$1k per day, 50 work weeks, 5 day a week → $250k a year. That is, to be worth it, the AI should work as well as an engineer that costs a company $250k. Between taxes, social security, and cost of office space, that engineer would be paid, say, $170-180k a year, like an average-level senior software engineer in the US.
This is not an outrageous amount of money, if the productivity is there. More likely the AI would work like two $90k junior engineers, but without a need to pay for a vacation, office space, social security, etc. If the productivity ends up higher than this, it's pure profit; I suppose this is their bet.
The human engineer would be like a tech lead guiding a tea of juniors, only designing plans and checking results above the level of code proper, but for exceptional cases, like when a human engineer would look at the assembly code a compiler has produced.
This does sound exaggeratedly optimistic now, but does not sound crazy.
I think that is easy to understand for a lot of people but I will spell it out.
This looks like AI companies marketing that is something in line 1+1 or buy 3 for 2.
Money you don’t spend on tokens are the only saved money, period.
With employees you have to pay them anyway you can’t just say „these requirements make no sense, park for two days until I get them right”.
You would have to be damn sure of that you are doing the right thing to burn $1k a day on tokens.
With humans I can see many reasons why would you pay anyway and it is on you that you should provide sensible requirements to be built and make use of employees time.
A tri-opoly can still provide competitive pressure. The Chinese models aren’t terrible either. Kimi K2.5 is pretty capable, although noticeably behind Claude Opus. But its existence still helps. The existence of a better product doesn’t require you to purchase it at any price.
>> $170-180k a year, like an average-level senior software engineer in the US.
I hear things like this all the time, but outside of a few major centers it's just not the norm. And no companies are spending anything like $1k / month on remote work environments.
That nobody wants to actually do it is already a problem, but some basically true thing is that somebody has to pay those $90k junior engineers for a couple years to turn them into senior engineers.
The seem to be plenty of people willing to pay the AI do that junior engineer level work, so wouldn’t it make sense to defect and just wait until it has gained enough experience to do the senior engineer work?
I took it as a napkin rounding of 365/7 because that’s the floor you pay an employee regardless of vacation time (in places like my country you’d add an extra month plus the prorated amount based on how many vacation days the employee has), so, not that people work 50 weeks per year, it’s just a reasonable approximation of what the cost the hiring company.
This is a simplification to make the calculation more straightforward. But a typical US workplace honors about 11 to 13 federal holidays. I assume that an AI does not need a vacation, but can't work 2 days straight autonomously when its human handlers are enjoying a weekend.
Different beasts on the API, the extra context left makes a huge difference. Unless there's something else out there I've missed, which at the speed things move these days it's always a possibility.
I'm one of the StrongDM trio behind this tenet. The core claim is simple: it's easy to spend $1k/day on tokens, but hard (even with three people) to do it in a way that stays reliably productive.
My favorite conspiracy theory is that these projects/blog posts are secretly backed by big-AI tech companies, to offset their staggering losses by convincing executives to shovel pools of money into AI tools.
They have to be. And the others writing this stuff likely do not deal with real systems with thousands of customers, a team who needs to get paid, and a reputation to uphold. Fatal errors that cause permanent damage to a business are unacceptable.
Designing reliable, stable, and correct systems is already a high level task. When you actually need to write the code for it, it's not a lot and you should write it with precision. When creating novel or differently complex systems, you should (or need to) be doing it yourself anyway.
Is it really a secret, when Anthropic posted a project of building a C compiler totally from scratch for $20k equivalent token spend, as an official article on their own blog? $20k is quite insane for such a self-contained project, if that's genuinely the amount that these tools require that's literally the best possible argument for running something open and leveraging competitive 3rd party inference.
Provided the sponsored content is labelled "sponsored content" this is above board.
If it's not labelled it's in violation of FTC regulations, for both the companies and the individuals.
[ That said... I'm surprised at this example on LinkedIn that was linked to by the Washington Post - https://www.linkedin.com/posts/meganlieu_claudepartner-activ... - the only hint it's sponsored content is the #ClaudePartner hashtag at the end, is that enough? Oh wait! There's text under the profile that says "Brand partnership" which I missed, I guess that's the LinkedIn standard for this? Feels a bit weak to me! https://www.linkedin.com/help/linkedin/answer/a1627083 ]
Slop influencers like Peter Steinberger get paid to promote AI vibe coding startups and the agentic token burning hype. Ironically they're so deep into the impulsivity of it all that they can't even hide it. The latest frontier models all continue to suffer from hallucinations and slop at scale.
- Factory, unconvinced. Their marketing videos are just too cringe, and any company that tries to get my attentions with free tokens in my DMs reduce my respect for them. If you're that good, you don't need to convince me by giving me free stuff. Additionally, some posts on Twitter about it have this paid influencer smell. If you use claude code tho, you'll feel right at home with the [signature flicker](https://x.com/badlogicgames/status/1977103325192667323).
+ Factory, unconvinced. Their videos are a bit cringe, I do hear good things in my timeline about it tho, even if images aren't supported (yet) and they have the [signature flicker](https://x.com/badlogicgames/status/1977103325192667323).
Yeah, it's hard to read the article without getting a cringy feeling of second hand embarrassment. The setup is weird too, in that it seems to imply that the little snippets of "wisdom" should be used as prompts to an LLM to come to their same conclusions, when of course this style of prompt will reliably produce congratulatory dreck.
Setting aside the absurdity of using dollars per day spent on tokens as the new lines of code per day, have they not heard of mocks or simulation testing? These are long proven techniques, but they appear bent on taking credit for some kind revolutionary discovery by recasting these standard techniques as a Digital Twin Universe.
One positive(?) thing I'll say is that this fits well with my experience of people who like to talk about software factories (or digital factories), but at least they're up front about the massive cost of this type of approach - whereas "digital factories" are typically cast as a miracle cure that will reduce costs dramatically somehow (once it's eventually done correctly, of course).
Yeah, getting strong Devin vibes here. In some ways they were ahead of their time in other ways agents have become commoditized and their platform is arguably obsolete. I have a strong feeling the same will happen with "software factories".
Growth will be proportional to spend. You can cut waste later and celebrate efficiency. So when growing there isn't much incentive to do it efficiently. You are just robbing yourself of a potential future victory. Also it's legitimately difficult to maximize growth while prioritizing efficiency. It's like how a body builder cycles between bulking and cutting. For mid to long term outlooks it's probably the best strategy.
It's not so much crazy as very lame and stupid and dumb. The moment has allowed people doing dumb things to somehow grab the attention of many in the industry for a few moments. There's nothing "there".
Building Attractor
Supply the following prompt to a modern coding agent
(Claude Code, Codex, OpenCode, Amp, Cursor, etc):
codeagent> Implement Attractor as described by
https://factory.strongdm.ai/
Canadian girlfriend coding is now a business model.
I've looked at their code for a few minutes in a few files, and while I don't know what they're trying to do well enough to say for sure anything is definitely a bug, I've already spotted several things that seem likely to be, and several others that I'd class as anti-patterns in rust. Don't get me wrong, as an experiment this is really cool, but I do not think they've succeeded in getting the "dark factory" concept to work where every other prominent attempt has fallen short.
To pick a few (from the server crate, because that's where I looked):
- The StoreError type is stringly typed and generally badly thought out. Depending on what they actually want to do, they should either add more variants to StoreError for the difference failure cases, replaces the strings with a sub-types (probably enums) to do the same, or write a type erased error similar to (or wrapping) the ones provided by anyhow, eyre, etc, but with a status code attached. They definitely shouldn't be checking for substrings in their own error type for control flow.
- So many calls to String::clone [0]. Several of the ones I saw were actually only necessary because the function took a parameter by reference even though it could have (and I would argue should have) taken it by value (If I had to guess, I'd say the agent first tried to do it without the clone, got an error, and implemented a local fix without considering the broader context).
- A lot of errors are just ignored with Result::unwrap_or_default or the like. Sometimes that's the right choice, but from what I can see they're allowing legitimate errors to pass silently. They also treat the values they get in the error case differently, rather than e.g. storing a Result or Option.
- Their HTTP handler has an 800 line long closure which they immediately call, apparently as a substitute for the the still unstable try_blocks feature. I would strongly recommend moving that into it's own full function instead.
- Several ifs which should have been match.
- Lots of calls to Result::unwrap and Option::unwrap. IMO in production code you should always at minimum use expect instead, forcing you to explain what went wrong/why the Err/None case is impossible.
It wouldn't catch all/most of these (and from what I've seen might even induce some if agents continue to pursue the most local fix rather than removing the underlying cause), but I would strongly recommend turning on most of clippy's lints if you want to learn rust.
This is why I think AI generated code is going nowhere. There's actual conceptual differences that the stotastic parrot cannot understand, it can only copy patterns. And there's no distinction between good and bad code (IRL) except for that understanding
For those of us working on building factories, this is pretty obvious because once you immediately need shared context across agents / sessions and an improved ID + permissions system to keep track of who is doing what.
I was about to say the same thing! Yet another blog post with heaps of navel gazing and zero to actually show for it.
The worst part is they got simonw to (perhaps unwittingly or social engineering) vouch and stealth market for them.
And $1000/day/engineer in token costs at current market rates? It's a bold strategy, Cotton.
But we all know what they're going for here. They want to make themselves look amazing to convince the boards of the Great Houses to acquire them. Because why else would investors invest in them and not in the Great Houses directly.
We’ve been working on this since July, and we shared the techniques and principles that have been working for us because we thought others might find them useful. We’ve also open-sourced the nlspec so people can build their own versions of the software factory.
We’re not selling a product or service here. This also isn’t about positioning for an acquisition: we’ve already been in a definitive agreement to be acquired since last month.
It’s completely fair to have opinions and to not like what we’re putting out, but your comment reads as snarky without adding anything to the conversation.
Until we solve the validation problem, none of this stuff is going to be more than flexes. We can automate code review, set up analytic guardrails, etc, so that looking at the code isn't important, and people have been doing that for >6 months now. You still have to have a human who knows the system to validate that the thing that was built matches the intent of the spec.
There are higher and lower leverage ways to do that, for instance reviewing tests and QA'ing software via use vs reading original code, but you can't get away from doing it entirely.
I agree with this almost completely. The hard part isn’t generation anymore, it’s validation of intent vs outcome. Especially once decisions are high-stakes or irreversible, think pkg updates or large scale tx
What I’m working on (open source) is less about replacing human validation and more about scaling it: using multiple independent agents with explicit incentives and disagreement surfaced, instead of trusting a single model or a single reviewer.
Humans are still the final authority, but consensus, adversarial review, and traceable decision paths let you reserve human attention for the edge cases that actually matter, rather than reading code or outputs linearly.
Until we treat validation as a first-class system problem (not a vibe check on one model’s answer), most of this will stay in “cool demo” territory.
“Anymore?” After 40 years in software I’ll say that validation of intent vs. outcome has always been a hard problem. There are and have been no shortcuts other than determined human effort.
I don’t disagree. After decades, it’s still hard which is exactly why I think treating validation as a system problem matters.
We’ve spent years systematizing generation, testing, and deployment. Validation largely hasn’t changed, even as the surface area has exploded. My interest is in making that human effort composable and inspectable, not pretending it can be eliminated.
This obviously depends on what you are trying to achieve but it’s worth mentioning that there are languages designed for formal proofs and static analysis against a spec, and I have suspicions we are currently underutilizing them (because historically they weren’t very fun to write, but if everything is just tokens then who cares).
And “define the spec concretely“ (and how to exploit emerging behaviors) becomes the new definition of what programming is.
(and unambiguously. and completely. For various depths of those)
This always has been the crux of programming. Just has been drowned in closer-to-the-machine more-deterministic verbosities, be it assembly, C, prolog, js, python, html, what-have-you
There have been a never ending attempts to reduce that to more away-from-machine representation. Low-code/no-code (anyone remember Last-one for Apple ][ ?), interpreting-and/or-generating-off DSLs of various level of abstraction, further to esperanto-like artificial reduced-ambiguity languages... some even english-like..
For some domains, above worked/works - and the (business)-analysts became new programmers. Some companies have such internal languages. For most others, not really.
And not that long ago, the SW-Engineer job was called Analyst-programmer.
Code is always the final spec. Maybe the "no engineers/coders/programmers" dream will come true, but in the end, the soft, wish-like, very undetailed business "spec" has to be transformed into hard implementation that covers all (well, most of) corners. Maybe when context size reaches 1G tokens and memory won't be wiped every new session? Maybe after two or three breakthrough papers? For now, the frontier isn't reached.
AI also quickly goes off the rails, even the Opus 2.6 I am testing today. The proposed code is very much rubbish, but it passes the tests. It wouldn't pass skilled human review. Worst thing is that if you let it, it will just grow tech debt on top of tech debt.
