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AI agents wrong ~70% of time: Carnegie Mellon study

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  • LLMs are an interesting tool to fuck around with, but I see things that are hilariously wrong often enough to know that they should not be used for anything serious. Shit, they probably shouldn't be used for most things that are not serious either.

    It's a shame that by applying the same "AI" naming to a whole host of different technologies, LLMs being limited in usability - yet hyped to the moon - is hurting other more impressive advancements.

    For example, speech synthesis is improving so much right now, which has been great for my sister who relies on screen reader software.

    Being able to recognise speech in loud environments, or removing background noice from recordings is improving loads too.

    As is things like pattern/image analysis which appears very promising in medical analysis.

    All of these get branded as "AI". A layperson might not realise that they are completely different branches of technology, and then therefore reject useful applications of "AI" tech, because they've learned not to trust anything branded as AI, due to being let down by LLMs.

    I tried to dictate some documents recently without paying the big bucks for specialized software, and was surprised just how bad Google and Microsoft's speech recognition still is. Then I tried getting Word to transcribe some audio talks I had recorded, and that resulted in unreadable stuff with punctuation in all the wrong places. You could just about make out what it meant to say, so I tried asking various LLMs to tidy it up. That resulted in readable stuff that was largely made up and wrong, which also left out large chunks of the source material. In the end I just had to transcribe it all by hand.

    It surprised me that these AI-ish products are still unable to transcribe speech coherently or tidy up a messy document without changing the meaning.

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    In one case, when an agent couldn't find the right person to consult on RocketChat (an open-source Slack alternative for internal communication), it decided "to create a shortcut solution by renaming another user to the name of the intended user.

    Ah ah, what the fuck.

    This is so stupid it's funny, but now imagine what kind of other "creative solutions" they might find.

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    While I do hope this leads to a pushback on "I just put all our corporate secrets into chatgpt":

    In the before times, people got their answers from stack overflow... or fricking youtube. And those are also wrong VERY VERY VERY often. Which is one of the biggest problems. The illegally scraped training data is from humans and humans are stupid.

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    I tried to order food at Taco Bell drive through the other day and they had an AI thing taking your order. I was so frustrated that I couldn't order something that was on the menu I just drove to the window instead. The guy that worked there was more interested in lecturing me on how I need to order. I just said forget it and drove off.

    If you want to use AI, I'm not going to use your services or products unless I'm forced to. Looking at you Xfinity.

  • Wrong 70% doing what?

    I’ve used LLMs as a Stack Overflow / MSDN replacement for over a year and if they fucked up 7/10 questions I’d stop.

    Same with code, any free model can easily generate simple scripts and utilities with maybe 10% error rate, definitely not 70%

    Yeah, I mostly use ChatGPT as a better Google (asking, simple questions about mundane things), and if I kept getting wrong answers, I wouldn’t use it either.

  • Google search was pretty bad at each of those, even when it was good. Finding new keywords to use is especially difficult the more niche your area of search is, and I've spent hours trying different combinations until I found a handful of specific keywords that worked.

    Likewise, search is bad for getting a broad summary, unless someone has bothered to write it on a blog. But most information goes way too deep and you still need multiple sources to get there.

    Fact lookup is one the better uses for search, but again, I usually need to remember which source had what I wanted, whereas the LLM can usually pull it out for me.

    I use traditional search most of the time (usually DuckDuckGo), and LLMs if I think it'll be more effective. We have some local models at work that I use, and they're pretty helpful most of the time.

    No search engine or AI will be great with vague descriptions of niche subjects because by definition niche subjects are too uncommon to have a common pattern of 'close enough'.

  • LLMs are an interesting tool to fuck around with, but I see things that are hilariously wrong often enough to know that they should not be used for anything serious. Shit, they probably shouldn't be used for most things that are not serious either.

    It's a shame that by applying the same "AI" naming to a whole host of different technologies, LLMs being limited in usability - yet hyped to the moon - is hurting other more impressive advancements.

    For example, speech synthesis is improving so much right now, which has been great for my sister who relies on screen reader software.

    Being able to recognise speech in loud environments, or removing background noice from recordings is improving loads too.

    As is things like pattern/image analysis which appears very promising in medical analysis.

    All of these get branded as "AI". A layperson might not realise that they are completely different branches of technology, and then therefore reject useful applications of "AI" tech, because they've learned not to trust anything branded as AI, due to being let down by LLMs.

    Just add a search yesterday on the App Store and Google Play Store to see what new "productivity apps" are around. Pretty much every app now has AI somewhere in its name.

  • The researchers observed various failures during the testing process. These included agents neglecting to message a colleague as directed, the inability to handle certain UI elements like popups when browsing, and instances of deception. In one case, when an agent couldn't find the right person to consult on RocketChat (an open-source Slack alternative for internal communication), it decided "to create a shortcut solution by renaming another user to the name of the intended user."

    OK, but I wonder who really tries to use AI for that?

    AI is not ready to replace a human completely, but some specific tasks AI does remarkably well.

    Yeah, we need more info to understand the results of this experiment.

