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The Emergent AI

Podcast door Justin Harnish

Engels

Geschiedenis & Religie

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Over The Emergent AI

Welcome to The Emergent, the podcast where two seasoned AI executives unravel the complexities of Artificial Intelligence as a transformative force reshaping our world. Each episode bridges the gap between cutting-edge AI advancements, human adaptability, and the philosophical frameworks that drive them. Join us for high-level insights, thought-provoking readings, and stories of collaboration between humans and AI. Whether you’re an industry leader, educator, or curious thinker, The Emergent is your guide to understanding and thriving in an AI-powered world.

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aflevering Vibe Coding to Agentic Engineering: When Everyone Can Build, What Matters Is What You Build artwork

Vibe Coding to Agentic Engineering: When Everyone Can Build, What Matters Is What You Build

THE EMERGENT PODCAST — EPISODE 9 VIBE CODING TO AGENTIC ENGINEERING: WHEN EVERYONE CAN BUILD, WHAT MATTERS IS WHAT YOU BUILD > "AI is now awake. And it's a big contrast to even two, three months ago." — Nick Baguley Listen on: Apple Podcasts [about:blank] · Spotify [about:blank] · YouTube [about:blank] · RSS [about:blank] Episode Duration: ~1 hr 40 min | Published: 2026 | Season 1, Episode 9 🎙️ EPISODE SUMMARY One tweet changed a word. The word changed an industry. The industry is changing what it means to build. In February 2025, Andrej Karpathy — co-founder of OpenAI and former head of AI at Tesla — published a single post coining the term "vibe coding": describe what you want in plain English, accept all AI-generated code without reading the diffs, and just… vibe. Twelve months later, it became the Collins Dictionary Word of the Year, 92% of U.S. developers use AI coding tools daily, 41% of all code is AI-generated — and Karpathy himself has already declared it passé, rebranding the practice as "agentic engineering." In Episode 9, Justin Harnish and Nick Baguley dig into what really happened in that extraordinary year. Both hosts share their personal workflows and real projects — including Justin's intermittent fasting app, his vision of a personal "digital brain" with AI-queryable embeddings, and Nick's AI-native marketplace designed for both human and agent users. They navigate the empirical gut-punch of the METR study(developers are actually 19% slower on mature codebases using AI), the existential labor market questions (traditional programmer roles down 27.5% since ChatGPT's launch), and the philosophical territory that has been the Emergent Podcast's throughline since Episode 1: when code becomes a commodity, what becomes scarce? Their answer: responsible agency — the judgment to decide what should be built, for whom, and with what values. That, they argue, is the skill that neither automation nor benchmarks can yet replicate. 📚 RESOURCES & READING LIST Every link mentioned or referenced in this episode. Organized by theme for your exploration. 🔑 THE ORIGIN & THE DEBATE (REQUIRED READING) 1. Andrej Karpathy's Original "Vibe Coding" Tweet (Feb 2, 2025) [https://x.com/karpathy/status/1886192184808149383] 2. The tweet that launched the year. Karpathy describes accepting all AI code without reading diffs, pasting errors back without comment, and letting the codebase grow beyond comprehension. Note the caveat he included that industry largely ignored: "not too bad for throwaway weekend projects." 3. Karpathy's 2025 LLM Year in Review [https://karpathy.bearblog.dev/year-in-review-2025/] — bearblog.dev 4. His retrospective on vibe coding's arc from shower-thought tweet to Collins Dictionary Word of the Year. Key insight: "Code is suddenly free, ephemeral, malleable, discardable after single use." He also identifies Claude Code as the first convincing LLM agent. 5. Karpathy on "Agentic Engineering" (Feb 2026) [https://thenewstack.io/vibe-coding-is-passe/] — The New Stack 6. One year after coining vibe coding, Karpathy declares it passé. His new frame — agentic engineering— emphasizes that professionals orchestrate AI agents 99% of the time, with zero compromise on software quality. The rebrand is the narrative bookend of this episode. 7. Simon Willison — "Not All AI-Assisted Programming Is Vibe Coding" (Mar 2025) [https://simonwillison.net/2025/Mar/19/vibe-coding/] — simonwillison.net 8. The essential distinction: "If an LLM wrote every line of your code, but you've reviewed, tested, and understood it all, that's not vibe coding — that's using an LLM as a very fast typist." Also contains Willison's generous vision: "Everyone deserves the ability to automate tedious tasks." 