Comment by DyslexicAtheist
7 months ago
every other article these days on this site is about AI. And it's incredibly tedious and annoying.
Isn't it enough that clueless marketers who get their Tech knowledge from businessinsider and bloomberg are constantly harping on about AI.
Seems we as a community have resigned or given up in this battle against common sense. Maybe long ago. Still there should be some form of moderation penalizing these shill posts that only glorify AI as being the future, ... the same way that not everything about crypto or the blockchain ended up on the FP. Seems with AI we're looking the other way and are OK with it?
Or maybe it's me.
Not just you. Clearly useful tools coming out of this AI crazy, but a LOT of fluff.
Outside of pure tech companies, there's a lot of "Head of AI" hiring by CTOs to show "we are doing AI" regardless of if they have found any application for it yet.
I've also seen a lot of product pivots to AI where they don't really have a need or explanation for the use case that AI helps with.
Further I've seen a number of orgs that were laggards in their internal technology become incredibly distracted thinking AI will solve for them not having even a proper rudimentary 2010s class IT org.
I think the comedown from this will be worse than crypto as while there will be more real use cases, there is far more hype based "we have to do something" adoption that hasn't found a use yet. A lot of orgs that remained weary of crypto got fully on the AI bandwagon. Investment must be an order of magnitude more.
A lot of the fluff is all about boosting sales IMO which is where a lot of money for tech comes from. When MBA types (a large chunk of tech's buyers) hear the promises of efficiency, and replacing workers they get all excited very very quickly unless it requires lots of capital to do so - where they might instead look at cheaper labor (think offshore). AI is the ultimate SaaS product to these types, or at least how it it pitched to them it is. These people see tech workers, and IP as just "resources" - they are fungible bodies not qualified professionals. Obviously this creates a lot of technology delivery issues; and dysfunction. Places run by these types (many corporations) see technology as an expensive cost centre and secondary to the main business. I've seen this even in companies where they have to pivot to being a tech business - because of market competition they were forced to invest, but because it was reluctant investment the old culture remains. Engineers and other "builders/do'ers" are usually second class to the "decision makers" in these places. These are the places where engineers keep the place running, sometimes doing a lot of work and absolutely critical, but get paid little and receive little recognition. This is very common position for a software engineer outside the US.
With this kind of thinking often comes being a laggard in technology as you put it - engineers are a "forced necessary cost" because competitors are forcing us to keep up; not because we actually value it.
AI in their minds has vindicated their thinking hence the excitement about it. As a product it is very easy to "sell/fluff" to these kinds of people; it really excites them. They think engineers are now the expendable people they always wanted them to be rather than the people they had to put up with to get what they wanted. They were now justified in being "laggards" - they now have AI to do it cheaper than they would of had to pay an engineer before.
Yes there's a lot wrong with the thinking above, overestimation of current capabilities, etc and real innovative growth leading companies don't think this way. But the decision makers in these companies don't have that perspective. Much of technology trends, corporate hype is around things you can sell to these decision makers who often overpay for the wrong kind of technologies if you sell to them right (think typical RFQ/RFP corporate processes) - AI is an easy sell/dream to these people.
Yes I think this encapsulates my critique and observation from inside the belly of the beast. To these guys $100/year or even $1000/year per head to give AI to 1000 excel jockey analysts is great. It's cheaper, by an order of magnitude, than upsizing their IT org to the size of their leading competitors. I mean we are talking single digit SWEs for the numbers above.
Of course they probably aren't thinking through how AI will allow their leading competitors to maintain or expand their lead if it is any good anyway.
Interestingly I was in a meeting with our firms IT org recently where they were describing some of the "upgrades" they are making across systems, some of which were going to degrade service. Upon enough prodding they conceded the reasoning was not value, or even cost, but cost attribution. That is, it was too hard to figure out how to meter usage & charge back to business lines, so they are essentially going to discontinue those services and make business lines self manage. Crazy.
> Clearly useful tools coming out of this AI crazy, but a LOT of fluff.
Isn't this true of every boom? Like A.C. Clarke said, you find the limits of the possible by venturing into the impossible.
On the adoption side, no.
This feels way more like the 90s IT offshoring wave where it was forced bluntly, top down because they thought it would save money.