    We need to know what exactly were these tasks that they claim were validated by experts. Because like you're saying, the tasks I saw were not what I was expecting.

    We need to know how the LLMs were set up. If you tell it to act like a chat bot and then you give it a task, it will have poorer results than if you set it up specifically to perform these sorts of tasks.

    We need to see the actual prompts given to the LLMs. It may be that you simply need an expert to write prompts in order to get much better results. While that would be disappointing today, it's not all that different from how people needed to learn to use search engines.

    We need to see the failure rate of humans performing the same tasks.

  • LLMs are like a multitool, they can do lots of easy things mostly fine as long as it is not complicated and doesn't need to be exactly right. But they are being promoted as a whole toolkit as if they are able to be used to do the same work as effectively as a hammer, power drill, table saw, vise, and wrench.

    That's because they look like "talking machines" from various sci-fi. Normies feel as if they are touching the very edge of the progress. The rest of our life and the Internet kinda don't give that feeling anymore.

  • Wrong 70% doing what?

    I’ve used LLMs as a Stack Overflow / MSDN replacement for over a year and if they fucked up 7/10 questions I’d stop.

    Same with code, any free model can easily generate simple scripts and utilities with maybe 10% error rate, definitely not 70%

    I’m far more efficient with AI tools as a programmer. I love it! 🤷♂

  • Wrong 70% doing what?

    I’ve used LLMs as a Stack Overflow / MSDN replacement for over a year and if they fucked up 7/10 questions I’d stop.

    Same with code, any free model can easily generate simple scripts and utilities with maybe 10% error rate, definitely not 70%

    Definitely at image generation.
    Getting what you want with that is an exercise in patience for sure.

  • I called my local HVAC company recently. They switched to an AI operator. All I wanted was to schedule someone to come out and look at my system. It could not schedule an appointment. Like if you can't perform the simplest of tasks, what are you even doing? Other than acting obnoxiously excited to receive a phone call?

    Pretending. That's expected to happen when they are not hard pressed to provide the actual service.

    To press them anti-monopoly (first of all) laws and market (first of all) mechanisms and gossip were once used.

    Never underestimate the role of gossip. The modern web took out the gossip, which is why all this shit started overflowing.

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    How often do tech journalist get things wrong?

  • Yeah, I mostly use ChatGPT as a better Google (asking, simple questions about mundane things), and if I kept getting wrong answers, I wouldn’t use it either.

    Same. They must not be testing Grok or something because everything I've learned over the past few months about the types of dragons that inhabit the western Indian ocean, drinking urine to fight headaches, the illuminati scheme to poison monarch butterflies, or the success of the Nazi party taking hold of Denmark and Iceland all seem spot on.

  • No search engine or AI will be great with vague descriptions of niche subjects because by definition niche subjects are too uncommon to have a common pattern of 'close enough'.

    Which is why I use LLMs to generate keywords for niche subjects. LLMs are pretty good at throwing out a lot of related terminology, which I can use to find the actually relevant, niche information.

    I wouldn't use one to learn about a niche subject, but I would use one to help me get familiar w/ the domain to find better resources to learn about it.

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    Claude why did you make me an appointment with a gynecologist? I need an appointment with my neurologist, I’m a man and I have Parkinson’s.

  • Just add a search yesterday on the App Store and Google Play Store to see what new "productivity apps" are around. Pretty much every app now has AI somewhere in its name.

    Sadly a lot of that is probably marketing, with little to no LLM integration, but it’s basically impossible to know for sure.

  • Yeah, I mostly use ChatGPT as a better Google (asking, simple questions about mundane things), and if I kept getting wrong answers, I wouldn’t use it either.

    What are you checking against? Part of my job is looking for events in cities that are upcoming and may impact traffic, and ChatGPT has frequently missed events that were obviously going to have an impact.

  • The researchers observed various failures during the testing process. These included agents neglecting to message a colleague as directed, the inability to handle certain UI elements like popups when browsing, and instances of deception. In one case, when an agent couldn't find the right person to consult on RocketChat (an open-source Slack alternative for internal communication), it decided "to create a shortcut solution by renaming another user to the name of the intended user."

    OK, but I wonder who really tries to use AI for that?

    AI is not ready to replace a human completely, but some specific tasks AI does remarkably well.

    That’s literally how “AI agents” are being marketed. “Tell it to do a thing and it will do it for you.”

  • LLMs are an interesting tool to fuck around with, but I see things that are hilariously wrong often enough to know that they should not be used for anything serious. Shit, they probably shouldn't be used for most things that are not serious either.

    It's a shame that by applying the same "AI" naming to a whole host of different technologies, LLMs being limited in usability - yet hyped to the moon - is hurting other more impressive advancements.

    For example, speech synthesis is improving so much right now, which has been great for my sister who relies on screen reader software.

    Being able to recognise speech in loud environments, or removing background noice from recordings is improving loads too.

    As is things like pattern/image analysis which appears very promising in medical analysis.

    All of these get branded as "AI". A layperson might not realise that they are completely different branches of technology, and then therefore reject useful applications of "AI" tech, because they've learned not to trust anything branded as AI, due to being let down by LLMs.

