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Owning a $5M data center

These days it seems you need a tril­lion fake dol­lars, or lunch with politi­cians to get your own data cen­ter. They may help, but they’re not re­quired. At comma we’ve been run­ning our own data cen­ter for years. All of our model train­ing, met­rics, and data live in our own data cen­ter in our own of­fice. Having your own data cen­ter is cool, and in this blog post I will de­scribe how ours works, so you can be in­spired to have your own data cen­ter too.

If your busi­ness re­lies on com­pute, and you run that com­pute in the cloud, you are putting a lot of trust in your cloud provider. Cloud com­pa­nies gen­er­ally make on­board­ing very easy, and off­board­ing very dif­fi­cult. If you are not vig­i­lant you will sleep­walk into a sit­u­a­tion of high cloud costs and no way out. If you want to con­trol your own des­tiny, you must run your own com­pute.

Self-reliance is great, but there are other ben­e­fits to run­ning your own com­pute. It in­spires good en­gi­neer­ing. Maintaining a data cen­ter is much more about solv­ing real-world chal­lenges. The cloud re­quires ex­per­tise in com­pany-spe­cific APIs and billing sys­tems. A data cen­ter re­quires knowl­edge of Watts, bits, and FLOPs. I know which one I rather think about.

Avoiding the cloud for ML also cre­ates bet­ter in­cen­tives for en­gi­neers. Engineers gen­er­ally want to im­prove things. In ML many prob­lems go away by just us­ing more com­pute. In the cloud that means im­prove­ments are just a bud­get in­crease away. This locks you into in­ef­fi­cient and ex­pen­sive so­lu­tions. Instead, when all you have avail­able is your cur­rent com­pute, the quick­est im­prove­ments are usu­ally speed­ing up your code, or fix­ing fun­da­men­tal is­sues.

Finally there’s cost, own­ing a data cen­ter can be far cheaper than rent­ing in the cloud. Especially if your com­pute or stor­age needs are fairly con­sis­tent, which tends to be true if you are in the busi­ness of train­ing or run­ning mod­els. In com­ma’s case I es­ti­mate we’ve spent ~5M on our data cen­ter, and we would have spent 25M+ had we done the same things in the cloud.

Our data cen­ter is pretty sim­ple. It’s main­tained and built by only a cou­ple en­gi­neers and tech­ni­cians. Your needs may be slightly dif­fer­ent, our im­ple­men­ta­tion should pro­vide use­ful con­text.

To run servers you need power. We cur­rently use about 450kW at max. Operating a data cen­ter ex­poses you to many fun en­gi­neer­ing chal­lenges, but procur­ing power is not one of them. San Diego power cost is over 40c/kWh, ~3x the global av­er­age. It’s a ripoff, and over­priced sim­ply due to po­lit­i­cal dys­func­tion. We spent $540,112 on power in 2025, a big part of the data cen­ter cost. In a fu­ture blog post I hope I can tell you about how we pro­duce our own power and you should too.

Data cen­ters need cool dry air. Typically this is achieved with a CRAC sys­tem, but they are power-hun­gry. San Diego has a mild cli­mate and we opted for pure out­side air cool­ing. This gives us less con­trol of the tem­per­a­ture and hu­mid­ity, but uses only a cou­ple dozen kW. We have dual 48” in­take fans and dual 48” ex­haust fans to keep the air cool. To en­sure low hu­mid­ity (

The ma­jor­ity of our cur­rent com­pute is 600 GPUs in 75 TinyBox Pro ma­chines. They were built in-house, which saves us money and en­sures they suit our needs. Our self-built ma­chines fail at a sim­i­lar rate to pre-built ma­chines we’ve bought, but we’re ca­pa­ble of fix­ing them our­selves quickly. They have 2 CPUs and 8 GPUs each, and work as both train­ing ma­chines and gen­eral com­pute work­ers.

For data stor­age we have a few racks of Dell ma­chines (R630 and R730). They are filled with SSDs for a to­tal of ~4PB of stor­age. We use SSDs for re­li­a­bil­ity and speed. Our main stor­age ar­rays have no re­dun­dancy and each node needs to be able to sat­u­rate the net­work band­width with ran­dom ac­cess reads. For the stor­age ma­chines this means read­ing up to 20Gbps of each 80TB chunk.

Other than stor­age and com­pute ma­chines we have sev­eral one-off ma­chines to run ser­vices. This in­cludes a router, cli­mate con­troller, data in­ges­tion ma­chine, stor­age mas­ter servers, met­ric servers, re­dis servers, and a few more.

Running the net­work re­quires switches, but at this scale we don’t need to bother with com­pli­cated switch topolo­gies. We have 3 100Gbps in­ter­con­nected Z9264F switches, which serve as the main eth­er­net net­work. We have two more in­fini­band switches to in­ter­con­nect the 2 tiny­box pro groups for train­ing all-re­duce.

To ef­fec­tively use all these com­pute and stor­age ma­chines you need some in­fra. At this scale, ser­vices don’t need re­dun­dancy to achieve 99% up­time. We use a sin­gle mas­ter for all ser­vices, which makes things pretty sim­ple.

All servers get ubuntu in­stalled with pxe­boot and are man­aged by salt.

All of our stor­age ar­rays use mkv. The main ar­ray is 3PB of non-re­dun­dant stor­age host­ing our dri­ving data we train on. We can read from this ar­ray at ~1TB/s, which means we can train di­rectly on the raw data with­out caching. Redundancy is not needed since no spe­cific data is crit­i­cal.

We have an ad­di­tional ~300TB non-re­dun­dant ar­ray to cache in­ter­me­di­ate processed re­sults. And lastly, we have a re­dun­dant mkv stor­age ar­ray to store all of our trained mod­els and train­ing met­rics. Each of these 3 ar­rays have a sep­a­rate sin­gle mas­ter server.

We use slurm to man­age the com­pute nodes, and com­pute jobs. We sched­ule two types of dis­trib­uted com­pute. Pytorch train­ing jobs, and mini­ray work­ers.

To train mod­els across mul­ti­ple GPU nodes we use torch.dis­trib­uted FSDP. We have 2 sep­a­rate train­ing par­ti­tions, each in­tra-con­nected with Infiniband for train­ing across ma­chines. We wrote our own train­ing frame­work which han­dles the train­ing loop boil­er­plate, but it’s mostly just py­torch.

We have a cus­tom model ex­per­i­ment track­ing ser­vice (similar to wandb or ten­sor­board). It pro­vides a dash­board for track­ing ex­per­i­ments, and shows cus­tom met­rics and re­ports. It is also the in­ter­face for the mkv stor­age ar­ray that hosts the model weights. The train­ing runs store the model weights there with a uuid, and they are avail­able to down­load for who­ever needs to run them. The met­rics and re­ports for our lat­est mod­els are also open.

Besides train­ing we have many other com­pute tasks. This can be any­thing from run­ning tests, run­ning mod­els, pre-pro­cess­ing data, or even run­ning agent roll­outs for on-pol­icy train­ing. We wrote a light­weight open-source task sched­uler called mini­ray that al­lows you to run ar­bi­trary python code on idle ma­chines. This is a sim­pler ver­sion of dask, with a fo­cus on ex­treme sim­plic­ity. Slurm will sched­ule any idle ma­chine to be an ac­tive mini­ray worker, and ac­cept pend­ing tasks. All the task in­for­ma­tion is hosted in a cen­tral re­dis server.

Miniray work­ers with GPUs will spin up a tri­ton in­fer­ence server to run model in­fer­ence with dy­namic batch­ing. A mini­ray worker can thus eas­ily and ef­fi­ciently run any of the mod­els hosted in the model mkv stor­age ar­ray.

Miniray makes it ex­tremely easy to scale par­al­lel tasks to hun­dreds of ma­chines. For ex­am­ple, the con­trols chal­lenge record was set by just hav­ing ~1hr of ac­cess to our data cen­ter with mini­ray.

All our code is in a monorepo that we have cloned on our work­sta­tions. This monorepo is kept small (

The most com­plex thing we do at comma is train dri­ving mod­els on-pol­icy, these train­ing runs re­quire train­ing data to be gen­er­ated dur­ing train­ing by run­ning sim­u­lated dri­ving roll­outs with the most re­cent model weights. Here’s a real-world com­mand we just used to train such a model. This train­ing run uses all of the in­fra­struc­ture de­scribed above. While only this small com­mand is needed to kick every­thing off, it or­ches­trates a lot of mov­ing parts.

Does all this stuff sound ex­cit­ing? Then build your own dat­a­cen­ter for your­self or your com­pany! You can also come work here.

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Read the original on blog.comma.ai »

2 470 shares, 17 trendiness

Claude is a space to think

There are many good places for ad­ver­tis­ing. A con­ver­sa­tion with Claude is not one of them.

Advertising dri­ves com­pe­ti­tion, helps peo­ple dis­cover new prod­ucts, and al­lows ser­vices like email and so­cial me­dia to be of­fered for free. We’ve run our own ad cam­paigns, and our AI mod­els have, in turn, helped many of our cus­tomers in the ad­ver­tis­ing in­dus­try.

But in­clud­ing ads in con­ver­sa­tions with Claude would be in­com­pat­i­ble with what we want Claude to be: a gen­uinely help­ful as­sis­tant for work and for deep think­ing.

We want Claude to act un­am­bigu­ously in our users’ in­ter­ests. So we’ve made a choice: Claude will re­main ad-free. Our users won’t see sponsored” links ad­ja­cent to their con­ver­sa­tions with Claude; nor will Claude’s re­sponses be in­flu­enced by ad­ver­tis­ers or in­clude third-party prod­uct place­ments our users did not ask for.

When peo­ple use search en­gines or so­cial me­dia, they’ve come to ex­pect a mix­ture of or­ganic and spon­sored con­tent. Filtering sig­nal from noise is part of the in­ter­ac­tion.

Conversations with AI as­sis­tants are mean­ing­fully dif­fer­ent. The for­mat is open-ended; users of­ten share con­text and re­veal more than they would in a search query. This open­ness is part of what makes con­ver­sa­tions with AI valu­able, but it’s also what makes them sus­cep­ti­ble to in­flu­ence in ways that other dig­i­tal prod­ucts are not.

Our analy­sis of con­ver­sa­tions with Claude (conducted in a way that keeps all data pri­vate and anony­mous) shows that an ap­pre­cia­ble por­tion in­volve top­ics that are sen­si­tive or deeply per­sonal—the kinds of con­ver­sa­tions you might have with a trusted ad­vi­sor. Many other uses in­volve com­plex soft­ware en­gi­neer­ing tasks, deep work, or think­ing through dif­fi­cult prob­lems. The ap­pear­ance of ads in these con­texts would feel in­con­gru­ous—and, in many cases, in­ap­pro­pri­ate.

We still have much to learn about the im­pact of AI mod­els on the peo­ple who use them. Early re­search sug­gests both ben­e­fits—like peo­ple find­ing sup­port they could­n’t ac­cess else­where—and risks, in­clud­ing the po­ten­tial for mod­els to re­in­force harm­ful be­liefs in vul­ner­a­ble users. Introducing ad­ver­tis­ing in­cen­tives at this stage would add an­other level of com­plex­ity. Our un­der­stand­ing of how mod­els trans­late the goals we set them into spe­cific be­hav­iors is still de­vel­op­ing; an ad-based sys­tem could there­fore have un­pre­dictable re­sults.

Being gen­uinely help­ful is one of the core prin­ci­ples of Claude’s Constitution, the doc­u­ment that de­scribes our vi­sion for Claude’s char­ac­ter and guides how we train the model. An ad­ver­tis­ing-based busi­ness model would in­tro­duce in­cen­tives that could work against this prin­ci­ple.

Consider a con­crete ex­am­ple. A user men­tions they’re hav­ing trou­ble sleep­ing. An as­sis­tant with­out ad­ver­tis­ing in­cen­tives would ex­plore the var­i­ous po­ten­tial causes—stress, en­vi­ron­ment, habits, and so on—based on what might be most in­sight­ful to the user. An ad-sup­ported as­sis­tant has an ad­di­tional con­sid­er­a­tion: whether the con­ver­sa­tion pre­sents an op­por­tu­nity to make a trans­ac­tion. These ob­jec­tives may of­ten align—but not al­ways. And, un­like a list of search re­sults, ads that in­flu­ence a mod­el’s re­sponses may make it dif­fi­cult to tell whether a given rec­om­men­da­tion comes with a com­mer­cial mo­tive or not. Users should­n’t have to sec­ond-guess whether an AI is gen­uinely help­ing them or sub­tly steer­ing the con­ver­sa­tion to­wards some­thing mon­e­ti­z­able.

Even ads that don’t di­rectly in­flu­ence an AI mod­el’s re­sponses and in­stead ap­pear sep­a­rately within the chat win­dow would com­pro­mise what we want Claude to be: a clear space to think and work. Such ads would also in­tro­duce an in­cen­tive to op­ti­mize for en­gage­ment—for the amount of time peo­ple spend us­ing Claude and how of­ten they re­turn. These met­rics aren’t nec­es­sar­ily aligned with be­ing gen­uinely help­ful. The most use­ful AI in­ter­ac­tion might be a short one, or one that re­solves the user’s re­quest with­out prompt­ing fur­ther con­ver­sa­tion.

We rec­og­nize that not all ad­ver­tis­ing im­ple­men­ta­tions are equiv­a­lent. More trans­par­ent or opt-in ap­proaches—where users ex­plic­itly choose to see spon­sored con­tent—might avoid some of the con­cerns out­lined above. But the his­tory of ad-sup­ported prod­ucts sug­gests that ad­ver­tis­ing in­cen­tives, once in­tro­duced, tend to ex­pand over time as they be­come in­te­grated into rev­enue tar­gets and prod­uct de­vel­op­ment, blur­ring bound­aries that were once more clear-cut. We’ve cho­sen not to in­tro­duce these dy­nam­ics into Claude.