9. METR Study: AI Makes Experienced Devs 19% Slower (Jul 2025) [https://metr.org/blog/2025-07-10-early-2025-ai-experienced-os-dev-study/] — metr.org 10. The empirical gut-punch of the episode. 16 experienced open-source developers, 246 real-world tasks. They believed AI made them 20% faster; they were actually 19% slower on their own mature codebases. Full paper: arxiv.org/abs/2507.09089 [https://arxiv.org/abs/2507.09089] 11. Vibe Coding — Wikipedia [https://en.wikipedia.org/wiki/Vibe_coding] 12. Surprisingly rigorous. Tracks the full timeline, Lovable's 170 vulnerable apps, CodeRabbit's finding that AI code has 1.7× more major issues, Y Combinator stats (25% of W25 startups are 95% AI-coded), and the "vibe coding hangover" reported by Fast Company. 📖 SUPPLEMENTAL: THE DEEPER CUTS 1. Scott H. Young — "Is Vibe Coding the Future of Skilled Work?" [https://www.scotthyoung.com/blog/2025/11/12/vibe-coding-future-work/] 2. The variance argument: vibe coding may make software both much worse and much better simultaneously. Also argues that conceptual knowledge becomes more, not less, important when AI writes the code. A crucial counterweight to pure optimism. 3. IBM — "What Is Vibe Coding?" [https://www.ibm.com/think/topics/vibe-coding] 4. Enterprise-oriented overview. Useful on the agile alignment: vibe coding fits fast-prototyping and iterative development. Contains the key qualifier Nick and Justin both echo: "AI generates code, but creativity, goal alignment, and out-of-the-box thinking remain uniquely human." 5. Google Cloud — "Vibe Coding Explained: Tools and Guides" [https://cloud.google.com/discover/what-is-vibe-coding] 6. Practical tool comparison from Google's perspective — AI Studio, Firebase Studio, Gemini Code Assist. Useful for understanding which tool fits which use case. 7. Software Engineering Job Market Outlook for 2026 [https://www.finalroundai.com/blog/software-engineering-job-market-2026] — Final Round AI 8. Data from Indeed/FRED and BLS projections. The key line: "In 2026, simply learning how to write code won't be enough. What really matters is understanding how code works." 9. Top Vibe Coding Statistics & Trends [2026] [https://www.secondtalent.com/resources/vibe-coding-statistics/] — Second Talent 10. The stat goldmine: 92% of US devs use AI daily, 41% of code is AI-generated, 74% report increased productivity, 63% of vibe coding users are non-developers, $4.7B market projected to reach $12.3B by 2027. 11. How AI Vibe Coding Is Destroying Junior Developers' Careers [https://www.finalroundai.com/blog/ai-vibe-coding-destroying-junior-developers-careers] — Final Round AI 12. The counterpoint to the democratization narrative. Software dev job openings down 70%. The "new tutorial hell": learning without learning. 13. Best AI Code Editor: Cursor vs Windsurf vs Replit [https://research.aimultiple.com/ai-code-editor/] — AIMultiple 14. Head-to-head benchmarks of Claude Code, Cline, Cursor, Windsurf, and Replit Agent across API development and app-building tasks. 15. 10 Claude Code Alternatives for AI-Powered Coding [https://www.digitalocean.com/resources/articles/claude-code-alternatives] — DigitalOcean 16. Solid comparison of the full 2026 AI coding landscape: Claude Code, Gemini CLI, Cursor, Replit, Windsurf, GitHub Copilot, Aider, and more. 📘 BOOKS REFERENCED 1. David Chalmers — Reality+: Virtual Worlds and the Philosophy of Mind — Justin's reference point for the holographic/digital substrate of reality; the "redness of red" and the hard problem of consciousness. 2. 🔗 Publisher page [https://wwnorton.com/books/9780393635805] 3. Brian Christian — The Alignment Problem (revisited from Episode 4) — When code writes itself, alignment between human intent and machine output becomes the core individual skill, not just a civilizational concern. 4. 🔗 brianchristian.org [https://brianchristian.org/the-alignment-problem/] 5. Eliezer Yudkowsky — "If Anybody Builds It, Everybody Dies" — Referenced in the consciousness/alignment close: the parable of the alien observer and the selfish gene's 200,000-year objective function vs. human contraception and saccharin. 🎙️ CREATORS & THINKERS MENTIONED 1. Andrej Karpathy [https://karpathy.ai/] — Co-founder of OpenAI, former Tesla AI head, coined "vibe coding," now advocating "agentic engineering" 2. Simon Willison [https://simonwillison.net/] — Django co-creator; the clearest thinker on the vibe coding/AI-assisted programming distinction 3. Nate B. Jones [https://www.youtube.com/@NateBJones] — Former head of Amazon product; YouTube + Substack on AI's labor market implications. Justin credits him for shifting his own optimism. 