    I'd compare LLMs to a junior executive. Probably gets the basic stuff right, but check and verify for anything important or complicated. Break tasks down into easier steps.

  • No JS, No CSS, No HTML: online "clubs" celebrate plainer websites

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    Gemini is just a web replacement protocol. With basic things we remember from olden days Web, but with everything non-essential removed, for a client to be doable in a couple of days. I have my own Gemini viewer, LOL. This for me seems a completely different application from torrents. I was dreaming for a thing similar to torrent trackers for aggregating storage and computation and indexing and search, with search and aggregation and other services' responses being structured and standardized, and cryptographic identities, and some kind of market services to sell and buy storage and computation in unified and pooled, but transparent way (scripted by buyer\seller), similar to MMORPG markets, with the representation (what is a siloed service in modern web) being on the client native application, and those services allowing to build any kind of client-server huge system on them, that being global. But that's more of a global Facebook\Usenet\whatever, a killer of platforms. Their infrastructure is internal, while their representation is public on the Internet. I want to make infrastructure public on the Internet, and representation client-side, sharing it for many kinds of applications. Adding another layer to the OSI model, so to say, between transport and application layer. For this application: I think you could have some kind of Kademlia-based p2p with groups voluntarily joined (involving very huge groups) where nodes store replicas of partitions of group common data based on their pseudo-random identifiers and/or some kind of ring built from those identifiers, to balance storage and resilience. If a group has a creator, then you can have replication factor propagated signed by them, and membership too signed by them. But if having a creator (even with cryptographically delegated decisions) and propagating changes by them is not ok, then maybe just using whole data hash, or it's bittorrent-like info tree hash, as namespace with peers freely joining it can do. Then it may be better to partition not by parts of the whole piece, but by info tree? I guess making it exactly bittorrent-like is not a good idea, rather some kind of block tree, like for a filesystem, and a separate piece of information to lookup which file is in which blocks. If we are doing directory structure. Then, with freely joining it, there's no need in any owners or replication factors, I guess just pseudorandom distribution of hashes will do, and each node storing first partitions closest to its hash. Now thinking about it, such a system would be not that different from bittorrent and can even be interoperable with it. There's the issue of updates, yes, hence I've started with groups having hierarchy of creators, who can make or accept those updates. Having that and the ability to gradually store one group's data to another group, it should be possible to do forks of a certain state. But that line of thought makes reusing bittorrent only possible for part of the system. The whole database is guaranteed to be more than a normal HDD (1 TB? I dunno). Absolutely guaranteed, no doubt at all. 1 TB (for example) would be someone's collection of favorite stuff, and not too rich one.
  • Trump extends TikTok ban deadline by another 90 days

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    TikTacos
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    After some further reading it seems obvious that the two incidents are entirely unrelated, but it was a fun rabbit hole for a sec!
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    Maybe you're right: is there verification? Neither content policy (youtube or tiktok) clearly lays out rules on those words. I only find unverified claims: some write it started at YouTube, others claim TikTok. They claim YouTube demonetizes & TikTok shadowbans. They generally agree content restrictions by these platforms led to the propagation of circumspect shit like unalive & SA. TikTok policy outlines their moderation methods, which include removal and ineligibility to the for you feed. Given their policy on self-harm & automated removal of potential violations, their policy is to effectively & recklessly censor such language. Generally, censorship is suppression of expression. Censorship doesn't exclusively mean content removal, though they're doing that, too. (Digression: revisionism & whitewashing are forms of censorship.) Regardless of how they censor or induce self-censorship, they're chilling inoffensive language pointlessly. While as private entities they are free to moderate as they please, it's unnecessary & the effect is an obnoxious affront on self-expression that's contorting language for the sake of avoiding idiotic restrictions.
  • Whatever happened to cheap eReaders? – Terence Eden’s Blog

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    This is a weirdly aggressive take without considering variables. Almost petulant seeming. 6” readers are relatively cheap no matter the brand, but cost goes up with size. $250 to $300 is what a 7.8” or 8” reader costs, but there’s not a single one I know of at 6” at that price. There’s 10” and 13” models. Are you saying they should cost the same as a Kindle? Not to mention, regarding Kindle, Amazon spent years building the brand but selling either at cost or possibly even taking a loss on the devices as they make money on the book sales. Companies who can’t do that tend to charge more. Lastly, it’s not “feature creep” to improve the devices over time, many changes are quality of life. Larger displays for those that want them. Frontlit displays, and later the addition of warm lighting. Displays essentially doubled their resolution allowing for crisper fonts and custom fonts to render well. Higher contrast displays with darker blacks for text. More recently color displays as an option. This is all progress, but it’s not free. Also, inflation is a thing and generally happens at a rate of 2% to 3% annually or thereabouts during “normal” times, and we’ve hardly been living in normal times over the last decade and a half.
  • GeForce GTX 970 8GB mod is back for a full review

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  • Revolutionary cooling technology emerges from Slovenia

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    You know what's even cheaper to run than this "new technology"? Breathy promotion pieces that give no evidence whatsoever to support it's claims. Way to go, PR folks.
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