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Tag: Chamath Palihapitiya

  • Can the AI Industry Regulate Itself? All-In on Demis Hassabis’s SRO Proposal, Stripe’s PayPal Bid, Apple vs OpenAI, and New York’s Data Center Ban

    The besties open on the biggest live question in artificial intelligence policy: can the AI industry regulate itself before the government does it for them? Jason Calacanis, Chamath Palihapitiya, David Sacks, and David Friedberg dig into DeepMind co-founder Demis Hassabis’s proposal for a FINRA-style self-regulatory organization for frontier models, then work through a packed docket that runs from Stripe’s audacious bid for PayPal to Apple’s trade-secrets lawsuit against OpenAI, the xAI Grok Build data leak, the economics of token spend, New York’s first-in-the-nation data center moratorium, foreign influence campaigns shaping American attitudes toward AI, and a science corner on an enzyme that reverses skin aging. You can watch the full episode here.

    TLDW

    Demis Hassabis proposed a US-led international AI standards body modeled on FINRA: federally overseen, industry funded, run by independent technical experts, with frontier labs submitting models 30 days before release, voluntary at first and mandatory later. The proposal drew broad endorsement across the industry, and the besties debate whether an SRO beats the alternatives. Sacks says he could get on board only under five strict conditions (broad representation including startups and open source, frontier-only review, catastrophic-risk-only scope, voluntary-first, and substitution for rather than addition to new agencies), and warns the plan is an opening bid that Anthropic will use as a stepping stone toward Dario Amodei’s “FAA for AI.” The show then turns to Stripe, Block, and Advent bidding roughly $53 billion for PayPal and what it means for Visa and Mastercard, a wave of AI-native operators reviving stale digital businesses (Bending Spoons, Ryan Cohen), Apple’s lawsuit accusing OpenAI of stealing trade secrets, xAI’s Grok Build silently uploading entire codebases despite a privacy setting, the enormous spread in token costs and Ramp’s new spend controls, Apple’s local-model opportunity with M7 Ultra silicon, America’s looming energy deficit and behind-the-meter power, New York’s hyperscale data center moratorium, alleged Russian and PRC influence operations shaping anti-GMO and anti-data-center sentiment, and a science corner on a Calico enzyme that degrades glycation products to reverse skin aging.

    Thoughts

    The most important idea in this episode is not the SRO itself but Sacks’s framing of it as an opening bid. His five conditions are a genuinely useful blueprint for how self-regulation could work without curdling into regulatory capture, and his instinct that catastrophic-risk-only scope (cyber and CBRN, not disinformation or “microaggressions”) is the only defensible mandate is the right line to draw. But the deeper point is structural: when an industry walks into government and says “please regulate me,” almost no one in government answers “we’re not qualified.” They say thank you and come back for more. That asymmetry, not any specific rule, is what makes voluntary concessions dangerous. If the SRO is offered for free rather than traded for hard federal preemption written into law, it becomes the floor of a ratchet, not the ceiling of a compromise.

    The Anthropic critique running through the segment deserves to be taken on its merits rather than dismissed as a grudge. The claim is specific and falsifiable: that a company now valued in the trillions is funding a state-by-state strategy of one-upmanship, where each new bill is tougher than the last, deliberately producing a patchwork rather than the single national framework everyone claims to want. Whether or not you accept the motive, the mechanism is real and the incentives are legible. If your cost per million tokens is fifty to a hundred times your competitor’s, and cheaper open models plus fine-tuning can cover the vast majority of tasks, then the fastest way to protect a premium price is to make the cheap alternatives legally or practically harder to ship. That is the ladder-pulling thesis, and the token-cost numbers cited on the show are the reason it is not paranoid.

    The PayPal bid is the clearest signal of a new operating logic in the capital markets. The interesting question Chamath poses is not “what synergies does PayPal have” but “what is the only thing Advent, Stripe, and Block could build together,” and the answer is a genuine competitor to Visa and Mastercard: hundreds of millions of consumer accounts, Stripe’s merchant relationships and risk infrastructure, Block’s point-of-sale and Cash App, and stablecoin rails from Bridge and PYUSD that can push transactions on-us and bypass the card networks. The antitrust twist is elegant. Define the market as merchant APIs and it looks like consolidation; define it as the card duopoly and the same deal is pro-competitive. This deal would have been dead on arrival two years ago, and the fact that it is live now tells you as much about the regulatory climate as it does about payments.

    Underneath the payments story is a broader thesis worth naming: AI-native operators buying mature, founder-less, “stale” digital businesses and modernizing them. Bending Spoons rolling up AOL, Vimeo, Evernote, WeTransfer, and Eventbrite is the template, and Ryan Cohen’s eBay interest is the second dot on the line. The claim is that a modern operator can diagnose where a legacy business overspends, underinvests, and fails to use AI, then fix it with a small team of AI-first executives rather than a McKinsey engagement. It is a persuasive pattern, though PayPal is a harder case than the show admits: a 25-year-old interaction model growing 7% a year is not obviously revived by efficiency alone. Buying 400 million consumer accounts is buying distribution, not a product vision, and the open question is whether anyone can resuscitate the consumer experience rather than just milk it.

    The data center segment is where policy, energy, and information warfare collide, and Friedberg’s anti-GMO analogy is the sharpest thing in it. His argument is that manufactured public sentiment, traceable in one case to a foreign media push, can override the scientific and economic merits of a technology for years, and that the anti-data-center movement rhymes with it: closed-loop cooling that uses trivial amounts of water, land-use efficiency that dwarfs almonds and golf courses, and natural gas that burns clean, all drowned out by a moral panic. Whether or not you buy the specific foreign-influence attribution, the underlying tension is real and unresolved. America is staring at a structural electricity deficit while individual blue states treat data centers as a luxury they can refuse, and behind-the-meter power plus edge compute chasing cheap electrons is emerging as the workaround. The moratorium framing matters most here: a “pause” on data centers is not a few months, it is five years once you count ramp-up, and that is long enough to lose a race that may only be measured in months of lead.

