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Love It or Hate It: A Surprisingly Human (And Very Fun) Conversation About Math - Dr. Jordan Ellenberg, Mathematics Professor at the University of Wisconsin

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Manage episode 499764816 series 2907527
Content provided by Matt Kirchner. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Matt Kirchner or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

What happens when a world-class mathematician meets ’80s college radio, Bill Gates’ top-10 favorite books, and a host with an algebra redemption arc? A surprisingly funny, fast-moving conversation. Dr. Jordan Ellenberg—John D. MacArthur Professor of Mathematics at UW–Madison and author of How Not to Be Wrong—swaps stories about The Housemartins, consulting on NUMB3RS (yes, one of his lines aired), and competing at the International Mathematical Olympiad. There’s a lot of laughter—and a fresh way to see math as culture, craft, and curiosity.

But we also get practical about math education. We discuss the love/hate split students have for math and what it implies for curriculum design; a century of “new” methods (and if anything is truly new); how movie tropes (Good Will Hunting, etc.) shape student identity in math; soccer-drills vs scrimmage as a frame for algebra practice and “honest” applications; grades as feedback vs record; AI shifting what counts as computation vs math; why benchmarks miss the point and the risk of lowering writing standards with LLMs; and a preview of Jordan’s pro-uncertainty thesis.

Listen to Learn:

  • A better answer to “Why am I learning this?” using a soccer analogy
  • The two big off-ramps of math for students, and tactics that keep more students on board
  • How to replace the “born genius” myth with a mindset that helps any student do math
  • When a grade is a record vs. a motivator, and a simple replacement policy that turns a rough start into effort and growth
  • What AI will and won’t change in math class, and why “does it help create new math?” matters more than benchmark scores

3 Big Takeaways from this Episode:

1. Math mastery comes from practice plus meaning, not a “born genius.” Jordan puts it plainly: “genius is a thing that happens, not a kind of person,” and he uses the soccer drills vs scrimmage analogy to pair targeted practice with real tasks, with algebraic manipulation as a core high school skill. He urges teachers to “throw a lot of spaghetti at the wall” so different explanations land for different students, because real innovation is iterative and cooperative.

2. Students fall off at fractions and Algebra I. How do we pull them back? Jordan names those two moments as the big off-ramps and points to multiple representations, honest applications, and frequent low‑stakes practice to keep kids in. Matt’s own algebra story shows how a replacement policy turned failure into effort and persistence, reframing grades as motivation rather than just record‑keeping.

3. AI will shift our capabilities and limits in math, but math is still a human task. Calculators and Wolfram already do student‑level work, and Jordan argues benchmarks like DeepMind vs the International Mathematical Olympiad matter less than whether tools help create new mathematics. He also warns against letting LLMs lower writing standards and says the real test is whether these systems add substantive math, not just win contests.

Resources in this Episode:

We want to hear from you! Send us a text.

Instagram - Facebook - YouTube - TikTok - Twitter - LinkedIn

  continue reading

233 episodes

Artwork
iconShare
 
Manage episode 499764816 series 2907527
Content provided by Matt Kirchner. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Matt Kirchner or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

What happens when a world-class mathematician meets ’80s college radio, Bill Gates’ top-10 favorite books, and a host with an algebra redemption arc? A surprisingly funny, fast-moving conversation. Dr. Jordan Ellenberg—John D. MacArthur Professor of Mathematics at UW–Madison and author of How Not to Be Wrong—swaps stories about The Housemartins, consulting on NUMB3RS (yes, one of his lines aired), and competing at the International Mathematical Olympiad. There’s a lot of laughter—and a fresh way to see math as culture, craft, and curiosity.

But we also get practical about math education. We discuss the love/hate split students have for math and what it implies for curriculum design; a century of “new” methods (and if anything is truly new); how movie tropes (Good Will Hunting, etc.) shape student identity in math; soccer-drills vs scrimmage as a frame for algebra practice and “honest” applications; grades as feedback vs record; AI shifting what counts as computation vs math; why benchmarks miss the point and the risk of lowering writing standards with LLMs; and a preview of Jordan’s pro-uncertainty thesis.

Listen to Learn:

  • A better answer to “Why am I learning this?” using a soccer analogy
  • The two big off-ramps of math for students, and tactics that keep more students on board
  • How to replace the “born genius” myth with a mindset that helps any student do math
  • When a grade is a record vs. a motivator, and a simple replacement policy that turns a rough start into effort and growth
  • What AI will and won’t change in math class, and why “does it help create new math?” matters more than benchmark scores

3 Big Takeaways from this Episode:

1. Math mastery comes from practice plus meaning, not a “born genius.” Jordan puts it plainly: “genius is a thing that happens, not a kind of person,” and he uses the soccer drills vs scrimmage analogy to pair targeted practice with real tasks, with algebraic manipulation as a core high school skill. He urges teachers to “throw a lot of spaghetti at the wall” so different explanations land for different students, because real innovation is iterative and cooperative.

2. Students fall off at fractions and Algebra I. How do we pull them back? Jordan names those two moments as the big off-ramps and points to multiple representations, honest applications, and frequent low‑stakes practice to keep kids in. Matt’s own algebra story shows how a replacement policy turned failure into effort and persistence, reframing grades as motivation rather than just record‑keeping.

3. AI will shift our capabilities and limits in math, but math is still a human task. Calculators and Wolfram already do student‑level work, and Jordan argues benchmarks like DeepMind vs the International Mathematical Olympiad matter less than whether tools help create new mathematics. He also warns against letting LLMs lower writing standards and says the real test is whether these systems add substantive math, not just win contests.

Resources in this Episode:

We want to hear from you! Send us a text.

Instagram - Facebook - YouTube - TikTok - Twitter - LinkedIn

  continue reading

233 episodes

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