The question is... is this based on existing capability of LLMs to do these jobs? Or are companies doing this on the expectation that AI is advanced enough to pick up the slack?
I have observed a disconnect in which management is typically far more optimistic about AI being capable of performing a specific task than are the workers who currently perform that task.
And to what extent is AI-related job cutting just an excuse for what management would want to do anyway?
6-12 months in, the AI bet doesnt pay off, then just stop spending money in it. cancel/dont renew contracts and move some teams around.
For full time entry hires, we typically dont see meaningful positive productivity (their cost is less than what they produce) for 6-8 months. Additionally, entry level takes time away from senior folks reducing their productivity. And if you need to cut payroll cost, its far more complicated, and worse for morale than just cutting AI spend.
So given the above, plus economy seemingly pre-recession (or have been according to some leading indicators) seems best to wait or hire very cautiously for next 6-8 months at least.
I can imagine that there were a decent number of execs who tried chatgpt, made some outlandish predictions and based some hiring decisions upon those predictions though.
This paper looks kinda trashy - confusing correlation with causation and clickbaity.
From https://news.ycombinator.com/item?id=45131866 :
> In 2017 Trump made businesses have to amortize these [R&D] expenses over 5 years instead of deducting them, starting in 2022 (it is common for an administration to write laws that will only have a negative effect after they're gone). This move wrecked the R&D tax credit. Many US businesses stopped claiming R&D tax credits entirely as a result. Others had surprise tax bills.
Then companies bought their own stock instead of investing in labor:
"S&P 500 Buybacks Now Outpace All R&D Spending in the US" (2019) https://news.ycombinator.com/item?id=21762582
People just want the same R&D tax incentives back:
"Tell HN: Help restore the tax deduction for software dev in the US (Section 174)" (2025 (2439 points)) https://news.ycombinator.com/item?id=44226145
companies must do this, 'cause if they don't then their competition will (i.e. the pressure)
of course, we can collectively decide to equally value labor and profit, as a symbiotic relationship that incentivizes long term prosperity. but where's the memes in that
This is what I see, but want to hear others' experiences.
So companies reduce junior hiring because their work is relatively less valuable, and they can meet their goals by shuffling existing resources. When they can't do that, they go for seniors since the immediate bang for the buck is higher (ofc, while depleting the global pipeline that actually produces seniors in the long run, in a typical tragedy of the commons)
For the tech side, we've reduced behavioral questions and created an interview that allows people to use cursor, LLMs, etc. in the interview - that way, it's impossible to cheat.
We have folks build a feature on a fake code base. Unfortunately, more junior folks now seem to struggle a lot more with this problem
It slices through the bullshit fast. Either the person I'm interviewing is a passionate problem solver, and will be tripping over themselves to describe whatever oddball thing they've been working on, or they're either a charlatan or simply not cut out for the work. My sneaking suspicion is that we could achieve similar levels of success in hiring for entry level positions at my current company if we cut out literally the entirety of the rest of the interviews, asked that one question, and hired the first person to answer well.
The other part is that you can absolutely tell during a live interview when someone is using an LLM to answer.
- Generative AI is genuinely capable enough to replace entry level workers at a lower cost.
- The hype around Generative AI is convincing people who make hiring decisions that it is capable enough to replace entry level workers at a lower cost.
- The hype around Generative AI is being used as an excuse to not hire during an economic downturn.
Could even still be other things too.
I think it's the expectation. We have some publicized examples of needing to hire people back. My company isn't laying off, but they also aren't hiring much, especially at the entry level. They're also trying to force attrition with PIPs and stuff. If it was a right now thing, they'd just layoff.
Also, just because coding gets 30% faster (say some studies), doesn't mean that's a 30% reduction in headcount since many tasks are about design and stuff. This seems to further point to a lack of hiring being anticipatory in my estimation.
I have always kept that latter point to myself at work - the next generation have to learn somewhere, and training them can be a pleasure (depending on the person) - but even quite good folk with 4-5 years of experience need (what feels like) a lot of assistance to understand/follow the architecture laid out for them.
I don’t use AI to help me code because IME it’s no better than an enthusiastic junior dev who doesn’t learn, and helping them learn is the main reason I might want to work with such a dev.
Even if a company has somehow managed to successfully replace all human labor with AI and fire 100% of its human workforce, the revenue wouldn't necessarily spike.
When you constrict the market like they have done, you naturally get distortions, and the adversarial nature of the market fails to perform economic calculation potentially leading to grave consequences. Even at this point, whipsaws would be quite destructive. I know people who have abandoned their careers due to lack of job availability for the foreseeable future. They were searching for years with no recovery.
