The research from Purdue University, first spotted by news outlet Futurism, was presented earlier this month at the Computer-Human Interaction Conference in Hawaii and looked at 517 programming questions on Stack Overflow that were then fed to ChatGPT.

“Our analysis shows that 52% of ChatGPT answers contain incorrect information and 77% are verbose,” the new study explained. “Nonetheless, our user study participants still preferred ChatGPT answers 35% of the time due to their comprehensiveness and well-articulated language style.”

Disturbingly, programmers in the study didn’t always catch the mistakes being produced by the AI chatbot.

“However, they also overlooked the misinformation in the ChatGPT answers 39% of the time,” according to the study. “This implies the need to counter misinformation in ChatGPT answers to programming questions and raise awareness of the risks associated with seemingly correct answers.”

  • @[email protected]
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    7 months ago

    Who would have thought that an artificial intelligence trained on human intelligence would be just as dumb

    • capital
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      7 months ago

      Hm. This is what I got.

      I think about 90% of the screenshots we see of LLMs failing hilariously are doctored. Lemmy users really want to believe it’s that bad through.

      Edit:

      • @[email protected]
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        197 months ago

        I’ve had lots of great experiences with ChatGPT, and I’ve also had it hallucinate things.

        I saw someone post an image of a simplified riddle, where ChatGPT tried to solve it as if it were the entire riddle, but it added extra restrictions and have a confusing response. I tried it for myself and got an even better answer.

        Prompt (no prior context except saying I have a riddle for it):

        A man and a goat are on one side of the river. They have a boat. How can they go across?

        Response:

        The man takes the goat across the river first, then he returns alone and takes the boat across again. Finally, he brings the goat’s friend, Mr. Cabbage, across the river.

        I wish I was witty enough to make this up.

        • capital
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          57 months ago

          I reproduced that one and so I believe that one is true.

          I looked up the whole riddle and see how it got confused.

          It happened on 3.5 but not 4.

            • capital
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              37 months ago

              Evidently I didn’t save the conversation but I went ahead and entered the exact prompt above into GPT-4. It responded with:

              The man can take the goat across the river in the boat. After reaching the other side, he can leave the goat and return alone to the starting side if needed. This solution assumes the boat is capable of carrying at least the man and the goat at the same time. If there are no further constraints like a need to transport additional items or animals, this straightforward approach should work just fine!

      • @[email protected]
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        187 months ago

        Yesterday, someone posted a doctored one on here saying everyone eats it up even if you use a ridiculous font in your poorly doctored photo. People who want to believe are quite easy to fool.

  • zelifcam
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    7 months ago

    “Major new Technology still in Infancy Needs Improvements”

    – headline every fucking day

    • @[email protected]
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      587 months ago

      unready technology that spews dangerous misinformation in the most convincing way possible is being massively promoted

      • @[email protected]
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        97 months ago

        Yeah, because no human would convincingly lie on the internet. Right, Arthur?

        It’s literally built on what confidently incorrect people put on the internet. The only difference is that there are constant disclaimers on it saying it may give incorrect information.

        Anyone too stupid to understand how to use it is too stupid to use the internet safely anyways. Or even books for that matter.

        • @[email protected]
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          97 months ago

          Holy mother of false equivalence. Google is not supposed to be a random dude on the Internet, it’s supposed to be a reference tool, and for the most part it was a good one before they started enshittifying it.

          • @[email protected]
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            27 months ago

            Google is a search engine. It points you to web pages that are made by people. Many times, the people who make those websites have put things on them that are knowingly or unknowingly incorrect but said in an authoritative manner. That was all I was saying, nothing controversial. That’s been a known fact for a long time. You can’t just read something on a single site and then be sure that it has to be true. I get that there are people who strangely fall in love with specific websites and think they are absolute truth, but thats always been a foolish way to use the internet.

            A great example of people believing blindly is all these horribly doctored google ai images saying ridiculous things. There are so many idiots that think every time they see a screenshot of Google ai saying something absurd that it has to be true. People have even gone so far as to use ridiculous fonts just to point out how easy it is to get people to trust anything. Now there’s a bunch of idiots that think all 20 or so Google ai mistakes they’ve seen are all genuine, so much so that they think almost all Google ai responses are incorrect. Some people are very stupid. Sorry to break it to you, but LLMs are not the first thing to put incorrect information on the internet.

      • @[email protected]
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        127 months ago

        Just playing devil’s advocate here, but if we could get to a future with algorithms so good they are essentially a talking version of all human knowledge, this would be a great thing for humanity.