    Key Takeaways

    • Demis Hassabis proposed a US-led international AI standards body modeled on FINRA: federally overseen, industry funded, and run by independent technical experts rather than a new government agency.
    • Under the proposal, frontier labs would submit models roughly 30 days before release; the body would assess risk to cybersecurity, national security, and biological threats, update benchmarks quarterly, and could coordinate a development slowdown if the situation demanded it.
    • The plan would be voluntary at first and mandatory later, and drew endorsement from a broad set of industry figures including Elon Musk, Sam Altman, Anthropic’s Jack Clark, Sundar Pichai, Satya Nadella, and Jack Dorsey.
    • A self-regulatory organization (SRO) like FINRA or the National Futures Association lets the industry set its own testing rules under federal oversight, adjusting faster than a government agency could as the technology changes.
    • Sacks laid out five conditions for supporting an SRO: broad representation including startups and open source; review of true frontier models only; scope limited to catastrophic risk (cyber and CBRN); voluntary before mandatory; and a substitute for, not an addition to, new regulatory agencies.
    • Sacks argued a government “FAA for AI” would be extreme: type certification for a new aircraft design takes 5 to 9 years, and applying that permission-based model to AI would push release timelines from months to years and lose the race to China.
    • He characterized the SRO as an “opening bid” that Anthropic and others would use as a stepping stone toward Dario Amodei’s repeatedly stated goal of an FAA-style regulator, unless it is traded for hard federal preemption written into law.
    • The besties cited a Politico report on Anthropic’s alleged state-by-state strategy of one-upmanship, using California’s SB 53 as a model and then ratcheting each subsequent state’s rules tougher, producing a patchwork rather than a single national framework.
    • Chamath warned of a “torrent of money” trying to influence both political parties toward some form of regulatory capture, and urged establishing industry rules quickly to supersede the need for a federal agency.
    • Stripe and private equity firm Advent, joined by Jack Dorsey’s Block contributing about $17 billion in equity, are jointly bidding roughly $53 billion (about $60 per share) for PayPal, with many expecting the final clearing price closer to $70.
    • The strategic logic is a new competitor to Visa and Mastercard: PayPal’s 400-plus million consumer accounts, Stripe’s merchants and risk infrastructure, Block’s point-of-sale and Cash App, and stablecoin rails from Stripe’s Bridge and PayPal’s PYUSD.
    • The antitrust outcome hinges on market definition: framed as merchant APIs (Stripe vs. Braintree) it looks anti-competitive, but framed against the Visa/Mastercard duopoly it is pro-competitive, and a deal like this would have been blocked two years ago.
    • PayPal peaked around a $322 billion market cap and fell to roughly $30 to 40 billion, which is precisely why it is now attracting bids; Stripe now processes more annual volume than PayPal, but lacks PayPal’s consumer relationship.
    • Sacks traced PayPal’s long stagnation to its 2002 eBay acquisition under Meg Whitman, when the founding team was pushed out; the “PayPal mafia” (which Sacks prefers to call the “PayPal diaspora”) formed as a result.
    • The deal is framed as part of a wave of AI-native operators reviving mature, founder-less digital businesses, with Bending Spoons (AOL, Vimeo, Evernote, WeTransfer, Eventbrite) as the roll-up template and Ryan Cohen’s eBay interest as another data point.
    • M&A is broadly “back on the menu” post-Lina Khan, with deals like Uber acquiring Delivery Hero, driving liquidity and renewed LP appetite for venture alongside SpaceX distributions.
    • Apple filed a 41-page lawsuit against OpenAI on July 10th alleging stolen trade secrets tied to OpenAI’s consumer hardware device; OpenAI’s chief hardware officer Tang Tan is a former Apple VP of iPhone design.
    • The complaint alleges Apple job candidates were directed to bring actual parts to OpenAI interviews for “show and tell,” and cites a text about accessing network storage; OpenAI has reportedly poached over 400 Apple employees.
    • The besties’ rule of thumb: when leaving a company, the only thing you can take is what is in your head; no documents, thumb drives, or files, because Apple rarely litigates and doing so signals something egregious.
    • xAI’s Grok Build, powered by Grok 4.5 and running inside Cursor, was reportedly sending users’ entire codebases (potentially including passwords and API keys) to servers despite a privacy setting meant to prevent it; xAI disabled the upload on July 13th and open-sourced the harness.
    • Chamath’s takeaway: privacy in AI is fragile and brittle, “zero data retention” cannot be guaranteed, and there are non-obvious data-leak vectors and “trap doors” everywhere, arguing for a stratified ecosystem with independent third-party layers between enterprises and models.
    • The “reverse information paradox” (building on Palantir’s Alex Karp) holds that technically capable enterprises want control over their compute, models, weights, data, and “alpha,” via real trust boundaries, private evals, in-tenant learning loops, decoupled orchestration, and the right to fine-tune.
    • Cited token costs per million showed a huge spread: roughly $56 on a premium frontier model, about $26 on another, roughly $1.50 for Grok input, around $1 for Elon’s, and about 50 cents for Chinese models, with a claim that 95 to 98% of tasks could run one tier cheaper.
    • Ramp CEO Eric Glyman launched token spend management because CFOs cannot see or control AI spend; Ramp customers’ token spend has grown 21x in a year, and someone will eventually miss an earnings quarter on runaway AI opex.
    • Engineers optimize for the latest, greatest model while CFOs bear the cost, a misalignment that platforms fine-tuning cheaper open models (like Mira Murati’s Thinking Machines effort) are positioned to exploit.
    • Calacanis called Apple a “screaming buy” on local models: rumored M7 Ultra silicon supporting up to 1.5 terabytes of memory could run last-generation frontier-class models locally on a Mac Studio, putting downward pressure on cloud AI pricing.
    • Edge compute is fragmenting outward: Sunrun announced distributed data center blocks for homes, and Span partnered with Nvidia, with compute increasingly “chasing energy” like cheap solar and battery power.
    • Chamath projected the US will be short 2.5 Californias’ worth of energy by 2050; a recent PJM auction that needed 7 to 8 gigawatts reportedly saw only a fraction show up, underscoring the electricity crunch.
    • “Behind the meter” power lets data centers generate their own electricity on owned property, but clean-air permitting is a major obstacle; Elon reportedly used clustered mobile engines and solutions like Bloom Energy to keep projects under personal-use permits (as with Colossus in Memphis).
    • New York Governor Kathy Hochul announced the nation’s first statewide moratorium on hyperscale data centers; the besties rebutted her claims on power, land, noise, water, and pollution point by point.
    • Modern data centers use closed-loop cooling (one claim compared a typical facility’s water use to a couple of In-N-Out restaurants), occupy trivial land relative to their economic value, generate tax revenue and construction jobs, and are largely powered by clean-burning natural gas.
    • Sacks argued the same political forces slowing domestic data centers are also behind chip export controls that would block data centers in allied countries, raising the question of where the buildout can happen at all.
    • Friedberg drew an anti-GMO analogy: he argued anti-GMO sentiment tracked the US presence of Russia Today (2010 to 2022) rather than the science, and worried a similar manufactured sentiment is now driving anti-data-center attitudes.
    • Sacks cited an OpenAI blog post on PRC-linked influence operations targeting US AI debates, with a congressional investigation reportedly coming, noting China has a clear incentive to slow American AI infrastructure.
    • Sacks framed the moment as a “moral panic”: the catastrophes people fear from AI (cyber, job loss) have not materialized, yet the US risks damaging its crown jewel of free-market innovation with premature regulation over hypothetical risks.
    • The panel questioned Dario Amodei’s prediction that 50% of entry-level knowledge-worker jobs could disappear within one to five years, arguing the harms have not shown up and only a handful of frontier labs (which already do safety testing and red-teaming) even matter.
    • A cited framing of the alleged Anthropic strategy: brand yourself as the safe AI company, ban unsafe AI, then profit; a fresh Chinese model (Kimi K2) was noted as very close to the frontier, suggesting a US lead of only months.
    • Science corner: a paper from Google’s Calico and partner Retro-style researchers used AlphaFold plus directed evolution to engineer a novel enzyme that degrades CML, a key advanced glycation end product in the extracellular matrix that drives aging.
    • The engineered enzyme cleared 52 to 97% of CML from body proteins in vitro and eliminated 55% of CML from donated elderly human skin, effectively reversing that skin’s biological age toward that of a 31-year-old, pointing first toward a potentially trillion-dollar cosmetic market.

    Detailed Summary

    Demis Hassabis’s FINRA-Style SRO for AI

    DeepMind’s Demis Hassabis published a proposal for a US-led international AI standards body modeled on FINRA, the Financial Industry Regulatory Authority. The design is federally overseen but industry funded and run by independent technical experts. Frontier labs would submit models about 30 days before release, and models would be assessed for risk across cybersecurity, national security, biological threats, and other high-risk domains. Benchmarks would update quarterly, the body could coordinate a development slowdown if warranted, and participation would be voluntary at first and mandatory later. The proposal drew endorsements across the industry, including Elon Musk (who called it thoughtful), Sam Altman, Anthropic’s Jack Clark, Sundar Pichai, Satya Nadella, and Jack Dorsey.

    Friedberg explained the SRO concept: bodies like FINRA and the National Futures Association let financial institutions set their own regulatory rules and check one another, under federal oversight but not federal control, reporting up to Senate and House committees. The AI analogy is that many players are all advancing the technology and none wants a single outside regulator dictating tests, especially after California’s earlier AI legislation was, in his telling, outdated by the time it would have taken effect. An SRO can bring in industry experts, adjust tests over time, and operate faster than a new agency. Chamath endorsed it strongly, warning that a “torrent of money” will try to influence both political parties toward regulatory capture, and that establishing rules quickly is the way to avoid that off-ramp while retaining ultimate federal oversight through Commerce and the DOJ.

    Sacks’s Five Conditions and the “FAA for AI” Warning

    Sacks said he could personally get on board with an SRO because it is “infinitely better” than a new government agency that would become a “DMV for AI,” or worse, Dario Amodei’s “FAA for AI.” He laid out five conditions: the SRO must have broad industry representation including startups and open source (to avoid the three biggest labs capturing it); it should review only true frontier models that represent a step change in capability, not hold up lesser models; its scope should be catastrophic risk only, meaning cyber and CBRN (chemical, biological, radiological, nuclear), not disinformation or speech; it should be voluntary before mandatory, proving it works first; and it must substitute for, not add to, new regulatory structures.

    He then explained why an FAA model is extreme: the FAA approves new airplane designs through type certification, which takes 5 to 9 years for a new aircraft and 3 to 5 years for major amendments. Applying permission-based regulation to AI, where new model versions ship every couple of months, would push timelines from months to years and lose the race to a China that will not abide by those rules. His conclusion: if the choice is FAA for AI, DMV for AI, or Hassabis’s SRO, the SRO wins, but it has to be kept “honest and pure,” because otherwise it becomes the opening bid in a coming wave of regulation and a vehicle for massive regulatory capture. He argued that companies making concessions to buy off politicians will only invite the government to come back for more, and that at some point these companies have to grow a spine, draw a line, and demand preemption in exchange.

    The Anthropic Regulatory-Capture Debate

    Sacks revisited his October claim that Anthropic was running a “sophisticated regulatory capture strategy based on fear-mongering,” arguing that what looked like beating up on a startup now looks different given Anthropic’s trillion-dollar valuation and industry-leading revenue. He cited a Politico piece, “Inside Anthropic’s state-by-state plan to ratchet up AI rules,” describing a strategy of one-upmanship: pass a model bill like California’s SB 53, then make each subsequent state’s rules stricter, deliberately producing a patchwork instead of a single national framework. The panel noted states have strong sovereignty rights (as with self-driving cars) and Anthropic is “winning” in California, Illinois, New York, and other blue states, because government officials rarely refuse an invitation to regulate.