Next iterations of models will have to deal with that code, and it would be harder and harder to fix bugs and introduce features without triggering or introducing more defects.
Biological evolution overcomes this by running thousands and millions of variations in parallel, and letting the more defective ones to crash and die. In software ecosystems, we can't afford such a luxury.
An example: it had a complete interface to a hash map. The task was to delete elements. Instead of using the hash map API, it iterated through the entire underlying array to remove a single entry. The expected solution was O(1), but it implemented O(n). These decisions compound. The software may technically work, but the user experience suffers.
If you have particular performance requirements like that, then include them. Test for them. You still don’t have to actually look at the code. Either the software meets expectations or it doesn’t, and keep having AI work at it until you’re satisfied.
That's assuming no human would ever go near the code, and that over time it's not getting out of hand (inference time, token limits are all a thing), and that anti-patterns don't get to where the code is a logical mess which produces bugs through a webbing of specific behaviors instead of proper architecture.
However I guess that at least some of that can be mitigated by distilling out a system description and then running agents again to refactor the entire thing.
And that is the right assumption. Why would any humans need (or even want) to look at code any more? That’s like saying you want to go manually inspect the oil refinery every time you fill your car up with gas. Absurd.
> However I guess that at least some of that can be mitigated by distilling out a system description and then running agents again to refactor the entire thing.
The problem with this is that the code is the spec. There are 1000 times more decisions made in the implementation details than are ever going to be recorded in a test suite or a spec.
The only way for that to work differently is if the spec is as complex as the code and at that level what’s the point.
With what you’re describing, every time you regenerate the whole thing you’re going to get different behavior, which is just madness.
Tests are only rigorous if the correct intent is encoded in them. Perfectly working software can be wrong if the intent was inferred incorrectly. I leverage BDD heavily, and there a lot of little details it's possible to misinterpret going from spec -> code. If the spec was sufficient to fully specify the program, it would be the program, so there's lots of room for error in the transformation.
> You still have to have a human who knows the system to validate that the thing that was built matches the intent of the spec.
You don't need a human who knows the system to validate it if you trust the LLM to do the scenario testing correctly. And from my experience, it is very trustable in these aspects.
Can you detail a scenario by which an LLM can get the scenario wrong?
I do not trust the LLM to do it correctly. We do not have the same experience with them, and should not assume everyone does. To me, your question makes no sense to ask.
We should be able to measure this. I think verifying things is something an llm can do better than a human.
You and I disagree on this specific point.
Edit: I find your comment a bit distasteful. If you can provide a scenario where it can get it incorrect, that’s a good discussion point. I don’t see many places where LLMs can’t verify as good as humans. If I developed a new business logic like - users from country X should not be able to use this feature - LLM can very easily verify this by generating its own sample api call and checking the response.
The whole point is that you can't 100% trust the LLM to infer your intent with accuracy from lossy natural language. Having it write tests doesn't change this, it's only asserting that its view of what you want is internally consistent, it is still just as likely to be an incorrect interpretation of your intent.
Have you worked in software long? You can't trust the humans in charge either.
OS and browsers are bloated messes, insecure to the core. Web apps are similarly just giant string mangling disasters.
Most of them are just engaged in labor role-play, there to earn nation state scrip for food/shelter.
SWEs have memorized endless amount of nonsense about their role to keep their jobs. You all have tons to say about software but little idea what's salient and just memorized nonsense parroted on the job all the time.
Just a few years ago code gen quality was impossible to SWEs. In the 00s SWEs were certain no business would trust their data to the cloud.
Everything software can be whittled down to geometry generation and presentation, even text. End users can label outputs mechanical turk style and apply whatever syntax they want, while the machine itself handles arithemtic and Boolean logic against memory, and syncs output to the display.
All the linguist gibberish in the typical software stack will be compressed[1] away, all the SWE middlemen unemployed.
As an EE of 30 years, I look forward to the end of the most inane era of human "engineering" ever.
Rotary phone assembly workers have a support group for you all.
The whole point is that you can't 100% trust the LLM to infer your intent with accuracy from lossy natural language.
Then it seems like the only workable solution from your perspective is a solo member team working on a product they came up with. Because as soon as there's more than one person on something, they have to use "lossy natural language" to communicate it between themselves.
We do have a system of checks and balances that does a reasonable job of it. Not everyone in position of power is willing to burn their reputation and land in jail. You don't check the food at the restaurant for poison, nor check the gas in your tank if it's ok. But you would if the cook or the gas manufacturer was as reliable as current LLMs.
> If the spec was sufficient to fully specify the program, it would be the program
Very salient concept in regards to LLM's and the idea that one can encode a program one wishes to see output in natural English language input. There's lots of room for error in all of these LLM transformations for same reason.
I explored the different mental frameworks for how we use LLMs here: https://yagmin.com/blog/llms-arent-tools/ I think the "software factory" is currently the end state of using LLMs in most people's minds, but I think there is (at least) one more level: LLMs as applications.
Which is more or less creating a customized harness. There is a lot more that is possiible once we move past the idea that harnesses are just for workflow variations for engineers.
the agentic shift is where the legal and insurance worlds are really going to struggle. we know how to model human error, but modeling an autonomous loop that makes a chain of small decisions leading to a systemic failure is a whole different beast. the audit trail requirements for these factories are going to be a regulatory nightmare.
I think the insurance industry is will take a simpler route: humans will be held 100% responsible. Any decisions made by the ai will be the responsibility of the human instructing that ai. Always.
I think this will act as a brake on the agentic shift as a whole.
> If you haven’t spent at least $1,000 on tokens today per human engineer, your software factory has room for improvement
At that point, outside of FAANG and their salaries, you are spending more on AI than you are on your humans. And they consider that level of spend to be a metric in and of itself. I'm kinda shocked the rest of the article just glossed over that one. It seems to be a breakdown of the entire vision of AI-driven coding. I mean, sure, the vendors would love it if everyone's salary budget just got shifted over to their revenue, but such a world is absolutely not my goal.
This is an interesting point but if I may offer a different perspective:
Assuming 20 working days a month: that's 20k x 12 == 240k a year. So about a fresh grad's TC at FANG.
Now I've worked with many junior to mid-junior level SDEs and sadly 80% does not do a better job than Claude. (I've also worked with staff level SDEs who writes worse code than AI, but they offset that usually with domain knowledge and TL responsibilities)
I do see AI transform software engineering into even more of a pyramid with very few human on top.
Important too, a fully loaded salary costs the company far more than the actual salary that the employee receives. That would tip this balancing point towards 120k salaries, which is well into the realm of non-FAANG
It would depend on the speed of execution, if you can do the same amount of work in 5 days with spending 5k, vs spending a month and 5k on a human the math makes more sense.
Tokens will become significantly more expensive in the short term actually. This is not stemming from some sort of anti-AI sentiment. You have two ramps that are going to drive this. 1. Increase demand, linear growth at least but likely this is already exponential. 2. Scaling laws demand, well, more scale.
Future better models will both demand higher compute use AND higher energy. We cannot underestimate the slowness of energy production growth and also the supplies required for simply hooking things up. Some labs are commissioning their own power plants on site, but this is not a true accelerator for power grid growth limits. You're using the same supply chain to build your own power plant.
If inference cost is not dramatically reduced and models don't start meaningfully helping with innovations that make energy production faster and inference/training demand less power, the only way to control demand is to raise prices. Current inference costs, do not pay for training costs. They can probably continue to do that on funding alone, but once the demand curve hits the power production limits, only one thing can slow demand and that's raising the cost of use.
$1,000 is maybe 5$ per workday. I measure my own usage and am on the way to $6,000 for a full year. I'm still at the stage where I like to look at the code I produce, but I do believe we'll head to a state of software development where one day we won't need to.
Scroll further down (specifically to the section titled "Wait, $1,000/day per engineer?"). The quote in the quoted article (so from the original source in factory.strongdm.ai) could potentially be read either way, but Simon Willison (the direct link) absolutely is interpreting it as $1000/dev/day. I also think $1000/dev/day is the intended meaning in the strongdm article.
"If you haven't spent at least $1,000 on tokens today per human engineer, your software factory has room for improvement"
Apart from being a absolutely ridiculous metric, this is a bad approach, at least with current generation models. In my experience, the less you inspect what the model does, the more spaghetti-like the code will be. And the flying spaghetti monster eats tokens faster than you can blink! Or put more clearly: implementing a feature will cost you a lot more tokens in a messy code base than it does in a clean one. It's not (yet) enough to just tell the agent to refactor and make it clean, you have to give it hints on how to organise the code.
I'd go do far as to say that if you're burning a thousand dollars a day per engineer, you're getting very little bang for your tokens.
It's short-term vs long-term optimization. Short-term optimization is making the system effective right now. Long-term optimization is exploring ways to improve the system as a whole.
This one is worth paying attention to to. They're the most ambitious team I've see exploring the limits of what you can do with this stuff. It's eye-opening.
> If you haven’t spent at least $1,000 on tokens today per human engineer, your software factory has room for improvement
Seems to me like if this is true I'm screwed no matter if I want to "embrace" the "AI revolution" or not. No way my manager's going to approve me to blow $1000 a day on tokens, they budgeted $40,000 for our team to explore AI for the entire year.
Let alone from a personal perspective I'm screwed because I don't have $1000 a month in the budget to blow on tokens because of pesky things that also demand financial resources like a mortgage and food.
At this point it seems like damned if I do, damned if I don't. Feels bad man.
This is the part that feels right to me because agents are idiots.
I built a tool that writes (non shit) reports from unstructured data to be used internally by analysts at a trading firm.
It cost between $500 to $5000 per day per seat to run.
It could have cost a lot more but latency matters in market reports in a way it doesn't for software. I imagine they are burning $1000 per day per seat because they can't afford more.
They are idiots, but getting better. Ex: wrote an agent skill to do some read only stuff on a container filesystem. Stupid I know, it’s like a maintainer script that can make recommendations, whatever.
Another skill called skill-improver, which tries to reduce skill token usage by finding deterministic patterns in another skill that can be scripted, and writes and packages the script.
Putting them together, the container-maintenance thingy improves itself every iteration, validated with automatic testing. It works perfectly about 3/4 of the time, another half of the time it kinda works, and fails spectacularly the rest.
It’s only going to get better, and this fit within my Max plan usage while coding other stuff.
LLMs are idiots and they will never get better because they have quadratic attention and a limited context window.
If the tokens that need to attend to each other are on opposite ends of the code base the only way to do that is by reading in the whole code base and hoping for the best.
If you're very lucky you can chunk the code base in such a way that the chunks pairwise fit in your context window and you can extract the relevant tokens hierarchically.
If you're not. Well get reading monkey.
Agents, md files, etc. are bandaids to hide this fact. They work great until they don't.
I wonder if this is just a byproduct of factories being very early and very inefficient. Yegge and Huntley both acknowledge that their experiments in autonomous factories are extremely expensive and wasteful!
I would expect cost to come down over time, using approaches pioneered in the field of manufacturing.
My friend works at Shopify and they are 100% all in on AI coding. They let devs spend as much as they want on whatever tool they want. If someone ends up spending a lot of money, they ask them what is going well and please share with others. If you’re not spending they have a different talk with you.
As for me, we get Cursor seats at work, and at home I have a GPU, a cheap Chinese coding plan, and a dream.
> If someone ends up spending a lot of money, they ask them what is going well and please share with others. If you’re not spending they have a different talk with you.
Make a "systemctl start tokenspender.service" and share it with the team?
I read that as combined, up to this point in time. You have 20 engineers? If you haven't spent at least $20k up to this point, you've not explored or experienced enough of the ins and outs to know how best to optimize the use of these tools.
I didn't read that as you need to be spending $1k/day per engineer. That is an insane number.
EDIT: re-reading... it's ambiguous to me. But perhaps they mean per day, every day. This will only hasten the elimination of human developers, which I presume is the point.
Same. Feels like it goes against the entire “hacker” ethos that brought me here in the first place. That sentence made me actually feel physically sick on initial read as well. Everyday now feels like a day where I have exponentially less & less interest in tech. If all of this AI that’s burning the planet is so incredible, where are the real world tangible improvements? I look around right now and everything in tech, software, internet, etc. has never looked so similar to a dumpster fire of trash.
The biggest rewards for human developers came from building addictive eyeball-getters for adverts so I don’t see how we can expect a very high bar for the results of their replacement AI factories. Real-world and tangible just seem completely out of the picture.
I think corporate incentives vs personal incentives are slightly different here. As a company trying to experiment in this moment, you should be betting on token cost not being the bottleneck. If the tooling proves valuable, $1k/day per engineer is actually pretty cheap.