          • @[email protected]
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            27 months ago

            There’s this series of books called the www series, about AI before AI was the new hot thing every company needed to mention at least once to get stock price to go up.

            Tap for spoiler

            Essentially an AI popped up on the internet, which was able to read everything. Due to this it was able to combine data in such a way that it found things like a cure for cancer by combining research papers that no one had ever combined. This is a very bad explanation, but I could see how this makes sense.

            Spoiler free explanation: no human has read everything, I think there could be big implications if there’s an AI that has that can see connections that no one ever has.

          • @[email protected]
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            27 months ago

            But let’s say some company did it, a perfect AI that has read everything and doesn’t hallucinate.

            A researcher is working on some experiments, if they could just route it through the AI, and it would annalyse if that experiment was even possible, maybe already done, this could speed up research.

            With a truly perfect model, which the tech bros are aiming for, I can see the potential for good. I ofcourse am skeptical such a model is possible, but… I kinda see why it would be nice to have.

      • @[email protected]
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        77 months ago

        I’m honestly a bit jealous of you. You are going to be so amazed when you realise this stuff is just barely getting started. It’s insane what people are already building with agents. Once this stuff gets mainstream, and specialized hardware hits the market, our current paradigm is going to seem like silent black and white films compared to what will be going on. By 2030 we will feel like 2020 was half a century ago at least.

        • @[email protected]
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          27 months ago

          Looking forward to it, but won’t be disappointed if it takes a bit longer than expected.

          • @[email protected]
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            37 months ago

            Ray Kurzweil has a phenomenal record of making predictions. He’s like 90% or something and has been saying AGI by 2029 for something like 30+ years. Last I heard, he is sticking with it, but he admits he may be a year or two off in either direction. AGI is a pretty broad term, but if you take it as “better than nearly every human in every field of expertise,” then I think 2029 is quite reasonable.

            • @[email protected]
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              47 months ago

              That’s not very far in the future, so it’s going to be really exciting to see how that works out.

              • @[email protected]
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                37 months ago

                Maybe only 51% of the code it writes needs to be good before it can self-improve. In which case, we’re nearly there!

                • @[email protected]
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                  37 months ago

                  We are already past that. The 48% is from a version of chatgpt(3.5) that came out a year ago, there has been lots of progress since then.

  • @[email protected]
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    567 months ago

    GPT-2 came out a little more than 5 years ago, it answered 0% of questions accurately and couldn’t string a sentence together.

    GPT-3 came out a little less than 4 years ago and was kind of a neat party trick, but I’m pretty sure answered ~0% of programming questions correctly.

    GPT-4 came out a little less than 2 years ago and can answer 48% of programming questions accurately.

    I’m not talking about mortality, or creativity, or good/bad for humanity, but if you don’t see a trajectory here, I don’t know what to tell you.

      • @[email protected]
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        257 months ago

        Perhaps there is some line between assuming infinite growth and declaring that this technology that is not quite good enough right now will therefore never be good enough?

        Blindly assuming no further technological advancements seems equally as foolish to me as assuming perpetual exponential growth. Ironically, our ability to extrapolate from limited information is a huge part of human intelligence that AI hasn’t solved yet.

      • @[email protected]
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        167 months ago

        I appreciate the XKCD comic, but I think you’re exaggerating that other commenter’s intent.

        The tech has been improving, and there’s no obvious reason to assume that we’ve reached the peak already. Nor is the other commenter saying we went from 0 to 1 and so now we’re going to see something 400x as good.

        • @[email protected]
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          67 months ago

          I think the one argument for the assumption that we’re near peak already is the entire issue of AI learning from AI input. I think numberphile discussed a maths paper that said that to achieve the accuracy that we want, there is simply not enough data to train it on.

          That’s of course not to say that we can’t find alternative approaches

        • @[email protected]
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          37 months ago

          We’re close to peak using current NN architectures and methods. All this started with the discovery of transformer architecture in 2017. Advances in architecture and methods have been fairly small and incremental since then. The advancements in performance has mostly just been throwing more data and compute at the models, and diminishing returns have been observed. GPT-3 costed something like $15 million to train. GPT-4 is a little better and costed something like $100 million to train. If the next model costs $1 billion to train, it will likely be a little better.

          • @[email protected]
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            17 months ago

            In general, “The technology is young and will get better with time” is not just a reasonable argument, but almost a consistent pattern. Note that XKCD’s example is about events, not technology. The comic would be relevant if someone were talking about events happening, or something like sales, but not about technology.

            Here, I’m not saying that you’re necessarily right or they’re necessarily wrong, just that the comic you shared is not a good fit.

