Responsible and Ethical AI
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Recommended experience
Recommended experience
Skills you'll gain
- Risk Management Framework
- Data Ethics
- Law, Regulation, and Compliance
- Responsible AI
- Information Privacy
- Artificial Intelligence
- Machine Learning
- AI literacy
- Personally Identifiable Information
- Data Quality
- Data Integrity
- General Data Protection Regulation (GDPR)
- Data Security
- Dependency Analysis
- Data Governance
- AI Security
- Ethical Standards And Conduct
- Model Evaluation
- Data-Driven Decision-Making
Details to know
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There are 4 modules in this course
In this course, we will investigate the ethical challenges in Artificial Intelligence (AI) systems. The focus of this course is on preparing students with the knowledge and practical approaches necessary in designing reliable and ethical AI systems that are responsible and trustworthy.
Key topics covered include: • Bias and Fairness in AI and Machine Learning • Nature of data privacy and AI Risks • Understanding AI regulations. • Frameworks for building truly trustworthy and responsible AI. There are 2 hands-on labs in this course. You need knowledge of python and basics of AI model development.
In this module, we will discuss the language of data and how to use data to make a business decision. We will discuss how an AI-driven culture helps organizations make better and more effective decisions.
What's included
2 videos9 readings1 assignment1 app item1 discussion prompt
2 videos•Total 12 minutes
- Course Welcome•2 minutes
- AI Challenges and Risks•10 minutes
9 readings•Total 104 minutes
- Course Introduction•1 minute
- Syllabus - Responsible and Ethical AI•8 minutes
- Academic Integrity•1 minute
- What is Responsible AI?•3 minutes
- Developing Trustable AI is Everyone’s Responsibility•3 minutes
- Data Challenges in Enterprise•7 minutes
- Approaches to Data Challenges in Enterprise•5 minutes
- Case Study and Further Reading•75 minutes
- Module Wrap-Up•1 minute
1 assignment•Total 30 minutes
- Assess Your Learning: AI and Dependencies•30 minutes
1 app item•Total 8 minutes
- AI Components•8 minutes
1 discussion prompt•Total 60 minutes
- Healthcare AI Implementation•60 minutes
In this module, we will discuss various types of bias that can influence AI model decisions and explore strategies to mitigate these challenges. We will also examine other AI risks that impact the development of ethical AI systems. The module also covers how bias can impact the outcome of the results and misrepresent the data, violate company policies, and damage an organization’s reputation.
What's included
7 videos6 readings2 assignments1 discussion prompt
7 videos•Total 26 minutes
- What is AI Bias?•6 minutes
- Types of Bias•11 minutes
- Avoiding Bias•2 minutes
- Bias Feature Selection•2 minutes
- "Good Data"•1 minute
- Good Algorithm Bias•2 minutes
- Efficiency•1 minute
6 readings•Total 107 minutes
- What is Bias in AI?•3 minutes
- Ethical Challenges of Having Bias in the Model•4 minutes
- Types of Bias•8 minutes
- How to Avoid Bias in AI•6 minutes
- Case Study and Further Reading•85 minutes
- Module Wrap-Up•1 minute
2 assignments•Total 210 minutes
- Assess Your Learning: AI Bias•30 minutes
- Lab: Detecting Bias in an AI Hiring Model•180 minutes
1 discussion prompt•Total 60 minutes
- Confronting Bias in AI•60 minutes
We will discuss a comprehensive framework for developing reliable, responsible, and ethical AI systems. We will center on transparency and explainability, understanding how to make AI decisions interpretable and trustworthy to users and stakeholders. The discussion will cover key areas such as data governance, regulatory compliance, privacy concerns, and transparency. By addressing these critical factors, we aim to explore how organizations can design and implement AI systems that are not only effective but also trustworthy, fair, and aligned with ethical standards.
What's included
1 video7 readings1 assignment1 app item1 discussion prompt
1 video•Total 8 minutes
- Explainability•8 minutes
7 readings•Total 85 minutes
- AI Transparency and Explainability•7 minutes
- Data, Data Privacy, and Data Governance•3 minutes
- AI Development: Transparency in Tools and Technologies•3 minutes
- What is Explainability?•10 minutes
- Human Factors in AI•10 minutes
- Case Study and Further Reading•50 minutes
- Module Wrap-Up•2 minutes
1 assignment•Total 30 minutes
- Assess Your Learning: Transparency and Explainability•30 minutes
1 app item•Total 3 minutes
- What is Transparency?•3 minutes
1 discussion prompt•Total 60 minutes
- AI in the Workplace: Productivity Tool or Privacy Invasion?•60 minutes
In this module, we will explore various AI standards and frameworks, including the NIST AI Risk Management Framework, as well as key regulatory frameworks such as the EU AI Act, GDPR, and other emerging international AI regulations. We will examine the growing importance of these standards in guiding responsible AI development across different industries and jurisdictions, and discuss how global variations in regulatory approaches impact the design, deployment, and governance of AI systems.
What's included
2 videos10 readings2 assignments1 app item
2 videos•Total 21 minutes
- Develop Reliable Responsible AI•12 minutes
- Demo: Organizational Practice•9 minutes
10 readings•Total 86 minutes
- Developing an AI System that is Ethical, Responsible, and Reliable•5 minutes
- NIST Framework•3 minutes
- AI Risks and Trustworthiness•3 minutes
- AI Regulations•23 minutes
- Artificial Intelligence Management System (AI MS) and Audit Process•3 minutes
- How Are Companies Addressing Responsible AI?•2 minutes
- General Data Protection Regulation (GDPR)•5 minutes
- California Consumer Privacy Act (CCPA) •11 minutes
- Case Study and Further Reading•30 minutes
- Module Wrap-Up•1 minute
2 assignments•Total 210 minutes
- Lab: Building a Responsible AI Dashboard•180 minutes
- Assess Your Learning: Responsible AI Development and Governance•30 minutes
1 app item•Total 3 minutes
- AI Regulations•3 minutes
Instructor
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