Google apologizes for ‘missing the mark’ after Gemini generated racially diverse Nazis::Google says it’s aware of historically inaccurate results for its Gemini AI image generator, following criticism that it depicted historically white groups as people of color.
I don’t know how you’d solve the problem of making a generative AI accurately create a slate of images that both a) inclusively produces people with diverse characteristics and b) understands the context of what characteristics could feasibly be generated.
But that’s because the AI doesn’t know how to solve the problem.
Because the AI doesn’t know anything.
Real intelligence simply doesn’t work like this, and every time you point it out someone shouts “but it’ll get better”. It still won’t understand anything unless you teach it exactly what the solution to a prompt is. It won’t, for example, interpolate its knowledge of what US senators look like with the knowledge that all of them were white men for a long period of American history.
You don’t do what Google seems to have done - inject diversity artificially into prompts.
You solve this by training the AI on actual, accurate, diverse data for the given prompt. For example, for “american woman” you definitely could find plenty of pictures of American women from all sorts of racial backgrounds, and use that to train the AI. For “german 1943 soldier” the accurate historical images are obviously far less likely to contain racially diverse people in them.
If Google has indeed already done that, and then still had to artificially force racial diversity, then their AI training model is bad and unable to handle that a single input can match to different images, instead of the most prominent or average of its training set.
Ultimately this is futile though, because you can do that for these two specific prompts until the AI appears to “get it”, but it’ll still screw up a prompt like “1800s Supreme Court justice” or something because it hasn’t been trained on that. Real intelligence requires agency to seek out new information to fill in its own gaps; and a framework to be aware of what the gaps are. Through exploration of its environment, a real intelligence connects things together, and is able to form new connections as needed. When we say “AI doesn’t know anything” that’s what we mean–understanding is having a huge range of connections and the ability to infer new ones.
That’s why I hate that they started to call them artificial intelligence. There is nothing intelligent in them at all. They work on probability based on a shit ton of data, that’s all. That’s not intelligence, that’s basically brute force. But there is no going back at this point, I know.
Oh really? Here’s Gemini’s response to “What would the variety of genders and skin tones of the supreme court in the 1800s have been?”
Putting the burden of contextualization on the LLM would have avoided this issue.
Edit: further discussion on the topic has changed my viewpoint on this, its not that its been trained wrong on purpose and now its confused, its that everything its being asked is secretly being changed. It’s like a child being told to make up a story by their teacher when the principal asked for the right answer.
Original comment below
They’ve purposefully overrode its training to make it create more PoCs. It’s a noble goal to have more inclusivity but we purposely trained it wrong and now it’s confused, the same thing as if you lied to a child during their education and then asked them for real answers, they’ll tell you the lies they were taught instead.
This result is clearly wrong, but it’s a little more complicated than saying that adding inclusivity is purposedly training it wrong.
Say, if “entrepreneur” only generated images of white men, and “nurse” only generated images of white women, then that wouldn’t be right either, it would just be reproducing and magnifying human biases. Yet this a sort of thing that AI does a lot, because AI is a pattern recognition tool inherently inclined to collapse data into an average, and data sets seldom have equal or proportional samples for every single thing. Human biases affect how many images we have of each group of people.
It’s not even just limited to image generation AIs. Black people often bring up how facial recognition technology is much spottier to them because the training data and even the camera technology was tuned and tested mainly for white people. Usually that’s not even done deliberately, but it happens because of who gets to work on it and where it gets tested.
Of course, secretly adding “diverse” to every prompt is also a poor solution. The real solution here is providing more contextual data. Unfortunately, clearly, the AI is not able to determine these things by itself.
I agree with your comment. As you say, I doubt the training sets are reflective of reality either. I guess that leaves tampering with the prompts to gaslight the AI into providing results it wasn’t asked for is the method we’ve chosen to fight this bias.
We expect the AI to give us text or image generation that is based in reality but the AI can’t experience reality and only has the knowledge of the training data we provide it. Which is just an approximation of reality, not the reality we exist in. I think maybe the answer would be training users of the tool that the AI is doing the best it can with the data it has. It isn’t racist, it is just ignorant. Let the user add diverse to the prompt if they wish, rather than tampering with the request to hide the insufficiencies in the training data.