      • @[email protected]
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        97 months ago

        We are running these things on computers not designed for this. Right now, there are ASICs being built that are specifically designed for it, and traditionally, ASICs give about 5 orders of magnitude of efficiency gains.

    • @[email protected]
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      47 months ago

      Given the data points you made up, I feel it’s safe to assume that this plateau will now be a 10 year stretch

    • @[email protected]
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      47 months ago

      Lemmy seems to be very near-sighted when it comes to the exponential curve of AI progress, I think this is an effect because the community is very anti-corp

      • @[email protected]
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        57 months ago

        No clue? Somewhere between a few years (assuming some unexpected breakthrough) or many decades? The consensus from experts (of which I am not) seems to be somewhere in the 2030s/40s for AGI. I’m guessing accuracy probably will be more on a topic by topic basis, LLMs might never even get there, or only related to things they’ve been heavily trained on. If predictive text doesn’t do it then I would be betting on whatever Yann LeCun is working on.

    • @[email protected]
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      17 months ago

      We only need to keep doing incremental improvements in the technology and avoid destroying ourselves in the meantime. That’s all it takes for us to find ourselves in the presence of superintelligent AI one day.

  • @[email protected]
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    447 months ago

    You have no idea how many times I mentioned this observation from my own experience and people attacked me like I called their baby ugly

    ChatGPT in its current form is good help, but nowhere ready to actually replace anyone

    • @[email protected]
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      197 months ago

      A lot of firms are trying to outsource their dev work overseas to communities of non-English speakers, and then handing the result off to a tiny support team.

      ChatGPT lets the cheap low skill workers churn out miles of spaghetti code in short order, creating the illusion of efficiency for people who don’t know (or care) what they’re buying.

      • @[email protected]
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        97 months ago

        Yeap… Another brilliant short term strategy to catch a few eager fools that won’t last mid term

    • FaceDeer
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      137 months ago

      They don’t require as much human intervention to make the results usable as would be required if the tool didn’t exist at all.

      Compilers produce machine code, but require human intervention to write the programs that they compile to machine code. Are compilers useless wastes of energy?

      • @[email protected]
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        57 months ago

        Compilers are deterministic and you can reason about how they came to their results, and because of that they are useful.

        • FaceDeer
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          27 months ago

          No, they’re useful because they produce useful machine code.

          • @[email protected]
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            27 months ago

            That’s a distinction without a difference. The code is useful because we can reason how it was made and we can then make deterministic changes. Try using a compiler that gives you a qualitatively different result each time it runs even though the inputs are the same.

            • FaceDeer
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              17 months ago

              It’s useful because it does the stuff we want it to do.

              You’re focusing on a very high level philosophical meaning of “usefulness.” I’m focusing on what actually does what I need it to do.

              • @[email protected]
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                27 months ago

                I’m providing explicit examples of compilers doing “the stuff we want it to do”. LLMs do what the want 50% of the time and it still needs modifications afterwards. Imagine having to correct a compiler output and calling that compiler “useful”.

                • FaceDeer
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                  17 months ago

                  So if something isn’t perfect it’s not “useful?”

                  I use LLMs when programming. Despite their imperfection they save me an enormous amount of time. I can confidently confirm that LLMs are useful from personal direct experience.

    • MxM111
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      87 months ago

      Counter arguments

      1. technology develops exponentially, while humans are … static
      2. even now single line of code LLM generates faster and cheaper
      3. the replacement is not programmer->LLM but programmer -> (programmer +LLM). LLM is just a tool.
      • @[email protected]
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        27 months ago

        technology develops exponentially, while humans are … static

        I have yet to see a self-improving technology that does not require adaptive human intelligence as an input.

    • Boozilla
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      7 months ago

      I honestly don’t know how well AI is going to scale when it comes to power consumption vs performance. If it’s like most of the progress we’ve seen in hardware and software over the years, it could be very promising. On the other hand, past performance is no guarantee for future performance. And your concerns are quite valid. It uses an absurd amount of resources.

      The usual AI squad may jump in here with their usual unbridled enthusiasm and copium that other jobs are under threat, but my job is safe, because I’m special.

      Eye roll.

      Meanwhile, thousands have been laid off already, and executives and shareholders are drooling at the possibility of thinning the workforce even more. Those who think AI will create as many jobs as it destroys are thinking wishfully. Assuming it scales well, it could spell massive layoffs. Some experts predict tens of millions of jobs lost to AI by 2030.

      To try and answer the other part of your question…at my job (which is very technical and related to healthcare) we have found AI to be extremely useful. Using Google to search for answers to problems pales by comparison. AI has saved us a lot of time and effort. I can easily imagine us cutting staff eventually, and we’re a small shop.

