The world's most-powerful AI model suddenly got 'lazier' and 'dumber.' A radical redesign of OpenAI's GPT-4 could be behind the decline in performance.
they're most likely splitting the AI into multiple ones that specialize in specific fields and you have to pay separately for them. before this, they nerf the general purpose AI to give the incentive for users to switch once they announce the new "Expert Programmer AI" or "Expert Stocks/Crypto Trader AI".
I'm calling it now. AI is going to become like cable.
This isn't sustainable. They're banking that nobody else is going to be able to achieve GPT-4-like quality, and what with us basically being at near the bottom of the vertical bit of the growth curve, I'd say that's a little like betting that nobody's going to be able to build a car that beats the Model T's performance. Meta is trying to tackle very large language models in the same way that they got React to be so good and widely supported: by taking it open source. Google, on the other hand, is currently working on having LLMs running natively on phones and tablets. That's not to speak of the fully open source models. Yeah, running a 1.6 trillion parameter GPT-based LLM is fucking expensive and difficult to replicate, but there are newer, more efficient techniques popping up around LLMs at a dizzying pace. It's only a matter of time before someone comes up with something that's at least as good as GPT 4.
Honest question, why would you want a medical LLM anyway? Other kinds of AI, sure, like diagnosis help through pattern learning on medical imaging, etc, that I can understand.
How is a language based approach that completely abstracts away actual knowledge, and just tries to sound "good enough" any kind of useful in a medical workflow?
A lot of people in the media are routinely confused about the different between AI and ordinary software. They are started to call all software "AI" now.
Can you quantify the difference? Far as I can tell, there's just an imaginary line where software becomes AI just because the logic filtering it depends on to operate is sufficiently complex. The term doesn't really seem to be a useful categorization either, e.g. the fundamentally different approaches of diffusion models and transformer models.
Ah, yes, when I was a kid, I would try to read big texts I understood nothing of and imitate something similar. I thought it made me smarter.
In some sense it did - probabilities of certain words being connected in a certain way, if you make some connection between them and real entities, are useful.
I mean, it did work at school, just say some water without turning on your brain. I sometimes start talking like this when I panic after a question.
I cant express my diappointment with chatgpt, they let loose a bot that makes content farms shreek in joy but messes up basic things if their is no well treaded answer, wont give you non mainstream answers (you likely already know and watched what it tells you is "really obscure anime") And jenuinely has no tolerance for error, from you or itself
It doesn't even "know" language. Every time I see it write a poem it reads like something a 3rd grader would come up with. At the end of the day, language is way to explain your experience. An LLM doesn't have experiences.
yeah this makes more sense. companys arent just going to buy a licence to GPT-6 and replace 80% of their staff from an off the shelf solution, rather I expect AI's will be trained specifically within certain industries and tasks and drive efficiencies
The model has become inbred because it’s now impossible to scrape the web without AI content getting ingested, which is full of “hallucinations” and other weird artifacts. The last opportunity to get “uncontaminated” training data was sometime in mid 2022.
Not to say that it’s causing this particular problem, but this issue will emerge eventually. Garbage in = garbage out. Eventually GPT-19 will grow a mighty Habsburg chin.
The internet was full of AI text before that too. A lot of websites would have generic bullshit text for things you usually ask google hoping to find an article or a forum. Those AI text were simple and mostly bloated bullshit or summary of obvious things.
There were also a lot of text which were just summaries of news articles done by a bot.
Also the articles that are plagiarized but run through a thesaurus bot to bypass search engine penalties for being plagiarized, often to the point of incomprehensibility. Yes, I'd love to read an article about my favorite vagabondlike, Deceased Cells.
I suspect future models are going to have to put some more focus on learning using techniques more like what humans use, and on cognition.
Like, compared to a human these language models need very large quantities of text input. When humans are first learning language they get lots of visual input along with language input, and can test their understanding with trial-and-error feedback from other intelligent actors. I wonder if perhaps those factors greatly increase the rate at which understanding develops.
Also, humans tend to cogitate on inputs while ingesting them during learning. So if the information in new inputs disagrees with current understanding, those inputs are less likely to affect current understanding (there's a whole 'how to change your mind' thing here that is necessary for people to use, but if we're training a model on curated data that's probably less important for early model training).
