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Plutonic Rainbows

Nine Million Beige Boxes

In 1982, France Télécom began handing out small beige terminals for free to anyone with a phone line. The terminal had a keyboard, a CRT, a modem, and no microprocessor. It dialled into a national videotex network using a standard called V23 bis, and on the other end of the line sat thousands of services that could be reached by typing short codes. The system was called Minitel, and within a decade it covered nine million households. By the peak in 1993, somewhere around 25 million French citizens were logging more than 90 million hours a month across roughly 26,000 services, more than a decade before most Americans had heard the word "internet".

The thing that gets forgotten is how deliberate the policy was. President Valéry Giscard d'Estaing's government rolled Minitel out during a period when French elites felt that the dominance of US firms in telephone equipment, computers, databases, and information networks was a threat to national sovereignty, or at least to cultural pride. The terminal was free because the state wanted volume. Usage was billed by the minute, the network paid out to service providers, and nobody needed a credit card or an account. It was a closed garden run by the post office, and for roughly fifteen years it worked better than anything else on earth.

Then the web arrived, and France kept its garden walled. Service providers were making real money on the existing system. Users were comfortable. The government had no political appetite to subsidise a transition to an English-speaking American protocol when the French-speaking national one was still doing what most French people wanted it to do. The country that had been a decade ahead of everyone else on consumer networking spent the back half of the 1990s coasting on the system it already had, while broadband matured elsewhere. By the time it became obvious which side of that bet had aged better, the gap was already wide.

The shutdown came on 30 June 2012. The Orange subsidiary of France Télécom, by then managing what was left of the network, said it had reached its natural death. Around 670,000 terminals were still in circulation when the plug was pulled, mostly used by farmers exchanging cattle data, doctors transmitting patient details to the national health service, and small tradespeople placing orders with suppliers who had never bothered moving online. Janine Galey, an 85-year-old mother of seven in Paris, told the Guardian she had used her Minitel until around 2000 and then gone straight to an iPad, skipping the desktop web entirely. There is a thirty-year window of French daily life in which a meaningful slice of the country transacted online without ever touching a browser.

What persists is the policy instinct. The same logic that built Minitel, that French communications infrastructure should be French and that the state has a legitimate role in shaping it, runs underneath a great deal of contemporary EU digital policy. GDPR, the Digital Markets Act, the AI Act, the recurring French enthusiasm for the phrase "souveraineté numérique" in cabinet briefings: none of that is causally downstream of Minitel in any clean way, but the intellectual furniture is the same. A country that once built its own network and ran it for thirty years is not going to be constitutionally relaxed about Mountain View running the next one.

The terminals themselves are kitsch now. They turn up in flea markets in the 11th arrondissement for thirty euros, beige plastic with the slide-out keyboards that supposedly inspired Steve Jobs's first Macintosh. Most of them still work if you can find a phone line that will carry the V23 bis signal, which is harder every year. The ghost is not the hardware. The ghost is the assumption, baked into a generation of French civil servants and now their successors, that the network is a thing the state can have an opinion about. The web, by contrast, has always insisted that it is weather. France was the last country to fully concede the point, and arguably has not conceded it yet.

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Bike Shorts at Chanel

A year before the famous hip-hop show, Lagerfeld put bike shorts on a Chanel runway. The Spring-Summer 1991 ready-to-wear was presented in Paris in October 1990, with a beach theme. Cycling shorts turned up under sequined tops, under little structured jackets, under cropped pieces in the saturated colours Chanel had not really worn since Coco was alive. The leggings-and-leotard logic that aerobics had pushed into ordinary wardrobes by the late eighties got promoted, on that runway, into the most expensive ready-to-wear in Paris.

The cast read like an inventory of the moment. Claudia Schiffer, Karen Mulder, Linda Evangelista, Tatjana Patitz, Yasmeen Ghauri, Naomi Campbell. Tim Blanks, looking back at the show twenty-odd years later for Style.com, used it as the marker for when backstage stopped being a back room. He remembered four or five camera crews at the start of the season and four or five hundred by the end of it. Whatever you call the supermodel era, this collection sits inside the moment it became a media phenomenon rather than an industry one.