      The future will be a fascinating mix of good and bad when it comes to AI. Some things are quite predictable. Like the loss of creative jobs in art, music, animation, etc. And canned response type jobs like help desk chat, etc. The future of other things like software development, healthcare, accounting, and so on are a lot murkier. But no job (that isn’t very hands-on-physical) is 100% safe. Especially in sectors with high demand and low supply of workers. Some of these models understand incredibly complex things like drug interactions. It’s going to be a wild ride.

    • @[email protected]
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      77 months ago

      There is a good chance that it is instrumental in discoveries that lead to efficient clean energy. It’s not as if we were at some super clean, unabused planet before language models came along. We have needed help for quite some time. Almost nobody wants to change their own habits(meat, cars, planes, constant AC and heat…), so we need something. Maybe AI will help in this endevour like it has at so many other things.

        • @[email protected]
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          67 months ago

          This is a common misunderstanding of what it means to discover new things. New things are just remixing old things. For example, AI has discovered new matrix multiplications, protein foldings, drugs, chess/go/poker strategies, and much more that are all far superior to anything humans have ever come up with in these fields. In all these cases, the AI was just combining old things in new ways. Even Einstein was just combining old things into new ways. There is exactly zero chance that AI will all of a sudden quit making new discoveries all of a sudden.

            • @[email protected]
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              7 months ago

              Yeah, that’s the nature of discovery. Humans also “discovery” tons of things like chess strategies that are complete nonsense. Over time, we discard the most nonsense ones and keep the good ones as best as we can. It just turns out that this process is done way faster and efficiently by machines. That’s why nobody thinks humans are going to surpass AI at chess, go, poker, protein folding, matrix multiplation algorithm creation, and a whole bunch of other things.

              • @[email protected]
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                27 months ago

                Can you provide a source for the claim that all these discoveries are “far superior” than what humans have discovered? I struggle to see how a discovery can be ‘superior’- isn’t how the discovery is classified and dealt with, the crucial aspect?

                • @[email protected]
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                  17 months ago

                  I mean in these fields, it is superior. The greatest chess player is an AI. The greatest GO player is an AI. The greatest poker player… So far as Matrix multiplication goes, there are numerous examples of mathematicians being stuck at finding methods to do it at a certain level of efficiency and then having AI come through and finding more efficient ways to do it for given matrix sizes. Similar to this is drug creation and protein folding. The list goes on and on. I wasn’t comparing discoveries across fields, I’m just saying in clearly measurable specific fields, AI has objectively surpassed humans, and it has become pretty routine for this to be the case.

                  All these things I’ve mentioned are easily searchable, but if you still want sources after my clarification of my meaning let me know, and I’ll find some.

          • @[email protected]
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            67 months ago

            Just a slight correction. ML/AI has aided in all sorts of discoveries, GenAI is a “remixing of existing concepts”. I don’t believe I’ve read, nor does the underlying principles really enable, anything regarding GenAI and discovering new ways to do things.

            • @[email protected]
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              27 months ago

              Yes, ML/AI has, you are correct. So far as the capabilities of GenAI goes, we have not even begun to scratch the surface of understanding how all the emergent abilities of GenAI are happening, and nobody has any idea where they will max out at. All we know is that it is finding some patterns that humans find over time as well as many patterns that humans have not been able to find. The chances that it continues to find more and more complex patterns that we have not found are much higher than the chances that we are currently at the max of its ability.

              Maybe it won’t be transformers that leads to breakthroughs, it may be some completely different architecture such as Mamba/state space, but there is a good chance that transformers are a step in the direction of discovering something better.

            • @[email protected]
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              17 months ago

              I didn’t say LLMs made these discoveries. They didn’t. AI made those discoveries. Yes, it is true that humans made AI, so in a way, humans made the discoveries, but if that is your take, then it is impossible for AI to ever make any discovery. Really, if we take this way of thinking to its natural conclusion, then even humans can never make discoveries, only the universe can make discoveries, since humans are a result of the universe “universing”. It is arbitrary to try to credit humans with anything that happens further down their evolution.

              Humans tried for a long time to get good at chess, and AI came along and made the absolute best chess players utterly irrelevant even if we give a team of the worlds best chessplayers an endless clock and thr AI a single minute for the entire game. That was 20 years ago. This is happening in more and more fields and showing no sign of stopping. We don’t know yet if discoveries will come from future LLMs like theybm have from other forms of AI, but we do know that with each generation more and more complex patterns are being identified and utilized by LLMs. 3 years ago the best LLMs would have scored single digits on IQ test, now they are triple digits, it is laughable to think that anyone knows where the current rapid trajectory will stop for this new technology, and much more laughable to think we are already at the end.