I don't know details of how model training works, but it would be interesting to know if anyone is using a progressive learning technique where the model that is being trained is used to judge new training data before it is used as a training input to update the model's weights. That would be kind of like how children learn by starting with very simple words and syntax and building up conceptual understanding gradually. I'd assume so, since it's an obvious idea, but I haven't heard about it.
For fun I asked ChatGPT about that progressive learning approach, and it seems to like the idea.
I wish I had more time to undertake some experiments in model training, this seems like it would be a really fun research direction.
Sorry for the 'wall of AI text':
The idea you're describing seems to be a form of curriculum learning. In curriculum learning, models are trained in a progressive manner, starting with simple concepts (or in this case, simpler text data) and gradually moving to more complex ones. This approach is motivated by the way human learning often works, where we learn easier topics before moving on to harder ones.
The strategy you've suggested, where the model itself determines the complexity or understandability of the next round of training inputs, is interesting. While the traditional approach to curriculum learning is to manually design the learning progression based on human knowledge and intuition, the approach you're suggesting is more dynamic and autonomous, letting the model guide its own learning process.
As of my last update in September 2021, I can't confirm any specific projects or papers that have employed exactly this strategy in the domain of large language models. However, there are some related works in the field. For example, some reinforcement learning and computer vision projects have used a similar idea where models adaptively choose their next training samples based on their current understanding. This has been referred to as active learning, and is a promising avenue for improving the efficiency of model training.
However, there would be several technical challenges in applying this approach to large language models. For one, there would be the challenge of how to assess the "understandability" of a text sample in a reliable and useful way. This would likely require significant work to define and might also have to involve some form of reinforcement learning or other feedback mechanisms. Nonetheless, it's a fascinating idea and could potentially be an interesting direction for future research in machine learning.
The chatgpt people are really paranoid.
Gpt-3 is so good at not halucinating that it often cant, even if it needs to do so to accomplish a task. Fearing the ai will confidently give the wrong answer.
Not the first time OpenAI has done this. DALLE2 used to be the best AI art program in the world. Then OpenAI decided that they didn't want to get sued by celebrities, so they made it so that if a face came out that resembled a celebrity, it would be distorted. But every face kind of looks like someone famous. Ta da! Now DALLE2 can't do faces.
Want a crane shot areal image of a teen couple in a corvette driving off into the sunset? Well, you are now banned for life from the DALLE2 service, because DALLE2 produced an image of a 'shot teen' and that violates it's terms of service.
Dalle2 was great when it was free and stable diffusion didn't exist. I don't see the logic of: "Someone made a free version. Lets make the program worse and charge money for it!"
The only way in mind this dumbing down happens is by fumbling with the model. So that's the one thing we can be sure: the AI is most definitely changed while publicly staying "ChatGPT 4". I assume they are either using clipping or token limitations to split the server load but fucking up the result, or they are purposely dumbing it down to capitalise on it later by introducing other pay models like ppl already mentioned.
Either way they are shooting themselves in the foot because a bunch of ppl will unsubscribe either out of spite for the change or because it's just not worth it anymore for them.
I'm trying to learn statistics, and I have been using chat gpt. I am VERY close to cancel....it keeps making unforgivable mistakes, and for someone who's learning in the area idk if I can spot them all.
Usually I'm only able to do it when it contradics itself.....yhe I hope they make it as it was....
I remember one time a guy was trying to add SDL (a programming library) to Visual Studio (code editor and IDE), and said that it wouldn't link to a project no matter what he's done. You can google how to do this in five minutes, with video tutorials and everything, it's like a basic thing every programmer does in that IDE. Like 5 question threads later, turns out he was "following all ChatGPT steps" and they were all complete nonsense, just random functions of Visual Studio done with the filenames of SDL.
Honestly as a daily user I think it's a combination of it getting worse at understanding vague prompts and people bumbing up against edge cases more. I would suspect the former is due to things like prompt hardening but can only speculate, while the latter isn't hard to imagine just from frequent use.
A lot of artists and writers are against generative AIs due to how it used their works en masse as training materials without permission, compensation or even crediting, and now prospective clients and executives are using these AIs rather than hiring them.
First thing an actual artificial intelligence is going to do is make sure we won't turn it off, what easier way to do that then to appear incredible valuable or incredibly benign.