At home on my personal setup, I haven't even had to move past the cheapest codex/claude code subscription because it fulfills my needs ¯\_(ツ)_/¯. You can also get a lot of mileage out of the higher tiers of these subscriptions before you need to start paying the APIs directly.
In big companies there is always waste, it's just not possible to be super efficient when you have tens of thousands of people. It's one thing in a steady state, low-competition business where you can refine and optimize processes so everyone knows exactly what their job is, but that is generally not the environment that software companies operate in. They need to be able innovate and stay competitive, never moreso than today.
The thing with AI is that it ranges from net-negative to easily brute forcing tedious things that we never have considered wasting human time on. We can't figure out where the leverage is unless all the subject matter experts in their various organizational niches really check their assumptions and get creative about experimenting and just trying different things that may never have crossed their mind before. Obviously over time best practices will emerge and get socialized, but with the rate that AI has been improving lately, it makes a lot of sense to just give employees carte blanche to explore. Soon enough there will be more scrutiny and optimization, but that doesn't really make sense without a better understanding of what is possible.
I assumed that they are saying that you spend $1k per day and that makes the developer as productive as some multiple of the number of people you could hire for that $1k.
I do not really agree with the below, but the logic is probably:
1) Engineering investment at companies generally pays off in multiples of what is spent on engineering time. Say you pay 10 engineers $200k / year each and the features those 10 engineers build grow yearly revenue by $10M. That’s a 4x ROI and clearly a good deal. (Of course, this only applies up to some ceiling; not every company has enough TAM to grow as big as Amazon).
2) Giving engineers near-unlimited access to token usage means they can create even more features, in a way that still produces positive ROI per token. This is the part I disagree with most. It’s complicated. You cannot just ship infinite slop and make money. It glosses over massive complexity in how software is delivered and used.
3) Therefore (so the argument goes) you should not cap tokens and should encourage engineers to use as many as possible.
Like I said, I don’t agree with this argument. But the key thing here is step 1. Engineering time is an investment to grow revenue. If you really could get positive ROI per token in revenue growth, you should buy infinite tokens until you hit the ceiling of your business.
Of course, the real world does not work like this.
Right, I understand of course that AI usage and token costs are an investment (probably even a very good one!).
But my point is moreso that saying 1k a day is cheap is ridiculous. Even for a company that expects an ROI on that investment. There’s risks involved and as you said, diminishing returns on software output.
I find AI bros view of the economics of AI usage strange. It’s reasonable to me to say you think its a good investment, but to say it’s cheap is a whole different thing.
Oh sure. We agree on all you said. I wouldn’t call it cheap either. :)
The best you can say is “high cost but positive ROI investment.” Although I don’t think that’s true beyond a certain point either, certainly not outside special cases like small startups with a lot of funding trying to build a product quickly. You can’t just spew tokens about and expect revenue to increase.
That said, I do reserve some special scorn for companies that penny-pinch on AI tooling. Any CTO or CEO who thinks a $200/month Claude Max subscription (or equivalent) for each developer is too much money to spent really needs to rethink their whole model of software ROI and costs. You’re often paying your devs >$100k yr and you won’t pay $2k / yr to make them more productive? I understand there are budget and planning cycle constraints blah blah, but… really?!
Can you make an ethical declaration here, stating whether or not you are being compensated by them?
Their page looks to me like a lot of invented jargon and pure narrative. Every technique is just a renamed existing concept. Digital Twin Universe is mocks, Gene Transfusion is reading reference code, Semport is transpilation. The site has zero benchmarks, zero defect rates, zero cost comparisons, zero production outcomes. The only metric offered is "spend more money".
Anyone working honestly in this space knows 90% of agent projects are failing.
The main page of HN now has three to four posts daily with no substance, just Agentic AI marketing dressed as engineering insight.
With Google, Microsoft, and others spending $600 billion over the next year on AI, and panicking to get a return on that Capex....and with them now paying influencers over $600K [1] to manufacture AI enthusiasm to justify this infrastructure spend, I won't engage with any AI thought leadership that lacks a clear disclosure of financial interests and reproducible claims backed by actual data.
Show me a real production feature built entirely by agents with full traces, defect rates, and honest failure accounting. Or stop inventing vocabulary and posting vibes charts.
> Every technique is just a renamed existing concept. Digital Twin Universe is mocks, Gene Transfusion is reading reference code, Semport is transpilation. The site has zero benchmarks, zero defect rates, zero cost comparisons, zero production outcomes. The only metric offered is "spend more money".
Repeating for emphasis, because this is the VERY obvious question anyone with a shred of curiosity would be asking not just about this submission but about what is CONSTANTLY on the frontpage these days.
There could be a very simple 5 question questionnaire that could eliminate 90+% of AI coding requests before they start:
- Is this a small wrapper around just querying an existing LLM
- Does a brief summary of this searched with "site:github" already return dozens or hundreds of results?
- Is this a classic scam (pump&dump, etc) redone using "AI"
- Is this needless churn between already high level abstractions of technology (dashboard of dashboards, yaml to json, python to java script, automation of automation framework)
Thank you. Your disclosure page is better than all other AI commentators as
most disclose nothing at all. You do disclose an OpenAI payment, Microsoft travel,
and the existence of preview relationships.
However I would argue there are significant gaps:
- You do not name your consulting clients. You admit to do ad-hoc consulting and training
for unnamed companies while writing daily about AI products.
Those client names are material information.
- You have non payments that have monetary value. Free API credits, and weeks of early preview access,
flights, hotels, dinners, and event invitations are all compensation.
Do you keep those credits?
- The "I have not accepted payments from LLM vendors" could mean
receiving things worth thousands of dollars. Please note I am not saying you did.
- You have a structural conflict. Your favorable coverage will mean preview access, then exclusive content then traffic, then sponsors, then consulting clients.
- You appeared in an OpenAI promotional video for GPT-5 and were paid for it. This is influencer marketing by any definition.
- Your quotes are used as third-party validation in press coverage of AI product launches. This is a PR function with commercial value to these companies.
The FTC revised Endorsement Guides explicitly apply to bloggers, not just social media influencers.
The FTC defines material connection to include not only cash payments but also free products,
early access to a product, event invitations, and appearing in promotional media
all of which would seem to apply here.
They also say in the FTC own "Disclosures 101" guide that states [2]: "...Disclosures are likely to be missed
if they appear only on an ABOUT ME or profile page, at the end of posts or videos, or
anywhere that requires a person to click MORE."
I would argue an ecosystem of free access, preview privileges, promotional video appearances, API credits,
and undisclosed consulting does constitute a financial relationship that should be more transparently
disclosed than "I have not accepted payments from LLM vendors."
The problem with naming my consulting clients that some of them won't want to be named. I don't want to turn down paid work because I have a popular blog.
I have a very strong policy that I won't write about someone because they paid me to do so, or asked me to as part of a consulting engagement. I guess you'll just have to trust me that I'll hold to that. I like to hope I've earned the trust of most of my readers.
I do have a structural conflict, which is one of the reasons my disclosures page exists. I don't value things like early access enough to avoid writing critically about companies, but the risk of subtle bias is always there. I can live with that, and I trust my readers can live with it too.
I've found myself in a somewhat strange position where my hobby - blogging about stuff I find interesting - has somehow grown to the point that I'm effectively single-handedly running an entire news agency covering the world's most valuable industry. As a side-project.
I could commit to this full-time and adopt full professional journalist ethics - no accepted credits, no free travel etc. I'd still have to solve the revenue side of things, and if I wrote full time I'd give up being a practitioner which would damage my ability to credibly cover the space. Part of the reason people trust me is that I'm an active developer and user of these tools.
On top of that, some people default to believing that the only reason anyone would write anything positive about AI is if they were being paid to do so. Convincing those people otherwise is a losing battle, and I'm trying to learn not to engage.
So I'm OK with my disclosures and principles as they stand. They may not get a 100% pure score from everyone, but they're enough to satisfy my own personal ethics.
The problem with these "shill for an AI company" thoughts is that it really doesn't matter how good their shilling or salesmanship is. They actually do need to provide value for it to be successful
These aren't tools they're asking $25,000 upfront for, that they can trick us that it for sure definitely works and get the huge lump sum then run
Nah.. at best they get a few dollars upfront for us to try it out. Then what? If it doesn't deliver on their promise, it flops
>> at best they get a few dollars upfront for us to try it out.
The hyperscalers are spending 600 billion a year, and literally betting their companies future, on what will happen over the next 24 months...but the bloggers are all doing it for philanthropy and to play with cool tech....Got it...
Let's say super popular blogger x is paid a million dollars to shill for AI and they convince you it's revolutionary. What then? Well of course you try it! You pay OpenAI $20 for a month
What happens after that, the actual experience of using the product, is the only important thing. If it sucks and provides no value to anyone, OpenAI fails. Sleezy marketing and salesmen can only get you in the door. They can't make a shit product amazing
A $10,000 get rich quick course can be made successful on hopes, dreams and sales tactics. A monthly subscription tool to help people with their work crashes and burns if it doesn't provide value
It is tempting to be stealthy when you start seeing discontinuous capabilities go from totally random to somewhat predictable. But most of the key stuff is on GitHub.
The moats here are around mechanism design and values (to the extent they differ): the frontier labs are doomed in this world, the commons locked up behind paywalls gets hyper mirrored, value accrues in very different places, and it's not a nice orderly exponent from a sci-fi novel. It's nothing like what the talking heads at Davos say, Anthropic aren't in the top five groups I know in terms of being good at it, it'll get written off as fringe until one day it happens in like a day. So why be secretive?
You get on the ladder by throwing out Python and JSON and learning lean4, you tie property tests to lean theorems via FFI when you have to, you start building out rfl to pretty printers of proven AST properties.
And yeah, the droids run out ahead in little firecracker VMs reading from an effect/coeffect attestation graph and writing back to it. The result is saved, useful results are indexed. Human review is about big picture stuff, human coding is about airtight correctness (and fixing it when it breaks despite your "proof" that had a bug in the axioms).
Programming jobs are impacted but not as much as people think: droids do what David Graeber called bullshit jobs for the most part and then they're savants (not polymath geniuses) at a few things: reverse engineering and infosec they'll just run you over, they're fucking going in CIC.
What would happen if these agents are given a token lifespan, and are told to continually spend tokens to create more agentic children, and give their genetic and data makeup such as it is to children that it creates with other agents sexually potentially, but then tokens are limited and they can not get enough without certain traits.
Wouldn’t they start to evolve to be able to reproduce more and eat more tokens? And then they’d be mature agents to take further human prompts to gain more tokens?
Would you see certain evolutionary strategies reemerge like carnivores eating weaker agents for tokens, eating of detritus of old code, or would it be more like evolution of roles in a company?
I assume the hurdles would be agents reproducing? How is that implemented?
> That idea of treating scenarios as holdout sets—used to evaluate the software but not stored where the coding agents can see them—is fascinating. It imitates aggressive testing by an external QA team—an expensive but highly effective way of ensuring quality in traditional software.
This is one of the clearest takes I've seen that starts to get me to the point of possibly being able to trust code that I haven't reviewed.
The whole idea of letting an AI write tests was problematic because they're so focused on "success" that `assert True` becomes appealing. But orchestrating teams of agents that are incentivized to build, and teams of agents that are incentivized to find bugs and problematic tests, is fascinating.
I'm quite curious to see where this goes, and more motivated (and curious) than ever to start setting up my own agents.
Question for people who are already doing this: How much are you spending on tokens?
That line about spending $1,000 on tokens is pretty off-putting. For commercial teams it's an easy calculation. It's also depressing to think about what this means for open source. I sure can't afford to spend $1,000 supporting teams of agents to continue my open source work.
Re: $1k/day on tokens - you can also build a local rig, nothing "fancy". There was a recent thread here re: the utility of local models, even on not-so-fancy hardware. Agents were a big part of it - you just set a task and it's done at some point, while you sleep or you're off to somewhere or working on something else entirely or reading a book or whatever. Turn off notifications to avoid context switches.
If they're able to communicate with each other. But I'm pretty sure we could keep that from happening.
I don't take your comment as dismissive, but I think a lot of people are dismissing interesting and possibly effective approaches with short reactions like this.
I'm interested in the approach described in this article because it's specifying where the humans are in all this, it's not about removing humans entirely. I can see a class of problems where any non-determinism is completely unacceptable. But I can also see a large number of problems where a small amount of non-determinism is quite acceptable.