What the show actually did, on the level of clothes, was harder to read at the time. Chanel in 1990 still meant something specific to the women who bought it: a quilted bag, a chain belt, a tweed suit, a particular kind of older clientele the house had spent the previous decade trying not to lose while also trying not to ossify around. Lagerfeld's job, by then, had been to keep both audiences in the room. The beach collection was an attempt at the second part. Bike shorts under a tweed jacket are not a concession to an existing customer; they are a bet that there is another customer arriving.

The reference points were sport and sportswear, not couture. An American context kept showing through, the cyclist on Venice Beach, the aerobics studio, the pop video. Lagerfeld liked to say his life was based on change, also change of mind. What was right for the next ten minutes might not be right after that. The Spring 1991 show looks now like the moment that change-of- mind became a method rather than a quip, the moment where the house's commercial heritage started getting pushed through a filter from somewhere outside Paris and let back out as something else.

The Fall 1991 show, six months later, ran the same trick at a higher temperature, piled-on chains and the line about Christmas trees. That collection took the headlines, partly because the press had caught up with what was being attempted, partly because hip-hop codes inside Chanel were a more legible provocation than bike shorts inside Chanel. The beach show stayed quieter in the record, even though it was the one that established the frame.

Looking at the Getty stills, the thing that stands out is how unforced the styling reads. The supermodels are not trying to sell you the bike shorts. They are wearing them as if cycling shorts under a jacket were already an ordinary thing for a woman with money to wear in October 1990, which it was not. By the time the next decade arrived, the experiment had hardened into a costume cliché, leggings under everything, athleticwear codes on the high street. The thing the runway did first does not always survive into the version that becomes the rule, but it leaves the imprint.

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Lytham St Annes, June 1957

Lytham St Annes is a quiet seaside town between Blackpool and the Ribble estuary. In June 1957 a machine the size of a delivery van was switched on inside a Post Office building there, and Ernest Marples, the postmaster general, pressed a button. ERNIE, the Electronic Random Number Indicator Equipment, generated the first nine-digit Premium Bond numbers in history. Two thousand numbers an hour, drawn from the thermal noise of neon gas tubes, fed to a teleprinter, matched against bond serials that were not yet on a computer because no computer existed at the right scale to hold them.

ERNIE was built at the Post Office Research Station at Dollis Hill, in north London, by the same engineers who had built Colossus during the war. Tommy Flowers oversaw the project. Harry Fensom, who had worked under Flowers on Colossus, was chief engineer. Sidney Broadhurst led the build team. None of them could speak about Colossus, the wartime machine was classified for thirty more years, but the techniques transferred sideways into a different national project. The state had decided to encourage saving without raising taxes. Premium Bonds were the answer. The lottery needed numbers no human could fix, and the men who had broken Lorenz cipher knew how to make them.

The Science Museum description puts it plainly: for many people, ERNIE was the first electronic brain they had ever heard of. Not the first they had used. The first they had heard of. The press anthropomorphised the machine immediately. Christmas cards arrived in Lytham St Annes addressed to ERNIE personally, and millions of people who had never used a typewriter, let alone a computer, took for granted that a steel cabinet in Lancashire was deciding their luck once a month.

The line of succession is long. ERNIE 2 arrived in 1973, sixty-five thousand numbers an hour. ERNIE 3 in 1988 ran at three hundred thousand, and produced in April 1994 the first Premium Bonds millionaire: a man from Surrey, ten thousand pounds invested, bond number 29JZ644125. ERNIE 4 in 2004 generated a million numbers an hour, weighed ten kilograms rather than fifteen hundred, and was small enough to retire to the National Museum of Computing at Bletchley Park when ERNIE 5 took over in 2019. ERNIE 5 is a chip the size of a grain of rice, built by a Geneva firm called ID Quantique. It uses the quantum behaviour of light rather than thermal noise. It produces nine million numbers in twelve minutes, replacing a machine that needed nine hours, replacing a machine that needed near enough three days for the first draw.

What persists across all five generations is the name. The technology is unrecognisable; the physical object has shrunk by something like a factor of a hundred thousand; the source of randomness has migrated from the thermal jitter of valves to the irreducible weirdness of photons. ERNIE is still ERNIE. NS&I uses the same nickname they used in 1957. The brand is older than nearly every computing system in continuous use anywhere on earth.