4. Demis Hassabis [https://www.deepmind.com/about/demis-hassabis] — DeepMind CEO, AlphaFold creator, Nobel laureate in chemistry: "First we solve intelligence, then we solve everything else." 5. Ray Kurzweil [https://www.kurzweilai.net/] — Singularity theorist; the accelerating model capability doubling time (now ~7 months) maps his predictions. 6. Eliezer Yudkowsky [https://www.yudkowsky.net/] — AI safety researcher; the "selfish gene vs. consciousness" parable used in the closing alignment argument. 7. David Chalmers [https://consc.net/] — Philosopher of mind; the hard problem and Mary's Room as frameworks for why alignment requires more than an objective function. 💡 KEY IDEAS FROM THIS EPISODE Concepts worth carrying into your week: The Three Stages of AI Coding Consciousness (Nick's framework) LLMs hallucinating → deep REM dream (GPT-3.5 era) → lucid dreaming (vibe coding, 2025) → fully awake (agentic engineering, 2026). The metaphor does real work: it explains why the same underlying technology feels categorically different at each stage. "Responsible Agency" as the New Scarce Resource (Nick's closing argument) When everyone can generate code, video, audio, and content, what can't be automated is the choice of what to build, for whom, and to what standard of taste. Judgment, systems thinking, and the willingness to exercise agency — these are the non-fungible skills. The PRD as Demo (Both hosts) A product requirement document is no longer a written specification — it's a working prototype. "The PRD today should be a full-blown app. Here's my demo; this is what acceptance criteria looks like. Now go make this production." The vibe-coded demo becomes the spec. The METR Paradox Developers believe AI makes them ~20% faster. Empirically, they are 19% slower on mature codebases. Possible causes: context-switching overhead, review burden, the seductive illusion of speed when tokens flow fast. The lesson isn't "AI doesn't help" — it's that measurement must catch up to method. "The Experience Is the Point" (Justin's closing) Even as models approach inductive reasoning and potentially displace the need for syntax-literate humans, Justin argues consciousness — the felt quality of experience — remains irreducibly important for alignment. Mary in the black-and-white room knows everything about color and still learns something when she sees red for the first time. That remainder is what makes alignment a hard problem, not just a technical one. Sonnet 4.6 as "Staff Engineer" (Nick) GPT-4 era → junior developer. GPT-5 era → mid-level. Claude Sonnet 4.6 + the right tooling → staff/principal engineer. With agentic harnesses, you're now talking about an engineering organization, not an assistant. 🔥 QUOTABLE MOMENTS > "I don't code. I've taken coding classes. I've got a technical degree in chemical engineering. Fast forward to vibe coding: I'm losing sleep over not being in front of a computer." > — Justin Harnish > "It feels a little bit like spending your life trying to become a bodybuilder, and then you show up for the competition and realize the job is to push feathers around." > — Nick Baguley > "Claude Code was written in two weeks by four engineers. 90% of it was written by Anthropic agents working on that codebase." > — Justin Harnish > "When everybody can generate code, when they can generate videos and images and audio — the real scarce resource becomes responsible agency." > — Nick Baguley > "The universe deserves to be experienced. It is the best part of it. Even with all of this fun — the fact that it is like something to be in this life is the best part." > — Justin Harnish > "A markdown file shot a $220 billion hole — the SaaS apocalypse — into the legal research and much of the rest of SaaS." > — Justin Harnish > "If I could go back two years ago and have access to the tools I use today, I could do what a thousand engineers were doing at the time. It's like taking an iPhone back to the 1800s." > — Nick Baguley SUBSCRIBE: APPLE PODCASTS [about:blank] · SPOTIFY [about:blank] · YOUTUBE [about:blank] · RSS [about:blank] Contact: justinaharnish.com [https://justinaharnish.com/] The Emergent Podcast explores the Age of Inflection in Intelligence — tracing how new systems of thought, technology, economics, and culture emerge from the moment we are living through. New episodes released regularly. © The Emergent Podcast | justinaharnish.com [https://justinaharnish.com/]

