Developing AI Policy (Coursera)

Developing AI Policy (Coursera)

AI tools are already changing how we work, and they will continue to do so for years. Over the next few years, we’re likely going to see AI used in ways we’ve never imagined and are not anticipating. This course will guide you as you lead your organization to adopt AI in a way that’s not unethical, illegal, or wrong. This course empowers you to make informed decisions and confidently create an AI policy that matches your organizational goals.

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Unique Features of this Course

  • Broadly applicable to audiences of any field
  • Efficient yet effective overview of major AI policy concerns
  • Beginner friendly for those who want to get started using generative AI tools
  • Practical tips for how to develop an AI policy and advisory team
  • Real-world examples of how industry regulations around AI have changed

Key Words
Artificial Intelligence (AI), Policy, Generative AI, Large Language Models (LLMs), Data Science

Intended Audience

  • Professionals looking for an introduction to AI policies and general regulations
  • Decision makers who may have to help write AI policies or determine how AI will be used at an institute
  • Anyone curious about how we can use AI more responsibly

Syllabus

Developing AI Policy
This short course is intended to equip you with the knowledge you need to develop an effective AI policy for your organization.

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