                • @[email protected]
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                  17 months ago

                  if this is your take, then lot of keyboard made a lot of discovery.

                  This is literally my point. It is arbitrary to choose that all the good ideas came from “humans”. If we are going to give all credit for anything AI produces to humans, then it only seems fair to give all credit for human things to our common ancestors with chimpanzees, because if it were not for their clever ideas, we would never have been here. But wait, we can’t stop there, because we have to give credit to the original single-celled life forms, and eventually, back to the universe itself(like I mentioned before).

                  Look, I totally get the desire to want to glorify humans and think that we have something special that machines don’t/can’t have. It kinda sucks to think that we are not so special, and potentially extememly inferior to what is right around the corner. We can’t let that primal ego desire cloud our judgement, though. Our brains are physical machines doing calculations. There is not some magical difference between our calculations that make it so we can make discoveries and machines cannot.

                  Imagine you teach your little brother how to play chess, and then your brother thinks about it a bunch and comes up with a bunch of new strategies and starts to kick your butt every time, and eventually atatts crushing tournaments. Sure, you can cling to the fact that you taught him how to play, and you can go around telling everyone how “you” are winning all these tournaments because your brother is actually winning them, but it doesn’t change the fact that your brother is the one with the secret sauce that you simply are unable to comprehend.

                  Your whole point is that if people do it, then it is some special discovery thing, but if computers do it, then it is just computational brute force. There is actually no difference between the two, it is just two different ways of wording the same process. We made programs that could understand the rules, and then it went further and in the same direction that we were trying to go.

                  So far as continuing indefinitely because we are on a trajectory goes, sure, we will eventually hit some intelligence plateaus, but we are nowhere near this point. Why can I say this with such certainty? Because we have things that we know will work that we haven’t gotten around to combining yet. Some of this gets a bit technical, but a nice way to think of it is this. Right now, we are mainly using hardware designed to generate general graphics that we have hijacked to use for machine learning. The usual speedup when we go from using generalized hardware to specialized is about 5 orders of magnitude(10,000x). That kind of a gain has huge implications in the AI/ML world. This is just one out of many known improvements on the horizon, but it is one of the simplest to wrap your head around. I don’t know how familiar you are with things like crewAI or autogen, but they are phenomenal, they absolutely crush all of the greatest base LLMs, but they are still a bit slow due to how many LLM calls they take. When we have a 10,000x speedup(which is pretty much guarenteed), then everyone will be able to instantly use enormous agent frameworks like this in an instant.

                  I understand wanting to see humans as having a monopoly on “intelligence”, but quite frankly that era is coming to an end. It may be a bumpy ride, but the sooner humans learn to adjust to this new world, the better. I don’t think it is something that someone can really make someone else see, but once you do see it, it is very obvious. I suggest you check out the cutting-edge agent stuff out there and then imagine that the most impressive stuff will be routinely done from a single prompt in an instant. Then, on top of that, consider that the base LLMs that we have now are the worst there will ever be. We are in for a very wild ride.

      • Karyoplasma
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        117 months ago

        It will just be exploited by megacorporations and distorted in unimaginable ways to push profit to new heights. Just like every glimmer of hope for the future.

        • @[email protected]
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          47 months ago

          Check out the open source AI world. There are incredible things happening, it isn’t all as doom and gloom as pesemistic losers want everyone to believe. The open source community is a thriving ecosystem. Linux is a product of the open source world, it is completely free for anyone to use. It is superior to anything that private corporations have ever created in many ways and this can be plainly seen in the fact that nearly all important computing networks are run on linux.

            • @[email protected]
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              27 months ago

              Yeah, I was responding to someone saying that big corporations were going to take over AI, I was just pointing out that this isn’t a given since there are other massively successful tech projects that are open source community-driven projects. Sorry if I wasn’t clear enough.

  • @[email protected]
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    227 months ago

    Yeah it’s wrong a lot but as a developer, damn it’s useful. I use Gemini for asking questions and Copilot in my IDE personally, and it’s really good at doing mundane text editing bullshit quickly and writing boilerplate, which is a massive time saver. Gemini has at least pointed me in the right direction with quite obscure issues or helped pinpoint the cause of hidden bugs many times. I treat it like an intelligent rubber duck rather than expecting it to just solve everything for me outright.

    • @person420
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      77 months ago

      I tend to agree, but I’ve found that most LLMs are worse than I am with regex, and that’s quite the achievement considering how bad I am with them.

