence (AI) Governance and Cyber-Security
Title Artificial Intelligence (AI) Governance and Cyber-Security PDF eBook
Author Taimur Ijlal
Publisher
Pages 0
Release 2022-10-07
Genre
ISBN 9781471034442

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Artificial Intelligence (AI) is causing massive changes in our lives both at the individual and societal level with the global A.I. market expected to reach around 126 billion U.S. dollars by 2025. As more and more decision-making moves to AI systems, unique risks are being introduced. However, this topic can be quite challenging for newcomers who want to understand the governance and cyber-security risks that AI introduces. Artificial Intelligence (AI) Governance and Cyber-Security is for those professionals who want to know: What are the unique risks which AI systems create? How do I create a governance framework for identifying and mitigating AI risks? What are the cyber-security risks of AI systems? How do I create a cyber-security baseline for AI systems? What skills do I need to have to do a security review of AI systems? This book assumes ZERO prior knowledge of AI or machine learning and explains in an easy-to-understand way, how to govern and secure AI. You do not need to know advanced programming or statistics to learn the concepts in this book and can easily apply them in any environment. Lastly, AI is a fast-evolving technology so this book will get updated at least annually to ensure that it is in line with the latest trends and risks in the AI world.

Generative AI for Data Privacy: Unlocking Innovation, Protecting Rights

Generative AI for Data Privacy: Unlocking Innovation, Protecting Rights
Title Generative AI for Data Privacy: Unlocking Innovation, Protecting Rights PDF eBook
Author Anand Vemula
Publisher Anand Vemula
Pages 25
Release
Genre Computers
ISBN

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The exciting world of generative AI offers immense potential for innovation, but its reliance on vast amounts of data raises critical data privacy concerns. This book explores this dynamic landscape, equipping you to understand both the power and the potential pitfalls of generative AI. Part 1 dives into the core concepts of generative models, from GANs and VAEs to their diverse capabilities. It then explores the data privacy landscape, highlighting the importance of regulations like GDPR and CCPA in the age of AI. You'll gain insights into the specific challenges generative AI poses to data privacy, such as the risk of data leakage through seemingly anonymized training data. Part 2 delves deeper into these privacy risks. You'll learn how generative models can unintentionally reveal information from their training data and discover techniques to identify and mitigate these leakage risks. The book also explores the potential of synthetic data – artificially generated data that resembles real data but protects privacy. You'll understand the advantages and limitations of synthetic data and explore methods for ensuring privacy-preserving generation techniques. Part 3 focuses on solutions and building trust. It examines cutting-edge privacy-enhancing techniques for generative AI, such as differential privacy and federated learning. These techniques allow training on data while keeping it encrypted or distributed, safeguarding individual privacy. The book also emphasizes the importance of user control and transparency in generative AI development. You'll explore ways to empower users with control over their data and advocate for clear explanations of how generative models function. Part 4 explores the evolving legal and ethical landscape surrounding generative AI. You'll discover potential regulatory approaches for governing its use, emphasizing the need to balance innovation with comprehensive data privacy protection. Finally, the book looks towards the future, exploring the societal and ethical considerations of generative AI. You'll gain insights into potential biases in models and the impact of AI-generated content on creativity. The book concludes with recommendations for responsible development and use of generative AI, ensuring it thrives as a force for good that respects individual privacy. This comprehensive book empowers you to navigate the world of generative AI responsibly. Whether you're a developer, a data privacy professional, or simply curious about this transformative technology, "Generative AI for Data Privacy" provides the knowledge and tools you need to understand its potential and navigate its complexities.

Generative AI Security

Generative AI Security
Title Generative AI Security PDF eBook
Author Ken Huang
Publisher Springer Nature
Pages 367
Release
Genre
ISBN 3031542525

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Generative AI Governance

Generative AI Governance
Title Generative AI Governance PDF eBook
Author Anand Vemula
Publisher Independently Published
Pages 0
Release 2024-07-22
Genre Computers
ISBN

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Generative AI Governance: A Comprehensive Guide is a detailed exploration of the principles, frameworks, and practices essential for the ethical and responsible management of generative AI technologies. The book is structured into six parts, each addressing critical aspects of AI governance, from foundational concepts to real-world case studies. Part I: Understanding Generative AI provides an introduction to generative AI, covering its historical evolution, key technologies, and diverse applications. It also examines the economic and social impacts of generative AI, along with future trends and opportunities in this rapidly advancing field. Part II: Governance Frameworks delves into the principles of AI governance, including ethical foundations, transparency, accountability, and fairness. It reviews the global regulatory landscape, discussing international, regional, and national regulations, compliance requirements, and industry standards. The section also presents best practices in AI development and deployment, supported by case studies of effective governance. Part III: Risk Management focuses on identifying and assessing the various risks associated with generative AI. It outlines risk assessment frameworks, tools, and techniques for risk identification and mitigation. Additionally, it covers strategies for implementing risk controls, monitoring risks, and handling incidents through well-developed response plans. Part IV: Organizational Governance examines internal governance structures, defining roles and responsibilities, governance committees, and organizational policies. It highlights data governance, emphasizing data privacy, protection, quality, and lifecycle management. The section also discusses the establishment and functioning of ethical AI committees, providing case studies for illustration. Part V: Implementation and Monitoring offers a roadmap for implementing AI governance, integrating it into the AI lifecycle, and managing change. It describes continuous monitoring techniques, key performance indicators (KPIs), and auditing and reporting processes. This part also looks ahead to future directions in AI governance, exploring emerging trends, innovations, and preparation for future challenges. Part VI: Case Studies and Real-World Examples presents practical examples of successful AI governance models, lessons learned from failures, and sector-specific governance practices. These case studies provide valuable insights and concrete examples to guide organizations in developing their own governance frameworks. Generative AI Governance: A Comprehensive Guide equips readers with the knowledge and tools needed to navigate the complex landscape of AI governance, ensuring that generative AI technologies are developed and deployed responsibly and ethically.