Anthropic is fo­cused on busi­nesses, de­vel­op­ers, and help­ing our users flour­ish. Our busi­ness model is straight­for­ward: we gen­er­ate rev­enue through en­ter­prise con­tracts and paid sub­scrip­tions, and we rein­vest that rev­enue into im­prov­ing Claude for our users. This is a choice with trade­offs, and we re­spect that other AI com­pa­nies might rea­son­ably reach dif­fer­ent con­clu­sions.

Expanding ac­cess to Claude is cen­tral to our pub­lic ben­e­fit mis­sion, and we want to do it with­out sell­ing our users’ at­ten­tion or data to ad­ver­tis­ers. To that end, we’ve brought AI tools and train­ing to ed­u­ca­tors in over 60 coun­tries, be­gun na­tional AI ed­u­ca­tion pi­lots with mul­ti­ple gov­ern­ments, and made Claude avail­able to non­prof­its at a sig­nif­i­cant dis­count. We con­tinue to in­vest in our smaller mod­els so that our free of­fer­ing re­mains at the fron­tier of in­tel­li­gence, and we may con­sider lower-cost sub­scrip­tion tiers and re­gional pric­ing where there is clear de­mand for it. Should we need to re­visit this ap­proach, we’ll be trans­par­ent about our rea­sons for do­ing so.

AI will in­creas­ingly in­ter­act with com­merce, and we look for­ward to sup­port­ing this in ways that help our users. We’re par­tic­u­larly in­ter­ested in the po­ten­tial of agen­tic com­merce, where Claude acts on a user’s be­half to han­dle a pur­chase or book­ing end to end. And we’ll con­tinue to build fea­tures that en­able our users to find, com­pare, or buy prod­ucts, con­nect with busi­nesses, and more—when they choose to do so.

We’re also ex­plor­ing more ways to make Claude a fo­cused space to be at your most pro­duc­tive. Users can al­ready con­nect third-party tools they use for work—like Figma, Asana, and Canva—and in­ter­act with them di­rectly within Claude. We ex­pect to in­tro­duce many more use­ful in­te­gra­tions and ex­pand this toolkit over time.

All third-party in­ter­ac­tions will be grounded in the same over­ar­ch­ing de­sign prin­ci­ple: they should be ini­ti­ated by the user (where the AI is work­ing for them) rather than an ad­ver­tiser (where the AI is work­ing, at least in part, for some­one else). Today, whether some­one asks Claude to re­search run­ning shoes, com­pare mort­gage rates, or rec­om­mend a restau­rant for a spe­cial oc­ca­sion, Claude’s only in­cen­tive is to give a help­ful an­swer. We’d like to pre­serve that.

We want our users to trust Claude to help them keep think­ing—about their work, their chal­lenges, and their ideas.

Our ex­pe­ri­ence of us­ing the in­ter­net has made it easy to as­sume that ad­ver­tis­ing on the prod­ucts we use is in­evitable. But open a note­book, pick up a well-crafted tool, or stand in front of a clean chalk­board, and there are no ads in sight.

We think Claude should work the same way.

...

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3 427 shares, 19 trendiness

AI is Killing B2B SaaS

SaaS is the most prof­itable busi­ness model on Earth. It’s easy to un­der­stand why: build once, sell the same thing again ad in­fini­tum, and don’t suf­fer any mar­ginal costs on more sales.

I have been writ­ing soft­ware for more than half my life. In the last year it­self, I’ve talked to hun­dreds of founders and op­er­a­tors in SF, from pre­seed to Series E com­pa­nies.

AI is bring­ing an ex­is­ten­tial threat to a lot of B2B SaaS ex­ec­u­tives: How to keep ask­ing cus­tomers for re­newal, when every cus­tomer feels they can get some­thing bet­ter built with vibe-coded AI prod­ucts?

And the mar­ket is pric­ing it in. Morgan Stanley’s SaaS bas­ket has lagged the Nasdaq by 40 points since December. HubSpot and Klaviyo are down ~30%. Analysts are writ­ing notes ti­tled No Reasons to Own” soft­ware stocks.

The new prob­lem for B2B SaaS is that with AI, cus­tomers can get some­thing work­ing with vibe cod­ing. There are tens of vibe cod­ing internal tool” ser­vices that promise to con­nect to every in­te­gra­tion in the world to pump out CRUD and work­flow apps.

Whatever they build sim­ply works. It takes some wran­gling to get there (one Series C VP listed eleven dif­fer­ent vibe cod­ing tools they’ve tried and the pros and cons be­tween each on a phone call once), but pro­duc­tiv­ity gains are im­me­di­ate.

And vibe cod­ing is fun. You feel like a mad wiz­ard us­ing the right in­can­ta­tion to get this mag­i­cal new sil­i­con in­tel­li­gence to do ex­actly what you want.

What they don’t know, though, is that a poorly ar­chi­tected sys­tem will fail, even­tu­ally. As every se­nior pro­gram­mer (eventually) un­der­stands, our job is com­plex be­cause we have to un­der­stand the re­la­tion­ships in the real world, the processes in­volved, and the work­flows needed, and rep­re­sent­ing it in a ro­bust way to cre­ate a sta­ble sys­tem. AI can’t do that.

Non-programmers don’t know any of this nu­ance. One Series E CEO told me that they’re re-eval­u­at­ing the quar­terly re­newal of their en­gi­neer­ing pro­duc­tiv­ity soft­ware be­cause they along with an en­gi­neer reim­ple­mented some­thing us­ing Github and Notion APIs. They were pay­ing $30,000 to a pop­u­lar tool and they were not go­ing to re­new any­more.

If cus­tomers feel like they aren’t be­ing served ex­actly like they want to, they are more likely to churn. The rea­son be­hind all this is that cus­tomers are de­mand­ing more from their B2B ven­dors, be­cause they know what’s pos­si­ble.

Previously, you would change your com­pany to fit what your ERP and pay them hun­dreds of thou­sands of dol­lars. Now, every­one can see that agen­tic cod­ing makes an un­prece­dented level of flex­i­bil­ity pos­si­ble. And cus­tomers are de­mand­ing that flex­i­bil­ity, and if they don’t get it, they’ll leave.

This week it­self I was on a phone call with a Series B AE talk­ing about how they’re po­ten­tially los­ing an $X00,000 ac­count just be­cause the cus­tomer can’t use a spe­cific fail­ure re­port­ing work­flow in the SaaS. They’re now work­ing with me to build what the cus­tomer needs and re­tain them.

If the en­tire com­pa­ny’s work­flows op­er­ates on your plat­form, i.e. you’re a line-of-busi­ness SaaS, you are in­te­grated into their ex­ist­ing team al­ready. They know your UI and rely on you on the day to day.

For ex­am­ple, to cre­ate a data vi­su­al­iza­tion I won’t seek any SaaS. I’ll just code one my­self us­ing many of the pop­u­lar vibe cod­ing tools (my team ac­tu­ally did that and it’s vastly more flex­i­ble than what we’d get off-the-shelf).

Being a System of Record” means you’re em­bed­ded so deeply that there’s no choice but to win. My pre­dic­tion is that we’ll see more SaaS com­pa­nies go from the ap­pli­ca­tion layer to of­fer­ing their ro­bust SoR as their pri­mary sell­ing point.

This is where vibe-coded apps silently fail — and where es­tab­lished SaaS plat­forms earn their keep.

When a non-tech­ni­cal team vibe-codes an in­ter­nal tool, they’re not think­ing about en­vi­ron­ment keys, XSS vul­ner­a­bil­i­ties or API keys hard­coded in client-side JavaScript. They’re not im­ple­ment­ing rate lim­it­ing, au­dit logs, or proper ses­sion man­age­ment. They’re def­i­nitely not think­ing about SOC 2 com­pli­ance, GDPR data res­i­dency re­quire­ments, or HIPAA au­dit trails.

I’ve seen it first­hand: a fi­nance team built a quick” ex­pense ap­proval tool that stored un­en­crypted re­ports in a pub­lic S3 bucket. A sales ops team cre­ated a com­mis­sion cal­cu­la­tor that any­one with the URL could ac­cess — no auth re­quired. These aren’t edge cases. They’re the norm when soft­ware is built with­out se­cu­rity as a foun­da­tional con­cern.

Enterprise SaaS plat­forms have spent years (and mil­lions) solv­ing these prob­lems: role-based ac­cess con­trol, en­cryp­tion at rest and in tran­sit, pen­e­tra­tion test­ing, com­pli­ance cer­ti­fi­ca­tions, in­ci­dent re­sponse pro­ce­dures. Your cus­tomers may not con­sciously value this — un­til some­thing breaks.

The chal­lenge is that se­cu­rity is in­vis­i­ble when it works. You need to com­mu­ni­cate this value proac­tively: re­mind cus­tomers that the simple” tool they could vibe-code them­selves would re­quire them to also han­dle auth, per­mis­sions, back­ups, up­time, and com­pli­ance.

The times of ask­ing cus­tomers to change how they work are gone. Now, SaaS ven­dors that dif­fer­en­ti­ate by be­ing ul­tra cus­tomiz­able win the hearts of cus­tomers.

How? It’s the most pow­er­ful se­cret to in­crease us­age. We’ve all heard the clas­sic SaaS prob­lem where the soft­ware is sold at the be­gin­ning of the year, but no one ac­tu­ally ends up us­ing it be­cause of how in­flex­i­ble it is and the amount of train­ing needed.

And if a SaaS is un­der­uti­lized, it gets no­ticed. And that leads to churn.

This is the case with one of my cus­tomers, they have a com­plex SaaS for main­te­nance op­er­a­tions. But turns out, this was not be­ing used at the tech­ni­cian level be­cause they found the UI too com­plex.

How I’m solv­ing this is es­sen­tially a white­la­belled vibe-cod­ing plat­form with in-built dis­tri­b­u­tion and se­cure de­ploy­ments. When they heard of my so­lu­tion they were im­me­di­ately on­board. Their cus­tomer suc­cess teams quickly coded a very spe­cific mo­bile we­bapp for the tech­ni­cians to use and de­ployed it in a few days.

Now, the IC tech­ni­cian is ex­posed to just those parts of the SaaS that they care about i.e. cre­at­ing main­te­nance work or­ders. The ex­ec­u­tives get what they want too, vibe cod­ing cus­tom re­ports ex­actly the way they want vs go­ing through com­pli­cated BI con­fig. They are able to build ex­actly what they want and feel like dig­i­tal gods while do­ing it.

Usage for that ac­count was un­der 35%, and is now over 70%. They are now work­ing closely with me to vibe code new micro-apps” that work ac­cord­ing to all of their cus­tomer work­flows. And the best part? This is all on top of their ex­ist­ing SaaS which works as a sys­tem of record and han­dles se­cu­rity, au­then­ti­ca­tion, and sup­ports lock-in by be­ing a data and a UI moat.

This is ex­actly what I’m build­ing: a way for SaaS com­pa­nies to let their end-users vibe code on top of their plat­form (More on that be­low). My cus­tomers tell me it’s the best thing they’ve done for re­ten­tion, en­gage­ment, and ex­pan­sion in 2026 — be­cause when your users are build­ing on your plat­form, they’re not eval­u­at­ing your com­peti­tors.

Here’s what I’ve re­al­ized af­ter hun­dreds of con­ver­sa­tions with founders and op­er­a­tors: AI is­n’t killing B2B SaaS. It’s killing B2B SaaS that re­fuses to evolve.

The SaaS model was built on a sim­ple premise: we build it once, you pay for­ever. That worked when build­ing soft­ware was hard. But now your cus­tomers have tasted what’s pos­si­ble. They’ve seen their fi­nance team whip up a cus­tom dash­board in an af­ter­noon. They’ve watched a non-tech­ni­cal PM build an in­ter­nal tool that ac­tu­ally fits their work­flow.

You can’t un­see that. You can’t go back to pay­ing $X0,000/year for soft­ware that al­most does what you need.

The sur­vivors won’t be the SaaS com­pa­nies with the best fea­tures. They’ll be the ones who be­come plat­forms — who let cus­tomers build on top of them in­stead of in­stead of them. When I showed a well-known VC what I was build­ing to help SaaS com­pa­nies do ex­actly this, he said: This is the fu­ture of mar­ket­places and soft­ware com­pa­nies.”

Maybe. Or maybe this is just an­other cy­cle and tra­di­tional SaaS will adapt like it al­ways has. But I know this: the com­pa­nies I’m talk­ing to aren’t wait­ing around to find out. They’re al­ready re­build­ing their re­la­tion­ship with cus­tomers from use our prod­uct” to build on our plat­form.”

The ques­tion is­n’t whether AI will eat your SaaS.

It’s whether you’ll be the one hold­ing the fork.

I’m solv­ing ex­actly this prob­lem with a white­la­belled AI plat­form for B2B SaaS com­pa­nies, so your users can vibe code cus­tomized work­flows on top of their ex­ist­ing sys­tem of record.

My cus­tomers tell me this is the best way to sup­port re­ten­tion, en­gage­ment, and ex­pan­sion in 2026. If this sounds in­ter­est­ing to you or some­one you know, I can reach out with a cus­tom demo or you can learn more about Giga Catalyst.

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4 425 shares, 26 trendiness

OpenClaw is What Apple Intelligence Should Have Been

Something strange is hap­pen­ing with Mac Minis. They’re sell­ing out every­where, and it’s not be­cause peo­ple sud­denly need more cof­fee table com­put­ers.