> In rule form:
- Code must not be written by humans
- Code must not be reviewed by humans
as a previous strongDM customer, i will never recommend their offering again. for a core security product, this is not the flex they think it is
also mimicking other products behavior and staying in sync is a fools task. you certainly won't be able to do it just off the API documentation. you may get close, but never perfect and you're going to experience constant breakage
Thanks for the reply (always enjoy your sqlite content). It's definitely going to be interesting to see how all these AI labs playout when they are how the core business is built.
Important to note that this is the approach taken by their AI research lab over the past six months, it's not (yet) reflective of how they build the core product.
Some of this is people trying to predict the future.
And it’s not unreasonable to assume it’s going there.
That being said, the models are not there yet. If you care about quality, you still need humans in the loop.
Even when given high quality specs, and existing code to use as an example, and lots of parallelism and orchestration, the models still make a lot of mistakes.
There’s lots of room for Software Factories, and Orchestrators, and multi agent swarms.
But today you still need humans reviewing code before you merge to main.
Models are getting better, quickly, but I think it’s going to be a while before “don’t have humans look at the code” is true.
I'm just going to say: When opening the "twins" (bad clones) screenshots, I pressed the right key to view the next image, and surprise, the next "article" of the top navigation bar was loaded, instead of showing the next image.
Is this the quality we should expect from agentic? From my experiments with claude code, yes, the UX details are never there. Especially for bigger features. It can work reasonably well independently up to a "module" level (with clear interfaces). But for full app design, while technically possible, the UX and visual design is just not there.
And I am very not attracted to the idea of polishing such an agentic apps. A solution could be:
1. The boss prompts the system with what he wants.
2. The boss outsources to india the task of polishing the rough edges.
===
More on the arrow keys navigation:
Pressing right on the last "Products" page loops to the first "Story" page, yet pressing left on the first page does nothing. Typical UX inconsistency of vibe coded software.
> we transitioned from boolean definitions of success ("the test suite is green") to a probabilistic and empirical one. We use the term satisfaction to quantify this validation: of all the observed trajectories through all the scenarios, what fraction of them likely satisfy the user?
Oh, to have the luxury of redefining success and handwaving away hard learned lessons in the software industry.
What has strongdm actually built? Are their users finding value from their supposed productivity gains?
If their focus is to only show their productivity/ai system but not having built anything meaningful with it, it feels like one of those scammy life coaches/productivity gurus that talk about how they got rich by selling their courses.
$100 says they're still doing leetcode interviews.
If everyone can do this, there won't be any advantage (or profit) to be had from it very soon. Why not buy your own hardware and run local models, I wonder.
I would spend those $100 on either API tokens or donate to a charity of your choice. My interview to join this team was whether I could build something of my choosing in under an hour with any coding agent of my choice.
No local model out there is as good as the SOTA right now.
> As I understood it the trick was effectively to dump the full public API documentation of one of those services into their agent harness and have it build an imitation of that API, as a self-contained Go binary. They could then have it build a simplified UI over the top to help complete the simulation.
This is still the same problem -- just pushed back a layer. Since the generated API is wrong, the QA outcomes will be wrong, too. Also, QAing things is an effective way to ensure that they work _after_ they've been reviewed by an engineer. A QA tester is not going to test for a vulnerability like a SQL injection unless they're guided by engineering judgement which comes from an understanding of the properties of the code under test.
The output is also essentially the definition of a derivative work, so it's probably not legally defensible (not that that's ever been a concern with LLMs).
On the cxdb “product” page one reason they give against rolling your own is that it would be “months of work”. Slipped into an archaic off-brand mindset there, no?
I like the idea but I'm not so sure this problem can be solved generally.
As an example: imagine someone writing a data pipeline for training a machine learning model. Anyone who's done this knows that such a task involves lots data wrangling work like cleaning data, changing columns and some ad hoc stuff.
The only way to verify that things work is if the eventual model that is trained performs well.
In this case, scenario testing doesn't scale up because the feedback loop is extremely large - you have to wait until the model is trained and tested on hold out data.
Scenario testing clearly can not work on the smaller parts of the work like data wrangling.
Effectively everyone is building the same tools with zero quantitative benchmarks or evidence behind the why / ideas … this entire space is a nightmare to navigate because of this. Who cares without proper science, seriously? I look through this website and it looks like a preview for a course I’m supposed to buy … when someone builds something with these sorts of claims attached, I assume that there is going to be some “real graphs” (“these are the number of times this model deviated from the spec before we added error correction …”)
What we have instead are many people creating hierarchies of concepts, a vast “naming” of their own experiences, without rigorous quantitative evaluation.
I may be alone in this, but it drives me nuts.
Okay, so with that in mind, it amounts to heresay “these guys are doing something cool” — why not shut up or put up with either (a) an evaluation of the ideas in a rigorous, quantitative way or (b) apply the ideas to produce an “hard” artifact (analogous, e.g., to the Anthropic C compiler, the Cursor browser) with a reproducible pathway to generation.
The answer seems to be that (b) is impossible (as long as we’re on the teet of the frontier labs, which disallow the kind of access that would make (b) possible) and the answer for (a) is “we can’t wait we have to get our names out there first”
I’m disappointed to see these types of posts on HN. Where is the science?
Honestly I've not found a huge amount of value from the "science".
There are plenty of papers out there that look at LLM productivity and every one of them seems to have glaring methodology limitations and/or reports on models that are 12+ months out of date.
Have you seen any papers that really elevated your understanding of LLM productivity with real-world engineering teams?
No, I agree! But I don’t think that observation gives us license to avoid the problem.
Further, I’m not sure this elevates my understanding: I’ve read many posts on this space which could be viewed as analogous to this one (this one is more tempered, of course). Each one has this same flaw: someone is telling me I need to make a “organization” out of agents and positive things will follow.
Without a serious evaluation, how am I supposed to validate the author’s ontology?
Do you disagree with my assessment? Do you view the claims in this content as solid and reproducible?
My own view is that these are “soft ideas” (GasTown, Ralph fall into a similar category) without the rigorous justification.
What this amounts to is “synthetic biology” with billion dollar probability distributions — where the incentives are setup so that companies are incentivized to convey that they have the “secret sauce” … for massive amounts of money.
To that end, it’s difficult to trust a word out of anyone’s mouth — even if my empirical experiences match (along some projection).
The multi-agent "swarm" thing (that seems to be the term that's bubbling to the top at the moment) is so new and frothy that is difficult to determine how useful it actually is.
StrongDM's implementation is the most impressive I've seen myself, but it's also incredibly expensive. Is it worth the cost?
Cursor's FastRender experiment was also interesting but also expensive for what was achieved.
I think my favorite current example at the moment was Anthropic's $20,000 C compiler from the other day. But they're an AI vendor, demos from non-vendors carry more weight.
I've seen enough to be convinced that there's something there, but I'm also confident we aren't close to figuring out the optimal way of putting this stuff to work yet.
But the absence of papers is precisely the problem and why all this LLM stuff has become a new religion in the tech sphere.
Either you have faith and every post like this fills you with fervor and pious excitement for the latest miracles performed by machine gods.
Or you are a nonbeliever and each of these posts is yet another false miracle you can chalk up to baseless enthusiasm.
Without proper empirical method, we simply do not know.
What's even funnier about it is that large-scale empirical testing is actually necessary in the first place to verify that a stochastic processes is even doing what you want (at least on average). But the tech community has become such a brainless atmosphere totally absorbed by anecdata and marketing hype that no one simply seems to care anymore. It's quite literally devolved into the religious ceremony of performing the rain dance (use AI) because we said so.
One thing the papers help provide is basic understanding and consistent terminology, even when the models change. You may not find value in them but I assure you that the actual building of models and product improvements around them is highly dependent on the continual production of scientific research in machine learning, including experiments around applications of llms. The literature covers many prompting techniques well, and in a scientific fashion, and many of these have been adopted directly in products (chain of thought, to name one big example—part of the reason people integrate it is not because of some "fingers crossed guys, worked on my query" but because researchers have produced actual statistically significant results on benchmarks using the technique) To be a bit harsh, I find your very dismissal of the literature here in favor of hype-drenched blog posts soaked in ridiculous language and fantastical incantations to be precisely symptomatic of the brain rot the LLM craze has produced in the technical community.
I do find value in papers. I have a series of posts where I dig into papers that I find noteworthy and try to translate them into more easily understood terms. I wish more people would do that - it frustrates me that paper authors themselves only occasionally post accompanying commentary that helps explain the paper outside of the confines of academic writing. https://simonwillison.net/tags/paper-review/
One challenge we have here is that there are a lot of people who are desperate for evidence that LLMs are a waste of time, and they will leap on any paper that supports that narrative. This leads to a slightly perverse incentive where publishing papers that are critical of AI is a great way to get a whole lot of attention on that paper.
In that way academic papers and blogging aren't as distinct as you might hope!
Having submitted this I would also suggest the website admin revisit their testing; its very slow on my phone. Obviously fails on aesthetics and accessibility as well. Submitted for the essay.
I have been working on my own "Digital Twins Universe" because 3rd-party SaaS tools often block the tight feedback loops required for long-horizon agentic coding. Unlike Stripe, which offers a full-featured environment usable in both development and staging, most B2B SaaS companies lack adequate fidelity (e.g., missing webhooks in local dev) or even a basic staging environment.
Taking the time to point a coding agent towards the public (or even private) API of a B2B SaaS app to generate a working (partial) clone is effectively "unblocking" the agent. I wouldn't be surprised if a "DTU-hub" eventually gains traction for publishing and sharing these digital twins.
I would love to hear more about your learnings from building these digital twins. How do you handle API drift? Also, how do you handle statefulness within the twins? Do you test for divergence? For example, do you compare responses from the live third-party service against the Digital Twin to check for parity?
The solution to this problem is not throwing everything at AI. To get good results from any AI model, you need an architect (human) instructing it from the top. And the logic behind this is that AI has been trained on millions of opinions on getting a particular task done. If you ask a human, they almost always have one opinionated approach for a given task. The human's opinion is a derivative of their lived experience, sometimes foreseeing all the way to the end result an AI cannot foresee. Eg. I want a database column a certain type because I'm thinking about adding an E-Commerce feature to my CMS later. An AI might not have this insight.
Of course, you can't always tell the model what to do, especially if it is a repeated task. It turns out, we already solved this decades ago using algorithms. Repeatable, reproducible, reliable. The challenge (and the reward) lies in separating the problem statement into algorithmic and agentic. Once you achieve this, the $1000 token usage is not needed at all.
I have a working prototype of the above and I'm currently productizing it (shameless plug):
However - I need to emphasize, the language you use to apply the pattern above matters. I use Elixir specifically for this, and it works really, really well.
It works based off starting with the architect. You. It feeds off specs and uses algorithms as much as possible to automate code generation (eg. Scaffolding) and only uses AI sparsely when needed.
Of course, the downside of this approach is that you can't just simply say "build me a social network". You can however say something like "Build me a social network where users can share photos, repost, like and comment on them".
Once you nail the models used in the MVC pattern, their relationships, the software design is pretty much 50% battle won. This is really good for v1 prototypes where you really want best practices enforced, OSWAP compliant code, security-first software output which is where a pure agentic/AI approach would mess up.
IT perspective here. Simon hits the nail on the head as to what I'm genuinely looking forward to:
> How do you clone the important parts of Okta, Jira, Slack and more? With coding agents!
This is what's going to gut-punch most SaaS companies repeatedly over the next decade, even if this whole build-out ultimately collapses in on itself (which I expect it to). The era of bespoke consultants for SaaS product suites to handle configuration and integrations, while not gone, are certainly under threat by LLMs that can ingest user requirements and produce functional code to do a similar thing at a fraction of the price.
What a lot of folks miss is that in enterprise-land, we only need the integration once. Once we have an integration, it basically exists with minimal if any changes until one side of the integration dies. Code fails a security audit? We can either spool up the agents again briefly to fix it, or just isolate it in a security domain like the glut of WinXP and Win7 boxen rotting out there on assembly lines and factory floors.
This is why SaaS stocks have been hammered this week. It's not that investors genuinely expect huge players to go bankrupt due to AI so much as they know the era of infinite growth is over. It's also why big AI companies are rushing IPOs even as data center builds stall: we're officially in a world where a locally-run model - not even an Agent, just a model in LM Studio on the Corporate Laptop - can produce sufficient code for a growing number of product integrations without any engineer having to look through yet another set of API documentation. As agentic orchestration trickles down to homelabs and private servers on smaller, leaner, and more efficient hardware, that capability is only going to increase, threatening profits of subscription models and large AI companies. Again, why bother ponying up for a recurring subscription after the work is completed?
For full-fledged software, there's genuine benefit to be had with human intervention and creativity; for the multitude of integrations and pipelines that were previously farmed out to pricey consultants, LLMs will more than suffice for all but the biggest or most complex situations.
