Navigating Generative AI Risks for Leaders

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Navigating Generative AI Risks for Leaders

Coursera · Beginner ·🛡️ AI Safety & Ethics ·3mo ago

Key Takeaways

Navigating Generative AI Risks for Leaders including business model risks and ethical considerations

Original Description

This course delves into the various risks and concerns associated with Generative AI, including business model risks, inaccuracies in AI-generated content, data security, and privacy concerns. It emphasizes the importance of the CEO in understanding and addressing these risks. A significant part of this course is dedicated to exploring the ethical considerations for using GenAI. It highlights the importance of developing responsible AI principles and practices, guiding CEOs in creating ethical principles for Responsible AI tailored specifically to their own companies. The course also focuses on the critical issues of data security and privacy in the use of GenAI. It concludes by providing an overview of the legal and regulatory landscape for GenAI, offering guidance on how to navigate this landscape effectively and ensure legal and regulatory compliance in the use of GenAI.
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