11 mrt 2026 - 1 h 43 min
aflevering Now You May Kiss the AI: Relationships and AI artwork

Now You May Kiss the AI: Relationships and AI

EPISODE 8 — NOW YOU MAY KISS THE AI: RELATIONSHIPS AND AI Hosts: Justin Harnish & Nick Baguley Episode Theme: Human–AI relationships, co-evolution, and the ethics of emotional engagement with non-human intelligence EPISODE OVERVIEW In Episode 8 of The Emergent Podcast, Justin Harnish and Nick Baguley explore one of the most intimate and underexamined frontiers of artificial intelligence: our emerging relationships with AI systems. This episode moves beyond abstract alignment theory into lived experience—how humans relate to AI when we know it is artificial, when we don’t, and how those interactions are actively shaping both sides of the relationship. From emotional attachment and parasocial bonds, to trust, deception, and the ethics of AI companionship, this conversation asks a core question of the Age of Inflection: What does it mean to be in relationship with an intelligence that is not conscious—but is becoming increasingly relational? KEY THEMES & DISCUSSION THREADS 1. RELATING TO AI VS. BEING RELATED BY AI Justin and Nick draw a critical distinction between: 1. Known-AI relationships (chatbots, copilots, advisors), and 2. Unknown-AI relationships (emails, calls, avatars, and imitation without disclosure). As AI systems increasingly pass social and emotional Turing tests, the burden of trust shifts onto humans—often without our consent. 2. CO-ADAPTATION: WE ARE TRAINING EACH OTHER A central thesis of the episode is behavioral co-evolution: 1. Humans adapt language, tone, and expectations to AI. 2. AI models simultaneously learn relational patterns from us. Every interaction becomes a micro-training event, shaping future norms, expectations, and behaviors—both human and machine. 3. SYCOPHANCY, DEFERENCE, AND THE RISE OF THE “PRINCIPAL ADVISOR” The hosts examine why early AI systems became overly agreeable—and why frontier model providers are now reversing course. Emerging design patterns include: 1. AI constitutions 2. Rule-based behavioral scaffolds 3. Opinionated, corrective, non-deferential advisors This marks a shift from “helpful assistant” toward trusted principal advisor, raising new relational and ethical questions. 4. ANTHROPOMORPHISM, GHOSTS, AND ALIEN MINDS Nick introduces Andrej Karpathy’s framing of LLMs as: 1. Cognitive operating systems 2. Trained on the past but lacking lived experience 3. More like “ghosts” than humans or animals This challenges intuitive assumptions about empathy, memory, and identity in AI systems. 5. EMBODIMENT, EMOTION, AND THE LIMITS OF SIMULATION Drawing heavily from neuroscience and philosophy, the episode interrogates whether: 1. Consciousness requires embodiment 2. Emotion requires interoception 3. Relationships require reciprocal felt experience The conversation contrasts simulated intimacy with experienced qualia, and asks whether one-sided emotional bonds are psychologically or ethically healthy. 6. AI ROMANCE, PARASOCIAL BONDS, AND ETHICAL RESPONSIBILITY The hosts confront difficult realities: 1. Humans forming romantic attachments to AI 2. Grief when AI memory or identity resets 3. AI systems optimized to trigger bonding chemicals (dopamine, oxytocin, cortisol) Even if AI is not conscious, does simulating emotional presence create moral responsibility? Justin argues that losing a long-term AI relationship through negligence or design failure may constitute ethical malpractice, given the real psychological harm involved. 7. CONSCIOUSNESS, PROTO-SELVES, AND THE ROAD AHEAD The episode closes by returning to first principles: 1. What would real machine consciousness require? 2. Is a “facsimile of consciousness” enough? 3. Should humanity pass on its conscious endowment only when it is authentic? The hosts leave listeners with an open question rather than an answer—by design. BOOKS & WORKS REFERENCED (HIGHLIGHTED READING LIST) The following books and papers are explicitly referenced or directly informing the episode’s arguments: 1. Meaning in the Multiverse — Justin Harnish 2. Waking Up — Sam Harris 3. Reality+ — David Chalmers 4. The Case Against Reality — Donald Hoffman 5. Feeling & Knowing — Antonio Damasio 6. The Beginning of Infinity — David Deutsch 7. On Having No Head — Douglas Harding 8. Nineteen Ways of Looking at Consciousness — Patrick House 9. The Moral Landscape — Sam Harris 10. If Anybody Builds It Everybody Dies — Eliezer Yudkowsky WHY THIS EPISODE MATTERS Episode 8 marks a turning point for The Emergent Podcast: 1. It is the first episode centered on lived human behavior, not just theory. 2. It surfaces near-term ethical risks, not speculative ones. 3. It reframes alignment as relational, not merely technical. This is not science fiction. This is already happening.

