oaxino Posted October 15, 2024 Report Share Posted October 15, 2024 Principles Of Governance In Generative AIPublished 10/2024MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHzLanguage: English | Size: 2.94 GB | Duration: 16h 57mNavigating Risks, Compliance, and Ethics for Responsible Generative AIWhat you'll learnThe Fundamentals of Generative AI (GenAI): Understand the core concepts and transformative potential of GenAI technology.The Importance of Governance in AI: Explore why governance frameworks are essential for managing AI innovations responsibly.Risk Identification and Management: Learn to identify, assess, and mitigate risks associated with deploying GenAI systems.Third-Party Risk Management: Gain insight into evaluating and monitoring external partnerships to reduce third-party risks.Vendor Compliance Strategies: Develop skills to ensure that vendors align with governance and security policies.Data Leakage Prevention: Understand the risks of data leakage and explore methods to protect sensitive information in AI workflows.Data Governance Frameworks: Learn how to define data ownership, stewardship, and retention policies for AI systems.Regulatory Compliance in AI: Explore key regulations affecting GenAI, including strategies for managing compliance across jurisdictions.Access Control Implementation: Gain practical insights into role-based access controls to secure GenAI applications.User Awareness and Training Programs: Discover effective strategies for developing user training and awareness initiatives.Monitoring User Behavior: Learn how to monitor GenAI system usage to detect anomalies and prevent misuse.Identity Governance for AI Systems: Understand how to manage user identities and authentication securely in AI platforms.Incident Response Planning: Develop strategies to respond effectively to AI-related incidents and conduct post-incident analysis.Ethical Considerations in GenAI: Explore the ethical challenges in AI governance, focusing on transparency, fairness, and bias mitigation.Governance of Approved Applications: Learn how to evaluate and update approved GenAI tools to align with evolving policies.Future Trends in GenAI Governance: Gain insights into emerging technologies, AI regulation trends, and the future of AI governance practices.RequirementsNo Prerequisites.DescriptionThis course offers a comprehensive exploration of governance frameworks, regulatory compliance, and risk management tailored to the emerging field of Generative AI (GenAI). Designed for professionals seeking a deeper understanding of the theoretical foundations that underpin effective GenAI governance, this course emphasizes the complex interplay between innovation, ethics, and regulatory oversight. Students will engage with essential concepts through a structured curriculum that delves into the challenges and opportunities of managing GenAI systems, equipping them to anticipate risks and align AI deployments with evolving governance standards.The course begins with an introduction to Generative AI, outlining its transformative potential and the importance of governance to ensure responsible use. Participants will examine key risks associated with GenAI, gaining insight into the roles of various stakeholders in governance processes. This early focus establishes a theoretical framework that guides students through the complexities of managing third-party risks, including the development of vendor compliance strategies and continuous monitoring of external partnerships. Throughout these sections, the curriculum emphasizes how thoughtful governance not only mitigates risks but also fosters innovation in AI applications.Participants will explore the intricacies of regulatory compliance, focusing on the challenges posed by international legal frameworks. This segment highlights strategies for managing compliance across multiple jurisdictions and the importance of thorough documentation for regulatory audits. The course also covers the enforcement of access policies within GenAI applications, offering insight into role-based access and data governance strategies that secure AI environments against unauthorized use. These discussions underscore the need for organizations to balance security and efficiency while maintaining ethical practices.Data governance is a recurring theme, with modules that explore the risks of data leakage and strategies for protecting sensitive information in GenAI workflows. Students will learn how to manage data rights and prevent