AI & Education: Education when AI tools are smarter than us - Discussion with Kuang Wen (Part 2)

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Had a great discussion with Kuang Wen Chan (a JC chemistry teacher) on the future of education with advanced AI tools. He has created a lot of nice AI tools leveraging on Large Language Models (LLMs) for his own students, such as a question-answer tool, a question generator for exams and autograder. That's quite a lot of tech expertise for someone who specialises in Chemistry!

We also delve a little into some challenges of incorporating AI into education, such as potential plagiarism, not knowing what is real or fake with AI-generated content, whether humans will be crippled if we suddenly lose our tech in the future.

Here are the videos of our conversation together:
AI & Education: RAG Question-Answer, Test Question Generator, Autograder by Kuang Wen! (Part 1): https://www.youtube.com/watch?v=6yt8v5padXE

AI & Education: Education when AI tools are smarter than us - Discussion with Kuang Wen (Part 2): https://www.youtube.com/watch?v=9FHpKpF0dTY

Kuang Wen is currently a teacher teaching at the Junior College level. He enjoys experimenting with new ideas and building applications to improve teaching and learning, as well as to improve productivity at work. He believes in the meaningful and intentional design of tools. His recent projects involve the use of traditional AI and large language models.

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Part 1 on Project Showcase here: https://www.youtube.com/watch?v=6yt8v5padXE

0:00 Self-motivation and discussion-based learning in the age of AI-based education
8:39 Exams and Automation of Rule-based learning
11:18 AI-based Plagiarism
18:23 How to adapt with smarter-than-us AI tools
23:50 Moving beyond rote-based education
30:00 Will we be crippled in our thinking when tech is gone

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AI and ML enthusiast. Likes to think about the essences behind breakthroughs of AI and explain it in a simple and relatable way. Also, I am an avid game creator.

Discord: https://discord.gg/bzp87AHJy5
LinkedIn: https://www.linkedin.com/in/chong-min-tan-94652288/
Online AI blog: https://delvingintotech.wordpress.com/
Twitter: https://twitter.com/johntanchongmin
Try out my games here: https://simmer.io/@chongmin




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