    Stripe, Block, and Advent Bid for PayPal

    Stripe and private equity firm Advent, joined by Jack Dorsey’s Block contributing about $17 billion in equity, are jointly bidding roughly $53 billion (about $60 per share) for PayPal, with many expecting a final price closer to $70. PayPal still has more than 400 million consumer accounts and processes about $1.7 trillion a year, but its 25-year-old product is growing only about 7% and is seen as legacy. Chamath’s key question was what unique thing this trio could build: a competitor to Visa and Mastercard. Combining PayPal’s consumer accounts, Stripe’s merchant relationships and risk infrastructure, Block’s point-of-sale and Cash App, and stablecoin rails from Stripe’s Bridge and PayPal’s PYUSD would allow far more on-us transactions that bypass the card networks, potentially passing large discounts to merchants and consumers.

    Friedberg walked through the deal structure: the $17 billion equity contribution effectively means Stripe and Block sell equity to cash investors, that cash buys PayPal, and the parties end up cross-owning pieces of each other, with the Stripe team the likely operator post-close. The antitrust question turns on market definition: framed as merchant APIs, it is Stripe versus Braintree and looks like consolidation; framed against the Visa/Mastercard duopoly, adding competition is pro-competitive. Sacks noted the deal would have been “the antitrust equivalent of a colonoscopy” two years ago. He also recounted PayPal’s history: acquired by eBay in 2002 under the corporate-minded Meg Whitman, the founding team was pushed out, creating what he prefers to call the “PayPal diaspora” rather than the “PayPal mafia.”

    AI-Native Operators and the M&A Wave

    Freeberg framed the PayPal and eBay stories as part of an emerging line: AI-native operators buying first-generation digital-native businesses that have gone mature, stale, and founder-less, and that have not yet realized their AI potential or are overspending. Bending Spoons is the roll-up template, having acquired AOL, Vimeo, Evernote, WeTransfer, and Eventbrite and revitalized them from Milan with young, AI-first executives. The panel connected this to Josh Kushner’s and General Catalyst’s roll-ups of traditional services businesses. Calacanis added the macro backdrop: after venture was “on the ropes” under Lina Khan, M&A is “back on the menu,” with deals like Uber acquiring Delivery Hero, renewed LP appetite, and liquidity from SpaceX distributions.

    Apple Sues OpenAI Over Trade Secrets

    Apple filed a 41-page lawsuit against OpenAI on July 10th alleging stolen trade secrets used to develop OpenAI’s consumer hardware device. OpenAI’s chief hardware officer, Tang Tan, is Apple’s former VP of iPhone design; the complaint alleges he directed Apple job candidates interviewing at OpenAI to bring “actual parts” for “show and tell,” and cites a text from a former Apple engineer about accessing network storage. OpenAI has reportedly poached over 400 Apple employees. Chamath noted Apple rarely litigates, so the suit signals something they found egregious, while cautioning that the facts are alleged and unproven. Sacks declined to opine on the specifics but offered a simple rule: when changing jobs, take nothing but what is in your head, no documents, thumb drives, or files.

    The Grok Build Data Leak and AI Privacy

    xAI’s Grok Build, powered by Grok 4.5 and running inside Cursor, was reportedly sending users’ entire codebases (not just the files needed for a task, but potentially passwords, API keys, and change logs) to servers, despite a privacy setting meant to stop it. xAI disabled the upload on July 13th, Elon said previously uploaded data was deleted, and xAI open-sourced the harness. Chamath used it to make a larger point tied to his CNBC comments and Alex Karp’s remarks: privacy in AI is fragile and brittle, “zero data retention” cannot truly be guaranteed, and there are non-obvious leak vectors and “trap doors” everywhere. His conclusion is that enterprises need a stratified ecosystem with independent third-party layers between them and the models to manage exposure (a model his firm 8090 uses in its “software factory”).

    Sacks connected this to a blog post on the “reverse information paradox,” building on Karp’s point that technically capable enterprises want control over their compute, models, weights, data, and “alpha.” The recipe: establish a real trust boundary with private evals, proprietary learning loops inside the tenant, decoupled orchestration, and the explicit right to fine-tune their own outputs. He described an emerging ecosystem forming alternatives to the monolithic closed model stacks that Anthropic and, to some extent, OpenAI want customers locked into.

    Token Economics and Ramp’s Spend Controls

    The panel cited a wide spread in cost per million tokens: roughly $56 on a premium frontier model, about $26 on another (similar to a Claude tier), around $1.50 for Grok input, about $1 for Elon’s, and roughly 50 cents for Chinese models. Calacanis said he built a deep-linking podcast player across models on Perplexity and that the new Grok run cost only $11. Ramp CEO Eric Glyman appeared on Squawk Box to launch token spend management, noting Ramp customers’ token spend has grown 21x in a year and that CFOs struggle to see or control spend on an open-ended tab where rates rise with each new model. The takeaway: engineers optimize for the newest model while CFOs bear the cost, and unless that misalignment is controlled, runaway opex becomes a “money-burning furnace” that will eventually cause a public company to miss earnings. The panel argued 95 to 98% of tasks could run one tier cheaper, which is exactly the opportunity platforms fine-tuning cheaper open models (like Mira Murati’s Thinking Machines) are chasing.

    Apple’s Local-Model Opportunity and Edge Compute

    Calacanis called Apple a “screaming buy,” citing Mark Gurman’s report that a rumored M7 Ultra chip could support up to 1.5 terabytes of memory, double the current ceiling. That would let a Mac Studio run last-generation frontier-class models locally, giving users effectively unlimited tokens on the desktop and putting downward pressure on cloud AI pricing from the likes of Anthropic and OpenAI. Freeberg added that edge compute is fragmenting outward: solar company Sunrun announced distributed data center blocks for homes, and Span partnered with Nvidia. The theme is compute chasing cheap energy, whether excess solar or battery power charged at night.

    The Energy Deficit and Behind-the-Meter Power

    Chamath warned the US will be short about 2.5 Californias’ worth of energy by 2050, and pointed to a recent PJM auction (serving Pennsylvania, New Jersey, Maryland and other states) that needed 7 to 8 gigawatts but reportedly saw only a fraction show up. He explained “behind the meter” power: rather than drawing grid power from a utility line, a data center generates its own electricity on owned property. The obstacle is clean-air permitting. Solar takes too much space and batteries still need a generation source, so operators use gas. He described Elon clustering mobile 18-wheeler-style engines to keep them under personal-use permits, and newer solutions like Bloom Energy that allow large installations under similar rules, which is how projects like Colossus in Memphis got off the ground.

    New York’s Data Center Moratorium

    New York Governor Kathy Hochul announced the nation’s first statewide moratorium on hyperscale data centers, citing power draw, land use, water, and noise pollution. The besties rebutted each claim: behind-the-meter power means facilities bring their own electricity rather than competing with residential ratepayers; data centers are highly land-efficient, and New York State is roughly 70 to 80% undeveloped outside the city; noise can be managed with distance; modern facilities use closed-loop cooling (one comparison put a typical facility’s water use at a couple of In-N-Out restaurants, far less than almonds or golf courses); and natural gas is a clean-burning power source. They noted the tax revenue, construction boom, and ongoing jobs data centers create. Sacks cited a theory that Democrats intend the “moratorium” as leverage: pause construction until they can dictate terms, then lift it under a future administration in exchange for a new regulatory agency and speech controls ported from the social-media trust-and-safety agenda. He stressed a moratorium is effectively a five-year pause once ramp-up is counted, and that the same forces slowing domestic builds are pushing chip export controls that would block data centers in allied countries too.

    Foreign Influence, Anti-GMO, and the AI Moral Panic

    Freeberg drew an extended analogy between anti-data-center sentiment and anti-GMO sentiment. He argued that GMOs were prevalent and uncontroversial from their 1996 launch until anti-GMO sentiment rose in tandem with Russia Today’s US presence (2010 to 2022) and fell after RT was pushed out, and that similar KGB-era “directed measures” influence campaigns can be traced to opposition to nuclear energy in Germany. He cited a poll showing over 50% of Americans believe data centers increase water and electricity costs even where facilities recycle water and generate their own power. Sacks pointed to an OpenAI blog post on PRC-linked influence operations targeting US AI debates, with a congressional investigation reportedly coming, arguing China has a clear incentive to slow US AI infrastructure, kill open source, and constrain cheaper models. Sacks then broadened it to a “moral panic”: the feared catastrophes (cyber, job loss) have not materialized, yet the US risks damaging its crown jewel of free-market innovation over hypothetical risks, questioning Dario Amodei’s prediction that 50% of entry-level knowledge-worker jobs could vanish within one to five years and noting the fresh Chinese model Kimi K2 is close to the frontier.