If you browse Reddit or HN, you’ll see the same pat­tern: peo­ple are buy­ing Mac Minis specif­i­cally to run AI agents with com­puter use. They’re set­ting up head­less ma­chines whose sole job is to au­to­mate their work­flows. OpenClaw—the open-source frame­work that lets you run Claude, GPT-5, or what­ever model you want to ac­tu­ally con­trol your com­puter—has be­come the killer app for Mac hard­ware. Not Final Cut. Not Logic. An AI agent that clicks but­tons.

This is ex­actly what Apple Intelligence should have been.

Apple had every­thing: the hard­ware, the ecosys­tem, the rep­u­ta­tion for it just works.” They could have shipped an agen­tic AI that ac­tu­ally au­to­mated your com­puter in­stead of sum­ma­riz­ing your no­ti­fi­ca­tions. Imagine if Siri could gen­uinely file your taxes, re­spond to emails, or man­age your cal­en­dar by ac­tu­ally us­ing your apps, not through some brit­tle API layer that breaks every up­date.

They could have charged $500 more per de­vice and peo­ple would have paid it. The mar­gins would have been ob­scene. And they would have won the AI race not by build­ing the best model, but by be­ing the only com­pany that could ship an AI you’d ac­tu­ally trust with root ac­cess to your com­puter. That trust—built over decades—was their moat.

So why did­n’t they?

Maybe they just did­n’t see it. That sounds mun­dane, but it’s prob­a­bly the most com­mon rea­son com­pa­nies miss op­por­tu­ni­ties. When you’re Apple, you’re think­ing about chip de­sign, man­u­fac­tur­ing scale, and re­tail strat­egy. An open-source pro­ject let­ting AI agents con­trol com­put­ers might not ping your radar un­til it’s al­ready hap­pen­ing.

Or maybe they saw it and de­cided the risk was­n’t worth it. If you’re Apple, you don’t want your AI agent au­to­mat­i­cally buy­ing things, post­ing on so­cial me­dia, or mak­ing ir­re­versible de­ci­sions. The li­a­bil­ity ex­po­sure would be enor­mous. Better to ship some­thing safe and lim­ited than some­thing pow­er­ful and un­pre­dictable.

But there’s an­other dy­namic at play. Look at who’s about to get an­gry about OpenClaw-style au­toma­tion: LinkedIn, Facebook, any­one with a walled gar­den and a care­ful API strat­egy. These ser­vices de­pend on fric­tion. They want you to use their app, see their ads, stay in their ecosys­tem. An AI that can au­to­mate away that fric­tion is an ex­is­ten­tial threat.

If Apple had built this, they’d be fight­ing Instagram over ToS vi­o­la­tions by Tuesday. They’d be tes­ti­fy­ing in front of Congress about AI agents com­mit­ting fraud. Every tech plat­form would be up­dat­ing their terms to ex­plic­itly ban Apple Intelligence.

By let­ting some third party do it, Apple gets plau­si­ble de­ni­a­bil­ity. They’re just sell­ing hard­ware. Not their fault what peo­ple run on it. It’s the same strat­egy that made them bil­lions in the App Store while main­tain­ing they’re not re­spon­si­ble for what de­vel­op­ers do.”

But I think this is short-term think­ing.

Here’s what peo­ple miss about moats: they com­pound. The rea­son Microsoft dom­i­nated PCs was­n’t just that they had the best OS. It’s that every­one built for Windows, which made Windows more valu­able, which made more peo­ple build for Windows. Network ef­fects.

If Apple owned the agent layer, they could have cre­ated the most de­fen­si­ble moat in tech. Because an AI agent gets bet­ter the more it knows about you. And Apple al­ready has all your data, all your apps, all your de­vices. They could have built an agent that works across your iPhone, Mac, iPad, and Watch seam­lessly—some­thing no one else can do.

More im­por­tantly, they could have owned the API. Want your ser­vice to work with Apple Agent? You play by Apple’s rules. Suddenly Apple is­n’t fight­ing with plat­forms—they’re the plat­form that plat­forms need to in­te­grate with. It’s the App Store play­book all over again, but for the AI era.

The Mac Mini rush is a pre­view of this fu­ture. People want agents. They want au­toma­tion. They want to pay for it. They’re lit­er­ally buy­ing ex­tra com­put­ers just to run some­one else’s AI on Apple’s hard­ware.

Apple is get­ting the hard­ware rev­enue but miss­ing the plat­form rev­enue. That might look smart this quar­ter. But plat­form rev­enue is what built Apple into a $3 tril­lion com­pany. And plat­forms are what cre­ate tril­lion-dol­lar moats.

I sus­pect ten years from now, peo­ple will look back at 2024-2025 as the mo­ment Apple had a clear shot at own­ing the agent layer and chose not to take it. Not be­cause they could­n’t build it—they ob­vi­ously could—but be­cause they were op­ti­miz­ing for this year’s le­gal risk in­stead of next decade’s plat­form power.

The peo­ple buy­ing Mac Minis to run AI agents aren’t just early adopters. They’re show­ing Apple ex­actly what prod­uct they should have built. Whether Apple is pay­ing at­ten­tion is an­other ques­tion en­tirely.

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5 339 shares, 17 trendiness

Claude Code: connect to a local model when your quota runs out

If you’re on one of the cheaper Anthropic plans like me, it’s a pretty com­mon sce­nario when you’re deep into Claude cod­ing an idea, to hit a daily or weekly quota limit. If you want to keep go­ing, you can con­nect to a lo­cal open source model in­stead of Anthropic. To mon­i­tor your cur­rent quota, type: /usage

The best open source model is chang­ing pretty fre­quently, but at the time of writ­ing this post, I rec­om­mend GLM-4.7-Flash from Z. AI or Qwen3-Coder-Next. If you want or need to save some disk space and GPU mem­ory, try a smaller quan­tized ver­sion which will load and run quicker with a qual­ity cost. I’ll save an­other de­tailed post for how to find the best open source model for your task and ma­chine con­straints.

If you haven’t used LM Studio be­fore, it’s an ac­ces­si­ble way to find and run open source LLMs and vi­sion mod­els lo­cally on your ma­chine. In ver­sion 0.4.1, they in­tro­duce sup­port to con­nect to Claude Code (CC). See here: https://​lm­stu­dio.ai/​blog/​claude­code or fol­low the in­struc­tions be­low:

Find the model search but­ton to in­stall a model (see im­age above). LM Studio rec­om­mends run­ning the model with a con­text of > 25K.

Open a new ter­mi­nal ses­sion to:

a. start the server: lms server start –port 1234

b. con­fig­ure en­vi­ron­ment vari­ables to point CC at LM Studio:

ex­port ANTHROPIC_BASE_URL=http://​lo­cal­host:1234

ex­port ANTHROPIC_AUTH_TOKEN=lmstudio

c. start CC point­ing at your server: claude –model ope­nai/​gpt-oss-20b

Reduce your ex­pec­ta­tions about speed and per­for­mance!

To con­firm which model you are us­ing or when you want to switch back, type /model

LM Studio is built on top of the open source pro­ject llama.cpp.

If you pre­fer not to use LM Studio, you can in­stall and run the pro­ject di­rectly and con­nect Claude Code to it but hon­estly, un­less you are fine tun­ing a model, or have re­ally spe­cific needs, prob­a­bly LM Studio is go­ing to be a quicker setup.

For the mo­ment, this is a backup so­lu­tion. Unless you have a mon­ster of a ma­chine, you’re go­ing to no­tice the time it takes to do things and a drop in code qual­ity but it works(!) and it’s easy enough to switch be­tween your lo­cal OSS model and Claude when you’re quota limit is back, so it’s a good way to keep cod­ing when you’re stuck or you just want to save some quota. If you try it let me know how you go and which model works for you.

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6 293 shares, 7 trendiness

The Great Unwind

Have you won­dered why the stock mar­ket has been so choppy since October and why crypto and gold keep flash crash­ing? The west­ern me­dia would have you be­lieve this is due to AI bub­ble, war in Greenland, and Trump’s tweets. We have a bet­ter story to tell.

There’s been a fair bit of quiet chaos in fi­nan­cial mar­kets re­cently. Cryptocurrencies have lost 40% of their value. We saw sil­ver drop 40% which has­n’t hap­pened since 1980. Stocks like Microsoft are get­ting picked off one-by-one with 15% drops when pos­i­tive earn­ings re­ports come out. Meanwhile the broader mar­ket chops side­ways, so peo­ple think things are fine. Trump and Europe were on the brink of war for con­trol of a des­o­late arc­tic ter­ri­tory. Truth Social has over­taken FOMC as the most im­por­tant source of fi­nan­cial news. These things may all ap­pear to the un­trained eye as a se­ries of idio­syn­cratic, dis­con­nected shocks. The pre­vail­ing me­dia nar­ra­tive is that the mar­ket is re­act­ing neg­a­tively to AI CapEx spend­ing and a hawk­ish new Fed chair. But our sys­tem­atic analy­sis of cross-as­set flows, de­riv­a­tives po­si­tion­ing, cen­tral bank pol­icy min­utes, and in­sti­tu­tional bal­ance sheets sug­gests a sin­gu­lar, uni­fied causal­ity that binds these dis­parate anom­alies, which is the covert un­wind­ing of the Japanese Yen carry trade.

For nearly thirty years, the Bank of Japan’s (BOJ) Zero Interest Rate Policy (ZIRP) and sub­se­quent Negative Interest Rate Policy (NIRP) ef­fec­tively trans­formed the Yen into the world’s fund­ing cur­rency. We would call it the great­est free money printer ever made. By an­chor­ing bor­row­ing costs at or near zero, the BOJ en­abled Wall Street to bor­row Yen cheaply and in­vest it with lever­age into higher yield­ing in­stru­ments glob­ally, such as U. S. trea­suries, eq­ui­ties, and cryp­tog­ra­phy. For ex­am­ple, you bor­row Yen from Japan at 0% in­ter­est, you ex­change it for USD, and then you buy trea­sury bonds that pay 4%. It’s that sim­ple. This funded gov­ern­ment ben­e­fits and pro­vided con­tin­u­ous re­li­able liq­uid­ity for fi­nan­cial mar­kets that made stocks keep go­ing up while sup­press­ing volatil­ity.

Trillions of dol­lars of free loans from the Bank of Japan were used by a gen­er­a­tion of in­vestors to buy a dou­ble digit per­cent­age of the U. S. econ­omy. Now those loans are be­ing re­called. Wall Street traders who lev­ered up on the free Japanese money now have to sell tril­lions of as­sets and con­vert the pro­ceeds back to Yen in or­der to not be liq­ui­dated. These aren’t happy times for them. They get liq­ui­dated when Japan raises in­ter­est rates; they get liq­ui­dated when the Federal Reserve low­ers in­ter­est rates; they get liq­ui­dated when the Japanese Yen in­creases in value; they get liq­ui­dated when tech stocks aren’t go­ing up enough, and all four of these things have been hap­pen­ing at once.

Wall Street may be greedy, but they’re very in­tel­li­gent too. They made many smart choices about where to put the free” money. Now let’s say you’re some­one who’s also smart, but was wise enough to not use Sauron’s ring. Chances are you in­vested in the same things as Wall Street. So by now you’ve prob­a­bly seen your whole port­fo­lio move against you; you’re won­der­ing why your hedges don’t work; and you feel like you’re be­ing pun­ished for mak­ing all the right choices. It’s be­cause other smart peo­ple, who got greedy, are be­ing forced to close their po­si­tions, and you’re the whip­ping boy for their avarice.

The Japanese Yen is sort of like GameStop ($GME). It’s the most shorted cur­rency on Earth. When you bor­row yen to buy American as­sets, you’re ef­fec­tively short­ing the yen. Currency can be re­hy­poth­e­cated so that yen-de­nom­i­nated debt ends up ex­ceed­ing the ac­tual yen sup­ply, the same way GMEs short in­ter­est ex­ceeded 100% of its float. When shorts start cov­er­ing it com­pounds tragedy, be­cause they all have to buy yen, which makes its value in­crease, forc­ing more shorts to cover, and Japan is a small is­land.

This December 2025 rate hike to 0.75%, fol­lowed by the ex­plic­itly hawk­ish sig­nalling from Prime Minister Sanae Takaichi’s ad­min­is­tra­tion, has fun­da­men­tally al­tered the risk-re­ward cal­cu­lus of these lever­aged po­si­tions. The mar­ket dis­rup­tions ob­served in January 2026 bear the dis­tinct math­e­mat­i­cal sig­na­ture of a forced liq­ui­da­tion event rather than a fun­da­men­tal repric­ing of growth prospects. When cor­re­la­tions be­tween his­tor­i­cally un­cor­re­lated as­sets (e.g. Gold, Bitcoin, Microsoft, and Silver) ap­proach 1.0 dur­ing a sell-off, it serves as a dis­tinct in­di­ca­tor that traders are not sell­ing what they want to sell, but rather what they must sell in or­der to meet mar­gin calls in a fund­ing cur­rency that is rapidly ap­pre­ci­at­ing against their li­a­bil­i­ties.

We shall in­ves­ti­gate the me­chan­ics of this un­wind in ex­haus­tive de­tail. We an­a­lyze the Greenland Distraction” not as a root cause but as a volatil­ity trig­ger that shat­tered the com­pla­cent calm of the Davos Consensus.” We ex­am­ine the anom­alous liq­ui­da­tion in pre­cious met­als fol­low­ing the nom­i­na­tion of Kevin Warsh to the Federal Reserve Chairmanship, and we dis­sect the flow of funds from ma­jor Japanese in­sti­tu­tional whales like Norinchukin Bank, whose re­treat from for­eign bond mar­kets has left a liq­uid­ity vac­uum in the U. S. Treasury com­plex. The ev­i­dence points to a sys­temic repric­ing of the global cost of cap­i­tal, orig­i­nat­ing in Tokyo and trans­mit­ting vi­o­lently through the plumb­ing of Wall Street, leav­ing no as­set class un­touched.