exfiltration, fostering a robust understanding of the ethical implications of data use. This section also introduces students to identity governance, illustrating how secure authentication practices and identity lifecycle management can enhance the security and transparency of AI systems. Participants will be encouraged to think critically about the intersection between privacy, security, and user convenience.Risk modeling and management play a central role in the curriculum, equipping students with the tools to identify, quantify, and mitigate risks within GenAI operations. The course emphasizes the importance of proactive risk management, presenting best practices for continuously monitoring and adapting risk models to align with organizational goals and ethical standards. This focus on continuous improvement prepares students to navigate the dynamic landscape of AI governance confidently.Participants will also develop skills in user training and awareness programs, learning how to craft effective training initiatives that empower users to engage with GenAI responsibly. These modules stress the importance of monitoring user behavior and maintaining awareness of best practices in AI governance, further strengthening the theoretical foundation of the course. Through this emphasis on training, students will gain practical insights into how organizations can foster a culture of responsible AI use and compliance.As the course concludes, students will explore future trends in GenAI governance, including the integration of governance frameworks within broader corporate strategies. The curriculum encourages participants to consider how automation, blockchain, and emerging technologies can support AI governance efforts. This forward-looking approach ensures that students leave with a comprehensive understanding of how governance practices must evolve alongside technological advancements.This course offers a detailed, theory-based approach to GenAI governance, emphasizing the importance of thoughtful risk management, compliance, and ethical considerations. By engaging with these critical aspects of governance, participants will be well-prepared to contribute to the development of responsible AI systems, ensuring that innovation in GenAI aligns with ethical principles and organizational goals.OverviewSection 1: Course Resources and DownloadsLecture 1 Course Resources and DownloadsSection 2: Introduction to Generative AI (GenAI) GovernanceLecture 2 Section IntroductionLecture 3 What is Generative AI?Lecture 4 Case Study: Bridging Creativity and Ethics in Digital Art and MusicLecture 5 The Importance of Governance in GenAILecture 6 Case Study: Navigating GenAI GovernanceLecture 7 Overview of GenAI RisksLecture 8 Case Study: Navigating Ethical and Practical Challenges in Generative AILecture 9 Key Stakeholders in GenAI GovernanceLecture 10 Case Study: Navigating GenAI in HealthcareLecture 11 Governance Frameworks for GenAILecture 12 Case Study: Building Ethical AILecture 13 Section SummarySection 3: Understanding Third-Party Risk Management in GenAILecture 14 Section IntroductionLecture 15 Defining Third-Party RiskLecture 16 Case Study: Navigating Third-Party RisksLecture 17 Identifying and Assessing Third-Party RisksLecture 18 Case Study: Managing Third-Party Risks in Generative AILecture 19 Mitigating Third-Party Risks in GenAI ApplicationsLecture 20 Case Study: Enhancing Third-Party Risk Management in AILecture 21 Vendor Compliance in GenAI SystemsLecture 22 Case Study: Mastering Vendor ComplianceLecture 23 Continuous Monitoring of Third-Party RelationshipsLecture 24 Case Study: Enhancing GenAI InnovationLecture 25 Section SummarySection 4: Data Leakage Protection in GenAI SystemsLecture 26 Section IntroductionLecture 27 Understanding Data Leakage in GenAILecture 28 Case Study: Addressing Data Leakage in Generative AILecture 29 Data Leakage Risks in Generative AI ModelsLecture 30 Case Study: Navigating Data Privacy Challenges in Generative AILecture 31 Protecting Sensitive Data in GenAI WorkflowsLecture 32 Case Study: Balancing Innovation and SecurityLecture 33 Data Rights Management in GenAILecture 34 Case Study: Balancing GenAI Innovation and Data RightsLecture 35 Preventing Data Exfiltration in GenAILecture 36 Case Study: Strategies for Protecting Sensitive Data in GenAILecture 37 Section SummarySection 5: Regulatory Compliance in Generative AILecture 38 Section IntroductionLecture 39 Overview of Regulatory Compliance for AI SystemsLecture 40 Case Study: Navigating AI