      • @[email protected]
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        27 months ago

        Hey, at least we can rest easy knowing that human devs will be needed to write regex for quite a while longer.

        … Wait, I’m horrible at Regex. Oh well.

    • @[email protected]
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      37 months ago

      Same here. It’s good for writing your basic unit tests, and the explain feature is useful getting for getting your head wrapped around complex syntax, especially as bad as searching for useful documentation has gotten on Google and ddg.

    • @[email protected]
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      37 months ago

      That’s a good way to use it. Like every technological evolution it comes with risks and downsides. But if you are aware of that and know how to use it, it can be a useful tool.
      And as always, it only gets better over time. One day we will probably rely more heavily on such AI tools, so it’s a good idea to adapt quickly.

  • @[email protected]
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    217 months ago

    I will resort to ChatGPT for coding help every so often. I’m a fairly experienced programmer, so my questions usually tend to be somewhat complex. I’ve found that’s it’s extremely useful for those problems that fall into the category of “I could solve this myself in 2 hours, or I could ask AI to solve it for me in seconds.” Usually, I’ll get a working solution, but almost every single time, it’s not a good solution. It provides a great starting-off point to write my own code.

    Some of the issues I’ve found (speaking as a C++ developer) are: Variables not declared “const,” extremely inefficient use of data structures, ignoring modern language features, ignoring parallelism, using an improper data type, etc.

    ChatGPT is great for generating ideas, but it’s going to be a while before it can actually replace a human developer. Producing code that works isn’t hard; producing code that’s good requires experience.

    • @[email protected]
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      7 months ago

      This has been my experience as well. If you already know what you are doing, LLMs can be a great tool. If you are inexperienced, you cannot assess the quality nor the accuracy of the answers, and are using the LLM to replace your own learning.

      I like to draw the parallel to people that have learnt to paint only using digital tools. They often show a particular colouring that shows a lack of understanding of colour theory. Because pipette tools mean that you never have to mix colours, you never have to learn to do so. Painting with physical paint isn’t superior, but it presents a hurdle (mixing paint) that is crucial to learn to overcome. Many digital-only artists will still have learnt on traditional media. Once you have the knowledge, the pipette and colour pickers are just a tool, no longer inhibiting anything.

  • @[email protected]
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    7 months ago

    If you don’t know what you are doing, and you give it a vague request hoping it will automatically solve your problem, then you will just have to spend even more time to debug its given code.

    However, if you know exactly what needs do do, and give it a good prompt, then it will reward you with a very well written code, clean implementation and comments. Consider it an intern or junior developer.

    Example of bad prompt: My code won’t work [paste the code], I keep having this error [paste the error log], please help me

    Example of (reasonably) good prompt: This code introduces deep recursion and can sometimes cause a “maximum stack size exceeded” error in certain cases. Please help me convert it to use a while loop instead.

    • @[email protected]
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      7 months ago

      I wouldn’t trust an LLM to produce any kind of programming answer. If you’re skilled enough to know it’s wrong, then you should do it yourself, if you’re not, then you shouldn’t be using it.

      I’ve seen plenty of examples of specific, clear, simple prompts that an LLM absolutely butchered by using libraries, functions, classes, and APIs that don’t exist. Likewise with code analysis where it invented bugs that literally did not exist in the actual code.

      LLMs don’t have a holistic understanding of anything—they’re your non-programming, but over-confident, friend that’s trying to convey the results of a Google search on low-level memory management in C++.

      • @[email protected]
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        7 months ago

        If you’re skilled enough to know it’s wrong, then you should do it yourself, if you’re not, then you shouldn’t be using it.

        Oh I strongly disagree. I’ve been building software for 30 years. I use copilot in vscode and it writes so much of the tedious code and comments for me. Really saves me a lot of time, allowing me to spend more time on the complicated bits.

        • @[email protected]
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          I’m closing in on 30 years too, started just around '95, and I have yet to see an LLM spit out anything useful that I would actually feel comfortable committing to a project. Usually you end up having to spend as much time—if not more—double-checking and correcting the LLM’s output as you would writing the code yourself. (Full disclosure: I haven’t tried Copilot, so it’s possible that it’s different from Bard/Gemini, ChatGPT and what-have-you, but I’d be surprised if it was that different.)

          Here’s a good example of how an LLM doesn’t really understand code in context and thus finds a “bug” that’s literally mitigated in the line before the one where it spots the potential bug: https://daniel.haxx.se/blog/2024/01/02/the-i-in-llm-stands-for-intelligence/ (see “Exhibit B”, which links to: https://hackerone.com/reports/2298307, which is the actual HackerOne report).

