Unsupervised Learning with Jacob Effron

by Redpoint Ventures

We probe the sharpest minds in AI in search for the truth about what’s real today, what will be real in the future and what it all means for businesses and the world. If you’re a builder, researcher or investor navigating the AI world, this podcast will help you deconstruct and understand the most important breakthroughs and see a clearer picture of reality. Follow this show and consider enabling notifications to stay up to date on our latest episodes. Unsupervised Learning is a podcast by Redpoint Ventures, an early-stage venture capital fund that has invested in companies like Snowflake, Stripe, and Mistral. Hosted by Redpoint investor Jacob Effron alongside Patrick Chase, Jordan Segall and Erica Brescia.

  1. 4天前

    Ep 78: Jordan Schneider, Host of China Talk, on AI Race, Key Policy Decisions & Unpacking Geopolitical Chip Tension

    This week on Unsupervised Learning, Jacob Effron is joined by Jordan Schneider, host of China Talk, who challenges widespread assumptions about US-China AI competition. China's AI development is driven by private capital and market competition—not central government planning—with companies like DeepSeek, Alibaba, and ByteDance operating more like Silicon Valley startups than state projects. The critical bottleneck is compute: the West maintains a 10-15x advantage in advanced chips, and US export controls implemented one month before ChatGPT created a structural edge favoring America for years. Chinese companies aggressively open-source models from strategic necessity—they couldn't establish a quality gap justifying paid access like OpenAI. Jordan explains why the "Goldilocks strategy" of controlled chip dependency fails, why expert consensus opposes selling advanced semiconductors to China despite Nvidia's lobbying, and how Taiwan's invasion risk is driven more by domestic politics than AGI scenarios. China's real advantage may emerge in robotics manufacturing at scale, where they're already deploying while the US debates strategy.   Inside the Politburo's AI Study Session: https://www.chinatalk.media/p/xi-takes-an-ai-masterclass Submit your questions to Jacob here: https://docs.google.com/forms/d/1vHBYv0bTT_EgFWTjbKnLr_sn3pZnFmcFGWYVTltKEco/edit   (0:00) Intro (1:45) The Chinese AI Ecosystem: Pre and Post ChatGPT (3:45) Government Influence and Private Sector Dynamics (6:40) Venture Funding and Major Players (8:36) Talent and International Collaboration (11:25) Open Source Models and Market Dynamics (15:24) What Role Does The Chinese Government Play? (31:17) US-China AI Policy and Strategic Competition (36:18) The Argument for Selling AI Accelerators (37:02) Risks of Not Selling to China (43:34) Technological Constraints and Huawei's Challenges (51:18) US-China Relations and Taiwan (1:02:46) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    1 小时 13 分钟
  2. 12月2日

    Ep 77: Anthropic’s Dianne Na Penn on Opus 4.5, Rethinking Model Scaffolding & Safety as a Competitive Advantage

    This episode features Dianne Na Penn, a senior product leader at Anthropic, discussing the launch of Claude Opus 4.5 and the evolution of frontier AI models. The conversation explores how Anthropic approaches model development—balancing ambitious capability roadmaps with user feedback, making strategic bets on areas like agentic coding and computer use while deliberately avoiding others like image generation. Dianne shares insights on the shifting nature of AI evaluation (moving beyond saturated benchmarks like SWE-bench toward more open-ended measures), the evolution of scaffolding from "training wheels" to intelligence amplifiers, and why she believes we're closer to transformative long-running AI than most people think. She also discusses Anthropic's distinctive culture of authenticity, the under appreciated benefits of model alignment for producing independent-thinking AI, and why the real bottleneck to AI agents isn't model capability anymore but product innovation.   (0:00) Intro (0:57) Starting the Work on Opus 4.5 (2:04) Model Capabilities and Surprises (5:59) Computer Use and Practical Applications (7:21) Pricing and Positioning (10:02) Customer Feedback and Early Access (16:44) The Reality of Enterprise Agents (18:47) Future of AI and Long-Running Intelligence (28:06) Anthropic's Culture and Decision Making (30:31) Key Decisions and Fun Moments (33:45) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    42 分钟
  3. 11月3日

    Ep 76: Sora Creators Bill Peebles, Rohan Sahai & Thomas Dimson on Their Unexpected Viral Success