To fully com­pre­hend the mar­ket chaos of January 2026, one must look be­yond the im­me­di­ate head­lines of the new year and scru­ti­nize the sub­tle yet seis­mic shifts that oc­curred in Tokyo dur­ing the clos­ing months of 2025. The con­ven­tional mar­ket nar­ra­tive has long re­garded the Bank of Japan as a pas­sive, al­most par­a­lyzed ac­tor, per­pet­u­ally trapped in a de­fla­tion­ary mire and un­able to nor­mal­ize pol­icy. This view has al­ways been demon­strat­ably false. The truth is that Wall Street lead­ers have been plan­ning for the next quar­ter, while the Japanese have been prepar­ing for the next cen­tury. The data con­firms a de­lib­er­ate, ag­gres­sive shift to­ward nor­mal­iza­tion that caught global carry traders of­f­guard.

In a move that many Western an­a­lysts crit­i­cally un­der­es­ti­mated, the Policy Board of the Bank of Japan voted unan­i­mously to raise the un­col­lat­er­al­ized overnight call rate to 0.75% dur­ing its pol­icy ses­sion on December 18-19, 2025. While a 25 ba­sis point hike might ap­pear neg­li­gi­ble in the con­text of Federal Reserve or ECB tight­en­ing cy­cles, in the con­text of the Japanese fi­nan­cial sys­tem, which has op­er­ated near the zero-bound for decades, it rep­re­sents a mas­sive tight­en­ing of fi­nan­cial con­di­tions.

This move was not merely a tech­ni­cal ad­just­ment; it was a fun­da­men­tal regime change. Coming from a base­line of -0.1% in early 2024 and 0.50% in late 2025, the move to 0.75% sig­naled that the era of free money” had de­fin­i­tively ended. The ra­tio­nale pro­vided by the BOJ was grounded in shift­ing in­fla­tion­ary dy­nam­ics. Core CPI (excluding fresh food), the cen­tral bank’s pre­ferred met­ric, was track­ing near 3% in late 2025, per­sis­tently ex­ceed­ing the 2% price sta­bil­ity tar­get. Although in­fla­tion eased slightly to 2.4% in December, the BOJ min­utes re­veal a board con­vinced that wage gains may be durable,” thus jus­ti­fy­ing higher rates to pre­vent a wage-price spi­ral.

Crucially, the min­utes from the December meet­ing, which were re­leased in late January 2026, con­tain ex­plicit lan­guage sug­gest­ing that the tight­en­ing cy­cle is far from com­plete. The board noted that real in­ter­est rates are ex­pected to re­main neg­a­tive,” im­ply­ing that a pol­icy rate of 0.75% is still con­sid­ered ac­com­moda­tive rel­a­tive to in­fla­tion. To a bond trader, this is hawk­ish code. It sug­gests that the neutral rate” is sig­nif­i­cantly higher, po­ten­tially be­tween 1.5% and 2.0%. If the mar­ket prices in a ter­mi­nal rate of 2.0%, the cost of fund­ing for carry trades ef­fec­tively triples from pre­vi­ous lev­els, turn­ing prof­itable ar­bi­trage po­si­tions into deep losses.

The po­lit­i­cal di­men­sion in Japan has ex­ac­er­bated the mon­e­tary tight­ness, cre­at­ing a double tight­en­ing” ef­fect that al­go­rithms have strug­gled to price. Prime Minister Sanae Takaichi, prepar­ing for a snap elec­tion on February 8, 2026, has adopted a com­plex eco­nomic stance that blends fis­cal ex­pan­sion with mon­e­tary dis­ci­pline, a volatile mix for cur­rency mar­kets.

Takaichi ad­vo­cates for strategic fis­cal spend­ing” and tax cuts to stim­u­late the do­mes­tic econ­omy. In stan­dard macro­eco­nomic the­ory, an ex­pan­sion­ary fis­cal pol­icy (increased gov­ern­ment spend­ing) com­bined with a tight­en­ing mon­e­tary pol­icy (higher rates to com­bat the re­sult­ing in­fla­tion) is the per­fect recipe for cur­rency ap­pre­ci­a­tion. While Takaichi has pub­licly soft­ened her rhetoric to avoid ac­cu­sa­tions of cur­rency ma­nip­u­la­tion, stat­ing she did not have a pref­er­ence for the yen’s di­rec­tion”, her poli­cies speak louder than her sound­bites.

The mar­ket fears that Takaichi’s pro­posed fis­cal largesse will force the BOJ to hike rates faster than cur­rently pro­jected to coun­ter­act the in­fla­tion­ary ef­fects of gov­ern­ment spend­ing. This cre­ates a two-front war on the Yen carry trade:

Exchange Rate Risk: If the Yen ap­pre­ci­ates due to the fis­cal-mon­e­tary pol­icy mix, the prin­ci­pal value of the USD-denominated as­sets held by Japanese in­vestors falls in Yen terms, trig­ger­ing mar­gin calls.

The ten­sion be­tween the Prime Minister’s of­fice and the Ministry of Finance (MOF) adds an­other layer of un­cer­tainty. Finance Minister Satsuki Katayama has been far less tol­er­ant of cur­rency volatil­ity, re­peat­edly in­ter­ven­ing or threat­en­ing in­ter­ven­tion when USD/JPY ap­proaches the 155-160 dan­ger zone. This po­lit­i­cal fric­tion cre­ates a floor” for the Yen, mak­ing short­ing the cur­rency a per­ilous en­deavor for global macro funds.

Perhaps the most crit­i­cal, yet un­der­re­ported, de­vel­op­ment is the be­hav­ior of Japan’s gar­gan­tuan in­sti­tu­tional in­vestors, specif­i­cally Norinchukin Bank (often re­ferred to as the CLO Whale”) and Nippon Life Insurance. These en­ti­ties have his­tor­i­cally been the largest buy­ers of U. S. debt, re­cy­cling Japan’s trade sur­plus into U.S. Treasuries and cor­po­rate bonds.

The data in­di­cates a mas­sive re­ver­sal in these flows. Following sig­nif­i­cant losses in 2024 and 2025 due to un­hedged ex­po­sure to U. S. and European sov­er­eign bonds, Norinchukin has been ac­tively liq­ui­dat­ing for­eign as­sets. By the end of December 2025, the bank had un­loaded nearly ¥12.8 tril­lion (approximately $88 bil­lion) in for­eign gov­ern­ment bonds.The bank’s CEO, Taro Kitabayashi, con­firmed the com­ple­tion of this sell-off, stat­ing the bank would take its time” be­fore com­mit­ting cap­i­tal to fresh in­vest­ments.

The sig­nif­i­cance of this can­not be over­stated. A ma­jor, price-in­sen­si­tive buyer of U. S. debt has left the build­ing. When the U.S. Treasury is­sues debt to fund its deficit, Norinchukin is no longer the guar­an­teed bid. This re­moval of liq­uid­ity sup­port weak­ens the floor for U.S. Treasuries, con­tribut­ing to the yield spikes seen in January. Similarly, Nippon Life has sig­naled a ro­ta­tion back into do­mes­tic Japanese Government Bonds (JGBs), ac­knowl­edg­ing that unrealized losses” on for­eign bonds had swelled to ¥4.7 tril­lion.The logic is sim­ple: why take cur­rency risk for a 4.5% U.S. yield when do­mes­tic JGB yields are ris­ing and of­fer a risk-free re­turn in your home cur­rency?

By December 31, 2025, the stage was set. The free money” era was over. The largest hold­ers of cap­i­tal in Tokyo were repa­tri­at­ing funds or mov­ing into cash. Global mar­kets, how­ever, were still po­si­tioned for business as usual”, long Nvidia, long Bitcoin, short Yen. The dis­so­nance be­tween Japanese re­al­ity and Western po­si­tion­ing cre­ated the per­fect con­di­tions for a crash.

To val­i­date the the­sis that the Yen un­wind is the pri­mary dri­ver of volatil­ity, we must ex­am­ine the se­quence of events. The crash did not hap­pen in a vac­uum; it fol­lowed a pre­cise time­line where geopo­lit­i­cal shocks acted as trig­gers for a struc­tural fragility that had been build­ing since the BOJs December pivot.

The pres­sure be­gan to build in Q4 2025. As the BOJ sig­naled its in­ten­tion to hike rates, Japanese traders, of­ten the canary in the coal mine” for global liq­uid­ity, be­gan to re­duce risk. This cy­cle started with Bitcoin. Bitcoin is a pure liq­uid­ity as­set; it has no yield and is of­ten funded via mar­gin. As the cost of Yen mar­gin rose, Japanese sell­ing pres­sure on Bitcoin in­ten­si­fied from October through December. This was the first tremor.

Was the Greenland War” the­ater? While the mil­i­tary di­men­sions may have been per­for­ma­tive, the eco­nomic con­se­quences were tan­gi­ble and acted as the cat­a­lyst that ex­posed the fragility of the Yen carry trade.

On January 17, 2026, President Trump es­ca­lated his de­mand to pur­chase Greenland by threat­en­ing a 10% tar­iff on eight European na­tions (including the UK, Germany, and France) and es­ca­lat­ing to 25% by June if the ter­ri­tory was not ceded. This in­tro­duced a tail risk” that mar­kets had not priced: the frac­ture of the Atlantic eco­nomic al­liance.

Following the Martin Luther King Jr. hol­i­day, U. S. mar­kets opened on January 20 to a blood­bath. The S&P 500 fell 2.1%, the Nasdaq com­pos­ite dropped 2.4%, and yields on U.S. Treasuries spiked.The nar­ra­tive was Greenland,” but the mar­ket me­chan­ics told a dif­fer­ent story. The threat of tar­iffs on close al­lies dis­rupts the Atlantic Trade” nar­ra­tive. For Japanese in­vestors hold­ing U.S. as­sets, this in­tro­duced a new risk pre­mium. It was­n’t just about rates any­more; it was about the sta­bil­ity of the U.S.-led global or­der. This geopo­lit­i­cal volatil­ity forced risk par­ity funds and al­go­rith­mic traders to re­duce gross ex­po­sure. When a global port­fo­lio delever­ages, it buys back its fund­ing cur­rency. In this case, it bought Yen.

While Trump walked back the mil­i­tary threat on January 21 at Davos, the eco­nomic threat of tar­iffs re­mained a live wire. The volatil­ity per­sisted, sug­gest­ing that the Greenland” nar­ra­tive was merely the match that lit the fuse of a much larger pow­der keg.

The fi­nal and most vi­o­lent phase of the crash oc­curred at the end of the month, trig­gered by the nom­i­na­tion of Kevin Warsh as Federal Reserve Chair. Warsh is widely per­ceived as a hawk, fa­vor­ing sound money and skep­ti­cism to­ward quan­ti­ta­tive eas­ing. His nom­i­na­tion sig­naled the po­ten­tial end of the Fed Put”, the as­sump­tion that the cen­tral bank would al­ways in­ter­vene to sup­port as­set prices.

This an­nounce­ment trig­gered a mas­sive repric­ing of the Debasement Trade.” Assets that thrive on cur­rency de­base­ment, Gold, Silver, and Bitcoin, col­lapsed. Gold fell ~11%, and Silver crashed ~36% in a sin­gle ses­sion. This syn­chro­niza­tion of losses across un­cor­re­lated as­sets (Tech and Gold falling to­gether) is the de­fin­i­tive sig­na­ture of a liq­uid­ity cri­sis dri­ven by mar­gin calls.

The un­wind­ing of a carry trade is not a mono­lithic event; it is a cas­cade that rip­ples out­ward from the most liq­uid and spec­u­la­tive as­sets to the core hold­ings of in­sti­tu­tional port­fo­lios. The se­quence of as­set price col­lapses ob­served from October 2025 to January 2026 fol­lows this clas­sic liq­ui­da­tion hi­er­ar­chy per­fectly.

As noted, the un­wind be­gan in the crypto mar­kets. Japan is home to a mas­sive re­tail crypto trad­ing base, and the Yen is a ma­jor pair for Bitcoin trad­ing. Snippets in­di­cate that Japanese traders be­gan sell­ing off Bitcoin in October 2025.

This tim­ing is cru­cial. It cor­re­lates with the pe­riod when the BOJ be­gan sig­nal­ing the December rate hike. Retail traders, fac­ing higher mort­gage rates and loan costs in Japan, likely liq­ui­dated their most volatile, liq­uid as­set first to raise cash. The sell­ing was ex­ac­er­bated by the loom­ing tax re­form in Japan. While the pro­posal to move to a flat 20% tax rate is bull­ish in the long term, the im­me­di­ate pres­sure of ris­ing fund­ing costs forced traders to sell be­fore the tax cut could be re­al­ized. By January 31, mas­sive out­flows from Bitcoin ETFs ($528 mil­lion) co­in­cided with the broader mar­ket crash, con­firm­ing that crypto was be­ing used as a source of liq­uid­ity to cover losses else­where.

Consider the painful ~3% dump” in the Nasdaq and Microsoft’s stag­ger­ing 15% drop. On January 29, 2026, Microsoft re­ported earn­ings. Despite beat­ing rev­enue es­ti­mates ($81.27 bil­lion vs. $80.28 bil­lion), the stock plum­meted ~11-15% in­tra­day.

