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Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta] artwork
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Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta]

Machine Learning Street Talk by Machine Learning Street Talk (MLST)

Jan 23, 202600:53:37Technology

Professor Mazviita Chirimuuta joins us for a fascinating deep dive into the philosophy of neuroscience and what it really means to understand the mind.*What can neuroscience actually tell us about how the mind works?* In...

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Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta] is an episode from Machine Learning Street Talk by Machine Learning Street Talk (MLST). Professor Mazviita Chirimuuta joins us for a fascinating deep dive into the philoso...

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Published Jan 23, 2026, 00:53:37 long, audio available.

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What is Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta] about?

Professor Mazviita Chirimuuta joins us for a fascinating deep dive into the philosophy of neuroscience and what it really means to understand the mind.*What can neuroscience actually tell us about how the mind works?* In this thought-provoking conversation, we explore the hidden assumptions behind computational theories of the brain, the limits of scientific abstraction, and why the question of machine consciousness might be more complicated than AI researchers assume.Mazviita, author of *The Brain Abstracted,* brings a unique perspective shaped by her background in both neuroscience research and philosophy. She challenges us to think critically about the metaphors we use to understand cognition — from the reflex theory of the late 19th century to today's dominant view of the brain as a computer.*Key topics explored:**The problem of oversimplification* — Why scientific models necessarily leave things out, and how this can sometimes lead entire fields astray. The cautionary tale of reflex theory shows how elegant explanations can blind us to biological complexity.*Is the brain really a computer?* — Mazviita unpacks the philosophical assumptions behind computational neuroscience and asks: if we can model anything computationally, what makes brains special? The answer might challenge everything you thought you knew about AI.*Haptic realism* — A fresh way of thinking about scientific knowledge that emphasizes interaction over passive observation. Knowledge isn't about reading the "source code of the universe" — it's something we actively construct through engagement with the world.*Why embodiment matters for understanding* — Can a disembodied language model truly understand? Mazviita makes a compelling case that human cognition is deeply entangled with our sensory-motor engagement and biological existence in ways that can't simply be abstracted away.*Technology and human finitude* — Drawing on Heidegger, we discuss how the dream of transcending our physical limitations through technology might reflect a fundamental misunderstanding of what it means to be a knower.This conversation is essential viewing for anyone interested in AI, consciousness, philosophy of mind, or the future of cognitive science. Whether you're skeptical of strong AI claims or a true believer in machine consciousness, Mazviita's careful philosophical analysis will give you new tools for thinking through these profound questions.---TIMESTAMPS:00:00:00 The Problem of Generalizing Neuroscience00:02:51 Abstraction vs. Idealization: The "Kaleidoscope"00:05:39 Platonism in AI: Discovering or Inventing Patterns?00:09:42 When Simplification Fails: The Reflex Theory00:12:23 Behaviorism and the "Black Box" Trap00:14:20 Haptic Realism: Knowledge Through Interaction00:20:23 Is Nature Protean? The Myth of Converging Truth00:23:23 The Computational Theory of Mind: A Useful Fiction?00:27:25 Biological Constraints: Why Brains Aren't Just Neural Nets00:31:01 Agency, Distal Causes, and Dennett's Stances00:37:13 Searle's Challenge: Causal Powers and Understanding00:41:58 Heidegger's Warning & The Experiment on Children---REFERENCES:Book:[00:01:28] The Brain Abstracted The Integrated Action of the Nervous System The Quest for Certainty (Dewey) Realism for Realistic People (Chang) see ReScript>---RESCRIPT: Transcript:

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Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta] is an episode from Machine Learning Street Talk by Machine Learning Street Talk (MLST).

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This episode is 00:53:37 long.

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This episode was published on Jan 23, 2026.

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Where can I listen to Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta]?

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Which podcast is this episode from?

Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta] is from Machine Learning Street Talk by Machine Learning Street Talk (MLST).

What are the episode details?

Published Jan 23, 2026 and 00:53:37 long