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  • At 66 years old, instead of heading towards retirement, former Cadence CEO and legendary investor Lip Bu Tan decided to take on the hardest job in tech: turning Intel around. Elad Gil and Sarah Guo sit down with Intel CEO Lip Bu Tan to talk about why he took the job and what “saving” Intel actually looks like. Tan explains how his experience in startup culture informed his decisions to drive Intel’s culture towards faster decisions, focus on customer satisfaction, and engineer accountability. He also discusses his strategy to strengthen Intel’s balance sheet by welcoming investments from Jensen Huang’s Nvidia, Softbank, and the US government. Tan also shares his product roadmap that centers the CPU for agentic AI and inference, the collaboration with Elon Musk on Terafab, his investing framework for semiconductors, and his views on how AI is reshaping design and operations at, as he puts it, a ‘legacy spreadsheet’ tech company.        

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    Chapters:

    00:00 – Cold Open

    01:01 – Lip Bu Tan Introduction

    01:24 – Why Lip Bu Took the Reins at Intel

    03:00 – Fixing Culture

    04:08 – Intel’s 10-Year Vision

    07:57 – Working with Elon Musk on Terafab

    09:59 – Shifting Supply Chain for Semiconductors

    15:34 – Limits to Scaling and Packaging

    18:30 – Physical Limits to Engineering and Design

    20:33 – Challenges in Semiconductor Investing

    26:29 – Lessons from Cadence

    28:02 – Scaling and Investment Decisions

    32:03 – Rethinking Teams in AI Era

    34:31 – Industrial Policy and Funding

    37:25 – What Investors Misunderstand About Intel

    41:10 – Where Compute Will Live

    44:59 – Conclusion

  • Biohub started with an ambitious goal of curing, preventing, and managing all disease by the end of the century. A decade later, thanks to the convergence of frontier AI and biological data, that goal may have been too conservative. In this episode, Elad Gil and Sarah Guo sit down with Biohub co-founders Mark Zuckerberg and Priscilla Chan, alongside Biohub Head of Science Alex Rives. Together, they discuss Biohub’s $500 million virtual biology initiative, which integrates frontier AI with wet-lab work to build predictive world models of cells, proteins, and systems. They also talk about their newly announced open-source engine for digital protein and antibody design, ESMFold2; why Biohub is a nonprofit rather than a venture-backed startup; and how hierarchical simulations will soon allow doctors to treat patients at an individual, mechanistic level.  

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    Chapters:

    00:00 – Cold Open

    01:02 - Mark Zuckerberg, Priscilla Chan, and Alex Rives Introduction

    01:26 – Why Biohub and Their Mission

    08:27 – Integrating Frontier AI and Frontier Biology

    09:45 – Micro to Macro Biological Modeling

    14:22 – Mechanistic Interpretiability 

    16:58 – Why Biohub is a Non-Profit

    21:41 – Understanding How Biology Works

    24:23 – Timeline for Curing All Diseases

    26:25 – Translating Research to Patient Impact

    28:04 – Launch of ESMFold2

    32:13 – Tackling Off-Target Effects and Edge Cases

    38:39 – Putting the Tech in Individual Hands

    41:06 – Talent at Biohub

    44:25 – What’s Next After ESMFold2

    46:10 –  Connecting ESMFold2 to Agentic Systems

    46:51 – The Virtual Cell

    49:33 – Defining Success for Biohub

    51:52 – Biohub Strategy Update

    56:20 – Conclusion

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  • What does it mean for a business to truly operate at the AI frontier? In a special crossover episode at Microsoft Build, Sarah Guo and Elad Gil team up with Latent Space host “swyx” to talk with Microsoft Chairman and CEO Satya Nadella about the future of AI platforms, software development, and the tech ecosystem. Satya reflects on the latest breakthroughs from Microsoft Build, the strategic shift toward multi-model harnesses, and why private evaluations (evals) are now a company’s most important intellectual property. They also discuss how autonomous AI agents are reshaping the role of software engineers, the durability of SaaS business models, and why showing communities the ROI on data centers is so critical. Plus, Satya shares his thoughts on the economic and societal impacts of the token economy, as well as the future of AI-driven education startups.