The street blamed con­cerns over AI CapEx”, the idea that Microsoft was spend­ing bil­lions on data cen­ters with slow re­turn on in­vest­ment. However, a 15% drop in a $3 tril­lion com­pany on a good” earn­ings beat is rarely fun­da­men­tal; it is me­chan­i­cal. Microsoft is a quin­tes­sen­tial momentum” stock, heav­ily held by for­eign in­sti­tu­tional in­vestors, in­clud­ing Japanese pen­sion funds. When the Yen strength­ens, the value of these USD-denominated as­sets falls in JPY terms.

If a Japanese in­surer holds Microsoft un­hedged, a falling USD/JPY ex­change rate hurts their bal­ance sheet. If they hold it hedged

(rolling short USD po­si­tions), the ris­ing U. S. rates (driven by the Warsh nom­i­na­tion) make the hedge pro­hib­i­tively ex­pen­sive. The January 29 drop was likely ex­ac­er­bated by a stop-loss” cas­cade from Tokyo desks. As the price broke key tech­ni­cal lev­els, al­go­rithms pro­grammed to pro­tect Yen-denominated re­turns in­dis­crim­i­nately sold the most liq­uid blocks. Microsoft, be­ing one of the most liq­uid stocks in the world, be­came the ATM for the rest of the port­fo­lio.

The most com­pelling ev­i­dence of a forced liq­ui­da­tion event is the be­hav­ior of Gold and Silver on January 31, 2026. Gold fell ~11-12% and Silver crashed ~31-36% in a sin­gle ses­sion. Historically, Gold acts as a safe haven dur­ing eq­uity mar­ket tur­moil. If the Nasdaq is crash­ing due to Greenland” fears, Gold should rally. Instead, it crashed.

This anom­aly can be ex­plained by two fac­tors:

The Warsh Effect: As dis­cussed, Warsh’s nom­i­na­tion strength­ened the USD and un­der­mined the the­sis for hold­ing anti-fiat as­sets.

Margin Call Dynamics: Snippets re­veal that CME Group and the Shanghai Gold Exchange raised mar­gin re­quire­ments on gold and sil­ver fu­tures days be­fore the crash. When Japanese traders faced losses on their Microsoft longs and their Yen shorts, they needed cash im­me­di­ately. They could­n’t sell illiq­uid bonds quickly enough, so they sold their winners.” Gold had ral­lied to ~$5,400/oz prior to the crash. Traders liq­ui­dated their prof­itable Gold po­si­tions to pay for the mar­gin calls on their los­ing Tech and Yen po­si­tions.

Cross-Asset Correlations (Week Ending Jan 31, 2026)

Figure 2: Cross-asset cor­re­la­tions, Jan 15–Jan 31,

2026. Note the spike in cor­re­la­tion be­tween Gold, Bitcoin, and

Nasdaq 100 on Jan 31, in­di­cat­ing a sys­temic sell-everything” mar­gin

call.

Data sources:

Alex Lexington,

Finance Magnates,

Morningstar,

Investing.com,

Seeking Alpha

This cor­re­la­tion break­down is vi­su­al­ized in Figure 2, where the cor­re­la­tion be­tween Gold and the Nasdaq 100 spikes to nearly 1.0 dur­ing the crash week, a sta­tis­ti­cal anom­aly that only oc­curs dur­ing se­vere liq­uid­ity events.

The Yen Whale” hy­poth­e­sis is strongly sup­ported by the data on fu­tures vol­umes and repo mar­ket stress. The central mys­tery” is not just in the price ac­tion, but in the un­seen flows of the de­riv­a­tives mar­ket.

About a week ago, some whale kicked off an as­tro­nom­i­cally large mar­ket or­der for a /6J long when it hit re­cent lows. /6J (CME Yen Futures) hit a low of ~0.00647 (approximately 154.50 USD/JPY) in late January. This level has his­tor­i­cally been a line in the sand” for the Japanese Ministry of Finance (MOF).

Figure 4: The whale event that kicked off

the Japanese Yen un­wind. Note the mas­sive spike as /6J hit re­cent

lows, ral­ly­ing in­vestors world­wide to go long on yen

fu­tures.

CME re­ported record vol­umes in FX and Interest Rate prod­ucts for January 2026. The ag­gres­sive buy­ing off the lows sug­gests a mas­sive repa­tri­a­tion flow. Who is the Whale? Two the­o­ries emerge:

The MOF Thesis: The Ministry of Finance has a his­tory of stealth in­ter­ven­tion. Buying /6J (Long Yen) is func­tion­ally equiv­a­lent to sell­ing USD re­serves. Buying fu­tures al­lows them to sup­port the cur­rency with­out im­me­di­ately de­plet­ing cash re­serves, squeez­ing spec­u­la­tors who are short.

The Carry Unwind: A mas­sive hedge fund or bank (like Norinchukin) re­al­iz­ing that the game is up” and clos­ing out short-Yen po­si­tions. The size of the or­der sug­gests an en­tity that needed to move bil­lions, not mil­lions.

The sub­se­quent price ac­tion, a sharp rally fol­lowed by hammering back down”, rep­re­sents the bat­tle­ground. U. S. macro funds are still try­ing to short the Yen (betting on U.S. eco­nomic ex­cep­tion­al­ism and Warsh’s poli­cies), while Japanese do­mes­tic ac­counts are buy­ing it. The volatil­ity is the re­sult of these tec­tonic plates grind­ing against each other.

The plumb­ing of the U. S. fi­nan­cial sys­tem showed signs of stress that co­in­cided with the Japanese re­treat. The Overnight Reverse Repo fa­cil­ity (ON RRP) saw a year-end spike to $106 bil­lion but has since drained.

Japanese banks are typ­i­cally huge par­tic­i­pants in the U. S. repo mar­ket to fund their dol­lar as­sets. As Norinchukin and oth­ers re­treat (repatriating funds to Japan), liq­uid­ity in the U.S. repo mar­ket be­comes thin­ner. The air pocket” in Microsoft and Gold prices was likely ex­ac­er­bated by a lack of mar­ket maker depth in the repo-funded de­riv­a­tives mar­ket. When mar­ket mak­ers can­not ac­cess cheap repo fund­ing, they widen spreads and re­duce liq­uid­ity pro­vi­sion, lead­ing to gaps” in price ac­tion dur­ing sell-offs.

There have been sig­nif­i­cant moves in other cur­rency fu­tures as well: /6A in­creased 87 ba­sis points, /6L rose 19 ba­sis points, and /6S rose 18 ba­sis points.

/6A (Australian Dollar): The 87 ba­sis point rise in the Aussie Dollar is no­table. AUD is of­ten a proxy for Chinese growth and global risk sen­ti­ment. A rise here, amidst a tech crash, sug­gests a ro­ta­tion out of U. S. as­sets and into com­modi­ties or Asia-Pacific cur­ren­cies, fur­ther sup­port­ing the Sell America” the­sis trig­gered by the Greenland tar­iff threats.

/6L (Brazilian Real) and /6S (Swiss Franc): The rise in the Swiss Franc (a clas­sic safe haven) aligns with the risk-off sen­ti­ment. The move in the Brazilian Real sug­gests that emerg­ing mar­kets are also see­ing volatile flows as the dol­lar sta­bi­lizes.

Why was the VIX at 16 de­spite the chaos? The VIX mea­sures im­plied volatil­ity of S&P 500 op­tions. Its rel­a­tively low level (16) com­pared to the vi­o­lence in in­di­vid­ual names (MSFT -15%, Gold -11%) in­di­cates that the crash is a de-lever­ag­ing event, not a panic event.

In a panic, in­vestors buy Puts on the in­dex to pro­tect them­selves, spik­ing the VIX. In a de-lever­ag­ing event, in­vestors sim­ply sell the un­der­ly­ing as­sets (stocks, gold, crypto) to raise cash. They are not hedg­ing; they are ex­it­ing. This ex­plains why the VIX re­mained sub­dued while prices col­lapsed, the sell­ing was or­derly, al­go­rith­mic, and re­lent­less, rather than emo­tional and pan­icked.

Skepticism about the Greenland War” is well-founded. While the diplo­matic row was real, its util­ity as a fi­nan­cial

nar­ra­tive was far greater than its geopo­lit­i­cal re­al­ity.

President Trump’s threat of mil­i­tary force was re­tracted on January 21 at Davos. This de-escalation” should the­o­ret­i­cally have calmed mar­kets. Instead, the volatil­ity wors­ened into month-end. This con­firms that the real prob­lem was­n’t Greenland; it was the re-pric­ing of the Yen.

The fi­nan­cial me­dia loves a sim­ple cause-and-ef­fect nar­ra­tive. Stocks down be­cause of War” is easy to di­gest. Stocks down be­cause the cross-cur­rency ba­sis swap spread widened due to BOJ min­utes” is not. The Greenland” nar­ra­tive pro­vided the per­fect cover for so­phis­ti­cated ac­tors to liq­ui­date po­si­tions in Gold and Tech un­der the guise of war jit­ters.” This al­lowed them to exit with­out spark­ing a broader panic about liq­uid­ity in the bank­ing sys­tem. The fo­cus on the Arctic masked the struc­tural rot in the lever­age com­plex.

The ev­i­dence sug­gests a covert, struc­tural un­wind­ing of the Yen carry trade is the pri­mary dri­ver of the January 2026 mar­ket chaos.

The in­ter­con­nect­ed­ness of these events is un­de­ni­able. The BOJs rate hike in December 2025 and the sub­se­quent hawk­ish sig­nal­ing from the Takaichi ad­min­is­tra­tion fun­da­men­tally al­tered the cost of cap­i­tal for the world’s largest carry trade. The Greenland Crisis” acted as the ini­tial volatil­ity trig­ger, forc­ing a re­duc­tion in gross ex­po­sure. The nom­i­na­tion of Kevin Warsh acted as the fi­nal cat­a­lyst, shat­ter­ing the Debasement Trade” and forc­ing a liq­ui­da­tion of pre­cious met­als and crypto to cover mar­gin calls on Yen-funded po­si­tions.

Here are some key take­aways:

The Free Money” Era is Over: BOJ poli­cies have fun­da­men­tally al­tered the global cost of cap­i­tal. The flow of liq­uid­ity from Tokyo to New York has re­versed.

Geopolitics as Catalyst: Greenland” may have been the spark, but the Yen lever­age was the pow­der keg. The tar­iff threats dis­rupted the Atlantic Trade” nar­ra­tive, forc­ing a repa­tri­a­tion of cap­i­tal.

Liquidity Event: The syn­chro­nized crash of Gold, Crypto, and Tech con­firms a sys­temic de-lever­ag­ing. The Whale” or­ders in Yen fu­tures and the break­down of cor­re­la­tions are the smok­ing guns of a mar­gin-dri­ven event.

With the Japanese elec­tion on February 8 and U. S. tar­iffs loom­ing, the hammering” of the Yen is likely tem­po­rary. The struc­tural trend is now to­ward repa­tri­a­tion. This im­plies lower U.S. as­set prices,

higher U.S. yields, and a stronger Yen over the medium term. The mystery” of the low VIX is ex­plained by the me­chan­i­cal na­ture of the un­wind, a con­trolled de­mo­li­tion of lever­age rather than a chaotic panic.

This won’t just be the big one. This could be the last one. If you’ve been prepar­ing your whole life, know­ing that some­thing’s com­ing, then this could be the thing you’ve been prepar­ing for. One fi­nal op­por­tu­nity to get the guys who did this.

Longing the Yen is com­monly re­ferred to as The Widowmaker Trade” on Wall Street, be­cause you have tril­lions of dol­lars of mo­nop­oly money work­ing against you. The carry traders have com­pro­mised every level of our gov­ern­ment. Their great­est vul­ner­a­bil­ity is the Yen ris­ing in value. They will do any­thing to de­fend their po­si­tions, even if that means bring­ing America’s econ­omy down with them. Since re­cent events have made it ob­vi­ous they’re go­ing to lose, we might as well fight them. Most of us prob­a­bly won’t make it out of this fight. But if we at least try, then there’s a chance we might pros­per when it’s over.

The IV on OTM CME

/6J fu­tures calls is 11% which is as­ton­ish­ingly low. The same is true for calls on the

FXY

ETF. Call op­tions have de­fined risk. The more Yen we con­trol, the more its value goes up, and the more crooks on Wall Street get liq­ui­dated. The worst that can hap­pen is you lose your mo­nop­oly money, but that’s been hap­pen­ing any­way. Since carry traders own 10% of all U. S. trea­suries, when they get liq­ui­dated they’ll have to sell a lot of trea­sury bonds, which means that

CME

/UB fu­tures and the TLT

ETF will fall.

This blog is brought to you by var­i­ous rad­i­cals, mal­con­tents, and peo­ple who think the sys­tem is rigged. We’re not af­fil­i­ated with any or­ga­ni­za­tion. Nothing here con­sti­tutes fi­nan­cial ad­vice. Occupy Wall Street is not your fi­nan­cial ad­vi­sor or your lawyer. We’re re­tail in­vestors like you. Do your own re­search. Past per­for­mance does not guar­an­tee fu­ture re­sults. We are the 99 per­cent. The only so­lu­tion is world rev­o­lu­tion. Wall Street’s time has fi­nally come.

...

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7 251 shares, 19 trendiness

ICE seeks industry input on ad tech location data for investigative use

Immigration and Customs Enforcement (ICE) is sur­vey­ing the com­mer­cial ad­ver­tis­ing tech­nol­ogy mar­ket for tools ca­pa­ble of sup­ply­ing lo­ca­tion data and large-scale an­a­lyt­ics to fed­eral in­ves­ti­ga­tors, ac­cord­ing to a re­cent Request for Information (RFI).