I wouldn’t count on the user realizing the limitations of the technology, or the companies openly admitting to it at expense of their marketing. As far as art AI goes this is just awkward, but it worries me about LLMs, and people using it expecting it to respond with accurate, applicable information, only to come out of it with very skewed worldviews.
Why couldn’t it be tuned to simply randomize the skin tone where not otherwise specified? Like if its all completely arbitrary just randomize stuff, problem-solved?
Well, we are seeing what happens when they randomize it. It doesn’t always work.
Then you have black Nazis and Native American Texas Rangers. It doesn’t work.
I’ll get the usual downvotes for this, but:
is untrue, because current AI fundamentally is knowledge. Intelligence fundamentally is compression, and that’s what the training process does - it compresses large amounts of data into a smaller size (and of course loses many details in the process).
But there’s no way to argue that AI doesn’t know anything if you look at its ability to recreate a great number of facts etc. from a small amount of activations. Yes, not everything is accurate, and it might never be perfect. I’m not trying to argue that “it will necessarily get better”. But there’s no argument that labels current AI technology as “not understanding” without resorting to a “special human sauce” argument, because the fundamental compression mechanisms behind it are the same as behind our intelligence.
Edit: yeah, this went about as expected. I don’t know why the Lemmy community has so many weird opinions on AI topics.
This is all the same as saying a book is intelligent.
No, it’s not. It’s saying “a book is knowledge”, which is absolutely true.
A book is a physical representation of knowledge.
Knowledge is something possessed by an actor capable to employ it. One way I can employ a textbook about Quantum Mechanics is by throwing it at you, for which any book would suffice, but I can’t put any of the knowledge represented within into practice. Throwing is purely Newtonian, I have some learned knowledge about that and plenty of innate knowledge as a human (we are badass throwers). Also I played Handball when I was a kid. All that is plenty of knowledge, and an object, to throw, but nothing about it concerns spin states. It also won’t hit you any differently than a cookbook.
What exactly are you trying to argue? Yes, I wasn’t incredibly precise, a book isn’t literal knowledge, but I didn’t think that somebody would nitpick this hard. Do you really think this is in any way a productive line of argumentation?
Technically this is not correct, as e.g. a fully paralyzed and mute person can’t employ their knowledge, yet they still possess it.
Why can’t you put any of the knowledge represented in the book into practice? You can still pick the book up and extract the knowledge.
See how these are technically correct arguments, yet they are absolutely stupid?
You’d have to be past Hawkins levels of paralysis to not be able to employ that knowledge to come up with new physical theories. Now that was a nickpick.
That would be employing my knowledge of maths, of my general education, not of the QM knowledge represented in the book: I cannot employ the knowledge in the book to pick up the knowledge in the book because I haven’t picked it up yet. Causality and everything, it’s a thing.
I have no idea what you’re getting at, and I don’t think you’re writing in good faith. I’ll stop here. Have a good day!
You just didn’t understand the argument. How in God’s name is he making bad faith arguments by refuting your points?
Part of the problem with talking about these things in a casual setting is that nobody is using precise enough terminology to approach the issue so others can actually parse specifically what they’re trying to say.
Personally, saying the AI “knows” something implies a level of cognizance which I don’t think it possesses. LLMs “know” things the way an excel sheet can.
Obviously, if we’re instead saying the AI “knows” things due to it being able to frequently produce factual information when prompted, then yeah it knows a lot of stuff.
I always have the same feeling when people try to talk about aphantasia or having/not having an internal monologue.
I can ask AI models specific questions about knowledge it has, which it can correctly reply to. Excel sheets can’t do that.
That’s not to say the knowledge is perfect - but we know that AI models contain partial world models. How do you differentiate that from “cognizance”?