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    Chapters:

    00:00 – Satya Nadella Introduction

    01:48 – Reflections from Microsoft Build

    03:12 – Microsoft’s AI Training Strategy

    05:48 – Complexity of Real-World Deployment of AI

    07:33 – Augmenting Human Capital

    09:37 – Harnesses for Enterprise

    11:49 – Developer Value

    15:09 – Can Everybody Operate at the Frontier with Their Frontier Intelligence?

    15:51 – Modern Definition of IP

    17:38 – Future of Vendor vs. Enterprise Agents

    21:48 – Near-Term Predictions on Model Pricing

    24:02 – Durability of SaaS

    25:58 – What Satya’s Building

    28:18 – Future of Engineering Roles

    30:54 – How Microsoft Can Be More Ambitious

    34:36 – Data Centers and Community Impact

    38:01 – AI’s Impact on Society

    39:52 - AI and Education

    42:28 – Conclusion

  • We are now closer than ever before to living in a world where AI agents are smart enough to run our power grids and manage water supplies. How do we keep them from going rogue? Sarah Guo sits down with Maxim Bar Kogan, founder and CEO of Onyx Securities, to explore the complexities of supervising and securing autonomous agents at the enterprise level. Maxim explains Onyx’s product as an AI control plane, which oversees the permissions and flexible contexts of agents while balancing latency, cost, and reliability. He also discusses how current controls have insufficient context to monitor agent intent, tradeoffs for gradual model rollout, the need for vendor-independent oversight, and Israel’s growing AI and security talent ecosystem. Plus, why Maxim is all-in on AGI.

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    Chapters:

    00:00 – Cold Open

    00:45 – Maxim Bar Kogan Introduction

    01:10 – AutoGPT and Betting on Agent Actions

    05:17 – What Onyx Product Does

    07:47 – State of Deployment in Large Enterprises

    09:58 – Securing Agents

    12:45 – Why Proxies Don’t Work

    14:11 – Why Onyx Trains Its Own Models

    18:38 – Onyx’s Talent Culture

    21:24 – Mechanistic Interpretability

    23:35 – How Onyx Builds Customer Trust

    25:10 – Mitigating Risk at the Foundational Level

    27:45 – Phased Rollout of Glasswing and Daybreak

    29:11 – Large Enterprise Holdouts

    30:46 – Onyx and the Larger AI Security Space

    32:36 – Should Labs Address Model Trust and Governance? 

    36:56 – What Needs to Happen in Security

    39:14 – Why Maxim is AGI-Pilled

    41:15 – Conclusion

  • Companies in Silicon Valley from Nvidia to AMD are racing to fuel the AI revolution with postage stamp-sized AI chips. Meanwhile, a chip the size of a dinner plate just fueled a $63 billion IPO for Cerebras. Elad Gil and Sarah Guo sit down with Cerebras founder and CEO Andrew Feldman to discuss the company’s journey to making one of the largest tech go-publics in history. Andrew details the multi-year journey of pioneering wafer-scale AI computing, including surviving a brutal period of being ahead of market demand. He also explains the engineering breakthroughs that led to delivering inference speeds at 20x that of standard GPUs. Andrew then shares how a remarkable $20 billion deal with OpenAI came together in only four weeks. Plus, Andrew’s thoughts on why architecting the future of AI requires the fortitude to be a “professional David” against the Goliaths of tech.

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    Chapters:

