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Responsible Machine Learning

SynopsisResponsible Machine Learning, available at Free, with 20 lect...
Responsible Machine Learning  No.1

Responsible Machine Learning, available at Free, with 20 lectures, and has 450 subscribers.

You will learn about Understand Responsible Machine Learning Know of some mitigating Responsible ML tools Understand Bias in AI understand fairness and AI safety This course is ideal for individuals who are AI enthusiasts or Programmers or Educators or Teachers or Cyber Fanatics or Internet Regulators It is particularly useful for AI enthusiasts or Programmers or Educators or Teachers or Cyber Fanatics or Internet Regulators.

Enroll now: Responsible Machine Learning

Summary

Title: Responsible Machine Learning

Price: Free

Number of Lectures: 20

Number of Published Lectures: 20

Number of Curriculum Items: 20

Number of Published Curriculum Objects: 20

Original Price: Free

Quality Status: approved

Status: Live

What You Will Learn

  • Understand Responsible Machine Learning
  • Know of some mitigating Responsible ML tools
  • Understand Bias in AI
  • understand fairness and AI safety
  • Who Should Attend

  • AI enthusiasts
  • Programmers
  • Educators
  • Teachers
  • Cyber Fanatics
  • Internet Regulators
  • Target Audiences

  • AI enthusiasts
  • Programmers
  • Educators
  • Teachers
  • Cyber Fanatics
  • Internet Regulators
  • 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.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Getting Started

    Chapter 2: Why Responsible ML

    Lecture 1: Why the need for Responsible Machine Learning

    Chapter 3: Ensuring Responsible ML

    Lecture 1: How to ensure Responsible Machine Learning

    Chapter 4: Accountability- Responsible Machine Learning

    Lecture 1: How to ensure Accountability in Responsible Machine Learning

    Chapter 5: Transparency-Responsible Machine Learning

    Lecture 1: How to ensure Transparency in Responsible Machine Learning

    Chapter 6: Explainability-Responsible Machine Learning

    Lecture 1: Ensuring Explainability in Responsible Machine Learning

    Chapter 7: Safety in Responsible Machine Learning

    Lecture 1: How to ensure safety in Responsible Machine Learning

    Chapter 8: Fairness-Responsible Machine Learning

    Lecture 1: Fairness in AI

    Chapter 9: Bias-Responsible Machine Learning

    Lecture 1: Understanding Bias

    Chapter 10: Privacy and Robustness Responsible ML

    Lecture 1: Privacy and Robustness Responsible ML

    Chapter 11: Recommended Actions

    Lecture 1: Some Recommended Actions to take in ensuring Responsible ML

    Chapter 12: Mitigating Tools

    Lecture 1: Mitigating Tools-Responsible Machine Learning

    Chapter 13: Federated Learning

    Lecture 1: Futture Trends in Responsible ML

    Lecture 2: Federated Learning

    Lecture 3: Explainable AI

    Lecture 4: AI in Education

    Chapter 14: Ethical AI

    Lecture 1: Technology

    Lecture 2: Ethical AI

    Lecture 3: Misuse AI

    Lecture 4: Ai for Social Good

    Instructors

  • Responsible Machine Learning  No.2
    Bliva TangerynTech
    Cyber Analyst | Artist | IT Specialist | WordPress Developer
  • Responsible Machine Learning  No.3
    Christian Kusi
    Instructor at Udemy
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  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!