          LLMs don’t understand code. It’s literally your “helpful”, non-programmer friend—on stereoids—cobbling together bits and pieces from searches on SO, Reddit, DevShed, etc. and hoping the answer will make you impressed with him. Reading the study from TFA (https://dl.acm.org/doi/pdf/10.1145/3613904.3642596, §§5.1-5.2 in particular) only cements this position further for me.

          And that’s not even touching upon the other issues (like copyright, licensing, etc.) with LLM-generated code that led to NetBSD simply forbidding it in their commit guidelines: https://mastodon.sdf.org/@netbsd/112446618914747900

          Edit: Spelling

          • @[email protected]
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            7 months ago

            I’m very familiar with what LLMs do.

            You’re misunderstanding what copilot does. It just completes a line or section of code. It doesn’t answer questions - it just continues a pattern. Sometimes quite intelligently.

            Shoot me a message on discord and I’ll do a screenshare for you. #locuester

            It has improved my quality and speed significantly. More so than any other feature since intellisense was introduced (which many back then also frowned upon).

            • @[email protected]
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              17 months ago

              Fair enough, and thanks for the offer. I found a demo on YouTube. It does indeed look a lot more reasonable than having an LLM actually write the code.

              I’m one of the people that don’t use IntelliSense, so it’s probably not for me, but I can definitely see why people find that particular implementation useful. Thanks for catching and correcting my misunderstanding. :)

      • @[email protected]
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        APIs that don’t exist

        I had that. I got a bunch of ok code for an AWS API, but then it decided to hallucinate a method. I tried all kind of prompt to instruct it that the method didn’t exist and not to use it, but it always came back telling me it was the right way to do it.

        Anyway, still faster than reading the doc for a one off script I just wanted thrown together quickly and never to be reused again.

    • @[email protected]
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      107 months ago

      Example of (reasonably) good prompt: This code introduces deep recursion and can sometimes cause a “maximum stack size exceeded” error in certain cases. Please help me convert it to use a while loop instead.

      That sounds like those cases on YouTube where the correction to the code was shorter than the prompt hahaha

    • @[email protected]
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      17 months ago

      I’ve found chatgpt reasonably good for one thing: Generating regex-patterns. I don’t know regex for shit, but if I ask for a pattern described with words, I get a working pattern 9/10 times. It’s also a very easy use-case to double check.

  • @[email protected]
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    7 months ago

    My experience with an AI coding tool today.

    Me: Can you optimize this method.

    AI: Okay, here’s an optimized method.

    Me seeing the AI completely removed a critical conditional check.

    Me: Hey, you completely removed this check with variable xyz

    Ai: oops you’re right, here you go I fixed it.

    It did this 3 times on 3 different optimization requests.

    It was 0 for 3

    Although there was some good suggestions in the suggestions once you get past the blatant first error

    • Zos_Kia
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      87 months ago

      Don’t mean to victim blame but i don’t understand why you would use ChatGPT for hard problems like optimization. And i say this as a heavy ChatGPT/Copilot user.

      From my observation, the angle of LLMs on code is linked to the linguistic / syntactic aspects, not to the technical effects of it.

      • @[email protected]
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        Because I had some methods I thought were too complex and I wanted to see what it’d come up with?

        In one case part of the method was checking if a value was within one of 4 ranges and it just dropped 2 of the ranges in the output.

        I don’t think that’s asking too much of it.

        • Zos_Kia
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          47 months ago

          I don’t think that’s asking too much of it.

          Apparently it was :D i mean the confines of the tool are very limited, despite what the Devin.ai cult would like to believe.

    • cassie 🐺
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      57 months ago

      That’s been my experience with GPT - every answer Is a hallucination to some extent, so nearly every answer I receive is inaccurate in some ways. However, the same applies if I was asking a human colleague unfamiliar with a particular system to help me debug something - their answers will be quite inaccurate too, but I’m not expecting them to be accurate, just to have helpful suggestions of things to try.

      I still prefer the human colleague in most situations, but if that’s not possible or convenient GPT sometimes at least gets me on the right path.

      • @[email protected]
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        37 months ago

        I’m curious about what percentage of programmers would give error free answers to these questions in seconds.

      • @[email protected]
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        27 months ago

        And ya, it did provide some useful info, so it’s not like it was all wrong.

        I’m more just surprised that it was wrong in that way.

    • @[email protected]
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      47 months ago

      My favorite is when I ask for something and it gets stuck in a loop, pasting the same comment over and over

  • Subverb
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    177 months ago

    ChatGPT and github copilot are great tools, but they’re like a chainsaw: if you apply them incorrectly or become too casual and careless with them, they will kickback at you and fuck your day up.