When you destroy a pipeline of career development for short-term profit which is possible because of the decoupled nature of money-printing/credit facility, decisions made are psychologically sticky. When there is no economic benefit for competency, the smart people leave for a market where this is possible.
The smart people I know right now are quietly preparing for socio-economic collapse as a result of runaway money-printing. When you have a runaway dangerous machine, you can either step back and let it destroy itself (isolating yourself), or you can accelerate the breakdown of its dependent cycles. Many choose the former, since the latter carries existential risk for no real benefit in the short-term but the latter would result in the least amount of causalties.
70% of the economy covers the white-collar market, which will be gone soon, not because the jobs can be replaced by AI, but because the business leaders in consolidated industry all decide to replace workers becoming the instrument of their own demise through deflationary economics.
To really test the implied theory that using AI enables cutting junior hiring, we need to see it in a better economy, in otherwise growing companies, or with some kind of control (though not sure how this would really be possible).
I'm not disputing your point, but I'm curious: given that the main headline measures that we tend to see about the US economy right now involve the labour market. How do you establish the counterfactual?
I think we might be seeing this now but headlines get more clicks with AI taking our jobs.
When more than half of the population has a 5% or higher mortgage rate then you can start to say it’s not that high.
https://calculatedrisk.substack.com/p/fhfas-national-mortgag...
"Our primary data source is a detailed LinkedIn-based resume dataset provided by Revelio Labs ...
We complement the worker resume data with Revelio’s database of job postings, which tracks recruitment activity by the firms since 2021 ...
The final sample consists of 284,974 U.S. firms that were successfully matched to both employee position data and job postings and that were actively hiring between January 2021 and March 2025.3 For these firms, we observe 156,765,776 positions dating back to 2015 and 245,838,118 job postings since 2021, of which 198,773,384 successfully matched with their raw text description."
They identified 245 million job postings from 2021 forward in the United States? I mean the U.S. population is like 236 million for the 18-65 age group (based on wikipedia, 64.9% of 342 total population).
And they find a very small percentage of firms using generative AI:
"Our approach allows us to capture firms that have actively begun integrating generative AI into their operations. By this measure, 10,599 firms, about 3.7 percent of our sample, adopted generative AI during the study period."
Maybe I am wildly underestimating just how much LinkedIn is used worldwide for recruiting? As a tech person, I'm also very used to seeing the same job listing re-listed by what seems to be a large number of low-effort "recruiting" firms on LinkedIn.
I think for trying to figure out how generative AI is affecting entry-level jobs, I would have been much more interested in some case studies. Something like find three to five companies (larger than startups? 100+ employees? 500+?) that have decided to hire fewer entry-level employees by adding generative AI into their work as a matter of policy. Then maybe circling back from the case studies to this larger LinkedIn dataset and tied the case study information into the LinkedIn data somehow.
I'm obviously misreading this somehow. How do you have 156m positions dating back to 2015, but far more than that number in a smaller timeframe?
"Our analysis draws on a new dataset that combines LinkedIn resume and job-posting data from Revelio Labs. The dataset covers nearly 285,000 U.S. firms, more than 150 million employment spells from roughly 62 million unique workers between 2015 and 2025, and over 245 million job postings."
I guess we can read that as saying the authors identified 62 million workers who held 150 million positions over the 2015-2025 time window.
I'm still deeply skeptical about the underlying data. The 62 million represents a huge percentage of employed people in the U.S. in any of the years 2015-2025. This source shows 148 million/yr to 164 million/yr employed over that timeframe:
https://www.statista.com/statistics/269959/employment-in-the-united-states/
On the other hand, I also saw estimates saying LinkedIn has approximately 30% of the U.S. workforce with a profile on the platform. Which is wild to me.I guess you'd need to trust the company, which is hard to come by.
Currently part of the problem is the taboo using AI coding in undergrad CS programs. And I don't know the answer. But someone will find the right way to teach new/better ways of working with and without generative AI. It may just become second nature to everyone.
From company interns. Internships won't go away, there will just be less of them. For example, some companies will turn down interns because they do not have the time to train them due to project load.
With AI, now employed developers can be picky on whether or not to take on interns.
I think this is the gambit that we have already committed to.
Cheap labor. It doesn't take that much to train someone to be somewhat useful, in mmany cases. The main educators are universities and trade schools. Not companies.
And if they want more loyalty the can always provide more incentives for juniors to stay longer.
At least in my bubble it's astonishing how it's almost never worth it to stay at a company. You'd likely get overlooked for promotions and salary rises are almost insultingly low.
You get a lot in the interim!!! I started at Andersen Consulting (now Accenture.) The annual attrition was ~20%, but they still invested over a year of training into me.