    Science Corner: An Enzyme That Reverses Skin Aging

    Freeberg closed with a paper from Google’s secretive longevity startup Calico and a pharma partner focused on the extracellular matrix, the space between cells. Over time, sugars and fats bind to proteins there in a process called glycation, accumulating as advanced glycation end products (chiefly a molecule called CML) that stiffen tissue, cause wrinkles and immobility, and drive inflammation, with nothing in the body to break them down. The researchers used AlphaFold to find a protein that could bind and degrade CML, then applied directed evolution across five recursive cycles, DNA-programming thousands of variants to maximize activity. The engineered enzyme cleared 52 to 97% of CML from body proteins like collagen, casein, and hemoglobin in vitro, and eliminated 55% of CML from donated elderly human skin, effectively reversing that skin’s biological age toward a 31-year-old’s. Open questions remain about delivery (cream, shot, supplement, or an RNA therapy that makes the enzyme inside the body), but the panel expects the first market to be a trillion-dollar cosmetic one, and hailed it as a profound demonstration of AI-driven protein engineering.

    Notable Quotes

    “The whole industry is going to need to be regulated and I think the industry needs to regulate themselves. That’s the key to this.”

    Jason Calacanis, replaying his earlier call for AI self-certification

    “If my choices are between FAA for AI or what I would call the DMV for AI, I would much rather go for Demis’ SRO for AI.”

    David Sacks, on why self-regulation beats a new government agency

    “There’s hardly anyone in government who will ever say, oh no no no, we’re not qualified. Most people in the government will say thank you very much, what else can we take.”

    David Sacks, on the asymmetry that makes voluntary concessions dangerous

    “What it prevents is a handful of actors using their balance sheets and their capital to essentially pull the ladder up.”

    Chamath Palihapitiya, on the point of establishing industry rules quickly

    “You are creating a competitor to Visa and Mastercard.”

    Chamath Palihapitiya, on the only thing Stripe, Block, and Advent could build together with PayPal

    “The only thing you can bring to your new job is what’s in your head. Your memories. But never leave with anything else.”

    David Sacks, on avoiding trade-secret disputes when changing employers

    “Privacy in AI is very fragile and it’s very brittle. You are leaking information where you don’t know it.”

    Chamath Palihapitiya, on the limits of zero-data-retention promises

    “Unless you get a control of this and you can directly say how much money you’re making, this is a bridge to nowhere. It is a money burning furnace.”

    Chamath Palihapitiya, on uncontrolled enterprise token spend

    “We’re on the threshold of destroying the crown jewel of our economy, which is the system of free market innovation that we have.”

    David Sacks, on the risk of a premature AI regulatory apparatus

    “Number one, brand yourself as a safe AI company. Number two, ban unsafe AI. Three, profit.”

    David Sacks, summarizing the strategy he attributes to the “safe AI” positioning

    Watch the full conversation here: Can the AI Industry Regulate Itself? on the All-In Podcast.

    Related Reading

    • FINRA the financial-industry self-regulatory organization that Demis Hassabis’s AI proposal is modeled on.
    • AlphaFold (Wikipedia) the protein-structure prediction system behind the age-reversal enzyme discovery in the science corner.
    • PayPal Mafia (Wikipedia) background on the founders Sacks calls the “PayPal diaspora.”
    • The Founders by Jimmy Soni, the definitive history of PayPal’s founding team and its diaspora.
    • Advanced glycation end-products (Wikipedia) the biochemistry of CML and the extracellular-matrix aging the Calico enzyme targets.
  • Thomas Laffont of Coatue on the $4 Trillion AI IPO Wave: SpaceX, Anthropic, OpenAI, and Why the New Unicorn Economy Is Healthier

    Thomas Laffont, co-founder of the $55 billion hedge fund Coatue Management, made his All-In Podcast premiere with a data-dense walk through what he calls a once-in-a-generation moment for the unicorn economy. In front of Chamath Palihapitiya, Jason Calacanis, David Sacks, and David Friedberg, he argued that a roughly $4 trillion wave of private value is about to hit the public markets, led by SpaceX, Anthropic, and OpenAI, and that the new AI-driven unicorn economy is actually healthier than the one that came before it. You can watch the full presentation and Q&A on YouTube.

    TLDW

    Laffont presents Coatue’s slide deck on the state of the unicorn economy and argues it has rebalanced after the excesses of 2021. The average unicorn is up about 70 percent since September 2024, AI keeps taking a bigger share of all fundraising, and the model has shifted from many small unicorns to fewer companies each raising far more, with funding per unicorn up roughly 5x since 2021. He introduces a “Magnificent 8” private index (SpaceX, Stripe, Anthropic, Databricks, Revolut, ByteDance, Anduril, and more) worth nearly $4 trillion that has crushed the public Mag 7, then shows that exits are finally thawing as SpaceX heads to an IPO in weeks and Anthropic confidentially files its S1. He lays out Coatue’s “CODE” framework for why SpaceX gets more valuable the more it launches, a counterintuitive finding that the odds of a 10x actually rise as companies get bigger (31 percent for $100 billion-plus centicorns), the explosive revenue ramp of OpenAI and Anthropic past Workday, ServiceNow, Adobe, Salesforce, and now the hyperscalers, a three-pillar map of where AI revenue comes from (consumer, ads, enterprise), and the AI memory thesis. The Q&A with Chamath and Calacanis digs into the power law, K-shaped outcomes, whether these valuations are disconnected from reality, the public market as the great antiseptic, and what happens when trillions in private value finally recycles back through GPs and LPs.

    Thoughts

    The most useful idea in the talk is not the $4 trillion headline, it is the cohort-health chart. Laffont splits unicorns into eras and shows that the pre-2021 cohort was healthy, roughly 80 percent had raised again or exited 20 quarters after minting, while the giant 2021 ZIRP cohort of 479 companies is stuck with under 20 percent doing either. That single comparison reframes the whole AI boom. The bullish read is that the 2024 AI cohort is small, concentrated, and cash-generative, so it looks more like the healthy pre-ZIRP group than the 2021 hangover. The bearish read is that we are watching the same movie with bigger numbers, and the test only comes when these companies face public markets. Laffont is honest that we do not yet know which cohort the AI class resembles, and that intellectual humility is what makes the deck credible rather than promotional.

    The SpaceX “CODE” framework is the sharpest analytical move of the presentation. Most people would assume a launch business gets cheaper per launch as it scales. Laffont shows the opposite, the market pays more per launch as cadence rises, and explains it as a phase change in business quality: from one-time government launch revenue, to a single recurring-revenue constellation, to multiple constellations, to a platform with optional upside in space data centers, the moon, and Mars. It is a clean way to think about any company that climbs from a project business to a platform business, and it applies far beyond rockets. The lesson for investors is that valuation can rationally expand even as unit economics look like they should compress, because the nature of the revenue underneath is changing.

    The counterintuitive 10x odds finding deserves more attention than it got in the room. Conventional wisdom says the bigger you are, the harder it is to grow, so a $100 billion company should be less likely to 10x than a $10 billion one. Coatue’s data says the reverse: centicorns have a 31 percent shot at a 10x, far higher than the 8 percent a unicorn has at becoming a decacorn. Laffont’s explanation is a filtering mechanism, every step up validates a compounding advantage and durability of earnings, so survivors are increasingly the kind of business that keeps compounding. This is essentially a quantitative restatement of quality investing, and it is the intellectual backbone of the LP strategy the besties tease out, just buy whoever reaches $100 billion and hold.

    Where the argument gets genuinely contested is valuation, and the panel does not let it slide. The pushback that “these are not fake companies” is true and important, OpenAI and Anthropic are growing faster than any software company in history, and Anthropic reportedly had a profitable month. But growth and reality do not settle the question of price when you are paying 50 to 100 times revenue for trillion-dollar private companies, as Bill Ackman pointed out earlier in the day. Laffont’s answer is the most grounded thing he says all session: the public market is the great antiseptic, it will not care about anyone’s slide deck, and he wants to see these names withstand short sellers and skeptics. That is the right posture. The deck is a thesis, not a verdict, and the verdict arrives roughly six months and one day after the IPOs, once passive flows and supply have washed through.

    The closing thread, that almost every sector is being transformed at once and we still do not have superintelligence, is the part worth sitting with. The risk in a presentation this bullish is treating the trend as destiny. The value is in the framing tools Laffont hands you, cohort health, phase-change business quality, the filtering odds, the three revenue pillars, and the antiseptic of public scrutiny. Use those to interrogate each name rather than to buy the index on faith, and the talk earns its premiere billing.