There is a hauntology in this, and it is the inverse of the usual one. The usual hauntological object is a thing whose function has died and whose body remains, leaving a husk. ERNIE is a name whose function has survived through five complete bodily reincarnations. The ghost is the handle, not the cabinet. The cabinet from 1957 sits in the Science Museum collection. ERNIE 4 sits at Bletchley Park, a few rooms from the Colossus rebuild, where it can keep its grandfather company. ERNIE 5 sits inside a server rack in Lancashire and is invisible at the scale of a glance.

Once a month at the start of every month, somewhere on that server, the descendant of a wartime code-breaking machine still picks the numbers. The teleprinter has been replaced, the neon tubes have been replaced, the engineers who built the original machine are long dead, and yet the press release that goes out from NS&I still credits the result to ERNIE's draw. Whatever is doing the work, the name does the explaining.

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Tables, Not Tokens

SAP announced this morning that it has agreed to acquire Prior Labs, the Freiburg startup behind TabPFN, and will invest more than €1 billion over four years to scale it into what the press release calls a globally leading frontier AI lab in Europe. Terms of the deal itself were not disclosed. The acquisition is expected to close in the second or third quarter of 2026, pending regulatory approval. Prior Labs will keep operating as an independent unit under its three co-founders, Frank Hutter, Noah Hollmann, and Sauraj Gambhir, with Yann LeCun and Bernhard Schölkopf on its scientific advisory board.

The headline number is the easy part. What is interesting is what SAP is buying.

Tabular foundation models are not large language models. They are a different shape of pre-trained network, designed for the kind of structured data that lives in spreadsheets and database rows: customer churn predictions, credit scoring, supply-chain forecasts, the unglamorous numerical workloads that actually run an ERP system. TabPFN, the model series Prior Labs published in Nature, set the state of the art on tabular benchmarks across hundreds of independent academic studies. It has been downloaded over three million times and is open source. SAP started seeding this category itself with SAP-RPT-1, and the Prior Labs deal is the doubling-down.

This matters because almost every public conversation about frontier AI in 2026 still defaults to chat. Whether a model can write code, summarise a meeting, explain a research paper, draft an email. None of that has very much to do with the data SAP customers actually run. Predicting whether a particular invoice will be paid on time is a tabular problem, and an LLM is the wrong tool for it. TabPFN is the right one, and SAP now owns the lab.

The other reading is geopolitical. SAP is the one European company that genuinely matters in enterprise software, and a German-headquartered frontier AI lab anchored in Freiburg is exactly the kind of thing the Cohere–Aleph Alpha merger was supposed to produce in a different architectural lane. It is not yet clear whether European AI sovereignty holds together as a strategy when it depends on private balance-sheet decisions, but the Walldorf cheque does buy a credible counterweight to the US labs in at least one part of the stack.

There is also the timing. SAP announced the Dremio acquisition on the same press-release run, an open-source data-lakehouse buy that fits the same agentic-AI distribution thesis Anthropic and OpenAI were both pricing in this weekend with their own PE-backed enterprise vehicles. The frontier-lab era is starting to look less like a small handful of California labs serving the world through APIs, and more like a set of vertically integrated stacks each glued to a particular distribution channel. SAP's channel happens to be every Fortune 500 finance department.

Whether tabular foundation models scale the way LLMs did is genuinely an open question. The Nature paper showed they work strikingly well at small to medium row counts; pushing them to millions of rows and real-time inference is what the €1 billion is meant to fund. If it does scale, the next decade of enterprise AI starts looking quite different from the chatbot-oriented one currently being marketed.

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Embed, Not Subscribe

Anthropic is finalising a $1.5 billion joint venture with Blackstone, Hellman & Friedman, and Goldman Sachs to sell AI tools to the private-equity-backed companies those firms own. Anthropic, Blackstone, and H&F are each putting in roughly $300 million; Goldman is anchoring with about $150 million. The Wall Street Journal broke the story Sunday night and the announcement landed on Monday. The structure is unusual enough to be worth slowing down on. This is not a sales channel. It is a vehicle. Three of the largest pools of capital on Wall Street are co-investing with a frontier-model lab to embed Claude inside their own portfolios.