  • @[email protected]
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    147 months ago

    What drives me crazy about its programming responses is how awful the html it suggests is. Vast majority of its answers are inaccessible. If anything, a LLM should be able to process and reconcile the correct choices for semantic html better than a human… but it doesnt because its not trained on WIA-ARIA… its trained on random reddit and stack overflow results and packages those up in nice sounding words. And its not entirely that the training data wants to be inaccessible… a lot of it is just example code wothout any intent to be accessible anyway. Which is the problem. LLM’s dont know what the context is for something presented as a minimal example vs something presented as an ideal solution, at least, not without careful training. These generalized models dont spend a lot of time on the tuned training for a particular task because that would counteract the “generalized” capabilities.

    Sure, its annoying if it doesnt give a fully formed solution of some python or js or whatever to perform a task. Sometimes it’ll go way overboard (it loves to tell you to extend js object methods with slight tweaks, rather than use built in methods, for instance, which is a really bad practice but will get the job done)

    We already have a massive issue with inaccessible web sites and this tech is just pushing a bunch of people who may already be unaware of accessible html best practices to write even more inaccessible html, confidently.

    But hey, thats what capitalism is good for right? Making money on half-baked promises and screwing over the disabled. they arent profitable, anyway.

  • @[email protected]
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    137 months ago

    I just use it to get ideas about how to do something or ask it to write short functions for stuff i wouldnt know that well. I tried using it to create graphical ui for script but that was constant struggle to keep it on track. It managed to create something that kind of worked but it was like trying to hold 2 magnets of opposing polarity together and I had to constantly reset the conversation after it got “corrupted”.

    Its useful tool if you dont rely on it, use it correctly and dont trust it too much.

    • @[email protected]
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      37 months ago

      This has been true for code you pull from posts on stackoverflow since forever. There are some good ideas, but they a. Aren’t exactly what you are trying to solve and b. Some of the ideas are incomplete or just bad and it is up to you to sort the wheat from the chaff.

    • @[email protected]
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      17 months ago

      Yeah I’ve been trying to recreate the same gui tools with every version and it is getting much better but it still struggles. The python specific gpt actually manages to create what I ask for and can make changes once it’s got the base established, I have to correct a few little glitches but nothing too terrible.

      For functions like save all the info in text boxes to Json and fill that info back in when load is pressed it never fails at. Making little test scripts for functions or layouts it saves me huge amounts of mental effort.

      It’s like image gen, you have to know what to expect to get the most out of it, ask for something it finds difficult it’s easy to confuse it but ask for things it’s good at and it’ll amaze you.

  • @[email protected]
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    Still the same shit study that does not even name the version they used…? The one posted here 1 or 2 days ago?

    • @[email protected]
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      I’m the footnotes they mention GPT-3.5. Their argument for not testing 4 was because it was paid, and so most users would be using 3.5 - which is already factually incorrect now because the new GPT-4o (which they don’t even mention) is now free. Finally, they didn’t mention GPT-4 Turbo either, which is even better at coding compared to 4.

      • @[email protected]
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        37 months ago

        Anyone can use GPT-4 for free. Co-pilot uses GPT-4 and with a Microsoft account you can do up to 30 queries. I’ve used it a lot to create Excel VBA code for work and it’s pretty good. Much better than GPT-3.5 that’s for sure.

      • @[email protected]
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        27 months ago

        4 is free for a very small number of queries, then it switches back to 3.5. Or at least that’s what happened to me the other day.

  • @[email protected]
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    127 months ago

    I guess it depends on the programming language… With python, I got very fast great results. But python is all about quick and dirty 😂

    • @[email protected]
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      47 months ago

      I asked ChatGPT for assistance with JavaScript doing HL7 stuff and it was a joke… After the seventh correction I gave up on it (at least for that task)

    • @[email protected]
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      17 months ago

      In Rust, it’s not great. It can’t do proper memory management in the language, which is pretty essential.

      • @[email protected]
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        17 months ago

        Well, if you use free chatGPT you only have knowledge until 2022, maybe that’s the reason

  • @[email protected]
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    117 months ago

    If you ask the wrong questions you get the wrong results. If you don’t check the response for accuracy, you get invalid answers.

    It’s just a tool. Don’t use it wrong because you’re lazy.

    • @[email protected]
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      17 months ago

      Lemmy is trying really, really hard to convince you that coding is going to be a viable career in 5 years.

      • @[email protected]
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        17 months ago

        Lemmy is trying real hard to convince you that AI is going to do everyone’s job in 5 years—including yours