    00:00 – Cold Open

    00:36 – Andrew Feldman Introduction

    01:19 – Cerebras’ Evolution

    02:48 – Wafer-Scale Bet Pays Off

    06:38 – Challenges and Breakthroughs

    08:37 – Crossing the Market Chasm

    10:38 – Scaling Software and Hardware

    12:03 – Relevance of AI-Generated Coding

    13:31 – Leadership and Hiring Culture

    17:16 – When to Quit vs. Persist

    19:40 – Why Cerebras Went Public

    22:57 – The OpenAI Deal

    25:54 – Open Source and Post-Trained Workloads

    27:37 – How Speed Opens Up New Business

    30:33 – Conclusion

  • Securing AI dominance requires more than just semiconductors; it demands a complete overhaul of how the West manages everything that goes into them, from rare earth minerals to actuators. Enter: Pax Silica. Sarah Guo and Elad Gil sit down with US Under Secretary of State for Economic Affairs Jacob Helberg to discuss the launch and expansion of Pax Silica, a 14-country economic security coalition designed to secure the entire AI supply chain. Jacob talks about the creation of a forward-deployed industrial base in the Philippines, where 4,000 acres will be developed into an “economic security zone.” He also compares and contrasts Pax Silica with China’s Belt and Road initiative, explains how the US plans to reindustrialize through automation and robotics, and explores how the Trump administration envisions making these policies durable across future presidencies. Plus, we hear why Jacob believes America to be a “global underdog.”

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    Chapters:

    00:00 – Cold Open

    00:41 – Jacob Helberg Introduction

    01:02 – Pax Silica’s Mission

    03:51 – Investing in AI Chip Supply Chains

    05:43 – Comparing Pax Silica to China’s Belt and Road Initiative

    12:38 – Pax Silica’s Value Proposition

    14:38 – US vs. Partnered Manufacturing

    19:10 – Rare Earth Mineral Pricing

    22:16 – Role of Venture Capital in Pax Silica

    24:50 – Near vs. Long-Term Priorities

    27:09 – Making AI Policy Durable

    28:09 – How Policies Impact Entrepreneurs

    31:00 – Trump’s Entrepreneurial Administration

    33:00 – Why America is a Global Underdog

    38:00 – Conclusion

  • The world’s first AI-take-private just proved that AI can revolutionize the real economy. Long Lake Management co-founder and CEO Alexander Taubman joins Elad Gil to discuss his firm’s agreement to acquire the legacy platform American Express Global Business Travel (Amex GBT) in a deal valued at $6.3 billion. Alexander explains the mechanics of AI-driven roll-ups, and why Long Lake chooses to acquire and transform businesses rather than simply selling them software. He also talks about how Long Lake’s horizontal AI platform, Nexus, automates workflows across diverse verticals, and how automation through AI not only powers growth for their portfolio companies, but results in both satisfied customers and employees. Plus, they explore Alexander’s vision of Amex GBT as a multi-decade compounding machine. 

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    Chapters:

    00:00 – Alexander Taubman Introduction

    00:30 – Long Lake’s Nexus Platform

    03:35 – Retention and Talent Flywheel

    05:01 – Acquisition vs. Offering Software

    06:57 – Building Long Lake’s Founding Team

    10:37 – Taking American Express Global Business Travel Private

    13:36 – Taking Berkshire Hathaway’s Approach to Management

    16:37 – How AI Strategy Makes Long Lake Stand Out 

    19:32 – AI Makes Services Scale

    22:00 – Conclusion

  • Baseten CEO and co-founder Tuhin Srivastava sits down with Sarah Guo and Elad Gil to discuss the rapid growth of AI inference demand, Baseten’s 30x growth, and why inference is becoming the strategic “last market.” Tuhin Srivastava argues the application layer will persist because companies with unique user signals can encode value into workflows and post-train specialized models, citing examples like Abridge and support workflows. The conversation covers GPU capacity constraints, Baseten’s multi-cloud fabric across 18 clouds and 90 clusters, long-term contracting dynamics, the importance of the software layer for stickiness, evolving workloads, multichip possibilities, and operational lessons at scale.

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    Chapters:

    00:31 Baseten growth

    01:55 Why the app layer wins

    05:57 Serving frontier customers

    07:55 Open source model mix

    09:21 Chinese models and geopolitics

    13:07 Custom inference dominates

    14:22 Post training acquisition

    17:10 When to invest in custom models

    18:35 Supply crunch and data centerse

    22:25 Longer GPU Contracts

    24:09 What Makes a Winner

    26:07 Multi Chip Future

    28:19 Runtime Roadmap

    31:08 Scaling Edge Cases

    33:48 Hiring and Leadership

    36:44 Operations Pager Culture

    38:19 Efficiency Drives Demand

    40:41 Concierge Everything Future

    42:34 Conclusion

  • More than fifty years ago, the modern idea of the standard enterprise software was birthed at SAP. Now, after managing companies through technological shifts from the mainframe to mobile, SAP is at the forefront of closing the AI adoption gap for their customers. SAP Chief Technology Officer Philipp Herzig joins Sarah Guo to talk about how SAP has remained a durable end-to-end “operating system” for its more than 400,000 customers from finance to supply chain. Philipp argues that the AI transition in businesses should focus on customer outcomes, UI changes, business processes, and the data layer. He also explains the challenges in enterprise AI adoption, including security, scaling, and data fragmentation, as well as the importance of evals and verifiability. They also discuss SAP’s suite of AI products, limitations of predictive tabular models, how SAP is shifting its pricing models in the AI era, and Philipp’s interest in quantum computing optimization.