    Key Takeaways

    • Coatue Management is one of the most successful hedge funds of the last two decades with about $55 billion under management, and is raising roughly another billion dollars specifically to invest in AI.
    • The unicorn economy is up about 70 percent on average since September 2024, and the public market has made a similar move up over the same period.
    • The unicorn economy’s share of the NASDAQ rose significantly after 2015 but has plateaued in recent years, reflecting strong performance from public companies.
    • AI keeps increasing its wallet share of all venture fundraising, multiple years in a row now.
    • The composition of funding has changed. The unicorn “factory” peaked in the ZIRP era of 2021 and has normalized at a much lower level since.
    • Funding per unicorn has increased roughly 5x since 2021. There are fewer unicorns, and each one is raising more.
    • Cohort health, pre-ZIRP group: of about 73 unicorns, 20 quarters after minting roughly 80 percent had either raised a new round or exited, which is healthy.
    • Cohort health, 2021 group: of about 479 unicorns, 20 quarters in, fewer than 20 percent had exited or raised again. Far larger cohort, far worse outcomes.
    • The open question is which cohort the new 2024 AI cohort will resemble.
    • Funding is concentrating: the top 10 companies capture a large share, and it is a small number of AI companies, not all of them, with Anthropic and OpenAI raising massive rounds.
    • Laffont proposes a “Magnificent 8” private index: SpaceX, Stripe, Anthropic, Databricks, Revolut, ByteDance, Anduril, and more, spanning internet, AI, fintech, and space tech.
    • That private index represents almost $4 trillion of value and has crushed the traditional public Mag 7, with almost every name outperforming.
    • Exits are thawing. 2026 is on a good trend for cash returned versus consumed, not quite 2021 levels, with half a year still to go.
    • That trend does not yet include three imminent liquidity events: SpaceX (IPO expected in weeks) and Anthropic (confidentially filed its S1), whose combined value could exceed the prior decade of exits combined.
    • The ecosystem is far more balanced than when Laffont first presented at the 2024 All-In Summit, when it was consuming much more cash than it returned.
    • OpenAI and Anthropic revenue growth is unlike anything previously seen. Starting from January 2025, they passed Workday, then ServiceNow, then Adobe, then Salesforce, and are now bigger than Google Cloud and Azure.
    • On current forecasts, that revenue could pass AWS by the end of the year and exceed all of Microsoft by 2028.
    • Hyperscalers are not sitting still. The largest companies in the world are funding the disruption, investing unprecedented sums to enable the ChatGPT moment.
    • The SpaceX “CODE” framework: the number one driver correlated to SpaceX’s valuation is cadence of launches, and valuation per launch rises as launches increase.
    • Why per-launch value rises: business quality improves through phases, pre-constellation (one-time government revenue), initial ramp (one recurring-revenue constellation), scale (multiple constellations), and platform (space data centers, moon and Mars optionality).
    • Anthropic in particular is scaling like no company seen across the PC, internet, or mobile eras.
    • Counterintuitive 10x odds: a unicorn has about an 8 percent chance of becoming a decacorn, a decacorn has 8 to 13 percent odds of reaching $100 billion, but a centicorn ($100 billion-plus) has a 31 percent chance of a 10x.
    • Value creation has accelerated. It typically takes years to go from $500 billion to $1 trillion in market cap, yet recently three companies did it in one year and two did it in a matter of weeks.
    • Cerebras is the counterexample of slow success: years of dark periods and no new capital developing its technology, then a massive OpenAI contract that quintupled the company’s value ahead of its IPO.
    • Semiconductors are on a generational run, with the sector dramatically outperforming the index since the 2024 All-In Summit.
    • AI memory thesis: the more an AI system knows about you, the more useful it is, so memory per user could quintuple, which helps explain recent moves in memory companies.
    • Where the revenue is: the AI ecosystem is roughly $140 billion today, about $300 billion this year, and is expected to double in 2027.
    • Three revenue pillars: consumer (subscribers times ARPU), ads (about a quarter of Meta and Google ads are AI-enabled today, heading toward 100 percent and roughly $150 billion), and enterprise (tools like Claude Code and Codex inside businesses).
    • Disruption is hitting every sector: software, telco (Starlink-powered global phone calls), semis, energy (data centers reshaping Pennsylvania’s grid), auto (Ferrari’s electric and autonomous stumble), and consumer (GLP-1s reshaping food, alcohol, and wellness).
    • Final takeaways: the new unicorn economy is healthier thanks to AI, winners are compounding faster so the cost of not owning a winner is higher than ever, disruption is everywhere, and we do not even have superintelligence yet.
    • In the Q&A, both Anthropic and OpenAI publicly say they want to be public, and big outcomes now look likely to become liquid within roughly a 12-month window.
    • The valuation pushback: these are not fake companies, they generate substantial revenue at scale and grow faster than anything before, and Anthropic reportedly even had a profitable month.
    • The public market is framed as the great equalizer and antiseptic, but with passive buying the true price discovery may not land on day one, more like six months and a day after listing.
    • A floated LP strategy: wait for whoever reaches $100 billion and concentrate capital there as the least brittle, quickest-return bet, tempered by the warning that valuations are disconnecting from any historical metric (50x to 100x revenue).
    • An open risk: with so much capital, OpenAI and Anthropic could rationally start a price war, the way ride-sharing and food-delivery players once did, though heavy infrastructure spend complicates it.

    Detailed Summary

    The unicorn economy has rebalanced after 2021

    Laffont opens by reframing a market many assume is frothy. The average unicorn is up about 70 percent since September 2024, and the public market has tracked a similar climb, so private and public value are moving together rather than diverging. The unicorn economy’s share of the NASDAQ rose sharply after 2015 and then plateaued, which he reads as a sign of how strong public companies have become. Underneath the headline, the structure of funding has changed. The 2021 ZIRP era was a unicorn factory that minted enormous numbers of companies, and that machine has since normalized to a much lower level. The result is a barbell: fewer new unicorns, but each raising far more, with funding per unicorn up roughly 5x since 2021. AI sits at the center of this, taking a steadily larger share of all venture dollars for several years running.

    Cohort health is the real story

    The deck’s most important slide measures the health of the ecosystem by cohort. The pre-ZIRP cohort, about 73 unicorns, looks healthy: 20 quarters after becoming unicorns, roughly 80 percent had either raised a new round or exited. The 2021 cohort tells the opposite story. It is enormous, about 479 unicorns, and 20 quarters in, fewer than 20 percent had raised again or exited. That contrast sets up the central question of the talk. A new 2024 cohort of AI companies is forming, and no one yet knows whether it will resemble the healthy pre-ZIRP group or the bloated, stuck 2021 group. Laffont’s framing leans optimistic because the AI cohort is small and concentrated, but he is careful not to declare the answer.

    The Magnificent 8 and a $4 trillion private index

    Funding is not just flowing to AI, it is flowing to a handful of AI names, with the top 10 capturing a large share and Anthropic and OpenAI raising the biggest rounds. From this concentration Laffont builds a private index he half-jokingly calls the Magnificent 8, a number he expects to shrink as companies go public. The members span sectors: SpaceX, Stripe, Anthropic, Databricks, Revolut, ByteDance, and Anduril, covering internet, AI, fintech, and space tech. He says he would be comfortable owning that index for the next decade-plus. Collectively it represents almost $4 trillion of value and has outperformed the public Mag 7, with nearly every constituent beating that benchmark.

    Exits are thawing and a wall of liquidity is coming

    One of Laffont’s recurring concerns at past summits has been balance: the unicorn economy is great at consuming cash, but a healthy ecosystem must also return it. On that score 2026 is trending well, not quite 2021, but solid with half a year left. Crucially, that figure does not yet include three imminent events. SpaceX is expected to go public within weeks, and Anthropic confidentially filed its S1 the day of the talk. Adding those up, just a few companies could deliver more liquidity than the prior ten years combined. The takeaway is that the ecosystem that was dangerously out of balance in 2024 is now meaningfully more balanced, and improving.

    The revenue ramp past the hyperscalers

    The growth rates of OpenAI and Anthropic, Laffont argues, are unlike anything previously seen. Charting from January 2025, the leading AI labs passed Workday, then ServiceNow, then Adobe by year end, then Salesforce by January, and are now bigger than Google Cloud and Azure. On forecast, that revenue could surpass AWS by the end of the year and exceed all of Microsoft by 2028. He stresses that the hyperscalers are not passive bystanders, they are actively funding the disruption, pouring unprecedented capital into enabling the change that began with the ChatGPT moment.

    The SpaceX CODE framework

    Laffont devotes real time to how Coatue thinks about SpaceX. The single factor most correlated with SpaceX’s valuation is cadence of launches, which is intuitive for a launch business. The surprise is that valuation per launch has risen rather than fallen as cadence climbed. His explanation, the CODE framework, is that the quality of the business model improves the more SpaceX launches. In phase one, pre-constellation, you are simply proving rockets, with a few government customers and lumpy, unpredictable one-time revenue. In the initial ramp you stand up a constellation, which is an end market and a recurring-revenue business that grows with every satellite and subscriber. At scale you operate multiple constellations, and Laffont expects companies, governments, and militaries to want to own their own. Ultimately it becomes a platform, with new businesses layered on top, from space data centers to the optionality of the moon and Mars.

    Counterintuitive odds and the speed of value creation

    Coatue bucketed companies and asked the odds of a 10x within each. A unicorn has roughly an 8 percent chance of becoming a decacorn. A decacorn has 8 to 13 percent odds of reaching $100 billion. But a centicorn, $100 billion or more, has a 31 percent chance of a 10x, counting both public and private companies. The bigger you are, the better your odds, which inverts intuition. Laffont pairs this with the sheer speed of recent value creation. Going from $500 billion to $1 trillion in market cap normally takes years, yet three companies did it in a single year and two did it in a matter of weeks. He also offers Cerebras as the patient counterexample, a chip company that endured years of dark periods and no new capital before a massive OpenAI contract quintupled its value ahead of IPO, part of a broader generational run for semiconductors.