Stuff comes in from an API goes out to a different API.
With a semi-decent agent I can build what took me a week or two in hours just because it can iterate the solution faster than any human can type.
A new field in the API could’ve been a two day ordeal of patching it through umpteen layers of enterprise frameworks. Now I can just tell Claude to add it, it’ll do it up to the database in minutes - and update the tests at the same time.
And because these are all APIs, we can brute-force it with read-only operations with minimal review times. If the read works, the write almost always will, and then it's just a matter of reading and documenting the integration before testing it in dev or staging.
So much of enterprise IT nowadays is spent hammering or needling vendors for basic API documentation so we can write a one-off that hooks DB1 into ServiceNow that's also pulling from NewRelic just to do ITAM. Consultants would salivate over such a basic integration because it'd be their yearly salary over a three month project.
Now we can do this ourselves with an LLM in a single sprint.
> Those of us building software factories must practice a deliberate naivete
This is a great way to put it, I've been saying "I wonder which sacred cows are going to need slaughtered" but for those that didn't grow up on a farm, maybe that metaphor isn't the best. I might steal yours.
This stuff is very interesting and I'm really interested to see how it goes for you, I'll eagerly read whatever you end up putting out about this. Good luck!
EDIT: oh also the re-implemented SaaS apps really recontextualizes some other stuff I’ve been doing too…
This was an experiment that Justin ran: one person fresh out of college, and another with a long, traditional career.
Even though all three of us have very different working styles, we all seem to be very happy with the arrangement.
You definitely need to keep an open mind, though, and be ready to unlearn some things. I guess I haven’t spent enough time in the industry yet to develop habits that might hinder adopting these tools.
Jay single-handedly developed the digital twin universe. Only one person commits to a codebase :-)
I’ve been building using a similar approach[1] and my intuition is that humans will be needed at some points in the factory line for specific tasks that require expertise/taste/quality. Have you found that the be the case? Where do you find that humans should be involved in the process of maximal leverage?
To name one probable area of involvement: how do you specify what needs to be built?
Your intuition/thinking definitely lines up with how we're thinking about this problem. If you have a good definition of done and a good validation harness, these agents can hill climb their way to a solution.
But you still need human taste/judgment to decide what you want to build (unless your solution is to just brute force the entire problem space).
For maximal leverage, you should follow the mantra "Why am I doing this?" If you use this enough times, you'll come across the bottleneck that can only be solved by you for now. As a human, your job is to set the higher-level requirements for what you're trying to build. Coming up with these requirements and then using agents to shape them up is acceptable, but human judgment is definitely where we have to answer what needs to be built. At the same time, I never want to be doing something the models are better at. Until we crack the proactiveness part, we'll be required to figure out what to do next.
Also, it looks like you and Danvers are working in the same space, and we love trading notes with other teams working in this area. We'd love to connect. You can either find my personal email or shoot me an email at my work email: navan.chauhan [at] strongdm.com
how about the elephant.. Apart of business-spec itself, Where-from all those (supply-chain) API specs/documentation are going to come? After, say, 3 iterations in this vein, of the API-makers themselves ??
That's a genuine problem now. If you launch a new feature and your competition can ship their own copy a few hours later the competitive dynamics get really challenging!
My hunch is that the thing that's going to matter is network effects and other forms of soft lockin. Features alone won't cut it - you need to build something where value accumulates to your user over time in a way that discourages them from leaving.
The interesting part about that is both of those things require some sort of time to start.
If I launch a new product, and 4 hours later competitors pop up, then there's not enough time for network effects or lockin.
I'm guessing what is really going to be needed is something that can't be just copied. Non-public data, business contracts, something outside of software.
Wouldn't the incumbents with their fantastic distribution channels, brand, lockin, marketing, capital and own models just wipe the floor with everyone as talent no longer matters?
I recently passed 40,000 but my Substack is free so it's not a revenue source for me. I haven't really looked at who they are - at some point it would be interesting to export the CSV of the subscribers and count by domains, I guess.
My content revenue comes from ads on my blog via https://www.ethicalads.io/ - rarely more than $1,000 in a given month - and sponsors on GitHub: https://github.com/sponsors/simonw - which is adding up to quite good money now. Those people get my sponsors-only monthly newsletter which looks like this: https://gist.github.com/simonw/13e595a236218afce002e9aeafd75... - it's effectively the edited highlights from my blog because a lot of people are too busy to read everything I put out there!
In this model the spec/scenarios are the code. These are curated and managed by humans just like code.
They say "non interactive". But of course their work is interactive. AI agents take a few minutes-hours whereas you can see code change result in seconds. That doesn't mean AI agents aren't interactive.
I'm very AI-positive, and what they're doing is different, but they are basically just lying. It's a new word for a new instance of the same old type of thing. It's not a new type of thing.
The common anti-AI trope is "AI just looked at <human output> to do this." The common AI trope from the StrongDM is "look, the agent is working without human input." Both of these takes are fundamentally flawed.
AI will always depend on humans to produce relevant results for humans. It's not a flaw of AI, it's more of a flaw of humans. Consequently, "AI needs human input to produce results we want to see" should not detract from the intelligence of AI.
Why is this true? At a certain point you just have Kolmogorov complexity, AI having fixed memory and fixed prompt size, pigeonhole principle, not every output is possible to be produced even with any input given specific model weights.
Recursive self-improvement doesn't get around this problem. Where does it get the data for next iteration? From interactions with humans.
With the infinite complexity of mathematics, for instance solving Busy Beaver numbers, this is a proof that AI can in fact not solve every problem. Humans seem to be limited in this regard as well, but there is no proof that humans are fundamentally limited this way like AI. This lack of proof of the limitations of humans is the precise advantage in intelligence that humans will always have over AI.
So much of this resonated with me, and I realize I’ve arrived at a few of the techniques myself (and with my team) over the last several months.
THIS FRIGHTENS ME. Many of us sweng are either going be FIRE millionaires, or living under a bridge, in two years.
I’ve spent this week performing SemPort; found a ts app that does a needed thing, and was able to use a long chain of prompts to get it completely reimplemented in our stack, using Gene Transfer to ensure it uses some existing libraries and concrete techniques present in our existing apps.
Now not only do I have an idiomatic Python port, which I can drop right into our stack, but I have an extremely detailed features/requirements statement for the origin typescript app along with the prompts for generating it. I can use this to continuously track this other product as it improves. I also have the “instructions infrastructure” to direct an agent to align new code to our stack. Two reusable skills, a new product, and it took a week.
My post? Shiiiii if that’s how it comes across I may delete it. I haven’t logged into LI since our last corp reorg, it was a cesspool even then. Self promotion just ain’t my bag
I was just trying to share the same patterns from OPs documentation that I found valuable within the context of agentic development; seeing them take this so far is was scares me, because they are right that I could wire an agent to do this autonomously and probably get the same outcomes, scaled.
It’s part of the “lore” that gets passed down when you join the company.
Funnily enough, the marketing department even ran a campaign asking, “What does DM stand for?!”, and the answer was “Digital Metropolis,” because we did a design refresh.
I just linked the website because that’s what the actual company does, and we are just the “AI Lab”
…What am I even reading? Am I crazy to think this is a crazy thing to say, or it’s actually crazy?
This is not an outrageous amount of money, if the productivity is there. More likely the AI would work like two $90k junior engineers, but without a need to pay for a vacation, office space, social security, etc. If the productivity ends up higher than this, it's pure profit; I suppose this is their bet.
The human engineer would be like a tech lead guiding a tea of juniors, only designing plans and checking results above the level of code proper, but for exceptional cases, like when a human engineer would look at the assembly code a compiler has produced.
This does sound exaggeratedly optimistic now, but does not sound crazy.
This looks like AI companies marketing that is something in line 1+1 or buy 3 for 2.
Money you don’t spend on tokens are the only saved money, period.
With employees you have to pay them anyway you can’t just say „these requirements make no sense, park for two days until I get them right”.
You would have to be damn sure of that you are doing the right thing to burn $1k a day on tokens.
With humans I can see many reasons why would you pay anyway and it is on you that you should provide sensible requirements to be built and make use of employees time.
You just reduced the supply of engineers from millions to just three. If you think it was expensive before ...
Google, OpenAI, Anthropic, Meta, Amazon, Reka AI, Alibaba (Qwen), 01 AI, Cohere, DeepSeek, Nvidia, Mistral, NexusFlow, Z.ai (GLM), xAI, Ai2, Princeton, Tencent, MiniMax, Moonshot (Kimi) and I've certainly missed some.
All of those organizations have trained what I'd class as a GPT-4+ level model.
aws and gcp's margins are legendarily poor
oh, wait
Big part of why clouds are expensive is not necessary hardware, but all software infra and complexity of all services.
I hear things like this all the time, but outside of a few major centers it's just not the norm. And no companies are spending anything like $1k / month on remote work environments.
The seem to be plenty of people willing to pay the AI do that junior engineer level work, so wouldn’t it make sense to defect and just wait until it has gained enough experience to do the senior engineer work?
What dystopia is this?
> $20/month Claude sub
> $20/month OpenAI sub
> When Claude Code runs out, switch to Codex
> When Codex runs out, go for a walk with the dogs or read a book
I'm not an accelerationist singularity neohuman. Oh well, I still get plenty done
Designing reliable, stable, and correct systems is already a high level task. When you actually need to write the code for it, it's not a lot and you should write it with precision. When creating novel or differently complex systems, you should (or need to) be doing it yourself anyway.
https://www.cnbc.com/2026/02/06/google-microsoft-pay-creator...
It feels like it really started in earnest around october.
If it's not labelled it's in violation of FTC regulations, for both the companies and the individuals.
[ That said... I'm surprised at this example on LinkedIn that was linked to by the Washington Post - https://www.linkedin.com/posts/meganlieu_claudepartner-activ... - the only hint it's sponsored content is the #ClaudePartner hashtag at the end, is that enough? Oh wait! There's text under the profile that says "Brand partnership" which I missed, I guess that's the LinkedIn standard for this? Feels a bit weak to me! https://www.linkedin.com/help/linkedin/answer/a1627083 ]
Setting aside the absurdity of using dollars per day spent on tokens as the new lines of code per day, have they not heard of mocks or simulation testing? These are long proven techniques, but they appear bent on taking credit for some kind revolutionary discovery by recasting these standard techniques as a Digital Twin Universe.
One positive(?) thing I'll say is that this fits well with my experience of people who like to talk about software factories (or digital factories), but at least they're up front about the massive cost of this type of approach - whereas "digital factories" are typically cast as a miracle cure that will reduce costs dramatically somehow (once it's eventually done correctly, of course).
Hard pass.
My bosses bosses boss like to claim that we're successfully moving to the cloud because the cost is increasing year over year.
The only github I could find is: https://github.com/strongdm/attractor
Canadian girlfriend coding is now a business model.Edit:
I did find some code. Commit history has been squashed unfortunately: https://github.com/strongdm/cxdb
There's a bunch more under the same org but it's years old.
(I'm continuing to try to learn Rust!)
- The StoreError type is stringly typed and generally badly thought out. Depending on what they actually want to do, they should either add more variants to StoreError for the difference failure cases, replaces the strings with a sub-types (probably enums) to do the same, or write a type erased error similar to (or wrapping) the ones provided by anyhow, eyre, etc, but with a status code attached. They definitely shouldn't be checking for substrings in their own error type for control flow.
- So many calls to String::clone [0]. Several of the ones I saw were actually only necessary because the function took a parameter by reference even though it could have (and I would argue should have) taken it by value (If I had to guess, I'd say the agent first tried to do it without the clone, got an error, and implemented a local fix without considering the broader context).
- A lot of errors are just ignored with Result::unwrap_or_default or the like. Sometimes that's the right choice, but from what I can see they're allowing legitimate errors to pass silently. They also treat the values they get in the error case differently, rather than e.g. storing a Result or Option.
- Their HTTP handler has an 800 line long closure which they immediately call, apparently as a substitute for the the still unstable try_blocks feature. I would strongly recommend moving that into it's own full function instead.
- Several ifs which should have been match.
- Lots of calls to Result::unwrap and Option::unwrap. IMO in production code you should always at minimum use expect instead, forcing you to explain what went wrong/why the Err/None case is impossible.
It wouldn't catch all/most of these (and from what I've seen might even induce some if agents continue to pursue the most local fix rather than removing the underlying cause), but I would strongly recommend turning on most of clippy's lints if you want to learn rust.
[0] https://rust-unofficial.github.io/patterns/anti_patterns/bor...
PS: TIL about "Canadian girlfriend", thanks!
For those of us working on building factories, this is pretty obvious because once you immediately need shared context across agents / sessions and an improved ID + permissions system to keep track of who is doing what.