    This episode features the core team behind Sora, OpenAI's groundbreaking video generation platform that became the #1 app in the App Store. Bill Peebles (research lead), Rohan Sahai (product lead), and Thomas Dimson (engineering/product lead with Instagram background) discuss the unexpected viral success of Sora's launch, the product journey that led to the breakthrough "cameo" feature (putting yourself in AI-generated videos), and their philosophy of building a creator-first social network that prioritizes human creativity over passive consumption. They reveal the technical milestones in video generation, their small team size (under 50 people total at launch), navigation of content moderation challenges, early monetization strategy, and their ambitious vision for video models as world simulators that could eventually contribute to scientific breakthroughs by 2028. The conversation captures both the tactical product decisions and strategic philosophy that made Sora a cultural phenomenon.   (0:00) Intro (1:35) Unexpected Success of ChatGPT and Sora (3:55) Sora as an Independent App (5:38) Sora Prototypes and Evolution (8:07) User Creativity and Surprising Use Cases (14:46) Celebrity Engagement and Rights Management (17:58) Competition and Future of AI Video Models (25:42) Empowering Creators (31:21) The Evolution of Image Generation (33:36) How Do Models Need to Improve? (42:10) Monetization of Sora (45:54) Global Reach and Cultural Impact (48:38) Moderation and Safety Challenges (50:09) Integration with Other OpenAI Products (52:07) How do Models Learn Physics? (55:16) Quickfire   With your co-hosts:   @jacobeffron   - Partner at Redpoint, Former PM Flatiron Health   @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn   @ericabrescia   - Former COO Github, Founder Bitnami (acq’d by VMWare)   @jordan_segall   - Partner at Redpoint

    1 小时 3 分钟
  4. 10月24日 · 附赠内容

    AI Round Up: Ari Morcos from Datalogy AI and Rob Toews from Radical VC on Karpathy Reactions, OpenAI’s Dealmaking, & Bubble Reality Check

    This episode features Rob Toews from Radical Ventures and Ari Morcos, Head of Research at Datology AI, reacting to Andrej Karpathy's recent statement that AGI is at least a decade away and that current AI capabilities are "slop." The discussion explores whether we're in an AI bubble, with both guests pushing back on overly bearish narratives while acknowledging legitimate concerns about hype and excessive CapEx spending. They debate the sustainability of AI scaling, examining whether continued progress will come from massive compute increases or from efficiency gains through better data quality, architectural innovations, and post-training techniques like reinforcement learning. The conversation also tackles which companies truly need frontier models versus those that can succeed with slightly-behind-the-curve alternatives, the surprisingly static landscape of AI application categories (coding, healthcare, and legal remain dominant), and emerging opportunities from brain-computer interfaces to more efficient scaling methods.   (0:00) Intro (1:04) Debating the AI Bubble (1:50) Over-Hyping AI: Realities and Misconceptions (3:21) Enterprise AI and Data Center Investments (7:46) Consumer Adoption and Monetization Challenges (8:55) AI in Browsers and the Future of Internet Use (14:37) Deepfakes and Ethical Concerns (26:29) AI's Impact on Job Markets and Training (31:38) Google and Anthropic: Strategic Partnerships (34:51) OpenAI's Strategic Deals and Future Prospects (37:12) The Evolution of Vibe Coding (44:35) AI Outside of San Francisco (48:09) Data Moats in AI Startups (50:38) Comparing AI to the Human Brain (56:07) The Role of Physical Infrastructure in AI (56:55) The Potential of Chinese AI Models (1:03:15) Apple's AI Strategy (1:12:35) The Future of AI Applications   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    1 小时 17 分钟
  5. 9月24日 · 附赠内容

    AI Round Up: Ari Morcos from Datalogy AI and Rob Toews from Radical VC on AI Talent Wars, xAI’s $200B Valuation, & Google’s Comeback

    This episode features a deep dive into the current state of AI model progress with Ari Morcos (CEO of Datalogy AI and former DeepMind/Meta researcher) and Rob Toews (partner at Radical Ventures). The conversation tackles whether model progress is genuinely slowing down or simply shifting into new paradigms, exploring the role of reinforcement learning in scaling capabilities beyond traditional pre-training. They examine the talent wars reshaping AI labs, Google's resurgence with Gemini, the sustainability of massive valuations for companies like OpenAI and Anthropic, and the infrastructure ecosystem supporting this rapid evolution. The discussion weaves together technical insights on data quality, synthetic data generation, and RL environments with strategic perspectives on acquisitions, regulatory challenges, and the future intersection of AI with physical robotics and brain-computer interfaces.   (0:00) Intro (2:59) Debate on Model Progress (8:03) Challenges in AI Generalization and RL Environments (15:44) Enterprise AI and Custom Models (20:27) Google's AI Ascent and Market Impact (24:30) Valuations and Future of AI Companies (27:55) Evaluating xAI's Position in the AI Landscape (30:31) The Talent War in AI Research (35:45) The Impact of Acquihires on Startups (42:35) The Future of AI Infrastructure (48:28) The Potential of Brain-Computer Interfaces (54:45) The Evolution of AI and Robotics (1:00:50) The Importance of Data in AI Research   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    1 小时 3 分钟
  6. 9月17日

    Ep 75: Nano Banana’s Oliver Wang and Nicole Brichtova - Behind the Breakthrough as Gemini Tops the Charts

