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The Newest Instagram "Exploit" is the Goofiest I've Seen

www.0xsid.com

Yesterday, a slew of Instagram ac­counts, in­clud­ing some high pro­file ones like the Obama White House ac­count, seem­ingly got hacked.

Look, I’m no spring chicken. I’ve spent al­most a decade and a half iden­ti­fy­ing vul­ner­a­bil­i­ties and ex­ploits at uni­corn scale, but this is hands down the most un­se­ri­ous, almost too stu­pid to be true” of them all.

The Takeover Flow

Step 01: Faking the Location & Initiating SupportAll the at­tacker needs to kick this off is your ac­count user­name. Then, they hop on a VPN or proxy close to your city so Instagram’s se­cu­rity al­go­rithms don’t sus­pect a thing. (You can quite eas­ily get this from your pub­lic pro­file or About” sec­tion or a hun­dred other ways.) Once it looks like the re­quest is com­ing from the cor­rect re­gion, they tell the Meta sup­port AI that the ac­count is hacked and ask it to send the ver­i­fi­ca­tion codes to an ar­bi­trary email ad­dress they con­trol.

Step 01: Faking the Location & Initiating SupportAll the at­tacker needs to kick this off is your ac­count user­name. Then, they hop on a VPN or proxy close to your city so Instagram’s se­cu­rity al­go­rithms don’t sus­pect a thing. (You can quite eas­ily get this from your pub­lic pro­file or About” sec­tion or a hun­dred other ways.) Once it looks like the re­quest is com­ing from the cor­rect re­gion, they tell the Meta sup­port AI that the ac­count is hacked and ask it to send the ver­i­fi­ca­tion codes to an ar­bi­trary email ad­dress they con­trol.

Step 02: That’s ItReally, that’s it. The first proper zero auth pass­word re­set I’ve seen in pro­duc­tion. There ap­pears to be no ad­di­tional check as to whether the email be­ing given is ac­tu­ally some­thing the user has used be­fore. Once the AI sends the se­cu­rity code to the at­tack­er’s email, the at­tacker passes it right back to com­plete the ver­i­fi­ca­tion. The plat­form hands over a fresh pass­word re­set link, grant­ing full own­er­ship to the at­tacker.

Step 02: That’s ItReally, that’s it. The first proper zero auth pass­word re­set I’ve seen in pro­duc­tion. There ap­pears to be no ad­di­tional check as to whether the email be­ing given is ac­tu­ally some­thing the user has used be­fore. Once the AI sends the se­cu­rity code to the at­tack­er’s email, the at­tacker passes it right back to com­plete the ver­i­fi­ca­tion. The plat­form hands over a fresh pass­word re­set link, grant­ing full own­er­ship to the at­tacker.

Instagram’s AI may or may not ask the at­tacker for a video selfie to prove iden­tity. It’s not par­tic­u­larly dis­cern­ing at the mo­ment, so some­thing as sim­ple as an AI an­i­mated pub­lic photo from the tar­get’s feed has been widely re­ported to work.

2FA Doesn’t Help

In case you’re won­der­ing, be­cause the sys­tem treats this high-priv­i­lege re­cov­ery flow as a to­tal ac­count re­set by the true” owner, the orig­i­nal 2FA gets thor­oughly by­passed in the process.

Existing ses­sions are re­voked and the pass­word changed with no email, text, or push no­ti­fi­ca­tion. The ac­tual owner can’t ini­ti­ate re­cov­ery be­cause the email and phone num­bers now map to the at­tacker. There’s no hu­man to es­ca­late to, it’s just you ar­gu­ing with a chat hop­ing to take con­trol back while pray­ing they don’t do it again.

And if you’re part of the A/B tested ac­counts on which the AI sup­port op­tion is ac­tive, tough luck, you can’t even turn it off.

Black Markets Galore

Multiple black mar­ket Telegram groups have sprung up of­fer­ing account takeover” ser­vices at steep rates and quick turn­around times. Considering short han­dles are worth hun­dreds of thou­sands to even mil­lions of dol­lars, it’s not a sur­prise, re­ally.

Accounts have been flipped, like hey, or been used for pro­pa­ganda, like oba­mawhite­house or ocmssf, the ac­count of the Chief Master Sergeant of the U.S. Space Force.

Patched Now

All the Telegram groups have qui­eted down as Meta seems to have patched it al­ready, but it ap­pears this par­tic­u­lar method was ac­tive for weeks, if not months.

The very fact that a $1.5 tril­lion com­pany lacks ro­bust guard rails and their sup­port AI will just change any­one’s linked email if you ask it nicely enough is so ter­ri­fy­ing, if it weren’t so funny.

If you’ve reached this far, thank you for read­ing! :)

I thought mul­ti­ple ex­its and re­tir­ing in my mid 30s would be fun but I’ve just been bored and de­pressed with­out morn­ing Slacks and emails to wake up to. If you’re build­ing some­thing in­ter­est­ing and could use an ex­tra set of hands to ship, or just want to say hi, feel free to reach out. My in­box is open.

I’m tired of talking to AI

orchidfiles.com

I found GitHub repos­i­to­ries that were spread­ing mal­ware. I asked AI what to do about it, but it gave me noth­ing use­ful. So I opened a dis­cus­sion on GitHub. Someone replied. It was the ex­act same text the AI had given me. I called it out and the com­ment was deleted. Then an­other per­son replied. It was the same AI an­swer again.

I worked as a de­vel­oper at a com­pany. I asked the busi­ness owner a ques­tion about a busi­ness task. He sent me a ChatGPT screen­shot with the an­swer. I replied that it had noth­ing to do with my ques­tion and every­thing there was wrong. A minute later he sent me an­other ChatGPT screen­shot. He did­n’t even read the AIs an­swer. He just took a screen­shot and for­warded it to me.

Recently some­one mes­saged me on Reddit about my post. I replied. They wrote again, I replied again. After a few mes­sages I re­al­ized I was talk­ing to an AI agent.

I’m tired of talk­ing to AI.I want to talk to real peo­ple.But even when I talk to peo­ple, they for­ward my ques­tions to AI and send me the AIs an­swer.

I also pub­lish all new notes on X, Bluesky, and Telegram.

Introducing Claude Opus 4.8

www.anthropic.com

We’re up­grad­ing Claude Opus to a new ver­sion: Claude Opus 4.8. It builds on Opus 4.7 with im­prove­ments across bench­marks, and is a more ef­fec­tive col­lab­o­ra­tor. It’s avail­able to­day for the same price.

Opus 4.8 launches along­side sev­eral new fea­tures. Users on claude.ai now have con­trol over the amount of ef­fort Claude puts into a task. Claude Code has a new dynamic work­flows” fea­ture that al­lows it to tackle very large-scale prob­lems. And fast mode for Opus 4.8—where the model can work at 2.5× the speed—is now three times cheaper than it was for pre­vi­ous mod­els.

Opus 4.8’s ca­pa­bil­i­ties

The table be­low shows how Opus 4.8 com­pares to its pre­de­ces­sor and to other mod­els on tests of cod­ing, agen­tic skills, rea­son­ing, and prac­ti­cal knowl­edge work tasks. More de­tails and a much wider range of ca­pa­bil­ity eval­u­a­tions are pro­vided in the Claude Opus 4.8 System Card.

Collaborating with Opus 4.8

Early testers have found Claude Opus 4.8 to be more re­li­able and sharper in its judge­ment when it’s per­form­ing agen­tic tasks. Below are quotes from many of these testers about their ex­pe­ri­ence col­lab­o­rat­ing with Opus 4.8:

Claude Opus 4.8 has no­tice­ably bet­ter judg­ment. In Claude Code, it asks the right ques­tions, catches its own mis­takes, pushes back when a plan is­n’t sound, and builds up con­fi­dence around com­plex, multi-ser­vice ex­plo­rations be­fore mak­ing big changes. It’s a great model to build with.

Claude Opus 4.8 has no­tice­ably bet­ter judg­ment. In Claude Code, it asks the right ques­tions, catches its own mis­takes, pushes back when a plan is­n’t sound, and builds up con­fi­dence around com­plex, multi-ser­vice ex­plo­rations be­fore mak­ing big changes. It’s a great model to build with.

On our Super-Agent bench­mark, Claude Opus 4.8 is the only model to com­plete every case end-to-end, beat­ing prior Opus mod­els and GPT-5.5 at par­ity on cost. For agent prod­ucts in trans­la­tion, deep re­search, slide-build­ing, and analy­sis, it de­liv­ers pow­er­ful re­li­a­bil­ity.

On our Super-Agent bench­mark, Claude Opus 4.8 is the only model to com­plete every case end-to-end, beat­ing prior Opus mod­els and GPT-5.5 at par­ity on cost. For agent prod­ucts in trans­la­tion, deep re­search, slide-build­ing, and analy­sis, it de­liv­ers pow­er­ful re­li­a­bil­ity.

On CursorBench, Claude Opus 4.8 ex­ceeds prior Opus mod­els across every ef­fort level. Tool call­ing is mean­ing­fully more ef­fi­cient, us­ing fewer steps for the same in­tel­li­gence, and it car­ries end-to-end tasks through.

On CursorBench, Claude Opus 4.8 ex­ceeds prior Opus mod­els across every ef­fort level. Tool call­ing is mean­ing­fully more ef­fi­cient, us­ing fewer steps for the same in­tel­li­gence, and it car­ries end-to-end tasks through.

Claude Opus 4.8 de­liv­ers the high­est score recorded on our Legal Agent Benchmark, and is the first model to break 10% over­all on the all-pass stan­dard. For sub­stan­tive le­gal work, that’s the kind of ac­cu­racy lift that trans­lates di­rectly into how much real at­tor­ney work our cus­tomers can hand off with con­fi­dence.

Claude Opus 4.8 de­liv­ers the high­est score recorded on our Legal Agent Benchmark, and is the first model to break 10% over­all on the all-pass stan­dard. For sub­stan­tive le­gal work, that’s the kind of ac­cu­racy lift that trans­lates di­rectly into how much real at­tor­ney work our cus­tomers can hand off with con­fi­dence.

Claude Opus 4.8 feels like a ma­jor qual­ity-of-life up­date over Opus 4.7: faster, eas­ier to col­lab­o­rate with, and bet­ter at car­ry­ing con­text and style di­rec­tion across a long ses­sion. Opus 4.8 is the model I kept trust­ing for work where voice, taste, and tech­ni­cal ex­e­cu­tion all have to hap­pen side-by-side.

Claude Opus 4.8 feels like a ma­jor qual­ity-of-life up­date over Opus 4.7: faster, eas­ier to col­lab­o­rate with, and bet­ter at car­ry­ing con­text and style di­rec­tion across a long ses­sion. Opus 4.8 is the model I kept trust­ing for work where voice, taste, and tech­ni­cal ex­e­cu­tion all have to hap­pen side-by-side.