The worst part is they got simonw to (perhaps unwittingly or social engineering) vouch and stealth market for them.
And $1000/day/engineer in token costs at current market rates? It's a bold strategy, Cotton.
But we all know what they're going for here. They want to make themselves look amazing to convince the boards of the Great Houses to acquire them. Because why else would investors invest in them and not in the Great Houses directly.
(Two people who's opinions I respect said "yeah you really should accept that invitation" otherwise I probably wouldn't have gone.)
I've been looking forward to being able to write more details about what they're doing ever since.
EDIT nvm just saw your other comment.
We’ve been working on this since July, and we shared the techniques and principles that have been working for us because we thought others might find them useful. We’ve also open-sourced the nlspec so people can build their own versions of the software factory.
We’re not selling a product or service here. This also isn’t about positioning for an acquisition: we’ve already been in a definitive agreement to be acquired since last month.
It’s completely fair to have opinions and to not like what we’re putting out, but your comment reads as snarky without adding anything to the conversation.
There are higher and lower leverage ways to do that, for instance reviewing tests and QA'ing software via use vs reading original code, but you can't get away from doing it entirely.
What I’m working on (open source) is less about replacing human validation and more about scaling it: using multiple independent agents with explicit incentives and disagreement surfaced, instead of trusting a single model or a single reviewer.
Humans are still the final authority, but consensus, adversarial review, and traceable decision paths let you reserve human attention for the edge cases that actually matter, rather than reading code or outputs linearly.
Until we treat validation as a first-class system problem (not a vibe check on one model’s answer), most of this will stay in “cool demo” territory.
We’ve spent years systematizing generation, testing, and deployment. Validation largely hasn’t changed, even as the surface area has exploded. My interest is in making that human effort composable and inspectable, not pretending it can be eliminated.
And “define the spec concretely“ (and how to exploit emerging behaviors) becomes the new definition of what programming is.
(and unambiguously. and completely. For various depths of those)
This always has been the crux of programming. Just has been drowned in closer-to-the-machine more-deterministic verbosities, be it assembly, C, prolog, js, python, html, what-have-you
There have been a never ending attempts to reduce that to more away-from-machine representation. Low-code/no-code (anyone remember Last-one for Apple ][ ?), interpreting-and/or-generating-off DSLs of various level of abstraction, further to esperanto-like artificial reduced-ambiguity languages... some even english-like..
For some domains, above worked/works - and the (business)-analysts became new programmers. Some companies have such internal languages. For most others, not really. And not that long ago, the SW-Engineer job was called Analyst-programmer.
But still, the frontier is there to cross..
Biological evolution overcomes this by running thousands and millions of variations in parallel, and letting the more defective ones to crash and die. In software ecosystems, we can't afford such a luxury.
However I guess that at least some of that can be mitigated by distilling out a system description and then running agents again to refactor the entire thing.
The problem with this is that the code is the spec. There are 1000 times more decisions made in the implementation details than are ever going to be recorded in a test suite or a spec.
The only way for that to work differently is if the spec is as complex as the code and at that level what’s the point.
With what you’re describing, every time you regenerate the whole thing you’re going to get different behavior, which is just madness.
>StrongDM’s answer was inspired by Scenario testing (Cem Kaner, 2003).
> You still have to have a human who knows the system to validate that the thing that was built matches the intent of the spec.
You don't need a human who knows the system to validate it if you trust the LLM to do the scenario testing correctly. And from my experience, it is very trustable in these aspects.
Can you detail a scenario by which an LLM can get the scenario wrong?
You and I disagree on this specific point.
Edit: I find your comment a bit distasteful. If you can provide a scenario where it can get it incorrect, that’s a good discussion point. I don’t see many places where LLMs can’t verify as good as humans. If I developed a new business logic like - users from country X should not be able to use this feature - LLM can very easily verify this by generating its own sample api call and checking the response.
OS and browsers are bloated messes, insecure to the core. Web apps are similarly just giant string mangling disasters.
Most of them are just engaged in labor role-play, there to earn nation state scrip for food/shelter.
SWEs have memorized endless amount of nonsense about their role to keep their jobs. You all have tons to say about software but little idea what's salient and just memorized nonsense parroted on the job all the time.
Just a few years ago code gen quality was impossible to SWEs. In the 00s SWEs were certain no business would trust their data to the cloud.
Everything software can be whittled down to geometry generation and presentation, even text. End users can label outputs mechanical turk style and apply whatever syntax they want, while the machine itself handles arithemtic and Boolean logic against memory, and syncs output to the display.
All the linguist gibberish in the typical software stack will be compressed[1] away, all the SWE middlemen unemployed.
As an EE of 30 years, I look forward to the end of the most inane era of human "engineering" ever.
Rotary phone assembly workers have a support group for you all.
[1] https://arxiv.org/abs/2309.10668
Then it seems like the only workable solution from your perspective is a solo member team working on a product they came up with. Because as soon as there's more than one person on something, they have to use "lossy natural language" to communicate it between themselves.
On the plus side, IMO nonverbal cues make it way easier to tell when a human doesn't understand things than an agent.
You can't 100% trust a human either.
But, as with self-driving, the LLM simply needs to be better. It does not need to be perfect.
We do have a system of checks and balances that does a reasonable job of it. Not everyone in position of power is willing to burn their reputation and land in jail. You don't check the food at the restaurant for poison, nor check the gas in your tank if it's ok. But you would if the cook or the gas manufacturer was as reliable as current LLMs.
Very salient concept in regards to LLM's and the idea that one can encode a program one wishes to see output in natural English language input. There's lots of room for error in all of these LLM transformations for same reason.
Which is more or less creating a customized harness. There is a lot more that is possiible once we move past the idea that harnesses are just for workflow variations for engineers.
I think this will act as a brake on the agentic shift as a whole.
At that point, outside of FAANG and their salaries, you are spending more on AI than you are on your humans. And they consider that level of spend to be a metric in and of itself. I'm kinda shocked the rest of the article just glossed over that one. It seems to be a breakdown of the entire vision of AI-driven coding. I mean, sure, the vendors would love it if everyone's salary budget just got shifted over to their revenue, but such a world is absolutely not my goal.
Edit: here's that section: https://simonwillison.net/2026/Feb/7/software-factory/#wait-...
Assuming 20 working days a month: that's 20k x 12 == 240k a year. So about a fresh grad's TC at FANG.
Now I've worked with many junior to mid-junior level SDEs and sadly 80% does not do a better job than Claude. (I've also worked with staff level SDEs who writes worse code than AI, but they offset that usually with domain knowledge and TL responsibilities)
I do see AI transform software engineering into even more of a pyramid with very few human on top.
> At that point, outside of FAANG and their salaries, you are spending more on AI than you are on your humans
You say
> Assuming 20 working days a month: that's 20k x 12 == 240k a year. So about a fresh grad's TC at FANG.
So you both are in agreement on that part at least.
And it might be the tokens will become cheaper.
Future better models will both demand higher compute use AND higher energy. We cannot underestimate the slowness of energy production growth and also the supplies required for simply hooking things up. Some labs are commissioning their own power plants on site, but this is not a true accelerator for power grid growth limits. You're using the same supply chain to build your own power plant.
If inference cost is not dramatically reduced and models don't start meaningfully helping with innovations that make energy production faster and inference/training demand less power, the only way to control demand is to raise prices. Current inference costs, do not pay for training costs. They can probably continue to do that on funding alone, but once the demand curve hits the power production limits, only one thing can slow demand and that's raising the cost of use.
which sounds more like if you haven't reached this point you don't have enough experience yet, keep going
At least that's how I read the quote
Apart from being a absolutely ridiculous metric, this is a bad approach, at least with current generation models. In my experience, the less you inspect what the model does, the more spaghetti-like the code will be. And the flying spaghetti monster eats tokens faster than you can blink! Or put more clearly: implementing a feature will cost you a lot more tokens in a messy code base than it does in a clean one. It's not (yet) enough to just tell the agent to refactor and make it clean, you have to give it hints on how to organise the code.
I'd go do far as to say that if you're burning a thousand dollars a day per engineer, you're getting very little bang for your tokens.
And your engineers probably look like this: https://share.google/H5BFJ6guF4UhvXMQ7
I wrote a bunch more about that this morning: https://simonwillison.net/2026/Feb/7/software-factory/
This one is worth paying attention to to. They're the most ambitious team I've see exploring the limits of what you can do with this stuff. It's eye-opening.
> If you haven’t spent at least $1,000 on tokens today per human engineer, your software factory has room for improvement
Seems to me like if this is true I'm screwed no matter if I want to "embrace" the "AI revolution" or not. No way my manager's going to approve me to blow $1000 a day on tokens, they budgeted $40,000 for our team to explore AI for the entire year.
Let alone from a personal perspective I'm screwed because I don't have $1000 a month in the budget to blow on tokens because of pesky things that also demand financial resources like a mortgage and food.
At this point it seems like damned if I do, damned if I don't. Feels bad man.
I don't think you need to spend anything like that amount of money to get the majority of the value they're describing here.
Edit: added a new section to my blog post about this: https://simonwillison.net/2026/Feb/7/software-factory/#wait-...
I built a tool that writes (non shit) reports from unstructured data to be used internally by analysts at a trading firm.
It cost between $500 to $5000 per day per seat to run.
It could have cost a lot more but latency matters in market reports in a way it doesn't for software. I imagine they are burning $1000 per day per seat because they can't afford more.
Another skill called skill-improver, which tries to reduce skill token usage by finding deterministic patterns in another skill that can be scripted, and writes and packages the script.
Putting them together, the container-maintenance thingy improves itself every iteration, validated with automatic testing. It works perfectly about 3/4 of the time, another half of the time it kinda works, and fails spectacularly the rest.
It’s only going to get better, and this fit within my Max plan usage while coding other stuff.
If the tokens that need to attend to each other are on opposite ends of the code base the only way to do that is by reading in the whole code base and hoping for the best.
If you're very lucky you can chunk the code base in such a way that the chunks pairwise fit in your context window and you can extract the relevant tokens hierarchically.
If you're not. Well get reading monkey.
Agents, md files, etc. are bandaids to hide this fact. They work great until they don't.
I would expect cost to come down over time, using approaches pioneered in the field of manufacturing.
As for me, we get Cursor seats at work, and at home I have a GPU, a cheap Chinese coding plan, and a dream.
Right in the feels
Make a "systemctl start tokenspender.service" and share it with the team?
To be fair, I’ll bet many embracing concerning advice like that have never worked for the same company for a full year.
I didn't read that as you need to be spending $1k/day per engineer. That is an insane number.
EDIT: re-reading... it's ambiguous to me. But perhaps they mean per day, every day. This will only hasten the elimination of human developers, which I presume is the point.
(The current cost of 1k is "real" and ultimately, even if you tinker on your own, you're paying this in opportunity cost)
((caveats, etc))
At home on my personal setup, I haven't even had to move past the cheapest codex/claude code subscription because it fulfills my needs ¯\_(ツ)_/¯. You can also get a lot of mileage out of the higher tiers of these subscriptions before you need to start paying the APIs directly.
Takes like this are just baffling to me.
For one engineer that is ~260k a year.
The thing with AI is that it ranges from net-negative to easily brute forcing tedious things that we never have considered wasting human time on. We can't figure out where the leverage is unless all the subject matter experts in their various organizational niches really check their assumptions and get creative about experimenting and just trying different things that may never have crossed their mind before. Obviously over time best practices will emerge and get socialized, but with the rate that AI has been improving lately, it makes a lot of sense to just give employees carte blanche to explore. Soon enough there will be more scrutiny and optimization, but that doesn't really make sense without a better understanding of what is possible.
1) Engineering investment at companies generally pays off in multiples of what is spent on engineering time. Say you pay 10 engineers $200k / year each and the features those 10 engineers build grow yearly revenue by $10M. That’s a 4x ROI and clearly a good deal. (Of course, this only applies up to some ceiling; not every company has enough TAM to grow as big as Amazon).
2) Giving engineers near-unlimited access to token usage means they can create even more features, in a way that still produces positive ROI per token. This is the part I disagree with most. It’s complicated. You cannot just ship infinite slop and make money. It glosses over massive complexity in how software is delivered and used.
3) Therefore (so the argument goes) you should not cap tokens and should encourage engineers to use as many as possible.
Like I said, I don’t agree with this argument. But the key thing here is step 1. Engineering time is an investment to grow revenue. If you really could get positive ROI per token in revenue growth, you should buy infinite tokens until you hit the ceiling of your business.
Of course, the real world does not work like this.
But my point is moreso that saying 1k a day is cheap is ridiculous. Even for a company that expects an ROI on that investment. There’s risks involved and as you said, diminishing returns on software output.