    Fill out this short listener survey to help us improve the show: https://forms.gle/bbcRiPTRwKoG2tJx8 This week on Unsupervised Learning, Jacob sits down with Nicole Brichtova and Oliver Wang, the Google researchers behind "Nano Banana" - the breakthrough AI image model that achieved unprecedented character consistency and took over social media. The conversation covers how their model fits into creative workflows, why we're still in the early innings of image AI development despite impressive current capabilities, and how image and video generation are converging toward unified models. They also share honest perspectives on current limitations, safety approaches, and why the expectation of going from prompt to production-ready content is fundamentally overhyped. (0:00) Intro (1:42) Early Nano Banana Use Cases and Character Consistency (3:05) Popular Features and User Requests (3:54) Future Frontiers in Image Models (5:26) Personalization and Aesthetic Models (7:39) Model Success and User Engagement (10:59) Product Design for Different Users (19:30) Advanced Use Cases and Future Workflows (23:14) Editing Workflows and Chatbots (25:14) Google's Image Model Applications (27:12) Milestones in Image Generation (29:30) MidJourney's Success (30:54) Future of Image Models (33:55) Image Models vs. Video Models (36:35) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    41 分钟
  7. 9月10日

    Ep 74: Chief Scientist of Together.AI Tri Dao On The End of Nvidia's Dominance, Why Inference Costs Fell & The Next 10X in Speed

    Fill out this short listener survey to help us improve the show: https://forms.gle/bbcRiPTRwKoG2tJx8   Tri Dao, Chief Scientist at Together AI and Princeton professor who created Flash Attention and Mamba, discusses how inference optimization has driven costs down 100x since ChatGPT's launch through memory optimization, sparsity advances, and hardware-software co-design. He predicts the AI hardware landscape will shift from Nvidia's current 90% dominance to a more diversified ecosystem within 2-3 years, as specialized chips emerge for distinct workload categories: low-latency agentic systems, high-throughput batch processing, and interactive chatbots. Dao shares his surprise at AI models becoming genuinely useful for expert-level work, making him 1.5x more productive at GPU kernel optimization through tools like Claude Code and O1. The conversation explores whether current transformer architectures can reach expert-level AI performance or if approaches like mixture of experts and state space models are necessary to achieve AGI at reasonable costs. Looking ahead, Dao sees another 10x cost reduction coming from continued hardware specialization, improved kernels, and architectural advances like ultra-sparse models, while emphasizing that the biggest challenge remains generating expert-level training data for domains lacking extensive internet coverage.   (0:00) Intro (1:58) Nvidia's Dominance and Competitors (4:01) Challenges in Chip Design (6:26) Innovations in AI Hardware (9:21) The Role of AI in Chip Optimization (11:38) Future of AI and Hardware Abstractions (16:46) Inference Optimization Techniques (33:10) Specialization in AI Inference (35:18) Deep Work Preferences and Low Latency Workloads (38:19) Fleet Level Optimization and Batch Inference (39:34) Evolving AI Workloads and Open Source Tooling (41:15) Future of AI: Agentic Workloads and Real-Time Video Generation (44:35) Architectural Innovations and AI Expert Level (50:10) Robotics and Multi-Resolution Processing (52:26) Balancing Academia and Industry in AI Research (57:37) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    59 分钟
  8. 8月26日

    Ep 73: General Partner of Felicis Peter Deng on on AI Pricing Tactics, Reaction to GPT-5 & Why Voice is Underrated

    In this episode, Jacob sits down with Peter Deng, General Partner at Felicis and former Product Leader at OpenAI, Facebook, and Uber. Peter shares his insider perspective on building ChatGPT Enterprise in just seven weeks and leading voice mode development at OpenAI. The conversation covers everything from why traditional SaaS pricing models are broken for AI products to how evals became the new product specs, the "AI under your fingernails" test for founding teams, and why current agents are massively overhyped. They also explore how consumer AI will fragment across multiple winners rather than consolidate into a single super app, the coming integration between ChatGPT and apps like Uber, and why voice AI will unlock entirely new categories of applications. Plus, insights on the changing dynamics between foundation models and startups, and what it really takes to build defensible AI companies. It's a comprehensive look at AI product strategy from someone who's been at the center of the industry's biggest breakthroughs.   (0:00) Intro (1:17) AI Business Models and Pricing Strategies (7:48) Product Development in AI Companies (18:36) The Role of Product Managers in AI (23:06) Voice Interaction and AI (26:43) AI in Education (30:39) Consumer and Enterprise Adoption of AI (33:36) The Impact of AI on Salaries and HR (40:37) The Role of Unique Data in AI Development (49:03) Challenges and Strategies for AI Companies (52:58) The Future of AI and Its Impact on Society (57:31) Reflections on OpenAI (58:38) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

    1 小时 4 分钟
4.9
共 5 分
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关于

We probe the sharpest minds in AI in search for the truth about what’s real today, what will be real in the future and what it all means for businesses and the world. If you’re a builder, researcher or investor navigating the AI world, this podcast will help you deconstruct and understand the most important breakthroughs and see a clearer picture of reality. Follow this show and consider enabling notifications to stay up to date on our latest episodes. Unsupervised Learning is a podcast by Redpoint Ventures, an early-stage venture capital fund that has invested in companies like Snowflake, Stripe, and Mistral. Hosted by Redpoint investor Jacob Effron alongside Patrick Chase, Jordan Segall and Erica Brescia.

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