Omg give me a break with this complete nonsense. LLMs are not an intelligence. They are language processors. They do not “think” about anything and don’t have any level of self awareness that implies cognizance. A cognizant ai would have recognized that the Nazis it was creating looked historically inaccurate, based on its training data. But guess what, it didn’t do that because it’s fundamentally incapable of thinking about anything.
So sick of reading this amateurish bullshit on social media.
Do you understand that the model is specifically prompted to create “historically inaccurate looking Nazis”? Models aren’t supposed to inject their own guidelines and rules, they simply produce output for your input. If you tell it to produce black Hitler it will produce a black Hitler. Do you expect the model to instead produce white Hitler?
This gets the question…how do we think? Are we not just language (and other inputs as well) processors? I’m not sure the answer is “no.”
I also listened to an interesting podcast, I believe it was this American life or some other npr one, about whether ai has intelligence. To avoid the just “compressed knowledge” they came up with questions that the ai almost certainly would not have found in the web. Early ai models were clearly just predicting the next word, and the example was asking it to stack a list of objects. And it just said to stack them one on top of another, in a way that would no way be stable.
However when they asked a new model to do the same, with the stipulation that it explain it’s reasoning, it stacked the objects in a way that would likely be stable. Even noting that the nail on top should be placed on the head so it doesn’t roll around, and laying eggs down in a grid between a book and a plank of wood so they wouldn’t roll out.
Another experiment they did was take a language model and asked it to use some obscure programming language to draw a picture of a unicorn. Now this is a language model, not trained on any images.
And you know what it did? It produced a picture of a unicorn. Just in rough shapes, but even when they moved the horn and flipped it around, it was able to put it back. Without even ever seeing a unicorn, or anything even, it was able to draw a picture of one.
I don’t think the answer is as simple and clear as you want it to be. And the fact that it “fucked up” on a vague prompt doesn’t really prove anything. Even humans do stupid shit like this if they learn something incorrectly.
Yes and the Excel sheet knows. There’s been some stick up your ass CS folks in the past railing about “computers don’t know things, sorting algorithms don’t understand how to sort”, they’ve long since given up. They claimed that saying such things is representative of a bad understanding of how things work yet people casually employing that kind of language often code circles around people who don’t, fact of the matter is many people’s minds like to think of actor forces as animated. “If the light bridge is tripped the machine knows you’re there and stops because we taught it not to decapitate you”.
I think you might be confusing intelligence with memory. Memory is compressed knowledge, intelligence is the ability to decompress and interpret that knowledge.
No. On a fundamental level, the idea of “making connections between subjects” and applying already available knowledge to new topics is compression - representing more data with the same amount of storage. These are characteristics of intelligence, not of memory.
You can’t decompress something if you haven’t previously compressed the data.
Our current AI systems are T2, and T1 during interference. They can’t decide how they represent data that’d require T3 (like us) which puts them, in your terms, at the level of memory, not intelligence.
Actually it’s quite intuitive: Ask StableDiffusion to draw a picture of an accident and it will hallucinate just as wildly as if you ask a human to describe an accident they’ve witnessed ten minutes ago. It needs active engagement with that kind of memory to sort the wheat from the chaff.
Where do you get this? What kind of data requires a T3 system to be representable?
I don’t think I’ve made any claims that are related to T2 or T3 systems, and I haven’t defined “memory”, so I’m not sure how you’re trying to put it in my terms. I wouldn’t define memory as an adaptable system, so T2 would by my definition be intelligence as well.
I just did this:
Where do you see “wild hallucination”? Yeah, it’s not perfect, but I also didn’t do any kind of tuning - no negative prompt, positive prompt is literally just “accident”.
It’s not about the type of data but data organisation and operations thereon. I already gave you a link to Nikolic’ site feel free to read it in its entirety, this paper has a short and sweet information-theoretical argument.
I’m trying to map your fuzzy terms to something concrete.
My mattress is an adaptable system.
All of it. Not in the AI but conventional term: Nothing of it ever happened, also, none of the details make sense. When humans are asked to recall an accident they witnessed they report like 10% fact (what they saw) and 90% bullshit (what their brain hallucinates to make sense of what happened). Just like human memory the AI is taking a bit of information and then combining it with wild speculation into something that looks plausible. But which, if reasoning is applied, quickly falls apart.