Framed as mar­ket re­search rather than a pro­cure­ment, the RFI seeks in­for­ma­tion from com­pa­nies of­fer­ing Ad Tech com­pli­ant and lo­ca­tion data ser­vices” that could sup­port crim­i­nal, civil, and ad­min­is­tra­tive in­ves­ti­ga­tions across ICEs mis­sion set.

The RFI, is­sued by ICEs Homeland Security Investigations (HSI), em­pha­sizes that the gov­ern­ment is not so­lic­it­ing pro­pos­als or com­mit­ting to a fu­ture con­tract, but it does sig­nal ac­tive in­ter­est in se­lect­ing ven­dors for live demon­stra­tions of op­er­a­tional plat­forms and data ser­vices, a step that typ­i­cally pre­cedes pi­lot de­ploy­ments or in­te­gra­tion into ex­ist­ing in­ves­tiga­tive en­vi­ron­ments.

ICE says it is at­tempt­ing to bet­ter un­der­stand how com­mer­cial big data providers and ad­ver­tis­ing tech­nol­ogy firms might di­rectly sup­port in­ves­tiga­tive ac­tiv­i­ties, while re­main­ing sen­si­tive to regulatory con­straints and pri­vacy ex­pec­ta­tions.”

The agency noted that its com­po­nents are han­dling in­creas­ing vol­umes of crim­i­nal, civil, and ad­min­is­tra­tive in­for­ma­tion from both in­ter­nal and ex­ter­nal sources and are as­sess­ing whether com­mer­cial off-the-shelf plat­forms com­pa­ra­ble to large in­ves­tiga­tive data and le­gal an­a­lyt­ics providers can help man­age and ex­ploit that data at scale.

At the cen­ter of the in­quiry is a cat­e­gory of in­for­ma­tion tra­di­tion­ally as­so­ci­ated with dig­i­tal ad­ver­tis­ing rather than law en­force­ment: lo­ca­tion data, de­vice iden­ti­fiers, IP in­tel­li­gence, and be­hav­ioral sig­nals de­rived from every­day con­sumer ac­tiv­ity.

Advertising tech­nol­ogy, com­monly re­ferred to as ad tech, is the sprawl­ing ecosys­tem of soft­ware, data bro­kers, an­a­lyt­ics plat­forms, and in­ter­me­di­aries that power tar­geted ad­ver­tis­ing on the mod­ern Internet.

Ad tech com­pa­nies col­lect and process in­for­ma­tion about where de­vices are lo­cated, how users move be­tween phys­i­cal and dig­i­tal spaces, which apps are in­stalled on their phones, and how de­vices can be linked across web­sites, ap­pli­ca­tions, and net­works.

While the in­dus­try typ­i­cally frames this ac­tiv­ity as anony­mous or pseu­do­ny­mous, the un­der­ly­ing data is of­ten per­sis­tent, gran­u­lar, and ca­pa­ble of track­ing in­di­vid­u­als over time.

Location data is a par­tic­u­larly valu­able com­po­nent of that ecosys­tem. Mobile ap­pli­ca­tions rou­tinely share lat­i­tude and lon­gi­tude co­or­di­nates with ad­ver­tis­ing part­ners through em­bed­ded soft­ware de­vel­op­ment kits.

Even when pre­cise GPS data is not avail­able, com­pa­nies in­fer lo­ca­tion through IP ad­dresses, Wi-Fi net­works, Bluetooth bea­cons, and cell tower con­nec­tions. That in­for­ma­tion is then ag­gre­gated, an­a­lyzed, and sold to ad­ver­tis­ers seek­ing to mea­sure foot traf­fic, tar­get au­di­ences, or as­sess the ef­fec­tive­ness of cam­paigns.

ICEs RFI sug­gests that the agency is ex­plor­ing whether those same mech­a­nisms can be re­pur­posed as in­ves­tiga­tive tools.

The doc­u­ment asks ven­dors to de­scribe plat­forms and data ser­vices that can sup­port in­ves­tiga­tive needs while re­main­ing Ad Tech com­pli­ant,” a phrase that re­flects in­dus­try norms rather than statu­tory law en­force­ment stan­dards.

ICE ap­pears to be look­ing into tap­ping into the com­mer­cial data ecosys­tem rather than build­ing be­spoke sur­veil­lance tools from scratch, a strat­egy that al­lows agen­cies to ac­cess rich data streams with­out di­rectly col­lect­ing the in­for­ma­tion them­selves.

ICEs in­ter­est is not lim­ited to raw data. The RFI re­peat­edly ref­er­ences operational plat­forms,” sig­nal­ing a de­sire for sys­tems that can in­gest, cor­re­late, an­a­lyze, and vi­su­al­ize in­for­ma­tion from mul­ti­ple sources.

In prac­tice, that means soft­ware en­vi­ron­ments ca­pa­ble of fus­ing lo­ca­tion data with other records, such as crim­i­nal his­to­ries, fi­nan­cial data, travel records, so­cial me­dia ac­tiv­ity, or ad­min­is­tra­tive files, to gen­er­ate in­ves­tiga­tive leads or sup­port on­go­ing cases.

The agency frames its in­quiry as ex­ploratory and cau­tious. It notes that the gov­ern­ment is seek­ing to un­der­stand the current state” of ad tech and lo­ca­tion data ser­vices avail­able to fed­eral in­ves­tiga­tive en­ti­ties, par­tic­u­larly con­sid­er­ing reg­u­la­tory con­straints and pri­vacy ex­pec­ta­tions.

That lan­guage re­flects grow­ing scrutiny of com­mer­cial data prac­tices by courts, reg­u­la­tors, and civil lib­er­ties ad­vo­cates, es­pe­cially when such data is ac­cessed by fed­eral agen­cies like ICE.

In re­cent years, fed­eral agen­cies have in­creas­ingly re­lied on com­mer­cially avail­able data to side­step tra­di­tional le­gal bar­ri­ers.

Because ad tech data is col­lected by pri­vate com­pa­nies un­der con­sumer-fac­ing pri­vacy poli­cies, agen­cies have ar­gued that pur­chas­ing or ac­cess­ing that data does not con­sti­tute a search un­der the Fourth Amendment.

Critics counter that this ap­proach al­lows the gov­ern­ment to ob­tain highly sen­si­tive in­for­ma­tion, in­clud­ing de­tailed lo­ca­tion his­to­ries, with­out war­rants, prob­a­ble cause, or mean­ing­ful over­sight.

The U. S. Supreme Court has sig­naled skep­ti­cism of such prac­tices in cases rec­og­niz­ing the sen­si­tiv­ity of long-term lo­ca­tion track­ing, even when data is held by third par­ties.

At the same time, reg­u­la­tors have brought en­force­ment ac­tions against data bro­kers ac­cused of sell­ing sen­si­tive lo­ca­tion in­for­ma­tion with­out ad­e­quate safe­guards.

Against that back­drop, ICEs as­ser­tion that it is con­sid­er­ing pri­vacy ex­pec­ta­tions ap­pears de­signed to re­as­sure both pol­i­cy­mak­ers and po­ten­tial ven­dors that the agency is aware of the con­tro­versy sur­round­ing com­mer­cial sur­veil­lance data.

Yet the RFI it­self pro­vides lit­tle de­tail about how those con­cerns would be op­er­a­tional­ized. It does not ref­er­ence war­rants, court or­ders, or ju­di­cial au­tho­riza­tion.

Nor does it ex­plain how ICE would dis­tin­guish be­tween data as­so­ci­ated with U. S. per­sons and nonci­t­i­zens, how long in­for­ma­tion would be re­tained, or whether data ob­tained for one in­ves­tiga­tive pur­pose could be reused for oth­ers.

That am­bi­gu­ity is par­tic­u­larly sig­nif­i­cant given HSIs broad man­date. Unlike agen­cies fo­cused solely on crim­i­nal en­force­ment, HSI con­ducts civil and ad­min­is­tra­tive in­ves­ti­ga­tions along­side crim­i­nal cases.

Location data or ad tech-de­rived in­sights could there­fore be used in con­texts rang­ing from im­mi­gra­tion en­force­ment to cus­toms vi­o­la­tions to sanc­tions and ex­port con­trol in­ves­ti­ga­tions, of­ten un­der lower le­gal thresh­olds than those re­quired in crim­i­nal pro­ceed­ings.

ICEs em­pha­sis on Ad Tech com­pli­ant” ser­vices also un­der­score a fun­da­men­tal ten­sion. Compliance in the ad­ver­tis­ing in­dus­try typ­i­cally refers to ad­her­ence to self-reg­u­la­tory frame­works, con­trac­tual oblig­a­tions, and pri­vacy poli­cies that per­mit ex­ten­sive data col­lec­tion so long as cer­tain dis­clo­sures are made.

Those stan­dards are not de­signed to con­strain gov­ern­ment use, nor do they sub­sti­tute for con­sti­tu­tional or statu­tory pro­tec­tions gov­ern­ing law en­force­ment sur­veil­lance.

Companies mar­ket­ing privacy-friendly” lo­ca­tion or IP in­tel­li­gence tools of­ten ar­gue that they avoid di­rectly iden­ti­fy­ing in­di­vid­u­als. But re­searchers and reg­u­la­tors have re­peat­edly demon­strated that sup­pos­edly anonymized or ag­gre­gated data can be rei­den­ti­fied when com­bined with other datasets.

In an in­ves­tiga­tive con­text, rei­den­ti­fi­ca­tion is not a bug but a fea­ture, en­abling an­a­lysts to link dig­i­tal sig­nals back to real-world sub­jects.

Biometric Update ear­lier re­ported that a Government Accountability Office au­dit had found that pub­licly ac­ces­si­ble data — from so­cial me­dia posts to com­mer­cial ge­olo­ca­tion records — can be ag­gre­gated into de­tailed digital pro­files” that ex­pose U. S. per­son­nel, mil­i­tary op­er­a­tions, and se­nior lead­ers to tar­get­ing, co­er­cion, and dis­rup­tion.

In January 2025, Gravy Analytics, a promi­nent lo­ca­tion data bro­ker, dis­closed that a sig­nif­i­cant data breach had po­ten­tially ex­posed through de-anonymiza­tion the pre­cise lo­ca­tion in­for­ma­tion of mil­lions of in­di­vid­u­als.

The RFIs fo­cus on live demon­stra­tions sug­gests that ICE is in­ter­ested in ma­ture, de­ploy­able ca­pa­bil­i­ties rather than the­o­ret­i­cal of­fer­ings. Vendors se­lected to pre­sent would be ex­pected to show how their plat­forms op­er­ate in prac­tice, how data is ac­cessed and an­a­lyzed, and how in­ves­tiga­tive out­puts are gen­er­ated.

While the agency stresses that it is not com­mit­ting to a fu­ture so­lic­i­ta­tion, such demon­stra­tions of­ten in­form sub­se­quent pro­cure­ments, task or­ders, or pi­lot pro­grams con­ducted un­der ex­ist­ing con­tracts.

ICE has used sim­i­lar mar­ket re­search ap­proaches in the past to nor­mal­ize new sur­veil­lance ca­pa­bil­i­ties be­fore for­mal adop­tion.

Social me­dia mon­i­tor­ing tools, mo­bile bio­met­ric sys­tems, and large-scale an­a­lyt­ics plat­forms were all in­tro­duced through in­cre­men­tal steps that be­gan with RFIs and demon­stra­tions rather than head­line-grab­bing con­tracts.

For pri­vacy ad­vo­cates, the lat­est fil­ing fits a fa­mil­iar pat­tern. Commercial sur­veil­lance mar­kets evolve rapidly, dri­ven by ad­ver­tis­ing and mar­ket­ing de­mand. Government agen­cies then adopt those tools af­ter the fact, of­ten be­fore law­mak­ers have fully grap­pled with the im­pli­ca­tions.

Oversight mech­a­nisms, how­ever, lag tech­ni­cal ca­pa­bil­ity, leav­ing key ques­tions unan­swered un­til af­ter sys­tems are al­ready in use.

ICEs RFI does not in­di­cate when demon­stra­tions might oc­cur or whether a so­lic­i­ta­tion will fol­low. It does make clear, though, that the agency sees the ad tech ecosys­tem as a po­ten­tial in­ves­tiga­tive re­source worth se­ri­ous con­sid­er­a­tion.

As de­bates over com­mer­cial data, sur­veil­lance, and con­sti­tu­tional pro­tec­tions con­tinue, the fil­ing of­fers a win­dow into how fed­eral law en­force­ment is adapt­ing to — and seek­ing to lever­age — a data econ­omy built for ad­ver­tis­ing rather than ac­count­abil­ity.

For now, ICE is ask­ing in­dus­try to ex­plain how ad tech-de­rived lo­ca­tion and an­a­lyt­ics ser­vices can be made suit­able for in­ves­tiga­tive use while re­spect­ing pri­vacy ex­pec­ta­tions.

What re­mains un­clear is who will de­fine those ex­pec­ta­tions, how they will be en­forced, and whether ex­ist­ing le­gal frame­works are equipped to gov­ern a sur­veil­lance model that blurs the line be­tween con­sumer mar­ket­ing and gov­ern­ment in­tel­li­gence.

...

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8 240 shares, 10 trendiness

fluid.sh

Claude Code for in­fra­struc­ture. Debug, act, and au­dit every­thing Fluid does on your in­fra­struc­ture.

Fluid is a ter­mi­nal agent that do work on pro­duc­tion in­fra­struc­ture like VMs/K8s clus­ter/​etc. by mak­ing sand­box clones of the in­fra­struc­ture for AI agents to work on, al­low­ing the agents to run com­mands, test con­nec­tions, edit files, and then gen­er­ate Infra-as-code like an Ansible Playbook to be ap­plied on pro­duc­tion.