The thing to notice is not the dollar figure. It is the shape. Anthropic, four years into commercialising a frontier model, has decided that selling API tokens to enterprises is not the business it actually wants to be in. The business it wants to be in is the one Palantir has been quietly building for twenty years, sending engineers into the customer's building, sitting next to the people who actually do the work, writing code against the messy data the customer has, and producing something that runs in production rather than a slide deck about pilots.

OpenAI got there first, in form if not at this scale. Its Forward Deployed Engineering team, led by Colin Jarvis, has been hiring against the Palantir template for most of a year. The group is still small, on the order of dozens of engineers backed by a few hundred in customer success, and the public framing is "zero to one" work at Morgan Stanley, T-Mobile, Klarna, and a handful of other names. The internal target, leaked to The Information last autumn, was fifteen billion dollars in enterprise revenue by the end of 2026, with enterprise share of total revenue moving from forty to fifty percent. Anthropic is doing the same thing with a different financial instrument. Rather than hire several hundred forward-deployed engineers itself and try to build the consulting muscle in-house, it is splitting the joint venture with the people who already own the customers.

This is interesting because it admits a thing the AI industry has not really wanted to admit out loud, which is that the hardest part of enterprise AI is not the model. The hardest part is everything around the model. Data hygiene, evals, guardrails, permissioning, the institutional politics of taking work away from a team that has been doing it for fifteen years and giving it to a system the executive cannot fully explain. The MIT study that has been ricocheting around boardrooms all year, the one that found ninety-five percent of generative-AI pilots fail to move into production, was a market signal. Foundation-model access is a commodity. The integration is the moat.

Once you accept that, the JV looks less like a deal and more like an asset class being constructed in real time. Blackstone and H&F own thousands of companies between them, across healthcare, industrials, financial services, and software. Each of those companies has a backlog of process work that someone has been promising to automate for a decade. Embedding a Claude team inside the portfolio means the AI lab gets a captive distribution channel, the PE firms get an operating-leverage story they can tell limited partners, and Goldman gets to be the banker for whatever rolls up out of the resulting consolidations. Everybody is paid twice.

The thing I keep coming back to, though, is what this means for the model itself. If the most lucrative thing Anthropic can do with Claude is to put humans next to it inside other companies, then the model is no longer the product. The model is the pretext for the engagement. Five years ago that would have sounded like a failure mode. Today it sounds like a strategy deck. The frontier labs are quietly turning into consultancies that happen to own the LLM, and the consultancies that do not own one will spend the rest of the decade trying to buy access to the ones that do.

Whether this is good for anyone outside the deal is a separate question. The PE-portfolio companies that get the embed will move faster than their competitors. The ones that do not will keep paying for API tokens and wonder why their pilots stall in the same place everyone else's stall. The forward-deployed engineer, a job title most associated with Palantir until recently, will become one of the most sought-after roles in the industry. And the question of who actually owns a foundation-model lab, whether it is a public utility, a product, or a private weapon for a small number of capital allocators, will get answered in the most boring possible way, by the legal structure of the JV.

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Nine Billion Faxes a Year

An estimated nine billion faxes still cross the wire every year, mostly in hospitals, law firms, pharmacies, and the kind of government office where the carpet has a pattern that pre-dates the euro. The machines themselves are mostly gone. What's left is a software emulation of the old fax standard, Group 3, running on top of a VoIP trunk, pretending to be a beige plastic box with a thermal-paper roll. The protocol survives. The object it once required has been quietly discarded, then re-summoned in software, because the institutions that depend on it never actually wanted the object. They wanted the legal status the object happened to confer.

This is the part that took me a while to understand. People usually frame the persistence of fax as institutional inertia, old doctors who can't be retrained, old lawyers who won't give up their dedicated line. The inertia is real, but it's not the mechanism. The mechanism is that a faxed document accrued, over about thirty years, a body of case law and regulation treating it as presumptively delivered, presumptively unaltered, and presumptively timely. The transmission confirmation page, with its timestamp and page count, became a kind of evidentiary atom. Courts accepted it. Regulators accepted it. HIPAA explicitly permits fax as an acceptable channel for transmitting protected health information. Email never accreted the same body of presumptions, partly because it lacks the same chain-of-custody artefact and partly because the regulations were written before anybody had thought hard about email at all.