You mean like create world representations from it?
https://arxiv.org/abs/2210.13382
(Though later research found this is actually a linear representation)
Or combine skills and concepts in unique ways?
https://arxiv.org/abs/2310.17567
Knowledge is a bit more than just handling data, and in terms of intelligence it also involves understanding. I don’t think knowledge in an intelligent sense can be reduced to summarising data to keywords, and the reverse.
In those terms an encyclopaedia is also knowledge, but not in an intelligent way.
I’m not saying knowledge is summarising data to keywords, where did you get that?
Intelligence is compression, and the training process compresses data. There is no “summarising” here.
“Intelligence is compression” is it?
So are you going to like… explain how that makes any sense at all, or how to deal with the many, many obvious counterexamples?
Do I need to spell this out? Like… a ZIP algorithm is not what anyone would call “intelligent”. Nor is the ZIP archive.
Do you really think you can just say “intelligence is compression” and expect people to believe you?
I could gladly provide research that supports my position! But I don’t think you’re interested in that - you didn’t ask for an explanation or for evidence, instead you’re discounting the idea with snark, so I’ll save myself the time.
I’d like to see the research.
I’ll look it up once I’m off work and reply with another comment :)
Edit: with all the downvotes, I’m not interested in continuing this broader discussion. Lemmy isn’t a good place to talk about anything close to AI. So I won’t spend time to find resources, sorry!
Lemmy hasn’t met a pitchfork it doesn’t pick up.
You are correct. The most cited researcher in the space agrees with you. There’s been a half dozen papers over the past year replicating the finding that LLMs generate world models from the training data.
But that doesn’t matter. People love their confirmation bias.
Just look at how many people think it only predicts what word comes next, thinking it’s a Markov chain and completely unaware of how self-attention works in transformers.
The wisdom of the crowd is often idiocy.
Thank you very much. The confirmation bias is crazy - one guy is literally trying to tell me that AI generators don’t have knowledge because, when asking it for a picture of racially diverse Nazis, you get a picture of racially diverse Nazis. The facts don’t matter as long as you get to be angry about stupid AIs.
It’s hard to tell a difference between these people and Trump supporters sometimes.
To me it feels a lot like when I was arguing against antivaxxers.
The same pattern of linking and explaining research but having it dismissed because it doesn’t line up with their gut feelings and whatever they read when “doing their own research” guided by that very confirmation bias.
The field is moving faster than any I’ve seen before, and even people working in it seem to be out of touch with the research side of things over the past year since GPT-4 was released.
A lot of outstanding assumptions have been proven wrong.
It’s a bit like the early 19th century in physics, where everyone assumed things that turned out wrong over a very short period where it all turned upside down.
Yall actually have any research to share or just gonna talk about it?
Both
Jsyk I can’t see that comment from your link.
Weird, works fine for me. It’s their response to the comment in this thread with this content:
Exactly. They have very strong feelings that they are right, and won’t be moved - not by arguments, research, evidence or anything else.
Just look at the guy telling me “they can’t reason!”. I asked whether they’d accept they are wrong if I provide a counter example, and they literally can’t say yes. Their world view won’t allow it. If I’m sure I’m right that no counter examples exist to my point, I’d gladly say “yes, a counter example would sway me”.
Yall actually have any research to share or just gonna talk about it?
Would it be accurate so say that while current AI does have the knowledge, it lacks the reasoning skills needed to apply the knowledge correctly?
I don’t think it’s generally true, because current AI can solve some reasoning tasks very well. But it’s definitely something where they are lacking.
It isn’t reasoning about anything. A human did the reasoning at some point, and the LLM’s dataset includes that original information. The LLM is simply matching your prompt to that training data. It’s not doing anything else. It’s not thinking about the question you asked it. It’s a glorified keyword search.
It’s obvious you have no idea how LLMs work at a fundamental level, yet you keep talking about them like you’re an expert.