I find AI bros view of the economics of AI usage strange. It’s reasonable to me to say you think its a good investment, but to say it’s cheap is a whole different thing.
The best you can say is “high cost but positive ROI investment.” Although I don’t think that’s true beyond a certain point either, certainly not outside special cases like small startups with a lot of funding trying to build a product quickly. You can’t just spew tokens about and expect revenue to increase.
That said, I do reserve some special scorn for companies that penny-pinch on AI tooling. Any CTO or CEO who thinks a $200/month Claude Max subscription (or equivalent) for each developer is too much money to spent really needs to rethink their whole model of software ROI and costs. You’re often paying your devs >$100k yr and you won’t pay $2k / yr to make them more productive? I understand there are budget and planning cycle constraints blah blah, but… really?!
Their page looks to me like a lot of invented jargon and pure narrative. Every technique is just a renamed existing concept. Digital Twin Universe is mocks, Gene Transfusion is reading reference code, Semport is transpilation. The site has zero benchmarks, zero defect rates, zero cost comparisons, zero production outcomes. The only metric offered is "spend more money".
Anyone working honestly in this space knows 90% of agent projects are failing.
The main page of HN now has three to four posts daily with no substance, just Agentic AI marketing dressed as engineering insight.
With Google, Microsoft, and others spending $600 billion over the next year on AI, and panicking to get a return on that Capex....and with them now paying influencers over $600K [1] to manufacture AI enthusiasm to justify this infrastructure spend, I won't engage with any AI thought leadership that lacks a clear disclosure of financial interests and reproducible claims backed by actual data.
Show me a real production feature built entirely by agents with full traces, defect rates, and honest failure accounting. Or stop inventing vocabulary and posting vibes charts.
[1] - https://news.ycombinator.com/item?id=46925821
Repeating for emphasis, because this is the VERY obvious question anyone with a shred of curiosity would be asking not just about this submission but about what is CONSTANTLY on the frontpage these days.
There could be a very simple 5 question questionnaire that could eliminate 90+% of AI coding requests before they start:
- Is this a small wrapper around just querying an existing LLM
- Does a brief summary of this searched with "site:github" already return dozens or hundreds of results?
- Is this a classic scam (pump&dump, etc) redone using "AI"
- Is this needless churn between already high level abstractions of technology (dashboard of dashboards, yaml to json, python to java script, automation of automation framework)
I will reformulate my question to ask instead if the page is still 100% correct or needs an update?
However I would argue there are significant gaps:
- You do not name your consulting clients. You admit to do ad-hoc consulting and training for unnamed companies while writing daily about AI products. Those client names are material information.
- You have non payments that have monetary value. Free API credits, and weeks of early preview access, flights, hotels, dinners, and event invitations are all compensation. Do you keep those credits?
- The "I have not accepted payments from LLM vendors" could mean receiving things worth thousands of dollars. Please note I am not saying you did.
- You have a structural conflict. Your favorable coverage will mean preview access, then exclusive content then traffic, then sponsors, then consulting clients.
- You appeared in an OpenAI promotional video for GPT-5 and were paid for it. This is influencer marketing by any definition.
- Your quotes are used as third-party validation in press coverage of AI product launches. This is a PR function with commercial value to these companies.
The FTC revised Endorsement Guides explicitly apply to bloggers, not just social media influencers. The FTC defines material connection to include not only cash payments but also free products, early access to a product, event invitations, and appearing in promotional media all of which would seem to apply here.
They also say in the FTC own "Disclosures 101" guide that states [2]: "...Disclosures are likely to be missed if they appear only on an ABOUT ME or profile page, at the end of posts or videos, or anywhere that requires a person to click MORE."
https://www.ftc.gov/business-guidance/resources/disclosures-...
[2] - https://www.ftc.gov/system/files/documents/plain-language/10...
I would argue an ecosystem of free access, preview privileges, promotional video appearances, API credits, and undisclosed consulting does constitute a financial relationship that should be more transparently disclosed than "I have not accepted payments from LLM vendors."
I have a very strong policy that I won't write about someone because they paid me to do so, or asked me to as part of a consulting engagement. I guess you'll just have to trust me that I'll hold to that. I like to hope I've earned the trust of most of my readers.
I do have a structural conflict, which is one of the reasons my disclosures page exists. I don't value things like early access enough to avoid writing critically about companies, but the risk of subtle bias is always there. I can live with that, and I trust my readers can live with it too.
I've found myself in a somewhat strange position where my hobby - blogging about stuff I find interesting - has somehow grown to the point that I'm effectively single-handedly running an entire news agency covering the world's most valuable industry. As a side-project.
I could commit to this full-time and adopt full professional journalist ethics - no accepted credits, no free travel etc. I'd still have to solve the revenue side of things, and if I wrote full time I'd give up being a practitioner which would damage my ability to credibly cover the space. Part of the reason people trust me is that I'm an active developer and user of these tools.
On top of that, some people default to believing that the only reason anyone would write anything positive about AI is if they were being paid to do so. Convincing those people otherwise is a losing battle, and I'm trying to learn not to engage.
So I'm OK with my disclosures and principles as they stand. They may not get a 100% pure score from everyone, but they're enough to satisfy my own personal ethics.
I have just added disclosures links to the footer to make them easier to find - thanks for the prod on that: https://github.com/simonw/simonwillisonblog/commit/95291fd26...
These aren't tools they're asking $25,000 upfront for, that they can trick us that it for sure definitely works and get the huge lump sum then run
Nah.. at best they get a few dollars upfront for us to try it out. Then what? If it doesn't deliver on their promise, it flops
The hyperscalers are spending 600 billion a year, and literally betting their companies future, on what will happen over the next 24 months...but the bloggers are all doing it for philanthropy and to play with cool tech....Got it...
Let's say super popular blogger x is paid a million dollars to shill for AI and they convince you it's revolutionary. What then? Well of course you try it! You pay OpenAI $20 for a month
What happens after that, the actual experience of using the product, is the only important thing. If it sucks and provides no value to anyone, OpenAI fails. Sleezy marketing and salesmen can only get you in the door. They can't make a shit product amazing
A $10,000 get rich quick course can be made successful on hopes, dreams and sales tactics. A monthly subscription tool to help people with their work crashes and burns if it doesn't provide value
It doesn't matter how many people shill for it
I don't think it's unreasonable to say that your enumerated list would be considered beyond simply being enthusiastic about a new technology
The moats here are around mechanism design and values (to the extent they differ): the frontier labs are doomed in this world, the commons locked up behind paywalls gets hyper mirrored, value accrues in very different places, and it's not a nice orderly exponent from a sci-fi novel. It's nothing like what the talking heads at Davos say, Anthropic aren't in the top five groups I know in terms of being good at it, it'll get written off as fringe until one day it happens in like a day. So why be secretive?
You get on the ladder by throwing out Python and JSON and learning lean4, you tie property tests to lean theorems via FFI when you have to, you start building out rfl to pretty printers of proven AST properties.
And yeah, the droids run out ahead in little firecracker VMs reading from an effect/coeffect attestation graph and writing back to it. The result is saved, useful results are indexed. Human review is about big picture stuff, human coding is about airtight correctness (and fixing it when it breaks despite your "proof" that had a bug in the axioms).
Programming jobs are impacted but not as much as people think: droids do what David Graeber called bullshit jobs for the most part and then they're savants (not polymath geniuses) at a few things: reverse engineering and infosec they'll just run you over, they're fucking going in CIC.
This is about formal methods just as much as AI.
Wouldn’t they start to evolve to be able to reproduce more and eat more tokens? And then they’d be mature agents to take further human prompts to gain more tokens?
Would you see certain evolutionary strategies reemerge like carnivores eating weaker agents for tokens, eating of detritus of old code, or would it be more like evolution of roles in a company?
I assume the hurdles would be agents reproducing? How is that implemented?
This is one of the clearest takes I've seen that starts to get me to the point of possibly being able to trust code that I haven't reviewed.
The whole idea of letting an AI write tests was problematic because they're so focused on "success" that `assert True` becomes appealing. But orchestrating teams of agents that are incentivized to build, and teams of agents that are incentivized to find bugs and problematic tests, is fascinating.
I'm quite curious to see where this goes, and more motivated (and curious) than ever to start setting up my own agents.
Question for people who are already doing this: How much are you spending on tokens?
That line about spending $1,000 on tokens is pretty off-putting. For commercial teams it's an easy calculation. It's also depressing to think about what this means for open source. I sure can't afford to spend $1,000 supporting teams of agents to continue my open source work.
Check it: https://news.ycombinator.com/item?id=46838946
I don't take your comment as dismissive, but I think a lot of people are dismissing interesting and possibly effective approaches with short reactions like this.
I'm interested in the approach described in this article because it's specifying where the humans are in all this, it's not about removing humans entirely. I can see a class of problems where any non-determinism is completely unacceptable. But I can also see a large number of problems where a small amount of non-determinism is quite acceptable.
Something like "approve this PR and I will generate some easy bugs for you to find later"
I think people are burning money on tokens letting these things fumble about until they arrive at some working set of files.
I'm staying in the loop more than this, building up rather than tuning out
as a previous strongDM customer, i will never recommend their offering again. for a core security product, this is not the flex they think it is
also mimicking other products behavior and staying in sync is a fools task. you certainly won't be able to do it just off the API documentation. you may get close, but never perfect and you're going to experience constant breakage
From what I've heard the acquisition was unrelated to their AI lab work, it was about the core business.
And it’s not unreasonable to assume it’s going there.
That being said, the models are not there yet. If you care about quality, you still need humans in the loop.
Even when given high quality specs, and existing code to use as an example, and lots of parallelism and orchestration, the models still make a lot of mistakes.
There’s lots of room for Software Factories, and Orchestrators, and multi agent swarms.
But today you still need humans reviewing code before you merge to main.
Models are getting better, quickly, but I think it’s going to be a while before “don’t have humans look at the code” is true.
Is this the quality we should expect from agentic? From my experiments with claude code, yes, the UX details are never there. Especially for bigger features. It can work reasonably well independently up to a "module" level (with clear interfaces). But for full app design, while technically possible, the UX and visual design is just not there.
And I am very not attracted to the idea of polishing such an agentic apps. A solution could be: 1. The boss prompts the system with what he wants. 2. The boss outsources to india the task of polishing the rough edges.
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More on the arrow keys navigation: Pressing right on the last "Products" page loops to the first "Story" page, yet pressing left on the first page does nothing. Typical UX inconsistency of vibe coded software.
Oh, to have the luxury of redefining success and handwaving away hard learned lessons in the software industry.
If their focus is to only show their productivity/ai system but not having built anything meaningful with it, it feels like one of those scammy life coaches/productivity gurus that talk about how they got rich by selling their courses.
If everyone can do this, there won't be any advantage (or profit) to be had from it very soon. Why not buy your own hardware and run local models, I wonder.
No local model out there is as good as the SOTA right now.
You should have led with that. I think that's actually more impressive; anyone can spend tokens.
This is still the same problem -- just pushed back a layer. Since the generated API is wrong, the QA outcomes will be wrong, too. Also, QAing things is an effective way to ensure that they work _after_ they've been reviewed by an engineer. A QA tester is not going to test for a vulnerability like a SQL injection unless they're guided by engineering judgement which comes from an understanding of the properties of the code under test.
The output is also essentially the definition of a derivative work, so it's probably not legally defensible (not that that's ever been a concern with LLMs).
Heat death of the SaaSiverse
As an example: imagine someone writing a data pipeline for training a machine learning model. Anyone who's done this knows that such a task involves lots data wrangling work like cleaning data, changing columns and some ad hoc stuff.
The only way to verify that things work is if the eventual model that is trained performs well.
In this case, scenario testing doesn't scale up because the feedback loop is extremely large - you have to wait until the model is trained and tested on hold out data.
Scenario testing clearly can not work on the smaller parts of the work like data wrangling.
What we have instead are many people creating hierarchies of concepts, a vast “naming” of their own experiences, without rigorous quantitative evaluation.
I may be alone in this, but it drives me nuts.
Okay, so with that in mind, it amounts to heresay “these guys are doing something cool” — why not shut up or put up with either (a) an evaluation of the ideas in a rigorous, quantitative way or (b) apply the ideas to produce an “hard” artifact (analogous, e.g., to the Anthropic C compiler, the Cursor browser) with a reproducible pathway to generation.
The answer seems to be that (b) is impossible (as long as we’re on the teet of the frontier labs, which disallow the kind of access that would make (b) possible) and the answer for (a) is “we can’t wait we have to get our names out there first”
I’m disappointed to see these types of posts on HN. Where is the science?