Once that asymmetry hardened, every workflow built downstream of it inherited the dependency. Hospitals could not stop faxing without rewriting their referral procedures, their pharmacy authorisations, their record-release policies, and their malpractice posture all at once. The same is true for law firms filing motions at the close of business and for banks running loan documentation against regulatory clocks. None of those institutions love fax. They love the audit trail it produces and the legal precedent that audit trail invokes, and the cheapest way to keep the audit trail is to keep faxing.

So when the hardware became uneconomic, the protocol did not die with it. It moved into T.38, a real-time fax-over-IP standard that lets a softswitch carry the fax session across packet networks. From the application's point of view, nothing has changed. From the network's point of view, there is no longer a phone line. The dedicated copper pair the fax was always sold as needing has been replaced by SIP trunks running over ordinary internet, which is precisely the medium fax was supposed to be defending against. The compliance argument has quietly inverted. The transmission is now indistinguishable from email at the transport layer. What persists is the paperwork that says it isn't.

There is a particular kind of haunting in this. The persistence of fax is not the persistence of an old machine. It's the persistence of a legal fiction surviving the substrate it was written about. It's similar to the way the AT command set still answers inside a 5G modem, except that AT survives because nobody could be bothered to replace something that worked, while fax survives because somebody would have had to rewrite the law. The first is software inertia. The second is jurisprudential inertia. They look the same from the outside. Inside, they are very different ghosts.

A nurse in 2026 sending lab results to a referring physician is, in a real sense, operating a piece of 1980s telecoms ritual. The beige box is gone. The dial tone is simulated. The phone line is a software illusion. But the moment of transmission, the confirmation page, the timestamp, the page count, are still treated as a kind of legally privileged event, distinct in character from the email she might have sent instead. The ritual was always the point. The hardware was a costume the ritual happened to be wearing.

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Lilith, Fall 1992

Rei Kawakubo married Adrian Joffe at the Paris city hall on the fourth of July, 1992. The bride wore a black skirt and a plain white shirt. He had joined Comme des Garçons five years earlier, in 1987. That detail of the wedding outfit is the part most people skip past, because it sounds like a refusal of bridal theatre, when it is actually the opposite. It is the costume of a woman who has thought about clothing for thirty years and decided that on the day she gets married she will wear what she always wears.

The collection she showed for Fall 1992, the one in shops by the winter of her marriage, was called Lilith. The reference is the female demon of Jewish folklore, the night-figure whom God, in some readings of the Talmud, made out of "filth and sediment" because Adam complained the first woman was too much like him. Kawakubo had been quietly working with myths that side-stepped the bridal one for years. Lilith was the moment she made the side-step the entire architecture of the show.

Vogue described the clothes as semi-destroyed, and very sophisticated. Predominantly black, with flashes of pink and strokes of white polka dot. Chiffon layers yoked to cone-shaped knitted turtlenecks that masked the face from the nose down. Sorcerer's sleeves, that long medieval drape from shoulder to floor that the rest of fashion had let go of sometime around the early seventies. The colour she gave the collection was nightshade, a botanical word doing the work of a moral one.

Sandra Bernhard walked the show. Kawakubo had met her when Bernhard came in to be dressed for an event, and put her in a men's suit instead, which Bernhard later said she preferred. The casting tells you something: Kawakubo had spent the late eighties putting Basquiat and Malkovich on her menswear runways, but rarely brought non-models into the women's shows. Bernhard in Lilith was an exception, and the choice rhymed with the collection's premise that the woman it dressed was not the one fashion expected.

The finale was the part everyone remembers. Cocoon-like silhouettes with the models' arms crossed inside the garments, walking in formation as if held. "I do not find clothes that reveal the body attractive," Kawakubo had told Vogue once, plainly, and the cocoon walk was the most literal statement of that position she had ever staged. The body was inside. The garment was a wall around it. You looked at the wall.

What I find striking, looking back, is the timing. By 1992 Yamamoto's eight-year argument with Paris had also been won, and the two of them, who had debuted together in 1981 to cries of beggar-look and Hiroshima chic, were no longer a Japanese incident in European fashion. They were the house style for anyone interested in the body as a problem rather than a display. Lagerfeld was running Chanel like a stage. Versace was running Versace like a magazine cover. Kawakubo was running her own house like a thesis, and the Lilith show is maybe the cleanest single statement of the thesis she made in that decade.