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    Chapters:

    00:00 – Cold Open

    00:42 – Philipp Herzig Introduction

    01:18 – What SAP Does

    02:51 – Why SAP Endures

    06:53 – CTO Priorities and AI Push

    12:14 – Scaling AI in Enterprise

    17:06 – Verifiability and Agent Mining

    20:42 – Tool Calling vs. Computer Use

    22:11 – Domains Where Agents Deliver Value

    24:58 – Limitations of Predictive Tabular Models

    29:07 – Barriers to Enterprise Adoption

    31:54 – How AI Will ‘Uplevels’ Work

    34:03 – How AI Changes SAP’s Pricing Model

    36:41 – What Makes a Winner in the AI Era

    38:53 – Day in the Life of a CTO

    40:08 – Customer Challenges

    42:36 – Business Problem of Quantum Computing

    46:21 – Conclusion

  • Few teens are business owners, but by age 16, Bill McDermott had purchased and was running a local deli. Now he runs leading global technology powerhouse ServiceNow, a company that is defining how the world’s largest organizations transform for the digital age. Sarah Guo sits down with ServiceNow CEO Bill McDermott to discuss his journey from child entrepreneur to CEO, and how he navigates his role as a leader in the age of AI. Bill argues that human connection is still a vital part of being a successful leader, and as such, AI must be used to serve people rather than substitute for ambition. He breaks down the mechanics of hyper-growth, and the art of staying customer-centric at a global scale. They also discuss the future of enterprise software, how generative AI is fundamentally reshaping the labor market, and what founders need to know about building a resilient company culture that survives economic and technological shifts.

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    Chapters:

    00:00 – Cold Open

    00:50 – Bill McDermott Introduction

    01:14 – Lesson from Buying a Deli

    07:35 – Leadership in the AI Era

    09:41 – How Bill Got Hired at Xerox

    15:47 – Can Agency Be Taught?

    18:40 – Seeing Change as Opportunity

    25:18 – ServiceNow as an AI Control Tower

    30:30 – Which SaaS Gets Disrupted?

    32:22 – Defining a Platform Business

    36:25 – Does AI Decrease Implementation Time?

    39:06 – Agents Will Reshape the Workforce

    40:59 – Success Signals at ServiceNow

    44:07 – Enterprise Attitudes About AI

    48:41 – How AI Has Changed Customer Conversations

    50:48 – Bill’s Curiosity Beyond ServiceNow

    52:29 – Day in the Life of a CEO

    57:27 – Conclusion

  • AI agents can already collaborate, but they lack a trustworthy medium in which to store value and execute contracts. Enter Circle’s Arc Blockchain, an economic “operating system” designed for a world where machines drive the real economy. Circle co-founder and CEO Jeremy Allaire joins Elad Gil to dive into the future of programmable money and the agentic economy. Jeremy explains why traditional banking fails to support the needs of AI agents, and how stablecoins like USDC facilitate an internet-native economy. They also discuss the tokenization of real-world assets, the move toward full-reserve banking, and Jeremy’s predictions for double-digit GDP growth as AI and blockchain reach their “broadband moment.” 

