[align=center]https://i124.fastpic.org/big/2024/1109/bd/7e31bff806dd16a1a4bd32605712b5bd.jpg
Certified AI Ethics & Governance Professional (CAEGP)
Published 11/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 10.27 GB | Duration: 18h 14m[/center]

Build a Strong Foundation in Ethical AI Principles and Governance Strategies for Responsible Innovation

What you'll learn
Key concepts and terminology of AI ethics and governance.
Importance and principles of responsible AI practices.
Basics of AI and machine learning in a business context.
Ethical challenges associated with AI development.
Fairness and non-discrimination in AI systems.
Accountability and transparency in AI model design.
Privacy protection and data security in AI applications.
Techniques to identify and reduce bias in AI systems.
Strategies for risk assessment and mitigation in AI.
Building effective AI governance structures in organizations.
Understanding global AI regulations and compliance.
Aligning AI practices with ISO and IEEE standards.
Implementing privacy-by-design principles in AI.
Developing ethical AI policies and governance frameworks.
Responsible AI decision-making for customer interactions.
Preparing for future ethical challenges in AI innovation.

Requirements
No Prerequisites.

Description
In an era where technology is advancing at an unprecedented rate, the ethical considerations surrounding artificial intelligence (AI) have become a vital concern. This course aims to equip students with a comprehensive understanding of the theoretical foundations necessary to navigate the complex landscape of AI ethics and governance. The course begins with an introduction to the essential concepts and terminology, ensuring that participants have a solid grounding in what ethical AI entails. Early lessons establish the significance of responsible AI practices and underscore why adherence to ethical standards is critical for developers, businesses, and policymakers.Students will gain insights into the core principles underlying AI and machine learning, providing the context needed to appreciate how these technologies intersect with society at large. Discussions include the fundamental workings of key AI technologies and their broad applications across industries, emphasizing the societal impact of these systems. The potential risks associated with AI, such as bias, data privacy issues, and transparency challenges, are highlighted to illustrate the importance of proactive ethical frameworks. By exploring these foundational topics, students can better understand the intricate balance between innovation and ethical responsibility.The course delves into the fundamental ethical principles that must guide AI development, focusing on fairness, accountability, transparency, and privacy. Lessons are designed to present theoretical approaches to avoiding bias in AI systems and fostering equitable outcomes. The emphasis on explainability ensures that students recognize the significance of creating models that can be interpreted and trusted by a range of stakeholders, from developers to end-users. Moreover, privacy and data protection in AI are examined, stressing the importance of embedding these values into the design phase of AI systems.An essential part of ethical AI development is risk management, which this course explores in depth. Lessons outline how to identify and assess potential AI risks, followed by strategies for managing and mitigating these challenges effectively. Students will learn about various risk management frameworks and the importance of planning for contingencies to address potential failures in AI systems. This theoretical approach prepares students to anticipate and counteract the ethical dilemmas that may arise during the AI lifecycle.Governance plays a crucial role in shaping responsible AI practices. The course introduces students to the structures and policies essential for effective AI governance. Lessons on developing and implementing governance frameworks guide students on how to align AI practices with organizational and regulatory requirements. Emphasizing the establishment of accountability mechanisms within governance structures helps highlight the responsibilities that organizations bear when deploying AI systems.A segment on the regulatory landscape provides students with an overview of global AI regulations, including GDPR and the California Consumer Privacy Act (CCPA), among others. These lessons emphasize the need for compliance with data privacy laws and other legislative measures, ensuring students are aware of how regulation shapes the ethical deployment of AI. By understanding the regulatory backdrop, students can appreciate the intersection of policy and practice in maintaining ethical standards.The course also covers standards and guidelines established by leading industry organizations, such as ISO and IEEE. These lessons are crafted to present emerging best practices and evolving standards that guide ethical AI integration. Understanding these standards allows students to grasp the nuances of aligning technology development with recognized ethical benchmarks.Data privacy is a pillar of ethical AI, and this course offers lessons on the importance of securing data throughout AI processes. Topics include strategies for data anonymization and minimization, as well as approaches to handling sensitive data. By integrating theoretical knowledge on how to ensure data security in AI systems, students will be well-equipped to propose solutions that prioritize user privacy without compromising innovation.The final sections of the course concentrate on the ethical application of AI in business. Lessons illustrate how to apply AI responsibly in decision-making and customer interaction, ensuring that technology acts as a force for good. Theoretical explorations of AI for social sustainability emphasize the broader societal responsibilities of leveraging AI, fostering a mindset that goes beyond profit to consider ethical impacts.Throughout the course, the challenges of bias and fairness in AI are explored, including techniques for identifying and reducing bias. Discussions on the legal implications of bias underscore the consequences of failing to implement fair AI systems. Additionally, students will learn about creating transparency and accountability in AI documentation, further solidifying their ability to champion responsible AI practices.This course provides an in-depth exploration of AI ethics and governance through a theoretical lens, focusing on fostering a robust understanding of responsible practices and governance strategies essential for the ethical development and deployment of AI systems.