LLMs are great at gen­er­at­ing Terraform, OpenTofu, Ansible, etc. but bad at guess­ing how pro­duc­tion sys­tems work. By giv­ing ac­cess to a clone of the in­fra­struc­ture, agents can ex­plore, run com­mands, test things be­fore writ­ing the IaC, giv­ing them bet­ter con­text and a place to test ideas and changes be­fore de­ploy­ing.

I got the idea af­ter see­ing how much Claude Code has helped me work on code, I thought I wish there was some­thing like that for in­fra­struc­ture”, and here we are.

Safety. I did­n’t want CC to SSH into a prod ma­chine from where it is run­ning lo­cally (real prob­lem!). I wanted to lock down the tools it can run to be only on sand­boxes while also giv­ing it au­ton­omy to cre­ate sand­boxes and not have ac­cess to any­thing else.

Fluid gives ac­cess to a live out­put of com­mands run (it’s pretty cool) and does this by ephemeral SSH Certificates. Fluid gives tools for cre­at­ing IaC and re­quires hu­man ap­proval for cre­at­ing sand­boxes on hosts with low mem­ory/​CPU and for ac­cess­ing the in­ter­net or in­stalling pack­ages.

Note: this is a ter­mi­nal agent (like Claude Code) meant to be in­stalled on your lo­cal lap­top/​work­sta­tion

...

