AI + Open Education Initiative: AI Literacies and Evaluation
Skills:
Reading ML Papers80%
MIT AI + Open Education Initiative Speaker Series
Speakers: Shira Segal, Nick Baker, Angela Gunder, Joshua Herron, Hannah-Beth Clark, Margaux Dowland
YouTube Playlist: https://www.youtube.com/playlist?list=PLUl4u3cNGP61TqXrdKbZtb59uXsy5tCXN
In this webinar, hosted by MIT Open Learning, authors from the AI + Open Education Initiative discuss rapid response papers on the topics of AI literacies, open practices, and the use of AI for auto-evaluation of AI-generated open resources. The following papers and authors are spotlighted:
AI Literacies and the Advancement of Opened Cultures, with Angela Gunder and Joshua Herron
Auto Evaluation: A Critical Measure in Driving Improvements in Quality and Safety of AI-Generated Lesson Resources, with Hannah-Beth Clark and Margaux Dowland
Before opening to audience questions, speakers engage with respondent Nick Baker, the director of the Office of Open Learning at the University of Windsor.
Links:
AI + Open Education Initiative
https://aiopeneducation.pubpub.org/
AI Literacies and the Advancement of Opened Cultures, with Angela Gunder and Joshua Herron
https://aiopeneducation.pubpub.org/pub/fmktz5d3/release/5
Auto Evaluation: A Critical Measure in Driving Improvements in Quality and Safety of AI-Generated Lesson Resources, with Hannah-Beth Clark and Margaux Dowland
https://aiopeneducation.pubpub.org/pub/i36sncz8/release/3
MIT Open Learning speaker series bridges AI and open education (Medium article)
https://medium.com/open-learning/mit-open-learning-speaker-series-bridges-ai-and-open-education-aa4ba95c6887
New papers explore the challenges and opportunities of AI for open education (Medium article)
https://medium.com/open-learning/new-papers-explore-the-challenges-and-opportunities-of-ai-for-open-education-3b91081fd053
MIT Open Learning announces call for proposals at the intersection of AI and open education (Medium article)
https://medium.com/open-learning/mit-open-learning-announces-call-for-proposals-at-the-in
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