GovernanceLecture 41 Key Regulations Affecting GenAI GovernanceLecture 42 Case Study: Navigating GenAI InnovationLecture 43 Compliance Strategies for GenAI ApplicationsLecture 44 Case Study: Navigating Compliance Challenges in GenAILecture 45 Managing Compliance Across JurisdictionsLecture 46 Case Study: Navigating AI Innovation and ComplianceLecture 47 Reporting and Documentation for Regulatory AuditsLecture 48 Case Study: Navigating ComplianceLecture 49 Section SummarySection 6: Enforcing Access Policies for GenAI ApplicationsLecture 50 Section IntroductionLecture 51 Access Control Fundamentals for GenAILecture 52 Case Study: Adaptive Access Control Strategies for GenAILecture 53 Implementing Role-Based Access in GenAILecture 54 Case Study: Enhancing SecurityLecture 55 Restricting Unauthorized Access to GenAI ToolsLecture 56 Case Study: Enhancing GenAI SecurityLecture 57 Enforcing Data Access PoliciesLecture 58 Case Study: Navigating Data Governance in GenAILecture 59 Access Review and Revocation ProcessesLecture 60 Case Study: Optimizing Access Management for GenAI SecurityLecture 61 Section SummarySection 7: User Awareness and Training for GenAILecture 62 Section IntroductionLecture 63 The Role of User Training in GenAI GovernanceLecture 64 Case Study: Navigating Ethical Challenges in GenAILecture 65 Developing Effective GenAI User Awareness ProgramsLecture 66 Case Study: Empowering Ethical AI UseLecture 67 Common User Missteps in GenAI UsageLecture 68 Case Study: Strategic GenAI IntegrationLecture 69 Best Practices for Training on GenAI Use PoliciesLecture 70 Case Study: Navigating Ethical AI Implementation and Training ChallengesLecture 71 Monitoring and Updating User Training ProgramsLecture 72 Case Study: Enhancing GenAI IntegrationLecture 73 Section SummarySection 8: Approved and Disapproved GenAI ApplicationsLecture 74 Section IntroductionLecture 75 Identifying Safe GenAI ToolsLecture 76 Case Study: Navigating Bias and EthicsLecture 77 Evaluating GenAI Applications for Governance ComplianceLecture 78 Case Study: Navigating AI GovernanceLecture 79 Risks of Unapproved GenAI ApplicationsLecture 80 Case Study: Navigating Ethical AILecture 81 Approval Processes for GenAI ToolsLecture 82 Case Study: TechNova's Journey to Responsible GenAI DeploymentLecture 83 Updating and Communicating Approved ApplicationsLecture 84 Case Study: TechNova's Journey in Responsible Innovation and GovernanceLecture 85 Section SummarySection 9: Identity Governance in GenAI SystemsLecture 86 Section IntroductionLecture 87 Understanding Identity Governance for AILecture 88 Case Study: Balancing Privacy, Compliance, and Ethics in Identity ManagementLecture 89 Managing User Identities in GenAI PlatformsLecture 90 Case Study: Navigating Identity Management Challenges in GenAILecture 91 Ensuring Secure Authentication in GenAI ApplicationsLecture 92 Case Study: Balancing Authentication, User Convenience, and PrivacyLecture 93 Identity Lifecycle Management in GenAILecture 94 Case Study: Navigating Identity Lifecycle Management in Generative AI SystemsLecture 95 Addressing Identity Risks in GenAILecture 96 Case Study: Identity Governance Challenges in GenAILecture 97 Section SummarySection 10: Risk Modeling and Management for GenAILecture 98 Section IntroductionLecture 99 Introduction to Risk Modeling in GenAILecture 100 Case Study: Navigating Risks in Generative AILecture 101 Identifying Key Risks in GenAI OperationsLecture 102 Case Study: Balancing Innovation, Bias Mitigation, and Workforce StabilityLecture 103 Quantifying and Prioritizing GenAI RisksLecture 104 Case Study: Balancing Innovation with Ethical Risk Management at TechNovaLecture 105 Strategies for Mitigating GenAI RisksLecture 106 Case Study: Navigating Ethical and Operational Challenges in GenAI DeploymentLecture 107 Monitoring and Adapting Risk ModelsLecture 108 Case Study: TechNova's Holistic Approach to Risk Management and InnovationLecture 109 Section SummarySection 11: Data Governance for Generative AI SystemsLecture 110 Section IntroductionLecture 111 The Importance of Data Governance in GenAILecture 112 Case Study: Navigating Data Governance and Ethics in GenAILecture 113 Defining Data Ownership and Stewardship in GenAILecture 114 Case Study: Navigating Data Governance Challenges in GenAILecture 115 Data Integrity and Accuracy in GenAI SystemsLecture 116 Case Study: TechNova's Journey to Ethical and Reliable AI Data ManagementLecture 117 Policies for Data Retention and Deletion in GenAILecture 118 Case Study: Balancing Compliance and InnovationLecture 119 Auditing Data Governance Practices in GenAILecture 120 Case Study: Enhancing Trust through Comprehensive Data Governance in AILecture 121 Section SummarySection 12: User Behavior Monitoring in GenAI SystemsLecture 122 Section IntroductionLecture 123 Monitoring User Activity in GenAI PlatformsLecture 124 Case Study: MedSys's GenAI Integration in Healthcare DiagnosticsLecture 125 Identifying Anomalous Behavior in GenAI UseLecture 126 Case Study: Enhancing Anomaly Detection in GenAI SystemsLecture 127 Tools for Tracking GenAI User ActivityLecture 128 Case Study: Balancing Ethical AI and PrivacyLecture 129 Privacy Considerations in User MonitoringLecture 130 Case Study: Balancing Innovation and PrivacyLecture 131 Responding to Suspicious Behavior in GenAILecture 132 Case Study: Balancing Trust, Privacy, and Collaborative Defense StrategiesLecture 133 Section SummarySection 13: Acceptable Use Policies for GenAI ApplicationsLecture 134 Section IntroductionLecture 135 Defining Acceptable Use for GenAILecture 136 Case Study: Crafting Responsible GenAI UseLecture 137 Crafting Comprehensive Use Policies for GenAILecture 138 Case Study: Developing Responsible GenAI PoliciesLecture 139 Educating Users on Acceptable Use PoliciesLecture 140 Case Study: Crafting a Balanced AUPLecture 141 Enforcing Acceptable Use GuidelinesLecture 142 Case Study: Ethical Governance Strategies for GenAILecture 143 Revising Acceptable Use PoliciesLecture 144 Case Study: Navigating AI EthicsLecture 145 Section SummarySection 14: Incident Response and Management for GenAI SystemsLecture 146 Section IntroductionLecture 147 Defining GenAI IncidentsLecture 148 Case Study: Navigating GenAI ChallengesLecture 149 Incident Response Planning for GenAI ApplicationsLecture 150 Case Study: Enhancing GenAI SafetyLecture 151 Key Steps in Managing GenAI IncidentsLecture 152 Case Study: TechNova's Strategic Response to GenAI IncidentLecture 153 Post-Incident Analysis and ReportingLecture 154 Case Study: Enhancing AI GovernanceLecture 155 Lessons Learned from GenAI IncidentsLecture 156 Case Study: Ensuring AI AccountabilityLecture 157 Section SummarySection 15: Ethical Considerations in GenAI GovernanceLecture 158 Section IntroductionLecture 159 Ethical Challenges in Generative AILecture 160 Case Study: Navigating Ethical Challenges of GenAI in NewsroomsLecture 161 Ensuring Transparency and Fairness in GenAILecture 162 Case Study: Balancing Innovation and EthicsLecture 163 Bias Mitigation in GenAI OutputsLecture 164 Case Study: Tackling Bias in Generative AILecture 165 Responsible AI Practices and GenAI GovernanceLecture 166 Case Study: TechNova's Journey Towards Responsible Innovation and GovernanceLecture 167 Ethical Audits for GenAI SystemsLecture 168 Case Study: Navigating Ethical Challenges in Generative AILecture 169 Section SummarySection 16: Future Trends and Innovations in GenAI GovernanceLecture 170 Section IntroductionLecture 171 Emerging Technologies in GenAI GovernanceLecture 172 Case Study: Blockchain and Ethical AILecture 173 AI Regulation and Policy TrendsLecture 174 Case Study: Global AI RegulationLecture 175 Integrating AI Governance into Broader Corporate GovernanceLecture 176 Case Study: Integrating AI GovernanceLecture 177 Automation and AI Governance ToolsLecture 178 Case Study: Navigating AI Governance: Transparency, Fairness, and PrivacyLecture 179 The Future of GenAI Governance PracticesLecture 180 Case Study: InnovateAI: Crafting a Global Framework for Responsible GenAILecture 181 Section SummaryBusiness Leaders and Executives seeking to align AI innovation with governance frameworks and ethical practices.,AI and Data Governance Professionals responsible for developing policies and managing risks associated with Generative AI systems.,Compliance Officers and Legal Advisors aiming to understand the regulatory landscape and ensure compliance with AI laws across jurisdictions.,IT Managers and System Administrators involved in the implementation, monitoring, and security of AI platforms.,Risk Management Professionals looking to enhance their skills in assessing and mitigating risks specific to AI technologies.,Educators and Researchers in AI Ethics and Policy interested in the latest governance strategies and frameworks for responsible AI use.,Tech Enthusiasts and Consultants who want to stay ahead of trends in AI governance to better advise businesses and organizations.ScreenshotsSay "Thank 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