
Sign up to save your podcasts
Or


In this ChatEDU Check-In - Peer Influence and AI Adoption, Matt explores how social capital and colleague-to-colleague sharing drive generative AI integration more effectively than top-down mandates. The episode highlights that because AI requires users to redesign their own unique workflows, traditional formal training often fails to capture the practical, real-time adjustments needed for true mastery.
Key Takeaways:
A new assessment from ETS, Futurenav Adapt AI, has been launched to create a standard for evaluating how educators recognize, navigate, and ethically implement generative technology.
Despite nearly all districts utilizing some AI tools, a significant training vacuum exists, leaving the majority of teachers to teach themselves basic terminology and prompt engineering on their own.
Relying on the individual initiative of motivated teachers to vet AI tools creates operational and legal risks, especially since only two states currently require districts to have a formal AI policy.
Matt’s Two Cents: While standardized assessments could provide helpful data for custom professional development, we must avoid the "one size fits all" trap. A teacher’s required AI skill set varies wildly by discipline and grade level, and ultimately, these skills must map directly to district priorities. Whether the goal is improving seventh-grade writing or achieving broad AI literacy for a portrait of a graduate, teacher training must be targeted rather than generalized to be truly effective.
Article Link:
https://hbr.org/2026/03/peer-influence-can-make-or-break-your-ai-rollout
Sponsored by: Eduaide.Ai
Eduaide is an amazing tool built by teachers for teachers where good ideas become great lessons. Take advantage of our special offer: 50 percent off an Eduaide subscription with code: ChatEDU at https://www.eduaide.ai/.
By Matt Mervis and Dr. Elizabeth Radday5
4040 ratings
In this ChatEDU Check-In - Peer Influence and AI Adoption, Matt explores how social capital and colleague-to-colleague sharing drive generative AI integration more effectively than top-down mandates. The episode highlights that because AI requires users to redesign their own unique workflows, traditional formal training often fails to capture the practical, real-time adjustments needed for true mastery.
Key Takeaways:
A new assessment from ETS, Futurenav Adapt AI, has been launched to create a standard for evaluating how educators recognize, navigate, and ethically implement generative technology.
Despite nearly all districts utilizing some AI tools, a significant training vacuum exists, leaving the majority of teachers to teach themselves basic terminology and prompt engineering on their own.
Relying on the individual initiative of motivated teachers to vet AI tools creates operational and legal risks, especially since only two states currently require districts to have a formal AI policy.
Matt’s Two Cents: While standardized assessments could provide helpful data for custom professional development, we must avoid the "one size fits all" trap. A teacher’s required AI skill set varies wildly by discipline and grade level, and ultimately, these skills must map directly to district priorities. Whether the goal is improving seventh-grade writing or achieving broad AI literacy for a portrait of a graduate, teacher training must be targeted rather than generalized to be truly effective.
Article Link:
https://hbr.org/2026/03/peer-influence-can-make-or-break-your-ai-rollout
Sponsored by: Eduaide.Ai
Eduaide is an amazing tool built by teachers for teachers where good ideas become great lessons. Take advantage of our special offer: 50 percent off an Eduaide subscription with code: ChatEDU at https://www.eduaide.ai/.

2,413 Listeners

273 Listeners

56,989 Listeners

11 Listeners

645 Listeners

6,461 Listeners

476 Listeners

2,244 Listeners

572 Listeners

4,544 Listeners

15,319 Listeners

7,670 Listeners

683 Listeners

292 Listeners

1,015 Listeners