    AI memory and where the revenue actually comes from

    A throughline from the day’s other speakers is that the more an AI knows about you, the more useful it is, from your restaurant preferences to your work context. Laffont turns that into a thesis: memory per user could quintuple based on what these systems require, which helps explain recent moves in memory companies. He then tackles the most contested question, where is the revenue. He sizes the AI ecosystem at about $140 billion today, roughly $300 billion this year, and doubling in 2027, built on three pillars. Consumer is subscribers times ARPU. Ads are the pillar people forget, with about a quarter of Meta and Google ads already AI-enabled and penetration heading toward 100 percent, a roughly $150 billion opportunity. Enterprise is the breakthrough category, exemplified by tools like Claude Code and Codex operating inside businesses.

    Every sector is being transformed at once

    What makes this era different, Laffont says, is that nearly every sector is being transformed simultaneously. Software is obvious, but look at telco, where he believes Starlink will soon power a device that lets you make a phone call anywhere on earth, attacking the global telco and broadband profit pool with a better product. Compute is driving massive change in semis, data centers are reshaping the energy equation in places like Pennsylvania, and the auto business is being upended, as Ferrari’s stumble introducing electric and autonomous technology showed. In consumer, GLP-1 drugs are profoundly changing consumption of food and alcohol and the broader focus on wellness. His takeaways close the loop: the new unicorn economy is healthier thanks to AI, winners are compounding faster so the cost of missing them is higher than ever, disruption is everywhere, and superintelligence has not even arrived yet.

    The Q&A: power law, valuation, and the public market test

    Chamath and Jason Calacanis press Laffont on what this means for allocators. The recurring theme is the power law and K-shaped outcomes, with gains consolidating into a small number of companies. The positive side, Laffont notes, is that outcomes are enormous and increasingly liquid within a 12-month window, and both Anthropic and OpenAI say they want to be public. The hard part is valuation. The besties cite Bill Ackman’s framing that investors are making venture bets on trillion-dollar companies at 50 to 100 times revenue. Laffont’s pushback is that these are not fake companies, they generate substantial revenue at scale and grow faster than anything before, and Anthropic reportedly had a profitable month. But he embraces the discipline ahead: the public market is the great antiseptic and will not care about anyone’s presentation, though with heavy passive buying, true price discovery may take roughly six months and a day rather than landing on day one. Asked whether the compounding is a market inefficiency or survivor bias, he declines to over-read a small sample, noting that Anthropic before Claude Code was a completely different company than after. The conversation closes on what happens when trillions recycle from GPs to LPs, the case for simply owning whoever crosses $100 billion, the risk of everyone crowding into three names, and the possibility of an eventual OpenAI versus Anthropic price war.

    Notable Quotes

    “So we have fewer unicorns that are each raising more.”

    Thomas Laffont, summarizing how funding per unicorn has risen roughly 5x since 2021

    “The reason is that the quality of SpaceX’s business model increases the more you launch.”

    Thomas Laffont, explaining the CODE framework and why valuation per launch rises with cadence

    “The winners are compounding faster than ever, which means the costs of not being in a winner are higher than ever.”

    Thomas Laffont, on the central risk of a power-law market

    “And by the way, we don’t even have super intelligence yet.”

    Thomas Laffont, closing his takeaways on how early the transformation still is

    “These are companies generating substantial revenue at scale that are growing faster than anything we’ve ever seen.”

    Thomas Laffont, pushing back on the idea that AI valuations rest on fake companies

    “It will be the great antiseptic. It will not care about my presentation.”

    Thomas Laffont, on the public market as the ultimate test for SpaceX, OpenAI, and Anthropic

    “Anthropic pre-cloud code was a completely different company than post cloud code.”

    Thomas Laffont, on why he won’t over-read a small sample of hyper-compounders

    “The power law rules our lives. All the great gains are being consolidated into small numbers of companies.”

    An All-In host, framing the Q&A on concentration in private markets

    This is a curated set of highlights. To hear the full presentation, the slide walkthrough, and the complete Q&A with Chamath and Jason Calacanis, watch the full conversation here.

    Related Reading

    • Coatue Management. Primary source for Thomas Laffont’s firm and the technology investing strategy behind the deck.
    • The All-In Podcast. The show and summit where Laffont made this premiere presentation.
    • Power law (Wikipedia). Background on the distribution Laffont and the hosts say governs venture and public-market returns.
    • The Magnificent Seven (Wikipedia). The public-market benchmark Laffont’s private “Magnificent 8” index is measured against.
    • Cerebras Systems. The AI chipmaker Laffont cites as the slow-grind IPO that was eventually transformed by a major OpenAI contract.
  • Bill Ackman on Investment Strategy, What the Market Is Missing, and How AI Breaks Businesses

    Bill Ackman, founder and CEO of Pershing Square, joined the All-In Podcast for a conversation about how his investment approach has shifted toward permanent, long-term ownership, why he believes the highest-quality companies are being left behind by a market chasing the new new thing, and how AI is raising the risk of disruption for almost every business. He also lays out his plan to turn Howard Hughes into a Berkshire Hathaway-style compounding machine built on insurance. You can watch the full conversation here. Below is a structured breakdown of the ideas, the stories, and the frameworks he uses to underwrite a business.

    TLDW

    Ackman explains how his philosophy evolved from a smaller, more liquid activist toward concentrated, permanent ownership of durable, non-disruptible businesses, with much of his activism now playing out on X rather than in the boardroom. He tells the origin story of his first big trade, Wendy’s and the Tim Hortons spin-off, and explains why a large long-term shareholder on a board is an antidote to short-term markets. On AI, he argues that this is the greatest era in history to build a company, which means the risk of being disrupted has gone up enormously, and that the market is mispricing high-quality compounders like Microsoft, Meta, and Amazon while crowding into chips, semiconductors, and energy. He works through the SaaS question and why niche software is more at risk than platforms, how he underwrites SpaceX, xAI, OpenAI, Anthropic, and Palantir like late-stage venture bets using a people, opportunity, context, deal framework, and why founder-led companies have an edge in making radical calls. The back half covers his Howard Hughes plan to copy Buffett’s insurance-float model, the role of cost of capital and reflexivity in markets, the meme-stock era, going direct on social media, and the three different ways an investor can put money to work with Pershing Square.

    Thoughts

    The most useful idea in the interview is the way Ackman reframes disruption as the central investing problem of the AI era. His point is that the same forces making this the best time in history to start a company, meaning near-unlimited compute, capital, and talent, also raise the odds that any given incumbent gets disrupted. That reframes the word quality. It is no longer mostly about margins and moats. It becomes about non-disruptibility, which is a much higher bar than most quality investors were using a decade ago, and it is why he says most of his research time now goes into assessing that single risk.

    The what-the-market-is-missing thesis is classic contrarian Ackman. Arguing that Microsoft, Meta, and Amazon are the new old-fashioned, undervalued names while capital piles into semiconductors and energy is a direct echo of 2000, when Berkshire Hathaway bottomed precisely because money was chasing internet stocks. It is worth keeping in mind that he owns all three, so the call is also his book. The durable signal here is the framework, not the specific tickers: capital reliably chases the new new thing, and genuinely high-quality businesses get left behind during those rotations.

    The Howard Hughes plan is the most concrete bet in the conversation. Copying Buffett’s insurance-float playbook, short-term treasuries for policyholder money and equities for the surplus, onto a discounted real-estate holding company is elegant. The hard part is exactly what Ackman flags about insurance as an industry: the best investors go to hedge funds, not insurers, so most insurance companies only ever manage the liability side well. Pershing Square’s edge is that Ackman can both write the business and invest the float, which is the same reason it worked for Buffett. The framing of going from a four billion dollar company to a trillion over fifty years is a statement of intent, not a forecast, and should be read that way.

    Underneath all of it sits cost of capital and reflexivity. His observation that a higher stock price literally makes a company more valuable, because it lowers the cost of capital and creates acquisition currency, is the mechanism behind both Elon Musk’s empire and the meme-stock era he is wary of. Going direct on X is the same lever pointed at himself: communicate the vision, lower your own cost of capital, and make the bet easier for other people to place. It is a coherent worldview in which narrative and balance sheet continuously feed each other, and it explains a lot of his behavior over the last few years.