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    Chapters:

    00:00 – Cold Open

    00:05 – Jeremy Allaire Introduction

    00:21 – Origin Story of Circle

    02:11 – Rethinking the Financial System

    05:26 – The Role of Stablecoins

    09:52 – Use Cases for USDC

    11:30 – Programmable Money 

    12:25 – Blockchain as Operating System

    14:37 – The Agentic Economy

    17:45 – Arc Blockchain Use Cases

    27:00 – Scaling Models and Privacy Tech

    30:45 – Securitization of Other Assets Under the Blockchain

    34:16 – Prediction Markets

    35:09 – Incremental Revenue Through GPU Usage

    37:19 – Jeremy’s 10 Year Future Vision

    41:12 – AI and GDP

    44:00 – Conclusion

  • What happens when you apply the scaling laws of large language models to the physical work of atoms? Elad Gil sits down with Liam Fedus, co-founder at Periodic Labs, which is pioneering an AI foundation lab for atoms. Liam discusses how he pivoted from dark matter physics research to the front lines of artificial intelligence, including stints at Google Brain and working on ChatGPT at OpenAI. He talks about how Periodic is connecting massive language models to the physical world to overcome data bottlenecks in material science. Liam also shares how they use language models as an orchestration layer operating alongside specialized neural nets to run closed-loop physical experiments. They also explore the future of AGI and ASI, as well as the role of robotics in lab automation.

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    Chapters:

    00:00 – Cold Open

    00:05 – Liam Fedus Introduction

    00:39 – Liam’s Background at Google Brain, OpenAI

    05:14 – From ChatGPT to Materials and Atoms

    06:34 – Training Data in the Physical World

    09:52 – Generalization Across Domains

    11:31 – Models as an Orchestration Layer

    12:48 – Commercialization and Business Model

    16:10 – How Periodic’s Success May Shape the Future 

    17:45 – Multidisciplinary Scaling

    19:41 – Capital and Compute

    21:12 – Hiring at Periodic

    21:44 – Thoughts on AGI and ASI

    23:30 – Timeline for Machine-Directed Self-Improvement

    25:39 – Automation and Data Generation

    27:59 – Why Liam is Excited About the Future of Robotics

    29:25 – Conclusion

  • What happens when AI agents can design experiments, collect data, and improve — without a human in the loop? Andrej Karpathy joins Sarah Guo on the state of models, the future of engineering and education, thinking about impact on jobs, and his project AutoResearch: where agents close the loop on a piece of AI research (experimentation, training, and optimization, autonomously).



    00:00 Andrej Karpathy Introduction

    02:55 What Capability Limits Remain?

    06:15 What Mastery of Coding Agents Looks Like

    11:16 Second Order Effects of Natural Language Coding

    15:51 Why AutoResearch 

    22:45 Relevant Skills in the AI Era

    28:25 Model Speciation

    32:30 Building More Collaboration Surfaces for Humans and AI

    37:28 Analysis of Jobs Market Data

    48:25 Open vs. Closed Source Models

    53:51 Autonomous Robotics

    1:00:59 MicroGPT and Agentic Education

    1:05:40 Conclusion

  • Notion isn’t designing AI agents that just use tools. Their agents can autonomously build their own integrations, as well as write the code needed to finish a task. Sarah Guo sits down with Notion Co-Founder Simon Last to explore Notion’s rapid evolution from a simple writing assistant to a sophisticated platform for custom AI agents. Simon discusses the technical hurdles of indexing disparate data from sources like Slack and Google Drive, as well as the internal shift toward using coding agents to build Notion itself. Plus, Simon elaborates on what he sees as a fundamental transition in productivity: moving from a tool where humans do the work, to one where humans manage a swarm of agents.

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    Chapters:

    00:00 – Cold Open

    00:05 – Simon Last Introduction

    00:26 – Genesis of Notion AI

    04:10 – Challenge of Semantic Indexing and Retrieval

    07:16 – The Six-Month Rewrite Cycle

    08:12 – Notion’s Coding Agent Era

    09:44 – Impact on Team Dynamics

    12:49 – Launching Custom Agents

    15:39 – Notion as the ‘Switzerland’ for Models

    17:33 – Designing APIs for Agent Customers

    20:09 – Simon’s Personal Agentic Workflows

    24:48 – Notion: Tool for Work is Now A Tool for Agents

    27:28 – How Building Has Changed for Simon

    29:00 – Conclusion

  • By the end of 2026, AI capital expenditure is projected to hit nearly $700 billion. The question isn’t who has the best model, but who has the most creative financing to build out AI infrastructure and beyond. Sarah Guo is joined by Neil Tiwari, Managing Director at Magnetar Capital, a financial innovator helping the AI industry scale from billions to trillions of dollars in CapEx. Neil explains some of the debt structures used to finance massive GPU clusters, who is taking the risk, and how the industry is maturing. Sarah and Neil also discuss how power distribution, energy storage, and physical materials like steel are the bottlenecks of the AI industry. Plus, Neil gives his take on the future of inference-optimized clouds, and why the market shift away from software and into infrastructure might be an overreaction.