Overview
Section 1: Course Resources and Downloads

Lecture 1 Course Resources and Downloads

Section 2: Introduction to AI Ethics and Governance

Lecture 2 Section Introduction

Lecture 3 Overview of AI Ethics and Governance

Lecture 4 Case Study: AI Nexus's Journey to Fair, Transparent, and Private Solutions

Lecture 5 Importance of Responsible AI Practices

Lecture 6 Case Study: Case Study: Navigating Ethical AI: InnovateAI's Journey

Lecture 7 Key Concepts and Terminology

Lecture 8 Case Study: TechNova's Journey in Fairness, Transparency, and Accountability

Lecture 9 Introduction to CAEGP Certification Domains

Lecture 10 Case Study: Navigating AI Ethics and Governance

Lecture 11 Ethical Challenges in AI

Lecture 12 Case Study: Ethical AI in Healthcare: Addressing Bias, Privacy, and Transparency

Lecture 13 Section Summary

Section 3: Foundations of AI and Machine Learning

Lecture 14 Section Introduction

Lecture 15 Basics of AI and Machine Learning

Lecture 16 Case Study: Integrating Innovation, Ethics, and Data-Driven Strategies

Lecture 17 Key AI Technologies and Applications

Lecture 18 Case Study: GreenTech's Path to Ethical and Innovative Energy Solutions

Lecture 19 Understanding AI in a Business Context

Lecture 20 Case Study: Integrating AI at TechNova: A Strategic Innovation Journey

Lecture 21 AI and Its Impact on Society

Lecture 22 Case Study: Balancing Innovation and Ethics

Lecture 23 Risks Associated with AI Development

Lecture 24 Case Study: Navigating AI Ethics and Risks

Lecture 25 Section Summary

Section 4: Ethical Principles in AI

Lecture 26 Section Introduction

Lecture 27 Fairness and Non-Discrimination

Lecture 28 Case Study: Ensuring Fairness and Mitigating Bias in AI for TechNova's

Lecture 29 Accountability in AI

Lecture 30 Case Study: Enhancing AI Accountability: InnovateAI's Journey

Lecture 31 Transparency and Explainability

Lecture 32 Case Study: Transparency, Explainability, and Ethical Compliance

Lecture 33 Privacy and Data Protection in AI

Lecture 34 Case Study: Balancing Innovation and Privacy

Lecture 35 Avoiding Bias in AI Systems

Lecture 36 Case Study: Mitigating AI Bias: A Case Study on Ethical Challenges

Lecture 37 Section Summary

Section 5: Responsible AI Design

Lecture 38 Section Introduction

Lecture 39 AI Design for Ethical Outcomes

Lecture 40 Case Study: AvaTech's Approach to Bias and Stakeholder Engagement

Lecture 41 Privacy by Design in AI

Lecture 42 Case Study: Integrating Privacy by Design

Lecture 43 Explainability and Interpretability in AI Models

Lecture 44 Case Study: Balancing Explainability and Accuracy

Lecture 45 Impact Assessment in AI Design

Lecture 46 Case Study: HealthTech's Journey to Responsible Innovation

Lecture 47 Human-Centered AI Design

Lecture 48 Case Study: Designing Ethical and Inclusive AI

Lecture 49 Section Summary

Section 6: Risk Management in AI

Lecture 50 Section Introduction

Lecture 51 Identifying and Assessing AI Risks

Lecture 52 Case Study: TechNova's Strategic Approach to Safe and Effective Implementation