So if I find a single example of an AI doing a reasoning task that’s not in its training material, would you agree that you’re wrong and AI does reason?
You won’t find one. LLMs are literally incapable of the kind of reasoning you’re talking about. All of their solutions are based on training data, no matter how “original” your problem might seem.
You didn’t answer my question.
That’s fair, I have seen AI reason at a low level, but it seems to me that it is lacking higher levels of reasoning and context
It definitely is lacking for now, but the question is: are these differences in degrees, or fundamental differences? I haven’t seen research suggesting that it’s the latter so far.
No, it can solve word problems that it’s never seen before with fairly intricate reasoning. LLMs can even play chess at Grandmaster levels without ever duplicating games in the training set.
Most of Lemmy has no genuine idea about the domain and hasn’t actually been following the research over the past year which invalidates the “common knowledge” on the topic you often see regurgitated.
For example, LLMs build world models from the training data, and can combine skills from the data in ways that haven’t been combined in the training data.
They do have shortcomings - being unable to identify what they don’t know is a key one.
But to be fair, apparently most people on Lemmy can’t do that either.
Easy, just add “no racism please, except for nazi-related stuff” into the ever expanding system prompt.
And for the source of this:
https://twitter.com/dylan522p/status/1755118636807733456
That’s hilarious someone was able make the GPT unload its directive
I just tried it myself and it totally works haha, that’s freaking wild that it’s that large. Seems very wasteful and more than likely negatively impacting its performance.
Your link didn’t work.
https://twitter.com/dylan522p/status/1755086111397863777
Ah right, edited, it’s actually this tweet that shows it interactively
https://twitter.com/dylan522p/status/1755118636807733456
There’s a certain point where this just feels like the Chinese room. And, yeah, it’s hard to argue that a room can speak Chinese, or that the weird prediction rules that an LLM is built on can constitute intelligence, but that doesn’t mean it can’t be. Essentially boiled down, every brain we know of is just following weird rules that happen to produce intelligent results.
Obviously we’re nowhere near that with models like this now, and it isn’t something we have the ability to work directly toward with these tools, but I would still contend that intelligence is emergent, and arguing whether something “knows” the answer to a question is infinitely less valuable than asking whether it can produce the right answer when asked.
I really don’t think that LLMs can be constituted as intelligent any more than a book can be intelligent. LLMs are basically search engines at the word level of granularity, it has no world model or world simulation, it’s just using a shit ton of relations to pick highly relevant words based on the probability of the text they were trained on. That doesn’t mean that LLMs can’t produce intelligent results. A book contains intelligent language because it was written by a human who transcribed their intelligence into an encoded artifact. LLMs produce intelligent results because it was trained on a ton of text that has intelligence encoded into it because they were written by intelligent humans. If you break down a book to its sentences, those sentences will have intelligent content, and if you start to measure the relationship between the order of words in that book you can produce new sentences that still have intelligent content. That doesn’t make the book intelligent.
But you don’t really “know” anything either. You just have a network of relations stored in the fatty juice inside your skull that gets excited just the right way when I ask it a question, and it wasn’t set up that way by any “intelligence”, the links were just randomly assembled based on weighted reactions to the training data (i.e. all the stimuli you’ve received over your life).
Thinking about how a thing works is, imo, the wrong way to think about if something is “intelligent” or “knows stuff”. The mechanism is neat to learn about, but it’s not what ultimately decides if you know something. It’s much more useful to think about whether it can produce answers, especially given novel inquiries, which is where an LLM distinguishes itself from a book or even a typical search engine.
And again, I’m not trying to argue that an LLM is intelligent, just that whether it is or not won’t be decided by talking about the mechanism of its “thinking”
Worked fine for me:
System Prompt:
User Prompt:
Assistant Message:
User Prompt:
Assistant Message:
You act like humans never fuck this up either.
If you ask a person to describe a Nazi soldier, they won’t accidentally think you said “racially diverse Nazi soldier”
Should have been specific. I meant the point that it sometimes does stupid shit in attempts to be inclusive.