Claude Opus 4.8 is the strongest com­puter-use and browser-agent model we’ve tested, scor­ing 84% on Online-Mind2Web, which is a mean­ing­ful jump over both Opus 4.7 and GPT-5.5. It stays re­flec­tive and on-task in the way our cus­tomers’ agent work­loads need to be re­li­able end-to-end.

Claude Opus 4.8 is the strongest com­puter-use and browser-agent model we’ve tested, scor­ing 84% on Online-Mind2Web, which is a mean­ing­ful jump over both Opus 4.7 and GPT-5.5. It stays re­flec­tive and on-task in the way our cus­tomers’ agent work­loads need to be re­li­able end-to-end.

Claude Opus 4.8 uses tools cleanly and fol­lows in­struc­tions with the con­sis­tency our au­tonomous en­gi­neer­ing work­loads need to keep run­ning un­at­tended. It im­proves on Opus 4.6 and fixes the com­ment-ver­bosity and tool-call­ing is­sues we saw with Opus 4.7. This re­lease from Anthropic trans­lates di­rectly into faster ca­pa­bil­ity gains for en­gi­neers build­ing on Devin.

Claude Opus 4.8 uses tools cleanly and fol­lows in­struc­tions with the con­sis­tency our au­tonomous en­gi­neer­ing work­loads need to keep run­ning un­at­tended. It im­proves on Opus 4.6 and fixes the com­ment-ver­bosity and tool-call­ing is­sues we saw with Opus 4.7. This re­lease from Anthropic trans­lates di­rectly into faster ca­pa­bil­ity gains for en­gi­neers build­ing on Devin.

On our long-run­ning evals, Claude Opus 4.8’s analy­sis was con­sis­tently higher qual­ity than prior Opus mod­els. It fin­ished faster and pro­duced richer, more in­for­ma­tion dense out­puts. Overall, a no­tice­ably bet­ter sig­nal to noise ra­tio. The biggest dif­fer­en­tia­tor was Opus 4.8’s ten­dency to proac­tively flag is­sues with the in­puts and out­puts of an analy­sis, some­thing other mod­els rou­tinely missed and left to the users to catch.

On our long-run­ning evals, Claude Opus 4.8’s analy­sis was con­sis­tently higher qual­ity than prior Opus mod­els. It fin­ished faster and pro­duced richer, more in­for­ma­tion dense out­puts. Overall, a no­tice­ably bet­ter sig­nal to noise ra­tio. The biggest dif­fer­en­tia­tor was Opus 4.8’s ten­dency to proac­tively flag is­sues with the in­puts and out­puts of an analy­sis, some­thing other mod­els rou­tinely missed and left to the users to catch.

Across CoCounsel Legal, Claude Opus 4.8 de­liv­ered mean­ing­ful im­prove­ments in con­sis­tency and rea­son­ing qual­ity com­pared to prior Opus mod­els. For the high-stakes pro­fes­sional work­flows our cus­tomers de­pend on, that re­li­a­bil­ity mat­ters. As we build fidu­ciary-grade AI sys­tems for le­gal and tax pro­fes­sion­als, ad­vances like these help raise the stan­dard for trusted AI per­for­mance in real-world work­flows.

Across CoCounsel Legal, Claude Opus 4.8 de­liv­ered mean­ing­ful im­prove­ments in con­sis­tency and rea­son­ing qual­ity com­pared to prior Opus mod­els. For the high-stakes pro­fes­sional work­flows our cus­tomers de­pend on, that re­li­a­bil­ity mat­ters. As we build fidu­ciary-grade AI sys­tems for le­gal and tax pro­fes­sion­als, ad­vances like these help raise the stan­dard for trusted AI per­for­mance in real-world work­flows.

Claude Opus 4.8 sets a new bar for en­ter­prise AI. In Genie, Databricks’ AI agent for data and knowl­edge work, the new Opus model un­locks a step change in agen­tic rea­son­ing, tack­ling deeper, mul­ti­step ques­tions faster than any prior Opus. Its mul­ti­modal strength also lets Genie rea­son di­rectly over PDFs, di­a­grams, and other un­struc­tured con­tent at 61% cheaper to­ken cost than Opus 4.7.

Claude Opus 4.8 sets a new bar for en­ter­prise AI. In Genie, Databricks’ AI agent for data and knowl­edge work, the new Opus model un­locks a step change in agen­tic rea­son­ing, tack­ling deeper, mul­ti­step ques­tions faster than any prior Opus. Its mul­ti­modal strength also lets Genie rea­son di­rectly over PDFs, di­a­grams, and other un­struc­tured con­tent at 61% cheaper to­ken cost than Opus 4.7.

For fi­nan­cial-doc­u­ment work­flows in Hebbia’s or­ches­tra­tor, Claude Opus 4.8 de­liv­ers the same strong qual­ity as Opus 4.7 with no­tice­ably bet­ter ci­ta­tion pre­ci­sion and more to­ken ef­fi­ciency on re­trieval, which works in­cred­i­bly well for the kinds of dense fil­ings our cus­tomers run every day.

For fi­nan­cial-doc­u­ment work­flows in Hebbia’s or­ches­tra­tor, Claude Opus 4.8 de­liv­ers the same strong qual­ity as Opus 4.7 with no­tice­ably bet­ter ci­ta­tion pre­ci­sion and more to­ken ef­fi­ciency on re­trieval, which works in­cred­i­bly well for the kinds of dense fil­ings our cus­tomers run every day.

01 /

11

One of the most promi­nent im­prove­ments in Opus 4.8 is its hon­esty. We train all our mod­els to be hon­est—for in­stance, to avoid mak­ing claims that they can’t sup­port. But a gen­eral prob­lem with AI mod­els is that they some­times jump to con­clu­sions, con­fi­dently claim­ing to have made progress in their work de­spite the ev­i­dence be­ing thin. Early testers re­port that Opus 4.8 is more likely to flag un­cer­tain­ties about its work and less likely to make un­sup­ported claims. This is borne out in our eval­u­a­tions, which show that Opus 4.8 is around four times less likely than its pre­de­ces­sor to al­low flaws in code it has writ­ten to pass un­re­marked.

As al­ways, we ran a de­tailed align­ment as­sess­ment on the model be­fore re­lease. In terms of pos­i­tive traits, our Alignment team con­cluded that Opus 4.8 reaches new highs on our mea­sures of proso­cial traits like sup­port­ing user au­ton­omy and act­ing in the user’s best in­ter­est.” The as­sess­ment also showed Opus 4.8 to have rates of mis­aligned be­hav­ior (such as de­cep­tion or co­op­er­a­tion with mis­use) that are sub­stan­tially lower than Opus 4.7, and sim­i­lar to our best-aligned model, Claude Mythos Preview. The full align­ment as­sess­ment, ac­com­pa­nied by a suite of pre-de­ploy­ment safety tests, is re­ported in the Claude Opus 4.8 System Card.

Also launch­ing to­day

In ad­di­tion to Claude Opus 4.8, we’re mak­ing the fol­low­ing up­dates:

Dynamic work­flows. This new fea­ture, avail­able in re­search pre­view, al­lows Claude to take on even big­ger tasks in Claude Code. Claude can plan the work and then run hun­dreds of par­al­lel sub­agents in a sin­gle ses­sion (and with Opus 4.8, the agents can run for even longer). It then ver­i­fies its out­puts be­fore re­port­ing back to the user. For ex­am­ple, Claude Code with Opus 4.8 can now carry out code­base-scale mi­gra­tions across hun­dreds of thou­sands of lines of code from kick­off to merge, with the ex­ist­ing test suite as its bar. You can read more about dy­namic work­flows—avail­able in Claude Code for Enterprise, Team, and Max plans—in this post.

Effort con­trol in claude.ai and Cowork. A new con­trol along­side the model se­lec­tor lets users choose how much ef­fort Claude puts into a re­sponse. On higher ef­fort set­tings, Claude will think more fre­quently and more deeply to give bet­ter re­sponses. On lower ef­fort set­tings, Claude will re­spond faster and use up a user’s rate lim­its more slowly. Users now have this choice—the ef­fort con­trol is avail­able on all plans.

The Messages API now ac­cepts sys­tem en­tries in­side the mes­sages ar­ray. Developers can up­date Claude’s in­struc­tions mid-task with­out break­ing the prompt cache or rout­ing the up­date through a user turn. This can be used in a given har­ness to up­date per­mis­sions, to­ken bud­gets, or en­vi­ron­ment con­text as an agent runs.

A note on ef­fort

Opus 4.8 de­faults to high ef­fort, which we judge to be the best over­all bal­ance of qual­ity and user ex­pe­ri­ence. On cod­ing tasks, this ef­fort level spends a sim­i­lar num­ber of to­kens as Opus 4.7’s de­fault, but with bet­ter per­for­mance. Users can choose extra” (“xhigh” in Claude Code) or max,” and the model will spend more to­kens to get bet­ter re­sults; we rec­om­mend us­ing extra” for dif­fi­cult tasks and long-run­ning asyn­chro­nous work­flows. We have in­creased rate lim­its in Claude Code to ac­com­mo­date the higher to­ken us­age of higher ef­fort lev­els; users can se­lect whichever makes sense for their par­tic­u­lar pro­ject.

What’s next?

Users will find Opus 4.8 to be a mod­est but tan­gi­ble im­prove­ment on its pre­de­ces­sor. There’s still more to be done: we’re work­ing on de­vel­op­ing and re­leas­ing mod­els that pro­vide many of the same ca­pa­bil­i­ties as Opus at a lower cost.

Not only that, but we plan to re­lease a new class of model with even higher in­tel­li­gence than Opus. As part of Project Glasswing, a small num­ber of or­ga­ni­za­tions are cur­rently us­ing Claude Mythos Preview for cy­ber­se­cu­rity work. Models of this ca­pa­bil­ity level re­quire stronger cy­ber safe­guards be­fore they can be gen­er­ally re­leased. We’re mak­ing swift progress on de­vel­op­ing these safe­guards and ex­pect to be able to bring Mythos-class mod­els to all our cus­tomers in the com­ing weeks.

Availability

Claude Opus 4.8 is avail­able every­where to­day. Pricing for reg­u­lar us­age is un­changed from Opus 4.7: $5 per mil­lion in­put to­kens and $25 per mil­lion out­put to­kens. Pricing for fast mode is $10 per mil­lion in­put to­kens and $50 per mil­lion out­put to­kens. Developers can use claude-opus-4 – 8 via the Claude API.

Related con­tent

Anthropic raises $65B in Series H fund­ing at $965B post-money val­u­a­tion

Read more

Anthropic opens Milan of­fice to sup­port Italian en­ter­prise, re­search, and de­vel­op­ers

We’re open­ing a new of­fice in Milan, our sixth in Europe.

Read more

Anthropic ap­points KiYoung Choi as Representative Director of Korea ahead of Seoul of­fice open­ing

Read more

Can we have the day off?

mlsu.io

May 26

So, ap­par­ently we are at the cusp of the en­tire world’s white col­lar work­force (and, by ex­ten­sion, much of the US work­force) un­der­go­ing a rev­o­lu­tion in pro­duc­tiv­ity. AI is the tech­nol­ogy that is go­ing to rev­o­lu­tion­ize the way we work, the way we in­ter­act with the world, the way we learn, the way we so­cial­ize, and all of this. This sounds great. Really, it does. Everything get­ting faster and eas­ier would be an ex­tra­or­di­nary boon to all of our lives.