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    Chapters:

    00:00 – Cold Open

    00:05 – Neil Tiwari Introduction

    00:26 – Magnetar’s Story

    01:28 – Why CoreWeave Helped Magnetar Win

    06:15 – Scaling CapEx Efficiently

    09:02 – Debunking GPU Collateral Risk

    11:42 – How Deal Structures Evolve

    13:01 – What Bottlenecks Buildout

    15:28 – Circular Financing Critiques

    17:35 – The Shift from Training to Inference Workloads

    23:10 – AI Factories

    24:12 – Constraints of the Current Power Grid

    28:27 – Sovereign Compute Buildouts

    29:54 – Physical AI Capital Needs

    32:48 – The Capital Rotation Away from SaaS

    36:04 – Conclusion

  • In this episode of No Priors, Sarah and Elad dive into the evolving landscape of software, exploring how AI is transforming the traditional SaaS model. They discuss whether SaaS as we know it is coming to an end, what new business and sales strategies are emerging, and how AI is reshaping the way software is built, sold, and scaled. The conversation also examines whether or not these shifts are a good thing for both big and small companies, and how coders and software experts are reacting to abrupt AI transitions. They also dig into how AI is reshaping sales, automating workflows, and enabling more predictive customer strategies. Beyond individual companies, they examine how tech giants are increasingly dominating the S&P 500, and what this concentration of power means for the future of startups, innovation, and the broader entrepreneurial ecosystem.

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    Chapters:

    00:00 – Cold Open

    00:35 – The SaaS-polcalypse discussion 

    4:55 – AI Change Management in Large vs. Small Companies

    05:43 – “Is Software Eating the World?” 

    08:38 – Addressing the Unsolved Problems 

    14:00 – The Noise of the Last Month vs. Excitement 

    21:32  – What Proportion of GDP is Tech? 

    23:20 – Market Cap Shifts

    25:02 – As a Company, When Should You Sell? 

    29:05 – Multi-Product Bundle Defense 

    30:45 – Conclusion

  • Autonomous vehicle technology has moved past human-coded rules and into an era of neural networks and custom computer chips. And to solve the most difficult driving scenarios, electric vehicle company Rivian abandoned its original technology platform to build a vertically integrated data stack. Sarah Guo sits down with Rivian Founder and CEO RJ Scaringe to explore the seismic shift in the automotive industry toward AI-driven, software-defined vehicles . RJ discusses the move away from function or domain-based architecture for vehicle electronic systems to software-defined architecture, which allows for dynamic, monthly updates to features in Rivian’s vehicles. RJ also talks about the upcoming launch of Rivian’s R2 model, which aims to be a distinct, affordable, mass-market alternative to the Tesla Model Y. Plus, RJ shares his vision for a future where vehicles don’t just drive us, but inspire personal freedom and exploration.

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    Chapters:

    00:00 – Cold Open00:35 – RJ Scaringe Introduction0:58 – Rivian’s Autonomy Evolution05:19 – Why Rivian’s Tech is Vertically Integrated10:06 – Levels of Autonomous Driving Technologies14:00 – Importance of a Software-Defined Architecture19:28 – Differentiating Autonomous Vehicle Models23:20 – R2: The First Mass Market Autonomous Vehicle25:02 – Do Americans Want EVs?29:05 – How Our Relationship to Vehicles is Evolving30:45 – Conclusion

  • From “virtual doppelgängers” to “real-time dreaming,” online gaming platform Roblox is using AI technology to build the “Holodeck” envisioned in science fiction decades ago. Sarah Guo and Elad Gil sit down with Roblox CEO Dave Baszucki at Roblox headquarters to explore the intersection of AI, physics simulation, and the future of human connection. Dave discusses the evolution of the 4D creation tool in Roblox, a high-fidelity simulation that enables thousands of people to interact in real-time with photo-realistic graphics and acoustic physics. Dave reveals how Roblox is leveraging 13 billion hours of monthly user data to train native AI models that go beyond simple LLMs, enabling NPCs that can navigate and play games with human-like intuition. He also talks about how immersive communication will change video conferencing, how Roblox searches for unlikely talent outside of traditional elite universities, and how he balances rapid weekly iterations with keeping a “long view” on Roblox’s vision. 

