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Starts 6 June 2026 10:11

Ends 6 June 2026

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Responsible Innovation and Trustworthy AI

Discover how to build trustworthy AI systems by applying responsible innovation principles, identifying bias, and implementing ethical practices throughout the analytics lifecycle.
SAS via Coursera

SAS

2874 Courses


9 hours 55 minutes

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Overview

This course is designed for anyone who wants to gain a deeper understanding about the importance of trust and responsibility in AI, analytics, and innovation. The content is especially geared to those who are making business decisions based on machine learning and AI systems and those who are designing and training AI systems.

Whether you are a programmer, an executive, an advisory board member, a tester, a manager, or an individual contributor, this course helps you gain foundational knowledge and skills to consider the issues related to responsible innovation and trustworthy AI. Empowered with the knowledge from this course, you can strive to find ways to design, develop, and use machine learning and AI systems more responsibly.

Learn How To:

1. Explain how trustworthy AI integrates with the AI and analytics life cycle and the data supply chain. 2.

Identify unwanted biases throughout the AI and analytics life cycle. 3. Define principles of responsible innovation. 4.

Develop a lens for the principles of responsible innovation in action. 5. Apply the principles of human-centricity, inclusivity, accountability, privacy and security, robustness, and transparency to scenarios of responsible innovation and trustworthy AI. 6.

Identify how SAS technologies address unwanted bias and innovate responsibly in data management, model development, and model deployment. Who Should Attend:

Data consumers, IT professionals, managers, analysts, data scientists, and anyone else who uses, designs, consumes information from, or makes decisions based on data and AI Prerequisites:

There are no formal prerequisites to this course, although it is helpful to have a working level of data literacy, which can be obtained in the Data Literacy Essentials course or the Data Literacy in Practice course (or both).

Syllabus

  • The Ethics of AI: Risk Across the Analytics Lifecycle
  • Learn about the analytics life cycle, AI risk and bias, and the data chain of custody.
  • Principles of Responsible Innovation, Part 1
  • Learn an overview of the six principles of responsible innovation, and dive deep into the first three: Human centricity, inclusivity, and accountability.
  • Principles of Responsible Innovation, Part 2
  • Dive deep into three more principles of responsible innovation: Privacy and Security, Robustness, and Transparency.
  • SAS Technology for Trustworthy AI
  • See examples of software applications for robust data governance, transparent AI, and secure model ops processes.

Taught by

Catherine Truxillo


Subjects

Computer Science