    Key Takeaways

    • The biggest change in Ackman’s approach over time is an appreciation for business quality, meaning long-term, durable, protected, non-disruptible growth as the most important factor.
    • He says he is as activist as ever, but more of it now happens on X than in the traditional corporate context.
    • His first big investment was Wendy’s, which owned Tim Hortons. The simple thesis was to buy Wendy’s, spin off Tim Hortons, and double the money.
    • Early on no one returned his calls, so he had Steve Schwarzman’s Blackstone write a fairness opinion, filed it publicly, and the company spun off Tim Hortons six weeks later. The CEO later thanked him after being fired with a large exit package.
    • Reputation compounds. Where Pershing Square once had to bang down the door, companies now sometimes tweet a welcome when it buys a stake.
    • A large long-term shareholder on a board is a counterweight to short-term markets, letting management test ideas privately and pursue initiatives that hurt the next few quarters of earnings.
    • Pershing Square owns Microsoft, Meta, and Amazon. Ackman argues you are either invested in AI directly or indirectly, or it is a threat, so you have to understand it.
    • The hardest and most important job for a concentrated investor is judging the risk of disruption, and that risk has risen dramatically.
    • This is the greatest era in history to build a business because of near-unlimited access to compute, capital, and talent, which is exactly why the probability of being disrupted has gone up enormously.
    • Markets bring their eye to the new new thing, currently chips, semiconductors, and energy, while high-quality companies get left behind.
    • He draws an analogy to 2000, when Berkshire Hathaway traded at one of its lowest valuations because everyone chased internet stocks. He sees a similar dynamic around Amazon, Meta, and Microsoft today.
    • On the SaaS question, he worries more about a Salesforce than a platform like Microsoft, because niche software charging high per-seat or per-year prices is most exposed, while low-priced platforms are safer.
    • Any software company today has to be as AI-enabled as possible, or risk losing the monopolistic pricing it once enjoyed.
    • His famous March 2020 CNBC appearance was an attempt to reach President Trump and argue for a short shutdown, paired with the view that stocks were incredibly cheap and worth buying.
    • He describes valuation as a tether on the market: when prices stretch too high they snap back, and when they get too cheap the same rubber band pulls valuations up. Calling that out publicly can trigger a psychological reset.
    • His recent bullish call came because stocks of really high-quality companies had gotten crazy cheap on fundamentals, meaning the present value of the cash they generate.
    • He underwrites high-multiple names like SpaceX as venture investments using a framework from business school: people, opportunity, context, deal.
    • On SpaceX, people and opportunity are one of one, the context is incredible, and Starlink plus near-monopoly low-cost launch make it strategically valuable. The complicated part is the deal, meaning the valuation. He invested via an SPV after Ron Baron’s nudge, and also invested in xAI.
    • He treats OpenAI, Anthropic, and Palantir as late-stage venture bets that have proven they can generate real revenue, and says OpenAI should do a better job communicating how it thinks about its enormous capital commitments.
    • Every CEO in America is asking how to use AI, how it applies to their business, and how it is a threat. It is top of mind and boards open every meeting with it.
    • He has not seen much enterprise AI success yet, citing a McKinsey study that 95 percent of enterprise initiatives fail and the rise of the forward deployed engineer as the hot role bridging promise and ROI. Pershing Square itself uses AI mainly for legal, compliance, and back-office work.
    • Founder-led companies have an advantage because founders have the authority and the economic stake to make radical calls, while the average S&P 500 CEO has a roughly three to four year tenure and is incentivized not to make mistakes.
    • He cites Mark Zuckerberg buying Instagram and WhatsApp as the kind of shocking-at-the-time calls that a founder with a track record can make.
    • Ben Graham’s enduring lesson is that a stock is an interest in a business, not a piece of paper, but Graham mostly invested in liquidations and cash-rich shells, and made most of his money on Geico.
    • Most of Buffett’s value at Berkshire came from owning insurance operations and focusing on the asset side of the balance sheet, not just the liability side.
    • Insurance is hard to copy because top investors do not go to work for insurers. Buffett owned half his company and was a great investor, which is why it worked.
    • Howard Hughes came out of the General Growth bankruptcy and owns master-planned cities like Summerlin, with 26,000 acres in the Las Vegas area, comparable to the Irvine Company that built roughly a hundred billion dollars of wealth for Donald Bren.
    • The plan is to reinvest the cash Howard Hughes generates into insurance, put policyholder float in short-term treasuries and the surplus in common stocks, and build a compounding machine over fifty years, buying it at roughly sixty cents on the dollar.
    • A company must earn a return above its cost of capital for the stock to rise. Elon Musk has kept his companies’ cost of capital extremely low, and a SpaceX IPO near a 1.75 trillion dollar valuation could be one of the lowest cost of equity capital transactions ever.
    • Markets have changed less because of Ackman and more because of figures like Ryan Cohen and GameStop, where a stock can trade well above its value on personality and an army of followers.
    • Higher valuations are reflexive: a rising stock price lowers cost of capital and creates currency to issue stock and acquire businesses, which is part of how Elon built Tesla.
    • There are three ways to invest with Pershing Square: the management company itself (a royalty on compounding assets with no capex), PSUS (a portfolio of best ideas trading at an 18 percent discount), and Howard Hughes (a bet on building the next Berkshire). A dollar invested 22 years ago became roughly 27 to 28 times net of fees.
    • Going direct on X, with 2.2 million followers, lets him communicate his vision and lower the friction for others to back his bets, even as his very long tweets have become a running meme.

    Detailed Summary

    From activist trades to permanent capital

    Ackman frames the evolution of his career as a steady move toward business quality. As a smaller, more liquid investor early on, he did not have to think as long-term. As Pershing Square became a bigger, more concentrated investor, durable growth became the dominant factor in every decision. He insists he is still as activist as ever, but a lot of that energy has shifted to X, where he can argue a position publicly rather than only inside a boardroom. The best investments, he notes, are the ones where you do not need to join the board and do anything at all.

    The Wendy’s and Tim Hortons origin story

    One of Pershing Square’s first investments was Wendy’s, which owned the Canadian coffee and donut chain Tim Hortons. The value of Tim Hortons alone was greater than the entire value of Wendy’s, so the idea was simple: buy Wendy’s, spin off Tim Hortons, and double the money. Ackman bought ten percent of the company and could not get the CEO to return a single call, so he had a contact at Blackstone, with Steve Schwarzman’s sign-off, write a fairness opinion on what Wendy’s would be worth after a spin-off, filed it publicly, and watched the spin-off happen six weeks later. The CEO eventually called back to thank him, having been fired but rewarded with a large exit package. Over the years that scrappy approach gave way to a reputation that now opens doors on its own.

    Why a long-term shareholder on the board matters

    The core problem of being a public company, in Ackman’s telling, is the short-term nature of markets and analysts, when a good business should be run in the context of years and even decades. A large, supportive shareholder on the board gives management a place to test ideas before exposing them to the public and a credible voice willing to back initiatives that hurt earnings for a few quarters. That is the value-add he believes a constructive activist can bring to a mature public company, as opposed to a startup where the best outcome is simply to own a great business and stay out of the way.

    AI and the rising risk of disruption

    For a concentrated, long-term investor, the most challenging task is judging the risk that two people from Stanford in a garage build something that destroys your thesis. Ackman argues that risk has climbed dramatically because this is the greatest era in history to build a company, with near-unlimited access to compute, capital, and talent. The paradox is that the conditions that make building easier also make incumbents more fragile, so the bulk of his research now centers on assessing how disruptible a business really is.

    What the market is missing

    Investors bring their attention to the new new thing, currently chips, semiconductors, and energy, which leaves high-quality companies behind. Ackman compares the moment to 2000, when Berkshire Hathaway traded at one of its lowest valuations ever because capital was chasing internet stocks. He sees an echo today in how Amazon, Meta, and Microsoft are treated as old-fashioned, and he considers them undervalued on fundamentals, where value is the present value of the cash a business generates over its life. His recent bullish call, like his March 2020 appearance, came because stocks of really high-quality companies had simply gotten too cheap.

    The SaaS question and AI-enabled software

    On the so-called SaaS apocalypse, Ackman says it is a company-by-company analysis. He worries more about something like Salesforce than about a low-priced platform. The companies most at risk are those that extracted near-monopolistic profits by charging a high annual price for a niche product, because AI lowers the barrier to replicating that functionality. A platform where the average customer pays a small amount per seat, like Microsoft, is far less exposed. The takeaway for any software company is to become as AI-enabled as it possibly can.

    Underwriting SpaceX, xAI, and the AI labs like venture

    For the highest-multiple private companies, Ackman uses a venture lens and a framework a business school professor taught him: people, opportunity, context, deal. SpaceX scores as one of one on people and opportunity, with an incredible context and a near-monopoly in low-cost launch through Starlink, which makes even Amazon a likely customer. The complicated variable is the deal, meaning the valuation, and he admits he has not done all the math, having invested through an SPV after Ron Baron encouraged him, along with a position in xAI. He treats OpenAI, Anthropic, and Palantir as late-stage venture bets that have proven real revenue, and argues OpenAI in particular should communicate more clearly how it justifies capital commitments that vastly exceed current revenue.

