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DawsonITE

DawsonITE is a blog devoted to Educational Technology. It's compiled by Rafael Scapin, Coordinator of Educational Technology at Dawson College in Montreal (Canada).

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Posted on 03/04/202631/03/2026 by Rafael Scapin

Using AI to forecast student dropout risk in technical education using a learning analytics approach

AI-driven learning analytics can predict at-risk students from Moodle data, enabling early intervention, adaptive course design, and more equitable, evidence-based teaching.

https://www.nature.com/articles/s41598-026-44919-1

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CategoriesArtificial Intelligence, DawsonITE, Edtech

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