Description for Power of Gen AI with ChatGPT for Higher Education
Understanding Artificial Intelligence in Education: Provides an overview of the fundamental concepts of Artificial Intelligence and its potential applications in the educational sector, including ChatGPT.
Integration of ChatGPT in Education: Offers practical examples of how ChatGPT can be used to enhance educational workflows by facilitating the creation of instructional materials, assessment, lesson planning, and activity design.
Enhancing Teaching with AI Tools: Provides an explanation of how to integrate ChatGPT with other AI tools to increase the efficacy and effectiveness of teaching and learning.
Ethical and Privacy Considerations: Assesses the relevance and applicability of generative AI in educational settings, as well as the ethical challenges and privacy issues that are associated with it.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by GalileoX
Duration: 4�5 hours per week approx 5 weeks
Schedule: Flexible
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