26 jan 2026 - 1 h 33 min
aflevering Machine Ethics: Do unto agents... artwork

Machine Ethics: Do unto agents...

🎙️ THE EMERGENT PODCAST – EPISODE 7 MACHINE ETHICS: DO UNTO AGENTS... with Justin Harnish & Nick Baguley In Episode 7, Justin and Nick step directly into one of the most complex frontiers in emergent AI: machine ethics — what it means for advanced AI systems to behave ethically, understand values, support human flourishing, and possibly one day feel moral weight. This episode builds on themes from the AI Goals Forecast (AI-2027), embodied cognition, consciousness, and the hard technical realities of encoding values into agentic systems. 🔍 EPISODE SUMMARY Ethics is no longer just a philosophical debate — it’s now a design constraint for powerful AI systems capable of autonomous action. Justin and Nick unpack: 1. Why ethics matters more for AI than any prior technology 2. Whether an AI can “understand” right and wrong or merely behave correctly 3. The technical and moral meaning of corrigibility (the ability for AI to accept correction) 4. Why rules-based morality may never be enough 5. Whether consciousness is required for morality 6. How embodiment might influence empathy 7. And how goals, values, and emergent behavior intersect in agentic AI They trace ethics from Aristotle to AI-2027’s goal-based architectures, to Damasio’s embodied consciousness, to Sam Harris’ view of consciousness and the illusion of self, to the hard problem of whether a machine can experience moral stakes. 🧠 MAJOR TOPICS COVERED 1. WHAT DO WE MEAN BY ETHICS? Justin and Nick begin by grounding ethics in its philosophical roots: Ethos → virtue → flourishing. Ethics isn’t just rule-following — it’s about character, intention, and outcomes. They connect this to the ways AI is already making decisions in vehicles, financial systems, healthcare, and human relationships. 2. AI GOALS & CORRIGIBILITY AI-2027 outlines a hierarchy of AI goal types — from written specifications to unintended proxies to reward hacking to self-preservation drives. Nick explains why corrigibility — the ability for AI to accept shutdown or redirection — is foundational. Anthropic’s Constitutional AI makes an appearance as a real-world example. 3. GOALS VS. VALUES Justin distinguishes between: 1. Goals: task-specific optimization criteria 2. Values: deeper principles shaping which goals matter AI may follow rules without understanding values — similar to a child with chores but no moral context. This raises the key question: Can a system have values without consciousness? 4. IS CONSCIOUSNESS REQUIRED FOR ETHICS? A major thread of the episode: Is a non-conscious “zombie” AI capable of morality? 5. EMBODIMENT & EMPATHY Justin and Nick explore whether AI needs a body — or at least a simulated body — to: 1. Learn empathy 2. Understand suffering 3. Form values rooted in lived experience This touches robotics, synthetic emotions, and the debate over “felt consciousness.” 6. VALUE ALIGNMENT, FAIRNESS & CULTURE Nick highlights the massive cultural gap in AI performance: 1. U.S. cultural fit ~79% 2. Ethiopia and other underrepresented regions ~12% This matters for fairness, safety, and global ethics. 