Stanford Webinar - How ChatGPT and Generative AI Will Shape the Future of Work

Stanford Online · Beginner ·🧠 Large Language Models ·2y ago
Learn how to navigate change and optimize your teams for the future of work: https://online.stanford.edu/courses/xdgt130-change-management-reskilling-age-analytics-and-ai Chapters 0:50 Emerging capabilities and challenges 9:20 How to cut through the hype 16:20 Best practices for human-AI augmentation 21:05 AI in education 23:40 Conclusion Incorporating AI has become a dominant aspect of digital transformation strategies. And there’s no hotter AI technology right now than ChatGPT. If you’re a business manager or a technical team leader, it’s time to start thinking about generative AI and its potential for your company, beyond having it write your emails. In this webinar, join Arvind Karunakaran, Assistant Professor at Stanford University and a faculty affiliate of the Institute for Human-Centered Artificial Intelligence (HAI), to learn about the potential of Generative AI and how it might impact your work and your organization. You Will Learn: - What capabilities and challenges are emerging for Generative AI in a workplace - How to cut through the hype and see the potential of this new technology for the future of work - How you can anticipate the effects of Generative AI on your role and begin to reimagine or even reskill the work of your team or company #chatgpt
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Chapters (5)

0:50 Emerging capabilities and challenges
9:20 How to cut through the hype
16:20 Best practices for human-AI augmentation
21:05 AI in education
23:40 Conclusion
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