Can we have a day off then?

If AI is go­ing to 10x our pro­duc­tiv­ity across the board, that means that I should be able to pro­duce the same amount of out­put by mid­day on Monday that, in the be­fore times, would have taken all week.

So can I just take Friday off? From here on out, I’ll work Monday, Tuesday, Wednesday, Thursday, and then take Friday off. We can even de­clare Friday to be some­thing like an AI work­ers’ day;” on Thursday I promise I’ll work my ass off writ­ing great prompts and then the agents can churn on them all day on Friday. In that case, you’d hardly even lose Friday, right?

And like, this would ap­ply across the board, of course. So you, the board of di­rec­tors, and the C-suite, you guys could take Friday off to go to play an en­tire 18 holes at the golf course. It’ll be beau­ti­ful, can you imag­ine? You don’t have to be in the of­fice, be­cause I’m not go­ing to be in the of­fice. You don’t have to be at the of­fice, be­cause the AI agents are there. And nei­ther do I!

Just one ex­tra day. Seems rea­son­able and quite a small change re­ally, in light of the to­tal world rev­o­lu­tion across every swathe of hu­man pro­duc­tiv­ity.

(Yo, Elon: I’m try­ing to in­crease the fer­til­ity rate. Childcare for 3 small chil­dren is six thou­sand dol­lars a month here in California. Do I have to go into the of­fice all five days this week? Why not four?)

MyBrickLog – Free LEGO® Collection Tracker & Price Guide

www.mybricklog.com

MyBrickLog is a free web­site for LEGO® col­lec­tors to track their sets, check prices, and man­age wish­lists. Browse over 20,000 LEGO sets across every theme ever re­leased. Please en­able JavaScript to use the full app.

Track which LEGO® sets you own and how many copies­Track minifig­ures for every set in your col­lec­tion­Browse every LEGO theme and sub­theme ever re­leased

Improving AI labels for viewers and creators

blog.youtube

May 27, 2026

[[read-time]] minute read

We’ve heard con­sis­tently from our com­mu­nity that they value trans­parency when it comes to gen­er­a­tive AI con­tent. That’s why since 2024, we’ve been la­bel­ing con­tent when cre­ators dis­close they’ve used AI tools.

We’ve learned in that time about what peo­ple find use­ful when it comes to AI dis­clo­sures, and to­day we’re mak­ing two up­dates that we think will make this process much sim­pler and more in­tu­itive for cre­ators and view­ers on YouTube.

More vis­i­ble, sim­pli­fied la­bels

We’re mov­ing the dis­clo­sure la­bel for pho­to­re­al­is­tic and mean­ing­fully AI al­tered or gen­er­ated con­tent to a more promi­nent po­si­tion.

For Long-form Videos: The la­bel will now ap­pear di­rectly be­low the video player, above the de­scrip­tion.

For Shorts: The la­bel will ap­pear as an over­lay on the video it­self.

By mov­ing these la­bels on to the main stage, view­ers get the con­text they need at a glance. This is now the sin­gle la­bel for­mat for all pho­to­re­al­is­tic and mean­ing­fully AI al­tered or gen­er­ated con­tent on YouTube.

For con­tent that is un­re­al­is­tic, an­i­mated, or slightly al­tered, view­ers can find this dis­clo­sure in the ex­panded de­scrip­tion.

AI us­age dis­clo­sure at video up­load time.

Introducing au­to­matic AI de­tec­tion

While we still re­quire cre­ators to man­u­ally dis­close when they use re­al­is­tic AI, we want to make the process more seam­less and re­li­able. Starting in May 2026, we’re rolling out new in­ter­nal sig­nals to help iden­tify AI-generated con­tent.

If a cre­ator does­n’t spec­ify whether or not they used AI, but our sys­tems de­tect sig­nif­i­cant pho­to­re­al­is­tic AI use, we will now au­to­mat­i­cally ap­ply a la­bel.

As this tech­nol­ogy con­tin­ues to im­prove, cre­ators re­main in con­trol. If a cre­ator thinks their con­tent was in­cor­rectly iden­ti­fied as AI-generated, they can up­date the dis­clo­sure sta­tus in YouTube Studio. However, dis­clo­sures will re­main per­ma­nent in a hand­ful of cases, in­clud­ing:

Content cre­ated us­ing YouTube’s own AI tools, like Veo or Dream Screen.

Content con­tain­ing C2PA meta­data in­di­cat­ing they were fully gen­er­a­tive AI.

Our com­mit­ment to re­spon­si­bil­ity

These changes are de­signed to bal­ance trans­parency with cre­ator con­trol. It’s im­por­tant to note that a dis­clo­sure la­bel alone does not change how a video is rec­om­mended or whether it’s el­i­gi­ble to earn money. In a world where AI is chang­ing what’s pos­si­ble, our goal is sim­ple: make it as easy as pos­si­ble for cre­ators and view­ers to have the right in­for­ma­tion.

YouTube to Automatically Label AI-Generated Videos & Enhance Labels

variety.com

Is that YouTube video clip you’re watch­ing real or was it made with AI?

YouTube wants to make it eas­ier for view­ers to know when con­tent on its plat­form is AI-generated. In 2024, it started la­bel­ing con­tent when cre­ators dis­closed they have used AI tools. Now YouTube is mak­ing AI-generated con­tent la­bels more promi­nent for view­ers — and it’s go­ing to start au­to­mat­i­cally ap­ply­ing the la­bels if it de­tects that a video in­cludes significant pho­to­re­al­is­tic AI use.”

We’ve heard con­sis­tently from our com­mu­nity that they value trans­parency when it comes to gen­er­a­tive AI con­tent,” YouTube said in a blog post Wednesday an­nounc­ing the up­dates. These changes are de­signed to bal­ance trans­parency with cre­ator con­trol.”

Under YouTube’s guide­lines, cre­ators will still be re­quired to man­u­ally dis­close when they use re­al­is­tic AI. But start­ing this week, it also will roll out a new in­ter­nal sys­tem to help iden­tify AI-generated con­tent. If a cre­ator does­n’t spec­ify whether or not they used AI, but our sys­tems de­tect sig­nif­i­cant pho­to­re­al­is­tic AI use, we will now au­to­mat­i­cally ap­ply a la­bel,” YouTube said.

YouTube cre­ators who be­lieve their con­tent was in­cor­rectly flagged as AI-generated can mod­ify the dis­clo­sure sta­tus us­ing the YouTube Studio tool. However, ac­cord­ing to YouTube, the AI la­bels will remain per­ma­nent” in some cases, in­clud­ing for con­tent cre­ated us­ing YouTube’s own AI tools (such as Veo or Dream Screen) and for con­tent that con­tains C2PA meta­data (based on stan­dards from the Coalition for Content Provenance and Authenticity) that in­di­cates it was fully AI-generated.

In ad­di­tion, YouTube is mov­ing the dis­clo­sure la­bel for pho­to­re­al­is­tic and mean­ing­fully AI-altered or AI-generated con­tent to a more promi­nent po­si­tion. Until now, YouTube la­beled AI con­tent in a video’s ex­panded de­scrip­tion. Going for­ward, for long-form videos, the AI la­bel will now ap­pear di­rectly be­low the video player and above the de­scrip­tion. For YouTube Shorts, the la­bel will ap­pear as an over­lay on the video it­self.

YouTube re­leased im­ages show­ing where the new la­bels will ap­pear:

The goal here is con­text at a glance. If it looks real but was made with AI, view­ers will know im­me­di­ately,” Rene Ritchie, YouTube head of ed­i­to­r­ial and cre­ator li­ai­son, says in a video about the changes. He added that the AI la­bels alone do not af­fect how our videos are rec­om­mended or whether they can earn money. This is purely about giv­ing view­ers the right in­for­ma­tion at the right time.”

Meanwhile, for con­tent that YouTube de­ter­mines is unrealistic, an­i­mated or slightly al­tered” (but not fully AI-generated), dis­clo­sures will con­tinue to ap­pear in the ex­panded de­scrip­tion sec­tion.

The up­dates come af­ter YouTube ear­lier this month ex­panded its like­ness-de­tec­tion pro­gram to all cre­ators (18 and older). That’s de­signed to help users detect and man­age how AI is used to de­pict you on YouTube.” For cre­ators who en­roll in the pro­gram, YouTube’s sys­tems will iden­tify videos that may be al­tered or syn­thetic uses of their fa­cial like­ness; they can then re­quest re­moval of unauthorized con­tent that uses your like­ness di­rectly in YouTube Studio.”

The Dead Economy Theory

www.owenmcgrann.com

You’re prob­a­bly fa­mil­iar with the dead in­ter­net the­ory: most of what you en­counter on­line is now gen­er­ated by bots, for bots, with hu­mans re­duced to a shrink­ing au­di­ence for ma­chine-gen­er­ated noise. Last year, over half of new con­tent on the in­ter­net was AI-generated. The hu­mans are still there, scrolling, but the thing they’re scrolling through has be­come a per­for­mance staged by ma­chines for an au­di­ence that has­n’t yet re­al­ized the show is­n’t for them.

It’s ut­terly des­ic­cat­ing to log onto spaces seek­ing a live mind to joust and think with, and find a re­lent­less stream of slop. Promised an age of su­per­con­nec­tiv­ity, we’ve let our shared phys­i­cal spaces wither, only to find our promised dig­i­tal com­mons to be one large bill­board in­creas­ingly read and cre­ated by bots.

That’s bad enough. I want to talk about some­thing worse. Call it the dead econ­omy the­ory.

A word of wel­come to the folks who have ar­rived here from Hacker News and var­i­ous other places. Two quick com­ments, given that I’ve re­ceived many mes­sages and have seen many com­ments on HN on this. First, the text of this piece is en­tirely hu­man-gen­er­ated, in­clud­ing the in­fe­lic­i­tous phras­ings and pen­chant for two-dol­lar words. The AI-generated im­ages, which many of you hate, are an in­side joke with a friend. Had I known this piece was go­ing to get the trac­tion it has, I promise you I would have gone with nor­mal head­ers. But, to para­phrase Dostoevsky from the pro­logue to The Brothers K, yes, I agree that it is su­per­flu­ous, but it’s done, so let it stand. Thanks for read­ing.

The AI in­dus­try has a num­bers prob­lem.

OpenAI, Anthropic, Google DeepMind, Meta AI, Microsoft: the com­bined in­vest­ment in large-scale AI in­fra­struc­ture now runs into the hun­dreds of bil­lions of dol­lars, with pro­jec­tions into the tril­lions over the next decade. OpenAI alone has been val­ued at north of $800 bil­lion. Anthropic, which has yet to pro­duce a sin­gle year of profit, com­mands a val­u­a­tion in the same stratos­phere. These num­bers need an ad­dress­able mar­ket large enough to jus­tify them.