But it worked:
- They needed grunt work in early years (me, working 75hr billable weeks). Not sure how much of this is viable now given LLMs
- They had great margins on the other four years. Not sure how much of this is viable now, as margins have shrunk in the past 25yrs as there is more way competition
- They used me to train the next cohort in years 4/5
- I appreciated the training and give them 60hr billable weeks on average for five years
It was a brutal and exhausing five years but i'm forever thankful to AndersenConsulting/Accenture for the experience.
And the entire time I'm watching this I'm just thinking that they don't realize that they are only demonstrating the tools that are going to replace their own jobs. Kinda sad, really. Demand for soft skills and creatives is going to continue to decline.
Dev jobs too.
I personally think we're still a ways from the latter...
In the late 90s you weee considered a prodigy if you understood how to use a search engine. I had so many opportunities simply because I could find and retain information.
So LLMs have solved this. Knowing a framework or being able to create apps is not a marketable skill any longer. What are we supposed to do now?
It’s the soft skills that matter now. Being well liked has always been more important in a job than being the best at it. We all know that engineer who knows they are hot shit but everyone avoids because they are insufferable.
Those marketing people don’t need to spend a week on their deck any longer. They can work the customer relationship now.
Knowing how to iterate with an LLM to give the customer exactly what they need is the valuable skill now.
Until AI can do literally everything we can, that class of work will continue to exist, and it'll continue to be handed to the least experienced workers as a way for them to learn, get oriented, and earn access to more interesting problems and/or higher pay while experienced folks rest on their laurels or push the state of the art.
1. Those that encourage people to use AI agents aggressively to increase productivity.
2. Those that encourage people to use AI agents aggressively to be more productive while still hiring young people.
Which type of company will be more innovative, productive, and successful in the long run?Young people are cheap and they love AI!
Many of the largest countries are experiencing similar declines, with fewer and fewer countries maintaining large birth rates.
That world was 30 years ago. In 2025 world average total fertility rate is 2.2, which is a shade above replacement rate (2.1). And 2.2 is a 10% drop since 2017 alone (when it was 2.46).
Because life expectancy is higher, the population will continue to increase. But not "rapidly".
This is cause for government intervention.
Of course in the long run a chronically underemployed economy will have little demand for products and services, but that is beyond the scope of companies who, in general, are focused on winning short term and zero-sum market capture. However I believe that while a billion dollar valuation is a market and strategy problem, a trillion dollar valuation is a political problem - and I would hope that a mandate of broad gainful employment translates to political action - although this remains to be seen.
On a longer time scale you have humanoid robots potentially coming as well. Self driving cars and trucks are going to torpedo trucking and low pay positions such as Uber // taxi driver. The wealth is getting centralized amongst a couple dozen high tech companies.
All in all I am pretty negative on the prospects for young people as they enter the workforce and additionally for older tech people as they are currently operating in an environment where losing your job very possibly means the end of the road.
Hard for me to believe that AI in its current state is hollowing out junior shop assistant and salesperson roles. Either those jobs were already vulnerable to "dumb" touchscreen kiosks or they require emotional intelligence and embodied presence that LLMs lack.
1. Those who see this as mostly macroeconomics + hype (high interest rates, weak economy, AI as a convenient excuse).
2. Those who believe AI is genuinely reshaping the work structure (seniors + AI can cover more ground, making juniors less necessary).
Maybe it’s both. The economy explains why companies are cautious now, but AI explains where they are cutting first — the “bottom rungs.”
The bigger question, then, is: even if AI isn’t the sole cause, what happens when a whole generation of juniors doesn’t get trained? That’s not just a company-level problem, it’s an industry-wide pipeline issue.
How do we avoid a tragedy of the commons here — where everyone optimizes short-term and we end up with fewer capable seniors in 10 years?
The reason why old hands (who have been in the game long enough to be promoted to something approximating "Senior") are so deadly with AI is because they know all the traps/pitfalls to watch out for. Sure, the AIs may become good enough in 5-10 years to have learned all these pitfalls, but make hay while the sun is shining!
"Senior EMs" who are pure HR managers/non-coders will be priced-out of their jobs in an AI agentic world, as (surprise!) you can't report AI agents to HR. Juniors who can use AI effectively will thrive and climbs the ranks rapidly.
> Some observers have also linked AI to recent labor market trends: since late 2022, unemployment among recent college graduates has risen sharply, even as the unemploy-ment rate for young workers overall has remained steady (Appendix Figure A.1). Others, however, question the importance of AI in these developments, pointing to alternative factors such as economic uncertainty, post-Covid retrenchment, and increased offshoring (e.g., Financial Times, 2025).