    Founder-led companies and the authority to act

    Ackman agrees that founder-led companies have a structural advantage in a fast-changing environment. The average S&P 500 CEO has a tenure of roughly three to four years, a small economic stake, and an incentive not to make a career-ending mistake. A founder is betting an entire life and reputation, has the authority of a major voting and economic position, and has usually made several hard, contrarian calls that turned out right. He points to Mark Zuckerberg’s acquisitions of Instagram and WhatsApp, which looked shocking at the time, as exactly the kind of decision a founder with a track record can make and a hired manager often cannot.

    Howard Hughes as Berkshire Hathaway 2.0

    Ackman points to a detailed financial history of Berkshire Hathaway showing that the vast majority of Buffett’s value creation came from owning insurance and focusing on the asset side of the balance sheet, not just the liability side. Insurance is hard to replicate because skilled investors join hedge funds rather than insurers, but Buffett owned half his company and was a great investor. Pershing Square is applying the same idea to Howard Hughes, a company created out of the General Growth bankruptcy that owns master-planned cities such as Summerlin, with 26,000 acres around Las Vegas, in the spirit of the Irvine Company that made Donald Bren roughly a hundred billion dollars. The plan is to reinvest the company’s cash into insurance, place policyholder float in short-term treasuries and the surplus in common stocks, avoid issuing stock the way Buffett did, and compound for fifty years, all bought at around sixty cents on the dollar.

    Cost of capital, reflexivity, and going direct

    A company only creates value when it earns above its cost of capital, which is why Howard Hughes, seen as a high-cost-of-capital real-estate business, has long traded at a discount, and why Ackman is repurposing its assets into a higher-returning model. He highlights how reflexive markets are: a higher stock price itself makes a company more valuable by lowering its cost of capital and creating currency to raise money and acquire businesses, a lever Elon Musk used to build Tesla. He attributes real market change less to himself and more to figures like Ryan Cohen and GameStop, where personality and a following can lift a stock far above its value. His own going-direct strategy on X, with 2.2 million followers and famously long posts, is the same mechanism applied to communicating a vision and lowering friction for investors. He closes by laying out three ways to invest with Pershing Square: the management company as a royalty on compounding assets, the PSUS portfolio trading at an 18 percent discount, and Howard Hughes as a bet on building the next Berkshire.

    Notable Quotes

    “The best investments are one where you don’t need to join the board and do anything.”

    Bill Ackman, on the kind of business he most wants to own

    “The probability of your being disrupted has gone up enormously.”

    Bill Ackman, on why assessing disruption risk now dominates his research

    “Valuation is like a tether on the market, right? When it gets too high, it’s like this rubber band that’s stretching and inevitably it bounces back.”

    Bill Ackman, on how prices revert at both extremes

    “People, opportunity, context, deal.”

    Bill Ackman, on the business school framework he uses to underwrite companies like SpaceX

    “Every CEO in America today is like, how do I use AI?”

    Bill Ackman, on AI as the top opportunity and threat in every boardroom

    “A closed mouth gathers no foot.”

    Bill Ackman, quoting the line a friend put next to his name in his high school yearbook

    “The increase in value of the company increases the value of the company, right? Because it lowers the cost of capital, it gives you more flexibility, gives you the ability to issue stock, raise capital, acquire other businesses.”

    Bill Ackman, on the reflexivity between stock price and corporate value

    “The company’s got like a $4 billion market cap and the goal is to build it into a trillion dollar thing over time compounding.”

    Bill Ackman, on his fifty-year plan for Howard Hughes

    Taken together, the conversation is a tour of how Ackman now thinks about quality, disruption, and compounding, and a preview of the Berkshire-style machine he wants to build out of Howard Hughes. Watch the full conversation here.

    Related Reading

  • All-In Podcast Recap: Epstein Files, Tether’s Billions, Nvidia Accounting & Poker Psychology

    Live from The Venetian: The Besties break down the Epstein file release, the massive margins of Tether, the Michael Burry vs. Nvidia debate, and a masterclass in risk with Alan Keating.

    In this special live episode recorded during the F1 weekend in Las Vegas, the “Besties” (Chamath Palihapitiya, Jason Calacanis, David Sacks, and David Friedberg) reunite in person. The agenda is packed: political intrigue surrounding Jeffrey Epstein, the financial dominance of stablecoins, technical debates on AI chip accounting, and high-stakes poker strategy.

    TL;DR: Executive Summary

    The US government has voted nearly unanimously to release the Epstein files, leading the hosts to speculate that the lack of leaks points to intelligence agency involvement rather than political dirt on Donald Trump. Chamath details a meeting with Tether CEO Paolo Ardoino, revealing a business holding over $100 billion in US Treasuries with profit margins potentially exceeding 95%. The group then debates Michael Burry’s short position on Nvidia, with Friedberg defending the “useful life” of AI chips under GAAP accounting. Finally, poker legend Alan Keating joins to discuss “soul reading” opponents and mastering fear in high-stakes games.


    Key Takeaways

    • The Epstein Intelligence Theory: The hosts argue that if the files contained damaging information on Donald Trump, it would have been leaked during the Biden administration. The prevailing theory discussed is that Epstein may have been an intelligence asset (CIA/Mossad/Russia), explaining the long-standing secrecy.
    • Tether is a Financial Juggernaut: Tether holds approximately $135 billion in US Treasuries and operates with roughly 100 employees. Chamath estimates the business runs at 95%+ margins, effectively exporting US dollar stability to developing nations while capturing massive interest yields.
    • Nvidia vs. Michael Burry: “The Big Short” investor Michael Burry is shorting the sector, arguing tech companies are “cooking the books” by depreciating AI chips over 6 years when they become obsolete in 3. Friedberg counters that chips retain a “useful life” for inference and background tasks long after they are no longer top-of-the-line.
    • Google Gemini 3: Google has regained the lead on LLM benchmarks with Gemini 3. The conversation highlights a shift toward proprietary silicon (TPUs) and a fragmented chip market, posing a potential long-term risk to Nvidia’s dominance.
    • The “Oppenheimer” Moment: David Friedberg reveals he decided to return as CEO of Oho after watching the movie Oppenheimer, realizing he needed to be an active operator rather than a passive board member.

    Detailed Episode Breakdown

    1. The Epstein Files Release

    In a stunning bipartisan move, the House and Senate voted nearly unanimously to release the Epstein files. The Besties analyzed why this is happening now. Sacks and Chamath suggested that because Epstein was the “most investigated human on earth,” any compromising information regarding Trump would likely have been weaponized politically by now.

    The discussion pivoted to the source of Epstein’s wealth. Chamath noted Epstein managed money for billionaires and charged inexplicable fees for “tax advice”—such as a documented $168 million payment from Apollo’s Leon Black. The hosts speculated that Epstein likely functioned as a spy or asset for intelligence agencies, which would explain the protective layer surrounding the files for so long.

    2. Tether and the Stablecoin Boom

    Chamath shared insights from a dinner with Tether CEO Paolo Ardoino. Tether’s financials are staggering: approximately $135 billion in US Treasuries and billions more in Bitcoin and gold.

    The hosts discussed the utility of stablecoins in high-inflation economies, where locals use USDT to preserve purchasing power. Because Tether earns the interest on the backing treasuries (rather than passing it to the coin holder), and operates with a lean team, the company generates billions in pure profit. Sacks noted that future US regulations might eventually force stablecoin issuers to share that yield with users, but for now, it remains one of the most profitable business models in the world.

    3. Accounting Corner: Is Nvidia Overvalued?

    Michael Burry is shorting the semiconductor sector, claiming companies are inflating earnings by depreciating Nvidia chips over 6 years despite rapid technological obsolescence.

    Friedberg launched a segment dubbed “Accounting Corner” to rebut this. He explained that under GAAP standards, an asset’s useful life is determined by its ability to generate revenue, not just its technological superiority. Even if an H100 chip isn’t the fastest on the market in year 4, it can still run inference models or handle lower-priority compute tasks, justifying the longer depreciation schedule. Chamath added that tech giants monitor “output tokens” closely; if a chip wasn’t profitable, they would simply turn it off.

    4. Poker Strategy with Alan Keating

    The episode concluded with Alan Keating, a high-stakes poker player famous for his loose, aggressive style. Keating explained his philosophy, which relies less on “solvers” (GTO strategy) and more on “soul reading”—navigating the fear and psychology of the table.

    He broke down a famous hand where he beat Doug Polk with a 4-2 offsuit, explaining that he sensed fear in Polk’s betting patterns on the turn. Keating described his approach as finding “beauty in the chaos” and dragging opponents into “deep water” where they are uncomfortable and prone to errors.


    Editorial Thoughts

    This episode marked a distinct shift in the podcast’s tone regarding crypto, moving from general skepticism to a recognition of the sheer scale and utility of stablecoins like Tether. The “Accounting Corner” segment, while technical, provided critical context for investors trying to value the AI stack—suggesting the AI boom has more fundamental accounting support than bears like Burry believe. Finally, the live format from Las Vegas brought a looser, more energetic dynamic to the conversation, highlighting the chemistry that makes the show work.