What I keep coming back to is the trick of the collection. The clothes look, in photographs, as if they should be sad, and on the runway they were not. They were funny, in a stern Kawakubo way, and grand, and self-contained. A demon-myth, retold by a woman who had married five months earlier in a black skirt and a white shirt, and was wearing both as a uniform rather than a renunciation.

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Cold Ashby to Thorny Gale

A four-foot truncated pyramid of cast concrete, planted in a Northamptonshire field on 18 April 1936. Brass fitting on top, three grooves at 120 degrees, designed to lock a theodolite into a forced centre. The pillar at Cold Ashby was the first. The pillar at Thorny Gale, in a Cumbrian valley near Appleby, was the last to be used, on 4 June 1962. Between them sit twenty-six years and roughly six thousand five hundred concrete twins, scattered across hilltops and ridgelines, each one a node in a survey network meant to redraw the country.

You can still find around five and a half thousand of them. Not because anyone maintains them. The Ordnance Survey stopped doing that in the early nineties when GPS arrived and the entire arithmetic of the Retriangulation collapsed. The modern OS Net manages the same job with about a hundred and ten GNSS stations, none of which are visible on a hillside. The pillars are no longer measuring anything. They are simply still there.

Brigadier Martin Hotine designed the pillar in 1935, and the slightly martial profile carries that fact forward whether you know it or not. There is something inescapably interwar about the shape, the same confident geometry you find in lighthouse outbuildings, electricity substations, the smaller pieces of municipal infrastructure that were quietly being made standard. The retriangulation itself was halted by the war in 1939 and resumed in 1945, which means a fair number of the pillars were observed by men who had spent the intervening years doing other things with theodolites.

What I find genuinely strange about a trig pillar, standing beside one on a wet day in the Pennines or on a ridge in mid-Wales, is that the future it was built for actually arrived. This is not the usual hauntological story, where some confident postwar futurity curdled and the building became a monument to disappointment. The Retriangulation worked. The OSGB36 datum it produced is still the foundation of British mapping. The grid references on every map in every glove compartment trace back to those six thousand five hundred bolt-heads. The mission completed and the apparatus became redundant on the same axis, by the same logic, like a scaffold dismantled the day the building opens.

And yet the pillars don't read as monuments. They read as abandoned equipment. The brass spider has often gone, prised off by a passer-by decades ago. The concrete is stained, sometimes split where frost has worked in, sometimes graffitied. Trig-baggers visit them as a kind of ambient collecting hobby, ticking pillars off lists, and the OS itself now treats this affection as the pillars' main remaining function. The Twentieth Century Society has applied to list the Cold Ashby and Thorny Gale pillars, which would mark the start and end of the project as heritage objects, fixing them in time the way a museum plaque fixes a once-living object behind glass.

The thing the pillar measured was the country. The country got measured. Now the pillar is part of the landscape it helped describe, the way a punctuation mark might end up inside the sentence it was meant to organise. They tend to be on hilltops because that is where the sightlines are best, which means anyone walking up to a trig pillar in 2026 is following a route chosen by a surveyor in 1948 for a reason that no longer applies. You arrive at the summit and find a piece of equipment older than your parents, looking out at nothing in particular, doing nothing.

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Twice Across From Musk

The lawyer leading Sam Altman's defence in the Oakland federal courtroom this past week is the same one who, four years ago, made Elon Musk buy Twitter. William Savitt, a partner at Wachtell, Lipton, Rosen & Katz, represented Twitter in 2022 when the company sued to force Musk through with the forty-four billion dollar purchase he had spent the spring trying to wriggle out of. The case never got to a verdict; Musk capitulated shortly before trial, signed the cheque, and renamed the company. Savitt won by closing the exits.

He is now back across the courtroom from the same person, this time defending OpenAI and Altman against Musk's claim that the 2019 conversion to a for-profit structure betrayed the company's founding charter. According to Business Insider's profile this weekend, Altman picked Savitt specifically because of the prior result. The lore travels with him. The reasoning, told to a journalist by people who work with him, is that Musk responds poorly to opposing counsel who refuse to be impressed.

This is one of the small, structural facts about American high-stakes litigation that does not get talked about much. The top corporate trial bar is small. The same fifteen or twenty people show up across most of the cases that matter, and they remember each other. A defendant who has been across from a particular litigator before knows what that lawyer will do on cross, knows which exhibits they will dwell on, knows the register of voice they use when they are about to spring something. Savitt has had Musk's deposition strategy in his head since 2022. Most of the work was done before he walked into the Oakland building.

