Description
Welcome to “Responsible Machine Learning,” a comprehensive course designed to equip you with the knowledge and skills necessary to develop and implement ethical and fair AI systems. This course delves into the principles and practices essential for creating machine learning models that adhere to human-centric values and societal norms.
Throughout this course, we will explore key topics including accountability, transparency, explainability, safety, fairness, and bias in AI. You will learn how to identify and mitigate bias using tools like Microsoft Fairlearn and IBM AI Fairness 360, ensuring that your AI systems operate without discrimination.
We will also discuss the importance of adhering to institutional, national, and international guidelines, maintaining detailed documentation, and defining clear roles and responsibilities within AI development teams. Real-world examples and case studies will illustrate how these principles are applied in various industries, from finance and healthcare to transportation and security.
By the end of this course, you will have a robust understanding of the ethical implications of AI, practical strategies for implementing responsible machine learning, and the ability to create transparent, accountable, and fair AI models. Join us to become a leader in the development of responsible AI technologies, fostering trust and reliability in your AI solutions.
Who this course is for:
- AI enthusiasts
- Programmers
- Educators
- Teachers
- Cyber Fanatics
- Internet Regulators
Course content
- Introduction1 lecture • 2min
- Introduction
- Why Responsible ML1 lecture • 1min
- Why Responsible ML
- Ensuring Responsible ML1 lecture • 1min
- Ensuring Responsible ML
- Accountability- Responsible Machine Learning1 lecture • 5min
- Accountability- Responsible Machine Learning
- Transparency-Responsible Machine Learning1 lecture • 5min
- Transparency-Responsible Machine Learning
- Explainability-Responsible Machine Learning1 lecture • 5min
- Explainability-Responsible Machine Learning
- Safety in Responsible Machine Learning1 lecture • 6min
- Safety in Responsible Machine Learning
- Fairness-Responsible Machine Learning1 lecture • 4min
- Fairness-Responsible Machine Learning
- Bias-Responsible Machine Learning1 lecture • 4min
- Bias-Responsible Machine Learning
- Privacy and Robustness Responsible ML1 lecture • 4min
- Privacy and Robustness Responsible ML
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