Things like crypto or cloud or big data had a much longer and measured adoption cycle.
It's you.
The AI discussions can indeed be repetitive and tiresome here, especially for regulars, but they already seem to be downweighted and clear off the front page quite fast.
But it's a major focus of the industry right now, involving a genuinely novel and promising new class of tools, so the posts belong here and the high engagement that props them up seems expected.
> It's you.
Not just him.
> But it's a major focus of the industry right now, involving a genuinely novel and promising new class of tools, so the posts belong here and the high engagement that props them up seems expected.
In your opinion (and admittedly others), but that doesn't make the overhype any less tiresome. Yes it is novel technology, but there's alway novel technology, and it isn't all in one area, but you wouldn't know it by what hits the front page these days.
Anyway, it's useless to shake fists at the clouds. This hype will pass, just like all the others before it, and the discussion can again be proportional to the relevance of the topic.
I don't know about the professional professionals, but as a science professor, I have to wear a lot of hats, which has required me to gain skills in a multitude of areas outside my area of deep expertise.
I use Claude and Chatgpt EVERY DAY.
Those services help me run out scripts for data munging, etc etc very quickly. I don't use it for high expertise writing, as I find it takes more than I get back, but I do use it to put words on a page for more general things. If your deep expertise is programming, you may not use it much either for that. But man oh man has it magnified my output on the constellation of things I need to get done.
What other innovation in the last decade has been this disruptive? Two years ago, I didn't use this. Now I do as part of my regular routine, and I am more valuable for it. So yes, there is hype, but man oh man, is the hype deserved. Even if AI winter started right now, the productivity boom from Claude level LLMs is nothing short of huge.
9 replies →
> It's you.
I disagree.
How does any of that apply to this particular article? Isn't a broader historical perspective exactly what's needed if you want to be free from the immediate hype cycle?
One of my biggest irritations with HN comment sections is how frequently people seem to want to ignore the specific interesting thing an article is about and just express uninteresting and repetitive generic opinions about the general topic area instead.
It's a CACM article. Without having read this one, I'd say CACM articles on HN are absolutely appropriate.
that's not really a justification in my view. The entire education industry is complicit in this circus. It's not just engineers hoping to get a payday it's academics too that are hoping to get funding and tenure.
CACM was totally complicit in spreading the blockchain hype: https://cacm.acm.org/?s=blockchain
That said, I'm not hating the player, people gotta eat. But I totally lack appreciation for the game.
I've worked in the analytics space for over ten years building what today is called "AI" as a service or product. The hype seems more like pent up release for the valid stuff, and block chain for the tech marketer type stuff.
It's been a common problem with HN. I remember when NodeJS came out, it was exactly the same, and then with all the crypto-craze.
Nah, it’s not just you.
AI is really neat. I don’t understand how a business model that makes money pops out on the other end.
At least crypto cashed out on NFTs for a while.
> I don’t understand how a business model that makes money pops out on the other end
Tractors and farming.
By turning what is traditionally a labour intensive product into a capital intensive one.
For now, the farmers who own tractors will beat the farmers who need to hire, house and retain workers (or half a dozen children).
This goes well for quite some time, where you can have 3 people handle acres & acres.
I'll be around explaining how coffee beans can't be picked by a tractor or how vanilla can't be pollinated with it.
And I'll be around explaining why it's a bad idea to stockpile $X00,000,000 worth of Equipment in Columbia, where coffee grows readily.
Capital intensive industries require low crime and geopolitical stability. Strongman politics means that investors who buy such equipment will simply be robbed at literal gunpoint by local gangs.
1 reply →
I may be mistaken, but I was under the impression that, largely, farmers do not own their equipment. They lease it, and it costs a lot.
Edit: Also, 3 people can handle 100 acres of land, given the crop. That happens today.
2 replies →
> I don’t understand how a business model that makes money pops out on the other end.
What issues do you see?
I pay for ChatGPT and for cursor and to me that's money very well spent.
I imagine tools like cursor will become common for other text intensive industries, like law, soon.
Agreed that the hype can be over the top, but these are valuable productivity tools, so I have some trouble understanding where you're coming from.