There are plenty of papers out there that look at LLM productivity and every one of them seems to have glaring methodology limitations and/or reports on models that are 12+ months out of date.
Have you seen any papers that really elevated your understanding of LLM productivity with real-world engineering teams?
Further, I’m not sure this elevates my understanding: I’ve read many posts on this space which could be viewed as analogous to this one (this one is more tempered, of course). Each one has this same flaw: someone is telling me I need to make a “organization” out of agents and positive things will follow.
Without a serious evaluation, how am I supposed to validate the author’s ontology?
Do you disagree with my assessment? Do you view the claims in this content as solid and reproducible?
My own view is that these are “soft ideas” (GasTown, Ralph fall into a similar category) without the rigorous justification.
What this amounts to is “synthetic biology” with billion dollar probability distributions — where the incentives are setup so that companies are incentivized to convey that they have the “secret sauce” … for massive amounts of money.
To that end, it’s difficult to trust a word out of anyone’s mouth — even if my empirical experiences match (along some projection).
StrongDM's implementation is the most impressive I've seen myself, but it's also incredibly expensive. Is it worth the cost?
Cursor's FastRender experiment was also interesting but also expensive for what was achieved.
I think my favorite current example at the moment was Anthropic's $20,000 C compiler from the other day. But they're an AI vendor, demos from non-vendors carry more weight.
I've seen enough to be convinced that there's something there, but I'm also confident we aren't close to figuring out the optimal way of putting this stuff to work yet.
The only reason I'm not dismissing it out of hand is basically because you said this team was worth taking a look at.
I'm not looking for a huge amount of statistical ceremony, but some detail would go a long way here.
What exactly was achieved for what effort and how?
Either you have faith and every post like this fills you with fervor and pious excitement for the latest miracles performed by machine gods.
Or you are a nonbeliever and each of these posts is yet another false miracle you can chalk up to baseless enthusiasm.
Without proper empirical method, we simply do not know.
What's even funnier about it is that large-scale empirical testing is actually necessary in the first place to verify that a stochastic processes is even doing what you want (at least on average). But the tech community has become such a brainless atmosphere totally absorbed by anecdata and marketing hype that no one simply seems to care anymore. It's quite literally devolved into the religious ceremony of performing the rain dance (use AI) because we said so.
One thing the papers help provide is basic understanding and consistent terminology, even when the models change. You may not find value in them but I assure you that the actual building of models and product improvements around them is highly dependent on the continual production of scientific research in machine learning, including experiments around applications of llms. The literature covers many prompting techniques well, and in a scientific fashion, and many of these have been adopted directly in products (chain of thought, to name one big example—part of the reason people integrate it is not because of some "fingers crossed guys, worked on my query" but because researchers have produced actual statistically significant results on benchmarks using the technique) To be a bit harsh, I find your very dismissal of the literature here in favor of hype-drenched blog posts soaked in ridiculous language and fantastical incantations to be precisely symptomatic of the brain rot the LLM craze has produced in the technical community.
One challenge we have here is that there are a lot of people who are desperate for evidence that LLMs are a waste of time, and they will leap on any paper that supports that narrative. This leads to a slightly perverse incentive where publishing papers that are critical of AI is a great way to get a whole lot of attention on that paper.
In that way academic papers and blogging aren't as distinct as you might hope!
Taking the time to point a coding agent towards the public (or even private) API of a B2B SaaS app to generate a working (partial) clone is effectively "unblocking" the agent. I wouldn't be surprised if a "DTU-hub" eventually gains traction for publishing and sharing these digital twins.
I would love to hear more about your learnings from building these digital twins. How do you handle API drift? Also, how do you handle statefulness within the twins? Do you test for divergence? For example, do you compare responses from the live third-party service against the Digital Twin to check for parity?
Of course, you can't always tell the model what to do, especially if it is a repeated task. It turns out, we already solved this decades ago using algorithms. Repeatable, reproducible, reliable. The challenge (and the reward) lies in separating the problem statement into algorithmic and agentic. Once you achieve this, the $1000 token usage is not needed at all.
I have a working prototype of the above and I'm currently productizing it (shameless plug):
https://designflo.ai
However - I need to emphasize, the language you use to apply the pattern above matters. I use Elixir specifically for this, and it works really, really well.
It works based off starting with the architect. You. It feeds off specs and uses algorithms as much as possible to automate code generation (eg. Scaffolding) and only uses AI sparsely when needed.
Of course, the downside of this approach is that you can't just simply say "build me a social network". You can however say something like "Build me a social network where users can share photos, repost, like and comment on them".
Once you nail the models used in the MVC pattern, their relationships, the software design is pretty much 50% battle won. This is really good for v1 prototypes where you really want best practices enforced, OSWAP compliant code, security-first software output which is where a pure agentic/AI approach would mess up.
> How do you clone the important parts of Okta, Jira, Slack and more? With coding agents!
This is what's going to gut-punch most SaaS companies repeatedly over the next decade, even if this whole build-out ultimately collapses in on itself (which I expect it to). The era of bespoke consultants for SaaS product suites to handle configuration and integrations, while not gone, are certainly under threat by LLMs that can ingest user requirements and produce functional code to do a similar thing at a fraction of the price.
What a lot of folks miss is that in enterprise-land, we only need the integration once. Once we have an integration, it basically exists with minimal if any changes until one side of the integration dies. Code fails a security audit? We can either spool up the agents again briefly to fix it, or just isolate it in a security domain like the glut of WinXP and Win7 boxen rotting out there on assembly lines and factory floors.
This is why SaaS stocks have been hammered this week. It's not that investors genuinely expect huge players to go bankrupt due to AI so much as they know the era of infinite growth is over. It's also why big AI companies are rushing IPOs even as data center builds stall: we're officially in a world where a locally-run model - not even an Agent, just a model in LM Studio on the Corporate Laptop - can produce sufficient code for a growing number of product integrations without any engineer having to look through yet another set of API documentation. As agentic orchestration trickles down to homelabs and private servers on smaller, leaner, and more efficient hardware, that capability is only going to increase, threatening profits of subscription models and large AI companies. Again, why bother ponying up for a recurring subscription after the work is completed?
For full-fledged software, there's genuine benefit to be had with human intervention and creativity; for the multitude of integrations and pipelines that were previously farmed out to pricey consultants, LLMs will more than suffice for all but the biggest or most complex situations.
Stuff comes in from an API goes out to a different API.
With a semi-decent agent I can build what took me a week or two in hours just because it can iterate the solution faster than any human can type.
A new field in the API could’ve been a two day ordeal of patching it through umpteen layers of enterprise frameworks. Now I can just tell Claude to add it, it’ll do it up to the database in minutes - and update the tests at the same time.
So much of enterprise IT nowadays is spent hammering or needling vendors for basic API documentation so we can write a one-off that hooks DB1 into ServiceNow that's also pulling from NewRelic just to do ITAM. Consultants would salivate over such a basic integration because it'd be their yearly salary over a three month project.
Now we can do this ourselves with an LLM in a single sprint.
That's a Pandora's Box moment right there.
I’m happy to answer any questions!
> Those of us building software factories must practice a deliberate naivete
This is a great way to put it, I've been saying "I wonder which sacred cows are going to need slaughtered" but for those that didn't grow up on a farm, maybe that metaphor isn't the best. I might steal yours.
This stuff is very interesting and I'm really interested to see how it goes for you, I'll eagerly read whatever you end up putting out about this. Good luck!
EDIT: oh also the re-implemented SaaS apps really recontextualizes some other stuff I’ve been doing too…
Even though all three of us have very different working styles, we all seem to be very happy with the arrangement.
You definitely need to keep an open mind, though, and be ready to unlearn some things. I guess I haven’t spent enough time in the industry yet to develop habits that might hinder adopting these tools.
Jay single-handedly developed the digital twin universe. Only one person commits to a codebase :-)
Or a vegan or Hindu. Which ethics are you willing to throw away to run the software factory?
I eat hamburgers while aware of the moral issues.
To name one probable area of involvement: how do you specify what needs to be built?
[1] https://sociotechnica.org/notebook/software-factory/
Your intuition/thinking definitely lines up with how we're thinking about this problem. If you have a good definition of done and a good validation harness, these agents can hill climb their way to a solution.
But you still need human taste/judgment to decide what you want to build (unless your solution is to just brute force the entire problem space).
For maximal leverage, you should follow the mantra "Why am I doing this?" If you use this enough times, you'll come across the bottleneck that can only be solved by you for now. As a human, your job is to set the higher-level requirements for what you're trying to build. Coming up with these requirements and then using agents to shape them up is acceptable, but human judgment is definitely where we have to answer what needs to be built. At the same time, I never want to be doing something the models are better at. Until we crack the proactiveness part, we'll be required to figure out what to do next.
Also, it looks like you and Danvers are working in the same space, and we love trading notes with other teams working in this area. We'd love to connect. You can either find my personal email or shoot me an email at my work email: navan.chauhan [at] strongdm.com
What do you do if the model isn't able to fulfill the spec? How do you troubleshoot what is going on?
Not just code review agents, but things like "find duplicated code and refactor it"?
* DRYing/Refactoring if needed
* Documentation compaction
* Security reviews
I wonder what the security teams at companies that use StrongDM will think about this.
My hunch is that the thing that's going to matter is network effects and other forms of soft lockin. Features alone won't cut it - you need to build something where value accumulates to your user over time in a way that discourages them from leaving.
If I launch a new product, and 4 hours later competitors pop up, then there's not enough time for network effects or lockin.
I'm guessing what is really going to be needed is something that can't be just copied. Non-public data, business contracts, something outside of software.
You can see the first waves of this trend in HN new.
My content revenue comes from ads on my blog via https://www.ethicalads.io/ - rarely more than $1,000 in a given month - and sponsors on GitHub: https://github.com/sponsors/simonw - which is adding up to quite good money now. Those people get my sponsors-only monthly newsletter which looks like this: https://gist.github.com/simonw/13e595a236218afce002e9aeafd75... - it's effectively the edited highlights from my blog because a lot of people are too busy to read everything I put out there!
I try to keep my disclosures updated on the about page of my blog: https://simonwillison.net/about/#disclosures
https://m.youtube.com/watch?v=4xgx4k83zzc&pp=ygUOdGhlc2UgZ28...
In this model the spec/scenarios are the code. These are curated and managed by humans just like code.
They say "non interactive". But of course their work is interactive. AI agents take a few minutes-hours whereas you can see code change result in seconds. That doesn't mean AI agents aren't interactive.
I'm very AI-positive, and what they're doing is different, but they are basically just lying. It's a new word for a new instance of the same old type of thing. It's not a new type of thing.
The common anti-AI trope is "AI just looked at <human output> to do this." The common AI trope from the StrongDM is "look, the agent is working without human input." Both of these takes are fundamentally flawed.
AI will always depend on humans to produce relevant results for humans. It's not a flaw of AI, it's more of a flaw of humans. Consequently, "AI needs human input to produce results we want to see" should not detract from the intelligence of AI.
Why is this true? At a certain point you just have Kolmogorov complexity, AI having fixed memory and fixed prompt size, pigeonhole principle, not every output is possible to be produced even with any input given specific model weights.
Recursive self-improvement doesn't get around this problem. Where does it get the data for next iteration? From interactions with humans.
With the infinite complexity of mathematics, for instance solving Busy Beaver numbers, this is a proof that AI can in fact not solve every problem. Humans seem to be limited in this regard as well, but there is no proof that humans are fundamentally limited this way like AI. This lack of proof of the limitations of humans is the precise advantage in intelligence that humans will always have over AI.
THIS FRIGHTENS ME. Many of us sweng are either going be FIRE millionaires, or living under a bridge, in two years.
I’ve spent this week performing SemPort; found a ts app that does a needed thing, and was able to use a long chain of prompts to get it completely reimplemented in our stack, using Gene Transfer to ensure it uses some existing libraries and concrete techniques present in our existing apps.
Now not only do I have an idiomatic Python port, which I can drop right into our stack, but I have an extremely detailed features/requirements statement for the origin typescript app along with the prompts for generating it. I can use this to continuously track this other product as it improves. I also have the “instructions infrastructure” to direct an agent to align new code to our stack. Two reusable skills, a new product, and it took a week.
Is it really that hard to write “developer” or “engineer”?
I was just trying to share the same patterns from OPs documentation that I found valuable within the context of agentic development; seeing them take this so far is was scares me, because they are right that I could wire an agent to do this autonomously and probably get the same outcomes, scaled.
Funnily enough, the marketing department even ran a campaign asking, “What does DM stand for?!”, and the answer was “Digital Metropolis,” because we did a design refresh.
I just linked the website because that’s what the actual company does, and we are just the “AI Lab”