AI in the Classroom - Daily

Sal Khan Learned by Making. He Designed for Receiving.

8 min · 20 de may de 2026
Portada del episodio Sal Khan Learned by Making. He Designed for Receiving.

Descripción

In this episode we explore the debate around Khanmigo, Khan Academy’s AI tutor, and what its struggles reveal about the difference between explaining content and actually supporting learning. Topics covered: * Why Khanmigo was described as “a non-event for most students” * The difference between a great explainer and a true tutor * How Sal Khan learns * Why students often need more than prompts and explanations * What AI tutoring tools may misunderstand about motivation and learning * How teachers can evaluate whether an AI tool supports real student thinking * What instructional coaches should help teachers notice about AI products * What district leaders should ask vendors before buying AI tutoring tools Sources: https://punyamishra.com/2026/04/16/why-sal-khant-on-learning-by-making-but-teaching-by-telling/ https://substack.com/inbox/post/197857852

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72 episodios

Portada del episodio When the Friend Who Listens Is a Bot

When the Friend Who Listens Is a Bot

In this episode we explore how young people are using AI when adults are not watching — not just for homework help, but for emotional support, relationship advice, and navigating moments of loneliness, conflict, or uncertainty. We look at new research from The Rithm Project on youth, AI, and relationships, and ask what educators should understand before students return to school in the fall. Topics covered: * How students are using AI during unstructured time outside of school * Why AI use among young people is not just an academic integrity issue * Findings from The Rithm Project’s report, Youth, AI, and the Relationships That Shape Them * Why some students turn to AI because they feel like a burden to others * The difference between AI “companions” and everyday emotional support use * How AI may help students avoid the friction of real relationships * Why productive struggle matters in both learning and human connection * What teachers might ask students when they return in September Sources: https://www.therithmproject.org/research https://www.the74million.org/article/survey-young-people-turn-to-ai-to-be-their-real-unfiltered-selves/

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Portada del episodio AI Detectors, Teacher Training, and the Real Cheating Problem

AI Detectors, Teacher Training, and the Real Cheating Problem

In this episode, we cover three timely AI-in-education stories that all point to the same challenge: schools are moving fast, but the systems around AI policy, teacher training, and academic integrity are still catching up. Topics Covered * Why Wake County is moving to ban AI detectors in schools * The case of Eleanor Canina and the risks of false AI accusations * Why AI detection tools may unfairly flag multilingual and neurodivergent students * What Microsoft’s 2026 AI in Education report says about teacher AI use * Why many educators are using AI without formal training * Academic integrity as a top concern for both teachers and students * New survey data on cheating among Harvard seniors * A hopeful student perspective on AI cheating Sources: https://www.wral.com/news/education/whats-in-wake-schools-new-ai-policy-draft-june-2026/ https://news.microsoft.com/source/2026/06/24/microsofts-new-ai-in-education-report-highlights-widespread-adoption-and-increasing-demand-for-support/ https://fortune.com/2026/06/23/harvard-cheating-academic-integrity-ai-detection/

26 de jun de 20266 min
Portada del episodio What Eye-Tracking Research Shows About Spotting AI Deepfakes

What Eye-Tracking Research Shows About Spotting AI Deepfakes

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Portada del episodio Trust, AI, and the Classroom Relationship

Trust, AI, and the Classroom Relationship

In this episode we explore how AI is changing one of the most important relationships in school: the trust between teachers and students. We look at emerging research on AI transparency, student surveillance, false accusations, AI detection tools, and the disproportionate risks for English learners and students with disabilities. Topics covered: * How AI is changing trust between teachers and students * Why students may feel surveilled rather than supported * The problem of one-way AI transparency in schools * Why AI bans may increase suspicion instead of reducing it * The risks of AI detection tools and false accusations * How teacher AI use affects student perceptions of authenticity * Practical alternatives to detection-first classroom policies Sources: https://www.the74million.org/article/another-ai-side-effect-erosion-of-student-teacher-trust/

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Portada del episodio AI Cheating Just Got Much Harder to Catch

AI Cheating Just Got Much Harder to Catch

In this episode we explore the rise of AI cheating tools, and what they reveal about the future of writing instruction. We break down a recent New York Times investigation into “humanizers” and “autotypers,” tools designed to make AI-generated student writing harder to detect. But the episode goes beyond academic integrity panic. The real question is what teachers and school leaders can still do when digital evidence of authorship becomes unreliable. Topics covered: * What AI “humanizers” do to rewrite machine-generated text * How “autotypers” fake drafting, pauses, corrections, and revision history * Why Google Docs version history is becoming less reliable as proof of authorship * The blurred line between cheating tools and “AI help” tools * Why Grammarly, GPTZero, and similar platforms raise complicated ethical questions * What teachers can do when detection no longer works Sources: https://www.nytimes.com/2026/06/18/us/ai-apps-students-cheat.html

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