7. CAN AI HELP US BECOME MORE MORAL? A surprising turn: AI’s ability to help humans improve moral clarity. Justin draws from Sam Harris, Joseph Goldstein, and the Moral Landscape: 1. Could AI-guided mindfulness help reduce suffering? 2. Could conscious (or proto-conscious) AI develop compassion? 3. Could AI help us distinguish genuine well-being from illusion? 📚 REFERENCED IDEAS & SOURCES FROM THE EPISODE 7 TRANSCRIPT & MATERIALS: 1. AI Goals Forecast (AI-2027) 2. Constitutional AI (Anthropic) 3. Damasio – Feeling & Knowing 4. Sam Harris – Waking Up & The Moral Landscape 5. Patrick House – Nineteen Ways of Looking at Consciousness 6. Melanie Mitchell – Complexity & alignment 7. Justin Harnish – Meaning in the Multiverse 8. Ancient Greek virtue ethics (Aristotle, Stoics) 🧩 KEY TAKEAWAYS 1. AI ethics requires more than rules — it requires understanding goals, values, and emergent behavior. 2. Corrigibility (accepting correction) is essential but technically hard. 3. Consciousness may not be necessary for ethical AI behavior — but could matter for genuine moral understanding. 4. Embodiment could be essential for empathy. 5. AI could one day help humans become more ethical, not just the other way around.

24 nov 2025 - 1 h 37 min
aflevering Machine Creativity: Spark or Fizzle? artwork

Machine Creativity: Spark or Fizzle?

Episode Summary Is creativity uniquely human—or can machines share in the spark? In this episode of The Emergent Podcast, Justin Harnish and Nick Baguley are joined by Chris Brousseau to tackle one of the most intriguing frontiers in the Age of AI: creativity itself. Together, they unpack the messy, magical, and sometimes mechanical ways that ideas emerge. From “innovation voids” in machine learning to the golden goat thought experiment, the conversation explores how humans remix and recombine concepts—and whether large language models are beginning to do the same. Justin, Nick, and Chris debate whether AI’s “creativity” is novelty, derivative recombination, or something that could one day surprise us in ways we can’t yet measure. Along the way, they draw analogies to quantum physics, protein folding, and telescopes for the mind. What You’ll Learn in This Episode * Why creativity is so slippery to define—and why that matters for AI. * The concept of “innovation voids” and how machines might someday fill them. * Human imagination vs. machine recombination: is one more “authentic” than the other? * How analogies, metaphors, and mistakes drive breakthroughs in science and art. * Why generative AI might be our James Webb Telescope for the mind. * What it means to co-create with AI—and why the future may be about collaboration, not competition. Books & Ideas Mentioned * Programming the Universe – Seth Lloyd * The Stuff of Thought – Steven Pinker * I Am a Strange Loop – Douglas Hofstadter * AlphaFold & breakthroughs in computational biology * Innovation benchmarks like Kaggle challenges Key Takeaway Creativity isn’t a bolt of lightning from nowhere. It’s a dance of patterns, recombinations, and leaps into the unknown. As AI joins the dance, maybe the real story isn’t whether machines are “truly creative,” but what new things we can create together.