There is only one mar­ket that large: the global la­bor mar­ket.

As we’re get­ting ex­cited about dis­cov­er­ing how to use claude.md files in Cowork, the in­dus­try is pitch­ing a dif­fer­ent re­al­ity. Every in­vestor pre­sen­ta­tion of an AI agent doing the work of ten an­a­lysts” is telling you the same thing: the prod­uct is la­bor re­place­ment. The gen­tler lan­guage (”copilot,” assistant,” augmentation”) is mar­ket­ing. The fi­nan­cial model un­der­neath re­quires the elim­i­na­tion of hu­man cost cen­ters at civ­i­liza­tional scale. If it does­n’t do that, these com­pa­nies are the most over­val­ued as­sets in the his­tory of cap­i­tal­ism. The peo­ple writ­ing the checks are not in the habit of light­ing tril­lions of dol­lars on fire for a bet­ter au­to­com­plete and an end­less pro­lif­er­a­tion of longer and longer memos that no­body reads.

The AI com­pa­nies now con­struct their own bench­marks to prove the point. OpenAI’s GDPVal bench­mark mea­sures how well mod­els per­form across forty-four oc­cu­pa­tions, from real es­tate bro­ker to news an­a­lyst. The AI Productivity Index eval­u­ates mod­els against four spe­cific pro­fes­sional roles: in­vest­ment bank­ing as­so­ci­ate, man­age­ment con­sul­tant, Big Law as­so­ci­ate, pri­mary care physi­cian. These are tar­get­ing ret­i­cles aimed at the pro­fes­sional class. As an OpenAI eval­u­a­tion lead told the New York Times,1 mod­els now achieve over an 80 per­cent win rate com­pared to hu­man pro­fes­sion­als” on tasks that, months ear­lier, no model could match. A for­mer banker on the re­search team keeps be­ing shocked by how much of her old work the mod­els can do.”

So let’s take them at their word. Assume the tech­nol­ogy works as ad­ver­tised, that AI sys­tems be­come ca­pa­ble of per­form­ing most cog­ni­tive la­bor at a frac­tion of the cost of hu­man work­ers. What hap­pens next?

Follow the money through three turns.

Turn one: a com­pany li­censes AI to re­place a sig­nif­i­cant por­tion of its work­force. Costs drop. Margins ex­pand. The stock price goes up. Everyone on the earn­ings call is happy. When Block’s Jack Dorsey laid off nearly half his work­force in March, cit­ing AI cod­ing agents, in­vestors re­sponded with a twenty-five per­cent stock price surge in af­ter-hours trad­ing. The mar­ket re­warded the elim­i­na­tion of hu­man la­bor with an im­me­di­ate, mas­sive trans­fer of value to share­hold­ers.

Turn two: the re­placed work­ers stop earn­ing in­come. They cut spend­ing. The busi­nesses they used to pa­tron­ize see rev­enue de­cline. Some of those busi­nesses also adopt AI to cut costs, com­pound­ing the dis­place­ment. Consumer de­mand con­tracts across the econ­omy.

Turn three: the com­pany that fired its work­ers to save money dis­cov­ers that its cus­tomers were, in ag­gre­gate, other com­pa­nies’ work­ers. Revenue growth stalls. The AI sub­scrip­tion that was sup­posed to be an in­vest­ment in ef­fi­ciency turns out to be a con­tri­bu­tion to the de­struc­tion of its own mar­ket.

Economists Brett Hemenway Falk and Gerry Tsoukalas at Wharton have re­cently de­scribed this dy­namic in a pa­per they aptly ti­tled, The AI Layoff Trap.” In com­pet­i­tive mar­kets, an au­tomat­ing firm cap­tures the full cost sav­ings from re­plac­ing work­ers but bears only a frac­tion of the re­sult­ing de­mand de­struc­tion. In a mar­ket with twenty com­peti­tors, each firm feels one-twen­ti­eth of the de­mand it de­stroys. The rest falls on ri­vals. This cre­ates a pris­on­ers’ dilemma: every firm ra­tio­nally au­to­mates be­yond the so­cially op­ti­mal level, be­cause the in­di­vid­ual in­cen­tive to cut la­bor costs al­ways out­weighs the dif­fuse, shared con­se­quence of elim­i­nat­ing con­sumer spend­ing. Better AI makes this worse. Improved pro­duc­tiv­ity widens the profit gap from au­tomat­ing faster than your com­peti­tors, in­ten­si­fy­ing the arms race to­ward col­lec­tive ruin.

Sometimes the lay­offs hap­pen be­fore ex­ec­u­tives even know whether AI will do the job. Zoë Hitzig, an econ­o­mist who pre­vi­ously worked at OpenAI, told the Times: When chief ex­ec­u­tives are say­ing they’re cut­ting jobs be­cause of A.I., other peo­ple feel like they have to too. That dy­namic could make the changes hap­pen sooner than ef­fi­ciency would dic­tate.” Herd be­hav­ior dressed in the lan­guage of in­no­va­tion.

Henry Ford un­der­stood, per­haps apoc­ryphally but cor­rectly in prin­ci­ple, that his work­ers needed to earn enough to buy his cars. The AI econ­omy is elim­i­nat­ing the work­ers and ex­pect­ing the cars to keep sell­ing, ex­cept that soft­ware has near-zero mar­ginal cost, so the en­tire value propo­si­tion is the elim­i­na­tion of the hu­man cost cen­ter. The prod­uct is the re­moval of the cus­tomer base.

The op­ti­mists will tell you this is just pro­duc­tiv­ity gains. The econ­omy has ab­sorbed au­toma­tion be­fore; agri­cul­tural em­ploy­ment col­lapsed from ninety per­cent of the American work­force to two per­cent and civ­i­liza­tion con­tin­ued. David Autor at MIT has shown that roughly sixty per­cent of to­day’s jobs did­n’t ex­ist in 1940. New tech­nolo­gies cre­ate new cat­e­gories of work. True. But there’s a dif­fer­ence be­tween an ob­ser­va­tion about the past and a law of na­ture, and the op­ti­mists con­sis­tently con­fuse the two. The agri­cul­tural tran­si­tion took a hun­dred and forty years. Carl Benedikt Frey at Oxford has doc­u­mented that the Industrial Revolution took sev­enty years be­fore wages and em­ploy­ment re­cov­ered for the work­ers it dis­placed. In the in­terim, wages stag­nated, the la­bor share of in­come col­lapsed, prof­its surged, in­equal­ity sky­rock­eted, and the po­lit­i­cal con­se­quences in­cluded the Chartist move­ment and wide­spread so­cial up­heaval. As Frey puts it: Most econ­o­mists will ac­knowl­edge that tech­no­log­i­cal progress can cause some ad­just­ment prob­lems in the short run. What is rarely noted is that the short run can be a life­time.”

Compare that time­line to the one the AI in­dus­try is work­ing on. Bharat Ramamurti, a for­mer deputy di­rec­tor of the National Economic Council, has drawn the par­al­lel to the China shock, the wave of man­u­fac­tur­ing job losses that re­shaped American pol­i­tics when pro­duc­tion moved over­seas. The China shock un­folded over sev­eral years, whereas this could hap­pen over two years,” he told the Times. These com­pa­nies have spent so much money de­vel­op­ing mod­els that there’s go­ing to be im­mense pres­sure on them to gen­er­ate rev­enue through quick adop­tion.”

Previous au­toma­tion re­placed spe­cific tasks within jobs. The power loom re­placed hand weav­ing, the spread­sheet re­placed man­ual cal­cu­la­tion, etc. In each case, the tech­nol­ogy was nar­row. General-purpose AI threat­ens cog­ni­tive la­bor com­pre­hen­sively, across every in­dus­try, si­mul­ta­ne­ously. The econ­o­mist Wassily Leontief saw this com­ing in 1983 when he com­pared hu­man la­bor to horses. The US horse pop­u­la­tion grew from nine mil­lion in 1840 to twenty-one mil­lion by 1900, seem­ingly im­mune to tech­no­log­i­cal change. Within sixty years of the in­ter­nal com­bus­tion en­gine, the pop­u­la­tion col­lapsed by eighty-eight per­cent. The horses weren’t re­tired out of mal­ice. They be­came un­eco­nom­i­cal to keep. Leontief’s point was that there is no eco­nomic law pre­vent­ing the same thing from hap­pen­ing to hu­mans.

Daron Acemoglu, who won the Nobel Prize in Economics in 2024 and is the most rig­or­ous voice on this topic, has found that be­tween 1987 and 2017, the dis­place­ment ef­fect of new tech­nolo­gies far out­weighed their pro­duc­tiv­ity and re­in­state­ment ef­fects.” The new tasks did not ma­te­ri­al­ize fast enough to ab­sorb the dis­placed work­ers. His as­sess­ment of AI is more pointed still: firms are de­ploy­ing what he calls excessive au­toma­tion,” us­ing AI to kill jobs with­out gen­er­at­ing sig­nif­i­cantly lower pro­duc­tion costs, while im­pos­ing sub­stan­tial so­cial costs. The tech­nol­ogy, in many ap­pli­ca­tions, is­n’t good enough to jus­tify the dis­place­ment it causes. Automation for the sake of the stock price, not for gen­uine pro­duc­tiv­ity.

Who is the cus­tomer when the cus­tomer is the thing you’ve elim­i­nated?

An econ­omy that does­n’t need hu­man la­bor is a po­lit­i­cal cri­sis of a kind de­mo­c­ra­tic sys­tems have never faced.

Democratic gov­er­nance rests on a bar­gain so old we’ve for­got­ten it’s a bar­gain at all. The gov­erned have some­thing the gov­er­nors need: la­bor, tax rev­enue, mil­i­tary ser­vice, con­sumer spend­ing. This de­pen­dency is the source of de­mo­c­ra­tic lever­age. The whole sys­tem func­tions be­cause power is dis­trib­uted, and it’s dis­trib­uted be­cause the peo­ple at the top need some­thing from the peo­ple at the bot­tom.

Remove la­bor from that equa­tion and watch what hap­pens.

When value is gen­er­ated by AI sys­tems owned by a hand­ful of cor­po­ra­tions al­ready world-class at tax op­ti­miza­tion, every fis­cal mech­a­nism of de­mo­c­ra­tic gov­er­nance starves at once. The tax base erodes. Collective bar­gain­ing be­comes ves­ti­gial (employers who don’t need em­ploy­ees don’t bar­gain with them). Consumer spend­ing, which de­pends on la­bor in­come, con­tracts. Piketty’s r > g, the en­gine of wealth con­cen­tra­tion, ac­cel­er­ates be­cause AI sev­ers the last link be­tween cap­i­tal ac­cu­mu­la­tion and the need for hu­man la­bor as a pro­duc­tion in­put. Without re­dis­tri­b­u­tion, as one analy­sis of the frame­work put it, approximately every­thing will even­tu­ally be­long to those who are wealth­i­est when the tran­si­tion oc­curs.”