Lecture 53 Risk Management Frameworks

Lecture 54 Case Study: TechNova's Strategy for Ethical Deployment

Lecture 55 Mitigating Risks in AI Systems

Lecture 56 Case Study: Strategies for Safe and Ethical Deployment in Healthcare

Lecture 57 Contingency Planning for AI Failures

Lecture 58 Case Study: Lessons from TechNova's Contingency Planning Case Study

Lecture 59 Monitoring AI Systems for Risk

Lecture 60 Case Study: DataSecure Inc.'s Approach to Risk and Governance

Lecture 61 Section Summary

Section 7: AI Governance Frameworks

Lecture 62 Section Introduction

Lecture 63 Introduction to Governance in AI

Lecture 64 Case Study: Navigating Ethical Challenges in Traffic Management

Lecture 65 Key Components of AI Governance

Lecture 66 Case Study: Ethical AI Solutions in Healthcare Management

Lecture 67 Developing an AI Governance Framework

Lecture 68 Case Study: Crafting an Ethical AI Governance Framework

Lecture 69 Implementing Governance Policies in AI

Lecture 70 Case Study: Balancing Ethics, Transparency, Accountability, and Privacy

Lecture 71 Establishing Governance Accountability

Lecture 72 Case Study: Ensuring Ethical AI: InnovoTech's Journey in Governance

Lecture 73 Section Summary

Section 8: Regulatory Landscape for AI

Lecture 74 Section Introduction

Lecture 75 Overview of AI Regulations Worldwide

Lecture 76 Case Study: Balancing Global AI Innovation and Compliance Across Borders

Lecture 77 GDPR and Data Privacy in AI

Lecture 78 Case Study: Balancing GDPR Compliance and AI Innovation

Lecture 79 California Consumer Privacy Act (CCPA)

Lecture 80 Case Study: DataGuard's Strategy for Privacy and Innovation Balance

Lecture 81 AI Regulations in Asia and Europe

Lecture 82 Case Study: Navigating AI Regulation

Lecture 83 Adapting to Evolving AI Regulations

Lecture 84 Case Study: TechNova's Strategy for Compliance and Ethical Innovation

Lecture 85 Section Summary

Section 9: Standards and Guidelines for Ethical AI

Lecture 86 Section Introduction

Lecture 87 ISO and IEEE Standards for AI

Lecture 88 Case Study: Navigating Ethical AI Integration in Healthcare

Lecture 89 AI Ethics and Governance Guidelines

Lecture 90 Case Study: Addressing Bias, Accountability, and Privacy in Recruitment

Lecture 91 Best Practices from Industry Leaders

Lecture 92 Case Study: TechNova's Ethical AI: Enhancing Governance, Transparency, and Trust

Lecture 93 Emerging Standards in AI Ethics

Lecture 94 Case Study: Integrating Ethical AI

Lecture 95 Compliance with AI Standards

Lecture 96 Case Study: Navigating Ethical Compliance in AI

Lecture 97 Section Summary

Section 10: Data Privacy and Protection in AI

Lecture 98 Section Introduction

Lecture 99 Importance of Data Privacy in AI

Lecture 100 Case Study: Balancing AI Innovation and Data Privacy

Lecture 101 Compliance with Data Protection Laws

Lecture 102 Case Study: Ensuring AI Ethics and Compliance in Data Protection

Lecture 103 Data Anonymization and Minimization

Lecture 104 Case Study: DataGuard's Ethical AI Journey in Health Data Protection

Lecture 105 Handling Sensitive Data in AI Systems

Lecture 106 Case Study: DataGuard Inc.'s Approach to Secure AI in Healthcare

Lecture 107 Ensuring Data Security in AI

Lecture 108 Case Study: Navigating AI Privacy and Security Challenges with GDPR Compliance

Lecture 109 Section Summary

Section 11: Ethical Use of AI in Business

Lecture 110 Section Introduction

Lecture 111 Ethical AI Applications in Industry

Lecture 112 Case Study: Navigating Ethical Challenges in AI

Lecture 113 AI in Decision-Making: Ethical Considerations

Lecture 114 Case Study: Ethical Challenges and Strategies in AI-Driven Credit Scoring

Lecture 115 The Role of AI in Customer Interaction

Lecture 116 Case Study: Leveraging AI for Enhanced Customer Interaction

Lecture 117 AI for Social Good and Sustainability

Lecture 118 Case Study: AI-Driven Sustainability

Lecture 119 Responsible AI Use Cases

Lecture 120 Case Study: TechNova's Strategy for Responsible Innovation

Lecture 121 Section Summary

Section 12: Addressing Bias and Fairness in AI

Lecture 122 Section Introduction

Lecture 123 Understanding Bias in AI Models

Lecture 124 Case Study: TechNova's Journey to Mitigate Bias in Recruitment Models