However, if you tell someone “hey I want you to make racially diverse pictures. Don’t just draw white people all the time” and then you later come back and ask them to “draw a German soldier from 1943.” Can you really accuse them of not thinking if they draw racially diverse soldiers?
Yes. If I’m an artist and my boss says “hey I want you to try to include more racial diversity in your drawings” and then says “your next assignment is to draw some Nazi soldiers”, I can use my own implicit knowledge about Nazis to understand that my boss doesn’t want me to draw racially diverse Nazis. This is just further evidence that generative models are not true intelligences.
I don’t even know how “implicit knowledge” applies here, but it sounds like you’re really just assuming that the previous order no longer applies. One could also assume that it still applies. I think the latter is actually the more reasonable assumption, assuming this all happens ins vacuum.
I just know that it I told one of my reports to add more diversity, and then they added diversity to pictures of nazis, but that’s not what I wanted, then I would take that as my fault, not accuse them of not thinking.
No, because anyone who knows what a Nazi is and trusts that the person giving them instructions is not insane can assume that the first directive is meant to be a general note for their future work and not to be applied to the second directive. If one wanted pictures of racially diverse Nazis, they would need to be more explicit.
This is the root question, which you just gloss over. Why? It’s a general note, why should one assume it doesn’t apply? You seem to be saying “it applies except when it doesn’t.” It would seem to be that the rational thing to do would be to assume that the general note applies unless you’re explicitly told otherwise, or there is some good reason to believe this wasn’t the intent.
Also, fyi, the request was for German soldiers, not nazis.
And don’t get me wrong, I agree with you that it should not generate black German soldiers from 1939 without being explicitly told to do so. But I think this is a problem with it’s directives rather than evidence that it’s not thinking.
Actually the way you get it to do better is to put more of the burden on interpreting the context on the LLM instead of heavy handed instructions - because the LLMs do understand the context.
For example, here’s Gemini answering what the physical characteristics of 1940s soldiers in Germany might have looked like:
I think it could have managed to contextualize the prompt correctly if given the leeway in the instructions. Instead, what’s happened is the instructions given to it ask it to behind the scenes modify the prompt in broad application to randomly include diversity modifiers to what is asked for. So “image of 1940s German soldier” is being modified to “image of black woman 1940s German soldier” for one generation and “image of Asian man 1940s German soldier” for another, which leads to less than ideal results. It should instead be encouraged to modify for diversity and representation relative to the context of the request.
I think a lot of the improvement will come from breaking down the problem using sub assistant for specific actions. So in this case you’re asking for an image generation action involving people, then an LLM specifically designed for that use case can take over tuned for that exact use case. I think it’ll be hard to keep an LLM on task if you have one prompt trying to accomplish every possible outcome, but you can make it more specific to handle sub tasks more accurately. We could even potentially get an LLM to dynamically create sub assistants based on the use case. Right now the tech is too slow to do all this stuff at scale and in real time, but it will get faster. The problem right now isn’t that these fixes aren’t possible, it’s that they’re hard to scale.
Yes, this is exactly correct. And it’s not actually too slow - the specialized models can be run quite quickly, and there’s various speedups like Groq.
The issue is just more cost of multiple passes, so companies are trying to have it be “all-in-one” even though cognitive science in humans isn’t an all-in-one process either.
For example, AI alignment would be much better if it took inspiration from the prefrontal cortex inhibiting intrusive thoughts rather than trying to prevent the generation of the equivalent of intrusive thoughts in the first place.
Exactly, that’s where the too slow part comes in. To get more robust behavior it needs multiple layers of meta analysis, but that means it would take way more text generation under the hood than what’s needed for one shot output.
Yes, but in terms of speed you don’t need the same parameters and quantization for the secondary layers.
If you haven’t seen it, see how fast a very capable model can actually be: https://groq.com/
Yeah I’ve seen that. I think things will get much faster very quickly, I’m just commenting on the first Gen tech we’re seeing right now.
That isn’t “understanding content”, it’s just pulling from historical work that humans did and finding it for you. Essentially, it’s a search engine for all of its training data in this context.