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9 234 shares, 8 trendiness

How Jeff Bezos Brought Down the Washington Post

Skip to main con­tentHow Jeff Bezos Brought Down the Washington PostThe Amazon founder bought the pa­per to save it. Instead, with a mass lay­off, he’s forced it into se­vere de­cline. On September 4, 2013, the Amazon founder Jeff Bezos held his first meet­ing with the staff of the Washington Post, the news­pa­per he had agreed to pur­chase a month ear­lier from the Graham fam­ily, for two hun­dred and fifty mil­lion dol­lars. It had been a long and un­set­tling stretch for the pa­per’s staff. We—I was a deputy ed­i­tor of the ed­i­to­r­ial page at the time—had suf­fered through years of re­trench­ment. We trusted that Don Graham would place us in ca­pa­ble hands, but we did not know this new owner, and he did not know or love our busi­ness in the way that the Graham fam­ily had. Bezos’s words at that meet­ing, about a new golden era for the Washington Post,” were re­as­sur­ing. Bob Woodward asked why he had pur­chased the pa­per, and Bezos was clear about the com­mit­ment he was pre­pared to make. I fi­nally con­cluded that I could pro­vide run­way—fi­nan­cial run­way—be­cause I don’t think you can keep shrink­ing the busi­ness,” he said. You can be prof­itable and shrink­ing. And that’s a sur­vival strat­egy, but it ul­ti­mately leads to ir­rel­e­vance, at best. And, at worst, it leads to ex­tinc­tion.”To look back on that mo­ment is to won­der: How could it have come to this? The pa­per had some prof­itable years un­der Bezos, sparked by the 2016 elec­tion and the first Trump term. But it be­gan los­ing enor­mous sums: sev­enty-seven mil­lion dol­lars in 2023, an­other hun­dred mil­lion in 2024. The owner who once of­fered run­way was un­will­ing to tol­er­ate losses of that mag­ni­tude. And so, af­ter years of Bezos-fuelled growth, the Post en­dured two pun­ish­ing rounds of vol­un­tary buy­outs, in 2023 and 2025, that re­duced its news­room from more than a thou­sand staffers to un­der eight hun­dred, and cost the Post some of its best writ­ers and ed­i­tors. Then, early Wednesday morn­ing, news­room em­ploy­ees re­ceived an e-mail an­nounc­ing some sig­nif­i­cant ac­tions.” They were in­structed to stay home and at­tend a Zoom we­bi­nar at 8:30 a.m.” Everyone knew what was com­ing—mass lay­offs.The scale of the de­mo­li­tion, though, was stag­ger­ing—re­port­edly more than three hun­dred news­room staffers. The an­nounce­ment was left to the ex­ec­u­tive ed­i­tor, Matt Murray, and hu­man-re­la­tions chief Wayne Connell; the news­pa­per’s pub­lisher, Will Lewis, was nowhere to be seen as the grim news was un­veiled. In what Murray termed a broad strate­gic re­set,” the Post’s sto­ried sports de­part­ment was shut­tered in its cur­rent form”; sev­eral re­porters will now cover sports as a cultural and so­ci­etal phe­nom­e­non.” The metro staff, al­ready cut to about forty staffers dur­ing the past five years, has been shrunk to about twelve; the for­eign desks will be re­duced to ap­prox­i­mately twelve lo­ca­tions from more than twenty; Peter Finn, the in­ter­na­tional ed­i­tor, told me that he asked to be laid off. The books sec­tion and the flag­ship pod­cast, Post Reports,” will end. Shortly af­ter the meet­ing, staffers re­ceived in­di­vid­u­al­ized e-mails let­ting them know whether they would stay or go. Murray said the re­trenched Post would concentrate on ar­eas that demon­strate au­thor­ity, dis­tinc­tive­ness, and im­pact,” fo­cussing on ar­eas such as pol­i­tics and na­tional se­cu­rity. This strat­egy, a kind of Politico-lite, would be more con­vinc­ing if so many of the most tal­ented play­ers were not al­ready gone.Gra­ham, who has pre­vi­ously been res­olutely silent about changes at the pa­per, posted a mes­sage on Facebook that pulsed with an­guish. It’s a bad day,” he wrote, adding, I am sad that so many ex­cel­lent re­porters and ed­i­tors—and old friends—are los­ing their jobs. My first con­cern is for them; I will do any­thing I can to help.” As for him­self, Graham, who once edited the sports sec­tion, said, I will have to learn a new way to read the pa­per, since I have started with the sports page since the late 1940’s.”What hap­pened to the Bezos of 2013, a self-pro­claimed op­ti­mist who seemed to have ab­sorbed the im­por­tance of the Post in the na­tion’s jour­nal­is­tic ecosys­tem? In 2016, ded­i­cat­ing the pa­per’s new head­quar­ters, he boasted that it had be­come a lit­tle more swash­buck­ling” and had a little more swag­ger.” As re­cently as December, 2024, at the New York Times’ DealBook Summit, Bezos ex­pressed his com­mit­ment to nur­tur­ing the pa­per: The ad­van­tage I bring to the Post is when they need fi­nan­cial re­sources, I’m avail­able. I’m like that. I’m the dot­ing par­ent in that re­gard.” Not long ago, he en­vi­sioned at­tract­ing as many as a hun­dred mil­lion pay­ing sub­scribers to the Post. With these bru­tal cuts, he seems con­tent to let the pa­per limp along, di­min­ished in size and am­bi­tion.“In the be­gin­ning, he was won­der­ful,” Sally Quinn, the vet­eran Post con­trib­u­tor and wife of its leg­endary ex­ec­u­tive ed­i­tor, Ben Bradlee, told me of Bezos. He was smart and funny and kind and in­ter­ested. He was joy­ful. He was a per­son of in­tegrity and con­science. He re­ally meant it when he said this was a sa­cred trust, to buy the Post. And now I don’t know who this per­son is.”The au­thor David Maraniss was with the Post for forty-eight years. He re­signed as an as­so­ci­ate ed­i­tor in 2024, af­ter Bezos killed the ed­i­to­r­ial page’s planned en­dorse­ment of Kamala Harris. He bought the Post think­ing that it would give him some grav­i­tas and grace that he could­n’t get just from bil­lions of dol­lars, and then the world changed,” Maraniss said of Bezos. Now I don’t think he gives us—I don’t think he gives a fly­ing fuck.”I asked Maraniss what cuts of this mag­ni­tude would mean for the in­sti­tu­tion. I don’t even want to call it the Washington Post,” he said. I don’t know what it’ll be with­out all of that.”The first sign of im­pend­ing lay­offs came in late January, when the sports staff was in­formed that plans to send writ­ers to Italy to cover the Winter Olympics had been can­celled. (Management later agreed to send a smaller crew.) In the fol­low­ing days, as ru­mors be­gan to spread of se­vere cuts, the pa­per’s re­porters be­gan post­ing mes­sages di­rected at Bezos on X, with the plain­tive hash­tag #SaveThePost. Our re­porters on the ground drove ex­clu­sive cov­er­age dur­ing piv­otal mo­ments of re­cent his­tory,” the for­eign staff wrote to Bezos. We have so much left to do.” The lo­cal staff noted that it had al­ready been slashed in half in the past five years. Watergate,” they wrote, started as a lo­cal story.”It did not help the staff’s morale that Lewis and his team were hob­nob­bing in Davos, or that Bezos and his wife, Lauren Sánchez, were in Paris for Haute Couture Week. More trou­bling were re­minders that Bezos, who once em­bla­zoned Democracy Dies in Darkness” on the pa­per’s mast­head, ap­pears to be pur­su­ing a pol­icy of ap­pease­ment to­ward the Trump Administration. During the first Trump term, Bezos stood by the Post even when his stew­ard­ship threat­ened to cost him bil­lions in gov­ern­ment con­tracts. Now Bezos had not said a word about a re­cent F.B.I. raid on the home of the Post fed­eral-gov­ern­ment re­porter Hannah Natanson, in which the agency seized her phones, lap­tops, and other de­vices. As the staff awaited the axe, the President and the First Lady cel­e­brated the pre­mière of Melania,” a doc­u­men­tary that Amazon had li­censed for forty mil­lion dol­lars and was re­ported to be spend­ing an­other thirty-five mil­lion to pro­mote. The deal was inked af­ter Bezos had din­ner with the Trumps shortly be­fore the Inauguration.Martin Baron, who over­saw cov­er­age at the pa­per that gar­nered eleven Pulitzer Prizes dur­ing his eight years as ex­ec­u­tive ed­i­tor, said in a state­ment, This ranks among the dark­est days in the his­tory of one of the world’s great­est news or­ga­ni­za­tions. The Washington Post’s am­bi­tions will be sharply di­min­ished, its tal­ented and brave staff will be fur­ther de­pleted, and the pub­lic will be de­nied the ground-level, fact-based re­port­ing in our com­mu­ni­ties and around the world that is needed more than ever.” The news in­dus­try is in a pe­riod of head-spin­ning change,” Baron told me. But the Post’s prob­lems were made in­fi­nitely worse by ill-con­ceived de­ci­sions that came from the very top.” He pointed to Bezos’s de­ci­sion to kill the Harris en­dorse­ment—a gutless or­der” that cost the pa­per more than two hun­dred fifty thou­sand sub­scribers. Loyal read­ers, livid as they saw owner Jeff Bezos be­tray­ing the val­ues he was sup­posed to up­hold, fled The Post. In truth, they were dri­ven away, by the hun­dreds of thou­sands,” Baron said. Bezos’s sick­en­ing ef­forts to curry fa­vor with President Trump have left an es­pe­cially ugly stain of their own. This is a case study in near-in­stant, self-in­flicted brand de­struc­tion.”I spent more than forty years at the Post, as a re­porter, an ed­i­tor, an ed­i­to­r­ial writer, and a colum­nist. I re­signed last March, af­ter Bezos an­nounced that the Opinions sec­tion, where I worked, would hence­forth be con­cen­trat­ing on the twin pil­lars of personal lib­er­ties and free mar­kets.” More alarm­ing, Bezos ad­vised, Viewpoints op­pos­ing those pil­lars will be left to be pub­lished by oth­ers.” We had been an opin­ion sec­tion re­flect­ing a wide range of views—which Bezos him­self had en­cour­aged. It seemed ob­vi­ous that this change was deeply mis­guided.I had writ­ten a col­umn crit­i­cal of the non-en­dorse­ment de­ci­sion sev­eral months ear­lier. The pa­per pub­lished it with­out any sub­stan­tive changes. But, when I wrote a col­umn dis­agree­ing with the no-dis­sent-al­lowed dic­tum, I was told that Lewis had killed it—it ap­par­ently did­n’t meet the high bar” for the Post to write about it­self—and de­clined my re­quest to meet. I sub­mit­ted my let­ter of res­ig­na­tion. A new ed­i­to­r­ial-page ed­i­tor went on to shift both un­signed ed­i­to­ri­als and signed opin­ion columns dra­mat­i­cally to the right, to the point that no lib­eral colum­nists re­main. One re­cent ed­i­to­r­ial praised the President’s plan for a new ball­room and ex­cused his unau­tho­rized bull­doz­ing of the East Wing, say­ing that the blue­prints would have faced death by a thou­sand pa­per­cuts.” Another en­dorsed the move to re­name the Defense Department the Department of War as a wor­thy blow against gov­ern­ment eu­phemism.” There are some ed­i­to­ri­als crit­i­cal of Trump, but the in­cli­na­tion to fawn­ing praise is un­mis­tak­able. Had I not de­fen­es­trated my­self, I would, no doubt, have been ad­vised to take my buy­out and go.But I am not—at least, I have not been—a Bezos-hater. I am grate­ful for the re­sources, fi­nan­cial and tech­no­log­i­cal, that he de­voted to the pa­per in his early years as owner. The sur­prise of Bezos’s tenure at the Post has been his bad busi­ness de­ci­sions. Fred Ryan, a for­mer chief of staff to Ronald Reagan and found­ing pres­i­dent of Politico, was hired as the pub­lisher and C.E.O. in 2014 and over­saw a pe­riod of spec­tac­u­lar growth. Buoyed by Bezos-funded ex­pan­sion and the pub­lic’s fix­a­tion on the new Trump Administration, the num­ber of dig­i­tal sub­scribers soared from thirty-five thou­sand when he ar­rived to two and a half mil­lion when he left, in the sum­mer of 2023. But Ryan failed to de­velop an ad­e­quate plan for how the news­pa­per would thrive in a post-Trump en­vi­ron­ment. As traf­fic and rev­enue plunged, Ryan found him­self in­creas­ingly at odds with the news­room. He held a year-end town-hall meet­ing in 2022 at which he an­nounced that lay­offs were com­ing, and then, to the con­ster­na­tion of the staff, left with­out tak­ing ques­tions. As Clare Malone re­ported for The New Yorker, Woodward be­seeched Bezos to in­ter­cede. The owner made a rare visit to the pa­per in January, 2023, for meet­ings with key staffers, tak­ing notes on a le­gal pad as they poured out their anx­i­ety.Ryan left that sum­mer, but Lewis, his even­tual re­place­ment, ac­com­plished the feat of mak­ing the news­room nos­tal­gic for Ryan. A decade ear­lier, Lewis, then a se­nior ex­ec­u­tive in Rupert Murdoch’s British-tabloid em­pire, had played a piv­otal role in deal­ing with the fall­out from the phone-hack­ing scan­dal at some of Murdoch’s pa­pers. Lewis had said that he was act­ing to pro­tect journalistic in­tegrity,” when the Post ques­tioned him about his ac­tions dur­ing that time, but in 2024 ques­tions arose, fu­elled by a civil law­suit brought against the pa­pers, about whether Lewis had sought to con­ceal ev­i­dence, in­clud­ing by car­ry­ing out a plan to delete mil­lions of e-mails. (Lewis has said the al­le­ga­tions against him were completely un­true.”) At the Post, Lewis clashed with ex­ec­u­tive ed­i­tor Sally Buzbee over cov­er­age of the story, re­port­edly in­sist­ing that it was not news­wor­thy. Shortly af­ter­ward, Lewis an­nounced Buzbee’s de­par­ture, and his plan to re­place her with Robert Winnett, a for­mer col­league of his from London’s Daily Telegraph and Sunday Times. The Post and the Times both re­ported on how Lewis and Winnett had used fraud­u­lently ob­tained ma­te­r­ial as the ba­sis for ar­ti­cles. His am­bi­tion out­ran his ethics,” one of Lewis’s for­mer re­porters told the Times. Winnett ended up with­draw­ing from the po­si­tion, but the episode poi­soned re­la­tions be­tween Lewis and the news­room.The staff, mean­while, be­came in­creas­ingly con­cerned that Lewis was of­fer­ing cor­po­rate word salad in place of a vi­sion to ad­dress the Post’s de­cline. Fix it, build it, scale it” was his catch­phrase when he ar­rived, in January, 2024. In June of that year came an amor­phous plan for what Lewis called a third news­room.” (The sec­ond news­room, we were sur­prised to learn, was the Opinions sec­tion.) First, it was to fo­cus on so­cial me­dia and ser­vice jour­nal­ism. Then it was rechris­tened WP Ventures and, ac­cord­ing to a memo to staff, would focus en­tirely on build­ing per­son­al­ity-dri­ven con­tent and fran­chises around per­son­al­i­ties.” By February, 2025, the sit­u­a­tion had de­te­ri­o­rated to the point that two for­mer top ed­i­tors, Leonard Downie and Robert Kaiser, wrote to Bezos about Lewis. Replacing him is a cru­cial first step in sav­ing The Washington Post,” they urged in an e-mail. Bezos never re­sponded.Downie, who served as ex­ec­u­tive ed­i­tor from 1991 to 2008, con­trasted the paths of the Times and the Post. During the past decade, the Times trans­formed it­self into a one-stop-shop­ping en­vi­ron­ment that lured read­ers with games such as Spelling Bee, a cook­ing app, and a shop­ping guide. By the end of 2025, it was re­port­ing close to thir­teen mil­lion dig­i­tal sub­scribers and an op­er­at­ing profit of more than a hun­dred and ninety-two mil­lion dol­lars. The Post does not re­lease in­for­ma­tion about its dig­i­tal sub­scribers, but it was re­ported to have two and a half mil­lion dig­i­tal sub­scribers at the time of the non-en­dorse­ment de­ci­sion, in 2024.“One of the big dif­fer­ences to me was that they hired a pub­lisher”—Ryan—“who did­n’t come up with any ideas,” Downie told me. And then when he left . . . we knew that Bezos was los­ing money, and we were en­cour­aged by the fact that they were look­ing for some­body who could im­prove the busi­ness side of the pa­per and the cir­cu­la­tion side of the pa­per. And then they chose this guy who we hardly ever heard from, who had a check­ered past in British jour­nal­ism.”Writ­ing last month on a pri­vate Listserv for for­mer Post em­ploy­ees, Paul Farhi, who as the me­dia re­porter for the Post cov­ered Bezos’s ac­qui­si­tion of the pa­per, shared his utter mys­ti­fi­ca­tion and baf­fle­ment” about Bezos’s tol­er­ance of Lewis. Even as a hands-off boss,” he won­dered, could Bezos not see what was ob­vi­ous to even ca­sual ob­servers within a few months of Will’s ar­rival—that Will was ill-suited to the Post, that he had alien­ated the news­room, that he had an eth­i­cally sus­pect past, and—most im­por­tant—that none of his big ideas was work­ing or even be­ing im­ple­mented?” (Farhi, who took a buy­out in 2023, gave me per­mis­sion to quote his mes­sage.)Even be­fore these new cuts, a pa­rade of key staffers had left the Post. A beloved man­ag­ing ed­i­tor, Matea Gold, went to the Times. The na­tional ed­i­tor, Philip Rucker, de­camped to CNN, and the po­lit­i­cal re­porter Josh Dawsey to the Wall Street Journal. The Atlantic hired, among oth­ers, three stars of the pa­per’s White House team: Ashley Parker, Michael Scherer, and Toluse Olorunnipa. These are losses that would take years to re­build—if the Post were in a re­build­ing mode. The Post, Woodward said, lives and is do­ing an ex­tra­or­di­nary re­port­ing job on the po­lit­i­cal cri­sis that is Donald Trump”—including its scoop on the sec­ond strike to kill sur­vivors of an at­tack on an al­leged Venezuelan drug boat. But the print edi­tion is a shadow of its for­mer self, with metro, style, and sports melded into an ane­mic sec­ond sec­tion; daily print cir­cu­la­tion is now be­low one hun­dred thou­sand. More press­ingly, it’s un­clear whether a news­room so stripped of re­sources can sus­tain the qual­ity of its work.The sports colum­nist Sally Jenkins, who left the Post in August, 2025, as part of the sec­ond wave of buy­outs, has been more sup­port­ive of man­age­ment than many other Post vet­er­ans. So it was strik­ing that, when we spoke re­cently, she was both pas­sion­ate about the work of her news­room col­leagues and un­spar­ing about how the busi­ness side had failed them. When you whack at these sec­tions, you’re whack­ing at the roots of the tree,” she told me. We train great jour­nal­ists in every sec­tion of the pa­per, and we train them to cover every sub­ject on the globe. And when you whack whole sec­tions of peo­ple away, you are re­ally, re­ally in dan­ger of killing the whole tree.” When I asked how she felt about the losses, Jenkins said, My heart is cracked in about five dif­fer­ent pieces.”Jenk­ins, who was in California cov­er­ing Super Bowl week for the Atlantic, has spent a ca­reer study­ing what ac­counts for the dif­fer­ence be­tween win­ning teams and los­ing ones. Bezos, she said, had been gen­er­ous with his money and laud­able for never in­ter­fer­ing in the work of the news­room. But, she added, making money at jour­nal­ism, you have to break rocks with a shovel. You have to love think­ing about jour­nal­ism to the point that it wakes you up at night with an idea, and then you have to be will­ing to try it. And I don’t see a sense that he loves the busi­ness enough to think about it at night. It’s al­most like he’s treated it like Pets.com—an in­ter­est­ing ex­per­i­ment that he’s will­ing to lose some money on un­til he’s not. But the dif­fer­ence with this busi­ness is it’s not Pets.com. It’s not a busi­ness that just dis­ap­pears into the muck of ven­ture cap­i­tal­ism. It’s a busi­ness that is es­sen­tial to the sur­vival of the Republic, for Christ’s sake. So you don’t fuck around with it like that.”As Post staffers and alumni braced for the cuts, I called Kaiser, the for­mer man­ag­ing ed­i­tor, who spent more than half a cen­tury at the pa­per. Mr. Bezos’s per­sonal sys­tem has failed him in a way I fear he does­n’t grasp,” Kaiser, now eighty-two, told me. He has no sense of the dam­age that will be done to his rep­u­ta­tion in his­tory if he be­comes seen as the man who de­stroyed the in­sti­tu­tion that Katharine Graham”—the famed pub­lisher who led the pa­per from the six­ties to the nineties—“and Ben Bradlee built.” Kaiser re­called ar­riv­ing at the pa­per’s London bu­reau in 1964. If I say, I’m Kaiser from the Washington Post’—what’s that? They never heard of it.” A decade later, he was posted in Moscow, as Woodward and Carl Bernstein were break­ing the Watergate story. Explaining was not nec­es­sary,” Kaiser said. The Russians, in fact, had a glo­ri­ously ex­ag­ger­ated im­pres­sion of the Washington Post as the king-maker and the king-de­stroyer.”Be­zos, Kaiser con­tin­ued, knew what the role was, ac­knowl­edged the role—those words doting par­ent’—and then he walked away from it. What the hell?” The dam­age, he pre­dicted, will re­ver­ber­ate be­yond the im­me­di­ate cuts. What pur­pose does any hon­or­able, at­trac­tive, com­pe­tent jour­nal­ist have for re­main­ing at the Post? None.”At one point, as we talked about the trans­for­ma­tion of the Post, Kaiser stopped him­self. I’m go­ing to cry,” he said, and paused. Oh, God, it’s killing me.”Be­zos may be tir­ing of the Post, but he has not seemed in­clined to sell the pa­per. Nor is it clear that would be a bet­ter, or at this point even fea­si­ble, out­come. Newspapers across the coun­try are be­ing bought up by pri­vate-eq­uity firms that are es­sen­tially sell­ing off the valu­able parts. But there is an­other model for Bezos to con­sider: turn­ing the Post into a non­profit, en­dowed by Bezos but op­er­at­ing in­de­pen­dently of him. For Bezos, this would re­duce the role of the Post as a headache and a threat to other, more fa­vored en­deav­ors, such as his rocket com­pany, Blue Origin. For the Post, as­sum­ing the en­dow­ment is suf­fi­cient, it would pro­vide that con­tin­u­ing run­way.There are mod­els for this ap­proach. In Philadelphia, the late ca­ble-tele­vi­sion ty­coon H. F. “Gerry” Lenfest pur­chased the Inquirer, the Daily News, and Philly.com in 2015, and the fol­low­ing year do­nated the pub­li­ca­tions to a char­i­ta­ble trust. What would the city be with­out the Inquirer and the Daily News?” asked Lenfest, whose con­tri­bu­tion to the en­deavor has been val­ued at al­most a hun­dred and thirty mil­lion dol­lars. In Utah, the in­vestor Paul Huntsman bought the Salt Lake Tribune from the hedge fund Alden Global Capital in 2016; three years later, he trans­formed it into a non­profit, sup­ported in part by tax-de­ductible con­tri­bu­tions from read­ers.Writ­ing in the Columbia Journalism Review in 2024, Steven Waldman sug­gested that Bezos fol­low a sim­i­lar course.  ‘Nonprofit’ does not mean losing money,’ ” Waldman wrote. Nonprofit news or­ga­ni­za­tions can sell ads, of­fer sub­scrip­tions, and take do­na­tions. Done well, it is an es­pe­cially strong busi­ness model, be­cause it pro­vides an ex­tra rev­enue stream (philanthropy) and is deeply em­bed­ded in serv­ing the com­mu­nity.” My quib­ble with Waldman’s pitch is that he asked Bezos to ante up a pal­try hun­dred mil­lion. When Bezos pur­chased the Post, his net worth was about twenty-five bil­lion; it is now an es­ti­mated two hun­dred fifty bil­lion. Why not one per cent of that for the Post, enough to sus­tain the pa­per in­def­i­nitely? A pipe dream, I know, but this arrange­ment would make Bezos the sav­ior of the Post, not the man who presided over its demise.In the 1941 movie Citizen Kane,” Charles Foster Kane, a news­pa­per pub­lisher who, like Bezos, is one of the rich­est men in the world, is con­fronted by his le­gal guardian, Walter Thatcher, about the folly of fund­ing his pa­per. Honestly, my boy, don’t you think it’s rather un­wise to con­tinue this phil­an­thropic en­ter­prise, this Inquirer that’s cost­ing you a mil­lion dol­lars a year?” Thatcher de­mands. You’re right, Mr. Thatcher. I did lose a mil­lion dol­lars last year,” Kane replies. I ex­pect to lose a mil­lion dol­lars this year. I ex­pect to lose a mil­lion dol­lars next year. You know, Mr. Thatcher, at the rate of a mil­lion dol­lars a year, I’ll have to close this place in sixty years.” Update Kane’s out­lays to as­sume losses of a hun­dred mil­lion an­nu­ally, in per­pe­tu­ity. By that math, Bezos would have more than two mil­len­nia be­fore need­ing to turn out the lights. ♦

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sqldef

sqldef is a CLI tool for diff­ing two SQL schemas. You can use it to man­age the mi­gra­tion of RDBMSs us­ing reg­u­lar SQL DDLs.

The on­line demo uses the WebAssembly build of sqldef to diff two SQL schemas and gen­er­ate DDLs.

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Read the original on sqldef.github.io »

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