Lecture 125 Techniques to Identify Bias

Lecture 126 Case Study: InnovateAI's Journey to Ethical Facial Recognition

Lecture 127 Methods for Reducing Bias in AI

Lecture 128 Case Study: Optima Technologies' Path to Fair and Inclusive Solutions

Lecture 129 Ensuring Fairness in AI Outcomes

Lecture 130 Case Study: MediTech's Approach to Bias Mitigation in Healthcare AI Systems

Lecture 131 Legal Implications of AI Bias

Lecture 132 Case Study: TechNova's Strategy for Fair and Transparent Recruitment Systems

Lecture 133 Section Summary

Section 13: Accountability and Transparency in AI

Lecture 134 Section Introduction

Lecture 135 Building Accountability into AI Systems

Lecture 136 Case Study: Embedding Accountability in AI

Lecture 137 Importance of Transparency in AI

Lecture 138 Case Study: MedAI's Ethical and Operational Challenges in Healthcare

Lecture 139 Documentation and Disclosure Practices

Lecture 140 Case Study: Accountability and Transparency in Healthcare and Finance

Lecture 141 Transparency Reporting in AI

Lecture 142 Case Study: Enhancing AI Transparency: Lessons from the COMPAS Case Study

Lecture 143 Balancing Transparency with Security

Lecture 144 Case Study: Balancing AI Transparency and Security in Healthcare and Finance

Lecture 145 Section Summary

Section 14: AI Governance and Compliance in Organizations

Lecture 146 Section Introduction

Lecture 147 Organizational Structures for AI Governance

Lecture 148 Case Study: Balancing Innovation and Ethical Accountability

Lecture 149 Role of Compliance Officers in AI Governance

Lecture 150 Case Study: Compliance Officers as Ethical AI Enablers at FinServe

Lecture 151 Integrating AI Governance with Corporate Policies

Lecture 152 Case Study: Integrating AI Governance

Lecture 153 Developing AI Compliance Programs

Lecture 154 Case Study: Navigating Ethical and Regulatory Challenges at TechNova

Lecture 155 Evaluating and Auditing AI Governance

Lecture 156 Case Study: TechNova's Strategic Approach to Ethical AI Integration

Lecture 157 Section Summary

Section 15: Emerging Issues and Trends in AI Ethics

Lecture 158 Section Introduction

Lecture 159 Impact of AI on Employment and Society

Lecture 160 Case Study: Balancing Innovation, Privacy, and Human Empathy

Lecture 161 Ethical Challenges with Autonomous Systems

Lecture 162 Case Study: Navigating Ethical Challenges in Autonomous Systems

Lecture 163 AI in Law Enforcement and Surveillance

Lecture 164 Case Study: Balancing AI Innovation and Ethics in Metropolis Law Enforcement

Lecture 165 The Future of AI in Medicine and Healthcare

Lecture 166 Case Study: Enhancing Patient Care and Ethics at Evergreen Medical Center

Lecture 167 Preparing for Future Ethical Challenges

Lecture 168 Case Study: Fairness, Privacy, and Transparency Challenges in Public Services

Lecture 169 Section Summary

Section 16: Communicating and Training on AI Ethics

Lecture 170 Section Introduction

Lecture 171 Building an Ethical Culture in AI Development

Lecture 172 Case Study: Embedding Ethics into AI

Lecture 173 Training Employees on AI Ethics and Governance

Lecture 174 Case Study: Cultivating Ethical AI Practices

Lecture 175 Engaging Stakeholders in AI Ethical Practices

Lecture 176 Case Study: Ethical Stakeholder Engagement in AI Healthcare

Lecture 177 Developing Ethical AI Communication Strategies

Lecture 178 Case Study: Crafting Ethical AI Communication

Lecture 179 Assessing Training and Communication Effectiveness

Lecture 180 Case Study: Evaluating AI Ethics Training: InnovateAI's Strategy and Challenges

Lecture 181 Section Summary

Section 17: Course Summary

Lecture 182 Conclusion

Business leaders aiming to implement responsible AI practices.,AI developers focused on ethical and transparent model design.,Compliance officers managing AI governance policies.,Tech professionals interested in AI ethics and risk management.,Policy makers needing insights into AI regulations and standards.,Data analysts seeking to understand bias and fairness in AI.,Educators and trainers teaching ethical principles in AI development.