It also tells you something about how Altman thinks about risk. He could have hired any of the white-shoe firms in the country. The choice of the lawyer who had specifically beaten Musk in a high-profile commercial case was a tell. It said: this is going to be conducted as a contest of personalities, and we are bringing the personality who won last time. The trial coverage this week, which has spent as much time on Musk's demeanour as on the underlying corporate-governance question, suggests Altman read the room correctly. The judge, Yvonne Gonzalez Rogers, has already told Musk to stop making things worse outside the courtroom. Savitt has barely had to push.

What I find genuinely interesting is what this implies about the shape of the AI industry's coming decade in the courts. There will be many more of these cases. The IP questions around training data, the contractual questions around model distillation that came up on the stand last week, the corporate-governance questions about who actually owns a foundation-model lab when its mission and its valuation pull in opposite directions: all of these will be litigated by the same small bar, in front of the same handful of judges who handle complex commercial disputes in the relevant districts. The matchups will repeat. Reputations will compound. The lawyers who win one of these early cases will be the ones every defendant calls for the next one, and the lawyers on the other side will be the ones the plaintiffs' bar reaches for.

The trial is not over. Brockman and Altman himself are still to testify. The verdict could go either way. But one piece of the dynamic is already settled, which is that the most litigious billionaire in American technology has been put back across the table from the lawyer who got him to write a forty-four billion dollar cheque he did not want to write. That is a small, lawyerly victory in itself, and it happened before opening arguments.

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Seven Vendors, One Holdout

On Friday the Department of Defense announced agreements with seven companies to run AI on its highest-classification networks, the IL6 and IL7 tiers where the actual operational data lives. The list is the predictable one and the surprising one at the same time: SpaceX, OpenAI, Google, Microsoft, Nvidia, Amazon Web Services, and the comparatively new Reflection. Notably absent, and absent on purpose, is Anthropic. The company that has spent two years building its brand around frontier-safety commitments just got formally cut out of the most lucrative classified contract round in the sector's short history.

The exclusion is not procedural. Defense Secretary Pete Hegseth has been trying for months to label Anthropic a "supply chain risk," a designation usually reserved for foreign-adversary sabotage threats, after Anthropic insisted on contract language that would prohibit Claude from being used in fully autonomous weapons or for surveillance of Americans. Hegseth's position, as relayed through the Pentagon's CTO Emil Michael, is that vendors must allow any use the department deems lawful, full stop. That sentence does a lot of work. "Lawful" inside an IL7 environment is whatever the executive branch and its lawyers say it is on a given Tuesday, and the whole point of Anthropic's clause was to have something more durable than a memo.

OpenAI got there first. Its March deal was, in the words of people involved, structured to "replace Anthropic with ChatGPT in classified environments." That framing is unusual to see in print. Most procurement language is bloodless. This one names a loser. Reading the earlier blacklist move and the West Wing meeting that followed it, the trajectory is now legible: the administration tested whether it could pressure Anthropic into dropping the clause, found that it couldn't, and built the classified stack around the six companies that didn't push back. SpaceX and Reflection are the bonus picks; the rest of the list is just the hyperscalers.

Inside Google the deal is not landing quietly. Six hundred employees signed a letter to Sundar Pichai before the announcement asking him to keep Gemini out of classified work, and after the news broke a smaller group floated a strike before backing off over retaliation fears. DeepMind staff in particular have been here before, the Pentagon-autonomy budget piece laid out the $13.4 billion that's now flowing toward exactly the applications they were promised in 2018 their work would never support. The promise expired. The compute did not.

What's striking is how cleanly the disagreement has been allowed to surface. Anthropic could have signed and quietly carved exceptions into the statement of work, the way large vendors usually do. They didn't. They sued the administration, they publicly held the line on autonomous-weapons use, and now they're watching seven competitors split a contract pool they are not allowed to bid into. Whether that turns out to be principled or expensive is a question for the next funding round, but it is the first time in this cycle a frontier lab has paid a real commercial cost for a stated safety position rather than just gesturing at one.

The cost is the news. The position was already on the record.

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