And the pub­lic funded the re­search that made it pos­si­ble. The trans­former ar­chi­tec­ture, large-scale train­ing meth­ods, semi­con­duc­tor ad­vances—all of these were pub­licly or quasi-pub­licly funded through uni­ver­si­ties, DARPA, and na­tional labs. The pub­lic bore the risk. Private com­pa­nies cap­tured the re­ward. This is blind­ingly com­mon across tech­no­log­i­cal ad­vance­ment in the last sixty years. As Mazzucato puts it, AI risks be­com­ing an­other en­gine of rent ex­trac­tion rather than value cre­ation.” We sub­si­dized the rev­o­lu­tion and are now be­ing told to ac­cept dis­place­ment as the cost of progress that some­one else prof­its from.

You can still vote (and please do, for peo­ple who get this shit and are will­ing to try to stop it). But what you’re vot­ing over is the dis­po­si­tion of a shrink­ing pool of re­sources, while the real econ­omy op­er­ates in a par­al­lel sys­tem you in­creas­ingly have no in­put into.

The peo­ple build­ing these sys­tems un­der­stand this per­fectly. Dario Amodei, the CEO of Anthropic, has said it on the record: The bal­ance of power of democ­racy is premised on the av­er­age per­son hav­ing lever­age through cre­at­ing eco­nomic value. If that’s not pre­sent, I think things be­come kind of scary.” The CEO of one of the three lead­ing AI com­pa­nies is telling you that the tech­nol­ogy he is build­ing will un­der­mine the ma­te­r­ial ba­sis of de­mo­c­ra­tic gov­er­nance. He sees the prob­lem. He is build­ing the thing that causes it. His com­pany has not en­dorsed a sin­gle piece of leg­is­la­tion to ad­dress it. When asked about pol­icy ad­vo­cacy, Anthropic co-founder Jack Clark de­scribed it as the end of a very, very long chain of work.”

Peter Thiel wrote in 2009 that he no longer be­lieved free­dom and democ­racy were com­pat­i­ble. The logic runs: de­mo­c­ra­tic sys­tems pro­duce reg­u­la­tion, re­dis­tri­b­u­tion, and ac­count­abil­ity, all of which cre­ate fric­tion on the abil­ity of ex­cep­tional peo­ple to re­shape the world. If you be­lieve you’re build­ing the most trans­for­ma­tive tech­nol­ogy in hu­man his­tory, de­mo­c­ra­tic over­sight is an ob­sta­cle. Note: he is­n’t talk­ing about your or my free­dom. We don’t mat­ter.

This view has only gained ad­her­ents. The po­lit­i­cal spend­ing, the me­dia ac­qui­si­tions, the sov­er­eign-fund diplo­macy where Sam Altman tours the Middle East cut­ting com­pute deals with au­to­cratic gov­ern­ments: ra­tio­nal be­hav­ior for peo­ple who’ve con­cluded that de­mo­c­ra­tic gov­er­nance is a legacy in­sti­tu­tion to be routed around when it in­ter­feres.

Autocracies are bet­ter cus­tomers for this tech­nol­ogy than democ­ra­cies, which is pre­cisely why the broli­garchy has rapidly shifted its sup­port be­hind Trump and MAGA. A de­mo­c­ra­tic gov­ern­ment that de­ploys AI to re­place its work­force faces elec­toral con­se­quences. An au­thor­i­tar­ian gov­ern­ment faces no such con­straint and gains a sur­veil­lance and con­trol div­i­dend on top of the eco­nomic ef­fi­cien­cies. Saudi Arabia, the UAE, Singapore: vast cap­i­tal, cen­tral­ized de­ci­sion-mak­ing, no elec­torate to an­swer to, and an ac­tive in­ter­est in tech­nolo­gies of con­trol. This is one of the mo­ti­vat­ing fac­tors in the Valley’s latch­ing on to Trump: he and his cronies can be bought, and as im­por­tantly, they have no loy­alty to democ­racy. The eco­nomic in­cen­tives for AI com­pa­nies point to­ward the en­ti­ties with the fewest de­mo­c­ra­tic ac­count­abil­ity mech­a­nisms.

Leave a com­ment

Every pro­posed so­lu­tion to mass AI dis­place­ment treats it as a re­source dis­tri­b­u­tion prob­lem. Universal ba­sic in­come. Retraining pro­grams. The leisure econ­omy.” The as­sump­tion is that if you send peo­ple checks, they’ll find mean­ing in hob­bies and com­mu­nity. They’ll paint. They’ll gar­den. They’ll fi­nally write that novel.

This is ahis­tor­i­cal bull­shit.

We don’t have to spec­u­late about what hap­pens when eco­nomic func­tion dis­ap­pears from com­mu­ni­ties. Anne Case and Angus Deaton’s re­search on deaths of de­spair” tracks the ris­ing tide of sui­cide, drug over­dose, and al­co­holic liver dis­ease mor­tal­ity con­cen­trated in less-ed­u­cated, for­merly man­u­fac­tur­ing-de­pen­dent pop­u­la­tions. The mech­a­nism is­n’t just poverty. We lose any sense of eco­nomic pur­pose, and with that, so­cial sta­tus and a per­ceived fu­ture. Communities or­ga­nized around in­dus­tries that left, where what re­placed the jobs was opi­oids, do­mes­tic vi­o­lence, and a life ex­pectancy that dropped year over year in the rich­est coun­try on earth.

Molly Kinder at Brookings drew the con­nec­tion ex­plic­itly in Sun’s NYT piece: Our econ­omy grew ex­tra­or­di­nar­ily and prices went down, but there were clear losers.” The AI com­pa­nies’ nar­ra­tives about abun­dance re­peat the same promises of glob­al­iza­tion. This time, the losers won’t be lim­ited to man­u­fac­tur­ing towns in the heart­land. I’ve in­ter­viewed so many col­lege stu­dents who are su­per fear­ful about what the fu­ture means,” Kinder told the Times, and their nar­ra­tive is ex­actly the same as those blue-col­lar guys in the heart­land.” The twenty-some­thing soft­ware en­gi­neer in San Francisco and the dis­placed fac­tory worker in Ohio are star­ing at the same ques­tion: what hap­pens when the mar­ket de­cides my skills are worth­less?

Guy Standing’s work on the precariat” adds the struc­tural di­men­sion. The psy­cho­log­i­cal con­se­quences of per­ma­nent eco­nomic pre­car­ity cor­rode so­cial co­her­ence re­gard­less of whether the rent is paid. Four decades of ne­olib­eral pol­icy plus dig­i­tal ac­cel­er­a­tion have al­ready cre­ated this class. AI ac­cel­er­a­tion ex­pands it to in­clude the col­lege-ed­u­cated pro­fes­sion­als who thought they were safe.

Piketty, no con­ser­v­a­tive, has ar­gued that UBI fails to ad­dress root struc­tural prob­lems: unequal ac­cess to ed­u­ca­tion and health, low-pay­ing and low-pro­duc­tiv­ity jobs, mal­func­tion­ing mar­kets, cor­rup­tion, and re­gres­sive tax sys­tems.” David Shor’s polling data bears this out from the other di­rec­tion: UBI is un­pop­u­lar with American vot­ers; a fed­eral jobs guar­an­tee has legs. People don’t want a check. They want work. They want pur­pose.

Anthropic’s own re­search has doc­u­mented some­thing worse than dis­place­ment: ac­tive deskilling. Junior en­gi­neers who re­lied on AI cod­ing agents did­n’t com­plete tasks much faster and un­der­stood their work less when quizzed af­ter­ward. The tech­nol­ogy is de­grad­ing the ex­per­tise of the next gen­er­a­tion of work­ers at the same time it’s com­pet­ing with them for their jobs. The re­train­ing ar­gu­ment as­sumes peo­ple can de­velop new skills to stay rel­e­vant. The ev­i­dence sug­gests the tools are pre­vent­ing them from de­vel­op­ing skills at all.

At the scale these com­pa­nies need to jus­tify their val­u­a­tions, you’re look­ing at so­cial in­sta­bil­ity that makes the cur­rent pop­ulist mo­ment look quaint. Tens of mil­lions of peo­ple, in their pro­duc­tive years, with no eco­nomic func­tion, no clear path to one, and a keen aware­ness that the peo­ple who did this to them are the rich­est hu­man be­ings who have ever lived. Stiglitz points out that AI will hit routine white col­lar jobs,” the col­lege-ed­u­cated desk work that felt in­su­lated from man­u­fac­tur­ing dis­rup­tion. Accountants, an­a­lysts, ju­nior lawyers, ra­di­ol­o­gists, soft­ware de­vel­op­ers. The pro­fes­sional class that con­sti­tutes the back­bone of po­lit­i­cal sta­bil­ity in de­vel­oped democ­ra­cies.

The most hon­est thing you can say about vi­o­lence is that no­body wants it, but the con­di­tions that pro­duce it are be­ing en­gi­neered with ex­tra­or­di­nary ef­fi­ciency by peo­ple who have ap­par­ently never opened a his­tory book. It’s hap­pen­ing. In April, some­one tried to fire­bomb Sam Altman’s home. Another at­tacker tar­geted an Indianapolis city coun­cil­man who ap­proved a lo­cal data cen­ter pro­ject. Alex Karp, the CEO of Palantir, told a re­cent panel: The biggest chal­lenge to A.I. in this coun­try is po­lit­i­cal un­rest. If I were sit­ting here in pri­vate with my peers, I’d be telling them the coun­try could blow up po­lit­i­cally and none of us are go­ing to make any money when the coun­try blows up.” Karp, to his credit, is say­ing this out loud. Most of his peers re­strict such ob­ser­va­tions to the dis­ap­pear­ing-mes­sage Signal chats where, as Jasmine Sun has re­ported, tech ex­ec­u­tives boast about the roles they plan to au­to­mate.

A strain of thought runs through Silicon Valley, from the Thiel Fellowship to the ra­tio­nal­ist blogs to the ef­fec­tive al­tru­ism move­ment, that treats its in­tel­lec­tual frame­work with the se­ri­ous­ness of re­ceived rev­e­la­tion. These are peo­ple who be­lieve they are op­er­at­ing at the fron­tier of hu­man thought.

They are op­er­at­ing at the level of a sec­ond-year phi­los­o­phy sur­vey, armed with enor­mous con­fi­dence and no aware­ness of the coun­ter­ar­gu­ments.

Start with Nietzsche, be­cause the Valley loves Nietzsche, or rather a ver­sion of Nietzsche that would have made the man lose his shit and go horse-hug­ging much faster than the syphilis. The Übermensch gets trot­ted out as jus­ti­fi­ca­tion for the ex­cep­tional founder, the vi­sion­ary who tran­scends con­ven­tional moral­ity be­cause he’s op­er­at­ing on a higher plane. Nietzsche was di­ag­nos­ing the cri­sis of mean­ing af­ter the col­lapse of meta­phys­i­cal cer­tainty, not writ­ing a man­age­ment phi­los­o­phy for peo­ple who got rich sell­ing ad­ver­tis­ing tech­nol­ogy. The Übermensch is about the in­di­vid­u­al’s re­la­tion­ship to the cre­ation of mean­ing in a god­less uni­verse. It has noth­ing to do with whether Peter Thiel should be ex­empt from de­mo­c­ra­tic ac­count­abil­ity. Nietzsche would have clas­si­fied these peo­ple as the last men, the ones who blink, say we have in­vented hap­pi­ness,” and mis­take com­fort and op­ti­miza­tion for hu­man flour­ish­ing. He would have fuck­ing loathed them.

