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London School of International Business (LSIB)
Deep Insights: Event Recaps and Summaries from the Professional Certificate in Artificial Intelligence for Educational Technology Policy Course
Are you ready to delve into the world of Artificial Intelligence for Educational Technology Policy? Look no further than the Professional Certificate in Artificial Intelligence for Educational Technology Policy course. Let's take a closer look at some of the key event recaps and summaries that will give you a glimpse into the exciting journey that awaits you in this course.
Event Recap: Guest Lecture on Machine Learning in Education
Date
Speaker
Topic
April 15, 2021
Dr. John Smith
Applications of Machine Learning in Personalized Learning
Dr. John Smith's insightful lecture on the applications of machine learning in personalized learning left attendees amazed at the endless possibilities AI holds for transforming education. From adaptive learning platforms to intelligent tutoring systems, the future of education is indeed bright with AI.
Event Summary: Panel Discussion on Ethical Considerations in AI
Date
Panelists
Key Points
May 20, 2021
Dr. Sarah Johnson, Dr. Michael Lee, Dr. Emily Chen
- The importance of transparency in AI algorithms
- Ethical use of student data in AI applications
- Addressing bias and fairness in AI systems
The panel discussion on ethical considerations in AI shed light on the crucial need for transparency, fairness, and ethical use of AI in educational settings. As technology continues to advance, it's important to ensure that AI is used responsibly to benefit all students.
Join us in exploring the limitless possibilities of AI in education through the Professional Certificate in Artificial Intelligence for Educational Technology Policy course. Get ready to revolutionize the future of education with AI!
- The importance of transparency in AI algorithms
- Ethical use of student data in AI applications
- Addressing bias and fairness in AI systems