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    Chapters:

    00:00 – Cold Open

    00:36 – Dave Baszucki Introduction

    01:16 – Realizing Robolox’s 20-Year Vision

    05:29 – Using 4D Immersive Simulations in Virtual Interactions

    08:22 – Physics Engine vs. Photorealism 

    11:50 – Storing Roblox History as Vector Data

    14:00 – Training NPCs - Moving Beyond LLMs

    18:05 – The Future of the Game Designer

    19:54 – Video Latent World Models

    23:53 – Social Simulation - AI Companions and Virtual Relationships

    27:26 – Why Asset Costs Haven’t Changed the Gaming Industry

    29:52 – AI Coding in Roblox Studio

    31:36 – The Roblox Creator Economy

    33:57 – Long-Term Conviction vs. Weekly Iteration

    37:50 – Dave’s Hiring Philosophy for Roblox

    43:44 – Conclusion

  • What if we could pause biological time to wait for a cure for a disease? Thanks to innovations and research in reversible cryopreservation, this possibility is no longer just science fiction. Sarah Guo sits down with Laura Deming, CEO and co-founder of biotech startup Until, to dive deep into the growing field of reversible cryopreservation. Laura talks about how her time as a Thiel Fellow as well as her founding of the Longevity Fund fueled her obsession with solving the “social blindspot” of aging. Laura details how her new startup, Until, seeks to build tools that allow for “pressing pause” on biological time, starting with human organs with the hopes of scaling up to full body medical hibernation. Together, they also discuss why ice is the enemy of tissue, using engineering tools to help solve biological problems, and how this technology may revolutionize organ transplantation by removing time as a variable. 

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    Chapters:

    00:00 – Cold Open

    01:08 – Laura Deming Introduction

    01:53 – Why Laura Focused on Cryo Preservation and Longevity

    06:20 – Bringing on Co-Founder Hunter Davis

    07:55 – Until’s Goal

    10:10 – Other Use Cases for Cryo Technology

    12:22 – Scientific Challenges in Cryo Tech

    15:36 – Using Engineering Principles to Solve Biological Problems

    20:18 – Scaling Up Cryo Preservation

    21:48 – Leading and Recruiting at Until

    25:02 – Why Hasn’t Cryo Tech Been Worked On More?

    27:14 – Making Time Not a Variable in Organ Transplants 

    29:06 – Changing How the Molecular World is Depicted

    30:47 – Conclusion

  • Why are there only a handful of companies in the world with over $10 billion in pure-play software revenue? CJ Desai believes the reason is that products are replaceable, but platforms are forever. For No Priors’ very first live from MongoDB.local SF, Sarah Guo is joined by CJ Desai, CEO and President of software developer MongoDB, to discuss the shifting landscape of enterprise software. CJ discusses whether AI will erode the value of software, and what truly constitutes a “moat” in the age of generative AI. CJ also talks about why AI adoption with Fortune 500-sized companies is still lagging, the importance of customer relationships, and why the “bear thesis” on SaaS may be overblown. 

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    Chapters:

    00:00 – Cold Open

    00:58 – CJ Desai Introduction

    01:38 – The AI Stack and the Future of Software

    04:18 – Why Platforms, Not Products, Are Sticky

    09:59 – Vibe Coding and the Threat of On-Demand Apps

    12:15 – Paths to Success for Software Vendor Incumbents

    14:24 – How CJ Chose MongoDB

    18:55 – Debunking the SaaS Bear Thesis

    22:07 – Fortune 500 Perspectives on AI Value

    24:24 – Can AI Native Startups Replace Systems of Record?

    28:10 – The Importance of Customer Relationships

    31:46 – Managing Through Massive Technology Transitions

    36:37 – Conclusion