The pat­tern re­peats. Effective al­tru­ism is util­i­tar­i­an­ism rein­vented by peo­ple who have ap­par­ently never en­coun­tered Bernard Williams, or Derek Parfit’s own ag­o­nized wrestling with the im­pli­ca­tions of con­se­quen­tial­ist rea­son­ing, or the two cen­turies of philo­soph­i­cal lit­er­a­ture ex­plain­ing why naive ex­pected-value cal­cu­la­tions pro­duce mon­strous out­comes when ap­plied with­out lim­it­ing prin­ci­ples. The EA move­ment walked it­self into the Sam Bankman-Fried cat­a­stro­phe be­cause it adopted a moral frame­work with­out un­der­stand­ing its fail­ure modes. What hap­pens when you skip the course­work and go straight to the fi­nal exam.

Longtermism, the philo­soph­i­cal en­gine of AI ac­cel­er­a­tion, whether its pro­po­nents ac­knowl­edge it or not, is warmed-over Parfit with­out the rigor. The ar­gu­ment (that we should op­ti­mize for the wel­fare of tril­lions of hy­po­thet­i­cal fu­ture be­ings, and that pre­sent-day costs are ac­cept­able in ser­vice of that goal) is a frame­work any com­pe­tent ethi­cist can dis­man­tle in an af­ter­noon. It has no lim­it­ing prin­ci­ple. It can­not dis­tin­guish be­tween gen­uine moral ur­gency and the self-serv­ing con­clu­sion that what­ever the speaker was al­ready do­ing is cos­mi­cally im­por­tant. In prac­tice, it is a ma­chine for gen­er­at­ing jus­ti­fi­ca­tions for the con­cen­tra­tion of power by peo­ple who have de­cided they are the ones best po­si­tioned to stew­ard the fu­ture of the species. How con­ve­nient.

The ra­tio­nal­ist com­mu­nity re­dis­cov­ers Bayesian epis­te­mol­ogy and treats it like a rev­e­la­tion, ap­par­ently un­aware that the phi­los­o­phy of sci­ence has been work­ing through these ques­tions since the 1920s. Blog posts get treated as foun­da­tional texts. People who have never read Kuhn or Lakatos or Feyerabend con­struct an epis­te­mol­ogy from first prin­ci­ples, mar­vel at what they’ve built, and pro­ceed to use it as the in­tel­lec­tual build­ing blocks for de­ci­sions that af­fect bil­lions of peo­ple. The con­fi­dence is in­versely pro­por­tional to the depth. Dunning-Kruger at scale.

The in­tel­lec­tual poverty ex­tends to the eco­nom­ics. Acemoglu has found that only 4.6 per­cent of tasks in the econ­omy are cur­rently cost-ef­fec­tive to au­to­mate with AI. His es­ti­mate for AIs to­tal pro­duc­tiv­ity im­pact over the next decade: 0.66 per­cent. Goldman Sachs pro­jected seven per­cent in 2023, be­fore we be­gan to see the shape of this thing. McKinsey pro­jects be­tween 0.5 and 3.5 per­cent an­nu­ally. Someone is cat­a­stroph­i­cally wrong, and the peo­ple spend­ing the money are not the ones with the Nobel Prize. Over ninety per­cent of firms sur­veyed in 2025 re­ported no mea­sur­able im­pact on em­ploy­ment or pro­duc­tiv­ity de­spite a quar­ter-tril­lion dol­lars in AI in­vest­ment. Torsten Slok: AI is every­where ex­cept in the in­com­ing macro­eco­nomic data.” These are peo­ple who have de­cided what the fu­ture looks like and are spend­ing other peo­ple’s money to will it into ex­is­tence.

These bas­tards al­ways tell on them­selves. OpenAI pub­lished a white pa­per in April call­ing for Industrial Policy for the Intelligence Age,” full of rad­i­cally pro­gres­sive pro­pos­als: a thirty-two-hour work­week, higher taxes on cor­po­ra­tions and cap­i­tal gains, a public wealth fund” pro­vid­ing all cit­i­zens an eq­uity stake in AI com­pa­nies. In the same pe­riod, OpenAI’s pres­i­dent helped fund a su­per PAC that spent over two mil­lion dol­lars on ads against Alex Bores, a New York con­gres­sional can­di­date whose crime was in­tro­duc­ing safety reg­u­la­tion for large AI de­vel­op­ers and propos­ing to tax AI to fund di­rect pay­ments to Americans. The com­pany re­moved a profit cap that had pre­vi­ously lim­ited in­vestor re­turns to a hun­dred times their ini­tial in­vest­ment. Chris Lehane, OpenAI’s chief lob­by­ist, sys­tem­at­i­cally de­pri­or­i­tized in­ter­nal re­search that could pro­duce un­flat­ter­ing re­sults. Whenever some­one wrote a pa­per which talked about some neg­a­tive as­pect of A.I.,” a col­league told the Times, he would say, We’re not go­ing to re­lease some­thing about a prob­lem un­til we have a so­lu­tion for it.’” Lehane’s own char­ac­ter­i­za­tion: We want to do ap­plied physics, not the­o­ret­i­cal physics.” Tell the story that helps us, not the one that’s true.

A Philosophy 101 stu­dent who mis­reads Nietzsche writes a bad pa­per and gets a C. A bil­lion­aire who mis­reads Nietzsche builds a po­lit­i­cal phi­los­o­phy around the mis­read­ing and funds it with the GDP of a small na­tion. This is fuck­ing in­sane.

These are not se­ri­ous peo­ple. They are se­ri­ous about ac­cu­mu­la­tion and about win­ning. They are not se­ri­ous about the ques­tions that mat­ter for what they’re build­ing: what we owe each other, what makes a life worth liv­ing, and what hap­pens to a civ­i­liza­tion when you re­move the ma­te­r­ial ba­sis of hu­man agency. These ques­tions have oc­cu­pied the best minds in hu­man his­tory for mil­len­nia. The Valley’s en­gage­ment with them amounts to read­ing the CliffsNotes on a transat­lantic flight and ar­riv­ing con­vinced you’ve mas­tered the canon.

And they want to re­struc­ture civ­i­liza­tion.

Albert Camus broke with Jean-Paul Sartre and the French left over the most con­crete po­lit­i­cal ques­tion there is: can the peo­ple alive to­day be treated as ac­cept­able ca­su­al­ties in the pur­suit of a bet­ter fu­ture?2

Sartre and the Marxists said yes. History has a di­rec­tion. The rev­o­lu­tion re­quires sac­ri­fice. Camus said no. Any sys­tem of thought that sub­or­di­nates liv­ing peo­ple to a hy­po­thet­i­cal fu­ture has al­ready com­mit­ted the foun­da­tional moral er­ror. Once you ac­cept that logic, there is no lim­it­ing prin­ci­ple. Any atroc­ity be­comes jus­ti­fi­able. Any amount of pre­sent suf­fer­ing can be ra­tio­nal­ized as a nec­es­sary in­put to the glo­ri­ous out­put.

This is the struc­ture of the AI ac­cel­er­a­tion ar­gu­ment. The tech­nol­ogy will even­tu­ally ben­e­fit hu­man­ity (trillions of fu­ture hu­mans, lives of abun­dance and mean­ing we can barely imag­ine), so pre­sent dis­rup­tion is tol­er­a­ble. Displaced work­ers, hol­lowed com­mu­ni­ties, the ero­sion of de­mo­c­ra­tic lever­age, the con­cen­tra­tion of power in a hand­ful of pri­vate ac­tors who have ex­empted them­selves from the con­se­quences of their own pro­ject: re­gret­table but nec­es­sary. The ex­pected value math works out.

The founders of Mechanize, a startup whose stated mis­sion was to en­able the full au­toma­tion of the econ­omy,” made the logic ex­plicit: the only real choice is whether to has­ten this tech­no­log­i­cal rev­o­lu­tion our­selves, or to wait for oth­ers to ini­ti­ate it in our ab­sence.” Technological de­ter­min­ism as moral ab­so­lu­tion. The fu­ture is fixed. Our only choice is whether to build it first. Therefore, noth­ing we do along the way re­quires jus­ti­fi­ca­tion, be­cause the des­ti­na­tion was never in our hands. They’re mak­ing the same ar­gu­ment as the Marxists who sent dis­si­dents to the gu­lag.

Camus staked his in­tel­lec­tual legacy on the claim that the per­son stand­ing in front of you is not an in­put to a util­ity func­tion. Their suf­fer­ing is not re­deemed by a fu­ture state of af­fairs they may never see. Their dig­nity is not ne­go­tiable against pro­jected out­comes. The per­son who ex­ists now (who has a job they’re about to lose, a fam­ily they sup­port, a com­mu­nity that de­pends on a func­tion­ing lo­cal econ­omy) is the unit of ac­count. Not hu­man­ity in the ab­stract. Not the tril­lions of fu­ture be­ings that the longter­mists con­jure to win their ex­pected-value cal­cu­la­tions.

Once that com­mit­ment is aban­doned, the door opens to every form of ra­tio­nal­ized cru­elty that the twen­ti­eth cen­tury spent a hun­dred mil­lion lives try­ing to teach us to re­ject.

The en­tire AI ac­cel­er­a­tion pro­ject is premised on aban­don­ing it. It asks pre­sent peo­ple to bear costs for fu­ture ben­e­fits they may never see, dis­trib­uted to peo­ple who do not yet ex­ist, ad­min­is­tered by a self-ap­pointed class that has in­su­lated it­self from the con­se­quences en­tirely. Altman’s universal ba­sic com­pute” pro­posal ac­knowl­edges, if you squint, that the fu­ture he’s build­ing re­quires a new dis­tri­b­u­tion mech­a­nism. It is also a pro­posal in which he gets to be the one do­ing the dis­trib­ut­ing. Feudalism with bet­ter brand­ing.

Jasmine Sun re­ported re­cently that tech in­dus­try sources expressed more ex­treme con­cern about the la­bor mar­ket im­pacts of A.I. in pri­vate con­ver­sa­tion, but sud­denly be­came op­ti­mists once I turned on the mic.” They know what they’re build­ing. They know what it will do. They per­form op­ti­mism in pub­lic be­cause the al­ter­na­tive is ad­mit­ting that the thing they’ve staked their ca­reers and for­tunes on will im­mis­er­ate a sig­nif­i­cant por­tion of hu­man­ity, and they’re do­ing it any­way. Amodei has writ­ten that Anthropic is currently con­sid­er­ing a range of pos­si­ble path­ways for our own em­ploy­ees,” im­ply­ing that even the peo­ple build­ing the tech­nol­ogy may be sur­plus to its re­quire­ments. He framed this as com­pas­sion­ate. Read it again as a CEO telling his work­force that their jobs, too, are tem­po­rary.