I feel like the raw numbers kind of indicate that the amount of money spent on training, salary, and overhead doesn't add up. "We'll beat them in volume" keeps jumping out at me.
1 reply →
What you're paying for ChatGPT is not likely covering their expenses, let alone making up their massive R&D investment. People paid for Sprig and Munchery too, but those companies went out of business. Obviously what they developed wasn't nearly as significant as what OpenAI has developed, but the question is: where will their pricing land once they need to turn a profit? It may well end up in a place where it's not worth paying ChatGPT to do most of the things it would be transformative for at its current price.
[1]: https://www.fooddive.com/news/sprig-is-the-latest-meal-deliv...
[2]:https://techcrunch.com/2019/01/21/munchery-shuts-down/?gucco...
6 replies →
Question is whether these companies are profitable off the services they're providing, or still being propped up by all the VC money pouring in.
good point about the business model. probably AI has more even the ones reaping the rewards are only 4 or 5 big corps.
It seems with crypto the business "benefits" were mostly adversarial (winners were those doing crimes on the darknet, or to allow ransomware operators to get paid). The underlying blockchain Tech itself though failed to replace transactions in a database.
The main value for AI today seems to be generative Tech to improve the quality of Deepfakes or to help everyone in Business write their communication with an even more "neutral" non-human like voice, free of any emotion, almost psychopathic. Like the dudes who are writing about their achievements on LinkedIn in 3rd person, ... Only now it's psychopathy enabled by the machine.
Also I've seen people who, without AI are barely literate, are now sending emails that look like they've been penned by a post-doc in English literature. The result is it's becoming a lot harder to separate the morons, and knuckle-draggers from those who are worth reaching out and talking to.
yes old man yelling at cloud.
+1. The other concern is that AI is potentially removing junior level jobs that are often a way for people to gain experience before stepping up into positions with more agency and autonomy. Which means in future we will be dealing with the next generation of "AI told me to do this", but "I have no experience to know whether this is good or not", so "let's do it".
1 reply →
I agree with you. I just don't see the AI "summer" happening.
Crypto is coming back for another heist. Will probably die a bit once Trump finishes his term
>every other article
On a quick count it seems to be more like 1/10. Maybe just ignore them and read something else?
I'm interested in the AI stuff personally.
My problem is the abuse of the term AI to a point where it has lost all meaning. I'd be all for a ban on the term in favour of the specific method driving the 'intelligence' as I would rule out some of qualifying simple because they are not capable of making intelligent decisions, even if they can make complex ones (looking at you random forest).
Do you mean that cryptocurrency submissions were penalized that way? I recall them being about as annoying and similarly filling the front page with uninformative submissions, but have not heard of such penalties. Same as with other subjects during their hype waves.
Well AI probably is the future. Might not necessarily be LLMs (I personally don't rate LLMs) but enough people are interested in it nowadays that it's almost certain AGI will happen in our lifetimes.
Honestly I'm intrigued on why you don't rate LLM. Arguably the main reason AI got out from its winter is the emergence of LLM.
Because I can't see current techniques for creating LLMs fixing the pre-training problem. Right now big tech companies are training LLMs on, well, pretty much all human knowledge ever assembled, and they're still pretty dumb. They're wrong far too often and they don't have the capacity to learn and figure out things with a limited amount of data as humans do. Also, it's pretty clear that LLMs are flatlining.
Now, they are good text interfaces. They're good for parsing and creating text. There even seems to be very, very basic thought and maybe even creativity (at a very, very basic level). At this point though, I can't see them improving much more without a major change in technology, techniques, something. The first time I saw them I thought they were just regression analysis on steroids, and not going to lie, they still have that vibe considering tech companies have clusters up to 350k H100s and LLMs still are dumber than the average person for most tasks.
I'm currently creating an app that uses an LLM as an interface and it's definitely interesting, but most of the heavy lifting of the app will be the functions it calls and a knowledge database since it needs to have more concrete and current knowledge. But hey, it's nicer than implementing search from scratch I guess.
Because almost once a quarter there's a big release that raises the expectations for top AI companies. Which brings up discussions, new articles and eventually posts in the front page.
2020-2022 HN front page was full of crypto news, mostly in negative light, but still. And before that there was more hot bubble topics. It's very usual.