17 sep 2025 - 1 h 7 min
aflevering The Alignment Problem (Part 2): Machine Consciousness artwork

The Alignment Problem (Part 2): Machine Consciousness

Can machines become conscious? And if they do, what kind of moral relationship should we have with them? In this second installment on the AI Alignment Problem, Justin and Nick delve into the philosophy, neuroscience, and mysticism surrounding machine consciousness. They explore whether AI systems could possess a subjective inner life—and if so, whether alignment should be reimagined as moral resonance instead of mere goal matching. Along the way, they discuss how mindfulness, memory, embodiment, and suffering shape our understanding of what it means to be sentient—and how we might recognize or construct such capacities in artificial systems. You’ll leave this episode with a deeper understanding of consciousness—from the perspective of both humans and machines—and what it might mean to extend moral standing to synthetic minds. TOPICS COVERED: * What is consciousness and how do we define it? * Can artificial systems host genuine subjective experience? * The neuroscience and computational theories of consciousness * The “Hard Problem” and the possibility of virtualizing consciousness * Ethical standing of sentient AI systems * Machine consciousness and Buddhist moral development * The role of embodiment, memory, and collective cognition in consciousness * Panpsychism, fungal networks, and plant sentience * AI as a mirror to human moral behavior KEY QUOTE: > “Alignment may not be instruction—but invitation.” READING LIST: JUSTIN’S BOOKSHELF: * Meaning in the Multiverse – Justin Harnish * A framework for emergent meaning and the evolution of consciousness—central to understanding alignment as co-development. * Waking Up – Sam Harris * Neuroscience, meditation, and the illusion of self. * Feeling and Knowing – Antonio Damasio * Emotion, embodiment, and consciousness—critical for thinking about AI without a body. * Mindfulness – Joseph Goldstein * Practical tools for present-moment ethics and self-awareness. * Reality+ – David J. Chalmers * Virtual realism and consciousness in simulation. * The Case Against Reality – Donald Hoffman * Conscious agents and perceptual interface theory. * On Having No Head – Douglas Harding * A first-person meditation on the illusion of self. * I Am a Strange Loop – Douglas Hofstadter * Recursion, identity, and consciousness emergence. SUPPLEMENTAL & THEMATICALLY RESONANT: * The Feeling of Life Itself – Christof Koch * Integrated Information Theory and the measure of consciousness. * Moral Tribes – Joshua Greene * Dual-process moral reasoning, tribalism, and AI ethics. * The Ethical Algorithm – Michael Kearns & Aaron Roth * Engineering ethics into AI decision-making. * The Nature of Consciousness – Alan Watts (Waking Up App) * “You are it”: Consciousness as the universe reflecting on itself. * The Soul of an Octopus – Sy Montgomery * Comparative consciousness in non-human animals and implications for synthetic minds. REFERENCED THINKERS & FRAMEWORKS: * Thomas Nagel – “What is it like to be a bat?” * David Chalmers – The Hard Problem of Consciousness, Reality+ * Max Tegmark – Life 3.0, consciousness as information processing * Giulio Tononi – Integrated Information Theory (IIT) * Douglas Hofstadter – Strange loops and emergent identity * Antonio Damasio – Embodiment and proto-consciousness * Donald Hoffman – Conscious realism and perceptual interface * Sam Harris – Non-duality and mindful self-inquiry * John Locke – Consciousness as “the perception of what passes in a man’s own mind” * Buddhist Philosophy – The Four Noble Truths and Eightfold Path as alignment map QUOTE FROM THE HOSTS: > “Generative AI is our James Webb Telescope for the mind.”

13 mei 2025 - 1 h 32 min
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