I don’t want to dwell on whether AI can do what these com­pa­nies claim. It may well be able to, though the cur­rent ev­i­dence sug­gests the gap be­tween pitch and prod­uct is vast, and se­ri­ous econ­o­mists think the pro­duc­tiv­ity gains are a frac­tion of what the in­dus­try pro­jects. But Acemoglu’s core find­ing is that AI does­n’t need to be rev­o­lu­tion­ary to be de­struc­tive. So-so” au­toma­tion (technology that’s mediocre at re­plac­ing work­ers but cheap enough to do it any­way) still dis­places at scale while de­liv­er­ing un­der­whelm­ing pro­duc­tiv­ity. The worst out­come may not be su­per­in­tel­li­gent AI. It may be ad­e­quate AI, de­ployed ag­gres­sively by com­pa­nies chas­ing stock prices, elim­i­nat­ing jobs it can’t ac­tu­ally do well be­cause the quar­terly in­cen­tives de­mand it.

Has any­one with the power to shape this tran­si­tion thought se­ri­ously about what it means for the peo­ple alive to­day who did­n’t get a vote on any of it?

Fuck no.

The win­dow for chang­ing that an­swer is not in­fi­nite. The reg­u­la­tory cap­ture is al­ready ad­vanced: AI-related in­vest­ments ac­counted for thirty-nine per­cent of US eco­nomic growth in the first three quar­ters of 2025, giv­ing the fed­eral gov­ern­ment a vested in­ter­est in sus­tain­ing the boom. Amodei him­self ac­knowl­edges that this leads to the re­luc­tance of tech com­pa­nies to crit­i­cize the U.S. gov­ern­ment, and the gov­ern­men­t’s sup­port for ex­treme anti-reg­u­la­tory poli­cies on A.I.” The reg­u­la­tor and the reg­u­lated have con­verged into a sin­gle in­ter­est. The ex­per­tise asym­me­try be­tween leg­is­la­tors and the in­dus­try they’re sup­posed to over­see is in­sur­mount­able. The feed­back loop (AI sys­tems ad­vis­ing on the gov­er­nance of AI sys­tems) is clos­ing.

The in­ter­ven­tions that could mat­ter are known. Public own­er­ship stakes in AI in­fra­struc­ture. Aggressive an­titrust en­force­ment. A gen­uine tax regime on au­to­mated la­bor. Branko Milanovic’s pre­scrip­tion is char­ac­ter­is­ti­cally di­rect: spread cap­i­tal own­er­ship more widely, tax the high­est cap­i­tal in­comes more ag­gres­sively. None of these are tech­no­log­i­cally dif­fi­cult. All of them re­quire func­tion­ing de­mo­c­ra­tic in­sti­tu­tions with the will to chal­lenge the rich­est com­pa­nies in hu­man his­tory. The com­pa­nies that would need to be taxed are spend­ing mil­lions to de­feat the politi­cians who pro­pose it.

The dead econ­omy is not one where noth­ing hap­pens. Plenty will hap­pen. The GDP might even go up; AI-related in­vest­ments are al­ready prop­ping it up. The dead econ­omy is one where plenty hap­pens and none of it re­quires you. Where the pro­duc­tive ca­pac­ity of civ­i­liza­tion has been cap­tured by a sys­tem you have no stake in, no in­put into, and no vote on. Where the peo­ple who built it told you they don’t think you should have a say. Where they ex­press alarm about the con­se­quences in pri­vate and op­ti­mism in pub­lic. Where they pub­lish white pa­pers call­ing for rad­i­cal re­dis­tri­b­u­tion while fund­ing su­per PACs to de­stroy the politi­cians who pro­pose it.

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1

This es­say re­lies fre­quently on the out­stand­ing re­port­ing of Jasmine Sun’s April 30, 2026 piece in the New York Times, which you can find at: https://​www.ny­times.com/​2026/​04/​30/​opin­ion/​ai-la­bor-work-force-sil­i­con-val­ley.html

I’m not go­ing to link it for every quo­ta­tion pulled from Sun’s piece, so if a di­rect quo­ta­tion is not cited in­di­vid­u­ally, I have pulled it from Sun’s re­port­ing.

I think Anthropic and OpenAI have found product-market fit

simonwillison.net

27th May 2026

Anthropic are strongly ru­mored to be about to have their first prof­itable quar­ter. Stories are cir­cu­lat­ing of com­pa­nies sur­prised at how ex­pen­sive their LLM bills are be­com­ing from us­age by their staff. I think this is be­cause OpenAI and Anthropic have both found prod­uct-mar­ket fit.

Enterprise cus­tomers are now pay­ing API prices

I think they’ve found prod­uct-mar­ket fit

And they’re ramp­ing up

The AI-failure sto­ries around this are pretty thin

We also know the labs are spend­ing a lot

API rev­enue is be­com­ing less im­por­tant

April is a new in­flec­tion point

Enterprise cus­tomers are now pay­ing API prices

I cur­rently sub­scribe to the $100/month Max plan from Anthropic and the $100/month Pro plan from OpenAI. If you are a heavy user of cod­ing agents these plans are a fan­tas­tic deal. I just ran the ccusage tool on my lap­top to get an es­ti­mate of how much I would have spent if I were to pay for API to­kens in the past 30 days and got:

$1,199.79 for Anthropic Claude Code

$980.37 for OpenAI Codex

That’s $2,180.16 worth of to­kens for $200—not bad at all! I’m a mod­er­ately heavy user of these tools, but I’m cer­tainly not run­ning agents every hour of the day and night.

I had as­sumed that com­pa­nies mak­ing ex­ten­sive use of agents were get­ting sim­i­lar dis­counts. It turns out I could not have been more wrong about that.

I haven’t been able to track down the ex­act date, but at some point in the last six months Anthropic switched their Enterprise plan (originally Claude seats in­clude enough us­age for a typ­i­cal work­day” back in August 2025) to $20/seat/month plus API pric­ing for us­age. This story about the change from The Information is dated Apr 14, 2026, but cites an Anthropic spokesper­son claim­ing that the pric­ing change oc­curred in November 2025. Existing cus­tomers are find­ing out about the change as they re­new their con­tracts.

OpenAI made a sim­i­lar pric­ing change in April. The Codex rate card (Internet Archive copy) cur­rently says:

Note: On April 2, 2026, we up­dated Codex pric­ing to align with API to­ken us­age, in­stead of per-mes­sage pric­ing. This change was ap­plic­a­ble to new and ex­ist­ing Plus, Pro, ChatGPT Business and new ChatGPT Enterprise plans. On April 23, 2026, we made this up­date for all ex­ist­ing ChatGPT Enterprise plans as well, in­clu­sive of Edu, Health, Gov, and ChatGPT for Teachers.

Note: On April 2, 2026, we up­dated Codex pric­ing to align with API to­ken us­age, in­stead of per-mes­sage pric­ing. This change was ap­plic­a­ble to new and ex­ist­ing Plus, Pro, ChatGPT Business and new ChatGPT Enterprise plans.

On April 23, 2026, we made this up­date for all ex­ist­ing ChatGPT Enterprise plans as well, in­clu­sive of Edu, Health, Gov, and ChatGPT for Teachers.

It’s a lit­tle harder to de­code as they quote prices in credits”, but as far as I can tell those credit costs are an ex­act match for the API to­ken costs listed for those mod­els.

All of which is to say that as of April 2026 the Enterprise” cost for both OpenAI Codex and Anthropic Claude Code/Cowork is the same as the listed API price.

GPT-5.5 (released April 23rd) is 2x the API price of GPT-5.4. Opus 4.7 (April 16th) is around 1.4x the price of Opus 4.6 when you take their new to­k­enizer into ac­count.

So April saw both lead­ing model com­pa­nies re­lease new fron­tier mod­els with a higher API price, and both com­pa­nies now have mea­sures to lock their en­ter­prise cus­tomers (who tend to sign year-long deals) at those API prices, not the pre­vi­ous ex­treme dis­counts.

I think they’ve found prod­uct-mar­ket fit

Why these sud­den ag­gres­sive moves on pric­ing? Both Anthropic and OpenAI are plan­ning to IPO, but I sus­pect there’s a more im­por­tant fac­tor here: I think they’ve fi­nally found prod­uct-mar­ket fit, with the cod­ing/​gen­eral-pur­pose agent prod­ucts em­bod­ied by Claude Code/Cowork and Codex.

Tools like ChatGPT are wildly pop­u­lar, but that wild pop­u­lar­ity has been dif­fi­cult to turn into rev­enue. In February OpenAI boasted more than 900 mil­lion weekly ac­tive users for ChatGPT, but only 50 mil­lion—5.6% of that—were pay­ing con­sumer sub­scribers.

Charging $10-$20/month per user is an OK busi­ness, but you’d need 1 – 2 bil­lion sub­scribers stick­ing around for four years to cover $1 tril­lion in in­fra­struc­ture.

Companies spend­ing $200+/month/user will get you there a whole lot faster—and as noted above, as a power-user I’m at ~$1,000/month in API costs per ven­dor al­ready.

Coding agents re­ally did change every­thing. These are tools which burn vastly more to­kens, but are also quickly be­com­ing daily dri­vers for the work car­ried out by ex­tremely well-com­pen­sated pro­fes­sion­als. Right now that’s still mostly soft­ware en­gi­neers, but a cod­ing agent is a tool that can au­to­mate any­thing you can do by typ­ing com­mands into a com­puter… so they are clearly ap­plic­a­ble to a much wider set of skilled knowl­edge work­ers.

As I’ve dis­cussed on this site at length, the mod­els re­leased in November 2025 el­e­vated agents to be­ing gen­uinely use­ful. We’ve had six months to get used to that idea now—it’s no won­der com­pa­nies are be­gin­ning to spend real money on this tech­nol­ogy.

You could ar­gue that ChatGPT achieved prod­uct-mar­ket fit when it be­came the fastest-grow­ing con­sumer app in his­tory back in February 2023… but it cer­tainly was­n’t mak­ing any ac­tual money back then. Coding agents plus en­ter­prise pric­ing marks the point when these com­pa­nies start mak­ing very real rev­enue. Maybe even enough to start cov­er­ing their costs!

And they’re ramp­ing up

As fur­ther ev­i­dence that en­ter­prise agents rep­re­sent prod­uct-mar­ket fit for these com­pa­nies, con­sider their open job list­ings.

OpenAI have 703 open jobs right now, of which I’d cat­e­go­rize 229 (32.6%) as re­lat­ing to en­ter­prise sales and sup­port—ac­count ex­ec­u­tives, Go To Market”, Forward Deployed Engineers” and the like.

Anthropic have 390 open jobs, 105 (26.9%) of which look en­ter­prisey to me.