(No mention of ZIRP. Also, they used LLMs to classify data, so there's that.)
I only had a quick look, and IANAE, but while the study does not discuss these factors any further, their methodology may implicitly account for them. Briefly, the study looks at employment of junior employees vs senior employees over the last 2 years across a bunch of companies that it categorizes as AI adopters vs non-adopters (based on an admittedly very narrow definition of "adoption".)
It finds that starting in 2023 Q1, the hiring of juniors dropped sharply while that of seniors kept growing in firms that adopted AI compared to non-adopters. Given this approach, maybe those confounding factors cancel out? Like, why would economic uncertainty, offshoring, ZIRP or whatever impact only firms adopting AI and not others within the same sector?
Some other interesting findings:
- Juniors who do get hired, get promoted more quickly, likely due to lower competition. Could be yet another mechanism that increases the gap between the haves and the have-nots.
- The biggest effects are in the wholesale / retail trade sector, which is surprising because offhand, I would not have thought this sector to be much impacted by AI.
I follow some labor economists and these findings align a lot with what they've been saying about the job reports over the years.
Another very interesting finding is that graduates of mid-tier colleges are impacted the most, whereas elite and "less selective" institutions are least affected. Something to consider when evaluating the ROI of tuition for a given college...
Other than that, I guess developing software in some capacity while doing a non-strictly software job - say, in accounting, marketing, healtcare, etc. This might not be a relevant number of people if 'vibe coding' takes hold and the fundamentals are not learned/ignored by these accountants, marketers, healthcare workers, etc.
If that is the case, we'd have a lot of 'informed beginners' with 10+ years of experience tangentially related to software.
Edit: As a result of the above, we might see an un-ironic return to the 'learn to code' mantra in the following years. Perhaps now qualified 'learn to -actually- code'? I'd wager a dollar on that discourse popping up in ~5 years time if the trend of not hiring junior devs continues.
I'm half-joking, but I wouldn't be surprised to see all sorts of counterpoint marketing come into play. Maybe throw in a weird traditional bent to it?
> (Pretentious, douche company): Free-range programming, the way programming was meant to be done; with the human touch!
All-in-all, I already feel severely grossed out any time a business I interact with introduces any kind of LLM chatbot shtick and I have to move away from their services; I could genuinely see people deriving a greater disdain for the fad than there already is.
its like how the generic "we take anyone" online security degree has poisoned that market -- nothing but hoards of entry level goobers, but no real heavy hitters on the mid-to-high end. put another way, the market is tight but there are still reasonable options for seniors.
then again we live under capitalism
Take the software development sector as example: if we replace junior devs by AI coding agents and put senior devs to review the agent's work, how will we produce more seniors (with wide experience in the sector) if the juniors are not coding anymore?
Entry-level jobs get "hollowed out" in a stagnant economy regardless of "AI".
AI = not hiring because no new work but spin as a "AI" . Markets are hungry of any utterance of the the word AI from the CEO.
so ridiculous. but we've collectively decided to ignore BS as long as we can scam each other and pray you are not the last one holding the bag.
You have to somehow have the discipline to avoid getting caught up in the noise until the hype starts to fade away.
The US is going through a lot of upheaval, which whether you think is positive or negative, is unique, and a confounding factor for any such research.
It still feels too early to predict the outcome, winds may change again.
Maybe people will learn to learn from each other and together moving forward.
Is this a case of "correlation does not imply causation?"
they rather pay people to sit in a room pressing a button every hour than have them loitering around on UBI
either that or in the pod
Another way to look at it is that hiring is fine, and that the vain entitled generation we all suspected was going to emerge feels that a job should absolutely be available to them, and immediately.
Another way to look at it is that journalism has been dead for quite a while, and writing about the same fear-based topics like “omg hiring apocalypse” is what makes these people predictable money (along with other topics).
Another way to look at it is that we raised a generation of narcissistic parents and children that have been going “omg grades”, “omg good college”, “omg internship”, “omg job” for so long that that these lamentations feel normalized. A healthy dose of stfu was never given to them. Neurotic motherfuckers.
Why?
It's already doing a lot of the loadbearing work in those mid-level roles too now, it's just a bit awkward for management to admit it. One common current mode of work is people using AI to accomplish their work tasks very quickly, and then loafing a bit more with the extra time. So leaders refrain from hiring, pocket the savings, and keep a tight lid on compensation for those who remain.
At some point they'll probably try to squeeze the workforce for some additional productivity, and cut those who don't deliver it. Note that the "ease" of using AI for work tasks will be a rationale for why additional compensation is not warranted for those who remain.
Im tired of reading all these claims with no primary evidence to support it.