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  • S1E0: AI for Educators Design Lab Podcast Trailer
    2026/01/28

    In this trailer of the AI for Educators Design Lab podcast, Jennifer Maddrell, a learning experience designer with a PhD in Instructional Design and Technology, introduces the show's mission to help educators navigate the complexities of AI integration in teaching. Focusing on the balance between the exciting potentials and significant concerns of AI, Jennifer aims to foster reflection rather than offering quick fixes.

    The first season will tackle pressing challenges such as academic integrity, AI literacy, and student privacy, offering design considerations and reflective questions to aid educators. Episodes will be released twice a month, along with a free companion Design Brief for deeper engagement, available on our website. Each Design Brief includes a synopsis of the episode's core challenge, key design questions to examine in your own context, and a practical scaffold to help you think through the concepts covered in the podcast.

    🔗 Free Design Brief Library: nextpathdesign.com/designbriefs

    📬 Next Path Insights Newsletter: nextpathdesign.com/newsletter

    🌐 All Next Path Design Offerings: nextpathdesign.com/join

    00:00 Welcome to the AI for Educators Design Lab Podcast

    00:41 The Convergence of Messy and Magical: AI in Education

    01:11 Podcast Goals and Structure

    01:45 Exploring Pressing Challenges in AI Integration

    02:27 Designing Learning Experiences with AI

    02:45 Real-World Examples and Design Considerations

    03:38 Who Is This Podcast For?

    04:04 Upcoming Episodes and Community Engagement

    04:58 Join Us on This Journey

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    5 分
  • S1E1: Academic Integrity in the Age of AI
    2026/03/09

    As an educator, what do you do when AI can now complete your prior assignments? In this episode, Jennifer Maddrell, PhD, shares how testing and redesigning her own assignment changed her approach to academic integrity in the age of AI. She frames it as a design challenge that educators have professional judgment to tackle.

    This episode explores five design questions to help educators explore academic integrity as a learning experience design challenge, not a policing problem:

    1. Is your assignment AI-vulnerable?
    2. Are you assessing the product or the process of learning?
    3. What does this assignment require that AI can't easily replicate?
    4. How clear are your expectations for AI use?
    5. What does your approach to academic integrity signal to students about classroom culture?

    Jennifer also walks through how she redesigned her own literature review without banning AI or using detection software. She concludes with what surprised her along the way: "I started feeling like I was teaching again."

    Links mentioned:

    🔗 Free Design Brief + AI Assignment Vulnerability Audit: nextpathdesign.com/designbriefs

    📬 Next Path Insights Newsletter: nextpathdesign.com/newsletter

    🌐 All Next Path Design offerings: nextpathdesign.com/join

    00:00 Introduction

    00:54 Testing My Own Assignment With AI

    01:49 The Academic Integrity Pain Point

    02:14 Policing vs. Redesigning 03:28 Why Detection Falls Short

    04:55 Framing AI as a Design Problem 06:04 Your Beliefs About AI Matter

    07:12 Design Question 1: Is Your Assignment AI-Vulnerable?

    08:08 Design Question 2: Product or Process? 09:57 Design Question 3: What AI Can't Replicate

    11:01 Design Question 4: Clear Expectations

    12:59 Design Question 5: Classroom Culture and Signals

    13:59 Redesigning the Literature Review

    17:35 Wrap-Up, Resources, and Next Episode

    About AI for Educators Design Lab A podcast for educators, instructional designers, and learning leaders exploring how to design meaningful learning experiences when AI changes everything. New episodes are released twice monthly.

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    19 分
  • S1E2: Rethinking Learning Goals in the AI Era
    2026/03/23

    If AI can now complete our assignments, does AI change our learning goals? In this episode of the AI for Educators Design Lab podcast, Jennifer Maddrell, PhD, explores how AI not only makes assignments more vulnerable but also prompts a review of traditional learning goals. AI isn't just changing what students can produce. It's also revealing that some of our legacy learning goals were written for a time when recall and reproduction were the dominant aims and indicators of learning.

    Using her own literature review assignment as an example, Jennifer considers what students should learn when AI can quickly tackle many learning tasks. She walks through five design questions to help you audit whether your current learning goals are still relevant, sufficient, and aligned with what learners need in a world shaped by human-AI collaboration, and concludes with a preview of Episode 3 on AI literacy coming in April.

    1. Do your learning goals prioritize content coverage or cognitive capability?
    2. Does AI support or undermine the learning goal?
    3. Do your learning goals reflect what authentic, discipline-specific performance looks like when AI is available?
    4. Do your learning goals encourage metacognitive awareness?
    5. What is the best way to make learning visible?

    Check out our other free resources for educators:

    • 🎙️Next Path Design Podcast Library: https://nextpathdesign.com/podcast
    • 🔗 Design Brief Library as a podcast supplement: https://nextpathdesign.com/designbreif
    • 📬 Next Path Insights Newsletter: https://nextpathdesign.com/newsletter

    00:00 Welcome Back

    00:25 Why Learning Goals Shift

    2:21 Lit Review Wake Up Call

    04:56 Five Design Questions

    06:03 Coverage vs Capability

    07:55 When AI Helps or Hurts

    09:46 Authentic Practice Today

    11:28 Metacognition with AI

    14:14 Evidence Beyond Products

    15:51 Wrap Up and Next Steps

    17:49 Design Brief and Episode Three

    18:54 Final Thoughts and Thanks

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    20 分