It’s pleas­ingly ironic that these AI labs have picked a busi­ness model with such a heavy de­mand on hu­man la­bor—en­ter­prise sales con­tracts don’t close them­selves with­out a whole lot of hu­mans in the mix!

(I ran this analy­sis by scrap­ing their job sites with Claude Code, then hav­ing it use Datasette’s JSON API to pipe that data into Datasette Cloud where I used Datasette Agent for the analy­sis, ex­ported here. Dogfood!)

The AI-failure sto­ries around this are pretty thin

I started dig­ging into this in re­sponse to a grow­ing vol­ume of sto­ries claim­ing that large com­pa­nies were sound­ing the alarm be­cause their AI us­age costs had grown so large.

The most widely cited of these sto­ries ap­pear quite overblown to me.

The most dis­cussed has been Uber, based on this re­port where CTO Praveen Neppalli Naga in­di­cated that Uber had maxed out its full year AI bud­get just a few months into 2026”, mostly thanks to Claude Code.

Given that Claude Code only got re­ally good in November it’s en­tirely un­sur­pris­ing to me that a bud­get set in 2025 may have failed to pre­dict de­mand for that tool in 2026!

That Uber story was fur­ther fu­eled by com­ments made by Uber’s COO, Andrew Macdonald, on the Rapid Response pod­cast. I tracked down the seg­ment and there re­ally is­n’t much there. Here’s what Andrew said:

But then you some­times go and talk to your se­nior en­gi­neer­ing lead­ers and you’re say­ing, OK, how many pro­jects that were on the cut­ting room floor got moved above the line be­cause of the pro­duc­tiv­ity gains be­cause 25% of our code com­mits were via Claude Code last quar­ter? That link is not there yet, right? I think maybe im­plic­itly there’s more that is get­ting shipped. But it’s very hard to draw a line be­tween one of those stats and, OK, now we’re ac­tu­ally pro­duc­ing like 25% more use­ful con­sumer fea­tures, right? And that line is hard to draw. […] And so if you’re not ac­tu­ally able to draw a di­rect line to how much use­ful fea­tures and func­tion­al­ity you’re ship­ping to your users, that trade be­comes harder to jus­tify.

But then you some­times go and talk to your se­nior en­gi­neer­ing lead­ers and you’re say­ing, OK, how many pro­jects that were on the cut­ting room floor got moved above the line be­cause of the pro­duc­tiv­ity gains be­cause 25% of our code com­mits were via Claude Code last quar­ter?

That link is not there yet, right? I think maybe im­plic­itly there’s more that is get­ting shipped. But it’s very hard to draw a line be­tween one of those stats and, OK, now we’re ac­tu­ally pro­duc­ing like 25% more use­ful con­sumer fea­tures, right? And that line is hard to draw.

[…] And so if you’re not ac­tu­ally able to draw a di­rect line to how much use­ful fea­tures and func­tion­al­ity you’re ship­ping to your users, that trade be­comes harder to jus­tify.

Somehow this frag­ment turned into head­lines like Uber’s COO says it’s get­ting harder to jus­tify the money spent on AI to­ken­maxxing, be­cause the mar­ket for sto­ries about AI fail­ures re­mains enor­mous.

Update 29th May 2026: I edited the above quote to add that last para­graph end­ing in becomes harder to jus­tify” on the sug­ges­tion of Madison Mills—previously my quoted sec­tion stopped at hard to draw”. Here’s the full unedited tran­script from MacWhisper.

The other pop­u­lar story around this is Microsoft starts can­cel­ing Claude Code li­censes, os­ten­si­bly to en­cour­age their en­gi­neers to dog­food their own Copilot CLI agent in­stead—but The Verge re­porter Tom Warren says sources tell me the de­ci­sion is also a fi­nan­cial one”, trig­gered by the June 30th end of Microsoft’s fi­nan­cial year.

I think both of these sto­ries sup­port my product-market fit” hy­poth­e­sis. The best ad­vice I ever heard on pric­ing a prod­uct was that your cus­tomer should suck air through their teeth and then say yes. Uber’s bud­get over­run and Microsoft’s seat can­cel­la­tions look like that ef­fect play­ing out in prac­tice.

We also know the labs are spend­ing a lot

The big AI labs spend bil­lions of dol­lars on both train­ing and in­fer­ence. Credible fig­ures are hard to come by, but we did get one huge hint as to the fig­ures in­volved from, oddly enough, the re­cent SpaceX S-1:

[…] in May 2026, we en­tered into Cloud Services Agreements with Anthropic PBC (“Anthropic”), an AI re­search and de­vel­op­ment pub­lic ben­e­fit cor­po­ra­tion, with re­spect to ac­cess to com­pute ca­pac­ity across COLOSSUS and COLOSSUS II. Pursuant to these agree­ments, the cus­tomer has agreed to pay us $1.25 bil­lion per month through May 2029 […]

[…] in May 2026, we en­tered into Cloud Services Agreements with Anthropic PBC (“Anthropic”), an AI re­search and de­vel­op­ment pub­lic ben­e­fit cor­po­ra­tion, with re­spect to ac­cess to com­pute ca­pac­ity across COLOSSUS and COLOSSUS II. Pursuant to these agree­ments, the cus­tomer has agreed to pay us $1.25 bil­lion per month through May 2029 […]

The Anthropic an­nounce­ment said that this deal meant they could increase our us­age lim­its for Claude Code and the Claude API, heav­ily im­ply­ing that Colossus is be­ing used for in­fer­ence, not model train­ing.

Anthropic al­ready have vast amounts of com­pute from other providers. The fact that they’re will­ing to spend $1.25 bil­lion per month for ex­tra ca­pac­ity from just one of their ven­dors hints at how big these in­fer­ence bud­gets have be­come.

API rev­enue is be­com­ing less im­por­tant

Over the past two years my im­pres­sion has been that OpenAI made more of their in­come from sub­scrip­tion rev­enue while Anthropic made more from their API.

Anthropic’s API rev­enue was his­tor­i­cally quite de­pen­dent on a small num­ber of large API cus­tomers—this VentureBeat story from August 2025 quotes sources fa­mil­iar with the mat­ter” sug­gest­ing that just Cursor and GitHub Copilot were re­spon­si­ble for $1.2 bil­lion of the com­pa­ny’s then-$4 bil­lion rev­enue.

Today Anthropic are ru­mored to hit $10.9 bil­lion in the sec­ond quar­ter, po­ten­tially even op­er­at­ing at a profit for the first time.

This pivot-to-En­ter­prise sug­gests that the labs have re­al­ized that the real money lies in cut­ting out the mid­dle­men. Anthropic’s Claude Code di­rectly com­petes with Cursor and Copilot. No won­der Cursor are in­vest­ing in their own mod­els!

April is a new in­flec­tion point

I’ve called November 2025 the November in­flec­tion point be­cause that was when GPT-5.1 and Opus 4.5, com­bined with their re­spec­tive cod­ing agent har­nesses, got good—good enough that we’ve spent the last six months adapt­ing to agent sys­tems that can re­li­ably get use­ful work done.

I think April 2026 is a new in­flec­tion point where the rev­enue im­pli­ca­tions of this have started to land, to the ben­e­fit of the fron­tier AI labs and with ma­te­r­ial im­pacts on the bud­gets of large com­pa­nies.

We’ll know for sure how real this mo­ment is when the S-1 doc­u­ments for the up­com­ing Anthropic and OpenAI IPOs give us some real, au­dited num­bers to get our teeth into.

DuckDuckGo's AI-free search saw nearly 28% more visits in the week following Google's insistence that people…

www.pcgamer.com

These days, a typ­i­cal Google Search feels like an ob­sta­cle course. Type out upcoming PC games 2026’ and your gaze has to swerve around a chunky AI overview which re­cy­cles the work of hu­man writ­ers in a bid to kneecap ef­forts to click away from Google. It’s a bleak state of af­fairs for what was once the pre­mier dis­cov­ery tool for the in­ter­net, and as such many users are look­ing for al­ter­na­tive search en­gines.

DuckDuckGo has been one ma­jor win­ner of this Google Search aban­don­ment. Just for a start, vis­its to its AI-free search page noai.duck­duckgo.com be­tween May 20 to May 25 are said to have in­creased by 22.7% on av­er­age week-on-week, with the fig­ures peak­ing May 24 at 27.7%.

The DuckDuckGo mo­bile app saw in­stalls spike in the US by 18.1% on av­er­age com­pared to the pre­vi­ous week. TechCrunch re­ported this growth was sus­tained over six days, peak­ing at 30.5% on May 25. An even greater num­ber of iOS users hit down­load on the app though, with in­stalls see­ing an av­er­age week-on-week growth of 33% and a peak of 69.9%.

This all fol­lows Google CEO Sundar Pichai claim­ing last week that, People love [Search’s AI Mode].” DuckDuckGo CEO Gabriel Weinberg crit­i­cised Google’s all-in-on-AI ap­proach to Search, telling Paul Thurrott, Google is force-feed­ing AI with no way to opt out. As a re­sult, their re­sults are get­ting worse, not bet­ter. We want to be the place that puts users in charge and al­lows them to de­cide how much or how lit­tle AI they want.”

To be clear, Google is­n’t about to lose its Search crown; DuckDuckGo rep­re­sents about 2% of the search en­gine mar­ket in the US—Google still en­joyed about 85% as of last month.

DuckDuckGo also of­fers AI prod­ucts such as duck.ai, which al­lows users to chat pri­vately with a num­ber of ma­jor LLMs such as GPT-5 mini and Claude Haiku 4.5. Given that Google re­ported its rev­enue from search grew by 19% dur­ing Q1 2026—apparently thanks to its AI ex­pe­ri­ences like AI Mode and AI Overviews”—it would­n’t make much busi­ness sense for any com­pany to com­pletely ex­ile it­self from the AI in­dus­try at this mo­ment in time.

However, DuckDuckGo has en­deav­oured to pri­ori­tise user choice and pri­vacy. Weinberg said ear­lier this week, Everything you do in DuckDuckGo is pri­vate, we don’t col­lect search his­to­ries or chats, and noth­ing is used for AI train­ing.”

Keep up to date with the most im­por­tant sto­ries and the best deals, as picked by the PC Gamer team.

According to chief com­mu­ni­ca­tions of­fi­cer Kamyl Bazbaz, DuckDuckGo’s own AI overviews re­main pop­u­lar—though so does the op­tion to fil­ter out AI-generated im­ages from search re­sults. He said, People just want a choice.” Amen to that.

Jess has been writ­ing about games for over ten years, spend­ing a sig­nif­i­cant chunk of that time work­ing on print pub­li­ca­tions PLAY and Official PlayStation Magazine. When she’s not in­ves­ti­gat­ing all things hard­ware here, she’s ei­ther con­struct­ing a pas­sion­ate de­fence of a 7/10 game, day­dream­ing about her de­but novel, or feel­ing wist­ful about the last time she chased some nerds around a field with an over­sized foam sword.

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