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Teaching Statistics and Descriptive Analytics in the world of AI

2026-01-07 Leave a comment

Teaching statistics as a flipped classroom with the help of AI? You heard that right! That’s exactly what I tried this year – and here are the results. Attached to this post is the student evaluation score for the module. Yes, the number of responses is quite low (only 50% of the cohort), but it […]

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Ivan Svetunkov
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