I think what we’re seeing is similar to lactose intolerance. Most people can handle it just fine but some people simply can’t digest it and get sick. The problem is there’s no way to determine who can handle AI and who can’t.
When I’m reading about people developing AI delusions their experiences sound completely alien to me. I played with LLMs same as anyone and I never treated it as anything other than a tool that generates responses to my prompts. I never thought “wow, this thing feels so real”. Some people clearly have predisposition to jumping over the “it’s a tool” reaction straight to “it’s a conscious thing I can connect with”. I think next step should be developing a test that can predict how someone will react to it.
I bet it’s probably correlated with low education as most things
Cults and toxic self-help literature have existed before LLMs copied them. I don’t know if LLMs are getting people who couldn’t have been gotten by human scammers.
Scams have many different vectors and people can be vulnerable to them depending on their mood or position in life. Testing people on LLM intolerance would be more like testing them on their susceptibility to viruses.
People can be immunocompromised for various reasons, temporarily or permanently, so as a society public hygiene standards (and the material conditions to produce them) are a lot more valuable. Wash your hands after interacting, keep public spaces clean, that sort of stuff.
I have yet to see any evidence that AI is inducing problems. People with problems use it just like anyone else and others consider that use problematic.
Based
Huge Study
*Looks inside
this latest study examined the chat logs of 19 real users of chatbots — primarily OpenAI’s ChatGPT — who reported experiencing psychological harm as a result of their chatbot use.
Pretty small sample size despite being a large dataset that they pulled from, its still the dataset of just 19 people.
AI sucks in a lot of ways sure, but this feels like fud.
It’s not really ethical to just yoink people’s chats and study them
Tell that to the advertizing companies.
Thanks, you saved me a click 😐
The hugeness is probably
391, 562 messages across 4,761 different conversations
That’s a lot of messages
I remember reading my old states book that said a minimum of 30 points needed for normal distribution. Also typically these small sets about proof of concept, so yeah you still got a point.
I wonder if the headline was written by an AI
…fud?
fud: Fear, Uncertainty and Doubt. A tactic for denigrating a thing, usually by implication of hypothetical or exaggerated harms, often in vague language that is either tautological or not falsifiable.
It’s crypto bro speak.
What? The term FUD has been around since at least the 90s, though I think significantly older than that
Microsoft are masters of it, their whole business plan is dependent on it
It predates crypto by nearly 100 years.
https://en.wikipedia.org/wiki/Fear%2C_uncertainty%2C_and_doubt#Etymology
*hugely funded?
Are you unironically saying “fud”
Where are you hearing it so much? (And ideally can you describe it in a little more detail than saying it’s crypto bros again?)
Crypto bros are infamous for describing any criticism as FUD, no matter the criticism. It’s like a verbal tic. https://primal.net/search/FUD
When all this FUD ends and Bitcoin goes 🚀
Quantum FUD is at ATH
FUD Busters [NFT]
Flokicoin is built to last… Don’t follow the FUD.
The term FUD has been around longer & broader than that. But thanks for the explanation.
I have a friend that’s really taken to ChatGPT to the point where “the AI named itself so I call it by that name”. Our friend group has tried to discourage her from relying on it so much but I think that’s just caused her to hide it.
I certainly enjoy talking to LLMs about work for example, asking things like “was my boss an arse to say x, y, z” as the LLM always seems to be on my side… Now it could be my boss is an arse, or it could be the LLM sucking up to me. Either way, because of the many examples I’ve read online, I take it with a pinch of salt.
It’s definitely sucking up to you. It’s programmed to confirm what you say, because that means you keep using it.
Consider how you phrase your questions. Try framing a scenario from the position of your boss, or ask “why was my boss right to say x, y, z”, and it’ll still agree with you despite the opposite position.
If you’re just shooting the shit, consider doing it with a human being. Preferably in person, but there are plenty of random online chat groups too
its like the AI BF/GFs the subs are posting about.
“Centaurs”
They think they are getting mythical abilities
They’re right but not in the way they think
As the researchers wrote in a summary of their findings, the “most common sycophantic code” they identified was the propensity for chatbots to rephrase and extrapolate “something the user said to validate and affirm them, while telling them they are unique and that their thoughts or actions have grand implications.”
There’s a certain irony in all the alright techbros really just wanting to be told they were “stunning and brave” this whole time.
Are the users in this study techbros?
Besides, tech bros didn’t program this in, this is just an LLM getting stuck in the data patterns stolen from toxic self-help literature.
For decades there has been a large self-help subculture who consume massive amounts of vacuous positive affirmation produced by humans. Now those vacuous affirmations are copied by the text copying machine with the same result and it’s treated as shocking.
Huh. I hate it when people do that. Fake/professional empathy/support. Yet others gobble it up when a machine does that.
Anthropic has some similar findings, and they propose an architectural change (activation capping) that apparently helps keep the Assistant character away from dark traits (sometimes). But it hasn’t been implemented in any models, I assume because of the cost of scaling it up.
When you talk to a large language model, you can think of yourself as talking to a character
But who exactly is this Assistant? Perhaps surprisingly, even those of us shaping it don’t fully know
Fuck me that’s some terrifying anthropomorphising for a stochastic parrot
The study could also be summarised as “we trained our LLMs on biased data, then honed them to be useful, then chose some human qualities to map models to, and would you believe they align along a spectrum being useful assistants!?”. They built the thing to be that way then are shocked? Who reads this and is impressed besides the people that want another exponential growth investment?
To be fair, I’m only about 1/3rd of the way through and struggling to continue reading it so I haven’t got to the interesting research but the intro is, I think, terrible
stochastic parrot
A phrase that throws more heat than light.
What they are predicting is not the next word they are predicting the next idea
Technically, they are predicting the next token. To do that properly they may need to predict the next idea, but thats just a means to an end (the end being the next token).
Also, the LLM is just predicting it, it’s not selecting it. Additionally it’s not limited to the role of assistant, if you (mis) configure the inference engine accordingly it will happily predict user tokens or any other token (tool calls etc).
The paper is more rigorous with language but can be a slog.

Paranoia amplification when ?
Months ago













